The AI Dark Factory is ALIVE: A Codebase That Writes Its Own Code, Live
What happens when you tell an AI coding agent to write a codebase, review its own PRs, merge them, and keep going - with zero human code review along the way? I'm about to find out, in public, with all of you watching. In this livestream I'm finalizing the Dark Factory I've been building this week, powered by Archon (my open source AI coding orchestration platform). The target is a real application people can use - a RAG-powered agent platform that answers questions about my YouTube content. But I won't write a line of its code. Neither will anyone else! The factory will. Check out Archon: https://github.com/coleam00/Archon

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I Taught My Second Brain to Run Multi-Agent Coding Workflows (Live Session)

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Archon + Jira: Drag a Ticket, Get a Pull Request (Live Build)

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Building an AI Dark Factory: A Codebase That Writes Its Own Code, Live

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Full Archon Guide - Build AI Coding Harnesses That Actually Ship (LIVE)

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I Tested Both AI Memory Platforms So You Don't Have To (Backboard.io vs Mem0)

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PI Agent is SO MUCH Better Than I Thought!

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Claude Plans, Gemini Designs: One Workflow for Beautiful Frontends (LIVE)

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Pushing My Dark Factory Further with Kimi K2.6: A Codebase That Writes Its Own Code, Live

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The Complete AI Transformation Blueprint - Live Workshop

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Extreme Harness Engineering: 1M LOC, 1B toks/day, 0% human code or review — Ryan Lopopolo, OpenAI

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Exposing The Solid State Donut Battery. It's Over.

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Build a Complete Medical Chatbot with LLMs, LangChain, Pinecone, Flask & AWS 🔥

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RL for Agents Workshop - Deep Dive on Training Agents with RL and Open Source

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🔴LIVE - My AI Coding Workflow has 10x'd Again with Archon - See it in Action

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KI-Forscher: Vergiss ChatGPT, DAS ist der nächste Durchbruch! Weltmodelle erklärt (Daniel Cremers)

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Stop Renting Your AI. Here's How To Own It.

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Full Walkthrough: Workflow for AI Coding — Matt Pocock

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Something is jamming GPS over Europe. Here's what we found

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Harnesses in AI: A Deep Dive — Tejas Kumar, IBM

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