Adaptive AI Algorithms for Load Forecasting and Balancing in Hybrid Edge-Cloud Architectures
Keywords:
Adaptive AI, load forecasting, load balancing, hybrid architecturesAbstract
The integration of edge and cloud computing has become essential for meeting the demands of modern applications that require high processing power, low latency, and scalable resources. Hybrid edge-cloud architectures offer a promising solution to this problem by combining the strengths of both paradigms. One critical challenge in such systems is the efficient load forecasting and balancing across the edge and cloud layers. Adaptive artificial intelligence (AI) algorithms have emerged as a key enabler for optimizing load distribution in these hybrid systems. This paper explores the use of adaptive AI techniques for load forecasting and balancing in hybrid edge-cloud architectures, focusing on their potential to improve resource allocation, reduce latency, and enhance system performance. Various adaptive AI models, including machine learning and deep learning algorithms, are discussed in the context of their application to load forecasting and balancing. The study also addresses the challenges and benefits of deploying AI-driven load management strategies in hybrid architectures, particularly in real-time scenarios. The paper concludes by highlighting future research directions and the potential of AI to enable more efficient and scalable hybrid edge-cloud systems.
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References
Zhang, X., & Li, Y. (2021). Machine learning techniques for load forecasting in hybrid edge-cloud systems. Journal of Cloud Computing, 9(3), 112-125.
Wang, S., & Zhou, Y. (2020). Load balancing strategies in edge-cloud systems: A survey. Future Generation Computer Systems, 101, 79-91.
Gupta, A., & Kumar, R. (2020). Reinforcement learning for load balancing in hybrid edge-cloud environments. IEEE Transactions on Cloud Computing, 8(6), 1539-1552.
Lee, J., & Park, H. (2021). Load forecasting using deep learning for cloud-edge systems. Journal of Computational Intelligence and Applications, 12(4), 45-58.
Madupati, Bhanuprakash. "Integration of Cloud Computing in Smart Cities: Opportunities, Challenges, and Future Direction Paper." Challenges, and Future Direction Paper (December 06, 2019) (2019).
Gupta, Neha, and Vivek Kapoor. "Hybrid cryptographic technique to secure data in web application." Journal of Discrete Mathematical Sciences and Cryptography 23.1 (2020): 125-135.
Talati, Dhruvitkumar V. "Silicon minds: The rise of AI-powered chips." (2021).
Kalluri, Kartheek. "Migrating Legacy System to Pega Rules Process Commander v7. 1." (2015).
S. Kumari, “Kanban and Agile for AI-Powered Product Management in Cloud-Native Platforms: Improving Workflow Efficiency Through Machine Learning-Driven Decision Support Systems”, Distrib Learn Broad Appl Sci Res, vol. 5, pp. 867–885, Aug. 2019
S. Kumari, “AI-Powered Cloud Security for Agile Transformation: Leveraging Machine Learning for Threat Detection and Automated Incident Response ”, Distrib Learn Broad Appl Sci Res, vol. 6, pp. 467–488, Oct. 2020
Madupati, Bhanuprakash. "Revolution of Cloud Technology in Software Development." Available at SSRN 5146576 (2019).
Gondaliya, Jayraj, et al. "Hybrid security RSA algorithm in application of web service." 2018 1st International Conference on Data Intelligence and Security (ICDIS). IEEE, 2018.
Talati, Dhruvitkumar. "Artificial Intelligence and unintended bias: A call for responsible innovation." (2021).
S. Kumari, “Cloud Transformation and Cybersecurity: Using AI for Securing Data Migration and Optimizing Cloud Operations in Agile Environments”, J. Sci. Tech., vol. 1, no. 1, pp. 791–808, Oct. 2020.
S. Kumari, “AI-Powered Cybersecurity in Agile Workflows: Enhancing DevSecOps in Cloud-Native Environments through Automated Threat Intelligence ”, J. Sci. Tech., vol. 1, no. 1, pp. 809–828, Dec. 2020.