Drago Anguelov — Robustness, Safety, and Scalability at Waymo
Drago Anguelov is a Distinguished Scientist and Head of Research at Waymo, an autonomous driving technology company and subsidiary of Alphabet Inc.
We begin by discussing Drago's work on the original Inception architecture, winner of the 2014 ImageNet challenge and introduction of the inception module. Then, we explore milestones and current trends in autonomous driving, from Waymo's release of the Open Dataset to the trade-offs between modular and end-to-end systems.
Drago also shares his thoughts on finding rare examples, and the challenges of creating scalable and robust systems.
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Chapters (12)
Intro
0:45
The story behind the Inception architecture
13:51
Trends and milestones in autonomous vehicles
23:52
The challenges of scalability and simulation
30:19
Why LiDar and mapping are useful
35:31
Waymo Via and autonomous trucking
37:31
Robustness and unsupervised domain adaptation
40:44
Why Waymo released the Waymo Open Dataset
49:02
The domain gap between simulation and the real world
56:40
Finding rare examples
1:04:34
The challenges of production requirements
1:08:36
Outro
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