B

Bce Embedding Base V1

Developed by maidalun1020
BCEmbedding is a bilingual and cross-lingual embedding model library developed by NetEase Youdao, including EmbeddingModel (semantic vector generation) and RerankerModel (result reranking). As a core component of Youdao's Retrieval-Augmented Generation (RAG) system, it has been successfully applied to open-source projects like QAnything and products such as Youdao Speed Reading and Youdao Translation.
Downloads 69.82k
Release Time : 12/29/2023

Model Overview

BCEmbedding is a bilingual and cross-lingual embedding model library developed by NetEase Youdao, primarily designed to provide semantic vector generation and result reranking capabilities for RAG (Retrieval-Augmented Generation) systems.

Model Features

Bilingual and Cross-Lingual Capability
Based on Youdao's translation engine, enabling a single model to support multilingual scenarios
RAG-Specific Optimization
Adapted for tasks like translation, summarization, and Q&A, enhancing query understanding
Efficient and Accurate Retrieval
Two-stage design (Embedding recall + Reranker reranking)
Broad Domain Adaptation
Covers data from multiple domains such as education, law, and finance

Model Capabilities

Text embedding
Sentence similarity calculation
Cross-lingual retrieval
Bilingual semantic understanding

Use Cases

Information retrieval
Document retrieval
Used for document fragment retrieval in RAG systems
Performed excellently in LlamaIndex RAG evaluations
Q&A systems
QAnything
Open-source Q&A system
Serves as the core retrieval component
Featured Recommended AI Models
AIbase
Empowering the Future, Your AI Solution Knowledge Base
© 2025AIbase