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All MiniLM L6 V2

Developed by obrizum
This is a sentence embedding model based on sentence-transformers, capable of mapping text to a 384-dimensional vector space, suitable for semantic search and clustering tasks.
Downloads 1,647
Release Time : 5/9/2022

Model Overview

This model is specifically designed to generate dense vector representations for sentences and paragraphs, supporting applications such as semantic similarity calculation, information retrieval, and text clustering.

Model Features

Efficient Vector Representation
Converts text into compact 384-dimensional vector representations, balancing computational efficiency and semantic expressiveness
Large-scale Training
Trained on datasets with over 1 billion sentence pairs, covering various text types and domains
Contrastive Learning Optimization
Fine-tuned using contrastive learning objectives, effectively improving sentence similarity judgment capabilities

Model Capabilities

Text Vectorization
Semantic Similarity Calculation
Information Retrieval
Text Clustering
Sentence Feature Extraction

Use Cases

Information Retrieval
Semantic Search
Build search systems based on semantics rather than keywords
Improves the relevance and recall of search results
Text Analysis
Document Clustering
Automatically group similar documents
Useful for topic discovery and content organization
Question Answering Systems
Question Matching
Identify semantically similar questions
Enhances the coverage and accuracy of QA systems
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