1.5 KiB
Callbacks
Ultralytics framework supports callbacks as entry points in strategic stages of train, val, export, and predict modes. Each callback accepts a Trainer
, Validator
, or Predictor
object depending on the operation type. All properties of these objects can be found in Reference section of the docs.
Examples
Returning additional information with Prediction
In this example, we want to return the original frame with each result object. Here's how we can do that
def on_predict_batch_end(predictor):
# results -> List[batch_size]
_, _, im0s, _, _ = predictor.batch
im0s = im0s if isinstance(im0s, list) else [im0s]
predictor.results = zip(predictor.results, im0s)
model = YOLO(f"yolov8n.pt")
model.add_callback("on_predict_batch_end", on_predict_batch_end)
for (result, frame) in model.track/predict():
pass
All callbacks
Here are all supported callbacks.
Trainer
on_pretrain_routine_start
on_pretrain_routine_end
on_train_start
on_train_epoch_start
on_train_batch_start
optimizer_step
on_before_zero_grad
on_train_batch_end
on_train_epoch_end
on_fit_epoch_end
on_model_save
on_train_end
on_params_update
teardown
Validator
on_val_start
on_val_batch_start
on_val_batch_end
on_val_end
Predictor
on_predict_start
on_predict_batch_start
on_predict_postprocess_end
on_predict_batch_end
on_predict_end
Exporter
on_export_start
on_export_end