Senior Staff Software Engineer, Ai/ml, Security

Google Google · Big Tech · Kirkland, WA +3

Senior Staff Software Engineer focused on AI/ML Security for Google Cloud, specifically on securing LLMs against threats like prompt injection and data exfiltration. The role involves defining technical strategy, leading the design and implementation of scalable systems, and influencing cross-Google initiatives to protect enterprise customers. Requires deep architectural understanding and consensus-building skills.

What you'd actually do

  1. Define and drive the long-term technical goal and architectural strategy for model armor and sensitive data protection, ensuring Google Cloud remains a leader in generative AI security.
  2. Lead the design and implementation of highly scalable, low-latency systems to detect and mitigate emerging threats such as prompt injection, jailbreaking, and sensitive data leakage across enterprise environments.
  3. Act as a principal technical influencer to align security roadmaps across Google Cloud, DeepMind, and other product areas, navigating constraints like latency, cost, and global compliance.
  4. Resolve technical disagreements among execute engineers and researchers, forging consensus to deliver on high-stakes, cross-functional objectives across multiple time zones.
  5. Partner with executive leadership to evaluate Machine Learning (ML) security research and provide technical mentorship to staff and executive engineers, elevating the organization’s overall domain expertise.

Skills

Required

  • software development
  • technical project strategy
  • ML design
  • industry-scale ML infrastructure
  • model deployment
  • model evaluation
  • data processing
  • debugging
  • fine tuning
  • Speech/audio
  • reinforcement learning
  • ML infrastructure
  • design and architecture
  • testing/launching software products
  • Cloud

Nice to have

  • Master’s degree or PhD in Engineering, Computer Science, or a related technical field
  • data structures and algorithms
  • technical leadership role leading project teams and setting technical direction
  • Java
  • AI model security
  • adversarial machine learning
  • data privacy
  • prompt injection defenses
  • LLM introspection
  • delivering enterprise-grade security products

What the JD emphasized

  • secure LLMs
  • prompt injection
  • jailbreaking
  • data exfiltration
  • enterprise customers
  • Google Cloud scale
  • extreme ambiguity
  • high-stakes, cross-Google initiatives
  • measurable, high-impact solutions
  • generative AI security
  • highly scalable, low-latency systems
  • global compliance
  • technical disagreements
  • cross-functional objectives
  • ML security research

Other signals

  • LLM security
  • prompt injection
  • data exfiltration
  • enterprise customers
  • Google Cloud scale