The tutorial on adversarial machine learning discusses the evolution of machine learning applications from the 1960s to the present and emphasizes the emerging security risks associated with modern AI systems. It highlights the differences between traditional stochastic noise and adversarial noise, the challenges posed by adversarial attacks, and the necessity of designing machine learning systems that are aware of these threats. Key takeaways include the importance of understanding adversaries and developing proactive countermeasures to safeguard classifiers.