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Announcing our Third Call for Proposals:

AI to Transform Cybersecurity and Secure Critical Infrastructure

It is anticipated that up to USD $10 million in Research Awards will be awarded from this Call for Proposals. Proposals can request funding of USD $100,000 to $1,000,000 for an initial period of one (1) year.

C3DTI will also make available up to USD $2 million in Azure Cloud computing resources, supercomputing resources at UIUC’s NCSA and LBNL’s NERSC, and free, unlimited access to the C3 AI Suite hosted on the Microsoft Azure Cloud. 

**** We will be offering a virtual session with information on the CFP including an opportunity to ask questions early in January. Please keep an eye out on you email and this wiki page for more information. ****

Proposals are Due February 7, 2022

Awards will be made in March 2022 with start dates of around June 1, 2022

Announcements

  • Colloquium on Digital Transformation Science
  • January 14, 3 pm CT

    A Bayesian Hierarchical Network for Combining Heterogeneous Data Sources in Medical Diagnoses, with Applications to COVID-19

    Claire Donnat, Assistant Professor, Department of Statistics, University of Chicago

    REGISTER FOR ZOOM WEBINAR

    The increasingly widespread use of affordable, yet often less reliable medical data and diagnostic tools poses a new challenge for the field of Computer-aided Diagnosis: How can we combine multiple sources of information with varying levels of precision and uncertainty to provide an informative diagnosis estimate with confidence bounds? Motivated by a concrete application in lateral flow antibody testing, we devise a Stochastic Expectation-Maximization algorithm that allows the principled integration of heterogeneous and potentially unreliable data types. Our Bayesian formalism is essential in (a) flexibly combining these heterogeneous data sources and their corresponding levels of uncertainty, (b) quantifying the degree of confidence associated with a given diagnostic, and (c) dealing with the missing values that typically plague medical data. We quantify the potential of this approach on simulated data, and showcase its practicality by deploying it on a real COVID-19 immunity study.

    Claire Donnat is an Assistant Professor in the Department of Statistics at the University of Chicago. Her work focuses on high-dimensional and Bayesian statistics and their applications to biomedical data. Prior to the University of Chicago, Donnat completed her PhD in Statistics at Stanford University, where she was advised by Professor Susan Holmes.


    Quick Links:

    C3.ai DTI Webpage

    Events

    Information on Call for Proposals

    Proposal Matchmaking

    C3.ai DTI Training Materials (password protected)

    C3 Administration (password protected)


    Have Questions? Please contact one of us:



    Recent space activity

    Recently Updated
    typespage, comment, blogpost
    max5
    hideHeadingtrue
    themesocial

    Space contributors

    Contributors
    modelist
    scopedescendants
    limit5
    showLastTimetrue
    orderupdate