--- license: agpl-3.0 library_name: mlx tags: - object-detection - yolo - yolo26 - mlx - apple-silicon - on-device - edge pipeline_tag: object-detection datasets: - coco model-index: - name: yolo26x-mlx results: - task: type: object-detection name: Object Detection dataset: name: COCO val2017 type: coco metrics: - type: mAP value: 0.567 name: mAP@0.5:0.95 --- # YOLO26x (MLX) Pure-MLX weights for **YOLO26x**, ready to run on Apple Silicon with [`yolo-mlx`](https://github.com/thewebAI/yolo-mlx). No PyTorch at runtime, no cloud calls, no waiting on someone else's API — everything stays on your Mac. This is the largest, most accurate variant in the YOLO26 MLX family. Use it when accuracy is paramount and you can budget the extra compute per frame. ## Quickstart ```bash pip install yolo-mlx huggingface_hub ``` ```python from huggingface_hub import hf_hub_download from yolo26mlx import YOLO weights = hf_hub_download("webAI-Official/yolo26x-mlx", "yolo26x.npz") model = YOLO(weights) results = model.predict("https://ultralytics.com/images/bus.jpg", conf=0.25) results[0].save() ``` ## Specs | Variant | mAP@0.5:0.95 | FPS (M4 Pro) | Best for | |---------|--------------|--------------|------------------------------| | yolo26x | 56.7% | 24 | Max accuracy, slower | Other variants in this family: [`yolo26n-mlx`](https://huggingface.co/webAI-Official/yolo26n-mlx) · [`yolo26s-mlx`](https://huggingface.co/webAI-Official/yolo26s-mlx) · [`yolo26m-mlx`](https://huggingface.co/webAI-Official/yolo26m-mlx) · [`yolo26l-mlx`](https://huggingface.co/webAI-Official/yolo26l-mlx) ## Requirements - Apple Silicon Mac (M1, M2, M3, or M4) - macOS 14.0+ - Python 3.10+ Intel Macs are not supported — the whole point of MLX is Apple Silicon native acceleration. ## What's in this repo | File | Description | |---------------|-----------------------------------------------------| | `yolo26x.npz` | MLX-format weights, converted from the YOLO26x `.pt` checkpoint and verified shape-by-shape against the source. | | `README.md` | This card. | ## Training data Pretrained on [COCO](https://cocodataset.org/) (80 classes). For domain-specific use cases, fine-tune on your own data — see the [training guide](https://github.com/thewebAI/yolo-mlx/blob/main/GUIDE_TRAINING_BENCHMARK.md) in the upstream repo. ## License AGPL-3.0, inherited from upstream [`thewebAI/yolo-mlx`](https://github.com/thewebAI/yolo-mlx). Free to use, fork, modify, and ship for personal projects, research, and prototypes. If you deploy this as a hosted service for real users, AGPL requires you to publish your source under the same license. ## About webAI [webAI](https://www.webai.com/) builds the sovereign AI platform — AI that runs on your infrastructure, stays under your control, and compounds with your knowledge. Every release here reflects a simple belief: **open models, owned locally, coordinated intelligently, compound into something no centralized system can match.** 🌐 [webai.com](https://www.webai.com/) · 💬 [community.webai.com](https://community.webai.com)