I noticed that array operations with an identity elements return a copy (possibly a shallow copy) of the array.
Consider the code snippet below.
a=np.arange(16).reshape([4,4])
print(a)
b=a 0
print(b)
a[2,2]=200
print(a)
print(b)
We see that b
is a shallow copy of a
. I don't know if it is a deep copy, because I think matrix is a subtype of array, rather than array of arrays.
If I only need a shallow copy,
- Is there a difference between using np.copy() and arithmetic operations?
- Is
b=a 0
orb=a*1
a bad practice? If it is, why?
I know this is a frequently asked topic, but I couldn't find an answer for my particular question.
Thanks in advance!
CodePudding user response:
Is there a difference between using np.copy() and arithmetic operations?
Yes, consider following example
import numpy as np
arr = np.array([[True,False],[False,True]])
arr_c = np.copy(arr)
arr_0 = arr 0
print(arr_c)
print(arr_0)
output
[[ True False]
[False True]]
[[1 0]
[0 1]]
observe that both operations are legal (did not cause exception or error) yet give different results.