# Numpy array matrices do not change values during iteration [duplicate]

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As I am new to Python, I am having the following problem:

I have an initial numpy array which contains the initial values of my variables for a simulations. I want to update these according to some equations. Assuming that x_init is the array that has the initial values and it is a (5,3) array and x is the array that is used to update and store the values during each iteration, what i do is the following:

``````x = x_init
while x.min()<100:
for j in range(3):
for i in range(5):
x[i,j]=x[i,j]+rand1
``````

where rand1 is just a random number produced between [0,1]. In the end, the array x is always equal to x_init due to the assignment in the beggining (I assume). Can you please explain me why this happens and suggest a way to treat those kind of assignment in python?

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• Because `x` is whatever `x_init` referred to during the assignment. Assignment never implicitly copies. This is always how it works. – juanpa.arrivillaga Jun 1 '17 at 21:53
• You should read and understand Ned Batchelder's Facts and myths about Python names and values. Although `numpy` arrays are not mentioned, the principles still apply. – juanpa.arrivillaga Jun 1 '17 at 21:58
• Also, keep in mind that the common idiom for copying sequences like lists using a slice in Python `my_list_copy = my_list[:]` does not actually create a copy of the underlying array with `numpy` arrays, and the slice is actually a view. – juanpa.arrivillaga Jun 1 '17 at 22:00
• Thanks for the help! The guide you sent me is really helpful! – Nisfa Jun 2 '17 at 13:03

## 1 Answer

You need to make a copy, since assigment will just give you a new way to refer to the same object.

For this specific case, use `numpy.copy` like this:

``````import numpy as np

b = np.ones((3,3))
a = np.copy(b)
a[1,1] += 1
print(b)
print(a)
``````

https://docs.scipy.org/doc/numpy/reference/generated/numpy.copy.html

• I tried using numpy.copyto(a,b), where a is the target and b is the array to be copied but it produces the same result. – Nisfa Jun 2 '17 at 11:32
• I wrote `copy` not `copyto`, see the example I put in. – fbence Jun 2 '17 at 13:34