<?xml version="1.0" encoding="utf-8"?>
<rss version="2.0" xmlns:atom="http://www.w3.org/2005/Atom">
    <channel>
        <title>Training an LLM from Scratch, Locally — Angelos Perivolaropoulos, ElevenLabs</title>
        <link>https://video.ut0pia.org/videos/watch/91a3b18a-d0cf-4c57-b760-7faad59a2e30</link>
        <description>Training an LLM from scratch on a local machine sounds unreasonable, until it isn't. In this workshop, Angelos Perivolaropoulos from ElevenLabs walks through what it actually takes to train a language model locally, with a practical focus on the tooling, constraints, and engineering tradeoffs involved. If you want a hands-on look at small-scale LLM training beyond the cloud-heavy default, this is a useful deep dive. Speaker info: https://www.linkedin.com/in/angelos-perivolaropoulos/, https://github.com/angelos-p</description>
        <lastBuildDate>Tue, 05 May 2026 12:16:08 GMT</lastBuildDate>
        <docs>https://validator.w3.org/feed/docs/rss2.html</docs>
        <generator>PeerTube - https://video.ut0pia.org</generator>
        <image>
            <title>Training an LLM from Scratch, Locally — Angelos Perivolaropoulos, ElevenLabs</title>
            <url>https://video.ut0pia.org/lazy-static/avatars/0287a09a-aae7-4840-9843-b416426e7046.webp</url>
            <link>https://video.ut0pia.org/videos/watch/91a3b18a-d0cf-4c57-b760-7faad59a2e30</link>
        </image>
        <copyright>All rights reserved, unless otherwise specified in the terms specified at https://video.ut0pia.org/about and potential licenses granted by each content's rightholder.</copyright>
        <atom:link href="https://video.ut0pia.org/feeds/video-comments.xml?videoId=91a3b18a-d0cf-4c57-b760-7faad59a2e30" rel="self" type="application/rss+xml"/>
    </channel>
</rss>