Authors
Xin Liang, Sheng Di, Dingwen Tao, Sihuan Li, Shaomeng Li, Hanqi Guo, Zizhong Chen, Franck Cappello
Publication date
2018/12/10
Conference
2018 IEEE International Conference on Big Data (Big Data)
Pages
438-447
Publisher
IEEE
Description
Today's scientific simulations require a significant reduction of the data size because of extremely large volumes of data they produce and the limitation of storage bandwidth and space. If the compression is set to reach a high compression ratio, however, the reconstructed data are often distorted too much to tolerate. In this paper, we explore a new compression strategy that can effectively control the data distortion when significantly reducing the data size. The contribution is threefold. (1) We propose an adaptive compression framework to select either our improved Lorenzo prediction method or our optimized linear regression method dynamically in different regions of the dataset. (2) We explore how to select them accurately based on the data features in each block to obtain the best compression quality. (3) We analyze the effectiveness of our solution in details using four real-world scientific datasets with 100 …
Total citations
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Scholar articles
X Liang, S Di, D Tao, S Li, S Li, H Guo, Z Chen… - 2018 IEEE International Conference on Big Data (Big …, 2018