Lecture, seminar and hands-on exercises in the lab
- Introduction to Big Data Analytics
- Data Analytics Lifecycle
- Data Mining Process
- Review Basic Data Analytics Methods and planning data analytic steps
- Business Intelligence Trends and Big Data Trends
- Make use of MS Excel pivot tables for analytics
- Exploring the use of one of the data analytics tools – Tableau among many out there
- Advanced Analytics – Technology and Tools
- Database Analytics using Tableau
- Decision Analysis through designing visualizations
At the end of this course, the successful student will be able to:
- Explain foundations of Big Data Analytics & Data Mining Process
- Describe modern approach to Business Intelligence / Data Analytics
- Analyse Business Intelligence Trends & Trends in Big Data
- Utilize effective ways to analyze data
- Develop data analytics plan
- Use data analytic tools such as Tableau
- Explore Advanced Analytics – Technology and Tools.
- Explain philosophies, tools and techniques of decision analysis in terms of data management and data visualization.
Assignments/Project: | 10% - 25% |
Quizzes (Minimum 2) | 10% - 20% |
Midterm exam | 20% - 30% |
Final Exam * | 30% - 40% |
Total | 100% |
Some of the assessments may involve group work.
* Practical hands-on computer exam
In order to pass the course, students must, in addition to receiving an overall course grade of 50%, also achieve a grade of at least 50% on the combined weighted examination components (including quizzes, tests, exams).
Students may conduct research as part of their coursework in this class. Instructors for the course are responsible for ensuring that student research projects comply with College policies on ethical conduct for research involving humans, which can require obtaining Informed Consent from participants and getting the approval of the ÁñÁ«ÊÓƵ Research Ethics Board prior to conducting the research.
No Text Required, Notes to be provided by Instructor
References:
EMC Education Services. Data Science & Big Data Analytics - Latest Ed., Wiley
Tableau documentation / guides.
Courses listed here are equivalent to this course and cannot be taken for further credit:
- No equivalency courses