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from x import task2 | |
@task | |
def my_task(): | |
... | |
def relocate(task, context="."): |
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def cos_loss(input, target): | |
return 1 - F.cosine_similarity(input, target).mean() |
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model = models.resnet34(pretrained=True).cuda() | |
# Freeze the base of the network and only train the new custom layers | |
for param in model.parameters(): | |
param.requires_grad = False | |
p=0.1 | |
model.fc = nn.Sequential(nn.BatchNorm1d(512), | |
nn.Dropout(p), |
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layer = 40 | |
filter = 265 | |
FV = FilterVisualizer(size=56, upscaling_steps=12, upscaling_factor=1.2) | |
FV.visualize(layer, filter, blur=5) |
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class FilterVisualizer(): | |
def __init__(self, size=56, upscaling_steps=12, upscaling_factor=1.2): | |
self.size, self.upscaling_steps, self.upscaling_factor = size, upscaling_steps, upscaling_factor | |
self.model = vgg16(pre=True).cuda().eval() | |
set_trainable(self.model, False) | |
def visualize(self, layer, filter, lr=0.1, opt_steps=20, blur=None): | |
sz = self.size | |
img = np.uint8(np.random.uniform(150, 180, (sz, sz, 3)))/255 # generate random image | |
activations = SaveFeatures(list(self.model.children())[layer]) # register hook |
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class SaveFeatures(): | |
def __init__(self, module): | |
self.hook = module.register_forward_hook(self.hook_fn) | |
def hook_fn(self, module, input, output): | |
self.features = torch.tensor(output,requires_grad=True).cuda() | |
def close(self): | |
self.hook.remove() |
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class YourCustomModel(nn.Module): | |
def __init__(self): | |
super().__init__() | |
# truncated base network, „True“ refers to pretrained | |
self.backbone = nn.Sequential(*list(resnet34(True).children())[:8]) | |
# and your custom layers | |
self.features = nn.Sequential( | |
self.backbone, | |
# custom layers: |