blob: a734c819f9a310f48e56e9c87f1a9c3a75ea2c72 [file] [log] [blame]
//
// Copyright © 2021 Arm Ltd and Contributors. All rights reserved.
// SPDX-License-Identifier: MIT
//
#pragma once
#include "TestUtils.hpp"
#include <armnn_delegate.hpp>
#include <flatbuffers/flatbuffers.h>
#include <tensorflow/lite/interpreter.h>
#include <tensorflow/lite/kernels/register.h>
#include <tensorflow/lite/model.h>
#include <tensorflow/lite/schema/schema_generated.h>
#include <tensorflow/lite/version.h>
#include <doctest/doctest.h>
namespace
{
template <typename InputT, typename OutputT>
std::vector<char> CreateArgMinMaxTfLiteModel(tflite::BuiltinOperator argMinMaxOperatorCode,
tflite::TensorType tensorType,
const std::vector<int32_t>& inputTensorShape,
const std::vector<int32_t>& axisTensorShape,
const std::vector<int32_t>& outputTensorShape,
const std::vector<OutputT> axisValue,
tflite::TensorType outputType,
float quantScale = 1.0f,
int quantOffset = 0)
{
using namespace tflite;
flatbuffers::FlatBufferBuilder flatBufferBuilder;
auto quantizationParameters =
CreateQuantizationParameters(flatBufferBuilder,
0,
0,
flatBufferBuilder.CreateVector<float>({ quantScale }),
flatBufferBuilder.CreateVector<int64_t>({ quantOffset }));
auto inputTensor = CreateTensor(flatBufferBuilder,
flatBufferBuilder.CreateVector<int32_t>(inputTensorShape.data(),
inputTensorShape.size()),
tensorType,
0,
flatBufferBuilder.CreateString("input"),
quantizationParameters);
auto axisTensor = CreateTensor(flatBufferBuilder,
flatBufferBuilder.CreateVector<int32_t>(axisTensorShape.data(),
axisTensorShape.size()),
tflite::TensorType_INT32,
1,
flatBufferBuilder.CreateString("axis"));
auto outputTensor = CreateTensor(flatBufferBuilder,
flatBufferBuilder.CreateVector<int32_t>(outputTensorShape.data(),
outputTensorShape.size()),
outputType,
2,
flatBufferBuilder.CreateString("output"),
quantizationParameters);
std::vector<flatbuffers::Offset<Tensor>> tensors = { inputTensor, axisTensor, outputTensor };
std::vector<flatbuffers::Offset<tflite::Buffer>> buffers;
buffers.push_back(CreateBuffer(flatBufferBuilder, flatBufferBuilder.CreateVector({})));
buffers.push_back(
CreateBuffer(flatBufferBuilder,
flatBufferBuilder.CreateVector(reinterpret_cast<const uint8_t*>(axisValue.data()),
sizeof(OutputT))));
buffers.push_back(CreateBuffer(flatBufferBuilder, flatBufferBuilder.CreateVector({})));
std::vector<int32_t> operatorInputs = {{ 0, 1 }};
std::vector<int> subgraphInputs = {{ 0, 1 }};
tflite::BuiltinOptions operatorBuiltinOptionsType = BuiltinOptions_ArgMaxOptions;
flatbuffers::Offset<void> operatorBuiltinOptions = CreateArgMaxOptions(flatBufferBuilder, outputType).Union();
if (argMinMaxOperatorCode == tflite::BuiltinOperator_ARG_MIN)
{
operatorBuiltinOptionsType = BuiltinOptions_ArgMinOptions;
operatorBuiltinOptions = CreateArgMinOptions(flatBufferBuilder, outputType).Union();
}
// create operator
const std::vector<int32_t> operatorOutputs{ 2 };
flatbuffers::Offset <Operator> argMinMaxOperator =
CreateOperator(flatBufferBuilder,
0,
flatBufferBuilder.CreateVector<int32_t>(operatorInputs.data(), operatorInputs.size()),
flatBufferBuilder.CreateVector<int32_t>(operatorOutputs.data(), operatorOutputs.size()),
operatorBuiltinOptionsType,
operatorBuiltinOptions);
const std::vector<int> subgraphOutputs{ 2 };
flatbuffers::Offset <SubGraph> subgraph =
CreateSubGraph(flatBufferBuilder,
flatBufferBuilder.CreateVector(tensors.data(), tensors.size()),
flatBufferBuilder.CreateVector<int32_t>(subgraphInputs.data(), subgraphInputs.size()),
flatBufferBuilder.CreateVector<int32_t>(subgraphOutputs.data(), subgraphOutputs.size()),
flatBufferBuilder.CreateVector(&argMinMaxOperator, 1));
flatbuffers::Offset <flatbuffers::String> modelDescription =
flatBufferBuilder.CreateString("ArmnnDelegate: ArgMinMax Operator Model");
flatbuffers::Offset <OperatorCode> operatorCode = CreateOperatorCode(flatBufferBuilder,
argMinMaxOperatorCode);
flatbuffers::Offset <Model> flatbufferModel =
CreateModel(flatBufferBuilder,
TFLITE_SCHEMA_VERSION,
flatBufferBuilder.CreateVector(&operatorCode, 1),
flatBufferBuilder.CreateVector(&subgraph, 1),
modelDescription,
flatBufferBuilder.CreateVector(buffers.data(), buffers.size()));
flatBufferBuilder.Finish(flatbufferModel);
return std::vector<char>(flatBufferBuilder.GetBufferPointer(),
flatBufferBuilder.GetBufferPointer() + flatBufferBuilder.GetSize());
}
template <typename InputT, typename OutputT>
void ArgMinMaxTest(tflite::BuiltinOperator argMinMaxOperatorCode,
tflite::TensorType tensorType,
const std::vector<armnn::BackendId>& backends,
const std::vector<int32_t>& inputShape,
const std::vector<int32_t>& axisShape,
std::vector<int32_t>& outputShape,
std::vector<InputT>& inputValues,
std::vector<OutputT>& expectedOutputValues,
OutputT axisValue,
tflite::TensorType outputType,
float quantScale = 1.0f,
int quantOffset = 0)
{
using namespace tflite;
std::vector<char> modelBuffer = CreateArgMinMaxTfLiteModel<InputT, OutputT>(argMinMaxOperatorCode,
tensorType,
inputShape,
axisShape,
outputShape,
{axisValue},
outputType,
quantScale,
quantOffset);
const Model* tfLiteModel = GetModel(modelBuffer.data());
CHECK(tfLiteModel != nullptr);
std::unique_ptr<Interpreter> armnnDelegateInterpreter;
CHECK(InterpreterBuilder(tfLiteModel, ::tflite::ops::builtin::BuiltinOpResolver())
(&armnnDelegateInterpreter) == kTfLiteOk);
CHECK(armnnDelegateInterpreter != nullptr);
CHECK(armnnDelegateInterpreter->AllocateTensors() == kTfLiteOk);
std::unique_ptr<Interpreter> tfLiteInterpreter;
CHECK(InterpreterBuilder(tfLiteModel, ::tflite::ops::builtin::BuiltinOpResolver())
(&tfLiteInterpreter) == kTfLiteOk);
CHECK(tfLiteInterpreter != nullptr);
CHECK(tfLiteInterpreter->AllocateTensors() == kTfLiteOk);
// Create the ArmNN Delegate
armnnDelegate::DelegateOptions delegateOptions(backends);
std::unique_ptr<TfLiteDelegate, decltype(&armnnDelegate::TfLiteArmnnDelegateDelete)>
theArmnnDelegate(armnnDelegate::TfLiteArmnnDelegateCreate(delegateOptions),
armnnDelegate::TfLiteArmnnDelegateDelete);
CHECK(theArmnnDelegate != nullptr);
// Modify armnnDelegateInterpreter to use armnnDelegate
CHECK(armnnDelegateInterpreter->ModifyGraphWithDelegate(theArmnnDelegate.get()) == kTfLiteOk);
// Set input data
armnnDelegate::FillInput<InputT>(tfLiteInterpreter, 0, inputValues);
armnnDelegate::FillInput<InputT>(armnnDelegateInterpreter, 0, inputValues);
// Run EnqueueWorkload
CHECK(tfLiteInterpreter->Invoke() == kTfLiteOk);
CHECK(armnnDelegateInterpreter->Invoke() == kTfLiteOk);
// Compare output data
auto tfLiteDelegateOutputId = tfLiteInterpreter->outputs()[0];
auto tfLiteDelageOutputData = tfLiteInterpreter->typed_tensor<OutputT>(tfLiteDelegateOutputId);
auto armnnDelegateOutputId = armnnDelegateInterpreter->outputs()[0];
auto armnnDelegateOutputData = armnnDelegateInterpreter->typed_tensor<OutputT>(armnnDelegateOutputId);
for (size_t i = 0; i < expectedOutputValues.size(); i++)
{
CHECK(expectedOutputValues[i] == armnnDelegateOutputData[i]);
CHECK(tfLiteDelageOutputData[i] == expectedOutputValues[i]);
CHECK(tfLiteDelageOutputData[i] == armnnDelegateOutputData[i]);
}
}
} // anonymous namespace