--- license: apache-2.0 pipeline_tag: object-detection library_name: coreai tags: - core-ai - coreml - object-detection - yolox - apple base_model: Megvii-BaseDetection/YOLOX --- > **Mirror** of [`mlboydaisuke/YOLOX-CoreAI`](https://huggingface.co/mlboydaisuke/YOLOX-CoreAI) — the canonical repo ([CoreAI Model Zoo](https://github.com/john-rocky/coreai-model-zoo)). Updates land there first. # YOLOX-S — Core AI [YOLOX](https://github.com/Megvii-BaseDetection/YOLOX) (Megvii, Apache-2.0) converted to Apple **Core AI** (`.aimodel`) — a single-stage **anchor-free** object detector running as one static graph on every Apple compute unit (Mac GPU / iPhone GPU / Neural Engine). Part of the [Core AI model zoo](https://github.com/john-rocky/coreai-model-zoo) ([model card](https://github.com/john-rocky/coreai-model-zoo/blob/main/zoo/yolox.md)). The **dense-detector** counterpart to [RF-DETR-CoreAI](https://huggingface.co/mlboydaisuke/RF-DETR-CoreAI): where the DETR family needs no NMS, YOLOX is the classic `score = obj · cls` + **per-class NMS** pipeline. ## Use it ▶️ **Run it (source)** — the [DetectCamera runner](https://github.com/john-rocky/coreai-kit/tree/main/Examples/DetectCamera) (real-time object detection on the zero-copy camera path): ```bash git clone https://github.com/john-rocky/coreai-kit open coreai-kit/Examples/DetectCamera/DetectCamera.xcodeproj # → Run, then pick "YOLOX" in the model picker # agents / headless (macOS): cd coreai-kit/Examples/DetectCamera swift run detect-cli --model yolox-s --image Resources/gate_image.jpg ``` 💻 **Build with it** — complete; the glue is kit API, copy-paste runs: ```swift import CoreAIKitVision let detector = try await KitDetector(catalog: "yolox-s") let image = try ImageFile.load(imageURL) // any image file → CGImage + EXIF orientation let detections = try await detector.detect(in: image.cgImage) // detections: [Detection] — label, score, normalized box (top-left origin) ``` The take-home is [`Examples/DetectCamera/Sources/QuickStart.swift`](https://github.com/john-rocky/coreai-kit/blob/main/Examples/DetectCamera/Sources/QuickStart.swift) — this exact code as one typed function, no UI; the CLI is an argument shell over it, and the GUI runs the same detector per camera frame on a zero-copy pixel-buffer fast path. YOLOX is a dense detector — `KitDetector` runs the obj·cls threshold + per-class NMS host-side; the DETR family needs none. Same `detect(in:)` either way. **Integration checklist** - SPM: `https://github.com/john-rocky/coreai-kit` → product **CoreAIKitVision** - Info.plist: `NSCameraUsageDescription` — only for the live camera; the snippet needs none - Entitlements: none needed - First run downloads the model — 0.0 GB (Mac) / 0.0 GB (iPhone) — then it loads from the local cache (Application Support; progress via the `downloadProgress` callback) - Measure in Release — Debug is ~3× slower on per-token host work ## Bundle - `yolox-s_float32.aimodel` — YOLOX-S, 640² input, 8.97M params, **fp32** (the ship dtype; detection has no bandwidth-bound decode loop, so fp16 is no faster on the GPU and only adds near-tie noise). 36 MB. Same bundle on macOS and iOS. ## Graph contract ``` input "image" [1,3,640,640] f32 BGR, 0-255, letterboxed (pad 114, top-left) — YOLOX-native (no /255, no mean/std) output "preds" [1,8400,85] f32 [cx,cy,w,h, obj, cls_0..cls_79]; box DECODED to 640-px, obj/cls SIGMOID-ed (in-graph) ``` Host post-process: `score = obj · max_class`, threshold, **per-class NMS** (IoU 0.45), then un-letterbox the survivors. Anchors A = 80² + 40² + 20² = 8400 (strides 8/16/32). ## Parity & speed (measured) - **vs torch fp32:** head cosine **1.000000**, end-to-end detections IoU **1.000** on CPU and GPU. - **M4 Max GPU: 4.80 ms / 208 FPS** (median). M4 Max CPU 57 ms. - **iPhone 17 Pro** (Release, GPU, live camera): **~22 ms / 35–40 FPS** end-to-end; first-load on-device specialization ~2.6 s (no AOT). The on-device gate reproduces the Mac fp32 oracle **6/6** (cat 0.96/0.96, remote 0.86/0.86, bed 0.71, couch 0.54). ## Use (CoreAIKit) ```swift import CoreAIKitVision let detector = try await YOLOXDetector(model: .yoloxS) // downloads this repo let detections = try await detector.detect(in: pixelBuffer, scoreThreshold: 0.3) ``` Live-camera + video reference app: **DetectCamera** in [coreai-kit](https://github.com/john-rocky/coreai-kit). ## Convert it yourself [`conversion/export_yolox.py`](https://github.com/john-rocky/coreai-model-zoo/blob/main/conversion/export_yolox.py) — `--variant s --yolox-repo --weights yolox_s.pth`, gated end-to-end with `--verify-image --unit {cpu,gpu}`. The script also maps `nano`/`tiny`/`m`/`l`/`x`. ## License Apache-2.0 — upstream YOLOX code and COCO-pretrained weights are Apache-2.0.