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I'm having an issue with IPython. I can't seem to find any related issues online (perhaps due to inadequate description).

Here's an example from an IPython session using Numpy as np:

x1 = np.array([1.0, 1.0, 1.0, 1.0])
x2 = x1
x2[2] = x2[2] + 0.01

Now, if I look within the session at what's stored in x1 and x2, I see the same thing for both:

array([1. , 1. , 1.01, 1. ])

Why is the value within x1 also being updated here?

marked as duplicate by Bakuriu python Jan 8 '15 at 22:02

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  • Assignment does not create a copy. – jonrsharpe Jan 8 '15 at 22:00
  • The "inadequate description" word you're looking for is "mutable". Most of the time "Python mutable list" will lead you there, but also numpy arrays. x2 and x1 point to the same thing: x2 is not a full copy of x1: they refer to the same part of memory. For a proper copy, use x2 = x1.copy() for example. – user707650 Jan 8 '15 at 22:01

because of reference copies. You need to do more than just using = i.e. shallow copying.

Do this:

 x2 = numpy.copy(x1)

instead of using = sign. It is the same idea with C++/C shallow and deep copy principles.

  • Are you suggesting that = performs shallow copies? Because it does not do that. It simply increments the number of references to the same object. Really, in this case is about copying vs not copying, not how the copy is performed. – Bakuriu Jan 8 '15 at 22:03

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