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218d199d
编写于
3月 30, 2018
作者:
G
Guo Sheng
提交者:
GitHub
3月 30, 2018
浏览文件
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差异文件
Merge pull request #794 from guoshengCS/fix-transformer-softmax
Fix the softmax in Transformer.
上级
2796ea71
cbd63162
变更
4
隐藏空白更改
内联
并排
Showing
4 changed file
with
225 addition
and
58 deletion
+225
-58
fluid/neural_machine_translation/transformer/config.py
fluid/neural_machine_translation/transformer/config.py
+7
-1
fluid/neural_machine_translation/transformer/infer.py
fluid/neural_machine_translation/transformer/infer.py
+48
-8
fluid/neural_machine_translation/transformer/model.py
fluid/neural_machine_translation/transformer/model.py
+152
-47
fluid/neural_machine_translation/transformer/train.py
fluid/neural_machine_translation/transformer/train.py
+18
-2
未找到文件。
fluid/neural_machine_translation/transformer/config.py
浏览文件 @
218d199d
...
...
@@ -92,7 +92,9 @@ pos_enc_param_names = (
encoder_input_data_names
=
(
"src_word"
,
"src_pos"
,
"src_slf_attn_bias"
,
)
"src_slf_attn_bias"
,
"src_slf_attn_pre_softmax_shape"
,
"src_slf_attn_post_softmax_shape"
,
)
# Names of all data layers in decoder listed in order.
decoder_input_data_names
=
(
...
...
@@ -100,6 +102,10 @@ decoder_input_data_names = (
"trg_pos"
,
"trg_slf_attn_bias"
,
"trg_src_attn_bias"
,
"trg_slf_attn_pre_softmax_shape"
,
"trg_slf_attn_post_softmax_shape"
,
"trg_src_attn_pre_softmax_shape"
,
"trg_src_attn_post_softmax_shape"
,
"enc_output"
,
)
# Names of label related data layers listed in order.
...
...
fluid/neural_machine_translation/transformer/infer.py
浏览文件 @
218d199d
...
...
@@ -27,7 +27,14 @@ def translate_batch(exe, src_words, encoder, enc_in_names, enc_out_names,
is_target
=
False
,
return_pos
=
True
,
return_attn_bias
=
True
,
return_max_len
=
True
)
return_max_len
=
False
)
# Append the shape inputs to reshape before and after softmax in encoder
# self attention.
enc_in_data
=
enc_in_data
+
[
np
.
array
(
[
-
1
,
enc_in_data
[
2
].
shape
[
-
1
]],
dtype
=
"int32"
),
np
.
array
(
enc_in_data
[
2
].
shape
,
dtype
=
"int32"
)
]
enc_output
=
exe
.
run
(
encoder
,
feed
=
dict
(
zip
(
enc_in_names
,
enc_in_data
)),
fetch_list
=
enc_out_names
)[
0
]
...
...
@@ -35,8 +42,8 @@ def translate_batch(exe, src_words, encoder, enc_in_names, enc_out_names,
# Beam Search.
# To store the beam info.
scores
=
np
.
zeros
((
batch_size
,
beam_size
),
dtype
=
"float32"
)
prev_branchs
=
[[]
]
*
batch_size
next_ids
=
[[]
]
*
batch_size
prev_branchs
=
[[]
for
i
in
range
(
batch_size
)]
next_ids
=
[[]
for
i
in
range
(
batch_size
)]
# Use beam_map to map the instance idx in batch to beam idx, since the
# size of feeded batch is changing.
beam_map
=
range
(
batch_size
)
...
...
@@ -64,8 +71,8 @@ def translate_batch(exe, src_words, encoder, enc_in_names, enc_out_names,
trg_words
=
np
.
array
(
[[
bos_idx
]]
*
batch_size
*
beam_size
,
dtype
=
"int64"
)
trg_pos
=
np
.
array
([[
1
]]
*
batch_size
*
beam_size
,
dtype
=
"int64"
)
src_max_length
,
src_slf_attn_bias
,
trg_max_len
=
enc_in_data
[
-
1
],
enc_in_data
[
-
2
],
1
src_max_length
,
src_slf_attn_bias
,
trg_max_len
=
enc_in_data
[
2
].
shape
[
-
1
],
enc_in_data
[
2
],
1
# This is used to remove attention on subsequent words.
trg_slf_attn_bias
=
np
.
ones
((
batch_size
*
beam_size
,
trg_max_len
,
trg_max_len
))
...
...
@@ -77,15 +84,33 @@ def translate_batch(exe, src_words, encoder, enc_in_names, enc_out_names,
trg_src_attn_bias
=
np
.
tile
(
src_slf_attn_bias
[:,
:,
::
src_max_length
,
:],
[
beam_size
,
1
,
trg_max_len
,
1
])
# Append the shape inputs to reshape before and after softmax in
# decoder self attention.
trg_slf_attn_pre_softmax_shape
=
np
.
array
(
[
-
1
,
trg_slf_attn_bias
.
shape
[
-
1
]],
dtype
=
"int32"
)
trg_slf_attn_post_softmax_shape
=
np
.
array
(
trg_slf_attn_bias
.
shape
,
dtype
=
"int32"
)
# Append the shape inputs to reshape before and after softmax in
# encoder-decoder attention.
trg_src_attn_pre_softmax_shape
=
np
.
array
(
[
-
1
,
trg_src_attn_bias
.
shape
[
-
1
]],
dtype
=
"int32"
)
trg_src_attn_post_softmax_shape
=
np
.
array
(
trg_src_attn_bias
.
shape
,
dtype
=
"int32"
)
enc_output
=
np
.
tile
(
enc_output
,
[
beam_size
,
1
,
1
])
return
trg_words
,
trg_pos
,
trg_slf_attn_bias
,
trg_src_attn_bias
,
enc_output
return
trg_words
,
trg_pos
,
trg_slf_attn_bias
,
trg_src_attn_bias
,
\
trg_slf_attn_pre_softmax_shape
,
trg_slf_attn_post_softmax_shape
,
\
trg_src_attn_pre_softmax_shape
,
trg_src_attn_post_softmax_shape
,
\
enc_output
def
update_dec_in_data
(
dec_in_data
,
next_ids
,
active_beams
):
"""
Update the input data of decoder mainly by slicing from the previous
input data and dropping the finished instance beams.
"""
trg_words
,
trg_pos
,
trg_slf_attn_bias
,
trg_src_attn_bias
,
enc_output
=
dec_in_data
trg_words
,
trg_pos
,
trg_slf_attn_bias
,
trg_src_attn_bias
,
\
trg_slf_attn_pre_softmax_shape
,
trg_slf_attn_post_softmax_shape
,
\
trg_src_attn_pre_softmax_shape
,
trg_src_attn_post_softmax_shape
,
\
enc_output
=
dec_in_data
trg_cur_len
=
len
(
next_ids
[
0
])
+
1
# include the <bos>
trg_words
=
np
.
array
(
[
...
...
@@ -112,8 +137,23 @@ def translate_batch(exe, src_words, encoder, enc_in_names, enc_out_names,
trg_src_attn_bias
=
np
.
tile
(
trg_src_attn_bias
[
active_beams_indice
,
:,
::
trg_src_attn_bias
.
shape
[
2
],
:],
[
1
,
1
,
trg_cur_len
,
1
])
# Append the shape inputs to reshape before and after softmax in
# decoder self attention.
trg_slf_attn_pre_softmax_shape
=
np
.
array
(
[
-
1
,
trg_slf_attn_bias
.
shape
[
-
1
]],
dtype
=
"int32"
)
trg_slf_attn_post_softmax_shape
=
np
.
array
(
trg_slf_attn_bias
.
shape
,
dtype
=
"int32"
)
# Append the shape inputs to reshape before and after softmax in
# encoder-decoder attention.
trg_src_attn_pre_softmax_shape
=
np
.
array
(
[
-
1
,
trg_src_attn_bias
.
shape
[
-
1
]],
dtype
=
"int32"
)
trg_src_attn_post_softmax_shape
=
np
.
array
(
trg_src_attn_bias
.
shape
,
dtype
=
"int32"
)
enc_output
=
enc_output
[
active_beams_indice
,
:,
:]
return
trg_words
,
trg_pos
,
trg_slf_attn_bias
,
trg_src_attn_bias
,
enc_output
return
trg_words
,
trg_pos
,
trg_slf_attn_bias
,
trg_src_attn_bias
,
\
trg_slf_attn_pre_softmax_shape
,
trg_slf_attn_post_softmax_shape
,
\
trg_src_attn_pre_softmax_shape
,
trg_src_attn_post_softmax_shape
,
\
enc_output
dec_in_data
=
init_dec_in_data
(
batch_size
,
beam_size
,
enc_in_data
,
enc_output
)
...
...
fluid/neural_machine_translation/transformer/model.py
浏览文件 @
218d199d
...
...
@@ -32,7 +32,9 @@ def multi_head_attention(queries,
d_value
,
d_model
,
n_head
=
1
,
dropout_rate
=
0.
):
dropout_rate
=
0.
,
pre_softmax_shape
=
None
,
post_softmax_shape
=
None
):
"""
Multi-Head Attention. Note that attn_bias is added to the logit before
computing softmax activiation to mask certain selected positions so that
...
...
@@ -111,26 +113,16 @@ def multi_head_attention(queries,
"""
Scaled Dot-Product Attention
"""
# FIXME(guosheng): Optimize the shape in reshape_op or softmax_op.
# The current implementation of softmax_op only supports 2D tensor,
# consequently it cannot be directly used here.
# If to use the reshape_op, Besides, the shape of product inferred in
# compile-time is not the actual shape in run-time. It cann't be used
# to set the attribute of reshape_op.
# So, here define the softmax for temporary solution.
def
__softmax
(
x
,
eps
=
1e-9
):
exp_out
=
layers
.
exp
(
x
=
x
)
sum_out
=
layers
.
reduce_sum
(
exp_out
,
dim
=-
1
,
keep_dim
=
False
)
return
layers
.
elementwise_div
(
x
=
exp_out
,
y
=
sum_out
,
axis
=
0
)
scaled_q
=
layers
.
scale
(
x
=
q
,
scale
=
d_model
**-
0.5
)
product
=
layers
.
matmul
(
x
=
scaled_q
,
y
=
k
,
transpose_y
=
True
)
weights
=
__softmax
(
layers
.
elementwise_add
(
x
=
product
,
y
=
attn_bias
)
if
attn_bias
else
product
)
weights
=
layers
.
reshape
(
x
=
layers
.
elementwise_add
(
x
=
product
,
y
=
attn_bias
)
if
attn_bias
else
product
,
shape
=
[
-
1
,
product
.
shape
[
-
1
]],
actual_shape
=
pre_softmax_shape
,
act
=
"softmax"
)
weights
=
layers
.
reshape
(
x
=
weights
,
shape
=
product
.
shape
,
actual_shape
=
post_softmax_shape
)
if
dropout_rate
:
weights
=
layers
.
dropout
(
weights
,
dropout_prob
=
dropout_rate
,
is_test
=
False
)
...
...
@@ -252,7 +244,9 @@ def encoder_layer(enc_input,
d_value
,
d_model
,
d_inner_hid
,
dropout_rate
=
0.
):
dropout_rate
=
0.
,
pre_softmax_shape
=
None
,
post_softmax_shape
=
None
):
"""The encoder layers that can be stacked to form a deep encoder.
This module consits of a multi-head (self) attention followed by
...
...
@@ -260,9 +254,9 @@ def encoder_layer(enc_input,
with the post_process_layer to add residual connection, layer normalization
and droput.
"""
attn_output
=
multi_head_attention
(
enc_input
,
enc_input
,
enc_input
,
attn_bias
,
d_key
,
d_value
,
d_model
,
n_head
,
dropout_rat
e
)
attn_output
=
multi_head_attention
(
enc_input
,
enc_input
,
enc_input
,
attn_bias
,
d_key
,
d_value
,
d_model
,
n_head
,
dropout_rate
,
pre_softmax_shape
,
post_softmax_shap
e
)
attn_output
=
post_process_layer
(
enc_input
,
attn_output
,
"dan"
,
dropout_rate
)
ffd_output
=
positionwise_feed_forward
(
attn_output
,
d_inner_hid
,
d_model
)
...
...
@@ -277,7 +271,9 @@ def encoder(enc_input,
d_value
,
d_model
,
d_inner_hid
,
dropout_rate
=
0.
):
dropout_rate
=
0.
,
pre_softmax_shape
=
None
,
post_softmax_shape
=
None
):
"""
The encoder is composed of a stack of identical layers returned by calling
encoder_layer.
...
...
@@ -291,7 +287,9 @@ def encoder(enc_input,
d_value
,
d_model
,
d_inner_hid
,
dropout_rate
,
)
dropout_rate
,
pre_softmax_shape
,
post_softmax_shape
,
)
enc_input
=
enc_output
return
enc_output
...
...
@@ -305,7 +303,11 @@ def decoder_layer(dec_input,
d_value
,
d_model
,
d_inner_hid
,
dropout_rate
=
0.
):
dropout_rate
=
0.
,
slf_attn_pre_softmax_shape
=
None
,
slf_attn_post_softmax_shape
=
None
,
src_attn_pre_softmax_shape
=
None
,
src_attn_post_softmax_shape
=
None
):
""" The layer to be stacked in decoder part.
The structure of this module is similar to that in the encoder part except
...
...
@@ -320,7 +322,9 @@ def decoder_layer(dec_input,
d_value
,
d_model
,
n_head
,
dropout_rate
,
)
dropout_rate
,
slf_attn_pre_softmax_shape
,
slf_attn_post_softmax_shape
,
)
slf_attn_output
=
post_process_layer
(
dec_input
,
slf_attn_output
,
...
...
@@ -335,7 +339,9 @@ def decoder_layer(dec_input,
d_value
,
d_model
,
n_head
,
dropout_rate
,
)
dropout_rate
,
src_attn_pre_softmax_shape
,
src_attn_post_softmax_shape
,
)
enc_attn_output
=
post_process_layer
(
slf_attn_output
,
enc_attn_output
,
...
...
@@ -363,7 +369,11 @@ def decoder(dec_input,
d_value
,
d_model
,
d_inner_hid
,
dropout_rate
=
0.
):
dropout_rate
=
0.
,
slf_attn_pre_softmax_shape
=
None
,
slf_attn_post_softmax_shape
=
None
,
src_attn_pre_softmax_shape
=
None
,
src_attn_post_softmax_shape
=
None
):
"""
The decoder is composed of a stack of identical decoder_layer layers.
"""
...
...
@@ -378,7 +388,11 @@ def decoder(dec_input,
d_value
,
d_model
,
d_inner_hid
,
dropout_rate
,
)
dropout_rate
,
slf_attn_pre_softmax_shape
,
slf_attn_post_softmax_shape
,
src_attn_pre_softmax_shape
,
src_attn_post_softmax_shape
,
)
dec_input
=
dec_output
return
dec_output
...
...
@@ -391,7 +405,9 @@ def make_inputs(input_data_names,
is_pos
,
slf_attn_bias_flag
,
src_attn_bias_flag
,
enc_output_flag
=
False
):
enc_output_flag
=
False
,
slf_attn_shape_flag
=
True
,
src_attn_shape_flag
=
True
):
"""
Define the input data layers for the transformer model.
"""
...
...
@@ -429,6 +445,32 @@ def make_inputs(input_data_names,
dtype
=
"float32"
,
append_batch_size
=
False
)
input_layers
+=
[
src_attn_bias
]
if
slf_attn_shape_flag
:
slf_attn_pre_softmax_shape
=
layers
.
data
(
name
=
input_data_names
[
len
(
input_layers
)],
shape
=
[
3
],
dtype
=
"int32"
,
append_batch_size
=
False
)
input_layers
+=
[
slf_attn_pre_softmax_shape
]
slf_attn_post_softmax_shape
=
layers
.
data
(
name
=
input_data_names
[
len
(
input_layers
)],
shape
=
[
3
],
dtype
=
"int32"
,
append_batch_size
=
False
)
input_layers
+=
[
slf_attn_post_softmax_shape
]
if
src_attn_shape_flag
:
src_attn_pre_softmax_shape
=
layers
.
data
(
name
=
input_data_names
[
len
(
input_layers
)],
shape
=
[
3
],
dtype
=
"int32"
,
append_batch_size
=
False
)
input_layers
+=
[
src_attn_pre_softmax_shape
]
src_attn_post_softmax_shape
=
layers
.
data
(
name
=
input_data_names
[
len
(
input_layers
)],
shape
=
[
3
],
dtype
=
"int32"
,
append_batch_size
=
False
)
input_layers
+=
[
src_attn_post_softmax_shape
]
if
enc_output_flag
:
enc_output
=
layers
.
data
(
name
=
input_data_names
[
len
(
input_layers
)],
...
...
@@ -436,6 +478,7 @@ def make_inputs(input_data_names,
dtype
=
"float32"
,
append_batch_size
=
False
)
input_layers
+=
[
enc_output
]
return
input_layers
...
...
@@ -453,8 +496,18 @@ def transformer(
src_pad_idx
,
trg_pad_idx
,
pos_pad_idx
,
):
enc_input_layers
=
make_inputs
(
encoder_input_data_names
,
n_head
,
d_model
,
batch_size
,
max_length
,
True
,
True
,
False
)
enc_input_layers
=
make_inputs
(
encoder_input_data_names
,
n_head
,
d_model
,
batch_size
,
max_length
,
is_pos
=
True
,
slf_attn_bias_flag
=
True
,
src_attn_bias_flag
=
False
,
enc_output_flag
=
False
,
slf_attn_shape_flag
=
True
,
src_attn_shape_flag
=
False
)
enc_output
=
wrap_encoder
(
src_vocab_size
,
...
...
@@ -470,8 +523,18 @@ def transformer(
pos_pad_idx
,
enc_input_layers
,
)
dec_input_layers
=
make_inputs
(
decoder_input_data_names
,
n_head
,
d_model
,
batch_size
,
max_length
,
True
,
True
,
True
)
dec_input_layers
=
make_inputs
(
decoder_input_data_names
,
n_head
,
d_model
,
batch_size
,
max_length
,
is_pos
=
True
,
slf_attn_bias_flag
=
True
,
src_attn_bias_flag
=
True
,
enc_output_flag
=
False
,
slf_attn_shape_flag
=
True
,
src_attn_shape_flag
=
True
)
predict
=
wrap_decoder
(
trg_vocab_size
,
...
...
@@ -490,8 +553,18 @@ def transformer(
# Padding index do not contribute to the total loss. The weights is used to
# cancel padding index in calculating the loss.
gold
,
weights
=
make_inputs
(
label_data_names
,
n_head
,
d_model
,
batch_size
,
max_length
,
False
,
False
,
False
)
gold
,
weights
=
make_inputs
(
label_data_names
,
n_head
,
d_model
,
batch_size
,
max_length
,
is_pos
=
False
,
slf_attn_bias_flag
=
False
,
src_attn_bias_flag
=
False
,
enc_output_flag
=
False
,
slf_attn_shape_flag
=
False
,
src_attn_shape_flag
=
False
)
cost
=
layers
.
cross_entropy
(
input
=
predict
,
label
=
gold
)
weighted_cost
=
cost
*
weights
return
layers
.
reduce_sum
(
weighted_cost
),
predict
...
...
@@ -514,11 +587,22 @@ def wrap_encoder(src_vocab_size,
"""
if
enc_input_layers
is
None
:
# This is used to implement independent encoder program in inference.
src_word
,
src_pos
,
src_slf_attn_bias
=
make_inputs
(
encoder_input_data_names
,
n_head
,
d_model
,
batch_size
,
max_length
,
True
,
True
,
False
)
src_word
,
src_pos
,
src_slf_attn_bias
,
slf_attn_pre_softmax_shape
,
\
slf_attn_post_softmax_shape
=
make_inputs
(
encoder_input_data_names
,
n_head
,
d_model
,
batch_size
,
max_length
,
is_pos
=
True
,
slf_attn_bias_flag
=
True
,
src_attn_bias_flag
=
False
,
enc_output_flag
=
False
,
slf_attn_shape_flag
=
True
,
src_attn_shape_flag
=
False
)
else
:
src_word
,
src_pos
,
src_slf_attn_bias
=
enc_input_layers
src_word
,
src_pos
,
src_slf_attn_bias
,
slf_attn_pre_softmax_shape
,
\
slf_attn_post_softmax_shape
=
enc_input_layers
enc_input
=
prepare_encoder
(
src_word
,
src_pos
,
...
...
@@ -536,7 +620,9 @@ def wrap_encoder(src_vocab_size,
d_value
,
d_model
,
d_inner_hid
,
dropout_rate
,
)
dropout_rate
,
slf_attn_pre_softmax_shape
,
slf_attn_post_softmax_shape
,
)
return
enc_output
...
...
@@ -558,11 +644,26 @@ def wrap_decoder(trg_vocab_size,
"""
if
dec_input_layers
is
None
:
# This is used to implement independent decoder program in inference.
trg_word
,
trg_pos
,
trg_slf_attn_bias
,
trg_src_attn_bias
,
enc_output
=
make_inputs
(
decoder_input_data_names
,
n_head
,
d_model
,
batch_size
,
max_length
,
True
,
True
,
True
,
True
)
trg_word
,
trg_pos
,
trg_slf_attn_bias
,
trg_src_attn_bias
,
\
slf_attn_pre_softmax_shape
,
slf_attn_post_softmax_shape
,
\
src_attn_pre_softmax_shape
,
src_attn_post_softmax_shape
,
\
enc_output
=
make_inputs
(
decoder_input_data_names
,
n_head
,
d_model
,
batch_size
,
max_length
,
is_pos
=
True
,
slf_attn_bias_flag
=
True
,
src_attn_bias_flag
=
True
,
enc_output_flag
=
True
,
slf_attn_shape_flag
=
True
,
src_attn_shape_flag
=
True
)
else
:
trg_word
,
trg_pos
,
trg_slf_attn_bias
,
trg_src_attn_bias
=
dec_input_layers
trg_word
,
trg_pos
,
trg_slf_attn_bias
,
trg_src_attn_bias
,
\
slf_attn_pre_softmax_shape
,
slf_attn_post_softmax_shape
,
\
src_attn_pre_softmax_shape
,
src_attn_post_softmax_shape
=
\
dec_input_layers
dec_input
=
prepare_decoder
(
trg_word
,
...
...
@@ -583,7 +684,11 @@ def wrap_decoder(trg_vocab_size,
d_value
,
d_model
,
d_inner_hid
,
dropout_rate
,
)
dropout_rate
,
slf_attn_pre_softmax_shape
,
slf_attn_post_softmax_shape
,
src_attn_pre_softmax_shape
,
src_attn_post_softmax_shape
,
)
predict
=
layers
.
reshape
(
x
=
layers
.
fc
(
input
=
dec_output
,
...
...
fluid/neural_machine_translation/transformer/train.py
浏览文件 @
218d199d
...
...
@@ -66,13 +66,29 @@ def prepare_batch_input(insts, input_data_names, src_pad_idx, trg_pad_idx,
[
inst
[
1
]
for
inst
in
insts
],
trg_pad_idx
,
n_head
,
is_target
=
True
)
trg_src_attn_bias
=
np
.
tile
(
src_slf_attn_bias
[:,
:,
::
src_max_len
,
:],
[
1
,
1
,
trg_max_len
,
1
]).
astype
(
"float32"
)
src_slf_attn_pre_softmax_shape
=
np
.
array
(
[
-
1
,
src_slf_attn_bias
.
shape
[
-
1
]],
dtype
=
"int32"
)
src_slf_attn_post_softmax_shape
=
np
.
array
(
src_slf_attn_bias
.
shape
,
dtype
=
"int32"
)
trg_slf_attn_pre_softmax_shape
=
np
.
array
(
[
-
1
,
trg_slf_attn_bias
.
shape
[
-
1
]],
dtype
=
"int32"
)
trg_slf_attn_post_softmax_shape
=
np
.
array
(
trg_slf_attn_bias
.
shape
,
dtype
=
"int32"
)
trg_src_attn_pre_softmax_shape
=
np
.
array
(
[
-
1
,
trg_src_attn_bias
.
shape
[
-
1
]],
dtype
=
"int32"
)
trg_src_attn_post_softmax_shape
=
np
.
array
(
trg_src_attn_bias
.
shape
,
dtype
=
"int32"
)
lbl_word
=
pad_batch_data
([
inst
[
2
]
for
inst
in
insts
],
trg_pad_idx
,
n_head
,
False
,
False
,
False
,
False
)
lbl_weight
=
(
lbl_word
!=
trg_pad_idx
).
astype
(
"float32"
).
reshape
([
-
1
,
1
])
input_dict
=
dict
(
zip
(
input_data_names
,
[
src_word
,
src_pos
,
src_slf_attn_bias
,
trg_word
,
trg_pos
,
trg_slf_attn_bias
,
trg_src_attn_bias
,
lbl_word
,
lbl_weight
src_word
,
src_pos
,
src_slf_attn_bias
,
src_slf_attn_pre_softmax_shape
,
src_slf_attn_post_softmax_shape
,
trg_word
,
trg_pos
,
trg_slf_attn_bias
,
trg_src_attn_bias
,
trg_slf_attn_pre_softmax_shape
,
trg_slf_attn_post_softmax_shape
,
trg_src_attn_pre_softmax_shape
,
trg_src_attn_post_softmax_shape
,
lbl_word
,
lbl_weight
]))
return
input_dict
...
...
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