jitcode.h 3.7 KB
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/* Copyright (c) 2018 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. */

#pragma once

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#include <string>
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#include <type_traits>
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#include "paddle/fluid/operators/jit/gen_base.h"
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#include "paddle/fluid/platform/cpu_info.h"
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#define XBYAK_USE_MMAP_ALLOCATOR
#include "xbyak/xbyak.h"
#include "xbyak/xbyak_util.h"

namespace paddle {
namespace operators {
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namespace jit {
namespace gen {
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// Application Binary Interface
constexpr Xbyak::Operand::Code abi_param1(Xbyak::Operand::RDI),
    abi_param2(Xbyak::Operand::RSI), abi_param3(Xbyak::Operand::RDX),
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    abi_param4(Xbyak::Operand::RCX), abi_param5(Xbyak::Operand::R8),
    abi_param6(Xbyak::Operand::R9);
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constexpr Xbyak::Operand::Code g_abi_regs[] = {
    Xbyak::Operand::RBX, Xbyak::Operand::RBP, Xbyak::Operand::R12,
    Xbyak::Operand::R13, Xbyak::Operand::R14, Xbyak::Operand::R15};

constexpr int num_g_abi_regs = sizeof(g_abi_regs) / sizeof(g_abi_regs[0]);

using reg64_t = const Xbyak::Reg64;
using reg32_t = const Xbyak::Reg32;
using xmm_t = const Xbyak::Xmm;
using ymm_t = const Xbyak::Ymm;
using zmm_t = const Xbyak::Zmm;
using Label = Xbyak::Label;

typedef enum {
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  MUL = 0,
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  MAX,
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  ADD,
  SUB,
  RELU,
  EXP,
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  SQUARE,
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  SIGMOID,
  TANH,
  IDENTITY
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} operand_type;

#define DECLARE_JIT_CODE(codename) \
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  std::string name() const override { return #codename; }
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class JitCode : public GenBase, public Xbyak::CodeGenerator {
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 public:
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  explicit JitCode(size_t code_size, void* code_ptr = nullptr)
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      : Xbyak::CodeGenerator(
            (code_size % 4096 != 0 ? (code_size / 4096 + 1) * 4096 : code_size),
            code_ptr) {}
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  virtual void genCode() = 0;
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  size_t getSize() const override { return CodeGenerator::getSize(); }
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  const unsigned char* getCodeInternal() override {
    const Xbyak::uint8* code = CodeGenerator::getCode();
    return code;
  }
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 protected:
  Xbyak::Reg64 param1{abi_param1};
  const int EVEX_max_8b_offt = 0x200;
  const Xbyak::Reg64 reg_EVEX_max_8b_offt = rbp;

  virtual void preCode() {
    for (int i = 0; i < num_g_abi_regs; ++i) {
      push(Xbyak::Reg64(g_abi_regs[i]));
    }
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    if (platform::MayIUse(platform::avx512f)) {
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      mov(reg_EVEX_max_8b_offt, 2 * EVEX_max_8b_offt);
    }
  }
  virtual void postCode() {
    for (int i = 0; i < num_g_abi_regs; ++i) {
      pop(Xbyak::Reg64(g_abi_regs[num_g_abi_regs - 1 - i]));
    }
    ret();
  }
  void L(const char* label) { Xbyak::CodeGenerator::L(label); }
  void L(const Xbyak::Label& label) { Xbyak::CodeGenerator::L(label); }
  // Enhanced vector extension
  Xbyak::Address EVEX_compress_addr(Xbyak::Reg64 base, int offt,
                                    bool bcast = false) {
    int scale = 0;
    // Learn from https://github.com/intel/mkl-dnn
    if (EVEX_max_8b_offt <= offt && offt < 3 * EVEX_max_8b_offt) {
      offt = offt - 2 * EVEX_max_8b_offt;
      scale = 1;
    } else if (3 * EVEX_max_8b_offt <= offt && offt < 5 * EVEX_max_8b_offt) {
      offt = offt - 4 * EVEX_max_8b_offt;
      scale = 2;
    }
    auto re = Xbyak::RegExp() + base + offt;
    if (scale) {
      re = re + reg_EVEX_max_8b_offt * scale;
    }
    if (bcast) {
      return zword_b[re];
    } else {
      return zword[re];
    }
  }
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};

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}  // namespace gen
}  // namespace jit
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}  // namespace operators
}  // namespace paddle