Is it possible to pass functions with arguments to another function in Python?
Say for something like:
def perform(function):
return function()
But the functions to be passed will have arguments like:
action1()
action2(p)
action3(p,r)
Do you mean this?
def perform(fun, *args):
fun(*args)
def action1(args):
# something
def action2(args):
# something
perform(action1)
perform(action2, p)
perform(action3, p, r)
def action1(arg1, arg2=None, arg3=None)
, how could you pass an argument that you intend to be assigned to arg3, for instance?
perform
and action1
, action2
on different files? @S.Lott
def f(g, *args, **kwargs): g(*args, **kwargs)
Commented
Aug 30, 2021 at 6:13
This is what lambda is for:
def perform(f):
f()
perform(lambda: action1())
perform(lambda: action2(p))
perform(lambda: action3(p, r))
You can use the partial function from functools like so.
from functools import partial
def perform(f):
f()
perform(Action1)
perform(partial(Action2, p))
perform(partial(Action3, p, r))
Also works with keywords
perform(partial(Action4, param1=p))
functools.partial
is also more versatile if perform
needs to hand over further parameters to f
. E.g., one could call perform(partial(Action3, p))
and perform(f)
could do something like f("this is parameter r")
.
Use functools.partial, not lambdas! And ofc Perform is a useless function, you can pass around functions directly.
for func in [Action1, partial(Action2, p), partial(Action3, p, r)]:
func()
This is called partial functions and there are at least 3 ways to do this. My favorite way is using lambda because it avoids dependency on extra package and is the least verbose. Assume you have a function add(x, y)
and you want to pass add(3, y)
to some other function as parameter such that the other function decides the value for y
.
Use lambda
# generic function takes op and its argument
def runOp(op, val):
return op(val)
# declare full function
def add(x, y):
return x+y
# run example
def main():
f = lambda y: add(3, y)
result = runOp(f, 1) # is 4
Create Your Own Wrapper
Here you need to create a function that returns the partial function. This is obviously lot more verbose.
# generic function takes op and its argument
def runOp(op, val):
return op(val)
# declare full function
def add(x, y):
return x+y
# declare partial function
def addPartial(x):
def _wrapper(y):
return add(x, y)
return _wrapper
# run example
def main():
f = addPartial(3)
result = runOp(f, 1) # is 4
Use partial from functools
This is almost identical to lambda
shown above. Then why do we need this? There are few reasons. In short, partial
might be bit faster in some cases (see its implementation) and that you can use it for early binding vs lambda's late binding.
from functools import partial
# generic function takes op and its argument
def runOp(op, val):
return op(val)
# declare full function
def add(x, y):
return x+y
# run example
def main():
f = partial(add, 3)
result = runOp(f, 1) # is 4
__call__
it can be useful in some bizarre cases like if the final function parameters may be provided asynchronously to the callable context (rather rare), the 3 methods above are much more common.
(months later) a tiny real example where lambda is useful, partial not:
say you want various 1-dimensional cross-sections through a 2-dimensional function,
like slices through a row of hills.
quadf( x, f )
takes a 1-d f
and calls it for various x
.
To call it for vertical cuts at y = -1 0 1 and horizontal cuts at x = -1 0 1,
fx1 = quadf( x, lambda x: f( x, 1 ))
fx0 = quadf( x, lambda x: f( x, 0 ))
fx_1 = quadf( x, lambda x: f( x, -1 ))
fxy = parabola( y, fx_1, fx0, fx1 )
f_1y = quadf( y, lambda y: f( -1, y ))
f0y = quadf( y, lambda y: f( 0, y ))
f1y = quadf( y, lambda y: f( 1, y ))
fyx = parabola( x, f_1y, f0y, f1y )
As far as I know, partial
can't do this --
quadf( y, partial( f, x=1 ))
TypeError: f() got multiple values for keyword argument 'x'
(How to add tags numpy, partial, lambda to this ?)
f
that you wanted to use, which isn't shown here - so there's no way anyone else could debug the problem. That would be a separate question, anyway. While this is over a decade old, this seems like an appropriate place for a reminder that Stack Overflow is not a discussion forum.
Commented
Sep 18, 2022 at 14:04
Although all the responses are very accurate and well explained. I want to make a clarification that you also can pass anonymous functions.
def perform(fun, *arg):
return fun(*arg)
# Pass anonymous function
print(perform(lambda x: x + 1, 3)) # output: 4
print(perform(lambda x, y: x + y + 1, 3, 2)) # output: 6
# Pass defined function
perform(lambda: action1())
perform(lambda: action2(p))
perform(lambda: action3(p, r))
None
Here is a way to do it with a closure:
def generate_add_mult_func(func):
def function_generator(x):
return reduce(func,range(1,x))
return function_generator
def add(x,y):
return x+y
def mult(x,y):
return x*y
adding=generate_add_mult_func(add)
multiplying=generate_add_mult_func(mult)
print adding(10)
print multiplying(10)
I think this is what you're looking for...
def action1(action):
print(f'doing {action} here!')
def perform(function):
return function()
perform(lambda : action1('business action'))
lambda
packages up func and args in closure and passes to perform()
Thanks to David Beasley.
perform
is supposed to contain logic that figures out the arguments and uses them to callfunction
(including, for example, by receiving those arguments as additional parameters, as in the accepted answer), then Python function as a function argument? is a better version of the question.perform
is expected to be able to call its passed-infunction
without arguments, then arguments for the underlyingaction2
andaction3
need to be bound ahead of time - in which case the question is really about how to do that binding. Python Argument Binders is the canonical for that.