断点中值问题中加速TSP核的优化NoC架构

Turbo Majumder, Souradip Sarkar, P. Pande, A. Kalyanaraman
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引用次数: 5

摘要

旅行商问题(TSP)是图论中一个经典的np完全问题。它的目标是找到一个最小代价的哈密顿循环,遍历输入边加权图的所有顶点。TSP的一个应用是基于断点中值的最大简约系统发育树重建,其中使用有界边权模型。指数算法应用高效的启发式,如分支定界,来动态地修剪搜索空间。利用细粒度并行性和高效的通信网络,我们在基于noc的实现中采用了这种方法来解决针对系统发育的TSP。TSP的解决时间的最大部分是由使用图的邻接矩阵的特定下界计算操作占的。在本文中,我们提出了一个高度优化的下界计算核的处理元件的设计和实现,并评估了它的性能。此外,我们探讨了两种主要的NoC架构-网格和四叉树-并表明后者更适合该应用领域。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An optimized NoC architecture for accelerating TSP kernels in breakpoint median problem
Traveling Salesman Problem (TSP) is a classical NP-complete problem in graph theory. It aims at finding a least-cost Hamiltonian cycle that traverses all vertices of an input edge-weighted graph. One application of TSP is in breakpoint median-based Maximum Parsimony phylogenetic tree reconstruction, wherein a bounded edge-weight model is used. Exponential algorithms that apply efficient heuristics, such as branch-and-bound, to dynamically prune the search space are used. We adopted this approach in an NoC-based implementation for solving TSP targeted towards phylogenetics taking advantage of the fine-grained parallelism and efficient communication network. The largest fraction of the solution time for TSP is accounted for by a particular lower bound calculation operation that uses the graph's adjacency matrix. In this paper, we present the design and implementation of the processing elements with a highly optimized lower bound computation kernel and evaluate its performance. Additionally, we explore two major NoC architectures -mesh and quad-tree - and show that the latter is more suitable for this application domain.
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