--- license: mit library_name: transformers pipeline_tag: video-classification tags: - video-classification - zero-shot - vision - acaua datasets: - kinetics-400 base_model: microsoft/xclip-base-patch32 --- # X-CLIP (base, patch 32) — acaua mirror MIT-licensed mirror hosted under `CondadosAI/` for use with the [acaua](https://github.com/CondadosAI/acaua) computer vision library. This is a **safetensors-only mirror** of the upstream Microsoft weights at the pinned commit shown below. The legacy `pytorch_model.bin` (pickle format) that upstream ships alongside `model.safetensors` has been deliberately removed for security hygiene — pickle loads can execute arbitrary code, and `transformers` auto-prefers safetensors when both are present, so removing it has zero functional impact on downstream users. X-CLIP is a **zero-shot video classification** model: you provide a list of candidate text labels at inference time and the model ranks them by similarity to the video clip. It is not a closed-set softmax classifier, and it does not appear in `AutoModelForVideoClassification`. ## Provenance | | | |---|---| | Upstream repo | [`microsoft/xclip-base-patch32`](https://huggingface.co/microsoft/xclip-base-patch32) | | Upstream commit SHA | `a2e27a78a2b5d802e894b8a1ef14f3a8ce490963` | | Upstream commit date | 2024-02-04 | | Declared license | MIT | | Paper | Ni et al., *"Expanding Language-Image Pretrained Models for General Video Recognition"*, ECCV 2022, arXiv:[2208.02816](https://arxiv.org/abs/2208.02816) | | Official code | [`microsoft/VideoX`](https://github.com/microsoft/VideoX) (MIT) | | Mirrored on | 2026-04-23 | | Mirrored by | [CondadosAI/acaua](https://github.com/CondadosAI/acaua) | ## Usage via acaua ```python import acaua model = acaua.Model.from_pretrained( "CondadosAI/xclip_base_patch32", allow_non_apache=True, # weights are MIT, not Apache-2.0 ) result = model.predict( "dance.mp4", labels=["dancing", "cooking", "running", "sleeping", "walking"], top_k=3, ) for label, score in zip(result.labels, result.scores.tolist()): print(f"{label}: {score:.3f}") ``` ## Usage via 🤗 Transformers This mirror is drop-in compatible with the upstream repo. ```python from transformers import XCLIPModel, XCLIPProcessor processor = XCLIPProcessor.from_pretrained("CondadosAI/xclip_base_patch32") model = XCLIPModel.from_pretrained("CondadosAI/xclip_base_patch32") ``` ## Expected input - **Frames:** 8 uniformly-sampled frames per clip (`vision_config.num_frames=8`). - **Resolution:** 224 × 224 after resize + center-crop. - **Normalization:** ImageNet mean/std (handled by `XCLIPProcessor`). - **Text prompts:** supplied at inference time — any natural-language strings. ## License and attribution Redistributed under MIT, consistent with the upstream declaration. See [`NOTICE`](./NOTICE) for required attribution. ## Citation ```bibtex @inproceedings{ni2022expanding, title={Expanding language-image pretrained models for general video recognition}, author={Ni, Bolin and Peng, Houwen and Chen, Minghao and Zhang, Songyang and Meng, Gaofeng and Fu, Jianlong and Xiang, Shiming and Ling, Haibin}, booktitle={European Conference on Computer Vision (ECCV)}, pages={1--18}, year={2022}, publisher={Springer} } ```