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Finance Embedding 8k

Developed by ng3owb
BGE-M3 is a versatile, multilingual, multi-granularity embedding model that supports three common retrieval functions: dense retrieval, multi-vector retrieval, and sparse retrieval.
Downloads 19
Release Time : 1/21/2025

Model Overview

The BGE-M3 model features versatility, multilingual support, and multi-granularity processing capabilities, capable of handling inputs ranging from short sentences to long documents up to 8192 tokens, supporting over 100 working languages.

Model Features

Versatility
Can simultaneously perform three common retrieval functions of embedding models: dense retrieval, multi-vector retrieval, and sparse retrieval.
Multilingual Support
Supports over 100 working languages.
Multi-granularity Processing
Capable of handling inputs of varying granularity, from short sentences to long documents up to 8192 tokens.

Model Capabilities

Dense Retrieval
Multi-vector Retrieval
Sparse Retrieval
Multilingual Processing
Long Document Processing

Use Cases

Information Retrieval
Hybrid Retrieval
Combines the advantages of dense retrieval and sparse retrieval to provide higher accuracy and stronger generalization capabilities.
Excellent performance on the MIRACL dataset
Re-ranking
As a cross-encoder model, the re-ranker achieves higher accuracy than dual-encoder embedding models.
Can further filter texts after retrieval
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