Principal AI Security Engineer

Cerebras Cerebras · Semiconductors · US and Canada Offices · Security Department

Principal AI Security Engineer to lead hands-on security engineering for enterprise IT, infrastructure, AI platforms, and agentic systems. Design and build security controls for systems supporting training, inference, model serving, customer workloads, internal automation, and AI-assisted development. Protect sensitive data, environments, models, tools, agents, and control planes. Turn ambiguous AI and platform security risks into practical architecture, reusable controls, and production-ready systems.

What you'd actually do

  1. Define security architecture and build controls for AI platforms, training and inference workflows, model-serving systems, customer workloads, developer workflows, and agentic
  2. Develop reusable AI and agent security patterns for identity, authorization, delegated authority, scoped tool access, MCPs, connectors, secrets, approvals, isolation, auditability, and
  3. Design runtime controls that constrain execution, access, data exposure, model and tool interaction, and blast radius.
  4. Build security capabilities as code using infrastructure as code, configuration as code, policy as code, GitOps, CI/CD, and automated validation.
  5. Define secure development patterns for AI systems, agents, prompts, tools, models, policies, evaluations, releases, and rollback.

Skills

Required

  • 10+ years of experience in security engineering, platform security, infrastructure security, product security, or related technical security roles.
  • Strong hands-on engineering ability in Python and at least one additional production
  • Experience designing, building, operating, and improving security controls as
  • Strong cloud and infrastructure security experience, preferably with AWS, including IAM, networking, secrets management, logging, and cloud-native control planes.
  • Deep understanding of identity and access systems, including SSO, MFA, OAuth, service accounts, workload identity, authorization, privileged access, and least privilege.
  • Practical experience securing runtime environments such as containers, Kubernetes, isolated workloads, secure development environments, distributed compute platforms, or production service infrastructure.
  • Ability to reason about cross-system risk involving identity, data, models, tools, networks, workflows, approvals, and automation.
  • Strong written communication skills and the ability to influence senior technical stakeholders across Security, Product, IT, Infrastructure, and Engineering.

Nice to have

  • Familiarity with AI security, LLM application security, agentic workflows, MCPs, prompt injection, autonomous coding agents, or AI platform security.

What the JD emphasized

  • AI security
  • LLM application security
  • agentic workflows
  • MCPs
  • prompt injection
  • autonomous coding agents
  • AI platform security
  • emerging AI and agent risks

Other signals

  • AI platforms
  • agentic systems
  • training and inference workflows
  • model serving
  • customer workloads
  • developer workflows