Design¶
Types¶
signature :: [type]
a list of types
Dispatcher :: {signature: function}
A mapping of type signatures to function implementations
namespace :: {str: Dispatcher}
A mapping from function names, like 'add', to Dispatchers
Dispatchers¶
A Dispatcher object stores and selects between different
implementations of the same abstract operation. It selects the
appropriate implementation based on a signature, or list of types. We
build one dispatcher per abstract operation.
f = Dispatcher('f')
At the lowest level we build normal Python functions and then add them
to the Dispatcher.
>>> def inc(x):
... return x + 1
>>> def dec(x):
... return x - 1
>>> f.add((int,), inc) # f increments integers
>>> f.add((float,), dec) # f decrements floats
>>> f(1)
2
>>> f(1.0)
0.0
Internally Dispatcher.dispatch selects the function implementation.
>>> f.dispatch(int)
<function __main__.inc>
>>> f.dispatch(float)
<function __main__.dec>
For notational convenience dispatchers leverage Python’s decorator syntax to register functions as we define them.
f = Dispatcher('f')
@f.register(int)
def inc(x):
return x + 1
@f.register(float)
def dec(x):
return x - 1
This is equivalent to the form above.
It adheres to the standard implemented by functools.singledispatch in
Python 3.4 (although the “functional form” of register is not supported).
As in singledispatch, the register decorator returns the
undecorated function, which enables decorator stacking.
@f.register(str)
@f.register(tuple)
def rev(x):
return x[::-1]
The Dispatcher creates a detailed docstring automatically.
To add a description of the multimethod itself,
provide it when creating the Dispatcher.
>>> f = Dispatcher('f', doc="Do something to the argument")
>>> @f.register(int)
... def inc(x):
... "Integers are incremented"
... return x + 1
>>> @f.register(float)
... def dec(x):
... "Floats are decremented"
... return x - 1
>>> @f.register(str)
... @f.register(tuple)
... def rev(x):
... # no docstring
... return x[::-1]
>>> print(f.__doc__)
Multiply dispatched method: f
Do something to the argument
Inputs: <float>
----------------
Floats are decremented
Inputs: <int>
--------------
Integers are incremented
Other signatures:
str
tuple
Namespaces and dispatch¶
The dispatch decorator hides the creation and manipulation of
Dispatcher objects from the user.
# f = Dispatcher('f') # no need to create Dispatcher ahead of time
@dispatch(int)
def f(x):
return x + 1
@dispatch(float)
def f(x):
return x - 1
The dispatch decorator uses the name of the function to select the
appropriate Dispatcher object to which it adds the new
signature/function. When it encounters a new function name it creates a
new Dispatcher object and stores name/Dispatcher pair in a namespace
for future reference.
# This creates and stores a new Dispatcher('g')
# namespace['g'] = Dispatcher('g')
# namespace['g'].add((int,), g)
@dispatch(int)
def g(x):
return x ** 2
We store this new Dispatcher in a namespace. A namespace is simply
a dictionary that maps function names like 'g' to dispatcher objects
like Dispatcher('g').
By default dispatch uses the global namespace in
multipledispatch.core.global_namespace. If several projects use this
global namespace unwisely then conflicts may arise, causing difficult to
track down bugs. Users who desire additional security may establish
their own namespaces simply by creating a dictionary.
my_namespace = dict()
@dispatch(int, namespace=my_namespace)
def f(x):
return x + 1
To establish a namespace for an entire project we suggest the use of
functools.partial to bind the new namespace to the dispatch
decorator.
from multipledispatch import dispatch
from functools import partial
my_namespace = dict()
dispatch = partial(dispatch, namespace=my_namespace)
@dispatch(int) # Uses my_namespace rather than the global namespace
def f(x):
return x + 1