The Importance of Artificial Intelligence-Based Data Analysis in the Coronavirus Pandemic Process
Muhammet Karadeniz, Ceren ÇağlarWhile “artificial intelligence and data” are of great importance in our age, this importance has increased with the announcement of COVID-19 as a Pandemic by the World Health Organization on March 11, 2020, and various technological products with artificial intelligence-based data analysis also support humanity in its struggle. From disease prediction to modeling the pandemic process, from detecting the development of the virus to the sociological effects of the pandemic process, accurate and meaningful data have an impact on many areas. In this context, many datasets were created, many academic publications were made and many applications or projects were developed during the pandemic process. Providing data sets, publications, applications and projects with open access enables all these studies to feed each other and thus, the emergence of a wide variety of studies on COVID-19 in the field of artificial intelligence. In this chapter, studies in the field of data analysis based on artificial intelligence are mentioned in order to contribute to the pandemic process.
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