Investment Banking Data & Analytics - Vice President

JPMorgan Chase JPMorgan Chase · Banking · New York, NY +1 · Commercial & Investment Bank

This role focuses on building and scaling data products and pipelines for analytics and AI/ML within Investment Banking. The Vice President will own a portfolio of data products, build and operate data pipelines, and enable AI/ML workloads by provisioning features and labeled datasets. The role emphasizes data governance, quality, and compliance, with a strong focus on product thinking and delivering actionable insights through various consumption channels.

What you'd actually do

  1. Own a portfolio of IB data products: vision, backlog, roadmap, releases; define data contracts, quality SLAs, and operating KPIs.
  2. Build and operate batch/streaming pipelines using platform capabilities; enforce schema management, testing, observability, and cost/performance optimization.
  3. Enable AI/ML: provision features and labeled datasets via feature stores and governed marts; integrate with MLOps
  4. Deliver data products and insights through consumption channels (APIs/data services, SQL endpoints, dashboards, notebooks); design domain semantic layers for common IB analytics.
  5. Apply governance and controls: stewardship, cataloging, lineage, entitlements; protect sensitive data with masking/tokenization/entitlements and regulatory compliance.

Skills

Required

  • Data Engineering
  • Data Product Development
  • Financial Services
  • Databricks/Snowflake
  • Data Governance
  • Data Quality
  • Compliance
  • AI/ML Workloads
  • Investment Banking Domains
  • Communication
  • Product Thinking

Nice to have

  • Domain-driven models
  • Semantic layers
  • Lakehouse formats (Delta/Iceberg)
  • Data observability
  • Data mesh
  • Privacy-enhancing techniques

What the JD emphasized

  • 8+ years in data engineering and/or data product development in financial services with production delivery.
  • Strong grasp of data governance, quality, compliance; experience enabling AI/ML workloads.

Other signals

  • designing, building, and scaling data products and pipelines for analytics and AI/ML
  • enable AI/ML: provision features and labeled datasets via feature stores and governed marts; integrate with MLOps
  • strong grasp of data governance, quality, compliance; experience enabling AI/ML workloads