--- comments: true description: Explore the YOLO command line interface (CLI) for easy execution of detection tasks without needing a Python environment. keywords: YOLO CLI, command line interface, YOLO commands, detection tasks, Ultralytics, model training, model prediction --- # Command Line Interface The Ultralytics command line interface (CLI) provides a straightforward way to use Ultralytics YOLO models without needing a Python environment. The CLI supports running various tasks directly from the terminal using the `yolo` command, requiring no customization or Python code.



Watch: Mastering Ultralytics YOLO: CLI

!!! example === "Syntax" Ultralytics `yolo` commands use the following syntax: ```bash yolo TASK MODE ARGS ``` Where: - `TASK` (optional) is one of [detect, segment, classify, pose, obb] - `MODE` (required) is one of [train, val, predict, export, track, benchmark] - `ARGS` (optional) are any number of custom `arg=value` pairs like `imgsz=320` that override defaults. See all ARGS in the full [Configuration Guide](cfg.md) or with `yolo cfg`. === "Train" Train a detection model for 10 [epochs](https://www.ultralytics.com/glossary/epoch) with an initial [learning rate](https://www.ultralytics.com/glossary/learning-rate) of 0.01: ```bash yolo train data=coco8.yaml model=yolo11n.pt epochs=10 lr0=0.01 ``` === "Predict" Predict using a pretrained segmentation model on a YouTube video at image size 320: ```bash yolo predict model=yolo11n-seg.pt source='https://youtu.be/LNwODJXcvt4' imgsz=320 ``` === "Val" Validate a pretrained detection model with a [batch size](https://www.ultralytics.com/glossary/batch-size) of 1 and image size 640: ```bash yolo val model=yolo11n.pt data=coco8.yaml batch=1 imgsz=640 ``` === "Export" Export a YOLO classification model to ONNX format with image size 224x128 (no TASK required): ```bash yolo export model=yolo11n-cls.pt format=onnx imgsz=224,128 ``` === "Special" Run special commands to view version, settings, run checks, and more: ```bash yolo help yolo checks yolo version yolo settings yolo copy-cfg yolo cfg ``` Where: - `TASK` (optional) is one of `[detect, segment, classify, pose, obb]`. If not explicitly passed, YOLO will attempt to infer the `TASK` from the model type. - `MODE` (required) is one of `[train, val, predict, export, track, benchmark]` - `ARGS` (optional) are any number of custom `arg=value` pairs like `imgsz=320` that override defaults. For a full list of available `ARGS`, see the [Configuration](cfg.md) page and `defaults.yaml`. !!! warning Arguments must be passed as `arg=val` pairs, separated by an equals `=` sign and delimited by spaces between pairs. Do not use `--` argument prefixes or commas `,` between arguments. - `yolo predict model=yolo11n.pt imgsz=640 conf=0.25`   ✅ - `yolo predict model yolo11n.pt imgsz 640 conf 0.25`   ❌ - `yolo predict --model yolo11n.pt --imgsz 640 --conf 0.25`   ❌ ## Train Train YOLO on the COCO8 dataset for 100 epochs at image size 640. For a full list of available arguments, see the [Configuration](cfg.md) page. !!! example === "Train" Start training YOLO11n on COCO8 for 100 epochs at image size 640: ```bash yolo detect train data=coco8.yaml model=yolo11n.pt epochs=100 imgsz=640 ``` === "Resume" Resume an interrupted training session: ```bash yolo detect train resume model=last.pt ``` ## Val Validate the [accuracy](https://www.ultralytics.com/glossary/accuracy) of the trained model on the COCO8 dataset. No arguments are needed as the `model` retains its training `data` and arguments as model attributes. !!! example === "Official" Validate an official YOLO11n model: ```bash yolo detect val model=yolo11n.pt ``` === "Custom" Validate a custom-trained model: ```bash yolo detect val model=path/to/best.pt ``` ## Predict Use a trained model to run predictions on images. !!! example === "Official" Predict with an official YOLO11n model: ```bash yolo detect predict model=yolo11n.pt source='https://ultralytics.com/images/bus.jpg' ``` === "Custom" Predict with a custom model: ```bash yolo detect predict model=path/to/best.pt source='https://ultralytics.com/images/bus.jpg' ``` ## Export Export a model to a different format like ONNX or CoreML. !!! example === "Official" Export an official YOLO11n model to ONNX format: ```bash yolo export model=yolo11n.pt format=onnx ``` === "Custom" Export a custom-trained model to ONNX format: ```bash yolo export model=path/to/best.pt format=onnx ``` Available Ultralytics export formats are in the table below. You can export to any format using the `format` argument, i.e., `format='onnx'` or `format='engine'`. {% include "macros/export-table.md" %} See full `export` details on the [Export](../modes/export.md) page. ## Overriding Default Arguments Override default arguments by passing them in the CLI as `arg=value` pairs. !!! tip === "Train" Train a detection model for 10 epochs with a learning rate of 0.01: ```bash yolo detect train data=coco8.yaml model=yolo11n.pt epochs=10 lr0=0.01 ``` === "Predict" Predict using a pretrained segmentation model on a YouTube video at image size 320: ```bash yolo segment predict model=yolo11n-seg.pt source='https://youtu.be/LNwODJXcvt4' imgsz=320 ``` === "Val" Validate a pretrained detection model with a batch size of 1 and image size 640: ```bash yolo detect val model=yolo11n.pt data=coco8.yaml batch=1 imgsz=640 ``` ## Overriding Default Config File Override the `default.yaml` configuration file entirely by passing a new file with the `cfg` argument, such as `cfg=custom.yaml`. To do this, first create a copy of `default.yaml` in your current working directory with the `yolo copy-cfg` command, which creates a `default_copy.yaml` file. You can then pass this file as `cfg=default_copy.yaml` along with any additional arguments, like `imgsz=320` in this example: !!! example === "CLI" ```bash yolo copy-cfg yolo cfg=default_copy.yaml imgsz=320 ``` ## Solutions Commands Ultralytics provides ready-to-use solutions for common computer vision applications through the CLI. These solutions simplify implementation of complex tasks like object counting, workout monitoring, and queue management. !!! example === "Count" Count objects in a video or live stream: ```bash yolo solutions count show=True yolo solutions count source="path/to/video.mp4" # specify video file path ``` === "Workout" Monitor workout exercises using a pose model: ```bash yolo solutions workout show=True yolo solutions workout source="path/to/video.mp4" # specify video file path # Use keypoints for ab-workouts yolo solutions workout kpts=[5, 11, 13] # left side yolo solutions workout kpts=[6, 12, 14] # right side ``` === "Queue" Count objects in a designated queue or region: ```bash yolo solutions queue show=True yolo solutions queue source="path/to/video.mp4" # specify video file path yolo solutions queue region="[(20, 400), (1080, 400), (1080, 360), (20, 360)]" # configure queue coordinates ``` === "Inference" Perform object detection, instance segmentation, or pose estimation in a web browser using Streamlit: ```bash yolo solutions inference yolo solutions inference model="path/to/model.pt" # use custom model ``` === "Help" View available solutions and their options: ```bash yolo solutions help ``` For more information on Ultralytics solutions, visit the [Solutions](../solutions/index.md) page. ## FAQ ### How do I use the Ultralytics YOLO command line interface (CLI) for model training? To train a model using the CLI, execute a single-line command in the terminal. For example, to train a detection model for 10 epochs with a [learning rate](https://www.ultralytics.com/glossary/learning-rate) of 0.01, run: ```bash yolo train data=coco8.yaml model=yolo11n.pt epochs=10 lr0=0.01 ``` This command uses the `train` mode with specific arguments. For a full list of available arguments, refer to the [Configuration Guide](cfg.md). ### What tasks can I perform with the Ultralytics YOLO CLI? The Ultralytics YOLO CLI supports various tasks, including [detection](../tasks/detect.md), [segmentation](../tasks/segment.md), [classification](../tasks/classify.md), [pose estimation](../tasks/pose.md), and [oriented bounding box detection](../tasks/obb.md). You can also perform operations like: - **Train a Model**: Run `yolo train data= model= epochs=`. - **Run Predictions**: Use `yolo predict model= source= imgsz=`. - **Export a Model**: Execute `yolo export model= format=`. - **Use Solutions**: Run `yolo solutions ` for ready-made applications. Customize each task with various arguments. For detailed syntax and examples, see the respective sections like [Train](#train), [Predict](#predict), and [Export](#export). ### How can I validate the accuracy of a trained YOLO model using the CLI? To validate a model's [accuracy](https://www.ultralytics.com/glossary/accuracy), use the `val` mode. For example, to validate a pretrained detection model with a [batch size](https://www.ultralytics.com/glossary/batch-size) of 1 and an image size of 640, run: ```bash yolo val model=yolo11n.pt data=coco8.yaml batch=1 imgsz=640 ``` This command evaluates the model on the specified dataset and provides performance metrics like [mAP](https://www.ultralytics.com/glossary/mean-average-precision-map), [precision](https://www.ultralytics.com/glossary/precision), and [recall](https://www.ultralytics.com/glossary/recall). For more details, refer to the [Val](#val) section. ### What formats can I export my YOLO models to using the CLI? You can export YOLO models to various formats including ONNX, TensorRT, CoreML, TensorFlow, and more. For instance, to export a model to ONNX format, run: ```bash yolo export model=yolo11n.pt format=onnx ``` The export command supports numerous options to optimize your model for specific deployment environments. For complete details on all available export formats and their specific parameters, visit the [Export](../modes/export.md) page. ### How do I use the pre-built solutions in the Ultralytics CLI? Ultralytics provides ready-to-use solutions through the `solutions` command. For example, to count objects in a video: ```bash yolo solutions count source="path/to/video.mp4" ``` These solutions require minimal configuration and provide immediate functionality for common computer vision tasks. To see all available solutions, run `yolo solutions help`. Each solution has specific parameters that can be customized to fit your needs.