
The TWIML AI Podcast (formerly This Week in Machine Learning & Artificial Intelligence) Intelligent Robots in 2026: Are We There Yet? with Nikita Rudin - #760
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Jan 8, 2026 Nikita Rudin, Co-founder and CEO of Flexion Robotics, dives into the fascinating world of autonomous robots. He discusses the ongoing challenges of robot locomotion, highlighting the complexities of sim-to-real transfer with visual inputs. The conversation covers the debate between end-to-end models and modular approaches. Nikita introduces 'real-to-sim' calibration, revealing how real-world data refines simulations for better outcomes. He also shares insights on humanoid robots, their upcoming potential in 2026, and practical advice for aspiring roboticists.
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Live Training Demo That Walked In Minutes
- Nikita Rudin described training a quadruped live on stage where policies improved every 15 seconds until it walked after minutes.
- He used GPUs and parallel simulators to cut training from weeks to minutes, making the learning process visually demonstrable.
Perception Widens The Sim‑to‑Real Gap
- Locomotion is not solved until robots can go anywhere humans can without reliability concerns.
- Adding perception (vision) increases sim-to-real gap and requires careful sensor simulation and noise modeling.
Semantics Are Crucial For Real‑World Navigation
- Geometry-only locomotion lacks semantics so robots may climb desks or plants indiscriminately.
- Adding semantics requires photoreal simulation or splitting planning and locomotion into separate modules.
