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Ai Security Engineer Jobs (NOW HIRING)

OR · On-site

We are seeking a highly skilled and results-oriented AI Security Engineer to support the Cybersecurity, Engineering, and Data Science organizations. This role plays a critical part in advancing ...

We are seeking a highly skilled and results-oriented AI Security Engineer to support the Cybersecurity, Engineering, and Data Science organizations. This role plays a critical part in advancing ...

We are seeking a highly skilled and results-oriented AI Security Engineer to support the Cybersecurity, Engineering, and Data Science organizations. This role plays a critical part in advancing ...

AI Security Engineer

Austin, TX · On-site +1

$108K - $148K/yr

Role Summary The AI Security Engineer is responsible for securing the enablement and use of AI, GenAI, LLM, and agentic technologies across the enterprise, balancing business velocity with protection ...

AI Security Engineer

Santa Clara, CA · On-site +1

$108K - $148K/yr

Role Summary The AI Security Engineer is responsible for securing the enablement and use of AI, GenAI, LLM, and agentic technologies across the enterprise, balancing business velocity with protection ...

AI Security Engineer

Santa Clara, CA · On-site

$108K - $148K/yr

Role Summary The AI Security Engineer is responsible for securing the enablement and use of AI, GenAI, LLM, and agentic technologies across the enterprise, balancing business velocity with protection ...

As an AI Security Engineer, you will play a crucial role in ensuring the security, safety, and privacy of our AI-driven applications while collaborating with cross-functional teams and providing ...

As an AI Security Engineer, you will play a crucial role in ensuring the security, safety, and privacy of our AI-driven applications while collaborating with cross-functional teams and providing ...

As an AI Security Engineer, you will play a crucial role in ensuring the security, safety, and privacy of our AI-driven applications while collaborating with cross-functional teams and providing ...

As an AI Security Engineer, you will play a crucial role in ensuring the security, safety, and privacy of our AI-driven applications while collaborating with cross-functional teams and providing ...

As an AI Security Engineer, you will play a crucial role in ensuring the security, safety, and privacy of our AI-driven applications while collaborating with cross-functional teams and providing ...

The AI Security Engineer is responsible for securing enterprise AI platforms, AI-enabled applications, LLM technologies, and agentic workflows. This role ensures AI security technologies are ...

The AI Security Engineer is responsible for securing enterprise AI platforms, AI-enabled applications, LLM technologies, and agentic workflows. This role ensures AI security technologies are ...

The AI Security Engineer is responsible for securing enterprise AI platforms, AI-enabled applications, LLM technologies, and agentic workflows. This role ensures AI security technologies are ...

Role Summary We are seeking an AI Security Engineer to own the security of how we adopt and integrate third-party artificial intelligence and large language model (LLM) services across the enterprise.

AI Security Engineer

$130K - $160K/yr

About the Role We're looking for an AI Security Engineer to help secure a modern platform that combines cloud infrastructure, large language models, and autonomous agents. You'll play a key role in ...

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Ai Security Engineer information

See salary details

$61.5K

$152.8K

$205.5K

How much do ai security engineer jobs pay per year?

As of Jun 9, 2026, the average yearly pay for ai security engineer in the United States is $152,773.00, according to ZipRecruiter salary data. Most workers in this role earn between $143,000.00 and $158,500.00 per year, depending on experience, location, and employer.

What is the difference between Ai Security Engineer vs Data Security Analyst?

AspectAi Security EngineerData Security Analyst
Required CredentialsBachelor's in CS, Cybersecurity, or related; certifications like CISSP, CEHBachelor's in IT, Cybersecurity, or related; certifications like CISSP, CISA
Work EnvironmentDeveloping AI models for security, integrating AI tools, working with cybersecurity teamsMonitoring data security, analyzing security breaches, implementing data protection measures
Employer & Industry UsageTech firms, cybersecurity companies, organizations deploying AI security solutionsFinancial institutions, healthcare, government agencies, any organization handling sensitive data

The main difference is that Ai Security Engineers focus on developing and implementing AI-based security solutions, while Data Security Analysts primarily monitor and analyze data security threats and breaches. Both roles require cybersecurity certifications and work in security-focused environments, but their daily tasks and focus areas differ significantly.

What cities are hiring for Ai Security Engineer jobs? Cities with the most Ai Security Engineer job openings:
What states have the most Ai Security Engineer jobs? States with the most job openings for Ai Security Engineer jobs include:
Infographic showing various Ai Security Engineer job openings in the United States as of May 2026, with employment types broken down into 87% Full Time, 12% Part Time, and 1% Contract. Highlights an 94% Physical, 2% Hybrid, and 4% Remote job distribution, with an average salary of $152,773 per year, or $73.4 per hour.

Other

Posted 3 days ago


Job description

Job Details:

We are seeking a highly skilled and results-oriented AI Security Engineer to support the Cybersecurity, Engineering, and Data Science organizations. This role plays a critical part in advancing InvoiceCloud's AI-first strategy by ensuring that AI/ML and generative AI systems are secure, resilient, compliant, and aligned with business objectives.

This is role operates as a subject matter expert in AI security. The ideal candidate brings deep expertise in application security, AI/ML risk, and cloud-native security engineering, and serves as a trusted partner to Engineering, Product, DevSecOps, Legal/Privacy, and Security Operations. Success requires strong ownership, structured problem solving, cross-functional collaboration, and the ability to balance risk reduction with business velocity.

Success Profile:

This role is anchored in our company's core competencies-These competencies reflect the mindsets and behaviors that define success in this role. We outline how each competency translates into real-world actions and outcomes specific to this role.

Results Driven

  • Leads AI Security Architecture & Secure Design initiatives by designing and implementing lifecycle security controls across data ingestion, training, evaluation, deployment, and monitoring environments to measurably reduce AI-specific risk while maintaining product velocity.
  • Conducts structured Threat Modeling & Risk Assessment exercises for generative AI, RAG, and agent-based systems, evaluating risks such as prompt injection, data poisoning, model extraction, model inversion, abuse/misuse, and data leakage, and mapping findings to OWASP Top 10 for LLM Applications, MITRE ATLAS, and NIST AI RMF to drive remediation through engineering teams.
  • Defines and operationalizes Monitoring, Detection & Incident Response capabilities for AI systems by implementing prompt and output telemetry, tool-call logging, anomaly detection, and AI-specific incident response playbooks integrated into SIEM/SOC workflows.
  • Delivers measurable outcomes aligned to 30-, 150-, and 210-day milestones, including secure reference architectures, hardened AI environments, integrated security controls, and executive-ready reporting on AI risk reduction and posture maturity. 

Takes Ownership

  • Establishes and formalizes AI Governance, Privacy & Third-Party Risk requirements by defining security expectations for AI use cases, third-party models, vendor integrations, and sensitive data usage, embedding controls into SDLC, procurement, and engineering standards.
  • Drives Cross-Functional Collaboration & Enablement by partnering with Engineering, Data Science, DevSecOps, Product, Legal/Privacy, and SOC teams to align on risk appetite, escalation paths, and secure design guardrails while raising AI security maturity across the organization.
  • Inventories current and planned AI/ML initiatives, documents system architectures and sensitive-data touchpoints, and implements a structured AI security intake and risk-rating process that ensures accountability and transparency.
  • Develops and communicates forward-looking 6- and 12-month AI security maturation plans that align technical priorities with business goals and clearly articulate risk trends, metrics, and investment needs to Security leadership and the CISO. 

Drives Efficiency

  • Integrates Secure MLOps / MLSecOps controls into AI delivery pipelines, including secure model registries, artifact signing and provenance validation, dependency scanning, secrets management, CI/CD guardrails, and hardened training and inference environments across AWS and Azure.
  • Builds and scales AI Security Testing & Red Teaming workflows by creating repeatable adversarial evaluation plans for jailbreaks, model evasion, prompt injection, and data exfiltration scenarios, ensuring security controls remain effective over time.
  • Develops automated regression test harnesses to continuously validate AI security protections as models, prompts, and dependencies evolve, reducing manual effort and improving coverage.
  • Establishes a sustainable AI security operating rhythm that includes intake reviews, threat modeling checkpoints, remediation tracking, and structured monitoring ownership to bring consistency and order to AI risk management 

Innovative

  • Advances AI Security Testing & Red Teaming capabilities through adversarial experimentation and multi-dimensional analysis, proactively identifying emerging AI threat patterns before production impact.
  • Leverages AI and automation to strengthen testing coverage, automate regression validation, enhance anomaly detection logic, and improve the scalability of AI security monitoring and response.
  • Continuously evaluates emerging AI security research, tooling advancements, and regulatory developments, translating insights into adaptive defensive controls that support InvoiceCloud's AI-first strategy while enabling responsible innovation. 

Requirements

  • Bachelor's degree in Computer Science, Cybersecurity, Engineering, Data Science, or related field (or equivalent practical experience).
  • 5+ years of experience in security engineering, application/product security, cloud security, or DevSecOps.
  • 2+ years of experience building or securing AI/ML systems (including LLM-based applications) in production environments.
  • Strong understanding of AI/ML threats and defenses, including prompt injection, data poisoning, model extraction, model inversion, adversarial inputs, data leakage, and abuse/misuse scenarios.
  • Experience integrating security into CI/CD and MLOps pipelines.
  • Proficiency with cloud platforms (AWS and Azure), container security, IAM, network segmentation, key management, and secrets management.
  • Familiarity with industry guidance such as OWASP GenAI/Top 10 for LLM Applications, MITRE ATLAS, and/or NIST AI RMF preferred.
  • Relevant certifications such as CISSP, CSSLP, CCSP, Azure Security certifications, or GIAC certifications preferred.