What are the responsibilities and job description for the Cyber Security AI Architect position at Federal Staffing Solutions Inc.?
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We are looking for a Cyber Security AI Architect to work in Washington, DC. supporting our client.
Clearance: Public Trust or able to obtain
About the Role
This is a high-impact architecture role for a security
professional who understands both modern cybersecurity practices and the
evolving risks introduced by AI in a SaaS environment. You will design secure
patterns for AI systems across training, deployment, inference, integrations,
and monitoring, while helping the organization build practical and scalable
governance for AI use. The ideal candidate is equally comfortable advising senior
stakeholders, reviewing technical designs, and translating emerging AI threats
into actionable controls.
Requirements
- U.S.
Citizenship is required
- Must have
or be able to receive a Public Trust
- Candidate must live in the Washington, D.C., metropolitan area. The position requires working onsite for three days and remotely two days in Washington, D.C.
Key Responsibilities
- Design
secure reference architectures for AI and generative AI solutions, including
data ingestion, model training, fine-tuning, deployment, inference, and
AI-enabled SaaS integrations.
- Design
and implement practical security guardrails to prevent prompt injection, data
leakage, and model supply-chain risks in AI/SaaS systems.
- Lead
AI-focused threat modeling and risk assessments covering issues such as prompt
injection, data leakage, model inversion, adversarial manipulation, model
poisoning, and software supply chain risk.
- Partner
with engineering, data science, product, legal, privacy, and compliance teams
to embed secure-by-design practices into AI workflows and release processes.
- Establish
policies, standards, and governance controls for acceptable AI use, data
protection, model access, retention, auditability, and third-party oversight.
- Support
architecture reviews, security testing, adversarial validation, and control
assessments for AI systems before and after deployment.
- Recommend
monitoring, detection, and response approaches for AI-related misuse, drift,
abuse, and high-risk behavior.
- Translate
technical risks into clear architectural guidance and business-focused
recommendations for stakeholders and leadership.
Required Qualifications
- Bachelor's
degree in Cybersecurity, Computer Science, Information Technology, Engineering,
or a related field, or equivalent practical experience.
- 8
years of experience in security architecture, cloud security, application
security, or enterprise risk management.
- Strong
understanding of AI, machine learning, and generative AI concepts, including
large language models, model pipelines, and AI-enabled applications.
- Hands-on
experience with core security domains such as identity and access management,
encryption, data protection, secure software design, logging, monitoring, and
incident response.
- Experience
conducting threat modeling, architecture reviews, and security control design
for complex technology environments.
- Knowledge
of AI governance, privacy, and compliance requirements, including risk
frameworks and audit expectations.
- Excellent
communication skills, with the ability to work effectively across technical,
business, and leadership audiences.
Preferred Qualifications
- Experience
securing generative AI, retrieval-augmented generation, AI agents, or
enterprise AI platforms in production environments.
- Familiarity
with frameworks and standards such as NIST AI RMF, OWASP guidance for LLM
applications, ISO 42001, SOC 2, GDPR, HIPAA, or similar requirements.
- Experience
with SaaS security posture management, third-party risk reviews, and
cloud-native security controls.
- Relevant
certifications such as CISSP, CCSP, SABSA, cloud security certifications, or
specialized AI security training.
- Experience
working in regulated industries or large, complex enterprise environments.
Equal Opportunity Employer