Effective SARS- CoV- 2 webbing allows for a speedy and accurate opinion of COVID- 19, reducing the cargo on healthcare systems. In order to estimate the threat of infection, vaticination models that integrate numerous variables have been developed. These are intended to prop medical help around the world in triaging patients, particularly in areas where healthcare coffers are scarce. We developed a machine-learning algorithm that was trained on the records of 51,831 people who had been tested( of whom 4769 were verified to have COVID- 19). The data in the test set came from the coming week( tested individualities of whom 3624 were verified to have COVID- 19). Overall, we created a model that detects COVID- 19 cases using simple variables available by asking introductory questions grounded on civil data intimately released by the Israeli Ministry of Health. When testing coffers are limited, our approach can be used to precedence testing for COVID- 19, among other effects. In this design, we proposed the CNN grounded x-ray image for the discovery of covid and xgboost for the discovery of symptoms.