Elixir's pipe operator in Python
Project description
✨ Pipe Operator ✨
pipe_operator
allows you to use an elixir pipe-like syntax in python.
This module provides 2 vastly different implementations, each with its own pros and cons.
⚡ Quick start
As simple as pip install pipe_operator
.
Then either import the 🐍 pythonic classes or the 🍹 elixir functions
# Pythonic classes
from pipe_operator import Pipe, PipeArgs, PipeEnd, PipeStart, Tap, Then
# Elixir functions
from pipe_operator import elixir_pipe, tap, then
📕 Overview
You can use the 🐍 pythonic implementation, which is entirely compatible with linters and type-checkers, but a bit more verbose than the original pipe operator:
from pipe_operator import Pipe, PipeArgs, PipeEnd, PipeStart, Tap, Then
result = (
PipeStart("3") # starts the pipe
>> Pipe(int) # function with 1-arg
>> Pipe(my_func, 2000, z=10) # function with multiple args
>> Tap(print) # side effect
>> Then(lambda x: x + 1) # lambda
>> Pipe(MyClass) # class
>> Pipe(MyClass.my_classmethod) # classmethod
>> Tap(MyClass.my_method) # side effect that can update the original object
>> Pipe(MyClass.my_other_method) # method
>> Then[int, int](lambda x: x * 2) # explicitly-typed lambda
>> PipeArgs(my_other_func, 4, 5, 6) # special case for functions with no positional/keyword parameters
>> PipeEnd() # extract the value
)
Or the 🍹 elixir-like implementation, whose syntax greatly resembles the original pipe operator, but has major issues with linters and type-checkers.
from pipe_operator import elixir_pipe, tap, then
@elixir_pipe
def workflow(value):
results = (
value # raw value
>> BasicClass # class call
>> _.value # property (shortcut)
>> BasicClass() # class call
>> _.get_value_plus_arg(10) # method call
>> 10 + _ - 5 # binary operation (shortcut)
>> {_, 1, 2, 3} # object creation (shortcut)
>> [x for x in _ if x > 4] # comprehension (shortcut)
>> (lambda x: x[0]) # lambda (shortcut)
>> my_func(_) # function call
>> tap(my_func) # side effect
>> my_other_func(2, 3) # function call with extra args
>> then(lambda a: a + 1) # then
>> f"value is {_}" # formatted string (shortcut)
)
return results
workflow(3)
🐍 Pythonic implementation
Available classes
In the 🐍 pythonic implementation, we expose the following classes:
Class | Description | Examples |
---|---|---|
PipeStart |
The start of the pipe | PipeStart("3") |
Pipe |
Used to call almost any functions or classes, or methods | Pipe(int) , Pipe(my_func, 2000, z=10) |
PipeArgs |
Same as Pipe but for function with no positional/keyword parameters |
PipeArgs(func, 1, 2) |
Then |
Same as Pipe , but for 1-arg lambda functions |
Then(lambda x: x.attribute) |
Tap |
Used to trigger a side effect (meaning it returns the original value) | Tap(print) , Tap(lambda x: x.method()) |
PipeEnd |
The end of the pipe, to extract the raw final result | PipeEnd() |
Limitations
property: Properties cannot be called directly. You must resort to the use of Then(lambda x: x.my_property)
.
This will work just fine and ensure type-safety throughout the pipe.
functions without positional/keyword parameters: While they are technically supported by the Pipe
class,
your type-checker will not handle them properly, because the Pipe
class expect the function to have
at least 1 positional/keyword parameter (ie the first one, passed down the pipe). To bypass this limitation,
you should use PipeArgs
instead.
pyright: pyright
seems to have trouble dealing with our >>
in some specific cases. As such,
we advise you set reportOperatorIssue = "none"
in your pyright
config.
🍹 Elixir-like implementation
Overview
In the 🍹 elixir-like implementation, we expose 3 functions:
elixir_pipe
: a decorator that enables the use of "pipe" in our functiontap
: a function to trigger a side-effect and return the original valuethen
: (optional) the proper way to pass lambdas into the pipe
The elixir_pipe
decorator can take arguments allowing you to customize
# Those are the default args
@elixir_pipe(placeholder="_", lambda_var="_pipe_x", operator=">>", debug=False)
def my_function()
...
placeholder
: The expected variable used in shortcut like_.property
lambda_var
: The variable named used internally when we generate lambda function. You'll likely never change thisoperator
: The operator used in the pipedebug
: If true, will print the output after each pipe operation
Operations and shortcuts
Initially, all operations can be supported through the base operations,
with lambdas
allowing you to perform any other operations. To make lambda usage cleaner,
you can write them into then
calls as well.
Operation | Input | Output |
---|---|---|
function calls | a >> b(...) |
b(a, ...) |
class calls | a >> B(...) |
B(a, ...) |
calls without parenthesis | a >> b |
b(a) |
lambda calls | a >> (lambda x: x + 4) |
(lambda x: x + 4)(a) |
However, we've also added shortcuts, based on the placeholder
argument, allowing you
to skip the lambda declaration and directly perform the following operations:
Operation | Input | Output |
---|---|---|
method calls | a >> _.method(...) |
a.method(...) |
property calls | a >> _.property |
a.property |
binary operators | a >> _ + 3 |
(lambda Z: Z + 3)(a) |
f-strings | a >> f"{_}" |
(lambda Z: f"{Z}")(a) |
list/set/... creations | a >> [_, 1, 2] |
(lambda Z: [Z, 1, 2])(a) |
list/set/... comprehensions | a >> [x + _ for x in range(_)] |
(lambda Z: [x + Z for x in range(Z)])(a) |
How it works
Here's quick rundown of how it works. Feel free to inspect the source code or the tests. Once you've decorated your function and run the code:
- We pull the AST from the original function
- We remove our own decorator, to avoid recursion and impacting other functions
- We then rewrite the AST, following a specific set of rules (as shown in the table below)
- And finally we execute the re-written AST
Eventually, a >> b(...) >> c(...)
becomes c(b(a, ...), ...)
.
Linters and type-checkers issues
Sadly, this implementation comes short when dealing with linters (like ruff
or flake8
)
and type-checkers (like mypy
or pyright
). Because these are static code analyzers, they inspect
the original code, and not your AST-modified version. To bypass the errors, you'll need to disable
the followings:
mypy
: Either ignoreoperator,call-arg,call-overload,name-defined
, or ignore justname-defined
and use the@no_type_check
decoratorpyright
: SetreportOperatorIssue
,reportCallIssue
,reportUndefinedVariable
tonone
ruff
: Disable theF821
errorflake8
: Disable theF821
error
🔗 Useful links
- Want to contribute?
- See what's new!
- Originally forked from robinhilliard/pipes
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