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2 Commits
| Author | SHA1 | Date | |
|---|---|---|---|
| 0efa3dc874 | |||
| 949f4fcbe9 |
@@ -180,24 +180,32 @@ class WandBLogger:
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self._wandb_custom_step_key.add(new_custom_key)
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self._wandb.define_metric(new_custom_key, hidden=True)
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batch_data = {}
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for k, v in d.items():
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# Skip the custom step key here, it's added to the batch below.
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if custom_step_key is not None and k == custom_step_key:
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continue
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if isinstance(v, list):
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for i, elem in enumerate(v):
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if isinstance(elem, (int | float)):
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batch_data[f"{mode}/{k}_{i}"] = elem
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continue
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if not isinstance(v, (int | float | str)):
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logging.warning(
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f'WandB logging of key "{k}" was ignored as its type "{type(v)}" is not handled by this wrapper.'
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)
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continue
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# Do not log the custom step key itself.
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if self._wandb_custom_step_key is not None and k in self._wandb_custom_step_key:
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continue
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batch_data[f"{mode}/{k}"] = v
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if batch_data:
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if custom_step_key is not None:
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value_custom_step = d[custom_step_key]
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data = {f"{mode}/{k}": v, f"{mode}/{custom_step_key}": value_custom_step}
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self._wandb.log(data)
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continue
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self._wandb.log(data={f"{mode}/{k}": v}, step=step)
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batch_data[f"{mode}/{custom_step_key}"] = d[custom_step_key]
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self._wandb.log(batch_data)
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else:
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self._wandb.log(data=batch_data, step=step)
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def log_video(self, video_path: str, step: int, mode: str = "train"):
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if mode not in {"train", "eval"}:
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@@ -153,7 +153,7 @@ def cast_stats_to_numpy(stats: dict) -> dict[str, dict[str, np.ndarray]]:
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Returns:
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dict: The statistics dictionary with values cast to numpy arrays.
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"""
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stats = {key: np.array(value) for key, value in flatten_dict(stats).items()}
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stats = {key: np.atleast_1d(np.array(value)) for key, value in flatten_dict(stats).items()}
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return unflatten_dict(stats)
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