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b/SynthData0523/main/c15/tabbyflow/tabbyflow-c15-20260513_061551/_efvfm_runtime/src/__init__.py @@ -0,0 +1,11 @@ +import torch +from icecream import install + +torch.set_num_threads(1) +install() + +from . import env # noqa +from .data import * # noqa +from .env import * # noqa +from .metrics import * # noqa +from .util import * # noqa \ No newline at end of file diff --git a/SynthData0523/main/c15/tabbyflow/tabbyflow-c15-20260513_061551/_efvfm_runtime/src/data.py b/SynthData0523/main/c15/tabbyflow/tabbyflow-c15-20260513_061551/_efvfm_runtime/src/data.py new file mode 100644 index 0000000000000000000000000000000000000000..c6906ba122d1ff276b7f475b7f6e7c3440580654 --- /dev/null +++ b/SynthData0523/main/c15/tabbyflow/tabbyflow-c15-20260513_061551/_efvfm_runtime/src/data.py @@ -0,0 +1,780 @@ +import hashlib +from collections import Counter +from copy import deepcopy +from dataclasses import astuple, dataclass, replace +from importlib.resources import path +from pathlib import Path +from typing import Any, Literal, Optional, Union, cast, Tuple, Dict, List + +import numpy as np +import pandas as pd +from sklearn.model_selection import train_test_split +from sklearn.pipeline import make_pipeline +import sklearn.preprocessing +import torch +import os +from category_encoders import LeaveOneOutEncoder +from sklearn.impute import SimpleImputer +from sklearn.preprocessing import StandardScaler +from scipy.spatial.distance import cdist + +from . import env, util +from .metrics import calculate_metrics as calculate_metrics_ +from .util import TaskType, load_json + +ArrayDict = Dict[str, np.ndarray] +TensorDict = Dict[str, torch.Tensor] + + +CAT_MISSING_VALUE = 'nan' +CAT_RARE_VALUE = '__rare__' +Normalization = Literal['standard', 'quantile', 'minmax'] +NumNanPolicy = Literal['drop-rows', 'mean'] +CatNanPolicy = Literal['most_frequent'] +CatEncoding = Literal['one-hot', 'counter'] +YPolicy = Literal['default'] +DEQUANT_DIST = Literal['uniform', 'beta', 'round', 'none'] + + +class StandardScaler1d(StandardScaler): + def partial_fit(self, X, *args, **kwargs): + assert X.ndim == 1 + return super().partial_fit(X[:, None], *args, **kwargs) + + def transform(self, X, *args, **kwargs): + assert X.ndim == 1 + return super().transform(X[:, None], *args, **kwargs).squeeze(1) + + def inverse_transform(self, X, *args, **kwargs): + assert X.ndim == 1 + return super().inverse_transform(X[:, None], *args, **kwargs).squeeze(1) + + +def get_category_sizes(X: Union[torch.Tensor, np.ndarray]) -> List[int]: + XT = X.T.cpu().tolist() if isinstance(X, torch.Tensor) else X.T.tolist() + return [len(set(x)) for x in XT] + + +@dataclass(frozen=False) +class Dataset: + X_num: Optional[ArrayDict] + X_cat: Optional[ArrayDict] + y: ArrayDict + int_col_idx_wrt_num: list + y_info: Dict[str, Any] + task_type: TaskType + n_classes: Optional[int] + + @classmethod + def from_dir(cls, dir_: Union[Path, str]) -> 'Dataset': + dir_ = Path(dir_) + splits = [k for k in ['train', 'test'] if dir_.joinpath(f'y_{k}.npy').exists()] + + def load(item) -> ArrayDict: + return { + x: cast(np.ndarray, np.load(dir_ / f'{item}_{x}.npy', allow_pickle=True)) # type: ignore[code] + for x in splits + } + + if Path(dir_ / 'info.json').exists(): + info = util.load_json(dir_ / 'info.json') + else: + info = None + return Dataset( + load('X_num') if dir_.joinpath('X_num_train.npy').exists() else None, + load('X_cat') if dir_.joinpath('X_cat_train.npy').exists() else None, + load('y'), + {}, + TaskType(info['task_type']), + info.get('n_classes'), + ) + + @property + def is_binclass(self) -> bool: + return self.task_type == TaskType.BINCLASS + + @property + def is_multiclass(self) -> bool: + return self.task_type == TaskType.MULTICLASS + + @property + def is_regression(self) -> bool: + return self.task_type == TaskType.REGRESSION + + @property + def n_num_features(self) -> int: + return 0 if self.X_num is None else self.X_num['train'].shape[1] + + @property + def n_cat_features(self) -> int: + return 0 if self.X_cat is None else self.X_cat['train'].shape[1] + + @property + def n_features(self) -> int: + return self.n_num_features + self.n_cat_features + + def size(self, part: Optional[str]) -> int: + return sum(map(len, self.y.values())) if part is None else len(self.y[part]) + + @property + def nn_output_dim(self) -> int: + if self.is_multiclass: + assert self.n_classes is not None + return self.n_classes + else: + return 1 + + def get_category_sizes(self, part: str) -> List[int]: + return [] if self.X_cat is None else get_category_sizes(self.X_cat[part]) + + def calculate_metrics( + self, + predictions: Dict[str, np.ndarray], + prediction_type: Optional[str], + ) -> Dict[str, Any]: + metrics = { + x: calculate_metrics_( + self.y[x], predictions[x], self.task_type, prediction_type, self.y_info + ) + for x in predictions + } + if self.task_type == TaskType.REGRESSION: + score_key = 'rmse' + score_sign = -1 + else: + score_key = 'accuracy' + score_sign = 1 + for part_metrics in metrics.values(): + part_metrics['score'] = score_sign * part_metrics[score_key] + return metrics + +def change_val(dataset: Dataset, val_size: float = 0.2): + # should be done before transformations + + y = np.concatenate([dataset.y['train'], dataset.y['val']], axis=0) + + ixs = np.arange(y.shape[0]) + if dataset.is_regression: + train_ixs, val_ixs = train_test_split(ixs, test_size=val_size, random_state=777) + else: + train_ixs, val_ixs = train_test_split(ixs, test_size=val_size, random_state=777, stratify=y) + + dataset.y['train'] = y[train_ixs] + dataset.y['val'] = y[val_ixs] + + if dataset.X_num is not None: + X_num = np.concatenate([dataset.X_num['train'], dataset.X_num['val']], axis=0) + dataset.X_num['train'] = X_num[train_ixs] + dataset.X_num['val'] = X_num[val_ixs] + + if dataset.X_cat is not None: + X_cat = np.concatenate([dataset.X_cat['train'], dataset.X_cat['val']], axis=0) + dataset.X_cat['train'] = X_cat[train_ixs] + dataset.X_cat['val'] = X_cat[val_ixs] + + return dataset + +def num_process_nans(dataset: Dataset, policy: Optional[NumNanPolicy]) -> Dataset: + + assert dataset.X_num is not None + nan_masks = {k: np.isnan(v) for k, v in dataset.X_num.items()} + if not any(x.any() for x in nan_masks.values()): # type: ignore[code] + # assert policy is None + print('No NaNs in numerical features, skipping') + return dataset + + assert policy is not None + if policy == 'drop-rows': + valid_masks = {k: ~v.any(1) for k, v in nan_masks.items()} + assert valid_masks[ + 'test' + ].all(), 'Cannot drop test rows, since this will affect the final metrics.' + new_data = {} + for data_name in ['X_num', 'X_cat', 'y']: + data_dict = getattr(dataset, data_name) + if data_dict is not None: + new_data[data_name] = { + k: v[valid_masks[k]] for k, v in data_dict.items() + } + dataset = replace(dataset, **new_data) + elif policy == 'mean': + new_values = np.nanmean(dataset.X_num['train'], axis=0) + X_num = deepcopy(dataset.X_num) + for k, v in X_num.items(): + num_nan_indices = np.where(nan_masks[k]) + v[num_nan_indices] = np.take(new_values, num_nan_indices[1]) + dataset = replace(dataset, X_num=X_num) + else: + assert util.raise_unknown('policy', policy) + return dataset + + +# Inspired by: https://github.com/yandex-research/rtdl/blob/a4c93a32b334ef55d2a0559a4407c8306ffeeaee/lib/data.py#L20 +def normalize( + X: ArrayDict, normalization: Normalization, seed: Optional[int], return_normalizer : bool = False +) -> ArrayDict: + X_train = X['train'] + if normalization == 'standard': + normalizer = sklearn.preprocessing.StandardScaler() + elif normalization == 'minmax': + normalizer = sklearn.preprocessing.MinMaxScaler() + elif normalization == 'quantile': + normalizer = sklearn.preprocessing.QuantileTransformer( + output_distribution='normal', + n_quantiles=max(min(X['train'].shape[0] // 30, 1000), 10), + subsample=int(1e9), + random_state=seed, + ) + # noise = 1e-3 + # if noise > 0: + # assert seed is not None + # stds = np.std(X_train, axis=0, keepdims=True) + # noise_std = noise / np.maximum(stds, noise) # type: ignore[code] + # X_train = X_train + noise_std * np.random.default_rng(seed).standard_normal( + # X_train.shape + # ) + else: + util.raise_unknown('normalization', normalization) + + normalizer.fit(X_train) + if return_normalizer: + return {k: normalizer.transform(v) for k, v in X.items()}, normalizer + return {k: normalizer.transform(v) for k, v in X.items()} + +class dequantizer: + def __init__( + self, + dequant_dist: DEQUANT_DIST, + int_col_idx_wrt_num: list, + int_dequant_factor: float, + # return_dequantizer: bool = False + ): + self.dequant_dist = dequant_dist + self.int_col_idx_wrt_num = int_col_idx_wrt_num + self.int_dequant_factor = int_dequant_factor + def transform(self, X): + X_int = X[:, self.int_col_idx_wrt_num] + if self.dequant_dist == 'uniform': + X[:, self.int_col_idx_wrt_num] = X_int+ np.random.uniform(size=X_int.shape) * self.int_dequant_factor + elif self.dequant_dist == 'beta': + X[:, self.int_col_idx_wrt_num] = X_int + np.random.beta(self.int_dequant_factor, self.int_dequant_factor, size=X_int.shape) - 0.5 + elif self.dequant_dist in ['round', 'none']: + pass + return X + def inverse_transform(self, X): + X_int = X[:, self.int_col_idx_wrt_num] + if self.dequant_dist == 'uniform': + X[:, self.int_col_idx_wrt_num] = np.floor(X_int) + elif self.dequant_dist == 'beta': + X[:, self.int_col_idx_wrt_num] = np.rint(X_int) + elif self.dequant_dist == 'round': + X[:, self.int_col_idx_wrt_num] = np.rint(X_int) + elif self.dequant_dist == 'none': + pass + return X + + + # if return_dequantizer: + # return {k: transform(v) for k, v in X.items()}, inverse_transform + # return {k: transform(v) for k, v in X.items()} + +def cat_process_nans(X: ArrayDict, policy: Optional[CatNanPolicy]) -> ArrayDict: + assert X is not None + nan_masks = {k: v == CAT_MISSING_VALUE for k, v in X.items()} + if any(x.any() for x in nan_masks.values()): # type: ignore[code] + if policy is None: + X_new = X + elif policy == 'most_frequent': + imputer = SimpleImputer(missing_values=CAT_MISSING_VALUE, strategy=policy) # type: ignore[code] + imputer.fit(X['train']) + X_new = {k: cast(np.ndarray, imputer.transform(v)) for k, v in X.items()} + else: + util.raise_unknown('categorical NaN policy', policy) + else: + assert policy is None + X_new = X + return X_new + + +def cat_drop_rare(X: ArrayDict, min_frequency: float) -> ArrayDict: + assert 0.0 < min_frequency < 1.0 + min_count = round(len(X['train']) * min_frequency) + X_new = {x: [] for x in X} + for column_idx in range(X['train'].shape[1]): + counter = Counter(X['train'][:, column_idx].tolist()) + popular_categories = {k for k, v in counter.items() if v >= min_count} + for part in X_new: + X_new[part].append( + [ + (x if x in popular_categories else CAT_RARE_VALUE) + for x in X[part][:, column_idx].tolist() + ] + ) + return {k: np.array(v).T for k, v in X_new.items()} + + +def cat_encode( + X: ArrayDict, + encoding: Optional[CatEncoding], + y_train: Optional[np.ndarray], + seed: Optional[int], + return_encoder : bool = False +) -> Tuple[ArrayDict, bool, Optional[Any]]: # (X, is_converted_to_numerical) + if encoding != 'counter': + y_train = None + + # Step 1. Map strings to 0-based ranges + + if encoding is None: + unknown_value = np.iinfo('int64').max - 3 + oe = sklearn.preprocessing.OrdinalEncoder( + handle_unknown='use_encoded_value', # type: ignore[code] + unknown_value=unknown_value, # type: ignore[code] + dtype='int64', # type: ignore[code] + ).fit(X['train']) + encoder = make_pipeline(oe) + encoder.fit(X['train']) + X = {k: encoder.transform(v) for k, v in X.items()} + max_values = X['train'].max(axis=0) + for part in X.keys(): + if part == 'train': continue + for column_idx in range(X[part].shape[1]): + X[part][X[part][:, column_idx] == unknown_value, column_idx] = ( + max_values[column_idx] + 1 + ) + if return_encoder: + return (X, False, encoder) + return (X, False) + + # Step 2. Encode. + + elif encoding == 'one-hot': + ohe = sklearn.preprocessing.OneHotEncoder( + handle_unknown='ignore', sparse_output=False, dtype=np.float32 # type: ignore[code] + ) + encoder = make_pipeline(ohe) + + # encoder.steps.append(('ohe', ohe)) + encoder.fit(X['train']) + X = {k: encoder.transform(v) for k, v in X.items()} + + elif encoding == 'counter': + assert y_train is not None + assert seed is not None + loe = LeaveOneOutEncoder(sigma=0.1, random_state=seed, return_df=False) + encoder.steps.append(('loe', loe)) + encoder.fit(X['train'], y_train) + X = {k: encoder.transform(v).astype('float32') for k, v in X.items()} # type: ignore[code] + if not isinstance(X['train'], pd.DataFrame): + X = {k: v.values for k, v in X.items()} # type: ignore[code] + else: + util.raise_unknown('encoding', encoding) + + if return_encoder: + return X, True, encoder # type: ignore[code] + return (X, True) + + +def build_target( + y: ArrayDict, policy: Optional[YPolicy], task_type: TaskType +) -> Tuple[ArrayDict, Dict[str, Any]]: + info: Dict[str, Any] = {'policy': policy} + if policy is None: + pass + elif policy == 'default': + if task_type == TaskType.REGRESSION: + mean, std = float(y['train'].mean()), float(y['train'].std()) + y = {k: (v - mean) / std for k, v in y.items()} + info['mean'] = mean + info['std'] = std + else: + util.raise_unknown('policy', policy) + return y, info + + +@dataclass(frozen=True) +class Transformations: + seed: int = 0 + normalization: Optional[Normalization] = None + num_nan_policy: Optional[NumNanPolicy] = None + cat_nan_policy: Optional[CatNanPolicy] = None + cat_min_frequency: Optional[float] = None + cat_encoding: Optional[CatEncoding] = None + y_policy: Optional[YPolicy] = 'default' + dequant_dist: Optional[DEQUANT_DIST] = None + int_dequant_factor: Optional[float] = 0.0 + + +def transform_dataset( + dataset: Dataset, + transformations: Transformations, + cache_dir: Optional[Path], + return_transforms: bool = False +) -> Dataset: + # WARNING: the order of transformations matters. Moreover, the current + # implementation is not ideal in that sense. + if cache_dir is not None: + transformations_md5 = hashlib.md5( + str(transformations).encode('utf-8') + ).hexdigest() + transformations_str = '__'.join(map(str, astuple(transformations))) + cache_path = ( + cache_dir / f'cache__{transformations_str}__{transformations_md5}.pickle' + ) + if cache_path.exists(): + cache_transformations, value = util.load_pickle(cache_path) + if transformations == cache_transformations: + print( + f"Using cached features: {cache_dir.name + '/' + cache_path.name}" + ) + return value + else: + raise RuntimeError(f'Hash collision for {cache_path}') + else: + cache_path = None + + if dataset.X_num is not None: + dataset = num_process_nans(dataset, transformations.num_nan_policy) + + num_transform = None + int_transform = None + cat_transform = None + X_num = dataset.X_num + + int_col_idx_wrt_num = dataset.int_col_idx_wrt_num + if X_num is not None and int_col_idx_wrt_num and transformations.dequant_dist is not None: + int_transform = dequantizer( + transformations.dequant_dist, + int_col_idx_wrt_num, + transformations.int_dequant_factor, + ) + X_num = {k: int_transform.transform(v) for k, v in X_num.items()} + + if X_num is not None and transformations.normalization is not None: + has_num = all([x.shape[1]>0 for x in dataset.X_num.values()]) + if has_num: + X_num, num_transform = normalize( + X_num, + transformations.normalization, + transformations.seed, + return_normalizer=True + ) + num_transform = num_transform + + if dataset.X_cat is None: + assert transformations.cat_nan_policy is None + assert transformations.cat_min_frequency is None + # assert transformations.cat_encoding is None + X_cat = None + else: + has_cat = all([x.shape[1]>0 for x in dataset.X_cat.values()]) + if not has_cat: + assert transformations.cat_nan_policy is None + assert transformations.cat_min_frequency is None + X_cat = dataset.X_cat + for split in X_cat.keys(): # a patch to make sure that the empty array is transformed into int dtype + X_cat[split] = X_cat[split].astype(np.int64) + else: + X_cat = cat_process_nans(dataset.X_cat, transformations.cat_nan_policy) + + if transformations.cat_min_frequency is not None: + X_cat = cat_drop_rare(X_cat, transformations.cat_min_frequency) + X_cat, is_num, cat_transform = cat_encode( + X_cat, + transformations.cat_encoding, + dataset.y['train'], + transformations.seed, + return_encoder=True + ) + + if is_num: + X_num = ( + X_cat + if X_num is None + else {x: np.hstack([X_num[x], X_cat[x]]) for x in X_num} + ) + X_cat = None + + + y, y_info = build_target(dataset.y, transformations.y_policy, dataset.task_type) + + dataset = replace(dataset, X_num=X_num, X_cat=X_cat, y=y, y_info=y_info) + dataset.num_transform = num_transform + dataset.int_transform = int_transform + dataset.cat_transform = cat_transform + + if cache_path is not None: + util.dump_pickle((transformations, dataset), cache_path) + # if return_transforms: + # return dataset, num_transform, cat_transform + return dataset + + +def build_dataset( + path: Union[str, Path], + transformations: Transformations, + cache: bool +) -> Dataset: + path = Path(path) + dataset = Dataset.from_dir(path) + return transform_dataset(dataset, transformations, path if cache else None) + + +def prepare_tensors( + dataset: Dataset, device: Union[str, torch.device] +) -> Tuple[Optional[TensorDict], Optional[TensorDict], TensorDict]: + X_num, X_cat, Y = ( + None if x is None else {k: torch.as_tensor(v) for k, v in x.items()} + for x in [dataset.X_num, dataset.X_cat, dataset.y] + ) + if device.type != 'cpu': + X_num, X_cat, Y = ( + None if x is None else {k: v.to(device) for k, v in x.items()} + for x in [X_num, X_cat, Y] + ) + assert X_num is not None + assert Y is not None + if not dataset.is_multiclass: + Y = {k: v.float() for k, v in Y.items()} + return X_num, X_cat, Y + +############### +## DataLoader## +############### + +class TabDataset(torch.utils.data.Dataset): + def __init__( + self, dataset : Dataset, split : Literal['train', 'val', 'test'] + ): + super().__init__() + + self.X_num = torch.from_numpy(dataset.X_num[split]) if dataset.X_num is not None else None + self.X_cat = torch.from_numpy(dataset.X_cat[split]) if dataset.X_cat is not None else None + self.y = torch.from_numpy(dataset.y[split]) + + assert self.y is not None + assert self.X_num is not None or self.X_cat is not None + + def __len__(self): + return len(self.y) + + def __getitem__(self, idx): + out_dict = { + 'y': self.y[idx].long() if self.y is not None else None, + } + + x = np.empty((0,)) + if self.X_num is not None: + x = self.X_num[idx] + if self.X_cat is not None: + x = torch.cat([x, self.X_cat[idx]], dim=0) + return x.float(), out_dict + +def prepare_dataloader( + dataset : Dataset, + split : str, + batch_size: int, +): + + torch_dataset = TabDataset(dataset, split) + loader = torch.utils.data.DataLoader( + torch_dataset, + batch_size=batch_size, + shuffle=(split == 'train'), + num_workers=1, + ) + while True: + yield from loader + +def prepare_torch_dataloader( + dataset : Dataset, + split : str, + shuffle : bool, + batch_size: int, +) -> torch.utils.data.DataLoader: + + torch_dataset = TabDataset(dataset, split) + loader = torch.utils.data.DataLoader(torch_dataset, batch_size=batch_size, shuffle=shuffle, num_workers=1) + + return loader + +def dataset_from_csv(paths : Dict[str, str], cat_features, target, T): + assert 'train' in paths + y = {} + X_num = {} + X_cat = {} if len(cat_features) else None + for split in paths.keys(): + df = pd.read_csv(paths[split]) + y[split] = df[target].to_numpy().astype(float) + if X_cat is not None: + X_cat[split] = df[cat_features].to_numpy().astype(str) + X_num[split] = df.drop(cat_features + [target], axis=1).to_numpy().astype(float) + + dataset = Dataset(X_num, X_cat, y, {}, None, len(np.unique(y['train']))) + return transform_dataset(dataset, T, None) + +class FastTensorDataLoader: + """ + A DataLoader-like object for a set of tensors that can be much faster than + TensorDataset + DataLoader because dataloader grabs individual indices of + the dataset and calls cat (slow). + Source: https://discuss.pytorch.org/t/dataloader-much-slower-than-manual-batching/27014/6 + """ + def __init__(self, *tensors, batch_size=32, shuffle=False): + """ + Initialize a FastTensorDataLoader. + :param *tensors: tensors to store. Must have the same length @ dim 0. + :param batch_size: batch size to load. + :param shuffle: if True, shuffle the data *in-place* whenever an + iterator is created out of this object. + :returns: A FastTensorDataLoader. + """ + assert all(t.shape[0] == tensors[0].shape[0] for t in tensors) + self.tensors = tensors + + self.dataset_len = self.tensors[0].shape[0] + self.batch_size = batch_size + self.shuffle = shuffle + + # Calculate # batches + n_batches, remainder = divmod(self.dataset_len, self.batch_size) + if remainder > 0: + n_batches += 1 + self.n_batches = n_batches + def __iter__(self): + if self.shuffle: + r = torch.randperm(self.dataset_len) + self.tensors = [t[r] for t in self.tensors] + self.i = 0 + return self + + def __next__(self): + if self.i >= self.dataset_len: + raise StopIteration + batch = tuple(t[self.i:self.i+self.batch_size] for t in self.tensors) + self.i += self.batch_size + return batch + + def __len__(self): + return self.n_batches + +def prepare_fast_dataloader( + D : Dataset, + split : str, + batch_size: int +): + + X = torch.from_numpy(np.concatenate([D.X_num[split], D.X_cat[split]], axis=1)).float() + dataloader = FastTensorDataLoader(X, batch_size=batch_size, shuffle=(split=='train')) + while True: + yield from dataloader + +def prepare_fast_torch_dataloader( + D : Dataset, + split : str, + batch_size: int +): + if D.X_cat is not None: + X = torch.from_numpy(np.concatenate([D.X_num[split], D.X_cat[split]], axis=1)).float() + else: + X = torch.from_numpy(D.X_num[split]).float() + y = torch.from_numpy(D.y[split]) + dataloader = FastTensorDataLoader(X, y, batch_size=batch_size, shuffle=(split=='train')) + return dataloader + +def round_columns(X_real, X_synth, columns): + for col in columns: + uniq = np.unique(X_real[:,col]) + dist = cdist(X_synth[:, col][:, np.newaxis].astype(float), uniq[:, np.newaxis].astype(float)) + X_synth[:, col] = uniq[dist.argmin(axis=1)] + return X_synth + +def concat_features(D : Dataset): + if D.X_num is None: + assert D.X_cat is not None + X = {k: pd.DataFrame(v, columns=range(D.n_features)) for k, v in D.X_cat.items()} + elif D.X_cat is None: + assert D.X_num is not None + X = {k: pd.DataFrame(v, columns=range(D.n_features)) for k, v in D.X_num.items()} + else: + X = { + part: pd.concat( + [ + pd.DataFrame(D.X_num[part], columns=range(D.n_num_features)), + pd.DataFrame( + D.X_cat[part], + columns=range(D.n_num_features, D.n_features), + ), + ], + axis=1, + ) + for part in D.y.keys() + } + + return X + +def concat_to_pd(X_num, X_cat, y): + if X_num is None: + return pd.concat([ + pd.DataFrame(X_cat, columns=list(range(X_cat.shape[1]))), + pd.DataFrame(y, columns=['y']) + ], axis=1) + if X_cat is not None: + return pd.concat([ + pd.DataFrame(X_num, columns=list(range(X_num.shape[1]))), + pd.DataFrame(X_cat, columns=list(range(X_num.shape[1], X_num.shape[1] + X_cat.shape[1]))), + pd.DataFrame(y, columns=['y']) + ], axis=1) + return pd.concat([ + pd.DataFrame(X_num, columns=list(range(X_num.shape[1]))), + pd.DataFrame(y, columns=['y']) + ], axis=1) + +def read_pure_data(path, split='train'): + y = np.load(os.path.join(path, f'y_{split}.npy'), allow_pickle=True) + X_num = None + X_cat = None + if os.path.exists(os.path.join(path, f'X_num_{split}.npy')): + X_num = np.load(os.path.join(path, f'X_num_{split}.npy'), allow_pickle=True) + if os.path.exists(os.path.join(path, f'X_cat_{split}.npy')): + X_cat = np.load(os.path.join(path, f'X_cat_{split}.npy'), allow_pickle=True) + + return X_num, X_cat, y + +def read_changed_val(path, val_size=0.2): + path = Path(path) + X_num_train, X_cat_train, y_train = read_pure_data(path, 'train') + X_num_val, X_cat_val, y_val = read_pure_data(path, 'val') + is_regression = load_json(path / 'info.json')['task_type'] == 'regression' + + y = np.concatenate([y_train, y_val], axis=0) + + ixs = np.arange(y.shape[0]) + if is_regression: + train_ixs, val_ixs = train_test_split(ixs, test_size=val_size, random_state=777) + else: + train_ixs, val_ixs = train_test_split(ixs, test_size=val_size, random_state=777, stratify=y) + y_train = y[train_ixs] + y_val = y[val_ixs] + + if X_num_train is not None: + X_num = np.concatenate([X_num_train, X_num_val], axis=0) + X_num_train = X_num[train_ixs] + X_num_val = X_num[val_ixs] + + if X_cat_train is not None: + X_cat = np.concatenate([X_cat_train, X_cat_val], axis=0) + X_cat_train = X_cat[train_ixs] + X_cat_val = X_cat[val_ixs] + + return X_num_train, X_cat_train, y_train, X_num_val, X_cat_val, y_val + +############# + +def load_dataset_info(dataset_dir_name: str) -> Dict[str, Any]: + path = Path("data/" + dataset_dir_name) + info = util.load_json(path / 'info.json') + info['size'] = info['train_size'] + info['val_size'] + info['test_size'] + info['n_features'] = info['n_num_features'] + info['n_cat_features'] + info['path'] = path + return info \ No newline at end of file diff --git a/SynthData0523/main/c15/tabbyflow/tabbyflow-c15-20260513_061551/_efvfm_runtime/src/env.py b/SynthData0523/main/c15/tabbyflow/tabbyflow-c15-20260513_061551/_efvfm_runtime/src/env.py new file mode 100644 index 0000000000000000000000000000000000000000..0b9dd619f31450414a9b31585aa58b9121834fbe --- /dev/null +++ b/SynthData0523/main/c15/tabbyflow/tabbyflow-c15-20260513_061551/_efvfm_runtime/src/env.py @@ -0,0 +1,39 @@ +""" +Have not used in TabDDPM project. +""" + +import datetime +import os +import shutil +import typing as ty +from pathlib import Path + +PROJ = Path('tab-ddpm/').absolute().resolve() +EXP = PROJ / 'exp' +DATA = PROJ / 'data' + + +def get_path(path: ty.Union[str, Path]) -> Path: + if isinstance(path, str): + path = Path(path) + if not path.is_absolute(): + path = PROJ / path + return path.resolve() + + +def get_relative_path(path: ty.Union[str, Path]) -> Path: + return get_path(path).relative_to(PROJ) + + +def duplicate_path( + src: ty.Union[str, Path], alternative_project_dir: ty.Union[str, Path] +) -> None: + src = get_path(src) + alternative_project_dir = get_path(alternative_project_dir) + dst = alternative_project_dir / src.relative_to(PROJ) + dst.parent.mkdir(parents=True, exist_ok=True) + if dst.exists(): + dst = dst.with_name( + dst.name + '_' + datetime.datetime.now().strftime('%Y%m%dT%H%M%S') + ) + (shutil.copytree if src.is_dir() else shutil.copyfile)(src, dst) \ No newline at end of file diff --git a/SynthData0523/main/c15/tabbyflow/tabbyflow-c15-20260513_061551/_efvfm_runtime/src/metrics.py b/SynthData0523/main/c15/tabbyflow/tabbyflow-c15-20260513_061551/_efvfm_runtime/src/metrics.py new file mode 100644 index 0000000000000000000000000000000000000000..188a9be3f8e9d59b07688aa189a876660dbef7cd --- /dev/null +++ b/SynthData0523/main/c15/tabbyflow/tabbyflow-c15-20260513_061551/_efvfm_runtime/src/metrics.py @@ -0,0 +1,157 @@ +import enum +from typing import Any, Optional, Tuple, Dict, Union, cast +from functools import partial + +import numpy as np +import scipy.special +import sklearn.metrics as skm + +from . import util +from .util import TaskType + + +class PredictionType(enum.Enum): + LOGITS = 'logits' + PROBS = 'probs' + +class MetricsReport: + def __init__(self, report: dict, task_type: TaskType): + self._res = {k: {} for k in report.keys()} + if task_type in (TaskType.BINCLASS, TaskType.MULTICLASS): + self._metrics_names = ["acc", "f1"] + for k in report.keys(): + self._res[k]["acc"] = report[k]["accuracy"] + self._res[k]["f1"] = report[k]["macro avg"]["f1-score"] + if task_type == TaskType.BINCLASS: + self._res[k]["roc_auc"] = report[k]["roc_auc"] + self._metrics_names.append("roc_auc") + + elif task_type == TaskType.REGRESSION: + self._metrics_names = ["r2", "rmse"] + for k in report.keys(): + self._res[k]["r2"] = report[k]["r2"] + self._res[k]["rmse"] = report[k]["rmse"] + else: + raise "Unknown TaskType!" + + def get_splits_names(self) -> list[str]: + return self._res.keys() + + def get_metrics_names(self) -> list[str]: + return self._metrics_names + + def get_metric(self, split: str, metric: str) -> float: + return self._res[split][metric] + + def get_val_score(self) -> float: + return self._res["val"]["r2"] if "r2" in self._res["val"] else self._res["val"]["f1"] + + def get_test_score(self) -> float: + return self._res["test"]["r2"] if "r2" in self._res["test"] else self._res["test"]["f1"] + + def print_metrics(self) -> None: + res = { + "val": {k: np.around(self._res["val"][k], 4) for k in self._res["val"]}, + "test": {k: np.around(self._res["test"][k], 4) for k in self._res["test"]} + } + + print("*"*100) + print("[val]") + print(res["val"]) + print("[test]") + print(res["test"]) + + return res + +class SeedsMetricsReport: + def __init__(self): + self._reports = [] + + def add_report(self, report: MetricsReport) -> None: + self._reports.append(report) + + def get_mean_std(self) -> dict: + res = {k: {} for k in ["train", "val", "test"]} + for split in self._reports[0].get_splits_names(): + for metric in self._reports[0].get_metrics_names(): + res[split][metric] = [x.get_metric(split, metric) for x in self._reports] + + agg_res = {k: {} for k in ["train", "val", "test"]} + for split in self._reports[0].get_splits_names(): + for metric in self._reports[0].get_metrics_names(): + for k, f in [("count", len), ("mean", np.mean), ("std", np.std)]: + agg_res[split][f"{metric}-{k}"] = f(res[split][metric]) + self._res = res + self._agg_res = agg_res + + return agg_res + + def print_result(self) -> dict: + res = {split: {k: float(np.around(self._agg_res[split][k], 4)) for k in self._agg_res[split]} for split in ["val", "test"]} + print("="*100) + print("EVAL RESULTS:") + print("[val]") + print(res["val"]) + print("[test]") + print(res["test"]) + print("="*100) + return res + +def calculate_rmse( + y_true: np.ndarray, y_pred: np.ndarray, std = None) -> float: + rmse = skm.mean_squared_error(y_true, y_pred) ** 0.5 + if std is not None: + rmse *= std + return rmse + + +def _get_labels_and_probs( + y_pred: np.ndarray, task_type: TaskType, prediction_type: Optional[PredictionType] +) -> Tuple[np.ndarray, Optional[np.ndarray]]: + assert task_type in (TaskType.BINCLASS, TaskType.MULTICLASS) + + if prediction_type is None: + return y_pred, None + + if prediction_type == PredictionType.LOGITS: + probs = ( + scipy.special.expit(y_pred) + if task_type == TaskType.BINCLASS + else scipy.special.softmax(y_pred, axis=1) + ) + elif prediction_type == PredictionType.PROBS: + probs = y_pred + else: + util.raise_unknown('prediction_type', prediction_type) + + assert probs is not None + labels = np.round(probs) if task_type == TaskType.BINCLASS else probs.argmax(axis=1) + return labels.astype('int64'), probs + + +def calculate_metrics( + y_true: np.ndarray, + y_pred: np.ndarray, + task_type: Union[str, TaskType], + prediction_type: Optional[Union[str, PredictionType]], + y_info: Dict[str, Any], +) -> Dict[str, Any]: + # Example: calculate_metrics(y_true, y_pred, 'binclass', 'logits', {}) + task_type = TaskType(task_type) + if prediction_type is not None: + prediction_type = PredictionType(prediction_type) + + if task_type == TaskType.REGRESSION: + assert prediction_type is None + assert 'std' in y_info + rmse = calculate_rmse(y_true, y_pred, y_info['std']) + r2 = skm.r2_score(y_true, y_pred) + result = {'rmse': rmse, 'r2': r2} + else: + labels, probs = _get_labels_and_probs(y_pred, task_type, prediction_type) + result = cast( + Dict[str, Any], skm.classification_report(y_true, labels, output_dict=True) + ) + if task_type == TaskType.BINCLASS: + result['roc_auc'] = skm.roc_auc_score(y_true, probs) + return result \ No newline at end of file diff --git a/SynthData0523/main/c15/tabbyflow/tabbyflow-c15-20260513_061551/_efvfm_runtime/src/util.py b/SynthData0523/main/c15/tabbyflow/tabbyflow-c15-20260513_061551/_efvfm_runtime/src/util.py new file mode 100644 index 0000000000000000000000000000000000000000..e105c961803b3bf0f8282e673eed8e84eaaa3891 --- /dev/null +++ b/SynthData0523/main/c15/tabbyflow/tabbyflow-c15-20260513_061551/_efvfm_runtime/src/util.py @@ -0,0 +1,347 @@ +import argparse +import atexit +import enum +import json +import os +import pickle +import shutil +import sys +import time +import uuid +from copy import deepcopy +from dataclasses import asdict, fields, is_dataclass +from pathlib import Path +from pprint import pprint +from typing import Any, Callable, List, Dict, Type, Optional, Tuple, TypeVar, Union, cast, get_args, get_origin + +import __main__ +import numpy as np +import tomli +import tomli_w +import torch +import typing as ty + +from . import env + +RawConfig = Dict[str, Any] +Report = Dict[str, Any] +T = TypeVar('T') + + +class Part(enum.Enum): + TRAIN = 'train' + VAL = 'val' + TEST = 'test' + + def __str__(self) -> str: + return self.value + + +class TaskType(enum.Enum): + BINCLASS = 'binclass' + MULTICLASS = 'multiclass' + REGRESSION = 'regression' + + def __str__(self) -> str: + return self.value + + + +def update_training_log(training_log, data, metrics): + def _update(log_part, data_part): + for k, v in data_part.items(): + if isinstance(v, dict): + _update(log_part.setdefault(k, {}), v) + elif isinstance(v, list): + log_part.setdefault(k, []).extend(v) + else: + log_part.setdefault(k, []).append(v) + + _update(training_log, data) + transposed_metrics = {} + for part, part_metrics in metrics.items(): + for metric_name, value in part_metrics.items(): + transposed_metrics.setdefault(metric_name, {})[part] = value + _update(training_log, transposed_metrics) + + +def raise_unknown(unknown_what: str, unknown_value: Any): + raise ValueError(f'Unknown {unknown_what}: {unknown_value}') + + +def _replace(data, condition, value): + def do(x): + if isinstance(x, dict): + return {k: do(v) for k, v in x.items()} + elif isinstance(x, list): + return [do(y) for y in x] + else: + return value if condition(x) else x + + return do(data) + + +_CONFIG_NONE = '__none__' + + +def unpack_config(config: RawConfig) -> RawConfig: + config = cast(RawConfig, _replace(config, lambda x: x == _CONFIG_NONE, None)) + return config + + +def pack_config(config: RawConfig) -> RawConfig: + config = cast(RawConfig, _replace(config, lambda x: x is None, _CONFIG_NONE)) + return config + + +def load_config(path: Union[Path, str]) -> Any: + with open(path, 'rb') as f: + return unpack_config(tomli.load(f)) + + +def dump_config(config: Any, path: Union[Path, str]) -> None: + with open(path, 'wb') as f: + tomli_w.dump(pack_config(config), f) + # check that there are no bugs in all these "pack/unpack" things + assert config == load_config(path) + + +def load_json(path: Union[Path, str], **kwargs) -> Any: + return json.loads(Path(path).read_text(), **kwargs) + + +def dump_json(x: Any, path: Union[Path, str], **kwargs) -> None: + kwargs.setdefault('indent', 4) + Path(path).write_text(json.dumps(x, **kwargs) + '\n') + + +def load_pickle(path: Union[Path, str], **kwargs) -> Any: + return pickle.loads(Path(path).read_bytes(), **kwargs) + + +def dump_pickle(x: Any, path: Union[Path, str], **kwargs) -> None: + Path(path).write_bytes(pickle.dumps(x, **kwargs)) + + +def load(path: Union[Path, str], **kwargs) -> Any: + return globals()[f'load_{Path(path).suffix[1:]}'](Path(path), **kwargs) + + +def dump(x: Any, path: Union[Path, str], **kwargs) -> Any: + return globals()[f'dump_{Path(path).suffix[1:]}'](x, Path(path), **kwargs) + + +def _get_output_item_path( + path: Union[str, Path], filename: str, must_exist: bool +) -> Path: + path = env.get_path(path) + if path.suffix == '.toml': + path = path.with_suffix('') + if path.is_dir(): + path = path / filename + else: + assert path.name == filename + assert path.parent.exists() + if must_exist: + assert path.exists() + return path + + +def load_report(path: Path) -> Report: + return load_json(_get_output_item_path(path, 'report.json', True)) + + +def dump_report(report: dict, path: Path) -> None: + dump_json(report, _get_output_item_path(path, 'report.json', False)) + + +def load_predictions(path: Path) -> Dict[str, np.ndarray]: + with np.load(_get_output_item_path(path, 'predictions.npz', True)) as predictions: + return {x: predictions[x] for x in predictions} + + +def dump_predictions(predictions: Dict[str, np.ndarray], path: Path) -> None: + np.savez(_get_output_item_path(path, 'predictions.npz', False), **predictions) + + +def dump_metrics(metrics: Dict[str, Any], path: Path) -> None: + dump_json(metrics, _get_output_item_path(path, 'metrics.json', False)) + + +def load_checkpoint(path: Path, *args, **kwargs) -> Dict[str, np.ndarray]: + return torch.load( + _get_output_item_path(path, 'checkpoint.pt', True), *args, **kwargs + ) + + +def get_device() -> torch.device: + if torch.cuda.is_available(): + assert os.environ.get('CUDA_VISIBLE_DEVICES') is not None + return torch.device('cuda:0') + else: + return torch.device('cpu') + + +def _print_sep(c, size=100): + print(c * size) + + +_LAST_SNAPSHOT_TIME = None + + +def backup_output(output_dir: Path) -> None: + backup_dir = os.environ.get('TMP_OUTPUT_PATH') + snapshot_dir = os.environ.get('SNAPSHOT_PATH') + if backup_dir is None: + assert snapshot_dir is None + return + assert snapshot_dir is not None + + try: + relative_output_dir = output_dir.relative_to(env.PROJ) + except ValueError: + return + + for dir_ in [backup_dir, snapshot_dir]: + new_output_dir = dir_ / relative_output_dir + prev_backup_output_dir = new_output_dir.with_name(new_output_dir.name + '_prev') + new_output_dir.parent.mkdir(exist_ok=True, parents=True) + if new_output_dir.exists(): + new_output_dir.rename(prev_backup_output_dir) + shutil.copytree(output_dir, new_output_dir) + # the case for evaluate.py which automatically creates configs + if output_dir.with_suffix('.toml').exists(): + shutil.copyfile( + output_dir.with_suffix('.toml'), new_output_dir.with_suffix('.toml') + ) + if prev_backup_output_dir.exists(): + shutil.rmtree(prev_backup_output_dir) + + global _LAST_SNAPSHOT_TIME + if _LAST_SNAPSHOT_TIME is None or time.time() - _LAST_SNAPSHOT_TIME > 10 * 60: + import nirvana_dl.snapshot # type: ignore[code] + + nirvana_dl.snapshot.dump_snapshot() + _LAST_SNAPSHOT_TIME = time.time() + print('The snapshot was saved!') + + +def _get_scores(metrics: Dict[str, Dict[str, Any]]) -> Optional[Dict[str, float]]: + return ( + {k: v['score'] for k, v in metrics.items()} + if 'score' in next(iter(metrics.values())) + else None + ) + + +def format_scores(metrics: Dict[str, Dict[str, Any]]) -> str: + return ' '.join( + f"[{x}] {metrics[x]['score']:.3f}" + for x in ['test', 'val', 'train'] + if x in metrics + ) + + +def finish(output_dir: Path, report: dict) -> None: + print() + _print_sep('=') + + metrics = report.get('metrics') + if metrics is not None: + scores = _get_scores(metrics) + if scores is not None: + dump_json(scores, output_dir / 'scores.json') + print(format_scores(metrics)) + _print_sep('-') + + dump_report(report, output_dir) + json_output_path = os.environ.get('JSON_OUTPUT_FILE') + if json_output_path: + try: + key = str(output_dir.relative_to(env.PROJ)) + except ValueError: + pass + else: + json_output_path = Path(json_output_path) + try: + json_data = json.loads(json_output_path.read_text()) + except (FileNotFoundError, json.decoder.JSONDecodeError): + json_data = {} + json_data[key] = load_json(output_dir / 'report.json') + json_output_path.write_text(json.dumps(json_data, indent=4)) + shutil.copyfile( + json_output_path, + os.path.join(os.environ['SNAPSHOT_PATH'], 'json_output.json'), + ) + + output_dir.joinpath('DONE').touch() + backup_output(output_dir) + print(f'Done! | {report.get("time")} | {output_dir}') + _print_sep('=') + print() + + +def from_dict(datacls: Type[T], data: dict) -> T: + assert is_dataclass(datacls) + data = deepcopy(data) + for field in fields(datacls): + if field.name not in data: + continue + if is_dataclass(field.type): + data[field.name] = from_dict(field.type, data[field.name]) + elif ( + get_origin(field.type) is Union + and len(get_args(field.type)) == 2 + and get_args(field.type)[1] is type(None) + and is_dataclass(get_args(field.type)[0]) + ): + if data[field.name] is not None: + data[field.name] = from_dict(get_args(field.type)[0], data[field.name]) + return datacls(**data) + + +def replace_factor_with_value( + config: RawConfig, + key: str, + reference_value: int, + bounds: Tuple[float, float], +) -> None: + factor_key = key + '_factor' + if factor_key not in config: + assert key in config + else: + assert key not in config + factor = config.pop(factor_key) + assert bounds[0] <= factor <= bounds[1] + config[key] = int(factor * reference_value) + + +def get_temporary_copy(path: Union[str, Path]) -> Path: + path = env.get_path(path) + assert not path.is_dir() and not path.is_symlink() + tmp_path = path.with_name( + path.stem + '___' + str(uuid.uuid4()).replace('-', '') + path.suffix + ) + shutil.copyfile(path, tmp_path) + atexit.register(lambda: tmp_path.unlink()) + return tmp_path + + +def get_python(): + python = Path('python3.9') + return str(python) if python.exists() else 'python' + +def get_catboost_config(real_data_path, is_cv=False): + ds_name = Path(real_data_path).name + C = load_json(f'tuned_models/catboost/{ds_name}_cv.json') + return C + +def get_categories(X_train_cat): + return ( + None + if X_train_cat is None + else [ + len(set(X_train_cat[:, i])) + for i in range(X_train_cat.shape[1]) + ] + ) \ No newline at end of file diff --git a/SynthData0523/main/c15/tabbyflow/tabbyflow-c15-20260513_061551/_efvfm_runtime/synthetic/pipeline_c15/real.csv b/SynthData0523/main/c15/tabbyflow/tabbyflow-c15-20260513_061551/_efvfm_runtime/synthetic/pipeline_c15/real.csv new file mode 100644 index 0000000000000000000000000000000000000000..967ce34a61d83f8f09447cc3e2ce8f1a73b799e8 --- /dev/null +++ b/SynthData0523/main/c15/tabbyflow/tabbyflow-c15-20260513_061551/_efvfm_runtime/synthetic/pipeline_c15/real.csv @@ -0,0 +1,3 @@ +version https://git-lfs.github.com/spec/v1 +oid sha256:e60fda0bb5a782d4e6917157f5a204d44e8e15de208c863574afc98855561477 +size 68240502 diff --git a/SynthData0523/main/c15/tabbyflow/tabbyflow-c15-20260513_061551/_efvfm_runtime/synthetic/pipeline_c15/test.csv b/SynthData0523/main/c15/tabbyflow/tabbyflow-c15-20260513_061551/_efvfm_runtime/synthetic/pipeline_c15/test.csv new file mode 100644 index 0000000000000000000000000000000000000000..67b549d6a95a03359067699b667474323850f070 --- /dev/null +++ b/SynthData0523/main/c15/tabbyflow/tabbyflow-c15-20260513_061551/_efvfm_runtime/synthetic/pipeline_c15/test.csv @@ -0,0 +1,3 @@ +version https://git-lfs.github.com/spec/v1 +oid sha256:1e68fec0fb16fb89b5e58bbb7949b744ebd11f8bf7b1d0c7aad908b17a2afb72 +size 8530452 diff --git a/SynthData0523/main/c15/tabbyflow/tabbyflow-c15-20260513_061551/_efvfm_runtime/synthetic/pipeline_c15/val.csv b/SynthData0523/main/c15/tabbyflow/tabbyflow-c15-20260513_061551/_efvfm_runtime/synthetic/pipeline_c15/val.csv new file mode 100644 index 0000000000000000000000000000000000000000..55b5daf57a73892001ce24450b4a2a50497e1a7d --- /dev/null +++ b/SynthData0523/main/c15/tabbyflow/tabbyflow-c15-20260513_061551/_efvfm_runtime/synthetic/pipeline_c15/val.csv @@ -0,0 +1,3 @@ +version https://git-lfs.github.com/spec/v1 +oid sha256:db13b576ba5284f2712b174f1b4445147bcb12fa295a4e38a1dc269d999d09fa +size 8528882 diff --git a/SynthData0523/main/c15/tabbyflow/tabbyflow-c15-20260513_061551/_efvfm_runtime/tests/conftest.py b/SynthData0523/main/c15/tabbyflow/tabbyflow-c15-20260513_061551/_efvfm_runtime/tests/conftest.py new file mode 100644 index 0000000000000000000000000000000000000000..f06feabdb2e28287232689c91868cc8e58730387 --- /dev/null +++ b/SynthData0523/main/c15/tabbyflow/tabbyflow-c15-20260513_061551/_efvfm_runtime/tests/conftest.py @@ -0,0 +1,193 @@ +import pytest +import numpy as np +import torch +import torch.nn.functional as F +from unittest.mock import MagicMock + + +# --------------- dimension configs --------------- + +@pytest.fixture +def dims(): + """Standard mixed-data dimensions.""" + return {"d_numerical": 4, "categories": np.array([3, 5, 2]), "batch_size": 8, "d_token": 16} + + +@pytest.fixture +def dims_numerical_only(): + """Numerical-only scenario (no categorical features).""" + return {"d_numerical": 5, "categories": None, "batch_size": 8, "d_token": 16} + + +@pytest.fixture +def dims_single(): + """Minimal scenario: 1 numerical, 1 categorical with 2 classes.""" + return {"d_numerical": 1, "categories": np.array([2]), "batch_size": 4, "d_token": 8} + + +# --------------- dummy input factory --------------- + +@pytest.fixture +def make_dummy_inputs(): + """Factory: returns (x_num, x_cat_onehot, x_cat_int, timesteps) from any dims.""" + def _make(d_numerical, categories, batch_size): + torch.manual_seed(42) + x_num = torch.randn(batch_size, d_numerical) + if categories is not None and len(categories) > 0: + cat_parts = [] + for k in categories: + indices = torch.randint(0, k, (batch_size,)) + cat_parts.append(F.one_hot(indices, k).float()) + x_cat_onehot = torch.cat(cat_parts, dim=1) + x_cat_int = torch.stack( + [torch.randint(0, k, (batch_size,)) for k in categories], dim=1 + ) + else: + x_cat_onehot = None + x_cat_int = None + timesteps = torch.rand(batch_size) + return x_num, x_cat_onehot, x_cat_int, timesteps + return _make + + +# --------------- model factories --------------- + +@pytest.fixture +def make_tokenizer(): + from ef_vfm.modules.transformer import Tokenizer + def _make(d_numerical, categories, d_token, bias=True): + cats = list(categories) if categories is not None else None + return Tokenizer(d_numerical, cats, d_token, bias) + return _make + + +@pytest.fixture +def make_transformer(): + from ef_vfm.modules.transformer import Transformer + def _make(d_token, n_layers=2, n_heads=1, d_ffn_factor=4, activation='gelu'): + return Transformer(n_layers, d_token, n_heads, d_token, d_ffn_factor, activation=activation) + return _make + + +@pytest.fixture +def make_reconstructor(): + from ef_vfm.modules.transformer import Reconstructor + def _make(d_numerical, categories, d_token): + cats = list(categories) if categories is not None else [] + return Reconstructor(d_numerical, cats, d_token) + return _make + + +@pytest.fixture +def make_mlp(): + from ef_vfm.modules.main_modules import MLP + def _make(d_in, dim_t=128, use_mlp=True): + return MLP(d_in, dim_t=dim_t, use_mlp=use_mlp) + return _make + + +@pytest.fixture +def make_unimodmlp(): + from ef_vfm.modules.main_modules import UniModMLP + def _make(d_numerical, categories, d_token=16, n_layers=1, n_head=1, + factor=4, dim_t=64, activation='gelu'): + cats = list(categories) if categories is not None else [] + return UniModMLP( + d_numerical, cats, n_layers, d_token, + n_head=n_head, factor=factor, dim_t=dim_t, activation=activation, + ) + return _make + + +@pytest.fixture +def make_flow_model(): + from ef_vfm.modules.main_modules import UniModMLP + from ef_vfm.models.flow_model import ExpVFM + def _make(d_numerical, categories, d_token=16, n_layers=1, dim_t=64): + cats_list = list(categories) if categories is not None else [] + cats_np = np.array(cats_list) + model = UniModMLP( + d_numerical, cats_list, n_layers, d_token, + n_head=1, factor=4, dim_t=dim_t, activation='gelu', + ) + flow = ExpVFM( + num_classes=cats_np, + num_numerical_features=d_numerical, + vf_fn=model, + device=torch.device('cpu'), + ) + return flow + return _make + + +@pytest.fixture +def make_trainer(): + """Factory: creates a minimal Trainer with mocked external dependencies.""" + from ef_vfm.modules.main_modules import UniModMLP + from ef_vfm.models.flow_model import ExpVFM + from ef_vfm.trainer import Trainer + + def _make(d_numerical=4, categories=np.array([3, 5, 2]), + lr=0.001, max_grad_norm=1.0, warmup_epochs=0, + lr_scheduler='reduce_lr_on_plateau', steps=10, tmp_path=None): + + cats_list = list(categories) if categories is not None else [] + cats_np = np.array(cats_list) + + model = UniModMLP( + d_numerical, cats_list, 1, 16, + n_head=1, factor=4, dim_t=64, activation='gelu', + ) + flow = ExpVFM( + num_classes=cats_np, + num_numerical_features=d_numerical, + vf_fn=model, + device=torch.device('cpu'), + ) + + # Build a small synthetic dataset: [N, d_num + len(cats)] with int cat indices + n_samples = 32 + x_num = torch.randn(n_samples, d_numerical) + if len(cats_list) > 0: + x_cat = torch.stack( + [torch.randint(0, k, (n_samples,)) for k in cats_list], dim=1 + ).float() + data = torch.cat([x_num, x_cat], dim=1) + else: + data = x_num + + dataset = torch.utils.data.TensorDataset(data) + train_iter = torch.utils.data.DataLoader(dataset, batch_size=8, shuffle=False) + # DataLoader wraps in tuples; Trainer expects raw tensors, so use a wrapper + class _UnwrapLoader: + def __init__(self, loader): + self._loader = loader + def __iter__(self): + for (batch,) in self._loader: + yield batch + def __len__(self): + return len(self._loader) + + save_path = str(tmp_path) if tmp_path else "/tmp" + trainer = Trainer( + flow=flow, + train_iter=_UnwrapLoader(train_iter), + dataset=MagicMock(), + test_dataset=MagicMock(), + metrics=MagicMock(), + logger=MagicMock(), + lr=lr, + weight_decay=0, + steps=steps, + batch_size=8, + check_val_every=steps + 1, # never evaluate during test + sample_batch_size=8, + model_save_path=save_path, + result_save_path=save_path, + lr_scheduler=lr_scheduler, + max_grad_norm=max_grad_norm, + warmup_epochs=warmup_epochs, + device=torch.device('cpu'), + ) + return trainer + return _make diff --git a/SynthData0523/main/c15/tabbyflow/tabbyflow-c15-20260513_061551/_efvfm_runtime/tests/test_attention.py b/SynthData0523/main/c15/tabbyflow/tabbyflow-c15-20260513_061551/_efvfm_runtime/tests/test_attention.py new file mode 100644 index 0000000000000000000000000000000000000000..6082db42ad2dff94440f4cc07659c57cf6326de4 --- /dev/null +++ b/SynthData0523/main/c15/tabbyflow/tabbyflow-c15-20260513_061551/_efvfm_runtime/tests/test_attention.py @@ -0,0 +1,51 @@ +import pytest +import torch +from ef_vfm.modules.transformer import MultiheadAttention + + +def test_output_shape_single_head(): + attn = MultiheadAttention(d=16, n_heads=1, dropout=0.0) + x = torch.randn(4, 5, 16) + out = attn(x, x) + assert out.shape == (4, 5, 16) + + +def test_output_shape_multi_head(): + attn = MultiheadAttention(d=16, n_heads=4, dropout=0.0) + x = torch.randn(4, 5, 16) + out = attn(x, x) + assert out.shape == (4, 5, 16) + + +def test_no_W_out_single_head(): + attn = MultiheadAttention(d=16, n_heads=1, dropout=0.0) + assert attn.W_out is None + + +def test_W_out_exists_multi_head(): + attn = MultiheadAttention(d=16, n_heads=4, dropout=0.0) + assert attn.W_out is not None + + +def test_cross_attention_diff_seq_len(): + attn = MultiheadAttention(d=16, n_heads=1, dropout=0.0) + x_q = torch.randn(4, 3, 16) + x_kv = torch.randn(4, 7, 16) + out = attn(x_q, x_kv) + assert out.shape == (4, 3, 16) # output seq_len matches query + + +def test_invalid_d_nheads_raises(): + with pytest.raises(AssertionError): + MultiheadAttention(d=15, n_heads=4, dropout=0.0) + + +def test_gradient_flows(): + attn = MultiheadAttention(d=16, n_heads=2, dropout=0.0) + x = torch.randn(4, 5, 16, requires_grad=True) + out = attn(x, x) + out.sum().backward() + assert x.grad is not None and x.grad.abs().sum() > 0 + for name in ['W_q', 'W_k', 'W_v']: + param = getattr(attn, name) + assert param.weight.grad is not None and param.weight.grad.abs().sum() > 0 diff --git a/SynthData0523/main/c15/tabbyflow/tabbyflow-c15-20260513_061551/_efvfm_runtime/tests/test_config.py b/SynthData0523/main/c15/tabbyflow/tabbyflow-c15-20260513_061551/_efvfm_runtime/tests/test_config.py new file mode 100644 index 0000000000000000000000000000000000000000..95c723f64388fe1259f0ba62f0ad8c6cf1051455 --- /dev/null +++ b/SynthData0523/main/c15/tabbyflow/tabbyflow-c15-20260513_061551/_efvfm_runtime/tests/test_config.py @@ -0,0 +1,62 @@ +import os +from pathlib import Path + +from src.util import load_config +from ef_vfm.modules.main_modules import UniModMLP + + +CONFIG_PATH = Path(__file__).resolve().parent.parent / "ef_vfm" / "configs" / "ef_vfm_configs.toml" + + +def test_load_config_returns_dict(): + config = load_config(CONFIG_PATH) + assert isinstance(config, dict) + + +def test_config_has_expected_sections(): + config = load_config(CONFIG_PATH) + for key in ['data', 'unimodmlp_params', 'train', 'sample']: + assert key in config, f"Missing section '{key}'" + + +def test_unimodmlp_params_complete(): + config = load_config(CONFIG_PATH) + params = config['unimodmlp_params'] + required = ['num_layers', 'd_token', 'n_head', 'factor', 'bias', 'dim_t', 'use_mlp', 'activation'] + for key in required: + assert key in params, f"Missing param '{key}' in unimodmlp_params" + + +def test_activation_value_is_valid(): + config = load_config(CONFIG_PATH) + activation = config['unimodmlp_params']['activation'] + assert activation in ('relu', 'gelu', 'silu'), f"Invalid activation '{activation}'" + + +def test_train_main_has_new_params(): + """Verify the recently added config params are present.""" + config = load_config(CONFIG_PATH) + train = config['train']['main'] + assert 'max_grad_norm' in train + assert 'warmup_epochs' in train + assert isinstance(train['max_grad_norm'], (int, float)) + assert isinstance(train['warmup_epochs'], (int, float)) + + +def test_config_values_create_model(): + config = load_config(CONFIG_PATH) + params = config['unimodmlp_params'] + # Use dummy dimensions; the point is that config params are valid for the constructor + model = UniModMLP( + d_numerical=4, + categories=[3, 5, 2], + num_layers=params['num_layers'], + d_token=params['d_token'], + n_head=params['n_head'], + factor=params['factor'], + bias=params['bias'], + dim_t=params['dim_t'], + use_mlp=params['use_mlp'], + activation=params['activation'], + ) + assert model is not None diff --git a/SynthData0523/main/c15/tabbyflow/tabbyflow-c15-20260513_061551/_efvfm_runtime/tests/test_flow_model.py b/SynthData0523/main/c15/tabbyflow/tabbyflow-c15-20260513_061551/_efvfm_runtime/tests/test_flow_model.py new file mode 100644 index 0000000000000000000000000000000000000000..2bdc72bf2388cc70b56389463bdfd322b8badced --- /dev/null +++ b/SynthData0523/main/c15/tabbyflow/tabbyflow-c15-20260513_061551/_efvfm_runtime/tests/test_flow_model.py @@ -0,0 +1,219 @@ +import torch +import numpy as np +from unittest.mock import patch + +from ef_vfm.models.flow_model import ExpVFM, Velocity +from ef_vfm.modules.main_modules import UniModMLP + + +# ---- mixed_loss tests ---- + +def test_mixed_loss_returns_two_scalars(make_flow_model, make_dummy_inputs, dims): + d = dims + flow = make_flow_model(d["d_numerical"], d["categories"]) + _, _, x_cat_int, _ = make_dummy_inputs(d["d_numerical"], d["categories"], d["batch_size"]) + x_num = torch.randn(d["batch_size"], d["d_numerical"]) + x = torch.cat([x_num, x_cat_int.float()], dim=1) + d_loss, c_loss = flow.mixed_loss(x) + assert d_loss.dim() == 0 or d_loss.numel() == 1 + assert c_loss.dim() == 0 or c_loss.numel() == 1 + + +def test_mixed_loss_finite(make_flow_model, make_dummy_inputs, dims): + d = dims + flow = make_flow_model(d["d_numerical"], d["categories"]) + _, _, x_cat_int, _ = make_dummy_inputs(d["d_numerical"], d["categories"], d["batch_size"]) + x_num = torch.randn(d["batch_size"], d["d_numerical"]) + x = torch.cat([x_num, x_cat_int.float()], dim=1) + d_loss, c_loss = flow.mixed_loss(x) + assert torch.isfinite(d_loss).all() + assert torch.isfinite(c_loss).all() + + +def test_mixed_loss_gradients_flow(make_flow_model, make_dummy_inputs, dims): + d = dims + flow = make_flow_model(d["d_numerical"], d["categories"]) + _, _, x_cat_int, _ = make_dummy_inputs(d["d_numerical"], d["categories"], d["batch_size"]) + x_num = torch.randn(d["batch_size"], d["d_numerical"]) + x = torch.cat([x_num, x_cat_int.float()], dim=1) + d_loss, c_loss = flow.mixed_loss(x) + total = d_loss + c_loss + total.backward() + grads = [p.grad for p in flow.parameters() if p.grad is not None] + assert len(grads) > 0 + + +def test_mixed_loss_numerical_only(make_flow_model, make_dummy_inputs, dims_numerical_only): + d = dims_numerical_only + flow = make_flow_model(d["d_numerical"], d["categories"]) + x = torch.randn(d["batch_size"], d["d_numerical"]) + d_loss, c_loss = flow.mixed_loss(x) + assert d_loss.item() == 0.0 # no discrete features + assert c_loss.item() > 0.0 + + +# ---- sample tests (with mocked odeint) ---- + +def _make_flow(d_numerical, categories): + cats_list = list(categories) if categories is not None else [] + cats_np = np.array(cats_list) + model = UniModMLP(d_numerical, cats_list, 1, 16, n_head=1, factor=4, dim_t=64, activation='gelu') + return ExpVFM(cats_np, d_numerical, model, device=torch.device('cpu')) + + +def test_sample_output_shape(dims): + d = dims + flow = _make_flow(d["d_numerical"], d["categories"]) + d_in = d["d_numerical"] + sum(d["categories"]) + n = 5 + fake_trajectory = torch.randn(2, n, d_in) + with patch("ef_vfm.models.flow_model.odeint", return_value=fake_trajectory): + result = flow.sample(n) + d_out = d["d_numerical"] + len(d["categories"]) + assert result.shape == (n, d_out) + + +def test_sample_categorical_in_range(dims): + d = dims + flow = _make_flow(d["d_numerical"], d["categories"]) + d_in = d["d_numerical"] + sum(d["categories"]) + n = 16 + fake_trajectory = torch.randn(2, n, d_in) + with patch("ef_vfm.models.flow_model.odeint", return_value=fake_trajectory): + result = flow.sample(n) + for i, k in enumerate(d["categories"]): + col = d["d_numerical"] + i + assert (result[:, col] >= 0).all() + assert (result[:, col] < k).all() + + +def test_sample_returns_cpu(dims): + d = dims + flow = _make_flow(d["d_numerical"], d["categories"]) + d_in = d["d_numerical"] + sum(d["categories"]) + fake_trajectory = torch.randn(2, 4, d_in) + with patch("ef_vfm.models.flow_model.odeint", return_value=fake_trajectory): + result = flow.sample(4) + assert result.device == torch.device('cpu') + + +def test_sample_single_sample(dims): + d = dims + flow = _make_flow(d["d_numerical"], d["categories"]) + d_in = d["d_numerical"] + sum(d["categories"]) + fake_trajectory = torch.randn(2, 1, d_in) + with patch("ef_vfm.models.flow_model.odeint", return_value=fake_trajectory): + result = flow.sample(1) + d_out = d["d_numerical"] + len(d["categories"]) + assert result.shape == (1, d_out) + + +# ---- to_one_hot tests ---- + +def test_to_one_hot_shape(dims): + d = dims + flow = _make_flow(d["d_numerical"], d["categories"]) + cats = d["categories"] + x_cat = torch.stack([torch.randint(0, k, (8,)) for k in cats], dim=1) + oh = flow.to_one_hot(x_cat) + assert oh.shape == (8, sum(cats)) + + +def test_to_one_hot_roundtrip(dims): + d = dims + flow = _make_flow(d["d_numerical"], d["categories"]) + cats = d["categories"] + x_cat = torch.stack([torch.randint(0, k, (8,)) for k in cats], dim=1) + oh = flow.to_one_hot(x_cat) + # Recover indices via argmax per category slice + idx = 0 + for i, k in enumerate(cats): + recovered = oh[:, idx:idx + k].argmax(dim=1) + assert torch.equal(recovered, x_cat[:, i]) + idx += k + + +def test_to_one_hot_binary_values(dims): + d = dims + flow = _make_flow(d["d_numerical"], d["categories"]) + cats = d["categories"] + x_cat = torch.stack([torch.randint(0, k, (8,)) for k in cats], dim=1) + oh = flow.to_one_hot(x_cat) + assert set(oh.unique().tolist()).issubset({0, 1}) + + +# ---- Regression tests ---- + +def test_regression_d_in_no_extra_len(): + """d_in must be num_numerical + sum(num_classes), NOT + len(num_classes).""" + d_numerical = 4 + categories = np.array([3, 5, 2]) + flow = _make_flow(d_numerical, categories) + expected_d_in = d_numerical + sum(categories) # 14, not 17 + assert flow.num_numerical_features + sum(flow.num_classes) == expected_d_in + + +def test_regression_sampling_indices_correct(): + """Categorical argmax must go to columns [d_num, d_num+1, ...], not [0, 1, ...].""" + d_numerical = 4 + categories = np.array([3, 5, 2]) + n = 10 + d_in = d_numerical + sum(categories) + d_out = d_numerical + len(categories) + + # Simulate the post-processing from sample() + out = torch.randn(n, d_in) + sample = torch.zeros(n, d_out) + sample[:, :d_numerical] = out[:, :d_numerical] + + idx = d_numerical # correct starting index + for i, val in enumerate(categories): + col = d_numerical + i # correct column + sample[:, col] = torch.argmax(out[:, idx:idx + val], dim=1) + idx += val + + # Numerical columns must be untouched + assert torch.allclose(sample[:, :d_numerical], out[:, :d_numerical]) + # Categorical columns at correct positions + for i, val in enumerate(categories): + col = d_numerical + i + assert (sample[:, col] >= 0).all() + assert (sample[:, col] < val).all() + + +def test_regression_d_out_correct(): + """d_out must be d_num + len(categories).""" + d_numerical = 4 + categories = np.array([3, 5, 2]) + flow = _make_flow(d_numerical, categories) + expected_d_out = d_numerical + len(categories) # 7 + assert expected_d_out == 7 + + +# ---- Velocity tests ---- + +def test_velocity_output_shape(dims): + d = dims + cats_list = list(d["categories"]) + model = UniModMLP(d["d_numerical"], cats_list, 1, d["d_token"], + n_head=1, factor=4, dim_t=64, activation='gelu') + vel = Velocity(model) + d_in = d["d_numerical"] + sum(d["categories"]) + x = torch.randn(d["batch_size"], d_in) + t = torch.tensor(0.5) + out = vel(t, x) + assert out.shape == (d["batch_size"], d_in) + + +def test_velocity_scalar_t_broadcast(dims): + d = dims + cats_list = list(d["categories"]) + model = UniModMLP(d["d_numerical"], cats_list, 1, d["d_token"], + n_head=1, factor=4, dim_t=64, activation='gelu') + vel = Velocity(model) + d_in = d["d_numerical"] + sum(d["categories"]) + x = torch.randn(d["batch_size"], d_in) + # Scalar t should work (gets broadcast internally) + t = torch.tensor(0.3) + out = vel(t, x) + assert out.shape == x.shape diff --git a/SynthData0523/main/c15/tabbyflow/tabbyflow-c15-20260513_061551/_efvfm_runtime/tests/test_mlp.py b/SynthData0523/main/c15/tabbyflow/tabbyflow-c15-20260513_061551/_efvfm_runtime/tests/test_mlp.py new file mode 100644 index 0000000000000000000000000000000000000000..0cf9ad4d6832d792cb65a1bb01bdc784385f9fcd --- /dev/null +++ b/SynthData0523/main/c15/tabbyflow/tabbyflow-c15-20260513_061551/_efvfm_runtime/tests/test_mlp.py @@ -0,0 +1,85 @@ +import torch +import torch.nn as nn +from ef_vfm.modules.main_modules import MLP, PositionalEmbedding + + +# ---- PositionalEmbedding tests ---- + +def test_positional_embedding_shape(): + pe = PositionalEmbedding(num_channels=64) + x = torch.rand(8) + out = pe(x) + assert out.shape == (8, 64) + + +def test_positional_embedding_bounded(): + pe = PositionalEmbedding(num_channels=64) + x = torch.rand(8) + out = pe(x) + assert out.min() >= -1.0 + assert out.max() <= 1.0 + + +def test_positional_embedding_deterministic(): + pe = PositionalEmbedding(num_channels=64) + x = torch.tensor([0.1, 0.5, 0.9]) + out1 = pe(x) + out2 = pe(x) + assert torch.equal(out1, out2) + + +def test_positional_embedding_different_timesteps(): + pe = PositionalEmbedding(num_channels=64) + t1 = torch.tensor([0.1]) + t2 = torch.tensor([0.9]) + assert not torch.allclose(pe(t1), pe(t2)) + + +# ---- MLP tests ---- + +def test_mlp_output_shape(make_mlp): + mlp = make_mlp(d_in=32, dim_t=64) + x = torch.randn(8, 32) + t = torch.rand(8) + out = mlp(x, t) + assert out.shape == (8, 32) + + +def test_mlp_use_mlp_true(make_mlp): + mlp = make_mlp(d_in=32, dim_t=64, use_mlp=True) + assert isinstance(mlp.mlp, nn.Sequential) + + +def test_mlp_use_mlp_false(make_mlp): + mlp = make_mlp(d_in=32, dim_t=64, use_mlp=False) + assert isinstance(mlp.mlp, nn.Linear) + + +def test_mlp_time_conditioning(make_mlp): + mlp = make_mlp(d_in=32, dim_t=64) + mlp.eval() + x = torch.randn(4, 32) + t1 = torch.zeros(4) + t2 = torch.ones(4) + out1 = mlp(x, t1) + out2 = mlp(x, t2) + assert not torch.allclose(out1, out2) + + +def test_mlp_gradient_flows(make_mlp): + mlp = make_mlp(d_in=32, dim_t=64) + x = torch.randn(4, 32) + t = torch.rand(4) + out = mlp(x, t) + out.sum().backward() + assert mlp.proj.weight.grad is not None and mlp.proj.weight.grad.abs().sum() > 0 + assert mlp.map_noise.num_channels == 64 # sanity check on PE config + + +def test_mlp_different_dim_t(make_mlp): + for dim_t in [32, 128, 256]: + mlp = make_mlp(d_in=16, dim_t=dim_t) + x = torch.randn(4, 16) + t = torch.rand(4) + out = mlp(x, t) + assert out.shape == (4, 16) diff --git a/SynthData0523/main/c15/tabbyflow/tabbyflow-c15-20260513_061551/_efvfm_runtime/tests/test_reconstructor.py b/SynthData0523/main/c15/tabbyflow/tabbyflow-c15-20260513_061551/_efvfm_runtime/tests/test_reconstructor.py new file mode 100644 index 0000000000000000000000000000000000000000..cdc39880d19f644fb8ac6b457af6a8cb3d83cbfa --- /dev/null +++ b/SynthData0523/main/c15/tabbyflow/tabbyflow-c15-20260513_061551/_efvfm_runtime/tests/test_reconstructor.py @@ -0,0 +1,51 @@ +import torch +import numpy as np +from ef_vfm.modules.transformer import Reconstructor + + +def test_output_shapes_mixed(make_reconstructor, dims): + d = dims + r = make_reconstructor(d["d_numerical"], d["categories"], d["d_token"]) + seq_len = d["d_numerical"] + len(d["categories"]) + h = torch.randn(d["batch_size"], seq_len, d["d_token"]) + x_num, x_cat = r(h) + assert x_num.shape == (d["batch_size"], d["d_numerical"]) + assert len(x_cat) == len(d["categories"]) + for i, k in enumerate(d["categories"]): + assert x_cat[i].shape == (d["batch_size"], k) + + +def test_categorical_count(make_reconstructor, dims): + d = dims + r = make_reconstructor(d["d_numerical"], d["categories"], d["d_token"]) + seq_len = d["d_numerical"] + len(d["categories"]) + h = torch.randn(d["batch_size"], seq_len, d["d_token"]) + _, x_cat = r(h) + assert len(x_cat) == len(d["categories"]) + + +def test_empty_categories(make_reconstructor): + r = make_reconstructor(4, np.array([]), 16) + h = torch.randn(8, 4, 16) + x_num, x_cat = r(h) + assert x_num.shape == (8, 4) + assert len(x_cat) == 0 + + +def test_weight_shape(make_reconstructor, dims): + d = dims + r = make_reconstructor(d["d_numerical"], d["categories"], d["d_token"]) + assert r.weight.shape == (d["d_numerical"], d["d_token"]) + + +def test_gradient_flows(make_reconstructor, dims): + d = dims + r = make_reconstructor(d["d_numerical"], d["categories"], d["d_token"]) + seq_len = d["d_numerical"] + len(d["categories"]) + h = torch.randn(d["batch_size"], seq_len, d["d_token"]) + x_num, x_cat = r(h) + loss = x_num.sum() + sum(c.sum() for c in x_cat) + loss.backward() + assert r.weight.grad is not None and r.weight.grad.abs().sum() > 0 + for recon in r.cat_recons: + assert recon.weight.grad is not None diff --git a/SynthData0523/main/c15/tabbyflow/tabbyflow-c15-20260513_061551/_efvfm_runtime/tests/test_tokenizer.py b/SynthData0523/main/c15/tabbyflow/tabbyflow-c15-20260513_061551/_efvfm_runtime/tests/test_tokenizer.py new file mode 100644 index 0000000000000000000000000000000000000000..ea8c55737d473605c2bb1c87f0394fad64baeb18 --- /dev/null +++ b/SynthData0523/main/c15/tabbyflow/tabbyflow-c15-20260513_061551/_efvfm_runtime/tests/test_tokenizer.py @@ -0,0 +1,85 @@ +import torch +import numpy as np + + +def test_forward_shape_mixed(make_tokenizer, make_dummy_inputs, dims): + tok = make_tokenizer(dims["d_numerical"], dims["categories"], dims["d_token"]) + x_num, x_cat_oh, _, _ = make_dummy_inputs(dims["d_numerical"], dims["categories"], dims["batch_size"]) + out = tok(x_num, x_cat_oh) + expected_seq = 1 + dims["d_numerical"] + len(dims["categories"]) + assert out.shape == (dims["batch_size"], expected_seq, dims["d_token"]) + + +def test_forward_shape_numerical_only(make_tokenizer, make_dummy_inputs, dims_numerical_only): + d = dims_numerical_only + tok = make_tokenizer(d["d_numerical"], d["categories"], d["d_token"]) + x_num, _, _, _ = make_dummy_inputs(d["d_numerical"], d["categories"], d["batch_size"]) + out = tok(x_num, None) + expected_seq = 1 + d["d_numerical"] + assert out.shape == (d["batch_size"], expected_seq, d["d_token"]) + + +def test_forward_shape_single_feature(make_tokenizer, make_dummy_inputs, dims_single): + d = dims_single + tok = make_tokenizer(d["d_numerical"], d["categories"], d["d_token"]) + x_num, x_cat_oh, _, _ = make_dummy_inputs(d["d_numerical"], d["categories"], d["batch_size"]) + out = tok(x_num, x_cat_oh) + expected_seq = 1 + d["d_numerical"] + len(d["categories"]) + assert out.shape == (d["batch_size"], expected_seq, d["d_token"]) + + +def test_n_tokens_property(make_tokenizer, dims): + tok = make_tokenizer(dims["d_numerical"], dims["categories"], dims["d_token"]) + expected = dims["d_numerical"] + 1 + len(dims["categories"]) + assert tok.n_tokens == expected + + +def test_n_tokens_numerical_only(make_tokenizer, dims_numerical_only): + d = dims_numerical_only + tok = make_tokenizer(d["d_numerical"], d["categories"], d["d_token"]) + assert tok.n_tokens == d["d_numerical"] + 1 + + +def test_cls_token_position(make_tokenizer, make_dummy_inputs, dims): + tok = make_tokenizer(dims["d_numerical"], dims["categories"], dims["d_token"], bias=False) + x_num, x_cat_oh, _, _ = make_dummy_inputs(dims["d_numerical"], dims["categories"], dims["batch_size"]) + out = tok(x_num, x_cat_oh) + # CLS token: ones * weight[0], so all batch rows should have the same CLS token + cls_tokens = out[:, 0, :] + assert torch.allclose(cls_tokens[0], cls_tokens[1]) + assert torch.allclose(cls_tokens[0], tok.weight[0]) + + +def test_bias_vs_no_bias(make_tokenizer, make_dummy_inputs, dims): + d = dims + tok_bias = make_tokenizer(d["d_numerical"], d["categories"], d["d_token"], bias=True) + tok_no_bias = make_tokenizer(d["d_numerical"], d["categories"], d["d_token"], bias=False) + assert tok_bias.bias is not None + assert tok_no_bias.bias is None + + +def test_category_offsets_values(make_tokenizer): + cats = np.array([3, 5, 2]) + tok = make_tokenizer(4, cats, 16) + assert torch.equal(tok.category_offsets, torch.tensor([0, 3, 8])) + assert torch.equal(tok.category_ends, torch.tensor([3, 8, 10])) + + +def test_cat_weight_shape(make_tokenizer, dims): + tok = make_tokenizer(dims["d_numerical"], dims["categories"], dims["d_token"]) + assert tok.cat_weight.shape == (sum(dims["categories"]), dims["d_token"]) + + +def test_weight_shape(make_tokenizer, dims): + tok = make_tokenizer(dims["d_numerical"], dims["categories"], dims["d_token"]) + assert tok.weight.shape == (dims["d_numerical"] + 1, dims["d_token"]) + + +def test_gradient_flows(make_tokenizer, make_dummy_inputs, dims): + tok = make_tokenizer(dims["d_numerical"], dims["categories"], dims["d_token"]) + x_num, x_cat_oh, _, _ = make_dummy_inputs(dims["d_numerical"], dims["categories"], dims["batch_size"]) + out = tok(x_num, x_cat_oh) + out.sum().backward() + assert tok.weight.grad is not None and tok.weight.grad.abs().sum() > 0 + assert tok.cat_weight.grad is not None and tok.cat_weight.grad.abs().sum() > 0 + assert tok.bias.grad is not None and tok.bias.grad.abs().sum() > 0 diff --git a/SynthData0523/main/c15/tabbyflow/tabbyflow-c15-20260513_061551/_efvfm_runtime/tests/test_trainer.py b/SynthData0523/main/c15/tabbyflow/tabbyflow-c15-20260513_061551/_efvfm_runtime/tests/test_trainer.py new file mode 100644 index 0000000000000000000000000000000000000000..592c538d2aa1f8f34098a0d7c6c4fc0b1f0c5ddf --- /dev/null +++ b/SynthData0523/main/c15/tabbyflow/tabbyflow-c15-20260513_061551/_efvfm_runtime/tests/test_trainer.py @@ -0,0 +1,98 @@ +import torch +import numpy as np + + +# ---- Gradient clipping tests ---- + +def test_grad_clipping_applied(make_trainer, tmp_path): + trainer = make_trainer(max_grad_norm=0.5, tmp_path=tmp_path) + batch = next(iter(trainer.train_iter)) + trainer._run_step(batch, closs_weight=1.0, dloss_weight=1.0) + # After clipping, total gradient norm should be <= max_grad_norm (with tolerance) + total_norm = torch.nn.utils.clip_grad_norm_(trainer.flow.parameters(), float('inf')) + # Gradients were already clipped in _run_step, then optimizer.step() zeroed them. + # So we re-run to check: do a fresh forward-backward without step + trainer.optimizer.zero_grad() + dloss, closs = trainer.flow.mixed_loss(batch.to(trainer.device)) + (dloss + closs).backward() + torch.nn.utils.clip_grad_norm_(trainer.flow.parameters(), 0.5) + total_norm = 0.0 + for p in trainer.flow.parameters(): + if p.grad is not None: + total_norm += p.grad.data.norm(2).item() ** 2 + total_norm = total_norm ** 0.5 + assert total_norm <= 0.5 + 1e-6 + + +def test_grad_clipping_disabled(make_trainer, tmp_path): + trainer = make_trainer(max_grad_norm=0, tmp_path=tmp_path) + assert trainer.max_grad_norm == 0 + + +def test_run_step_returns_losses(make_trainer, tmp_path): + trainer = make_trainer(tmp_path=tmp_path) + batch = next(iter(trainer.train_iter)) + dloss, closs = trainer._run_step(batch, closs_weight=1.0, dloss_weight=1.0) + assert isinstance(dloss, torch.Tensor) + assert isinstance(closs, torch.Tensor) + assert torch.isfinite(dloss) + assert torch.isfinite(closs) + + +# ---- LR warmup tests ---- + +def test_warmup_lr_linear_ramp(make_trainer, tmp_path): + init_lr = 0.01 + warmup = 5 + trainer = make_trainer(lr=init_lr, warmup_epochs=warmup, tmp_path=tmp_path) + # Simulate warmup epochs + for epoch in range(warmup): + expected_lr = init_lr * (epoch + 1) / warmup + if trainer.warmup_epochs > 0 and (epoch + 1) <= trainer.warmup_epochs: + warmup_lr = trainer.init_lr * (epoch + 1) / trainer.warmup_epochs + for pg in trainer.optimizer.param_groups: + pg["lr"] = warmup_lr + actual_lr = trainer.optimizer.param_groups[0]["lr"] + assert abs(actual_lr - expected_lr) < 1e-8, f"Epoch {epoch}: expected {expected_lr}, got {actual_lr}" + + +def test_warmup_overrides_scheduler(make_trainer, tmp_path): + trainer = make_trainer(warmup_epochs=10, lr_scheduler='reduce_lr_on_plateau', tmp_path=tmp_path) + initial_lr = trainer.optimizer.param_groups[0]["lr"] + # During warmup, scheduler.step should NOT be called (we just set LR directly) + # Simulate epoch 1 warmup + warmup_lr = trainer.init_lr * 1 / trainer.warmup_epochs + for pg in trainer.optimizer.param_groups: + pg["lr"] = warmup_lr + assert trainer.optimizer.param_groups[0]["lr"] == warmup_lr + assert warmup_lr < initial_lr # warmup starts lower + + +def test_no_warmup_when_zero(make_trainer, tmp_path): + trainer = make_trainer(warmup_epochs=0, tmp_path=tmp_path) + assert trainer.warmup_epochs == 0 + # LR should be the init_lr from the start + assert trainer.optimizer.param_groups[0]["lr"] == trainer.init_lr + + +# ---- LR scheduler tests ---- + +def test_anneal_lr(make_trainer, tmp_path): + trainer = make_trainer(lr=0.01, steps=100, lr_scheduler='anneal', tmp_path=tmp_path) + trainer._anneal_lr(50) + expected = 0.01 * (1 - 50 / 100) + assert abs(trainer.optimizer.param_groups[0]["lr"] - expected) < 1e-8 + + +# ---- EMA tests ---- + +def test_ema_model_created(make_trainer, tmp_path): + trainer = make_trainer(tmp_path=tmp_path) + # EMA model should exist and have same structure as flow._vf_fn + assert trainer.ema_model is not None + ema_params = list(trainer.ema_model.parameters()) + model_params = list(trainer.flow._vf_fn.parameters()) + assert len(ema_params) == len(model_params) + # EMA params should be detached (requires_grad=False) + for p in ema_params: + assert not p.requires_grad diff --git a/SynthData0523/main/c15/tabbyflow/tabbyflow-c15-20260513_061551/_efvfm_runtime/tests/test_transformer.py b/SynthData0523/main/c15/tabbyflow/tabbyflow-c15-20260513_061551/_efvfm_runtime/tests/test_transformer.py new file mode 100644 index 0000000000000000000000000000000000000000..ff56e884615e818841fbb912f8ef4e9961729197 --- /dev/null +++ b/SynthData0523/main/c15/tabbyflow/tabbyflow-c15-20260513_061551/_efvfm_runtime/tests/test_transformer.py @@ -0,0 +1,73 @@ +import pytest +import torch +from ef_vfm.modules.transformer import Transformer + + +def test_output_shape_preserved(make_transformer): + t = make_transformer(d_token=16, n_layers=2) + x = torch.randn(4, 5, 16) + out = t(x) + assert out.shape == x.shape + + +def test_activation_gelu(make_transformer): + t = make_transformer(d_token=16, activation='gelu') + x = torch.randn(4, 5, 16) + out = t(x) + assert out.shape == x.shape + + +def test_activation_silu(make_transformer): + t = make_transformer(d_token=16, activation='silu') + x = torch.randn(4, 5, 16) + out = t(x) + assert out.shape == x.shape + + +def test_activation_relu(make_transformer): + t = make_transformer(d_token=16, activation='relu') + x = torch.randn(4, 5, 16) + out = t(x) + assert out.shape == x.shape + + +def test_invalid_activation_raises(): + with pytest.raises(ValueError, match="Unknown activation"): + Transformer(2, 16, 1, 16, 4, activation='bad') + + +def test_prenorm_first_layer_no_norm0(): + t = Transformer(2, 16, 1, 16, 4, prenormalization=True) + assert 'norm0' not in t.layers[0] + # Second layer should have norm0 + assert 'norm0' in t.layers[1] + + +def test_no_prenorm_all_layers_have_norm0(): + t = Transformer(2, 16, 1, 16, 4, prenormalization=False) + for layer in t.layers: + assert 'norm0' in layer + + +def test_single_layer(): + t = Transformer(1, 16, 1, 16, 4) + x = torch.randn(4, 5, 16) + out = t(x) + assert out.shape == x.shape + + +def test_multi_layer(): + t = Transformer(4, 16, 1, 16, 4) + x = torch.randn(4, 5, 16) + out = t(x) + assert out.shape == x.shape + + +def test_gradient_flows(make_transformer): + t = make_transformer(d_token=16, n_layers=2) + x = torch.randn(4, 5, 16, requires_grad=True) + out = t(x) + out.sum().backward() + assert x.grad is not None and x.grad.abs().sum() > 0 + # Check gradients through at least the first layer's linear0 + assert t.layers[0]['linear0'].weight.grad is not None diff --git a/SynthData0523/main/c15/tabbyflow/tabbyflow-c15-20260513_061551/_efvfm_runtime/tests/test_unimodmlp.py b/SynthData0523/main/c15/tabbyflow/tabbyflow-c15-20260513_061551/_efvfm_runtime/tests/test_unimodmlp.py new file mode 100644 index 0000000000000000000000000000000000000000..d935e7c48dba78fd7e4821287628aa861aa6d1b4 --- /dev/null +++ b/SynthData0523/main/c15/tabbyflow/tabbyflow-c15-20260513_061551/_efvfm_runtime/tests/test_unimodmlp.py @@ -0,0 +1,72 @@ +import torch +import numpy as np + + +def test_forward_shapes_mixed(make_unimodmlp, make_dummy_inputs, dims): + d = dims + model = make_unimodmlp(d["d_numerical"], d["categories"], d_token=d["d_token"]) + x_num, x_cat_oh, _, t = make_dummy_inputs(d["d_numerical"], d["categories"], d["batch_size"]) + x_num_pred, x_cat_pred = model(x_num, x_cat_oh, t) + assert x_num_pred.shape == (d["batch_size"], d["d_numerical"]) + assert x_cat_pred.shape == (d["batch_size"], sum(d["categories"])) + + +def test_forward_shapes_numerical_only(make_unimodmlp, make_dummy_inputs, dims_numerical_only): + d = dims_numerical_only + model = make_unimodmlp(d["d_numerical"], d["categories"], d_token=d["d_token"]) + x_num, _, _, t = make_dummy_inputs(d["d_numerical"], d["categories"], d["batch_size"]) + x_cat = torch.zeros(d["batch_size"], 0) + x_num_pred, x_cat_pred = model(x_num, x_cat, t) + assert x_num_pred.shape == (d["batch_size"], d["d_numerical"]) + # When no categories, cat_pred should be zeros with shape matching x_cat + assert x_cat_pred.shape[0] == d["batch_size"] + assert torch.all(x_cat_pred == 0) + + +def test_forward_shapes_single_feature(make_unimodmlp, make_dummy_inputs, dims_single): + d = dims_single + model = make_unimodmlp(d["d_numerical"], d["categories"], d_token=d["d_token"]) + x_num, x_cat_oh, _, t = make_dummy_inputs(d["d_numerical"], d["categories"], d["batch_size"]) + x_num_pred, x_cat_pred = model(x_num, x_cat_oh, t) + assert x_num_pred.shape == (d["batch_size"], d["d_numerical"]) + assert x_cat_pred.shape == (d["batch_size"], sum(d["categories"])) + + +def test_d_in_computation(make_unimodmlp, dims): + d = dims + model = make_unimodmlp(d["d_numerical"], d["categories"], d_token=d["d_token"]) + expected = d["d_token"] * (d["d_numerical"] + len(d["categories"])) + assert model.mlp.proj.in_features == expected + + +def test_output_dtypes(make_unimodmlp, make_dummy_inputs, dims): + d = dims + model = make_unimodmlp(d["d_numerical"], d["categories"], d_token=d["d_token"]) + x_num, x_cat_oh, _, t = make_dummy_inputs(d["d_numerical"], d["categories"], d["batch_size"]) + x_num_pred, x_cat_pred = model(x_num, x_cat_oh, t) + assert x_num_pred.dtype == torch.float32 + assert x_cat_pred.dtype == torch.float32 + + +def test_gradient_flows_end_to_end(make_unimodmlp, make_dummy_inputs, dims): + d = dims + model = make_unimodmlp(d["d_numerical"], d["categories"], d_token=d["d_token"]) + x_num, x_cat_oh, _, t = make_dummy_inputs(d["d_numerical"], d["categories"], d["batch_size"]) + x_num_pred, x_cat_pred = model(x_num, x_cat_oh, t) + loss = x_num_pred.sum() + x_cat_pred.sum() + loss.backward() + params_with_grad = sum(1 for p in model.parameters() if p.grad is not None and p.grad.abs().sum() > 0) + total_params = sum(1 for _ in model.parameters()) + # Transformer.head is defined but unused in forward(), so not all params get gradients + assert params_with_grad > total_params * 0.8, f"Only {params_with_grad}/{total_params} params got gradients" + + +def test_different_activations(make_unimodmlp, make_dummy_inputs, dims): + d = dims + x_num, x_cat_oh, _, t = make_dummy_inputs(d["d_numerical"], d["categories"], d["batch_size"]) + for act in ['relu', 'gelu', 'silu']: + model = make_unimodmlp(d["d_numerical"], d["categories"], d_token=d["d_token"], activation=act) + x_num_pred, x_cat_pred = model(x_num, x_cat_oh, t) + assert x_num_pred.shape == (d["batch_size"], d["d_numerical"]) + assert torch.isfinite(x_num_pred).all() + assert torch.isfinite(x_cat_pred).all() diff --git a/SynthData0523/main/c15/tabbyflow/tabbyflow-c15-20260513_061551/_efvfm_runtime/tests/test_utils.py b/SynthData0523/main/c15/tabbyflow/tabbyflow-c15-20260513_061551/_efvfm_runtime/tests/test_utils.py new file mode 100644 index 0000000000000000000000000000000000000000..fbce0db0ac74052a4038dee89fd753b9d97717aa --- /dev/null +++ b/SynthData0523/main/c15/tabbyflow/tabbyflow-c15-20260513_061551/_efvfm_runtime/tests/test_utils.py @@ -0,0 +1,49 @@ +import torch +import numpy as np + +from utils_train import update_ema, concat_y_to_X + + +# ---- update_ema tests ---- + +def test_update_ema_basic(): + target = [torch.tensor([1.0, 2.0])] + source = [torch.tensor([3.0, 4.0])] + target[0].requires_grad_(False) + rate = 0.9 + update_ema(target, source, rate=rate) + expected = 0.9 * torch.tensor([1.0, 2.0]) + 0.1 * torch.tensor([3.0, 4.0]) + assert torch.allclose(target[0], expected) + + +def test_update_ema_rate_zero(): + target = [torch.tensor([1.0, 2.0])] + source = [torch.tensor([3.0, 4.0])] + target[0].requires_grad_(False) + update_ema(target, source, rate=0.0) + assert torch.allclose(target[0], torch.tensor([3.0, 4.0])) + + +def test_update_ema_rate_one(): + target = [torch.tensor([1.0, 2.0])] + source = [torch.tensor([3.0, 4.0])] + target[0].requires_grad_(False) + update_ema(target, source, rate=1.0) + assert torch.allclose(target[0], torch.tensor([1.0, 2.0])) + + +# ---- concat_y_to_X tests ---- + +def test_concat_y_to_X_with_X(): + X = np.array([[1, 2], [3, 4]]) + y = np.array([10, 20]) + result = concat_y_to_X(X, y) + expected = np.array([[10, 1, 2], [20, 3, 4]]) + np.testing.assert_array_equal(result, expected) + + +def test_concat_y_to_X_without_X(): + y = np.array([10, 20, 30]) + result = concat_y_to_X(None, y) + expected = np.array([[10], [20], [30]]) + np.testing.assert_array_equal(result, expected) diff --git a/SynthData0523/main/c15/tabbyflow/tabbyflow-c15-20260513_061551/_efvfm_runtime/utils_train.py b/SynthData0523/main/c15/tabbyflow/tabbyflow-c15-20260513_061551/_efvfm_runtime/utils_train.py new file mode 100644 index 0000000000000000000000000000000000000000..f849c412fa3cc62098f14b12684d16ecc30e94ea --- /dev/null +++ b/SynthData0523/main/c15/tabbyflow/tabbyflow-c15-20260513_061551/_efvfm_runtime/utils_train.py @@ -0,0 +1,205 @@ +import numpy as np +import os +from pathlib import Path + +import src +from torch.utils.data import Dataset + +import torch + + +class TabularDataset(Dataset): + def __init__(self, X_num, X_cat): + self.X_num = X_num + self.X_cat = X_cat + + def __getitem__(self, index): + this_num = self.X_num[index] + this_cat = self.X_cat[index] + + sample = (this_num, this_cat) + + return sample + + def __len__(self): + return self.X_num.shape[0] + + +class EFVFMDataset(Dataset): + def __init__(self, dataname, data_dir, info, isTrain=True, dequant_dist='none', int_dequant_factor=0.0): + self.dataname = dataname + self.data_dir = data_dir + self.info = info + self.isTrain = isTrain + + X_num, X_cat, categories, d_numerical, num_inverse, int_inverse, cat_inverse = preprocess( + data_dir, dequant_dist, int_dequant_factor, task_type=info['task_type'], inverse=True + ) + categories = np.array(categories) + + X_train_num, X_test_num = X_num + X_train_cat, X_test_cat = X_cat + + X_train_num = torch.tensor(X_train_num).float() + X_test_num = torch.tensor(X_test_num).float() + X_train_cat = torch.tensor(X_train_cat) + X_test_cat = torch.tensor(X_test_cat) + + self.X = ( + torch.cat((X_train_num, X_train_cat), dim=1) + if isTrain + else torch.cat((X_test_num, X_test_cat), dim=1) + ) + self.num_inverse = num_inverse + self.int_inverse = int_inverse + self.cat_inverse = cat_inverse + self.d_numerical = d_numerical + self.categories = categories + + def __getitem__(self, index): + return self.X[index] + + def __len__(self): + return self.X.shape[0] + + +def _empty_num_like(y_split): + return np.zeros((len(y_split), 0), dtype=np.float32) + + +def _empty_cat_like(y_split): + return np.zeros((len(y_split), 0), dtype=np.int64) + + +def preprocess(dataset_path, dequant_dist='none', int_dequant_factor=0.0, task_type='binclass', inverse=False, cat_encoding=None, concat=True): + + T_dict = {} + + T_dict['normalization'] = "quantile" + T_dict['num_nan_policy'] = 'mean' + T_dict['cat_nan_policy'] = None + T_dict['cat_min_frequency'] = None + T_dict['cat_encoding'] = cat_encoding + T_dict['y_policy'] = "default" + T_dict['dequant_dist'] = dequant_dist + T_dict['int_dequant_factor'] = int_dequant_factor + + T = src.Transformations(**T_dict) + + dataset = make_dataset( + data_path=dataset_path, + T=T, + task_type=task_type, + change_val=False, + concat=concat, + ) + + if cat_encoding is None: + X_num = dataset.X_num + X_cat = dataset.X_cat + y = dataset.y + + if X_num is None: + X_train_num = _empty_num_like(y['train']) + X_test_num = _empty_num_like(y['test']) + else: + X_train_num, X_test_num = X_num['train'], X_num['test'] + + if X_cat is None: + # Some datasets have no categorical features after preprocessing. + # For classification tasks, ef-vfm still expects the target to be + # concatenated into the categorical block. + if task_type in ('binclass', 'multiclass') and concat and y is not None: + X_train_cat = y['train'].reshape(-1, 1) + X_test_cat = y['test'].reshape(-1, 1) + else: + X_train_cat = _empty_cat_like(y['train']) + X_test_cat = _empty_cat_like(y['test']) + else: + X_train_cat, X_test_cat = X_cat['train'], X_cat['test'] + + categories = src.get_categories(X_train_cat) if X_train_cat.shape[1] > 0 else [] + d_numerical = X_train_num.shape[1] + + X_num = (X_train_num, X_test_num) + X_cat = (X_train_cat, X_test_cat) + + if inverse: + num_inverse = dataset.num_transform.inverse_transform if dataset.num_transform is not None else lambda x: x + int_inverse = dataset.int_transform.inverse_transform if dataset.int_transform is not None else lambda x: x + cat_inverse = dataset.cat_transform.inverse_transform if dataset.cat_transform is not None else lambda x: x + + return X_num, X_cat, categories, d_numerical, num_inverse, int_inverse, cat_inverse + else: + return X_num, X_cat, categories, d_numerical + else: + return dataset + + +def update_ema(target_params, source_params, rate=0.999): + for target, source in zip(target_params, source_params): + target.detach().mul_(rate).add_(source.detach(), alpha=1 - rate) + + +def concat_y_to_X(X, y): + if X is None: + return y.reshape(-1, 1) + return np.concatenate([y.reshape(-1, 1), X], axis=1) + + +def make_dataset( + data_path: str, + T: src.Transformations, + task_type, + change_val: bool, + concat=True, +): + + if task_type == 'binclass' or task_type == 'multiclass': + X_cat = {} if os.path.exists(os.path.join(data_path, 'X_cat_train.npy')) else None + X_num = {} if os.path.exists(os.path.join(data_path, 'X_num_train.npy')) else None + y = {} if os.path.exists(os.path.join(data_path, 'y_train.npy')) else None + + for split in ['train', 'test']: + X_num_t, X_cat_t, y_t = src.read_pure_data(data_path, split) + if X_num is not None: + X_num[split] = X_num_t + if X_cat is not None: + if concat: + X_cat_t = concat_y_to_X(X_cat_t, y_t) + X_cat[split] = X_cat_t + if y is not None: + y[split] = y_t + else: + X_cat = {} if os.path.exists(os.path.join(data_path, 'X_cat_train.npy')) else None + X_num = {} if os.path.exists(os.path.join(data_path, 'X_num_train.npy')) else None + y = {} if os.path.exists(os.path.join(data_path, 'y_train.npy')) else None + + for split in ['train', 'test']: + X_num_t, X_cat_t, y_t = src.read_pure_data(data_path, split) + if X_num is not None: + if concat: + X_num_t = concat_y_to_X(X_num_t, y_t) + X_num[split] = X_num_t + if X_cat is not None: + X_cat[split] = X_cat_t + if y is not None: + y[split] = y_t + + info = src.load_json(os.path.join(data_path, 'info.json')) + int_col_idx_wrt_num = info['int_col_idx_wrt_num'] + + D = src.Dataset( + X_num, + X_cat, + y, + int_col_idx_wrt_num, + y_info={}, + task_type=src.TaskType(info['task_type']), + n_classes=info.get('n_classes') + ) + + if change_val: + D = src.change_val(D) + D = src.transform_dataset(D, T, cache_dir=Path(data_path)) + return D diff --git a/SynthData0523/main/c15/tabbyflow/tabbyflow-c15-20260513_061551/_tabbyflow_gen.py b/SynthData0523/main/c15/tabbyflow/tabbyflow-c15-20260513_061551/_tabbyflow_gen.py new file mode 100644 index 0000000000000000000000000000000000000000..c1305f1de427da4f2aae7e3cb066239849f308e6 --- /dev/null +++ b/SynthData0523/main/c15/tabbyflow/tabbyflow-c15-20260513_061551/_tabbyflow_gen.py @@ -0,0 +1,51 @@ + +import os, shutil, subprocess, sys +root = r"/workspace/ef-vfm" +rt = r"/work/output-Benchmark-trainonly-v1/c15/tabbyflow/tabbyflow-c15-20260513_061551/_efvfm_runtime" +name = r"pipeline_c15" +src = r"/work/output-Benchmark-trainonly-v1/c15/tabbyflow/tabbyflow-c15-20260513_061551/tabular_bundle/pipeline_c15" + +if not os.path.exists(rt): + def _ignore(_, names): + skip = {"__pycache__", "data", "synthetic", "result", "results", "ckpt"} + return [n for n in names if n in skip or n.endswith(".pyc")] + shutil.copytree(root, rt, ignore=_ignore) + +dst_data = os.path.join(rt, "data", name) +shutil.rmtree(dst_data, ignore_errors=True) +os.makedirs(os.path.dirname(dst_data), exist_ok=True) +shutil.copytree(src, dst_data) +dst_syn = os.path.join(rt, "synthetic", name) +os.makedirs(dst_syn, exist_ok=True) +for fn in ("real.csv", "test.csv", "val.csv"): + shutil.copy(os.path.join(src, fn), os.path.join(dst_syn, fn)) +os.chdir(rt) +os.environ["PYTHONPATH"] = rt + os.pathsep + os.environ.get("PYTHONPATH", "") +os.environ.setdefault("EFVFM_SAMPLE_BATCH_SIZE", "64") +os.environ.setdefault("EFVFM_ODE_FALLBACK", "1") +os.environ.setdefault("EFVFM_RK4_STEPS", "32") +subprocess.check_call([ + sys.executable, os.path.join(rt, "main.py"), + "--dataname", name, "--mode", "test", "--gpu", "0", + "--no_wandb", "--exp_name", r"adapter_efvfm", + "--ckpt_path", r"/work/output-Benchmark-trainonly-v1/c15/tabbyflow/tabbyflow-c15-20260513_061551/_efvfm_runtime/ckpt/pipeline_c15/adapter_efvfm/model_90.pt", + "--num_samples_to_generate", str(int(480000)), +]) +search_roots = [ + os.path.join(rt, "result", name, r"adapter_efvfm"), + os.path.join(rt, "ef_vfm", "result", name, r"adapter_efvfm"), +] +best = None +best_t = -1.0 +for base in search_roots: + if not os.path.isdir(base): + continue + for r, _, files in os.walk(base): + if "samples.csv" in files: + p = os.path.join(r, "samples.csv") + t = os.path.getmtime(p) + if t > best_t: + best_t, best = t, p +if not best: + raise SystemExit("tabbyflow: no samples.csv in " + " | ".join(search_roots)) +shutil.copy(best, r"/work/output-Benchmark-trainonly-v1/c15/tabbyflow/tabbyflow-c15-20260513_061551/tabbyflow-c15-480000-20260513_074701.csv") diff --git a/SynthData0523/main/c15/tabbyflow/tabbyflow-c15-20260513_061551/_tabbyflow_train.py b/SynthData0523/main/c15/tabbyflow/tabbyflow-c15-20260513_061551/_tabbyflow_train.py new file mode 100644 index 0000000000000000000000000000000000000000..217bbd4169368e0958afa1ce6a7f02db4b7184c2 --- /dev/null +++ b/SynthData0523/main/c15/tabbyflow/tabbyflow-c15-20260513_061551/_tabbyflow_train.py @@ -0,0 +1,40 @@ + +import os, shutil, subprocess, sys +root = r"/workspace/ef-vfm" +rt = r"/work/output-Benchmark-trainonly-v1/c15/tabbyflow/tabbyflow-c15-20260513_061551/_efvfm_runtime" +name = r"pipeline_c15" +src = r"/work/output-Benchmark-trainonly-v1/c15/tabbyflow/tabbyflow-c15-20260513_061551/tabular_bundle/pipeline_c15" + +shutil.rmtree(rt, ignore_errors=True) + +def _ignore(_, names): + skip = {"__pycache__", "data", "synthetic", "result", "results", "ckpt"} + return [n for n in names if n in skip or n.endswith(".pyc")] + +shutil.copytree(root, rt, ignore=_ignore) +pkg_cfg = os.path.join(rt, "ef_vfm", "configs") +root_cfg = os.path.join(rt, "configs") +if not os.path.isdir(root_cfg) and os.path.isdir(pkg_cfg): + shutil.copytree(pkg_cfg, root_cfg) +dst_data = os.path.join(rt, "data", name) +dst_syn = os.path.join(rt, "synthetic", name) +shutil.rmtree(dst_data, ignore_errors=True) +os.makedirs(os.path.dirname(dst_data), exist_ok=True) +shutil.copytree(src, dst_data) +os.makedirs(dst_syn, exist_ok=True) +for fn in ("real.csv", "test.csv", "val.csv"): + shutil.copy(os.path.join(src, fn), os.path.join(dst_syn, fn)) +os.chdir(rt) +os.environ["PYTHONPATH"] = rt + os.pathsep + os.environ.get("PYTHONPATH", "") +os.environ["EFVFM_SMOKE_STEPS"] = "100" +os.environ["EFVFM_ADAPTER_TRAIN"] = "1" +os.environ.setdefault("EFVFM_TRAIN_BATCH_SIZE", "64") 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r"/work/output-Benchmark-trainonly-v1/c15/tabdiff/tabdiff-c15-20260513_004629/tabular_bundle/pipeline_c15" +rt = r"/work/output-Benchmark-trainonly-v1/c15/tabdiff/tabdiff-c15-20260513_004629/_tabdiff_runtime" +if not os.path.exists(rt): + def _ignore(_, names): + skip = {"__pycache__", "data", "synthetic", "result", "results", "ckpt"} + return [n for n in names if n in skip or n.endswith(".pyc")] + shutil.copytree(td, rt, ignore=_ignore) +dst_data = os.path.join(rt, "data", name) +dst_syn = os.path.join(rt, "synthetic", name) +shutil.rmtree(dst_data, ignore_errors=True) +os.makedirs(os.path.dirname(dst_data), exist_ok=True) +shutil.copytree(src, dst_data) +os.makedirs(dst_syn, exist_ok=True) +for fn in ("real.csv", "test.csv", "val.csv"): + shutil.copy(os.path.join(src, fn), os.path.join(dst_syn, fn)) +os.chdir(rt) +os.environ["PYTHONPATH"] = rt + os.pathsep + os.environ.get("PYTHONPATH", "") +subprocess.check_call([ + sys.executable, "-m", "tabdiff.main", + "--dataname", name, "--mode", "test", "--gpu", "0", + "--no_wandb", "--exp_name", r"adapter_learnable", + "--ckpt_path", r"/work/output-Benchmark-trainonly-v1/c15/tabdiff/tabdiff-c15-20260513_004629/_tabdiff_runtime/tabdiff/ckpt/pipeline_c15/adapter_learnable/model_200.pt", + "--num_samples_to_generate", str(int(480000)), +]) +# test() 写入 tabdiff/result////samples.csv +base = os.path.join(rt, "tabdiff", "result", name, r"adapter_learnable") +best = None +best_t = -1.0 +for root, _, files in os.walk(base): + if "samples.csv" in files: + p = os.path.join(root, "samples.csv") + t = os.path.getmtime(p) + if t > best_t: + best_t = t + best = p +if not best: + raise SystemExit("tabdiff: no samples.csv under " + base) +shutil.copy(best, r"/work/output-Benchmark-trainonly-v1/c15/tabdiff/tabdiff-c15-20260513_004629/tabdiff-c15-480000-20260513_043834.csv") diff --git a/SynthData0523/main/c15/tabdiff/tabdiff-c15-20260513_004629/_tabdiff_runtime/.gitignore b/SynthData0523/main/c15/tabdiff/tabdiff-c15-20260513_004629/_tabdiff_runtime/.gitignore new file mode 100644 index 0000000000000000000000000000000000000000..a5ac347c2673508e8a3637b03a654e22fe11bbef --- /dev/null +++ b/SynthData0523/main/c15/tabdiff/tabdiff-c15-20260513_004629/_tabdiff_runtime/.gitignore @@ -0,0 +1,15 @@ +**/__pycache__/** +*.pyc + +data/* +!/data/Info/ + +wandb/ +eval/ +synthetic/ +impute/ +workspace/ +debug/ +tabdiff/result/ + +**/ckpt/* diff --git a/SynthData0523/main/c15/tabdiff/tabdiff-c15-20260513_004629/_tabdiff_runtime/LICENSE b/SynthData0523/main/c15/tabdiff/tabdiff-c15-20260513_004629/_tabdiff_runtime/LICENSE new file mode 100644 index 0000000000000000000000000000000000000000..cda47b343e4c33bc2406f424cf7698c8ddf0c56b --- /dev/null +++ b/SynthData0523/main/c15/tabdiff/tabdiff-c15-20260513_004629/_tabdiff_runtime/LICENSE @@ -0,0 +1,7 @@ +Copyright 2024 Minkai Xu + +Permission is hereby granted, free of charge, to any person obtaining a copy of this software and associated documentation files (the “Software”), to deal in the Software without restriction, including without limitation the rights to use, copy, modify, merge, publish, distribute, sublicense, and/or sell copies of the Software, and to permit persons to whom the Software is furnished to do so, subject to the following conditions: + +The above copyright notice and this permission notice shall be included in all copies or substantial portions of the Software. + +THE SOFTWARE IS PROVIDED “AS IS”, WITHOUT WARRANTY OF ANY KIND, EXPRESS OR IMPLIED, INCLUDING BUT NOT LIMITED TO THE WARRANTIES OF MERCHANTABILITY, FITNESS FOR A PARTICULAR PURPOSE AND NONINFRINGEMENT. IN NO EVENT SHALL THE AUTHORS OR COPYRIGHT HOLDERS BE LIABLE FOR ANY CLAIM, DAMAGES OR OTHER LIABILITY, WHETHER IN AN ACTION OF CONTRACT, TORT OR OTHERWISE, ARISING FROM, OUT OF OR IN CONNECTION WITH THE SOFTWARE OR THE USE OR OTHER DEALINGS IN THE SOFTWARE. \ No newline at end of file diff --git a/SynthData0523/main/c15/tabdiff/tabdiff-c15-20260513_004629/_tabdiff_runtime/README.md b/SynthData0523/main/c15/tabdiff/tabdiff-c15-20260513_004629/_tabdiff_runtime/README.md new file mode 100644 index 0000000000000000000000000000000000000000..7b05f40ea4922d2858c845f15ef0633a79a7eba7 --- /dev/null +++ b/SynthData0523/main/c15/tabdiff/tabdiff-c15-20260513_004629/_tabdiff_runtime/README.md @@ -0,0 +1,201 @@ +# TabDiff: a Mixed-type Diffusion Model for Tabular Data Generation + +

+ + MIT License + + + Openreview + + + Paper URL + +

+ +
+ Model Logo +

Figure 1: Visualing the generative process of TabDiff. A high-quality version of this video can be found at tabdiff_demo.mp4

+
+ +This repository provides the official implementation of TabDiff: a Mixed-type Diffusion Model for Tabular Data Generation (ICLR 2025). + +## Latest Update +- [2025.04]:The categorical-heavy dataset **[Diabetes](https://archive.ics.uci.edu/dataset/296/diabetes+130-us+hospitals+for+years+1999-2008)** evaluated in the paper has now been released! +- [2025.02]:Our code is finally released! We have released part of the tested datasets. The rest will be released soon! + +## Introduction + +
+ Model Logo +

Figure 2: The high-level schema of TabDiff

+
+TabDiff is a unified diffusion framework designed to model all muti-modal distributions of tabular data in a single model. Its key innovations include: + +1) Framing the joint diffusion process in continuous time, +2) A feature-wised learnable diffusion process that offsets the heterogeneity across different feature distributions, +3) Classifier-free guidance conditional generation for missing column value imputation. + +The schema of TabDiff is presented in the figure above. For more details, please refer to [our paper](https://arxiv.org/abs/2410.20626). + + +## Environment Setup + +Create the main environment with [tabdiff.yaml](tabdiff.yaml). This environment will be used for all tasks except for the evaluation of additional data fidelity metrics (i.e., $\alpha$-precision and $\beta$-recall scores) + +``` +conda env create -f tabdiff.yaml +``` + +Create another environment with [synthcity.yaml](synthcity.yaml) to evaluate additional data fidelity metrics + +``` +conda env create -f synthcity.yaml +``` + +## Datasets Preparation + +### Using the datasets experimented in the paper + +Download raw datasets: + +``` +python download_dataset.py +``` + +Process datasets: + +``` +python process_dataset.py +``` + +### Using your own dataset + +First, create a directory for your dataset in [./data](./data): +``` +cd data +mkdir +``` + +Compile your raw tabular data in .csv format. **The first row should be the header** indicating the name of each column, and the remaining rows are records. After finishing these steps, place you data's csv file in the directory you just created and name it as .csv. + +Then, create .json in [./data/Info](./data/Info). Write this file with the metadata of your dataset, covering the following information: +``` +{ + "name": "", + "task_type": "[NAME_OF_TASK]", # binclass or regression + "header": "infer", + "column_names": null, + "num_col_idx": [LIST], # list of indices of numerical columns + "cat_col_idx": [LIST], # list of indices of categorical columns + "target_col_idx": [list], # list of indices of the target columns (for MLE) + "file_type": "csv", + "data_path": "data//.csv" + "test_path": null, +} +``` + +### Important Notes When Creating the Info File +- The MLE evaluation and the imputation task (see later sections for details) assume that one column of your data is the regression or classification target. To enable these tasks, you will need to specify `target_col_idx`. If you don't need to evalute MLE, you can comment out the following line: https://github.com/MinkaiXu/TabDiff/blob/0c4fc3bbfa19046d36c5dce64628df52d5c73d15/tabdiff/main.py#L152 +- The fields `target_col_idx`, `num_col_idx` and `cat_col_idx` must be multually exclusive—no column should appear in more than one of these lists. +- Set the task_type to "regression" if the target column is numerical, or "binclass" if it is categorical. + +Finally, run the following command to process your dataset: +``` +python process_dataset.py --dataname +``` + +## Training TabDiff + +To train an unconditional TabDiff model across the entire table, run + +``` +python main.py --dataname --mode train +``` + +Current Options of `````` are: adult, default, shoppers, magic, beijing, news + +Wanb logging is enabled by default. To disable it and log locally, add the ```--no_wandb``` flag. + +To disable the learnable noise schedules, add the ```--non_learnable_schedule```. Please note that in order for the code to test/sample from such model properly, you need to add this flag for all commands below. + +To specify your own experiment name, which will be used for logging and saving files, add ```--exp_name ```. This flag overwrites the default experiment name (learnable_schedule/non_learnable_schedule), so, similar to ```--non_learnable_schedule```, once added to training, you need to add it to all following commands as well. + +## Sampling and Evaluating TabDiff (Density, MLE, C2ST) + +To sample synthetic tables from trained TabDiff models and evaluate them, run +``` +python main.py --dataname --mode test --report --no_wandb +``` + +This will sample 20 synthetic tables randomly. Meanwhile, it will evaluate the density, mle, and c2st scores for each sample and report their average and standard deviation. The results will be printed out in the terminal, and the samples and detailed evaluation results will be placed in ./eval/report_runs///. + +## Evaluating on Additional Fidelity Metrics ($\alpha$-precision and $\beta$-recall scores) +To evaluate TabDiff on the additional fidelity metrics ($\alpha$-precision and $\beta$-recall scores), you need to first make sure that you have already generated some samples by the previous commands. Then, you need to switch to the `synthcity` environment (as the synthcity packet used to compute those metrics conflicts with the main environment), by running +``` +conda activate synthcity +``` +Then, evaluate the metrics by running +``` +python eval/eval_quality.py --dataname +``` + +Similarly, the results will be printed out in the terminal and added to ./eval/report_runs/// + +## Evaluating Data Privacy (DCR score) +To evalute the privacy metric DCR score, you first need to retrain all the models, as the metric requires an equal split between the training and testing data (our initial splits employ a 90/10 ratio). To retrain with an equal split, run the training command but append `_dcr` to `````` +``` +python main.py --dataname _dcr --mode train +``` + +Then, test the models on DCR with the same `_dcr` suffix +``` +python main.py --dataname _dcr --mode test --report --no_wandb +``` + + + +## Missing Value Imputation with Classifier-free Guidance (CFG) +Our current experiments only include imputing the target column. However, our implementation, located at ```sample_impute()``` in [unified_ctime_diffusion.py](./tabdiff/models/unified_ctime_diffusion.py), should support imputing multiple columns with different data types. + +### Training Guidance Model +In order to enable classifier-free guidance (CFG), you need to first train an unconditional guidance model on the target column by running the training command with the `--y_only` flag +``` +python main.py --dataname --mode train --y_only +``` + +### Sampling Imputed Tables +With the trained guidance model, you can then impute the missing target column by running the testing command with the `--impute` flag +``` +python main.py --dataname --mode test --impute --no_wandb +``` +This will, by default, randomly produce 50 imputed tables and save them to ./impute//. + +### Evaluating Imputation +You can then evaluate the imputation quality by running +``` +python eval_impute.py --dataname +``` + +## License + +This work is licensed undeer the MIT License. + +## Acknowledgement +This repo is built upon the previous work TabSyn's [[codebase]](https://github.com/amazon-science/tabsyn). Many thanks to Hengrui! + +## Citation +Please consider citing our work if you find it helpful in your research! +``` +@inproceedings{ +shi2025tabdiff, +title={TabDiff: a Mixed-type Diffusion Model for Tabular Data Generation}, +author={Juntong Shi and Minkai Xu and Harper Hua and Hengrui Zhang and Stefano Ermon and Jure Leskovec}, +booktitle={The Thirteenth International Conference on Learning Representations}, +year={2025}, +url={https://openreview.net/forum?id=swvURjrt8z} +} +``` +## Contact +If you encounter any problem, please file an issue on this GitHub repo. + +If you have any question regarding the paper, please contact Minkai at [minkai@stanford.edu](minkai@stanford.edu) or Juntong at [shisteve@usc.edu](shisteve@usc.edu). diff --git a/SynthData0523/main/c15/tabdiff/tabdiff-c15-20260513_004629/_tabdiff_runtime/data/pipeline_c15/X_cat_test.npy b/SynthData0523/main/c15/tabdiff/tabdiff-c15-20260513_004629/_tabdiff_runtime/data/pipeline_c15/X_cat_test.npy new file mode 100644 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b/SynthData0523/main/c15/tabdiff/tabdiff-c15-20260513_004629/_tabdiff_runtime/data/pipeline_c15/y_val.npy @@ -0,0 +1,3 @@ +version https://git-lfs.github.com/spec/v1 +oid sha256:70ba7e642b79960f66fe33c6213f2b103ee4c092bce3efb4e5fa6a0ffac7c35d +size 480128 diff --git a/SynthData0523/main/c15/tabdiff/tabdiff-c15-20260513_004629/_tabdiff_runtime/download_dataset.py b/SynthData0523/main/c15/tabdiff/tabdiff-c15-20260513_004629/_tabdiff_runtime/download_dataset.py new file mode 100644 index 0000000000000000000000000000000000000000..d86e43dd3aa876fc659059baad90401bd3d3113f --- /dev/null +++ b/SynthData0523/main/c15/tabdiff/tabdiff-c15-20260513_004629/_tabdiff_runtime/download_dataset.py @@ -0,0 +1,51 @@ +import os +from urllib import request +import zipfile + +DATA_DIR = 'data' + + +NAME_URL_DICT_UCI = { + 'adult': 'https://archive.ics.uci.edu/static/public/2/adult.zip', + 'default': 'https://archive.ics.uci.edu/static/public/350/default+of+credit+card+clients.zip', + 'magic': 'https://archive.ics.uci.edu/static/public/159/magic+gamma+telescope.zip', + 'shoppers': 'https://archive.ics.uci.edu/static/public/468/online+shoppers+purchasing+intention+dataset.zip', + 'beijing': 'https://archive.ics.uci.edu/static/public/381/beijing+pm2+5+data.zip', + 'news': 'https://archive.ics.uci.edu/static/public/332/online+news+popularity.zip', + 'news_nocat': 'https://archive.ics.uci.edu/static/public/332/online+news+popularity.zip', + 'diabetes': 'https://archive.ics.uci.edu/static/public/296/diabetes+130-us+hospitals+for+years+1999-2008.zip', + 'adult_dcr': 'https://archive.ics.uci.edu/static/public/2/adult.zip', + 'default_dcr': 'https://archive.ics.uci.edu/static/public/350/default+of+credit+card+clients.zip', + 'magic_dcr': 'https://archive.ics.uci.edu/static/public/159/magic+gamma+telescope.zip', + 'shoppers_dcr': 'https://archive.ics.uci.edu/static/public/468/online+shoppers+purchasing+intention+dataset.zip', + 'beijing_dcr': 'https://archive.ics.uci.edu/static/public/381/beijing+pm2+5+data.zip', + 'news_dcr': 'https://archive.ics.uci.edu/static/public/332/online+news+popularity.zip', + 'diabetes_dcr': 'https://archive.ics.uci.edu/static/public/296/diabetes+130-us+hospitals+for+years+1999-2008.zip', +} + +def unzip_file(zip_filepath, dest_path): + with zipfile.ZipFile(zip_filepath, 'r') as zip_ref: + zip_ref.extractall(dest_path) + + +def download_from_uci(name): + + print(f'Start processing dataset {name} from UCI.') + save_dir = f'{DATA_DIR}/{name}' + if not os.path.exists(save_dir): + os.makedirs(save_dir) + + url = NAME_URL_DICT_UCI[name] + request.urlretrieve(url, f'{save_dir}/{name}.zip') + print(f'Finish downloading dataset from {url}, data has been saved to {save_dir}.') + + unzip_file(f'{save_dir}/{name}.zip', save_dir) + print(f'Finish unzipping {name}.') + + else: + print('Aready downloaded.') + +if __name__ == '__main__': + for name in NAME_URL_DICT_UCI.keys(): + download_from_uci(name) + \ No newline at end of file diff --git a/SynthData0523/main/c15/tabdiff/tabdiff-c15-20260513_004629/_tabdiff_runtime/eval/eval_quality.py b/SynthData0523/main/c15/tabdiff/tabdiff-c15-20260513_004629/_tabdiff_runtime/eval/eval_quality.py new file mode 100644 index 0000000000000000000000000000000000000000..6b67fd1491aa0ac2964ea5f594146ff3bd21cd76 --- /dev/null +++ b/SynthData0523/main/c15/tabdiff/tabdiff-c15-20260513_004629/_tabdiff_runtime/eval/eval_quality.py @@ -0,0 +1,151 @@ +import glob +import numpy as np +import pandas as pd +import os +import sys +import json + +sys.path.append(os.path.dirname(os.path.dirname(os.path.abspath(__file__)))) +from sklearn.preprocessing import OneHotEncoder +from synthcity.metrics import eval_statistical +from synthcity.plugins.core.dataloader import GenericDataLoader + +pd.options.mode.chained_assignment = None + +import argparse + +parser = argparse.ArgumentParser() +parser.add_argument('--dataname', type=str) +parser.add_argument('--exp_name', type=str, default=None) +parser.add_argument('--non_learnable_schedule', action='store_true') + + +args = parser.parse_args() + +def evaluate_quality(real_path, syn_path, info_path): + with open(info_path, 'r') as f: + info = json.load(f) + + syn_data = pd.read_csv(syn_path) + real_data = pd.read_csv(real_path) + + + ''' Special treatment for default dataset and CoDi model ''' + + real_data.columns = range(len(real_data.columns)) + syn_data.columns = range(len(syn_data.columns)) + + num_col_idx = info['num_col_idx'] + cat_col_idx = info['cat_col_idx'] + target_col_idx = info['target_col_idx'] + if info['task_type'] == 'regression': + num_col_idx += target_col_idx + else: + cat_col_idx += target_col_idx + + num_real_data = real_data[num_col_idx] + cat_real_data = real_data[cat_col_idx] + + num_real_data_np = num_real_data.to_numpy() + cat_real_data_np = cat_real_data.to_numpy().astype('str') + + + num_syn_data = syn_data[num_col_idx] + cat_syn_data = syn_data[cat_col_idx] + + num_syn_data_np = num_syn_data.to_numpy() + + # cat_syn_data_np = np.array + cat_syn_data_np = cat_syn_data.to_numpy().astype('str') + + encoder = OneHotEncoder() + encoder.fit(cat_real_data_np) + + + cat_real_data_oh = encoder.transform(cat_real_data_np).toarray() + cat_syn_data_oh = encoder.transform(cat_syn_data_np).toarray() + + le_real_data = pd.DataFrame(np.concatenate((num_real_data_np, cat_real_data_oh), axis = 1)).astype(float) + le_real_num = pd.DataFrame(num_real_data_np).astype(float) + le_real_cat = pd.DataFrame(cat_real_data_oh).astype(float) + + + le_syn_data = pd.DataFrame(np.concatenate((num_syn_data_np, cat_syn_data_oh), axis = 1)).astype(float) + le_syn_num = pd.DataFrame(num_syn_data_np).astype(float) + le_syn_cat = pd.DataFrame(cat_syn_data_oh).astype(float) + + # Check for nan + if le_syn_data.isnull().values.any(): + nan_coordinate = np.isnan(le_syn_data.to_numpy()).nonzero() + nan_row = np.unique(nan_coordinate[0]) + print(f"Synthetic data contains NaN at row {nan_row}: ") + print(le_syn_data.iloc[nan_row]) + return None, None + + + np.set_printoptions(precision=4) + + result = [] + + print('=========== All Features ===========') + print('Data shape: ', le_syn_data.shape) + + X_syn_loader = GenericDataLoader(le_syn_data) + X_real_loader = GenericDataLoader(le_real_data) + + quality_evaluator = eval_statistical.AlphaPrecision() + qual_res = quality_evaluator.evaluate(X_real_loader, X_syn_loader) + qual_res = { + k: v for (k, v) in qual_res.items() if "naive" in k + } # use the naive implementation of AlphaPrecision + qual_score = np.mean(list(qual_res.values())) + + print('alpha precision: {:.6f}, beta recall: {:.6f}'.format(qual_res['delta_precision_alpha_naive'], qual_res['delta_coverage_beta_naive'] )) + + Alpha_Precision_all = qual_res['delta_precision_alpha_naive'] + Beta_Recall_all = qual_res['delta_coverage_beta_naive'] + + return Alpha_Precision_all, Beta_Recall_all + +if __name__ == '__main__': + exp_name = args.exp_name + if exp_name is None: + exp_name = "non_learnable_schedule" if args.non_learnable_schedule else "learnable_schedule" + dataname = args.dataname + data_dir = f'data/{dataname}' + info_path = f'{data_dir}/info.json' + real_path = f'synthetic/{dataname}/real.csv' + + sample_dir = f"eval/report_runs/{exp_name}/{dataname}/all_samples" + sample_paths = glob.glob(os.path.join(sample_dir, "*.csv")) + print(f"{len(sample_paths )} samples loaded from {sample_dir}") + + alphas, betas = [], [] + for syn_path in sample_paths: + alpha_precision, beta_recall = evaluate_quality(real_path, syn_path, info_path) + if (alpha_precision is None) or (beta_recall is None): + continue + alphas.append(alpha_precision) + betas.append(beta_recall) + + alphas = np.array(alphas) + betas = np.array(betas) + alpha_percent = alphas * 100 + beta_percent = betas * 100 + + quality = pd.DataFrame({ + 'alpha': alpha_percent, + 'beta': beta_percent + }) + avg = quality.mean(axis=0).round(2) + std = quality.std(axis=0).round(2) + quality_avg_std = pd.concat([avg, std], axis=1, ignore_index=True) + quality_avg_std.columns = ["avg", "std"] + quality_avg_std.index = ["alpha", "beta"] + + save_dir = os.path.dirname(sample_dir) + quality.to_csv(os.path.join(save_dir, "quality.csv"), index=True) + avg_std = pd.read_csv(os.path.join(save_dir, "avg_std.csv"), index_col=0) + avg_std = pd.concat([avg_std, quality_avg_std]) + print(avg_std) + avg_std.to_csv(os.path.join(save_dir, "avg_std.csv"), index=True) diff --git a/SynthData0523/main/c15/tabdiff/tabdiff-c15-20260513_004629/_tabdiff_runtime/eval/mle/mle.py b/SynthData0523/main/c15/tabdiff/tabdiff-c15-20260513_004629/_tabdiff_runtime/eval/mle/mle.py new file mode 100644 index 0000000000000000000000000000000000000000..74d534739aedec2ea99cc2b08078aaa8dea624d9 --- /dev/null +++ b/SynthData0523/main/c15/tabdiff/tabdiff-c15-20260513_004629/_tabdiff_runtime/eval/mle/mle.py @@ -0,0 +1,781 @@ +import numpy as np +import pandas as pd +from xgboost import XGBClassifier, XGBRegressor +from sklearn.ensemble import AdaBoostClassifier, RandomForestClassifier, RandomForestRegressor +from sklearn.linear_model import LogisticRegression, LinearRegression +from sklearn.neural_network import MLPClassifier, MLPRegressor +from sklearn.preprocessing import OneHotEncoder, LabelEncoder +from sklearn.tree import DecisionTreeClassifier +from sklearn.metrics import classification_report, accuracy_score, f1_score, precision_score, recall_score, roc_auc_score +from sklearn.metrics import explained_variance_score, mean_squared_error, mean_absolute_error, r2_score +from sklearn.model_selection import ParameterGrid +from sklearn.utils._testing import ignore_warnings +from sklearn.exceptions import ConvergenceWarning +import logging +from prdc import compute_prdc +from tqdm import tqdm + +CATEGORICAL = "categorical" +CONTINUOUS = "continuous" + +_MODELS = { + 'binclass': [ # 184 + # { + # 'class': DecisionTreeClassifier, # 48 + # 'kwargs': { + # 'max_depth': [4, 8, 16, 32], + # 'min_samples_split': [2, 4, 8], + # 'min_samples_leaf': [1, 2, 4, 8] + # } + # }, + # { + # 'class': AdaBoostClassifier, # 4 + # 'kwargs': { + # 'n_estimators': [10, 50, 100, 200] + # } + # }, + # { + # 'class': LogisticRegression, # 36 + # 'kwargs': { + # 'solver': ['lbfgs'], + # 'n_jobs': [-1], + # 'max_iter': [10, 50, 100, 200], + # 'C': [0.01, 0.1, 1.0], + # 'tol': [1e-01, 1e-02, 1e-04] + # } + # }, + # { + # 'class': MLPClassifier, # 12 + # 'kwargs': { + # 'hidden_layer_sizes': [(100, ), (200, ), (100, 100)], + # 'max_iter': [50, 100], + # 'alpha': [0.0001, 0.001] + # } + # }, + # { + # 'class': RandomForestClassifier, # 48 + # 'kwargs': { + # 'max_depth': [8, 16, None], + # 'min_samples_split': [2, 4, 8], + # 'min_samples_leaf': [1, 2, 4, 8], + # 'n_jobs': [-1] + + # } + # }, + { + 'class': XGBClassifier, # 36 + 'kwargs': { + 'n_estimators': [10, 50, 100], + 'min_child_weight': [1, 10], + 'max_depth': [5, 10, 20], + 'gamma': [0.0, 1.0], + 'objective': ['binary:logistic'], + 'nthread': [-1], + 'tree_method': ['gpu_hist'] + }, + } + + ], + 'multiclass': [ # 132 + + # { + # 'class': MLPClassifier, # 12 + # 'kwargs': { + # 'hidden_layer_sizes': [(100, ), (200, ), (100, 100)], + # 'max_iter': [50, 100], + # 'alpha': [0.0001, 0.001] + # } + # }, + # { + # 'class': DecisionTreeClassifier, # 48 + # 'kwargs': { + # 'max_depth': [4, 8, 16, 32], + # 'min_samples_split': [2, 4, 8], + # 'min_samples_leaf': [1, 2, 4, 8] + # } + # }, + # { + # 'class': RandomForestClassifier, # 36 + # 'kwargs': { + # 'max_depth': [8, 16, None], + # 'min_samples_split': [2, 4, 8], + # 'min_samples_leaf': [1, 2, 4, 8], + # 'n_jobs': [-1] + + # } + # }, + { + 'class': XGBClassifier, # 36 + 'kwargs': { + 'n_estimators': [10, 50, 100], + 'min_child_weight': [1, 10], + 'max_depth': [5, 10, 20], + 'gamma': [0.0, 1.0], + 'objective': ['binary:logistic'], + 'nthread': [-1], + 'tree_method': ['gpu_hist'] + } + } + + ], + 'regression': [ # 84 + # { + # 'class': LinearRegression, + # }, + # { + # 'class': MLPRegressor, # 12 + # 'kwargs': { + # 'hidden_layer_sizes': [(100, ), (200, ), (100, 100)], + # 'max_iter': [50, 100], + # 'alpha': [0.0001, 0.001] + # } + #}, + { + 'class': XGBRegressor, # 36 + 'kwargs': { + 'n_estimators': [10, 50, 100], + 'min_child_weight': [1, 10], + 'max_depth': [5, 10, 20], + 'gamma': [0.0, 1.0], + 'objective': ['reg:linear'], + 'nthread': [-1], + 'tree_method': ['gpu_hist'] + } + }, + # { + # 'class': RandomForestRegressor, # 36 + # 'kwargs': { + # 'max_depth': [8, 16, None], + # 'min_samples_split': [2, 4, 8], + # 'min_samples_leaf': [1, 2, 4, 8], + # 'n_jobs': [-1] + # } + # } + ] +} + +def feat_transform(data, info, label_encoder = None, encoders = None, cmax = None, cmin = None): + num_col_idx = info['num_col_idx'] + cat_col_idx = info['cat_col_idx'] + target_col_idx = info['target_col_idx'] + + num_cols = len(num_col_idx + cat_col_idx + target_col_idx) + features = [] + + if not encoders: + encoders = dict() + for idx in range(num_cols): + col = data[:, idx] + + if idx in target_col_idx: + + if info['task_type'] != 'regression': + + if not label_encoder: + label_encoder = LabelEncoder() + label_encoder.fit(col) + + encoded_labels = label_encoder.transform(col) + labels = encoded_labels + else: + col = col.astype(np.float32) + labels = col.astype(np.float32) + + continue + + if idx in num_col_idx: + col = col.astype(np.float32) + + if not cmin: + cmin = col.min() + + if not cmax: + cmax = col.max() + + if cmin >= 0 and cmax >= 1e3: + feature = np.log(np.maximum(col, 1e-2)) + + else: + feature = (col - cmin) / (cmax - cmin) * 5 + + elif idx in cat_col_idx: + encoder = encoders.get(idx) + col = col.reshape(-1, 1) + if encoder: + feature = encoder.transform(col) + else: + # encoder = OneHotEncoder(sparse=False, handle_unknown='ignore') + encoder = OneHotEncoder(sparse_output=False, handle_unknown='ignore') # New in version 1.2: sparse was renamed to sparse_output + encoders[idx] = encoder + feature = encoder.fit_transform(col) + + + features.append(feature) + features = np.column_stack(features) + return features, labels, label_encoder, encoders, cmax, cmin + + +def prepare_ml_problem(train, test, info, val=None): + # test_X, test_y, label_encoder, encoders = feat_transform(test, info) + # train_X, train_y, _, _ = feat_transform(train, info, label_encoder, encoders) + + train_X, train_y, label_encoder, encoders, cmax, cmin = feat_transform(train, info) + test_X, test_y, _, _ , _, _ = feat_transform(test, info, label_encoder, encoders, cmax, cmin) + + if val is not None: + val_X, val_y, _, _, _, _ = feat_transform(val, info, label_encoder, encoders, cmax, cmin) + else: + total_train_num = train_X.shape[0] + val_num = int(total_train_num / 9) + + total_train_idx = np.arange(total_train_num) + np.random.shuffle(total_train_idx) + train_idx = total_train_idx[val_num:] + val_idx = total_train_idx[:val_num] + + + + # val_X, val_y = train_X[val_idx], train_y[val_idx] + # train_X, train_y = train_X[train_idx], train_y[train_idx] + + # model = _MODELS[info['task_type']] + + # return train_X, train_y, train_X, train_y, test_X, test_y, model + + + + val_X, val_y = train_X[val_idx], train_y[val_idx] + train_X, train_y = train_X[train_idx], train_y[train_idx] + + model = _MODELS[info['task_type']] + + return train_X, train_y, val_X, val_y, test_X, test_y, model + +class FeatureMaker: + + def __init__(self, metadata, label_column='label', label_type='int', sample=50000): + self.columns = metadata['columns'] + self.label_column = label_column + self.label_type = label_type + self.sample = sample + self.encoders = dict() + + def make_features(self, data): + data = data.copy() + np.random.shuffle(data) + data = data[:self.sample] + + features = [] + labels = [] + + for index, cinfo in enumerate(self.columns): + col = data[:, index] + if cinfo['name'] == self.label_column: + if self.label_type == 'int': + labels = col.astype(int) + elif self.label_type == 'float': + labels = col.astype(float) + else: + assert 0, 'unkown label type' + continue + + if cinfo['type'] == CONTINUOUS: + cmin = cinfo['min'] + cmax = cinfo['max'] + if cmin >= 0 and cmax >= 1e3: + feature = np.log(np.maximum(col, 1e-2)) + + else: + feature = (col - cmin) / (cmax - cmin) * 5 + + else: + if cinfo['size'] <= 2: + feature = col + + else: + encoder = self.encoders.get(index) + col = col.reshape(-1, 1) + if encoder: + feature = encoder.transform(col) + else: + encoder = OneHotEncoder(sparse=False, handle_unknown='ignore') + self.encoders[index] = encoder + feature = encoder.fit_transform(col) + + features.append(feature) + + features = np.column_stack(features) + + return features, labels + + +def _prepare_ml_problem(train, val, test, metadata, eval): + fm = FeatureMaker(metadata) + x_trains, y_trains = [], [] + + for i in train: + x_train, y_train = fm.make_features(i) + x_trains.append(x_train) + y_trains.append(y_train) + + x_val, y_val = fm.make_features(val) + if eval is None: + x_test = None + y_test = None + else: + x_test, y_test = fm.make_features(test) + model = _MODELS[metadata['problem_type']] + + return x_trains, y_trains, x_val, y_val, x_test, y_test, model + + +def _weighted_f1(y_test, pred): + report = classification_report(y_test, pred, output_dict=True) + classes = list(report.keys())[:-3] + proportion = [ report[i]['support'] / len(y_test) for i in classes] + weighted_f1 = np.sum(list(map(lambda i, prop: report[i]['f1-score']* (1-prop)/(len(classes)-1), classes, proportion))) + return weighted_f1 + + +@ignore_warnings(category=ConvergenceWarning) +def _evaluate_multi_classification(train, test, info, val=None): + x_trains, y_trains, x_valid, y_valid, x_test, y_test, classifiers = prepare_ml_problem(train, test, info, val=val) + best_f1_scores = [] + unique_labels = np.unique(y_trains) + + + best_f1_scores = [] + best_weighted_scores = [] + best_auroc_scores = [] + best_acc_scores = [] + best_avg_scores = [] + + for model_spec in classifiers: + model_class = model_spec['class'] + model_kwargs = model_spec.get('kwargs', dict()) + model_repr = model_class.__name__ + + unique_labels = np.unique(y_trains) + + param_set = list(ParameterGrid(model_kwargs)) + + results = [] + for param in tqdm(param_set): + model = model_class(**param) + + try: + model.fit(x_trains, y_trains) + except: + pass + + if len(unique_labels) != len(np.unique(y_valid)): + pred = [unique_labels[0]] * len(x_valid) + pred_prob = np.array([1.] * len(x_valid)) + else: + pred = model.predict(x_valid) + pred_prob = model.predict_proba(x_valid) + + macro_f1 = f1_score(y_valid, pred, average='macro') + weighted_f1 = _weighted_f1(y_valid, pred) + acc = accuracy_score(y_valid, pred) + + # 3. auroc + # size = [a["size"] for a in metadata["columns"] if a["name"] == "label"][0] + size = len(set(unique_labels)) + rest_label = set(range(size)) - set(unique_labels) + tmp = [] + j = 0 + for i in range(size): + if i in rest_label: + tmp.append(np.array([0] * y_valid.shape[0])[:,np.newaxis]) + else: + try: + tmp.append(pred_prob[:,[j]]) + except: + tmp.append(pred_prob[:, np.newaxis]) + j += 1 + + roc_auc = roc_auc_score(np.eye(size)[y_valid], np.hstack(tmp), multi_class='ovr') + + results.append( + { + "name": model_repr, + "param": param, + "macro_f1": macro_f1, + "weighted_f1": weighted_f1, + "roc_auc": roc_auc, + "accuracy": acc + } + ) + + results = pd.DataFrame(results) + results['avg'] = results.loc[:, ['macro_f1', 'weighted_f1', 'roc_auc']].mean(axis=1) + best_f1_param = results.param[results.macro_f1.idxmax()] + best_weighted_param = results.param[results.weighted_f1.idxmax()] + best_auroc_param = results.param[results.roc_auc.idxmax()] + best_acc_param = results.param[results.accuracy.idxmax()] + best_avg_param = results.param[results.avg.idxmax()] + + + # test the best model + results = pd.DataFrame(results) + # best_param = results.param[results.macro_f1.idxmax()] + + def _calc(best_model): + best_scores = [] + + x_train = x_trains + y_train = y_trains + + try: + best_model.fit(x_train, y_train) + except: + pass + + if len(unique_labels) != len(np.unique(y_test)): + pred = [unique_labels[0]] * len(x_test) + pred_prob = np.array([1.] * len(x_test)) + else: + pred = best_model.predict(x_test) + pred_prob = best_model.predict_proba(x_test) + + macro_f1 = f1_score(y_test, pred, average='macro') + weighted_f1 = _weighted_f1(y_test, pred) + acc = accuracy_score(y_test, pred) + + # 3. auroc + size = len(set(unique_labels)) + rest_label = set(range(size)) - set(unique_labels) + tmp = [] + j = 0 + for i in range(size): + if i in rest_label: + tmp.append(np.array([0] * y_test.shape[0])[:,np.newaxis]) + else: + try: + tmp.append(pred_prob[:,[j]]) + except: + tmp.append(pred_prob[:, np.newaxis]) + j += 1 + roc_auc = roc_auc_score(np.eye(size)[y_test], np.hstack(tmp), multi_class='ovr') + + best_scores.append( + { + "name": model_repr, + "macro_f1": macro_f1, + "weighted_f1": weighted_f1, + "roc_auc": roc_auc, + "accuracy": acc + } + ) + return pd.DataFrame(best_scores) + + def _df(dataframe): + return { + "name": model_repr, + "macro_f1": dataframe.macro_f1.values[0], + "roc_auc": dataframe.roc_auc.values[0], + "weighted_f1": dataframe.weighted_f1.values[0], + "accuracy": dataframe.accuracy.values[0], + } + + best_f1_scores.append(_df(_calc(model_class(**best_f1_param)))) + best_weighted_scores.append(_df(_calc(model_class(**best_weighted_param)))) + best_auroc_scores.append(_df(_calc(model_class(**best_auroc_param)))) + best_acc_scores.append(_df(_calc(model_class(**best_acc_param)))) + best_avg_scores.append(_df(_calc(model_class(**best_avg_param)))) + + return best_f1_scores, best_weighted_scores, best_auroc_scores, best_acc_scores, best_avg_scores + +@ignore_warnings(category=ConvergenceWarning) +def _evaluate_binary_classification(train, test, info, val=None): + x_trains, y_trains, x_valid, y_valid, x_test, y_test, classifiers = prepare_ml_problem(train, test, info, val=val) + + unique_labels = np.unique(y_trains) + + best_f1_scores = [] + best_weighted_scores = [] + best_auroc_scores = [] + best_acc_scores = [] + best_avg_scores = [] + + for model_spec in classifiers: + + model_class = model_spec['class'] + model_kwargs = model_spec.get('kwargs', dict()) + model_repr = model_class.__name__ + + unique_labels = np.unique(y_trains) + + param_set = list(ParameterGrid(model_kwargs)) + + results = [] + for param in tqdm(param_set): + model = model_class(**param) + + try: + model.fit(x_trains, y_trains) + except ValueError: + pass + + if len(unique_labels) == 1: + pred = [unique_labels[0]] * len(x_valid) + pred_prob = np.array([1.] * len(x_valid)) + else: + pred = model.predict(x_valid) + pred_prob = model.predict_proba(x_valid) + + binary_f1 = f1_score(y_valid, pred, average='binary') + weighted_f1 = _weighted_f1(y_valid, pred) + acc = accuracy_score(y_valid, pred) + precision = precision_score(y_valid, pred, average='binary') + recall = recall_score(y_valid, pred, average='binary') + macro_f1 = f1_score(y_valid, pred, average='macro') + + # auroc + size = 2 + rest_label = set(range(size)) - set(unique_labels) + tmp = [] + j = 0 + for i in range(size): + if i in rest_label: + tmp.append(np.array([0] * y_valid.shape[0])[:,np.newaxis]) + else: + try: + tmp.append(pred_prob[:,[j]]) + except: + tmp.append(pred_prob[:, np.newaxis]) + j += 1 + roc_auc = roc_auc_score(np.eye(size)[y_valid], np.hstack(tmp)) + + results.append( + { + "name": model_repr, + "param": param, + "binary_f1": binary_f1, + "weighted_f1": weighted_f1, + "roc_auc": roc_auc, + "accuracy": acc, + "precision": precision, + "recall": recall, + "macro_f1": macro_f1 + } + ) + + + # test the best model + results = pd.DataFrame(results) + results['avg'] = results.loc[:, ['binary_f1', 'weighted_f1', 'roc_auc']].mean(axis=1) + best_f1_param = results.param[results.binary_f1.idxmax()] + best_weighted_param = results.param[results.weighted_f1.idxmax()] + best_auroc_param = results.param[results.roc_auc.idxmax()] + best_acc_param = results.param[results.accuracy.idxmax()] + best_avg_param = results.param[results.avg.idxmax()] + + + def _calc(best_model): + best_scores = [] + + best_model.fit(x_trains, y_trains) + + if len(unique_labels) == 1: + pred = [unique_labels[0]] * len(x_test) + pred_prob = np.array([1.] * len(x_test)) + else: + pred = best_model.predict(x_test) + pred_prob = best_model.predict_proba(x_test) + + binary_f1 = f1_score(y_test, pred, average='binary') + weighted_f1 = _weighted_f1(y_test, pred) + acc = accuracy_score(y_test, pred) + precision = precision_score(y_test, pred, average='binary') + recall = recall_score(y_test, pred, average='binary') + macro_f1 = f1_score(y_test, pred, average='macro') + + # auroc + size = 2 + rest_label = set(range(size)) - set(unique_labels) + tmp = [] + j = 0 + for i in range(size): + if i in rest_label: + tmp.append(np.array([0] * y_test.shape[0])[:,np.newaxis]) + else: + try: + tmp.append(pred_prob[:,[j]]) + except: + tmp.append(pred_prob[:, np.newaxis]) + j += 1 + try: + roc_auc = roc_auc_score(np.eye(size)[y_test], np.hstack(tmp)) + except ValueError: + tmp[1] = tmp[1].reshape(20000, 1) + roc_auc = roc_auc_score(np.eye(size)[y_test], np.hstack(tmp)) + + best_scores.append( + { + "name": model_repr, + # "param": param, + "binary_f1": binary_f1, + "weighted_f1": weighted_f1, + "roc_auc": roc_auc, + "accuracy": acc, + "precision": precision, + "recall": recall, + "macro_f1": macro_f1 + } + ) + + return pd.DataFrame(best_scores) + def _df(dataframe): + return { + "name": model_repr, + "binary_f1": dataframe.binary_f1.values[0], + "roc_auc": dataframe.roc_auc.values[0], + "weighted_f1": dataframe.weighted_f1.values[0], + "accuracy": dataframe.accuracy.values[0], + } + + best_f1_scores.append(_df(_calc(model_class(**best_f1_param)))) + best_weighted_scores.append(_df(_calc(model_class(**best_weighted_param)))) + best_auroc_scores.append(_df(_calc(model_class(**best_auroc_param)))) + best_acc_scores.append(_df(_calc(model_class(**best_acc_param)))) + best_avg_scores.append(_df(_calc(model_class(**best_avg_param)))) + + return best_f1_scores, best_weighted_scores, best_auroc_scores, best_acc_scores, best_avg_scores + +@ignore_warnings(category=ConvergenceWarning) +def _evaluate_regression(train, test, info, val=None): + + x_trains, y_trains, x_valid, y_valid, x_test, y_test, regressors = prepare_ml_problem(train, test, info, val=val) + + + best_r2_scores = [] + best_ev_scores = [] + best_mae_scores = [] + best_rmse_scores = [] + best_avg_scores = [] + + y_trains = np.log(np.clip(y_trains, 1, 20000)) + y_test = np.log(np.clip(y_test, 1, 20000)) + + for model_spec in regressors: + model_class = model_spec['class'] + model_kwargs = model_spec.get('kwargs', dict()) + model_repr = model_class.__name__ + + param_set = list(ParameterGrid(model_kwargs)) + + results = [] + for param in tqdm(param_set): + model = model_class(**param) + model.fit(x_trains, y_trains) + pred = model.predict(x_valid) + + r2 = r2_score(y_valid, pred) + explained_variance = explained_variance_score(y_valid, pred) + mean_squared = mean_squared_error(y_valid, pred) + root_mean_squared = mean_squared_error(y_valid, pred, squared=False) + mean_absolute = mean_absolute_error(y_valid, pred) + + results.append( + { + "name": model_repr, + "param": param, + "r2": r2, + "explained_variance": explained_variance, + "mean_squared": mean_squared, + "mean_absolute": mean_absolute, + "rmse": root_mean_squared + } + ) + + results = pd.DataFrame(results) + # results['avg'] = results.loc[:, ['r2', 'rmse']].mean(axis=1) + best_r2_param = results.param[results.r2.idxmax()] + best_ev_param = results.param[results.explained_variance.idxmax()] + best_mae_param = results.param[results.mean_absolute.idxmin()] + best_rmse_param = results.param[results.rmse.idxmin()] + # best_avg_param = results.param[results.avg.idxmax()] + + def _calc(best_model): + best_scores = [] + x_train, y_train = x_trains, y_trains + + best_model.fit(x_train, y_train) + pred = best_model.predict(x_test) + + r2 = r2_score(y_test, pred) + explained_variance = explained_variance_score(y_test, pred) + mean_squared = mean_squared_error(y_test, pred) + root_mean_squared = mean_squared_error(y_test, pred, squared=False) + mean_absolute = mean_absolute_error(y_test, pred) + + best_scores.append( + { + "name": model_repr, + "param": param, + "r2": r2, + "explained_variance": explained_variance, + "mean_squared": mean_squared, + "mean_absolute": mean_absolute, + "rmse": root_mean_squared + } + ) + + return pd.DataFrame(best_scores) + + def _df(dataframe): + return { + "name": model_repr, + "r2": dataframe.r2.values[0].astype(float), + "explained_variance": dataframe.explained_variance.values[0].astype(float), + "MAE": dataframe.mean_absolute.values[0].astype(float), + "RMSE": dataframe.rmse.values[0].astype(float), + } + + best_r2_scores.append(_df(_calc(model_class(**best_r2_param)))) + best_ev_scores.append(_df(_calc(model_class(**best_ev_param)))) + best_mae_scores.append(_df(_calc(model_class(**best_mae_param)))) + best_rmse_scores.append(_df(_calc(model_class(**best_rmse_param)))) + + return best_r2_scores, best_rmse_scores + +@ignore_warnings(category=ConvergenceWarning) +def compute_diversity(train, fake): + nearest_k = 5 + if train.shape[0] >= 50000: + num = np.random.randint(0, train.shape[0], 50000) + real_features = train[num] + fake_features_lst = [i[num] for i in fake] + else: + num = train.shape[0] + real_features = train[:num] + fake_features_lst = [i[:num] for i in fake] + scores = [] + for i, data in enumerate(fake_features_lst): + fake_features = data + metrics = compute_prdc(real_features=real_features, + fake_features=fake_features, + nearest_k=nearest_k) + metrics['i'] = i + scores.append(metrics) + return pd.DataFrame(scores).mean(axis=0), pd.DataFrame(scores).std(axis=0) + +_EVALUATORS = { + 'binclass': _evaluate_binary_classification, + 'multiclass': _evaluate_multi_classification, + 'regression': _evaluate_regression +} + +def get_evaluator(problem_type): + return _EVALUATORS[problem_type] + + +def compute_scores(train, test, synthesized_data, metadata, eval): + a, b, c = _EVALUATORS[metadata['problem_type']](train=train, test=test, fake=synthesized_data, metadata=metadata, eval=eval) + if eval is None: + return a.mean(axis=0), a.std(axis=0), a[['name','param']] + else: + return a.mean(axis=0), a.std(axis=0) + diff --git a/SynthData0523/main/c15/tabdiff/tabdiff-c15-20260513_004629/_tabdiff_runtime/eval/mle/tabular_dataload.py b/SynthData0523/main/c15/tabdiff/tabdiff-c15-20260513_004629/_tabdiff_runtime/eval/mle/tabular_dataload.py new file mode 100644 index 0000000000000000000000000000000000000000..d5561f456cdc32ca553f00c01f1c4b868aef37cb --- /dev/null +++ b/SynthData0523/main/c15/tabdiff/tabdiff-c15-20260513_004629/_tabdiff_runtime/eval/mle/tabular_dataload.py @@ -0,0 +1,111 @@ +# coding=utf-8 +# Copyright 2020 The Google Research Authors. +# +# Licensed under the Apache License, Version 2.0 (the "License"); +# you may not use this file except in compliance with the License. +# You may obtain a copy of the License at +# +# http://www.apache.org/licenses/LICENSE-2.0 +# +# Unless required by applicable law or agreed to in writing, software +# distributed under the License is distributed on an "AS IS" BASIS, +# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied. +# See the License for the specific language governing permissions and +# limitations under the License. + +# pylint: skip-file +"""Return training and evaluation/test datasets from config files.""" +import torch +import numpy as np +import pandas as pd +from tabular_transformer import GeneralTransformer +import json +import logging +import os + +CATEGORICAL = "categorical" +CONTINUOUS = "continuous" + +LOGGER = logging.getLogger(__name__) + +DATA_PATH = os.path.join(os.path.dirname(__file__), 'tabular_datasets') + +def _load_json(path): + with open(path) as json_file: + return json.load(json_file) + + +def _load_file(filename, loader): + local_path = os.path.join(DATA_PATH, filename) + + if loader == np.load: + return loader(local_path, allow_pickle=True) + return loader(local_path) + + +def _get_columns(metadata): + categorical_columns = list() + + for column_idx, column in enumerate(metadata['columns']): + if column['type'] == CATEGORICAL: + categorical_columns.append(column_idx) + + return categorical_columns + + +def load_data(name): + data_dir = f'data/{name}' + info_path = f'{data_dir}/info.json' + + train = pd.read_csv(f'{data_dir}/train.csv').to_numpy() + test = pd.read_csv(f'{data_dir}/test.csv').to_numpy() + + with open(f'{data_dir}/info.json', 'r') as f: + info = json.load(f) + + task_type = info['task_type'] + + num_cols = info['num_col_idx'] + cat_cols = info['cat_col_idx'] + target_cols = info['target_col_idx'] + + if task_type != 'regression': + cat_cols = cat_cols + target_cols + + return train, test, (cat_cols, info) + + +def get_dataset(FLAGS, evaluation=False): + + batch_size = FLAGS.training_batch_size if not evaluation else FLAGS.eval_batch_size + + if batch_size % torch.cuda.device_count() != 0: + raise ValueError(f'Batch sizes ({batch_size} must be divided by' + f'the number of devices ({torch.cuda.device_count()})') + + + # Create dataset builders for tabular data. + train, test, cols = load_data(FLAGS.dataname) + cols_idx = list(np.arange(train.shape[1])) + dis_idx = cols[0] + con_idx = [x for x in cols_idx if x not in dis_idx] + + #split continuous and categorical + train_con = train[:,con_idx] + train_dis = train[:,dis_idx] + + #new index + cat_idx_ = list(np.arange(train_dis.shape[1]))[:len(cols[0])] + + transformer_con = GeneralTransformer() + transformer_dis = GeneralTransformer() + + transformer_con.fit(train_con, []) + transformer_dis.fit(train_dis, cat_idx_) + + train_con_data = transformer_con.transform(train_con) + train_dis_data = transformer_dis.transform(train_dis) + + + return train, train_con_data, train_dis_data, test, (transformer_con, transformer_dis, cols[1]), con_idx, dis_idx + \ No newline at end of file diff --git a/SynthData0523/main/c15/tabdiff/tabdiff-c15-20260513_004629/_tabdiff_runtime/eval/mle/tabular_transformer.py b/SynthData0523/main/c15/tabdiff/tabdiff-c15-20260513_004629/_tabdiff_runtime/eval/mle/tabular_transformer.py new file mode 100644 index 0000000000000000000000000000000000000000..571e86a298d4b973484c7fd488819e86b5f14d30 --- /dev/null +++ b/SynthData0523/main/c15/tabdiff/tabdiff-c15-20260513_004629/_tabdiff_runtime/eval/mle/tabular_transformer.py @@ -0,0 +1,110 @@ +import numpy as np +import pandas as pd + +CATEGORICAL = "categorical" +CONTINUOUS = "continuous" + +class Transformer: + + @staticmethod + def get_metadata(data, categorical_columns=tuple()): + meta = [] + + df = pd.DataFrame(data) + for index in df: + column = df[index] + + if index in categorical_columns: + mapper = column.value_counts().index.tolist() + meta.append({ + "name": index, + "type": CATEGORICAL, + "size": len(mapper), + "i2s": mapper + }) + else: + meta.append({ + "name": index, + "type": CONTINUOUS, + "min": column.min(), + "max": column.max(), + }) + + return meta + + def fit(self, data, categorical_columns=tuple()): + raise NotImplementedError + + def transform(self, data): + raise NotImplementedError + + def inverse_transform(self, data): + raise NotImplementedError + + +class GeneralTransformer(Transformer): + + def __init__(self, act='tanh'): + self.act = act + self.meta = None + self.output_dim = None + + def fit(self, data, categorical_columns=tuple()): + self.meta = self.get_metadata(data, categorical_columns) + self.output_dim = 0 + for info in self.meta: + if info['type'] in [CONTINUOUS]: + self.output_dim += 1 + else: + self.output_dim += info['size'] + + def transform(self, data): + data_t = [] + self.output_info = [] + for id_, info in enumerate(self.meta): + col = data[:, id_] + if info['type'] == CONTINUOUS: + col = (col - (info['min'])) / (info['max'] - info['min']) + if self.act == 'tanh': + col = col * 2 - 1 + data_t.append(col.reshape([-1, 1])) + self.output_info.append((1, self.act)) + + else: + col_t = np.zeros([len(data), info['size']]) + idx = list(map(info['i2s'].index, col)) + col_t[np.arange(len(data)), idx] = 1 + data_t.append(col_t) + self.output_info.append((info['size'], 'softmax')) + + return np.concatenate(data_t, axis=1) + + def inverse_transform(self, data): + if self.meta[1]['type'] == CONTINUOUS: + data_t = np.zeros([len(data), len(self.meta)]) + else: + dtype = np.dtype('U50') + data_t = np.empty([len(data), len(self.meta)], dtype=dtype) + + + data = data.copy() + for id_, info in enumerate(self.meta): + + if info['type'] == CONTINUOUS: + current = data[:, 0] + data = data[:, 1:] + + if self.act == 'tanh': + current = (current + 1) / 2 + + current = np.clip(current, 0, 1) + data_t[:, id_] = current * (info['max'] - info['min']) + info['min'] + + else: + current = data[:, :info['size']] + data = data[:, info['size']:] + idx = np.argmax(current, axis=1) + recovered = list(map(info['i2s'].__getitem__, idx)) + + data_t[:, id_] = recovered + return data_t diff --git a/SynthData0523/main/c15/tabdiff/tabdiff-c15-20260513_004629/_tabdiff_runtime/eval/visualize_density.py b/SynthData0523/main/c15/tabdiff/tabdiff-c15-20260513_004629/_tabdiff_runtime/eval/visualize_density.py new file mode 100644 index 0000000000000000000000000000000000000000..d7ee36fac552e916bbb238796e2fb2af1ebe5d50 --- /dev/null +++ b/SynthData0523/main/c15/tabdiff/tabdiff-c15-20260513_004629/_tabdiff_runtime/eval/visualize_density.py @@ -0,0 +1,85 @@ +# %% +import numpy as np +import pandas as pd +import torch +import os + +import json + +# Metrics +from sdmetrics.visualization import get_column_plot + +import plotly.io as pio +from PIL import Image +from io import BytesIO + +from tqdm import tqdm +import argparse + +def main(args): + dataname = args.dataname + sample_file_name = args.sample_file_name + + syn_path = f'synthetic/{dataname}/{sample_file_name}' + real_path = f'synthetic/{dataname}/real.csv' + + syn_data = pd.read_csv(syn_path) + real_data = pd.read_csv(real_path) + + print((real_data[:2])) + + data_dir = f'data/{dataname}' + with open(f'{data_dir}/info.json', 'r') as f: + info = json.load(f) + + big_img = plot_density(syn_data, real_data, info) + + save_dir = f"eval/density_graphs/{dataname}" + if not os.path.exists(save_dir): + os.makedirs(save_dir) + save_path = os.path.join(save_dir, sample_file_name.replace('.csv', '.png')) + big_img.save(save_path) + print(f"Saved density graph to {save_path}") + +def plot_density(syn_data, real_data, info, num_per_row=3): + column_names = info['column_names'] + num_cat = len(column_names) + num_col = num_per_row + num_row = (num_cat-1)//num_col+1 + + imgs = [] + for i, col in tqdm(enumerate(column_names), total = len(column_names)): + # plot_type = 'bar' if i in info['cat_col_idx'] else 'distplot' + plot_type = 'bar' if info['metadata']['columns'][str(i)]['sdtype'] == 'categorical' else 'distplot' + if plot_type == 'distplot' and (syn_data[col][0] == syn_data[col]).all(): # to tackle a very weird bug + # If the continuous data all aggregate at a single value, get_column_plot() cannot plot a density curve for it. + # So, we perturb one entry of the cont data by a small amount + print(f"\n ALERT: the generated samples column_{i} with name '{col}' all has the same value of {syn_data[col][0]} \n") + syn_data[col][0] += 1e-5 + fig = get_column_plot( + real_data=real_data, + synthetic_data=syn_data, + column_name=col, + plot_type=plot_type + ) + + img_bytes = pio.to_image(fig, format='png') + img = Image.open(BytesIO(img_bytes)) + imgs.append(img) + + width, height = imgs[0].size + big_img = Image.new('RGB', (width * num_col, height * num_row)) + for i, img in enumerate(imgs): + coordinate = (i%num_col * width, i//num_col * height) + big_img.paste(img, coordinate) + return big_img + +if __name__ == '__main__': + parser = argparse.ArgumentParser() + + parser.add_argument('--dataname', type=str, default='adult') + parser.add_argument('--sample_file_name', type=str, default='tabsyn.csv') + + args = parser.parse_args() + + main(args) \ No newline at end of file diff --git a/SynthData0523/main/c15/tabdiff/tabdiff-c15-20260513_004629/_tabdiff_runtime/eval_impute.py b/SynthData0523/main/c15/tabdiff/tabdiff-c15-20260513_004629/_tabdiff_runtime/eval_impute.py new file mode 100644 index 0000000000000000000000000000000000000000..576a4340314af6c9eb9253d5f4e040179feda3e6 --- /dev/null +++ b/SynthData0523/main/c15/tabdiff/tabdiff-c15-20260513_004629/_tabdiff_runtime/eval_impute.py @@ -0,0 +1,82 @@ +import numpy as np +import pandas as pd +from sklearn.preprocessing import OneHotEncoder +from sklearn.metrics import f1_score, roc_auc_score +from sklearn.metrics import root_mean_squared_error +import argparse +import json + + +parser = argparse.ArgumentParser(description='Missing Value Imputation') + +parser.add_argument('--dataname', type=str, default='adult', help='Name of dataset.') +parser.add_argument('--exp_name', type=str, default=None) +parser.add_argument('--col', type=int, default=0, help='Numerical Column to Impute') +parser.add_argument('--non_learnable_schedule', action='store_true') + +args = parser.parse_args() + +dataname = args.dataname +exp_name = args.exp_name +if exp_name is None: + exp_name = "non_learnable_schedule" if args.non_learnable_schedule else "learnable_schedule" +col = args.col + +dataname = args.dataname + +data_dir = f'data/{dataname}' + +real_path = f'{data_dir}/test.csv' + +info_path = f'data/{dataname}/info.json' +with open(info_path, 'r') as f: + info = json.load(f) +task_type = info['task_type'] + + +encoder = OneHotEncoder() + +real_data = pd.read_csv(real_path) +target_col = real_data.columns[info['target_col_idx'][0]] + +if task_type == "binclass": + real_target = real_data[target_col].to_numpy().reshape(-1,1) + real_y = encoder.fit_transform(real_target).toarray() + + syn_y = [] + for i in range(50): + syn_path = f'impute/{dataname}/{exp_name}/{i}.csv' + syn_data = pd.read_csv(syn_path) + target = syn_data[target_col].to_numpy().reshape(-1, 1) + syn_y.append(encoder.transform(target).toarray()) + + syn_y_prob = np.stack(syn_y).mean(0) + syn_y_oh = np.argmax(syn_y_prob, axis=1) + num_classes = np.max(syn_y_oh) + 1 + syn_y_oh = np.eye(num_classes)[syn_y_oh] + + + + + micro_f1 = f1_score(real_y.argmax(axis=1), syn_y_prob.argmax(axis=1), average='micro') + auc = roc_auc_score(real_y, syn_y_prob, average='micro') + auc_argmaxed = roc_auc_score(real_y, syn_y_oh, average='micro') + print("AUC: ", round(auc*100, 3)) +else: + y_test = real_data[target_col].to_numpy() + y_test = np.log(np.clip(y_test, 1, 20000)) + + syn_y_ = [] + error = [] + for i in range(50): + syn_path = f'impute/{dataname}/{exp_name}/{i}.csv' + syn_data = pd.read_csv(syn_path) + syn_y = syn_data[target_col].to_numpy() + syn_y = np.log(np.clip(syn_y, 1, 20000)) + syn_y_.append(syn_y) + + pred = np.stack(syn_y_).mean(0) + root_mean_squared = root_mean_squared_error(y_test, pred) # mean_squared_error with squared=False is deprecated + + print("RMSE:", round(root_mean_squared, 4)) + \ No newline at end of file diff --git a/SynthData0523/main/c15/tabdiff/tabdiff-c15-20260513_004629/_tabdiff_runtime/images/tabdiff_demo.gif b/SynthData0523/main/c15/tabdiff/tabdiff-c15-20260513_004629/_tabdiff_runtime/images/tabdiff_demo.gif new file mode 100644 index 0000000000000000000000000000000000000000..55c4a680d59620578982bd1a153bee9371a28d99 --- /dev/null +++ b/SynthData0523/main/c15/tabdiff/tabdiff-c15-20260513_004629/_tabdiff_runtime/images/tabdiff_demo.gif @@ -0,0 +1,3 @@ +version https://git-lfs.github.com/spec/v1 +oid sha256:8b3f9c4819c4ef4abf8ade862da25915b826212f3d3ef9e4774ddde19db88bf2 +size 3260845 diff --git a/SynthData0523/main/c15/tabdiff/tabdiff-c15-20260513_004629/_tabdiff_runtime/images/tabdiff_demo.mp4 b/SynthData0523/main/c15/tabdiff/tabdiff-c15-20260513_004629/_tabdiff_runtime/images/tabdiff_demo.mp4 new file mode 100644 index 0000000000000000000000000000000000000000..fafe19a6abe882d8471e9afb7e51aabb9b40f2c9 --- /dev/null +++ b/SynthData0523/main/c15/tabdiff/tabdiff-c15-20260513_004629/_tabdiff_runtime/images/tabdiff_demo.mp4 @@ -0,0 +1,3 @@ +version https://git-lfs.github.com/spec/v1 +oid sha256:90c8072ab9a7dcc73d7bc3ea32b0e961cae5fcd7d73b6ffc2ffb44e6c291962f +size 1108599 diff --git a/SynthData0523/main/c15/tabdiff/tabdiff-c15-20260513_004629/_tabdiff_runtime/images/tabdiff_flowchart.jpg b/SynthData0523/main/c15/tabdiff/tabdiff-c15-20260513_004629/_tabdiff_runtime/images/tabdiff_flowchart.jpg new file mode 100644 index 0000000000000000000000000000000000000000..390f02d16c6271b81168d19954b56d354398309b --- /dev/null +++ b/SynthData0523/main/c15/tabdiff/tabdiff-c15-20260513_004629/_tabdiff_runtime/images/tabdiff_flowchart.jpg @@ -0,0 +1,3 @@ +version https://git-lfs.github.com/spec/v1 +oid sha256:34e4115e21b32199dd6cc0a0664f924907fcf1f66e2063616c50025f597b7409 +size 382775 diff --git a/SynthData0523/main/c15/tabdiff/tabdiff-c15-20260513_004629/_tabdiff_runtime/main.py b/SynthData0523/main/c15/tabdiff/tabdiff-c15-20260513_004629/_tabdiff_runtime/main.py new file mode 100644 index 0000000000000000000000000000000000000000..2da09d0287cf71849f54261d33a45b4be723573d --- /dev/null +++ b/SynthData0523/main/c15/tabdiff/tabdiff-c15-20260513_004629/_tabdiff_runtime/main.py @@ -0,0 +1,46 @@ +import torch +from tabdiff.main import main as tabdiff_main +import argparse + +if __name__ == '__main__': + parser = argparse.ArgumentParser(description='Training of TabDiff') + + # General configs + parser.add_argument('--dataname', type=str, default='adult', help='Name dataset, one of those in data/ dir') + parser.add_argument('--mode', type=str, default='train', help='train or test') + parser.add_argument('--method', type=str, default='tabdiff', help='Currently we only release our model TabDiff. Baselines will be released soon.') + parser.add_argument('--gpu', type=int, default=0, help='GPU index') + parser.add_argument('--debug', action='store_true', help='Enable debug mode') + parser.add_argument('--no_wandb', action='store_true', help='disable wandb') + parser.add_argument('--exp_name', type=str, default=None, help='Experiment name, used to name log directories and the wandb run name') + parser.add_argument('--deterministic', action='store_true', help='Whether to make the entire process deterministic, i.e., fix global random seeds') + + # Configs for tabdiff + parser.add_argument('--y_only', action='store_true', help='Train guidance model that only model the target column') + parser.add_argument('--non_learnable_schedule', action='store_true', help='disable learnable noise schedule') + + # Configs for testing tabdiff + parser.add_argument('--num_samples_to_generate', type=int, default=None, help='Number of samples to be generated while testing') + parser.add_argument('--ckpt_path', type=str, default=None, help='Path to the model checkpoint to be tested') + parser.add_argument('--report', action='store_true', help="Report testing mode: this mode sequentially runs test runs and report the avg and std") + parser.add_argument('--num_runs', type=int, default=20, help="Number of runs to be averaged in the report testing mode") + + # Configs for imputation + parser.add_argument('--impute', action='store_true') + parser.add_argument('--trial_start', type=int, default=0) + parser.add_argument('--trial_size', type=int, default=50) + parser.add_argument('--resample_rounds', type=int, default=1) + parser.add_argument('--impute_condition', type=str, default="x_t") + parser.add_argument('--y_only_model_path', type=str, default=None, help="Path to the y_only model checkpoint that will be used as the unconditional guidance model") + parser.add_argument('--w_num', type=float, default=0.6) + parser.add_argument('--w_cat', type=float, default=0.6) + + args = parser.parse_args() + + # check cuda + if args.gpu != -1 and torch.cuda.is_available(): + args.device = f'cuda:{args.gpu}' + else: + args.device = 'cpu' + + tabdiff_main(args) \ No newline at end of file diff --git a/SynthData0523/main/c15/tabdiff/tabdiff-c15-20260513_004629/_tabdiff_runtime/process_dataset.py b/SynthData0523/main/c15/tabdiff/tabdiff-c15-20260513_004629/_tabdiff_runtime/process_dataset.py new file mode 100644 index 0000000000000000000000000000000000000000..d866c68416c3f627b0ddbcf94a5f337e0cd84201 --- /dev/null +++ b/SynthData0523/main/c15/tabdiff/tabdiff-c15-20260513_004629/_tabdiff_runtime/process_dataset.py @@ -0,0 +1,646 @@ +import numpy as np +import pandas as pd +import os +import sys +import json +import argparse + +from sklearn.preprocessing import OrdinalEncoder +from sklearn import model_selection + +TYPE_TRANSFORM ={ + 'float', np.float32, + 'str', str, + 'int', int +} + +INFO_PATH = 'data/Info' + +parser = argparse.ArgumentParser(description='process dataset') + +# General configs +parser.add_argument('--dataname', type=str, default=None, help='Name of dataset.') +args = parser.parse_args() + +def preprocess_beijing(): + with open(f'{INFO_PATH}/beijing.json', 'r') as f: + info = json.load(f) + + data_path = info['raw_data_path'] + + data_df = pd.read_csv(data_path) + columns = data_df.columns + + data_df = data_df[columns[1:]] + + + df_cleaned = data_df.dropna() + df_cleaned.to_csv(info['data_path'], index = False) + +def preprocess_beijing_dcr(): + with open(f'{INFO_PATH}/beijing_dcr.json', 'r') as f: + info = json.load(f) + + data_path = info['raw_data_path'] + + data_df = pd.read_csv(data_path) + columns = data_df.columns + + data_df = data_df[columns[1:]] + + + df_cleaned = data_df.dropna() + df_cleaned.to_csv(info['data_path'], index = False) + +def preprocess_news(remove_cat=False): + name = 'news' if not remove_cat else 'news_nocat' + with open(f'{INFO_PATH}/{name}.json', 'r') as f: + info = json.load(f) + + data_path = info['raw_data_path'] + data_df = pd.read_csv(data_path) + data_df = data_df.drop('url', axis=1) + + columns = np.array(data_df.columns.tolist()) + + cat_columns1 = columns[list(range(12,18))] + cat_columns2 = columns[list(range(30,38))] + + if not remove_cat: + cat_col1 = data_df[cat_columns1].astype(int).to_numpy().argmax(axis = 1) + cat_col2 = data_df[cat_columns2].astype(int).to_numpy().argmax(axis = 1) + + data_df = data_df.drop(cat_columns2, axis=1) + data_df = data_df.drop(cat_columns1, axis=1) + + if not remove_cat: + data_df['data_channel'] = cat_col1 + data_df['weekday'] = cat_col2 + + data_save_path = f'data/{name}/{name}.csv' + data_df.to_csv(f'{data_save_path}', index = False) + + columns = np.array(data_df.columns.tolist()) + num_columns = columns[list(range(45))] + cat_columns = ['data_channel', 'weekday'] if not remove_cat else [] + target_columns = columns[[45]] + + info['num_col_idx'] = list(range(45)) + info['cat_col_idx'] = [46, 47] if not remove_cat else [] + info['target_col_idx'] = [45] + info['data_path'] = data_save_path + + with open(f'{INFO_PATH}/{name}.json', 'w') as file: + json.dump(info, file, indent=4) + +def preprocess_news_dcr(remove_cat=False): + name = 'news_dcr' if not remove_cat else 'news_nocat_dcr' + with open(f'{INFO_PATH}/{name}.json', 'r') as f: + info = json.load(f) + + data_path = info['raw_data_path'] + data_df = pd.read_csv(data_path) + data_df = data_df.drop('url', axis=1) + + columns = np.array(data_df.columns.tolist()) + + cat_columns1 = columns[list(range(12,18))] + cat_columns2 = columns[list(range(30,38))] + + if not remove_cat: + cat_col1 = data_df[cat_columns1].astype(int).to_numpy().argmax(axis = 1) + cat_col2 = data_df[cat_columns2].astype(int).to_numpy().argmax(axis = 1) + + data_df = data_df.drop(cat_columns2, axis=1) + data_df = data_df.drop(cat_columns1, axis=1) + + if not remove_cat: + data_df['data_channel'] = cat_col1 + data_df['weekday'] = cat_col2 + + data_save_path = f'data/{name}/{name}.csv' + data_df.to_csv(f'{data_save_path}', index = False) + + columns = np.array(data_df.columns.tolist()) + num_columns = columns[list(range(45))] + cat_columns = ['data_channel', 'weekday'] if not remove_cat else [] + target_columns = columns[[45]] + + info['num_col_idx'] = list(range(45)) + info['cat_col_idx'] = [46, 47] if not remove_cat else [] + info['target_col_idx'] = [45] + info['data_path'] = data_save_path + + with open(f'{INFO_PATH}/{name}.json', 'w') as file: + json.dump(info, file, indent=4) + +def preprocess_diabetes(): + """ + Preprocesses the diabetes dataset is aligned with the concurrent work + Continuous Diffusion for Mixed-Type Tabular Data (CDTD): + https://github.com/muellermarkus/cdtd + """ + with open(f'{INFO_PATH}/diabetes.json', 'r') as f: + info = json.load(f) + + info['num_col_idx'] = list(range(9)) + info['cat_col_idx'] = list(range(9, 36)) + info['target_col_idx'] = [36] + + data_path = info['raw_data_path'] + df = pd.read_csv(data_path, sep=',') + df = df[info['column_names']] + df = df.replace(r' ', np.nan) + df = df.replace(r'?', np.nan) + df = df.replace(r'', np.nan) + + num_features = [info['column_names'][idx] for idx in info['num_col_idx']] + cat_features = [info['column_names'][idx] for idx in info['cat_col_idx']] + target = info['column_names'][info['target_col_idx'][0]] + df[target] = np.where(df[target] == 'NO', 0, 1) + enc = OrdinalEncoder() + df['age'] = enc.fit_transform(df['age'].to_numpy().reshape(-1,1)) + + # remove rows with missings in targets + idx_target_nan = df[target].isna().to_numpy().nonzero()[0] + df.drop(labels = idx_target_nan, axis = 0, inplace = True) + + # for categorical features, replace missings with 'empty', which will be counted as a new category + df[cat_features] = df[cat_features].fillna('empty') + + # for continuous data, drop missing + df.dropna(inplace = True) + + # ensure correct types + X_cat = df[cat_features].to_numpy().astype('str') + X_cont = df[num_features].to_numpy().astype('float') + y = df[[target]].to_numpy() + + val_prop, test_prop = 0.2, 0.2 + prop = val_prop / (1 - test_prop) + + stratify = None if info['task_type'] == 'regression' else y + X_cat_train, X_cat_test, X_cont_train, X_cont_test, y_train, y_test = \ + model_selection.train_test_split(X_cat, X_cont, y, test_size = test_prop, + stratify = stratify, random_state = 42) + if val_prop > 0: + stratify = None if info['task_type'] == 'regression' else y_train + X_cat_train, X_cat_val, X_cont_train, X_cont_val, y_train, y_val = \ + model_selection.train_test_split(X_cat_train, X_cont_train, y_train, + stratify = stratify, test_size = prop, + random_state = 42) + + train_df = pd.DataFrame(np.concatenate([X_cont_train, X_cat_train, y_train], axis = 1), columns = num_features + cat_features + [target]) + val_df = pd.DataFrame(np.concatenate([X_cont_val, X_cat_val, y_val], axis = 1), columns = num_features + cat_features + [target]) + test_df = pd.DataFrame(np.concatenate([X_cont_test, X_cat_test, y_test], axis = 1), columns = num_features + cat_features + [target]) + + # Save the splited data + train_df.to_csv(info['data_path'], index = False) + val_df.to_csv(info['val_path'], index = False) + test_df.to_csv(info['test_path'], index = False) + # Save updated info + with open(f'{INFO_PATH}/diabetes.json', 'w') as file: + json.dump(info, file, indent=4) + +def preprocess_diabetes_dcr(): + """ + Preprocesses the diabetes dataset is aligned with the concurrent work + Continuous Diffusion for Mixed-Type Tabular Data (CDTD): + https://github.com/muellermarkus/cdtd + """ + with open(f'{INFO_PATH}/diabetes_dcr.json', 'r') as f: + info = json.load(f) + + info['num_col_idx'] = list(range(9)) + info['cat_col_idx'] = list(range(9, 36)) + info['target_col_idx'] = [36] + + data_path = info['raw_data_path'] + df = pd.read_csv(data_path, sep=',') + df = df[info['column_names']] + df = df.replace(r' ', np.nan) + df = df.replace(r'?', np.nan) + df = df.replace(r'', np.nan) + + num_features = [info['column_names'][idx] for idx in info['num_col_idx']] + cat_features = [info['column_names'][idx] for idx in info['cat_col_idx']] + target = info['column_names'][info['target_col_idx'][0]] + df[target] = np.where(df[target] == 'NO', 0, 1) + enc = OrdinalEncoder() + df['age'] = enc.fit_transform(df['age'].to_numpy().reshape(-1,1)) + + # remove rows with missings in targets + idx_target_nan = df[target].isna().to_numpy().nonzero()[0] + df.drop(labels = idx_target_nan, axis = 0, inplace = True) + + # for categorical features, replace missings with 'empty', which will be counted as a new category + df[cat_features] = df[cat_features].fillna('empty') + + # for continuous data, drop missing + df.dropna(inplace = True) + + # ensure correct types + X_cat = df[cat_features].to_numpy().astype('str') + X_cont = df[num_features].to_numpy().astype('float') + y = df[[target]].to_numpy() + + val_prop, test_prop = 0.0, 0.5 # 50-50 split for dcr eval + prop = val_prop / (1 - test_prop) + + stratify = None if info['task_type'] == 'regression' else y + X_cat_train, X_cat_test, X_cont_train, X_cont_test, y_train, y_test = \ + model_selection.train_test_split(X_cat, X_cont, y, test_size = test_prop, + stratify = stratify, random_state = 42) + if val_prop > 0: + stratify = None if info['task_type'] == 'regression' else y_train + X_cat_train, X_cat_val, X_cont_train, X_cont_val, y_train, y_val = \ + model_selection.train_test_split(X_cat_train, X_cont_train, y_train, + stratify = stratify, test_size = prop, + random_state = 42) + + train_df = pd.DataFrame(np.concatenate([X_cont_train, X_cat_train, y_train], axis = 1), columns = num_features + cat_features + [target]) + if val_prop > 0: + val_df = pd.DataFrame(np.concatenate([X_cont_val, X_cat_val, y_val], axis = 1), columns = num_features + cat_features + [target]) + else: + val_df = pd.DataFrame(columns = num_features + cat_features + [target]).astype(train_df.dtypes) + test_df = pd.DataFrame(np.concatenate([X_cont_test, X_cat_test, y_test], axis = 1), columns = num_features + cat_features + [target]) + + # Save the splited data + train_df.to_csv(info['data_path'], index = False) + val_df.to_csv(info['val_path'], index = False) + test_df.to_csv(info['test_path'], index = False) + # Save updated info + with open(f'{INFO_PATH}/diabetes_dcr.json', 'w') as file: + json.dump(info, file, indent=4) + + + +def get_column_name_mapping(data_df, num_col_idx, cat_col_idx, target_col_idx, column_names = None): + + if not column_names: + column_names = np.array(data_df.columns.tolist()) + + + idx_mapping = {} + + curr_num_idx = 0 + curr_cat_idx = len(num_col_idx) + curr_target_idx = curr_cat_idx + len(cat_col_idx) + + for idx in range(len(column_names)): + + if idx in num_col_idx: + idx_mapping[int(idx)] = curr_num_idx + curr_num_idx += 1 + elif idx in cat_col_idx: + idx_mapping[int(idx)] = curr_cat_idx + curr_cat_idx += 1 + else: + idx_mapping[int(idx)] = curr_target_idx + curr_target_idx += 1 + + + inverse_idx_mapping = {} + for k, v in idx_mapping.items(): + inverse_idx_mapping[int(v)] = k + + idx_name_mapping = {} + + for i in range(len(column_names)): + idx_name_mapping[int(i)] = column_names[i] + + return idx_mapping, inverse_idx_mapping, idx_name_mapping + + +def train_val_test_split(data_df, cat_columns, num_train = 0, num_test = 0): + total_num = data_df.shape[0] + idx = np.arange(total_num) + + + seed = 1234 + + while True: + np.random.seed(seed) + np.random.shuffle(idx) + + train_idx = idx[:num_train] + test_idx = idx[-num_test:] + + + train_df = data_df.loc[train_idx] + test_df = data_df.loc[test_idx] + + + + flag = 0 + for i in cat_columns: + if len(set(train_df[i])) != len(set(data_df[i])): + flag = 1 + break + + if flag == 0: + break + else: + seed += 1 + + return train_df, test_df, seed + + +def process_data(name): + + if name == 'news': + preprocess_news() + elif name == 'news_nocat': + preprocess_news(remove_cat=True) + elif name == 'news_dcr': + preprocess_news_dcr() + elif name == 'beijing': + preprocess_beijing() + elif name == 'beijing_dcr': + preprocess_beijing_dcr() + elif name == 'diabetes': + preprocess_diabetes() + elif name == 'diabetes_dcr': + preprocess_diabetes_dcr() + + with open(f'{INFO_PATH}/{name}.json', 'r') as f: + info = json.load(f) + + data_path = info['data_path'] + if info['file_type'] == 'csv': + data_df = pd.read_csv(data_path, header = info['header']) + + elif info['file_type'] == 'xls': + data_df = pd.read_excel(data_path, sheet_name='Data', header=1) + data_df = data_df.drop('ID', axis=1) + + num_data = data_df.shape[0] + + column_names = info['column_names'] if info['column_names'] else data_df.columns.tolist() + + num_col_idx = info['num_col_idx'] + cat_col_idx = info['cat_col_idx'] + target_col_idx = info['target_col_idx'] + + num_columns = [column_names[i] for i in num_col_idx] + cat_columns = [column_names[i] for i in cat_col_idx] + target_columns = [column_names[i] for i in target_col_idx] + + idx_mapping, inverse_idx_mapping, idx_name_mapping = get_column_name_mapping(data_df, num_col_idx, cat_col_idx, target_col_idx, column_names) + + has_val = bool(info['val_path']) + val_df = pd.DataFrame(columns=data_df.columns).astype(data_df.dtypes) # by default (val_path is not provided), set val_Df to be empty + if info['test_path']: + + # if testing data is given + test_path = info['test_path'] + + if "adult" in name: # BUG: currently data saved at adult's test_path cannot be directly loaded. Consider integrate the following code to a preprocesing function for adult + with open(test_path, 'r') as f: + lines = f.readlines()[1:] + test_save_path = f'data/{name}/test.data' + if not os.path.exists(test_save_path): + with open(test_save_path, 'a') as f1: + for line in lines: + save_line = line.strip('\n').strip('.') + f1.write(f'{save_line}\n') + + test_df = pd.read_csv(test_save_path, header = None) + else: + test_df = pd.read_csv(test_path, header = info['header']) + + if has_val: # currently you cannot have a val path without a test path + val_path = info['val_path'] + val_df = pd.read_csv(val_path, header = info['header']) + + train_df = data_df + + if "dcr" in name and "diabetes" not in name: # create 50/50 splits for dcr datasets; no need for this for diabetes dataset as it's done in preprocessing + complete_df = pd.concat([train_df, test_df, val_df], axis = 0, ignore_index=True) + num_data = complete_df.shape[0] + num_train = int(num_data*0.5) + num_test = num_data - num_train + complete_df.rename(columns = idx_name_mapping, inplace=True) + train_df, test_df, seed = train_val_test_split(complete_df, cat_columns, num_train, num_test) + + else: + # Train/ Test Split, 90% Training (50% for dcr eval exclusively), 10% Testing (Validation set will be selected from Training set) + if "dcr" in name: + num_train = int(num_data*0.5) + else: + num_train = int(num_data*0.9) + num_test = num_data - num_train + + train_df, test_df, seed = train_val_test_split(data_df, cat_columns, num_train, num_test) + + complete_df = pd.concat([train_df, test_df, val_df], axis = 0) + name_idx_mapping = {val: key for key, val in idx_name_mapping.items()} + int_columns = [] + int_col_idx = [] + int_col_idx_wrt_num = [] + for i, col_idx in enumerate(num_col_idx): + col = column_names[col_idx] + col_data = complete_df.iloc[:,col_idx] + is_int = (col_data%1 == 0).all() + if is_int: + int_columns.append(col) + int_col_idx.append(name_idx_mapping[col]) + int_col_idx_wrt_num.append(i) + info['int_col_idx'] = int_col_idx + info['int_columns'] = int_columns + info['int_col_idx_wrt_num'] = int_col_idx_wrt_num + + train_df.columns = range(len(train_df.columns)) + test_df.columns = range(len(test_df.columns)) + val_df.columns = range(len(val_df.columns)) + + print(name, train_df.shape, val_df.shape, test_df.shape, data_df.shape) + + col_info = {} + + for col_idx in num_col_idx: + col_info[col_idx] = {} + col_info['type'] = 'numerical' + col_info['max'] = float(train_df[col_idx].max()) + col_info['min'] = float(train_df[col_idx].min()) + + for col_idx in cat_col_idx: + col_info[col_idx] = {} + col_info['type'] = 'categorical' + col_info['categorizes'] = list(set(train_df[col_idx])) + + for col_idx in target_col_idx: + if info['task_type'] == 'regression': + col_info[col_idx] = {} + col_info['type'] = 'numerical' + col_info['max'] = float(train_df[col_idx].max()) + col_info['min'] = float(train_df[col_idx].min()) + else: + col_info[col_idx] = {} + col_info['type'] = 'categorical' + col_info['categorizes'] = list(set(train_df[col_idx])) + + info['column_info'] = col_info + + train_df.rename(columns = idx_name_mapping, inplace=True) + test_df.rename(columns = idx_name_mapping, inplace=True) + val_df.rename(columns = idx_name_mapping, inplace=True) + + for col in num_columns: + if (train_df[col] == ' ?').sum() > 0: + print(col) + import pdb; pdb.set_trace() + if (train_df[col] == '?').sum() > 0: + print(col) + import pdb; pdb.set_trace() + train_df.loc[train_df[col] == '?', col] = np.nan + for col in cat_columns: + train_df.loc[train_df[col] == '?', col] = 'nan' + for col in num_columns: + if (test_df[col] == ' ?').sum() > 0: + print(col) + import pdb; pdb.set_trace() + if (test_df[col] == '?').sum() > 0: + print(col) + import pdb; pdb.set_trace() + test_df.loc[test_df[col] == '?', col] = np.nan + for col in cat_columns: + test_df.loc[test_df[col] == '?', col] = 'nan' + for col in num_columns: + val_df.loc[val_df[col] == '?', col] = np.nan + for col in cat_columns: + val_df.loc[val_df[col] == '?', col] = 'nan' + + if train_df.isna().any().any(): + print("Training data contains nan in the numerical cols") + import pdb; pdb.set_trace() + + + + X_num_train = train_df[num_columns].to_numpy().astype(np.float32) + X_cat_train = train_df[cat_columns].to_numpy() + y_train = train_df[target_columns].to_numpy() + + + X_num_test = test_df[num_columns].to_numpy().astype(np.float32) + X_cat_test = test_df[cat_columns].to_numpy() + y_test = test_df[target_columns].to_numpy() + + X_num_val = val_df[num_columns].to_numpy().astype(np.float32) + X_cat_val = val_df[cat_columns].to_numpy() + y_val = val_df[target_columns].to_numpy() + + save_dir = f'data/{name}' + np.save(f'{save_dir}/X_num_train.npy', X_num_train) + np.save(f'{save_dir}/X_cat_train.npy', X_cat_train) + np.save(f'{save_dir}/y_train.npy', y_train) + + np.save(f'{save_dir}/X_num_test.npy', X_num_test) + np.save(f'{save_dir}/X_cat_test.npy', X_cat_test) + np.save(f'{save_dir}/y_test.npy', y_test) + + if has_val: + np.save(f'{save_dir}/X_num_val.npy', X_num_val) + np.save(f'{save_dir}/X_cat_val.npy', X_cat_val) + np.save(f'{save_dir}/y_val.npy', y_val) + + train_df[num_columns] = train_df[num_columns].astype(np.float32) + test_df[num_columns] = test_df[num_columns].astype(np.float32) + val_df[num_columns] = val_df[num_columns].astype(np.float32) + + + train_df.to_csv(f'{save_dir}/train.csv', index = False) + test_df.to_csv(f'{save_dir}/test.csv', index = False) + if has_val: + val_df.to_csv(f'{save_dir}/val.csv', index = False) + + if not os.path.exists(f'synthetic/{name}'): + os.makedirs(f'synthetic/{name}') + + train_df.to_csv(f'synthetic/{name}/real.csv', index = False) + test_df.to_csv(f'synthetic/{name}/test.csv', index = False) + + if has_val: + val_df.to_csv(f'synthetic/{name}/val.csv', index = False) + + print('Numerical', X_num_train.shape) + print('Categorical', X_cat_train.shape) + + info['column_names'] = column_names + info['train_num'] = train_df.shape[0] + info['test_num'] = test_df.shape[0] + info['val_num'] = val_df.shape[0] + + info['idx_mapping'] = idx_mapping + info['inverse_idx_mapping'] = inverse_idx_mapping + info['idx_name_mapping'] = idx_name_mapping + + metadata = {'columns': {}} + task_type = info['task_type'] + num_col_idx = info['num_col_idx'] + cat_col_idx = info['cat_col_idx'] + target_col_idx = info['target_col_idx'] + + for i in num_col_idx: + metadata['columns'][i] = {} + metadata['columns'][i]['sdtype'] = 'numerical' + metadata['columns'][i]['computer_representation'] = 'Float' + + for i in cat_col_idx: + metadata['columns'][i] = {} + metadata['columns'][i]['sdtype'] = 'categorical' + + + if task_type == 'regression': + + for i in target_col_idx: + metadata['columns'][i] = {} + metadata['columns'][i]['sdtype'] = 'numerical' + metadata['columns'][i]['computer_representation'] = 'Float' + + else: + for i in target_col_idx: + metadata['columns'][i] = {} + metadata['columns'][i]['sdtype'] = 'categorical' + + info['metadata'] = metadata + + with open(f'{save_dir}/info.json', 'w') as file: + json.dump(info, file, indent=4) + + print(f'Processing and Saving {name} Successfully!') + + print(name) + print('Total', info['train_num'] + info['test_num']) + print('Train', info['train_num']) + print('Val', info['val_num']) + print('Test', info['test_num']) + if info['task_type'] == 'regression': + num = len(info['num_col_idx'] + info['target_col_idx']) + cat = len(info['cat_col_idx']) + else: + cat = len(info['cat_col_idx'] + info['target_col_idx']) + num = len(info['num_col_idx']) + print('Num', num) + print('Int', len(info['int_col_idx'])) + print('Cat', cat) + + +if __name__ == "__main__": + + if args.dataname: + process_data(args.dataname) + else: + for name in [ + 'adult', 'default', 'shoppers', 'magic', 'beijing', 'news', 'news_nocat', 'diabetes', + 'adult_dcr', + 'default_dcr', + 'shoppers_dcr', + 'beijing_dcr', + 'news_dcr', + 'diabetes_dcr' + ]: + process_data(name) + + + diff --git a/SynthData0523/main/c15/tabdiff/tabdiff-c15-20260513_004629/_tabdiff_runtime/src/__init__.py b/SynthData0523/main/c15/tabdiff/tabdiff-c15-20260513_004629/_tabdiff_runtime/src/__init__.py new file mode 100644 index 0000000000000000000000000000000000000000..07d7a4057f36847f7accf4ca148d590d8b4fc80f --- /dev/null +++ b/SynthData0523/main/c15/tabdiff/tabdiff-c15-20260513_004629/_tabdiff_runtime/src/__init__.py @@ -0,0 +1,11 @@ +import torch +from icecream import install + +torch.set_num_threads(1) +install() + +from . import env # noqa +from .data import * # noqa +from .env import * # noqa +from .metrics import * # noqa +from .util import * # noqa \ No newline at end of file diff --git a/SynthData0523/main/c15/tabdiff/tabdiff-c15-20260513_004629/_tabdiff_runtime/src/data.py b/SynthData0523/main/c15/tabdiff/tabdiff-c15-20260513_004629/_tabdiff_runtime/src/data.py new file mode 100644 index 0000000000000000000000000000000000000000..c6906ba122d1ff276b7f475b7f6e7c3440580654 --- /dev/null +++ b/SynthData0523/main/c15/tabdiff/tabdiff-c15-20260513_004629/_tabdiff_runtime/src/data.py @@ -0,0 +1,780 @@ +import hashlib +from collections import Counter +from copy import deepcopy +from dataclasses import astuple, dataclass, replace +from importlib.resources import path +from pathlib import Path +from typing import Any, Literal, Optional, Union, cast, Tuple, Dict, List + +import numpy as np +import pandas as pd +from sklearn.model_selection import train_test_split +from sklearn.pipeline import make_pipeline +import sklearn.preprocessing +import torch +import os +from category_encoders import LeaveOneOutEncoder +from sklearn.impute import SimpleImputer +from sklearn.preprocessing import StandardScaler +from scipy.spatial.distance import cdist + +from . import env, util +from .metrics import calculate_metrics as calculate_metrics_ +from .util import TaskType, load_json + +ArrayDict = Dict[str, np.ndarray] +TensorDict = Dict[str, torch.Tensor] + + +CAT_MISSING_VALUE = 'nan' +CAT_RARE_VALUE = '__rare__' +Normalization = Literal['standard', 'quantile', 'minmax'] +NumNanPolicy = Literal['drop-rows', 'mean'] +CatNanPolicy = Literal['most_frequent'] +CatEncoding = Literal['one-hot', 'counter'] +YPolicy = Literal['default'] +DEQUANT_DIST = Literal['uniform', 'beta', 'round', 'none'] + + +class StandardScaler1d(StandardScaler): + def partial_fit(self, X, *args, **kwargs): + assert X.ndim == 1 + return super().partial_fit(X[:, None], *args, **kwargs) + + def transform(self, X, *args, **kwargs): + assert X.ndim == 1 + return super().transform(X[:, None], *args, **kwargs).squeeze(1) + + def inverse_transform(self, X, *args, **kwargs): + assert X.ndim == 1 + return super().inverse_transform(X[:, None], *args, **kwargs).squeeze(1) + + +def get_category_sizes(X: Union[torch.Tensor, np.ndarray]) -> List[int]: + XT = X.T.cpu().tolist() if isinstance(X, torch.Tensor) else X.T.tolist() + return [len(set(x)) for x in XT] + + +@dataclass(frozen=False) +class Dataset: + X_num: Optional[ArrayDict] + X_cat: Optional[ArrayDict] + y: ArrayDict + int_col_idx_wrt_num: list + y_info: Dict[str, Any] + task_type: TaskType + n_classes: Optional[int] + + @classmethod + def from_dir(cls, dir_: Union[Path, str]) -> 'Dataset': + dir_ = Path(dir_) + splits = [k for k in ['train', 'test'] if dir_.joinpath(f'y_{k}.npy').exists()] + + def load(item) -> ArrayDict: + return { + x: cast(np.ndarray, np.load(dir_ / f'{item}_{x}.npy', allow_pickle=True)) # type: ignore[code] + for x in splits + } + + if Path(dir_ / 'info.json').exists(): + info = util.load_json(dir_ / 'info.json') + else: + info = None + return Dataset( + load('X_num') if dir_.joinpath('X_num_train.npy').exists() else None, + load('X_cat') if dir_.joinpath('X_cat_train.npy').exists() else None, + load('y'), + {}, + TaskType(info['task_type']), + info.get('n_classes'), + ) + + @property + def is_binclass(self) -> bool: + return self.task_type == TaskType.BINCLASS + + @property + def is_multiclass(self) -> bool: + return self.task_type == TaskType.MULTICLASS + + @property + def is_regression(self) -> bool: + return self.task_type == TaskType.REGRESSION + + @property + def n_num_features(self) -> int: + return 0 if self.X_num is None else self.X_num['train'].shape[1] + + @property + def n_cat_features(self) -> int: + return 0 if self.X_cat is None else self.X_cat['train'].shape[1] + + @property + def n_features(self) -> int: + return self.n_num_features + self.n_cat_features + + def size(self, part: Optional[str]) -> int: + return sum(map(len, self.y.values())) if part is None else len(self.y[part]) + + @property + def nn_output_dim(self) -> int: + if self.is_multiclass: + assert self.n_classes is not None + return self.n_classes + else: + return 1 + + def get_category_sizes(self, part: str) -> List[int]: + return [] if self.X_cat is None else get_category_sizes(self.X_cat[part]) + + def calculate_metrics( + self, + predictions: Dict[str, np.ndarray], + prediction_type: Optional[str], + ) -> Dict[str, Any]: + metrics = { + x: calculate_metrics_( + self.y[x], predictions[x], self.task_type, prediction_type, self.y_info + ) + for x in predictions + } + if self.task_type == TaskType.REGRESSION: + score_key = 'rmse' + score_sign = -1 + else: + score_key = 'accuracy' + score_sign = 1 + for part_metrics in metrics.values(): + part_metrics['score'] = score_sign * part_metrics[score_key] + return metrics + +def change_val(dataset: Dataset, val_size: float = 0.2): + # should be done before transformations + + y = np.concatenate([dataset.y['train'], dataset.y['val']], axis=0) + + ixs = np.arange(y.shape[0]) + if dataset.is_regression: + train_ixs, val_ixs = train_test_split(ixs, test_size=val_size, random_state=777) + else: + train_ixs, val_ixs = train_test_split(ixs, test_size=val_size, random_state=777, stratify=y) + + dataset.y['train'] = y[train_ixs] + dataset.y['val'] = y[val_ixs] + + if dataset.X_num is not None: + X_num = np.concatenate([dataset.X_num['train'], dataset.X_num['val']], axis=0) + dataset.X_num['train'] = X_num[train_ixs] + dataset.X_num['val'] = X_num[val_ixs] + + if dataset.X_cat is not None: + X_cat = np.concatenate([dataset.X_cat['train'], dataset.X_cat['val']], axis=0) + dataset.X_cat['train'] = X_cat[train_ixs] + dataset.X_cat['val'] = X_cat[val_ixs] + + return dataset + +def num_process_nans(dataset: Dataset, policy: Optional[NumNanPolicy]) -> Dataset: + + assert dataset.X_num is not None + nan_masks = {k: np.isnan(v) for k, v in dataset.X_num.items()} + if not any(x.any() for x in nan_masks.values()): # type: ignore[code] + # assert policy is None + print('No NaNs in numerical features, skipping') + return dataset + + assert policy is not None + if policy == 'drop-rows': + valid_masks = {k: ~v.any(1) for k, v in nan_masks.items()} + assert valid_masks[ + 'test' + ].all(), 'Cannot drop test rows, since this will affect the final metrics.' + new_data = {} + for data_name in ['X_num', 'X_cat', 'y']: + data_dict = getattr(dataset, data_name) + if data_dict is not None: + new_data[data_name] = { + k: v[valid_masks[k]] for k, v in data_dict.items() + } + dataset = replace(dataset, **new_data) + elif policy == 'mean': + new_values = np.nanmean(dataset.X_num['train'], axis=0) + X_num = deepcopy(dataset.X_num) + for k, v in X_num.items(): + num_nan_indices = np.where(nan_masks[k]) + v[num_nan_indices] = np.take(new_values, num_nan_indices[1]) + dataset = replace(dataset, X_num=X_num) + else: + assert util.raise_unknown('policy', policy) + return dataset + + +# Inspired by: https://github.com/yandex-research/rtdl/blob/a4c93a32b334ef55d2a0559a4407c8306ffeeaee/lib/data.py#L20 +def normalize( + X: ArrayDict, normalization: Normalization, seed: Optional[int], return_normalizer : bool = False +) -> ArrayDict: + X_train = X['train'] + if normalization == 'standard': + normalizer = sklearn.preprocessing.StandardScaler() + elif normalization == 'minmax': + normalizer = sklearn.preprocessing.MinMaxScaler() + elif normalization == 'quantile': + normalizer = sklearn.preprocessing.QuantileTransformer( + output_distribution='normal', + n_quantiles=max(min(X['train'].shape[0] // 30, 1000), 10), + subsample=int(1e9), + random_state=seed, + ) + # noise = 1e-3 + # if noise > 0: + # assert seed is not None + # stds = np.std(X_train, axis=0, keepdims=True) + # noise_std = noise / np.maximum(stds, noise) # type: ignore[code] + # X_train = X_train + noise_std * np.random.default_rng(seed).standard_normal( + # X_train.shape + # ) + else: + util.raise_unknown('normalization', normalization) + + normalizer.fit(X_train) + if return_normalizer: + return {k: normalizer.transform(v) for k, v in X.items()}, normalizer + return {k: normalizer.transform(v) for k, v in X.items()} + +class dequantizer: + def __init__( + self, + dequant_dist: DEQUANT_DIST, + int_col_idx_wrt_num: list, + int_dequant_factor: float, + # return_dequantizer: bool = False + ): + self.dequant_dist = dequant_dist + self.int_col_idx_wrt_num = int_col_idx_wrt_num + self.int_dequant_factor = int_dequant_factor + def transform(self, X): + X_int = X[:, self.int_col_idx_wrt_num] + if self.dequant_dist == 'uniform': + X[:, self.int_col_idx_wrt_num] = X_int+ np.random.uniform(size=X_int.shape) * self.int_dequant_factor + elif self.dequant_dist == 'beta': + X[:, self.int_col_idx_wrt_num] = X_int + np.random.beta(self.int_dequant_factor, self.int_dequant_factor, size=X_int.shape) - 0.5 + elif self.dequant_dist in ['round', 'none']: + pass + return X + def inverse_transform(self, X): + X_int = X[:, self.int_col_idx_wrt_num] + if self.dequant_dist == 'uniform': + X[:, self.int_col_idx_wrt_num] = np.floor(X_int) + elif self.dequant_dist == 'beta': + X[:, self.int_col_idx_wrt_num] = np.rint(X_int) + elif self.dequant_dist == 'round': + X[:, self.int_col_idx_wrt_num] = np.rint(X_int) + elif self.dequant_dist == 'none': + pass + return X + + + # if return_dequantizer: + # return {k: transform(v) for k, v in X.items()}, inverse_transform + # return {k: transform(v) for k, v in X.items()} + +def cat_process_nans(X: ArrayDict, policy: Optional[CatNanPolicy]) -> ArrayDict: + assert X is not None + nan_masks = {k: v == CAT_MISSING_VALUE for k, v in X.items()} + if any(x.any() for x in nan_masks.values()): # type: ignore[code] + if policy is None: + X_new = X + elif policy == 'most_frequent': + imputer = SimpleImputer(missing_values=CAT_MISSING_VALUE, strategy=policy) # type: ignore[code] + imputer.fit(X['train']) + X_new = {k: cast(np.ndarray, imputer.transform(v)) for k, v in X.items()} + else: + util.raise_unknown('categorical NaN policy', policy) + else: + assert policy is None + X_new = X + return X_new + + +def cat_drop_rare(X: ArrayDict, min_frequency: float) -> ArrayDict: + assert 0.0 < min_frequency < 1.0 + min_count = round(len(X['train']) * min_frequency) + X_new = {x: [] for x in X} + for column_idx in range(X['train'].shape[1]): + counter = Counter(X['train'][:, column_idx].tolist()) + popular_categories = {k for k, v in counter.items() if v >= min_count} + for part in X_new: + X_new[part].append( + [ + (x if x in popular_categories else CAT_RARE_VALUE) + for x in X[part][:, column_idx].tolist() + ] + ) + return {k: np.array(v).T for k, v in X_new.items()} + + +def cat_encode( + X: ArrayDict, + encoding: Optional[CatEncoding], + y_train: Optional[np.ndarray], + seed: Optional[int], + return_encoder : bool = False +) -> Tuple[ArrayDict, bool, Optional[Any]]: # (X, is_converted_to_numerical) + if encoding != 'counter': + y_train = None + + # Step 1. Map strings to 0-based ranges + + if encoding is None: + unknown_value = np.iinfo('int64').max - 3 + oe = sklearn.preprocessing.OrdinalEncoder( + handle_unknown='use_encoded_value', # type: ignore[code] + unknown_value=unknown_value, # type: ignore[code] + dtype='int64', # type: ignore[code] + ).fit(X['train']) + encoder = make_pipeline(oe) + encoder.fit(X['train']) + X = {k: encoder.transform(v) for k, v in X.items()} + max_values = X['train'].max(axis=0) + for part in X.keys(): + if part == 'train': continue + for column_idx in range(X[part].shape[1]): + X[part][X[part][:, column_idx] == unknown_value, column_idx] = ( + max_values[column_idx] + 1 + ) + if return_encoder: + return (X, False, encoder) + return (X, False) + + # Step 2. Encode. + + elif encoding == 'one-hot': + ohe = sklearn.preprocessing.OneHotEncoder( + handle_unknown='ignore', sparse_output=False, dtype=np.float32 # type: ignore[code] + ) + encoder = make_pipeline(ohe) + + # encoder.steps.append(('ohe', ohe)) + encoder.fit(X['train']) + X = {k: encoder.transform(v) for k, v in X.items()} + + elif encoding == 'counter': + assert y_train is not None + assert seed is not None + loe = LeaveOneOutEncoder(sigma=0.1, random_state=seed, return_df=False) + encoder.steps.append(('loe', loe)) + encoder.fit(X['train'], y_train) + X = {k: encoder.transform(v).astype('float32') for k, v in X.items()} # type: ignore[code] + if not isinstance(X['train'], pd.DataFrame): + X = {k: v.values for k, v in X.items()} # type: ignore[code] + else: + util.raise_unknown('encoding', encoding) + + if return_encoder: + return X, True, encoder # type: ignore[code] + return (X, True) + + +def build_target( + y: ArrayDict, policy: Optional[YPolicy], task_type: TaskType +) -> Tuple[ArrayDict, Dict[str, Any]]: + info: Dict[str, Any] = {'policy': policy} + if policy is None: + pass + elif policy == 'default': + if task_type == TaskType.REGRESSION: + mean, std = float(y['train'].mean()), float(y['train'].std()) + y = {k: (v - mean) / std for k, v in y.items()} + info['mean'] = mean + info['std'] = std + else: + util.raise_unknown('policy', policy) + return y, info + + +@dataclass(frozen=True) +class Transformations: + seed: int = 0 + normalization: Optional[Normalization] = None + num_nan_policy: Optional[NumNanPolicy] = None + cat_nan_policy: Optional[CatNanPolicy] = None + cat_min_frequency: Optional[float] = None + cat_encoding: Optional[CatEncoding] = None + y_policy: Optional[YPolicy] = 'default' + dequant_dist: Optional[DEQUANT_DIST] = None + int_dequant_factor: Optional[float] = 0.0 + + +def transform_dataset( + dataset: Dataset, + transformations: Transformations, + cache_dir: Optional[Path], + return_transforms: bool = False +) -> Dataset: + # WARNING: the order of transformations matters. Moreover, the current + # implementation is not ideal in that sense. + if cache_dir is not None: + transformations_md5 = hashlib.md5( + str(transformations).encode('utf-8') + ).hexdigest() + transformations_str = '__'.join(map(str, astuple(transformations))) + cache_path = ( + cache_dir / f'cache__{transformations_str}__{transformations_md5}.pickle' + ) + if cache_path.exists(): + cache_transformations, value = util.load_pickle(cache_path) + if transformations == cache_transformations: + print( + f"Using cached features: {cache_dir.name + '/' + cache_path.name}" + ) + return value + else: + raise RuntimeError(f'Hash collision for {cache_path}') + else: + cache_path = None + + if dataset.X_num is not None: + dataset = num_process_nans(dataset, transformations.num_nan_policy) + + num_transform = None + int_transform = None + cat_transform = None + X_num = dataset.X_num + + int_col_idx_wrt_num = dataset.int_col_idx_wrt_num + if X_num is not None and int_col_idx_wrt_num and transformations.dequant_dist is not None: + int_transform = dequantizer( + transformations.dequant_dist, + int_col_idx_wrt_num, + transformations.int_dequant_factor, + ) + X_num = {k: int_transform.transform(v) for k, v in X_num.items()} + + if X_num is not None and transformations.normalization is not None: + has_num = all([x.shape[1]>0 for x in dataset.X_num.values()]) + if has_num: + X_num, num_transform = normalize( + X_num, + transformations.normalization, + transformations.seed, + return_normalizer=True + ) + num_transform = num_transform + + if dataset.X_cat is None: + assert transformations.cat_nan_policy is None + assert transformations.cat_min_frequency is None + # assert transformations.cat_encoding is None + X_cat = None + else: + has_cat = all([x.shape[1]>0 for x in dataset.X_cat.values()]) + if not has_cat: + assert transformations.cat_nan_policy is None + assert transformations.cat_min_frequency is None + X_cat = dataset.X_cat + for split in X_cat.keys(): # a patch to make sure that the empty array is transformed into int dtype + X_cat[split] = X_cat[split].astype(np.int64) + else: + X_cat = cat_process_nans(dataset.X_cat, transformations.cat_nan_policy) + + if transformations.cat_min_frequency is not None: + X_cat = cat_drop_rare(X_cat, transformations.cat_min_frequency) + X_cat, is_num, cat_transform = cat_encode( + X_cat, + transformations.cat_encoding, + dataset.y['train'], + transformations.seed, + return_encoder=True + ) + + if is_num: + X_num = ( + X_cat + if X_num is None + else {x: np.hstack([X_num[x], X_cat[x]]) for x in X_num} + ) + X_cat = None + + + y, y_info = build_target(dataset.y, transformations.y_policy, dataset.task_type) + + dataset = replace(dataset, X_num=X_num, X_cat=X_cat, y=y, y_info=y_info) + dataset.num_transform = num_transform + dataset.int_transform = int_transform + dataset.cat_transform = cat_transform + + if cache_path is not None: + util.dump_pickle((transformations, dataset), cache_path) + # if return_transforms: + # return dataset, num_transform, cat_transform + return dataset + + +def build_dataset( + path: Union[str, Path], + transformations: Transformations, + cache: bool +) -> Dataset: + path = Path(path) + dataset = Dataset.from_dir(path) + return transform_dataset(dataset, transformations, path if cache else None) + + +def prepare_tensors( + dataset: Dataset, device: Union[str, torch.device] +) -> Tuple[Optional[TensorDict], Optional[TensorDict], TensorDict]: + X_num, X_cat, Y = ( + None if x is None else {k: torch.as_tensor(v) for k, v in x.items()} + for x in [dataset.X_num, dataset.X_cat, dataset.y] + ) + if device.type != 'cpu': + X_num, X_cat, Y = ( + None if x is None else {k: v.to(device) for k, v in x.items()} + for x in [X_num, X_cat, Y] + ) + assert X_num is not None + assert Y is not None + if not dataset.is_multiclass: + Y = {k: v.float() for k, v in Y.items()} + return X_num, X_cat, Y + +############### +## DataLoader## +############### + +class TabDataset(torch.utils.data.Dataset): + def __init__( + self, dataset : Dataset, split : Literal['train', 'val', 'test'] + ): + super().__init__() + + self.X_num = torch.from_numpy(dataset.X_num[split]) if dataset.X_num is not None else None + self.X_cat = torch.from_numpy(dataset.X_cat[split]) if dataset.X_cat is not None else None + self.y = torch.from_numpy(dataset.y[split]) + + assert self.y is not None + assert self.X_num is not None or self.X_cat is not None + + def __len__(self): + return len(self.y) + + def __getitem__(self, idx): + out_dict = { + 'y': self.y[idx].long() if self.y is not None else None, + } + + x = np.empty((0,)) + if self.X_num is not None: + x = self.X_num[idx] + if self.X_cat is not None: + x = torch.cat([x, self.X_cat[idx]], dim=0) + return x.float(), out_dict + +def prepare_dataloader( + dataset : Dataset, + split : str, + batch_size: int, +): + + torch_dataset = TabDataset(dataset, split) + loader = torch.utils.data.DataLoader( + torch_dataset, + batch_size=batch_size, + shuffle=(split == 'train'), + num_workers=1, + ) + while True: + yield from loader + +def prepare_torch_dataloader( + dataset : Dataset, + split : str, + shuffle : bool, + batch_size: int, +) -> torch.utils.data.DataLoader: + + torch_dataset = TabDataset(dataset, split) + loader = torch.utils.data.DataLoader(torch_dataset, batch_size=batch_size, shuffle=shuffle, num_workers=1) + + return loader + +def dataset_from_csv(paths : Dict[str, str], cat_features, target, T): + assert 'train' in paths + y = {} + X_num = {} + X_cat = {} if len(cat_features) else None + for split in paths.keys(): + df = pd.read_csv(paths[split]) + y[split] = df[target].to_numpy().astype(float) + if X_cat is not None: + X_cat[split] = df[cat_features].to_numpy().astype(str) + X_num[split] = df.drop(cat_features + [target], axis=1).to_numpy().astype(float) + + dataset = Dataset(X_num, X_cat, y, {}, None, len(np.unique(y['train']))) + return transform_dataset(dataset, T, None) + +class FastTensorDataLoader: + """ + A DataLoader-like object for a set of tensors that can be much faster than + TensorDataset + DataLoader because dataloader grabs individual indices of + the dataset and calls cat (slow). + Source: https://discuss.pytorch.org/t/dataloader-much-slower-than-manual-batching/27014/6 + """ + def __init__(self, *tensors, batch_size=32, shuffle=False): + """ + Initialize a FastTensorDataLoader. + :param *tensors: tensors to store. Must have the same length @ dim 0. + :param batch_size: batch size to load. + :param shuffle: if True, shuffle the data *in-place* whenever an + iterator is created out of this object. + :returns: A FastTensorDataLoader. + """ + assert all(t.shape[0] == tensors[0].shape[0] for t in tensors) + self.tensors = tensors + + self.dataset_len = self.tensors[0].shape[0] + self.batch_size = batch_size + self.shuffle = shuffle + + # Calculate # batches + n_batches, remainder = divmod(self.dataset_len, self.batch_size) + if remainder > 0: + n_batches += 1 + self.n_batches = n_batches + def __iter__(self): + if self.shuffle: + r = torch.randperm(self.dataset_len) + self.tensors = [t[r] for t in self.tensors] + self.i = 0 + return self + + def __next__(self): + if self.i >= self.dataset_len: + raise StopIteration + batch = tuple(t[self.i:self.i+self.batch_size] for t in self.tensors) + self.i += self.batch_size + return batch + + def __len__(self): + return self.n_batches + +def prepare_fast_dataloader( + D : Dataset, + split : str, + batch_size: int +): + + X = torch.from_numpy(np.concatenate([D.X_num[split], D.X_cat[split]], axis=1)).float() + dataloader = FastTensorDataLoader(X, batch_size=batch_size, shuffle=(split=='train')) + while True: + yield from dataloader + +def prepare_fast_torch_dataloader( + D : Dataset, + split : str, + batch_size: int +): + if D.X_cat is not None: + X = torch.from_numpy(np.concatenate([D.X_num[split], D.X_cat[split]], axis=1)).float() + else: + X = torch.from_numpy(D.X_num[split]).float() + y = torch.from_numpy(D.y[split]) + dataloader = FastTensorDataLoader(X, y, batch_size=batch_size, shuffle=(split=='train')) + return dataloader + +def round_columns(X_real, X_synth, columns): + for col in columns: + uniq = np.unique(X_real[:,col]) + dist = cdist(X_synth[:, col][:, np.newaxis].astype(float), uniq[:, np.newaxis].astype(float)) + X_synth[:, col] = uniq[dist.argmin(axis=1)] + return X_synth + +def concat_features(D : Dataset): + if D.X_num is None: + assert D.X_cat is not None + X = {k: pd.DataFrame(v, columns=range(D.n_features)) for k, v in D.X_cat.items()} + elif D.X_cat is None: + assert D.X_num is not None + X = {k: pd.DataFrame(v, columns=range(D.n_features)) for k, v in D.X_num.items()} + else: + X = { + part: pd.concat( + [ + pd.DataFrame(D.X_num[part], columns=range(D.n_num_features)), + pd.DataFrame( + D.X_cat[part], + columns=range(D.n_num_features, D.n_features), + ), + ], + axis=1, + ) + for part in D.y.keys() + } + + return X + +def concat_to_pd(X_num, X_cat, y): + if X_num is None: + return pd.concat([ + pd.DataFrame(X_cat, columns=list(range(X_cat.shape[1]))), + pd.DataFrame(y, columns=['y']) + ], axis=1) + if X_cat is not None: + return pd.concat([ + pd.DataFrame(X_num, columns=list(range(X_num.shape[1]))), + pd.DataFrame(X_cat, columns=list(range(X_num.shape[1], X_num.shape[1] + X_cat.shape[1]))), + pd.DataFrame(y, columns=['y']) + ], axis=1) + return pd.concat([ + pd.DataFrame(X_num, columns=list(range(X_num.shape[1]))), + pd.DataFrame(y, columns=['y']) + ], axis=1) + +def read_pure_data(path, split='train'): + y = np.load(os.path.join(path, f'y_{split}.npy'), allow_pickle=True) + X_num = None + X_cat = None + if os.path.exists(os.path.join(path, f'X_num_{split}.npy')): + X_num = np.load(os.path.join(path, f'X_num_{split}.npy'), allow_pickle=True) + if os.path.exists(os.path.join(path, f'X_cat_{split}.npy')): + X_cat = np.load(os.path.join(path, f'X_cat_{split}.npy'), allow_pickle=True) + + return X_num, X_cat, y + +def read_changed_val(path, val_size=0.2): + path = Path(path) + X_num_train, X_cat_train, y_train = read_pure_data(path, 'train') + X_num_val, X_cat_val, y_val = read_pure_data(path, 'val') + is_regression = load_json(path / 'info.json')['task_type'] == 'regression' + + y = np.concatenate([y_train, y_val], axis=0) + + ixs = np.arange(y.shape[0]) + if is_regression: + train_ixs, val_ixs = train_test_split(ixs, test_size=val_size, random_state=777) + else: + train_ixs, val_ixs = train_test_split(ixs, test_size=val_size, random_state=777, stratify=y) + y_train = y[train_ixs] + y_val = y[val_ixs] + + if X_num_train is not None: + X_num = np.concatenate([X_num_train, X_num_val], axis=0) + X_num_train = X_num[train_ixs] + X_num_val = X_num[val_ixs] + + if X_cat_train is not None: + X_cat = np.concatenate([X_cat_train, X_cat_val], axis=0) + X_cat_train = X_cat[train_ixs] + X_cat_val = X_cat[val_ixs] + + return X_num_train, X_cat_train, y_train, X_num_val, X_cat_val, y_val + +############# + +def load_dataset_info(dataset_dir_name: str) -> Dict[str, Any]: + path = Path("data/" + dataset_dir_name) + info = util.load_json(path / 'info.json') + info['size'] = info['train_size'] + info['val_size'] + info['test_size'] + info['n_features'] = info['n_num_features'] + info['n_cat_features'] + info['path'] = path + return info \ No newline at end of file diff --git a/SynthData0523/main/c15/tabdiff/tabdiff-c15-20260513_004629/_tabdiff_runtime/src/env.py b/SynthData0523/main/c15/tabdiff/tabdiff-c15-20260513_004629/_tabdiff_runtime/src/env.py new file mode 100644 index 0000000000000000000000000000000000000000..0b9dd619f31450414a9b31585aa58b9121834fbe --- /dev/null +++ b/SynthData0523/main/c15/tabdiff/tabdiff-c15-20260513_004629/_tabdiff_runtime/src/env.py @@ -0,0 +1,39 @@ +""" +Have not used in TabDDPM project. +""" + +import datetime +import os +import shutil +import typing as ty +from pathlib import Path + +PROJ = Path('tab-ddpm/').absolute().resolve() +EXP = PROJ / 'exp' +DATA = PROJ / 'data' + + +def get_path(path: ty.Union[str, Path]) -> Path: + if isinstance(path, str): + path = Path(path) + if not path.is_absolute(): + path = PROJ / path + return path.resolve() + + +def get_relative_path(path: ty.Union[str, Path]) -> Path: + return get_path(path).relative_to(PROJ) + + +def duplicate_path( + src: ty.Union[str, Path], alternative_project_dir: ty.Union[str, Path] +) -> None: + src = get_path(src) + alternative_project_dir = get_path(alternative_project_dir) + dst = alternative_project_dir / src.relative_to(PROJ) + dst.parent.mkdir(parents=True, exist_ok=True) + if dst.exists(): + dst = dst.with_name( + dst.name + '_' + datetime.datetime.now().strftime('%Y%m%dT%H%M%S') + ) + (shutil.copytree if src.is_dir() else shutil.copyfile)(src, dst) \ No newline at end of file diff --git a/SynthData0523/main/c15/tabdiff/tabdiff-c15-20260513_004629/_tabdiff_runtime/src/metrics.py b/SynthData0523/main/c15/tabdiff/tabdiff-c15-20260513_004629/_tabdiff_runtime/src/metrics.py new file mode 100644 index 0000000000000000000000000000000000000000..188a9be3f8e9d59b07688aa189a876660dbef7cd --- /dev/null +++ b/SynthData0523/main/c15/tabdiff/tabdiff-c15-20260513_004629/_tabdiff_runtime/src/metrics.py @@ -0,0 +1,157 @@ +import enum +from typing import Any, Optional, Tuple, Dict, Union, cast +from functools import partial + +import numpy as np +import scipy.special +import sklearn.metrics as skm + +from . import util +from .util import TaskType + + +class PredictionType(enum.Enum): + LOGITS = 'logits' + PROBS = 'probs' + +class MetricsReport: + def __init__(self, report: dict, task_type: TaskType): + self._res = {k: {} for k in report.keys()} + if task_type in (TaskType.BINCLASS, TaskType.MULTICLASS): + self._metrics_names = ["acc", "f1"] + for k in report.keys(): + self._res[k]["acc"] = report[k]["accuracy"] + self._res[k]["f1"] = report[k]["macro avg"]["f1-score"] + if task_type == TaskType.BINCLASS: + self._res[k]["roc_auc"] = report[k]["roc_auc"] + self._metrics_names.append("roc_auc") + + elif task_type == TaskType.REGRESSION: + self._metrics_names = ["r2", "rmse"] + for k in report.keys(): + self._res[k]["r2"] = report[k]["r2"] + self._res[k]["rmse"] = report[k]["rmse"] + else: + raise "Unknown TaskType!" + + def get_splits_names(self) -> list[str]: + return self._res.keys() + + def get_metrics_names(self) -> list[str]: + return self._metrics_names + + def get_metric(self, split: str, metric: str) -> float: + return self._res[split][metric] + + def get_val_score(self) -> float: + return self._res["val"]["r2"] if "r2" in self._res["val"] else self._res["val"]["f1"] + + def get_test_score(self) -> float: + return self._res["test"]["r2"] if "r2" in self._res["test"] else self._res["test"]["f1"] + + def print_metrics(self) -> None: + res = { + "val": {k: np.around(self._res["val"][k], 4) for k in self._res["val"]}, + "test": {k: np.around(self._res["test"][k], 4) for k in self._res["test"]} + } + + print("*"*100) + print("[val]") + print(res["val"]) + print("[test]") + print(res["test"]) + + return res + +class SeedsMetricsReport: + def __init__(self): + self._reports = [] + + def add_report(self, report: MetricsReport) -> None: + self._reports.append(report) + + def get_mean_std(self) -> dict: + res = {k: {} for k in ["train", "val", "test"]} + for split in self._reports[0].get_splits_names(): + for metric in self._reports[0].get_metrics_names(): + res[split][metric] = [x.get_metric(split, metric) for x in self._reports] + + agg_res = {k: {} for k in ["train", "val", "test"]} + for split in self._reports[0].get_splits_names(): + for metric in self._reports[0].get_metrics_names(): + for k, f in [("count", len), ("mean", np.mean), ("std", np.std)]: + agg_res[split][f"{metric}-{k}"] = f(res[split][metric]) + self._res = res + self._agg_res = agg_res + + return agg_res + + def print_result(self) -> dict: + res = {split: {k: float(np.around(self._agg_res[split][k], 4)) for k in self._agg_res[split]} for split in ["val", "test"]} + print("="*100) + print("EVAL RESULTS:") + print("[val]") + print(res["val"]) + print("[test]") + print(res["test"]) + print("="*100) + return res + +def calculate_rmse( + y_true: np.ndarray, y_pred: np.ndarray, std = None) -> float: + rmse = skm.mean_squared_error(y_true, y_pred) ** 0.5 + if std is not None: + rmse *= std + return rmse + + +def _get_labels_and_probs( + y_pred: np.ndarray, task_type: TaskType, prediction_type: Optional[PredictionType] +) -> Tuple[np.ndarray, Optional[np.ndarray]]: + assert task_type in (TaskType.BINCLASS, TaskType.MULTICLASS) + + if prediction_type is None: + return y_pred, None + + if prediction_type == PredictionType.LOGITS: + probs = ( + scipy.special.expit(y_pred) + if task_type == TaskType.BINCLASS + else scipy.special.softmax(y_pred, axis=1) + ) + elif prediction_type == PredictionType.PROBS: + probs = y_pred + else: + util.raise_unknown('prediction_type', prediction_type) + + assert probs is not None + labels = np.round(probs) if task_type == TaskType.BINCLASS else probs.argmax(axis=1) + return labels.astype('int64'), probs + + +def calculate_metrics( + y_true: np.ndarray, + y_pred: np.ndarray, + task_type: Union[str, TaskType], + prediction_type: Optional[Union[str, PredictionType]], + y_info: Dict[str, Any], +) -> Dict[str, Any]: + # Example: calculate_metrics(y_true, y_pred, 'binclass', 'logits', {}) + task_type = TaskType(task_type) + if prediction_type is not None: + prediction_type = PredictionType(prediction_type) + + if task_type == TaskType.REGRESSION: + assert prediction_type is None + assert 'std' in y_info + rmse = calculate_rmse(y_true, y_pred, y_info['std']) + r2 = skm.r2_score(y_true, y_pred) + result = {'rmse': rmse, 'r2': r2} + else: + labels, probs = _get_labels_and_probs(y_pred, task_type, prediction_type) + result = cast( + Dict[str, Any], skm.classification_report(y_true, labels, output_dict=True) + ) + if task_type == TaskType.BINCLASS: + result['roc_auc'] = skm.roc_auc_score(y_true, probs) + return result \ No newline at end of file diff --git a/SynthData0523/main/c15/tabdiff/tabdiff-c15-20260513_004629/_tabdiff_runtime/src/util.py b/SynthData0523/main/c15/tabdiff/tabdiff-c15-20260513_004629/_tabdiff_runtime/src/util.py new file mode 100644 index 0000000000000000000000000000000000000000..e105c961803b3bf0f8282e673eed8e84eaaa3891 --- /dev/null +++ b/SynthData0523/main/c15/tabdiff/tabdiff-c15-20260513_004629/_tabdiff_runtime/src/util.py @@ -0,0 +1,347 @@ +import argparse +import atexit +import enum +import json +import os +import pickle +import shutil +import sys +import time +import uuid +from copy import deepcopy +from dataclasses import asdict, fields, is_dataclass +from pathlib import Path +from pprint import pprint +from typing import Any, Callable, List, Dict, Type, Optional, Tuple, TypeVar, Union, cast, get_args, get_origin + +import __main__ +import numpy as np +import tomli +import tomli_w +import torch +import typing as ty + +from . import env + +RawConfig = Dict[str, Any] +Report = Dict[str, Any] +T = TypeVar('T') + + +class Part(enum.Enum): + TRAIN = 'train' + VAL = 'val' + TEST = 'test' + + def __str__(self) -> str: + return self.value + + +class TaskType(enum.Enum): + BINCLASS = 'binclass' + MULTICLASS = 'multiclass' + REGRESSION = 'regression' + + def __str__(self) -> str: + return self.value + + + +def update_training_log(training_log, data, metrics): + def _update(log_part, data_part): + for k, v in data_part.items(): + if isinstance(v, dict): + _update(log_part.setdefault(k, {}), v) + elif isinstance(v, list): + log_part.setdefault(k, []).extend(v) + else: + log_part.setdefault(k, []).append(v) + + _update(training_log, data) + transposed_metrics = {} + for part, part_metrics in metrics.items(): + for metric_name, value in part_metrics.items(): + transposed_metrics.setdefault(metric_name, {})[part] = value + _update(training_log, transposed_metrics) + + +def raise_unknown(unknown_what: str, unknown_value: Any): + raise ValueError(f'Unknown {unknown_what}: {unknown_value}') + + +def _replace(data, condition, value): + def do(x): + if isinstance(x, dict): + return {k: do(v) for k, v in x.items()} + elif isinstance(x, list): + return [do(y) for y in x] + else: + return value if condition(x) else x + + return do(data) + + +_CONFIG_NONE = '__none__' + + +def unpack_config(config: RawConfig) -> RawConfig: + config = cast(RawConfig, _replace(config, lambda x: x == _CONFIG_NONE, None)) + return config + + +def pack_config(config: RawConfig) -> RawConfig: + config = cast(RawConfig, _replace(config, lambda x: x is None, _CONFIG_NONE)) + return config + + +def load_config(path: Union[Path, str]) -> Any: + with open(path, 'rb') as f: + return unpack_config(tomli.load(f)) + + +def dump_config(config: Any, path: Union[Path, str]) -> None: + with open(path, 'wb') as f: + tomli_w.dump(pack_config(config), f) + # check that there are no bugs in all these "pack/unpack" things + assert config == load_config(path) + + +def load_json(path: Union[Path, str], **kwargs) -> Any: + return json.loads(Path(path).read_text(), **kwargs) + + +def dump_json(x: Any, path: Union[Path, str], **kwargs) -> None: + kwargs.setdefault('indent', 4) + Path(path).write_text(json.dumps(x, **kwargs) + '\n') + + +def load_pickle(path: Union[Path, str], **kwargs) -> Any: + return pickle.loads(Path(path).read_bytes(), **kwargs) + + +def dump_pickle(x: Any, path: Union[Path, str], **kwargs) -> None: + Path(path).write_bytes(pickle.dumps(x, **kwargs)) + + +def load(path: Union[Path, str], **kwargs) -> Any: + return globals()[f'load_{Path(path).suffix[1:]}'](Path(path), **kwargs) + + +def dump(x: Any, path: Union[Path, str], **kwargs) -> Any: + return globals()[f'dump_{Path(path).suffix[1:]}'](x, Path(path), **kwargs) + + +def _get_output_item_path( + path: Union[str, Path], filename: str, must_exist: bool +) -> Path: + path = env.get_path(path) + if path.suffix == '.toml': + path = path.with_suffix('') + if path.is_dir(): + path = path / filename + else: + assert path.name == filename + assert path.parent.exists() + if must_exist: + assert path.exists() + return path + + +def load_report(path: Path) -> Report: + return load_json(_get_output_item_path(path, 'report.json', True)) + + +def dump_report(report: dict, path: Path) -> None: + dump_json(report, _get_output_item_path(path, 'report.json', False)) + + +def load_predictions(path: Path) -> Dict[str, np.ndarray]: + with np.load(_get_output_item_path(path, 'predictions.npz', True)) as predictions: + return {x: predictions[x] for x in predictions} + + +def dump_predictions(predictions: Dict[str, np.ndarray], path: Path) -> None: + np.savez(_get_output_item_path(path, 'predictions.npz', False), **predictions) + + +def dump_metrics(metrics: Dict[str, Any], path: Path) -> None: + dump_json(metrics, _get_output_item_path(path, 'metrics.json', False)) + + +def load_checkpoint(path: Path, *args, **kwargs) -> Dict[str, np.ndarray]: + return torch.load( + _get_output_item_path(path, 'checkpoint.pt', True), *args, **kwargs + ) + + +def get_device() -> torch.device: + if torch.cuda.is_available(): + assert os.environ.get('CUDA_VISIBLE_DEVICES') is not None + return torch.device('cuda:0') + else: + return torch.device('cpu') + + +def _print_sep(c, size=100): + print(c * size) + + +_LAST_SNAPSHOT_TIME = None + + +def backup_output(output_dir: Path) -> None: + backup_dir = os.environ.get('TMP_OUTPUT_PATH') + snapshot_dir = os.environ.get('SNAPSHOT_PATH') + if backup_dir is None: + assert snapshot_dir is None + return + assert snapshot_dir is not None + + try: + relative_output_dir = output_dir.relative_to(env.PROJ) + except ValueError: + return + + for dir_ in [backup_dir, snapshot_dir]: + new_output_dir = dir_ / relative_output_dir + prev_backup_output_dir = new_output_dir.with_name(new_output_dir.name + '_prev') + new_output_dir.parent.mkdir(exist_ok=True, parents=True) + if new_output_dir.exists(): + new_output_dir.rename(prev_backup_output_dir) + shutil.copytree(output_dir, new_output_dir) + # the case for evaluate.py which automatically creates configs + if output_dir.with_suffix('.toml').exists(): + shutil.copyfile( + output_dir.with_suffix('.toml'), new_output_dir.with_suffix('.toml') + ) + if prev_backup_output_dir.exists(): + shutil.rmtree(prev_backup_output_dir) + + global _LAST_SNAPSHOT_TIME + if _LAST_SNAPSHOT_TIME is None or time.time() - _LAST_SNAPSHOT_TIME > 10 * 60: + import nirvana_dl.snapshot # type: ignore[code] + + nirvana_dl.snapshot.dump_snapshot() + _LAST_SNAPSHOT_TIME = time.time() + print('The snapshot was saved!') + + +def _get_scores(metrics: Dict[str, Dict[str, Any]]) -> Optional[Dict[str, float]]: + return ( + {k: v['score'] for k, v in metrics.items()} + if 'score' in next(iter(metrics.values())) + else None + ) + + +def format_scores(metrics: Dict[str, Dict[str, Any]]) -> str: + return ' '.join( + f"[{x}] {metrics[x]['score']:.3f}" + for x in ['test', 'val', 'train'] + if x in metrics + ) + + +def finish(output_dir: Path, report: dict) -> None: + print() + _print_sep('=') + + metrics = report.get('metrics') + if metrics is not None: + scores = _get_scores(metrics) + if scores is not None: + dump_json(scores, output_dir / 'scores.json') + print(format_scores(metrics)) + _print_sep('-') + + dump_report(report, output_dir) + json_output_path = os.environ.get('JSON_OUTPUT_FILE') + if json_output_path: + try: + key = str(output_dir.relative_to(env.PROJ)) + except ValueError: + pass + else: + json_output_path = Path(json_output_path) + try: + json_data = json.loads(json_output_path.read_text()) + except (FileNotFoundError, json.decoder.JSONDecodeError): + json_data = {} + json_data[key] = load_json(output_dir / 'report.json') + json_output_path.write_text(json.dumps(json_data, indent=4)) + shutil.copyfile( + json_output_path, + os.path.join(os.environ['SNAPSHOT_PATH'], 'json_output.json'), + ) + + output_dir.joinpath('DONE').touch() + backup_output(output_dir) + print(f'Done! | {report.get("time")} | {output_dir}') + _print_sep('=') + print() + + +def from_dict(datacls: Type[T], data: dict) -> T: + assert is_dataclass(datacls) + data = deepcopy(data) + for field in fields(datacls): + if field.name not in data: + continue + if is_dataclass(field.type): + data[field.name] = from_dict(field.type, data[field.name]) + elif ( + get_origin(field.type) is Union + and len(get_args(field.type)) == 2 + and get_args(field.type)[1] is type(None) + and is_dataclass(get_args(field.type)[0]) + ): + if data[field.name] is not None: + data[field.name] = from_dict(get_args(field.type)[0], data[field.name]) + return datacls(**data) + + +def replace_factor_with_value( + config: RawConfig, + key: str, + reference_value: int, + bounds: Tuple[float, float], +) -> None: + factor_key = key + '_factor' + if factor_key not in config: + assert key in config + else: + assert key not in config + factor = config.pop(factor_key) + assert bounds[0] <= factor <= bounds[1] + config[key] = int(factor * reference_value) + + +def get_temporary_copy(path: Union[str, Path]) -> Path: + path = env.get_path(path) + assert not path.is_dir() and not path.is_symlink() + tmp_path = path.with_name( + path.stem + '___' + str(uuid.uuid4()).replace('-', '') + path.suffix + ) + shutil.copyfile(path, tmp_path) + atexit.register(lambda: tmp_path.unlink()) + return tmp_path + + +def get_python(): + python = Path('python3.9') + return str(python) if python.exists() else 'python' + +def get_catboost_config(real_data_path, is_cv=False): + ds_name = Path(real_data_path).name + C = load_json(f'tuned_models/catboost/{ds_name}_cv.json') + return C + +def get_categories(X_train_cat): + return ( + None + if X_train_cat is None + else [ + len(set(X_train_cat[:, i])) + for i in range(X_train_cat.shape[1]) + ] + ) \ No newline at end of file diff --git a/SynthData0523/main/c15/tabdiff/tabdiff-c15-20260513_004629/_tabdiff_runtime/synthcity.yaml b/SynthData0523/main/c15/tabdiff/tabdiff-c15-20260513_004629/_tabdiff_runtime/synthcity.yaml new file mode 100644 index 0000000000000000000000000000000000000000..e55c2ee98bfa6beaecf6ad75c7a3b5b2ff05c21e --- /dev/null +++ b/SynthData0523/main/c15/tabdiff/tabdiff-c15-20260513_004629/_tabdiff_runtime/synthcity.yaml @@ -0,0 +1,11 @@ +name: synthcity +channels: + - pytorch + - nvidia + - defaults +dependencies: + - python=3.10 + - pip + - pip: + - synthcity + - category_encoders diff --git a/SynthData0523/main/c15/tabdiff/tabdiff-c15-20260513_004629/_tabdiff_runtime/synthetic/pipeline_c15/real.csv b/SynthData0523/main/c15/tabdiff/tabdiff-c15-20260513_004629/_tabdiff_runtime/synthetic/pipeline_c15/real.csv new file mode 100644 index 0000000000000000000000000000000000000000..967ce34a61d83f8f09447cc3e2ce8f1a73b799e8 --- /dev/null +++ b/SynthData0523/main/c15/tabdiff/tabdiff-c15-20260513_004629/_tabdiff_runtime/synthetic/pipeline_c15/real.csv @@ -0,0 +1,3 @@ +version https://git-lfs.github.com/spec/v1 +oid sha256:e60fda0bb5a782d4e6917157f5a204d44e8e15de208c863574afc98855561477 +size 68240502 diff --git a/SynthData0523/main/c15/tabdiff/tabdiff-c15-20260513_004629/_tabdiff_runtime/synthetic/pipeline_c15/test.csv b/SynthData0523/main/c15/tabdiff/tabdiff-c15-20260513_004629/_tabdiff_runtime/synthetic/pipeline_c15/test.csv new file mode 100644 index 0000000000000000000000000000000000000000..67b549d6a95a03359067699b667474323850f070 --- /dev/null +++ b/SynthData0523/main/c15/tabdiff/tabdiff-c15-20260513_004629/_tabdiff_runtime/synthetic/pipeline_c15/test.csv @@ -0,0 +1,3 @@ +version https://git-lfs.github.com/spec/v1 +oid sha256:1e68fec0fb16fb89b5e58bbb7949b744ebd11f8bf7b1d0c7aad908b17a2afb72 +size 8530452 diff --git a/SynthData0523/main/c15/tabdiff/tabdiff-c15-20260513_004629/_tabdiff_runtime/synthetic/pipeline_c15/val.csv b/SynthData0523/main/c15/tabdiff/tabdiff-c15-20260513_004629/_tabdiff_runtime/synthetic/pipeline_c15/val.csv new file mode 100644 index 0000000000000000000000000000000000000000..55b5daf57a73892001ce24450b4a2a50497e1a7d --- /dev/null +++ b/SynthData0523/main/c15/tabdiff/tabdiff-c15-20260513_004629/_tabdiff_runtime/synthetic/pipeline_c15/val.csv @@ -0,0 +1,3 @@ +version https://git-lfs.github.com/spec/v1 +oid sha256:db13b576ba5284f2712b174f1b4445147bcb12fa295a4e38a1dc269d999d09fa +size 8528882 diff --git a/SynthData0523/main/c15/tabdiff/tabdiff-c15-20260513_004629/_tabdiff_runtime/tabdiff.yaml b/SynthData0523/main/c15/tabdiff/tabdiff-c15-20260513_004629/_tabdiff_runtime/tabdiff.yaml new file mode 100644 index 0000000000000000000000000000000000000000..b199bee554e650726bdf7c6b7ac5e52c423cabcb --- /dev/null +++ b/SynthData0523/main/c15/tabdiff/tabdiff-c15-20260513_004629/_tabdiff_runtime/tabdiff.yaml @@ -0,0 +1,35 @@ +name: tabdiff +channels: + - pytorch + - nvidia + - defaults +dependencies: + - python=3.10 + - pytorch=2.0.1 + - torchvision==0.15.2 + - torchaudio==2.0.2 + - pytorch-cuda=11.7 + - numpy<2 + - pip + - pip: + - pandas + - scikit-learn + - scipy + - icecream + - xlrd + - tomli-w + - tomli==2.0.1 + - category_encoders + - imbalanced-learn + - kaggle + - transformers + - datasets + - peft==0.9.0 + - ml_collections + - sdmetrics + - prdc + - rdt + - openpyxl + - xgboost + - wandb==0.17.3 + - kaleido diff --git a/SynthData0523/main/c15/tabdiff/tabdiff-c15-20260513_004629/_tabdiff_runtime/tabdiff/ckpt/pipeline_c15/adapter_learnable/config.pkl b/SynthData0523/main/c15/tabdiff/tabdiff-c15-20260513_004629/_tabdiff_runtime/tabdiff/ckpt/pipeline_c15/adapter_learnable/config.pkl new file mode 100644 index 0000000000000000000000000000000000000000..5473814504f5e7d55b44447196f5044947da1867 --- /dev/null +++ b/SynthData0523/main/c15/tabdiff/tabdiff-c15-20260513_004629/_tabdiff_runtime/tabdiff/ckpt/pipeline_c15/adapter_learnable/config.pkl @@ -0,0 +1,3 @@ +version https://git-lfs.github.com/spec/v1 +oid sha256:c43bdbffe1097e8b7ee4b457ced5d2b6c2cb2978617ec9c2733e07df9e216af6 +size 1455 diff --git a/SynthData0523/main/c15/tabdiff/tabdiff-c15-20260513_004629/_tabdiff_runtime/tabdiff/ckpt/pipeline_c15/adapter_learnable/ema_model_200.pt b/SynthData0523/main/c15/tabdiff/tabdiff-c15-20260513_004629/_tabdiff_runtime/tabdiff/ckpt/pipeline_c15/adapter_learnable/ema_model_200.pt new file mode 100644 index 0000000000000000000000000000000000000000..99fd183d31298772989289a8ecdb44061ca5d6c8 --- /dev/null +++ b/SynthData0523/main/c15/tabdiff/tabdiff-c15-20260513_004629/_tabdiff_runtime/tabdiff/ckpt/pipeline_c15/adapter_learnable/ema_model_200.pt @@ -0,0 +1,3 @@ +version https://git-lfs.github.com/spec/v1 +oid sha256:8a3ab1b19e16c2a25ca8a486ddeb57712a54af569ce2aba7abf235c6d8cfc8e9 +size 43089199 diff --git a/SynthData0523/main/c15/tabdiff/tabdiff-c15-20260513_004629/_tabdiff_runtime/tabdiff/ckpt/pipeline_c15/adapter_learnable/model_200.pt b/SynthData0523/main/c15/tabdiff/tabdiff-c15-20260513_004629/_tabdiff_runtime/tabdiff/ckpt/pipeline_c15/adapter_learnable/model_200.pt new file mode 100644 index 0000000000000000000000000000000000000000..8abdfe82bdb21242d9a8c90dbe370201d3567fc9 --- /dev/null +++ b/SynthData0523/main/c15/tabdiff/tabdiff-c15-20260513_004629/_tabdiff_runtime/tabdiff/ckpt/pipeline_c15/adapter_learnable/model_200.pt @@ -0,0 +1,3 @@ +version https://git-lfs.github.com/spec/v1 +oid sha256:018f707e9d7cd5ed95932c846d7623531ba41ba7c6ca8014528ced020a8b0497 +size 43089547 diff --git a/SynthData0523/main/c15/tabdiff/tabdiff-c15-20260513_004629/_tabdiff_runtime/tabdiff/configs/tabdiff_configs.toml b/SynthData0523/main/c15/tabdiff/tabdiff-c15-20260513_004629/_tabdiff_runtime/tabdiff/configs/tabdiff_configs.toml new file mode 100644 index 0000000000000000000000000000000000000000..f68214f8b8b4b9b85626bf0ffc743a05d56da67e --- /dev/null +++ b/SynthData0523/main/c15/tabdiff/tabdiff-c15-20260513_004629/_tabdiff_runtime/tabdiff/configs/tabdiff_configs.toml @@ -0,0 +1,3 @@ +version https://git-lfs.github.com/spec/v1 +oid sha256:38eff74ecb572c9baafc5e912f8b5421cae686ddb4df6e3bc2a9b69c6ec69cd6 +size 1234 diff --git a/SynthData0523/main/c15/tabdiff/tabdiff-c15-20260513_004629/_tabdiff_runtime/tabdiff/main.py b/SynthData0523/main/c15/tabdiff/tabdiff-c15-20260513_004629/_tabdiff_runtime/tabdiff/main.py new file mode 100644 index 0000000000000000000000000000000000000000..4a5b8d797590d0cd5548ccbee548ae18ad00f4d6 --- /dev/null +++ b/SynthData0523/main/c15/tabdiff/tabdiff-c15-20260513_004629/_tabdiff_runtime/tabdiff/main.py @@ -0,0 +1,331 @@ +import glob +import json +import os +import pickle +import random + +import numpy as np +from tabdiff.metrics import TabMetrics +from tabdiff.modules.main_modules import UniModMLP +from tabdiff.modules.main_modules import Model +from tabdiff.models.unified_ctime_diffusion import UnifiedCtimeDiffusion +from tabdiff.trainer import Trainer +import src +import torch + +from torch.utils.data import DataLoader +import argparse +import warnings + +import wandb + +from copy import deepcopy + +from utils_train import TabDiffDataset + +warnings.filterwarnings('ignore') + + +def main(args): + device = args.device + + ## Disable scientific numerical format + np.set_printoptions(suppress=True) + torch.set_printoptions(sci_mode=False) + + ## Get data info + dataname = args.dataname + data_dir = f'data/{dataname}' + info_path = f'data/{dataname}/info.json' + with open(info_path, 'r') as f: + info = json.load(f) + + ## Set up flags + is_dcr = 'dcr' in dataname + + ## Set experiment name + exp_name = args.exp_name + if args.exp_name is None: + exp_name = 'non_learnable_schedule' if args.non_learnable_schedule else 'learnable_schedule' + exp_name += '_y_only' if args.y_only else '' + + ## Load configs + curr_dir = os.path.dirname(os.path.abspath(__file__)) + config_path = f'{curr_dir}/configs/tabdiff_configs.toml' + raw_config = src.load_config(config_path) + + print(f"{args.mode.capitalize()} Mode is Enabled") + num_samples_to_generate = None + ckpt_path = None + if args.mode == 'train': + print("NEW training is started") + elif args.mode == 'test': + num_samples_to_generate = args.num_samples_to_generate + ckpt_path = args.ckpt_path + if ckpt_path is None: + ckpt_parent_path = f"{curr_dir}/ckpt/{dataname}/{exp_name}" + ckpt_path_arr = glob.glob(f"{ckpt_parent_path}/best_ema_model*") + assert ckpt_path_arr, f"Cannot not infer ckpt_path from {ckpt_parent_path}, please make sure that you first train a model before testing!" + ckpt_path = ckpt_path_arr[0] + config_path = os.path.join(os.path.dirname(ckpt_path), 'config.pkl') + if os.path.exists(config_path): + with open(config_path, 'rb') as f: + cached_raw_config = pickle.load(f) + print(f"Found cached config at {config_path}") + raw_config = cached_raw_config + + + ## Creat model_save and result paths + model_save_path, result_save_path = None, None + if args.mode == 'train': + model_save_path = 'debug/ckpt' if args.debug else f'{curr_dir}/ckpt/{dataname}/{exp_name}' + result_save_path = model_save_path.replace('ckpt', 'result') #i.e., f'{curr_dir}/results/{dataname}/{exp_name}' + elif args.mode == 'test': + if args.report: + result_save_path = f"eval/report_runs/{exp_name}/{dataname}" + else: + result_save_path = os.path.dirname(ckpt_path).replace('ckpt', 'result') # infer the exp_name from the ckpt_name + raw_config['model_save_path'] = model_save_path + raw_config['result_save_path'] = result_save_path + if model_save_path is not None: + if not os.path.exists(model_save_path): + os.makedirs(model_save_path) + if result_save_path is not None: + if not os.path.exists(result_save_path): + os.makedirs(result_save_path) + + ## Make everything determinstic if needed + raw_config['deterministic'] = args.deterministic + if args.deterministic: + print("DETERMINISTIC MODE is enabled!!!") + ## Set global random seeds + torch.manual_seed(0) + random.seed(0) + np.random.seed(0) + + ## Ensure deterministic CUDA operations + os.environ['PYTHONHASHSEED'] = '0' + os.environ['CUBLAS_WORKSPACE_CONFIG'] = ':4096:8' # or ':16:8' + torch.use_deterministic_algorithms(True) + if torch.cuda.is_available(): + torch.cuda.manual_seed(0) + torch.cuda.manual_seed_all(0) + torch.backends.cudnn.deterministic = True + torch.backends.cudnn.benchmark = False + + ## Set debug mode parameters + if args.debug: # fast eval for DEBUG mode + raw_config['train']['main']['check_val_every'] = 2 + raw_config['diffusion_params']['num_timesteps'] = 4 + raw_config['train']['main']['batch_size'] = 4096 + raw_config['sample']['batch_size'] = 10000 + + # CI /镜像冒烟:覆盖训练步数(默认不设置) + _smoke_steps = os.environ.get("TABDIFF_SMOKE_STEPS", "").strip() + if _smoke_steps and args.mode == "train": + n = max(1, int(_smoke_steps)) + raw_config["train"]["main"]["steps"] = n + raw_config["train"]["main"]["check_val_every"] = max(1, min(n, raw_config["train"]["main"]["check_val_every"])) + # Pipeline 适配器:避免小步数训练时在中途频繁做生成评测;仅在最后一轮 checkpoint + if os.environ.get("TABDIFF_ADAPTER_TRAIN", "").strip() and args.mode == "train": + raw_config["train"]["main"]["check_val_every"] = int(raw_config["train"]["main"]["steps"]) + + ## Load training data + batch_size = raw_config['train']['main']['batch_size'] + + train_data = TabDiffDataset(dataname, data_dir, info, y_only=args.y_only, isTrain=True, dequant_dist=raw_config['data']['dequant_dist'], int_dequant_factor=raw_config['data']['int_dequant_factor']) + train_loader = DataLoader( + train_data, + batch_size = batch_size, + shuffle = True, + num_workers = 4, + ) + d_numerical, categories = train_data.d_numerical, train_data.categories + + val_data = TabDiffDataset(dataname, data_dir, info, y_only=args.y_only, isTrain=False, dequant_dist=raw_config['data']['dequant_dist'], int_dequant_factor=raw_config['data']['int_dequant_factor']) + + ## Load Metrics + real_data_path = f'synthetic/{dataname}/real.csv' + test_data_path = f'synthetic/{dataname}/test.csv' + val_data_path = f'synthetic/{dataname}/val.csv' + if not os.path.exists(val_data_path): + print(f"{args.dataname} does not have its validation set. During MLE evaluation, a validation set will be splitted from the training set!") + val_data_path = None + if args.mode == 'train': + metric_list = ["density"] + else: + if is_dcr: + metric_list = ["dcr"] + else: + metric_list = [ + "density", + "mle", + "c2st", + ] + metrics = TabMetrics(real_data_path, test_data_path, val_data_path, info, device, metric_list=metric_list) + + ## Load the module and models + raw_config['unimodmlp_params']['d_numerical'] = d_numerical + raw_config['unimodmlp_params']['categories'] = (categories+1).tolist() # add one for the mask category + if args.y_only: + raw_config['unimodmlp_params']['use_mlp'] = False # drop the mlp when training the unconditional model + raw_config['unimodmlp_params']['dim_t'] = 128 #reduce the size of the mlp + main_model_path = args.ckpt_path + if main_model_path is None: + main_model_parent_path = f"{curr_dir}/ckpt/{dataname}/{exp_name.replace('_y_only', '')}" + main_model_path_arr = glob.glob(f"{main_model_parent_path}/best_ema_model*") + assert main_model_path_arr, f"Cannot not infer the main model's ckpt_path from {main_model_parent_path}, please make sure that you first train a main model before training the y_only model!" + main_model_path = main_model_path_arr[0] + main_model_configs = pickle.load(open(os.path.join(os.path.dirname(main_model_path), 'config.pkl'), 'rb')) + if main_model_configs['diffusion_params']['scheduler'] == "power_mean_per_column": # if learnable schedule is enabled in the main model, we need to infer noise params of the target column from the main model ckpt and train the y_only model with those params + from tabdiff.models.noise_schedule import PowerMeanNoise_PerColumn, LogLinearNoise_PerColumn + if info['task_type'] == 'regression': + noise_schedule = PowerMeanNoise_PerColumn( + num_numerical=main_model_configs['unimodmlp_params']['d_numerical'], + **main_model_configs['diffusion_params']['noise_schedule_params'] + ) + raw_config['diffusion_params']['noise_schedule_params']['rho'] = noise_schedule.rho()[0].item() # the target col is placed at the first position + else: + noise_schedule = LogLinearNoise_PerColumn( + num_categories=len(main_model_configs['unimodmlp_params']['categories']), + **main_model_configs['diffusion_params']['noise_schedule_params'] + ) + raw_config['diffusion_params']['noise_schedule_params']['k'] = noise_schedule.k()[0].item() # the target col is placed at the first position + + backbone = UniModMLP( + **raw_config['unimodmlp_params'] + ) + model = Model(backbone, **raw_config['diffusion_params']['edm_params']) + model.to(device) + + ## Create and load y_only_model for imputation + y_only_model = None + if args.impute: + y_only_model_path = args.y_only_model_path + if y_only_model_path is None: + y_only_model_parent_path = f"{curr_dir}/ckpt/{dataname}/{exp_name}_y_only" + y_only_model_path_arr = glob.glob(f"{y_only_model_parent_path}/best_ema_model*") + assert y_only_model_path_arr, f"Cannot not infer y_only model's ckpt_path from {y_only_model_parent_path}, please make sure that you first train a y_only model before testing imputation!" + y_only_model_path = y_only_model_path_arr[0] + y_only_model_config_path = os.path.join(os.path.dirname(y_only_model_path), 'config.pkl') + with open(y_only_model_config_path, 'rb') as f: + y_only_model_config = pickle.load(f) + y_only_model = UniModMLP( + **y_only_model_config['unimodmlp_params'] + ) + y_only_model = Model(y_only_model, **y_only_model_config['diffusion_params']['edm_params']) + y_only_model.to(device) + # load weights + state_dicts = torch.load(y_only_model_path, map_location=device) + y_only_model.load_state_dict(state_dicts['denoise_fn']) + + if not args.y_only and not args.non_learnable_schedule: + raw_config['diffusion_params']['scheduler'] = 'power_mean_per_column' + raw_config['diffusion_params']['cat_scheduler'] = 'log_linear_per_column' + diffusion = UnifiedCtimeDiffusion( + num_classes=categories, + num_numerical_features=d_numerical, + denoise_fn=model, + y_only_model=y_only_model, + **raw_config['diffusion_params'], + device=device, + ) + num_params = sum(p.numel() for p in diffusion.parameters()) + print("The number of parameters = ", num_params) + diffusion.to(device) + diffusion.train() + + ## Print the configs + printed_configs = json.dumps(raw_config, default=lambda x: int(x) if isinstance(x, np.int64) else x, indent=4) + print(f"The config of the current run is : \n {printed_configs}") + + ## Enable Wandb + project_name = f"tabdiff_{dataname}" + raw_config['project_name'] = project_name + logger = wandb.init( + project=raw_config['project_name'], + name=exp_name, + config=raw_config, + mode='disabled' if args.debug or args.no_wandb else 'online', + ) + + ## Load Trainer + sample_batch_size = raw_config['sample']['batch_size'] + trainer = Trainer( + diffusion, + train_loader, + train_data, + val_data, + metrics, + logger, + **raw_config['train']['main'], + sample_batch_size=sample_batch_size, + num_samples_to_generate=num_samples_to_generate, + model_save_path=raw_config['model_save_path'], + result_save_path=raw_config['result_save_path'], + device=device, + ckpt_path=ckpt_path, + y_only=args.y_only + ) + if args.mode == 'test': + if args.report: + if is_dcr: + trainer.report_test_dcr(args.num_runs) + else: + trainer.report_test(args.num_runs) + elif args.impute: + imputed_sample_save_dir = f"impute/{dataname}/{exp_name}" + trainer.test_impute( + args.trial_start, args.trial_size, + args.resample_rounds, + args.impute_condition, + imputed_sample_save_dir, + args.w_num, + args.w_cat, + ) + else: + trainer.test() + else: + ## Save config + config_save_path = raw_config['model_save_path'] + with open (os.path.join(config_save_path, 'config.pkl'), 'wb') as f: + pickle.dump(raw_config, f) + trainer.run_loop() + + + +if __name__ == '__main__': + + parser = argparse.ArgumentParser(description='Training of TabDiff') + + parser.add_argument('--dataname', type=str, default='adult', help='Name of dataset.') + parser.add_argument('--gpu', type=int, default=0, help='GPU index.') + parser.add_argument('--mode', type=str, default='train', choices=['train', 'test']) + parser.add_argument('--debug', action='store_true') + parser.add_argument('--no_wandb', action='store_true') + parser.add_argument('--deterministic', action='store_true') + parser.add_argument('--exp_name', type=str, default=None) + parser.add_argument('--non_learnable_schedule', action='store_true') + parser.add_argument('--y_only', action='store_true') + parser.add_argument('--ckpt_path', type=str, default=None) + parser.add_argument('--num_samples_to_generate', type=int, default=None) + parser.add_argument('--report', action='store_true') + parser.add_argument('--num_runs', type=int, default=20) + parser.add_argument('--impute', action='store_true') + parser.add_argument('--trial_start', type=int, default=0) + parser.add_argument('--trial_size', type=int, default=100) + parser.add_argument('--resample_rounds', type=int, default=1) + parser.add_argument('--impute_condition', type=str, default='') + parser.add_argument('--w_num', type=float, default=1.0) + parser.add_argument('--w_cat', type=float, default=1.0) + parser.add_argument('--y_only_model_path', type=str, default=None) + + args = parser.parse_args() + + # check cuda + if args.gpu != -1 and torch.cuda.is_available(): + args.device = f'cuda:{args.gpu}' + else: + args.device = 'cpu' + + main(args) \ No newline at end of file diff --git a/SynthData0523/main/c15/tabdiff/tabdiff-c15-20260513_004629/_tabdiff_runtime/tabdiff/metrics.py b/SynthData0523/main/c15/tabdiff/tabdiff-c15-20260513_004629/_tabdiff_runtime/tabdiff/metrics.py new file mode 100644 index 0000000000000000000000000000000000000000..4f104427533ac37610c92216b135fdeba3d181be --- /dev/null +++ b/SynthData0523/main/c15/tabdiff/tabdiff-c15-20260513_004629/_tabdiff_runtime/tabdiff/metrics.py @@ -0,0 +1,306 @@ +from copy import deepcopy +import numpy as np +import torch +import pandas as pd +# Metrics +from eval.mle.mle import get_evaluator +from eval.visualize_density import plot_density +from sdmetrics.reports.single_table import QualityReport, DiagnosticReport +from sdmetrics.single_table import LogisticDetection +from sklearn.preprocessing import OneHotEncoder + +from tqdm import tqdm + + +class TabMetrics(object): + def __init__(self, real_data_path, test_data_path, val_data_path, info, device, metric_list) -> None: + self.real_data_path = real_data_path + self.test_data_path = test_data_path + self.val_data_path = val_data_path + self.info = info + self.device = device + self.real_data_size = len(pd.read_csv(real_data_path)) + self.metric_list = metric_list + + def evaluate(self, syn_data): + metrics, extras = {}, {} + syn_data_cp = deepcopy(syn_data) + for metric in self.metric_list: + func = eval(f"self.evaluate_{metric}") + print(f"Evaluating {metric}") + out_metrics, out_extras = func(syn_data_cp) + metrics.update(out_metrics) + extras.update(out_extras) + return metrics, extras + + def evaluate_density(self, syn_data): + real_data = pd.read_csv(self.real_data_path) + real_data.columns = range(len(real_data.columns)) + syn_data.columns = range(len(syn_data.columns)) + + + info = deepcopy(self.info) + + y_only = len(syn_data.columns)==1 + if y_only: + target_col_idx = info['target_col_idx'][0] + syn_data = self.complete_y_only_data(syn_data, real_data, target_col_idx) + + metadata = info['metadata'] + metadata['columns'] = {int(key): value for key, value in metadata['columns'].items()} # ensure that keys are all integers? + + new_real_data, new_syn_data, metadata = reorder(real_data, syn_data, info) + + qual_report = QualityReport() + qual_report.generate(new_real_data, new_syn_data, metadata) + + diag_report = DiagnosticReport() + diag_report.generate(new_real_data, new_syn_data, metadata) + + quality = qual_report.get_properties() + diag = diag_report.get_properties() + + Shape = quality['Score'][0] + Trend = quality['Score'][1] + + Overall = (Shape + Trend) / 2 + + shape_details = qual_report.get_details(property_name='Column Shapes') + trend_details = qual_report.get_details(property_name='Column Pair Trends') + + if y_only: + Shape = shape_details['Score'].min() + out_metrics = { + "density/Shape": Shape, + "density/Trend": Trend, + "density/Overall": Overall, + } + out_extras = { + "shapes": shape_details, + "trends": trend_details + } + return out_metrics, out_extras + + def evaluate_mle(self, syn_data): + train = syn_data.to_numpy() + test = pd.read_csv(self.test_data_path).to_numpy() + val = pd.read_csv(self.val_data_path).to_numpy() if self.val_data_path else None + + info = deepcopy(self.info) + + task_type = info['task_type'] + + evaluator = get_evaluator(task_type) + + if task_type == 'regression': + best_r2_scores, best_rmse_scores = evaluator(train, test, info, val=val) + + overall_scores = {} + for score_name in ['best_r2_scores', 'best_rmse_scores']: + overall_scores[score_name] = {} + + scores = eval(score_name) + for method in scores: + name = method['name'] + method.pop('name') + overall_scores[score_name][name] = method + + else: + best_f1_scores, best_weighted_scores, best_auroc_scores, best_acc_scores, best_avg_scores = evaluator(train, test, info, val=val) + + overall_scores = {} + for score_name in ['best_f1_scores', 'best_weighted_scores', 'best_auroc_scores', 'best_acc_scores', 'best_avg_scores']: + overall_scores[score_name] = {} + + scores = eval(score_name) + for method in scores: + name = method['name'] + method.pop('name') + overall_scores[score_name][name] = method + + mle_score = overall_scores['best_rmse_scores']['XGBRegressor']['RMSE'] if task_type == 'regression' else overall_scores['best_auroc_scores']['XGBClassifier']['roc_auc'] + out_metrics = { + "mle": mle_score, + } + out_extras = { + "mle": overall_scores, + } + return out_metrics, out_extras + + def evaluate_c2st(self, syn_data): + info = deepcopy(self.info) + real_data = pd.read_csv(self.real_data_path) + + real_data.columns = range(len(real_data.columns)) + syn_data.columns = range(len(syn_data.columns)) + + metadata = info['metadata'] + metadata['columns'] = {int(key): value for key, value in metadata['columns'].items()} + + new_real_data, new_syn_data, metadata = reorder(real_data, syn_data, info) + + score = LogisticDetection.compute( + real_data=new_real_data, + synthetic_data=new_syn_data, + metadata=metadata + ) + + out_metrics = { + "c2st": score, + } + out_extras = {} + return out_metrics, out_extras + + def evaluate_dcr(self, syn_data): + info = deepcopy(self.info) + real_data = pd.read_csv(self.real_data_path) + test_data = pd.read_csv(self.test_data_path) + + num_col_idx = info['num_col_idx'] + cat_col_idx = info['cat_col_idx'] + target_col_idx = info['target_col_idx'] + + task_type = info['task_type'] + if task_type == 'regression': + num_col_idx += target_col_idx + else: + cat_col_idx += target_col_idx + + num_ranges = [] + + real_data.columns = list(np.arange(len(real_data.columns))) + syn_data.columns = list(np.arange(len(real_data.columns))) + test_data.columns = list(np.arange(len(real_data.columns))) + for i in num_col_idx: + num_ranges.append(real_data[i].max() - real_data[i].min()) + + num_ranges = np.array(num_ranges) + + + num_real_data = real_data[num_col_idx] + cat_real_data = real_data[cat_col_idx] + num_syn_data = syn_data[num_col_idx] + cat_syn_data = syn_data[cat_col_idx] + num_test_data = test_data[num_col_idx] + cat_test_data = test_data[cat_col_idx] + + num_real_data_np = num_real_data.to_numpy() + cat_real_data_np = cat_real_data.to_numpy().astype('str') + num_syn_data_np = num_syn_data.to_numpy() + cat_syn_data_np = cat_syn_data.to_numpy().astype('str') + num_test_data_np = num_test_data.to_numpy() + cat_test_data_np = cat_test_data.to_numpy().astype('str') + + encoder = OneHotEncoder() + cat_complete_data_np = np.concatenate([cat_real_data_np, cat_test_data_np], axis=0) + encoder.fit(cat_complete_data_np) + # encoder.fit(cat_real_data_np) + + + cat_real_data_oh = encoder.transform(cat_real_data_np).toarray() + cat_syn_data_oh = encoder.transform(cat_syn_data_np).toarray() + cat_test_data_oh = encoder.transform(cat_test_data_np).toarray() + + num_real_data_np = num_real_data_np / num_ranges + num_syn_data_np = num_syn_data_np / num_ranges + num_test_data_np = num_test_data_np / num_ranges + + real_data_np = np.concatenate([num_real_data_np, cat_real_data_oh], axis=1) + syn_data_np = np.concatenate([num_syn_data_np, cat_syn_data_oh], axis=1) + test_data_np = np.concatenate([num_test_data_np, cat_test_data_oh], axis=1) + + device = self.device + + real_data_th = torch.tensor(real_data_np).to(device) + syn_data_th = torch.tensor(syn_data_np).to(device) + test_data_th = torch.tensor(test_data_np).to(device) + + dcrs_real = [] + dcrs_test = [] + batch_size = 10000 // cat_real_data_oh.shape[1] # This esitmation should make sure that dcr_real and dcr_test can be fit into 10GB GPU memory + + for i in tqdm(range((syn_data_th.shape[0] // batch_size) + 1)): + if i != (syn_data_th.shape[0] // batch_size): + batch_syn_data_th = syn_data_th[i*batch_size: (i+1) * batch_size] + else: + batch_syn_data_th = syn_data_th[i*batch_size:] + + dcr_real = (batch_syn_data_th[:, None] - real_data_th).abs().sum(dim = 2).min(dim = 1).values + dcr_test = (batch_syn_data_th[:, None] - test_data_th).abs().sum(dim = 2).min(dim = 1).values + dcrs_real.append(dcr_real) + dcrs_test.append(dcr_test) + + dcrs_real = torch.cat(dcrs_real) + dcrs_test = torch.cat(dcrs_test) + + score = (dcrs_real < dcrs_test).nonzero().shape[0] / dcrs_real.shape[0] + + out_metrics = { + "dcr": score, + } + out_extras = { + "dcr_real": dcrs_real.cpu().numpy(), + "dcr_test": dcrs_test.cpu().numpy(), + } + return out_metrics, out_extras + + + def plot_density(self, syn_data): + syn_data_cp = deepcopy(syn_data) + real_data = pd.read_csv(self.real_data_path) + info = deepcopy(self.info) + y_only = len(syn_data_cp.columns)==1 + if y_only: + target_col_idx = info['target_col_idx'][0] + target_col_name = info['column_names'][target_col_idx] + syn_data_cp = self.complete_y_only_data(syn_data_cp, real_data, target_col_name) + img = plot_density(syn_data_cp, real_data, info) + return img + + def complete_y_only_data(self, syn_data, real_data, target_col_idx): + syn_target_col = deepcopy(syn_data.iloc[:, 0]) + syn_data = deepcopy(real_data) + syn_data[target_col_idx] = syn_target_col + return syn_data + + +def reorder(real_data, syn_data, info): + num_col_idx = deepcopy(info['num_col_idx']) # BUG: info will be modified by += in the next few lines + cat_col_idx = deepcopy(info['cat_col_idx']) + target_col_idx = deepcopy(info['target_col_idx']) + + task_type = info['task_type'] + if task_type == 'regression': + num_col_idx += target_col_idx + else: + cat_col_idx += target_col_idx + + real_num_data = real_data[num_col_idx] + real_cat_data = real_data[cat_col_idx] + + new_real_data = pd.concat([real_num_data, real_cat_data], axis=1) + new_real_data.columns = range(len(new_real_data.columns)) + + syn_num_data = syn_data[num_col_idx] + syn_cat_data = syn_data[cat_col_idx] + + new_syn_data = pd.concat([syn_num_data, syn_cat_data], axis=1) + new_syn_data.columns = range(len(new_syn_data.columns)) + + + metadata = info['metadata'] + + columns = metadata['columns'] + metadata['columns'] = {} + + inverse_idx_mapping = info['inverse_idx_mapping'] + + + for i in range(len(new_real_data.columns)): + if i < len(num_col_idx): + metadata['columns'][i] = columns[num_col_idx[i]] + else: + metadata['columns'][i] = columns[cat_col_idx[i-len(num_col_idx)]] + + + return new_real_data, new_syn_data, metadata \ No newline at end of file diff --git a/SynthData0523/main/c15/tabdiff/tabdiff-c15-20260513_004629/_tabdiff_runtime/tabdiff/models/noise_schedule.py b/SynthData0523/main/c15/tabdiff/tabdiff-c15-20260513_004629/_tabdiff_runtime/tabdiff/models/noise_schedule.py new file mode 100644 index 0000000000000000000000000000000000000000..0fc02778162edbf35ef9574aad67483c9e6a7cf1 --- /dev/null +++ b/SynthData0523/main/c15/tabdiff/tabdiff-c15-20260513_004629/_tabdiff_runtime/tabdiff/models/noise_schedule.py @@ -0,0 +1,157 @@ +import abc + +import torch +import torch.nn as nn + + +class Noise(abc.ABC, nn.Module): + """ + Baseline forward method to get the total + rate of noise at a timestep + """ + def forward(self, t): + # Assume time goes from 0 to 1 + return self.total_noise(t), self.rate_noise(t) + + @abc.abstractmethod + def total_noise(self, t): + """ + Total noise ie \int_0^t g(t) dt + g(0) + """ + pass + + +class LogLinearNoise(Noise): + """Log Linear noise schedule. + + """ + def __init__(self, eps_max=1e-3, eps_min=1e-5, **kwargs): + super().__init__() + self.eps_max = eps_max + self.eps_min = eps_min + self.sigma_max = self.total_noise(torch.tensor(1.0)) + self.sigma_min = self.total_noise(torch.tensor(0.0)) + + def k(self): + return torch.tensor(1) + + def rate_noise(self, t): + return (1 - self.eps_max - self.eps_min) / (1 - ((1 - self.eps_max - self.eps_min) * t + self.eps_min)) + + def total_noise(self, t): + """ + sigma_min=-log(1-eps_min), when t=0 + sigma_max=-log(eps_max), when t=1 + """ + return -torch.log1p(-((1 - self.eps_max - self.eps_min) * t + self.eps_min)) + +class PowerMeanNoise(Noise): + """The noise schedule using the power mean interpolation function. + + This is the schedule used in EDM + """ + def __init__(self, sigma_min=0.002, sigma_max=80, rho=7, **kwargs): + super().__init__() + self.sigma_min = sigma_min + self.sigma_max = sigma_max + self.raw_rho = rho + + def rho(self): + # Return the softplus-transformed rho for all num_numerical values + return torch.tensor(self.raw_rho) + + def total_noise(self, t): + sigma = (self.sigma_min ** (1/self.rho()) + t * ( + self.sigma_max ** (1/self.rho()) - self.sigma_min ** (1/self.rho()))).pow(self.rho()) + return sigma + + def inverse_to_t(self, sigma): + t = (sigma.pow(1/self.rho()) - self.sigma_min ** (1/self.rho())) / (self.sigma_max ** (1/self.rho()) - self.sigma_min ** (1/self.rho())) + return t + + +class PowerMeanNoise_PerColumn(nn.Module): + + def __init__(self, num_numerical, sigma_min=0.002, sigma_max=80, rho_init=1, rho_offset=2, **kwargs): + super().__init__() + self.sigma_min = sigma_min + self.sigma_max = sigma_max + self.num_numerical = num_numerical + self.rho_offset = rho_offset + self.rho_raw = nn.Parameter(torch.tensor([rho_init] * self.num_numerical, dtype=torch.float32)) + + def rho(self): + # Return the softplus-transformed rho for all num_numerical values + return nn.functional.softplus(self.rho_raw) + self.rho_offset + + def total_noise(self, t): + """ + Compute total noise for each t in the batch for all num_numerical rhos. + t: [batch_size] + Returns: [batch_size, num_numerical] + """ + batch_size = t.size(0) + + rho = self.rho() + + sigma_min_pow = self.sigma_min ** (1 / rho) # Shape: [num_numerical] + sigma_max_pow = self.sigma_max ** (1 / rho) # Shape: [num_numerical] + + sigma = (sigma_min_pow + t * (sigma_max_pow - sigma_min_pow)).pow(rho) # Shape: [batch_size, num_numerical] + + return sigma + + def rate_noise(self, t): + return None + + def inverse_to_t(self, sigma): + """ + Inverse function to map sigma back to t, with proper broadcasting support. + sigma: [batch_size, num_numerical] or [batch_size, 1] + Returns: t: [batch_size, num_numerical] + """ + rho = self.rho() + + sigma_min_pow = self.sigma_min ** (1 / rho) # Shape: [num_numerical] + sigma_max_pow = self.sigma_max ** (1 / rho) # Shape: [num_numerical] + + # To enable broadcasting between sigma and the per-column rho values, expand rho where needed. + t = (sigma.pow(1 / rho) - sigma_min_pow) / (sigma_max_pow - sigma_min_pow) + + return t + + +class LogLinearNoise_PerColumn(nn.Module): + + def __init__(self, num_categories, eps_max=1e-3, eps_min=1e-5, k_init=-6, k_offset=1, **kwargs): + + super().__init__() + self.eps_max = eps_max + self.eps_min = eps_min + # Use softplus to ensure k is positive + self.num_categories = num_categories + self.k_offset = k_offset + self.k_raw = nn.Parameter(torch.tensor([k_init] * self.num_categories, dtype=torch.float32)) + + def k(self): + return torch.nn.functional.softplus(self.k_raw) + self.k_offset + + def rate_noise(self, t, noise_fn=None): + """ + Compute rate noise for all categories with broadcasting. + t: [batch_size] + Returns: [batch_size, num_categories] + """ + k = self.k() # Shape: [num_categories] + + numerator = (1 - self.eps_max - self.eps_min) * k * t.pow(k - 1) + denominator = 1 - ((1 - self.eps_max - self.eps_min) * t.pow(k) + self.eps_min) + rate = numerator / denominator # Shape: [batch_size, num_categories] + + return rate + + def total_noise(self, t, noise_fn=None): + k = self.k() # Shape: [num_categories] + + total_noise = -torch.log1p(-((1 - self.eps_max - self.eps_min) * t.pow(k) + self.eps_min)) + + return total_noise diff --git a/SynthData0523/main/c15/tabdiff/tabdiff-c15-20260513_004629/_tabdiff_runtime/tabdiff/models/unified_ctime_diffusion.py b/SynthData0523/main/c15/tabdiff/tabdiff-c15-20260513_004629/_tabdiff_runtime/tabdiff/models/unified_ctime_diffusion.py new file mode 100644 index 0000000000000000000000000000000000000000..599463b6cdf2528c5f35ebd5ddc5c511e5f34d8f --- /dev/null +++ b/SynthData0523/main/c15/tabdiff/tabdiff-c15-20260513_004629/_tabdiff_runtime/tabdiff/models/unified_ctime_diffusion.py @@ -0,0 +1,597 @@ +import torch.nn.functional as F +import torch +import math +import numpy as np +from tabdiff.models.noise_schedule import * +from tqdm import tqdm +from itertools import chain + +""" +“Our implementation of the continuous-time masked diffusion is inspired by https://arxiv.org/abs/2406.07524's implementation at [https://github.com/kuleshov-group/mdlm], with modifications to support data distributions that include categorical dimensions of different sizes.” +""" + +S_churn= 1 +S_min=0 +S_max=float('inf') +S_noise=1 + +class UnifiedCtimeDiffusion(torch.nn.Module): + def __init__( + self, + num_classes: np.array, + num_numerical_features: int, + denoise_fn, + y_only_model, + num_timesteps=1000, + scheduler='power_mean', + cat_scheduler='log_linear', + noise_dist='uniform', + edm_params={}, + noise_dist_params={}, + noise_schedule_params={}, + sampler_params={}, + device=torch.device('cpu'), + **kwargs + ): + + super(UnifiedCtimeDiffusion, self).__init__() + + self.num_numerical_features = num_numerical_features + self.num_classes = num_classes # it as a vector [K1, K2, ..., Km] + self.num_classes_expanded = torch.from_numpy( + np.concatenate([num_classes[i].repeat(num_classes[i]) for i in range(len(num_classes))]) + ).to(device) if len(num_classes)>0 else torch.tensor([]).to(device).int() + self.mask_index = torch.tensor(self.num_classes).long().to(device) + self.neg_infinity = -1000000.0 + self.num_classes_w_mask = tuple(self.num_classes + 1) + + offsets = np.cumsum(self.num_classes) + offsets = np.append([0], offsets) + self.slices_for_classes = [] + for i in range(1, len(offsets)): + self.slices_for_classes.append(np.arange(offsets[i - 1], offsets[i])) + self.offsets = torch.from_numpy(offsets).to(device) + + offsets = np.cumsum(self.num_classes) + np.arange(1, len(self.num_classes)+1) + offsets = np.append([0], offsets) + self.slices_for_classes_with_mask = [] + for i in range(1, len(offsets)): + self.slices_for_classes_with_mask.append(np.arange(offsets[i - 1], offsets[i])) + + self._denoise_fn = denoise_fn + self.y_only_model = y_only_model + self.num_timesteps = num_timesteps + self.scheduler = scheduler + self.cat_scheduler = cat_scheduler + self.noise_dist = noise_dist + self.edm_params = edm_params + self.noise_dist_params = noise_dist_params + self.sampler_params = sampler_params + if self.num_numerical_features == 0: + self.sampler_params['stochastic_sampler'] = False + self.sampler_params['second_order_correction'] = False + + self.w_num = 0.0 + self.w_cat = 0.0 + self.num_mask_idx = [] + self.cat_mask_idx = [] + + self.device = device + + if self.scheduler == 'power_mean': + self.num_schedule = PowerMeanNoise(**noise_schedule_params) + elif self.scheduler == 'power_mean_per_column': + self.num_schedule = PowerMeanNoise_PerColumn(num_numerical = num_numerical_features, **noise_schedule_params) + else: + raise NotImplementedError(f"The noise schedule--{self.scheduler}-- is not implemented for contiuous data at CTIME ") + + if self.cat_scheduler == 'log_linear': + self.cat_schedule = LogLinearNoise(**noise_schedule_params) + elif self.cat_scheduler == 'log_linear_per_column': + self.cat_schedule = LogLinearNoise_PerColumn(num_categories = len(num_classes), **noise_schedule_params) + else: + raise NotImplementedError(f"The noise schedule--{self.cat_scheduler}-- is not implemented for discrete data at CTIME ") + + def mixed_loss(self, x): + b = x.shape[0] + device = x.device + + x_num = x[:, :self.num_numerical_features] + x_cat = x[:, self.num_numerical_features:].long() + # Sample noise level + if self.noise_dist == "uniform_t": + t = torch.rand(b, device=device, dtype=x_num.dtype) + t = t[:, None] + sigma_num = self.num_schedule.total_noise(t) + sigma_cat = self.cat_schedule.total_noise(t) + dsigma_cat = self.cat_schedule.rate_noise(t) + else: + sigma_num = self.sample_ctime_noise(x) + t = self.num_schedule.inverse_to_t(sigma_num) + while torch.any((t < 0) + (t > 1)): + # restrict t to [0,1] + # this iterative approach is equivalent to sampling from a truncated version of the orignal noise distribution + invalid_idx = ((t < 0) + (t > 1)).nonzero().squeeze(-1) + sigma_num[invalid_idx] = self.sample_ctime_noise(x[:len(invalid_idx)]) + t = self.num_schedule.inverse_to_t(sigma_num) + assert not torch.any((t < 0) + (t > 1)) + sigma_cat = self.cat_schedule.total_noise(t) + # Convert sigma_cat to the corresponding alpha and move_chance + alpha = torch.exp(-sigma_cat) + move_chance = -torch.expm1(-sigma_cat) # torch.expm1 gives better numertical stability + + # Continuous forward diff + x_num_t = x_num + if x_num.shape[1] > 0: + noise = torch.randn_like(x_num) + x_num_t = x_num + noise * sigma_num + + # Discrete forward diff + x_cat_t = x_cat + x_cat_t_soft = x_cat # in the case where x_cat is empty, x_cat_t_soft will have the same shape as x_cat + if x_cat.shape[1] > 0: + is_learnable = self.cat_scheduler == 'log_linear_per_column' + strategy = 'soft'if is_learnable else 'hard' + x_cat_t, x_cat_t_soft = self.q_xt(x_cat, move_chance, strategy=strategy) + + # Predict orignal data (distribution) + model_out_num, model_out_cat = self._denoise_fn( + x_num_t, x_cat_t_soft, + t.squeeze(), sigma=sigma_num + ) + + d_loss = torch.zeros((1,)).float() + c_loss = torch.zeros((1,)).float() + + if x_num.shape[1] > 0: + c_loss = self._edm_loss(model_out_num, x_num, sigma_num) + if x_cat.shape[1] > 0: + logits = self._subs_parameterization(model_out_cat, x_cat_t) # log normalized probabilities, with the entry mask category being set to -inf + d_loss = self._absorbed_closs(logits, x_cat, sigma_cat, dsigma_cat) + + return d_loss.mean(), c_loss.mean() + + @torch.no_grad() + def sample(self, num_samples): + b = num_samples + device = self.device + dtype = torch.float32 + + # Create the chain of t + t = torch.linspace(0,1,self.num_timesteps, dtype=dtype, device=device) # times = 0.0,...,1.0 + t = t[:, None] + + # Compute the chains of sigma + sigma_num_cur = self.num_schedule.total_noise(t) + sigma_cat_cur = self.cat_schedule.total_noise(t) + sigma_num_next = torch.zeros_like(sigma_num_cur) + sigma_num_next[1:] = sigma_num_cur[0:-1] + sigma_cat_next = torch.zeros_like(sigma_cat_cur) + sigma_cat_next[1:] = sigma_cat_cur[0:-1] + + # Prepare sigma_hat for stochastic sampling mode + if self.sampler_params['stochastic_sampler']: + gamma = min(S_churn / self.num_timesteps, np.sqrt(2) - 1) * (S_min <= sigma_num_cur) * (sigma_num_cur <= S_max) + sigma_num_hat = sigma_num_cur + gamma * sigma_num_cur + t_hat = self.num_schedule.inverse_to_t(sigma_num_hat) + t_hat = torch.min(t_hat, dim=-1, keepdim=True).values # take the samllest t_hat induced by sigma_num + zero_gamma = (gamma==0).any() + t_hat[zero_gamma] = t[zero_gamma] + out_of_bound = (t_hat > 1).squeeze() + sigma_num_hat[out_of_bound] = sigma_num_cur[out_of_bound] + t_hat[out_of_bound] = t[out_of_bound] + sigma_cat_hat = self.cat_schedule.total_noise(t_hat) + else: + t_hat = t + sigma_num_hat = sigma_num_cur + sigma_cat_hat = sigma_cat_cur + + # Sample priors for the continuous dimensions + z_norm = torch.randn((b, self.num_numerical_features), device=device) * sigma_num_cur[-1] + + # Sample priors for the discrete dimensions + has_cat = len(self.num_classes) > 0 + z_cat = torch.zeros((b, 0), device=device).float() # the default values for categorical sample if the dataset has no categorical entry + if has_cat: + z_cat = self._sample_masked_prior( + b, + len(self.num_classes), + ) + + pbar = tqdm(reversed(range(0, self.num_timesteps)), total=self.num_timesteps) + pbar.set_description(f"Sampling Progress") + for i in pbar: + z_norm, z_cat, q_xs = self.edm_update( + z_norm, z_cat, i, + t[i], t[i-1] if i > 0 else None, t_hat[i], + sigma_num_cur[i], sigma_num_next[i], sigma_num_hat[i], + sigma_cat_cur[i], sigma_cat_next[i], sigma_cat_hat[i], + ) + + assert torch.all(z_cat < self.mask_index) + sample = torch.cat([z_norm, z_cat], dim=1).cpu() + return sample + + def sample_all(self, num_samples, batch_size, keep_nan_samples=False): + b = batch_size + + all_samples = [] + num_generated = 0 + while num_generated < num_samples: + print(f"Samples left to generate: {num_samples-num_generated}") + sample = self.sample(b) + mask_nan = torch.any(sample.isnan(), dim=1) + if keep_nan_samples: + # If the sample instances that contains Nan are decided to be kept, the row with Nan will be foreced to all zeros + sample = sample * (~mask_nan)[:, None] + else: + # Otherwise the instances with Nan will be eliminated + sample = sample[~mask_nan] + + all_samples.append(sample) + num_generated += sample.shape[0] + + x_gen = torch.cat(all_samples, dim=0)[:num_samples] + + return x_gen + + def q_xt(self, x, move_chance, strategy='hard'): + """Computes the noisy sample xt. + + Args: + x: int torch.Tensor with shape (batch_size, + diffusion_model_input_length), input. + move_chance: float torch.Tensor with shape (batch_size, 1). + """ + if strategy == 'hard': + move_indices = torch.rand( + * x.shape, device=x.device) < move_chance + xt = torch.where(move_indices, self.mask_index, x) + xt_soft = self.to_one_hot(xt).to(move_chance.dtype) + return xt, xt_soft + elif strategy == 'soft': + bs = x.shape[0] + xt_soft = torch.zeros(bs, torch.sum(self.mask_index+1), device=x.device) + xt = torch.zeros_like(x) + for i in range(len(self.num_classes)): + slice_i = self.slices_for_classes_with_mask[i] + # set the bernoulli probabilities, which determines the "coin flip" transition to the mask class + prob_i = torch.zeros(bs, 2, device=x.device) + prob_i[:,0] = 1-move_chance[:,i] + prob_i[:,-1] = move_chance[:,i] + log_prob_i = torch.log(prob_i) + # draw soft samples and place them back to the corresponding columns + soft_sample_i = F.gumbel_softmax(log_prob_i, tau=0.01, hard=True) + idx = torch.stack((x[:,i]+slice_i[0], torch.ones_like(x[:,i])*slice_i[-1]), dim=-1) + xt_soft[torch.arange(len(idx)).unsqueeze(1), idx] = soft_sample_i + # retrieve the hard samples + xt[:, i] = torch.where(soft_sample_i[:,1] > soft_sample_i[:,0], self.mask_index[i], x[:,i]) + return xt, xt_soft + + + def _subs_parameterization(self, unormalized_prob, xt): + # log prob at the mask index = - infinity + unormalized_prob = self.pad(unormalized_prob, self.neg_infinity) + + unormalized_prob[:, range(unormalized_prob.shape[1]), self.mask_index] += self.neg_infinity + + # Take log softmax on the unnormalized probabilities to the logits + logits = unormalized_prob - torch.logsumexp(unormalized_prob, dim=-1, + keepdim=True) + # Apply updates directly in the logits matrix. + # For the logits of the unmasked tokens, set all values + # to -infinity except for the indices corresponding to + # the unmasked tokens. + unmasked_indices = (xt != self.mask_index) # (bs, K) + logits[unmasked_indices] = self.neg_infinity + logits[unmasked_indices, xt[unmasked_indices]] = 0 + return logits + + def pad(self, x, pad_value): + """ + Converts a concatenated tensor of class probabilities into a padded matrix, + where each sub-tensor is padded along the last dimension to match the largest + category size (max number of classes). + + Args: + x (Tensor): The input tensor containing concatenated probabilities for all the categories in x_cat. + [bs, sum(num_classes_w_mask)] + pad_value (float): The value filled into the dummy entries, which are padded to ensure all sub-tensors have equal size + along the last dimension. + + Returns: + Tensor: A new tensorwith + [bs, len(num_classes_w_mask), max(num_classes_w_mask)), num_categories] + """ + splited = torch.split(x, self.num_classes_w_mask, dim=-1) + max_K = max(self.num_classes_w_mask) + padded_ = [ + torch.cat(( + t, + pad_value*torch.ones(*(t.shape[:-1]), max_K-t.shape[-1], dtype=t.dtype, device=t.device) + ), dim=-1) + for t in splited] + out = torch.stack(padded_, dim=-2) + return out + + def to_one_hot(self, x_cat): + x_cat_oh = torch.cat( + [F.one_hot(x_cat[:, i], num_classes=self.num_classes[i]+1,) for i in range(len(self.num_classes))], + dim=-1 + ) + return x_cat_oh + + def _absorbed_closs(self, model_output, x0, sigma, dsigma): + """ + alpha: (bs,) + """ + log_p_theta = torch.gather( + model_output, -1, x0[:, :, None] + ).squeeze(-1) + alpha = torch.exp(-sigma) + if self.cat_scheduler in ['log_linear_unified', 'log_linear_per_column']: + elbo_weight = - dsigma / torch.expm1(sigma) + else: + elbo_weight = -1/(1-alpha) + + loss = elbo_weight * log_p_theta + return loss + + def _sample_masked_prior(self, *batch_dims): + return self.mask_index[None,:] * torch.ones( + * batch_dims, dtype=torch.int64, device=self.mask_index.device) + + def _mdlm_update(self, log_p_x0, x, alpha_t, alpha_s): + """ + # t: (bs,) + log_p_x0: (bs, K, K_max) + # alpha_t: (bs,) + # alpha_s: (bs,) + alpha_t: (bs, 1/K_cat) + alpha_s: (bs,1/K_cat) + """ + move_chance_t = 1 - alpha_t + move_chance_s = 1 - alpha_s + move_chance_t = move_chance_t.unsqueeze(-1) + move_chance_s = move_chance_s.unsqueeze(-1) + assert move_chance_t.ndim == log_p_x0.ndim + # Technically, this isn't q_xs since there's a division + # term that is missing. This division term doesn't affect + # the samples. + # There is a noremalizing term is (1-\alpha_t) who's responsility is to ensure q_xs is normalized. + # However, omiting it won't make a difference for the Gumbel-max sampling trick in _sample_categorical() + q_xs = log_p_x0.exp() * (move_chance_t + - move_chance_s) + q_xs[:, range(q_xs.shape[1]), self.mask_index] = move_chance_s[:, :, 0] + + # Important: make sure that prob of dummy classes are exactly 0 + dummy_mask = torch.tensor([[(1 if i <= mask_idx else 0) for i in range(max(self.mask_index+1))] for mask_idx in self.mask_index], device=q_xs.device) + dummy_mask = torch.ones_like(q_xs) * dummy_mask + q_xs *= dummy_mask + + _x = self._sample_categorical(q_xs) + + copy_flag = (x != self.mask_index).to(x.dtype) + + z_cat = copy_flag * x + (1 - copy_flag) * _x + return copy_flag * x + (1 - copy_flag) * _x, q_xs + + def _sample_categorical(self, categorical_probs): + gumbel_norm = ( + 1e-10 + - (torch.rand_like(categorical_probs) + 1e-10).log()) + return (categorical_probs / gumbel_norm).argmax(dim=-1) + + def sample_ctime_noise(self, batch): + if self.noise_dist == 'log_norm': + rnd_normal = torch.randn(batch.shape[0], device=batch.device) + sigma = (rnd_normal * self.noise_dist_params['P_std'] + self.noise_dist_params['P_mean']).exp() + else: + raise NotImplementedError(f"The noise distribution--{self.noise_dist}-- is not implemented for CTIME ") + return sigma + + def _edm_loss(self, D_yn, y, sigma): + weight = (sigma ** 2 + self.edm_params['sigma_data'] ** 2) / (sigma * self.edm_params['sigma_data']) ** 2 + + target = y + loss = weight * ((D_yn - target) ** 2) + + return loss + + def edm_update( + self, x_num_cur, x_cat_cur, i, + t_cur, t_next, t_hat, + sigma_num_cur, sigma_num_next, sigma_num_hat, + sigma_cat_cur, sigma_cat_next, sigma_cat_hat, + ): + """ + i = T-1,...,0 + """ + cfg = self.y_only_model is not None + + b = x_num_cur.shape[0] + has_cat = len(self.num_classes) > 0 + + # Get x_num_hat by move towards the noise by a small step + x_num_hat = x_num_cur + (sigma_num_hat ** 2 - sigma_num_cur ** 2).sqrt() * S_noise * torch.randn_like(x_num_cur) + # Get x_cat_hat + move_chance = -torch.expm1(sigma_cat_cur - sigma_cat_hat) # the incremental move change is 1 - alpha_t/alpha_s = 1 - exp(sigma_s - sigma_t) + x_cat_hat, _ = self.q_xt(x_cat_cur, move_chance) if has_cat else (x_cat_cur, x_cat_cur) + + # Get predictions + x_cat_hat_oh = self.to_one_hot(x_cat_hat).to(x_num_hat.dtype) if has_cat else x_cat_hat + denoised, raw_logits = self._denoise_fn( + x_num_hat.float(), x_cat_hat_oh, + t_hat.squeeze().repeat(b), sigma=sigma_num_hat.unsqueeze(0).repeat(b,1) # sigma accepts (bs, K_num) + ) + + # Apply cfg updates, if is in cfg mode + is_bin_class = len(self.num_mask_idx) == 0 + is_learnable = self.scheduler=="power_mean_per_column" + if cfg: + if not is_learnable: + sigma_cond = sigma_num_hat + else: + if is_bin_class: + sigma_cond = (0.002 ** (1/7) + t_hat * (80 ** (1/7) - 0.002 ** (1/7))).pow(7) + else: + sigma_cond = sigma_num_hat[self.num_mask_idx] + y_num_hat = x_num_hat.float()[:, self.num_mask_idx] + idx = list(chain(*[self.slices_for_classes_with_mask[i] for i in self.cat_mask_idx])) + y_cat_hat = x_cat_hat_oh[:,idx] + y_only_denoised, y_only_raw_logits = self.y_only_model( + y_num_hat, + y_cat_hat, + t_hat.squeeze().repeat(b), sigma=sigma_cond.unsqueeze(0).repeat(b,1) # sigma accepts (bs, K_num) + ) + + denoised[:, self.num_mask_idx] *= 1 + self.w_num + denoised[:, self.num_mask_idx] -= self.w_num*y_only_denoised + + mask_logit_idx = [self.slices_for_classes_with_mask[i] for i in self.cat_mask_idx] + mask_logit_idx = np.concatenate(mask_logit_idx) if len(mask_logit_idx)>0 else np.array([]) + + raw_logits[:, mask_logit_idx] *= 1 + self.w_cat + raw_logits[:, mask_logit_idx] -= self.w_cat*y_only_raw_logits + + # Euler step + d_cur = (x_num_hat - denoised) / sigma_num_hat + x_num_next = x_num_hat + (sigma_num_next - sigma_num_hat) * d_cur + + # Unmasking + x_cat_next = x_cat_cur + q_xs = torch.zeros_like(x_cat_cur).float() + if has_cat: + logits = self._subs_parameterization(raw_logits, x_cat_hat) + alpha_t = torch.exp(-sigma_cat_hat).unsqueeze(0).repeat(b,1) + alpha_s = torch.exp(-sigma_cat_next).unsqueeze(0).repeat(b,1) + x_cat_next, q_xs = self._mdlm_update(logits, x_cat_hat, alpha_t, alpha_s) + + # Apply 2nd order correction. + if self.sampler_params['second_order_correction']: + if i > 0: + x_cat_hat_oh = self.to_one_hot(x_cat_hat).to(x_num_next.dtype) if has_cat else x_cat_hat + denoised, raw_logits = self._denoise_fn( + x_num_next.float(), x_cat_hat_oh, + t_next.squeeze().repeat(b), sigma=sigma_num_next.unsqueeze(0).repeat(b,1) + ) + if cfg: + if not is_learnable: + sigma_cond = sigma_num_next + else: + if is_bin_class: + sigma_cond = (0.002 ** (1/7) + t_next * (80 ** (1/7) - 0.002 ** (1/7))).pow(7) + else: + sigma_cond = sigma_num_next[self.num_mask_idx] + y_num_next = x_num_next.float()[:, self.num_mask_idx] + idx = list(chain(*[self.slices_for_classes_with_mask[i] for i in self.cat_mask_idx])) + y_cat_hat = x_cat_hat_oh[:, idx] + y_only_denoised, y_only_raw_logits = self.y_only_model( + y_num_next, + y_cat_hat, + t_next.squeeze().repeat(b), sigma=sigma_cond.unsqueeze(0).repeat(b,1) # sigma accepts (bs, K_num) + ) + denoised[:, self.num_mask_idx] *= 1 + self.w_num + denoised[:, self.num_mask_idx] -= self.w_num*y_only_denoised + + d_prime = (x_num_next - denoised) / sigma_num_next + x_num_next = x_num_hat + (sigma_num_next - sigma_num_hat) * (0.5 * d_cur + 0.5 * d_prime) + + return x_num_next, x_cat_next, q_xs + + + def sample_impute(self, x_num, x_cat, num_mask_idx, cat_mask_idx, resample_rounds, impute_condition, w_num, w_cat): + self.w_num = w_num + self.w_cat = w_cat + self.num_mask_idx = num_mask_idx + self.cat_mask_idx = cat_mask_idx + + b = x_num.size(0) + device = self.device + dtype = torch.float32 + + # Create masks, true for the missing columns + num_mask = [i in num_mask_idx for i in range(self.num_numerical_features)] + cat_mask = [i in cat_mask_idx for i in range(len(self.num_classes))] + num_mask = torch.tensor(num_mask).to(x_num.device).to(x_num.dtype) + cat_mask = torch.tensor(cat_mask).to(x_cat.device).to(x_cat.dtype) + + # Create the chain of t + t = torch.linspace(0,1,self.num_timesteps, dtype=dtype, device=device) # times = 0.0,...,1.0 + t = t[:, None] + + # Compute the chains of sigma + sigma_num_cur = self.num_schedule.total_noise(t) + sigma_cat_cur = self.cat_schedule.total_noise(t) + sigma_num_next = torch.zeros_like(sigma_num_cur) + sigma_num_next[1:] = sigma_num_cur[0:-1] + sigma_cat_next = torch.zeros_like(sigma_cat_cur) + sigma_cat_next[1:] = sigma_cat_cur[0:-1] + + # Prepare sigma_hat for stochastic sampling mode + if self.sampler_params['stochastic_sampler']: + gamma = min(S_churn / self.num_timesteps, np.sqrt(2) - 1) * (S_min <= sigma_num_cur) * (sigma_num_cur <= S_max) + sigma_num_hat = sigma_num_cur + gamma * sigma_num_cur + t_hat = self.num_schedule.inverse_to_t(sigma_num_hat) + t_hat = torch.min(t_hat, dim=-1, keepdim=True).values # take the samllest t_hat induced by sigma_num + zero_gamma = (gamma==0).any() + t_hat[zero_gamma] = t[zero_gamma] + out_of_bound = (t_hat > 1).squeeze() + sigma_num_hat[out_of_bound] = sigma_num_cur[out_of_bound] + t_hat[out_of_bound] = t[out_of_bound] + sigma_cat_hat = self.cat_schedule.total_noise(t_hat) + else: + t_hat = t + sigma_num_hat = sigma_num_cur + sigma_cat_hat = sigma_cat_cur + + # Sample priors for the continuous dimensions + if impute_condition == "x_t": + z_norm = x_num + torch.randn((b, self.num_numerical_features), device=device) * sigma_num_cur[-1] # z_{t_max} = x_0(masked) + sigma_max*epsilon + elif impute_condition == "x_0": + z_norm = x_num + + # Sample priors for the discrete dimensions + has_cat = len(self.num_classes) > 0 + z_cat = torch.zeros((b, 0), device=device).float() # the default values for categorical sample if the dataset has no categorical entry + if has_cat: + if impute_condition == "x_t": + z_cat = self._sample_masked_prior( + b, + len(self.num_classes), + ) # z_{t_max} is still all pushed to [MASK] + elif impute_condition == "x_0": + z_cat = x_cat + + pbar = tqdm(reversed(range(0, self.num_timesteps)), total=self.num_timesteps) + pbar.set_description(f"Sampling Progress") + for i in pbar: + for u in range (resample_rounds): + # Get known parts by Forward Flow + if impute_condition == "x_t": + z_norm_known = x_num + torch.randn((b, self.num_numerical_features), device=device) * sigma_num_next[i] + move_chance = 1 - torch.exp(-sigma_cat_next[i]) if i < (self.num_timesteps-1) else torch.ones_like(sigma_cat_next[i]) # force move_chance to be 1 for the first iteration + z_cat_known, _ = self.q_xt(x_cat, move_chance) + elif impute_condition == "x_0": + z_norm_known = x_num + z_cat_known = x_cat + + # Get unknown by Reverse Step + z_norm_unknown, z_cat_unknown, q_xs = self.edm_update( + z_norm, z_cat, i, + t[i], t[i-1] if i > 0 else None, t_hat[i], + sigma_num_cur[i], sigma_num_next[i], sigma_num_hat[i], + sigma_cat_cur[i], sigma_cat_next[i], sigma_cat_hat[i], + ) + z_norm = (1 - num_mask) * z_norm_known + num_mask * z_norm_unknown + z_cat = (1 - cat_mask) * z_cat_known + cat_mask * z_cat_unknown + + # Resample x_t from x_{t-1} by Foward Step + if u < resample_rounds-1: + z_norm = z_norm + (sigma_num_cur[i] ** 2 - sigma_num_next[i] ** 2).sqrt() * S_noise * torch.randn_like(z_norm) + move_chance = -torch.expm1(sigma_cat_next[i] - sigma_cat_cur[i]) + z_cat, _ = self.q_xt(z_cat, move_chance) + + sample = torch.cat([z_norm, z_cat], dim=1).cpu() + return sample + \ No newline at end of file diff --git a/SynthData0523/main/c15/tabdiff/tabdiff-c15-20260513_004629/_tabdiff_runtime/tabdiff/modules/main_modules.py b/SynthData0523/main/c15/tabdiff/tabdiff-c15-20260513_004629/_tabdiff_runtime/tabdiff/modules/main_modules.py new file mode 100644 index 0000000000000000000000000000000000000000..8e4333d626894e114ab775f07ceba5c8c46b52f8 --- /dev/null +++ b/SynthData0523/main/c15/tabdiff/tabdiff-c15-20260513_004629/_tabdiff_runtime/tabdiff/modules/main_modules.py @@ -0,0 +1,167 @@ +from typing import Callable, Union + +from tabdiff.modules.transformer import Reconstructor, Tokenizer, Transformer +import torch +import torch.nn as nn +import torch.optim + +ModuleType = Union[str, Callable[..., nn.Module]] + +class SiLU(nn.Module): + def forward(self, x): + return x * torch.sigmoid(x) + +class PositionalEmbedding(torch.nn.Module): + def __init__(self, num_channels, max_positions=10000, endpoint=False): + super().__init__() + self.num_channels = num_channels + self.max_positions = max_positions + self.endpoint = endpoint + + def forward(self, x): + freqs = torch.arange(start=0, end=self.num_channels//2, dtype=torch.float32, device=x.device) + freqs = freqs / (self.num_channels // 2 - (1 if self.endpoint else 0)) + freqs = (1 / self.max_positions) ** freqs + x = x.ger(freqs.to(x.dtype)) + x = torch.cat([x.cos(), x.sin()], dim=1) + return x + + +class MLPDiffusion(nn.Module): + def __init__(self, d_in, dim_t = 512, use_mlp=True): + super().__init__() + self.dim_t = dim_t + + self.proj = nn.Linear(d_in, dim_t) + + self.mlp = nn.Sequential( + nn.Linear(dim_t, dim_t * 2), + nn.SiLU(), + nn.Linear(dim_t * 2, dim_t * 2), + nn.SiLU(), + nn.Linear(dim_t * 2, dim_t), + nn.SiLU(), + nn.Linear(dim_t, d_in), + ) if use_mlp else nn.Linear(dim_t, d_in) + + self.map_noise = PositionalEmbedding(num_channels=dim_t) + self.time_embed = nn.Sequential( + nn.Linear(dim_t, dim_t), + nn.SiLU(), + nn.Linear(dim_t, dim_t) + ) + + self.use_mlp = use_mlp + + def forward(self, x, timesteps): + emb = self.map_noise(timesteps) + emb = emb.reshape(emb.shape[0], 2, -1).flip(1).reshape(*emb.shape) # swap sin/cos + emb = self.time_embed(emb) + + x = self.proj(x) + emb + return self.mlp(x) + +class UniModMLP(nn.Module): + """ + Input: + x_num: [bs, d_numerical] + x_cat: [bs, len(categories)] + Output: + x_num_pred: [bs, d_numerical], the predicted mean for numerical data + x_cat_pred: [bs, sum(categories)], the predicted UNORMALIZED logits for categorical data + """ + def __init__( + self, d_numerical, categories, num_layers, d_token, + n_head = 1, factor = 4, bias = True, dim_t=512, use_mlp=True, **kwargs + ): + super().__init__() + self.d_numerical = d_numerical + self.categories = categories + + self.tokenizer = Tokenizer(d_numerical, categories, d_token, bias = bias) + self.encoder = Transformer(num_layers, d_token, n_head, d_token, factor) + d_in = d_token * (d_numerical + len(categories)) + self.mlp = MLPDiffusion(d_in, dim_t=dim_t, use_mlp=use_mlp) + self.decoder = Transformer(num_layers, d_token, n_head, d_token, factor) + self.detokenizer = Reconstructor(d_numerical, categories, d_token) + + self.model = nn.ModuleList([self.tokenizer, self.encoder, self.mlp, self.decoder, self.detokenizer]) + + def forward(self, x_num, x_cat, timesteps): + e = self.tokenizer(x_num, x_cat) + decoder_input = e[:, 1:, :] # ignore the first CLS token. + y = self.encoder(decoder_input) + pred_y = self.mlp(y.reshape(y.shape[0], -1), timesteps) + pred_e = self.decoder(pred_y.reshape(*y.shape)) + x_num_pred, x_cat_pred = self.detokenizer(pred_e) + x_cat_pred = torch.cat(x_cat_pred, dim=-1) if len(x_cat_pred)>0 else torch.zeros_like(x_cat).to(x_num_pred.dtype) + + return x_num_pred, x_cat_pred + + +class Precond(nn.Module): + def __init__(self, + denoise_fn, + sigma_data = 0.5, # Expected standard deviation of the training data. + net_conditioning = "sigma", + ): + super().__init__() + self.sigma_data = sigma_data + self.net_conditioning = net_conditioning + self.denoise_fn_F = denoise_fn + + def forward(self, x_num, x_cat, t, sigma): + + x_num = x_num.to(torch.float32) + + sigma = sigma.to(torch.float32) + assert sigma.ndim == 2 + if sigma.dim() > 1: # if learnable column-wise noise schedule, sigma conditioning is set to the defaults schedule of rho=7 + sigma_cond = (0.002 ** (1/7) + t * (80 ** (1/7) - 0.002 ** (1/7))).pow(7) + else: + sigma_cond = sigma + dtype = torch.float32 + + c_skip = self.sigma_data ** 2 / (sigma ** 2 + self.sigma_data ** 2) + c_out = sigma * self.sigma_data / (sigma ** 2 + self.sigma_data ** 2).sqrt() + c_in = 1 / (self.sigma_data ** 2 + sigma ** 2).sqrt() + c_noise = sigma_cond.log() / 4 + + x_in = c_in * x_num + if self.net_conditioning == "sigma": + F_x, x_cat_pred = self.denoise_fn_F(x_in, x_cat, c_noise.flatten()) + elif self.net_conditioning == "t": + F_x, x_cat_pred = self.denoise_fn_F(x_in, x_cat, t) + + assert F_x.dtype == dtype + D_x = c_skip * x_num + c_out * F_x.to(torch.float32) + + return D_x, x_cat_pred + + +class Model(nn.Module): + def __init__( + self, denoise_fn, + sigma_data=0.5, + precond=False, + net_conditioning="sigma", + **kwargs + ): + super().__init__() + self.precond = precond + if precond: + self.denoise_fn_D = Precond( + denoise_fn, + sigma_data=sigma_data, + net_conditioning=net_conditioning + ) + else: + self.denoise_fn_D = denoise_fn + + def forward(self, x_num, x_cat, t, sigma=None): + if self.precond: + return self.denoise_fn_D(x_num, x_cat, t, sigma) + else: + return self.denoise_fn_D(x_num, x_cat, t) + + diff --git a/SynthData0523/main/c15/tabdiff/tabdiff-c15-20260513_004629/_tabdiff_runtime/tabdiff/modules/transformer.py b/SynthData0523/main/c15/tabdiff/tabdiff-c15-20260513_004629/_tabdiff_runtime/tabdiff/modules/transformer.py new file mode 100644 index 0000000000000000000000000000000000000000..bedffe15eaa4fec85d7f686ba8741dc5d4d7ac04 --- /dev/null +++ b/SynthData0523/main/c15/tabdiff/tabdiff-c15-20260513_004629/_tabdiff_runtime/tabdiff/modules/transformer.py @@ -0,0 +1,258 @@ +import numpy as np +import torch +import torch.nn as nn +import torch.nn.init as nn_init +import torch.nn.functional as F +from torch import Tensor + +import math + +class Tokenizer(nn.Module): + + def __init__(self, d_numerical, categories, d_token, bias): + super().__init__() + if categories is None: + d_bias = d_numerical + self.category_offsets = None + self.category_embeddings = None + else: + d_bias = d_numerical + len(categories) + category_offsets = torch.tensor([0] + list(categories[:-1])).cumsum(0) + self.register_buffer('category_offsets', category_offsets) + self.cat_weight = nn.Parameter(Tensor(sum(categories), d_token)) + nn.init.kaiming_uniform_(self.cat_weight, a=math.sqrt(5)) + + # take [CLS] token into account + self.weight = nn.Parameter(Tensor(d_numerical + 1, d_token)) + self.bias = nn.Parameter(Tensor(d_bias, d_token)) if bias else None + # The initialization is inspired by nn.Linear + nn_init.kaiming_uniform_(self.weight, a=math.sqrt(5)) + if self.bias is not None: + nn_init.kaiming_uniform_(self.bias, a=math.sqrt(5)) + + @property + def n_tokens(self): + return len(self.weight) + ( + 0 if self.category_offsets is None else len(self.category_offsets) + ) + + def forward(self, x_num, x_cat): + x_some = x_num if x_cat is None else x_cat + assert x_some is not None + x_num = torch.cat( + [torch.ones(len(x_some), 1, device=x_some.device)] # [CLS] + + ([] if x_num is None else [x_num]), + dim=1, + ) + + x = self.weight[None] * x_num[:, :, None] + + if x_cat is not None: + for start, end in zip(self.category_offsets, torch.cat([self.category_offsets[1:], torch.tensor([x_cat.shape[1]], device=x_cat.device)])): + if start < end: + x = torch.cat( + [x, x_cat[:, start:end].unsqueeze(1) @ self.cat_weight[start:end][None]], + dim=1, + ) + if self.bias is not None: + bias = torch.cat( + [ + torch.zeros(1, self.bias.shape[1], device=x.device), + self.bias, + ] + ) + x = x + bias[None] + + return x + + +class MultiheadAttention(nn.Module): + def __init__(self, d, n_heads, dropout, initialization = 'kaiming'): + + if n_heads > 1: + assert d % n_heads == 0 + assert initialization in ['xavier', 'kaiming'] + + super().__init__() + self.W_q = nn.Linear(d, d) + self.W_k = nn.Linear(d, d) + self.W_v = nn.Linear(d, d) + self.W_out = nn.Linear(d, d) if n_heads > 1 else None + self.n_heads = n_heads + self.dropout = nn.Dropout(dropout) if dropout else None + + for m in [self.W_q, self.W_k, self.W_v]: + if initialization == 'xavier' and (n_heads > 1 or m is not self.W_v): + # gain is needed since W_qkv is represented with 3 separate layers + nn_init.xavier_uniform_(m.weight, gain=1 / math.sqrt(2)) + nn_init.zeros_(m.bias) + if self.W_out is not None: + nn_init.zeros_(self.W_out.bias) + + def _reshape(self, x): + batch_size, n_tokens, d = x.shape + d_head = d // self.n_heads + return ( + x.reshape(batch_size, n_tokens, self.n_heads, d_head) + .transpose(1, 2) + .reshape(batch_size * self.n_heads, n_tokens, d_head) + ) + + def forward(self, x_q, x_kv, key_compression = None, value_compression = None): + + q, k, v = self.W_q(x_q), self.W_k(x_kv), self.W_v(x_kv) + for tensor in [q, k, v]: + assert tensor.shape[-1] % self.n_heads == 0 + if key_compression is not None: + assert value_compression is not None + k = key_compression(k.transpose(1, 2)).transpose(1, 2) + v = value_compression(v.transpose(1, 2)).transpose(1, 2) + else: + assert value_compression is None + + batch_size = len(q) + d_head_key = k.shape[-1] // self.n_heads + d_head_value = v.shape[-1] // self.n_heads + n_q_tokens = q.shape[1] + + q = self._reshape(q) + k = self._reshape(k) + + a = q @ k.transpose(1, 2) + b = math.sqrt(d_head_key) + attention = F.softmax(a/b , dim=-1) + + + if self.dropout is not None: + attention = self.dropout(attention) + x = attention @ self._reshape(v) + x = ( + x.reshape(batch_size, self.n_heads, n_q_tokens, d_head_value) + .transpose(1, 2) + .reshape(batch_size, n_q_tokens, self.n_heads * d_head_value) + ) + if self.W_out is not None: + x = self.W_out(x) + + return x + +class Transformer(nn.Module): + + def __init__( + self, + n_layers: int, + d_token: int, + n_heads: int, + d_out: int, + d_ffn_factor: int, + attention_dropout = 0.0, + ffn_dropout = 0.0, + residual_dropout = 0.0, + activation = 'relu', + prenormalization = True, + initialization = 'kaiming', + ): + super().__init__() + + def make_normalization(): + return nn.LayerNorm(d_token) + + d_hidden = int(d_token * d_ffn_factor) + self.layers = nn.ModuleList([]) + for layer_idx in range(n_layers): + layer = nn.ModuleDict( + { + 'attention': MultiheadAttention( + d_token, n_heads, attention_dropout, initialization + ), + 'linear0': nn.Linear( + d_token, d_hidden + ), + 'linear1': nn.Linear(d_hidden, d_token), + 'norm1': make_normalization(), + } + ) + if not prenormalization or layer_idx: + layer['norm0'] = make_normalization() + + self.layers.append(layer) + + self.activation = nn.ReLU() + self.last_activation = nn.ReLU() + # self.activation = lib.get_activation_fn(activation) + # self.last_activation = lib.get_nonglu_activation_fn(activation) + self.prenormalization = prenormalization + self.last_normalization = make_normalization() if prenormalization else None + self.ffn_dropout = ffn_dropout + self.residual_dropout = residual_dropout + self.head = nn.Linear(d_token, d_out) + + + def _start_residual(self, x, layer, norm_idx): + x_residual = x + if self.prenormalization: + norm_key = f'norm{norm_idx}' + if norm_key in layer: + x_residual = layer[norm_key](x_residual) + return x_residual + + def _end_residual(self, x, x_residual, layer, norm_idx): + if self.residual_dropout: + x_residual = F.dropout(x_residual, self.residual_dropout, self.training) + x = x + x_residual + if not self.prenormalization: + x = layer[f'norm{norm_idx}'](x) + return x + + def forward(self, x): + for layer_idx, layer in enumerate(self.layers): + is_last_layer = layer_idx + 1 == len(self.layers) + + x_residual = self._start_residual(x, layer, 0) + x_residual = layer['attention']( + # for the last attention, it is enough to process only [CLS] + x_residual, + x_residual, + ) + + x = self._end_residual(x, x_residual, layer, 0) + + x_residual = self._start_residual(x, layer, 1) + x_residual = layer['linear0'](x_residual) + x_residual = self.activation(x_residual) + if self.ffn_dropout: + x_residual = F.dropout(x_residual, self.ffn_dropout, self.training) + x_residual = layer['linear1'](x_residual) + x = self._end_residual(x, x_residual, layer, 1) + return x + + +class Reconstructor(nn.Module): + def __init__(self, d_numerical, categories, d_token): + super(Reconstructor, self).__init__() + + self.d_numerical = d_numerical + self.categories = categories + self.d_token = d_token + + self.weight = nn.Parameter(Tensor(d_numerical, d_token)) + nn.init.xavier_uniform_(self.weight, gain=1 / math.sqrt(2)) + self.cat_recons = nn.ModuleList() + + for d in categories: + recon = nn.Linear(d_token, d) + nn.init.xavier_uniform_(recon.weight, gain=1 / math.sqrt(2)) + self.cat_recons.append(recon) + + def forward(self, h): + h_num = h[:, :self.d_numerical] + h_cat = h[:, self.d_numerical:] + + recon_x_num = torch.mul(h_num, self.weight.unsqueeze(0)).sum(-1) + recon_x_cat = [] + + for i, recon in enumerate(self.cat_recons): + + recon_x_cat.append(recon(h_cat[:, i])) + + return recon_x_num, recon_x_cat diff --git a/SynthData0523/main/c15/tabdiff/tabdiff-c15-20260513_004629/_tabdiff_runtime/tabdiff/result/pipeline_c15/adapter_learnable/200/all_results.json b/SynthData0523/main/c15/tabdiff/tabdiff-c15-20260513_004629/_tabdiff_runtime/tabdiff/result/pipeline_c15/adapter_learnable/200/all_results.json new file mode 100644 index 0000000000000000000000000000000000000000..986ff0f920fe10a4f845415362d1187aade5dae6 --- /dev/null +++ b/SynthData0523/main/c15/tabdiff/tabdiff-c15-20260513_004629/_tabdiff_runtime/tabdiff/result/pipeline_c15/adapter_learnable/200/all_results.json @@ -0,0 +1,3 @@ +version https://git-lfs.github.com/spec/v1 +oid sha256:86e773cfdf292d6463827bac967294b9df941a618a594b80535d9b874b49d15b +size 100 diff --git 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b/SynthData0523/main/c15/tabdiff/tabdiff-c15-20260513_004629/_tabdiff_runtime/tabdiff/result/pipeline_c15/adapter_learnable/200/trends.csv @@ -0,0 +1,3 @@ +version https://git-lfs.github.com/spec/v1 +oid sha256:21dfe137f0190a5ad145d448fb10af8fa341beff4371b8a8d30c9afafc6dea72 +size 18191 diff --git a/SynthData0523/main/c15/tabdiff/tabdiff-c15-20260513_004629/_tabdiff_runtime/tabdiff/trainer.py b/SynthData0523/main/c15/tabdiff/tabdiff-c15-20260513_004629/_tabdiff_runtime/tabdiff/trainer.py new file mode 100644 index 0000000000000000000000000000000000000000..35ee6d7afff62017dcaa63ca46c3bb7b2cc246f3 --- /dev/null +++ b/SynthData0523/main/c15/tabdiff/tabdiff-c15-20260513_004629/_tabdiff_runtime/tabdiff/trainer.py @@ -0,0 +1,657 @@ +import os +import glob +import time +import torch +from torch.optim.lr_scheduler import ReduceLROnPlateau +import numpy as np +import pandas as pd +import json + +from copy import deepcopy + +from utils_train import update_ema + +from tqdm import tqdm + +BAR = "==============" +def print_with_bar(log_msg): + log_msg = BAR + log_msg + BAR + if "End" in log_msg: + log_msg += "\n" + print(log_msg) + +class Trainer: + def __init__( + self, diffusion, train_iter, dataset, test_dataset, metrics, logger, + lr, weight_decay, + steps, batch_size, check_val_every, + sample_batch_size, model_save_path, result_save_path, + num_samples_to_generate=None, + lr_scheduler='reduce_lr_on_plateau', + reduce_lr_patience=100, factor=0.9, + ema_decay=0.997, + closs_weight_schedule = "fixed", + c_lambda = 1.0, + d_lambda = 1.0, + device=torch.device('cuda:1'), + ckpt_path = None, + y_only=False, + **kwargs + ): + self.y_only = y_only + self.diffusion = diffusion + self.ema_model = deepcopy(self.diffusion._denoise_fn) + for param in self.ema_model.parameters(): + param.detach_() + self.ema_num_schedule = deepcopy(self.diffusion.num_schedule) + for param in self.ema_num_schedule.parameters(): + param.detach_() + self.ema_cat_schedule = deepcopy(self.diffusion.cat_schedule) + for param in self.ema_cat_schedule.parameters(): + param.detach_() + + self.train_iter = train_iter + self.dataset = dataset + self.test_dataset = test_dataset + self.steps = steps + self.init_lr = lr + self.optimizer = torch.optim.AdamW(self.diffusion.parameters(), lr=lr, weight_decay=weight_decay) + self.ema_decay = ema_decay + self.lr_scheduler = lr_scheduler + # PyTorch >= 2.8: ReduceLROnPlateau no longer accepts `verbose=` + self.scheduler = ReduceLROnPlateau( + self.optimizer, mode="min", factor=factor, patience=reduce_lr_patience + ) + self.closs_weight_schedule = closs_weight_schedule + self.c_lambda = c_lambda + self.d_lambda = d_lambda + + self.batch_size = batch_size + self.sample_batch_size = sample_batch_size + self.num_samples_to_generate = num_samples_to_generate + self.metrics = metrics + self.logger = logger + self.check_val_every = check_val_every + + self.device = device + self.model_save_path = model_save_path + self.result_save_path = result_save_path + self.ckpt_path = ckpt_path + if self.ckpt_path is not None: + state_dicts = torch.load(self.ckpt_path, map_location=self.device) + self.diffusion._denoise_fn.load_state_dict(state_dicts['denoise_fn']) + self.diffusion.num_schedule.load_state_dict(state_dicts['num_schedule']) + self.diffusion.cat_schedule.load_state_dict(state_dicts['cat_schedule']) + print(f"Weights are loaded from {self.ckpt_path}") + + self.curr_epoch = int(os.path.basename(self.ckpt_path).split('_')[-1].split('.')[0]) if self.ckpt_path is not None else 0 + + def _anneal_lr(self, step): + frac_done = step / self.steps + lr = self.init_lr * (1 - frac_done) + for param_group in self.optimizer.param_groups: + param_group["lr"] = lr + + def _run_step(self, x, closs_weight, dloss_weight): + x = x.to(self.device) + + self.diffusion.train() + + self.optimizer.zero_grad() + + dloss, closs = self.diffusion.mixed_loss(x) + + loss = dloss_weight * dloss + closs_weight * closs + loss.backward() + self.optimizer.step() + + return dloss, closs + + def compute_loss(self): # eval loss is not weighted + curr_dloss = 0.0 + curr_closs = 0.0 + curr_count = 0 + data_iter = self.train_iter + for batch in data_iter: + x = batch.float().to(self.device) + self.diffusion.eval() + with torch.no_grad(): + batch_dloss, batch_closs = self.diffusion.mixed_loss(x) + curr_dloss += batch_dloss.item() * len(x) + curr_closs += batch_closs.item() * len(x) + curr_count += len(x) + mloss = np.around(curr_dloss / curr_count, 4) + gloss = np.around(curr_closs / curr_count, 4) + return mloss, gloss + + def run_loop(self): + patience = 0 + closs_weight, dloss_weight = self.c_lambda, self.d_lambda + best_loss = np.inf + best_ema_loss = np.inf + best_val_loss = np.inf + start_time = time.time() + print_with_bar(f"Starting Trainin Loop, total number of epoch = {self.steps}") + # Set up wandb's step metric + self.logger.define_metric("epoch") + self.logger.define_metric("*", step_metric="epoch") + + start_epoch = self.curr_epoch + if start_epoch > 0: + print_with_bar(f"Resuming training from epoch {start_epoch}, with validation check every {self.check_val_every} epoches") + for epoch in range (start_epoch, self.steps): + self.curr_epoch = epoch+1 + # Set up pbar + pbar = tqdm(self.train_iter, total=len(self.train_iter)) + pbar.set_description(f"Epoch {epoch+1}/{self.steps}") + + # Compute the loss weights + if self.closs_weight_schedule == "fixed": + pass + elif self.closs_weight_schedule == "anneal": + frac_done = epoch / self.steps + closs_weight = self.c_lambda * (1 - frac_done) + else: + raise NotImplementedError(f"The continuous loss weight schedule {self.closs_weight_schedule} is not implemneted") + + # Training Step + curr_dloss = 0.0 + curr_closs = 0.0 + curr_count = 0 + curr_lr = self.optimizer.param_groups[0]['lr'] + for batch in pbar: + x = batch.float().to(self.device) + batch_dloss, batch_closs = self._run_step(x, closs_weight, dloss_weight) + curr_dloss += batch_dloss.item() * len(x) + curr_closs += batch_closs.item() * len(x) + curr_count += len(x) + pbar.set_postfix({ + "lr": curr_lr, + "DLoss": np.around(curr_dloss/curr_count, 4), + "CLoss": np.around(curr_closs/curr_count, 4), + "TotalLoss": np.around((curr_dloss + curr_closs)/curr_count, 4), + "closs_weight": closs_weight, + "dloss_weight": dloss_weight, + }) + + # Log training Loss + log_dict = {} + mloss = np.around(curr_dloss / curr_count, 4) + gloss = np.around(curr_closs / curr_count, 4) + total_loss = mloss + gloss + if np.isnan(gloss): + print('Finding Nan in gaussian loss') + break + loss_dict = { + "epoch": epoch + 1, + "lr": curr_lr, + "closs_weight": closs_weight, + "dloss_weight": dloss_weight, + "loss/c_loss": gloss, + "loss/d_loss": mloss, + "loss/total_loss": total_loss + } + log_dict.update(loss_dict) + + # Log the learned noise schedules for numerical dimensions + if self.dataset.d_numerical > 0: # numerical data is not empty + num_noise_dict = {} + if self.diffusion.num_schedule.rho().dim() == 0: # non-learnable num schedule + num_noise_dict = {"num_noise/rho": self.diffusion.num_schedule.rho().item()} + else: + num_noise_dict = {f"num_noise/rho_col_{i}": value.item() for i, value in enumerate(self.diffusion.num_schedule.rho())} + log_dict.update(num_noise_dict) + + # Log the learned noise schedules for categlrical dimensions + if len(self.dataset.categories) > 0: # categorical data is not empty + cat_noise_dict = {} + if self.diffusion.cat_schedule.k().dim() == 0: # non-learnable cat schedule + cat_noise_dict = {"cat_noise/k": self.diffusion.cat_schedule.k().item()} + else: + cat_noise_dict = {f"cat_noise/k_col_{i}": value.item() for i, value in enumerate(self.diffusion.cat_schedule.k())} + log_dict.update(cat_noise_dict) + + # Adjust learning rate + if self.lr_scheduler == 'reduce_lr_on_plateau': + self.scheduler.step(total_loss) + elif self.lr_scheduler == 'anneal': + self._anneal_lr(epoch) + elif self.lr_scheduler == 'fixed': + pass + else: + raise NotImplementedError(f"LR scheduler with name '{self.lr_scheduler}' is not implemented") + + # Update EMA models + update_ema(self.ema_model.parameters(), self.diffusion._denoise_fn.parameters(), rate=self.ema_decay) + update_ema(self.ema_num_schedule.parameters(), self.diffusion.num_schedule.parameters(), rate=self.ema_decay) + update_ema(self.ema_cat_schedule.parameters(), self.diffusion.cat_schedule.parameters(), rate=self.ema_decay) + + # Save ckpt base on the best training loss + if total_loss < best_loss and self.curr_epoch > 4000: + best_loss = total_loss + to_remove = glob.glob(os.path.join(self.model_save_path, f"best_model_*")) + if to_remove: + os.remove(to_remove[0]) + state_dicts = { + 'denoise_fn': self.diffusion._denoise_fn.state_dict(), + 'num_schedule':self.diffusion.num_schedule.state_dict(), + 'cat_schedule': self.diffusion.cat_schedule.state_dict(), + } + torch.save(state_dicts, os.path.join(self.model_save_path, f'best_model_{np.round(total_loss,4)}_{epoch+1}.pt')) + patience = 0 + else: + patience += 1 # increment patience if best loss is not surpassed + + # Compute and log EMA model loss + curr_model, curr_num_schedule, curr_cat_schedule = self.to_ema_model() + ema_mloss, ema_gloss = self.compute_loss() + self.to_model(curr_model, curr_num_schedule, curr_cat_schedule) + ema_total_loss = ema_mloss + ema_gloss + ema_loss_dict = { + "ema_loss/c_loss": ema_gloss, + "ema_loss/d_loss": ema_mloss, + "ema_loss/total_loss": ema_total_loss + } + + # Save the best ema ckpt + if ema_total_loss < best_ema_loss and self.curr_epoch > 4000: + best_ema_loss = ema_total_loss + to_remove = glob.glob(os.path.join(self.model_save_path, f"best_ema_model_*")) + if to_remove: + os.remove(to_remove[0]) + state_dicts = { + 'denoise_fn': self.ema_model.state_dict(), + 'num_schedule':self.ema_num_schedule.state_dict(), + 'cat_schedule': self.ema_cat_schedule.state_dict(), + } + torch.save(state_dicts, os.path.join(self.model_save_path, f'best_ema_model_{np.round(ema_total_loss,4)}_{epoch+1}.pt')) + + # Evaluate Sample Quality + if (epoch+1) % self.check_val_every == 0: + state_dicts = { + 'denoise_fn': self.diffusion._denoise_fn.state_dict(), + 'num_schedule':self.diffusion.num_schedule.state_dict(), + 'cat_schedule': self.diffusion.cat_schedule.state_dict(), + } + torch.save(state_dicts, os.path.join(self.model_save_path, f'model_{epoch+1}.pt')) + + print_with_bar(f"Routine Generation Evaluation every {self.check_val_every}, currently at epoch #{epoch+1}, wiht total_loss={total_loss}.") + # 适配器训练:容器内无 Chrome,跳过 Kaleido 密度图 + _plot_density = os.environ.get("TABDIFF_ADAPTER_TRAIN", "").strip().lower() not in ("1", "true", "yes") + out_metrics, _, _ = self.evaluate_generation(save_metric_details=True, plot_density=_plot_density) + log_dict.update(out_metrics) + print(f"Eval Resutls of the Non-EMA model:\n {out_metrics}") + + # Evaluate the EMA model + torch.save(self.ema_model.state_dict(), os.path.join(self.model_save_path, f'ema_model_{epoch+1}.pt')) + ema_out_metrics, _, _ = self.evaluate_generation(ema=True, save_metric_details=True, plot_density=_plot_density) + log_dict.update({ + "ema": ema_out_metrics, + }) + print(f"Eval Resutls of the EMA model:\n {ema_out_metrics}") + + # Submit logs + self.logger.log(log_dict) + + end_time = time.time() + print_with_bar(f"Ending Trainnig Loop, totoal training time = {end_time - start_time}") + self.logger.log({ + 'training_time': end_time - start_time + }) + + def report_test(self, num_runs): + save_dir = self.result_save_path + + shape_ = [] + trend_ = [] + mle_ = [] + c2st_ = [] + for i in range(num_runs): + print_with_bar(f"GENERAL Evaluation Run {i}") + out_metrics, extras, syn_df = self.evaluate_generation() + print(f"Results of Run {i} are: \n{out_metrics}") + shape_.append(out_metrics["density/Shape"]) + trend_.append(out_metrics["density/Trend"]) + mle_.append(out_metrics["mle"]) + c2st_.append(out_metrics["c2st"]) + # Save samples for quality evaluation + save_path = os.path.join(save_dir, "all_samples") + if not os.path.exists(save_path): + os.makedirs(save_path) + syn_df.to_csv(os.path.join(save_path, f"samples_{i}.csv"), index=False) + + shape_ = np.array(shape_) + trend_ = np.array(trend_) + mle_ = np.array(mle_) + c2st_ = np.array(c2st_) + + shape_error = (1 - shape_)*100 + trend_error = (1 - trend_)*100 + c2st_percent = c2st_ * 100 + + all_results = pd.DataFrame({ + "shape": shape_error, + "trend": trend_error, + "mle": mle_, + "c2st": c2st_percent, + }) + avg = all_results.mean(axis=0).round(3) + std = all_results.std(axis=0).round(3) + avg_std = pd.concat([avg, std], axis=1, ignore_index=True) + avg_std.columns = ["avg", "std"] + avg_std.index = [ + "shape", + "trend", + "mle", + "c2st", + ] + + # Savings + all_results.to_csv(f"{save_dir}/all_results.csv", index=True) + avg_std.to_csv(f"{save_dir}/avg_std.csv", index=True) + print_with_bar(f"The AVG over {num_runs} runs are: \n{avg_std}") + + def report_test_dcr(self, num_runs): + save_dir = self.result_save_path + + dcr_ = [] + dcr_real_ = [] + dcr_test_ = [] + for i in range(num_runs): + print_with_bar(f"DCR Evaluation Run {i}") + out_metrics, extras, syn_df = self.evaluate_generation() + print(f"Results of Run {i} are: \n{out_metrics}") + dcr_.append(out_metrics["dcr"]) + dcr_real_.append(extras["dcr_real"]) + dcr_test_.append(extras["dcr_test"]) + save_path = os.path.join(save_dir, "all_samples") + if not os.path.exists(save_path): + os.makedirs(save_path) + syn_df.to_csv(os.path.join(save_path, f"samples_{i}.csv"), index=False) + + dcr_ = np.array(dcr_) + + dcr_percent = dcr_ * 100 + + all_results = pd.DataFrame({ + "dcr": dcr_percent, + }) + avg = all_results.mean(axis=0).round(3) + std = all_results.std(axis=0).round(3) + avg_std = pd.concat([avg, std], axis=1, ignore_index=True) + avg_std.columns = ["avg", "std"] + avg_std.index = [ + "dcr", + ] + + # Savings + all_results.to_csv(f"{save_dir}/all_results.csv", index=True) + avg_std.to_csv(f"{save_dir}/avg_std.csv", index=True) + dcr_real = np.concatenate(dcr_real_, axis=0) + dcr_test = np.concatenate(dcr_test_, axis=0) + dcr_df = pd.DataFrame({ + "dcr_real": dcr_real, + "dcr_test": dcr_test + }) + dcr_df.to_csv(f"{save_dir}/dcr.csv", index=False) + + print_with_bar(f"The AVG over {num_runs} runs are: \n{avg_std}") + + def test(self): + _plot_density = os.environ.get("TABDIFF_ADAPTER_TRAIN", "").strip().lower() not in ("1", "true", "yes") + out_metrics, _, _ = self.evaluate_generation(save_metric_details=True, plot_density=_plot_density) + print_with_bar(f"Results of the test are: \n{out_metrics}") + self.logger.log(out_metrics) + print(out_metrics) + + def evaluate_generation(self, save_metric_details=False, plot_density=False, ema=False): + self.diffusion.eval() + + # Sample a synthetic table + num_samples = self.num_samples_to_generate if self.num_samples_to_generate else self.metrics.real_data_size # By default, num_samples_to_generate is not specified. In this case, we generate the same number of samples as the real dataset. This approach is consistently used across all experiments in the paper. + syn_df = self.sample_synthetic(num_samples, ema=ema) + + # Save the sample + save_path = os.path.join(self.result_save_path, str(self.curr_epoch), "ema" if ema else "") + if not os.path.exists(save_path): + os.makedirs(save_path) + path = os.path.join(save_path, "samples.csv") + syn_df.to_csv(path, index=False) + print( + f"Samples are saved at {path}" + ) + + # 流水线仅需要 CSV:跳过 MLE/C2ST 等(合成表为字符串类别时 MLE 会报错) + if os.environ.get("TABDIFF_ADAPTER_SAMPLE_ONLY", "").strip().lower() in ("1", "true", "yes"): + return {}, {}, syn_df + + # Compute evaluation metrics on the sample + syn_df_loaded = pd.read_csv(os.path.join(save_path, "samples.csv")) # In the original tabsyn code, syn_data is implicitly casted into float.64 when it gets loaded with pd.read_csv in the evaluation script. If we don't cast, the density evluation for some columns (especially those with tailed and peaked distribution) will collapse. + out_metrics, extras = self.metrics.evaluate(syn_df_loaded) + + # Save metrics and metric details + path = os.path.join(save_path, "all_results.json") + with open(path, "w") as json_file: + json.dump(out_metrics, json_file, indent=4, separators=(", ", ": ")) # always locally save the output metrics + if save_metric_details: + for name, extra in extras.items(): + if isinstance(extra, pd.DataFrame): + extra.to_csv(os.path.join(save_path, f"{name}.csv")) + elif isinstance(extra, dict): + with open(os.path.join(save_path, f"{name}.json"), "w") as json_file: + json.dump(extra, json_file, indent=4, separators=(", ", ": ")) + else: + raise NotImplementedError(f"Extra file generated during evaluations has type {type(extra)}, and code to save this type of file is not implemented") + + # Plot density figures + if plot_density: + img = self.metrics.plot_density(syn_df_loaded) + path = os.path.join(save_path, "density_plots.png") + img.save(path) + print( + f"The density plots are saved at {path}" + ) + return out_metrics, extras, syn_df + + + def sample_synthetic(self, num_samples, keep_nan_samples=True, ema=False): + if ema: + curr_model, curr_num_schedule, curr_cat_schedule = self.to_ema_model() + info = self.metrics.info + + print_with_bar(f"Starting Sampling, total samples to generate = {num_samples}") + start_time = time.time() + + syn_data = self.diffusion.sample_all(num_samples, self.sample_batch_size, keep_nan_samples=keep_nan_samples) + print(f"Shape of the generated sample = {syn_data.shape}") + + if keep_nan_samples: + num_all_zero_row = (syn_data.sum(dim=1) == 0).sum() + if num_all_zero_row: + print(f"The generated samples contain {num_all_zero_row} Nan instances!!!") + self.logger.log({ + 'num_Nan_sample': num_all_zero_row + }) + + # Recover tables + num_inverse = self.dataset.num_inverse + int_inverse = self.dataset.int_inverse + cat_inverse = self.dataset.cat_inverse + + if self.y_only: + if info['task_type'] == 'binclass': + syn_data = cat_inverse(syn_data) + else: + syn_data = num_inverse(syn_data) + syn_df = pd.DataFrame() + syn_df[info['column_names'][info['target_col_idx'][0]]] = syn_data[:, 0] + else: + syn_num, syn_cat, syn_target = split_num_cat_target(syn_data, info, num_inverse, int_inverse, cat_inverse) + syn_df = recover_data(syn_num, syn_cat, syn_target, info) + + + idx_name_mapping = info['idx_name_mapping'] + idx_name_mapping = {int(key): value for key, value in idx_name_mapping.items()} + + syn_df.rename(columns = idx_name_mapping, inplace=True) + + end_time = time.time() + print_with_bar(f"Ending Sampling, totoal sampling time = {end_time - start_time}") + + if ema: + self.to_model(curr_model, curr_num_schedule, curr_cat_schedule) + + return syn_df + + def to_ema_model(self): + curr_model = self.diffusion._denoise_fn + curr_num_schedule = self.diffusion.num_schedule + curr_cat_schedule = self.diffusion.cat_schedule + self.diffusion._denoise_fn = self.ema_model # temporarily install the ema parameters into the model + self.diffusion.num_schedule = self.ema_num_schedule + self.diffusion.cat_schedule = self.ema_cat_schedule + + return curr_model, curr_num_schedule, curr_cat_schedule + + def to_model(self, curr_model, curr_num_schedule, curr_cat_schedule): + self.diffusion._denoise_fn = curr_model # give back the parameters + self.diffusion.num_schedule = curr_num_schedule + self.diffusion.cat_schedule = curr_cat_schedule + + def test_impute(self, trail_start, trial_size, resample_rounds, impute_condition, imputed_sample_save_dir, w_num, w_cat): + self.diffusion.eval() + + info = self.metrics.info + task_type = info['task_type'] + d_numerical, categories = self.dataset.d_numerical, self.dataset.categories + num_mask_idx, cat_mask_idx = [], [] + X_train = self.dataset.X + X_train = X_train + x_num_train, x_cat_train = X_train[:,:d_numerical], X_train[:,d_numerical:] + + if task_type == 'binclass': # for cat cols, push the masked col to [MASK] + cat_mask_idx += [0] + else: # for num cols, set the masked col to the col mean + num_mask_idx += [0] + avg = x_num_train[:, num_mask_idx].mean(0).to(self.device) + + with torch.no_grad(): + + for trial in range(trail_start, trail_start+trial_size): + print_with_bar(f"Imputing trial {trial}") + X_test = self.test_dataset.X + X_test = deepcopy(X_test).to(self.device) + x_num_test, x_cat_test = X_test[:, :d_numerical], X_test[:, d_numerical:].long() + + # Apply mask to x_0 + if num_mask_idx: + x_num_test[:, num_mask_idx] = avg + if cat_mask_idx: + x_cat_test[:, cat_mask_idx] = torch.tensor(categories, dtype=x_cat_test.dtype, device=x_cat_test.device)[cat_mask_idx] + + # Sample imputed tables + syn_data = self.diffusion.sample_impute(x_num_test, x_cat_test, num_mask_idx, cat_mask_idx, resample_rounds, impute_condition, w_num, w_cat) + print(f"Shape of the imputed sample = {syn_data.shape}") + + # Recover tables + num_inverse = self.dataset.num_inverse + int_inverse = self.dataset.int_inverse + cat_inverse = self.dataset.cat_inverse + + if torch.any((syn_data[:, d_numerical+1:]).max(dim=0).values > (x_cat_train[:,1:]).max(dim=0).values): # if the test set contains categories not presented in the train set, we can not do cat_inverse. So we implement a patch that set those columns to the same as the train set + print("Test set contains extra categories, and so does imputed syn data. We cannot do cat_inverse. So we set the cat columns as the same as the train set") + syn_data[:, d_numerical+1:] = x_cat_train[:syn_data.shape[0],1:] + + + syn_num, syn_cat, syn_target = split_num_cat_target(syn_data, info, num_inverse, int_inverse, cat_inverse) + syn_df = recover_data(syn_num, syn_cat, syn_target, info) + + idx_name_mapping = info['idx_name_mapping'] + idx_name_mapping = {int(key): value for key, value in idx_name_mapping.items()} + + syn_df.rename(columns = idx_name_mapping, inplace=True) + + # Save imputed samples + os.makedirs(imputed_sample_save_dir) if not os.path.exists(imputed_sample_save_dir) else None + print(f"Imputed samples are saved to {imputed_sample_save_dir}/{trial}.csv") + syn_df.to_csv(f'{imputed_sample_save_dir}/{trial}.csv', index = False) + +def _as_numpy_float32(x): + """Inverse 变换可能返回 Tensor;统一为 numpy float32(含 0 列)。""" + if x is None: + return np.array([], dtype=np.float32) + if isinstance(x, torch.Tensor): + x = x.detach().cpu().numpy() + return np.asarray(x, dtype=np.float32) + + +@torch.no_grad() +def split_num_cat_target(syn_data, info, num_inverse, int_inverse, cat_inverse): + task_type = info['task_type'] + + num_col_idx = info['num_col_idx'] + cat_col_idx = info['cat_col_idx'] + target_col_idx = info['target_col_idx'] + + n_num_feat = len(num_col_idx) + n_cat_feat = len(cat_col_idx) + + if task_type == 'regression': + n_num_feat += len(target_col_idx) + else: + n_cat_feat += len(target_col_idx) + + syn_num = syn_data[:, :n_num_feat] + syn_cat = syn_data[:, n_num_feat:] + + if n_num_feat > 0: + syn_num = _as_numpy_float32(num_inverse(syn_num)) + syn_num = _as_numpy_float32(int_inverse(syn_num)) + else: + syn_num = np.zeros((syn_data.shape[0], 0), dtype=np.float32) + syn_cat = cat_inverse(syn_cat) + + + if info['task_type'] == 'regression': + syn_target = syn_num[:, :len(target_col_idx)] + syn_num = syn_num[:, len(target_col_idx):] + + else: + print(syn_cat.shape) + syn_target = syn_cat[:, :len(target_col_idx)] + syn_cat = syn_cat[:, len(target_col_idx):] + + return syn_num, syn_cat, syn_target + +def recover_data(syn_num, syn_cat, syn_target, info): + + num_col_idx = info['num_col_idx'] + cat_col_idx = info['cat_col_idx'] + target_col_idx = info['target_col_idx'] + + + idx_mapping = info['idx_mapping'] + idx_mapping = {int(key): value for key, value in idx_mapping.items()} + + syn_df = pd.DataFrame() + + if info['task_type'] == 'regression': + for i in range(len(num_col_idx) + len(cat_col_idx) + len(target_col_idx)): + if i in set(num_col_idx): + syn_df[i] = syn_num[:, idx_mapping[i]] + elif i in set(cat_col_idx): + syn_df[i] = syn_cat[:, idx_mapping[i] - len(num_col_idx)] + else: + syn_df[i] = syn_target[:, idx_mapping[i] - len(num_col_idx) - len(cat_col_idx)] + + + else: + for i in range(len(num_col_idx) + len(cat_col_idx) + len(target_col_idx)): + if i in set(num_col_idx): + syn_df[i] = syn_num[:, idx_mapping[i]] + elif i in set(cat_col_idx): + syn_df[i] = syn_cat[:, idx_mapping[i] - len(num_col_idx)] + else: + syn_df[i] = syn_target[:, idx_mapping[i] - len(num_col_idx) - len(cat_col_idx)] + + return syn_df \ No newline at end of file diff --git a/SynthData0523/main/c15/tabdiff/tabdiff-c15-20260513_004629/_tabdiff_runtime/utils_train.py b/SynthData0523/main/c15/tabdiff/tabdiff-c15-20260513_004629/_tabdiff_runtime/utils_train.py new file mode 100644 index 0000000000000000000000000000000000000000..34b289ab9ac194c655c96e3c1806335acbcd5f21 --- /dev/null +++ b/SynthData0523/main/c15/tabdiff/tabdiff-c15-20260513_004629/_tabdiff_runtime/utils_train.py @@ -0,0 +1,193 @@ +import numpy as np +import os + +import src +from torch.utils.data import Dataset + +import torch + + +class TabularDataset(Dataset): + def __init__(self, X_num, X_cat): + self.X_num = X_num + self.X_cat = X_cat + + def __getitem__(self, index): + this_num = self.X_num[index] + this_cat = self.X_cat[index] + + sample = (this_num, this_cat) + + return sample + + def __len__(self): + return self.X_num.shape[0] + +class TabDiffDataset(Dataset): + def __init__(self, dataname, data_dir, info, isTrain=True, y_only=False, dequant_dist='none', int_dequant_factor=0.0): + self.dataname = dataname + self.data_dir = data_dir + self.info = info + self.isTrain = isTrain + + X_num, X_cat, categories, d_numerical, num_inverse, int_inverse, cat_inverse = preprocess(data_dir, y_only, dequant_dist, int_dequant_factor, task_type = info['task_type'], inverse=True) + categories = np.array(categories) + + X_train_num, _ = X_num + X_train_cat, _ = X_cat + + X_train_num, X_test_num = X_num + X_train_cat, X_test_cat = X_cat + + X_train_num, X_test_num = torch.tensor(X_train_num).float(), torch.tensor(X_test_num).float() + X_train_cat, X_test_cat = torch.tensor(X_train_cat), torch.tensor(X_test_cat) + + self.X = torch.cat((X_train_num, X_train_cat), dim=1) if isTrain else torch.cat((X_test_num, X_test_cat), dim=1) + self.num_inverse = num_inverse + self.int_inverse = int_inverse + self.cat_inverse = cat_inverse + self.d_numerical = d_numerical + self.categories = categories + + def __getitem__(self, index): + return self.X[index] + + def __len__(self): + return self.X.shape[0] + +def preprocess(dataset_path, y_only=False, dequant_dist='none', int_dequant_factor=0.0, task_type = 'binclass', inverse = False, cat_encoding = None, concat = True): + + T_dict = {} + + T_dict['normalization'] = "quantile" + T_dict['num_nan_policy'] = 'mean' + T_dict['cat_nan_policy'] = None + T_dict['cat_min_frequency'] = None + T_dict['cat_encoding'] = cat_encoding + T_dict['y_policy'] = "default" + T_dict['dequant_dist'] = dequant_dist + T_dict['int_dequant_factor'] = int_dequant_factor + + T = src.Transformations(**T_dict) + + dataset = make_dataset( + data_path = dataset_path, + T = T, + task_type = task_type, + change_val = False, + concat = concat, + y_only = y_only, + ) + + if cat_encoding is None: + X_num = dataset.X_num + X_cat = dataset.X_cat + + X_train_num, X_test_num = X_num['train'], X_num['test'] + X_train_cat, X_test_cat = X_cat['train'], X_cat['test'] + + categories = src.get_categories(X_train_cat) + d_numerical = X_train_num.shape[1] + + X_num = (X_train_num, X_test_num) + X_cat = (X_train_cat, X_test_cat) + + + if inverse: + num_inverse = dataset.num_transform.inverse_transform if dataset.num_transform is not None else lambda x: x + int_inverse = dataset.int_transform.inverse_transform if dataset.int_transform is not None else lambda x: x + cat_inverse = dataset.cat_transform.inverse_transform if dataset.cat_transform is not None else lambda x: x + + return X_num, X_cat, categories, d_numerical, num_inverse, int_inverse, cat_inverse + else: + return X_num, X_cat, categories, d_numerical + else: + return dataset + + +def update_ema(target_params, source_params, rate=0.999): + """ + Update target parameters to be closer to those of source parameters using + an exponential moving average. + :param target_params: the target parameter sequence. + :param source_params: the source parameter sequence. + :param rate: the EMA rate (closer to 1 means slower). + """ + for target, source in zip(target_params, source_params): + target.detach().mul_(rate).add_(source.detach(), alpha=1 - rate) + + + +def concat_y_to_X(X, y): + if X is None: + return y.reshape(-1, 1) + return np.concatenate([y.reshape(-1, 1), X], axis=1) + + +def make_dataset( + data_path: str, + T: src.Transformations, + task_type, + change_val: bool, + concat = True, + y_only = False, +): + + # classification + if task_type == 'binclass' or task_type == 'multiclass': + X_cat = {} if os.path.exists(os.path.join(data_path, 'X_cat_train.npy')) else None + X_num = {} if os.path.exists(os.path.join(data_path, 'X_num_train.npy')) else None + y = {} if os.path.exists(os.path.join(data_path, 'y_train.npy')) else None + + for split in ['train', 'test']: + X_num_t, X_cat_t, y_t = src.read_pure_data(data_path, split) + if y_only: + X_num_t = X_num_t[:, :0] + X_cat_t = X_cat_t[:, :0] + if X_num is not None: + X_num[split] = X_num_t + if X_cat is not None: + if concat: + X_cat_t = concat_y_to_X(X_cat_t, y_t) + X_cat[split] = X_cat_t + if y is not None: + y[split] = y_t + else: + # regression + X_cat = {} if os.path.exists(os.path.join(data_path, 'X_cat_train.npy')) else None + X_num = {} if os.path.exists(os.path.join(data_path, 'X_num_train.npy')) else None + y = {} if os.path.exists(os.path.join(data_path, 'y_train.npy')) else None + + for split in ['train', 'test']: + X_num_t, X_cat_t, y_t = src.read_pure_data(data_path, split) + if y_only: + X_num_t = X_num_t[:, :0] + X_cat_t = X_cat_t[:, :0] + if X_num is not None: + if concat: + X_num_t = concat_y_to_X(X_num_t, y_t) + X_num[split] = X_num_t + if X_cat is not None: + X_cat[split] = X_cat_t + if y is not None: + y[split] = y_t + + info = src.load_json(os.path.join(data_path, 'info.json')) + int_col_idx_wrt_num = info['int_col_idx_wrt_num'] + + if y_only: + int_col_idx_wrt_num = [] + D = src.Dataset( + X_num, + X_cat, + y, + int_col_idx_wrt_num, + y_info={}, + task_type=src.TaskType(info['task_type']), + n_classes=info.get('n_classes') + ) + + if change_val: + D = src.change_val(D) + + return src.transform_dataset(D, T, None) \ No newline at end of file diff --git a/SynthData0523/main/c15/tabdiff/tabdiff-c15-20260513_004629/_tabdiff_train.py b/SynthData0523/main/c15/tabdiff/tabdiff-c15-20260513_004629/_tabdiff_train.py new file mode 100644 index 0000000000000000000000000000000000000000..45a6ebc2c9dd9c9df0fccaefb6265d8391c76e39 --- /dev/null +++ b/SynthData0523/main/c15/tabdiff/tabdiff-c15-20260513_004629/_tabdiff_train.py @@ -0,0 +1,37 @@ + +import os, shutil, subprocess, sys +td = r"/workspace/TabDiff" +name = r"pipeline_c15" +src = r"/work/output-Benchmark-trainonly-v1/c15/tabdiff/tabdiff-c15-20260513_004629/tabular_bundle/pipeline_c15" +rt = r"/work/output-Benchmark-trainonly-v1/c15/tabdiff/tabdiff-c15-20260513_004629/_tabdiff_runtime" +shutil.rmtree(rt, ignore_errors=True) + +def _ignore(_, names): + skip = {"__pycache__", "data", "synthetic", "result", "results", "ckpt"} + return [n for n in names if n in skip or n.endswith(".pyc")] + +shutil.copytree(td, rt, ignore=_ignore) +dst_data = os.path.join(rt, "data", name) +dst_syn = os.path.join(rt, "synthetic", name) +shutil.rmtree(dst_data, ignore_errors=True) +os.makedirs(os.path.dirname(dst_data), exist_ok=True) +shutil.copytree(src, dst_data) +os.makedirs(dst_syn, exist_ok=True) +for fn in ("real.csv", "test.csv", "val.csv"): + shutil.copy(os.path.join(src, fn), os.path.join(dst_syn, fn)) +os.chdir(rt) +os.environ["PYTHONPATH"] = rt + os.pathsep + os.environ.get("PYTHONPATH", "") +os.environ["TABDIFF_SMOKE_STEPS"] = "200" +os.environ["TABDIFF_STEPS"] = "200" +os.environ["TABDIFF_BATCH_SIZE"] = "256" +os.environ["TABDIFF_TRAIN_BATCH_SIZE"] = "256" +os.environ["TABDIFF_LR"] = "0.0005" +os.environ["TABDIFF_LEARNING_RATE"] = "0.0005" +os.environ["TABDIFF_NUM_TIMESTEPS"] = "50" +os.environ["TABDIFF_TIMESTEPS"] = "50" +os.environ["TABDIFF_ADAPTER_TRAIN"] = "1" +subprocess.check_call([ + sys.executable, "-m", "tabdiff.main", + "--dataname", name, "--mode", "train", "--gpu", "0", + "--no_wandb", "--exp_name", r"adapter_learnable", +]) diff --git a/SynthData0523/main/c15/tabdiff/tabdiff-c15-20260513_004629/gen_20260513_043834.log b/SynthData0523/main/c15/tabdiff/tabdiff-c15-20260513_004629/gen_20260513_043834.log new file mode 100644 index 0000000000000000000000000000000000000000..7153f01700ff1e775382f3e114502f6e49af0842 --- /dev/null +++ b/SynthData0523/main/c15/tabdiff/tabdiff-c15-20260513_004629/gen_20260513_043834.log @@ -0,0 +1,3 @@ +version https://git-lfs.github.com/spec/v1 +oid sha256:544bf461879f3c5247f85f28d966a82915ad96cc8fb4e86a72be3ebc1e3c9805 +size 201587 diff --git a/SynthData0523/main/c15/tabdiff/tabdiff-c15-20260513_004629/input_snapshot.json b/SynthData0523/main/c15/tabdiff/tabdiff-c15-20260513_004629/input_snapshot.json new file mode 100644 index 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sha256:4a542e8ed79bc851aa08b47e0f7c4d046f00cf0a2643d5fd950d10fe1281d348 +size 6271487 diff --git a/SynthData0523/main/c15/tabpfgen/tabpfgen-c15-20260512_144203/_tabpfgen_generate.py b/SynthData0523/main/c15/tabpfgen/tabpfgen-c15-20260512_144203/_tabpfgen_generate.py new file mode 100644 index 0000000000000000000000000000000000000000..dd98c3247a0a339faee2c5086743344fc1795ef3 --- /dev/null +++ b/SynthData0523/main/c15/tabpfgen/tabpfgen-c15-20260512_144203/_tabpfgen_generate.py @@ -0,0 +1,131 @@ +import os +import numpy as np +import pandas as pd +import json +from tabpfgen import TabPFGen + +df = pd.read_csv("/work/output-Benchmark-trainonly-v1/c15/tabpfgen/tabpfgen-c15-20260512_144203/staged/public/train.csv") +target_col = "target" + +target_missing = df[target_col].isna() +if target_missing.any(): + dropped = int(target_missing.sum()) + df = df.loc[~target_missing].copy() + print( + f"[TabPFGen] Dropped {dropped} rows with missing target '{target_col}'" + ) +if df.empty: + raise ValueError( + f"[TabPFGen] No rows remain after dropping missing target '{target_col}'" + ) + +feature_cols = [c for c in df.columns if c != target_col] + +cat_encodings = {} +for col in feature_cols: + if df[col].dtype == object or str(df[col].dtype) == 'category': + cats = sorted(df[col].dropna().unique().tolist(), key=str) + cat_map = {v: i for i, v in enumerate(cats)} + df[col] = df[col].map(cat_map).astype(float) + cat_encodings[col] = cats + print(f"[TabPFGen] Label-encoded '{col}' ({len(cats)} categories)") + +target_cats = None +if df[target_col].dtype == object or str(df[target_col].dtype) == 'category': + cats = sorted(df[target_col].dropna().unique().tolist(), key=str) + t_map = {v: i for i, v in enumerate(cats)} + df[target_col] = df[target_col].map(t_map).astype(float) + target_cats = cats + print(f"[TabPFGen] Label-encoded target '{target_col}' ({len(cats)} categories)") + +X = df[feature_cols].values.astype(np.float32) +y = df[target_col].values +fit_rows_cap = max(1, int(os.environ.get("TABPFGEN_FIT_MAX_ROWS", "50000"))) +if len(X) > fit_rows_cap: + rng = np.random.default_rng(42) + idx = np.sort(rng.choice(len(X), size=fit_rows_cap, replace=False)) + X = X[idx] + y = y[idx] + print(f"[TabPFGen] Downsampled fit rows -> {len(X)} (cap={fit_rows_cap})") +target_n = int(480000) + +for i in range(X.shape[1]): + col_vals = X[:, i] + mask = np.isnan(col_vals) + if mask.any(): + mean_val = np.nanmean(col_vals) + X[mask, i] = mean_val if not np.isnan(mean_val) else 0.0 + +chunk_rows = max(1, int(os.environ.get("TABPFGEN_GEN_CHUNK_ROWS", "256"))) +device = (os.environ.get("TABPFGEN_DEVICE") or "auto").strip() or "auto" + +n_sgld_steps = max(1, int(os.environ.get("TABPFGEN_N_SGLD_STEPS", "1000"))) +sgld_step_size = float(os.environ.get("TABPFGEN_SGLD_STEP_SIZE", "0.01")) +sgld_noise_scale = float(os.environ.get("TABPFGEN_SGLD_NOISE_SCALE", "0.01")) + +# TabPFGen v0.1.x API:仅支持 n_sgld_steps / sgld_* / device。 +# (旧版脚本中的 energy_*_chunk 与上游 TabPFGen 不一致,会导致 TypeError。) +gen = TabPFGen( + n_sgld_steps=n_sgld_steps, + sgld_step_size=sgld_step_size, + sgld_noise_scale=sgld_noise_scale, + device=device, +) + +print( + f"[TabPFGen] Generating {target_n} rows via generate_classification " + f"(chunk_rows={chunk_rows}, device={device}, " + f"n_sgld_steps={n_sgld_steps}, sgld_step_size={sgld_step_size}, " + f"sgld_noise_scale={sgld_noise_scale})" +) +x_parts = [] +y_parts = [] +remaining = target_n +while remaining > 0: + take = min(chunk_rows, remaining) + X_part, y_part = gen.generate_classification(X, y, n_samples=take) + x_parts.append(np.asarray(X_part)) + y_parts.append(np.asarray(y_part)) + remaining -= take + print(f"[TabPFGen] chunk done: take={take}, remaining={remaining}") + +X_syn = np.concatenate(x_parts, axis=0) +y_syn = np.concatenate(y_parts, axis=0) + +syn_df = pd.DataFrame(X_syn, columns=feature_cols) +syn_df[target_col] = y_syn + +for col, cats in cat_encodings.items(): + codes = np.round(syn_df[col].values).astype(int) + codes = np.clip(codes, 0, len(cats) - 1) + syn_df[col] = [cats[c] for c in codes] + +if target_cats is not None: + codes = np.round(syn_df[target_col].values).astype(int) + codes = np.clip(codes, 0, len(target_cats) - 1) + syn_df[target_col] = [target_cats[c] for c in codes] + +if len(syn_df) > target_n: + print(f"[TabPFGen] Trimming rows: {len(syn_df)} -> {target_n}") + syn_df = syn_df.iloc[:target_n].copy() +elif len(syn_df) < target_n: + deficit = target_n - len(syn_df) + print(f"[TabPFGen] Padding rows: {len(syn_df)} -> {target_n} (deficit={deficit})") + if len(syn_df) > 0: + extra = syn_df.sample(n=deficit, replace=True, random_state=42) + syn_df = pd.concat( + [syn_df.reset_index(drop=True), extra.reset_index(drop=True)], + ignore_index=True, + ) + else: + syn_df = df[feature_cols + [target_col]].sample( + n=target_n, replace=True, random_state=42 + ).reset_index(drop=True) + +syn_df = syn_df[list(df.columns)] +if len(syn_df) != target_n: + raise RuntimeError( + f"[TabPFGen] Row alignment failed: got {len(syn_df)}, expected {target_n}" + ) +syn_df.to_csv("/work/output-Benchmark-trainonly-v1/c15/tabpfgen/tabpfgen-c15-20260512_144203/tabpfgen-c15-480000-20260512_144211.csv", index=False) +print(f"[TabPFGen] Saved {len(syn_df)} rows -> /work/output-Benchmark-trainonly-v1/c15/tabpfgen/tabpfgen-c15-20260512_144203/tabpfgen-c15-480000-20260512_144211.csv") diff --git a/SynthData0523/main/c15/tabpfgen/tabpfgen-c15-20260512_144203/gen_20260512_144211.log b/SynthData0523/main/c15/tabpfgen/tabpfgen-c15-20260512_144203/gen_20260512_144211.log new file mode 100644 index 0000000000000000000000000000000000000000..2d1af0f2064107cc96621fafabfbb8c138932e93 --- /dev/null +++ b/SynthData0523/main/c15/tabpfgen/tabpfgen-c15-20260512_144203/gen_20260512_144211.log @@ -0,0 +1,3 @@ +version https://git-lfs.github.com/spec/v1 +oid sha256:58d9f79c99918caef78f7b6bd7e40f218b58e1415f213bed00e1e1033b011250 +size 353677 diff --git 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a/SynthData0523/main/c15/tabpfgen/tabpfgen-c15-20260512_144203/staged/tabpfgen/model_input_manifest.json b/SynthData0523/main/c15/tabpfgen/tabpfgen-c15-20260512_144203/staged/tabpfgen/model_input_manifest.json new file mode 100644 index 0000000000000000000000000000000000000000..02efd4db93db375c1b0561e02e6c54793427e098 --- /dev/null +++ b/SynthData0523/main/c15/tabpfgen/tabpfgen-c15-20260512_144203/staged/tabpfgen/model_input_manifest.json @@ -0,0 +1,3 @@ +version https://git-lfs.github.com/spec/v1 +oid sha256:2c6e221b0c10ac50c201e53809b52b1b4046e0e269bb3922d2c1f76b57a1bce9 +size 12466 diff --git a/SynthData0523/main/c15/tabpfgen/tabpfgen-c15-20260512_144203/tabpfgen-c15-480000-20260512_144211.csv b/SynthData0523/main/c15/tabpfgen/tabpfgen-c15-20260512_144203/tabpfgen-c15-480000-20260512_144211.csv new file mode 100644 index 0000000000000000000000000000000000000000..6e2d288df3092c87c17dba5dce823fd57b5dab86 --- /dev/null +++ b/SynthData0523/main/c15/tabpfgen/tabpfgen-c15-20260512_144203/tabpfgen-c15-480000-20260512_144211.csv @@ -0,0 +1,3 @@ +version https://git-lfs.github.com/spec/v1 +oid sha256:f3b6964109399736d2b030b78ccb9a811c040cc6cdee19b790ca74518d148b4e +size 72504102 diff --git a/SynthData0523/main/c15/tabpfgen/tabpfgen-c15-20260512_144203/tabpfgen_meta.json b/SynthData0523/main/c15/tabpfgen/tabpfgen-c15-20260512_144203/tabpfgen_meta.json new file mode 100644 index 0000000000000000000000000000000000000000..e4323d329820660d51a98620aaf7d317a60379dc --- /dev/null +++ b/SynthData0523/main/c15/tabpfgen/tabpfgen-c15-20260512_144203/tabpfgen_meta.json @@ -0,0 +1,3 @@ +version https://git-lfs.github.com/spec/v1 +oid sha256:5c9d1934af350b1d5aeec993f3324eabacbab31677332ec146e7760a54c1a48f +size 452 diff --git a/SynthData0523/main/c15/tabpfgen/tabpfgen-c15-20260512_144203/train_20260512_144211.log b/SynthData0523/main/c15/tabpfgen/tabpfgen-c15-20260512_144203/train_20260512_144211.log new file mode 100644 index 0000000000000000000000000000000000000000..f36e428585667b7c996181f64bd3f838467e8d78 --- /dev/null +++ b/SynthData0523/main/c15/tabpfgen/tabpfgen-c15-20260512_144203/train_20260512_144211.log @@ -0,0 +1,3 @@ +version https://git-lfs.github.com/spec/v1 +oid sha256:66d17db4b8e8a861f32f02480a8ed315f6842058ccc4df83537674fdecdf5701 +size 599 diff --git a/SynthData0523/main/c15/tabsyn/tabsyn-c15-20260426_203054/_tabsyn_sample.py b/SynthData0523/main/c15/tabsyn/tabsyn-c15-20260426_203054/_tabsyn_sample.py new file mode 100644 index 0000000000000000000000000000000000000000..37c838c7c1d75b5aa8fe58bd8b34271ae65daea7 --- /dev/null +++ b/SynthData0523/main/c15/tabsyn/tabsyn-c15-20260426_203054/_tabsyn_sample.py @@ -0,0 +1,39 @@ +import os, sys, subprocess + +work_dir = "/work/output-SpecializedModels/c15/tabsyn/tabsyn-c15-20260426_203054" +dataname = "tabsyn_c15" +output_csv = "/work/output-SpecializedModels/c15/tabsyn/tabsyn-c15-20260426_203054/tabsyn-c15-480000-20260427_004432.csv" +tabsyn_root = "/workspace/tabsyn" + +assert os.path.exists(tabsyn_root), f"TabSyn source not mounted: {tabsyn_root}" + +old = os.environ.get("PYTHONPATH", "") +os.environ["PYTHONPATH"] = tabsyn_root + (os.pathsep + old if old else "") +sys.path.insert(0, tabsyn_root) + +os.chdir(tabsyn_root) + +# Ensure data symlink exists +data_link = os.path.join(tabsyn_root, "data", dataname) +data_src = os.path.join(work_dir, "data", dataname) +os.makedirs(os.path.join(tabsyn_root, "data"), exist_ok=True) +if os.path.exists(data_link): + os.remove(data_link) +os.symlink(data_src, data_link) + +print(f"[TabSyn] Sampling 480000 rows") +env = os.environ.copy() +env.setdefault("TABSYN_RESUME", "1") +ret = subprocess.run( + [sys.executable, "main.py", + "--dataname", dataname, + "--mode", "sample", + "--method", "tabsyn", + "--gpu", "0", + "--save_path", output_csv], + cwd=tabsyn_root, + env=env +) +if ret.returncode != 0: + sys.exit(ret.returncode) +print(f"[TabSyn] Saved -> {output_csv}") diff --git a/SynthData0523/main/c15/tabsyn/tabsyn-c15-20260426_203054/_tabsyn_train.py b/SynthData0523/main/c15/tabsyn/tabsyn-c15-20260426_203054/_tabsyn_train.py new file mode 100644 index 0000000000000000000000000000000000000000..d4f5ce28aece1f885fa2cc2fdd291c711390d22b --- /dev/null +++ b/SynthData0523/main/c15/tabsyn/tabsyn-c15-20260426_203054/_tabsyn_train.py @@ -0,0 +1,63 @@ +import os, sys, subprocess + +work_dir = "/work/output-SpecializedModels/c15/tabsyn/tabsyn-c15-20260426_203054" +dataname = "tabsyn_c15" +tabsyn_root = "/workspace/tabsyn" + +assert os.path.exists(tabsyn_root), f"TabSyn source not mounted: {tabsyn_root}" + +old = os.environ.get("PYTHONPATH", "") +os.environ["PYTHONPATH"] = tabsyn_root + (os.pathsep + old if old else "") +sys.path.insert(0, tabsyn_root) + +os.chdir(tabsyn_root) + +# Symlink data dir into TabSyn data/ +data_link = os.path.join(tabsyn_root, "data", dataname) +data_src = os.path.join(work_dir, "data", dataname) +os.makedirs(os.path.join(tabsyn_root, "data"), exist_ok=True) +if os.path.exists(data_link): + os.remove(data_link) +os.symlink(data_src, data_link) + +env = os.environ.copy() +env.setdefault("TABSYN_RESUME", "1") +env.setdefault("TABSYN_VAE_BATCH_SIZE", "1024") +_te = 1000 +if _te is not None: + env["TABSYN_VAE_EPOCHS"] = str(_te) + env["TABSYN_DIFFUSION_MAX_EPOCHS"] = str(max(_te + 1, 2)) + +# Data preprocessing is done on the host side (_prepare_data_dir) +# which creates .npy files, train/test CSVs, and info.json + +# Step 1: Train VAE (produces latent embeddings) +print(f"[TabSyn] Step 1/2: Training VAE in {tabsyn_root}, dataname={dataname}") +ret = subprocess.run( + [sys.executable, "main.py", + "--dataname", dataname, + "--mode", "train", + "--method", "vae", + "--gpu", "0"], + cwd=tabsyn_root, + env=env +) +if ret.returncode != 0: + print("[TabSyn] VAE training failed") + sys.exit(ret.returncode) + +# Step 2: Train diffusion model on latent space +print(f"[TabSyn] Step 2/2: Training diffusion model") +ret = subprocess.run( + [sys.executable, "main.py", + "--dataname", dataname, + "--mode", "train", + "--method", "tabsyn", + "--gpu", "0"], + cwd=tabsyn_root, + env=env +) +if ret.returncode != 0: + print("[TabSyn] Diffusion training failed") + sys.exit(ret.returncode) +print("[TabSyn] Training complete (VAE + Diffusion)") diff --git a/SynthData0523/main/c15/tabsyn/tabsyn-c15-20260426_203054/data/tabsyn_c15/X_cat_test.npy b/SynthData0523/main/c15/tabsyn/tabsyn-c15-20260426_203054/data/tabsyn_c15/X_cat_test.npy new file mode 100644 index 0000000000000000000000000000000000000000..fc43396e9158d583c9fa5f3c23e8c138c407b69b --- /dev/null +++ b/SynthData0523/main/c15/tabsyn/tabsyn-c15-20260426_203054/data/tabsyn_c15/X_cat_test.npy @@ -0,0 +1,3 @@ +version https://git-lfs.github.com/spec/v1 +oid sha256:04bd44213f499cce2c5d5b6405ecd5868fbbde7c28bf30f07cf4187ef4322f20 +size 65280128 diff --git a/SynthData0523/main/c15/tabsyn/tabsyn-c15-20260426_203054/data/tabsyn_c15/X_cat_train.npy 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+size 37264759 diff --git a/SynthData0523/main/c15/tabsyn/tabsyn-c15-20260426_203054/tabsyn-c15-480000-20260427_004432.csv b/SynthData0523/main/c15/tabsyn/tabsyn-c15-20260426_203054/tabsyn-c15-480000-20260427_004432.csv new file mode 100644 index 0000000000000000000000000000000000000000..c40934fb0742aeb037ecaf6e1a23e69743986d18 --- /dev/null +++ b/SynthData0523/main/c15/tabsyn/tabsyn-c15-20260426_203054/tabsyn-c15-480000-20260427_004432.csv @@ -0,0 +1,3 @@ +version https://git-lfs.github.com/spec/v1 +oid sha256:f5d60eee757eb06bb3a68a8cc5703d0f22c263cde1cdeaa420f4dc8c8f1f9e9f +size 57025110 diff --git a/SynthData0523/main/c15/tabsyn/tabsyn-c15-20260426_203054/train_20260426_203129.log b/SynthData0523/main/c15/tabsyn/tabsyn-c15-20260426_203054/train_20260426_203129.log new file mode 100644 index 0000000000000000000000000000000000000000..9b0b3e8901036eb6f127af146d04c20b02817183 --- /dev/null +++ b/SynthData0523/main/c15/tabsyn/tabsyn-c15-20260426_203054/train_20260426_203129.log @@ -0,0 +1,3 @@ +version https://git-lfs.github.com/spec/v1 +oid sha256:7cafeb386341049771c2eb39fef3aa9adc8e95692a983a9e0dde3c25dfe120cf +size 19257681 diff --git a/SynthData0523/main/c15/tvae/tvae-c15-20260419_073541/_tvae_generate.py b/SynthData0523/main/c15/tvae/tvae-c15-20260419_073541/_tvae_generate.py new file mode 100644 index 0000000000000000000000000000000000000000..40cebf47ffaec7461ff98a47eec16d776fa0649a --- /dev/null +++ b/SynthData0523/main/c15/tvae/tvae-c15-20260419_073541/_tvae_generate.py @@ -0,0 +1,9 @@ +import sys +sys.path.insert(0, "/work") +from src.SpecificModels.ctgan_rdt_inverse_fix import apply_ctgan_inverse_fix +apply_ctgan_inverse_fix() +from ctgan.synthesizers.tvae import TVAE +model = TVAE.load("/work/output-SpecializedModels/c15/tvae/tvae-c15-20260419_073541/models_300epochs/tvae_300epochs.pt") +samples = model.sample(480000) +samples.to_csv("/work/output-SpecializedModels/c15/tvae/tvae-c15-20260419_073541/tvae-c15-480000-20260419_181017.csv", index=False) +print(f"[TVAE] Generated 480000 rows -> /work/output-SpecializedModels/c15/tvae/tvae-c15-20260419_073541/tvae-c15-480000-20260419_181017.csv") diff --git a/SynthData0523/main/c15/tvae/tvae-c15-20260419_073541/_tvae_train.py b/SynthData0523/main/c15/tvae/tvae-c15-20260419_073541/_tvae_train.py new file mode 100644 index 0000000000000000000000000000000000000000..f5a422d70f735eb8558c0b6697b580c1f463a0a5 --- /dev/null +++ b/SynthData0523/main/c15/tvae/tvae-c15-20260419_073541/_tvae_train.py @@ -0,0 +1,16 @@ +import json, sys +import pandas as pd +from ctgan.data import read_csv +from ctgan.synthesizers.tvae import TVAE + +csv_path = "/work/output-SpecializedModels/c15/tvae/tvae-c15-20260419_073541/staged/public/train.csv" +meta_path = "/work/output-SpecializedModels/c15/tvae/tvae-c15-20260419_073541/tvae_metadata.json" +save_path = "/work/output-SpecializedModels/c15/tvae/tvae-c15-20260419_073541/models_300epochs/tvae_300epochs.pt" +epochs = 300 + +data, discrete_columns = read_csv(csv_path, meta_path, header=True, discrete=None) +print(f"[TVAE] Training on {len(data)} rows, {len(data.columns)} cols, epochs={epochs}") +model = TVAE(epochs=epochs, batch_size=500) +model.fit(data, discrete_columns) +model.save(save_path) +print(f"[TVAE] Model saved -> {save_path}") diff --git a/SynthData0523/main/c15/tvae/tvae-c15-20260419_073541/gen_20260419_133821.log b/SynthData0523/main/c15/tvae/tvae-c15-20260419_073541/gen_20260419_133821.log new file mode 100644 index 0000000000000000000000000000000000000000..99d1317306eedd87723eced27afdd23ca492f535 --- /dev/null +++ b/SynthData0523/main/c15/tvae/tvae-c15-20260419_073541/gen_20260419_133821.log @@ -0,0 +1,3 @@ +version https://git-lfs.github.com/spec/v1 +oid sha256:22602b513ac2753eadfeee4e57acbce4adcd05e99392272d3529ecf90be17258 +size 1702 diff --git a/SynthData0523/main/c15/tvae/tvae-c15-20260419_073541/gen_20260419_170053.log b/SynthData0523/main/c15/tvae/tvae-c15-20260419_073541/gen_20260419_170053.log new file 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