scikit-learn使用joblib持久化模型过程中的问题详解

在机器学习过程中,一般用来训练模型的过程比较长,所以我们一般会将训练的模型进行保存(持久化),然后进行评估,预测等等,这样便可以节省大量的时间。


在模型持久化过程中,我们使用scikit-learn提供的joblib.dump()方法,但是在使用过程中会出现很多问题。如我们使用如下语句:

joblib.dump(clf,'../../data/model/randomforest.pkl')
此语句将产生大量的模型文件,如下图所示


然后,我们再使用joblib.load(‘../../data/model/randomforest.pkl’)进行加载,会出现如下错误

Traceback (most recent call last):
  File "E:\workspace\forest\com\baihe\RandomForest_losing.py", line 65, in 
    clf = joblib.load('../../data/model/randomforest.pkl')
  File "D:\Program Files\python27\lib\site-packages\sklearn\externals\joblib\numpy_pickle.py", line 425, in load
    obj = unpickler.load()
  File "D:\Program Files\python27\lib\pickle.py", line 858, in load
    dispatch[key](self)
  File "D:\Program Files\python27\lib\site-packages\sklearn\externals\joblib\numpy_pickle.py", line 285, in load_build
    Unpickler.load_build(self)
  File "D:\Program Files\python27\lib\pickle.py", line 1217, in load_build
    setstate(state)
  File "_tree.pyx", line 2280, in sklearn.tree._tree.Tree.__setstate__ (sklearn\tree\_tree.c:18350)
ValueError: Did not recognise loaded array layout

正确使用joblib的方法是:设置dump中的compress参数,当设置参数时,模型持久化便会压缩成一个文件。源码中对compress参数的描述如下:

compress: integer for 0 to 9, optional
        Optional compression level for the data. 0 is no compression.
        Higher means more compression, but also slower read and
        write times. Using a value of 3 is often a good compromise.
        See the notes for more details.

以下是我们进行模型持久化的正确操作语句:
#save model
joblib.dump(clf,'../../data/model/randomforest.pkl',compress=3)
#load model to clf
clf = joblib.load('../../data/model/randomforest.pkl')







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