opr_impl.cpp 24.1 KB
Newer Older
1 2 3 4 5 6 7 8
/**
 * \file dnn/src/fallback/conv_bias/opr_impl.cpp
 * MegEngine is Licensed under the Apache License, Version 2.0 (the "License")
 *
 * Copyright (c) 2014-2020 Megvii Inc. All rights reserved.
 *
 * Unless required by applicable law or agreed to in writing,
 * software distributed under the License is distributed on an
9 10
 * "AS IS" BASIS, WITHOUT ARRANTIES OR CONDITIONS OF ANY KIND, either express or
 * implied.
11 12 13 14 15 16 17
 */
#include "src/fallback/convolution/opr_impl.h"
#include "src/common/algo_chooser.h"
#include "src/common/metahelper.h"
#include "src/common/opr_delegate.h"
#include "src/common/utils.h"
#include "src/fallback/conv_bias/algos.h"
18
#include "src/fallback/conv_bias/conv1x1/algos.h"
19
#include "src/fallback/conv_bias/conv1x1/algos_conv1x1_gemv.h"
20 21 22 23 24 25 26 27 28 29
#include "src/fallback/conv_bias/im2col/algos.h"
#include "src/fallback/conv_bias/opr_impl.h"
#include "src/naive/convolution/algorithms.h"
#include "src/naive/handle.h"

#include <cstring>

using namespace megdnn;
using namespace fallback;

30
size_t megdnn::fallback::pack_size(param::ConvBias::Format format) {
31
    switch (format) {
32
        case param::ConvBias::Format::NCHW44:
33
        case param::ConvBias::Format::NCHW44_DOT:
34 35 36 37 38 39 40 41 42
        case param::ConvBias::Format::NCHW4:
            return 4_z;
        case param::ConvBias::Format::NCHW88:
            return 8_z;
        default:
            return 1_z;
    }
}

43 44 45 46 47 48 49 50 51 52 53 54 55 56
namespace {
template <typename T>
void incr_ptr(T*& dst, ptrdiff_t delta) {
    dst = reinterpret_cast<T*>(reinterpret_cast<uintptr_t>(dst) + delta);
}

}  // namespace

class ConvBiasImpl::AlgoPack : NonCopyableObj {
    AlgoNaive algo_naive;
    SmallVector<std::unique_ptr<AlgoBase>> refhold;

public:
    AlgoPack() {
57 58 59
        refhold.emplace_back(new AlgoConv1x1Gemv());
        all_algos.emplace_back(refhold.back().get());

60 61 62 63 64
        static CpuOprDelegationStorage<> storage;
        auto matmul_opr = storage.get<MatrixMul>();
        auto&& matmul_algos =
                static_cast<fallback::MatrixMulImpl*>(matmul_opr)->algo_pack();
        for (auto&& algo : matmul_algos) {
65 66 67 68 69 70
#if MEGDNN_X86
//! As we haven't direct conv for int8x8x16 yet, if we disable gemv here, it may
//! fallback to naive implementation, which may cause performance very low, so
//! here we just enable im2col for gemv in x86 backend.
//! FIXME: remove it when we add direct conv support for int8x8x16
#else
71 72 73 74
            if (algo->algoset() ==
                MatrixMulImpl::AlgoBase::AlgoSet::ALGO_TYPE_GEMV) {
                continue;
            }
75 76
#endif

77 78 79 80 81 82
            for (size_t ohw_tile_size : {192, 384, 96, 48, 24}) {
                refhold.emplace_back(new AlgoIm2col(
                        static_cast<MatrixMulImpl::AlgoBase*>(algo),
                        ohw_tile_size));
                all_algos.emplace_back(refhold.back().get());
            }
83
            for (size_t oc_tile_size : {48, 24}) {
84
                refhold.emplace_back(new AlgoConv1x1(
85 86
                        static_cast<MatrixMulImpl::AlgoBase*>(algo),
                        oc_tile_size));
87 88 89
                all_algos.emplace_back(refhold.back().get());
            }
#if 0
90 91 92 93 94 95 96 97 98 99 100 101 102 103 104 105 106 107 108 109 110 111 112 113 114 115 116 117 118 119 120
        //! As these algos maybe very slow, it will make fastrun search slow, so
        //! we disable it, but for the test of strategyhelper, we just keep it.
        //! FIXME: I do not know a better way to do it.
            refhold.emplace_back(new AlgoWinogradF32(
                    static_cast<MatrixMulImpl::AlgoBase*>(algo)));
            all_algos.emplace_back(refhold.back().get());
            refhold.emplace_back(new AlgoWinogradF32_4x4(
                    static_cast<MatrixMulImpl::AlgoBase*>(algo)));
            all_algos.emplace_back(refhold.back().get());
            refhold.emplace_back(new AlgoWinogradQS8(
                    static_cast<MatrixMulImpl::AlgoBase*>(algo)));
            all_algos.emplace_back(refhold.back().get());
            refhold.emplace_back(new AlgoWinogradQS8_8x8(
                    static_cast<MatrixMulImpl::AlgoBase*>(algo)));
            all_algos.emplace_back(refhold.back().get());
#endif
        }
        //! reverse matmul algo, when the algo is_prefer can be selected first
        std::reverse(all_algos.begin(), all_algos.end());
        all_algos.emplace_back(&algo_naive);
    }
    SmallVector<AlgoBase*> all_algos;
};

SmallVector<ConvBiasImpl::AlgoBase*> ConvBiasImpl::algo_pack() {
    static AlgoPack sl_algo_pack;
    return sl_algo_pack.all_algos;
}
bool ConvBiasImpl::is_naive_algo(ConvBiasImpl::Algorithm* algo) {
    return algo == nullptr || strcmp(algo->name(), "DEFAULT") == 0;
}
121 122

#define NCB_ALGO_FUNC(name, algo, param) \
123
    static_cast<AlgoBase*>(algo)->name(param)
124

125 126
void ConvBiasImpl::exec(_megdnn_tensor_in src, _megdnn_tensor_in filter,
                        _megdnn_tensor_in bias, _megdnn_tensor_in z,
127 128 129
                        _megdnn_tensor_out dst,
                        const PreprocessedFilter* preprocessed_filter,
                        _megdnn_workspace workspace) {
130
    check_exec(src.layout, filter.layout, bias.layout, z.layout, dst.layout,
131 132 133
               workspace.size, preprocessed_filter);
    auto fparam = make_ncb_kern_param(src, filter, bias, dst, workspace,
                                      preprocessed_filter);
134 135
    ConvBiasImpl::Algorithm* algo = get_algorithm(fparam, workspace.size);
    if (!is_naive_algo(algo) &&
136
        NCB_ALGO_FUNC(get_workspace, algo, fparam) <= workspace.size) {
137 138
        exec_with_ncb_kern(fparam, algo);
    } else {
139 140
        naive::ConvBiasForwardImpl::exec(src, filter, bias, z, dst,
                                         preprocessed_filter, workspace);
141 142 143
    }
}

144 145 146 147 148 149 150 151 152 153 154 155 156 157 158 159 160 161 162 163 164 165 166 167
void ConvBiasImpl::exec_preprocess(const TensorLayout& src_layout,
                                   _megdnn_tensor_in filter,
                                   const TensorLayout& bias_layout,
                                   const TensorLayout& z_layout,
                                   const TensorLayout& dst_layout,
                                   PreprocessedFilter* preprocessed_filter,
                                   _megdnn_workspace workspace) {
    //! exec_preprocess currently only support preprocess weights before exec,
    //! src/dst/bias/z will be ignored, just set to nullptr
    TensorND src{nullptr, src_layout}, dst{nullptr, dst_layout},
            bias{nullptr, bias_layout};
    auto fparam = make_ncb_kern_param(src, filter, bias, dst, workspace,
                                      preprocessed_filter);
    ConvolutionImpl::Algorithm* algo = get_algorithm(fparam, workspace.size);
    if (!is_naive_algo(algo) && NCB_ALGO_FUNC(get_preprocess_workspace, algo,
                                              fparam) <= workspace.size) {
        exec_preprocess_with_ncb_kern(fparam, algo);
    } else {
        naive::ConvBiasForwardImpl::exec_preprocess(
                src_layout, filter, bias_layout, z_layout, dst_layout,
                preprocessed_filter, workspace);
    }
}

168 169 170 171 172
size_t ConvBiasImpl::get_workspace_in_bytes(
        const TensorLayout& src, const TensorLayout& filter,
        const TensorLayout& bias, const TensorLayout& z,
        const TensorLayout& dst,
        const PreprocessedFilter* preprocessed_filter) {
173 174
    auto fparam = make_ncb_kern_size_param(src, filter, bias, dst,
                                           preprocessed_filter);
175 176
    ConvBiasImpl::Algorithm* algo = get_algorithm(fparam);
    if (is_naive_algo(algo)) {
177 178
        return naive::ConvBiasForwardImpl::get_workspace_in_bytes(
                src, filter, bias, z, dst, preprocessed_filter);
179
    } else {
180 181 182 183 184 185 186 187 188 189 190 191 192 193 194 195 196 197 198 199 200 201 202 203 204 205 206 207 208
        return NCB_ALGO_FUNC(get_workspace, algo, fparam);
    }
}

size_t ConvBiasImpl::get_preprocess_workspace_in_bytes(
        const TensorLayout& src, const TensorLayout& filter,
        const TensorLayout& bias, const TensorLayout& z,
        const TensorLayout& dst) {
    auto fparam = make_ncb_kern_size_param(src, filter, bias, dst, nullptr);
    Algorithm* algo = get_algorithm(fparam);
    if (is_naive_algo(algo)) {
        return naive::ConvBiasForwardImpl::get_preprocess_workspace_in_bytes(
                src, filter, bias, z, dst);
    } else {
        return NCB_ALGO_FUNC(get_preprocess_workspace, algo, fparam);
    }
}

SmallVector<TensorLayout> ConvBiasImpl::deduce_preprocessed_filter_layout(
        const TensorLayout& src, const TensorLayout& filter,
        const TensorLayout& bias, const TensorLayout& z,
        const TensorLayout& dst) {
    auto fparam = make_ncb_kern_size_param(src, filter, bias, dst, nullptr);
    Algorithm* algo = get_algorithm(fparam);
    if (is_naive_algo(algo)) {
        return naive::ConvBiasForwardImpl::deduce_preprocessed_filter_layout(
                src, filter, bias, z, dst);
    } else {
        return NCB_ALGO_FUNC(deduce_preprocessed_filter_layout, algo, fparam);
209 210 211 212 213 214 215
    }
}

std::vector<ConvBiasImpl::Algorithm*> ConvBiasImpl::get_all_algorithms(
        const TensorLayout& src, const TensorLayout& filter,
        const TensorLayout& bias, const TensorLayout& z,
        const TensorLayout& dst) {
216
    auto fparam = make_ncb_kern_size_param(src, filter, bias, dst, nullptr);
217 218 219 220 221 222 223 224 225 226 227 228 229
    auto ret = get_all_algorithms_with_ncb(fparam);
    if (ret.empty()) {
        return naive::ConvBiasForwardImpl::get_all_algorithms(src, filter, bias,
                                                              z, dst);
    }
    return ret;
}

ConvBiasImpl::Algorithm* ConvBiasImpl::get_algorithm_heuristic(
        const TensorLayout& src, const TensorLayout& filter,
        const TensorLayout& bias, const TensorLayout& z,
        const TensorLayout& dst, size_t workspace_limit_in_bytes,
        bool reproducible) {
230
    auto fparam = make_ncb_kern_size_param(src, filter, bias, dst, nullptr);
231 232 233 234 235 236 237 238 239 240
    auto result = get_algorithm_heuristic_with_ncb(
            fparam, workspace_limit_in_bytes, reproducible);
    if (result == nullptr) {
        result = naive::ConvBiasForwardImpl::get_algorithm_heuristic(
                src, filter, bias, z, dst, workspace_limit_in_bytes,
                reproducible);
    }
    return result;
}

241 242 243 244 245
ConvBiasImpl::Algorithm* ConvBiasImpl::get_algorithm_heuristic_with_ncb(
        const NCBKernSizeParam& param, size_t workspace_limit_in_bytes,
        bool reproducible) {
    for (auto i : get_all_algorithms_with_ncb(param)) {
        if (static_cast<AlgoBase*>(i)->usable_reproducible(
246 247 248
                    param, AlgoSelectionStrategy::HEURISTIC, reproducible) &&
            NCB_ALGO_FUNC(get_workspace, i, param) <=
                    workspace_limit_in_bytes) {
249 250 251 252 253 254
            return i;
        }
    }
    return nullptr;
}

255 256
ConvBiasImpl::NCBKernSizeParam ConvBiasImpl::make_ncb_kern_size_param(
        const TensorLayout& src, const TensorLayout& filter,
257 258
        const TensorLayout& bias, const TensorLayout& dst,
        const PreprocessedFilter* preprocessed_filter) {
259 260 261 262 263 264 265 266 267
    auto safe_u32 = [](size_t v) -> uint32_t {
        megdnn_assert(v <= std::numeric_limits<uint32_t>::max(),
                      "value too large: %zu", v);
        return v;
    };
    size_t spatial_pos;
    if (param().format == Param::Format::NCHW88 ||
        param().format == Param::Format::NCHW8 ||
        param().format == Param::Format::NCHW4 ||
268
        param().format == Param::Format::NCHW44 ||
269
        param().format == Param::Format::NCHW44_DOT ||
270 271
        param().format == Param::Format::NCHW ||
        param().format == Param::Format::NCHW_WINOGRAD ||
272 273
        param().format == Param::Format::NCHW88_WINOGRAD ||
        param().format == Param::Format::NCHW44_WINOGRAD) {
274 275 276 277 278 279 280 281 282 283 284 285 286 287 288 289 290 291 292 293 294 295 296 297 298 299 300 301
        spatial_pos = 2;
    } else if (param().format == Param::Format::NHWC) {
        spatial_pos = 1;
    } else {
        megdnn_assert(0, "invalid conv format %d",
                      static_cast<int>(param().format));
    }
    BiasMode bias_mode;
    if (bias.ndim == 0) {
        bias_mode = BiasMode::NO_BIAS;
    } else if (bias.eq_shape(dst)) {
        bias_mode = BiasMode::BIAS;
    } else {
        //! just check the ndim, the detail shape check is in check_exec
        megdnn_assert(bias.ndim == dst.ndim);
        bias_mode = BiasMode::BROADCAST_CHANNEL_BIAS;
    }

    static_assert(sizeof(CanonizedFilterMeta) ==
                          sizeof(ConvolutionImpl::CanonizedFilterMeta),
                  "sizeof CanonizedFilterMeta in convolution and conv_bias "
                  "should be equal");
    CanonizedFilterMeta fm = check_layout_fwd(src, filter, dst);
    ConvolutionImpl::CanonizedFilterMeta conv_fm;
    conv_fm.copy_from(fm);

    param::MatrixMul::Format format = param::MatrixMul::Format::DEFAULT;
    if (param().format == Param::Format::NCHW_WINOGRAD ||
302 303
        param().format == Param::Format::NCHW88_WINOGRAD ||
        param().format == Param::Format::NCHW44_WINOGRAD) {
304 305 306 307 308 309 310 311 312 313 314 315 316 317 318 319 320 321 322 323 324 325 326 327 328 329 330 331 332
        size_t flt_start = 0;
        if (param().sparse == Param::Sparse::GROUP) {
            flt_start = 1;
        }

        if (filter.ndim == 6 + flt_start) {
            if (filter[5] == 4) {
                format = param::MatrixMul::Format::MK4;
            } else {
                megdnn_assert(filter[5] == 8);
                format = param::MatrixMul::Format::MK8;
            }
        }
    }
    size_t nr_threads = static_cast<naive::HandleImpl*>(handle())
                                ->megcore_dispatcher()
                                ->nr_threads();
    return {{safe_u32(src[0]),
             {{safe_u32(src[spatial_pos]), safe_u32(src[spatial_pos + 1])}},
             {{safe_u32(dst[spatial_pos]), safe_u32(dst[spatial_pos + 1])}},
             conv_fm,
             src.dtype,
             filter.dtype,
             dst.dtype,
             src.stride[0],
             dst.stride[0],
             {src.stride[0], src.stride[1], src.stride[2], src.stride[3]},
             {dst.stride[0], dst.stride[1], dst.stride[2], dst.stride[3]},
             param().compute_mode,
333 334 335
             nr_threads,
             reinterpret_cast<const ConvolutionForward::PreprocessedFilter*>(
                     preprocessed_filter)},
336 337 338 339 340 341 342 343 344 345
            param().output_block_size,
            format,
            bias.dtype,
            bias.stride[0],
            bias_mode,
            param().nonlineMode};
}

ConvBiasImpl::NCBKernParam ConvBiasImpl::make_ncb_kern_param(
        _megdnn_tensor_in src, _megdnn_tensor_in filter, _megdnn_tensor_in bias,
346 347
        _megdnn_tensor_out dst, _megdnn_workspace workspace,
        const PreprocessedFilter* preprocessed_filter) {
348
    NCBKernParam ret;
349 350 351
    static_cast<NCBKernSizeParam&>(ret) =
            make_ncb_kern_size_param(src.layout, filter.layout, bias.layout,
                                     dst.layout, preprocessed_filter);
352 353 354 355 356 357 358 359 360 361 362
    ret.src_ptr = src.raw_ptr;
    ret.filter_ptr = filter.raw_ptr;
    ret.bias_ptr = bias.raw_ptr;
    ret.dst_ptr = dst.raw_ptr;
    ret.workspace_ptr = workspace.raw_ptr;
    ret.workspace_size = workspace.size;
    return ret;
}

void ConvBiasImpl::exec_with_ncb_kern(const NCBKernParam& param,
                                      ConvBiasImpl::Algorithm* algo) {
363
    auto ncb_kerns = NCB_ALGO_FUNC(dispatch_kerns, algo, param);
364
    for (auto&& kernel : ncb_kerns) {
365
        auto run = [kernel, param](size_t index, size_t thread_id) {
366
            CpuNDRange ndrange_id(kernel.global_size, index);
367
            kernel.kern(param, {thread_id, ndrange_id});
368 369 370 371 372 373
        };
        static_cast<naive::HandleImpl*>(handle())->dispatch_kern(
                run, kernel.global_size.total_size());
    }
}

374 375 376 377 378 379 380 381 382 383 384
void ConvBiasImpl::exec_preprocess_with_ncb_kern(
        const NCBKernParam& param, ConvBiasImpl::Algorithm* algo) {
    auto ncb_kerns = NCB_ALGO_FUNC(dispatch_preprocess_kerns, algo, param);
    for (auto&& kernel : ncb_kerns) {
        auto run = [kernel, param](size_t index, size_t thread_id) {
            CpuNDRange ndrange_id(kernel.global_size, index);
            kernel.kern(param, {thread_id, ndrange_id});
        };
        static_cast<naive::HandleImpl*>(handle())->dispatch_kern(
                run, kernel.global_size.total_size());
    }
385 386 387 388 389 390 391 392
}

std::vector<ConvBiasImpl::Algorithm*> ConvBiasImpl::get_all_algorithms_with_ncb(
        const NCBKernSizeParam& param) {
    MEGDNN_MARK_USED_VAR(param);
    std::vector<Algorithm*> algos;
    std::vector<Algorithm*> prefer_algos;
    for (auto&& algo : algo_pack()) {
393 394
        if (algo->usable(param, AlgoSelectionStrategy::FULL_RUN)) {
            if (algo->is_preferred(param)) {
395 396 397 398 399 400 401 402 403 404 405 406 407 408 409 410 411 412 413 414 415 416 417 418 419 420 421 422 423 424 425
                prefer_algos.push_back(algo);
            } else {
                algos.push_back(algo);
            }
        }
    }
    std::reverse(prefer_algos.begin(), prefer_algos.end());
    //! Prefer algo inserted from begin
    algos.insert(algos.begin(), prefer_algos.begin(), prefer_algos.end());
    return algos;
}

ConvBiasImpl::Algorithm* ConvBiasImpl::get_algorithm(
        const NCBKernSizeParam& param, size_t workspace_size) {
    if (auto set = execution_policy().algorithm) {
        return set;
    }
    if (!m_prev_selected_algo ||
        memcmp(&m_prev_selected_algo_sizep, &param, sizeof(NCBKernSizeParam))) {
        m_prev_selected_algo =
                get_algorithm_heuristic_with_ncb(param, workspace_size);
        m_prev_selected_algo_sizep = param;
    }
    return m_prev_selected_algo;
}

const char* ConvBiasImpl::get_algorithm_set_name() const {
    // fallback version 0
    return "F0";
}

426
namespace megdnn {
427
namespace fallback {
428

429
template <typename T>
430 431 432 433
const T* ConvBiasImpl::NCBKernParam::src(size_t batch_id, size_t group_pack_id,
                                         size_t channel_pack_id,
                                         size_t group_pack_size,
                                         size_t channel_pack_size) const {
434
    size_t batch_offset = batch_id * inp_bs * src_type.size();
435
    size_t group_offset = group_pack_size * group_pack_id * filter_meta.icpg *
436
                          isz[0] * isz[1] * src_type.size();
437 438
    size_t channel_offset = channel_pack_size * channel_pack_id * isz[0] *
                            isz[1] * src_type.size();
439
    return reinterpret_cast<T*>(reinterpret_cast<ptrdiff_t>(src_ptr) +
440
                                batch_offset + group_offset + channel_offset);
441 442 443
}

template <typename T>
444
const T* ConvBiasImpl::NCBKernParam::filter(size_t group_pack_id,
445 446 447 448
                                            size_t pack_group_size) const {
    size_t group_offset = 0_z;
    switch (filter_meta.format) {
        case Param::Format::NCHW: {
449
            group_offset = pack_group_size * group_pack_id * filter_meta.icpg *
450 451 452 453 454 455 456 457 458
                           filter_meta.ocpg * filter_meta.spatial[0] *
                           filter_meta.spatial[1] * filter_type.size();
            break;
        }
        case Param::Format::NCHW88: {
            size_t group = filter_meta.group;
            size_t icpg = filter_meta.icpg;
            size_t ocpg = filter_meta.ocpg;
            //! four format of weight layout
459 460 461
            //! 1. {oc/8, ic/8, fh, fw, 8, 8},
            //! 2. {g, oc/8, ic/8, fh, fw, 8, 8},
            //! 3. {g/8, fh, fw, 1, 1, 8}, 4. {oc/8, fh, fw, ic, 8}
462 463 464 465 466
            megdnn_assert((icpg % 8 == 0 && ocpg % 8 == 0) ||
                                  (group % 8 == 0 && icpg == 1 && ocpg == 1 &&
                                   pack_group_size > 1) ||
                                  (group == 1 && ocpg % 8 == 0),
                          "The filter shepe is not right of nchw88");
467 468 469 470 471 472
            group_offset = pack_group_size * group_pack_id * filter_meta.icpg *
                           filter_meta.ocpg * filter_meta.spatial[0] *
                           filter_meta.spatial[1] * filter_type.size();

            break;
        }
473
        case Param::Format::NCHW44_DOT:
474 475 476 477 478 479 480 481 482 483 484 485 486
        case Param::Format::NCHW44: {
            size_t group = filter_meta.group;
            size_t icpg = filter_meta.icpg;
            size_t ocpg = filter_meta.ocpg;
            //! four format of weight layout
            //! 1. {oc/4, ic/4, fh, fw, 4, 4},
            //! 2. {g, oc/4, ic/4, fh, fw, 4, 4},
            //! 3. {g/4, fh, fw, 1, 1, 4}, 4. {oc/4, fh, fw, ic, 4}
            megdnn_assert((icpg % 4 == 0 && ocpg % 4 == 0) ||
                                  (group % 4 == 0 && icpg == 1 && ocpg == 1 &&
                                   pack_group_size > 1) ||
                                  (group == 1 && ocpg % 4 == 0),
                          "The filter shepe is not right of nchw44");
487
            group_offset = pack_group_size * group_pack_id * filter_meta.icpg *
488 489 490 491 492 493
                           filter_meta.ocpg * filter_meta.spatial[0] *
                           filter_meta.spatial[1] * filter_type.size();

            break;
        }
        case ConvBiasImpl::Param::Format::NCHW_WINOGRAD:
494
        case ConvBiasImpl::Param::Format::NCHW44_WINOGRAD:
495 496 497 498 499 500
        case ConvBiasImpl::Param::Format::NCHW88_WINOGRAD: {
            //! four format of weight layout
            //! 1. {g, alpha, alpha, ocpg/8, icpg/8, 8, 8}
            //! 2. {alpha, alpha, ocpg/8, icpg/8, 8, 8}
            //! 3. {g, alpha, alpha, oc, ic, 8, 8}
            //! 4. {alpha, alpha, oc, ic}
501
            group_offset = pack_group_size * group_pack_id * filter_meta.icpg *
502 503 504 505 506 507 508
                           filter_meta.ocpg *
                           (filter_meta.spatial[0] + output_block_size - 1) *
                           (filter_meta.spatial[1] + output_block_size - 1) *
                           filter_type.size();
            break;
        }
        default:
509
            megdnn_assert(0, "other filter format is not support yet");
510 511 512 513 514 515
    }
    return reinterpret_cast<T*>(reinterpret_cast<ptrdiff_t>(filter_ptr) +
                                group_offset);
}

template <typename T>
516 517 518 519
const T* ConvBiasImpl::NCBKernParam::bias(size_t batch_id, size_t group_pack_id,
                                          size_t channel_pack_id,
                                          size_t group_pack_size,
                                          size_t channel_pack_size) const {
520 521
    size_t batch_offset = 0_z;
    size_t group_offset = 0_z;
522
    size_t channel_offset = 0_z;
523 524
    if (bias_mode == BiasMode::BIAS) {
        batch_offset = batch_id * bias_bs * bias_type.size();
525 526 527 528
        group_offset = group_pack_size * group_pack_id * filter_meta.ocpg *
                       osz[0] * osz[1] * bias_type.size();
        channel_offset = channel_pack_size * channel_pack_id * osz[0] * osz[1] *
                         bias_type.size();
529
    } else if (bias_mode == BiasMode::BROADCAST_CHANNEL_BIAS) {
530
        group_offset = group_pack_size * group_pack_id * filter_meta.ocpg *
531
                       bias_type.size();
532
        channel_offset = channel_pack_size * channel_pack_id * bias_type.size();
533 534
    }
    return reinterpret_cast<T*>(reinterpret_cast<ptrdiff_t>(bias_ptr) +
535
                                batch_offset + group_offset + channel_offset);
536 537 538
}

template <typename T>
539 540 541 542
T* ConvBiasImpl::NCBKernParam::dst(size_t batch_id, size_t group_pack_id,
                                   size_t channel_pack_id,
                                   size_t group_pack_size,
                                   size_t channel_pack_size) const {
543
    size_t batch_offset = batch_id * out_bs * dst_type.size();
544
    size_t group_offset = group_pack_size * group_pack_id * filter_meta.ocpg *
545
                          osz[0] * osz[1] * dst_type.size();
546 547
    size_t channel_offset = channel_pack_size * channel_pack_id * osz[0] *
                            osz[1] * dst_type.size();
548
    return reinterpret_cast<T*>(reinterpret_cast<ptrdiff_t>(dst_ptr) +
549
                                batch_offset + group_offset + channel_offset);
550 551
}

552 553 554 555 556 557 558 559 560 561 562 563
#define INST(T)                                                      \
    template const T* ConvBiasImpl::NCBKernParam::src<T>(            \
            size_t batch_id, size_t group_id, size_t channel_id,     \
            size_t group_pack_size, size_t channel_pack_size) const; \
    template const T* ConvBiasImpl::NCBKernParam::bias<T>(           \
            size_t batch_id, size_t group_id, size_t channel_id,     \
            size_t group_pack_size, size_t channel_pack_size) const; \
    template const T* ConvBiasImpl::NCBKernParam::filter<T>(         \
            size_t group_id, size_t group_pack_size) const;          \
    template T* ConvBiasImpl::NCBKernParam::dst<T>(                  \
            size_t batch_id, size_t group_id, size_t channel_id,     \
            size_t group_pack_size, size_t channel_pack_size) const;
564 565 566 567

#define INST_DT(d) INST(DTypeTrait<d>::ctype)

MEGDNN_FOREACH_COMPUTING_DTYPE(INST_DT)
568
INST(void)
569 570 571 572 573
#undef INST
#undef INST_DT
}  // namespace fallback
}  // namespace megdnn

574
// vim: syntax=cpp.doxygen