--- description: Learn how to work with Ultralytics YOLO Detection, Segmentation & Classification Models, load weights and parse models in PyTorch. keywords: neural network, deep learning, computer vision, object detection, image segmentation, image classification, model ensemble, PyTorch --- ## BaseModel --- ### ::: ultralytics.nn.tasks.BaseModel

## DetectionModel --- ### ::: ultralytics.nn.tasks.DetectionModel

## SegmentationModel --- ### ::: ultralytics.nn.tasks.SegmentationModel

## PoseModel --- ### ::: ultralytics.nn.tasks.PoseModel

## ClassificationModel --- ### ::: ultralytics.nn.tasks.ClassificationModel

## RTDETRDetectionModel --- ### ::: ultralytics.nn.tasks.RTDETRDetectionModel

## Ensemble --- ### ::: ultralytics.nn.tasks.Ensemble

## torch_safe_load --- ### ::: ultralytics.nn.tasks.torch_safe_load

## attempt_load_weights --- ### ::: ultralytics.nn.tasks.attempt_load_weights

## attempt_load_one_weight --- ### ::: ultralytics.nn.tasks.attempt_load_one_weight

## parse_model --- ### ::: ultralytics.nn.tasks.parse_model

## yaml_model_load --- ### ::: ultralytics.nn.tasks.yaml_model_load

## guess_model_scale --- ### ::: ultralytics.nn.tasks.guess_model_scale

## guess_model_task --- ### ::: ultralytics.nn.tasks.guess_model_task