In the past twenty years, we have witnessed an unprecedented production of data world-wide that has generated a growing demand for computing resources and has stimulated the design of computing paradigms and software tools to efficiently and quickly obtain insights on such a Big Data. State-of-the-art parallel computing techniques such as the MapReduce guarantee high performance in scenarios where involved computing nodes are equally sized and clustered via broadband network links, and the data are co-located with the cluster of nodes. Unfortunately, the mentioned techniques have proven ineffective in geographically distributed scenarios, i.e., computing contexts where nodes and data are geographically distributed across multiple distant da...
Abstract—With more data generated and collected in a geographically distributed manner, combined by ...
AbstractInspired by the victory of Apache's Hadoop this paper suggests a new reduce task scheduler. ...
MapReduce, the popular programming paradigm for large-scale data processing, has traditionally been ...
In the past twenty years, we have witnessed an unprecedented production of data world-wide that has ...
none5noInternet-of-Things scenarios will be typically characterized by huge amounts of data made av...
The last few years have seen a growing demand of distributed Cloud infrastructures able to process b...
Advances in the communication technologies, along with the birth of new communication paradigms leve...
across multiple clusters Abstract. Hadoop is a reasonable tool for cloud computing in big data and M...
MapReduce framework in Hadoop plays an important role in handling and processing big data. Hadoop is...
Nowadays, data-intensive problems are so prevalent that numerous organizations in various industries...
The Hadoop framework has been developed to effectively process data-intensive MapReduce applications...
Cloud computing has emerged as a model that harnesses massive capacities of data centers to host ser...
Big Data such as Terabyte and Petabyte datasets are rapidly becoming the new norm for various organi...
We observe two important trends brought about by the evolution of Internet in recent years. Firstly ...
MapReduce is with no doubt the parallel computation paradigm which has managed to interpret and serv...
Abstract—With more data generated and collected in a geographically distributed manner, combined by ...
AbstractInspired by the victory of Apache's Hadoop this paper suggests a new reduce task scheduler. ...
MapReduce, the popular programming paradigm for large-scale data processing, has traditionally been ...
In the past twenty years, we have witnessed an unprecedented production of data world-wide that has ...
none5noInternet-of-Things scenarios will be typically characterized by huge amounts of data made av...
The last few years have seen a growing demand of distributed Cloud infrastructures able to process b...
Advances in the communication technologies, along with the birth of new communication paradigms leve...
across multiple clusters Abstract. Hadoop is a reasonable tool for cloud computing in big data and M...
MapReduce framework in Hadoop plays an important role in handling and processing big data. Hadoop is...
Nowadays, data-intensive problems are so prevalent that numerous organizations in various industries...
The Hadoop framework has been developed to effectively process data-intensive MapReduce applications...
Cloud computing has emerged as a model that harnesses massive capacities of data centers to host ser...
Big Data such as Terabyte and Petabyte datasets are rapidly becoming the new norm for various organi...
We observe two important trends brought about by the evolution of Internet in recent years. Firstly ...
MapReduce is with no doubt the parallel computation paradigm which has managed to interpret and serv...
Abstract—With more data generated and collected in a geographically distributed manner, combined by ...
AbstractInspired by the victory of Apache's Hadoop this paper suggests a new reduce task scheduler. ...
MapReduce, the popular programming paradigm for large-scale data processing, has traditionally been ...