Samba TV

Ontology Engineer-Knowledge Graph & Identity

Samba TV$150K — $180K *
Information Technology
Less than 5 years of experience
Job Overview by Ladders

Qualifications

  • 2-4 years of experience in knowledge graph development or ontology engineering
  • Proficient in W3C semantic web standards: RDF, RDFS, OWL, SPARQL
  • Familiar with SHACL or similar validation frameworks for graph quality
  • Strong Python programming skills for clean and production-ready code
  • Understanding of entity-relationship design and data modeling principles
  • Knowledge of entity resolution concepts and data matching
  • Bachelor's degree in Computer Science, Information Science, Mathematics, or related field; Master's preferred

Responsibilities

  • Implement and extend RDF/RDFS/OWL ontology schemas in the graph database
  • Build and maintain SHACL validation shapes for data consistency checks
  • Support ontology versioning and schema updates documentation
  • Write efficient SPARQL queries to support data science use cases
  • Contribute to PySpark/Databricks pipelines for event-to-ontology transformations
  • Implement derivation logic and validate outputs against SHACL shapes
  • Collaborate closely with data engineering on pipeline design and data quality

Benefits

  • Flexible working hours
  • Opportunities for professional development
  • Collaborative work environment
  • Health, dental, and wellness benefits
  • Access to cutting-edge technology and tools
Full Job Description
As an Ontology Engineer on Samba TV's Knowledge Graph & Identity team, you will build, maintain, and extend the knowledge graph schemas, derivation pipelines, and graph data models that underpin Samba's measurement and audience intelligence products. Working closely with the Senior Ontologist and peer data scientists, you will implement ontological frameworks in production, contribute to entity resolution and data enrichment pipelines, and help ensure the graph layer remains accurate, consistent, and production-ready.

This is a hands-on technical role. You are expected to write clean, production-quality Python and SPARQL, take ownership of well-scoped graph work streams, and grow your depth in semantic modeling under the guidance of senior team members.

This role reports to the Data Science Manager, Knowledge Graph & Identity.

What You'll Do:

Ontology Implementation & Validation
  • Implement and extend Samba's RDF/RDFS/OWL ontology schemas in the graph database - adding entity classes, properties, and constraints in a consistent, governed way under the direction of the Senior Ontologist
  • Build and maintain SHACL validation shapes for post-load graph consistency checks; identify and triage data quality and schema violations
  • Support ontology versioning, change log documentation, and consistency checking across schema updates
  • Write efficient, well-structured SPARQL queries and graph traversals to support downstream data science and product use cases
Event-to-Ontology Derivation Pipelines
  • Contribute to the event-to-ontology transformation and derivation layer - building PySpark/Databricks pipelines that aggregate raw TV viewership and web activity events into durable graph attributes (genre affinity, brand affinity, topic affinity, viewing summaries, lifecycle signals)
  • Implement derivation logic specified by the Senior Ontologist and data science team; validate outputs against SHACL shapes before graph load
  • Support incremental refresh and update logic aligned with the graph's batch refresh cadence
Technical Contribution
  • Write production-quality Python - clean, well-tested, documented, and reusable by teammates
  • Work with PySpark and Databricks to process and transform high-volume data as part of graph pipeline development
  • Apply embedding-based approaches (semantic similarity, vector search) to entity matching and ontology alignment tasks
  • Contribute to team tooling, documentation, and reusable components that improve knowledge graph development efficiency
Collaboration & Growth
  • Partner closely with data engineering on pipeline design, data quality, and incremental ingestion patterns feeding the materialized graph substrate
  • Participate in ontology design reviews and cross-functional working groups
  • Work with product and operations teams to understand use case requirements and translate them into graph schema updates
  • Actively develop expertise in W3C semantic web standards, RDF-native graph databases, and entity resolution under the guidance of the Senior Ontologist


Who You Are:

Must-Haves
  • 2-4 years of hands-on experience in knowledge graph development, semantic data modeling, ontology engineering, or a closely related field
  • Working knowledge of W3C semantic web standards: RDF, RDFS, OWL, and SPARQL - with practical experience querying or building in at least one triplestore or graph database
  • Familiarity with SHACL or equivalent constraint and validation frameworks for graph data quality
  • Strong Python skills - clean, readable, production-quality code with testing and documentation
  • Solid understanding of data modeling fundamentals - entity-relationship design, taxonomies, hierarchies, and how to represent complex real-world relationships in structured form
  • Familiarity with entity resolution or data matching concepts - understanding of why the same real-world entity appears under different identifiers across data sources
  • Bachelor's degree required in Computer Science, Information Science, Mathematics, or a related field; Master's preferred
  • Detail-oriented and proactive about flagging data quality issues and schema inconsistencies
Strongly Preferred
  • Hands-on experience with Amazon Neptune or Stardog - or equivalent RDF-native triplestore; exposure to data virtualization (Neptune Orion or Stardog Virtual Graphs) a plus
  • Working knowledge of PySpark and Databricks - particularly for large-scale event aggregation and transformation pipelines
  • Familiarity with embedding models, vector search, or semantic similarity - applied to entity matching, ontology alignment, or knowledge graph enrichment
  • Experience with LLM APIs or RAG-based approaches applied to information extraction, entity disambiguation, or schema mapping
  • Domain knowledge in media, entertainment, or ad tech - content metadata, advertising entities, TV viewership data, or audience/identity data
  • Exposure to identity resolution, probabilistic record linkage, or device graph approaches


$150,000 - $180,000 a year

About Samba TV

Industry
Founded
2008

Similar Jobs

More Jobs at Samba TV

More Information Technology Jobs

Find similar Ontology Engineer-Knowledge Graph & Identity jobs: