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    <title>ml-pipeline</title>
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    <updated>2026-04-30T23:25:54+00:00</updated>
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            <title type="text"><![CDATA[xorq]]></title>
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                <name><![CDATA[Biapy]]></name>
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            <summary type="text">
                <![CDATA[ML Pipelines From Another Planet.Build out-of-this-world ML pipelines.

Run-anywhere computational framework for Python that simplifies and accelerates ML workflows and development. 
xorq is a deferred computational framework for building, running, and serving pandas groupby-apply style pipelines common in ML workflows. xorq is built on top of Ibis and Apache DataFusion.

- [xorq @ GitHub](https://github.com/xorq-labs/xorq).
- [xorq documentation](https://docs.xorq.dev/overview).]]>
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            <updated>2025-08-28T19:07:53+00:00</updated>
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