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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.

If you are new to CHPC, the best place to start to get more information on CHPC resources and policies is our Getting Started page.

Upcoming Events:

CHPC Downtime: Tuesday March 5 starting at 7:30am

Posted February 8th, 2024


Two upcoming security related changes

Posted February 6th, 2024


Allocation Requests for Spring 2024 are Due March 1st, 2024

Posted February 1st, 2024


CHPC ANNOUNCEMENT: Change in top level home directory permission settings

Posted December 14th, 2023


CHPC Spring 2024 Presentation Schedule Now Available

CHPC PE DOWNTIME: Partial Protected Environment Downtime  -- Oct 24-25, 2023

Posted October 18th, 2023


CHPC INFORMATION: MATLAB and Ansys updates

Posted September 22, 2023


CHPC SECURITY REMINDER

Posted September 8th, 2023

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...

RhatVSsnp_1 is a importance plot of the top 10,000 SNP pairs. These results were obtained in less than three days using the CHPC resources. Other methods would have required weeks or even months to obtain these results.

Using Computation to Sort Through Billions of Single-Nucleotide Polymorphism Pairs Rapidly

By Randall Reese1,2, Xiaotian Dai2, and Guifang Fu2

1Idaho National Laboratory, Department of Mathematics and Statistics, 2Utah State University

The interaction between two statistical features can play a pivotal role in contributing to the variation of the response, yet the computational feasibility of screening for interactions often acts as an insurmountable barrier in practice. We developed a new interaction screening procedure which is significantly more tractable computationally. Using the supercomputing resources of the CHPC, we were able to apply our method to a data set containing approximately 11 billion pairs of single nucleotide polymorphisms (SNPs). The goal of this analysis was to ascertain which pairs of SNPs were most strongly associated with the likelihood of a human female developing polycystic ovary syndrome. This distributed computing process allowed us to select in just over two days a set of around 10,000 SNP interaction pairs which factor most strongly into the response.  What may have previously taken several weeks (or months) to obtain now took less than three days. We concluded our analysis by using an implementation of multi-factor dimension reduction (MDR) on the previously aforementioned results.

System Status

General Environment

last update: 2024-04-26 22:33:02
General Nodes
system cores % util.
kingspeak 698/972 71.81%
notchpeak 2922/3212 90.97%
lonepeak 3088/3140 98.34%
Owner/Restricted Nodes
system cores % util.
ash 1152/1152 100%
notchpeak 17847/18328 97.38%
kingspeak 1429/5340 26.76%
lonepeak 0/416 0%

Protected Environment

last update: 2024-04-26 22:30:04
General Nodes
system cores % util.
redwood 41/616 6.66%
Owner/Restricted Nodes
system cores % util.
redwood 1342/6280 21.37%


Cluster Utilization

Last Updated: 2/20/24