2022
DOI: 10.32604/iasc.2022.022499
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Hybrid Deep Learning Framework for Privacy Preservation in Geo-Distributed Data Centre

Abstract: In recent times, a huge amount of data is being created from different sources and the size of the data generated on the Internet has already surpassed two Exabytes. Big Data processing and analysis can be employed in many disciplines which can aid the decision-making process with privacy preservation of users' private data. To store large quantity of data, Geo-Distributed Data Centres (GDDC) are developed. In recent times, several applications comprising data analytics and machine learning have been designed … Show more

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Cited by 7 publications
(1 citation statement)
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“…The research gap here is in developing optimization strategies that can effectively manage heterogeneity in terms of energy consumption, data aggregation, and routing in HWSNs [13].…”
Section:  Optimization For Heterogeneous Wsnsmentioning
confidence: 99%
“…The research gap here is in developing optimization strategies that can effectively manage heterogeneity in terms of energy consumption, data aggregation, and routing in HWSNs [13].…”
Section:  Optimization For Heterogeneous Wsnsmentioning
confidence: 99%