Unit rationale, description and aim

Data is deemed as the world’s ‘new oil’ while data science is a new inter-disciplinary science of data that employs scientific methods, algorithms, tools and systems for uncovering insights, knowledge and value from massive data generated in different domains. Python, a general-purpose programming language, has gradually become the ‘engine’ of data and data science. In particular, many data scientists use Python because it provides a wealth of data science tools and libraries.

This unit will cover fundamental elements of Python programming language and its comprehensive use in the context of data science. This includes Python language basics, data structures, functions, files, tools and various Python data science libraries for data processing, analysis and visualisation. Data ethics and elementary statistics and probability in data science will also be introduced.

The aim of the unit is for students to learn how Python can be used for building data science solutions.

2026 10

Campus offering

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  • Term Mode
  • Semester 1Campus Attendance
  • Semester 2Campus Attendance

Prerequisites

Nil

Incompatible

ITED102 Python Fundamentals for Data Science

Learning outcomes

To successfully complete this unit you will be able to demonstrate you have achieved the learning outcomes (LO) detailed in the below table.

Each outcome is informed by a number of graduate capabilities (GC) to ensure your work in this, and every unit, is part of a larger goal of graduating from ACU with the attributes of insight, empathy, imagination and impact.

Explore the graduate capabilities.

Articulate Python fundamental programming language...

Learning Outcome 01

Articulate Python fundamental programming language and data science concepts and tools
Relevant Graduate Capabilities: GC1, GC10

Apply common Python data science libraries and too...

Learning Outcome 02

Apply common Python data science libraries and tools for data collection, cleaning, and wrangling
Relevant Graduate Capabilities: GC2, GC3

Experiment with Python data science libraries and ...

Learning Outcome 03

Experiment with Python data science libraries and tools to solve real-world data science problems and reflect on how the skills can be applied in Information Technology (IT) job market
Relevant Graduate Capabilities: GC2, GC8

Examine data science ethical issues as they impact...

Learning Outcome 04

Examine data science ethical issues as they impact on human dignity and privacy
Relevant Graduate Capabilities: GC2, GC6

Content

Topics will include:

  • Data science and Python introduction
  • Data science environment setup:Jupyter notebooks
  • Python and data science concepts and preliminaries
  • Python ecosystem for data science
  • Python language and tool basics
  • Python data structures, functions, objects and files
  • Python data science libraries NumPy and Pandas
  • Python data plotting and visualisation library Matplotlib
  • Data preparation with Python
  • Data wrangling with Python
  • Future Careers in IT
  • Data analysis examples
  • Data ethics and potential adverse impacts

Assessment strategy and rationale

A range of assessment procedures will be used to meet the unit learning outcomes and develop graduate attributes consistent with University assessment requirements. The first assessment consists of small to medium sized Python setup and programming tasks. The purpose is to assess students’ fundamental Python programming and data science skills for problem solving. The second assessment consists of data preparation tasks using key Python data science ecosystem/libraries. The purpose is to assess students’ use of Python data science libraries NumPy and Pandas and other related tools for collecting, cleaning and wrangling various types of data. The final assessment is a more comprehensive assignment involving data processing, analysis and visualisation. The purpose is to assess students’ Python programming and data science techniques from data processing to data visualisation on real-world datasets with consideration of data ethics. There are fortnightly lab sessions associated with the assessments including assessable lab participation/engagement.

The assessments for this unit are designed to demonstrate the achievement of each learning outcome. To pass the unit, students must demonstrate achievement of every unit learning outcome, pass hurdle tasks, and obtain a minimum mark of 50% in graded units

Overview of assessments

Assessment 1: Practical programming tasks The fi...

Assessment 1: Practical programming tasks

The first assessment item consists tasks of Python environment setup and solving basic Python programming and data science problems. The assessment requires students to demonstrate their understanding and use of fundamental Python programming and data science package skills

Submission Type: Individual

Assessment Method: Practical Coding

Weighting

30%

Learning Outcomes LO1, LO2, LO3
Graduate Capabilities GC1, GC2, GC3, GC8, GC10

Assessment 2: Data preparation with Numpy and Pan...

Assessment 2: Data preparation with Numpy and Pandas

The second assessment item is a data preparation practical using key Python data science ecosystem/libraries. The assessment requires students to use libraries NumPy and Pandas and other related tools for collecting, cleaning and wrangling various types of data.

Submission Type: Individual

Assessment Method: Conceptual knowledge coding tasks and Online Viva

Weighting

30%

Learning Outcomes LO2
Graduate Capabilities GC2, GC3

Assessment 3: Data processing, analysis and visua...

Assessment 3: Data processing, analysis and visualisation assignment

The final assessment is a more comprehensive assignment involving data processing, analysis and visualisation. The assignment requires students to demonstrate Python data science techniques from data processing to data visualisation on real-world datasets with consideration of data ethics.

Students will use GenAI tools to evaluate and document their code. Online viva will be used to validate the antiunity of students’ learning.

Submission Type: Individual

Assessment Method: Practical Coding and Online Viva

Weighting

40%

Learning Outcomes LO1, LO2, LO3, LO4
Graduate Capabilities GC2, GC3, GC7, GC8, GC10

Learning and teaching strategy and rationale

This unit is delivered through Attendance and Online modes using a single, integrated learning and teaching strategy designed to ensure equivalent learning outcomes and a comparable learning experience for all students, while supporting diverse learning needs and maximising access.

Across both modes, learning activities are intentionally aligned to the unit learning outcomes and assessment tasks, and are underpinned by active learning, guided engagement with disciplinary knowledge, opportunities for peer interaction, and regular, timely feedback. While the mode of delivery shapes how students participate, the pedagogical intent, expectations and standards remain consistent.

In Attendance mode, students engage in weekly face-to-face classes at designated locations, supported by preparatory activities prior to workshops and opportunities for consolidation following classes. Online learning platforms are used to complement face-to-face teaching through additional resources and learning activities.

In Online mode, students engage with the same core content and learning outcomes through a combination of synchronous and asynchronous activities, including structured discussions and applied learning tasks that support learning in professional contexts.

Across both delivery modes, students should plan to commit approximately 150 hours to this unit over the semester, including participation in learning activities, independent study, readings and assessment preparation.

Representative texts and references

Representative texts and references

McKinney, W. (2022). Python for data analysis: Data wrangling with pandas, NumPy, and Jupyter (3rd ed.). O'Reilly Media. 

Grus, J. (2019). Data science from scratch: First principles with Python (2nd ed.). O'Reilly Media. 

Matthes, E. (2023). Python crash course: A hands-on, project-based introduction to programming (3rd ed.). No Starch Press. 

Massaron, L., & Mueller, J. P. (2023). Python for data science for dummies (3rd ed.). For Dummies. 

Bruce, P., Bruce, A., & Gedeck, P. (2020). Practical statistics for data scientists: 50+ essential concepts using R and Python (2nd ed.). O'Reilly Media. 

Downey, A. B. (2025). Think stats: Exploratory data analysis (3rd ed.). O'Reilly Media. 

Rogel-Salazar, J. (2025). Data science and analytics with Python (2nd ed.). Chapman and Hall/CRC. 

Igual, L., & Seguí, S. (2024). Introduction to data science: A Python approach to concepts, techniques and applications. Springer. 

VanderPlas, J. (2022). Python data science handbook: Essential tools for working with data (2nd ed.). 

Shea, J. M. (2024). Foundations of data science with Python. Chapman & Hall/CRC. 

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