Anthropic· AI Research & Engineering· San Francisco, CA | New York City, NY
Research Engineer, Machine Learning (Reinforcement Learning)
Classified Tasks (21)
Automate 0%Augment 86%Human-Only 14%
Augment (18)
AI assists, human decides
Collaborate with researchers and engineers to advance the capabilities and safety of large language models
communication
Implement novel reinforcement learning approaches and integrate them into research and engineering workflows
technical
Improve model reasoning abilities in domains such as mathematics
technical
Develop prototypes for internal use, productivity, and evaluation
technical
Architect core reinforcement learning infrastructure, including clean training abstractions
technical
Optimize reinforcement learning infrastructure for performance and scalability
technical
Design and implement distributed experiment management systems across GPU clusters
technical
Scale systems to handle increasingly complex research workflows
technical
Implement evaluations and methodologies for reinforcement learning agents
analytical
Test training environments, evaluations, and methodologies for reinforcement learning agents
technical
Profile software and systems to identify performance bottlenecks
technical
Optimize code and systems to drive performance improvements across the stack
technical
Benchmark models and infrastructure to measure and track performance gains
analytical
Implement efficient caching solutions to accelerate training and evaluation workflows
technical
Debug distributed systems to accelerate training and evaluation workflows
technical
Develop automated testing frameworks in collaboration with research and engineering teams
technical
Design clean APIs to support research and production workflows
technical
Build scalable infrastructure that accelerates AI research
technical
Human-Only (3)
Requires human judgment
Contribute to the research direction of reinforcement learning projects
leadership
Conduct fundamental reinforcement learning research to create agentic models that use tools for open-ended tasks such as computer use and autonomous software generation
technical
Design novel training environments for reinforcement learning agents
technical
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 teams Our Reinforcement Learning teams lead Anthropic's reinforcement learning research and development, playing a critical role in advancing our AI systems. We've contributed to all Claude models, with significant impacts on the autonomy and coding capabilities of Claude Sonnet 4.5 and Opus 4.5. Our work spans several key areas: Developing systems that enable models to use computers effectively Advancing code generation through reinforcement learning Pioneering fundamental RL research for large language models Building scalable RL infrastructure and training methodologies Enhancing model reasoning capabilities We collaborate closely with Anthropic's alignment and frontier red teams to ensure our systems are both capable and safe. We partner with the applied production training team to bring research innovations into deployed models, and are dedicated to implement our research at scale. Our Reinforcement Learning teams sit at the intersection of cutting-edge research and engineering excellence, with a deep commitment to building high-quality, scalable systems that push the boundaries of what AI can accomplish. About the Role As a Research Engineer within Reinforcement Learning, you will collaborate with a diverse group of researchers and engineers to advance the capabilities and safety of large language models. This role blends research and engineering responsibilities, requiring you to both implement novel approaches and contribute to the research direction. You'll work on fundamental research in reinforcement learning, creating 'agentic' models via tool use for open-ended tasks such as computer use and autonomous software generation, improving reasoning abilities in areas such as mathematics, and developing prototypes for internal use, productivity, and evaluation. Representative projects: Architect and optimize core reinforcement learning infrastructure, from clean training abstractions to distributed experiment management across GPU clusters. Help scale our systems to handle increasingly complex research workflows. Design, implement, and test novel training environments, evaluations, and methodologies for reinforcement learning agents which push the state of the art for the next generation of models. Drive performance improvements across our stack through profiling, optimization, and benchmarking. Implement efficient caching solutions and debug distributed systems to accelerate both training and evaluation workflows. Collaborate across research and engineering teams to develop automated testing frameworks, design clean APIs, and build scalable infrastructure that accelerates AI research. You may be a good fit if you: Are proficient in Python and async/concurrent programming with frameworks like Trio Have experience with machine learning frameworks (PyTorch, TensorFlow, JAX) Have industry experience in machine learning research Can balance research exploration with engineering implementation Enjoy pair programming (we love to pair!) Care about code quality, testing, and performance Have strong systems design and communication skills Are passionate about the potential impact of AI and are committed to developing safe and beneficial systems Strong candidates may have: <div class="section