Discover the impact of AI on cybersecurity roles, how AI can automate threat detection, and learn more about the implications of AI within the field of cybersecurity.
Artificial intelligence (AI) holds great potential within cybersecurity. However, like any technology, the emerging risks associated with AI must be carefully analyzed to minimize security threats. While AI has a variety of potential risks, it’s important to also understand its potential benefits and how cybersecurity professionals can work together with AI to implement more efficient and safer cybersecurity. Expand your knowledge on how AI and cybersecurity professionals can collaborate, and learn more about the potential advantages and disadvantages of utilizing AI in cybersecurity.
The threat of job displacement for cybersecurity professionals is currently an improbable concern. While AI has reshaped the cybersecurity industry, it still has constraints based on the data it’s trained on. Humans are a necessary component when analyzing data because AI does not possess the critical thinking and contextual understanding that humans do.
Organizations will not completely remove the human element from cybersecurity strategies because AI still lacks contextual awareness and is susceptible to bias. Although AI is becoming an essential element of cybersecurity, it still needs cybersecurity professionals to guide its learning paths, confirm data analysis, and protect software, data sets, and networks. Although AI can help support a robust cybersecurity strategy, it cannot replace cybersecurity professionals.
AI-powered automated threat detection enables cybersecurity professionals to accelerate threat identification, streamline response times, and efficiently safeguard user identities and data sets.
AI can automate the detection and response to cyber threats by identifying shadow data, monitoring abnormal data access patterns, and alerting professionals about potential breaches or unauthorized access to confidential information. Since AI operates in real-time, this process will save cybersecurity professionals time and resources, enabling them to identify and resolve security issues quickly.
Generative AI (GenAI) and machine learning (ML) tools offer new and more efficient ways to implement cybersecurity strategies.
AI has proven to benefit a multitude of organizations when integrated into their cybersecurity strategies. A couple of examples of AI’s success in cybersecurity solutions include the following:
According to an article posted by the University of West Florida, a top 10 US bank incorporated AI into their cybersecurity efforts after learning that they were spending too much time investigating illegitimate alerts. Analysts spent an immense amount of time investigating false positives since only three out of 900 of the alerts were legitimate. After implementing AI, the analysts’ workload was greatly reduced since the AI was able to immediately determine if the alert was valid or not [1].
Doosan Digital Innovation (DDI), a manufacturing company, implemented IBM’s AI-powered security protection to ensure that the company would be safe from hackers and scammers. “It takes only one successful hacking attempt to compromise your company. Or even just one non-malicious action by an employee, like clicking on a link they shouldn’t have. And once that back door is open and they’re inside, most companies don’t know they’ve been compromised for over a month. That’s a lot of time to cause some damage. With IBM, we now have an accurate 24-hour view of the world in real-time,” states Robert Oh, Chief Operating Officer (COO) at DDI [2].
AI is transforming cybersecurity professions as it becomes increasingly integrated into the field. This shift will redefine the responsibilities of cybersecurity professionals, creating new roles and skills required to assimilate into the industry.
Cybersecurity experts' points of interest will shift as AI takes over the cybersecurity industry. Skills and necessary responsibilities of cybersecurity professionals in an AI-driven landscape include:
Monitoring the operation of AI
Applying ethical standards
Implementing policies and creative thinking
Developing strategies
Applying negotiation tactics
Addressing the motive of attackers
While AI will continue to quickly and efficiently address cybersecurity threats, these threats will become more prevalent as AI evolves. Cybersecurity experts must stay educated about the potential threats posed by AI while also leveraging it to their advantage and preparing for the future of the profession.
As more companies embrace AI, the risk of potential data breaches and exploitation by hackers increases. Examine some potential concerns to gain a deeper understanding.
Bias and discrimination are important to consider as potential limitations when utilizing AI in cybersecurity. If you train an AI model on historical data, the model may inadvertently perpetuate biases and discriminate against certain groups based on their race, gender, or other attributes. This could result in the users’ lack of trust in AI models.
Data poisoning: Hackers can “poison” AI training data, enabling them to influence the AI's decisions. If scammers train an AI model on deceptive information, it could potentially disseminate false information to its users.
Data leakage: If a hacker transfers an AI model to a third party, they could reverse engineer the model to extract confidential data from it. AI hackers could trick the AI into exposing sensitive data, including that in medical records or financial information.
Deepfakes: Hackers are utilizing AI technologies to impersonate people. In short, AI models can replicate a person's voice and face. Cyberattackers are exploiting these capabilities to target large corporations, often for financial gain.
Cybersecurity experts rely on AI in fraud detection, risk management, data loss protection, antivirus protection, and various other security sectors.
As AI evolves, it is increasingly used for elements such as:
Detecting attacks with more accuracy than humans
Identifying and reporting suspicious activity in phishing
Simulating social engineering attacks to train security teams
Quickly analyzing massive amounts of data
Implementing multi-factor authentication and encryption
Adopting blockchain technologies
Utilizing AI within cybersecurity will provide organizations with the ability to predict and prevent future attacks. As AI evolves, hackers will become more prevalent, but AI will also become better at implementing solutions to prevent attacks. New technologies and strategies will emerge to help organizations protect their data from cyberattacks, so it is important for professionals to stay informed about new technologies as they come to fruition.
AI and cybersecurity professionals collaborate well to prevent cyber attacks, and AI advancements will continue to benefit and hinder the industry in a variety of ways as it evolves. Learn more about cybersecurity and generative AI implementations with IBM’s IBM Generative AI for Cybersecurity Professionals Specialization, or expand your understanding of cybersecurity practices with Google’s Google Cybersecurity Professional Certificate.
The University of West Florida. “Will Cybersecurity be Replaced by AI? https://onlinedegrees.uwf.edu/articles/cybersecurity-and-ai/.” Accessed February 4, 2025.
IBM. “New Cyberthreats Demand New Approaches, https://www.ibm.com/case-studies/doosan-digital-innovation.” Accessed February 4, 2025.
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