- Deep Learning with Keras
- Antonio Gulli Sujit Pal
- 186字
- 2021-07-02 23:58:07
Step 1 — install some useful dependencies
First, we install the numpy package, which provides support for large, multidimensional arrays and matrices as well as high-level mathematical functions. Then we install scipy, a library used for scientific computation. After that, it might be appropriate to install scikit-learn, a package considered the Python Swiss army knife for machine learning. In this case, we will use it for data exploration. Optionally, it could be useful to install pillow, a library useful for image processing, and h5py, a library useful for data serialization used by Keras for model saving. A single command line is enough for installing what is needed. Alternatively, one can install Anaconda Python, which will automatically install numpy, scipy, scikit-learn, h5py, pillow, and a lot of other libraries that are needed for scientific computing (for more information, refer to: Batch Normalization: Accelerating Deep Network Training by Reducing Internal Covariate Shift, by S. Ioffe and C. Szegedy, arXiv.org/abs/1502.03167, 2015). You can find the packages available in Anaconda Python at https://docs.continuum.io/anaconda/pkg-docs. The following screenshot shows how to install the packages for our work:

- 新媒體跨界交互設計
- Linux KVM虛擬化架構實戰指南
- 電腦組裝與維修從入門到精通(第2版)
- Effective STL中文版:50條有效使用STL的經驗(雙色)
- 計算機組裝·維護與故障排除
- 電腦常見故障現場處理
- 硬件產品經理成長手記(全彩)
- 平衡掌控者:游戲數值經濟設計
- Hands-On Machine Learning with C#
- Large Scale Machine Learning with Python
- 計算機組裝與維護(第3版)
- 筆記本電腦使用、維護與故障排除從入門到精通(第5版)
- BeagleBone Robotic Projects
- WebGL Hotshot
- FreeSWITCH Cookbook