Knowledge Graph & Ontology Engineer (AI Knowledge Representation)

iBusiness Funding LLC

$90K — $130K *
Information Technology
Less than 5 years of experience
Job Overview by Ladders

Qualifications

  • Bachelor's or Master's degree in Computer Science, Data Science, Machine Learning, or equivalent experience.
  • Proven experience building knowledge graphs, semantic data models, and enterprise knowledge bases.
  • Experience with semantic technologies and standards such as RDF, OWL, and SPARQL.
  • Strong foundations in data modeling, entity resolution, and schema governance.
  • Proficiency in Python and experience with data pipelines.

Responsibilities

  • Develop and maintain ontologies and knowledge graphs for improved reasoning.
  • Define canonical entities and relationships, including taxonomies and semantic definitions.
  • Establish governance strategies for evolving knowledge models safely.
  • Aggregate disparate knowledge bases into a consistent representation.
  • Design integration patterns for structured and unstructured sources.
  • Enforce provenance and lineage standards for knowledge integrity.
  • Collaborate on metadata contracts for graph-aware retrieval.

Benefits

  • Collaborative work environment with diverse teams.
  • Opportunities to evaluate and integrate innovative technologies.
  • Clear documentation and governance processes for knowledge structures.
Full Job Description
Position Description

We are seeking an experienced Knowledge Graph & Ontology Engineer to design, implement, and govern the knowledge representation layer for next-generation AI systems. This role builds the foundational knowledge structures-ontologies, semantic models, knowledge graphs, provenance, and data fusion patterns-that enable AI agents and LLM applications to reason over enterprise knowledge reliably. You will collaborate closely with Retrieval/Relevance engineering, AI researchers, and data engineering to ensure our knowledge is well-structured, consistent, explainable, and evolvable.

Major Areas of Responsibility

Knowledge Representation & Semantic Modeling

  • Develop and maintain ontologies, knowledge graphs, and semantic data models to structure and integrate domain knowledge for improved reasoning and downstream retrieval.
  • Define canonical entities, relationships, attributes, and constraints, including taxonomy/controlled vocabularies and semantic definitions.
  • Establish schema versioning, governance, and backward compatibility strategies to evolve the knowledge model safely.


Data Fusion & Knowledge Integration

  • Aggregate disparate knowledge bases and heterogeneous data into a fused, consistent representation with clear semantics and lineage.
  • Design integration patterns for structured + unstructured sources (e.g., documents  entities/relations) and maintain alignment across domains.


Provenance, Lineage, and Data Quality

  • Define and enforce provenance/lineage standards (source attribution, timestamps, confidence, auditability).
  • Collaborate with pipeline engineers to implement validation rules and quality gates for knowledge graph construction (e.g., integrity constraints, anomaly detection).
  • Cognitive Memory & Persistent Knowledge Structures (Representation View)
  • Design representation primitives that support cognitive memory architectures for AI agents (identity, episodic traces, persistent facts, context scoping).


Collaboration & Documentation

  • Partner with Retrieval/Relevance engineering to define metadata contracts and 2safe traversal2 semantics for graph-aware retrieval.
  • Maintain clear documentation of schemas, ontologies, knowledge modeling guidelines, and governance processes.
  • Evaluate and integrate new technologies and research in knowledge representation and semantic modeling.


Required Knowledge, Skills, and Abilities

  • Bachelors or Masters degree in Computer Science, Data Science, Machine Learning, or related field (or equivalent experience).
  • Proven experience building knowledge graphs, semantic data models, and/or enterprise knowledge bases.
  • Experience with semantic technologies and standards (as applicable): RDF, OWL, SPARQL (or equivalent graph/ontology concepts).
  • Strong foundations in data modeling, entity resolution/canonicalization, and schema governance.
  • Proficiency in Python and working with data pipelines (in collaboration with data engineering).
  • Excellent analytical, problem-solving, and cross-functional communication skills.


Nice To Haves

  • Experience designing agent memory representations (episodic/semantic memory patterns, long-term context).
  • Familiarity with LLM grounding patterns (provenance, citations, trust signals).
  • Experience with graph databases and tooling (e.g., Neo4j/AWS Neptune equivalents).
  • Experience with data-centric AI and training data quality assessment.


Primary Ownership (What success looks like)

  • The knowledge model is correct, consistent, explainable, and governable.
  • High-quality entity resolution + clean relationships + strong provenance coverage.
  • Stable schemas that evolve without breaking downstream applications.


Conclusion:

This job description is intended to convey information essential to understanding the scope of the job and the general nature and level of work performed by job holders within this job. This job description is not intended to be an exhaustive list of qualifications, skills, efforts, duties, responsibilities, or working conditions associated with the position.

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