The hardware landscape is currently changing from homogeneous multi-core systems towards heterogeneous systems with many di↵erent computing units, each with their own characteristics. This trend is a great opportunity for database systems to increase the overall performance if the heterogeneous resources can be utilized eciently. To achieve this, the main challenge is to place the right work on the right computing unit. Current approaches tackling this placement for query processing assume that data cardinalities of intermediate results can be correctly estimated. However, this assumption does not hold for complex queries. To overcome this problem, we propose an adaptive placement approach being independent of cardinality estimation of inte...
Commercial enterprise data warehouses are typically implemented on parallel databases due to the inh...
The amount of data being processed nowadays is continuously increasing. This fact also applies to da...
International audienceOLAP queries are typically heavy-weight and ad-hoc thus requiring high storage...
The hardware landscape is currently changing from homogeneous multi-core systems towards heterogeneo...
Computing hardware is changing from systems with homogeneous CPUs to systems with heterogeneous comp...
The increasing heterogeneity in hardware systems gives developers many opportunities to add more fun...
The past years saw the emergence of highly heterogeneous server architectures that feature multiple ...
In emerging systems, CPUs and memory are integrated into active disks, controllers, and network inte...
An effective query optimizer finds a query plan that exploits the characteristics of the source data...
The capacity and performance of database man-agement system (DBMS) using a conventional (von Newmann...
1In emerging systems, CPUs and memory are integrated into active disks, controllers, and network int...
Large-scale systems such as Grids offer infrastructures for both data distribution and parallel proc...
[[abstract]]New adaptive techniques for distributed query optimization are proposed. These technique...
Heterogeneous Associative Computing (HAsC) is a new distributed heterogeneous computing paradigm tha...
Parallelism is a viable solution to constructing high performance object-oriented database systems. ...
Commercial enterprise data warehouses are typically implemented on parallel databases due to the inh...
The amount of data being processed nowadays is continuously increasing. This fact also applies to da...
International audienceOLAP queries are typically heavy-weight and ad-hoc thus requiring high storage...
The hardware landscape is currently changing from homogeneous multi-core systems towards heterogeneo...
Computing hardware is changing from systems with homogeneous CPUs to systems with heterogeneous comp...
The increasing heterogeneity in hardware systems gives developers many opportunities to add more fun...
The past years saw the emergence of highly heterogeneous server architectures that feature multiple ...
In emerging systems, CPUs and memory are integrated into active disks, controllers, and network inte...
An effective query optimizer finds a query plan that exploits the characteristics of the source data...
The capacity and performance of database man-agement system (DBMS) using a conventional (von Newmann...
1In emerging systems, CPUs and memory are integrated into active disks, controllers, and network int...
Large-scale systems such as Grids offer infrastructures for both data distribution and parallel proc...
[[abstract]]New adaptive techniques for distributed query optimization are proposed. These technique...
Heterogeneous Associative Computing (HAsC) is a new distributed heterogeneous computing paradigm tha...
Parallelism is a viable solution to constructing high performance object-oriented database systems. ...
Commercial enterprise data warehouses are typically implemented on parallel databases due to the inh...
The amount of data being processed nowadays is continuously increasing. This fact also applies to da...
International audienceOLAP queries are typically heavy-weight and ad-hoc thus requiring high storage...