ARTÍCULO
TITULO

P-Autoclass: Scalable Parallel Clustering for Mining Large Data Sets

Pizzuti    
C. Talia    
D.    

Resumen

No disponible

 Artículos similares

       
 
Xuefeng Guan, Chong Xie, Linxu Han, Yumei Zeng, Dannan Shen and Weiran Xing    
During the exploration and visualization of big spatio-temporal data, massive volume poses a number of challenges to the achievement of interactive visualization, including large memory consumption, high rendering delay, and poor visual effects. Research... ver más
Revista: Applied Sciences

 
Sarah Pilz, Florian Porrmann, Martin Kaiser, Jens Hagemeyer, James M. Hogan and Ulrich Rückert    
This paper is concerned with Field Programmable Gate Arrays (FPGA)-based systems for energy-efficient high-throughput string comparison. Modern applications which involve comparisons across large data sets?such as large sequence sets in molecular biology... ver más
Revista: Algorithms

 
Richard P. Signell and Dharhas Pothina    
The traditional flow of coastal ocean model data is from High-Performance Computing (HPC) centers to the local desktop, or to a file server where just the needed data can be extracted via services such as OPeNDAP. Analysis and visualization are then cond... ver más

 
Alexander Tkach, André Santos, Sebastian Zlotnik, Ricardo Serrazina, Olena Okhay, Igor Bdikin, Maria Elisabete Costa and Paula M. Vilarinho    
If piezoelectric thin films sensors based on K0.5Na0.5NbO3 (KNN) are to achieve commercialization, it is critical to optimize the film performance using low-cost scalable processing and substrates. Here, sol–gel derived KNN thin films are deposited... ver más
Revista: Coatings

 
Jakob Lüttgau,Michael Kuhn,Kira Duwe,Yevhen Alforov,Eugen Betke,Julian Kunkel,Thomas Ludwig     Pág. 31 - 58
In current supercomputers, storage is typically provided by parallel distributed file systems for hot data and tape archives for cold data. These file systems are often compatible with local file systems due to their use of the POSIX interface and semant... ver más