Sort by
Refine Your Search
-
of at least some of the following: – Extensive independent research experience – Creativity and independence – Experience analyzing hyperspectral data and developing machine learning models - Genetic
-
commitment to serving as role models for younger generations. The For Women in Science program was created out of a simple belief: the world needs science, and science needs women because women in science have
-
death, cancer, toxicology, environmental exposures), Zhi-Min Yuan (genetic engineered mouse models, p53, lung fibrosis). Together, we investigate mechanisms of disease that arise from environmental
-
and Machine Learning, with a focus on studying geometric structures in data and models and how to leverage such structure for the design of efficient machine learning algorithms with provable guarantees
-
uses quasi-experimental methods to identify causal effects and test the predictions of economic and sociological models. Examples of current research projects include: long-term impacts of neighborhoods
-
economic recession and recovery . Much of the team’s ongoing research uses quasi-experimental methods to identify causal effects and test the predictions of economic and sociological models. Examples
-
2024 Robert Lampe, Ph.D. Quantifying and modeling micronutrient utilization in marine eukaryotic phytoplankton Woods Hole Oceanographic Institution, laboratory of Mak Saito Jiarui Liu, Ph.D
-
to appoint one or more postdoctoral fellows beginning in Summer 2025. We are looking for candidates with interests in the use ultracold quantum gases on optical lattices to simulate models from condensed
-
techniques drawn from functional genetics, developmental biology, comparative genomics, and eco-evo-devo, using several different arthropod species as laboratory model organisms. The opening is for a
-
be involved in a process-based biosphere modeling study of tropical forests. The goal of the research project is to identify and characterize the underlying drivers of differences in the ways in which