The Pros and Cons of AI for Cybersecurity

AI Business
Aug 4, 2025 16:31
Andrew Hodges
1 views
aibusinessenterpriseapplications

Summary

AI has the potential to greatly enhance cybersecurity by detecting threats more quickly and efficiently, but it also introduces new vulnerabilities that attackers can exploit. This dual nature means that while AI can strengthen defenses, it also requires ongoing vigilance and adaptation within the AI field to address emerging risks.

AI is a double-edged sword that can transform cybersecurity but also risks creating new vulnerabilities

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