About The Position

The DevSecOps Engineer – CI/CD & Application Security focuses on embedding application security and cloud security controls directly into CI/CD pipelines and developer workflows. This role drives shift‑left security by designing, implementing, and operating automated security guardrails across source code, build, and deployment pipelines in cloud-native environments. This role is responsible for embedding security controls for AI/ML and GenAI workloads within CI/CD pipelines and developer workflows, defining and enforcing secure usage patterns for LLMs and AI services, and implementing safeguards against AI-specific threats. The role also involves integrating AI security scanning and validation into build pipelines, collaborating with engineering teams to establish secure-by-design AI application architectures, and ensuring compliance with enterprise Responsible AI policies. Additionally, the DevSecOps Architect will secure AI-related secrets, tokens, and API access, monitor and respond to security risks introduced by AI/ML components, contribute to AI risk governance, and stay current on emerging AI security threats.

Requirements

  • Bachelor’s degree in Computer Science, Cybersecurity, Engineering, or equivalent experience.
  • 3–6 years of experience in DevSecOps, Application Security, or Platform Security roles.
  • Strong hands-on experience securing CI/CD pipelines using GitHub, Jenkins, and Azure DevOps.
  • Solid understanding of application security concepts (secure coding, dependency risk, pipeline hardening, secrets management).
  • Foundational understanding of AI/ML and Generative AI concepts, including LLMs and model lifecycle.
  • Knowledge of AI/ML security risks such as prompt injection, data poisoning, model evasion, and data leakage.
  • Experience integrating AI or ML components into applications or pipelines (preferred hands-on exposure).
  • Familiarity with Responsible AI principles and AI governance frameworks.
  • Experience implementing shift‑left AppSec controls in modern SDLCs.
  • Experience working in cloud environments (Azure, AWS, or GCP).
  • Proficiency with scripting or programming languages (Python, Go, Java, etc.).
  • Familiarity with containerized build and deployment models.
  • Strong understanding of software supply chain security risks.

Nice To Haves

  • Experience with policy‑as‑code and automated security governance
  • Knowledge of Kubernetes, container security, and cloud-native application architectures
  • Experience integrating AppSec signals into enterprise security platforms

Responsibilities

  • Design, implement, and operate application security controls integrated into CI/CD pipelines, ensuring secure software delivery by default.
  • Embed automated AppSec checks across code, dependencies, builds, and deployment workflows aligned with shift‑left principles.
  • Define and maintain secure CI/CD reference architectures and patterns for enterprise cloud-native applications.
  • Partner with engineering teams to integrate security seamlessly into developer workflows, minimizing friction and manual intervention.
  • Develop reusable pipeline templates, policy controls, and automation to scale AppSec and DevSecOps practices across teams.
  • Secure pipeline infrastructure and credentials, protecting against build manipulation, secret leakage, and provenance risks.
  • Integrate CI/CD security findings with broader application and cloud security monitoring workflows.
  • Investigate and respond to application and pipeline-related security findings, partnering with Security Operations as required.
  • Contribute to cloud security posture by aligning pipeline and application controls with cloud security best practices.
  • Embed security controls for AI/ML and GenAI workloads within CI/CD pipelines and developer workflows.
  • Define and enforce secure usage patterns for LLMs and AI services, including prompt handling, data protection, and model access controls.
  • Implement safeguards against AI-specific threats, including prompt injection, model poisoning, data leakage, and insecure model outputs.
  • Integrate AI security scanning and validation into build pipelines, ensuring safe model usage and dependency integrity.
  • Collaborate with engineering teams to establish secure-by-design AI application architectures.
  • Ensure compliance with enterprise Responsible AI policies (data privacy, bias management, model governance).
  • Secure AI-related secrets, tokens, and API access used in pipelines and applications.
  • Monitor and respond to security risks introduced by AI/ML components, including third-party models and APIs.
  • Contribute to AI risk governance, auditability, and traceability across the SDLC.
  • Stay current on emerging AI security threats, vulnerabilities, and regulatory expectations.
  • Author documentation, standards, and training to drive developer adoption of secure CI/CD and AppSec practices.
  • Continuously evaluate emerging application security and software supply chain threats and improve controls accordingly.

Benefits

  • Health care coverage designed for the mind and body.
  • Generous time off helps keep you energized for your time on.
  • Access a wealth of resources to grow your career and learn valuable new skills.
  • Competitive pay, retirement planning, a continuing education program with a company-matched student loan contribution, and financial wellness programs.
  • Best-in class benefits for families.
  • Retail discounts to referral incentive awards.
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