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Odin L. Jurkowski – Rowman & Littlefield Publishers, 2024
For school librarians, technology is an essential component of their work. To meet the growing need in this area, Odin Jurkowski first wrote Technology and the School Library in 2006. To address the technological advancements, Jurkowski provides an overview of the types of technologies used in school libraries, from traditional low-tech options to…
Descriptors: School Libraries, Library Automation, Library Development, Library Networks
Poitras, Eric; Mayne, Zachary; Huang, Lingyun; Udy, Laurel; Lajoie, Susanne – Journal of Computer Assisted Learning, 2019
Student teachers' instructional planning requires them to regulate certain aspects of their own learning while designing lessons. The aim of this study is to support student teachers' self-regulated learning through the convergence effect, where network-based tutors are designed to optimize system recommendations of online resources based on…
Descriptors: Student Teachers, Independent Study, Scaffolding (Teaching Technique), Information Seeking
Morris, Mitchell J. – ProQuest LLC, 2012
Quickly accessing the contents of a video is challenging for users, particularly for unstructured video, which contains no intentional shot boundaries, no chapters, and no apparent edited format. We approach this problem in the domain of lecture videos though the use of machine learning, to gather semantic information about the videos; and through…
Descriptors: Heuristics, Electronic Learning, Video Technology, Computer Interfaces