FashionFlow / src /training /training_loop.py
tasin
init
f075308
# Copyright (c) 2021, NVIDIA CORPORATION. All rights reserved.
#
# NVIDIA CORPORATION and its licensors retain all intellectual property
# and proprietary rights in and to this software, related documentation
# and any modifications thereto. Any use, reproduction, disclosure or
# distribution of this software and related documentation without an express
# license agreement from NVIDIA CORPORATION is strictly prohibited.
import os
import time
import copy
import json
import pickle
import random
import PIL.Image
import numpy as np
import torch
from torch.utils.tensorboard import SummaryWriter # Note: importing torchvision BEFORE tensorboard results in SIGSEGV
import torchvision
from src import dnnlib
from omegaconf import OmegaConf
from src.torch_utils import misc
from src.torch_utils import training_stats
from src.torch_utils.ops import conv2d_gradfix
from src.torch_utils.ops import grid_sample_gradfix
import src.legacy
from src.metrics import metric_main
from src.training.layers import sample_frames
from src.training.logging import generate_videos, save_video_frames_as_mp4
#----------------------------------------------------------------------------
def setup_snapshot_image_grid(training_set, random_seed=0):
rnd = np.random.RandomState(random_seed)
gw = np.clip(3840 // training_set.image_shape[2], 7, 32)
gh = np.clip(2160 // training_set.image_shape[1], 4, 32)
# No labels => show random subset of training samples.
if not training_set.has_labels:
all_indices = list(range(len(training_set)))
rnd.shuffle(all_indices)
grid_indices = [all_indices[i % len(all_indices)] for i in range(gw * gh)]
else:
# Group training samples by label.
label_groups = dict() # label => [idx, ...]
for idx in range(len(training_set)):
label = tuple(training_set.get_details(idx).raw_label.flat[::-1])
if label not in label_groups:
label_groups[label] = []
label_groups[label].append(idx)
# Reorder.
label_order = sorted(label_groups.keys())
for label in label_order:
rnd.shuffle(label_groups[label])
# Organize into grid.
grid_indices = []
for y in range(gh):
label = label_order[y % len(label_order)]
indices = label_groups[label]
grid_indices += [indices[x % len(indices)] for x in range(gw)]
label_groups[label] = [indices[(i + gw) % len(indices)] for i in range(len(indices))]
# Load data.
batches = [training_set[i] for i in grid_indices]
images = [b['image'] for b in batches]
labels = [b['label'] for b in batches]
t = [b['times'] for b in batches]
return (gw, gh), np.stack(images), np.stack(labels), np.stack(t)
#----------------------------------------------------------------------------
def save_image_grid(img, fname, drange, grid_size):
lo, hi = drange
img = np.asarray(img, dtype=np.float32)
img = (img - lo) * (255 / (hi - lo))
img = np.rint(img).clip(0, 255).astype(np.uint8)
gw, gh = grid_size
_N, C, H, W = img.shape
img = img.reshape(gh, gw, C, H, W)
img = img.transpose(0, 3, 1, 4, 2)
img = img.reshape(gh * H, gw * W, C)
assert C in [1, 3]
if C == 1:
PIL.Image.fromarray(img[:, :, 0], 'L').save(fname)
if C == 3:
PIL.Image.fromarray(img, 'RGB').save(fname, quality=95)
#----------------------------------------------------------------------------
def training_loop(
cfg = {}, # Main config we use.
run_dir = '.', # Output directory.
training_set_kwargs = {}, # Options for training set.
data_loader_kwargs = {}, # Options for torch.utils.data.DataLoader.
G_kwargs = {}, # Options for generator network.
D_kwargs = {}, # Options for discriminator network.
G_opt_kwargs = {}, # Options for generator optimizer.
D_opt_kwargs = {}, # Options for discriminator optimizer.
augment_kwargs = None, # Options for augmentation pipeline. None = disable.
loss_kwargs = {}, # Options for loss function.
metrics = [], # Metrics to evaluate during training.
random_seed = 0, # Global random seed.
num_gpus = 1, # Number of GPUs participating in the training.
rank = 0, # Rank of the current process in [0, num_gpus[.
batch_size = 4, # Total batch size for one training iteration. Can be larger than batch_gpu * num_gpus.
batch_gpu = 4, # Number of samples processed at a time by one GPU.
ema_kimg = 10, # Half-life of the exponential moving average (EMA) of generator weights.
ema_rampup = None, # EMA ramp-up coefficient.
G_reg_interval = 4, # How often to perform regularization for G? None = disable lazy regularization.
D_reg_interval = 16, # How often to perform regularization for D? None = disable lazy regularization.
augment_p = 0, # Initial value of augmentation probability.
ada_target = None, # ADA target value. None = fixed p.
ada_interval = 4, # How often to perform ADA adjustment?
ada_kimg = 500, # ADA adjustment speed, measured in how many kimg it takes for p to increase/decrease by one unit.
total_kimg = 25000, # Total length of the training, measured in thousands of real images.
kimg_per_tick = 5, # Progress snapshot interval.
image_snapshot_ticks = 50, # How often to save image snapshots? None = disable.
network_snapshot_ticks = 50, # How often to save network snapshots? None = disable.
resume_pkl = None, # Network pickle to resume training from.
resume_whole_state = False, # Should we resume the whole state or only the G/D/G_ema checkpoints?
cudnn_benchmark = True, # Enable torch.backends.cudnn.benchmark?
allow_tf32 = False, # Enable torch.backends.cuda.matmul.allow_tf32 and torch.backends.cudnn.allow_tf32?
abort_fn = None, # Callback function for determining whether to abort training. Must return consistent results across ranks.
progress_fn = None, # Callback function for updating training progress. Called for all ranks.
):
# Initialize.
experiment_name = os.path.basename(os.path.dirname(run_dir))
start_time = time.time()
device = torch.device('cuda', rank)
random.seed(random_seed * num_gpus + rank)
np.random.seed(random_seed * num_gpus + rank)
torch.manual_seed(random_seed * num_gpus + rank)
torch.backends.cudnn.benchmark = cudnn_benchmark # Improves training speed.
torch.backends.cuda.matmul.allow_tf32 = allow_tf32 # Allow PyTorch to internally use tf32 for matmul
torch.backends.cudnn.allow_tf32 = allow_tf32 # Allow PyTorch to internally use tf32 for convolutions
conv2d_gradfix.enabled = True # Improves training speed.
grid_sample_gradfix.enabled = True # Avoids errors with the augmentation pipe.
# Load training set.
if rank == 0:
print('Loading training set...')
training_set = dnnlib.util.construct_class_by_name(**training_set_kwargs) # subclass of training.dataset.Dataset
training_set_sampler = misc.InfiniteSampler(dataset=training_set, rank=rank, num_replicas=num_gpus, seed=random_seed)
training_set_iterator = iter(torch.utils.data.DataLoader(dataset=training_set, sampler=training_set_sampler, batch_size=batch_size//num_gpus, **data_loader_kwargs))
if rank == 0:
print()
print('Num videos: ', len(training_set))
print('Image shape:', training_set.image_shape)
print('Label shape:', training_set.label_shape)
print()
# Construct networks.
if rank == 0:
print('Constructing networks...')
common_kwargs = dict(c_dim=training_set.label_dim, img_resolution=training_set.resolution, img_channels=training_set.num_channels)
G = dnnlib.util.construct_class_by_name(**G_kwargs, **common_kwargs).train().requires_grad_(False).to(device) # subclass of torch.nn.Module
D = dnnlib.util.construct_class_by_name(**D_kwargs, **common_kwargs).train().requires_grad_(False).to(device) # subclass of torch.nn.Module
G_ema = copy.deepcopy(G).eval()
# Resume from existing pickle.
if (resume_pkl is not None):
if rank == 0:
print(f'Resuming from "{resume_pkl}"')
with dnnlib.util.open_url(resume_pkl) as f:
resume_data = src.legacy.load_network_pkl(f)
if rank == 0:
for name, module in [('G', G), ('D', D), ('G_ema', G_ema)]:
misc.copy_params_and_buffers(resume_data[name], module, require_all=False)
else:
resume_data = None
cur_nimg = 0 if not resume_whole_state else resume_data['stats']['cur_nimg']
cur_tick = 0 if not resume_whole_state else resume_data['stats']['cur_tick']
batch_idx = 0 if not resume_whole_state else resume_data['stats']['batch_idx']
tick_start_nimg = cur_nimg
# Print network summary tables.
if rank == 0 and not resume_whole_state:
z = torch.empty([batch_gpu, G.z_dim], device=device) # [bf, z_dim]
c = torch.empty([batch_gpu, G.c_dim], device=device) # [b, c_dim]
t = torch.zeros([batch_gpu, cfg.sampling.num_frames_per_video], device=device).long() # [b, f]
img = misc.print_module_summary(G, [z, c, t]) # [bf, c, h, w]
misc.print_module_summary(D, [img, c, t])
# Setup augmentation.
if rank == 0:
print('Setting up augmentation...')
if (augment_kwargs is not None) and (augment_p > 0 or ada_target is not None):
augment_pipe = dnnlib.util.construct_class_by_name(**augment_kwargs).train().requires_grad_(False).to(device) # subclass of torch.nn.Module
augment_pipe.p.copy_(torch.as_tensor(augment_p))
if ada_target is not None:
ada_stats = training_stats.Collector(regex='Loss/signs/real')
else:
ada_stats = None
if resume_whole_state:
misc.copy_params_and_buffers(resume_data['augment_pipe'], augment_pipe, require_all=False)
else:
augment_pipe = None
ada_stats = None
# Distribute across GPUs.
if rank == 0:
print(f'Distributing across {num_gpus} GPUs...')
ddp_modules = dict()
modules = [
('G_mapping', G.mapping),
('G_synthesis', G.synthesis),
('D', D),
(None, G_ema),
('augment_pipe', augment_pipe),
]
if cfg.model.loss_kwargs.motion_reg.coef > 0.0:
modules.append(('G_motion_encoder', G.synthesis.motion_encoder))
for name, module in modules:
if (num_gpus > 1) and (module is not None) and len(list(module.parameters())) != 0:
module.requires_grad_(True)
module = torch.nn.parallel.DistributedDataParallel(module, device_ids=[device], broadcast_buffers=False)
module.requires_grad_(False)
if name is not None:
ddp_modules[name] = module
# Setup training phases.
if rank == 0:
print('Setting up training phases...')
loss = dnnlib.util.construct_class_by_name(device=device, **ddp_modules, **loss_kwargs) # subclass of training.loss.Loss
phases = []
for name, module, opt_kwargs, reg_interval in [('G', G, G_opt_kwargs, G_reg_interval), ('D', D, D_opt_kwargs, D_reg_interval)]:
if reg_interval is None:
params = module.params_with_lr(opt_kwargs.lr) if hasattr(module, 'params_with_lr') else module.parameters()
opt = dnnlib.util.construct_class_by_name(params=params, **opt_kwargs) # subclass of torch.optim.Optimizer
phases += [dnnlib.EasyDict(name=name+'both', module=module, opt=opt, interval=1)]
else: # Lazy regularization.
mb_ratio = reg_interval / (reg_interval + 1)
opt_kwargs = dnnlib.EasyDict(opt_kwargs)
opt_kwargs.lr = opt_kwargs.lr * mb_ratio
opt_kwargs.betas = [beta ** mb_ratio for beta in opt_kwargs.betas]
params = module.params_with_lr(opt_kwargs.lr) if hasattr(module, 'params_with_lr') else module.parameters()
opt = dnnlib.util.construct_class_by_name(params=params, **opt_kwargs) # subclass of torch.optim.Optimizer
phases += [dnnlib.EasyDict(name=name+'main', module=module, opt=opt, interval=1)]
phases += [dnnlib.EasyDict(name=name+'reg', module=module, opt=opt, interval=reg_interval)]
for phase in phases:
if rank == 0:
phase.start_event = torch.cuda.Event(enable_timing=True)
phase.end_event = torch.cuda.Event(enable_timing=True)
else:
phase.start_event = None
phase.end_event = None
phase.start_event_recorded = False
phase.end_event_recorded = False
# Ok, we need to extract G_opt and D_opt back from phases since we want to save them...
G_opt = next(p.opt for p in phases if p.name in {'Gboth', 'Gmain', 'Greg'})
D_opt = next(p.opt for p in phases if p.name in {'Dboth', 'Dmain', 'Dreg'})
if resume_whole_state:
G_opt.load_state_dict(resume_data['G_opt'].state_dict())
D_opt.load_state_dict(resume_data['D_opt'].state_dict())
# Export sample images.
if rank == 0:
if not resume_whole_state:
vis = dnnlib.EasyDict(num_videos={128: 36, 256: 25, 512: 9, 1024: 1}[training_set.resolution])
print('Exporting sample images...')
vis.grid_size, images, vis.labels, vis.frames_idx = setup_snapshot_image_grid(training_set=training_set)
save_image_grid(images[:, 0], os.path.join(run_dir, 'reals.jpg'), drange=[0,255], grid_size=vis.grid_size)
vis.grid_z = torch.randn([vis.labels.shape[0], G.z_dim], device=device).split(batch_gpu) # (num_batches, [batch_size, z_dim])
vis.grid_c = torch.from_numpy(vis.labels).to(device).split(batch_gpu) # (num_batches, [batch_size, c_dim])
vis.grid_t = torch.from_numpy(vis.frames_idx).to(device).split(batch_gpu) # (num_batches, [batch_size, num_frames])
images = torch.cat([G_ema(z=z, c=c, t=t[:, [0]], noise_mode='const').cpu() for z, c, t in zip(vis.grid_z, vis.grid_c, vis.grid_t)]).numpy()
save_image_grid(images, os.path.join(run_dir, 'fakes_init.jpg'), drange=[-1,1], grid_size=vis.grid_size)
# Generating data for videos
assert len(vis.labels) >= vis.num_videos
vis.video_len = {128: 150, 256: 150, 512: 32, 1024: 4}[training_set.resolution]
vis.vgrid_z = torch.randn(vis.num_videos, G_ema.z_dim, device=device) # [batch_size, z_dim]
vis.vgrid_c = torch.from_numpy(vis.labels)[:vis.num_videos].to(device) # [batch_size, c_dim]
vis.ts = torch.arange(vis.video_len, device=device).float().unsqueeze(0).repeat(vis.num_videos, 1) # [batch_size, video_len]
else:
vis = dnnlib.EasyDict(**resume_data['vis'])
for k in vis:
if isinstance(vis[k], torch.Tensor):
vis[k] = vis[k].to(device)
images = torch.cat([G_ema(z=z, c=c, t=t[:, [0]], noise_mode='const').cpu() for z, c, t in zip(vis.grid_z, vis.grid_c, vis.grid_t)]).numpy()
save_image_grid(images, os.path.join(run_dir, f'fakes_resume_{cur_nimg}.jpg'), drange=[-1,1], grid_size=vis.grid_size)
else:
vis = dnnlib.EasyDict()
# Initialize logs.
if rank == 0:
print('Initializing logs...')
stats_collector = training_stats.Collector(regex='.*')
stats_metrics = dict()
stats_jsonl = None
stats_tfevents = None
if rank == 0:
stats_jsonl = open(os.path.join(run_dir, 'stats.jsonl'), 'wt')
try:
stats_tfevents = SummaryWriter(run_dir)
if not resume_whole_state:
config_yaml = OmegaConf.to_yaml(cfg)
stats_tfevents.add_text(f'config', text_to_markdown(config_yaml), global_step=0, walltime=time.time())
except ImportError as err:
print('Skipping tfevents export:', err)
# Train.
if rank == 0:
print(f'Training for {total_kimg} kimg...')
print()
tick_start_time = time.time()
maintenance_time = tick_start_time - start_time
if progress_fn is not None:
progress_fn(cur_nimg, total_kimg)
# Convert to bool since hydra has a very slow access time...
use_fractional_t_for_G = bool(cfg.model.generator.motion.use_fractional_t)
while True:
# Fetch training data.
with torch.autograd.profiler.record_function('data_fetch'):
batch = next(training_set_iterator)
phase_real_img, phase_real_c, phase_real_t, phase_real_l = batch['image'], batch['label'], batch['times'], batch['video_len']
phase_real_img = (phase_real_img.to(device).to(torch.float32) / 127.5 - 1).split(batch_gpu)
phase_real_c = phase_real_c.to(device).split(batch_gpu) # [batch_gpu, batch_size, c_dim]
phase_real_t = phase_real_t.to(device).split(batch_gpu) # [batch_gpu, batch_size, c_dim]
all_gen_z = torch.randn([len(phases) * batch_size, G.z_dim], device=device)
all_gen_z = [phase_gen_z.split(batch_gpu) for phase_gen_z in all_gen_z.split(batch_size)]
gen_cond_sample_idx = [np.random.randint(len(training_set)) for _ in range(len(phases) * batch_size)]
all_gen_c = [training_set.get_label(i) for i in gen_cond_sample_idx]
all_gen_c = torch.from_numpy(np.stack(all_gen_c)).pin_memory().to(device)
all_gen_c = [phase_gen_c.split(batch_gpu) for phase_gen_c in all_gen_c.split(batch_size)]
all_gen_l = [min(training_set.get_video_len(i), G.sampling_dict['max_num_frames']) for i in gen_cond_sample_idx]
all_gen_t = [sample_frames(G.sampling_dict, use_fractional_t=use_fractional_t_for_G, total_video_len=l) for l in all_gen_l]
all_gen_t = torch.from_numpy(np.stack(all_gen_t)).pin_memory().to(device)
all_gen_t = [phase_gen_t.split(batch_gpu) for phase_gen_t in all_gen_t.split(batch_size)]
# Execute training phases.
for phase, phase_gen_z, phase_gen_c, phase_gen_t in zip(phases, all_gen_z, all_gen_c, all_gen_t):
if batch_idx % phase.interval != 0:
continue
# Initialize gradient accumulation.
if phase.start_event is not None:
phase.start_event.record(torch.cuda.current_stream(device))
phase.start_event_recorded = True
phase.opt.zero_grad(set_to_none=True)
phase.module.requires_grad_(True)
phase.module.train()
# Accumulate gradients over multiple rounds.
curr_data = zip(phase_real_img, phase_real_c, phase_real_t, phase_gen_z, phase_gen_c, phase_gen_t)
for round_idx, (real_img, real_c, real_t, gen_z, gen_c, gen_t) in enumerate(curr_data):
sync = (round_idx == batch_size // (batch_gpu * num_gpus) - 1)
gain = phase.interval
loss.accumulate_gradients(
phase=phase.name,
real_img=real_img,
real_c=real_c,
real_t=real_t,
gen_z=gen_z,
gen_c=gen_c,
gen_t=gen_t,
sync=sync,
gain=gain)
# Update weights.
phase.module.requires_grad_(False)
with torch.autograd.profiler.record_function(phase.name + '_opt'):
for param in phase.module.parameters():
if param.grad is not None:
misc.nan_to_num(param.grad, nan=0, posinf=1e5, neginf=-1e5, out=param.grad)
phase.opt.step()
if phase.end_event is not None:
phase.end_event.record(torch.cuda.current_stream(device))
phase.end_event_recorded = True
# Update G_ema.
with torch.autograd.profiler.record_function('Gema'):
ema_nimg = ema_kimg * 1000
if ema_rampup is not None:
ema_nimg = min(ema_nimg, cur_nimg * ema_rampup)
ema_beta = 0.5 ** (batch_size / max(ema_nimg, 1e-8))
for p_ema, p in zip(G_ema.parameters(), G.parameters()):
p_ema.copy_(p.lerp(p_ema, ema_beta))
for b_ema, b in zip(G_ema.buffers(), G.buffers()):
b_ema.copy_(b)
# Update state.
cur_nimg += batch_size * cfg.sampling.num_frames_per_video
batch_idx += 1
# Execute ADA heuristic.
if (ada_stats is not None) and (batch_idx % ada_interval == 0):
ada_stats.update()
adjust = np.sign(ada_stats['Loss/signs/real'] - ada_target) * (batch_size * ada_interval) / (ada_kimg * 1000)
augment_pipe.p.copy_((augment_pipe.p + adjust).max(misc.constant(0, device=device)))
# Perform maintenance tasks once per tick.
done = (cur_nimg >= total_kimg * 1000)
if (not done) and (cur_tick != 0) and (cur_nimg < tick_start_nimg + kimg_per_tick * 1000):
continue
# Print status line, accumulating the same information in stats_collector.
tick_end_time = time.time()
fields = []
fields += [f"tick {training_stats.report0('Progress/tick', cur_tick):<5d}"]
fields += [f"kimg {training_stats.report0('Progress/kimg', cur_nimg / 1e3):<8.1f}"]
fields += [f"time {dnnlib.util.format_time(training_stats.report0('Timing/total_sec', tick_end_time - start_time)):<12s}"]
fields += [f"sec/tick {training_stats.report0('Timing/sec_per_tick', tick_end_time - tick_start_time):<7.1f}"]
fields += [f"sec/kimg {training_stats.report0('Timing/sec_per_kimg', (tick_end_time - tick_start_time) / (cur_nimg - tick_start_nimg) * 1e3):<7.2f}"]
fields += [f"maintenance {training_stats.report0('Timing/maintenance_sec', maintenance_time):<6.1f}"]
#fields += [f"cpumem {training_stats.report0('Resources/cpu_mem_gb', psutil.Process(os.getpid()).memory_info().rss / 2**30):<6.2f}"]
fields += [f"gpumem {training_stats.report0('Resources/peak_gpu_mem_gb', torch.cuda.max_memory_allocated(device) / 2**30):<6.2f}"]
torch.cuda.reset_peak_memory_stats()
fields += [f"augment {training_stats.report0('Progress/augment', float(augment_pipe.p.cpu()) if augment_pipe is not None else 0):.3f}"]
training_stats.report0('Timing/total_hours', (tick_end_time - start_time) / (60 * 60))
training_stats.report0('Timing/total_days', (tick_end_time - start_time) / (24 * 60 * 60))
if rank == 0:
print(' '.join(fields))
# Check for abort.
if (not done) and (abort_fn is not None) and abort_fn():
done = True
if rank == 0:
print()
print('Aborting...')
# Save image snapshot.
if (rank == 0) and (image_snapshot_ticks is not None) and (done or cur_tick % image_snapshot_ticks == 0):
images = torch.cat([G_ema(z=z, c=c, t=t[:, [0]], noise_mode='const').cpu() for z, c, t in zip(vis.grid_z, vis.grid_c, vis.grid_t)]).numpy()
save_image_grid(images, os.path.join(run_dir, f'fakes{cur_nimg//1000:06d}.jpg'), drange=[-1,1], grid_size=vis.grid_size)
# Saving videos
videos_diff_motion = generate_videos(G_ema, vis.vgrid_z, vis.vgrid_c, vis.ts, as_grids=True) # [video_len, 3, h, w]
if not G_ema.synthesis.motion_encoder is None:
with torch.no_grad():
motion_z = G_ema.synthesis.motion_encoder(c=vis.vgrid_c[[0]], t=vis.ts[[0]])['motion_z'] # [1, *motion_dims]
motion_z = motion_z.repeat_interleave(len(vis.ts), dim=0) # [batch_size, *motion_dims]
videos_same_motion = generate_videos(G_ema, vis.vgrid_z, vis.vgrid_c, vis.ts, motion_z=motion_z, as_grids=True) # [video_len, 3, h, w]
assert videos_diff_motion.shape == videos_same_motion.shape, f"Wrong shape: {videos_diff_motion.shape} != {videos_same_motion.shape}"
pad_size = 64
videos_to_save = torch.cat([
videos_diff_motion,
torch.ones_like(videos_diff_motion[:, :, :, :pad_size]), # Some padding between the videos
videos_same_motion,
], dim=3) # [video_len, 3, h, w + pad_size + w]
else:
videos_to_save = videos_diff_motion
videos_to_save = (videos_to_save * 255).to(torch.uint8).permute(0, 2, 3, 1) # [T, H, W, C]
torchvision.io.write_video(os.path.join(run_dir, f'{experiment_name}_videos_{cur_nimg//1000:06d}.mp4'), videos_to_save, fps=cfg.dataset.fps, video_codec='h264', options={'crf': '10'})
# save_video_frames_as_mp4(videos_to_save, cfg.dataset.fps, os.path.join(run_dir, f'{experiment_name}_videos_{cur_nimg//1000:06d}.mp4'))
# if not stats_tfevents is None:
# stats_tfevents.add_video('videos', videos_to_save.unsqueeze(0), global_step=int(cur_nimg / 1e3), walltime=time.time() - start_time)
# Save network snapshot.
snapshot_pkl = None
snapshot_data = None
snapshot_modules = [
('G', G),
('D', D),
('G_ema', G_ema),
('augment_pipe', augment_pipe),
('G_opt', G_opt),
('D_opt', D_opt),
('vis', {k: (v.to('cpu') if isinstance(v, torch.Tensor) else v) for k, v in vis.items()}),
('stats', {'cur_nimg': cur_nimg, 'cur_tick': cur_tick, 'batch_idx': batch_idx}),
]
if (network_snapshot_ticks is not None) and (done or cur_tick % network_snapshot_ticks == 0):
snapshot_data = dict(training_set_kwargs=dict(training_set_kwargs))
DDP_CONSISTENCY_IGNORE_REGEX = r'.*\.(w_avg|p|rnn\..*|embeds.*\.weight|num_batches_tracked|running_mean|running_var)'
for name, module in snapshot_modules:
if module is not None:
if isinstance(module, torch.nn.Module):
if num_gpus > 1:
misc.check_ddp_consistency(module, ignore_regex=DDP_CONSISTENCY_IGNORE_REGEX)
module = copy.deepcopy(module).eval().requires_grad_(False).cpu()
else:
module = copy.deepcopy(module)
snapshot_data[name] = module
del module # conserve memory
snapshot_pkl = os.path.join(run_dir, f'network-snapshot-{cur_nimg//1000:06d}.pkl')
if rank == 0:
with open(snapshot_pkl, 'wb') as f:
pickle.dump(snapshot_data, f)
# Evaluate metrics.
if (snapshot_data is not None) and (len(metrics) > 0):
if rank == 0:
print(f'Evaluating metrics for {experiment_name} ...')
for metric in metrics:
result_dict = metric_main.calc_metric(
metric=metric,
G=snapshot_data['G_ema'],
dataset_kwargs=training_set_kwargs,
num_gpus=num_gpus,
rank=rank,
device=device)
if rank == 0:
metric_main.report_metric(result_dict, run_dir=run_dir, snapshot_pkl=snapshot_pkl)
stats_metrics.update(result_dict.results)
del snapshot_data # conserve memory
# Collect statistics.
for phase in phases:
value = []
if (phase.start_event is not None) and (phase.end_event is not None) and phase.start_event_recorded and phase.end_event_recorded:
phase.end_event.synchronize()
value = phase.start_event.elapsed_time(phase.end_event)
training_stats.report0('Timing/' + phase.name, value)
stats_collector.update()
stats_dict = stats_collector.as_dict()
# Update logs.
timestamp = time.time()
if stats_jsonl is not None:
fields = dict(stats_dict, timestamp=timestamp)
stats_jsonl.write(json.dumps(fields) + '\n')
stats_jsonl.flush()
if stats_tfevents is not None:
global_step = int(cur_nimg / 1e3)
for name, value in stats_dict.items():
stats_tfevents.add_scalar(name, value.mean, global_step=global_step, walltime=timestamp)
for name, value in stats_metrics.items():
stats_tfevents.add_scalar(f'Metrics/{name}', value, global_step=global_step, walltime=timestamp)
stats_tfevents.flush()
if progress_fn is not None:
progress_fn(cur_nimg // 1000, total_kimg)
# Update state.
cur_tick += 1
tick_start_nimg = cur_nimg
tick_start_time = time.time()
maintenance_time = tick_start_time - tick_end_time
if done:
break
# Done.
if rank == 0:
print()
print('Exiting...')
#----------------------------------------------------------------------------
def text_to_markdown(text: str) -> str:
"""
Converts an arbitrarily text into a text that would be well-displayed in TensorBoard.
TensorBoard uses markdown to render the text that's why it strips spaces and line breaks.
This function fixes that.
"""
text = text.replace(' ', '&nbsp;&nbsp;') # Because markdown does not support text indentation normally...
text = text.replace('\n', ' \n') # Because tensorboard uses markdown
return text
#----------------------------------------------------------------------------