2022
DOI: 10.30630/joiv.6.2.793
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High-Performance Computing on Agriculture: Analysis of Corn Leaf Disease

Abstract: In some cases, image processing relies on a lot of training data to produce good and accurate models. It can be done to get an accurate model by augmenting the data, adjusting the darkness level of the image, and providing interference to the image. However, the more data that is trained, of course, requires high computational costs. One way that can be done is to add acceleration and parallel communication. This study discusses several scenarios of applying CUDA and MPI to train the 14.04 GB corn leaf disease… Show more

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Cited by 3 publications
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“…This research suggests better compression or codec and data transmission methods to increase Livestream's real-time capability further. Ultimately, this research also suggests using hybrid post-processing on the Yolo algorithm to increase processing capabilities [34].…”
Section: Acknowledgmentmentioning
confidence: 98%
“…This research suggests better compression or codec and data transmission methods to increase Livestream's real-time capability further. Ultimately, this research also suggests using hybrid post-processing on the Yolo algorithm to increase processing capabilities [34].…”
Section: Acknowledgmentmentioning
confidence: 98%