Abstract—With more data generated and collected in a geographically distributed manner, combined by the increased computational requirements for large scale data-intensive analysis, we have witnessed the growing demand for geographically distributed Cloud datacenters and hybrid Cloud service provisioning, enabling organizations to support instantaneous demand of additional computational resources and to expand in-house resources to maintain peak service demands by utilizing cloud resources. A key challenge for running applications in such a geographically distributed computing environment is how to efficiently schedule and perform analysis over data that is geographically distributed across multiple datacenters. In this paper, we first comp...
A heterogeneous cloud system, for example, a Hadoop 2.6.0 platform, provides distributed but cohesiv...
none5noInternet-of-Things scenarios will be typically characterized by huge amounts of data made av...
For a long time, data has been treated as a general problem because it just represents fractions of ...
The Hadoop framework has been developed to effectively process data-intensive MapReduce applications...
Big Data such as Terabyte and Petabyte datasets are rapidly becoming the new norm for various organi...
across multiple clusters Abstract. Hadoop is a reasonable tool for cloud computing in big data and M...
Hadoop has been developed to process the data-intensive applications. However, the current data-dist...
Abstract—When orchestrating highly distributed and data-intensive Web service workflows the geograph...
Nowadays, data-intensive problems are so prevalent that numerous organizations in various industries...
In the past twenty years, we have witnessed an unprecedented production of data world-wide that has ...
Cloud computing provides users and enterprises shared pools of resources to store and process their ...
With the advancements of Internet-of-Things (IoT) and Machine-to-Machine Communications (M2M), the a...
In recent years, an increasing variety of dynamic-content web services, such as search, social netwo...
The client-centric multi-cloud has become a popular cloud ecosystem because it allows enterprise use...
Advances in the communication technologies, along with the birth of new communication paradigms leve...
A heterogeneous cloud system, for example, a Hadoop 2.6.0 platform, provides distributed but cohesiv...
none5noInternet-of-Things scenarios will be typically characterized by huge amounts of data made av...
For a long time, data has been treated as a general problem because it just represents fractions of ...
The Hadoop framework has been developed to effectively process data-intensive MapReduce applications...
Big Data such as Terabyte and Petabyte datasets are rapidly becoming the new norm for various organi...
across multiple clusters Abstract. Hadoop is a reasonable tool for cloud computing in big data and M...
Hadoop has been developed to process the data-intensive applications. However, the current data-dist...
Abstract—When orchestrating highly distributed and data-intensive Web service workflows the geograph...
Nowadays, data-intensive problems are so prevalent that numerous organizations in various industries...
In the past twenty years, we have witnessed an unprecedented production of data world-wide that has ...
Cloud computing provides users and enterprises shared pools of resources to store and process their ...
With the advancements of Internet-of-Things (IoT) and Machine-to-Machine Communications (M2M), the a...
In recent years, an increasing variety of dynamic-content web services, such as search, social netwo...
The client-centric multi-cloud has become a popular cloud ecosystem because it allows enterprise use...
Advances in the communication technologies, along with the birth of new communication paradigms leve...
A heterogeneous cloud system, for example, a Hadoop 2.6.0 platform, provides distributed but cohesiv...
none5noInternet-of-Things scenarios will be typically characterized by huge amounts of data made av...
For a long time, data has been treated as a general problem because it just represents fractions of ...