Staff AI/ML Architect, Embodied AI
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Requirements
- MS or PhD in CS, EE, Robotics, or a related field with 10+ years building AI/ML models and algorithms for autonomous-systems software, with demonstrated ownership of an end-to-end AI/ML system architecture taken to production or to a rigorous prototype.
- Deep experience with hierarchical, modular AI/ML or robot-learning stacks, including high-level reasoning paired with low-level control policies.
- Strong grasp of real-time and safety-critical ML: latency budgets, failure modes, fallback/abort behavior, and interface/contract design across components.
- Hands-on expertise with modern deep learning and multimodal, vision-language, LLM-based architectures, including vision foundation models (VFM), vision-action (VA) , and vision-language-action (VLA) models.
- Fluency in one of PyTorch, TensorFlow, JAX, and in Python and C++, is required.
- Working knowledge of world-model and self-supervised predictive architectures (e.g., JEPA-style models, MAE, DINO) and how learned world models inform perception-and-control design.
- Solid foundations in linear algebra, probability, and optimization, enough to reason about and debug model behavior from first principles.
- Proven cross-functional technical leadership (able to align research, engineering, and product stakeholders around an architecture).
- Background in healthcare, medical devices, surgical robotics, or other regulated technical domains.
- Foundation-model adaptation and fine-tuning for embodied robotics tasks.
- Experience delivering AI/ML in a real-time, safety-critical domain.
- Imitation learning, DAgger, and/or reinforcement learning at system scale.
- Sim-to-real workflows and experience with robotics simulators (e.g., NVIDIA Isaac Sim).
- Regulatory-aware AI/ML development for regulated, safety-critical industries.
- Triton kernel and/or CUDA development experiences
- Publications or recognized contributions at venues such as CVPR, NeurIPS, CoRL, RSS, or ICRA.
- Awareness of data governance in regulated environments (HIPAA, FDA).
- Additional Information
- Travel: Minimal
- Ways of Working: Onsite, 5 days per week
- Reports to: Govind Payyavula, Senior Managing Principal - Future Forward Research
- Compensation: Competitive salary, annual bonus, equity, and comprehensive benefits
- Due to the nature of our business and the role, please note that Intuitive and/or your customer(s) may require that you show current proof of vaccination against certain diseases including COVID-19. Details can vary by role.
- Mandatory Notices
- U.S. Export Controls Disclaimer: In accordance with the
Benefits
Additional Information
Primary Function of Position We are building advanced augmented dexterity capabilities for next-generation robotic platforms. As a Staff AI/ML Architect, you will own the end-to-end architecture of our applied-AI system: a hierarchical, multimodal stack in which a high-level model interprets sensory observations and produces structured intent, and a low-level policy turns that intent into precise, safe, real-time control. You will set the technical direction the rest of the AI/ML team builds against, define the interfaces between perception, reasoning, and control, and make the architecture decisions that let us move safely from offline research to real-time deployment. Working within Intuitive's Future Forward research organization, you will identify, build and finetune AI/ML models and algorithms and define the architecture that enables us to deliver safe and performant embodied AI systems. This role calls for someone who is equally comfortable getting hands-on with models and data and designing systems that scale. Roles and Responsibilities Define and own the end-to-end architecture for a hierarchical perception, reasoning, and control AI system. Specify the contracts between layers: model outputs, policy interfaces, timing budgets, and safety hooks, and keep them stable as components are swapped and upgraded. Make the build and modular-vs-monolithic calls, evaluate in-house approaches against the state of the art and set the target architecture. Establish the path from offline evaluation on recorded data to real-time integration, including the continuous-improvement (human-in-the-loop) data loop. Partner across research, engineering, data, and product teams, mentor senior scientists/engineers and raise the engineering bar across the effort. Partner with AI/ML researchers, robotics, data engineers, and other stakeholders to deliver a modular architecture that enables rapid prototyping and learning while working toward a product solution.
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