Here are the main objectives for each of the book's 19 chapters:
- Chapter 1: Develop a foundational knowledge of data warehousing, business intelligence and analytics
- Chapter 2: Build the business case needed to sell your data warehousing project, and then produce a project plan that avoids common pitfalls
- Chapter 3: Elicit and organize business intelligence and data warehousing business requirements
- Chapter 4: Specify the technical architecture of the data warehousing system, including software and infrastructure components, technology stack, and non-functional requirements. Gain an understanding of cloud based data warehousing and data warehouse appliances
- Chapter 5: Learn about data attributes including metrics and key performance indicators (KPIs), the raw material of data warehousing and business intelligence
- Chapter 6: Learn about data modeling and how to apply design patterns for each part of the data warehouse
- Chapter 7: Speak the dimensional modeling language of measures, dimensions, facts, cubes, stars, and snowflakes
- Chapter 8: Organize a successful data governance program. Learn how to manage metadata for your data warehousing and business intelligence project
- Chapter 9: Identify useful data sources and implement a data quality program
- Chapter 10: Use database technology for your data warehousing project, and understand the impact of data warehouse appliances, big data, in memory databases, columnar databases and OnLine Analytical Processing (OLAP)
- Chapter 11: Apply data integration and understand the role data mapping, data cleansing, data transformation, and loading data play in a successful data warehouse
- Chapter 12: Use the business intelligence (BI) operations of slice, dice, drill down, roll up, and pivot to analyze and present data
- Chapter 13: Learn about descriptive and predictive statistics, and calculate mean, median, mode, variance and standard deviation
- Chapter 14: Harness analytical methods such as regression analysis, data mining, and statistics to make profitable decisions and anticipate the future
- Chapter 15: Appreciate the components and design patterns that compose a successful analytic application
- Chapter 16: Gain an understanding of the uses and benefits of scorecards and dashboards including support of mobile device users
- Chapter 17: Gain insight into applications of business intelligence that could profit your organization, including risk management, finance, marketing, government, healthcare, science and sports
- Chapter 18: Perform customer analytics to better understand and segment your customers
- Chapter 19: Test, roll out, and sustain the data warehouse