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26e9c4e2
编写于
6月 05, 2017
作者:
D
dzhwinter
浏览文件
操作
浏览文件
下载
电子邮件补丁
差异文件
"add vector alias to make name clear"
上级
b4aa0eca
变更
10
显示空白变更内容
内联
并排
Showing
10 changed file
with
64 addition
and
59 deletion
+64
-59
paddle/optimizer/CMakeLists.txt
paddle/optimizer/CMakeLists.txt
+6
-8
paddle/optimizer/adadelta_optimizer.cc
paddle/optimizer/adadelta_optimizer.cc
+16
-13
paddle/optimizer/adadelta_optimizer.h
paddle/optimizer/adadelta_optimizer.h
+1
-1
paddle/optimizer/adagrad_optimizer.cc
paddle/optimizer/adagrad_optimizer.cc
+13
-13
paddle/optimizer/adagrad_optimizer.h
paddle/optimizer/adagrad_optimizer.h
+1
-1
paddle/optimizer/adam_optimizer.cc
paddle/optimizer/adam_optimizer.cc
+14
-11
paddle/optimizer/adam_optimizer.h
paddle/optimizer/adam_optimizer.h
+1
-1
paddle/optimizer/parameter_optimizer.h
paddle/optimizer/parameter_optimizer.h
+1
-1
paddle/optimizer/sgd_optimizer.h
paddle/optimizer/sgd_optimizer.h
+1
-1
paddle/optimizer/sgd_optmizer.cc
paddle/optimizer/sgd_optmizer.cc
+10
-9
未找到文件。
paddle/optimizer/CMakeLists.txt
浏览文件 @
26e9c4e2
include_directories
(
${
CMAKE_CURRENT_BINARY_DIR
}
)
set
(
OPITMIZER_SRCS
#
adadelta_optimizer.cc
#
adagrad_optimizer.cc
#
adam_optimizer.cc
adadelta_optimizer.cc
adagrad_optimizer.cc
adam_optimizer.cc
optimizer.cc
parameter_optimizer.cc
sgd_optmizer.cc
regularizer.cc
)
set
(
OPITMIZER_Headers
#
adadelta_optimizer.h
#
adagrad_optimizer.h
#
adam_optimizer.h
adadelta_optimizer.h
adagrad_optimizer.h
adam_optimizer.h
lr_policy.h
optimizer.h
parameter_optimizer.h
regularizer.h
sgd_optimizer.h
Tensor.h
)
...
...
paddle/optimizer/adadelta_optimizer.cc
浏览文件 @
26e9c4e2
#include "adadelta_optimizer.h"
#include <algorithm>
#include <cmath>
namespace
paddle
{
namespace
optimizer
{
...
...
@@ -7,28 +8,30 @@ namespace optimizer {
void
AdadeltaOptimizer
::
set_weight
(
Tensor
*
p
)
{
size_t
size
=
p
->
size
();
real
*
gptr
=
new
real
[
size
];
accum_gradient
=
Tensor
(
gptr
,
size
);
accum_gradient
=
new
Tensor
(
gptr
,
size
);
real
*
dptr
=
new
real
[
size
];
accum_delta
=
Tensor
(
dptr
,
size
);
accum_delta
=
new
Tensor
(
dptr
,
size
);
real
*
dptr_current
=
new
real
[
size
];
update_delta
=
Tensor
(
dptr_current
,
size
);
update_delta
=
new
Tensor
(
dptr_current
,
size
);
}
void
AdadeltaOptimizer
::
update
(
const
Tensor
&
gradient
)
{
void
AdadeltaOptimizer
::
update
(
const
Tensor
*
gradient
)
{
num_sample_passed
+=
1
;
double
learning_rate
=
lr_policy
->
get_learning_rate
(
num_sample_passed
);
for
(
size_t
i
=
0
;
i
<
parameter_
->
size
();
++
i
)
{
accum_gradient
[
i
]
=
rho
*
accum_gradient
[
i
]
+
(
1.0
-
rho
)
*
gradient
[
i
]
*
gradient
[
i
];
Tensor
&
param
=
*
parameter_
;
const
Tensor
&
grad
=
*
gradient
;
Tensor
&
accum_g
=
*
accum_gradient
;
Tensor
&
accum_d
=
*
accum_delta
;
Tensor
&
update_d
=
*
update_delta
;
for
(
size_t
i
=
0
;
i
<
param
.
size
();
++
i
)
{
accum_g
[
i
]
=
rho
*
accum_g
[
i
]
+
(
1.0
-
rho
)
*
grad
[
i
]
*
grad
[
i
];
update_d
elta
[
i
]
=
std
::
sqrt
(
accum_delta
[
i
]
+
epsilon
)
/
std
::
sqrt
(
accum_gradient
[
i
]
+
epsilon
)
*
gradient
[
i
];
update_d
[
i
]
=
std
::
sqrt
(
accum_d
[
i
]
+
epsilon
)
/
std
::
sqrt
(
accum_g
[
i
]
+
epsilon
)
*
grad
[
i
];
accum_delta
[
i
]
=
rho
*
accum_delta
[
i
]
+
(
1.0
-
rho
)
*
update_delta
[
i
]
*
update_delta
[
i
];
accum_d
[
i
]
=
rho
*
accum_d
[
i
]
+
(
1.0
-
rho
)
*
update_d
[
i
]
*
update_d
[
i
];
parameter_
[
i
]
-=
learning_rate
*
update_delta
[
i
]
+
learning_rate
*
decay
*
parameter_
[
i
];
param
[
i
]
-=
learning_rate
*
update_d
[
i
]
+
learning_rate
*
decay
*
param
[
i
];
}
}
}
// namespace optimizer
...
...
paddle/optimizer/adadelta_optimizer.h
浏览文件 @
26e9c4e2
...
...
@@ -19,7 +19,7 @@ public:
if
(
accum_delta
)
delete
accum_delta
;
if
(
update_delta
)
delete
update_delta
;
}
void
update
(
const
Tensor
&
gradient
);
void
update
(
const
Tensor
*
gradient
);
void
set_weight
(
Tensor
*
p
);
real
*
get_weight
()
const
;
...
...
paddle/optimizer/adagrad_optimizer.cc
浏览文件 @
26e9c4e2
#include <cmath>
#include "adagrad_optimizer.h"
namespace
paddle
{
namespace
optimizer
{
void
AdagradOptimizer
::
set_weight
(
Tensor
*
p
)
{
size_t
size
=
p
->
width
();
size_t
size
=
p
->
size
();
real
*
gptr
=
new
real
[
size
];
accum_gradient
=
Tensor
(
gptr
,
size
);
real
*
dptr
=
new
real
[
size
];
accum_delta
=
Tensor
(
dtpr
,
size
);
real
*
dptr_current
=
new
real
[
size
];
update_delta
=
Tensor
(
dptr_current
,
size
);
accum_gradient
=
new
Tensor
(
gptr
,
size
);
}
void
AdagradOptimizer
::
update
(
const
Tensor
&
gradient
)
{
void
AdagradOptimizer
::
update
(
const
Tensor
*
gradient
)
{
num_sample_passed
+=
1
;
double
learning_rate
=
lr_policy
->
get_learning_rate
();
for
(
size_t
i
=
0
;
i
<
parameter_
.
size
();
++
i
)
{
accum_gradient
[
i
]
+=
gradient
[
i
]
*
gradient
[
i
];
parameter_
[
i
]
+=
learning_rate
*
(
gradient
[
i
]
/
std
::
sqrt
(
accum_gradient
[
i
]
+
epsilon
)
+
decay
*
parameter_
[
i
]);
double
learning_rate
=
lr_policy
->
get_learning_rate
(
num_sample_passed
);
Tensor
&
param
=
*
parameter_
;
const
Tensor
&
grad
=
*
gradient
;
Tensor
&
accum_g
=
*
accum_gradient
;
for
(
size_t
i
=
0
;
i
<
param
.
size
();
++
i
)
{
accum_g
[
i
]
+=
grad
[
i
]
*
grad
[
i
];
param
[
i
]
+=
learning_rate
*
grad
[
i
]
/
std
::
sqrt
(
accum_g
[
i
]
+
epsilon
)
+
learning_rate
*
decay
*
param
[
i
];
}
}
...
...
paddle/optimizer/adagrad_optimizer.h
浏览文件 @
26e9c4e2
...
...
@@ -13,7 +13,7 @@ public:
~
AdagradOptimizer
()
{
if
(
accum_gradient
)
delete
accum_gradient
;
}
void
update
(
const
Tensor
&
gradient
);
void
update
(
const
Tensor
*
gradient
);
void
set_weight
(
Tensor
*
p
);
real
*
get_weight
()
const
;
...
...
paddle/optimizer/adam_optimizer.cc
浏览文件 @
26e9c4e2
#include "adam_optimizer.h"
#include <cmath>
namespace
paddle
{
namespace
optimizer
{
void
AdamOptimizer
::
set_weight
(
Tensor
*
p
)
{
size_t
size
=
p
->
width
();
size_t
size
=
p
->
size
();
real
*
mptr
=
new
real
[
size
];
momentums_
=
Tensor
(
mptr
,
size
);
momentums_
=
new
Tensor
(
mptr
,
size
);
real
*
vptr
=
new
real
[
size
];
velocitys_
=
Tensor
(
vtp
r
,
size
);
velocitys_
=
new
Tensor
(
vpt
r
,
size
);
}
void
AdamOptimizer
::
update
(
const
Tensor
&
gradient
)
{
void
AdamOptimizer
::
update
(
const
Tensor
*
gradient
)
{
num_sample_passed
+=
1
;
double
learning_rate
=
lr_policy
->
get_learning_rate
(
num_sample_passed
);
double
coef1
=
1.0
-
std
::
pow
(
beta_1
,
num_sample_passed
);
double
coef2
=
1.0
-
std
::
pow
(
beta_2
,
num_sample_passed
);
learning_rate
*=
std
::
sqrt
(
coef2
)
/
coef1
;
for
(
size_t
i
=
0
;
i
<
parameter_
->
size
();
++
i
)
{
momentums_
[
i
]
=
beta_1
*
momentums_
[
i
]
+
(
1.0
-
beta_1
)
*
gradient
[
i
];
velocitys_
[
i
]
=
beta_2
*
velocitys_
[
i
]
+
(
1.0
-
beta_2
)
*
gradient
[
i
]
*
gradient
[
i
];
parameter_
[
i
]
-=
learning_rate
*
(
momentums_
[
i
]
/
std
::
sqrt
(
velocitys_
[
i
]
+
epsilon
)
+
decay
*
parameter_
[
i
]);
Tensor
&
param
=
*
parameter_
;
const
Tensor
&
grad
=
*
gradient
;
Tensor
&
m
=
*
momentums_
;
Tensor
&
v
=
*
velocitys_
;
for
(
size_t
i
=
0
;
i
<
param
.
size
();
++
i
)
{
m
[
i
]
=
beta_1
*
m
[
i
]
+
(
1.0
-
beta_1
)
*
grad
[
i
];
v
[
i
]
=
beta_2
*
v
[
i
]
+
(
1.0
-
beta_2
)
*
grad
[
i
]
*
grad
[
i
];
param
[
i
]
-=
learning_rate
*
(
m
[
i
]
/
std
::
sqrt
(
v
[
i
]
+
epsilon
)
+
decay
*
param
[
i
]);
}
}
}
// namespace optimizer
...
...
paddle/optimizer/adam_optimizer.h
浏览文件 @
26e9c4e2
...
...
@@ -19,7 +19,7 @@ public:
if
(
momentums_
)
delete
momentums_
;
if
(
velocitys_
)
delete
velocitys_
;
}
void
update
(
const
Tensor
&
gradient
);
void
update
(
const
Tensor
*
gradient
);
void
set_weight
(
Tensor
*
p
);
real
*
get_weight
()
const
;
...
...
paddle/optimizer/parameter_optimizer.h
浏览文件 @
26e9c4e2
...
...
@@ -24,7 +24,7 @@ public:
virtual
~
ParameterOptimizer
()
{
delete
parameter_
;
};
static
ParameterOptimizer
*
create
(
const
::
std
::
string
&
config_proto
);
virtual
void
update
(
const
Tensor
&
gradient
)
=
0
;
virtual
void
update
(
const
Tensor
*
gradient
)
=
0
;
virtual
real
*
get_weight
()
const
;
virtual
void
set_weight
(
Tensor
*
parameter
);
...
...
paddle/optimizer/sgd_optimizer.h
浏览文件 @
26e9c4e2
...
...
@@ -15,7 +15,7 @@ public:
SGDOptimizer
(
double
m
,
double
d
,
bool
n
,
BaseLr
*
lr
)
:
ParameterOptimizer
(
lr
),
momentum
(
m
),
decay
(
d
),
nesterov
(
n
)
{}
virtual
~
SGDOptimizer
()
{
delete
momentums_
;
}
void
update
(
const
Tensor
&
gradient
);
void
update
(
const
Tensor
*
gradient
);
void
set_weight
(
Tensor
*
p
);
real
*
get_weight
()
const
;
...
...
paddle/optimizer/sgd_optmizer.cc
浏览文件 @
26e9c4e2
...
...
@@ -13,24 +13,25 @@ void SGDOptimizer::set_weight(Tensor *p) {
}
}
void
SGDOptimizer
::
update
(
const
Tensor
&
gradient
)
{
void
SGDOptimizer
::
update
(
const
Tensor
*
gradient
)
{
num_sample_passed
+=
1
;
double
learning_rate
=
lr_policy
->
get_learning_rate
(
num_sample_passed
);
real
velocity
=
0.0
;
Tensor
&
param
=
*
parameter_
;
for
(
size_t
i
=
0
;
i
<
parameter_
->
size
();
++
i
)
{
const
Tensor
&
grad
=
*
gradient
;
Tensor
&
m
=
*
momentums_
;
for
(
size_t
i
=
0
;
i
<
param
.
size
();
++
i
)
{
if
(
momentum
==
0.0
)
{
velocity
=
-
learning_rate
*
gradient
[
i
]
-
learning_rate
*
decay
*
parameter_
[
i
];
velocity
=
-
learning_rate
*
grad
[
i
]
-
learning_rate
*
decay
*
param
[
i
];
}
else
{
m
omentums_
[
i
]
=
momentum
*
momentums_
[
i
]
-
learning_rate
*
gradient
[
i
]
-
learning_rate
*
decay
*
parameter_
[
i
];
velocity
=
m
omentums_
[
i
];
m
[
i
]
=
momentum
*
m
[
i
]
-
learning_rate
*
grad
[
i
]
-
learning_rate
*
decay
*
param
[
i
];
velocity
=
m
[
i
];
}
if
(
nesterov
)
{
param
eter_
[
i
]
+=
momentum
*
velocity
-
learning_rate
*
gradient
[
i
];
param
[
i
]
+=
momentum
*
velocity
-
learning_rate
*
grad
[
i
];
}
else
{
param
eter_
[
i
]
+=
velocity
;
param
[
i
]
+=
velocity
;
}
}
}
...
...
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