Tuneables/Configurable for a module - python

I am writing a module in python which has many functions to be used in a variety of situations, resulting in changing default values over time. (Currently this is a .py file I am importing) Many of the functions have the same hard-coded defaults. I would like to make these defaults configureable, ideally through some functionality that can be accessed via a jupyter notebook that has already imported the module or at the very least that can be set at the time of import or via a config file.
I know how to do this using other languages but have been struggling to do the same in python. I do not want defaults to be hardcoded. I know that some of the difficulty with this is that the module is only imported once, meaning variables inside the module are no longer accessable after the import is complete. If there is a way of looking at this more pythonically, I would accept an answer that explains why my desired solution is non-pythonic and what a good alternative would be.
For example here is what the functions would look like:
function1(arg1 = default_param1):
return arg1
function2(arg1 = default_param1, arg2 = default_param3):
other cool stuff
Here is what I would like to be able to do something similar to this:
import foo_module.py as foo
foo.function1()
foo.default_param1 = new_value
foo.function1()
==> arg1
==> new_value
Of course, with this setup you can always change the value input every time you call the function, but this is less than ideal.
In this case how would I change default_param1 accross the entire module via the code that is importing the module?
Edit: to clarify, this module would not be accessed via the command line. A primary use case is to import it into a jupyter notebook.

You could use environment variables such that, upon being imported, your module reads these variables and adjusts the defaults accordingly.
You could set the environment variables ahead of time using os.environ. So,
import os
os.environ['BLAH'] = '5'
import my_module
Inside my_module.py, you'd have something like
import os
try:
BLAH_DEFAULT = int(os.environ['BLAH'])
except:
BLAH_DEFAULT = 3
If you'd rather not fiddle with environment variables and you're okay with the defaults being mutable after importation, my_module.py could store the defaults in a global dict. E.g.
defaults = {
'BLAH': 3,
'FOO': 'bar',
'BAZ': True
}
Your user could update that dictionary manually (my_module.defaults['BAZ']=False) or, if that bothers you, you could hide the mechanics in a function:
def update_default(key,value):
if key not in defaults:
raise ValueError('{} is not a valid default parameter.'.format(key))
defaults[key]=value
You could spiff up that function by doing type/range checks on the passed value.
However, keep in mind that, unlike in languages like C++ and Java, nothing in Python is truly hidden. A user would be able to directly reference my_module.defaults thus bypassing your function.

Related

Python global variable in import * [duplicate]

I've run into a bit of a wall importing modules in a Python script. I'll do my best to describe the error, why I run into it, and why I'm tying this particular approach to solve my problem (which I will describe in a second):
Let's suppose I have a module in which I've defined some utility functions/classes, which refer to entities defined in the namespace into which this auxiliary module will be imported (let "a" be such an entity):
module1:
def f():
print a
And then I have the main program, where "a" is defined, into which I want to import those utilities:
import module1
a=3
module1.f()
Executing the program will trigger the following error:
Traceback (most recent call last):
File "Z:\Python\main.py", line 10, in <module>
module1.f()
File "Z:\Python\module1.py", line 3, in f
print a
NameError: global name 'a' is not defined
Similar questions have been asked in the past (two days ago, d'uh) and several solutions have been suggested, however I don't really think these fit my requirements. Here's my particular context:
I'm trying to make a Python program which connects to a MySQL database server and displays/modifies data with a GUI. For cleanliness sake, I've defined the bunch of auxiliary/utility MySQL-related functions in a separate file. However they all have a common variable, which I had originally defined inside the utilities module, and which is the cursor object from MySQLdb module.
I later realised that the cursor object (which is used to communicate with the db server) should be defined in the main module, so that both the main module and anything that is imported into it can access that object.
End result would be something like this:
utilities_module.py:
def utility_1(args):
code which references a variable named "cur"
def utility_n(args):
etcetera
And my main module:
program.py:
import MySQLdb, Tkinter
db=MySQLdb.connect(#blahblah) ; cur=db.cursor() #cur is defined!
from utilities_module import *
And then, as soon as I try to call any of the utilities functions, it triggers the aforementioned "global name not defined" error.
A particular suggestion was to have a "from program import cur" statement in the utilities file, such as this:
utilities_module.py:
from program import cur
#rest of function definitions
program.py:
import Tkinter, MySQLdb
db=MySQLdb.connect(#blahblah) ; cur=db.cursor() #cur is defined!
from utilities_module import *
But that's cyclic import or something like that and, bottom line, it crashes too. So my question is:
How in hell can I make the "cur" object, defined in the main module, visible to those auxiliary functions which are imported into it?
Thanks for your time and my deepest apologies if the solution has been posted elsewhere. I just can't find the answer myself and I've got no more tricks in my book.
Globals in Python are global to a module, not across all modules. (Many people are confused by this, because in, say, C, a global is the same across all implementation files unless you explicitly make it static.)
There are different ways to solve this, depending on your actual use case.
Before even going down this path, ask yourself whether this really needs to be global. Maybe you really want a class, with f as an instance method, rather than just a free function? Then you could do something like this:
import module1
thingy1 = module1.Thingy(a=3)
thingy1.f()
If you really do want a global, but it's just there to be used by module1, set it in that module.
import module1
module1.a=3
module1.f()
On the other hand, if a is shared by a whole lot of modules, put it somewhere else, and have everyone import it:
import shared_stuff
import module1
shared_stuff.a = 3
module1.f()
… and, in module1.py:
import shared_stuff
def f():
print shared_stuff.a
Don't use a from import unless the variable is intended to be a constant. from shared_stuff import a would create a new a variable initialized to whatever shared_stuff.a referred to at the time of the import, and this new a variable would not be affected by assignments to shared_stuff.a.
Or, in the rare case that you really do need it to be truly global everywhere, like a builtin, add it to the builtin module. The exact details differ between Python 2.x and 3.x. In 3.x, it works like this:
import builtins
import module1
builtins.a = 3
module1.f()
As a workaround, you could consider setting environment variables in the outer layer, like this.
main.py:
import os
os.environ['MYVAL'] = str(myintvariable)
mymodule.py:
import os
myval = None
if 'MYVAL' in os.environ:
myval = os.environ['MYVAL']
As an extra precaution, handle the case when MYVAL is not defined inside the module.
This post is just an observation for Python behaviour I encountered. Maybe the advices you read above don't work for you if you made the same thing I did below.
Namely, I have a module which contains global/shared variables (as suggested above):
#sharedstuff.py
globaltimes_randomnode=[]
globalist_randomnode=[]
Then I had the main module which imports the shared stuff with:
import sharedstuff as shared
and some other modules that actually populated these arrays. These are called by the main module. When exiting these other modules I can clearly see that the arrays are populated. But when reading them back in the main module, they were empty. This was rather strange for me (well, I am new to Python). However, when I change the way I import the sharedstuff.py in the main module to:
from globals import *
it worked (the arrays were populated).
Just sayin'
A function uses the globals of the module it's defined in. Instead of setting a = 3, for example, you should be setting module1.a = 3. So, if you want cur available as a global in utilities_module, set utilities_module.cur.
A better solution: don't use globals. Pass the variables you need into the functions that need it, or create a class to bundle all the data together, and pass it when initializing the instance.
The easiest solution to this particular problem would have been to add another function within the module that would have stored the cursor in a variable global to the module. Then all the other functions could use it as well.
module1:
cursor = None
def setCursor(cur):
global cursor
cursor = cur
def method(some, args):
global cursor
do_stuff(cursor, some, args)
main program:
import module1
cursor = get_a_cursor()
module1.setCursor(cursor)
module1.method()
Since globals are module specific, you can add the following function to all imported modules, and then use it to:
Add singular variables (in dictionary format) as globals for those
Transfer your main module globals to it
.
addglobals = lambda x: globals().update(x)
Then all you need to pass on current globals is:
import module
module.addglobals(globals())
Since I haven't seen it in the answers above, I thought I would add my simple workaround, which is just to add a global_dict argument to the function requiring the calling module's globals, and then pass the dict into the function when calling; e.g:
# external_module
def imported_function(global_dict=None):
print(global_dict["a"])
# calling_module
a = 12
from external_module import imported_function
imported_function(global_dict=globals())
>>> 12
The OOP way of doing this would be to make your module a class instead of a set of unbound methods. Then you could use __init__ or a setter method to set the variables from the caller for use in the module methods.
Update
To test the theory, I created a module and put it on pypi. It all worked perfectly.
pip install superglobals
Short answer
This works fine in Python 2 or 3:
import inspect
def superglobals():
_globals = dict(inspect.getmembers(
inspect.stack()[len(inspect.stack()) - 1][0]))["f_globals"]
return _globals
save as superglobals.py and employ in another module thusly:
from superglobals import *
superglobals()['var'] = value
Extended Answer
You can add some extra functions to make things more attractive.
def superglobals():
_globals = dict(inspect.getmembers(
inspect.stack()[len(inspect.stack()) - 1][0]))["f_globals"]
return _globals
def getglobal(key, default=None):
"""
getglobal(key[, default]) -> value
Return the value for key if key is in the global dictionary, else default.
"""
_globals = dict(inspect.getmembers(
inspect.stack()[len(inspect.stack()) - 1][0]))["f_globals"]
return _globals.get(key, default)
def setglobal(key, value):
_globals = superglobals()
_globals[key] = value
def defaultglobal(key, value):
"""
defaultglobal(key, value)
Set the value of global variable `key` if it is not otherwise st
"""
_globals = superglobals()
if key not in _globals:
_globals[key] = value
Then use thusly:
from superglobals import *
setglobal('test', 123)
defaultglobal('test', 456)
assert(getglobal('test') == 123)
Justification
The "python purity league" answers that litter this question are perfectly correct, but in some environments (such as IDAPython) which is basically single threaded with a large globally instantiated API, it just doesn't matter as much.
It's still bad form and a bad practice to encourage, but sometimes it's just easier. Especially when the code you are writing isn't going to have a very long life.

globals from multiple modules not visible to exec code?

My app executes bits of python logic stored in a configuration file via exec, as in:
"foo() + 2"
This logic commonly references symbols that I store in a module named "standard". For example, in the above, you can see the logic accesses the method foo(), and foo is defined inside standard.py:
def foo():...
To provide the logic with access to the symbols in standard, I'm extracting out the methods from standard into a dictionary, like so:
import standard
my_globals = standard.__dict__
Then I'm adding in a few other relevant symbols to my_globals (which I don't show here) and providing them to the logic, when I execute it:
exec("foo() + 2", my_globals)
This is working. When I look at globals() from inside foo(), I can see other methods I defined in the module standard.py as well as the other relevant symbols I mentioned above and foo() can access all of those things.
The problem comes in when I want to make another module of functions available to the logic as well. Let's say I have a module named custom.py that has some other symbols I want the logic to access. I'm trying to make those symbols available as well by doing this:
import custom
my_globals.update(custom.__dict__)
Let's say my logic now is "bar() + 1", where "bar" is defined inside of custom.py. bar() also wants to access some of those relevant other symbols I added into my_globals.
The problem I'm running in to is that code inside of custom is only seeing the symbols defined inside custom.py, and not everything else stored in my_globals. IE, bar() can't see foo(), nor the other stuff I tucked away into my_globals.
Yet foo() can. It's code can see any other methods I defined in standard, as well as symbols defined in custom, as well as the "extra" symbols I plugged into my_globals.
Why is this happening? My expectation is that the logic being executed is run in the context of the contents of my_globals, so it seems like both foo() and bar() should be able to access any and all symbols in my_globals.
I suspect this has to do with how I'm creating my_globals. Any insight would be greatly appreciated!
Here is some insight:
"To provide the logic with access to the symbols in standard, I'm extracting out the methods from standard into a dictionary, like so:"
import standard
my_globals = standard.__dict__
Not exactly. You're just creating a local variable, my_globals that now points to standard.__dict__. Whenever you update my_globals, you're really just updating standard.__dict__.
When you add your other symbols to my_globals, again, you're just adding them to standard.__dict__.
Calling:
exec("foo() + 2", my_globals)
works great when foo is defined in standard.py, because you've added all the other methods to this module - you now have access to them all.
When you do:
import custom
my_globals.update(custom.__dict__)
You've added your "symbols" from custom.py to the standard module. All the functions in standard can access functions from custom.py after this point
Unfortunately, custom.py itself, doesn't have direct access to the methods in standard.py (unless you import them). From within custom.py, you can see that everything you've created is in standard now:
(from within custom.py):
import sys
def custom_foo():
print(dir(sys.modules['standard'])) # shows that you've put everything in here
sys.modules['standard'].foo() # calls foo from standard.py (assuming you've imported standard in your main pgm)
Above is really ugly though - you could just add a:
from standard import *
at the top of custom.py, and you would have access to everything you've added to its __dict__ instead.
I doubt you really want to do what you're attempting with the whole exec thing, but I'm not really sure what your use case is.
EDIT:
If you really want all the symbols you've attached to my_globals available to the methods of custom.py, you could call:
custom.__dict__.update(my_globals)
After this point, functions in custom.py would have access to everything you've added to the standard.dict (aka my_globals). (You've also overrode any functions defined in custom.py with functions of the same name in my_globals)
Please note, doing things this way is pretty atypical (read: somewhat ill advised).

How is a Python project set up?

I am doing some heavy commandline stuff (not really web based) and am new to Python, so I was wondering how to set up my files/folders/etc. Are there "header" files where I can keep all the DB connection stuff?
How/where do I define classes and objects?
Just to give you an example of a typical Python module's source, here's something with some explanation. This is a file named "Dims.py". This is not the whole file, just some parts to give an idea what's going on.
#!/usr/bin/env python
This is the standard first line telling the shell how to execute this file. Saying /usr/bin/env python instead of /usr/bin/python tells the shell to find Python via the user's PATH; the desired Python may well be in ~/bin or /usr/local/bin.
"""Library for dealing with lengths and locations."""
If the first thing in the file is a string, it is the docstring for the module. A docstring is a string that appears immediately after the start of an item, which can be accessed via its __doc__ property. In this case, since it is the module's docstring, if a user imports this file with import Dims, then Dims.__doc__ will return this string.
# Units
MM_BASIC = 1500000
MILS_BASIC = 38100
IN_BASIC = MILS_BASIC * 1000
There are a lot of good guidelines for formatting and naming conventions in a document known as PEP (Python Enhancement Proposal) 8. These are module-level variables (constants, really) so they are written in all caps with underscores. No, I don't follow all the rules; old habits die hard. Since you're starting fresh, follow PEP 8 unless you can't.
_SCALING = 1
_SCALES = {
mm_basic: MM_BASIC,
"mm": MM_BASIC,
mils_basic: MILS_BASIC,
"mil": MILS_BASIC,
"mils": MILS_BASIC,
"basic": 1,
1: 1
}
These module-level variables have leading underscores in their names. This gives them a limited amount of "privacy", in that import Dims will not let you access Dims._SCALING. However, if you need to mess with it, you can explicitly say something like import Dims._SCALING as scaling.
def UnitsToScale(units=None):
"""Scales the given units to the current scaling."""
if units is None:
return _SCALING
elif units not in _SCALES:
raise ValueError("unrecognized units: '%s'." % units)
return _SCALES[units]
UnitsToScale is a module-level function. Note the docstring and the use of default values and exceptions. No spaces around the = in default value declarations.
class Length(object):
"""A length. Makes unit conversions easier.
The basic, mm, and mils properties can be used to get or set the length
in the desired units.
>>> x = Length(mils=1000)
>>> x.mils
1000.0
>>> x.mm
25.399999999999999
>>> x.basic
38100000L
>>> x.mils = 100
>>> x.mm
2.54
"""
The class declaration. Note the docstring has things in it that look like Python command line commands. These care called doctests, in that they are test code in the docstring. More on this later.
def __init__(self, unscaled=0, basic=None, mm=None, mils=None, units=None):
"""Constructs a Length.
Default contructor creates a length of 0.
>>> Length()
Length(basic=0)
Length(<float>) or Length(<string>) creates a length with the given
value at the current scale factor.
>>> Length(1500)
Length(basic=1500)
>>> Length("1500")
Length(basic=1500)
"""
# Straight copy
if isinstance(unscaled, Length):
self._x = unscaled._x
return
# rest omitted
This is the initializer. Unlike C++, you only get one, but you can use default arguments to make it look like several different constructors are available.
def _GetBasic(self): return self._x
def _SetBasic(self, x): self._x = x
basic = property(_GetBasic, _SetBasic, doc="""
This returns the length in basic units.""")
This is a property. It allows you to have getter/setter functions while using the same syntax as you would for accessing any other data member, in this case, myLength.basic = 10 does the same thing as myLength._SetBasic(10). Because you can do this, you should not write getter/setter functions for your data members by default. Just operate directly on the data members. If you need to have getter/setter functions later, you can convert the data member to a property and your module's users won't need to change their code. Note that the docstring is on the property, not the getter/setter functions.
If you have a property that is read-only, you can use property as a decorator to declare it. For example, if the above property was to be read-only, I would write:
#property
def basic(self):
"""This returns the length in basic units."""
return self._x
Note that the name of the property is the name of the getter method. You can also use decorators to declare setter methods in Python 2.6 or later.
def __mul__(self, other):
"""Multiplies a Length by a scalar.
>>> Length(10)*10
Length(basic=100)
>>> 10*Length(10)
Length(basic=100)
"""
if type(other) not in _NumericTypes:
return NotImplemented
return Length(basic=self._x * other)
This overrides the * operator. Note that you can return the special value NotImplemented to tell Python that this operation isn't implemented (in this case, if you try to multiply by a non-numeric type like a string).
__rmul__ = __mul__
Since code is just a value like anything else, you can assign the code of one method to another. This line tells Python that the something * Length operation uses the same code as Length * something. Don't Repeat Yourself.
Now that the class is declared, I can get back to module code. In this case, I have some code that I want to run only if this file is executed by itself, not if it's imported as a module. So I use the following test:
if __name__ == "__main__":
Then the code in the if is executed only if this is being run directly. In this file, I have the code:
import doctest
doctest.testmod()
This goes through all the docstrings in the module and looks for lines that look like Python prompts with commands after them. The lines following are assumed to be the output of the command. If the commands output something else, the test is considered to have failed and the actual output is printed. Read the doctest module documentation for all the details.
One final note about doctests: They're useful, but they're not the most versatile or thorough tests available. For those, you'll want to read up on unittests (the unittest module).
Each python source file is a module. There are no "header" files. The basic idea is that when you import "foo" it'll load the code from "foo.py" (or a previously compiled version of it). You can then access the stuff from the foo module by saying foo.whatever.
There seem to be two ways for arranging things in Python code. Some projects use a flat layout, where all of the modules are at the top-level. Others use a hierarchy. You can import foo/bar/baz.py by importing "foo.bar.baz". The big gotcha with hierarchical layout is to have __init__.py in the appropriate directories (it can even be empty, but it should exist).
Classes are defined like this:
class MyClass(object):
def __init__(self, x):
self.x = x
def printX(self):
print self.x
To create an instance:
z = MyObject(5)
You can organize it in whatever way makes the most sense for your application. I don't exactly know what you're doing so I can't be certain what the best organization would be for you, but you can pretty much split it up as you see fit and just import what you need.
You can define classes in any file, and you can define as many classes as you would like in a script (unlike Java). There are no official header files (not like C or C++), but you can use config files to store info about connecting to a DB, whatever, and use configparser (a standard library function) to organize them.
It makes sense to keep like things in the same file, so if you have a GUI, you might have one file for the interface, and if you have a CLI, you might keep that in a file by itself. It's less important how your files are organized and more important how the source is organized into classes and functions.
This would be the place to look for that: http://docs.python.org/reference/.
First of all, compile and install pip: http://pypi.python.org/pypi/pip. It is like Ubuntu's apt-get. You run it via a Terminal by typing in pip install package-name. It has a database of packages, so you can install/uninstall stuff quite easily with it.
As for importing and "header" files, from what I can tell, if you run import foo, Python looks for foo.py in the current folder. If it's not there, it looks for eggs (folders unzipped in the Python module directory) and imports those.
As for defining classes and objects, here's a basic example:
class foo(foobar2): # I am extending a class, in this case 'foobar2'. I take no arguments.
__init__(self, the, list, of, args = True): # Instead, the arguments get passed to me. This still lets you define a 'foo()' objects with three arguments, only you let '__init__' take them.
self.var = 'foo'
def bar(self, args):
self.var = 'bar'
def foobar(self): # Even if you don't need arguments, never leave out the self argument. It's required for classes.
print self.var
foobar = foo('the', 'class', 'args') # This is how you initialize me!
Read more on this in the Python Reference, but my only tip is to never forget the self argument in class functions. It will save you a lot of debugging headaches...
Good luck!
There's no some fixed structure for Python programs, but you can take Django project as an example. Django project consists of one settings.py module, where global settings (like your example with DB connection properties) are stored and pluggable applications. Each application has it's own models.py module, which stores database models and, possibly, other domain specific objects. All the rest is up to you.
Note, that these advices are not specific to Python. In C/C++ you probably used similar structure and kept settings in XML. Just forget about headers and put settings in plain in .py file, that's all.

How can I figure out in my module if the main program uses a specific variable?

I know this does not sound Pythonic, but bear with me for a second.
I am writing a module that depends on some external closed-source module. That module needs to get instantiated to be used (using module.create()).
My module attempts to figure out if my user already loaded that module (easy to do), but then needs to figure out if the module was instantiated. I understand that checking out the type() of each variable can tell me this, but I am not sure how I can get the names of variables defined by the main program. The reason for this is that when one instantiates the model, they also set a bunch of parameters that I do not want to overwrite for any reason.
My attempts so far involved using sys._getframe().f_globals and iterating through the elements, but in my testing it doesn't work. If I instantiate the module as modInst and then call the function in my module, it fails to show the modInst variable. Is there another solution to this? Sample code provided below.
import sys
if moduleName not in sys.modules:
import moduleName
modInst = moduleName.create()
else:
globalVars = sys._getframe().f_globals
for key, value in globalVars:
if value == "Module Name Instance":
return key
return moduleName.create()
EDIT: Sample code included.
Looks like your code assumes that the .create() function was called, if at all, by the immediate/direct caller of your function (which you show only partially, making it pretty hard to be sure about what's going on) and the results placed in a global variable (of the module where the caller of your function resides). It all seems pretty fragile. Doesn't that third-party module have some global variables of its own that are affected by whether the module's create has been called or not? I imagine it would -- where else is it keeping the state-changes resulting from executing the create -- and I would explore that.
To address a specific issue you raise,
I am not sure how I can get the names
of variables defined by the main
program
that's easy -- the main program is found, as a module, in sys.modules['__main__'], so just use vars(sys.modules['__main__']) to get the global dictionary of the main program (the variable names are the keys in that dictionary, along of course with names of functions, classes, etc -- the module, like any other module, has exactly one top-level/global namespace, not one for variables, a separate one for functions, etc).
Suppose the external closed-sourced module is called extmod.
Create my_extmod.py:
import extmod
INSTANTIATED=False
def create(*args,**kw):
global INSTANTIATED
INSTANTIATED=True
return extmod.create(*args,**kw)
Then require your users to import my_extmod instead of extmod directly.
To test if the create function has been called, just check the value of extmod.INSTANTIATED.
Edit: If you open up an IPython session and type import extmod, then type
extmod.[TAB], then you'll see all the top-level variables in the extmod namespace. This might help you find some parameter that changes when extmod.create is called.
Barring that, and barring the possibility of training users to import my_extmod, then perhaps you could use something like the function below. find_extmod_instance searches through all modules in sys.modules.
def find_instance(cls):
for modname in sys.modules:
module=sys.modules[modname]
for value in vars(module).values():
if isinstance(value,cls):
return value
x=find_instance(extmod.ExtmodClass) or extmod.create()

How to make a cross-module variable?

The __debug__ variable is handy in part because it affects every module. If I want to create another variable that works the same way, how would I do it?
The variable (let's be original and call it 'foo') doesn't have to be truly global, in the sense that if I change foo in one module, it is updated in others. I'd be fine if I could set foo before importing other modules and then they would see the same value for it.
If you need a global cross-module variable maybe just simple global module-level variable will suffice.
a.py:
var = 1
b.py:
import a
print a.var
import c
print a.var
c.py:
import a
a.var = 2
Test:
$ python b.py
# -> 1 2
Real-world example: Django's global_settings.py (though in Django apps settings are used by importing the object django.conf.settings).
I don't endorse this solution in any way, shape or form. But if you add a variable to the __builtin__ module, it will be accessible as if a global from any other module that includes __builtin__ -- which is all of them, by default.
a.py contains
print foo
b.py contains
import __builtin__
__builtin__.foo = 1
import a
The result is that "1" is printed.
Edit: The __builtin__ module is available as the local symbol __builtins__ -- that's the reason for the discrepancy between two of these answers. Also note that __builtin__ has been renamed to builtins in python3.
I believe that there are plenty of circumstances in which it does make sense and it simplifies programming to have some globals that are known across several (tightly coupled) modules. In this spirit, I would like to elaborate a bit on the idea of having a module of globals which is imported by those modules which need to reference them.
When there is only one such module, I name it "g". In it, I assign default values for every variable I intend to treat as global. In each module that uses any of them, I do not use "from g import var", as this only results in a local variable which is initialized from g only at the time of the import. I make most references in the form g.var, and the "g." serves as a constant reminder that I am dealing with a variable that is potentially accessible to other modules.
If the value of such a global variable is to be used frequently in some function in a module, then that function can make a local copy: var = g.var. However, it is important to realize that assignments to var are local, and global g.var cannot be updated without referencing g.var explicitly in an assignment.
Note that you can also have multiple such globals modules shared by different subsets of your modules to keep things a little more tightly controlled. The reason I use short names for my globals modules is to avoid cluttering up the code too much with occurrences of them. With only a little experience, they become mnemonic enough with only 1 or 2 characters.
It is still possible to make an assignment to, say, g.x when x was not already defined in g, and a different module can then access g.x. However, even though the interpreter permits it, this approach is not so transparent, and I do avoid it. There is still the possibility of accidentally creating a new variable in g as a result of a typo in the variable name for an assignment. Sometimes an examination of dir(g) is useful to discover any surprise names that may have arisen by such accident.
Define a module ( call it "globalbaz" ) and have the variables defined inside it. All the modules using this "pseudoglobal" should import the "globalbaz" module, and refer to it using "globalbaz.var_name"
This works regardless of the place of the change, you can change the variable before or after the import. The imported module will use the latest value. (I tested this in a toy example)
For clarification, globalbaz.py looks just like this:
var_name = "my_useful_string"
You can pass the globals of one module to onother:
In Module A:
import module_b
my_var=2
module_b.do_something_with_my_globals(globals())
print my_var
In Module B:
def do_something_with_my_globals(glob): # glob is simply a dict.
glob["my_var"]=3
Global variables are usually a bad idea, but you can do this by assigning to __builtins__:
__builtins__.foo = 'something'
print foo
Also, modules themselves are variables that you can access from any module. So if you define a module called my_globals.py:
# my_globals.py
foo = 'something'
Then you can use that from anywhere as well:
import my_globals
print my_globals.foo
Using modules rather than modifying __builtins__ is generally a cleaner way to do globals of this sort.
You can already do this with module-level variables. Modules are the same no matter what module they're being imported from. So you can make the variable a module-level variable in whatever module it makes sense to put it in, and access it or assign to it from other modules. It would be better to call a function to set the variable's value, or to make it a property of some singleton object. That way if you end up needing to run some code when the variable's changed, you can do so without breaking your module's external interface.
It's not usually a great way to do things — using globals seldom is — but I think this is the cleanest way to do it.
I wanted to post an answer that there is a case where the variable won't be found.
Cyclical imports may break the module behavior.
For example:
first.py
import second
var = 1
second.py
import first
print(first.var) # will throw an error because the order of execution happens before var gets declared.
main.py
import first
On this is example it should be obvious, but in a large code-base, this can be really confusing.
I wondered if it would be possible to avoid some of the disadvantages of using global variables (see e.g. http://wiki.c2.com/?GlobalVariablesAreBad) by using a class namespace rather than a global/module namespace to pass values of variables. The following code indicates that the two methods are essentially identical. There is a slight advantage in using class namespaces as explained below.
The following code fragments also show that attributes or variables may be dynamically created and deleted in both global/module namespaces and class namespaces.
wall.py
# Note no definition of global variables
class router:
""" Empty class """
I call this module 'wall' since it is used to bounce variables off of. It will act as a space to temporarily define global variables and class-wide attributes of the empty class 'router'.
source.py
import wall
def sourcefn():
msg = 'Hello world!'
wall.msg = msg
wall.router.msg = msg
This module imports wall and defines a single function sourcefn which defines a message and emits it by two different mechanisms, one via globals and one via the router function. Note that the variables wall.msg and wall.router.message are defined here for the first time in their respective namespaces.
dest.py
import wall
def destfn():
if hasattr(wall, 'msg'):
print 'global: ' + wall.msg
del wall.msg
else:
print 'global: ' + 'no message'
if hasattr(wall.router, 'msg'):
print 'router: ' + wall.router.msg
del wall.router.msg
else:
print 'router: ' + 'no message'
This module defines a function destfn which uses the two different mechanisms to receive the messages emitted by source. It allows for the possibility that the variable 'msg' may not exist. destfn also deletes the variables once they have been displayed.
main.py
import source, dest
source.sourcefn()
dest.destfn() # variables deleted after this call
dest.destfn()
This module calls the previously defined functions in sequence. After the first call to dest.destfn the variables wall.msg and wall.router.msg no longer exist.
The output from the program is:
global: Hello world!
router: Hello world!
global: no message
router: no message
The above code fragments show that the module/global and the class/class variable mechanisms are essentially identical.
If a lot of variables are to be shared, namespace pollution can be managed either by using several wall-type modules, e.g. wall1, wall2 etc. or by defining several router-type classes in a single file. The latter is slightly tidier, so perhaps represents a marginal advantage for use of the class-variable mechanism.
This sounds like modifying the __builtin__ name space. To do it:
import __builtin__
__builtin__.foo = 'some-value'
Do not use the __builtins__ directly (notice the extra "s") - apparently this can be a dictionary or a module. Thanks to ΤΖΩΤΖΙΟΥ for pointing this out, more can be found here.
Now foo is available for use everywhere.
I don't recommend doing this generally, but the use of this is up to the programmer.
Assigning to it must be done as above, just setting foo = 'some-other-value' will only set it in the current namespace.
I use this for a couple built-in primitive functions that I felt were really missing. One example is a find function that has the same usage semantics as filter, map, reduce.
def builtin_find(f, x, d=None):
for i in x:
if f(i):
return i
return d
import __builtin__
__builtin__.find = builtin_find
Once this is run (for instance, by importing near your entry point) all your modules can use find() as though, obviously, it was built in.
find(lambda i: i < 0, [1, 3, 0, -5, -10]) # Yields -5, the first negative.
Note: You can do this, of course, with filter and another line to test for zero length, or with reduce in one sort of weird line, but I always felt it was weird.
I could achieve cross-module modifiable (or mutable) variables by using a dictionary:
# in myapp.__init__
Timeouts = {} # cross-modules global mutable variables for testing purpose
Timeouts['WAIT_APP_UP_IN_SECONDS'] = 60
# in myapp.mod1
from myapp import Timeouts
def wait_app_up(project_name, port):
# wait for app until Timeouts['WAIT_APP_UP_IN_SECONDS']
# ...
# in myapp.test.test_mod1
from myapp import Timeouts
def test_wait_app_up_fail(self):
timeout_bak = Timeouts['WAIT_APP_UP_IN_SECONDS']
Timeouts['WAIT_APP_UP_IN_SECONDS'] = 3
with self.assertRaises(hlp.TimeoutException) as cm:
wait_app_up(PROJECT_NAME, PROJECT_PORT)
self.assertEqual("Timeout while waiting for App to start", str(cm.exception))
Timeouts['WAIT_JENKINS_UP_TIMEOUT_IN_SECONDS'] = timeout_bak
When launching test_wait_app_up_fail, the actual timeout duration is 3 seconds.

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