Reference no: EM133629966 , Length: word count:2000
Artificial Intelligence and Machine Learning
Assessment - Machine Learning/AI for a Business Problem
Task
Develop a real-world Machine Learning or AI project plan/proposal based on the learnings from the subject.
Assessment Description
This assessment seeks to simulate a real-world classification task (binary or multi-class) that you may have to undertake in the future. Therefore, the assignment is non-prescriptive and requires you to pose a relevant, small, creative and significant problem to solve that could result in benefits to the organisation of choice.
In this assessment, you need to consider an organisation in an industry of your choice and articulate the steps this organisation needs to take to enable Machine Learning and/or AI for data-driven decision making. You are required to analyse a sample data set to demonstrate expected AI/ML outcomes.
You must work on a classification task (binary or multi-class), not a regression, forecasting, or reinforcement learning task. You must use the Orange Data Mining software for all analysis.
You need to be familiar with the organisation and industry (e.g., where you have worked or are working, a future start-up company), NOT an organisation such as Amazon/Boeing/Qantas etc.
Well-reasoned use of Generative AI is encouraged. However, generic and irrelevant content will be heavily penalised in the marking.
The report should address:
Why ML would help this organisation given its current operations?
What Machine Learning techniques you would recommend?
An example of the predictive model using sample data.
Deployment considerations for the model.
The benefits for the organisation are clearly articulated with estimates of expected revenue/profits or Return on Investment (ROI).
Assessment Instructions
Timeline. The following timeline will help you stay on track with this assessment.
By Week 9 identify a company and industry you are familiar with that would benefit from Machine Learning/AI. Note:
The application needs to be based on a classification task (not regression, forecasting, or some other prediction task).
Focus on a single, well-defined (small) application.
By Week 12 draft some preliminary points pertaining to the report in class. You are encouraged to consider the current mode of operation, possible inefficiencies, available data and how this data may be used to provide efficiencies based on the concepts and techniques covered in the subject. Think of yourself as a consultant or a founder.
Your lecturer will advise on the appropriateness of your choice and proposed methodology regarding the requirements for the assessment.
Implementation. The Orange workflow file must be submitted to the file submission box. No marks will be awarded for the assessment unless both the report and the Orange workflow file have been submitted. No marks will be awarded to students who share their workflow files with the others.
Report. Based on the template provided, write a 2000-word (maximum) report that summarises the analysis, as well as providing suggestions for further analysis. You may use Generative AI (eg: chatGPT) to enhance your research. Clearly state the prompts and steps undertaken. This report is a part of the assessment and must be written using Google docs and submitted via Turnitin. The Orange workflow file must also be submitted via the file submission box. No marks will be awarded for the assessment unless both the report and the Orange workflow file have been submitted. No marks will be awarded to students who share their workflow files with others.