Improve Home "Where to Start" Layout in Docs (#16846)
Co-authored-by: UltralyticsAssistant <web@ultralytics.com> Co-authored-by: Francesco Mattioli <Francesco.mttl@gmail.com> Co-authored-by: Ultralytics Assistant <135830346+UltralyticsAssistant@users.noreply.github.com> Co-authored-by: Glenn Jocher <glenn.jocher@ultralytics.com>
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@ -54,11 +54,69 @@ Explore the Ultralytics Docs, a comprehensive resource designed to help you unde
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## Where to Start
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- **Install** `ultralytics` with pip and get up and running in minutes [:material-clock-fast: Get Started](quickstart.md){ .md-button }
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- **Predict** new images and videos with YOLO [:octicons-image-16: Predict on Images](modes/predict.md){ .md-button }
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- **Train** a new YOLO model on your own custom dataset [:fontawesome-solid-brain: Train a Model](modes/train.md){ .md-button }
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- **Tasks** YOLO tasks like segment, classify, pose and track [:material-magnify-expand: Explore Tasks](tasks/index.md){ .md-button }
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- **[YOLO11](models/yolo11.md) 🚀 NEW**: Ultralytics' latest SOTA models [:material-magnify-expand: Explore new YOLO11 models](models/yolo11.md){ .md-button }
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<div class="grid cards" markdown>
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- :material-clock-fast:{ .lg .middle } **Getting Started**
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***
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Install `ultralytics` with pip and get up and running in minutes to train a YOLO model
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***
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[:octicons-arrow-right-24: Quickstart](quickstart.md)
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- :material-image:{ .lg .middle } **Predict**
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***
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Predict on new images, videos and streams with YOLO <br />
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***
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[:octicons-arrow-right-24: Learn more](modes/predict.md)
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- :fontawesome-solid-brain:{ .lg .middle } **Train a Model**
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***
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Train a new YOLO model on your own custom dataset from scratch or load and train on a pretrained model
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***
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[:octicons-arrow-right-24: Learn more](modes/train.md)
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- :material-magnify-expand:{ .lg .middle } **Explore Tasks**
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***
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Discover YOLO tasks like detect, segment, classify, pose, OBB and track <br />
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***
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[:octicons-arrow-right-24: Explore Tasks](tasks/index.md)
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- :rocket:{ .lg .middle } **Explore YOLO11 NEW**
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***
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Discover Ultralytics' latest state-of-the-art YOLO11 models and their capabilities <br />
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***
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[:octicons-arrow-right-24: YOLO11 Models 🚀 NEW](models/yolo11.md)
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- :material-scale-balance:{ .lg .middle } **Open Source, AGPL-3.0**
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***
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Ultralytics offers two licensing options for YOLO: AGPL-3.0 License and Enterprise License. Ultralytics is available on [GitHub](https://github.com/ultralytics/ultralytics)
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***
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[:octicons-arrow-right-24: License](https://www.ultralytics.com/license)
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</div>
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<p align="center">
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<br>
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@ -105,7 +163,7 @@ Ultralytics YOLO is the latest advancement in the acclaimed YOLO (You Only Look
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Getting started with YOLO is quick and straightforward. You can install the Ultralytics package using [pip](https://pypi.org/project/ultralytics/) and get up and running in minutes. Here's a basic installation command:
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!!! example
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!!! example "Installation using pip"
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=== "CLI"
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@ -121,11 +179,11 @@ Training a custom YOLO model on your dataset involves a few detailed steps:
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1. Prepare your annotated dataset.
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2. Configure the training parameters in a YAML file.
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3. Use the `yolo train` command to start training.
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3. Use the `yolo TASK train` command to start training. (Each `TASK` has its own argument)
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Here's example code:
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Here's example code for the Object Detection Task:
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!!! example
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!!! example "Train Example for Object Detection Task"
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=== "Python"
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@ -143,7 +201,7 @@ Here's example code:
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```bash
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# Train a YOLO model from the command line
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yolo train data=path/to/dataset.yaml epochs=100 imgsz=640
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yolo detect train data=path/to/dataset.yaml epochs=100 imgsz=640
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```
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For a detailed walkthrough, check out our [Train a Model](modes/train.md) guide, which includes examples and tips for optimizing your training process.
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@ -161,7 +219,7 @@ For more details, visit our [Licensing](https://www.ultralytics.com/license) pag
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Ultralytics YOLO supports efficient and customizable multi-object tracking. To utilize tracking capabilities, you can use the `yolo track` command as shown below:
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!!! example
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!!! example "Example for Object Tracking on a Video"
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=== "Python"
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