"Using AI-enhanced malware, researchers disrupt algorithms used in antimalware"![Conflict Detection Enabled Conflict Detection Enabled](/sites/all/themes/redux/css/images/icons/conflict_enabled_icon.png)
As many organizations and government foundations are being encouraged to embrace the future of artificial intelligence (AI) in the implementation and processes of cybersecurity, concerns of emerging machine learning-based malware arises. Researchers at Peking University's School of Electronics Engineering and Computer Science have published a research paper, "Generating Adversarial Malware Examples for Black Box Attacks Based on GAN", which discusses the components of "MalGAN", an algorithm used to produce adversarial malware examples and evade black-box machine learning-based detection models. This article discusses some points outlined in the research paper as well as how cybersecurity experts expect AI to benefit cybercriminals.
TechRepublic reports "Using AI-enhanced malware, researchers disrupt algorithms used in antimalware"