783 machine-learning-"https:"-"https:"-"https:"-"https:"-"https:" positions in Singapore
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/ or training on animal procedures and techniques to care staff and researcher, include directly teach and/ or assist in the hands-on training programs for animal users. • Provide support for animal
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EEG electrodes, and administering computer-based neurobehavioral tests to research participants. Additional roles include participant recruitment and data analyses. Job Requirements Bachelor’s
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Job Description Job Alerts Link Apply now Job Title: Research Assistant (Microelectronics) Posting Start Date: 17/11/2025 Job Description: Job Description The Electrical and Computer Engineering
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based on performance and funding availability. Review of applications will begin immediately and continue until the position is filled. Qualifications • PhD Degree in Electrical and Computer Engineering
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of statistics and machine learning models Proficiency in coding using Python Knowledge of biomechanics and computer vision is a plus Experience in the following skills is a plus: (1) biomechanics software (e.g
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computational analysis/simulation in at least one of the above areas. Familiarity with the application of Artificial Intelligence, Machine Learning and/or Data Analytics in Aircraft Propulsion and related areas
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: Masters/Ph.D. degree in Electrical/Computer Engineering, specialized in Power Systems/Renewable Energy Planning/Optimization At least 5 years of professional experience with a strong focus on power system
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kernel, Windows WDDM, or embedded systems is a plus. Experience working on GPU-accelerated applications in domains like gaming, machine learning, scientific computing, or graphics rendering. Exposure
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, such as, geometric/topological/algebraic data analysis, geometric/topological deep learning, Math for AI, categorical deep learning, sheaf neural networks, PINN/KAN models, neural operators, etc, and
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Computer Science, AI/ML, Computational Biology, Food Science with computational expertise, or a related field. Experience with natural language processing, machine learning frameworks (e.g., PyTorch