in utils.py [0:0]
def step(self):
for g in self.param_groups:
for p in g['params']:
dp = p.grad
if dp is None:
continue
if p.ndim != 1:
dp = dp.add(p, alpha=g['weight_decay'])
if p.ndim != 1:
param_norm = torch.norm(p)
update_norm = torch.norm(dp)
one = torch.ones_like(param_norm)
q = torch.where(param_norm > 0.,
torch.where(update_norm > 0,
(g['eta'] * param_norm / update_norm), one), one)
dp = dp.mul(q)
param_state = self.state[p]
if 'mu' not in param_state:
param_state['mu'] = torch.zeros_like(p)
mu = param_state['mu']
mu.mul_(g['momentum']).add_(dp)
p.add_(mu, alpha=-g['lr'])