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Software Engineering Intern, Robot Learning Platform - 2026
NVIDIAChinaremoteentry0-2 years11 people scored this
Description
Join NVIDIA's Isaac Lab team to develop innovative features for our robot learning platform and collaborate with research and engineering teams to enable new research for the next generation of humanoid robots.RequirementsCurrently pursuing an MS or PhD degree in Computer Science, Robotics, or a related field.Extensive experience in software development with Python and deep-learning software stacks like Pytorch, Tensorflow, or Jax.Proven experience in robotics and simulation workflows, including reinforcement learning, imitation learning, motion planning, and trajectory optimization.Originally posted on Himalayas
Required skills
Software-Engineering-InternSoftware-Engineer-InternSoftware-Engineering-InternshipSoftware-Developer-InternMachine-Learning-Engineer-Intern
Tech stack
Python
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$438K – $438K (~₹3.6Cr – ₹3.6Cr)
senior
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Glassdoor rating4.5/5
IndustryStrategic-Alliance-Management
Open roles2
Work-life balance3.8/5
Avg tenure3.5 yrs
Avg promotion24-36 months
Internal mobilitymedium
StagePublic (NVDA)
Size29,000+
HQSanta Clara, CA
Founded1993
Company Insights
Glassdoor rating
4.5
Work-life balance
3.8
Avg employee tenure
3.5 years
Avg time to promotion
24-36 months
Internal mobility
medium
Hiring behavior
Avg response time
14 days
Ghost rate
18% (Moderate)
Interview to offer
22%
Interview rounds
5
Interview style
technical
Hiring speed
fast