Why You Should Use Artificial Intelligence in Cybersecurity

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Cybersecurity is one of the many uses of Artificial Intelligence. Going by a recent report by Norton, the global cost to recover from a typical data breach is USD 4.24 million. Studies also conclude that it takes a whole 287 days to identify and contain a data breach and it also takes about 200 days to recover it. As such, it makes sense for companies to use AI to avoid both financial losses and waste of time. As per the World Economic Forum’s Global Cybersecurity Outlook 2022 research, artificial intelligence would affect cyber transformation within the next two years, with 48% of CEOs believing so. What is more, it’s believed that transactional detection of fraud is among major areas where AI and machine learning may help enhance cybersecurity. That said, this article highlights how AI can help in cybersecurity.

AI offers insights that enable companies to understand threats easily, thereby reducing response times and making firms compliant with security best practices. On the other hand, machine learning (ML) helps in recognizing patterns in data to enable machines to learn from experience. So, by leveraging cyber threat intelligence, machine learning, and AI, companies can respond to issues with speed and confidence.

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Let us now examine how AI can help in cybersecurity.

Automated Detection

Automated security measures show the increasing role of AI in cybersecurity. Together with machine learning, AI can help companies to identify threats and find links between potential risks fast. This form of detection eliminates human errors from the process.

Thanks to ML, AI can adapt and learn from experience and patterns instead of cause and effect. In fact, today ML has made it possible for machines to teach themselves. It means that they can create models for pattern recognition instead of waiting for humans to develop them. AI is trained to process large amounts of data, for example, new stories and blogs, meaning that it has a better comprehension of cyber threats. After that, AI in cybersecurity taps into reasoning to determine various risks, for example, suspicious addresses, strange files, and so forth, before initiating suitable remedies.

Ultimately, artificial intelligence can assist under resourced security personnel. Among the most pressing issues in cybersecurity is a worldwide lack of appropriately educated and certified professionals, which was projected to be 2.72 million. As shown in a recent survey, this affected 57 % of businesses in 2021. When cyber dangers become more prevalent, these understaffed teams frequently suffer from stress, affecting their capacity to react and respond to attacks.

Quickly Identifying Errors

AI is significantly improving the duration it takes to identify suspicious issues on websites. For instance, in 2016, Google blacklisted about 20,000 sites for having malware and another 50,000 for phishing scams every week. Taking these figures into account, you can easily determine that this means about 280,000 sites are affected every month. Now, while humans are fast, they are not quick enough to scrutinize millions of sites each month and identify 280,000 suspicious websites.

Likewise, developers are leveraging AI to identify people with bad intentions on sites. This process is referred to as anomaly detection and has several uses with cybersecurity topping the list. Depending on your Artificial Intelligence techniques, the program can analyze tons of visitors and categorize them based on their threat level and behavior in a few seconds.

As per Boston Consulting Group, training supervised artificial intelligence algorithms with data streams helps them discover possible abnormalities before the process is carried out. Furthermore, artificial intelligence and machine learning algorithms are now being designed to detect login activities and detect account hijacking, which is one of the fastest-growing areas of online retail fraud today.

Secure Authentication

If you own a site that needs visitors to log in, feature forms that require input or want to provide another layer of security on the site’s backend, AI can better the authentication process to a safe level.

The first way secure authentication can be achieved is physical identification, where AI uses different factors to identify a person. For instance, a smartphone can use fingerprint scanners and facial recognition to allow you to log in. The process behind this entails the program analyzing main data points about your face and fingers to discern if the login is authentic.

Apart from that, AI can look into other factors to determine if a specific user is authorized to log in to a technology device. The tech scrutinizes the way you enter keys, your typing speed, and your error rate while spelling, scrolling, and swiping habits, recognizing humans and distinguishing them from bots and automated assaults.

Quicker Response Times

AI can process massive amounts of unstructured information to provide insights with greater efficiency. What’s more, with ML, AI can learn patterns much more quickly, thus accelerating response time, making it faster and easier to stop threats before they cause problems. Case in point, IBM is now using cognitive technologies and AI in cybersecurity to enable companies to identify threats fast and respond accordingly. Intelligence cybersecurity solutions can give the most up-to-date understanding of international and sector threats, allowing you to make more informed prioritizing decisions based on what is most likely to be used to attack your solutions, rather than what could be used to attack the networks. As a result, you may set and modify policies and procedures to boost your cybersecurity using predictive suggestions from AI monitoring.

Mistake-Free Cybersecurity

Mistake-free cybersecurity is an excellent application of artificial intelligence in security. Unlike humans, AI cannot tire or get bored when performing repetitive tasks. As such, the risk of human error reduces significantly. Nonetheless, humans need to work with AI for better results. For one, humans offer the common sense that machines lack. Apart from that, they are better decision-makers in nonstandard situations.

​​AI Can Cope With a Huge Amount of Data

On a company’s network, there is a lot of activity. A typical mid-sized business has a lot of traffic. This implies a large volume of data is exchanged between customers and the company on a regular basis. Sensitive information must be safeguarded from harmful individuals and programs. However, cybersecurity specialists are unable to inspect every communication for future dangers. Artificial Intelligence seems to be the greatest approach for detecting dangers that are disguised as typical behavior. Because of its robotic capacity, it can sift over large amounts of data and traffic. AI-based technologies, including a home proxy, may assist you in data transmission. It can also detect and identify any risks that may be lurking amid the chaos.

Final Word

These are some of the examples of AI in cybersecurity. And as developers continue to provide more data points to existing programs as they create new forms of AI, it is safe to contend that AI will help fight cybercrime even more effectively in the future. Keep visiting our page to find out how will AI affect cybersecurity.

Contact our team of security professionals today!

The publication was updated on February 21, 2022.

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inVerita is a software consulting company focusing on outsourcing and staff augmentation services based in Ukraine. https://inveritasoft.com