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SBERT Base Nli V2

Developed by Muennighoff
SBERT-base-nli-v2 is a transformer-based sentence embedding model specifically designed for sentence similarity calculation and semantic search tasks.
Downloads 138
Release Time : 3/2/2022

Model Overview

This model is based on transformer architecture and is primarily used to generate sentence embeddings for calculating similarity between sentences. It has been fine-tuned on natural language inference tasks and is suitable for applications such as semantic search and information retrieval.

Model Features

Efficient sentence embeddings
Capable of converting sentences into high-dimensional vector representations, facilitating the calculation of semantic similarity between sentences.
Semantic search optimization
Specifically optimized for semantic search tasks, effectively capturing the semantic information of sentences.
Transformer architecture
Based on advanced transformer architecture, capable of handling complex language patterns.

Model Capabilities

Sentence embedding generation
Semantic similarity calculation
Feature extraction
Semantic search

Use Cases

Information retrieval
Document similarity search
Finding documents most similar to a query sentence within a document collection
Question answering systems
Answer candidate ranking
Ranking candidate answers by semantic similarity to find the best match
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