Manager Ii, Machine Learning – Conversion Visibility

Pinterest Pinterest · Consumer · Seattle, WA · Monetization

Manager II, Machine Learning – Conversion Visibility at Pinterest. Leads a hybrid team of ML engineers and backend software engineers to build end-to-end identity and conversion visibility solutions for the ads marketplace. Focuses on modeling, serving, and data infrastructure to improve match precision/recall and downstream conversion quality, impacting ranking, bidding, measurement, and reporting across the ads stack. Requires experience in building and deploying large-scale ML systems and engineering management.

What you'd actually do

  1. Attract, hire, develop, and lead a hybrid team of ML engineers and backend software engineers, fostering strong collaboration across modeling and infrastructure and building an inclusive, high-performing environment where the team can deliver end-to-end solutions.
  2. Lead a team responsible for the strategy, execution, and operational excellence of identity and conversion signal modeling systems (e.g., user match prediction, conversion type/value prediction, probabilistic attribution and deduplication) that improve match precision/recall and downstream conversion quality across web and app surfaces.
  3. Partner closely with product managers, data scientists, and tech leads to shape problem definitions, translate business needs into technical strategy, and drive execution toward high-impact outcomes.
  4. Collaborate closely with Ads Ranking & Bidding, Measurement Products, and Conversion Ingestion & Attribution teams to define interfaces, SLAs, and success metrics that enable end-to-end identity and conversion visibility systems—including models, data pipelines, and serving surfaces—to integrate cleanly into the broader ads ecosystem.
  5. Establish engineering best practices across both ML and backend development, including data quality, feature and data pipelines, model evaluation, experimentation, service reliability, and operational excellence, so the team can build trustworthy ML-powered systems end to end.

Skills

Required

  • 7+ years of experience building and deploying large-scale ML systems in production (e.g., ads, measurement, recommendation, ranking, or search)
  • 2+ years of experience as an engineering manager or technical lead
  • Proven technical leadership across both ML and software systems, with experience setting direction for multi-quarter roadmaps that span modeling, data pipelines, backend services, and productionization, and aligning stakeholders on priorities, trade-offs, and execution plans.
  • Excellent cross-functional communication and collaboration skills, building strong partnerships with product, data science, infra, and partner ML teams to clarify ambiguous problem spaces, co-create solutions, and drive consensus with senior stakeholders.

Nice to have

  • Meaningful hands-on experience or strong familiarity with ads conversion attribution, identity matching, ads ranking or ads measurement domains.

What the JD emphasized

  • building and deploying large-scale ML systems in production
  • engineering manager
  • technical leadership

Other signals

  • leading a team
  • building end-to-end identity and conversion visibility solutions
  • setting technical direction for high-impact ML systems