- Machine Learning With Go
- Daniel Whitenack
- 142字
- 2021-07-08 10:37:24
What you need for this book
To run the examples in this book and experiment with the techniques covered in the book, you will generally need the following:
- Access to a bash-like shell.
- A complete Go environment including Go, an editor, and related default or custom environment variables defined. You can, for example, follow this guide at https://www.goinggo.net/2016/05/installing-go-and-your-workspace.html.
- Various Go dependencies. These can be obtained as they are needed via go get ....
Then, to run the examples related to some of the advanced topics, such as data pipelining and deep learning, you will need a few additional things:
- An installation or deployment of Pachyderm. You can follow these docs to get Pachyderm up and running locally or in the cloud, http://pachyderm.readthedocs.io/en/latest/.
- A working Docker installation (https://www.docker.com/community-edition#/download).
- An installation of TensorFlow. To install TensorFlow locally, you can follow this guide at https://www.tensorflow.org/install/.
推薦閱讀
- ASP.NET Core:Cloud-ready,Enterprise Web Application Development
- Modular Programming with Python
- JavaScript高效圖形編程
- Ext JS Data-driven Application Design
- ArcGIS By Example
- Windows Server 2016 Automation with PowerShell Cookbook(Second Edition)
- Getting Started with Gulp
- Unity 2018 Augmented Reality Projects
- Java圖像處理:基于OpenCV與JVM
- Scala編程(第5版)
- Vue.js應用測試
- .NET 4.0面向對象編程漫談:應用篇
- Mastering ASP.NET Web API
- Python面向對象編程(第4版)
- Python人工智能項目實戰