"With Great Power Comes Great Responsibility!": Student and Instructor
Perspectives on the influence of LLMs on Undergraduate Engineering Education
- URL: http://arxiv.org/abs/2309.10694v2
- Date: Sat, 30 Sep 2023 07:22:41 GMT
- Title: "With Great Power Comes Great Responsibility!": Student and Instructor
Perspectives on the influence of LLMs on Undergraduate Engineering Education
- Authors: Ishika Joshi, Ritvik Budhiraja, Pranav Deepak Tanna, Lovenya Jain,
Mihika Deshpande, Arjun Srivastava, Srinivas Rallapalli, Harshal D Akolekar,
Jagat Sesh Challa, Dhruv Kumar
- Abstract summary: The rise in popularity of Large Language Models (LLMs) has prompted discussions in academic circles.
This paper conducts surveys and interviews within undergraduate engineering universities in India.
Using 1306 survey responses among students, 112 student interviews, and 27 instructor interviews, this paper offers insights into the current usage patterns.
- Score: 2.766654468164438
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: The rise in popularity of Large Language Models (LLMs) has prompted
discussions in academic circles, with students exploring LLM-based tools for
coursework inquiries and instructors exploring them for teaching and research.
Even though a lot of work is underway to create LLM-based tools tailored for
students and instructors, there is a lack of comprehensive user studies that
capture the perspectives of students and instructors regarding LLMs. This paper
addresses this gap by conducting surveys and interviews within undergraduate
engineering universities in India. Using 1306 survey responses among students,
112 student interviews, and 27 instructor interviews around the academic usage
of ChatGPT (a popular LLM), this paper offers insights into the current usage
patterns, perceived benefits, threats, and challenges, as well as
recommendations for enhancing the adoption of LLMs among students and
instructors. These insights are further utilized to discuss the practical
implications of LLMs in undergraduate engineering education and beyond.
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