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Controls Engineer Intern(Spring-Summer 2026)

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About Deft RoboticsOur mission is to build the world’s first labor agency that deploys dexterous robots as its primary workforce.We start by deploying wheeled humanoid robots in industrial manufacturing and assembly lines.You’ll be joining a team of extremely hardcore and self-motivated engineers, scientists, and operators who focus on winning 24/7.You will develop and own entire systems from design to deployment, playing a foundational role in deploying 5000+ robots by 2031.About This RoleOur robots operate in real production environments where control reliability isn't optional — it's the difference between a deployed system and a demo. As a Controls Engineer Intern, you'll work directly on the low-level control and motion systems that make our bimanual wheeled robots safe, precise, and production-ready. This is not a paper-reading internship. You'll ship code that runs on real hardware, debug edge cases that only surface on the factory floor, and see the direct impact of your work on deployed robot performance.What You'll DoDesign and implement real-time supervisory control systems for smooth handoff between autonomous and teleoperated modes, including trajectory blending and forward-consistent motion during transitions.Improve inverse kinematics solvers for multi-arm manipulation — resolving singularities, boundary failures, and ensuring robust solutions across the full reachable workspace.Develop sensor fusion pipelines (IMU, odometry, vision) for precise mobile base localization and orientation control under tight angular tolerances.Integrate new actuators for bimanual arm systems — including motor driver communication, torque/position/velocity control mode configuration, gain tuning, and safety limit implementationRequired QualificationsStrong fundamentals in classical control theory (PID, impedance/admittance control, state estimation) with hands-on experience implementing controllers on physical hardware.Proficiency in Python and C/C++ for real-time embedded or robotic applications.Hands-on experience with inverse kinematics solvers and simulation environments (PyBullet, MuJoCo, Drake, or similar), including practical familiarity with IK libraries or custom Jacobian-based implementations.Experience with rigid-body kinematics, coordinate frame transformations (homogeneous transforms, SE(3), quaternion representations)Experience with sensor fusion techniques (Kalman filtering, complementary filters) using IMU, encoders, or similar proprioceptive sensors.Preferred QualificationsPrior experience with ROS/ROS2, CAN bus communication, or motor control interfaces.Familiarity with trajectory smoothing and interpolation methods (spline-based planning, Ruckig, or similar time-optimal trajectory libraries).Experience with wheeled or mobile robot platforms, including human in the loop data collection frameworkBenefitsMeaningful ownership from day one — your code ships to production robots.Direct mentorship from founding engineers working at the frontier of robot learning and deployment.Opportunity to co-author publications if research contributions warrant it.Medical, dental & vision plans ($0 payroll deduction)Daily meals stipend.Expected Compensation$35 – $50 per hourThe pay offered for this position may vary based on several individual factors, including job-related knowledge, skills, and experience. The total compensation package may also include additional components/benefits depending on the specific role. This information will be shared if an employment offer is extended.Internship Duration4~5 months starting April 2026 Opportunity to extend duration.Opportunity to convert to full-time employment.Interview ProcessIntro call + 1 virtual technical interview