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Is Cybersecurity at risk from Artificial Intelligence and Machine learning?

Artificial Intelligence and Machine Learning Artificial intelligence (AI) is the name given to the imitation of human intelligence by machines created to behave and think like people. The term can also be applied to any machine that exhibits traits of the human intellect, such as the ability to learn and solve problems. Machine learning (ML), […]

Artificial Intelligence and Machine Learning
Artificial intelligence (AI) is the name given to the imitation of human intelligence by machines created to behave and think like people. The term can also be applied to any machine that exhibits traits of the human intellect, such as the ability to learn and solve problems.
Machine learning (ML), a branch of artificial intelligence, is the idea that computer programs can automatically learn from and adapt to new data without human input. Deep learning algorithms enable this autonomous learning by absorbing enormous amounts of unstructured data, such as text, images, and videos.

Is cyber security at risk from Artificial Intelligence and Machine Learning?
Despite Artificial Intelligence’s truly extraordinary capabilities, a significant risk is that attackers could arm it and use it to strengthen and extend their own threats. One of its biggest problems is that cybercriminals will utilize AI to greatly automate cyber-attacks. At the moment, our intruders plan and organize their attacks using human capital. If and when they learn to effectively use AI and machine learning (ML), cyber security and cybercrime will alter, and not for the better. One such significant issue is that while AI and machine learning can be used by developers to balance human resource shortages and lower cyber security costs, hackers might also utilize it for the same purpose. The amount of money and resources required to carry out and manage such threats would decrease dramatically, making cyber security more vulnerable and giving cybercriminals much less money.
Cyber-attacks in new forms could lead to even more advancement in AI. It is also far faster and more powerful than humans at breaking into a machine’s security. AI can be used to mask attacks so effectively that the victim of such an attack will never be aware that their machine or network has been compromised. As a result, the three main effects of AI on the threat environment are an increase in current cyber-attacks, the introduction of new threats, and also a variety in the nature of current threats.

Cyberattack detection via machine learning
The personnel of an organization need to be educated to the point that they can anticipate an impending cyber-attack, and they should be given the authority to stop the attackers from achieving their goals. Machine learning (ML) is a subfield of artificial intelligence that has proven to be extremely useful in the detection of cyber threats based on evaluation as well as the prediction of threats before they exploit vulnerabilities in database networks. The fact that ML is now a crucial component of AI demonstrates this success.
ML enables desktop computers to use equations and adjust them based on the statistics they collect, develop from, and recognize as needing to be changed. This would imply that ML enables the computer to predict attacks and detect any abnormalities with a considerably greater degree of precision than any individual is capable of doing. This is important to note in the context of cyber defence.

CONCLUSION
As technology evolves, invaders upgrade their attack tactics and resources to manipulate individuals and organizations. AI is really beneficial, yet it has drawbacks. AI-ML can track and prevent assaults. Since AI is improving, we will watch how far we can take it to benefit and hurt cyber security and people. Finally, AI saves time and money recruiting and training IT security experts. Technology will reduce the cost of hiring a competent security manager or a small staff to oversee operations.

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