The increasing transistor density of Integrated Circuits (ICs) ever since their introduction, has scaled the computational performance of microprocessors. As a consequence of the gain in transistor density, the power dissipation density has also increased to a degree that has become a limiting factor in further performance scaling. The prevalent control flow computing paradigm is, especially in the context of High Performance Computing (HPC), faced with this power crisis. Data flow computing can achieve a better computations per unit power ratio and might therefore be the solution to achieving exa-scale computing, enabling progress in science and technology. This work contributes in investigating methods for increasing the abstractionlevel ...
Polyhedral techniques for program transformation are now used in several proprietary and open source...
Overall, this work provides an introduction to the subject of polymorphic computing, provides a new ...
The Polyhedral Process Network (PPN) is a suitable parallel model of computation (MoC) used to speci...
We use the polyhedral process network (PPN) model of computation to program and map streaming applic...
Nowadays, parallel computers have become ubiquitous and currentprocessors contain several execution ...
We use the polyhedral process network (PPN) model of com-putation to program embedded Multi-Processo...
In modern MPSoC architectures, programming to effectively exploit all the available resources become...
This research proposes an intermediate compiler representation designed for optimization, with an em...
Reference implementations of signal processing applications are often written in a sequential langua...
In modern MPSoC architectures, programming to effectively exploit all the available resources become...
The increased computational power required by modern large-scale computing system is pushing the ado...
In this thesis, we present Cprof+, an upgraded version of Cprof. Cprof+ is a lightweight profiling t...
International audienceDataflow languages expose the application's potential parallelism naturally an...
This research presents an intermediate compiler representation that is designed for optimization, an...
Polyhedral techniques for program transformation are now used in several proprietary and open source...
Overall, this work provides an introduction to the subject of polymorphic computing, provides a new ...
The Polyhedral Process Network (PPN) is a suitable parallel model of computation (MoC) used to speci...
We use the polyhedral process network (PPN) model of computation to program and map streaming applic...
Nowadays, parallel computers have become ubiquitous and currentprocessors contain several execution ...
We use the polyhedral process network (PPN) model of com-putation to program embedded Multi-Processo...
In modern MPSoC architectures, programming to effectively exploit all the available resources become...
This research proposes an intermediate compiler representation designed for optimization, with an em...
Reference implementations of signal processing applications are often written in a sequential langua...
In modern MPSoC architectures, programming to effectively exploit all the available resources become...
The increased computational power required by modern large-scale computing system is pushing the ado...
In this thesis, we present Cprof+, an upgraded version of Cprof. Cprof+ is a lightweight profiling t...
International audienceDataflow languages expose the application's potential parallelism naturally an...
This research presents an intermediate compiler representation that is designed for optimization, an...
Polyhedral techniques for program transformation are now used in several proprietary and open source...
Overall, this work provides an introduction to the subject of polymorphic computing, provides a new ...
The Polyhedral Process Network (PPN) is a suitable parallel model of computation (MoC) used to speci...