CHPC - Research Computing and Data Support for the University
In addition to deploying and operating high performance computational resources and providing advanced user support and training, CHPC serves as an expert team to broadly support the increasingly diverse research computing and data needs on campus. These needs include support for big data, big data movement, data analytics, security, virtual machines, Windows science application servers, protected environments for data mining and analysis of protected health information, and advanced networking.
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CHPC is reaching out to remind our users of their responsibility to understand what the software being used is doing, especially software that you download, install, or compile yourself. Read More...News History...
An Agent-Based Model for Estimating Human Activity Patterns on the Wasatch Front
By Albert M. Lund1,2, Nicole B. Burnett2,3, Ramkiran Gouripeddi1,2, and Julio C. Facelli1,2
1Department of Biomedical Informatics, 2Center for Clinical and Translational Science, 3Department of Chemistry, University of Utah
It is difficult to measure the impact of air quality on human health because populations are mobile. Additionally, air quality data is reported at low geographic resolutions (> 1 km2), which makes it difficult to characterize acute local variations in air quality. There are few examples of combining human movement and activity data with high resolution air quality data to capture trajectory based exposure profiles in a comprehensive way. An agent-based model helps simulate human activities and locations throughout an arbitrary day. Simulation is used to overcome the limitations of existing datasets; simulated households based on aggregate data for the state of Utah are modeled and activity profiles generated from the American Time Use Survey of the U.S. Bureau of Labor Statistics. The activity profiles are combined with the simulated households to build individual trajectories of activity and location over the desired region of study.
System Status
General Environment
General Nodes | ||
---|---|---|
system | cores | % util. |
kingspeak | 680/972 | 69.96% |
notchpeak | 3080/3212 | 95.89% |
lonepeak | 3044/3140 | 96.94% |
Owner/Restricted Nodes | ||
system | cores | % util. |
ash | 1152/1152 | 100% |
notchpeak | 17888/18328 | 97.6% |
kingspeak | 1305/5340 | 24.44% |
lonepeak | 0/416 | 0% |
Protected Environment
General Nodes | ||
---|---|---|
system | cores | % util. |
redwood | 40/616 | 6.49% |
Owner/Restricted Nodes | ||
system | cores | % util. |
redwood | 1126/6280 | 17.93% |