Check in sample showcasing Rust projection of Winrt (#342)

* Init rust squeezenet project

* Add winrt-rs submodule

* update .gitmodules

* Add squeezenet code

* More efficient sorting

* refactoring

* Make pretty

* add comments

* Add README.md

* nit

* Use macro to clean up code

* actually use winml nuget 1.4.0

* PR comments

* Update to latest winrt-rs master

Co-authored-by: Ryan Lai <ryalai96@gamil.com>
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Ryan Lai 2020-08-24 12:07:21 -07:00 коммит произвёл GitHub
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.gitmodules поставляемый
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[submodule "Tools/WinML-Dashboard/deps/Netron"]
path = Tools/WinMLDashboard/deps/Netron
url = https://github.com/lutzroeder/Netron.git
[submodule "Samples/RustSqueezenet/winrt-rs"]
path = Samples/RustSqueezenet/winrt-rs
url = https://github.com/microsoft/winrt-rs.git

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[package]
name = "rust_squeezenet"
version = "0.1.0"
authors = ["Microsoft"]
edition = "2018"
[build]
target-dir = "target"
[dependencies]
winrt = { path = "./winrt-rs" }
# NOTE: winrt_macros is needed as a dependency because Rust 1.46 is needed and hasn't been released yet.
winrt_macros = { git = "https://github.com/microsoft/winrt-rs", version = "0.7.2" }
[build-dependencies]
winrt = { path = "./winrt-rs" }
# Nuget packages
[package.metadata.winrt.dependencies]
"Microsoft.Windows.SDK.Contracts" = "10.0.19041.1"
"Microsoft.AI.MachineLearning" = "1.4.0"

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# SqueezeNet Rust sample
This is a desktop application that uses SqueezeNet, a pre-trained machine learning model, to detect the predominant object in an image selected by the user from a file.
Note: SqueezeNet was trained to work with image sizes of 224x224, so you must provide an image of size 224X224.
## Prerequisites
- [Install Rustup](https://www.rust-lang.org/tools/install)
- Install cargo-winrt through command prompt. Until Rust 1.46 is released, cargo-winrt should be installed through the winrt-rs git repository.
- ```cargo install --git https://github.com/microsoft/winrt-rs cargo-winrt```
## Build and Run the sample
1. This project requires Rust 1.46, which is currently in Beta. Rust release dates can be found [here](https://forge.rust-lang.org/). Rust Beta features can be enabled by running the following commands through command prompt in this current project directory after installation of Rustup :
- ``` rustup install beta ```
- ``` rustup override set beta ```
2. Install the WinRT nuget dependencies with this command: ``` cargo winrt install ```
3. Build the project by running ```cargo build``` for debug and ```cargo build --release``` for release.
4. Run the sample by running this command through the command prompt. ``` cargo winrt run ```
- Another option would be to run the executable directly. Should be ```<git enlistment>\Samples\RustSqueezeNet\target\debug\rust_squeezenet.exe```
## Sample output
```
C:\Repos\Windows-Machine-Learning\Samples\RustSqueezeNet> cargo winrt run
Finished installing WinRT dependencies in 0.47s
Finished dev [unoptimized + debuginfo] target(s) in 0.12s
Running `target\debug\rust_squeezenet.exe`
Loading model C:\Repos\Windows-Machine-Learning\RustSqueezeNet\target\debug\Squeezenet.onnx
Creating session
Loading image file C:\Repos\Windows-Machine-Learning\RustSqueezeNet\target\debug\kitten_224.png
Evaluating
Results:
tabby tabby cat 0.9314611
Egyptian cat 0.06530659
tiger cat 0.0029267797
```

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macro_rules! copy_file {
($file:expr, $destination:expr) => {
match fs::copy($file,
$destination) {
Ok(file) => file,
Err(error) => panic!("Problem copying the file {} to {}: {:?}", $file, $destination, error),
};
}
}
fn copy_resources() {
use std::fs;
let profile = std::env::var("PROFILE").unwrap();
if profile == "debug" {
copy_file!("..\\..\\SharedContent\\media\\fish.png",".\\target\\debug\\fish.png");
copy_file!("..\\..\\SharedContent\\media\\fish.png",".\\target\\debug\\kitten_224.png");
copy_file!("..\\..\\SharedContent\\models\\SqueezeNet.onnx",".\\target\\debug\\SqueezeNet.onnx");
copy_file!("..\\SqueezeNetObjectDetection\\Desktop\\cpp\\Labels.txt",".\\target\\debug\\Labels.txt");
}
else if profile == "release" {
copy_file!("..\\..\\SharedContent\\media\\fish.png",".\\target\\release\\fish.png");
copy_file!("..\\..\\SharedContent\\media\\fish.png",".\\target\\release\\kitten_224.png");
copy_file!("..\\..\\SharedContent\\models\\SqueezeNet.onnx",".\\target\\release\\SqueezeNet.onnx");
copy_file!("..\\SqueezeNetObjectDetection\\Desktop\\cpp\\Labels.txt",".\\target\\release\\Labels.txt");
}
}
fn main() {
winrt::build!(
types
microsoft::ai::machine_learning::*
windows::graphics::imaging::*
);
copy_resources();
}

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include!(concat!(env!("OUT_DIR"), "/winrt.rs"));
macro_rules! handle_io_error_as_winrt_error {
($expression:expr, $error_message:expr) => {
match $expression {
Ok(val) => val,
Err(_err) => return Err(winrt::Error::new(winrt::ErrorCode(Error::last_os_error().raw_os_error().unwrap() as u32), $error_message)),
}
}
}
fn main() -> winrt::Result<()> {
use microsoft::ai::machine_learning::*;
use winrt::ComInterface;
let model_path = get_current_dir()? + "\\Squeezenet.onnx";
println!("Loading model {}", model_path);
let learning_model = LearningModel::load_from_file_path(model_path)?;
let device = LearningModelDevice::create(LearningModelDeviceKind::Cpu)?;
println!("Creating session");
let session = LearningModelSession::create_from_model_on_device(learning_model, device)?;
let image_file_path = get_current_dir()? + "\\kitten_224.png";
println!("Loading image file {}", image_file_path);
let input_image_videoframe = load_image_file(image_file_path)?;
let input_image_feature_value = ImageFeatureValue::create_from_video_frame(input_image_videoframe)?;
let binding = LearningModelBinding::create_from_session(&session)?;
binding.bind("data_0", input_image_feature_value)?;
println!("Evaluating");
let results = LearningModelSession::evaluate(&session,binding, "RunId")?;
let result_lookup = results.outputs()?.lookup("softmaxout_1")?;
let result_itensor_float : ITensorFloat = result_lookup.try_query()?;
let result_vector_view = result_itensor_float.get_as_vector_view()?;
println!("Results:");
print_results(result_vector_view)?;
Ok(())
}
// Print the evaluation results.
fn print_results(results: windows::foundation::collections::IVectorView<f32>) -> winrt::Result<()> {
let labels = load_labels()?;
let mut sorted_results : std::vec::Vec<(f32,u32)> = Vec::new();
for i in 0..results.size()? {
let result = (results.get_at(i)?, i);
sorted_results.push(result);
}
sorted_results.sort_by(|a, b| b.0.partial_cmp(&a.0).unwrap());
// Display the top results
for i in 0..3 {
println!(" {} {}", labels[sorted_results[i].1 as usize], sorted_results[i].0)
}
Ok(())
}
// Return the path of the current directory of the executable
fn get_current_dir() -> winrt::Result<String> {
use std::env;
use std::io::Error;
let current_exe = handle_io_error_as_winrt_error!(env::current_exe(), "Failed to get current directory of executable.");
let current_dir = current_exe.parent().unwrap();
Ok(current_dir.display().to_string())
}
// Load all the SqueezeNet labeels and return in a vector of Strings.
fn load_labels() -> winrt::Result<std::vec::Vec<String>> {
use std::io::Error;
use std::fs::File;
use std::io::{prelude::*, BufReader};
let mut labels : std::vec::Vec<String> = Vec::new();
let labels_file_path = get_current_dir()? + "\\Labels.txt";
let file = handle_io_error_as_winrt_error!(File::open(labels_file_path), "Failed to load labels.");
let reader = BufReader::new(file);
for line in reader.lines() {
let line_str = handle_io_error_as_winrt_error!(line,"Failed to read lines.");
let mut tokenized_line: Vec<&str> = line_str.split(',').collect();
let index = tokenized_line[0].parse::<usize>().unwrap();
labels.resize(index+1, "".to_string());
tokenized_line.remove(0);
labels[index] = tokenized_line.join("");
}
Ok(labels)
}
// load image file given a path and return Videoframe
fn load_image_file(image_file_path: String) -> winrt::Result<windows::media::VideoFrame> {
use windows::graphics::imaging::*;
use windows::media::*;
use windows::storage::*;
let file = StorageFile::get_file_from_path_async(image_file_path)?.get()?;
let stream = file.open_async(FileAccessMode::Read)?.get()?;
let decoder = BitmapDecoder::create_async(&stream)?.get()?;
let software_bitmap = decoder.get_software_bitmap_async()?.get()?;
let image_videoframe = VideoFrame::create_with_software_bitmap(software_bitmap)?;
Ok(image_videoframe)
}

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Subproject commit 2edcccde71df2a33bd4fe5355751b8507a9d5b49