# Numpy - add row to array

How does one add rows to a numpy array?

I have an array A:

``````A = array([[0, 1, 2], [0, 2, 0]])
``````

I wish to add rows to this array from another array X if the first element of each row in X meets a specific condition.

Numpy arrays do not have a method 'append' like that of lists, or so it seems.

If A and X were lists I would merely do:

``````for i in X:
if i[0] < 3:
A.append(i)
``````

Is there a numpythonic way to do the equivalent?

Thanks, S ;-)

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–  Thomas Ahle Mar 14 '14 at 23:53

What is `X`? If it is a 2D-array, how can you then compare its row to a number: `i < 3`?

EDIT after OP's comment:

``````A = array([[0, 1, 2], [0, 2, 0]])
X = array([[0, 1, 2], [1, 2, 0], [2, 1, 2], [3, 2, 0]])
``````

add to `A` all rows from `X` where the first element `< 3`:

``````A = vstack((A, X[X[:,0] < 3]))

# returns:
array([[0, 1, 2],
[0, 2, 0],
[0, 1, 2],
[1, 2, 0],
[2, 1, 2]])
``````
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Sorry good point! Assume a 2D array of which the first element of each row must meet a condition. I will edit that. Thanks, S ;-) –  Darren J. Fitzpatrick Oct 7 '10 at 12:16
@DarrenJ.Fitzpatrick Keep in mind that by doing this type of manipulation you work against the good work Numpy does in pre-allocating memory for your existing array `A`. Clearly for small problem like in this answer this isn't a problem, but it can be more troubling for large data. –  dtlussier Dec 15 '11 at 16:59

well u can do this :

``````  newrow = [1,2,3]
A = numpy.vstack([A, newrow])
``````
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You can also do this:

``````newrow = [1,2,3]
A = numpy.concatenate((A,newrow))
``````
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hmmm. when I tried this, it just added to the end of A, rather than adding a new row as OP requested. –  Todd Curry Sep 12 '13 at 20:26
probably `np.concatenate((A,newrow), axis=0)` –  Konstantinos Roditakis Aug 8 '14 at 16:02

If you can do the construction in a single operation, then something like the vstack-with-fancy-indexing answer is a fine approach. But if your condition is more complicated or your rows come in on the fly, you may want to grow the array. In fact the numpythonic way to do something like this - dynamically grow an array - is to dynamically grow a list:

``````A = np.array([[1,2,3],[4,5,6]])
Alist = [r for r in A]
for i in range(100):
newrow = np.arange(3)+i
if i%5:
Alist.append(newrow)
A = np.array(Alist)
del Alist
``````

Lists are highly optimized for this kind of access pattern; you don't have convenient numpy multidimensional indexing while in list form, but for as long as you're appending it's hard to do better than a list of row arrays.

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