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The Impact of Artificial Intelligence Tools on Learning Outcomes of Postgraduate Students: A Study in Mangalore City
0
Zitationen
3
Autoren
2025
Jahr
Abstract
Abstract: The journey of higher education, particularly at the postgraduate level, is a critical phase where students sharpen their expertise, enhance research abilities, and prepare to contribute meaningfully to their academic and professional domains. During this stage, they often grapple with multiple challenges such as rigorous coursework, research responsibilities, and institutional expectations. This study focuses on understanding the influence of AI tools on the academic performance of postgraduate students in Mangalore Taluk. Specifically, it examines the level of awareness, frequency of usage, and perceived impact of AI tools among these students. It also seeks to understand the correlation between AI tool usage and academic outcomes, as well as the effectiveness of such tools in facilitating learning and skill development. Using a random sampling method, data were collected from 72 postgraduate students through both primary and secondary sources. The findings indicate that while AI tools may not directly boost academic grades, they do significantly enhance students’ comprehension and learning experiences, as observed by faculty members. Most students find AI tools user-friendly and supportive in building academic and professional skills. However, they emphasize that AI should complement, not replace, conventional teaching practices. Key challenges identified include technical difficulties, insufficient training, limited institutional support, and concerns regarding academic integrity and over-reliance on AI. Overall, the study highlights the growing relevance of AI in postgraduate education and underscores the need for balanced integration, ensuring that students benefit from these technologies while maintaining academic standards and ethical practices.
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