Both the Ultralytics YOLO command-line and python interfaces are simply a high-level abstraction on the base engine executors. Let's take a look at the Trainer engine. ## BaseTrainer BaseTrainer contains the generic boilerplate training routine. It can be customized for any task based over overriding the required functions or operations as long the as correct formats are followed. For example, you can support your own custom model and dataloader by just overriding these functions: * `get_model(cfg, weights)` - The function that builds the model to be trained * `get_dataloder()` - The function that builds the dataloader More details and source code can be found in [`BaseTrainer` Reference](reference/base_trainer.md) ## DetectionTrainer Here's how you can use the YOLOv8 `DetectionTrainer` and customize it. ```python from ultralytics.yolo.v8.detect import DetectionTrainer trainer = DetectionTrainer(overrides={...}) trainer.train() trained_model = trainer.best # get best model ``` ### Customizing the DetectionTrainer Let's customize the trainer **to train a custom detection model** that is not supported directly. You can do this by simply overloading the existing the `get_model` functionality: ```python from ultralytics.yolo.v8.detect import DetectionTrainer class CustomTrainer(DetectionTrainer): def get_model(self, cfg, weights): ... trainer = CustomTrainer(overrides={...}) trainer.train() ``` You now realize that you need to customize the trainer further to: * Customize the `loss function`. * Add `callback` that uploads model to your Google Drive after every 10 `epochs` Here's how you can do it: ```python from ultralytics.yolo.v8.detect import DetectionTrainer class CustomTrainer(DetectionTrainer): def get_model(self, cfg, weights): ... def criterion(self, preds, batch): # get ground truth imgs = batch["imgs"] bboxes = batch["bboxes"] ... return loss, loss_items # see Reference-> Trainer for details on the expected format # callback to upload model weights def log_model(trainer): last_weight_path = trainer.last ... trainer = CustomTrainer(overrides={...}) trainer.add_callback("on_train_epoch_end", log_model) # Adds to existing callback trainer.train() ``` To know more about Callback triggering events and entry point, checkout our Callbacks guide # TODO ## Other engine components There are other components that can be customized similarly like `Validators` and `Predictors` See Reference section for more information on these.