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If one has run

from numpy import *

then the built-in all, and several other functions, are shadowed by numpy functions with the same names.

The most common case where this happens (without people fully realizing it) is when starting ipython with ipython --pylab (but you shouldn't be doing this, use --matplotlib, which doesn't import anything into your name space, but sets up the gui-related magic, instead).

Once this has been done, is there anyway to call the built-in functions?

This is worth doing because the built-in all can deal with generators, where as the numpy version can not.

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But why use from numpy import * in the first place? –  Akavall Sep 13 '13 at 1:20
@Akavall Because when you start ipython with ipython --pylab it gets pulled in. For interactive work, it is very convenient. This is one of the few hang ups. –  tcaswell Sep 13 '13 at 1:23
OK. I see. thanks –  Akavall Sep 13 '13 at 1:25
For posterity: in recent IPythons you should just use ipython --matplotlib instead, which does all the setup but doesn't import anything. (To have easy access the plotting stuff you can then do import pylab as pl.) –  Dougal Sep 18 '13 at 20:54

2 Answers 2

up vote 9 down vote accepted

you can just do

all = __builtins__.all

The statement from numpy import * basically do two separate things

  1. imports the module numpy
  2. copies all the exported names from the module to the current module

by re-assigning the original value from __builtins__ you can restore the situation for the functions you need.

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Thank you. Suspected I was missing something simple. –  tcaswell Sep 12 '13 at 21:19
__builtin__ (singular) will also work. When you start ipython with ipython --pylab __bulitins__ is a dict, not a module because of numpy.__builtins__ which shadows __builtins__. –  tcaswell Sep 12 '13 at 22:14

You can correct these en masse by re-importing the builtins:

In [1]: all
Out[1]: <function all>

In [2]: from numpy import *

In [3]: all
Out[3]: <function numpy.core.fromnumeric.all>

In [4]: from __builtin__ import *

In [5]: all
Out[5]: <function all>
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On the other hand, in the context in which one would use --pylab the numpy version of things like sum and max are the ones you want (IMO). –  tcaswell Sep 18 '13 at 20:38
Tbh I always prefix with np, I prefer to be explicit. –  Andy Hayden Sep 18 '13 at 20:41
I tend to agree, but the point of pylab is to replicate at MATLAB terminal, for better or worse. –  tcaswell Sep 18 '13 at 20:55

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