Lecture/Seminar: 2 hours lecture & 2 hours seminar
OR
Hybrid: Alternating weeks of
- 2 hours lecture and 2 hours seminar
- 4 hours online
In-class lectures in a computer lab and/or on-line
1. Use the DuPont Model and ratio analysis to analyze financial statements
- Read financial statements properly
- Adjust financial statements
- Analyze financial statements
- Communicate results
2. Apply the Data Analytics Process
- Identify a quesion
- Manage data
- Perform test plan
- Address and refine results
- Communicate insights
- Track outcomes
3. Financial Modeling
- Design and create an interactive financial model using an appropriate data analytics tool
- Design the layout of the model clearly and logically
- Create clearly defined inputs and assumption sections
- Build powerful scenarios
- Incorporate all related schedules
4. Design and create a Dashboard using an appropriate data analytics tool
- Evaluate existing data
- Define and calculate Key Performance Indicators (KPI)
- Design charts and graphs for KPI
- Present dashboard
Upon completion of this course, the successful sturdent will be able to:
- Analyze financial statements using data analytics
- Use information from automated data capture to form and analyze financial statements
- Access, examine and integrate different data files
- Analyze data patterns, identify discrepancies and extract unusual items
- Examine financial data for existence of misrepresentations in areas such as matched or unmatched records, duplication and limit violation
- Design and construct financial models
- Create dashboards
- Apply the data analytics process to communucate insights and track outcomes
Assessment will be based on course objectives and will be carried out in accordance with the Douglas College Evaluation Policy.
Projects: A minimum of two separate group data analytics projects 40% - 50%
A minimum of two separate individual data analytics projects 30%
(a mininum of 10% should be assigned to each project,
no project should be assigned more than 40%)
Final Exam 20%-30%
To pass this course, students must obtain a minimum of 50% on invigilated assessments, with the 50% calculated on a weighted average basis.
Invigilated assessments include, in-class quizzes, in-class tests, midterm exam(s) and the final exam.
Data Analytics for Accounting, Richardson, Teeter, Terrall, latest international edition
and/or
other textbook(s) and/or material approved by the department
(ACCT 1210 OR ACCT 1235 OR ACCT 3008) and (CSIS 1190 or CSIS 2200)
Or currently active in
- PDD Accounting
- PDD Data Analytics
Or (ACCT 1210 OR ACCT 1235) and currently active in
- PBD Accounting and Finance
- PDD Accounting Studies
- PBD Accounting
Or permission of the instructor
A minimum grade of C is required in all courses.