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基于DPDK的流量测试平台设计 被引量:9

Design of Data Traffic Testing Platform Based on DPDK
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摘要 随着网络需求的不断发展,网络中的用户越来越多,对于网络的需求也越来越重度。对于服务商来说,保障大用户规模下的网络服务质量和稳定性显得格外重要,需要一个高性能的流量测试平台,能够模拟大规模用户的访问请求,并且能够高效率的解析模拟流量,以此便可以测试自己本身平台的服务质量和应对高并发的能力。针对这种测试需求,设计了一个基于DPDK的流量测试平台,能够实现大规模网络数据流量的发送,高性能的解析,并且将解析后流量数据收入进数据库,进行后续的分析。 With the continuous development of network requirements,the network contains more and more users,and the demand for the network is growing rapidly.For service providers,it is particularly important to ensure the quality and stability of network services under the scale of large users.A high-performance traffic test platform is needed to simulate large-scale user access requests and to efficiently analyze analog traffic.This allows you to test the quality of your own platform and the ability to cope with high concurrency.This platform is designed for this test demand.We designed a DPDK-based traffic test platform,which can achieve large-scale network data traffic transmission,high-performance analysis,and the parsed traffic data into the database for subsequent detailed analysis.
作者 朱星宇 张倩武 曹炳尧 ZHU Xingyu;ZHANG Qianwu;CAO Bingyao(Key Laboratory of Specialty Fiber Optics and Optics Access Networks, Shanghai University, Shanghai 200072, China)
出处 《微型电脑应用》 2020年第5期99-102,共4页 Microcomputer Applications
关键词 流量测试 DPDK 高性能 数据解析 traffic test DPDK high-performance data analysis
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