TY - GEN
T1 - LAOps
T2 - International Conference on Computer Supported Education, CSEDU
AU - Niemelä, Pia
AU - Silverajan, Bilhanan
AU - Nurminen, Mikko
AU - Hukkanen, Jenni
AU - Järvinen, Hannu-Matti
N1 - Publisher Copyright:
Copyright © 2022 by SCITEPRESS – Science and Technology Publications, Lda. All rights reserved.
PY - 2022
Y1 - 2022
N2 - The intake of computer science faculty has rapidly increased with simultaneous reductions to course personnel. Presently, the economy is recovering slightly, and students are entering the working life already during their studies. These reasons have fortified demands for flexibility to keep the target graduation time the same as before, even shorten it. Required flexibility is created by increasing distance learning and MOOCs, which challenges students’ self-regulation skills. Teaching methods and systems need to evolve to support students’ progress. At the curriculum design level, such learning analytics tools have already been taken into use. This position paper outlines a next-generation, course-scope analytics tool that utilises data from both the learning management system and Gitlab, which works here as a channel of student submissions. Gitlab provides GitOps, and GitOps will be enhanced with machine learning, thereby transforming as MLOps. MLOps that performs learning analytics, is called here LAOps. For analysis, data is copied to the cloud, and for that, it must be properly protected, after which models are trained and analyses performed. The results are provided to both teachers and students and utilised for personalisation and differentiation of exercises based on students’ skill level.
AB - The intake of computer science faculty has rapidly increased with simultaneous reductions to course personnel. Presently, the economy is recovering slightly, and students are entering the working life already during their studies. These reasons have fortified demands for flexibility to keep the target graduation time the same as before, even shorten it. Required flexibility is created by increasing distance learning and MOOCs, which challenges students’ self-regulation skills. Teaching methods and systems need to evolve to support students’ progress. At the curriculum design level, such learning analytics tools have already been taken into use. This position paper outlines a next-generation, course-scope analytics tool that utilises data from both the learning management system and Gitlab, which works here as a channel of student submissions. Gitlab provides GitOps, and GitOps will be enhanced with machine learning, thereby transforming as MLOps. MLOps that performs learning analytics, is called here LAOps. For analysis, data is copied to the cloud, and for that, it must be properly protected, after which models are trained and analyses performed. The results are provided to both teachers and students and utilised for personalisation and differentiation of exercises based on students’ skill level.
KW - Assessment and Feedback
KW - Cloud-based Learning Analysis
KW - LAOps
KW - Learning Analytics
KW - Learning Management System
KW - Machine Learning
KW - MLOps
KW - Next-generation Learning Environment
KW - Personalisation
KW - Privacy-aware Machine Learning
U2 - 10.5220/0011113300003182
DO - 10.5220/0011113300003182
M3 - Conference contribution
AN - SCOPUS:85140872456
VL - 2
T3 - International Conference on Computer Supported Education, CSEDU - Proceedings
SP - 213
EP - 220
BT - Proceedings of the 14th International Conference on Computer Supported Education - Volume 2, CSEDU 2022
A2 - Cukurova, Mutlu
A2 - Rummel, Nikol
A2 - Gillet, Denis
A2 - McLaren, Bruce
A2 - Uhomoibhi, James
PB - Science and Technology Publications (SciTePress)
Y2 - 22 April 2022 through 24 April 2022
ER -