## Install Install YOLOv8 via the `ultralytics` pip package for the latest stable release or by cloning the [https://github.com/ultralytics/ultralytics](https://github.com/ultralytics/ultralytics) repository for the most up-to-date version. !!! example "Pip install method (recommended)" ```bash pip install ultralytics ``` !!! example "Git clone method (for development)" ```bash git clone https://github.com/ultralytics/ultralytics cd ultralytics pip install -e '.[dev]' ``` See contributing section to know more about contributing to the project ## Use with CLI The YOLO command line interface (CLI) lets you simply train, validate or infer models on various tasks and versions. CLI requires no customization or code. You can simply run all tasks from the terminal with the `yolo` command. !!! example === "Syntax" ```bash yolo task=detect mode=train model=yolov8n.yaml args... classify predict yolov8n-cls.yaml args... segment val yolov8n-seg.yaml args... export yolov8n.pt format=onnx args... ``` === "Example training" ```bash yolo task=detect mode=train model=yolov8n.pt data=coco128.yaml device=0 ``` === "Example Multi-GPU training" ```bash yolo task=detect mode=train model=yolov8n.pt data=coco128.yaml device=\'0,1,2,3\' ``` [CLI Guide](cli.md){ .md-button .md-button--primary} ## Use with Python Python usage allows users to easily use YOLOv8 inside their Python projects. It provides functions for loading and running the model, as well as for processing the model's output. The interface is designed to be easy to use, so that users can quickly implement object detection in their projects. Overall, the Python interface is a useful tool for anyone looking to incorporate object detection, segmentation or classification into their Python projects using YOLOv8. !!! example ```python from ultralytics import YOLO # Load a model model = YOLO("yolov8n.yaml") # build a new model from scratch model = YOLO("yolov8n.pt") # load a pretrained model (recommended for training) # Use the model results = model.train(data="coco128.yaml", epochs=3) # train the model results = model.val() # evaluate model performance on the validation set results = model("https://ultralytics.com/images/bus.jpg") # predict on an image success = model.export(format="onnx") # export the model to ONNX format ``` [Python Guide](python.md){.md-button .md-button--primary}