Test categorical features with column-split gpu quantile (#9595)
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@@ -339,6 +339,31 @@ TEST(GPUQuantile, MultiMerge) {
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});
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}
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TEST(GPUQuantile, MissingColumns) {
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auto dmat = std::unique_ptr<DMatrix>{[=]() {
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std::size_t constexpr kRows = 1000, kCols = 100;
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auto sparsity = 0.5f;
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std::vector<FeatureType> ft(kCols);
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for (size_t i = 0; i < ft.size(); ++i) {
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ft[i] = (i % 2 == 0) ? FeatureType::kNumerical : FeatureType::kCategorical;
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}
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auto dmat = RandomDataGenerator{kRows, kCols, sparsity}
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.Seed(0)
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.Lower(.0f)
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.Upper(1.0f)
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.Type(ft)
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.MaxCategory(13)
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.GenerateDMatrix();
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return dmat->SliceCol(2, 1);
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}()};
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dmat->Info().data_split_mode = DataSplitMode::kRow;
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auto ctx = MakeCUDACtx(0);
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std::size_t constexpr kBins = 64;
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HistogramCuts cuts = common::DeviceSketch(&ctx, dmat.get(), kBins);
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ASSERT_TRUE(cuts.HasCategorical());
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}
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namespace {
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void TestAllReduceBasic() {
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auto const world = collective::GetWorldSize();
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@@ -422,18 +447,14 @@ TEST_F(MGPUQuantileTest, AllReduceBasic) {
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}
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namespace {
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void TestColumnSplitBasic() {
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void TestColumnSplit(DMatrix* dmat) {
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auto const world = collective::GetWorldSize();
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auto const rank = collective::GetRank();
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std::size_t constexpr kRows = 1000, kCols = 100, kBins = 64;
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auto m = std::unique_ptr<DMatrix>{[=]() {
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auto dmat = RandomDataGenerator{kRows, kCols, 0}.GenerateDMatrix();
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return dmat->SliceCol(world, rank);
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}()};
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auto m = std::unique_ptr<DMatrix>{dmat->SliceCol(world, rank)};
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// Generate cuts for distributed environment.
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auto ctx = MakeCUDACtx(GPUIDX);
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std::size_t constexpr kBins = 64;
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HistogramCuts distributed_cuts = common::DeviceSketch(&ctx, m.get(), kBins);
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// Generate cuts for single node environment
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@@ -466,7 +487,26 @@ void TestColumnSplitBasic() {
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} // anonymous namespace
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TEST_F(MGPUQuantileTest, ColumnSplitBasic) {
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DoTest(TestColumnSplitBasic);
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std::size_t constexpr kRows = 1000, kCols = 100;
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auto dmat = RandomDataGenerator{kRows, kCols, 0}.GenerateDMatrix();
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DoTest(TestColumnSplit, dmat.get());
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}
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TEST_F(MGPUQuantileTest, ColumnSplitCategorical) {
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std::size_t constexpr kRows = 1000, kCols = 100;
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auto sparsity = 0.5f;
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std::vector<FeatureType> ft(kCols);
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for (size_t i = 0; i < ft.size(); ++i) {
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ft[i] = (i % 2 == 0) ? FeatureType::kNumerical : FeatureType::kCategorical;
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}
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auto dmat = RandomDataGenerator{kRows, kCols, sparsity}
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.Seed(0)
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.Lower(.0f)
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.Upper(1.0f)
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.Type(ft)
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.MaxCategory(13)
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.GenerateDMatrix();
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DoTest(TestColumnSplit, dmat.get());
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}
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namespace {
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