Senior AI Security Engineer
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Senior AI Security Engineer
Location
Remote USA
Experience
Senior
Posted
Jul 7, 2026
Apply by
August 6, 2026
Applicants
0
Early applicantEasy applyFull-timeWork from Home
Job Description
**Job Description:**
**Job Description Summary**
The AI Security Engineer is a hands-on technical role dedicated to securing the AI systems, models, and pipelines that power Vertex's products. This role partners with product engineering, platform, governance, and information security teams to identify, assess, and mitigate risks that are unique to large language models, retrieval-augmented generation, agentic workflows, and the broader AI supply chain.
As a member of the AI Security organization, this role owns the applied AI security practice building the tooling, threat models, red team exercises, and developer guidance that enable Vertex to ship AI-powered features safely and responsibly. The AI Security Engineer operates at the intersection of offensive research, defensive engineering, and policy, translating the rapidly evolving AI threat landscape into concrete, measurable controls.
**Key Responsibilities**
- Perform threat modeling and security reviews of AI features, including LLM-enabled applications, RAG systems, inference pipelines, and agentic workflows.
- Analyze AI systems to identify, characterize, and prioritize security vulnerabilities.
- Ensure AI actions are fully traceable using industry-standard identity, security, and logging frameworks.
- Perform hands-on testing and develop automated red teaming for AI and agentic features, especially focused on AI specific risks like prompt injection.
- Document reproducible failure modes and partner with engineering teams to implement and verify durable mitigations.
- Build or extend AI security automation and evaluation harnesses.
- Define how AI agents coordinate, delegate, and escalate within security workflows.
- Work with engineering to define secure-by-default patterns and guidance for AI system design, development, prompts, retrieval, tool use, output handling, deployment, logging, and least-privilege agents.
- Monitor emerging AI threats, frameworks, and platform changes, and convert relevant risks into prioritized controls and mitigations.
- Drive effective and secure use of AI development tooling.
- Guide developers on security and privacy best practices for agentic coding, using MCP-enabled tools and hooks to help prevent vulnerabilities.
- Preemptively identify and resolve technical risks and cross-team dependencies to keep AI security work on track.
- Collaborate proactively with defensive security teams to enhance detection, response, and mitigation capabilities.
- Act as the AI security incident SME, providing rapid triage guidance and root-cause analysis.
**Required Qualifications**
- 5+ years of experience in security engineering, application security, product security, AI/ML engineering, or security architecture, with direct hands-on experience securing AI/ML or LLM-based systems.
- Demonstrated ability to independently lead security reviews for complex software or AI systems and drive mitigation plans across engineering teams with limited oversight.
- Practical experience assessing AI-specific risks such as prompt injection, insecure output handling, sensitive data exposure, excessive agency, model or data supply chain weaknesses, agent/tool abuse, and unsafe retrieval or memory patterns.
- Advanced understanding of AI system behavior, including the ability to reason about model behavior, AI system vulnerabilities, evaluation results, and security-relevant failure modes.
- Proficiency in Python (or similar) for building security automation, evaluation scripts, test harnesses, prototypes, and evidence-collection workflows.
- Working knowledge of modern AI technology stacks, model APIs, orchestration frameworks, vector databases, retrieval pipelines, agentic workflows, and at least one major cloud platform (AWS, GCP, or Azure).
- Familiarity with AI security and governance frameworks such as OWASP LLM Top 10, MITRE ATLAS, NIST AI RMF, and ISO/IEC 42001.
- Excellent written and verbal communication skills, with the ability to explain complex AI security risks to both technical and non-technical audiences.
**Preferred Qualifications**
- Advanced degree in Computer Science, Engineering, or a related field; equivalent combination of education, training, and relevant professional experience accepted in lieu of a formal degree.
- Experience leading AI red team engagements, AI test-and-evaluation activities, secure AI design reviews, or product security programs across multiple teams.
- Experience deploying, integrating, or securing AI/ML systems used by customers or production engineering teams outside of a lab environment.
- Hands-on experience with AI security tooling, model scanning, or custom evaluation harnesses.
- Background in cloud security, IAM, application security, data protection, logging/monitoring, incident response, or security operations for production systems.
- Experience coordinating practical technical work across product, platform, and security stakeholders.
- External contributions, presentations, or publications in AI security, adversarial AI, AI assurance, or secure AI engineering.
- Drives production outcomes through agentic, systems-level design, AI-augmented development, autonomy, mentorship, and clear communication.
**Other Qualifications**
The Winning Way behaviors that all Vertex employees need in order to meet the expectations of each other, our customers, and our partners.
- Communicate with Clarity - Be clear, concise and actionable. Be relentlessly constructive. Seek and provide meaningful feedback.
- Act with Urgency - Adopt an agile mentality - frequent iterations, improved speed, resilience. 80/20 rule – better is the enemy of done. Don’t spend hours when minutes are enough.
- Work with Purpose - Exhibit a “We Can” mindset. Results outweigh effort. Everyone understands how their role contributes. Set aside personal objectives for team results.
- Drive to Decision - Cut the swirl with defined deadlines and decision points. Be clear on individual accountability and decision authority. Guided by a commitment to and accountability for customer outcomes.
- Own the Outcome - Defined milestones, commitments and intended results. Assess your work in context, if you’re unsure, ask. Demonstrate unwavering support for decisions.
**COMMENTS:**
The above statements are intended to describe the general nature and level of work being performed by individuals in this position. Other functions may be assigned, and management retains the right to add or change the duties at any time.
**Pay Transparency Statement:**
Base pay offered to new hires may vary based upon factors including relevant industry and job-related skills and experience, geographic location, and business needs.\* The range displayed does not encompass the full potential of the role, which allows for further growth and career progression.
In addition, as a part of our total compensation package, this role may be eligible for the Vertex Bonus Plan (VOB), a role-specific sales commission/bonus, and/or equity grants.
Learn more about [Life at Vertex](https://www.vertexinc.com/company/life-vertex) and connect with your recruiter for more details regarding Vertex's compensation and benefit programs.
*\*In no case will your pay fall below applicable local minimum wage requirements*.
Key Responsibilities
- Perform threat modeling and security reviews of AI features including LLM applications and RAG systems.
- Analyze AI systems to identify, characterize, and prioritize security vulnerabilities.
- Ensure AI actions are fully traceable using industry-standard identity, security, and logging frameworks.
- Perform hands-on testing and develop automated red teaming for AI and agentic features.
- Document reproducible failure modes and partner with engineering teams to implement mitigations.
- Build or extend AI security automation and evaluation harnesses.
- Define secure-by-default patterns and guidance for AI system design and development.
- Monitor emerging AI threats and convert risks into prioritized controls.
- Guide developers on security and privacy best practices for agentic coding.
- Act as the AI security incident SME providing rapid triage and root-cause analysis.
Skills Required
PythonAI/ML EngineeringLLM SecurityThreat ModelingRed TeamingOWASP LLM Top 10MITRE ATLASNIST AI RMFISO/IEC 42001AWSGCPAzureVector DatabasesModel APIsAgentic WorkflowsCommunicationProblem SolvingLeadershipCollaborationAnalytical ThinkingAI security toolingModel scanningCustom evaluation harnessesCloud securityIAMApplication securityData protectionLogging/monitoringIncident responseSecurity operationsMentorshipAgile mentalityConstructive feedback
Benefits
- Vertex Bonus Plan (VOB)
- Equity grants
- Sales commission/bonus
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