Multidisciplinary Approaches to Climate Change Monitoring Using Cloud-based Environmental Data Systems
Authors: Veena Shah, Dr. Tanmay Bansalm
Pages: 25-31
Abstract
The current work combines various domains to monitor the environment with cloud-based computing technology. The real-time tracking system we developed merges climatology, data science, remote sensing, and policy analysis. Cloud solutions provide storage space alongside automated monitoring and assessment of environmental indicators through AI. Evaluation outcomes reflect improved precision and simplicity when compared to previous practices. This analysis encourages synergistic efforts across domains and utilizes cloud technology for greater climate adaptability and effective environmental governance.
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