Sunny Singapore
Contents
Introduction
Singapore is a leading economy in its region, but an astonishing number of its citizens fall below the first-world poverty line.
First-world poverty is a new concept to many, as it represents a group of citizens who are earning less than sufficient to cover the cost of living of their country of residence. For the fifth consecutive year, Singapore has held to its number one position as the most expensive city to live in. Although welfare is extensive in Singapore, it is definitely not exhaustive. Thus, this has become our main source of motivation for this project.
We seek to develop a tool that is easy use, analyse and to act on because we strongly believe that helping our communities should not be limited to the efforts of the government. We aim to design a platform where users can recognise the less-privileged areas and understand intuitively the type of support required. As such, any citizen, committees or even organisations can utilise this resource to lend a helping hand immediately and effectively.
Problem and Motivation
To build a dashboard that allows for:
- Profiling of neighbourhoods in Singapore by attributes: income, job specification, transportation, housing and qualifications
- Other sub-attributes to provide for analytical context: age, race/religion, expenditure, marital status, political views
- Infographic on First-World Poverty
- General guidelines on the support type for various helpgroups
Objectives
This project aims to provide insights into the following:
- Income data by geography
- Socioeconomic status by income
- Support types categorised by socioeconomic situation
- Scalable system to incorporate future data
Background Survey of Related Works
to be updated
Proposed Storyboard
#1: Title Screen
The title screen indicates the project objectives that the data visualisation tool seeks to achieve on the analysis of IFC Taiwan. As the project focuses on Taiwan branches, an image of Taipei 101 was used as a landing page.
The screens are implemented in a form of single-page website design, where each screen occupies the full screen and is navigated through scrolling action.
#2: Geographical overview
The overview will allow the user to see all respective branches in the map. There will be an option for modes of view e.g (relative sales performance), which builds a thematic map. Hovering or clicking on any branch will allow for a tooltip that displays the information corresponding to the mode.
#3: Sales Overview
This storyboard will provide visualizations for us to quickly identify top branches with high monthly sales. Upon selecting a branch, the monthly sales performance change across the years could be displayed using line graphs. It shows the overall monthly and yearly sales performance of all outlets using bar charts.
#4: Key findings and conclusion
The key findings and conclusion page display the insights that have been gathered from the visualisation tool, which aligns with the objectives of the project. The background of the page signifies the importance of tourist attractions in the selection of new outlets, which plays a big role in maximising the yield for an outlet.
Tools and Libraries
- Microsoft Excel
- R Studio
- Tableau
- Google Drive
Datasets
These are the datasets we plan to use:
Dataset | Rationale |
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Foreseen Technical Challenges
We encountered the following technical challenges throughout the course of the project. We have indicated our proposed solutions, and the outcomes of the solutions.
Key Technical Challenges | Proposed Solution | Outcome |
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NA | |
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We managed to start using the packages quickly and suit our own project needs. Each of us work on different parts such as setting up, designing, logic and deployment. This speeds up our project progress. | |
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The adopted process was having clear instructions issued to each member in the team, along with maintaining constant communication with each other. In the event that the dataset is deemed too dirty to be usable, it was dropped along with sourcing for new data that would be a suitable replacement. | |
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NA | |
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The data points can better allow us to generate insights on the profile of each outlet via its trade area. | |
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NA | |
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NA |
Project Timeline
Week 8: Complete detailed project proposal and gather datasets supervised by Alexia
Week 9: Clean datasets supervised by Pham
Week 10: Create data visualisation & consult on quality of work supervised by Parth
Week 11: Finalise storyboard teamwork with help of professor!
Week 12: Get ready for deadlines whoop!
References
- Tableau: https://www.tableau.com/learn/training
- R Shiny: https://shiny.rstudio.com/tutorial/
Ideation Drafts
To be updated
Comments
Feel free to leave comments / suggestions!