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A BRIEF SURVEY ON ARTIFICIAL INTELLIGENCE IN CYBER SECURITY

Priyadharsini, A.

Assistant Professor, Department of Computer Applications, Nallamuthu Gounder Mahalingam College, Pollachi, Tamil Nadu, India.

 

Abstract


In the technical world, the usage of IOT have become a necessary part of life, which helps cyberattacks to enter the world easily. To safeguard cyber security approach design becomes the need. Cyber security, is an application for technologies, that protects devices, programs, process, networks, and data from cyberattacks through a process and control. To protect against Hackers, unauthorised exploitation of systems, network, and technologies Cyber Security plays a major role aiming to reduce the risk of cyberattacks. Methods used to reduce cyberattacks traditionally are not sufficient to prevent data breaches. Cybercriminals are trained to use techniques that hack, attack and breach data. Artificial intelligence has shown the promising results in cyber security analysing the data through its decision making. Artificial intelligence (AI) is a powerful technology that helps cybersecurity teams automate repetitive tasks, accelerate threat detection and response, and improve the accuracy of their actions to strengthen the security posture against various security issues, and cyberattacks. This paper represents AI technique which is being used in various applications in the battle against the Cyberattack.

Keywords


cyber security, artificial intelligence, detection protection response recovery identify learning cyberattacks.

 

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To cite this article


Priyadharsini, A. (2024). A Brief Survey on Artificial Intelligence in Cyber Security. Sparkling International Journal of Multidisciplinary Research Studies, 7(2), 39-50.

 

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