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test_training_cifar.py
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test_training_cifar.py
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import argparse
import os
import torch
from tqdm import tqdm
from pathlib import Path
import data_loader.data_loaders as module_data
import model.loss as module_loss
import model.metric as module_metric
import model.model as module_arch
import numpy as np
from parse_config import ConfigParser
import torch.nn.functional as F
import torch
import random
import numpy as np
import os, sys
from torchvision import datasets, transforms
from torch.utils.data import DataLoader, Dataset, Sampler
from base import BaseDataLoader
from PIL import Image
from PIL import ImageFilter
from data_loader.imbalance_cifar import IMBALANCECIFAR100
class AverageMeter(object):
"""Computes and stores the average and current value"""
def __init__(self, name, fmt=':f'):
self.name = name
self.fmt = fmt
self.reset()
def reset(self):
self.val = 0
self.avg = 0
self.sum = 0
self.count = 0
def update(self, val, n=1):
self.val = val
self.sum += val * n
self.count += n
self.avg = self.sum / self.count
def __str__(self):
fmtstr = '{name} {val' + self.fmt + '} ({avg' + self.fmt + '})'
return fmtstr.format(**self.__dict__)
class AverageMeters(object):
def __init__(self, size):
self.meters = [AverageMeter(i) for i in range(size)]
def update(self, idxs, vals):
for i, v in zip(idxs, vals):
self.meters[i].update(v)
def get_avgs(self):
return np.array([m.avg for m in self.meters])
def get_sums(self):
return np.array([m.sum for m in self.meters])
def get_cnts(self):
return np.array([m.count for m in self.meters])
class ProgressMeter(object):
def __init__(self, num_batches, meters, prefix=""):
self.batch_fmtstr = self._get_batch_fmtstr(num_batches)
self.meters = meters
self.prefix = prefix
def display(self, batch):
entries = [self.prefix + self.batch_fmtstr.format(batch)]
entries += [str(meter) for meter in self.meters]
print('\t'.join(entries))
def _get_batch_fmtstr(self, num_batches):
num_digits = len(str(num_batches // 1))
fmt = '{:' + str(num_digits) + 'd}'
return '[' + fmt + '/' + fmt.format(num_batches) + ']'
class BalancedSampler(Sampler):
def __init__(self, buckets, retain_epoch_size=False):
for bucket in buckets:
random.shuffle(bucket)
self.bucket_num = len(buckets)
self.buckets = buckets
self.bucket_pointers = [0 for _ in range(self.bucket_num)]
self.retain_epoch_size = retain_epoch_size
def __iter__(self):
count = self.__len__()
while count > 0:
yield self._next_item()
count -= 1
def _next_item(self):
bucket_idx = random.randint(0, self.bucket_num - 1)
bucket = self.buckets[bucket_idx]
item = bucket[self.bucket_pointers[bucket_idx]]
self.bucket_pointers[bucket_idx] += 1
if self.bucket_pointers[bucket_idx] == len(bucket):
self.bucket_pointers[bucket_idx] = 0
random.shuffle(bucket)
return item
def __len__(self):
if self.retain_epoch_size:
return sum([len(bucket) for bucket in self.buckets])
else:
return max([len(bucket) for bucket in self.buckets]) * self.bucket_num
class GaussianBlur(object):
"""Gaussian blur augmentation in SimCLR https://arxiv.org/abs/2002.05709"""
def __init__(self, sigma=[.1, 2.]):
self.sigma = sigma
def __call__(self, x):
sigma = random.uniform(self.sigma[0], self.sigma[1])
x = x.filter(ImageFilter.GaussianBlur(radius=sigma))
return x
class LT_Dataset(Dataset):
def __init__(self, root, txt, transform=None):
self.img_path = []
self.labels = []
self.transform = transform
with open(txt) as f:
for line in f:
self.img_path.append(os.path.join(root, line.split()[0]))
self.labels.append(int(line.split()[1]))
self.targets = self.labels # Sampler needs to use targets
def __len__(self):
return len(self.labels)
def __getitem__(self, index):
path = self.img_path[index]
label = self.labels[index]
with open(path, 'rb') as f:
sample = Image.open(f).convert('RGB')
if self.transform is not None:
sample = self.transform(sample)
# return sample, label, path
return sample, label
class TwoCropsTransform:
"""Take two random crops of one image as the query and key."""
def __init__(self, base_transform):
self.base_transform = base_transform
def __call__(self, x):
q = self.base_transform(x)
k = self.base_transform(x)
return [q, k]
class TestAgnosticImbalanceCIFAR100DataLoader(DataLoader):
"""
Imbalance Cifar100 Data Loader
"""
def __init__(self, data_dir, batch_size, shuffle=True, num_workers=1, training=True, balanced=False, retain_epoch_size=True, imb_type='exp', imb_factor=0.01, test_imb_factor=0, reverse=False):
normalize = transforms.Normalize(mean=[0.4914, 0.4822, 0.4465],
std=[0.2023, 0.1994, 0.2010])
train_trsfm = transforms.Compose([
transforms.RandomCrop(32, padding=4),
transforms.RandomApply([
transforms.ColorJitter(0.4, 0.4, 0.4, 0.1)
], p=0.8),
transforms.RandomGrayscale(p=0.2),
transforms.RandomApply([GaussianBlur([.1, 2.])], p=0.2),
transforms.RandomHorizontalFlip(),
transforms.ToTensor(),
normalize,
])
test_trsfm = transforms.Compose([
transforms.ToTensor(),
normalize,
])
test_dataset = datasets.CIFAR100(data_dir, train=False, download=True, transform=test_trsfm) # test set
if training:
dataset = IMBALANCECIFAR100(data_dir, train=True, download=True, transform=train_trsfm, imb_type=imb_type, imb_factor=imb_factor)
val_dataset = test_dataset
else:
dataset = IMBALANCECIFAR100(data_dir, train=True, download=True, transform=train_trsfm, imb_type=imb_type, imb_factor=test_imb_factor, reverse=reverse)
train_dataset = IMBALANCECIFAR100(data_dir, train=False, download=True, transform= TwoCropsTransform(train_trsfm), imb_type=imb_type, imb_factor=test_imb_factor, reverse=reverse)
val_dataset = IMBALANCECIFAR100(data_dir, train=False, download=True, transform=test_trsfm, imb_type=imb_type, imb_factor=test_imb_factor, reverse=reverse)
self.dataset = dataset
self.train_dataset = train_dataset
self.val_dataset = val_dataset
num_classes = len(np.unique(dataset.targets))
assert num_classes == 100
cls_num_list = [0] * num_classes
for label in dataset.targets:
cls_num_list[label] += 1
self.cls_num_list = cls_num_list
self.shuffle = shuffle
self.init_kwargs = {
'batch_size': batch_size,
'num_workers': num_workers
}
super().__init__(dataset=self.dataset, **self.init_kwargs) # Note that sampler does not apply to validation set
def train_set(self):
return DataLoader(dataset=self.train_dataset, shuffle=True, **self.init_kwargs)
def test_set(self):
return DataLoader(dataset=self.val_dataset, shuffle=False, **self.init_kwargs)
def mic_acc_cal(preds, labels):
if isinstance(labels, tuple):
assert len(labels) == 3
targets_a, targets_b, lam = labels
acc_mic_top1 = (lam * preds.eq(targets_a.data).cpu().sum().float() \
+ (1 - lam) * preds.eq(targets_b.data).cpu().sum().float()) / len(preds)
else:
acc_mic_top1 = (preds == labels).sum().item() / len(labels)
return acc_mic_top1
def main(config):
logger = config.get_logger('test')
# build model architecture
model = config.init_obj('arch', module_arch)
#logger.info(model)
# run training data here just for obtain indexs for head/medium/tail classes
train_data_loader = getattr(module_data, config['data_loader']['type'])(
config['data_loader']['args']['data_dir'],
batch_size=128,
shuffle=False,
training=True,
num_workers=8,
imb_factor=config['data_loader']['args']['imb_factor']
)
train_cls_num_list = train_data_loader.cls_num_list
#b = np.load("../data/shot_list.npy")
train_cls_num_list=torch.tensor(train_cls_num_list)
many_shot = train_cls_num_list > 100
few_shot =train_cls_num_list <20
medium_shot =~many_shot & ~few_shot
num_classes = config._config["arch"]["args"]["num_classes"]
distrb = {
'uniform': (1,False),
'forward50': (0.02, False),
'forward25': (0.04, False),
'forward10':(0.1, False),
'forward5': (0.2, False),
'forward2': (0.5, False),
'backward50': (0.02, True),
'backward25': (0.04, True),
'backward10': (0.1, True),
'backward5': (0.2, True),
'backward2': (0.5, True),
}
device = torch.device('cuda' if torch.cuda.is_available() else 'cpu')
logger.info('Loading checkpoint: {} ...'.format(config.resume))
checkpoint = torch.load(config.resume)
state_dict = checkpoint['state_dict']
if config['n_gpu'] > 1:
model = torch.nn.DataParallel(model)
model.load_state_dict(state_dict)
# prepare model for testing
model = model.to(device)
weight_record_list=[]
performance_record_list=[]
test_distribution_set = ["forward50", "forward25", "forward10", "forward5", "forward2", "uniform", "backward2", "backward5", "backward10", "backward25", "backward50"]
for test_distribution in test_distribution_set:
print(test_distribution)
data_loader = TestAgnosticImbalanceCIFAR100DataLoader(
config['data_loader']['args']['data_dir'],
batch_size=128,
shuffle=False,
training=False,
num_workers=2,
test_imb_factor=distrb[test_distribution][0],
reverse=distrb[test_distribution][1]
)
train_data_loader= data_loader.train_set()
valid_data_loader = data_loader.test_set()
num_classes = config._config["arch"]["args"]["num_classes"]
aggregation_weight = torch.nn.Parameter(torch.FloatTensor(3), requires_grad=True)
aggregation_weight.data.fill_(1/3)
optimizer = config.init_obj('optimizer', torch.optim, [aggregation_weight])
for k in range(config["epochs"]):
weight_record = test_training(train_data_loader, config, model, aggregation_weight, optimizer, args)
if weight_record[0]<0.05 or weight_record[1]<0.05 or weight_record[2]<0.05:
break
print("Aggregation weight: Expert 1 is {0:.2f}, Expert 2 is {1:.2f}, Expert 3 is {2:.2f}".format(weight_record[0], weight_record[1], weight_record[2]))
weight_record_list.append(weight_record)
record = test_validation(valid_data_loader, model, num_classes, aggregation_weight, device, many_shot, medium_shot, few_shot)
performance_record_list.append(record)
print('\n')
print('='*25, ' Final results ', '='*25)
print('\n')
i = 0
print('Top-1 accuracy on many-shot, medium-shot, few-shot and all classes:')
for txt in performance_record_list:
print(test_distribution_set[i]+'\t')
print(*txt)
i+=1
i=0
print('\n')
print('Aggregation weights of three experts:')
for txt1 in weight_record_list:
print(test_distribution_set[i]+'\t')
print(*txt1)
i+=1
def test_training(train_data_loader, config, model, aggregation_weight, optimizer, args):
model.eval()
device = torch.device('cuda' if torch.cuda.is_available() else 'cpu')
losses = AverageMeter('Loss', ':.4e')
progress = ProgressMeter(
len(train_data_loader),
[losses])
cos = torch.nn.CosineSimilarity(dim=1, eps=1e-6)
for i, (data, _) in enumerate(tqdm(train_data_loader)):
data[0] = data[0].to(device)
data[1] = data[1].to(device)
output0 = model(data[0])
output1 = model(data[1])
expert1_logits_output0 = output0['logits'][:,0,:]
expert2_logits_output0 = output0['logits'][:,1,:]
expert3_logits_output0 = output0['logits'][:,2,:]
expert1_logits_output1 = output1['logits'][:,0,:]
expert2_logits_output1 = output1['logits'][:,1,:]
expert3_logits_output1 = output1['logits'][:,2,:]
aggregation_softmax = torch.nn.functional.softmax(aggregation_weight) # softmax for normalization
aggregation_output0 = aggregation_softmax[0].cuda() * expert1_logits_output0 + aggregation_softmax[1].cuda() * expert2_logits_output0 + aggregation_softmax[2].cuda() * expert3_logits_output0
aggregation_output1 = aggregation_softmax[0].cuda() * expert1_logits_output1 + aggregation_softmax[1].cuda() * expert2_logits_output1 + aggregation_softmax[2].cuda() * expert3_logits_output1
softmax_aggregation_output0 = F.softmax(aggregation_output0, dim=1)
softmax_aggregation_output1 = F.softmax(aggregation_output1, dim=1)
# SSL loss: similarity maxmization
cos_similarity = cos(softmax_aggregation_output0, softmax_aggregation_output1).mean()
ssl_loss = cos_similarity
loss = - ssl_loss
optimizer.zero_grad()
loss.backward()
optimizer.step()
losses.update(ssl_loss, data[0].shape[0])
aggregation_softmax = torch.nn.functional.softmax(aggregation_weight, dim=0).detach().cpu().numpy()
return np.round(aggregation_softmax[0], decimals=2), np.round(aggregation_softmax[1], decimals=2), np.round(aggregation_softmax[2], decimals=2)
def test_validation(data_loader, model, num_classes, aggregation_weight, device, many_shot, medium_shot, few_shot):
model.eval()
aggregation_weight.requires_grad = False
confusion_matrix = torch.zeros(num_classes, num_classes).cuda()
total_logits = torch.empty((0, num_classes)).cuda()
total_labels = torch.empty(0, dtype=torch.long).cuda()
with torch.no_grad():
for i, (data, target) in enumerate(tqdm(data_loader)):
data, target = data.to(device), target.to(device)
output = model(data)
expert1_logits_output = output['logits'][:,0,:]
expert2_logits_output = output['logits'][:,1,:]
expert3_logits_output = output['logits'][:,2,:]
aggregation_softmax = torch.nn.functional.softmax(aggregation_weight) # softmax for normalization
aggregation_output = aggregation_softmax[0] * expert1_logits_output + aggregation_softmax[1] * expert2_logits_output + aggregation_softmax[2] * expert3_logits_output
for t, p in zip(target.view(-1), aggregation_output.argmax(dim=1).view(-1)):
confusion_matrix[t.long(), p.long()] += 1
total_logits = torch.cat((total_logits, aggregation_output))
total_labels = torch.cat((total_labels, target))
probs, preds = F.softmax(total_logits.detach(), dim=1).max(dim=1)
# Calculate the overall accuracy and F measurement
eval_acc_mic_top1= mic_acc_cal(preds[total_labels != -1],
total_labels[total_labels != -1])
acc_per_class = confusion_matrix.diag()/confusion_matrix.sum(1)
acc = acc_per_class.cpu().numpy()
many_shot_acc = acc[many_shot].mean()
medium_shot_acc = acc[medium_shot].mean()
few_shot_acc = acc[few_shot].mean()
print("Many-shot {0:.2f}, Medium-shot {1:.2f}, Few-shot {2:.2f}, All {3:.2f}".format(many_shot_acc * 100, medium_shot_acc * 100,
few_shot_acc * 100, eval_acc_mic_top1* 100))
return np.round(many_shot_acc * 100, decimals=2), np.round(medium_shot_acc * 100, decimals=2), np.round(few_shot_acc * 100, decimals=2), np.round(eval_acc_mic_top1 * 100, decimals=2)
if __name__ == '__main__':
args = argparse.ArgumentParser(description='PyTorch Template')
args.add_argument('-c', '--config', default=None, type=str,
help='config file path (default: None)')
args.add_argument('-r', '--resume', default=None, type=str,
help='path to latest checkpoint (default: None)')
args.add_argument('-d', '--device', default=None, type=str,
help='indices of GPUs to enable (default: all)')
args.add_argument('--epochs', default=1, type=int,
help='indices of GPUs to enable (default: all)')
config = ConfigParser.from_args(args)
main(config)