Most data-intensive applications are confronted with the problems of I/O bottleneck, poor query processing times and space requirements. Database compression alleviates this bottleneck, reduces disk space usage, improves disk access speed, speeds up query response time, reduces overall retrieval time and increases the effective I/O bandwidth. However, random access to individual tuples in a compressed database is very difficult to achieve with most of the available compression techniques. This paper reports a lossless compression technique called non-differential augmented vector quantization. The technique is applicable to a collection of tuples and especially effective for tuples with numerous low to medium cardinality fields. In ad...
Modern in-memory databases are typically used for high-performance workloads, therefore they have to...
A compression technique is presented that allows a high degree of compression but requires only loga...
The Data Cube is the central abstraction behind the power of On-Line Analytical Processing (OLAP) sy...
Data compression is one way to alleviate the 1/0 bot-tleneck problem faced by I/O-intensive applicat...
Efficient query processing in statistical databases is constrained by the I/O bottleneck problem bec...
Loss-less data compression is attractive in database systems as it may facilitate query performance ...
The multidimensional databases often use compression techniques in order to decrease the size of the...
Columnar databases have dominated the data analysis market for their superior performance in query p...
Data compression is one way to gain better performance from a database. Compression is typically ach...
Column oriented databases store columns contiguously on disk. The adjacency of values from the same ...
The last few years have seen an exponential increase, driven by many disparate fields such as big da...
Data compression techniques can improve information system performance by reducing the size of a dat...
This paper proposes an efficient algorithm to compress the cubes in the progress of the parallel dat...
Thesis (M. Eng.)--Massachusetts Institute of Technology, Dept. of Electrical Engineering and Compute...
We formulate a conceptual model for white-box compression, which represents the logical columns in t...
Modern in-memory databases are typically used for high-performance workloads, therefore they have to...
A compression technique is presented that allows a high degree of compression but requires only loga...
The Data Cube is the central abstraction behind the power of On-Line Analytical Processing (OLAP) sy...
Data compression is one way to alleviate the 1/0 bot-tleneck problem faced by I/O-intensive applicat...
Efficient query processing in statistical databases is constrained by the I/O bottleneck problem bec...
Loss-less data compression is attractive in database systems as it may facilitate query performance ...
The multidimensional databases often use compression techniques in order to decrease the size of the...
Columnar databases have dominated the data analysis market for their superior performance in query p...
Data compression is one way to gain better performance from a database. Compression is typically ach...
Column oriented databases store columns contiguously on disk. The adjacency of values from the same ...
The last few years have seen an exponential increase, driven by many disparate fields such as big da...
Data compression techniques can improve information system performance by reducing the size of a dat...
This paper proposes an efficient algorithm to compress the cubes in the progress of the parallel dat...
Thesis (M. Eng.)--Massachusetts Institute of Technology, Dept. of Electrical Engineering and Compute...
We formulate a conceptual model for white-box compression, which represents the logical columns in t...
Modern in-memory databases are typically used for high-performance workloads, therefore they have to...
A compression technique is presented that allows a high degree of compression but requires only loga...
The Data Cube is the central abstraction behind the power of On-Line Analytical Processing (OLAP) sy...