Lead the development of innovative AI-powered systems for warehouse automation, focusing on reliability and performance in high-throughput logistics environments.
Serve as the technical architect for Pickle Robot's Physical AI stack, owning the end-to-end design of perception, planning, and control systems deployed on production hardware.
Lead the application of diffusion-based policy learning and optimal control techniques to robot manipulation and picking tasks, with a focus on real-world reliability and cycle time performance.
Drive hardware integration efforts across sensors, compute, and actuators — ensuring AI systems are co-designed with the physical platform from the ground up.
Define the technical roadmap for how diffusion models and optimal control complement each other in Pickle Robot's autonomy architecture, and build internal alignment around that vision.
Partner with firmware, mechanical, and software engineering teams to ensure AI design decisions are grounded in hardware constraints and operational realities.
Identify and resolve performance bottlenecks at the intersection of model inference, motion execution, and hardware throughput.
Mentor senior engineers and help grow the technical depth of the broader autonomy team.
Demonstrated track record of shipping AI-powered systems to production — we want to hear about systems you have deployed, not just prototyped.
MS, or PhD in Robotics, Computer Science or a related field, or equivalent demonstrated expertise through shipped products.
Deep subject matter expertise in diffusion models applied to robot learning (e.g., diffusion policies, score-based generative models for behavior cloning or planning).
Strong command of optimal control theory and practice, including model predictive control (MPC), trajectory optimization, and feedback control design for physical systems.
Practical understanding of how diffusion-based learning and optimal control approaches are complementary — and the architectural judgment to combine them effectively.
Hands-on experience with hardware integration: sensor pipelines (RGB-D, force/torque, encoders), embedded compute (NVIDIA Jetson, ARM SoCs, FPGAs), and actuator interfaces.
Proficiency in Python and C++; familiarity with ROS 2 or equivalent robotics middleware.
Experience with real-time systems constraints and the performance tradeoffs inherent in deploying learned models on robot hardware.
Strong systems-level thinking — you design for maintainability, observability, and failure modes, not just peak performance.
Excellent communication skills and the ability to drive technical decisions across cross-functional teams.
Willing to work in the office from our Charlestown, MA location at least three days per week.
Pickle Robot Company automates truck unloading processes using AI and advanced robotics technology, enhancing safety and efficiency in logistics operations. We're building innovative solutions aimed at revolutionizing loading dock workflows for supply chain applications.
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