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Avoid thread block with sparse data. (#7255)
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trivialfis committed Sep 25, 2021
1 parent ca17f8a commit d8a549e
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Showing 6 changed files with 97 additions and 16 deletions.
45 changes: 30 additions & 15 deletions src/predictor/cpu_predictor.cc
Expand Up @@ -253,17 +253,32 @@ class CPUPredictor : public Predictor {
gbm::GBTreeModel const &model, int32_t tree_begin,
int32_t tree_end) const {
const int threads = omp_get_max_threads();
constexpr double kDensityThresh = .5;
size_t total = std::max(p_fmat->Info().num_row_ * p_fmat->Info().num_col_,
static_cast<uint64_t>(1));
double density = static_cast<double>(p_fmat->Info().num_nonzero_) /
static_cast<double>(total);
bool blocked = density > kDensityThresh;

std::vector<RegTree::FVec> feat_vecs;
InitThreadTemp(threads * kBlockOfRowsSize,
InitThreadTemp(threads * (blocked ? kBlockOfRowsSize : 1),
model.learner_model_param->num_feature, &feat_vecs);
for (auto const& batch : p_fmat->GetBatches<SparsePage>()) {
for (auto const &batch : p_fmat->GetBatches<SparsePage>()) {
CHECK_EQ(out_preds->size(),
p_fmat->Info().num_row_ * model.learner_model_param->num_output_group);
p_fmat->Info().num_row_ *
model.learner_model_param->num_output_group);
size_t constexpr kUnroll = 8;
PredictBatchByBlockOfRowsKernel<SparsePageView<kUnroll>,
kBlockOfRowsSize>(SparsePageView<kUnroll>{&batch},
out_preds, model, tree_begin,
tree_end, &feat_vecs);
if (blocked) {
PredictBatchByBlockOfRowsKernel<SparsePageView<kUnroll>,
kBlockOfRowsSize>(
SparsePageView<kUnroll>{&batch}, out_preds, model, tree_begin,
tree_end, &feat_vecs);

} else {
PredictBatchByBlockOfRowsKernel<SparsePageView<kUnroll>, 1>(
SparsePageView<kUnroll>{&batch}, out_preds, model, tree_begin,
tree_end, &feat_vecs);
}
}
}

Expand Down Expand Up @@ -316,7 +331,7 @@ class CPUPredictor : public Predictor {
tree_end);
}

template <typename Adapter>
template <typename Adapter, size_t kBlockSize>
void DispatchedInplacePredict(dmlc::any const &x, std::shared_ptr<DMatrix> p_m,
const gbm::GBTreeModel &model, float missing,
PredictionCacheEntry *out_preds,
Expand All @@ -336,9 +351,9 @@ class CPUPredictor : public Predictor {
std::vector<Entry> workspace(m->NumColumns() * 8 * threads);
auto &predictions = out_preds->predictions.HostVector();
std::vector<RegTree::FVec> thread_temp;
InitThreadTemp(threads * kBlockOfRowsSize,
model.learner_model_param->num_feature, &thread_temp);
PredictBatchByBlockOfRowsKernel<AdapterView<Adapter>, kBlockOfRowsSize>(
InitThreadTemp(threads * kBlockSize, model.learner_model_param->num_feature,
&thread_temp);
PredictBatchByBlockOfRowsKernel<AdapterView<Adapter>, kBlockSize>(
AdapterView<Adapter>(m.get(), missing, common::Span<Entry>{workspace}),
&predictions, model, tree_begin, tree_end, &thread_temp);
}
Expand All @@ -348,16 +363,16 @@ class CPUPredictor : public Predictor {
PredictionCacheEntry *out_preds, uint32_t tree_begin,
unsigned tree_end) const override {
if (x.type() == typeid(std::shared_ptr<data::DenseAdapter>)) {
this->DispatchedInplacePredict<data::DenseAdapter>(
this->DispatchedInplacePredict<data::DenseAdapter, kBlockOfRowsSize>(
x, p_m, model, missing, out_preds, tree_begin, tree_end);
} else if (x.type() == typeid(std::shared_ptr<data::CSRAdapter>)) {
this->DispatchedInplacePredict<data::CSRAdapter>(
this->DispatchedInplacePredict<data::CSRAdapter, 1>(
x, p_m, model, missing, out_preds, tree_begin, tree_end);
} else if (x.type() == typeid(std::shared_ptr<data::ArrayAdapter>)) {
this->DispatchedInplacePredict<data::ArrayAdapter> (
this->DispatchedInplacePredict<data::ArrayAdapter, kBlockOfRowsSize> (
x, p_m, model, missing, out_preds, tree_begin, tree_end);
} else if (x.type() == typeid(std::shared_ptr<data::CSRArrayAdapter>)) {
this->DispatchedInplacePredict<data::CSRArrayAdapter> (
this->DispatchedInplacePredict<data::CSRArrayAdapter, 1> (
x, p_m, model, missing, out_preds, tree_begin, tree_end);
} else {
return false;
Expand Down
2 changes: 1 addition & 1 deletion tests/cpp/common/test_hist_util.h
Expand Up @@ -247,7 +247,7 @@ void TestCategoricalSketch(size_t n, size_t num_categories, int32_t num_bins,
ASSERT_TRUE(is_unique);

x.resize(n_uniques);
for (size_t i = 0; i < n_uniques; ++i) {
for (decltype(n_uniques) i = 0; i < n_uniques; ++i) {
ASSERT_EQ(x[i], values[i]);
}
}
Expand Down
5 changes: 5 additions & 0 deletions tests/cpp/predictor/test_cpu_predictor.cc
Expand Up @@ -247,4 +247,9 @@ TEST(CpuPredictor, UpdatePredictionCache) {
TEST(CpuPredictor, LesserFeatures) {
TestPredictionWithLesserFeatures("cpu_predictor");
}

TEST(CpuPredictor, Sparse) {
TestSparsePrediction(0.2, "cpu_predictor");
TestSparsePrediction(0.8, "cpu_predictor");
}
} // namespace xgboost
5 changes: 5 additions & 0 deletions tests/cpp/predictor/test_gpu_predictor.cu
Expand Up @@ -256,5 +256,10 @@ TEST(GPUPredictor, PredictLeafBasic) {
ASSERT_EQ(v, 0);
}
}

TEST(GPUPredictor, Sparse) {
TestSparsePrediction(0.2, "gpu_predictor");
TestSparsePrediction(0.8, "gpu_predictor");
}
} // namespace predictor
} // namespace xgboost
54 changes: 54 additions & 0 deletions tests/cpp/predictor/test_predictor.cc
Expand Up @@ -11,6 +11,7 @@
#include "test_predictor.h"

#include "../helpers.h"
#include "../../../src/data/adapter.h"
#include "../../../src/common/io.h"
#include "../../../src/common/categorical.h"
#include "../../../src/common/bitfield.h"
Expand Down Expand Up @@ -355,4 +356,57 @@ void TestIterationRange(std::string name) {
ASSERT_EQ(h_sliced, h_range);
}
}

void TestSparsePrediction(float sparsity, std::string predictor) {
size_t constexpr kRows = 512, kCols = 128;
auto Xy = RandomDataGenerator(kRows, kCols, sparsity).GenerateDMatrix(true);
std::unique_ptr<Learner> learner{Learner::Create({Xy})};
learner->Configure();
for (size_t i = 0; i < 4; ++i) {
learner->UpdateOneIter(i, Xy);
}

HostDeviceVector<float> sparse_predt;

Json model{Object{}};
learner->SaveModel(&model);

learner.reset(Learner::Create({Xy}));
learner->LoadModel(model);

learner->SetParam("predictor", predictor);
learner->Predict(Xy, false, &sparse_predt, 0, 0);

std::vector<float> with_nan(kRows * kCols, std::numeric_limits<float>::quiet_NaN());
for (auto const& page : Xy->GetBatches<SparsePage>()) {
auto batch = page.GetView();
for (size_t i = 0; i < batch.Size(); ++i) {
auto row = batch[i];
for (auto e : row) {
with_nan[i * kCols + e.index] = e.fvalue;
}
}
}

learner->SetParam("predictor", "cpu_predictor");
// Xcode_12.4 doesn't compile with `std::make_shared`.
auto dense = std::shared_ptr<data::DenseAdapter>(
new data::DenseAdapter(with_nan.data(), kRows, kCols));
HostDeviceVector<float> *p_dense_predt;
learner->InplacePredict(dmlc::any(dense), nullptr, PredictionType::kValue,
std::numeric_limits<float>::quiet_NaN(), &p_dense_predt,
0, 0);

auto const& dense_predt = *p_dense_predt;
if (predictor == "cpu_predictor") {
ASSERT_EQ(dense_predt.HostVector(), sparse_predt.HostVector());
} else {
auto const &h_dense = dense_predt.HostVector();
auto const &h_sparse = sparse_predt.HostVector();
ASSERT_EQ(h_dense.size(), h_sparse.size());
for (size_t i = 0; i < h_dense.size(); ++i) {
ASSERT_FLOAT_EQ(h_dense[i], h_sparse[i]);
}
}
}
} // namespace xgboost
2 changes: 2 additions & 0 deletions tests/cpp/predictor/test_predictor.h
Expand Up @@ -70,6 +70,8 @@ void TestCategoricalPrediction(std::string name);
void TestCategoricalPredictLeaf(StringView name);

void TestIterationRange(std::string name);

void TestSparsePrediction(float sparsity, std::string predictor);
} // namespace xgboost

#endif // XGBOOST_TEST_PREDICTOR_H_

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