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
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!!!