Bdgs: A scalable big data generator suite in big data benchmarking

Z Ming, C Luo, W Gao, R Han, Q Yang, L Wang… - Advancing Big Data …, 2014 - Springer
Advancing Big Data Benchmarks: Proceedings of the 2013 Workshop Series on Big …, 2014Springer
Data generation is a key issue in big data benchmarking that aims to generate application-
specific data sets to meet the 4 V requirements of big data. Specifically, big data generators
need to generate scalable data (Volume) of different types (Variety) under controllable
generation rates (Velocity) while keeping the important characteristics of raw data (Veracity).
This gives rise to various new challenges about how we design generators efficiently and
successfully. To date, most existing techniques can only generate limited types of data and …
Abstract
Data generation is a key issue in big data benchmarking that aims to generate application-specific data sets to meet the 4 V requirements of big data. Specifically, big data generators need to generate scalable data (Volume) of different types (Variety) under controllable generation rates (Velocity) while keeping the important characteristics of raw data (Veracity). This gives rise to various new challenges about how we design generators efficiently and successfully. To date, most existing techniques can only generate limited types of data and support specific big data systems such as Hadoop. Hence we develop a tool, called Big Data Generator Suite (BDGS), to efficiently generate scalable big data while employing data models derived from real data to preserve data veracity. The effectiveness of BDGS is demonstrated by developing six data generators covering three representative data types (structured, semi-structured and unstructured) and three data sources (text, graph, and table data).
Springer
以上显示的是最相近的搜索结果。 查看全部搜索结果