onnxruntime/js/react_native/e2e/ios/MNISTDataHandler.mm

171 lines
5.6 KiB
Text
Raw Normal View History

// Copyright (c) Microsoft Corporation. All rights reserved.
// Licensed under the MIT License.
#import "MNISTDataHandler.h"
#import "OnnxruntimeModule.h"
#import "TensorHelper.h"
#import <Foundation/Foundation.h>
#import <React/RCTLog.h>
NS_ASSUME_NONNULL_BEGIN
@implementation MNISTDataHandler
RCT_EXPORT_MODULE(MNISTDataHandler)
// It returns mode path in local device,
// so that onnxruntime is able to load a model using a given path.
RCT_EXPORT_METHOD(getLocalModelPath : (RCTPromiseResolveBlock)resolve rejecter : (RCTPromiseRejectBlock)reject) {
@try {
NSString *modelPath = [[NSBundle mainBundle] pathForResource:@"mnist" ofType:@"ort"];
NSFileManager *fileManager = [NSFileManager defaultManager];
if ([fileManager fileExistsAtPath:modelPath]) {
resolve(modelPath);
} else {
reject(@"mnist", @"no such a model", nil);
}
} @catch (NSException *exception) {
reject(@"mnist", @"no such a model", nil);
}
}
// It returns image path.
RCT_EXPORT_METHOD(getImagePath : (RCTPromiseResolveBlock)resolve reject : (RCTPromiseRejectBlock)reject) {
@try {
NSString *imagePath = [[NSBundle mainBundle] pathForResource:@"3" ofType:@"jpg"];
NSFileManager *fileManager = [NSFileManager defaultManager];
if ([fileManager fileExistsAtPath:imagePath]) {
resolve(imagePath);
} else {
reject(@"mnist", @"no such an image", nil);
}
} @catch (NSException *exception) {
reject(@"mnist", @"no such an image", nil);
}
}
// It gets raw input data, which can be uri or byte array and others,
// returns cooked data formatted as input of a model.
RCT_EXPORT_METHOD(preprocess
: (NSString *)uri resolve
: (RCTPromiseResolveBlock)resolve reject
: (RCTPromiseRejectBlock)reject) {
@try {
NSDictionary *inputDataMap = [self preprocess:uri];
resolve(inputDataMap);
} @catch (NSException *exception) {
reject(@"mnist", @"can't load an image", nil);
}
}
// It gets a result from onnxruntime and a duration of session time for input data,
// returns output data formatted as React Native map.
RCT_EXPORT_METHOD(postprocess
: (NSDictionary *)result resolve
: (RCTPromiseResolveBlock)resolve reject
: (RCTPromiseRejectBlock)reject) {
@try {
NSDictionary *cookedMap = [self postprocess:result];
resolve(cookedMap);
} @catch (NSException *exception) {
reject(@"mnist", @"can't pose-process an image", nil);
}
}
- (NSDictionary *)preprocess:(NSString *)uri {
UIImage *image = [UIImage imageNamed:@"3.jpg"];
CGSize scale = CGSizeMake(28, 28);
UIGraphicsBeginImageContextWithOptions(scale, NO, 1.0);
[image drawInRect:CGRectMake(0, 0, scale.width, scale.height)];
UIImage *scaledImage = UIGraphicsGetImageFromCurrentImageContext();
UIGraphicsEndImageContext();
CGImageRef imageRef = [scaledImage CGImage];
NSUInteger width = CGImageGetWidth(imageRef);
NSUInteger height = CGImageGetHeight(imageRef);
CGColorSpaceRef colorSpace = CGColorSpaceCreateDeviceRGB();
const NSUInteger rawDataSize = height * width * 4;
std::vector<unsigned char> rawData(rawDataSize);
NSUInteger bytesPerPixel = 4;
NSUInteger bytesPerRow = bytesPerPixel * width;
CGContextRef context = CGBitmapContextCreate(rawData.data(), width, height, 8, bytesPerRow, colorSpace,
kCGImageAlphaPremultipliedLast | kCGImageByteOrder32Big);
CGColorSpaceRelease(colorSpace);
CGContextSetBlendMode(context, kCGBlendModeCopy);
CGContextDrawImage(context, CGRectMake(0, 0, width, height), imageRef);
CGContextRelease(context);
const NSInteger dimSize = height * width;
const NSInteger byteBufferSize = dimSize * sizeof(float);
unsigned char *byteBuffer = static_cast<unsigned char *>(malloc(byteBufferSize));
NSData *byteBufferRef = [NSData dataWithBytesNoCopy:byteBuffer length:byteBufferSize];
float *floatPtr = (float *)[byteBufferRef bytes];
for (NSUInteger h = 0; h < height; ++h) {
for (NSUInteger w = 0; w < width; ++w) {
NSUInteger byteIndex = (bytesPerRow * h) + w * bytesPerPixel;
*floatPtr++ = rawData[byteIndex];
}
}
floatPtr = (float *)[byteBufferRef bytes];
NSMutableDictionary *inputDataMap = [NSMutableDictionary dictionary];
NSMutableDictionary *inputTensorMap = [NSMutableDictionary dictionary];
// dims
NSArray *dims = @[
Update kernel matching logic: decouple from op schemas and remove kernel def hashes (#12791) # Motivation Currently, ORT minimal builds use kernel def hashes to map from nodes to kernels to execute when loading the model. As the kernel def hashes must be known ahead of time, this works for statically registered kernels. This works well for the CPU EP. For this approach to work, the kernel def hashes must also be known at ORT format model conversion time, which means the EP with statically registered kernels must also be enabled then. This is not an issue for the always-available CPU EP. However, we do not want to require that any EP which statically registers kernels is always available too. Consequently, we explore another approach to match nodes to kernels that does not rely on kernel def hashes. An added benefit of this is the possibility of moving away from kernel def hashes completely, which would eliminate the maintenance burden of keeping the hashes stable. # Approach In a full build, ORT uses some information from the ONNX op schema to match a node to a kernel. We want to avoid including the ONNX op schema in a minimal build to reduce binary size. Essentially, we take the necessary information from the ONNX op schema and make it available in a minimal build. We decouple the ONNX op schema from the kernel matching logic. The kernel matching logic instead relies on per-op information which can either be obtained from the ONNX op schema or another source. This per-op information must be available in a minimal build when there are no ONNX op schemas. We put it in the ORT format model. Existing uses of kernel def hashes to look up kernels are replaced with the updated kernel matching logic. We no longer store kernel def hashes in the ORT format model’s session state and runtime optimization representations. We no longer keep the logic to generate and ensure stability of kernel def hashes.
2022-09-20 21:24:59 +00:00
[NSNumber numberWithInt:1],
[NSNumber numberWithInt:1],
[NSNumber numberWithInt:static_cast<int>(height)],
[NSNumber numberWithInt:static_cast<int>(width)]
];
inputTensorMap[@"dims"] = dims;
// type
inputTensorMap[@"type"] = JsTensorTypeFloat;
// encoded data
NSString *data = [byteBufferRef base64EncodedStringWithOptions:0];
inputTensorMap[@"data"] = data;
Update kernel matching logic: decouple from op schemas and remove kernel def hashes (#12791) # Motivation Currently, ORT minimal builds use kernel def hashes to map from nodes to kernels to execute when loading the model. As the kernel def hashes must be known ahead of time, this works for statically registered kernels. This works well for the CPU EP. For this approach to work, the kernel def hashes must also be known at ORT format model conversion time, which means the EP with statically registered kernels must also be enabled then. This is not an issue for the always-available CPU EP. However, we do not want to require that any EP which statically registers kernels is always available too. Consequently, we explore another approach to match nodes to kernels that does not rely on kernel def hashes. An added benefit of this is the possibility of moving away from kernel def hashes completely, which would eliminate the maintenance burden of keeping the hashes stable. # Approach In a full build, ORT uses some information from the ONNX op schema to match a node to a kernel. We want to avoid including the ONNX op schema in a minimal build to reduce binary size. Essentially, we take the necessary information from the ONNX op schema and make it available in a minimal build. We decouple the ONNX op schema from the kernel matching logic. The kernel matching logic instead relies on per-op information which can either be obtained from the ONNX op schema or another source. This per-op information must be available in a minimal build when there are no ONNX op schemas. We put it in the ORT format model. Existing uses of kernel def hashes to look up kernels are replaced with the updated kernel matching logic. We no longer store kernel def hashes in the ORT format model’s session state and runtime optimization representations. We no longer keep the logic to generate and ensure stability of kernel def hashes.
2022-09-20 21:24:59 +00:00
inputDataMap[@"Input3"] = inputTensorMap;
return inputDataMap;
}
- (NSDictionary *)postprocess:(NSDictionary *)result {
NSMutableString *detectionResult = [NSMutableString string];
Update kernel matching logic: decouple from op schemas and remove kernel def hashes (#12791) # Motivation Currently, ORT minimal builds use kernel def hashes to map from nodes to kernels to execute when loading the model. As the kernel def hashes must be known ahead of time, this works for statically registered kernels. This works well for the CPU EP. For this approach to work, the kernel def hashes must also be known at ORT format model conversion time, which means the EP with statically registered kernels must also be enabled then. This is not an issue for the always-available CPU EP. However, we do not want to require that any EP which statically registers kernels is always available too. Consequently, we explore another approach to match nodes to kernels that does not rely on kernel def hashes. An added benefit of this is the possibility of moving away from kernel def hashes completely, which would eliminate the maintenance burden of keeping the hashes stable. # Approach In a full build, ORT uses some information from the ONNX op schema to match a node to a kernel. We want to avoid including the ONNX op schema in a minimal build to reduce binary size. Essentially, we take the necessary information from the ONNX op schema and make it available in a minimal build. We decouple the ONNX op schema from the kernel matching logic. The kernel matching logic instead relies on per-op information which can either be obtained from the ONNX op schema or another source. This per-op information must be available in a minimal build when there are no ONNX op schemas. We put it in the ORT format model. Existing uses of kernel def hashes to look up kernels are replaced with the updated kernel matching logic. We no longer store kernel def hashes in the ORT format model’s session state and runtime optimization representations. We no longer keep the logic to generate and ensure stability of kernel def hashes.
2022-09-20 21:24:59 +00:00
NSDictionary *outputTensor = [result objectForKey:@"Plus214_Output_0"];
NSString *data = [outputTensor objectForKey:@"data"];
NSData *buffer = [[NSData alloc] initWithBase64EncodedString:data options:0];
float *values = (float *)[buffer bytes];
int count = (int)[buffer length] / 4;
int argmax = 0;
float maxValue = 0.0f;
for (int i = 0; i < count; ++i) {
if (values[i] > maxValue) {
maxValue = values[i];
argmax = i;
}
}
if (maxValue == 0.0f) {
detectionResult = [NSMutableString stringWithString:@"No match"];
} else {
[js/react_native] Create ONNX Runtime React Native pipeline (#10474) * Pipeline for ONNX Runtime react native * Fix a test failure * test with custom built binaries * add onnxruntime-common package back * don't bob build when bootstrap * revise Android test * rename example to e2e * remove onnxruntime packages from package.json * remove release-it package * upgrade gradle version to the same as CI * add a pipeline for react native * Update mac-react-native-ci-pipeline.yml for Azure Pipelines * Update mac-react-native-ci-pipeline.yml for Azure Pipelines * Update mac-react-native-ci-pipeline.yml for Azure Pipelines * Update mac-react-native-ci-pipeline.yml for Azure Pipelines * Update mac-react-native-ci-pipeline.yml for Azure Pipelines * Update mac-react-native-ci-pipeline.yml for Azure Pipelines * Update mac-react-native-ci-pipeline.yml for Azure Pipelines * Update mac-react-native-ci-pipeline.yml for Azure Pipelines * Update mac-react-native-ci-pipeline.yml for Azure Pipelines * Update mac-react-native-ci-pipeline.yml for Azure Pipelines * Update mac-react-native-ci-pipeline.yml for Azure Pipelines * Update mac-react-native-ci-pipeline.yml for Azure Pipelines * Update mac-react-native-ci-pipeline.yml for Azure Pipelines * Update mac-react-native-ci-pipeline.yml for Azure Pipelines * Update mac-react-native-ci-pipeline.yml for Azure Pipelines * Update mac-react-native-ci-pipeline.yml for Azure Pipelines * Update mac-react-native-ci-pipeline.yml for Azure Pipelines * Update mac-react-native-ci-pipeline.yml for Azure Pipelines * Update mac-react-native-ci-pipeline.yml for Azure Pipelines * Update mac-react-native-ci-pipeline.yml for Azure Pipelines * Update mac-react-native-ci-pipeline.yml for Azure Pipelines * Update mac-react-native-ci-pipeline.yml for Azure Pipelines * Update mac-react-native-ci-pipeline.yml for Azure Pipelines * Update mac-react-native-ci-pipeline.yml for Azure Pipelines * android and ios mobile build for react native e2e * Update mac-react-native-ci-pipeline.yml for Azure Pipelines * Update mac-react-native-ci-pipeline.yml for Azure Pipelines * Update mac-react-native-ci-pipeline.yml for Azure Pipelines * use android aar package template * Update mac-react-native-ci-pipeline.yml for Azure Pipelines * Update mac-react-native-ci-pipeline.yml for Azure Pipelines * Update mac-react-native-ci-pipeline.yml for Azure Pipelines * use android aar package template * Update mac-react-native-ci-pipeline.yml for Azure Pipelines * publish ios test results * add e2e tests and publish a npm package * Update mac-react-native-ci-pipeline.yml for Azure Pipelines * Update mac-react-native-ci-pipeline.yml for Azure Pipelines * Update mac-react-native-ci-pipeline.yml for Azure Pipelines * Update mac-react-native-ci-pipeline.yml for Azure Pipelines * Update mac-react-native-ci-pipeline.yml for Azure Pipelines * remove aar from npm package * wait for view displayed * change a waiting logic * increase wait time for app launching * give more time to launch an app * Update mac-react-native-ci-pipeline.yml for Azure Pipelines * Update mac-react-native-ci-pipeline.yml for Azure Pipelines * disable metro server on testing * Update mac-react-native-ci-pipeline.yml for Azure Pipelines * Update mac-react-native-ci-pipeline.yml for Azure Pipelines * Update mac-react-native-ci-pipeline.yml for Azure Pipelines * Update mac-react-native-ci-pipeline.yml for Azure Pipelines * Update mac-react-native-ci-pipeline.yml for Azure Pipelines * Update mac-react-native-ci-pipeline.yml for Azure Pipelines * test ios simulator launching * Update mac-react-native-ci-pipeline.yml for Azure Pipelines * Update mac-react-native-ci-pipeline.yml for Azure Pipelines * Update mac-react-native-ci-pipeline.yml for Azure Pipelines * Update mac-react-native-ci-pipeline.yml for Azure Pipelines * Update mac-react-native-ci-pipeline.yml for Azure Pipelines * Update mac-react-native-ci-pipeline.yml for Azure Pipelines * Update mac-react-native-ci-pipeline.yml for Azure Pipelines * fix iOS e2e test * use a publishing version of npm packages * make pretty * Update mac-react-native-ci-pipeline.yml for Azure Pipelines * Update mac-react-native-ci-pipeline.yml for Azure Pipelines * Update mac-react-native-ci-pipeline.yml for Azure Pipelines * Update mac-react-native-ci-pipeline.yml for Azure Pipelines * Update mac-react-native-ci-pipeline.yml for Azure Pipelines * make only one onnxruntime-common package after packaging * make a powershell script of packaging universal * Update mac-react-native-ci-pipeline.yml for Azure Pipelines * Update mac-react-native-ci-pipeline.yml for Azure Pipelines * Update mac-react-native-ci-pipeline.yml for Azure Pipelines * Add a warning for file changes during a test * clean up * fix lint errors * fix js npm packaging * Update mac-react-native-ci-pipeline.yml for Azure Pipelines * Update mac-react-native-ci-pipeline.yml for Azure Pipelines * Update mac-react-native-ci-pipeline.yml for Azure Pipelines * Update mac-react-native-ci-pipeline.yml for Azure Pipelines * Update mac-react-native-ci-pipeline.yml for Azure Pipelines * Update mac-react-native-ci-pipeline.yml for Azure Pipelines * Update mac-react-native-ci-pipeline.yml for Azure Pipelines * Update mac-react-native-ci-pipeline.yml for Azure Pipelines * Update mac-react-native-ci-pipeline.yml for Azure Pipelines * Update mac-react-native-ci-pipeline.yml for Azure Pipelines * resolve comments * fix a typo
2022-02-10 05:37:05 +00:00
detectionResult = [NSMutableString stringWithFormat:@"%d", argmax];
}
NSDictionary *cookedMap = @{@"result" : detectionResult};
return cookedMap;
}
@end
NS_ASSUME_NONNULL_END