No profit e impatto sociale al tempo dei Big Data: tra Quantified Context e Blockchain

Titolo Rivista SALUTE E SOCIETÀ
Autori/Curatori Antonio Maturo, Marta Gibin
Anno di pubblicazione 2020 Fascicolo 2020/1 Lingua Italiano
Numero pagine 18 P. 157-174 Dimensione file 199 KB
DOI 10.3280/SES2020-001012
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Keywords:big data; evidence-based policy; quantified context; blockchain; impatto sociale; no profit.

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  • Big Data, Intelligenza Artificiale e Valutazione: cosa accade in Italia Francesco Mazzeo Rinaldi, Ornella Occhipinti, in RIV Rassegna Italiana di Valutazione 85/2024 pp.185
    DOI: 10.3280/RIV2023-085010

Antonio Maturo, Marta Gibin, No profit e impatto sociale al tempo dei Big Data: tra Quantified Context e Blockchain in "SALUTE E SOCIETÀ" 1/2020, pp 157-174, DOI: 10.3280/SES2020-001012