--- license: cc-by-nc-4.0 library_name: mlx tags: - mlx - vjepa2 - video - apple-silicon - tribe - fmri base_model: facebook/vjepa2-vitg-fpc64-256 pipeline_tag: feature-extraction --- # V-JEPA2 ViT-g → MLX (TRIBE vision backbone) MLX (fp16) conversion of **[`facebook/vjepa2-vitg-fpc64-256`](https://huggingface.co/facebook/vjepa2-vitg-fpc64-256)** for fast video feature extraction on **Apple Silicon**. Used by the TRIBE v2 Mac fork: [vasanthsreeram/tribev2](https://github.com/vasanthsreeram/tribev2) with the brain encoding head [`facebook/tribev2`](https://huggingface.co/facebook/tribev2). ## Files | File | Description | |------|-------------| | `model.safetensors` | Encoder weights (fp16, MLX layout), ~1.9 GB | | `config.json` | ViT-g encoder config (`hidden=1408`, 40 layers, …) | ## How this was converted 1. Load HF `AutoModel` for `facebook/vjepa2-vitg-fpc64-256` in **fp32**. 2. Map tensors with [vjepa2-mlx](https://github.com/xocialize/vjepa2-mlx) `convert_state_dict` (Conv3d layout, QKV, etc.). 3. Keep **`encoder.*` only** (predictor dropped — not used by TRIBE). 4. Cast to **fp16**, save safetensors with `format=mlx` metadata. 5. Config: `mlp_ratio=48/11` to match HF (not integer 4). Full write-up: [docs/MLX_CONVERSION.md](https://github.com/vasanthsreeram/tribev2/blob/main/docs/MLX_CONVERSION.md) in the code fork. ## Validation Against official torch TRIBE vision-only preds on a 1 s clip (same config): - **Cosine ≈ 0.96**, Pearson **r ≈ 0.96** - Encoder-only random input vs HF: cosine ≈ **0.9994** - Runtime: ~**11×** faster than torch CPU encode on the test Mac ## Usage with TRIBE fork ```bash hf download vasanth009/vjepa2-vitg-fpc64-256-mlx --local-dir mlx_weights/V-JEPA2-vitg-fpc64-256 # then in the tribev2 fork: python demo_data/run_efficient.py your.mp4 --open ``` ```python from tribev2.mlx_vjepa import encode_clip_frames, install_mlx_video_hooks # requires vjepa2_mlx package for the encoder graph ``` ## License & attribution - Weights derived from Meta V-JEPA2 — **CC-BY-NC-4.0** (non-commercial), same spirit as upstream. - Cite the [TRIBE paper](https://arxiv.org/abs/2605.04326) if you use the brain model. - Conversion utilities based on [vjepa2-mlx](https://github.com/xocialize/vjepa2-mlx). **Not affiliated with Meta.** This is a community conversion for Apple Silicon inference.