Shaping the Future of Education with Cloud and AI Technologies: Enhancing Personalized Learning and Securing Data Integrity in the Evolving EdTech Landscape

Authors

  • Hassan Rehan Department of Computer & Information Technology, Purdue University, USA Author

Keywords:

Cloud computing, artificial intelligence, personalized learning, data security, educational technology, machine learning, natural language processing, adaptive learning, data privacy, educational equity

Abstract

The integration of cloud and artificial intelligence (AI) technologies has markedly transformed the educational landscape, catalyzing a paradigm shift toward more personalized and efficient learning environments. This paper explores how these advanced technologies are reshaping educational practices, emphasizing the dual objectives of enhancing personalized learning experiences and securing data integrity within the rapidly evolving educational technology (EdTech) sector.

Cloud computing has revolutionized the way educational institutions manage and deliver resources. Its scalable infrastructure provides an unprecedented level of flexibility and accessibility, enabling educational content and applications to be delivered seamlessly across diverse platforms and devices. This democratization of access allows for the implementation of sophisticated AI-driven tools that can tailor educational experiences to individual learner needs, preferences, and progress. By leveraging cloud-based platforms, educators can deploy adaptive learning systems that utilize real-time data analytics to adjust instructional content and pedagogical strategies, thus optimizing student engagement and learning outcomes.

AI technologies further amplify these capabilities by enabling advanced analytics, predictive modeling, and natural language processing (NLP) applications. Machine learning algorithms can analyze vast amounts of educational data to identify patterns and predict student performance, thereby facilitating the early detection of learning gaps and the provision of targeted interventions. NLP tools enhance the interaction between learners and educational content, offering personalized feedback, automated tutoring, and intelligent content recommendations. The convergence of AI and cloud computing thus represents a powerful synergy, wherein the cloud infrastructure supports the deployment of complex AI models, and AI enhances the functionalities and effectiveness of cloud-based educational solutions.

However, the rapid advancement of these technologies raises significant concerns regarding data security and privacy. The vast amount of sensitive information generated by personalized learning systems necessitates robust measures to safeguard data integrity. This paper delves into the strategies for ensuring data security in cloud-based educational environments, including encryption, access control mechanisms, and compliance with data protection regulations. It examines the challenges associated with securing personal and academic data against potential threats, such as unauthorized access, data breaches, and misuse, and explores best practices for mitigating these risks.

The discussion extends to the implications of these technologies for educational equity and accessibility. While cloud and AI technologies hold the potential to bridge gaps in educational access, they also pose risks of exacerbating existing disparities if not implemented equitably. The paper considers how these technologies can be deployed in ways that promote inclusivity and support diverse learning needs, while also addressing the challenges of digital divide and technological literacy.

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Author Biography

  • Hassan Rehan, Department of Computer & Information Technology, Purdue University, USA

    An accomplished IT Systems Engineer and Technology Researcher. Expertise spans several cutting-edge domains, including ERP, Cybersecurity, Cloud Computing, Artificial Intelligence (AI), and Machine Learning.

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Published

07-04-2023

How to Cite

[1]
H. Rehan, “Shaping the Future of Education with Cloud and AI Technologies: Enhancing Personalized Learning and Securing Data Integrity in the Evolving EdTech Landscape”, Australian Journal of Machine Learning Research & Applications, vol. 3, no. 1, pp. 359–395, Apr. 2023, Accessed: Dec. 04, 2024. [Online]. Available: https://sydneyacademics.com/index.php/ajmlra/article/view/107

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