I'm trying to fit a (223129, 108) dataset with scikit's linear models (Ridge(), Lasso(), LinearRegression()) and get the following error. Not sure what to do, the data doesn't seem large enough to run out of memory (I have 16GB). Any ideas?

MemoryError                               Traceback (most recent call last)
<ipython-input-34-8ea705d45c5d> in <module>()
----> 1 cv_loop(T,yn, model=reg, per_test=0.2,cv_random=False,tresh=450)

<ipython-input-1-ea163943e461> in cv_loop(X, y, model, per_test, cv_random, tresh)
     48     preds_all=np.zeros((y_cv.shape))
     49     for i in range(y_n):
---> 50         model.fit(X_train, y_train[:,i])
     52         preds = model.predict(X_cv)

C:\Users\m&g\AppData\Local\Enthought\Canopy32\User\lib\site-packages\scikit_learn-0.14.1-py2.7-win32.egg\sklearn\linear_model\coordinate_descent.pyc in fit(self, X, y, Xy, coef_init)
    608                           "estimator", stacklevel=2)
    609         X = atleast2d_or_csc(X, dtype=np.float64, order='F',
--> 610                              copy=self.copy_X and self.fit_intercept)
    611         # From now on X can be touched inplace
    612         y = np.asarray(y, dtype=np.float64)

C:\Users\m&g\AppData\Local\Enthought\Canopy32\User\lib\site-packages\scikit_learn-0.14.1-py2.7-win32.egg\sklearn\utils\validation.pyc in atleast2d_or_csc(X, dtype, order, copy, force_all_finite)
    122     """
    123     return _atleast2d_or_sparse(X, dtype, order, copy, sparse.csc_matrix,
--> 124                                 "tocsc", force_all_finite)

C:\Users\m&g\AppData\Local\Enthought\Canopy32\User\lib\site-packages\scikit_learn-0.14.1-py2.7-win32.egg\sklearn\utils\validation.pyc in _atleast2d_or_sparse(X, dtype, order, copy, sparse_class, convmethod, force_all_finite)
    109     else:
    110         X = array2d(X, dtype=dtype, order=order, copy=copy,
--> 111                     force_all_finite=force_all_finite)
    112         if force_all_finite:
    113             _assert_all_finite(X)

C:\Users\m&g\AppData\Local\Enthought\Canopy32\User\lib\site-packages\scikit_learn-0.14.1-py2.7-win32.egg\sklearn\utils\validation.pyc in array2d(X, dtype, order, copy, force_all_finite)
     89         raise TypeError('A sparse matrix was passed, but dense data '
     90                         'is required. Use X.toarray() to convert to dense.')
---> 91     X_2d = np.asarray(np.atleast_2d(X), dtype=dtype, order=order)
     92     if force_all_finite:
     93         _assert_all_finite(X_2d)

C:\Users\m&g\AppData\Local\Enthought\Canopy32\App\appdata\canopy-\lib\site-packages\numpy\core\numeric.pyc in asarray(a, dtype, order)
    319     """
--> 320     return array(a, dtype, copy=False, order=order)
    322 def asanyarray(a, dtype=None, order=None):

  • Do you have anything else loaded in the Python session? What if you close Python and restart it and try with the same data? – BrenBarn Nov 17 '13 at 21:33
  • Done it. Multiple times. Same error every time. – ADJ Nov 17 '13 at 21:35
  • Are you using 64-bit python? – Matt Nov 18 '13 at 15:01
  • That's very strange: np.ones((223129, 108)).astype(np.float64) gives me an array with about 183 megabytes. – Matt Nov 18 '13 at 15:13
  • I'm using 32-bit Python – ADJ Nov 18 '13 at 17:06

Try SGDRegressor instead of the estimators that you tried. It fits a linear regression model too, but is designed to work with large datasets and uses much less memory.


Your 16Gb RAM effectively reduces down to 4Gb due to 32bit process (because 32bit mean that you can distinguish only 2^32 memory addresses, which is 4Gb). I'd suggest you to switch to 64bit version if you want to work with large datasets.

If you can't resort to change bitness then you should be ready to be dodgy with you code. You should carefully look at your code seeking for possible memory allocations (feels like C, doesn't it?) and maybe sometimes even do some dels (in case when you don't need a variable anymore but interpreter doesn't know it).

Or, since all of your data is just a 100-dimensional vector and you have a lot of data (200K), probably, you can take only, say, 10% of it and still have it representative. But it depends on nature of your data and further research is needed.

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.