VP Product Manager, AI Automation and Data Quality

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

VP Product Manager to lead AI automation and data quality initiatives within a Data & Analytics organization. The role involves persona-driven discovery, building foundational data capabilities, managing an intake-to-graduation pipeline for pilots, evaluating internal and third-party AI solutions, and driving adoption through enablement and change management. Focus is on improving data quality, recurring reporting, and audience management to enhance analyst productivity and insights.

What you'd actually do

  1. Establish and operate metadata, semantic, and data quality capabilities that enable governed, high-quality data assets.
  2. Partner with automation teams to scale controls and automations that improve data quality, access management, and compliance outcomes.
  3. Conduct structured discovery with targeted analyst personas to identify high-frequency workflows suited for automation.
  4. Define problem statements, success criteria, and measurable outcomes for pilots and product releases.
  5. Design and run inclusive, hands-on testing programs to gather real-world feedback from diverse analyst groups.

Skills

Required

  • Proven experience evaluating, implementing, or managing AI-enabled analytics and automation solutions across a data/analytics organization.
  • Demonstrated ability to lead cross-functional product delivery from discovery through production (backlog, roadmap, releases, dependencies).
  • Strong knowledge of metadata management, data quality controls/frameworks, semantic modeling, and data governance practices.
  • Strong analytical skills to define success criteria, measure impact, identify gaps, and drive iterative improvement.
  • Experience influencing and aligning stakeholders across product, engineering, data owners, and business partners.
  • Demonstrated change management and enablement skills (training, communications, rollout planning, sustained adoption).
  • Experience designing and executing structured pilots and user testing, including consistent evaluation criteria and scorecards.
  • Excellent written and verbal communication skills, including ability to explain technical concepts to mixed audiences and senior leaders.
  • Demonstrated track record delivering measurable outcomes (productivity gains, cycle-time reduction, quality improvements, user satisfaction).
  • Comfort operating in a fast-changing environment with strong learning agility and ability to adapt priorities as needed.

Nice to have

  • Experience building enterprise-scale data quality programs, including controls, monitoring, and remediation workflows.
  • Experience commercializing internal solutions into reusable products and scaling adoption across multiple teams.
  • Familiarity with modern data/AI ecosystems and concepts (e.g., lakehouse patterns, semantic layers, NLP-enabled analytics).
  • Experience integrating approved AI assistants into analytics workflows with appropriate governance and risk considerations.
  • Experience running communities of practice, enablement programs, or change networks for analytics organizations.

What the JD emphasized

  • AI-enabled analytics and automation solutions
  • structured discovery
  • measurable outcomes
  • consistent evaluation criteria and scorecards
  • scale what works

Other signals

  • AI-enabled automation
  • data quality controls
  • evaluating AI solutions
  • integrating AI tools
  • product delivery