Nov. 3, 2023, 9:54 a.m. | MLOps.community

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// Abstract
Discover the highs and lows of building a Retrieval Augmented Generation (RAG) system as we walk through the crucial challenges: data quality, query engines, and contextualization. Gain key insights into the pitfalls and best practices that can help you make informed decisions in your own projects.

// Bio
Wes Ladd is the founder of Train GRC, a cybersecurity training platform for Governance, Risk, and Compliance (GRC) professionals. As part of Train GRC, Wes is the Lead Developer and …

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