# Append Row(s) to a NumPy Record Array

Is there a way to append a row to a NumPy rec.array()? For example,

``````x1=np.array([1,2,3,4])
x2=np.array(['a','dd','xyz','12'])
x3=np.array([1.1,2,3,4])
r = np.core.records.fromarrays([x1,x2,x3],names='a,b,c')

append(r,(5,'cc',43.0),axis=0)
``````

The easiest way would to extract all the column as nd.array() types, add the separate elements to each column, and then rebuild the rec.array(). This method would be memory inefficient unfortunately. Is there another way to this without separating the rebuilding the rec.array()?

Cheers,

Eli

-

You can resize numpy arrays in-place. This is faster than converting to lists and then back to numpy arrays, and it uses less memory too.

``````print (r.shape)
# (4,)
r.resize(5)
print (r.shape)
# (5,)
r[-1] = (5,'cc',43.0)
print(r)

# [(1, 'a', 1.1000000000000001)
#  (2, 'dd', 2.0)
#  (3, 'xyz', 3.0)
#  (4, '12', 4.0)
#  (5, 'cc', 43.0)]
``````

If there is not enough memory to expand an array in-place, the resizing (or appending) operation may force NumPy to allocate space for an entirely new array and copy the old data to the new location. That, naturally, is rather slow so you should try to avoid using `resize` or `append` if possible. Instead, pre-allocate arrays of sufficient size from the very beginning (even if somewhat larger than ultimately necessary).

-
``````np.core.records.fromrecords(r.tolist()+[(5,'cc',43.)])
``````

Still it does split, this time by rows. Maybe better?

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@Paul, the question is: `"is there a more efficient way to do this"`? –  mjv Nov 13 '09 at 16:05