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    <title>hugging-face</title>
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    <updated>2026-06-28T04:57:55+00:00</updated>
    <id>https://links.biapy.com/guest/tags/806/feed</id>
            <entry>
            <id>https://links.biapy.com/links/10002</id>
            <title type="text"><![CDATA[🤗 Hub client library]]></title>
            <link rel="alternate" href="https://huggingface.co/docs/huggingface_hub/index" />
            <link rel="via" type="application/atom+xml" href="https://links.biapy.com/links/10002"/>
            <author>
                <name><![CDATA[Biapy]]></name>
            </author>
            <summary type="text">
                <![CDATA[The huggingface_hub library allows you to interact with the Hugging Face Hub, a machine learning platform for creators and collaborators. Discover pre-trained models and datasets for your projects or play with the hundreds of machine learning apps hosted on the Hub. You can also create and share your own models and datasets with the community. The huggingface_hub library provides a simple way to do all these things with Python.

- [🤗 Python client for the Huggingface Hub @ GitHub](https://github.com/huggingface/huggingface_hub).
- [Hugging Face JS libraries @ GitHub](https://github.com/huggingface/huggingface.js).

Related contents:

- [Tiny Agents in Python: an MCP-powered agent in ~70 lines of code @ Hugging Face](https://huggingface.co/blog/python-tiny-agents).
- [Tiny Agents: an MCP-powered agent in 50 lines of code @ Hugging Face](https://huggingface.co/blog/tiny-agents).]]>
            </summary>
            <updated>2025-09-04T11:53:43+00:00</updated>
        </entry>
            <entry>
            <id>https://links.biapy.com/links/10001</id>
            <title type="text"><![CDATA[tiny-agents]]></title>
            <link rel="alternate" href="https://huggingface.co/datasets/tiny-agents/tiny-agents" />
            <link rel="via" type="application/atom+xml" href="https://links.biapy.com/links/10001"/>
            <author>
                <name><![CDATA[Biapy]]></name>
            </author>
            <summary type="text">
                <![CDATA[In this short article, I will walk you through how I implemented it in Typescript (JS), how you can adopt MCP too and how it&amp;#039;s going to make Agentic AI way simpler going forward.

Related contents:

- [Tiny Agents in Python: an MCP-powered agent in ~70 lines of code @ Hugging Face](https://huggingface.co/blog/python-tiny-agents).
- [Tiny Agents: an MCP-powered agent in 50 lines of code @ Hugging Face](https://huggingface.co/blog/tiny-agents).]]>
            </summary>
            <updated>2025-09-04T11:51:28+00:00</updated>
        </entry>
            <entry>
            <id>https://links.biapy.com/links/732</id>
            <title type="text"><![CDATA[Open Computer Agent]]></title>
            <link rel="alternate" href="https://huggingface.co/spaces/smolagents/computer-agent" />
            <link rel="via" type="application/atom+xml" href="https://links.biapy.com/links/732"/>
            <author>
                <name><![CDATA[Biapy]]></name>
            </author>
            <summary type="text">
                <![CDATA[a Hugging Face Space by smolagents.

open source agent taking control of a computer desktop.

Related contents:

- [Open Computer Agent - J&amp;#039;ai testé le robot virtuel open source qui utilise votre PC à votre place @ Korben :fr:](https://korben.info/open-computer-agent-robot-virtuel-ia-test.html).]]>
            </summary>
            <updated>2025-08-28T17:59:17+00:00</updated>
        </entry>
            <entry>
            <id>https://links.biapy.com/links/1422</id>
            <title type="text"><![CDATA[Spaces @ Hugging Face]]></title>
            <link rel="alternate" href="https://huggingface.co/spaces" />
            <link rel="via" type="application/atom+xml" href="https://links.biapy.com/links/1422"/>
            <author>
                <name><![CDATA[Biapy]]></name>
            </author>
            <summary type="text">
                <![CDATA[The AI App Directory.

Related contents:

- [\#106 - Les news web dev pour février 2025 @ Double Slash :fr:](https://double-slash.dev/podcasts/news-feb25/).]]>
            </summary>
            <updated>2025-08-28T19:53:15+00:00</updated>
        </entry>
            <entry>
            <id>https://links.biapy.com/links/1666</id>
            <title type="text"><![CDATA[Cohere]]></title>
            <link rel="alternate" href="https://cohere.com/" />
            <link rel="via" type="application/atom+xml" href="https://links.biapy.com/links/1666"/>
            <author>
                <name><![CDATA[Biapy]]></name>
            </author>
            <summary type="text">
                <![CDATA[The World&amp;#039;s Leading AI Platform for Enterprise.
The all-in-one platform for private and secure AI.

Cohere brings you cutting-edge multilingual models, advanced retrieval, and an AI workspace tailored for the modern enterprise — all within a single, secure platform.

Related contents:

- [You need more than a vector database @ Redis](https://redis.io/blog/you-need-more-than-a-vector-database/).]]>
            </summary>
            <updated>2025-08-28T20:33:37+00:00</updated>
        </entry>
            <entry>
            <id>https://links.biapy.com/links/4172</id>
            <title type="text"><![CDATA[Transformers.js]]></title>
            <link rel="alternate" href="https://github.com/xenova/transformers.js" />
            <link rel="via" type="application/atom+xml" href="https://links.biapy.com/links/4172"/>
            <author>
                <name><![CDATA[Biapy]]></name>
            </author>
            <summary type="text">
                <![CDATA[State-of-the-art Machine Learning for the web. Run 🤗 Transformers directly in your browser, with no need for a server!

Transformers.js is designed to be functionally equivalent to Hugging Face&amp;#039;s transformers python library, meaning you can run the same pretrained models using a very similar API. These models support common tasks in different modalities, such as:]]>
            </summary>
            <updated>2025-08-29T03:32:06+00:00</updated>
        </entry>
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