@@ -1,5 +1,8 @@
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#include <gtest/gtest.h>
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#include <dmlc/filesystem.h>
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#include <xgboost/generic_parameters.h>
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#include "xgboost/learner.h"
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#include "../helpers.h"
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#include "../../../src/gbm/gbtree.h"
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@@ -43,4 +46,67 @@ TEST(GBTree, SelectTreeMethod) {
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ASSERT_EQ(tparam.predictor, "gpu_predictor");
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#endif
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}
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#ifdef XGBOOST_USE_CUDA
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TEST(GBTree, ChoosePredictor) {
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size_t constexpr kNumRows = 17;
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size_t constexpr kCols = 15;
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auto pp_mat = CreateDMatrix(kNumRows, kCols, 0);
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auto& p_mat = *pp_mat;
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std::vector<bst_float> labels (kNumRows);
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for (size_t i = 0; i < kNumRows; ++i) {
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labels[i] = i % 2;
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}
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p_mat->Info().SetInfo("label", labels.data(), DataType::kFloat32, kNumRows);
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std::vector<std::shared_ptr<xgboost::DMatrix>> mat = {p_mat};
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std::string n_feat = std::to_string(kCols);
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Args args {{"tree_method", "approx"}, {"num_feature", n_feat}};
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GenericParameter generic_param;
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generic_param.InitAllowUnknown(Args{{"gpu_id", "0"}});
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auto& data = (*(p_mat->GetBatches<SparsePage>().begin())).data;
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auto learner = std::unique_ptr<Learner>(Learner::Create(mat));
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learner->SetParams(Args{{"tree_method", "gpu_hist"}});
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for (size_t i = 0; i < 4; ++i) {
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learner->UpdateOneIter(i, p_mat.get());
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}
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ASSERT_TRUE(data.HostCanWrite());
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dmlc::TemporaryDirectory tempdir;
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const std::string fname = tempdir.path + "/model_para.bst";
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|
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{
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std::unique_ptr<dmlc::Stream> fo(dmlc::Stream::Create(fname.c_str(), "w"));
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learner->Save(fo.get());
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}
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|
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// a new learner
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learner = std::unique_ptr<Learner>(Learner::Create(mat));
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{
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std::unique_ptr<dmlc::Stream> fi(dmlc::Stream::Create(fname.c_str(), "r"));
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learner->Load(fi.get());
|
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}
|
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learner->SetParams(Args{{"tree_method", "gpu_hist"}, {"gpu_id", "0"}});
|
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for (size_t i = 0; i < 4; ++i) {
|
||||
learner->UpdateOneIter(i, p_mat.get());
|
||||
}
|
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ASSERT_TRUE(data.HostCanWrite());
|
||||
|
||||
// pull data into device.
|
||||
data = HostDeviceVector<Entry>(data.HostVector(), 0);
|
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data.DeviceSpan();
|
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ASSERT_FALSE(data.HostCanWrite());
|
||||
|
||||
// another new learner
|
||||
learner = std::unique_ptr<Learner>(Learner::Create(mat));
|
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learner->SetParams(Args{{"tree_method", "gpu_hist"}, {"gpu_id", "0"}});
|
||||
for (size_t i = 0; i < 4; ++i) {
|
||||
learner->UpdateOneIter(i, p_mat.get());
|
||||
}
|
||||
// data is not pulled back into host
|
||||
ASSERT_FALSE(data.HostCanWrite());
|
||||
}
|
||||
#endif
|
||||
} // namespace xgboost
|
||||
|
||||
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