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/*******************************************************************************
* Copyright 2016-2018 Intel Corporation
*
* 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 <assert.h>
#include <math.h>
#include "c_types_map.hpp"
#include "math_utils.hpp"
#include "mkldnn_thread.hpp"
#include "nstl.hpp"
#include "type_helpers.hpp"
#include "ref_pooling.hpp"
namespace mkldnn {
namespace impl {
namespace cpu {
template <data_type_t data_type, data_type_t acc_type>
void ref_pooling_fwd_t<data_type, acc_type>::execute_forward(
const exec_ctx_t &ctx) const {
using namespace alg_kind;
using namespace prop_kind;
auto alg = pd()->desc()->alg_kind;
auto src = CTX_IN_MEM(const data_t *, MKLDNN_ARG_SRC);
auto dst = CTX_OUT_MEM(data_t *, MKLDNN_ARG_DST);
auto ws = CTX_OUT_MEM(unsigned char *, MKLDNN_ARG_WORKSPACE);
const memory_desc_wrapper src_d(pd()->src_md());
const memory_desc_wrapper dst_d(pd()->dst_md());
const memory_desc_wrapper ws_d(pd()->workspace_md());
const data_type_t ws_dt = ws ? ws_d.data_type() : data_type::undef;
const int ID = pd()->ID();
const int IH = pd()->IH();
const int IW = pd()->IW();
const int KD = pd()->KD();
const int KH = pd()->KH();
const int KW = pd()->KW();
const int SD = pd()->KSD();
const int SH = pd()->KSH();
const int SW = pd()->KSW();
const int padF = pd()->padFront();
const int padT = pd()->padT();
const int padL = pd()->padL();
const bool is_3d = pd()->desc()->src_desc.ndims == 5;
auto apply_offset = [=](int index, int offset) {
return (index > offset) ? index - offset : 0;
};
auto set_ws = [=](int mb, int oc, int od, int oh, int ow, int value) {
if (ws) {
assert(ws_dt == data_type::u8 || ws_dt == data_type::s32);
size_t offset = is_3d
? ws_d.off(mb, oc, od, oh, ow) : ws_d.off(mb, oc, oh, ow);;
if (ws_dt == data_type::u8) {
assert(0 <= value && value <= 255);
ws[offset] = value;
} else
reinterpret_cast<int *>(ws)[offset] = value;
}
};
auto ker_max = [=](data_t *d, int mb, int oc, int oh, int ow) {
for (int kh = 0; kh < KH; ++kh) {
for (int kw = 0; kw < KW; ++kw) {
const int ih = oh * SH - padT + kh;
const int iw = ow * SW - padL + kw;
if (ih < 0 || ih >= IH) continue;
if (iw < 0 || iw >= IW) continue;
auto s = src[src_d.off(mb, oc, ih, iw)];
if (s > d[0]) {
d[0] = s;
set_ws(mb, oc, 1, oh, ow, kh*KW + kw);
}
}
}
};
auto ker_avg = [=](data_t *d, int mb, int oc, int oh, int ow) {
auto ih_start = apply_offset(oh*SH, padT);
auto iw_start = apply_offset(ow*SW, padL);
auto ih_end = nstl::min(oh*SH - padT + KH, IH);
auto iw_end = nstl::min(ow*SW - padL + KW, IW);
auto num_summands = (alg == pooling_avg_include_padding) ? KW*KH
: (ih_end - ih_start)*(iw_end - iw_start);
acc_data_t dst = 0;
for (int ih = ih_start; ih < ih_end; ++ih) {
for (int iw = iw_start; iw < iw_end; ++iw) {
dst += src[src_d.off(mb, oc, ih, iw)];
}
}
d[0] = math::out_round<data_t>((float)dst / num_summands);
};
auto ker_max_3d = [=](data_t *d, int mb, int oc, int od, int oh, int ow) {
for (int kd = 0; kd < KD; ++kd) {
for (int kh = 0; kh < KH; ++kh) {
for (int kw = 0; kw < KW; ++kw) {
const int id = od * SD - padF + kd;
const int ih = oh * SH - padT + kh;
const int iw = ow * SW - padL + kw;
if (id < 0 || id >= ID) continue;
if (ih < 0 || ih >= IH) continue;
if (iw < 0 || iw >= IW) continue;
auto s = src[src_d.off(mb, oc, id, ih, iw)];
if (s > d[0]) {
d[0] = s;
set_ws(mb, oc, od, oh, ow, kd * KH * KW + kh*KW + kw);
}
}
}
}
};
auto ker_avg_3d = [=](data_t *d, int mb, int oc, int od, int oh, int ow) {
auto id_start = apply_offset(od*SD, padF);
auto ih_start = apply_offset(oh*SH, padT);
auto iw_start = apply_offset(ow*SW, padL);
auto id_end = nstl::min(od*SD - padF + KD, ID);
auto ih_end = nstl::min(oh*SH - padT + KH, IH);
auto iw_end = nstl::min(ow*SW - padL + KW, IW);
auto num_summands = (alg == pooling_avg_include_padding) ? KW*KH*KD
: (ih_end - ih_start)*(iw_end - iw_start)*(id_end - id_start);
acc_data_t dst = 0;
for (int id = id_start; id < id_end; ++id) {
for (int ih = ih_start; ih < ih_end; ++ih) {
for (int iw = iw_start; iw < iw_end; ++iw) {
dst += src[src_d.off(mb, oc, id, ih, iw)];
}
}
}
d[0] = math::out_round<data_t>((float)dst / num_summands);
};
const int MB = pd()->MB();
const int OC = pd()->C();
const int OD = pd()->OD();
const int OH = pd()->OH();
const int OW = pd()->OW();
if (alg == pooling_max) {
parallel_nd(MB, OC, OD, OH, OW,
[&](int mb, int oc, int od, int oh, int ow) {
data_t *d = is_3d
? &dst[dst_d.off(mb, oc, od, oh, ow)]
: &dst[dst_d.off(mb, oc, oh, ow)];
d[0] = nstl::numeric_limits<data_t>::lowest();
set_ws(mb, oc, od, oh, ow, 0);
if (is_3d) ker_max_3d(d, mb, oc, od, oh, ow);
else ker_max(d, mb, oc, oh, ow);
});
} else {
parallel_nd(MB, OC, OD, OH, OW,
[&](int mb, int oc, int od, int oh, int ow) {
data_t *d = is_3d
? &dst[dst_d.off(mb, oc, od, oh, ow)]
: &dst[dst_d.off(mb, oc, oh, ow)];
d[0] = 0;
if (is_3d) ker_avg_3d(d, mb, oc, od, oh, ow);
else ker_avg(d, mb, oc, oh, ow);
});
}
}
template <data_type_t data_type, data_type_t acc_type>
void ref_pooling_bwd_t<data_type, acc_type>::execute_backward(
const exec_ctx_t &ctx) const {
using namespace alg_kind;
auto diff_dst = CTX_IN_MEM(const data_t *, MKLDNN_ARG_DIFF_DST);
auto ws = CTX_IN_MEM(const unsigned char *, MKLDNN_ARG_WORKSPACE);
auto diff_src = CTX_OUT_MEM(data_t *, MKLDNN_ARG_DIFF_SRC);
const memory_desc_wrapper diff_dst_d(pd()->diff_dst_md());
const memory_desc_wrapper diff_src_d(pd()->diff_src_md());
const memory_desc_wrapper ws_d(pd()->workspace_md());
const int ID = pd()->ID();
const int IH = pd()->IH();
const int IW = pd()->IW();
const int KD = pd()->KD();
const int KH = pd()->KH();
const int KW = pd()->KW();
const int SD = pd()->KSD();
const int SH = pd()->KSH();
const int SW = pd()->KSW();
const int padF = pd()->padFront();
const int padT = pd()->padT();
const int padL = pd()->padL();
const bool is_3d = pd()->desc()->diff_src_desc.ndims == 5;
auto alg = pd()->desc()->alg_kind;
auto apply_offset = [=](int index, int offset) {
return (index > offset) ? index - offset : 0;
};
auto ker_zero = [=](int _mb, int _oc) {
for (int ih = 0; ih < IH; ++ih) {
for (int iw = 0; iw < IW; ++iw) {
diff_src[diff_src_d.off(_mb, _oc, ih, iw)] = data_type_t(0);
}
}
};
auto ker_max = [=](const data_t *d, int mb, int oc, int oh, int ow) {
const size_t ws_off = ws_d.off(mb, oc, oh, ow);
const int index = ws_d.data_type() == data_type::u8
? (int)ws[ws_off] : ((int *)ws)[ws_off];
const int kw = index % KW;
const int kh = index / KW;
const int ih = oh * SH - padT + kh;
const int iw = ow * SW - padL + kw;
// If padding area could fit the kernel,
// then input displacement would be out of bounds.
// No need to back propagate there as padding is
// virtual in pooling_max case.
if (ih < 0 || ih >= IH)
return;
if (iw < 0 || iw >= IW)
return;
diff_src[diff_src_d.off(mb, oc, ih, iw)] += d[0];
};
auto ker_avg = [=](const data_t *d, int mb, int oc, int oh, int ow) {
auto ih_start = apply_offset(oh*SH, padT);
auto iw_start = apply_offset(ow*SW, padL);
auto ih_end = nstl::min(oh*SH - padT + KH, IH);
auto iw_end = nstl::min(ow*SW - padL + KW, IW);
auto num_summands = (alg == pooling_avg_include_padding) ? KW*KH
: (ih_end - ih_start)*(iw_end - iw_start);
for (int ih = ih_start; ih < ih_end; ++ih) {
for (int iw = iw_start; iw < iw_end; ++iw) {
diff_src[diff_src_d.off(mb, oc, ih, iw)] += d[0] / num_summands;
}
}
};
auto ker_zero_3d = [=](int _mb, int _oc) {
for (int id = 0; id < ID; ++id) {
for (int ih = 0; ih < IH; ++ih) {
for (int iw = 0; iw < IW; ++iw) {
diff_src[diff_src_d.off(_mb, _oc, id, ih, iw)] =
data_type_t(0);
}
}
}
};
auto ker_max_3d = [=](const data_t *d, int mb, int oc, int od, int oh,
int ow) {
const size_t ws_off = ws_d.off(mb, oc, od, oh, ow);
const int index = ws_d.data_type() == data_type::u8
? (int)ws[ws_off] : ((int *)ws)[ws_off];
const int kw = index % KW;
const int kh = (index / KW) % KH;
const int kd = (index / KW) / KH;
const int id = od * SD - padF + kd;
const int ih = oh * SH - padT + kh;
const int iw = ow * SW - padL + kw;
// If padding area could fit the kernel,
// then input displacement would be out of bounds.
// No need to back propagate there as padding is
// virtual in pooling_max case.
if (id < 0 || id >= ID)
return;
if (ih < 0 || ih >= IH)
return;
if (iw < 0 || iw >= IW)
return;
diff_src[diff_src_d.off(mb, oc, id, ih, iw)] += d[0];
};
auto ker_avg_3d = [=](const data_t *d, int mb, int oc, int od, int oh,
int ow) {
auto id_start = apply_offset(od*SD, padF);
auto ih_start = apply_offset(oh*SH, padT);
auto iw_start = apply_offset(ow*SW, padL);
auto id_end = nstl::min(od*SD - padF + KD, ID);
auto ih_end = nstl::min(oh*SH - padT + KH, IH);
auto iw_end = nstl::min(ow*SW - padL + KW, IW);
auto num_summands = (alg == pooling_avg_include_padding) ? KW*KH*KD
: (ih_end - ih_start)*(iw_end - iw_start)*(id_end - id_start);
for (int id = id_start; id < id_end; ++id)
for (int ih = ih_start; ih < ih_end; ++ih)
for (int iw = iw_start; iw < iw_end; ++iw) {
diff_src[diff_src_d.off(mb, oc, id, ih, iw)] += d[0] / num_summands;
}
};
const int MB = pd()->MB();
const int OC = pd()->C();
const int OD = pd()->OD();
const int OH = pd()->OH();
const int OW = pd()->OW();
if (pd()->desc()->alg_kind == alg_kind::pooling_max) {
parallel_nd(MB, OC, [&](int mb, int oc) {
if (is_3d) ker_zero_3d(mb, oc);
else ker_zero(mb, oc);
for (int od = 0; od < OD; ++od) {
for (int oh = 0; oh < OH; ++oh) {
for (int ow = 0; ow < OW; ++ow) {
const data_t *d = is_3d
? &diff_dst[diff_dst_d.off(mb, oc, od, oh, ow)]
: &diff_dst[diff_dst_d.off(mb, oc, oh, ow)];
if (is_3d) ker_max_3d(d, mb, oc, od, oh, ow);
else ker_max(d, mb, oc, oh, ow);
}
}
}
});
} else {
parallel_nd(MB, OC, [&](int mb, int oc) {
if (is_3d) ker_zero_3d(mb, oc);
else ker_zero(mb, oc);
for (int od = 0; od < OD; ++od) {
for (int oh = 0; oh < OH; ++oh) {
for (int ow = 0; ow < OW; ++ow) {
const data_t *d = is_3d
? &diff_dst[diff_dst_d.off(mb, oc, od, oh, ow)]
: &diff_dst[diff_dst_d.off(mb, oc, oh, ow)];
if (is_3d) ker_avg_3d(d, mb, oc, od, oh, ow);
else ker_avg(d, mb, oc, oh, ow);
}
}
}
});
}
}
template struct ref_pooling_fwd_t<data_type::f32>;
template struct ref_pooling_fwd_t<data_type::s32>;
template struct ref_pooling_fwd_t<data_type::s8, data_type::s32>;
template struct ref_pooling_fwd_t<data_type::u8, data_type::s32>;
template struct ref_pooling_bwd_t<data_type::f32>;
template struct ref_pooling_bwd_t<data_type::s32>;
}
}
}
// vim: et ts=4 sw=4 cindent cino^=l0,\:0,N-s
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