What is retrieval-augmented generation (RAG)?
Retrieval-augmented generation is a technique that delivers better generative AI results by enabling companies to automatically provide the most current and relevant proprietary data to an existing LLM.
An artificial intelligence (AI) model is only as good as what it’s taught. For it to thrive, it needs the proper context and reams of factual data — not generic information. An off-the-shelf LLM is not always up to date, nor will it have trustworthy access to your data or understand your customer relationships. That’s where RAG models can help.
Through RAG, companies can have AI models draw from the most up-to-date internal information. That’s not just structured data, like a spreadsheet or a relational database. This means retrieving all available data, including unstructured data: emails, PDFs, chat logs, social media posts, and other types of information that could lead to a better AI output.