2026, Vol. 7, Issue 1, Part A
Cloud computing for AI: Enabling scalable and efficient AI models
Author(s): Alice Zhang, Samuel Ochieng and Maria Gonzalez
Abstract: Cloud computing has emerged as a crucial enabler for artificial intelligence (AI), providing the necessary infrastructure to handle the computational intensity and data demands of modern AI models. AI algorithms, especially deep learning models, require vast amounts of data and processing power, which cloud platforms efficiently provide through scalable resources. By leveraging cloud computing, AI models can scale dynamically, adapt to varying workloads, and minimize the high upfront costs of physical hardware investments. The ability to access computing power, storage, and AI-specific tools on-demand has revolutionized how organizations approach AI development, enabling faster deployment of machine learning applications in real-world scenarios. This paper explores how cloud computing platforms have become integral to the AI ecosystem, providing the infrastructure for training large-scale models, storing massive datasets, and ensuring efficient deployment. Furthermore, the integration of cloud computing with AI models introduces key advantages, such as flexibility, cost-effectiveness, and scalability, which are paramount for advancing AI technologies. Additionally, the paper discusses the challenges posed by security, data privacy, and resource management in the cloud. Solutions to these challenges, including hybrid cloud models and edge computing, are also examined. In conclusion, cloud computing not only accelerates AI research but also provides the necessary tools for the widespread adoption of AI technologies across various industries, making AI more accessible and efficient than ever before.
DOI: 10.33545/27076571.2026.v7.i1a.237Pages: 19-22 | Views: 67 | Downloads: 20Download Full Article: Click Here
How to cite this article:
Alice Zhang, Samuel Ochieng, Maria Gonzalez.
Cloud computing for AI: Enabling scalable and efficient AI models. Int J Comput Artif Intell 2026;7(1):19-22. DOI:
10.33545/27076571.2026.v7.i1a.237