Adapting to Learn, Learning to Adapt
نویسندگان
چکیده
The Next Big Thing Adaptive, or personalized, learning is becoming the next big thing in online education. By providing each student with a custom, personalized path through courses and tracking both content covered and level of attained mastery, adaptive learning platforms hold great promise for enhancing student learning and success. Adaptive course content is organized as a set of nodes in a learning path. Each node presents students with content and embedded assessments, the results of which determine the recommended next node. Students can also self-select learning nodes to attempt but must prove mastery to continue moving forward. Adaptive learning lets you address why and how students learn, as well as their preferences for interacting with course content.
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