Episode

LLMs: Internals, Hallucinations, and Applications | Data Brew | Episode 33

Podcast
Data Brew by Databricks
Published
Jul 21, 2023
Duration seconds
2330
Processing state
processed
Canonical source
https://www.buzzsprout.com/1370119/episodes/13261895-llms-internals-hallucinations-and-applications-data-brew-episode-33.mp3
Audio
https://www.buzzsprout.com/1370119/episodes/13261895-llms-internals-hallucinations-and-applications-data-brew-episode-33.mp3
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Markdown
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Summary

Our fifth season dives into large language models (LLMs), from understanding the internals to the risks of using them and everything in between. While we're at it, we'll be enjoying our morning brew. In this session, we interviewed Chengyin Eng (Senior Data Scientist, Databricks), Sam Raymond (Senior Data Scientist, Databricks), and Joseph Bradley (Lead Production Specialist - ML, Databricks) on the best practices around LLM use cases, prompt engineering, and how to adapt MLOps for LLMs (i.e...