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168 lines
5.7 KiB
C++
168 lines
5.7 KiB
C++
#include "encoder_write_cache_with_rope_impl.cuh"
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#include "helper.h"
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#include "paddle/extension.h"
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#include "paddle/phi/backends/context_pool.h"
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#include "paddle/phi/core/memory/memcpy.h"
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#include "remote_cache_kv_ipc.h"
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template <typename T, int VecSize = 1>
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__global__ void GQAVariableLengthRotarySplitKernel_Qwen3(
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const T *qkv,
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const float *cos_emb,
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const float *sin_emb,
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const int *batch_id_per_token,
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const int *cu_seqlens_q,
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const int *seq_lens_encoder,
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const int *seq_lens_decoder,
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const int *cu_seqlens_k,
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T *qkv_out,
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T *q,
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T *k,
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T *v,
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const int64_t elem_cnt,
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const int q_num_head,
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const int kv_num_head,
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const int max_model_len,
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const int head_dim) {
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using LoadT = AlignedVector<T, VecSize>;
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using LoadEmbT = AlignedVector<float, VecSize>;
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LoadEmbT cos_emb_vec;
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LoadEmbT sin_emb_vec;
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const int64_t global_thread_idx = blockDim.x * blockIdx.x + threadIdx.x;
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const int offset = (q_num_head + kv_num_head * 2) * (head_dim / 2);
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const int64_t loop_times = elem_cnt / 2;
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for (int64_t linear_index = global_thread_idx * VecSize;
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linear_index < loop_times;
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linear_index += gridDim.x * blockDim.x * VecSize) {
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const int token_idx = linear_index / offset;
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const int ori_bi = batch_id_per_token[token_idx]; // 第几个batch
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int cache_kv_len = seq_lens_decoder[ori_bi];
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// 这里其实是不需要处理的,但是由于FA3的bug,所以必须!
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if (seq_lens_encoder[ori_bi] == 0) cache_kv_len = 0;
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const int bias = linear_index % offset;
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const int hi = bias / (head_dim / 2);
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const int h_bias = bias % (head_dim / 2);
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// we should handle token_idx, hi 头 的 h_bias 部分!
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const int ori_seq_id =
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(token_idx - cu_seqlens_q[ori_bi]) +
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cache_kv_len; // 在当前seq中的id(拼接了seq到一个batch的情况下有效)
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const int half_headdim = head_dim / 2;
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const int64_t emb_idx = ori_seq_id * head_dim + h_bias; // embedding的id
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const int64_t read_idx =
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token_idx * (q_num_head + 2 * kv_num_head) * head_dim + hi * head_dim +
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h_bias;
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LoadT src_vec0;
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LoadT src_vec1;
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Load<T, VecSize>(&qkv[read_idx], &src_vec0);
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Load<T, VecSize>(&qkv[read_idx + 64], &src_vec1);
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const int kv_write_idx = cu_seqlens_k[ori_bi] + ori_seq_id;
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int64_t base_split_idx;
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T *out_p = nullptr;
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if (hi < q_num_head) {
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base_split_idx =
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token_idx * q_num_head * head_dim + hi * head_dim + h_bias;
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out_p = q;
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} else if (hi < q_num_head + kv_num_head) {
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base_split_idx = kv_write_idx * kv_num_head * head_dim +
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(hi - q_num_head) * head_dim + h_bias;
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out_p = k;
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} else {
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out_p = v;
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base_split_idx = kv_write_idx * kv_num_head * head_dim +
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(hi - q_num_head - kv_num_head) * head_dim + h_bias;
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}
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// TODO check this correct or not
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int64_t new_emb_idx = emb_idx;
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if (hi < q_num_head + kv_num_head) {
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Load<float, VecSize>(&cos_emb[new_emb_idx], &cos_emb_vec);
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Load<float, VecSize>(&sin_emb[new_emb_idx], &sin_emb_vec);
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#pragma unroll
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for (int i = 0; i < VecSize; i++) {
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float input_left = static_cast<float>(src_vec0[i]);
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float input_right = static_cast<float>(src_vec1[i]);
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const float cos_tmp = cos_emb_vec[i];
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const float sin_tmp = sin_emb_vec[i];
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src_vec0[i] =
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static_cast<T>(input_left * cos_tmp - input_right * sin_tmp);
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src_vec1[i] =
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static_cast<T>(input_right * cos_tmp + input_left * sin_tmp);
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}
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}
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Store<T, VecSize>(src_vec0, &qkv_out[read_idx]);
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Store<T, VecSize>(src_vec0, &out_p[base_split_idx]);
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Store<T, VecSize>(src_vec1, &qkv_out[read_idx + 64]);
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Store<T, VecSize>(src_vec1, &out_p[base_split_idx + 64]);
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}
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}
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template <typename T>
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void gqa_rotary_qk_split_variable_qwen3(T *qkv_out,
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T *q,
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T *k,
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T *v,
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const T *qkv_input,
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const float *rotary_emb,
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const int *batch_id_per_token,
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const int *seq_lens_encoder,
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const int *seq_lens_decoder,
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const int *cu_seqlens_q,
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const int *cu_seqlens_k,
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const int token_num,
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const int num_heads,
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const int kv_num_heads,
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const int max_model_len,
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const int head_dim,
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const cudaStream_t &stream) {
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assert(head_dim == 128 && "head_dim must be 128");
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int64_t elem_nums = token_num * (num_heads + 2 * kv_num_heads) * head_dim;
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constexpr int HEAD_DIM = 128;
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constexpr int PackSize = 8;
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const int pack_num = elem_nums / PackSize;
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const int blocksize = 128;
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int grid_size = 1;
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GetNumBlocks<128>(pack_num, &grid_size);
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dim3 block_size(128);
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const float *cos_emb = rotary_emb;
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const float *sin_emb = rotary_emb + max_model_len * head_dim;
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launchWithPdlWhenEnabled(
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GQAVariableLengthRotarySplitKernel_Qwen3<T, PackSize>,
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grid_size,
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block_size,
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0,
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stream,
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qkv_input,
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cos_emb,
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sin_emb,
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batch_id_per_token,
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cu_seqlens_q,
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seq_lens_encoder,
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seq_lens_decoder,
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cu_seqlens_k,
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qkv_out,
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q,
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k,
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v,
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elem_nums,
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num_heads,
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kv_num_heads,
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max_model_len,
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head_dim);
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}
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