No One Size (PPM) Fits All: Towards Privacy in Stream Processing Systems
May 01, 2023 Β· Declared Dead Β· π Distributed Event-Based Systems
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Authors
Mikhail Fomichev, Manisha Luthra, Maik Benndorf, Pratyush Agnihotri
arXiv ID
2305.00871
Category
cs.CR: Cryptography & Security
Citations
7
Venue
Distributed Event-Based Systems
Last Checked
4 months ago
Abstract
Stream processing systems (SPSs) have been designed to process data streams in real-time, allowing organizations to analyze and act upon data on-the-fly, as it is generated. However, handling sensitive or personal data in these multilayered SPSs that distribute resources across sensor, fog, and cloud layers raises privacy concerns, as the data may be subject to unauthorized access and attacks that can violate user privacy, hence facing regulations such as the GDPR across the SPS layers. To address these issues, different privacy-preserving mechanisms (PPMs) are proposed to protect user privacy in SPSs. Yet, selecting and applying such PPMs in SPSs is challenging, since they must operate in real-time while tolerating little overhead. The multilayered nature of SPSs complicates privacy protection because each layer may confront different privacy threats, which must be addressed by specific PPMs. To overcome these challenges, we present Prinseps, our comprehensive privacy vision for SPSs. Towards this vision, we (1) identify critical privacy threats on different layers of the multilayered SPS, (2) evaluate the effectiveness of existing PPMs in addressing such threats, and (3) integrate privacy considerations into the decision-making processes of SPSs.
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