Location
Columbia, MD
Salary
Not specified
Type
fulltime
Posted
Today
Job Description
ABOUT THE ROLE
iAdeptive Technologies is hiring a Lead Data Governance, Engineering \& AI Architect to own the place where data governance, data engineering, and AI meet — because on this platform they are not separate disciplines. You will design and implement the domain model, the governance framework, the data management framework, and the AI enablement layer as one coherent system for a modern, governed lakehouse serving a federal health agency on AWS GovCloud (FedRAMP High).
This is a senior, hands-on architecture role with real breadth. You will lead the design of a two-tier domain model, stand up the catalog, lineage, and data-quality instrumentation that make data trustworthy, and both govern and help build the AI models that sit on top of it — all under an ISO/IEC 42001 AI management framework. You will lead a small team and serve as the authority who can stand behind data lineage, quality, and AI decisions when an auditor or program leader asks how the platform earns trust.
HOW WE WORK
Governance, Engineering \& AI Are One System — You design them as a single coupled system: the domain model shapes the catalog, the catalog feeds lineage, lineage and quality make AI trustworthy, and AI governance closes the loop.
Compute-in-Code, Narrate-with-LLM — Data-quality metrics and governance controls run on deterministic, testable code paths. AI and RPA orchestrate, detect anomalies, and narrate results — they never silently produce the numbers. Keeping the measurement reproducible and the AI separable is a core engineering value here.
Architect Who Builds — You set the reference architecture and stay in the implementation. If it can't be traced, it isn't governed; if you can't build it, you can't lead it.
WHAT YOU WILL DO
Domain Modeling \& Data Management
- Lead the design and implementation of a two-tier domain model as the platform's organizing structure
- Own the data management framework: standards for how data is defined, owned, modeled, retained, and shared
- Establish the metadata and reference-data model the rest of the platform builds against
- Design data modeling for AI — feature and semantic structures and vector/embedding schemas that make data consumable by RAG and generative systems
Governance Framework: Catalog, Lineage, Quality
- Design and implement the data governance framework — catalog, business glossary, and end-to-end lineage
- Build data-quality instrumentation as deterministic, testable controls, using AI and RPA to orchestrate, detect anomalies, and narrate — not to compute the metrics themselves
- Translate data classification, retention, and access policy into enforced, automated controls
- Stand up and lead data stewardship across the domain model
AI Enablement, Modeling \& Governance
- Support the design, build, and evaluation of AI models (e.g., RAG and generative/agentic capabilities on Amazon Bedrock), partnering with the AI engineering team
- Govern AI under ISO/IEC 42001 — model lineage, evaluation, audit trail, responsible-use controls
- Keep deterministic computation separable from AI-generated narration across data products
- Apply AI and RPA to automate governance and data-management tasks where it raises quality and traceability
Leadership \& Assurance
- Lead a small team of stewards, engineers, and analysts; set standards, review designs, mentor
- Partner with platform, security, and engineering leads to embed governance and AI controls into pipelines
- Represent data governance and AI assurance in architecture reviews, audits, and oversight
WHAT WE'RE LOOKING FOR
- 10\+ years across data architecture, data management/governance, and data engineering, with real ownership of a governance program or reference architecture
- Hands-on experience designing domain/data models and data management frameworks at enterprise scale
- Deep experience with data catalog and lineage tooling (OpenMetadata, Apache Atlas) and data-quality frameworks
- Hands-on AWS data stack — Glue, Lake Formation, Athena, S3 — and lakehouse table formats (Apache Iceberg, Delta, or Hudi)
- Experience building or governing AI/ML models — ideally RAG or generative/agentic — and a clear point of view on separating deterministic computation from AI narration
- Experience applying AI and/or RPA to automate data-quality or governance tasks
- Demonstrated technical leadership while staying hands-on
BONUS POINTS
- FedRAMP / NIST 800-53 environments and agency security baselines
- ISO/IEC 42001 or other AI governance and risk frameworks
- CDMP, or a cloud / ML certification
- Federal data programs and audit/oversight reviews
- Data-mesh patterns and API-first data products
WHY iADEPTIVE
iAdeptive Technologies is an 8(a) small business building modern data, cloud, and AI systems for federal mission programs. We are engineers first. You will work alongside architects and engineers who write the code they design, ship into FedRAMP-authorized environments, and treat governance and security as part of the build rather than paperwork bolted on at the end.
DETAILS
- Location: Remote (U.S.); Maryland-area preferred for occasional on-site collaboration
- Employment Type: Full-time, W-2; U.S. work authorization required; may require ability to obtain a Public Trust or higher background determination
- Benefits: Health, dental, vision; 401(k) with company contribution; PTO and federal holidays; training and certification support
iAdeptive Technologies is an Equal Opportunity Employer. All qualified applicants will receive consideration for employment without regard to race, color, religion, sex, sexual orientation, gender identity, national origin, disability, protected veteran status, or any other characteristic protected by law.
Skills field (top 10):
Data Governance · Data Architecture · Data Engineering · Data Modeling · Data Lineage · Data Quality · AWS (Glue / Lake Formation) · Apache Iceberg · RAG / Generative AI · AI/ML Governance
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