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A simple implementation of contracts for Python.

Project description

Introduction

This module provides a collection of decorators that makes it easy to write software using contracts.

Contracts are a debugging and verification tool. They are declarative statements about what states a program must be in to be considered “correct” at runtime. They are similar to assertions, and are verified automatically at various well-defined points in the program. Contracts can be specified on functions and on classes.

Contracts serve as a form of documentation and a way of formally specifying program behavior. Good practice often includes writing all of the contracts first, with these contract specifying the exact expected state before and after each function or method call and the things that should always be true for a given class of object.

Contracts consist of two parts: a description and a condition. The description is simply a human-readable string that describes what the contract is testing, while the condition is a single function that tests that condition. The condition is executed automatically and passed certain arguments (which vary depending on the type of contract), and must return a boolean value: True if the condition has been met, and False otherwise.

Preconditions and Postconditions

Contracts on functions consist of preconditions and postconditions. A precondition is declared using the requires decorator, and describes what must be true upon entrance to the function. The condition function is passed an arguments object, which as as its attributes the arguments to the decorated function:

>>> @require("`i` must be an integer", lambda args: isinstance(args.i, int))
... @require("`j` must be an integer", lambda args: isinstance(args.j, int))
... def add2(i, j):
...   return i + j

Note that an arbitrary number of preconditions can be stacked on top of each other.

These decorators have declared that the types of both arguments must be integers. Calling the add2 function with the correct types of arguments works:

>>> add2(1, 2)
3

But calling with incorrect argument types (violating the contract) fails with a PreconditionError (a subtype of AssertionError):

>>> add2("foo", 2)
Traceback (most recent call last):
PreconditionError: `i` must be an integer

Functions can also have postconditions, specified using the ensure decorator. Postconditions describe what must be true after the function has successfully returned. Like the require decorator, the ensure decorator is passed an argument object. It is also passed an additional argument, which is the result of the function invocation. For example:

>>> @require("`i` must be a positive integer",
...          lambda args: isinstance(args.i, int) and args.i > 0)
... @require("`j` must be a positive integer",
...          lambda args: isinstance(args.j, int) and args.j > 0)
... @ensure("the result must be greater than either `i` or `j`",
...         lambda args, result: result > args.i and result > args.j)
... def add2(i, j):
...     if i == 7:
...        i = -7 # intentionally broken for purposes of example
...     return i + j

We can now call the function and ensure that everything is working correctly:

>>> add2(1, 3)
4

Except that the function is broken in unexpected ways:

>>> add2(7, 4)
Traceback (most recent call last):
PostconditionError: the result must be greater than either `i` or `j`

The function specifying the condition doesn’t have to be a lambda; it can be any function, and pre- and postconditions don’t have to actually reference the arguments or results of the function at all. They can simply check the function’s environments and effects:

>>> names = set()
>>> def exists_in_database(x):
...   return x in names
>>> @require("`name` must be a string", lambda args: isinstance(args.name, str))
... @require("`name` must not already be in the database",
...          lambda args: not exists_in_database(args.name.strip()))
... @ensure("the normalized version of the name must be added to the database",
...         lambda args, result: exists_in_database(args.name.strip()))
... def add_to_database(name):
...     if name not in names and name != "Rob": # intentionally broken
...         names.add(name.strip())
>>> add_to_database("James")
>>> add_to_database("Marvin")
>>> add_to_database("Marvin")
Traceback (most recent call last):
PreconditionError: `name` must not already be in the database
>>> add_to_database("Rob")
Traceback (most recent call last):
PostconditionError: the normalized version of the name must be added to the database

All of the various calling conventions of Python are supported:

>>> @require("`a` is an integer", lambda args: isinstance(args.a, int))
... @require("`b` is a string", lambda args: isinstance(args.b, str))
... @require("every member of `c` should be a boolean",
...          lambda args: all(isinstance(x, bool) for x in args.c))
... def func(a, b="Foo", *c):
...     pass
>>> func(1, "foo", True, True, False)
>>> func(b="Foo", a=7)
>>> args = {"a": 8, "b": "foo"}
>>> func(**args)
>>> args = (1, "foo", True, True, False)
>>> func(*args)
>>> args = {"a": 9}
>>> func(**args)
>>> func(10)

A common contract is to validate the types of arguments. To that end, there is an additional decorator, types, that can be used to validate arguments’ types:

>>> class ExampleClass:
...     pass
>>> @types(a=int, b=str, c=(type(None), ExampleClass)) # or types.NoneType, if you prefer
... @require("a must be nonzero", lambda args: args.a != 0)
... def func(a, b, c=38):
...     return " ".join(str(x) for x in [a, b])
>>> func(1, "foo", ExampleClass())
'1 foo'
>>> func(1.0, "foo", ExampleClass) # invalid type for `a`
Traceback (most recent call last):
PreconditionError: the types of arguments must be valid
>>> func(1, "foo") # invalid type (the default) for `c`
Traceback (most recent call last):
PreconditionError: the types of arguments must be valid

Contracts on Classes

The require and ensure decorators can be used on class methods too, not just bare functions:

>>> class Foo:
...     @require("`name` should be nonempty", lambda args: len(args.name) > 0)
...     def __init__(self, name):
...         self.name = name
>>> foo = Foo()
Traceback (most recent call last):
TypeError: __init__ missing required positional argument: 'name'
>>> foo = Foo("")
Traceback (most recent call last):
PreconditionError: `name` should be nonempty

Classes may also have an additional sort of contract specified over them: the invariant. An invariant, created using the invariant decorator, specifies a condition that must always be true for instances of that class. In this case, “always” means “before invocation of any method and after its return” – methods are allowed to violate invariants so long as they are restored prior to return.

Invariant contracts are passed a single variable, a reference to the instance of the class. For example:

>>> @invariant("inner list can never be empty", lambda self: len(self.lst) > 0)
... @invariant("inner list must consist only of integers",
...            lambda self: all(isinstance(x, int) for x in self.lst))
... class NonemptyList:
...     @require("initial list must be a list", lambda args: isinstance(args.initial, list))
...     @require("initial list cannot be empty", lambda args: len(args.initial) > 0)
...     @ensure("the list instance variable is equal to the given argument",
...             lambda args, result: args.self.lst == args.initial)
...     @ensure("the list instance variable is not an alias to the given argument",
...             lambda args, result: args.self.lst is not args.initial)
...     def __init__(self, initial):
...         self.lst = initial[:]
...
...     def get(self, i):
...         return self.lst[i]
...
...     def pop(self):
...         self.lst.pop()
...
...     def as_string(self):
...         # Build up a string representation using the `get` method,
...         # to illustrate methods calling methods with invariants.
...         return ",".join(str(self.get(i)) for i in range(0, len(self.lst)))
>>> nl = NonemptyList([1,2,3])
>>> nl.pop()
>>> nl.pop()
>>> nl.pop()
Traceback (most recent call last):
PostconditionError: inner list can never be empty
>>> nl = NonemptyList(["a", "b", "c"])
Traceback (most recent call last):
PostconditionError: inner list must consist only of integers

Violations of invariants are ignored in the following situations:

  • before calls to __init__ and __new__ (since the object is still being initialized)

  • before and after calls to any method whose name begins with “__”, except for methods implementing arithmetic and comparison operations and container type emulation (because such methods are private and expected to manipulate the object’s inner state, plus things get hairy with certain applications of __getattr(ibute)?__)

  • before and after calls to methods added from outside the initial class definition (because invariants are processed only at class definition time)

  • before and after calls to classmethods, since they apply to the class as a whole and not any particular instance

For example:

>>> @invariant("`always` should be True", lambda self: self.always)
... class Foo:
...     always = True
...
...     def get_always(self):
...         return self.always
...
...     @classmethod
...     def break_everything(cls):
...         cls.always = False
>>> x = Foo()
>>> x.get_always()
True
>>> x.break_everything()
>>> x.get_always()
Traceback (most recent call last):
PreconditionError: `always` should be True

Also note that if a method invokes another method on the same object, all of the invariants will be tested again:

>>> nl = NonemptyList([1,2,3])
>>> nl.as_string() == '1,2,3'
True

Transforming Data in Contracts

In general, you should avoid transforming data inside a contract; contracts themselves are supposed to be side-effect-free.

However, this is not always possible in Python.

Take, for example, iterables passed as arguments. We might want to verify that a given set of properties hold for every item in the iterable. The obvious solution would be to do something like this:

>>> @require("every item in `l` must be > 0", lambda args: all(x > 0 for x in args.l))
... def my_func(l):
...     return sum(l)

This works well in most situations:

>>> my_func([1, 2, 3])
6
>>> my_func([0, -1, 2])
Traceback (most recent call last):
PreconditionError: every item in `l` must be > 0

But it fails in the case of a generator:

>>> def iota(n):
...     for i in range(1, n):
...         yield i
>>> sum(iota(5))
10
>>> my_func(iota(5))
0

The call to my_func has a result of 0 because the generator was consumed inside the all call inside the contract. Obviously, this is problematic.

Sadly, there is no generic solution to this problem. In a statically-typed language, the compiler can verify that some properties of infinite lists (though not all of them, and what exactly depends on the type system).

We get around that limitation here using an additional decorator, called transform that transforms the arguments to a function, and a function called rewrite that rewrites argument tuples.

For example:

>>> @transform(lambda args: rewrite(args, l=list(args.l)))
... @require("every item in `l` must be > 0", lambda args: all(x > 0 for x in args.l))
... def my_func(l):
...     return sum(l)
>>> my_func(iota(5))
10

Note that this does not completely solve the problem of infinite sequences, but it does allow for verification of any desired prefix of such a sequence.

This works for class methods too, of course:

>>> class TestClass:
...     @transform(lambda args: rewrite(args, l=list(args.l)))
...     @require("every item in `l` must be > 0", lambda args: all(x > 0 for x in args.l))
...     def my_func(self, l):
...         return sum(l)
>>> TestClass().my_func(iota(5))
10

Contracts and Debugging

Contracts are a documentation and testing tool; they are not intended to be used to validate user input or implement program logic. Indeed, running Python with __debug__ set to False (e.g. by calling the Python intrepreter with the “-O” option) disables contracts.

Testing This Module

This module has embedded doctests that are run with the module is invoked from the command line. Simply run the module directly to run the tests.

Contact Information and Licensing

This module has a home page at GitHub.

This module was written by Rob King (jking@deadpixi.com).

This program is free software: you can redistribute it and/or modify it under the terms of the GNU Lesser General Public License as published by the Free Software Foundation, either version 3 of the License, or (at your option) any later version.

This program is distributed in the hope that it will be useful, but WITHOUT ANY WARRANTY; without even the implied warranty of MERCHANTABILITY or FITNESS FOR A PARTICULAR PURPOSE. See the GNU Lesser General Public License for more details.

You should have received a copy of the GNU Lesser General Public License along with this program. If not, see <http://www.gnu.org/licenses/>.

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