Staff+ Software Engineer, Inference Runtime

Anthropic$405K — $485K *
Enterprise Technology
8 - 10 years of experience
Job Overview by Ladders

Qualifications

  • Deep background in systems engineering or ML infrastructure with hands-on experience in performance profiling and systems debugging.
  • Strong expertise in at least one accelerator ecosystem (e.g., CUDA/GPU, TPU, Trainium) with an interest in making the runtime accelerator-agnostic.
  • Significant experience in software engineering focused on high-performance, large-scale distributed systems.
  • Proven track record of driving improvements using engineering metrics, including setting SLOs and optimizing latency and throughput.
  • Experience in fostering technical alignment across different teams while advocating for your own team's needs.

Responsibilities

  • Set the technical direction for the inference serving stack's architecture and roadmap.
  • Own and evolve the accelerator-agnostic runtime, including hands-on improvements in Rust and Python.
  • Ensure platform efficiency by minimizing expansion costs when introducing new models or targets.
  • Drive optimal accelerator utilization, focusing on scheduling and memory management.
  • Establish validation processes using change-scoped testing and canary strategies.
  • Collaborate with the Infrastructure org to ensure performance and correctness requirements are met.
  • Mentor engineering team members through design and code reviews, enhancing technical standards.

Benefits

  • Visa sponsorship assistance available.
  • Hybrid work policy with a minimum of 25% office presence required.
  • Mentorship opportunities within a senior engineering-focused environment.
Full Job Description
About the role

Anthropic's Inference organization serves Claude to millions of users and enterprise customers with the speed, reliability, and efficiency that frontier AI demands. We build across GPUs, TPUs, and Trainium, and the complexity of our development environment grows with every platform we add.

We're looking for a Staff Engineer to be a technical lead for Inference Runtime: the team that owns the shared, accelerator-agnostic core of our inference serving stack, whose performance, correctness, and abstractions every accelerator builds on.

This is a senior IC role with broad technical ownership. You'll set technical direction for the runtime's architecture, its release and validation systems, and the workflows engineers use to develop on top of it. You will partner across Inferencing to make hard calls on boundaries, prioritization, and tradeoffs across heterogeneous accelerator platforms.

You'll pair with the team's Engineering Manager, who owns hiring and people development, while you own the technical roadmap and drive the work, representing the team in cross-org efforts spanning serving, scaling, and accelerator teams.

This role is for someone who has been the technical anchor of a platform with many internal consumers, who thinks in systems and feedback loops, and who gets real satisfaction from building abstractions that hold up as the system scales another order of magnitude.
Key responsibilities
  • Set technical direction for the team, owning the architecture and roadmap for the shared runtime of the inference serving stack
  • Own and evolve the accelerator-agnostic runtime itself - its interfaces, internal boundaries, and build structure - including hands-on work in a performance-sensitive Rust and Python codebase
  • Keep the platform's expansion cost low by ensuring new models and deployment targets pay only for their own specialization, and edge cases stitch back into the core easily
  • Drive efficient accelerator usage - utilization, scheduling, memory management - across GPU, TPU, and Trainium
  • Build the runtime's validation surface around partitioned builds, change-scoped testing, and canary/shadow/rollback as first-class mechanisms
  • Act as a technical counterpart to Anthropic's central Infrastructure org on the compilers, build systems, and toolchains the runtime depends on, contributing Inference's performance and correctness requirements, and making the call on build vs. adopt
  • Mentor engineers on the team through design review, code review, and direct collaboration, raising the technical bar without owning headcount
Minimum qualifications
  • Deep background in systems engineering or ML infrastructure, with the ability to go hands-on with performance profiling, latency and throughput optimization, and systems debugging at scale
  • Real depth in at least one accelerator ecosystem (CUDA/GPU, TPU, or Trainium/AWS Neuron) and genuine appetite to keep the runtime agnostic across all of them
  • Have significant software engineering experience, with a strong background in high-performance, large-scale distributed systems serving millions of users
  • A track record of defining and using engineering metrics to drive improvement: you've set SLOs on platform surfaces, and driven escape rates, release times, latency, or throughput in a measurable direction
  • Experience driving technical alignment across organizational boundaries, advocating for your team's needs while contributing to shared infrastructure
  • Strong written and verbal communication, and the ability to influence technical direction without formal authority
Preferred qualifications
  • 8+ years of software engineering experience, with significant time as the technical lead or anchor on a platform, inference runtime, or ML infrastructure team
  • Experience with ML compiler toolchains (XLA, Triton, NeuronX) or accelerator driver/firmware management at scale
  • Background operating production as a validation surface at scale: shadow traffic, canary populations, automated baseline comparison, fast rollback
  • Experience with deterministic or simulation-based testing for hardware-dependent systems
  • Experience with CI/CD systems at scale, particularly for workloads involving accelerator hardware
  • Familiarity with Kubernetes-based development and job scheduling environments
  • Prior tech lead experience on a developer productivity or platform engineering team at a fast-growing AI/ML company


The annual compensation range for this role is listed below.

For sales roles, the range provided is the role's On Target Earnings ("OTE") range, meaning that the range includes both the sales commissions/sales bonuses target and annual base salary for the role.

Annual Salary:

$405,000-$485,000 USD

Logistics

Minimum education: Bachelor's degree or an equivalent combination of education, training, and/or experience

Required field of study: A field relevant to the role as demonstrated through coursework, training, or professional experience

Minimum years of experience: Years of experience required will correlate with the internal job level requirements for the position

Location-based hybrid policy: Currently, we expect all staff to be in one of our offices at least 25% of the time. However, some roles may require more time in our offices.

Visa sponsorship: We do sponsor visas! However, we aren't able to successfully sponsor visas for every role and every candidate. But if we make you an offer, we will make every reasonable effort to get you a visa, and we retain an immigration lawyer to help with this.

About Anthropic

Anthropic is an artificial intelligence research lab that focuses on developing AI systems that are safe, reliable, and trustworthy. The company was founded in 2019 by Dr. Yoshua Bengio, a leading AI researcher and winner of the Turing Award. Anthropic's research is focused on developing AI systems that can learn from small amounts of data, reason about complex systems, and interact with humans in a natural way. The company is based in New York City and has a team of experienced AI researchers and engineers.
Learn more about Anthropic
Size
50 employees
Industry
Founded
2019

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