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automatic generation of type checks for overload #911

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pep8speaks commented Aug 17, 2020

Hello @vlad-perevezentsev! Thanks for updating this PR. We checked the lines you've touched for PEP 8 issues, and found:

There are currently no PEP 8 issues detected in this Pull Request. Cheers! 🍻

Comment last updated at 2020-09-29 14:36:35 UTC

return self._types_dict[p_type](self, p_type, n_type)
return self._types_dict[p_type](n_type)
except KeyError:
print((f'A check for the {p_type} was not found. {n_type}'))
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So we will (implicitly) return None from match in this case, is this intended behavior? Please add explicit return or throw


def choose_func_by_sig(sig_list, values_dict, defaults_dict={}):
checker = TypeChecker()
for sig in sig_list: # sig = (Signature,func)
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Instead of accessing sig[0] and sig[1] each time you can write for sig, func in sig_list:

Comment on lines 1 to 12
import numpy
import numba
from numba import types
from numba import typeof
from numba.extending import overload
from type_annotations import product_annotations, get_func_annotations
from numba import njit
import typing
from numba import NumbaDeprecationWarning, NumbaPendingDeprecationWarning
import warnings
from numba.typed import List, Dict
from inspect import getfullargspec
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There are some unused imports here, like numpy, typeof and njit, please clean them up.

Comment on lines 15 to 16
warnings.simplefilter('ignore', category=NumbaDeprecationWarning)
warnings.simplefilter('ignore', category=NumbaPendingDeprecationWarning)
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Why is this needed?


def check_tuple_type(self, p_type, n_type):
res = False
if isinstance(n_type, types.Tuple):
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Instead of using n_type.key you could use n_type.types which is defined for both Tuple and UniTuple, so you can unite both branches:

Something like:

if not isinstance(n_type, types.Tuple, types.UniTuple):
    return False

for p_val, n_val in zip(p_type.__args__, n_type.types):
    if not self.match(p_val, n_val):
        return False

return True

And btw you need to check that size of p_type.__args__ and n_type.types are the same.
And I believe you don't have tests for the case when they are different.

return self._types_dict[p_type](self, p_type, n_type)
return self._types_dict[p_type](n_type)
except KeyError:
print((f'A check for the {p_type} was not found.'))
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We should rise an exception


def match(self, p_type, n_type):
try:
if p_type == typing.Any:
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Let's do it like this:

            if p_type == typing.Any:
                return True

            if self._is_generic(p_type):
                origin_type = self._get_origin(p_type)
                if origin_type == typing.Generic:
                    return self.match_generic(p_type, n_type)

                return self._types_dict[origin_type](self, p_type, n_type)

            if isinstance(p_type, typing.TypeVar):
                return self.match_typevar(p_type, n_type)

            if p_type in (list, tuple):
                return self._types_dict[p_type](self, p_type, n_type)

            return self._types_dict[p_type](n_type)

return None

def match_typevar(self, p_type, n_type):
if not self._typevars_dict.get(p_type) and n_type not in self._typevars_dict.values():
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Why do you need condition n_type not in self._typevars_dict.values() ?

if not self._typevars_dict.get(p_type) and n_type not in self._typevars_dict.values():
self._typevars_dict[p_type] = n_type
return True
return self._typevars_dict.get(p_type) == n_type
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I believe it should be self.match. E.g. list and 'types.List' are synonyms but will fail equality check ('list != types.List').
And I'm assuming you don't have such tests?

def match_generic(self, p_type, n_type):
res = True
for arg in p_type.__args__:
res = res and self.match(arg, n_type)
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What's doesn't feel right. Do we have any test for this case?


if sig.defaults.get(name, False):
full_match = full_match and sig.defaults[name] == typ.literal_value
else:
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Do we need this else?



def check_list_type(self, p_type, n_type):
res = isinstance(n_type, types.List) or isinstance(n_type, types.ListType)
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res = isinstance(n_type, (types.List, types.ListType))


def check_list_type(self, p_type, n_type):
res = isinstance(n_type, types.List) or isinstance(n_type, types.ListType)
if isinstance(p_type, type):
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isinstance(p_type, (list, typing.List))

?

elif isinstance(p_type, typing.TypeVar):
return self.match_typevar(p_type, n_type)
else:
if p_type in (list, tuple):
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Shouldn't dict be here too?


class TypeChecker:

_types_dict = {int: check_int_type, float: check_float_type, bool: check_bool_type,
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I'd prefer this checks to be added using add_type_check function

@AlexanderKalistratov
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https://github.com/IntelPython/sdc/blob/numba_typing/numba_typing/local_variable_type_annotations.py#L11

This code actually modifies original function globals. This shouldn't happen, please fix.

TypeChecker.add_type_check(dict, check_dict_type)


def choose_func_by_sig(sig_list, values_dict, defaults_dict):
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Let's do it this way:

def choose_func_by_sig(sig_list, values_dict, defaults_dict):
    def check_signature(sig_params, types_dict):
        checker = TypeChecker()
        for name, typ in types_dict.items():  # name,type = 'a',int64
            if isinstance(typ, types.Literal):
                typ = typ.literal_type

            if not checker.match(sig_params[name], typ):
                return False
            
            return True

    for sig, func in sig_list:  # sig = (Signature,func)
        for param in sig.parameters:  # param = {'a':int,'b':int}
            if check_signature(param, values_dict):
                return func

    return None

return typ.__name__
return typ

value_keys = ", ".join("{}".format(key) for key in values_dict.keys())
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please use f'{key}' instead. Here and everywhere

D_list['qwe'] = List([3, 4, 5])
str_1 = 'qwe'
str_2 = 'qaz'
test_cases = [('int', [1, 2], {'a': int, 'b': int}), ('float', [1.0, 2.0], {'a': float, 'b': float}),
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{'a': int, 'b': int} why do you need two parameters of the same type?
What are you actually testing?

str_2 = 'qaz'
test_cases = [('int', [1, 2], {'a': int, 'b': int}), ('float', [1.0, 2.0], {'a': float, 'b': float}),
('bool', [True, True], {'a': bool, 'b': bool}), ('str', ['str_1', 'str_2'], {'a': str, 'b': str}),
('list', [[1, 2], [3, 4]], {'a': typing.List[int], 'b':list}),
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Why do you need second list parameter?

('tuple', [(1, 2.0), ('3', False)], {'a': typing.Tuple[int, float], 'b':tuple}),
('dict', ['D', 'D_1'], {'a': typing.Dict[str, int], 'b': typing.Dict[int, bool]}),
('union_1', [1, False], {'a': typing.Union[int, str], 'b': typing.Union[float, bool]}),
('union_2', ['str_1', False], {'a': typing.Union[int, str], 'b': typing.Union[float, bool]}),
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And why you are not testing second Union parameter?

('TypeVar_ListT_DictK_ListT', ['L', 'D_list'], {'a': 'typing.List[T]',
'b': 'typing.Dict[K, typing.List[T]]'})]

test_cases_default = [('int_defaults', [1], {'a': int}, {'b': 0}), ('float_defaults', [1.0], {'a': float}, {'b': 0.0}),
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And what about both - annotation and default value?

('TypeVar_ListT_T', ['L', 5], {'a': 'typing.List[T]', 'b': 'T'}),
('TypeVar_ListT_DictKT', ['L', 'D'], {'a': 'typing.List[T]', 'b': 'typing.Dict[K, T]'}),
('TypeVar_ListT_DictK_ListT', ['L', 'D_list'], {'a': 'typing.List[T]',
'b': 'typing.Dict[K, typing.List[T]]'})]
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Are where any tests for TypeVar with specified types restriction?

('union_2', ['str_1', False], {'a': typing.Union[int, str], 'b': typing.Union[float, bool]}),
('nested_list', ['L_int', 'L_float'], {'a': typing.List[typing.List[int]],
'b': typing.List[typing.List[typing.List[float]]]}),
('TypeVar_TT', ['L_f', [3.0, 4.0]], {'a': 'T', 'b': 'T'}),
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Any negative tests for such case?

('tuple_defaults', [(1, 2)], {'a': tuple}, {'b': (0, 0)})]


for name, val, annotation in test_cases:
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I'd prefer you to group all cases into 4-5 tests with subtests. Something like this:

def test_common_types():
    test_cases = [({'a': 0}, {'a': int}),
                 ({'a': 0.}, {'a': float}),
                ...]
    
    for case in test_cases:
        with self.Subtest(case=case):
            run_test(case)

result = choose_func_by_sig(sig_list, values_dict)

if result is None:
raise TypeError(f'Unsupported types a={a}, b={b}')
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Looks both a and b are undefined.


for sig, _ in list_signature:
for param in sig.parameters:
if len(param) != len(values_dict.items()):
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You don't need to call method items() here.

for name, val in defaults_dict.items():
if sig_def.get(name) is None:
raise AttributeError(f'{name} does not match the signature of the function passed to overload_list')
if not sig_def[name] == val:
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This condition looks pretty strange. Maybe if sig_def[name] != val?

@kozlov-alexey kozlov-alexey added this to the gold milestone Feb 24, 2021
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6 participants