官术网_书友最值得收藏!

Summary

In this introductory chapter, we have illustrated the different ways in which we can make machine learning algorithms scalable using Python (scale up and scale out techniques). We also proposed some motivating examples and set the stage for the book by illustrating how to install Python on your machine. In particular, we introduced you to Jupyter and covered all the most important packages that will be used in this book.

In the next chapter, we will dive into discussing how stochastic gradient descent can help you deal with massive datasets by leveraging I/O on a single machine. Basically, we will cover different ways of streaming data from large files or data repositories and feed it into a basic learning algorithm. You will be amazed at how simple solutions can be effective, and you will discover that even your desktop computer can easily crunch big data.

主站蜘蛛池模板: 海伦市| 琼海市| 拉孜县| 连州市| 富民县| 万州区| 山东省| 云和县| 双辽市| 郓城县| 阜新市| 噶尔县| 滨海县| 台中县| 肇庆市| 吕梁市| 年辖:市辖区| 龙川县| 绥棱县| 榕江县| 北安市| 呈贡县| 化德县| 龙南县| 玛纳斯县| 滕州市| 茂名市| 磐石市| 福建省| 宁陵县| 松潘县| 乌什县| 盐源县| 溆浦县| 建阳市| 新密市| 海门市| 安图县| 全南县| 三亚市| 东海县|