6,512 research outputs found
A Graph-Partition-Based Scheduling Policy for Heterogeneous Architectures
In order to improve system performance efficiently, a number of systems
choose to equip multi-core and many-core processors (such as GPUs). Due to
their discrete memory these heterogeneous architectures comprise a distributed
system within a computer. A data-flow programming model is attractive in this
setting for its ease of expressing concurrency. Programmers only need to define
task dependencies without considering how to schedule them on the hardware.
However, mapping the resulting task graph onto hardware efficiently remains a
challenge. In this paper, we propose a graph-partition scheduling policy for
mapping data-flow workloads to heterogeneous hardware. According to our
experiments, our graph-partition-based scheduling achieves comparable
performance to conventional queue-base approaches.Comment: Presented at DATE Friday Workshop on Heterogeneous Architectures and
Design Methods for Embedded Image Systems (HIS 2015) (arXiv:1502.07241
A Review on Software Architectures for Heterogeneous Platforms
The increasing demands for computing performance have been a reality
regardless of the requirements for smaller and more energy efficient devices.
Throughout the years, the strategy adopted by industry was to increase the
robustness of a single processor by increasing its clock frequency and mounting
more transistors so more calculations could be executed. However, it is known
that the physical limits of such processors are being reached, and one way to
fulfill such increasing computing demands has been to adopt a strategy based on
heterogeneous computing, i.e., using a heterogeneous platform containing more
than one type of processor. This way, different types of tasks can be executed
by processors that are specialized in them. Heterogeneous computing, however,
poses a number of challenges to software engineering, especially in the
architecture and deployment phases. In this paper, we conduct an empirical
study that aims at discovering the state-of-the-art in software architecture
for heterogeneous computing, with focus on deployment. We conduct a systematic
mapping study that retrieved 28 studies, which were critically assessed to
obtain an overview of the research field. We identified gaps and trends that
can be used by both researchers and practitioners as guides to further
investigate the topic
- …