Living on the Edge

Author:

Buddhika Thilina1ORCID,Malensek Matthew1,Pallickara Shrideep1,Pallickara Sangmi Lee1

Affiliation:

1. Colorado State University, USA

Abstract

Voluminous time-series data streams produced in continuous sensing environments impose challenges pertaining to ingestion, storage, and analytics. In this study, we present a holistic approach based on data sketching to address these issues. We propose a hyper-sketching algorithm that combines discretization and frequency-based sketching to produce compact representations of the multi-feature, time-series data streams. We generate an ensemble of data sketches to make effective use of capabilities at the resource-constrained edge devices, the links over which data are transmitted, and the server pool where this data must be stored. The data sketches can be queried to construct datasets that are amenable to processing using popular analytical engines. We include several performance benchmarks using real-world data from different domains to profile the suitability of our design decisions. The proposed methodology can achieve up to ∼ 13 × and ∼ 2, 207 × reduction in data transfer and energy consumption at edge devices. We observe up to a ∼ 50% improvement in analytical job completion times in addition to the significant improvements in disk and network I/O.

Funder

National Institute of Food and Agriculture

National Science Foundation

Cochran Family Professorship

Publisher

Association for Computing Machinery (ACM)

Reference71 articles.

1. Amazon Web Services Inc. 2019. AWS IoT Core. Retrieved from https://aws.amazon.com/iot-core/. Amazon Web Services Inc. 2019. AWS IoT Core. Retrieved from https://aws.amazon.com/iot-core/.

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