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My sklearn version is 0.14.1 with python 2.7 on linux Debian GNU/Linux 7.1


clf = RandomForestClassifier(min_samples_split = 10, n_estimators = 50 , n_jobs = 1) is ok

while calling:

clf = RandomForestClassifier(min_samples_split = 10, n_estimators = 50 , n_jobs = 5)
clf.fit(train.toarray(), targets)

throw the following exception:

Traceback (most recent call last):
File "/usr/lib/python2.7/threading.py", line 552, in bootstrap_inner
File "/usr/lib/python2.7/threading.py", line 505, in run
self.target(self.__args, *self.__kwargs)
File "/usr/lib/python2.7/multiprocessing/pool.py", line 342, in handletasks
SystemError: NULL result without error in PyObject_Call

After throwing a exception , the random forest's all process are all blocked

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What is the shape and dtype of your data? –  ogrisel Oct 11 '13 at 13:39
Actually the input data is the same format as the post,stackoverflow.com/questions/19265097/…. dtype is float. –  mike Oct 12 '13 at 3:02
But as load_data is not described in that post either there is no way to know the resulting shape. Please just call print(train.shape) and include the result in your description. –  ogrisel Oct 13 '13 at 14:23
after call print(train.shape), the output is (500000, 2073) –  mike Oct 14 '13 at 11:13

1 Answer 1

up vote 2 down vote accepted

Based on the shape info, the dataset should be ~4GB (for single precision floats). This exception might be caused by a memory exhaustion while multiprocessing is serializing the data to pass it to the worker processes.

To limit the number of memory copies, you can try to replace the sklearn/externals/joblib folder by a symlink or a copy of the joblib subfolder of the master branch of the joblib repo: https://github.com/joblib/joblib

The development version of joblib has been improved to use memory mapping for large input arrays. This might fix your problem.

Edit the memory mapping support has landed in joblib 0.8+ and is included by default in scikit-learn 0.15+

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Thanks. I'll try the new joblib version. Is there a way to split the data and run scikit-learn's random forest in multi-machines? Any library supported? –  mike Oct 15 '13 at 2:38
It's possible (for instance with IPython.parallel) but there is no ready made library and combining sub-models is model class-specific too. I talk about about that in: github.com/ogrisel/parallel_ml_tutorial and vimeo.com/63269736 –  ogrisel Oct 15 '13 at 8:29

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