--- 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: yolo26m-mlx results: - task: type: object-detection name: Object Detection dataset: name: COCO val2017 type: coco metrics: - type: mAP value: 0.523 name: mAP@0.5:0.95 --- # YOLO26m (MLX) Pure-MLX weights for **YOLO26m**, 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 a mid-size variant in the YOLO26 MLX family: higher accuracy than n/s while still fast enough for many real-time use cases. ## 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/yolo26m-mlx", "yolo26m.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 | |---------|--------------|--------------|------------------------------| | yolo26m | 52.3% | 55 | Higher accuracy, still fast | Other variants in this family: [`yolo26n-mlx`](https://huggingface.co/webAI-Official/yolo26n-mlx) · [`yolo26s-mlx`](https://huggingface.co/webAI-Official/yolo26s-mlx) · [`yolo26l-mlx`](https://huggingface.co/webAI-Official/yolo26l-mlx) · [`yolo26x-mlx`](https://huggingface.co/webAI-Official/yolo26x-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 | |---------------|-----------------------------------------------------| | `yolo26m.npz` | MLX-format weights, converted from the YOLO26m `.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)