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Course, academic year 2023/2024
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Data Warehouses and Analytical Decision Methods for Business Intelligence - NDBI027
Title: Datové sklady a analytické metody pro Business Intelligence
Guaranteed by: Department of Software Engineering (32-KSI)
Faculty: Faculty of Mathematics and Physics
Actual: from 2016
Semester: winter
E-Credits: 3
Hours per week, examination: winter s.:2/0, Ex [HT]
Capacity: unlimited
Min. number of students: unlimited
4EU+: no
Virtual mobility / capacity: no
State of the course: cancelled
Language: Czech
Teaching methods: full-time
Teaching methods: full-time
Guarantor: Mgr. Vladimír Kyjonka
Class: Informatika Mgr. - volitelný
Classification: Informatics > Database Systems
Files Comments Added by
download 05-1 DW-15 Modelování příklady.pptx Course Presentation 2015/16 Mgr. Vladimír Kyjonka
Annotation -
Last update: T_KSI (26.04.2007)
The Data Warehousing (DW) and Business Intelligence (BI) course covers the area of secondary data processing for decision support process. Its goal is making students familiar with all basic terms and main areas of DW and BI solutions building and operation. In detail it focuses on some particular topics which compose a base frame to be exploited in DW&BI area. The course is based on published documents and practical experience of many specialists with the long working experience in this area.
Literature - Czech
Last update: T_KSI (05.05.2004)

Kimball, Ralph: The Data Warehouse Toolkit, Wiley, 1996

DOHNAL, Jan - POUR, Jan: Architektury informačních systémů v průmyslových a obchodních podnicích, 1997

Berry, Linoff: Data Mining Techniques For Marketing, Sales, and Customer Support

Syllabus -
Last update: T_KSI (26.04.2007)

1. Introduction to datawarehousing and business intelligence. What is datawarehousing (DW) and business intelligence (BI); Definition of partial disciplines; DW and BI principles and specifics; Basic terms, components.

2-3. DW architecture. DW layers; DW models (central, distributed, datamarts, operational data store, active DW); DW components; data presentation (Reporting, OLAP, data mining, special agendas).

4.-5. DW modelling. Multidimensional model, hierarchy; model types (star, snowflake, constellation, snowstorm, conformed dimensions), dimension and fact types, special dimensions, other model types; model optimization.

6. Metadata and Master data. Metadata (purpose, types, administration); Master data (purpose, creation, administration and maintenance); master data/metadata management.

7.-8. Tools and technologies. Technology components overview; Standards; Data systems; ETL/ELT; Presentation (tools, techniques).

9. DW management. Lifecycle pf information in DW ; Performance optimization; Change management.

10.-11 Data quality. Data quality (DQ) basic terms; DQ principles and tasks; DQ management architecture; DQ management methodologies; Personal data protection.

12. Data mining. Purpose; Basic principles and terms; Models and methods; Predictive modelling.

13.-14. Advanced BI methods. Analytic CRM; Segmentation, segmentation types; Campaign management; Customer Business Performance DW; Risk Management, Attrition Management, Cross/Up-sell, Fraud Detection; Customer Value Management.

 
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