FROM CLOUD TO EDGE – THE COMPREHENSIVE IMPACT OF EDGE AI

Volume: 11 | Issue: 01 | Year 2025 | Subscription
International Journal of Broadband Cellular Communication
Received Date: 03/04/2025
Acceptance Date: 03/07/2025
Published On: 2025-03-15
First Page:
Last Page:

Journal Menu


By: Mohit Sahu, Rachit Gour, Suleman Sidduqui, Rashmi Singh, Sourabh Chidar, Ajay Sahu, and Angad Singh Dixit.

1- Student, Department of Information Technology, Bansal Institute of Science and Technology Bhopal, Madhya Pradesh, India
2- Student , Department of Information Technology, Bansal Institute of Science and Technology Bhopal, Madhya Pradesh, India
3- Student , Department of Information Technology, Bansal Institite of Science and Technology Bhopal, Madhya Pradesh, India
4- Professor ,Department of Information Technology, Bansal Institute of Science and Technology Bhopal, Madhya Pradesh, India
5-Student , Department of Information Technology, Bansal Institute of Science and Technology Bhopal, Madhya Pradesh, India
6- Student ,Department of Information Technology, Bansal Institute of Science and Technology Bhopal, Madhya Pradesh, India
7- Professor, Department of Information Technology, Bansal Institute of Science and Technology Bhopal, Madhya Pradesh, India

Abstract

By bridging the divide between localized device intelligence and centralized cloud computing, edge artificial intelligence can transform existing businesses and social paradigms. Extreme real-time data processing, enhanced privacy, and decreased latency are among the capabilities. To comprehend how Edge AI interacts with hybrid systems that result in full integration with cloud computing, this paper thoroughly examines the whole architecture and important technologies utilized in this technology.
Autonomous driving, smart cities, healthcare diagnostics, and the next-generation IoT ecosystems might all be transformed by edge AI. Factors including limited processing capacity, energy, and modelling precision hinder its widespread implementation. These novel strategies were tried in this study, and the results showed a considerable improvement in performance. The findings demonstrated that artificial intelligence (AI) from Edge has the potential to transform a wide range of sectors, including healthcare and self-driving automobiles. The research’s objective is to provide stakeholders with a comprehensive grasp of Edge AI’s potential so they can capitalize on its revolutionary potential for long-term innovation.
To create a smarter, more interrelated society, the paper views edge intelligence as a key component of the latest industrial revolution, encouraging scientists, decision-makers, and innovators to embrace and push the boundaries of edge intelligence.

Keywords: Edge AI, Artificial Intelligence, Machine Learning, IoT, Edge Computing, Data Protection, Model Optimization, Fog computing, Cloud computing, Energy Efficiency, Autonomous Systems, Smart Healthcare

Loading

Citation:

How to cite this article: Mohit Sahu, Rachit Gour, Suleman Sidduqui, Rashmi Singh, Sourabh Chidar, Ajay Sahu, and Angad Singh Dixit FROM CLOUD TO EDGE – THE COMPREHENSIVE IMPACT OF EDGE AI. International Journal of Broadband Cellular Communication. 2025; 11(01): -p.

How to cite this URL: Mohit Sahu, Rachit Gour, Suleman Sidduqui, Rashmi Singh, Sourabh Chidar, Ajay Sahu, and Angad Singh Dixit, FROM CLOUD TO EDGE – THE COMPREHENSIVE IMPACT OF EDGE AI. International Journal of Broadband Cellular Communication. 2025; 11(01): -p. Available from:https://journalspub.com/publication/ijbcc/article=16213

Refrences:

  1. Satyanarayanan M, Bahl P, Caceres R, Davies N. The case for vm-based cloudlets in mobile computing. IEEE pervasive Computing. 2009 Oct 6;8(4):14-23.
  2. Zhang L, Liu N, Ma X, Jiang L. The transcriptional control machinery as well as the cell wall integrity and its regulation are involved in the detoxification of the organic solvent dimethyl sulfoxide in Saccharomyces cerevisiae. FEMS yeast research. 2013 Mar 1;13(2):200-18.
  3. Han G, Que W, Jia G, Shu L. An efficient virtual machine consolidation scheme for multimedia cloud computing. Sensors. 2016 Feb 18;16(2):246.
  4. Li Q, Zhang H, Hong X. Knowledge structure of technology licensing based on co-keywords network: A review and future directions. International review of economics & finance. 2020 Mar 1;66:154-65.
  5. Xu G, Zhang W, Wan X, Wang B. Cloud occurrence frequency and cloud liquid water path for non-precipitating clouds using ground-based measurements over central China. Journal of Atmospheric and Solar-Terrestrial Physics. 2021 Apr 1;215:105575.
  6. Wang J, Zhang L, Huang Y, Zhao J. Safety of autonomous vehicles. Journal of advanced transportation. 2020;2020(1):8867757.
  7. Lee S, Vigoureux TF, Hyer K, Small BJ. Prevalent insomnia concerns and perceived need for sleep intervention among direct-care workers in long-term care. Journal of Applied Gerontology. 2022 Jan;41(1):274-84.
  8. Goodfellow I, Pouget-Abadie J, Mirza M, Xu B, Warde-Farley D, Ozair S, Courville A, Bengio Y. Generative adversarial networks. Communications of the ACM. 2020 Oct 22;63(11):139-44.
  9. Singh R, Ansari AA. AI-Enabled Internet of Medical Things in Healthcare. Heterogenous Computational Intelligence in Internet of Things. 2023 Oct 26:89-105.
  10. McMahan B, Moore E, Ramage D, Hampson S, y Arcas BA. Communication-efficient learning of deep networks from decentralized data. InArtificial intelligence and statistics 2017 Apr 10 (pp. 1273-1282). PMLR.
  11. Lim WY, Luong NC, Hoang DT, Jiao Y, Liang YC, Yang Q, Niyato D, Miao C. Federated learning in mobile edge networks: A comprehensive survey. IEEE communications surveys & tutorials. 2020 Apr 8;22(3):2031-63.
  12. Sze V, Chen YH, Yang TJ, Emer JS. Efficient processing of deep neural networks: A tutorial and survey. Proceedings of the IEEE. 2017 Nov 20;105(12):2295-329.
  13. Singh R, Mannepalli PK. Cloud malicious threat detection by features from intelligent water drop set and EBPN. International Journal of Advanced Research Engineering and Technology (IJARET). 2020 Dec;11(12).
  14. Khan H, Ali Z, Abbas ZH, Abbas G. Optimizing Energy and Time Efficiency through Deep Learning-Based Parallel Offloading in Mobile Edge Computing. In2024 Global Conference on Wireless and Optical Technologies (GCWOT) 2024 Sep 25 (pp. 1-6). IEEE.
  15. Khan LU, Yaqoob I, Tran NH, Kazmi SA, Dang TN, Hong CS. Edge-computing-enabled smart cities: A comprehensive survey. IEEE Internet of Things journal. 2020 Apr 10;7(10):10200-32.
  16. Asif-Ur-Rahman M, Afsana F, Mahmud M, Kaiser MS, Ahmed MR, Kaiwartya O, James-Taylor A. Toward a heterogeneous mist, fog, and cloud-based framework for the internet of healthcare things. IEEE Internet of Things Journal. 2018 Oct 14;6(3):4049-62.
  17. George AH, Shahul A, George AS, Baskar T, Hameed AS. A Survey study on big data analytics to predict diabetes diseases using supervised classification methods. Partners Universal International Innovation Journal. 2023 Feb 18;1(1):1-8.
  18. George AS, Sagayarajan S. Exploring the Potential and Limitations of 5G Technology: A Unique Perspective. Partners Universal International Innovation Journal. 2023 Apr 20;1(2):160-74.
  19. Graff P, Marchal X, Cholez T, Tuffin S, Mathieu B, Festor O. An analysis of cloud gaming platforms behavior under different network constraints. In2021 17th International Conference on Network and Service Management (CNSM) 2021 Oct 25 (pp. 551-557). IEEE.
  20. George AS, George AH, Baskar T. Edge computing and the future of cloud computing: A survey of industry perspectives and predictions. Partners Universal International Research Journal. 2023 Jun 20;2(2):19-44.
  21. Foote, Keith D. “The Future of Edge Computing – DATAVERSITY.” DATAVERSITY, 21 Dec. 2022, www.dataversity.net/the-future-of-edge-computing.
  22. Zhou Z, Chen X, Li E, Zeng L, Luo K, Zhang J. Edge intelligence: Paving the last mile of artificial intelligence with edge computing. Proceedings of the IEEE. 2019 Jun 12;107(8):1738-62.
  23. Sunyaev A, Sunyaev A. Cloud computing. Internet computing: Principles of distributed systems and emerging internet-based technologies. 2020:195-236.
  24. Duncan B, Bratterud A, Happe A. Enhancing cloud security and privacy: Time for a new approach?. In2016 Sixth International Conference on Innovative Computing Technology (INTECH) 2016 Aug 24 (pp. 110-115). IEEE.
  25. Shi W, Cao J, Zhang Q, Li Y, Xu L. Edge computing: Vision and challenges. IEEE internet of things journal. 2016 Jun 9;3(5):637-46.
  26. George AS, George AH. Revolutionizing Manufacturing: Exploring the Promises and Challenges of Industry 5.0. Partners Universal International Innovation Journal. 2023 Apr 20;1(2):22-38.
  27. Liu D, Yan Z, Ding W, Atiquzzaman M. A survey on secure data analytics in edge computing. IEEE Internet of Things Journal. 2019 Feb 5;6(3):4946-67.
  28. Dr.A. Shaji George, Dr.T. Baskar, A.S. Hovan George, Digvijay Pandey, & A.S.Gabrio Martin. (2022). A Review of 6G: Towards The Future. Partners Universal International Research Journal (PUIRJ) ISSN: 2583-5602, 01(04), 1–12.https://doi.org/10.5281/zenodo.7419694