Analyzing parallel programs has become increasingly difficult due to the immense amount of information collected on large systems. In this scenario, cluster analysis has been proved to be a useful technique to reduce the amount of data to analyze. A good example is the use of the density-based cluster algorithm DBSCAN to identify similar single program multiple data (SPMD) computing phases in message-passing applications. This structure detection simplifies the analyst work as the whole information available is reduced to a small set of clusters. However, DBSCAN presents two major problems: it is very sensitive to its parametrization and is not capable of correctly detect clusters when the data set has different densities across the data sp...
DBSCAN is a density-based clustering algorithm that is known for being able to cluster irregular sha...
With larger and larger systems being constantly deployed, trace-based performance analysis of parall...
Abstract. Clustering is a classical data analysis technique that is applied to a wide range of appli...
Analyzing parallel programs has become increasingly difficult due to the immense amount of informati...
Many data mining techniques have been proposed for parallel applications performance analysis, the ...
Many data mining techniques have been proposed for parallel applications performance analysis, the...
Analyzing parallel programs has become increasingly difficult due to the immense amount of informati...
High Performance Computing and Supercomputing is the high end area of the computing science that stu...
High Performance Computing and Supercomputing is the high end area of the computing science that stu...
With larger and larger systems being constantly deployed, trace-based performance analysis of paral...
With larger and larger systems being constantly deployed, trace-based performance analysis of paral...
The density-based spatial clustering of applications with noise (DBSCAN) is regarded as a pioneering...
Finding clusters in data is a challenging problem especially when the clusters are being of widely v...
Abstract—DBSCAN is a widely used isodensity-based clus-tering algorithm for particle data well-known...
DBSCAN is one of the most famous clustering algorithms that is based on density clustering. it can f...
DBSCAN is a density-based clustering algorithm that is known for being able to cluster irregular sha...
With larger and larger systems being constantly deployed, trace-based performance analysis of parall...
Abstract. Clustering is a classical data analysis technique that is applied to a wide range of appli...
Analyzing parallel programs has become increasingly difficult due to the immense amount of informati...
Many data mining techniques have been proposed for parallel applications performance analysis, the ...
Many data mining techniques have been proposed for parallel applications performance analysis, the...
Analyzing parallel programs has become increasingly difficult due to the immense amount of informati...
High Performance Computing and Supercomputing is the high end area of the computing science that stu...
High Performance Computing and Supercomputing is the high end area of the computing science that stu...
With larger and larger systems being constantly deployed, trace-based performance analysis of paral...
With larger and larger systems being constantly deployed, trace-based performance analysis of paral...
The density-based spatial clustering of applications with noise (DBSCAN) is regarded as a pioneering...
Finding clusters in data is a challenging problem especially when the clusters are being of widely v...
Abstract—DBSCAN is a widely used isodensity-based clus-tering algorithm for particle data well-known...
DBSCAN is one of the most famous clustering algorithms that is based on density clustering. it can f...
DBSCAN is a density-based clustering algorithm that is known for being able to cluster irregular sha...
With larger and larger systems being constantly deployed, trace-based performance analysis of parall...
Abstract. Clustering is a classical data analysis technique that is applied to a wide range of appli...