Reinforcement Learning Engineer, Grasping

Posted 8 Days Ago
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Houston, TX, USA
In-Office
Junior
Artificial Intelligence • Robotics
The Role
Develop and iterate reinforcement learning policies for dexterous grasping on high-DOF robotic hands. Build sim-to-real pipelines, design rewards and curricula, create MuJoCo/Isaac training environments, run and debug experiments on hardware, integrate tactile feedback, and benchmark grasp policies across varied objects and real-world conditions.
Summary Generated by Built In

Persona AI is developing and commercializing rugged, multi-purpose humanoid robots that perform real work. Persona's founding team has a decades-long history in humanoid robotics, bionics, and product development delivering robust hardware that has touched the stars, worked miles below the surface of the ocean, roamed Disney Parks, and has even been featured on a US postage stamp. Our mission is focused squarely on shipping beautiful, reliable products at massive scale, while building a customer-focused team to achieve these aims.

Role Overview:

We are looking for a Reinforcement Learning Engineer to join our Manipulation team, focused on dexterous grasping. Our goal is to ship capable, reliable grasping policies on real hardware with high-DOF robotic hands. We are looking for someone who can follow recent advances in reinforcement learning and related learning-based methods, judge what is practically useful, and adapt those ideas on our platform. If you are earlier in your career but exceptional, we want to hear from you; equally, a more experienced candidate who brings deep RL expertise will thrive here.

Your Role:

  • Train and iterate on reinforcement learning policies for complex grasping tasks including functional grasping, tool use, in-hand manipulation, and environment interaction.

  • Implement and refine sim-to-real transfer pipelines to bridge the gap between simulation and physical robotic hand performance.

  • Develop reward functions, curriculum strategies, and training environments in MuJoCo and Isaac Lab.

  • Run experiments on real robots alongside simulation, evaluating and debugging policy behavior on hardware.

  • Monitor, evaluate, and adapt state-of-the-art research in learning-based grasping to deploy on our humanoid platform.

  • Collaborate with the rest of the software team to deploy end-to-end grasping systems.

  • Benchmark and evaluate grasp policies across object diversity, clutter scenes, and real-world uncertainties.

  • Integrate tactile sensing and feedback into grasp policies for robust, force-aware manipulation.

We're Looking For:

  • BS, MS, or PhD in Robotics, Computer Science, Machine Learning, or a related field.

  • 2+ years of hands-on experience in reinforcement learning for robotic manipulation; exceptional recent graduates from relevant research labs will be considered.

  • Demonstrated ability to read, understand, and implement ideas from recent robotics and machine learning research.

  • Hands-on experience training RL agents for robotic manipulation tasks, including reward shaping and policy evaluation.

  • Experience with sim-to-real transfer: domain randomization, physics tuning, or real-world policy validation on hardware.

  • Proficiency in Python and deep learning frameworks (PyTorch, JAX), along with RL libraries such as rsl_rl or skrl.

  • Experience preparing meshes and collision geometries for RL environments in simulators such as MuJoCo and/or Isaac Sim.

Bonus Qualifications:

  • Experience deploying RL-trained policies on physical robotic hands.

  • Experience with tactile sensors and integrating tactile feedback into learned grasp policies.

  • Experience with contact-rich manipulation and force/torque estimation.

  • Familiarity with other learning-based approaches such as behavior cloning, imitation learning, or diffusion-based policy methods.

  • Publications or project work at top-tier venues (CoRL, RSS, ICRA) on grasping or dexterous manipulation.

  • Experience in a humanoid robot startup environment.

Why Join Persona AI?

  • We offer competitive compensation, a performance-based bonus, 99% employer covered medical benefits, early-stage equity, competitive PTO, and a company-wide paid winter break between December 24th and January 2nd.

  • You’ll shape technology that’s redefining the possibilities of robotics and human interaction.

  • Work alongside passionate teammates who value creativity, collaboration, and continuous learning.

  • Enjoy full access to advanced tools, hardware labs, and the freedom to push the boundaries of what robots can do.

     

    Persona AI is an Equal Opportunity Employer.

    All qualified applicants will receive consideration for employment without regard to race, color, religion, sex, national origin, sexual orientation, gender identity, age, disability, veteran status, or any other characteristic protected by applicable federal, state, or local law.

Skills Required

  • BS, MS, or PhD in Robotics, Computer Science, Machine Learning, or related field
  • 2+ years hands-on experience in reinforcement learning for robotic manipulation
  • Demonstrated ability to read, understand, and implement recent robotics and ML research
  • Hands-on experience training RL agents for manipulation, including reward shaping and policy evaluation
  • Experience with sim-to-real transfer (domain randomization, physics tuning, real-world policy validation)
  • Proficiency in Python and deep learning frameworks (PyTorch, JAX)
  • Experience with RL libraries such as rsl_rl or skrl
  • Experience preparing meshes and collision geometries for simulators (MuJoCo and/or Isaac Sim)
  • Experience developing training environments, reward functions, and curriculum strategies in MuJoCo and/or Isaac Lab
  • Experience running experiments on real robots and evaluating/debugging policy behavior on hardware
  • Experience deploying RL-trained policies on physical robotic hands
  • Experience integrating tactile sensors and tactile feedback into learned grasp policies
  • Experience with contact-rich manipulation and force/torque estimation
  • Familiarity with behavior cloning, imitation learning, or diffusion-based policy methods
  • Publications or project work at top-tier venues (CoRL, RSS, ICRA) on grasping or dexterous manipulation
  • Experience in a humanoid robot startup environment
Am I A Good Fit?
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The Company
HQ: Houston, TX
20 Employees
Year Founded: 2024

What We Do

We're hiring talented engineers who can’t wait to put tough humanoids to work. Visit our website to see open positions and apply.

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