# Adding row to numpy recarray

Is there an easy way to add a record/row to a numpy recarray without creating a new recarray? Let's say I have a recarray that takes 1Gb in memory, I want to be able to add a row to it without having python take up 2Gb of memory temporarily.

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## 1 Answer

You can call `yourrecarray.resize` with a shape which has one more row, then assign to that new row. Of course. `numpy` might still have to allocate completely new memory if it just doesn't have room to grow the array in-place, but at least you stand a chance!-)

Since an example was requested, here comes, modified off the canonical example list...:

``````>>> import numpy
>>> mydescriptor = {'names': ('gender','age','weight'), 'formats': ('S1', 'f4', 'f4')}
>>> a = numpy.array([('M',64.0,75.0),('F',25.0,60.0)], dtype=mydescriptor)
>>> print a
[('M', 64.0, 75.0) ('F', 25.0, 60.0)]
>>> a.shape
(2,)
>>> a.resize(3)
>>> a.shape
(3,)
>>> print a
[('M', 64.0, 75.0) ('F', 25.0, 60.0) ('', 0.0, 0.0)]
>>> a[2] = ('X', 17.0, 61.5)
>>> print a
[('M', 64.0, 75.0) ('F', 25.0, 60.0) ('X', 17.0, 61.5)]
``````
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Could you show some demonstration code? My attempt at calling arr.resize() ended with ValueError: cannot resize this array: it does not own its data –  unutbu Oct 21 '09 at 2:10
@unutbu, sure, edited answer to supply simple example. You may be meeting issues discussed in this thread: aspn.activestate.com/ASPN/Mail/Message/numpy-discussion/3042521 -- then you can fix them, as Travis Oliphant mentions there, by adding the refcheck=0 argument to the resize call (unless you HAVE shared the data, in which case there can be no resizing in-place any more (note that what Travis mentions as a feature of the SVN head of numpy has been part of regularly released numpy for a long time by now -- that thread is 3+ years old;-). –  Alex Martelli Oct 21 '09 at 2:22
Thank you! a.resize(3,refcheck=0) did the trick for me. –  unutbu Oct 21 '09 at 2:57
I wish the numpy's developers had thought of a better way to add a row to a dataset. It is a very common operation and I don't understand why it should be so inefficient. –  dalloliogm Aug 3 '10 at 10:30
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