A Study on Covid-19 Analytics on Bigdata

Dandu Jeevan Sai Kumar, Shahnam Baig, Mallina Satwik Chowdary, Kondaveeti Basava Sai Manjunath, K. Prasad, Sathish Kumar Kannaiah
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Abstract

Big data enables the rapid generation of massive volume of data from a variety of rich data sources. Using the 2019 coronavirus disease as an example, these enormous data sets contain information on people who have had viral illnesses, as well as information on healthcare and epidemiology. (COVID19). Researchers, epidemiologists, and lawmakers can better comprehend the disease as a result of data scientists' knowledge obtained from these epidemiological data, which may inspire them to create policies for identifying, containing, and combating it. This article outlines a data science methodology for analyzing vast quantities of COVID-19 epidemiological data. This study investigates if early SARS exposure affects imprinting based on the imprinting theory. that has a significant impact fear of COVID-19 In addition, this study suggests the use of big data and AI applications will determine whether this effect occurs. The global economic, social, sociological, and health sectors were severely harmed by the COVID-19 epidemic, which also caused a sizable number of fatalities. The necessary knowledge is developed using the proper big data analytics technologies, which are then used to make judgements and take precautionary action.
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新冠肺炎大数据分析研究
大数据能够从各种丰富的数据源中快速生成海量数据。以2019年冠状病毒病为例,这些庞大的数据集包含了病毒性疾病患者的信息,以及医疗保健和流行病学信息。(COVID19)。由于数据科学家从这些流行病学数据中获得的知识,研究人员、流行病学家和立法者可以更好地理解这种疾病,这可能会激励他们制定识别、控制和对抗这种疾病的政策。本文概述了一种用于分析大量COVID-19流行病学数据的数据科学方法。本研究基于印迹理论探讨早期SARS暴露是否影响印迹。此外,这项研究表明,大数据和人工智能应用的使用将决定这种影响是否会发生。新冠肺炎疫情严重损害了全球经济、社会、社会和卫生部门,也造成了大量人员死亡。使用适当的大数据分析技术开发必要的知识,然后用于做出判断并采取预防措施。
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