Back to AI Chatbot Terms

What is Fine-Tuning Retrievers?

The process of adapting retrieval models to specific tasks or datasets by training them on task-relevant examples.

More about Fine-Tuning Retrievers:

Fine-Tuning Retrievers involves training retrieval models, such as bi-encoders or cross-encoders, on task-specific datasets to improve performance. Fine-tuning helps retrievers better align with the domain or context they are deployed in, enhancing relevance and accuracy.

This process is essential for optimizing systems like retrieval-augmented generation (RAG) and knowledge retrieval for specific applications.

Frequently Asked Questions

Why is fine-tuning important for retrieval models?

It adapts models to specific tasks or domains, improving the relevance of retrieved information.

What datasets are used for fine-tuning retrievers?

Datasets specific to the application domain, such as customer support queries or research documents, are commonly used.

From the blog

Ready to automate your customer support with AI?

Join over 150+ businesses, websites and startups automating their customer support with a custom trained GPT chatbot.