Artificial intelligence

Scientific journal

ISSN 2710-1673

ONLINE: ISSN 2710-1681

Select your language


Artificial Intelligence in Optimization of Cloud Resources

Artamonov O.1, Balych P.1
1 Lviv National Polytechnic University
oleksandr.o.artamonov@lpnu.ua; pavlo.y.balych@lpnu.ua

Full text (PDF)

UDC: 004.93
Publication Language: English
Stuc. intelekt. 2024; 29(4):50-59

Abstract: Artificial intelligence (AI) is emerging as a transformative force in cloud product optimization, enabling organizations to achieve efficiency, scalability, and cost-effectiveness that were previously unattainable. The complexity of managing cloud resources, including cost, performance, and reliability, has increased dramatically with the widespread adoption of cloud computing. AI techniques, such as machine learning, deep learning, and reinforcement learning, can be leveraged to address these complexities by predicting workload patterns, automating resource allocation, and ensuring optimal performance through proactive monitoring and adjustments. This article provides an in-depth exploration of AI-based methods used for optimizing cloud infrastructure, focusing on real-world scenarios like dynamic resource allocation, pricing prediction, and service reliability. Additionally, we present the challenges of AI adoption in cloud optimization and outline potential directions for future research.

Keywords: artificial intelligence, cloud optimization, machine learning, resource allocation, predictive analysis, cost efficiency

References:

  1. Michael J. Kavis (2019). Architecting the Cloud: Design Decisions for Cloud Computing Service Models (SaaS, PaaS, and IaaS), 3-11. https://www.everand.com/book/203556393/Architecting-the-Cloud-Design-Decisions-for-Cloud-Computing-Service-Models-SaaS-PaaS-and-IaaS
  2. Bernard Marr, Matt Ward (2019). Artificial Intelligence in Practice, 29-37. https://www.perlego.com/book/991892/artificial-intelligence-in-practice-how-50-successful-companies-used-ai-and-machine-learning-to-solve-problems-pdf
  3. Jitendra Kumar, Ashutosh Kumar Singh, Anand Mohan, Rajkumar Buyya. (2022) Machine Learning for Cloud Management, 35-47. https://www.routledge.com/Machine-Learning-for-Cloud-Management/Kumar-Singh-Mohan-Buyya/ p/book/9780367622565?srsltid=AfmBOopavyj7-gmH2vRVPQIbSyu1KMekwqVxq4riMs7sTb5ftkbul-i8
  4. Thomas Erl, Ricardo Puttini, Zaigham Mahmood (2013), Cloud Computing: Concepts, Technology & Architecture, 26-33.
  5. Elias Al Helou (2024), EconomyMiddleEast: Gartner predicts $679 bn public cloud end-user spending in 2024. https://economymiddleeast.com/news/gartner-public-cloud-end-user-spending/
  6. Dan C. Marinescu (2013). Cloud Computing Theory and Practice, 67-77. https://eclass.uoa.gr/modules/document/file.php/D416/CloudComputingTheoryAndPractice.pdf
  7. Mostapha Zbakh, Mohammed Essaaidi, Pierre Manneback, Chunming Rong (2017). Cloud Computing and Big Data: Technologies, Applications and Security, 73-88. https://link.springer.com/book/10.1007/978-3-319-97719-5.

View full text (PDF)