Guaranteeing Local Differential Privacy on Ultra-Low-Power Systems

@article{Choi2018GuaranteeingLD,
  title={Guaranteeing Local Differential Privacy on Ultra-Low-Power Systems},
  author={Woo-Seok Choi and Matthew Tomei and Jose Rodrigo Sanchez Vicarte and Pavan Kumar Hanumolu and Ranjitha Kumar},
  journal={2018 ACM/IEEE 45th Annual International Symposium on Computer Architecture (ISCA)},
  year={2018},
  pages={561-574}
}
Sensors in mobile devices and IoT systems increasingly generate data that may contain private information of individuals. Generally, users of such systems are willing to share their data for public and personal benefit as long as their private information is not revealed. A fundamental challenge lies in designing systems and data processing techniques for obtaining meaningful information from sensor data, while maintaining the privacy of the data and individuals. In this work, we explore the… CONTINUE READING

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