DEVELOPMENT OF INSTRUCTOR MODULE IN AN INTELLIGENT TUTORING SYSTEM FOR ENGLISH LANGUAGE USING LARGE LANGUAGE MODEL
Based on research conducted by Education First, Indonesia has a low proficiency in English. This situation is worsened by the lack of teaching resources and the unequal distribution of education across the country. Consequently, Indonesia struggles to actively participate in the global environmen...
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Format: | Final Project |
Language: | Indonesia |
Online Access: | https://digilib.itb.ac.id/gdl/view/82405 |
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Institution: | Institut Teknologi Bandung |
Language: | Indonesia |
Summary: | Based on research conducted by Education First, Indonesia has a low proficiency
in English. This situation is worsened by the lack of teaching resources and the
unequal distribution of education across the country. Consequently, Indonesia
struggles to actively participate in the global environment. To address these issues,
there is an opportunity to develop an Intelligent Tutoring System (ITS) for English
language learning using Large Language Models (LLM). ITS can reduce the time
teachers spend on the teaching process, thereby optimizing the existing human
resources in education.
In this final project research, the instructor module of an ITS for English language
learning has been developed. The implementation of the instructor module is crucial
for supporting an effective and efficient teaching process. The instructor module
must accommodate all the needs of teachers in conducting their teaching activities,
which led to the implementation for several key features, including course
management, material management, exercise management, student progress
tracking, and chatbot. The selection of these features was based on literature review
and consultation with industry experts. The instructor module was developed using
TypeScript and the React library for the frontend, and Python and the FastAPI
framework for the backend. The LLM is utilized in the form of a chatbot that acts
as a personal teaching assistant.
Testing results indicate that the ITS instructor module for English language learning
using LLM successfully meets the defined functional requirements. The average
SUS score is 92.1 and the SEQ score is 6.81, indicating that the application is both
usable and easy to use. |
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