Anthropic · San Francisco/New York City/Seattle · Hybrid
Research Engineer, Reward Models
13.1.2025
Description
Help implement novel reward modeling architectures and techniques
Optimize training pipelines
Build and optimize data pipelines
Collaborate across teams to integrate reward modeling advances into production systems
Communicate engineering progress through internal documentation and potential publications
Qualifications
Have a strong engineering background in machine learning, with demonstrable expertise in preference learning, reinforcement learning, deep learning, or related areas
Are proficient in Python, deep learning frameworks, and distributed computing
Are familiar with modern LLM architectures and alignment techniques
Have experience with improving model training pipelines and building data pipelines
Are comfortable with the experimental nature of frontier AI research
View research and engineering as complementary disciplines and are willing to implement some research ideas
Can clearly communicate complex technical concepts and research findings
Have a deep interest in AI alignment and safety
Proficiency in Python and experience with deep learning frameworks is required for this role