The Security of Artificial Intelligence

AI is becoming increasingly prevalent in various aspects of our lives, including cybersecurity. However, it is important to recognize that AI itself can pose security risks. As vendors often present AI as a black box solution, it is crucial to understand and qualify the associated risks. This webinar aims to address this challenge and provide practical demonstrations of how AI can be subverted.

Key Takeaways:

  • Gain an understanding of potential cybersecurity threats to AI technology
  • Learn the importance of recognizing security risks to prevent undermining AI
  • Explore the concept of AI as a black box solution and discover strategies to mitigate security threats
  • Experience a practical demonstration showcasing how AI can be subverted and learn how to avoid destabilization

Aihub Team

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