Research Engineer, Societal Impacts

Anthropic Anthropic · AI Frontier · AI Research & Engineering

Research Engineer focused on building infrastructure for foundational research into AI's societal impact. This involves designing and implementing scalable systems for experiments, evaluations, and data processing, with a strong emphasis on reliability and supporting future research directions. The role requires close collaboration with researchers and policy experts to generate insights and inform strategy.

What you'd actually do

  1. Design and implement scalable technical infrastructure that enables researchers to efficiently run experiments and evaluate AI systems
  2. Architect systems that can handle uncertain and changing requirements while maintaining high standards of reliability
  3. Lead technical design discussions to ensure our infrastructure can support both current needs and future research directions
  4. Partner closely with researchers, data scientists, policy experts, and other cross-functional partners to advance Anthropic’s safety mission
  5. Interface with, and improve our internal technical infrastructure and tools

Skills

Required

  • Python
  • distributed systems
  • production-grade internal tools or research infrastructure
  • technical decisions with incomplete information
  • scale and reliability
  • interface effectively with machine learning models
  • deriving insights from imperfect data streams

Nice to have

  • Maintaining large, foundational infrastructure
  • Building simple interfaces that allow non-technical collaborators to evaluate AI systems
  • Working with and prioritizing requests from a wide variety of stakeholders
  • Scaling and optimizing the performance of tools

What the JD emphasized

  • running & designing experiments relating to machine learning systems
  • building data processing pipelines
  • architecting & implementing high-quality internal infrastructure
  • working in a fast-paced startup environment
  • demonstrating an eagerness to develop their own research & technical skills
  • running experiments
  • developing new tools & evaluation suites
  • working cross-functionally across multiple research and product teams
  • striving for beneficial & safe uses for AI
  • building and maintaining production-grade internal tools or research infrastructure
  • writing clean, well-documented code in Python that others can build upon
  • making technical decisions with incomplete information while maintaining high engineering standards
  • experience with distributed systems and can design for scale and reliability
  • using technical infrastructure to interface effectively with machine learning models
  • deriving insights from imperfect data streams
  • Maintaining large, foundational infrastructure
  • Building simple interfaces that allow non-technical collaborators to evaluate AI systems
  • Working with and prioritizing requests from a wide variety of stakeholders, including research and product teams
  • Scaling and optimizing the performance of tools
  • Design and implement scalable infrastructure for running large-scale experiments on how people interact with our AI systems
  • Build robust monitoring systems that help us detect and understand potential misuse or unexpected behaviors
  • Create internal tools that help researchers, policy experts, and product teams quickly analyze dynamically changing AI system characteristics

Other signals

  • design and build critical infrastructure that enables and accelerates foundational research
  • running & designing experiments relating to machine learning systems
  • building data processing pipelines
  • architecting & implementing high-quality internal infrastructure
  • developing new tools & evaluation suites