Anthropic· AI Research & Engineering· Zürich, CH
Research Engineer / Research Scientist, Pre-training
Classified Tasks (12)
Automate 0%Augment 83%Human-Only 17%
Augment (10)
AI assists, human decides
Interact with many parts of the engineering and research stacks
operational
Conduct research and implement solutions in model architecture, algorithms, data processing, and optimizer development
technical
Design, run, and analyze scientific experiments to advance understanding of large language models
analytical
Optimize and scale training infrastructure to improve efficiency and reliability
technical
Develop and improve developer tooling to enhance team productivity
technical
Contribute to the entire stack, from low-level optimizations to high-level model design
technical
Optimize the throughput of novel attention mechanisms
technical
Propose Transformer variants and experimentally compare their performance
technical
Prepare large-scale datasets for model consumption
operational
Scale distributed training
technical
Human-Only (2)
Requires human judgment
Contribute to the development of safe, steerable, and trustworthy AI systems
technical
Lead small research projects independently and collaborate with team members on larger initiatives
leadership
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 team We are seeking passionate Research Scientists and Engineers to join our growing Pre-training team in Zurich. We are involved in developing the next generation of large language models. The team primarily focuses on multimodal capabilities: giving LLMs the ability to understand and interact with modalities other than text. In this role, you will work at the intersection of cutting-edge research and practical engineering, contributing to the development of safe, steerable, and trustworthy AI systems. Responsibilities In this role you will interact with many parts of the engineering and research stacks. Conduct research and implement solutions in areas such as model architecture, algorithms, data processing, and optimizer development Independently lead small research projects while collaborating with team members on larger initiatives Design, run, and analyze scientific experiments to advance our understanding of large language models Optimize and scale our training infrastructure to improve efficiency and reliability Develop and improve dev tooling to enhance team productivity Contribute to the entire stack, from low-level optimizations to high-level model design Qualifications & Experience We encourage you to apply even if you do not believe you meet every single criterion. Because we focus on so many areas, the team is looking for both experienced engineers and strong researchers, and encourage anyone along the researcher/engineer spectrum to apply. Degree (BA required, MS or PhD preferred) in Computer Science, Machine Learning, or a related field Strong software engineering skills with a proven track record of building complex systems Expertise in Python and deep learning frameworks Have worked on high-performance, large-scale ML systems, particularly in the context of language modeling Familiarity with ML Accelerators, Kubernetes, and large-scale data processing Strong problem-solving skills and a results-oriented mindset Excellent communication skills and ability to work in a collaborative environment You'll thrive in this role if you Have significant software engineering experience Are able to balance research goals with practical engineering constraints Are happy to take on tasks outside your job description to support the team Enjoy pair programming and collaborative work Are eager to learn more about machine learning research Are enthusiastic to work at an organization that functions as a single, cohesive team pursuing large-scale AI research projects Have ambitious goals for AI safety and general progress in the next few years, and you’re excited to create the best outcomes over the long-term Sample Projects Optimizing the throughput of novel attention mechanisms Proposing Transformer variants, and experimentally comparing their performance Preparing large-scale datasets for model consumption Scaling distributed training