使用map-reduce和hadoop进行数据密集型计算

S. Humbetov
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引用次数: 34

摘要

我们每天创造2.5万亿字节的数据——如此之多,以至于今天世界上90%的数据都是在过去两年里创造的。这些数据无处不在:用于收集气候信息的传感器、社交媒体网站上的帖子、数字图片和视频、购买交易记录、手机GPS信号等等。IDC的数字宇宙(2006年以数字形式创建或捕获并复制的信息)的规模为161艾字节,到2010年将增长到988艾字节,复合年增长率(CAGR)为57%。各种系统架构已经为数据密集型计算和大规模数据分析应用程序实现,包括并行和分布式关系数据库管理系统,这些系统已经可以在20多年前的无共享处理节点集群上运行。然而,大多数数据增长都是非结构化形式的数据,因此需要具有更灵活数据模型的新处理范例。已经出现了几种解决方案,包括由Google首创的MapReduce架构,现在雅虎、Facebook和其他公司使用的开源实现称为Hadoop。全球20%的服务器进入了“五大巨头”——谷歌、微软、雅虎、亚马逊、eBay的大型数据中心[1]。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Data-intensive computing with map-reduce and hadoop
Every day, we create 2.5 quintillion bytes of data - so much that 90% of the data in the world today has been created in the last two years alone. This data comes from everywhere: sensors used to gather climate information, posts to social media sites, digital pictures and videos, purchase transaction records, and cell phone GPS signals to name a few. The IDC sizing of the digital universe - information that is either created or captured in digital form and then replicated in 2006 - is 161 Exabyte, growing to 988 Exabyte in 2010, representing a compound annual growth rate (CAGR) of 57%. A variety of system architectures have been implemented for data-intensive computing and large-scale data analysis applications including parallel and distributed relational database management systems which have been available to run on shared nothing clusters of processing nodes for more than two decades. However most data growth is with data in unstructured form and new processing paradigms with more flexible data models were needed. Several solutions have emerged including the MapReduce architecture pioneered by Google and now available in an open-source implementation called Hadoop used by Yahoo, Facebook, and others. 20% of the world's servers go into huge data centers by the “Big 5” - Google, Microsoft, Yahoo, Amazon, eBay [1].
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