posted on 2025-08-14, 10:00authored byMarco Moretto, Luca Delucchi, Roberto Zorer, Damiano Moser, Franco Micheli, Andrea PaoliAndrea Paoli, Pietro Franceschi
<p dir="ltr">Farming is increasingly data-driven, leveraging high-frequency and precision data from IoT devices, sensors, and remote tools. Effective data collection, organization, and management are essential to link datasets with agronomic details, forming the foundation for predictive models. These models, using AI and machine learning, optimize decision-making, forecast crop yields, predict pest outbreaks, and enhance resource use. High-quality, diverse data integration is key to building accurate tools that address agriculture's complexity, boosting productivity and resilience. </p><p dir="ltr">We introduce DigiAgriApp, an open-source client-server application for centralized farming data management. It tracks crop details, sensor readings, irrigation, field operations, production statistics, and emissions for Life Cycle Assessment. Initially developed for the Fondazione Edmund Mach, DigiAgriApp has evolved into a versatile tool. Users can access a public server or deploy a private instance via Docker, making it ideal for institutions, farmers, and corporations alike. DigiAgriApp is available at https://digiagriapp.gitlab.io/digiagriapp-website/.</p>
Funding
Autonomous Province of Trento ADP P2211007I
The 10° and 12° Calls of the Fondazione VRT, Valorizzazione della Ricerca Trentina
The Interconnected Nord-Est Innovation Ecosystem (iNEST)
the AgrifoodTEF project under the Digital Europe Programme (Grant Agreement No. 101100622; CUP: C63C22001180007)