FGV Repositório Digital
    • português (Brasil)
    • English
    • español
      Acesse:
    • FGV Biblioteca Digital
    • FGV Periódicos científicos e revistas
  • português (Brasil) 
    • português (Brasil)
    • English
    • español
  • Entrar
Ver item 
  •   Página inicial
  • Produção Intelectual em Bases Externas
  • Documentos Indexados pela Web of Science
  • Ver item
  •   Página inicial
  • Produção Intelectual em Bases Externas
  • Documentos Indexados pela Web of Science
  • Ver item
JavaScript is disabled for your browser. Some features of this site may not work without it.

Navegar

Todo o repositórioComunidades FGVAutorOrientadorAssuntoTítuloDataPalavra-chaveEsta coleçãoAutorOrientadorAssuntoTítuloDataPalavra-chave

Minha conta

EntrarCadastro

Estatísticas

Ver as estatísticas de uso

High performance FPGA and GPU complex pattern matching over spatio-temporal streams

Thumbnail
Visualizar/Abrir
000351538800008.pdf (2.955Mb)
Data
2015-04
Autor
Moussalli, Roger
Absalyamov, Ildar
Vieira, Marcos R.
Najjar, Walid
Tsotras, Vassilis J.
Metadados
Mostrar registro completo
Resumo
The wide and increasing availability of collected data in the form of trajectories has led to research advances in behavioral aspects of the monitored subjects (e.g., wild animals, people, and vehicles). Using trajectory data harvested by devices, such as GPS, RFID and mobile devices, complex pattern queries can be posed to select trajectories based on specific events of interest. In this paper, we present a study on FPGA- and GPU-based architectures processing complex patterns on streams of spatio-temporal data. Complex patterns are described as regular expressions over a spatial alphabet that can be implicitly or explicitly anchored to the time domain. More importantly, variables can be used to substantially enhance the flexibility and expressive power of pattern queries. Here we explore the challenges in handling several constructs of the assumed pattern query language, with a study on the trade-offs between expressiveness, scalability and matching accuracy. We show an extensive performance evaluation where FPGA and GPU setups outperform the current state-of-the-art (single-threaded) CPU-based approaches, by over three orders of magnitude for FPGAs (for expressive queries) and up to two orders of magnitude for certain datasets on GPUs (and in some cases slowdown). Unlike software-based approaches, the performance of the proposed FPGA and GPU solutions is only minimally affected by the increased pattern complexity.
URI
http://hdl.handle.net/10438/23459
Coleções
  • Documentos Indexados pela Web of Science [875]
Áreas do conhecimento
Tecnologia
Assunto
Unidades de processamento gráfico
Palavra-chave
Spatio-temporal
Spatial
Temporal
Database
FPGA
GPU
Acceleration
Pattern
Matching

DSpace software copyright © 2002-2016  DuraSpace
Entre em contato | Deixe sua opinião
Theme by 
@mire NV
 

 


DSpace software copyright © 2002-2016  DuraSpace
Entre em contato | Deixe sua opinião
Theme by 
@mire NV
 

 

Importar metadado