| |
| |
|
|
| """ |
| This file contains components with some default boilerplate logic user may need |
| in training / testing. They will not work for everyone, but many users may find them useful. |
| |
| The behavior of functions/classes in this file is subject to change, |
| since they are meant to represent the "common default behavior" people need in their projects. |
| """ |
|
|
| import argparse |
| import logging |
| import os |
| import sys |
| import weakref |
| from collections import OrderedDict |
| from typing import Optional |
| import torch |
| from fvcore.nn.precise_bn import get_bn_modules |
| from omegaconf import OmegaConf |
| from torch.nn.parallel import DistributedDataParallel |
|
|
| import detectron2.data.transforms as T |
| from detectron2.checkpoint import DetectionCheckpointer |
| from detectron2.config import CfgNode, LazyConfig |
| from detectron2.data import ( |
| MetadataCatalog, |
| build_detection_test_loader, |
| build_detection_train_loader, |
| ) |
| from detectron2.evaluation import ( |
| DatasetEvaluator, |
| inference_on_dataset, |
| print_csv_format, |
| verify_results, |
| ) |
| from detectron2.modeling import build_model |
| from detectron2.solver import build_lr_scheduler, build_optimizer |
| from detectron2.utils import comm |
| from detectron2.utils.collect_env import collect_env_info |
| from detectron2.utils.env import seed_all_rng |
| from detectron2.utils.events import CommonMetricPrinter, JSONWriter, TensorboardXWriter |
| from detectron2.utils.file_io import PathManager |
| from detectron2.utils.logger import setup_logger |
|
|
| from . import hooks |
| from .train_loop import AMPTrainer, SimpleTrainer, TrainerBase |
|
|
| __all__ = [ |
| "create_ddp_model", |
| "default_argument_parser", |
| "default_setup", |
| "default_writers", |
| "DefaultPredictor", |
| "DefaultTrainer", |
| ] |
|
|
|
|
| def create_ddp_model(model, *, fp16_compression=False, **kwargs): |
| """ |
| Create a DistributedDataParallel model if there are >1 processes. |
| |
| Args: |
| model: a torch.nn.Module |
| fp16_compression: add fp16 compression hooks to the ddp object. |
| See more at https://pytorch.org/docs/stable/ddp_comm_hooks.html#torch.distributed.algorithms.ddp_comm_hooks.default_hooks.fp16_compress_hook |
| kwargs: other arguments of :module:`torch.nn.parallel.DistributedDataParallel`. |
| """ |
| if comm.get_world_size() == 1: |
| return model |
| if "device_ids" not in kwargs: |
| kwargs["device_ids"] = [comm.get_local_rank()] |
| ddp = DistributedDataParallel(model, **kwargs) |
| if fp16_compression: |
| from torch.distributed.algorithms.ddp_comm_hooks import default as comm_hooks |
|
|
| ddp.register_comm_hook(state=None, hook=comm_hooks.fp16_compress_hook) |
| return ddp |
|
|
|
|
| def default_argument_parser(epilog=None): |
| """ |
| Create a parser with some common arguments used by detectron2 users. |
| |
| Args: |
| epilog (str): epilog passed to ArgumentParser describing the usage. |
| |
| Returns: |
| argparse.ArgumentParser: |
| """ |
| parser = argparse.ArgumentParser( |
| epilog=epilog |
| or f""" |
| Examples: |
| |
| Run on single machine: |
| $ {sys.argv[0]} --num-gpus 8 --config-file cfg.yaml |
| |
| Change some config options: |
| $ {sys.argv[0]} --config-file cfg.yaml MODEL.WEIGHTS /path/to/weight.pth SOLVER.BASE_LR 0.001 |
| |
| Run on multiple machines: |
| (machine0)$ {sys.argv[0]} --machine-rank 0 --num-machines 2 --dist-url <URL> [--other-flags] |
| (machine1)$ {sys.argv[0]} --machine-rank 1 --num-machines 2 --dist-url <URL> [--other-flags] |
| """, |
| formatter_class=argparse.RawDescriptionHelpFormatter, |
| ) |
| parser.add_argument("--config-file", default="", metavar="FILE", help="path to config file") |
| parser.add_argument( |
| "--resume", |
| action="store_true", |
| help="Whether to attempt to resume from the checkpoint directory. " |
| "See documentation of `DefaultTrainer.resume_or_load()` for what it means.", |
| ) |
| parser.add_argument("--eval-only", action="store_true", help="perform evaluation only") |
| parser.add_argument("--num-gpus", type=int, default=1, help="number of gpus *per machine*") |
| parser.add_argument("--num-machines", type=int, default=1, help="total number of machines") |
| parser.add_argument( |
| "--machine-rank", type=int, default=0, help="the rank of this machine (unique per machine)" |
| ) |
|
|
| |
| |
| |
| port = 2**15 + 2**14 + hash(os.getuid() if sys.platform != "win32" else 1) % 2**14 |
| parser.add_argument( |
| "--dist-url", |
| default="tcp://127.0.0.1:{}".format(port), |
| help="initialization URL for pytorch distributed backend. See " |
| "https://pytorch.org/docs/stable/distributed.html for details.", |
| ) |
| parser.add_argument( |
| "opts", |
| help=""" |
| Modify config options at the end of the command. For Yacs configs, use |
| space-separated "PATH.KEY VALUE" pairs. |
| For python-based LazyConfig, use "path.key=value". |
| """.strip(), |
| default=None, |
| nargs=argparse.REMAINDER, |
| ) |
| return parser |
|
|
|
|
| def _try_get_key(cfg, *keys, default=None): |
| """ |
| Try select keys from cfg until the first key that exists. Otherwise return default. |
| """ |
| if isinstance(cfg, CfgNode): |
| cfg = OmegaConf.create(cfg.dump()) |
| for k in keys: |
| none = object() |
| p = OmegaConf.select(cfg, k, default=none) |
| if p is not none: |
| return p |
| return default |
|
|
|
|
| def _highlight(code, filename): |
| try: |
| import pygments |
| except ImportError: |
| return code |
|
|
| from pygments.lexers import Python3Lexer, YamlLexer |
| from pygments.formatters import Terminal256Formatter |
|
|
| lexer = Python3Lexer() if filename.endswith(".py") else YamlLexer() |
| code = pygments.highlight(code, lexer, Terminal256Formatter(style="monokai")) |
| return code |
|
|
|
|
| def default_setup(cfg, args): |
| """ |
| Perform some basic common setups at the beginning of a job, including: |
| |
| 1. Set up the detectron2 logger |
| 2. Log basic information about environment, cmdline arguments, and config |
| 3. Backup the config to the output directory |
| |
| Args: |
| cfg (CfgNode or omegaconf.DictConfig): the full config to be used |
| args (argparse.NameSpace): the command line arguments to be logged |
| """ |
| output_dir = _try_get_key(cfg, "OUTPUT_DIR", "output_dir", "train.output_dir") |
| if comm.is_main_process() and output_dir: |
| PathManager.mkdirs(output_dir) |
|
|
| rank = comm.get_rank() |
| setup_logger(output_dir, distributed_rank=rank, name="fvcore") |
| logger = setup_logger(output_dir, distributed_rank=rank) |
|
|
| logger.info("Rank of current process: {}. World size: {}".format(rank, comm.get_world_size())) |
| logger.info("Environment info:\n" + collect_env_info()) |
|
|
| logger.info("Command line arguments: " + str(args)) |
| if hasattr(args, "config_file") and args.config_file != "": |
| logger.info( |
| "Contents of args.config_file={}:\n{}".format( |
| args.config_file, |
| _highlight(PathManager.open(args.config_file, "r").read(), args.config_file), |
| ) |
| ) |
|
|
| if comm.is_main_process() and output_dir: |
| |
| |
| path = os.path.join(output_dir, "config.yaml") |
| if isinstance(cfg, CfgNode): |
| logger.info("Running with full config:\n{}".format(_highlight(cfg.dump(), ".yaml"))) |
| with PathManager.open(path, "w") as f: |
| f.write(cfg.dump()) |
| else: |
| LazyConfig.save(cfg, path) |
| logger.info("Full config saved to {}".format(path)) |
|
|
| |
| seed = _try_get_key(cfg, "SEED", "train.seed", default=-1) |
| seed_all_rng(None if seed < 0 else seed + rank) |
|
|
| |
| |
| if not (hasattr(args, "eval_only") and args.eval_only): |
| torch.backends.cudnn.benchmark = _try_get_key( |
| cfg, "CUDNN_BENCHMARK", "train.cudnn_benchmark", default=False |
| ) |
|
|
|
|
| def default_writers(output_dir: str, max_iter: Optional[int] = None): |
| """ |
| Build a list of :class:`EventWriter` to be used. |
| It now consists of a :class:`CommonMetricPrinter`, |
| :class:`TensorboardXWriter` and :class:`JSONWriter`. |
| |
| Args: |
| output_dir: directory to store JSON metrics and tensorboard events |
| max_iter: the total number of iterations |
| |
| Returns: |
| list[EventWriter]: a list of :class:`EventWriter` objects. |
| """ |
| PathManager.mkdirs(output_dir) |
| return [ |
| |
| CommonMetricPrinter(max_iter), |
| JSONWriter(os.path.join(output_dir, "metrics.json")), |
| TensorboardXWriter(output_dir), |
| ] |
|
|
|
|
| class DefaultPredictor: |
| """ |
| Create a simple end-to-end predictor with the given config that runs on |
| single device for a single input image. |
| |
| Compared to using the model directly, this class does the following additions: |
| |
| 1. Load checkpoint from `cfg.MODEL.WEIGHTS`. |
| 2. Always take BGR image as the input and apply conversion defined by `cfg.INPUT.FORMAT`. |
| 3. Apply resizing defined by `cfg.INPUT.{MIN,MAX}_SIZE_TEST`. |
| 4. Take one input image and produce a single output, instead of a batch. |
| |
| This is meant for simple demo purposes, so it does the above steps automatically. |
| This is not meant for benchmarks or running complicated inference logic. |
| If you'd like to do anything more complicated, please refer to its source code as |
| examples to build and use the model manually. |
| |
| Attributes: |
| metadata (Metadata): the metadata of the underlying dataset, obtained from |
| cfg.DATASETS.TEST. |
| |
| Examples: |
| :: |
| pred = DefaultPredictor(cfg) |
| inputs = cv2.imread("input.jpg") |
| outputs = pred(inputs) |
| """ |
|
|
| def __init__(self, cfg): |
| self.cfg = cfg.clone() |
| self.model = build_model(self.cfg) |
| self.model.eval() |
| if len(cfg.DATASETS.TEST): |
| self.metadata = MetadataCatalog.get(cfg.DATASETS.TEST[0]) |
|
|
| checkpointer = DetectionCheckpointer(self.model) |
| checkpointer.load(cfg.MODEL.WEIGHTS) |
|
|
| self.aug = T.ResizeShortestEdge( |
| [cfg.INPUT.MIN_SIZE_TEST, cfg.INPUT.MIN_SIZE_TEST], cfg.INPUT.MAX_SIZE_TEST |
| ) |
|
|
| self.input_format = cfg.INPUT.FORMAT |
| assert self.input_format in ["RGB", "BGR"], self.input_format |
|
|
| def __call__(self, original_image): |
| """ |
| Args: |
| original_image (np.ndarray): an image of shape (H, W, C) (in BGR order). |
| |
| Returns: |
| predictions (dict): |
| the output of the model for one image only. |
| See :doc:`/tutorials/models` for details about the format. |
| """ |
| with torch.no_grad(): |
| |
| if self.input_format == "RGB": |
| |
| original_image = original_image[:, :, ::-1] |
| height, width = original_image.shape[:2] |
| image = self.aug.get_transform(original_image).apply_image(original_image) |
| image = torch.as_tensor(image.astype("float32").transpose(2, 0, 1)) |
| image.to(self.cfg.MODEL.DEVICE) |
|
|
| inputs = {"image": image, "height": height, "width": width} |
|
|
| predictions = self.model([inputs])[0] |
| return predictions |
|
|
|
|
| class DefaultTrainer(TrainerBase): |
| """ |
| A trainer with default training logic. It does the following: |
| |
| 1. Create a :class:`SimpleTrainer` using model, optimizer, dataloader |
| defined by the given config. Create a LR scheduler defined by the config. |
| 2. Load the last checkpoint or `cfg.MODEL.WEIGHTS`, if exists, when |
| `resume_or_load` is called. |
| 3. Register a few common hooks defined by the config. |
| |
| It is created to simplify the **standard model training workflow** and reduce code boilerplate |
| for users who only need the standard training workflow, with standard features. |
| It means this class makes *many assumptions* about your training logic that |
| may easily become invalid in a new research. In fact, any assumptions beyond those made in the |
| :class:`SimpleTrainer` are too much for research. |
| |
| The code of this class has been annotated about restrictive assumptions it makes. |
| When they do not work for you, you're encouraged to: |
| |
| 1. Overwrite methods of this class, OR: |
| 2. Use :class:`SimpleTrainer`, which only does minimal SGD training and |
| nothing else. You can then add your own hooks if needed. OR: |
| 3. Write your own training loop similar to `tools/plain_train_net.py`. |
| |
| See the :doc:`/tutorials/training` tutorials for more details. |
| |
| Note that the behavior of this class, like other functions/classes in |
| this file, is not stable, since it is meant to represent the "common default behavior". |
| It is only guaranteed to work well with the standard models and training workflow in detectron2. |
| To obtain more stable behavior, write your own training logic with other public APIs. |
| |
| Examples: |
| :: |
| trainer = DefaultTrainer(cfg) |
| trainer.resume_or_load() # load last checkpoint or MODEL.WEIGHTS |
| trainer.train() |
| |
| Attributes: |
| scheduler: |
| checkpointer (DetectionCheckpointer): |
| cfg (CfgNode): |
| """ |
|
|
| def __init__(self, cfg): |
| """ |
| Args: |
| cfg (CfgNode): |
| """ |
| super().__init__() |
| logger = logging.getLogger("detectron2") |
| if not logger.isEnabledFor(logging.INFO): |
| setup_logger() |
| cfg = DefaultTrainer.auto_scale_workers(cfg, comm.get_world_size()) |
|
|
| |
| model = self.build_model(cfg) |
| optimizer = self.build_optimizer(cfg, model) |
| data_loader = self.build_train_loader(cfg) |
|
|
| model = create_ddp_model(model, broadcast_buffers=False) |
| self._trainer = (AMPTrainer if cfg.SOLVER.AMP.ENABLED else SimpleTrainer)( |
| model, data_loader, optimizer |
| ) |
|
|
| self.scheduler = self.build_lr_scheduler(cfg, optimizer) |
| self.checkpointer = DetectionCheckpointer( |
| |
| model, |
| cfg.OUTPUT_DIR, |
| trainer=weakref.proxy(self), |
| ) |
| self.start_iter = 0 |
| self.max_iter = cfg.SOLVER.MAX_ITER |
| self.cfg = cfg |
|
|
| self.register_hooks(self.build_hooks()) |
|
|
| def resume_or_load(self, resume=True): |
| """ |
| If `resume==True` and `cfg.OUTPUT_DIR` contains the last checkpoint (defined by |
| a `last_checkpoint` file), resume from the file. Resuming means loading all |
| available states (eg. optimizer and scheduler) and update iteration counter |
| from the checkpoint. ``cfg.MODEL.WEIGHTS`` will not be used. |
| |
| Otherwise, this is considered as an independent training. The method will load model |
| weights from the file `cfg.MODEL.WEIGHTS` (but will not load other states) and start |
| from iteration 0. |
| |
| Args: |
| resume (bool): whether to do resume or not |
| """ |
| self.checkpointer.resume_or_load(self.cfg.MODEL.WEIGHTS, resume=resume) |
| if resume and self.checkpointer.has_checkpoint(): |
| |
| |
| self.start_iter = self.iter + 1 |
|
|
| def build_hooks(self): |
| """ |
| Build a list of default hooks, including timing, evaluation, |
| checkpointing, lr scheduling, precise BN, writing events. |
| |
| Returns: |
| list[HookBase]: |
| """ |
| cfg = self.cfg.clone() |
| cfg.defrost() |
| cfg.DATALOADER.NUM_WORKERS = 0 |
|
|
| ret = [ |
| hooks.IterationTimer(), |
| hooks.LRScheduler(), |
| ( |
| hooks.PreciseBN( |
| |
| cfg.TEST.EVAL_PERIOD, |
| self.model, |
| |
| self.build_train_loader(cfg), |
| cfg.TEST.PRECISE_BN.NUM_ITER, |
| ) |
| if cfg.TEST.PRECISE_BN.ENABLED and get_bn_modules(self.model) |
| else None |
| ), |
| ] |
|
|
| |
| |
| |
| |
| if comm.is_main_process(): |
| ret.append(hooks.PeriodicCheckpointer(self.checkpointer, cfg.SOLVER.CHECKPOINT_PERIOD)) |
|
|
| def test_and_save_results(): |
| self._last_eval_results = self.test(self.cfg, self.model) |
| return self._last_eval_results |
|
|
| |
| |
| ret.append(hooks.EvalHook(cfg.TEST.EVAL_PERIOD, test_and_save_results)) |
|
|
| if comm.is_main_process(): |
| |
| |
| ret.append(hooks.PeriodicWriter(self.build_writers(), period=20)) |
| return ret |
|
|
| def build_writers(self): |
| """ |
| Build a list of writers to be used using :func:`default_writers()`. |
| If you'd like a different list of writers, you can overwrite it in |
| your trainer. |
| |
| Returns: |
| list[EventWriter]: a list of :class:`EventWriter` objects. |
| """ |
| return default_writers(self.cfg.OUTPUT_DIR, self.max_iter) |
|
|
| def train(self): |
| """ |
| Run training. |
| |
| Returns: |
| OrderedDict of results, if evaluation is enabled. Otherwise None. |
| """ |
| super().train(self.start_iter, self.max_iter) |
| if len(self.cfg.TEST.EXPECTED_RESULTS) and comm.is_main_process(): |
| assert hasattr( |
| self, "_last_eval_results" |
| ), "No evaluation results obtained during training!" |
| verify_results(self.cfg, self._last_eval_results) |
| return self._last_eval_results |
|
|
| def run_step(self): |
| self._trainer.iter = self.iter |
| self._trainer.run_step() |
|
|
| def state_dict(self): |
| ret = super().state_dict() |
| ret["_trainer"] = self._trainer.state_dict() |
| return ret |
|
|
| def load_state_dict(self, state_dict): |
| super().load_state_dict(state_dict) |
| self._trainer.load_state_dict(state_dict["_trainer"]) |
|
|
| @classmethod |
| def build_model(cls, cfg): |
| """ |
| Returns: |
| torch.nn.Module: |
| |
| It now calls :func:`detectron2.modeling.build_model`. |
| Overwrite it if you'd like a different model. |
| """ |
| model = build_model(cfg) |
| logger = logging.getLogger(__name__) |
| logger.info("Model:\n{}".format(model)) |
| return model |
|
|
| @classmethod |
| def build_optimizer(cls, cfg, model): |
| """ |
| Returns: |
| torch.optim.Optimizer: |
| |
| It now calls :func:`detectron2.solver.build_optimizer`. |
| Overwrite it if you'd like a different optimizer. |
| """ |
| return build_optimizer(cfg, model) |
|
|
| @classmethod |
| def build_lr_scheduler(cls, cfg, optimizer): |
| """ |
| It now calls :func:`detectron2.solver.build_lr_scheduler`. |
| Overwrite it if you'd like a different scheduler. |
| """ |
| return build_lr_scheduler(cfg, optimizer) |
|
|
| @classmethod |
| def build_train_loader(cls, cfg): |
| """ |
| Returns: |
| iterable |
| |
| It now calls :func:`detectron2.data.build_detection_train_loader`. |
| Overwrite it if you'd like a different data loader. |
| """ |
| return build_detection_train_loader(cfg) |
|
|
| @classmethod |
| def build_test_loader(cls, cfg, dataset_name): |
| """ |
| Returns: |
| iterable |
| |
| It now calls :func:`detectron2.data.build_detection_test_loader`. |
| Overwrite it if you'd like a different data loader. |
| """ |
| return build_detection_test_loader(cfg, dataset_name) |
|
|
| @classmethod |
| def build_evaluator(cls, cfg, dataset_name): |
| """ |
| Returns: |
| DatasetEvaluator or None |
| |
| It is not implemented by default. |
| """ |
| raise NotImplementedError( |
| """ |
| If you want DefaultTrainer to automatically run evaluation, |
| please implement `build_evaluator()` in subclasses (see train_net.py for example). |
| Alternatively, you can call evaluation functions yourself (see Colab balloon tutorial for example). |
| """ |
| ) |
|
|
| @classmethod |
| def test(cls, cfg, model, evaluators=None): |
| """ |
| Evaluate the given model. The given model is expected to already contain |
| weights to evaluate. |
| |
| Args: |
| cfg (CfgNode): |
| model (nn.Module): |
| evaluators (list[DatasetEvaluator] or None): if None, will call |
| :meth:`build_evaluator`. Otherwise, must have the same length as |
| ``cfg.DATASETS.TEST``. |
| |
| Returns: |
| dict: a dict of result metrics |
| """ |
| logger = logging.getLogger(__name__) |
| if isinstance(evaluators, DatasetEvaluator): |
| evaluators = [evaluators] |
| if evaluators is not None: |
| assert len(cfg.DATASETS.TEST) == len(evaluators), "{} != {}".format( |
| len(cfg.DATASETS.TEST), len(evaluators) |
| ) |
|
|
| results = OrderedDict() |
| for idx, dataset_name in enumerate(cfg.DATASETS.TEST): |
| data_loader = cls.build_test_loader(cfg, dataset_name) |
| |
| |
| if evaluators is not None: |
| evaluator = evaluators[idx] |
| else: |
| try: |
| evaluator = cls.build_evaluator(cfg, dataset_name) |
| except NotImplementedError: |
| logger.warn( |
| "No evaluator found. Use `DefaultTrainer.test(evaluators=)`, " |
| "or implement its `build_evaluator` method." |
| ) |
| results[dataset_name] = {} |
| continue |
| results_i = inference_on_dataset(model, data_loader, evaluator) |
| results[dataset_name] = results_i |
| if comm.is_main_process(): |
| assert isinstance( |
| results_i, dict |
| ), "Evaluator must return a dict on the main process. Got {} instead.".format( |
| results_i |
| ) |
| logger.info("Evaluation results for {} in csv format:".format(dataset_name)) |
| print_csv_format(results_i) |
|
|
| if len(results) == 1: |
| results = list(results.values())[0] |
| return results |
|
|
| @staticmethod |
| def auto_scale_workers(cfg, num_workers: int): |
| """ |
| When the config is defined for certain number of workers (according to |
| ``cfg.SOLVER.REFERENCE_WORLD_SIZE``) that's different from the number of |
| workers currently in use, returns a new cfg where the total batch size |
| is scaled so that the per-GPU batch size stays the same as the |
| original ``IMS_PER_BATCH // REFERENCE_WORLD_SIZE``. |
| |
| Other config options are also scaled accordingly: |
| * training steps and warmup steps are scaled inverse proportionally. |
| * learning rate are scaled proportionally, following :paper:`ImageNet in 1h`. |
| |
| For example, with the original config like the following: |
| |
| .. code-block:: yaml |
| |
| IMS_PER_BATCH: 16 |
| BASE_LR: 0.1 |
| REFERENCE_WORLD_SIZE: 8 |
| MAX_ITER: 5000 |
| STEPS: (4000,) |
| CHECKPOINT_PERIOD: 1000 |
| |
| When this config is used on 16 GPUs instead of the reference number 8, |
| calling this method will return a new config with: |
| |
| .. code-block:: yaml |
| |
| IMS_PER_BATCH: 32 |
| BASE_LR: 0.2 |
| REFERENCE_WORLD_SIZE: 16 |
| MAX_ITER: 2500 |
| STEPS: (2000,) |
| CHECKPOINT_PERIOD: 500 |
| |
| Note that both the original config and this new config can be trained on 16 GPUs. |
| It's up to user whether to enable this feature (by setting ``REFERENCE_WORLD_SIZE``). |
| |
| Returns: |
| CfgNode: a new config. Same as original if ``cfg.SOLVER.REFERENCE_WORLD_SIZE==0``. |
| """ |
| old_world_size = cfg.SOLVER.REFERENCE_WORLD_SIZE |
| if old_world_size == 0 or old_world_size == num_workers: |
| return cfg |
| cfg = cfg.clone() |
| frozen = cfg.is_frozen() |
| cfg.defrost() |
|
|
| assert ( |
| cfg.SOLVER.IMS_PER_BATCH % old_world_size == 0 |
| ), "Invalid REFERENCE_WORLD_SIZE in config!" |
| scale = num_workers / old_world_size |
| bs = cfg.SOLVER.IMS_PER_BATCH = int(round(cfg.SOLVER.IMS_PER_BATCH * scale)) |
| lr = cfg.SOLVER.BASE_LR = cfg.SOLVER.BASE_LR * scale |
| max_iter = cfg.SOLVER.MAX_ITER = int(round(cfg.SOLVER.MAX_ITER / scale)) |
| warmup_iter = cfg.SOLVER.WARMUP_ITERS = int(round(cfg.SOLVER.WARMUP_ITERS / scale)) |
| cfg.SOLVER.STEPS = tuple(int(round(s / scale)) for s in cfg.SOLVER.STEPS) |
| cfg.TEST.EVAL_PERIOD = int(round(cfg.TEST.EVAL_PERIOD / scale)) |
| cfg.SOLVER.CHECKPOINT_PERIOD = int(round(cfg.SOLVER.CHECKPOINT_PERIOD / scale)) |
| cfg.SOLVER.REFERENCE_WORLD_SIZE = num_workers |
| logger = logging.getLogger(__name__) |
| logger.info( |
| f"Auto-scaling the config to batch_size={bs}, learning_rate={lr}, " |
| f"max_iter={max_iter}, warmup={warmup_iter}." |
| ) |
|
|
| if frozen: |
| cfg.freeze() |
| return cfg |
|
|
|
|
| |
| for _attr in ["model", "data_loader", "optimizer"]: |
| setattr( |
| DefaultTrainer, |
| _attr, |
| property( |
| |
| lambda self, x=_attr: getattr(self._trainer, x), |
| |
| lambda self, value, x=_attr: setattr(self._trainer, x, value), |
| ), |
| ) |
|
|