-
the mentorship of Prof. Michael McWilliams. This position provides opportunities to collaborate with the Department’s interdisciplinary faculty —including economists, physicians, statisticians, and social
-
for analysis of large-scale whole genome genetic and genomic and phenotype data. Examples include large Whole Genome Sequencing association studies, biobanks, single-cell and CRISPR multiome data, integrative
-
the mentorship of Prof. Michael McWilliams. This position provides opportunities to collaborate with the Department’s interdisciplinary faculty —including economists, physicians, statisticians, and social
-
domain-specific foundation models that support tasks such as forecasting, interpolation/extrapolation, downscaling, and “what-if” scenario analysis relevant to climate-related health risks and adaptation
-
who have recently completed their doctoral degree – typically within the five previous years. Postdoctoral awards are available in STEM fields, the arts, humanities, and social sciences, and are
-
the generation of iPS cells. -Embryo manipulation/in vitro fertilization techniques. -Developmental neuroscience. -The biology of aging. -Preparation and analysis of next generation sequencing studies
-
astrophysics, exotic core-collapse supernovae, and machine learning methods for time series analysis. A PhD in Physics, Astronomy, or a closely related field is required. The position will entail work on a
-
Science, Computer Science, Applied Mathematics, Engineering and Physics. Additional Qualifications Expertise (or desire to work) in reduced order modeling, Causal inference and High Performance Computing
-
from senior scientists who know your work. PLEASE NOTE- Applications MUST be submitted to the Harvard Academic Positions website in order to be considered. https://academicpositions.harvard.edu/postings
-
Floquet topological phases, Majorana fermions, topological charge fractionalization, topological order and non-abelian anyons. Our group members have backgrounds in topological physics and theory, knowledge