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2d392828
编写于
4月 27, 2018
作者:
Y
Yao Cheng
提交者:
chengyao
4月 27, 2018
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fluid/text_classification/clouds/scdb_parallel_executor.py
fluid/text_classification/clouds/scdb_parallel_executor.py
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fluid/text_classification/clouds/scdb_single_card.py
fluid/text_classification/clouds/scdb_single_card.py
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fluid/text_classification/clouds/scdb_parallel_executor.py
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浏览文件 @
2d392828
import
unittest
import
contextlib
import
paddle.fluid
as
fluid
import
paddle.v2
as
paddle
import
numpy
as
np
import
sys
import
time
import
os
import
json
import
random
def
to_lodtensor
(
data
,
place
):
"""
convert to LODtensor
"""
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
=
fluid
.
LoDTensor
()
res
.
set
(
flattened_data
,
place
)
res
.
set_lod
([
lod
])
return
res
def
load_vocab
(
filename
):
"""
load imdb vocabulary
"""
vocab
=
{}
with
open
(
filename
)
as
f
:
wid
=
0
for
line
in
f
:
vocab
[
line
.
strip
()]
=
wid
wid
+=
1
vocab
[
"<unk>"
]
=
len
(
vocab
)
return
vocab
def
data2tensor
(
data
,
place
):
"""
data2tensor
"""
input_seq
=
to_lodtensor
(
map
(
lambda
x
:
x
[
0
],
data
),
place
)
y_data
=
np
.
array
(
map
(
lambda
x
:
x
[
1
],
data
)).
astype
(
"int64"
)
y_data
=
y_data
.
reshape
([
-
1
,
1
])
return
{
"words"
:
input_seq
,
"label"
:
y_data
}
def
data2pred
(
data
,
place
):
"""
data2tensor
"""
input_seq
=
to_lodtensor
(
map
(
lambda
x
:
x
[
0
],
data
),
place
)
y_data
=
np
.
array
(
map
(
lambda
x
:
x
[
1
],
data
)).
astype
(
"int64"
)
y_data
=
y_data
.
reshape
([
-
1
,
1
])
return
{
"words"
:
input_seq
}
def
load_dict
(
vocab
):
"""
Load dict from vocab
"""
word_dict
=
dict
()
with
open
(
vocab
,
"r"
)
as
fin
:
for
line
in
fin
:
cols
=
line
.
strip
(
"
\r\n
"
).
decode
(
"gb18030"
).
split
(
"
\t
"
)
word_dict
[
cols
[
0
]]
=
int
(
cols
[
1
])
return
word_dict
def
save_dict
(
word_dict
,
vocab
):
"""
Save dict into file
"""
with
open
(
vocab
,
"w"
)
as
fout
:
for
k
,
v
in
word_dict
.
iteritems
():
outstr
=
(
"%s
\t
%s
\n
"
%
(
k
,
v
)).
encode
(
"gb18030"
)
fout
.
write
(
outstr
)
def
build_dict
(
fname
):
"""
build word dict using trainset
"""
word_dict
=
dict
()
with
open
(
fname
,
"r"
)
as
fin
:
for
line
in
fin
:
try
:
words
=
line
.
strip
(
"
\r\n
"
).
decode
(
"gb18030"
).
split
(
"
\t
"
)[
1
].
split
(
" "
)
except
:
sys
.
stderr
.
write
(
"[warning] build_dict: decode error
\n
"
)
continue
for
w
in
words
:
if
w
not
in
word_dict
:
word_dict
[
w
]
=
len
(
word_dict
)
return
word_dict
def
scdb_word_dict
(
vocab
=
"scdb_data/train_set/train.vocab"
):
"""
get word_dict
"""
if
not
os
.
path
.
exists
(
vocab
):
w_dict
=
build_dict
(
train_file
)
save_dict
(
w_dict
,
vocab
)
else
:
w_dict
=
load_dict
(
vocab
)
w_dict
[
"<unk>"
]
=
len
(
w_dict
)
return
w_dict
def
data_reader
(
fname
,
word_dict
,
is_dir
=
False
):
"""
Convert word sequence into slot
"""
unk_id
=
len
(
word_dict
)
all_data
=
[]
filelist
=
[]
if
is_dir
:
filelist
=
[
fname
+
os
.
sep
+
f
for
f
in
os
.
listdir
(
fname
)]
else
:
filelist
=
[
fname
]
for
each_name
in
filelist
:
with
open
(
each_name
,
"r"
)
as
fin
:
for
line
in
fin
:
try
:
cols
=
line
.
strip
(
"
\r\n
"
).
decode
(
"gb18030"
).
split
(
"
\t
"
)
except
:
sys
.
stderr
.
write
(
"warning: ignore decode error
\n
"
)
continue
label
=
int
(
cols
[
0
])
wids
=
[
word_dict
[
x
]
if
x
in
word_dict
else
unk_id
for
x
in
cols
[
1
].
split
(
" "
)]
all_data
.
append
((
wids
,
label
))
random
.
shuffle
(
all_data
)
def
reader
():
for
doc
,
label
in
all_data
:
yield
doc
,
label
return
reader
def
scdb_train_data
(
train_dir
=
"scdb_data/train_set/corpus.train.seg"
,
w_dict
=
None
):
"""
create train data
"""
return
data_reader
(
train_dir
,
w_dict
,
True
)
def
scdb_test_data
(
test_file
,
w_dict
):
"""
test_set=["car", "lbs", "spot", "weibo",
"baby", "toutiao", "3c", "movie", "haogan"]
"""
return
data_reader
(
test_file
,
w_dict
)
def
bow_net
(
data
,
label
,
dict_dim
,
emb_dim
=
128
,
hid_dim
=
128
,
hid_dim2
=
96
,
class_dim
=
2
):
"""
bow net
"""
emb
=
fluid
.
layers
.
embedding
(
input
=
data
,
size
=
[
dict_dim
,
emb_dim
])
bow
=
fluid
.
layers
.
sequence_pool
(
input
=
emb
,
pool_type
=
'sum'
)
bow_tanh
=
fluid
.
layers
.
tanh
(
bow
)
fc_1
=
fluid
.
layers
.
fc
(
input
=
bow_tanh
,
size
=
hid_dim
,
act
=
"tanh"
)
fc_2
=
fluid
.
layers
.
fc
(
input
=
fc_1
,
size
=
hid_dim2
,
act
=
"tanh"
)
prediction
=
fluid
.
layers
.
fc
(
input
=
[
fc_2
],
size
=
class_dim
,
act
=
"softmax"
)
cost
=
fluid
.
layers
.
cross_entropy
(
input
=
prediction
,
label
=
label
)
avg_cost
=
fluid
.
layers
.
mean
(
x
=
cost
)
acc
=
fluid
.
layers
.
accuracy
(
input
=
prediction
,
label
=
label
)
return
avg_cost
,
acc
,
prediction
def
cnn_net
(
data
,
label
,
dict_dim
,
emb_dim
=
128
,
hid_dim
=
128
,
hid_dim2
=
96
,
class_dim
=
2
,
win_size
=
3
):
"""
conv net
"""
emb
=
fluid
.
layers
.
embedding
(
input
=
data
,
size
=
[
dict_dim
,
emb_dim
])
conv_3
=
fluid
.
nets
.
sequence_conv_pool
(
input
=
emb
,
num_filters
=
hid_dim
,
filter_size
=
win_size
,
act
=
"tanh"
,
pool_type
=
"max"
)
fc_1
=
fluid
.
layers
.
fc
(
input
=
[
conv_3
],
size
=
hid_dim2
)
prediction
=
fluid
.
layers
.
fc
(
input
=
[
fc_1
],
size
=
class_dim
,
act
=
"softmax"
)
cost
=
fluid
.
layers
.
cross_entropy
(
input
=
prediction
,
label
=
label
)
avg_cost
=
fluid
.
layers
.
mean
(
x
=
cost
)
acc
=
fluid
.
layers
.
accuracy
(
input
=
prediction
,
label
=
label
)
return
avg_cost
,
acc
,
prediction
def
lstm_net
(
data
,
label
,
dict_dim
,
emb_dim
=
128
,
hid_dim
=
128
,
hid_dim2
=
96
,
class_dim
=
2
,
emb_lr
=
30.0
):
"""
lstm net
"""
emb
=
fluid
.
layers
.
embedding
(
input
=
data
,
size
=
[
dict_dim
,
emb_dim
],
param_attr
=
fluid
.
ParamAttr
(
learning_rate
=
emb_lr
))
fc0
=
fluid
.
layers
.
fc
(
input
=
emb
,
size
=
hid_dim
*
4
,
act
=
'tanh'
)
lstm_h
,
c
=
fluid
.
layers
.
dynamic_lstm
(
input
=
fc0
,
size
=
hid_dim
*
4
,
is_reverse
=
False
)
lstm_max
=
fluid
.
layers
.
sequence_pool
(
input
=
lstm_h
,
pool_type
=
'max'
)
lstm_max_tanh
=
fluid
.
layers
.
tanh
(
lstm_max
)
fc1
=
fluid
.
layers
.
fc
(
input
=
lstm_max_tanh
,
size
=
hid_dim2
,
act
=
'tanh'
)
prediction
=
fluid
.
layers
.
fc
(
input
=
fc1
,
size
=
class_dim
,
act
=
'softmax'
)
cost
=
fluid
.
layers
.
cross_entropy
(
input
=
prediction
,
label
=
label
)
avg_cost
=
fluid
.
layers
.
mean
(
x
=
cost
)
acc
=
fluid
.
layers
.
accuracy
(
input
=
prediction
,
label
=
label
)
return
avg_cost
,
acc
,
prediction
def
bilstm_net
(
data
,
label
,
dict_dim
,
emb_dim
=
128
,
hid_dim
=
128
,
hid_dim2
=
96
,
class_dim
=
2
,
emb_lr
=
30.0
):
"""
lstm net
"""
emb
=
fluid
.
layers
.
embedding
(
input
=
data
,
size
=
[
dict_dim
,
emb_dim
],
param_attr
=
fluid
.
ParamAttr
(
learning_rate
=
emb_lr
))
fc0
=
fluid
.
layers
.
fc
(
input
=
emb
,
size
=
hid_dim
*
4
,
act
=
'tanh'
)
rfc0
=
fluid
.
layers
.
fc
(
input
=
emb
,
size
=
hid_dim
*
4
,
act
=
'tanh'
)
lstm_h
,
c
=
fluid
.
layers
.
dynamic_lstm
(
input
=
fc0
,
size
=
hid_dim
*
4
,
is_reverse
=
False
)
rlstm_h
,
c
=
fluid
.
layers
.
dynamic_lstm
(
input
=
rfc0
,
size
=
hid_dim
*
4
,
is_reverse
=
True
)
lstm_last
=
fluid
.
layers
.
sequence_last_step
(
input
=
lstm_h
)
rlstm_last
=
fluid
.
layers
.
sequence_last_step
(
input
=
rlstm_h
)
lstm_last_tanh
=
fluid
.
layers
.
tanh
(
lstm_last
)
rlstm_last_tanh
=
fluid
.
layers
.
tanh
(
rlstm_last
)
lstm_concat
=
fluid
.
layers
.
concat
(
input
=
[
lstm_last
,
rlstm_last
],
axis
=
1
)
fc1
=
fluid
.
layers
.
fc
(
input
=
lstm_concat
,
size
=
hid_dim2
,
act
=
'tanh'
)
prediction
=
fluid
.
layers
.
fc
(
input
=
fc1
,
size
=
class_dim
,
act
=
'softmax'
)
cost
=
fluid
.
layers
.
cross_entropy
(
input
=
prediction
,
label
=
label
)
avg_cost
=
fluid
.
layers
.
mean
(
x
=
cost
)
acc
=
fluid
.
layers
.
accuracy
(
input
=
prediction
,
label
=
label
)
return
avg_cost
,
acc
,
prediction
def
gru_net
(
data
,
label
,
dict_dim
,
emb_dim
=
128
,
hid_dim
=
128
,
hid_dim2
=
96
,
class_dim
=
2
,
emb_lr
=
30.0
):
"""
gru net
"""
emb
=
fluid
.
layers
.
embedding
(
input
=
data
,
size
=
[
dict_dim
,
emb_dim
],
param_attr
=
fluid
.
ParamAttr
(
learning_rate
=
emb_lr
))
fc0
=
fluid
.
layers
.
fc
(
input
=
emb
,
size
=
hid_dim
*
3
)
gru_h
=
fluid
.
layers
.
dynamic_gru
(
input
=
fc0
,
size
=
hid_dim
,
is_reverse
=
False
)
gru_max
=
fluid
.
layers
.
sequence_pool
(
input
=
gru_h
,
pool_type
=
'max'
)
gru_max_tanh
=
fluid
.
layers
.
tanh
(
gru_max
)
fc1
=
fluid
.
layers
.
fc
(
input
=
gru_max_tanh
,
size
=
hid_dim2
,
act
=
'tanh'
)
prediction
=
fluid
.
layers
.
fc
(
input
=
fc1
,
size
=
class_dim
,
act
=
'softmax'
)
cost
=
fluid
.
layers
.
cross_entropy
(
input
=
prediction
,
label
=
label
)
avg_cost
=
fluid
.
layers
.
mean
(
x
=
cost
)
acc
=
fluid
.
layers
.
accuracy
(
input
=
prediction
,
label
=
label
)
return
avg_cost
,
acc
,
prediction
def
infer
(
test_reader
,
use_cuda
,
model_path
=
None
):
"""
inference function
"""
if
model_path
is
None
:
print
(
str
(
model_path
)
+
" cannot be found"
)
return
place
=
fluid
.
CPUPlace
()
exe
=
fluid
.
Executor
(
place
)
inference_scope
=
fluid
.
core
.
Scope
()
with
fluid
.
scope_guard
(
inference_scope
):
[
inference_program
,
feed_target_names
,
fetch_targets
]
=
fluid
.
io
.
load_inference_model
(
model_path
,
exe
)
class2_list
,
class3_list
=
[],
[]
for
each_test_reader
in
test_reader
:
class2_acc
,
class3_acc
=
0.0
,
0.0
total_count
,
neu_count
=
0
,
0
for
data
in
each_test_reader
():
pred
=
exe
.
run
(
inference_program
,
feed
=
data2pred
(
data
,
place
),
fetch_list
=
fetch_targets
,
return_numpy
=
True
)
for
i
,
val
in
enumerate
(
data
):
pos_score
=
pred
[
0
][
i
,
1
]
true_label
=
val
[
1
]
if
true_label
==
2.0
and
pos_score
>
0.5
:
class2_acc
+=
1
if
true_label
==
0.0
and
pos_score
<
0.5
:
class2_acc
+=
1
if
true_label
==
2.0
and
pos_score
>
0.55
:
class3_acc
+=
1
if
true_label
==
1.0
and
pos_score
>
0.45
and
pos_score
<=
0.55
:
class3_acc
+=
1
if
true_label
==
0.0
and
pos_score
<=
0.45
:
class3_acc
+=
1
if
true_label
==
1.0
:
neu_count
+=
1
total_count
+=
len
(
data
)
class2_acc
=
class2_acc
/
(
total_count
-
neu_count
)
class3_acc
=
class3_acc
/
total_count
class2_list
.
append
(
class2_acc
)
class3_list
.
append
(
class3_acc
)
class2_acc
=
sum
(
class2_list
)
/
len
(
class2_list
)
class3_acc
=
sum
(
class3_list
)
/
len
(
class3_list
)
print
(
"[test info] model_path: %s, class2_acc: %f, class3_acc: %f"
%
(
model_path
,
class2_acc
,
class3_acc
))
def
start_train
(
train_reader
,
test_reader
,
word_dict
,
network
,
use_cuda
,
parallel
,
save_dirname
,
lr
=
0.2
,
batch_size
=
128
,
pass_num
=
30
):
"""
train network
"""
data
=
fluid
.
layers
.
data
(
name
=
"words"
,
shape
=
[
1
],
dtype
=
"int64"
,
lod_level
=
1
)
label
=
fluid
.
layers
.
data
(
name
=
"label"
,
shape
=
[
1
],
dtype
=
"int64"
)
cost
,
acc
,
pred
=
network
(
data
,
label
,
len
(
word_dict
)
+
1
)
sgd_optimizer
=
fluid
.
optimizer
.
Adagrad
(
learning_rate
=
lr
)
sgd_optimizer
.
minimize
(
cost
)
place
=
fluid
.
CPUPlace
()
feeder
=
fluid
.
DataFeeder
(
feed_list
=
[
data
,
label
],
place
=
place
)
start_exe
=
fluid
.
Executor
(
place
)
start_exe
.
run
(
fluid
.
default_startup_program
())
exe
=
fluid
.
ParallelExecutor
(
use_cuda
,
loss_name
=
cost
.
name
)
for
pass_id
in
xrange
(
pass_num
):
total_acc
,
total_cost
,
total_count
,
avg_cost
,
avg_acc
=
0.0
,
0.0
,
0.0
,
0.0
,
0.0
for
data
in
train_reader
():
cost_val
,
acc_val
=
exe
.
run
(
feed
=
feeder
.
feed
(
data
),
fetch_list
=
[
cost
.
name
,
acc
.
name
])
cost_val_list
,
acc_val_list
=
np
.
array
(
cost_val
),
np
.
array
(
acc_val
)
total_cost
+=
cost_val_list
.
sum
()
*
len
(
data
)
total_acc
+=
acc_val_list
.
sum
()
*
len
(
data
)
total_count
+=
len
(
data
)
avg_cost
=
total_cost
/
total_count
avg_acc
=
total_acc
/
total_count
print
(
"[train info]: pass_id: %d, avg_acc: %f, avg_cost: %f"
%
(
pass_id
,
avg_acc
,
avg_cost
))
gpu_place
=
fluid
.
CUDAPlace
(
0
)
save_exe
=
fluid
.
Executor
(
gpu_place
)
epoch_model
=
save_dirname
+
"/"
+
"epoch"
+
str
(
pass_id
)
fluid
.
io
.
save_inference_model
(
epoch_model
,
[
"words"
],
pred
,
save_exe
)
infer
(
test_reader
,
False
,
epoch_model
)
def
train_net
(
vocab
=
"./thirdparty/train.vocab"
,
train_dir
=
"./train"
,
test_list
=
[
"car"
,
"spot"
,
"weibo"
,
"lbs"
]):
"""
w_dict = scdb_word_dict(vocab=vocab)
test_files = [ "./thirdparty" + os.sep + f for f in test_list]
train_reader = paddle.batch(
scdb_train_data(train_dir, w_dict),
batch_size = 256)
test_reader = [paddle.batch(scdb_test_data(test_file, w_dict), batch_size = 50)
\
for test_file in test_files]
"""
w_dict
=
paddle
.
dataset
.
imdb
.
word_dict
()
print
(
"dict ready"
)
train_reader
=
paddle
.
batch
(
paddle
.
reader
.
shuffle
(
paddle
.
dataset
.
imdb
.
train
(
w_dict
),
buf_size
=
50000
),
batch_size
=
128
)
test_reader
=
paddle
.
batch
(
paddle
.
reader
.
shuffle
(
paddle
.
dataset
.
imdb
.
test
(
w_dict
),
buf_size
=
50000
),
batch_size
=
128
)
test_reader
=
[
test_reader
]
start_train
(
train_reader
,
test_reader
,
w_dict
,
bilstm_net
,
use_cuda
=
True
,
parallel
=
False
,
save_dirname
=
"scdb_bilstm_model"
,
lr
=
0.05
,
pass_num
=
10
,
batch_size
=
256
)
if
__name__
==
"__main__"
:
train_net
()
fluid/text_classification/clouds/scdb_single_card.py
0 → 100644
浏览文件 @
2d392828
import
unittest
import
contextlib
import
paddle.fluid
as
fluid
import
paddle.v2
as
paddle
import
numpy
as
np
import
sys
import
time
import
os
import
json
import
random
def
to_lodtensor
(
data
,
place
):
"""
convert to LODtensor
"""
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
=
fluid
.
LoDTensor
()
res
.
set
(
flattened_data
,
place
)
res
.
set_lod
([
lod
])
return
res
def
load_vocab
(
filename
):
"""
load imdb vocabulary
"""
vocab
=
{}
with
open
(
filename
)
as
f
:
wid
=
0
for
line
in
f
:
vocab
[
line
.
strip
()]
=
wid
wid
+=
1
vocab
[
"<unk>"
]
=
len
(
vocab
)
return
vocab
def
data2tensor
(
data
,
place
):
"""
data2tensor
"""
input_seq
=
to_lodtensor
(
map
(
lambda
x
:
x
[
0
],
data
),
place
)
y_data
=
np
.
array
(
map
(
lambda
x
:
x
[
1
],
data
)).
astype
(
"int64"
)
y_data
=
y_data
.
reshape
([
-
1
,
1
])
return
{
"words"
:
input_seq
,
"label"
:
y_data
}
def
data2pred
(
data
,
place
):
"""
data2tensor
"""
input_seq
=
to_lodtensor
(
map
(
lambda
x
:
x
[
0
],
data
),
place
)
y_data
=
np
.
array
(
map
(
lambda
x
:
x
[
1
],
data
)).
astype
(
"int64"
)
y_data
=
y_data
.
reshape
([
-
1
,
1
])
return
{
"words"
:
input_seq
}
def
load_dict
(
vocab
):
"""
Load dict from vocab
"""
word_dict
=
dict
()
with
open
(
vocab
,
"r"
)
as
fin
:
for
line
in
fin
:
cols
=
line
.
strip
(
"
\r\n
"
).
decode
(
"gb18030"
).
split
(
"
\t
"
)
word_dict
[
cols
[
0
]]
=
int
(
cols
[
1
])
return
word_dict
def
save_dict
(
word_dict
,
vocab
):
"""
Save dict into file
"""
with
open
(
vocab
,
"w"
)
as
fout
:
for
k
,
v
in
word_dict
.
iteritems
():
outstr
=
(
"%s
\t
%s
\n
"
%
(
k
,
v
)).
encode
(
"gb18030"
)
fout
.
write
(
outstr
)
def
build_dict
(
fname
):
"""
build word dict using trainset
"""
word_dict
=
dict
()
with
open
(
fname
,
"r"
)
as
fin
:
for
line
in
fin
:
try
:
words
=
line
.
strip
(
"
\r\n
"
).
decode
(
"gb18030"
).
split
(
"
\t
"
)[
1
].
split
(
" "
)
except
:
sys
.
stderr
.
write
(
"[warning] build_dict: decode error
\n
"
)
continue
for
w
in
words
:
if
w
not
in
word_dict
:
word_dict
[
w
]
=
len
(
word_dict
)
return
word_dict
def
scdb_word_dict
(
vocab
=
"scdb_data/train_set/train.vocab"
):
"""
get word_dict
"""
if
not
os
.
path
.
exists
(
vocab
):
w_dict
=
build_dict
(
train_file
)
save_dict
(
w_dict
,
vocab
)
else
:
w_dict
=
load_dict
(
vocab
)
w_dict
[
"<unk>"
]
=
len
(
w_dict
)
return
w_dict
def
data_reader
(
fname
,
word_dict
,
is_dir
=
False
):
"""
Convert word sequence into slot
"""
unk_id
=
len
(
word_dict
)
all_data
=
[]
filelist
=
[]
if
is_dir
:
filelist
=
[
fname
+
os
.
sep
+
f
for
f
in
os
.
listdir
(
fname
)]
else
:
filelist
=
[
fname
]
for
each_name
in
filelist
:
with
open
(
each_name
,
"r"
)
as
fin
:
for
line
in
fin
:
try
:
cols
=
line
.
strip
(
"
\r\n
"
).
decode
(
"gb18030"
).
split
(
"
\t
"
)
except
:
sys
.
stderr
.
write
(
"warning: ignore decode error
\n
"
)
continue
label
=
int
(
cols
[
0
])
wids
=
[
word_dict
[
x
]
if
x
in
word_dict
else
unk_id
for
x
in
cols
[
1
].
split
(
" "
)]
all_data
.
append
((
wids
,
label
))
random
.
shuffle
(
all_data
)
def
reader
():
for
doc
,
label
in
all_data
:
yield
doc
,
label
return
reader
def
scdb_train_data
(
train_dir
=
"scdb_data/train_set/corpus.train.seg"
,
w_dict
=
None
):
"""
create train data
"""
return
data_reader
(
train_dir
,
w_dict
,
True
)
def
scdb_test_data
(
test_file
,
w_dict
):
"""
test_set=["car", "lbs", "spot", "weibo",
"baby", "toutiao", "3c", "movie", "haogan"]
"""
return
data_reader
(
test_file
,
w_dict
)
def
bow_net
(
data
,
label
,
dict_dim
,
emb_dim
=
128
,
hid_dim
=
128
,
hid_dim2
=
96
,
class_dim
=
2
):
"""
bow net
"""
emb
=
fluid
.
layers
.
embedding
(
input
=
data
,
size
=
[
dict_dim
,
emb_dim
])
bow
=
fluid
.
layers
.
sequence_pool
(
input
=
emb
,
pool_type
=
'sum'
)
bow_tanh
=
fluid
.
layers
.
tanh
(
bow
)
fc_1
=
fluid
.
layers
.
fc
(
input
=
bow_tanh
,
size
=
hid_dim
,
act
=
"tanh"
)
fc_2
=
fluid
.
layers
.
fc
(
input
=
fc_1
,
size
=
hid_dim2
,
act
=
"tanh"
)
prediction
=
fluid
.
layers
.
fc
(
input
=
[
fc_2
],
size
=
class_dim
,
act
=
"softmax"
)
cost
=
fluid
.
layers
.
cross_entropy
(
input
=
prediction
,
label
=
label
)
avg_cost
=
fluid
.
layers
.
mean
(
x
=
cost
)
acc
=
fluid
.
layers
.
accuracy
(
input
=
prediction
,
label
=
label
)
return
avg_cost
,
acc
,
prediction
def
cnn_net
(
data
,
label
,
dict_dim
,
emb_dim
=
128
,
hid_dim
=
128
,
hid_dim2
=
96
,
class_dim
=
2
,
win_size
=
3
):
"""
conv net
"""
emb
=
fluid
.
layers
.
embedding
(
input
=
data
,
size
=
[
dict_dim
,
emb_dim
])
conv_3
=
fluid
.
nets
.
sequence_conv_pool
(
input
=
emb
,
num_filters
=
hid_dim
,
filter_size
=
win_size
,
act
=
"tanh"
,
pool_type
=
"max"
)
fc_1
=
fluid
.
layers
.
fc
(
input
=
[
conv_3
],
size
=
hid_dim2
)
prediction
=
fluid
.
layers
.
fc
(
input
=
[
fc_1
],
size
=
class_dim
,
act
=
"softmax"
)
cost
=
fluid
.
layers
.
cross_entropy
(
input
=
prediction
,
label
=
label
)
avg_cost
=
fluid
.
layers
.
mean
(
x
=
cost
)
acc
=
fluid
.
layers
.
accuracy
(
input
=
prediction
,
label
=
label
)
return
avg_cost
,
acc
,
prediction
def
lstm_net
(
data
,
label
,
dict_dim
,
emb_dim
=
128
,
hid_dim
=
128
,
hid_dim2
=
96
,
class_dim
=
2
,
emb_lr
=
30.0
):
"""
lstm net
"""
emb
=
fluid
.
layers
.
embedding
(
input
=
data
,
size
=
[
dict_dim
,
emb_dim
],
param_attr
=
fluid
.
ParamAttr
(
learning_rate
=
emb_lr
))
fc0
=
fluid
.
layers
.
fc
(
input
=
emb
,
size
=
hid_dim
*
4
,
act
=
'tanh'
)
lstm_h
,
c
=
fluid
.
layers
.
dynamic_lstm
(
input
=
fc0
,
size
=
hid_dim
*
4
,
is_reverse
=
False
)
lstm_max
=
fluid
.
layers
.
sequence_pool
(
input
=
lstm_h
,
pool_type
=
'max'
)
lstm_max_tanh
=
fluid
.
layers
.
tanh
(
lstm_max
)
fc1
=
fluid
.
layers
.
fc
(
input
=
lstm_max_tanh
,
size
=
hid_dim2
,
act
=
'tanh'
)
prediction
=
fluid
.
layers
.
fc
(
input
=
fc1
,
size
=
class_dim
,
act
=
'softmax'
)
cost
=
fluid
.
layers
.
cross_entropy
(
input
=
prediction
,
label
=
label
)
avg_cost
=
fluid
.
layers
.
mean
(
x
=
cost
)
acc
=
fluid
.
layers
.
accuracy
(
input
=
prediction
,
label
=
label
)
return
avg_cost
,
acc
,
prediction
def
bilstm_net
(
data
,
label
,
dict_dim
,
emb_dim
=
128
,
hid_dim
=
128
,
hid_dim2
=
96
,
class_dim
=
2
,
emb_lr
=
30.0
):
"""
lstm net
"""
emb
=
fluid
.
layers
.
embedding
(
input
=
data
,
size
=
[
dict_dim
,
emb_dim
],
param_attr
=
fluid
.
ParamAttr
(
learning_rate
=
emb_lr
))
fc0
=
fluid
.
layers
.
fc
(
input
=
emb
,
size
=
hid_dim
*
4
,
act
=
'tanh'
)
rfc0
=
fluid
.
layers
.
fc
(
input
=
emb
,
size
=
hid_dim
*
4
,
act
=
'tanh'
)
lstm_h
,
c
=
fluid
.
layers
.
dynamic_lstm
(
input
=
fc0
,
size
=
hid_dim
*
4
,
is_reverse
=
False
)
rlstm_h
,
c
=
fluid
.
layers
.
dynamic_lstm
(
input
=
rfc0
,
size
=
hid_dim
*
4
,
is_reverse
=
True
)
lstm_last
=
fluid
.
layers
.
sequence_last_step
(
input
=
lstm_h
)
rlstm_last
=
fluid
.
layers
.
sequence_last_step
(
input
=
rlstm_h
)
lstm_last_tanh
=
fluid
.
layers
.
tanh
(
lstm_last
)
rlstm_last_tanh
=
fluid
.
layers
.
tanh
(
rlstm_last
)
lstm_concat
=
fluid
.
layers
.
concat
(
input
=
[
lstm_last
,
rlstm_last
],
axis
=
1
)
fc1
=
fluid
.
layers
.
fc
(
input
=
lstm_concat
,
size
=
hid_dim2
,
act
=
'tanh'
)
prediction
=
fluid
.
layers
.
fc
(
input
=
fc1
,
size
=
class_dim
,
act
=
'softmax'
)
cost
=
fluid
.
layers
.
cross_entropy
(
input
=
prediction
,
label
=
label
)
avg_cost
=
fluid
.
layers
.
mean
(
x
=
cost
)
acc
=
fluid
.
layers
.
accuracy
(
input
=
prediction
,
label
=
label
)
return
avg_cost
,
acc
,
prediction
def
gru_net
(
data
,
label
,
dict_dim
,
emb_dim
=
128
,
hid_dim
=
128
,
hid_dim2
=
96
,
class_dim
=
2
,
emb_lr
=
30.0
):
"""
gru net
"""
emb
=
fluid
.
layers
.
embedding
(
input
=
data
,
size
=
[
dict_dim
,
emb_dim
],
param_attr
=
fluid
.
ParamAttr
(
learning_rate
=
emb_lr
))
fc0
=
fluid
.
layers
.
fc
(
input
=
emb
,
size
=
hid_dim
*
3
)
gru_h
=
fluid
.
layers
.
dynamic_gru
(
input
=
fc0
,
size
=
hid_dim
,
is_reverse
=
False
)
gru_max
=
fluid
.
layers
.
sequence_pool
(
input
=
gru_h
,
pool_type
=
'max'
)
gru_max_tanh
=
fluid
.
layers
.
tanh
(
gru_max
)
fc1
=
fluid
.
layers
.
fc
(
input
=
gru_max_tanh
,
size
=
hid_dim2
,
act
=
'tanh'
)
prediction
=
fluid
.
layers
.
fc
(
input
=
fc1
,
size
=
class_dim
,
act
=
'softmax'
)
cost
=
fluid
.
layers
.
cross_entropy
(
input
=
prediction
,
label
=
label
)
avg_cost
=
fluid
.
layers
.
mean
(
x
=
cost
)
acc
=
fluid
.
layers
.
accuracy
(
input
=
prediction
,
label
=
label
)
return
avg_cost
,
acc
,
prediction
def
infer
(
test_reader
,
use_cuda
,
model_path
=
None
):
"""
inference function
"""
if
model_path
is
None
:
print
(
str
(
model_path
)
+
" cannot be found"
)
return
place
=
fluid
.
CUDAPlace
(
0
)
if
use_cuda
else
fluid
.
CPUPlace
()
exe
=
fluid
.
Executor
(
place
)
inference_scope
=
fluid
.
core
.
Scope
()
with
fluid
.
scope_guard
(
inference_scope
):
[
inference_program
,
feed_target_names
,
fetch_targets
]
=
fluid
.
io
.
load_inference_model
(
model_path
,
exe
)
class2_list
,
class3_list
=
[],
[]
for
each_test_reader
in
test_reader
:
class2_acc
,
class3_acc
=
0.0
,
0.0
total_count
,
neu_count
=
0
,
0
for
data
in
each_test_reader
():
pred
=
exe
.
run
(
inference_program
,
feed
=
data2pred
(
data
,
place
),
fetch_list
=
fetch_targets
,
return_numpy
=
True
)
for
i
,
val
in
enumerate
(
data
):
pos_score
=
pred
[
0
][
i
,
1
]
true_label
=
val
[
1
]
if
true_label
==
2.0
and
pos_score
>
0.5
:
class2_acc
+=
1
if
true_label
==
0.0
and
pos_score
<
0.5
:
class2_acc
+=
1
if
true_label
==
2.0
and
pos_score
>
0.55
:
class3_acc
+=
1
if
true_label
==
1.0
and
pos_score
>
0.45
and
pos_score
<=
0.55
:
class3_acc
+=
1
if
true_label
==
0.0
and
pos_score
<=
0.45
:
class3_acc
+=
1
if
true_label
==
1.0
:
neu_count
+=
1
total_count
+=
len
(
data
)
class2_acc
=
class2_acc
/
(
total_count
-
neu_count
)
class3_acc
=
class3_acc
/
total_count
class2_list
.
append
(
class2_acc
)
class3_list
.
append
(
class3_acc
)
class2_acc
=
sum
(
class2_list
)
/
len
(
class2_list
)
class3_acc
=
sum
(
class3_list
)
/
len
(
class3_list
)
print
(
"[test info] model_path: %s, class2_acc: %f, class3_acc: %f"
%
(
model_path
,
class2_acc
,
class3_acc
))
def
start_train
(
train_reader
,
test_reader
,
word_dict
,
network
,
use_cuda
,
parallel
,
save_dirname
,
lr
=
0.2
,
batch_size
=
128
,
pass_num
=
30
):
"""
train network
"""
data
=
fluid
.
layers
.
data
(
name
=
"words"
,
shape
=
[
1
],
dtype
=
"int64"
,
lod_level
=
1
)
label
=
fluid
.
layers
.
data
(
name
=
"label"
,
shape
=
[
1
],
dtype
=
"int64"
)
cost
,
acc
,
pred
=
network
(
data
,
label
,
len
(
word_dict
)
+
1
)
sgd_optimizer
=
fluid
.
optimizer
.
Adagrad
(
learning_rate
=
lr
)
sgd_optimizer
.
minimize
(
cost
)
place
=
fluid
.
CUDAPlace
(
0
)
if
use_cuda
else
fluid
.
CPUPlace
()
exe
=
fluid
.
Executor
(
place
)
feeder
=
fluid
.
DataFeeder
(
feed_list
=
[
data
,
label
],
place
=
place
)
exe
.
run
(
fluid
.
default_startup_program
())
for
pass_id
in
xrange
(
pass_num
):
data_size
,
data_count
,
total_acc
,
total_cost
=
0
,
0
,
0.0
,
0.0
for
data
in
train_reader
():
avg_cost_np
,
avg_acc_np
=
exe
.
run
(
fluid
.
default_main_program
(),
feed
=
feeder
.
feed
(
data
),
fetch_list
=
[
cost
,
acc
])
data_size
=
len
(
data
)
total_acc
+=
data_size
*
avg_acc_np
total_cost
+=
data_size
*
avg_cost_np
data_count
+=
data_size
avg_cost
=
total_cost
/
data_count
avg_acc
=
total_acc
/
data_count
print
(
"[train info]: pass_id: %d, avg_acc: %f, avg_cost: %f"
%
(
pass_id
,
avg_acc
,
avg_cost
))
epoch_model
=
save_dirname
+
"/"
+
"epoch"
+
str
(
pass_id
)
fluid
.
io
.
save_inference_model
(
epoch_model
,
[
"words"
],
pred
,
exe
)
infer
(
test_reader
,
False
,
epoch_model
)
def
train_net
(
vocab
=
"./thirdparty/train.vocab"
,
train_dir
=
"./train"
,
test_list
=
[
"car"
,
"spot"
,
"weibo"
,
"lbs"
]):
w_dict
=
scdb_word_dict
(
vocab
=
vocab
)
test_files
=
[
"./thirdparty"
+
os
.
sep
+
f
for
f
in
test_list
]
train_reader
=
paddle
.
batch
(
scdb_train_data
(
train_dir
,
w_dict
),
batch_size
=
256
)
test_reader
=
[
paddle
.
batch
(
scdb_test_data
(
test_file
,
w_dict
),
batch_size
=
50
)
\
for
test_file
in
test_files
]
start_train
(
train_reader
,
test_reader
,
w_dict
,
bow_net
,
use_cuda
=
False
,
parallel
=
False
,
save_dirname
=
"scdb_bow_model"
,
lr
=
0.002
,
pass_num
=
10
,
batch_size
=
256
)
if
__name__
==
"__main__"
:
train_net
()
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