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      <description>• Turbostat With Linux 7.0 Can Report New L2 Cache Statistics The Turbostat command-line utility for reporting processor frequency and idle statistics along with other useful infor</description>
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      <description>• Introduces enriched category theory framework for modeling language expressions and their relationships. • Builds on Part 2&amp;rsquo;s set assignment to words, extending to statistical co</description>
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      <description>• Authors propose a new preprint exploring math behind large language models. • Question: how to model transition from probability distributions on text to syntax and semantics. •</description>
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