Abstract

The massive data parallel computing power provided by inexpensive commodity Graphics Processing Units(GPUs) makes large-scale spatial data processing on GPUs and GPU-accelerated clusters attractive from both a research and practical perspective. In this article, we report our works on data parallel designs of spatial indexing, spatial joins and several other spatial operations, including polygon rasterization, polygon decomposition and point interpolation. The data parallel designs are further scaled out to distributed computing nodes by integrating single-node GPU implementations with High-Performance Computing (HPC) toolset and the new generation in-memory Big Data systems such as Cloudera Impala. In addition to introducing GPGPU computing background and outlining data parallel designs for spatial operations, references to individual works are provided as a summary chart for interested readers to follow more details on designs, implementations and performance evaluations.

Full Text
Published version (Free)

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call