72 distributed-computing-associate-professor Postdoctoral positions at Stanford University
Sort by
Refine Your Search
-
availability, and internal equity. Pay Range: $85,000-$90,000 The Stanford Digital Economy Lab seeks a Postdoctoral Fellow: The position will have a priority project led by Professor Erik Brynjolfsson and the
-
Education Postdoctoral (E3) Fellowship Program trains the next generation of scholars to conduct research toward equitable, impactful, and sustainable early childhood care and education systems. Why the E3
-
internal equity. Pay Range: 76,383-86,383 Our lab investigates the functional principles, development, and computational properties of organism-wide circuits for brain-body interactions. We
-
the scope and impact of our studies. Current research themes include: The impact of GLP-1 receptor agonists on metabolic outcomes and surgical decision-making in bariatric patients Computer vision analysis
-
interest in translational science. The postdoctoral fellow will work closely with Dr. Vivek Charu and Dr. Brooke Howitt. Required Qualifications: PhD in Biostatistics, Bioinformatics, Computational Biology
-
for recent MD and PhD graduates who are passionate about leveraging computational methods to transform trauma and acute care surgery. Fellows will work at the intersection of clinical medicine, data
-
programming background Experience in computer vision projects Experience in software or webapp development/API integration Interest (but not necessarily expertise) in medicine and radiotherapy Required
-
, single cell sequencing, and RNA-seq. Knowledge in bioinformatics for the analysis of sequencing data is preferred. The intent of these studies is to determine the immunogenicity of tumor associated
-
availability, and internal equity. Pay Range: $80,826 to $90,826 per annum The epidemiology of ultrafine particles emitted from gas appliances The Stanford Electrification for Health program, based
-
thermodynamic, kinetic, and transport phenomena. - Optimize the design and control of electrified processes to effectively manage the heterogeneous and dynamic feed compositions associated with non-traditional