--- license: apache-2.0 base_model: MINT-SJTU/Evo1_LIBERO tags: - vla - vision-language-action - robotics - gguf - vla.cpp - llama.cpp - libero - evo1 pipeline_tag: robotics library_name: vla.cpp --- # Evo-1 — LIBERO (GGUF for vla.cpp) GGUF conversion of [`MINT-SJTU/Evo1_LIBERO`](https://huggingface.co/MINT-SJTU/Evo1_LIBERO) for inference with [**vla.cpp**](https://github.com/VinRobotics/vla.cpp), a lightweight C++ inference engine for Vision-Language-Action models built on top of [`llama.cpp`](https://github.com/ggml-org/llama.cpp). Evo-1 couples an **InternVL3-1B** vision-language backbone with a **cross-attention DiT** flow-matching action head. Its vision tower is baked into the combined GGUF, so **no separate mmproj file is needed**. ## Files | File | Size | Description | |---|---:|---| | `evo1-libero.gguf` | 1.45 GiB | Combined VLA model — InternVL3 LM + vision tower + cross-attn DiT action head + dataset stats + arch config, BF16 | ## Usage ```bash # Terminal 1 — serve (use the CUDA build for inference). No mmproj argument. ./build-cuda/vla-server --bind tcp://*:5566 \ evo1-libero.gguf # Terminal 2 — drive a LIBERO episode (inside the LIBERO uv venv) python eval/client/run_sim_client_direct.py \ --arch evo1 \ --task libero_object --task-id 0 --n-episodes 10 \ --vla-addr tcp://localhost:5566 ``` ## Benchmark Full `libero_object` sweep (10 tasks × 20 episodes = 200 episodes): | Hardware | n_act | Success rate | client/step | client/call | Peak mem | |---|---:|---:|---:|---:|---:| | RTX 3060 (sm_86) | 8 | 94.5% | 63.60 ms | 509 ms | 1564 MiB VRAM | | Jetson AGX Orin (sm_87) | 8 | 95.5% | 131.01 ms | 1048 ms | 638 MiB RAM | | Jetson Orin Nano 8 GB (sm_87) | 8 | 97.5% | 458.84 ms | 3671 ms | 2135 MiB RAM | ## Implementation note Evo-1 exposed a Qwen2 + flash-attention-2 masking subtlety: HF's FA2 path zeroes the attention output of masked queries, while a naïve softmax computes real attention for them — contaminating the LM context at image-context positions. vla.cpp mirrors HF exactly with a per-query mask, which is what takes this checkpoint from 0/5 to passing on LIBERO. ## License Weights follow the upstream license of [`MINT-SJTU/Evo1_LIBERO`](https://huggingface.co/MINT-SJTU/Evo1_LIBERO). The vla.cpp conversion tooling and inference engine are MIT-licensed.