logo

Anthropic

Software Engineer, RL Data

Department
Engineering
Job Type / Location
remote
Experience Required
3+ years
Posted On

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

Anthropic's RL Data team builds the systems that produce high-quality reinforcement learning data for Claude: data collection pipelines, human feedback tooling, the execution environments RL tasks run in, and the quality assurance that keeps training data trustworthy at scale. Our goal is to make Claude genuinely great at complex, real-world work — and to point those capabilities at the things that matter most, including AI safety research and beneficial deployments of AI. (To be upfront: this is dual-use work — it advances general capabilities too, though we aim to differentially advance the beneficial ones.)

This is a foundational role on a new team: you'll help shape our technical direction and what we build first. The work is hands-on and varied. Some weeks you'll be deep in pipeline or infrastructure engineering; others you'll be tuning prompts until the output is good, or sitting with a research team that depends on your systems and shipping the fixes they need. We're looking for strong engineers who will also do whatever else it takes to make their systems succeed — reading transcripts, supporting users, and wrangling vendors.

Key responsibilities

Own significant parts of our stack end-to-end, from technical architecture through the unglamorous operational work that makes it succeed

Build data collection pipelines, read the transcripts they produce, and iterate on prompts, evals, and graders until the output is good

Develop and improve QA frameworks to catch reward hacking and ensure environment quality

Build interfaces that make collecting human data fast and painless for the people providing it

Harden execution environments — sandboxing, snapshotting, tool coverage — so tasks hold up at training scale

Embed with the teams and domain experts who use our systems day-to-day: design pipelines and evals with them, support them directly, and ship the improvements they need

Work with operations, security, and compliance partners to roll our systems out to new users, and manage technical relationships with external data vendors

Minimum qualifications

Strong software engineering skills and proficiency in at least one modern programming language — we mostly use Python and TypeScript, and care more that you pick new tools up quickly than that you know our exact stack

Experience designing, building, and running backend systems or infrastructure

Effective use of AI tools in your own day-to-day work

Willingness to own problems end-to-e

View Assessment Process

Think you'll be a good fit?