Sort by
Refine Your Search
-
integration, large-scale mobility modeling, and translating advanced systems methods into operational tools used by cities, MPOs, and state DOTs. Position Overview The Postdoctoral Associate will lead and
-
privacy-protecting large-scale tutoring multimodal datasets to generate actionable insights. Experimental or quasi-experimental analysis of effective tutoring moves that support student motivation
-
. The incumbent will join a research group led by Dr. Dena J. Clink to develop, evaluate, and apply quantitative methods for large-scale biodiversity monitoring and conservation. The research will leverage existing
-
at Cornell University is seeking a Postdoctoral Associate to advance research on maize and grass molecular diversity using genomic large language models (AI). The goal is to design nitrogen-efficient maize
-
. The incumbent will join a research group led by Dr. Dena J. Clink to develop, evaluate, and apply quantitative methods for large-scale biodiversity monitoring and conservation. The research will leverage existing
-
Blockchain powered Climate Actions in Transportation (CAT-Chain) ecosystems. This position is ideal for candidates interested in research–practice integration, large-scale mobility modeling, and translating
-
innovations and best practices for analyzing tutoring data at scale. NTO research encompasses (but is not limited to) identifying effective tutoring practices, running experiments on AI tutors in simulated and
-
Description The Buckler/Romay Lab at Cornell University is seeking a Postdoctoral Associate to advance research on maize and grass molecular diversity using genomic large language models (AI). The goal is to
-
. The Postdoctoral Associate will contribute to quantifying the private value of improved soil health across the U.S. using econometric techniques and combination of large-scale datasets. The start date
-
Deadline: none (posted 2026/01/21 05:00 AM, updated 2026/01/20) Position Description: Apply Position Description Postdoctoral Associate in large-scale computing for water-energy systems Dr. Galelli’s