Spatial data partitioning (SDP) plays a powerful role in distributed storage and parallel computing for spatial data. However, due to skew distribution of spatial data and varying volume of spatial vector objects, it leads to a significant challenge to ensure both optimal performance of spatial operation and data balance in the cluster. To tackle this problem, we proposed a spatial coding-based approach for partitioning big spatial data in Hadoop. This approach, firstly, compressed the whole big spatial data based on spatial coding matrix to create a sensing information set (SIS), including spatial code, size, count and other information. SIS was then employed to build spatial partitioning matrix, which was used to spilt all spatial objects...
Data collection is one of the most common practices in today’s world. The data collection rate has r...
This paper discusses the processing of spatial data on MapReduce – Hadoop platform. The Hadoop is kn...
Spatial queries are widely used in many data mining and analytics applications. However, a huge and ...
In recent years several extensions of Hadoop system have been proposed for dealing with spatial data...
The rapid growth of big spatial data urged the research community to develop several big spatial dat...
University of Minnesota Ph.D. dissertation. June 2016. Major: Computer Science. Advisor: Mohamed Mok...
Nowadays, high performance parallel computation is deemed as a good solution to the complicated proc...
Scalable spatial query processing relies on effective spatial data partitioning for query paralleliz...
MapReduce framework with native support for spatial data. SpatialHadoop is a comprehensive extension...
The amount of available spatial data has significantly increased in the last years so that tradition...
The amount of available spatial data has significantly increased in the last years so that tradition...
Support of high performance queries on large volumes of spatial data becomes increasingly important ...
This demo presents SpatialHadoop as the first full-fledged MapRe-duce framework with native support ...
Today, a large amount of spatial data is generated from a variety of sources, such as mobile devices...
Spatial data is being produced at increasing rates from various sources such as mobile applications ...
Data collection is one of the most common practices in today’s world. The data collection rate has r...
This paper discusses the processing of spatial data on MapReduce – Hadoop platform. The Hadoop is kn...
Spatial queries are widely used in many data mining and analytics applications. However, a huge and ...
In recent years several extensions of Hadoop system have been proposed for dealing with spatial data...
The rapid growth of big spatial data urged the research community to develop several big spatial dat...
University of Minnesota Ph.D. dissertation. June 2016. Major: Computer Science. Advisor: Mohamed Mok...
Nowadays, high performance parallel computation is deemed as a good solution to the complicated proc...
Scalable spatial query processing relies on effective spatial data partitioning for query paralleliz...
MapReduce framework with native support for spatial data. SpatialHadoop is a comprehensive extension...
The amount of available spatial data has significantly increased in the last years so that tradition...
The amount of available spatial data has significantly increased in the last years so that tradition...
Support of high performance queries on large volumes of spatial data becomes increasingly important ...
This demo presents SpatialHadoop as the first full-fledged MapRe-duce framework with native support ...
Today, a large amount of spatial data is generated from a variety of sources, such as mobile devices...
Spatial data is being produced at increasing rates from various sources such as mobile applications ...
Data collection is one of the most common practices in today’s world. The data collection rate has r...
This paper discusses the processing of spatial data on MapReduce – Hadoop platform. The Hadoop is kn...
Spatial queries are widely used in many data mining and analytics applications. However, a huge and ...