228 data-"https:" "https:" "https:" "https:" "Simons Foundation" Postdoctoral positions at Nature Careers
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research management and in leading project staff • Didactic skills / experience in e-learning • IT skills and excellent MS Office skills, dat • Knowledge of: mass spectrometry and analysis of complex data
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modules for primary school teachers and educators Conducting education research related to the development and implementation of the PD modules and related actions in participating classes Coordinating data
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description We invite applications for a 2-year postdoctoral position with the possibility of extension. The successful candidate will lead experimental campaigns and data analysis to quantify greenhouse gas
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description You will be contributing to developing and implementing novel algorithms at the intersection of computational physics and machine learning for the data-driven discovery of physical models. You will
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reactors Maintain detailed records of experimental data, process conditions, and system modifications. Publish scientific articles based on data collected during the research, development, and innovation
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the information encoded in our genome to better diagnose, treat, predict and prevent disease. From the individual patient with rare diseases, to the many thousands affected by complex, widespread illness, we
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letter of intent describing how your research experiences and interests are aligned with the lab The names and contact information for three references ---Emailed applications will not be considered
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handling of complex data. Experience of scRNAseq experiments and data analysis is a merit. Experience in isolation, in vitro culturing and functional assays of primary immune cells is a requirement, as is
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data. Together with the Artificial Intelligence and Cancer Evolution Division at the German Cancer Research Centre DKFZ, led by Moritz Gerstung, we have recently established a systematic spatial
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biogeochemical modelling and data-driven machine learning approaches at an ecosystem scale to improve our understanding of the fate of nitrogen fertilizers applied to agricultural soils. This understanding will be