Machine Learning Engineer

Lyft Lyft · Consumer · Toronto, ON · Central MLB

Machine Learning Engineer at Lyft Business responsible for designing, building, and deploying ML systems, including agentic AI platforms and models for pricing, fraud detection, and behavioral analysis. The role involves end-to-end ownership of models, from prototyping to production, and collaboration with cross-functional teams to deliver scalable ML solutions for B2B use cases.

What you'd actually do

  1. Develop and deploy ML models across multiple problem domains — including dynamic pricing, marketplace optimization, fraud detection, and anomaly/behavior detection — in production environments serving millions of rides
  2. Build and iterate on agentic AI systems (e.g., LLM-powered analytical agents) that automate decision-making and reduce operational overhead
  3. Design and implement feature pipelines, model training workflows, and serving infrastructure using Lyft's ML platform
  4. Partner with Data Scientists on the Algorithms and Decisions teams to take research prototypes from proof-of-concept to production at scale
  5. Evaluate ML system performance against business KPIs, run experiments, and drive continuous model improvement

Skills

Required

  • Production-quality code
  • End-to-end model ownership
  • Collaboration with Data Scientists, Product Managers, and Software Engineers
  • Experience with GenAI / LLM ecosystems — prompt engineering, RAG, agent frameworks (e.g., LangChain, LangGraph), or fine-tuning
  • Experience with pricing, marketplace, or fraud-related ML problems
  • Familiarity with cloud ML services (AWS SageMaker, Bedrock) or internal ML platforms
  • Track record of identifying and scoping ML projects independently

Nice to have

  • Exposure to graph-based ML methods (graph neural networks, knowledge graphs, network analysis)

What the JD emphasized

  • Experience with GenAI / LLM ecosystems — prompt engineering, RAG, agent frameworks (e.g., LangChain, LangGraph), or fine-tuning
  • Track record of identifying and scoping ML projects independently, not just executing on pre-defined specs

Other signals

  • shipping models that directly influence revenue, rider experience, and partner trust
  • design, build, and deploy ML systems across Lyft Business
  • move across pricing algorithms, fraud and behavior detection, agentic AI systems, and emerging ML applications
  • own models end-to-end from prototyping through deployment
  • translate complex business problems into scalable ML solutions