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Designed especially for neurobiologists, FluoRender is an interactive tool for multi-channel fluorescence microscopy data visualization and analysis.
Deep brain stimulation
BrainStimulator is a set of networks that are used in SCIRun to perform simulations of brain stimulation such as transcranial direct current stimulation (tDCS) and magnetic transcranial stimulation (TMS).
Developing software tools for science has always been a central vision of the SCI Institute.

Events on October 31, 2014

Jeffrey Anderson

Jeffrey Anderson, National Center for Atmospheric Research Presents:

Building State-of-the-Art Forecast Systems with the Ensemble Kalman Filter

October 31, 2014 at 2:00pm for 1hr
Evans Conference Room, WEB 3780Warnock Engineering Building, 3rd floor.

Abstract:

The development of numerical weather prediction was one of the great scientific and computational achievements of the last century. Computer models that approximate solutions of the partial differential equations that govern fluid flow and a comprehensive global observing network are two components of this prediction enterprise. An essential third component is data assimilation, the computational method that combines observations with predictions from previous times to produce initial conditions for subsequent predictions. The best present-day numerical weather prediction systems have evolved over decades and feature model-specific assimilation systems built with nearly a person century of effort.

This talk describes the development of a community software facility for ensemble Kalman filter data assimilation, the Data Assimilation Research Testbed (DART). DART can produce high-quality weather predictions but can also be used to build a comprehensive forecast system for any prediction model and observations. DART forecast systems must be inexpensive to implement and must run efficiently on computing platforms ranging from laptops to the largest available supercomputing. A description of the ensemble Kalman filter algorithm is followed by example applications with geophysical models. An overview of approaches for parallelizing the ensemble Kalman filter includes application of some classical scheduling algorithms.

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