190 lines
6.6 KiB
C++
190 lines
6.6 KiB
C++
//
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// Arm82Backend.cpp
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// MNN
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//
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// Created by MNN on 2019/01/31.
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// Copyright © 2018, Alibaba Group Holding Limited
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//
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#if defined(__ANDROID__) || defined(__aarch64__)
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#include "half.hpp"
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#include <algorithm>
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#include <mutex>
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#include "Arm82Backend.hpp"
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#include "Arm82OptFunc.hpp"
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#include "Arm82Interp.hpp"
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#include "Arm82Functions.hpp"
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#include "core/BufferAllocator.hpp"
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#include "core/TensorUtils.hpp"
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#include "core/OpCommonUtils.hpp"
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#include "backend/cpu/compute/CommonOptFunction.h"
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#include "backend/cpu/CPUTensorConvert.hpp"
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#include "backend/cpu/CPURaster.hpp"
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namespace MNN {
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Arm82Backend::Arm82Backend(const CPURuntime* runtime, BackendConfig::MemoryMode memory) : CPUBackend(runtime, BackendConfig::Precision_Low, memory, MNN_FORWARD_CPU_EXTENSION, 0) {
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mCoreFunctions = Arm82Functions::get();
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mInt8CoreFunctions = Arm82Functions::getInt8();
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}
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Arm82Backend::~Arm82Backend() {
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// nothing to do
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}
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Execution* Arm82Backend::onCreate(const std::vector<Tensor*>& inputs, const std::vector<Tensor*>& outputs,
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const MNN::Op* op) {
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for (auto t : outputs) {
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if (t->getType().code != halide_type_float) {
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return nullptr;
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}
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}
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if (outputs.size() == 1) {
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if (TensorUtils::getDescribe(outputs[0])->quantAttr != nullptr) {
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return nullptr;
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}
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}
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bool originCreate = OpCommonUtils::opCompabilityForLowp(op, 2);
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if (originCreate) {
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return CPUBackend::onCreate(inputs, outputs, op);
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}
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Execution* exe = nullptr;
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if (op->type() == OpType_Interp) {
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exe = Arm82Interp::create(inputs, outputs, op, this);
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}
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if (exe == nullptr) {
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// MNN_PRINT("[MNNWarning]: ARMV82 don't support type: [%s]\n", MNN::EnumNameOpType(op->type()));
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return nullptr;
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}
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return exe;
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}
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static size_t _getAliginSize(const halide_buffer_t& buffer, MNN_DATA_FORMAT format) {
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// The default data type of input tensor for arm82 backend is FLOAT32.
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// However, Arm82Backend default data type is FLOAT16, so check whether data type is FLOAT32,
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// then divide size by 2
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size_t size = sizeof(int16_t);
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const int dimensions = buffer.dimensions;
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for (int i = 0; i < dimensions; i++) {
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int currentDimSize = buffer.dim[i].extent;
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if (format == MNN_DATA_FORMAT_NC4HW4 && 1 == i) {
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currentDimSize = ALIGN_UP8(currentDimSize);
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}
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size *= currentDimSize;
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}
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return size;
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}
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Backend::MemObj* Arm82Backend::onAcquire(const Tensor* nativeTensor, StorageType storageType) {
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// arm82 backend tensor data type is fp16 default
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auto tensor = const_cast<Tensor*>(nativeTensor);
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auto& buffer = tensor->buffer();
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if (buffer.type != halide_type_of<float>() && buffer.type != halide_type_of<FLOAT16>()) {
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return CPUBackend::onAcquire(nativeTensor, storageType);
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}
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auto res = allocBuffer(_getAliginSize(buffer, TensorUtils::getDescribe(nativeTensor)->dimensionFormat), (Tensor*)nativeTensor, storageType);
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if (!res) {
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return nullptr;
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}
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// Set mask in device for easy to determine
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buffer.device = 1;
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return res;
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}
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static MNNForwardType _getBackendType(const Tensor* srcTensor) {
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auto des = TensorUtils::getDescribeOrigin(srcTensor);
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auto bn = des->getBackend();
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MNNForwardType type = MNN_FORWARD_CPU;
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if (nullptr != bn) {
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type = bn->type();
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}
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return type;
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}
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void Arm82Backend::onCopyBuffer(const Tensor* srcTensorC, const Tensor* dstTensor) const {
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auto srcTensor = (Tensor*)srcTensorC;
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auto& ib = srcTensor->buffer();
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auto& ob = dstTensor->buffer();
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if (ib.type.code != halide_type_float) {
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CPUBackend::onCopyBuffer(srcTensor, dstTensor);
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return;
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}
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_resetDynamicMemory();
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if (mRuntime->pCurrentStatus != NO_ERROR) {
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return;
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}
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auto source = TensorUtils::getDescribe(srcTensor)->dimensionFormat;
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auto dest = TensorUtils::getDescribe(dstTensor)->dimensionFormat;
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auto srcType = _getBackendType(srcTensor);
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auto dstType = _getBackendType(dstTensor);
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if (srcType == dstType) {
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if (srcType == MNN_FORWARD_CPU) {
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MNNCPUCopyBuffer(srcTensor, dstTensor);
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} else {
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CPUTensorConverter::convert(srcTensor, dstTensor, mCoreFunctions);
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}
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return;
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}
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// Use CPU Copy to turn save format
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std::shared_ptr<Tensor> tempTensor;
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if (source != dest) {
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if (srcType == MNN_FORWARD_CPU) {
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tempTensor.reset(Tensor::create<float>(dstTensor->shape(), nullptr, TensorUtils::getDimType(dstTensor)));
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MNNCPUCopyBuffer(srcTensor, tempTensor.get());
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srcTensor = tempTensor.get();
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source = dest;
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} else {
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tempTensor.reset(Tensor::create<float>(srcTensor->shape(), nullptr, TensorUtils::getDimType(srcTensor)), [dstTensor](void* ptr) {
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auto tempT = (Tensor*)ptr;
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MNNCPUCopyBuffer(tempT, dstTensor);
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delete tempT;
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});
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dstTensor = tempTensor.get();
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dest = source;
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}
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}
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if (source == MNN_DATA_FORMAT_NC4HW4 && srcTensor->dimensions() >= 2) {
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// NC4HW4 <-> NC8HW8
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// For dimension < 2, it don't care format convert
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int area = 1;
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int channel = srcTensor->length(1);
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for (int axis = 2; axis < ib.dimensions; ++axis) {
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area *= srcTensor->length(axis);
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}
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const int batch = srcTensor->length(0);
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if (srcType == MNN_FORWARD_CPU) {
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MNNNC4HW4TONC8HW8(dstTensor->host<FLOAT16>(), srcTensor->host<float>(), area * batch,
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channel);
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} else {
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MNNNC8HW8TONC4HW4(dstTensor->host<float>(), srcTensor->host<FLOAT16>(), area * batch,
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channel);
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}
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return;
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}
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//MNN_PRINT("%d, %d - %d, %d\n", source, srcType, dest, dstType);
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// The format is the same, just convert fp32-fp16
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const int elemenSize = srcTensor->elementSize();
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// copy and quantize/dequantize data
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// cpu -> arm82 copy
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if (srcType == MNN_FORWARD_CPU) {
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const auto src = srcTensor->host<float>();
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auto dst = dstTensor->host<int16_t>();
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MNNQuantizeFP16(src, dst, elemenSize);
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return;
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}
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// arm82 -> cpu copy
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if (srcType == MNN_FORWARD_CPU_EXTENSION) {
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const auto src = srcTensor->host<int16_t>();
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auto dst = dstTensor->host<float>();
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MNNDequantizeFP16(src, dst, elemenSize);
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return;
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}
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MNN_ERROR("Invalide copy for intenal Arm82 Backend\n");
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return;
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}
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void registerArm82RuntimeCreator() {
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Arm82Functions::init();
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};
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} // namespace MNN
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#endif
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