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Ms Marco TinyBERT L6

Developed by cross-encoder
A cross-encoder model trained on the MS Marco passage ranking task, suitable for query-passage relevance scoring in information retrieval scenarios.
Downloads 6,963
Release Time : 3/2/2022

Model Overview

This model is specifically designed for information retrieval tasks, capable of jointly encoding query statements and candidate passages, and ranking them by relevance. Suitable for search engine result reranking scenarios.

Model Features

Efficient Inference
Optimized based on the TinyBERT architecture, achieving high-speed processing (680 passages/sec/V100) while maintaining good performance.
Specialized Training
Trained specifically on the MS Marco passage ranking dataset, optimized for information retrieval tasks.
Dual Encoding Capability
Can jointly encode query statements and candidate passages to compute relevance scores.

Model Capabilities

Query-Passage Relevance Scoring
Text Ranking
Information Retrieval Result Reranking

Use Cases

Search Engine Optimization
Search Result Reranking
Rerank preliminary results returned by search engines like ElasticSearch based on relevance.
Improves the quality of relevance ranking in search results.
Question Answering Systems
Candidate Answer Ranking
Rank retrieved candidate answers by relevance in question-answering systems.
Improves the accuracy of returning the best answer in QA systems.
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