Anthropic · San Francisco · Hybrid

Privacy Research Engineer, Safeguards

10/9/2025

Description

We are looking for researchers to help mitigate the risks that come with building AI systems. One of these risks is the potential for models to interact with private user data. In this role, you'll design and implement privacy-preserving techniques, audit our current techniques, and set the direction for how Anthropic handles privacy more broadly.

Responsibilities: 

  • Lead our privacy analysis of frontier models, carefully auditing the use of data and ensuring safety throughout the process
  • Develop privacy-first training algorithms and techniques
  • Develop evaluation and auditing techniques to measure the privacy of training algorithms
  • Work with a small, senior team of engineers and researchers to enact a forward-looking privacy policy
  • Advocate on behalf of our users to ensure responsible handling of all data

Qualifications

  • Experience working on privacy-preserving machine learning
  • A track record of shipping products and features inside a fast-moving environment
  • Strong coding skills in Python and familiarity with ML frameworks like PyTorch or JAX.
  • Deep familiarity with large language models, how they work, and how they are trained
  • Have experience working with privacy-preserving techniques (e.g., differential privacy and how it is different from k-anonymity, l-diversity, and t-closeness)
  • Experience supporting fast-paced startup engineering teams
  • Demonstrated success in bringing clarity and ownership to ambiguous technical problems
  • Proven ability to lead cross-functional security initiatives and navigate complex organizational dynamics
  • Have published papers on the topic of privacy-preserving ML at top academic venues
  • Prior experience training large language models (e.g., collecting training datasets, pre-training models, post-training models via fine-tuning and RL, running evaluations on trained models)
  • Prior experience developing tooling to support privacy-preserving ML (e.g., differential privacy in TF-Privacy or Opacus)

Benefits

$320,000 - $485,000 USD

Application

View listing at origin and apply!