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Biencoder Camembert Base Mmarcofr

Developed by antoinelouis
This is a dense single-vector dual-encoder model for French, suitable for semantic search tasks.
Downloads 984
Release Time : 5/22/2023

Model Overview

The model maps queries and passages to 768-dimensional dense vectors, calculating relevance through cosine similarity, designed for French information retrieval scenarios.

Model Features

French optimization
Semantic retrieval model specifically optimized for French text
Efficient retrieval
Uses single-vector representation for efficient large-scale document retrieval
High-quality negative samples
Utilizes hard negative samples mined from multiple retrievers during training

Model Capabilities

Semantic similarity calculation
Passage retrieval
Information retrieval
Query-passage matching

Use Cases

Information retrieval
Document retrieval system
Build a French document retrieval system that returns the most relevant documents based on queries
Achieves Recall@500 of 89.1 on the mMARCO-fr dataset
Question answering system
Serves as the retrieval component for a QA system to find the most relevant passages to questions
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