Executive Director-firmwide AI Data Strategy

JPMorgan Chase JPMorgan Chase · Banking · New York, NY +1 · Corporate Sector

Executive Director to shape the enterprise AI data strategy, focusing on knowledge representation, ontologies, and data foundations for AI applications at scale within a financial services organization.

What you'd actually do

  1. Drive the development and adoption of the enterprise AI data strategy, aligning stakeholders across business lines and functions.
  2. Evaluate industry standards and semantic technologies for adoption across the organization, ensuring alignment with strategic objectives.
  3. Collaborate with stakeholders, subject matter experts, product owners, and engineers to understand use cases, requirements, and dependencies, critically assessing proposed solutions.
  4. Provide expert input into the enterprise data strategy, with a focus on knowledge representation, ontology design, and data readiness for AI.
  5. Communicate complex ideas effectively to collaborators and senior leaders using precise terminology and relatable examples, asking clarifying questions to define core meanings.

Skills

Required

  • Enterprise-wide data or AI strategy development
  • Knowledge Representation
  • Ontology design
  • Semantic technologies (OWL, RDF, SKOS, SHACL)
  • Financial service standards (ISO 20022)
  • Structured thinking
  • Communication skills

Nice to have

  • Applying financial sector ontologies and data standards in production
  • Program management
  • Collaborative development best practices
  • Large-scale, distributed, end-to-end data systems and architectures
  • Data governance and data management frameworks

What the JD emphasized

  • PhD in Artificial Intelligence, Computer Science, Information Science, Knowledge Representation, or a related field.
  • 10 years of experience developing enterprise-wide data or AI strategy for large, complex organizations.
  • Expertise in data and financial service standards such as ISO 20022, and semantic technologies including OWL, RDF, SKOS, and SHACL.

Other signals

  • enterprise AI data strategy
  • knowledge representation
  • ontology design
  • data readiness for AI