HYBRID CLOUD IT INFRASTRUCTURE MAINTENANCE USING ARTIFICIAL INTELLIGENCE

Marius Ioan TODERICI, Aurel Mihail TITU, Nicoleta Madalina STAN

Abstract


IT infrastructure maintenance must be carried out in such a way as to have the least possible impact on the processes in the organization. Any infrastructure needs maintenance to update systems, apply security patches or simply to perform scheduled or unscheduled maintenance operations in the event of interventions necessary to ensure the proper functioning of the equipment. Hybrid cloud IT infrastructure has a great advantage in that it is mostly a redundant infrastructure that allows maintenance processes to be carried out with the least possible impact on the processes in the organization. By using virtualization and distributed systems in most situations, it is not necessary to completely stop the systems under maintenance, this is most often done hot with the systems in production, totally transparent to users. Redundant storage systems, redundant network and security infrastructure, systems that use redundant virtual machines allow maintenance to be carried out by allowing the other systems or equipment with the same role in the system to take over the functions of the equipment/system under maintenance. From this point of view, the maintenance of these systems can be automated and optimized so that it is carried out during less busy periods of time to have minimal impact on the organization's business processes.


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References


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