archful = false archive_name = "mteb-2.12.30.tar.gz" automode = true extras = [ "ark", "audio", "blip2", "bm25s", "codecarbon", "cohere", "colpali-engine", "colqwen3", "eager-embed", "embeddinggemma", "faiss-cpu", "flagembedding", "flash-attention", "github", "google-genai", "gritlm", "image", "jina", "jina-clip", "jina-v4", "leaderboard", "llama-embed-nemotron", "llama-nemotron-colembed-vl", "llama-nemotron-embed-vl-1b-v2", "llm2vec", "mctct", "model2vec", "msclap", "multimodal-sbert", "muq", "nemotron-colembed-vl-v2", "nomic", "open-clip-torch", "openai", "peft", "pylate", "qwen-omni-utils", "qwen-vl", "sauerkrautlm-colpali", "siglip", "speechbrain", "timm", "torch-vggish-yamnet", "vertexai", "video", "vllm", "voyage-v", "voyageai", "wav2clip", "xet", "xformers", "youtu", ] license = "Apache-2.0" license_files_present = true name = "mteb" python_name = "python-mteb" source = "PyPI" summary = "Massive Text Embedding Benchmark" url = "https://github.com/embeddings-benchmark/mteb" version = "2.12.30"