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个人简介
Rong Ge is Associate Professor in the School of Computing at Clemson University. Her research interest includes high performance computing, parallel and distributed systems, and performance and power analysis and modeling.
Dr. Ge co-directs the Scalable Computing and Analytics Lab with Dr. Xizhou Feng. The undergoing research explores novel systems and software design to improve performance, scalability, energy efficiency, and resilience of compute- and data-intensive applications on parallel and distributed systems. Particularly, it takes an experimental systems approach that combines system prototyping, profiling, modeling, and controlling, and develops theoretical foundations and enabling technologies to scalable computing and analytics.
Dr. Ge is a recipient of the NSF Faculty Early Career Development (CAREER) Award in 2015. Before joining Clemson University she was Assistant Professor at Marquette University.
Dr. Ge co-directs the Scalable Computing and Analytics Lab with Dr. Xizhou Feng. The undergoing research explores novel systems and software design to improve performance, scalability, energy efficiency, and resilience of compute- and data-intensive applications on parallel and distributed systems. Particularly, it takes an experimental systems approach that combines system prototyping, profiling, modeling, and controlling, and develops theoretical foundations and enabling technologies to scalable computing and analytics.
Dr. Ge is a recipient of the NSF Faculty Early Career Development (CAREER) Award in 2015. Before joining Clemson University she was Assistant Professor at Marquette University.
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PROCEEDINGS OF THE 37TH INTERNATIONAL CONFERENCE ON SUPERCOMPUTING, ACM ICS 2023 (2023): 37-49
Proceedings of the ACM International Conference on Supercomputing (2021)
2021 IEEE/ACM 11th Workshop on Fault Tolerance for HPC at eXtreme Scale (FTXS)pp.41-50, (2021)
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