At a Glance
- Tasks: Own significant parts of the stack, build data collection pipelines, and develop QA frameworks.
- Company: Anthropic focuses on creating reliable and interpretable AI systems for societal benefit.
- Benefits: Annual salary ranges from 320,000 to 485,000 USD, with visa sponsorship available.
- Other info: Location-based hybrid policy requires staff to be in the office at least 25% of the time.
- Why this job: Join a foundational team shaping AI safety research and beneficial deployments.
- Qualifications: Experience owning major projects in fast-paced environments and strong software engineering skills.
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
This is a senior, foundational role on a new team: you'll make architecture decisions the rest of the team builds on, and help shape 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 experienced engineers who own outcomes end‑to‑end — down to reading transcripts, supporting users, and wrangling vendors.
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 great at real work — especially the work that matters most, like AI safety research and beneficial deployments of AI.
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, and work with operations, security, and compliance partners to roll our systems out to new users and vendors.
Minimum qualifications
- A track record of owning major projects end‑to‑end in fast‑paced, ambiguous environments — for example as a founder or CTO, forward deployed engineer, tech lead, founding engineer at a startup, or creator of a substantial open‑source project.
- Trusted to run key projects: you lead and inspire others, plan workstreams effectively, collaborate with cross‑functional stakeholders, and proactively eliminate or eliminate blockers.
- Strong software engineering skills in at least one modern programming language — we mostly use Python and TypeScript, but care more that you pick new tools up quickly than that you know our exact stack.
- Familiarity with Docker, Kubernetes, and common cloud infrastructure is a plus.
- Effective use of AI tools in your own day‑to‑day work.
- Care about the societal impacts of your work.
Preferred qualifications
- Experience with reinforcement learning on LLMs, particularly on the data side: creating evals, environments, rewards, graders, or training data.
- Experience helping organizations use AI more effectively, including integrating with third‑party tools via APIs, CLIs, and MCP servers.
- Strong data engineering skills: pipelines that handle large volumes reliably in production, LLM‑powered enrichment steps, and a focus on improving data quality.
- Experience shipping user‑facing products or internal platforms people love: interviewing users, hunting down friction, measurably improving the experience.
- Basic familiarity with AI safety or security research.
Representative projects
- Take a data collection pipeline from research prototype to a production service that serves many research teams — collection, human validation, grading, and everything in between.
- Own the program of developing sandboxed execution environments realistic enough for long‑horizon, high‑tool‑use agentic tasks — and harden them so they behave correctly across millions of rollouts in a frontier training run.
- Bring a new data source online — from first conversation with a partner organization to data flowing into production training runs — coordinating with product, security, privacy, legal, and infrastructure teams along the way.
- Own the QA layer that decides which tasks make it into Claude’s training: automated checks and expert review flows (a busy domain expert should be able to validate a task in under five minutes) that hold up when a frontier model learns to game them.
- Cut the time from “rough task idea” to “task in a production training run” from days to hours. You’d own the direction: figure out where the bottlenecks actually are, then automate, redesign, or delete the steps in the way.
The annual compensation range for this role is listed below. Annual Salary: 320,000 - 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.
Software Engineer, RL Data employer: Anthropic
Anthropic is dedicated to building beneficial AI systems with a mission to ensure AI safety. Located in a collaborative environment, the team includes researchers, engineers, and policy experts. Employees enjoy competitive salaries and support for visa sponsorship.
StudySmarter Expert Advice🤫
We think this is how you could land Software Engineer, RL Data
✨Join Local Tech Meetups
Get out there and mingle with fellow developers by joining local tech meetups. It’s a fantastic way to meet people who might be working at Anthropic or know someone who does. Plus, you can pick up some trendy tech skills and trends while you're at it!
✨Contribute to Open Source Projects
Show off your coding chops by jumping into open-source projects. Not only does this give you practical experience, but it also gets you noticed in the dev community. You'll create a killer portfolio that speaks volumes about your skills to Anthropic.
✨Tap into Online Developer Communities
Don’t underestimate the power of online developer communities like GitHub, Stack Overflow, and even Reddit. Participate in discussions, share your projects, and build your visibility. We can often find opportunities through these channels that can lead to a full-time gig at companies like Anthropic.
✨Explore Job Boards Specifically for Tech Roles
Keep your eyes peeled on job boards that focus on tech roles. Sites like TechCareers or Stack Overflow Jobs can often have listings for companies like Anthropic that might not show up on broader job sites. Make it a habit to check these regularly, and don’t hesitate to apply directly through our website!
We think you need these skills to ace Software Engineer, RL Data
Some tips for your application 🫡
Show off your coding skills:When applying for a software engineering role, it's super important to showcase your coding skills. Make sure your CV includes your tech stack, any relevant programming languages you’re comfortable with, and examples of projects you've worked on. If you have a GitHub profile, link it up! We love to see code in action.
Tailor your portfolio:For a full-time role, we’d expect to see some solid examples of your work in your portfolio. Make sure to include at least two or three projects that highlight your problem-solving skills and your ability to work with different technologies. Focus on the projects that are most relevant to the position at Anthropic.
Craft a killer cover letter:Your cover letter is your chance to stand out—make it personal! Explain why you want to work at Anthropic and how your skills align with the role. Show us your passion for software development. We dig enthusiastic candidates who understand the value of collaboration and continuous learning!
Be clear and concise:When it comes to writing your CV and cover letter, clarity is key. Avoid jargon that could confuse us and stick to simple, direct language. Highlight your achievements with quantifiable results where possible, and keep everything easy to read. A well-organised application goes a long way!
How to prepare for a job interview at Anthropic
✨Brush Up on Your Coding Skills
For a full-time software engineering role, it's crucial that we stay sharp with our coding abilities. Expect technical questions that might involve solving problems on the spot or discussing algorithms. Practise on platforms like LeetCode or HackerRank to get comfortable with the types of questions that often come up.
✨Know Your Tools and Frameworks
Make sure we’re well-acquainted with the tools and technologies listed in the job description. Familiarise ourselves with any specific frameworks or programming languages mentioned. If Anthropic uses React or Node.js, for instance, be ready to discuss how we’ve used them in previous projects or coursework.
✨Showcase Your Projects
Bring along a portfolio that highlights our best work. This could be code samples, GitHub repositories, or any side projects we’ve built. Make sure we can talk through our thought process for each project, especially the challenges we faced and how we solved them—this shows our problem-solving skills in action.
✨Prepare for Behavioural Questions
While technical skills are key, full-time positions also require cultural fit. Be ready to discuss our previous experiences and how we handle teamwork, conflict, and deadlines. Brush up on the STAR method—Situation, Task, Action, Result—to clearly articulate our past experiences when discussing how we've contributed to a team.