Corporate Finance – Data Science Product Associate

JPMorgan Chase JPMorgan Chase · Banking · Newark, DE +1 · Corporate Sector

This role is for a Data Science Product Associate at JPMorgan Chase, focusing on building data and analytics products for Finance. The role involves translating business needs into analytics-driven features, collaborating with product, data science, and engineering teams, and supporting the development and testing of AI/ML models and their controls. Key responsibilities include analyzing product usage, building dashboards, ensuring compliance with data and model risk standards, and managing backlogs using Agile practices. The role requires a quantitative background, proficiency in SQL, Python/R for analysis and model evaluation, experience with experimentation, and knowledge of data and BI concepts.

What you'd actually do

  1. Translate business problems into analytical requirements and clear acceptance criteria; refine epics and write user stories that maximize value.
  2. Analyze product usage, customer behavior, and model performance to surface insights that inform prioritization and roadmap decisions.
  3. Build executive‑ready dashboards and narratives; design A/B tests and pilots, define success metrics, and evaluate outcomes including return on investment.
  4. Partner with engineering on data validation, lineage, documentation, and control alignment; ensure compliance with privacy, security, and model risk requirements.
  5. Maintain and prioritize a backlog of data enhancements aligned to business outcomes; manage delivery using Agile practices and tooling.

Skills

Required

  • Bachelor’s degree in a quantitative field (e.g., computer science, statistics)
  • minimum of four years in product analytics, business analytics, or data science within a digital or product environment
  • Proficiency in SQL
  • Proficiency in Python or R for exploratory analysis and model evaluation
  • experience with time series analysis and modeling
  • training or fine‑tuning machine learning models
  • Experience with experimentation (A/B testing), cohort analysis, key performance indicators (KPIs), and measurement plans for model‑powered features
  • Ability to manage multiple workstreams under tight deadlines
  • strong analytical, problem‑solving, and collaboration skills
  • In‑depth knowledge of data and business intelligence concepts, including extract, transform, load (ETL), data modeling, and reporting automation
  • Strong storytelling skills

Nice to have

  • Experience with Agile delivery methodologies and tools
  • Exposure to machine learning productization, including model monitoring, drift detection, and feature performance measurement
  • Knowledge of banking products
  • Awareness of user interface and user experience (UI/UX) principles
  • Experience with Jira and Confluence
  • Familiarity with model risk governance and documentation standards

What the JD emphasized

  • model risk standards
  • privacy, security, and model risk requirements

Other signals

  • AI/ML models
  • data quality
  • trusted reporting
  • model-powered features
  • dashboards
  • controls