A cloud-based synthetic seismogram generator implemented using Windows Azure
نویسندگان
چکیده
Synthetic seismograms generated by solving the seismic wave equation using numerical methods are being widely used in seismology. For fully three-dimensional seismic structure models, the generation of these synthetic seismograms may require large amount of computing resources. Conventional high-performance computer clusters may not provide a cost-effective solution to this type of applications. The newly emerging cloud-computing platform provides an alternative solution. In this paper, we describe our implementation of a synthetic seismogram generator based on the reciprocity principle using the Windows Azure cloud application framework. Our preliminary experiment shows that our cloud-based synthetic seismogram generator provides a costeffective and numerically efficient approach for computing synthetic seismograms based on the reciprocity principle.
منابع مشابه
Rapid Processing of Synthetic Seismograms Using Windows
Currently, numerically simulated synthetic seismograms are widely used by seismologists for seismological inferences. The generation of these synthetic seismograms requires large amount of computing resources, and the maintenance of these observed seismograms requires massive storage. Traditional high-performance computing platforms is inefficient to handle these applications because rapid comp...
متن کاملPerformance Analysis of Vertex-centric Graph Algorithms on the Azure Cloud Platform
Finding key vertices in large graphs is an important problem in many applications such as social networks, bioinformatics, and distribution networks. Betweenness centrality is a popular algorithm for finding such vertices and has been studied extensively, yielding several parallel formulations suitable to supercomputers and clusters. In this paper we implement and study betweenness centrality i...
متن کاملCommunication Challenges in Cloud K-means
This paper studies how parallel machine learning algorithms can be implemented on top of Microsoft Windows Azure cloud computing platform. More specifically, we design efficient storage based communication mechanisms that lead to a scalable implementation of the K-means.
متن کاملTowards an MPI-like Framework for Azure Cloud Platform
Message passing interface (MPI) has been widely used for implementing parallel and distributed applications. The emergence of cloud computing offers a scalable, fault-tolerant, on-demand alternative to traditional on-premise clusters. In this thesis, we investigate the possibility of adopting the cloud platform as an alternative to conventional MPI-based solutions. We show that cloud platform c...
متن کاملQuery Optimization over Cloud Data Market
Data market is an emerging type of cloud service that enables a data owner to sell their data sets in a public cloud. Buyers who are interested in a certain dataset can access the data in the market via a RESTful API. Accessing data in the data market may not be free. For example, it costs USD 12 per month to obtain 100 “transactions” from the WorldWide Historical Weather dataset in Windows Azu...
متن کامل