| from __future__ import annotations |
|
|
| import hashlib |
| from dataclasses import dataclass |
| from pathlib import Path |
| from typing import Any, Sequence |
|
|
| import numpy as np |
| import pandas as pd |
| import rasterio |
| from tqdm import tqdm |
|
|
| MISSING_TEXT_VALUES = frozenset({"", "__missing__", "nan", "none", "null"}) |
| DEFAULT_DATASET_ROOT_DIR = Path(__file__).resolve().parents[1] |
| DEFAULT_LAND_MASK_PATH = str( |
| DEFAULT_DATASET_ROOT_DIR / "masks/world_land_mask_glorys_0p1.tif" |
| ) |
|
|
|
|
| def resolve_package_path(path: str | Path) -> Path: |
| """Resolve paths relative to this Hugging Face dataset checkout.""" |
| candidate = Path(path).expanduser() |
| if candidate.is_absolute(): |
| return candidate |
| repo_relative = DEFAULT_DATASET_ROOT_DIR / candidate |
| if repo_relative.exists(): |
| return repo_relative |
| return candidate |
|
|
|
|
| def _parse_date_int(value: Any) -> int: |
| """Parse a model date integer while avoiding leap-day calendar issues.""" |
| raw = str(value).strip() |
| if raw.isdigit(): |
| date_int = int(raw) |
| month = (date_int // 100) % 100 |
| day = date_int % 100 |
| |
| if month == 2 and day == 29: |
| return date_int - 1 |
| return date_int |
| return 20100101 |
|
|
|
|
| def _normalize_lon(lon: float) -> float: |
| """Normalize longitude to the -180..180 degree range.""" |
| return float(((float(lon) + 180.0) % 360.0) - 180.0) |
|
|
|
|
| def _center_lon_deg(lon0: float, lon1: float) -> float: |
| """Return the circular midpoint longitude in degrees.""" |
| lon0_rad = np.deg2rad(lon0) |
| lon1_rad = np.deg2rad(lon1) |
| sin_sum = np.sin(lon0_rad) + np.sin(lon1_rad) |
| cos_sum = np.cos(lon0_rad) + np.cos(lon1_rad) |
| return float(np.rad2deg(np.arctan2(sin_sum, cos_sum))) |
|
|
|
|
| @dataclass(frozen=True) |
| class _ForceIncludeRegion: |
| """Named region that relaxes land-fraction filtering for patch centers.""" |
|
|
| name: str |
| lon_min: float |
| lon_max: float |
| lat_min: float |
| lat_max: float |
| max_land_fraction: float |
|
|
|
|
| @dataclass(frozen=True) |
| class _GridParams: |
| """Patch-grid construction parameters shared by dataset backends.""" |
|
|
| tile_size: int |
| resolution_deg: float |
| invalid_threshold: float |
| invalid_mask_flags: tuple[str, ...] |
| val_fraction: float |
| val_year: int | None |
| split_seed: int |
| patch_grid_source: str = "land_mask" |
| land_mask_path: str | Path | None = DEFAULT_LAND_MASK_PATH |
| patch_stride: int | None = None |
| max_land_fraction: float = 0.30 |
| force_include_regions: tuple[_ForceIncludeRegion, ...] = () |
|
|
| @property |
| def effective_patch_stride(self) -> int: |
| """Return the configured stride, defaulting to non-overlapping tiles.""" |
| return int(self.tile_size if self.patch_stride is None else self.patch_stride) |
|
|
|
|
| @dataclass(frozen=True) |
| class _PatchGridLookup: |
| """Compact lookup from global pixel coordinates to retained patch ids.""" |
|
|
| patch_by_start: dict[tuple[int, int], int] |
| y_starts: np.ndarray |
| x_starts: np.ndarray |
| grid_top: float |
| grid_left: float |
| tile_size: int |
| resolution_deg: float |
|
|
|
|
| def _sanitize_cache_text(value: Any) -> str: |
| """Sanitize arbitrary config text for use in cache filenames.""" |
| text = str(value).strip().lower().replace("\\", "/") |
| for old, new in (("/", "-"), (".", "p"), (" ", ""), (":", "-")): |
| text = text.replace(old, new) |
| return text |
|
|
|
|
| def _path_cache_hash(path: str | Path | None) -> str: |
| """Return a short stable hash for a path-like cache key.""" |
| if path is None: |
| return "none" |
| raw = str(Path(path)).encode("utf-8") |
| return hashlib.sha1(raw).hexdigest()[:8] |
|
|
|
|
| def _deep_update_config( |
| base: dict[str, Any], overrides: dict[str, Any] |
| ) -> dict[str, Any]: |
| """Return a copy of a config mapping with nested override values applied.""" |
| out = dict(base) |
| for key, value in overrides.items(): |
| if isinstance(value, dict) and isinstance(out.get(key), dict): |
| out[key] = _deep_update_config(out[key], value) |
| else: |
| out[key] = value |
| return out |
|
|
|
|
| def _force_include_cache_hash(regions: Sequence[_ForceIncludeRegion]) -> str: |
| """Return a short stable hash for force-include region settings.""" |
| if not regions: |
| return "none" |
| parts = [ |
| ( |
| region.name, |
| f"{region.lon_min:.6f}", |
| f"{region.lon_max:.6f}", |
| f"{region.lat_min:.6f}", |
| f"{region.lat_max:.6f}", |
| f"{region.max_land_fraction:.6f}", |
| ) |
| for region in regions |
| ] |
| raw = repr(parts).encode("utf-8") |
| return hashlib.sha1(raw).hexdigest()[:8] |
|
|
|
|
| def _parse_force_include_regions(value: Any) -> tuple[_ForceIncludeRegion, ...]: |
| """Parse optional force-include region mappings from dataset config.""" |
| if value is None: |
| return () |
| if isinstance(value, str) and value.strip().lower() in MISSING_TEXT_VALUES: |
| return () |
| if not isinstance(value, (list, tuple)): |
| raise ValueError("grid.force_include_regions must be a list of mappings.") |
|
|
| regions: list[_ForceIncludeRegion] = [] |
| for idx, raw_region in enumerate(value): |
| if not isinstance(raw_region, dict): |
| raise ValueError("Each grid.force_include_regions item must be a mapping.") |
| name = str(raw_region.get("name", f"region_{idx}")) |
| lon_min = float(raw_region["lon_min"]) |
| lon_max = float(raw_region["lon_max"]) |
| lat_min = float(raw_region["lat_min"]) |
| lat_max = float(raw_region["lat_max"]) |
| max_land_fraction = float(raw_region.get("max_land_fraction", 1.0)) |
| regions.append( |
| _ForceIncludeRegion( |
| name=name, |
| lon_min=min(lon_min, lon_max), |
| lon_max=max(lon_min, lon_max), |
| lat_min=min(lat_min, lat_max), |
| lat_max=max(lat_min, lat_max), |
| max_land_fraction=max_land_fraction, |
| ) |
| ) |
| return tuple(regions) |
|
|
|
|
| def _grid_starts(size: int, tile: int, stride: int) -> list[int]: |
| """Return grid start indices that always include the final valid tile.""" |
| if tile < 1: |
| raise ValueError("grid.tile_size must be >= 1.") |
| if stride < 1: |
| raise ValueError("grid.patch_stride must be >= 1.") |
| if int(size) < int(tile): |
| raise RuntimeError("Source grid is smaller than the requested tile size.") |
|
|
| last_start = int(size) - int(tile) |
| starts = list(range(0, last_start + 1, int(stride))) |
| if not starts or starts[-1] != last_start: |
| starts.append(last_start) |
| return starts |
|
|
|
|
| def _summed_area_table(mask: np.ndarray) -> np.ndarray: |
| """Build a summed-area table for fast rectangular mask sums.""" |
| values = np.asarray(mask, dtype=np.float64) |
| table = np.zeros((values.shape[0] + 1, values.shape[1] + 1), dtype=np.float64) |
| table[1:, 1:] = values.cumsum(axis=0).cumsum(axis=1) |
| return table |
|
|
|
|
| def _window_sum(table: np.ndarray, *, y0: int, x0: int, tile: int) -> float: |
| """Return a square-window sum from a summed-area table.""" |
| y1 = int(y0) + int(tile) |
| x1 = int(x0) + int(tile) |
| return float( |
| table[y1, x1] |
| - table[int(y0), x1] |
| - table[y1, int(x0)] |
| + table[int(y0), int(x0)] |
| ) |
|
|
|
|
| def _validate_grid_params(grid_params: _GridParams) -> None: |
| """Validate patch-grid settings before building a registry.""" |
| tile = int(grid_params.tile_size) |
| stride = int(grid_params.effective_patch_stride) |
| if tile < 1: |
| raise ValueError("grid.tile_size must be >= 1.") |
| if stride < 1: |
| raise ValueError("grid.patch_stride must be >= 1.") |
| if stride < tile and grid_params.val_year is None: |
| raise ValueError( |
| "Overlapping patch grids require split.val_year to avoid spatial " |
| "train/val leakage. Set split.val_year or use patch_stride >= tile_size." |
| ) |
| if not (0.0 <= float(grid_params.max_land_fraction) <= 1.0): |
| raise ValueError("grid.max_land_fraction must be in [0, 1].") |
| for region in grid_params.force_include_regions: |
| if not (0.0 <= float(region.max_land_fraction) <= 1.0): |
| raise ValueError( |
| "grid.force_include_regions[].max_land_fraction must be in [0, 1]." |
| ) |
| source = str(grid_params.patch_grid_source).strip().lower() |
| if source not in {"land_mask", "ostia_mask"}: |
| raise ValueError("grid.patch_grid_source must be 'land_mask' or 'ostia_mask'.") |
|
|
|
|
| def _force_include_region_for_patch( |
| *, |
| lat_center: float, |
| lon_center: float, |
| land_fraction: float, |
| regions: Sequence[_ForceIncludeRegion], |
| ) -> _ForceIncludeRegion | None: |
| """Return the matching force-include region for a patch, if any.""" |
| for region in regions: |
| lon_value = _normalize_lon(float(lon_center)) |
| if ( |
| region.lat_min <= float(lat_center) <= region.lat_max |
| and region.lon_min <= lon_value <= region.lon_max |
| and float(land_fraction) <= float(region.max_land_fraction) |
| ): |
| return region |
| return None |
|
|
|
|
| def _build_patch_lookup( |
| patch_df: pd.DataFrame, grid_params: _GridParams |
| ) -> _PatchGridLookup: |
| """Build a compact lookup from retained patch starts to patch ids.""" |
| if patch_df.empty: |
| raise RuntimeError("Cannot build patch lookup from an empty patch table.") |
|
|
| records = patch_df.to_dict(orient="records") |
| first = records[0] |
| resolution = float(grid_params.resolution_deg) |
| grid_top = max(float(first["lat0"]), float(first["lat1"])) + ( |
| int(first["grid_y0"]) * resolution |
| ) |
| grid_left = min(float(first["lon0"]), float(first["lon1"])) - ( |
| int(first["grid_x0"]) * resolution |
| ) |
| patch_by_start = { |
| (int(row["grid_y0"]), int(row["grid_x0"])): int(row["patch_id"]) |
| for row in records |
| } |
| y_starts = np.asarray( |
| sorted({int(row["grid_y0"]) for row in records}), dtype=np.int64 |
| ) |
| x_starts = np.asarray( |
| sorted({int(row["grid_x0"]) for row in records}), dtype=np.int64 |
| ) |
| return _PatchGridLookup( |
| patch_by_start=patch_by_start, |
| y_starts=y_starts, |
| x_starts=x_starts, |
| grid_top=float(grid_top), |
| grid_left=float(grid_left), |
| tile_size=int(grid_params.tile_size), |
| resolution_deg=resolution, |
| ) |
|
|
|
|
| def _candidate_starts_for_pixel( |
| starts: np.ndarray, pixel_idx: int, tile: int |
| ) -> np.ndarray: |
| """Return patch start indices whose tile contains one pixel index.""" |
| starts = np.asarray(starts, dtype=np.int64) |
| if starts.size == 0: |
| return starts |
| mask = (starts <= int(pixel_idx)) & (int(pixel_idx) < (starts + int(tile))) |
| return starts[mask] |
|
|
|
|
| def _patch_ids_for_profile( |
| lookup: _PatchGridLookup, |
| *, |
| lat: float, |
| lon: float, |
| ) -> list[int]: |
| """Return all retained patch ids containing one profile location.""" |
| if not np.isfinite(lat) or not np.isfinite(lon): |
| return [] |
|
|
| row_idx = int( |
| np.floor((float(lookup.grid_top) - float(lat)) / lookup.resolution_deg) |
| ) |
| lon_value = _normalize_lon(float(lon)) |
| if float(lookup.grid_left) >= 0.0 and lon_value < float(lookup.grid_left): |
| |
| |
| lon_value += 360.0 |
| col_idx = int( |
| np.floor((lon_value - float(lookup.grid_left)) / lookup.resolution_deg) |
| ) |
| y_candidates = _candidate_starts_for_pixel( |
| lookup.y_starts, |
| row_idx, |
| lookup.tile_size, |
| ) |
| x_candidates = _candidate_starts_for_pixel( |
| lookup.x_starts, |
| col_idx, |
| lookup.tile_size, |
| ) |
| patch_ids: list[int] = [] |
| for y0 in y_candidates.tolist(): |
| for x0 in x_candidates.tolist(): |
| patch_id = lookup.patch_by_start.get((int(y0), int(x0))) |
| if patch_id is not None: |
| patch_ids.append(int(patch_id)) |
| return patch_ids |
|
|
|
|
| def _build_land_mask_patch_table(grid_params: _GridParams) -> pd.DataFrame: |
| """Build retained patch metadata from the authoritative land-mask GeoTIFF.""" |
| land_mask_path = resolve_package_path( |
| DEFAULT_LAND_MASK_PATH |
| if grid_params.land_mask_path is None |
| else grid_params.land_mask_path |
| ) |
| if not land_mask_path.exists(): |
| raise FileNotFoundError(f"Land-mask GeoTIFF does not exist: {land_mask_path}") |
|
|
| with rasterio.open(land_mask_path) as src: |
| land_mask = src.read(1) |
| transform = src.transform |
| width = int(src.width) |
| height = int(src.height) |
|
|
| tile = int(grid_params.tile_size) |
| stride = int(grid_params.effective_patch_stride) |
| resolution = float(grid_params.resolution_deg) |
| if not np.isclose( |
| float(transform.a), resolution, rtol=0.0, atol=1.0e-8 |
| ) or not np.isclose( |
| abs(float(transform.e)), |
| resolution, |
| rtol=0.0, |
| atol=1.0e-8, |
| ): |
| raise RuntimeError( |
| "Land-mask GeoTIFF resolution does not match dataset.grid.resolution_deg: " |
| f"{float(transform.a)} x {abs(float(transform.e))} != {resolution}" |
| ) |
|
|
| y_starts = _grid_starts(height, tile, stride) |
| x_starts = _grid_starts(width, tile, stride) |
| land_bool = np.asarray(land_mask, dtype=np.float32) > 0.5 |
| table = _summed_area_table(land_bool) |
| max_land_fraction = float(grid_params.max_land_fraction) |
|
|
| records: list[dict[str, Any]] = [] |
| patch_id = 0 |
| for y0 in tqdm( |
| y_starts, |
| desc="Building land-mask patch grid", |
| unit="row", |
| dynamic_ncols=True, |
| ): |
| for x0 in x_starts: |
| land_fraction = _window_sum(table, y0=y0, x0=x0, tile=tile) / float( |
| tile * tile |
| ) |
| left = float(transform.c) + (float(x0) * resolution) |
| right = left + (float(tile) * resolution) |
| top = float(transform.f) - (float(y0) * resolution) |
| bottom = top - (float(tile) * resolution) |
| lat_center = 0.5 * (float(bottom) + float(top)) |
| lon_center = _center_lon_deg(float(left), float(right)) |
| force_region = _force_include_region_for_patch( |
| lat_center=lat_center, |
| lon_center=lon_center, |
| land_fraction=land_fraction, |
| regions=grid_params.force_include_regions, |
| ) |
| if land_fraction > max_land_fraction and force_region is None: |
| continue |
| records.append( |
| { |
| "patch_id": int(patch_id), |
| "grid_y0": int(y0), |
| "grid_x0": int(x0), |
| "lat0": float(bottom), |
| "lat1": float(top), |
| "lon0": float(left), |
| "lon1": float(right), |
| "lat_center": lat_center, |
| "lon_center": lon_center, |
| "land_fraction": float(land_fraction), |
| "ocean_fraction": float(1.0 - land_fraction), |
| "invalid_fraction": float(land_fraction), |
| "force_included": bool(force_region is not None), |
| "force_include_region": ( |
| "" if force_region is None else force_region.name |
| ), |
| } |
| ) |
| patch_id += 1 |
|
|
| if not records: |
| raise RuntimeError("No valid patches were built from the land-mask grid.") |
| return pd.DataFrame.from_records(records) |
|
|