Anthropic· Software Engineering - Infrastructure· San Francisco, CA | New York City, NY | Seattle, WA
Staff + Sr. Software Engineer, AI Reliability
Classified Tasks (11)
Automate 0%Augment 55%Human-Only 45%
Augment (6)
AI assists, human decides
Analyze end-to-end system composition and seams to identify reliability risks and systemic failure modes
analytical
Develop Service Level Objectives (SLOs) for large language model serving systems that balance availability, latency, and development velocity
operational
Design and implement monitoring and observability systems across the token path
technical
Assist in the design and implementation of high-availability serving infrastructure across multiple regions and cloud providers
technical
Conduct thorough incident reviews and document findings
analytical
Implement systematic improvements based on incident reviews to prevent recurrence
operational
Human-Only (5)
Requires human judgment
Partner with teams across Anthropic to improve reliability across end-to-end serving paths (SDK, network, API layers, serving infrastructure, accelerators)
operational
Jump into the trenches alongside partner teams to troubleshoot and harden systems that deliver Claude during incidents and projects
technical
Lead incident response for critical AI services to ensure rapid recovery
leadership
Support the reliability of safeguard model serving to meet site reliability and safety commitments
operational
Collaborate on projects with partner teams to increase robustness and resilience of serving systems
operational
Job description
About Anthropic Anthropic’s mission is to create reliable, interpretable, and steerable AI systems. We want AI to be safe and beneficial for our users and for society as a whole. Our team is a quickly growing group of committed researchers, engineers, policy experts, and business leaders working together to build beneficial AI systems. About the Role AIRE (AI Reliability Engineering) partners with teams across Anthropic to improve reliability across our most critical serving paths -- every hop from the SDK through our network, API layers, serving infrastructure, and accelerators and back. We jump into the trenches alongside partner teams to make the systems that deliver Claude more robust and resilient, be it during an incident or collaborating on projects. Reliability here is an emergent phenomenon that transcends any single team's boundaries, so someone has to zoom out and look at the whole picture. That's us -- and it means few teams at Anthropic offer this kind of dynamic, cross-cutting exposure to the systems that matter most. Responsibilities: Develop appropriate Service Level Objectives for large language model serving systems, balancing availability and latency with development velocity Design and implement monitoring and observability systems across the token path Assist in the design and implementation of high-availability serving infrastructure across multiple regions and cloud provider Lead incident response for critical AI services, ensuring rapid recovery, thorough incident reviews, and systematic improvements Support the reliability of safeguard model serving -- critical for both site reliability and Anthropic's safety commitments. You may be a good fit if you: Have strong distributed systems, infrastructure, or reliability backgrounds -- we're looking for reliability-minded software engineers and SREs Are curious and brave -- comfortable jumping into unfamiliar systems during an incident and helping drive resolution even when you don't have deep expertise yet Think holistically about how systems compose and where the seams are Can build lasting relationships across teams -- our engagement model depends on being welcomed as teammates, not outsiders with opinions Care about users and feel ownership over outcomes, even for systems you don't own Have excellent communication and collaboration skills -- you'll be partnering across the entire company Bring diverse experience -- the team's strength comes from people who've built product stacks, scaled databases, run massive distributed systems, and everything in between. Strong candidates may also: Have been an SRE, Production Engineer, or in similar reliability-focused roles on large scale systems Have experience operating large-scale model serving or training infrastructure (>1000 GPUs) Have experience with one or more ML hardware accelerators (GPUs, TPUs, Trainium) Understand ML-specific networking optimizations like RDMA and InfiniBand Have expertise in AI-specific observability tools and frameworks Have experience with chaos engineering and systematic resilience testing Have contributed to open-source infrastructure or ML tooling. The annual compensation range for this role is listed below. </