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Colqwen2.5 7b Multilingual V1.0

Developed by Metric-AI
A multilingual visual retrieval model based on Qwen2.5-VL-7B-Instruct using the ColBERT strategy, ranked first in the Vidore benchmark
Downloads 4,699
Release Time : 2/11/2025

Model Overview

A novel model architecture and training strategy based on Vision-Language Models (VLMs) that efficiently indexes documents from visual features, supporting multilingual and multimodal embeddings

Model Features

Multilingual Support
Supports multiple languages including English, French, Spanish, Italian, and German
Dynamic Resolution Processing
Accepts input images with dynamic resolutions without altering their aspect ratios, supporting up to 768 image patches
Efficient Retrieval
Utilizes ColBERT-style multi-vector representation for efficient document retrieval
Multimodal Embedding
Supports embedding representations for both text and visual features

Model Capabilities

Multilingual document retrieval
Visual feature extraction
Text-to-visual retrieval
Multimodal embedding

Use Cases

Document Retrieval
PDF Document Retrieval
Quickly retrieves relevant content from a large number of PDF documents
Ranked first in the Vidore benchmark
Cross-Language Retrieval
Multilingual Document Search
Supports document retrieval in multiple languages
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