Job Description
A research scientist position is available immediately at the Institute for Infocomm Research (I2R), A*STAR, Singapore.
The position will focus on advancing AI approaches based on real-world health record datasets for digital health and precision medicine applications.
Specific areas of focus include:
Machine learning and deep learning with large real-world health datasets (electronic health records, clinical text, lifestyle and genomic data)
Integration of biomedical knowledge representations and machine learning/deep learning approaches
Learning with big observational, irregularly sampled or noisy datasets
Uncertainty quantification and interpretable machine learning/deep learning
Applications in precision screening, stratification, phenotyping, health outcome prediction, biomarker identification and health promotionThe role will interface unique real-world health datasets with cutting edge AI technologies and clinical translation targets.
Successful candidates should have experience and intuition across real-world data understanding and engineering, machine learning problem formulation, AI model and system development, and translation of technology solutions into real-world implementation.
Core responsibilities include R&D project execution, translation of novel AI technology solutions to clinical evaluation and healthcare implementation, as well as drafting of proposals and project scoping.
The position entails working in a highly inter-disciplinary R&D team in close collaboration with experts in machine learning, public health, bioinformatics, precision medicine as well as with clinicians, health ecosystem stakeholders, and government entities on ambitious projects that have the potential to transform patient care and deliver improved health outcomes.
Job Description
Ph.D. in Biomedical/Health Informatics, Biomedical Engineering, Computer Science, Statistics, Electrical Engineering, Applied Mathematics or other Data Science intensive fields.
Candidates should have a strong computational background, experience with large real-world datasets and demonstrated research expertise in at least two or more of the following areas:· Deep learning / machine learning for healthcare applications (including data annotation, problem formulation and state-of-the-art techniques)
· Development of AI solutions for real-world digital health applications
· Large-scale biomedical or healthcare data engineering and data science (incl.
warehousing, databases, ETL pipelines, exploratory analyses, knowledge extraction/representations and/or data mining)
· Natural language processing / text mining
· Biomedical/health informatics
· Quantitative or qualitative evaluation studies
A strong track record with publications in leading digital health, data science, applied machine learning/mathematics/ statistics venues is required.
Experience working in large interdisciplinary project teams with a health or medical technology translation perspective is a plus.
2-4 years post-PhD with track record in applied health informatics projects and/or publishing research in leading digital health venues.
Experience in healthcare, corporate or application-oriented environments desirable.
Keen experience and intuition for working with large, complex real-world biomedical and health datasets
Ability to innovate with advanced data science and AI methods as well as to direct prototyping for demonstrating research ideas
Understanding of clinical environment and workflows
Exposure to varied digital health study designs, research methods, human computer interaction frameworks, and clinical evaluation approaches
Cross-disciplinary experience spanning clinical needs definition, R&D problem formulation, health or medical technology evaluations, impact evaluation and/or real-world implementation.
Ability to work independently as well as in multidisciplinary teams with strong interpersonal skills
Good communication skills for publications, reports and proposals.
Quick learner; able to acquire the necessary domain knowledge
Agility in dynamic project environments with impact-oriented mindsetDrive to keep pace with AI/ML R&D developments, work with full stack data engineering and deployment teams for real world projects, and with healthcare ecosystem partners on clinical translational studies highly desirable.
Strong programming abilities (e.g. Python, Bash, PySpark, R, C/C++, Java, Perl)
Strong quantitative skills including deep knowledge of statistics, probability, modern machine learning and deep learning
Experience with ETL processes, data preprocessing, data science, and data visualization tools, especially for large or multimodal health datasets (e.g., SAS, Tableau, PowerBI, Knime, WEKA, Jupyter notebooks etc)
Experience with biomedical knowledge representation and model development frameworks
Comfort with ML/DL frameworks (e.g., PyTorch, TensorFlow), data science and data mining tools (Jupyter notebooks, SAS, Tableau, Knime, WEKA, visualization libraries etc) as well as NLP/LLM toolkits
Comfort within cloud-based data engineering and ML environments
Exposure to MLOps/DevOps infrastructure and pipelines for deploying AI/ML solutions for healthcare applications Motivated applicants with significant domain expertise and strong programming skills who are looking to switch into AI related fields and committed to building robust and scalable approaches for population-scale healthcare impact will also be considered.