AI Transformations Data Networking and Cybersecurity through Advanced Innovative

Authors

  • Israa Zamil Chyad Alrikabi University of Sumer

DOI:

https://doi.org/10.47134/jtsi.v3i1.5347

Keywords:

Artificial Intelligence, Cybersecurity, Data Networking, Predictive analytics, Anomaly Detection

Abstract

The swift pace of the market transformation of the infrastructure of the data networking has introduced the necessity of having a more sophisticated security system to fight a high sophisticated cyber threat. The digital sphere is being developed, networks are working more than ever, and the Internet of Things (IoT), 5 G networks, and cloud technologies are ever-expanding. Though this expansion amount to more connectivity, it is a massive challenge on the security front with the consideration of sharing sensitive information in regard to the changing cyber-attacks. At the same time, the artificial intelligence (AI) has also been presented as one of the technologies that can revolutionize the data networking and cybersecurity. The possibility to process a large amount of data, predict kernels and make decisions in real time, AI is a valuable asset in the direction of solving the arising issues of network security in the new environment. Whether it is the possibility to be more efficient when it comes to utilizing the bandwidth of the network with intelligent resource distribution, or increase the level of information protection against cyber-attacks, AI is changing the way businesses make their web space safer. Within the framework of this research paper, the empirical research of AI in data networking and cybersecurity has been introduced on the basis of information gathered by the network operators, cybersecurity agencies, and government organizations. The paper will focus on some of the core areas, that is, predictive detection of threats, anomaly detection, and incident response, which is automated. The article relying on statistical modeling, visual data analysis, and case study analysis proves the point that AI proves beneficial in terms of identifying the cyber threats and enhancing the network performance, and is more efficient in coping with the challenges than the classical security solutions. Such results indicate that the efficiency of the operations and threat reduction was raised considerably, which confirms the possibility of the application of AI-based solutions. Such a shift toward proactive and reactive AI-based security is going to be the majority as more complicated network topologies and more advanced cybers threat activities are refined. Since the aim of the paper is to respond to the existing issues and elucidate the way the data networking and cybersecurity will evolve in the future, the paper may be used to display useful information about the way AI would transform the data networking and cybersecurity.

References

Ahmad, A., Tariq, A., Hussain, H. K., & Gill, A. Y. (2023). Revolutionizing healthcare: How deep learning is poised to change the landscape of medical diagnosis and treatment. Journal of Computer Networks, Architecture and High Performance Computing, 5(2), 458–471. https://doi.org/10.47709/cnahpc.v5i2.2350

Ahmad, A., Tariq, A., Hussain, H. K., & Gill, A. Y. (2023). Equity and artificial intelligence in surgical care: A comprehensive review of current challenges and promising solutions. BULLET: Jurnal Multidisiplin Ilmu, 2(2), 443–455. https://doi.org/10.1001/jamasurg.2020.7208

Arikhad, M., Waqar, M., Khan, A. H., & Sultana, A. (2024). Transforming cardiovascular and neurological care with AI: A paradigm shift in medicine. Revista de Inteligencia Artificial en Medicina, 15(1), 1264–1277. https://doi.org/10.1016/j.glmedi.2024.100109

Arikhad, M., Waqar, M., Khan, A. H., & Sultana, A. (2024). The role of artificial intelligence in advancing heart and brain disease management. Revista Española de Documentación Científica, 19(2), 137–148.

Asif, M., Raza, Z. H., & Mahmood, T. (2023). Harnessing artificial intelligence for sustainable forestry: Innovations in monitoring, management, and conservation. Revista Española de Documentación Científica, 17(2), 350–373. https://doi.org/10.4018/979-8-3693-6336-2.ch014

Asif, M., Raza, Z. H., & Mahmood, T. (2024). Smart forestry: The role of AI and bioengineering in revolutionizing timber production and biodiversity protection. Revista de Inteligencia Artificial en Medicina, 15(1), 1176–1202. https://doi.org/10.24294/nrcr.v6i2.3825

Bhatia, A. K., Ju, J., Ziyang, Z., Ahmed, N., Rohra, A., & Waqar, M. (2021). Robust adaptive preview control design for autonomous carrier landing of F/A-18 aircraft. Aircraft Engineering and Aerospace Technology, 93(4), 642–650. https://doi.org/10.1108/AEAT-11-2020-0244

Bhatti, I., Rafi, H., & Rasool, S. (2024). Use of ICT technologies for the assistance of disabled migrants in USA. Revista Española de Documentación Científica, 18(1), 66–99.

Bhatti, I., Waqar, M., & Khan, A. H. (2024). Artificial intelligence in automated healthcare diagnostics: Transforming patient care. Revista Española de Documentación Científica, 19(2), 83–103.

Chowdhury, A., Sultana, A. A., Rafi, A., & Tariq, M. (2024). AI-driven predictive analytics in orthopedic surgery outcomes. Revista Española de Documentación Científica, 19(2), 104–124.

Farhan, M., Rafi, H., & Rafiq, H. (2018). Behavioral evidence of neuropsychopharmacological effect of imipramine in an animal model of unpredictable stress-induced depression. International Journal of Biology and Biotechnology, 15(2), 213–221.

Farhan, M., Rafiq, H., & Rafi, H. (2015). Prevalence of depression in animal model of high fat diet induced obesity. Journal of Pharmacy and Nutrition Sciences, 5(3), 208–215. https://doi.org/10.6000/1927-5951.2015.05.03.6

Farhan, M., Rafiq, H., Rafi, H., Rehman, S., & Arshad, M. (2022). Quercetin impact against psychological disturbances induced by fat rich diet. Pakistan Journal of Pharmaceutical Sciences, 35(5). https://doi.org/10.36721/PJPS.2022.35.5.REG.1295-1300.1

Ghulam, T., Rafi, H., Khan, A., Gul, K., & Yusuf, M. Z. (2021). Impact of SARS-CoV-2 treatment on development of sensorineural hearing loss. Proceedings of the Pakistan Academy of Sciences: B. Life and Environmental Sciences, 58(Suppl.), 45–54.

Gill, A. Y., Saeed, A., Rasool, S., Husnain, A., & Hussain, H. K. (2023). Revolutionizing healthcare: How machine learning is transforming patient diagnoses. Journal of World Science, 2(10), 1638–1652. https://doi.org/10.58344/jws.v2i10.449

Hussain, H. K., Tariq, A., & Gill, A. Y. (2023). Role of AI in cardiovascular health care: A brief overview. Journal of World Science, 2(4), 794–802. https://doi.org/10.58344/jws.v2i4.284

Khan, A. H., Zainab, H., Khan, R., & Hussain, H. K. (2024). Deep learning in the diagnosis and management of arrhythmias. Journal of Social Research, 4(1). https://doi.org/10.55324/josr.v4i1.2362

Lodhi, S. K., Hussain, A., & Gill, A. Y. (2024). Renewable energy technologies: Present patterns and upcoming paths in ecological power production. Global Journal of Universal Studies, 1(1), 108–131. https://doi.org/10.70445/gjus.1.1.10

Mahmood, T., Asif, M., & Raza, Z. H. (2023). Bioengineering applications in forestry: Enhancing growth, disease resistance, and climate resilience. Revista Española de Documentación Científica, 17(1), 62–88. https://doi.org/10.1080/21655979.2021.1997244

Rafi, H., Farhan, M., & Rafiq, H. (2021). Antagonization of monoamine reuptake transporters by agmatine improves anxiolytic and locomotive behaviors. Beni-Suef University Journal of Basic and Applied Sciences, 10, 1–14. https://doi.org/10.1186/s43088-021-00118-7

Rafi, H., Rafiq, H., & Farhan, M. (2024). Pharmacological profile of agmatine: An in-depth overview. Neuropeptides, 102429. https://doi.org/10.1016/j.npep.2024.102429

Rafiq, H., Farhan, M., Rafi, H., Rehman, S., Arshad, M., & Shakeel, S. (2022). Inhibition of drug-induced Parkinsonism by chronic supplementation of quercetin in haloperidol-treated Wistar rats. Pakistan Journal of Pharmaceutical Sciences, 35, 1655–1662.

Tariq, M., Hayat, Y., Hussain, A., Tariq, A., & Rasool, S. (2024). Principles and perspectives in medical diagnostic systems employing artificial intelligence (AI) algorithms. International Research Journal of Economics and Management Studies, 3(1). https://doi.org/10.56472/25835238/IRJEMS-V3I1P144

Waqar, M., Bhatti, I., & Khan, A. H. (2024). AI-powered automation: Revolutionizing industrial processes and enhancing operational efficiency. Revista de Inteligencia Artificial en Medicina, 15(1), 1151–1175.

Downloads

Published

2025-12-24

How to Cite

Alrikabi, I. (2025). AI Transformations Data Networking and Cybersecurity through Advanced Innovative. Journal of Technology and System Information, 3(1), 9. https://doi.org/10.47134/jtsi.v3i1.5347

Issue

Section

Articles

Similar Articles

<< < 1 2 3 4 5 

You may also start an advanced similarity search for this article.