I wanted to use
torch.optim.lr_scheduler.OneCycleLR() while training. Can some kindly explain to me how to use it?
What i got from the documentation was that it should be called after each train_batch.
My confusions are as follows:
Does the max_lr parameter has to be same with the optimizer lr parameter?
Can this scheduler be used with Adam optimizer. How is the momentum calculated then?
Let’s say i trained my model for some number of epochs at a stretch now, i wanted to train for some more epochs. Would i have to reset the the scheduler?
Can anybody provide me a sort of a toy example/training loop that implements this scheduler?
I am kind of new to deep learning & PyTorch so my question might be somewhat silly.