Python Data Analysis(Second Edition)
上QQ阅读APP看书,第一时间看更新

Creating array views and copies

In the example about ravel(), views were brought up. Views should not be confused with the construct of database views. Views in the NumPy universe are not read-only and you don't have the possibility to protect the underlying information. It is crucial to know when we are handling a shared array view and when we have a replica of the array data. A slice of an array, for example, will produce a view. This entails that if you assign the slice to a variable and then alter the underlying array, the value of this variable will change. We will create an array from the face picture in the SciPy package, and then create a view and alter it at the final stage:

  1. Get the face image:
            face = scipy.misc.face() 
    
  2. Create a copy of the face array:
            acopy = face.copy() 
    
  3. Create a view of the array:
            aview = face.view() 
    
  4. Set all the values in the view to 0 with a flat iterator:
            aview.flat = 0 
    

The final outcome is that only one of the pictures depicts the model. The other ones are censored altogether, as shown in the following screenshot:

Refer to the following code of this tutorial, which shows the behavior of array views and copies:

import scipy.misc 
import matplotlib.pyplot as plt 
 
face = scipy.misc.face() 
acopy = face.copy() 
aview = face.view() 
aview.flat = 0 
plt.subplot(221) 
plt.imshow(face) 
plt.subplot(222) 
plt.imshow(acopy) 
plt.subplot(223) 
plt.imshow(aview) 
plt.show() 

As you can see, by altering the view at the end of the program, we modified the original Lena array. This resulted in three blue (or black if you are reading the print version of this book) pictures. The copied array was unchanged. It is crucial to remember that views are not read-only.