Applications of digital technologies to combat against the pandemic coronavirus –COVID-19
Keywords:
IoT, big-data analytics, AI, machine learning, deep learning, block chain, SARS-CoV-2Abstract
Coronavirus (COVID-19) is an infectious disease caused by severe acute respiratory syndrome coronavirus 2 (SARS-CoV-2). The spread of COVID-19 seems to have a worst effect on the human health and global economy. The world is confronting an existential worldwide emergency - the episode of a novel Covid. This pandemic situation made the development of various digital technologies to bout against major diseases and clinical issues. These digital technologies comprise incorporate the internet of things (IoT) with cutting edge media transmission; huge information investigation (BDA); man-made reasoning (AI) that utilizes machine learning and deep learning; and block chain innovation [9]. They are exceptionally related: IoT is generally utilized in emergency clinics and centers that encourages the foundation of a profoundly interconnected advanced biological system. Big data analytics handle large real time data set that is used by AI with machine learning and deep learning systems to understand healthcare trends, perform risk associations and predict the actual outcomes. This is enhanced by block chain innovation, a back-connected information base with cryptographic conventions and an organization of disseminated PCs to ensure that information are secure however recognizable and are available in different physical areas, with changed calculations.
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