Quantitative Modeling
quantitative modeling
N/A
The Allen Institute is searching for a visionary leader to direct its new Center for Data-Driven Discovery, Studio D3. Studio D3 develops and applies cutting-edge theoretical models, analytical frameworks, and scalable computational methods to extract principles that govern biology from multimodal biological data. The Allen Institute has collected and openly shared some of the largest datasets in life sciences. By integrating computation, data science, and quantitative modeling into the research ecosystem, Studio D3 helps drive discovery across diverse biological disciplines.
SARC-CoV-2 modeling: What have we learned from this pandemic about how (not) to model disease spread?
The SARS-CoV-2 pandemic is awash in data, including daily, spatially-resolved COVID case data, virus sequence data, patients `omics data, and mobility data. Journals are now also awash in studies that make use of quantitative modeling approaches to gain insight into the geographic spread of SARS-CoV-2 and its temporal dynamics, as well as studies that predict the impact of control strategies on SARS-CoV-2 circulation. Some, but by no means all, of these studies are informed by the massive amounts of available data. Some, but by no means all, of these studies have been useful — in that their predictions revealed something beyond simple back of the envelope calculations. To summarize some of these findings, in this symposium, we will address questions such as: What do we want from models of disease spread? What can and should be predicted? Which data are the most useful for predictions? When do we need mechanistic models? What have we learned about how to model disease spread from unmet and/or conflicting predictions? The workshop speakers will explore these questions from different perspectives on what data need to be considered and how models can be evaluated. As at other TMLS workshops, each speaker will deliver a 10-minute talk with ample time set aside for moderated questions/discussion. We expect the talks to be provocative and bold, while respecting different perspectives.
Quantitative modeling of the emergence of macroscopic grid-like representations
Bernstein Conference 2024