I've been trying to track down a very slow, but persistent, native memory leak in a node.js app, and I've run out of strategies.
The process has what appears to be a level heap, but as the hours and days roll on, the RSS of the node.js process slowly grows. The process is a job handler that runs the same type of job for different parameters, over and over. The growth of the RSS of the process takes the same shape as the line plotting the cumulative number of jobs run, so each job run is somehow leaking a bit of memory.
Since the heap is more or less constant, the standard heap inspection tools don't seem to be much help.
Here's an example of what the memory consumption looks like:
Currently running on node 0.8.7. Each job does a number of database reads/writes, communicates with a redis instance, and does some web requests using mikael/request.
Have you updated to the newest release?
I know everyone says that :), I just felt like I should join the band wagon of updating my version of node.js on my production servers every two weeks when I think I have an issue. Sounds like a great idea doesn't it?
So I have been wondering the same thing, I have several node.js projects that I have been managing for a few months now (and also that I wrote last year). It seems that very slowly the V8 engine, or my node application, just eats memory and never frees it. (its slow enough that I only have to restart them every now and then)
Which is very stressful, especially considering that it should free up the RSS memory, or eventually peak out.
If you are interested in tracking objects being leaked inside of the runtime (and by that i mean javascript objects, functions, etc), mozilla has a very complete blog post about tracking down memory leaks and a few links to projects that can be used to do this.
For what ever reason they don't have this one on the list though. (it seems simple enough, I'm trying it out now on my own projects to see if it works, I tend to not get any of the V8 based ones to compile correctly)
heapdump and here is a link to a how to guide.
From my own experience the V8 engine seems to allocate memory, and hold onto it just incase it needs that exact same memory chunk later. Also my brother who has been using Node.js heavily for about 3 years has seen the same thing.
Also just for completeness (I know you already have), if any one would like to verify that you are not leaking memory inside of V8, an engineer from joyent has a pretty decent write up of how to track V8 memory leaks down.
We are working on a rich client application in which many threads are running as well third party controls are used, after running application for 1 hour it starts giving error of 'System.OutOfMemoryException' unless and until we restart the application, i have search many sites for help but no particular and specified reason is giving.
Thanks.
It sounds pretty self-explanatory, you're system doesn't have enough memory. If you're still running the application as 32-bit then moving to 64-bit might solve the problem. I had exactly that problem on a server-2008-r2 recently, and moving to 64 bit did solve my problem. But if you're already 64 bit then perhaps the server doesn't have enough physical memory. In which case, you need to add more memory, or work out how to make your application less memory hungry. There could be objects that could be discarded that it's keeping references to, etc, and if that's the case you should try profiling to try and identify what's hogging the most memory. Beyond that, does the application use any unmanaged DLLs, e.g. COM objects written in C++ or similar. Maybe there's a memory leak outside of the managed framework?
I recommend using a profiler to identify and find where does the high memory consumption come from.
This problem is killing the stability of my production servers.
To recap, the basic idea is that my node server(s) sometimes intermittently slow down, sometimes resulting in Gateway Timeouts. As best as I can tell from my logs, something is blocking the node thread (meaning that the incoming request is not accepted), but I cannot for the life of me figure out what.
The problem ranges in severity. Sometimes what should be <100ms requests take ~10 seconds to complete; sometimes they never even get accepted by the node server at all. In short, it is as though some random task is working and blocking the node thread for a period of time, thus slowing down (or even blocking) incoming requests; the one thing I can say for sure is that the need-to-fix-symptom is a "Gateway Timeout".
The issue comes and goes without warning. I have not been able to correlate it against CPU usage, RAM usage, uptime, or any other relevant statistic. I've seen the servers handle a large load fine, and then have this error with a small load, so it does not even appear to be load-related. It is not unusual to see the error around 1am PST, which is the smallest load time of the day! Restarting the node app does seem to maybe make the problem go away for a while, but that really doesn't tell me much. I do wonder if it might be a bug in node.js... not very comforting, considering it is killing my production servers.
The first thing I did was to make sure I had upgraded node.js to the latest (0.8.12), as well as all my modules (here they are). Of course, I also have plenty of error catchers in place. I'm not doing anything funky like printing out lots to the console or writing to lots of files.
At first, I thought it was outbound HTTP requests blocking the incoming socket, because the express middleware was not even picking up the inbound request, but I gave up the theory because it looks like the node thread itself became busy.
Next, I went through all my code with JSHint and fixed literally every single warning, including a few accidental globals (forgetting to write "var") but this didn't help
After that, I assumed that perhaps I was running out of memory. But, my heap snapshots via nodetime are looking pretty good now (described below).
Still thinking that memory might be an issue, I took a look at garbage collection. I enabled the --nouse-idle-notification flag and did some more code optimization to NULL objects when they were not needed.
Still convinced that memory was the issue, I added the --expose-gc flag and executed the gc(); command every minute. This did not change anything, except to occasionally make requests a bit slower perhaps.
In a desperate attempt, I setup the "cluster" module to use 2 workers and automatically restart them every 30 min. Still, no luck.
I increased the ulimit to over 10,000 and kept an eye on the open files. There seem to be < 300 open files (or sockets) per node.js app, and increasing the ulimit thus had no impact.
I've been logging my server with nodetime and here's the jist of it:
CentOS 5.2 running on the Amazon Cloud (m1.large instance)
Greater than 5000 MB free memory at all times
Less than 150 MB heap size at all times
CPU usage is less than 60% at all times
I've also checked my MongoDB servers, which have <5% CPU usage and no requests are taking > 100ms to complete, so I highly doubt there's a bottleneck.
I've wrapped (almost) all my code using Q-promises (see code sample), and of course have avoided Sync() calls like the plague. I've tried to replicate the issue on my testing server (OSX), but have had little luck. Of course, this may be just because the production servers are being used by so many people in so many unpredictable ways that I simply cannot replicate via stress tests...
Many months after I first asked this question, I found the answer.
In a nutshell, the problem was that I was not piping a big asset when transferring it from one server to another. In other words, I was downloading an image from one server, before uploading it to a S3 bucket. Instead of streaming the download into the upload, I downloaded the file into memory, and then uploaded it.
I'm not sure why this did not show up as a memory spike, or elsewhere in my statistics.
My guess is Mongoose. If you are storing large payloads in Mongo, Mongoose can be pretty slow due to how it builds the Mongoose objects. See https://github.com/LearnBoost/mongoose/issues/950 for more details on the problem. If this is the problem you wouldn't see it in Mongo itself since the query returns quickly, but object instantiation could take 75x the query time.
Try setting up timers around (process.hrtime()) before and after you the Mongoose objects are being created to see if that might be the problem. If this is the problem, I would switch to using the node Mongo driver directly instead of going through Mongoose.
You are heavily leaking memory, try setting every object to null as soon as you don't need it anymore! Read this.
More information about hunting down memory leaks can be found here.
Give special attention to having multiple references to the same object and check if you have circular references, those are a pain to debug but will help you very much.
Try invoking the garbage collector manually every minute or so (I don't know if you can do this in node.js cause I'm more of a c++ and php coder). From my years of experience working with c++ I can tell you the most likely cause of your application slowing down over time is memory leaks, find them and plug them, you'll be ok!
Also assuming you're not caching and/or processing images, audio or video in memory or anything like that 150M heap is a lot! Those could be hundreds of thousands or even millions of small objects.
You don't have to be running out of memory for your application to slow down... just searching for free memory with that many objects already allocated is a huge job for the memory allocator, it takes a lot of time to allocate each new object and as you leak more and more memory that time only increases.
Is "--nouse-idle-connection" a mistake? do you really mean "--nouse_idle_notification".
I think it's maybe some issues about gc with too many tiny objects.
node is single process, so watch the most busy cpu core is much important than the load.
when your program is slow, you can execute "gdb node pid" and "bt" to see what node is busy doing.
What I'd do is set up a parallel node instance on the same server with some kind of echo service and test that one. If it runs fine, you narrow down your problem to your program code (and not a scheduler/OS-level problem). Then, step by step, include the modules and test again. Certainly this is a lot of work, takes long and I dont know if it is doable on your system.
If you need to get this working now, you can go the NASA redundancy route:
Bring up a second copy of your production servers, and put a proxy in front of them which routes each request to both stacks and returns the first response. I don't recommend this as a perfect long-term solution but it should help significantly reduce issues in production now, and help you gather log data that you could replay to recreate the issues on non-production servers.
Obviously, this is straight-forward for read requests, but more complex for commands which write to the db.
We have a similar problem with our Node.js server. It didn't scale well for weeks and we had tried almost everything as you had. Our problem was in the implicit backlog value which is set very low for high-concurrent environments.
http://nodejs.org/api/http.html#http_server_listen_port_hostname_backlog_callback
Setting the backlog to a significantly higher value (e.g. 10000) as well as tune networking in our kernel (/etc/sysctl.conf on Linux) as described in manual section helped a lot. From this time forward we don't have any timeouts in our Node.js server.
I am reading CUDA By Example and I found that when they introduced events, they called cudaEventDestroy for each event they created.
However I noticed that some later examples neglected this cleanup function. Are there any undesirable side-effects of forgetting to destroy created events and streams (i.e. like a memory leak when you forget to free allocated memory)?
Any resources the app is still holding at the time it exits will be automatically free'ed by the OS / drivers. So, if the app creates only a limited number of events, it is not strictly necessary to free them manually. Still, letting the app exit without freeing all resources on purpose is bad practice because it becomes hard to distinguish between genuine leaks and "on purpose" leaks.
You have identified bugs in the book's sample code.
CUDA events are lightweight, but a resource leak is a resource leak. Over time, if you leak enough of them, you won't be able to create them anymore.
I have a web application that hangs under high loads. I'm not going to go into the specifics of the code because I really just want some troubleshooting advice and tooling recommendations.
It's a web app, so each request get's a thread. Under a high load test, the app begins to consume all of the cpu, while becoming unresponsive. I suspect that the request threads are hanging in the new code that we are testing. Due to the fact of the cpu consumption, I'm assuming this must be on my app side. My understanding, which could be wrong, is that total cpu consumption indicated my first troubleshooting efforts should be in looking at the code that's consuming those cycles.
What are some tools and/or methods for inspecting which threads are hanging and on what lines of code? Again, I can easily force the app into the problematic behavior.
I've found and been trying out visualvm. Seems like the perfect tool. Still open for suggestions though. I looked at eclipse TPTP and it seems to be end-of-life-ing as well as requiring a more heavy weight deployment.
You can insert logging messages at starting a thread and closing a thread. Then you start the application and inspect the output while penetrating the code.
Another way is to look for memory leaks. If you are sure you haven't one, you can extend the virtual memory of your JVM.
#chad: do you have Database in whole picture...you may want to start by looking what is happening at DB side...you can very well look into DB locks, current sessions etc.