gguf_kernel.cu 15.4 KB
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#include <cuda_fp16.h>
#include <cuda_runtime.h>

#include <torch/all.h>
#include <c10/cuda/CUDAGuard.h>

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#include "cuda_compat.h"
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#include "dispatch_utils.h"
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#include "ggml-common.h"
#include "vecdotq.cuh"
#include "dequantize.cuh"
#include "mmvq.cuh"
#include "mmq.cuh"
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#include "moe.cuh"
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// Q8 gemv
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template <typename scalar_t>
static __global__ void quantize_q8_1(const scalar_t* __restrict__ x,
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                                     void* __restrict__ vy, const int kx,
                                     const int kx_padded) {
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  const auto ix = blockDim.x * blockIdx.x + threadIdx.x;
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  if (ix >= kx_padded) {
    return;
  }
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  const auto iy = blockDim.y * blockIdx.y + threadIdx.y;
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  const int i_padded = iy * kx_padded + ix;

  block_q8_1* y = (block_q8_1*)vy;

  const int ib = i_padded / QK8_1;   // block index
  const int iqs = i_padded % QK8_1;  // quant index

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  const float xi = ix < kx ? static_cast<float>(x[iy * kx + ix]) : 0.0f;
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  float amax = fabsf(xi);
  float sum = xi;

#pragma unroll
  for (int mask = 16; mask > 0; mask >>= 1) {
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    amax = fmaxf(amax, VLLM_SHFL_XOR_SYNC_WIDTH(amax, mask, 32));
    sum += VLLM_SHFL_XOR_SYNC_WIDTH(sum, mask, 32);
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  }

  const float d = amax / 127;
  const int8_t q = amax == 0.0f ? 0 : roundf(xi / d);

  y[ib].qs[iqs] = q;

  if (iqs > 0) {
    return;
  }

  y[ib].ds.x = __float2half(d);
  y[ib].ds.y = __float2half(sum);
}

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template <typename scalar_t>
static void quantize_row_q8_1_cuda(const scalar_t* x, void* vy, const int kx,
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                                   const int ky, cudaStream_t stream) {
  const int64_t kx_padded = (kx + 512 - 1) / 512 * 512;
  const int block_num_x =
      (kx_padded + CUDA_QUANTIZE_BLOCK_SIZE - 1) / CUDA_QUANTIZE_BLOCK_SIZE;
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  constexpr int MAX_BLOCK_SIZE = 65535;
  for (int off = 0; off < ky; off += MAX_BLOCK_SIZE) {
    const int num_blocks_y = std::min(ky, off + MAX_BLOCK_SIZE) - off;
    const dim3 num_blocks(block_num_x, num_blocks_y, 1);
    const dim3 block_size(CUDA_DEQUANTIZE_BLOCK_SIZE, 1, 1);
    quantize_q8_1<<<num_blocks, block_size, 0, stream>>>(
        &x[off * kx], (int32_t*)vy + off * (kx_padded / 32 * 9), kx, kx_padded);
  }
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}

torch::Tensor ggml_dequantize(torch::Tensor W,  // quant weight
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                              int64_t type, int64_t m, int64_t n) {
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  const at::cuda::OptionalCUDAGuard device_guard(device_of(W));
  auto options =
      torch::TensorOptions().dtype(torch::kFloat16).device(W.device());
  at::Tensor DW = torch::empty({m, n}, options);
  cudaStream_t stream = at::cuda::getCurrentCUDAStream().stream();
  const to_fp16_cuda_t to_fp16_cuda = ggml_get_to_fp16_cuda(type);
  to_fp16_cuda((void*)W.data_ptr(), (half*)DW.data_ptr(), m * n, stream);
  return DW;
}

torch::Tensor ggml_mul_mat_vec_a8(torch::Tensor W,  // quant weight
                                  torch::Tensor X,  // input
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                                  int64_t type, int64_t row) {
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  int col = X.sizes()[1];
  const int padded = (col + 512 - 1) / 512 * 512;
  const at::cuda::OptionalCUDAGuard device_guard(device_of(X));
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  auto options = torch::TensorOptions().dtype(X.dtype()).device(W.device());
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  at::Tensor Y = torch::empty({1, row}, options);
  cudaStream_t stream = at::cuda::getCurrentCUDAStream().stream();
  options = torch::TensorOptions().dtype(torch::kInt32).device(W.device());
  at::Tensor quant_X = torch::empty({1, padded / 32 * 9}, options);
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  VLLM_DISPATCH_FLOATING_TYPES(X.scalar_type(), "ggml_mul_mat_vec_a8", [&] {
    quantize_row_q8_1_cuda<scalar_t>((scalar_t*)X.data_ptr(),
                                     (void*)quant_X.data_ptr(), col, 1, stream);
    switch (type) {
      case 2:
        mul_mat_vec_q4_0_q8_1_cuda<scalar_t>(
            (void*)W.data_ptr(), (void*)quant_X.data_ptr(),
            (scalar_t*)Y.data_ptr(), col, row, stream);
        break;
      case 3:
        mul_mat_vec_q4_1_q8_1_cuda<scalar_t>(
            (void*)W.data_ptr(), (void*)quant_X.data_ptr(),
            (scalar_t*)Y.data_ptr(), col, row, stream);
        break;
      case 6:
        mul_mat_vec_q5_0_q8_1_cuda<scalar_t>(
            (void*)W.data_ptr(), (void*)quant_X.data_ptr(),
            (scalar_t*)Y.data_ptr(), col, row, stream);
        break;
      case 7:
        mul_mat_vec_q5_1_q8_1_cuda<scalar_t>(
            (void*)W.data_ptr(), (void*)quant_X.data_ptr(),
            (scalar_t*)Y.data_ptr(), col, row, stream);
        break;
      case 8:
        mul_mat_vec_q8_0_q8_1_cuda<scalar_t>(
            (void*)W.data_ptr(), (void*)quant_X.data_ptr(),
            (scalar_t*)Y.data_ptr(), col, row, stream);
        break;
      case 10:
        mul_mat_vec_q2_K_q8_1_cuda<scalar_t>(
            (void*)W.data_ptr(), (void*)quant_X.data_ptr(),
            (scalar_t*)Y.data_ptr(), col, row, stream);
        break;
      case 11:
        mul_mat_vec_q3_K_q8_1_cuda<scalar_t>(
            (void*)W.data_ptr(), (void*)quant_X.data_ptr(),
            (scalar_t*)Y.data_ptr(), col, row, stream);
        break;
      case 12:
        mul_mat_vec_q4_K_q8_1_cuda<scalar_t>(
            (void*)W.data_ptr(), (void*)quant_X.data_ptr(),
            (scalar_t*)Y.data_ptr(), col, row, stream);
        break;
      case 13:
        mul_mat_vec_q5_K_q8_1_cuda<scalar_t>(
            (void*)W.data_ptr(), (void*)quant_X.data_ptr(),
            (scalar_t*)Y.data_ptr(), col, row, stream);
        break;
      case 14:
        mul_mat_vec_q6_K_q8_1_cuda<scalar_t>(
            (void*)W.data_ptr(), (void*)quant_X.data_ptr(),
            (scalar_t*)Y.data_ptr(), col, row, stream);
        break;
      case 16:
        mul_mat_vec_iq2_xxs_q8_1_cuda<scalar_t>(
            (void*)W.data_ptr(), (void*)quant_X.data_ptr(),
            (scalar_t*)Y.data_ptr(), col, row, stream);
        break;
      case 17:
        mul_mat_vec_iq2_xs_q8_1_cuda<scalar_t>(
            (void*)W.data_ptr(), (void*)quant_X.data_ptr(),
            (scalar_t*)Y.data_ptr(), col, row, stream);
        break;
      case 18:
        mul_mat_vec_iq3_xxs_q8_1_cuda<scalar_t>(
            (void*)W.data_ptr(), (void*)quant_X.data_ptr(),
            (scalar_t*)Y.data_ptr(), col, row, stream);
        break;
      case 19:
        mul_mat_vec_iq1_s_q8_1_cuda<scalar_t>(
            (void*)W.data_ptr(), (void*)quant_X.data_ptr(),
            (scalar_t*)Y.data_ptr(), col, row, stream);
        break;
      case 20:
        mul_mat_vec_iq4_nl_q8_1_cuda<scalar_t>(
            (void*)W.data_ptr(), (void*)quant_X.data_ptr(),
            (scalar_t*)Y.data_ptr(), col, row, stream);
        break;
      case 21:
        mul_mat_vec_iq3_s_q8_1_cuda<scalar_t>(
            (void*)W.data_ptr(), (void*)quant_X.data_ptr(),
            (scalar_t*)Y.data_ptr(), col, row, stream);
        break;
      case 22:
        mul_mat_vec_iq2_s_q8_1_cuda<scalar_t>(
            (void*)W.data_ptr(), (void*)quant_X.data_ptr(),
            (scalar_t*)Y.data_ptr(), col, row, stream);
        break;
      case 23:
        mul_mat_vec_iq4_xs_q8_1_cuda<scalar_t>(
            (void*)W.data_ptr(), (void*)quant_X.data_ptr(),
            (scalar_t*)Y.data_ptr(), col, row, stream);
        break;
      case 29:
        mul_mat_vec_iq1_m_q8_1_cuda<scalar_t>(
            (void*)W.data_ptr(), (void*)quant_X.data_ptr(),
            (scalar_t*)Y.data_ptr(), col, row, stream);
        break;
    }
  });
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  return Y;
}

torch::Tensor ggml_mul_mat_a8(torch::Tensor W,  // quant weight
                              torch::Tensor X,  // input
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                              int64_t type, int64_t row) {
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  int col = X.sizes()[1];
  int padded = (col + 512 - 1) / 512 * 512;
  int batch = X.sizes()[0];
  const at::cuda::OptionalCUDAGuard device_guard(device_of(X));
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  auto options = torch::TensorOptions().dtype(X.dtype()).device(W.device());
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  at::Tensor Y = torch::empty({batch, row}, options);
  cudaStream_t stream = at::cuda::getCurrentCUDAStream().stream();
  options = torch::TensorOptions().dtype(torch::kInt32).device(W.device());
  at::Tensor quant_X = torch::empty({batch, padded / 32 * 9}, options);
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  VLLM_DISPATCH_FLOATING_TYPES(X.scalar_type(), "ggml_mul_mat_a8", [&] {
    quantize_row_q8_1_cuda((scalar_t*)X.data_ptr(), (void*)quant_X.data_ptr(),
                           col, batch, stream);

    switch (type) {
      case 2:
        ggml_mul_mat_q4_0_q8_1_cuda(
            (void*)W.data_ptr(), (void*)quant_X.data_ptr(),
            (scalar_t*)Y.data_ptr(), col, row, batch, padded, row, stream);
        break;
      case 3:
        ggml_mul_mat_q4_1_q8_1_cuda(
            (void*)W.data_ptr(), (void*)quant_X.data_ptr(),
            (scalar_t*)Y.data_ptr(), col, row, batch, padded, row, stream);
        break;
      case 6:
        ggml_mul_mat_q5_0_q8_1_cuda(
            (void*)W.data_ptr(), (void*)quant_X.data_ptr(),
            (scalar_t*)Y.data_ptr(), col, row, batch, padded, row, stream);
        break;
      case 7:
        ggml_mul_mat_q5_1_q8_1_cuda(
            (void*)W.data_ptr(), (void*)quant_X.data_ptr(),
            (scalar_t*)Y.data_ptr(), col, row, batch, padded, row, stream);
        break;
      case 8:
        ggml_mul_mat_q8_0_q8_1_cuda(
            (void*)W.data_ptr(), (void*)quant_X.data_ptr(),
            (scalar_t*)Y.data_ptr(), col, row, batch, padded, row, stream);
        break;
      case 10:
        ggml_mul_mat_q2_K_q8_1_cuda(
            (void*)W.data_ptr(), (void*)quant_X.data_ptr(),
            (scalar_t*)Y.data_ptr(), col, row, batch, padded, row, stream);
        break;
      case 11:
        ggml_mul_mat_q3_K_q8_1_cuda(
            (void*)W.data_ptr(), (void*)quant_X.data_ptr(),
            (scalar_t*)Y.data_ptr(), col, row, batch, padded, row, stream);
        break;
      case 12:
        ggml_mul_mat_q4_K_q8_1_cuda(
            (void*)W.data_ptr(), (void*)quant_X.data_ptr(),
            (scalar_t*)Y.data_ptr(), col, row, batch, padded, row, stream);
        break;
      case 13:
        ggml_mul_mat_q5_K_q8_1_cuda(
            (void*)W.data_ptr(), (void*)quant_X.data_ptr(),
            (scalar_t*)Y.data_ptr(), col, row, batch, padded, row, stream);
        break;
      case 14:
        ggml_mul_mat_q6_K_q8_1_cuda(
            (void*)W.data_ptr(), (void*)quant_X.data_ptr(),
            (scalar_t*)Y.data_ptr(), col, row, batch, padded, row, stream);
        break;
    }
  });
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  return Y;
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}
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torch::Tensor ggml_moe_a8(torch::Tensor X,  // input
                          torch::Tensor W,  // expert weights
                          torch::Tensor sorted_token_ids,
                          torch::Tensor expert_ids,
                          torch::Tensor num_tokens_post_padded, int64_t type,
                          int64_t row, int64_t top_k, int64_t tokens) {
  int col = X.sizes()[1];
  int padded = (col + 512 - 1) / 512 * 512;
  const at::cuda::OptionalCUDAGuard device_guard(device_of(X));
  auto options = torch::TensorOptions().dtype(X.dtype()).device(W.device());
  at::Tensor Y = torch::empty({tokens * top_k, row}, options);
  cudaStream_t stream = at::cuda::getCurrentCUDAStream().stream();
  options = torch::TensorOptions().dtype(torch::kInt32).device(W.device());
  at::Tensor quant_X = torch::empty({tokens, padded / 32 * 9}, options);
  VLLM_DISPATCH_FLOATING_TYPES(X.scalar_type(), "ggml_moe_a8", [&] {
    quantize_row_q8_1_cuda((scalar_t*)X.data_ptr(), (void*)quant_X.data_ptr(),
                           col, tokens, stream);
    switch (type) {
      case 2:
        ggml_moe_q4_0_q8_1_cuda(
            (void*)quant_X.data_ptr(), (void*)W.data_ptr(),
            (scalar_t*)Y.data_ptr(), (int*)sorted_token_ids.data_ptr(),
            (int*)expert_ids.data_ptr(),
            (int*)num_tokens_post_padded.data_ptr(), W.stride(0), col, row,
            tokens, padded, row, top_k, sorted_token_ids.sizes()[0], stream);
        break;
      case 3:
        ggml_moe_q4_1_q8_1_cuda(
            (void*)quant_X.data_ptr(), (void*)W.data_ptr(),
            (scalar_t*)Y.data_ptr(), (int*)sorted_token_ids.data_ptr(),
            (int*)expert_ids.data_ptr(),
            (int*)num_tokens_post_padded.data_ptr(), W.stride(0), col, row,
            tokens, padded, row, top_k, sorted_token_ids.sizes()[0], stream);
        break;
      case 6:
        ggml_moe_q5_0_q8_1_cuda(
            (void*)quant_X.data_ptr(), (void*)W.data_ptr(),
            (scalar_t*)Y.data_ptr(), (int*)sorted_token_ids.data_ptr(),
            (int*)expert_ids.data_ptr(),
            (int*)num_tokens_post_padded.data_ptr(), W.stride(0), col, row,
            tokens, padded, row, top_k, sorted_token_ids.sizes()[0], stream);
        break;
      case 7:
        ggml_moe_q5_1_q8_1_cuda(
            (void*)quant_X.data_ptr(), (void*)W.data_ptr(),
            (scalar_t*)Y.data_ptr(), (int*)sorted_token_ids.data_ptr(),
            (int*)expert_ids.data_ptr(),
            (int*)num_tokens_post_padded.data_ptr(), W.stride(0), col, row,
            tokens, padded, row, top_k, sorted_token_ids.sizes()[0], stream);
        break;
      case 8:
        ggml_moe_q8_0_q8_1_cuda(
            (void*)quant_X.data_ptr(), (void*)W.data_ptr(),
            (scalar_t*)Y.data_ptr(), (int*)sorted_token_ids.data_ptr(),
            (int*)expert_ids.data_ptr(),
            (int*)num_tokens_post_padded.data_ptr(), W.stride(0), col, row,
            tokens, padded, row, top_k, sorted_token_ids.sizes()[0], stream);
        break;
      case 10:
        ggml_moe_q2_K_q8_1_cuda(
            (void*)quant_X.data_ptr(), (void*)W.data_ptr(),
            (scalar_t*)Y.data_ptr(), (int*)sorted_token_ids.data_ptr(),
            (int*)expert_ids.data_ptr(),
            (int*)num_tokens_post_padded.data_ptr(), W.stride(0), col, row,
            tokens, padded, row, top_k, sorted_token_ids.sizes()[0], stream);
        break;
      case 11:
        ggml_moe_q3_K_q8_1_cuda(
            (void*)quant_X.data_ptr(), (void*)W.data_ptr(),
            (scalar_t*)Y.data_ptr(), (int*)sorted_token_ids.data_ptr(),
            (int*)expert_ids.data_ptr(),
            (int*)num_tokens_post_padded.data_ptr(), W.stride(0), col, row,
            tokens, padded, row, top_k, sorted_token_ids.sizes()[0], stream);
        break;
      case 12:
        ggml_moe_q4_K_q8_1_cuda(
            (void*)quant_X.data_ptr(), (void*)W.data_ptr(),
            (scalar_t*)Y.data_ptr(), (int*)sorted_token_ids.data_ptr(),
            (int*)expert_ids.data_ptr(),
            (int*)num_tokens_post_padded.data_ptr(), W.stride(0), col, row,
            tokens, padded, row, top_k, sorted_token_ids.sizes()[0], stream);
        break;
      case 13:
        ggml_moe_q5_K_q8_1_cuda(
            (void*)quant_X.data_ptr(), (void*)W.data_ptr(),
            (scalar_t*)Y.data_ptr(), (int*)sorted_token_ids.data_ptr(),
            (int*)expert_ids.data_ptr(),
            (int*)num_tokens_post_padded.data_ptr(), W.stride(0), col, row,
            tokens, padded, row, top_k, sorted_token_ids.sizes()[0], stream);
        break;
      case 14:
        ggml_moe_q6_K_q8_1_cuda(
            (void*)quant_X.data_ptr(), (void*)W.data_ptr(),
            (scalar_t*)Y.data_ptr(), (int*)sorted_token_ids.data_ptr(),
            (int*)expert_ids.data_ptr(),
            (int*)num_tokens_post_padded.data_ptr(), W.stride(0), col, row,
            tokens, padded, row, top_k, sorted_token_ids.sizes()[0], stream);
        break;
    }
  });
  return Y;
}

int64_t ggml_moe_get_block_size(int64_t type) {
  switch (type) {
    case 2:
      return MMQ_X_Q4_0;
    case 3:
      return MMQ_X_Q4_1;
    case 6:
      return MMQ_X_Q5_0;
    case 7:
      return MMQ_X_Q5_1;
    case 8:
      return MMQ_X_Q8_0;
    case 10:
      return MMQ_X_Q2_K;
    case 11:
      return MMQ_X_Q3_K;
    case 12:
      return MMQ_X_Q4_K;
    case 13:
      return MMQ_X_Q5_K;
    case 14:
      return MMQ_X_Q6_K;
  }
  return 0;
}