Capability
Semantic Similarity Ranking With Relevance Scoring
20 artifacts provide this capability.
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via “semantic-similarity-scoring-between-text-pairs”
feature-extraction model by undefined. 1,17,45,865 downloads.
Unique: Embeddings are pre-normalized to unit vectors during generation, eliminating the need for post-hoc normalization in similarity computation — this design choice reduces latency for high-throughput ranking scenarios by ~15% compared to models requiring explicit normalization
vs others: Faster similarity computation than sparse BM25 for large-scale ranking due to vector normalization baked into the model, while maintaining competitive NDCG scores on MTEB benchmarks