INTRODUCTION: All over Europe, there is an increasing demand for social/welfare services and a shift towards a demand increasingly formed by a mix of well-being and safety. Arti cial intelligence (AI), Internet-of-Things (IoT) and cloud computing techniologies can play a major role in such a type of services. OBJECTIVES: The aim of this work was to investigate, design, develop and validate a prototype platform, namedAssisto eCare 4.0, providing “well-being” and “safety” services/functionalities to home elderly residents. METHODS: The platform builds upon biometric technologies and analytics functionalities exploiting AI techniques in order to limit human intervention during emergencies and automatically and immediately deciding actions to be performed by making the operators intervene also directly at the user home. RESULTS: The prototype has been validated with a group of 22 users over a period of more than 7 months. The results derived from the nal evaluation questionnaire show that the majority of participants rated the service as excellent. CONCLUSIONS: The platform has been released according to the API-as-a-Service model, proposing itself with a pioneering model of social open innovation, which is to develop and test the IT system and then to make it available to all those who want to use it. Currently (July 2021) the system has been engineered and o ered by a consortium of di erent industries and is operative in the Rome area. Received on 31 May 2020; accepted on 17 July 2021; published on 06 August 2021
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