36 parallel-and-distributed-computing-"LIST" Fellowship positions at University of Michigan
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Apply Now How to Apply Interested applicants should submit all materials listed below through https://apply.interfolio.com/172676 ; any questions or inquiries can be sent to Kate Cagney (ISRDirector
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Required Qualifications* A PhD in Information, Human-Computer Interaction, Computer Science, or a related field; conferred by the start date Desired Qualifications* Experience translating research outcomes
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bundle platform we developed to increase rigor of structure-function quantifications. We also perform CRISPRa high throughput screening and massively parallel reporter assays (MPRAs) in iPSC-CMs. A current
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these methods accurately and independently, interact effectively with computational biologists, and clearly communicate findings through presentations and publications. Candidates with strong expertise in
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, computer science, or equivalent disciplines. Good written and verbal communication skills in English. Ability to work independently or collaboratively with a diverse research team. Desired Qualifications
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one from your current graduate or clinical residency training program. Graduate-level academic transcripts (unofficial is acceptable) Two writing samples, preferably a copy of a previously published
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-disciplinary research program that couples clinical, computational and basic research, epitomizing our bench-to-bedside philosophy. The position will leverage a combination of cutting-edge techniques
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one from your current graduate or clinical residency training program. Graduate-level academic transcripts (unofficial is acceptable) Two writing samples, preferably a copy of a previously published
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stand at the forefront of translational research in liver cancer. You will lead your own interdisciplinary project within a diverse team of experimental and computational biologists. You will have a
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to detail; Strong time management skills with a proven ability to multitask and work successfully with little supervision; Mastery of one or more programming languages commonly used for computational social