Task and data management optimization method based on graph neural network

The invention relates to the technical field of cloud computing, in particular to a task and data management optimization method based on a graph neural network, and the method comprises the steps: fusing node information of different weights based on a hypergraph, obtaining output node features thr...

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Hauptverfasser: DAN PENGGAO, CHEN WENPENG, CHEN YAN, JING CHAO, QIU BIN, LI XINLIANG
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creator DAN PENGGAO
CHEN WENPENG
CHEN YAN
JING CHAO
QIU BIN
LI XINLIANG
description The invention relates to the technical field of cloud computing, in particular to a task and data management optimization method based on a graph neural network, and the method comprises the steps: fusing node information of different weights based on a hypergraph, obtaining output node features through the aggregation of related hyperedge features, and obtaining a node classification result; and obtaining a data center where the task is executed. And then obtaining a transmission path and a transmission sequence of data files required by the data task according to a principle that the transmission time is shortest and the number of required files is maximum. Compared with a traditional centralized single data center task processing method, the method has the advantages that complex task requirements submitted by a user can be met, waiting time during task processing is shortened, and the workload of the data center can be reduced; compared with a common distributed data center, under different task numbers a
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subjects CALCULATING
COMPUTER SYSTEMS BASED ON SPECIFIC COMPUTATIONAL MODELS
COMPUTING
COUNTING
ELECTRIC DIGITAL DATA PROCESSING
PHYSICS
title Task and data management optimization method based on graph neural network
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