I am looking for similar functionality for pytorch tensor as of nditer of numpy array, see this link with a small example. https://discuss.pytorch.org/t/replacement-of-np-nditer-for-torch/64024?u=songqsh
1 Answer
I agree with comments that iterating element by element is reraly a good idea for interaction with arrays or tensors. nditer
has lots of functionality, here is just an iteration through all elements in the tensor which returns coordinates of the element together with element itself:
def deep_iter(data, ix=tuple()):
try:
for i, element in enumerate(data):
yield from deep_iter(element, ix + (i,))
except:
yield ix, data
So for example at pytorch forum it can be used as following:
new_values = {}
for i, value in deep_iter(a):
if all(map(lambda x: 0 < x < (a.shape[1] - 1), i)):
new_values[i] = calc_average(i, a) #write func to calc average
for i, new_value in new_values.items():
a[i] = new_value
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Thanks a lot for this neatly done code. Although I am not expert in programming, I can tell this is very advanced. I will revise this and try to post the full script to pytorch forum.– kennethDec 14, 2019 at 15:14
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I've just posted the entire code here, discuss.pytorch.org/t/replacement-of-np-nditer-for-torch/…– kennethDec 15, 2019 at 2:03
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Good job, mate. You should have deleted '#write func to calc average' comment :D– MjHDec 15, 2019 at 2:30
nditer
is almost always a bad way to interact with NumPy arrays, and that will often be even more true for PyTorch tensors. Your averaging function can be written more efficiently withoutnditer
.nditer
with NumPy is like dragging your car behind you by hand. You're not taking advantage of the power of NumPy, or the car.