Peer-Turbo enables peer-assisted decoding with RLNC in tree/star broadcast topologies, cutting source bandwidth or latency by an order of magnitude.
Pricing Innovation Under Latency Constraints: A Mean-Field Analysis of Coded Payload Delivery
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abstract
We study pricing mechanisms for low-latency payload delivery in settings where participant rewards depend on the time required to reconstruct a payload. In such environments, the decoding time distribution determines deadline-meeting probabilities and therefore bounds a participant's willingness to pay for additional delivery rate. Using a mean-field formulation, we derive price-rate bounds from simple stochastic arrival models and instantiate them for (i) unsharded transmission and (ii) sharded delivery under three regimes: uncoded sharding, fixed-rate erasure coding, and rateless coding. These bounds yield a comparative characterization of how symbol usefulness translates into economic value under deadline-driven utilities. We further analyze a two-lane service consisting of a base lane and a Random Linear Network Coding (RLNC) fast lane. In this turbo decoding setting, a receiver combines shards arriving via both lanes to minimize time to decode. Under a fixed base-lane price-rate pair and an aggregate rate constraint, we derive a fast-lane pricing bound and show how even modest additional RLNC rate can generate measurable utility gains, depending on the base-lane propagation regime. The framework extends naturally to stepwise reward schedules with multiple deadlines, and we illustrate its applicability on representative scenarios motivated by blockchain message dissemination and latency-sensitive competition.
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cs.IT 1years
2026 1verdicts
UNVERDICTED 1representative citing papers
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Optimum Peer-Turbo: A Scalable and Efficient Solution for P2P Broadcasting
Peer-Turbo enables peer-assisted decoding with RLNC in tree/star broadcast topologies, cutting source bandwidth or latency by an order of magnitude.