187 lines
8.0 KiB
C++
187 lines
8.0 KiB
C++
// Copyright (c) 2023 PaddlePaddle Authors. All Rights Reserved.
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//
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// Licensed under the Apache License, Version 2.0 (the "License");
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// you may not use this file except in compliance with the License.
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// You may obtain a copy of the License at
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//
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// http://www.apache.org/licenses/LICENSE-2.0
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//
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// Unless required by applicable law or agreed to in writing, software
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// distributed under the License is distributed on an "AS IS" BASIS,
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// WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
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// See the License for the specific language governing permissions and
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// limitations under the License.
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#include <glog/logging.h>
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#include <gtest/gtest.h>
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#include <memory>
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#include <sstream>
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#include "paddle/cinn/hlir/dialect/operator/ir/cinn_op.h"
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#include "paddle/cinn/hlir/dialect/operator/ir/manual_op.h"
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#include "paddle/cinn/hlir/dialect/operator/ir/op_dialect.h"
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#include "paddle/cinn/hlir/framework/pir/op_lowering_group.h"
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#include "paddle/cinn/hlir/framework/pir/op_lowering_impl.h"
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#include "paddle/cinn/hlir/framework/pir/utils.h"
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#include "paddle/cinn/hlir/framework/pir_compiler.h"
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#include "paddle/common/ddim.h"
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#include "paddle/fluid/framework/new_executor/interpretercore.h"
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#include "paddle/fluid/pir/dialect/operator/ir/op_dialect.h"
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#include "paddle/fluid/pir/dialect/operator/ir/pd_op.h"
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#include "paddle/fluid/pir/transforms/pd_op_to_kernel_pass.h"
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#include "paddle/pir/include/core/builtin_type.h"
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#include "paddle/pir/include/core/ir_context.h"
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#include "paddle/pir/include/core/program.h"
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#include "paddle/pir/include/dialect/control_flow/ir/cf_dialect.h"
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#include "paddle/pir/include/dialect/control_flow/ir/cf_op.h"
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#include "paddle/pir/include/dialect/shape/utils/shape_or_data_expr.h"
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using cinn::hlir::framework::pir::CompatibleInfo;
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using cinn::hlir::framework::pir::OpLoweringGroup;
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using cinn::hlir::framework::pir::OpLoweringGroupPtr;
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bool simple_cmp(float a, float b) { return std::abs((a - b) / a) < 1e-5; }
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std::vector<::pir::Type> CreateDenseTensorTypes(const phi::DDim& dims) {
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::pir::IrContext* ctx = ::pir::IrContext::Instance();
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::pir::Type fp32_dtype = ::pir::Float32Type::get(ctx);
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phi::DataLayout data_layout = phi::DataLayout::NCHW;
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phi::LegacyLoD lod = {};
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size_t offset = 0;
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std::vector<::pir::Type> op_output_types = {::pir::DenseTensorType::get(
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ctx, fp32_dtype, dims, data_layout, lod, offset)};
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return op_output_types;
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}
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std::tuple<std::shared_ptr<::pir::Program>, std::vector<OpLoweringGroupPtr>>
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BuildGroupProgramForLowering() {
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::pir::IrContext* ctx = ::pir::IrContext::Instance();
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ctx->GetOrRegisterDialect<paddle::dialect::OperatorDialect>();
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ctx->GetOrRegisterDialect<cinn::dialect::OperatorDialect>();
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ctx->GetOrRegisterDialect<pir::ControlFlowDialect>();
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auto program = std::make_shared<::pir::Program>(ctx);
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::pir::Builder builder = ::pir::Builder(ctx, program->block());
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const std::vector<int64_t> x_shape = {-1, 2};
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const std::vector<int64_t> y_shape = {1, -1, 2};
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auto x = builder
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.Build<paddle::dialect::DataOp>(
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"input_x", x_shape, phi::DataType::FLOAT32, phi::GPUPlace())
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.result(0);
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auto y = builder
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.Build<paddle::dialect::DataOp>(
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"input_y", y_shape, phi::DataType::FLOAT32, phi::GPUPlace())
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.result(0);
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auto group_op = builder.Build<cinn::dialect::GroupOp>(
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CreateDenseTensorTypes(common::make_ddim({1, -1, 2})));
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builder.SetInsertionPointToBlockEnd(group_op.block());
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auto exp = builder.Build<paddle::dialect::ExpOp>(x);
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auto reshape = builder.Build<cinn::dialect::ReshapeOp>(
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exp.result(0), std::vector<int>{-1, 1, 1});
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auto sub = builder.Build<paddle::dialect::SubtractOp>(y, reshape.result(0));
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builder.Build<::pir::YieldOp>(std::vector<::pir::Value>{sub.result(0)});
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builder.SetInsertionPointToBlockEnd(program->block());
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builder.Build<paddle::dialect::FetchOp>(group_op->result(0), "out", 0);
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std::vector<OpLoweringGroupPtr> groups;
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groups.emplace_back(std::make_shared<OpLoweringGroup>(
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std::vector<::pir::Operation*>(
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{exp.operation(), reshape.operation(), sub.operation()}),
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CompatibleInfo::GroupOpsName(std::vector<::pir::Operation*>(
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{exp.operation(), reshape.operation(), sub.operation()}))));
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groups[0]->mut_output_ops().insert(groups[0]->ops().back());
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std::unordered_map<::pir::Value, symbol::ShapeOrDataDimExprs>
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value_to_shape_data;
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symbol::DimExpr x_dim_0("S0");
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symbol::DimExpr x_dim_1(2);
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symbol::DimExpr y_dim_0(1);
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symbol::DimExpr y_dim_1("S1");
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symbol::DimExpr y_dim_2(2);
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value_to_shape_data.emplace(
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x,
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symbol::ShapeOrDataDimExprs(
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symbol::TensorShapeOrDataDimExprs({x_dim_0, x_dim_1})));
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value_to_shape_data.emplace(
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y,
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symbol::ShapeOrDataDimExprs(
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symbol::TensorShapeOrDataDimExprs({y_dim_0, y_dim_1, y_dim_2})));
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value_to_shape_data.emplace(exp.result(0), value_to_shape_data.at(x));
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value_to_shape_data.emplace(reshape.result(0), value_to_shape_data.at(y));
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value_to_shape_data.emplace(sub.result(0), value_to_shape_data.at(y));
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groups[0]->set_value_to_shape_or_data_exprs(value_to_shape_data);
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return {program, groups};
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}
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std::tuple<std::shared_ptr<::pir::Program>, std::vector<OpLoweringGroupPtr>>
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BuildBroadcastGroupProgramForLowering() {
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::pir::IrContext* ctx = ::pir::IrContext::Instance();
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ctx->GetOrRegisterDialect<paddle::dialect::OperatorDialect>();
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ctx->GetOrRegisterDialect<cinn::dialect::OperatorDialect>();
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ctx->GetOrRegisterDialect<pir::ControlFlowDialect>();
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auto program = std::make_shared<::pir::Program>(ctx);
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::pir::Builder builder = ::pir::Builder(ctx, program->block());
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const std::vector<int64_t> x_shape = {1, 1, 1};
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const std::vector<int64_t> y_shape = {1, -1, 128};
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auto x = builder
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.Build<paddle::dialect::DataOp>(
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"input_x", x_shape, phi::DataType::FLOAT32, phi::GPUPlace())
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.result(0);
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auto y = builder
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.Build<paddle::dialect::DataOp>(
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"input_y", y_shape, phi::DataType::FLOAT32, phi::GPUPlace())
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.result(0);
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auto group_op = builder.Build<cinn::dialect::GroupOp>(
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CreateDenseTensorTypes(common::make_ddim({1, -1, 128})));
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builder.SetInsertionPointToBlockEnd(group_op.block());
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const std::vector<int64_t> x_broadcast_axes = {0, 1, 2};
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auto x_broadcast =
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builder.Build<cinn::dialect::BroadcastOp>(x, x_broadcast_axes, y_shape);
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auto sub =
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builder.Build<paddle::dialect::SubtractOp>(x_broadcast->result(0), y);
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builder.Build<::pir::YieldOp>(std::vector<::pir::Value>{sub.result(0)});
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builder.SetInsertionPointToBlockEnd(program->block());
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builder.Build<paddle::dialect::FetchOp>(group_op->result(0), "out", 0);
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std::vector<OpLoweringGroupPtr> groups;
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groups.emplace_back(std::make_shared<OpLoweringGroup>(
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std::vector<::pir::Operation*>(
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{x_broadcast.operation(), sub.operation()}),
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CompatibleInfo::GroupOpsName(std::vector<::pir::Operation*>(
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{x_broadcast.operation(), sub.operation()}))));
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groups[0]->mut_output_ops().insert(groups[0]->ops().back());
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std::unordered_map<::pir::Value, symbol::ShapeOrDataDimExprs>
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value_to_shape_data;
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symbol::DimExpr x_dim_0(1);
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symbol::DimExpr x_dim_1(1);
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symbol::DimExpr x_dim_2(1);
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symbol::DimExpr y_dim_0(1);
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symbol::DimExpr y_dim_1("S0");
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symbol::DimExpr y_dim_2(128);
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value_to_shape_data.emplace(
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x,
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symbol::ShapeOrDataDimExprs(
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symbol::TensorShapeOrDataDimExprs({x_dim_0, x_dim_1, x_dim_2})));
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value_to_shape_data.emplace(
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y,
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symbol::ShapeOrDataDimExprs(
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symbol::TensorShapeOrDataDimExprs({y_dim_0, y_dim_1, y_dim_2})));
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value_to_shape_data.emplace(
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x_broadcast.result(0),
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symbol::ShapeOrDataDimExprs(
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symbol::TensorShapeOrDataDimExprs({y_dim_0, y_dim_1, y_dim_2})));
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value_to_shape_data.emplace(
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sub.result(0),
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symbol::ShapeOrDataDimExprs(
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symbol::TensorShapeOrDataDimExprs({y_dim_0, y_dim_1, y_dim_2})));
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groups[0]->set_value_to_shape_or_data_exprs(value_to_shape_data);
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return {program, groups};
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}
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