- Statistics for Data Science
- James D. Miller
- 115字
- 2021-07-02 14:58:49
Summary
In this chapter, we sketched how a database (or data) developer thinks on a day-to-day, problem-solving basis, comparing the mindsets of a data developer and a data scientist, using various practical examples.
We also listed some of the advantages of thinking as a data scientist and finally discussed common themes for you to focus on as you gain an understanding of statistics and transition into the world of data science.
In the next chapter, we will introduce and explain (again, from a developer's perspective) the basic objectives behind statistics for data science and introduce you to the important terms and key concepts (with easily understood explanations and examples) that are used throughout the book.
推薦閱讀
- 大數據技術與應用基礎
- 網絡服務器架設(Windows Server+Linux Server)
- 高性能混合信號ARM:ADuC7xxx原理與應用開發(fā)
- OpenStack for Architects
- 數據中心建設與管理指南
- 模型制作
- Visual C# 2008開發(fā)技術詳解
- 計算機網絡應用基礎
- 樂高創(chuàng)意機器人教程(中級 下冊 10~16歲) (青少年iCAN+創(chuàng)新創(chuàng)意實踐指導叢書)
- 計算機網絡技術實訓
- DevOps Bootcamp
- 單片機技能與實訓
- 運動控制系統(第2版)
- Hands-On Microservices with C#
- 天才與算法:人腦與AI的數學思維