使用遗传算法减少隔离自由列表中的内部碎片

Christian Del Rosso
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引用次数: 11

摘要

在本文中,我们提出了一种使用遗传算法来提高内存效率的方法。更准确地说,我们通过找到隔离的自由列表数据结构的最佳配置来改善内部内存碎片。我们已经使用跟踪检测来从重要的场景中生成内存分配和释放的工作负载。遗传算法将工作负载作为输入,通过演化初始种群(一组潜在解决方案),在大量潜在解决方案中生成最优配置。在实践中,内存配置是基于基于系统工作事实的经验证据创建的。然而,通过使用遗传算法,一种更科学合理的方法是可能的。我们使用的方法在为分离的空闲列表提供配置参数方面是快速而有效的。结果基于启发式的使用,并在暴力破解方法不可行的情况下提供了一个很好的选择。此外,遗传算法的使用表明,软件工程学科可以从涉及复杂性、适应性和进化的不同研究领域中受益。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Reducing internal fragmentation in segregated free lists using genetic algorithms
In this paper we present an approach for improving memory efficiency using genetic algorithms. More precisely, we improve the internal memory fragmentation by finding the optimal configuration of a segregated free lists data structure. We have used trace instrumentation to generate the workload of memory allocations and deallocations from significant scenarios.The genetic algorithm used the workload as input to generate the optimal configuration among the huge number of potential solutions by evolving an initial population (a set of potential solutions). In practice, memory configurations are created on the empirical evidence based on the fact that the system works. However, a more scientific and rational approach is possible by using genetic algorithms. The approach we have used was fast and effective in providing the configuration parameters for the segregated free lists. The result is based on the use of heuristics and provides an excellent choice when a brute force approach is not feasible. Moreover, the use of genetic algorithms shows that the software engineering discipline can benefit from different research areas where complexity, adaptation and evolution are involved.
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