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    <title>Deep Learning in Computer Networks</title>
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    <description>Reflections on where deep learning truly fits in computer networking—from GNNs for topology modeling to ML-based traffic engineering—and why it is not (yet) a silver bullet for Internet-wide routing.</description>
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    <author>yejincho@usc.edu (Yejin Cho)</author>
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