fix(*:skip) Fix querying dataset size functions #3794
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Issue
Description
I found that in many places, when flower collaborates with pytorch, it uses
len(self.trainloader)
andlen(self.testloader)
to query the sizes of clients train set and test set.However, in pytorch,
len(dataloader)
will return the num of batches that thedataloader.dataset
can split into, not the real size ofdataloader.dataset
. Means thatlen(dataloader) != len(dataloader.dataset)
, and the latter one is more reasonable in federated learning scenario, I think.For example:
Related issues/PRs
Proposal
So I just search
len(self.trainloader)
andlen(self.testloader)
globally and replace them withlen(self.trainloader.dataset)
andlen(self.testloader.dataset)
.Checklist
#contributions
)