Let’s imagine that, in a near-future city, only hydrogen-powered cars move quietly along streets. The air is fresh, thanks to nearby hydrogen refueling stations that allow drivers to fill up quickly. Factories have changed too, using hydrogen as a primary energy source to power their machinery. In parks, families enjoy picnics, while children fly hydrogen-powered drones. The imagination of this future city is bright and inspiring, but there's a big challenge: efficient hydrogen storage systems haven't been developed yet. The HydroMOF project, supported by the EU’s HORIZON Marie Skłodowska-Curie Actions, aims to tackle this issue by developing smart and controllable systems for storing hydrogen using nanoporous metal-organic frameworks (MOFs). Recent studies have shown that external electric fields can induce controlled structural changes in MOFs, allowing them to undergo reversible transformations, which opens up new possibilities for hydrogen storage. Computational chemistry and machine learning methods have been applied in this project to investigate the potential of switchable MOFs. By combining machine learning potentials with molecular dynamics simulations, the HydroMOF project aimed to overcome the limitations of quantum chemistry methods in terms of simulation time and length scales, as well as the accuracy and reliability issues associated with classical molecular dynamics simulations. The results of the HydroMOF project can be a door-opener for fast and accurate modeling of switchable MOFs, significantly boosting their applications in hydrogen storage.