- Introduction to R for Business Intelligence
- Jay Gendron
- 166字
- 2021-08-20 10:34:36
Chapter 1. Extract, Transform, and Load
Business may focus on profits and sales, but business intelligence (BI) focuses on data. Activities reliant on data require the business analyst to acquire it from diverse sources. The term Extract, Transform, and Load, commonly referred to as ETL, is a deliberate process to get, manipulate, and store data to meet business or analytic needs. ETL is the starting point for many business analytic projects. Poorly executed ETL may affect a business in the form of added cost and lost time to make decisions. This chapter covers the following four key topics:
- Understanding big data in BI analytics
- Extracting data from sources
- Transforming data to fit analytic needs
- Loading data into business systems for analysis
This chapter presents each ETL step within the context of the R computational environment. Each step is broken down into finer levels of detail and includes a variety of situations that business analysts encounter when executing BI in a big data business world.
- Ansible Configuration Management
- 三菱FX3U/5U PLC從入門到精通
- ETL with Azure Cookbook
- 手把手教你學AutoCAD 2010
- 微型計算機控制技術
- MCSA Windows Server 2016 Certification Guide:Exam 70-741
- PIC單片機C語言非常入門與視頻演練
- Hadoop Real-World Solutions Cookbook(Second Edition)
- 項目管理成功利器Project 2007全程解析
- Extending Ansible
- 嵌入式GUI開發設計
- 工業機器人實操進階手冊
- 手機游戲策劃設計
- Hands-On Deep Learning with Go
- PowerPoint 2010幻燈片制作高手速成