Josh Tenenbaum, MIT: Building machines that learn and think like people
Canonical Computation in Brains and Machines; Session 9 - Learning 2
ccbm2018.org
Видео Josh Tenenbaum, MIT: Building machines that learn and think like people канала CCBM2018
ccbm2018.org
Видео Josh Tenenbaum, MIT: Building machines that learn and think like people канала CCBM2018
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