Take the 2-minute tour ×
Stack Overflow is a question and answer site for professional and enthusiast programmers. It's 100% free, no registration required.

I have a recarray with a couple columns that I use for selecting a subset. Something like

>>> x
   array([ ('label1',True,3),
         dtype=[('status', '|S16'), ('select', '|b1'), ('somedata', '<i4')])

Data is selected from this array using an approach similar to a previous SO question.


Then I do some work on the subset and update the original.


I understand that x_sub is a copy rather than a view due to advanced indexing, and I was wondering if there was an elegant way of avoiding the array copy and just working with the original given the conditions that I need to subset the data.

share|improve this question

2 Answers 2

up vote 3 down vote accepted

The kind of modifications you mention in the comments to my first answer can be done with the numpy.place() function:

>>> import numpy
>>> x = numpy.array([("label1",True,3), ("label2",False,2), ("label1",True,4)],
...     dtype=[("status", "|S16"), ("select", "|b1"), ("somedata", ">> mask = x["select"]
>>> numpy.place(x["somedata"], mask, (5, 6))
>>> print x
[('label1', True, 5) ('label2', False, 2) ('label1', True, 6)]
>>> numpy.place(x["status"], mask, "label3")
>>> print x
[('label3', True, 5) ('label2', False, 2) ('label3', True, 6)]

Note that

  1. I changed the values and conditions a bit for the sake of a pertinent example.

  2. This time, the values where mask is True are selected again, not masked out as in my previous answer.

  3. The ==True part in your mask condit is redundant, just leave it out :)

share|improve this answer
This works very well and is more elegant than what I was doing earlier. –  fideli Nov 11 '10 at 20:07
This is a good general solution for applying ufuncs to boolean-selected parts of an array, since masks don't seem to work. I needed to np.clip only a set of the array, but even using np.ma.clip on a masked array will still clip the masked values. np.place it is. –  askewchan Aug 15 '13 at 18:22

You could use a "masked array":

masked = numpy.ma.array(x, 

Note that the mask is the inverse of your condit, since the values where the mask is True are masked out. You can now apply any numpy ufunc to this masked array, and only the values not masked out are affected.

share|improve this answer
This looks interesting. I haven't used masked arrays before. I will try this and report back. –  fideli Nov 8 '10 at 22:14
If this approach works fine actually depends on what modifications you are performing. You just said "some work" :) –  Sven Marnach Nov 8 '10 at 22:38
The main "work" done are statements like x_sub['select']=False or x_sub['somedata']=y where y is another array where len(y)=x_sub.shape[0]. –  fideli Nov 9 '10 at 2:52
Hmm, let's say x_mask= what you wrote in your answer, would I be able to do the operations of the type I mentioned in my last comment? I'm clearly new to masked arrays. –  fideli Nov 9 '10 at 3:03
I would have expected this kind of modifications to work, but it seems they don't. I try to give an additional answer based on this additional information :) –  Sven Marnach Nov 9 '10 at 13:46

Your Answer


By posting your answer, you agree to the privacy policy and terms of service.

Not the answer you're looking for? Browse other questions tagged or ask your own question.