Query optimization problems for expensive predicates have received much attention in the database community. In these situations, the output to the database query is a set of tuples that obey certain conditions, where the conditions may be expensive to evaluate computationally. In the simplest case when the query looks for the set of tuples that simultaneously satisfy two expensive conditions on the tuples and these can be checked in two different distributed processors, the problem reduces to one of ordering the condition evaluations at each processor to minimize the time to output all the tuples that are answers to the query. We improve upon a previously known deterministic 3-approximation for this problem: In the case when the times to e...
Traditionally, optimization problems in operations research have been studied in a complete informat...
Abstract. In this paper we deal with the problem of finding an optimal query execution plan in datab...
A fast response is critical in many data-intensive applications, including knowledge discovery analy...
Query optimization problems for expensive predicates have received much attention in the database co...
In most database systems, the values of many impor-tant run-time parameters of the system, the data,...
We consider optimization problems for which the best known approximation algorithms are randomized a...
We study problems with stochastic uncertainty data on intervals for which the precise value can be q...
The efficiency of processing strategies for queries in a distributed database is critical for system...
We study problems with stochastic uncertainty information on intervals for which the precise value c...
Query optmuzatton for relatmnal database systems IS a combmatonal optumzahon problem, whtch makes ex...
Many optimization problems in computer science have been proven to be NP-hard, and it is unlikely th...
Abstract- The query optimization problem in large-scale distributed databases is NP nature and diffi...
. Given an array of n input numbers, the range-maxima problem is that of preprocessing the data so t...
A key assumption underlying query optimization schemes for parallel processing is that their cost mo...
The goal of multi-objective query optimization (MOQO) is to find query plans that realize a good com...
Traditionally, optimization problems in operations research have been studied in a complete informat...
Abstract. In this paper we deal with the problem of finding an optimal query execution plan in datab...
A fast response is critical in many data-intensive applications, including knowledge discovery analy...
Query optimization problems for expensive predicates have received much attention in the database co...
In most database systems, the values of many impor-tant run-time parameters of the system, the data,...
We consider optimization problems for which the best known approximation algorithms are randomized a...
We study problems with stochastic uncertainty data on intervals for which the precise value can be q...
The efficiency of processing strategies for queries in a distributed database is critical for system...
We study problems with stochastic uncertainty information on intervals for which the precise value c...
Query optmuzatton for relatmnal database systems IS a combmatonal optumzahon problem, whtch makes ex...
Many optimization problems in computer science have been proven to be NP-hard, and it is unlikely th...
Abstract- The query optimization problem in large-scale distributed databases is NP nature and diffi...
. Given an array of n input numbers, the range-maxima problem is that of preprocessing the data so t...
A key assumption underlying query optimization schemes for parallel processing is that their cost mo...
The goal of multi-objective query optimization (MOQO) is to find query plans that realize a good com...
Traditionally, optimization problems in operations research have been studied in a complete informat...
Abstract. In this paper we deal with the problem of finding an optimal query execution plan in datab...
A fast response is critical in many data-intensive applications, including knowledge discovery analy...