90 molecular-modeling-or-molecular-dynamic-simulation Postdoctoral positions at University of Washington
Sort by
Refine Your Search
-
liver resection and transplant. We use multidisciplinary approaches including in vitro and in vivo models of I/R injury, biochemical and genetic analysis, transcriptomics, imaging with live cells and
-
, innovative, and collaborative individual to join our interdisciplinary research group. The successful candidate will conduct original research in biophysical modeling and live-cell fluorescence microscopy
-
. Instructions Please submit the following documents via Interfolio: Cover letter which includes 1-2 pages explaining your research experience and future goals. Please note your experience in molecular genetics
-
to advance our collaborations and develop the next generation of molecular assays and point of care collection devices. We are seeking a scientist who is self-motivated, well organized, and experienced
-
), positron emission tomography (PET), functional MRI (fMRI), electroencephalography (EEG), behavior, genetics, and proteomics using advanced quantitative modeling techniques and artificial intelligence
-
urban structure metrics since 2000. 2. Assess the Effects of 3-D Urban Structure on Extreme Humid Heat: Analyze variations in humid heat using Landsat thermal bands, MODIS, and humidity data, modeling
-
anatomy, biochemistry, molecular biology, microbiology, biostatistics, epidemiology, behavioral science (both basic and applied), public health, dental hygiene, education, law, medicine, and clinical
-
, tumor immunology organotypic in-vitro models, genetically engineered animal models and human tissues from clinical trials. All these approaches are brought to bear on impactful questions in tumor
-
modeling. The lab houses a state of the art mass spectrometry facility that specializes in metabolomics measurements of marine microbes and microbial communities. The successful candidate will work within a
-
accuracy in link-tracing designs (e.g. Respondent driven sampling) Partial graph data collection strategies for networks (e.g. Aggregated Relational Data) Large scale models for anomaly detection on graphs