Fundamentals of Data Analytics

Curriculum Guideline

Effective Date:
Course
Discontinued
No
Course Code
CSIS 3360
Descriptive
Fundamentals of Data Analytics
Department
Computing Studies & Information Systems
Faculty
Commerce & Business Administration
Credits
3.00
Start Date
End Term
201820
PLAR
No
Semester Length
15
Max Class Size
35
Contact Hours
Lecture: 2 hours per week Seminar: 2 hours per week Total: 4 hours per week
Method(s) Of Instruction
Lecture
Seminar
Learning Activities

Lecture, seminar and hands-on exercises in the lab

Course Description
In this course, students will gain the basic understanding of the emerging Data Analytics field. The students will be required to work with real-world examples using current computing tools. Integral to the course is a group project where students will complete a variety of tasks including: requirement elicitation; developing hypothesis; data exploration; dimensional analysis; identifying metrics; and visual presentation of results.
Course Content
  1. Introduction to Big Data Analytics
  2. Data Analytics Lifecycle
  3. Data Mining Process
  4. Review Basic Data Analytics Methods and planning data analytic steps
  5. Business Intelligence Trends and Big Data Trends
  6. Make use of MS Excel pivot tables for analytics
  7. Exploring the use of one of the data analytics tools – Tableau among many out there
  8. Advanced Analytics – Technology and Tools
  9. Database Analytics using Tableau
  10. Decision Analysis through designing visualizations
Learning Outcomes
  1. Explain foundations of Big Data Analytics & Data Mining Process
  2. Describe modern approach to Business Intelligence / Data Analytics
  3. Analyse Business Intelligence Trends & Trends in Big Data
  4. Utilize effective ways to analyze data
  5. Develop data analytics plan
  6. Use data analytic tools such as Tableau
  7. Explore Advanced Analytics – Technology and Tools.
  8. Explain philosophies, tools and techniques of decision analysis in terms of data management and data visualization.
Means of Assessment

Class Participation

0% - 10%

Quizzes (Min 2)

10% - 15%

Assignments and Term Project

30% - 40%

Midterm Examination

20% - 25%

Final Examination

25% - 30%

Total

100%
Textbook Materials

No Text Required, Notes to be provided by Instructor

References:         

EMC Education Services.  Data Science & Big Data Analytics - Latest Ed., Wiley

Tableau documentation / guides.

Prerequisites

CSIS 2200 AND (BUSN 2429 or MATH 1160)

(Note: CSIS 2300 is recommended)

Students are expected to be comfortable using MS Excel. For those needing upgrading, CSIS 1190 is recommended.