Understanding Optimizing Memory Efficiency Of Graph Neural Networks On Edge Computing Platforms

Exploring Optimizing Memory Efficiency Of Graph Neural Networks On Edge Computing Platforms reveals several interesting facts. This paper is published on RTAS 2021. https://arxiv.org/abs/2104.03058

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  • RecSys 2022 by Huiyuan Chen (Visa Research, United States, Visa Research, United States), Xiaoting Li (Visa Research , United ...
  • This paper is published on DAC 2023. https://arxiv.org/abs/2303.10875
  • Graph Neural Networks
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Detailed Analysis of Optimizing Memory Efficiency Of Graph Neural Networks On Edge Computing Platforms

Data Science Director at PayPal Venkatesh Ramanathan discusses how to Here is a regular paper from Beihang University, University of North Carolina at Charlotte, University of Central Florida, and ... Learn more about

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