No project description provided
Project description
wrappingpaper
A collection of Python decorators and utilities to abstract away common/tedious Python patterns.
Notes
This package is more about providing interesting abstractions and trying to flesh out the possibilities of Python code organization. I am in no way saying that using these functions will provide "good" code and I am in no way condoning their use for creating evil Python code ;).
Some of the functions in here may incentivize less understandable code, but that's okay. I want to give them space to exist and hopefully we can develop them further to where they will be more understandable and provide more intuitive and familiar abstractions.
This package is about experimentation and trying to create basic, interesting, natural feeling, and convenient abstractions while sidelining the scrutiny of Python purists, and potentially people with more sense (!!). I want this to try to push the limits of the language to see what other interesting constructs we can facilitate.
So, I guess the motto of this package is to develop freely, but use responsibly. <3
One other thing to note though, some of these don't play nice with linters 😢
Simple Example
import wrappingpaper as wp
@wp.contextdecorator
def doing_something(a, b):
print(a)
yield
print(b)
# por que no los dos?
# you can do this
with doing_something(4, 5):
print(1)
# prints 4 1 5
# as well as this
@doing_something(4, 5)
def something():
print(1)
something()
# prints 4 1 5
Includes
- helper modules
- real implementations of faux imports, meant as case-studies for import mechanic classes provided.
- logging / error handling
- catch errors thrown in a function and redirect to logger
- context managers
- context managers that double as function wrappers
- object properties
- class and instance caching
- dynamic property objects - give properties nested attributes and methods !!
- function signature helpers
- override and apply updates to function signatures
- filter function arguments that are outside the function schema
- partial that actually updates the wrapper
- import mechanics
- create faux modules and customize how modules are imported (I did some of the confusing bits for us thankfully)
- iterables
- includes some basic iterable functions that I've pulled from other projects so I don't have to keep duplicating them everywhere
- misc
- stuff I just haven't sorted. ya know?
- retry on exception
- check circular references
Install
pip install wrappingpaper
Usage
import wrappingpaper as wp
Helper Modules
These are faux modules that utilize wrappingpaper
's import mechanics to alter modules that are imported from them.
lazyimport
This is a simple implementation of lazy importing using the defined import mechanics.
from lazyimport import sklearn
import librosa # sklearn imports will be lazy
presets
This is a re-implimentation of bmcfee/presets that includes the import mechanics, instead of having to wrap modules afterwards. I may add a PR to that package, but implementing it here was trivial for the time being and I didn't feel like it was important enough to push it thru the review process.
from presets import librosa
librosa.update(sr=44100) # now functions will default to sr=44100
Logging
NOTE: I haven't put in the work to mock logging objects for testing so beware that in their current form they are untested and most likely have 1 or 2 bugs in there.
I was working on a project that was full of error suppression and logging. There would be functions wrapped in try except blocks, logging calls, and a lot of redundancy in the scaffolding needed.
So I did work to factor that out and perform many of the common patterns in decorators.
The logging decorators here are primarily for functions that can be permitted to fail and return a default/empty value without the rest of the program breaking.
It also has utilities for pulling information from tracebacks. I haven't done anything about the logging Handlers and Formatters so that's a TODO.
import logging
log = logging.getLogger(__name__)
# handle and log error
@wp.log_error_as_warning(log, default=dict)
def get_stats(x=None):
if x is True:
raise ValueError() # some error happens
return {'a': 5, 'b': 6}
assert get_stats() == {'a': 5, 'b': 6}
assert get_stats(True) == {}
Roughly equivalent to:
def get_stats(x=None):
try:
if x is True:
raise ValueError() # some error happens
return {'a': 5, 'b': 6}
except ValueError as e:
log.warning('Exception in get_stats: %s', e)
return {}
Context Managers
Two common patterns in Python are context managers and decorators. Often, they have the same basic structure: do some initialization, run a function, and do some cleanup.
And both can be useful in different contexts to give you clean code, but to use both, I often find myself writing an additional wrapper function around the context manager, and then you have to give it a slightly different name and it can get confusing.
So, in comes contextdecorator
which works the same as contextlib.contextmanager
, but it also doubles as a function decorator. When used as a decorator, it will call the function inside the context manager.
@wp.contextdecorator
def doing_something(a, b):
print(a)
yield
print(b)
# por que no los dos?
# you can do this
with doing_something(4, 5):
print(1)
# as well as this
@doing_something(4, 5)
def something():
print(1)
something()
Sometimes, your decorator isn't as simple and you need to do things a bit differently in the decorator (e.g. you need the name of the wrapped function).
@doing_something.caller # override default decorator
def doing_something(func, a, b): # wrapped function, decorator arguments
# change arguments
name = func.__name__
a = 'calling {}: {}'.format(name, a)
b = 'calling {}: {}'.format(name, b)
# return the wrapped function
@functools.wraps(func)
def inner(*args, **kw):
with doing_something(a, b):
return func(*args, **kw)
return inner
Roughly equivalent to:
import functools
from contextlib import contextmanager
@contextmanager
def doing_something(a, b):
print(a)
yield
print(b)
def doing_something2(a, b):
def outer(func):
@functools.wraps(func)
def inner(*a, **kw):
with doing_something(a, b):
return func(*a, **kw)
return inner
return outer
# used like:
with doing_something(4, 5):
print(1)
@doing_something2(4, 5)
def something():
print(1)
something()
Properties
Python property objects are incredibly useful as they allow you to create natural feeling objects with some complex stuff all bundled up in a nice unsuspecting interface.
But using them, there are often times where I find myself writing the same classes stored many times over in utility files.
One use-case is caching. There are different levels of caching that you can provide.
cachedproperty
: cached on the instance object - runs once per instanceonceproperty
: cached on the class object - runs once per class/baseclassoverridable_property
: works as a normal property (calls the wrapped function), until the property is assigned to. Then it returns the assigned value.overridable_method
: works as a normal method (calls the wrapped function), until the function is called as a decorator. Then it calls the wrapped function. Works on an instance level.
import time
class SomeClass:
@wp.cachedproperty
def instance_prop(self):
'''This is run once per object instance.'''
return time.time()
@wp.onceproperty
def class_prop(self):
'''This is run once. It is cached in the property
object itself.'''
return time.time()
@wp.overridable_property
def overridable(self):
'''This property is run normally, until another value is assigned on top.'''
return time.time()
def __init__(self, overridable=None):
if overridable: # override the property value
# stores at self._overridable
self.overridable = overridable
# otherwise it just uses the property function like usual
a = SomeClass()
b = SomeClass()
assert a.instance_prop != b.instance_prop # prop runs once per object
assert a.class_prop == b.class_prop # prop runs only once
assert a.overridable != a.overridable # gets called twice, shouldn't be the same
a.overridable = 5
assert a.overridable == 5 # now the value is overridden
assert SomeClass(5).overridable == 5 # overriding inside class
Function Signature
This is something that I'm looking for constantly.
Personally, I like the idea of config files that wrap up a bunch of function arguments into a file.
I also hate having to duplicate arguments when passing variables down 5 levels of nested function calls.
I like to just pass keyword arguments (**kw
) down to the next function.
But there are cases, where there are extra config values in your keyword dict and you only want to pass the values that your function takes.
# dynamic function defaults
@wp.configfunction
def asdf(a=5, b=6, c=7):
return a + b + c
assert asdf() == 5+6+7 # normal behavior
asdf.update(a=1)
assert asdf() == 1+6+7 # updated default
assert asdf(3) == 3+6+7 # automatically resolves kwargs and posargs
asdf.clear()
assert asdf() == 5+6+7 # back to normal behavior
# filter out kwargs not in the signature (if **kw, it's a no-op).
@wp.filterkw
def asdf(a=5, b=6, c=7):
return a + b + c
assert asdf(b=10, d=1234) == 5+10+7
Objects
Monkeypatching
class Blah:
def asdf(self):
return 10
b = Blah()
@wp.monkeypatch(b)
def asdf():
return 11
assert asdf() == 11
asdf.reset() # remove patch
assert asdf() == 10
asdf.repatch() # re-place the patch
assert asdf() == 11
Namespace
class something(metaclass=wp.namespace):
one_thing = 5
other_thing = 6
def blah(x):
return one_thing + other_thing + x
assert something.blah(10) == 5+6+10
Iterables
#####################
# loop breaking
#####################
items = wp.until(x if x != 7 else wp.done for x in range(10))
assert list(items) == list(range(0, 6))
####################
# loop throttling
####################
# make sure that a for loop doesn't go too fast.
# limit the time one iteration takes.
t0 = time.time()
for x in wp.throttled(range(10), 1):
print(x)
assert time.time() - t0 > 10
# limiting the number of iterations to 10.
# with no iterable passed, it loops infinitely and
# yields the total yield time and the time it had to sleep.
for dt, time_asleep in wp.limit(wp.throttled(secs=1), 10):
print('Iteration took {}s. Had to sleep for {}s.'.format(dt, time_asleep))
print('-'*10)
################################
# Use `while True:` in a loop
################################
for _ in wp.infinite():
print('this is gonna be a while...')
#########################
# pre-check an iterable
#########################
# check the first n items in an iterable, without removing them.
it = iter(range(6))
items, it = wp.pre_check_iter(it, 3)
assert items == [0, 1, 2]
assert list(it) == [0, 1, 2, 3, 4, 5, 6]
###########################################
# repeat and chain a function infinitely
###########################################
import random
def get_numbers(): # function returns an iterable
return [random.random() for _ in range(10)]
numbers = wp.run_iter_forever(get_numbers)
# repeat get_numbers() and chain iterable outputs together
all_numbers = list(wp.limit(numbers, 100))
assert all(isinstance(x, float) for x in all_numbers)
# If no items are returned by a call, instead of the iterable hanging
# indefinitely waiting for an item, return None.
def get_numbers():
if random.random() > 0.8: # make random breaks
return # returns empty
return [random.random() for _ in range(10)]
numbers = wp.run_iter_forever(get_numbers, none_if_empty=True)
# this SHOULD contain sporadic None's at a multiple of 10
all_numbers = list(wp.limit(numbers, 5000))
assert None in all_numbers
Import Mechanics
This is probably the most dangerous thing to be playing with in here.
Python exposes a lot of its internal mechanics including its import system.
So we can take advantage of that to provide import wrappers that modify module behavior.
A basic example - lazy loading:
# lazyimport/__init__.py
import wrappingpaper as wp
wp.lazy_loader.activate(__name__)
# main.py
from lazyimport import sklearn.model_selection
# sklearn is not currently loaded
sklearn.model_selection.train_test_split() # now it's loaded.
Modify a module after it has been imported from your pseudo-module
import wrappingpaper as wp
@wp.PseudoImportFinder.modulemodifier
def my_loader(module):
module.sneakything = '......hi'
my_loader.activate('somethingrandom')
# now somewhere else, you can do
from somethingrandom import numpy as np
assert np.sneakything == '......hi'
Wrap a module to modify the module's contents
import importlib
import wrappingpaper as wp
# create the module wrapper that will traverse and modify the module when it is loaded.
class Module(wp.ModuleWrapper):
# this is called for each item in the module
def _wrapattr(self, attr, value):
# do whatever you want with the value
if callable(value) and getattr(value, '__doc__', None) is not None:
value.__doc__ += '\nI was here.'
elif self._is_submodule(value):
value = Module(value)
# always pass attr and modified value to be set,
# otherwise it will be undefined.
super()._wrapattr(attr, value)
# applies the module wrapper on load
@wp.PseudoImportFinder.moduleloader
def my_loader(spec):
return Module(importlib.util.module_from_spec(spec))
# somewhere else (or in the same place. I'm not ur mom), actually use it
with my_loader.activated('somethingrandom'): # activated only inside context
from somethingrandom import glob
print(glob.glob.__doc__)
assert glob.glob.__doc__.endswith('I was here.')
Misc
Some other miscellaneous stuff that I have yet to organize.
import random
# retry a function if an exception is raised
@wp.retry_on_failure(10)
def asdf():
x = random.random()
if x < 0.5:
raise ValueError
return x
# will either return a number that is definitely > 0.5
# or every number in the first 10 tries were below 0.5
try:
assert asdf() > 0.5
except ValueError:
print("Couldn't get a number :/")
# ignore error
with wp.ignore():
a, b = 5, 0
c = a / b # throws divide by zero
a = 10 # never run
assert a == 5
Project details
Download files
Download the file for your platform. If you're not sure which to choose, learn more about installing packages.