Machine Learning Systems Engineer, RL Engineering

Anthropic Anthropic · AI Frontier · San Francisco, CA · AI Research & Engineering

ML Systems Engineer focused on Reinforcement Learning Engineering to build, maintain, and improve the algorithms and infrastructure for training AI models like Claude using RLHF and other advanced techniques. The role emphasizes improving system performance, robustness, and usability to accelerate research breakthroughs in AI capabilities and safety.

What you'd actually do

  1. Build, maintain, and improve the algorithms and systems that researchers use to train models.
  2. Improve the speed, reliability, and ease-of-use of these systems.
  3. Support and empower the research team in the mission to build beneficial AI systems.
  4. Implement and improve advanced techniques to create ever more capable, reliable and steerable AI.
  5. Focus obsessively on improving the performance, robustness, and usability of these systems so our research can progress as quickly as possible.

Skills

Required

  • Software engineering experience
  • Systems and tools development
  • Python
  • Distributed systems
  • LLM training
  • RLHF

Nice to have

  • High performance, large scale distributed systems
  • Large scale LLM training
  • Python
  • Implementing LLM finetuning algorithms, such as RLHF

What the JD emphasized

  • 4+ years of software engineering experience
  • Implementing LLM finetuning algorithms, such as RLHF
  • Large scale LLM training

Other signals

  • building systems that train AI models
  • implementing and improving advanced techniques
  • responsible for the critical algorithms and infrastructure
  • directly enable breakthroughs in AI capabilities and safety
  • improving the performance, robustness, and usability of these systems
  • supporting and empowering our research team
  • build, maintain, and improve the algorithms and systems
  • improving the speed, reliability, and ease-of-use of these systems