Foolbox
Foolbox is a comprehensive adversarial library for attacking machine learning models, with a focus on neural networks in computer vision. At the moment of writing FoolBox contains 41 gradient-based and decision-based adversarial attacks, making it the second biggest adversial library after ART . A notable difference with ART is that Foolbox only contains attacks, but no defenses and evaluation metrics.
The library is very user-friendly, with a clear API and documentation.
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