基于区域的大数据系统内存管理

Khanh Nguyen, Lu Fang, G. Xu, Brian Demsky
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引用次数: 14

摘要

大多数现实世界的大数据系统都是用托管语言编写的。由于为处理输入数据而创建的大量对象,这些系统存在严重的内存问题。大量对象的分配和释放给垃圾收集器带来了严重的压力,导致过多的GC工作和/或内存不足崩溃。基于区域的内存管理最近被证明可以有效地降低大数据系统的GC成本。然而,所有现有的基于区域的技术都需要大量的用户注释,导致其实用性和实用性有限。本文报告了一个正在进行的项目,旨在设计和实现一种新的基于区域的投机技术,只需要最小的用户参与。在我们的系统中,对象被推测地分配到它们各自的区域,并在需要时提升到堆中。我们开发了一种对象提升算法,该算法只扫描区域的次数很少,这有望显著提高内存管理效率。我们还提出了基于openjdk的实现计划和评估计划。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Speculative region-based memory management for big data systems
Most real-world Big Data systems are written in managed languages. These systems suffer from severe memory problems due to the massive volumes of objects created to process input data. Allocating and deallocating a sea of objects puts a severe strain on the garbage collector, leading to excessive GC efforts and/or out-of-memory crashes. Region-based memory management has been recently shown to be effective to reduce GC costs for Big Data systems. However, all existing region-based techniques require significant user annotations, resulting in limited usefulness and practicality. This paper reports an ongoing project, aiming to design and implement a novel speculative region-based technique that requires only minimum user involvement. In our system, objects are allocated speculatively into their respective regions and promoted into the heap if needed. We develop an object promotion algorithm that scans regions for only a small number of times, which will hopefully lead to significantly improved memory management efficiency. We also present an OpenJDK-based implementation plan and an evaluation plan.
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