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In episode 54 of The Gradient Podcast, Andrey Kurenkov speaks with Pete Florence. Note: this was recorded 2 months ago. Andrey should be getting back to putting out some episodes next year. Pete Florence is a Research Scientist at Google Research on the Robotics at Google team inside Brain Team in Google Research. His research focuses on topics in robotics, computer vision, and natural language -- including 3D learning, self-supervised learning, and policy learning in robotics. Before Google, he finished his PhD in Computer Science at MIT with Russ Tedrake. Subscribe to The Gradient Podcast: Apple Podcasts | Spotify | Pocket Casts | RSSFollow The Gradient on Twitter Outline: * (00:00:00) Intro * (00:01:16) Start in AI * (00:04:15) PhD Work with Quadcopters * (00:08:40) Dense Visual Representations * (00:22:00) NeRFs for Robotics * (00:39:00) Language Models for Robotics * (00:57:00) Talking to Robots in Real Time * (01:07:00) Limitations * (01:14:00) Outro Papers discussed: * Aggressive quadrotor flight through cluttered environments using mixed integer programming * Integrated perception and control at high speed: Evaluating collision avoidance maneuvers without maps * High-speed autonomous obstacle avoidance with pushbroom stereo * Dense Object Nets: Learning Dense Visual Object Descriptors By and For Robotic Manipulation. (Best Paper Award, CoRL 2018) * Self-Supervised Correspondence in Visuomotor Policy Learning (Best Paper Award, RA-L 2020 ) * iNeRF: Inverting Neural Radiance Fields for Pose Estimation. * NeRF-Supervision: Learning Dense Object Descriptors from Neural Radiance Fields. * Reinforcement Learning with Neural Radiance Fields * Socratic Models: Composing Zero-Shot Multimodal Reasoning with Language. * Inner Monologue: Embodied Reasoning through Planning with Language Models * Code as Policies: Language Model Programs for Embodied Control
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