# creating a dynamic numpy array (2d) on the fly

I am having a hard time creating a numpy 2d array on the fly So basically I have a for loop something like this.

``````for ele in huge_list_of_lists:
instance = np.array(ele) # creates a 1D numpy array of this list
# and now I want to append it to a numpy array
# so basically converting list of lists to array of arrays?
# i have checked the manual.. and np.append() methods
that doesnt work as for np.append() it needs two arguments to append it together
``````

any clues?

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Create the 2D array up front, and fill the rows while looping:

``````my_array = numpy.empty((len(huge_list_of_lists), row_length))
for i, x in enumerate(huge_list_of_lists):
my_array[i] = create_row(x)
``````

where `create_row()` returns a list or 1D NumPy array of length `row_length`.

Depending on what `create_row()` does, there might be even better approaches that avoid the Python loop altogether.

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Just pass the list of lists to `numpy.array`, keep in mind that numpy arrays are `ndarrays`, so the concept to a list of lists doesn't translate to arrays of arrays it translates to a 2d array.

``````>>> import numpy as np
>>> a = [[1., 2., 3.], [4., 5., 6.]]
>>> b = np.array(a)
>>> b
array([[ 1.,  2.,  3.],
[ 4.,  5.,  6.]])
>>> b.shape
(2, 3)
``````

Also ndarrays have nd-indexing so `[1][1]` becomes `[1, 1]` in numpy:

``````>>> a[1][1]
5.0
>>> b[1, 1]
5.0
``````

You defiantly don't want to use `numpy.append` for something like this. Keep in mind that numpy.append has O(n) run time so if you call it n times, once for each row of your array, you end up with a O(n^2) algorithm. If you need to create the array before you know what all the content is going to be, but you know the final size, it's best to create an array using `numpy.zeros(shape, dtype)` and fill it in later. Similar to Sven's answer.

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