It's a bit annoying that tf.keras
generator still faces this issue, unlike pytorch
. There are many discussions regarding this, however, still stuck with it. Already visit:
Problem
I have a data set consist of around 21397. I wrote a custom data loader which returns the total number of samples as follows:
class NGenerator(Sequence):
...
def __len__(self):
return int(np.ceil(float(len(self.data)) / float(self.batch_size)))
...
From the data, I've made 5 fold subset of it. Each fold contains as follows:
Fold Amount
1.0 4280
0.0 4280
2.0 4279
3.0 4279
4.0 4279
For each fold, I've set step_per_epoch
and validation_per_epoch
as follows:
# here, train_labels is the df of the subset based on fold
steps_per_epoch = np.ceil(float(len(train_labels)) / float(batch_size))
validation_steps = np.ceil(float(len(val_labels)) / float(batch_size))
Now, to make an OOF score, we predict on the validation set and wanted to store results as follows:
batch_size = 64
oof = np.zeros(len(df))
...
for each_fold, (trn_idx, val_idx) in enumerate(skf...):
train_labels = df.iloc[self.trn_idx].reset_index(drop=True)
val_labels = df.iloc[self.val_idx].reset_index(drop=True)
....
train_gen, val_gen = ..., model.fit()
pred = model.predict(val_gen, steps=validation_steps)
oof[self.val_idx] = np.argmax(pred, axis=1) < --------- HERE
After training, at indexing time (oof
), it throws a size mismatch of shape between 4280
and 4288
. So, it looks like, with this step size
and batch size
, the model is predicting 8
samples of the next batch. Next, we set batch_size
equal to 40
which dividable by the total number of the subset (4280
). Good enough but (of course) faced again size mismatch in Fold 2 of shape between 4279
and 4280
. One of the simple workarounds is to add 3
samples in fold 2,3,4
-_-
Any general tips to get rid of it? Thanks.