- Machine Learning with Swift
- Alexander Sosnovshchenko
- 84字
- 2021-06-24 18:55:00
Core ML features
Here is a list of Core ML features:
- coremltools Python package includes several converters for popular machine learning frameworks: scikit-learn, Keras, Caffe, LIBSVM, and XGBoost.
- Core ML framework allows running inference (making predictions) on a device. Scikit-learn converter also supports some data transformation and model pipelining.
- Hardware acceleration (Accelerate framework and Metal under the hood).
- Supports iOS, macOS, tvOS, and watchOS.
- Automatic code generation for OOP-style interoperability with Swift.
The biggest Core ML limitation is that it doesn't support models training.
推薦閱讀
- 辦公通信設備維修
- INSTANT ForgedUI Starter
- Intel Edison智能硬件開發指南:基于Yocto Project
- Java Deep Learning Cookbook
- Mastering Machine Learning on AWS
- FPGA實驗實訓教程
- Mastering Quantum Computing with IBM QX
- 微服務實戰
- The Applied Artificial Intelligence Workshop
- 計算機組裝與維護
- PIC系列單片機的流碼編程
- Hands-On Markov Models with Python
- 電腦組裝與硬件維修從入門到精通
- 電腦組裝與硬件維修入門與提高
- Raspberry Pi Media Center