# Using numpy to build an array of all combinations of two arrays

I'm trying to run over the parameters space of a 6 parameter function to study it's numerical behavior before trying to do anything complex with it so I'm searching for a efficient way to do this.

My function takes float values given a 6-dim numpy array as input. What I tried to do initially was this:

First I created a function that takes 2 arrays and generate an array with all combinations of values from the two arrays

``````from numpy import *
def comb(a,b):
c = []
for i in a:
for j in b:
c.append(r_[i,j])
return c
``````

Then I used `reduce()` to apply that to m copies of the same array:

``````def combs(a,m):
return reduce(comb,[a]*m)
``````

And then I evaluate my function like this:

``````values = combs(np.arange(0,1,0.1),6)
for val in values:
print F(val)
``````

This works but it's waaaay too slow. I know the space of parameters is huge, but this shouldn't be so slow. I have only sampled 106 (a million) points in this example and it took more than 15 seconds just to create the array `values`.

Do you know any more efficient way of doing this with numpy?

I can modify the way the function `F` takes it's arguments if it's necessary.

• For the fastest cartesian product I've found, see this answer. (Since the question is phrased quite differently from this one, I deem that the questions are not duplicates, but the best solution to the two questions is the same.) – senderle Jul 17 '17 at 14:50

In newer version of `numpy` (>1.8.x), `numpy.meshgrid()` provides a much faster implementation:

@pv's solution

``````In [113]:

%timeit cartesian(([1, 2, 3], [4, 5], [6, 7]))
10000 loops, best of 3: 135 µs per loop
In [114]:

cartesian(([1, 2, 3], [4, 5], [6, 7]))

Out[114]:
array([[1, 4, 6],
[1, 4, 7],
[1, 5, 6],
[1, 5, 7],
[2, 4, 6],
[2, 4, 7],
[2, 5, 6],
[2, 5, 7],
[3, 4, 6],
[3, 4, 7],
[3, 5, 6],
[3, 5, 7]])
``````

`numpy.meshgrid()` use to be 2D only, now it is capable of ND. In this case, 3D:

``````In [115]:

%timeit np.array(np.meshgrid([1, 2, 3], [4, 5], [6, 7])).T.reshape(-1,3)
10000 loops, best of 3: 74.1 µs per loop
In [116]:

np.array(np.meshgrid([1, 2, 3], [4, 5], [6, 7])).T.reshape(-1,3)

Out[116]:
array([[1, 4, 6],
[1, 5, 6],
[2, 4, 6],
[2, 5, 6],
[3, 4, 6],
[3, 5, 6],
[1, 4, 7],
[1, 5, 7],
[2, 4, 7],
[2, 5, 7],
[3, 4, 7],
[3, 5, 7]])
``````

Note that the order of the final resultant is slightly different.

• `np.stack(np.meshgrid([1, 2, 3], [4, 5], [6, 7]), -1).reshape(-1, 3)` will give the right order – Eric Jun 4 '17 at 14:30
• @CT Zhu Is there an easy way to transform this so that the a matrix holding the different arrays as columns is used as input instead? – Dole Jul 4 '19 at 8:58
• It should be noted that meshgrid only works for smaller range sets, I have a large one and I get error: ValueError: maximum supported dimension for an ndarray is 32, found 69 – mikkom Oct 20 '19 at 6:54

Here's a pure-numpy implementation. It's about 5× faster than using itertools.

``````
import numpy as np

def cartesian(arrays, out=None):
"""
Generate a cartesian product of input arrays.

Parameters
----------
arrays : list of array-like
1-D arrays to form the cartesian product of.
out : ndarray
Array to place the cartesian product in.

Returns
-------
out : ndarray
2-D array of shape (M, len(arrays)) containing cartesian products
formed of input arrays.

Examples
--------
>>> cartesian(([1, 2, 3], [4, 5], [6, 7]))
array([[1, 4, 6],
[1, 4, 7],
[1, 5, 6],
[1, 5, 7],
[2, 4, 6],
[2, 4, 7],
[2, 5, 6],
[2, 5, 7],
[3, 4, 6],
[3, 4, 7],
[3, 5, 6],
[3, 5, 7]])

"""

arrays = [np.asarray(x) for x in arrays]
dtype = arrays[0].dtype

n = np.prod([x.size for x in arrays])
if out is None:
out = np.zeros([n, len(arrays)], dtype=dtype)

m = n / arrays[0].size
out[:,0] = np.repeat(arrays[0], m)
if arrays[1:]:
cartesian(arrays[1:], out=out[0:m, 1:])
for j in xrange(1, arrays[0].size):
out[j*m:(j+1)*m, 1:] = out[0:m, 1:]
return out
``````
• ever consider submitting this to be included in numpy? this is not the first time I've gone looking for this functionality and found your post. – endolith Apr 12 '13 at 14:31
• There is bug in this implementation. For arrays of strings for example: arrays[0].dtype = "|S3" and arrays[1].dtype = "|S5". So there is a need in finding the longest string in input and use its type in out = np.zeros([n, len(arrays)], dtype=dtype) – norecces Jun 20 '13 at 8:18
• FYI: seems to have made it into the scikit-learn package at `from sklearn.utils.extmath import cartesian` – Gus Sep 13 '13 at 4:27
• I just realized: this is slightly different from itertools.combinations, as this function respects the ordering of values whereas combinations doesn't, so this function returns more values than combinations does. Still very impressive, but unfortunately not what I was looking for :( – David Marx Oct 30 '14 at 17:08
• `TypeError: slice indices must be integers or None or have an __index__ method` thrown by `cartesian(arrays[1:], out=out[0:m,1:])` – Boern Sep 25 '17 at 15:48

itertools.combinations is in general the fastest way to get combinations from a Python container (if you do in fact want combinations, i.e., arrangements WITHOUT repetitions and independent of order; that's not what your code appears to be doing, but I can't tell whether that's because your code is buggy or because you're using the wrong terminology).

If you want something different than combinations perhaps other iterators in itertools, `product` or `permutations`, might serve you better. For example, it looks like your code is roughly the same as:

``````for val in itertools.product(np.arange(0, 1, 0.1), repeat=6):
print F(val)
``````

All of these iterators yield tuples, not lists or numpy arrays, so if your F is picky about getting specifically a numpy array you'll have to accept the extra overhead of constructing or clearing and re-filling one at each step.

You can do something like this

``````import numpy as np

def cartesian_coord(*arrays):
grid = np.meshgrid(*arrays)
coord_list = [entry.ravel() for entry in grid]
points = np.vstack(coord_list).T
return points

a = np.arange(4)  # fake data
print(cartesian_coord(*6*[a])
``````

which gives

``````array([[0, 0, 0, 0, 0, 0],
[0, 0, 0, 0, 0, 1],
[0, 0, 0, 0, 0, 2],
...,
[3, 3, 3, 3, 3, 1],
[3, 3, 3, 3, 3, 2],
[3, 3, 3, 3, 3, 3]])
``````
• Is there a way to get NumPy to accept more than 32 arrays for meshgrid? This method works for me as long as I don't pass more than 32 arrays. – Joelmob Sep 29 '14 at 16:26

The following numpy implementation should be approx. 2x the speed of the given answer:

``````def cartesian2(arrays):
arrays = [np.asarray(a) for a in arrays]
shape = (len(x) for x in arrays)

ix = np.indices(shape, dtype=int)
ix = ix.reshape(len(arrays), -1).T

for n, arr in enumerate(arrays):
ix[:, n] = arrays[n][ix[:, n]]

return ix
``````
• Looks good. By my rudimentary tests, this looks faster than the original answer for all pairs, triples, and 4-tuples of {1,2,...,100}. After that, the original answer wins. Also, for future readers looking to generate all k-tuples of {1,...,n}, `np.indices((n,...,n)).reshape(k,-1).T` will do. – jme Sep 18 '14 at 15:35
• This only works for integers, while the accepted answer also works for floats. – FJC May 20 '16 at 16:35

It looks like you want a grid to evaluate your function, in which case you can use `numpy.ogrid` (open) or `numpy.mgrid` (fleshed out):

``````import numpy
my_grid = numpy.mgrid[[slice(0,1,0.1)]*6]
``````

you can use `np.array(itertools.product(a, b))`

• np.array(list(itertools.product(l, l2))) – ZirconCode Nov 14 '18 at 14:35

Here's yet another way, using pure NumPy, no recursion, no list comprehension, and no explicit for loops. It's about 20% slower than the original answer, and it's based on np.meshgrid.

``````def cartesian(*arrays):
mesh = np.meshgrid(*arrays)  # standard numpy meshgrid
dim = len(mesh)  # number of dimensions
elements = mesh[0].size  # number of elements, any index will do
flat = np.concatenate(mesh).ravel()  # flatten the whole meshgrid
reshape = np.reshape(flat, (dim, elements)).T  # reshape and transpose
return reshape
``````

For example,

``````x = np.arange(3)
a = cartesian(x, x, x, x, x)
print(a)
``````

gives

``````[[0 0 0 0 0]
[0 0 0 0 1]
[0 0 0 0 2]
...,
[2 2 2 2 0]
[2 2 2 2 1]
[2 2 2 2 2]]
``````

For a pure numpy implementation of Cartesian product of 1D arrays (or flat python lists), just use `meshgrid()`, roll the axes with `transpose()`, and reshape to the desired ouput:

`````` def cartprod(*arrays):
N = len(arrays)
return transpose(meshgrid(*arrays, indexing='ij'),
roll(arange(N + 1), -1)).reshape(-1, N)
``````

Note this has the convention of last axis changing fastest ("C style" or "row-major").

``````In [88]: cartprod([1,2,3], [4,8], [100, 200, 300, 400], [-5, -4])
Out[88]:
array([[  1,   4, 100,  -5],
[  1,   4, 100,  -4],
[  1,   4, 200,  -5],
[  1,   4, 200,  -4],
[  1,   4, 300,  -5],
[  1,   4, 300,  -4],
[  1,   4, 400,  -5],
[  1,   4, 400,  -4],
[  1,   8, 100,  -5],
[  1,   8, 100,  -4],
[  1,   8, 200,  -5],
[  1,   8, 200,  -4],
[  1,   8, 300,  -5],
[  1,   8, 300,  -4],
[  1,   8, 400,  -5],
[  1,   8, 400,  -4],
[  2,   4, 100,  -5],
[  2,   4, 100,  -4],
[  2,   4, 200,  -5],
[  2,   4, 200,  -4],
[  2,   4, 300,  -5],
[  2,   4, 300,  -4],
[  2,   4, 400,  -5],
[  2,   4, 400,  -4],
[  2,   8, 100,  -5],
[  2,   8, 100,  -4],
[  2,   8, 200,  -5],
[  2,   8, 200,  -4],
[  2,   8, 300,  -5],
[  2,   8, 300,  -4],
[  2,   8, 400,  -5],
[  2,   8, 400,  -4],
[  3,   4, 100,  -5],
[  3,   4, 100,  -4],
[  3,   4, 200,  -5],
[  3,   4, 200,  -4],
[  3,   4, 300,  -5],
[  3,   4, 300,  -4],
[  3,   4, 400,  -5],
[  3,   4, 400,  -4],
[  3,   8, 100,  -5],
[  3,   8, 100,  -4],
[  3,   8, 200,  -5],
[  3,   8, 200,  -4],
[  3,   8, 300,  -5],
[  3,   8, 300,  -4],
[  3,   8, 400,  -5],
[  3,   8, 400,  -4]])
``````

If you want to change the first axis fastest ("FORTRAN style" or "column-major"), just change the `order` parameter of `reshape()` like this: `reshape((-1, N), order='F')`

Pandas `merge` offers a naive, fast solution to the problem:

``````# given the lists
x, y, z = [1, 2, 3], [4, 5], [6, 7]

# get dfs with same, constant index
x = pd.DataFrame({'x': x}, index=np.repeat(0, len(x))
y = pd.DataFrame({'y': y}, index=np.repeat(0, len(y))
z = pd.DataFrame({'z': z}, index=np.repeat(0, len(z))

# get all permutations stored in a new df
df = pd.merge(x, pd.merge(y, z, left_index=True, righ_index=True),
left_index=True, right_index=True)
``````