Home Communication News Back New search Date Min Max Aeronautics Automotive Corporate Cybersecurity Defense and Security Financial Healthcare Industry Intelligent Transportation Systems Digital Public Services Services Space Digital Public Services GMV presents the success story of uTile at the 1st Andalusian Artificial Intelligence Congress, organized by the government of Andalusia 24/11/2023 Print Share Collecting and sharing the data needed to train models that can offer valuable information through AI and machine learning poses significant challenges, both as a result of the enormous amount of quality information needed and the obligation to guarantee the security of this information. Data owners—government organizations, private companies, and research institutions—must ensure data privacy, security, and sovereignty, recognizing that sharing certain kinds of information can pose significant risks and that, in most cases, there are legal or political restrictions that limit data sharing. As Pablo González, an artificial intelligence specialist at GMV, explained at his TED talk at the 1st Andalusian Artificial Intelligence Congress, organized by the government of Andalusia: “We’ve developed uTile, a tool based on PET (Privacy-Enhancing Technologies), that uses a federated learning approach applicable to any activity sector to solve the issue of how to work with large amounts of data while guaranteeing the privacy and governance of these data.” Within this framework, the process of training the model is shared by model developers and data owners. Each party trains a portion of the model in their local environment, without needing to share the raw data directly. The parties then work together to pool their contributions and build a complete and accurate artificial intelligence model. Earth observation success story. González shared the success story behind the development of GMV’s uTile tool: Earth observation applying digital technology, in response to a European Space Agency challenge. As he explained, federated learning provides an effective solution in terms of preserving the privacy and security of data while they are being used to train advanced models. In this case, GMV's tool makes it possible to analyze how harvests are progressing, the risk of fire or floods, or the state of roads, by making it possible for software developers and owners of satellite photos to work together without having to share their data. Each one trains their part of the software on their own computer, and then they put the pieces together to have a complete program. It’s a win-win situation in which no one sees or sends the other party’s data. This GMV development can be applied to various activity sectors, especially healthcare, where the information being handled is particularly sensible and appropriate data processing could bring about a giant leap forward in terms of researching and personalizing new treatments. The Earth observation sector can also contribute to this goal by helping support sustainable agriculture and forest management fire prevention strategies, both of which have a direct impact on people’s health. The team at the GMV stand received a visit from the Andalusian government’s Minister of the Presidency, Interior, Social Dialogue and Administrative Simplification, Antonio Sanz, and also answered questions from specialists representing the different organizations attending the congress. Print Share Related Digital Public Services 2nd International Congress on Cybersecurity and Digital Fraud 04 Dec Digital Public ServicesServices PAIT® solution: technological support for the new equal pay and pay transparency regulations Digital Public Services AI in Tourism: Innovation and Ethics