HiDALGO has progresses beyond the state of the art in several areas:
-Improve scalability of the tools used (i.e. Flee, EigHist, FACS, FluidSolver), also benchmarking and testing in new architectures.
-Improve the complexity of simulations for the domains addressed by the pilots, adding features and aspects to the models.
-Implementation of a new highly scalable tools for two pilots (SNs reconstruction and FACS) and one tool for CFD and model order reduction using GPUs (FluidSolver).
-Ease the usage and access of HPDA, by providing tools enabling data management with the data catalogue and adding HPDA support to the orchestrator.
-Easy access to the CoE services and the execution of simulations, hiding the complexity of HPC infrastructures and data management through a web portal.
By the end of the project, we managed to increase the scalability of the pilots by:
-Increasing the complexity of the models, adding new modules and coupling more inputs (i.e. real-time data from sensors, weather data).
-Increase the ‘resolution’ and amount of simulations (i.e. fine grain cells, many more agents, more ensemble runs for parametrization, etc…).
-Addition of AI and HPDA-based features (i.e. process information from multiple ensemble runs to extract knowledge).
Taking into account the kind of problems addressed (migration, air pollution, COVID-19 and fake news in SNs), HiDALGO has a high potential to impact positively in the society, generating more knowledge around these areas and providing solutions that could support decision makers, since they may learn which policies to apply, according to the simulations and HPDA results. It will have a positive impact in the society in terms of health, pollution, people support and even economic impact of certain decisions and policies. In fact, HiDALGO had some close collaborations with external stakeholders (Save the children, NHS, Bosch, Hospital 12 de Octubre and ENCCS, among others) that resulted in success stories for the project, and we expect further similar experiences in the mid and long term.