Argonne National Laboratory

PostdoctoralAppointee

$73–121k Lemont, Illinois, United States FULL TIME
Market Sentiment
HIGH DEMAND

Neural analysis suggests this role is
optimal for Mid+ candidates.

The Brief

“Postdoctoral Appointee at Argonne National Laboratory. Skills: Federated learning, Multimodal AI, Privacy-preserving ML, Foundation models. Conduct research in federated learning. Conduct research in privacy-preserving ML”

What You'll Achieve.

Advance trustworthy AI; Publish research findings; Present at conferences; Contribute to open-source software; Support project milestones; Develop working prototypes; Develop experimental benchmarks; Develop reusable software components

Industry & Context.

Problems you'll solve

Model evaluation; Data analysis; Troubleshooting; Root cause analysis

What They're Looking For.

Must Have

Ph.D. completed within 0-5 years, Programming skills in Python, Experience developing ML software, Experience with ML/deep learning frameworks, Knowledge of federated learning, Knowledge of distributed ML, Knowledge of privacy-preserving AI, Knowledge of foundation models, Knowledge of multimodal learning, Knowledge of continual learning, Ability to design computational experiments, Ability to analyze model performance, Ability to communicate results clearly, Experience with large-scale datasets, Ability to work independently, Ability to contribute to research team, Written communication skills, Oral communication skills, Ability to prepare manuscripts, Ability to prepare technical reports, Ability to prepare presentations, Ability to prepare documentation, Ability to model Argonne's core values

Nice to Have

Experience developing federated learning frameworks, Experience with multimodal biomedical data, Familiarity with foundation models, Familiarity with large language models, Familiarity with vision-language models, Familiarity with biomedical AI models, Familiarity with privacy-preserving techniques, Experience with distributed computing, Experience with cloud computing, Experience with containers, Experience with Kubernetes, Experience with Docker, Experience with Apptainer/Singularity, Experience with HPC environments, Experience with MLOps, Experience with reproducible workflows, Experience with experiment tracking, Experience with CI/CD, Experience with software testing, Experience with benchmarking, Experience with open-source software development, Familiarity with biomedical AI validation, Familiarity with data readiness assessment, Familiarity with model evaluation, Familiarity with regulatory-grade evidence generation, Familiarity with independent verification and validation workflows, Publish research, Contribute to collaborative software projects, Present technical work to interdisciplinary audiences

What You'll Do.

Conduct research in federated learning

Conduct research in privacy-preserving ML

Conduct research in multimodal AI

Conduct research in foundation model adaptation

Develop methods for multimodal federated learning

Integrate information across distributed datasets

Design continuous learning approaches

Improve models over time

Explore agentic AI approaches

Assist with task orchestration

Assist with experiment planning

Assist with model evaluation

Assist with workflow automation

Assist with decision support

Build software capabilities in federated learning

Emphasize scalable research software

Emphasize reproducible research software

Emphasize secure research software

Emphasize extensible research software

Evaluate model performance

Evaluate model robustness

Evaluate model generalizability

Evaluate model fairness

Evaluate model privacy

Evaluate data readiness

Contribute to secure AI workflows

Collaborate with interdisciplinary teams

Prepare research results for publication

Communicate findings through presentations

Communicate findings through technical reports

Communicate findings through project meetings

Communicate findings through software documentation

Support project milestones

Support project demonstrations

Support project deliverables

Develop working prototypes

Develop experimental benchmarks

Develop reusable software components

How You'll Work.

Team & Collaboration

Multidisciplinary teams; Interdisciplinary teams; AI researchers; Biomedical scientists; Software engineers; Security experts; HPC specialists; Collaborative research environment; Collaborative software projects; Interdisciplinary audiences

Communication Scope

Written communication; Oral communication; Manuscript preparation; Technical reports; Presentations; Documentation; Scientific communication; Technical writing; Publish research; Present technical work

Process & Methodology

Workflow automation, Experiment planning, Project milestones, Project meetings, Reproducible workflows, Experiment tracking, CI/CD

Full Job Description

The Argonne team is seeking two highly motivated postdoctoral researchers to help shape the next generation of secure, scalable, and continuously learning AI systems for biomedical discovery. This position will contribute to the Forge project, which is focused on developing advanced multimodal AI capabilities that can learn across distributed data environments without requiring sensitive data to be centralized. The successful candidates will work at the intersection of federated learning, foundation models, multimodal biomedical AI, privacy-preserving machine learning, continuous learning, and agentic AI systems. This is an opportunity to conduct applied research that advances trustworthy AI for biomedical and national security-relevant use cases while working in a multidisciplinary environment that brings together computer scientists, AI researchers, domain scientists, software engineers, and high-performance computing experts. You will help design and implement new methods for multimodal federated learning across heterogeneous data types such as clinical, imaging, omics, text, and experimental data. The work will include developing approaches for continual model improvement, adaptive federated training, model evaluation, workflow automation, and AI-assisted orchestration of distributed learning tasks. The position will also provide opportunities to contribute to open-source software, publish research findings, present at major conferences and workshops, and collaborate with partners across national laboratories, universities, government agencies, and biomedical research organizations. The work will take place in a collaborative, mission-driven research environment that values technical creativity, rigorous engineering, scientific impact, and teamwork. The group works on practical AI systems that connect research prototypes to real-world deployment environments, including cloud, secure enclaves, trusted research environments, and leadership computing platforms. Can

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