0

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]

10 Answers 10

5

This can be achieved using a simple list comprehension.

[x ** y for (x, y) in zip(elements, reduction_combs)]
2

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

2

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.

1

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
1

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])
0

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!

0

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])
0

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()
0

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)
0

Using enumerate and pow

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

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