Q

Qwen3 Embedding 8B Auto

Developed by michaelfeil
The Qwen3 Embedding model series is the latest self-developed model of the Tongyi family, designed specifically for text embedding and ranking tasks, supporting more than 100 languages, and ranking first on the MTEB multilingual leaderboard.
Downloads 135
Release Time : 6/6/2025

Model Overview

Based on the dense basic model of the Tongyi Qianwen 3 series, it provides text embedding and re-ranking functions, suitable for various tasks such as text retrieval, code retrieval, text classification, text clustering, and bilingual mining.

Model Features

Excellent versatility
Ranked first on the MTEB multilingual leaderboard (score of 70.58), and performed excellently in various text embedding and ranking tasks.
Comprehensive flexibility
It offers a full range of scales from 0.6B to 8B, supporting user-defined instructions and flexible vector dimension definitions.
Multilingual ability
Supports more than 100 languages, including various programming languages, and provides powerful multilingual, cross-lingual, and code retrieval capabilities.
Long text understanding
Supports a context length of 32k, suitable for handling long text tasks.

Model Capabilities

Text retrieval
Code retrieval
Text classification
Text clustering
Bilingual mining
Multilingual text processing

Use Cases

Information retrieval
Web search
Retrieve relevant paragraphs based on the query
Retrieval performance improved by 1% to 5% (when using custom instructions)
Knowledge management
Document clustering
Automatically classify and cluster a large number of documents
Scored 57.65 in the MTEB clustering task (8B model)
Cross-lingual applications
Bilingual mining
Cross-lingual text matching and retrieval
Scored 80.89 in the MTEB bilingual mining task (8B model)
Featured Recommended AI Models
AIbase
Empowering the Future, Your AI Solution Knowledge Base
Š 2025AIbase