The Past, Present, and Future of COVID-19: A Data-Driven Perspective
Ajwad Akil, Ishrat Jahan Eliza, Md. Hasibul Hussain Hisham, Fahim, Morshed, Nazmus Sakib, Nuwaisir Rabi, Abir Mohammad Turza, Sriram Chellappan,, A. B. M. Alim Al Islam

TL;DR
This paper presents a real-time, web-based dashboard for COVID-19 that integrates data analysis, modeling, and correlation studies to support policy-making and predict future pandemic impacts.
Contribution
It introduces a comprehensive, data-driven platform combining real-time data visualization, predictive modeling, and socio-economic correlation analysis for COVID-19.
Findings
Development of a real-time operational dashboard
Identification of key socio-economic factors correlated with pandemic spread
Predictive insights into future COVID-19 consequences
Abstract
Epidemics and pandemics have ravaged human life since time. To combat these, novel ideas have always been created and deployed by humanity, with varying degrees of success. At this very moment, the COVID-19 pandemic is the singular global health crisis. Now, perhaps for the first time in human history, almost the whole of humanity is experiencing some form of hardship as a result of one invisible pathogen. This once again entails novel ideas for quick eradication, healing and recovery, whether it is healthcare, banking, travel, education or any other. For efficient policy-making, clear trends of past, present and future are vital for policy-makers. With the global impacts of COVID-19 so severe, equally important is the analysis of correlations between disease spread and various socio-economic and environmental factors. Furthermore, all of these need to be presented in an integrated…
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Taxonomy
TopicsCOVID-19 epidemiological studies · Data-Driven Disease Surveillance · Zoonotic diseases and public health
