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initialize with openai guided diffusion
b98c608
import copy
import functools
import os
import blobfile as bf
import torch as th
import torch.distributed as dist
from torch.nn.parallel.distributed import DistributedDataParallel as DDP
from torch.optim import AdamW
from . import dist_util, logger
from .fp16_util import MixedPrecisionTrainer
from .nn import update_ema
from .resample import LossAwareSampler, UniformSampler
# For ImageNet experiments, this was a good default value.
# We found that the lg_loss_scale quickly climbed to
# 20-21 within the first ~1K steps of training.
INITIAL_LOG_LOSS_SCALE = 20.0
class TrainLoop:
def __init__(
self,
*,
model,
diffusion,
data,
batch_size,
microbatch,
lr,
ema_rate,
log_interval,
save_interval,
resume_checkpoint,
use_fp16=False,
fp16_scale_growth=1e-3,
schedule_sampler=None,
weight_decay=0.0,
lr_anneal_steps=0,
):
self.model = model
self.diffusion = diffusion
self.data = data
self.batch_size = batch_size
self.microbatch = microbatch if microbatch > 0 else batch_size
self.lr = lr
self.ema_rate = (
[ema_rate]
if isinstance(ema_rate, float)
else [float(x) for x in ema_rate.split(",")]
)
self.log_interval = log_interval
self.save_interval = save_interval
self.resume_checkpoint = resume_checkpoint
self.use_fp16 = use_fp16
self.fp16_scale_growth = fp16_scale_growth
self.schedule_sampler = schedule_sampler or UniformSampler(diffusion)
self.weight_decay = weight_decay
self.lr_anneal_steps = lr_anneal_steps
self.step = 0
self.resume_step = 0
self.global_batch = self.batch_size * dist.get_world_size()
self.sync_cuda = th.cuda.is_available()
self._load_and_sync_parameters()
self.mp_trainer = MixedPrecisionTrainer(
model=self.model,
use_fp16=self.use_fp16,
fp16_scale_growth=fp16_scale_growth,
)
self.opt = AdamW(
self.mp_trainer.master_params, lr=self.lr, weight_decay=self.weight_decay
)
if self.resume_step:
self._load_optimizer_state()
# Model was resumed, either due to a restart or a checkpoint
# being specified at the command line.
self.ema_params = [
self._load_ema_parameters(rate) for rate in self.ema_rate
]
else:
self.ema_params = [
copy.deepcopy(self.mp_trainer.master_params)
for _ in range(len(self.ema_rate))
]
if th.cuda.is_available():
self.use_ddp = True
self.ddp_model = DDP(
self.model,
device_ids=[dist_util.dev()],
output_device=dist_util.dev(),
broadcast_buffers=False,
bucket_cap_mb=128,
find_unused_parameters=False,
)
else:
if dist.get_world_size() > 1:
logger.warn(
"Distributed training requires CUDA. "
"Gradients will not be synchronized properly!"
)
self.use_ddp = False
self.ddp_model = self.model
def _load_and_sync_parameters(self):
resume_checkpoint = find_resume_checkpoint() or self.resume_checkpoint
if resume_checkpoint:
self.resume_step = parse_resume_step_from_filename(resume_checkpoint)
if dist.get_rank() == 0:
logger.log(f"loading model from checkpoint: {resume_checkpoint}...")
self.model.load_state_dict(
dist_util.load_state_dict(
resume_checkpoint, map_location=dist_util.dev()
)
)
dist_util.sync_params(self.model.parameters())
def _load_ema_parameters(self, rate):
ema_params = copy.deepcopy(self.mp_trainer.master_params)
main_checkpoint = find_resume_checkpoint() or self.resume_checkpoint
ema_checkpoint = find_ema_checkpoint(main_checkpoint, self.resume_step, rate)
if ema_checkpoint:
if dist.get_rank() == 0:
logger.log(f"loading EMA from checkpoint: {ema_checkpoint}...")
state_dict = dist_util.load_state_dict(
ema_checkpoint, map_location=dist_util.dev()
)
ema_params = self.mp_trainer.state_dict_to_master_params(state_dict)
dist_util.sync_params(ema_params)
return ema_params
def _load_optimizer_state(self):
main_checkpoint = find_resume_checkpoint() or self.resume_checkpoint
opt_checkpoint = bf.join(
bf.dirname(main_checkpoint), f"opt{self.resume_step:06}.pt"
)
if bf.exists(opt_checkpoint):
logger.log(f"loading optimizer state from checkpoint: {opt_checkpoint}")
state_dict = dist_util.load_state_dict(
opt_checkpoint, map_location=dist_util.dev()
)
self.opt.load_state_dict(state_dict)
def run_loop(self):
while (
not self.lr_anneal_steps
or self.step + self.resume_step < self.lr_anneal_steps
):
batch, cond = next(self.data)
self.run_step(batch, cond)
if self.step % self.log_interval == 0:
logger.dumpkvs()
if self.step % self.save_interval == 0:
self.save()
# Run for a finite amount of time in integration tests.
if os.environ.get("DIFFUSION_TRAINING_TEST", "") and self.step > 0:
return
self.step += 1
# Save the last checkpoint if it wasn't already saved.
if (self.step - 1) % self.save_interval != 0:
self.save()
def run_step(self, batch, cond):
self.forward_backward(batch, cond)
took_step = self.mp_trainer.optimize(self.opt)
if took_step:
self._update_ema()
self._anneal_lr()
self.log_step()
def forward_backward(self, batch, cond):
self.mp_trainer.zero_grad()
for i in range(0, batch.shape[0], self.microbatch):
micro = batch[i : i + self.microbatch].to(dist_util.dev())
micro_cond = {
k: v[i : i + self.microbatch].to(dist_util.dev())
for k, v in cond.items()
}
last_batch = (i + self.microbatch) >= batch.shape[0]
t, weights = self.schedule_sampler.sample(micro.shape[0], dist_util.dev())
compute_losses = functools.partial(
self.diffusion.training_losses,
self.ddp_model,
micro,
t,
model_kwargs=micro_cond,
)
if last_batch or not self.use_ddp:
losses = compute_losses()
else:
with self.ddp_model.no_sync():
losses = compute_losses()
if isinstance(self.schedule_sampler, LossAwareSampler):
self.schedule_sampler.update_with_local_losses(
t, losses["loss"].detach()
)
loss = (losses["loss"] * weights).mean()
log_loss_dict(
self.diffusion, t, {k: v * weights for k, v in losses.items()}
)
self.mp_trainer.backward(loss)
def _update_ema(self):
for rate, params in zip(self.ema_rate, self.ema_params):
update_ema(params, self.mp_trainer.master_params, rate=rate)
def _anneal_lr(self):
if not self.lr_anneal_steps:
return
frac_done = (self.step + self.resume_step) / self.lr_anneal_steps
lr = self.lr * (1 - frac_done)
for param_group in self.opt.param_groups:
param_group["lr"] = lr
def log_step(self):
logger.logkv("step", self.step + self.resume_step)
logger.logkv("samples", (self.step + self.resume_step + 1) * self.global_batch)
def save(self):
def save_checkpoint(rate, params):
state_dict = self.mp_trainer.master_params_to_state_dict(params)
if dist.get_rank() == 0:
logger.log(f"saving model {rate}...")
if not rate:
filename = f"model{(self.step+self.resume_step):06d}.pt"
else:
filename = f"ema_{rate}_{(self.step+self.resume_step):06d}.pt"
with bf.BlobFile(bf.join(get_blob_logdir(), filename), "wb") as f:
th.save(state_dict, f)
save_checkpoint(0, self.mp_trainer.master_params)
for rate, params in zip(self.ema_rate, self.ema_params):
save_checkpoint(rate, params)
if dist.get_rank() == 0:
with bf.BlobFile(
bf.join(get_blob_logdir(), f"opt{(self.step+self.resume_step):06d}.pt"),
"wb",
) as f:
th.save(self.opt.state_dict(), f)
dist.barrier()
def parse_resume_step_from_filename(filename):
"""
Parse filenames of the form path/to/modelNNNNNN.pt, where NNNNNN is the
checkpoint's number of steps.
"""
split = filename.split("model")
if len(split) < 2:
return 0
split1 = split[-1].split(".")[0]
try:
return int(split1)
except ValueError:
return 0
def get_blob_logdir():
# You can change this to be a separate path to save checkpoints to
# a blobstore or some external drive.
return logger.get_dir()
def find_resume_checkpoint():
# On your infrastructure, you may want to override this to automatically
# discover the latest checkpoint on your blob storage, etc.
return None
def find_ema_checkpoint(main_checkpoint, step, rate):
if main_checkpoint is None:
return None
filename = f"ema_{rate}_{(step):06d}.pt"
path = bf.join(bf.dirname(main_checkpoint), filename)
if bf.exists(path):
return path
return None
def log_loss_dict(diffusion, ts, losses):
for key, values in losses.items():
logger.logkv_mean(key, values.mean().item())
# Log the quantiles (four quartiles, in particular).
for sub_t, sub_loss in zip(ts.cpu().numpy(), values.detach().cpu().numpy()):
quartile = int(4 * sub_t / diffusion.num_timesteps)
logger.logkv_mean(f"{key}_q{quartile}", sub_loss)