This article provides an overview of the design, implementation, revision and informal assessment of an information literacy curriculum embedded in a new University Foundations (UF) program at a mid-sized public university. The library information literacy sessions incorporated team-based learning and Process Oriented Guided Inquiry Learning (POGIL) elements using iPads. Each session provided students an opportunity to develop and apply information literacy skills, and included critical thinking questions which led students to think about underlying concepts. A focus group with the librarians assessed the UF library curriculum, its impact on student engagement, and the training activities for librarian teaching preparation.
BEK, Bergen Center for Electronic Arts, is a non-profit organization situated in Bergen, Norway, which main aim is to be a national resource centre for work within the field of arts and new technology. BEK works with both artistic and scientific research and development and puts into practice an amount of mixed artistic projects. It also practices an educational program that includes courses, workshops, talks and presentations. BEK runs its own server and hosts several mailing lists and web pages for cultural organizations, artists and artistic projects.
M. Griselda. International Journal of Trend in Scientific Research and Development, Special Issue (2nd International Congress of Engineering):
P26 - P32(октября 2017)
H. TARIQ, W. YANG, I. HAMEED, B. AHMED, и R. KHAN. IJIRIS:: International Journal of Innovative Research Journal in Information Security, Volume IV (Issue XII):
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