zeroentropy/zembed-1-embedding
In retrieval systems, embedding models determine the quality of your search.
README
license: cc-by-nc-4.0 language: en multilingual basemodel: Qwen/Qwen3-4B pipelinetag: feature-extraction tags: finance legal healthcare code stem medical multilingual libraryname: sentence-transformers modelmax_length: 32768 Releasing zeroentropy/zembed-1 In retrieval systems, embedding models determine the quality of your search. However, SOTA embedding models are closed-source and proprietary. At ZeroEntropy, we've trained a SOTA 4B open-weight multilingual embedding model that outperforms…
Source attribution
- HuggingFace — zeroentropy/zembed-1-embedding
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