Memory-Assisted Universal Compression of Network Flows
Mohsen Sardari, Ahmad Beirami, Faramarz Fekri

TL;DR
This paper introduces a memory-assisted universal compression method for network flows that leverages intermediate nodes' knowledge of source statistics to significantly reduce traffic redundancy, outperforming traditional techniques.
Contribution
It proposes two novel algorithms for universal lossless compression that do not require prior traffic statistics and demonstrates their effectiveness on real Internet traces.
Findings
Memory-assisted compression reduces traffic overhead.
Algorithms outperform traditional universal compression.
Effective on real Internet traffic data.
Abstract
Recently, the existence of considerable amount of redundancy in the Internet traffic has stimulated the deployment of several redundancy elimination techniques within the network. These techniques are often based on either packet-level Redundancy Elimination (RE) or Content-Centric Networking (CCN). However, these techniques cannot exploit sub-packet redundancies. Further, other alternative techniques such as the end-to-end universal compression solutions would not perform well either over the Internet traffic, as such techniques require infinite length traffic to effectively remove redundancy. This paper proposes a memory-assisted universal compression technique that holds a significant promise for reducing the amount of traffic in the networks. The proposed work is based on the observation that if a source is to be compressed and sent over a network, the associated universal code…
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Taxonomy
TopicsCaching and Content Delivery · Cooperative Communication and Network Coding · Opportunistic and Delay-Tolerant Networks
