Product Manager, AI Platform

JPMorgan Chase JPMorgan Chase · Banking · Columbus, OH +1 · Commercial & Investment Bank

Product Manager for an AI Platform at JPMorgan Chase, focusing on building and scaling a production entity data platform. The role involves owning the end-to-end product lifecycle for resolving millions of organizational records into a single, trusted global universe of entities and producing an arbitrated 'golden profile'. Responsibilities include developing product strategy, managing the product backlog, defining requirements for entity resolution and attribute arbitration, and leading delivery of entity resolution at scale using a balance of deterministic rules and ML-assisted matching. The role also involves introducing AI- and agent-assisted processing patterns and partnering with engineering, applied ML, and other stakeholders.

What you'd actually do

  1. Develops a product strategy and product vision that delivers customer value by establishing a single, trusted, global universe of organizations and an arbitrated “golden profile” that downstream teams and platforms can rely on in production.
  2. Owns, maintains, and develops a product backlog that enables development to support the overall strategic roadmap and value proposition, translating business needs into clear, testable requirements for entity resolution, attribute arbitration, challenge-and-override workflows, and data onboarding patterns.
  3. Leads delivery of entity resolution at scale across internal systems and third-party sources by balancing deterministic rules with machine learning-assisted matching, ensuring resolution decisions are explainable, traceable, and auditable for downstream reliance.
  4. Introduces AI- and agent-assisted processing patterns to improve throughput and reduce manual intervention, while maintaining appropriate governance, human-in-the-loop controls, and objective evaluation of model performance over time.
  5. Partners closely with engineering, applied machine learning, architecture, data governance, and business stakeholders to manage dependencies, ensure resiliency and stability, and drive executive-ready communication on progress, risks, and trade-offs.

Skills

Required

  • 5+ years of experience or equivalent expertise in product management or a relevant domain area
  • 3+ years of owning complex data products or platforms where correctness, scale, and adoption are equally critical.
  • Demonstrated track record of shipping production products end-to-end, including roadmap ownership, backlog management, and measurable outcomes; experience delivering operationally supported platforms, not presentations.
  • Strong technical fluency across data platform fundamentals, including entity modeling, mastering and arbitration patterns, metadata and lineage, provenance, and data quality dimensions.
  • Ability to reason about algorithmic and operational trade-offs, including precision/recall, false positives/negatives, latency/throughput, and explainability versus automation, and to translate these into product decisions and success metrics.
  • Experience working with cross-functional teams across engineering, data engineering, applied machine learning, operations, and governance, with proven ability to influence in a matrixed environment.
  • Strong product operating discipline, including dependency management, release planning, clear requirements definition, and executive-level communication.

Nice to have

  • Demonstrated prior experience working in a highly matrixed, complex organization
  • Experience in financial services, particularly Corporate & Investment Banking, including exposure to enterprise data controls and audit expectations.
  • Prior experience with entity resolution or identity matching, deterministic rules frameworks, and machine learning-assisted matching or classification in high-volume environments.
  • Experience designing explainability, auditability, and human-in-the-loop governance patterns for AI-enabled production workflows.
  • Experience sourcing, normalizing, and integrating third-party data, including establishing scalable onboarding patterns and quality standards.
  • Familiarity with knowledge representation approaches such as knowledge graphs or ontology-driven modeling, particularly where downstream consumers requi

What the JD emphasized

  • shipping capabilities into production at scale
  • production entity data platform
  • entity resolution at scale
  • AI- and agent-assisted processing patterns
  • explainable, traceable, and auditable
  • measurable outcomes

Other signals

  • shipping capabilities into production at scale
  • entity resolution at scale
  • AI- and agent-assisted processing patterns