<?xml version="1.0" encoding="UTF-8"?>
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    <title>training</title>
    <link rel="self" type="application/atom+xml" href="https://links.biapy.com/guest/tags/1331/feed"/>
    <updated>2026-04-25T10:23:58+00:00</updated>
    <id>https://links.biapy.com/guest/tags/1331/feed</id>
            <entry>
            <id>https://links.biapy.com/links/12445</id>
            <title type="text"><![CDATA[GuppyLM]]></title>
            <link rel="alternate" href="https://github.com/arman-bd/guppylm" />
            <link rel="via" type="application/atom+xml" href="https://links.biapy.com/links/12445"/>
            <author>
                <name><![CDATA[Biapy]]></name>
            </author>
            <summary type="text">
                <![CDATA[A ~9M parameter LLM that talks like a small fish.

This project exists to show that training your own language model is not magic. No PhD required. No massive GPU cluster. One Colab notebook, 5 minutes, and you have a working LLM that you built from scratch — data generation, tokenizer, model architecture, training loop, and inference. If you can run a notebook, you can train a language model.]]>
            </summary>
            <updated>2026-04-07T07:32:37+00:00</updated>
        </entry>
            <entry>
            <id>https://links.biapy.com/links/12150</id>
            <title type="text"><![CDATA[autoresearch]]></title>
            <link rel="alternate" href="https://github.com/karpathy/autoresearch" />
            <link rel="via" type="application/atom+xml" href="https://links.biapy.com/links/12150"/>
            <author>
                <name><![CDATA[Biapy]]></name>
            </author>
            <summary type="text">
                <![CDATA[AI agents running research on single-GPU nanochat training automatically.



The idea: give an AI agent a small but real LLM training setup and let it experiment autonomously overnight. It modifies the code, trains for 5 minutes, checks if the result improved, keeps or discards, and repeats. You wake up in the morning to a log of experiments and (hopefully) a better model.

Related contents:

- [Autoresearch on an old research idea @ Yogesh Kumar](https://ykumar.me/blog/eclip-autoresearch/).]]>
            </summary>
            <updated>2026-03-24T13:31:00+00:00</updated>
        </entry>
            <entry>
            <id>https://links.biapy.com/links/12044</id>
            <title type="text"><![CDATA[Label Studio]]></title>
            <link rel="alternate" href="https://labelstud.io/" />
            <link rel="via" type="application/atom+xml" href="https://links.biapy.com/links/12044"/>
            <author>
                <name><![CDATA[Biapy]]></name>
            </author>
            <summary type="text">
                <![CDATA[Open Source Data Labeling.

The most flexible data labeling platform to fine-tune LLMs, prepare training data, or evaluate AI systems.
 Label Studio is a multi-type data labeling and annotation tool with standardized output format.
Label Studio is an open source data labeling tool. It lets you label data types like audio, text, images, videos, and time series with a simple and straightforward UI and export to various model formats. It can be used to prepare raw data or improve existing training data to get more accurate ML models.

- [Label Studio @ GitHub](https://github.com/HumanSignal/label-studio/).]]>
            </summary>
            <updated>2026-03-06T14:56:24+00:00</updated>
        </entry>
            <entry>
            <id>https://links.biapy.com/links/12041</id>
            <title type="text"><![CDATA[AReaL]]></title>
            <link rel="alternate" href="https://inclusionai.github.io/AReaL/en/intro.html" />
            <link rel="via" type="application/atom+xml" href="https://links.biapy.com/links/12041"/>
            <author>
                <name><![CDATA[Biapy]]></name>
            </author>
            <summary type="text">
                <![CDATA[Lightning-Fast RL for LLM Reasoning and Agents. Made Simple &amp;amp; Flexible. 

AReaL is an open-source fully asynchronous reinforcement learning training system for large reasoning and agentic models, developed by members from Tsinghua IIIS and the AReaL Team at Ant Group. Built upon the open-source project ReaLHF, we are fully committed to open-source principles by providing the training details, data, and infrastructure required to reproduce our results, along with the models themselves. AReaL aims to help everyone build their own AI agents easily and affordably. Our team loves milk tea because it&amp;#039;s delicious, customizable, and affordable—we hope you enjoy our project just as much as you&amp;#039;d enjoy real milk tea. Cheers!

- [AReaL @ GitHub](https://github.com/inclusionAI/AReaL).]]>
            </summary>
            <updated>2026-03-06T12:35:40+00:00</updated>
        </entry>
            <entry>
            <id>https://links.biapy.com/links/11201</id>
            <title type="text"><![CDATA[Agent-lightning]]></title>
            <link rel="alternate" href="https://microsoft.github.io/agent-lightning/stable/" />
            <link rel="via" type="application/atom+xml" href="https://links.biapy.com/links/11201"/>
            <author>
                <name><![CDATA[Biapy]]></name>
            </author>
            <summary type="text">
                <![CDATA[Agent Lightning is the absolute trainer to light up AI agents.

agent-lightning is an open-source framework for training and optimizing AI agents—enabling reinforcement learning (RL), automatic prompt optimization, supervised fine-tuning, and more—without requiring substantial changes to existing agent code. It works with virtually any agent framework (e.g., LangChain, OpenAI Agents SDK, and AutoGen) and provides modular components to collect agent execution data and iteratively improve agent performance via a decoupled RL training loop.

- [Agent Lightning @ GitHub](https://github.com/microsoft/agent-lightning).]]>
            </summary>
            <updated>2026-01-21T13:03:08+00:00</updated>
        </entry>
            <entry>
            <id>https://links.biapy.com/links/1925</id>
            <title type="text"><![CDATA[Mellivora]]></title>
            <link rel="alternate" href="https://github.com/Nakiami/mellivora?tab=readme-ov-file" />
            <link rel="via" type="application/atom+xml" href="https://links.biapy.com/links/1925"/>
            <author>
                <name><![CDATA[Biapy]]></name>
            </author>
            <summary type="text">
                <![CDATA[Mellivora is a CTF engine written in PHP.]]>
            </summary>
            <updated>2025-08-28T21:17:05+00:00</updated>
        </entry>
            <entry>
            <id>https://links.biapy.com/links/1987</id>
            <title type="text"><![CDATA[AgileFingers]]></title>
            <link rel="alternate" href="https://agilefingers.com/fr" />
            <link rel="via" type="application/atom+xml" href="https://links.biapy.com/links/1987"/>
            <author>
                <name><![CDATA[Biapy]]></name>
            </author>
            <summary type="text">
                <![CDATA[Touch typing is a method of typing that uses all your fingers without needing to look at the keyboard. It is a fast, efficient way of typing. AgileFingers is a free online practice that teaches you how to master this technique, with fast typing exercises broken down into lessons, texts, and games. Additionally, there is a typing test to measure your progress.

Related contents:

- [Apprends à taper en mode dactylo ou jette ton clavier @ Code avec Maximilien&amp;#039;s YouTube :fr:](https://www.youtube.com/watch?v=BP9k2t72h24).]]>
            </summary>
            <updated>2025-08-28T21:28:13+00:00</updated>
        </entry>
            <entry>
            <id>https://links.biapy.com/links/2145</id>
            <title type="text"><![CDATA[CSS Flexbox Playground]]></title>
            <link rel="alternate" href="https://yoavsbg.github.io/css-flexbox-playground/" />
            <link rel="via" type="application/atom+xml" href="https://links.biapy.com/links/2145"/>
            <author>
                <name><![CDATA[Biapy]]></name>
            </author>
            <summary type="text">
                <![CDATA[Interactive CSS Flexbox Learning Tool.

Experiment with different flex properties to understand how they affect layout. Adjust the controls below to see changes in real-time and copy the generated CSS code.

- [CSS Flexbox Playground @ GitHub](https://github.com/yoavsbg/css-flexbox-playground).]]>
            </summary>
            <updated>2025-08-28T21:53:26+00:00</updated>
        </entry>
            <entry>
            <id>https://links.biapy.com/links/2153</id>
            <title type="text"><![CDATA[vulnerable-AD]]></title>
            <link rel="alternate" href="https://github.com/safebuffer/vulnerable-AD" />
            <link rel="via" type="application/atom+xml" href="https://links.biapy.com/links/2153"/>
            <author>
                <name><![CDATA[Biapy]]></name>
            </author>
            <summary type="text">
                <![CDATA[Create a vulnerable active directory that&amp;#039;s allowing you to test most of the active directory attacks in a local lab]]>
            </summary>
            <updated>2025-08-28T21:56:28+00:00</updated>
        </entry>
            <entry>
            <id>https://links.biapy.com/links/2164</id>
            <title type="text"><![CDATA[keybr.com]]></title>
            <link rel="alternate" href="https://www.keybr.com/" />
            <link rel="via" type="application/atom+xml" href="https://links.biapy.com/links/2164"/>
            <author>
                <name><![CDATA[Biapy]]></name>
            </author>
            <summary type="text">
                <![CDATA[This web application will help you to learn touch typing which means typing through muscle memory without using your eyesight to find the keys. It can improve your typing speed and accuracy dramatically. The opposite is hunt and peck typing, a method of typing in which you look at the keyboard instead of the screen, and use only the index fingers.

- [keybr.com @ GitHub](https://github.com/aradzie/keybr.com/).]]>
            </summary>
            <updated>2025-08-28T21:56:33+00:00</updated>
        </entry>
            <entry>
            <id>https://links.biapy.com/links/2165</id>
            <title type="text"><![CDATA[Monkeytype]]></title>
            <link rel="alternate" href="https://monkeytype.com/" />
            <link rel="via" type="application/atom+xml" href="https://links.biapy.com/links/2165"/>
            <author>
                <name><![CDATA[Biapy]]></name>
            </author>
            <summary type="text">
                <![CDATA[A minimalistic, customizable typing test.

The most customizable typing website with a minimalistic design and a ton of features. Test yourself in various modes, track your progress and improve your speed. 

Monkeytype is a minimalistic and customizable typing test. It features many test modes, an account system to save your typing speed history, and user-configurable features such as themes, sounds, a smooth caret, and more. Monkeytype attempts to emulate a natural typing experience during a typing test by unobtrusively presenting the text prompts and displaying typed characters in place, providing straightforward, real-time feedback on typos, speed, and accuracy.

- [Monkeytype @ GitHub](https://github.com/monkeytypegame/monkeytype).]]>
            </summary>
            <updated>2025-08-28T21:57:26+00:00</updated>
        </entry>
            <entry>
            <id>https://links.biapy.com/links/2166</id>
            <title type="text"><![CDATA[Ngram Type]]></title>
            <link rel="alternate" href="https://ranelpadon.github.io/ngram-type/" />
            <link rel="via" type="application/atom+xml" href="https://links.biapy.com/links/2166"/>
            <author>
                <name><![CDATA[Biapy]]></name>
            </author>
            <summary type="text">
                <![CDATA[Touch typing trainer using N-grams as data source, with options to customize the auto-generated lessons and specify the minimum typing performance needed. There are sound/color effects as well. 

- [Ngram Type @ GitHub](https://github.com/ranelpadon/ngram-type).]]>
            </summary>
            <updated>2025-08-28T21:57:26+00:00</updated>
        </entry>
            <entry>
            <id>https://links.biapy.com/links/3164</id>
            <title type="text"><![CDATA[Meta Lingua]]></title>
            <link rel="alternate" href="https://github.com/facebookresearch/lingua" />
            <link rel="via" type="application/atom+xml" href="https://links.biapy.com/links/3164"/>
            <author>
                <name><![CDATA[Biapy]]></name>
            </author>
            <summary type="text">
                <![CDATA[Meta Lingua: a lean, efficient, and easy-to-hack codebase to research LLMs. 

Meta Lingua is a minimal and fast LLM training and inference library designed for research. Meta Lingua uses easy-to-modify PyTorch components in order to try new architectures, losses, data, etc. We aim for this code to enable end to end training, inference and evaluation as well as provide tools to better understand speed and stability. While Meta Lingua is currently under development, we provide you with multiple apps to showcase how to use this codebase.]]>
            </summary>
            <updated>2025-08-29T00:44:40+00:00</updated>
        </entry>
            <entry>
            <id>https://links.biapy.com/links/3773</id>
            <title type="text"><![CDATA[InstructLab]]></title>
            <link rel="alternate" href="https://instructlab.ai/" />
            <link rel="via" type="application/atom+xml" href="https://links.biapy.com/links/3773"/>
            <author>
                <name><![CDATA[Biapy]]></name>
            </author>
            <summary type="text">
                <![CDATA[A new community-based approach to build truly open-source LLMs.

InstructLab Command-Line Interface. Use this to chat with a model and execute the InstructLab workflow to train a model using custom taxonomy data. 

- [InstructLab 🐶 (ilab) @ GitHub](https://github.com/instructlab/instructlab).
- [Spécial été 2024 : retour sur la conférence WeAreDevs et les tendances Tech @ AXOPEN YouTube :fr:](https://www.youtube.com/watch?v=daVHfuM1ios).
- [InstructLab: Advancing generative AI through open source @ Red Hat Developer](https://developers.redhat.com/articles/2024/05/07/instructlab-open-source-generative-ai).]]>
            </summary>
            <updated>2025-08-29T02:25:33+00:00</updated>
        </entry>
            <entry>
            <id>https://links.biapy.com/links/4203</id>
            <title type="text"><![CDATA[Vulhub]]></title>
            <link rel="alternate" href="https://vulhub.org/" />
            <link rel="via" type="application/atom+xml" href="https://links.biapy.com/links/4203"/>
            <author>
                <name><![CDATA[Biapy]]></name>
            </author>
            <summary type="text">
                <![CDATA[Docker-Compose file for vulnerability environment.

Vulhub is an open-source collection of pre-built vulnerable docker environments. No pre-existing knowledge of docker is required, just execute two simple commands and you have a vulnerable environment.

- [Vulhub @ GitHub](https://github.com/vulhub/vulhub).

Related contents:

- [Vulhub Playground @ GitHub](https://github.com/supdevinci/vulhub-labs/).
- [ 🎯 ON A CRÉÉ NOTRE LAB DE VULNÉRABILITÉS SUR DOCKER 🎯 @ Laurent Biagotti&amp;#039;s LinkedIn :fr:](https://www.linkedin.com/posts/laurent-biagiotti-19779284_on-a-cr%C3%A9%C3%A9-notre-lab-de-vuln%C3%A9rabilit%C3%A9s-activity-7282644725168238593-k9nl/).]]>
            </summary>
            <updated>2025-08-29T03:38:10+00:00</updated>
        </entry>
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