/**

* Copyright (c) 2025 Huawei Technologies Co., Ltd.

* This program is free software, you can redistribute it and/or modify it under the terms and conditions of

* CANN Open Software License Agreement Version 2.0 (the "License").

* Please refer to the License for details. You may not use this file except in compliance with the License.

* THIS SOFTWARE IS PROVIDED ON AN "AS IS" BASIS, WITHOUT WARRANTIES OF ANY KIND, EITHER EXPRESS OR IMPLIED,

* INCLUDING BUT NOT LIMITED TO NON-INFRINGEMENT, MERCHANTABILITY, OR FITNESS FOR A PARTICULAR PURPOSE.

* See LICENSE in the root of the software repository for the full text of the License.

*/



/*!

 * \file kernel_operator_mm_intf.h

 * \brief

 */

#ifndef ASCENDC_MODULE_OPERATOR_MM_INTERFACE_H

#define ASCENDC_MODULE_OPERATOR_MM_INTERFACE_H



#include "kernel_macros.h"

#include "common_types.h"

#include "kernel_operator_mm_base_impl.h"

#include "kernel_struct_mm.h"

#include "kernel_tensor.h"

#include "utils/kernel_utils_constants.h"

#include "utils/kernel_utils_macros.h"

#include "tile_api/kernel_tensor_tile_intf_utils.h"



#if (__NPU_ARCH__ == 3101) || (__NPU_ARCH__ == 5102)

#include "kernel_operator_mm_bitmode_intf.h"

#endif



#if defined(ASCENDC_CPU_DEBUG) && ASCENDC_CPU_DEBUG == 1

#include <cstdint>

#include "stub_def.h"

#endif



namespace AscendC {



enum class HF32Mode {

    ENABLE,

    DISABLE

};



enum class HF32TransMode {

    NEAREST_ZERO,

    NEAREST_EVEN

};



/* **************************************************************************************************

 * LoadData 2d                                             *

 * ************************************************************************************************* */

/*

 * @ingroup DataLoad

 * @brief Cube data loading

 * @param [out] dst output LocalTensor

 * @param [in] src input LocalTensor

 * @param [in] loadDataParams.startIndex Fractal matrix ID

 * @param [in] loadDataParams.repeatTimes repeat times

 * @param [in] loadDataParams.srcStride src block stride

 * @param [in] loadDataParams.sid SMMU SID

 * @param [in] loadDataParams.dstGap interval between the previous tail and the next fractal head

 * @param [in] loadDataParams.ifTranspose enable parameters of transpose function

 */

template <typename T>

__aicore__ inline void LoadData(const LocalTensor<T>& dst, const LocalTensor<T>& src,

    const LoadData2DParams& loadDataParams);



template <typename T>

__aicore__ inline __inout_pipe__(MTE2) void LoadData(const LocalTensor<T>& dst, const GlobalTensor<T>& src,

    const LoadData2DParams& loadDataParams);



/* **************************************************************************************************

 * LoadData 2dV2                                             *

 * ************************************************************************************************* */

/*

 * @ingroup DataLoad

 * @brief Cube data loading

 * @param [out] dst output LocalTensor

 * @param [in] src input LocalTensor/GlobalTensor

 * @param [in] loadDataParams.mStartPosition m start position

 * @param [in] loadDataParams.kStartPosition k start position

 * @param [in] loadDataParams.srcStride src block stride

 * @param [in] loadDataParams.dstStride dst block stride

 * @param [in] loadDataParams.mStep m step

 * @param [in] loadDataParams.kStep k step

 * @param [in] loadDataParams.sid SMMU SID

 * @param [in] loadDataParams.ifTranspose enable parameters of transpose function

 */

template <typename T>

__aicore__ inline void LoadData(const LocalTensor<T>& dst, const LocalTensor<T>& src,

    const LoadData2DParamsV2& loadDataParams);



template <typename T>

__aicore__ inline __inout_pipe__(MTE2) void LoadData(const LocalTensor<T>& dst, const GlobalTensor<T>& src,

    const LoadData2DParamsV2& loadDataParams);



#if (__NPU_ARCH__ == 3101) || (__NPU_ARCH__ == 5102)

template <typename T, typename U = T>

__aicore__ inline void LoadData(const LocalTensor<U>& dst, const LocalTensor<T>& src,

    const LocalTensor<fp8_e8m0_t>& srcMx, const LoadData2DParamsV2& loadDataParams,

    const LoadData2DMxParams& loadMxDataParams);

#endif



#if defined(__NPU_ARCH__) && (__NPU_ARCH__ == 5102)

template <typename T, typename U>

__aicore__ inline __inout_pipe__(MTE2) void LoadData(const LocalTensor<T>& dst, const GlobalTensor<U>& src,

    const LoadData2DParamsV2& loadDataParams, const Nd2NzParamsV2& nd2nzParams)

{

    LoadDataImpl(dst, src, loadDataParams, nd2nzParams);

}

#endif



/* **************************************************************************************************

 * LoadData 3dv1                                             *

 * ************************************************************************************************* */

/*

 * @ingroup DataLoad

 * @brief Cube data loading

 * @param [out] dst output LocalTensor

 * @param [in] src input LocalTensor

 * @param [in] loadDataParams.padList padding list

 * @param [in] loadDataParams.l1H operand height

 * @param [in] loadDataParams.l1W operand width

 * @param [in] loadDataParams.c1Inde The starting point of the tensor C1 dimension

 * @param [in] loadDataParams.fetchFilterW The starting position of the w dimension on the convolution kernel

 * @param [in] loadDataParams.fetchFilterH The starting position of the H dimension on the convolution kernel

 * @param [in] loadDataParams.leftTopW Start point of the W dimension on the source operand

 * @param [in] loadDataParams.leftTopH Start point of the H dimension on the source operand

 * @param [in] loadDataParams.strideW W dimension stride

 * @param [in] loadDataParams.strideH H dimension stride

 * @param [in] loadDataParams.filterW Convolution kernel width

 * @param [in] loadDataParams.filterH Convolution kernel height

 * @param [in] loadDataParams.dilationFilterW Convolution kernel width expansion coefficient

 * @param [in] loadDataParams.dilationFilterH Convolution kernel height expansion coefficient

 * @param [in] loadDataParams.jumpStride repeat stride

 * @param [in] loadDataParams.repeatMode repeat mode

 * @param [in] loadDataParams.repeatTimes repeat times

 * @param [in] loadDataParams.cSize judge whether to turn on optimization

 * @param [in] loadDataParams.padValue Value of Pad filling value

 */

template <typename T, const IsResetLoad3dConfig &defaultConfig = IS_RESER_LOAD3D_DEFAULT_CONFIG,

    typename U = PrimT<T>, typename Std::enable_if<Std::is_same<PrimT<T>, U>::value, bool>::type = true>

__aicore__ inline void LoadData(const LocalTensor<T>& dst, const LocalTensor<T>& src,

    const LoadData3DParamsV1<U>& loadDataParams);



/* **************************************************************************************************

 * LoadData 3dv2                                             *

 * enhanced from v1, suitable for aicore > 200                                             *

 * ************************************************************************************************* */

/*

 * @ingroup DataLoad

 * @brief Cube data loading

 * @param [out] dst output LocalTensor

 * @param [in] src input LocalTensor

 * @param [in] loadDataParams.padList padding list

 * @param [in] loadDataParams.l1H operand height

 * @param [in] loadDataParams.l1W operand width

 * @param [in] loadDataParams.channelSize number of channels

 * @param [in] loadDataParams.kExtension Transmission length of K dimension

 * @param [in] loadDataParams.mExtension Transmission length of M dimension

 * @param [in] loadDataParams.kStartPt Start point of K dimension

 * @param [in] loadDataParams.mStartPt Start point of M dimension

 * @param [in] loadDataParams.strideW W dimension stride

 * @param [in] loadDataParams.strideH H dimension stride

 * @param [in] loadDataParams.filterW Convolution kernel width

 * @param [in] loadDataParams.filterH Convolution kernel height

 * @param [in] loadDataParams.dilationFilterW Convolution kernel width expansion coefficient

 * @param [in] loadDataParams.dilationFilterH Convolution kernel height expansion coefficient

 * @param [in] loadDataParams.enTranspose judge whether to enable the transpose function

 * @param [in] loadDataParams.enSmallK Whether to enable the small k feature

 * @param [in] loadDataParams.padValue Value of Pad filling value

 */

template <typename T, const IsResetLoad3dConfig &defaultConfig = IS_RESER_LOAD3D_DEFAULT_CONFIG,

    typename U = PrimT<T>, typename Std::enable_if<Std::is_same<PrimT<T>, U>::value, bool>::type = true>

__aicore__ inline void LoadData(const LocalTensor<T>& dst, const LocalTensor<T>& src,

    const LoadData3DParamsV2<U>& loadDataParams);



#if defined(__NPU_ARCH__) && ((__NPU_ARCH__ == 3101) || (__NPU_ARCH__ == 5102))

template <TPosition DstPos, TPosition SrcPos, typename T>

__aicore__ inline void LoadData(const LocalTensor<T>& dst, const LocalTensor<T>& src,

    const Load3DBitModeParam& loadDataParams);

#endif

/* **************************************************************************************************

 * LoadData 3dv2Pro                                             *

 * enhanced from v1, suitable for aicore > 200                                             *

 * ************************************************************************************************* */

/*

 * @ingroup DataLoad

 * @brief Cube data loading

 * @param [out] dst output LocalTensor

 * @param [in] src input LocalTensor

 * @param [in] loadDataParams.padList padding list

 * @param [in] loadDataParams.l1H operand height

 * @param [in] loadDataParams.l1W operand width

 * @param [in] loadDataParams.channelSize number of channels

 * @param [in] loadDataParams.kExtension Transmission length of K dimension

 * @param [in] loadDataParams.mExtension Transmission length of M dimension

 * @param [in] loadDataParams.kStartPt Start point of K dimension

 * @param [in] loadDataParams.mStartPt Start point of M dimension

 * @param [in] loadDataParams.strideW W dimension stride

 * @param [in] loadDataParams.strideH H dimension stride

 * @param [in] loadDataParams.filterW Convolution kernel width

 * @param [in] loadDataParams.filterH Convolution kernel height

 * @param [in] loadDataParams.dilationFilterW Convolution kernel width expansion coefficient

 * @param [in] loadDataParams.dilationFilterH Convolution kernel height expansion coefficient

 * @param [in] loadDataParams.enTranspose judge whether to enable the transpose function

 * @param [in] loadDataParams.enSmallK Whether to enable the small k feature

 * @param [in] loadDataParams.padValue Value of Pad filling value

 */

template <typename T>

__aicore__ inline void LoadData(const LocalTensor<T>& dst, const LocalTensor<T>& src,

    const LoadData3DParamsV2Pro& loadDataParams);



#if defined(__NPU_ARCH__) && ((__NPU_ARCH__ == 3101) || (__NPU_ARCH__ == 5102))

template <TPosition DstPos, TPosition SrcPos, typename T>

__aicore__ inline void LoadData(const LocalTensor<T>& dst, const LocalTensor<T>& src,

    const Load2DBitModeParam& loadDataParams);

#endif

/* **************************************************************************************************

 * LoadDataWithTranspose                                             *

 * ************************************************************************************************* */

/*

 * @ingroup DataLoad

 * @brief Cube data loading

 * @param [out] dst output LocalTensor

 * @param [in] src input LocalTensor

 * @param [in] loadDataParams.startIndex index of the first fractal in the first repeat in the source matrix

 * in unit of frac num

 * @param [in] loadDataParams.repeatTimes the repeat times

 * @param [in] loadDataParams.srcStride source stride between consequent repeat times in unit of frac num

 * @param [in] loadDataParams.dstGap destination gap between consequent repeat times in unit of 512byte

 * @param [in] loadDataParams.dstFracGap dst fractal gap in unit of one 512byte fractal

 */

template <typename T>

__aicore__ inline void LoadDataWithTranspose(const LocalTensor<T>& dst, const LocalTensor<T>& src,

    const LoadData2dTransposeParams& loadDataParams);



/*

 * @ingroup DataLoad

 * @brief Cube data loading

 * @param [out] dst output LocalTensor

 * @param [in] src input LocalTensor

 * @param [in] loadDataParams.startIndex index of the first fractal in the first repeat in the source matrix

 * in unit of 512byte fractal

 * @param [in] loadDataParams.repeatTimes the repeat times

 * @param [in] loadDataParams.srcStride source stride between consequent repeat times in unit of 512byte

 * @param [in] loadDataParams.dstGap destination gap between consequent repeat times in unit of 512byte

 * @param [in] loadDataParams.dstFracGap dst fractal gap in unit of one 512byte fractal

 * @param [in] loadDataParams.srcFracGap dst fractal gap in unit of one 512byte fractal

 */

template <typename T>

__aicore__ inline void LoadDataWithTranspose(const LocalTensor<T>& dst, const LocalTensor<T>& src,

    const LoadData2dTransposeParamsV2& loadDataParams);



/* **************************************************************************************************

 * Mmad                                             *

 * ************************************************************************************************* */

/*

 * @ingroup Mmad

 * @brief Matrix multiplication and addition

 * @param [out] dst output LocalTensor

 * @param [in] fm input LocalTensor

 * @param [in] filter input LocalTensor

 * @param [in] mmadParams.m Left matrix row number

 * @param [in] mmadParams.n right matrix column number

 * @param [in] mmadParams.k Left matrix column number m

 * @param [in] mmadParams.unitFlag whether enable unit flag

 * @param [in] mmadParams.kDirectionAlign is the indicator for alignment in L0A/L0B in the K direction

 * @param [in] mmadParams.cmatrixSource indicates the C matrix source, 1: the C matrix is in bias table buffer, 0: the C

 * matrix is in L0C

 * @param [in] mmadParams.cmatrixInitVal indicates the initial matrix, 1: the number in C matrix is 0, 0:use the real

 * number in C matrix

 */



template <typename T, typename U, typename S>

__aicore__ inline void Mmad(const LocalTensor<T>& dst, const LocalTensor<U>& fm,

    const LocalTensor<S>& filter, const MmadParams& mmadParams);



template <typename T, typename U, typename S, typename V>

__aicore__ inline void Mmad(const LocalTensor<T>& dst, const LocalTensor<U>& fm,

    const LocalTensor<S>& filter, const LocalTensor<V>& bias, const MmadParams& mmadParams);



#if defined(__NPU_ARCH__) && (__NPU_ARCH__ == 3101)

template <typename T, typename U, typename S>

__aicore__ inline void Mmad(const LocalTensor<T>& dst, const LocalTensor<U>& fm,

    const LocalTensor<S>& filter, const MmadBitModeParams& mmadParams);



template <typename T, typename U, typename S, typename V>

__aicore__ inline void Mmad(const LocalTensor<T>& dst, const LocalTensor<U>& fm,

    const LocalTensor<S>& filter, const LocalTensor<V>& bias, MmadBitModeParams& mmadParams);

#endif



#if __NPU_ARCH__ == 2201

template <typename T = int32_t, typename U = int8_t,

    typename Std::enable_if<Std::is_same<PrimT<T>, int32_t>::value, bool>::type = true,

    typename Std::enable_if<Std::is_same<PrimT<U>, int8_t>::value, bool>::type = true>

__aicore__ inline void MmadWithSparse(const LocalTensor<T>& dst, const LocalTensor<U>& fm,

    const LocalTensor<U>& filter, const MmadParams& mmadParams);



template <typename T = int8_t, typename U = uint8_t,

    typename Std::enable_if<Std::is_same<PrimT<T>, int8_t>::value, bool>::type = true,

    typename Std::enable_if<Std::is_same<PrimT<U>, uint8_t>::value, bool>::type = true>

__aicore__ inline void LoadDataWithSparse(const LocalTensor<T> &dst, const LocalTensor<T> &src,

    const LocalTensor<U> &idx, const LoadData2dParams &loadDataParam);

#endif



#if __NPU_ARCH__ == 2002

template <typename T = int8_t, typename Std::enable_if<Std::is_same<PrimT<T>, int8_t>::value, bool>::type = true> 

__aicore__ inline void LoadUnzipIndex(const GlobalTensor<T>& src, uint32_t numOfIndexTabEntry);

#endif



/* **************************************************************************************************

 * BroadCastVecToMM                                             *

 * ************************************************************************************************* */

template <typename T, typename U>

__aicore__ inline __inout_pipe__(V) void BroadCastVecToMM(const LocalTensor<T> &dst,

    const LocalTensor<U> &src, const int32_t blockCount, const uint8_t blockLen, const uint8_t srcGap,

    const uint8_t dstGap);



/* **************************************************************************************************

 * Fill                                             *

 * ************************************************************************************************* */

/*

 * @ingroup Fill

 * @brief L0A/L0B/L1 value initializing

 * @param [out] dst output LocalTensor

 * @param [in] InitConstValueParams.repeatTimes repeat times

 * @param [in] InitConstValueParams.repeatTimes blockNum block number

 * @param [in] InitConstValueParams.dstGap interval between the previous tail and the next block head

 * @param [in] InitConstValueParams.initValue initialize Value

 */

template <typename T, typename U = PrimT<T>,

    typename Std::enable_if<Std::is_same<PrimT<T>, U>::value, bool>::type = true>

__aicore__ inline void Fill(const LocalTensor<T> &dst,

    const InitConstValueParams<U> &initConstValueParams);

    

// InitConstValue has been updated, please use Fill instead.

template <typename T, typename U = PrimT<T>,

    typename Std::enable_if<Std::is_same<PrimT<T>, U>::value, bool>::type = true>

__aicore__ inline void InitConstValue(const LocalTensor<T> &dst,

    const InitConstValueParams<U> &initConstValueParams);

    

/* **************************************************************************************************

 * SetLoadDataPaddingValue                                             *

 * ************************************************************************************************* */

/*

 * @ingroup SetLoadDataPaddingValue

 * @brief setting loadData pad value

 * @param [in]padValue padding value

 */

template <typename T>

__aicore__ inline void SetLoadDataPaddingValue(const T padValue);



/* **************************************************************************************************

 * SetFmatrix                                             *

 * ************************************************************************************************* */

/*

 * @ingroup SetFmatrix

 * @brief setting fmatrix

 * @param [in]l1H operand height

 * @param [in]l1W operand width

 * @param [in]padList padding list

 */

__aicore__ inline void SetFmatrix(uint16_t l1H, uint16_t l1W,

    const uint8_t padList[4], const FmatrixMode &fmatrixMode);



#if defined(__NPU_ARCH__) && ((__NPU_ARCH__ == 3101) || (__NPU_ARCH__ == 5102))

__aicore__ inline void SetFmatrix(const SetFMatrixBitModeParams& param,

    const FmatrixMode &fmatrixMode);

#endif

/* **************************************************************************************************

 * SetLoadDataBoundary                                             *

 * ************************************************************************************************* */

/*

 * @ingroup SetFmatrix

 * @brief setting loaddata boundary

 * @param [in]boundaryValue

 */

__aicore__ inline void SetLoadDataBoundary(uint32_t boundaryValue);



__aicore__ inline void SetLoadDataRepeat(const LoadDataRepeatParam& repeatParams);



/* **************************************************************************************************

 * LoadImageToLocal                                             *

 * ************************************************************************************************* */

/*

 * @ingroup LoadImageToLocal

 * @brief loadData image from gm to L1

 * @param [out] dst output LocalTensor

 * @param [in] loadImageToLocalParams.horizSize operand height

 * @param [in] loadImageToLocalParams.vertSize operand width

 * @param [in] loadImageToLocalParams.horizStartPos horizontal start position

 * @param [in] loadImageToLocalParams.vertStartPos vertical start position

 * @param [in] loadImageToLocalParams.srcHorizSize src horizontal size

 * @param [in] loadImageToLocalParams.topPadSize top padding size

 * @param [in] loadImageToLocalParams.botPadSize bottom padding size

 * @param [in] loadImageToLocalParams.leftPadSize left hblank/padding size

 * @param [in] loadImageToLocalParams.rightPadSize right hblank/padding size

 */

template <typename T>

__aicore__ inline void LoadImageToLocal(const LocalTensor<T>& dst, const LoadImageToLocalParams& loadDataParams);



/* **************************************************************************************************

 * LoadDataUnzip                                             *

 * ************************************************************************************************* */

/*

 * @ingroup LoadDataUnzip

 * @brief loadData and unzip

 * @param [out] dst output LocalTensor

 * @param [in] src input GlobalTensor

 */

template <typename T>

__aicore__ inline void LoadDataUnzip(const LocalTensor<T>& dst, const GlobalTensor<T>& src);



/*

 * @brief Sets whether to enable HF32 mode for Mmad computation

 * @param [in] mode HF32 mode enumeration

 * @note When mode is HF32Mode::ENABLE, FP32 data in L0A/L0B will be rounded to HF32 before matrix multiplication;

 * when mode is HF32Mode::DISABLE, regular FP32 matrix multiplication will be executed

 */

__aicore__ inline void SetHF32Mode(HF32Mode mode);



/*

 * @brief Sets the rounding method for HF32 rounding mode

 * @param [in] hf32TransMode Control parameter for Mmad HF32 mode

 * @note Must Call SetHF32Mode to enable HF32 rounding mode first.When hf32TransMode is true, FP32 is rounded to HF32

 * with rounding towards zero; when false, rounded to nearest even

 */

// SetHF32Mode(bool hf32Mode) has been updated, please use SetHF32Mode(HF32Mode mode) instead.

__aicore__ inline void SetHF32Mode(bool hf32Mode);



/*

 * @brief Sets the rounding method for HF32 rounding mode

 * @param [in] mode HF32 trans mode enumeration

 * @note Must call SetHF32Mode to enable HF32 rounding mode first.

 */

__aicore__ inline void SetHF32TransMode(HF32TransMode mode);



/*

 * @brief Sets the rounding method for HF32 rounding mode

 * @param [in] hf32TransMode Control parameter for Mmad HF32 mode

 * @note Must Call SetHF32Mode to enable HF32 rounding mode first.When hf32TransMode is true, FP32 is rounded to HF32

 * with rounding towards zero; when false, rounded to nearest even

 */

// SetHF32TransMode(bool hf32TransMode) has been updated, please use SetHF32TransMode(HF32TransMode mode) instead.

__aicore__ inline void SetHF32TransMode(bool hf32TransMode);



/*

 * @ingroup MMLayout

 * @brief Sets matrix multiplication result layout to row major

 * @note This function sets the CUBE output to row major format (M direction first, then N direction)

 */

__aicore__ inline void SetMMRowMajor();



/*

 * @ingroup MMLayout

 * @brief Sets matrix multiplication result layout to column major

 * @note This function sets the CUBE output to column major format (N direction first, then M direction)

 */

__aicore__ inline void SetMMColumnMajor();





/*

 * @brief Sets the priority direction (M or N) for Mmad/MmadWithSparse computation

 * @param [in] mmLayoutMode Control parameter for Mmad/MmadWithSparse priority direction

 * @note When mmLayoutMode is true, CUBE generates results first through N direction then M direction; when false, first

 * through M direction then N direction

 */

// SetMMLayoutTransform has been updated, please use SetMMRowMajor/SetMMColumnMajor instead.

__aicore__ inline void SetMMLayoutTransform(bool mmLayoutMode);



} // namespace AscendC



/* **************************************************************************************************

 * LoadData(Layout) API Level2                                              *

 * ************************************************************************************************* */

namespace AscendC {



template <const LoadDataTrait& trait = DEFAULT_LOAD_DATA_TRAIT, typename T, typename U>

__aicore__ inline typename Std::enable_if<VerifyingLoadDataTemplate<T, U>, void>::type

LoadData(const T& dst, const U& src);



}  // namespace AscendC

#include "../../impl/basic_api/kernel_operator_mm_intf_impl.h"



#endif // ASCENDC_MODULE_OPERATOR_MM_INTERFACE_H