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: Assists the leadership team within NeighborhoodHELP with data management & analysis using quantitative and qualitative analytical tools such as R programming language, Atlas.ti, Microsoft Excel, ArcGIS
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technical documentation related to sample preparation and imaging workflows. Advanced Microscopy Data Acquisition and Analysis Perform data acquisition of biological samples using custom-built optical
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to providing reliable, high-performance and secure IT solutions and effective IT governance for the campus. Here at NUS IT, we aim to transform NUS into a borderless computing community providing knowledge
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the REFM Development and Coordination Office, you will provide support to the PPMO team across a broad portfolio of projects. You are encouraged to visit the ESA website: http://www.esa.int Field(s) of
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to manage multiple projects in parallel and prioritize effectively Proficiency with software for instrument control, automation, and data analysis Strong problem-solving skills and critical scientific
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in the research community for its commitment to an affordable and secure energy future. Spanning foundational science to applied systems engineering and analysis, we focus on solving complex challenges
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: Experience with probabilistic graphical models, time series analysis, or deep learning Familiarity with reproducible research practices and open-source collaboration Interest in interdisciplinary applications
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students. Monitor student progress through a communication plan, regular meetings, interventions, assessments, and data collection and analysis. Manage student connection caseload in a manner that promotes
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load-flow analysis with (multi-)objective optimization algorithms for EV charging and discharging. – Investigate challenges related to optimality, robustness, and reproducibility of the proposed methods
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-scale 2D video datasets, enabling reliable inference across diverse recording conditions, camera configurations, and experimental paradigms. Evaluate model performance across datasets and conditions, and