Anthropic· AI Research & Engineering· San Francisco, CA
Research Engineer, Interpretability
Classified Tasks (9)
Automate 0%Augment 78%Human-Only 22%
Augment (7)
AI assists, human decides
Build and maintain specialized inference and training infrastructure for interpretability research, including instrumented forward/backward passes, activation extraction, and steering vector application
technical
Create stable, performant training jobs for massively parameterized models across thousands of chips
technical
Run and maintain a customized inference stack tailored for interpretability analyses
operational
Develop services and tooling that allow editing a model's internal activations mid-forward-pass (e.g., applying steering vectors)
technical
Design tools, abstractions, and platforms that enable researchers to rapidly experiment without hitting engineering barriers
technical
Profile systems to identify scaling and efficiency bottlenecks and implement optimizations to resolve them
analytical
Identify and fix hardware and software performance bottlenecks that limit research and safety audit throughput
technical
Human-Only (2)
Requires human judgment
Collaborate closely with peer infrastructure teams to scale systems and resolve cross-team engineering issues
communication
Integrate interpretability research into production safety audits and support audits on frontier models to meet real deadlines and high reliability expectations
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: When you see what modern language models are capable of, do you wonder, "How do these things work? How can we trust them?" The Interpretability team at Anthropic is working to reverse-engineer how trained models work because we believe that a mechanistic understanding is the most robust way to make advanced systems safe. Think of us as doing "neuroscience" of neural networks using "microscopes" we build - or reverse-engineering neural networks like binary programs. More resources to learn about our work: Our research blog - covering advances including Monosemantic Features and Circuits An Introduction to Interpretability from our research lead, Chris Olah The Urgency of Interpretability from CEO Dario Amodei Engineering Challenges Scaling Interpretability - directly relevant to this role 60 Minutes segment - Around 8:07, see a demo of tooling our team built New Yorker article - what it's like to work on one of AI's hardest open problems Even if you haven’t worked on interpretability before, the infrastructure expertise is similar to what's needed across the lifecycle of a production language model: Pretraining: Training dictionary learning models looks a lot like model pretraining - creating stable, performant training jobs for massively parameterized models across thousands of chips Inference: Interp runs a customized inference stack. Day-to-day analysis requires services that allow editing a model's internal activations mid-forward-pass - for example, adding a "steering vector" Performance: Like all LLM work, we push up against the limits of hardware and software. Rather than squeezing the last 0.1%, we are focused on finding bottlenecks, fixing them and moving ahead given rapidly evolving research and safety mission The science keeps scaling - and it's now applied directly in safety audits on frontier models, with real deadlines. As our research has matured, engineering and infrastructure have become a bottleneck. Your work will have a direct impact on one of the most important open problems in AI. Responsibilities: Build and maintain the specialized inference and training infrastructure that powers interpretability research - including instrumented forward/backward passes, activation extraction, and steering vector application Resolve scaling and efficiency bottlenecks through profiling, optimization, and close collaboration with peer infrastructure teams Design tools, abstractions, and platforms that enable researchers to rapidly experiment without hitting engineering barriers Help bring interpretability research into production safety audits - with real deadlines and high reliability expe