Refer to our slides here Group Presentation for Happy Sip Happy Slurp Happy Shuttle
In the bustling cityscape of Singapore, nightlife is a significant component of the city's culture and economy. The efficiency of post-midnight services, particularly in food availability and transportation, plays a crucial role in shaping this aspect. "HappyHour" delves into the geospatial aspects of Singapore's nightlife with an aim to enhance the offerings of post-evening amenities.
This project leverages analytics and data to unravel urban patterns of nightlife, accessibility of late-night services, and their correlations with the city’s demographics. With a focus on affordable and cost-effective options, this study aims to strengthen the cultural vibrancy and economic prosperity of Singapore's night economy.
Singapore currently faces a scarcity of late-night eateries and public transport availability, leading to an overreliance on costly ride-hailing services. Our Project seeks to address these challenges by providing insights into the spatial distribution of nightlife hotspots, accessibilities, and availability of night-time transport services, ultimately guiding business decisions and catalyzing the development of a safer, more inclusive night economy.
The primary goal of the project is to identify and delineate the landscape of nightlife activities in Singapore, focusing particularly on dining and transportation options post-midnight. The project aims to:
- Assess Accessibility: Measure the ease of finding late-night food and bus routes.
- Analyze Patterns: Understand where people go at night, the availability of food options, and bus services.
- Define Nightlife Hotspots: Establish criteria for what constitutes a nightlife location.
By addressing these objectives, our project hopes to offer insights into the improvement of the night-time scene in Singapore, suggesting potential areas for the addition of food places or bus stop routes post-midnight.
Code files in the main directory are labelled No.1 to 5 with each representing the following:
- Data Preprocessing in R & Python
- Exploratory Spatial Data Analysis in R
- Analysis for finding restaurants in R
- Analysing Bus Stops using KDE, IDW, Kriging and Buffer Spatial Analysis. Note: An updated version of the HTML file requires you to knit the no.4 Rmd file
- Finding Optimal Bus Stops with Road Networks to map the optimal path
- Dataset - All of our data sources for this project from the Singapore Base Map, Restaurants Locations, etc
- Plots - Contains all the image plots for our project analysis onto nightlife
- optimal_stops - Contains all the analysis in filtering the number of bus stops to serve strategic locations in Singapore's HDB areas
- optimal_bus_stops - Contains the 2 recommended routes of our public transportation analysis bringing individuals from downtown to high youth density HDB residential areas post-midnight
This project is part of the BT4015 Geospatial Analytics module in the National University of Singapore (NUS) Academic Year 2023/2024 created by Ana Pelin, Minh Hai, Shayer Ahmed, Jeremy Chan Tse Ee, Zhuo Yun Hui