组合优化的平行梁搜索

Nikolaus Frohner, Jan Gmys, N. Melab, G. Raidl, E. Talbi
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引用次数: 1

摘要

受并行精确方法在解决复杂调度问题上的成功启发,我们提出了一种通用的并行束搜索框架,用于组合优化问题。束搜索是一种建设性的元启发式算法,它一层一层地遍历搜索树,同时在每一层中保留有限数量的有希望的节点,以并行地考虑许多部分解。提出了一种适用于节点内并行化的数据并行化多线程算法。通过在通过MPI通信的独立工作者上执行多个随机运行,将多样化和节点间并行化相结合。对于足够大的问题实例和波束宽度,我们在jit编译的Julia语言中的原型实现允许在46个内核上使用统一的内存访问加速30-42倍,用于两个困难的经典问题,即具有流时间目标的置换流水车间调度(PFSP)和旅行比赛问题(TTP)。这使我们能够执行大波束宽度运行,为22个困难的TTP基准实例(最多20个团队)找到11个新的最佳可行解决方案,每个实例的平均时钟运行时间约为1小时。
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Parallel Beam Search for Combinatorial Optimization
Inspired by the recent success of parallelized exact methods to solve difficult scheduling problems, we present a general parallel beam search framework for combinatorial optimization problems. Beam search is a constructive metaheuristic traversing a search tree layer by layer while keeping in each layer a bounded number of promising nodes to consider many partial solutions in parallel. We propose a variant which is suitable for intra-node parallelization by multithreading with data parallelism. Diversification and inter-node parallelization are combined by performing multiple randomized runs on independent workers communicating via MPI. For sufficiently large problem instances and beam widths our prototypical implementation in the JIT-compiled Julia language admits speed-ups between 30–42 × on 46 cores with uniform memory access for two difficult classical problems, namely Permutation Flow Shop Scheduling (PFSP) with flowtime objective and the Traveling Tournament Problem (TTP). This allowed us to perform large beam width runs to find 11 new best feasible solutions for 22 difficult TTP benchmark instances up to 20 teams with an average wallclock runtime of about one hour per instance.
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