Is it possible in PyTorch to change the learning rate of the optimizer in the middle of training dynamically (I don't want to define a learning rate schedule beforehand)?

So let's say I have an optimizer:

optim = torch.optim.SGD(model.parameters(), lr=0.01)

Now due to some tests which I perform during training, I realize my learning rate is too high so I want to change it to say 0.001. There doesn't seem to be a method optim.set_lr(0.001) but is there some way to do this?

2 Answers 2


So the learning rate is stored in optim.param_groups[i]['lr']. optim.param_groups is a list of the different weight groups which can have different learning rates. Thus, simply doing:

for g in optim.param_groups:
    g['lr'] = 0.001

will do the trick.


as mentionned in the comments, if your learning rate only depends on the epoch number, you can use a learning rate scheduler.

For example (modified example from the doc):

torch.optim.lr_scheduler import LambdaLR
optimizer = torch.optim.SGD(model.parameters(), lr=0.1, momentum=0.9)
# Assuming optimizer has two groups.
lambda_group1 = lambda epoch: epoch // 30
lambda_group2 = lambda epoch: 0.95 ** epoch
scheduler = LambdaLR(optimizer, lr_lambda=[lambda1, lambda2])
for epoch in range(100):

Also, there is a prebuilt learning rate scheduler to reduce on plateaus.

  • @MehmetBurakSayıcı ask a new question. Aug 20, 2019 at 20:01
  • 2
    Use this automatic updaters in 2020
    – A.Ametov
    May 19, 2020 at 17:54
  • 2
    i tried to use this but i didn't change the lr. had to make the change like this: for i in range(len(optimizer.param_groups)): optimizer.param_groups[i]['lr'] = new_lr Apr 11, 2021 at 18:35
  • 1
    Note that if you use both techniques together, that is you set the learning rate manually and you then use a scheduler, you should not set the lr field of the parameter group but the initial_lr field (or both). The scheduler uses this to set the lr field from, so it'll override any manual changes you make.
    – Peter
    Jan 1 at 11:49

Instead of a loop in patapouf_ai's answer, you can do it directly via:

optim.param_groups[0]['lr'] = 0.001
  • 15
    This only works if you have a single parameter group. (Which granted is probably most of the time.) Nov 4, 2020 at 19:43
  • for some reason this makes model not learn at all
    – stunlocked
    Nov 21, 2023 at 17:33
  • 1
    yeah well cause I did it per batch instead of per epoch, this is rather a confirmation that it works
    – stunlocked
    Nov 21, 2023 at 17:39

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