Improving application support in 6G networks with CAPOM: Confluence-aided process organization method

Systems requiring terahertz transmission and high sampling capabilities can be supported by sixth-generation (6G) technology with minimal latency and excellent service throughput. Regardless of the distributions of data and services, High-Performance Computing (HPC) enhances speed and provides diver...

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Bibliographic Details
Main Authors: Jamil Alsayaydeh, Jamil Abedalrahim, Al Gburi, Ahmed Jamal Abdullah, Irianto, Herawan, Safarudin Gazali
Format: Article
Language:English
Published: Institute Of Electrical And Electronics Engineers Inc. 2023
Online Access:http://eprints.utem.edu.my/id/eprint/27112/2/0270213092023353.PDF
http://eprints.utem.edu.my/id/eprint/27112/
https://ieeexplore.ieee.org/document/10235956
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Summary:Systems requiring terahertz transmission and high sampling capabilities can be supported by sixth-generation (6G) technology with minimal latency and excellent service throughput. Regardless of the distributions of data and services, High-Performance Computing (HPC) enhances speed and provides diversified applications and functionality. The Confluence-Aided Process Organization Method (CAPOM) is suggested in this article to take advantage of process allocations while using an HPC paradigm. The process allocations and completions are scheduled based on prior and current system conditions to minimize waiting time based on the 6G qualities. This implies that state requirements for process allocation, distribution, and completion are carried out with the assistance of federated learning. The initial state allocations are based on the user/application request; in other allocations, the application's request for completion time and capacity for processing are considered. Offloading and shared processing are therefore combined to maximize resource deliveries. The federated learning states are checked post-completion times to mitigate the waiting duration of dense service demands. Indicators such as distribution ratios, latency, wait time, and processing rate are considered for the effectiveness of the proofs. The suggested CAPOM achieves an 8.67% higher processing rate, 9.09% reduced latency, 8.76% less wait time, and a 6.73% higher distribution ratio for the various capacities.