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run_lib.py
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# coding=utf-8
# Copyright 2020 The Google Research Authors.
#
# Licensed under the Apache License, Version 2.0 (the "License");
# you may not use this file except in compliance with the License.
# You may obtain a copy of the License at
#
# http://www.apache.org/licenses/LICENSE-2.0
#
# Unless required by applicable law or agreed to in writing, software
# distributed under the License is distributed on an "AS IS" BASIS,
# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
# See the License for the specific language governing permissions and
# limitations under the License.
# pylint: skip-file
"""Training and evaluation for PFGM or score-based generative models. """
import gc
import io
import os
import time
import copy
import numpy as np
import tensorflow as tf
import tensorflow_gan as tfgan
import logging
# Keep the import below for registering all model definitions
from models import ncsnv2, ncsnpp
import losses
import sampling
from models import utils as mutils
from models.ema import ExponentialMovingAverage
import datasets
import evaluation
import likelihood
import methods
from absl import flags
import torch
torch.cuda.empty_cache()
from torch.utils import tensorboard
from torchvision.utils import make_grid, save_image
from utils import save_checkpoint, restore_checkpoint
import datasets_utils.celeba
FLAGS = flags.FLAGS
gpus = tf.config.list_physical_devices('GPU')
if gpus:
try:
# Currently, memory growth needs to be the same across GPUs
for gpu in gpus:
tf.config.experimental.set_memory_growth(gpu, True)
logical_gpus = tf.config.list_logical_devices('GPU')
print(len(gpus), "Physical GPUs,", len(logical_gpus), "Logical GPUs")
except RuntimeError as e:
# Memory growth must be set before GPUs have been initialized
print(e)
def train(config, workdir):
"""Runs the training pipeline.
Args:
config: Configuration to use.
workdir: Working directory for checkpoints and TF summaries. If this
contains checkpoint training will be resumed from the latest checkpoint.
"""
# Create directories for experimental logs
sample_dir = os.path.join(workdir, "samples")
tf.io.gfile.makedirs(sample_dir)
tb_dir = os.path.join(workdir, "tensorboard")
tf.io.gfile.makedirs(tb_dir)
writer = tensorboard.SummaryWriter(tb_dir)
# Initialize model.
net = mutils.create_model(config)
ema = ExponentialMovingAverage(net.parameters(), decay=config.model.ema_rate)
optimizer = losses.get_optimizer(config, net.parameters())
state = dict(optimizer=optimizer, model=net, ema=ema, step=0)
# Create checkpoints directory
checkpoint_dir = os.path.join(workdir, "checkpoints")
# Intermediate checkpoints to resume training after pre-emption in cloud environments
checkpoint_meta_dir = os.path.join(workdir, "checkpoints-meta", "checkpoint.pth")
tf.io.gfile.makedirs(checkpoint_dir)
tf.io.gfile.makedirs(os.path.dirname(checkpoint_meta_dir))
# Resume training when intermediate checkpoints are detected
state = restore_checkpoint(checkpoint_meta_dir, state, config.device)
initial_step = int(state['step'])
# Build data iterators
if config.data.dataset == 'CELEBA':
# I cannot load CelebA from tfds loader. So I write a pytorch loader instead.
train_ds, eval_ds = datasets_utils.celeba.get_celeba(config)
else:
train_ds, eval_ds, _ = datasets.get_dataset(config, uniform_dequantization=config.data.uniform_dequantization)
train_iter = iter(train_ds) # pytype: disable=wrong-arg-types
eval_iter = iter(eval_ds) # pytype: disable=wrong-arg-types
# Create data normalizer and its inverse
scaler = datasets.get_data_scaler(config)
inverse_scaler = datasets.get_data_inverse_scaler(config)
# Setup methods
if config.training.sde.lower() == 'vpsde':
sde = methods.VPSDE(config=config, beta_min=config.model.beta_min, beta_max=config.model.beta_max, N=config.model.num_scales)
sampling_eps = 1e-3
elif config.training.sde.lower() == 'subvpsde':
sde = methods.subVPSDE(config=config, beta_min=config.model.beta_min, beta_max=config.model.beta_max, N=config.model.num_scales)
sampling_eps = 1e-3
elif config.training.sde.lower() == 'vesde':
sde = methods.VESDE(config=config, sigma_min=config.model.sigma_min, sigma_max=config.model.sigma_max, N=config.model.num_scales)
sampling_eps = 1e-5
elif config.training.sde.lower() == 'poisson':
# PFGM
sde = methods.Poisson(config=config)
sampling_eps = config.sampling.z_min
else:
raise NotImplementedError(f"Method {config.training.sde} unknown.")
# Build one-step training and evaluation functions
optimize_fn = losses.optimization_manager(config)
reduce_mean = config.training.reduce_mean
method_name = config.training.sde.lower()
train_step_fn = losses.get_step_fn(sde, train=True, optimize_fn=optimize_fn,
reduce_mean=reduce_mean, method_name=method_name)
eval_step_fn = losses.get_step_fn(sde, train=False, optimize_fn=optimize_fn,
reduce_mean=reduce_mean, method_name=method_name)
# Building sampling functions
if config.training.snapshot_sampling:
sampling_shape = (25, config.data.num_channels,
config.data.image_size, config.data.image_size)
sampling_fn = sampling.get_sampling_fn(config, sde, sampling_shape, inverse_scaler, sampling_eps)
num_train_steps = config.training.n_iters
# In case there are multiple hosts (e.g., TPU pods), only log to host 0
logging.info("Starting training loop at step %d." % (initial_step,))
for step in range(initial_step, num_train_steps + 1):
# Convert data to JAX arrays and normalize them. Use ._numpy() to avoid copy.
if config.data.dataset == 'CELEBA':
try:
batch = next(train_iter)[0].cuda()
if len(batch) != config.training.batch_size:
continue
except StopIteration:
train_iter = iter(train_ds)
batch = next(train_iter)[0].cuda()
else:
batch = torch.from_numpy(next(train_iter)['image']._numpy()).to(config.device).float()
batch = batch.permute(0, 3, 1, 2)
batch = scaler(batch)
# Execute one training step
loss = train_step_fn(state, batch)
if step % config.training.log_freq == 0:
logging.info("step: %d, training_loss: %.5e" % (step, loss.item()))
writer.add_scalar("training_loss", loss, step)
# Save a temporary checkpoint to resume training after pre-emption periodically
if step != 0 and step % config.training.snapshot_freq_for_preemption == 0:
save_checkpoint(checkpoint_meta_dir, state)
# Report the loss on an evaluation dataset periodically
if step % config.training.eval_freq == 0:
if config.data.dataset == 'CELEBA':
try:
eval_batch = next(eval_iter)[0].cuda()
if len(eval_batch) != config.eval.batch_size:
continue
except StopIteration:
eval_iter = iter(eval_ds)
eval_batch = next(eval_iter)[0].cuda()
else:
eval_batch = torch.from_numpy(next(eval_iter)['image']._numpy()).to(config.device).float()
eval_batch = eval_batch.permute(0, 3, 1, 2)
eval_batch = scaler(eval_batch)
eval_loss = eval_step_fn(state, eval_batch)
logging.info("step: %d, eval_loss: %.5e" % (step, eval_loss.item()))
writer.add_scalar("eval_loss", eval_loss.item(), step)
# Save a checkpoint periodically and generate samples if needed
if step != 0 and step % config.training.snapshot_freq == 0 or step == num_train_steps:
# Save the checkpoint.
save_step = step
save_checkpoint(os.path.join(checkpoint_dir, f'checkpoint_{save_step}.pth'), state)
# # Generate and save samples
if config.training.snapshot_sampling:
ema.store(net.parameters())
ema.copy_to(net.parameters())
sample, n = sampling_fn(net)
ema.restore(net.parameters())
this_sample_dir = os.path.join(sample_dir, "iter_{}".format(step))
tf.io.gfile.makedirs(this_sample_dir)
nrow = int(np.sqrt(sample.shape[0]))
image_grid = make_grid(sample, nrow, padding=2)
sample = np.clip(sample.permute(0, 2, 3, 1).cpu().numpy() * 255, 0, 255).astype(np.uint8)
with tf.io.gfile.GFile(
os.path.join(this_sample_dir, "sample.np"), "wb") as fout:
np.save(fout, sample)
with tf.io.gfile.GFile(
os.path.join(this_sample_dir, "sample.png"), "wb") as fout:
save_image(image_grid, fout)
def evaluate(config,
workdir,
eval_folder="eval"):
"""Evaluate trained models.
Args:
config: Configuration to use.
workdir: Working directory for checkpoints.
eval_folder: The subfolder for storing evaluation results. Default to
"eval".
"""
# Create directory to eval_folder
# set random seed
tf.random.set_seed(config.seed)
eval_dir = os.path.join(workdir, eval_folder)
tf.io.gfile.makedirs(eval_dir)
# Build data pipeline
if not config.eval.save_images:
if config.data.dataset == 'CELEBA':
train_ds, eval_ds = datasets_utils.celeba.get_celeba(config)
else:
train_ds, eval_ds, _ = datasets.get_dataset(config,
uniform_dequantization=config.data.uniform_dequantization,
evaluation=True)
# Create data normalizer and its inverse
scaler = datasets.get_data_scaler(config)
inverse_scaler = datasets.get_data_inverse_scaler(config)
# Initialize model
net = mutils.create_model(config)
optimizer = losses.get_optimizer(config, net.parameters())
ema = ExponentialMovingAverage(net.parameters(), decay=config.model.ema_rate)
state = dict(optimizer=optimizer, model=net, ema=ema, step=0)
checkpoint_dir = os.path.join(workdir, "checkpoints")
# Setup methods
if config.training.sde.lower() == 'vpsde':
sde = methods.VPSDE(config=config, beta_min=config.model.beta_min, beta_max=config.model.beta_max, N=config.sampling.N)
sampling_eps = 1e-3
elif config.training.sde.lower() == 'subvpsde':
sde = methods.subVPSDE(config=config, beta_min=config.model.beta_min, beta_max=config.model.beta_max, N=config.model.num_scales)
sampling_eps = 1e-3
elif config.training.sde.lower() == 'vesde':
sde = methods.VESDE(config=config, sigma_min=config.model.sigma_min, sigma_max=config.model.sigma_max, N=config.model.num_scales)
sampling_eps = 1e-5
elif config.training.sde.lower() == 'poisson':
# PFGM
sde = methods.Poisson(config=config)
sampling_eps = config.sampling.z_min
print("--- sampling eps:", sampling_eps)
else:
raise NotImplementedError(f"Method {config.training.sde} unknown.")
# Create the one-step evaluation function when loss computation is enabled
if config.eval.enable_loss:
optimize_fn = losses.optimization_manager(config)
reduce_mean = config.training.reduce_mean
eval_step = losses.get_step_fn(sde, train=False, optimize_fn=optimize_fn,
reduce_mean=reduce_mean,
method_name=config.training.sde.lower())
# Build the likelihood computation function when likelihood is enabled
if config.eval.enable_bpd:
# Create data loaders for likelihood evaluation. Only evaluate on uniformly dequantized data
train_ds_bpd, eval_ds_bpd, _ = datasets.get_dataset(config,
uniform_dequantization=True, evaluation=True)
if config.eval.bpd_dataset.lower() == 'train':
ds_bpd = train_ds_bpd
bpd_num_repeats = 1
elif config.eval.bpd_dataset.lower() == 'test':
# Go over the dataset 5 times when computing likelihood on the test dataset
ds_bpd = eval_ds_bpd
bpd_num_repeats = 5
else:
raise ValueError(f"No bpd dataset {config.eval.bpd_dataset} recognized.")
if config.training.sde.lower() == 'poisson':
likelihood_fn = likelihood.get_likelihood_fn_pfgm(sde)
else:
likelihood_fn = likelihood.get_likelihood_fn(sde, inverse_scaler)
# Build the sampling function when sampling is enabled
if config.eval.enable_sampling:
sampling_shape = (config.eval.batch_size,
config.data.num_channels,
config.data.image_size, config.data.image_size)
sampling_fn = sampling.get_sampling_fn(config, sde, sampling_shape, inverse_scaler, sampling_eps)
# Use inceptionV3 for images with resolution higher than 256.
inceptionv3 = config.data.image_size >= 256
inception_model = evaluation.get_inception_model(inceptionv3=inceptionv3)
begin_ckpt = config.eval.begin_ckpt
logging.info("begin checkpoint: %d" % (begin_ckpt,))
for ckpt in range(begin_ckpt, config.eval.end_ckpt + 1):
# Wait if the target checkpoint doesn't exist yet
waiting_message_printed = False
torch.manual_seed(config.seed)
np.random.seed(config.seed)
if torch.cuda.is_available():
torch.cuda.manual_seed_all(config.seed)
if config.training.sde == 'poisson':
ckpt_filename = os.path.join(checkpoint_dir, "checkpoint_{}.pth".format(ckpt * config.training.snapshot_freq))
ckpt_path = os.path.join(checkpoint_dir, f'checkpoint_{ckpt * config.training.snapshot_freq}.pth')
else:
ckpt_filename = os.path.join(checkpoint_dir, "checkpoint_{}.pth".format(ckpt * config.training.snapshot_freq))
ckpt_path = os.path.join(checkpoint_dir, f'checkpoint_{ckpt * config.training.snapshot_freq}.pth')
if not tf.io.gfile.exists(ckpt_filename):
print(f"{ckpt_filename} does not exist")
continue
# Wait for 2 additional mins in case the file exists but is not ready for reading
print("loading from ", ckpt_path)
try:
state = restore_checkpoint(ckpt_path, state, device=config.device)
except:
time.sleep(60)
try:
state = restore_checkpoint(ckpt_path, state, device=config.device)
except:
time.sleep(120)
state = restore_checkpoint(ckpt_path, state, device=config.device)
ema.copy_to(net.parameters())
# Compute the loss function on the full evaluation dataset if loss computation is enabled
if config.eval.enable_loss:
print("please don't set the config.eval.save_images flag, or the datasets wouldn't be loaded.")
all_losses = []
eval_iter = iter(eval_ds) # pytype: disable=wrong-arg-types
for i, batch in enumerate(eval_iter):
eval_batch = torch.from_numpy(batch['image']._numpy()).to(config.device).float()
eval_batch = eval_batch.permute(0, 3, 1, 2)
eval_batch = scaler(eval_batch)
eval_loss = eval_step(state, eval_batch)
all_losses.append(eval_loss.item())
if (i + 1) % 1000 == 0:
logging.info("Finished %dth step loss evaluation" % (i + 1))
# Save loss values to disk or Google Cloud Storage
all_losses = np.asarray(all_losses)
with tf.io.gfile.GFile(os.path.join(eval_dir, f"ckpt_{ckpt}_loss.npz"), "wb") as fout:
io_buffer = io.BytesIO()
np.savez_compressed(io_buffer, all_losses=all_losses, mean_loss=all_losses.mean())
fout.write(io_buffer.getvalue())
# Compute log-likelihoods (bits/dim) if enabled
if config.eval.enable_bpd:
bpds = []
for repeat in range(bpd_num_repeats):
bpd_iter = iter(ds_bpd) # pytype: disable=wrong-arg-types
for batch_id in range(len(ds_bpd)):
batch = next(bpd_iter)
eval_batch = torch.from_numpy(batch['image']._numpy()).to(config.device).float()
eval_batch = eval_batch.permute(0, 3, 1, 2)
eval_batch = scaler(eval_batch)
bpd = likelihood_fn(net, eval_batch)[0]
bpd = bpd.detach().cpu().numpy().reshape(-1)
bpds.extend(bpd)
logging.info(
"ckpt: %d, repeat: %d, batch: %d, mean bpd: %6f" % (ckpt, repeat, batch_id, np.mean(np.asarray(bpds))))
bpd_round_id = batch_id + len(ds_bpd) * repeat
# Save bits/dim to disk or Google Cloud Storage
with tf.io.gfile.GFile(os.path.join(eval_dir,
f"{config.eval.bpd_dataset}_ckpt_{ckpt}_bpd_{bpd_round_id}.npz"),
"wb") as fout:
io_buffer = io.BytesIO()
np.savez_compressed(io_buffer, bpd)
fout.write(io_buffer.getvalue())
if config.eval.enable_interpolate:
from scipy.spatial import geometric_slerp
repeat = 6
inter_num = 10
sampling_shape = (inter_num,
config.data.num_channels,
config.data.image_size, config.data.image_size)
sampling_fn = sampling.get_sampling_fn(config, sde, sampling_shape, inverse_scaler, sampling_eps)
imgs = torch.empty(
(repeat * inter_num, config.data.num_channels, config.data.image_size, config.data.image_size))
for i in range(repeat):
N = np.prod(sampling_shape[1:])
gaussian = torch.randn(2, N).cuda()
unit_vec = gaussian / torch.norm(gaussian, p=2, dim=1, keepdim=True)
t_vals = np.linspace(0, 1, inter_num)
# spherical interpolations
unit_vec = unit_vec.detach().cpu().numpy().astype(np.double)
unit_vec /= np.sqrt(np.sum(unit_vec ** 2, axis=1, keepdims=True))
result = geometric_slerp(unit_vec[0], unit_vec[1], t_vals)
result = result * config.sampling.upper_norm
result = torch.from_numpy(result).cuda()
samples, n = sampling_fn(net, x=result)
imgs[i * inter_num: (i + 1) * inter_num] = torch.clamp(samples, 0.0, 1.0).to('cpu')
image_grid = make_grid(imgs, nrow=inter_num)
save_image(image_grid, os.path.join(eval_dir, f'interpolation_{ckpt}.png'))
if config.eval.enable_rescale:
from scipy.spatial import geometric_slerp
repeat = 6
inter_num = 10
sampling_shape = (inter_num,
config.data.num_channels,
config.data.image_size, config.data.image_size)
sampling_fn = sampling.get_sampling_fn(config, sde, sampling_shape, inverse_scaler, sampling_eps)
imgs = torch.empty(
(repeat * inter_num, config.data.num_channels, config.data.image_size, config.data.image_size))
for i in range(repeat):
N = np.prod(sampling_shape[1:])
gaussian = torch.randn(1, N).cuda()
unit_vec = gaussian / torch.norm(gaussian, p=2, dim=1, keepdim=True)
t_vals = torch.linspace(1000, 6000, inter_num).cuda()
t_vals = t_vals.view((-1, 1))
result = unit_vec * t_vals
samples, n = sampling_fn(net, x=result)
imgs[i * inter_num: (i + 1) * inter_num] = torch.clamp(samples, 0.0, 1.0).to('cpu')
image_grid = make_grid(imgs, nrow=inter_num)
save_image(image_grid, os.path.join(eval_dir, f'rescale_{ckpt}.png'))
# Generate samples and compute IS/FID/KID when enabled
if config.eval.enable_sampling:
num_sampling_rounds = config.eval.num_samples // config.eval.batch_size + 1
# Directory to save samples. Different for each host to avoid writing conflicts
this_sample_dir = os.path.join(eval_dir, f"ckpt_{ckpt}")
tf.io.gfile.makedirs(this_sample_dir)
for r in range(num_sampling_rounds):
logging.info("sampling -- ckpt: %d, round: %d" % (ckpt, r))
samples, n = sampling_fn(net)
print("nfe:", n)
samples_torch = copy.deepcopy(samples)
samples_torch = samples_torch.view(-1, config.data.num_channels, config.data.image_size, config.data.image_size)
samples = np.clip(samples.permute(0, 2, 3, 1).cpu().numpy() * 255., 0, 255).astype(np.uint8)
samples = samples.reshape(
(-1, config.data.image_size, config.data.image_size, config.data.num_channels))
# Write samples to disk or Google Cloud Storage
with tf.io.gfile.GFile(
os.path.join(this_sample_dir, f"samples_{r}.npz"), "wb") as fout:
io_buffer = io.BytesIO()
np.savez_compressed(io_buffer, samples=samples)
fout.write(io_buffer.getvalue())
if config.eval.save_images:
# Saving a few generated images for debugging / visualization
image_grid = make_grid(samples_torch, nrow=int(np.sqrt(len(samples_torch))))
save_image(image_grid, os.path.join(eval_dir, f'ode_images_{ckpt}.png'))
exit(0)
# Force garbage collection before calling TensorFlow code for Inception network
gc.collect()
latents = evaluation.run_inception_distributed(samples, inception_model,
inceptionv3=inceptionv3)
# Force garbage collection again before returning to JAX code
gc.collect()
# Save latent represents of the Inception network to disk or Google Cloud Storage
with tf.io.gfile.GFile(
os.path.join(this_sample_dir, f"statistics_{r}.npz"), "wb") as fout:
io_buffer = io.BytesIO()
np.savez_compressed(
io_buffer, pool_3=latents["pool_3"], logits=latents["logits"])
fout.write(io_buffer.getvalue())
# Compute inception scores, FIDs
# Load all statistics that have been previously computed and saved for each host
all_logits = []
all_pools = []
stats = tf.io.gfile.glob(os.path.join(this_sample_dir, "statistics_*.npz"))
for stat_file in stats:
with tf.io.gfile.GFile(stat_file, "rb") as fin:
stat = np.load(fin)
if not inceptionv3:
all_logits.append(stat["logits"])
all_pools.append(stat["pool_3"])
if not inceptionv3:
all_logits = np.concatenate(all_logits, axis=0)[:config.eval.num_samples]
all_pools = np.concatenate(all_pools, axis=0)[:config.eval.num_samples]
# Load pre-computed dataset statistics.
data_stats = evaluation.load_dataset_stats(config)
data_pools = data_stats["pool_3"]
# Compute FID/IS on all samples together.
if not inceptionv3:
inception_score = tfgan.eval.classifier_score_from_logits(all_logits)
else:
inception_score = -1
fid = tfgan.eval.frechet_classifier_distance_from_activations(
data_pools, all_pools)
logging.info(
"ckpt-%d --- inception_score: %.6e, FID: %.6e" % (
ckpt, inception_score, fid))
with tf.io.gfile.GFile(os.path.join(eval_dir, f"report_{ckpt}.npz"),
"wb") as f:
io_buffer = io.BytesIO()
np.savez_compressed(io_buffer, IS=inception_score, fid=fid)
f.write(io_buffer.getvalue())