INF207 Business Data Analytics
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- INF207 Business Data Analytics
Unit Code
INF207
Level
Undergraduate
Campus
Brisbane | Sydney
Prerequisites
INF201, STA101
Credit Points
10
Overview
This Business Data Analytics exposes students to several types of business problems which are suitable for using data analytics. By using popular data mining tools and techniques used in the industry the students will understand how big data analytics works and the key role data insights have into business decision-making. Students will differentiate the key aspects of data analytics principles and tools in a business context whilst identifying the strengths and limitations of data analytics technologies such as statistics and machine learning and evaluate appropriate applications. Finally, they will propose a data analytics road map for use in a modern organisation which will automate data collection and mining and utilise techniques to discover previously hidden insights.
Associated Degrees
Bachelor of Business (Information Systems)
Bachelor of Business (Marketing)
Duration | AQF Level
One Semester | Level 7
Core or elective Subject
☐ core subject
☐ elective subject
☒ other (please specify below): Core for BBIS and elective for BBM
Study Modes
√ Face to face on site
√ Full-time
√ Part-time
Learning Outcomes
- Analyse the appropriate use of business data analytics for solving business problems
- Explain the key role data insights have into the business decision-making process
- Differentiate the key aspects of data analytics principles and tools in a business context
- Critically analyse the strengths and limitations of data analytics technologies such as statistics and machine learning
- Implement data analytics techniques on some supplied big data relating to a business problem
- Propose data analytics solutions for use in modern organisations which will automate data collection and mining and use techniques to discover previously hidden insights
Assessment
AIIHE uses a variety of assessment tools to guide and assess each student’s achievement of their learning outcomes. In this subject there will be in–class activities intended to support you to engage in and reflect on your learning journey and understanding of the subject. You will also undertake assessment tasks related to your skills development, your effective engagement in group work and delivery of collaborative outcomes, including a written report and an oral presentation.
Summary of Assessment
- Students must attempt all assessment tasks, and at least a mark of 50% in total, to pass this subject.
- Assessment in this subject is consistent with and informed by the AIIHE Assessment Policy and Procedure.
| Assessment Task | Due Date | Weighting |
|---|---|---|
| Assessment 1: In-class Self Reflection (ICSR) | 20% | |
| Assessment 2: Business Analytics using Excel (Individual) | 15% | |
| Assessment 3: Group Project (Group) | 30% | |
| Assessment 4: Practical Test (Individual) | 35% |
Learning Resources
AIIHE will update the topic coverage of the subject and the available relevant learning resources at the time of subject delivery. In the interim, AIIHE provides the following indicative list of relevant reference material. AIIHE also subscribes to eLearning Resources through the Canvas portal, and where relevant material is available, AIIHE will seek to source reference material from this system for staff and student access.
Prescribed text
- Camm, J. D., Cochran, J. J., Fry, M. J., & Ohlmann, J. W. (2023) Business Analytics (5th ed.). Cengage Learning.
Texts and References
- Loshin, D. (2014). Big Data Analytics: From Strategic Planning to Enterprise Integration with Tools, Techniques, NoSQL and Graph (1st Edition). Cengage.
- Foreman, J. (2014). Data Smart: Using Data Science to Transform Information into Insight. Wiley.
- Provost, F., & Fawcett, T. (2013). Data Science for Business: What You Need to Know about Data Mining and Data-Analytic Thinking (1st Edition). O’Reilly.
Recommended Reading
- Big Data Analytics Journal (https://www.inderscience.com/jhome.php?jcode=ijbda)
- Journal of Management Analytics (https://www.tandfonline.com/toc/rmga20/current)
- Journal of Management Information Systems (https://www.jmis-web.org/)
- Journal of Database Management International (https://www.igi-global.com/journal/journal-database-management-international/1078)