[P] I built a simple gpu-aware single-node job scheduler for researchers / students
<table> <tr><td> <a href="https://www.reddit.com/r/MachineLearning/comments/1s9h9gr/p_i_built_a_simple_gpuaware_singlenode_job/"> <img src="https://preview.redd.it/8pwc9dkn8ksg1.png?width=140&height=82&auto=webp&s=c12564a62c1fd00646df23d9a8a1bd2522c151fa" alt="[P] I built a simple gpu-aware single-node job scheduler for researchers / students" title="[P] I built a simple gpu-aware single-node job scheduler for researchers / students" /> </a> </td><td> <!-- SC_OFF --><div class="md"><p>(reposting in my main account because anonymous account cannot post here.)</p> <p>Hi everyone!</p> <p>I’m a research engineer from a small lab in Asia, and I wanted to share a small project I’ve been using daily for the past few months.</p> <p>During paper prep and model development, I often end u
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