3,987 research outputs found
Deterministic Consistency: A Programming Model for Shared Memory Parallelism
The difficulty of developing reliable parallel software is generating
interest in deterministic environments, where a given program and input can
yield only one possible result. Languages or type systems can enforce
determinism in new code, and runtime systems can impose synthetic schedules on
legacy parallel code. To parallelize existing serial code, however, we would
like a programming model that is naturally deterministic without language
restrictions or artificial scheduling. We propose "deterministic consistency",
a parallel programming model as easy to understand as the "parallel assignment"
construct in sequential languages such as Perl and JavaScript, where concurrent
threads always read their inputs before writing shared outputs. DC supports
common data- and task-parallel synchronization abstractions such as fork/join
and barriers, as well as non-hierarchical structures such as producer/consumer
pipelines and futures. A preliminary prototype suggests that software-only
implementations of DC can run applications written for popular parallel
environments such as OpenMP with low (<10%) overhead for some applications.Comment: 7 pages, 3 figure
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Preparing sparse solvers for exascale computing.
Sparse solvers provide essential functionality for a wide variety of scientific applications. Highly parallel sparse solvers are essential for continuing advances in high-fidelity, multi-physics and multi-scale simulations, especially as we target exascale platforms. This paper describes the challenges, strategies and progress of the US Department of Energy Exascale Computing project towards providing sparse solvers for exascale computing platforms. We address the demands of systems with thousands of high-performance node devices where exposing concurrency, hiding latency and creating alternative algorithms become essential. The efforts described here are works in progress, highlighting current success and upcoming challenges. This article is part of a discussion meeting issue 'Numerical algorithms for high-performance computational science'
Improving the scalability of parallel N-body applications with an event driven constraint based execution model
The scalability and efficiency of graph applications are significantly
constrained by conventional systems and their supporting programming models.
Technology trends like multicore, manycore, and heterogeneous system
architectures are introducing further challenges and possibilities for emerging
application domains such as graph applications. This paper explores the space
of effective parallel execution of ephemeral graphs that are dynamically
generated using the Barnes-Hut algorithm to exemplify dynamic workloads. The
workloads are expressed using the semantics of an Exascale computing execution
model called ParalleX. For comparison, results using conventional execution
model semantics are also presented. We find improved load balancing during
runtime and automatic parallelism discovery improving efficiency using the
advanced semantics for Exascale computing.Comment: 11 figure
The HPCG benchmark: analysis, shared memory preliminary improvements and evaluation on an Arm-based platform
The High-Performance Conjugate Gradient (HPCG) benchmark complements the LINPACK benchmark in the performance evaluation coverage of large High-Performance Computing (HPC) systems. Due to its lower arithmetic intensity and higher memory pressure, HPCG is recognized as a more representative benchmark for data-center and irregular memory access pattern workloads, therefore its popularity and acceptance is raising within the HPC community. As only a small fraction of the reference version of the HPCG benchmark is parallelized with shared memory techniques (OpenMP), we introduce in this report two OpenMP parallelization methods. Due to the increasing importance of Arm architecture in the HPC scenario, we evaluate our HPCG code at scale on a state-of-the-art HPC system based on Cavium ThunderX2 SoC. We consider our work as a contribution to the Arm ecosystem: along with this technical report, we plan in fact to release our code for boosting the tuning of the HPCG benchmark within the Arm community.Postprint (author's final draft
The Glasgow Parallel Reduction Machine: Programming Shared-memory Many-core Systems using Parallel Task Composition
We present the Glasgow Parallel Reduction Machine (GPRM), a novel, flexible
framework for parallel task-composition based many-core programming. We allow
the programmer to structure programs into task code, written as C++ classes,
and communication code, written in a restricted subset of C++ with functional
semantics and parallel evaluation. In this paper we discuss the GPRM, the
virtual machine framework that enables the parallel task composition approach.
We focus the discussion on GPIR, the functional language used as the
intermediate representation of the bytecode running on the GPRM. Using examples
in this language we show the flexibility and power of our task composition
framework. We demonstrate the potential using an implementation of a merge sort
algorithm on a 64-core Tilera processor, as well as on a conventional Intel
quad-core processor and an AMD 48-core processor system. We also compare our
framework with OpenMP tasks in a parallel pointer chasing algorithm running on
the Tilera processor. Our results show that the GPRM programs outperform the
corresponding OpenMP codes on all test platforms, and can greatly facilitate
writing of parallel programs, in particular non-data parallel algorithms such
as reductions.Comment: In Proceedings PLACES 2013, arXiv:1312.221
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