Stella Technologies LLC is a lean startup specializing in model-based systems engineering and digital cyber engineering. They are seeking a Lead Data Engineer to design and develop data architecture for the Program Protection process, transforming complex domain knowledge into structured, machine-readable data models in collaboration with domain experts.
Responsibilities:
- Design and develop JSON Schema representations of the core data objects, attributes, validation rules, and relationships that underpin the Program Protection process
- Build validation examples, test fixtures, and versioning guidance so the schema can grow iteratively as the domain model matures
- Develop a formal ontology (OWL/RDF or equivalent) that standardizes terminology and captures relationships across data objects, making the model usable across organizations
- Collaborate closely with domain SMEs to ensure the data model faithfully represents the real-world semantics, constraints, and dependencies they work with daily
- Write and maintain technical documentation, including data-model guides, schema usage references, and integration patterns, for both practitioners and future developers
- Identify and resolve data-quality issues such as duplication, inconsistency, ambiguous definitions, and gaps in the source material
- Support workflow definition by specifying the data objects consumed and produced at each step, ensuring traceability between the workflows and the underlying schema
- Ensure all deliverables are open, non-proprietary, and provided with full Government data rights, with no vendor lock-in or licensing constraints
Requirements:
- 5+ years of professional experience in data engineering, data architecture, or knowledge engineering
- Strong proficiency with JSON Schema, including experience designing schemas from scratch rather than only consuming existing ones
- Hands-on experience building or working with formal ontologies (OWL, RDF, SKOS) or controlled vocabularies in a professional setting
- Deep understanding of data-modeling fundamentals: normalization, entity-relationship design, attribute taxonomies, and schema evolution strategies
- Proven ability to collaborate with domain experts who think in documents and processes rather than data structures, and to translate their knowledge into structured, maintainable models
- Comfortable with Git, documentation-as-code workflows, and collaborative development practices
- Active Secret clearance or ability to obtain one prior to start
- Experience in DoW acquisition, systems security engineering, or program protection environments
- Familiarity with Program Protection concepts such as CPI, critical functions, security classification, or Anti-Tamper, even at a general level
- Hands-on experience with knowledge-graph technologies, SPARQL, or graph databases
- Background with NIST frameworks (800-171, 800-53) or other federal information-security standards
- Prior experience building data models intended for multi-organization or cross-vendor use
- Interest in expanding into ML/AI data pipelines, digital twins, or model-based systems engineering