Search for a command to run...

Timestamps are as accurate as they can be but may be slightly off. We encourage you to listen to the full context.
In this episode, Sanjit Biswas, founder and CEO of Samsara, shares his insights on building AI in the physical world. With sensors deployed across millions of vehicles capturing 90 billion miles of driving data annually, Samsara operates at unprecedented scale in the physical AI space. Biswas discusses the unique challenges of running AI on edge devices with just 2-10 watts of power, the messiness and diversity of real-world data, and how foundation models are unlocking new capabilities like video reasoning and positive behavior recognition. (03:00)
Sanjit Biswas is the founder and CEO of Samsara, a $23 billion market cap public company focused on physical operations AI. He previously co-founded Meraki, which was acquired for $1.2 billion, and has a background in electrical engineering and computer science from Stanford and MIT. Biswas worked on MIT's pioneering RoofNet project over twenty years ago, establishing his expertise in building large-scale wireless networks and real-world technology deployment.
Biswas founded Samsara in 2015 based on three converging trends: ubiquitous connectivity, maturing cloud compute power, and dramatically improved camera sensors from the smartphone revolution. (03:40) Even without a crystal ball for AI's specific trajectory, recognizing these compounding curves allowed Samsara to build the foundational infrastructure needed to capitalize on future AI breakthroughs. This approach of betting on directional technology trends rather than specific outcomes enabled them to be positioned perfectly when AI capabilities accelerated.
Unlike cloud-based AI that can leverage massive data centers, physical AI must operate within severe constraints - running inference on 2-10 watts rather than kilowatts. (09:05) This means using teacher-student model distillation, training specialized models for specific use cases rather than general intelligence, and processing millions of edge devices rather than centralized compute. The key insight is that constraints breed innovation - these limitations force more efficient, targeted AI solutions.
Samsara's evolution from detecting negative behaviors (phone usage, safety violations) to recognizing positive behaviors represents a major shift in AI application. (12:37) Biswas notes that frontline workers perform well 80-90% of the time, but no one sees or recognizes it. AI can now identify good driving, fuel efficiency, and defensive behaviors, providing positive reinforcement that makes workers' days better while improving overall performance.
Samsara's sensors capture 99% of US roads across urban, rural, residential areas, and all weather conditions, creating an incredibly rich training dataset. (08:06) This diversity of real-world scenarios - what Biswas calls "the long tail of human behavior" - provides training data that no simulated environment can match. The messy, distributed nature of physical world data that seems like a challenge actually becomes a competitive moat for AI training.
Scaling physical AI requires thousands of people for installations, training frontline workers, and providing immediate value to customers. (15:24) Unlike pure software, physical AI deployment demands extensive change management, customer success, and real-world integration. Biswas emphasizes that technical founders must embrace go-to-market execution as an engineering problem - it's what enables real-world impact and sustainable growth.