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tianlh
LightGBM-DCU
Commits
83dc54e3
Commit
83dc54e3
authored
Feb 27, 2017
by
Guolin Ke
Browse files
add time tags (#322)
parent
a05e8955
Changes
2
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2 changed files
with
131 additions
and
1 deletion
+131
-1
src/boosting/gbdt.cpp
src/boosting/gbdt.cpp
+68
-0
src/treelearner/serial_tree_learner.cpp
src/treelearner/serial_tree_learner.cpp
+63
-1
No files found.
src/boosting/gbdt.cpp
View file @
83dc54e3
...
@@ -17,6 +17,16 @@
...
@@ -17,6 +17,16 @@
namespace
LightGBM
{
namespace
LightGBM
{
#ifdef TIMETAG
std
::
chrono
::
duration
<
double
,
std
::
milli
>
boosting_time
;
std
::
chrono
::
duration
<
double
,
std
::
milli
>
train_score_time
;
std
::
chrono
::
duration
<
double
,
std
::
milli
>
valid_score_time
;
std
::
chrono
::
duration
<
double
,
std
::
milli
>
metric_time
;
std
::
chrono
::
duration
<
double
,
std
::
milli
>
bagging_time
;
std
::
chrono
::
duration
<
double
,
std
::
milli
>
sub_gradient_time
;
std
::
chrono
::
duration
<
double
,
std
::
milli
>
tree_time
;
#endif // TIMETAG
GBDT
::
GBDT
()
GBDT
::
GBDT
()
:
iter_
(
0
),
:
iter_
(
0
),
train_data_
(
nullptr
),
train_data_
(
nullptr
),
...
@@ -36,6 +46,15 @@ GBDT::GBDT()
...
@@ -36,6 +46,15 @@ GBDT::GBDT()
}
}
GBDT
::~
GBDT
()
{
GBDT
::~
GBDT
()
{
#ifdef TIMETAG
Log
::
Info
(
"GBDT::boosting costs %f"
,
boosting_time
*
1e-3
);
Log
::
Info
(
"GBDT::train_score costs %f"
,
train_score_time
*
1e-3
);
Log
::
Info
(
"GBDT::valid_score costs %f"
,
valid_score_time
*
1e-3
);
Log
::
Info
(
"GBDT::metric costs %f"
,
metric_time
*
1e-3
);
Log
::
Info
(
"GBDT::bagging costs %f"
,
bagging_time
*
1e-3
);
Log
::
Info
(
"GBDT::sub_gradient costs %f"
,
sub_gradient_time
*
1e-3
);
Log
::
Info
(
"GBDT::tree costs %f"
,
tree_time
*
1e-3
);
#endif
}
}
void
GBDT
::
Init
(
const
BoostingConfig
*
config
,
const
Dataset
*
train_data
,
const
ObjectiveFunction
*
object_function
,
void
GBDT
::
Init
(
const
BoostingConfig
*
config
,
const
Dataset
*
train_data
,
const
ObjectiveFunction
*
object_function
,
...
@@ -258,22 +277,43 @@ void GBDT::Bagging(int iter) {
...
@@ -258,22 +277,43 @@ void GBDT::Bagging(int iter) {
}
}
void
GBDT
::
UpdateScoreOutOfBag
(
const
Tree
*
tree
,
const
int
curr_class
)
{
void
GBDT
::
UpdateScoreOutOfBag
(
const
Tree
*
tree
,
const
int
curr_class
)
{
#ifdef TIMETAG
auto
start_time
=
std
::
chrono
::
steady_clock
::
now
();
#endif
// we need to predict out-of-bag socres of data for boosting
// we need to predict out-of-bag socres of data for boosting
if
(
num_data_
-
bag_data_cnt_
>
0
&&
!
is_use_subset_
)
{
if
(
num_data_
-
bag_data_cnt_
>
0
&&
!
is_use_subset_
)
{
train_score_updater_
->
AddScore
(
tree
,
bag_data_indices_
.
data
()
+
bag_data_cnt_
,
num_data_
-
bag_data_cnt_
,
curr_class
);
train_score_updater_
->
AddScore
(
tree
,
bag_data_indices_
.
data
()
+
bag_data_cnt_
,
num_data_
-
bag_data_cnt_
,
curr_class
);
}
}
#ifdef TIMETAG
train_score_time
+=
std
::
chrono
::
steady_clock
::
now
()
-
start_time
;
#endif
}
}
bool
GBDT
::
TrainOneIter
(
const
score_t
*
gradient
,
const
score_t
*
hessian
,
bool
is_eval
)
{
bool
GBDT
::
TrainOneIter
(
const
score_t
*
gradient
,
const
score_t
*
hessian
,
bool
is_eval
)
{
// boosting first
// boosting first
if
(
gradient
==
nullptr
||
hessian
==
nullptr
)
{
if
(
gradient
==
nullptr
||
hessian
==
nullptr
)
{
#ifdef TIMETAG
auto
start_time
=
std
::
chrono
::
steady_clock
::
now
();
#endif
Boosting
();
Boosting
();
gradient
=
gradients_
.
data
();
gradient
=
gradients_
.
data
();
hessian
=
hessians_
.
data
();
hessian
=
hessians_
.
data
();
#ifdef TIMETAG
boosting_time
+=
std
::
chrono
::
steady_clock
::
now
()
-
start_time
;
#endif
}
}
#ifdef TIMETAG
auto
start_time
=
std
::
chrono
::
steady_clock
::
now
();
#endif
// bagging logic
// bagging logic
Bagging
(
iter_
);
Bagging
(
iter_
);
#ifdef TIMETAG
bagging_time
+=
std
::
chrono
::
steady_clock
::
now
()
-
start_time
;
#endif
if
(
is_use_subset_
&&
bag_data_cnt_
<
num_data_
)
{
if
(
is_use_subset_
&&
bag_data_cnt_
<
num_data_
)
{
#ifdef TIMETAG
start_time
=
std
::
chrono
::
steady_clock
::
now
();
#endif
if
(
gradients_
.
empty
())
{
if
(
gradients_
.
empty
())
{
size_t
total_size
=
static_cast
<
size_t
>
(
num_data_
)
*
num_class_
;
size_t
total_size
=
static_cast
<
size_t
>
(
num_data_
)
*
num_class_
;
gradients_
.
resize
(
total_size
);
gradients_
.
resize
(
total_size
);
...
@@ -282,6 +322,7 @@ bool GBDT::TrainOneIter(const score_t* gradient, const score_t* hessian, bool is
...
@@ -282,6 +322,7 @@ bool GBDT::TrainOneIter(const score_t* gradient, const score_t* hessian, bool is
// get sub gradients
// get sub gradients
for
(
int
curr_class
=
0
;
curr_class
<
num_class_
;
++
curr_class
)
{
for
(
int
curr_class
=
0
;
curr_class
<
num_class_
;
++
curr_class
)
{
auto
bias
=
curr_class
*
num_data_
;
auto
bias
=
curr_class
*
num_data_
;
// cannot multi-threding
for
(
int
i
=
0
;
i
<
bag_data_cnt_
;
++
i
)
{
for
(
int
i
=
0
;
i
<
bag_data_cnt_
;
++
i
)
{
gradients_
[
bias
+
i
]
=
gradient
[
bias
+
bag_data_indices_
[
i
]];
gradients_
[
bias
+
i
]
=
gradient
[
bias
+
bag_data_indices_
[
i
]];
hessians_
[
bias
+
i
]
=
hessian
[
bias
+
bag_data_indices_
[
i
]];
hessians_
[
bias
+
i
]
=
hessian
[
bias
+
bag_data_indices_
[
i
]];
...
@@ -289,10 +330,19 @@ bool GBDT::TrainOneIter(const score_t* gradient, const score_t* hessian, bool is
...
@@ -289,10 +330,19 @@ bool GBDT::TrainOneIter(const score_t* gradient, const score_t* hessian, bool is
}
}
gradient
=
gradients_
.
data
();
gradient
=
gradients_
.
data
();
hessian
=
hessians_
.
data
();
hessian
=
hessians_
.
data
();
#ifdef TIMETAG
sub_gradient_time
+=
std
::
chrono
::
steady_clock
::
now
()
-
start_time
;
#endif
}
}
for
(
int
curr_class
=
0
;
curr_class
<
num_class_
;
++
curr_class
)
{
for
(
int
curr_class
=
0
;
curr_class
<
num_class_
;
++
curr_class
)
{
#ifdef TIMETAG
start_time
=
std
::
chrono
::
steady_clock
::
now
();
#endif
// train a new tree
// train a new tree
std
::
unique_ptr
<
Tree
>
new_tree
(
tree_learner_
->
Train
(
gradient
+
curr_class
*
num_data_
,
hessian
+
curr_class
*
num_data_
));
std
::
unique_ptr
<
Tree
>
new_tree
(
tree_learner_
->
Train
(
gradient
+
curr_class
*
num_data_
,
hessian
+
curr_class
*
num_data_
));
#ifdef TIMETAG
tree_time
+=
std
::
chrono
::
steady_clock
::
now
()
-
start_time
;
#endif
// if cannot learn a new tree, then stop
// if cannot learn a new tree, then stop
if
(
new_tree
->
num_leaves
()
<=
1
)
{
if
(
new_tree
->
num_leaves
()
<=
1
)
{
Log
::
Info
(
"Stopped training because there are no more leafs that meet the split requirements."
);
Log
::
Info
(
"Stopped training because there are no more leafs that meet the split requirements."
);
...
@@ -338,8 +388,14 @@ void GBDT::RollbackOneIter() {
...
@@ -338,8 +388,14 @@ void GBDT::RollbackOneIter() {
bool
GBDT
::
EvalAndCheckEarlyStopping
()
{
bool
GBDT
::
EvalAndCheckEarlyStopping
()
{
bool
is_met_early_stopping
=
false
;
bool
is_met_early_stopping
=
false
;
#ifdef TIMETAG
auto
start_time
=
std
::
chrono
::
steady_clock
::
now
();
#endif
// print message for metric
// print message for metric
auto
best_msg
=
OutputMetric
(
iter_
);
auto
best_msg
=
OutputMetric
(
iter_
);
#ifdef TIMETAG
metric_time
+=
std
::
chrono
::
steady_clock
::
now
()
-
start_time
;
#endif
is_met_early_stopping
=
!
best_msg
.
empty
();
is_met_early_stopping
=
!
best_msg
.
empty
();
if
(
is_met_early_stopping
)
{
if
(
is_met_early_stopping
)
{
Log
::
Info
(
"Early stopping at iteration %d, the best iteration round is %d"
,
Log
::
Info
(
"Early stopping at iteration %d, the best iteration round is %d"
,
...
@@ -354,16 +410,28 @@ bool GBDT::EvalAndCheckEarlyStopping() {
...
@@ -354,16 +410,28 @@ bool GBDT::EvalAndCheckEarlyStopping() {
}
}
void
GBDT
::
UpdateScore
(
const
Tree
*
tree
,
const
int
curr_class
)
{
void
GBDT
::
UpdateScore
(
const
Tree
*
tree
,
const
int
curr_class
)
{
#ifdef TIMETAG
auto
start_time
=
std
::
chrono
::
steady_clock
::
now
();
#endif
// update training score
// update training score
if
(
!
is_use_subset_
)
{
if
(
!
is_use_subset_
)
{
train_score_updater_
->
AddScore
(
tree_learner_
.
get
(),
curr_class
);
train_score_updater_
->
AddScore
(
tree_learner_
.
get
(),
curr_class
);
}
else
{
}
else
{
train_score_updater_
->
AddScore
(
tree
,
curr_class
);
train_score_updater_
->
AddScore
(
tree
,
curr_class
);
}
}
#ifdef TIMETAG
train_score_time
+=
std
::
chrono
::
steady_clock
::
now
()
-
start_time
;
#endif
#ifdef TIMETAG
start_time
=
std
::
chrono
::
steady_clock
::
now
();
#endif
// update validation score
// update validation score
for
(
auto
&
score_updater
:
valid_score_updater_
)
{
for
(
auto
&
score_updater
:
valid_score_updater_
)
{
score_updater
->
AddScore
(
tree
,
curr_class
);
score_updater
->
AddScore
(
tree
,
curr_class
);
}
}
#ifdef TIMETAG
valid_score_time
+=
std
::
chrono
::
steady_clock
::
now
()
-
start_time
;
#endif
}
}
std
::
string
GBDT
::
OutputMetric
(
int
iter
)
{
std
::
string
GBDT
::
OutputMetric
(
int
iter
)
{
...
...
src/treelearner/serial_tree_learner.cpp
View file @
83dc54e3
...
@@ -7,6 +7,15 @@
...
@@ -7,6 +7,15 @@
namespace
LightGBM
{
namespace
LightGBM
{
#ifdef TIMETAG
std
::
chrono
::
duration
<
double
,
std
::
milli
>
init_train_time
;
std
::
chrono
::
duration
<
double
,
std
::
milli
>
init_split_time
;
std
::
chrono
::
duration
<
double
,
std
::
milli
>
hist_time
;
std
::
chrono
::
duration
<
double
,
std
::
milli
>
find_split_time
;
std
::
chrono
::
duration
<
double
,
std
::
milli
>
split_time
;
std
::
chrono
::
duration
<
double
,
std
::
milli
>
ordered_bin_time
;
#endif // TIMETAG
SerialTreeLearner
::
SerialTreeLearner
(
const
TreeConfig
*
tree_config
)
SerialTreeLearner
::
SerialTreeLearner
(
const
TreeConfig
*
tree_config
)
:
tree_config_
(
tree_config
){
:
tree_config_
(
tree_config
){
random_
=
Random
(
tree_config_
->
feature_fraction_seed
);
random_
=
Random
(
tree_config_
->
feature_fraction_seed
);
...
@@ -18,6 +27,14 @@ SerialTreeLearner::SerialTreeLearner(const TreeConfig* tree_config)
...
@@ -18,6 +27,14 @@ SerialTreeLearner::SerialTreeLearner(const TreeConfig* tree_config)
}
}
SerialTreeLearner
::~
SerialTreeLearner
()
{
SerialTreeLearner
::~
SerialTreeLearner
()
{
#ifdef TIMETAG
Log
::
Info
(
"SerialTreeLearner::init_train costs %f"
,
init_train_time
*
1e-3
);
Log
::
Info
(
"SerialTreeLearner::init_split costs %f"
,
init_split_time
*
1e-3
);
Log
::
Info
(
"SerialTreeLearner::hist_build costs %f"
,
hist_time
*
1e-3
);
Log
::
Info
(
"SerialTreeLearner::find_split costs %f"
,
find_split_time
*
1e-3
);
Log
::
Info
(
"SerialTreeLearner::split costs %f"
,
split_time
*
1e-3
);
Log
::
Info
(
"SerialTreeLearner::ordered_bin costs %f"
,
ordered_bin_time
*
1e-3
);
#endif
}
}
void
SerialTreeLearner
::
Init
(
const
Dataset
*
train_data
)
{
void
SerialTreeLearner
::
Init
(
const
Dataset
*
train_data
)
{
...
@@ -151,8 +168,17 @@ void SerialTreeLearner::ResetConfig(const TreeConfig* tree_config) {
...
@@ -151,8 +168,17 @@ void SerialTreeLearner::ResetConfig(const TreeConfig* tree_config) {
Tree
*
SerialTreeLearner
::
Train
(
const
score_t
*
gradients
,
const
score_t
*
hessians
)
{
Tree
*
SerialTreeLearner
::
Train
(
const
score_t
*
gradients
,
const
score_t
*
hessians
)
{
gradients_
=
gradients
;
gradients_
=
gradients
;
hessians_
=
hessians
;
hessians_
=
hessians
;
#ifdef TIMETAG
auto
start_time
=
std
::
chrono
::
steady_clock
::
now
();
#endif
// some initial works before training
// some initial works before training
BeforeTrain
();
BeforeTrain
();
#ifdef TIMETAG
init_train_time
+=
std
::
chrono
::
steady_clock
::
now
()
-
start_time
;
#endif
auto
tree
=
std
::
unique_ptr
<
Tree
>
(
new
Tree
(
tree_config_
->
num_leaves
));
auto
tree
=
std
::
unique_ptr
<
Tree
>
(
new
Tree
(
tree_config_
->
num_leaves
));
// save pointer to last trained tree
// save pointer to last trained tree
last_trained_tree_
=
tree
.
get
();
last_trained_tree_
=
tree
.
get
();
...
@@ -162,8 +188,14 @@ Tree* SerialTreeLearner::Train(const score_t* gradients, const score_t *hessians
...
@@ -162,8 +188,14 @@ Tree* SerialTreeLearner::Train(const score_t* gradients, const score_t *hessians
// only root leaf can be splitted on first time
// only root leaf can be splitted on first time
int
right_leaf
=
-
1
;
int
right_leaf
=
-
1
;
for
(
int
split
=
0
;
split
<
tree_config_
->
num_leaves
-
1
;
++
split
)
{
for
(
int
split
=
0
;
split
<
tree_config_
->
num_leaves
-
1
;
++
split
)
{
#ifdef TIMETAG
start_time
=
std
::
chrono
::
steady_clock
::
now
();
#endif
// some initial works before finding best split
// some initial works before finding best split
if
(
BeforeFindBestSplit
(
left_leaf
,
right_leaf
))
{
if
(
BeforeFindBestSplit
(
left_leaf
,
right_leaf
))
{
#ifdef TIMETAG
init_split_time
+=
std
::
chrono
::
steady_clock
::
now
()
-
start_time
;
#endif
// find best threshold for every feature
// find best threshold for every feature
FindBestThresholds
();
FindBestThresholds
();
// find best split from all features
// find best split from all features
...
@@ -178,8 +210,14 @@ Tree* SerialTreeLearner::Train(const score_t* gradients, const score_t *hessians
...
@@ -178,8 +210,14 @@ Tree* SerialTreeLearner::Train(const score_t* gradients, const score_t *hessians
Log
::
Info
(
"No further splits with positive gain, best gain: %f"
,
best_leaf_SplitInfo
.
gain
);
Log
::
Info
(
"No further splits with positive gain, best gain: %f"
,
best_leaf_SplitInfo
.
gain
);
break
;
break
;
}
}
#ifdef TIMETAG
start_time
=
std
::
chrono
::
steady_clock
::
now
();
#endif
// split tree with best leaf
// split tree with best leaf
Split
(
tree
.
get
(),
best_leaf
,
&
left_leaf
,
&
right_leaf
);
Split
(
tree
.
get
(),
best_leaf
,
&
left_leaf
,
&
right_leaf
);
#ifdef TIMETAG
split_time
+=
std
::
chrono
::
steady_clock
::
now
()
-
start_time
;
#endif
cur_depth
=
std
::
max
(
cur_depth
,
tree
->
leaf_depth
(
left_leaf
));
cur_depth
=
std
::
max
(
cur_depth
,
tree
->
leaf_depth
(
left_leaf
));
}
}
Log
::
Info
(
"Trained a tree with leaves=%d and max_depth=%d"
,
tree
->
num_leaves
(),
cur_depth
);
Log
::
Info
(
"Trained a tree with leaves=%d and max_depth=%d"
,
tree
->
num_leaves
(),
cur_depth
);
...
@@ -230,6 +268,9 @@ void SerialTreeLearner::BeforeTrain() {
...
@@ -230,6 +268,9 @@ void SerialTreeLearner::BeforeTrain() {
// if has ordered bin, need to initialize the ordered bin
// if has ordered bin, need to initialize the ordered bin
if
(
has_ordered_bin_
)
{
if
(
has_ordered_bin_
)
{
#ifdef TIMETAG
auto
start_time
=
std
::
chrono
::
steady_clock
::
now
();
#endif
if
(
data_partition_
->
leaf_count
(
0
)
==
num_data_
)
{
if
(
data_partition_
->
leaf_count
(
0
)
==
num_data_
)
{
// use all data, pass nullptr
// use all data, pass nullptr
#pragma omp parallel for schedule(static)
#pragma omp parallel for schedule(static)
...
@@ -257,6 +298,9 @@ void SerialTreeLearner::BeforeTrain() {
...
@@ -257,6 +298,9 @@ void SerialTreeLearner::BeforeTrain() {
is_data_in_leaf_
[
indices
[
i
]]
=
0
;
is_data_in_leaf_
[
indices
[
i
]]
=
0
;
}
}
}
}
#ifdef TIMETAG
ordered_bin_time
+=
std
::
chrono
::
steady_clock
::
now
()
-
start_time
;
#endif
}
}
}
}
...
@@ -300,6 +344,9 @@ bool SerialTreeLearner::BeforeFindBestSplit(int left_leaf, int right_leaf) {
...
@@ -300,6 +344,9 @@ bool SerialTreeLearner::BeforeFindBestSplit(int left_leaf, int right_leaf) {
}
}
// split for the ordered bin
// split for the ordered bin
if
(
has_ordered_bin_
&&
right_leaf
>=
0
)
{
if
(
has_ordered_bin_
&&
right_leaf
>=
0
)
{
#ifdef TIMETAG
auto
start_time
=
std
::
chrono
::
steady_clock
::
now
();
#endif
// mark data that at left-leaf
// mark data that at left-leaf
const
data_size_t
*
indices
=
data_partition_
->
indices
();
const
data_size_t
*
indices
=
data_partition_
->
indices
();
const
auto
left_cnt
=
data_partition_
->
leaf_count
(
left_leaf
);
const
auto
left_cnt
=
data_partition_
->
leaf_count
(
left_leaf
);
...
@@ -317,7 +364,7 @@ bool SerialTreeLearner::BeforeFindBestSplit(int left_leaf, int right_leaf) {
...
@@ -317,7 +364,7 @@ bool SerialTreeLearner::BeforeFindBestSplit(int left_leaf, int right_leaf) {
is_data_in_leaf_
[
indices
[
i
]]
=
1
;
is_data_in_leaf_
[
indices
[
i
]]
=
1
;
}
}
// split the ordered bin
// split the ordered bin
#pragma omp parallel for schedule(
guided
)
#pragma omp parallel for schedule(
static
)
for
(
int
i
=
0
;
i
<
static_cast
<
int
>
(
order_bin_indices_
.
size
());
++
i
)
{
for
(
int
i
=
0
;
i
<
static_cast
<
int
>
(
order_bin_indices_
.
size
());
++
i
)
{
ordered_bins_
[
order_bin_indices_
[
i
]]
->
Split
(
left_leaf
,
right_leaf
,
is_data_in_leaf_
.
data
(),
mark
);
ordered_bins_
[
order_bin_indices_
[
i
]]
->
Split
(
left_leaf
,
right_leaf
,
is_data_in_leaf_
.
data
(),
mark
);
}
}
...
@@ -325,11 +372,17 @@ bool SerialTreeLearner::BeforeFindBestSplit(int left_leaf, int right_leaf) {
...
@@ -325,11 +372,17 @@ bool SerialTreeLearner::BeforeFindBestSplit(int left_leaf, int right_leaf) {
for
(
data_size_t
i
=
begin
;
i
<
end
;
++
i
)
{
for
(
data_size_t
i
=
begin
;
i
<
end
;
++
i
)
{
is_data_in_leaf_
[
indices
[
i
]]
=
0
;
is_data_in_leaf_
[
indices
[
i
]]
=
0
;
}
}
#ifdef TIMETAG
ordered_bin_time
+=
std
::
chrono
::
steady_clock
::
now
()
-
start_time
;
#endif
}
}
return
true
;
return
true
;
}
}
void
SerialTreeLearner
::
FindBestThresholds
()
{
void
SerialTreeLearner
::
FindBestThresholds
()
{
#ifdef TIMETAG
auto
start_time
=
std
::
chrono
::
steady_clock
::
now
();
#endif
std
::
vector
<
int8_t
>
is_feature_used
(
num_features_
,
0
);
std
::
vector
<
int8_t
>
is_feature_used
(
num_features_
,
0
);
#pragma omp parallel for schedule(static)
#pragma omp parallel for schedule(static)
for
(
int
feature_index
=
0
;
feature_index
<
num_features_
;
++
feature_index
)
{
for
(
int
feature_index
=
0
;
feature_index
<
num_features_
;
++
feature_index
)
{
...
@@ -364,6 +417,12 @@ void SerialTreeLearner::FindBestThresholds() {
...
@@ -364,6 +417,12 @@ void SerialTreeLearner::FindBestThresholds() {
ordered_gradients_
.
data
(),
ordered_hessians_
.
data
(),
ordered_gradients_
.
data
(),
ordered_hessians_
.
data
(),
ptr_larger_leaf_hist_data
);
ptr_larger_leaf_hist_data
);
}
}
#ifdef TIMETAG
hist_time
+=
std
::
chrono
::
steady_clock
::
now
()
-
start_time
;
#endif
#ifdef TIMETAG
start_time
=
std
::
chrono
::
steady_clock
::
now
();
#endif
std
::
vector
<
SplitInfo
>
smaller_best
(
num_threads_
);
std
::
vector
<
SplitInfo
>
smaller_best
(
num_threads_
);
std
::
vector
<
SplitInfo
>
larger_best
(
num_threads_
);
std
::
vector
<
SplitInfo
>
larger_best
(
num_threads_
);
// find splits
// find splits
...
@@ -416,6 +475,9 @@ void SerialTreeLearner::FindBestThresholds() {
...
@@ -416,6 +475,9 @@ void SerialTreeLearner::FindBestThresholds() {
auto
larger_best_idx
=
ArrayArgs
<
SplitInfo
>::
ArgMax
(
larger_best
);
auto
larger_best_idx
=
ArrayArgs
<
SplitInfo
>::
ArgMax
(
larger_best
);
best_split_per_leaf_
[
leaf
]
=
larger_best
[
larger_best_idx
];
best_split_per_leaf_
[
leaf
]
=
larger_best
[
larger_best_idx
];
}
}
#ifdef TIMETAG
find_split_time
+=
std
::
chrono
::
steady_clock
::
now
()
-
start_time
;
#endif
}
}
void
SerialTreeLearner
::
FindBestSplitsForLeaves
()
{
void
SerialTreeLearner
::
FindBestSplitsForLeaves
()
{
...
...
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