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pure-func 1.2

Pure-func helps to write pure functions in python

Pure-func contains decorators that help writing pure functions in python.

In python it is impossible to determine if a function is pure for certain. Even writing a static-analysis that gets the most cases right is very hard. Therefore pure-func checks purity at run-time in the spirit of python.

The canonical way to use pure-func is:

@gcd_lru_cache()
@pure_check()
def fib(x):
    if x == 0 or x == 1:
        return 1
    return fib(x - 1) + fib(x - 2)

def test_fib1(x):
    with checking():
        return fib(x)

@checked()
def test_fib2(x):
    return fib(x)

# production
x = fib(30)

# testing
x = test_fib1(30)
x = test_fib2(30)

pure_check in check-mode will run the function with its current input and return the output, but it will also run the function against up to three past inputs and check if the output matches to that past output. If the function is stateful, it will probably fail that check and an NotPureException is risen.

Check-mode is enabled by @checked() or with checking(), if check-mode is not enabled, pure_check will simply pass the input and output through.

If your function has discrete reoccurring input, you can use gcd_lru_cache as very neat way to memoize your function. The cache will be cleared when python does garbage-collection. For more long-term cache you might consider functools.lru_cache.

IMPORTANT: @pure_check()/@pure_simpling() have always to be the innermost (closest to the function) decorator.

Writing pure functions works best when the input and output is immutable, please consider using pyrsistent. Memoization will work better with pyristent and using multiprocessing is a lot easier with pyrsistent (no more pickling errors).

pure_sampling allows to run pure_check in production by calling the checked function exponentially less frequent over time. Note that pure_sampling will wrap the function in pure_check so you should not use both decorators. Also if check-mode is enabled pure_sampling will always check the function just like pure_check.

Nice fact: with checking/@checked() will enable the check-mode for all functions even functions that are called by other functions. So you check your whole program, which means if functions influence each other you will probably catch that.

@pure_check()

Check if the function has no side-effects during unit-tests.

If check-mode is enabled using @checked() or with checking() the function decorated with @pure_check() will be checked for purity.

First the function will be executed as normal. Then the function will be executed against up to three (if available) past inputs in random order. During these checks the function is guarded against recursive checks: If the function is called recursively it will be executed as normal without checks.

If a check fails NotPureException is raised.

In the end result of the first (normal) execution is returned.

@gcd_lru_cache(maxsize=128, typed=False)

Garbage-collected least-recently-used-cache.

If maxsize is set to None, the LRU features are disabled and the cache can grow without bound.

If typed is True, arguments of different types will be cached separately. For example, f(3.0) and f(3) will be treated as distinct calls with distinct results.

The cache is cleared before garbage-collection is run.

Arguments to the cached function must be hashable.

View the cache statistics named tuple (hits, misses, maxsize, currsize) with f.cache_info(). Clear the cache and statistics with f.cache_clear(). Access the underlying function with f.__wrapped__.

See: Wikipedia

Typically gcd_lru_cache is good in tight loops and functools.lru_cache should be used for periodical- or IO-tasks.

@pure_sampling(base=2)

Check if the function has no side-effects using sampling.

It allows to run pure_check in production by calling the checked function exponentially less over time.

The distance between checks is base to the power of checks in function calls. Assuming base=2 on third check it will be check again after 8 calls. So it will take exponentially longer after every check for the next check to occur. It raises NotPureException if impurity has been detected.

If base=1 the function is always checked.

If check-mode is enabled the function is always checked.

with checking()

Enable check-mode (Context).

Any functions with decorators @pure_check() or @pure_sampling() will always be checked. Use this in unit-tests to enable checking. Nesting checking/checked works fine.

@checked()

Enable check-mode (Decorator).

Any functions with decorators @pure_check() or @pure_sampling() will always be checked. Use this in unit-tests to enable checking. Nesting checking/checked works fine.

Performance

Plain fibonacci(20): 10946 (took 0.00353 seconds)
Fibonacci(20) with pure_check (direct): 10946 (took 0.01075 seconds)
Fibonacci(20) with pure_check (checked): 10946 (took 0.46707 seconds)
Fibonacci(20) with pure_sampling: 10946 (took 0.05350 seconds)
Fibonacci(20) with pure_sampling(base=1): 10946 (took 0.75588 seconds)
Fibonacci(20) with pure_sampling (checked): 10946 (took 0.83311 seconds)
Plain fibonacci(30): 1346269 (took 0.43068 seconds)
Fibonacci(30) composed (direct): 1346269 (took 0.00004 seconds)
Fibonacci(30) composed (checked): 1346269 (took 0.00001 seconds)
Fibonacci(30) with gcd_lru_cache: 1346269 (took 0.00002 seconds)
Plain expansive fibonacci(8): 34 (took 0.68938 seconds)
Expansive fibonacci(8) with pure_check: 34 (took 0.68841 seconds)
Expansive fibonacci(8) with pure_check (checked): 34 (took 9.47059 seconds)
Expansive fibonacci(8) with pure_sampling: 34 (took 1.34284 seconds)
Expansive fibonacci(8) with pure_sampling (checked): 34 (took 8.50167 seconds)
Plain mergesort (took 1.60277 seconds)
Mergesort with pure_check (direct) (took 1.60405 seconds)
Mergesort with pure_check (checked) (took 8.65274 seconds)
Mergesort with pure_sampling (took 2.45293 seconds)

Note that the fibonacci function is very short, please compare to the expansive fibonacci tests.

License

MIT

Changelog

1.2 - 2017-04-19

  • Fix setup.py to point to the correct homepage (@lucaswiman)
  • Fix @pure_sampling(base=1) not checking at all
 
File Type Py Version Uploaded on Size
pure-func-1.2.tar.gz (md5) Source 2017-04-19 5KB