MANAGING SECURITY UPDATES IN ORGANIZATIONS USING HYBRID CLOUD INFRASTRUCTURES

Marius Ioan TODERICI, Aurel Mihail TITU

Abstract


Managing security updates in organizations with hybrid cloud infrastructures is essential forsafeguarding data, ensuring system availability, and maintaining regulatory compliance. Hybrid environments, which integrate on-premises infrastructure with public and private cloud services, present unique challenges in coordinating updates across diverse platforms and technologies. Effective update management involves comprehensive asset inventory, risk-based prioritization, and the use of automated patch management and vulnerability assessment tools. It also requires clear policies for standard and emergency updates, alignment with vendor patch cycles, and robust testing procedures. By adopting a proactive and structured approach, organizations can minimize security risks, reduce downtime, and enhance the overall resilience of their IT environment.

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