Embodiments of present disclosure relate to a method for predicting a performance of a machine learning module (ML-Module). The method may comprise detecting a change in the performance of the ML-Module over a period of time on the basis of labeled input datasets for the ML-Module and detecting a change in a predicted performance of the ML-Module over the period of time computed using the drift module. A value of a first key figure is determined, the value of the first key figure indicating a correlation between the change in the performance of the ML-Module and the change in the predicted performance of the ML-Module. A signal is provided, the signal indicating the value of the first key figure.