Remove internal use of gpu_id. (#9568)
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@@ -34,7 +34,7 @@ TEST(GPUPredictor, Basic) {
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auto dmat = RandomDataGenerator(n_row, n_col, 0).GenerateDMatrix();
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auto ctx = MakeCUDACtx(0);
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LearnerModelParam mparam{MakeMP(n_col, .5, 1, ctx.Ordinal())};
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LearnerModelParam mparam{MakeMP(n_col, .5, 1, ctx.Device())};
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gbm::GBTreeModel model = CreateTestModel(&mparam, &ctx);
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// Test predict batch
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@@ -70,7 +70,7 @@ void VerifyBasicColumnSplit(std::array<std::vector<float>, 32> const& expected_r
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auto dmat = RandomDataGenerator(n_row, n_col, 0).GenerateDMatrix();
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std::unique_ptr<DMatrix> sliced{dmat->SliceCol(world_size, rank)};
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LearnerModelParam mparam{MakeMP(n_col, .5, 1, ctx.Ordinal())};
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LearnerModelParam mparam{MakeMP(n_col, .5, 1, ctx.Device())};
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gbm::GBTreeModel model = CreateTestModel(&mparam, &ctx);
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// Test predict batch
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@@ -98,7 +98,7 @@ TEST_F(MGPUPredictorTest, BasicColumnSplit) {
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size_t n_row = i, n_col = i;
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auto dmat = RandomDataGenerator(n_row, n_col, 0).GenerateDMatrix();
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LearnerModelParam mparam{MakeMP(n_col, .5, 1, ctx.Ordinal())};
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LearnerModelParam mparam{MakeMP(n_col, .5, 1, ctx.Device())};
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gbm::GBTreeModel model = CreateTestModel(&mparam, &ctx);
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// Test predict batch
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@@ -119,8 +119,10 @@ TEST(GPUPredictor, EllpackBasic) {
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auto ctx = MakeCUDACtx(0);
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for (size_t bins = 2; bins < 258; bins += 16) {
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size_t rows = bins * 16;
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auto p_m =
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RandomDataGenerator{rows, kCols, 0.0}.Bins(bins).Device(0).GenerateDeviceDMatrix(false);
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auto p_m = RandomDataGenerator{rows, kCols, 0.0}
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.Bins(bins)
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.Device(DeviceOrd::CUDA(0))
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.GenerateDeviceDMatrix(false);
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ASSERT_FALSE(p_m->PageExists<SparsePage>());
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TestPredictionFromGradientIndex<EllpackPage>(&ctx, rows, kCols, p_m);
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TestPredictionFromGradientIndex<EllpackPage>(&ctx, bins, kCols, p_m);
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@@ -132,11 +134,11 @@ TEST(GPUPredictor, EllpackTraining) {
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size_t constexpr kRows{128}, kCols{16}, kBins{64};
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auto p_ellpack = RandomDataGenerator{kRows, kCols, 0.0}
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.Bins(kBins)
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.Device(ctx.Ordinal())
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.Device(ctx.Device())
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.GenerateDeviceDMatrix(false);
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HostDeviceVector<float> storage(kRows * kCols);
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auto columnar =
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RandomDataGenerator{kRows, kCols, 0.0}.Device(ctx.Ordinal()).GenerateArrayInterface(&storage);
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RandomDataGenerator{kRows, kCols, 0.0}.Device(ctx.Device()).GenerateArrayInterface(&storage);
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auto adapter = data::CupyAdapter(columnar);
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std::shared_ptr<DMatrix> p_full{
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DMatrix::Create(&adapter, std::numeric_limits<float>::quiet_NaN(), 1)};
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@@ -151,7 +153,7 @@ TEST(GPUPredictor, ExternalMemoryTest) {
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const int n_classes = 3;
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Context ctx = MakeCUDACtx(0);
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LearnerModelParam mparam{MakeMP(5, .5, n_classes, ctx.Ordinal())};
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LearnerModelParam mparam{MakeMP(5, .5, n_classes, ctx.Device())};
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gbm::GBTreeModel model = CreateTestModel(&mparam, &ctx, n_classes);
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std::vector<std::unique_ptr<DMatrix>> dmats;
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@@ -162,7 +164,7 @@ TEST(GPUPredictor, ExternalMemoryTest) {
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for (const auto& dmat: dmats) {
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dmat->Info().base_margin_ = decltype(dmat->Info().base_margin_){
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{dmat->Info().num_row_, static_cast<size_t>(n_classes)}, 0};
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{dmat->Info().num_row_, static_cast<size_t>(n_classes)}, DeviceOrd::CUDA(0)};
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dmat->Info().base_margin_.Data()->Fill(0.5);
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PredictionCacheEntry out_predictions;
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gpu_predictor->InitOutPredictions(dmat->Info(), &out_predictions.predictions, model);
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@@ -181,7 +183,7 @@ TEST(GPUPredictor, InplacePredictCupy) {
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auto ctx = MakeCUDACtx(0);
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size_t constexpr kRows{128}, kCols{64};
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RandomDataGenerator gen(kRows, kCols, 0.5);
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gen.Device(ctx.Ordinal());
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gen.Device(ctx.Device());
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HostDeviceVector<float> data;
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std::string interface_str = gen.GenerateArrayInterface(&data);
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std::shared_ptr<DMatrix> p_fmat{new data::DMatrixProxy};
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@@ -193,7 +195,7 @@ TEST(GPUPredictor, InplacePredictCuDF) {
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auto ctx = MakeCUDACtx(0);
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size_t constexpr kRows{128}, kCols{64};
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RandomDataGenerator gen(kRows, kCols, 0.5);
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gen.Device(ctx.Ordinal());
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gen.Device(ctx.Device());
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std::vector<HostDeviceVector<float>> storage(kCols);
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auto interface_str = gen.GenerateColumnarArrayInterface(&storage);
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std::shared_ptr<DMatrix> p_fmat{new data::DMatrixProxy};
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@@ -215,7 +217,7 @@ TEST(GPUPredictor, ShapStump) {
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cudaSetDevice(0);
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auto ctx = MakeCUDACtx(0);
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LearnerModelParam mparam{MakeMP(1, .5, 1, ctx.Ordinal())};
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LearnerModelParam mparam{MakeMP(1, .5, 1, ctx.Device())};
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gbm::GBTreeModel model(&mparam, &ctx);
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std::vector<std::unique_ptr<RegTree>> trees;
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@@ -241,7 +243,7 @@ TEST(GPUPredictor, ShapStump) {
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TEST(GPUPredictor, Shap) {
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auto ctx = MakeCUDACtx(0);
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LearnerModelParam mparam{MakeMP(1, .5, 1, ctx.Ordinal())};
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LearnerModelParam mparam{MakeMP(1, .5, 1, ctx.Device())};
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gbm::GBTreeModel model(&mparam, &ctx);
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std::vector<std::unique_ptr<RegTree>> trees;
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@@ -296,7 +298,7 @@ TEST_F(MGPUPredictorTest, CategoricalPredictionLeafColumnSplit) {
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TEST(GPUPredictor, PredictLeafBasic) {
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size_t constexpr kRows = 5, kCols = 5;
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auto dmat = RandomDataGenerator(kRows, kCols, 0).Device(0).GenerateDMatrix();
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auto dmat = RandomDataGenerator(kRows, kCols, 0).Device(DeviceOrd::CUDA(0)).GenerateDMatrix();
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auto lparam = MakeCUDACtx(GPUIDX);
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std::unique_ptr<Predictor> gpu_predictor =
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std::unique_ptr<Predictor>(Predictor::Create("gpu_predictor", &lparam));
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