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#pragma once |
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#include "ln.h" |
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#include "ln_utils.cuh" |
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#include "ln_kernel_traits.h" |
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#include "static_switch.h" |
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namespace layer_norm { |
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template<typename Ktraits, bool Is_dropout, bool Has_colscale, bool Has_subset, bool Is_even_cols> |
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__global__ __launch_bounds__(Ktraits::THREADS_PER_CTA) |
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void ln_bwd_kernel(layer_norm::BwdParams params) { |
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enum { ROWS_PER_CTA = Ktraits::ROWS_PER_CTA }; |
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enum { WARPS_M = Ktraits::WARPS_M }; |
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enum { WARPS_N = Ktraits::WARPS_N }; |
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enum { THREADS_PER_ROW = Ktraits::THREADS_PER_ROW }; |
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enum { COLS = Ktraits::COLS }; |
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enum { BYTES_PER_ROW = Ktraits::BYTES_PER_ROW }; |
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enum { LDGS = Ktraits::LDGS }; |
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enum { NUM_ELTS = Ktraits::ELTS_PER_LDG }; |
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enum { THREADS_PER_WARP = Ktraits::THREADS_PER_WARP }; |
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enum { CTAS_PER_ROW = Ktraits::CTAS_PER_ROW }; |
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using input_t = typename Ktraits::input_t; |
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using compute_t = typename Ktraits::compute_t; |
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using index_t = typename Ktraits::index_t; |
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using mask_t = typename Ktraits::mask_t; |
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using Ivec = typename Ktraits::Ivec; |
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using Rvec = typename Ktraits::Rvec; |
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using Ovec = typename Ktraits::Ovec; |
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using Wvec = typename Ktraits::Wvec; |
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using Cvec = typename Ktraits::Cvec; |
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using Mvec = typename Ktraits::Mvec; |
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using Reducer = typename Ktraits::Reducer; |
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using reduce_t = typename Reducer::Type; |
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extern __shared__ char smem_[]; |
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const bool has_residual = params.dresidual != nullptr; |
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const bool prenorm = params.dx != nullptr; |
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const index_t tidx = threadIdx.x; |
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const index_t bidn = blockIdx.x % CTAS_PER_ROW; |
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const index_t bidm = blockIdx.x / CTAS_PER_ROW; |
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const index_t lane = tidx % THREADS_PER_WARP; |
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const index_t warp = tidx / THREADS_PER_WARP; |
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const index_t warp_m = warp / Ktraits::WARPS_N; |
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const index_t warp_n = warp % Ktraits::WARPS_N; |
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const index_t tid_r = warp_n * THREADS_PER_WARP + lane; |
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const index_t r = bidm * Ktraits::ROWS_PER_CTA + warp_m; |
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const index_t c = bidn * THREADS_PER_ROW + warp_n * THREADS_PER_WARP + lane; |
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static_assert(COLS == THREADS_PER_ROW * LDGS * NUM_ELTS * CTAS_PER_ROW); |
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const input_t *rowscale = static_cast<input_t *>(params.rowscale); |
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const index_t *x0_subset = static_cast<index_t *>(params.x0_subset); |
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const index_t *z_subset = static_cast<index_t *>(params.z_subset); |
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Cvec dzy_sum[LDGS]; |
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Cvec dz_sum[LDGS]; |
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Cvec dcolscale_sum[LDGS]; |
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memset(dzy_sum, 0, sizeof(dzy_sum)); |
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memset(dz_sum, 0, sizeof(dz_sum)); |
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if (Has_colscale) { memset(dcolscale_sum, 0, sizeof(dcolscale_sum)); } |
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compute_t * smem_wgrad = reinterpret_cast<compute_t*>(smem_); |
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char *smem_dgrad = smem_ + Ktraits::SMEM_BYTES_WGRAD; |
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Reducer reducer(params, bidm, bidn, warp_m, warp_n, lane, smem_dgrad); |
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Sum<reduce_t> sum; |
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const index_t num_valid_ldgs = |
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((params.cols / Ktraits::ELTS_PER_LDG) - 1 - c + Ktraits::VEC_COLS_PER_LDG) / Ktraits::VEC_COLS_PER_LDG; |
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Wvec gamma[LDGS]; |
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Wvec colscale[LDGS]; |
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index_t idx = c; |
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#pragma unroll |
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for( int it = 0; it < LDGS; it++ ) { |
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if (Is_even_cols || (it < num_valid_ldgs)) { |
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gamma[it].load_from(params.gamma, idx); |
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if (Has_colscale) { colscale[it].load_from(params.colscale, idx); } |
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idx += Ktraits::VEC_COLS_PER_LDG; |
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} |
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} |
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#pragma unroll 1 |
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for( int row = r; row < params.rows; row += params.ctas_per_col * ROWS_PER_CTA ) { |
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const compute_t mu_r = static_cast<const compute_t *>(params.mu)[row]; |
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const compute_t rs_r = static_cast<const compute_t *>(params.rs)[row]; |
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const compute_t rowscale_val = !Has_subset ? (params.rowscale == nullptr ? 1.0f : compute_t(rowscale[row])) : params.rowscale_const; |
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const int row_z = !Has_subset ? row + 1 : z_subset[row]; |
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const int row_x0 = !Has_subset ? row + 1 : x0_subset[row]; |
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const bool load_dz = !Has_subset || row_z > 0; |
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const bool save_dx0 = !Has_subset || row_x0 > 0; |
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Mvec dmask[LDGS]; |
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Rvec dx[LDGS]; |
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compute_t dy[LDGS * NUM_ELTS]; |
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compute_t y[LDGS * NUM_ELTS]; |
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compute_t mdy_local = 0.f; |
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compute_t mdyy_local = 0.f; |
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if (load_dz) { |
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index_t idx_x = row * params.cols / Ktraits::ELTS_PER_LDG + c; |
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index_t idx_z = !Has_subset ? idx_x : (load_dz ? (row_z - 1) * params.cols / Ktraits::ELTS_PER_LDG + c : 0); |
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index_t idx_x0 = !Has_subset ? idx_x : (save_dx0 ? (row_x0 - 1) * params.cols / Ktraits::ELTS_PER_LDG + c : 0); |
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#pragma unroll |
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for( int it = 0; it < LDGS; it++ ) { |
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if (Is_even_cols || (it < num_valid_ldgs)) { |
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Rvec x; |
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Ovec dz; |
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dz.load_from(params.dz, !Has_subset ? idx_x : idx_z); |
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if (prenorm) { dx[it].load_from(params.dx, idx_x); } |
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x.load_from(params.x, idx_x); |
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if (Is_dropout) { dmask[it].load_from(params.dmask, !Has_subset ? idx_x : idx_x0); } |
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idx_x += Ktraits::VEC_COLS_PER_LDG; |
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idx_z += Ktraits::VEC_COLS_PER_LDG; |
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idx_x0 += Ktraits::VEC_COLS_PER_LDG; |
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#pragma unroll |
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for( int jt = 0; jt < NUM_ELTS; jt++ ) { |
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compute_t x_tmp = x.data.elt[jt]; |
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compute_t y_tmp = rs_r * (x_tmp - (!params.is_rms_norm ? mu_r : 0.f)); |
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compute_t dy_tmp = compute_t(gamma[it].data.elt[jt]) * compute_t(dz.data.elt[jt]); |
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compute_t dz_tmp = dz.data.elt[jt]; |
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mdy_local += dy_tmp; |
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mdyy_local += dy_tmp * y_tmp; |
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dy[it * NUM_ELTS + jt] = dy_tmp; |
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y[it * NUM_ELTS + jt] = y_tmp; |
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dzy_sum[it].data.elt[jt] += dz_tmp * y_tmp; |
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dz_sum[it].data.elt[jt] += dz_tmp; |
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} |
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} |
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} |
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} else { |
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index_t idx_x = row * params.cols / Ktraits::ELTS_PER_LDG + c; |
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index_t idx_x0 = !Has_subset ? idx_x : (save_dx0 ? (row_x0 - 1) * params.cols / Ktraits::ELTS_PER_LDG + c : 0); |
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#pragma unroll |
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for( int it = 0; it < LDGS; it++ ) { |
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if (Is_even_cols || (it < num_valid_ldgs)) { |
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if (prenorm) { dx[it].load_from(params.dx, idx_x); } |
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if (Is_dropout) { dmask[it].load_from(params.dmask, !Has_subset ? idx_x : idx_x0); } |
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idx_x += Ktraits::VEC_COLS_PER_LDG; |
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idx_x0 += Ktraits::VEC_COLS_PER_LDG; |
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} |
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} |
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} |
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reduce_t result = reducer.allreduce({mdy_local, mdyy_local}, sum); |
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mdy_local = layer_norm::Get<0>::of<reduce_t, compute_t>(result) * params.inverse_cols; |
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mdyy_local = layer_norm::Get<1>::of<reduce_t, compute_t>(result) * params.inverse_cols; |
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index_t idx_x = row * params.cols / Ktraits::ELTS_PER_LDG + c; |
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index_t idx_x0 = !Has_subset ? idx_x : (save_dx0 ? (row_x0 - 1) * params.cols / Ktraits::ELTS_PER_LDG + c : 0); |
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#pragma unroll |
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for( int it = 0; it < LDGS; it++ ) { |
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if (Is_even_cols || (it < num_valid_ldgs)) { |
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Ivec dx0; |
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Rvec dresidual; |
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Ivec x0; |
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if (Has_colscale && save_dx0) { x0.load_from(params.x0, !Has_subset ? idx_x : idx_x0); } |
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#pragma unroll |
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for( int jt = 0; jt < NUM_ELTS; jt++ ) { |
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compute_t dx_tmp_res; |
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if (load_dz) { |
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compute_t dy_tmp = dy[it * NUM_ELTS + jt]; |
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compute_t y_tmp = y[it * NUM_ELTS + jt]; |
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compute_t dx_tmp = rs_r * (dy_tmp - (mdyy_local * y_tmp + (!params.is_rms_norm ? mdy_local : 0.f))); |
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dx_tmp_res = prenorm ? dx_tmp + compute_t(dx[it].data.elt[jt]) : dx_tmp; |
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} else { |
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dx_tmp_res = prenorm ? compute_t(dx[it].data.elt[jt]) : 0.f; |
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} |
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if (has_residual) { dresidual.data.elt[jt] = dx_tmp_res; } |
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if (save_dx0) { |
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compute_t dx0_tmp_res = dx_tmp_res * rowscale_val; |
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if (Is_dropout) { |
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dx0_tmp_res *= params.dropout_scale; |
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if (Has_colscale) { |
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dcolscale_sum[it].data.elt[jt] += dmask[it].data.elt[jt] ? dx0_tmp_res * compute_t(x0.data.elt[jt]) : 0.f; |
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dx0.data.elt[jt] = dmask[it].data.elt[jt] ? dx0_tmp_res * compute_t(colscale[it].data.elt[jt]) : 0.f; |
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} else { |
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dx0.data.elt[jt] = dmask[it].data.elt[jt] ? dx0_tmp_res : 0.f; |
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} |
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} else { |
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if (Has_colscale) { |
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dcolscale_sum[it].data.elt[jt] += dx0_tmp_res * compute_t(x0.data.elt[jt]); |
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dx0.data.elt[jt] = dx0_tmp_res * compute_t(colscale[it].data.elt[jt]); |
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} else { |
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dx0.data.elt[jt] = dx0_tmp_res; |
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} |
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} |
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} |
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} |
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if (has_residual) { dresidual.store_to(params.dresidual, idx_x); } |
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if (save_dx0) { dx0.store_to(params.dx0, !Has_subset ? idx_x : idx_x0); } |
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idx_x += Ktraits::VEC_COLS_PER_LDG; |
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idx_x0 += Ktraits::VEC_COLS_PER_LDG; |
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} |
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} |
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} |
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if( WARPS_M == 1 ) { |
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idx = r * params.cols / Ktraits::ELTS_PER_LDG + c; |
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#pragma unroll |
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for( int it = 0; it < LDGS; it++ ) { |
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if (Is_even_cols || (it < num_valid_ldgs)) { |
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dz_sum[it].store_to(params.dbeta_part, idx); |
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dzy_sum[it].store_to(params.dgamma_part, idx); |
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if (Has_colscale) { dcolscale_sum[it].store_to(params.dcolscale_part, idx); } |
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idx += Ktraits::VEC_COLS_PER_LDG; |
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} |
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} |
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} else { |
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static_assert(WARPS_M == 1 || Ktraits::CTAS_PER_ROW == 1, "Multiple rows per CTA not supported for Multi-CTA."); |
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enum { NUM_RES = COLS / Ktraits::THREADS_PER_CTA }; |
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static_assert(NUM_RES * Ktraits::THREADS_PER_CTA == COLS, ""); |
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idx = warp_m * Ktraits::VEC_COLS + tid_r; |
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#pragma unroll |
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for( int it = 0; it < LDGS; it++ ) { |
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dz_sum[it].store_to(smem_wgrad, idx); |
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idx += THREADS_PER_ROW; |
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} |
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__syncthreads(); |
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compute_t cta_dz_sum[NUM_RES]; |
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memset(cta_dz_sum, 0, sizeof(compute_t) * NUM_RES); |
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for( int it = 0; it < ROWS_PER_CTA; it++ ) { |
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for( int jt = 0; jt < NUM_RES; jt++ ) { |
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cta_dz_sum[jt] += smem_wgrad[it * COLS + tidx + jt * Ktraits::THREADS_PER_CTA]; |
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} |
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} |
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__syncthreads(); |
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idx = warp_m * Ktraits::VEC_COLS + tid_r; |
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#pragma unroll |
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for( int it = 0; it < LDGS; it++ ) { |
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dzy_sum[it].store_to(smem_wgrad, idx); |
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idx += THREADS_PER_ROW; |
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} |
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__syncthreads(); |
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compute_t cta_dzy_sum[NUM_RES]; |
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memset(cta_dzy_sum, 0, sizeof(compute_t) * NUM_RES); |
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for( int it = 0; it < ROWS_PER_CTA; it++ ) { |
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for( int jt = 0; jt < NUM_RES; jt++ ) { |
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cta_dzy_sum[jt] += smem_wgrad[it * COLS + tidx + jt * Ktraits::THREADS_PER_CTA]; |
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} |
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} |
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compute_t cta_dcolscale_sum[NUM_RES]; |
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if (Has_colscale) { |
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__syncthreads(); |
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idx = warp_m * Ktraits::VEC_COLS + tid_r; |
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#pragma unroll |
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for( int it = 0; it < LDGS; it++ ) { |
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dcolscale_sum[it].store_to(smem_wgrad, idx); |
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idx += THREADS_PER_ROW; |
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} |
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__syncthreads(); |
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memset(cta_dcolscale_sum, 0, sizeof(compute_t) * NUM_RES); |
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for( int it = 0; it < ROWS_PER_CTA; it++ ) { |
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for( int jt = 0; jt < NUM_RES; jt++ ) { |
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cta_dcolscale_sum[jt] += smem_wgrad[it * COLS + tidx + jt * Ktraits::THREADS_PER_CTA]; |
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} |
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} |
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} |
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const index_t num_valid_writes |
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= (params.cols - 1 - tidx + Ktraits::THREADS_PER_CTA) / Ktraits::THREADS_PER_CTA; |
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compute_t *dgamma_part = static_cast<compute_t *>(params.dgamma_part) + bidm * params.cols + tidx; |
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compute_t *dbeta_part = static_cast<compute_t *>(params.dbeta_part) + bidm * params.cols + tidx; |
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compute_t *dcolscale_part = Has_colscale ? static_cast<compute_t *>(params.dcolscale_part) + bidm * params.cols + tidx : nullptr; |
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for( int jt = 0; jt < NUM_RES; jt++ ) { |
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if (Is_even_cols || (jt < num_valid_writes)) { |
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*dgamma_part = cta_dzy_sum[jt]; |
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dgamma_part += Ktraits::THREADS_PER_CTA; |
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*dbeta_part = cta_dz_sum[jt]; |
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dbeta_part += Ktraits::THREADS_PER_CTA; |
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if (Has_colscale) { |
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*dcolscale_part = cta_dcolscale_sum[jt]; |
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dcolscale_part += Ktraits::THREADS_PER_CTA; |
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} |
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} |
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} |
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} |
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} |
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template<typename Kernel_traits, bool Has_colscale, bool Is_even_cols> |
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__global__ __launch_bounds__(Kernel_traits::THREADS_PER_CTA) |
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void ln_bwd_finalize_kernel(BwdParams params) |
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{ |
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using compute_t = typename Kernel_traits::compute_t; |
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using weight_t = typename Kernel_traits::weight_t; |
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using index_t = typename Kernel_traits::index_t; |
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using Reducer = typename Kernel_traits::Reducer; |
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using reduce_t = typename Reducer::Type; |
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Sum<reduce_t> sum; |
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enum { NUM_ELT = Kernel_traits::ELTS_PER_LDG }; |
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enum { THREADS_PER_WARP = Kernel_traits::THREADS_PER_WARP }; |
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__shared__ char smem_[Kernel_traits::SMEM_BYTES_PER_CTA]; |
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constexpr uint32_t bidm = 0; |
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const uint32_t bidn = blockIdx.x; |
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const uint32_t tidx = threadIdx.x; |
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const uint32_t warp = tidx / THREADS_PER_WARP; |
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const uint32_t lane = tidx % THREADS_PER_WARP; |
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Reducer reducer(params, bidm, bidn, 0, 0, lane, smem_); |
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const uint32_t c = bidn * THREADS_PER_WARP + lane; |
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const uint32_t c_out = bidn * THREADS_PER_WARP / 2 + lane; |
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constexpr uint32_t COL_STRIDE = Kernel_traits::CTAS * THREADS_PER_WARP; |
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for( uint32_t col = c, col_out = c_out; col < Kernel_traits::COLS; col += COL_STRIDE, col_out += COL_STRIDE / 2 ) { |
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Vec<compute_t, NUM_ELT> dbeta_local, dgamma_local, dcolscale_local; |
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memset(&dgamma_local, 0, sizeof(dgamma_local)); |
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memset(&dbeta_local, 0, sizeof(dbeta_local)); |
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if (Has_colscale) { memset(&dcolscale_local, 0, sizeof(dcolscale_local)); } |
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if (Is_even_cols || col < params.cols) { |
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for( uint32_t row = warp; row < params.ctas_per_col; row += Kernel_traits::ROWS_PER_CTA ) { |
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index_t idx = row * params.cols + col; |
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Vec<compute_t, NUM_ELT> dbeta_part, dgamma_part, dcolscale_part; |
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dbeta_part.load_from(params.dbeta_part, idx); |
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dgamma_part.load_from(params.dgamma_part, idx); |
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if (Has_colscale) { dcolscale_part.load_from(params.dcolscale_part, idx); } |
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#pragma unroll |
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for( int it = 0; it < NUM_ELT; it++ ) { |
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dgamma_local.data.elt[it] += dgamma_part.data.elt[it]; |
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dbeta_local.data.elt[it] += dbeta_part.data.elt[it]; |
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if (Has_colscale) { dcolscale_local.data.elt[it] += dcolscale_part.data.elt[it]; } |
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} |
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} |
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} |
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void * smem_gamma = smem_; |
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void * smem_beta = &smem_[Kernel_traits::SMEM_BYTES_TRANSPOSE]; |
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void * smem_colscale = &smem_[2 * Kernel_traits::SMEM_BYTES_TRANSPOSE]; |
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const int write_row = warp; |
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const int write_col = lane ^ write_row; |
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const int write_idx = write_row * THREADS_PER_WARP + write_col; |
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dgamma_local.store_to(smem_gamma, write_idx); |
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dbeta_local.store_to(smem_beta, write_idx); |
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if (Has_colscale) { dcolscale_local.store_to(smem_colscale, write_idx); } |
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__syncthreads(); |
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void * smem_gamma_out = &smem_[Kernel_traits::NUM_FACTORS * Kernel_traits::SMEM_BYTES_TRANSPOSE]; |
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void * smem_beta_out = &smem_[Kernel_traits::NUM_FACTORS * Kernel_traits::SMEM_BYTES_TRANSPOSE + Kernel_traits::SMEM_BYTES_OUTPUT]; |
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void * smem_colscale_out = &smem_[Kernel_traits::NUM_FACTORS * Kernel_traits::SMEM_BYTES_TRANSPOSE + 2 * Kernel_traits::SMEM_BYTES_OUTPUT]; |
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for( int w = warp; w < THREADS_PER_WARP; w += Kernel_traits::ROWS_PER_CTA ) { |
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const int read_row = lane; |
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const int read_col = w ^ read_row; |
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const int read_idx = read_row * THREADS_PER_WARP + read_col; |
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memset(&dbeta_local, 0, sizeof(dbeta_local)); |
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memset(&dgamma_local, 0, sizeof(dgamma_local)); |
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if (Has_colscale) { memset(&dcolscale_local, 0, sizeof(dcolscale_local)); } |
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if(read_row < Kernel_traits::ROWS_PER_CTA){ |
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dbeta_local.load_from(smem_beta, read_idx); |
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dgamma_local.load_from(smem_gamma, read_idx); |
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if (Has_colscale) { dcolscale_local.load_from(smem_colscale, read_idx); } |
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} |
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#pragma unroll |
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for( int it = 0; it < NUM_ELT; it++ ) { |
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compute_t b_i = dbeta_local.data.elt[it]; |
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compute_t g_i = dgamma_local.data.elt[it]; |
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b_i = reducer.allreduce(b_i, sum); |
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g_i = reducer.allreduce(g_i, sum); |
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dgamma_local.data.elt[it] = g_i; |
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dbeta_local.data.elt[it] = b_i; |
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if (Has_colscale) { |
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compute_t cs_i = dcolscale_local.data.elt[it]; |
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cs_i = reducer.allreduce(cs_i, sum); |
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dcolscale_local.data.elt[it] = cs_i; |
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} |
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} |
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if(lane == 0){ |
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dgamma_local.store_to(smem_gamma_out, w); |
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dbeta_local.store_to(smem_beta_out, w); |
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if (Has_colscale) { dcolscale_local.store_to(smem_colscale_out, w); } |
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} |
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} |
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__syncthreads(); |
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if (Is_even_cols || col_out * 2 < params.cols) { |
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if( warp == Kernel_traits::ROWS_PER_CTA - 1 && lane < THREADS_PER_WARP / 2 ) { |
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using src_t = typename TypeToVec2<compute_t>::Type; |
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using dst_t = typename TypeToVec2<weight_t>::Type; |
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Vec<src_t, NUM_ELT> dbeta_vec2, dgamma_vec2, dcolscale_vec2; |
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Vec<dst_t, NUM_ELT> dbeta_out2, dgamma_out2, dcolscale_out2; |
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dgamma_vec2.load_from(smem_gamma_out, lane); |
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dbeta_vec2.load_from(smem_beta_out, lane); |
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if (Has_colscale) { dcolscale_vec2.load_from(smem_colscale_out, lane); } |
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#pragma unroll |
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for( int it = 0; it < NUM_ELT; it++ ) { |
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dgamma_out2.data.elt[it] = Converter<src_t,dst_t>::convert(dgamma_vec2.data.elt[it]); |
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dbeta_out2.data.elt[it] = Converter<src_t,dst_t>::convert(dbeta_vec2.data.elt[it]); |
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if (Has_colscale) { dcolscale_out2.data.elt[it] = Converter<src_t,dst_t>::convert(dcolscale_vec2.data.elt[it]); } |
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} |
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dgamma_out2.store_to(params.dgamma, col_out); |
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dbeta_out2.store_to(params.dbeta, col_out); |
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if (Has_colscale) { dcolscale_out2.store_to(params.dcolscale, col_out); } |
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} |
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} |
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} |
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} |
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} |
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using namespace layer_norm; |
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template< |
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typename weight_t, |
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typename input_t, |
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typename residual_t, |
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typename output_t, |
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typename compute_t, |
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typename index_t, |
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int HIDDEN_SIZE, |
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int CTAS_PER_ROW, |
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int WARPS_M, |
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int WARPS_N, |
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int BYTES_PER_LDG_MAIN, |
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int BYTES_PER_LDG_FINAL |
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> |
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void launch_(LaunchParams<BwdParams> &launch_params, const bool configure_params){ |
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using Kernel_traits = Kernel_traits<weight_t, |
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input_t, |
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residual_t, |
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output_t, |
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compute_t, |
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index_t, |
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|
HIDDEN_SIZE, |
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CTAS_PER_ROW, |
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WARPS_M, |
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WARPS_N, |
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BYTES_PER_LDG_MAIN |
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>; |
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bool is_dropout = launch_params.params.dropout_keep_p < 1.f; |
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bool has_colscale = launch_params.params.colscale != nullptr; |
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bool has_subset = launch_params.params.x0_subset != nullptr; |
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bool is_even_cols = launch_params.params.cols == HIDDEN_SIZE; |
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BOOL_SWITCH(is_dropout, IsDropoutConst, [&] { |
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BOOL_SWITCH(has_colscale, HasColscaleConst, [&] { |
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BOOL_SWITCH(has_subset, HasSubsetConst, [&] { |
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BOOL_SWITCH(is_even_cols, IsEvenColsConst, [&] { |
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auto kernel = &ln_bwd_kernel<Kernel_traits, IsDropoutConst, HasColscaleConst, HasSubsetConst, IsEvenColsConst>; |
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|
if( configure_params ) { |
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int ctas_per_sm; |
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|
CHECK_CUDA(cudaOccupancyMaxActiveBlocksPerMultiprocessor( |
|
|
&ctas_per_sm, kernel, Kernel_traits::THREADS_PER_CTA, Kernel_traits::SMEM_BYTES)); |
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|
launch_params.params.ctas_per_col = launch_params.props->multiProcessorCount * ctas_per_sm / Kernel_traits::CTAS_PER_ROW; |
|
|
launch_params.barrier_size = 0; |
|
|
launch_params.workspace_bytes = 0; |
|
|
if(Kernel_traits::CTAS_PER_ROW > 1) { |
|
|
launch_params.barrier_size = 2 * launch_params.params.ctas_per_col; |
|
|
launch_params.workspace_bytes = launch_params.params.ctas_per_col |
|
|
* Kernel_traits::WARPS_M |
|
|
* Kernel_traits::CTAS_PER_ROW |
|
|
* sizeof(typename Kernel_traits::reduce_t) |
|
|
* 2; |
|
|
} |
|
|
return; |
|
|
} |
|
|
|
|
|
if( Kernel_traits::SMEM_BYTES >= 48 * 1024 ) { |
|
|
CHECK_CUDA(cudaFuncSetAttribute(kernel, cudaFuncAttributeMaxDynamicSharedMemorySize, Kernel_traits::SMEM_BYTES)); |
|
|
} |
|
|
auto stream = launch_params.stream; |
|
|
auto ctas_per_col = launch_params.params.ctas_per_col; |
|
|
|
|
|
if( Kernel_traits::CTAS_PER_ROW == 1 ) { |
|
|
kernel<<<ctas_per_col, Kernel_traits::THREADS_PER_CTA, Kernel_traits::SMEM_BYTES, stream>>>(launch_params.params); |
|
|
} else { |
|
|
dim3 grid(Kernel_traits::CTAS_PER_ROW * ctas_per_col); |
|
|
dim3 block(Kernel_traits::THREADS_PER_CTA); |
|
|
void *params_ = (void *)&launch_params.params; |
|
|
cudaLaunchCooperativeKernel((void *)kernel, grid, block, (void **)¶ms_, Kernel_traits::SMEM_BYTES, stream); |
|
|
} |
|
|
|
|
|
using Kernel_traits_f = layer_norm::Kernel_traits_finalize<HIDDEN_SIZE, |
|
|
weight_t, |
|
|
input_t, |
|
|
residual_t, |
|
|
output_t, |
|
|
compute_t, |
|
|
index_t, |
|
|
HasColscaleConst, |
|
|
32 * 32, |
|
|
BYTES_PER_LDG_FINAL>; |
|
|
|
|
|
auto kernel_f = &layer_norm::ln_bwd_finalize_kernel<Kernel_traits_f, HasColscaleConst, IsEvenColsConst>; |
|
|
kernel_f<<<Kernel_traits_f::CTAS, Kernel_traits_f::THREADS_PER_CTA, 0, stream>>>(launch_params.params); |
|
|
}); |
|
|
}); |
|
|
}); |
|
|
}); |
|
|
} |
|
|
|