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://pritykinlab.princeton.edu) develops computational methods for design and analysis of high-throughput functional genomic assays and perturbations, with a focus on multi-modal single-cell, spatial and genome editing
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methodologies in brain diseases. The candidate will work on developing advanced new algorithms, testing and validation, and applications in these data modalities. The candidate will have the opportunity to work
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. Responsibilities will include assisting with: recruitment and acquisition of data for behavioral and multi-modal MRI data; image analysis; maintenance of regulatory documents and correspondence. Opportunities
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efficiency of low-cost adsorbents for the removal of cyanotoxins and taste and odour compounds from water. This will involve setting up methods for the analysis of selected toxins and taste and odour compounds
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. Describe a deep learning project you have executed. Projects in computer vision for microscopy image analysis are especially relevant. Include a link to a code repository if possible. If you contributed to a
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Leaning interpretation methodology that exploits the complementary information provided by the three physical modalities embedded in the NDE probe (namely electrical resistivity, capacitive sensing, and
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image analysis to extract cellular morphology and spatial features. Analyze multi-modal datasets combining transcriptomics, chromatin accessibility, imaging, and electrophysiology. Develop and apply
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. The exposome is a promising and emerging modality to explain disease variation (papers in press in Nature Medicine) that impacts humans on all levels: from the single cell to populations, providing a rich
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Description Applications are invited for a full‑time research contract to support a project investigating eating behaviour and the neurocognitive mechanisms associated with sweet taste, using advanced
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physics-informed deep learning and data-driven modelling. 3. Design and implement pipelines for processing and analysing multi-modal neuroimaging data. 4. Document research outputs including data analysis