Big Data Analytics (CMPE543) Course Detail

Course Name Course Code Season Lecture Hours Application Hours Lab Hours Credit ECTS
Big Data Analytics CMPE543 3 0 0 3 5
Pre-requisite Course(s)
N/A
Course Language English
Course Type N/A
Course Level Ph.D.
Mode of Delivery Face To Face
Learning and Teaching Strategies Lecture.
Course Coordinator
Course Lecturer(s)
Course Assistants
Course Objectives The objective of this course is to present methods and technologies for sharing, visualizing, classifying, and analyzing big data.
Course Learning Outcomes The students who succeeded in this course;
  • Choose the right data format and service model to host and share big data.
  • Develop a noSQL-based web application.
  • Create queries by using Hadoop, Hive, and Shark.
  • Evaluate visualization strategies for exploring large datasets.
  • Build data processing pipelines by using MapReduce model and data transformation workflows
  • Analyze big data by using R
Course Content Infrastructure as a Service(IaaS), Hadoop framework, hive infrastrucure, data visualization, MapReduce model, NoSQL databases, large-scale data workflows, clustering, using R.

Weekly Subjects and Releated Preparation Studies

Week Subjects Preparation
1 Introduction Chapter 1 (Text Book)
2 Hosting and Sharing Big Data Chapter 2 (Text Book)
3 Non-relational databases Chapter 3 (Text Book)
4 Processing with Big Data Chapter 4 (Text Book)
5 Using Hadoop Chapter 5 (Text Book)
6 Building a Data Dashboard Chapter 6 (Text Book)
7 Visualization Big Data Chapter 7 (Text Book)
8 Map Reduce Model Chapter 8 (Text Book)
9 Map Reduce Model Chapter 8 (Text Book)
10 Data Transformation Workflows Chapter 9 (Text Book)
11 Data Classification with Mahout Chapter 10 (Text Book)
12 Statistical Analysis with R Chapter 11 (Text Book)
13 Building Analytics Workflows Chapter 12 (Text Book)
14 Building Analytics Workflows Chapter 12 (Text Book)
15 Review
16 Review

Sources

Course Book 1. Data Just Right: Introduction to Large-Scale Data & Analytics”, M. Manoochehri, Addison-Wesley, 2013
Other Sources 2. “Mining of Massive Datasets”, A. Rajaraman & J. D: Ullman, Cambridge University Press, 2011.
3. Apache Hadoop Project, available at http://hadoop.apache.org/

Evaluation System

Requirements Number Percentage of Grade
Attendance/Participation - -
Laboratory - -
Application - -
Field Work - -
Special Course Internship - -
Quizzes/Studio Critics - -
Homework Assignments - -
Presentation - -
Project 3 30
Report - -
Seminar - -
Midterms Exams/Midterms Jury 1 35
Final Exam/Final Jury 1 35
Toplam 5 100
Percentage of Semester Work 65
Percentage of Final Work 35
Total 100

Course Category

Core Courses X
Major Area Courses
Supportive Courses
Media and Managment Skills Courses
Transferable Skill Courses

The Relation Between Course Learning Competencies and Program Qualifications

# Program Qualifications / Competencies Level of Contribution
1 2 3 4 5
1 Ability to carry out advanced research activities, both individual and as a member of a team
2 Ability to evaluate research topics and comment with scientific reasoning
3 Ability to initiate and create new methodologies, implement them on novel research areas and topics
4 Ability to produce experimental and/or analytical data in systematic manner, discuss and evaluate data to lead scintific conclusions
5 Ability to apply scientific philosophy on analysis, modelling and design of engineering systems
6 Ability to synthesis available knowledge on his/her domain to initiate, to carry, complete and present novel research at international level
7 Contribute scientific and technological advancements on engineering domain of his/her interest area
8 Contribute industrial and scientific advancements to improve the society through research activities

ECTS/Workload Table

Activities Number Duration (Hours) Total Workload
Course Hours (Including Exam Week: 16 x Total Hours) 16 3 48
Laboratory
Application
Special Course Internship
Field Work
Study Hours Out of Class 16 2 32
Presentation/Seminar Prepration
Project
Report
Homework Assignments 3 5 15
Quizzes/Studio Critics
Prepration of Midterm Exams/Midterm Jury 1 10 10
Prepration of Final Exams/Final Jury 1 20 20
Total Workload 125