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-related modeling Familiarity with related literature and software Good written and oral communication skills Entry level candidates are welcome to apply We regret to inform that only shortlisted candidates
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electronic medical records, clinical trial data, survey data, and observational data • Systematic review and meta-analysis Software requirement: • R, STATA, or other similar software Recruitment is open
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, and the detection of X-rays by quantum devices. Key Responsibilities: Develop theoretical and numerical frameworks in X-ray quantum nanophoonics. Lead programming of software tools. Lead papers and
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. • Knowledge and experience in fault diagnosis and analysis and protection systems will be advantageous • Knowledge of software such as PSIM, ETAP and MATLAB/Simulink • Prior knowledge and experience in
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contribute to full-stack software development, including both front-end (e.g., React, Flutter, HTML/CSS/JavaScript) and back-end (e.g., Node.js, Django, Flask, databases) components Work closely with faculty
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organizational and time management skills. Strong written and verbal communication skills. Proficiency in using software tools for NMR or cryo-EM data collection and processing is a plus. Familiarity with
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with the project 6. Tool and Methodology Development: • Innovate and improve methodologies for CFD modeling of complex natural systems. • Stay updated with advancements in CFD software and techniques to enhance
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and Competencies: Proficiency in CAD software, rapid prototyping and application of autopilot flight control. Proficiency in Python, C++, and MATLAB/Simulink; familiarity with robotics middleware (e.g
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economics and behavioral experiments. Compiling, processing, and analyzing data from the experiments using statistics and econometrics software STATA and (or) R. Engage in academic activities (proofreading
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Responsibilities: Conduct programming and software development for graph data management. Design and implement machine learning models for optimizing graph data management. Conduct experiments and evaluations