| #include <ATen/cuda/CUDAContext.h> |
| #include <torch/all.h> |
|
|
| #include <cmath> |
|
|
| #include "../dispatch_utils.h" |
| #include "../vectorization_utils.cuh" |
|
|
| #ifndef USE_ROCM |
| #include <cub/cub.cuh> |
| #include <cub/util_type.cuh> |
| #else |
| #include <hipcub/hipcub.hpp> |
| #include <hipcub/util_type.hpp> |
| #endif |
|
|
| static inline __device__ int8_t float_to_int8_rn(float x) { |
| #ifdef USE_ROCM |
| static constexpr auto i8_min = |
| static_cast<float>(std::numeric_limits<int8_t>::min()); |
| static constexpr auto i8_max = |
| static_cast<float>(std::numeric_limits<int8_t>::max()); |
|
|
| |
| |
| |
| |
| float dst = std::nearbyint(x); |
|
|
| |
|
|
| |
| |
| |
| |
| |
| dst = (dst < i8_min) ? i8_min : (dst > i8_max) ? i8_max : dst; |
| return static_cast<int8_t>(dst); |
| #else |
| |
| uint32_t dst; |
| asm volatile("cvt.rni.sat.s8.f32 %0, %1;" : "=r"(dst) : "f"(x)); |
| return reinterpret_cast<const int8_t&>(dst); |
| #endif |
| } |
|
|
| static inline __device__ int32_t float_to_int32_rn(float x) { |
| #ifdef USE_ROCM |
| |
| |
| |
| |
| static constexpr auto i32_min = std::numeric_limits<int32_t>::min(); |
| static constexpr auto i32_min_f = static_cast<float>(i32_min); |
| static constexpr auto i32_max = std::numeric_limits<int32_t>::max(); |
| static constexpr auto i32_max_f = static_cast<float>(i32_max); |
|
|
| |
| |
| |
| |
| float dst = std::nearbyint(x); |
|
|
| |
| if (dst >= i32_max_f) { |
| return i32_max; |
| } |
| |
| if (dst <= i32_min_f) { |
| return i32_min; |
| } |
|
|
| return static_cast<int32_t>(dst); |
| #else |
| |
| uint32_t dst; |
| asm volatile("cvt.rni.sat.s32.f32 %0, %1;" : "=r"(dst) : "f"(x)); |
| return reinterpret_cast<const int32_t&>(dst); |
| #endif |
| } |
|
|
| static inline __device__ int8_t int32_to_int8(int32_t x) { |
| #ifdef USE_ROCM |
| static constexpr auto i8_min = |
| static_cast<int32_t>(std::numeric_limits<int8_t>::min()); |
| static constexpr auto i8_max = |
| static_cast<int32_t>(std::numeric_limits<int8_t>::max()); |
|
|
| |
|
|
| |
| |
| |
| |
| |
| int32_t dst = (x < i8_min) ? i8_min : (x > i8_max) ? i8_max : x; |
| return static_cast<int8_t>(dst); |
| #else |
| |
| uint32_t dst; |
| asm volatile("cvt.sat.s8.s32 %0, %1;" : "=r"(dst) : "r"(x)); |
| return reinterpret_cast<const int8_t&>(dst); |
| #endif |
| } |
|
|
| namespace vllm { |
|
|
| template <typename scalar_t, typename scale_t> |
| __global__ void static_scaled_int8_quant_kernel( |
| const scalar_t* __restrict__ input, int8_t* __restrict__ output, |
| const scale_t* scale_ptr, const int hidden_size) { |
| const int tid = threadIdx.x; |
| const int stride = blockDim.x; |
| const int64_t token_idx = blockIdx.x; |
| const float scale = *scale_ptr; |
|
|
| |
| const scalar_t* row_in = input + token_idx * hidden_size; |
| int8_t* row_out = output + token_idx * hidden_size; |
|
|
| vectorize_with_alignment<16>( |
| row_in, row_out, hidden_size, tid, stride, |
| [=] __device__(int8_t& dst, const scalar_t& src) { |
| dst = float_to_int8_rn(static_cast<float>(src) / scale); |
| }); |
| } |
|
|
| template <typename scalar_t, typename scale_t, typename azp_t> |
| __global__ void static_scaled_int8_azp_quant_kernel( |
| const scalar_t* __restrict__ input, int8_t* __restrict__ output, |
| const scale_t* scale_ptr, const azp_t* azp_ptr, const int hidden_size) { |
| const int tid = threadIdx.x; |
| const int stride = blockDim.x; |
| const int64_t token_idx = blockIdx.x; |
| const float scale = *scale_ptr; |
| const azp_t azp = *azp_ptr; |
| const float inv_s = 1.0f / scale; |
|
|
| |
| const scalar_t* row_in = input + token_idx * hidden_size; |
| int8_t* row_out = output + token_idx * hidden_size; |
|
|
| vectorize_with_alignment<16>( |
| row_in, row_out, hidden_size, tid, stride, |
| [=] __device__(int8_t& dst, const scalar_t& src) { |
| const auto v = static_cast<float>(src) * inv_s; |
| dst = int32_to_int8(float_to_int32_rn(v) + azp); |
| }); |
| } |
|
|
| template <typename scalar_t, typename scale_t> |
| __global__ void dynamic_scaled_int8_quant_kernel( |
| const scalar_t* __restrict__ input, int8_t* __restrict__ output, |
| scale_t* scale_out, const int hidden_size) { |
| const int tid = threadIdx.x; |
| const int stride = blockDim.x; |
| const int64_t token_idx = blockIdx.x; |
|
|
| |
| const scalar_t* row_in = input + token_idx * hidden_size; |
| int8_t* row_out = output + token_idx * hidden_size; |
|
|
| |
| float thread_max = 0.f; |
| for (int i = tid; i < hidden_size; i += stride) { |
| const auto v = fabsf(static_cast<float>(row_in[i])); |
| thread_max = fmaxf(thread_max, v); |
| } |
| using BlockReduce = cub::BlockReduce<float, 256>; |
| __shared__ typename BlockReduce::TempStorage tmp; |
| float block_max = BlockReduce(tmp).Reduce(thread_max, cub::Max{}, blockDim.x); |
| __shared__ float absmax; |
| if (tid == 0) { |
| absmax = block_max; |
| scale_out[blockIdx.x] = absmax / 127.f; |
| } |
| __syncthreads(); |
|
|
| float inv_s = (absmax == 0.f) ? 0.f : 127.f / absmax; |
|
|
| |
| vectorize_with_alignment<16>( |
| row_in, row_out, hidden_size, tid, stride, |
| [=] __device__(int8_t& dst, const scalar_t& src) { |
| dst = float_to_int8_rn(static_cast<float>(src) * inv_s); |
| }); |
| } |
|
|
| |
| struct MinMax { |
| float min, max; |
|
|
| __host__ __device__ MinMax() |
| : min(std::numeric_limits<float>::max()), |
| max(std::numeric_limits<float>::lowest()) {} |
|
|
| __host__ __device__ explicit MinMax(float v) : min(v), max(v) {} |
|
|
| |
| __host__ __device__ MinMax& operator+=(float v) { |
| min = fminf(min, v); |
| max = fmaxf(max, v); |
| return *this; |
| } |
|
|
| |
| __host__ __device__ MinMax& operator&=(const MinMax& other) { |
| min = fminf(min, other.min); |
| max = fmaxf(max, other.max); |
| return *this; |
| } |
| }; |
|
|
| __host__ __device__ inline MinMax operator+(MinMax a, float v) { |
| return a += v; |
| } |
| __host__ __device__ inline MinMax operator&(MinMax a, const MinMax& b) { |
| return a &= b; |
| } |
|
|
| template <typename scalar_t, typename scale_t, typename azp_t> |
| __global__ void dynamic_scaled_int8_azp_quant_kernel( |
| const scalar_t* __restrict__ input, int8_t* __restrict__ output, |
| scale_t* scale_out, azp_t* azp_out, const int hidden_size) { |
| const int tid = threadIdx.x; |
| const int stride = blockDim.x; |
| const int64_t token_idx = blockIdx.x; |
|
|
| |
| const scalar_t* row_in = input + token_idx * hidden_size; |
| int8_t* row_out = output + token_idx * hidden_size; |
|
|
| |
| MinMax thread_mm; |
| for (int i = tid; i < hidden_size; i += stride) { |
| thread_mm += static_cast<float>(row_in[i]); |
| } |
|
|
| using BlockReduce = cub::BlockReduce<MinMax, 256>; |
| __shared__ typename BlockReduce::TempStorage tmp; |
|
|
| MinMax mm = BlockReduce(tmp).Reduce( |
| thread_mm, |
| [] __device__(MinMax a, const MinMax& b) { |
| a &= b; |
| return a; |
| }, |
| blockDim.x); |
|
|
| __shared__ float scale_sh; |
| __shared__ azp_t azp_sh; |
| if (tid == 0) { |
| float s = (mm.max - mm.min) / 255.f; |
| float zp = nearbyintf(-128.f - mm.min / s); |
| scale_sh = s; |
| azp_sh = azp_t(zp); |
| scale_out[blockIdx.x] = s; |
| azp_out[blockIdx.x] = azp_sh; |
| } |
| __syncthreads(); |
|
|
| const float inv_s = 1.f / scale_sh; |
| const azp_t azp = azp_sh; |
|
|
| |
| vectorize_with_alignment<16>( |
| row_in, row_out, hidden_size, tid, stride, |
| [=] __device__(int8_t& dst, const scalar_t& src) { |
| const auto v = static_cast<float>(src) * inv_s; |
| dst = int32_to_int8(float_to_int32_rn(v) + azp); |
| }); |
| } |
|
|
| } |
|
|
| void static_scaled_int8_quant(torch::Tensor& out, |
| torch::Tensor const& input, |
| torch::Tensor const& scale, |
| std::optional<torch::Tensor> const& azp) { |
| TORCH_CHECK(input.is_contiguous()); |
| TORCH_CHECK(out.is_contiguous()); |
| TORCH_CHECK(scale.numel() == 1); |
| TORCH_CHECK(!azp || azp->numel() == 1); |
|
|
| int const hidden_size = input.size(-1); |
| int const num_tokens = input.numel() / hidden_size; |
| dim3 const grid(num_tokens); |
| dim3 const block(std::min(hidden_size, 256)); |
| const cudaStream_t stream = at::cuda::getCurrentCUDAStream(); |
| VLLM_DISPATCH_FLOATING_TYPES( |
| input.scalar_type(), "static_scaled_int8_quant_kernel", [&] { |
| if (!azp) { |
| vllm::static_scaled_int8_quant_kernel<scalar_t, float> |
| <<<grid, block, 0, stream>>>( |
| input.data_ptr<scalar_t>(), out.data_ptr<int8_t>(), |
| scale.data_ptr<float>(), hidden_size); |
| } else { |
| vllm::static_scaled_int8_azp_quant_kernel<scalar_t, float, int32_t> |
| <<<grid, block, 0, stream>>>( |
| input.data_ptr<scalar_t>(), out.data_ptr<int8_t>(), |
| scale.data_ptr<float>(), azp->data_ptr<int32_t>(), |
| hidden_size); |
| } |
| }); |
| } |
|
|
| void dynamic_scaled_int8_quant( |
| torch::Tensor& out, |
| torch::Tensor const& input, |
| torch::Tensor& scales, std::optional<torch::Tensor> const& azp) { |
| TORCH_CHECK(input.is_contiguous()); |
| TORCH_CHECK(out.is_contiguous()); |
| TORCH_CHECK(scales.is_contiguous()); |
| TORCH_CHECK(!azp || azp->is_contiguous()); |
|
|
| int const hidden_size = input.size(-1); |
| int const num_tokens = input.numel() / hidden_size; |
| dim3 const grid(num_tokens); |
| dim3 const block(std::min(hidden_size, 256)); |
| const cudaStream_t stream = at::cuda::getCurrentCUDAStream(); |
| VLLM_DISPATCH_FLOATING_TYPES( |
| input.scalar_type(), "dynamic_scaled_int8_quant_kernel", [&] { |
| if (!azp) { |
| vllm::dynamic_scaled_int8_quant_kernel<scalar_t, float> |
| <<<grid, block, 0, stream>>>( |
| input.data_ptr<scalar_t>(), out.data_ptr<int8_t>(), |
| scales.data_ptr<float>(), hidden_size); |
| } else { |
| vllm::dynamic_scaled_int8_azp_quant_kernel<scalar_t, float, int32_t> |
| <<<grid, block, 0, stream>>>( |
| input.data_ptr<scalar_t>(), out.data_ptr<int8_t>(), |
| scales.data_ptr<float>(), azp->data_ptr<int32_t>(), |
| hidden_size); |
| } |
| }); |
| } |
|
|