# Ultralytics YOLO 🚀, AGPL-3.0 license """ Base callbacks """ from collections import defaultdict from copy import deepcopy # Trainer callbacks ---------------------------------------------------------------------------------------------------- def on_pretrain_routine_start(trainer): """Called before the pretraining routine starts.""" pass def on_pretrain_routine_end(trainer): """Called after the pretraining routine ends.""" pass def on_train_start(trainer): """Called when the training starts.""" pass def on_train_epoch_start(trainer): """Called at the start of each training epoch.""" pass def on_train_batch_start(trainer): """Called at the start of each training batch.""" pass def optimizer_step(trainer): """Called when the optimizer takes a step.""" pass def on_before_zero_grad(trainer): """Called before the gradients are set to zero.""" pass def on_train_batch_end(trainer): """Called at the end of each training batch.""" pass def on_train_epoch_end(trainer): """Called at the end of each training epoch.""" pass def on_fit_epoch_end(trainer): """Called at the end of each fit epoch (train + val).""" pass def on_model_save(trainer): """Called when the model is saved.""" pass def on_train_end(trainer): """Called when the training ends.""" pass def on_params_update(trainer): """Called when the model parameters are updated.""" pass def teardown(trainer): """Called during the teardown of the training process.""" pass # Validator callbacks -------------------------------------------------------------------------------------------------- def on_val_start(validator): """Called when the validation starts.""" pass def on_val_batch_start(validator): """Called at the start of each validation batch.""" pass def on_val_batch_end(validator): """Called at the end of each validation batch.""" pass def on_val_end(validator): """Called when the validation ends.""" pass # Predictor callbacks -------------------------------------------------------------------------------------------------- def on_predict_start(predictor): """Called when the prediction starts.""" pass def on_predict_batch_start(predictor): """Called at the start of each prediction batch.""" pass def on_predict_batch_end(predictor): """Called at the end of each prediction batch.""" pass def on_predict_postprocess_end(predictor): """Called after the post-processing of the prediction ends.""" pass def on_predict_end(predictor): """Called when the prediction ends.""" pass # Exporter callbacks --------------------------------------------------------------------------------------------------- def on_export_start(exporter): """Called when the model export starts.""" pass def on_export_end(exporter): """Called when the model export ends.""" pass default_callbacks = { # Run in trainer 'on_pretrain_routine_start': [on_pretrain_routine_start], 'on_pretrain_routine_end': [on_pretrain_routine_end], 'on_train_start': [on_train_start], 'on_train_epoch_start': [on_train_epoch_start], 'on_train_batch_start': [on_train_batch_start], 'optimizer_step': [optimizer_step], 'on_before_zero_grad': [on_before_zero_grad], 'on_train_batch_end': [on_train_batch_end], 'on_train_epoch_end': [on_train_epoch_end], 'on_fit_epoch_end': [on_fit_epoch_end], # fit = train + val 'on_model_save': [on_model_save], 'on_train_end': [on_train_end], 'on_params_update': [on_params_update], 'teardown': [teardown], # Run in validator 'on_val_start': [on_val_start], 'on_val_batch_start': [on_val_batch_start], 'on_val_batch_end': [on_val_batch_end], 'on_val_end': [on_val_end], # Run in predictor 'on_predict_start': [on_predict_start], 'on_predict_batch_start': [on_predict_batch_start], 'on_predict_postprocess_end': [on_predict_postprocess_end], 'on_predict_batch_end': [on_predict_batch_end], 'on_predict_end': [on_predict_end], # Run in exporter 'on_export_start': [on_export_start], 'on_export_end': [on_export_end]} def get_default_callbacks(): """ Return a copy of the default_callbacks dictionary with lists as default values. Returns: (defaultdict): A defaultdict with keys from default_callbacks and empty lists as default values. """ return defaultdict(list, deepcopy(default_callbacks)) def add_integration_callbacks(instance): """ Add integration callbacks from various sources to the instance's callbacks. Args: instance (Trainer, Predictor, Validator, Exporter): An object with a 'callbacks' attribute that is a dictionary of callback lists. """ from .clearml import callbacks as clearml_cb from .comet import callbacks as comet_cb from .dvc import callbacks as dvc_cb from .hub import callbacks as hub_cb from .mlflow import callbacks as mlflow_cb from .neptune import callbacks as neptune_cb from .raytune import callbacks as tune_cb from .tensorboard import callbacks as tensorboard_cb from .wb import callbacks as wb_cb for x in clearml_cb, comet_cb, hub_cb, mlflow_cb, neptune_cb, tune_cb, tensorboard_cb, wb_cb, dvc_cb: for k, v in x.items(): if v not in instance.callbacks[k]: # prevent duplicate callbacks addition instance.callbacks[k].append(v) # callback[name].append(func)