Deep learning models have shown very promising results in computer vision and sound recognition. As more and more deep learning based systems get integrated in disparate domains, they will keep affecting the life of people. Autonomous vehicles, medical imaging and banking applications, surveillance cameras and drones, digital assistants, are only a few real applications where deep learning plays a fundamental role. A malfunction in any of these applications will affect the quality of such integrated systems and compromise the security of the individuals who directly or indirectly use them.
In this episode, we explain how machine learning models can be attacked and what we can do to protect intelligent systems from being compromised.
Episode 38: Collective intelligence (Part 1)
Episode 37: Predicting the weather with deep learning
Episode 36: The dangers of machine learning and medicine
Episode 34: Get ready for AI winter
Episode 33: Decentralized Machine Learning and the proof-of-train
Episode 32: I am back. I have been building fitchain
Founder Interview – Francesco Gadaleta of Fitchain
Episode 31: The End of Privacy
Episode 30: Neural networks and genetic evolution: an unfeasible approach
Episode 29: Fail your AI company in 9 steps
Episode 28: Towards Artificial General Intelligence: preliminary talk
Episode 27: Techstars accelerator and the culture of fireflies
Episode 26: Deep Learning and Alzheimer
Episode 25: How to become data scientist [RB]
Episode 24: How to handle imbalanced datasets
Episode 23: Why do ensemble methods work?
Episode 22: Parallelising and distributing Deep Learning
Episode 21: Additional optimisation strategies for deep learning
Episode 20: How to master optimisation in deep learning
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