Engineering Manager, Research Data Platform
Listed on 2026-07-10
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Software Development
Data Engineering
Engineering Manager, Research Data Platform
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 roleAnthropic's researchers generate and depend on enormous amounts of data — training runs, evaluations, RL transcripts, annotations, etc. The Research Data Platform team builds the systems that make that data easy to produce, find, query, and trust. We work in two modes: we build platform components that other systems plug into (for example, a metrics library that training frameworks integrate to record and retrieve run data), and we own core datasets end to end (for example, the data pipeline behind RL transcripts).
As the team's tech lead, your job starts with our users. You'll work directly with researchers — and with the engineers who support them — to understand how they actually work, where managing data slows them down, and where a well‑built platform component or a well‑curated dataset would change what's possible. You'll turn what you learn into technical direction for the team, in partnership with the team's manager, who owns priorities and people.
A central ambition you'll drive: a small set of canonical, well‑documented datasets — starting with the core data model for RL — that researchers trust and standardize on, rather than every team managing its own copies.
You will spend your first few months close to the code and close to users: shipping improvements in our core systems, embedding with research teams, and building your own map of their workflows. As the team grows, this role has a natural path into formal people leadership for someone who wants it.
Responsibilities- Work directly with researchers and the engineers supporting them to understand their workflows, identify the highest‑leverage opportunities, and shape what the team builds next
- Set the technical direction for the team across our platform and our datasets
- Design and build platform components that other teams plug into — libraries, services, and interfaces such as the metrics library used by training frameworks
- Own core datasets end to end: the pipelines that produce them, the schemas that define them, and the documentation and guarantees that make researchers trust them
- Drive convergence toward canonical datasets — including the core data model for RL transcripts — that research teams standardize on
- Lead complex, multi‑quarter projects that span several systems and teams, staying hands‑on in the code
- Raise the team's technical bar through design reviews, mentorship, and the quality of your own work
- Have built and operated data‑intensive systems at scale — pipelines, storage layers, query systems — with strong instincts for data modeling and schema design that hold up as usage grows
- Have set technical direction for a team, or owned the architecture of a data platform that other teams build on
- Treat internal users as customers: you do the discovery work, iterate with users, and measure success by adoption rather than by shipping
- Understand that researchers aren’t typical internal customers — the work is exploratory by nature, workflows differ from team to team, and requirements are discovered through experiments rather than specified up front
- Can build for that motion — keeping interfaces stable and data trustworthy while use cases change underneath you, and judging when a quick, disposable solution serves research better than a durable one
- Lead through influence — aligning engineers and stakeholders without relying on formal authority
- Are results‑oriented and pragmatic, willing to do unglamorous work when it's the highest‑leverage thing
- Are excited about learning the fundamentals of machine learning research (deep ML expertise is not required)
- Care about the societal impacts of your work
- Experience with large‑scale ETL and columnar or analytical storage (e.g., Spark, Big Query, Click House, DuckDB,…
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