- Machine Learning with Spark(Second Edition)
- Rajdeep Dua Manpreet Singh Ghotra Nick Pentreath
- 171字
- 2021-07-09 21:07:56
An architecture for a machine learning system
Now that we have explored how our machine learning system might work in the context of MovieStream, we can outline a possible architecture for our system:

MovieStream's future architecture
As we can see, our system incorporates the machine learning pipeline outlined in the preceding diagram; this system also includes:
- Collecting data about users, their behavior, and our content titles
- Transforming this data into features
- Training our models, including our training-testing and model-selection phases
- Deploying the trained models to both our live model-serving system as well as using these models for offline processes
- Feeding back the model results into the MovieStream website through recommendation and targeting pages
- Feeding back the model results into MovieStream's personalized marketing channels
- Using the offline models to provide tools to MovieStream's various teams to better understand user behavior, characteristics of the content catalogue, and drivers of revenue for the business
In the next section, we digress a little from Movie Stream and give an overview of MLlib-Spark's machine learning module.
推薦閱讀
- Big Data Analytics with Hadoop 3
- 集成架構中型系統
- Word 2003、Excel 2003、PowerPoint 2003上機指導與練習
- Clojure Data Analysis Cookbook
- ABB工業機器人編程全集
- Splunk 7 Essentials(Third Edition)
- Project 2007項目管理實用詳解
- 輕松學C語言
- R Data Mining
- Hands-On Machine Learning with TensorFlow.js
- Hands-On Cybersecurity with Blockchain
- 西門子S7-200 SMART PLC實例指導學與用
- 運動控制器與交流伺服系統的調試和應用
- 大數據時代
- 工業機器人安裝與調試