Research Associates/Research Assistants are required for concurrent research projects in the laboratory of Assistant Professor Lim Jue Tao

This project, led by the Lee Kong Chian School of Medicine (LKCMed), Nanyang Technological University, will be conducted in collaboration with the Saw Swee Hock School of Public Health (SSHSPH), National University of Singapore, the Environmental Health Institute, National Environment Agency, Singapore and the Ministry of Health, Singapore will offer a multidisciplinary and unique collaborative environment with diverse learning opportunities. The successful applicant(s) will work as part of a growing and energetic team investigating health at the interface of environment, climate change and infectious diseases in local and international contexts. The successful candidates will work together with the PI to develop models to understand the short to medium-term burden of infectious diseases across large spatial scales using high-frequency data.  

Key Responsibilities:

  • Develop models to understand the epidemic potential and instantaneous transmissibility of infectious diseases

  • Develop models to understand the medium to long-term burden of infectious diseases across large spatial scales

  • Undertaking literature reviews

  • Leading on analysing data using statistical and data science techniques

  • Leading on writing reports, presentations, and publication of results and findings in peer-reviewed journal

  • Generating research questions

  • Collaborating with researchers in other national and international institutions

Competencies and Qualification Requirements:

  • Masters (Research Associate), Bachelors (Research Assistant), or equivalent in a related discipline. I.e statistics/epidemiology/data science. Post-graduate qualifications in other quantitative disciplines are welcome to apply

  • Background and research experience in epidemiology

  • A strong interest in infectious diseases, spatial statistics and health data science

  • Ability to communicate findings effectively

  • Ability to work in a diverse and large team of researchers


  • Well- organized and has an eye for detail.

  • Possess good written and verbal communication skills,

  • Possess the ability to work effectively in teams

  • Have good proficiency in Statistical software (R)

It would be desirable for the candidate to:

  • Have good proficiency in other programming languages, for example Python/C/C++

  • Have a strong interest in learning quantitative skills

Hiring Institution: LKC

Location

NTU Novena Campus, Singapore

Job Overview
Job Posted:
1 month ago
Job Expires:
1mo 1w
Job Type
Full Time

Share This Job: