Channel Gating for Cheaper and More Accurate Neural Nets with Babak Ehteshami Bejnordi - #385
Today we’re joined by Babak Ehteshami Bejnordi, a Research Scientist at Qualcomm.
Babak works closely with former guest Max Welling and is currently focused on conditional computation, which is the main driver for today’s conversation. We dig into a few papers in great detail including one from this year’s CVPR conference, Conditional Channel Gated Networks for Task-Aware Continual Learning.
We also discuss the paper TimeGate: Conditional Gating of Segments in Long-range Activities, and another paper from this year’s ICLR conference, Batch-Shaping for Learning Conditional Channel Gated Networks. We cover how gates are used to drive efficiency and accuracy, while decreasing model size, how this research manifests into actual products, and more!
For more information on the episode, visit twimlai.com/talk/385. To follow along with the CVPR 2020 Series, visit twimlai.com/cvpr20.
Thanks to Qualcomm for sponsoring today’s episode and the CVPR 2020 Series!
Create your
podcast in
minutes
It is Free