I am using Python3 on Ubuntu 14.04, and am running Stanford POSTagger on a corpus of 67 raw text articles, thje redacted python script is as follows:

from nltk.tag.stanford import POSTagger

with open('the_file.txt','r') as file:


english_postagger = POSTagger('models/english-bidirectional-distsim.tagger', 'stanford-postagger.jar')

for line in g:

after several iterations of which I get the following error:

Exception in thread "main" java.lang.OutOfMemoryError: Java heap space at edu.stanford.nlp.sequences.ExactBestSequenceFinder.bestSequence(ExactBestSequenceFinder.java:109)
at edu.stanford.nlp.sequences.ExactBestSequenceFinder.bestSequence(ExactBestSequenceFinder.java:31)
at edu.stanford.nlp.tagger.maxent.TestSentence.runTagInference(TestSentence.java:322)
at edu.stanford.nlp.tagger.maxent.TestSentence.testTagInference(TestSentence.java:312)
at edu.stanford.nlp.tagger.maxent.TestSentence.tagSentence(TestSentence.java:135)
at edu.stanford.nlp.tagger.maxent.MaxentTagger.tagSentence(MaxentTagger.java:998)
at edu.stanford.nlp.tagger.maxent.MaxentTagger.tagCoreLabelsOrHasWords(MaxentTagger.java:1788)
at edu.stanford.nlp.tagger.maxent.MaxentTagger.tagAndOutputSentence(MaxentTagger.java:1798)
at edu.stanford.nlp.tagger.maxent.MaxentTagger.runTagger(MaxentTagger.java:1709)
at edu.stanford.nlp.tagger.maxent.MaxentTagger.runTagger(MaxentTagger.java:1770)
at edu.stanford.nlp.tagger.maxent.MaxentTagger.runTagger(MaxentTagger.java:1543)
at edu.stanford.nlp.tagger.maxent.MaxentTagger.runTagger(MaxentTagger.java:1499)
at edu.stanford.nlp.tagger.maxent.MaxentTagger.main(MaxentTagger.java:1842)

I have also run the stanford postagger from command line as:

java -mx300m -classpath stanford-postagger.jar   edu.stanford.nlp.tagger.maxent.MaxentTagger -model models/wsj-0-18-bidirectional-distsim.tagger -textFile sample-input.txt > sample-tagged.txt

with a similar error. I even passed Java 2 GB of memory, and still no luck.

Any thoughts/ideas or hacky type solutions are greatly welcomed!

Well spotted @nsanglar, so I tried:

java -Xmx2g -classpath stanford-postagger.jar   edu.stanford.nlp.tagger.maxent.MaxentTagger -model models/wsj-0-18-bidirectional-distsim.tagger -textFile raw_text.txt > sample-tagged.txt

I get an error log message, with the following header:

# There is insufficient memory for the Java Runtime Environment to continue.
# Native memory allocation (malloc) failed to allocate 283639808 bytes for committing   reserved memory.
# Possible reasons:
#   The system is out of physical RAM or swap space
#   In 32 bit mode, the process size limit was hit
# Possible solutions:
#   Reduce memory load on the system
#   Increase physical memory or swap space
#   Check if swap backing store is full
#   Use 64 bit Java on a 64 bit OS
#     Decrease Java heap size (-Xmx/-Xms)
#   Decrease number of Java threads
#   Decrease Java thread stack sizes (-Xss)
#   Set larger code cache with -XX:ReservedCodeCacheSize=
# This output file may be truncated or incomplete.

#  Out of Memory Error (os_linux.cpp:2798), pid=25677, tid=140571167794944

# JRE version: OpenJDK Runtime Environment (7.0_65-b32) (build 1.7.0_65-b32)
# Java VM: OpenJDK 64-Bit Server VM (24.65-b04 mixed mode linux-amd64 compressed oops)
# Derivative: IcedTea 2.5.2
# Distribution: Ubuntu 14.04 LTS, package 7u65-2.5.2-3~14.04
# Failed to write core dump. Core dumps have been disabled. To enable core dumping, try  "ulimit -c unlimited" before starting Java again
  • I never saw such error log, but it seems that you are trying to allocate too much memory to your application (e.g. 2Go). Can you try with less? Try -Xmx512m or -Xmx1024m and it might be better.
    – nsanglar
    Oct 20 '14 at 14:13
  • thanks for your help, I did as you suggested and again got: Exception in thread "main" java.lang.OutOfMemoryError: Java heap space
    – laila
    Oct 20 '14 at 15:34

Well, it turns out it was a RAM issue, I simply did not have enough memory to execute the command. Running the tagger off a server did the trick.


you should use -Xmx1024m. I think you made a typo because currently your are using -mx :)

  • thanks for noting that, unfortunatley though it did not solve the problem.
    – laila
    Oct 20 '14 at 13:44

In python set:

  • Thanks, this line worked for me (with the lexParser instead of tagger)
    – Igor
    Jan 10 '18 at 8:33

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.