Add foreach option for faster EMA

pull/1553/head
Jerome Rony 1 year ago
parent 6ec5cd6a99
commit 3491506fec

@ -102,30 +102,34 @@ class ModelEmaV2(nn.Module):
This class is sensitive where it is initialized in the sequence of model init,
GPU assignment and distributed training wrappers.
"""
def __init__(self, model, decay=0.9999, device=None):
def __init__(self, model, decay=0.9999, device=None, foreach=False):
super(ModelEmaV2, self).__init__()
# make a copy of the model for accumulating moving average of weights
self.module = deepcopy(model)
self.module.eval()
self.decay = decay
self.foreach = foreach
self.device = device # perform ema on different device from model if set
if self.device is not None:
if self.device is not None and device != next(model.parameters()).device:
self.foreach = False # cannot use foreach methods with different devices
self.module.to(device=device)
def _update(self, model, update_fn):
with torch.no_grad():
for ema_v, model_v in zip(self.module.state_dict().values(), model.state_dict().values()):
if self.device is not None:
model_v = model_v.to(device=self.device)
update_fn(ema_v, model_v)
@torch.no_grad()
def update(self, model):
ema_params = tuple(self.module.parameters())
model_params = tuple(model.parameters())
if self.foreach:
torch._foreach_mul_(ema_params, scalar=self.decay)
torch._foreach_add_(ema_params, model_params, alpha=1 - self.decay)
else:
for ema_p, model_p in zip(ema_params, model_params):
ema_p.mul_(self.decay).add_(model_p.to(device=self.device), alpha=1 - self.decay)
def ema_update(e, m):
if m.is_floating_point():
e.mul_(self.decay).add_(m, alpha=1 - self.decay)
self._update(model, update_fn=ema_update)
# copy buffers instead of EMA
for ema_b, model_b in zip(self.module.buffers(), model.buffers()):
ema_b.copy_(model_b.to(device=self.device))
@torch.no_grad()
def set(self, model):
self._update(model, update_fn=lambda e, m: e.copy_(m))
for ema_v, model_v in zip(self.module.state_dict().values(), model.state_dict().values()):
ema_v.copy_(model_v.to(device=self.device))

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