Wealth Management - Data Provisioning Execution & Innovation - Vice President

JPMorgan Chase JPMorgan Chase · Banking · Newark, DE +1 · Asset & Wealth Management

This role is focused on executing and innovating within a Strategic Data Provisioning team, aiming to transform how data is provisioned, governed, and consumed. The individual will translate data flows and consumer needs into requirements, partnering with various teams including those focused on agentic orchestration and applied AI. The goal is to build consumer-ready unified data products and pioneer a human-agentic operating model for data management within a financial services context.

What you'd actually do

  1. Partner with use case owners and execution teams to take requests from problem space to provisioned, governed data products on the Mesh
  2. Engage producers and Systems of Record directly to action the SDP ticket backlog, with deliberate focus on the CDO "Big Rocks" subset
  3. Break down priority lists, sequence producer conversations, and track dependencies needed to onboard additional data to the Mesh
  4. Provide executive visibility on bottlenecks, cross-product dependencies, and adoption progress against SDP OKRs
  5. Support lineage and provenance work for critical data assets in alignment with regulatory and control obligations, ensuring an evergreen, auditable record

Skills

Required

  • data management or operations transformation within financial services
  • VP-level delivery in matrixed environments
  • wealth and asset management data domains
  • analytics enablement transformation programs
  • Translate operational, ground-level work into structured requirements
  • Engage producers, Data Executives, and delivery partners credibly
  • strong technical foundation
  • Alteryx, Python, SQL, and Spark
  • cloud data platforms
  • Influence senior stakeholders
  • operate effectively in a partner role
  • Balance long-term vision with pragmatic, incremental delivery
  • Sequence complex producer and consumer dependencies
  • Communicate executive-level views of risks, dependencies, and decisions
  • Collaborate across organizational boundaries

Nice to have

  • Data Mesh patterns and capabilities
  • conceptual understanding of AI for Data approaches
  • knowledge curation and agentic orchestration
  • telemetry, continuous-optimization, and cost/accuracy/predictability tradeoffs in agentic systems
  • tokenomics-style framing
  • AI or analytics transformation product teams
  • Python, R, SQL, and PySpark
  • Tableau, Power BI, or equivalent visualization tools
  • Agile/Scrum, DevOps, and DataOps methodologies
  • Git, GitHub, or Bitbucket

What the JD emphasized

  • 8 years in data management or operations transformation within financial services, including VP-level delivery in matrixed environments
  • deep subject matter knowledge across wealth and asset management data domains, including investments
  • proven track record
  • structured requirements
  • senior stakeholders
  • complex producer and consumer dependencies