AbstractThe declustering problem is to allocate given data on parallel working storage devices in such a manner that typical requests find their data evenly distributed on the devices. Using deep results from discrepancy theory, we improve previous work of several authors concerning range queries to higher-dimensional data. We give a declustering scheme with an additive error of Od(logd-1M) independent of the data size, where d is the dimension, M the number of storage devices and d-1 does not exceed the smallest prime power in the canonical decomposition of M into prime powers. In particular, our schemes work for arbitrary M in dimensions two and three. For general d, they work for all M⩾d-1 that are powers of two. Concerning lower bounds,...
Declustering is a well known strategy to achieve maximum I/O parallelism in multi-disk systems. Many...
Many scientific and engineering applications process large multidimensional datasets. An important a...
Advances in processor and network technologies have catalyzed the growth of data intensive applicati...
AbstractThe declustering problem is to allocate given data on parallel working storage devices in su...
The declustering problem is to allocate given data on parallel working storage devices in such a man...
The declustering problem is to allocate given data on parallel working storage devices in such a man...
The problem of disk declustering is to distribute data among multiple disks to reduce query response...
In discrepancy theory, we investigate how well a desired aim can be achieved. So typically we do not...
Efficient storage and retrieval of multi-attribute datasets has become one of the essential requirem...
Cataloged from PDF version of article.Data declustering is an important issue for reducing query res...
Data declustering is used to minimize query response times in data intensive applications. In this t...
Cataloged from PDF version of article.Data declustering and replication can be used to reduce I/O ti...
Declustering is a well known strategy to achieve maximum I/O parallelism in multi-disk systems. Many...
We present a data partitioning technique for shared-nothing database systems. A unique feature of ou...
Data declustering is an important issue for reducing query response times in multi-disk database sys...
Declustering is a well known strategy to achieve maximum I/O parallelism in multi-disk systems. Many...
Many scientific and engineering applications process large multidimensional datasets. An important a...
Advances in processor and network technologies have catalyzed the growth of data intensive applicati...
AbstractThe declustering problem is to allocate given data on parallel working storage devices in su...
The declustering problem is to allocate given data on parallel working storage devices in such a man...
The declustering problem is to allocate given data on parallel working storage devices in such a man...
The problem of disk declustering is to distribute data among multiple disks to reduce query response...
In discrepancy theory, we investigate how well a desired aim can be achieved. So typically we do not...
Efficient storage and retrieval of multi-attribute datasets has become one of the essential requirem...
Cataloged from PDF version of article.Data declustering is an important issue for reducing query res...
Data declustering is used to minimize query response times in data intensive applications. In this t...
Cataloged from PDF version of article.Data declustering and replication can be used to reduce I/O ti...
Declustering is a well known strategy to achieve maximum I/O parallelism in multi-disk systems. Many...
We present a data partitioning technique for shared-nothing database systems. A unique feature of ou...
Data declustering is an important issue for reducing query response times in multi-disk database sys...
Declustering is a well known strategy to achieve maximum I/O parallelism in multi-disk systems. Many...
Many scientific and engineering applications process large multidimensional datasets. An important a...
Advances in processor and network technologies have catalyzed the growth of data intensive applicati...