1min snip

Machine Learning Street Talk (MLST) cover image

Patrick Lewis (Cohere) - Retrieval Augmented Generation

Machine Learning Street Talk (MLST)

NOTE

Trust in Information Requires Traceability

Designing retrieval augmented systems should prioritize simplicity and transparency for information verification. By clearly indicating the source documents that underlie generated answers, users can confidently trace back the origins of the information. This is essential, particularly as large language models can process expansive contexts, which can otherwise lead to overwhelming amounts of data that obscure the origins of answers. Proper grounding—identifying where information comes from—maintains the utility of models and differentiates them from unaugmented ones. The effectiveness of these systems hinges on their ability to facilitate user trust through clear documentation of source material.

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