It seems numpy array automatically ignores delta_x. The output of the following gradient vector is gigantic. What change should be made to the following code for gradient?

import copy
import numpy as np

def numerical_gradient(f, x):
    delta_x = 1e-7    # 0.0000001
    gradient = np.zeros_like(x)    # Return an array of zeros with the same shape

    for i in range(x.size): 
        # constructs a new compound object and then, recursively, 
        # inserts copies into it of the objects found in the original
        _x1 = copy.deepcopy(x)    
        _x1[i] = x[i] + delta_x
        _y1 = f(_x1)    # f(x + delta_x)

        _x2 = copy.deepcopy(x)
        _x2[i] = x[i] - delta_x
        _y2 = f(_x2)    # f(x - delta_x)

        gradient[i] = (_y1 - _y2) / (delta_x*2)
    return gradient

def f(x):
    y = x[0]**2 + x[1]**2
    return y

  • show some example where it doesn't works – Rahul Vishwakarma Jun 30 at 6:22
  • There are multiple obfuscations in your code. You can completely remove the for loop, there is no need for making a copy of x you can just do x1 = x - delta_x. – AlexNe Jun 30 at 6:29
  • Thanks for helping me trimming the code. – Jae Woo Kim Jun 30 at 6:38

The problem is in this line:


This initializes an integer array; with deepcopy and zeros_like you create more integer arrays. You attempt to assign 2.999999 to an integer array element in _x2, which gets rounded to 2.

If you do this:

numerical_gradient(f,np.array([3.0, 3.0]))

the output is as expected.

| improve this answer | |
  • Thanks! Now it works! I was blind to see the input mistake lol. – Jae Woo Kim Jun 30 at 6:37
  • You can also explicitly specify the dtype of the array. – Karl Knechtel Jun 30 at 7:16

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

Not the answer you're looking for? Browse other questions tagged or ask your own question.