EDICT / my_diffusers /training_utils.py
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import copy
import os
import random
import numpy as np
import torch
def enable_full_determinism(seed: int):
"""
Helper function for reproducible behavior during distributed training. See
- https://pytorch.org/docs/stable/notes/randomness.html for pytorch
"""
# set seed first
set_seed(seed)
# Enable PyTorch deterministic mode. This potentially requires either the environment
# variable 'CUDA_LAUNCH_BLOCKING' or 'CUBLAS_WORKSPACE_CONFIG' to be set,
# depending on the CUDA version, so we set them both here
os.environ["CUDA_LAUNCH_BLOCKING"] = "1"
os.environ["CUBLAS_WORKSPACE_CONFIG"] = ":16:8"
torch.use_deterministic_algorithms(True)
# Enable CUDNN deterministic mode
torch.backends.cudnn.deterministic = True
torch.backends.cudnn.benchmark = False
def set_seed(seed: int):
"""
Args:
Helper function for reproducible behavior to set the seed in `random`, `numpy`, `torch`.
seed (`int`): The seed to set.
"""
random.seed(seed)
np.random.seed(seed)
torch.manual_seed(seed)
torch.cuda.manual_seed_all(seed)
# ^^ safe to call this function even if cuda is not available
class EMAModel:
"""
Exponential Moving Average of models weights
"""
def __init__(
self,
model,
update_after_step=0,
inv_gamma=1.0,
power=2 / 3,
min_value=0.0,
max_value=0.9999,
device=None,
):
"""
@crowsonkb's notes on EMA Warmup:
If gamma=1 and power=1, implements a simple average. gamma=1, power=2/3 are good values for models you plan
to train for a million or more steps (reaches decay factor 0.999 at 31.6K steps, 0.9999 at 1M steps),
gamma=1, power=3/4 for models you plan to train for less (reaches decay factor 0.999 at 10K steps, 0.9999
at 215.4k steps).
Args:
inv_gamma (float): Inverse multiplicative factor of EMA warmup. Default: 1.
power (float): Exponential factor of EMA warmup. Default: 2/3.
min_value (float): The minimum EMA decay rate. Default: 0.
"""
self.averaged_model = copy.deepcopy(model).eval()
self.averaged_model.requires_grad_(False)
self.update_after_step = update_after_step
self.inv_gamma = inv_gamma
self.power = power
self.min_value = min_value
self.max_value = max_value
if device is not None:
self.averaged_model = self.averaged_model.to(device=device)
self.decay = 0.0
self.optimization_step = 0
def get_decay(self, optimization_step):
"""
Compute the decay factor for the exponential moving average.
"""
step = max(0, optimization_step - self.update_after_step - 1)
value = 1 - (1 + step / self.inv_gamma) ** -self.power
if step <= 0:
return 0.0
return max(self.min_value, min(value, self.max_value))
@torch.no_grad()
def step(self, new_model):
ema_state_dict = {}
ema_params = self.averaged_model.state_dict()
self.decay = self.get_decay(self.optimization_step)
for key, param in new_model.named_parameters():
if isinstance(param, dict):
continue
try:
ema_param = ema_params[key]
except KeyError:
ema_param = param.float().clone() if param.ndim == 1 else copy.deepcopy(param)
ema_params[key] = ema_param
if not param.requires_grad:
ema_params[key].copy_(param.to(dtype=ema_param.dtype).data)
ema_param = ema_params[key]
else:
ema_param.mul_(self.decay)
ema_param.add_(param.data.to(dtype=ema_param.dtype), alpha=1 - self.decay)
ema_state_dict[key] = ema_param
for key, param in new_model.named_buffers():
ema_state_dict[key] = param
self.averaged_model.load_state_dict(ema_state_dict, strict=False)
self.optimization_step += 1