This title appears in the Scientific Report :
2020
Please use the identifier:
http://hdl.handle.net/2128/26419 in citations.
Distributed Deep Learning with High Performance Computing for Large-Scale Remote Sensing Data
Distributed Deep Learning with High Performance Computing for Large-Scale Remote Sensing Data
High Performance Computing (HPC) has recently been attracting more attention in remote sensing applications due to the challenges posed by the increased amount of open data that are acquired daily by Earth Observation programs. The unique parallel computing environments and programming techniques th...
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Personal Name(s): | Cavallaro, Gabriele (Corresponding author) |
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Contributing Institute: |
Jülich Supercomputing Center; JSC |
Imprint: |
2020
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Conference: | IEEE GRSS Webinar (Online event), |
Document Type: |
Talk (non-conference) |
Research Program: |
Data-Intensive Science and Federated Computing |
Link: |
Get full text OpenAccess |
Publikationsportal JuSER |
High Performance Computing (HPC) has recently been attracting more attention in remote sensing applications due to the challenges posed by the increased amount of open data that are acquired daily by Earth Observation programs. The unique parallel computing environments and programming techniques that are integrated in HPC systems are able to solve large-scale problems such as the training of classification algorithms with large amounts of remote sensing data. This webinar will explain how to distribute the training of deep neural networks with parallel implementation techniques on HPC systems that include a large number of Graphics Processing Units. To show that distributed training can drastically reduce the training time and preserve the accuracy performance, the webinar will present recent experimental results performed on the HPC systems at the Jülich Supercomputing Centre. |