attention_kernels_opt_tc.cu 45 KB
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#include <torch/all.h>
#include <ATen/cuda/CUDAContext.h>
#include <c10/cuda/CUDAGuard.h>
#include <algorithm>

#include "attention_dtypes.h"
#include "attention_utils.cuh"

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#include <hip/hip_bf16.h>
#include "../quantization/fp8/amd/quant_utils.cuh"
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typedef __hip_bfloat16 __nv_bfloat16;

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#define WARP_SIZE 64
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#include "static_switch_tc.h"
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#define MAX(a, b) ((a) > (b) ? (a) : (b))
#define MIN(a, b) ((a) < (b) ? (a) : (b))
#define DIVIDE_ROUND_UP(a, b) (((a) + (b) - 1) / (b))

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std::string get_device_name()
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{
    hipDeviceProp_t props{};
    int device;
    auto status = hipGetDevice(&device);
    if(status != hipSuccess)
    {
        return std::string();
    }

    status = hipGetDeviceProperties(&props, device);
    if(status != hipSuccess)
    {
        return std::string();
    }
    const std::string raw_name(props.gcnArchName);
    return raw_name.substr(0, raw_name.find(':')); // str.substr(0, npos) returns str.
}
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static const std::string device_name=get_device_name();

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static inline int get_env_(const char *env_var) {
  if (char *value = std::getenv(env_var)) {
    return atoi(value);
  }
  return 0;
}
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static const int PA_USE_V1 = get_env_("PA_USE_V1");
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static const int PA_REUSE_KV_TIMES = get_env_("PA_REUSE_KV_TIMES");
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static const int PA_PARTITION_SIZE = get_env_("PA_PARTITION_SIZE");
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static const int PA_BLOCK_SIZE = get_env_("PA_BLOCK_SIZE");
static const int PA_PRINT_PARAM = get_env_("PA_PRINT_PARAM");
namespace vllm {

// Utility function for attention softmax.
template <int NUM_WARPS>
inline __device__ float block_sum(float* red_smem, float sum) {
  // Decompose the thread index into warp / lane.
  int warp = threadIdx.x / WARP_SIZE;
  int lane = threadIdx.x % WARP_SIZE;

  // Compute the sum per warp.
#pragma unroll
  for (int mask = WARP_SIZE / 2; mask >= 1; mask /= 2) {
    sum += VLLM_SHFL_XOR_SYNC(sum, mask);
  }

  // Warp leaders store the data to shared memory.
  if (lane == 0) {
    red_smem[warp] = sum;
  }

  // Make sure the data is in shared memory.
  __syncthreads();

  // The warps compute the final sums.
  if (lane < NUM_WARPS) {
    sum = red_smem[lane];
  }

  // Parallel reduction inside the warp.
#pragma unroll
  for (int mask = NUM_WARPS / 2; mask >= 1; mask /= 2) {
    sum += VLLM_SHFL_XOR_SYNC(sum, mask);
  }

  // Broadcast to other threads.
  return VLLM_SHFL_SYNC(sum, 0);
}

using half4_t = __attribute__( (__vector_size__(4 * sizeof(_Float16)) )) _Float16;
using v4bh = __attribute__( (__vector_size__(4 * sizeof(short)) )) short;
using float4_t = __attribute__( (__vector_size__(4 * sizeof(float)) )) float;
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using float2_t = __attribute__( (__vector_size__(2 * sizeof(float)) )) float;
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struct half4x2{
  half4_t data[2];
};

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template<typename scalar_t> 
struct vec2data{
  scalar_t data[2];
};

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template<bool is_half>
inline __device__ void float4_2_half4(half4_t& dst,const float4_t& src)
{
  if constexpr(is_half){
    #pragma unroll
    for(int i=0;i<4;i++){
      dst[i]=src[i];
    }
  }
  else{
    __nv_bfloat16* out = reinterpret_cast<__nv_bfloat16 *>(&dst);
    #pragma unroll
    for(int i=0;i<4;i++){
      out[i]=__float2bfloat16(src[i]);
    }
  }
}

template<bool is_half>
inline __device__ void v_mmac_f32_16x16x16_f16(const half4_t& reg_a, const half4_t& reg_b, float4_t& reg_c)
{
    
    if constexpr (is_half){
     asm volatile("v_mmac_f32_16x16x16_f16 %0, %1, %2, %0" : 
             "=v"(reg_c) : "v"(reg_a), "v"(reg_b), "0"(reg_c));
    }
    else{
     asm volatile("v_mmac_f32_16x16x16_bf16 %0, %1, %2, %0" : 
       "=v"(reg_c) : "v"(reg_a), "v"(reg_b), "0"(reg_c));
    }
}

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template<bool is_half>
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inline __device__ void builtin_amdgcn_mmac(const half4_t& reg_a, const half4_t& reg_b, float4_t& reg_c)
{
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    if constexpr (is_half){reg_c=__builtin_amdgcn_mmac_f32_16x16x16f16(reg_a,reg_b,reg_c);}
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    else{
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      reg_c=__builtin_amdgcn_mmac_f32_16x16x16bf16(*(v4bh*)&reg_a,*(v4bh*)&reg_b,reg_c);
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    }
}

// TODO(woosuk): Merge the last two dimensions of the grid.
// Grid: (num_heads, num_seqs, max_num_partitions).
template <typename scalar_t, typename cache_t, int HEAD_SIZE, int BLOCK_SIZE,
          int NUM_THREADS, vllm::Fp8KVCacheDataType KV_DTYPE,
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          bool IS_BLOCK_SPARSE,int REUSE_KV_TIMES>  // Zero means no partitioning.
__global__ void paged_attention_kernel_TC_with_mask(
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    float* __restrict__ exp_sums,  // [num_seqs, num_heads, max_num_partitions]
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    float* __restrict__ max_logits,  // [num_seqs, num_heads, max_num_partitions]
    scalar_t* __restrict__ out,  // [num_seqs, num_heads,head_size]
    scalar_t* __restrict__ out_tmp,  // [num_seqs, num_heads, max_num_partitions,head_size]
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    const scalar_t* __restrict__ q,       // [num_seqs, num_heads, head_size]
    const cache_t* __restrict__ k_cache,  // [num_blocks, num_kv_heads,
                                          // head_size/x, block_size, x]
    const cache_t* __restrict__ v_cache,  // [num_blocks, num_kv_heads,
                                          // head_size, block_size]
    const int num_heads,
    const int num_kv_heads,               // [num_heads]
    const float scale,
    const int* __restrict__ block_tables,  // [num_seqs, max_num_blocks_per_seq]
    const int* __restrict__ seq_lens,      // [num_seqs]
    const int max_num_blocks_per_seq,
    const float* __restrict__ alibi_slopes,  // [num_heads]
    const int q_stride, const int kv_block_stride, const int kv_head_stride,
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    const float* k_scale, const float* v_scale, const int tp_rank, 
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    const int blocksparse_local_blocks, const int blocksparse_vert_stride, 
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    const int blocksparse_block_size, const int blocksparse_head_sliding_step,int PARTITION_SIZE=0) {
#if defined(__gfx936__) || defined(__gfx928__)
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  const int seq_idx = blockIdx.z;
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  const int partition_idx = blockIdx.x;
  const int max_num_partitions = gridDim.x;
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  const int seq_len = __builtin_amdgcn_readfirstlane(seq_lens[seq_idx]);
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  const int num_seq_blocks = DIVIDE_ROUND_UP(seq_len, BLOCK_SIZE);
  const bool USE_PARTITIONING = PARTITION_SIZE<num_seq_blocks * BLOCK_SIZE && PARTITION_SIZE>0;
  if (USE_PARTITIONING && partition_idx * PARTITION_SIZE >= seq_len) return;
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  constexpr bool is_half = std::is_same<scalar_t, uint16_t>::value;
  static_assert(HEAD_SIZE<=4*NUM_THREADS,"HEAD_SIZE<=4*NUM_THREADS");
  const int num_blocks_per_partition = USE_PARTITIONING ? PARTITION_SIZE / BLOCK_SIZE : num_seq_blocks;
  const int partition_size = USE_PARTITIONING ? PARTITION_SIZE : num_seq_blocks * BLOCK_SIZE;
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  const int start_block_idx = partition_idx * num_blocks_per_partition;
  const int end_block_idx =MIN(start_block_idx + num_blocks_per_partition, num_seq_blocks);
  const int num_blocks = end_block_idx - start_block_idx;
  const int start_token_idx = start_block_idx * BLOCK_SIZE;
  const int end_token_idx = MIN(start_token_idx + num_blocks * BLOCK_SIZE, seq_len);
  const int num_tokens = end_token_idx - start_token_idx;
  constexpr int NUM_WARPS = NUM_THREADS / WARP_SIZE;
  constexpr int x = 16 / sizeof(cache_t);
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  const int thread_idx = threadIdx.x;
  const int warp_idx = __builtin_amdgcn_readfirstlane(thread_idx / WARP_SIZE);
  const int lane = thread_idx % WARP_SIZE;
  const int rowid = lane%16;
  const int rows = lane/16;
  
  const int num_queries_per_kv = num_heads / num_kv_heads;
  const int num_blocks_per_kv = ((num_queries_per_kv + REUSE_KV_TIMES -1) / REUSE_KV_TIMES);
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  const int head_idx=(blockIdx.y / num_blocks_per_kv) * num_queries_per_kv + (blockIdx.y % num_blocks_per_kv) * REUSE_KV_TIMES;
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  int q_boundary=REUSE_KV_TIMES;
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  if(num_heads < REUSE_KV_TIMES*gridDim.y && (num_blocks_per_kv-1)*REUSE_KV_TIMES == head_idx%num_queries_per_kv)
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    q_boundary=num_queries_per_kv-(num_blocks_per_kv-1)*REUSE_KV_TIMES;
  const int kv_head_idx = head_idx / num_queries_per_kv;
  constexpr int reuse_group=(REUSE_KV_TIMES-1)/4+1;
  float alibi_slope[reuse_group]={0.f};
  if(alibi_slopes != nullptr){
    for(int i=0;i<reuse_group;i++){
      int reuse_kv_idx=rows+i*4;
      if(reuse_kv_idx<q_boundary) alibi_slope[i]=alibi_slopes[head_idx+reuse_kv_idx];
    }
  }
  float qk_max[reuse_group];
  for(int i=0;i<reuse_group;i++){
    qk_max[i]=-FLT_MAX;
  }

  const scalar_t* q_ptr = q + seq_idx * q_stride + head_idx * HEAD_SIZE;
  
  half4x2 q_vec;
  q_vec.data[0]={0,0,0,0};
  q_vec.data[1]={0,0,0,0};
  
  __shared__ half4x2 q_vecs[REUSE_KV_TIMES][16];
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    for(int i=0;i<q_boundary;i++){
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    if(thread_idx<16){
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      half4x2 temp = *reinterpret_cast<const half4x2*>(q_ptr+i*HEAD_SIZE+thread_idx*8);
      #pragma unroll
      for(int k=0;k<4;k++){
        temp.data[0][k]=((float)temp.data[0][k])*scale;
        temp.data[1][k]=((float)temp.data[1][k])*scale;
      }
      q_vecs[i][thread_idx]=temp;
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    }
  }
  __syncthreads();
  extern __shared__ char shared_mem[];
  scalar_t* logits = reinterpret_cast<scalar_t*>(shared_mem);
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  // __shared__ float red_smem[2 * NUM_WARPS];
  __shared__ float s_max[REUSE_KV_TIMES][NUM_WARPS];
  __shared__ float s_logit[NUM_WARPS];
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  const int* block_table = block_tables + seq_idx * max_num_blocks_per_seq;
  const cache_t* k_ptr_base = k_cache+kv_head_idx * kv_head_stride+lane*8;
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  for (int block_idx = start_block_idx + warp_idx; block_idx < end_block_idx;block_idx += NUM_WARPS) {
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    const int64_t physical_block_number = static_cast<int64_t>(block_table[block_idx]);
    const cache_t* k_ptr=k_ptr_base + physical_block_number * kv_block_stride;
    float4_t qk_vec={0,0,0,0};
    half4x2 k_vec[2];
    k_vec[0]=*reinterpret_cast<const half4x2*>(k_ptr);
    #pragma unroll
    for(int i=0;i<3;i++){
      if(rowid<q_boundary)q_vec=q_vecs[rowid][i*4+rows];
      k_vec[1-i%2]=*reinterpret_cast<const half4x2*>(k_ptr+(i+1)*512);
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      builtin_amdgcn_mmac<is_half>(k_vec[i%2].data[0],q_vec.data[0],qk_vec);
      builtin_amdgcn_mmac<is_half>(k_vec[i%2].data[1],q_vec.data[1],qk_vec);
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    }
    //tail
    {
      if(rowid<q_boundary)q_vec=q_vecs[rowid][3*4+rows];
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      builtin_amdgcn_mmac<is_half>(k_vec[1].data[0],q_vec.data[0],qk_vec);
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      v_mmac_f32_16x16x16_f16<is_half>(k_vec[1].data[1],q_vec.data[1],qk_vec);
    }
    #pragma unroll
    for(int i=0;i<reuse_group;i++){
      int reuse_kv_idx=rows+i*4;
      if(reuse_kv_idx<REUSE_KV_TIMES){
        if(reuse_kv_idx>=q_boundary)qk_vec[i]=0;
        const int token_idx = block_idx * BLOCK_SIZE+rowid;
        if(alibi_slope[i] != 0){
          float alibi=alibi_slope[i]* (token_idx - seq_len + 1);
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          qk_vec[i] += alibi;
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        }
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        const bool mask = (token_idx >= seq_len);
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        if(mask){
          from_float(logits[partition_size*reuse_kv_idx+token_idx - start_token_idx] , 0.f);
        }
        else{
          from_float(logits[partition_size*reuse_kv_idx+token_idx - start_token_idx] , qk_vec[i]);
          qk_max[i] = fmaxf(qk_max[i], qk_vec[i]);
        }
      }
    }
  }
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  // compute max
  #pragma unroll
  for (int mask = 8; mask >= 1; mask /= 2) {
    #pragma unroll
    for(int r=0;r<reuse_group;r++){
      qk_max[r]=fmaxf(qk_max[r],__shfl_xor(qk_max[r],mask));
    }
  }
  #pragma unroll
  for(int r=0;r<reuse_group;r++){
    if(rowid==0&&r*4+rows<q_boundary){
      s_max[r*4+rows][warp_idx] = qk_max[r];
    }
  }
  __syncthreads();
  __shared__ float max_out[REUSE_KV_TIMES];
  __shared__ float expsum_out[REUSE_KV_TIMES];
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  for(int reuse_kv_idx=0; reuse_kv_idx<q_boundary; reuse_kv_idx++) {
    const int head_idx_ = head_idx + reuse_kv_idx;
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    float qk_max_tmp = lane < NUM_WARPS ? s_max[reuse_kv_idx][lane] : -FLT_MAX;
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    float exp_sum = 0.f;
    #pragma unroll
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    for (int mask = NUM_WARPS / 2; mask >= 1; mask /= 2) {
      qk_max_tmp = fmaxf(qk_max_tmp, __shfl_xor(qk_max_tmp, mask));
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    }
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    qk_max_tmp = __shfl(qk_max_tmp, 0);
    for (int i = thread_idx; i < num_tokens; i += NUM_THREADS) {
      float val = __expf(to_float(logits[(reuse_kv_idx * partition_size) + i]) - qk_max_tmp);
      from_float(logits[(reuse_kv_idx * partition_size) + i] , val);
      exp_sum += val;
    }
    exp_sum = block_sum<NUM_WARPS>(s_logit, exp_sum);
    // Compute softmax.
    const float inv_sum = __fdividef(1.f, exp_sum + 1e-6f);
    for (int i = thread_idx; i < num_tokens; i += NUM_THREADS) {
      from_float(logits[(reuse_kv_idx * partition_size) + i] ,to_float(logits[(reuse_kv_idx * partition_size) + i])*inv_sum);
    }
    if(USE_PARTITIONING&&thread_idx == 0){
      max_out[reuse_kv_idx] = qk_max_tmp;
      expsum_out[reuse_kv_idx]=exp_sum;
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    }
  }
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  __syncthreads();
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  constexpr int NUM_ROWS_PER_THREAD =DIVIDE_ROUND_UP(HEAD_SIZE, WARP_SIZE);//2
  if constexpr(REUSE_KV_TIMES<=2){
    float accs[REUSE_KV_TIMES][NUM_ROWS_PER_THREAD];
    #pragma unroll
    for (int i = 0; i < NUM_ROWS_PER_THREAD; i++) {
      #pragma unroll
      for(int k=0;k<REUSE_KV_TIMES;k++)
      {
        accs[k][i] = 0.f;
      }
    }
    scalar_t zero_value;
    zero(zero_value);
    for (int block_idx = start_block_idx + warp_idx; block_idx < end_block_idx;
        block_idx += NUM_WARPS) {
      const int64_t physical_block_number =
          static_cast<int64_t>(block_table[block_idx]);
      const int token_idx = block_idx * BLOCK_SIZE +rows*4;
      half4_t logits_vec={0,0,0,0};
      if(rowid<4*q_boundary){
          logits_vec=*reinterpret_cast<half4_t*>(logits + rowid/4 * partition_size+token_idx - start_token_idx);
      }
      const cache_t* v_ptr = v_cache + physical_block_number * kv_block_stride +
                            kv_head_idx * kv_head_stride + rows*4+rowid*16;
      #pragma unroll
      for (int i = 0; i < NUM_ROWS_PER_THREAD; i++) {
        #pragma unroll
        for(int k=0;k<4;k++){
          int offset=i*1024+k*256;
          half4_t v_vec=*reinterpret_cast<const half4_t*>(v_ptr + offset);
          if (block_idx == num_seq_blocks - 1) {
            scalar_t* v_vec_ptr = reinterpret_cast<scalar_t*>(&v_vec);
            #pragma unroll
            for (int j = 0; j < 4; j++) {
              v_vec_ptr[j] = token_idx + j < seq_len ? v_vec_ptr[j] : zero_value;
            }
          }
          float4_t out_vec={0,0,0,0};
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          builtin_amdgcn_mmac<is_half>(v_vec,logits_vec,out_vec);
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          if(rows==k){
            for(int resuseid=0;resuseid<REUSE_KV_TIMES;resuseid++){
              accs[resuseid][i]+=out_vec[resuseid];
            }
          }
        }
      } 
    } 
    __syncthreads();
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    using floatV_t = __attribute__( (__vector_size__(NUM_ROWS_PER_THREAD * sizeof(float)) )) float;
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    // Perform reduction across warps.
    for(int reuse_kv_idx=0; reuse_kv_idx<q_boundary; reuse_kv_idx++) {
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      if constexpr (NUM_THREADS>64){
        floatV_t* out_smem = reinterpret_cast<floatV_t*>(shared_mem);
        #pragma unroll
        for (int i = NUM_WARPS; i > 1; i /= 2) {
          int mid = i / 2;
          // Upper warps write to shared memory.
          if (warp_idx >= mid && warp_idx < i) {
            out_smem[(warp_idx - mid) * 64+lane]=*(floatV_t*)(accs[reuse_kv_idx]);
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          }
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          __syncthreads();
          // Lower warps update the output.
          if (warp_idx < mid) {
            floatV_t tmp=out_smem[thread_idx];
            #pragma unroll
            for (int i = 0; i < NUM_ROWS_PER_THREAD; i++) {
              accs[reuse_kv_idx][i] += tmp[i];
            }
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          }
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          __syncthreads();
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        }
      }
      if (warp_idx == 0) {
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        scalar_t* out_ptr;
        int out_offset;
        if(USE_PARTITIONING){
          out_offset=max_num_partitions*HEAD_SIZE;
          out_ptr=out_tmp + seq_idx * num_heads * out_offset + head_idx*out_offset+partition_idx * HEAD_SIZE;
        }
        else{
          out_ptr=out + seq_idx * num_heads  * HEAD_SIZE + head_idx*HEAD_SIZE;
        } 
        #pragma unroll
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        for (int i = 0; i < NUM_ROWS_PER_THREAD; i++) {
          const int row_idx = lane + i * WARP_SIZE;
            from_float(*(out_ptr + row_idx), accs[reuse_kv_idx][i]);
        }
      }
    }
  }
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#if defined __gfx928__
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  else{
    constexpr int GROUPS=reuse_group*4;
    // NOTE(woosuk): We use FP32 for the accumulator for better accuracy.
    float accs[GROUPS][NUM_ROWS_PER_THREAD];
    #pragma unroll
    for (int i = 0; i < NUM_ROWS_PER_THREAD; i++) {
      #pragma unroll
      for(int k=0;k<GROUPS;k++)
      {
        accs[k][i] = 0.f;
      }
    }
    scalar_t zero_value;
    zero(zero_value);
    for (int block_idx = start_block_idx + warp_idx; block_idx < end_block_idx;
        block_idx += NUM_WARPS) {
      const int64_t physical_block_number =
          static_cast<int64_t>(block_table[block_idx]);
      const int token_idx = block_idx * BLOCK_SIZE +rows*4;
      half4_t logits_vec={0,0,0,0};
      if(rowid<q_boundary){
          logits_vec=*reinterpret_cast<half4_t*>(logits + rowid * partition_size+token_idx - start_token_idx);
      }
      const cache_t* v_ptr = v_cache + physical_block_number * kv_block_stride +
                            kv_head_idx * kv_head_stride + rows*4+rowid*16;
      #pragma unroll
      for (int i = 0; i < NUM_ROWS_PER_THREAD; i++) {
        #pragma unroll
        for(int k=0;k<4;k++){
          int offset=i*1024+k*256;
          half4_t v_vec=*reinterpret_cast<const half4_t*>(v_ptr + offset);
          if (block_idx == num_seq_blocks - 1) {
            scalar_t* v_vec_ptr = reinterpret_cast<scalar_t*>(&v_vec);
            #pragma unroll
            for (int j = 0; j < 4; j++) {
              v_vec_ptr[j] = token_idx + j < seq_len ? v_vec_ptr[j] : zero_value;
            }
          }
          float4_t out_vec={0,0,0,0};
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          builtin_amdgcn_mmac<is_half>(v_vec,logits_vec,out_vec);
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          for(int g=0;g<reuse_group;g++){
            accs[g*4+k][i]+=out_vec[g];
          }
        }
      } 
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    }
    if constexpr (NUM_THREADS>64){
      __syncthreads();
      using floatV_t = __attribute__( (__vector_size__(NUM_ROWS_PER_THREAD * sizeof(float)) )) float;
      // Perform reduction across warps.
      
      for(int reuse_kv_idx=0; reuse_kv_idx<GROUPS; reuse_kv_idx++) {
        
        floatV_t* out_smem = reinterpret_cast<floatV_t*>(shared_mem);
        #pragma unroll
        for (int i = NUM_WARPS; i > 1; i /= 2) {
          int mid = i / 2;
          // Upper warps write to shared memory.
          if (warp_idx >= mid && warp_idx < i) {
            out_smem[(warp_idx - mid) * 64+lane]=*(floatV_t*)(accs[reuse_kv_idx]);
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          }
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          __syncthreads();
          // Lower warps update the output.
          if (warp_idx < mid) {
            floatV_t tmp=out_smem[thread_idx];
            #pragma unroll
            for (int i = 0; i < NUM_ROWS_PER_THREAD; i++) {
              accs[reuse_kv_idx][i] += tmp[i];
            }
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          }
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          __syncthreads();
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        }
      }
    }
    if (warp_idx == 0) {
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      scalar_t* out_ptr_base;
      int out_offset;
      if(USE_PARTITIONING){
        out_offset=max_num_partitions*HEAD_SIZE;
        out_ptr_base=out_tmp + seq_idx * num_heads * out_offset + head_idx*out_offset+partition_idx * HEAD_SIZE;
      }
      else{
        out_offset=HEAD_SIZE;
        out_ptr_base=out + seq_idx * num_heads  * HEAD_SIZE + head_idx*HEAD_SIZE;
      } 
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      for(int g=0;g<reuse_group;g++){
        int reusekvid=g*4+rows;
        if(reusekvid<q_boundary){
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          scalar_t* out_ptr = out_ptr_base + reusekvid * out_offset;
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          #pragma unroll
          for (int i = 0; i < NUM_ROWS_PER_THREAD; i++) {
            for(int k=0;k<4;k++){
              const int row_idx = rowid+16*k + i * WARP_SIZE;
              from_float(*(out_ptr + row_idx), accs[g*4+k][i]);
            }
          }
        }
      }
    }
  }
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#else
  else{
    constexpr int GROUPS=reuse_group*4;
    // NOTE(woosuk): We use FP32 for the accumulator for better accuracy.
    float4_t accs[4][NUM_ROWS_PER_THREAD];
    #pragma unroll
    for (int i = 0; i < NUM_ROWS_PER_THREAD; i++) {
      #pragma unroll
      for(int k=0;k<4;k++)
      {
        accs[k][i] = {0.f,0.f,0.f,0.f};
      }
    }
    scalar_t zero_value;
    zero(zero_value);
    for (int block_idx = start_block_idx + warp_idx; block_idx < end_block_idx;
        block_idx += NUM_WARPS) {
      const int64_t physical_block_number =
          static_cast<int64_t>(block_table[block_idx]);
      const int token_idx = block_idx * BLOCK_SIZE +rows*4;
      half4_t logits_vec={0,0,0,0};
      if(rowid<q_boundary){
          logits_vec=*reinterpret_cast<half4_t*>(logits + rowid * partition_size+token_idx - start_token_idx);
      }
      const cache_t* v_ptr = v_cache + physical_block_number * kv_block_stride +
                            kv_head_idx * kv_head_stride + rows*4+rowid*16;
      #pragma unroll
      for (int i = 0; i < NUM_ROWS_PER_THREAD; i++) {
        #pragma unroll
        for(int k=0;k<4;k++){
          int offset=i*1024+k*256;
          half4_t v_vec=*reinterpret_cast<const half4_t*>(v_ptr + offset);
          if (block_idx == num_seq_blocks - 1) {
            scalar_t* v_vec_ptr = reinterpret_cast<scalar_t*>(&v_vec);
            #pragma unroll
            for (int j = 0; j < 4; j++) {
              v_vec_ptr[j] = token_idx + j < seq_len ? v_vec_ptr[j] : zero_value;
            }
          }
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          builtin_amdgcn_mmac<is_half>(v_vec,logits_vec,accs[k][i]);
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        }
      } 
    }
    if constexpr (NUM_THREADS>64){
      __syncthreads();
      using floatV_t = __attribute__( (__vector_size__(reuse_group * sizeof(float)) )) float;
      // Perform reduction across warps.
      
      for(int m=0; m<4; m++) {
        floatV_t* out_smem = reinterpret_cast<floatV_t*>(shared_mem);
        #pragma unroll
        for (int i = NUM_WARPS; i > 1; i /= 2) {
          int mid = i / 2;
          // Upper warps write to shared memory.
          if (warp_idx >= mid && warp_idx < i) {
            for(int k=0;k<NUM_ROWS_PER_THREAD;k++){
              out_smem[((warp_idx - mid) * 64+lane)*NUM_ROWS_PER_THREAD+k]=*(floatV_t*)(&(accs[m][k]));
            }
          }
          __syncthreads();
          // Lower warps update the output.
          if (warp_idx < mid) {
            for(int k=0;k<NUM_ROWS_PER_THREAD;k++){
              floatV_t tmp=out_smem[thread_idx*NUM_ROWS_PER_THREAD+k];
              #pragma unroll
              for (int i = 0; i < reuse_group; i++) {
                accs[m][k][i] += tmp[i];
              }
            }
          }
          __syncthreads();
        }
      }
    }
    if (warp_idx == 0) {
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      scalar_t* out_ptr_base;
      int out_offset;
      if(USE_PARTITIONING){
        out_offset=max_num_partitions*HEAD_SIZE;
        out_ptr_base=out_tmp + seq_idx * num_heads * out_offset + head_idx*out_offset+partition_idx * HEAD_SIZE;
      }
      else{
        out_offset=HEAD_SIZE;
        out_ptr_base=out + seq_idx * num_heads  * HEAD_SIZE + head_idx*HEAD_SIZE;
      } 
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      for(int g=0;g<reuse_group;g++){
        int reusekvid=g*4+rows;
        if(reusekvid<q_boundary){
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          scalar_t* out_ptr = out_ptr_base + reusekvid*out_offset;
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          #pragma unroll
          for (int i = 0; i < NUM_ROWS_PER_THREAD; i++) {
            for(int k=0;k<4;k++){
              const int row_idx = rowid+16*k + i * WARP_SIZE;
              from_float(*(out_ptr + row_idx), accs[k][i][g]);
            }
          }
        }
      }
    }
  }
#endif
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  if (USE_PARTITIONING&&thread_idx < q_boundary){
    int offset = seq_idx * num_heads * max_num_partitions + (head_idx+thread_idx) * max_num_partitions + partition_idx;
    *(max_logits+offset)=max_out[thread_idx];
    *(exp_sums+offset)=expsum_out[thread_idx];
  }
#endif
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}

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// Grid: (num_heads, num_seqs).
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template <typename scalar_t, int HEAD_SIZE, int NUM_THREADS>
__global__ __launch_bounds__(NUM_THREADS, 1) void paged_attention_v2_reduce_kernel_opt_tc(
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    scalar_t* __restrict__ out,            // [num_seqs, num_heads, head_size]
    const float* __restrict__ exp_sums,    // [num_seqs, num_heads,
                                           // max_num_partitions]
    const float* __restrict__ max_logits,  // [num_seqs, num_heads,
                                           // max_num_partitions]
    const scalar_t* __restrict__ tmp_out,  // [num_seqs, num_heads,
                                           // max_num_partitions, head_size]
    const int* __restrict__ seq_lens,      // [num_seqs]
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    const int max_num_partitions,int PARTITION_SIZE=512) {
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  const int num_heads = gridDim.x;
  const int head_idx = blockIdx.x;
  const int seq_idx = blockIdx.y;
  const int seq_len = seq_lens[seq_idx];
  const int num_partitions = DIVIDE_ROUND_UP(seq_len, PARTITION_SIZE);
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  if(num_partitions==1)return;
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  constexpr int NUM_WARPS = NUM_THREADS / WARP_SIZE;
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  const int thread_idx = threadIdx.x;
  const int warp_idx = __builtin_amdgcn_readfirstlane(thread_idx / WARP_SIZE);
  const int lane = thread_idx % WARP_SIZE;
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  int offset = seq_idx * num_heads * max_num_partitions + head_idx * max_num_partitions;
  const float* max_logits_ptr = max_logits + offset;
  const float* exp_sums_ptr = exp_sums + offset;
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  float max_logit = -FLT_MAX;
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  float global_max_logit = -FLT_MAX;
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  float global_exp_sum = 0.0f;
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  if constexpr(NUM_THREADS == 64&& HEAD_SIZE==128){
    __shared__ float shared_exp_sums[64];
    if(thread_idx<num_partitions){
      max_logit = max_logits_ptr[thread_idx];
      global_exp_sum = exp_sums_ptr[thread_idx];
      global_max_logit = max_logit;
    }
    #pragma unroll
    for (int mask = WARP_SIZE / 2; mask >= 1; mask /= 2) {
      global_max_logit = fmaxf(global_max_logit, VLLM_SHFL_XOR_SYNC(global_max_logit, mask));
    }
    if(thread_idx<num_partitions){
      global_exp_sum = global_exp_sum * __expf(max_logit - global_max_logit);
      shared_exp_sums[thread_idx] = global_exp_sum;
    }
    #pragma unroll
    for (int mask = WARP_SIZE / 2; mask >= 1; mask /= 2) {
      global_exp_sum += VLLM_SHFL_XOR_SYNC(global_exp_sum, mask);
    }
    const float inv_global_exp_sum = __fdividef(1.0f, global_exp_sum + 1e-6f);
    
    scalar_t* out_ptr = out + seq_idx * num_heads * HEAD_SIZE + head_idx * HEAD_SIZE;
    const scalar_t* tmp_out_ptr = tmp_out + offset * HEAD_SIZE;
    using half2_t = vec2data<scalar_t>;
    float2_t acc = {0.0f, 0.0f};
    half2_t acc_half;
    for (int j = 0; j < num_partitions; ++j) {
      half2_t tout= *(half2_t*)(tmp_out_ptr + j * HEAD_SIZE + thread_idx*2);
      float temp_sum=shared_exp_sums[j]*inv_global_exp_sum;
      #pragma unroll
      for(int i=0;i<2;i++){
        acc[i] += to_float(tout.data[i])*temp_sum;
      }
    }
    #pragma unroll
    for(int i=0;i<2;i++){
      from_float(acc_half.data[i],acc[i]);
    }
    *(half2_t*)(out_ptr+thread_idx*2)=acc_half;
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  }
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  else{
    // Size: 2 * num_partitions.
    extern __shared__ char shared_mem[];
    // Workspace for reduction.
    __shared__ float red_smem[2 * NUM_WARPS];
    // Load max logits to shared memory.
    float* shared_max_logits = reinterpret_cast<float*>(shared_mem);
    for (int i = threadIdx.x; i < num_partitions; i += blockDim.x) {
      const float l = max_logits_ptr[i];
      shared_max_logits[i] = l;
      max_logit = fmaxf(max_logit, l);
    }
    __syncthreads();
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    // Get the global max logit.
    // Reduce within the warp.
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  #pragma unroll
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    for (int mask = WARP_SIZE / 2; mask >= 1; mask /= 2) {
      max_logit = fmaxf(max_logit, VLLM_SHFL_XOR_SYNC(max_logit, mask));
    }
    if (lane == 0) {
      red_smem[warp_idx] = max_logit;
    }
    __syncthreads();
    // Reduce across warps.
    max_logit = lane < NUM_WARPS ? red_smem[lane] : -FLT_MAX;
    #pragma unroll
    for (int mask = NUM_WARPS / 2; mask >= 1; mask /= 2) {
      max_logit = fmaxf(max_logit, VLLM_SHFL_XOR_SYNC(max_logit, mask));
    }
    // Broadcast the max value to all threads.
    max_logit = VLLM_SHFL_SYNC(max_logit, 0);

    // Load rescaled exp sums to shared memory.
    float* shared_exp_sums =
        reinterpret_cast<float*>(shared_mem + sizeof(float) * num_partitions);
    for (int i = threadIdx.x; i < num_partitions; i += blockDim.x) {
      float l = shared_max_logits[i];
      float rescaled_exp_sum = exp_sums_ptr[i] * expf(l - max_logit);
      global_exp_sum += rescaled_exp_sum;
      shared_exp_sums[i] = rescaled_exp_sum;
    }
    __syncthreads();
    global_exp_sum = block_sum<NUM_WARPS>(&red_smem[NUM_WARPS], global_exp_sum);
    const float inv_global_exp_sum = __fdividef(1.0f, global_exp_sum + 1e-6f);
    // Aggregate tmp_out to out.
    const scalar_t* tmp_out_ptr =
        tmp_out + seq_idx * num_heads * max_num_partitions * HEAD_SIZE +
        head_idx * max_num_partitions * HEAD_SIZE;
    scalar_t* out_ptr =
        out + seq_idx * num_heads * HEAD_SIZE + head_idx * HEAD_SIZE;
    #pragma unroll
    for (int i = threadIdx.x; i < HEAD_SIZE; i += NUM_THREADS) {
      float acc = 0.0f;
      for (int j = 0; j < num_partitions; ++j) {
        acc += to_float(tmp_out_ptr[j * HEAD_SIZE + i]) * shared_exp_sums[j] *
              inv_global_exp_sum;
      }
      from_float(out_ptr[i], acc);
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    }
  }
}

}  // namespace vllm


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#define LAUNCH_PAGED_ATTENTION_V2_TC(HEAD_SIZE)                                      \
  hipLaunchKernelGGL(                                                                \
      (vllm::paged_attention_kernel_TC_with_mask<                                    \
          T, CACHE_T, HEAD_SIZE, BLOCK_SIZE, NUM_THREADS, KV_DTYPE,                  \
          IS_BLOCK_SPARSE, REUSE_KV_TIMES>),                                         \
      dim3(grid), dim3(block), shared_mem_size, stream, exp_sums_ptr,                \
      max_logits_ptr,out_ptr, tmp_out_ptr, query_ptr, key_cache_ptr, value_cache_ptr,\
      num_heads, num_kv_heads, scale, block_tables_ptr, seq_lens_ptr,                \
      max_num_blocks_per_seq, alibi_slopes_ptr, q_stride, kv_block_stride,           \
      kv_head_stride, k_scale_ptr, v_scale_ptr, tp_rank, blocksparse_local_blocks,           \
      blocksparse_vert_stride, blocksparse_block_size,                               \
      blocksparse_head_sliding_step,PARTITION_SIZE);\
  if (max_num_partitions<=64&&max_num_partitions>1){                                 \
      hipLaunchKernelGGL(                                                            \
      (vllm::paged_attention_v2_reduce_kernel_opt_tc<T, HEAD_SIZE, 64>),             \
      dim3(reduce_grid), dim3(64), 0, stream, out_ptr,                               \
      exp_sums_ptr, max_logits_ptr, tmp_out_ptr, seq_lens_ptr,                       \
      max_num_partitions,PARTITION_SIZE);                                            \
  }else if(max_num_partitions>64){                                                   \
    hipLaunchKernelGGL(                                                              \
      (vllm::paged_attention_v2_reduce_kernel_opt_tc<T, HEAD_SIZE, 128>),            \
      dim3(reduce_grid), dim3(128), reduce_shared_mem_size, stream, out_ptr,         \
      exp_sums_ptr, max_logits_ptr, tmp_out_ptr, seq_lens_ptr,                       \
      max_num_partitions,PARTITION_SIZE);}


void get_numberthread_and_reuse_kv_v2(int& num_thread,int& reusekv,int& PARTITION_SIZE,int &max_num_partitions,
      int batchsize,int max_seq_len,int qheads,int kvheads,int num_blocks)
{
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  reusekv=1;
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  num_thread=256;
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  PARTITION_SIZE=512;
  max_num_partitions=DIVIDE_ROUND_UP(max_seq_len, PARTITION_SIZE);
  if(max_seq_len==8192&&num_blocks==1024){//ali test
    if(batchsize==1&&qheads==16&&kvheads==16){num_thread=128;return;}
    if(batchsize==1&&qheads==32&&kvheads==32){num_thread=64;return;}
    if(batchsize==1){
      if(qheads==52){reusekv=8;return;}
      if(qheads==13){reusekv=2;return;}
      reusekv=4;return;
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    }
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    if(batchsize==64){
      if(qheads==13){PARTITION_SIZE=256;num_thread=128;reusekv=8;}
      else if(qheads==32){PARTITION_SIZE=1024;reusekv=8;}
      else if(qheads==52||qheads==26){reusekv=16;}
      else reusekv=8;
      max_num_partitions=DIVIDE_ROUND_UP(max_seq_len, PARTITION_SIZE);
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      return;
    }
  }
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  if(qheads==kvheads){
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    if(max_seq_len<=8192){
      if(batchsize*qheads>=512){
        max_num_partitions=1;
        num_thread=64;
      }
      if(qheads==32&&max_seq_len<=1024)max_num_partitions=1;
    }
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    return;
  }
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  if(max_seq_len<800)max_num_partitions=1;
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  if(qheads>kvheads*4){
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    if(max_seq_len<=1000||
        max_seq_len<1500&&(batchsize>=8&&qheads>=8||batchsize>=64)||
        max_seq_len<1900&&batchsize>=8&&qheads==28
        )
        max_num_partitions=1;
    int blocks=max_num_partitions*batchsize*qheads;
    if(device_name=="gfx928"){
      if(batchsize*qheads>1024&&max_seq_len>=2000){
        max_num_partitions=1;
        if(max_seq_len<3900)reusekv=8;
        else if(max_seq_len<7800)reusekv=4;
        else{
          PARTITION_SIZE=2048;
          reusekv=8;
          max_num_partitions=DIVIDE_ROUND_UP(max_seq_len, PARTITION_SIZE);
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        }
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        return;
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      }
    }
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    if(max_num_partitions==1){
      if(max_seq_len<512){
        int bytes=max_seq_len*qheads*batchsize;
        if(bytes<51200)reusekv=1;
        else if(bytes<256000)reusekv=4;
        else reusekv=8;
        return;
      }
      if(batchsize<4||batchsize==4&&qheads==8)reusekv=1;
      else if(batchsize<32||batchsize<=64&&qheads==8)reusekv=4;
      else reusekv=8;
      return;
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    }
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    if(blocks<150)return;
    if(blocks<600||qheads<=kvheads*4){reusekv=4;return;}
    reusekv=8;return;
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  }
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  if(device_name=="gfx928"){
    if(batchsize*qheads>1024&&max_seq_len>=2000){
      max_num_partitions=1;
      if(max_seq_len<7800)reusekv=4;
      else{
        PARTITION_SIZE=2048;
        reusekv=4;
        max_num_partitions=DIVIDE_ROUND_UP(max_seq_len, PARTITION_SIZE);
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      }
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      return;
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    }
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  }
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  if(max_seq_len<=1000||
      max_seq_len<=1500&&(qheads>4&&batchsize>=16||batchsize>=64))
        max_num_partitions=1;
  int blocks=max_num_partitions*batchsize*qheads;
  if(blocks>=150||batchsize>=16||qheads>=8&&(batchsize>=4||max_seq_len>=2000))reusekv=4;
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}
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template <typename T, typename CACHE_T, int BLOCK_SIZE,
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          vllm::Fp8KVCacheDataType KV_DTYPE, bool IS_BLOCK_SPARSE>
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void paged_attention_v2_launcher_opt_tc(
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    torch::Tensor& out, torch::Tensor& exp_sums, torch::Tensor& max_logits,
    torch::Tensor& tmp_out, torch::Tensor& query, torch::Tensor& key_cache,
    torch::Tensor& value_cache, int num_kv_heads, float scale,
    torch::Tensor& block_tables, torch::Tensor& seq_lens, int max_seq_len,
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    const c10::optional<torch::Tensor>& alibi_slopes, torch::Tensor& k_scale,
    torch::Tensor& v_scale, const int tp_rank, const int blocksparse_local_blocks,
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    const int blocksparse_vert_stride, const int blocksparse_block_size,
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    const int blocksparse_head_sliding_step) {
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  int num_seqs = query.size(0);
  int num_heads = query.size(1);
  int head_size = query.size(2);
  int max_num_blocks_per_seq = block_tables.size(1);
  int q_stride = query.stride(0);
  int kv_block_stride = key_cache.stride(0);
  int kv_head_stride = key_cache.stride(1);
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  int num_blocks=key_cache.size(0);
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  // NOTE: alibi_slopes is optional.
  const float* alibi_slopes_ptr =
      alibi_slopes
          ? reinterpret_cast<const float*>(alibi_slopes.value().data_ptr())
          : nullptr;
  T* out_ptr = reinterpret_cast<T*>(out.data_ptr());
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  const float* k_scale_ptr = reinterpret_cast<const float*>(k_scale.data_ptr());
  const float* v_scale_ptr = reinterpret_cast<const float*>(v_scale.data_ptr());
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  // float* exp_sums_ptr = reinterpret_cast<float*>(exp_sums.data_ptr());
  // float* max_logits_ptr = reinterpret_cast<float*>(max_logits.data_ptr());
  // T* tmp_out_ptr = reinterpret_cast<T*>(tmp_out.data_ptr());
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  T* query_ptr = reinterpret_cast<T*>(query.data_ptr());
  CACHE_T* key_cache_ptr = reinterpret_cast<CACHE_T*>(key_cache.data_ptr());
  CACHE_T* value_cache_ptr = reinterpret_cast<CACHE_T*>(value_cache.data_ptr());
  int* block_tables_ptr = block_tables.data_ptr<int>();
  int* seq_lens_ptr = seq_lens.data_ptr<int>();
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  static float* exp_sums_ptr = nullptr;
  static float* max_logits_ptr = nullptr;
  static T* tmp_out_ptr = nullptr;
  if(exp_sums_ptr == nullptr){
      hipMalloc(&exp_sums_ptr, 1000000); // 1m
      hipMalloc(&max_logits_ptr, 1000000); // 1m
      hipMalloc(&tmp_out_ptr, 100000000); // 100m
  }
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  const at::cuda::OptionalCUDAGuard device_guard(device_of(query));
  const cudaStream_t stream = at::cuda::getCurrentCUDAStream();
  dim3 reduce_grid(num_heads, num_seqs);
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  if constexpr(BLOCK_SIZE==16 && IS_BLOCK_SPARSE==false && sizeof(T)==2 && KV_DTYPE==vllm::Fp8KVCacheDataType::kAuto){
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    constexpr int HEAD_SIZE=128;
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    int reusekv, num_thread,max_num_partitions,PARTITION_SIZE;
    get_numberthread_and_reuse_kv_v2(num_thread,reusekv,PARTITION_SIZE,max_num_partitions,num_seqs,max_seq_len,num_heads,num_kv_heads,num_blocks);
    if(PA_PARTITION_SIZE!=0){
      PARTITION_SIZE=PA_PARTITION_SIZE;
      max_num_partitions=DIVIDE_ROUND_UP(max_seq_len, PARTITION_SIZE);
    }
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    if(PA_REUSE_KV_TIMES!=0&&num_heads>num_kv_heads)reusekv=PA_REUSE_KV_TIMES;
    if(PA_BLOCK_SIZE!=0)num_thread=PA_BLOCK_SIZE;
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    if(PA_USE_V1!=0)max_num_partitions=1;
    if(max_num_partitions==1)PARTITION_SIZE=max_seq_len;
    assert(num_seqs*num_heads*max_num_partitions*head_size<=100000000);
    int reduce_shared_mem_size = 2 * max_num_partitions * sizeof(float);
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    REUSEKV_SWITCH(reusekv,[&] {
      NUM_THREADS_SWITCH(num_thread , [&] {
        constexpr int NUM_WARPS = NUM_THREADS / WARP_SIZE;
        int logits_size = REUSE_KV_TIMES*PARTITION_SIZE * 2;
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        if(max_num_partitions==1)PARTITION_SIZE=0;
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        int outputs_size = (NUM_WARPS / 2) * head_size * sizeof(float);
        dim3 grid;
        grid.y = (num_heads/num_kv_heads + REUSE_KV_TIMES -1)/REUSE_KV_TIMES * num_kv_heads;
        grid.x = max_num_partitions;
        grid.z = num_seqs;
        dim3 block(NUM_THREADS);
        int shared_mem_size = ::max(logits_size, outputs_size);
        if(PA_PRINT_PARAM)printf("reusekv=%d,num_thread=%d,grid={%d,%d,%d},qhead=%d,kvhead=%d,seq=%d,batch=%d\n",
                                  reusekv,num_thread,grid.x,grid.y,grid.z,num_heads,num_kv_heads,max_seq_len,num_seqs);
        LAUNCH_PAGED_ATTENTION_V2_TC(HEAD_SIZE);
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      });
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    });
  }
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}

#define CALL_V2_LAUNCHER(T, CACHE_T, BLOCK_SIZE, KV_DTYPE, IS_BLOCK_SPARSE)   \
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  paged_attention_v2_launcher_opt_tc<T, CACHE_T, BLOCK_SIZE, KV_DTYPE,               \
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                              IS_BLOCK_SPARSE>(                               \
      out, exp_sums, max_logits, tmp_out, query, key_cache, value_cache,      \
      num_kv_heads, scale, block_tables, seq_lens, max_seq_len, alibi_slopes, \
      k_scale, v_scale, tp_rank, blocksparse_local_blocks,                    \
      blocksparse_vert_stride, blocksparse_block_size,                        \
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      blocksparse_head_sliding_step);
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#define CALL_V2_LAUNCHER_SPARSITY(T, CACHE_T, BLOCK_SIZE, IS_FP8_KV_CACHE) \
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  if (is_block_sparse) {                                                   \
    CALL_V2_LAUNCHER(T, CACHE_T, BLOCK_SIZE, IS_FP8_KV_CACHE, true);       \
  } else {                                                                 \
    CALL_V2_LAUNCHER(T, CACHE_T, BLOCK_SIZE, IS_FP8_KV_CACHE, false);      \
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  }

// NOTE(woosuk): To reduce the compilation time, we omitted block sizes
// 1, 2, 4, 64, 128, 256.
#define CALL_V2_LAUNCHER_BLOCK_SIZE(T, CACHE_T, KV_DTYPE)         \
  switch (block_size) {                                           \
    case 8:                                                       \
      CALL_V2_LAUNCHER_SPARSITY(T, CACHE_T, 8, KV_DTYPE);         \
      break;                                                      \
    case 16:                                                      \
      CALL_V2_LAUNCHER_SPARSITY(T, CACHE_T, 16, KV_DTYPE);        \
      break;                                                      \
    case 32:                                                      \
      CALL_V2_LAUNCHER_SPARSITY(T, CACHE_T, 32, KV_DTYPE);        \
      break;                                                      \
    default:                                                      \
      TORCH_CHECK(false, "Unsupported block size: ", block_size); \
      break;                                                      \
  }

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void paged_attention_v2(
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    torch::Tensor& out,         // [num_seqs, num_heads, head_size]
    torch::Tensor& exp_sums,    // [num_seqs, num_heads, max_num_partitions]
    torch::Tensor& max_logits,  // [num_seqs, num_heads, max_num_partitions]
    torch::Tensor&
        tmp_out,  // [num_seqs, num_heads, max_num_partitions, head_size]
    torch::Tensor& query,  // [num_seqs, num_heads, head_size]
    torch::Tensor&
        key_cache,  // [num_blocks, num_heads, head_size/x, block_size, x]
    torch::Tensor&
        value_cache,       // [num_blocks, num_heads, head_size, block_size]
    int64_t num_kv_heads,  // [num_heads]
    double scale,
    torch::Tensor& block_tables,  // [num_seqs, max_num_blocks_per_seq]
    torch::Tensor& seq_lens,      // [num_seqs]
    int64_t block_size, int64_t max_seq_len,
    const c10::optional<torch::Tensor>& alibi_slopes,
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    const std::string& kv_cache_dtype, torch::Tensor& k_scale, torch::Tensor& v_scale, 
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    const int64_t tp_rank, const int64_t blocksparse_local_blocks,
    const int64_t blocksparse_vert_stride, const int64_t blocksparse_block_size,
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    const int64_t blocksparse_head_sliding_step);
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void paged_attention_v2_opt_tc(
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    torch::Tensor& out,         // [num_seqs, num_heads, head_size]
    torch::Tensor& exp_sums,    // [num_seqs, num_heads, max_num_partitions]
    torch::Tensor& max_logits,  // [num_seqs, num_heads, max_num_partitions]
    torch::Tensor&
        tmp_out,  // [num_seqs, num_heads, max_num_partitions, head_size]
    torch::Tensor& query,  // [num_seqs, num_heads, head_size]
    torch::Tensor&
        key_cache,  // [num_blocks, num_heads, head_size/x, block_size, x]
    torch::Tensor&
        value_cache,       // [num_blocks, num_heads, head_size, block_size]
    int64_t num_kv_heads,  // [num_heads]
    double scale,
    torch::Tensor& block_tables,  // [num_seqs, max_num_blocks_per_seq]
    torch::Tensor& seq_lens,      // [num_seqs]
    int64_t block_size, int64_t max_seq_len,
    const c10::optional<torch::Tensor>& alibi_slopes,
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    const std::string& kv_cache_dtype, torch::Tensor& k_scale, torch::Tensor& v_scale, const int64_t tp_rank,
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    const int64_t blocksparse_local_blocks,
    const int64_t blocksparse_vert_stride, const int64_t blocksparse_block_size,
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    const int64_t blocksparse_head_sliding_step) {
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  const bool is_block_sparse = (blocksparse_vert_stride > 1);
  if(kv_cache_dtype != "auto"||query.dtype() == at::ScalarType::Float||is_block_sparse||
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      block_size!=16||query.size(2)!=128||(device_name!="gfx928" && device_name!="gfx936")){
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    paged_attention_v2(out,exp_sums,max_logits,tmp_out,query,key_cache,value_cache,num_kv_heads,
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                       scale,block_tables,seq_lens,block_size,max_seq_len,alibi_slopes,kv_cache_dtype,
                       k_scale,v_scale,tp_rank,blocksparse_local_blocks,blocksparse_vert_stride,
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                       blocksparse_block_size,blocksparse_head_sliding_step);
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  }
  else{
    DISPATCH_BY_KV_CACHE_DTYPE(query.dtype(), kv_cache_dtype,
                              CALL_V2_LAUNCHER_BLOCK_SIZE)
  }
}

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void paged_attention_v1(
    torch::Tensor& out,    // [num_seqs, num_heads, head_size]
    torch::Tensor& query,  // [num_seqs, num_heads, head_size]
    torch::Tensor&
        key_cache,  // [num_blocks, num_heads, head_size/x, block_size, x]
    torch::Tensor&
        value_cache,       // [num_blocks, num_heads, head_size, block_size]
    int64_t num_kv_heads,  // [num_heads]
    double scale,
    torch::Tensor& block_tables,  // [num_seqs, max_num_blocks_per_seq]
    torch::Tensor& seq_lens,      // [num_seqs]
    int64_t block_size, int64_t max_seq_len,
    const c10::optional<torch::Tensor>& alibi_slopes,
    const std::string& kv_cache_dtype, torch::Tensor& k_scale, torch::Tensor& v_scale, const int64_t tp_rank,
    const int64_t blocksparse_local_blocks,
    const int64_t blocksparse_vert_stride, const int64_t blocksparse_block_size,
    const int64_t blocksparse_head_sliding_step);

void paged_attention_v1_opt_tc(
    torch::Tensor& out,    // [num_seqs, num_heads, head_size]
    torch::Tensor& query,  // [num_seqs, num_heads, head_size]
    torch::Tensor&
        key_cache,  // [num_blocks, num_heads, head_size/x, block_size, x]
    torch::Tensor&
        value_cache,       // [num_blocks, num_heads, head_size, block_size]
    int64_t num_kv_heads,  // [num_heads]
    double scale,
    torch::Tensor& block_tables,  // [num_seqs, max_num_blocks_per_seq]
    torch::Tensor& seq_lens,      // [num_seqs]
    int64_t block_size, int64_t max_seq_len,
    const c10::optional<torch::Tensor>& alibi_slopes,
    const std::string& kv_cache_dtype, torch::Tensor& k_scale, torch::Tensor& v_scale, 
    const int64_t tp_rank, const int64_t blocksparse_local_blocks,
    const int64_t blocksparse_vert_stride, const int64_t blocksparse_block_size,
    const int64_t blocksparse_head_sliding_step) {
  const bool is_block_sparse = (blocksparse_vert_stride > 1);
  if(kv_cache_dtype != "auto"||query.dtype() == at::ScalarType::Float||is_block_sparse||
      block_size!=16||query.size(2)!=128||(device_name!="gfx928" && device_name!="gfx936")){
    paged_attention_v1(out,query,key_cache,value_cache,num_kv_heads,
                       scale,block_tables,seq_lens,block_size,max_seq_len,alibi_slopes,kv_cache_dtype,
                       k_scale,v_scale,tp_rank,blocksparse_local_blocks,blocksparse_vert_stride,
                       blocksparse_block_size,blocksparse_head_sliding_step);
  }
  else{
    paged_attention_v2_opt_tc(out,out,out,out,query,key_cache,value_cache,num_kv_heads,
                       scale,block_tables,seq_lens,block_size,max_seq_len,alibi_slopes,kv_cache_dtype,
                       k_scale,v_scale,tp_rank,blocksparse_local_blocks,blocksparse_vert_stride,
                       blocksparse_block_size,blocksparse_head_sliding_step);
  }
}

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#undef WARP_SIZE
#undef MAX
#undef MIN
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#undef DIVIDE_ROUND_UP