This paper considers the problem of bulk-loading large data sets for the gridfile multiattribute indexing technique. We propose a rectilinear partitioning algorithm that heuristically seeks to minimize the size of the gridfile needed to ensure no bucket overflows. Empirical studies on both synthetic data sets and on data sets drawn from computational fluid dynamics applications demonstrate that our algorithm is very efficient, and is able to handle large data sets. In addition, we present an algorithm for bulk-loading data sets too large to fit in main memory. Utilizing a sort of the entire data set it creates a gridfile without incurring any overflows
Mesh partitioning is often the preferred approach for solving unstructured computational mechanics p...
We propose a new similarity-based technique for declustering data. The proposed method can adapt to ...
A directional implicit unstructured agglomeration multigrid solver is ported to shared and distribut...
This paper considers the problem of bulk-loading large data sets for for the gridfile multi-attribut...
Efficient storage and retrieval of large multidimensional datasets is an important concern for large...
Abstract. In this paper, we propose a new bulk-loading technique for high-di-mensional indexes which...
In this paper, we propose a new bulk-loading technique for high-dimensional indexes which represent ...
Abstract. In this paper, we propose a new bulk-loading technique for high-di-mensional indexes which...
A major part of the interface to a database is made up of the queries that can be addressed to this ...
The size of spatial scientific datasets is steadily increasing due to improvements in instruments an...
In this paper we investigate automated methods for externalizing internal memory data structures. We...
The original publication is available at www.springerlink.comIn recent years, there has been an upsu...
(c) 2004 IEEE. Personal use of this material is permitted. Permission from IEEE must be obtained for...
Advanced instruments in a variety of scientific domains are collecting massive amounts of data that ...
New mapping algorithms for domain oriented data-parallel computations, where the workload is distrib...
Mesh partitioning is often the preferred approach for solving unstructured computational mechanics p...
We propose a new similarity-based technique for declustering data. The proposed method can adapt to ...
A directional implicit unstructured agglomeration multigrid solver is ported to shared and distribut...
This paper considers the problem of bulk-loading large data sets for for the gridfile multi-attribut...
Efficient storage and retrieval of large multidimensional datasets is an important concern for large...
Abstract. In this paper, we propose a new bulk-loading technique for high-di-mensional indexes which...
In this paper, we propose a new bulk-loading technique for high-dimensional indexes which represent ...
Abstract. In this paper, we propose a new bulk-loading technique for high-di-mensional indexes which...
A major part of the interface to a database is made up of the queries that can be addressed to this ...
The size of spatial scientific datasets is steadily increasing due to improvements in instruments an...
In this paper we investigate automated methods for externalizing internal memory data structures. We...
The original publication is available at www.springerlink.comIn recent years, there has been an upsu...
(c) 2004 IEEE. Personal use of this material is permitted. Permission from IEEE must be obtained for...
Advanced instruments in a variety of scientific domains are collecting massive amounts of data that ...
New mapping algorithms for domain oriented data-parallel computations, where the workload is distrib...
Mesh partitioning is often the preferred approach for solving unstructured computational mechanics p...
We propose a new similarity-based technique for declustering data. The proposed method can adapt to ...
A directional implicit unstructured agglomeration multigrid solver is ported to shared and distribut...