Data Science Manager, Machine Learning - Lyft Ads

Lyft Lyft · Consumer · New York, NY +1 · Lyft Ads

Manager for a team of Data Scientists, Applied Scientists, and ML Engineers building the algorithmic backbone of Lyft Ads, focusing on ad relevance, yield optimization, targeting, and measurement. The role involves defining technical vision, leading execution, and integrating ML systems into production ad serving and measurement platforms, with a strong emphasis on experimentation and causal inference.

What you'd actually do

  1. Lead, mentor, and grow a high-performing, multi-disciplinary team spanning Applied Science. Data Science, and Machine Learning Engineering for Lyft Media.
  2. Define and execute the technical vision and roadmap for the team, ensuring alignment with overall business strategy and revenue goals across research, modeling, and production ML.
  3. Design, develop, and deploy algorithms and ML systems that power core advertising capabilities—including ad targeting, audience segmentation, bid optimization, attribution, and yield management.
  4. Partner with Product, Engineering, and Design to integrate solutions into scalable, production-grade ad serving and measurement systems.
  5. Establish robust experimentation and causal inference frameworks to measure the impact of algorithmic changes on advertiser outcomes, rider experience, and platform revenue.

Skills

Required

  • PhD or Master's degree in a quantitative field or equivalent practical experience
  • 8+ years of progressive experience in machine learning, optimization, or causal inference
  • 3+ years of people management experience leading multi-disciplinary technical teams
  • Demonstrated ability to set a strategic vision for a technical team
  • Deep expertise in machine learning, experimental design, causal inference, and statistical methodologies
  • Strong understanding of ML engineering best practices
  • Hands-on proficiency with large-scale data processing tools and machine learning frameworks (e.g., PyTorch, TensorFlow, scikit-learn)

Nice to have

  • Experience in advertising technology, media measurement, or marketplace optimization
  • Experience navigating complex, ambiguous problem spaces
  • Strong communication and influence skills

What the JD emphasized

  • proven track record of leading multi-disciplinary technical teams
  • Deep expertise in machine learning, experimental design, causal inference, and statistical methodologies
  • Strong understanding of ML engineering best practices
  • Experience in advertising technology, media measurement, or marketplace optimization is strongly preferred

Other signals

  • building algorithmic backbone
  • optimize yield
  • enhance targeting and measurement
  • production ML systems