We got your back! We are coming back with more features and improvements. Read more here.

BC3409 AI IN ACCOUNTING & FINANCE

This is an introductory course designed for business or accountancy or Finance undergraduate students who are interested to learn how to manage data, conduct business analytics programmatically, create AI model to automate business processes and create predictive model to increase profitability or return. It is oriented to enhance their technical skillset. The aim of this course is to provide a broad understanding on how to manage data, the process of preparing data for analysis, basics of analytics, using AI to automate financial analysis process and generate accounting reports. This course will equip you with the ability to write customized solutions to make informed business decisions, integrate statistical libraries for data analysis, create AI models to automate accounting and financial process. This module will provide you with individual hands-on practices to hone your coding skills and opportunities to develop coding solutions in a team. We utilize R and Python language as the medium of learning because it is one of the most in-demand coding language and its user-friendly syntax is well suited for the beginner level. You will utilise modern development tools to turn information into insights including Keras' Deep Learning model, Google Brain TensorFlow, Hadoop, Spark and Cloud.

Academic Units4
Exam ScheduleNot Applicable
Grade TypeLetter Graded
Department MaintainingBUS
Prerequisites

BC2406

Mutually Exclusive

BC3415, BF3222, BF3223, SC4090

Not Available to All Programme(Admyr 2021-onwards)

Prerequisites Tree

BC3409requiresBC2406

Indexes

IndexTypeGroupDayTimeVenueRemark

Course Schedule

0930

1030

1130

1230

1330

1430

1530

1630

1730

MON
TUE

BC3409

00620

SEM | S4-SR5

BC3409

00621

SEM | S4-SR4

WED

BC3409

00622

SEM | S4-SR1

THU

BC3409

00623

SEM | ABS-SR7

FRI
SAT

Reviews & Discussion

We would encourage you to review with the following template.

Review Template

AY Taken: ...

Assessment (Optional): ...

Topics (Optional): ...

Lecturer (Optional): ...

TA (Optional): ...

Review: ...

Final Grade (Optional): ...


© 2025 NTUMODS Dev Team. All rights reserved