Interested applicants are invited to apply directly at the NUS Career Portal.
Your application will be processed only if you apply via NUS Career Portal.
We regret that only shortlisted candidates will be notified.
Job Description
Applications are invited for the following full-time position in the Saw Swee Hock School of Public Health:
Research Fellow
We are looking for research fellows with a quantitative background for ongoing research in Public Health.
They will be working within the team under the Principal Investigator Assistant Professor Borame Dickens alongside multiple collaborators and experts.
Methods include agent based/individual based modelling, SEIR modelling, geospatial statistics, Bayesian statistics, burden mapping, measuring the impact of the environment on disease among others. The PI has projects in both infectious and chronic disease, measuring the impact of interventions.
Candidates need to be able to understand statistical modelling, have a mathematical background, and be fluent in R programming. We will also consider candidates who have extensive C++ or Python coding knowledge as these are transferrable to R.
The candidate will be working with the Principal Investigator(s) on the analysis of national health datasets, utilising an array of methods to infer statistical relationships and health outcomes. Further mathematical modelling will also be carried out when necessary involving diagnostic flows and where appropriate, disease spread and/or illness progression.
The Principal Investigator(s) is seeking for an independent worker who is well-organized, analytical and codes competently. They will however be receiving support from a team of mathematicians, epidemiologists and statisticians, and have a diverse portfolio of tasks. Under the team’s guidance, they will be expected to lead their own publications.
We welcome academic creativity and will be highly supportive of candidates who wish to either pursue academia or desire for career progression provided they show self-motivation to showcase their problem-solving abilities.
Responsibilities:
Disease modelling
Statistical analyses
Academic writing and publication of results
Preparation of meeting materials for stakeholders
Leadership and co-supervision
Requirements:
Completed a PhD in a quantitative discipline (statistics, mathematics, computational biology, data science).
Strong programming skills (R preferred)
Statistical competence (Bayesian is advantageous)
Please email the PI at [email protected] for further details.