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activations_and_gradients.py
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class ActivationsAndGradients:
""" Class for extracting activations and
registering gradients from targetted intermediate layers """
def __init__(self, model, target_layers, reshape_transform):
self.model = model
self.gradients = []
self.activations = []
self.reshape_transform = reshape_transform
self.handles = []
for target_layer in target_layers:
self.handles.append(
target_layer.register_forward_hook(self.save_activation))
# Because of https://github.com/pytorch/pytorch/issues/61519,
# we don't use backward hook to record gradients.
self.handles.append(
target_layer.register_forward_hook(self.save_gradient))
def save_activation(self, module, input, output):
activation = output
if self.reshape_transform is not None:
activation = self.reshape_transform(activation)
self.activations.append(activation.cpu().detach())
def save_gradient(self, module, input, output):
if not hasattr(output, "requires_grad") or not output.requires_grad:
# You can only register hooks on tensor requires grad.
return
# Gradients are computed in reverse order
def _store_grad(grad):
if self.reshape_transform is not None:
grad = self.reshape_transform(grad)
self.gradients = [grad.cpu().detach()] + self.gradients
output.register_hook(_store_grad)
def __call__(self, x):
self.gradients = []
self.activations = []
return self.model(x)
def release(self):
for handle in self.handles:
handle.remove()