Oak Ridge National Laboratory

AI Security Systems Architect

Oak Ridge National Laboratory$120K — $150K *
Information Technology
Less than 5 years of experience
Job Overview by Ladders

Qualifications

  • Master's Degree in Computer Science, Engineering, Cybersecurity with 7-10 years of experience or PhD with 2-4 years
  • Experience in architecting distributed systems for security testing
  • Expertise in cluster computing and tools like Hadoop, Spark, or Kubernetes

Responsibilities

  • Architect and implement scalable security testing systems for AI technologies
  • Develop frameworks for adversarial testing in simulated environments
  • Build AI-on-AI testing infrastructure to identify vulnerabilities
  • Design distributed systems for high-throughput AI system stress-testing
  • Automate diverse adversarial testing scenarios and threat modeling
  • Collaborate with teams to validate AI system security against standards
  • Lead initiatives to advance security testing capabilities in AI

Benefits

  • Comprehensive medical, dental, and vision plans
  • 401(k) and contributory pension plans
  • Generous vacation time and holidays
  • Parental leave and family support initiatives
  • Employee assistance programs and wellness offerings
  • Relocation assistance and educational support
Full Job Description
Requisition Id 15937

Overview:

We are seeking an AI Security Systems Architect to design and develop state-of-the-art systems for security testing and evaluation of artificial intelligence technologies. This role involves creating scalable infrastructure to support cutting-edge adversarial testing methodologies, such as red team vs. blue team exercises and AI-on-AI evaluation frameworks.

The ideal candidate will bring a strong foundation in systems architecture, a working knowledge of cluster computing and scaling, and a passion for advancing the security of AI systems under real-world and simulated conditions. This position is critical for ensuring that AI systems remain resilient, robust, and secure against evolving threats. This person will play a key role within ORNL's Center for AI Security Research (CAISER) where he or she will work to advance the state-of-the-art in Automated, Agentic workflows for AI Security research, testing and evaluation.

Key Responsibilities:
  • Design and Development for Security Testing
    • Architect and implement scalable systems tailored specifically for security testing and evaluation of AI systems.
    • Develop frameworks to support red/blue team exercises in simulated environments, enabling manual and automated adversarial testing at scale.
    • Build and integrate AI-on-AI testing infrastructures, where AI models can actively challenge each other in adversarial contexts to detect vulnerabilities or weaknesses.
  • Scalability and Cluster Computing
    • Design distributed systems that support high-throughput simulations and stress-testing of AI systems under adversarial conditions.
    • Implement cluster computing solutions to efficiently scale testing environments supporting large datasets and high-performance AI workloads.
    • Optimize resource allocation for simultaneous testing tasks and real-time tracking of security metrics.
  • Adversarial and Threat Modeling Infrastructure
    • Develop systems to automate the generation and execution of diverse adversarial testing scenarios, including techniques for perturbation, poisoning, and evasion attacks.
    • Design platforms for threat modeling in AI systems, enabling comprehensive vulnerability assessments tailored to diverse use cases, from cloud-hosted models to edge deployments.
    • Enable rapid prototyping and iteration for adversarial defenses integrated into the architectural design.
  • Collaboration and Security Validation
    • Work closely with security specialists, AI researchers, and DevSecOps teams to evaluate and validate the security of AI systems aligned with organizational security standards.
    • Partner with stakeholders to design customized testing environments that simulate real-world attack and defense scenarios in production-like conditions.
  • Leadership and Innovation
    • Lead cross-functional initiatives focused on advancing the security testing capabilities for next-generation AI systems.
    • Stay informed of emerging adversarial AI threats, testing methodologies, and scaling innovations to foster continuous improvement in security testing architectures.
    • Mentor junior engineers and provide technical leadership in AI security evaluation mechanisms.

Required Qualifications
  • Master's Degree in Computer Science, Computer Engineering, Cybersecurity, or related fields with 7-10 years of experience or PhD in Computer Science, Computer Engineering, Cybersecurity, or related fields with 2-4 years of experience.
  • Proven experience architecting and implementing complex distributed systems tailored for security testing or evaluation at scale.
  • Demonstrated expertise in cluster computing and scaling for high-performance environments, with hands-on experience in frameworks such as Hadoop, Spark, or Kubernetes.

Preferred Qualifications
  • Familiarity with techniques for AI-on-AI adversarial evaluation, including reinforcement learning-based adversarial testing setups.
  • Expertise in designing systems that support red/blue team operations alongside DevSecOps integrations.
  • Knowledge of privacy-preserving AI methods, secure federated learning, and cryptographic protections.
  • Research or publication experience in adversarial testing, distributed systems, and AI system security.
  • Experience in supporting continuous integration pipelines for AI security validation in production environments.

Special Requirements:
  • Q clearance with SCI:This position requires the ability to obtain and maintain a Secret Compartmented Information (SCI) clearance from the Department of Energy. As such, this position is a Workplace Substance Abuse (WSAP) testing designated position. WSAP positions require passing a pre-placement drug test and participation in an ongoing random drug testing program. In addition, due the SCI, you may also be subject to random polygraph testing.


This position will remain open for a minimum of 5 days after which it will close when a qualified candidate is identified and/or hired.

We accept Word (.doc, .docx), Adobe (unsecured .pdf), Rich Text Format (.rtf), and HTML (.htm, .html) up to 5MB in size. Resumes from third party vendors will not be accepted; these resumes will be deleted and the candidates submitted will not be considered for employment.

About Oak Ridge National Laboratory

Oak Ridge National Laboratory (ORNL) is a science and technology national laboratory managed for the United States Department of Energy (DOE) by UT-Battelle. ORNL is the largest science and energy national laboratory in the Department of Energy system by size and by annual budget. ORNL conducts research and development activities in a variety of scientific and technical disciplines. ORNL's scientific programs focus on materials, neutron science, energy, high-performance computing, systems biology and national security. ORNL partners with other national laboratories, universities and industry to solve complex problems and transfer knowledge and technology. ORNL is home to several of the world's most powerful supercomputers, including Summit, the world's most powerful supercomputer as of November 2018.
Learn more about Oak Ridge National Laboratory
Size
5,000 employees
Industry
Founded
1943

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