Sentence T5 Base Nlpl Code Search Net
This is a model based on sentence-transformers that can map sentences and paragraphs into a 768-dimensional dense vector space, suitable for tasks such as clustering or semantic search.
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Release Time : 11/16/2022
Model Overview
This model was trained on the code_search_net dataset and is primarily used to convert text into high-dimensional vector representations, suitable for tasks like semantic similarity calculation and information retrieval.
Model Features
High-dimensional Vector Representation
Can map sentences and paragraphs into a 768-dimensional dense vector space, preserving semantic information.
Semantic Similarity Calculation
Particularly suitable for calculating semantic similarity between sentences or paragraphs.
Code Search Optimization
Trained on the code_search_net dataset, it has better representation capabilities for code-related texts.
Model Capabilities
Text Vectorization
Semantic Similarity Calculation
Information Retrieval
Text Clustering
Use Cases
Code Search
Code Snippet Retrieval
Retrieve relevant code snippets based on natural language queries.
Improves the accuracy and efficiency of code search.
Document Retrieval
Technical Documentation Search
Search for relevant content in technical documentation libraries.
Improves the relevance of document retrieval.
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