About the role
In this role, you will develop and integrate software-based AI/ML surrogate modelling solutions for industrial water consumption and wastewater treatment applications, supporting sustainability goals such as improved water recycling and reduced operational carbon intensity. You will model complex physical systems potentially including fluid dynamics, heat transfer, and process equipment via simulation platforms and/or physics-enabled AI approaches to optimize industrial operations to further develop capabilities for the A*STAR Water Efficiency and Effectiveness Monitoring and Analytics System (WE2MAS).
The role requires a strong foundation in process engineering and data-driven methods, with an understanding of manufacturing and industrial systems. You will also evaluate state of the art technologies and design end to end workflows that bridge data to high-fidelity simulations with scalable AI surrogate models for real-world validation, deployment, and implementation at industrial sites.
Job Description
Capability Development
Surrogate Model Development
Workflow Engineering & MLOps
Data Analytics
Stakeholder Engagement & Reporting
JOB REQUIREMENT
Education:
Bachelors/ Masters Mechanical, Chemical, or Industrial Engineering, Data Science, or a related field with focus on process modeling or data analytics.
Experience:
Technical Skills:
Strong programming and data science skills (Python, MATLAB, TensorFlow, PyTorch, Scikit-learn).
Familiarity with surrogate modeling techniques and ML/AI workflows
Effective communication skills to present complex modeling, simulation and data analytics insights to non-technical audiences.
Bachelors/ Masters Mechanical, Chemical, or Industrial Engineering, Data Science, or a related field with focus on process modeling or data analytics.