Welcome to the home of the University of Michigan's School of Information on the Web.  To learn about the accessibility features of this site use accesskey 0 or use the following link: ACCESSIBILITY
| | | | Some of the links on this page may link to PDF files. Use this link to download Adobe Acrobat Reader →. Adobe also offers a free utility which can convert PDF files to text or HTML →. |
School of Information |
University of Michigan |

Connecting People, Information and Technology in More Valuable Ways
About SIAbout SI | ApplyingApplying | MSI DegreeMSI Degree | Ph.D.Ph.D. | PeoplePeople | ResearchResearch | CareersCareers | FieldworkFieldwork | Student LifeStudent Life |




Information For ...

Home > About SI > News > Article

News of SI

Rackham presents Outstanding GSI Award to Libby Hemphill

(Feb 2008)  Doctoral student Libby Hemphill has been awarded an Outstanding Graduate Student Instructor Award for the 2007-08 academic year.

The award is presented annually to student instructors representing a wide cross-section of the University community. The award, sponsored by the Rackham School of Graduate Studies, will be presented at 4 p.m. April 10 in a ceremony at Rackham Amphitheatre. Hemphill will receive a certificate and a $1,000 stipend.

Hemphill holds a bachelor's degree in general studies in the humanities from the University of Chicago and an MSI from the School of Information. Her research interests are computer-mediated communication, learning sciences, and distributed work environments and communities. Her current research involves the study of the relationships among identity development, networks, and learning. Her advisor is Stephanie Teasley.




Visit the School of Information News Archive

Home > About SI > News > Article


Libby Hemphill

    Home | About SI | Applying | MSI Degree | Ph.D. |  People | Research | Careers | Fieldwork | Student Life  

|  CONTACT | SITE MAP | INTRANET | ACCESSIBILITY | SEARCH  

SI CONTACT INFORMATION | si.info@umich.edu
© 2009 Regents, University of Michigan