Senior Ai/ml Engineer

Uber Uber · Consumer · Seattle, WA +2 · Engineering

This role focuses on developing and productionizing AI/ML models for Uber's core security engineering, specifically in access management, identity, and authorization. The engineer will translate security needs into AI-first solutions, integrate ML systems, and mentor junior engineers. Requires strong experience in ML model development, productionization, and familiarity with security contexts.

What you'd actually do

  1. Translate business and security needs into well-defined problem statements and solve them with the AI-first mindset.
  2. Develop, iterate, and productionize ML models that simplify access management and control.
  3. Integrate ML systems into Uber’s critical systems (Identity, Access, Authorization).
  4. Collaborate across Security, Risk, and Infra teams to deliver scalable, production-ready solutions.
  5. Provide leadership by mentoring junior engineers, evangelize ML best practices, and help shape ML strategy within AI Secury.

Skills

Required

  • 5+ years experience in formulating ML problems from ambiguous business requirements, especially in risk, fraud, or security contexts.
  • Proficiency across a broad range of ML algorithms: tree-based models (XGBoost, LightGBM), classical statistical models (logistic regression, SVMs), and deep learning architectures (CNNs, RNNs, Transformers), with the ability to select and apply the right approach based on context and data characteristics.
  • Hands-on experience with feature engineering, model development, and productionization of ML pipelines.
  • Proficiency in PyTorch, TensorFlow, or similar ML frameworks, and in Python or comparable languages for scalable, production-grade systems.

Nice to have

  • Proven ability to own ML systems end-to-end: from requirement discovery → feature design → modeling → deployment.
  • Deep experience with advanced ML techniques, including ensemble methods, neural networks, graph-based models, and handling challenges like imbalanced data, feedback loops, and iterative retraining.
  • Familiarity with large-scale data/infra systems (Kafka, Pinot, Hive, Cassandra, Spark, Flink).
  • Background in access control, authentication, or enterprise security systems.
  • Track record of technical leadership: mentoring engineers, driving cross-functional initiatives, or shaping ML/security strategy.

What the JD emphasized

  • productionize ML models
  • integrate ML systems
  • AI-first mindset
  • security contexts
  • 5+ years experience in formulating ML problems from ambiguous business requirements, especially in risk, fraud, or security contexts.
  • Proficiency across a broad range of ML algorithms
  • Hands-on experience with feature engineering, model development, and productionization of ML pipelines.
  • Proficiency in PyTorch, TensorFlow, or similar ML frameworks, and in Python or comparable languages for scalable, production-grade systems.
  • Proven ability to own ML systems end-to-end: from requirement discovery → feature design → modeling → deployment.

Other signals

  • productionize ML models
  • integrate ML systems
  • AI-first mindset
  • security contexts