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I get the following when I try to run multiple engines in a for loop but sometimes get the following for some reason.

sghose@adapt-ghose:~$ python -m ADAPT.engine.engine num samples: 417

[Parallel] Pool seems closed
[Parallel] Pool seems closed
[Parallel] Pool seems closed
[Parallel] Pool seems closed
[Parallel] Pool seems closed
[Parallel] Pool seems closed
[Parallel] Pool seems closed
[Parallel] Pool seems closed
[Parallel] Pool seems closed
 [Parallel] Pool seems closed
[Parallel] Pool seems closed
[Parallel] Pool seems closed
[Parallel] Pool seems closed
[Parallel] Pool seems closed
[Parallel] Pool seems closed
[Parallel] Pool seems closed
 [Parallel] Pool seems closed
[Parallel] Pool seems closed
[Parallel] Pool seems closed
[Parallel] Pool seems closed
[Parallel] Pool seems closed
[Parallel] Pool seems closed
[Parallel] Pool seems closed
 [Parallel] Pool seems closed
[Parallel] Pool seems closed
[Parallel] Pool seems closed
[Parallel] Pool seems closed
[Parallel] Pool seems closed
[Parallel] Pool seems closed
[Parallel] Pool seems closed
 [Parallel] Pool seems closed
[Parallel] Pool seems closed
[Parallel] Pool seems closed
[Parallel] Pool seems closed
[Parallel] Pool seems closed
[Parallel] Pool seems closed
[Parallel] Pool seems closed
 [Parallel] Pool seems closed
[Parallel] Pool seems closed
[Parallel] Pool seems closed
[Parallel] Pool seems closed
[Parallel] Pool seems closed
[Parallel] Pool seems closed
[Parallel] Pool seems closed
 [Parallel] Pool seems closed
[Parallel] Pool seems closed
[Parallel] Pool seems closed
[Parallel] Pool seems closed
[Parallel] Pool seems closed
[Parallel] Pool seems closed
[Parallel] Pool seems closed
 [Parallel] Pool seems closed
[Parallel] Pool seems closed
Traceback (most recent call last):
  File "/usr/lib/python2.7/runpy.py", line 162, in _run_module_as_main
    "__main__", fname, loader, pkg_name)
   File "/usr/lib/python2.7/runpy.py", line 72, in _run_code
    exec code in run_globals
  File "/home/sghose/ADAPT/engine/engine.py", line 86, in <module>
    main()
  File "/home/sghose/ADAPT/engine/engine.py", line 81, in main
     dns()
  File "/home/sghose/ADAPT/engine/engine.py", line 78, in dns
    print m.average_score(10)
  File "ADAPT/genclf/model.py", line 275, in average_score
    _ = self.asynch_cv(gridsearch=True)
   File "ADAPT/genclf/model.py", line 246, in asynch_cv
    _ = mapfunc(items)
  File "ADAPT/genclf/model.py", line 228, in mapfunc
    self._gridENGINES[k]=eng.fit(X_train,Y_train)
  File "/usr/local/lib/python2.7/dist-packages/sklearn/grid_search.py", line 372, in fit
     for clf_params in grid for train, test in cv)
  File "/usr/local/lib/python2.7/dist-packages/sklearn/externals/joblib/parallel.py", line 513, in __call__
    for function, args, kwargs in iterable:
 ValueError: generator already executing

that line is

   try:
        svm_maxiter
    except NameError:
        _defined_svm_maxiter=False
     #ks - keys
    @catchwarnings(_defined_svm_maxiter)
    def mapfunc(items):
        if not gridsearch:
            a = parmap(fit_and_score,items)
            sleep(1)
        elif gridsearch:
             # gridsearch parallelizes itself ~ as in the
            # library already does that
            for k,eng in self._gridENGINES.items():
                vprint('Currently CVing' + " "+ str(k))
                 self._gridENGINES[k]=eng.fit(X_train,Y_train)
        else:
            raise RuntimeError,"I have no clue how you are here. It's a\
                                binary comparison"

self._gridENGINES is as expected a dictionary of names and classifiers. I'm running this in serial (gridsearch == 1), so why is joblib having this issue?

Thanks

Edit:

=================================================

The main problem is that this causes the gridsearchcv to not have the best* attributes generated by the fit method.

The following code does not give the Pool Closed error, but it does cause the resultant error which is the real problem - I can just suppress the Pool Closed Errors

Ex:

The following code is takes 24 cpu min. and 6.4 gb ram.

Running:

from sklearn import svm
from sklearn import ensemble as ens
from sklearn import linear_model as lm
from sklearn import tree as tr
from sklearn import datasets
from random import sample
from sklearn import grid_search
import numpy as np
n_samp = 1000
svm_cs = 100000
svm_maxiter=100000
d,t = datasets.make_classification(n_samples=n_samp,n_features=1,n_clusters_per_class=1,n_informative=1,n_redundant=0,n_repeated=0)

en = {
'Poly SVM':{'eng':svm.SVR(cache_size=svm_cs,max_iter=svm_maxiter),
            'params':{'kernel':('poly','rbf'),'degree':[2,5,8,10,15,20,30,40],
                      'C':[.1,1,5,10,20,40,80,160,320]}},
'RandomForestRegressor':{'eng':ens.RandomForestRegressor(),
                         'params':{'n_estimators':[100,500,1000,2000,3000],
                                    'min_samples_split':[2,4,6,8,10]}},
'ExtraForestRegressor':{'eng':ens.ExtraTreesRegressor(),
                        'params':{'n_estimators':[100,500,1000,2000,3000],
                                    'min_samples_split':[2,4,6,8,10],
                                    'min_samples_leaf':[2,4,6,8,10]}},
'LogisticRegression':{'eng':lm.LogisticRegression(),
                    'params':{
                              'C':[.01,.1,10,20,30,40,50,100,200],
                             }},


'DecisionTrees':{'eng':tr.DecisionTreeRegressor(),
                'params':{
                'min_samples_split':[2,4,6,8,10],
                'min_samples_leaf':[2,4,6,8,10],
                'min_density':[.05,.1,.2,.4,.6],
                }
                },
}
gs = []
for k,v in en.items():
    gs.append(grid_search.GridSearchCV(v['eng'],v['params'],n_jobs=-1))

for g in gs:
    g.fit(d,t)

for g in gs:
    print g.best_estimator_,g.best_score_

gives:

**some 20+ convergence warnings, but that's not the problem**
sghose@adapt-ghose:/tmp$ python poolclosed.py
/usr/local/lib/python2.7/dist-packages/sklearn/svm/base.py:208: ConvergenceWarning: Solver terminated early (max_iter=100000).  Consider pre-processing your data with StandardScalar or MinMaxScalar.
  % self.max_iter, ConvergenceWarning)
/usr/local/lib/python2.7/dist-packages/sklearn/svm/base.py:208: ConvergenceWarning: Solver terminated early (max_iter=100000).  Consider pre-processing your data with StandardScalar or MinMaxScalar.
  % self.max_iter, ConvergenceWarning)


**The below is the problem.**

DecisionTreeRegressor(compute_importances=False, criterion=mse,
           max_depth=None, max_features=None, min_density=0.05,
           min_samples_leaf=10, min_samples_split=20,
           random_state=<mtrand.RandomState object at 0x7f38feec5168>)
Traceback (most recent call last):
  File "poolclosed.py", line 47, in <module>
    print g.best_estimator_,g.best_score
AttributeError: 'GridSearchCV' object has no attribute 'best_score_'
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Could you try to reproduce the issue in a minimalistic self-hosting code snippet (something short that does not require the rest of your code and data to run)? –  ogrisel Jan 16 '13 at 20:07
    
@ogrisel... weird. putting njobs = -1, and predispatch = 'n_jobs-1' seems to make everything work ... or at least break less often? *and as soon as I said that it broke :(. What is the point of that assert anyway? –  Eiyrioü von Kauyf Jan 18 '13 at 19:10
    
It seems to be the generator is breaking as well. Does it support concurrency? –  Eiyrioü von Kauyf Jan 18 '13 at 20:47
    
Yup this isn't thread safe ... that's why the ValueError happens with the generator –  Eiyrioü von Kauyf Jan 18 '13 at 21:07
    
The best_score_ issue might have been fixed recently in the master branch of scikit-learn I think. –  ogrisel Jan 19 '13 at 6:38
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1 Answer 1

The bug causing this crash is now fixed in joblib 0.8.0a3 and in sklearn master:

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