@mattpocockuk: For folks following my personal wiki journey, it's going extremely well. Every weekday I have a 15-minute podcast on th…
Summary
Matt Pocock describes his personal wiki journey, using AI to generate daily podcasts from multiple data sources and build on-demand deep dives, along with a custom CLI for agents to help create course material, highlighting the power of owning your data.
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Cached at: 07/10/26, 10:18 PM
For folks following my personal wiki journey, it’s going extremely well.
Every weekday I have a 15-minute podcast on the new stuff coming into the wiki (from X, Discord, Slack, Gmail, GitHub issues etc). This acts both as a “cool, new stuff” listen but also a vibe check on how well the stuff in the wiki reflects reality.
I’m now building on-demand podcasts, so I can get a wiki deep-dive on a topic before I make a video on it.
I have a custom CLI that agents can call from the wiki to investigate my course material/AI Hero posts. This is invaluable in them helping me flesh out my new course before filming.
Overall, I had no idea how powerful owning your data could be. It’s changing the way I think about my business going forward and opening up all sorts of loop possibilities.
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