Skip to main content

This job has expired

Research Fellow, Healthcare Data Science

Employer
NATIONAL UNIVERSITY OF SINGAPORE
Location
Singapore
Closing date
3 Sep 2021

View more

Job Description

The Research Fellow will be responsible for undertaking in-depth research and innovation in machine learning, data science, and artificial intelligence on trusted collaborative machine learning that lead to publications in top-tier international conferences and journals, as well as real-world implementations. 

Responsibilities:

  • Develop new concepts and algorithms in data science, machine learning, and artificial intelligence for trusted collaborative machine learning; 
  • Be up-to-date on state-of-the-art methodologies in related technical fields and application domains;
  • Develop ideas for application of research outcomes; 
  • Contribute to knowledge exchange activities with external partners and collaborators; 

Requirements

  • A PhD in Computer Science or relevant fields, with specialization related to machine learning, data mining, artificial intelligence or databases;
  • Proven ability to conduct independent research with a strong and relevant publication record;
  • Strong publication track records with top conference and journal papers will be a plus;
  • Experienced in using the latest machine learning, AI, and big data platforms;
  • Proficient in python/C++/R programming
  • Excellent interpersonal communication and oral presentation skills in English;
  • A effective team player 

More Information

The selected candidate will be working in a truly cross-disciplinary team, where he/she will have the opportunities to work with clinical experts from SingHealth and NUHS. The selected candidate will also be part of our collaborations with international institutes, such as MIT and Harvard.

Interested individual please send your cover letter and resume to email Dr Mengling FENG at ephfm@nus.edu.sg.

Get job alerts

Create a job alert and receive personalised job recommendations straight to your inbox.

Create alert