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Uber is launching AV Labs to accelerate the autonomous technology ecosystem. We're building out a high-velocity team of multi-disciplinary experts to turn real-world operations into high-quality data for our autonomous partners. This team is focused on the hardest problem in AV today: unlocking real-world, long-tail driving data. Autonomy is now a data race—and Uber has an edge: We collect rare, real-world driving data at a scale and capital efficiency no one else can match. As a ML Engineer, you will be at the forefront of Physical AI, building advanced autonomy algorithms and models to add rich semantics to our massive driving data. You will be responsible for the development and implementation of the latest machine learning techniques that enables better data mining, deep scene understanding, and causal modeling of ego vehicle behavior.The ideal candidate will be able to identify complex edge cases, provide robust algorithmic solutions, and set a high technical excellence bar.
Job Responsibility
Algorithm Development: Develop algorithms and foundation models that extract high-fidelity semantic meaning from complex urban edge cases to enrich our L4 data lake.
System Design: Implement scalable ML systems, including management of upstream sensor dependencies.
Dataset Optimization: Deliver high-quality datasets to accelerate ML technologies through advanced sensor data collection, processing, and auto-labeling.
Cross-Functional Collaboration: Partner with platform, product, and security engineering teams to enable the successful deployment of the latest machine learning techniques into production.
Requirements
2+ years of working experience in the ML/Robotics industry.
Bachelor's degree (or higher) in Computer Science, Computer Engineering, or related fields.
Proficient in Python and Linux environments.
Familiar with modern AI/ML frameworks (e.g., PyTorch).
Nice to have
Experience in the Autonomous Driving domain.
Proven track record of deploying ML models in safety-critical physical systems.
Master's or PhD degree in Computer Vision, Robotics, or Machine Learning.
Familiarity with C++ and high-performance computing.