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Artificial Intelligence Advancement in Pandemic Era

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Meta Heuristic Techniques in Software Engineering and Its Applications (METASOFT 2022)

Abstract

Artificial intelligence (AI) and machine learning (ML) is usually extensive technology that is worthwhile and applied in several application domains. However, current scenario has manifested and laid enormous challenges among the researchers and scientists to develop and implement the technology in the real world. Nevertheless, the COVID-19 outbreak has triggered intense work on such applications and designing modules to discover knowledge from extensive databases. Digital technologies are critical for both social and economic health in the face of the coronavirus. A digital response to the COVID-19 epidemic can take many forms and be quite beneficial. In the current study of approach, we have widely discussed extensive application of AI in the pandemic era focusing on rapid developments for screening of the population and evaluating the infection risks.

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Correspondence to Harleen Kaur .

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Chauhan, R., Kaur, H., Alankar, B. (2022). Artificial Intelligence Advancement in Pandemic Era. In: Mohanty, M.N., Das, S., Ray, M., Patra, B. (eds) Meta Heuristic Techniques in Software Engineering and Its Applications. METASOFT 2022. Artificial Intelligence-Enhanced Software and Systems Engineering, vol 1. Springer, Cham. https://doi.org/10.1007/978-3-031-11713-8_17

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