Research Scientist, Robotics, Deepmind

Google Google · Big Tech · London, United Kingdom

Research Scientist at Google DeepMind focused on building next-generation AI agents for the physical world. This role involves inventing algorithms, innovating on large foundation models (like Gemini Robotics), designing and prototyping applications, and working with real robots and simulations. Key areas include reinforcement learning, imitation learning, and multimodal foundation models for robotics.

What you'd actually do

  1. Design, implement, train and evaluate large models and algorithms for robotic agents. Make breakthroughs and unlock new robot capabilities.
  2. Write software to implement research ideas and iterate quickly.
  3. Work effectively with a large collaborative team with changing agendas to meet ambitious research goals.
  4. Develop methodologies and design and conduct experiments for incorporating scalable data sources, especially human data with or without capture devices into our robotics foundation models.
  5. Leverage your broader expertise to participate in a wide variety of research: learning from simulation, reinforcement learning, learning from demonstrations, vision-language-action models, transformers, video generation, robot control, humanoid robots and more.

Skills

Required

  • PhD degree in a technical field or equivalent practical experience
  • reinforcement learning
  • imitation learning
  • multimodal generative modeling
  • training
  • inference
  • vision models
  • vision-language models
  • video multimodal models

Nice to have

  • simulators
  • real-world robots
  • dexterous manipulation
  • multimodal sensing
  • tactile sensing
  • force sensing
  • large real world data
  • capture methodologies
  • dataset design
  • experimentation
  • captured human action data
  • vision-language-action models
  • whole-arm manipulators

What the JD emphasized

  • strong algorithmic background
  • scalable machine learning
  • reinforcement learning
  • imitation learning
  • multimodal foundation models
  • experience with real robots
  • robot simulation
  • training setups
  • 2 years of experience with reinforcement and imitation learning, multimodal generative modeling, training and inference, and vision/vision-language/video multimodal models.

Other signals

  • invent algorithms
  • innovate on large foundation models
  • design prototype applications
  • work with real robots
  • manage real-world use cases
  • reinforcement learning
  • imitation learning
  • multimodal foundation models
  • robot simulation
  • training setups