Sort by
Refine Your Search
-
Listed
-
Category
-
Program
-
Field
-
diffraction, electron diffraction, spectroscopy, electron microscopy, porosity analysis. Application of these materials for water purification purposes. Writing of manuscript, review article, and grant
-
, genetically engineered mice, in vivo calcium fluorimetry, rodent behavior, imaging, molecular biology, and analysis of oral cancer specimens. Applicants need not have experience in all areas, as expertise is
-
independently, from problem formulation, experimental design, and system integration to data analysis and reporting. The candidate will work in a multidisciplinary environment consisting of PhD-level scientists
-
, collaboration and advocacy, relationship issues and selfawareness, and the practice principles of both crisis and extended intervention are taught. A social work laboratory component provides students with
-
, analysis, and presentation skills; High attention to detail; Strong desk-based research skills; Excellent written and verbal communication skills in both English and Chinese; Ability to work independently as
-
also be opportunities to contribute to numerical simulations and formal asymptotic analysis. The project will involve tools from: Spectral theory and functional analysis, Dynamical systems and modulation
-
ofstrategicpriorities and projects to actively help drive their successful advancement. They will be responsible for conducting rigorous analysis, collaborating with diverse stakeholders to define actionable strategies
-
, etc.) of assorted materials (wood, ceramic tiles, concrete, stone, glass, plexiglass formica, metal, etc.). Responsibilities Required Education: High School diploma or equivalent Preferred Education
-
development using highly interdisciplinary approaches grounded on stem cell biology, genome editing, tissue engineering, gene expression analysis, and quantitative high resolution imaging analysis. The ideal
-
health and medicine, t-tests, Analysis of Variance, multiple linear and logistic regression, categorical data analysis, and survival analysis. Statistical topics are presented conceptually with little