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HPC-oriented Canonical Workflows for Machine Learning Applications in Climate and Weather Prediction
2022
Machine learning (ML) applications in weather and climate are gaining momentum as big data and the immense increase in High-performance computing (HPC) power are paving the way. Ensuring FAIR data and reproducible ML practices are significant challenges for Earth system researchers. Even though the FAIR principle is well known to many scientists, research communities are slow to adopt them. Canonical Workflow Framework for Research (CWFR) provides a platform to ensure the FAIRness and
doi:10.5445/ir/1000149399
fatcat:z3pkuvco4nh3xpfmsekf2pb5wy