Assessing students’ perception of the academic features of the Gyankunj Project
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https://doi.org/10.58414/SCIENTIFICTEMPER.2025.16.spl-1.07Keywords:
Gyankunj Project, Student Perception, Academic Features, Multimedia Learning, Animation in Education, Language ClarityDimensions Badge
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The Gyankunj Project incorporates several advanced features designed to enrich the educational experience (Parmar, 2022). A key element of the project is its integration of multimedia resources, including audio and video components, which are intended to make learning more engaging and interactive. These multimedia features aim to boost student enthusiasm and facilitate better retention of information. Another important aspect is the use of animation, which helps simplify complex concepts and make lessons more accessible. This visual approach allows students to understand challenging topics with greater ease, thereby improving their overall grasp of the subject matter. This study delves into students’ views on how effectively these features support their educational needs. The research specifically focuses on understanding the impact of multimedia elements, such as audio and video, the effectiveness of animation in simplifying lessons, and the clarity of language used in the project. Additionally, the study explores how students’ demographic profiles, such as age, gender, and faculty, affect their perceptions of these academic features. With a sample size of 500 students from Gujarat state, the study provides comprehensive insights into the broader student experience with the Gyankunj Project. The findings highlight the positive influence of multimedia tools and clear language on student engagement and comprehension while also revealing how demographic factors shape these perceptions.Abstract
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