mirror of
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292 lines
12 KiB
Plaintext
292 lines
12 KiB
Plaintext
// Copyright (c) 2025 PaddlePaddle Authors. All Rights Reserved.
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//
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// Licensed under the Apache License, Version 2.0 (the "License");
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// you may not use this file except in compliance with the License.
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// You may obtain a copy of the License at
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//
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// http://www.apache.org/licenses/LICENSE-2.0
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//
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// Unless required by applicable law or agreed to in writing, software
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// distributed under the License is distributed on an "AS IS" BASIS,
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// WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
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// See the License for the specific language governing permissions and
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// limitations under the License.
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// Ignore CUTLASS warnings about type punning
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#pragma GCC diagnostic push
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#pragma GCC diagnostic ignored "-Wstrict-aliasing"
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#pragma GCC diagnostic ignored "-Wunused-function"
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#pragma once
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#include "moe/fused_moe_helper.h"
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#include "moe/fused_moe_op.h"
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#pragma GCC diagnostic pop
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#include "helper.h"
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template <paddle::DataType T>
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void MoeDispatchKernel(
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const paddle::Tensor &input, const paddle::Tensor &gating_output,
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const paddle::optional<paddle::Tensor> &gating_correction_bias,
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const paddle::optional<paddle::Tensor> &w4a8_in_scale, const int moe_topk,
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const bool group_moe, const bool topk_only_mode, const int num_rows,
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const int hidden_size, const int expert_num, paddle::Tensor *permute_input,
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paddle::Tensor *tokens_expert_prefix_sum,
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paddle::Tensor *permute_indices_per_token, paddle::Tensor *topk_weight,
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paddle::Tensor *topk_idx, paddle::Tensor *expert_idx_per_token) {
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using namespace phi;
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typedef PDTraits<T> traits_;
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typedef typename traits_::DataType DataType_;
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typedef typename traits_::data_t data_t;
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auto stream = input.stream();
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auto place = input.place();
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if (group_moe) {
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// Check if expert_num is divisible by moe_topk, else throw an error
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PADDLE_ENFORCE_EQ(expert_num % moe_topk, 0,
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common::errors::InvalidArgument(
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"The number of experts (expert_num) "
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"must be divisible by moe_topk. "
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"Got expert_num = %d and moe_topk = %d.",
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expert_num, moe_topk));
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}
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const int num_moe_inputs = AlignTo16(num_rows * moe_topk);
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const int bytes = num_moe_inputs * sizeof(int);
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CubKeyValueSorter sorter_;
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sorter_.update_num_experts(expert_num);
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const int sorter_ws_size_bytes =
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AlignTo16(sorter_.getWorkspaceSize(moe_topk * num_rows));
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const int sort_tmp_in_out_size = num_moe_inputs * 2 * sizeof(int);
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paddle::Tensor ws_ptr_tensor =
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GetEmptyTensor({bytes + sorter_ws_size_bytes + sort_tmp_in_out_size},
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paddle::DataType::INT8, place);
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int8_t *ws_ptr = ws_ptr_tensor.data<int8_t>();
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int *source_rows_ = reinterpret_cast<int *>(ws_ptr);
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int8_t *sorter_ws_ptr = reinterpret_cast<int8_t *>(ws_ptr + bytes);
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int *permuted_experts_ =
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reinterpret_cast<int *>(sorter_ws_ptr + sorter_ws_size_bytes);
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int *permuted_rows_ = permuted_experts_ + num_moe_inputs;
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int *topk_idx_ptr = topk_idx->data<int>();
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float *softmax_max_prob = nullptr;
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if (group_moe) {
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paddle::Tensor softmax_max_prob_tensor =
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GetEmptyTensor({num_rows, moe_topk}, paddle::DataType::FLOAT32, place);
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// (TODO: check fill sucess ?)
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paddle::experimental::fill(softmax_max_prob_tensor, 0.f);
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softmax_max_prob = softmax_max_prob_tensor.data<float>();
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}
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float *softmax_out_;
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const bool is_pow_2 =
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(expert_num != 0) && ((expert_num & (expert_num - 1)) == 0);
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paddle::Tensor softmax_buffer;
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if (!is_pow_2 || expert_num > 256 || group_moe || gating_correction_bias) {
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softmax_buffer = GetEmptyTensor({num_rows * expert_num},
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paddle::DataType::FLOAT32, place);
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softmax_out_ = softmax_buffer.data<float>();
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} else {
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softmax_out_ = nullptr;
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}
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topk_gating_softmax_kernelLauncher<float, int>::run(
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gating_output.data<float>(),
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gating_correction_bias ? gating_correction_bias.get().data<float>()
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: nullptr,
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topk_weight->data<float>(), softmax_out_, topk_idx_ptr, source_rows_,
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softmax_max_prob, num_rows, expert_num, moe_topk, group_moe, stream,
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topk_only_mode);
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sorter_.run(reinterpret_cast<void *>(sorter_ws_ptr), sorter_ws_size_bytes,
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topk_idx_ptr, expert_idx_per_token->data<int32_t>(), source_rows_,
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permuted_rows_, moe_topk * num_rows, false, stream);
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if (w4a8_in_scale) {
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initialize_moe_routing_kernelLauncher<data_t, int8_t>::run(
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input.data<data_t>(), permute_input->data<int8_t>(), permuted_rows_,
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expert_idx_per_token->data<int32_t>(), w4a8_in_scale->data<float>(),
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permute_indices_per_token->data<int32_t>(), num_rows, num_rows,
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hidden_size, moe_topk, stream);
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} else {
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initialize_moe_routing_kernelLauncher<data_t>::run(
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input.data<data_t>(), permute_input->data<data_t>(), permuted_rows_,
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expert_idx_per_token->data<int32_t>(), nullptr,
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permute_indices_per_token->data<int32_t>(), num_rows, num_rows,
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hidden_size, moe_topk, stream);
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}
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compute_total_rows_before_expert(
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expert_idx_per_token->data<int32_t>(), moe_topk * num_rows, expert_num,
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tokens_expert_prefix_sum->data<int64_t>(), stream);
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}
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std::vector<paddle::Tensor> MoeExpertDispatch(
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const paddle::Tensor &input, const paddle::Tensor &gating_output,
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const paddle::optional<paddle::Tensor> &gating_correction_bias,
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const paddle::optional<paddle::Tensor> &w4a8_in_scale, const int moe_topk,
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const bool group_moe, const bool topk_only_mode) {
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const auto input_type = input.dtype();
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auto place = input.place();
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int token_rows = 0;
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auto input_dims = input.dims();
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auto gating_dims = gating_output.dims();
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const int expert_num = gating_dims[gating_dims.size() - 1];
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if (input_dims.size() == 3) {
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token_rows = input_dims[0] * input_dims[1];
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} else {
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token_rows = input_dims[0];
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}
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const int num_rows = token_rows;
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const int hidden_size = input.dims()[input_dims.size() - 1];
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auto permute_input_dtype =
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w4a8_in_scale ? paddle::DataType::INT8 : input_type;
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auto permute_input = GetEmptyTensor({moe_topk * num_rows, hidden_size},
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permute_input_dtype, place);
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// correspond to the weighted coefficients of the results from each expert.
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auto topk_weight =
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GetEmptyTensor({num_rows, moe_topk}, paddle::DataType::FLOAT32, place);
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auto topk_idx =
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GetEmptyTensor({num_rows, moe_topk}, paddle::DataType::INT32, place);
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auto tokens_expert_prefix_sum =
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GetEmptyTensor({expert_num}, paddle::DataType::INT64, place);
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auto permute_indices_per_token =
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GetEmptyTensor({moe_topk, num_rows}, paddle::DataType::INT32, place);
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auto expert_idx_per_token =
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GetEmptyTensor({num_rows * moe_topk}, paddle::DataType::INT32, place);
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switch (input_type) {
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case paddle::DataType::BFLOAT16:
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MoeDispatchKernel<paddle::DataType::BFLOAT16>(
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input, gating_output, gating_correction_bias, w4a8_in_scale, moe_topk,
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group_moe, topk_only_mode, num_rows, hidden_size, expert_num,
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&permute_input, &tokens_expert_prefix_sum, &permute_indices_per_token,
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&topk_weight, &topk_idx, &expert_idx_per_token);
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break;
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case paddle::DataType::FLOAT16:
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MoeDispatchKernel<paddle::DataType::FLOAT16>(
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input, gating_output, gating_correction_bias, w4a8_in_scale, moe_topk,
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group_moe, topk_only_mode, num_rows, hidden_size, expert_num,
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&permute_input, &tokens_expert_prefix_sum, &permute_indices_per_token,
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&topk_weight, &topk_idx, &expert_idx_per_token);
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break;
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default:
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PD_THROW("Unsupported data type for MoeDispatchKernel");
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}
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return {permute_input,
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tokens_expert_prefix_sum,
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permute_indices_per_token,
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topk_weight,
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topk_idx,
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expert_idx_per_token};
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}
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std::vector<std::vector<int64_t>> MoeExpertDispatchInferShape(
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const std::vector<int64_t> &input_shape,
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const std::vector<int64_t> &gating_output_shape,
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const paddle::optional<std::vector<int64_t>> &bias_shape,
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const int moe_topk) {
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int token_rows = -1;
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if (input_shape.size() == 3) {
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token_rows = input_shape[0] * input_shape[1];
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} else {
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token_rows = input_shape[0];
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}
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const int expert_num = gating_output_shape[gating_output_shape.size() - 1];
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const int num_rows = token_rows;
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const int hidden_size = input_shape[input_shape.size() - 1];
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const int permuted_rows = num_rows == -1 ? -1 : moe_topk * num_rows;
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return {{permuted_rows, hidden_size},
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{expert_num},
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{moe_topk, num_rows},
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{num_rows, moe_topk},
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{num_rows, moe_topk},
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{permuted_rows}};
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}
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std::vector<paddle::DataType>
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MoeExpertDispatchInferDtype(const paddle::DataType &input_dtype,
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const paddle::DataType &gating_output_dtype,
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const paddle::optional<paddle::DataType> &bias_type,
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const int moe_topk) {
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return {input_dtype, paddle::DataType::INT64, paddle::DataType::INT32,
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paddle::DataType::FLOAT32, paddle::DataType::INT32, paddle::DataType::INT32};
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}
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/**
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* @brief Mixture of Experts (MoE) Expert Dispatch Operator
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*
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* This operator performs the following key functions:
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* 1. Computes top-k experts for each input token based on gating scores
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* 2. Permutes input tokens according to their selected experts for efficient expert processing
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* 3. Computes prefix sums of tokens per expert for group_gemm optimization
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*
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* Inputs:
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* - input: The input tensor to be routed to experts
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* Shape: [total_tokens, hidden_size]
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* dtype: bfloat16 or float16
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* - gating_output: Gating network output scores for each token-expert pair
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* Shape: [total_tokens, expert_num]
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* dtype: must be float32
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* - gating_correction_bias: Optional bias term for gating correction (expert_num)
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*
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* Outputs:
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* - permute_input: Permuted input tensor organized by expert
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* Shape: [moe_topk * total_tokens, hidden_size]
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* dtype: Same as input
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* - tokens_expert_prefix_sum: Prefix sum array of token counts per expert for group_gemm
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* Shape: [expert_num]
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* dtype: int64
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* - permute_indices_per_token: Indices mapping for reconstructing original order
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* Shape: [moe_topk, total_tokens]
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* dtype: int32
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* - top_k_weight: Weight coefficients for combining expert outputs
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* Shape: [total_tokens, moe_topk]
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* dtype: float32
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* - top_k_indices: Indices of selected top-k experts for each token
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* Shape: [total_tokens, moe_topk]
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* dtype: int32
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*
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* Attributes:
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* - moe_topk: Number of experts to select for each token (k value in top-k routing)
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* - group_moe: Whether to perform group softmax within the operator
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* (true: softmax is computed within groups of experts,
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* false: standard softmax across all experts)
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* - topk_only_mode: Operation mode selector
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* (true: only performs topk selection without softmax,
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* false: performs full softmax+topk computation)
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*
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* Note:
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* - The operator requires 2D input format [total_tokens, hidden_size]
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* - For optimal performance, expert_num should be a power of 2 when possible
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* - When group_moe is true, expert_num must be divisible by moe_topk
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*/
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PD_BUILD_STATIC_OP(moe_expert_dispatch)
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.Inputs({"input", "gating_output",
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paddle::Optional("gating_correction_bias"),
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paddle::Optional("w4a8_in_scale")})
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.Outputs({"permute_input", "tokens_expert_prefix_sum",
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"permute_indices_per_token", "topk_weight", "topk_idx",
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"expert_idx_per_token"})
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.Attrs({"moe_topk:int", "group_moe:bool", "topk_only_mode:bool"})
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.SetKernelFn(PD_KERNEL(MoeExpertDispatch))
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.SetInferShapeFn(PD_INFER_SHAPE(MoeExpertDispatchInferShape))
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.SetInferDtypeFn(PD_INFER_DTYPE(MoeExpertDispatchInferDtype));
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