The Covid-19 Corona Virus, also known as SARS-CoV-2, has wreaked havoc around the world, and the condition is only getting worse.It is a pandemic disease spreading from person-to-person every day . Therefore, it is important to keep track the number of patients being affected . The current system gives the computerized data in a collective way which is very difficult to analyze and predict the growth of disease in a particular area and in the world . Machine learning algorithms can be used to successfully map the disease and its progression to solve this problem . Machine Learning, a branch of computer science, is critical in correctly distinguishing patients with the condition by analyzing their chest X-ray photographs . Supervised Machine learning models with associated algorithms (like LR, SVR and Time series algorithms) to analyze data for regression and classification helps in training the model to predict the number of total number of global confirmed cases who will be prone to the disease in the upcoming days . In this proposed work, the overall dataset of the world is being collected, preprocessed and the number of confirmed cases up to a particular date are extracted which is given as the training set to the model . The model is being trained by supervised machine learning algorithms to predict the growth of cases in the upcoming days . The experimental setup with the above mentioned algorithms shows that Time series Holt's model outperforms Linear Regression and Support Vector Regression algorithms.