TDLS - Announcing Fast Track Stream

Published on ● Video Link: https://www.youtube.com/watch?v=1jkmNnHs18M



Duration: 0:57
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We are opening a new TDLS stream, called Fast Track, which will aim to deliver presentations on important and trending machine learning research papers soon after they are released. In our main stream, we build in time for paper revisions to settle and for speakers to prepare, but when new papers seem particularly important to the machine learning community, we want to discuss them sooner! Hence, the Fast Track stream. If you see a recent paper that is getting a lot of coverage in the machine learning community or press, please leave a comment and we will try to cover it as soon as possible




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deep learning
reinforcement learning
GAN
TDLS
trending papers