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I've been playing around with some sklearn tutorials using anaconda, but have run into a strange issue when working in Spyder.

import numpy as np
from sklearn.ensemble import RandomForestRegressor

x = np.random.uniform(1,100,1000)
y = np.log(x) + np.random.normal(0,0.3,1000)

# If running in Spyder IPython Console, it will freeze if n_jobs != 1
# Runs fine in all other situations, including a Spyder Python console.
clf = RandomForestRegressor(n_estimators=100, n_jobs=2, verbose=3)
clf.fit(x.reshape((1000,1)), y)

In particular, any attempt to fit a model with more than one thread will hang (no output produced) if run in the IPython console.

Everything works as expected in a regular Python console.

Pretty annoying, and fairly confusing at first.

share|improve this question
There have been other people who have reported this - it is likely an issue between IPython's backend and joblib. Thanks for the report. Is there any console output that seems useful? A backtrace might help us track this down – Kyle Kastner Jul 22 '14 at 7:36
I updated to sklearn 0.15.0 (from 0.14.1) which resolved this issue. No interesting output was created, but from what I remember the default message in the IP kernel would get repeated as soon as I tried to run the fit. – user65 Jul 22 '14 at 13:32
This was answered by Olivier Grisel in reddit. The problem lies in the use of the multiprocessing module by RandomForestRegressor and a faulty os.fork build of Anaconda. – Carlos Cordoba Jul 22 '14 at 13:42

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