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Course Description

CourseCodeSemesterT+P (Hour)CreditECTS
BUSINESS INTELLIGANCE AND STRATEGY-Spring Semester3+037
Course Program
Prerequisites Courses
Recommended Elective Courses
Language of CourseTurkish
Course LevelThird Cycle (Doctorate Degree)
Course TypeElective
Course CoordinatorProf.Dr. Gökhan SİLAHTAROĞLU
Name of Lecturer(s)Prof.Dr. Gökhan SİLAHTAROĞLU
Assistant(s)
AimThe aim of this course is to provides a broad category of practices and technologies for accessing, collecting, storing, analyzing, sharing and accessing data so that students can make better managerial decisions.
Course ContentThis course contains; Business Intelligence an Introduction,Business Intelligence Essentials:,Business Intelligence Types,Architecting the Data,Introduction to Data Mining:,
Data Mining Techniques,Introduction to Data Warehousing,Different Ways of Data Warehousing,Knowledge Management,Business Intelligence Life Cycle,Business Intelligence User Model,Business Intelligence Issues and Challenges,Business Intelligence Strategy and Road Map,Implementing Business Intelligence.
Dersin Öğrenme KazanımlarıTeaching MethodsAssessment Methods
1. Will be able to explain the concept and history of business intelligence.
1.1. Knows the concept of business intelligence.
1.2. Business intelligence defines the value chain.
2. will be able to explain the capabilities of business intelligence at the basic level.
2.1. knows the role of business intelligence in businesses.
2.2. interprets the advantages of business intelligence.
3. will be able to explain the types of business intelligence.
4. Understand the basics of data architecture.
4.1. Knows the data types.
4.2. knows data preprocessing operations.
4.3. Knows noise data and data cleaning
5. will be able to explain the definition and necessity of data mining.
6. will be able to explain data mining techniques.
6.1. Knows the machine learning.
6.2. Knows the structure of classification and decision trees.
6.3. knows clustering analysis.
7. will be able to define the data warehousing and its components.
7.1. knows the advantages and disadvantages of data warehousing.
7.2. Knows OLAP concept.
7.3. Knows OLAP Data Modeling and tools.
8. will be able to explain the data warehousing.
8.1. Knows the B2B and B2C business intelligence models.
Teaching Methods:
Assessment Methods:

Course Outline

OrderSubjectsPreliminary Work
1Business Intelligence an IntroductionThe chapter related to the book will be read.
2Business Intelligence Essentials:
3Business Intelligence Types
4Architecting the Data
5Introduction to Data Mining:Related chapter in the course notes should be read.
6
Data Mining Techniques
Related chapter in the course notes should be read.
7Introduction to Data WarehousingRelated chapter in the course notes should be read.
8Different Ways of Data Warehousing
9Knowledge Management
10Business Intelligence Life Cycle
11Business Intelligence User Model
12Business Intelligence Issues and Challenges
13Business Intelligence Strategy and Road Map
14Implementing Business Intelligence
Resources
Business Intelligence Guidebook: From Data Integration to Analytics 1st Edition by Rick Sherman

Course Contribution to Program Qualifications

Course Contribution to Program Qualifications
NoProgram QualificationContribution Level
12345
1
Defines the theoretical issues in the field of management.
2
Describes the necessary mathematical and statistical methods in the field of management.
3
Uses at least one computer program in the field of management.
4
Gains the necessary research skills to conduct academic studies.
5
Student has the ability of time management.
6
Adopts the principles of scientific ethics and scientific responsibility.
7
Uses and analyses basic facts and data in various disciplines (economics, finance, sociology, law, business) in order to conduct interdisciplinary studies.
8
Uses theoretical and practical knowledge in the field of management.
9
To be able to produce or interpret an original work by making at least one scientific study related to the field and expanding the boundaries of knowledge in the field.

Assessment Methods

Contribution LevelAbsolute Evaluation
Rate of Midterm Exam to Success 50
Rate of Final Exam to Success 50
Total 100
ECTS / Workload Table
ActivitiesNumber ofDuration(Hour)Total Workload(Hour)
Course Hours14342
Guided Problem Solving1410140
Resolution of Homework Problems and Submission as a Report21632
Term Project13030
Presentation of Project / Seminar000
Quiz166
Midterm Exam11818
General Exam13030
Performance Task, Maintenance Plan000
Total Workload(Hour)298
Dersin AKTS Kredisi = Toplam İş Yükü (Saat)/30*=(298/30)10
ECTS of the course: 30 hours of work is counted as 1 ECTS credit.

Detail Informations of the Course

Course Description

CourseCodeSemesterT+P (Hour)CreditECTS
BUSINESS INTELLIGANCE AND STRATEGY-Spring Semester3+037
Course Program
Prerequisites Courses
Recommended Elective Courses
Language of CourseTurkish
Course LevelThird Cycle (Doctorate Degree)
Course TypeElective
Course CoordinatorProf.Dr. Gökhan SİLAHTAROĞLU
Name of Lecturer(s)Prof.Dr. Gökhan SİLAHTAROĞLU
Assistant(s)
AimThe aim of this course is to provides a broad category of practices and technologies for accessing, collecting, storing, analyzing, sharing and accessing data so that students can make better managerial decisions.
Course ContentThis course contains; Business Intelligence an Introduction,Business Intelligence Essentials:,Business Intelligence Types,Architecting the Data,Introduction to Data Mining:,
Data Mining Techniques,Introduction to Data Warehousing,Different Ways of Data Warehousing,Knowledge Management,Business Intelligence Life Cycle,Business Intelligence User Model,Business Intelligence Issues and Challenges,Business Intelligence Strategy and Road Map,Implementing Business Intelligence.
Dersin Öğrenme KazanımlarıTeaching MethodsAssessment Methods
1. Will be able to explain the concept and history of business intelligence.
1.1. Knows the concept of business intelligence.
1.2. Business intelligence defines the value chain.
2. will be able to explain the capabilities of business intelligence at the basic level.
2.1. knows the role of business intelligence in businesses.
2.2. interprets the advantages of business intelligence.
3. will be able to explain the types of business intelligence.
4. Understand the basics of data architecture.
4.1. Knows the data types.
4.2. knows data preprocessing operations.
4.3. Knows noise data and data cleaning
5. will be able to explain the definition and necessity of data mining.
6. will be able to explain data mining techniques.
6.1. Knows the machine learning.
6.2. Knows the structure of classification and decision trees.
6.3. knows clustering analysis.
7. will be able to define the data warehousing and its components.
7.1. knows the advantages and disadvantages of data warehousing.
7.2. Knows OLAP concept.
7.3. Knows OLAP Data Modeling and tools.
8. will be able to explain the data warehousing.
8.1. Knows the B2B and B2C business intelligence models.
Teaching Methods:
Assessment Methods:

Course Outline

OrderSubjectsPreliminary Work
1Business Intelligence an IntroductionThe chapter related to the book will be read.
2Business Intelligence Essentials:
3Business Intelligence Types
4Architecting the Data
5Introduction to Data Mining:Related chapter in the course notes should be read.
6
Data Mining Techniques
Related chapter in the course notes should be read.
7Introduction to Data WarehousingRelated chapter in the course notes should be read.
8Different Ways of Data Warehousing
9Knowledge Management
10Business Intelligence Life Cycle
11Business Intelligence User Model
12Business Intelligence Issues and Challenges
13Business Intelligence Strategy and Road Map
14Implementing Business Intelligence
Resources
Business Intelligence Guidebook: From Data Integration to Analytics 1st Edition by Rick Sherman

Course Contribution to Program Qualifications

Course Contribution to Program Qualifications
NoProgram QualificationContribution Level
12345
1
Defines the theoretical issues in the field of management.
2
Describes the necessary mathematical and statistical methods in the field of management.
3
Uses at least one computer program in the field of management.
4
Gains the necessary research skills to conduct academic studies.
5
Student has the ability of time management.
6
Adopts the principles of scientific ethics and scientific responsibility.
7
Uses and analyses basic facts and data in various disciplines (economics, finance, sociology, law, business) in order to conduct interdisciplinary studies.
8
Uses theoretical and practical knowledge in the field of management.
9
To be able to produce or interpret an original work by making at least one scientific study related to the field and expanding the boundaries of knowledge in the field.

Assessment Methods

Contribution LevelAbsolute Evaluation
Rate of Midterm Exam to Success 50
Rate of Final Exam to Success 50
Total 100

Numerical Data

Student Success

Ekleme Tarihi: 04/01/2024 - 17:11Son Güncelleme Tarihi: 04/01/2024 - 17:11