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49e243c9
编写于
9月 10, 2021
作者:
F
Feng Xing
提交者:
GitHub
9月 10, 2021
浏览文件
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电子邮件补丁
差异文件
test=document_fix (#35655)
上级
a4b67f78
变更
2
隐藏空白更改
内联
并排
Showing
2 changed file
with
311 addition
and
493 deletion
+311
-493
paddle/fluid/operators/softmax_with_cross_entropy_op.cu
paddle/fluid/operators/softmax_with_cross_entropy_op.cu
+309
-487
python/paddle/fluid/tests/unittests/parallel_margin_cross_entropy.py
...le/fluid/tests/unittests/parallel_margin_cross_entropy.py
+2
-6
未找到文件。
paddle/fluid/operators/softmax_with_cross_entropy_op.cu
浏览文件 @
49e243c9
...
...
@@ -15,481 +15,44 @@ limitations under the License. */
#include <hipcub/hipcub.hpp>
namespace
cub
=
hipcub
;
#endif
#include "paddle/fluid/operators/amp/fp16_type_traits.h"
#include "paddle/fluid/operators/math/cross_entropy.h"
#include "paddle/fluid/operators/math/math_function.h"
#include "paddle/fluid/operators/softmax_impl.cuh"
#include "paddle/fluid/operators/softmax_with_cross_entropy_op.h"
#include "paddle/fluid/platform/for_range.h"
#ifdef PADDLE_WITH_HIP
#include "paddle/fluid/platform/miopen_helper.h"
#else
#include "paddle/fluid/platform/cudnn_helper.h"
#endif
namespace
paddle
{
namespace
operators
{
using
ScopedTensorDescriptor
=
platform
::
ScopedTensorDescriptor
;
using
DataLayout
=
platform
::
DataLayout
;
using
Tensor
=
framework
::
Tensor
;
// Wrapper of log function. Use log(float32) for float16
template
<
typename
T
>
static
__device__
__forceinline__
T
Log
(
T
x
)
{
using
AccT
=
typename
details
::
MPTypeTrait
<
T
>::
Type
;
AccT
logx
=
std
::
log
(
static_cast
<
AccT
>
(
x
));
return
math
::
TolerableValue
<
T
>
()(
static_cast
<
T
>
(
logx
));
}
// Wrapper of exp function. Use exp(float32) for float16
namespace
{
template
<
typename
T
>
static
__device__
__forceinline__
T
Exp
(
T
x
)
{
using
AccT
=
typename
details
::
MPTypeTrait
<
T
>::
Type
;
AccT
expx
=
std
::
exp
(
static_cast
<
AccT
>
(
x
));
return
math
::
TolerableValue
<
T
>
()(
static_cast
<
T
>
(
expx
));
}
// log2(value)
static
inline
int
Log2Ceil
(
int
value
)
{
int
log2_value
=
0
;
while
((
1
<<
log2_value
)
<
value
)
++
log2_value
;
return
log2_value
;
}
enum
class
SoftmaxMode
{
kSoftmax
,
kLogSoftmax
,
kCrossEntropy
};
/*
Hard label cross entropy.
*/
template
<
typename
T
,
bool
IgnoreIndex
>
__global__
void
CrossEntropyHardLabel
(
T
*
loss
,
const
T
*
softmax
,
const
int64_t
*
labels
,
const
int
n
,
const
int
dim
,
const
int
d
,
const
int
ignore_idx
)
{
int64_t
ids
=
blockIdx
.
x
*
blockDim
.
x
+
threadIdx
.
x
;
int64_t
idx_n
=
ids
/
d
;
int64_t
idx_d
=
ids
%
d
;
// thread ids compute loss[ids] using softmax[idx]
if
(
ids
<
n
*
d
)
{
int64_t
idx
=
idx_n
*
dim
*
d
+
labels
[
ids
]
*
d
+
idx_d
;
if
(
IgnoreIndex
==
true
)
{
// IgnoreIndex is true
if
(
labels
[
ids
]
==
ignore_idx
)
{
loss
[
ids
]
=
static_cast
<
T
>
(
0.0
);
}
else
{
loss
[
ids
]
=
-
Log
(
softmax
[
idx
]);
}
}
else
{
// IgnoreIndex is false
loss
[
ids
]
=
-
Log
(
softmax
[
idx
]);
}
}
}
/*
Hard label cross entropy with exp.
Input: log softmax
Output: loss and exp(input)
*/
template
<
typename
T
,
bool
IgnoreIndex
>
__global__
void
CrossEntropyExpHardLabel
(
T
*
loss
,
T
*
softmax
,
const
int64_t
*
labels
,
const
int
n
,
const
int
dim
,
const
int
d
,
const
int
ignore_idx
)
{
int64_t
idx
=
blockIdx
.
x
*
blockDim
.
x
+
threadIdx
.
x
;
int64_t
idx_n
=
idx
/
(
d
*
dim
);
int64_t
idx_dim
=
(
idx
/
d
)
%
dim
;
int64_t
idx_d
=
idx
%
d
;
int64_t
ids
=
idx_n
*
d
+
idx_d
;
if
(
idx
<
n
*
dim
*
d
)
{
if
(
IgnoreIndex
==
true
)
{
// IgnoreIndex is true
if
(
idx_dim
==
labels
[
ids
])
{
if
(
labels
[
ids
]
==
ignore_idx
)
{
loss
[
ids
]
=
static_cast
<
T
>
(
0.0
);
}
else
{
loss
[
ids
]
=
-
softmax
[
idx
];
}
}
}
else
{
// IgnoreIndex is false
if
(
labels
[
ids
]
>=
0
&&
labels
[
ids
]
<
dim
)
{
if
(
labels
[
ids
]
==
idx_dim
)
{
loss
[
ids
]
=
-
softmax
[
idx
];
}
}
else
{
loss
[
ids
]
=
static_cast
<
T
>
(
0.0
);
}
}
softmax
[
idx
]
=
Exp
(
softmax
[
idx
]);
}
}
/*
Core function of softmax with cross entropy forward
- softmax, SoftmaxMode=kSoftmax
- log softmax, SoftmaxMode=kLogSoftmax
- softmax with cross entropy hard label, SoftmaxMode=kCrossEntropy
The computation includes
- Compute max value: maxvalue_{i} = max_j src_{i,j}
- Compute sum of exp: s_{i} = sum_{j}{e^{src_{i,j} - maxvalue_{i}}}
- Compute: softmax_{i,j} = e^{src_{i,j} - maxvalue_{i}} / s_{i}
- Compute: logsoftmax_{i,j} = src_{i,j} - maxvalue_{i} - log(s_{i})
- Compute: loss_{i} = -logsoftmax[i,label[i]] (Hard label)
This computation results from following formula:
softmax_{i,j} = e^{src_{i,j}} / sum_{j}{e^{src_{i,j}}}
= e^{src_{i,j} - maxvalue_{i}}
/ sum_{j}{e^{src_{i,j} - maxvalue_{i}}}
= e^{src_{i,j} - maxvalue_{i}} / s_{i}
logsoftmax_{i,j} = log(softmax_{i,j})
= src_{i,j} - maxvalue_{i} - log(s_{i})
One warp (32 threads) is used to compute 1 or 2 batch (kBatchSize).
For reduction max (sum), firstly compute max (sum) to one warp, then use
shuffle api to compute max (sum) in one warp.
*/
template
<
typename
T
,
typename
VecT
,
typename
AccT
,
int
Log2Elements
,
SoftmaxMode
mode
,
bool
IgnoreIndex
>
__global__
void
WarpSoftmaxForward
(
T
*
loss
,
T
*
softmax
,
const
T
*
src
,
const
int64_t
*
label
,
const
int
batch_size
,
const
int
stride
,
const
int
element_count
,
const
int
ignore_index
)
{
constexpr
int
kDimCeil
=
1
<<
Log2Elements
;
constexpr
int
kWarpSize
=
(
kDimCeil
<
32
)
?
kDimCeil
:
32
;
constexpr
int
kVSize
=
sizeof
(
VecT
)
/
sizeof
(
T
);
constexpr
int
kIterations
=
kDimCeil
/
kWarpSize
;
constexpr
int
kIterationsV
=
(
kIterations
>=
kVSize
)
?
(
kIterations
/
kVSize
)
:
1
;
constexpr
int
kBatchSize
=
(
kDimCeil
<=
128
)
?
2
:
1
;
int
first_batch
=
(
blockDim
.
y
*
blockIdx
.
x
+
threadIdx
.
y
)
*
kBatchSize
;
// max index to read
int
idx_max_v
[
kBatchSize
];
#pragma unroll
for
(
int
i
=
0
;
i
<
kBatchSize
;
i
++
)
{
int
idx_max
=
((
i
+
first_batch
)
<
batch_size
)
?
element_count
:
0
;
idx_max_v
[
i
]
=
idx_max
/
kVSize
;
}
// read data from global memory
AccT
srcdata
[
kBatchSize
][
kIterationsV
][
kVSize
];
#pragma unroll
for
(
int
i
=
0
;
i
<
kBatchSize
;
++
i
)
{
// read data to srcdata: - KVSize==1, - KVSize>1
#pragma unroll
for
(
int
it
=
0
;
it
<
kIterationsV
;
++
it
)
{
int
src_idx
=
threadIdx
.
x
+
it
*
kWarpSize
;
if
(
kVSize
==
1
)
{
if
(
src_idx
<
idx_max_v
[
i
])
{
srcdata
[
i
][
it
][
0
]
=
static_cast
<
AccT
>
(
src
[(
first_batch
+
i
)
*
stride
+
src_idx
]);
}
else
{
srcdata
[
i
][
it
][
0
]
=
-
std
::
numeric_limits
<
AccT
>::
infinity
();
}
}
else
{
const
VecT
*
src_v
=
reinterpret_cast
<
const
VecT
*>
(
&
src
[(
first_batch
+
i
)
*
stride
]);
if
(
src_idx
<
idx_max_v
[
i
])
{
VecT
srctmp
=
src_v
[
src_idx
];
const
T
*
srcinptr
=
reinterpret_cast
<
const
T
*>
(
&
srctmp
);
#pragma unroll
for
(
int
s
=
0
;
s
<
kVSize
;
s
++
)
{
srcdata
[
i
][
it
][
s
]
=
static_cast
<
AccT
>
(
srcinptr
[
s
]);
}
}
else
{
#pragma unroll
for
(
int
s
=
0
;
s
<
kVSize
;
s
++
)
{
srcdata
[
i
][
it
][
s
]
=
-
std
::
numeric_limits
<
AccT
>::
infinity
();
}
}
}
}
}
// compute max value: maxvalue_{i} = max_j src_{i,j}
AccT
max_value
[
kBatchSize
];
#pragma unroll
for
(
int
i
=
0
;
i
<
kBatchSize
;
++
i
)
{
// it = 0
AccT
valmax
=
srcdata
[
i
][
0
][
0
];
#pragma unroll
for
(
int
s
=
1
;
s
<
kVSize
;
++
s
)
{
valmax
=
(
valmax
>
srcdata
[
i
][
0
][
s
])
?
valmax
:
srcdata
[
i
][
0
][
s
];
}
max_value
[
i
]
=
valmax
;
// it = 1, 2, ...
#pragma unroll
for
(
int
it
=
1
;
it
<
kIterationsV
;
++
it
)
{
AccT
valmax
=
srcdata
[
i
][
it
][
0
];
#pragma unroll
for
(
int
s
=
1
;
s
<
kVSize
;
++
s
)
{
valmax
=
(
valmax
>
srcdata
[
i
][
it
][
s
])
?
valmax
:
srcdata
[
i
][
it
][
s
];
}
max_value
[
i
]
=
(
max_value
[
i
]
>
valmax
)
?
max_value
[
i
]
:
valmax
;
}
}
WarpReduceMax
<
AccT
,
kBatchSize
,
kWarpSize
>
(
max_value
);
// compute sum: s_{i} = sum_{j}{ exp(src_{i,j} - maxvalue_{i} }
AccT
sum
[
kBatchSize
];
#pragma unroll
for
(
int
i
=
0
;
i
<
kBatchSize
;
++
i
)
{
// it = 0
if
(
mode
==
SoftmaxMode
::
kLogSoftmax
||
mode
==
SoftmaxMode
::
kCrossEntropy
)
{
sum
[
i
]
=
std
::
exp
(
srcdata
[
i
][
0
][
0
]
-
max_value
[
i
]);
}
else
{
srcdata
[
i
][
0
][
0
]
=
std
::
exp
(
srcdata
[
i
][
0
][
0
]
-
max_value
[
i
]);
sum
[
i
]
=
srcdata
[
i
][
0
][
0
];
}
#pragma unroll
for
(
int
s
=
1
;
s
<
kVSize
;
++
s
)
{
if
(
mode
==
SoftmaxMode
::
kLogSoftmax
||
mode
==
SoftmaxMode
::
kCrossEntropy
)
{
sum
[
i
]
+=
std
::
exp
(
srcdata
[
i
][
0
][
s
]
-
max_value
[
i
]);
}
else
{
srcdata
[
i
][
0
][
s
]
=
std
::
exp
(
srcdata
[
i
][
0
][
s
]
-
max_value
[
i
]);
sum
[
i
]
+=
srcdata
[
i
][
0
][
s
];
}
}
// it = 1, 2, ...
#pragma unroll
for
(
int
it
=
1
;
it
<
kIterationsV
;
++
it
)
{
#pragma unroll
for
(
int
s
=
0
;
s
<
kVSize
;
++
s
)
{
if
(
mode
==
SoftmaxMode
::
kLogSoftmax
||
mode
==
SoftmaxMode
::
kCrossEntropy
)
{
sum
[
i
]
+=
std
::
exp
(
srcdata
[
i
][
it
][
s
]
-
max_value
[
i
]);
}
else
{
srcdata
[
i
][
it
][
s
]
=
std
::
exp
(
srcdata
[
i
][
it
][
s
]
-
max_value
[
i
]);
sum
[
i
]
+=
srcdata
[
i
][
it
][
s
];
}
}
}
}
WarpReduceSum
<
AccT
,
kBatchSize
,
kWarpSize
>
(
sum
);
// write data
#pragma unroll
for
(
int
i
=
0
;
i
<
kBatchSize
;
++
i
)
{
if
(
mode
==
SoftmaxMode
::
kLogSoftmax
||
mode
==
SoftmaxMode
::
kCrossEntropy
)
{
sum
[
i
]
=
std
::
log
(
sum
[
i
]);
}
#pragma unroll
for
(
int
it
=
0
;
it
<
kIterationsV
;
++
it
)
{
int
idx
=
threadIdx
.
x
+
it
*
kWarpSize
;
if
(
kVSize
==
1
)
{
// kVSize==1
if
(
idx
<
idx_max_v
[
i
])
{
if
(
mode
==
SoftmaxMode
::
kLogSoftmax
)
{
// log softmax
softmax
[(
first_batch
+
i
)
*
stride
+
idx
]
=
srcdata
[
i
][
it
][
0
]
-
max_value
[
i
]
-
sum
[
i
];
// softmax with cross entropy hard label
}
else
if
(
mode
==
SoftmaxMode
::
kCrossEntropy
)
{
AccT
logsoftmax
=
srcdata
[
i
][
it
][
0
]
-
max_value
[
i
]
-
sum
[
i
];
// softmax
softmax
[(
first_batch
+
i
)
*
stride
+
idx
]
=
std
::
exp
(
logsoftmax
);
// label
int
loss_idx
=
(
threadIdx
.
x
+
it
*
kWarpSize
)
*
kVSize
;
if
(
IgnoreIndex
==
true
)
{
// IgnoreIndex is true
if
(
label
[
first_batch
+
i
]
==
loss_idx
)
{
if
(
label
[
first_batch
+
i
]
!=
ignore_index
)
{
loss
[
first_batch
+
i
]
=
-
logsoftmax
;
}
else
{
loss
[
first_batch
+
i
]
=
static_cast
<
T
>
(
0.0
);
}
}
}
else
{
// IgnoreIndex is false
if
(
label
[
first_batch
+
i
]
>=
0
&&
label
[
first_batch
+
i
]
<
element_count
)
{
if
(
label
[
first_batch
+
i
]
==
loss_idx
)
{
loss
[
first_batch
+
i
]
=
-
logsoftmax
;
}
}
else
{
loss
[
first_batch
+
i
]
=
static_cast
<
T
>
(
0.0
);
}
}
}
else
{
// softmax
softmax
[(
first_batch
+
i
)
*
stride
+
idx
]
=
srcdata
[
i
][
it
][
0
]
/
sum
[
i
];
}
}
else
{
break
;
}
}
else
{
// KVSize>1
VecT
*
softmax_v
=
reinterpret_cast
<
VecT
*>
(
&
softmax
[(
first_batch
+
i
)
*
stride
]);
VecT
tmpdata
;
T
*
tmpptr
=
reinterpret_cast
<
T
*>
(
&
tmpdata
);
#pragma unroll
for
(
int
s
=
0
;
s
<
kVSize
;
++
s
)
{
if
(
mode
==
SoftmaxMode
::
kLogSoftmax
)
{
// log softmax
tmpptr
[
s
]
=
srcdata
[
i
][
it
][
s
]
-
max_value
[
i
]
-
sum
[
i
];
// softmax with cross entropy hard label
}
else
if
(
mode
==
SoftmaxMode
::
kCrossEntropy
)
{
AccT
logsoftmax
=
srcdata
[
i
][
it
][
s
]
-
max_value
[
i
]
-
sum
[
i
];
// softmax
tmpptr
[
s
]
=
std
::
exp
(
logsoftmax
);
// label
int
loss_idx
=
(
threadIdx
.
x
+
it
*
kWarpSize
)
*
kVSize
+
s
;
if
(
IgnoreIndex
==
true
)
{
// IgnoreIndex is true
if
(
label
[
first_batch
+
i
]
==
loss_idx
&&
label
[
first_batch
+
i
]
!=
ignore_index
)
{
loss
[
first_batch
+
i
]
=
-
logsoftmax
;
}
}
else
{
// IgnoreIndex is false
if
(
label
[
first_batch
+
i
]
>=
0
&&
label
[
first_batch
+
i
]
<
element_count
)
{
if
(
label
[
first_batch
+
i
]
==
loss_idx
)
{
loss
[
first_batch
+
i
]
=
-
logsoftmax
;
}
}
else
{
loss
[
first_batch
+
i
]
=
static_cast
<
T
>
(
0.0
);
}
}
}
else
{
// softmax
tmpptr
[
s
]
=
srcdata
[
i
][
it
][
s
]
/
sum
[
i
];
}
}
if
(
idx
<
idx_max_v
[
i
])
{
softmax_v
[
idx
]
=
tmpdata
;
}
else
{
break
;
}
}
__global__
void
CrossEntropyGrad
(
T
*
logit_grad
,
const
int64_t
*
labels
,
const
int64_t
n
,
const
int64_t
d
,
const
int64_t
remain
,
const
int
ignore_index
)
{
CUDA_KERNEL_LOOP_TYPE
(
index
,
n
*
remain
,
int64_t
)
{
int64_t
idx_n
=
index
/
remain
;
int64_t
idx_remain
=
index
%
remain
;
int64_t
tmp
=
labels
[
index
];
if
(
ignore_index
!=
tmp
)
{
int64_t
idx
=
idx_n
*
d
+
tmp
*
remain
+
idx_remain
;
logit_grad
[
idx
]
-=
static_cast
<
T
>
(
1.
);
}
}
}
#define SOFTMAX_WARP_FORWARD_CASE(Log2Elements, VecT, AccT) \
case Log2Elements: \
WarpSoftmaxForward<T, VecT, AccT, Log2Elements, mode, \
IgnoreIndex><<<blocks, threads, 0, stream>>>( \
loss, softmax, src, label, batch_size, stride, element_count, \
ignore_index); \
break;
/*
Wrapper of softmax with cross entropy forward hard label.
*/
template
<
typename
T
,
SoftmaxMode
mode
,
bool
IgnoreIndex
>
void
SwitchWarpSoftmaxForward
(
T
*
loss
,
T
*
softmax
,
const
T
*
src
,
const
int64_t
*
label
,
const
int
batch_size
,
const
int
stride
,
const
int
element_count
,
const
int
ignore_index
,
gpuStream_t
stream
)
{
using
AccT
=
typename
details
::
MPTypeTrait
<
T
>::
Type
;
// use 128 threads per block to maximimize gpu utilization
const
int
Log2Elements
=
static_cast
<
int
>
(
Log2Ceil
(
element_count
));
const
int
kDimCeil
=
1
<<
Log2Elements
;
int
kWarpSize
=
(
kDimCeil
<
32
)
?
kDimCeil
:
32
;
int
batches_per_warp
=
(
kDimCeil
<=
128
)
?
2
:
1
;
constexpr
int
threads_per_block
=
128
;
int
warps_per_block
=
(
threads_per_block
/
kWarpSize
);
int
batches_per_block
=
warps_per_block
*
batches_per_warp
;
int
blocks
=
(
batch_size
+
batches_per_block
-
1
)
/
batches_per_block
;
dim3
threads
(
kWarpSize
,
warps_per_block
,
1
);
switch
(
Log2Elements
)
{
SOFTMAX_WARP_FORWARD_CASE
(
0
,
T
,
AccT
);
SOFTMAX_WARP_FORWARD_CASE
(
1
,
T
,
AccT
);
SOFTMAX_WARP_FORWARD_CASE
(
2
,
T
,
AccT
);
SOFTMAX_WARP_FORWARD_CASE
(
3
,
T
,
AccT
);
SOFTMAX_WARP_FORWARD_CASE
(
4
,
T
,
AccT
);
SOFTMAX_WARP_FORWARD_CASE
(
5
,
T
,
AccT
);
SOFTMAX_WARP_FORWARD_CASE
(
6
,
T
,
AccT
);
SOFTMAX_WARP_FORWARD_CASE
(
7
,
T
,
AccT
);
SOFTMAX_WARP_FORWARD_CASE
(
8
,
T
,
AccT
);
SOFTMAX_WARP_FORWARD_CASE
(
9
,
T
,
AccT
);
default:
break
;
}
}
/*
Wrapper of softmax with cross entropy hard label.
- SwitchWarpSoftmaxForward for small size
- cudnn function for large size
*/
template
<
typename
T
,
bool
IgnoreIndex
>
static
void
SoftmaxWithCrossEntropyHardLabel
(
const
platform
::
CUDADeviceContext
&
ctx
,
int
rank
,
int
axis
,
const
T
*
logits_data
,
const
int64_t
*
labels_data
,
T
*
loss_data
,
T
*
softmax_data
,
int
N
,
int
dim
,
int
D
,
const
int
ignore_index
)
{
auto
stream
=
ctx
.
stream
();
constexpr
int
max_dim
=
320
;
if
(
D
==
1
&&
dim
<=
max_dim
)
{
// small size
const
SoftmaxMode
mode
=
SoftmaxMode
::
kCrossEntropy
;
SwitchWarpSoftmaxForward
<
T
,
mode
,
IgnoreIndex
>
(
loss_data
,
softmax_data
,
logits_data
,
labels_data
,
N
,
dim
,
dim
,
ignore_index
,
stream
);
}
else
{
ScopedTensorDescriptor
desc
;
std
::
vector
<
int
>
tensor_dims
=
{
N
,
dim
,
D
,
1
};
DataLayout
layout
=
DataLayout
::
kNCHW
;
#ifdef PADDLE_WITH_HIP
miopenTensorDescriptor_t
descp
=
desc
.
descriptor
<
T
>
(
layout
,
tensor_dims
);
#else
cudnnTensorDescriptor_t
descp
=
desc
.
descriptor
<
T
>
(
layout
,
tensor_dims
);
#endif
auto
handle
=
ctx
.
cudnn_handle
();
#ifdef PADDLE_WITH_HIP
auto
mode
=
axis
==
rank
-
1
?
MIOPEN_SOFTMAX_MODE_INSTANCE
:
MIOPEN_SOFTMAX_MODE_CHANNEL
;
PADDLE_ENFORCE_CUDA_SUCCESS
(
platform
::
dynload
::
miopenSoftmaxForward_V2
(
handle
,
platform
::
CudnnDataType
<
T
>::
kOne
(),
descp
,
logits_data
,
platform
::
CudnnDataType
<
T
>::
kZero
(),
descp
,
softmax_data
,
MIOPEN_SOFTMAX_LOG
,
mode
));
#else
auto
mode
=
axis
==
rank
-
1
?
CUDNN_SOFTMAX_MODE_INSTANCE
:
CUDNN_SOFTMAX_MODE_CHANNEL
;
PADDLE_ENFORCE_CUDA_SUCCESS
(
platform
::
dynload
::
cudnnSoftmaxForward
(
handle
,
CUDNN_SOFTMAX_LOG
,
mode
,
platform
::
CudnnDataType
<
T
>::
kOne
(),
descp
,
logits_data
,
platform
::
CudnnDataType
<
T
>::
kZero
(),
descp
,
softmax_data
));
#endif
int
threads
=
128
;
int
blocks
=
(
N
*
dim
*
D
+
threads
-
1
)
/
threads
;
// compute cross entropy, input is log softmax
CrossEntropyExpHardLabel
<
T
,
IgnoreIndex
><<<
blocks
,
threads
,
0
,
stream
>>>
(
loss_data
,
softmax_data
,
labels_data
,
N
,
dim
,
D
,
ignore_index
);
}
}
/*
Wrapper of softmax with cross entropy grad hard label.
*/
template
<
typename
T
>
__global__
void
SoftmaxWithCrossEntropyGradHardLabel
(
T
*
logits_grad
,
const
T
*
loss_grad
,
const
int64_t
*
labels
,
const
int64_t
n
,
const
int64_t
dim
,
const
int64_t
d
,
const
int
ignore_index
)
{
int64_t
idx
=
blockIdx
.
x
*
blockDim
.
x
+
threadIdx
.
x
;
int64_t
idx_n
=
idx
/
(
d
*
dim
);
int64_t
idx_dim
=
(
idx
/
d
)
%
dim
;
int64_t
idx_d
=
idx
%
d
;
int64_t
ids
=
idx_n
*
d
+
idx_d
;
if
(
idx
<
n
*
dim
*
d
)
{
if
(
labels
[
ids
]
==
ignore_index
)
{
logits_grad
[
idx
]
=
static_cast
<
T
>
(
0.0
);
}
else
if
(
labels
[
ids
]
==
idx_dim
)
{
logits_grad
[
idx
]
=
(
logits_grad
[
idx
]
-
static_cast
<
T
>
(
1.0
))
*
loss_grad
[
ids
];
__global__
void
Scale
(
T
*
logit_grad
,
const
T
*
loss_grad
,
const
int64_t
num
,
const
int64_t
d
,
const
int64_t
remain
,
const
int64_t
*
labels
,
const
int
ignore_index
)
{
CUDA_KERNEL_LOOP_TYPE
(
index
,
num
,
int64_t
)
{
int64_t
idx_n
=
index
/
d
;
int64_t
idx_remain
=
index
%
remain
;
int64_t
idx_lbl
=
idx_n
*
remain
+
idx_remain
;
if
(
labels
[
idx_lbl
]
==
ignore_index
)
{
logit_grad
[
index
]
=
static_cast
<
T
>
(
0.
);
}
else
{
logit
s_grad
[
idx
]
*=
loss_grad
[
ids
];
logit
_grad
[
index
]
*=
loss_grad
[
idx_lbl
];
}
}
}
...
...
@@ -560,6 +123,8 @@ __global__ void ScaleCrossEntropyGradient(T* logit_grad, const T* loss_grad,
}
}
}
// namespace
static
__device__
__forceinline__
platform
::
float16
exp_on_device
(
platform
::
float16
x
)
{
return
::
Eigen
::
numext
::
exp
(
x
);
...
...
@@ -831,6 +396,278 @@ static __global__ void RowReductionForCrossEntropy(const T* logits_data,
if
(
threadIdx
.
x
==
0
)
loss_data
[
blockIdx
.
x
]
=
loss
;
}
template
<
typename
T
>
struct
HardLabelCrossEntropyFunctor
{
public:
HardLabelCrossEntropyFunctor
(
const
int64_t
*
labels
,
T
*
loss
,
const
T
*
logits_data
,
int
d
,
int
axis_dim
)
:
labels_
(
labels
),
loss_
(
loss
),
logits_data_
(
logits_data
),
d_
(
d
),
axis_dim_
(
axis_dim
)
{}
__device__
void
operator
()(
int
idx
)
const
{
// logits view as [n, axis_dim, remain], where d = axis_dim * remain
int
remain
=
d_
/
axis_dim_
;
int
idx_n
=
idx
/
d_
;
int
idx_axis
=
(
idx
%
d_
)
/
remain
;
int
idx_remain
=
idx
%
remain
;
// labels, loss view as [n, remain]
int
idx_lbl
=
idx_n
*
remain
+
idx_remain
;
// It also would ignore labels not in range(class_num).
if
(
idx_axis
!=
labels_
[
idx_lbl
])
{
}
else
{
loss_
[
idx_lbl
]
=
-
log_on_device
(
logits_data_
[
idx
]);
}
}
private:
const
int64_t
*
labels_
;
T
*
loss_
;
const
T
*
logits_data_
;
int
d_
;
int
axis_dim_
;
};
template
<
typename
T
>
struct
HardLabelCrossEntropyFunctorWithIgnoreIdx
{
public:
HardLabelCrossEntropyFunctorWithIgnoreIdx
(
const
int64_t
*
labels
,
T
*
loss
,
const
T
*
logits_data
,
int
d
,
int
axis_dim
,
int
ignore_idx
)
:
labels_
(
labels
),
loss_
(
loss
),
logits_data_
(
logits_data
),
d_
(
d
),
axis_dim_
(
axis_dim
),
ignore_idx_
(
ignore_idx
)
{}
__device__
void
operator
()(
int
idx
)
const
{
// logits view as [n, axis_dim, remain], where d = axis_dim * remain
int
remain
=
d_
/
axis_dim_
;
int
idx_n
=
idx
/
d_
;
int
idx_axis
=
(
idx
%
d_
)
/
remain
;
int
idx_remain
=
idx
%
remain
;
// labels, loss view as [n, remain]
int
idx_lbl
=
idx_n
*
remain
+
idx_remain
;
if
(
idx_axis
==
labels_
[
idx_lbl
]
&&
idx_axis
!=
ignore_idx_
)
{
loss_
[
idx_lbl
]
=
-
log_on_device
(
logits_data_
[
idx
]);
}
}
private:
const
int64_t
*
labels_
;
T
*
loss_
;
const
T
*
logits_data_
;
int
d_
;
int
axis_dim_
;
int
ignore_idx_
;
};
template
<
typename
T
>
static
void
HardLabelCrossEntropy
(
const
platform
::
CUDADeviceContext
&
ctx
,
const
T
*
logits_data
,
const
int64_t
*
labels_data
,
T
*
loss_data
,
int
n
,
int
d
,
int
axis_dim
,
int
ignore_idx
)
{
constexpr
int
kMaxBlockDim
=
512
;
int
block_dim
=
axis_dim
>=
kMaxBlockDim
?
kMaxBlockDim
:
(
1
<<
static_cast
<
int
>
(
std
::
log2
(
axis_dim
)));
int
grid_dim
=
n
*
d
/
axis_dim
;
auto
stream
=
ctx
.
stream
();
#define CALL_HARD_LABEL_CROSS_ENTROPY_FUSED_KERNEL(BlockDim) \
case BlockDim: { \
platform::ForRange<platform::CUDADeviceContext> for_range(ctx, n* d); \
if (ignore_idx >= 0 && ignore_idx < axis_dim) { \
for_range(HardLabelCrossEntropyFunctorWithIgnoreIdx<T>( \
labels_data, loss_data, logits_data, d, axis_dim, ignore_idx)); \
} else { \
for_range(HardLabelCrossEntropyFunctor<T>(labels_data, loss_data, \
logits_data, d, axis_dim)); \
} \
} break
switch
(
block_dim
)
{
CALL_HARD_LABEL_CROSS_ENTROPY_FUSED_KERNEL
(
512
);
CALL_HARD_LABEL_CROSS_ENTROPY_FUSED_KERNEL
(
256
);
CALL_HARD_LABEL_CROSS_ENTROPY_FUSED_KERNEL
(
128
);
CALL_HARD_LABEL_CROSS_ENTROPY_FUSED_KERNEL
(
64
);
CALL_HARD_LABEL_CROSS_ENTROPY_FUSED_KERNEL
(
32
);
CALL_HARD_LABEL_CROSS_ENTROPY_FUSED_KERNEL
(
16
);
CALL_HARD_LABEL_CROSS_ENTROPY_FUSED_KERNEL
(
8
);
CALL_HARD_LABEL_CROSS_ENTROPY_FUSED_KERNEL
(
4
);
CALL_HARD_LABEL_CROSS_ENTROPY_FUSED_KERNEL
(
2
);
default:
PADDLE_THROW
(
platform
::
errors
::
Unavailable
(
"Block Dimension must be 2^n in softmax_with_cross_entropy_op."
));
break
;
}
#undef CALL_HARD_LABEL_SOFTMAX_WITH_CROSS_ENTROPY_FUSED_KERNEL
}
template
<
typename
T
>
struct
HardLabelSoftmaxWithCrossEntropyFunctor
{
public:
HardLabelSoftmaxWithCrossEntropyFunctor
(
const
int64_t
*
labels
,
T
*
loss
,
T
*
log_softmax
,
int64_t
d
,
int
axis_dim
,
int
ignore_idx
)
:
labels_
(
labels
),
loss_
(
loss
),
log_softmax_
(
log_softmax
),
d_
(
d
),
axis_dim_
(
axis_dim
),
ignore_idx_
(
ignore_idx
)
{}
__device__
void
operator
()(
int64_t
idx
)
const
{
// logits view as [n, axis_dim, remain], where d = axis_dim * remain
int64_t
remain
=
d_
/
axis_dim_
;
int64_t
idx_n
=
idx
/
d_
;
int64_t
idx_axis
=
(
idx
%
d_
)
/
remain
;
int64_t
idx_remain
=
idx
%
remain
;
// labels, loss view as [n, remain]
int64_t
idx_lbl
=
idx_n
*
remain
+
idx_remain
;
PADDLE_ENFORCE
(
labels_
[
idx_lbl
]
>=
0
&&
labels_
[
idx_lbl
]
<
d_
||
labels_
[
idx_lbl
]
==
ignore_idx_
,
"The value of label[%ld] expected >= 0 and < %ld, or == %d,"
"but got %ld. Please check input value."
,
idx_lbl
,
d_
,
ignore_idx_
,
labels_
[
idx_lbl
]);
// It also would ignore labels not in range(class_num).
if
(
idx_axis
!=
labels_
[
idx_lbl
])
{
log_softmax_
[
idx
]
=
exp_on_device
(
log_softmax_
[
idx
]);
}
else
{
auto
softmax
=
log_softmax_
[
idx
];
log_softmax_
[
idx
]
=
exp_on_device
(
softmax
);
loss_
[
idx_lbl
]
=
-
softmax
;
}
}
private:
const
int64_t
*
labels_
;
T
*
loss_
;
T
*
log_softmax_
;
int64_t
d_
;
int
axis_dim_
;
int
ignore_idx_
;
};
template
<
typename
T
>
struct
HardLabelSoftmaxWithCrossEntropyFunctorWithIgnoreIdx
{
public:
HardLabelSoftmaxWithCrossEntropyFunctorWithIgnoreIdx
(
const
int64_t
*
labels
,
T
*
loss
,
T
*
log_softmax
,
int64_t
d
,
int
axis_dim
,
int
ignore_idx
)
:
labels_
(
labels
),
loss_
(
loss
),
log_softmax_
(
log_softmax
),
d_
(
d
),
axis_dim_
(
axis_dim
),
ignore_idx_
(
ignore_idx
)
{}
__device__
void
operator
()(
int64_t
idx
)
const
{
// logits view as [n, axis_dim, remain], where d = axis_dim * remain
int64_t
remain
=
d_
/
axis_dim_
;
int64_t
idx_n
=
idx
/
d_
;
int64_t
idx_axis
=
(
idx
%
d_
)
/
remain
;
int64_t
idx_remain
=
idx
%
remain
;
// labels, loss view as [n, remain]
int64_t
idx_lbl
=
idx_n
*
remain
+
idx_remain
;
if
(
idx_axis
!=
labels_
[
idx_lbl
]
||
idx_axis
==
ignore_idx_
)
{
log_softmax_
[
idx
]
=
exp_on_device
(
log_softmax_
[
idx
]);
}
else
{
auto
softmax
=
log_softmax_
[
idx
];
log_softmax_
[
idx
]
=
exp_on_device
(
softmax
);
loss_
[
idx_lbl
]
=
-
softmax
;
}
}
private:
const
int64_t
*
labels_
;
T
*
loss_
;
T
*
log_softmax_
;
int64_t
d_
;
int
axis_dim_
;
int
ignore_idx_
;
};
template
<
typename
T
>
static
void
HardLabelSoftmaxWithCrossEntropy
(
const
platform
::
CUDADeviceContext
&
ctx
,
const
T
*
logits_data
,
const
int64_t
*
labels_data
,
T
*
loss_data
,
T
*
softmax_data
,
int64_t
n
,
int64_t
d
,
int
axis_dim
,
int
ignore_idx
)
{
#ifdef __HIPCC__
// HIP platform will have loss nan if dim size > 256
constexpr
int
kMaxBlockDim
=
256
;
#else
constexpr
int
kMaxBlockDim
=
512
;
#endif
int64_t
block_dim
=
axis_dim
>=
kMaxBlockDim
?
kMaxBlockDim
:
(
1
<<
static_cast
<
int
>
(
std
::
log2
(
axis_dim
)));
int64_t
grid_dim
=
n
*
d
/
axis_dim
;
auto
stream
=
ctx
.
stream
();
#ifdef __HIPCC__
#define CALL_HARD_LABEL_SOFTMAX_WITH_CROSS_ENTROPY_FUSED_KERNEL(BlockDim) \
case BlockDim: { \
hipLaunchKernelGGL(HIP_KERNEL_NAME(RowReductionForMax<T, BlockDim>), \
dim3(grid_dim), dim3(BlockDim), 0, stream, logits_data, \
loss_data, d, axis_dim); \
hipLaunchKernelGGL(HIP_KERNEL_NAME(RowReductionForSum<T, BlockDim>), \
dim3(grid_dim), dim3(BlockDim), 0, stream, logits_data, \
loss_data, softmax_data, d, axis_dim); \
hipLaunchKernelGGL(HIP_KERNEL_NAME(RowReductionForDiff<T, BlockDim>), \
dim3(grid_dim), dim3(BlockDim), 0, stream, logits_data, \
loss_data, softmax_data, d, axis_dim); \
platform::ForRange<platform::CUDADeviceContext> for_range(ctx, n* d); \
if (ignore_idx >= 0 && ignore_idx < axis_dim) { \
for_range(HardLabelSoftmaxWithCrossEntropyFunctorWithIgnoreIdx<T>( \
labels_data, loss_data, softmax_data, d, axis_dim, ignore_idx)); \
} else { \
for_range(HardLabelSoftmaxWithCrossEntropyFunctor<T>( \
labels_data, loss_data, softmax_data, d, axis_dim, ignore_idx)); \
} \
} break
#else
#define CALL_HARD_LABEL_SOFTMAX_WITH_CROSS_ENTROPY_FUSED_KERNEL(BlockDim) \
case BlockDim: { \
RowReductionForMax<T, BlockDim><<<grid_dim, BlockDim, 0, stream>>>( \
logits_data, loss_data, d, axis_dim); \
RowReductionForDiffMaxSum<T, BlockDim, \
true><<<grid_dim, BlockDim, 0, stream>>>( \
logits_data, loss_data, softmax_data, d, axis_dim); \
platform::ForRange<platform::CUDADeviceContext> for_range(ctx, n* d); \
if (ignore_idx >= 0 && ignore_idx < axis_dim) { \
for_range(HardLabelSoftmaxWithCrossEntropyFunctorWithIgnoreIdx<T>( \
labels_data, loss_data, softmax_data, d, axis_dim, ignore_idx)); \
} else { \
for_range(HardLabelSoftmaxWithCrossEntropyFunctor<T>( \
labels_data, loss_data, softmax_data, d, axis_dim, ignore_idx)); \
} \
} break
#endif
switch
(
block_dim
)
{
CALL_HARD_LABEL_SOFTMAX_WITH_CROSS_ENTROPY_FUSED_KERNEL
(
512
);
CALL_HARD_LABEL_SOFTMAX_WITH_CROSS_ENTROPY_FUSED_KERNEL
(
256
);
CALL_HARD_LABEL_SOFTMAX_WITH_CROSS_ENTROPY_FUSED_KERNEL
(
128
);
CALL_HARD_LABEL_SOFTMAX_WITH_CROSS_ENTROPY_FUSED_KERNEL
(
64
);
CALL_HARD_LABEL_SOFTMAX_WITH_CROSS_ENTROPY_FUSED_KERNEL
(
32
);
CALL_HARD_LABEL_SOFTMAX_WITH_CROSS_ENTROPY_FUSED_KERNEL
(
16
);
CALL_HARD_LABEL_SOFTMAX_WITH_CROSS_ENTROPY_FUSED_KERNEL
(
8
);
CALL_HARD_LABEL_SOFTMAX_WITH_CROSS_ENTROPY_FUSED_KERNEL
(
4
);
CALL_HARD_LABEL_SOFTMAX_WITH_CROSS_ENTROPY_FUSED_KERNEL
(
2
);
default:
PADDLE_THROW
(
platform
::
errors
::
Unavailable
(
"Block Dimension must be 2^n in softmax_with_cross_entropy_op."
));
break
;
}
#undef CALL_HARD_LABEL_SOFTMAX_WITH_CROSS_ENTROPY_FUSED_KERNEL
}
template
<
typename
T
>
static
void
SoftmaxWithCrossEntropyFusedKernel
(
const
T
*
logits_data
,
const
T
*
labels_data
,
T
*
softmax_data
,
T
*
loss_data
,
...
...
@@ -946,7 +783,7 @@ class SoftmaxWithCrossEntropyCUDAKernel : public framework::OpKernel<T> {
const
int
rank
=
softmax
->
dims
().
size
();
const
int
axis
=
CanonicalAxis
(
context
.
Attr
<
int
>
(
"axis"
),
rank
);
const
int
axis_dim
=
softmax
->
dims
()[
axis
];
int
axis_dim
=
softmax
->
dims
()[
axis
];
const
int
n
=
SizeToAxis
(
axis
,
softmax
->
dims
());
const
int
d
=
SizeFromAxis
(
axis
,
softmax
->
dims
());
...
...
@@ -989,19 +826,9 @@ class SoftmaxWithCrossEntropyCUDAKernel : public framework::OpKernel<T> {
}
else
{
// HardLabel
auto
*
logits_data
=
softmax
->
data
<
T
>
();
auto
*
labels_data
=
labels
->
data
<
int64_t
>
();
int
threads
=
128
;
int
blocks
=
(
n
*
d
/
axis_dim
+
threads
-
1
)
/
threads
;
if
(
ignore_index
>=
0
&&
ignore_index
<
axis_dim
)
{
CrossEntropyHardLabel
<
T
,
true
><<<
blocks
,
threads
,
0
,
context
.
cuda_device_context
().
stream
()
>>>
(
loss_data
,
logits_data
,
labels_data
,
n
,
axis_dim
,
d
/
axis_dim
,
ignore_index
);
}
else
{
CrossEntropyHardLabel
<
T
,
false
><<<
blocks
,
threads
,
0
,
context
.
cuda_device_context
().
stream
()
>>>
(
loss_data
,
logits_data
,
labels_data
,
n
,
axis_dim
,
d
/
axis_dim
,
ignore_index
);
}
HardLabelCrossEntropy
<
T
>
(
context
.
cuda_device_context
(),
logits_data
,
labels_data
,
loss_data
,
n
,
d
,
axis_dim
,
ignore_index
);
}
// cause of input is softmax
...
...
@@ -1059,17 +886,9 @@ class SoftmaxWithCrossEntropyCUDAKernel : public framework::OpKernel<T> {
}
else
{
auto
*
logits_data
=
logits
->
data
<
T
>
();
auto
*
labels_data
=
labels
->
data
<
int64_t
>
();
if
(
ignore_index
>=
0
&&
ignore_index
<
axis_dim
)
{
SoftmaxWithCrossEntropyHardLabel
<
T
,
true
>
(
context
.
cuda_device_context
(),
rank
,
axis
,
logits_data
,
labels_data
,
loss_data
,
softmax_data
,
n
,
axis_dim
,
d
/
axis_dim
,
ignore_index
);
}
else
{
SoftmaxWithCrossEntropyHardLabel
<
T
,
false
>
(
context
.
cuda_device_context
(),
rank
,
axis
,
logits_data
,
labels_data
,
loss_data
,
softmax_data
,
n
,
axis_dim
,
d
/
axis_dim
,
ignore_index
);
}
HardLabelSoftmaxWithCrossEntropy
<
T
>
(
context
.
cuda_device_context
(),
logits_data
,
labels_data
,
loss_data
,
softmax_data
,
n
,
d
,
axis_dim
,
ignore_index
);
}
}
}
...
...
@@ -1140,11 +959,14 @@ class SoftmaxWithCrossEntropyGradCUDAKernel : public framework::OpKernel<T> {
SoftCrossEntropyGradientKernel
<
T
><<<
grid
,
block
,
0
,
stream
>>>
(
logit_grad_data
,
loss_grad_data
,
label_data
,
n
,
d
,
remain
);
}
else
{
int64_t
grid
=
(
n
*
remain
+
block
-
1
)
/
block
;
const
int64_t
*
label_data
=
labels
->
data
<
int64_t
>
();
int
grid
=
(
n
*
d
+
block
-
1
)
/
block
;
SoftmaxWithCrossEntropyGradHardLabel
<
T
><<<
grid
,
block
,
0
,
stream
>>>
(
logit_grad_data
,
loss_grad_data
,
label_data
,
n
,
d
/
remain
,
remain
,
ignore_index
);
CrossEntropyGrad
<
T
><<<
grid
,
block
,
0
,
stream
>>>
(
logit_grad_data
,
label_data
,
n
,
d
,
remain
,
ignore_index
);
int64_t
num
=
n
*
d
;
grid
=
(
num
+
block
-
1
)
/
block
;
Scale
<
T
><<<
grid
,
block
,
0
,
stream
>>>
(
logit_grad_data
,
loss_grad_data
,
num
,
d
,
remain
,
label_data
,
ignore_index
);
}
}
};
...
...
python/paddle/fluid/tests/unittests/parallel_margin_cross_entropy.py
浏览文件 @
49e243c9
...
...
@@ -142,10 +142,7 @@ class TestParallelMarginSoftmaxCrossEntropyOp(unittest.TestCase):
return_softmax
=
True
)
np
.
testing
.
assert_allclose
(
loss_a
.
numpy
(),
loss_b
.
numpy
(),
rtol
=
1e-5
,
atol
=
1e-7
)
loss_a
.
numpy
(),
loss_b
.
numpy
(),
rtol
=
1e-5
)
integral_prob
=
np
.
zeros
(
(
batch_size
,
num_class
),
dtype
=
dtype
)
...
...
@@ -184,8 +181,7 @@ class TestParallelMarginSoftmaxCrossEntropyOp(unittest.TestCase):
np
.
testing
.
assert_allclose
(
integral_data
.
grad
.
numpy
(),
integral_grad
.
numpy
(),
rtol
=
1e-5
,
atol
=
1e-7
)
rtol
=
1e-5
)
if
__name__
==
'__main__'
:
...
...
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