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CP1407 - Introductory Machine Learning and Data Science
Credit points: |
3 |
Year: |
2023 |
Student Contribution Band: |
Band
2 |
Administered by: |
College of Science and Engineering |
Data Science is the study of the generalizable extraction of knowledge from data.
Being a data scientist requires an integrated skill set spanning mathematics, statistics,
machine learning, databases and other branches of computer science along with a good
understanding of the craft of problem formulation to engineer effective solutions.
This subject will introduce students to this rapidly growing field and equip them
with some of its basic principles and tools as well as its general mindset. Students
will learn concepts, techniques and tools they need to deal with various facets of
data science practice, including data collection and integration, exploratory data
analysis, utilising various machine learning algorithms for predictive modeling and
descriptive modeling, data product creation and evaluation
Learning Outcomes
- Describe what data science is and the skill sets needed to be a data scientist;
- Describe the data science process and how its components interact;
- Explain in basic terms what Machine Learning means and the significance of Machine
Learning in data science;
- Identify differences in various machine learning algorithms, principles and application
purposes of each algorithm;
- Apply basic tools to carry out data analysis using exemplar machine learning algorithms.
Subject Assessment
- Written > Examination (centrally administered) - (40%) - Individual
- Assignment - (40%) - Individual
- Performance/Practice/Product > Practical assessment/practical skills demonstration - (20%) - Individual.
Availabilities
|
Cairns,
Trimester 2,
Internal
|
Census Date 22-Jun-2023 |
Coord/Lect: |
Dr Euijoon Ahn. |
Workload expectations: |
The student workload for this
3
credit point subject is approximately
130 hours.
- 20 hours seminars
- 10 hours online activity
- 20 hours specialised
- assessment and self-directed study
|
|
|
JCU Brisbane,
Trimester 2,
Internal
|
Census Date 22-Jun-2023 |
Coord/Lect: |
Dr Iti Chaturvedi. |
Workload expectations: |
The student workload for this
3
credit point subject is approximately
130 hours.
- 20 hours seminars
- 10 hours online activity
- 20 hours specialised
- assessment and self-directed study
|
|
|
JCU Singapore,
Study Period 51,
Internal
|
Census Date 06-Apr-2023 |
Workload expectations: |
The student workload for this
3
credit point subject is approximately
130 hours.
- 20 hours seminars
- 10 hours online activity
- 20 hours specialised
- assessment and self-directed study
|
|
|
JCU Singapore,
Study Period 52,
Internal
|
Census Date 03-Aug-2023 |
Workload expectations: |
The student workload for this
3
credit point subject is approximately
130 hours.
- 20 hours seminars
- 10 hours online activity
- 20 hours specialised
- assessment and self-directed study
|
|
|
Townsville,
Trimester 2,
Internal
|
Census Date 22-Jun-2023 |
Coordinator: |
Dr Euijoon Ahn |
Lecturer:
|
Dr Iti Chaturvedi. |
Workload expectations: |
The student workload for this
3
credit point subject is approximately
130 hours.
- 20 hours seminars
- 10 hours online activity
- 20 hours specialised
- assessment and self-directed study
|
|
|
Trimester 2,
External
|
Census Date 22-Jun-2023 |
Coord/Lect: |
Dr Euijoon Ahn. |
Workload expectations: |
The student workload for this
3
credit point subject is approximately
130 hours.
- 40 hours online activity
- 10 hours online Seminars
- assessment and self-directed study
|
|
|
Note:
Minor variations might occur due to the continuous Subject quality improvement process,
and in case
of minor variation(s) in assessment details, the Subject Outline represents the latest
official information.