Joined March 2018
563 Photos and videos
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Listen to pavement_logic by JnKSOUNDWORKS on #SoundCloud on.soundcloud.com/JAyg1GWfSE…

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My last hours with Fable: I was building this movement parkour sim before it went down... Impressed by its autonomy: built its own self-verifying harness with its own rubric for how a movement should feel. When a new movement was added it could tell on its own what felt right or wrong until it felt 100% right without me in the loop (and it was very good at it) Fable was more than just another model iteration imo. For the short (but intense) time it was available, it felt like playing with clay: ideas became code with almost no friction and the line between both became blurry. More than ever: open source MUST win. I don't want a world where intelligence is centralized and you're stuck with a hand saw while others have a chainsaw.
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Fable has solved 3D worldbuilding... utterly insane. This is all completely custom-built ThreeJs, running in the browser.
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Guess what? local ai for everyone (: we did it local.ai
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Jun 10
Prince William will speak today on the Innovation to Impact panel at London Tech Week, alongside some of the world’s leading tech voices, about how Homewards can help businesses reimagine and prevent homelessness 🏡
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Yesterday at London Tech Week we announced the Billion Pound Build competition. Teams can enter to secure a share of £1M in Computer credits by using Perplexity Computer to build their company. The pitch phase is open now and closes on 6 July.
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Jun 3
Ported Google's Draco decoder to pure JavaScript. mrdoob.github.io/draco.js/ 4.3× smaller than the WASM build, byte-for-byte identical output, often faster once you factor in load, init and parse.
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