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train_3d.py
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train_3d.py
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# Copyright (c) 2022, NVIDIA CORPORATION & AFFILIATES. All rights reserved.
#
# NVIDIA CORPORATION & AFFILIATES 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 & AFFILIATES is strictly prohibited.
import os
import click
import re
import json
import tempfile
import torch
import dnnlib
from training import training_loop_3d
from metrics import metric_main
from torch_utils import training_stats
from torch_utils import custom_ops
from training import inference_3d
# ----------------------------------------------------------------------------
def subprocess_fn(rank, c, temp_dir):
dnnlib.util.Logger(file_name=os.path.join(c.run_dir, 'log.txt'), file_mode='a', should_flush=True)
# Init torch.distributed.
if c.num_gpus > 1:
init_file = os.path.abspath(os.path.join(temp_dir, '.torch_distributed_init'))
if os.name == 'nt':
init_method = 'file:///' + init_file.replace('\\', '/')
torch.distributed.init_process_group(
backend='gloo', init_method=init_method, rank=rank, world_size=c.num_gpus)
else:
init_method = f'file://{init_file}'
torch.distributed.init_process_group(
backend='nccl', init_method=init_method, rank=rank, world_size=c.num_gpus)
# Init torch_utils.
sync_device = torch.device('cuda', rank) if c.num_gpus > 1 else None
training_stats.init_multiprocessing(rank=rank, sync_device=sync_device)
if rank != 0:
custom_ops.verbosity = 'none'
if c.inference_vis:
inference_3d.inference(rank=rank, **c)
# Execute training loop.
else:
training_loop_3d.training_loop(rank=rank, **c)
# ----------------------------------------------------------------------------
def launch_training(c, desc, outdir, dry_run):
dnnlib.util.Logger(should_flush=True)
# Pick output directory.
prev_run_dirs = []
if os.path.isdir(outdir):
prev_run_dirs = [x for x in os.listdir(outdir) if os.path.isdir(os.path.join(outdir, x))]
prev_run_ids = [re.match(r'^\d+', x) for x in prev_run_dirs]
prev_run_ids = [int(x.group()) for x in prev_run_ids if x is not None]
cur_run_id = max(prev_run_ids, default=-1) + 1
if c.inference_vis:
c.run_dir = os.path.join(outdir, 'inference')
else:
c.run_dir = os.path.join(outdir, f'{cur_run_id:05d}-{desc}')
assert not os.path.exists(c.run_dir)
# Print options.
print()
print('Training options:')
print(json.dumps(c, indent=2))
print()
print(f'Output directory: {c.run_dir}')
print(f'Number of GPUs: {c.num_gpus}')
print(f'Batch size: {c.batch_size} images')
print(f'Training duration: {c.total_kimg} kimg')
print(f'Dataset path: {c.training_set_kwargs.path}')
print(f'Dataset size: {c.training_set_kwargs.max_size} images')
print(f'Dataset resolution: {c.training_set_kwargs.resolution}')
print(f'Dataset labels: {c.training_set_kwargs.use_labels}')
print(f'Dataset x-flips: {c.training_set_kwargs.xflip}')
print()
# Dry run?
if dry_run:
print('Dry run; exiting.')
return
# Create output directory.
print('Creating output directory...')
if not os.path.exists(c.run_dir):
os.makedirs(c.run_dir)
with open(os.path.join(c.run_dir, 'training_options.json'), 'wt') as f:
json.dump(c, f, indent=2)
# Launch processes.
print('Launching processes...')
torch.multiprocessing.set_start_method('spawn', force=True)
with tempfile.TemporaryDirectory() as temp_dir:
if c.num_gpus == 1:
subprocess_fn(rank=0, c=c, temp_dir=temp_dir)
else:
torch.multiprocessing.spawn(fn=subprocess_fn, args=(c, temp_dir), nprocs=c.num_gpus)
# ----------------------------------------------------------------------------
def init_dataset_kwargs(data, opt=None):
try:
if opt.use_shapenet_split:
dataset_kwargs = dnnlib.EasyDict(
class_name='training.dataset.ImageFolderDataset',
path=data, use_labels=True, max_size=None, xflip=False,
resolution=opt.img_res,
data_camera_mode=opt.data_camera_mode,
add_camera_cond=opt.add_camera_cond,
camera_path=opt.camera_path,
split='test' if opt.inference_vis else 'train',
)
else:
dataset_kwargs = dnnlib.EasyDict(
class_name='training.dataset.ImageFolderDataset',
path=data, use_labels=True, max_size=None, xflip=False, resolution=opt.img_res,
data_camera_mode=opt.data_camera_mode,
add_camera_cond=opt.add_camera_cond,
camera_path=opt.camera_path,
)
dataset_obj = dnnlib.util.construct_class_by_name(**dataset_kwargs) # Subclass of training.dataset.Dataset.
dataset_kwargs.camera_path = opt.camera_path
dataset_kwargs.resolution = dataset_obj.resolution # Be explicit about resolution.
dataset_kwargs.use_labels = dataset_obj.has_labels # Be explicit about labels.
dataset_kwargs.max_size = len(dataset_obj) # Be explicit about dataset size.
return dataset_kwargs, dataset_obj.name
except IOError as err:
raise click.ClickException(f'--data: {err}')
# ----------------------------------------------------------------------------
def parse_comma_separated_list(s):
if isinstance(s, list):
return s
if s is None or s.lower() == 'none' or s == '':
return []
return s.split(',')
# ----------------------------------------------------------------------------
@click.command()
# Required from StyleGAN2.
@click.option('--outdir', help='Where to save the results', metavar='DIR', required=True)
@click.option('--cfg', help='Base configuration', type=click.Choice(['stylegan3-t', 'stylegan3-r', 'stylegan2']), default='stylegan2')
@click.option('--gpus', help='Number of GPUs to use', metavar='INT', type=click.IntRange(min=1), required=True)
@click.option('--batch', help='Total batch size', metavar='INT', type=click.IntRange(min=1), required=True)
@click.option('--gamma', help='R1 regularization weight', metavar='FLOAT', type=click.FloatRange(min=0), required=True)
# My custom configs
### Configs for inference
@click.option('--resume_pretrain', help='Resume from given network pickle', metavar='[PATH|URL]', type=str)
@click.option('--inference_vis', help='whther we run infernce', metavar='BOOL', type=bool, default=False, show_default=True)
@click.option('--inference_to_generate_textured_mesh', help='inference to generate textured meshes', metavar='BOOL', type=bool, default=False, show_default=False)
@click.option('--inference_save_interpolation', help='inference to generate interpolation results', metavar='BOOL', type=bool, default=False, show_default=False)
@click.option('--inference_compute_fid', help='inference to generate interpolation results', metavar='BOOL', type=bool, default=False, show_default=False)
@click.option('--inference_generate_geo', help='inference to generate geometry points', metavar='BOOL', type=bool, default=False, show_default=False)
### Configs for dataset
@click.option('--data', help='Path to the Training data Images', metavar='[DIR]', type=str, default='./tmp')
@click.option('--camera_path', help='Path to the camera root', metavar='[DIR]', type=str, default='./tmp')
@click.option('--img_res', help='The resolution of image', metavar='INT', type=click.IntRange(min=1), default=1024)
@click.option('--data_camera_mode', help='The type of dataset we are using', type=str, default='shapenet_car', show_default=True)
@click.option('--use_shapenet_split', help='whether use the training split or all the data for training', metavar='BOOL', type=bool, default=False, show_default=False)
### Configs for 3D generator##########
@click.option('--iso_surface', help='Differentiable iso-surfacing method', type=click.Choice(['dmtet', 'flexicubes']), default='dmtet')
@click.option('--use_style_mixing', help='whether use style mixing for generation during inference', metavar='BOOL', type=bool, default=True, show_default=False)
@click.option('--one_3d_generator', help='whether we detach the gradient for empty object', metavar='BOOL', type=bool, default=True, show_default=True)
@click.option('--dmtet_scale', help='Scale for the dimention of dmtet', metavar='FLOAT', type=click.FloatRange(min=0, max=10.0), default=1.0, show_default=True)
@click.option('--n_implicit_layer', help='Number of Implicit FC layer for XYZPlaneTex model', metavar='INT', type=click.IntRange(min=1), default=1)
@click.option('--feat_channel', help='Feature channel for TORGB layer', metavar='INT', type=click.IntRange(min=0), default=16)
@click.option('--mlp_latent_channel', help='mlp_latent_channel for XYZPlaneTex network', metavar='INT', type=click.IntRange(min=8), default=32)
@click.option('--deformation_multiplier', help='Multiplier for the predicted deformation', metavar='FLOAT', type=click.FloatRange(min=1.0), default=1.0, required=False)
@click.option('--tri_plane_resolution', help='The resolution for tri plane', metavar='INT', type=click.IntRange(min=1), default=256)
@click.option('--n_views', help='number of views when training generator', metavar='INT', type=click.IntRange(min=1), default=1)
@click.option('--use_tri_plane', help='Whether use tri plane representation', metavar='BOOL', type=bool, default=True, show_default=True)
@click.option('--tet_res', help='Resolution for teteahedron', metavar='INT', type=click.IntRange(min=1), default=90)
@click.option('--latent_dim', help='Dimention for latent code', metavar='INT', type=click.IntRange(min=1), default=512)
@click.option('--geometry_type', help='The type of geometry generator', type=str, default='conv3d', show_default=True)
@click.option('--render_type', help='Type of renderer we used', metavar='STR', type=click.Choice(['neural_render', 'spherical_gaussian']), default='neural_render', show_default=True)
### Configs for training loss and discriminator#
@click.option('--d_architecture', help='The architecture for discriminator', metavar='STR', type=str, default='skip', show_default=True)
@click.option('--use_pl_length', help='whether we apply path length regularization', metavar='BOOL', type=bool, default=False, show_default=False) # We didn't use path lenth regularzation to avoid nan error
@click.option('--gamma_mask', help='R1 regularization weight for mask', metavar='FLOAT', type=click.FloatRange(min=0), default=0.0, required=False)
@click.option('--d_reg_interval', help='The internal for R1 regularization', metavar='INT', type=click.IntRange(min=1), default=16)
@click.option('--add_camera_cond', help='Whether we add camera as condition for discriminator', metavar='BOOL', type=bool, default=True, show_default=True)
@click.option('--lambda_flexicubes_surface_reg', help='Weights for flexicubes regularization L_dev', metavar='FLOAT', type=click.FloatRange(min=0), default=0.5, required=False)
@click.option('--lambda_flexicubes_weights_reg', help='Weights for flexicubes regularization on weights', metavar='FLOAT', type=click.FloatRange(min=0), default=0.1, required=False)
## Miscs
# Optional features.
@click.option('--cond', help='Train conditional model', metavar='BOOL', type=bool, default=False, show_default=True)
@click.option('--freezed', help='Freeze first layers of D', metavar='INT', type=click.IntRange(min=0), default=0, show_default=True)
# Misc hyperparameters.
@click.option('--batch-gpu', help='Limit batch size per GPU', metavar='INT', type=click.IntRange(min=1), default=4)
@click.option('--cbase', help='Capacity multiplier', metavar='INT', type=click.IntRange(min=1), default=32768, show_default=True)
@click.option('--cmax', help='Max. feature maps', metavar='INT', type=click.IntRange(min=1), default=512, show_default=True)
@click.option('--glr', help='G learning rate [default: varies]', metavar='FLOAT', type=click.FloatRange(min=0))
@click.option('--dlr', help='D learning rate', metavar='FLOAT', type=click.FloatRange(min=0), default=0.002, show_default=True)
@click.option('--map-depth', help='Mapping network depth [default: varies]', metavar='INT', type=click.IntRange(min=1))
@click.option('--mbstd-group', help='Minibatch std group size', metavar='INT', type=click.IntRange(min=1), default=4, show_default=True)
# Misc settings.
@click.option('--desc', help='String to include in result dir name', metavar='STR', type=str)
@click.option('--metrics', help='Quality metrics', metavar='[NAME|A,B,C|none]', type=parse_comma_separated_list, default='fid50k', show_default=True)
@click.option('--kimg', help='Total training duration', metavar='KIMG', type=click.IntRange(min=1), default=20000, show_default=True)
@click.option('--tick', help='How often to print progress', metavar='KIMG', type=click.IntRange(min=1), default=1, show_default=True) ##
@click.option('--snap', help='How often to save snapshots', metavar='TICKS', type=click.IntRange(min=1), default=50, show_default=True) ###
@click.option('--seed', help='Random seed', metavar='INT', type=click.IntRange(min=0), default=0, show_default=True)
@click.option('--fp32', help='Disable mixed-precision', metavar='BOOL', type=bool, default=True, show_default=True) # Let's use fp32 all the case without clamping
@click.option('--nobench', help='Disable cuDNN benchmarking', metavar='BOOL', type=bool, default=False, show_default=True)
@click.option('--workers', help='DataLoader worker processes', metavar='INT', type=click.IntRange(min=0), default=3, show_default=True)
@click.option('-n', '--dry-run', help='Print training options and exit', is_flag=True)
def main(**kwargs):
# Initialize config.
print('==> start')
opts = dnnlib.EasyDict(kwargs) # Command line arguments.
c = dnnlib.EasyDict() # Main config dict.
c.G_kwargs = dnnlib.EasyDict(
class_name=None, z_dim=opts.latent_dim, w_dim=opts.latent_dim, mapping_kwargs=dnnlib.EasyDict())
c.D_kwargs = dnnlib.EasyDict(
class_name='training.networks_get3d.Discriminator', block_kwargs=dnnlib.EasyDict(),
mapping_kwargs=dnnlib.EasyDict(), epilogue_kwargs=dnnlib.EasyDict())
c.G_opt_kwargs = dnnlib.EasyDict(class_name='torch.optim.Adam', betas=[0, 0.99], eps=1e-8)
c.D_opt_kwargs = dnnlib.EasyDict(class_name='torch.optim.Adam', betas=[0, 0.99], eps=1e-8)
c.loss_kwargs = dnnlib.EasyDict(class_name='training.loss.StyleGAN2Loss')
c.data_loader_kwargs = dnnlib.EasyDict(pin_memory=True, prefetch_factor=2)
c.inference_vis = opts.inference_vis
# Training set.
if opts.inference_vis:
c.inference_to_generate_textured_mesh = opts.inference_to_generate_textured_mesh
c.inference_save_interpolation = opts.inference_save_interpolation
c.inference_compute_fid = opts.inference_compute_fid
c.inference_generate_geo = opts.inference_generate_geo
c.training_set_kwargs, dataset_name = init_dataset_kwargs(data=opts.data, opt=opts)
if opts.cond and not c.training_set_kwargs.use_labels:
raise click.ClickException('--cond=True requires labels specified in dataset.json')
c.training_set_kwargs.split = 'train' if opts.use_shapenet_split else 'all'
if opts.use_shapenet_split and opts.inference_vis:
c.training_set_kwargs.split = 'test'
c.training_set_kwargs.use_labels = opts.cond
c.training_set_kwargs.xflip = False
# Hyperparameters & settings.p
c.G_kwargs.iso_surface = opts.iso_surface
c.G_kwargs.one_3d_generator = opts.one_3d_generator
c.G_kwargs.n_implicit_layer = opts.n_implicit_layer
c.G_kwargs.deformation_multiplier = opts.deformation_multiplier
c.resume_pretrain = opts.resume_pretrain
c.D_reg_interval = opts.d_reg_interval
c.G_kwargs.use_style_mixing = opts.use_style_mixing
c.G_kwargs.dmtet_scale = opts.dmtet_scale
c.G_kwargs.feat_channel = opts.feat_channel
c.G_kwargs.mlp_latent_channel = opts.mlp_latent_channel
c.G_kwargs.tri_plane_resolution = opts.tri_plane_resolution
c.G_kwargs.n_views = opts.n_views
c.G_kwargs.render_type = opts.render_type
c.G_kwargs.use_tri_plane = opts.use_tri_plane
c.D_kwargs.data_camera_mode = opts.data_camera_mode
c.D_kwargs.add_camera_cond = opts.add_camera_cond
c.G_kwargs.tet_res = opts.tet_res
c.G_kwargs.geometry_type = opts.geometry_type
c.num_gpus = opts.gpus
c.batch_size = opts.batch
c.batch_gpu = opts.batch_gpu or opts.batch // opts.gpus
# c.G_kwargs.geo_pos_enc = opts.geo_pos_enc
c.G_kwargs.data_camera_mode = opts.data_camera_mode
c.G_kwargs.channel_base = c.D_kwargs.channel_base = opts.cbase
c.G_kwargs.channel_max = c.D_kwargs.channel_max = opts.cmax
c.G_kwargs.mapping_kwargs.num_layers = 8
c.D_kwargs.architecture = opts.d_architecture
c.D_kwargs.block_kwargs.freeze_layers = opts.freezed
c.D_kwargs.epilogue_kwargs.mbstd_group_size = opts.mbstd_group
c.loss_kwargs.gamma_mask = opts.gamma if opts.gamma_mask == 0.0 else opts.gamma_mask
c.loss_kwargs.r1_gamma = opts.gamma
c.loss_kwargs.lambda_flexicubes_surface_reg = opts.lambda_flexicubes_surface_reg
c.loss_kwargs.lambda_flexicubes_weights_reg = opts.lambda_flexicubes_weights_reg
c.G_opt_kwargs.lr = (0.002 if opts.cfg == 'stylegan2' else 0.0025) if opts.glr is None else opts.glr
c.D_opt_kwargs.lr = opts.dlr
c.metrics = opts.metrics
c.total_kimg = opts.kimg
c.kimg_per_tick = opts.tick
c.image_snapshot_ticks = c.network_snapshot_ticks = opts.snap
c.random_seed = c.training_set_kwargs.random_seed = opts.seed
c.data_loader_kwargs.num_workers = opts.workers
c.network_snapshot_ticks = 200
# Sanity checks.
if c.batch_size % c.num_gpus != 0:
raise click.ClickException('--batch must be a multiple of --gpus')
if c.batch_size % (c.num_gpus * c.batch_gpu) != 0:
raise click.ClickException('--batch must be a multiple of --gpus times --batch-gpu')
if c.batch_gpu < c.D_kwargs.epilogue_kwargs.mbstd_group_size:
raise click.ClickException('--batch-gpu cannot be smaller than --mbstd')
if any(not metric_main.is_valid_metric(metric) for metric in c.metrics):
raise click.ClickException(
'\n'.join(['--metrics can only contain the following values:'] + metric_main.list_valid_metrics()))
# Base configuration.
c.ema_kimg = c.batch_size * 10 / 32
c.G_kwargs.class_name = 'training.networks_get3d.GeneratorDMTETMesh'
c.loss_kwargs.style_mixing_prob = 0.9 # Enable style mixing regularization.
c.loss_kwargs.pl_weight = 0.0 # Enable path length regularization.
c.G_reg_interval = 4 # Enable lazy regularization for G.
c.G_kwargs.fused_modconv_default = 'inference_only' # Speed up training by using regular convolutions instead of grouped convolutions.
# Performance-related toggles.
if opts.fp32:
c.G_kwargs.num_fp16_res = c.D_kwargs.num_fp16_res = 0
c.G_kwargs.conv_clamp = c.D_kwargs.conv_clamp = None
if opts.nobench:
c.cudnn_benchmark = False
# Description string.
desc = f'{opts.cfg:s}-{dataset_name:s}-gpus{c.num_gpus:d}-batch{c.batch_size:d}-gamma{c.loss_kwargs.r1_gamma:g}'
if opts.desc is not None:
desc += f'-{opts.desc}'
# Launch.
print('==> launch training')
launch_training(c=c, desc=desc, outdir=opts.outdir, dry_run=opts.dry_run)
# ----------------------------------------------------------------------------
#
if __name__ == "__main__":
main() # pylint: disable=no-value-for-parameter