官术网_书友最值得收藏!

Data Transformation Strategies

Within any BI project, it is essential that the data you are working with has been properly scrubbed to make for accurate results on your reports and dashboards. Applying data cleansing business rules, also known as transforms, is the method for correcting inaccurate or malformed data, but the process can often be the most time-consuming part of any corporate BI solution. However, the data transformation capabilities built into Power BI are both very powerful and user-friendly. Using the Power Query Editor, tasks that would typically be difficult or time-consuming in an enterprise BI tool are as simple as right-clicking on a column and selecting the appropriate transform for the field. While interacting with the user interface in this editor, a language called M is being written automatically for you behind the scenes.

Through the course of this chapter, you will explore some of the most common features of the Power Query Editor that make it so highly regarded by its users. Since one sample dataset cannot provide all the problems you will run into, you will be provided several small disparate examples to show you what is possible. This chapter will detail the following topics:

  • The Power Query Editor
  • Transform basics
  • Advanced data transformation options
  • Leveraging R
  • M formula language

主站蜘蛛池模板: 德安县| 衡东县| 姚安县| 远安县| 温泉县| 蒙山县| 临沭县| 白沙| 开原市| 安吉县| 应城市| 常州市| 蕲春县| 邹城市| 滨州市| 江北区| 宾阳县| 循化| 临邑县| 苗栗市| 金坛市| 古蔺县| 衢州市| 陆河县| 长兴县| 杭州市| 延津县| 栾川县| 黄大仙区| 呼玛县| 大新县| 于都县| 开封县| 沽源县| 兴仁县| 巩义市| 灵台县| 咸阳市| 福建省| 临汾市| 南昌县|