Difference between revisions of "ANLY482 AY2015-16 Term 2"

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'''[https://wiki.smu.edu.sg/ANLY482/AY1516_T2_Team12 Group12- Team 12]'''
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'''[https://wiki.smu.edu.sg/ANLY482/AY1516_T2_Griffins Group12 - Griffins]'''
 
* Melissa Lim Seok Yu
 
* Melissa Lim Seok Yu
 
* Tan Wei Liang
 
* Tan Wei Liang

Revision as of 15:59, 10 January 2016

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About

Current Run

Projects Up For Grabs!

Grading & Deliverables

Downloads & FAQ

 


List of Projects


Title Analytics Practicum Description Student Member(s) Project Supervisor Sponsor
To be confirmed To be confirmed

Group01- Team Skulptors

  • LEONG Junkang, Gabriel
  • TAN Siying
  • ZHOU Xuanyi
Prof. Kam Tin Seong Associate Professor of Information Systems (Practice) To be confirmed
Analysis of User and Merchant Dropoff for Sugar App To be confirmed

Group02- Team TurnKEY

  • Kang Long
  • Elizabeth Tan
  • Yi Sheng, Lim
Prof. Kam Tin Seong Associate Professor of Information Systems (Practice) To be confirmed
Teppei Syokudo - Improving Store Performance Teppei Syokudo is a Japanese Food and Beverage chain, under the umbrella of the famous Teppei Japanese Restaurant. In order to drive store performance through controllable factors, Teppei Syokudo is looking at focusing on staff performance. Most F&B businesses, including Teppei Syokudo, do not set detailed KPIs to evaluate how their staff are performing. If Teppei Syokudo is able to track the performance of their staff through relevant KPIs, they will be able to motivate staff to meet these KPIs, which will in turn boost the business’ bottom line.Teppei Syokudo has identified the following KPIs to assess their staff:
  • Percentage of drinks sales (number of drinks sold / number of meals sold)
    • a measurement of how hard the staff are up-selling
  • Labour Productivity (sales $ / working hours)
    • a measurement of how effective the shop manager is in staffing the shop

However, the business is uncertain if these are the right KPIs to set. Also, if they are the right ones, they are unsure as to what would be a good target to meet. Another factor for driving store performance is through product portfolio mix. Even though the staff may be up-selling and cross-selling, they may not know the right products to cross-sell to increase the probability of the customer making additional purchases. For example, most customers may tend to purchase Drink X together with Don X. In this case, if a customer orders Don X and is about to make payment, the staff can suggest Drink X to the customer, hence prompting a higher probability for the customer to purchase Drink X.

Group03- Team APSM

  • TAN Jhun Boon
  • YAP Jessie
  • OH Peng Ho
Prof. Kam Tin Seong Associate Professor of Information Systems (Practice) Itaru Nagao,

Managing Director

YCP Management Southeast Asia Pte. Ltd.

YCP Retailing SEA Pte. Ltd.

Car Park Overspill Study The objective of this project is to assist Media Research Consultants Pte Ltd (MRC) in understanding the current parking situations in 65 different locations in Singapore. These 65 parking locations compromise of 30 retail malls, 15 retails and Food & Beverage (F&B) clusters in landed housing estates, 10 hawker centers, and 10 community clubs.

Group04- Team ATOM

  • Macus KHOO JunHao
  • YAN ShaoHong Chris
  • YO Wee King
Prof. Kam Tin Seong Associate Professor of Information Systems (Practice) To be confirmed
To be confirmed To be confirmed

Group05- Team AP

  • WANG Shyan Ann
  • NG Tse Siong
  • Sherman YONG Chin Wei
Prof. Kam Tin Seong Associate Professor of Information Systems (Practice) To be confirmed
Skyscanner Content Analysis

The project aims to help with Skyscanner's analyse its content sites in order to facilitate better planning. It will help understand the factors that affect content performance.

Deliverables include creating a dashboard with visualizations that will help Skyscanner team to track the performance of articles across weeks and months, matched to trends and seasonality. It will be used to validate some of the intuitions they might have about certain content topics/types and to determine the best time to publish them. The dashboard will benchmark certain metrics against pageviews as well as additional attributes that Skyscanner does not currently analyse via Google Analytics, such as the impact of title, text length, theme of article and number of images.

The team will also analyse content pages to determine what differentiates good and bad content based on certain performance metrics. This will be done through Text Mining (Topic Analysis), Content Crawling, MLR and matching with Google Trends API.

Data set includes data from Skyscanner websites for the Singapore, Malaysia and Thailand markets.

Group06- Team SkyTrek

  • Aseem PRABHAT
  • Jedaiah TAN Jia Le
  • NGUYEN Viet Huy
Prof. Kam Tin Seong Associate Professor of Information Systems (Practice)

Ms. Antoinette Tan
Content Manager, APAC
Skyscanner

To be confirmed To be confirmed

Group07- Team YSR

  • Ridwan Ismeer
  • Sadhvi Ilango
  • Yashraj Jalota
Prof. Kam Tin Seong Associate Professor of Information Systems (Practice) To be confirmed
Health Analytics To build a web application that utilises GIS functions for geospatial planning and analysis. This application aims to facilitate the computation and analysis of Health Promotion Board (HPB) KPI reporting metrics. The insights generated from the application will be used to manage Health Promotion Programme and Outreach Planning.

Group08 - Team HealthTics

  • Erwin
  • Trinh Hiep Dang Khoa
  • Nyein Su Aye
Prof. Kam Tin Seong Associate Professor of Information Systems (Practice) Health Promotion Board
To be confirmed To be confirmed

Group09 - Team WeiDaSha

  • Shane GOH Ghee Gin
  • Darren LIM Fei Hong
  • LIM Wei Yang
Prof. Kam Tin Seong Associate Professor of Information Systems (Practice) To be confirmed
To be confirmed To be confirmed

Group10- Team AP

  • Jeanne Sim Peh Wuen
  • Lim Hui Ting
  • Jaclyn Lim Hui Ting
Prof. Kam Tin Seong Associate Professor of Information Systems (Practice) To be confirmed
To be confirmed To be confirmed

Group11-Team AYE

  • Audrey Lee Zhi Ying
  • Edwin Tan Soon Hong
  • Toh Yan Ying
Prof. Kam Tin Seong Associate Professor of Information Systems (Practice) To be confirmed
Health Analytics To be confirmed

Group12 - Griffins

  • Melissa Lim Seok Yu
  • Tan Wei Liang
  • Tan Yu Ling
Prof. Kam Tin Seong Associate Professor of Information Systems (Practice) To be confirmed
Natasha Studio To analyse the purchasing behaviour of Natasha Studio’s customers and provide sales and marketing recommendations.

Group13 Team Ameilax

  • Sng Ei Leen
  • Wong Jia Wei
  • Tan Ziling Amy
Prof. Kam Tin Seong Associate Professor of Information Systems (Practice) Larry Liu,

Business Manager

Natasha Studio
Marketing Analytics at Tokio Marine To develop a database analysis to formulate a demographic and psychographic profile of Tokio Marine's customers Group14- Team HEW
  • Huai Zher
  • Elijah Tan Yi Rong
  • Winston Ong Bing Shen
Prof. Kam Tin Seong Associate Professor of Information Systems (Practice) Benito Mable

Vice President, New Opportunities

Tokio Marine Asia
KTPH Public Health

The project is part of an ongoing effort to adopt data visualization to monitor public health by KTPH. Based on data from health screening and KTPH alignment programs, a dashboard can be constructed to assist health officers of KTPH to observe public health conditions, single out unhealthy individuals, and monitor their health progress. Additionally, the dashboard serves as a means to evaluate effectiveness of KTPH alignment programs to improve public health, and provide insights that can refine these programs to better target the population in future. As a follow-up of an IS480 project by team Cinquefoil, the aim is to improve the KTPH dashboard by adopting a richer set of visualization techniques, so as to enable a more user-centric data querying and discovery process. Specifically, KTPH users will be able to use the dashboard to identify unhealthy individuals of the population, the areas they are in, take appropriate actions and monitor the results of such actions As such, the objectives of our analytics project consist of the following:

  • To visualize effectively the current health condition of the public across various regions of Singapore
  • To allow health officers to track the health progress of individual at risks
  • To assist health officers in monitoring the penetration rate of KTPH alignment programs targeted at the general public
  • To allow users to interact with visualizations, thereby forming their own query and arriving at their own findings

Group15

  • Nguyen Le Hong Ngoc
  • Poh Jin Hui
  • Zhao Yazhi
Prof. Kam Tin Seong Associate Professor of Information Systems (Practice) Khoo Teck Puat Hospital & SMU T-Lab
Car Park Overspill Study To be confirmed

Group16 Blackbox

  • Chen Xueye
  • Zeng Jiadong
  • Zheng Wei
Prof. Kam Tin Seong Associate Professor of Information Systems (Practice) To be confirmed
To be confirmed To be confirmed

Group17 T(eam)ROLL

  • Nur Amirah Bte Mohd Noor
  • Gan Sze Huey
Prof. Kam Tin Seong Associate Professor of Information Systems (Practice)

To be confirmed

To be confirmed To be confirmed

Group 18

  • Denise Quek Si Ying
  • Tan Wei Song
Prof. Kam Tin Seong Associate Professor of Information Systems (Practice) To be confirmed
Inpatient Meals Survey To be confirmed

Group19

  • Pooja Tulsyan
  • Akshat Agarwal
Prof. Kam Tin Seong Associate Professor of Information Systems (Practice) Jason Soriano
MRC Mediacorp
To be confirmed To be confirmed

Group20

  • Ng Ngee Heng, Eugene
  • Wilson Wong
  • Pham Minh Khoa
Prof. Kam Tin Seong Associate Professor of Information Systems (Practice) To be confirmed