import matplotlib.pyplot as plt
import torch
import torch.nn as nn
import torch.nn.functional as F
import torchvision
from spikingjelly.activation_based import neuron, functional, surrogate, layer
from torch.utils.tensorboard import SummaryWriter
import os
import time
import argparse
from torch.cuda import amp
import sys
import datetime
from spikingjelly import visualizing
[文档]class CSNN(nn.Module):
def __init__(self, T: int, channels: int, use_cupy=False):
super().__init__()
self.T = T
self.conv_fc = nn.Sequential(
layer.Conv2d(1, channels, kernel_size=3, padding=1, bias=False),
layer.BatchNorm2d(channels),
neuron.IFNode(surrogate_function=surrogate.ATan()),
layer.MaxPool2d(2, 2), # 14 * 14
layer.Conv2d(channels, channels, kernel_size=3, padding=1, bias=False),
layer.BatchNorm2d(channels),
neuron.IFNode(surrogate_function=surrogate.ATan()),
layer.MaxPool2d(2, 2), # 7 * 7
layer.Flatten(),
layer.Linear(channels * 7 * 7, channels * 4 * 4, bias=False),
neuron.IFNode(surrogate_function=surrogate.ATan()),
layer.Linear(channels * 4 * 4, 10, bias=False),
neuron.IFNode(surrogate_function=surrogate.ATan()),
)
functional.set_step_mode(self, step_mode='m')
if use_cupy:
functional.set_backend(self, backend='cupy')
[文档] def forward(self, x: torch.Tensor):
# x.shape = [N, C, H, W]
x_seq = x.unsqueeze(0).repeat(self.T, 1, 1, 1, 1) # [N, C, H, W] -> [T, N, C, H, W]
x_seq = self.conv_fc(x_seq)
fr = x_seq.mean(0)
return fr
[文档] def spiking_encoder(self):
return self.conv_fc[0:3]
[文档]def main():
'''
(sj-dev) wfang@Precision-5820-Tower-X-Series:~/spikingjelly_dev$ python -m spikingjelly.activation_based.examples.conv_fashion_mnist -h
usage: conv_fashion_mnist.py [-h] [-T T] [-device DEVICE] [-b B] [-epochs N] [-j N] [-data-dir DATA_DIR] [-out-dir OUT_DIR]
[-resume RESUME] [-amp] [-cupy] [-opt OPT] [-momentum MOMENTUM] [-lr LR]
Classify Fashion-MNIST
optional arguments:
-h, --help show this help message and exit
-T T simulating time-steps
-device DEVICE device
-b B batch size
-epochs N number of total epochs to run
-j N number of data loading workers (default: 4)
-data-dir DATA_DIR root dir of Fashion-MNIST dataset
-out-dir OUT_DIR root dir for saving logs and checkpoint
-resume RESUME resume from the checkpoint path
-amp automatic mixed precision training
-cupy use cupy neuron and multi-step forward mode
-opt OPT use which optimizer. SDG or Adam
-momentum MOMENTUM momentum for SGD
-save-es dir for saving a batch spikes encoded by the first {Conv2d-BatchNorm2d-IFNode}
'''
# python -m spikingjelly.activation_based.examples.conv_fashion_mnist -T 4 -device cuda:0 -b 128 -epochs 64 -data-dir /datasets/FashionMNIST/ -amp -cupy -opt sgd -lr 0.1 -j 8
# python -m spikingjelly.activation_based.examples.conv_fashion_mnist -T 4 -device cuda:0 -b 4 -epochs 64 -data-dir /datasets/FashionMNIST/ -amp -cupy -opt sgd -lr 0.1 -j 8 -resume ./logs/T4_b256_sgd_lr0.1_c128_amp_cupy/checkpoint_latest.pth -save-es ./logs
parser = argparse.ArgumentParser(description='Classify Fashion-MNIST')
parser.add_argument('-T', default=4, type=int, help='simulating time-steps')
parser.add_argument('-device', default='cuda:0', help='device')
parser.add_argument('-b', default=128, type=int, help='batch size')
parser.add_argument('-epochs', default=64, type=int, metavar='N',
help='number of total epochs to run')
parser.add_argument('-j', default=4, type=int, metavar='N',
help='number of data loading workers (default: 4)')
parser.add_argument('-data-dir', type=str, help='root dir of Fashion-MNIST dataset')
parser.add_argument('-out-dir', type=str, default='./logs', help='root dir for saving logs and checkpoint')
parser.add_argument('-resume', type=str, help='resume from the checkpoint path')
parser.add_argument('-amp', action='store_true', help='automatic mixed precision training')
parser.add_argument('-cupy', action='store_true', help='use cupy backend')
parser.add_argument('-opt', type=str, help='use which optimizer. SDG or Adam')
parser.add_argument('-momentum', default=0.9, type=float, help='momentum for SGD')
parser.add_argument('-lr', default=0.1, type=float, help='learning rate')
parser.add_argument('-channels', default=128, type=int, help='channels of CSNN')
parser.add_argument('-save-es', default=None, help='dir for saving a batch spikes encoded by the first {Conv2d-BatchNorm2d-IFNode}')
args = parser.parse_args()
print(args)
net = CSNN(T=args.T, channels=args.channels, use_cupy=args.cupy)
print(net)
net.to(args.device)
train_set = torchvision.datasets.FashionMNIST(
root=args.data_dir,
train=True,
transform=torchvision.transforms.ToTensor(),
download=True)
test_set = torchvision.datasets.FashionMNIST(
root=args.data_dir,
train=False,
transform=torchvision.transforms.ToTensor(),
download=True)
train_data_loader = torch.utils.data.DataLoader(
dataset=train_set,
batch_size=args.b,
shuffle=True,
drop_last=True,
num_workers=args.j,
pin_memory=True
)
test_data_loader = torch.utils.data.DataLoader(
dataset=test_set,
batch_size=args.b,
shuffle=True,
drop_last=False,
num_workers=args.j,
pin_memory=True
)
scaler = None
if args.amp:
scaler = amp.GradScaler()
start_epoch = 0
max_test_acc = -1
optimizer = None
if args.opt == 'sgd':
optimizer = torch.optim.SGD(net.parameters(), lr=args.lr, momentum=args.momentum)
elif args.opt == 'adam':
optimizer = torch.optim.Adam(net.parameters(), lr=args.lr)
else:
raise NotImplementedError(args.opt)
lr_scheduler = torch.optim.lr_scheduler.CosineAnnealingLR(optimizer, args.epochs)
if args.resume:
checkpoint = torch.load(args.resume, map_location='cpu')
net.load_state_dict(checkpoint['net'])
optimizer.load_state_dict(checkpoint['optimizer'])
lr_scheduler.load_state_dict(checkpoint['lr_scheduler'])
start_epoch = checkpoint['epoch'] + 1
max_test_acc = checkpoint['max_test_acc']
if args.save_es is not None and args.save_es != '':
encoder = net.spiking_encoder()
with torch.no_grad():
for img, label in test_data_loader:
img = img.to(args.device)
label = label.to(args.device)
# img.shape = [N, C, H, W]
img_seq = img.unsqueeze(0).repeat(net.T, 1, 1, 1, 1) # [N, C, H, W] -> [T, N, C, H, W]
spike_seq = encoder(img_seq)
functional.reset_net(encoder)
to_pil_img = torchvision.transforms.ToPILImage()
vs_dir = os.path.join(args.save_es, 'visualization')
os.mkdir(vs_dir)
img = img.cpu()
spike_seq = spike_seq.cpu()
img = F.interpolate(img, scale_factor=4, mode='bilinear')
# 28 * 28 is too small to read. So, we interpolate it to a larger size
for i in range(label.shape[0]):
vs_dir_i = os.path.join(vs_dir, f'{i}')
os.mkdir(vs_dir_i)
to_pil_img(img[i]).save(os.path.join(vs_dir_i, f'input.png'))
for t in range(net.T):
print(f'saving {i}-th sample with t={t}...')
# spike_seq.shape = [T, N, C, H, W]
visualizing.plot_2d_feature_map(spike_seq[t][i], 8, spike_seq.shape[2] // 8, 2, f'$S[{t}]$')
plt.savefig(os.path.join(vs_dir_i, f's_{t}.png'), pad_inches=0.02)
plt.savefig(os.path.join(vs_dir_i, f's_{t}.pdf'), pad_inches=0.02)
plt.savefig(os.path.join(vs_dir_i, f's_{t}.svg'), pad_inches=0.02)
plt.clf()
exit()
out_dir = os.path.join(args.out_dir, f'T{args.T}_b{args.b}_{args.opt}_lr{args.lr}_c{args.channels}')
if args.amp:
out_dir += '_amp'
if args.cupy:
out_dir += '_cupy'
if not os.path.exists(out_dir):
os.makedirs(out_dir)
print(f'Mkdir {out_dir}.')
writer = SummaryWriter(out_dir, purge_step=start_epoch)
with open(os.path.join(out_dir, 'args.txt'), 'w', encoding='utf-8') as args_txt:
args_txt.write(str(args))
args_txt.write('\n')
args_txt.write(' '.join(sys.argv))
for epoch in range(start_epoch, args.epochs):
start_time = time.time()
net.train()
train_loss = 0
train_acc = 0
train_samples = 0
for img, label in train_data_loader:
optimizer.zero_grad()
img = img.to(args.device)
label = label.to(args.device)
label_onehot = F.one_hot(label, 10).float()
if scaler is not None:
with amp.autocast():
out_fr = net(img)
loss = F.mse_loss(out_fr, label_onehot)
scaler.scale(loss).backward()
scaler.step(optimizer)
scaler.update()
else:
out_fr = net(img)
loss = F.mse_loss(out_fr, label_onehot)
loss.backward()
optimizer.step()
train_samples += label.numel()
train_loss += loss.item() * label.numel()
train_acc += (out_fr.argmax(1) == label).float().sum().item()
functional.reset_net(net)
train_time = time.time()
train_speed = train_samples / (train_time - start_time)
train_loss /= train_samples
train_acc /= train_samples
writer.add_scalar('train_loss', train_loss, epoch)
writer.add_scalar('train_acc', train_acc, epoch)
lr_scheduler.step()
net.eval()
test_loss = 0
test_acc = 0
test_samples = 0
with torch.no_grad():
for img, label in test_data_loader:
img = img.to(args.device)
label = label.to(args.device)
label_onehot = F.one_hot(label, 10).float()
out_fr = net(img)
loss = F.mse_loss(out_fr, label_onehot)
test_samples += label.numel()
test_loss += loss.item() * label.numel()
test_acc += (out_fr.argmax(1) == label).float().sum().item()
functional.reset_net(net)
test_time = time.time()
test_speed = test_samples / (test_time - train_time)
test_loss /= test_samples
test_acc /= test_samples
writer.add_scalar('test_loss', test_loss, epoch)
writer.add_scalar('test_acc', test_acc, epoch)
save_max = False
if test_acc > max_test_acc:
max_test_acc = test_acc
save_max = True
checkpoint = {
'net': net.state_dict(),
'optimizer': optimizer.state_dict(),
'lr_scheduler': lr_scheduler.state_dict(),
'epoch': epoch,
'max_test_acc': max_test_acc
}
if save_max:
torch.save(checkpoint, os.path.join(out_dir, 'checkpoint_max.pth'))
torch.save(checkpoint, os.path.join(out_dir, 'checkpoint_latest.pth'))
print(args)
print(out_dir)
print(f'epoch = {epoch}, train_loss ={train_loss: .4f}, train_acc ={train_acc: .4f}, test_loss ={test_loss: .4f}, test_acc ={test_acc: .4f}, max_test_acc ={max_test_acc: .4f}')
print(f'train speed ={train_speed: .4f} images/s, test speed ={test_speed: .4f} images/s')
print(f'escape time = {(datetime.datetime.now() + datetime.timedelta(seconds=(time.time() - start_time) * (args.epochs - epoch))).strftime("%Y-%m-%d %H:%M:%S")}\n')
if __name__ == '__main__':
main()