10.25673/119237">
Proceedings of International Conference on Applied Innovation in IT  ·  2025/04/26  ·  Vol. 13  ·  Issue 1  ·  pp. 223–229
Intelligent Learning Support System
Eugene Karashevych, Svitlana Sulima and Mariia Skulysh
Modern educational processes require automation to improve learning efficiency. The use of artificial intelligence (AI) allows to optimize the management of the learning process, increase the personalization of learning, and automate assessment. In the context of digitalization of education and the growing role of distance learning, it is important to create adaptive systems that meet the needs of students and teachers. Thus, the aim of the work is to develop and implement a web service that will support the learning process by automating the generation of test tasks, checking answers, and integrating with learning systems. A machine learning module has been implemented to automatically analyze student work (grading, checking for uniqueness). Natural language processing (NLP) was used to analyze student responses and create adaptive content. Automatic generation of test tasks based on learning materials is implemented, which increases the personalization of learning. Standard assessment systems (e.g., Moodle testing) are often limited to multiple choice, while the use of semantic analysis allows you to evaluate creative tasks and open-ended answers without manual verification by the teacher. Most LMS systems (Moodle, Google Classroom) provide standard content for all students, while the developed system adapts to the needs of a particular user, increasing the efficiency of learning. Instead of creating another isolated LMS system, the platform is designed with a flexible API that allows it to be easily integrated into existing educational solutions (for example, university portals).
Automated System Artificial Intelligence Web Application Adaptive Learning Task Analysis Test Generation Educational Process Support Individualisation of Learning Educational Technologies.
References
  1. "AI Agents Revolutionize Personalized Learning in 2025," Rapid Innovation, Feb. 2025, [Online]. Available: https://www.rapidinnovation.io/post/ai-agents-for-personalized-learning-paths. [Accessed: 17-Feb-2025].
  2. Devops Automation, "AI Testing vs. Traditional Testing," Medium, Jan. 2024, [Online]. Available: https://medium.com/@devopsautomation93/ai-testing-vs-traditional-testing-374b658d8d1a. [Accessed: 17-Feb-2025].
  3. "Test Automation Strategy Guide: Best Practices & Checklist," TestRail, [Online]. Available: https://www.testrail.com/blog/test-automation-strategy-guide/. [Accessed: 17-Feb-2025].
  4. "Benefits and Examples of Automation in Education," Salient Process, [Online]. Available: https://salientprocess.com/blog/benefits-and-examples-of-automation-in-education/. [Accessed: 17-Feb-2025].
  5. "Automated Test Generation: Streamline Assessments for Smarter Learning," Coursebox, [Online]. Available: https://www.coursebox.ai/blog/automated-test-generation. [Accessed: 17-Feb-2025].
  6. "22 Top AI Quiz and Exam Generators to Test Your Students," Thinkific, [Online]. Available: https://www.thinkific.com/blog/ai-quiz-and-exam-generators/. [Accessed: 17-Feb-2025].
  7. "Exploring Automated Test Generation Techniques," Machinet, [Online]. Available: https://blog.machinet.net/post/exploring-automated-test-generation-techniques. [Accessed: 17-Feb-2025].
  8. N. A. Kumar and A. S. Lan, "Using Large Language Models for Student-Code Guided Test Case Generation in Computer Science Education," in Proc. 2024 AAAI Conf. on Artificial Intelligence, Proceedings of Machine Learning Research, vol. 257, pp. 170-179, 2024, [Online]. Available: https://proceedings.mlr.press/v257/kumar24.html.
  9. "Automation Challenges Factors: How to Overcome Them?" InventionGen, [Online]. Available: https://www.inventiongen.com/automation-challenges/. [Accessed: 17-Feb-2025].
  10. "Tailwind CSS," Tailwind Labs, [Online]. Available: https://tailwindcss.com. [Accessed: 17-Feb-2025].
  11. Prettier, "Prettier - Code formatter," [Online]. Available: https://www.npmjs.com/package/prettier. [Accessed: 17-Feb-2025].
  12. ESLint, "ESLint - Find and fix problems in your JavaScript code," [Online]. Available: https://www.npmjs.com/package/eslint. [Accessed: 17-Feb-2025].

Proceedings of the International Conference on Applied Innovations in IT by Anhalt University of Applied Sciences is licensed under CC BY-SA 4.0  ·  This work is licensed under a Creative Commons Attribution-ShareAlike 4.0 International License

ICAIIT 2026
International Conference on Applied Innovation in IT
Navigation
Publisher
ISSN2199-8876
Location Anhalt University of Applied Sciences
Phone +49 (0) 3496 67 5611
Address Building 01, Room 425
Bernburger Str. 55
D-06366 Köthen, Germany
Open Access License

All works are licensed under the Creative Commons Attribution-ShareAlike 4.0 International License (CC BY-SA 4.0), unless otherwise noted.

Published by ICAIIT in cooperation with Anhalt University of Applied Sciences.

© 2026 ICAIIT — International Conference on Applied Innovations in IT. Anhalt University of Applied Sciences, Köthen, Germany.
Visitors: site traffic counter