Courses & Units

Marketing Insights into Big Data BMA708


Marketing decision-making is growing in importance in the business world. More than ever before, organisations are placing greater emphasis on the marketers' ability to evaluate, anticipate, and illustrate the contribution of marketing to organisational performance. Increasingly, senior managers are requiring greater rigour and accountability for investments in marketing activities. Within marketing, there is a realisation that practitioners need to be able to justify their strategies, tactics and the associated outcomes, using relevant metrics. Marketing analytics seeks to build a link between the marketing activity of the organisation and the outcomes that result from it. The focus of this unit is on developing, analysing, and evaluating appropriate models to measure the performance of marketing activities. It will develop students' knowledge of key strategic and technical decision-making models and metrics that form the foundation of marketing analytics. Students will gain knowledge and skills to predict the outcome of marketing plans in order to boost return on marketing investment.


Unit name Marketing Insights into Big Data
Unit code BMA708
Credit points 12.5
College/School College of Business & Economics
Tasmanian School of Business and Economics
Discipline Marketing
Coordinator Doctor Denni Arli
Delivered By University of Tasmania


Location Study period Attendance options Available to
Hobart Semester 1 On-Campus International Domestic
Hobart Semester 2 On-Campus International Domestic
Online Semester 1 Off-Campus International Domestic
Online Semester 2 Off-Campus International Domestic


International students
Domestic students

Please check that your computer meets the minimum System Requirements if you are attending via Distance/Off-Campus.

Units are offered in attending mode unless otherwise indicated (that is attendance is required at the campus identified). A unit identified as offered by distance, that is there is no requirement for attendance, is identified with a nominal enrolment campus. A unit offered to both attending students and by distance from the same campus is identified as having both modes of study.

Key Dates

Study Period Start date Census date WW date End date
Semester 1 20/2/2023 21/3/2023 10/4/2023 28/5/2023
Semester 2 10/7/2023 8/8/2023 28/8/2023 15/10/2023

* The Final WW Date is the final date from which you can withdraw from the unit without academic penalty, however you will still incur a financial liability (refer to How do I withdraw from a unit? for more information).

Unit census dates currently displaying for 2023 are indicative and subject to change. Finalised census dates for 2023 will be available from the 1st October 2022. Note census date cutoff is 11.59pm AEST (AEDT during October to March).

About Census Dates

Learning Outcomes

  • Critically examine different methods of data analysis and presentation for social networks, complex systems and relational links.
  • Apply intermediate skills in spreadsheets and data visualisation software to identify trends and relationships among factors in industry and society.
  • Analyse government, industry and social media data to identify relationships and trends.
  • Critically evaluate conclusions drawn from different data and analytic tools.
  • Create interactive models using appropriate software and effectively communicate results and findings to aid decision-makers in understanding interrelationships and trends.

Fee Information

Field of Education Commencing Student Contribution 1,3 Grandfathered Student Contribution 1,3 Approved Pathway Course Student Contribution 2,3 Domestic Full Fee 4
080505 $1,892.00 $1,482.00 not applicable $2,837.00

1 Please refer to more information on student contribution amounts.
2 Please refer to more information on eligibility and Approved Pathway courses.
3 Please refer to more information on eligibility for HECS-HELP.
4 Please refer to more information on eligibility for FEE-HELP.

If you have any questions in relation to the fees, please contact UConnect or more information is available on StudyAssist.

Please note: international students should refer to What is an indicative Fee? to get an indicative course cost.


Teaching Pattern

Introduction Lecture: 1hr, once in a term 

Weekly recorded lecture: 1hr, 13 weeks 

Workshop: 3hrs, 4 times in a semester 


AssessmentBig Data Reporting using Correlation Analysis (30%)|Data Visualisation (35%)|Descriptive Statistics Analysis. (35%)
TimetableView the lecture timetable | View the full unit timetable



Required readings will be listed in the unit outline prior to the start of classes.

LinksBooktopia textbook finder

The University reserves the right to amend or remove courses and unit availabilities, as appropriate.