这些java本机内存是从哪里分配的? [英] Where do these java native memory allocated from?

查看:30
本文介绍了这些java本机内存是从哪里分配的?的处理方法,对大家解决问题具有一定的参考价值,需要的朋友们下面随着小编来一起学习吧!

问题描述

JDK版本是热点8u_45

我研究了我的 java 进程的本机内存.本机内存甚至比堆消耗更多的空间.然而,有许多本机内存块让我感到困惑.pmap -x 的结果例如:

00007f8128000000 65508 25204 25204 rw--- [匿名]00007f812bff9000 28 0 0 ----- [匿名]00007f812c000000 65508 24768 24768 rw--- [匿名]00007f812fff9000 28 0 0 ----- [匿名]00007f8130000000 65508 25532 25532 rw--- [匿名]00007f8133ff9000 28 0 0 ----- [匿名]00007f8134000000 65524 22764 22764 rw--- [匿名]00007f8137ffd000 12 0 0 ----- [匿名]00007f8138000000 65508 26456 26456 rw--- [匿名]00007f813bff9000 28 0 0 ----- [匿名]00007f813c000000 65508 23572 23572 rw--- [匿名]00007f813fff9000 28 0 0 ----- [匿名]00007f8140000000 65520 23208 23208 rw--- [匿名]00007f8143ffc000 16 0 0 ----- [匿名]00007f8144000000 65512 23164 23164 rw--- [匿名]00007f8147ffa000 24 0 0 ----- [匿名]00007f8148000000 65516 23416 23416 rw--- [匿名]00007f814bffb000 20 0 0 ----- [匿名]00007f814c000000 65508 23404 23404 rw--- [匿名]00007f814fff9000 28 0 0 ----- [匿名]00007f8150000000 65512 24620 24620 rw--- [匿名]00007f8153ffa000 24 0 0 ----- [匿名]00007f8154000000 65536 23976 23976 rw--- [匿名]00007f8158000000 65508 23652 23652 rw--- [匿名]00007f815bff9000 28 0 0 ----- [匿名]00007f815c000000 65508 23164 23164 rw--- [匿名]00007f815fff9000 28 0 0 ----- [匿名]00007f8160000000 65508 23344 23344 rw--- [匿名]00007f8163ff9000 28 0 0 ----- [匿名]00007f8164000000 65508 24052 24052 rw--- [匿名]00007f8167ff9000 28 0 0 ----- [匿名]00007f8168000000 131052 48608 48608 rw--- [匿名]00007f816fffb000 20 0 0 ----- [匿名]00007f8170000000 65516 23056 23056 rw--- [匿名]00007f8173ffb000 20 0 0 ----- [匿名]00007f8174000000 65516 26860 26860 rw--- [匿名]00007f8177ffb000 20 0 0 ----- [匿名]00007f8178000000 65508 23360 23360 rw--- [匿名]00007f817bff9000 28 0 0 ----- [匿名]00007f817c000000 65536 24856 24856 rw--- [匿名]00007f8180000000 65512 23272 23272 rw--- [匿名]00007f8183ffa000 24 0 0 ----- [匿名]00007f8184000000 65508 23688 23688 rw--- [匿名]00007f8187ff9000 28 0 0 ----- [匿名]00007f8188000000 65512 24024 24024 rw--- [匿名]00007f818bffa000 24 0 0 ----- [匿名]00007f818c000000 65508 25020 25020 rw--- [匿名]00007f818fff9000 28 0 0 ----- [匿名]00007f8190000000 65512 22868 22868 rw--- [匿名]00007f8193ffa000 24 0 0 ----- [匿名]00007f8194000000 65508 24156 24156 rw--- [匿名]00007f8197ff9000 28 0 0 ----- [匿名]00007f8198000000 65508 23684 23684 rw--- [匿名]

有很多块,大约占64M.

我使用 jcmd pid VM.native_memory detail 来跟踪这些内存块.但是,我找不到这些具有 jcmd 结果中列出的任何内存范围的块.

此外,我注意到一篇文章提到了 glic 的 malloc 中的竞技场效果

mem.bin.2

mem.bin.3

mem.bin.4

如图所示,大约有 30 个方块.

几天后,我使用 Google perf 工具来跟踪堆分配.并发现了这个:

说明:zip inflates 消耗近2G内存.我猜它可能与一些编译问题有关.

我看过这个问题:https://bugs.openjdk.java.net/browse/JDK-8164293.这与我的担忧有关吗?

那么如何追踪这些内存块的来源呢?

解决方案

使用jemalloctcmalloc - 它们都有内置分配有助于识别分配来源的分析器.

Java 进程可能出于多种原因使用过多的本机内存.受欢迎的原因是

  • 直接字节缓冲区
  • Unsafe.allocateMemory
  • 分配的内存
  • 未关闭的资源(例如 ZipInputStream)
  • 其他原生库

请注意,NativeMemoryTracking 不会显示本机库消耗的内存.

JDK version is hotspot 8u_45

I researched native memory of my java process. The native memory even consumes more space than heap. However there are many native memory blocks which confuses me. The result of pmap -x for example:

00007f8128000000   65508   25204   25204 rw---    [ anon ]
00007f812bff9000      28       0       0 -----    [ anon ]
00007f812c000000   65508   24768   24768 rw---    [ anon ]
00007f812fff9000      28       0       0 -----    [ anon ]
00007f8130000000   65508   25532   25532 rw---    [ anon ]
00007f8133ff9000      28       0       0 -----    [ anon ]
00007f8134000000   65524   22764   22764 rw---    [ anon ]
00007f8137ffd000      12       0       0 -----    [ anon ]
00007f8138000000   65508   26456   26456 rw---    [ anon ]
00007f813bff9000      28       0       0 -----    [ anon ]
00007f813c000000   65508   23572   23572 rw---    [ anon ]
00007f813fff9000      28       0       0 -----    [ anon ]
00007f8140000000   65520   23208   23208 rw---    [ anon ]
00007f8143ffc000      16       0       0 -----    [ anon ]
00007f8144000000   65512   23164   23164 rw---    [ anon ]
00007f8147ffa000      24       0       0 -----    [ anon ]
00007f8148000000   65516   23416   23416 rw---    [ anon ]
00007f814bffb000      20       0       0 -----    [ anon ]
00007f814c000000   65508   23404   23404 rw---    [ anon ]
00007f814fff9000      28       0       0 -----    [ anon ]
00007f8150000000   65512   24620   24620 rw---    [ anon ]
00007f8153ffa000      24       0       0 -----    [ anon ]
00007f8154000000   65536   23976   23976 rw---    [ anon ]
00007f8158000000   65508   23652   23652 rw---    [ anon ]
00007f815bff9000      28       0       0 -----    [ anon ]
00007f815c000000   65508   23164   23164 rw---    [ anon ]
00007f815fff9000      28       0       0 -----    [ anon ]
00007f8160000000   65508   23344   23344 rw---    [ anon ]
00007f8163ff9000      28       0       0 -----    [ anon ]
00007f8164000000   65508   24052   24052 rw---    [ anon ]
00007f8167ff9000      28       0       0 -----    [ anon ]
00007f8168000000  131052   48608   48608 rw---    [ anon ]
00007f816fffb000      20       0       0 -----    [ anon ]
00007f8170000000   65516   23056   23056 rw---    [ anon ]
00007f8173ffb000      20       0       0 -----    [ anon ]
00007f8174000000   65516   26860   26860 rw---    [ anon ]
00007f8177ffb000      20       0       0 -----    [ anon ]
00007f8178000000   65508   23360   23360 rw---    [ anon ]
00007f817bff9000      28       0       0 -----    [ anon ]
00007f817c000000   65536   24856   24856 rw---    [ anon ]
00007f8180000000   65512   23272   23272 rw---    [ anon ]
00007f8183ffa000      24       0       0 -----    [ anon ]
00007f8184000000   65508   23688   23688 rw---    [ anon ]
00007f8187ff9000      28       0       0 -----    [ anon ]
00007f8188000000   65512   24024   24024 rw---    [ anon ]
00007f818bffa000      24       0       0 -----    [ anon ]
00007f818c000000   65508   25020   25020 rw---    [ anon ]
00007f818fff9000      28       0       0 -----    [ anon ]
00007f8190000000   65512   22868   22868 rw---    [ anon ]
00007f8193ffa000      24       0       0 -----    [ anon ]
00007f8194000000   65508   24156   24156 rw---    [ anon ]
00007f8197ff9000      28       0       0 -----    [ anon ]
00007f8198000000   65508   23684   23684 rw---    [ anon ]

There are many blocks which occupy about 64M.

I use jcmd pid VM.native_memory detail to track these memory blocks. However, I cannot found these blocks with any of the memory ranges listed in the result of jcmd.

Furthermore, I noticed an article which mentions arena effect in malloc of glic Java 8 and Virtual Memory on Linux. However These blocks seem different from thread pool because 1. The mode is rw--- not ----- 2. The arena thread pool only affects virtual memory. It cannot explain these too much RSS.

I use gdb to track the allocated memory

dump binary memory mem.bin from to

mem.bin.1

mem.bin.2

mem.bin.3

mem.bin.4

There are about 30 blocks like those shown in the picture.

After some days, I use Google perf tools to track heap allocations. And found this:

It shows that: zip inflates consume nearly 2G memory. I guess it may concern with some compilation issue.

I have read this issue:https://bugs.openjdk.java.net/browse/JDK-8164293. Is this related to my concern?

So how can I track the source of these memory block?

解决方案

Use jemalloc or tcmalloc - they both have built-in allocation profiler that will help to identify the source of allocations.

Java process may use too much native memory for many reasons. Popular reasons are

  • Direct ByteBuffers
  • Memory allocated by Unsafe.allocateMemory
  • Unclosed resources (e.g. ZipInputStream)
  • other native libraries

Note that NativeMemoryTracking will not show memory consumed by native libraries.

这篇关于这些java本机内存是从哪里分配的?的文章就介绍到这了,希望我们推荐的答案对大家有所帮助,也希望大家多多支持IT屋!

查看全文
登录 关闭
扫码关注1秒登录
发送“验证码”获取 | 15天全站免登陆