Published Jul 21, 2020
Invariance, Geometry and Deep Neural Networks with Pavan Turaga - #386 (Video)
Pavan Turaga delves into the convergence of physics-based constraints and geometric principles to tackle data scarcity in deep learning, enhancing AI model robustness and exploring the potentials and limitations of one-shot learning.

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