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Argonne National Laboratory Logo

Predoctoral Appointee - Machine Learning

Argonne National Laboratory

$58,297 - $97,161
Dec 16, 2025
Lemont, IL, US
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Argonne National Laboratory is seeking to develop and evaluate next-generation Privacy-Preserving Federated Learning (PPFL) techniques for large-scale biomedical applications to accelerate scientific discovery by advancing trustworthy, privacy-preserving AI methodologies that can safely leverage sensitive scientific data.

Requirements

  • Demonstrated experience in programming, with proficiency in Python and familiarity with numerical or scientific computing libraries (e.g., NumPy, PyTorch, TensorFlow).
  • Strong aptitude for developing and evaluating machine learning models, including hands-on experience implementing algorithms for classification, regression, or representation learning.
  • Ability to analyze complex datasets, design computational experiments, and interpret model performance in a scientifically rigorous manner.
  • Experience with privacy-preserving machine learning concepts such as federated learning, differential privacy, or secure multiparty computation.
  • Familiarity with handling biomedical or multimodal data (e.g., images, EHR, genomics, sensor data).
  • Exposure to large-scale computing environments or distributed systems concepts.
  • Understanding of deep learning architectures (transformers, CNNs, RNNs) and approaches for multimodal fusion.

Responsibilities

  • Develop and evaluate PPFL algorithms that enable collaborative model training on distributed biomedical datasets without centralized data movement, leveraging frameworks such as APPFL/APPFLx and secure HPC environments.
  • Create novel approaches for multimodal learning in federated settings, integrating structured EHR data, imaging, sensor data, and genomic information to improve model robustness, generalization, and interpretability.
  • Study privacy budgets and differential privacy mechanisms to quantify, optimize, and communicate tradeoffs between privacy guarantees and downstream model performance, with emphasis on biomedical use cases.
  • Design and run large-scale experiments on DOE leadership-class computing systems, benchmarking federated optimization strategies, privacy mechanisms, and algorithmic scalability.
  • Contribute to scientific discovery in computational biology and precision medicine, including applications such as disease risk prediction, phenotype modeling, digital pathology, and clinical decision support.
  • Disseminate research findings through peer-reviewed publications, technical reports, conference presentations, and open-source software contributions.
  • Collaborate closely across Argonne’s multidisciplinary teams, including experts in HPC systems, AI frameworks, privacy-enhancing technologies, and biomedical data science, in alignment with Argonne’s strategic mission in computation and health-related AI.

Other

  • Recently completed Master’s degree in computer science, biomedical engineering, applied mathematics, statistics, computational biology, or a related quantitative field.
  • Excellent written and verbal communication skills, with the ability to work effectively in interdisciplinary research teams.
  • Ability to model Argonne's core values of impact, safety, respect, integrity and teamwork.
  • Experience conducting research projects, contributing to publications, or presenting findings in academic or technical settings.
  • All Argonne offers of employment are contingent upon a background check that includes an assessment of criminal conviction history conducted on an individualized and case-by-case basis.