Automated with Brian Heater
Physical AI is moving fast. But Daniela Rus says the future of robotics will not be defined by viral humanoid robot demos alone. The real challenge is building robots that can understand the physical world, make safe decisions in real time, and work reliably outside controlled lab environments. In this episode of Automated, Brian Heater speaks with Daniela Rus, Director of MIT CSAIL, about humanoid robots, self-driving cars, embodied AI, on-device AI, robot learning, and why the next wave of artificial intelligence needs to move beyond the cloud and into the physical world. Daniela explains why humanoid robots are exciting, but not ready for prime time. A robot may look impressive in a short demo, but operating safely and consistently around people requires common sense, physical understanding, and real-world adaptability that robots still do not fully have. The conversation also explores why self-driving cars remain one of the hardest problems in robotics. Daniela breaks down the long tail of autonomous driving, from bad weather and unpredictable human behavior to the messy edge cases that make real-world deployment so difficult. Brian and Daniela also discuss why the future of AI robotics may depend on smaller, more efficient AI models that can run directly on devices. If a car is moving at 60 miles an hour, it cannot wait for the cloud to decide what to do next. For robotics, speed, safety, energy use, and reliability all point toward a hybrid future where AI runs both in the cloud and on the machine itself. Daniela also shares why physical AI needs more than video data. Robots interact with the world through forces, torques, motion, contact, and uncertainty. For many tasks, robot learning requires a deeper understanding of physics, not just visual imitation. The episode also moves into some of the most fascinating frontiers of AI and robotics, including Daniela’s work with Project CETI and the effort to better understand sperm whale communication using machine learning, robotics, and large-scale data collection. Finally, Daniela talks about AI systems that could help design robots from natural language prompts, why engineering constraints can drive creativity, what octopus intelligence can teach us about decentralized robots, and why this moment in robotics feels like the future researchers imagined decades ago is finally arriving. Connect with Daniela Rus https://www.csail.mit.edu/person/daniela-rus [https://www.csail.mit.edu/person/daniela-rus?utm_source=chatgpt.com] Learn more about MIT CSAIL https://www.csail.mit.edu/ [https://www.csail.mit.edu/] Learn more about Liquid AI https://www.liquid.ai/team/daniela-l-rus [https://www.liquid.ai/team/daniela-l-rus?utm_source=chatgpt.com] Learn more about Project CETI https://www.projectceti.org/ [https://www.projectceti.org/?utm_source=chatgpt.com] We’d love to hear from you. Have thoughts or guest suggestions? Reach us at podcast@automate.org [podcast@automate.org]. You can find the transcript and more episodes of Automated at automated.fm [http://automated.fm]. Unlock full access to Automated and explore everything automation. Subscribe today and leave a review on YouTube, Apple Podcasts, and Spotify. Subscribe to the Automated Newsletter: https://www.automate.org/automation/automated-newsletter [https://www.automate.org/automation/automated-newsletter] You can also find us on: LinkedIn https://www.linkedin.com/showcase/automated-podcast-by-a3/ [https://www.linkedin.com/showcase/automated-podcast-by-a3/?utm_source=chatgpt.com] Instagram https://www.instagram.com/automatedpod/ [https://www.instagram.com/automatedpod/] ---------------------------------------- Hosted on Acast. See acast.com/privacy [https://acast.com/privacy] for more information.
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