# How do I implement leaky relu using Numpy functions

I am trying to implement leaky Relu, the problem is I have to do 4 for loops for a 4 dimensional array of input.

Is there a way that I can do leaky relu only using Numpy functions?

Here are two approaches to implement `leaky_relu`:

``````import numpy as np

x = np.random.normal(size=[1, 5])

# first approach
leaky_way1 = np.where(x > 0, x, x * 0.01)

# second approach
y1 = ((x > 0) * x)
y2 = ((x <= 0) * x * 0.01)
leaky_way2 = y1 + y2
``````
• the second approach is a bit faster!
– Anu
Commented Mar 29, 2019 at 0:42
``````import numpy as np

def leaky_relu(arr):
alpha = 0.1

return np.maximum(alpha*arr, arr)
``````

Going off the wikipedia entry for leaky relu, should be able to do this with a simple masking function.

``````output = np.where(arr > 0, arr, arr * 0.01)
``````

Anywhere you are above 0, you keep the value, everywhere else, you replace it with arr * 0.01.

``````def leaky_relu_forward(x, alpha):
out = x
out[out <= 0]=out[out <= 0]* alpha
return out
``````

Just to add, this approche :

``````def leaky_relu(x):
return np.maximum(0.01*x, x)
``````

is 2 time faster than this one :

``````leaky_way1 = np.where(x > 0, x, x * 0.01)
``````