# Modifying an advanced-indexed subset of a NumPy recarray in place

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

``````>>> x
array([ ('label1',True,3),
('label2',True,2),
('label1',False,4)],
dtype=[('status', '|S16'), ('select', '|b1'), ('somedata', '<i4')])
``````

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

``````condit=(x['status']=='label1')&(x['select']==True)
x_subids=numpy.where(condit)[0]
x_sub=x[x_subids]
``````

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

``````x[x_subids]=x_sub
``````

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.

-

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"]
>>> print x
[('label1', True, 5) ('label2', False, 2) ('label1', True, 6)]
>>> 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 :)

-
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.
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