0

A week ago I posted a similar question but it never got answered. I have spent a lot of time debugging the issue I'm having, allow me to briefly introduce the problem:

After about 8 - 16 hours (11 hours on average), there is one job that gets stuck and Spark stalls. Screenshots

enter image description here

and

enter image description here

If I manually (kill) that job, then Spark crashes.

The log4j logs don't show any warnings/errors at all. So I added my own logger to find at which step it fails. My code looks like this:

DS = KafkaUtils.createDirectStream(ssc, ...)
dstream = DS.map(...)
dstream.foreachRDD(lambda time, rdd:
    rdd.foreachPartition(lamda parti: doWork(time, parti) )
)

def doWork(time, parti):
    for part in parti:
            mention = part['mention'] # extract string from json
            words = nltk.wordpunct_tokenize(mention)
            kw = part['keyword']
            #...
            log.info("I")
            if len(set(dictKeywords[kw]).intersection([w.lower() for w in words])) <= 0:
                    retobj['keeper']=0 # don't keep it
            elif detect(editedMention) != 'en':
                    retobj['keeper']=0 # don't keep it

            cleantxt = ppr.clean(mention)
            log.info("J")
            # ...

Here is the log file as of when the job got stuck:

...
2018-01-16 16:48:35,797 I
2018-01-16 16:48:35,818 J
...
2018-01-16 16:48:35,853 I

^ this is the end (job got stuck after printing "I")

It should print "J", but it doesn't, so one of three functions is causing it to hang/crash/stall: set.Intersect / langdetect.detect / tweet-preprocessor ppr.

But it doesn't make sense, why does it fail after so much time? I have "try + except" blocks everywhere in my code, and if there was an exception it would've been logged.

  • I am on local mode (single node).
  • I use "spark-submit" to launch the python script.
  • I have tried making Spark use both Python 3.5.2 and Python 3.6 .
  • I have tried with caching RDDs and without caching.
  • It's not an OOM issue, the GC logs didn't indicate anything unusual.

Any ideas? Thanks!!!

  • local mode is a development tool. It is not designed for long term production use. – hi-zir Jan 16 '18 at 18:00
  • Your log output seems strange. The first three lines are HIJ, but your code says that I should be followed by N. – John Gordon Jan 16 '18 at 18:01
  • That's what I also thought about, so I think I should make it run in standalone and see if the same thing happens. Thanks for your quick reply. But even though it's development mode, why does it behave so strange? Sometimes it runs of 20+ hrs but eventually crashes, and sometimes it crashes after 1hr. @JohnGordon, I have edited the log output because the real log contains more letters -- I edited my post above to make it match the code. – Ilja Nevolin Jan 16 '18 at 18:02
  • It is, but in local mode there is a lot of stuff squeezed into a single JVM. UI output alone can consume a lot of resources. But TBH your guess is a good as mine at the moment. Have you seen anything unusual when you monitor memory usage in general? How about the input? Is it possible that there is some large spike in Kafka which overwhelms PySpark executor? – hi-zir Jan 16 '18 at 18:07
  • Not at all. It might have been the webUI. I also tried increasing driver/executor memory to 1, 2 and 4gb. I am currently setting it up to run in standalone mode, maybe that's the trick :) – Ilja Nevolin Jan 16 '18 at 18:09
0

@user8371915 I would like to thank you very much for helping me out. I believe I have identified the problem and running a final test now.

The Tweet-Preprocessor module which I use (source: https://github.com/s/preprocessor ) has a very nasty bug. Have a look at this code:

import preprocessor as ppr
mention = "Try this Bitcoin Price app https://itunes.apple.com/in/app/bitcoin-price-calculator/id1315298877?mt=8[app](https://itunes.apple.com/in/app/bitcoin-price-calculator/id1315298877?mt=8)"
print(mention)
cleantxt = ppr.clean(mention)
print(cleantxt)

The code above will get stuck forever in the "clean" method. But this only happens for a very specific tweet (like the one above). So it takes several hours until such a tweet is encountered.

I have removed everything related to the preprocessor module and re-designed my code. I believe I will no longer have this problem again.

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

Not the answer you're looking for? Browse other questions tagged or ask your own question.