open.spotify.com/episode/6NXAUc23EraGXjijJ1MS3w
Preview meta tags from the open.spotify.com website.
Linked Hostnames
1Thumbnail
Search Engine Appearance
AI Engineering with Chip Huyen
Listen to this episode from The Pragmatic Engineer on Spotify. On today’s episode of The Pragmatic Engineer, I’m joined by Chip Huyen, a computer scientist, author of the freshly published O’Reilly book AI Engineering, and an expert in applied machine learning. Chip has worked as a researcher at Netflix, was a core developer at NVIDIA (building NeMo, NVIDIA’s GenAI framework), and co-founded Claypot AI. She also taught Machine Learning at Stanford University. In this conversation, we dive into the evolving field of AI Engineering and explore key insights from Chip’s book, including: • How AI Engineering differs from Machine Learning Engineering • Why fine-tuning is usually not a tactic you’ll want (or need) to use • The spectrum of solutions to customer support problems – some not even involving AI! • The challenges of LLM evals (evaluations) • Why project-based learning is valuable—but even better when paired with structured learning • Exciting potential use cases for AI in education and entertainment • And more! — Brought to you by: • Swarmia — The engineering intelligence platform for modern software organizations. • Graphite — The AI developer productivity platform. • Vanta — Automate compliance and simplify security with Vanta. — The Pragmatic Engineer deepdives relevant for this episode: • Applied AI Software Engineering: RAG https://newsletter.pragmaticengineer.com/p/rag • How do AI software engineering agents work? https://newsletter.pragmaticengineer.com/p/ai-coding-agents • AI Tooling for Software Engineers in 2024: Reality Check https://newsletter.pragmaticengineer.com/p/ai-tooling-2024 • IDEs with GenAI features that Software Engineers love https://newsletter.pragmaticengineer.com/p/ide-that-software-engineers-love — Where to find Chip Huyen: • X: https://x.com/chipro • LinkedIn: https://www.linkedin.com/in/chiphuyen/ • Website: https://huyenchip.com/ — Where to find Gergely Orosz: • X: https://x.com/GergelyOrosz • LinkedIn: https://www.linkedin.com/in/gergelyorosz/ • Bluesky: https://bsky.app/profile/gergely.pragmaticengineer.com • Newsletter and blog: https://www.pragmaticengineer.com/ — In this episode, we cover: (00:00) Intro (01:31) A quick overview of AI Engineering (06:45) How Chip ensured her book stays current amidst the rapid advancements in AI (11:35) A definition of AI Engineering and how it differs from Machine Learning Engineering (18:15) Simple first steps in building AI applications (24:38) An explanation of BM25 (retrieval system) (25:28) The problems associated with fine-tuning (29:40) Simple customer support solutions for rolling out AI thoughtfully (35:29) Chip’s thoughts on staying focused on the problem (37:04) The challenge in evaluating AI systems (40:03) Use cases in evaluating AI (43:09) The importance of prioritizing users’ needs and experience (48:09) Common mistakes made with Gen AI (53:57) A case for systematic problem solving (54:57) Project-based learning vs. structured learning (1:00:07) Why AI is not the end of engineering (1:04:56) How AI is helping education and the future use cases we might see (1:08:58) Rapid fire round — See the transcript and other references from the episode at https://newsletter.pragmaticengineer.com/podcast — Production and marketing by Pen Name https://penname.co/. For inquiries about sponsoring the podcast, email [email protected].
Bing
AI Engineering with Chip Huyen
Listen to this episode from The Pragmatic Engineer on Spotify. On today’s episode of The Pragmatic Engineer, I’m joined by Chip Huyen, a computer scientist, author of the freshly published O’Reilly book AI Engineering, and an expert in applied machine learning. Chip has worked as a researcher at Netflix, was a core developer at NVIDIA (building NeMo, NVIDIA’s GenAI framework), and co-founded Claypot AI. She also taught Machine Learning at Stanford University. In this conversation, we dive into the evolving field of AI Engineering and explore key insights from Chip’s book, including: • How AI Engineering differs from Machine Learning Engineering • Why fine-tuning is usually not a tactic you’ll want (or need) to use • The spectrum of solutions to customer support problems – some not even involving AI! • The challenges of LLM evals (evaluations) • Why project-based learning is valuable—but even better when paired with structured learning • Exciting potential use cases for AI in education and entertainment • And more! — Brought to you by: • Swarmia — The engineering intelligence platform for modern software organizations. • Graphite — The AI developer productivity platform. • Vanta — Automate compliance and simplify security with Vanta. — The Pragmatic Engineer deepdives relevant for this episode: • Applied AI Software Engineering: RAG https://newsletter.pragmaticengineer.com/p/rag • How do AI software engineering agents work? https://newsletter.pragmaticengineer.com/p/ai-coding-agents • AI Tooling for Software Engineers in 2024: Reality Check https://newsletter.pragmaticengineer.com/p/ai-tooling-2024 • IDEs with GenAI features that Software Engineers love https://newsletter.pragmaticengineer.com/p/ide-that-software-engineers-love — Where to find Chip Huyen: • X: https://x.com/chipro • LinkedIn: https://www.linkedin.com/in/chiphuyen/ • Website: https://huyenchip.com/ — Where to find Gergely Orosz: • X: https://x.com/GergelyOrosz • LinkedIn: https://www.linkedin.com/in/gergelyorosz/ • Bluesky: https://bsky.app/profile/gergely.pragmaticengineer.com • Newsletter and blog: https://www.pragmaticengineer.com/ — In this episode, we cover: (00:00) Intro (01:31) A quick overview of AI Engineering (06:45) How Chip ensured her book stays current amidst the rapid advancements in AI (11:35) A definition of AI Engineering and how it differs from Machine Learning Engineering (18:15) Simple first steps in building AI applications (24:38) An explanation of BM25 (retrieval system) (25:28) The problems associated with fine-tuning (29:40) Simple customer support solutions for rolling out AI thoughtfully (35:29) Chip’s thoughts on staying focused on the problem (37:04) The challenge in evaluating AI systems (40:03) Use cases in evaluating AI (43:09) The importance of prioritizing users’ needs and experience (48:09) Common mistakes made with Gen AI (53:57) A case for systematic problem solving (54:57) Project-based learning vs. structured learning (1:00:07) Why AI is not the end of engineering (1:04:56) How AI is helping education and the future use cases we might see (1:08:58) Rapid fire round — See the transcript and other references from the episode at https://newsletter.pragmaticengineer.com/podcast — Production and marketing by Pen Name https://penname.co/. For inquiries about sponsoring the podcast, email [email protected].
DuckDuckGo
AI Engineering with Chip Huyen
Listen to this episode from The Pragmatic Engineer on Spotify. On today’s episode of The Pragmatic Engineer, I’m joined by Chip Huyen, a computer scientist, author of the freshly published O’Reilly book AI Engineering, and an expert in applied machine learning. Chip has worked as a researcher at Netflix, was a core developer at NVIDIA (building NeMo, NVIDIA’s GenAI framework), and co-founded Claypot AI. She also taught Machine Learning at Stanford University. In this conversation, we dive into the evolving field of AI Engineering and explore key insights from Chip’s book, including: • How AI Engineering differs from Machine Learning Engineering • Why fine-tuning is usually not a tactic you’ll want (or need) to use • The spectrum of solutions to customer support problems – some not even involving AI! • The challenges of LLM evals (evaluations) • Why project-based learning is valuable—but even better when paired with structured learning • Exciting potential use cases for AI in education and entertainment • And more! — Brought to you by: • Swarmia — The engineering intelligence platform for modern software organizations. • Graphite — The AI developer productivity platform. • Vanta — Automate compliance and simplify security with Vanta. — The Pragmatic Engineer deepdives relevant for this episode: • Applied AI Software Engineering: RAG https://newsletter.pragmaticengineer.com/p/rag • How do AI software engineering agents work? https://newsletter.pragmaticengineer.com/p/ai-coding-agents • AI Tooling for Software Engineers in 2024: Reality Check https://newsletter.pragmaticengineer.com/p/ai-tooling-2024 • IDEs with GenAI features that Software Engineers love https://newsletter.pragmaticengineer.com/p/ide-that-software-engineers-love — Where to find Chip Huyen: • X: https://x.com/chipro • LinkedIn: https://www.linkedin.com/in/chiphuyen/ • Website: https://huyenchip.com/ — Where to find Gergely Orosz: • X: https://x.com/GergelyOrosz • LinkedIn: https://www.linkedin.com/in/gergelyorosz/ • Bluesky: https://bsky.app/profile/gergely.pragmaticengineer.com • Newsletter and blog: https://www.pragmaticengineer.com/ — In this episode, we cover: (00:00) Intro (01:31) A quick overview of AI Engineering (06:45) How Chip ensured her book stays current amidst the rapid advancements in AI (11:35) A definition of AI Engineering and how it differs from Machine Learning Engineering (18:15) Simple first steps in building AI applications (24:38) An explanation of BM25 (retrieval system) (25:28) The problems associated with fine-tuning (29:40) Simple customer support solutions for rolling out AI thoughtfully (35:29) Chip’s thoughts on staying focused on the problem (37:04) The challenge in evaluating AI systems (40:03) Use cases in evaluating AI (43:09) The importance of prioritizing users’ needs and experience (48:09) Common mistakes made with Gen AI (53:57) A case for systematic problem solving (54:57) Project-based learning vs. structured learning (1:00:07) Why AI is not the end of engineering (1:04:56) How AI is helping education and the future use cases we might see (1:08:58) Rapid fire round — See the transcript and other references from the episode at https://newsletter.pragmaticengineer.com/podcast — Production and marketing by Pen Name https://penname.co/. For inquiries about sponsoring the podcast, email [email protected].
General Meta Tags
15- titleAI Engineering with Chip Huyen - The Pragmatic Engineer | Podcast on Spotify
- charsetutf-8
- X-UA-CompatibleIE=9
- viewportwidth=device-width, initial-scale=1
- fb:app_id174829003346
Open Graph Meta Tags
154- og:site_nameSpotify
- og:titleAI Engineering with Chip Huyen
- og:descriptionThe Pragmatic Engineer · Episode
- og:urlhttps://open.spotify.com/episode/6NXAUc23EraGXjijJ1MS3w
- og:typemusic.song
Twitter Meta Tags
5- twitter:site@spotify
- twitter:titleAI Engineering with Chip Huyen
- twitter:descriptionThe Pragmatic Engineer · Episode
- twitter:imagehttps://i.scdn.co/image/ab6765630000ba8a8d1a0ff3e4c66290c384c1a6
- twitter:cardsummary
Link Tags
31- alternatehttps://open.spotify.com/oembed?url=https%3A%2F%2Fopen.spotify.com%2Fepisode%2F6NXAUc23EraGXjijJ1MS3w
- alternateandroid-app://com.spotify.music/spotify/episode/6NXAUc23EraGXjijJ1MS3w
- canonicalhttps://open.spotify.com/episode/6NXAUc23EraGXjijJ1MS3w
- iconhttps://open.spotifycdn.com/cdn/images/favicon32.b64ecc03.png
- iconhttps://open.spotifycdn.com/cdn/images/favicon16.1c487bff.png
Website Locales
2en
https://open.spotify.com/episode/6NXAUc23EraGXjijJ1MS3wx-default
https://open.spotify.com/episode/6NXAUc23EraGXjijJ1MS3w
Links
9- https://open.spotify.com
- https://open.spotify.com/episode/1ivzHH9RWciXe4O1rKtldf
- https://open.spotify.com/episode/26srQ8CUMcu9fqiOqC6I9j
- https://open.spotify.com/episode/4KBk0d5m9k8GYdiksaWgmY
- https://open.spotify.com/episode/4MgI740flMNvvU5BMYxcp0