Vegetation indexes are widely used as a proxy of vegetation status, they are often used to monitor and assess qualitatively and quantitatively the growing season. The Normalized Vegetation Index (NDVI) is the most widely used in agriculture, frequently as a proxy for different physiological and agronomical aspects, such as drought stress and crop yield losses evaluation. NDVI forecast is usually correlated to precipitation however, in Mediterranean and arid climates, it is not well correlated due to prolonged dry periods and sparse precipitation events. In this study, we forecast Mediterranean permanent grassland NDVI at 7 and 30 days ahead using machine learning and two soil moisture products as predictors, simulated soil moisture values and satellite-based Soil Water Index (SWI) values. Results show that both products can be used as reliable predictors of permanent grassland in Mediterranean areas. Predictions at 7 days are more accurate and better forecast the negative effect of drought on vegetation dynamics than 30 days. This study shows the potential of using a simple methodology and readily available data to predict the grassland growth dynamic in the Mediterranean area .