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This is a sentence embedding model based on sentence-transformers, which maps text to a 1536-dimensional vector space, suitable for semantic search and text similarity calculation
Downloads 4,890
Release Time : 3/12/2023
Model Overview
This model can convert sentences and paragraphs into high-dimensional vector representations, mainly used for natural language processing tasks such as text similarity calculation, semantic search, and clustering analysis
Model Features
High-Dimensional Vector Representation
Converts text into 1536-dimensional dense vectors, capable of capturing rich semantic information
Semantic Similarity Calculation
Accurately measures semantic similarity between sentences through distance calculation in vector space
Easy Integration
Provides a simple Python API for easy integration into existing applications
Model Capabilities
Text Vectorization
Semantic Similarity Calculation
Text Clustering
Semantic Search
Use Cases
Information Retrieval
Similar Document Search
Finds documents semantically similar to the query statement in a document library
Improves retrieval accuracy and recall rate
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Content Recommendation
Recommends related content based on the semantic similarity of user-browsed content
Enhances recommendation relevance and user experience
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