The AI Practitioner Podcast
Prefer reading instead? The full article is available here. The podcast is also available on Spotify [https://open.spotify.com/show/6MROBKvrjx0Mey8tHud5LX] and Apple Podcasts [https://podcasts.apple.com/us/podcast/the-ai-practitioner-podcast/id1830285899]. Subscribe to keep up with the latest drops. Most ML models answer one question: what is likely to happen? The harder question is what will change if you intervene. That gap is where causal reasoning begins. In this episode, we explore how constraint-based algorithms learn causal structure directly from data, and how LLMs can step in to resolve what statistics alone cannot. You’ll learn: * How PC, FCI, and RFCI discover causal graphs using conditional independence tests, and what assumptions each one makes. * How to encode domain knowledge as hard constraints, so the algorithm stops producing edges that are statistically plausible but practically nonsensical. * How LLMs can review and refine the output graph, resolving ambiguous orientations with domain reasoning when the data runs out of signal. By the end, you’ll have a clear picture of a three-layer pipeline that combines statistical discovery, expert constraints, and LLM review into a coherent approach to causal graph learning. If you’d rather read than listen, the full article (with diagrams, code examples, and implementation details) is available on Substack: 👉 Enjoyed this episode? Subscribe to The AI Practitioner to get future articles and podcasts delivered straight to your inbox. This is a public episode. If you would like to discuss this with other subscribers or get access to bonus episodes, visit aipractitioner.substack.com [https://aipractitioner.substack.com?utm_medium=podcast&utm_campaign=CTA_1]
12 episodios
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