Staff Software Engineer, Developer Productivity (ci/cd) - Claude Code

Anthropic Anthropic · AI Frontier · San Francisco, CA · Engineering & Design - Product

Staff Software Engineer on the Developer Productivity team at Anthropic, focusing on the CI/CD pipeline and integrating AI-assisted code review to improve developer velocity and code quality for the Claude AI system.

What you'd actually do

  1. Own the build, test, merge, and deploy pipeline end to end — what runs on each PR, what auto-approves, what gates merge, and how a change progresses to running healthy in production
  2. Drive down and defend "time from push to healthy in prod" as a core engineering metric
  3. Design and tune AI-assisted code review so confidence-to-land scales with PR volume
  4. Build the deploy and release path — canary, progressive rollout, health checks, automated rollback — in partnership with the platform teams who own the underlying substrate
  5. Improve test reliability by quarantining, root-causing, and retiring intermittent failures

Skills

Required

  • Significant backend or developer-infrastructure engineering experience
  • hands-on responsibility for a high-leverage CI/CD, merge queue, or land pipeline at scale
  • Proficiency in Python
  • at least one statically-typed systems language (e.g., Go or Rust)
  • Experience operating CI/CD or release systems through production incidents
  • writing postmortems and driving remediations
  • Demonstrated ability to work across team boundaries
  • building consensus with platform, security, and product engineering stakeholders
  • Comfort using AI coding tools as a daily part of your workflow

Nice to have

  • 7+ years of backend or developer-infrastructure experience
  • Experience with Bazel or similar build-graph / test-targeting systems at monorepo scale
  • Experience with progressive delivery or release engineering at scale (canary analysis, automated rollback, health-gated promotion)
  • A track record of leading — or making the well-reasoned case against — a repo split, monorepo extraction, or comparable scope-boundary migration
  • A history of authoring engineering policy or paved-path tooling that other teams adopted voluntarily
  • Familiarity with Kubernetes, Buildkite, GitHub Actions, or comparable CI/deploy substrates
  • Interest in the safe and beneficial development of AI

What the JD emphasized

  • high-leverage CI/CD, merge queue, or land pipeline at scale
  • operating CI/CD or release systems through production incidents
  • AI coding tools as a daily part of your workflow