Course Syllabus Business Intelligence and CRM Technologies



Similar documents
COURSE PROFILE. Business Intelligence MIS531 Fall

Business Intelligence and Analytics SCH-MGMT 553 (New course number being proposed) Tu/Th 11:15 AM 12:30 PM in SOM Lab 20

Requirements Fulfilled This course is required for all students majoring in Information Technology in the College of Information Technology.

Ezgi Dinçerden. Marmara University, Istanbul, Turkey

Innovative Analysis of a CRM Database using Online Analytical Processing (OLAP) Technique in Value Chain Management Approach

Federico Rajola. Customer Relationship. Management in the. Financial Industry. Organizational Processes and. Technology Innovation.

RYERSON UNIVERSITY Ted Rogers School of Information Technology Management And G. Raymond Chang School of Continuing Education

Schneps, Leila; Colmez, Coralie. Math on Trial : How Numbers Get Used and Abused in the Courtroom. New York, NY, USA: Basic Books, p i.

Decision Support and Business Intelligence Systems. Chapter 1: Decision Support Systems and Business Intelligence

Implementing Data Models and Reports with Microsoft SQL Server

MIS636 AWS Data Warehousing and Business Intelligence Course Syllabus

Methodology Framework for Analysis and Design of Business Intelligence Systems

Hybrid Support Systems: a Business Intelligence Approach

IMPROVING THE QUALITY OF THE DECISION MAKING BY USING BUSINESS INTELLIGENCE SOLUTIONS

Class 2. Learning Objectives

Delivering Business Intelligence With Microsoft SQL Server 2005 or 2008 HDT922 Five Days

Enable Better and Timelier Decision-Making Using Real-Time Business Intelligence System

Chapter 6 - Enhancing Business Intelligence Using Information Systems

COURSE SYLLABUS. Enterprise Information Systems and Business Intelligence

STATE UNIVERSITY OF NEW YORK COLLEGE OF TECHNOLOGY CANTON, NEW YORK CITA/MINS 300. Management Information Systems

COMM 437 DATABASE DESIGN AND ADMINISTRATION

MIS630 Data and Knowledge Management Course Syllabus

Implementing Data Models and Reports with Microsoft SQL Server 20466C; 5 Days

BUSINESS INTELLIGENCE

MBA Program Dalhousie University School of Business Administration Faculty of Management

Content. Introduction to the course. Introduction 7

Microsoft Implementing Data Models and Reports with Microsoft SQL Server

Lecture 9 : Business Intelligence and Information Systems for Decision Making

Business Process Management Systems and Business Intelligence Systems as support of Knowledge Management

Lecture: Mon 13:30 14:50 Fri 9:00-10:20 ( LTH, Lift 27-28) Lab: Fri 12:00-12:50 (Rm. 4116)

University of Southern California MARSHALL SCHOOL OF BUSINESS Spring, 2004 Course Guidelines & Syllabus

Higher Education Management Dashboards

A HOLISTIC FRAMEWORK FOR KNOWLEDGE MANAGEMENT

THE ROLE OF BUSINESS INTELLIGENCE IN BUSINESS PERFORMANCE MANAGEMENT

What is Customer Relationship Management? Customer Relationship Management Analytics. Customer Life Cycle. Objectives of CRM. Three Types of CRM

City University of Hong Kong. Information on a Course offered by Department of Information Systems with effect from Semester B in 2013 / 2014

Part VIII: ecrm (Customer Relationship Management)

A Knowledge Management Framework Using Business Intelligence Solutions

OLAP Theory-English version

Management Accountants and IT Professionals providing Better Information = BI = Business Intelligence. Peter Simons peter.simons@cimaglobal.

THE INTELLIGENT BUSINESS INTELLIGENCE SOLUTIONS

Dashboards PRESENTED BY: Quaid Saifee Director, WIT Inc.

CHAPTER 12. Business Intelligence

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

DATA MINING TECHNIQUES SUPPORT TO KNOWLEGDE OF BUSINESS INTELLIGENT SYSTEM

Implementing Data Models and Reports with Microsoft SQL Server

INFO361-14S2 COURSE OUTLINE. Special Topic: on Business Intelligence Systems in Organisations. College of Business and Economics

Data Mining + Business Intelligence. Integration, Design and Implementation

DR. BABASAHEB AMBEDKAR MARATHWADA UNIVERSITY, AURANGABAD. PROGRAMME

Turban and Volonino. Enterprise Systems: Supply Chains, ERP, CRM & KM

SAP Predictive Analysis: Strategy, Value Proposition

LINCOLN UNIVERSITY DEPARTMENT OF BUSINESS AND ENTREPRENEURIAL STUDIES COURSE SYLLABUS

SAP Manufacturing Intelligence By John Kong 26 June 2015

Business Intelligence Solutions for Gaming and Hospitality

JEFFERSON COLLEGE COURSE SYLLABUS MGT220 WEB MARKETING. 3 Credit Hours. Prepared by Vickie Morgan February 10, 2013

Data Mining and Marketing Intelligence

tku.edu.tw/myday/ , 26 1

How To Manage Information Systems

Department of International Trade at Feng Chia University Master s Program Requirements Policy

Data Mining Solutions for the Business Environment

Data Warehousing and Data Mining in Business Applications

INFS5991 BUSINESS INTELLIGENCE METHODS. Course Outline Semester 1, 2015

MODULE SPECIFICATION

TABLE OF CONTENTS CHAPTER TITLE PAGE

OLAP. Business Intelligence OLAP definition & application Multidimensional data representation

Data Mining Techniques in CRM

Business Analytics and Data Visualization. Decision Support Systems Chattrakul Sombattheera

Performance Dashboards for Universities

Conceptual Integrated CRM GIS Framework

Customer Relationship Management

MD - Data Mining

IT6304 e-business Applications (Optional)

A Brief Tutorial on Database Queries, Data Mining, and OLAP

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

CRM: Retaining Your Customers: Preventing Your Competitors

269 Business Intelligence Technologies Data Mining Winter (See pages 8-9 for information about 469)

INTERACTIVE DECISION SUPPORT SYSTEM BASED ON ANALYSIS AND SYNTHESIS OF DATA - DATA WAREHOUSE

ByteMobile Insight. Subscriber-Centric Analytics for Mobile Operators

SAP Predictive Analysis: Strategy, Value Proposition

Syllabus CIS 3630: Management Information Systems Spring 2009

SW 393S1 & 360K - Introduction to Human Services Administration Spring 2002

Business Intelligence

Course Title: ITAP 4311: Database Management. Semester Credit Hours: 3 (3,0)

DEPARTMENT: ECE COURSE NUMBER: EDU 633 CREDIT HOURS: 3

Business Intelligence and Healthcare

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

Enhancing Decision Making

Transcription:

Course Syllabus Business Intelligence and CRM Technologies August December 2014 IX Semester Rolando Gonzales

I. General characteristics Name : Business Intelligence CRM Technologies Code : 06063 Requirement : Planeación Estratégica Semester : 2014 - II Credits : 03 Cycle : IX II. Summary This course is a theoretical and practical course and its main purpose is to develop the necessary competences to contend in the business world with the essential capacities to evaluate the information systems related to Business Intelligence (BI) in the enterprise, in order to have an efficient system of BI, using all the data available, transform it to information and knowledge and in this way take the best decisions for the enterprise. The course analyzes the all kinds of information, and the way by which it is received by the managers and executives, aggregating it in dashboards and scorecards. It is revised the definition of performance indicators, quality of data, advanced systems of report, multidimensional analysis, GIS, data mining, market segmentation, promotional efforts, and the ethical use of personal information and the associated risks. III. Outcomes of the learning process After finishing the course the student will be able to know, describe and comprehend all the concepts related with Business Intelligence, how to manage the internal and external information in order to take the best decisions for the company for the purpose of giving the best service to their customers, and obtain a good profitability. Additionally, it will be revised the best data bases for BI, taking special consideration for the Data Warehouse. IV. Specificlearning objetives Describe and comprehend what is Business Intelligence (BI). Describe and comprehend what is Data Warehouse and Data Base Administration Describe advanced Business Intelligence, Business Analytics and Data Visualization Describe and explain what is Data Mining and its main applications in the business world Explain Business Performance Management, Scorecards and Dashboards Have knowledge of complementary subjects of Business Intelligence: how to use it as a main tool of competence, how to measure BI and special studies about BI Apply specific techniques of Data Mining for Marketing and CRM (Customer Relationship Management) Apply Data Mining Tools to classify customers and segment the market Know ethical aspects of Business Intelligence and Information Systems 2

V. Methodology The course encourage the active involvement of the student, and in this way the learning sessions will combine the teacher-provider presentations, with the analysis of the reading material, discussion of magazine articles, case study and presentations, and team working, beside others, in order to reinforce the learning process and develop the main competences necessary for develop and grow in the business world, as are the analytical capabilities, critic synthesis, problems solutions, and creative propositions, to manage the information for the purpose of taking the best decisions for the enterprise. The teacher takes the position of educator and provider, and will motivate the group of students to discuss and interchange of ideas and knowledge of the specific aspect of the course that are studied. Two text books are used, and its reading will have to be completed during the academic semester, besides some complementary reading material that will be given to the students. It is encourage that the students study and work each topic through individual and group exercises, working in the laboratory and doing critical analyses. VI. Evaluation The evaluation system is permanent and complete. The final grade of the course is obtained averaging the permanent evaluation (50%), the half semester examination (HSE) (25%) and the final semester examination (FSE) (25%). The permanent evaluation is the weighted average of the different aspect of the whole process of learning: case analysis, qualified control of practices, critical analysis, research work, student participation in class and student attendance. The specific average of the permanent evaluation is obtained in the next way: Kind of Evaluation Exercises Short case analysis Controls PERMANENT EVALUATION (PE) (50%) Description Several exercises 3 short cases 4 controls One is eliminated Weight % 10 10 10 10 10 Cases 2 Cases 30 Research Work Final integrated work 20 The averge grade (AG) is obtained in the next way: AG = (0,25 x HSE) + (0,50 x PE) + (0,25 x FSE) 3

VII. Specific subjects of the course by sessions LEARNING WEEK SUBJECTS ACTIVITIES / EVALUATION 1st August 21-27 I.- GENERAL CHARACTERISTICS OF BUSINESS INTELLIGENCE (BI) 1.1 Origins of Business Intelligence (BI). 1.2 Main characteristics of BI. 1.3 Structure and components of BI. 1.4 Business Intelligence now and in the future. General comments of the course and its form of evaluation 2nd August 28 September 03 &Sharda. Chapter S, p. 187-205 &Wetherbe. Chapter 11, p. 427-473 II.- DATA WAREHOUSE AND DATA BASE MANAGEMENT 2.1 Data Warehouse, definitions and concepts. 2.2 The Data Base Administration. 2.3 Data Warehouse architectures. 2.4 La Data Warehouse in real time. 3rd September 04-10 4th September 11-17 5th September 18-24 6th September 25 to October 01 &Sharda. Chapter 5, p. 206-252 &Wetherbe. Chapter 3, p. 78-117 III.- BUSINESS ANALYTICS AND DATA VISUALIZATION 3.1 The Business Analytics Field. 3.2 Online Analytical Processing (OLAP). 3.3 Reports and Queries. 3.4 Multidimensionality. &Sharda. Chapter 6, p. 253-301 IV.- BUSINESS ANALYTICS AND DATA VISUALIZATION 4.1 Advanced Business Analytics. 4.2 Geographic Information Systems (GIS). 4.3 Implementation of BA and success factors. 4.4 Data Visualization. &Sharda. Chapter 6, p. 253-301 V.- DATA MINING (DM) 5.1 Data Mining definition, objetives and benefits. 5.2 Methods and applications of DM. 5.3 Text and Web DM. &Sharda. Chapter 7, p. 302-342 VI.- BUSINESS PERFORMANCE MANAGEMENT, SCORECARDS AND DASHBOARDS 6.1 Business Performance Management Overview. 6.2 Strategize: Where Do we want to go?. 6.3 Plan: How we get there?. 6.4 Act and adjust: What Do we need to do differently?. Control No 1 Short Case No 1 Control No 2 Case No 1 presentation &Sharda. Chapter 9, p. 383-430 4

7th - 8th October 2-11 HALF SEMESTER EXAMINATION 8th 9th October 13-18 9th October 20-22 HALF SEMESTER EXAMINATION IX.- BUSINESS INTELLIGENCE AS A MAIN TOOL OF COMPETENCE 9.1 The nature of Analytical Competence. 9.2 Define what makes an analytical competitor. 9.3 Business Analytics Business Performance. 9.4 The future of Analytical Competence. Competing on Analytics- Davenport & Harris. Chapter 1,2 y 3, p. 3-56 10th October 23-29 11th October 30 to November 05 X.- KNOWLEDGE MANAGEMENT SYSTEMS (KMS) 10.1 Introduction to Knowledge Management. 10.2 Organizational Learning and Memory. 10.3 Knowledge Management Activities. 10.4 Approaches to Knowledge Management. &Sharda. Chapter 11, p. 478-530 &Wetherbe. Chapter 10, p. 388-426 XI.- KNOWLEDGE MANAGEMENT SYSTEMS (KMS) 11.1 Information Technology in Knowledge Management. 11.2 Knowledge Management Systems Implementation. 11.3 Roles of People in Knowledge Management. 11.4 Ensuring Success of KM Efforts. Short Case No 2 Control No 3 &Sharda. Chapter 11, p. 478-530 &Wetherbe. Chapter 10, p. 388-426 12 th November 06-12 XII- DATA MINING APPLICATIOS IN MARKETING AND CRM (CUSTOMER RELATIONSHIP MANAGEMENT) 12.1 Prospecting. 12.2 Data Mining to Choose the Right Place to Advertise. 12.3 Data Mining to improve Direct Marketing Campaigns. 12.4 Using current customers to learn about prospects. Data Mining Techniques. Berry &Linoff. Chapter 4, p. 87-122 Short Case No 3 Control No 4 13th November 13-19 14th November 20-26 XIII- DATA MINING APPLICATIOS IN MARKETING AND CRM (CUSTOMER RELATIONSHIP MANAGEMENT) 13.1 Data Mining for Customer Relationship Management. 13.2 Retention and Churn. Data Mining Techniques. Berry &Linoff. Chapter 4, p. 87-122 XIV- NEURONAL NETWORKS AND DECISION TREES 14.1 Neuronal networks (NN) and their different kinds. 14.2 Business applications of NN. 14.3 Decision trees and its use in classification problems. &Sharda. Chapter 8, p. 343-382 Data MiningTechniques. Berry &Linoff. Chapter 6, p. 165-210 Case No 2 presentation Final work delivery 5

15th November 27 to December 03 FINAL SEMESTER EXAMINATION 16th December 05-12 FINAL SEMESTER EXAMINATION VIII. References Text Books 1. Berry, M. y Linoff, G. (2004). Data Mining Techniques. For Marketing, Sales and Customer Relationship Management. Indianapolis: Wiley Publishing Inc. 2. Sharda, R., Delen, D. y Turban, E. (2014). Business Intelligence, A Managerial Perspective on Analytics. Boston: Pearson. Additional books 1. Davenport, T. y Harris, J. (2007). Competing on Analytics. The New Science of Winning. Boston: Harvard Business School Press. 2. Laudon, K. y Laudon, J. (2012). Management Information Systems. Boston: Prentice Hall. 3. Turban, E., y Volonino, L. (2011). Information Technology for Management, Improving Strategic and Operational Performance. United States of America: John Wiley & Sons, Inc. IX. Professor Rolando Gonzales López rgonzales@esan.edu.pe 6