M

Multi Qa Mpnet Base Dot V1 Covidqa Search Multiple Negatives Loss

Developed by checkiejan
This is a model based on sentence-transformers that maps sentences and paragraphs into a 768-dimensional dense vector space, suitable for tasks such as sentence similarity calculation, clustering, and semantic search.
Downloads 14
Release Time : 9/28/2023

Model Overview

This model is specifically designed for vectorized representations of sentences and paragraphs, generating 768-dimensional embedding vectors that can be used for natural language processing tasks such as sentence similarity calculation, text clustering, and semantic search.

Model Features

High-dimensional Vector Representation
Maps sentences and paragraphs into a 768-dimensional dense vector space, preserving rich semantic information.
Sentence Similarity Calculation
Accurately calculates semantic similarity between different sentences.
Easy Integration
Provides simple API interfaces for easy integration into existing systems.

Model Capabilities

Sentence Vectorization
Semantic Similarity Calculation
Text Clustering
Semantic Search

Use Cases

Information Retrieval
Semantic Search System
Build search systems based on semantics rather than keywords.
Improves the relevance and accuracy of search results.
Text Analysis
Document Clustering
Automatically groups similar documents together.
Enables unsupervised document classification.
Featured Recommended AI Models
AIbase
Empowering the Future, Your AI Solution Knowledge Base
Š 2025AIbase