Machine Learning Street Talk (MLST)

Patrick Lewis (Cohere) - Retrieval Augmented Generation

62 snips
Sep 16, 2024
Dr. Patrick Lewis, a leading expert and coiner of Retrieval Augmented Generation (RAG), discusses the evolution of language models and the challenges in evaluating RAG systems. He highlights the importance of data quality and human-AI collaboration, while also delving into dense vs. sparse retrieval methods. Further, Patrick shares insights on striking a balance between faithfulness and fluency in RAG applications and the complexities of user interface design for AI tools. His journey from chemistry to AI research adds a unique flair to the conversation.
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ANECDOTE

GPT-3's Early Days

  • Early GPT-3 demos like the database example seemed like parlor tricks, but they showcased the potential of in-context learning.
  • OpenAI's focus on unsupervised intelligence and novel prompting techniques was crucial for RAG's development.
INSIGHT

RAG's Origins

  • RAG emerged from combining generative question answering with in-context learning from paragraphs.
  • The initial focus was on achieving good benchmark results, not necessarily defining a new paradigm.
ADVICE

RAG Implementation Challenges

  • Implementing RAG systems is complex, involving tool use, retrieval, and grounded generation challenges.
  • Consider factors like query formulation, faithfulness, fluency, and answerability.
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