Files
FastDeploy/fastdeploy/backends/rknpu2/rknpu2_backend.h
Jason d7a65e5c70 [Other] Upgrade runtime module (#1068)
* Upgrade runtime module

* Update option.h

* Fix build error

* Move enumerates

* little modification

* little modification

* little modification:

* Remove some useless flags
2023-01-06 13:44:05 +08:00

104 lines
3.3 KiB
C++

// Copyright (c) 2022 PaddlePaddle 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.
#pragma once
#include "fastdeploy/backends/backend.h"
#include "fastdeploy/backends/rknpu2/option.h"
#include "fastdeploy/core/fd_tensor.h"
#include "rknn_api.h" // NOLINT
#include <cstring>
#include <iostream>
#include <memory>
#include <string>
#include <vector>
namespace fastdeploy {
struct RKNPU2BackendOption {
rknpu2::CpuName cpu_name = rknpu2::CpuName::RK3588;
// The specification of NPU core setting.It has the following choices :
// RKNN_NPU_CORE_AUTO : Referring to automatic mode, meaning that it will
// select the idle core inside the NPU.
// RKNN_NPU_CORE_0 : Running on the NPU0 core
// RKNN_NPU_CORE_1: Runing on the NPU1 core
// RKNN_NPU_CORE_2: Runing on the NPU2 core
// RKNN_NPU_CORE_0_1: Running on both NPU0 and NPU1 core simultaneously.
// RKNN_NPU_CORE_0_1_2: Running on both NPU0, NPU1 and NPU2 simultaneously.
rknpu2::CoreMask core_mask = rknpu2::CoreMask::RKNN_NPU_CORE_AUTO;
};
class RKNPU2Backend : public BaseBackend {
public:
RKNPU2Backend() = default;
virtual ~RKNPU2Backend();
// RKNN API
bool LoadModel(void* model);
bool GetSDKAndDeviceVersion();
bool SetCoreMask(rknpu2::CoreMask& core_mask) const;
bool GetModelInputOutputInfos();
// BaseBackend API
void BuildOption(const RKNPU2BackendOption& option);
bool InitFromRKNN(const std::string& model_file,
const RKNPU2BackendOption& option = RKNPU2BackendOption());
int NumInputs() const override {
return static_cast<int>(inputs_desc_.size());
}
int NumOutputs() const override {
return static_cast<int>(outputs_desc_.size());
}
TensorInfo GetInputInfo(int index) override;
TensorInfo GetOutputInfo(int index) override;
std::vector<TensorInfo> GetInputInfos() override;
std::vector<TensorInfo> GetOutputInfos() override;
bool Infer(std::vector<FDTensor>& inputs, std::vector<FDTensor>* outputs,
bool copy_to_fd = true) override;
private:
// The object of rknn context.
rknn_context ctx{};
// The structure rknn_sdk_version is used to indicate the version
// information of the RKNN SDK.
rknn_sdk_version sdk_ver{};
// The structure rknn_input_output_num represents the number of
// input and output Tensor
rknn_input_output_num io_num{};
std::vector<TensorInfo> inputs_desc_;
std::vector<TensorInfo> outputs_desc_;
rknn_tensor_attr* input_attrs_ = nullptr;
rknn_tensor_attr* output_attrs_ = nullptr;
rknn_tensor_mem** input_mems_;
rknn_tensor_mem** output_mems_;
bool infer_init = false;
RKNPU2BackendOption option_;
static void DumpTensorAttr(rknn_tensor_attr& attr);
static FDDataType RknnTensorTypeToFDDataType(rknn_tensor_type type);
static rknn_tensor_type FDDataTypeToRknnTensorType(FDDataType type);
};
} // namespace fastdeploy