AI Engineer and Architect
Listed on 2026-04-27
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IT/Tech
AI Engineer, Data Scientist, Machine Learning/ ML Engineer
Job Family
Data Science & Analysis
Travel RequiredUp to 10%
Clearance RequiredActive Secret
Job SummaryThe AI Engineer supports system-specific implementations that embed AI/ML and agentic automation to accelerate metadata identification, extraction, enrichment, and documentation. This role owns the metadata harvesting plan and leads the design and implementation of AI-assisted workflows that generate validated metadata artifacts (e.g., semantic tags, data dictionary entries, and supporting documentation) using client-approved tools and human-in-the-loop steward review cycles.
The AI Engineer is accountable for automated metadata harvesting and documentation, delivering automated harvesting and AI-assisted documentation outputs while operating within approved governance and security guardrails.
Key Responsibilities- Design AI-assisted metadata harvesting & enrichment:
Build AI/ML-enabled approaches to identify, extract, normalize, and enrich technical, business, and operational metadata from structured and semi-structured sources (e.g., databases, pipelines, file/document repositories) and generate semantic tags and documentation outputs. - Implement agentic/GenAI workflows for metadata documentation:
Design and implement agentic AI patterns to support autonomous or semi-autonomous metadata exploration, summarization, and documentation generation—while maintaining human validation and auditability. - Own the metadata harvesting plan:
Define scope, sequencing, cadence, source coverage, extraction methods, staging, validation, and handoffs; maintain decision logs and traceability for stewardship and governance review. - Human-in-the-loop steward validation:
Facilitate structured in-person/virtual review cycles with data stewards to validate AI-generated metadata, resolve discrepancies, and continuously improve extraction/enrichment accuracy. - Responsible automation scoping:
Identify where automation is feasible vs. where systems require manual curation; document constraints and remediation needs without attempting to “automate through” non-harvestable environments. - Build and maintain scalable pipelines (metadata-focused):
Implement and maintain scalable pipelines that integrate structured and unstructured sources for metadata extraction and enrichment; apply strong engineering discipline for reliability and repeatability. - RAG / knowledge integration for semantic discovery:
Lead work that connects harvested metadata to semantic search patterns using retrieval-augmented generation (RAG) concepts and, where applicable, knowledge graph integration to improve discoverability and semantic alignment. - Metadata quality metrics & validation controls:
Define and implement checks for completeness, accuracy, timeliness, and consistency; flag issues for remediation and support governance escalation where required. - Technical testing & verification:
Plan and execute tests to verify the metadata extraction/enrichment process works reliably across supported sources; contribute to regression coverage and repeatable validation workflows. - Mentor and elevate engineering rigor:
Mentor junior team members on agentic AI/GenAI engineering patterns, metadata quality practices, and documentation standards.
- Must be able to OBTAIN and MAINTAIN a Federal or DoD "PUBLIC TRUST". Candidates with an ACTIVE SECRET CLEARANCE OR PUBLIC TRUST or SUITABILITY are preferred.
- Once onboard with Guidehouse, new hire MUST be able to OBTAIN and MAINTAIN a Federal or DoD "SECRET" security clearance.
- Bachelor’s degree obtained.
- 3-5+ years of experience in AI engineering, applied ML, or data/AI solution development in enterprise environments (senior-level expectations aligned to the referenced agentic AI role).
- Strong proficiency in Python; working proficiency in SQL; familiarity with R is beneficial for statistical validation/profiling.
- Hands‑on experience with Generative AI (LLMs and/or similar) and Agentic AI architectures applied to real workflows.
- Experience with RAG pipelines, and familiarity with vector databases and knowledge graphs (for semantic retrieval and metadata-driven discovery).
- Experience with AI/ML frameworks such as Tensor Flow…
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