build_module.cc 42.0 KB
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/**
 * Copyright 2019 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 <tvm/ir_visitor.h>
#include <tvm/node/serialization.h>

#include <algorithm>
#include <iostream>
#include <numeric>
#include <string>
#include <unordered_map>
#include <utility>
#include <vector>

#include "build_module.h"
#include "pass/expr_alg_simplify.h"
#include "ir_pass.h"
#include "schedule_pass.h"
#include "codegen/pass_mgr.h"
#include "composite/util.h"

namespace akg {
AttrMap global_attrs;
Array<NodeRef> g_external_call_name;

Tensor CreatePlaceholder(const NodeRef &arg) {
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  auto n = air::make_node<PlaceholderOpNode>();
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  if (auto var_node = arg.as<Variable>()) {
    n->name = var_node->name_hint;
    n->shape = Array<Expr>{GetRef<Expr>(var_node)};
    n->dtype = var_node->type;
  } else if (auto buffer_node = arg.as<BufferNode>()) {
    n->name = buffer_node->name;
    Expr size = std::accumulate(buffer_node->shape.begin(), buffer_node->shape.end(), Expr(1),
                                [](const Expr &mul, const Expr &e) { return mul * e; });
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    n->shape = Array<Expr>{air::ir::Simplify(size)};
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    n->dtype = buffer_node->dtype;
  } else if (auto tensor_node = arg.as<TensorNode>()) {
    n->name = tensor_node->op->name;
    Expr size = std::accumulate(tensor_node->shape.begin(), tensor_node->shape.end(), Expr(1),
                                [](const Expr &mul, const Expr &e) { return mul * e; });
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    n->shape = Array<Expr>{air::ir::Simplify(size)};
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    n->dtype = tensor_node->dtype;
  } else {
    LOG(FATAL) << "arg must be Tensor, Buffer or Var, but got " << arg;
  }

  return Operation(n).output(0);
}

Buffer DeclBuffer(const NodeRef &arg, const int data_alignment, const int offset_factor,
                  const std::string &pre_name = "") {
  // use default value.
  Array<Expr> strides;

  Type dtype;
  Array<Expr> shape;
  std::string name = pre_name;

  if (auto variable_node = arg.as<Variable>()) {
    if (name.empty()) {
      name = variable_node->name_hint;
    }
    shape = Array<Expr>{GetRef<Expr>(variable_node)};
    dtype = variable_node->type;
  } else if (auto buffer_node = arg.as<BufferNode>()) {
    if (name.empty()) {
      name = buffer_node->name;
    }
    shape = buffer_node->shape;
    dtype = buffer_node->dtype;
  } else if (auto tensor_node = arg.as<TensorNode>()) {
    if (name.empty()) {
      name = tensor_node->op->name;
    }
    shape = tensor_node->shape;
    dtype = tensor_node->dtype;
  } else {
    LOG(FATAL) << "args must be Tensor, Buffer or Var, but got " << arg;
  }

  auto data = Variable::make(Handle(), name);
  Expr elem_offset;
  if (offset_factor != 0) {
    elem_offset = Variable::make(shape[0].type(), name + "_elem_offset");
  }

  return BufferNode::make(data, dtype, shape, strides, elem_offset, name, "", data_alignment, offset_factor,
                          BufferType::kDefault);
}

void GetBinds(const Array<NodeRef> &args, const Map<Tensor, Buffer> &binds, const BuildConfig &config,
              Array<NodeRef> *out_args, Map<Tensor, Buffer> *out_binds) {
  for (const auto &b : binds) {
    out_binds->Set(b.first, b.second);
  }

  for (const auto &x : args) {
    if (x->IsInstance<TensorNode>()) {
      auto tensor_node = GetRef<Tensor>(x.as<TensorNode>());
      if (out_binds->find(tensor_node) == out_binds->end()) {
        auto buf = DeclBuffer(tensor_node, config->data_alignment, config->offset_factor);
        out_binds->Set(tensor_node, buf);
        out_args->push_back(buf);
      } else {
        out_args->push_back((*out_binds)[tensor_node]);
      }
    } else if (x->IsInstance<BufferNode>()) {
      out_args->push_back(x);
    } else if (x->IsInstance<Variable>()) {
      out_args->push_back(x);
    } else {
      LOG(FATAL) << "args must be Tensor, Buffer or Var, but got " << x;
    }
  }

  return;
}

void GetFlattenedBinds(const Array<NodeRef> &args, const Map<Tensor, Buffer> &binds, const BuildConfig &config,
                       Array<NodeRef> &out_args, Map<Tensor, Buffer> &out_binds, bool is_dynamic) {
  std::unordered_map<Tensor, bool> flag_binds;
  // the map aims to remove duplicate names between binds and args
  // because in-place ops (e.g. assign_add) use the same buffer as input and args, and duplicates need to be removed
  std::unordered_map<std::string, Buffer> bind_name_to_buffer_map;
  for (const auto &b : binds) {
    static_cast<void>(bind_name_to_buffer_map.emplace(b.first->op->func_name(), b.second));
  }
  for (const auto &x : args) {
    if (x->IsInstance<TensorNode>()) {
      auto tensor_node = GetRef<Tensor>(x.as<TensorNode>());
      auto tensor_name = tensor_node->op->func_name();
      CHECK_NE(bind_name_to_buffer_map.count(tensor_name), 0) << "undefined tensor " << x;
      auto bind_buffer = bind_name_to_buffer_map[tensor_name];
      flag_binds[tensor_node] = true;
      Tensor nx = CreatePlaceholder(tensor_node);
      bool find_buf = false;
      for (auto iter : out_binds) {
        Buffer buffer = iter.second;
        if (bind_buffer->name == buffer->name) {
          out_binds.Set(nx, buffer);
          find_buf = true;
          break;
        }
      }

      if (!find_buf) {
        Buffer buf = DeclBuffer(nx, config->data_alignment, config->offset_factor, bind_buffer->name);
        out_binds.Set(nx, buf);
        out_args.push_back(buf);
      } else {
        out_args.push_back(bind_buffer);
      }
    } else if (x->IsInstance<BufferNode>()) {
      out_args.push_back(x);
    } else if (x->IsInstance<Variable>()) {
      out_args.push_back(x);
    } else {
      LOG(FATAL) << "args must be Tensor, Buffer or Var";
    }
  }

  for (const auto &x : binds) {
    Tensor x_tensor = x.first;
    if (flag_binds.insert(std::pair<Tensor, bool>{x_tensor, true}).second) {
      Tensor nx = CreatePlaceholder(x_tensor);
      bool find_buf = false;
      for (auto iter : out_binds) {
        Buffer buffer = iter.second;
        if (binds[x_tensor]->name == buffer->name) {
          out_binds.Set(nx, buffer);
          find_buf = true;
        }
      }

      if (!find_buf) {
        Buffer buf = DeclBuffer(nx, config->data_alignment, config->offset_factor, binds[x_tensor]->name);
        out_binds.Set(nx, buf);
      }
    }
  }

  // Just for reshape in dynamic mode
  if (is_dynamic) {
    Tensor in_tensor, out_tensor;
    bool is_reshape = false;
    if (out_binds.size() == 2 && args.size() == 2) {
      for (auto tb : out_binds) {
        if (tb.first->op->name == "reshape" || tb.first->op->name == "reshape_cast") {
          out_tensor = tb.first;
          is_reshape = true;
        } else {
          in_tensor = tb.first;
        }
      }
    }

    if (is_reshape) {
      Map<Tensor, Buffer> new_binds;
      Array<NodeRef> new_args;
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      auto n = air::make_node<PlaceholderOpNode>();
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      n->name = out_tensor->op->name;
      n->shape = in_tensor->shape;
      n->dtype = out_tensor->dtype;
      Tensor ten = Operation(n).output(0);
      Buffer buf = DeclBuffer(ten, config->data_alignment, config->offset_factor, n->name);

      new_binds.Set(in_tensor, out_binds[in_tensor]);
      new_binds.Set(ten, buf);
      new_args.push_back(out_binds[in_tensor]);
      new_args.push_back(buf);
      out_binds = new_binds;
      out_args = new_args;
    }
  }
}

void RenameBinds(Map<Tensor, Buffer> &binds, const BuildConfig &config, Array<NodeRef> &tensor_args_list,
                 Array<NodeRef> &buffer_args_list, Map<Tensor, Tensor> &tensor_replace) {
  std::unordered_map<std::string, int> tensor_name_count;
  std::set<std::string> tensor_name;
  Map<Tensor, Buffer> out_binds;
  Map<Buffer, Buffer> buffer_replace;
  bool rename_flag = false;

  // count the number of times for binds name, if op->name's count greater than 1, need rename op->name
  for (const auto &x : binds) {
    ++tensor_name_count[x.first->op->name];
  }

  // if binds' name conflict, firstly rename tensor_name, then construct new mappings, finally set to out_binds
  for (const auto &x : binds) {
    const auto &old_tensor = x.first;
    const auto &old_buffer = x.second;
    if (tensor_name_count[old_tensor->op->name] > 1) {
      int idx = 0;
      std::string new_name = old_tensor->op->name;
      std::string extend;
      do {
        extend = "_rename_" + std::to_string(++idx);
      } while (tensor_name.count(new_name + extend) != 0);
      new_name.append(extend);
      tensor_name.insert(new_name);
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      auto cop = old_tensor->op.as<air::ComputeOpNode>();
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      CHECK(cop != nullptr);
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      Tensor new_tensor = air::ComputeOpNode::make(new_name, cop->tag, cop->attrs, cop->axis, cop->body).output(0);
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      tensor_replace.Set(old_tensor, new_tensor);
      if (buffer_replace.count(old_buffer) == 0) {
        auto new_buffer = DeclBuffer(new_tensor, config->data_alignment, config->offset_factor, new_name);
        buffer_replace.Set(old_buffer, new_buffer);
        out_binds.Set(new_tensor, new_buffer);
      }
      rename_flag = true;
    }
  }
  // if there is no conflict in binds name, just do out_binds = binds
  // else need use new_buffer to replace old_buffer to insert out_binds
  auto UpdateOutBinds = [&](Map<Tensor, Buffer> &out_binds) -> Map<Tensor, Buffer> & {
    for (const auto &it : binds) {
      const auto &tensor_node = it.first;
      const auto &buffer_node = it.second;
      if (tensor_name_count[tensor_node->op->name] == 1) {
        if (buffer_replace.count(buffer_node) > 0) {
          out_binds.Set(tensor_node, buffer_replace[buffer_node]);
        } else {
          out_binds.Set(tensor_node, buffer_node);
        }
      }
    }
    return out_binds;
  };

  // traverse the list of tensor_args, according to tensor_node to update tensor_args_list
  auto UpdateArgsByTensor = [&tensor_args_list, &tensor_replace]() {
    Array<NodeRef> new_tensor_args_list;
    for (const auto &x : tensor_args_list) {
      if (x->IsInstance<TensorNode>()) {
        Tensor tensor_node = GetRef<Tensor>(x.as<TensorNode>());
        if (tensor_replace.count(tensor_node) != 0) {
          new_tensor_args_list.push_back(tensor_replace[tensor_node]);
        } else {
          new_tensor_args_list.push_back(tensor_node);
        }
      } else {
        new_tensor_args_list.push_back(x);
      }
    }
    return new_tensor_args_list;
  };

  // traverse the list of buffer_args, according to buffer_node to update buffer_args_list
  auto UpdateArgsByBuffer = [&buffer_args_list, &buffer_replace]() {
    Array<NodeRef> new_buffer_args_list;
    for (const auto &x : buffer_args_list) {
      if (x->IsInstance<BufferNode>()) {
        Buffer buffer_node = GetRef<Buffer>(x.as<BufferNode>());
        if (buffer_replace.count(buffer_node) != 0) {
          new_buffer_args_list.push_back(buffer_replace[buffer_node]);
        } else {
          new_buffer_args_list.push_back(buffer_node);
        }
      } else {
        new_buffer_args_list.push_back(x);
      }
    }
    return new_buffer_args_list;
  };

  // if rename tensor_name, need to update tensor_args and buffer_args
  if (rename_flag) {
    tensor_args_list = UpdateArgsByTensor();
    buffer_args_list = UpdateArgsByBuffer();
    binds = UpdateOutBinds(out_binds);
  }
  return;
}

void FixParametricBinds(const Map<Tensor, Buffer> &binds, const Array<NodeRef> &in_args, const BuildConfig &config,
                        Map<Tensor, Buffer> *out_binds, Array<NodeRef> *out_args) {
  Expr H = 0;
  Expr W = 0;
  Expr PT = 0;
  Expr PB = 0;
  Expr PL = 0;
  Expr PR = 0;
  Expr KH = 0;
  Expr KW = 0;
  Expr SH = 0;
  Expr SW = 0;
  Expr CI1 = 0;
  std::string feature = "input_1_1";
  std::string kernel = "input_1_2";
  std::string bias = "input_1_3";
  std::string output = "output";
  Buffer feature_buffer;
  Buffer kernel_buffer;
  Buffer bias_buffer;
  Buffer output_buffer;
  for (const auto &x : in_args) {
    if (auto buf = x.as<BufferNode>()) {
      if (buf->name.find(feature) != std::string::npos) {
        feature_buffer = Downcast<Buffer>(x);
      }
      if (buf->name.find(bias) != std::string::npos) {
        bias_buffer = Downcast<Buffer>(x);
      }
      if (buf->name.find(output) != std::string::npos || buf->name.find(kernel) != std::string::npos) {
        continue;
      }
    }
    if (auto v = x.as<Variable>()) {
      if (v->name_hint == "H") {
        H = Downcast<Var>(x);
      } else if (v->name_hint == "W") {
        W = Downcast<Var>(x);
      } else if (v->name_hint == "PT") {
        PT = Downcast<Var>(x);
      } else if (v->name_hint == "PB") {
        PB = Downcast<Var>(x);
      } else if (v->name_hint == "PL") {
        PL = Downcast<Var>(x);
      } else if (v->name_hint == "PR") {
        PR = Downcast<Var>(x);
      } else if (v->name_hint == "KH") {
        KH = Downcast<Var>(x);
      } else if (v->name_hint == "KW") {
        KW = Downcast<Var>(x);
      } else if (v->name_hint == "SH") {
        SH = Downcast<Var>(x);
      } else if (v->name_hint == "SW") {
        SW = Downcast<Var>(x);
      } else if (v->name_hint == "CI1") {
        CI1 = Downcast<Var>(x);
      }
    }
  }
  for (const auto &x : binds) {
    Array<Expr> shape;
    if (x.second->name.find(output) != std::string::npos) {
      CHECK_EQ(x.second->shape.size(), 5);
      shape.push_back(x.second->shape[0]);
      shape.push_back(x.second->shape[1]);
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      auto h = air::floordiv(H + PT + PB - KH, SH) + 1;
      auto w = air::floordiv(W + PL + PR - KW, SW) + 1;
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      shape.push_back(h);
      shape.push_back(w);
      shape.push_back(x.second->shape[4]);
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      Tensor tt = air::placeholder(shape, x.second->dtype, x.second->name);
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      output_buffer = DeclBuffer(tt, config->data_alignment, config->offset_factor, x.second->name);
      out_binds->Set(tt, output_buffer);
    } else if (x.second->name.find(kernel) != std::string::npos) {
      CHECK_EQ(x.second->shape.size(), 4);
      auto n = CI1 * KH * KW;
      shape.push_back(n);
      shape.push_back(x.second->shape[1]);
      shape.push_back(x.second->shape[2]);
      shape.push_back(x.second->shape[3]);
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      Tensor tt = air::placeholder(shape, x.second->dtype, x.second->name);
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      kernel_buffer = DeclBuffer(tt, config->data_alignment, config->offset_factor, x.second->name);
      out_binds->Set(tt, kernel_buffer);
    } else {
      out_binds->Set(x.first, x.second);
    }
  }
  if (feature_buffer.defined()) {
    out_args->push_back(feature_buffer);
  }
  if (kernel_buffer.defined()) {
    out_args->push_back(kernel_buffer);
  }
  if (bias_buffer.defined()) {
    out_args->push_back(bias_buffer);
  }
  if (output_buffer.defined()) {
    out_args->push_back(output_buffer);
  }
  for (const auto &x : in_args) {
    if (x.as<Variable>()) {
      out_args->push_back(x);
    }
  }
}

NodeRef Lower(Schedule sch, const Array<NodeRef> &in_args, const Array<NodeRef> &shape_vars, const std::string &name,
              const Map<Tensor, Buffer> &in_binds, const Map<std::string, NodeRef> &in_attrs, bool simple_mode,
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              bool polyhedral, bool tuning, const std::string &target, const BuildConfig &config) {
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  ir::TestExprCompuationSimplify();
  CHECK(sch.defined()) << "sch is not defined.";
  CHECK(!name.empty()) << "name is empty.";
  CHECK(find_if(name.begin(), name.end(), [](char c) { return !std::isalnum(c) && c != '_'; }) == name.end())
    << "kernel name contains invalid chars: " << name;

  Array<NodeRef> args;
  if (in_args.defined()) {
    args = in_args;
  }
  Map<Tensor, Buffer> binds;
  if (in_binds.defined()) {
    binds = in_binds;
  }
  if (in_attrs.defined()) {
    global_attrs = in_attrs;
  }
  PassMgr::ClearPassId();
  PassTimer *pass_timer = PassTimer::GetInstance();
  global_attrs.Set(kKernelName, StringImm::make(name));

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  global_attrs.Set(kDumpPassIr, air::make_const(Int(32), config->dump_pass_ir));
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  if (config->dump_pass_ir) {
    std::string dump_ir_dir;
    if (global_attrs.GetStringAttr(kDumpIrDir, &dump_ir_dir)) {
      PassMgr::SetDir(dump_ir_dir);
    } else {
      PassMgr::SetDir(name);
    }
    CreateDir(PassMgr::GetDir());
    std::string dump_poly_dir;
    if (!global_attrs.GetStringAttr(kDumpPolyDir, &dump_poly_dir)) {
      dump_poly_dir = PassMgr::GetDir() + "/poly";
      global_attrs.Set(kDumpPolyDir, StringImm::make(dump_poly_dir));
    }
    CreateDir(dump_poly_dir);
  }

  Array<NodeRef> arg_list_0;
  Map<Tensor, Buffer> binds_0;
  GetBinds(args, binds, config, &arg_list_0, &binds_0);

  // Phase 0
  if (polyhedral && global_attrs.GetBoolAttr(kEnableAutoInline, true)) {
    akg::schedule::AutoInline(sch);
  }
  auto new_sch = sch.normalize();
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  auto bounds = air::schedule::InferBound(new_sch);
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  Stmt stmt = make_pass("schedule.ScheduleOps", new_sch, bounds, false);
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  if (target == "cuda") {
    // Phase 1
    stmt = NEXT_PASS(RewriteForTensorCore, stmt, new_sch, binds_0);
    stmt = NEXT_PASS(StorageFlatten, stmt, binds_0, 64, config->instrument_bound_checkers);
    stmt = NEXT_PASS(CanonicalSimplify, stmt);

    // Phase 2
    if (!simple_mode) {
      stmt = NEXT_PASS(LoopPartition, stmt, config->partition_const_loop);
    }
    if (config->disable_vectorize) {
      stmt = NEXT_PASS(SkipVectorize, stmt);
    } else {
      stmt = NEXT_PASS(VectorizeLoop, stmt);
    }
    stmt = NEXT_PASS(InjectVirtualThread, stmt);
    stmt = NEXT_PASS(InjectDoubleBuffer, stmt, config->double_buffer_split_loop);
    stmt = NEXT_PASS(StorageRewrite, stmt);
    stmt = NEXT_PASS(UnrollLoop, stmt, config->auto_unroll_max_step, config->auto_unroll_max_depth,
                     config->auto_unroll_max_extent, config->unroll_explicit);

    // Phase 3
    stmt = NEXT_PASS(Simplify, stmt);
    stmt = NEXT_PASS(RemoveNoOp, stmt);
    if (config->instrument_bound_checkers) {
      stmt = NEXT_PASS(InstrumentBoundCheckers, stmt);
    }
    if (simple_mode) {
      return stmt;
    }
    LoweredFunc lowered_func = NEXT_PASS(MakeAPI, stmt, name, arg_list_0, 0, config->restricted_func);
    return lowered_func;
  }

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  if (!polyhedral) {
    // for conv-matmul manual schedule
    stmt = NEXT_PASS(AutoMadPragmaAttr, stmt, true);
  }

  stmt = NEXT_PASS(RewriteMultiValueFunc, stmt);
  Map<Tensor, Tensor> replace;
  RenameBinds(binds_0, config, args, arg_list_0, replace);
  PassMgr::SetArgs(arg_list_0);
  stmt = NEXT_PASS(RenameRealize, stmt, binds_0, replace);

  bool is_dynamic = !shape_vars.empty();
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  global_attrs.Set(kIsDynamic, air::make_const(Int(32), is_dynamic));
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  Array<NodeRef> arg_list_1;
  Map<Tensor, Buffer> binds_1;
  GetFlattenedBinds(args, binds_0, config, arg_list_1, binds_1, is_dynamic);
  Stmt stmt1 = NEXT_PASS(ElementwiseFlatten, stmt, binds_0, binds_1);
  if (stmt1.get() != stmt.get()) {
    stmt = stmt1;
    arg_list_0 = arg_list_1;
    binds_0 = binds_1;
  }

  for (auto &node : shape_vars) {
    if (node.as<Variable>()) {
      arg_list_0.push_back(node);
    }
  }

  PassMgr::SetArgs(arg_list_0);

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  if (target != "aicpu") {
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    stmt = NEXT_PASS(MathIntrinRewrite, stmt);
  }

  if (global_attrs.GetBoolAttr(kEnableRewriteScalarCompute, false)) {
    stmt = NEXT_PASS(ScalarComputeRewrite, stmt);
  }

  // Phase 1
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  if (target != "aicpu" && polyhedral) {
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    stmt = NEXT_PASS(UnifyLoopVars, stmt, binds_0, arg_list_0);
    stmt = NEXT_PASS(CheckShapeParams, stmt, binds_0);
    stmt = NEXT_PASS(AlignPartitionCCE, stmt);

    // Loop Partition args : 2 : split_const_loop, 3 : remove Div / Mod ops by partitioning,
    //                       4 : whether to partition convolution or not
    if (global_attrs.GetBoolAttr(kEnablePrePolyLoopPartition, true)) {
      stmt = NEXT_PASS(LoopPartitionCCE, stmt, true, false, !polyhedral);
    }
    if (global_attrs.GetBoolAttr(kLoopPartitionUnroll, false)) {
      stmt = NEXT_PASS(UnrollNonConstantExtent, stmt);
    }
    if (global_attrs.GetBoolAttr(kExtentToCond, true)) {
      stmt = NEXT_PASS(ConvertExtentToCond, stmt, binds_0);
    }
    if (global_attrs.GetBoolAttr(kEnableToThreeAddress, true)) {
      if (global_attrs.count(kToThreeAddressCrossSimply) != 0) {
        // Not combine with reuse tensors
        stmt = NEXT_PASS(ToThreeAddress, stmt, false, 0, true);
      } else {
        if (global_attrs.GetBoolAttr(kToThreeAddressReuse, false)) {
          int min_split = global_attrs.GetIntAttr(kToThreeAddressMinSplit, 10);
          if (min_split > 0) {
            stmt = NEXT_PASS(ToThreeAddress, stmt, true, min_split);
          } else {
            stmt = NEXT_PASS(ToThreeAddress, stmt, true);
          }
        } else {
          stmt = NEXT_PASS(ToThreeAddress, stmt);
        }
      }
    }
    if (!global_attrs.GetBoolAttr(kDisableCse, false)) {
      stmt = NEXT_PASS(StmtCSE, stmt, binds_0);
    }
    if (!global_attrs.GetBoolAttr(kDisableVn, false)) {
      stmt = NEXT_PASS(ValueNumbering, stmt);
    }
    if (!global_attrs.GetBoolAttr(kDisableHalfToFloatSumOpt, false)) {
      stmt = NEXT_PASS(HalfReduceSumRewrite, stmt, binds_0);
    }
    stmt = NEXT_PASS(StmtPatternRewrite, stmt);
    stmt = NEXT_PASS(CopyPropagation, stmt, binds_0);
    stmt = NEXT_PASS(MathIntrinRewrite, stmt);
    if (global_attrs.GetBoolAttr(kRewriteVarTensorIdx, false)) {
      stmt = NEXT_PASS(RewriteVarTensorIdx, stmt, binds_0);
    } else {
      stmt = NEXT_PASS(RewriteTensorIndex, stmt);
    }
    if (global_attrs.GetBoolAttr(kEnableFeatureLibrary, false) ||
        global_attrs.GetBoolAttr(kEnableFeatureLibraryPrePoly, false)) {
      stmt = NEXT_PASS(FeatureLibTransform, stmt);
    }
    stmt = NEXT_PASS(UnrollLoop, stmt, -1, -1, 1, true);
    stmt = NEXT_PASS(SinkIfStmt, stmt);
    int level = global_attrs.GetIntAttr(kHelpTiling, -1);
    if (tuning || level > help_tiling_level["None"]) {
      if (tuning) {
        level = help_tiling_level["Tuning"];
      }

      Map<std::string, NodeRef> attrs_1 = global_attrs;
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      attrs_1.Set(kDumpTuningLevel, air::make_const(Int(32), level));
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      NodeRef tuning_spaces = NEXT_PASS(GenTuningSpace, stmt, binds_0, attrs_1, false);
      return tuning_spaces;
    }
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  }
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  // micro-tuning configs: current strategy is to retry autopoly up to 3 times when storage flatten/rewrite fails
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  bool need_micro_tuning =
    target != "aicpu" && polyhedral && !is_dynamic && global_attrs.GetStringAttr("dim", "").empty();
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  const int max_enter_poly_times = global_attrs.GetIntAttr(kMaxNumRetryPoly, need_micro_tuning ? 4 : 1);
  int enter_count = 0;
  Stmt stmt_before_poly = stmt;
  while (enter_count < max_enter_poly_times) {
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    if (target != "aicpu" && polyhedral) {
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      Array<NodeRef> poly_res = NEXT_PASS(AutoPoly, stmt_before_poly, binds_0, global_attrs, false, is_dynamic);
      enter_count++;
      CHECK_EQ(poly_res.size(), 2);
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      stmt = air::Downcast<Stmt>(poly_res[0]);
      Array<air::Var> tiling_params = air::Downcast<Array<air::Var>>(poly_res[1]);
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      for (const auto &var : tiling_params) {
        arg_list_0.push_back(var);
      }
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      if (global_attrs.GetBoolAttr(kTileSizeIsVar, false)) {
        Array<NodeRef> arg_list_2;
        Map<Tensor, Buffer> binds_2;
        FixParametricBinds(binds_0, arg_list_0, config, &binds_2, &arg_list_2);
        stmt = NEXT_PASS(FixBindBuffer, stmt, binds_2);
        arg_list_0 = arg_list_2;
        binds_0 = binds_2;
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      }

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      if (is_dynamic) {
        if (global_attrs.GetBoolAttr(kEnableSubstituteDivVar, false)) {
          stmt = NEXT_PASS(SubstituteDivVar, stmt);
        }

        // fix var addresses because poly identify vars by name
        stmt = NEXT_PASS(UnifyLoopVars, stmt, binds_0, arg_list_0);
        // isolate dynamic tile loops (isolate body and tail)
        if (global_attrs.GetBoolAttr(kEnableIsolateLoop, true)) {
          stmt = NEXT_PASS(IsolateLoops, stmt, global_attrs.GetBoolAttr(kEnableIsolateMinMax, false));
          stmt = NEXT_PASS(PromoteLetStmt, stmt, arg_list_0);
        }
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      }

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      // pls do not insert pass between AutoPoly and cube special pass.
      // cube special pass begin
      stmt = NEXT_PASS(ExprPatternRewrite, stmt);
      stmt = NEXT_PASS(AutoMadPragmaAttr, stmt);
      stmt = NEXT_PASS(PostFusion, stmt, binds_0, is_dynamic);
      stmt = NEXT_PASS(ReduceFusionOpt, stmt, binds_0);
      stmt = NEXT_PASS(PostProcessImg2col, stmt);
      stmt = NEXT_PASS(PromoteIfStmt, stmt, is_dynamic);
      stmt = NEXT_PASS(BypassL1, stmt);
      if (global_attrs.GetBoolAttr(kEnableStrideKernelOp, true)) {
        stmt = NEXT_PASS(StrideKernelOp, stmt, binds_0, is_dynamic);
      }
      stmt = NEXT_PASS(Load3dTrans, stmt, is_dynamic);
      // cube special pass end
      stmt = NEXT_PASS(CopyPropagation, stmt, binds_0);
      stmt = NEXT_PASS(ConvertCondToExtent, stmt);
      bool enable_convert_if = global_attrs.GetBoolAttr(kEnableConvertIf, false);
      if (enable_convert_if) {
        stmt = NEXT_PASS(FixRealizeShape, stmt);
      }
      if (global_attrs.GetBoolAttr(kEnableDmaSink, false)) {
        stmt = NEXT_PASS(DMASink, stmt);
      }
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      stmt = NEXT_PASS(LowerWith, stmt);
      stmt = NEXT_PASS(ForEliminate, stmt);
      stmt = NEXT_PASS(RealizeCompress, stmt);
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      if (!global_attrs.GetBoolAttr(kCoarsenImg2Col, false)) {
        stmt = NEXT_PASS(LoopNormlize, stmt);
      }
      stmt = NEXT_PASS(PoolingTransform, stmt, is_dynamic);
      stmt = NEXT_PASS(InjectAttr, stmt);
      stmt = NEXT_PASS(ModDivEliminate, stmt);
      if (enable_convert_if) {
        stmt = NEXT_PASS(AlignLastAxisLoopExtent, stmt, binds_0);
        stmt = NEXT_PASS(FixLoopExtent, stmt);
        stmt = NEXT_PASS(ConvertIfToSelect, stmt);
      }
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    }
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    try {
      stmt = NEXT_PASS(StorageFlatten, stmt, binds_0, 64);
    } catch (const std::runtime_error &e) {
      if (enter_count >= max_enter_poly_times) {
        CHECK(false) << e.what();
      }
      global_attrs.Set(kErrorInfo, StringImm::make(e.what()));
      continue;
    }
    stmt = NEXT_PASS(DmaFlatten, stmt, global_attrs.GetBoolAttr(kTileSizeIsVar, false));
    if (global_attrs.GetBoolAttr(kAlgebraSimplify, false) && is_dynamic) {
      stmt = NEXT_PASS(AlgebraSimplify, stmt);
    }
    if (is_dynamic) {
      stmt = NEXT_PASS(UnifyAllocate, stmt);
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    }

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    if (global_attrs.GetBoolAttr(kEleminateOutmostForCond, false)) {
      stmt = NEXT_PASS(PreProcess4Multicore, stmt);
    }
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    int enable_multicore = global_attrs.GetIntAttr(kEnableMulticore, 1);
    if (!is_dynamic && enable_multicore != 0 && global_attrs.GetBoolAttr(kMultiCoreLoopSwitchHoist, true)) {
      stmt = NEXT_PASS(MultiCoreLoopSwitchHoist, stmt);
    }
    stmt = NEXT_PASS(LoopSwitchHoist, stmt, global_attrs.GetIntAttr(kEnableHoistAllocate, false));
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    // Loop Partition args : 2 : split_const_loop, 3 : remove Div / Mod ops by partitioning,
    //                       4 : whether to partition convolution or not
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    if (target != "aicpu" && global_attrs.GetBoolAttr(kEnablePostPolyLoopPartition, true)) {
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      stmt = NEXT_PASS(LoopPartitionCCE, stmt, true, false, !polyhedral);
    }
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    if (polyhedral && global_attrs.GetBoolAttr(kEnableSinkAllocate, true)) {
      stmt = NEXT_PASS(SinkAllocate, stmt);
    }
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    if (global_attrs.GetBoolAttr(kLoopPartitionUnroll, false)) {
      // For the Manual scheduling or When polyhedral is not used
      stmt = NEXT_PASS(UnrollNonConstantExtent, stmt);
    }
    if (!polyhedral) {
      // fix mad attributes and remove dead computations for the manual schedule
      stmt = NEXT_PASS(FixMadAttrs, stmt);
    }
    if (!is_dynamic) {
      stmt = NEXT_PASS(CanonicalSimplify, stmt);
    }
    stmt = NEXT_PASS(ForEliminate, stmt);
    if (global_attrs.GetBoolAttr(kAlgebraSimplify, false) && is_dynamic) {
      stmt = NEXT_PASS(AlgebraSimplify, stmt);
    }
    if (!is_dynamic) {
      stmt = NEXT_PASS(FixLoopExtent, stmt);
    }
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    if (target != "aicpu") {
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      stmt = NEXT_PASS(AutoPragma, stmt);
    }
    stmt = NEXT_PASS(EliminateAtomicDma, stmt);
    if (global_attrs.GetBoolAttr(kDeadCodeElim, false)) {
      stmt = NEXT_PASS(DeadCodeElim, stmt);
    }
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    if (is_dynamic) {
      stmt = NEXT_PASS(AnalyzeMinAlignDynamic, stmt, global_attrs.GetIntAttr(kEnableConvAnalyzeAlign, true),
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                       global_attrs.GetIntAttr(kEnableScalarAlign, false));
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    } else {
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      stmt = NEXT_PASS(RewriteBroadcastVector, stmt);
      stmt = NEXT_PASS(OptimizePragma, stmt);
      stmt = NEXT_PASS(MergeLoops, stmt, false);
      stmt = NEXT_PASS(PackStore, stmt);
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      stmt = NEXT_PASS(AnalyzeMinAlignStatic, stmt);
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      stmt = NEXT_PASS(RecoverStore, stmt);
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    }
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    stmt = NEXT_PASS(MultiLastAxisReductions, stmt, is_dynamic);
    stmt = NEXT_PASS(AutoReorder, stmt);
    if (enable_multicore != 0) {
      if (is_dynamic && enable_multicore == 1) {
        Var block_dim = Variable::make(Int(32), "blockDim");
        Array<NodeRef> multicore_res =
          NEXT_PASS(InjectMultiCoreVar, stmt, block_dim, global_attrs.GetIntAttr(kMergeOuterLoop, 0));
        CHECK_EQ(multicore_res.size(), 2);
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        stmt = air::Downcast<Stmt>(multicore_res[0]);
        auto extent_thread = air::Downcast<Integer>(multicore_res[1]);
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        if (extent_thread.as<IntImm>()->value == -1) {
          arg_list_0.push_back(block_dim);
        }
      } else {
        int block_dim = enable_multicore == 1 ? -1 : enable_multicore;
        stmt = NEXT_PASS(InjectMultiCore, stmt, block_dim, global_attrs.GetIntAttr(kMergeOuterLoop, 0), is_dynamic,
                         global_attrs.GetBoolAttr(kMultiCoreScalarRerrange, false));
      }
    }
    if (!is_dynamic) {
      RecordCore(stmt, global_attrs.GetBoolAttr(kRecordCore, false));
    }
    stmt = NEXT_PASS(SelectLower, stmt);
    stmt = NEXT_PASS(ReplaceFargmaxCasts, stmt);
    if (global_attrs.GetBoolAttr(kEnableCoverProtectOptimize, true) && !is_dynamic) {
      stmt = NEXT_PASS(GatherLoopInfo, stmt);
    }
    stmt = NEXT_PASS(CastFilter, stmt);
    if (!is_dynamic) {
      stmt = NEXT_PASS(SplitTail, stmt);
    }
    stmt = NEXT_PASS(EmitInsn, stmt, global_attrs.GetBoolAttr(kEnableBisectOptimize, true),
                     global_attrs.GetBoolAttr(kEnableCoverProtectOptimize, true), binds_0, is_dynamic);
    // must be after EmitInsn
    stmt = NEXT_PASS(TileCoverCorrect, stmt);
    if (global_attrs.GetBoolAttr(kEnableCoverProtectOptimize, true) && !is_dynamic) {
      // simulated blocks > 2 400 000 => simulated case takes too much time (> 100 sec)
      // number of protections > 512 => too many brackets in the if statement throw an error
      stmt = NEXT_PASS(CoverProtection, stmt, 2400000, 512);
    }
    stmt = NEXT_PASS(ConvertDivModToShift, stmt);
    if (!polyhedral || global_attrs.GetBoolAttr(kCoarsenImg2Col, false)) {
      // for conv manual schedule and load3d
      stmt = NEXT_PASS(CoarsenImg2Col, stmt);
    }
    stmt = NEXT_PASS(DTypeAdapter, stmt);
    if (global_attrs.GetBoolAttr(kEnableHoistInsn, true)) {
      stmt = NEXT_PASS(HoistInsn, stmt);
    }
    // temp disable InvariantHoist for dynamic shape because it may move LetStmt out of scope
    if (global_attrs.GetBoolAttr(kEnableInvariantHoist, true)) {
      stmt = NEXT_PASS(InvariantHoist, stmt);
    }
    stmt = NEXT_PASS(SetVectorMaskDefault, stmt);
    stmt = NEXT_PASS(ElimVectorMask, stmt);
    stmt = NEXT_PASS(ElimDMA, stmt);
    if (!is_dynamic) {
      stmt = NEXT_PASS(MultiCorePartition, stmt);
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    }

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    if (global_attrs.GetBoolAttr(kEnableDoubleBuffer, true)) {
      stmt = NEXT_PASS(AutoDoubleBuffer, stmt);
    }
    stmt = NEXT_PASS(InjectAccessPtrMSG, stmt);
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    if (target != "aicpu") {
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      stmt = NEXT_PASS(InjectPipe, stmt);
    }
    stmt = NEXT_PASS(ModDivEliminate, stmt);
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    // Phase 2
    if (!simple_mode && global_attrs.GetBoolAttr(kEnablePostPolyLoopPartition, true) && !is_dynamic) {
      stmt = NEXT_PASS(LoopPartitionCCE, stmt, config->partition_const_loop, true, !polyhedral);
    }
    if (global_attrs.GetBoolAttr(kEnablePreStorageWriteSimplify, false)) {
      stmt = NEXT_PASS(AlgebraSimplify, stmt);
    }
    std::string maxsat_filename = global_attrs.GetStringAttr(kMaxsatFile, std::string());
    // attempt to optimize UB memory layout to reduce bank conflicts and pipeline conflicts
    bool use_bc_opt = global_attrs.GetBoolAttr(kUseBcOpt, true);
    // run MaxSAT solver for bank conflicts with no limits on model size or runtime
    bool bc_no_limits = false;
    // timeout for MaxSAT solver in seconds (int)
    int maxsat_timeout = 4;
    try {
      stmt = NEXT_PASS(StorageRewriteCCE, stmt, maxsat_filename, use_bc_opt, bc_no_limits, maxsat_timeout);
    } catch (MemoryAllocationException &e) {
      if (enter_count >= max_enter_poly_times) {
        CHECK(false) << e.what();
      }
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      global_attrs.Set(kAllocBits, air::make_const(Int(32), e.alloc_bits_ + e.need_bits_));
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      global_attrs.Set(kErrorScope, StringImm::make(e.scope_));
      continue;
    }
    break;
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  }

  if (!is_dynamic)
    stmt = NEXT_PASS(UnrollLoop, stmt, config->auto_unroll_max_step, config->auto_unroll_max_depth,
                     config->auto_unroll_max_extent, config->unroll_explicit);

  stmt = NEXT_PASS(SpecialValueReplacer, stmt);
  stmt = NEXT_PASS(Simplify, stmt);
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  if (target != "aicpu") {
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    stmt = NEXT_PASS(InjectSync, stmt);
  }

  // Phase 3
  stmt = NEXT_PASS(RemoveAccessPtrMSG, stmt);
  if (is_dynamic) {
    // check undefined loop vars
    stmt = NEXT_PASS(UnifyLoopVars, stmt, binds_0, arg_list_0);
    stmt = NEXT_PASS(PromoteLetStmt, stmt, arg_list_0);
    if (global_attrs.GetBoolAttr(kPromoteCommonExpr, true)) {
      stmt = NEXT_PASS(PromoteCommonExpr, stmt);
    }
    if (global_attrs.GetBoolAttr(kPromoteConstExpr, true)) {
      stmt = NEXT_PASS(PromoteConstExpr, stmt);
    }
  }
  stmt = NEXT_PASS(Simplify, stmt);
  stmt = NEXT_PASS(LowerStorageAccessInfoCCE, stmt);
  if (is_dynamic) {
    stmt = NEXT_PASS(RewriteFloorDiv, stmt);
    stmt = NEXT_PASS(RemoveAssert, stmt);
  }
  stmt = NEXT_PASS(RemoveNoOp, stmt);
  if (is_dynamic) {
    stmt = NEXT_PASS(SpecifyMinMaxDataType, stmt);
  }
  if (!config->disable_select_rewriting) {
    stmt = NEXT_PASS(RewriteUnsafeSelect, stmt);
  }

  if (is_dynamic) {
    Array<NodeRef> collect_res = NEXT_PASS(CollectExternalCall, stmt);
    CHECK_EQ(collect_res.size(), 2);
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    stmt = air::Downcast<Stmt>(collect_res[0]);
    g_external_call_name = air::Downcast<Array<NodeRef>>(collect_res[1]);
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    // CastKernelParams should be before DecorateDeviceScope
    Array<NodeRef> cast_res = NEXT_PASS(CastKernelParams, stmt, arg_list_0);
    CHECK_EQ(cast_res.size(), 2);
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    stmt = air::Downcast<Stmt>(cast_res[0]);
    arg_list_0 = air::Downcast<Array<NodeRef>>(cast_res[1]);
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  }

  stmt = NEXT_PASS(DecorateDeviceScope, stmt);

  // Instrument BoundCheckers
  if (config->instrument_bound_checkers) {
    stmt = NEXT_PASS(InstrumentBoundCheckers, stmt);
  }

  if (simple_mode) {
    return stmt;
  }
  PassMgr::SetArgs(arg_list_0);
  LoweredFunc lowered_func = NEXT_PASS(MakeAPI, stmt, name, arg_list_0, 0, config->restricted_func);

  LOG(INFO) << *pass_timer;
  pass_timer->Clear();

  return lowered_func;
}

void BuildForDevice(const Array<LoweredFunc> &flist, const std::string &target_name,
                    const std::string &target_host_name, Array<LoweredFunc> *out_flist,
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                    air::runtime::Module *out_mdev) {
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  CHECK(out_flist != nullptr) << "out_flist is nullptr.";
  CHECK(out_mdev != nullptr) << "out_mdev is nullptr.";

  Target target = Target::Create(target_name);
  TVMContext context{kDLCce, 0};
  DLDeviceType device_type = context.device_type;

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  Array<LoweredFunc> fhost;
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  Array<LoweredFunc> fdevice;
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  for (auto func : flist) {
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    if (func->func_type == air::LoweredFuncType::kMixedFunc) {
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      if (target_name == "cuda") {
        if (BuildConfig::Current()->detect_global_barrier) {
          func = NEXT_PASS(ThreadSync, func, "global");
        }
        func = NEXT_PASS(ThreadSync, func, "shared");
        func = NEXT_PASS(ThreadSync, func, "warp");
        func = NEXT_PASS(InferFragment, func);
        func = NEXT_PASS(LowerThreadAllreduce, func, target->thread_warp_size);
      }
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      Array<LoweredFunc> fsplits = NEXT_PASS(SplitHostDevice, func);
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      fhost.push_back(fsplits[0]);
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      for (size_t idx = 1; idx < fsplits.size(); idx++) {
        fdevice.push_back(fsplits[idx]);
      }
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    } else if (func->func_type == air::LoweredFuncType::kHostFunc) {
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      fhost.push_back(func);
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    } else if (func->func_type == air::LoweredFuncType::kDeviceFunc) {
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      fdevice.push_back(func);
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    } else {
      LOG(FATAL) << "unknown function type " << func->func_type;
    }
  }

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  if (target_name == "cuda") {
    for (size_t i = 0; i < fdevice.size(); ++i) {
      fdevice.Set(i, NEXT_PASS(LowerWarpMemory, fdevice[i], target->thread_warp_size));
    }
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  }
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  for (size_t i = 0; i < fhost.size(); ++i) {
    fhost.Set(i, NEXT_PASS(BindDeviceType, fhost[i], static_cast<int>(device_type)));
    fhost.Set(i, NEXT_PASS(LowerTVMBuiltin, fhost[i]));
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  }

  Target target_host = Target::Create(target_host_name);
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  for (size_t i = 0; i < fdevice.size(); ++i) {
    if (target_name == "cuda") {
      fdevice.Set(i, NEXT_PASS(LowerDeviceStorageAccessInfo, fdevice[i]));
    }
    fdevice.Set(i, NEXT_PASS(LowerIntrin, fdevice[i], target->target_name));
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  }

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  for (size_t i = 0; i < fhost.size(); ++i) {
    if (target_name == "cuda") {
      fhost.Set(i, NEXT_PASS(LowerDeviceStorageAccessInfo, fhost[i]));
    }
    fhost.Set(i, NEXT_PASS(LowerIntrin, fhost[i], target_host->target_name));
    fhost.Set(i, NEXT_PASS(CombineContextCall, fhost[i]));
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  }
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  for (const auto &func : fhost) {
    out_flist->push_back(func);
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  }
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  *out_mdev = air::codegen::Build(fdevice, target_name, g_external_call_name);
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  return;
}

BuildRst BuildRstNode::make(const NodeRef &rst, const std::string &kernel_name) {
  NodePtr<BuildRstNode> node = make_node<BuildRstNode>();

  node->rst = rst;
  node->kernel_name = kernel_name;

  return BuildRst(node);
}

TVM_REGISTER_NODE_TYPE(BuildRstNode);

BuildRst BuildToFunc(const Schedule &inputs, const Array<NodeRef> &in_args, const Array<NodeRef> &shape_vars,
                     const std::string &name, const Map<Tensor, Buffer> &in_binds,
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                     const Map<std::string, NodeRef> &in_attrs, bool polyhedral, const std::string &target,
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                     const BuildConfig &config) {
  CHECK(inputs.defined()) << "inputs is not defined.";
  CHECK(!name.empty()) << "name is empty.";

  Array<NodeRef> args;
  if (in_args.defined()) {
    args = in_args;
  }
  Map<Tensor, Buffer> binds;
  if (in_binds.defined()) {
    binds = in_binds;
  }
  Map<std::string, NodeRef> attrs;
  if (in_attrs.defined()) {
    attrs = in_attrs;
  }

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  auto rst = Lower(inputs, args, shape_vars, name, binds, attrs, false, polyhedral, false, target, config);
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  return BuildRstNode::make(rst, name);
}

namespace {
void CreateCce(const std::string &code, const std::string &kernel_name) {
  std::string file_name = kMsDavinciKernelPath;
  file_name.append(kernel_name).append(".cce");
  std::ofstream of(file_name);
  CHECK(of.is_open()) << "Failed to open " << file_name << " to dump cce.";
  of << code << std::endl;
  of.close();
}
}  // namespace

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air::runtime::Module BuildToModule(const NodeRef &ref, const std::string &target_name) {
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  CHECK(!target_name.empty()) << "target_name is empty.";

  auto build_rst = Downcast<BuildRst>(ref);
  auto res = build_rst->rst;

  Array<LoweredFunc> lowered_func_list;
  if (res->IsInstance<LoweredFuncNode>()) {
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    LoweredFunc lowered_func = air::Downcast<LoweredFunc>(res);
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    lowered_func_list.push_back(lowered_func);
  }
  if (lowered_func_list.empty()) {
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    return air::runtime::Module(nullptr);
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  }

  Map<std::string, Array<LoweredFunc>> target_flist;
  target_flist.Set(target_name, lowered_func_list);

  Array<LoweredFunc> fhost_all;
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  std::vector<air::runtime::Module> device_modules;
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  for (auto iter : target_flist) {
    Array<LoweredFunc> out_flist;
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    air::runtime::Module out_mdev;
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    BuildForDevice(iter.second, iter.first, kAkgTargetHostName, &out_flist, &out_mdev);

    // Save the current lowered functions of the host and the device module.
    for (const auto &func : out_flist) {
      fhost_all.push_back(func);
    }
    device_modules.push_back(out_mdev);
  }

  // Generate a unified host module.
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  air::runtime::Module mhost = air::codegen::Build(fhost_all, kAkgTargetHostName, g_external_call_name);
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  // Import all modules.
  for (const auto &mdev : device_modules) {
    mhost.Import(mdev);
  }

  const char *akg_dump_cce = getenv("MS_AKG_DUMP_CCE");
  if (akg_dump_cce != nullptr) {
    auto mod0 = mhost->imports()[0];
    CHECK(mod0.defined());

    CreateCce(mod0->GetSource(), build_rst->kernel_name);
  }

  return mhost;
}

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air::runtime::Module BuildModule(const Schedule &inputs, const Array<NodeRef> &in_args,
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                                 const Array<NodeRef> &shape_vars, const std::string &target_name,
                                 const std::string &name, const Map<Tensor, Buffer> &in_binds,
                                 const Map<std::string, NodeRef> &in_attrs, bool polyhedral, const std::string &target,
                                 const BuildConfig &config) {
  auto func = BuildToFunc(inputs, in_args, shape_vars, name, in_binds, in_attrs, polyhedral, target, config);
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  return BuildToModule(func, target_name);
}

TVM_REGISTER_API("_BuildModule").set_body_typed(BuildModule);
TVM_REGISTER_API("_BuildToFunc").set_body_typed(BuildToFunc);
TVM_REGISTER_API("_BuildToModule").set_body([](const TVMArgs &args, TVMRetValue *ret) {
  if (args.size() == 1) {
    *ret = BuildToModule(args[0]);
  } else if (args.size() == 2) {
    *ret = BuildToModule(args[0], args[1]);
  } else {
    LOG(FATAL) << "arg num must be 1 or 2, but given " << args.size();
  }
});

TVM_REGISTER_API("_Lower").set_body([](const TVMArgs &args, TVMRetValue *ret) {
  if (args.size() == 11) {
    NodeRef lowered_func =
      Lower(args[0], args[1], args[2], args[3], args[4], args[5], args[6], args[7], args[8], args[9], args[10]);
    *ret = lowered_func;
  }
});

TVM_REGISTER_API("akg.build_module.get_binds").set_body([](const TVMArgs &args, TVMRetValue *ret) {
  auto config = BuildConfig::Current();
  Array<NodeRef> inputs;
  Map<Tensor, Buffer> binds;
  if (args.size() >= 1) {
    inputs = args[0];
  } else if (args.size() >= 2) {
    inputs = args[0];
    binds = args[1];
  }

  Array<NodeRef> out_inputs;
  Map<Tensor, Buffer> out_binds;

  GetBinds(inputs, binds, config, &out_inputs, &out_binds);
  *ret = Array<NodeRef>{out_binds, out_inputs};
});
}  // namespace akg