/* Copyright 2017 The TensorFlow Authors. All Rights Reserved. Licensed under the Apache License, Version 2.0 (the "License"); you may not use this file except in compliance with the License. You may obtain a copy of the License at http://www.apache.org/licenses/LICENSE-2.0 Unless required by applicable law or agreed to in writing, software distributed under the License is distributed on an "AS IS" BASIS, WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied. See the License for the specific language governing permissions and limitations under the License. ==============================================================================*/ #include "tensorflow/python/util/util.h" #include #include #include #include #include "absl/memory/memory.h" #include "tensorflow/core/lib/gtl/map_util.h" #include "tensorflow/core/lib/strings/strcat.h" #include "tensorflow/core/platform/logging.h" #include "tensorflow/core/platform/mutex.h" #include "tensorflow/python/lib/core/safe_ptr.h" namespace tensorflow { namespace swig { std::unordered_map* PythonTypesMap() { static auto* m = new std::unordered_map(); return m; } PyObject* GetRegisteredType(const string& key) { auto* m = PythonTypesMap(); auto it = m->find(key); if (it == m->end()) return nullptr; return it->second; } PyObject* RegisterType(PyObject* type_name, PyObject* type) { if (!PyType_Check(type)) { PyErr_SetString(PyExc_TypeError, tensorflow::strings::StrCat("Expecting a type, got ", Py_TYPE(type)->tp_name) .c_str()); return nullptr; } string key; if (PyBytes_Check(type_name)) { key = PyBytes_AsString(type_name); } #if PY_MAJOR_VERSION >= 3 if (PyUnicode_Check(type_name)) { key = PyUnicode_AsUTF8(type_name); } #endif if (PythonTypesMap()->find(key) != PythonTypesMap()->end()) { PyErr_SetString(PyExc_TypeError, tensorflow::strings::StrCat( "Type already registered for ", key) .c_str()); return nullptr; } Py_INCREF(type); PythonTypesMap()->emplace(key, type); Py_RETURN_NONE; } namespace { const int kMaxItemsInCache = 1024; bool WarnedThatSetIsNotSequence = false; bool IsString(PyObject* o) { return PyBytes_Check(o) || #if PY_MAJOR_VERSION < 3 PyString_Check(o) || #endif PyUnicode_Check(o); } // Work around a writable-strings warning with Python 2's PyMapping_Keys macro, // and while we're at it give them consistent behavior by making sure the // returned value is a list. // // As with PyMapping_Keys, returns a new reference. // // On failure, returns nullptr. PyObject* MappingKeys(PyObject* o) { #if PY_MAJOR_VERSION >= 3 return PyMapping_Keys(o); #else static char key_method_name[] = "keys"; Safe_PyObjectPtr raw_result(PyObject_CallMethod(o, key_method_name, nullptr)); if (PyErr_Occurred() || raw_result.get() == nullptr) { return nullptr; } return PySequence_Fast( raw_result.get(), "The '.keys()' method of a custom mapping returned a non-sequence."); #endif } // Equivalent to Python's 'o.__class__.__name__' // Note that '__class__' attribute is set only in new-style classes. // A lot of tensorflow code uses __class__ without checks, so it seems like // we only support new-style classes. StringPiece GetClassName(PyObject* o) { // __class__ is equivalent to type() for new style classes. // type() is equivalent to PyObject_Type() // (https://docs.python.org/3.5/c-api/object.html#c.PyObject_Type) // PyObject_Type() is equivalent to o->ob_type except for Py_INCREF, which // we don't need here. PyTypeObject* type = o->ob_type; // __name__ is the value of `tp_name` after the last '.' // (https://docs.python.org/2/c-api/typeobj.html#c.PyTypeObject.tp_name) StringPiece name(type->tp_name); size_t pos = name.rfind('.'); if (pos != StringPiece::npos) { name.remove_prefix(pos + 1); } return name; } string PyObjectToString(PyObject* o) { if (o == nullptr) { return ""; } PyObject* str = PyObject_Str(o); if (str) { #if PY_MAJOR_VERSION < 3 string s(PyString_AS_STRING(str)); #else string s(PyUnicode_AsUTF8(str)); #endif Py_DECREF(str); return tensorflow::strings::StrCat("type=", GetClassName(o), " str=", s); } else { return ""; } } class CachedTypeCheck { public: explicit CachedTypeCheck(std::function ternary_predicate) : ternary_predicate_(std::move(ternary_predicate)) {} ~CachedTypeCheck() { mutex_lock l(type_to_sequence_map_mu_); for (const auto& pair : type_to_sequence_map_) { Py_DECREF(pair.first); } } // Caches successful executions of the one-argument (PyObject*) callable // "ternary_predicate" based on the type of "o". -1 from the callable // indicates an unsuccessful check (not cached), 0 indicates that "o"'s type // does not match the predicate, and 1 indicates that it does. Used to avoid // calling back into Python for expensive isinstance checks. int CachedLookup(PyObject* o) { // Try not to return to Python - see if the type has already been seen // before. auto* type = Py_TYPE(o); { mutex_lock l(type_to_sequence_map_mu_); auto it = type_to_sequence_map_.find(type); if (it != type_to_sequence_map_.end()) { return it->second; } } int check_result = ternary_predicate_(o); if (check_result == -1) { return -1; // Type check error, not cached. } // NOTE: This is never decref'd as long as the object lives, which is likely // forever, but we don't want the type to get deleted as long as it is in // the map. This should not be too much of a leak, as there should only be a // relatively small number of types in the map, and an even smaller number // that are eligible for decref. As a precaution, we limit the size of the // map to 1024. { mutex_lock l(type_to_sequence_map_mu_); if (type_to_sequence_map_.size() < kMaxItemsInCache) { Py_INCREF(type); type_to_sequence_map_.insert({type, check_result}); } } return check_result; } private: std::function ternary_predicate_; mutex type_to_sequence_map_mu_; std::unordered_map type_to_sequence_map_ GUARDED_BY(type_to_sequence_map_mu_); }; // Returns 1 if `o` is considered a mapping for the purposes of Flatten(). // Returns 0 otherwise. // Returns -1 if an error occurred. int IsMappingHelper(PyObject* o) { static auto* const check_cache = new CachedTypeCheck([](PyObject* to_check) { PyObject* collections_mapping_type = GetRegisteredType("Mapping"); if (TF_PREDICT_FALSE(collections_mapping_type == nullptr)) { PyErr_SetString(PyExc_RuntimeError, tensorflow::strings::StrCat( "collections.Mapping type has not been set. " "Please register the type with the identifier " "\"Mapping\" using RegisterType.") .c_str()); return -1; } return PyObject_IsInstance(to_check, collections_mapping_type); }); if (PyDict_Check(o)) return true; return check_cache->CachedLookup(o); } // Returns 1 if `o` is an instance of attrs-decorated class. // Returns 0 otherwise. int IsAttrsHelper(PyObject* o) { static auto* const check_cache = new CachedTypeCheck([](PyObject* to_check) { Safe_PyObjectPtr cls(PyObject_GetAttrString(to_check, "__class__")); if (cls) { return PyObject_HasAttrString(cls.get(), "__attrs_attrs__"); } // PyObject_GetAttrString returns null on error PyErr_Clear(); return 0; }); return check_cache->CachedLookup(o); } // Returns 1 if `o` is an object of type IndexedSlices. // Returns 0 otherwise. // Returns -1 if an error occurred. int IsIndexedSlicesHelper(PyObject* o) { static auto* const check_cache = new CachedTypeCheck([](PyObject* to_check) { PyObject* indexed_slices_type = GetRegisteredType("IndexedSlices"); if (TF_PREDICT_FALSE(indexed_slices_type == nullptr)) { PyErr_SetString(PyExc_RuntimeError, tensorflow::strings::StrCat( "IndexedSlices type has not been set. " "Please register the type with the identifier " "\"IndexedSlices\" using RegisterType.") .c_str()); return -1; } return PyObject_IsInstance(to_check, indexed_slices_type); }); return check_cache->CachedLookup(o); } // Returns 1 if `o` is a Tensor. // Returns 0 otherwise. // Returns -1 if an error occurred. int IsTensorHelper(PyObject* o) { static auto* const check_cache = new CachedTypeCheck([](PyObject* to_check) { PyObject* tensor_type = GetRegisteredType("Tensor"); if (TF_PREDICT_FALSE(tensor_type == nullptr)) { PyErr_SetString(PyExc_RuntimeError, tensorflow::strings::StrCat( "Tensor type has not been set. " "Please register the type with the identifier " "\"Tensor\" using RegisterType.") .c_str()); return -1; } return PyObject_IsInstance(to_check, tensor_type); }); return check_cache->CachedLookup(o); } // Returns 1 if `o` is considered a sequence for the purposes of Flatten(). // Returns 0 otherwise. // Returns -1 if an error occurred. int IsSequenceHelper(PyObject* o) { // We treat dicts and other mappings as special cases of sequences. if (IsMappingHelper(o)) return true; if (IsAttrsHelper(o)) return true; if (PySet_Check(o) && !WarnedThatSetIsNotSequence) { LOG(WARNING) << "Sets are not currently considered sequences, " "but this may change in the future, " "so consider avoiding using them."; WarnedThatSetIsNotSequence = true; } static auto* const check_cache = new CachedTypeCheck([](PyObject* to_check) { PyObject* collections_sequence_type = GetRegisteredType("Sequence"); if (TF_PREDICT_FALSE(collections_sequence_type == nullptr)) { PyErr_SetString(PyExc_RuntimeError, tensorflow::strings::StrCat( "collections.Sequence type has not been set. " "Please register the type with the identifier " "\"Sequence\" using RegisterType.") .c_str()); return -1; } int is_instance = PyObject_IsInstance(to_check, collections_sequence_type); // Don't cache a failed is_instance check. if (is_instance == -1) return -1; return static_cast(is_instance != 0 && !IsString(to_check)); }); return check_cache->CachedLookup(o); } // ValueIterator interface class ValueIterator { public: virtual ~ValueIterator() {} virtual Safe_PyObjectPtr next() = 0; bool valid() const { return is_valid_; } protected: void invalidate() { is_valid_ = false; } private: bool is_valid_ = true; }; using ValueIteratorPtr = std::unique_ptr; // Iterate through dictionaries in a deterministic order by sorting the // keys. Notice this means that we ignore the original order of // `OrderedDict` instances. This is intentional, to avoid potential // bugs caused by mixing ordered and plain dicts (e.g., flattening // a dict but using a corresponding `OrderedDict` to pack it back). class DictValueIterator : public ValueIterator { public: explicit DictValueIterator(PyObject* dict) : dict_(dict), keys_(PyDict_Keys(dict)) { if (PyList_Sort(keys_.get()) == -1) { invalidate(); } else { iter_.reset(PyObject_GetIter(keys_.get())); } } Safe_PyObjectPtr next() override { Safe_PyObjectPtr result; Safe_PyObjectPtr key(PyIter_Next(iter_.get())); if (key) { // PyDict_GetItem returns a borrowed reference. PyObject* elem = PyDict_GetItem(dict_, key.get()); if (elem) { Py_INCREF(elem); result.reset(elem); } else { PyErr_SetString(PyExc_RuntimeError, "Dictionary was modified during iteration over it"); } } return result; } private: PyObject* dict_; Safe_PyObjectPtr keys_; Safe_PyObjectPtr iter_; }; // Iterate over mapping objects by sorting the keys first class MappingValueIterator : public ValueIterator { public: explicit MappingValueIterator(PyObject* mapping) : mapping_(mapping), keys_(MappingKeys(mapping)) { if (!keys_ || PyList_Sort(keys_.get()) == -1) { invalidate(); } else { iter_.reset(PyObject_GetIter(keys_.get())); } } Safe_PyObjectPtr next() override { Safe_PyObjectPtr result; Safe_PyObjectPtr key(PyIter_Next(iter_.get())); if (key) { // Unlike PyDict_GetItem, PyObject_GetItem returns a new reference. PyObject* elem = PyObject_GetItem(mapping_, key.get()); if (elem) { result.reset(elem); } else { PyErr_SetString(PyExc_RuntimeError, "Mapping was modified during iteration over it"); } } return result; } private: PyObject* mapping_; Safe_PyObjectPtr keys_; Safe_PyObjectPtr iter_; }; // Iterate over a sequence, by index. class SequenceValueIterator : public ValueIterator { public: explicit SequenceValueIterator(PyObject* iterable) : seq_(PySequence_Fast(iterable, "")), size_(PySequence_Fast_GET_SIZE(seq_.get())), index_(0) {} Safe_PyObjectPtr next() override { Safe_PyObjectPtr result; if (index_ < size_) { // PySequence_Fast_GET_ITEM returns a borrowed reference. PyObject* elem = PySequence_Fast_GET_ITEM(seq_.get(), index_); ++index_; Py_INCREF(elem); result.reset(elem); } return result; } private: Safe_PyObjectPtr seq_; const Py_ssize_t size_; Py_ssize_t index_; }; // Just return itself as a single item. class SparseTensorValueIterator : public ValueIterator { public: explicit SparseTensorValueIterator(PyObject* tensor) : tensor_(tensor) { Py_INCREF(tensor); } Safe_PyObjectPtr next() override { return std::move(tensor_); } private: Safe_PyObjectPtr tensor_; }; class AttrsValueIterator : public ValueIterator { public: explicit AttrsValueIterator(PyObject* nested) : nested_(nested) { Py_INCREF(nested); cls_.reset(PyObject_GetAttrString(nested_.get(), "__class__")); if (cls_) { attrs_.reset(PyObject_GetAttrString(cls_.get(), "__attrs_attrs__")); if (attrs_) { iter_.reset(PyObject_GetIter(attrs_.get())); } } if (!iter_ || PyErr_Occurred()) invalidate(); } Safe_PyObjectPtr next() override { Safe_PyObjectPtr result; Safe_PyObjectPtr item(PyIter_Next(iter_.get())); if (item) { Safe_PyObjectPtr name(PyObject_GetAttrString(item.get(), "name")); result.reset(PyObject_GetAttr(nested_.get(), name.get())); } return result; } private: Safe_PyObjectPtr nested_; Safe_PyObjectPtr cls_; Safe_PyObjectPtr attrs_; Safe_PyObjectPtr iter_; }; bool IsSparseTensorValueType(PyObject* o) { PyObject* sparse_tensor_value_type = GetRegisteredType("SparseTensorValue"); if (TF_PREDICT_FALSE(sparse_tensor_value_type == nullptr)) { return false; } return PyObject_TypeCheck( o, reinterpret_cast(sparse_tensor_value_type)) == 1; } int IsSequenceForDataHelper(PyObject* o) { return IsSequenceHelper(o) == 1 && !PyList_Check(o) && !IsSparseTensorValueType(o); } ValueIteratorPtr GetValueIterator(PyObject* nested) { if (PyDict_Check(nested)) { return absl::make_unique(nested); } else if (IsMappingHelper(nested)) { return absl::make_unique(nested); } else if (IsAttrsHelper(nested)) { return absl::make_unique(nested); } else { return absl::make_unique(nested); } } // Similar to above, just specialized for the functions in the data package. ValueIteratorPtr GetValueIteratorForData(PyObject* nested) { if (PyDict_Check(nested)) { return absl::make_unique(nested); } else if (IsMappingHelper(nested)) { return absl::make_unique(nested); } else if (IsAttrsHelper(nested)) { return absl::make_unique(nested); } else if (IsSparseTensorValueType(nested)) { return absl::make_unique(nested); } else { return absl::make_unique(nested); } } bool FlattenHelper( PyObject* nested, PyObject* list, const std::function& is_sequence_helper, const std::function& value_iterator_getter) { // if nested is not a sequence, append itself and exit int is_seq = is_sequence_helper(nested); if (is_seq == -1) return false; if (!is_seq) { return PyList_Append(list, nested) != -1; } ValueIteratorPtr iter = value_iterator_getter(nested); if (!iter->valid()) return false; for (Safe_PyObjectPtr item = iter->next(); item; item = iter->next()) { if (Py_EnterRecursiveCall(" in flatten")) { return false; } const bool success = FlattenHelper(item.get(), list, is_sequence_helper, value_iterator_getter); Py_LeaveRecursiveCall(); if (!success) { return false; } } return true; } // Sets error using keys of 'dict1' and 'dict2'. // 'dict1' and 'dict2' are assumed to be Python dictionaries. void SetDifferentKeysError(PyObject* dict1, PyObject* dict2, string* error_msg, bool* is_type_error) { Safe_PyObjectPtr k1(MappingKeys(dict1)); if (PyErr_Occurred() || k1.get() == nullptr) { *error_msg = ("The two dictionaries don't have the same set of keys. Failed to " "fetch keys."); return; } Safe_PyObjectPtr k2(MappingKeys(dict2)); if (PyErr_Occurred() || k2.get() == nullptr) { *error_msg = ("The two dictionaries don't have the same set of keys. Failed to " "fetch keys."); return; } *is_type_error = false; *error_msg = tensorflow::strings::StrCat( "The two dictionaries don't have the same set of keys. " "First structure has keys ", PyObjectToString(k1.get()), ", while second structure has keys ", PyObjectToString(k2.get())); } // Returns true iff there were no "internal" errors. In other words, // errors that has nothing to do with structure checking. // If an "internal" error occurred, the appropriate Python error will be // set and the caller can propage it directly to the user. // // Both `error_msg` and `is_type_error` must be non-null. `error_msg` must // be empty. // Leaves `error_msg` empty if structures matched. Else, fills `error_msg` // with appropriate error and sets `is_type_error` to true iff // the error to be raised should be TypeError. bool AssertSameStructureHelper( PyObject* o1, PyObject* o2, bool check_types, string* error_msg, bool* is_type_error, const std::function& is_sequence_helper) { DCHECK(error_msg); DCHECK(is_type_error); const bool is_seq1 = is_sequence_helper(o1); const bool is_seq2 = is_sequence_helper(o2); if (PyErr_Occurred()) return false; if (is_seq1 != is_seq2) { string seq_str = is_seq1 ? PyObjectToString(o1) : PyObjectToString(o2); string non_seq_str = is_seq1 ? PyObjectToString(o2) : PyObjectToString(o1); *is_type_error = false; *error_msg = tensorflow::strings::StrCat( "Substructure \"", seq_str, "\" is a sequence, while substructure \"", non_seq_str, "\" is not"); return true; } // Got to objects that are considered non-sequences. Note that in tf.data // use case lists and sparse_tensors are not considered sequences. So finished // checking, structures are the same. if (!is_seq1) return true; if (check_types) { const PyTypeObject* type1 = o1->ob_type; const PyTypeObject* type2 = o2->ob_type; // We treat two different namedtuples with identical name and fields // as having the same type. const PyObject* o1_tuple = IsNamedtuple(o1, true); if (o1_tuple == nullptr) return false; const PyObject* o2_tuple = IsNamedtuple(o2, true); if (o2_tuple == nullptr) { Py_DECREF(o1_tuple); return false; } bool both_tuples = o1_tuple == Py_True && o2_tuple == Py_True; Py_DECREF(o1_tuple); Py_DECREF(o2_tuple); if (both_tuples) { const PyObject* same_tuples = SameNamedtuples(o1, o2); if (same_tuples == nullptr) return false; bool not_same_tuples = same_tuples != Py_True; Py_DECREF(same_tuples); if (not_same_tuples) { *is_type_error = true; *error_msg = tensorflow::strings::StrCat( "The two namedtuples don't have the same sequence type. " "First structure ", PyObjectToString(o1), " has type ", type1->tp_name, ", while second structure ", PyObjectToString(o2), " has type ", type2->tp_name); return true; } } else if (type1 != type2 /* If both sequences are list types, don't complain. This allows one to be a list subclass (e.g. _ListWrapper used for automatic dependency tracking.) */ && !(PyList_Check(o1) && PyList_Check(o2)) /* Two mapping types will also compare equal, making _DictWrapper and dict compare equal. */ && !(IsMappingHelper(o1) && IsMappingHelper(o2))) { *is_type_error = true; *error_msg = tensorflow::strings::StrCat( "The two namedtuples don't have the same sequence type. " "First structure ", PyObjectToString(o1), " has type ", type1->tp_name, ", while second structure ", PyObjectToString(o2), " has type ", type2->tp_name); return true; } if (PyDict_Check(o1) && PyDict_Check(o2)) { if (PyDict_Size(o1) != PyDict_Size(o2)) { SetDifferentKeysError(o1, o2, error_msg, is_type_error); return true; } PyObject* key; Py_ssize_t pos = 0; while (PyDict_Next(o1, &pos, &key, nullptr)) { if (PyDict_GetItem(o2, key) == nullptr) { SetDifferentKeysError(o1, o2, error_msg, is_type_error); return true; } } } else if (IsMappingHelper(o1)) { // Fallback for custom mapping types. Instead of using PyDict methods // which stay in C, we call iter(o1). if (PyMapping_Size(o1) != PyMapping_Size(o2)) { SetDifferentKeysError(o1, o2, error_msg, is_type_error); return true; } Safe_PyObjectPtr iter(PyObject_GetIter(o1)); PyObject* key; while ((key = PyIter_Next(iter.get())) != nullptr) { if (!PyMapping_HasKey(o2, key)) { SetDifferentKeysError(o1, o2, error_msg, is_type_error); Py_DECREF(key); return true; } Py_DECREF(key); } } } ValueIteratorPtr iter1 = GetValueIterator(o1); ValueIteratorPtr iter2 = GetValueIterator(o2); if (!iter1->valid() || !iter2->valid()) return false; while (true) { Safe_PyObjectPtr v1 = iter1->next(); Safe_PyObjectPtr v2 = iter2->next(); if (v1 && v2) { if (Py_EnterRecursiveCall(" in assert_same_structure")) { return false; } bool no_internal_errors = AssertSameStructureHelper(v1.get(), v2.get(), check_types, error_msg, is_type_error, is_sequence_helper); Py_LeaveRecursiveCall(); if (!no_internal_errors) return false; if (!error_msg->empty()) return true; } else if (!v1 && !v2) { // Done with all recursive calls. Structure matched. return true; } else { *is_type_error = false; *error_msg = tensorflow::strings::StrCat( "The two structures don't have the same number of elements. ", "First structure: ", PyObjectToString(o1), ". Second structure: ", PyObjectToString(o2)); return true; } } } } // namespace bool IsSequence(PyObject* o) { return IsSequenceHelper(o) == 1; } bool IsMapping(PyObject* o) { return IsMappingHelper(o) == 1; } bool IsAttrs(PyObject* o) { return IsAttrsHelper(o) == 1; } bool IsTensor(PyObject* o) { return IsTensorHelper(o) == 1; } bool IsIndexedSlices(PyObject* o) { return IsIndexedSlicesHelper(o) == 1; } PyObject* Flatten(PyObject* nested) { PyObject* list = PyList_New(0); if (FlattenHelper(nested, list, IsSequenceHelper, GetValueIterator)) { return list; } else { Py_DECREF(list); return nullptr; } } bool IsSequenceForData(PyObject* o) { return IsSequenceForDataHelper(o) == 1; } PyObject* FlattenForData(PyObject* nested) { PyObject* list = PyList_New(0); if (FlattenHelper(nested, list, IsSequenceForDataHelper, GetValueIteratorForData)) { return list; } else { Py_DECREF(list); return nullptr; } } PyObject* IsNamedtuple(PyObject* o, bool strict) { // Must be subclass of tuple if (!PyTuple_Check(o)) { Py_RETURN_FALSE; } // If strict, o.__class__.__base__ must be tuple if (strict) { PyObject* klass = PyObject_GetAttrString(o, "__class__"); if (klass == nullptr) return nullptr; PyObject* base = PyObject_GetAttrString(klass, "__base__"); Py_DECREF(klass); if (base == nullptr) return nullptr; const PyTypeObject* base_type = reinterpret_cast(base); // built-in object types are singletons bool tuple_base = base_type == &PyTuple_Type; Py_DECREF(base); if (!tuple_base) { Py_RETURN_FALSE; } } PyObject* collections_sequence_type = GetRegisteredType("Sequence"); if (TF_PREDICT_FALSE(collections_sequence_type == nullptr)) { PyErr_SetString(PyExc_RuntimeError, tensorflow::strings::StrCat( "collections.Sequence type has not been set. " "Please register the type with the identifier " "\"Sequence\" using RegisterType.") .c_str()); return nullptr; } // o must have attribute '_fields' and every element in // '_fields' must be a string. int has_fields = PyObject_HasAttrString(o, "_fields"); if (!has_fields) { Py_RETURN_FALSE; } Safe_PyObjectPtr fields = make_safe(PyObject_GetAttrString(o, "_fields")); int is_instance = PyObject_IsInstance(fields.get(), collections_sequence_type); if (is_instance == 0) { Py_RETURN_FALSE; } else if (is_instance == -1) { return nullptr; } Safe_PyObjectPtr seq = make_safe(PySequence_Fast(fields.get(), "")); const Py_ssize_t s = PySequence_Fast_GET_SIZE(seq.get()); for (Py_ssize_t i = 0; i < s; ++i) { // PySequence_Fast_GET_ITEM returns borrowed ref PyObject* elem = PySequence_Fast_GET_ITEM(seq.get(), i); if (!IsString(elem)) { Py_RETURN_FALSE; } } Py_RETURN_TRUE; } PyObject* SameNamedtuples(PyObject* o1, PyObject* o2) { Safe_PyObjectPtr f1 = make_safe(PyObject_GetAttrString(o1, "_fields")); Safe_PyObjectPtr f2 = make_safe(PyObject_GetAttrString(o2, "_fields")); if (f1 == nullptr || f2 == nullptr) { PyErr_SetString( PyExc_RuntimeError, "Expected namedtuple-like objects (that have _fields attr)"); return nullptr; } if (PyObject_RichCompareBool(f1.get(), f2.get(), Py_NE)) { Py_RETURN_FALSE; } if (GetClassName(o1).compare(GetClassName(o2)) == 0) { Py_RETURN_TRUE; } else { Py_RETURN_FALSE; } } PyObject* AssertSameStructure(PyObject* o1, PyObject* o2, bool check_types) { string error_msg; bool is_type_error = false; AssertSameStructureHelper(o1, o2, check_types, &error_msg, &is_type_error, IsSequenceHelper); if (PyErr_Occurred()) { // Don't hide Python exceptions while checking (e.g. errors fetching keys // from custom mappings). return nullptr; } if (!error_msg.empty()) { PyErr_SetString( is_type_error ? PyExc_TypeError : PyExc_ValueError, tensorflow::strings::StrCat( "The two structures don't have the same nested structure.\n\n", "First structure: ", PyObjectToString(o1), "\n\nSecond structure: ", PyObjectToString(o2), "\n\nMore specifically: ", error_msg) .c_str()); return nullptr; } Py_RETURN_NONE; } PyObject* AssertSameStructureForData(PyObject* o1, PyObject* o2, bool check_types) { string error_msg; bool is_type_error = false; AssertSameStructureHelper(o1, o2, check_types, &error_msg, &is_type_error, IsSequenceForDataHelper); if (PyErr_Occurred()) { // Don't hide Python exceptions while checking (e.g. errors fetching keys // from custom mappings). return nullptr; } if (!error_msg.empty()) { PyErr_SetString( is_type_error ? PyExc_TypeError : PyExc_ValueError, tensorflow::strings::StrCat( "The two structures don't have the same nested structure.\n\n", "First structure: ", PyObjectToString(o1), "\n\nSecond structure: ", PyObjectToString(o2), "\n\nMore specifically: ", error_msg) .c_str()); return nullptr; } Py_RETURN_NONE; } } // namespace swig } // namespace tensorflow