AbstractMaximizing the data throughput is a very common implementation objective for several streaming applications. Such task is particularly challenging for implementations based on many-core and multi-core target platforms because, in general, it implies tackling several NP- complete combinatorial problems. Moreover, an efficient design space exploration requires an accurate evaluation on the basis of dataflow program execution profiling. The focus of the paper is on the methodology challenges for obtaining accurate profiling measures. Experimental results validate a many-core platform built by an array of Transport Triggered Architecture processors for exploring the partitioning search space based on the execution trace analysis
Streaming applications process possibly infinite streams of data and often have both high throughput...
Because of physical limits, hardware designers have switched to parallel systems to exploit ...
Cataloged from PDF version of article.In this paper we study partitioning functions for stream proc...
Maximizing the data throughput is a very common implementation objective for several streaming appli...
AbstractMaximizing the data throughput is a very common implementation objective for several streami...
AbstractOne of the problems proven to be NP-hard in the field of many-core architectures is the Part...
One of the problems proven to be NP-hard in the field of many-core architectures is the partitioning...
AbstractAn important challenge of dataflow programming is the problem of partitioning dataflow compo...
Data stream management systems (DSMSs) are scalable, highly available, and fault-tolerant systems th...
Stream based languages are a popular approach to expressing parallelism in modern applications. The ...
Application performance on these processor array platforms is highly sensitive to how functionality ...
Multi-core processors are now ubiquitous and are widely seen as the most viable means of delivering ...
Flasskamp M, Sievers G, Ax J, et al. Performance Estimation of Streaming Applications for Hierarchic...
Expressing concurrency in applications has always been a difficult and error-prone endeavor, yet eff...
The rise of many-core processor architectures in the market answers to a constantly growing need of ...
Streaming applications process possibly infinite streams of data and often have both high throughput...
Because of physical limits, hardware designers have switched to parallel systems to exploit ...
Cataloged from PDF version of article.In this paper we study partitioning functions for stream proc...
Maximizing the data throughput is a very common implementation objective for several streaming appli...
AbstractMaximizing the data throughput is a very common implementation objective for several streami...
AbstractOne of the problems proven to be NP-hard in the field of many-core architectures is the Part...
One of the problems proven to be NP-hard in the field of many-core architectures is the partitioning...
AbstractAn important challenge of dataflow programming is the problem of partitioning dataflow compo...
Data stream management systems (DSMSs) are scalable, highly available, and fault-tolerant systems th...
Stream based languages are a popular approach to expressing parallelism in modern applications. The ...
Application performance on these processor array platforms is highly sensitive to how functionality ...
Multi-core processors are now ubiquitous and are widely seen as the most viable means of delivering ...
Flasskamp M, Sievers G, Ax J, et al. Performance Estimation of Streaming Applications for Hierarchic...
Expressing concurrency in applications has always been a difficult and error-prone endeavor, yet eff...
The rise of many-core processor architectures in the market answers to a constantly growing need of ...
Streaming applications process possibly infinite streams of data and often have both high throughput...
Because of physical limits, hardware designers have switched to parallel systems to exploit ...
Cataloged from PDF version of article.In this paper we study partitioning functions for stream proc...