/* Copyright 2022 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/lite/delegates/xnnpack/transpose_tester.h" #include #include #include #include #include #include #include #include "flatbuffers/flatbuffers.h" // from @flatbuffers #include "tensorflow/lite/core/kernels/register.h" #include "tensorflow/lite/core/model.h" #include "tensorflow/lite/schema/schema_conversion_utils.h" #include "tensorflow/lite/version.h" namespace tflite { namespace xnnpack { template void TransposeTester::Test(TensorType tensor_type, Interpreter* delegate_interpreter, Interpreter* default_interpreter) const { int32_t count = std::accumulate(input_shape().cbegin(), input_shape().cend(), 1, std::multiplies()); T* default_input_data = default_interpreter->typed_input_tensor(0); std::iota(default_input_data, default_input_data + count, 0); T* delegate_input_data = delegate_interpreter->typed_input_tensor(0); std::copy(default_input_data, default_input_data + count, delegate_input_data); ASSERT_EQ(default_interpreter->Invoke(), kTfLiteOk); ASSERT_EQ(delegate_interpreter->Invoke(), kTfLiteOk); T* default_output_data = default_interpreter->typed_output_tensor(0); T* delegate_output_data = delegate_interpreter->typed_output_tensor(0); for (int32_t i = 0; i < count; i++) { ASSERT_EQ(default_output_data[i], delegate_output_data[i]); } } void TransposeTester::Test(TensorType tensor_type, TfLiteDelegate* delegate) const { const std::vector buffer = CreateTfLiteModel(tensor_type); const Model* model = GetModel(buffer.data()); std::unique_ptr delegate_interpreter; ASSERT_EQ( InterpreterBuilder( model, ::tflite::ops::builtin::BuiltinOpResolverWithoutDefaultDelegates())( &delegate_interpreter), kTfLiteOk); std::unique_ptr default_interpreter; ASSERT_EQ( InterpreterBuilder( model, ::tflite::ops::builtin::BuiltinOpResolverWithoutDefaultDelegates())( &default_interpreter), kTfLiteOk); ASSERT_TRUE(delegate_interpreter); ASSERT_TRUE(default_interpreter); ASSERT_EQ(default_interpreter->inputs().size(), 1); ASSERT_EQ(delegate_interpreter->inputs().size(), 1); ASSERT_EQ(delegate_interpreter->outputs().size(), 1); ASSERT_EQ(default_interpreter->outputs().size(), 1); ASSERT_EQ(delegate_interpreter->AllocateTensors(), kTfLiteOk); ASSERT_EQ(default_interpreter->AllocateTensors(), kTfLiteOk); ASSERT_EQ(delegate_interpreter->ModifyGraphWithDelegate(delegate), kTfLiteOk); switch (tensor_type) { case TensorType_FLOAT32: Test(TensorType_FLOAT32, delegate_interpreter.get(), default_interpreter.get()); break; case TensorType_INT8: Test(TensorType_INT8, delegate_interpreter.get(), default_interpreter.get()); break; case TensorType_UINT8: Test(TensorType_UINT8, delegate_interpreter.get(), default_interpreter.get()); break; default: GTEST_FAIL(); } } std::vector TransposeTester::CreateTfLiteModel( TensorType tensor_type) const { flatbuffers::FlatBufferBuilder builder; flatbuffers::Offset operator_code = CreateOperatorCode(builder, BuiltinOperator_TRANSPOSE, 0); std::vector> buffers{ {CreateBuffer(builder, builder.CreateVector({})), CreateBuffer(builder, builder.CreateVector( reinterpret_cast(perm_.data()), perm_.size() * sizeof(int32_t)))}}; std::vector output_shape(input_shape().size()); for (int32_t i = 0; i < perm().size(); ++i) { output_shape[i] = input_shape_[perm_[i]]; } flatbuffers::Offset quantization_params = CreateQuantizationParameters( builder, /*min=*/0, /*max=*/0, builder.CreateVector({/*scale=*/1.0f}), builder.CreateVector({/*zero_point=*/0})); const std::array perm_shape{ {static_cast(perm().size())}}; const std::array, 3> tensors{ {CreateTensor(builder, builder.CreateVector(input_shape().data(), input_shape().size()), tensor_type, 0, 0, quantization_params), CreateTensor( builder, builder.CreateVector(perm_shape.data(), perm_shape.size()), TensorType_INT32, 1, 0, quantization_params), CreateTensor(builder, builder.CreateVector(output_shape.data(), output_shape.size()), tensor_type, 0, 0, quantization_params)}}; const std::array op_inputs{{0, 1}}; const std::array op_outputs{{2}}; const flatbuffers::Offset op = CreateOperator( builder, /*opcode_index=*/0, builder.CreateVector(op_inputs.data(), op_inputs.size()), builder.CreateVector(op_outputs.data(), op_outputs.size()), tflite::BuiltinOptions_TransposeOptions, CreateTransposeOptions(builder).Union()); const std::array subgraph_inputs{{0}}; const std::array subgraph_outputs{{2}}; flatbuffers::Offset subgraph = CreateSubGraph( builder, builder.CreateVector(tensors.data(), tensors.size()), builder.CreateVector(subgraph_inputs.data(), subgraph_inputs.size()), builder.CreateVector(subgraph_outputs.data(), subgraph_outputs.size()), builder.CreateVector(&op, 1)); const flatbuffers::Offset model_buffer = CreateModel( builder, TFLITE_SCHEMA_VERSION, builder.CreateVector(&operator_code, 1), builder.CreateVector(&subgraph, 1), builder.CreateString("Transpose model"), builder.CreateVector(buffers.data(), buffers.size())); builder.Finish(model_buffer); return std::vector(builder.GetBufferPointer(), builder.GetBufferPointer() + builder.GetSize()); } } // namespace xnnpack } // namespace tflite