Waymo’s Foundation Model for Autonomous Driving with Dragomir Anguelov
EPISODE 725
|
MARCH
31,
2025
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About this Episode
Today, we're joined by Drago Anguelov, head of AI foundations at Waymo, for a deep dive into the role of foundation models in autonomous driving. Drago shares how Waymo is leveraging large-scale machine learning, including vision-language models and generative AI techniques to improve perception, planning, and simulation for its self-driving vehicles. The conversation explores the evolution of Waymo’s research stack, their custom “Waymo Foundation Model,” and how they’re incorporating multimodal sensor data like lidar, radar, and camera into advanced AI systems. Drago also discusses how Waymo ensures safety at scale with rigorous validation frameworks, predictive world models, and realistic simulation environments. Finally, we touch on the challenges of generalization across cities, freeway driving, end-to-end learning vs. modular architectures, and the future of AV testing through ML-powered simulation.
About the Guest
Dragomir Anguelov
Waymo
Resources
- Waymo
- Waymo Safety Impact
- NVIDIA GTC Keynote: Advancing AI to Build the Most-Trusted Driver
- EMMA: End-to-End Multimodal Model for Autonomous Driving
- MotionLM: Multi-Agent Motion Forecasting as Language Modeling
- Waymo Open Dataset Challenges
- System Design for Autonomous Vehicles with Drago Angelov - #454
