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#include "flash_common.hpp" |
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#include "fmha_bwd.hpp" |
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#include "mask.hpp" |
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fmha_bwd_traits get_ck_fmha_bwd_traits(const mask_info &mask, |
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std::string dtype, |
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int head_size, |
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bool has_dropout, |
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bool enable_alibi, |
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bool deterministic) |
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{ |
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return fmha_bwd_traits{head_size, |
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head_size, |
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dtype, |
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false, |
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mask.type, |
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enable_alibi ? bias_enum::alibi : bias_enum::no_bias, |
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false, |
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has_dropout, |
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false, |
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deterministic}; |
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} |
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fmha_bwd_args get_ck_fmha_bwd_args(const mask_info &mask, |
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const int b, |
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const int seqlen_q, |
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const int seqlen_k, |
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const int h, |
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const int h_k, |
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const int hdim, |
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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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std::optional<at::Tensor> &alibi_slopes_, |
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const at::Tensor out, |
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const at::Tensor softmax_lse, |
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const at::Tensor dout, |
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at::Tensor dq_acc, |
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at::Tensor d, |
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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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float softmax_scale, |
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float p_dropout, |
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std::pair<uint64_t*, uint64_t*> drop_seed_offset) |
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{ |
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ck_tile::index_t batch_stride_q = q.stride(0); |
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ck_tile::index_t stride_q = q.stride(1); |
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ck_tile::index_t nhead_stride_q = q.stride(2); |
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ck_tile::index_t batch_stride_k = k.stride(0); |
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ck_tile::index_t stride_k = k.stride(1); |
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ck_tile::index_t nhead_stride_k = k.stride(2); |
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ck_tile::index_t batch_stride_v = v.stride(0); |
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ck_tile::index_t stride_v = v.stride(1); |
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ck_tile::index_t nhead_stride_v = v.stride(2); |
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ck_tile::index_t batch_stride_o = out.stride(0); |
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ck_tile::index_t stride_o = out.stride(1); |
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ck_tile::index_t nhead_stride_o = out.stride(2); |
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ck_tile::index_t batch_stride_lse = softmax_lse.stride(0); |
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ck_tile::index_t nhead_stride_lse = softmax_lse.stride(1); |
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ck_tile::index_t batch_stride_do = dout.stride(0); |
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ck_tile::index_t stride_do = dout.stride(1); |
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ck_tile::index_t nhead_stride_do = dout.stride(2); |
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ck_tile::index_t batch_stride_dq = dq.stride(0); |
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ck_tile::index_t stride_dq = dq.stride(1); |
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ck_tile::index_t nhead_stride_dq = dq.stride(2); |
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ck_tile::index_t batch_stride_dk = dk.stride(0); |
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ck_tile::index_t stride_dk = dk.stride(1); |
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ck_tile::index_t nhead_stride_dk = dk.stride(2); |
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ck_tile::index_t batch_stride_dv = dv.stride(0); |
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ck_tile::index_t stride_dv = dv.stride(1); |
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ck_tile::index_t nhead_stride_dv = dv.stride(2); |
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ck_tile::index_t split_stride_dq_acc = dq_acc.stride(0); |
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ck_tile::index_t batch_stride_dq_acc = dq_acc.stride(1); |
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ck_tile::index_t stride_dq_acc = dq_acc.stride(2); |
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ck_tile::index_t nhead_stride_dq_acc = dq_acc.stride(3); |
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float p_undrop = 1.0 - p_dropout; |
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void *alibi_slopes_ptr = nullptr; |
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ck_tile::index_t stride_alibi_slopes = 0; |
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if (alibi_slopes_.has_value()) { |
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auto alibi_slopes = alibi_slopes_.value(); |
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CHECK_DEVICE(alibi_slopes); |
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TORCH_CHECK(alibi_slopes.stride(-1) == 1, "ALiBi slopes tensor must have contiguous last dimension"); |
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TORCH_CHECK(alibi_slopes.sizes() == torch::IntArrayRef({h}) || alibi_slopes.sizes() == torch::IntArrayRef({b, h})); |
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alibi_slopes_ptr = alibi_slopes.data_ptr(); |
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stride_alibi_slopes = alibi_slopes.dim() == 2 ? alibi_slopes.stride(0) : 0; |
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} |
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return fmha_bwd_args{q.data_ptr(), |
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k.data_ptr(), |
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v.data_ptr(), |
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alibi_slopes_ptr, |
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out.data_ptr(), |
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softmax_lse.data_ptr(), |
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dout.data_ptr(), |
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d.data_ptr(), |
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nullptr, |
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dq.data_ptr(), |
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dk.data_ptr(), |
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dv.data_ptr(), |
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nullptr, |
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dq_acc.data_ptr(), |
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nullptr, |
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nullptr, |
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nullptr, |
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seqlen_q, |
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seqlen_k, |
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b, |
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seqlen_q, |
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seqlen_k, |
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hdim, |
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hdim, |
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h, |
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h_k, |
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softmax_scale, |
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stride_q, |
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stride_k, |
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stride_v, |
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stride_alibi_slopes, |
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stride_o, |
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0, |
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stride_do, |
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stride_dq_acc, |
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stride_dq, |
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stride_dk, |
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stride_dv, |
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0, |
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nhead_stride_q, |
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nhead_stride_k, |
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nhead_stride_v, |
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0, |
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nhead_stride_o, |
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0, |
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nhead_stride_do, |
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nhead_stride_lse, |
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nhead_stride_dq_acc, |
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nhead_stride_dq, |
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nhead_stride_dk, |
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nhead_stride_dv, |
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0, |
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batch_stride_q, |
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batch_stride_k, |
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batch_stride_v, |
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0 , |
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batch_stride_o, |
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0, |
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batch_stride_do, |
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batch_stride_lse, |
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batch_stride_dq_acc, |
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batch_stride_dq, |
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batch_stride_dk, |
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batch_stride_dv, |
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0 , |
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split_stride_dq_acc, |
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mask.left, |
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mask.right, |
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static_cast<ck_tile::index_t>(mask.type), |
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p_dropout, |
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p_undrop, |
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drop_seed_offset}; |
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} |
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std::vector<at::Tensor> |
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mha_bwd(const at::Tensor &dout, |
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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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const at::Tensor &softmax_lse, |
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std::optional<at::Tensor> &dq_, |
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std::optional<at::Tensor> &dk_, |
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std::optional<at::Tensor> &dv_, |
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std::optional<at::Tensor> &alibi_slopes_, |
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const float p_dropout, |
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const float softmax_scale, |
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const bool is_causal, |
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int window_size_left, |
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int window_size_right, |
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const float , |
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const bool deterministic, |
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std::optional<at::Generator> gen_, |
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std::optional<at::Tensor> &rng_state_) |
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{ |
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#ifdef FLASHATTENTION_DISABLE_BACKWARD |
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TORCH_CHECK(false, "This flash attention build does not support backward."); |
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#endif |
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if (is_causal) { window_size_right = 0; } |
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bool is_dropout = p_dropout > 0.0; |
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auto stream = at::cuda::getCurrentHIPStream().stream(); |
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auto q_dtype = q.dtype(); |
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TORCH_CHECK(q_dtype == torch::kFloat16 || q_dtype == torch::kBFloat16, |
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"FlashAttention only support fp16 and bf16 data type"); |
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TORCH_CHECK(k.dtype() == q_dtype, "query and key must have the same dtype"); |
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TORCH_CHECK(v.dtype() == q_dtype, "query and value must have the same dtype"); |
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TORCH_CHECK(out.dtype() == q_dtype, "query and out must have the same dtype"); |
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TORCH_CHECK(dout.dtype() == q_dtype, "query and dout must have the same dtype"); |
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std::string q_dtype_str = q_dtype == torch::kFloat16 ? "fp16" : "bf16"; |
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CHECK_DEVICE(q); CHECK_DEVICE(k); CHECK_DEVICE(v); |
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CHECK_DEVICE(out); CHECK_DEVICE(dout); CHECK_DEVICE(softmax_lse); |
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TORCH_CHECK(q.stride(-1) == 1, "Input tensor must have contiguous last dimension"); |
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TORCH_CHECK(k.stride(-1) == 1, "Input tensor must have contiguous last dimension"); |
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TORCH_CHECK(v.stride(-1) == 1, "Input tensor must have contiguous last dimension"); |
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TORCH_CHECK(out.stride(-1) == 1, "out tensor must have contiguous last dimension"); |
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TORCH_CHECK(dout.stride(-1) == 1, "dout tensor must have contiguous last dimension"); |
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const auto sizes = q.sizes(); |
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const int batch_size = sizes[0]; |
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const int seqlen_q = sizes[1]; |
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const int num_heads = sizes[2]; |
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const int head_size = sizes[3]; |
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const int seqlen_k = k.size(1); |
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const int num_heads_k = k.size(2); |
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TORCH_CHECK(batch_size > 0, "batch size must be positive"); |
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TORCH_CHECK(head_size % 8 == 0, "head_size should be a multiple of 8"); |
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TORCH_CHECK(head_size <= 256, "CK FlashAttention backward only supports head dimension at most 256"); |
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TORCH_CHECK(num_heads % num_heads_k == 0, "Number of heads in key/value must divide number of heads in query"); |
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if (window_size_left >= seqlen_k) { window_size_left = -1; } |
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if (window_size_right >= seqlen_k) { window_size_right = -1; } |
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mask_info mask; |
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if (is_causal) { |
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std::string mask_identify = "b:" + std::to_string(window_size_left) + "," + "0"; |
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mask = mask_info::decode(mask_identify, seqlen_q, seqlen_k); |
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} |
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else if (window_size_left == -1 && window_size_right == -1) { |
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mask = mask_info::decode("0", seqlen_q, seqlen_k); |
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} |
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else { |
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std::string mask_identify = "b:" + std::to_string(window_size_left) + "," + std::to_string(window_size_right); |
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mask = mask_info::decode(mask_identify, seqlen_q, seqlen_k); |
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} |
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CHECK_SHAPE(q, batch_size, seqlen_q, num_heads, head_size); |
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CHECK_SHAPE(k, batch_size, seqlen_k, num_heads_k, head_size); |
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CHECK_SHAPE(v, batch_size, seqlen_k, num_heads_k, head_size); |
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CHECK_SHAPE(out, batch_size, seqlen_q, num_heads, head_size); |
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CHECK_SHAPE(dout, batch_size, seqlen_q, num_heads, head_size); |
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at::Tensor dq, dk, dv; |
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if (dq_.has_value()) { |
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dq = dq_.value(); |
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TORCH_CHECK(dq.dtype() == q_dtype, "dq must have the same dtype as q"); |
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CHECK_DEVICE(dq); |
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TORCH_CHECK(dq.stride(-1) == 1, "dq must have contiguous last dimension"); |
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CHECK_SHAPE(dq, batch_size, seqlen_q, num_heads, head_size); |
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} else { |
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dq = torch::empty_like(q); |
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} |
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if (dk_.has_value()) { |
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dk = dk_.value(); |
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TORCH_CHECK(dk.dtype() == q_dtype, "dk must have the same dtype as q"); |
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CHECK_DEVICE(dk); |
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TORCH_CHECK(dk.stride(-1) == 1, "dk must have contiguous last dimension"); |
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CHECK_SHAPE(dk, batch_size, seqlen_k, num_heads_k, head_size); |
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} else { |
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dk = torch::empty_like(k); |
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} |
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if (dv_.has_value()) { |
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dv = dv_.value(); |
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TORCH_CHECK(dv.dtype() == q_dtype, "dv must have the same dtype as q"); |
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CHECK_DEVICE(dv); |
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TORCH_CHECK(dv.stride(-1) == 1, "dv must have contiguous last dimension"); |
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CHECK_SHAPE(dv, batch_size, seqlen_k, num_heads_k, head_size); |
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} else { |
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dv = torch::empty_like(v); |
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} |
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at::cuda::CUDAGuard device_guard{q.device()}; |
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auto opts = q.options(); |
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auto softmax_d = torch::empty({batch_size, num_heads, seqlen_q}, opts.dtype(at::kFloat)); |
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at::Tensor dq_accum; |
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if (!deterministic) { |
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dq_accum = torch::zeros({1, batch_size, seqlen_q, num_heads, head_size}, opts.dtype(at::kFloat)); |
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} else { |
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const ck_tile::index_t kN0 = head_size <= 128 ? 128 : 64; |
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const ck_tile::index_t nsplits = ck_tile::integer_divide_ceil(seqlen_k, kN0); |
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dq_accum = torch::zeros({nsplits, batch_size, seqlen_q, num_heads, head_size}, opts.dtype(at::kFloat)); |
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} |
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at::Tensor dk_expanded, dv_expanded; |
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if (num_heads_k != num_heads) { |
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dk_expanded = torch::empty({batch_size, seqlen_k, num_heads, head_size}, opts); |
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dv_expanded = torch::empty({batch_size, seqlen_k, num_heads, head_size}, opts); |
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} else { |
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dk_expanded = dk; |
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dv_expanded = dv; |
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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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int64_t counter_offset = batch_size * num_heads * ck_tile::get_warp_size(); |
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at::Tensor rng_state; |
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if (rng_state_.has_value()) { |
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rng_state = rng_state_.value(); |
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} else if(is_dropout) { |
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rng_state = torch::empty({2}, opts.dtype(torch::kInt64)); |
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std::lock_guard<std::mutex> lock(gen->mutex_); |
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auto philox_args = gen->philox_cuda_state(counter_offset); |
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hipLaunchKernelGGL( |
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flash::ParsePhiloxCudaState, dim3(1), dim3(64), 0, 0, |
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philox_args, reinterpret_cast<uint64_t*>(rng_state.data_ptr())); |
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} |
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if (seqlen_q > 0) { |
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auto rng_state_ptr = reinterpret_cast<uint64_t*>(rng_state.data_ptr()); |
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auto drop_seed_offset = std::make_pair(rng_state_ptr, rng_state_ptr + 1); |
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ck_tile::stream_config stream_config{stream}; |
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auto traits = |
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get_ck_fmha_bwd_traits(mask, q_dtype_str, head_size, is_dropout, alibi_slopes_.has_value(), deterministic); |
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auto args = |
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get_ck_fmha_bwd_args( |
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mask, |
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batch_size, |
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seqlen_q, |
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seqlen_k, |
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num_heads, |
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num_heads_k, |
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head_size, |
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q, |
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k, |
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v, |
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alibi_slopes_, |
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out, |
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softmax_lse, |
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dout, |
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dq_accum, |
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softmax_d, |
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dq, |
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dk_expanded, |
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dv_expanded, |
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softmax_scale, |
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p_dropout, |
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drop_seed_offset); |
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float t = fmha_bwd(traits, args, stream_config); |
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TORCH_CHECK(t >= 0, "invalid argument for fmha_bwd"); |
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} else { |
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dk_expanded.zero_(); |
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dv_expanded.zero_(); |
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softmax_d.zero_(); |
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} |
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if (num_heads_k != num_heads) { |
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at::sum_out(dk, at::reshape(dk_expanded, {batch_size, seqlen_k, num_heads_k, num_heads / num_heads_k, head_size}), {3}); |
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at::sum_out(dv, at::reshape(dv_expanded, {batch_size, seqlen_k, num_heads_k, num_heads / num_heads_k, head_size}), {3}); |
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} |
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return { dq, dk, dv, softmax_d }; |
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} |