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#include "gemm.h"
#include "vec.h"
namespace {
template <typename scalar_t>
inline void copy_stub(scalar_t* __restrict__ out, const scalar_t* __restrict__ input, int64_t size) {
using Vec = at::vec::Vectorized<scalar_t>;
// no remainder
#pragma GCC unroll 4
for (int64_t d = 0; d < size; d += Vec::size()) {
Vec data = Vec::loadu(input + d);
data.store(out + d);
}
}
template <typename scalar_t>
inline void copy_mul_stub(scalar_t* __restrict__ out, const scalar_t* __restrict__ input, float weight, int64_t size) {
using bVec = at::vec::Vectorized<scalar_t>;
using fVec = at::vec::Vectorized<float>;
constexpr int kVecSize = bVec::size();
const fVec weight_vec = fVec(weight);
int64_t d;
#pragma GCC unroll 4
for (d = 0; d <= size - kVecSize; d += kVecSize) {
bVec x = bVec::loadu(input + d);
fVec x0, x1;
std::tie(x0, x1) = at::vec::convert_to_float(x);
x0 = x0 * weight_vec;
x1 = x1 * weight_vec;
bVec out_vec = convert_from_float_ext<scalar_t>(x0, x1);
out_vec.store(out + d);
}
for (; d < size; ++d) {
out[d] = static_cast<scalar_t>(input[d] * weight);
}
}
// acc from [topk, K] to [K]
template <typename scalar_t>
inline void sum_stub(scalar_t* __restrict__ out, const scalar_t* __restrict__ input, int64_t topk, int64_t K) {
using bVec = at::vec::Vectorized<scalar_t>;
using fVec = at::vec::Vectorized<float>;
constexpr int kVecSize = bVec::size();
if (topk == 1) {
// do copy for topk = 1
copy_stub(out, input, K);
} else {
// do sum for topk != 1
int64_t d;
#pragma GCC unroll 4
for (d = 0; d <= K - kVecSize; d += kVecSize) {
fVec sum_fvec0 = fVec(0.f);
fVec sum_fvec1 = fVec(0.f);
for (int t = 0; t < topk; ++t) {
bVec x_bvec = bVec::loadu(input + t * K + d);
fVec x_fvec0, x_fvec1;
std::tie(x_fvec0, x_fvec1) = at::vec::convert_to_float(x_bvec);
sum_fvec0 += x_fvec0;
sum_fvec1 += x_fvec1;
}
bVec out_bvec = convert_from_float_ext<scalar_t>(sum_fvec0, sum_fvec1);
out_bvec.store(out + d);
}
for (; d < K; ++d) {
float sum_val = 0.f;
for (int t = 0; t < topk; ++t) {
sum_val += static_cast<float>(input[t * K + d]);
}
out[d] = static_cast<scalar_t>(sum_val);
}
}
}
// out = input + input2 * scale
template <typename scalar_t>
inline void add_mul_stub(
scalar_t* __restrict__ out,
const scalar_t* __restrict__ input,
const scalar_t* __restrict__ input2,
float scale,
int64_t size) {
using bVec = at::vec::Vectorized<scalar_t>;
using fVec = at::vec::Vectorized<float>;
constexpr int kVecSize = bVec::size();
const fVec s_vec = fVec(scale);
int64_t d;
#pragma GCC unroll 4
for (d = 0; d <= size - kVecSize; d += kVecSize) {
bVec x_bvec = bVec::loadu(input + d);
fVec x0, x1;
std::tie(x0, x1) = at::vec::convert_to_float(x_bvec);
bVec y_bvec = bVec::loadu(input2 + d);
fVec y0, y1;
std::tie(y0, y1) = at::vec::convert_to_float(y_bvec);
x0 = x0 + y0 * s_vec;
x1 = x1 + y1 * s_vec;
bVec out_vec = convert_from_float_ext<scalar_t>(x0, x1);
out_vec.store(out + d);
}
for (; d < size; ++d) {
out[d] = static_cast<scalar_t>(input[d] + float(input2[d]) * scale);
}
}
template <typename scalar_t>
inline void silu_and_mul_stub(
scalar_t* __restrict__ out, const scalar_t* __restrict__ input, const scalar_t* __restrict__ input2, int64_t size) {
using bVec = at::vec::Vectorized<scalar_t>;
using fVec = at::vec::Vectorized<float>;
const fVec one = fVec(1.f);
// no remainder
#pragma GCC unroll 4
for (int64_t d = 0; d < size; d += bVec::size()) {
bVec x = bVec::loadu(input + d);
fVec x0, x1;
std::tie(x0, x1) = at::vec::convert_to_float(x);
bVec y = bVec::loadu(input2 + d);
fVec y0, y1;
std::tie(y0, y1) = at::vec::convert_to_float(y);
x0 = x0 / (one + x0.neg().exp_u20());
x1 = x1 / (one + x1.neg().exp_u20());
x0 = x0 * y0;
x1 = x1 * y1;
bVec out_vec = convert_from_float_ext<scalar_t>(x0, x1);
out_vec.store(out + d);
}
}
} // anonymous namespace
template <typename scalar_t>
void fused_experts_fp8_kernel_impl(
scalar_t* __restrict__ output,
scalar_t* __restrict__ ic0,
scalar_t* __restrict__ ic1,
scalar_t* __restrict__ ic2,
scalar_t* __restrict__ A_tmp,
scalar_t* __restrict__ B_tmp,
float* __restrict__ C_tmp,
const scalar_t* __restrict__ input,
const at::Float8_e4m3fn* __restrict__ packed_w1,
const at::Float8_e4m3fn* __restrict__ packed_w2,
const float* __restrict__ w1s,
const float* __restrict__ w2s,
int64_t block_size_N,
int64_t block_size_K,
const float* __restrict__ topk_weights,
const int32_t* __restrict__ sorted_ids,
const int32_t* __restrict__ expert_ids,
const int32_t* __restrict__ offsets,
int64_t M,
int64_t N,
int64_t K,
int64_t E,
int64_t topk,
int64_t num_tokens_post_pad) {
constexpr int64_t BLOCK_M = block_size_m();
constexpr int64_t BLOCK_N = block_size_n();
// stage 1: intermediate_cache0 = hidden_states @ w1
const int64_t MB = div_up(num_tokens_post_pad, BLOCK_M);
const int64_t NB = div_up(2 * N, BLOCK_N);
int64_t scale_size_N = div_up(2 * N, block_size_N);
int64_t scale_size_K = div_up(K, block_size_K);
int64_t blocks_n_per_group = block_size_N / BLOCK_N;
const int64_t stride_e = 2 * N * K;
const int64_t stride_n = K;
int64_t avg_M = std::max(int64_t(1), M * topk / E);
const bool use_brgemm = can_use_brgemm<at::Float8_e4m3fn>(avg_M);
int64_t B_tmp_size_per_thread = MAX_CACHE_BLOCK_SIZE * BLOCK_N * std::max(K, N);
// here we only parallel on half of 2N to fuse silu_and_mul with gemm
parallel_2d(MB, NB, [&](int64_t mb0, int64_t mb1, int64_t nb0, int64_t nb1) {
// get local pointers
int tid = get_thread_num();
scalar_t* __restrict__ A = A_tmp + tid * BLOCK_M * K;
loop_2d<at::Float8_e4m3fn>(mb0, mb1, nb0, nb1, BLOCK_N * K, [&](int64_t mb, int64_t nb, int64_t nb_offset) {
int64_t n_size = std::min(2 * N - nb * BLOCK_N, BLOCK_N);
// B shape [K, n_size] in vnni format
int32_t expert_id = expert_ids[mb];
const at::Float8_e4m3fn* __restrict__ B = packed_w1 + expert_id * stride_e + nb * BLOCK_N * stride_n;
const float* __restrict__ Bs =
w1s + expert_id * scale_size_N * scale_size_K + (nb / blocks_n_per_group) * scale_size_K;
// do unpacking for the first row or a new expert
int32_t pre_expert_id = mb == 0 ? -1 : expert_ids[mb - 1];
bool do_unpack = (mb == mb0) || (expert_id != pre_expert_id);
// 1.a load A
const int32_t* A_ids = sorted_ids + mb * BLOCK_M;
int64_t m_size = offsets[mb + 1] - offsets[mb];
for (int64_t m = 0; m < m_size; ++m) {
int32_t index = A_ids[m] / topk;
copy_stub(A + m * K, input + index * K, K);
}
const int64_t offset = offsets[mb];
tinygemm_kernel<scalar_t>(
/* A */ A,
/* B */ B,
/* C */ ic0 + offset * 2 * N + nb * BLOCK_N,
/* Btmp */ B_tmp + tid * B_tmp_size_per_thread + nb_offset * BLOCK_N * K,
/* Ctmp */ C_tmp + tid * 2 * BLOCK_M * BLOCK_N,
/* scale */ Bs,
/* M */ m_size,
/* N */ n_size,
/* K */ K,
/* lda */ K,
/* ldb */ n_size,
/* ldc */ 2 * N,
/* brg */ use_brgemm,
/* block_size_K */ block_size_K,
/* do_unpack */ do_unpack);
});
if (use_brgemm) {
at::native::cpublas::brgemm_release();
}
});
// stage 1.5: intermediate_cache1 = silu(intermediate_cache0)
at::parallel_for(0, M * topk, 0, [&](int64_t begin, int64_t end) {
for (int64_t m = begin; m < end; ++m) {
silu_and_mul_stub(ic1 + m * N, ic0 + m * 2 * N, ic0 + m * 2 * N + N, N);
}
});
// stage 2: intermediate_cache2 = intermediate_cache1 @ w2
// w2 : [E, K, N] as [E, OC, IC]
const int64_t OC = K; // rename K as OC
const int64_t IC = N; // rename N as IC
const int64_t MB2 = MB;
const int64_t NB2 = div_up(OC, BLOCK_N);
scale_size_N = div_up(K, block_size_N);
scale_size_K = div_up(N, block_size_K);
const int64_t stride_e2 = OC * IC;
const int64_t stride_oc = IC;
// parallel on [MB2, NB2]
parallel_2d(MB2, NB2, [&](int64_t mb0, int64_t mb1, int64_t nb0, int64_t nb1) {
int tid = get_thread_num();
alignas(64) scalar_t C[BLOCK_M * BLOCK_K];
loop_2d<at::Float8_e4m3fn>(mb0, mb1, nb0, nb1, BLOCK_N * IC, [&](int64_t mb, int64_t nb, int64_t nb_offset) {
int64_t m_size = offsets[mb + 1] - offsets[mb];
int64_t n_size = std::min(OC - nb * BLOCK_N, BLOCK_N);
// A ptr from ic1 of [M * topk, N] in sorted order
// so as to avoid copy A to tmp buffer again
const scalar_t* __restrict__ A = ic1 + offsets[mb] * N;
const int32_t* A_ids = sorted_ids + mb * BLOCK_M;
// B shape [IC, n_size] in vnni format
int32_t expert_id = expert_ids[mb];
const at::Float8_e4m3fn* __restrict__ B = packed_w2 + expert_id * stride_e2 + nb * BLOCK_N * stride_oc;
const float* __restrict__ Bs =
w2s + expert_id * scale_size_N * scale_size_K + (nb / blocks_n_per_group) * scale_size_K;
// do unpacking for the first row or a new expert
int32_t pre_expert_id = mb == 0 ? -1 : expert_ids[mb - 1];
bool do_unpack = (mb == mb0) || (expert_id != pre_expert_id);
tinygemm_kernel<scalar_t>(
/* A */ A,
/* B */ B,
/* C */ C,
/* Btmp */ B_tmp + tid * B_tmp_size_per_thread + nb_offset * BLOCK_N * IC,
/* Ctmp */ C_tmp + tid * 2 * BLOCK_M * BLOCK_N,
/* scale */ Bs,
/* M */ m_size,
/* N */ n_size,
/* K */ IC,
/* lda */ IC,
/* ldb */ n_size,
/* ldc */ BLOCK_N,
/* brg */ use_brgemm,
/* block_size_K */ block_size_K,
/* do_unpack */ do_unpack);
// 2.b copy from C to ic2 in original order
// and also mul topk_weights in float32
for (int64_t m = 0; m < m_size; ++m) {
int32_t index = A_ids[m];
float weight = topk_weights[index];
copy_mul_stub(ic2 + index * K + nb * BLOCK_N, C + m * BLOCK_N, weight, n_size);
}
});
if (use_brgemm) {
at::native::cpublas::brgemm_release();
}
});
// stage 3: out = intermediate_cache2.sum(dim=1)
// from [M, topk, K] to [M, K]
at::parallel_for(0, M, 0, [&](int64_t begin, int64_t end) {
for (int64_t m = begin; m < end; ++m) {
sum_stub(output + m * K, ic2 + m * topk * K, topk, K);
}
});
}
#define INSTANTIATE_MOE_FP8_TEMPLATE(TYPE) \
template void fused_experts_fp8_kernel_impl<TYPE>( \
TYPE* __restrict__ output, \
TYPE* __restrict__ ic0, \
TYPE* __restrict__ ic1, \
TYPE* __restrict__ ic2, \
TYPE* __restrict__ A_tmp, \
TYPE* __restrict__ B_tmp, \
float* __restrict__ C_tmp, \
const TYPE* __restrict__ input, \
const at::Float8_e4m3fn* __restrict__ packed_w1, \
const at::Float8_e4m3fn* __restrict__ packed_w2, \
const float* __restrict__ w1s, \
const float* __restrict__ w2s, \
int64_t block_size_N, \
int64_t block_size_K, \
const float* __restrict__ topk_weights, \
const int32_t* __restrict__ sorted_ids, \
const int32_t* __restrict__ expert_ids, \
const int32_t* __restrict__ offsets, \
int64_t M, \
int64_t N, \
int64_t K, \
int64_t E, \
int64_t topk, \
int64_t num_tokens_post_pad)
INSTANTIATE_MOE_FP8_TEMPLATE(at::BFloat16);
INSTANTIATE_MOE_FP8_TEMPLATE(at::Half);
template <typename scalar_t>
void shared_expert_fp8_kernel_impl(
scalar_t* __restrict__ output,
scalar_t* __restrict__ ic0,
scalar_t* __restrict__ ic1,
scalar_t* __restrict__ B_tmp,
float* __restrict__ C_tmp,
const scalar_t* __restrict__ input,
const at::Float8_e4m3fn* __restrict__ packed_w1,
const at::Float8_e4m3fn* __restrict__ packed_w2,
const float* __restrict__ w1s,
const float* __restrict__ w2s,
int64_t block_size_N,
int64_t block_size_K,
const scalar_t* __restrict__ fused_experts_out,
float routed_scaling_factor,
int64_t M,
int64_t N,
int64_t K) {
constexpr int64_t BLOCK_M = block_size_m();
constexpr int64_t BLOCK_N = block_size_n();
// stage 1: intermediate_cache0 = hidden_states @ w1
const int64_t MB = div_up(M, BLOCK_M);
const int64_t NB = div_up(2 * N, BLOCK_N);
int64_t scale_size_K = div_up(K, block_size_K);
int64_t blocks_n_per_group = block_size_N / BLOCK_N;
const bool use_brgemm = can_use_brgemm<at::Float8_e4m3fn>(M);
int64_t B_tmp_size_per_thread = MAX_CACHE_BLOCK_SIZE * BLOCK_N * std::max(K, N);
parallel_2d(MB, NB, [&](int64_t mb0, int64_t mb1, int64_t nb0, int64_t nb1) {
int tid = get_thread_num();
loop_2d<at::Float8_e4m3fn>(mb0, mb1, nb0, nb1, BLOCK_N * K, [&](int64_t mb, int64_t nb, int64_t nb_offset) {
int64_t m_size = std::min(M - mb * BLOCK_M, BLOCK_M);
int64_t n_size = std::min(2 * N - nb * BLOCK_N, BLOCK_N);
// do unpacking for the first row
bool do_unpack = (mb == mb0);
tinygemm_kernel<scalar_t>(
/* A */ input + mb * BLOCK_M * K,
/* B */ packed_w1 + nb * BLOCK_N * K,
/* C */ ic0 + mb * BLOCK_M * 2 * N + nb * BLOCK_N,
/* Btmp */ B_tmp + tid * B_tmp_size_per_thread + nb_offset * BLOCK_N * K,
/* Ctmp */ C_tmp + tid * 2 * BLOCK_M * BLOCK_N,
/* scale */ w1s + (nb / blocks_n_per_group) * scale_size_K,
/* M */ m_size,
/* N */ n_size,
/* K */ K,
/* lda */ K,
/* ldb */ n_size,
/* ldc */ 2 * N,
/* brg */ use_brgemm,
/* block_size_K */ block_size_K,
/* do_unpack */ do_unpack);
});
if (use_brgemm) {
at::native::cpublas::brgemm_release();
}
});
// stage 1.5: intermediate_cache1 = silu(intermediate_cache0)
at::parallel_for(0, M, 0, [&](int64_t begin, int64_t end) {
for (int64_t m = begin; m < end; ++m) {
silu_and_mul_stub(ic1 + m * N, ic0 + m * 2 * N, ic0 + m * 2 * N + N, N);
}
});
// stage 2: intermediate_cache2 = intermediate_cache1 @ w2
// w2 : [K, N] as [OC, IC]
const int64_t OC = K; // rename K as OC
const int64_t IC = N; // rename N as IC
const int64_t MB2 = MB;
const int64_t NB2 = div_up(K, BLOCK_N);
scale_size_K = div_up(N, block_size_K);
// parallel on [MB2, NB2]
parallel_2d(MB2, NB2, [&](int64_t mb0, int64_t mb1, int64_t nb0, int64_t nb1) {
int tid = get_thread_num();
alignas(64) scalar_t C[BLOCK_M * BLOCK_K];
loop_2d<at::Float8_e4m3fn>(mb0, mb1, nb0, nb1, BLOCK_N * IC, [&](int64_t mb, int64_t nb, int64_t nb_offset) {
int64_t m_size = std::min(M - mb * BLOCK_M, BLOCK_M);
int64_t n_size = std::min(OC - nb * BLOCK_N, BLOCK_N);
// do unpacking for the first row
bool do_unpack = (mb == mb0);
// 2.a gemm: C = A @ B
tinygemm_kernel<scalar_t>(
/* A */ ic1 + mb * BLOCK_M * N,
/* B */ packed_w2 + nb * BLOCK_N * N,
/* C */ C,
/* Btmp */ B_tmp + tid * B_tmp_size_per_thread + nb_offset * BLOCK_N * IC,
/* Ctmp */ C_tmp + tid * 2 * BLOCK_M * BLOCK_N,
/* scale */ w2s + (nb / blocks_n_per_group) * scale_size_K,
/* M */ m_size,
/* N */ n_size,
/* K */ IC,
/* lda */ IC,
/* ldb */ n_size,
/* ldc */ BLOCK_N,
/* brg */ use_brgemm,
/* block_size_K */ block_size_K,
/* do_unpack */ do_unpack);
// 2.b copy from C to output and add fused_experts_out
scalar_t* __restrict__ out = output + mb * BLOCK_M * K + nb * BLOCK_N;
const scalar_t* __restrict__ fused_out = fused_experts_out + mb * BLOCK_M * K + nb * BLOCK_N;
for (int64_t m = 0; m < m_size; ++m) {
add_mul_stub(out + m * K, C + m * BLOCK_N, fused_out + m * K, routed_scaling_factor, n_size);
}
});
});
if (use_brgemm) {
at::native::cpublas::brgemm_release();
}
}
#define INSTANTIATE_SHARED_EXPERT_FP8_TEMPLATE(TYPE) \
template void shared_expert_fp8_kernel_impl<TYPE>( \
TYPE* __restrict__ output, \
TYPE* __restrict__ ic0, \
TYPE* __restrict__ ic1, \
TYPE* __restrict__ B_tmp, \
float* __restrict__ C_tmp, \
const TYPE* __restrict__ input, \
const at::Float8_e4m3fn* __restrict__ packed_w1, \
const at::Float8_e4m3fn* __restrict__ packed_w2, \
const float* __restrict__ w1s, \
const float* __restrict__ w2s, \
int64_t block_size_N, \
int64_t block_size_K, \
const TYPE* __restrict__ fused_experts_out, \
float routed_scaling_factor, \
int64_t M, \
int64_t N, \
int64_t K)
INSTANTIATE_SHARED_EXPERT_FP8_TEMPLATE(at::BFloat16);
INSTANTIATE_SHARED_EXPERT_FP8_TEMPLATE(at::Half);
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