Anthropic · San Francisco · Hybrid

Staff Research Engineer, Discovery Team

23.4.2025

Description

As a Research Engineer on our team you will work end to end, identifying and addressing key blockers on the path to scientific AGI. Strong candidates should have familiarity with language model training, evaluation, and inference, be comfortable triaging research ideas and diagnosing problems and enjoy working collaboratively. Familiarity with performance optimization, distributed systems, vm/sandboxing/container deployment, and large scale data pipelines is highly encouraged.

Join us in our mission to develop advanced AI systems that are both powerful and beneficial for humanity. 

Responsibilities: 

  • Working across the full stack to identify and remove bottlenecks preventing progress toward scientific AGI
  • Develop approaches to address long-horizon task completion and complex reasoning challenges essential for scientific discovery
  • Scaling research ideas from prototype to production
  • Create benchmarks and evaluation frameworks to measure model capabilities in scientific workflows and computer use
  • Implement distributed training systems and performance optimizations to support large-scale model development

Qualifications

  • Have 8+ years of ML research experience
  • Are familiar with large scale language model training, evaluation, and inference pipelines
  • Enjoy obsessively iterating on immediate blockers towards longterm goals
  • Thrive working collaboratively to solve problems
  • Have expertise in performance optimization and distributed computing systems
  • Show strong problem-solving skills and ability to identify technical bottlenecks in complex systems
  • Can translate research concepts into scalable engineering solutions
  • Have a track record of shipping ML systems that tackle challenging multi-step reasoning problems
  • Expertise with performance optimization for language model inference and training
  • Experience with computer use automation and agentic AI systems
  • A history working on reinforcement learning approaches for complex task completion
  • Knowledge of containerization technologies (Docker, Kubernetes) and cloud deployment at scale
  • Demonstrated ability to work across multiple domains (language modeling, systems engineering, scientific computing)
  • Have experience with VM/sandboxing/container deployment and large-scale data processing
  • Experience working with large scale data problem solving and infrastructure
  • Published research or practical experience in scientific AI applications or long-horizon reasoning

Benefits

$340,000 - $425,000 USD

Application

View listing at origin and apply!