Personalization Product Associate - Senior Associate

JPMorgan Chase JPMorgan Chase · Banking · New York, NY +1 · Consumer & Community Banking

This role is a Senior Product Associate focused on the Customer Intelligence Hub, a personalized content generation layer that mines customer data to generate and deliver insights. The role involves owning feature delivery, managing backlogs, running experiments on ranking models and summary quality, and partnering with Data Scientists on model evaluation, including LLM-as-a-Judge scoring and contextual bandit optimization. The platform discovers new moments, surfaces intelligence, predicts resonance, and learns from engagement signals, emitting natural language and structured data for various consumers.

What you'd actually do

  1. Own feature delivery from discovery through production
  2. Manage the product backlog across engineering teams
  3. Run experiments to validate ranking models and summary quality
  4. Partner closely with Data Scientists on model evaluation — including LLM-as-a-Judge quality scoring and contextual bandit optimization
  5. Translate strategy into sprint-level delivery that ships measurable customer value

Skills

Required

  • Proficient knowledge of the product development life cycle
  • Experience in product life cycle activities including discovery and requirements definition
  • Developing knowledge of data analytics and data literacy
  • Experience shipping ML/AI-powered features to production in close partnership with Data Scientists and Engineers
  • Strong backlog management skills: JIRA epics, user stories, acceptance criteria, refinement, sprint planning, and delivery tracking
  • Data literacy: ability to read model metrics, interpret experiment results (A/B tests, statistical significance), and make prioritization decisions based on data
  • Experience working with Data Scientists on the model lifecycle — design, evaluation, deployment, and monitoring
  • Comfort with LLM-based products: prompt engineering concepts, quality evaluation methodologies, and output governance
  • Clear, structured communicator with strong written and presentation skills; ability to translate technical complexity into stakeholder-ready narratives
  • Proven ability to work across technical and non-technical teams — comfortable partnering with Data Scientists on model design and with marketing or product teams on use-case adoption

Nice to have

  • Familiarity with recommendation or ranking systems (contextual bandits, LinUCB, DLRM, embeddings)
  • Experience with LLM evaluation pipelines (LLM-as-a-Judge, quality rubrics, automated scoring)
  • Understanding of personalization at scale, particularly in financial services
  • Experience with real-time ML serving infrastructure (Ray Serve, streaming pipelines, Flink/Kafka, or equivalent)
  • Experience with API-first delivery on cloud (e.g., AWS) and coordination across multi-channel experiences (mobile, web, branch, contact center)
  • Demonstrated prior experience working in a highly matrixed, complex organization
  • BS or MS in Engineering, Data Science, Business, or a comparable field of study

What the JD emphasized

  • shipping ML/AI-powered features to production
  • model lifecycle — design, evaluation, deployment, and monitoring
  • LLM-based products: prompt engineering concepts, quality evaluation methodologies, and output governance
  • ranking/selection and summary-quality testing (hypotheses, A/B design, measurement)
  • mine behavior, identify “moments that matter,” and ship ranked candidate insights every sprint

Other signals

  • shipping ML models
  • customer-facing AI product
  • personalization
  • LLM evaluation
  • agentic systems