The parallelisation of big data is emerging as an important framework for large-scale parallel data applications such as seismic data processing. The field of seismic data is so large or complex that traditional data processing software is incapable of dealing with it. For example, the implementation of parallel processing in seismic applications to improve the processing speed is complex in nature. To overcome this issue, a simple technique which that helps provide parallel processing for big data applications such as seismic algorithms is needed. In our framework, we used the Apache Hadoop with its MapReduce function. All experiments were conducted on the RedHat CentOS platform. Finally, we studied the bottlenecks and improved the overall...
In the era of big data, the efficient use of idle data in reinforced concrete structures has become ...
Indonesia is a country that has the highest level of earthquake risk in the world. In the past 10 ye...
<p>The computer industry is being challenged to develop methods and techniques for affordable data p...
The parallelisation of big data is emerging as an important framework for large-scale parallel data ...
This paper aims to bring contributions in data loading and data querying using products from the Apa...
The current development of high performance parallel supercomputing infrastructures are pushing the ...
Big data is a method used to keep, distribute and the datasets which can be massive sized are analyz...
Abstract-The world is surrounded by technology and Internet with extreme dynamic changes day by day ...
Recent years the Hadoop Distributed File System(HDFS) has been deployed as the bedrock for many para...
With Cloud Computing emerging as a promising new approach for ad-hoc parallel data processing, major...
Masses of sensors are being deployed at the scale of cities to manage parking spaces, transportation...
The data is exceedingly large day by day. In some organizations, there is a need to analyze and proc...
The ability to query and process very large, terabyte-scale datasets has become a key step in many s...
The necessity for effective algorithms for data processing in parallel databases has grown critical ...
AbstractWith the development of computer technology, there is a tremendous increase in the growth of...
In the era of big data, the efficient use of idle data in reinforced concrete structures has become ...
Indonesia is a country that has the highest level of earthquake risk in the world. In the past 10 ye...
<p>The computer industry is being challenged to develop methods and techniques for affordable data p...
The parallelisation of big data is emerging as an important framework for large-scale parallel data ...
This paper aims to bring contributions in data loading and data querying using products from the Apa...
The current development of high performance parallel supercomputing infrastructures are pushing the ...
Big data is a method used to keep, distribute and the datasets which can be massive sized are analyz...
Abstract-The world is surrounded by technology and Internet with extreme dynamic changes day by day ...
Recent years the Hadoop Distributed File System(HDFS) has been deployed as the bedrock for many para...
With Cloud Computing emerging as a promising new approach for ad-hoc parallel data processing, major...
Masses of sensors are being deployed at the scale of cities to manage parking spaces, transportation...
The data is exceedingly large day by day. In some organizations, there is a need to analyze and proc...
The ability to query and process very large, terabyte-scale datasets has become a key step in many s...
The necessity for effective algorithms for data processing in parallel databases has grown critical ...
AbstractWith the development of computer technology, there is a tremendous increase in the growth of...
In the era of big data, the efficient use of idle data in reinforced concrete structures has become ...
Indonesia is a country that has the highest level of earthquake risk in the world. In the past 10 ye...
<p>The computer industry is being challenged to develop methods and techniques for affordable data p...