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from __future__ import annotations
from typing import Any
import torch
from torch.utils.data import DataLoader, Dataset, Subset, random_split
def build_dataloader(
dataset: Dataset,
*,
batch_size: int = 16,
shuffle: bool = True,
num_workers: int = 0,
pin_memory: bool = True,
persistent_workers: bool = False,
prefetch_factor: int | None = 2,
) -> DataLoader:
"""Build a PyTorch DataLoader with the DepthDif training defaults."""
num_workers = int(num_workers)
kwargs: dict[str, Any] = dict(
dataset=dataset,
batch_size=int(batch_size),
shuffle=bool(shuffle),
num_workers=num_workers,
pin_memory=bool(pin_memory),
persistent_workers=bool(persistent_workers) and num_workers > 0,
)
# PyTorch only accepts prefetch_factor when worker processes are enabled.
if num_workers > 0 and prefetch_factor is not None:
kwargs["prefetch_factor"] = int(prefetch_factor)
return DataLoader(**kwargs)
def split_dataset(
dataset: Dataset,
*,
val_fraction: float = 0.2,
seed: int = 7,
) -> tuple[Subset, Subset]:
"""Create a deterministic train/validation split from one dataset."""
total_len = len(dataset)
if total_len == 0:
raise RuntimeError("Dataset is empty; cannot create train/val split.")
val_len = int(round(total_len * float(val_fraction)))
if total_len > 1:
val_len = min(max(val_len, 1 if val_fraction > 0.0 else 0), total_len - 1)
else:
val_len = 0
train_len = total_len - val_len
generator = torch.Generator().manual_seed(int(seed))
train_dataset, val_dataset = random_split(
dataset,
[train_len, val_len],
generator=generator,
)
return train_dataset, val_dataset
def build_train_val_dataloaders(
dataset: Dataset,
*,
val_dataset: Dataset | None = None,
dataloader_cfg: dict[str, Any] | None = None,
val_fraction: float = 0.2,
seed: int = 7,
) -> tuple[DataLoader, DataLoader]:
"""Build train and validation DataLoaders from one or two datasets."""
cfg = dict(dataloader_cfg or {})
if val_dataset is None:
train_dataset, val_dataset = split_dataset(
dataset,
val_fraction=val_fraction,
seed=seed,
)
else:
train_dataset = dataset
train_loader = build_dataloader(
train_dataset,
batch_size=int(cfg.get("batch_size", 16)),
shuffle=bool(cfg.get("shuffle", True)),
num_workers=int(cfg.get("num_workers", 4)),
pin_memory=bool(cfg.get("pin_memory", True)),
persistent_workers=bool(cfg.get("persistent_workers", False)),
prefetch_factor=cfg.get("prefetch_factor", 2),
)
val_loader = build_dataloader(
val_dataset,
batch_size=int(cfg.get("val_batch_size", cfg.get("batch_size", 16))),
# Keep the repository's intended behavior: validation is shuffled by default.
shuffle=bool(cfg.get("val_shuffle", True)),
num_workers=int(cfg.get("val_num_workers", 0)),
pin_memory=bool(cfg.get("pin_memory", True)),
persistent_workers=bool(cfg.get("val_persistent_workers", False)),
prefetch_factor=cfg.get("prefetch_factor", 2),
)
return train_loader, val_loader
class DepthTileDataModule:
"""Small PyTorch-only DataModule-style wrapper for DepthDif tiles."""
def __init__(
self,
*,
dataset: Dataset,
val_dataset: Dataset | None = None,
dataloader_cfg: dict[str, Any] | None = None,
val_fraction: float = 0.2,
seed: int = 7,
) -> None:
"""Store dataset and loader settings without requiring Lightning."""
self.dataset = dataset
self.val_dataset = val_dataset
self.dataloader_cfg = dataloader_cfg or {}
self.val_fraction = float(val_fraction)
self.seed = int(seed)
self.train_dataset: Subset | Dataset | None = (
dataset if val_dataset is not None else None
)
self._train_val_split_done = val_dataset is not None
def setup(self, stage: str | None = None) -> None:
"""Prepare deterministic train/validation datasets."""
_ = stage
if self._train_val_split_done:
return
self.train_dataset, self.val_dataset = split_dataset(
self.dataset,
val_fraction=self.val_fraction,
seed=self.seed,
)
self._train_val_split_done = True
def train_dataloader(self) -> DataLoader:
"""Return the configured training DataLoader."""
if not self._train_val_split_done:
self.setup("fit")
return build_train_val_dataloaders(
self.train_dataset,
val_dataset=self.val_dataset,
dataloader_cfg=self.dataloader_cfg,
val_fraction=self.val_fraction,
seed=self.seed,
)[0]
def val_dataloader(self) -> DataLoader:
"""Return the configured validation DataLoader."""
if not self._train_val_split_done:
self.setup("fit")
return build_train_val_dataloaders(
self.train_dataset,
val_dataset=self.val_dataset,
dataloader_cfg=self.dataloader_cfg,
val_fraction=self.val_fraction,
seed=self.seed,
)[1]