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    Developing a Platform for Mobile Learning Using mLearn

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    Date
    2013-05
    Author
    Samaka, Mohammed
    Impagliazzo, John
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    Abstract
    This paper presents preliminary findings of a research study surrounding the development of an integrated architecture for a mobile learning platform. The study builds on prior design specification architecture for mLearn already appearing in the literature. In this development stage, the findings indicate that the use of the mLearn architecture and its approach when applied to a workplace-learning environment suggests benefits to learning. The results are in harmony with experimental expectations.
    DOI/handle
    http://hdl.handle.net/10576/10958
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    • Computer Science & Engineering [‎1897‎ items ]

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