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Merge branch 'sd3' into val-loss-improvement
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@@ -148,10 +148,11 @@ TEXT_ENCODER_OUTPUTS_CACHE_SUFFIX_SD3 = "_sd3_te.npz"
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def split_train_val(
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paths: List[str],
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sizes: List[Optional[Tuple[int, int]]],
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is_training_dataset: bool,
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validation_split: float,
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validation_seed: int | None
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) -> List[str]:
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) -> Tuple[List[str], List[Optional[Tuple[int, int]]]]:
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"""
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Split the dataset into train and validation
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@@ -160,22 +161,28 @@ def split_train_val(
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[0:80] = 80 training images
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[80:] = 20 validation images
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"""
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dataset = list(zip(paths, sizes))
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if validation_seed is not None:
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logging.info(f"Using validation seed: {validation_seed}")
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prevstate = random.getstate()
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random.seed(validation_seed)
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random.shuffle(paths)
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random.shuffle(dataset)
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random.setstate(prevstate)
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else:
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random.shuffle(paths)
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random.shuffle(dataset)
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paths, sizes = zip(*dataset)
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paths = list(paths)
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sizes = list(sizes)
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# Split the dataset between training and validation
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if is_training_dataset:
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# Training dataset we split to the first part
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return paths[0:math.ceil(len(paths) * (1 - validation_split))]
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split = math.ceil(len(paths) * (1 - validation_split))
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return paths[0:split], sizes[0:split]
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else:
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# Validation dataset we split to the second part
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return paths[len(paths) - round(len(paths) * validation_split):]
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split = len(paths) - round(len(paths) * validation_split)
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return paths[split:], sizes[split:]
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class ImageInfo:
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@@ -1931,12 +1938,12 @@ class DreamBoothDataset(BaseDataset):
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with open(info_cache_file, "r", encoding="utf-8") as f:
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metas = json.load(f)
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img_paths = list(metas.keys())
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sizes = [meta["resolution"] for meta in metas.values()]
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sizes: List[Optional[Tuple[int, int]]] = [meta["resolution"] for meta in metas.values()]
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# we may need to check image size and existence of image files, but it takes time, so user should check it before training
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else:
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img_paths = glob_images(subset.image_dir, "*")
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sizes = [None] * len(img_paths)
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sizes: List[Optional[Tuple[int, int]]] = [None] * len(img_paths)
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# new caching: get image size from cache files
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strategy = LatentsCachingStrategy.get_strategy()
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@@ -1969,7 +1976,7 @@ class DreamBoothDataset(BaseDataset):
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w, h = None, None
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if w is not None and h is not None:
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sizes[i] = [w, h]
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sizes[i] = (w, h)
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size_set_count += 1
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logger.info(f"set image size from cache files: {size_set_count}/{len(img_paths)}")
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@@ -1987,11 +1994,13 @@ class DreamBoothDataset(BaseDataset):
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# Skip any validation dataset for regularization images
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if self.is_training_dataset is False:
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img_paths = []
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sizes = []
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# Otherwise the img_paths remain as original img_paths and no split
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# required for training images dataset of regularization images
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else:
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img_paths = split_train_val(
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img_paths, sizes = split_train_val(
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img_paths,
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sizes,
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self.is_training_dataset,
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self.validation_split,
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self.validation_seed
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17
tests/test_validation.py
Normal file
17
tests/test_validation.py
Normal file
@@ -0,0 +1,17 @@
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from library.train_util import split_train_val
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def test_split_train_val():
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paths = ["path1", "path2", "path3", "path4", "path5", "path6", "path7"]
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sizes = [(1, 1), (2, 2), None, (4, 4), (5, 5), (6, 6), None]
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result_paths, result_sizes = split_train_val(paths, sizes, True, 0.2, 1234)
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assert result_paths == ["path2", "path3", "path6", "path5", "path1", "path4"], result_paths
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assert result_sizes == [(2, 2), None, (6, 6), (5, 5), (1, 1), (4, 4)], result_sizes
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result_paths, result_sizes = split_train_val(paths, sizes, False, 0.2, 1234)
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assert result_paths == ["path7"], result_paths
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assert result_sizes == [None], result_sizes
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if __name__ == "__main__":
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test_split_train_val()
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@@ -1557,7 +1557,7 @@ class NetworkTrainer:
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if is_tracking:
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avr_loss: float = val_epoch_loss_recorder.moving_average
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loss_validation_divergence = val_epoch_loss_recorder.moving_average - avr_loss
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loss_validation_divergence = val_epoch_loss_recorder.moving_average - loss_recorder.moving_average
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logs = {
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"loss/validation/epoch_average": avr_loss,
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"loss/validation/epoch_divergence": loss_validation_divergence,
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