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AI Architect

VTG Defense
United States, Virginia, Chantilly
14291 Park Meadow Drive (Show on map)
May 12, 2026
Overview

VTG is seeking a highly experienced and innovative AI Architect to lead the design, development, evaluation, and deployment of advanced artificial intelligence solutions in support of mission-critical and enterprise initiatives. This role requires deep expertise in modern AI/ML architectures, including agentic AI systems, large language models (LLMs), autonomous workflows, AI evaluation frameworks, and production-grade machine learning operations (MLOps). This position is located in Chantilly, VA.

The ideal candidate is both technically exceptional and customer-facing - capable of advising senior leadership, engaging directly with government and commercial stakeholders, and serving as a trusted authority on emerging AI technologies and best practices. This individual must have hands-on experience building and operationalizing AI systems at scale and possess a strong understanding of modern AI governance, responsible AI principles, and evaluation methodologies.


What will you do?

Architect, design, and implement advanced AI/ML solutions, including:

  • Agentic AI systems
  • Retrieval-Augmented Generation (RAG)
  • Large Language Model (LLM) integrations
  • Autonomous and semi-autonomous workflows
  • AI orchestration frameworks
  • Predictive analytics and traditional ML models

Lead the end-to-end AI lifecycle, including:

  • Data ingestion and preparation
  • Model development and fine-tuning
  • AI testing and evaluation
  • Model deployment and monitoring
  • Operational sustainment and optimization

Develop and mature AI evaluation and testing methodologies, including:

  • Traditional ML evaluation metrics
  • LLM benchmarking
  • Red teaming and adversarial testing
  • Hallucination detection
  • Bias and fairness assessments
  • Performance and reliability testing
  • Human-in-the-loop evaluation strategies
  • Design scalable MLOps and AIOps pipelines to support secure and repeatable deployment of AI capabilities in enterprise and cloud environments

Establish and implement AI governance frameworks, including:

  • Responsible AI practices
  • Security and compliance controls
  • Model transparency and explainability
  • Risk management
  • Data governance standards
  • Serve as a senior technical advisor to customers, executives, and program leadership on AI strategy, architecture, modernization, and emerging capabilities.
  • Lead technical discussions, architecture reviews, demonstrations, and customer briefings with confidence and authority.
  • Stay current with emerging AI research, industry trends, open-source technologies, and commercial AI platforms; continuously assess applicability to organizational and customer needs.
  • Mentor engineers, data scientists, and software developers on AI best practices, architectures, and implementation strategies.
  • Collaborate across engineering, cybersecurity, cloud, data, and product teams to deliver integrated AI solutions.

Do you have what it takes?

Required Qualifications:

  • Bachelor's degree in Computer Science, Artificial Intelligence, Data Science, Software Engineering, Mathematics, or related technical field.
    • Master's degree or PhD preferred.
  • 10-15+ years of experience in artificial intelligence, machine learning, software engineering, data engineering, or related technical disciplines.
  • Demonstrated experience architecting and deploying enterprise-scale AI/ML solutions in production environments.
  • Hands-on experience building and operationalizing:
    • Agentic AI systems
    • LLM-powered applications
    • AI orchestration frameworks
    • Autonomous decision-support systems
  • Strong understanding of:
    • Machine learning algorithms
    • Deep learning techniques
    • Natural language processing (NLP)
    • Reinforcement learning concepts
    • Statistical modeling and AI evaluation methodologies
  • Experience with AI testing, validation, benchmarking, and evaluation frameworks for both traditional ML and generative AI systems.
  • Experience implementing practical MLOps pipelines and AI operationalization frameworks.
  • Strong programming experience with:
    • Python
    • Jupyter Notebooks or equivalent notebook environments
  • Experience with big data and distributed processing technologies such as:
    • Apache Spark
    • Databricks (preferred)
  • Experience with one or more major cloud platforms:
    • Microsoft Azure
    • Amazon Web Services (AWS)
    • Google Cloud Platform (GCP)
  • Familiarity with:
    • Vector databases
    • AI orchestration frameworks (LangChain, Semantic Kernel, CrewAI, AutoGen, etc.)
    • Containerization and orchestration technologies
    • CI/CD pipelines for AI deployments
  • Strong communication and presentation skills with demonstrated customer-facing experience.
  • Ability to translate complex technical concepts into actionable business and mission solutions.

Preferred Qualifications:

  • Experience supporting Federal Government, DoD, Intelligence Community, or highly regulated environments.
  • Experience implementing secure AI architectures in classified or sensitive environments.
  • Familiarity with AI security, adversarial AI, and zero trust principles.
  • Experience with GPU infrastructure, model optimization, and scalable inference architectures.
  • Published research, conference presentations, patents, or contributions to the AI community preferred.
  • Active participation in AI research communities, industry working groups, or open-source AI initiatives.

Clearance Requirement

  • Active Secret security clearance required, or ability to obtain and maintain a Secret clearance.

Desired Characteristics

  • Strategic thinker with strong technical depth and hands-on engineering capability.
  • Passion for continuous learning and staying ahead of rapidly evolving AI technologies.
  • Comfortable operating in ambiguous and fast-paced technical environments.
  • Strong leadership, collaboration, and mentoring abilities.
  • Customer-focused with executive presence and consultative communication skills.

Technologies & Tools

Experience with several of the following is desired:

  • Python
  • Jupyter Notebook
  • Apache Spark
  • Databricks
  • TensorFlow
  • PyTorch
  • Hugging Face
  • LangChain
  • Semantic Kernel
  • CrewAI
  • AutoGen
  • Kubernetes
  • Docker
  • Azure AI Services
  • AWS SageMaker
  • Google Vertex AI
  • Vector databases
  • MLflow
  • GitLab/GitHub CI/CD pipelines

Work Environment

This role may support hybrid, on-site, or customer-location work environments depending on program requirements. Occasional travel may be required for customer engagement, technical workshops, or industry events.

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