The book provides detailed descriptions of nonlinear optical phenomena starting from basic principles to state of the art applications. The content is balanced between description of nonlinear optical properties of various photonic materials and a description of application of nonlinear phenomena in free space optics and in waveguides.
This book explores how data science, which involves preparing, analyzing, visualizing, and interpreting data, can revolutionize the field of education. The authors delve into how schools and universities can analyze data to improve teaching methods, enhance student learning, and design effective evaluations.
Learning Analytics: Shaping the Future of Education with Data Science examines how machine learning algorithms can analyze individual student performance data to tailor personalized adaptive learning paths, ensuring the best educational experience. Through real-world examples, this book discusses how valuable insights and opportunities can be gained through the application of data science in educational environments. The authors discuss the application of natural language processing (NLP) to analyze educational content, providing insights into language usage, comprehension levels, and improving the effectiveness of instructional materials and examines computer vision in classroom dynamics to measure student engagement. The book also exposes the reader to the crucial role of cybersecurity in safeguarding sensitive student and institutional information, ensuring a secure learning environment, and protecting against cyber threats. It also addresses the ethical considerations and privacy concerns associated with collecting, analyzing, and making decisions from educational data. Finally, it emphasizes the importance of responsible practices to protect the rights and well-being of students and educators.
The book is intended for engineers from computer science, government policy makers, institutions, and educational stakeholders. It shows how computer science, statistics, and data can personalize learning, improve educational tools, enhance classroom dynamics, secure academic records with blockchain, and ensure online safety.
Chapter 1 Use of virtual reality in learning environments and its impact
on mental health
Chapter 2 AIDriven Adaptive Learning: Architecture,
Governance, and a Roadmap for Scalable Personalization
Chapter 3 Enhancing AI
Model Reliability: Mitigating Synthetic Data Risks with Hybrid Data and
Explainable AI
Chapter 4 Intelligent Educators: From Personalization to
Educational Autonomy
Chapter 5 An Augmented RealityEnhanced Ecosystem for
Literacy and Learning in Primary Education
Chapter 6 Semantic Web and Complex
Thinking: The Usefulness of Computational Tools for Achieving Professional
Competencies in Health
Chapter 7 Beyond GPA: Learning Analytics Reveals
Plural Pathways to Academic Success Among Scholarship Recipients
Chapter 8
Accessible Human Computer Interaction (HCI) for Inclusive Education:
Designing Educational Tools for Diverse Learners
Chapter 9 Emerging
Technologies and Regenerative Pedagogies in the Era of Education 6.0
Chapter
10 Measuring Educational Initiatives through Student Engagement: A
Data-Driven Evaluation Framework in Engineering Education
Chapter 11
Teacher-in-the-loop Learning Analytics for LLM-Enhanced Intelligent Tutoring
Systems
Chapter 12 Multimodal Learning Analytics in Practice: Lessons from
the 1st IFE Experiential Classroom Call
Chapter 13 Algorithmic Bias and Human
Computer Interaction in Educational Platforms: A Qualitative Approach from
Substantive Equity
Chapter 14 Digital Microcredentials in Latin America and
the Caribbean: Ecosystem Maturity, Regulatory Frameworks, Blockchain
Infrastructure, and Credential Analytics for Regional Governance
Dr. Mohd Anas Wajid is a Post Doctoral Research Associate in Data Science at TEC de Monterrey, Mexico. He received his PhD degree in Computer Science from Aligarh Muslim University, India. He was awarded with the MITACS-SICI Globalink Research Award by Mitacs in collaboration with HRD ministry, Government of India to do a project at the University of Athabasca, Edmonton, Alberta, Canada. The ACM India Council named him an ACM India Anveshan Setu Fellow, and he received a fellowship to conduct a part of his research at IIIT-Delhi. His contribution to Neutrosophic research earned him a Diploma from the Neutrosophic Science International Association (NSIA), University of New Mexico, United States (USA). He has keen interest in Soft Computing, Machine Learning, Data Science, Information Retrieval, and Neutrosophy. He has academic as well as industrial experience.
Prof. Claudia Camacho-Zuñiga is a researcher at the Institute for the Future of Education and a professor at the School of Engineering at Tecnologico de Monterrey, Mexico. She is a leader in research, innovation, and transformation in higher education with over 29 years of experience in the field. Since 2014, Professor Camacho-Zuñiga has been a driving force in educational innovation and research in Mexico and Latin America; she has leveraged her expertise in teaching and data science tools to foster a passion for science, ethical and civic engagement, and appreciation for diversity of knowledge and people among undergraduate students and academia.