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首页> 外文期刊>IEEE Transactions on Knowledge and Data Engineering >A highly effective partition selection policy for object database garbage collection
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A highly effective partition selection policy for object database garbage collection

机译:用于对象数据库垃圾收集的高效分区选择策略

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摘要

We investigate methods to improve the performance of algorithms for automatic storage reclamation of object databases. These algorithms are based on a technique called partitioned garbage collection, in which a subset of the entire database is collected independently of the rest. We evaluate how different application, database system, and garbage collection implementation parameters affect the performance of garbage collection in object database systems. We focus specifically on investigating the policy that is used to select which partition in the database should be collected. Three of the policies that we investigate are based on the intuition that the values of overwritten pointers provide good hints about where to find garbage. A fourth policy investigated chooses the partition with the greatest presence in the I/O buffer. Using simulations based on a synthetic database, we show that one of our policies requires less I/O to collect more garbage than any existing implementable policy. Furthermore, that policy performs close to a locally optimal policy over a wide range of simulation parameters, including database size, collection rate, and database connectivity. We also show what impact these simulation parameters have on application performance and investigate the expected costs and benefits of garbage collection in such systems.
机译:我们研究提高对象数据库自动存储回收算法性能的方法。这些算法基于一种称为分区垃圾收集的技术,在该技术中,整个数据库的子集独立于其余数据库进行收集。我们评估不同的应用程序,数据库系统和垃圾回收实现参数如何影响对象数据库系统中垃圾回收的性能。我们特别专注于调查用于选择应在数据库中收集哪个分区的策略。我们研究的三个策略是基于直觉的,即重写指针的值提供了有关在哪里找到垃圾的良好提示。研究的第四个策略选择在I / O缓冲区中存在最大的分区。使用基于综合数据库的模拟,我们显示,与任何现有的可实施策略相比,我们的策略之一需要更少的I / O来收集更多的垃圾。此外,该策略在广泛的模拟参数(包括数据库大小,收集速率和数据库连接性)上执行接近于本地最佳策略的策略。我们还将展示这些仿真参数对应用程序性能的影响,并调查此类系统中垃圾收集的预期成本和收益。

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