Even without relying on external libraries you can define your own simple typechecking decorator in just a few lines. This uses the inspect
module from Core-Python to get the parameter names, but even without it you could just zip
the args
with a list of types, although this will make using kwargs
difficult.
import inspect
def typecheck(**types):
def __f(f):
def _f(*args, **kwargs):
all_args = {n: a for a, n in zip(args, inspect.getargspec(f).args)}
all_args.update(kwargs)
for n, a in all_args.items():
t = types.get(n)
if t is not None and not isinstance(a, t):
print("WARNING: Expected {} for {}, got {}".format(t, n, a))
return f(*args, **kwargs)
return _f
return __f
class PassPredictData:
@typecheck(rating=int, name=str, elev=float)
def __init__(self, rating, name, lat=0.0, long=0.0, elev=0.0):
self.rating = rating
p = PassPredictData(5.1, "foo", elev=4)
# WARNING: Expected <class 'int'> for rating, got 5.1
# WARNING: Expected <class 'float'> for elev, got 4
Instead of printing a warning, you could of course also raise an exception. Or, using the same approach, you could also just (try to) cast the parameters to the expected type:
def typecast(**types):
def __f(f):
def _f(*args, **kwargs):
all_args = {n: a for a, n in zip(args, inspect.getargspec(f).args)}
all_args.update(kwargs)
for n, a in all_args.items():
t = types.get(n)
if t is not None:
all_args[n] = t(a) # instead of checking, just cast
return f(**all_args) # pass the map with the typecast params
return _f
return __f
class PassPredictData:
@typecast(rating=int, name=str, elev=float)
def __init__(self, rating, name, lat=0.0, long=0.0, elev=0.0):
print([rating, name, lat, long, elev])
p = PassPredictData("5", "foo", elev="3.14")
# Output of print: [5, 'foo', 0.0, 0.0, 3.14]
Or a simpler version, without inspect
, but not working for kwargs
and requiring to provide the type for each parameter, including self
(or None
for no type cast):
def typecast(*types):
def __f(f):
def _f(*args):
return f(*[t(a) if t is not None else a
for a, t in zip(args, types)])
return _f
return __f
class PassPredictData:
@typecast(None, int, str, float, float, float)
def __init__(self, rating, name, lat=0.0, long=0.0, elev=0.0):
print([rating, name, lat, long, elev])
BigFloat
for lat/long/elev?