Ontology / Knowledge Engineer Lead - Chase Semantic Layer

JPMorgan Chase JPMorgan Chase · Banking · Jersey City, NJ +1 · Consumer & Community Banking

This role focuses on building and curating semantic data assets, ontologies, and knowledge graph mapping assets to create an intelligent knowledge graph that underpins enterprise AI, analytics, and data governance. The engineer will work with semantic web technologies and formal knowledge representation to connect diverse data sources into a coherent enterprise knowledge graph.

What you'd actually do

  1. Author Logical Data Model Ontologies that compose concepts from Upper Ontologies and Semantic Taxonomies to accurately represent how enterprise data is materialized across our data estate
  2. Design and maintain Knowledge Graph Mapping assets that connect relational databases, REST APIs, in-memory data structures, and real-time streaming sources to a coherent enterprise knowledge graph
  3. Curate Semantic Taxonomy structures using controlled vocabularies and Concept Schemes to organize enterprise concepts consistently across multiple business domains
  4. Contribute to the design and governance of Upper Ontologies and Semantic Taxonomies that provide a shared, standardized conceptual backbone across enterprise semantic use cases
  5. Enable Virtual Knowledge Graph capabilities by ensuring mapping assets and ontology definitions support on-the-fly knowledge graph materialization without physical data movement

Skills

Required

  • semantic web technologies
  • knowledge graph engineering
  • ontology development
  • linked data systems
  • formal knowledge representation principles
  • class hierarchies
  • property definitions
  • logical constraints
  • data mapping concepts
  • structured and semi-structured data sources
  • ontology-defined target vocabularies
  • semantic data model layers
  • foundational data models
  • schema definition languages
  • controlled vocabulary organization standards
  • relational databases
  • semi-structured data sources
  • REST APIs
  • in-memory structures
  • streaming data pipelines
  • business and data requirements translation
  • formal semantic models
  • Virtual Knowledge Graph concepts
  • heterogeneous data sources
  • shared semantic layer
  • physical data movement

Nice to have

  • authoring ontologies
  • knowledge graph mapping assets
  • production enterprise environment
  • enterprise-scale knowledge graph programs
  • large, complex organization
  • Reasoning and Semantic Validation frameworks
  • syntactic and semantic correctness
  • Upper Ontology design patterns
  • standardizing conceptual overlaps
  • enterprise use cases
  • communicating complex semantic modeling decisions
  • non-technical stakeholders
  • business analysts
  • product owners

What the JD emphasized

  • 3 years of experience working with semantic web technologies, knowledge graph engineering, ontology development, or linked data systems in a professional or research setting
  • Demonstrated understanding of formal knowledge representation principles, including class hierarchies, property definitions, and logical constraints
  • Working knowledge of semantic data model layers, including foundational data models, schema definition languages, and controlled vocabulary organization standards
  • Awareness of Virtual Knowledge Graph concepts and the principles of connecting heterogeneous data sources to a shared semantic layer without physical data movement

Other signals

  • curate the semantic data assets that connect our enterprise data estate to a shared, intelligent knowledge graph
  • building the ontologies and mapping assets that make our data semantically interoperable across use cases
  • foundational capability that underpins enterprise AI, analytics, and data governance