提高大数据应用吞吐量

Janardhana Reddy Naredula
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引用次数: 0

摘要

本文介绍了Redis、Kafka、memcache、Cassandra、ElasticSearch等大数据应用的各种性能问题和提高吞吐量的解决方案。大多数问题的解决方案都是通过一些技术来实现的,比如绕过linux内核、最小化系统调用、使用异步编程高效地使用多核机器、每核一个线程、DPDK等等。等。现代机器与十年前的机器大不相同。它们有许多核心和深层内存层次结构(从L1缓存到NUMA),这些层次结构奖励某些编程实践,而惩罚其他编程实践。不可扩展的编程实践(例如获取锁)可能会破坏许多核心上的性能。共享内存和无锁同步原语用于解决一些问题。本文以具有高效网络路径的Redis测试原型进行总结,其性能比基线提高了37X。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Improving Throughput of BigData Applications
The paper describes various performance problems and solutions to improve throughput of BigData Application like Redis, Kafka, memcache, Cassandra, ElasticSearch,..etc. Most of the solution to the problems are achieved by some of the techniques like bypassing linux kernel, minimizing system calls, efficiently using the multi core machine using asynchronous programming, one thread per core, DPDK, .. etc. Modern machines are very different from those of just 10 years ago. They have many cores and deep memory hierarchies (from L1 caches to NUMA) which reward certain programming practices and penalizes others, Unscalable programming practices (such as taking locks) can devastate performance on many cores. Shared memory and lock-free synchronization primitives are used in solving some of the problems. The paper was concluded with the test prototype of Redis with efficient network path that resulted 37X perf improvement over the baseline.
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