737 lines
30 KiB
C++
737 lines
30 KiB
C++
/******************************************************************************
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* Copyright (c) 2022, Tri Dao.
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* Copyright (c) 2011-2021, NVIDIA CORPORATION. All rights reserved.
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*
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* Redistribution and use in source and binary forms, with or without
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* modification, are permitted provided that the following conditions are met:
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* * Redistributions of source code must retain the above copyright
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* notice, this list of conditions and the following disclaimer.
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* * Redistributions in binary form must reproduce the above copyright
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* notice, this list of conditions and the following disclaimer in the
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* documentation and/or other materials provided with the distribution.
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* * Neither the name of the NVIDIA CORPORATION nor the
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* names of its contributors may be used to endorse or promote products
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* derived from this software without specific prior written permission.
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*
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* THIS SOFTWARE IS PROVIDED BY THE COPYRIGHT HOLDERS AND CONTRIBUTORS "AS IS" AND
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* ANY EXPRESS OR IMPLIED WARRANTIES, INCLUDING, BUT NOT LIMITED TO, THE IMPLIED
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* WARRANTIES OF MERCHANTABILITY AND FITNESS FOR A PARTICULAR PURPOSE ARE
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* DISCLAIMED. IN NO EVENT SHALL NVIDIA CORPORATION BE LIABLE FOR ANY
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* DIRECT, INDIRECT, INCIDENTAL, SPECIAL, EXEMPLARY, OR CONSEQUENTIAL DAMAGES
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* (INCLUDING, BUT NOT LIMITED TO, PROCUREMENT OF SUBSTITUTE GOODS OR SERVICES;
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* LOSS OF USE, DATA, OR PROFITS; OR BUSINESS INTERRUPTION) HOWEVER CAUSED AND
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* ON ANY THEORY OF LIABILITY, WHETHER IN CONTRACT, STRICT LIABILITY, OR TORT
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* (INCLUDING NEGLIGENCE OR OTHERWISE) ARISING IN ANY WAY OUT OF THE USE OF THIS
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* SOFTWARE, EVEN IF ADVISED OF THE POSSIBILITY OF SUCH DAMAGE.
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*
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******************************************************************************/
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#include <torch/extension.h>
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#include <ATen/cuda/CUDAContext.h>
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#include <c10/cuda/CUDAGuard.h>
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#include "fmha.h"
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#define CHECK_SHAPE(x, ...) TORCH_CHECK(x.sizes() == torch::IntArrayRef({__VA_ARGS__}), #x " must have shape (" #__VA_ARGS__ ")")
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void set_params_fprop(FMHA_fprop_params ¶ms,
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// sizes
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const size_t b,
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const size_t seqlen_q,
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const size_t seqlen_k,
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const size_t h,
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const size_t d,
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// device pointers
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const at::Tensor q,
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const at::Tensor k,
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const at::Tensor v,
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at::Tensor out,
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void *cu_seqlens_q_d,
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void *cu_seqlens_k_d,
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void *o_tmp_d,
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void *s_d,
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void *softmax_lse_d,
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float p_dropout,
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float softmax_scale,
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bool is_causal) {
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Data_type acc_type = DATA_TYPE_FP32;
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Data_type data_type = !(q.dtype() == torch::kBFloat16) ? DATA_TYPE_FP16 : DATA_TYPE_BF16;
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// Reset the parameters
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memset(¶ms, 0, sizeof(params));
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params.is_bf16 = q.dtype() == torch::kBFloat16;
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// Set the pointers and strides.
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params.q_ptr = q.data_ptr();
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params.k_ptr = k.data_ptr();
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params.v_ptr = v.data_ptr();
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params.q_row_stride_in_elts = q.stride(0);
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params.k_row_stride_in_elts = k.stride(0);
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params.v_row_stride_in_elts = v.stride(0);
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params.q_head_stride_in_elts = q.stride(1);
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params.k_head_stride_in_elts = k.stride(1);
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params.v_head_stride_in_elts = v.stride(1);
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params.o_ptr = out.data_ptr();
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params.o_row_stride_in_elts = out.stride(0);
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params.o_head_stride_in_elts = out.stride(1);
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params.o_tmp_ptr = o_tmp_d;
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params.o_tmp_row_stride_in_elts = h * d;
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params.o_tmp_head_stride_in_elts = d;
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params.cu_seqlens_q = static_cast<int *>(cu_seqlens_q_d);
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params.cu_seqlens_k = static_cast<int *>(cu_seqlens_k_d);
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// S = softmax(P)
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params.s_ptr = s_d;
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params.s_stride_in_bytes = get_size_in_bytes(b * h * seqlen_k, data_type);
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// Softmax sum
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params.softmax_lse_ptr = softmax_lse_d;
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// Set the dimensions.
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params.b = b;
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params.h = h;
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params.seqlen_q = seqlen_q;
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params.seqlen_k = seqlen_k;
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params.d = d;
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// Set the different scale values.
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// const float scale_bmm1 = 1.f / sqrtf(d);
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const float scale_bmm1 = softmax_scale;
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params.scale_bmm1f = scale_bmm1;
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set_alpha(params.scale_bmm1, scale_bmm1, data_type);
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// Set this to probability of keeping an element to simplify things.
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params.p_dropout = 1.f - p_dropout;
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// Convert p from float to int so we don't have to convert the random uint to float to compare.
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// [Minor] We want to round down since when we do the comparison we use <= instead of <
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params.p_dropout_in_uint = uint32_t(std::floor(params.p_dropout * 4294967295.0));
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params.p_dropout_in_uint16_t = uint16_t(std::floor(params.p_dropout * 65535.0));
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params.rp_dropout = 1.f / params.p_dropout;
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params.scale_bmm1_rp_dropout = params.rp_dropout * params.scale_bmm1f;
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TORCH_CHECK(p_dropout < 1.f);
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set_alpha(params.scale_dropout, params.rp_dropout, data_type);
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params.is_causal = is_causal;
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}
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void set_params_dgrad(FMHA_dgrad_params ¶ms,
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// sizes
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const size_t b,
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const size_t seqlen_q,
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const size_t seqlen_k,
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const size_t h,
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const size_t d,
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// device pointers
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const at::Tensor q,
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const at::Tensor k,
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const at::Tensor v,
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const at::Tensor out,
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at::Tensor dq,
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at::Tensor dk,
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at::Tensor dv,
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void *cu_seqlens_q_d,
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void *cu_seqlens_k_d,
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void *dq_tmp_d,
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void *do_packed_d,
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void *softmax_lse_d,
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void *dsoftmax_sum_d,
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float p_dropout,
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float softmax_scale,
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bool is_causal) {
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set_params_fprop(params,
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b, seqlen_q, seqlen_k, h, d,
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q, k, v, out,
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cu_seqlens_q_d,
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cu_seqlens_k_d,
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dq_tmp_d, // Reusing the o_tmp_ptr variable to store dq_tmp
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nullptr,
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softmax_lse_d,
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p_dropout,
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softmax_scale,
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is_causal);
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// Set the pointers and strides.
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params.dq_ptr = dq.data_ptr();
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params.dk_ptr = dk.data_ptr();
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params.dv_ptr = dv.data_ptr();
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params.dq_row_stride_in_elts = dq.stride(0);
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params.dk_row_stride_in_elts = dk.stride(0);
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params.dv_row_stride_in_elts = dv.stride(0);
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params.dq_head_stride_in_elts = dq.stride(1);
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params.dk_head_stride_in_elts = dk.stride(1);
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params.dv_head_stride_in_elts = dv.stride(1);
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params.do_ptr = do_packed_d;
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// Softmax sum
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params.dsoftmax_sum = dsoftmax_sum_d;
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}
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std::vector<at::Tensor>
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mha_fwd(const at::Tensor &q, // total_q x num_heads x head_size, total_q := \sum_{i=0}^{b} s_i
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const at::Tensor &k, // total_k x num_heads x head_size, total_k := \sum_{i=0}^{b} s_i
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const at::Tensor &v, // total_k x num_heads x head_size, total_k := \sum_{i=0}^{b} s_i
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at::Tensor &out, // total_q x num_heads x head_size, total_k := \sum_{i=0}^{b} s_i
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const at::Tensor &cu_seqlens_q, // b+1
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const at::Tensor &cu_seqlens_k, // b+1
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const int max_seqlen_q_,
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const int max_seqlen_k_,
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const float p_dropout,
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const float softmax_scale,
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const bool zero_tensors,
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const bool is_causal,
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const bool return_softmax,
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c10::optional<at::Generator> gen_) {
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auto dprops = at::cuda::getCurrentDeviceProperties();
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bool is_sm75 = dprops->major == 7 && dprops->minor == 5;
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bool is_sm80 = dprops->major == 8 && dprops->minor == 0;
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bool is_sm8x = dprops->major == 8 && dprops->minor >= 0;
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TORCH_CHECK(is_sm8x || is_sm75);
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auto stream = at::cuda::getCurrentCUDAStream().stream();
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bool is_dropout = p_dropout > 0.0;
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Launch_params<FMHA_fprop_params> launch_params(dprops, stream, is_dropout, return_softmax);
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auto q_dtype = q.dtype();
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TORCH_CHECK(q_dtype == torch::kFloat16 || (is_sm8x && q_dtype == torch::kBFloat16));
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TORCH_CHECK(k.dtype() == q_dtype);
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TORCH_CHECK(v.dtype() == q_dtype);
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TORCH_CHECK(out.dtype() == q_dtype);
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TORCH_CHECK(cu_seqlens_q.dtype() == torch::kInt32);
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TORCH_CHECK(cu_seqlens_k.dtype() == torch::kInt32);
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TORCH_CHECK(q.is_cuda());
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TORCH_CHECK(k.is_cuda());
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TORCH_CHECK(v.is_cuda());
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TORCH_CHECK(out.is_cuda());
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TORCH_CHECK(cu_seqlens_q.is_cuda());
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TORCH_CHECK(cu_seqlens_k.is_cuda());
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TORCH_CHECK(q.stride(-1) == 1);
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TORCH_CHECK(k.stride(-1) == 1);
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TORCH_CHECK(v.stride(-1) == 1);
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TORCH_CHECK(out.stride(-1) == 1);
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TORCH_CHECK(cu_seqlens_q.is_contiguous());
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TORCH_CHECK(cu_seqlens_k.is_contiguous());
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const auto sizes = q.sizes();
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const int batch_size = cu_seqlens_q.numel() - 1;
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const int total_q = sizes[TOTAL_DIM];
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const int num_heads = sizes[H_DIM];
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const int head_size = sizes[D_DIM];
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const int total_k = k.size(TOTAL_DIM);
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TORCH_CHECK(batch_size > 0);
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TORCH_CHECK(head_size == 16 || head_size == 32 || head_size == 64 || head_size == 128);
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CHECK_SHAPE(q, total_q, num_heads, head_size);
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CHECK_SHAPE(k, total_k, num_heads, head_size);
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CHECK_SHAPE(v, total_k, num_heads, head_size);
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CHECK_SHAPE(out, total_q, num_heads, head_size);
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CHECK_SHAPE(cu_seqlens_q, batch_size + 1);
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CHECK_SHAPE(cu_seqlens_k, batch_size + 1);
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int blocksize_c = ((head_size == 128 && (is_dropout || !is_sm80)) || (is_sm75 && head_size == 64 && is_dropout)) ? 128 : 256;
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// Need to round max_seqlen_k to multiples of blocksize_c
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int max_seqlen_k = ((max_seqlen_k_ + blocksize_c - 1) / blocksize_c) * blocksize_c;
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if( max_seqlen_k_ <= 128 ) {
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max_seqlen_k = 128;
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} else if( max_seqlen_k_ <= 256 ) {
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max_seqlen_k = 256;
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}
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int max_seqlen_q = ((max_seqlen_q_ + 16 - 1) / 16) * 16;
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bool loop = max_seqlen_k > blocksize_c;
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// Otherwise the kernel will be launched from cuda:0 device
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at::cuda::CUDAGuard device_guard{q.get_device()};
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auto opts = q.options();
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// auto o = torch::empty({ total_q, num_heads, head_size }, opts);
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at::Tensor o_tmp;
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if (loop) { o_tmp = torch::empty({total_q, num_heads, head_size}, opts.dtype(at::kFloat)); }
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auto softmax_lse = torch::empty({batch_size, num_heads, max_seqlen_q}, opts.dtype(at::kFloat));
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// auto softmax_lse = torch::full({batch_size, num_heads, max_seqlen_k}, -std::numeric_limits<float>::infinity(), opts.dtype(at::kFloat));
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at::Tensor s;
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if (return_softmax) { s = torch::empty({ batch_size, num_heads, max_seqlen_q, max_seqlen_k }, opts); }
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if( zero_tensors ) {
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out.zero_();
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softmax_lse.fill_(-std::numeric_limits<float>::infinity());
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if (return_softmax) {s.zero_();}
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}
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auto gen = at::get_generator_or_default<at::CUDAGeneratorImpl>(
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gen_, at::cuda::detail::getDefaultCUDAGenerator());
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set_params_fprop(launch_params.params,
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batch_size,
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max_seqlen_q,
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max_seqlen_k,
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num_heads,
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head_size,
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q, k, v, out,
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cu_seqlens_q.data_ptr(),
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cu_seqlens_k.data_ptr(),
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loop ? o_tmp.data_ptr() : nullptr,
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return_softmax ? s.data_ptr() : nullptr,
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softmax_lse.data_ptr(),
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p_dropout,
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softmax_scale,
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is_causal);
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run_fmha_fp16_sm80(launch_params, /*configure=*/ true);
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// number of times random will be generated per thread, to offset philox counter in thc random
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// state
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int64_t counter_offset = launch_params.elts_per_thread;
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at::PhiloxCudaState rng_engine_inputs;
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if( is_dropout ) {
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// See Note [Acquire lock when using random generators]
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std::lock_guard<std::mutex> lock(gen->mutex_);
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launch_params.params.philox_args = gen->philox_cuda_state(counter_offset);
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}
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run_fmha_fp16_sm80(launch_params, /*configure=*/false);
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std::vector<at::Tensor> result = {softmax_lse};
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if (return_softmax) {result.push_back(s);}
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return result;
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}
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std::vector<at::Tensor>
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mha_bwd(const at::Tensor &dout, // total_q x num_heads, x head_size
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const at::Tensor &q, // total_q x num_heads x head_size, total_q := \sum_{i=0}^{b} s_i
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const at::Tensor &k, // total_k x num_heads x head_size, total_k := \sum_{i=0}^{b} s_i
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const at::Tensor &v, // total_k x num_heads x head_size, total_k := \sum_{i=0}^{b} s_i
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const at::Tensor &out, // total_q x num_heads x head_size
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const at::Tensor &softmax_lse_, // b x h x s softmax logsumexp
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at::Tensor &dq, // total_q x num_heads x head_size, total_q := \sum_{i=0}^{b} s_i
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at::Tensor &dk, // total_k x num_heads x head_size, total_k := \sum_{i=0}^{b} s_i
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at::Tensor &dv, // total_k x num_heads x head_size, total_k := \sum_{i=0}^{b} s_i
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const at::Tensor &cu_seqlens_q, // b+1
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const at::Tensor &cu_seqlens_k, // b+1
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const int max_seqlen_q_,
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const int max_seqlen_k_, // max sequence length to choose the kernel
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const float p_dropout, // probability to drop
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const float softmax_scale,
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const bool zero_tensors,
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const bool is_causal,
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c10::optional<at::Generator> gen_
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) {
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auto dprops = at::cuda::getCurrentDeviceProperties();
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bool is_sm75 = dprops->major == 7 && dprops->minor == 5;
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bool is_sm80 = dprops->major == 8 && dprops->minor == 0;
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bool is_sm8x = dprops->major == 8 && dprops->minor >= 0;
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TORCH_CHECK(is_sm8x || is_sm75);
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auto launch = &run_fmha_dgrad_fp16_sm80;
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bool is_dropout = p_dropout > 0.0;
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auto stream = at::cuda::getCurrentCUDAStream().stream();
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auto q_dtype = q.dtype();
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TORCH_CHECK(q_dtype == torch::kFloat16 || (is_sm8x && q_dtype == torch::kBFloat16));
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TORCH_CHECK(k.dtype() == q_dtype);
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TORCH_CHECK(v.dtype() == q_dtype);
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TORCH_CHECK(out.dtype() == q_dtype);
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TORCH_CHECK(dout.dtype() == q_dtype);
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TORCH_CHECK(dq.dtype() == q_dtype);
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TORCH_CHECK(dk.dtype() == q_dtype);
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TORCH_CHECK(dv.dtype() == q_dtype);
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TORCH_CHECK(cu_seqlens_q.dtype() == torch::kInt32);
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TORCH_CHECK(cu_seqlens_k.dtype() == torch::kInt32);
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TORCH_CHECK(q.is_cuda());
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TORCH_CHECK(k.is_cuda());
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TORCH_CHECK(v.is_cuda());
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TORCH_CHECK(out.is_cuda());
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TORCH_CHECK(dout.is_cuda());
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TORCH_CHECK(softmax_lse_.is_cuda());
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TORCH_CHECK(cu_seqlens_q.is_cuda());
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TORCH_CHECK(cu_seqlens_k.is_cuda());
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TORCH_CHECK(q.stride(-1) == 1);
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TORCH_CHECK(k.stride(-1) == 1);
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TORCH_CHECK(v.stride(-1) == 1);
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TORCH_CHECK(out.is_contiguous());
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TORCH_CHECK(dout.is_contiguous());
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TORCH_CHECK(dq.stride(-1) == 1);
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TORCH_CHECK(dk.stride(-1) == 1);
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TORCH_CHECK(dv.stride(-1) == 1);
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TORCH_CHECK(cu_seqlens_q.is_contiguous());
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TORCH_CHECK(cu_seqlens_k.is_contiguous());
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const auto sizes = q.sizes();
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const int batch_size = cu_seqlens_q.numel() - 1;
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const int total_q = sizes[TOTAL_DIM];
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const int num_heads = sizes[H_DIM];
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const int head_size = sizes[D_DIM];
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const int total_k = k.size(TOTAL_DIM);
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TORCH_CHECK(batch_size > 0);
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TORCH_CHECK(head_size == 16 || head_size == 32 || head_size == 64 || head_size == 128);
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if (head_size == 128) { // TODO: eventually we should support SM86 and SM70 with d=128 as well
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TORCH_CHECK(is_sm80);
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}
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CHECK_SHAPE(q, total_q, num_heads, head_size);
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CHECK_SHAPE(k, total_k, num_heads, head_size);
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CHECK_SHAPE(v, total_k, num_heads, head_size);
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CHECK_SHAPE(out, total_q, num_heads, head_size);
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CHECK_SHAPE(dout, total_q, num_heads, head_size);
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CHECK_SHAPE(dq, total_q, num_heads, head_size);
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CHECK_SHAPE(dk, total_k, num_heads, head_size);
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CHECK_SHAPE(dv, total_k, num_heads, head_size);
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CHECK_SHAPE(cu_seqlens_q, batch_size + 1);
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CHECK_SHAPE(cu_seqlens_k, batch_size + 1);
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int blocksize_c = (head_size == 128 || (is_sm75 && head_size == 64)) ? 128 : 256;
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int max_seqlen_k = ((max_seqlen_k_ + blocksize_c - 1) / blocksize_c) * blocksize_c;
|
|
if( max_seqlen_k_ <= 128 ) {
|
|
max_seqlen_k = 128;
|
|
} else if( max_seqlen_k_ <= 256 ) {
|
|
max_seqlen_k = 256;
|
|
}
|
|
int max_seqlen_q = ((max_seqlen_q_ + 16 - 1) / 16) * 16;
|
|
bool loop = max_seqlen_k > blocksize_c;
|
|
|
|
// Otherwise the kernel will be launched from cuda:0 device
|
|
at::cuda::CUDAGuard device_guard{q.get_device()};
|
|
|
|
// It's possible the softmax_lse_ from the fwd has a different length since blocksize_c could be different.
|
|
auto softmax_lse = softmax_lse_.index({torch::indexing::Slice(), torch::indexing::Slice(), torch::indexing::Slice(torch::indexing::None, max_seqlen_q)}).contiguous();
|
|
|
|
auto opts = q.options();
|
|
auto softmax_d = torch::empty({batch_size, num_heads, max_seqlen_q}, opts.dtype(at::kFloat));
|
|
at::Tensor dq_tmp;
|
|
if (loop) { dq_tmp = torch::empty({total_q, num_heads, head_size}, opts.dtype(at::kFloat)); }
|
|
|
|
if( zero_tensors ) {
|
|
dq.zero_();
|
|
dk.zero_();
|
|
dv.zero_();
|
|
softmax_d.zero_();
|
|
}
|
|
|
|
FMHA_dgrad_params params;
|
|
|
|
set_params_dgrad(params,
|
|
batch_size,
|
|
max_seqlen_q,
|
|
max_seqlen_k,
|
|
num_heads,
|
|
head_size,
|
|
q, k, v, out,
|
|
dq, dk, dv,
|
|
cu_seqlens_q.data_ptr(),
|
|
cu_seqlens_k.data_ptr(),
|
|
loop ? dq_tmp.data_ptr() : nullptr,
|
|
dout.data_ptr(),
|
|
softmax_lse.data_ptr(),
|
|
softmax_d.data_ptr(),
|
|
p_dropout,
|
|
softmax_scale,
|
|
is_causal);
|
|
|
|
auto gen = at::get_generator_or_default<at::CUDAGeneratorImpl>(
|
|
gen_, at::cuda::detail::getDefaultCUDAGenerator());
|
|
|
|
// We're gonna reset the rng state in Python after this kernel, so the counter offset
|
|
// here doesn't matter at all. We just choose an arbitrary number.
|
|
int64_t counter_offset = 4;
|
|
|
|
if( is_dropout ) {
|
|
// See Note [Acquire lock when using random generators]
|
|
std::lock_guard<std::mutex> lock(gen->mutex_);
|
|
params.philox_args = gen->philox_cuda_state(counter_offset);
|
|
}
|
|
|
|
launch(params, stream);
|
|
return { dq, dk, dv, softmax_d };
|
|
}
|
|
|
|
std::vector<at::Tensor>
|
|
mha_fwd_block(const at::Tensor &q, // total_q x num_heads x head_size, total := \sum_{i=0}^{b} s_i
|
|
const at::Tensor &k, // total_k x num_heads x head_size, total_k := \sum_{i=0}^{b} s_i
|
|
const at::Tensor &v, // total_k x num_heads x head_size, total_k := \sum_{i=0}^{b} s_i
|
|
const at::Tensor &cu_seqlens_q, // b+1
|
|
const at::Tensor &cu_seqlens_k, // b+1
|
|
const at::Tensor &blockmask, // (seqlen / 256, seqlen / 16)
|
|
const int max_seqlen_q_,
|
|
const int max_seqlen_k_,
|
|
const float p_dropout,
|
|
const float softmax_scale,
|
|
const bool is_causal,
|
|
const bool return_softmax,
|
|
c10::optional<at::Generator> gen_) {
|
|
|
|
auto dprops = at::cuda::getCurrentDeviceProperties();
|
|
TORCH_CHECK(dprops->major == 8 && dprops->minor >= 0);
|
|
auto stream = at::cuda::getCurrentCUDAStream().stream();
|
|
bool is_dropout = p_dropout > 0.0;
|
|
Launch_params<FMHA_fprop_params> launch_params(dprops, stream, is_dropout, return_softmax);
|
|
|
|
TORCH_CHECK(q.dtype() == torch::kFloat16);
|
|
TORCH_CHECK(k.dtype() == torch::kFloat16);
|
|
TORCH_CHECK(v.dtype() == torch::kFloat16);
|
|
TORCH_CHECK(cu_seqlens_q.dtype() == torch::kInt32);
|
|
TORCH_CHECK(cu_seqlens_k.dtype() == torch::kInt32);
|
|
TORCH_CHECK(blockmask.dtype() == torch::kInt32);
|
|
|
|
TORCH_CHECK(q.is_cuda());
|
|
TORCH_CHECK(k.is_cuda());
|
|
TORCH_CHECK(v.is_cuda());
|
|
TORCH_CHECK(cu_seqlens_q.is_cuda());
|
|
TORCH_CHECK(cu_seqlens_k.is_cuda());
|
|
TORCH_CHECK(blockmask.is_cuda())
|
|
|
|
TORCH_CHECK(q.stride(-1) == 1);
|
|
TORCH_CHECK(k.stride(-1) == 1);
|
|
TORCH_CHECK(v.stride(-1) == 1);
|
|
TORCH_CHECK(cu_seqlens_k.is_contiguous());
|
|
TORCH_CHECK(cu_seqlens_k.is_contiguous());
|
|
TORCH_CHECK(blockmask.is_contiguous())
|
|
|
|
const auto sizes = q.sizes();
|
|
|
|
const int batch_size = cu_seqlens_q.numel() - 1;
|
|
const int total_q = sizes[TOTAL_DIM];
|
|
const int num_heads = sizes[H_DIM];
|
|
const int head_size = sizes[D_DIM];
|
|
const int total_k = k.size(TOTAL_DIM);
|
|
TORCH_CHECK(batch_size > 0);
|
|
TORCH_CHECK(head_size == 16 || head_size == 32 || head_size == 64 || head_size == 128);
|
|
|
|
CHECK_SHAPE(q, total_q, num_heads, head_size);
|
|
CHECK_SHAPE(k, total_k, num_heads, head_size);
|
|
CHECK_SHAPE(v, total_k, num_heads, head_size);
|
|
CHECK_SHAPE(cu_seqlens_q, batch_size + 1);
|
|
CHECK_SHAPE(cu_seqlens_k, batch_size + 1);
|
|
|
|
int max_seqlen_k = ((max_seqlen_k_ + 256 - 1) / 256) * 256;
|
|
if( max_seqlen_k <= 256 ) {
|
|
max_seqlen_k = 256;
|
|
}
|
|
int max_seqlen_q = ((max_seqlen_q_ + 16 - 1) / 16) * 16;
|
|
bool loop = max_seqlen_k > 256;
|
|
CHECK_SHAPE(blockmask, max_seqlen_k / 256, max_seqlen_q / 16);
|
|
|
|
auto opts = q.options();
|
|
|
|
auto o = torch::zeros({ total_q, num_heads, head_size }, opts);
|
|
|
|
at::Tensor o_tmp;
|
|
if (loop) {
|
|
// o_tmp = torch::zeros({total, num_heads, head_size}, opts.dtype(at::kFloat));
|
|
o_tmp = torch::empty({total_q, num_heads, head_size}, opts.dtype(at::kFloat));
|
|
}
|
|
|
|
// auto softmax_lse = torch::full({batch_size, num_heads, max_seqlen_k}, -std::numeric_limits<float>::infinity(), opts.dtype(at::kFloat));
|
|
auto softmax_lse = torch::empty({batch_size, num_heads, max_seqlen_q}, opts.dtype(at::kFloat));
|
|
|
|
at::Tensor s;
|
|
if (return_softmax) {
|
|
s = torch::zeros({ batch_size, num_heads, max_seqlen_q, max_seqlen_k }, opts);
|
|
}
|
|
|
|
auto gen = at::get_generator_or_default<at::CUDAGeneratorImpl>(
|
|
gen_, at::cuda::detail::getDefaultCUDAGenerator());
|
|
|
|
set_params_fprop(launch_params.params,
|
|
batch_size,
|
|
max_seqlen_q,
|
|
max_seqlen_k,
|
|
num_heads,
|
|
head_size,
|
|
q, k, v, o,
|
|
cu_seqlens_q.data_ptr(),
|
|
cu_seqlens_k.data_ptr(),
|
|
loop ? o_tmp.data_ptr() : nullptr,
|
|
return_softmax ? s.data_ptr() : nullptr,
|
|
softmax_lse.data_ptr(),
|
|
p_dropout,
|
|
softmax_scale,
|
|
is_causal);
|
|
launch_params.params.blockmask = static_cast<int *>(blockmask.data_ptr());
|
|
|
|
run_fmha_block_fp16_sm80(launch_params, /*configure=*/ true);
|
|
// number of times random will be generated per thread, to offset philox counter in thc random
|
|
// state
|
|
int64_t counter_offset = launch_params.elts_per_thread;
|
|
at::PhiloxCudaState rng_engine_inputs;
|
|
|
|
if( is_dropout ) {
|
|
// See Note [Acquire lock when using random generators]
|
|
std::lock_guard<std::mutex> lock(gen->mutex_);
|
|
launch_params.params.philox_args = gen->philox_cuda_state(counter_offset);
|
|
}
|
|
|
|
run_fmha_block_fp16_sm80(launch_params, /*configure=*/false);
|
|
|
|
std::vector<at::Tensor> result = {o, softmax_lse};
|
|
if (return_softmax) {result.push_back(s);}
|
|
return result;
|
|
}
|
|
|
|
std::vector<at::Tensor>
|
|
mha_bwd_block(const at::Tensor &dout, // total x num_heads, x head_size
|
|
const at::Tensor &q, // total_q x num_heads x head_size, total_q := \sum_{i=0}^{b} s_i
|
|
const at::Tensor &k, // total_k x num_heads x head_size, total_k := \sum_{i=0}^{b} s_i
|
|
const at::Tensor &v, // total_k x num_heads x head_size, total_k := \sum_{i=0}^{b} s_i
|
|
const at::Tensor &out, // total_q x num_heads x head_size
|
|
const at::Tensor &softmax_lse_, // b x h x s softmax logsumexp
|
|
at::Tensor &dq, // total_q x num_heads x head_size, total_q := \sum_{i=0}^{b} s_i
|
|
at::Tensor &dk, // total_k x num_heads x head_size, total_k := \sum_{i=0}^{b} s_i
|
|
at::Tensor &dv, // total_k x num_heads x head_size, total_k := \sum_{i=0}^{b} s_i
|
|
const at::Tensor &cu_seqlens_q, // b+1
|
|
const at::Tensor &cu_seqlens_k, // b+1
|
|
const at::Tensor &blockmask, // (seqlen / 256, seqlen / 16)
|
|
const int max_seqlen_q_,
|
|
const int max_seqlen_k_, // max sequence length to choose the kernel
|
|
const float p_dropout, // probability to drop
|
|
const float softmax_scale,
|
|
const bool is_causal,
|
|
c10::optional<at::Generator> gen_
|
|
) {
|
|
auto dprops = at::cuda::getCurrentDeviceProperties();
|
|
bool is_sm80 = dprops->major == 8 && dprops->minor == 0;
|
|
bool is_sm8x = dprops->major == 8 && dprops->minor >= 0;
|
|
TORCH_CHECK(dprops->major == 8 && dprops->minor >= 0);
|
|
auto launch = &run_fmha_block_dgrad_fp16_sm80;
|
|
|
|
bool is_dropout = p_dropout > 0.0;
|
|
auto stream = at::cuda::getCurrentCUDAStream().stream();
|
|
|
|
TORCH_CHECK(q.dtype() == torch::kFloat16);
|
|
TORCH_CHECK(k.dtype() == torch::kFloat16);
|
|
TORCH_CHECK(v.dtype() == torch::kFloat16);
|
|
TORCH_CHECK(out.dtype() == torch::kFloat16);
|
|
TORCH_CHECK(dout.dtype() == torch::kFloat16);
|
|
TORCH_CHECK(dq.dtype() == torch::kFloat16);
|
|
TORCH_CHECK(dk.dtype() == torch::kFloat16);
|
|
TORCH_CHECK(dv.dtype() == torch::kFloat16);
|
|
TORCH_CHECK(cu_seqlens_q.dtype() == torch::kInt32);
|
|
TORCH_CHECK(cu_seqlens_k.dtype() == torch::kInt32);
|
|
TORCH_CHECK(blockmask.dtype() == torch::kInt32);
|
|
|
|
TORCH_CHECK(q.is_cuda());
|
|
TORCH_CHECK(k.is_cuda());
|
|
TORCH_CHECK(v.is_cuda());
|
|
TORCH_CHECK(out.is_cuda());
|
|
TORCH_CHECK(dout.is_cuda());
|
|
TORCH_CHECK(softmax_lse_.is_cuda());
|
|
TORCH_CHECK(cu_seqlens_q.is_cuda());
|
|
TORCH_CHECK(cu_seqlens_k.is_cuda());
|
|
TORCH_CHECK(blockmask.is_cuda());
|
|
|
|
TORCH_CHECK(q.stride(-1) == 1);
|
|
TORCH_CHECK(k.stride(-1) == 1);
|
|
TORCH_CHECK(v.stride(-1) == 1);
|
|
TORCH_CHECK(out.is_contiguous());
|
|
TORCH_CHECK(dout.is_contiguous());
|
|
TORCH_CHECK(dq.stride(-1) == 1);
|
|
TORCH_CHECK(dk.stride(-1) == 1);
|
|
TORCH_CHECK(dv.stride(-1) == 1);
|
|
TORCH_CHECK(cu_seqlens_q.is_contiguous());
|
|
TORCH_CHECK(cu_seqlens_k.is_contiguous());
|
|
TORCH_CHECK(blockmask.is_contiguous());
|
|
|
|
const auto sizes = q.sizes();
|
|
|
|
const int batch_size = cu_seqlens_q.numel() - 1;
|
|
const int total_q = sizes[TOTAL_DIM];
|
|
const int num_heads = sizes[H_DIM];
|
|
const int head_size = sizes[D_DIM];
|
|
const int total_k = k.size(TOTAL_DIM);
|
|
TORCH_CHECK(batch_size > 0);
|
|
TORCH_CHECK(head_size == 16 || head_size == 32 || head_size == 64 || head_size == 128);
|
|
if (head_size == 128) { // TODO: eventually we should support SM86 and SM70 with d=128 as well
|
|
TORCH_CHECK(is_sm80);
|
|
}
|
|
|
|
CHECK_SHAPE(q, total_q, num_heads, head_size);
|
|
CHECK_SHAPE(k, total_k, num_heads, head_size);
|
|
CHECK_SHAPE(v, total_k, num_heads, head_size);
|
|
CHECK_SHAPE(out, total_q, num_heads, head_size);
|
|
CHECK_SHAPE(dout, total_q, num_heads, head_size);
|
|
CHECK_SHAPE(dq, total_q, num_heads, head_size);
|
|
CHECK_SHAPE(dk, total_k, num_heads, head_size);
|
|
CHECK_SHAPE(dv, total_k, num_heads, head_size);
|
|
CHECK_SHAPE(cu_seqlens_q, batch_size + 1);
|
|
CHECK_SHAPE(cu_seqlens_k, batch_size + 1);
|
|
|
|
int max_seqlen_k = ((max_seqlen_k_ + 256 - 1) / 256) * 256;
|
|
if( max_seqlen_k <= 256 ) {
|
|
max_seqlen_k = 256;
|
|
}
|
|
int max_seqlen_q = ((max_seqlen_q_ + 16 - 1) / 16) * 16;
|
|
bool loop = max_seqlen_k > 256;
|
|
CHECK_SHAPE(blockmask, max_seqlen_k / 256, max_seqlen_q / 16);
|
|
|
|
// It's possible the softmax_lse_ from the fwd has a different length since blocksize_c could be different.
|
|
auto softmax_lse = softmax_lse_.index({torch::indexing::Slice(), torch::indexing::Slice(), torch::indexing::Slice(torch::indexing::None, max_seqlen_q)}).contiguous();
|
|
|
|
auto opts = q.options();
|
|
auto softmax_d = torch::empty({batch_size, num_heads, max_seqlen_q}, opts.dtype(at::kFloat));
|
|
at::Tensor dq_tmp;
|
|
if (loop) {
|
|
// dq_tmp = torch::zeros({total, num_heads, head_size}, opts.dtype(at::kFloat));
|
|
dq_tmp = torch::empty({total_q, num_heads, head_size}, opts.dtype(at::kFloat));
|
|
}
|
|
|
|
FMHA_dgrad_params params;
|
|
|
|
set_params_dgrad(params,
|
|
batch_size,
|
|
max_seqlen_q,
|
|
max_seqlen_k,
|
|
num_heads,
|
|
head_size,
|
|
q, k, v, out,
|
|
dq, dk, dv,
|
|
cu_seqlens_q.data_ptr(),
|
|
cu_seqlens_k.data_ptr(),
|
|
loop ? dq_tmp.data_ptr() : nullptr,
|
|
dout.data_ptr(),
|
|
softmax_lse.data_ptr(),
|
|
softmax_d.data_ptr(),
|
|
p_dropout,
|
|
softmax_scale,
|
|
is_causal);
|
|
params.blockmask = static_cast<int *>(blockmask.data_ptr());
|
|
|
|
auto gen = at::get_generator_or_default<at::CUDAGeneratorImpl>(
|
|
gen_, at::cuda::detail::getDefaultCUDAGenerator());
|
|
|
|
// We're gonna reset the rng state in Python after this kernel, so the counter offset
|
|
// here doesn't matter at all. We just choose an arbitrary number;
|
|
int64_t counter_offset = 4;
|
|
|
|
if( is_dropout ) {
|
|
// See Note [Acquire lock when using random generators]
|
|
std::lock_guard<std::mutex> lock(gen->mutex_);
|
|
params.philox_args = gen->philox_cuda_state(counter_offset);
|
|
}
|
|
|
|
launch(params, stream);
|
|
return { dq, dk, dv, softmax_d };
|
|
}
|
|
|
|
|
|
PYBIND11_MODULE(TORCH_EXTENSION_NAME, m) {
|
|
m.doc() = "Fused Multi-head Self-attention";
|
|
m.def("fwd", &mha_fwd, "Forward pass");
|
|
m.def("bwd", &mha_bwd, "Backward pass");
|
|
m.def("fwd_block", &mha_fwd_block, "Forward pass (blocksparse)");
|
|
m.def("bwd_block", &mha_bwd_block, "Backward pass (blocksparse)");
|
|
}
|