www.cac.cornell.edu Open in urlscan Pro
128.84.8.153  Public Scan

Submitted URL: http://www.cac.cornell.edu//technologies//aiml.aspx
Effective URL: https://www.cac.cornell.edu//technologies//aiml.aspx
Submission: On September 03 via api from US — Scanned from DE

Form analysis 2 forms found in the DOM

Name: gsGET https://web.search.cornell.edu/search

<form action="https://web.search.cornell.edu/search" method="GET" name="gs">
  <div id="search-input">
    <label for="search-form-query">SEARCH:</label>
    <input type="text" name="q" value="" size="20" maxlength="256" id="search-form-query">
    <input type="submit" name="btnG" value="go" id="search-form-submit">
    <input type="hidden" name="output" value="xml_no_dtd">
    <input type="hidden" name="sort" value="date:D:L:d1">
    <input type="hidden" name="ie" value="UTF-8">
    <input type="hidden" name="client" value="default_frontend">
    <input type="hidden" name="oe" value="UTF-8">
    <input type="hidden" name="site" value="default_collection">
    <input type="hidden" name="proxystylesheet" value="default_frontend">
  </div>
  <div id="search-filters">
    <input type="radio" name="sitesearch" value="www.cac.cornell.edu" checked="checked" id="search-filters1">
    <label for="search-filters1">CAC</label>
    <input type="radio" name="sitesearch" value="" id="search-filters2">
    <label for="search-filters2">Cornell</label>
  </div>
</form>

Name: aspnetFormPOST ./aiml.aspx

<form name="aspnetForm" method="post" action="./aiml.aspx" id="aspnetForm">
  <div>
    <input type="hidden" name="__VIEWSTATE" id="__VIEWSTATE" value="/wEPDwUKMjEwNDQyMTMxM2Rk73Zon+c8bDqWQneXrTRIVrdR4N3MZopPkF1Lqkho9AY=">
  </div>
  <div>
    <input type="hidden" name="__VIEWSTATEGENERATOR" id="__VIEWSTATEGENERATOR" value="DC5F003A">
  </div>
  <!-- BEGIN SECTION NAV -->
  <!--
		The section-navigation div contains the second level of site navigation.
		These links appear at the top of the left sidebar of the two-column page.
	-->
  <div id="section-navigation">
    <ul>
      <li><a href="default.aspx">Overview</a></li>
      <li><a href="aiml.aspx">AI/ML</a></li>
      <li><a href="cloud.aspx">Cloud Computing</a></li>
      <li>
        <a href="database.aspx">Data Management</a>
      </li>
      <li><a href="webservices.aspx">Web Services</a></li>
      <li>
        <a href="links.aspx">Technology Links</a>
      </li>
    </ul>
  </div>
  <!-- END SECTION NAV -->
  <hr class="CU">
  <!-- BEGIN MAIN -->
  <div id="main">
    <h2> Artificial Intelligence/Machine Learning </h2>
    <div class="main-photo-small-left">
      <img src="images/AI.jpg" style="width:200px;" "alt="">
</div>
    <p>Cornell is a <a href=" https://provost.cornell.edu/academic-initiatives/radical-collaboration/artificial-intelligence/">recognized leader in AI</a>. Cornell researchers depend on CAC systems and consulting to enable AI and ML application
      innovations. See our <a href="/technologies/CAC_AI-ML_Service_poster.pdf">AI/ML Services poster</a> and <a href="/technologies/CAC_AI-ML_Services_presentation.pdf">AI/ML Services presentation</a> to learn more. Below are a few examples of
      CAC-supported projects.</p>
      <br clear="all">
      <ul>
        <li><a href="https://dyson.cornell.edu/faculty-research/faculty/mtm83/">Matt Marx</a>, Dyson, uses CAC systems to link patents to academic articles to understand the scientific heritage of innovation. Marx has used Red Cloud and plans to use
          a new CAC system that spawns 8 64-core AMD EPYC nodes in a virtual cluster. Marx has combined hand-tuned heuristics and the GROBID machine-learning package to achieve much higher performance than machine learning alone.</li>
        <li><a href="https://stat.cornell.edu/people/field-faculty/amy-kuceyeski">Amy Kuceyeski</a>, Professor of Mathematics in Neuroscience at the Feil Family Brain &amp; Mind Research Institute at WCM helped to organize an Intercampus Symposium on
          Machine Learning in Medicine and, most recently, ran a 128-core instance in Red Cloud for over two weeks to support her research in quantitative neuroimaging of neurological disorders.</li>
        <li><a href="https://chemistry.cornell.edu/robert-distasio-jr">Robert A. DiStasio Jr.</a>, Chemistry &amp; Chemical Biology, runs simulations and machine learning on molecular properties and chemical reactions using the POOL Cluster built and
          maintained by CAC. A Slurm partition provides access to large-memory nodes; the largest has 1.5TB RAM and 7TB scratch.</li>
        <li><a href="https://www.eas.cornell.edu/faculty-directory/sara-c-pryor">Sara C. Pryor</a>, Earth &amp; Atmospheric Sciences, leveraged CAC's $8.2 million NSF-funded Aristotle cloud computing project. Pryor's use case and 6 others from
          Cornell, UB, and UCSB resulted in 147 publications during the life of the project. Pryor is now investigating whether ML can improve the forecasting of wind gust occurrence and magnitude.</li>
        <li><a href="https://www.cs.cornell.edu/gomes/">Carla Gomes</a> and <a href="https://www.cs.cornell.edu/selman/">Bart Selman</a>, CS, lead the Institute for Computational Sustainability whose multidisciplinary researchers use the Institute's
          ATLAS2 HPC Cluster to develop constraint optimization, machine learning, and dynamical models for computational sustainability.</li>
        <li><a href="https://www.ece.cornell.edu/faculty-directory/ziv-goldfeld">Ziv Goldfeld</a>, Electrical &amp; Computer Engineering, is providing first-of-a-kind performance guarantees for neural estimates of statistical distances that may lead
          to advances in machine learning. Goldfeld uses the Red Cloud platform.</li>
        <li><a href="https://www.engineering.cornell.edu/faculty-directory/guy-hoffman">Guy Hoffman</a>, Mechanical &amp; Aerospace Engineering, uses Red Cloud to train ML models for robot perception in the context of Human-Robot Interaction.</li>
        <li><a href="https://business.cornell.edu/faculty-research/faculty/mnc35/">Murillo Campello</a>, Johnson, is proposing a machine learning approach to Merger &amp; Acquisition outcome prediction using Red Cloud computing and storage.</li>
        <li><a href="https://www.vet.cornell.edu/parminder-s-basran-phd-fccpm">Parminder Basran</a>, Veterinary Medicine Clinical Sciences, has a keen interest in ML methods in radiation oncology. CAC prepared scripts and demoed how MATLAB PCT works
          on a local machine and Red Cloud, and provided workflow integration advice.</li>
        <li><a href="https://physics.cornell.edu/eun-ah-kim">Eun-Ah Kim</a>, Physics, pioneered applying machine learning to quantum matter data. CAC built a Docker container and the Kim Group ran over 1 million hours on Red Cloud. CAC also
          previously maintained a cluster with GPUs.</li>
      </ul>
      <i>Image designed by <a href="https://www.freepik.com/starline">Starline</a></i>
    </div>
    <!-- END MAIN -->
    <hr class="CU">
</form>

Text Content

Skip to main content

--------------------------------------------------------------------------------

Cornell University Center for Advanced Computing (CAC)
SEARCH:
CAC Cornell
 * Home
 * About
 * Clients
 * Services
 * Technologies
 * TechDocs
 * Training
 * Events
 * I-WRF

--------------------------------------------------------------------------------


TECHNOLOGIES


CAC


WE ENABLE YOUR SUCCESS

--------------------------------------------------------------------------------

 * Overview
 * AI/ML
 * Cloud Computing
 * Data Management
 * Web Services
 * Technology Links

--------------------------------------------------------------------------------


ARTIFICIAL INTELLIGENCE/MACHINE LEARNING



Cornell is a recognized leader in AI. Cornell researchers depend on CAC systems
and consulting to enable AI and ML application innovations. See our AI/ML
Services poster and AI/ML Services presentation to learn more. Below are a few
examples of CAC-supported projects.


 * Matt Marx, Dyson, uses CAC systems to link patents to academic articles to
   understand the scientific heritage of innovation. Marx has used Red Cloud and
   plans to use a new CAC system that spawns 8 64-core AMD EPYC nodes in a
   virtual cluster. Marx has combined hand-tuned heuristics and the GROBID
   machine-learning package to achieve much higher performance than machine
   learning alone.
 * Amy Kuceyeski, Professor of Mathematics in Neuroscience at the Feil Family
   Brain & Mind Research Institute at WCM helped to organize an Intercampus
   Symposium on Machine Learning in Medicine and, most recently, ran a 128-core
   instance in Red Cloud for over two weeks to support her research in
   quantitative neuroimaging of neurological disorders.
 * Robert A. DiStasio Jr., Chemistry & Chemical Biology, runs simulations and
   machine learning on molecular properties and chemical reactions using the
   POOL Cluster built and maintained by CAC. A Slurm partition provides access
   to large-memory nodes; the largest has 1.5TB RAM and 7TB scratch.
 * Sara C. Pryor, Earth & Atmospheric Sciences, leveraged CAC's $8.2 million
   NSF-funded Aristotle cloud computing project. Pryor's use case and 6 others
   from Cornell, UB, and UCSB resulted in 147 publications during the life of
   the project. Pryor is now investigating whether ML can improve the
   forecasting of wind gust occurrence and magnitude.
 * Carla Gomes and Bart Selman, CS, lead the Institute for Computational
   Sustainability whose multidisciplinary researchers use the Institute's ATLAS2
   HPC Cluster to develop constraint optimization, machine learning, and
   dynamical models for computational sustainability.
 * Ziv Goldfeld, Electrical & Computer Engineering, is providing first-of-a-kind
   performance guarantees for neural estimates of statistical distances that may
   lead to advances in machine learning. Goldfeld uses the Red Cloud platform.
 * Guy Hoffman, Mechanical & Aerospace Engineering, uses Red Cloud to train ML
   models for robot perception in the context of Human-Robot Interaction.
 * Murillo Campello, Johnson, is proposing a machine learning approach to Merger
   & Acquisition outcome prediction using Red Cloud computing and storage.
 * Parminder Basran, Veterinary Medicine Clinical Sciences, has a keen interest
   in ML methods in radiation oncology. CAC prepared scripts and demoed how
   MATLAB PCT works on a local machine and Red Cloud, and provided workflow
   integration advice.
 * Eun-Ah Kim, Physics, pioneered applying machine learning to quantum matter
   data. CAC built a Docker container and the Kim Group ran over 1 million hours
   on Red Cloud. CAC also previously maintained a cluster with GPUs.

Image designed by Starline

--------------------------------------------------------------------------------



--------------------------------------------------------------------------------


© 2024 Cornell University | Cornell University Center for Advanced Computing |
Copyright Statement | Contact