Research Lead, Training Insights

Anthropic$850K+ *
Consumer Technology
5 - 7 years of experience
Job Overview by Ladders

Qualifications

  • 5-10 years of experience in evaluating large language models or complex ML systems
  • Proven track record in leading technical projects or research teams
  • Comfortable shifting between experimental design and coding
  • Ability to strategically determine measurement priorities
  • Skilled in integrating insights from multiple teams to assess model capabilities
  • Excellent communication skills for diverse audiences
  • Strong commitment to AI safety and its societal implications

Responsibilities

  • Create innovative, long-term evaluation methodologies for AI systems
  • Develop unique approaches to measure model capabilities during RL training
  • Lead company-wide strategic evaluation initiatives
  • Craft the narrative for model evaluation communications
  • Mentor and guide a small team of researchers and engineers
  • Design scientifically rigorous evaluation frameworks
  • Build interdepartmental relationships to inform model training and deployment decisions
  • Engage with the research community to share evaluation methodologies

Benefits

  • Visa sponsorship available
  • Collaborative and flexible work environment
  • Generous vacation and parental leave policies
  • Optional equity donation matching
  • Competitive health and wellness benefits
  • A supportive culture emphasizing communication and collaboration
Full Job Description
As a Research Lead on the Training Insights team, you'll develop the strategy for, and lead execution on, how we measure and characterize model capabilities across training and deployment. This is a hands-on leadership role: you'll drive original research into new evaluation methodologies while leading a small team of researchers and research engineers doing the same. Your work will span the full lifecycle of model development. You'll research and build new long-horizon evaluations that test the boundaries of what our models can achieve, develop novel approaches to measuring emerging capabilities, and deepen our understanding of how those capabilities develop - both during production RL training and after. You'll also take a cross-organizational view, working across Reinforcement Learning, Pretraining, Inference, Product, Alignment, Safeguards, and other teams to map the landscape of model evaluations at Anthropic and identify critical gaps in coverage. This role carries significant visibility and impact. You'll help shape the evaluation narrative for model releases, contributing directly to how Anthropic communicates about its models to both internal and external audiences. Done well, you will change how the industry measures and understands model capabilities, significantly furthering our safety mission. Responsibilities: • Build new novel and long-horizon evaluations • Develop novel measurement approaches for understanding how model capabilities emerge and evolve during RL training • Lead strategic evaluation coverage across the company • Shape the evaluation narrative for model releases • Lead and mentor a small team of researchers and research engineers, setting research direction and fostering a culture of rigorous, creative research • Design evaluation frameworks that balance scientific rigor with the practical demands of production training schedules • Build and maintain relationships across Anthropic's research organization to ensure evaluation insights inform training and deployment decisions • Contribute to the broader research community through publications, open-source contributions, or external engagement on evaluation best practices You may be a good fit if you: • Have significant experience designing and running evaluations for large language models or similar complex ML systems • Have led technical projects or teams, either formally or through sustained ownership of critical research directions • Are equally comfortable designing experiments and writing code-you can move between research and implementation fluidly • Think strategically about what to measure and why, not just how to measure it • Can synthesize information across multiple teams and workstreams to form a coherent picture of model capabilities • Communicate complex technical findings clearly to both technical and non-technical audiences • Are results-oriented and thrive in fast-paced environments where priorities shift based on research findings • Care deeply about AI safety and want your work to directly influence how capable AI systems are developed and deployed Strong candidates may also have: • Experience building evaluations for long-horizon or agentic tasks • Deep familiarity with Reinforcement Learning training dynamics and how model behavior changes during training • Published research in machine learning evaluation, benchmarking, or related areas • Experience with safety evaluation frameworks and red teaming methodologies • Background in psychometrics, experimental psychology, or other measurement-focused disciplines • A track record of communicating evaluation results to inform high-stakes decisions about model development or deployment • Experience managing or mentoring researchers and engineers Representative projects: • Designing and implementing a suite of long-horizon evaluations that test model capabilities on tasks requiring sustained reasoning, planning, and tool use over extended interactions • Building systems to track capability development across RL training checkpoints, surfacing insights about when and how specific capabilities emerge • Conducting a cross-org audit of evaluation coverage, identifying blind spots, and prioritizing new evaluations to fill critical gaps across Pretraining, RL, Inference, and Product • Developing the evaluation methodology and narrative for a major model release, working with research leads and communications to clearly characterize model capabilities and limitations • Researching and prototyping novel evaluation approaches for capabilities that are difficult to measure with existing benchmarks • Leading a team effort to build reusable evaluation infrastructure that serves multiple teams across the research organization The annual compensation range for this role is listed below. For sales roles, the range provided is the role's On Target Earnings ("OTE") range, meaning that the range includes both the sales commissions/sales bonuses target and annual base salary for the role. Annual Salary: $850,000-$850,000 USD Logistics Education requirements: We require at least a Bachelor's degree in a related field or equivalent experience.Location-based hybrid policy: Currently, we expect all staff to be in one of our offices at least 25% of the time. However, some roles may require more time in our offices. Visa sponsorship: We do sponsor visas! However, we aren't able to successfully sponsor visas for every role and every candidate. But if we make you an offer, we will make every reasonable effort to get you a visa, and we retain an immigration lawyer to help with this.

About Anthropic

Anthropic is an artificial intelligence research lab that focuses on developing AI systems that are safe, reliable, and trustworthy. The company was founded in 2019 by Dr. Yoshua Bengio, a leading AI researcher and winner of the Turing Award. Anthropic's research is focused on developing AI systems that can learn from small amounts of data, reason about complex systems, and interact with humans in a natural way. The company is based in New York City and has a team of experienced AI researchers and engineers.
Learn more about Anthropic
Size
50 employees
Industry
Founded
2019

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