Senior Product Manager Ii- Commerce and Personalization

Disney Disney · Media · San Francisco, CA +4

Product Manager role focused on a machine learning-powered personalization engine for a consumer streaming service. The role involves driving strategy and execution for the personalization platform, including model improvements, data expansion, and surface experiments to maximize subscriber lifetime value. Key responsibilities include defining metrics, partnering with ML/Data Science to build models, launching new personalization capabilities, designing experiments, ensuring model quality, and coordinating cross-functionally. Experience with production ML models, experimentation, and subscription businesses is required.

What you'd actually do

  1. Own personalization platform strategy and roadmap: Drive three parallel workstreams (model improvements, data expansion, surface experiments) to maximize subscriber lifetime value across key Commerce touchpoints
  2. Define and socialize North Star metrics: Establish success criteria for all personalization experiments; ensure consistent measurement across surfaces
  3. Partner with ML/Data Science to build better models: Translate business problems into model requirements and success criteria
  4. Build new personalization capabilities: Spec and launch propensity models, cross-surface offer orchestration (decide _where_ to show offers, not just _what_), and unauthenticated personalization
  5. Design and ship high-impact experiments: Run A/B tests across surfaces with clear LTV success criteria and guardrails (retention, revenue, and engagement)

Skills

Required

  • 7+ years of product management experience shipping consumer products at scale (millions of users)
  • Proven track record partnering with Data Science/ML Engineering to build and ship production ML models (recommender systems, propensity models, ranking algorithms, personalization platforms)
  • Deep understanding of A/B testing, experimentation frameworks, holdout design, statistical significance, and measuring incrementality
  • Experience with subscription businesses, pricing, promotions, lifecycle optimization, growth, or monetization
  • Data-driven decision-making: comfortable defining success metrics, interpreting experiment results, making go/no-go decisions based on data
  • Cross-functional leadership: ability to influence ML Engineering, Data Science, and surface PMs without direct authority; skilled at building consensus across competing priorities
  • Strong stakeholder management
  • Clear communicator: translates complex ML concepts into business language and vice versa; writes crisp strategy documents and presents effectively to leadership
  • Experience working in fast-paced, high-growth environments with ambiguous problem spaces

Nice to have

  • Experience with ML serving infrastructure and personalization platforms (Metaflow, Kubeflow, or similar)
  • Built recommendation or ranking systems at scale for complex, multi-SKU product surfaces
  • Worked with prediction models to evaluate experiments or prioritize product investments
  • Experience coordinating personalization across multiple surfaces to ensure consistent messaging and avoid signal cannibalization

What the JD emphasized

  • shipping consumer products at scale (millions of users)
  • build and ship production ML models
  • Deep understanding of A/B testing, experimentation frameworks, holdout design, statistical significance, and measuring incrementality
  • Experience with subscription businesses, pricing, promotions, lifecycle optimization, growth, or monetization
  • Data-driven decision-making
  • Cross-functional leadership
  • Clear communicator
  • Experience working in fast-paced, high-growth environments with ambiguous problem spaces

Other signals

  • ML-powered decisioning engine
  • personalizes offers, promotions, and recommendations
  • ML Engineering, Data Science, product, and Analytics teams
  • model improvements, data expansion, and surface experiments
  • propensity models, cross-surface offer orchestration
  • A/B tests across surfaces with clear LTV success criteria and guardrails
  • LTV-native model training, unbiased training data pipelines, and holdout groups
  • Built recommendation or ranking systems at scale