Towards Understanding the Impact of Real-Time AI-Powered Educational
Dashboards (RAED) on Providing Guidance to Instructors
- URL: http://arxiv.org/abs/2107.14414v1
- Date: Fri, 30 Jul 2021 03:22:41 GMT
- Title: Towards Understanding the Impact of Real-Time AI-Powered Educational
Dashboards (RAED) on Providing Guidance to Instructors
- Authors: Ajay Kulkarni
- Abstract summary: Real-Time AI-Powered Educational Dashboard (RAED) is a decision support tool for instructors.
Current developments in AI can be combined with the educational dashboards to make them AI-Powered.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: The objectives of this ongoing research are to build Real-Time AI-Powered
Educational Dashboard (RAED) as a decision support tool for instructors, and to
measure its impact on them while making decisions. Current developments in AI
can be combined with the educational dashboards to make them AI-Powered. Thus,
AI can help in providing recommendations based on the students' performances.
AI-Powered educational dashboards can also assist instructors in tracking
real-time student activities. In this ongoing research, our aim is to develop
the AI component as well as improve the existing design component of the RAED.
Further, we will conduct experiments to study its impact on instructors, and
understand how much they trust RAED to guide them while making decisions. This
paper elaborates on the ongoing research and future direction.
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