A collaboration strategy in the mining pool for proof-of-neural-architecture consensus

IF 6.9 3区 计算机科学 Q1 COMPUTER SCIENCE, INFORMATION SYSTEMS Blockchain-Research and Applications Pub Date : 2022-12-01 DOI:10.1016/j.bcra.2022.100089
Boyang Li , Qing Lu , Weiwen Jiang , Taeho Jung , Yiyu Shi
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引用次数: 2

Abstract

In most popular public accessible cryptocurrency systems, the mining pool plays a key role because mining cryptocurrency with the mining pool turns the non-profitable situation into profitable for individual miners. In many recent novel blockchain consensuses, the deep learning training procedure becomes the task for miners to prove their workload. Thus, the computation power of miners will not purely be spent on the hash puzzle. In this way, the hardware and energy will support the blockchain service and deep learning training simultaneously. While the incentive of miners is to earn tokens, individual miners are motivated to join mining pools to become more competitive. In this paper, we are the first to demonstrate a mining pool solution for novel consensuses based on deep learning.

The mining pool manager partitions the full searching space into subspaces, and all miners are scheduled to collaborate on the Neural architecture search (NAS) tasks in the assigned subspace. Experiments demonstrate that the performance of this type of mining pool is more competitive than that of an individual miner. Due to the uncertainty of miners' behaviors, the mining pool manager checks the standard deviation of the performance of high reward miners and prepares backup miners to ensure completion of the tasks of high reward miners.

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基于神经架构证明共识的矿池协作策略
在大多数流行的公共可访问加密货币系统中,矿池起着关键作用,因为使用矿池开采加密货币可以将无利可图的情况转变为个人矿工的盈利情况。在最近许多新颖的区块链共识中,深度学习训练过程成为矿工证明自己工作量的任务。因此,矿工的计算能力不会纯粹花在哈希难题上。这样,硬件和能量将同时支持区块链服务和深度学习训练。虽然矿工的动机是赚取代币,但个人矿工有动力加入矿池,以提高竞争力。在本文中,我们首次展示了基于深度学习的新共识的矿池解决方案。挖掘池管理器将整个搜索空间划分为子空间,并安排所有矿工在分配的子空间中协作完成神经结构搜索(NAS)任务。实验表明,这种类型的矿池的性能比单个矿工更具竞争力。由于矿工行为的不确定性,矿池管理者检查高报酬矿工的绩效标准差,并准备备用矿工,以确保高报酬矿工的任务完成。
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来源期刊
CiteScore
11.30
自引率
3.60%
发文量
0
期刊介绍: Blockchain: Research and Applications is an international, peer reviewed journal for researchers, engineers, and practitioners to present the latest advances and innovations in blockchain research. The journal publishes theoretical and applied papers in established and emerging areas of blockchain research to shape the future of blockchain technology.
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