On the Challenges of Deploying Privacy-Preserving Synthetic Data in the Enterprise
Arthur, Lauren, Costello, Jason, Hardy, Jonathan, O'Brien, Will, Rea, James, Rees, Gareth, Ganev, Georgi
–arXiv.org Artificial Intelligence
Generative AI technologies are gaining unprecedented popularity, causing a mix of excitement and apprehension through their remarkable capabilities. In this paper, we study the challenges associated with deploying synthetic data, a subfield of Generative AI. Our focus centers on enterprise deployment, with an emphasis on privacy concerns caused by the vast amount of personal and highly sensitive data. We identify 40+ challenges and systematize them into five main groups -- i) generation, ii) infrastructure & architecture, iii) governance, iv) compliance & regulation, and v) adoption. Additionally, we discuss a strategic and systematic approach that enterprises can employ to effectively address the challenges and achieve their goals by establishing trust in the implemented solutions.
arXiv.org Artificial Intelligence
Jul-9-2023
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