I have a JVM running in a docker container. I did some memory analysis using two tools: 1) top 2) Java Native Memory Tracking. The numbers look confusing and I am trying to find whats causing the differences.


The RSS is reported as 1272MB for the Java process and the Total Java Memory is reported as 790.55 MB. How can I explain where did the rest of the memory 1272 - 790.55 = 481.44 MB go?

Why I want to keep this issue open even after looking at this question on SO:

I did see the answer and the explanation makes sense. However, after getting output from Java NMT and pmap -x , I am still not able to concretely map which java memory addresses are actually resident and physically mapped. I need some concrete explanation (with detailed steps) to find whats causing this difference between RSS and Java Total committed memory.

Top Output

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Java NMT

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Docker memory stats

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I have a docker container running for most than 48 hours. Now, when I see a graph which contains:

  1. Total memory given to the docker container = 2 GB
  2. Java Max Heap = 1 GB
  3. Total committed (JVM) = always less than 800 MB
  4. Heap Used (JVM) = always less than 200 MB
  5. Non Heap Used (JVM) = always less than 100 MB.
  6. RSS = around 1.1 GB.

So, whats eating the memory between 1.1 GB (RSS) and 800 MB (Java Total committed memory)?

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You have some clue in " Analyzing java memory usage in a Docker container" from Mikhail Krestjaninoff:

Resident Set Size is the amount of physical memory currently allocated and used by a process (without swapped out pages). It includes the code, data and shared libraries (which are counted in every process which uses them)

Why does docker stats info differ from the ps data?

Answer for the first question is very simple - Docker has a bug (or a feature - depends on your mood): it includes file caches into the total memory usage info. So, we can just avoid this metric and use ps info about RSS.

Well, ok - but why is RSS higher than Xmx?

Theoretically, in case of a java application

RSS = Heap size + MetaSpace + OffHeap size

where OffHeap consists of thread stacks, direct buffers, mapped files (libraries and jars) and JVM code itse

Since JDK 1.8.40 we have Native Memory Tracker!

As you can see, I’ve already added -XX:NativeMemoryTracking=summary property to the JVM, so we can just invoke it from the command line:

docker exec my-app jcmd 1 VM.native_memory summary

(This is what the OP did)

Don’t worry about the “Unknown” section - seems that NMT is an immature tool and can’t deal with CMS GC (this section disappears when you use an another GC).

Keep in mind, that NMT displays “committed” memory, not "resident" (which you get through the ps command). In other words, a memory page can be committed without considering as a resident (until it directly accessed).

That means that NMT results for non-heap areas (heap is always preinitialized) might be bigger than RSS values.

(that is where "Why does a JVM report more committed memory than the linux process resident set size?" comes in)

As a result, despite the fact that we set the jvm heap limit to 256m, our application consumes 367M. The “other” 164M are mostly used for storing class metadata, compiled code, threads and GC data.

First three points are often constants for an application, so the only thing which increases with the heap size is GC data.
This dependency is linear, but the “k” coefficient (y = kx + b) is much less then 1.

More generally, this seems to be followed by issue 15020 which reports a similar issue since docker 1.7

I'm running a simple Scala (JVM) application which loads a lot of data into and out of memory.
I set the JVM to 8G heap (-Xmx8G). I have a machine with 132G memory, and it can't handle more than 7-8 containers because they grow well past the 8G limit I imposed on the JVM.

(docker stat was reported as misleading before, as it apparently includes file caches into the total memory usage info)

docker stat shows that each container itself is using much more memory than the JVM is supposed to be using. For instance:

dave-1 3.55% 10.61 GB/135.3 GB 7.85% 7.132 MB/959.9 MB
perf-1 3.63% 16.51 GB/135.3 GB 12.21% 30.71 MB/5.115 GB

It almost seems that the JVM is asking the OS for memory, which is allocated within the container, and the JVM is freeing memory as its GC runs, but the container doesn't release the memory back to the main OS. So... memory leak.

  • thanks for your reply! I just attached a graph to the original question. The thing is that, as per the summary that you have provided, if JVM was asking the OS for memory, then when the heap used grows up, then RSS should have also shot up. And, when GC would have happened, the heap used would have come down but the RSS wouldn't have. But, when I see the graphs, I do see that right from the word go, there is a considerable gap between RSS and Java total committed memory. How can I explain this gap? – sunsin1985 Aug 4 '16 at 18:09
  • @sunsin1985 "whats eating the memory between 1.1 GB (RSS) and 800 MB (Java Total committed memory)?" I suspect those are the "storing class metadata, compiled code, threads and GC data" referenced in the article, plus GC might not free anything if the container keep not releasing it. – VonC Aug 4 '16 at 18:13
  • thanks, but won't that be part of the "total committed" number obtained from Java NMT? – sunsin1985 Aug 4 '16 at 18:42
  • @sunsin1985 True (unless your graph is stacking values one on top of the others) – VonC Aug 4 '16 at 19:04
  • @sunsin1985 another good read: devcenter.heroku.com/articles/java-memory-issues, where the full java option becomes JAVA_OPTS="-XX:NativeMemoryTracking=detail -XX:+UnlockDiagnosticVMOptions -XX:+PrintNMTStatistics" – VonC Aug 4 '16 at 19:08

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