This list contains only the countries for which job offers have been published in the selected language (e.g., in the French version, only job offers written in French are displayed, and in the English version, only those in English).
As a Program Manager with the Physical AI team, you will be responsible for running human in the loop (HITL) operations for ML/AI projects both internal to Uber and externally as part of Go external strategy. You will gather the requirements from stakeholders to convert it into a SOP (standard operating procedures), help hire the right talent and train the team to meet the quality and efficiency goals for the project. Run multiple pilots and help convert the pilots to scaled processes.
Job Responsibility:
Lead complex AI/ML programs focused on 2D/3D LiDAR annotations, object detection, semantic segmentation, and other key annotation workflows
Design and implement scalable data pipelines that support model training, quality control, and real-time feedback loops
Partner with engineering and product teams to identify tooling gaps and deliver long-term process and technology improvements
Manage global vendor operations, including RFPs, performance tracking, and quality governance to ensure best-in-class delivery
Develop standard operating procedures (SOPs) for new data initiatives and guide them from pilot phase to full-scale deployment
Use data to drive decisions — analyze program metrics, uncover insights, and present findings to senior leadership to influence product and business strategy
Create and lead cross-functional collaboration frameworks to ensure alignment across stakeholders and smooth execution
Requirements:
7+ years of experience in program management, data operations, or ML lifecycle management, preferably in a high-growth tech or AI-driven company
Proven success in managing large-scale, high-precision data programs for AI/ML systems
Strong understanding of annotation workflows (LiDAR, image, video) and human-in-the-loop (HITL) model training processes
Experience working cross-functionally with engineering, product, and data science teams
Excellent communication and stakeholder management skills, including experience influencing at senior levels
Hands-on experience working with vendors or third-party data partners, including contracting, onboarding, and performance monitoring
Strong analytical mindset with the ability to turn raw data into actionable insights
Nice to have:
Background in AI/ML operations, autonomous systems, or large-scale computer vision applications
Experience building dashboards, operational tooling, or feedback loops for data quality
Prior experience at a global tech company, startup, or consulting firm