提交 a3fa64e4 编写于 作者: T tensor-tang

Merge remote-tracking branch 'upstream/develop' into mkldnn_addto

......@@ -30,6 +30,7 @@ addons:
- automake
- libtool
- ccache
ssh_known_hosts: 52.76.173.135
before_install:
- if [[ "$JOB" == "check_style" ]]; then sudo ln -s /usr/bin/clang-format-3.8 /usr/bin/clang-format; fi
# Paddle is using protobuf 3.1 currently. Protobuf 3.2 breaks the compatibility. So we specify the python
......@@ -42,6 +43,14 @@ script:
- |
timeout 2580 paddle/scripts/travis/${JOB}.sh # 43min timeout
RESULT=$?; if [ $RESULT -eq 0 ] || [ $RESULT -eq 142 ]; then true; else false; fi;
- |
if [[ "$JOB" != "build_doc" ]]; then exit 0; fi;
if [[ "$TRAVIS_PULL_REQUEST" != "false" ]]; then exit 0; fi;
if [[ "$TRAVIS_BRANCH" != "develop" && ! "$TRAVIS_BRANCH" =~ ^v[[:digit:]]+\.[[:digit:]]+(\.[[:digit:]]+)?(-\S*)?$ ]]; then exit 0; fi;
export DEPLOY_DOCS_SH=https://raw.githubusercontent.com/PaddlePaddle/PaddlePaddle.org/master/scripts/deploy/deploy_docs.sh
export DOCS_DIR=`pwd`
cd ..
curl $DEPLOY_DOCS_SH | bash -s $CONTENT_DEC_PASSWD $TRAVIS_BRANCH $DOCS_DIR $DOCS_DIR/build/doc
notifications:
email:
on_success: change
......
......@@ -23,7 +23,7 @@ On each machine, we will test and compare the performance of training on single
## Benchmark Model
### Server
Test on batch size 64, 128, 256 on Intel(R) Xeon(R) Gold 6148M CPU @ 2.40GHz
Test on batch size 64, 128, 256 on Intel(R) Xeon(R) Gold 6148 CPU @ 2.40GHz
Input image size - 3 * 224 * 224, Time: images/second
......
......@@ -90,11 +90,13 @@ class LookupTableGradKernel : public framework::OpKernel<T> {
auto* d_output_data = d_output->data<T>();
auto* d_table_data = d_table->mutable_data<T>(context.GetPlace());
memset(d_table_data, 0, d_table->numel() * sizeof(T));
for (int64_t i = 0; i < ids->numel(); ++i) {
PADDLE_ENFORCE_LT(ids_data[i], N);
PADDLE_ENFORCE_GE(ids_data[i], 0);
for (int j = 0; j < D; ++j) {
d_table_data[ids_data[i] * D + j] = d_output_data[i * D + j];
d_table_data[ids_data[i] * D + j] += d_output_data[i * D + j];
}
}
}
......
......@@ -42,7 +42,8 @@ class SequencePoolOpMaker : public framework::OpProtoAndCheckerMaker {
AddAttr<std::string>(
"pooltype",
"(int, default AVERAGE) the pooling pooltype of SequencePoolOp.")
.SetDefault("AVERAGE");
.SetDefault("AVERAGE")
.InEnum({"AVERAGE", "SUM", "SQRT", "LAST", "FIRST", "MAX"});
AddComment(R"DOC(
SequencePoolOp pools features of all time-steps of each instance.
......
......@@ -53,8 +53,8 @@ function deploy_docs() {
set +e
rm -rf ${DIR}/doc ${DIR}/doc_cn
set -e
mv ../doc/cn/html ${DIR}/doc_cn
mv ../doc/en/html ${DIR}/doc
cp -r ../doc/cn/html ${DIR}/doc_cn
cp -r ../doc/en/html ${DIR}/doc
git add .
}
......
import paddle.v2.framework.framework as framework
import numpy as np
__all__ = ['ConstantInitializer', 'UniformInitializer']
__all__ = [
'ConstantInitializer', 'UniformInitializer', 'NormalInitializer',
'XavierInitializer'
]
class Initializer(object):
......@@ -20,6 +24,41 @@ class Initializer(object):
"""
raise NotImplementedError()
def _compute_fans(self, var):
"""Compute the fan_in and the fan_out for layers
This method computes the fan_in and the fan_out
for neural network layers, if not specified. It is
not possible to perfectly estimate fan_in and fan_out.
This method will estimate it correctly for matrix multiply and
convolutions.
Args:
var: variable for which fan_in and fan_out have to be computed
Returns:
tuple of two integers (fan_in, fan_out)
"""
shape = var.shape
if not shape or len(shape) == 0:
fan_in = fan_out = 1
elif len(shape) == 1:
fan_in = fan_out = shape[0]
elif len(shape) == 2:
# This is the case for simple matrix multiply
fan_in = shape[0]
fan_out = shape[1]
else:
# Assume this to be a convolutional kernel
# In PaddlePaddle, the shape of the kernel is like:
# [num_filters, num_filter_channels, ...] where the remaining
# dimensions are the filter_size
receptive_field_size = np.prod(shape[2:])
fan_in = shape[1] * receptive_field_size
fan_out = shape[0] * receptive_field_size
return (fan_in, fan_out)
class ConstantInitializer(Initializer):
"""Implements the constant initializer
......@@ -156,3 +195,93 @@ class NormalInitializer(Initializer):
})
var.op = op
return op
class XavierInitializer(Initializer):
"""Implements the Xavier initializer
This class implements the Xavier weight initializer from the paper
Understanding the difficulty of training deep feedforward neural
networks[1] by Xavier Glorot and Yoshua Bengio.
This initializer is designed to keep the scale of the gradients
approximately same in all the layers. In case of Uniform distribution,
the range is [-x, x], where x = sqrt(6 / (fan_in + fan_out)).
In case of Normal distribution, the mean is 0 and the standard deviation
is sqrt(2/ (fan_in + fan_out)).
References:
[1] Understanding the difficulty of training deep feedforward neural
networks. International conference on artificial intelligence and
statistics.
(http://proceedings.mlr.press/v9/glorot10a.html)
"""
def __init__(self, uniform=True, fan_in=None, fan_out=None, seed=0):
"""Constructor for XavierInitializer
Args:
uniform: whether to use uniform or normal distribution
fan_in: fan_in for Xavier initialization. If None, it is
inferred from the variable.
fan_out: fan_out for Xavier initialization. If None, it is
inferred from the variable.
seed: random seed
Note: It is recommended to set fan_in and fan_out to None for
most cases.
"""
assert uniform is not None
assert seed is not None
super(XavierInitializer, self).__init__()
self._uniform = uniform
self._fan_in = fan_in
self._fan_out = fan_out
self._seed = seed
def __call__(self, var, block):
"""Add xavier initialization ops for a variable
Args:
var: Variable that needs to be initialized
block: The block in which initialization ops
should be added
Returns:
the initialization op
"""
assert isinstance(var, framework.Variable)
assert isinstance(block, framework.Block)
f_in, f_out = self._compute_fans(var)
# If fan_in and fan_out are passed, use them
fan_in = f_in if self._fan_in is None else self._fan_in
fan_out = f_out if self._fan_out is None else self._fan_out
if self._uniform:
limit = np.sqrt(6.0 / float(fan_in + fan_out))
op = block.prepend_op(
type="uniform_random",
outputs={"Out": var},
attrs={
"shape": var.shape,
"data_type": int(var.data_type),
"min": -limit,
"max": limit,
"seed": self._seed
})
else:
std = np.sqrt(2.0 / float(fan_in + fan_out))
op = block.prepend_op(
type="gaussian_random",
outputs={"Out": var},
attrs={
"shape": var.shape,
"data_type": int(var.data_type),
"mean": 0.0,
"std": std,
"seed": self._seed
})
var.op = op
return op
......@@ -278,6 +278,7 @@ def sequence_conv(input,
num_filters,
filter_size=3,
filter_stride=1,
act=None,
padding=None,
bias_attr=None,
param_attr=None,
......@@ -304,7 +305,7 @@ def sequence_conv(input,
outputs={"Out": pre_bias},
attrs={
'contextStride': filter_stride,
'contextStart': 0,
'contextStart': -int(filter_size / 2),
'contextLength': filter_size
})
pre_act = helper.append_bias_op(pre_bias)
......@@ -364,11 +365,6 @@ def conv2d(input,
def sequence_pool(input, pool_type, **kwargs):
ENUM_POOL_TYPE = set(["MAX", "AVG", "SQRT", "LAST", "FIRST"])
if pool_type.upper() not in ENUM_POOL_TYPE:
raise ValueError("Unknown pool_type: '%s'. It can only be %s.",
str(pool_type), " ".join(ENUM_POOL_TYPE))
helper = LayerHelper('sequence_pool', input=input, **kwargs)
dtype = helper.input_dtype()
pool_out = helper.create_tmp_variable(dtype)
......
......@@ -47,7 +47,7 @@ def img_conv_group(input,
"""
tmp = input
assert isinstance(conv_num_filter, list) or \
isinstance(conv_num_filter, tuple)
isinstance(conv_num_filter, tuple)
def __extend_list__(obj):
if not hasattr(obj, '__len__'):
......@@ -109,6 +109,7 @@ def sequence_conv_pool(input,
input=input,
num_filters=num_filters,
filter_size=filter_size,
act=act,
program=program,
init_program=init_program)
......
......@@ -60,4 +60,5 @@ class TestEvaluator(unittest.TestCase):
if __name__ == '__main__':
exit(0)
unittest.main()
import numpy as np
import unittest
import paddle.v2.framework.framework as framework
......@@ -116,5 +117,111 @@ class TestNormalInitializer(unittest.TestCase):
self.assertEqual(init_op.attr('seed'), 123)
class TestXavierInitializer(unittest.TestCase):
def test_uniform_xavier_initializer(self):
"""Test Xavier initializer with uniform distribution on
for matrix multiply.
"""
program = framework.Program()
block = program.global_block()
param = block.create_parameter(
dtype="float32",
shape=[5, 10],
lod_level=0,
name="param",
initializer=initializer.XavierInitializer())
self.assertEqual(len(block.ops), 1)
init_op = block.ops[0]
self.assertEqual(init_op.type, 'uniform_random')
limit = np.sqrt(6.0 / (param.shape[0] + param.shape[1]))
self.assertAlmostEqual(init_op.attr('min'), -limit, delta=DELTA)
self.assertAlmostEqual(init_op.attr('max'), limit, delta=DELTA)
self.assertEqual(init_op.attr('seed'), 0)
def test_uniform_xavier_initializer_conv(self):
"""Test Xavier initializer with uniform distribution on
for convolutions.
"""
program = framework.Program()
block = program.global_block()
param = block.create_parameter(
dtype="float32",
shape=[5, 10, 15, 20],
lod_level=0,
name="param",
initializer=initializer.XavierInitializer())
self.assertEqual(len(block.ops), 1)
init_op = block.ops[0]
self.assertEqual(init_op.type, 'uniform_random')
receptive_field_size = float(15 * 20)
limit = np.sqrt(6.0 / (
(param.shape[0] + param.shape[1]) * receptive_field_size))
self.assertAlmostEqual(init_op.attr('min'), -limit, delta=DELTA)
self.assertAlmostEqual(init_op.attr('max'), limit, delta=DELTA)
self.assertEqual(init_op.attr('seed'), 0)
def test_normal_xavier_initializer(self):
"""Test Xavier initializer with normal distribution on
for matrix multiply.
"""
program = framework.Program()
block = program.global_block()
param = block.create_parameter(
dtype="float32",
shape=[5, 10],
lod_level=0,
name="param",
initializer=initializer.XavierInitializer(uniform=False))
self.assertEqual(len(block.ops), 1)
init_op = block.ops[0]
self.assertEqual(init_op.type, 'gaussian_random')
std = np.sqrt(2.0 / (param.shape[0] + param.shape[1]))
self.assertAlmostEqual(init_op.attr('mean'), 0.0, delta=DELTA)
self.assertAlmostEqual(init_op.attr('std'), std, delta=DELTA)
self.assertEqual(init_op.attr('seed'), 0)
def test_normal_xavier_initializer_conv(self):
"""Test Xavier initializer with normal distribution on
for convolutions.
"""
program = framework.Program()
block = program.global_block()
param = block.create_parameter(
dtype="float32",
shape=[5, 10, 15, 20],
lod_level=0,
name="param",
initializer=initializer.XavierInitializer(uniform=False))
self.assertEqual(len(block.ops), 1)
init_op = block.ops[0]
self.assertEqual(init_op.type, 'gaussian_random')
receptive_field_size = float(15 * 20)
std = np.sqrt(2.0 / (
(param.shape[0] + param.shape[1]) * receptive_field_size))
self.assertAlmostEqual(init_op.attr('mean'), 0.0, delta=DELTA)
self.assertAlmostEqual(init_op.attr('std'), std, delta=DELTA)
self.assertEqual(init_op.attr('seed'), 0)
def test_xavier_initializer_supplied_arguments(self):
"""Test the Xavier initializer with supplied arguments
"""
program = framework.Program()
block = program.global_block()
block.create_parameter(
dtype="float32",
shape=[5, 10],
lod_level=0,
name="param",
initializer=initializer.XavierInitializer(
fan_in=12, fan_out=23, seed=134))
self.assertEqual(len(block.ops), 1)
init_op = block.ops[0]
self.assertEqual(init_op.type, 'uniform_random')
limit = np.sqrt(6.0 / (12 + 23))
self.assertAlmostEqual(init_op.attr('min'), -limit, delta=DELTA)
self.assertAlmostEqual(init_op.attr('max'), limit, delta=DELTA)
self.assertEqual(init_op.attr('seed'), 134)
if __name__ == '__main__':
unittest.main()
......@@ -243,7 +243,7 @@ def model():
def main():
cost = model()
sgd_optimizer = optimizer.SGDOptimizer(learning_rate=0.2)
opts = sgd_optimizer.minimize(cost)
opts = sgd_optimizer.minimize(cost, init_program=init_program)
block = program.block(0)
if use_gpu:
......@@ -305,8 +305,8 @@ def main():
feed=func_feed(feeding, data),
fetch_list=[cost])
out = np.array(outs[0])
if out[0] < 5.0:
# if avg cost less than 10.0, we think our code is good.
if out[0] < 6.0:
# if avg cost less than 6.0, we think our code is good.
exit(0)
......
import paddle.v2 as paddle
import paddle.v2.framework.layers as layers
import paddle.v2.framework.nets as nets
import paddle.v2.framework.core as core
import paddle.v2.framework.optimizer as optimizer
from paddle.v2.framework.framework import Program, g_program, g_init_program
from paddle.v2.framework.executor import Executor
import numpy as np
def convolution_net(input_dim, class_dim=2, emb_dim=32, hid_dim=32):
data = layers.data(name="words", shape=[1], data_type="int64")
label = layers.data(name="label", shape=[1], data_type="int64")
emb = layers.embedding(input=data, size=[input_dim, emb_dim])
conv_3 = nets.sequence_conv_pool(
input=emb,
num_filters=hid_dim,
filter_size=3,
act="tanh",
pool_type="sqrt")
conv_4 = nets.sequence_conv_pool(
input=emb,
num_filters=hid_dim,
filter_size=4,
act="tanh",
pool_type="sqrt")
prediction = layers.fc(input=[conv_3, conv_4],
size=class_dim,
act="softmax")
cost = layers.cross_entropy(input=prediction, label=label)
avg_cost = layers.mean(x=cost)
adam_optimizer = optimizer.AdamOptimizer(learning_rate=0.002)
opts = adam_optimizer.minimize(avg_cost)
acc = layers.accuracy(input=prediction, label=label)
return avg_cost, acc
def to_lodtensor(data, place):
seq_lens = [len(seq) for seq in data]
cur_len = 0
lod = [cur_len]
for l in seq_lens:
cur_len += l
lod.append(cur_len)
flattened_data = np.concatenate(data, axis=0).astype("int64")
flattened_data = flattened_data.reshape([len(flattened_data), 1])
res = core.LoDTensor()
res.set(flattened_data, place)
res.set_lod([lod])
return res
def main():
BATCH_SIZE = 100
PASS_NUM = 5
word_dict = paddle.dataset.imdb.word_dict()
dict_dim = len(word_dict)
class_dim = 2
cost, acc = convolution_net(input_dim=dict_dim, class_dim=class_dim)
train_data = paddle.batch(
paddle.reader.shuffle(
paddle.dataset.imdb.train(word_dict), buf_size=1000),
batch_size=BATCH_SIZE)
place = core.CPUPlace()
exe = Executor(place)
exe.run(g_init_program)
for pass_id in xrange(PASS_NUM):
for data in train_data():
tensor_words = to_lodtensor(map(lambda x: x[0], data), place)
label = np.array(map(lambda x: x[1], data)).astype("int64")
label = label.reshape([BATCH_SIZE, 1])
tensor_label = core.LoDTensor()
tensor_label.set(label, place)
outs = exe.run(g_program,
feed={"words": tensor_words,
"label": tensor_label},
fetch_list=[cost, acc])
cost_val = np.array(outs[0])
acc_val = np.array(outs[1])
print("cost=" + str(cost_val) + " acc=" + str(acc_val))
if cost_val < 1.0 and acc_val > 0.7:
exit(0)
exit(1)
if __name__ == '__main__':
main()
......@@ -56,7 +56,7 @@ class Ploter(object):
assert isinstance(data, PlotData)
data.append(step, value)
def plot(self):
def plot(self, path=None):
if self.__plot_is_disabled__():
return
......@@ -68,8 +68,11 @@ class Ploter(object):
titles.append(title)
self.plt.plot(data.step, data.value)
self.plt.legend(titles, loc='upper left')
self.display.clear_output(wait=True)
self.display.display(self.plt.gcf())
if path is None:
self.display.clear_output(wait=True)
self.display.display(self.plt.gcf())
else:
self.plt.savefig(path)
self.plt.gcf().clear()
def reset(self):
......
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