Episode

The Building Blocks of Agentic Systems with Harrison Chase - #698

Podcast
The TWIML AI Podcast (formerly This Week in Machine Learning & Artificial Intelligence)
Published
Aug 19, 2024
Duration seconds
3557
Processing state
failed
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https://pscrb.fm/rss/p/traffic.megaphone.fm/MLN7661308388.mp3?updated=1724098102
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https://pscrb.fm/rss/p/traffic.megaphone.fm/MLN7661308388.mp3?updated=1724098102
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Markdown
/podcast/twiml-ai-podcast/the-building-blocks-of-agentic-systems-with-harrison-chase-698.md

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Summary

Today, we're joined by Harrison Chase, co-founder and CEO of LangChain to discuss LLM frameworks, agentic systems, RAG, evaluation, and more. We dig into the elements of a modern LLM framework, including the most productive developer experiences and appropriate levels of abstraction. We dive into agents and agentic systems as well, covering the “spectrum of agenticness,” cognitive architectures, and real-world applications. We explore key challenges in deploying agentic systems, and the importance of agentic architectures as a means of communication in system design and operation. Additionally, we review evolving use cases for RAG, and the role of observability, testing, and evaluation tools in moving LLM applications from prototype to production. Lastly, Harrison shares his hot takes on prompting, multi-modal models, and more! The complete show notes for this episode can be found at https://twimlai.com/go/698.