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MadryLab
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cifar10_challenge
A challenge to explore adversarial robustness of neural networks on CIFAR10.
MIT License
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pretrained model link expired
#30
hank08tw
closed
3 years ago
1
Submitting my result to white CIFAR-10 leaderboards
#29
liuye6666
closed
4 years ago
1
lack of Sign function
#28
Sumching
closed
4 years ago
0
The config of training robust model for CIFAR10.
#27
ylsung
closed
4 years ago
1
pytorch definition of the model
#26
kartikgupta-at-anu
closed
4 years ago
1
clean accuracy on adversarially trained cifar10 resnet 18
#25
wahrheit-git
closed
4 years ago
1
Naturally trained network gives 78% test accuracy on pgd attack.
#24
baytasin
closed
4 years ago
1
About the network architecture
#23
dongyp13
closed
4 years ago
1
Making adversarial examples during training
#22
symoon11
closed
4 years ago
1
Overflow when random_restart is false
#21
hanboa
closed
4 years ago
1
Number of trainable parameters
#20
JonathanCMitchell
closed
4 years ago
1
When generating uniform noise in random start, floating point number will cause invalid pixel value.
#19
Line290
closed
4 years ago
1
PGD steps along the sign of the gradient
#18
SohamTamba
closed
5 years ago
1
About the convergence of training.
#17
anonymous530
closed
5 years ago
2
Matching training statistics
#16
JonathanCMitchell
closed
5 years ago
2
Dataset normalization
#15
TimurIbrayev
closed
5 years ago
2
Same accuracy logged twice
#14
JonathanCMitchell
closed
5 years ago
1
Base network questions and implementation.
#13
JonathanCMitchell
closed
5 years ago
3
Googlenet with owndata
#12
rajasekharponakala
closed
5 years ago
1
Image Channels
#11
rajasekharponakala
closed
5 years ago
1
About the accuracy of adversarial examples
#10
lith0613
closed
5 years ago
1
about the loss in the pgd_attack
#9
lith0613
closed
5 years ago
1
White-box result of madry_lab_challenges in examples of cleverhans.
#8
lepangdan
closed
5 years ago
1
config for 20 iteration pgd that gives 47.04% accuracy.
#7
msingh27
closed
5 years ago
1
Questions about recreating paper results
#6
inkawhich
closed
5 years ago
4
How to determine "best" model
#5
inkawhich
closed
5 years ago
4
Image out of valid range for the first iteration of PGD attack
#4
vipinpillai
closed
6 years ago
2
cifar_input.py Function get_next_batch() has a small bug.
#3
Mrxiaoyuer
closed
6 years ago
1
Correct architecture description
#2
wh0
closed
7 years ago
1
pgd_attack: Reconcile C&W loss with @carlini's implementation
#1
wh0
closed
7 years ago
1