Performance Analysis of Blockchain Platforms: Empirical Evaluation of Hyperledger Fabric and Ethereum

M. Dabbagh, Mohsen Kakavand, Mohammad Tahir, A. Amphawan
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引用次数: 32

Abstract

Recent years have witnessed a sizeable growth of Blockchain applications in enterprises. Blockchain is transforming the traditional approach of storing and managing data in a single location into a decentralized ledger. Although many industries are keen on adopting Blockchain technology for enhanced transaction transparency, the performance of the current Blockchain platforms is still perplexing to stakeholders. Therefore, this research aims to conduct an empirical study to evaluate the performance of two prominent Blockchain platforms, Hyperledger Fabric and Ethereum. The performance evaluation is based on measuring four metrics including success rate, average latency, throughput, and resource consumption. The experimental results of executing 100 transactions show that Hyperledger Fabric generally surpasses Ethereum against the four performance metrics. The presented results in this research would assist practitioners in their decision-making process of adopting the ideal Blockchain platform into their IT systems based on application requirements.
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区块链平台性能分析:Hyperledger Fabric和以太坊的实证评估
近年来,区块链在企业中的应用有了相当大的增长。区块链正在将在单一位置存储和管理数据的传统方法转变为分散的分类账。尽管许多行业热衷于采用区块链技术来提高交易透明度,但目前区块链平台的性能仍然让利益相关者感到困惑。因此,本研究旨在进行实证研究,以评估两个著名的区块链平台Hyperledger Fabric和Ethereum的性能。性能评估基于测量四个指标,包括成功率、平均延迟、吞吐量和资源消耗。执行100笔交易的实验结果表明,Hyperledger Fabric在四个性能指标上总体上超过了以太坊。本研究的结果将有助于从业者根据应用需求在其IT系统中采用理想的区块链平台的决策过程。
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