Data Science Manager, Mapping

Lyft Lyft · Consumer · San Francisco, CA · Mapping

Lyft is hiring a Data Science Manager to lead a team focused on improving mapping products and making data-driven decisions. The role involves shaping priorities, recommending technical solutions, designing experiments, and measuring impact in collaboration with engineering teams. Key areas include optimizing routes, improving driver routing experience, and benchmarking map services. The manager will lead and grow a team, define data science strategy, provide technical guidance, and champion data-driven decision-making. Experience in experimentation, causal inference, and leading data science teams is required, with a preference for advanced degrees in quantitative fields. Hands-on experience with ML model operationalization and large-scale data processing is desirable.

What you'd actually do

  1. Lead and grow a high-performing team of data scientists with diverse backgrounds, including optimization, experimentation, machine learning and causal inference
  2. Define and drive the data science vision, strategy, and roadmap, aligning with overall business and product objectives to improve market competitiveness and user experience
  3. Provide strong technical guidance and coaching to the team on complex data science problems related to real-time decision-making and resource allocation
  4. Champion data-driven decision-making and prioritization by partnering with product managers, engineers, marketers, and leaders to translate data insights into decisions and action
  5. Lead deep-dive analyses into large-scale datasets to identify opportunities for improving navigation efficiency, mapping accuracy, and overall product health

Skills

Required

  • Leadership
  • Team management
  • Data science strategy
  • Technical guidance
  • Experimentation
  • Causal inference
  • A/B testing
  • Multivariate testing
  • Metrics analysis
  • Data storytelling
  • Influence
  • Communication
  • Collaboration

Nice to have

  • PhD
  • Operations Research
  • Computer Science
  • Statistics
  • Engineering
  • Real-time systems
  • Marketplace dynamics
  • Machine learning model operationalization
  • Spark
  • SQL
  • Mapping domain

What the JD emphasized

  • Advanced degree (MS or PhD, PhD preferred) in a quantitative field like Operations Research, Computer Science, Statistics, Engineering, or a related area; or equivalent work experience
  • 5+ years of hands-on technical experience in experimentation, causal inference, or data science, preferably with applications in real-time systems or marketplace dynamics
  • 2+ years of management experience building, leading, and mentoring data science teams
  • Strong expertise in statistics, experimental design, and causal inference, including A/B testing, multivariate testing, and incremental lift measurement
  • Hands-on experience building or operationalizing machine learning models (e.g., propensity, segmentation, churn, personalization) in partnership with engineering or platform teams (nice to have)
  • Hands-on experience with large-scale data processing (e.g., Spark, SQL) and machine learning frameworks is highly desirable