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Created page with "{{Presenters temp |CSDMS meeting event title=CSDMS 2025 Webinars |CSDMS meeting event year=2025 |CSDMS meeting presentation type=Webinar |CSDMS meeting webinar date=2025-04-15T10:00:00.000Z |CSDMS meeting webinar registration URL=https://cuboulder.zoom.us/meeting/register/s1CYGXgRSY-AjhAMKW2E4A |CSDMS meeting first name=Jo |CSDMS meeting last name=Martin |CSDMS meeting institute=University of Colorado, Boulder |Country member=United States |CSDMS meeting state=Colorado |..." |
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|CSDMS meeting abstract presentation=Convolutional Neural Networks have driven a revolution in computer vision and "AI" due to their ability to recognize complex spatial patterns. They are also finding more and more use in the geosciences. In this webinar we will go through what a CNN is, how to implement one using the PyTorch library, and some of the ways that we can interpret them to help our science. | |CSDMS meeting abstract presentation=Convolutional Neural Networks have driven a revolution in computer vision and "AI" due to their ability to recognize complex spatial patterns. They are also finding more and more use in the geosciences. In this webinar we will go through what a CNN is, how to implement one using the PyTorch library, and some of the ways that we can interpret them to help our science. | ||
|CSDMS meeting youtube code= | |CSDMS meeting youtube code=-6tit8RhbYc | ||
|CSDMS meeting participants=0 | |CSDMS meeting participants=0 | ||
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Revision as of 10:00, 21 April 2025
CSDMS 2025 Webinars
How to Use Convolutional Neural Networks (CNN) for Spatial Data
Abstract
Convolutional Neural Networks have driven a revolution in computer vision and "AI" due to their ability to recognize complex spatial patterns. They are also finding more and more use in the geosciences. In this webinar we will go through what a CNN is, how to implement one using the PyTorch library, and some of the ways that we can interpret them to help our science.
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