The influenza does not affect people's health only, but it is also an essential topic of governments and health care facilities. Early analysis, prediction and response is the most effective control method for flu epidemics. The Artificial Intelligence (AI) scientists are conducting their efforts to develop supervised and unsupervised models in order to analyse epidemics. In this paper, we present the most used Machine Learning (ML) and Deep Learning (DL) models in order to understand Covid-19'sbehaviour by analysing time series data. Among several algorithms of ML, Recurrent Neural Network (RNN) was chosen for tracking this epidemic and predicting its future outbreak. Since the appearance of the first case of COVID-19 in Morocco, the cumulative number of reported infectious cases continues to increase, however this number varies according to the regions of the Kingdom. Also, in this paper, we propose an analysis and prediction model of influenza-like illness Covid-19 by regional distribution. The proposed model is further used to obtain statistical summaries.