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    <title>sample-library</title>
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    <updated>2026-04-30T22:26:23+00:00</updated>
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            <entry>
            <id>https://links.biapy.com/links/5394</id>
            <title type="text"><![CDATA[Polymath]]></title>
            <link rel="alternate" href="https://github.com/samim23/polymath" />
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            <author>
                <name><![CDATA[Biapy]]></name>
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            <summary type="text">
                <![CDATA[Convert any music library into a music production sample-library with ML.

Polymath uses machine learning to convert any music library (e.g from Hard-Drive or YouTube) into a music production sample-library. The tool automatically separates songs into stems (beats, bass, etc.), quantizes them to the same tempo and beat-grid (e.g. 120bpm), analyzes musical structure (e.g. verse, chorus, etc.), key (e.g C4, E3, etc.) and other infos (timbre, loudness, etc.), and converts audio to midi. The result is a searchable sample library that streamlines the workflow for music producers, DJs, and ML audio developers.]]>
            </summary>
            <updated>2025-08-29T06:56:05+00:00</updated>
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