The chapter delves into a research paper introducing Set-A-Frog, a new framework aiming to improve reasoning in large-language models by training them to retrieve, generate, and evaluate information effectively. It explores the challenges of generating accurate answers and highlights the improvements achieved by RAG systems and the novel CELF-RAC inference and training pipeline. The chapter also discusses the impact of the CERTIFAG framework, which involves training retriever, critic, and generator models to enhance model performance significantly across various tasks and applications.

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