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I am new to Python as I want to expand skills that I learned using R. In R I tend to load a bunch of libraries, sometimes resulting in function name conflicts.

What is best practice in Python. I have seen some specific variations that I do not see a difference between

import pandas, from pandas import *, and from pandas import DataFrame

What are the differences between the first two and should I just import what I need. Also, what would be the worst consequences for someone making small programs to process data and compute simple statistics.


I found this excellent guide. It explains everything.

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import pandas and from pandas import DataFrame both are okay. The second form from pandas import * is usually not to be recommended, because it pulls just everything into the global namespace. –  Niklas B. Mar 28 '12 at 23:01
possible duplicate of Properly importing modules in Python –  Wooble Mar 28 '12 at 23:04

5 Answers 5

up vote 22 down vote accepted

import pandas imports the pandas module under the pandas namespace, so you would need to call objects within pandas using pandas.foo.

from pandas import * imports all objects from the pandas module into your current namespace, so you would call objects within pandas using only foo. Keep in mind this could have unexepcted consequences if there are any naming conflicts between your current namespace and the pandas namespace.

from pandas import DataFrame is the same as above, but only imports DataFrame (instead of everything) into your current namespace.

In my opinion the first is generally best practice, as it keeps the different modules nicely compartmentalized in your code.

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In general it is better to do explicit imports. As in:

import pandas
frame = pandas.DataFrame()


from pandas import DataFrame
frame = DataFrame()

Another option in Python, when you have conflicting names, is import x as y:

from pandas import DataFrame as PDataFrame
from bears import DataFrame as BDataFrame
frame1 = PDataFrame()
frame2 = BDataFrame()
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from A import B

essentially equals following three statements

import A
B = A.B
del A

That's it, that is it all.

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This isn't entirely correct. from A import B will import A into the global namespace, and B as well. You can still do A.C (or even A.B if you'd like), but you can also do B from itertools import imap >>> itertools <module 'itertools' (built-in)> >>> imap itertools.imap >>> itertools.starmap itertools.starmap –  Dannnno Nov 23 '14 at 21:21
Thus there isn't anything like del A –  Dannnno Nov 23 '14 at 21:22

They are all suitable in different contexts (which is why they are all available). There's no deep guiding principle, other than generic motherhood statements around clarity, maintainability and simplicity. Some examples from my own code:

  1. import sys, os, re, itertools avoids name collisions and provides a very succinct way to import a bunch of standard modules.
  2. from math import * lets me write sin(x) instead of math.sin(x) in math-heavy code. This gets a bit dicey when I also import numpy, which doubles up on some of these, but it doesn't overly concern me, since they are generally the same functions anyway. Also, I tend to follow the numpy documentation — import numpy as np — which sidesteps the issue entirely.
  3. I favour from PIL import Image, ImageDraw just because that's the way the PIL documentation presents its examples.
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If you want to do sin(x) instead of math.sin(x) why not use from math import sin? –  Chiggs Dec 11 '13 at 13:25
@Chiggs: In math-oriented code, I rarely want just sin. If I want just a handful of symbols, I could import each one as a comma-list, but I usually can't be bothered figuring out which ones I'll need. * is convenient, if a bit lazy. –  Marcelo Cantos Dec 12 '13 at 14:51

Disadvantage of each form

When reading other people's code (and those people use very different importing styles), I noticed the following problems with each of the styles:

import modulewithaverylongname will clutter the code further down with the long module name (e.g. concurrent.futures or django.contrib.auth.backends) and decrease readability in those places.

from module import * gives me no chance to see syntactically that, for instance, classA and classB come from the same module and have a lot to do with each other. It makes reading the code hard. (That names from such an import may shadow names from an earlier import is the least part of that problem.)

from module import classA, classB, functionC, constantD, functionE overloads my short-term memory with too many names that I mentally need to assign to module in order to coherently understand the code.

import modulewithaverylongname as mwvln is sometimes insufficiently mnemonic to me.

A suitable compromise

Based on the above observations, I have developed the following style in my own code:

import module is the preferred style if the module name is short as for example most of the packages in the standard library. It is also the preferred style if I need to use names from the module in only two or three places in my own module; clarity trumps brevity then ("Readability counts").

import longername as ln is the preferred style in almost every other case. For instance, I might import django.contrib.auth.backends as dj_abe. By definition of criterion 1 above, the abbreviation will be used frequently and is therefore sufficiently easy to memorize.

Only these two styles are fully pythonic as per the "Explicit is better than implicit." rule.

from module import xx still occurs sometimes in my code. I use it in cases where even the as format appears exaggerated, the most famous example being from datetime import datetime.

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