Enhancing SQL Learning with AI: Designing an Adaptive Algorithm for Dynamic Difficulty Adjustment in SQL Scrolls
Loading...
Authors
Author (Corporation)
Publication date
2025
Typ of student thesis
Master
Course of study
Collections
Type
11 - Student thesis
Editors
Editor (Corporation)
Supervisor
Parent work
Special issue
DOI of the original publication
Link
Series
Series number
Volume
Issue / Number
Pages / Duration
Patent number
Publisher / Publishing institution
Hochschule für Wirtschaft FHNW
Place of publication / Event location
Olten
Edition
Version
Programming language
Assignee
Practice partner / Client
Abstract
The objective was to optimize the learning outcomes, by personalising the educational experience and enhancing engagement. The adaptive game version offered personalised task recommendations based on an AI model which considers player performance and task difficulty. Next task to play was suggested via a recommender that dynamically selected the SQL tasks the student plays. We also implemented a hard coded help function with additional SQL guidance related to the task, available for 42 SQL keywords.
Keywords
Subject (DDC)
Event
Exhibition start date
Exhibition end date
Conference start date
Conference end date
Date of the last check
ISBN
ISSN
Language
English
Created during FHNW affiliation
Yes
Strategic action fields FHNW
Publication status
Review
Open access category
License
Citation
Kertmen, C. (2025). Enhancing SQL Learning with AI: Designing an Adaptive Algorithm for Dynamic Difficulty Adjustment in SQL Scrolls [Hochschule für Wirtschaft FHNW]. https://irf.fhnw.ch/handle/11654/52021