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from ultralytics.utils import LOGGER, SETTINGS, TESTS_RUNNING, checks |
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try: |
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assert not TESTS_RUNNING |
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assert SETTINGS["dvc"] is True |
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import dvclive |
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assert checks.check_version("dvclive", "2.11.0", verbose=True) |
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import os |
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import re |
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from pathlib import Path |
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live = None |
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_processed_plots = {} |
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_training_epoch = False |
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except (ImportError, AssertionError, TypeError): |
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dvclive = None |
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def _log_images(path, prefix=""): |
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"""Logs images at specified path with an optional prefix using DVCLive.""" |
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if live: |
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name = path.name |
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if m := re.search(r"_batch(\d+)", name): |
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ni = m[1] |
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new_stem = re.sub(r"_batch(\d+)", "_batch", path.stem) |
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name = (Path(new_stem) / ni).with_suffix(path.suffix) |
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live.log_image(os.path.join(prefix, name), path) |
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def _log_plots(plots, prefix=""): |
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"""Logs plot images for training progress if they have not been previously processed.""" |
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for name, params in plots.items(): |
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timestamp = params["timestamp"] |
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if _processed_plots.get(name) != timestamp: |
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_log_images(name, prefix) |
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_processed_plots[name] = timestamp |
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def _log_confusion_matrix(validator): |
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"""Logs the confusion matrix for the given validator using DVCLive.""" |
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targets = [] |
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preds = [] |
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matrix = validator.confusion_matrix.matrix |
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names = list(validator.names.values()) |
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if validator.confusion_matrix.task == "detect": |
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names += ["background"] |
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for ti, pred in enumerate(matrix.T.astype(int)): |
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for pi, num in enumerate(pred): |
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targets.extend([names[ti]] * num) |
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preds.extend([names[pi]] * num) |
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live.log_sklearn_plot("confusion_matrix", targets, preds, name="cf.json", normalized=True) |
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def on_pretrain_routine_start(trainer): |
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"""Initializes DVCLive logger for training metadata during pre-training routine.""" |
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try: |
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global live |
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live = dvclive.Live(save_dvc_exp=True, cache_images=True) |
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LOGGER.info("DVCLive is detected and auto logging is enabled (run 'yolo settings dvc=False' to disable).") |
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except Exception as e: |
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LOGGER.warning(f"WARNING β οΈ DVCLive installed but not initialized correctly, not logging this run. {e}") |
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def on_pretrain_routine_end(trainer): |
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"""Logs plots related to the training process at the end of the pretraining routine.""" |
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_log_plots(trainer.plots, "train") |
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def on_train_start(trainer): |
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"""Logs the training parameters if DVCLive logging is active.""" |
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if live: |
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live.log_params(trainer.args) |
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def on_train_epoch_start(trainer): |
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"""Sets the global variable _training_epoch value to True at the start of training each epoch.""" |
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global _training_epoch |
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_training_epoch = True |
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def on_fit_epoch_end(trainer): |
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"""Logs training metrics and model info, and advances to next step on the end of each fit epoch.""" |
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global _training_epoch |
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if live and _training_epoch: |
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all_metrics = {**trainer.label_loss_items(trainer.tloss, prefix="train"), **trainer.metrics, **trainer.lr} |
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for metric, value in all_metrics.items(): |
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live.log_metric(metric, value) |
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if trainer.epoch == 0: |
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from ultralytics.utils.torch_utils import model_info_for_loggers |
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for metric, value in model_info_for_loggers(trainer).items(): |
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live.log_metric(metric, value, plot=False) |
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_log_plots(trainer.plots, "train") |
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_log_plots(trainer.validator.plots, "val") |
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live.next_step() |
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_training_epoch = False |
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def on_train_end(trainer): |
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"""Logs the best metrics, plots, and confusion matrix at the end of training if DVCLive is active.""" |
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if live: |
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all_metrics = {**trainer.label_loss_items(trainer.tloss, prefix="train"), **trainer.metrics, **trainer.lr} |
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for metric, value in all_metrics.items(): |
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live.log_metric(metric, value, plot=False) |
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_log_plots(trainer.plots, "val") |
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_log_plots(trainer.validator.plots, "val") |
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_log_confusion_matrix(trainer.validator) |
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if trainer.best.exists(): |
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live.log_artifact(trainer.best, copy=True, type="model") |
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live.end() |
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callbacks = ( |
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{ |
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"on_pretrain_routine_start": on_pretrain_routine_start, |
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"on_pretrain_routine_end": on_pretrain_routine_end, |
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"on_train_start": on_train_start, |
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"on_train_epoch_start": on_train_epoch_start, |
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"on_fit_epoch_end": on_fit_epoch_end, |
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"on_train_end": on_train_end, |
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} |
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if dvclive |
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else {} |
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) |
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