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Slimplm Query Rewriting

Developed by zstanjj
A lightweight language model for query rewriting, capable of parsing user input into structured formats to optimize retrieval effectiveness.
Downloads 53
Release Time : 2/19/2024

Model Overview

This model is primarily used for query rewriting tasks, parsing user input into structured formats based on rough answers to enhance the accuracy and efficiency of information retrieval.

Model Features

Lightweight Design
The model has a smaller parameter scale, making it suitable as a proxy model to determine the timing and content of retrieval for LLMs.
Structured Parsing
Capable of parsing user input and rough answers into structured formats to optimize subsequent retrieval effectiveness.
Efficient Inference
The model offers fast inference speeds, making it suitable for real-time query rewriting tasks.

Model Capabilities

Text Structuring
Query Rewriting
Information Retrieval Optimization

Use Cases

Information Retrieval
Complex Query Rewriting
Rewriting complex natural language queries from users into structured formats more suitable for retrieval.
Improves the accuracy and recall rate of retrieval systems.
Retrieval Necessity Determination
Determining whether a user query requires retrieval from an external knowledge base.
Reduces unnecessary retrieval overhead.
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