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Innovative Computing

Harvard
Taon2010
Tagal16h 26m

The Initiative in Innovative Computing (IIC) was proposed by a group of scientists from the Faculty of Arts and Sciences and the Medical School at Harvard in response to the solicitation for ideas made by the Task Force on Science and Technology, chaired by Provost Steve Hyman, in 2004. A whitepaper was prepared, and in 2005 the Initiative was selected to go forward. The IIC's offices opened in spring 2006, and its first projects were selected that summer. Several of those projects continue at Harvard and at Massachusetts General Hospital as sponsored research. During its final year, 2009-10, the IIC's seminars and a subset of the projects were adopted by the Harvard School of Engineering and Applied Sciences.

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Mga Komento

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