When I have a question like this, I go hunting in the standard library for code that I can model my code after. multiprocessing/pool.py has a class somewhat close to yours:
def __init__(self, processes=None, initializer=None, initargs=(),
if processes is None:
processes = cpu_count()
processes = 1
if processes < 1:
raise ValueError("Number of processes must be at least 1")
if initializer is not None and not hasattr(initializer, '__call__'):
raise TypeError('initializer must be a callable')
Notice that it does not say
processes = int(processes)
It just assumes you sent it an integer, not a float or a string, or whatever.
It should be pretty obvious, but if you feel it is not, I think it suffices to just document it.
It does raise
processes < 1, and it does check that
initializer, when given, is callable.
So, if we take
multiprocessing.Pool as a model, your class should look like this:
def __init__(self, num_threads):
self.num_threads = num_threads
if self.num_threads < 1:
raise ValueError('Number of threads must be at least 1')
Wouldn't this approach possibly fail very unpredictably for some
I think preemptive type checking generally goes against the grain of Python's
(dynamic-, duck-typing) design philosophy.
Duck typing gives Python programmers opportunities for great expressive power,
and rapid code development but (some might say) is dangerous because it makes no
attempt to catch type errors.
Some argue that logical errors are far more serious and frequent than type
errors. You need unit tests to catch those more serious errors. So even if you
do do preemptive type checking, it does not add much protection.
This debate lies in the realm of opinions, not facts, so it is not a resolvable argument. On which side of the fence
you sit may depend on your experience, your judgment on the likelihood of type
errors. It may be biased by what languages you already know. It may depend on
your problem domain.
You just have to decide for yourself.
PS. In a statically typed language, the type checks can be done at compile-time, thus not impeding the speed of the program. In Python, the type checks have to occur at run-time. This will slow the program down a bit, and maybe a lot if the checking occurs in a loop. As the program grows, so will the number of type checks. And unfortunately, many of those checks may be redundant. So if you really believe you need type checking, you probably should be using a statically-typed language.
PPS. There are decorators for type checking for (Python 2) and (Python 3). This would separate the type checking code from the rest of the function, and allow you to more easily turn off type checking in the future if you so choose.