The NVIDIA Isaac Loco-Manipulation team is seeking exceptional machine learning Interns to join our world-class robotics initiatives. As an intern, youโll work alongside industry-leading experts, gaining hands-on experience and contributing to the future of humanoid loco-manipulation. Weโre looking for strategic, ambitious, and creative individuals who are passionate about pushing the boundaries of robotics.
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What Youโll Be Doing:
- Collaborate with researchers and engineers to define and execute projects focused on humanoid loco-manipulation and mobile manipulation.
- Contribute to GR00T and Cosmos foundation models.
- Support the development of reference workflows in Isaac Lab and Newton.
- Advance technologies for robot learning and synthetic data generation using human video datasets.
- Design, implement, and deploy novel algorithms for humanoid robot locomotion and manipulation in both simulated and real-world environments.
- Integrate your work with NVIDIAโs advanced robotics platforms.
- Transfer your innovations into products, with deliverables including prototypes, patents, and/or publications in top conferences and journals.
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What we need to see:
- Currently enrolled in a PhD or Masterโs program in Computer Science, Electrical Engineering, Robotics, or a related field, and available for the duration of the internship.
- Strong programming skills in Python and C++; familiarity with deep learning frameworks (PyTorch, JAX, TensorFlow) and physics simulation tools (Isaac Sim/Lab, MuJoCo).
- Demonstrated research or internship experience, with publications in top conferences.
- Excellent communication and collaboration skills.
- Experience with large-scale model training on GPU clusters is a plus.
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Ways to stand out from the crowd:
- Foundation models for robotics and 3D perception.
- Learning from human video demonstrations; Human-object reconstruction.
- Humanoid loco-manipulation: whole-body control, dexterous and bimanual manipulation, locomotion.
- Robotics simulation, sim-to-real and real-to-sim transfer.
- Robot learning and reasoning, including imitation and reinforcement learning:
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Vision-language-action (VLA) models.
Synthetic data generation for robotics research.
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