Our mission is to accelerate scientific discovery by advancing trustworthy, privacy-preserving AI methodologies that can safely leverage sensitive scientific data. The Advanced Data Technologies and Federated Learning group at Argonne National Laboratory is seeking a highly motivated pre-doctoral appointee to develop and evaluate next-generation Privacy-Preserving Federated Learning (PPFL) techniques for large-scale biomedical applications. This position offers the opportunity to work at the intersection of machine learning, privacy technologies, and high-performance computing (HPC) while collaborating with leading scientists, clinicians, and data engineers. The successful candidate will help shape new algorithms for learning from multimodal data, e.g. including imaging, clinical text, genomics, and digital health streams—and investigate the impact of differential privacy and privacy budgets on model fidelity and fairness. The work will take place in a multidisciplinary, innovation-oriented environment and will provide opportunities to publish research and present at top scientific venues.
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Job Type
Full-time
Career Level
Entry Level
Number of Employees
1,001-5,000 employees