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Overview

This course is concerned with developing students' analytical knowledge and skills in using data to solve problems in accounting.  After doing this course, students should have the ability to: (1) ask the right question; (2) extract, transform and load relevant data; (3) apply appropriate data analytic techniques; and (4) interpret … For more content click the Read More button below. The course gives students the opportunity to understand the importance of data and analytics to accounting and business management environments. Students complete case based problems throughout the course that require hands-on use of analytics tools. Students learn how data analytics can add value to business by providing powerful new insights to inform business decisions. Students learn to identify, interpret and use different forms of data to determine what is wrong and why it is so (technical accounting skills) as well how they would digitally communicate derived insights to stakeholders.  Data and analytics are transforming business and have major implications for the role of graduate accountants in business. Increasingly, accountants are competing with data analysts and scientists. However, accountants are still the preferred trusted business advisors given their historic role in preparing financial information. This course is designed to give students a much sought after skill set which will equip them to add value to organizations in data driven business environments. NOTE: This course was previously identified as ACCT2672.Students who have completed ACCT2672 cannot enrol in ACCT3672. .

Conditions for Enrolment

Pre-requisite: ACCT1501 AND 65+ WAM or
COMM1140 AND 65+ WAM

Additional Enrolment Constraints

This course was previously identified as ACCT2672. Students who have completed ACCT2672 cannot enrol in ACCT3672 .

Delivery

In-person - Standard (usually weekly or fortnightly)

Fees

Pre-2019 Handbook Editions

Access past handbook editions (2018 and prior)