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many disciplines. A space where the brightest minds can pursue big and bold ideas and discover answers to crucial scientific questions. We support them in a dynamic environment which fosters excellence
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space where the brightest minds can pursue big and bold ideas and discover answers to crucial scientific questions. We support them in a dynamic environment which fosters excellence with state-of-the-art
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Hemorrhage Responsibilities: Planning and performing experiments, and analyzing data Presenting data at lab meetings and international conferences Writing scientific papers and grant applications Requirements
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and chemoproteomics studies Help develop and apply biochemical, biophysical, and metabolic stability assays Screen compounds; analyze and interpret data Apply data to the iterative design of optimized
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; perform downstream bioinformatic analysis using appropriate tools (e.g., Seurat, Scanpy, Cell Ranger). • Analyze whole genome sequencing data sets • Collaborate with clinicians, computational biologists
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. For more information about CBMR, please visit our website . Research projects open for applications The eight research projects and their corresponding Principal Investigators are listed below. More
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of chemical probes suitable for cellular and in vivo pharmacological validation Screen compounds; analyze and interpret data Explore and elucidate molecular modes-of-action of chemical probes Maintain accurate
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molecular mechanisms linking CVD and cancer progression. Apply cutting-edge techniques including spatial transcriptomics and single-cell multiomics and integrate multi-omics data to identify therapeutic
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electrophysiology: Proficiency in whole-cell patch clamp recording, acute slice preparation, and/or cell culture electrophysiology, along with related data analysis methods using tools such as MATLAB or Python
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leveraged to accelerate learning from both classical and quantum data. The project will develop rigorous theoretical frameworks to understand key properties of quantum machine learning models—expressivity