AI Engineer and Architect

GuidehouseTysons Corner, VA

About The Position

The 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.

Requirements

  • 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 TensorFlow and/or PyTorch (or equivalent).
  • Demonstrated ability to translate AI techniques into practical, auditable engineering outcomes and communicate clearly with both technical SMEs and non-technical stakeholders.

Nice To Haves

  • Familiarity with AI governance, ethical/responsible AI practices, and operating in compliance-driven environments.
  • Bachelor’s degree in Computer Science, Information Systems, Engineering, Data Science, or related field
  • Proficiency with visualization tools and interactive dashboards to communicate metadata quality, coverage, and validation results.
  • Agile delivery experience (sprint-based delivery; backlog/issue tracking).
  • Prior consulting experience delivering AI-enabled solutions in complex enterprise environments.
  • Exposure to metadata/catalog patterns and metadata-focused engineering (harvesting, catalog population concepts, semantic discovery / lineage concepts).

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.

Benefits

  • Medical, Rx, Dental & Vision Insurance
  • Personal and Family Sick Time & Company Paid Holidays
  • Position may be eligible for a discretionary variable incentive bonus
  • Parental Leave and Adoption Assistance
  • 401(k) Retirement Plan
  • Basic Life & Supplemental Life
  • Health Savings Account, Dental/Vision & Dependent Care Flexible Spending Accounts
  • Short-Term & Long-Term Disability
  • Student Loan PayDown
  • Tuition Reimbursement, Personal Development & Learning Opportunities
  • Skills Development & Certifications
  • Employee Referral Program
  • Corporate Sponsored Events & Community Outreach
  • Emergency Back-Up Childcare Program
  • Mobility Stipend
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