作者
Yiqi Wang, Gen Li, Mark Ma, Fazhong He, Zhuo Song, Wei Zhang, Chengkun Wu
发表日期
2018/1
期刊
BMC genomics
卷号
19
页码范围
89-98
出版商
BioMed Central
简介
Background
Whole-genome sequencing (WGS) plays an increasingly important role in clinical practice and public health. Due to the big data size, WGS data analysis is usually compute-intensive and IO-intensive. Currently it usually takes 30 to 40 h to finish a 50× WGS analysis task, which is far from the ideal speed required by the industry. Furthermore, the high-end infrastructure required by WGS computing is costly in terms of time and money. In this paper, we aim to improve the time efficiency of WGS analysis and minimize the cost by elastic cloud computing.
Results
We developed a distributed system, GT-WGS, for large-scale WGS analyses utilizing the Amazon Web Services (AWS). Our system won the first prize on the Wind and Cloud challenge held by Genomics and Cloud Technology Alliance conference (GCTA) committee. The system makes full …
引用总数
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