Quality assurance of curricula through the use of an integrated framework for programme validation.

Conference paper


Mitchell, I., Sheriff, M. and Georgiadou, E. 2008. Quality assurance of curricula through the use of an integrated framework for programme validation. Tempus JEP-27178-2006, Dissemination Workshop.. Yerevan, Armenia Sep 2008
TypeConference paper
TitleQuality assurance of curricula through the use of an integrated framework for programme validation.
AuthorsMitchell, I., Sheriff, M. and Georgiadou, E.
Research GroupArtificial Intelligence group
ConferenceTempus JEP-27178-2006, Dissemination Workshop.
Publication process dates
Deposited29 Apr 2009
Output statusPublished
LanguageEnglish
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