Description
We're looking for Research Engineers to build the evaluations that tell us — and the world — what Claude can actually do. Your work will turn ambiguous notions of "intelligence" into clear, defensible metrics that researchers, leadership, and the public can rely on.
You'll design and implement evaluations across the full spectrum of Claude's capabilities and personality, and build the infrastructure that runs them reliably at scale. You'll partner closely with researchers throughout the lifecycle of a new capability — from defining what to measure, to running the eval against live training checkpoints, to interpreting the results. The goal is to make Anthropic the leader in extremely well-characterized AI systems, with performance that is exhaustively measured and validated across the tasks that matter.
Key responsibilities
- Design and run new evaluations of Claude's capabilities — reasoning, agentic behavior, knowledge, safety properties — and produce visualizations that make the results legible to researchers and decision-makers
- Build and harden the distributed eval execution platform so hundreds of evals run reliably against checkpoints throughout production RL training runs
- Own the dashboards researchers and leadership use to monitor model health during training, improving signal-to-noise, reducing latency, and making regressions impossible to miss
- Debug anomalous eval results mid-training-run, determine whether the cause is a model change or an infrastructure issue, and communicate the answer clearly under time pressure
- Improve the tooling, libraries, and workflows researchers use to implement and iterate on evaluations
- Partner with research teams across the full lifecycle of a new capability — from defining what to measure to interpreting results as training progresses
- Run experiments to characterize how prompting, sampling, and scaffolding choices affect results on internal and industry benchmarks
- Communicate evaluations and their results to internal stakeholders and, where appropriate, external audiences