Blame view

test/test_model.py 5.14 KB
be12257b   Chunk   data-feat-model f...
1
2
__author__ = 'chunk'

9371f8fa   Chunk   SVM param engenee...
3
from sklearn import cross_validation
f4fb4381   Chunk   staged.
4

2bf33465   Chunk   staged.
5
from ..common import *
84648488   Chunk   reverted.
6
from ..mdata import CV, ILSVRC, ILSVRC_S
61e78eb3   Chunk   staged.
7
from ..mmodel.svm import SVM
84648488   Chunk   reverted.
8
from ..mmodel.theano import  THEANO
2bf33465   Chunk   staged.
9

5a469df5   Chunk   staged.
10
11
12
import gzip
import cPickle

84648488   Chunk   reverted.
13

5a469df5   Chunk   staged.
14
15
timer = Timer()
package_dir = os.path.dirname(os.path.abspath(__file__))
be12257b   Chunk   data-feat-model f...
16

d2603183   Chunk   staged.
17
def test_SVM_CV():
84648488   Chunk   reverted.
18
19
20
21
22
23
24
25
26
27
28
29
30
31
32
33
34
35
36
37
38
39
40
41
42
43
44
45
46
47
    timer.mark()
    dcv = CV.DataCV()
    X, Y = dcv.load_data(mode='local')  # 90.468586s ->  5.392520s
    # X, Y = dcv.load_data(mode='hbase') # 21.682754s
    # X, Y = dcv.load_data(mode='spark') # 29.549597s
    timer.report()

    timer.mark()
    # msvm = SVM.ModelSVM(toolset='sklearn') # 3.030380s
    # msvm = SVM.ModelSVM(toolset='opencv') # 8.939880s
    # msvm = SVM.ModelSVM(toolset='libsvm') # 185.524023s
    msvm = SVM.ModelSVM(toolset='spark')

    msvm.train(X, Y)
    timer.report()

    timer.mark()
    for path, subdirs, files in os.walk('data/467/'):
        for name in files:
            imgpath = os.path.join(path, name)
            feat = dcv.get_feat(imgpath, 'hog')
            print name, msvm.predict(feat)
    timer.report()

    timer.mark()
    print msvm.test(X, Y)  # 0.948892561983 for svm_cv, 0.989024793388 for svm_sk, 0.9900826446280992 for svm_lib
    timer.report()  # 27.421949s for svm_lib


def test_SVM_ILSVRC():
d0be60e7   Chunk   jpeg update.
48
49
    timer.mark()
    dil = ILSVRC.DataILSVRC(base_dir='/data/hadoop/ImageNet/ILSVRC/ILSVRC2013_DET_val', category='Test.0.2')
84648488   Chunk   reverted.
50
    X, Y = dil.load_data(mode='local')  #
d0be60e7   Chunk   jpeg update.
51
    # X, Y = dil.load_data(mode='hbase') #
02528074   Chunk   staged.
52
53
    # X, Y = dil.load_data(mode='spark') #
    X_train, X_test, Y_train, Y_test = cross_validation.train_test_split(X, Y, test_size=0.4, random_state=0)
84648488   Chunk   reverted.
54
    print np.array(Y).shape, np.array(X).shape
6d6d75b8   Chunk   spider LOG system.
55
    print np.array(X_train).shape, np.array(Y_train).shape
02528074   Chunk   staged.
56
57
58
59
60
61
62
63
64
65
66
67
68
69
70
71
72
73
74
75
76
77
78
79
80
81
82
83
84
85
    print np.array(X_test).shape, np.array(Y_test).shape

    timer.report()

    timer.mark()
    msvm = SVM.ModelSVM(toolset='sklearn')  # 4.884247s 0.777853030816
    # msvm = SVM.ModelSVM(toolset='opencv') #
    # msvm = SVM.ModelSVM(toolset='libsvm') #
    # msvm = SVM.ModelSVM(toolset='spark')
    msvm.train(X_train, Y_train)
    timer.report()

    timer.mark()
    print msvm.test(X_test, Y_test)  #
    timer.report()  #

    # timer.mark()
    # print 'or like this:'
    # scores = cross_validation.cross_val_score(msvm.model, X, Y)
    # print scores
    # timer.report()


def test_SVM_ILSVRC_HBASE():
    timer.mark()

    # dil = ILSVRC.DataILSVRC(base_dir='ILSVRC2013_DET_val', category='Train_3')
    # X, Y = dil.load_data(mode='hbase') # pass

    dils = ILSVRC_S.DataILSVRC_S(base='ILSVRC2013_DET_val', category='Test_1')
4f36b116   Chunk   staged.
86
    X, Y = dils.load_data(mode='hbase')  # pass
02528074   Chunk   staged.
87

9371f8fa   Chunk   SVM param engenee...
88
    dil = ILSVRC.DataILSVRC(base_dir='/data/hadoop/ImageNet/ILSVRC/ILSVRC2013_DET_val', category='Test_1')
51708346   Chunk   final experiments...
89
90
    X1, Y1 = dil.load_data(mode='local')

2bd3da3e   Chunk   staged.
91
    X_train, X_test, Y_train, Y_test = cross_validation.train_test_split(X, Y, test_size=0.4, random_state=0)
84648488   Chunk   reverted.
92
    print Y,np.sum(np.array(Y)==0),np.sum(np.array(Y)==1)
d2603183   Chunk   staged.
93
    print np.array(Y).shape, np.array(X).shape
02528074   Chunk   staged.
94
    print np.array(X_train).shape, np.array(Y_train).shape
9371f8fa   Chunk   SVM param engenee...
95
96
97
    print np.array(X_test).shape, np.array(Y_test).shape

    timer.report()
d0be60e7   Chunk   jpeg update.
98
99
100

    timer.mark()
    msvm = SVM.ModelSVM(toolset='sklearn')  # 4.884247s 0.777853030816
4f36b116   Chunk   staged.
101
    # msvm = SVM.ModelSVM(toolset='opencv') #
51708346   Chunk   final experiments...
102
    # msvm = SVM.ModelSVM(toolset='libsvm') #
9371f8fa   Chunk   SVM param engenee...
103
    # msvm = SVM.ModelSVM(toolset='spark')
4f36b116   Chunk   staged.
104
    msvm.train(X_train, Y_train)
9371f8fa   Chunk   SVM param engenee...
105
    timer.report()
d0be60e7   Chunk   jpeg update.
106
107
108

    timer.mark()
    print msvm.test(X_test, Y_test)  #
9371f8fa   Chunk   SVM param engenee...
109
    timer.report()  #
d0be60e7   Chunk   jpeg update.
110

6d6d75b8   Chunk   spider LOG system.
111
    timer.mark()
51708346   Chunk   final experiments...
112
113
114
115
    print msvm.test(X1, Y1)  #
    timer.report()  #
    # timer.mark()
    # print 'or like this:'
e3e7e73a   Chunk   spider standalone...
116
117
118
119
120
121
122
123
124
125
126
127
128
129
130
131
132
133
134
    # scores = cross_validation.cross_val_score(msvm.model, X, Y)
    # print scores
    # timer.report()


def test_SVM_ILSVRC_SPARK():
    timer.mark()
    dils = ILSVRC_S.DataILSVRC_S(base='ILSVRC2013_DET_val', category='Test_1')
    rdd_dataset = dils.load_data(mode='spark')  # pass

    timer.report()

    timer.mark()
    # msvm = SVM.ModelSVM(toolset='sklearn')  #
    # msvm = SVM.ModelSVM(toolset='opencv') #
    # msvm = SVM.ModelSVM(toolset='libsvm') #
    msvm = SVM.ModelSVM(toolset='spark', sc=dils.sparker)
    msvm.train(rdd_dataset)
    timer.report()
2bd3da3e   Chunk   staged.
135

02528074   Chunk   staged.
136
137
138
139
140
141
142
143
144
    dataset = rdd_dataset.collect()
    length = len(dataset)

    X_test, Y_test = [dataset[i].features for i in range(length)], [dataset[i].label for i in range(length)]

    timer.mark()
    print msvm.test(dils.sparker.sc.parallelize(X_test), Y_test)  #
    timer.report()  #

f4fb4381   Chunk   staged.
145
146
147
148

def test_SVM_ILSVRC_S():
    test_SVM_ILSVRC_HBASE()
    # test_SVM_ILSVRC_SPARK()
02528074   Chunk   staged.
149
150


9371f8fa   Chunk   SVM param engenee...
151

02528074   Chunk   staged.
152
153
154
155
156
def test_THEANO_crop():

    timer.mark()
    dilc = ILSVRC.DataILSVRC(base_dir='/data/hadoop/ImageNet/ILSVRC/ILSVRC2013_DET_val', category='Test_crop_pil')
    X, Y = dilc.load_data(mode='local', feattype='coef')
9371f8fa   Chunk   SVM param engenee...
157
158
    timer.report()
    X_train, X_test, Y_train, Y_test = cross_validation.train_test_split(X, Y, test_size=0.2, random_state=0)
02528074   Chunk   staged.
159
160
161
    with open(os.path.join(package_dir,'../res/','ils_crop.pkl'),'wb') as f:
        cPickle.dump([(X_train,Y_train),(X_test,Y_test)], f)

84648488   Chunk   reverted.
162
    timer.mark()
02528074   Chunk   staged.
163
164
165
166
167
168
169
    mtheano = THEANO.ModelTHEANO(toolset='cnn')
    mtheano._train_cnn(dataset='../../res/ils_crop.pkl')
    timer.report()


if __name__ == '__main__':
    # test_SVM_CV()
51708346   Chunk   final experiments...
170
171
    test_SVM_ILSVRC()
    print 'helllo'
02528074   Chunk   staged.

9371f8fa   Chunk   SVM param engenee...

84648488   Chunk   reverted.

be12257b   Chunk   data-feat-model f...

d0be60e7   Chunk   jpeg update.

be12257b   Chunk   data-feat-model f...

84648488   Chunk   reverted.