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Lead ML Engineer / Data Scientist

Leads design, build, and deployment of production ML systems for demand intelligence including recommendation engines, forecasting, and personalization for enterprise B2C clients. Owns full lifecycle from problem framing to business impact, with deep systems thinking and causal rigor; hires and mentors team.

San Francisco, CAML EngineeringHybrid

About the role

Responsibilities

Build — hands-on, every day

  • Design, build, and deploy ML models and pipelines that power core product capabilities: recommendation systems, search relevance, customer segmentation, demand forecasting, and activation optimization
  • Develop configurable, multi-tenant model architectures that adapt to different customer contexts, data availability, and business requirements without being rebuilt from scratch
  • Engineer production-grade ML systems — not just prototypes. Own model serving, monitoring, retraining, and the infrastructure that keeps models reliable at scale
  • Create meaningful models with the data that's actually available — not the data you wish you had. Know how to extract signal from limited, noisy, or sparse datasets
  • Design and run rigorous A/B tests and experimentation frameworks — including understanding when A/B testing is insufficient and causal inference methods are required
  • Deliver analyses that drive decisions — not dashboards that collect dust. Connect model outputs to business outcomes and communicate them with clarity
  • Apply causal reasoning rigorously — know the difference between correlation and causation, design analyses that surface true drivers, and flag when others confuse the two

Lead — set direction and raise the bar

  • Define and own the ML roadmap in partnership with the founding team
  • Think in systems. Design interconnected systems where recommendation, segmentation, scoring, and activation reinforce each other
  • Frame business problems as ML problems — and know when a simpler approach beats a complex model
  • Set engineering and scientific standards — validation methodology, experiment design, code quality, reproducibility, and deployment discipline
  • Prioritize across competing demands, keeping the team focused on highest-impact work
  • Communicate results, tradeoffs, and strategic recommendations clearly to founders, customers, and non-technical stakeholders
  • Be the tiebreaker on methodology and architecture

Grow — build the team and the culture

  • Hire, mentor, and develop ML engineers and data scientists as the team scales
  • Create an environment of scientific rigor without academic slowness — ship, validate, iterate
  • Build processes that work at startup speed — reviews and checkpoints that improve quality without killing velocity
  • Identify capability gaps and build the team to fill them
  • Lead by example: the team sees you in the data, in the code, in the hard problems

Requirements

  • ML engineer who ships to production. Write clean, testable Python
  • Care about model serving, pipeline reliability, and monitoring — not just offline metrics. Models run in production and own them there
  • Systems thinker. Understand how models, data flows, customer behavior, and business outcomes connect
  • Product-minded ML leader. Frame every technical decision in terms of the outcome it enables
  • Deep B2C business knowledge. Understand problems that consumer businesses face — customer acquisition

Skills

PythonMachine LearningRecommendation SystemsDemand ForecastingCustomer SegmentationA/B TestingCausal InferenceMl PipelinesModel ServingMulti-Tenant Architectures

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