Esempio n. 1
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 def test_force_cuda(self):
     mnist_cnn.to("cuda")
     results = maxloss(
         mnist_cnn,
         nn.CrossEntropyLoss(),
         batch_X,
         batch_y_cuda,
         device="cuda",
     )
import seaborn as sns
import torch
from torch import nn

from clustre.attacking import fgsm_perturbs, maxloss_perturbs, pgd_perturbs
from clustre.helpers.datasets import mnist_trainloader
from clustre.models import mnist_cnn, mnist_resnet18
from clustre.models.state_dicts import mnist_cnn_state, mnist_resnet18_state

sns.set()

# %%
mnist_cnn.load_state_dict(mnist_cnn_state)
mnist_resnet18.load_state_dict(mnist_resnet18_state)

mnist_cnn.to("cuda")
mnist_resnet18.to("cuda")

# %%
criterion = nn.CrossEntropyLoss()

# %%
cnn_fgsm = []
for X, y in iter(mnist_trainloader):
    X = X.to("cuda")
    y = y.to("cuda")
    p = fgsm_perturbs(mnist_cnn, criterion, X, y)
    cnn_fgsm.append(p)

# %%
cnn_pgd = []
Esempio n. 3
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 def test_cuda(self):
     mnist_cnn.to("cuda")
     results = maxloss(mnist_cnn, nn.CrossEntropyLoss(), batch_X_cuda,
                       batch_y_cuda)
     self.assertTrue(results.is_cuda)
Esempio n. 4
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 def test_maxloss_range(self):
     mnist_cnn.to("cuda")
     results = maxloss(mnist_cnn, nn.CrossEntropyLoss(), batch_X_cuda,
                       batch_y_cuda)
     self.assertTrue(((results >= -1) & (results <= 1)).all())
Esempio n. 5
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 def test_maxloss_shape(self):
     mnist_cnn.to("cuda")
     results = maxloss(mnist_cnn, nn.CrossEntropyLoss(), batch_X_cuda,
                       batch_y_cuda)
     self.assertTupleEqual(results.shape, batch_X.shape)
Esempio n. 6
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 def test_force_cpu(self):
     mnist_cnn.to("cuda")
     results = pgd(
         mnist_cnn, nn.CrossEntropyLoss(), batch_X, batch_y_cuda, device="cpu"
     )