C3PO: C loud-based C onfidentiality-preserving C ontinuous Query P r o cessing

Author:

Savvides Savvas1,Kumar Seema2,Stephen Julian James3,Eugster Patrick4

Affiliation:

1. Fortanix Inc. USA , and  Purdue University, Mountain View, CA, USA

2. TU Darmstadt, Darmstadt, Germany

3. IBM T. J. Watson Research Center, Yorktown, NY, USA

4. Università della Svizzera italiana, Switzerland, Purdue University USA, TU Darmstadt Germany,  and SensorHound Inc., USA

Abstract

With the advent of the Internet of things (IoT), billions of devices are expected to continuously collect and process sensitive data (e.g., location, personal health factors). Due to the limited computational capacity available on IoT devices, the current de facto model for building IoT applications is to send the gathered data to the cloud for computation. While building private cloud infrastructures for handling large amounts of data streams can be expensive, using low-cost public (untrusted) cloud infrastructures for processing continuous queries including sensitive data leads to strong concerns over data confidentiality. This article presents C3PO, a confidentiality-preserving, continuous query processing engine, that leverages the public cloud. The key idea is to intelligently utilize partially homomorphic and property-preserving encryption to perform as many computationally intensive operations as possible—without revealing plaintext—in the untrusted cloud. C3PO provides simple abstractions to the developer to hide the complexities of applying complex cryptographic primitives, reasoning about the performance of such primitives, deciding which computations can be executed in an untrusted tier, and optimizing cloud resource usage. An empirical evaluation with several benchmarks and case studies shows the feasibility of our approach. We consider different classes of IoT devices that differ in their computational and memory resources (from a Raspberry Pi 3 to a very small device with a Cortex-M3 microprocessor) and through the use of optimizations, we demonstrate the feasibility of using partially homomorphic and property-preserving encryption on IoT devices.

Funder

Northrop Grumman Cybersecurity Research Consortium, Amazon AWS, Cisco Systems

DARPA

NSF TC

NSF TWC

NSF CSR

European Research Council

German Research Foundation

Multi-mechanism Adaptation for Future Internet

German Federal Ministry of Education and Research

Publisher

Association for Computing Machinery (ACM)

Subject

Safety, Risk, Reliability and Quality,General Computer Science

Reference66 articles.

1. IoTAbench

2. ARM TrustZone 2020. Retrieved from https://developer.arm.com/ip-products/security-ip/trustzone.

3. Smart*: An open data set and tools for enabling research in sustainable homes;Barker Sean;Workshop on Data Mining Applications in Sustainability,2012

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1. Authenticable Data Analytics Over Encrypted Data in the Cloud;IEEE Transactions on Information Forensics and Security;2023

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