Senior Data Scientist - Optimization, Central Market Management & AI

Lyft Lyft · Consumer · New York, NY +1 · Central Market Management & AI

Senior Data Scientist role focused on building and deploying production-grade ML and optimization models for Lyft's marketplace. The role involves designing, formulating, and solving complex mathematical optimization problems, owning the full model lifecycle, and integrating algorithms into live systems. It emphasizes first-principles mathematical reasoning and driving technical strategy for foundational marketplace models.

What you'd actually do

  1. Design, formulate, and solve complex mathematical optimization problems that power Lyft’s marketplace decisions across pricing, pay, incentives, and resource allocation.
  2. Build, deploy, and maintain production-grade ML and optimization models; collaborate with Software Engineering to integrate algorithms into live systems and establish robust monitoring for model performance and data health.
  3. Own the full model lifecycle—from problem framing and prototyping through experimental validation and production deployment—refusing a “build and forget” mentality.
  4. Apply first-principles mathematical reasoning to marketplace challenges, choosing the simplest effective solution and building complexity only when incremental value justifies the technical debt.
  5. Drive large-scale technical projects from initial concept to high-impact execution, ensuring alignment with business priorities and Lyft’s overarching goals.

Skills

Required

  • Python
  • SQL
  • Operations Research
  • Industrial Engineering
  • Mathematics
  • Computer Science
  • Statistics
  • Economics
  • querying
  • aggregation
  • analysis
  • visualization

Nice to have

  • Ph.D.
  • pricing optimization
  • marketplace design
  • resource allocation
  • two-sided marketplace
  • experimental design
  • causal inference
  • marketplace equilibrium
  • system-wide dynamics
  • modern AI/ML frameworks
  • integration patterns

What the JD emphasized

  • production-grade ML and optimization models
  • full model lifecycle
  • integrate algorithms into live systems
  • real-time or near-real-time decision systems

Other signals

  • production-grade ML and optimization models
  • full model lifecycle
  • integrate algorithms into live systems
  • real-time or near-real-time decision systems