Datawarehousing and Analytics. Data-Warehouse-, Data-Mining- und OLAP-Technologien. Advanced Information Management



Similar documents
SENG 520, Experience with a high-level programming language. (304) , Jeff.Edgell@comcast.net

Data-Warehouse-, Data-Mining- und OLAP-Technologien

A Design and implementation of a data warehouse for research administration universities

Data warehouses. Data Mining. Abraham Otero. Data Mining. Agenda

Subject Description Form

Indexing Techniques for Data Warehouses Queries. Abstract

Data Integration and ETL Process

Course Design Document. IS417: Data Warehousing and Business Analytics

An Introduction to Data Warehousing. An organization manages information in two dominant forms: operational systems of

Dimensional Modeling for Data Warehouse

COURSE SYLLABUS. Enterprise Information Systems and Business Intelligence

INTEGRATION OF HETEROGENEOUS DATABASES IN ACADEMIC ENVIRONMENT USING OPEN SOURCE ETL TOOLS

What is Management Reporting from a Data Warehouse and What Does It Have to Do with Institutional Research?

Upon successful completion of this course, a student will meet the following outcomes:

8. Business Intelligence Reference Architectures and Patterns

Turkish Journal of Engineering, Science and Technology

Chapter 5 Business Intelligence: Data Warehousing, Data Acquisition, Data Mining, Business Analytics, and Visualization

Data Warehousing and Data Mining

MIS636 AWS Data Warehousing and Business Intelligence Course Syllabus

Towards Real-Time Data Integration and Analysis for Embedded Devices

Data Warehousing and Data Mining in Business Applications

Chapter 5. Warehousing, Data Acquisition, Data. Visualization

Course DSS. Business Intelligence: Data Warehousing, Data Acquisition, Data Mining, Business Analytics, and Visualization

Outline Business Intelligence Roadmap: The Complete Project Lifecycle for Decision-Support Applications

Data Mining - Introduction

An Overview of Data Warehousing, Data mining, OLAP and OLTP Technologies

Data Warehousing Systems: Foundations and Architectures

The Evolution of the Data Warehouse Systems in Recent Years

Data Integration and ETL Process

OLAP, Knowledge Discovery from Database, Social Security Fund, Oracle Warehouse Builder, Oracle Discoverer.

International Journal of Scientific & Engineering Research, Volume 5, Issue 4, April ISSN

Big Data Governance Certification Self-Study Kit Bundle

IST722 Data Warehousing

Microsoft Data Warehouse in Depth

Valuation Factors for the Necessity of Data Persistence in Enterprise Data Warehouses on In-Memory Databases

Syllabus. HMI 7437: Data Warehousing and Data/Text Mining for Healthcare

Data Warehousing. Jens Teubner, TU Dortmund Winter 2015/16. Jens Teubner Data Warehousing Winter 2015/16 1

Data Warehousing. Jens Teubner, TU Dortmund Winter 2015/16. Jens Teubner Data Warehousing Winter 2015/16 1

BIG DATA COURSE 1 DATA QUALITY STRATEGIES - CUSTOMIZED TRAINING OUTLINE. Prepared by:

A Critical Review of Data Warehouse

ETL-EXTRACT, TRANSFORM & LOAD TESTING

The University of Jordan

Lection 3-4 WAREHOUSING

Data Warehousing and OLAP Technology for Knowledge Discovery

Data Warehousing, Data Mining, OLAP and OLTP Technologies Are Essential Elements to Support Decision-Making Process in Industries

Week 3 lecture slides

Data warehouse life-cycle and design

BUILDING OLAP TOOLS OVER LARGE DATABASES

Overview. DW Source Integration, Tools, and Architecture. End User Applications (EUA) EUA Concepts. DW Front End Tools. Source Integration

The GOBIA Method: Towards Goal-Oriented Business Intelligence Architectures

Data Warehouse Schema Design

Big Data Governance Certification Self-Study Kit Bundle

Middleware for Heterogeneous and Distributed Information Systems

A Comparative Study on Operational Database, Data Warehouse and Hadoop File System T.Jalaja 1, M.Shailaja 2

CASE STUDY - BUILDING A DATA WAREHOUSE FOR HIGHER EDUCATION IN THE COURSE OF MICROSTRATEGY S UNIVERSITY PROGRAM

Data Warehouses and Business Intelligence ITP 487 (3 Units) Fall Objective

Key organizational factors in data warehouse architecture selection

SQL Server 2012 Business Intelligence Boot Camp

Establish and maintain Center of Excellence (CoE) around Data Architecture

IST722 Syllabus. Instructor Paul Morarescu Phone Office hours (phone) Thus 10:00-12:00 EST

OLAP Theory-English version

Analysis Patterns in Dimensional Data Modeling

How To Learn Data Analytics

BUSINESS INTELLIGENCE AS SUPPORT TO KNOWLEDGE MANAGEMENT

Jagir Singh, Greeshma, P Singh University of Northern Virginia. Abstract

CSE532 Theory of Database Systems Course Information. CSE 532, Theory of Database Systems Stony Brook University

Foundations of Business Intelligence: Databases and Information Management

An Approach for Facilating Knowledge Data Warehouse

14. Data Warehousing & Data Mining

Module compendium of the Master s degree course of Information Systems

Data W a Ware r house house and and OLAP Week 5 1

Data Search. Searching and Finding information in Unstructured and Structured Data Sources

CHAPTER SIX DATA. Business Intelligence The McGraw-Hill Companies, All Rights Reserved

Course Outline: Course: Implementing a Data Warehouse with Microsoft SQL Server 2012 Learning Method: Instructor-led Classroom Learning

A Review of Data Warehousing and Business Intelligence in different perspective

Data Warehousing: A Technology Review and Update Vernon Hoffner, Ph.D., CCP EntreSoft Resouces, Inc.

Data Mining and Business Intelligence CIT-6-DMB. Faculty of Business 2011/2012. Level 6

Big Data Architect Certification Self-Study Kit Bundle

COMM 437 DATABASE DESIGN AND ADMINISTRATION

DATA WAREHOUSING APPLICATIONS: AN ANALYTICAL TOOL FOR DECISION SUPPORT SYSTEM

A Survey of ETL Tools

LEARNING SOLUTIONS website milner.com/learning phone

Dynamic Data in terms of Data Mining Streams

DATA MINING TECHNOLOGY. Keywords: data mining, data warehouse, knowledge discovery, OLAP, OLAM.

Published by: PIONEER RESEARCH & DEVELOPMENT GROUP ( 28

Transcription:

Anwendersoftware a Datawarehousing and Analytics Data-Warehouse-, Data-Mining- und OLAP-Technologien Advanced Information Management Bernhard Mitschang, Holger Schwarz Universität Stuttgart Winter Term 2014/2015

Departments of Institute of Parallel and Distributed Systems (IPVS) Applications of Parallel and Distributed Systems Prof. B. Mitschang, Prof. M. Herschel Machine Learning and Robotics Prof. M. Toussaint Parallel Systems Prof. S. Simon Simulation of Large Systems Prof. M. Mehl, Jun.-Prof. D. Pflüger Distributed Systems Prof. K. Rothermel 2 Infrastructure Dipl.-Inf. M. Matthiesen http://www.ipvs.uni-stuttgart.de Universität Stuttgart

Applications of Parallel and Distributed Systems Data and Metadata Repository Technologies, Data Warehouse and Data Mining, Domain-specific query optimization and processing, Product Data Management, Data Integration Content and Semantics Focussed Semantic Search, Scalable Content Management Information Systems and Applications Database Middleware, Information Services, Generative Application Development, Model-driven Engineering, Technical Information Systems Data in the Cloud Federated Systems / Application Integration Metadata Management Content Management Business Intelligence / Business Processes Query Optimization 3 Universität Stuttgart

How to contact us Anwendersoftware a Lecture Bernhard Mitschang Office: 2.359 Tel.: 0711 685 88449 bernhard.mitschang@ipvs.uni-stuttgart.de Exercises and assignments Holger Schwarz Office: 2.361 Tel.: 0711 685 88244 holger.schwarz@ipvs.uni-stuttgart.de 4

Planned Schedule Anwendersoftware a Monday 9/29/14 Tuesday 9/30/14 Wednesday 10/1/14 Thursday 10/2/14 Tuesday 10/7/14 Wednesday 10/8/14 09:00 11:15 Chapter 1 Introduction Chapter 2 Data Warehouse Architecture Chapter 3 Design Process Conceptual Design Logical Design Chapter 4 Monitoring Extraction Transformation Load Tools Chapter 6 Data Mining Introduction Applications KDD Chapter 7 SQL & OLAP SQL & Mining Database Support Materialized Summary Data Derivability Break 12:00 14:15 Chapter 2 Data Marts Operational Data Store Meta Data Chapter 3 Extended Dimension Table Design Extended Fact Table Design Physical Design Chapter 5 OLAP Architecture Storage of Data Cubes Chapter 6 Assoc. Rules Clustering Classification Regression Tools and Trends Chapter Examples and Miscellaneous Wrap up Intro to Assignments Break 15:00 16:30 Intro SQL and ODPS Issues of data integration Data Warehouse Architecture Conceptual and Logical Data Warehouse Design Monitoring Storage of Data Cubes ETL Transformation Cleansing 15:00 17:15 Data Mining Classification Clustering Association Rules Lectures Exercises 5

Exercises and Assignments Anwendersoftware a Type Description Date Exercise Assignment Assignment Detailed discussion of major topics, case studies, examples etc. (all) Hands-on training for topics related to dbms (groups of 2-3 students) Hands-on training for ETL, OLAP and data mining (groups of 2-3 students) September 29 October 8 Introduction on October 8 Due: TBA Introduction on October 8 Due: TBA 6

Anwendersoftware a Teaching Materials General information: http://www.ipvs.uni-stuttgart.de/abteilungen/as/lehre/lehrveranstaltungen/vorlesungen/ws1415/dwdm/en Slides, exercises, assignments, Login to ILIAS: https://ilias3.uni-stuttgart.de/login.php Search and Join the course "Data Warehousing and Analytics" Repository -> Engineering -> Computer Science -> Lehrveranstaltungen WS 14/15 7

Anwendersoftware a Exams IMSE Exam: Friday, December 12 Informatik / Softwaretechnik / Infotech / Wirtschaftsinformatik / Register at your examination office Make an appointment for the oral exam Appointments for oral exams Annemarie Roesler Tel. 0711 685 88448 Annemarie.Roesler@ipvs.uni-stuttgart.de 8

Anwendersoftware a Books [BG04] A. Bauer, H. Günzel: Data Warehouse Systeme. 2. Aufl., dpunkt, 2004. [Len03] [KR+98] W. Lehner: Datenbanktechnologie für Data-Warehouse-Systeme. dpunkt, 2003. R. Kimball, L. Reeves, M. Ross, W. Thornthwaite: The Data Warehouse Lifecycle Toolkit. Wiley, 1998. [Inm05] W. H. Inmon: Building the Data Warehouse. 4th Edition, Wiley, 2005. [HK00] J. Han, M. Kamber: Data Mining Concepts and Techniques. Morgan Kaufmann, 2nd Edition, 2006. [JL+02] M. Jarke, M. Lenzerini, Y. Vassiliou, P. Vassiliadis: Fundamentals of Data Warehouses. Springer, 2002. [Kim96] R. Kimball: The Data Warehouse Toolkit. Wiley, 1996 [LN07] U. Leser, F. Naumann: Informationsintegration, dpunkt, 2007. [Wes01] P. Westerman: Data Warehousing. Morgan Kaufmann. 2001. 9

Anwendersoftware a Papers [Ber98] [CD97] [HLV00] [Zeh03] P. Bernstein: Repositories and Object Oriented Databases, SIGMOD Record 27(1):88-96, 1998. S. Chaudhuri, U. Dayal: An Overview of Data Warehousing and OLAP Technology, SIGMOD Record 26(1):65-74, 1997. B. Hüsemann, J. Lechtenbörger, G. Vossen: Conceptual Data Warehouse Design. Proc. of the Second International Workshop on Design and Management of Data Warehouses, Stockholm, 2000. T. Zeh: Data Warehousing als Organisationskonzept des Datenmanagements. In: Informatik Forschung und Entwicklung, Band 18, Heft 1, August 2003. 10