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Fragmented - AI Developer Podcast

310 - Mitchell Hashimoto on Ghostty & His Agentic Coding Workflow - Fragmented | AI Developer Podcast 309 - Background Agents - Fragmented | AI Developer Podcast 307 - Harness Engineering - the hard part of AI coding - Fragmented | AI Developer Podcast 306 - Keeping your agent instructions in sync and effective - Fragmented | AI Developer Podcast 305 - Subagents explained: What they are, when (not) to spawn them - Fragmented | AI Developer Podcast 304 - Agent Skills - when to use them and why they matter - Fragmented | AI Developer Podcast 303 - How LLMs Work - the 20 minute explainer - Fragmented | AI Developer Podcast 302 - MCPs Explained - what they are and when to use them - Fragmented | AI Developer Podcast 301 - The AI coding ladder - Fragmented | AI Developer Podcast 300 - From Vibe coding to Software engineering 257 - Future of AndroidDev in an AI world with Vinay Gaba - Fragmented | AI Developer Podcast 256 - Rapid prototyping with Kotlin - Fragmented | AI Developer Podcast 255 - Data Oriented Programming - Fragmented | AI Developer Podcast 254 - 8× faster 5× memory savings with Dan Rusu’s Immutable Arrays - Fragmented | AI Developer Podcast 253 - logcat - a new look at logging with Piwai from Square - Fragmented | AI Developer Podcast 252 - Everyone needs a starter template - Fragmented | AI Developer Podcast 251 - There 250 - Bittersweet beginnings - Fragmented | AI Developer Podcast Fragmented | AI Developer Podcast 202: Dagger on the Anvil with Ralf Wondratschek - Fragmented | AI Developer Podcast 201: State of the Testing Union with Valera Zakharov - Fragmented | AI Developer Podcast
308 - How Image Diffusion Models Work - the 20 minute explainer - Fragmented | AI Developer Podcast
Kaushik Gopal · 2026-03-24 · via Fragmented - AI Developer Podcast

You already know how LLMs work — text into tokens, tokens into math, predict the next one. Image generation uses the same broad ideas but flips the training game: instead of predicting the next token, the model learns to predict and remove noise. Starting from pure static, it chips away — step by step — until a coherent image emerges. What does Michelangelo have to do with any of this? More than you’d think. This is how image diffusion models work, in 20 minutes.

Full shownotes at fragmentedpodcast.com.

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