skip to navigation
skip to content

effect 0.1a3

pure effects for Python

Latest Version: 0.11.0


Effect is a library for helping you write purely functional code by isolating the effects (that is, IO or state manipulation) in your code.

You can read the core module, it’s pretty short.

Status: Alpha

Right now Effect is in alpha, and is likely to change incompatibly. Once it’s being used in production, I’ll release a final version.

What Is It?

It’s a number of things, depending on your perspective:

  • the IO monad for Python, or
  • an immutable/purely functional version of Twisted’s Deferred, or
  • a way to improve test quality, by promoting “stub” objects to the real implementation
  • a way to decouple the “intent” of an effect from the implementation, thus allowing alternative implementations of effects.

Each of these perspectives has a section below describing that approach.

Effect starts with a very simple idea: instead of having a function which performs side-effects (such as IO):

def get_user_name():
    return raw_input("Enter User Name> ")

you instead have a function which returns a representation of the side-effect:

def get_user_name():
    return Effect(ReadLine("Enter User Name> "))

We call objects like “ReadLine” an intent – that is, the intent of this effect is to read a line.

This function now returns an object which can later be “performed”:

def main():
    effect = get_user_name()

This has a number of advantages. First, your unit tests for get_user_name become simpler. You don’t need to mock out or parameterize the raw_input function - you just call get_user_name and assert that it returns a ReadLine object with the correct ‘prompt’ value.

Second, you can implement ReadLine in a number of different ways - it’s possible to override the implementations of effects to do whatever you want.

Third, your function is now purely functional, letting you rest easy knowing that you’ve improved the amount of quality code in the world ;-)

For more information on how to implement the actual effect-performing code, and other details, see the API documentation

Callback chains

Effect allows you to build up chains of callbacks that process data in turn. That is, if you attach a callback a and then a callback b to an Effect, a will be called with the original result and b will be called with with the result of a. This is inspired directly by Twisted’s Deferreds.

This is a great way to build end-to-end abstractions, compared to non-chaining callback systems like Python’s Futures. You can easily build abstractions like the following:

def request_url(method, url, str_body):
    """Perform an HTTP request."""
    return Effect(Request(method, url, str_body))

def request_200_url(method, url, str_body):
    Perform an HTTP request, and raise an error if the response is not 200.
    return request_url(method, url, str_body).on_success(check_status)

def json_request(method, url, dict_body):
    Perform an HTTP request where the body is sent as JSON and the response
    is automatically decoded as JSON if the Content-type is
    str_body = json.dumps(dict_body)
    return request_url(method, url, str_body).on_success(decode_json)

The monadic bind function has these same properties. Those Haskell people sure have some good ideas.

Learning more

I’ve tried to ensure that the docstrings of all the public functions and classes are up to snuff. There are also real-world examples available in the examples directory, including how to write idiomatic tests.

Following are a number of sections where the utility of the Effect library is highlighted from a number of different use cases.

IO Monad for Python

Effects are vaguely analogus to IO monads. The Effect class can be compared to the IO type, which tags (or wraps) your result type, and Effect.on_success is somewhat like the bind function (>>=), indicating that the function passed is to be called with the result of the effect. Haskell’s Either can be thrown in to handle .on_success vs .on_error.

But Effect is a little more than just the IO monad, since Effects make available the intent as transparent data. By transparent, I specifically mean that it should be an inert data structure with public attributes describing everything necessary to perform the effect. In Haskell, a function that returns IO a can only be returned up to main and performed – there is no way to introspect what the function wants to do (for, e.g., testing purposes).

Representing effects as transparent data gives us two advantages:

  • the ability to provide alternative implementations (such as an asynchronous Twisted-based implementation, or a standard blocking implementation), since the effect performance is late-bound to the effect intent.
  • the ability to perform simple value comparisons in your unit tests to ensure the right effects will be performed.

Of course these use cases have also been solved in Haskell. Quite interesting is the recent work being done with free monads, and the idea of “parsing”, or more accurately interpreting, effect-relying code written in a domain-specific language in a way so as to not actually perform those effects. For more information on this work, see:

To say the least, this would be difficult to fit into Python.

Immutable Deferreds

There are two main differences between Effects and Deferreds, and one is only conventional. One, of course, is that Effects are immutable. The second is that the functions that produce Effects are (or can be) pure.

In almost every case, Deferred-producing functions must have side effects. They kick off some IO and tuck the Deferred away somewhere so they can fire it later.

Functions that produce Effects, on the other hand, should not have side-effects. They should simply describe the intent of the effect. They don’t need to tuck the Effect away to fire later, because that whole process comes later, when the effect is performed.

In some sense, an Effect is an inside-out Deferred – instead of performing the effects in the innermost function that produces the Deferred, with callbacks being attached on the way out, the effect is performed after the whole tree of callbacks has been constructed, higher up the stack.

This avoids the problems with Deferred that require it to have a special garbage-collection handler to log errors that haven’t yet been handled – we know that when all of an Effect’s callbacks have been run, no more can possibly be attached, so we can immediately raise an exception if the final result was an error (this is the behavior of the sync_perform function).

Testability by promoting stub objects

In unit tests, we often use stub objects to replace objects that are considered “expensive”, or otherwise difficult to deal with. The Effect library encourages the promotion of these stub objects to the implementation. This allows us to stop worrying if our stub is close enough to the real thing, since it is the real thing – if the stub is wrong, the effect implementation wouldn’t work.

Alternative effect implementations

Effect is a good way to write code that can be used in any number of IO frameworks: either with standard blocking IO, or with an asynchronous IO system like Twisted or asyncio (or Trollius, or Tornado, or eventlet, etc etc). This is because it forces you to decouple the plain, pure functions that perform only the work between IO from the IO work itself.

A history of the development

For pedagogical purposes, I’ll describe the thought process that led me to write this library. There were a couple of desires that led to me thinking about this problem.

First, I had been thinking for a long time that more of my code should be purely functional. The benefits of pure FP code are well understood, if not fully accepted by the majority of programmers. Needless to say, I buy into it.

I long had the idea that an HTTP client library, for example, should separate the request from the performance of that request. My ideal client would return an inert “Request” object from the http.get() method, instead of actually performing the IO.

At the same time, I had also been struggling with testing in the Python ecosystem. Mocking and stubbing have become extremely widespread in the community, but over and over I saw that the result of ubiquitous usage of mocking were test suites that were extremely difficult to understand and maintain. I saw test suites that were overly tied to the implementation of code under test, and much duplicated mock boilerplate – code that would set up detailed mocks that were very subtly different from test to test.

For a while, I thought that “verified fakes” would solve the problem. Instead of having every one of your tests mocking out the specific IO methods that a piece of implementation code will use, write a class that implements the same interface as the IO code and acts on a test model. This is a good way to do it, but then you have to concern yourself with ensuring the fake has the same behavior as the real implementation.

Then I realized that stubs were a lot like my idea for the “Request” object that my ideal HTTP client library would return – in other words, the stubs could be promoted to being used in the real implementation. That way the majority of my tetss wouldn’t need any mocking or stubbing, and would just invoke the pure ‘get’ method and ensure that it returned a Request object that looked right.

Once I got serious about writing code that was purely functional and which returned transparent objects I quickly came to the conclusion that just returning a Request object wasn’t enough. I realized I needed end to end abstractions. Specifically, for example, I wanted an HTTP client abstraction that could specify a request and process the result – by checking to see if the response code was something other than 200 and raising an error, for example. Or automatically decoding JSON responses to Python objects.

Basically, I needed callbacks, or the >>= operator from Haskell. Deferreds are a great abstraction for callbacks, but I wanted something purely functional, and which let you decouple the intent of the effect from the performance of the effect. From all these ideas came the Effect library.


Thanks to Rackspace for allowing me to work on this project, and having an excellent open source employee contribution policy


Effect is licensed under the MIT license:

Copyright (C) 2014 Christopher Armstrong

Permission is hereby granted, free of charge, to any person obtaining a copy of this software and associated documentation files (the “Software”), to deal in the Software without restriction, including without limitation the rights to use, copy, modify, merge, publish, distribute, sublicense, and/or sell copies of the Software, and to permit persons to whom the Software is furnished to do so, subject to the following conditions:

The above copyright notice and this permission notice shall be included in all copies or substantial portions of the Software.


File Type Py Version Uploaded on Size
effect-0.1a3-py2.py3-none-any.whl (md5) Python Wheel py2.py3 2014-06-10 11KB
effect-0.1a3.tar.gz (md5) Source 2014-06-10 13KB