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325b2caf
编写于
3月 03, 2017
作者:
T
Tao Luo
提交者:
GitHub
3月 03, 2017
浏览文件
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差异文件
Merge pull request #1506 from luotao1/mnist
mnist api v2
上级
736434c9
e69a1cbd
变更
2
隐藏空白更改
内联
并排
Showing
2 changed file
with
89 addition
and
23 deletion
+89
-23
demo/mnist/api_train_v2.py
demo/mnist/api_train_v2.py
+87
-22
python/paddle/v2/event.py
python/paddle/v2/event.py
+2
-1
未找到文件。
demo/mnist/api_train_v2.py
浏览文件 @
325b2caf
import
paddle.v2
as
paddle
def
softmax_regression
(
img
):
predict
=
paddle
.
layer
.
fc
(
input
=
img
,
size
=
10
,
act
=
paddle
.
activation
.
Softmax
())
return
predict
def
multilayer_perceptron
(
img
):
# The first fully-connected layer
hidden1
=
paddle
.
layer
.
fc
(
input
=
img
,
size
=
128
,
act
=
paddle
.
activation
.
Relu
())
# The second fully-connected layer and the according activation function
hidden2
=
paddle
.
layer
.
fc
(
input
=
hidden1
,
size
=
64
,
act
=
paddle
.
activation
.
Relu
())
# The thrid fully-connected layer, note that the hidden size should be 10,
# which is the number of unique digits
predict
=
paddle
.
layer
.
fc
(
input
=
hidden2
,
size
=
10
,
act
=
paddle
.
activation
.
Softmax
())
return
predict
def
convolutional_neural_network
(
img
):
# first conv layer
conv_pool_1
=
paddle
.
networks
.
simple_img_conv_pool
(
input
=
img
,
filter_size
=
5
,
num_filters
=
20
,
num_channel
=
1
,
pool_size
=
2
,
pool_stride
=
2
,
act
=
paddle
.
activation
.
Tanh
())
# second conv layer
conv_pool_2
=
paddle
.
networks
.
simple_img_conv_pool
(
input
=
conv_pool_1
,
filter_size
=
5
,
num_filters
=
50
,
num_channel
=
20
,
pool_size
=
2
,
pool_stride
=
2
,
act
=
paddle
.
activation
.
Tanh
())
# The first fully-connected layer
fc1
=
paddle
.
layer
.
fc
(
input
=
conv_pool_2
,
size
=
128
,
act
=
paddle
.
activation
.
Tanh
())
# The softmax layer, note that the hidden size should be 10,
# which is the number of unique digits
predict
=
paddle
.
layer
.
fc
(
input
=
fc1
,
size
=
10
,
act
=
paddle
.
activation
.
Softmax
())
return
predict
def
main
():
paddle
.
init
(
use_gpu
=
False
,
trainer_count
=
1
)
...
...
@@ -9,46 +62,58 @@ def main():
name
=
'pixel'
,
type
=
paddle
.
data_type
.
dense_vector
(
784
))
label
=
paddle
.
layer
.
data
(
name
=
'label'
,
type
=
paddle
.
data_type
.
integer_value
(
10
))
hidden1
=
paddle
.
layer
.
fc
(
input
=
images
,
size
=
200
)
hidden2
=
paddle
.
layer
.
fc
(
input
=
hidden1
,
size
=
200
)
inference
=
paddle
.
layer
.
fc
(
input
=
hidden2
,
size
=
10
,
act
=
paddle
.
activation
.
Softmax
())
cost
=
paddle
.
layer
.
classification_cost
(
input
=
inference
,
label
=
label
)
# Here we can build the prediction network in different ways. Please
# choose one by uncomment corresponding line.
predict
=
softmax_regression
(
images
)
#predict = multilayer_perceptron(images)
#predict = convolutional_neural_network(images)
cost
=
paddle
.
layer
.
classification_cost
(
input
=
predict
,
label
=
label
)
parameters
=
paddle
.
parameters
.
create
(
cost
)
adam_optimizer
=
paddle
.
optimizer
.
Adam
(
learning_rate
=
0.01
)
optimizer
=
paddle
.
optimizer
.
Momentum
(
learning_rate
=
0.1
/
128.0
,
momentum
=
0.9
,
regularization
=
paddle
.
optimizer
.
L2Regularization
(
rate
=
0.0005
*
128
))
trainer
=
paddle
.
trainer
.
SGD
(
cost
=
cost
,
parameters
=
parameters
,
update_equation
=
adam_optimizer
)
update_equation
=
optimizer
)
lists
=
[]
def
event_handler
(
event
):
if
isinstance
(
event
,
paddle
.
event
.
EndIteration
):
if
event
.
batch_id
%
1000
==
0
:
result
=
trainer
.
test
(
reader
=
paddle
.
reader
.
batched
(
paddle
.
dataset
.
mnist
.
test
(),
batch_size
=
256
))
print
"Pass %d, Batch %d, Cost %.2f, %s
\n
"
\
"Testing cost %.2f metrics %s"
%
(
event
.
pass_id
,
event
.
batch_id
,
event
.
cost
,
event
.
metrics
,
result
.
cost
,
result
.
metrics
)
else
:
pass
if
event
.
batch_id
%
100
==
0
:
print
"Pass %d, Batch %d, Cost %f, %s"
%
(
event
.
pass_id
,
event
.
batch_id
,
event
.
cost
,
event
.
metrics
)
if
isinstance
(
event
,
paddle
.
event
.
EndPass
):
result
=
trainer
.
test
(
reader
=
paddle
.
reader
.
batched
(
paddle
.
dataset
.
mnist
.
test
(),
batch_size
=
128
))
print
"Test with Pass %d, Cost %f, %s
\n
"
%
(
event
.
pass_id
,
result
.
cost
,
result
.
metrics
)
lists
.
append
((
event
.
pass_id
,
result
.
cost
,
result
.
metrics
[
'classification_error_evaluator'
]))
trainer
.
train
(
reader
=
paddle
.
reader
.
batched
(
paddle
.
reader
.
shuffle
(
paddle
.
dataset
.
mnist
.
train
(),
buf_size
=
8192
),
batch_size
=
32
),
event_handler
=
event_handler
)
batch_size
=
128
),
event_handler
=
event_handler
,
num_passes
=
100
)
# find the best pass
best
=
sorted
(
lists
,
key
=
lambda
list
:
float
(
list
[
1
]))[
0
]
print
'Best pass is %s, testing Avgcost is %s'
%
(
best
[
0
],
best
[
1
])
print
'The classification accuracy is %.2f%%'
%
(
100
-
float
(
best
[
2
])
*
100
)
# output is a softmax layer. It returns probabilities.
# Shape should be (100, 10)
probs
=
paddle
.
infer
(
output
=
inference
,
output
=
predict
,
parameters
=
parameters
,
reader
=
paddle
.
reader
.
batched
(
paddle
.
reader
.
firstn
(
...
...
python/paddle/v2/event.py
浏览文件 @
325b2caf
...
...
@@ -53,8 +53,9 @@ class EndPass(WithMetric):
Event On One Pass Training Complete.
"""
def
__init__
(
self
,
pass_id
,
evaluator
):
def
__init__
(
self
,
pass_id
,
cost
,
evaluator
):
self
.
pass_id
=
pass_id
self
.
cost
=
cost
WithMetric
.
__init__
(
self
,
evaluator
)
...
...
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