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Llm2vec Meta Llama 31 8B Instruct Mntp Unsup Simcse

Developed by McGill-NLP
LLM2Vec is a solution for converting decoder-only large language models into text encoders, achieved by enabling bidirectional attention, masked next-word prediction, and unsupervised contrastive learning.
Downloads 55
Release Time : 10/8/2024

Model Overview

This model transforms large language models into text encoders through a three-step conversion process, supporting tasks such as text embedding and information retrieval, with potential for further fine-tuning to enhance performance.

Model Features

Bidirectional Attention Mechanism
Enhances the model's contextual understanding by enabling bidirectional attention.
Unsupervised Contrastive Learning
Improves text representation quality through unsupervised contrastive learning.
Fine-Tuning Compatibility
Supports further fine-tuning to achieve industry-leading performance levels.

Model Capabilities

Text embedding generation
Information retrieval
Text semantic similarity calculation
Text classification
Text clustering

Use Cases

Information Retrieval
Web search query matching
Matches user queries with relevant documents for retrieval.
Example shows a cosine similarity of 0.6 between the query and relevant documents.
Question Answering Systems
Protein intake Q&A
Answers questions about daily protein intake for women.
The model accurately matches content from CDC guidelines.
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