作者
Daniel De Oliveira, Eduardo Ogasawara, Fernanda Baião, Marta Mattoso
发表日期
2010/7/5
研讨会论文
2010 IEEE 3rd International Conference on Cloud Computing
页码范围
378-385
出版商
IEEE
简介
Most of the large-scale scientific experiments modeled as scientific workflows produce a large amount of data and require workflow parallelism to reduce workflow execution time. Some of the existing Scientific Workflow Management Systems (SWfMS) explore parallelism techniques - such as parameter sweep and data fragmentation. In those systems, several computing resources are used to accomplish many computational tasks in homogeneous environments, such as multiprocessor machines or cluster systems. Cloud computing has become a popular high performance computing model in which (virtualized) resources are provided as services over the Web. Some scientists are starting to adopt the cloud model in scientific domains and are moving their scientific workflows (programs and data) from local environments to the cloud. Nevertheless, it is still difficult for the scientist to express a parallel computing …
引用总数
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学术搜索中的文章
D De Oliveira, E Ogasawara, F Baião, M Mattoso - 2010 IEEE 3rd International Conference on Cloud …, 2010