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Bayh–Dole Act / Association of American Universities / Entrepreneurship / Invention / Centre for Innovation /  Research and Competence in the Learning Economy / Massachusetts Institute of Technology / Association of University Technology Managers / Technology / Technology transfer / 96th United States Congress
Date: 2013-03-26 05:19:32
Bayh–Dole Act
Association of American Universities
Entrepreneurship
Invention
Centre for Innovation
Research and Competence in the Learning Economy
Massachusetts Institute of Technology
Association of University Technology Managers
Technology
Technology transfer
96th United States Congress

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