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#ATUTOR CMU SOFTWARE#
Acquiring this goal is accomplished by employing machine learning algorithms within platform-side software module. The main goal of the module is to characterize learners according with performed activities and to offer advice regarding the resources that need to be accessed in order to increase the knowledge level of studied discipline. This paper presents a method of providing intelligent character to an e-Learning platform by running a platform-side software module. One of the important research areas is related to improving e-Learning activity by giving the intelligent character to this activity besides core functionalities that is implemented in all e-Learning platforms. E-Learning area has been intensively developed in recent years.