| @@ -52,6 +52,7 @@ | |||||
| #include "pre_activate/ascend/ir_fusion/batchnorm_to_bninfer.h" | #include "pre_activate/ascend/ir_fusion/batchnorm_to_bninfer.h" | ||||
| #include "pre_activate/ascend/ir_fusion/batchnormgrad_to_bninfergrad.h" | #include "pre_activate/ascend/ir_fusion/batchnormgrad_to_bninfergrad.h" | ||||
| #include "pre_activate/ascend/ir_fusion/confusion_mul_grad_fusion.h" | #include "pre_activate/ascend/ir_fusion/confusion_mul_grad_fusion.h" | ||||
| #include "pre_activate/ascend/ir_fusion/softmax_grad_ext_fusion.h" | |||||
| #include "pre_activate/ascend/format_type/insert_trans_op.h" | #include "pre_activate/ascend/format_type/insert_trans_op.h" | ||||
| #include "pre_activate/pass/getitem_tuple.h" | #include "pre_activate/pass/getitem_tuple.h" | ||||
| #include "pre_activate/pass/optimize_dependence.h" | #include "pre_activate/pass/optimize_dependence.h" | ||||
| @@ -114,7 +115,10 @@ void AddAscendBackendOptionalIRFusion(PassManager *ir_fusion_pm) { | |||||
| ir_fusion_pm->AddPass(std::make_shared<ClipByValueFusion>()); | ir_fusion_pm->AddPass(std::make_shared<ClipByValueFusion>()); | ||||
| ir_fusion_pm->AddPass(std::make_shared<TopKSplit>()); | ir_fusion_pm->AddPass(std::make_shared<TopKSplit>()); | ||||
| ir_fusion_pm->AddPass(std::make_shared<AdamApplyOneWithDecayRule>()); | ir_fusion_pm->AddPass(std::make_shared<AdamApplyOneWithDecayRule>()); | ||||
| ir_fusion_pm->AddPass(std::make_shared<AdamApplyOneFusion>()); | |||||
| ir_fusion_pm->AddPass(std::make_shared<AdamApplyOneCond1Fusion>()); | |||||
| ir_fusion_pm->AddPass(std::make_shared<AdamApplyOneCond2Fusion>()); | |||||
| ir_fusion_pm->AddPass(std::make_shared<AdamApplyOneCond3Fusion>()); | |||||
| ir_fusion_pm->AddPass(std::make_shared<AdamApplyOneCond4Fusion>()); | |||||
| ir_fusion_pm->AddPass(std::make_shared<MomentumLossscaleFusion>()); | ir_fusion_pm->AddPass(std::make_shared<MomentumLossscaleFusion>()); | ||||
| ir_fusion_pm->AddPass(std::make_shared<MulAddFusion>()); | ir_fusion_pm->AddPass(std::make_shared<MulAddFusion>()); | ||||
| ir_fusion_pm->AddPass(std::make_shared<MulAddNFusion>()); | ir_fusion_pm->AddPass(std::make_shared<MulAddNFusion>()); | ||||
| @@ -0,0 +1,54 @@ | |||||
| /** | |||||
| * Copyright 2020 Huawei Technologies Co., Ltd | |||||
| * | |||||
| * 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 "pre_activate/ascend/ir_fusion/softmax_grad_ext_fusion.h" | |||||
| #include <memory> | |||||
| #include "session/anf_runtime_algorithm.h" | |||||
| #include "ir/primitive.h" | |||||
| #include "utils/utils.h" | |||||
| #include "pre_activate/common/helper.h" | |||||
| namespace mindspore { | |||||
| namespace opt { | |||||
| const BaseRef SoftmaxGradExtFusion::DefinePattern() const { | |||||
| VectorRef mul({prim::kPrimMul, input1_, input0_}); | |||||
| VectorRef sum({sum_var_, mul}); | |||||
| VectorRef sub({prim::kPrimSub, input0_, sum}); | |||||
| VectorRef mul1({prim::kPrimMul, input2_, input1_}); | |||||
| VectorRef mul_grad({prim::kPrimMul, mul1, sub}); | |||||
| return mul_grad; | |||||
| } | |||||
| const AnfNodePtr SoftmaxGradExtFusion::Process(const FuncGraphPtr &graph, const AnfNodePtr &node, | |||||
| const EquivPtr &equiv) const { | |||||
| MS_EXCEPTION_IF_NULL(graph); | |||||
| MS_EXCEPTION_IF_NULL(equiv); | |||||
| MS_EXCEPTION_IF_NULL(node); | |||||
| auto input0 = GetAnfNodeByVar(equiv, input0_); | |||||
| auto input1 = GetAnfNodeByVar(equiv, input1_); | |||||
| auto input2 = GetAnfNodeByVar(equiv, input2_); | |||||
| auto sum = GetAnfNodeByVar(equiv, sum_var_); | |||||
| auto prim = std::make_shared<Primitive>(kSoftmaxGradExtOpName); | |||||
| auto fusion_node = graph->NewCNode({NewValueNode(prim), input0, input1, input2}); | |||||
| MS_EXCEPTION_IF_NULL(fusion_node); | |||||
| fusion_node->set_scope(node->scope()); | |||||
| fusion_node->set_abstract(node->abstract()); | |||||
| AnfAlgo::CopyNodeAttr(kAttrKeepDims, sum, fusion_node); | |||||
| AnfAlgo::CopyNodeAttr(kAttrAxis, sum, fusion_node); | |||||
| return fusion_node; | |||||
| } | |||||
| } // namespace opt | |||||
| } // namespace mindspore | |||||
| @@ -0,0 +1,44 @@ | |||||
| /** | |||||
| * Copyright 2020 Huawei Technologies Co., Ltd | |||||
| * | |||||
| * 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. | |||||
| */ | |||||
| #ifndef MINDSPORE_CCSRC_PRE_ACTIVATE_ASCEND_IR_FUSION_SOFTMAX_GRAD_EXT_FUSION_H_ | |||||
| #define MINDSPORE_CCSRC_PRE_ACTIVATE_ASCEND_IR_FUSION_SOFTMAX_GRAD_EXT_FUSION_H_ | |||||
| #include <memory> | |||||
| #include "pre_activate/common/optimizer.h" | |||||
| namespace mindspore { | |||||
| namespace opt { | |||||
| class SoftmaxGradExtFusion : public PatternProcessPass { | |||||
| public: | |||||
| explicit SoftmaxGradExtFusion(bool multigraph = true) : PatternProcessPass("softmax_grad_ext_fusion", multigraph) { | |||||
| input0_ = std::make_shared<Var>(); | |||||
| input1_ = std::make_shared<Var>(); | |||||
| input2_ = std::make_shared<Var>(); | |||||
| sum_var_ = std::make_shared<Var>(std::make_shared<Primitive>(prim::kPrimReduceSum->name())); | |||||
| } | |||||
| ~SoftmaxGradExtFusion() override = default; | |||||
| const BaseRef DefinePattern() const override; | |||||
| const AnfNodePtr Process(const FuncGraphPtr &, const AnfNodePtr &, const EquivPtr &) const override; | |||||
| private: | |||||
| VarPtr input0_; | |||||
| VarPtr input1_; | |||||
| VarPtr input2_; | |||||
| VarPtr sum_var_; | |||||
| }; | |||||
| } // namespace opt | |||||
| } // namespace mindspore | |||||
| #endif // MINDSPORE_CCSRC_PRE_ACTIVATE_ASCEND_IR_FUSION_SOFTMAX_GRAD_EXT_FUSION_H_ | |||||
| @@ -151,6 +151,7 @@ constexpr auto kLarsV2OpName = "LarsV2"; | |||||
| constexpr auto kLarsV2UpdateOpName = "LarsV2Update"; | constexpr auto kLarsV2UpdateOpName = "LarsV2Update"; | ||||
| constexpr auto kSquareSumAllOpName = "SquareSumAll"; | constexpr auto kSquareSumAllOpName = "SquareSumAll"; | ||||
| constexpr auto kNMSWithMaskOpName = "NMSWithMask"; | constexpr auto kNMSWithMaskOpName = "NMSWithMask"; | ||||
| constexpr auto kSoftmaxGradExtOpName = "SoftmaxGradExt"; | |||||
| // attr key name | // attr key name | ||||
| constexpr auto kAttrInputNames = "input_names"; | constexpr auto kAttrInputNames = "input_names"; | ||||
| @@ -0,0 +1,53 @@ | |||||
| /** | |||||
| * Copyright 2020 Huawei Technologies Co., Ltd | |||||
| * | |||||
| * 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 "common/backend_common_test.h" | |||||
| #include "common/py_func_graph_fetcher.h" | |||||
| #include "pre_activate/common/optimizer.h" | |||||
| #include "pre_activate/ascend/ir_fusion/softmax_grad_ext_fusion.h" | |||||
| #include "debug/anf_ir_dump.h" | |||||
| namespace mindspore { | |||||
| namespace opt { | |||||
| class TestHWOptSoftmaxGradExtFusion : public BackendCommon { | |||||
| public: | |||||
| TestHWOptSoftmaxGradExtFusion() : get_py_fun_("gtest_input.pre_activate.softmax_grad_ext_fusion", true) {} | |||||
| ~TestHWOptSoftmaxGradExtFusion() override = default; | |||||
| UT::PyFuncGraphFetcher get_py_fun_; | |||||
| }; | |||||
| TEST_F(TestHWOptSoftmaxGradExtFusion, test_fusion) { | |||||
| FuncGraphPtr g = get_py_fun_.CallAndParseRet("test_softmax_grad_ext_fusion", "before"); | |||||
| EXPECT_NE(g, nullptr); | |||||
| std::vector<int> shp{1, 1, 1, 1}; | |||||
| auto x_abstract = std::make_shared<abstract::AbstractTensor>(kFloat32, shp); | |||||
| AbstractBasePtrList args_spec_list; | |||||
| for (size_t i = 0; i < 3; ++i) { | |||||
| args_spec_list.push_back(x_abstract); | |||||
| } | |||||
| auto fg = GetKernelGraph(g, args_spec_list); | |||||
| auto optimizer = std::make_shared<opt::GraphOptimizer>(); | |||||
| auto pm = std::make_shared<opt::PassManager>(); | |||||
| pm->AddPass(std::make_shared<opt::SoftmaxGradExtFusion>()); | |||||
| optimizer->AddPassManager(pm); | |||||
| FuncGraphPtr new_graph = optimizer->Optimize(fg); | |||||
| FuncGraphPtr g_after = get_py_fun_.CallAndParseRet("test_softmax_grad_ext_fusion", "after"); | |||||
| EXPECT_TRUE(CheckEqualGraph(g_after, new_graph)); | |||||
| } | |||||
| } // namespace opt | |||||
| } // namespace mindspore | |||||
| @@ -0,0 +1,56 @@ | |||||
| # Copyright 2020 Huawei Technologies Co., Ltd | |||||
| # | |||||
| # 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. | |||||
| # ============================================================================ | |||||
| from mindspore.ops import Primitive | |||||
| from mindspore.ops import operations as P | |||||
| Mul = P.Mul() | |||||
| ReduceSum = P.ReduceSum() | |||||
| Sub = P.Sub() | |||||
| SoftmaxGradExt = Primitive('SoftmaxGradExt') | |||||
| MakeTuple = Primitive('make_tuple') | |||||
| TupleGetItem = Primitive('tuple_getitem') | |||||
| axes = (2, 3) | |||||
| class FnDict: | |||||
| def __init__(self): | |||||
| self.fnDict = {} | |||||
| def __call__(self, fn): | |||||
| self.fnDict[fn.__name__] = fn | |||||
| def __getitem__(self, name): | |||||
| return self.fnDict[name] | |||||
| def test_softmax_grad_ext_fusion(tag): | |||||
| fns = FnDict() | |||||
| @fns | |||||
| def before(input0, input1, input2): | |||||
| mul = Mul(input1, input0) | |||||
| # input axis will be convert to attr in step ConstructKernelGraph | |||||
| reduce_sum = ReduceSum(mul, axes) | |||||
| sub = Sub(input0, reduce_sum) | |||||
| mul1 = Mul(input2, input1) | |||||
| mul_grad = Mul(mul1, sub) | |||||
| return mul_grad | |||||
| @fns | |||||
| def after(input0, input1, input2): | |||||
| res = SoftmaxGradExt(input0, input1, input2) | |||||
| return MakeTuple(res) | |||||
| return fns[tag] | |||||