Vikramank Singh | Panda: Performance Debugging for Databases using LLM Agents | #47 - podcast episode cover

Vikramank Singh | Panda: Performance Debugging for Databases using LLM Agents | #47

Mar 04, 20241 hr 8 minSeason 6Ep. 7
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Episode description

In this episode, Vikramank Singh introduces the Panda framework, aimed at refining Large Language Models' (LLMs) capability to address database performance issues. Vikramank elaborates on Panda's four components—Grounding, Verification, Affordance, and Feedback—illustrating how they collaborate to contextualize LLM responses and deliver actionable recommendations. By bridging the divide between technical knowledge and practical troubleshooting needs, Panda has the potential to revolutionize database debugging practices, offering a promising avenue for more effective and efficient resolution of performance challenges in database systems. Tune in to learn more!


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