How do I implement an alternate adversarial attack (such as predicted gradient descent) in the tutorials cifar_tutorial_tf.py and/or mnist_tutorial_tf.py? Right now, these tutorials demonstrate the FGSM adversarial example. Thank you. Arnold
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Copy paste the tutorial, import a different Attack subclass, and call it in the same places FGSM is called in the tutorial. You'll need to understand how the particular attack you want to use works and pass it appropriate arguments to configure it well.
On Mon, Oct 22, 2018 at 9:53 AM ephi5757 via cleverhans dev <cleverhans-dev@googlegroups.com> wrote:
How do I implement an alternate adversarial attack (such as predicted gradient descent) in the tutorials cifar_tutorial_tf.py and/or mnist_tutorial_tf.py? Right now, these tutorials demonstrate the FGSM adversarial example. Thank you. Arnold--
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