Re-introduce double buffer in UpdatePosition, to fix perf regression in gpu_hist (#6757)

* Revert "gpu_hist performance tweaks (#5707)"

This reverts commit f779980f7e.

* Address reviewer's comment

* Fix build error
This commit is contained in:
Philip Hyunsu Cho
2021-03-18 13:56:10 -07:00
committed by GitHub
parent e2d8a99413
commit 4230dcb614
3 changed files with 63 additions and 21 deletions

View File

@@ -103,13 +103,17 @@ void Reset(int device_idx, common::Span<RowPartitioner::RowIndexT> ridx,
}
RowPartitioner::RowPartitioner(int device_idx, size_t num_rows)
: device_idx_(device_idx), ridx_a_(num_rows), position_a_(num_rows) {
: device_idx_(device_idx), ridx_a_(num_rows), position_a_(num_rows),
ridx_b_(num_rows), position_b_(num_rows) {
dh::safe_cuda(cudaSetDevice(device_idx_));
Reset(device_idx, dh::ToSpan(ridx_a_), dh::ToSpan(position_a_));
ridx_ = dh::DoubleBuffer<RowIndexT>{&ridx_a_, &ridx_b_};
position_ = dh::DoubleBuffer<bst_node_t>{&position_a_, &position_b_};
ridx_segments_.emplace_back(Segment(0, num_rows));
Reset(device_idx, ridx_.CurrentSpan(), position_.CurrentSpan());
left_counts_.resize(256);
thrust::fill(left_counts_.begin(), left_counts_.end(), 0);
streams_.resize(2);
ridx_segments_.emplace_back(Segment(0, num_rows));
for (auto& stream : streams_) {
dh::safe_cuda(cudaStreamCreate(&stream));
}
@@ -129,15 +133,15 @@ common::Span<const RowPartitioner::RowIndexT> RowPartitioner::GetRows(
if (segment.Size() == 0) {
return common::Span<const RowPartitioner::RowIndexT>();
}
return dh::ToSpan(ridx_a_).subspan(segment.begin, segment.Size());
return ridx_.CurrentSpan().subspan(segment.begin, segment.Size());
}
common::Span<const RowPartitioner::RowIndexT> RowPartitioner::GetRows() {
return dh::ToSpan(ridx_a_);
return ridx_.CurrentSpan();
}
common::Span<const bst_node_t> RowPartitioner::GetPosition() {
return dh::ToSpan(position_a_);
return position_.CurrentSpan();
}
std::vector<RowPartitioner::RowIndexT> RowPartitioner::GetRowsHost(
bst_node_t nidx) {
@@ -159,25 +163,23 @@ void RowPartitioner::SortPositionAndCopy(const Segment& segment,
bst_node_t right_nidx,
int64_t* d_left_count,
cudaStream_t stream) {
dh::TemporaryArray<bst_node_t> position_temp(position_a_.size());
dh::TemporaryArray<RowIndexT> ridx_temp(ridx_a_.size());
SortPosition(
// position_in
common::Span<bst_node_t>(position_a_.data().get() + segment.begin,
common::Span<bst_node_t>(position_.Current() + segment.begin,
segment.Size()),
// position_out
common::Span<bst_node_t>(position_temp.data().get() + segment.begin,
common::Span<bst_node_t>(position_.Other() + segment.begin,
segment.Size()),
// row index in
common::Span<RowIndexT>(ridx_a_.data().get() + segment.begin, segment.Size()),
common::Span<RowIndexT>(ridx_.Current() + segment.begin, segment.Size()),
// row index out
common::Span<RowIndexT>(ridx_temp.data().get() + segment.begin, segment.Size()),
common::Span<RowIndexT>(ridx_.Other() + segment.begin, segment.Size()),
left_nidx, right_nidx, d_left_count, stream);
// Copy back key/value
const auto d_position_current = position_a_.data().get() + segment.begin;
const auto d_position_other = position_temp.data().get() + segment.begin;
const auto d_ridx_current = ridx_a_.data().get() + segment.begin;
const auto d_ridx_other = ridx_temp.data().get() + segment.begin;
const auto d_position_current = position_.Current() + segment.begin;
const auto d_position_other = position_.Other() + segment.begin;
const auto d_ridx_current = ridx_.Current() + segment.begin;
const auto d_ridx_other = ridx_.Other() + segment.begin;
dh::LaunchN(device_idx_, segment.Size(), stream, [=] __device__(size_t idx) {
d_position_current[idx] = d_position_other[idx];
d_ridx_current[idx] = d_ridx_other[idx];

View File

@@ -47,7 +47,17 @@ class RowPartitioner {
/*! \brief Range of row index for each node, pointers into ridx below. */
std::vector<Segment> ridx_segments_;
dh::TemporaryArray<RowIndexT> ridx_a_;
dh::TemporaryArray<RowIndexT> ridx_b_;
dh::TemporaryArray<bst_node_t> position_a_;
dh::TemporaryArray<bst_node_t> position_b_;
/*! \brief mapping for node id -> rows.
* This looks like:
* node id | 1 | 2 |
* rows idx | 3, 5, 1 | 13, 31 |
*/
dh::DoubleBuffer<RowIndexT> ridx_;
/*! \brief mapping for row -> node id. */
dh::DoubleBuffer<bst_node_t> position_;
dh::caching_device_vector<int64_t>
left_counts_; // Useful to keep a bunch of zeroed memory for sort position
std::vector<cudaStream_t> streams_;
@@ -100,8 +110,8 @@ class RowPartitioner {
void UpdatePosition(bst_node_t nidx, bst_node_t left_nidx,
bst_node_t right_nidx, UpdatePositionOpT op) {
Segment segment = ridx_segments_.at(nidx); // rows belongs to node nidx
auto d_ridx = dh::ToSpan(ridx_a_);
auto d_position = dh::ToSpan(position_a_);
auto d_ridx = ridx_.CurrentSpan();
auto d_position = position_.CurrentSpan();
if (left_counts_.size() <= nidx) {
left_counts_.resize((nidx * 2) + 1);
thrust::fill(left_counts_.begin(), left_counts_.end(), 0);
@@ -148,9 +158,9 @@ class RowPartitioner {
*/
template <typename FinalisePositionOpT>
void FinalisePosition(FinalisePositionOpT op) {
auto d_position = position_a_.data().get();
const auto d_ridx = ridx_a_.data().get();
dh::LaunchN(device_idx_, position_a_.size(), [=] __device__(size_t idx) {
auto d_position = position_.Current();
const auto d_ridx = ridx_.Current();
dh::LaunchN(device_idx_, position_.Size(), [=] __device__(size_t idx) {
auto position = d_position[idx];
RowIndexT ridx = d_ridx[idx];
bst_node_t new_position = op(ridx, position);