# Ascend 910 AI处理器上推理 [![查看源文件](https://mindspore-website.obs.cn-north-4.myhuaweicloud.com/website-images/r1.7/resource/_static/logo_source.png)](https://gitee.com/mindspore/docs/blob/r1.7/tutorials/experts/source_zh_cn/infer/ascend_910_mindir.md) ## 概述 用户可以创建C++应用程序,调用MindSpore的C++接口推理MindIR模型。 ## 推理目录结构介绍 创建目录放置推理代码工程,例如`/home/HwHiAiUser/mindspore_sample/ascend910_resnet50_preprocess_sample`,可以从官网示例下载[样例代码](https://gitee.com/mindspore/docs/tree/r1.7/docs/sample_code/ascend910_resnet50_preprocess_sample),`model`目录用于存放`MindIR`[模型文件](https://mindspore-website.obs.cn-north-4.myhuaweicloud.com/sample_resources/ascend310_resnet50_preprocess_sample/resnet50_imagenet.mindir),`test_data`目录用于存放待分类的图片,推理代码工程目录结构如下: ```text └─ascend910_resnet50_preprocess_sample ├── CMakeLists.txt // 构建脚本 ├── README.md // 使用说明 ├── main.cc // 主函数 ├── model │ └── resnet50_imagenet.mindir // MindIR模型文件 └── test_data ├── ILSVRC2012_val_00002138.JPEG // 输入样本图片1 ├── ILSVRC2012_val_00003014.JPEG // 输入样本图片2 ├── ... // 输入样本图片n ``` ## 推理代码介绍 推理代码样例: 。 引用`mindspore`和`mindspore::dataset`的名字空间。 ```c++ namespace ms = mindspore; namespace ds = mindspore::dataset; ``` 环境初始化,指定硬件为Ascend 910,DeviceID为0: ```c++ auto context = std::make_shared(); auto ascend910_info = std::make_shared(); ascend910_info->SetDeviceID(0); context->MutableDeviceInfo().push_back(ascend910_info); ``` 加载模型文件: ```c++ // Load MindIR model ms::Graph graph; ms::Status ret = ms::Serialization::Load(resnet_file, ms::ModelType::kMindIR, &graph); // Build model with graph object ms::Model resnet50; ret = resnet50.Build(ms::GraphCell(graph), context); ``` 获取模型所需输入信息: ```c++ std::vector model_inputs = resnet50.GetInputs(); ``` 加载图片文件: ```c++ // Readfile is a function to read images ms::MSTensor ReadFile(const std::string &file); auto image = ReadFile(image_file); ``` 图片预处理: ```c++ // Create the CPU operator provided by MindData to get the function object // Decode the input to RGB format std::shared_ptr decode(new ds::vision::Decode()); // Resize the image to the given size std::shared_ptr resize(new ds::vision::Resize({256})); // Normalize the input std::shared_ptr normalize(new ds::vision::Normalize( {0.485 * 255, 0.456 * 255, 0.406 * 255}, {0.229 * 255, 0.224 * 255, 0.225 * 255})); // Crop the input image at the center std::shared_ptr center_crop(new ds::vision::CenterCrop({224, 224})); // shape (H, W, C) to shape (C, H, W) std::shared_ptr hwc2chw(new ds::vision::HWC2CHW()); // // Define a MindData preprocessor ds::Execute preprocessor({decode, resize, normalize, center_crop, hwc2chw}); // Call the function object to get the processed image ret = preprocessor(image, &image); ``` 执行推理: ```c++ // Create outputs vector std::vector outputs; // Create inputs vector std::vector inputs; inputs.emplace_back(model_inputs[0].Name(), model_inputs[0].DataType(), model_inputs[0].Shape(), image.Data().get(), image.DataSize()); // Call the Predict function of Model for inference ret = resnet50.Predict(inputs, &outputs); ``` 获取推理结果: ```c++ // Output the maximum probability to the screen std::cout << "Image: " << image_file << " infer result: " << GetMax(outputs[0]) << std::endl; ``` ## 构建脚本介绍 构建脚本用于构建用户程序,样例来自于: 。 为编译器添加头文件搜索路径: ```cmake option(MINDSPORE_PATH "mindspore install path" "") include_directories(${MINDSPORE_PATH}) include_directories(${MINDSPORE_PATH}/include) ``` 在MindSpore中查找所需动态库: ```cmake find_library(MS_LIB libmindspore.so ${MINDSPORE_PATH}/lib) file(GLOB_RECURSE MD_LIB ${MINDSPORE_PATH}/_c_dataengine*) ``` 使用指定的源文件生成目标可执行文件,并为目标文件链接MindSpore库: ```cmake add_executable(resnet50_sample main.cc) target_link_libraries(resnet50_sample ${MS_LIB} ${MD_LIB}) ``` ## 编译推理代码 进入工程目录`ascend910_resnet50_preprocess_sample`,设置如下环境变量: ```bash # control log level. 0-DEBUG, 1-INFO, 2-WARNING, 3-ERROR, 4-CRITICAL, default level is WARNING. export GLOG_v=2 # Conda environmental options LOCAL_ASCEND=/usr/local/Ascend # the root directory of run package # lib libraries that the run package depends on export LD_LIBRARY_PATH=${LOCAL_ASCEND}/ascend-toolkit/latest/fwkacllib/lib64:${LOCAL_ASCEND}/driver/lib64/common:${LOCAL_ASCEND}/driver/lib64/driver:${LOCAL_ASCEND}/ascend-toolkit/latest/opp/op_impl/built-in/ai_core/tbe/op_tiling:${LD_LIBRARY_PATH} # lib libraries that the mindspore depends on, modify "pip3" according to the actual situation export LD_LIBRARY_PATH=`pip3 show mindspore-ascend | grep Location | awk '{print $2"/mindspore/lib"}' | xargs realpath`:${LD_LIBRARY_PATH} # Environment variables that must be configured export TBE_IMPL_PATH=${LOCAL_ASCEND}/ascend-toolkit/latest/opp/op_impl/built-in/ai_core/tbe # TBE operator implementation tool path export ASCEND_OPP_PATH=${LOCAL_ASCEND}/ascend-toolkit/latest/opp # OPP path export PATH=${LOCAL_ASCEND}/ascend-toolkit/latest/fwkacllib/ccec_compiler/bin/:${PATH} # TBE operator compilation tool path export PYTHONPATH=${TBE_IMPL_PATH}:${PYTHONPATH} # Python library that TBE implementation depends on ``` 执行`cmake`命令,其中`pip3`需要按照实际情况修改: ```bash cmake . -DMINDSPORE_PATH=`pip3 show mindspore-ascend | grep Location | awk '{print $2"/mindspore"}' | xargs realpath` ``` 再执行`make`命令编译即可。 ```bash make ``` 编译完成后,在`ascend910_resnet50_preprocess_sample`下会生成可执行文件。 ## 执行推理并查看结果 登录Ascend 910环境,创建`model`目录放置MindIR文件`resnet50_imagenet.mindir`,例如`/home/HwHiAiUser/mindspore_sample/ascend910_resnet50_preprocess_sample/model`。 创建`test_data`目录放置图片,例如`/home/HwHiAiUser/mindspore_sample/ascend910_resnet50_preprocess_sample/test_data`。 就可以开始执行推理了: ```bash ./resnet50_sample ``` 执行后,会对`test_data`目录下放置的所有图片进行推理,比如放置了9张[ImageNet2012](http://image-net.org/download-images)验证集中label为0的图片,可以看到推理结果如下。 ```text Image: ./test_data/ILSVRC2012_val_00002138.JPEG infer result: 0 Image: ./test_data/ILSVRC2012_val_00003014.JPEG infer result: 0 Image: ./test_data/ILSVRC2012_val_00006697.JPEG infer result: 0 Image: ./test_data/ILSVRC2012_val_00007197.JPEG infer result: 0 Image: ./test_data/ILSVRC2012_val_00009111.JPEG infer result: 0 Image: ./test_data/ILSVRC2012_val_00009191.JPEG infer result: 0 Image: ./test_data/ILSVRC2012_val_00009346.JPEG infer result: 0 Image: ./test_data/ILSVRC2012_val_00009379.JPEG infer result: 0 Image: ./test_data/ILSVRC2012_val_00009396.JPEG infer result: 0 ```