Sort by
Refine Your Search
-
Listed
-
Category
-
Country
-
Program
-
Field
-
New York University in Abu Dhabi, Mathematics/Science Position ID: NYUAbuDhabi-ANALYSIS_AND_PDE_POSTDOC [#27534] Position Title: Position Type: Postdoctoral Position Location: Abu Dhabi, Abu Dhabi
-
focused area of research activity in multiple myeloma and related plasma cell disorders. The candidate should have significant clinical and/or translational research. The candidate will be expected
-
Plasma Physics Lab and in the Physics, Geosciences, and Mechanical and Aerospace Engineering Departments, and at the nearby Institute for Advanced Study. The expected start date is September 1, 2026
-
funding. Appointment Start Date: Fall 2025 Group or Departmental Website: https://hph.stanford.edu/careers (link is external) How to Submit Application Materials: Submit all application materials
-
, candidates with prior experience in theoretical physics, fluid mechanics, kinetic theory, dispersive equations or harmonic analysis will be given special attention. The Postdoctoral Associates will be
-
of engineering, physical sciences, and mathematics. Pay and Benefits Fixed Pay Rate: $61,008 Please visit the Benefits for Postdoctoral Candidates website for more information regarding benefit eligibility
-
, ion beams, or related fields) Strong skills in experimental instrumentation Experience in laser optics and/or plasma physics or charged particle beams is an asset Autonomy, scientific rigor, and ability
-
UiO/Anders Lien 22nd April 2026 Languages English English English Postdoctoral fellowship at the Department of Immunology Apply for this job See advertisement About the position A 3-year
-
Inductively Coupled Plasma Mass Spectrometer (MC-ICP-MS) would be preferable. Experience Work requires minimum PhD in Environmental Geochemistry of 4-5 years with possible (but not required) postdoctoral
-
://postdoc.wustl.edu/prospective-postdocs-2/ . Lab website: https://cruchagalab.wustl.edu/ . Research Projects: Plasma, CSF and Brain Proteomic analysis. Biomarker identification through the use of machine learning