| MTEB | |
| ==== | |
| `MTEB <https://github.com/embeddings-benchmark/mteb>`_ (The Massive Text Embedding Benchmark) is a large-scale evaluation framework designed to assess the performance of text embedding models across a wide variety of NLP tasks. | |
| Introduced to standardize and improve the evaluation of text embeddings, MTEB is crucial for assessing how well these models generalize across various real-world applications. | |
| It contains a wide range of datasets in eight main NLP tasks and different languages, and provides an easy pipeline for evaluation. | |
| It also holds the well known MTEB `leaderboard <https://huggingface.co/spaces/mteb/leaderboard>`_, which contains a ranking of the latest first-class embedding models. | |
| You can evaluate model's performance on the whole MTEB benchmark by running our provided shell script: | |
| .. code:: bash | |
| chmod +x /examples/evaluation/mteb/eval_mteb.sh | |
| ./examples/evaluation/mteb/eval_mteb.sh | |
| Or by running: | |
| .. code:: bash | |
| python -m FlagEmbedding.evaluation.mteb \ | |
| --eval_name mteb \ | |
| --output_dir ./mteb/search_results \ | |
| --languages eng \ | |
| --tasks NFCorpus BiorxivClusteringS2S SciDocsRR \ | |
| --eval_output_path ./mteb/mteb_eval_results.json \ | |
| --embedder_name_or_path BAAI/bge-large-en-v1.5 \ | |
| --devices cuda:7 \ | |
| --cache_dir /root/.cache/huggingface/hub | |
| change the embedder, devices and cache directory to your preference. | |
| .. toctree:: | |
| :hidden: | |
| mteb/arguments | |
| mteb/searcher | |
| mteb/runner |