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Paddle/python/paddle/v2/tests/test_data_feeder.py

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9.3 KiB

# Copyright (c) 2016 PaddlePaddle Authors. All Rights Reserved
#
# Licensed under the Apache License, Version 2.0 (the "License");
# you may not use this file except in compliance with the License.
# You may obtain a copy of the License at
#
# http://www.apache.org/licenses/LICENSE-2.0
#
# Unless required by applicable law or agreed to in writing, software
# distributed under the License is distributed on an "AS IS" BASIS,
# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
# See the License for the specific language governing permissions and
# limitations under the License.
import unittest
import py_paddle.swig_paddle as api
import numpy as np
from paddle.v2 import data_type
from paddle.v2.data_feeder import DataFeeder
class DataFeederTest(unittest.TestCase):
def dense_reader(self, size):
data = np.random.random(size)
return data
def sparse_binary_reader(self, high, size_limit, non_empty=False):
num = np.random.randint(size_limit) # num could be 0
while non_empty and num == 0:
num = np.random.randint(size_limit)
return np.random.randint(high, size=num).tolist()
def test_dense(self):
def compare(input):
feeder = DataFeeder([('image', data_type.dense_vector(784))],
{'image': 0})
arg = feeder(input)
output = arg.getSlotValue(0).copyToNumpyMat()
input = np.array(input, dtype='float32')
self.assertAlmostEqual(input.all(), output.all())
# test numpy array
batch_size = 32
dim = 784
data = []
for i in xrange(batch_size):
each_sample = []
each_sample.append(self.dense_reader(dim))
data.append(each_sample)
compare(data)
# each feature is a list
data = []
for i in xrange(batch_size):
each_sample = []
each_sample.append(self.dense_reader(dim).tolist())
data.append(each_sample)
compare(data)
# test tuple
data = []
for i in xrange(batch_size):
each_sample = (self.dense_reader(dim).tolist(), )
data.append(each_sample)
compare(data)
def test_sparse_binary(self):
dim = 10000
batch_size = 32
data = []
for i in xrange(batch_size):
each_sample = []
each_sample.append(self.sparse_binary_reader(dim, 50))
data.append(each_sample)
feeder = DataFeeder([('input', data_type.sparse_binary_vector(dim))],
{'input': 0})
arg = feeder(data)
output = arg.getSlotValue(0)
assert isinstance(output, api.Matrix)
for i in xrange(batch_size):
self.assertEqual(output.getSparseRowCols(i), data[i][0])
def test_sparse(self):
dim = 10000
batch_size = 32
v = []
w = []
data = []
for dat in xrange(batch_size):
each_sample = []
a = self.sparse_binary_reader(dim, 40, non_empty=True)
b = self.dense_reader(len(a)).tolist()
v.append(a)
w.append(np.array(b, dtype="float32"))
each_sample.append(zip(a, b))
data.append(each_sample)
feeder = DataFeeder([('input', data_type.sparse_vector(dim))],
{'input': 0})
arg = feeder(data)
output = arg.getSlotValue(0)
assert isinstance(output, api.Matrix)
for i in xrange(batch_size):
self.assertEqual(output.getSparseRowCols(i), v[i])
cols_value = output.getSparseRowColsVal(i)
value = [val[1] for val in cols_value]
value = np.array(value, dtype="float32")
self.assertAlmostEqual(value.all(), w[i].all())
def test_integer(self):
value_range = 100
batch_size = 32
index = []
for i in xrange(batch_size):
each_sample = []
each_sample.append(np.random.randint(value_range))
index.append(each_sample)
feeder = DataFeeder([('input', data_type.integer_value(value_range))],
{'input': 0})
arg = feeder(index)
output = arg.getSlotIds(0).copyToNumpyArray()
index = np.array(index, dtype='int')
self.assertEqual(output.all(), index.flatten().all())
def test_integer_sequence(self):
value_range = 10000
batch_size = 32
start = [0]
data = []
for i in xrange(batch_size):
each_sample = []
each_sample.append(
self.sparse_binary_reader(
value_range, 30, non_empty=True))
data.append(each_sample)
start.append(len(each_sample[0]) + start[-1])
feeder = DataFeeder(
[('input', data_type.integer_value_sequence(value_range))],
{'input': 0})
arg = feeder(data)
output_data = arg.getSlotIds(0).copyToNumpyArray()
output_start = arg.getSlotSequenceStartPositions(0).copyToNumpyArray()
index = []
for dat in data:
index.extend(x for x in dat[0]) # only one feature, so dat[0]
index = np.array(index, dtype='int')
start = np.array(start, dtype='int')
self.assertEqual(output_data.all(), index.all())
self.assertEqual(output_start.all(), start.all())
def test_multiple_features(self):
batch_size = 2
data = []
for i in xrange(batch_size):
each_sample = []
each_sample.append(np.random.randint(10))
each_sample.append(
self.sparse_binary_reader(
20000, 40, non_empty=True))
each_sample.append(self.dense_reader(100))
data.append(each_sample)
# test multiple features
data_types = [('fea0', data_type.dense_vector(100)),
('fea1', data_type.sparse_binary_vector(20000)),
('fea2', data_type.integer_value(10))]
feeder = DataFeeder(data_types, {'fea0': 2, 'fea1': 1, 'fea2': 0})
arg = feeder(data)
output_dense = arg.getSlotValue(0).copyToNumpyMat()
output_sparse = arg.getSlotValue(1)
output_index = arg.getSlotIds(2).copyToNumpyArray()
for i in xrange(batch_size):
self.assertEqual(output_dense[i].all(), data[i][2].all())
self.assertEqual(output_sparse.getSparseRowCols(i), data[i][1])
self.assertEqual(output_index[i], data[i][0])
# reader returns 3 features, but only use 2 features
data_types = [('fea0', data_type.dense_vector(100)),
('fea2', data_type.integer_value(10))]
feeder = DataFeeder(data_types, {'fea0': 2, 'fea2': 0})
arg = feeder(data)
output_dense = arg.getSlotValue(0).copyToNumpyMat()
output_index = arg.getSlotIds(1).copyToNumpyArray()
for i in xrange(batch_size):
self.assertEqual(output_dense[i].all(), data[i][2].all())
self.assertEqual(output_index[i], data[i][0])
# reader returns 3 featreus, one is duplicate data
data_types = [('fea0', data_type.dense_vector(100)),
('fea1', data_type.sparse_binary_vector(20000)),
('fea2', data_type.integer_value(10)),
('fea3', data_type.dense_vector(100))]
feeder = DataFeeder(data_types,
{'fea0': 2,
'fea1': 1,
'fea2': 0,
'fea3': 2})
arg = feeder(data)
fea0 = arg.getSlotValue(0).copyToNumpyMat()
fea1 = arg.getSlotValue(1)
fea2 = arg.getSlotIds(2).copyToNumpyArray()
fea3 = arg.getSlotValue(3).copyToNumpyMat()
for i in xrange(batch_size):
self.assertEqual(fea0[i].all(), data[i][2].all())
self.assertEqual(fea1.getSparseRowCols(i), data[i][1])
self.assertEqual(fea2[i], data[i][0])
self.assertEqual(fea3[i].all(), data[i][2].all())
def test_multiple_features_tuple(self):
batch_size = 2
data = []
for i in xrange(batch_size):
a = np.random.randint(10)
b = self.sparse_binary_reader(20000, 40, non_empty=True)
c = self.dense_reader(100)
each_sample = (a, b, c)
data.append(each_sample)
# test multiple features
data_types = [('fea0', data_type.dense_vector(100)),
('fea1', data_type.sparse_binary_vector(20000)),
('fea2', data_type.integer_value(10))]
feeder = DataFeeder(data_types, {'fea0': 2, 'fea1': 1, 'fea2': 0})
arg = feeder(data)
out_dense = arg.getSlotValue(0).copyToNumpyMat()
out_sparse = arg.getSlotValue(1)
out_index = arg.getSlotIds(2).copyToNumpyArray()
for i in xrange(batch_size):
self.assertEqual(out_dense[i].all(), data[i][2].all())
self.assertEqual(out_sparse.getSparseRowCols(i), data[i][1])
self.assertEqual(out_index[i], data[i][0])
if __name__ == '__main__':
api.initPaddle("--use_gpu=0")
suite = unittest.TestLoader().loadTestsFromTestCase(DataFeederTest)
unittest.TextTestRunner().run(suite)
if api.isGpuVersion():
api.setUseGpu(True)
unittest.main()