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SGPT 2.7B Weightedmean Nli Bitfit

Developed by Muennighoff
A sentence embedding model optimized based on the GPT-2.7B architecture, specifically designed for semantic similarity calculation and natural language inference tasks
Downloads 104
Release Time : 3/2/2022

Model Overview

This model fine-tunes GPT-2.7B using a weighted mean pooling method, suitable for tasks such as sentence similarity calculation, semantic search, and information retrieval

Model Features

Weighted Mean Pooling
Uses weighted mean pooling for sentence embeddings, capturing semantic information more effectively than traditional methods
Large-scale Pretraining
Based on the 2.7B-parameter GPTNeo model, offering robust semantic understanding capabilities
Natural Language Inference Optimization
Fine-tuned specifically for MSMARCO and NLI tasks, excelling in semantic similarity tasks

Model Capabilities

Sentence similarity calculation
Semantic search
Information retrieval
Natural language inference

Use Cases

Information retrieval
Document similarity matching
Calculate semantic similarity between documents or paragraphs
Can be used to build efficient search engines or recommendation systems
Question answering systems
Question-answer matching
Identify the most relevant answers to user questions
Improves the accuracy and response speed of question answering systems
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