This repo was moved from @motlabs group. Thanks for @jwkanggist who is a leader of motlabs community.
We tackle the challenge of using machine learning models on iOS via Core ML and ML Kit (TensorFlow Lite).
- Machine Learning Framework for iOS
- Baseline Projects
- Application Projects
- Create ML Projects
- Performance
- See also
- Core ML
- TensorFlow Lite
- Pytorch Mobile
- fritz
- etc.
Tensorflow MobileDEPRECATED
)
The overall flow is very similar for most ML frameworks. Each framework has its own compatible model format. We need to take the model created in TensorFlow and convert it into the appropriate format, for each mobile ML framework.
Once the compatible model is prepared, you can run the inference using the ML framework. Note that you must perform pre/postprocessing manually.
If you want more explanation, check this slide(Korean).
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Using built-in model with Core ML
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Using built-in on-device model with ML Kit
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Using custom model for Vision with Core ML and ML Kit
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Object Detection with Core ML
- Object Detection with ML Kit
- Using built-in cloud model on ML Kit
- Landmark recognition
- Using custom model for NLP with Core ML and ML Kit
- Using custom model for Audio with Core ML and ML Kit
- Audio recognition
- Speech recognition
- TTS
Name | DEMO | Note |
---|---|---|
ImageClassification-CoreML | - | |
MobileNet-MLKit | - |
Name | DEMO | Note |
---|---|---|
ObjectDetection-CoreML | - | |
TextDetection-CoreML | - | |
TextRecognition-MLKit | - | |
FaceDetection-MLKit | - |
Name | DEMO | Note |
---|---|---|
PoseEstimation-CoreML | - | |
PoseEstimation-TFLiteSwift | - | |
PoseEstimation-MLKit | - | |
FingertipEstimation-CoreML | - |
DepthPrediction-CoreML | - |
Name | DEMO | Note |
---|---|---|
SemanticSegmentation-CoreML | - |
Name | DEMO | Note |
---|---|---|
dont-be-turtle-ios | - | |
WordRecognition-CoreML-MLKit(preparing...) | Detect character, find a word what I point and then recognize the word using Core ML and ML Kit. |
Name | DEMO | Note |
---|---|---|
KeypointAnnotation | Annotation tool for own custom estimation dataset |
Name | Create ML DEMO | Core ML DEMO | Note |
---|---|---|---|
SimpleClassification-CreateML-CoreML | A Simple Classification Using Create ML and Core ML |
Execution Time: Inference Time + Postprocessing Time
(with iPhone X) | Inference Time(ms) | Execution Time(ms) | FPS |
---|---|---|---|
ImageClassification-CoreML | 40 | 40 | 23 |
MobileNet-MLKit | 120 | 130 | 6 |
ObjectDetection-CoreML | 100 ~ 120 | 110 ~ 130 | 5 |
TextDetection-CoreML | 12 | 13 | 30(max) |
TextRecognition-MLKit | 35~200 | 40~200 | 5~20 |
PoseEstimation-CoreML | 51 | 65 | 14 |
PoseEstimation-MLKit | 200 | 217 | 3 |
DepthPrediction-CoreML | 624 | 640 | 1 |
SemanticSegmentation-CoreML | 178 | 509 | 1 |
WordRecognition-CoreML-MLKit | 23 | 30 | 14 |
FaceDetection-MLKit | - | - | - |
You can see the measured latency time for inference or execution and FPS on the top of the screen.
If you have more elegant method for measuring the performance, suggest on issue!
Measureš | Unit Test | Bunch Test | |
---|---|---|---|
ImageClassification-CoreML | O | X | X |
MobileNet-MLKit | O | X | X |
ObjectDetection-CoreML | O | O | X |
TextDetection-CoreML | O | X | X |
TextRecognition-MLKit | O | X | X |
PoseEstimation-CoreML | O | O | X |
PoseEstimation-MLKit | O | X | X |
DepthPrediction-CoreML | O | X | X |
SemanticSegmentation-CoreML | O | X | X |
- Core ML | Apple Developer Documentation
- Machine Learning - Apple Developer
- ML Kit - Firebase
- Apple's Core ML 2 vs. Google's ML Kit: What's the difference?
- iOSģģ ėØøģ ė¬ė ģ¬ė¼ģ“ė ģė£
- MoT Labs Blog
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WWDC2020
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WWDC2019
- WWDC2019 256 Session - Advances in Speech Recognition
- WWDC2019 704 Session - Core ML 3 Framework
- WWDC2019 228 Session - Creating Great Apps Using Core ML and ARKit
- WWDC2019 232 Session - Advances in Natural Language Framework
- WWDC2019 222 Session - Understanding Images in Vision Framework
- WWDC2019 234 Session - Text Recognition in Vision Framework
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WWDC2018
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WWDC2017
- WWDC2020
- WWDC2019
- WWDC2019 424 Session - Training Object Detection Models in Create ML
- WWDC2019 426 Session - Building Activity Classification Models in Create ML
- WWDC2019 420 Session - Drawing Classification and One-Shot Object Detection in Turi Create
- WWDC2019 425 Session - Training Sound Classification Models in Create ML
- WWDC2019 428 Session - Training Text Classifiers in Create ML
- WWDC2019 427 Session - Training Recommendation Models in Create ML
- WWDC2019 430 Session - Introducing the Create ML App
- WWDC2018
- WWDC2020
- WWDC2019
- WWDC2018
- WWDC2016
- WWDC2020
- WWDC2020 10632 Session - Optimize Metal Performance for Apple Silicon Macs
- WWDC2020 10603 Session - Optimize Metal apps and games with GPU counters
- TECH-TALKS 606 Session - Metal 2 on A11 - Imageblock Sample Coverage Control
- TECH-TALKS 603 Session - Metal 2 on A11 - Imageblocks
- TECH-TALKS 602 Session - Metal 2 on A11 - Overview
- TECH-TALKS 605 Session - Metal 2 on A11 - Raster Order Groups
- TECH-TALKS 604 Session - Metal 2 on A11 - Tile Shading
- TECH-TALKS 608 Session - Metal Enhancements for A13 Bionic
- WWDC2020 10631 Session - Bring your Metal app to Apple Silicon Macs
- WWDC2020 10197 Session - Broaden your reach with Siri Event Suggestions
- WWDC2020 10615 Session - Build GPU binaries with Metal
- WWDC2020 10021 Session - Build Metal-based Core Image kernels with Xcode
- WWDC2020 10616 Session - Debug GPU-side errors in Metal
- WWDC2020 10012 Session - Discover ray tracing with Metal
- WWDC2020 10013 Session - Get to know Metal function pointers
- WWDC2020 10605 Session - Gain insights into your Metal app with Xcode 12
- WWDC2020 10602 Session - Harness Apple GPUs with Metal
- WWDC2020
- TECH-TALKS 609 Session - Advanced Scene Understanding in AR
- TECH-TALKS 601 Session - Face Tracking with ARKit
- WWDC2020 10611 Session - Explore ARKit 4
- WWDC2020 10604 Session - Shop online with AR Quick Look
- WWDC2020 10601 Session - The artistās AR toolkit
- WWDC2020 10613 Session - What's new in USD
- Training
- Keras examples: https://keras.io/examples/
- Pytorch examples: https://github.com/pytorch/examples
- Inference
- TFLite examples: https://github.com/tensorflow/examples/tree/master/lite
- Pytorch Mobile iOS example: https://github.com/pytorch/ios-demo-app
- FritzLabs examples: https://github.com/fritzlabs/fritz-examples
- Models
- TensorFlow & TFLite models: https://tfhub.dev/
- Pytorch models: https://pytorch.org/hub/
- CoreML official models: https://developer.apple.com/machine-learning/models/