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I use pylab (more specifically numpy) in all of my python programs­. The exceptions are very rare, if any. So far, I have taken the habit of importing numpy in the following way:

from numpy import *

This has the advantage of making it look like numpy was part of python from the beginning. Is there something bad in the fact of importing numpy like this in every script? I mean apart from the fact that every script/program will require a little bit more memory and will take longer to load.

I think always having to write numpy or even np before every function call that comes from numpy (e.g., np.zeros(3)) is tedious because it requires me to know which function comes from numpy and which doesn't. I don't really care that the zeros function comes from numpy or python, I just want/need to use it.

Which notation is better according to you?

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If you don't know where the function is coming from, how do you know the function even exists or what it does? – Falmarri Apr 21 '11 at 19:49
Right.. maybe it's because I came to python and numpy looking for a MATLAB replacement. – levesque Apr 21 '11 at 20:24
Well I can tell you from experience that python/numpy/scipy is a GREAT replacement to matlab. It's just like with any other language transition though. Try to learn the best practices of the language you're coming to instead of bringing your old paradigms. I can't tell you how awesome it is being able to know that zeroes is coming from numpy when you have 25 imports in your module. Go browse through the linux kernel and tell me if you can figure out where all the functions are coming from =P – Falmarri Apr 21 '11 at 20:54
up vote 18 down vote accepted
  1. from module import * should always be avoided in scripts because it makes it harder to trace where functions and values come from. The problem becomes more apparent when you use more than one import statement of this form. For example:

    from numpy import *
    from numpy.random import *
  2. from numpy import * redefines sum, making it hard(er) to access Python's builtin sum, which does something useful but different. Using multiple imports of this form will eventually lead to more collisions of this sort. If you nip this bad habit in the bud, you'll never have to worry about this (potentially confounding) bug.

    Edit: As @Joe Kington points out, there are actually quite a few collisions:

    import numpy as np
    print([name for name in np_locals.intersection(builtins) if not name.startswith('__')])
    # ['all', 'any', 'min', 'int', 'max', 'sum', 'float', 'complex', 'long', 'abs', 'bool', 'round']
  3. As the Zen of Python says,

    Namespaces are a honking great idea -- let's use more of those!

My advice would be to never use from module import * in scripts, period.

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Just to elaborate on what other people have said, numpy is an especially bad module to use import * with.

pylab is meant for interactive use, and it's fine there. No one wants to type pylab.zeros over and over in a shell when they could just type zeros. However, as soon as you start writing code, everything changes. You're typing it once and it's staying around potentially forever, and other people (e.g. yourself a year down the road) are probably going to be trying to figure out what the heck you were doing.

In addition to what @unutbu already said about overriding python's builtin sum, float int, etc, and to what everyone has said about not knowing where a function came from, numpy and pylab are very large namespaces.

numpy has 566 functions, variables, classes, etc within its namespace. That's a lot! pylab has 930! (And with pylab, these come from quite a few different modules.)

Sure, it's easy enough to guess where zeros or ones or array is from, but what about source or DataSource or lib.utils? (all of these will be in your local namespace if you do from numpy import *

If you have a even slightly larger project, there's a good chance you're going to have a local variable or a variable in another file that's named similar to something in a big module like numpy. Suddenly, you start to care a lot more about exactly what it is that you're calling!

As another example, how would you distinguish between pylab's fft function and numpy's fft module?

Depending on whether you do

from numpy import *
from pylab import *


from pylab import *
from numpy import *

fft is a completely different thing with completely different behavior! (i.e. trying to call fft in the second case will raise an error.)

All in all, you should always avoid from module import *, but it's an especially bad idea in the case of numpy, scipy, et. al. because they're such large namespaces.

Of course all that having been said, if you're just futzing around in a shell trying to quickly get a plot of some data before move on to actually doing something with it, then sure, use pylab. That's what it's there for. Just don't write something that way that anyone might try to read later on down the road!


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it is not a significant problem if numpy is the only module you import like this. Never EVER import any other modules like this in your scripts (unless that module was written by you and you know everything about it and it is reasonably small. For instance, sometimes you split a module into two files so that you can compartmentalize better).

General Rule: Your code readability will not suffer significantly by importing widely used modules (such as numpy) in this manner. But never never import more than one.

My Rule: I NEVER do this kind of import. I always do something like "import numpy as np" if it is going to be used alot.

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I would say that it is an advantage to know where every function call is coming from. It gives you more control over what is in your namespace and avoids all sorts of potential conflicts that will be a pain to debug. If you think import numpy as np is tedious, just wait until you have some third party module that redefines a function name and you have to track down some mysterious behavior that you weren't anticipating.

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Let's tackle from the other way around, I get your code to debug, and I see that you call:


it is tedious to go check around your source to see if this is np.zeros or you redefined it somewhere else, and since pylab has 930 names, this can happen easily.

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