September 19, 2024
Conference Paper

Towards FAIR Workflows for Federated Experimental Sciences

Abstract

A de-centralized, peer-to-peer AI metadata framework is demonstrated which can enable end-to-end metadata & lineage tracking for distributed Machine Learning pipelines spanning edge, High Performance Computing, and cloud environments. With a specific example of end-to-end microscopy algorithm and datasets, the proposed method shows how to enable reproducibility, audit trail, provenance of metadata artifacts. The emerging needs of automation in experimental sciences, ML-centric workflows, and FAIR metadata management across federated compute environments is addressed.

Published: September 19, 2024

Citation

Saranathan G., M. Foltin, A. Tripathy, A. Justine, M.A. Ziatdinov, A. Ghosh, and K. Roccapriore, et al. 2024. Towards FAIR Workflows for Federated Experimental Sciences. In IEEE Conference on Artificial Intelligence (CAI 2024), June 25-27, 2024, Singapore, 1436-1437. Los Alamitos, California:IEEE Computer Society. PNNL-SA-202274. doi:10.1109/CAI59869.2024.00256