



A Python library for generating high-quality sentence, text, and image embeddings. It simplifies the process of converting text into dense vector representations, which are fundamental for similarity search and storage in vector databases.
Sentence Transformers (a.k.a. SBERT) is a Python module for accessing, using, and training state-of-the-art embedding and reranker models. It can be used to compute embeddings using Sentence Transformer models or to calculate similarity scores using Cross-Encoder (reranker) models. This unlocks a wide range of applications.
quantize_embeddings()semantic_search(), semantic_search_faiss(), semantic_search_usearch()community_detection()mine_hard_negatives()normalize_embeddings()paraphrase_mining()truncate_embeddings()export_dynamic_quantized_onnx_model(), export_optimized_onnx_model(), export_static_quantized_openvino_model()cos_sim(), dot_score(), euclidean_sim(), manhattan_sim(), pairwise_cos_sim(), pairwise_dot_score(), pairwise_euclidean_sim(), pairwise_manhattan_sim()Loading more......