Abstract—Massive computation power and storage capacity of cloud computing systems enable users to either store large generated scientific datasets in the cloud or delete and then regenerate them whenever reused. Due to the pay-as-you-go model, the more datasets we store, the more storage cost we need to pay, alternatively, we can delete some generated datasets to save the storage cost but more computation cost is incurred for regeneration whenever the datasets are reused. Hence, there should exist a trade-off between computation and storage in the cloud, where different storage strategies lead to different total costs. The minimum cost, which reflects the best trade-off, is an important benchmark for evaluating the cost-effectiveness of di...
Scientific applications are usually data intensive [1,~ 2], where the generated datasets are often t...
Many scientific workflows are data intensive where large volumes of intermediate data are generated ...
Many scientific workflows are data intensive where a large volume of intermediate data is generated ...
Massive computation power and storage capacity of cloud computing systems enable users to either sto...
Massive computation power and storage capacity of cloud computing systems enable users to either sto...
Nowadays, scientific research increasingly relies on IT technologies, where large-scale and high per...
Massive computation power and storage capacity of cloud computing systems allow scientists to deploy...
Abstract—Massive computation power and storage capacity of cloud computing systems allow scientists ...
Many scientific workflows are data intensive: large volumes of intermediate datasets are generated d...
Computation and Storage in the Cloud is the first comprehensive and systematic work investigating th...
The proliferation of cloud computing allows scientists to deploy computation and data intensive appl...
Massive computation power and storage capacity of cloud computing systems allow scientists to deploy...
Abstract — Massive computation power and storage capacity of cloud computing systems allow scientist...
The proliferation of cloud computing allows users to flexibly store, re-compute or transfer large ge...
Scientific applications are usually data intensive [1,~ 2], where the generated datasets are often t...
Scientific applications are usually data intensive [1,~ 2], where the generated datasets are often t...
Many scientific workflows are data intensive where large volumes of intermediate data are generated ...
Many scientific workflows are data intensive where a large volume of intermediate data is generated ...
Massive computation power and storage capacity of cloud computing systems enable users to either sto...
Massive computation power and storage capacity of cloud computing systems enable users to either sto...
Nowadays, scientific research increasingly relies on IT technologies, where large-scale and high per...
Massive computation power and storage capacity of cloud computing systems allow scientists to deploy...
Abstract—Massive computation power and storage capacity of cloud computing systems allow scientists ...
Many scientific workflows are data intensive: large volumes of intermediate datasets are generated d...
Computation and Storage in the Cloud is the first comprehensive and systematic work investigating th...
The proliferation of cloud computing allows scientists to deploy computation and data intensive appl...
Massive computation power and storage capacity of cloud computing systems allow scientists to deploy...
Abstract — Massive computation power and storage capacity of cloud computing systems allow scientist...
The proliferation of cloud computing allows users to flexibly store, re-compute or transfer large ge...
Scientific applications are usually data intensive [1,~ 2], where the generated datasets are often t...
Scientific applications are usually data intensive [1,~ 2], where the generated datasets are often t...
Many scientific workflows are data intensive where large volumes of intermediate data are generated ...
Many scientific workflows are data intensive where a large volume of intermediate data is generated ...