# How to get element to element power in two arrays in python?

I have two arrays with 3 elements in each.

``````reduction_combs = [2, 3, 7]
elements = [3,6,8]
``````

Is there a shortway to compute new array which is :

``````c = [2**3 , 3**6, 7**8]
``````

This can be achieved using a simple list comprehension.

``````[x ** y for (x, y) in zip(elements, reduction_combs)]
``````

Yes, you can just do `[x**y for (x,y) in zip(reduction_combs, elements)]`

You can also use map with lambda expressions passing two lists:

``````c = list(map(lambda x,y: x**y, reduction_combs, elements))
``````

Where x and y will be values from reduction_combs and elements, respectively.

In addition to the `zip` method, this is another way using `enumerate` and list comprehension. Here `j` is the element of `reduction_combs` and `i` is the corresponding index using which you fetch the power to be raised from `elements`

``````c = [j**elements[i] for i, j in enumerate(reduction_combs)]
``````
• We think alike I posed my answer and scroll up and you did the same thing – vash_the_stampede Oct 15 '18 at 17:01

Using numpy arrays:

``````import numpy as np

a = np.array([2, 3, 7])
b = np.array([3, 6, 8])

a ** b
# output: array([8, 729,5764801])
``````

You can do this either using `numpy`:

``````import numpy
reduction_combs = numpy.array([2, 3, 7])
elements = numpy.array([3, 6, 8])
c = reduction_combs ** elements
``````

or if you want to do it with plain python, you might want to consider list comprehension:

``````c = [reduction_combs[i] ** elements[i] for i in range(len(reduction_combs))]
``````

You should learn a bit more about what lists do in python and if you often work with arrays, get used to work with numpy!

If you like functional style as an alternative to the excellent list comprehension proposed by tda, here's a solution with `operator.pow` and `itertools.starmap`.

``````>>> from operator import pow
>>> from itertools import starmap
>>> list(starmap(pow, zip(reduction_combs, elements)))
[8, 729, 5764801]
``````

In addition, since you tagged `numpy`, leveraging element-wise vectorized operations makes for a very straight forward solution.

``````>>> import numpy as np
>>> r = np.array(reduction_combs)
>>> e = np.array(elements)
>>>
>>> r**e
array([      8,     729, 5764801])
``````

You could use the numpy power function:

``````import numpy as np

reduction_combs = [2, 3, 7]
elements = [3, 6, 8]

print(np.power(reduction_combs, elements))
``````

Output

``````[      8     729 5764801]
``````

If you want the output as a list simply do:

``````np.power(reduction_combs, elements).tolist()
``````

One of the quick solution would be:

``````c = [a**b for a,b in zip(reduction_combs, elements)]
``````

You can also try using numpy as below:

``````import numpy as np
c = np.power(reduction_combs, elements)
``````

Using `enumerate` and `pow`

``````c = [pow(v, elements[i]) for i, v in enumerate(reduction_combs)]
``````