Using AI to Build Cloud-Agnostic Infrastructure: A Step Toward True Multi-Cloud Flexibility
Keywords:
AI, multi-cloud, cloud agnostic, infrastructureAbstract
This paper will therefore discuss how Artificial Intelligence (AI) is making management of multi-cloud infrastructure more flexible, secure, and compliant. AI maintains positive solutions about the fact of enhancing the saving of assets, acknowledging the threats, and managing a compliance standard while operating the multi-cloud surroundings. In the following paper, we centre generative AI and explore how AI can build cloud-agnostic structures and enhance better, wiser cloud policies and multi-cloud interface. The study reveals how AI can help promote the efficiency of processes, cut costs, and increase protection to enable organizations to adopt genuinely scalable and effective multi-cloud models.
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Copyright (c) 2024 Nandakumar Ramachandran Pezhery (Author)
This work is licensed under a Creative Commons Attribution-NonCommercial 4.0 International License.