- Practical Data Analysis
- Hector Cuesta
- 144字
- 2021-07-23 15:59:32
Summary
In this chapter we explored the common datasources and implemented a web scraping example. Next, we introduced the basic concepts of data scrubbing such as statistical methods and text parsing. Then we learned about how to parse the most used text formats with Python. Finally, we presented an introduction to OpenRefine which is an excellent tool for data cleansing and data formatting. Working with data is not just code or clicks, we also need to play with the data and follow our intuition to get our data in great shape. We need to get involved in the knowledge domain of our data to find inconsistencies. Global vision of data helps us to discover what we need to know about our data.
In the next chapter, we will explore our data through some visualization techniques and we will present a fast introduction to D3js.
- Linux Mint System Administrator’s Beginner's Guide
- 嵌入式Linux上的C語言編程實踐
- 自主研拋機器人技術
- Windows程序設計與架構
- 控制系統計算機仿真
- Hands-On Reactive Programming with Reactor
- 分析力!專業Excel的制作與分析實用法則
- Visual FoxPro程序設計
- 液壓機智能故障診斷方法集成技術
- 三菱FX/Q系列PLC工程實例詳解
- 一步步寫嵌入式操作系統
- Unreal Development Kit Game Design Cookbook
- 自適應學習:人工智能時代的教育革命
- PyTorch深度學習
- Architectural Patterns