Research Scientist Intern, State Estimation for Dexterous Manipulation (phd)

Meta Meta · Big Tech · Redmond, WA

Research Scientist Intern focused on representation learning for dexterous manipulation in robotics, developing latent space embeddings for object physical state and validating them through experiments.

What you'd actually do

  1. Design and implement latent space representations for object physical state during robotics manipulation tasks that go beyond fixed parameter sets.
  2. Design and execute controlled experiments to validate the representation: measuring adaptation speed, property decoding fidelity, and downstream control performance against baselines (no object state, explicit physical parameters, raw sensor history).
  3. Benchmark the latent state representation on practical dexterous manipulation tasks.
  4. Collaborate with researchers and cross-functional partners including communicating research plans, progress, and results.
  5. Showcase the value in simulated or physical demos.

Skills

Required

  • Ph.D. candidate in Robotics, Machine Learning, Computer Science, or related field
  • Strong background in representation learning, generative models, or neural implicit representations
  • Experience with physics-based estimation, state estimation, or system identification in robotic or dynamical systems
  • Experience with Python and PyTorch
  • Work authorization in the country of employment
  • Experience with experimental design and statistical evaluation of robotic systems
  • Proven track record of achieving significant results (grants, fellowships, patents, first-authored publications)

Nice to have

  • Experience with tactile sensing, force/torque sensors, or robot hand manipulation
  • Familiarity with model-based control (MPC), reinforcement learning, or imitation learning for manipulation
  • Experience with Bayesian filtering, online adaptation, or meta-learning for system identification

What the JD emphasized

  • Ph.D. degree
  • Robotics
  • Machine Learning
  • Computer Science
  • representation learning
  • generative models
  • neural implicit representations
  • physics-based estimation
  • state estimation
  • system identification
  • robotics
  • dynamical systems
  • Python
  • PyTorch
  • tactile sensing
  • force/torque sensors
  • robot hand manipulation
  • model-based control
  • reinforcement learning
  • imitation learning
  • manipulation
  • Bayesian filtering
  • online adaptation
  • meta-learning
  • system identification
  • experimental design
  • statistical evaluation
  • robotic systems
  • first-authored publications
  • leading workshops or conferences

Other signals

  • representation learning
  • latent space representations
  • robotics manipulation
  • dexterous manipulation
  • multi-sensory setup