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/*
 * Copyright (c) 2018 Samsung Electronics Co., Ltd. All Rights Reserved
 * Copyright (c) 2016, 2017 ARM Limited.
 *
 * 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 "helpers.h"

#if defined(DATA_TYPE) && defined(DEPTH_OUT) && defined(OP_CODE)
/** Perform reduce max/min
 *
 * @note Datatype should be given as a preprocessor argument using -DDATA_TYPE=type. e.g.
 *       -DDATA_TYPE=short
 * @attention Output tensor depth should be given as a preprocessor argument using -DDEPTH_OUT=size.
 *            e.g. -DDEPTH_OUT=16
 * @attention Operation type(code) specifying which operation to perform should be passed as
 *            preprocessor argument using -DOP_CODE = number. e.g. -DOP_CODE=1
 *
 * @param[in]  input_ptr                            Pointer to the source image. Supported data
 *                                                  types: U8/S8/QASYMM8/U16/S16/F16/U32/S32/F32
 * @param[in]  input_stride_x                       Stride of the source image in X dimension (in
 *                                                  bytes)
 * @param[in]  input_step_x                         input_stride_x * number of elements along X
 *                                                  processed per workitem(in bytes)
 * @param[in]  input_stride_y                       Stride of the source image in Y dimension (in
 *                                                  bytes)
 * @param[in]  input_step_y                         input_stride_y * number of elements along Y
 *                                                  processed per workitem(in bytes)
 * @param[in]  input_stride_z                       Stride of the source tensor in Z dimension (in
 *                                                  bytes)
 * @param[in]  input_step_z                         input_stride_z * number of elements along Z
 *                                                  processed per workitem(in bytes)
 * @param[in]  input_offset_first_element_in_bytes  The offset of the first element in the source
 *                                                  image
 * @param[in]  input_stride_w                       Stride of the source tensor in W dimension (in
 *                                                  bytes)
 * @param[in]  input_step_w                         output_stride_w * number of elements along W
 *                                                  processed per workitem(in bytes)
 * @param[out] output_ptr                           Pointer to the destination image. Supported data
 *                                                  types: same as @p input_ptr
 * @param[in]  output_stride_x                      Stride of the destination image in X dimension
 *                                                  (in bytes)
 * @param[in]  output_step_x                        output_stride_x * number of elements along X
 *                                                  processed per workitem(in bytes)
 * @param[in]  output_stride_y                      Stride of the destination image in Y dimension
 *                                                  (in bytes)
 * @param[in]  output_step_y                        output_stride_y * number of elements along Y
 *                                                  processed per workitem(in bytes)
 * @param[in]  output_stride_z                      Stride of the source tensor in Z dimension (in
 *                                                  bytes)
 * @param[in]  output_step_z                        output_stride_z * number of elements along Z
 *                                                  processed per workitem(in bytes)
 * @param[in]  output_stride_w                      Stride of the source tensor in W dimension (in
 *                                                  bytes)
 * @param[in]  output_step_w                        output_stride_w * number of elements along W
 *                                                  processed per workitem(in bytes)
 * @param[in]  output_offset_first_element_in_bytes The offset of the first element in the
 *                                                  destination image
 * @param[in]  axis                                 Axis through which reduction occurs
 * @param[in]  dim                                  Dimension across the axis to be reduced.
 */
__kernel void reduce_min_max(TENSOR4D_DECLARATION(input), TENSOR4D_DECLARATION(output),
                             const int axis, const int dim)
{
  Tensor4D in = CONVERT_TO_TENSOR4D_STRUCT(input, 0);
  Tensor4D out = CONVERT_TO_TENSOR4D_STRUCT(output, DEPTH_OUT);

  int indices[4] = {
      get_global_id(0), get_global_id(1), get_global_id(2) % DEPTH_OUT,
      get_global_id(2) / DEPTH_OUT,
  };

  DATA_TYPE value =
      *((__global DATA_TYPE *)tensor4D_offset(&in, indices[0], indices[1], indices[2], indices[3]));
  for (int i = 1; i < dim; ++i)
  {
    indices[axis] = i;

#if OP_CODE == 1 // REDUCE_MAX
    value = max(value, *((__global DATA_TYPE *)tensor4D_offset(&in, indices[0], indices[1],
                                                               indices[2], indices[3])));

#elif OP_CODE == 2 // REDUCE_MIN
    value = min(value, *((__global DATA_TYPE *)tensor4D_offset(&in, indices[0], indices[1],
                                                               indices[2], indices[3])));

#else // OP NOT SUPPORTED
    return;

#endif
  }

  *((__global DATA_TYPE *)out.ptr) = value;
}

/** Perform reduce sum/mean
 *
 * @note Datatype should be given as a preprocessor argument using -DDATA_TYPE=type. e.g.
 *       -DDATA_TYPE=short
 * @attention Output tensor depth should be given as a preprocessor argument using -DDEPTH_OUT=size.
 *            e.g. -DDEPTH_OUT=16
 * @attention Operation type(code) specifying which operation to perform should be passed as
 *            preprocessor argument using -DOP_CODE = number. e.g. -DOP_CODE=1
 *
 * @param[in]  input_ptr                            Pointer to the source image. Supported data
 *                                                  types: U8/S8/U16/S16/F16/U32/S32/F32
 * @param[in]  input_stride_x                       Stride of the source image in X dimension (in
 *                                                  bytes)
 * @param[in]  input_step_x                         input_stride_x * number of elements along X
 *                                                  processed per workitem(in bytes)
 * @param[in]  input_stride_y                       Stride of the source image in Y dimension (in
 *                                                  bytes)
 * @param[in]  input_step_y                         input_stride_y * number of elements along Y
 *                                                  processed per workitem(in bytes)
 * @param[in]  input_stride_z                       Stride of the source tensor in Z dimension (in
 *                                                  bytes)
 * @param[in]  input_step_z                         input_stride_z * number of elements along Z
 *                                                  processed per workitem(in bytes)
 * @param[in]  input_offset_first_element_in_bytes  The offset of the first element in the source
 *                                                  image
 * @param[in]  input_stride_w                       Stride of the source tensor in W dimension (in
 *                                                  bytes)
 * @param[in]  input_step_w                         output_stride_w * number of elements along W
 *                                                  processed per workitem(in bytes)
 * @param[out] output_ptr                           Pointer to the destination image. Supported data
 *                                                  types: same as @p input_ptr
 * @param[in]  output_stride_x                      Stride of the destination image in X dimension
 *                                                  (in bytes)
 * @param[in]  output_step_x                        output_stride_x * number of elements along X
 *                                                  processed per workitem(in bytes)
 * @param[in]  output_stride_y                      Stride of the destination image in Y dimension
 *                                                  (in bytes)
 * @param[in]  output_step_y                        output_stride_y * number of elements along Y
 *                                                  processed per workitem(in bytes)
 * @param[in]  output_stride_z                      Stride of the source tensor in Z dimension (in
 *                                                  bytes)
 * @param[in]  output_step_z                        output_stride_z * number of elements along Z
 *                                                  processed per workitem(in bytes)
 * @param[in]  output_stride_w                      Stride of the source tensor in W dimension (in
 *                                                  bytes)
 * @param[in]  output_step_w                        output_stride_w * number of elements along W
 *                                                  processed per workitem(in bytes)
 * @param[in]  output_offset_first_element_in_bytes The offset of the first element in the
 *                                                  destination image
 * @param[in]  axis                                 Axis through which reduction occurs
 * @param[in]  dim                                  Dimension across the axis to be reduced.
 */
__kernel void reduce_sum_mean(TENSOR4D_DECLARATION(input), TENSOR4D_DECLARATION(output),
                              const int axis, const int dim)
{
  Tensor4D in = CONVERT_TO_TENSOR4D_STRUCT(input, 0);
  Tensor4D out = CONVERT_TO_TENSOR4D_STRUCT(output, DEPTH_OUT);

  int indices[4] = {
      get_global_id(0), get_global_id(1), get_global_id(2) % DEPTH_OUT,
      get_global_id(2) / DEPTH_OUT,
  };

  DATA_TYPE sum_value = (DATA_TYPE)0;
  for (int i = 0; i < dim; ++i)
  {
    indices[axis] = i;
    sum_value += *(
        (__global DATA_TYPE *)tensor4D_offset(&in, indices[0], indices[1], indices[2], indices[3]));
  }

#if OP_CODE == 3 // REDUCE_SUM
  *((__global DATA_TYPE *)out.ptr) = sum_value;

#elif OP_CODE == 4 // REDUCE_MEAN
  *((__global DATA_TYPE *)out.ptr) = sum_value / CONVERT(dim, DATA_TYPE);

#else // OP NOT SUPPORTED
  return;

#endif
}
#endif // defined(DATA_TYPE) && defined(DEPTH_OUT) && defined(OP_CODE)