Machine learning is a popular field of computer science that relies on statistical techniques and algorithms to classify, order and interpret data, identify patterns and make decisions with minimal human intervention. The emergence of machine learning algorithms, big data calculations and immediate response-action as discerned from the machine-learning process are presenting new and exciting possibilities to Education. Its ability to provide real-time learning has facilitated its popularity within an education sector which, having embraced the uses of the digital technology, has seen the need for innovative educational.
The Workshop on Application of Machine Learning to Educational Innovation: Trends and Challenges aims at presenting current research to expand our understanding of how machine learning is shaping innovation and emerging technologies in Education. The focus of this workshop is presenting how researchers in the fields of Education are innovating and examining machine learning to study pedagogical approaches and ideas. We would like to examine how this technology may help researchers better understand Educational phenomena from a perspective of data Sciences.
By bringing together researchers with unique perspectives in these fields, we hope to provide a space for presenters not only to present new ideas and perspectives that are shaping the future of Education but also how Educational practice is being shaped by new research paradigms.
Fundamentals of Machine Learning (Presenters: Prof. Amlan Chakrabarti and Dr. Amit Das) Proposed topics to be covered:
What is machine learning (ML)?
Different forms of ML
Process of ML model training, prediction and evaluation
Where to apply ML and where not to
Few popular applications of ML
3 parallel tracks – 8 papers each track
Track 1: Digital Technologies for Educational Innovation
Track 2: Machine Learning in Educational Innovation
Track 3: Inclusion of Digital Technologies during COVID-19
Machine Learning in Development of Educational Technology 1 and 2 (Presenters: Prof. Amlan Chakrabarti and Dr. Amit Das)
Proposed topics to be covered:
Frontiers of Applying ML in Digitizing Education
Case study 1 – ML based prediction of Student Grades
Case study 2 – ML based prediction of Student Employability
Presentations of research (03:00 pm – 05:00 pm)
3 parallel tracks – 8 papers each track
Track 4: Virtual and Augmented reality in education
Track 5: Reimaging education and Educational Technologies
Track 6: Data Science Driven Educational Practices
Amlan Chakrabarti is a Full Professor of Information Technology in the A.K.Choudhury School of Information Technology at the University of Calcutta. He is also the former Dean, Faculty of Engineering and Technology of his university. He was a Post-Doctoral fellow at the School of Engineering, Princeton University, USA during 2011-2012. He is the recipient of DST BOYSCAST fellowship award in Engineering Science in 2011, Indian National Science Academy (INSA) Visiting Faculty Fellowship in 2014, JSPS Invitation Research Award in 2016 and Erasmus Mundus Leaders Award from EU in 2017, Hamied Visiting Lecture from the University of Cambridge, United Kingdom in 2018 and the Siksha Ratna Award, from the Department of Higher Education, Western Bengal, India, 2018. He has been associated in various capacities in numerous organizations of higher education both nationally and internationally. He has published around 150 research articles in referred journals and conferences. He is associate editor in Elsevier’s Journal of Computer and Electrical Engineering, editor of the Springer series Transactions on computer Systems and Networks, and guest editor of Springer’s Journal of Applied Sciences. He is a Sr. Member of IEEE and ACM, distinguished guest of IEEE Computer Society, distinguished speaker at ACM, Secretary of IEEE CEDA India Chapter and vice-president of Data Science Society. His research interests are Machine Learning, Computer Vision, Reconfigurable Computing, Cyberphysical Systems, VLSI CAD and Quantic Computing.
Dr. Amit Kumar Das Amit is a seasoned industry practitioner turned to a full-time academician. He is currently working as an Assistant Professor, Institute of Engineering & Management. He is also a Senior Research Scientist in the Data Science Lab, A. K. Choudhury School of IT, University of Calcutta. He is also involved in industry consulting in the area of Data Science. Amit is a Senior Member, IEEE. Before joining academics, he has spent 18 years in the IT industry. Amit has authored many journal, conference articles and book chapters. He is also a reviewer in multiple journals (SCI / SCIE and IEEE Transactions). He has written three text books for the under-graduate students – on Machine Learning, Deep Learning and Big Data published by Pearson. He has been a regular speaker in the area of data analytics and machine learning.
Call for Papers and deadlines Home Program Call for Papers and deadlines Organizers Registration Proceedings Contact Us Workshop topics This workshop welcomes research, and practice-based work in the area. We encourage authors to present their research results or work in progress that address the previous questions but with an emphasis on presenting machine learning applications in the following topics:
The accepted papers will be submitted for inclusion into IEEE Xplore subject to meeting IEEE Xplore’s scope and quality requirements. The most promising contributions presented at this workshop will be invited to send their extended versions to the linked Special Issues.
We are calling for papers addressing (but not limited to) one or several of the following questions:
Submission deadline (Extended Abstract):
8 August 2021 – 22 August 2021
Acceptance Notification:
9 September 2021
Early bird registration:
13 October 2021
Final registration:
31 October 2021
Full paper submission:
15 December 2021
Workshop participation and presentation:
15-17 December 2021
Revision Notification:
15 January 2022
Full paper acceptance notification:
6 February 2022
You may submit your contribution in two PDF documents: a blind extended abstract (without author(s) information) and a document with the abstract title and author(s) information.
It is necessary to use the IEEE template for the extended abstract.
The accepted papers will be submitted for inclusion into IEEE Xplore subject to meeting IEEE Xplore’s scope and quality requirements. The most promising contributions presented at this workshop will be invited to send their extended versions to the linked Special Issues, including:
Equity and justice in health: the way forward in lifestyle medicine for Latin America
Journal: Ciência & Saúde Coletiva
Website: http://www.cienciaesaudecoletiva.com.br/
Guest editorial Team:
Applications and Development in Linked Open Data (LOD) Cloud
Journal: Journal of Big Data
Website: https://journalofbigdata.springeropen.com
Guest editorial Team:
Emerging Technologies in Education for Innovative Pedagogies and
Competency Development
Journal: Australasian Journal of Educational Technology
Website: https://ajet.org.au/index.php/AJET/SpecialIssueCall
Guest editorial Team: