If I have a NumPy array, for example 5x3, is there a way to unpack it column by column all at once to pass to a function rather than like this: my_func(arr[:, 0], arr[:, 1], arr[:, 2])
?
Kind of like *args
for list unpacking but by column.
If I have a NumPy array, for example 5x3, is there a way to unpack it column by column all at once to pass to a function rather than like this: my_func(arr[:, 0], arr[:, 1], arr[:, 2])
?
Kind of like *args
for list unpacking but by column.
You can unpack the transpose of the array in order to use the columns for your function arguments:
my_func(*arr.T)
Here's a simple example:
>>> x = np.arange(15).reshape(5, 3)
array([[ 0, 5, 10],
[ 1, 6, 11],
[ 2, 7, 12],
[ 3, 8, 13],
[ 4, 9, 14]])
Let's write a function to add the columns together (normally done with x.sum(axis=1)
in NumPy):
def add_cols(a, b, c):
return a+b+c
Then we have:
>>> add_cols(*x.T)
array([15, 18, 21, 24, 27])
NumPy arrays will be unpacked along the first dimension, hence the need to transpose the array.
numpy.split splits an array into multiple sub-arrays. In your case, indices_or_sections
is 3 since you have 3 columns, and axis = 1
since we're splitting by column.
my_func(numpy.split(array, 3, 1))