Parallel algorithm for reduction of data processing time in big data
Artículo de revista
2020
Journal of Physics: Conference Series
Technological advances have allowed to collect and store large volumes of data over the years. Besides, it is significant that today's applications have high performance and can analyze these large datasets effectively. Today, it remains a challenge for data mining to make its algorithms and applications equally efficient in the need of increasing data size and dimensionality [1]. To achieve this goal, many applications rely on parallelism, because it is an area that allows the reduction of cost depending on the execution time of the algorithms because it takes advantage of the characteristics of current computer architectures to run several processes concurrently [2]. This paper proposes a parallel version of the FuzzyPred algorithm based on the amount of data that can be processed within each of the processing threads, synchronously and independently.
- Artículos científicos [3120]
Descripción:
Parallel Algorithm for Reduction of Data Processing Time in.pdf
Título: Parallel Algorithm for Reduction of Data Processing Time in.pdf
Tamaño: 1.403Mb
PDFLEER EN FLIP
Descripción: Parallel Algorithm for Reduction of Data Processing Time in Big Data.pdf
Título: Parallel Algorithm for Reduction of Data Processing Time in Big Data.pdf
Tamaño: 728.0Kb
PDFLEER EN FLIP
Título: Parallel Algorithm for Reduction of Data Processing Time in.pdf
Tamaño: 1.403Mb
PDFLEER EN FLIP
Descripción: Parallel Algorithm for Reduction of Data Processing Time in Big Data.pdf
Título: Parallel Algorithm for Reduction of Data Processing Time in Big Data.pdf
Tamaño: 728.0Kb
PDFLEER EN FLIP
Os arquivos de licença a seguir estão associados a este item: