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https://github.com/AntoineHX/smart_augmentation.git
synced 2025-05-04 04:00:46 +02:00
Fix etat Train/Eval pour augmentation differee (Retester !)
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4 changed files with 38 additions and 29 deletions
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@ -7,31 +7,31 @@ TEST_SIZE = 300
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#TEST_SIZE = 10000 #legerement +Rapide / + Consomation memoire !
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download_data=False
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num_workers=4 #4
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num_workers=2 #4
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pin_memory=False #True :+ GPU memory / + Lent
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#ATTENTION : Dataug (Kornia) Expect image in the range of [0, 1]
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#transform_train = torchvision.transforms.Compose([
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# torchvision.transforms.RandomHorizontalFlip(),
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# torchvision.transforms.ToTensor(),
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#torchvision.transforms.Normalize((0.4914, 0.4822, 0.4465), (0.2023, 0.1994, 0.2010)), #CIFAR10
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# torchvision.transforms.Normalize((0.4914, 0.4822, 0.4465), (0.2023, 0.1994, 0.2010)), #CIFAR10
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#])
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transform = torchvision.transforms.Compose([
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torchvision.transforms.ToTensor(),
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#torchvision.transforms.Normalize((0.4914, 0.4822, 0.4465), (0.2023, 0.1994, 0.2010)), #CIFAR10
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])
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'''
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data_train = torchvision.datasets.MNIST(
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"./data", train=True, download=True,
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transform=torchvision.transforms.Compose([
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#torchvision.transforms.RandomAffine(degrees=180, translate=None, scale=None, shear=None, resample=False, fillcolor=0),
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torchvision.transforms.ToTensor()
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])
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)
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#data_train = torchvision.datasets.MNIST(
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# "./data", train=True, download=True,
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# transform=torchvision.transforms.Compose([
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# #torchvision.transforms.RandomAffine(degrees=180, translate=None, scale=None, shear=None, resample=False, fillcolor=0),
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# torchvision.transforms.ToTensor()
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# ])
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#)
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data_test = torchvision.datasets.MNIST(
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"./data", train=False, download=True, transform=torchvision.transforms.ToTensor()
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)
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'''
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from torchvision.datasets.vision import VisionDataset
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from PIL import Image
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@ -747,21 +747,22 @@ class Data_augV5(nn.Module): #Optimisation jointe (mag, proba)
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max_mag_reg = reg_factor * F.mse_loss(mags, target=self._reg_tgt.to(mags.device), reduction='mean')
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return max_mag_reg
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def train(self, mode=None):
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def train(self, mode=True):
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""" Set the module training mode.
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Args:
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mode (bool): Wether to learn the parameter of the module. None would not change mode. (default: None)
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"""
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if mode is None :
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mode=self._data_augmentation
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#if mode is None :
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# mode=self._data_augmentation
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self.augment(mode=mode) #Inutile si mode=None
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super(Data_augV5, self).train(mode)
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return self
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def eval(self):
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""" Set the module to evaluation mode.
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"""
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self.train(mode=False)
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return self.train(mode=False)
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def augment(self, mode=True):
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""" Set the augmentation mode.
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@ -1266,7 +1267,7 @@ class Augmented_model(nn.Module):
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Attributes:
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_mods (nn.ModuleDict): A dictionary containing the modules.
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_data_augmentation (bool): Wether data augmentation is used.
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_data_augmentation (bool): Wether data augmentation should be used.
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"""
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def __init__(self, data_augmenter, model):
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"""Init Augmented Model.
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@ -1308,22 +1309,25 @@ class Augmented_model(nn.Module):
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self._data_augmentation=mode
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self._mods['data_aug'].augment(mode)
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def train(self, mode=None):
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def train(self, mode=True):
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""" Set the module training mode.
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Args:
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mode (bool): Wether to learn the parameter of the module. None would not change mode. (default: None)
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mode (bool): Wether to learn the parameter of the module. (default: None)
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"""
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if mode is None :
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mode=self._data_augmentation
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self._mods['data_aug'].augment(mode)
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#if mode is None :
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# mode=self._data_augmentation
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super(Augmented_model, self).train(mode)
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self._mods['data_aug'].augment(mode=self._data_augmentation) #Restart if needed data augmentation
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return self
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def eval(self):
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""" Set the module to evaluation mode.
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"""
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return self.train(mode=False)
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#return self.train(mode=False)
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super(Augmented_model, self).train(mode=False)
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self._mods['data_aug'].augment(mode=False)
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return self
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def items(self):
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"""Return an iterable of the ModuleDict key/value pairs.
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@ -68,7 +68,7 @@ if __name__ == "__main__":
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}
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n_inner_iter = 1
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epochs = 150
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dataug_epoch_start=0
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dataug_epoch_start=10
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optim_param={
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'Meta':{
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'optim':'Adam',
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@ -87,8 +87,6 @@ if __name__ == "__main__":
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#model = MobileNetV2(num_classes=10)
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#model = WideResNet(num_classes=10, wrn_size=32)
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model = Higher_model(model) #run_dist_dataugV3
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#### Classic ####
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if 'classic' in tasks:
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t0 = time.process_time()
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@ -171,6 +169,7 @@ if __name__ == "__main__":
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t0 = time.process_time()
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tf_dict = {k: TF.TF_dict[k] for k in tf_names}
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model = Higher_model(model) #run_dist_dataugV3
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aug_model = Augmented_model(Data_augV5(TF_dict=tf_dict, N_TF=2, mix_dist=0.8, fixed_prob=False, fixed_mag=False, shared_mag=False), model).to(device)
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#aug_model = Augmented_model(RandAug(TF_dict=tf_dict, N_TF=2), model).to(device)
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@ -827,6 +827,7 @@ def run_dist_dataugV3(model, opt_param, epochs=1, inner_it=0, dataug_epoch_start
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device = next(model.parameters()).device
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log = []
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dl_val_it = iter(dl_val)
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val_loss=None
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high_grad_track = True
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if inner_it == 0: #No HP optimization
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@ -909,10 +910,8 @@ def run_dist_dataugV3(model, opt_param, epochs=1, inner_it=0, dataug_epoch_start
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if(high_grad_track and i>0 and i%inner_it==0): #Perform Meta step
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#print("meta")
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val_loss = compute_vaLoss(model=model, dl_it=dl_val_it, dl=dl_val) + model['data_aug'].reg_loss()
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#print_graph(val_loss) #to visualize computational graph
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val_loss.backward()
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torch.nn.utils.clip_grad_norm_(model['data_aug'].parameters(), max_norm=10, norm_type=2) #Prevent exploding grad with RNN
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@ -920,7 +919,7 @@ def run_dist_dataugV3(model, opt_param, epochs=1, inner_it=0, dataug_epoch_start
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meta_opt.step()
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#Adjust Hyper-parameters
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model['data_aug'].adjust_param(soft=True) #Contrainte sum(proba)=1
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model['data_aug'].adjust_param(soft=False) #Contrainte sum(proba)=1
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if hp_opt:
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for param_group in diffopt.param_groups:
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for param in list(opt_param['Inner'].keys())[1:]:
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@ -949,6 +948,7 @@ def run_dist_dataugV3(model, opt_param, epochs=1, inner_it=0, dataug_epoch_start
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accuracy, test_loss =test(model)
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model.train()
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print(model['data_aug']._data_augmentation)
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#### Log ####
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param = [{'p': p.item(), 'm':model['data_aug']['mag'].item()} for p in model['data_aug']['prob']] if model['data_aug']._shared_mag else [{'p': p.item(), 'm': m.item()} for p, m in zip(model['data_aug']['prob'], model['data_aug']['mag'])]
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data={
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@ -989,7 +989,13 @@ def run_dist_dataugV3(model, opt_param, epochs=1, inner_it=0, dataug_epoch_start
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print('Starting Data Augmention...')
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dataug_epoch_start = epoch
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model.augment(mode=True)
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if inner_it != 0: high_grad_track = True
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if inner_it != 0: #Rebuild diffopt if needed
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high_grad_track = True
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diffopt = model['model'].get_diffopt(
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inner_opt,
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grad_callback=(lambda grads: clip_norm(grads, max_norm=10)),
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track_higher_grads=high_grad_track)
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#Data sample saving
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try:
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