Work Integrated Learning in Data Analytics
Timeline
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April 30, 2020Experience start
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May 4, 2020Project proposal submission
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May 9, 2020Project Scope Meeting
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May 23, 2020Project progress update
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June 6, 2020Preparation for project completion
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June 14, 2020Experience end
Timeline
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April 30, 2020Experience start
-
May 4, 2020Project proposal submission
Meeting between students and company to discuss project proposal and expected outcome from the project.
-
May 9, 2020Project Scope Meeting
Meeting between students and company to confirm: project scope, communication styles, and important dates.
-
May 23, 2020Project progress update
Meeting between students and company to report progress and discuss possible problems and questions.
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June 6, 2020Preparation for project completion
Meeting between students and company to discuss final report writing and final presentation preparation.
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June 14, 2020Experience end
Categories
Information technology Data analysisSkills
programming languages statistical analysis machine learning data modeling data analyticsThe project addresses the application of analytics and statistics in a real world situation and is a capstone project for final year Master students. Our students have extensive knowledge in data extraction and preprocessing, data wrangling and exploration, data visualization, machine learning, forecasting, multivariate analysis, quality control and experimental design. Computing skills include querying language (SQL), scripting language (R, Python) & statistical language (R, SAS).
Within the time frame and the profile of our students, you can expect innovative ideas and viable solutions based on cutting-edge data analysis technologies for:
· A proof for concept with dedicated conclusions if your challenge aims to designs a new system for data analysing and reporting; or
· A well documented analysis if your challenge addresses a specific question.
Project timeline
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April 30, 2020Experience start
-
May 4, 2020Project proposal submission
-
May 9, 2020Project Scope Meeting
-
May 23, 2020Project progress update
-
June 6, 2020Preparation for project completion
-
June 14, 2020Experience end
Timeline
-
April 30, 2020Experience start
-
May 4, 2020Project proposal submission
Meeting between students and company to discuss project proposal and expected outcome from the project.
-
May 9, 2020Project Scope Meeting
Meeting between students and company to confirm: project scope, communication styles, and important dates.
-
May 23, 2020Project progress update
Meeting between students and company to report progress and discuss possible problems and questions.
-
June 6, 2020Preparation for project completion
Meeting between students and company to discuss final report writing and final presentation preparation.
-
June 14, 2020Experience end
Project Examples
In this course, students apply a wide range of data analytical methods and tools covered in the whole program. This includes in particular time series analysis, multivariate analysis, predictive modelling, quality control, regression, machine learning, data visualisation, experimental design and optimisation. Computation tools include in particular querying language (SQL), R, Python, Matlab, SAS and SPSS.
Example 1: Data Visualisation project. New South Wales Trainlink was interested in how the on-time running of the trainlink networks can be best visualised, and where the pinch points are in the networks. Our students utilised general data visualisation and geospatial data visualisation tools to help industry partners locating the worst performing services and if some services have to be removed.
Example 2: City West Water, one of the largest water supply companies in Melbourne, has a yearly maintenance program for sewer reticulation cleaning including key customers and key events. The Manhole gas check maintenance program is an annual program. City West Water was interested in finding out how effective these programs are, that is, how often these reticulation lines and manholes report a blockage after cleaning, and if the frequency of blockages in these assets has come down as a result of preventative maintenance programs. Our students deciphered whether prevention programs reduce the need for responses by making use of multivariate analysis of variance techniques. Time-to-failure analyses highlighted whether prevention programs can extend the time before a failure is seen.
Example 3: Customer Segmentation for Coles Supermarkets, one of the largest supermarket chains in Australia. Our students have built a customer segmentation model that will be used by Coles to segment their fresh produce customers based on behaviour, types of products and amounts of products purchased. The project aims to understand customer behaviour, and therefore help Coles for future promotions at their target market.
Companies must answer the following questions to submit a match request to this experience:
Provide a dedicated contact who is available to answer periodic emails and online meeting over the duration of the project to address students' questions.
Provide feedback on students' assessment including the project proposal and final reports
Timeline
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April 30, 2020Experience start
-
May 4, 2020Project proposal submission
-
May 9, 2020Project Scope Meeting
-
May 23, 2020Project progress update
-
June 6, 2020Preparation for project completion
-
June 14, 2020Experience end
Timeline
-
April 30, 2020Experience start
-
May 4, 2020Project proposal submission
Meeting between students and company to discuss project proposal and expected outcome from the project.
-
May 9, 2020Project Scope Meeting
Meeting between students and company to confirm: project scope, communication styles, and important dates.
-
May 23, 2020Project progress update
Meeting between students and company to report progress and discuss possible problems and questions.
-
June 6, 2020Preparation for project completion
Meeting between students and company to discuss final report writing and final presentation preparation.
-
June 14, 2020Experience end