Hadoop环境中的各种数据偏度方法

Subhankar Mishra, Namita Sethi, Ayes Chinmay
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引用次数: 4

摘要

Hadoop提供了一个高效存储和处理数据的环境。完成BigData作业的时间取决于最慢的mapper或最慢的reducer。因此,对于一个有效的作业,必须在映射器端和reducer端进行有效的数据划分,这将有效地减少完成作业所花费的时间。但是在很多情况下,Hadoop MapReduce无法以有效的方式在映射器和简化器之间隐式划分数据。这会导致数据倾斜或负载不平衡。从研究中发现,数据偏度可能发生在映射器侧和减速器侧,如页面排名算法或cloudburst。采用LEEN、PTSH、SkewTune、Skew Reduce等技术来解决数据偏度问题。每种技术都有自己的优点和缺点。LIBRA和DREAMS是最受欢迎和最流行的对抗数据偏态的技术。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Various Data Skewness Methods in the Hadoop Environment
Hadoop provides an environment for efficient storage and processing of data. Time for completion of a BigData job depends on the slowest mapper or slowest reducer. So for an efficient job there has to be an efficient division of data at both mapper side and reducer side which would effectively decrease the time taken by the job to complete. But under many conditions, Hadoop MapReduce fails to implicitly divide the data in an efficient way between mappers and reducers. This gives rise to data skewness or load imbalance. From the study, it is revealed that data skewness can occur at both the mapper side and reducer side, such as the page rank algorithm or cloudburst. Techniques like LEEN, PTSH, SkewTune, Skew Reduce are implemented to tackle the problem of data skewness. Each technique has its own set of advantage and disadvantage. LIBRA and DREAMS are the most preferred and popular techniques against data skewness.
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