Poster: High Performance GPU Accelerated TSP Solver

K. Rocki, R. Suda
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Abstract

We are presenting a high performance GPU accelerated implementation of 2-opt local search algorithm for the Traveling Salesman Problem (TSP). GPU usage greatly decreases the time needed to optimize the route, however requires a complicated and well tuned implementation. With the increasing problem size, the time spent on comparing the graph edges grows significantly. We used instances from the TSPLIB library for for testing and our results show that by using our GPU algorithm, the time needed to perform a simple local search operation can be decreased approximately 5 to 45 times compared to parallel CPU code implementation using 6 cores. The code has been implemented in CUDA as well as in OpenCL and tested on NVIDIA and AMD devices. The experimental studies have shown that the optimization algorithm using the GPU local search converges from up to 300 times faster on average compared to the sequential CPU version, depending on the problem size. The main contributions of this work are the problem division scheme exploiting data locality which allows to solve arbitrarily big problem instances using GPU and the parallel implementation of the algorithm itself.
海报:高性能GPU加速TSP求解器
针对旅行商问题(TSP),提出了一种高性能GPU加速实现的2-opt局部搜索算法。GPU的使用大大减少了优化路由所需的时间,但是需要一个复杂和良好的实现。随着问题规模的增加,花在图边比较上的时间显著增加。我们使用TSPLIB库中的实例进行测试,结果表明,与使用6核的并行CPU代码实现相比,使用我们的GPU算法执行简单的本地搜索操作所需的时间可以减少大约5到45倍。该代码已在CUDA和OpenCL中实现,并在NVIDIA和AMD设备上进行了测试。实验研究表明,根据问题的大小,使用GPU局部搜索的优化算法的收敛速度平均比顺序CPU版本快300倍。这项工作的主要贡献是利用数据局部性的问题划分方案,该方案允许使用GPU解决任意大的问题实例,以及算法本身的并行实现。
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