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  1. """Train pi-GAN. Supports distributed training."""
  2. import argparse
  3. import os
  4. import numpy as np
  5. import math
  6. from collections import deque
  7. import torch
  8. import torch.distributed as dist
  9. import torch.multiprocessing as mp
  10. import torch.nn as nn
  11. import torch.nn.functional as F
  12. from torch.nn.parallel import DistributedDataParallel as DDP
  13. from torchvision.utils import save_image
  14. from generators import generators
  15. from discriminators import discriminators
  16. from siren import siren
  17. import fid_evaluation
  18. import datasets
  19. import curriculums
  20. from tqdm import tqdm
  21. from datetime import datetime
  22. import copy
  23. from torch_ema import ExponentialMovingAverage
  24. def setup(rank, world_size, port):
  25. os.environ['MASTER_ADDR'] = 'localhost'
  26. os.environ['MASTER_PORT'] = port
  27. # initialize the process group
  28. dist.init_process_group("gloo", rank=rank, world_size=world_size)
  29. def cleanup():
  30. dist.destroy_process_group()
  31. def load_images(images, curriculum, device):
  32. return_images = []
  33. head = 0
  34. for stage in curriculum['stages']:
  35. stage_images = images[head:head + stage['batch_size']]
  36. stage_images = F.interpolate(stage_images, size=stage['img_size'], mode='bilinear', align_corners=True)
  37. return_images.append(stage_images)
  38. head += stage['batch_size']
  39. return return_images
  40. def z_sampler(shape, device, dist):
  41. if dist == 'gaussian':
  42. z = torch.randn(shape, device=device)
  43. elif dist == 'uniform':
  44. z = torch.rand(shape, device=device) * 2 - 1
  45. return z
  46. def train(rank, world_size, opt):
  47. torch.manual_seed(0)
  48. setup(rank, world_size, opt.port)
  49. device = torch.device(rank)
  50. curriculum = getattr(curriculums, opt.curriculum)
  51. metadata = curriculums.extract_metadata(curriculum, 0)
  52. fixed_z = z_sampler((25, 256), device='cpu', dist=metadata['z_dist'])
  53. SIREN = getattr(siren, metadata['model'])
  54. CHANNELS = 3
  55. scaler = torch.cuda.amp.GradScaler()
  56. if opt.load_dir != '':
  57. generator = torch.load(os.path.join(opt.load_dir, 'generator.pth'), map_location=device)
  58. discriminator = torch.load(os.path.join(opt.load_dir, 'discriminator.pth'), map_location=device)
  59. ema = torch.load(os.path.join(opt.load_dir, 'ema.pth'), map_location=device)
  60. ema2 = torch.load(os.path.join(opt.load_dir, 'ema2.pth'), map_location=device)
  61. else:
  62. generator = getattr(generators, metadata['generator'])(SIREN, metadata['latent_dim']).to(device)
  63. discriminator = getattr(discriminators, metadata['discriminator'])().to(device)
  64. ema = ExponentialMovingAverage(generator.parameters(), decay=0.999)
  65. ema2 = ExponentialMovingAverage(generator.parameters(), decay=0.9999)
  66. generator_ddp = DDP(generator, device_ids=[rank], find_unused_parameters=True)
  67. discriminator_ddp = DDP(discriminator, device_ids=[rank], find_unused_parameters=True, broadcast_buffers=False)
  68. generator = generator_ddp.module
  69. discriminator = discriminator_ddp.module
  70. if metadata.get('unique_lr', False):
  71. mapping_network_param_names = [name for name, _ in generator_ddp.module.siren.mapping_network.named_parameters()]
  72. mapping_network_parameters = [p for n, p in generator_ddp.named_parameters() if n in mapping_network_param_names]
  73. generator_parameters = [p for n, p in generator_ddp.named_parameters() if n not in mapping_network_param_names]
  74. optimizer_G = torch.optim.Adam([{'params': generator_parameters, 'name': 'generator'},
  75. {'params': mapping_network_parameters, 'name': 'mapping_network', 'lr':metadata['gen_lr']*5e-2}],
  76. lr=metadata['gen_lr'], betas=metadata['betas'], weight_decay=metadata['weight_decay'])
  77. else:
  78. optimizer_G = torch.optim.Adam(generator_ddp.parameters(), lr=metadata['gen_lr'], betas=metadata['betas'], weight_decay=metadata['weight_decay'])
  79. optimizer_D = torch.optim.Adam(discriminator_ddp.parameters(), lr=metadata['disc_lr'], betas=metadata['betas'], weight_decay=metadata['weight_decay'])
  80. if opt.load_dir != '':
  81. optimizer_G.load_state_dict(torch.load(os.path.join(opt.load_dir, 'optimizer_G.pth')))
  82. optimizer_D.load_state_dict(torch.load(os.path.join(opt.load_dir, 'optimizer_D.pth')))
  83. if not metadata.get('disable_scaler', False):
  84. scaler.load_state_dict(torch.load(os.path.join(opt.load_dir, 'scaler.pth')))
  85. generator_losses = []
  86. discriminator_losses = []
  87. if opt.set_step != None:
  88. generator.step = opt.set_step
  89. discriminator.step = opt.set_step
  90. if metadata.get('disable_scaler', False):
  91. scaler = torch.cuda.amp.GradScaler(enabled=False)
  92. generator.set_device(device)
  93. # ----------
  94. # Training
  95. # ----------
  96. with open(os.path.join(opt.output_dir, 'options.txt'), 'w') as f:
  97. f.write(str(opt))
  98. f.write('\n\n')
  99. f.write(str(generator))
  100. f.write('\n\n')
  101. f.write(str(discriminator))
  102. f.write('\n\n')
  103. f.write(str(curriculum))
  104. torch.manual_seed(rank)
  105. dataloader = None
  106. total_progress_bar = tqdm(total = opt.n_epochs, desc = "Total progress", dynamic_ncols=True)
  107. total_progress_bar.update(discriminator.epoch)
  108. interior_step_bar = tqdm(dynamic_ncols=True)
  109. for _ in range (opt.n_epochs):
  110. total_progress_bar.update(1)
  111. metadata = curriculums.extract_metadata(curriculum, discriminator.step)
  112. # Set learning rates
  113. for param_group in optimizer_G.param_groups:
  114. if param_group.get('name', None) == 'mapping_network':
  115. param_group['lr'] = metadata['gen_lr'] * 5e-2
  116. else:
  117. param_group['lr'] = metadata['gen_lr']
  118. param_group['betas'] = metadata['betas']
  119. param_group['weight_decay'] = metadata['weight_decay']
  120. for param_group in optimizer_D.param_groups:
  121. param_group['lr'] = metadata['disc_lr']
  122. param_group['betas'] = metadata['betas']
  123. param_group['weight_decay'] = metadata['weight_decay']
  124. if not dataloader or dataloader.batch_size != metadata['batch_size']:
  125. dataloader, CHANNELS = datasets.get_dataset_distributed(metadata['dataset'],
  126. world_size,
  127. rank,
  128. **metadata)
  129. step_next_upsample = curriculums.next_upsample_step(curriculum, discriminator.step)
  130. step_last_upsample = curriculums.last_upsample_step(curriculum, discriminator.step)
  131. interior_step_bar.reset(total=(step_next_upsample - step_last_upsample))
  132. interior_step_bar.set_description(f"Progress to next stage")
  133. interior_step_bar.update((discriminator.step - step_last_upsample))
  134. for i, (imgs, _) in enumerate(dataloader):
  135. if discriminator.step % opt.model_save_interval == 0 and rank == 0:
  136. now = datetime.now()
  137. now = now.strftime("%d--%H:%M--")
  138. torch.save(ema, os.path.join(opt.output_dir, now + 'ema.pth'))
  139. torch.save(ema2, os.path.join(opt.output_dir, now + 'ema2.pth'))
  140. torch.save(generator_ddp.module, os.path.join(opt.output_dir, now + 'generator.pth'))
  141. torch.save(discriminator_ddp.module, os.path.join(opt.output_dir, now + 'discriminator.pth'))
  142. torch.save(optimizer_G.state_dict(), os.path.join(opt.output_dir, now + 'optimizer_G.pth'))
  143. torch.save(optimizer_D.state_dict(), os.path.join(opt.output_dir, now + 'optimizer_D.pth'))
  144. torch.save(scaler.state_dict(), os.path.join(opt.output_dir, now + 'scaler.pth'))
  145. metadata = curriculums.extract_metadata(curriculum, discriminator.step)
  146. if dataloader.batch_size != metadata['batch_size']: break
  147. if scaler.get_scale() < 1:
  148. scaler.update(1.)
  149. generator_ddp.train()
  150. discriminator_ddp.train()
  151. alpha = min(1, (discriminator.step - step_last_upsample) / (metadata['fade_steps']))
  152. real_imgs = imgs.to(device, non_blocking=True)
  153. metadata['nerf_noise'] = max(0, 1. - discriminator.step/5000.)
  154. # TRAIN DISCRIMINATOR
  155. with torch.cuda.amp.autocast():
  156. # Generate images for discriminator training
  157. with torch.no_grad():
  158. z = z_sampler((real_imgs.shape[0], metadata['latent_dim']), device=device, dist=metadata['z_dist'])
  159. split_batch_size = z.shape[0] // metadata['batch_split']
  160. gen_imgs = []
  161. gen_positions = []
  162. for split in range(metadata['batch_split']):
  163. subset_z = z[split * split_batch_size:(split+1) * split_batch_size]
  164. g_imgs, g_pos = generator_ddp(subset_z, **metadata)
  165. gen_imgs.append(g_imgs)
  166. gen_positions.append(g_pos)
  167. gen_imgs = torch.cat(gen_imgs, axis=0)
  168. gen_positions = torch.cat(gen_positions, axis=0)
  169. real_imgs.requires_grad = True
  170. r_preds, _, _ = discriminator_ddp(real_imgs, alpha, **metadata)
  171. if metadata['r1_lambda'] > 0:
  172. # Gradient penalty
  173. grad_real = torch.autograd.grad(outputs=scaler.scale(r_preds.sum()), inputs=real_imgs, create_graph=True)
  174. inv_scale = 1./scaler.get_scale()
  175. grad_real = [p * inv_scale for p in grad_real][0]
  176. with torch.cuda.amp.autocast():
  177. if metadata['r1_lambda'] > 0:
  178. grad_penalty = (grad_real.view(grad_real.size(0), -1).norm(2, dim=1) ** 2).mean()
  179. grad_penalty = 0.5 * metadata['r1_lambda'] * grad_penalty
  180. else:
  181. grad_penalty = 0
  182. g_preds, g_pred_latent, g_pred_position = discriminator_ddp(gen_imgs, alpha, **metadata)
  183. if metadata['z_lambda'] > 0 or metadata['pos_lambda'] > 0:
  184. latent_penalty = torch.nn.MSELoss()(g_pred_latent, z) * metadata['z_lambda']
  185. position_penalty = torch.nn.MSELoss()(g_pred_position, gen_positions) * metadata['pos_lambda']
  186. identity_penalty = latent_penalty + position_penalty
  187. else:
  188. identity_penalty=0
  189. d_loss = torch.nn.functional.softplus(g_preds).mean() + torch.nn.functional.softplus(-r_preds).mean() + grad_penalty + identity_penalty
  190. discriminator_losses.append(d_loss.item())
  191. optimizer_D.zero_grad()
  192. scaler.scale(d_loss).backward()
  193. scaler.unscale_(optimizer_D)
  194. torch.nn.utils.clip_grad_norm_(discriminator_ddp.parameters(), metadata['grad_clip'])
  195. scaler.step(optimizer_D)
  196. # TRAIN GENERATOR
  197. z = z_sampler((imgs.shape[0], metadata['latent_dim']), device=device, dist=metadata['z_dist'])
  198. split_batch_size = z.shape[0] // metadata['batch_split']
  199. for split in range(metadata['batch_split']):
  200. with torch.cuda.amp.autocast():
  201. subset_z = z[split * split_batch_size:(split+1) * split_batch_size]
  202. gen_imgs, gen_positions = generator_ddp(subset_z, **metadata)
  203. g_preds, g_pred_latent, g_pred_position = discriminator_ddp(gen_imgs, alpha, **metadata)
  204. topk_percentage = max(0.99 ** (discriminator.step/metadata['topk_interval']), metadata['topk_v']) if 'topk_interval' in metadata and 'topk_v' in metadata else 1
  205. topk_num = math.ceil(topk_percentage * g_preds.shape[0])
  206. g_preds = torch.topk(g_preds, topk_num, dim=0).values
  207. if metadata['z_lambda'] > 0 or metadata['pos_lambda'] > 0:
  208. latent_penalty = torch.nn.MSELoss()(g_pred_latent, subset_z) * metadata['z_lambda']
  209. position_penalty = torch.nn.MSELoss()(g_pred_position, gen_positions) * metadata['pos_lambda']
  210. identity_penalty = latent_penalty + position_penalty
  211. else:
  212. identity_penalty = 0
  213. g_loss = torch.nn.functional.softplus(-g_preds).mean() + identity_penalty
  214. generator_losses.append(g_loss.item())
  215. scaler.scale(g_loss).backward()
  216. scaler.unscale_(optimizer_G)
  217. torch.nn.utils.clip_grad_norm_(generator_ddp.parameters(), metadata.get('grad_clip', 0.3))
  218. scaler.step(optimizer_G)
  219. scaler.update()
  220. optimizer_G.zero_grad()
  221. ema.update(generator_ddp.parameters())
  222. ema2.update(generator_ddp.parameters())
  223. if rank == 0:
  224. interior_step_bar.update(1)
  225. if i%10 == 0:
  226. tqdm.write(f"[Experiment: {opt.output_dir}] [GPU: {os.environ['CUDA_VISIBLE_DEVICES']}] [Epoch: {discriminator.epoch}/{opt.n_epochs}] [D loss: {d_loss.item()}] [G loss: {g_loss.item()}] [Step: {discriminator.step}] [Alpha: {alpha:.2f}] [Img Size: {metadata['img_size']}] [Batch Size: {metadata['batch_size']}] [TopK: {topk_num}] [Scale: {scaler.get_scale()}]")
  227. if discriminator.step % opt.sample_interval == 0:
  228. generator_ddp.eval()
  229. with torch.no_grad():
  230. with torch.cuda.amp.autocast():
  231. copied_metadata = copy.deepcopy(metadata)
  232. copied_metadata['h_stddev'] = copied_metadata['v_stddev'] = 0
  233. copied_metadata['img_size'] = 128
  234. gen_imgs = generator_ddp.module.staged_forward(fixed_z.to(device), **copied_metadata)[0]
  235. save_image(gen_imgs[:25], os.path.join(opt.output_dir, f"{discriminator.step}_fixed.png"), nrow=5, normalize=True)
  236. with torch.no_grad():
  237. with torch.cuda.amp.autocast():
  238. copied_metadata = copy.deepcopy(metadata)
  239. copied_metadata['h_stddev'] = copied_metadata['v_stddev'] = 0
  240. copied_metadata['h_mean'] += 0.5
  241. copied_metadata['img_size'] = 128
  242. gen_imgs = generator_ddp.module.staged_forward(fixed_z.to(device), **copied_metadata)[0]
  243. save_image(gen_imgs[:25], os.path.join(opt.output_dir, f"{discriminator.step}_tilted.png"), nrow=5, normalize=True)
  244. ema.store(generator_ddp.parameters())
  245. ema.copy_to(generator_ddp.parameters())
  246. generator_ddp.eval()
  247. with torch.no_grad():
  248. with torch.cuda.amp.autocast():
  249. copied_metadata = copy.deepcopy(metadata)
  250. copied_metadata['h_stddev'] = copied_metadata['v_stddev'] = 0
  251. copied_metadata['img_size'] = 128
  252. gen_imgs = generator_ddp.module.staged_forward(fixed_z.to(device), **copied_metadata)[0]
  253. save_image(gen_imgs[:25], os.path.join(opt.output_dir, f"{discriminator.step}_fixed_ema.png"), nrow=5, normalize=True)
  254. with torch.no_grad():
  255. with torch.cuda.amp.autocast():
  256. copied_metadata = copy.deepcopy(metadata)
  257. copied_metadata['h_stddev'] = copied_metadata['v_stddev'] = 0
  258. copied_metadata['h_mean'] += 0.5
  259. copied_metadata['img_size'] = 128
  260. gen_imgs = generator_ddp.module.staged_forward(fixed_z.to(device), **copied_metadata)[0]
  261. save_image(gen_imgs[:25], os.path.join(opt.output_dir, f"{discriminator.step}_tilted_ema.png"), nrow=5, normalize=True)
  262. with torch.no_grad():
  263. with torch.cuda.amp.autocast():
  264. copied_metadata = copy.deepcopy(metadata)
  265. copied_metadata['img_size'] = 128
  266. copied_metadata['h_stddev'] = copied_metadata['v_stddev'] = 0
  267. copied_metadata['psi'] = 0.7
  268. gen_imgs = generator_ddp.module.staged_forward(torch.randn_like(fixed_z).to(device), **copied_metadata)[0]
  269. save_image(gen_imgs[:25], os.path.join(opt.output_dir, f"{discriminator.step}_random.png"), nrow=5, normalize=True)
  270. ema.restore(generator_ddp.parameters())
  271. if discriminator.step % opt.sample_interval == 0:
  272. torch.save(ema, os.path.join(opt.output_dir, 'ema.pth'))
  273. torch.save(ema2, os.path.join(opt.output_dir, 'ema2.pth'))
  274. torch.save(generator_ddp.module, os.path.join(opt.output_dir, 'generator.pth'))
  275. torch.save(discriminator_ddp.module, os.path.join(opt.output_dir, 'discriminator.pth'))
  276. torch.save(optimizer_G.state_dict(), os.path.join(opt.output_dir, 'optimizer_G.pth'))
  277. torch.save(optimizer_D.state_dict(), os.path.join(opt.output_dir, 'optimizer_D.pth'))
  278. torch.save(scaler.state_dict(), os.path.join(opt.output_dir, 'scaler.pth'))
  279. torch.save(generator_losses, os.path.join(opt.output_dir, 'generator.losses'))
  280. torch.save(discriminator_losses, os.path.join(opt.output_dir, 'discriminator.losses'))
  281. if opt.eval_freq > 0 and (discriminator.step + 1) % opt.eval_freq == 0:
  282. generated_dir = os.path.join(opt.output_dir, 'evaluation/generated')
  283. if rank == 0:
  284. fid_evaluation.setup_evaluation(metadata['dataset'], generated_dir, target_size=128)
  285. dist.barrier()
  286. ema.store(generator_ddp.parameters())
  287. ema.copy_to(generator_ddp.parameters())
  288. generator_ddp.eval()
  289. fid_evaluation.output_images(generator_ddp, metadata, rank, world_size, generated_dir)
  290. ema.restore(generator_ddp.parameters())
  291. dist.barrier()
  292. if rank == 0:
  293. fid = fid_evaluation.calculate_fid(metadata['dataset'], generated_dir, target_size=128)
  294. with open(os.path.join(opt.output_dir, f'fid.txt'), 'a') as f:
  295. f.write(f'\n{discriminator.step}:{fid}')
  296. torch.cuda.empty_cache()
  297. discriminator.step += 1
  298. generator.step += 1
  299. discriminator.epoch += 1
  300. generator.epoch += 1
  301. cleanup()
  302. if __name__ == '__main__':
  303. parser = argparse.ArgumentParser()
  304. parser.add_argument("--n_epochs", type=int, default=3000, help="number of epochs of training")
  305. parser.add_argument("--sample_interval", type=int, default=200, help="interval between image sampling")
  306. parser.add_argument('--output_dir', type=str, default='debug')
  307. parser.add_argument('--load_dir', type=str, default='')
  308. parser.add_argument('--curriculum', type=str, required=True)
  309. parser.add_argument('--eval_freq', type=int, default=5000)
  310. parser.add_argument('--port', type=str, default='12355')
  311. parser.add_argument('--set_step', type=int, default=None)
  312. parser.add_argument('--model_save_interval', type=int, default=5000)
  313. opt = parser.parse_args()
  314. print(opt)
  315. os.makedirs(opt.output_dir, exist_ok=True)
  316. num_gpus = len(os.environ['CUDA_VISIBLE_DEVICES'].split(','))
  317. mp.spawn(train, args=(num_gpus, opt), nprocs=num_gpus, join=True)
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