// Copyright (c) 2019 PaddlePaddle Authors. All Rights Reserved. // // Licensed under the Apache License, Version 2.0 (the "License"); // you may not use this file except in compliance with the License. // You may obtain a copy of the License at // // http://www.apache.org/licenses/LICENSE-2.0 // // Unless required by applicable law or agreed to in writing, software // distributed under the License is distributed on an "AS IS" BASIS, // WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied. // See the License for the specific language governing permissions and // limitations under the License. #include #include #include #include "gtest/gtest.h" #include "paddle/fluid/framework/variable.h" #include "paddle/fluid/imperative/gradient_accumulator.h" #include "paddle/fluid/memory/memcpy.h" #include "paddle/fluid/operators/math/math_function.h" namespace imperative = paddle::imperative; namespace platform = paddle::platform; namespace framework = paddle::framework; namespace paddle { namespace imperative { void TensorAdd(const framework::Variable& src, framework::Variable* dst); template int TensorddTest(Place place, T t1, T t2) { framework::Variable var1; framework::Variable var2; std::vector src_data(10, t1); std::vector dst_data(10, t2); std::vector result; platform::CPUPlace src_place; for (unsigned int i = 0; i < 10; i++) { result.emplace_back(src_data[i] + dst_data[i]); } std::vector dims = {2, 5}; auto* src = var1.GetMutable(); auto* dst = var2.GetMutable(); src->Resize(framework::make_ddim(dims)); dst->Resize(framework::make_ddim(dims)); auto* src_mutable = src->mutable_data(place); auto* dst_mutable = dst->mutable_data(place); if (!std::is_same::value) { paddle::memory::Copy(place, src_mutable, src_place, src_data.data(), sizeof(T) * src_data.size()); paddle::memory::Copy(place, dst_mutable, src_place, dst_data.data(), sizeof(T) * dst_data.size()); #if defined(PADDLE_WITH_CUDA) || defined(PADDLE_WITH_HIP) } else { paddle::memory::Copy(place, src_mutable, src_place, src_data.data(), sizeof(T) * src_data.size(), 0); paddle::memory::Copy(place, dst_mutable, src_place, dst_data.data(), sizeof(T) * dst_data.size(), 0); #endif } imperative::TensorAdd(var1, &var2); framework::LoDTensor rlt; platform::CPUPlace rlt_place; framework::TensorCopySync(*dst, rlt_place, &rlt); for (unsigned int i = 0; i < rlt.numel(); i++) { if (rlt.data()[i] != result[i]) return 1; } return 0; } TEST(test_add_functor, add_functor) { #if defined(PADDLE_WITH_CUDA) || defined(PADDLE_WITH_HIP) platform::CUDAPlace gpu_place(0); #endif platform::CPUPlace cpu_place; int cpu_res = 1; cpu_res = TensorddTest(cpu_place, 1.0, 0.0); EXPECT_EQ(cpu_res, 0); cpu_res = TensorddTest(cpu_place, static_cast(1.0), static_cast(2.0)); EXPECT_EQ(cpu_res, 0); cpu_res = TensorddTest(cpu_place, static_cast(1.0), static_cast(2.0)); EXPECT_EQ(cpu_res, 0); #if defined(PADDLE_WITH_CUDA) || defined(PADDLE_WITH_HIP) int gpu_res = 1; gpu_res = TensorddTest(gpu_place, 1.0, 0.0); EXPECT_EQ(gpu_res, 0); gpu_res = TensorddTest(gpu_place, static_cast(1.0), static_cast(2.0)); EXPECT_EQ(gpu_res, 0); gpu_res = TensorddTest(gpu_place, static_cast(1.0), static_cast(2.0)); EXPECT_EQ(gpu_res, 0); #endif } TEST(test_add_functor, execption) { platform::CUDAPinnedPlace cuda_pinned_place; platform::CUDAPlace cuda_place(0); platform::CPUPlace cpu_place; ASSERT_ANY_THROW(TensorddTest(cpu_place, 1, 0)); #if defined(PADDLE_WITH_CUDA) || defined(PADDLE_WITH_HIP) ASSERT_ANY_THROW(TensorddTest(cuda_pinned_place, 1.0, 0.0)); ASSERT_ANY_THROW(TensorddTest(cuda_pinned_place, static_cast(1.0), static_cast(2.0))); #endif } static void CopyVar(const framework::Variable& var, framework::Variable* dst_ptr) { auto& dst = *dst_ptr; dst.Clear(); if (var.IsType()) { const auto& src_tensor = var.Get(); auto* dst_tensor = dst.GetMutable(); framework::TensorCopySync(src_tensor, src_tensor.place(), dst_tensor); } else { const auto& src_selected_rows = var.Get(); auto* dst_selected_rows = dst.GetMutable(); dst_selected_rows->set_rows(src_selected_rows.rows()); dst_selected_rows->set_height(src_selected_rows.height()); framework::TensorCopySync(src_selected_rows.value(), src_selected_rows.value().place(), dst_selected_rows->mutable_value()); } } static bool IsEqualVar(const framework::Variable& var1, const framework::Variable& var2) { if (var1.Type() != var2.Type()) { return false; } framework::Tensor t1, t2; if (var1.IsType()) { framework::TensorCopySync(var1.Get(), platform::CPUPlace(), &t1); framework::TensorCopySync(var2.Get(), platform::CPUPlace(), &t2); } else { auto& s1 = var1.Get(); auto& s2 = var2.Get(); if (s1.height() != s2.height()) { return false; } if (s1.rows().size() != s2.rows().size()) { return false; } auto row1_data = s1.rows().data(); auto row2_data = s2.rows().data(); if (std::memcmp(row1_data, row2_data, s1.rows().size() * sizeof(*row1_data)) != 0) { return false; } framework::TensorCopySync(var1.Get().value(), platform::CPUPlace(), &t1); framework::TensorCopySync(var2.Get().value(), platform::CPUPlace(), &t2); } if (t1.type() != t2.type() || t1.dims() != t2.dims()) { return false; } auto* t1_p = t1.data(); auto* t2_p = t2.data(); return std::memcmp(t1_p, t2_p, t1.numel() * framework::SizeOfType(t1.type())) == 0; } template static framework::Variable RandomTensor(const framework::DDim& dims, const platform::Place& place, int low = -10, int high = 10) { framework::Tensor cpu_tensor; cpu_tensor.Resize(dims); auto* ptr = cpu_tensor.mutable_data(platform::CPUPlace()); std::uniform_int_distribution dist(low, high); std::random_device rd; std::mt19937 engine(rd()); for (int64_t i = 0; i < cpu_tensor.numel(); ++i) { ptr[i] = dist(engine); } framework::Variable ret; framework::TensorCopySync(cpu_tensor, place, ret.GetMutable()); return ret; } template static framework::Variable RandomSelectedRows(framework::DDim dims, const platform::Place& place, int64_t row_number, int low = -10, int high = 10) { auto height = dims[0]; dims[0] = row_number; framework::Variable ret; auto* sr = ret.GetMutable(); auto tensor_var = RandomTensor(dims, place, low, high); sr->mutable_value()->ShareDataWith( tensor_var.template Get()); sr->set_height(height); sr->mutable_rows()->resize(row_number); auto* row_data = sr->mutable_rows()->data(); std::uniform_int_distribution dist(0, height - 1); std::random_device rd; std::mt19937 engine(rd()); for (int64_t i = 0; i < dims[0]; ++i) { row_data[i] = dist(engine); } return ret; } static std::unique_ptr CreateAccumulator( const std::shared_ptr& var, bool sort_gradient) { if (sort_gradient) { return std::unique_ptr( new SortedGradientAccumulator(var.get())); } else { return std::unique_ptr( new EagerGradientAccumulator(var.get())); } } static void TestGradientAccumulatorTestUnchangeInput( const platform::Place& place, bool sort_gradient) { framework::DDim dim{10, 20}; int64_t maximum_row_number = 100; std::uniform_int_distribution dist(1, maximum_row_number); int seed; { std::random_device rd; seed = rd(); } std::mt19937 engine(seed); auto create_var = [&](bool use_tensor) { if (use_tensor) { return RandomTensor(dim, place); } else { return RandomSelectedRows(dim, place, dist(engine)); } }; std::vector use_tensors = {false, true}; for (auto use_tensor1 : use_tensors) { for (auto use_tensor2 : use_tensors) { /** g_accum1 && g_accum2: has not been initialized * test accumulate on this graph */ auto g_var1 = std::make_shared("g_var1"); g_var1->SetOverridedStopGradient(false); auto g_accum1 = CreateAccumulator(g_var1, sort_gradient); g_accum1->IncreaseRefCnt(); g_accum1->IncreaseRefCnt(); auto g_var2 = std::make_shared("g_var2"); g_var2->SetOverridedStopGradient(false); auto g_accum2 = CreateAccumulator(g_var2, sort_gradient); g_accum2->IncreaseRefCnt(); g_accum2->IncreaseRefCnt(); auto var1 = create_var(use_tensor1); auto var_wrapper1_1 = std::make_shared("tmp1_1"); auto var_wrapper2_1 = std::make_shared("tmp2_1"); ASSERT_EQ(var_wrapper1_1->IsEmpty(), true); CopyVar(var1, var_wrapper1_1->MutableVar()); ASSERT_EQ(var_wrapper1_1->IsEmpty(), false); ASSERT_EQ(var_wrapper2_1->IsEmpty(), true); CopyVar(var1, var_wrapper2_1->MutableVar()); ASSERT_EQ(var_wrapper2_1->IsEmpty(), false); auto var2 = create_var(use_tensor2); auto var_wrapper1_2 = std::make_shared("tmp1_2"); auto var_wrapper2_2 = std::make_shared("tmp2_2"); CopyVar(var2, var_wrapper1_2->MutableVar()); CopyVar(var2, var_wrapper2_2->MutableVar()); // g_accum1: inner_var_ = var1 + var2 g_accum1->SumGrad(var_wrapper1_1, 0, false); g_accum1->SumGrad(var_wrapper1_2, 1, false); ASSERT_EQ(g_accum1->CurCnt(), g_accum1->RefCnt()); ASSERT_TRUE(g_accum1->SumGradCompleted()); // g_accum1: inner_var_ -> var_ g_accum1->AccumulateGrad(); // g_accum2: inner_var_ = var1 + var2 g_accum2->SumGrad(var_wrapper2_1, 0, true); g_accum2->SumGrad(var_wrapper2_2, 1, true); ASSERT_EQ(g_accum2->CurCnt(), g_accum2->RefCnt()); ASSERT_TRUE(g_accum2->SumGradCompleted()); // g_accum2: inner_var_ -> var_ g_accum2->AccumulateGrad(); ASSERT_TRUE(IsEqualVar(var_wrapper2_1->Var(), var1)); ASSERT_TRUE(IsEqualVar(var_wrapper2_2->Var(), var2)); ASSERT_TRUE(IsEqualVar(g_var1->Var(), g_var2->Var())); /** g_accum3 && g_accum4: has been initialized * test accumulate on previous graph */ auto var3 = create_var(use_tensor1); auto var_wrapper3_3 = std::make_shared("tmp1_3"); auto var_wrapper4_3 = std::make_shared("tmp2_3"); var_wrapper3_3->SetOverridedStopGradient(false); var_wrapper4_3->SetOverridedStopGradient(false); CopyVar(var3, var_wrapper3_3->MutableVar()); CopyVar(var3, var_wrapper4_3->MutableVar()); auto g_accum3 = CreateAccumulator(var_wrapper3_3, sort_gradient); g_accum3->IncreaseRefCnt(); auto g_accum4 = CreateAccumulator(var_wrapper4_3, sort_gradient); g_accum4->IncreaseRefCnt(); auto var4 = create_var(use_tensor2); auto var_wrapper3_4 = std::make_shared("tmp1_4"); auto var_wrapper4_4 = std::make_shared("tmp2_4"); CopyVar(var4, var_wrapper3_4->MutableVar()); CopyVar(var4, var_wrapper4_4->MutableVar()); g_accum3->SumGrad(var_wrapper3_4, 0, false); ASSERT_TRUE(g_accum3->SumGradCompleted()); // g_accum4: var_(var_wrapper3_3) + inner_var_ -> var_ g_accum3->AccumulateGrad(); g_accum4->SumGrad(var_wrapper4_4, 0, false); ASSERT_TRUE(g_accum4->SumGradCompleted()); // g_accum4: var_(var_wrapper4_3) + inner_var_ -> var_ g_accum4->AccumulateGrad(); ASSERT_TRUE(IsEqualVar(var_wrapper3_3->Var(), var_wrapper4_3->Var())); } } } TEST(test_gradient_accumulator, test_unchange_input) { for (auto sort_gradient : {false, true}) { TestGradientAccumulatorTestUnchangeInput(platform::CPUPlace(), sort_gradient); #if defined(PADDLE_WITH_CUDA) || defined(PADDLE_WITH_HIP) TestGradientAccumulatorTestUnchangeInput(platform::CUDAPlace(0), sort_gradient); #endif } } } // namespace imperative } // namespace paddle