# How do you remove a column from a structured numpy array?

I have another basic question, that I haven't been able to find the answer for, but it seems like something that should be easy to do.

Ok, imagine you have a structured numpy array, generated from a csv with the first row as field names. The array has the form:

``````dtype([('A', '<f8'), ('B', '<f8'), ('C', '<f8'), ..., ('n','<f8'])
``````

Now, lets say you want to remove from this array the 'ith' column. Is there a convenient way to do that?

I'd like a it to work like delete:

``````new_array = np.delete(old_array, 'i')
``````

Any ideas?

-
Are all dtypes f8? –  Mike Saull Mar 22 '13 at 18:41

It's not quite a single function call, but the following shows one way to drop the i-th field:

``````In [67]: a
Out[67]:
array([(1.0, 2.0, 3.0), (4.0, 5.0, 6.0)],
dtype=[('A', '<f8'), ('B', '<f8'), ('C', '<f8')])

In [68]: i = 1   # Drop the 'B' field

In [69]: names = list(a.dtype.names)

In [70]: names
Out[70]: ['A', 'B', 'C']

In [71]: new_names = names[:i] + names[i+1:]

In [72]: new_names
Out[72]: ['A', 'C']

In [73]: b = a[new_names]

In [74]: b
Out[74]:
array([(1.0, 3.0), (4.0, 6.0)],
dtype=[('A', '<f8'), ('C', '<f8')])
``````

Wrapped up as a function:

``````def remove_field_num(a, i):
names = list(a.dtype.names)
new_names = names[:i] + names[i+1:]
b = a[new_names]
return b
``````

It might be more natural to remove a given field name:

``````def remove_field_name(a, name):
names = list(a.dtype.names)
if name in names:
names.remove(name)
b = a[names]
return b
``````

Also, check out the `drop_rec_fields` function that is part of the `mlab` module of matplotlib.

-
+1 Beat me to it by 3 minutes! –  Jaime Mar 22 '13 at 18:42
@Jaime: Barely. :) Since you removed your answer, I'll mention deleting by field name rather than number, which might be more natural. –  Warren Weckesser Mar 22 '13 at 18:48