Grants Database

The Foundation awards approximately 200 grants per year (excluding the Sloan Research Fellowships), totaling roughly $80 million dollars in annual commitments in support of research and education in science, technology, engineering, mathematics, and economics. This database contains grants for currently operating programs going back to 2008. For grants from prior years and for now-completed programs, see the annual reports section of this website.

Grants Database

Grantee
Amount
City
Year
  • grantee: Fund for the City of New York
    amount: $810,000
    city: New York, NY
    year: 2018

    To provide partial support for the Sloan Public Service Awards program

    • Program
    • Investigator Mary McCormick

    Each year since 1973, the Sloan Public Service Awards have recognized six outstanding civil servants out of the hundreds of thousands who work for New York City government. The Fund for the City of New York manages the nomination and selection process and refers to the awards as “the Nobel Prizes of Government…, the highest award that can be bestowed upon a New York City public servant.” Nominated by their colleagues and selected by a blue-ribbon panel of distinguished New Yorkers, each of the six winners receives a $10,000 cash prize and is honored at individual celebrations at their workplaces and at a citywide celebration at the Cooper Union. This grant continues the Foundation’s long support of the Sloan Public Service Awards with funding for an additional three years.

    To provide partial support for the Sloan Public Service Awards program

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  • grantee: University of Nebraska, Omaha
    amount: $449,423
    city: Omaha, NE
    year: 2018

    To advance understanding of open source project health and sustainability and how people and organizations prosper from open source work

    • Program Technology
    • Sub-program Data & Computational Research
    • Investigator Matt Germonprez

    This grant supports research by information scientists Matt Germonprez (University of Nebraska) and Sean Goggins (University of Missouri) to develop and test rubrics for the evaluation of the health of online, open source development communities. Building on previous work that resulted in the successful Community Health Analytics for Open Source Software (CHAOSS) project and using a rich dataset drawn from GitHub and other sources, Germonprez and Goggins will investigate how definitions of the health of an online community might rightly vary depending on the type of community in question or type of project being jointly developed, how the injection of money into an online development community influences individual contributor behavior, and how individual decisions by contributors impact overall community health.

    To advance understanding of open source project health and sustainability and how people and organizations prosper from open source work

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  • grantee: University of Minnesota
    amount: $526,438
    city: Minneapolis, MN
    year: 2018

    To launch and expand a cross-institutional staffing model for curating disciplinary research data

    • Program Technology
    • Sub-program Data & Computational Research
    • Investigator Lisa Johnston

    One crucial component of the current and future data workforce is the data curators who steward and curate research data in the interests of reproducibility and reuse. Academic libraries seeking to increase data curation support face a structural problem, however: it’s simply not possible to hire an expert data curator for every discipline. From 2016 to 2018, seed funding from the Sloan Foundation was used to plan a network that could facilitate the sharing of disciplinary data curation expertise across a cohort of partner universities. Funds from this grant support the launch and expansion of this Data Curation Network over the next three years. Initial participating institutions include Cornell; Duke; Johns Hopkins; Penn State; and the universities of Minnesota, Michigan, and Illinois at Urbana Champaign. The grant will support a modest amount of each participating data curator’s time, a network coordinator to be based at the University of Minnesota under the supervision of principal investigator Lisa Johnston, annual meetings of the network, and a business consultant to test business models and plan for sustainability beyond the funded launch period.

    To launch and expand a cross-institutional staffing model for curating disciplinary research data

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  • grantee: University of Pittsburgh
    amount: $582,852
    city: Pittsburgh, PA
    year: 2018

    To develop software and services for transforming mathematical results as they appear in journal article abstracts into formally structured data that machines can read, process, search, check, compute with, and learn from as logical statements

    • Program Technology
    • Sub-program Scholarly Communication
    • Investigator Thomas Hales

    Computers do nothing but process logical statements. Mathematics consists of nothing but such statements. It would be reasonable to assume, then, that computers would be adept, perhaps uniquely, at reading, understanding, and cataloging the academic literature of mathematics. Not yet. People and machines, it turns out, speak different mathematical languages. If computers are to help manage mathematical knowledge, they need to be taught how to read math papers. The grant funds efforts by mathematician Thomas Hales to begin that instruction. Hales has raised an international army of graduate students and postdoctoral researchers, which he plans to unleash on the abstracts of thousands of mathematical papers. They will carefully translate the definitions and results that appear in these abstracts into formal programming language. These formalized abstracts—“fabstracts,” for short—can then be used to train machine learning algorithms to “read” textual mathematics.   

    To develop software and services for transforming mathematical results as they appear in journal article abstracts into formally structured data that machines can read, process, search, check, compute with, and learn from as logical statements

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  • grantee: National Bureau of Economic Research, Inc.
    amount: $241,690
    city: Cambridge, MA
    year: 2018

    To build a research community on the economics of science by holding regular conferences and by other community-building activities

    • Program Research
    • Initiative Economic Analysis of Science and Technology (EAST)
    • Sub-program Economics
    • Investigator Paula Stephan

    This grant supports the launch and operation of a new working group at the National Bureau of Economic Research (NBER) dedicated to studying the “economics of science.” Led by Paula Stephan, the group will bring together top flight economists to share existing work and findings, identify new areas for research, examine methodological and data issues, and commission new research. Topics include incentives in the current system, how the structure of grants and review systems affects scientific risk taking, the costs and efficiencies of different research funding models, how to judge scientific quality, and how to measure return on investment in basic and applied science. Along with four meetings of the working group, the grant will fund administrative and planning costs, support for small research grants, and partnerships between the working group and institutions like research universities or other science funders.

    To build a research community on the economics of science by holding regular conferences and by other community-building activities

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  • grantee: Duke University
    amount: $385,631
    city: Durham, NC
    year: 2018

    To launch an international summer school on Computational Social Science

    • Program Research
    • Initiative Empirical Economic Research Enablers (EERE)
    • Sub-program Economics
    • Investigator Christopher Bail

    This grant supports the expansion of a popular seminar on computational social science, run by Matthew Salganik of Princeton University and Christopher Bail of Duke University. The instructional program, which takes place over the summer, involves lectures, group problem sets, and participant-led research projects. The seminar also includes outside speakers who conduct computational social science research in academia, industry, and government. Topics covered include text as data, website scraping, digital field experiments, nonprobability sampling, mass collaboration, and ethics. Interest in the program has been robust, with more than 10 times as many applicants as available slots each year. Sloan funds will allow lectures and course content to be broadcast via interactive video to six new satellite locations, including City University of New York; Northwestern; University of Colorado, Boulder; Seattle; Helsinki; and Cape Town. Additional satellite sites may be added in future years.

    To launch an international summer school on Computational Social Science

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  • grantee: Harvard University
    amount: $327,033
    city: Cambridge, MA
    year: 2018

    To develop new statistical methods that improve both the identification of causal effects in observational studies as well as the generalizability of randomized experiments

    • Program Research
    • Sub-program Economics
    • Investigator Jose Zubizarreta

    Harvard econometrician Jose Zubizarreta is developing new statistical methods for the extraction of causal inferences from large datasets. His methods flexibly adjust for covariates in observational studies while also yielding more stable causal estimates. For part of the research, Zubizarreta will investigate formal and theoretical properties of these methods. His team, however, based as it is at a medical school, will also work on specific applications. These require, for example, developing a new framework for the design and analysis of observational studies with discontinuities, or developing new methods that improve the degree of control (covariate balance) and statistical efficiency of randomized experiments that enhance their generalizability. Zubizarreta plans to produce five peer-reviewed papers on these topics. In addition, all software, code, and examples will be produced in an open source programming language and made freely available, together with documentation and sample data, to the academic community and the public.

    To develop new statistical methods that improve both the identification of causal effects in observational studies as well as the generalizability of randomized experiments

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  • grantee: National Academy of Sciences
    amount: $250,000
    city: Washington, DC
    year: 2018

    To convene an international workshop that will plan global cooperation and coordination concerning Artificial Intelligence research and its applications

    • Program Research
    • Sub-program Economics
    • Investigator Gail Cohen

    This grant funds an initiative by the National Academy of Sciences (NAS) to join with peer institutions from around the world to launch international dialogue about policies governing artificial intelligence (AI) and automation. Partners include the National Academy of Engineering, the Canadian National Research Council, the Royal Society, the Royal Academy of Engineering, the Chinese Academy of Sciences, and the Chinese Academy of Engineering. Participants will include government officials, industry leaders, and academic researchers from many different countries in addition to the United States, U.K., China, and Canada. Topics to be addressed include national security, data use and privacy, and legal and intellectual property conundrums related to AI. Grant funds will partially support a workshop and associated webcast, a subsequent workshop report, and the creation and dissemination of supplementary resources for participants and the public.

    To convene an international workshop that will plan global cooperation and coordination concerning Artificial Intelligence research and its applications

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  • grantee: Yale University
    amount: $741,681
    city: New Haven, CT
    year: 2018

    To accelerate scientific discovery by using statistical machine learning to enable advanced search of mathematical literature

    • Program Technology
    • Sub-program Scholarly Communication
    • Investigator John Lafferty

    To accelerate scientific discovery by using statistical machine learning to enable advanced search of mathematical literature

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  • grantee: Nesta
    amount: $20,000
    city: London, United Kingdom
    year: 2018

    To hold a conference on experimental and evidence-based methods for studying discovery, innovation, and growth

    • Program Research
    • Sub-program Economics
    • Investigator Albert Bravo-Biosca

    To hold a conference on experimental and evidence-based methods for studying discovery, innovation, and growth

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