The School of Physical and Mathematical Sciences (SPMS) at NTU Singapore hosts research and education activities in two divisions: Division of Mathematical Sciences (MAS) and Division of Physics and Applied Physics (PAP). MAS covers diverse topics ranging from pure mathematics to the applications of mathematics in cryptography computing business and finance. PAP covers many areas of fundamental and applied physics including quantum information condensed matter physics biophysics and photonics. Over the years SPMS has attracted talented individuals from around the world and Singapore to join as scientific leaders and researchers.
Join Assistant Professor Jeremie Houssineau (SPMS) and Professor Yew Soon Ong (CCDS) as a Research Assistant to contribute to a project focused on modelling and quantifying uncertainty for foundation models. You will be part of a larger project focused on developing theoretical foundations for deep foundation models in collaboration with Professor Taiji Suzuki from the University of Tokyo and Associate Professor Atsushi Nitanda from A*STAR.
Key Responsibilities:
Research & Development
Conduct original research in deep learning related to uncertainty quantification for large models.
Explore cutting-edge advancements in AI and relate it to the main research objective.
Experimentation & Implementation
Assist the team in developing and implementing related algorithms models and techniques.
Perform rigorous benchmarking and evaluation of the developed models.
Optimize algorithms for efficiency scalability and robustness.
Collaboration
Work closely with the PI and the project team.
Collaborate with PhD students undergraduate researchers and postdocs.
Writing & Publications
Write technical reports and research documentation.
Job Requirements:
Educational Qualifications
BSc or equivalent in Statistics Computer Science Applied Mathematics or a related field.
Some research background in Statistics or Machine Learning.
Entry level candidates are welcome to apply
Technical Competencies
Mathematical & Statistical Foundations: Strong understanding of statistics probability optimization and linear algebra.
Machine Learning: Deep learning probabilistic modeling generative models etc.
Programming & Software Development: Proficiency in Python PyTorch JAX or other ML frameworks
Computing: Some experience with large-scale datasets parallel computing and GPUs/TPUs.
Algorithm Development: Ability to develop and optimize Machine Learning algorithms for various applications.
Research & Analytical Skills
Ability to design and execute experiments for evaluating ML models.
Critical thinking and problem-solving abilities.
Soft Skills
Communication: Ability to present research findings effectively through writing and presentations.
Collaboration: Experience working in interdisciplinary teams with researchers from diverse backgrounds.
Project Management: Ability to meet deadlines.
Adaptability & Innovation: Willingness to explore new methodologies.
We regret to inform that only shortlisted candidates will be notified.
Hiring Institution: NTURequired Experience:
Junior IC
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