flash_fwd_kernel.h 75.1 KB
Newer Older
Tri Dao's avatar
Tri Dao committed
1
2
3
4
5
6
7
8
9
10
11
12
13
14
15
16
/******************************************************************************
 * Copyright (c) 2023, Tri Dao.
 ******************************************************************************/

#pragma once

#include <cute/algorithm/copy.hpp>

#include <cutlass/cutlass.h>
#include <cutlass/array.h>
#include <cutlass/numeric_types.h>

#include "block_info.h"
#include "kernel_traits.h"
#include "utils.h"
#include "softmax.h"
17
#include "dropout.h"
Tri Dao's avatar
Tri Dao committed
18

19
20
#include "alibi.h"

Tri Dao's avatar
Tri Dao committed
21
22
23
24
25
26
27
28
29
30
31
32
33
34
35
namespace flash {

using namespace cute;

////////////////////////////////////////////////////////////////////////////////////////////////////

template<bool Is_first, bool Check_inf=false, typename Tensor0, typename Tensor1, typename Tensor2>
inline __device__ void softmax_rescale_o(Tensor0 &scores, Tensor1 &scores_max, Tensor1 &scores_sum,
                                         Tensor2 &acc_o, float softmax_scale_log2) {
    if (Is_first) {
        flash::template reduce_max</*zero_init=*/true>(scores, scores_max);
        flash::scale_apply_exp2(scores, scores_max, softmax_scale_log2);
        flash::reduce_sum(scores, scores_sum);
    } else {
        Tensor scores_max_prev = make_fragment_like(scores_max);
Tri Dao's avatar
Tri Dao committed
36
        cute::copy(scores_max, scores_max_prev);
Tri Dao's avatar
Tri Dao committed
37
38
39
40
41
42
43
44
45
46
47
48
49
50
51
52
53
54
55
56
57
58
59
        flash::template reduce_max</*zero_init=*/false>(scores, scores_max);
        // Reshape acc_o from (MMA=4, MMA_M, MMA_K) to (nrow=(2, MMA_M), ncol=(2, MMA_K))
        Tensor acc_o_rowcol = make_tensor(acc_o.data(), flash::convert_layout_acc_rowcol(acc_o.layout()));
        #pragma unroll
        for (int mi = 0; mi < size(scores_max); ++mi) {
            float scores_max_cur = !Check_inf
                ? scores_max(mi)
                : (scores_max(mi) == -INFINITY ? 0.0f : scores_max(mi));
            float scores_scale = exp2f((scores_max_prev(mi) - scores_max_cur) * softmax_scale_log2);
            scores_sum(mi) *= scores_scale;
            #pragma unroll
            for (int ni = 0; ni < size<1>(acc_o_rowcol); ++ni) { acc_o_rowcol(mi, ni) *= scores_scale; }
        }
        flash::scale_apply_exp2(scores, scores_max, softmax_scale_log2);
        Tensor scores_sum_cur = make_fragment_like(scores_sum);
        flash::reduce_sum(scores, scores_sum_cur);
        #pragma unroll
        for (int mi = 0; mi < size(scores_sum); ++mi) { scores_sum(mi) += scores_sum_cur(mi); }
    }
};

////////////////////////////////////////////////////////////////////////////////////////////////////

60
template<typename Kernel_traits, bool Is_dropout, bool Is_causal, bool Is_local, bool Has_alibi, bool Is_even_MN, bool Is_even_K, bool Return_softmax, typename Params>
Tri Dao's avatar
Tri Dao committed
61
62
63
64
65
66
67
68
69
70
71
72
73
74
75
76
77
78
inline __device__ void compute_attn_1rowblock(const Params &params, const int bidb, const int bidh, const int m_block) {

    using Element = typename Kernel_traits::Element;
    using ElementAccum = typename Kernel_traits::ElementAccum;
    using index_t = typename Kernel_traits::index_t;

    // Shared memory.
    extern __shared__ char smem_[];

    // The thread index.
    const int tidx = threadIdx.x;

    constexpr int kBlockM = Kernel_traits::kBlockM;
    constexpr int kBlockN = Kernel_traits::kBlockN;
    constexpr int kHeadDim = Kernel_traits::kHeadDim;
    constexpr int kNWarps = Kernel_traits::kNWarps;
    constexpr int MMA_M = kBlockM / decltype(size<0>(typename Kernel_traits::TiledMma::TiledShape_MNK{}))::value;

79
80
81
    auto seed_offset = at::cuda::philox::unpack(params.philox_args);
    flash::Dropout dropout(std::get<0>(seed_offset), std::get<1>(seed_offset), params.p_dropout_in_uint8_t,
                           bidb, bidh, tidx, params.h);
Tri Dao's avatar
Tri Dao committed
82
83
84
85

    // Save seed and offset for backward, before any early exiting. Otherwise the 0-th thread block might
    // exit early and no one saves the rng states.
    if (Is_dropout && blockIdx.x == 0 && blockIdx.y == 0 && blockIdx.z == 0 && tidx == 0) {
86
87
        params.rng_state[0] = std::get<0>(seed_offset);
        params.rng_state[1] = std::get<1>(seed_offset);
Tri Dao's avatar
Tri Dao committed
88
89
    }

90
    const BlockInfo</*Varlen=*/!Is_even_MN> binfo(params, bidb);
91
    if (m_block * kBlockM >= binfo.actual_seqlen_q) return;
Tri Dao's avatar
Tri Dao committed
92

Tri Dao's avatar
Tri Dao committed
93
    const int n_block_min = !Is_local ? 0 : std::max(0, (m_block * kBlockM + binfo.actual_seqlen_k - binfo.actual_seqlen_q - params.window_size_left) / kBlockN);
Tri Dao's avatar
Tri Dao committed
94
    int n_block_max = cute::ceil_div(binfo.actual_seqlen_k, kBlockN);
Tri Dao's avatar
Tri Dao committed
95
    if (Is_causal || Is_local) {
96
        n_block_max = std::min(n_block_max,
Tri Dao's avatar
Tri Dao committed
97
                               cute::ceil_div((m_block + 1) * kBlockM + binfo.actual_seqlen_k - binfo.actual_seqlen_q + params.window_size_right, kBlockN));
Tri Dao's avatar
Tri Dao committed
98
99
100
        // if (threadIdx.x == 0 && blockIdx.y == 0 && blockIdx.z == 0) {
        //     printf("m_block = %d, n_block_max = %d\n", m_block, n_block_max);
        // }
101
102
103
104
105
106
107
108
109
110
111
112
113
114
115
116
117
118
119
120
121
122
123
124
    }
    // We exit early and write 0 to gO and gLSE. This also covers the case where actual_seqlen_k == 0.
    // Otherwise we might read OOB elements from gK and gV.
    if ((Is_causal || Is_local || !Is_even_MN) && n_block_max <= n_block_min) {
        const index_t row_offset_o = binfo.q_offset(params.o_batch_stride, params.o_row_stride, bidb)
            + m_block * kBlockM * params.o_row_stride + bidh * params.o_head_stride;
        const index_t row_offset_lse = (bidb * params.h + bidh) * params.seqlen_q + m_block * kBlockM;
        Tensor gO = make_tensor(make_gmem_ptr(reinterpret_cast<Element *>(params.o_ptr) + row_offset_o),
                                Shape<Int<kBlockM>, Int<kHeadDim>>{},
                                make_stride(params.o_row_stride, _1{}));
        Tensor gLSE = make_tensor(make_gmem_ptr(reinterpret_cast<ElementAccum *>(params.softmax_lse_ptr) + row_offset_lse),
                                  Shape<Int<kBlockM>>{}, Stride<_1>{});

        typename Kernel_traits::GmemTiledCopyO gmem_tiled_copy_O;
        auto gmem_thr_copy_O = gmem_tiled_copy_O.get_thread_slice(tidx);
        Tensor tOgO = gmem_thr_copy_O.partition_D(gO);
        Tensor tOrO = make_tensor<Element>(shape(tOgO));
        clear(tOrO);
        // Construct identity layout for sO
        Tensor cO = make_identity_tensor(make_shape(size<0>(gO), size<1>(gO)));    // (BLK_M,BLK_K) -> (blk_m,blk_k)
        // Repeat the partitioning with identity layouts
        Tensor tOcO = gmem_thr_copy_O.partition_D(cO);
        Tensor tOpO = make_tensor<bool>(make_shape(size<2>(tOgO)));
        if (!Is_even_K) {
125
            #pragma unroll
126
127
128
129
130
131
132
133
134
135
            for (int k = 0; k < size(tOpO); ++k) { tOpO(k) = get<1>(tOcO(0, 0, k)) < params.d; }
        }
        // Clear_OOB_K must be false since we don't want to write zeros to gmem
        flash::copy<Is_even_MN, Is_even_K, /*Clear_OOB_MN=*/false, /*Clear_OOB_K=*/false>(
            gmem_tiled_copy_O, tOrO, tOgO, tOcO, tOpO, binfo.actual_seqlen_q - m_block * kBlockM
        );
        #pragma unroll
        for (int m = 0; m < size<1>(tOgO); ++m) {
            const int row = get<0>(tOcO(0, m, 0));
            if (row < binfo.actual_seqlen_q - m_block * kBlockM && get<1>(tOcO(0, m, 0)) == 0) { gLSE(row) = INFINITY; }
136
        }
137
        return;
Tri Dao's avatar
Tri Dao committed
138
    }
Tri Dao's avatar
Tri Dao committed
139
    // if (tidx == 0) { printf("m_block = %d, n_block_min = %d, n_block_max = %d\n", m_block, n_block_min, n_block_max); }
Tri Dao's avatar
Tri Dao committed
140
141
142
143
144
145
146
147
148
149
150
151
152
153
154
155
156
157
158
159
160
161
162
163
164
165
166
167
168
169
170
171
172
173
174
175
176

    // We iterate over the blocks in reverse order. This is because the last block is the only one
    // that needs masking when we read K and V from global memory. Moreover, iterating in reverse
    // might save us 1 register (we just need n_block instead of both n_block and n_block_max).

    const index_t row_offset_q = binfo.q_offset(params.q_batch_stride, params.q_row_stride, bidb)
        + m_block * kBlockM * params.q_row_stride + bidh * params.q_head_stride;
    // We move K and V to the last block.
    const index_t row_offset_k = binfo.k_offset(params.k_batch_stride, params.k_row_stride, bidb)
        + (n_block_max - 1) * kBlockN * params.k_row_stride + (bidh / params.h_h_k_ratio) * params.k_head_stride;
    const index_t row_offset_v = binfo.k_offset(params.v_batch_stride, params.v_row_stride, bidb)
        + (n_block_max - 1) * kBlockN * params.v_row_stride + (bidh / params.h_h_k_ratio) * params.v_head_stride;
    const index_t row_offset_p = ((bidb * params.h + bidh) * params.seqlen_q_rounded
        + m_block * kBlockM) * params.seqlen_k_rounded + (n_block_max - 1) * kBlockN;

    Tensor gQ = make_tensor(make_gmem_ptr(reinterpret_cast<Element *>(params.q_ptr) + row_offset_q),
                            Shape<Int<kBlockM>, Int<kHeadDim>>{},
                            make_stride(params.q_row_stride, _1{}));
    Tensor gK = make_tensor(make_gmem_ptr(reinterpret_cast<Element *>(params.k_ptr) + row_offset_k),
                            Shape<Int<kBlockN>, Int<kHeadDim>>{},
                            make_stride(params.k_row_stride, _1{}));
    Tensor gV = make_tensor(make_gmem_ptr(reinterpret_cast<Element *>(params.v_ptr) + row_offset_v),
                            Shape<Int<kBlockN>, Int<kHeadDim>>{},
                            make_stride(params.v_row_stride, _1{}));
    Tensor gP = make_tensor(make_gmem_ptr(reinterpret_cast<Element *>(params.p_ptr) + row_offset_p),
                            Shape<Int<kBlockM>, Int<kBlockN>>{},
                            make_stride(params.seqlen_k_rounded, _1{}));

    Tensor sQ = make_tensor(make_smem_ptr(reinterpret_cast<Element *>(smem_)),
                            typename Kernel_traits::SmemLayoutQ{});
    // Careful we're using the same smem for sQ and sK | sV if Share_Q_K_smem;
    Tensor sK = make_tensor(sQ.data() + (Kernel_traits::Share_Q_K_smem ? 0 : size(sQ)),
                            typename Kernel_traits::SmemLayoutKV{});
    Tensor sV = make_tensor(sK.data() + size(sK), typename Kernel_traits::SmemLayoutKV{});
    Tensor sVt = make_tensor(sV.data(), typename Kernel_traits::SmemLayoutVtransposed{});
    Tensor sVtNoSwizzle = make_tensor(sV.data(), typename Kernel_traits::SmemLayoutVtransposedNoSwizzle{});

Tri Dao's avatar
Tri Dao committed
177
178
    typename Kernel_traits::GmemTiledCopyQKV gmem_tiled_copy_QKV;
    auto gmem_thr_copy_QKV = gmem_tiled_copy_QKV.get_thread_slice(tidx);
Tri Dao's avatar
Tri Dao committed
179
180
181
182
183
184
185
186
187
188
189
190
191
192

    Tensor tQgQ = gmem_thr_copy_QKV.partition_S(gQ);
    Tensor tQsQ = gmem_thr_copy_QKV.partition_D(sQ);
    Tensor tKgK = gmem_thr_copy_QKV.partition_S(gK);  // (KCPY, KCPY_N, KCPY_K)
    Tensor tKsK = gmem_thr_copy_QKV.partition_D(sK);
    Tensor tVgV = gmem_thr_copy_QKV.partition_S(gV);  // (VCPY, VCPY_N, VCPY_K)
    Tensor tVsV = gmem_thr_copy_QKV.partition_D(sV);

    typename Kernel_traits::TiledMma tiled_mma;
    auto thr_mma = tiled_mma.get_thread_slice(tidx);
    Tensor tSrQ  = thr_mma.partition_fragment_A(sQ);                           // (MMA,MMA_M,MMA_K)
    Tensor tSrK  = thr_mma.partition_fragment_B(sK);                           // (MMA,MMA_N,MMA_K)
    Tensor tOrVt  = thr_mma.partition_fragment_B(sVtNoSwizzle);                // (MMA, MMA_K,MMA_N)

Tri Dao's avatar
Tri Dao committed
193
194
    Tensor tSgS  = thr_mma.partition_C(gP);

Tri Dao's avatar
Tri Dao committed
195
196
197
198
199
200
    Tensor acc_o = partition_fragment_C(tiled_mma, Shape<Int<kBlockM>, Int<kHeadDim>>{});  // MMA, MMA_M, MMA_K

    //
    // Copy Atom retiling
    //

Tri Dao's avatar
Tri Dao committed
201
202
    auto smem_tiled_copy_Q = make_tiled_copy_A(typename Kernel_traits::SmemCopyAtom{}, tiled_mma);
    auto smem_thr_copy_Q = smem_tiled_copy_Q.get_thread_slice(tidx);
Tri Dao's avatar
Tri Dao committed
203
204
205
206
    // if (cute::thread0()) {smem_thr_copy_Q.print_all();}
    Tensor tSsQ = smem_thr_copy_Q.partition_S(sQ);
    // if (cute::thread0()) {print(tSsQ.layout()); printf("\n");}

Tri Dao's avatar
Tri Dao committed
207
208
    auto smem_tiled_copy_K = make_tiled_copy_B(typename Kernel_traits::SmemCopyAtom{}, tiled_mma);
    auto smem_thr_copy_K = smem_tiled_copy_K.get_thread_slice(tidx);
Tri Dao's avatar
Tri Dao committed
209
210
    Tensor tSsK = smem_thr_copy_K.partition_S(sK);

Tri Dao's avatar
Tri Dao committed
211
212
    auto smem_tiled_copy_V = make_tiled_copy_B(typename Kernel_traits::SmemCopyAtomTransposed{}, tiled_mma);
    auto smem_thr_copy_V = smem_tiled_copy_V.get_thread_slice(tidx);
Tri Dao's avatar
Tri Dao committed
213
214
215
216
217
218
219
220
221
222
223
224
225
226
227
228
229
230
231
232
233
234
235
236
237
238
239
240
241
242
243
244
245
246
247
248
249
250
251
252
253
254
255
256
257
258
259
260
261
262
    Tensor tOsVt = smem_thr_copy_V.partition_S(sVt);

    // TODO: this might need to change if we change the mma instruction in SM70
    Tensor scores_max = make_tensor<ElementAccum>(Shape<Int<2 * size<1>(acc_o)>>{});
    Tensor scores_sum = make_fragment_like(scores_max);

    //
    // PREDICATES
    //

    // // Allocate predicate tensors for m and n
    // Tensor tQpQ = make_tensor<bool>(make_shape(size<1>(tQsQ), size<2>(tQsQ)), Stride<_1,_0>{});
    // Tensor tKVpKV = make_tensor<bool>(make_shape(size<1>(tKsK), size<2>(tKsK)), Stride<_1,_0>{});

    // Construct identity layout for sQ and sK
    Tensor cQ = make_identity_tensor(make_shape(size<0>(sQ), size<1>(sQ)));    // (BLK_M,BLK_K) -> (blk_m,blk_k)
    Tensor cKV = make_identity_tensor(make_shape(size<0>(sK), size<1>(sK)));    // (BLK_N,BLK_K) -> (blk_n,blk_k)
    // Tensor tScQ = thr_mma.partition_A(cQ);                           // (MMA,MMA_M,MMA_K)
    // if (cute::thread0()) {
    //     print(tScQ.layout()); printf("\n");
    //     for (int i = 0; i < size(tScQ); ++i) {
    //         printf("%d ", get<0>(tScQ(i)));
    //     }
    //     printf("\n");
    //     for (int i = 0; i < size(tScQ); ++i) {
    //         printf("%d ", get<1>(tScQ(i)));
    //     }
    //     printf("\n");
    // }

    // Repeat the partitioning with identity layouts
    Tensor tQcQ = gmem_thr_copy_QKV.partition_S(cQ);       // (ACPY,ACPY_M,ACPY_K) -> (blk_m,blk_k)
    Tensor tKVcKV = gmem_thr_copy_QKV.partition_S(cKV);   // (BCPY,BCPY_N,BCPY_K) -> (blk_n,blk_k)

    // Allocate predicate tensors for k
    Tensor tQpQ = make_tensor<bool>(make_shape(size<2>(tQsQ)));
    Tensor tKVpKV = make_tensor<bool>(make_shape(size<2>(tKsK)));

    // Set predicates for k bounds
    if (!Is_even_K) {
        #pragma unroll
        for (int k = 0; k < size(tQpQ); ++k) { tQpQ(k) = get<1>(tQcQ(0, 0, k)) < params.d; }
        #pragma unroll
        for (int k = 0; k < size(tKVpKV); ++k) { tKVpKV(k) = get<1>(tKVcKV(0, 0, k)) < params.d; }
    }

    // Prologue

    Tensor tQrQ = make_fragment_like(tQgQ);
    // We don't need to clear the sQ smem tiles since we'll only write out the valid outputs
263
264
    flash::copy<Is_even_MN, Is_even_K>(gmem_tiled_copy_QKV, tQgQ, tQsQ, tQcQ, tQpQ,
                                       binfo.actual_seqlen_q - m_block * kBlockM);
Tri Dao's avatar
Tri Dao committed
265
266
267
268
269
270
271
272
273
274
275
276
277
278
279
    if (Kernel_traits::Is_Q_in_regs) { cute::cp_async_fence(); }

    // // Copy rmem to smem
    // // copy(tQrQ, tQsQ);
    // flash::cp_async_wait<0>();
    // __syncthreads();
    // // if (cute::thread(1, 0)) { print(tQsQ); }
    // // Tensor sQNoSwizzle = make_tensor(make_smem_ptr(reinterpret_cast<Element *>(smem_)), typename Kernel_traits::SmemLayoutQNoSwizzle{});
    // // if (cute::thread0()) { print(sQNoSwizzle); }

    if (Kernel_traits::Share_Q_K_smem) {
        flash::cp_async_wait<0>();
        __syncthreads();
        Tensor tSrQ_copy_view = smem_thr_copy_Q.retile_D(tSrQ);
        CUTE_STATIC_ASSERT_V(size<1>(tSsQ) == size<1>(tSrQ_copy_view));            // M
Tri Dao's avatar
Tri Dao committed
280
        cute::copy(smem_tiled_copy_Q, tSsQ, tSrQ_copy_view);
Tri Dao's avatar
Tri Dao committed
281
282
283
284
285
        __syncthreads();
    }

    int n_block = n_block_max - 1;
    // We don't need to clear the sK smem tiles since we'll mask out the scores anyway.
286
287
    flash::copy<Is_even_MN, Is_even_K>(gmem_tiled_copy_QKV, tKgK, tKsK, tKVcKV, tKVpKV,
                                       binfo.actual_seqlen_k - n_block * kBlockN);
Tri Dao's avatar
Tri Dao committed
288
289
290
291
292
293
294
295
296
    cute::cp_async_fence();
    // if (threadIdx.x == 0 && blockIdx.y == 0 && blockIdx.z < 2) { print(tKgK); }
    // __syncthreads();

    if (Kernel_traits::Is_Q_in_regs && !Kernel_traits::Share_Q_K_smem) {
        flash::cp_async_wait<1>();
        __syncthreads();
        Tensor tSrQ_copy_view = smem_thr_copy_Q.retile_D(tSrQ);
        CUTE_STATIC_ASSERT_V(size<1>(tSsQ) == size<1>(tSrQ_copy_view));            // M
Tri Dao's avatar
Tri Dao committed
297
        cute::copy(smem_tiled_copy_Q, tSsQ, tSrQ_copy_view);
Tri Dao's avatar
Tri Dao committed
298
299
300
301
    }

    clear(acc_o);

302
303
    float alibi_slope = !Has_alibi ? 0.0f : reinterpret_cast<float *>(params.alibi_slopes_ptr)[bidb * params.alibi_slopes_batch_stride + bidh] / params.scale_softmax;

Tri Dao's avatar
Tri Dao committed
304
305
306
307
308
309
    // For performance reason, we separate out two kinds of iterations:
    // those that need masking on S, and those that don't.
    // We need masking on S for the very last block when K and V has length not multiple of kBlockN.
    // We also need masking on S if it's causal, for the last ceil_div(kBlockM, kBlockN) blocks.
    // We will have at least 1 "masking" iteration.

310
311
    // If not even_N, then seqlen_k might end in the middle of a block. In that case we need to
    // mask 2 blocks (e.g. when kBlockM == kBlockN), not just 1.
Tri Dao's avatar
Tri Dao committed
312
    constexpr int n_masking_steps = (!Is_causal && !Is_local)
313
        ? 1
Tri Dao's avatar
Tri Dao committed
314
        : ((Is_even_MN && Is_causal) ? cute::ceil_div(kBlockM, kBlockN) : cute::ceil_div(kBlockM, kBlockN) + 1);
Tri Dao's avatar
Tri Dao committed
315
316
317
318
319
320
321
322
323
324
    #pragma unroll
    for (int masking_step = 0; masking_step < n_masking_steps; ++masking_step, --n_block) {
        Tensor acc_s = partition_fragment_C(tiled_mma, Shape<Int<kBlockM>, Int<kBlockN>>{});  // (MMA=4, MMA_M, MMA_N)
        clear(acc_s);
        flash::cp_async_wait<0>();
        __syncthreads();

        // Advance gV
        if (masking_step > 0) {
            tVgV.data() = tVgV.data() + (-int(kBlockN * params.v_row_stride));
Tri Dao's avatar
Tri Dao committed
325
            flash::copy</*Is_even_MN=*/true, Is_even_K>(gmem_tiled_copy_QKV, tVgV, tVsV, tKVcKV, tKVpKV);
Tri Dao's avatar
Tri Dao committed
326
327
        } else {
            // Clear the smem tiles to account for predicated off loads
328
            flash::copy<Is_even_MN, Is_even_K, /*Clear_OOB_MN=*/true>(
Tri Dao's avatar
Tri Dao committed
329
                gmem_tiled_copy_QKV, tVgV, tVsV, tKVcKV, tKVpKV, binfo.actual_seqlen_k - n_block * kBlockN
Tri Dao's avatar
Tri Dao committed
330
331
332
333
334
            );
        }
        cute::cp_async_fence();

        flash::gemm</*A_in_regs=*/Kernel_traits::Is_Q_in_regs>(
Tri Dao's avatar
Tri Dao committed
335
336
            acc_s, tSrQ, tSrK, tSsQ, tSsK, tiled_mma, smem_tiled_copy_Q, smem_tiled_copy_K,
            smem_thr_copy_Q, smem_thr_copy_K
Tri Dao's avatar
Tri Dao committed
337
338
339
340
341
        );
        // if (cute::thread0()) { print(acc_s); }

        // Reshape acc_s from (MMA=4, MMA_M, MMA_N) to (nrow=(2, MMA_M), ncol=(2, MMA_N))
        Tensor scores = make_tensor(acc_s.data(), flash::convert_layout_acc_rowcol(acc_s.layout()));
Tri Dao's avatar
Tri Dao committed
342
        // if (cute::thread0()) { print_tensor(scores); }
Tri Dao's avatar
Tri Dao committed
343
344
345
        // We don't put the masking before the matmul S = Q K^T because we don't clear sK
        // for rows outside actual_seqlen_k. So those rows could have Inf / NaN, and the matmul
        // can produce Inf / NaN.
346
347

        if (Has_alibi) {
348
            flash::apply_alibi<Is_causal>(
349
350
                scores,
                n_block * kBlockN,
351
352
                binfo.actual_seqlen_k,
                m_block * kBlockM + (tidx / 32) * 16 + (tidx % 32) / 4,
353
                binfo.actual_seqlen_q,
354
355
356
357
358
                kNWarps * 16,
                alibi_slope
            );
        }

Tri Dao's avatar
Tri Dao committed
359
        if (!Is_causal && !Is_local) {
360
            if (!Is_even_MN) { flash::apply_mask(scores, binfo.actual_seqlen_k - n_block * kBlockN); }
Tri Dao's avatar
Tri Dao committed
361
362
363
364
365
366
367
368
369
370
371
372
        } else {
            // Tensor caccS = make_identity_tensor(Shape<Int<kBlockM>, Int<kBlockN>>{});    // (BLK_M,BLK_N) -> (blk_m,blk_n)
            // Tensor taccScS = thr_mma.partition_C(caccS);                           // (MMA,MMA_M,MMA_N)
            // static_assert(decltype(size<0>(taccScS))::value == 4);
            // // Convert to ((2, 2), MMA_M, MMA_N) then take only the row indices.
            // Tensor idx_row = logical_divide(taccScS, Shape<_2>{})(make_coord(0, _), _, 0);
            // Tensor idx_rowcol = make_tensor(taccScS.data(), flash::convert_layout_acc_rowcol(taccScS.layout()));
            // flash::apply_mask_causal_w_idx(scores, idx_rowcol, n_block * kBlockN, binfo.actual_seqlen_k,
            //                               m_block * kBlockM);
            // Idk why it's get<1> and not get<0> of the stride.
            // if (cute::thread0()) { print(idx_row.layout()); print(stride<1>(idx_row)); printf("stride = %d \n", get<1>(stride<1>(idx_row))); }
            // I can't get the stride from idx_row
Tri Dao's avatar
Tri Dao committed
373
374
375
376
377
378
379
380
381
382
            flash::apply_mask_local</*HasWSLeft=*/Is_local>(
                scores, n_block * kBlockN, binfo.actual_seqlen_k,
                // m_block * kBlockM + get<0>(idx_row(0)),
                m_block * kBlockM + (tidx / 32) * 16 + (tidx % 32) / 4,
                binfo.actual_seqlen_q, kNWarps * 16,
                params.window_size_left, params.window_size_right
                // m_block * kBlockM + (tidx / 32) * 16, kNWarps * 16
                // m_block * kBlockM + (tidx / 32) * (kBlockM / kNWarps), 16
            );
            // if (cute::thread0()) { print_tensor(scores); }
Tri Dao's avatar
Tri Dao committed
383
384
385
386
        }

        flash::cp_async_wait<0>();
        __syncthreads();
Tri Dao's avatar
Tri Dao committed
387
        if (n_block > n_block_min) {
Tri Dao's avatar
Tri Dao committed
388
389
            // Advance gK
            tKgK.data() = tKgK.data() + (-int(kBlockN * params.k_row_stride));
Tri Dao's avatar
Tri Dao committed
390
            flash::copy</*Is_even_MN=*/true, Is_even_K>(gmem_tiled_copy_QKV, tKgK, tKsK, tKVcKV, tKVpKV);
Tri Dao's avatar
Tri Dao committed
391
392
393
394
395
396
397
            // This cp_async_fence needs to be in the if block, otherwise the synchronization
            // isn't right and we get race conditions.
            cute::cp_async_fence();
        }

        // TODO: when we have key_padding_mask we'll need to Check_inf
        masking_step == 0
Tri Dao's avatar
Tri Dao committed
398
399
            ? softmax_rescale_o</*Is_first=*/true,  /*Check_inf=*/Is_causal || Is_local>(scores, scores_max, scores_sum, acc_o, params.scale_softmax_log2)
            : softmax_rescale_o</*Is_first=*/false, /*Check_inf=*/Is_causal || Is_local>(scores, scores_max, scores_sum, acc_o, params.scale_softmax_log2);
Tri Dao's avatar
Tri Dao committed
400
401
402

        // Convert scores from fp32 to fp16/bf16
        Tensor rP = flash::convert_type<Element>(scores);
403
404
        int block_row_idx = m_block * (kBlockM / 16) + tidx / 32;
        int block_col_idx = n_block * (kBlockN / 32);
Tri Dao's avatar
Tri Dao committed
405
        if (Return_softmax) {
Tri Dao's avatar
Tri Dao committed
406
            Tensor acc_s_f16 = flash::convert_type<Element>(acc_s);
407
            Tensor acc_s_f16_drop = make_tensor(acc_s_f16.data(), rP.layout());
408
409
            dropout.template apply_dropout</*encode_dropout_in_sign_bit=*/true>(
                acc_s_f16_drop, block_row_idx, block_col_idx, kNWarps
Tri Dao's avatar
Tri Dao committed
410
            );
Tri Dao's avatar
Tri Dao committed
411
412
            cute::copy(acc_s_f16, tSgS);
            tSgS.data() = tSgS.data() + (-kBlockN);
Tri Dao's avatar
Tri Dao committed
413
414
        }
        if (Is_dropout) {
415
            dropout.apply_dropout(rP, block_row_idx, block_col_idx, kNWarps);
Tri Dao's avatar
Tri Dao committed
416
417
        }

418
419
420
421
        // Reshape rP from (nrow=(2, MMA_M), ncol=(2, MMA_N)) to ((2, 2, 2), MMA_M, MMA_N / 2)
        // if using m16n8k16 or ((2, 2, 1), MMA_M, MMA_N) if using m16n8k8.
        Tensor tOrP = make_tensor(rP.data(), flash::convert_layout_rowcol_Aregs<Kernel_traits::TiledMma>(rP.layout()));
        // if (cute::thread0()) { print(tOrP); }
422
        flash::gemm_rs(acc_o, tOrP, tOrVt, tOsVt, tiled_mma, smem_tiled_copy_V, smem_thr_copy_V);
Tri Dao's avatar
Tri Dao committed
423
424
425
        // if (cute::thread0()) { print(scores); }

        // This check is at the end of the loop since we always have at least 1 iteration
Tri Dao's avatar
Tri Dao committed
426
        if (n_masking_steps > 1 && n_block <= n_block_min) {
Tri Dao's avatar
Tri Dao committed
427
428
429
430
431
432
            --n_block;
            break;
        }
    }

    // These are the iterations where we don't need masking on S
Tri Dao's avatar
Tri Dao committed
433
    for (; n_block >= n_block_min; --n_block) {
Tri Dao's avatar
Tri Dao committed
434
435
436
437
438
439
        Tensor acc_s = partition_fragment_C(tiled_mma, Shape<Int<kBlockM>, Int<kBlockN>>{});  // (MMA=4, MMA_M, MMA_N)
        clear(acc_s);
        flash::cp_async_wait<0>();
        __syncthreads();
        // Advance gV
        tVgV.data() = tVgV.data() + (-int(kBlockN * params.v_row_stride));
Tri Dao's avatar
Tri Dao committed
440
        flash::copy</*Is_even_MN=*/true, Is_even_K>(gmem_tiled_copy_QKV, tVgV, tVsV, tKVcKV, tKVpKV);
Tri Dao's avatar
Tri Dao committed
441
442
443
        cute::cp_async_fence();

        flash::gemm</*A_in_regs=*/Kernel_traits::Is_Q_in_regs>(
Tri Dao's avatar
Tri Dao committed
444
445
            acc_s, tSrQ, tSrK, tSsQ, tSsK, tiled_mma, smem_tiled_copy_Q, smem_tiled_copy_K,
            smem_thr_copy_Q, smem_thr_copy_K
Tri Dao's avatar
Tri Dao committed
446
447
448
449
        );

        flash::cp_async_wait<0>();
        __syncthreads();
Tri Dao's avatar
Tri Dao committed
450
        if (n_block > n_block_min) {
Tri Dao's avatar
Tri Dao committed
451
452
            // Advance gK
            tKgK.data() = tKgK.data() + (-int(kBlockN * params.k_row_stride));
Tri Dao's avatar
Tri Dao committed
453
            flash::copy</*Is_even_MN=*/true, Is_even_K>(gmem_tiled_copy_QKV, tKgK, tKsK, tKVcKV, tKVpKV);
Tri Dao's avatar
Tri Dao committed
454
455
456
457
458
459
460
            // This cp_async_fence needs to be in the if block, otherwise the synchronization
            // isn't right and we get race conditions.
            cute::cp_async_fence();
        }

        // Reshape acc_s from (MMA=4, MMA_M, MMA_N) to (nrow=(2, MMA_M), ncol=(2, MMA_N))
        Tensor scores = make_tensor(acc_s.data(), flash::convert_layout_acc_rowcol(acc_s.layout()));
461

462
        if (Has_alibi) {
463
            flash::apply_alibi<Is_causal>(
464
465
                scores,
                n_block * kBlockN,
466
467
                binfo.actual_seqlen_k,
                m_block * kBlockM + (tidx / 32) * 16 + (tidx % 32) / 4,
468
                binfo.actual_seqlen_q,
469
470
471
472
                kNWarps * 16,
                alibi_slope
            );
        }
473

Tri Dao's avatar
Tri Dao committed
474
475
476
477
478
479
480
481
        if (Is_local && n_block * kBlockN < (m_block + 1) * kBlockM + binfo.actual_seqlen_k - binfo.actual_seqlen_q + params.window_size_right) {
            flash::apply_mask_local(
                scores, n_block * kBlockN, binfo.actual_seqlen_k,
                m_block * kBlockM + (tidx / 32) * 16 + (tidx % 32) / 4,
                binfo.actual_seqlen_q, kNWarps * 16,
                params.window_size_left, params.window_size_right
            );
        }
482

Tri Dao's avatar
Tri Dao committed
483
        softmax_rescale_o</*Is_first=*/false, /*Check_inf=*/Is_local>(scores, scores_max, scores_sum, acc_o, params.scale_softmax_log2);
Tri Dao's avatar
Tri Dao committed
484
485

        Tensor rP = flash::convert_type<Element>(scores);
486
487
        int block_row_idx = m_block * (kBlockM / 16) + tidx / 32;
        int block_col_idx = n_block * (kBlockN / 32);
Tri Dao's avatar
Tri Dao committed
488
        if (Return_softmax) {
Tri Dao's avatar
Tri Dao committed
489
            Tensor acc_s_f16 = flash::convert_type<Element>(acc_s);
490
            Tensor acc_s_f16_drop = make_tensor(acc_s_f16.data(), rP.layout());
491
492
            dropout.template apply_dropout</*encode_dropout_in_sign_bit=*/true>(
                acc_s_f16_drop, block_row_idx, block_col_idx, kNWarps
Tri Dao's avatar
Tri Dao committed
493
            );
Tri Dao's avatar
Tri Dao committed
494
495
            cute::copy(acc_s_f16, tSgS);
            tSgS.data() = tSgS.data() + (-kBlockN);
Tri Dao's avatar
Tri Dao committed
496
497
        }
        if (Is_dropout) {
498
            dropout.apply_dropout(rP, block_row_idx, block_col_idx, kNWarps);
Tri Dao's avatar
Tri Dao committed
499
500
        }

501
502
503
        // Reshape rP from (nrow=(2, MMA_M), ncol=(2, MMA_N)) to ((2, 2, 2), MMA_M, MMA_N / 2)
        // if using m16n8k16 or ((2, 2, 1), MMA_M, MMA_N) if using m16n8k8.
        Tensor tOrP = make_tensor(rP.data(), flash::convert_layout_rowcol_Aregs<Kernel_traits::TiledMma>(rP.layout()));
504
        flash::gemm_rs(acc_o, tOrP, tOrVt, tOsVt, tiled_mma, smem_tiled_copy_V, smem_thr_copy_V);
Tri Dao's avatar
Tri Dao committed
505
506
507
508
509
510
511
512
513
514
515
516
517
518
519
520
521
522
523
524
525
526
527
    }

    // Epilogue

    // Reshape acc_o from (MMA=4, MMA_M, MMA_K) to (nrow=(2, MMA_M), ncol=(2, MMA_K))
    Tensor acc_o_rowcol = make_tensor(acc_o.data(), flash::convert_layout_acc_rowcol(acc_o.layout()));
    Tensor lse = make_fragment_like(scores_sum);
    #pragma unroll
    for (int mi = 0; mi < size<0>(acc_o_rowcol); ++mi) {
        float sum = scores_sum(mi);
        float inv_sum = (sum == 0.f || sum != sum) ? 1.f : 1.f / sum;
        lse(mi) = (sum == 0.f || sum != sum) ? INFINITY : scores_max(mi) * params.scale_softmax + __logf(sum);
        float scale = !Is_dropout ? inv_sum : inv_sum * params.rp_dropout;
        #pragma unroll
        for (int ni = 0; ni < size<1>(acc_o_rowcol); ++ni) { acc_o_rowcol(mi, ni) *= scale; }
    }

    // if (cute::thread0()) { print(acc_o_rowcol); }

    // Convert acc_o from fp32 to fp16/bf16
    Tensor rO = flash::convert_type<Element>(acc_o);
    Tensor sO = make_tensor(sQ.data(), typename Kernel_traits::SmemLayoutO{});    // (SMEM_M,SMEM_N)
    // Partition sO to match the accumulator partitioning
Tri Dao's avatar
Tri Dao committed
528
529
    auto smem_tiled_copy_O = make_tiled_copy_C(typename Kernel_traits::SmemCopyAtomO{}, tiled_mma);
    auto smem_thr_copy_O = smem_tiled_copy_O.get_thread_slice(tidx);
Tri Dao's avatar
Tri Dao committed
530
531
532
533
534
535
    Tensor taccOrO = smem_thr_copy_O.retile_S(rO);        // ((Atom,AtomNum), MMA_M, MMA_N)
    Tensor taccOsO = smem_thr_copy_O.partition_D(sO);     // ((Atom,AtomNum),PIPE_M,PIPE_N)

    // sO has the same size as sQ, so we don't need to sync here.
    if (Kernel_traits::Share_Q_K_smem) { __syncthreads(); }

Tri Dao's avatar
Tri Dao committed
536
    cute::copy(smem_tiled_copy_O, taccOrO, taccOsO);
Tri Dao's avatar
Tri Dao committed
537
538
539
540
541
542
543
544
545
546

    const index_t row_offset_o = binfo.q_offset(params.o_batch_stride, params.o_row_stride, bidb)
        + m_block * kBlockM * params.o_row_stride + bidh * params.o_head_stride;
    const index_t row_offset_lse = (bidb * params.h + bidh) * params.seqlen_q + m_block * kBlockM;
    Tensor gO = make_tensor(make_gmem_ptr(reinterpret_cast<Element *>(params.o_ptr) + row_offset_o),
                            Shape<Int<kBlockM>, Int<kHeadDim>>{},
                            make_stride(params.o_row_stride, _1{}));
    Tensor gLSE = make_tensor(make_gmem_ptr(reinterpret_cast<ElementAccum *>(params.softmax_lse_ptr) + row_offset_lse),
                              Shape<Int<kBlockM>>{}, Stride<_1>{});

Tri Dao's avatar
Tri Dao committed
547
548
    typename Kernel_traits::GmemTiledCopyO gmem_tiled_copy_O;
    auto gmem_thr_copy_O = gmem_tiled_copy_O.get_thread_slice(tidx);
Tri Dao's avatar
Tri Dao committed
549
550
551
552
553
554
    Tensor tOsO = gmem_thr_copy_O.partition_S(sO);        // ((Atom,AtomNum),ATOM_M,ATOM_N)
    Tensor tOgO = gmem_thr_copy_O.partition_D(gO);

    __syncthreads();

    Tensor tOrO = make_tensor<Element>(shape(tOgO));
Tri Dao's avatar
Tri Dao committed
555
    cute::copy(gmem_tiled_copy_O, tOsO, tOrO);
Tri Dao's avatar
Tri Dao committed
556
557
558
559
560
561
562
563
564
565
566
567
568
569
570
571
572
573
574
575
576
577
578
579
580

    Tensor caccO = make_identity_tensor(Shape<Int<kBlockM>, Int<kHeadDim>>{});    // (BLK_M,BLK_K) -> (blk_m,blk_k)
    Tensor taccOcO = thr_mma.partition_C(caccO);                           // (MMA,MMA_M,MMA_K)
    static_assert(decltype(size<0>(taccOcO))::value == 4);
    // Convert to ((2, 2), MMA_M, MMA_K) then take only the row indices.
    Tensor taccOcO_row = logical_divide(taccOcO, Shape<_2>{})(make_coord(0, _), _, 0);
    CUTE_STATIC_ASSERT_V(size(lse) == size(taccOcO_row));                     // MMA_M
    if (get<1>(taccOcO_row(0)) == 0) {
        #pragma unroll
        for (int mi = 0; mi < size(lse); ++mi) {
            const int row = get<0>(taccOcO_row(mi));
            if (row < binfo.actual_seqlen_q - m_block * kBlockM) { gLSE(row) = lse(mi); }
        }
    }

    // Construct identity layout for sO
    Tensor cO = make_identity_tensor(make_shape(size<0>(sO), size<1>(sO)));    // (BLK_M,BLK_K) -> (blk_m,blk_k)
    // Repeat the partitioning with identity layouts
    Tensor tOcO = gmem_thr_copy_O.partition_D(cO);                           // (ACPY,ACPY_M,ACPY_K) -> (blk_m,blk_k)
    Tensor tOpO = make_tensor<bool>(make_shape(size<2>(tOgO)));
    if (!Is_even_K) {
        #pragma unroll
        for (int k = 0; k < size(tOpO); ++k) { tOpO(k) = get<1>(tOcO(0, 0, k)) < params.d; }
    }
    // Clear_OOB_K must be false since we don't want to write zeros to gmem
581
    flash::copy<Is_even_MN, Is_even_K, /*Clear_OOB_MN=*/false, /*Clear_OOB_K=*/false>(
Tri Dao's avatar
Tri Dao committed
582
        gmem_tiled_copy_O, tOrO, tOgO, tOcO, tOpO, binfo.actual_seqlen_q - m_block * kBlockM
Tri Dao's avatar
Tri Dao committed
583
584
585
586
587
    );
}

////////////////////////////////////////////////////////////////////////////////////////////////////

588
template<typename Kernel_traits, bool Is_causal, bool Is_local, bool Has_alibi, bool Is_even_MN, bool Is_even_K, bool Split, bool Append_KV, typename Params>
Tri Dao's avatar
Tri Dao committed
589
590
591
592
593
594
595
596
597
598
599
600
601
602
603
604
605
inline __device__ void compute_attn_1rowblock_splitkv(const Params &params, const int bidb, const int bidh, const int m_block, const int n_split_idx, const int num_n_splits) {

    using Element = typename Kernel_traits::Element;
    using ElementAccum = typename Kernel_traits::ElementAccum;
    using index_t = typename Kernel_traits::index_t;

    // Shared memory.
    extern __shared__ char smem_[];

    // The thread index.
    const int tidx = threadIdx.x;

    constexpr int kBlockM = Kernel_traits::kBlockM;
    constexpr int kBlockN = Kernel_traits::kBlockN;
    constexpr int kHeadDim = Kernel_traits::kHeadDim;
    constexpr int kNWarps = Kernel_traits::kNWarps;

Tri Dao's avatar
Tri Dao committed
606
607
608
609
610
611
612
    using GmemTiledCopyO = std::conditional_t<
        !Split,
        typename Kernel_traits::GmemTiledCopyOaccum,
        typename Kernel_traits::GmemTiledCopyO
    >;
    using ElementO = std::conditional_t<!Split, Element, ElementAccum>;

Tri Dao's avatar
Tri Dao committed
613
    const BlockInfo</*Varlen=*/!Is_even_MN> binfo(params, bidb);
Tri Dao's avatar
Tri Dao committed
614
    // if (threadIdx.x == 0 && blockIdx.y == 0 && blockIdx.z == 0) { printf("Is_even_MN = %d, is_cumulativ = %d, seqlen_k_cache = %d, actual_seqlen_k = %d\n", Is_even_MN, params.is_seqlens_k_cumulative, binfo.seqlen_k_cache, binfo.actual_seqlen_k); }
615
    // if (threadIdx.x == 0 && blockIdx.y == 1 && blockIdx.z == 0) { printf("params.knew_ptr = %p, seqlen_k_cache + seqlen_knew = %d\n", params.knew_ptr, binfo.seqlen_k_cache + (params.knew_ptr == nullptr ? 0 : params.seqlen_knew)); }
Tri Dao's avatar
Tri Dao committed
616
617
618
    if (m_block * kBlockM >= binfo.actual_seqlen_q) return;

    const int n_blocks_per_split = ((params.seqlen_k + kBlockN - 1) / kBlockN + num_n_splits - 1) / num_n_splits;
Tri Dao's avatar
Tri Dao committed
619
620
621
    const int n_block_min = !Is_local
        ? n_split_idx * n_blocks_per_split
        : std::max(n_split_idx * n_blocks_per_split, (m_block * kBlockM + binfo.actual_seqlen_k - binfo.actual_seqlen_q - params.window_size_left) / kBlockN);
Tri Dao's avatar
Tri Dao committed
622
    int n_block_max = std::min(cute::ceil_div(binfo.actual_seqlen_k, kBlockN), (n_split_idx + 1) * n_blocks_per_split);
Tri Dao's avatar
Tri Dao committed
623
    if (Is_causal || Is_local) {
Tri Dao's avatar
Tri Dao committed
624
        n_block_max = std::min(n_block_max,
Tri Dao's avatar
Tri Dao committed
625
                               cute::ceil_div((m_block + 1) * kBlockM + binfo.actual_seqlen_k - binfo.actual_seqlen_q + params.window_size_right, kBlockN));
Tri Dao's avatar
Tri Dao committed
626
627
628
629
630
    }
    if (n_block_min >= n_block_max) {  // This also covers the case where n_block_max <= 0
        // We exit early and write 0 to gOaccum and -inf to gLSEaccum.
        // Otherwise we might read OOB elements from gK and gV,
        // or get wrong results when we combine gOaccum from different blocks.
Tri Dao's avatar
Tri Dao committed
631
632
        const index_t row_offset_o = binfo.q_offset(params.o_batch_stride, params.o_row_stride, bidb)
            + m_block * kBlockM * params.o_row_stride + bidh * params.o_head_stride;
Tri Dao's avatar
Tri Dao committed
633
634
635
        const index_t row_offset_oaccum = (((n_split_idx * params.b + bidb) * params.h + bidh) * params.seqlen_q
            + m_block * kBlockM) * params.d_rounded;
        const index_t row_offset_lseaccum = ((n_split_idx * params.b + bidb) * params.h + bidh) * params.seqlen_q + m_block * kBlockM;
Tri Dao's avatar
Tri Dao committed
636
637
638
639
        Tensor gOaccum = make_tensor(make_gmem_ptr(reinterpret_cast<ElementO *>(Split ? params.oaccum_ptr : params.o_ptr) + (Split ? row_offset_oaccum : row_offset_o)),
                                      Shape<Int<kBlockM>, Int<kHeadDim>>{},
                                     make_stride(Split ? kHeadDim : params.o_row_stride, _1{}));
        Tensor gLSEaccum = make_tensor(make_gmem_ptr(reinterpret_cast<ElementAccum *>(Split ? params.softmax_lseaccum_ptr : params.softmax_lse_ptr) + row_offset_lseaccum),
Tri Dao's avatar
Tri Dao committed
640
641
                                      Shape<Int<kBlockM>>{}, Stride<_1>{});

Tri Dao's avatar
Tri Dao committed
642
        GmemTiledCopyO gmem_tiled_copy_Oaccum;
Tri Dao's avatar
Tri Dao committed
643
644
        auto gmem_thr_copy_Oaccum = gmem_tiled_copy_Oaccum.get_thread_slice(tidx);
        Tensor tOgOaccum = gmem_thr_copy_Oaccum.partition_D(gOaccum);
Tri Dao's avatar
Tri Dao committed
645
        Tensor tOrOaccum = make_tensor<ElementO>(shape(tOgOaccum));
Tri Dao's avatar
Tri Dao committed
646
647
648
649
650
651
652
653
654
655
656
657
658
659
660
661
662
        clear(tOrOaccum);
        // Construct identity layout for sO
        Tensor cO = make_identity_tensor(make_shape(size<0>(gOaccum), size<1>(gOaccum)));    // (BLK_M,BLK_K) -> (blk_m,blk_k)
        // Repeat the partitioning with identity layouts
        Tensor tOcO = gmem_thr_copy_Oaccum.partition_D(cO);
        Tensor tOpO = make_tensor<bool>(make_shape(size<2>(tOgOaccum)));
        if (!Is_even_K) {
            #pragma unroll
            for (int k = 0; k < size(tOpO); ++k) { tOpO(k) = get<1>(tOcO(0, 0, k)) < params.d; }
        }
        // Clear_OOB_K must be false since we don't want to write zeros to gmem
        flash::copy<Is_even_MN, Is_even_K, /*Clear_OOB_MN=*/false, /*Clear_OOB_K=*/false>(
            gmem_tiled_copy_Oaccum, tOrOaccum, tOgOaccum, tOcO, tOpO, binfo.actual_seqlen_q - m_block * kBlockM
        );
        #pragma unroll
        for (int m = 0; m < size<1>(tOgOaccum); ++m) {
            const int row = get<0>(tOcO(0, m, 0));
Tri Dao's avatar
Tri Dao committed
663
            if (row < binfo.actual_seqlen_q - m_block * kBlockM && get<1>(tOcO(0, m, 0)) == 0) { gLSEaccum(row) = Split ? -INFINITY : INFINITY; }
Tri Dao's avatar
Tri Dao committed
664
665
666
667
668
669
670
671
672
673
674
        }
        return;
    }

    // We iterate over the blocks in reverse order. This is because the last block is the only one
    // that needs masking when we read K and V from global memory. Moreover, iterating in reverse
    // might save us 1 register (we just need n_block instead of both n_block and n_block_max).

    const index_t row_offset_q = binfo.q_offset(params.q_batch_stride, params.q_row_stride, bidb)
        + m_block * kBlockM * params.q_row_stride + bidh * params.q_head_stride;
    // We move K and V to the last block.
675
676
    const int bidb_cache = params.cache_batch_idx == nullptr ? bidb : params.cache_batch_idx[bidb];
    const index_t row_offset_k = binfo.k_offset(params.k_batch_stride, params.k_row_stride, bidb_cache)
Tri Dao's avatar
Tri Dao committed
677
        + (n_block_max - 1) * kBlockN * params.k_row_stride + (bidh / params.h_h_k_ratio) * params.k_head_stride;
678
    const index_t row_offset_v = binfo.k_offset(params.v_batch_stride, params.v_row_stride, bidb_cache)
Tri Dao's avatar
Tri Dao committed
679
680
681
682
683
684
685
686
        + (n_block_max - 1) * kBlockN * params.v_row_stride + (bidh / params.h_h_k_ratio) * params.v_head_stride;

    Tensor gQ = make_tensor(make_gmem_ptr(reinterpret_cast<Element *>(params.q_ptr) + row_offset_q),
                            Shape<Int<kBlockM>, Int<kHeadDim>>{},
                            make_stride(params.q_row_stride, _1{}));
    Tensor gK = make_tensor(make_gmem_ptr(reinterpret_cast<Element *>(params.k_ptr) + row_offset_k),
                            Shape<Int<kBlockN>, Int<kHeadDim>>{},
                            make_stride(params.k_row_stride, _1{}));
Tri Dao's avatar
Tri Dao committed
687
    // if (threadIdx.x == 0 && blockIdx.y == 0 && blockIdx.z == 0) { printf("k_ptr = %p, row_offset_k = %d, gK_ptr = %p\n", params.k_ptr, row_offset_k, gK.data()); }
Tri Dao's avatar
Tri Dao committed
688
689
690
691
692
693
    Tensor gV = make_tensor(make_gmem_ptr(reinterpret_cast<Element *>(params.v_ptr) + row_offset_v),
                            Shape<Int<kBlockN>, Int<kHeadDim>>{},
                            make_stride(params.v_row_stride, _1{}));

    Tensor sQ = make_tensor(make_smem_ptr(reinterpret_cast<Element *>(smem_)),
                            typename Kernel_traits::SmemLayoutQ{});
Tri Dao's avatar
Tri Dao committed
694
    Tensor sK = make_tensor(sQ.data() + size(sQ), typename Kernel_traits::SmemLayoutKV{});
Tri Dao's avatar
Tri Dao committed
695
696
697
698
699
700
701
702
703
704
705
706
707
708
709
710
711
712
713
714
715
716
717
718
719
720
721
722
723
724
725
726
727
728
729
730
731
732
733
734
735
736
737
738
739
740
741
742
743
744
745
746
747
748
749
750
751
752
753
754
755
756
757
758
759
760
761
762
763
764
765
766
    Tensor sV = make_tensor(sK.data() + size(sK), typename Kernel_traits::SmemLayoutKV{});
    Tensor sVt = make_tensor(sV.data(), typename Kernel_traits::SmemLayoutVtransposed{});
    Tensor sVtNoSwizzle = make_tensor(sV.data(), typename Kernel_traits::SmemLayoutVtransposedNoSwizzle{});

    typename Kernel_traits::GmemTiledCopyQKV gmem_tiled_copy_QKV;
    auto gmem_thr_copy_QKV = gmem_tiled_copy_QKV.get_thread_slice(tidx);

    Tensor tQgQ = gmem_thr_copy_QKV.partition_S(gQ);
    Tensor tQsQ = gmem_thr_copy_QKV.partition_D(sQ);
    Tensor tKgK = gmem_thr_copy_QKV.partition_S(gK);  // (KCPY, KCPY_N, KCPY_K)
    Tensor tKsK = gmem_thr_copy_QKV.partition_D(sK);
    Tensor tVgV = gmem_thr_copy_QKV.partition_S(gV);  // (VCPY, VCPY_N, VCPY_K)
    Tensor tVsV = gmem_thr_copy_QKV.partition_D(sV);

    typename Kernel_traits::TiledMma tiled_mma;
    auto thr_mma = tiled_mma.get_thread_slice(tidx);
    Tensor tSrQ  = thr_mma.partition_fragment_A(sQ);                           // (MMA,MMA_M,MMA_K)
    Tensor tSrK  = thr_mma.partition_fragment_B(sK);                           // (MMA,MMA_N,MMA_K)
    Tensor tOrVt  = thr_mma.partition_fragment_B(sVtNoSwizzle);                // (MMA, MMA_K,MMA_N)

    Tensor acc_o = partition_fragment_C(tiled_mma, Shape<Int<kBlockM>, Int<kHeadDim>>{});  // MMA, MMA_M, MMA_K

    //
    // Copy Atom retiling
    //

    auto smem_tiled_copy_Q = make_tiled_copy_A(typename Kernel_traits::SmemCopyAtom{}, tiled_mma);
    auto smem_thr_copy_Q = smem_tiled_copy_Q.get_thread_slice(tidx);
    Tensor tSsQ = smem_thr_copy_Q.partition_S(sQ);

    auto smem_tiled_copy_K = make_tiled_copy_B(typename Kernel_traits::SmemCopyAtom{}, tiled_mma);
    auto smem_thr_copy_K = smem_tiled_copy_K.get_thread_slice(tidx);
    Tensor tSsK = smem_thr_copy_K.partition_S(sK);

    auto smem_tiled_copy_V = make_tiled_copy_B(typename Kernel_traits::SmemCopyAtomTransposed{}, tiled_mma);
    auto smem_thr_copy_V = smem_tiled_copy_V.get_thread_slice(tidx);
    Tensor tOsVt = smem_thr_copy_V.partition_S(sVt);

    // TODO: this might need to change if we change the mma instruction in SM70
    Tensor scores_max = make_tensor<ElementAccum>(Shape<Int<2 * size<1>(acc_o)>>{});
    Tensor scores_sum = make_fragment_like(scores_max);

    //
    // PREDICATES
    //

    // // Allocate predicate tensors for m and n
    // Tensor tQpQ = make_tensor<bool>(make_shape(size<1>(tQsQ), size<2>(tQsQ)), Stride<_1,_0>{});
    // Tensor tKVpKV = make_tensor<bool>(make_shape(size<1>(tKsK), size<2>(tKsK)), Stride<_1,_0>{});

    // Construct identity layout for sQ and sK
    Tensor cQ = make_identity_tensor(make_shape(size<0>(sQ), size<1>(sQ)));    // (BLK_M,BLK_K) -> (blk_m,blk_k)
    Tensor cKV = make_identity_tensor(make_shape(size<0>(sK), size<1>(sK)));    // (BLK_N,BLK_K) -> (blk_n,blk_k)

    // Repeat the partitioning with identity layouts
    Tensor tQcQ = gmem_thr_copy_QKV.partition_S(cQ);       // (ACPY,ACPY_M,ACPY_K) -> (blk_m,blk_k)
    Tensor tKVcKV = gmem_thr_copy_QKV.partition_S(cKV);   // (BCPY,BCPY_N,BCPY_K) -> (blk_n,blk_k)

    // Allocate predicate tensors for k
    Tensor tQpQ = make_tensor<bool>(make_shape(size<2>(tQsQ)));
    Tensor tKVpKV = make_tensor<bool>(make_shape(size<2>(tKsK)));

    // Set predicates for k bounds
    if (!Is_even_K) {
        #pragma unroll
        for (int k = 0; k < size(tQpQ); ++k) { tQpQ(k) = get<1>(tQcQ(0, 0, k)) < params.d; }
        #pragma unroll
        for (int k = 0; k < size(tKVpKV); ++k) { tKVpKV(k) = get<1>(tKVcKV(0, 0, k)) < params.d; }
    }

    // Prologue

767
768
769
770
771
    // Copy from Knew to K, optionally apply rotary embedding.
    typename Kernel_traits::GmemTiledCopyRotcossin gmem_tiled_copy_rotary;
    auto gmem_thr_copy_rotary = gmem_tiled_copy_rotary.get_thread_slice(tidx);
    typename Kernel_traits::GmemTiledCopyRotcossinCont gmem_tiled_copy_rotary_cont;
    auto gmem_thr_copy_rotary_cont = gmem_tiled_copy_rotary_cont.get_thread_slice(tidx);
772
773
774
775
    if constexpr (Append_KV) {
        // Even if we have MQA / GQA, all threadblocks responsible for the same KV head are writing to
        // gmem. Technically it's a race condition, but they all write the same content anyway, and it's safe.
        // We want to do this so that all threadblocks can proceed right after they finish writing the KV cache.
776
777
778
779
780
781
782
783
784
785
786
787
788
789
790
791
792
793
794
795
796
        const index_t row_offset_cossin = ((n_block_max - 1) * kBlockN) * (params.rotary_dim / 2);
        Tensor gCos = make_tensor(make_gmem_ptr(reinterpret_cast<Element *>(params.rotary_cos_ptr) + row_offset_cossin),
                                  Shape<Int<kBlockN>, Int<kHeadDim / 2>>{},
                                  make_stride(params.rotary_dim / 2, _1{}));
        Tensor gSin = make_tensor(make_gmem_ptr(reinterpret_cast<Element *>(params.rotary_sin_ptr) + row_offset_cossin),
                                  Shape<Int<kBlockN>, Int<kHeadDim / 2>>{},
                                  make_stride(params.rotary_dim / 2, _1{}));
        Tensor gCosCont = make_tensor(make_gmem_ptr(reinterpret_cast<Element *>(params.rotary_cos_ptr) + row_offset_cossin),
                                      Shape<Int<kBlockN>, Int<kHeadDim>>{},
                                      make_stride(params.rotary_dim / 2, _1{}));
        Tensor gSinCont = make_tensor(make_gmem_ptr(reinterpret_cast<Element *>(params.rotary_sin_ptr) + row_offset_cossin),
                                      Shape<Int<kBlockN>, Int<kHeadDim>>{},
                                      make_stride(params.rotary_dim / 2, _1{}));
        Tensor tRgCos = gmem_thr_copy_rotary.partition_S(gCos);
        Tensor tRgSin = gmem_thr_copy_rotary.partition_S(gSin);
        Tensor tRgCosCont = gmem_thr_copy_rotary_cont.partition_S(gCosCont);
        Tensor tRgSinCont = gmem_thr_copy_rotary_cont.partition_S(gSinCont);
        // if (cute::thread(0, 0)) { printf("rotary_cos_ptr = %p, gCos.data() = %p, tRgCos.data() = %p, rotary_dim = %d\n", params.rotary_cos_ptr, gCos.data(), tRgCos.data(), params.rotary_dim); }
        // if (cute::thread(8, 0)) { print_tensor(gCos); }
        // if (cute::thread(0, 0)) { print_tensor(tRgCos); }

797
798
799
800
801
802
803
804
805
806
807
808
809
810
811
812
813
814
815
816
817
818
819
820
821
822
        const index_t row_offset_knew = binfo.k_offset(params.knew_batch_stride, params.knew_row_stride, bidb)
            + ((n_block_max - 1) * kBlockN) * params.knew_row_stride + (bidh / params.h_h_k_ratio) * params.knew_head_stride;
        const index_t row_offset_vnew = binfo.k_offset(params.vnew_batch_stride, params.vnew_row_stride, bidb)
            + ((n_block_max - 1) * kBlockN) * params.vnew_row_stride + (bidh / params.h_h_k_ratio) * params.vnew_head_stride;
        // Subtract seqlen_k_cache * row stride so that conceptually gK and gKnew "line up". When we access them,
        // e.g. if gK has 128 rows and gKnew has 64 rows, we access gK[:128] and gKNew[128:128 + 64].
        // This maps to accessing the first 64 rows of knew_ptr.
        Tensor gKnew = make_tensor(make_gmem_ptr(reinterpret_cast<Element *>(params.knew_ptr)
                                                + row_offset_knew - binfo.seqlen_k_cache * params.knew_row_stride),
                                  Shape<Int<kBlockN>, Int<kHeadDim>>{},
                                  make_stride(params.knew_row_stride, _1{}));
        // if (threadIdx.x == 0 && blockIdx.y == 0 && blockIdx.z == 0) { printf("knew_ptr = %p, row_offset_knew = %d, gKnew_ptr = %p\n", params.knew_ptr, row_offset_knew, gKnew.data()); }
        Tensor gVnew = make_tensor(make_gmem_ptr(reinterpret_cast<Element *>(params.vnew_ptr)
                                                + row_offset_vnew - binfo.seqlen_k_cache * params.vnew_row_stride),
                                  Shape<Int<kBlockN>, Int<kHeadDim>>{},
                                  make_stride(params.vnew_row_stride, _1{}));
        Tensor tKgKnew = gmem_thr_copy_QKV.partition_S(gKnew);  // (KCPY, KCPY_N, KCPY_K)
        Tensor tVgVnew = gmem_thr_copy_QKV.partition_S(gVnew);  // (VCPY, VCPY_N, VCPY_K)

        const int n_block_copy_min = std::max(n_block_min, binfo.seqlen_k_cache / kBlockN);
        for (int n_block = n_block_max - 1; n_block >= n_block_copy_min; n_block--) {
            flash::copy_w_min_idx<Is_even_K>(
                tVgVnew, tVgV, tKVcKV, tKVpKV, binfo.actual_seqlen_k - n_block * kBlockN, binfo.seqlen_k_cache - n_block * kBlockN
            );
            tVgV.data() = tVgV.data() + (-int(kBlockN * params.v_row_stride));
            tVgVnew.data() = tVgVnew.data() + (-int(kBlockN * params.vnew_row_stride));
823
824
825
826
827
828
829
830
831
832
833
834
835
836
837
838
839
840
841
842
843
844
845
846
847
848
            if (params.rotary_dim == 0) {
                flash::copy_w_min_idx<Is_even_K>(
                    tKgKnew, tKgK, tKVcKV, tKVpKV, binfo.actual_seqlen_k - n_block * kBlockN, binfo.seqlen_k_cache - n_block * kBlockN
                );
            } else {
                if (params.is_rotary_interleaved) {
                    // Don't clear OOB_K because we're writing to global memory
                    flash::copy_rotary_interleaved<Is_even_K, /*Clear_OOB_K=*/false>(
                        tKgKnew, tKgK, tRgCos, tRgSin, tKVcKV, binfo.actual_seqlen_k - n_block * kBlockN,
                        binfo.seqlen_k_cache - n_block * kBlockN, params.d, params.rotary_dim
                    );
                    tRgCos.data() = tRgCos.data() + (-int(kBlockN * params.rotary_dim / 2));
                    tRgSin.data() = tRgSin.data() + (-int(kBlockN * params.rotary_dim / 2));
                } else {
                    // Don't clear OOB_K because we're writing to global memory
                    flash::copy_rotary_contiguous<Is_even_K, /*Clear_OOB_K=*/false>(
                        tKgKnew, tKgK, tRgCosCont, tRgSinCont, tKVcKV, binfo.actual_seqlen_k - n_block * kBlockN,
                        binfo.seqlen_k_cache - n_block * kBlockN, params.d, params.rotary_dim
                    );
                    tRgCosCont.data() = tRgCosCont.data() + (-int(kBlockN * params.rotary_dim / 2));
                    tRgSinCont.data() = tRgSinCont.data() + (-int(kBlockN * params.rotary_dim / 2));

                }
            }
            tKgK.data() = tKgK.data() + (-int(kBlockN * params.k_row_stride));
            tKgKnew.data() = tKgKnew.data() + (-int(kBlockN * params.knew_row_stride));
849
        }
850
        // Need this before we can read in K again, so that we'll see the updated K values.
851
852
853
854
855
856
857
        __syncthreads();
        if (n_block_max > n_block_copy_min) {
            tKgK.data() = tKgK.data() + (n_block_max - n_block_copy_min) * kBlockN * params.k_row_stride;
            tVgV.data() = tVgV.data() + (n_block_max - n_block_copy_min) * kBlockN * params.v_row_stride;
        }
    }

858
    // Read Q from gmem to smem, optionally apply rotary embedding.
Tri Dao's avatar
Tri Dao committed
859
    Tensor tQrQ = make_fragment_like(tQgQ);
860
861
862
863
864
    if (!Append_KV || params.rotary_dim == 0) {
        // We don't need to clear the sQ smem tiles since we'll only write out the valid outputs
        flash::copy<Is_even_MN, Is_even_K>(gmem_tiled_copy_QKV, tQgQ, tQsQ, tQcQ, tQpQ,
                                           binfo.actual_seqlen_q - m_block * kBlockM);
    } else {
Tri Dao's avatar
Tri Dao committed
865
        const index_t row_offset_cossin = (binfo.seqlen_k_cache + (Is_causal || Is_local ? m_block * kBlockM : 0)) * (params.rotary_dim / 2);
866
867
868
869
        // If not causal, all the queries get the same the cos/sin, taken at location seqlen_k_cache.
        // We do this by setting the row stride of gCos / gSin to 0.
        Tensor gCos = make_tensor(make_gmem_ptr(reinterpret_cast<Element *>(params.rotary_cos_ptr) + row_offset_cossin),
                                  Shape<Int<kBlockM>, Int<kHeadDim / 2>>{},
Tri Dao's avatar
Tri Dao committed
870
                                  make_stride(Is_causal || Is_local ? params.rotary_dim / 2 : 0, _1{}));
871
872
        Tensor gSin = make_tensor(make_gmem_ptr(reinterpret_cast<Element *>(params.rotary_sin_ptr) + row_offset_cossin),
                                  Shape<Int<kBlockM>, Int<kHeadDim / 2>>{},
Tri Dao's avatar
Tri Dao committed
873
                                  make_stride(Is_causal || Is_local ? params.rotary_dim / 2 : 0, _1{}));
874
875
        Tensor gCosCont = make_tensor(make_gmem_ptr(reinterpret_cast<Element *>(params.rotary_cos_ptr) + row_offset_cossin),
                                  Shape<Int<kBlockM>, Int<kHeadDim>>{},
Tri Dao's avatar
Tri Dao committed
876
                                  make_stride(Is_causal || Is_local ? params.rotary_dim / 2 : 0, _1{}));
877
878
        Tensor gSinCont = make_tensor(make_gmem_ptr(reinterpret_cast<Element *>(params.rotary_sin_ptr) + row_offset_cossin),
                                  Shape<Int<kBlockM>, Int<kHeadDim>>{},
Tri Dao's avatar
Tri Dao committed
879
                                  make_stride(Is_causal || Is_local ? params.rotary_dim / 2 : 0, _1{}));
880
881
882
883
884
885
886
887
888
889
890
891
892
893
894
895
        Tensor tRgCos = gmem_thr_copy_rotary.partition_S(gCos);
        Tensor tRgSin = gmem_thr_copy_rotary.partition_S(gSin);
        Tensor tRgCosCont = gmem_thr_copy_rotary_cont.partition_S(gCosCont);
        Tensor tRgSinCont = gmem_thr_copy_rotary_cont.partition_S(gSinCont);
        if (params.is_rotary_interleaved) {
            flash::copy_rotary_interleaved<Is_even_K>(
                tQgQ, tQsQ, tRgCos, tRgSin, tQcQ, binfo.actual_seqlen_q - m_block * kBlockM,
                0, params.d, params.rotary_dim
            );
        } else {
            flash::copy_rotary_contiguous<Is_even_K>(
                tQgQ, tQsQ, tRgCosCont, tRgSinCont, tQcQ, binfo.actual_seqlen_q - m_block * kBlockM,
                0, params.d, params.rotary_dim
            );
        }
    }
Tri Dao's avatar
Tri Dao committed
896
897
898

    int n_block = n_block_max - 1;
    // We don't need to clear the sK smem tiles since we'll mask out the scores anyway.
899
900
    flash::copy<Is_even_MN, Is_even_K>(gmem_tiled_copy_QKV, tKgK, tKsK, tKVcKV, tKVpKV,
                                       binfo.actual_seqlen_k - n_block * kBlockN);
Tri Dao's avatar
Tri Dao committed
901
902
    cute::cp_async_fence();

Tri Dao's avatar
Tri Dao committed
903
904
905
906
    // flash::cp_async_wait<0>();
    // __syncthreads();
    // if (tidx == 0 && blockIdx.y == 0 && blockIdx.z == 0) { print(tKsK); }
    // __syncthreads();
Tri Dao's avatar
Tri Dao committed
907
908
909

    clear(acc_o);

910
911
    float alibi_slope = !Has_alibi ? 0.0f : reinterpret_cast<float *>(params.alibi_slopes_ptr)[bidb * params.alibi_slopes_batch_stride + bidh] / params.scale_softmax;

Tri Dao's avatar
Tri Dao committed
912
913
914
915
916
917
918
919
    // For performance reason, we separate out two kinds of iterations:
    // those that need masking on S, and those that don't.
    // We need masking on S for the very last block when K and V has length not multiple of kBlockN.
    // We also need masking on S if it's causal, for the last ceil_div(kBlockM, kBlockN) blocks.
    // We will have at least 1 "masking" iteration.

    // If not even_N, then seqlen_k might end in the middle of a block. In that case we need to
    // mask 2 blocks (e.g. when kBlockM == kBlockN), not just 1.
Tri Dao's avatar
Tri Dao committed
920
    constexpr int n_masking_steps = (!Is_causal && !Is_local)
Tri Dao's avatar
Tri Dao committed
921
        ? 1
Tri Dao's avatar
Tri Dao committed
922
        : ((Is_even_MN && Is_causal) ? cute::ceil_div(kBlockM, kBlockN) : cute::ceil_div(kBlockM, kBlockN) + 1);
Tri Dao's avatar
Tri Dao committed
923
924
925
926
927
928
929
930
931
932
    #pragma unroll
    for (int masking_step = 0; masking_step < n_masking_steps; ++masking_step, --n_block) {
        Tensor acc_s = partition_fragment_C(tiled_mma, Shape<Int<kBlockM>, Int<kBlockN>>{});  // (MMA=4, MMA_M, MMA_N)
        clear(acc_s);
        flash::cp_async_wait<0>();
        __syncthreads();

        // Advance gV
        if (masking_step > 0) {
            tVgV.data() = tVgV.data() + (-int(kBlockN * params.v_row_stride));
933
            flash::copy</*Is_even_MN=*/true, Is_even_K>(gmem_tiled_copy_QKV, tVgV, tVsV, tKVcKV, tKVpKV);
Tri Dao's avatar
Tri Dao committed
934
935
        } else {
            // Clear the smem tiles to account for predicated off loads
936
937
            flash::copy<Is_even_MN, Is_even_K, /*Clear_OOB_MN=*/true>(
                gmem_tiled_copy_QKV, tVgV, tVsV, tKVcKV, tKVpKV, binfo.actual_seqlen_k - n_block * kBlockN
Tri Dao's avatar
Tri Dao committed
938
939
940
941
            );
        }
        cute::cp_async_fence();

Tri Dao's avatar
Tri Dao committed
942
        flash::gemm(
Tri Dao's avatar
Tri Dao committed
943
944
945
946
947
948
949
            acc_s, tSrQ, tSrK, tSsQ, tSsK, tiled_mma, smem_tiled_copy_Q, smem_tiled_copy_K,
            smem_thr_copy_Q, smem_thr_copy_K
        );
        // if (cute::thread0()) { print(acc_s); }

        // Reshape acc_s from (MMA=4, MMA_M, MMA_N) to (nrow=(2, MMA_M), ncol=(2, MMA_N))
        Tensor scores = make_tensor(acc_s.data(), flash::convert_layout_acc_rowcol(acc_s.layout()));
950
951

        if (Has_alibi) {
952
            flash::apply_alibi<Is_causal>(
953
954
                scores,
                n_block * kBlockN,
955
956
                binfo.actual_seqlen_k,
                m_block * kBlockM + (tidx / 32) * 16 + (tidx % 32) / 4,
957
                binfo.actual_seqlen_q,
958
959
960
961
962
                kNWarps * 16,
                alibi_slope
            );
        }

Tri Dao's avatar
Tri Dao committed
963
964
965
966
        // if (cute::thread0()) { print(scores); }
        // We don't put the masking before the matmul S = Q K^T because we don't clear sK
        // for rows outside actual_seqlen_k. So those rows could have Inf / NaN, and the matmul
        // can produce Inf / NaN.
Tri Dao's avatar
Tri Dao committed
967
        if (!Is_causal && !Is_local) {
Tri Dao's avatar
Tri Dao committed
968
969
            if (!Is_even_MN) { flash::apply_mask(scores, binfo.actual_seqlen_k - n_block * kBlockN); }
        } else {
Tri Dao's avatar
Tri Dao committed
970
971
972
973
974
            flash::apply_mask_local(scores, n_block * kBlockN, binfo.actual_seqlen_k,
                                    m_block * kBlockM + (tidx / 32) * 16 + (tidx % 32) / 4,
                                    binfo.actual_seqlen_q, kNWarps * 16,
                                    params.window_size_left, params.window_size_right
                                    );
Tri Dao's avatar
Tri Dao committed
975
976
977
978
        }

        flash::cp_async_wait<0>();
        __syncthreads();
Tri Dao's avatar
Tri Dao committed
979
980
981
        // if (tidx == 0 && blockIdx.y == 0 && blockIdx.z == 0) { print(tVsV); }
        // __syncthreads();

Tri Dao's avatar
Tri Dao committed
982
983
984
        if (n_block > n_block_min) {
            // Advance gK
            tKgK.data() = tKgK.data() + (-int(kBlockN * params.k_row_stride));
985
            flash::copy</*Is_even_MN=*/true, Is_even_K>(gmem_tiled_copy_QKV, tKgK, tKsK, tKVcKV, tKVpKV);
Tri Dao's avatar
Tri Dao committed
986
987
988
989
990
            // This cp_async_fence needs to be in the if block, otherwise the synchronization
            // isn't right and we get race conditions.
            cute::cp_async_fence();
        }

Tri Dao's avatar
Tri Dao committed
991
        // We have key_padding_mask so we'll need to Check_inf
Tri Dao's avatar
Tri Dao committed
992
        masking_step == 0
Tri Dao's avatar
Tri Dao committed
993
994
            ? softmax_rescale_o</*Is_first=*/true,  /*Check_inf=*/Is_causal || Is_local || !Is_even_MN>(scores, scores_max, scores_sum, acc_o, params.scale_softmax_log2)
            : softmax_rescale_o</*Is_first=*/false, /*Check_inf=*/Is_causal || Is_local || !Is_even_MN>(scores, scores_max, scores_sum, acc_o, params.scale_softmax_log2);
Tri Dao's avatar
Tri Dao committed
995
        // if (cute::thread0()) { print(scores_max); print(scores_sum); print(scores); }
Tri Dao's avatar
Tri Dao committed
996
997
998
999
1000
1001
1002

        // Convert scores from fp32 to fp16/bf16
        Tensor rP = flash::convert_type<Element>(scores);
        // Reshape rP from (nrow=(2, MMA_M), ncol=(2, MMA_N)) to ((2, 2, 2), MMA_M, MMA_N / 2)
        // if using m16n8k16 or ((2, 2, 1), MMA_M, MMA_N) if using m16n8k8.
        Tensor tOrP = make_tensor(rP.data(), flash::convert_layout_rowcol_Aregs<Kernel_traits::TiledMma>(rP.layout()));

1003
        flash::gemm_rs(acc_o, tOrP, tOrVt, tOsVt, tiled_mma, smem_tiled_copy_V, smem_thr_copy_V);
Tri Dao's avatar
Tri Dao committed
1004
1005
1006
1007
1008
1009
1010
1011
1012
1013
1014
1015
1016
1017
1018
1019
1020
        // if (cute::thread0()) { print(scores); }

        // This check is at the end of the loop since we always have at least 1 iteration
        if (n_masking_steps > 1 && n_block <= n_block_min) {
            --n_block;
            break;
        }
    }

    // These are the iterations where we don't need masking on S
    for (; n_block >= n_block_min; --n_block) {
        Tensor acc_s = partition_fragment_C(tiled_mma, Shape<Int<kBlockM>, Int<kBlockN>>{});  // (MMA=4, MMA_M, MMA_N)
        clear(acc_s);
        flash::cp_async_wait<0>();
        __syncthreads();
        // Advance gV
        tVgV.data() = tVgV.data() + (-int(kBlockN * params.v_row_stride));
1021
        flash::copy</*Is_even_MN=*/true, Is_even_K>(gmem_tiled_copy_QKV, tVgV, tVsV, tKVcKV, tKVpKV);
Tri Dao's avatar
Tri Dao committed
1022
1023
        cute::cp_async_fence();

Tri Dao's avatar
Tri Dao committed
1024
        flash::gemm(
Tri Dao's avatar
Tri Dao committed
1025
1026
1027
1028
1029
1030
1031
1032
1033
            acc_s, tSrQ, tSrK, tSsQ, tSsK, tiled_mma, smem_tiled_copy_Q, smem_tiled_copy_K,
            smem_thr_copy_Q, smem_thr_copy_K
        );

        flash::cp_async_wait<0>();
        __syncthreads();
        if (n_block > n_block_min) {
            // Advance gK
            tKgK.data() = tKgK.data() + (-int(kBlockN * params.k_row_stride));
1034
            flash::copy</*Is_even_MN=*/true, Is_even_K>(gmem_tiled_copy_QKV, tKgK, tKsK, tKVcKV, tKVpKV);
Tri Dao's avatar
Tri Dao committed
1035
1036
1037
1038
1039
1040
1041
            // This cp_async_fence needs to be in the if block, otherwise the synchronization
            // isn't right and we get race conditions.
            cute::cp_async_fence();
        }

        // Reshape acc_s from (MMA=4, MMA_M, MMA_N) to (nrow=(2, MMA_M), ncol=(2, MMA_N))
        Tensor scores = make_tensor(acc_s.data(), flash::convert_layout_acc_rowcol(acc_s.layout()));
1042
1043

        if (Has_alibi) {
1044
            flash::apply_alibi<Is_causal>(
1045
1046
                scores,
                n_block * kBlockN,
1047
1048
                binfo.actual_seqlen_k,
                m_block * kBlockM + (tidx / 32) * 16 + (tidx % 32) / 4,
1049
                binfo.actual_seqlen_q,
1050
1051
1052
1053
1054
                kNWarps * 16,
                alibi_slope
            );
        }

Tri Dao's avatar
Tri Dao committed
1055
1056
1057
1058
1059
1060
1061
1062
1063
        if (Is_local && n_block * kBlockN < (m_block + 1) * kBlockM + binfo.actual_seqlen_k - binfo.actual_seqlen_q + params.window_size_right) {
            flash::apply_mask_local(
                scores, n_block * kBlockN, binfo.actual_seqlen_k,
                m_block * kBlockM + (tidx / 32) * 16 + (tidx % 32) / 4,
                binfo.actual_seqlen_q, kNWarps * 16,
                params.window_size_left, params.window_size_right
            );
        }
        softmax_rescale_o</*Is_first=*/false, /*Check_inf=*/Is_local>(scores, scores_max, scores_sum, acc_o, params.scale_softmax_log2);
Tri Dao's avatar
Tri Dao committed
1064
1065
1066
1067
1068
1069

        Tensor rP = flash::convert_type<Element>(scores);
        // Reshape rP from (nrow=(2, MMA_M), ncol=(2, MMA_N)) to ((2, 2, 2), MMA_M, MMA_N / 2)
        // if using m16n8k16 or ((2, 2, 1), MMA_M, MMA_N) if using m16n8k8.
        Tensor tOrP = make_tensor(rP.data(), flash::convert_layout_rowcol_Aregs<Kernel_traits::TiledMma>(rP.layout()));

1070
        flash::gemm_rs(acc_o, tOrP, tOrVt, tOsVt, tiled_mma, smem_tiled_copy_V, smem_thr_copy_V);
Tri Dao's avatar
Tri Dao committed
1071
1072
1073
1074
1075
1076
    }

    // Epilogue

    // Reshape acc_o from (MMA=4, MMA_M, MMA_K) to (nrow=(2, MMA_M), ncol=(2, MMA_K))
    Tensor acc_o_rowcol = make_tensor(acc_o.data(), flash::convert_layout_acc_rowcol(acc_o.layout()));
Tri Dao's avatar
Tri Dao committed
1077
    // if (cute::thread0()) { print(acc_o_rowcol); }
Tri Dao's avatar
Tri Dao committed
1078
1079
1080
1081
1082
    Tensor lse = make_fragment_like(scores_sum);
    #pragma unroll
    for (int mi = 0; mi < size<0>(acc_o_rowcol); ++mi) {
        float sum = scores_sum(mi);
        float inv_sum = (sum == 0.f || sum != sum) ? 1.f : 1.f / sum;
Tri Dao's avatar
Tri Dao committed
1083
        lse(mi) = (sum == 0.f || sum != sum) ? (Split ? -INFINITY : INFINITY) : scores_max(mi) * params.scale_softmax + __logf(sum);
Tri Dao's avatar
Tri Dao committed
1084
1085
1086
1087
        float scale = inv_sum;
        #pragma unroll
        for (int ni = 0; ni < size<1>(acc_o_rowcol); ++ni) { acc_o_rowcol(mi, ni) *= scale; }
    }
Tri Dao's avatar
Tri Dao committed
1088
    // if (cute::thread0()) { print(lse); }
Tri Dao's avatar
Tri Dao committed
1089
1090
    // if (cute::thread0()) { print(acc_o_rowcol); }

Tri Dao's avatar
Tri Dao committed
1091
    Tensor sOaccum = make_tensor(make_smem_ptr(reinterpret_cast<ElementO *>(smem_)), typename Kernel_traits::SmemLayoutO{}); // (SMEM_M,SMEM_N)
Tri Dao's avatar
Tri Dao committed
1092
    // Partition sO to match the accumulator partitioning
Tri Dao's avatar
Tri Dao committed
1093
1094
1095
1096
1097
1098
    using SmemTiledCopyO = std::conditional_t<
        !Split,
        typename Kernel_traits::SmemCopyAtomO,
        typename Kernel_traits::SmemCopyAtomOaccum
    >;
    auto smem_tiled_copy_Oaccum = make_tiled_copy_C(SmemTiledCopyO{}, tiled_mma);
Tri Dao's avatar
Tri Dao committed
1099
    auto smem_thr_copy_Oaccum = smem_tiled_copy_Oaccum.get_thread_slice(tidx);
Tri Dao's avatar
Tri Dao committed
1100
1101
    Tensor rO = flash::convert_type<ElementO>(acc_o);
    Tensor taccOrOaccum = smem_thr_copy_Oaccum.retile_S(rO);        // ((Atom,AtomNum), MMA_M, MMA_N)
Tri Dao's avatar
Tri Dao committed
1102
1103
    Tensor taccOsOaccum = smem_thr_copy_Oaccum.partition_D(sOaccum);     // ((Atom,AtomNum),PIPE_M,PIPE_N)

Tri Dao's avatar
Tri Dao committed
1104
1105
1106
    // sOaccum is larger than sQ, so we need to syncthreads here
    // TODO: allocate enough smem for sOaccum
    if constexpr (Split) { __syncthreads(); }
Tri Dao's avatar
Tri Dao committed
1107
1108
1109

    cute::copy(smem_tiled_copy_Oaccum, taccOrOaccum, taccOsOaccum);

Tri Dao's avatar
Tri Dao committed
1110
1111
    const index_t row_offset_o = binfo.q_offset(params.o_batch_stride, params.o_row_stride, bidb)
        + m_block * kBlockM * params.o_row_stride + bidh * params.o_head_stride;
Tri Dao's avatar
Tri Dao committed
1112
1113
1114
1115
    const index_t row_offset_oaccum = (((n_split_idx * params.b + bidb) * params.h + bidh) * params.seqlen_q
                                         + m_block * kBlockM) * params.d_rounded;
    const index_t row_offset_lseaccum = ((n_split_idx * params.b + bidb) * params.h + bidh) * params.seqlen_q + m_block * kBlockM;

Tri Dao's avatar
Tri Dao committed
1116
    Tensor gOaccum = make_tensor(make_gmem_ptr(reinterpret_cast<ElementO *>(Split ? params.oaccum_ptr : params.o_ptr) + (Split ? row_offset_oaccum : row_offset_o)),
Tri Dao's avatar
Tri Dao committed
1117
                                 Shape<Int<kBlockM>, Int<kHeadDim>>{},
Tri Dao's avatar
Tri Dao committed
1118
1119
                                 make_stride(Split ? kHeadDim : params.o_row_stride, _1{}));
    Tensor gLSEaccum = make_tensor(make_gmem_ptr(reinterpret_cast<ElementAccum *>(Split ? params.softmax_lseaccum_ptr : params.softmax_lse_ptr) + row_offset_lseaccum),
Tri Dao's avatar
Tri Dao committed
1120
                                   Shape<Int<kBlockM>>{}, Stride<_1>{});
Tri Dao's avatar
Tri Dao committed
1121
    // if (tidx == 0) { printf("row_offset_o = %d, bidh = %d, gOaccum = %p\n", row_offset_o, bidh, gOaccum.data()); }
Tri Dao's avatar
Tri Dao committed
1122

Tri Dao's avatar
Tri Dao committed
1123
    GmemTiledCopyO gmem_tiled_copy_Oaccum;
Tri Dao's avatar
Tri Dao committed
1124
1125
1126
1127
1128
1129
    auto gmem_thr_copy_Oaccum = gmem_tiled_copy_Oaccum.get_thread_slice(tidx);
    Tensor tOsOaccum = gmem_thr_copy_Oaccum.partition_S(sOaccum);        // ((Atom,AtomNum),ATOM_M,ATOM_N)
    Tensor tOgOaccum = gmem_thr_copy_Oaccum.partition_D(gOaccum);

    __syncthreads();

Tri Dao's avatar
Tri Dao committed
1130
    Tensor tOrOaccum = make_tensor<ElementO>(shape(tOgOaccum));
Tri Dao's avatar
Tri Dao committed
1131
1132
1133
1134
1135
1136
1137
1138
1139
1140
1141
1142
1143
1144
1145
1146
1147
1148
1149
1150
1151
1152
1153
1154
1155
1156
1157
1158
1159
    cute::copy(gmem_tiled_copy_Oaccum, tOsOaccum, tOrOaccum);

    Tensor caccO = make_identity_tensor(Shape<Int<kBlockM>, Int<kHeadDim>>{});    // (BLK_M,BLK_K) -> (blk_m,blk_k)
    Tensor taccOcO = thr_mma.partition_C(caccO);                           // (MMA,MMA_M,MMA_K)
    static_assert(decltype(size<0>(taccOcO))::value == 4);
    // Convert to ((2, 2), MMA_M, MMA_K) then take only the row indices.
    Tensor taccOcO_row = logical_divide(taccOcO, Shape<_2>{})(make_coord(0, _), _, 0);
    CUTE_STATIC_ASSERT_V(size(lse) == size(taccOcO_row));                     // MMA_M
    if (get<1>(taccOcO_row(0)) == 0) {
        #pragma unroll
        for (int mi = 0; mi < size(lse); ++mi) {
            const int row = get<0>(taccOcO_row(mi));
            if (row < binfo.actual_seqlen_q - m_block * kBlockM) { gLSEaccum(row) = lse(mi); }
        }
    }

    // Construct identity layout for sO
    Tensor cO = make_identity_tensor(make_shape(size<0>(sOaccum), size<1>(sOaccum)));    // (BLK_M,BLK_K) -> (blk_m,blk_k)
    // Repeat the partitioning with identity layouts
    Tensor tOcO = gmem_thr_copy_Oaccum.partition_D(cO);                           // (ACPY,ACPY_M,ACPY_K) -> (blk_m,blk_k)
    Tensor tOpO = make_tensor<bool>(make_shape(size<2>(tOgOaccum)));
    if (!Is_even_K) {
        #pragma unroll
        for (int k = 0; k < size(tOpO); ++k) { tOpO(k) = get<1>(tOcO(0, 0, k)) < params.d; }
    }
    // Clear_OOB_K must be false since we don't want to write zeros to gmem
    flash::copy<Is_even_MN, Is_even_K, /*Clear_OOB_MN=*/false, /*Clear_OOB_K=*/false>(
        gmem_tiled_copy_Oaccum, tOrOaccum, tOgOaccum, tOcO, tOpO, binfo.actual_seqlen_q - m_block * kBlockM
    );
Tri Dao's avatar
Tri Dao committed
1160
1161
    // __syncthreads();
    // if (cute::thread0()) { print(tOgOaccum); }
Tri Dao's avatar
Tri Dao committed
1162
1163
1164
1165
}

////////////////////////////////////////////////////////////////////////////////////////////////////

1166
template<typename Kernel_traits, bool Is_dropout, bool Is_causal, bool Is_local, bool Has_alibi, bool Is_even_MN, bool Is_even_K, bool Return_softmax, typename Params>
Tri Dao's avatar
Tri Dao committed
1167
1168
1169
1170
1171
1172
1173
1174
1175
1176
1177
1178
1179
1180
1181
inline __device__ void compute_attn(const Params &params) {
    const int m_block = blockIdx.x;
    // The block index for the batch.
    const int bidb = blockIdx.y;
    // The block index for the head.
    const int bidh = blockIdx.z;

    // We want the fwd and bwd to generate the same dropout pattern (RNG), without restricting
    // them to have the same number of threads or have to traverse the attention matrix
    // in the same order.
    // In the Philox RNG, we use the offset to store the batch, head, and the lane id
    // (within a warp). We use the subsequence to store the location of the 16 x 32 blocks within
    // the attention matrix. This way, as long as we have the batch, head, and the location of
    // the 16 x 32 block within the attention matrix, we can generate the exact same dropout pattern.

1182
    flash::compute_attn_1rowblock<Kernel_traits, Is_dropout, Is_causal, Is_local, Has_alibi, Is_even_MN, Is_even_K, Return_softmax>(params, bidb, bidh, m_block);
Tri Dao's avatar
Tri Dao committed
1183
1184
1185
1186
}

////////////////////////////////////////////////////////////////////////////////////////////////////

1187
template<typename Kernel_traits, bool Is_causal, bool Is_local, bool Has_alibi, bool Is_even_MN, bool Is_even_K, bool Split, bool Append_KV, typename Params>
Tri Dao's avatar
Tri Dao committed
1188
1189
1190
inline __device__ void compute_attn_splitkv(const Params &params) {
    const int m_block = blockIdx.x;
    // The block index for the batch.
Tri Dao's avatar
Tri Dao committed
1191
    const int bidb = Split ? blockIdx.z / params.h : blockIdx.y;
Tri Dao's avatar
Tri Dao committed
1192
    // The block index for the head.
Tri Dao's avatar
Tri Dao committed
1193
1194
1195
    const int bidh = Split ? blockIdx.z - bidb * params.h : blockIdx.z;
    const int n_split_idx = Split ? blockIdx.y : 0;
    const int num_n_splits = Split ? gridDim.y : 1;
1196
    flash::compute_attn_1rowblock_splitkv<Kernel_traits, Is_causal, Is_local, Has_alibi, Is_even_MN, Is_even_K, Split, Append_KV>(params, bidb, bidh, m_block, n_split_idx, num_n_splits);
Tri Dao's avatar
Tri Dao committed
1197
1198
1199
1200
}

////////////////////////////////////////////////////////////////////////////////////////////////////

1201
template<typename Kernel_traits, int kBlockM, int Log_max_splits, bool Is_even_K, typename Params>
Tri Dao's avatar
Tri Dao committed
1202
1203
1204
1205
1206
1207
inline __device__ void combine_attn_seqk_parallel(const Params &params) {
    using Element = typename Kernel_traits::Element;
    using ElementAccum = typename Kernel_traits::ElementAccum;
    using index_t = typename Kernel_traits::index_t;
    constexpr int kMaxSplits = 1 << Log_max_splits;
    constexpr int kHeadDim = Kernel_traits::kHeadDim;
1208
    constexpr int kNThreads = Kernel_traits::kNThreads;
Tri Dao's avatar
Tri Dao committed
1209
1210

    static_assert(kMaxSplits <= 128, "kMaxSplits must be <= 128");
1211
1212
    static_assert(kBlockM == 4 || kBlockM == 8 || kBlockM == 16 || kBlockM == 32, "kBlockM must be 4, 8, 16 or 32");
    static_assert(kNThreads == 128, "We assume that each block has 128 threads");
Tri Dao's avatar
Tri Dao committed
1213
1214
1215
1216
1217
1218
1219
1220
1221
1222
1223
1224
1225
1226
1227

    // Shared memory.
    // kBlockM + 1 instead of kBlockM to reduce bank conflicts.
    __shared__ ElementAccum sLSE[kMaxSplits][kBlockM + 1];

    // The thread and block index.
    const int tidx = threadIdx.x;
    const int bidx = blockIdx.x;

    const index_t row_offset_lse = bidx * kBlockM;
    Tensor gLSEaccum = make_tensor(make_gmem_ptr(reinterpret_cast<ElementAccum *>(params.softmax_lseaccum_ptr) + row_offset_lse),
                                   Shape<Int<kMaxSplits>, Int<kBlockM>>{},
                                   make_stride(params.b * params.h * params.seqlen_q, _1{}));
    Tensor gLSE = make_tensor(make_gmem_ptr(reinterpret_cast<ElementAccum *>(params.softmax_lse_ptr) + row_offset_lse),
                              Shape<Int<kBlockM>>{}, Stride<_1>{});
1228
    constexpr int kNLsePerThread = (kMaxSplits * kBlockM + kNThreads - 1) / kNThreads;
Tri Dao's avatar
Tri Dao committed
1229
1230

    // Read the LSE values from gmem and store them in shared memory, then tranpose them.
1231
    constexpr int kRowsPerLoadLSE = kNThreads / kBlockM;
Tri Dao's avatar
Tri Dao committed
1232
1233
1234
1235
1236
1237
    #pragma unroll
    for (int l = 0; l < kNLsePerThread; ++l) {
        const int row = l * kRowsPerLoadLSE + tidx / kBlockM;
        const int col = tidx % kBlockM;
        ElementAccum lse = (row < params.num_splits && col < params.b * params.h * params.seqlen_q - bidx * kBlockM) ? gLSEaccum(row, col) : -INFINITY;
        if (row < kMaxSplits) { sLSE[row][col] = lse; }
1238
        // if (bidx == 0 && tidx < 32) { printf("tidx = %d, row = %d, col = %d, lse = %f\n", tidx, row, col, lse); }
Tri Dao's avatar
Tri Dao committed
1239
1240
1241
1242
1243
1244
1245
    }
    // if (bidx == 1 && tidx < 32) { printf("tidx = %d, row_offset_lse = %d, lse = %f\n", tidx, row_offset_lse, lse_accum(0)); }
    __syncthreads();
    Tensor lse_accum = make_tensor<ElementAccum>(Shape<Int<kNLsePerThread>>{});
    constexpr int kRowsPerLoadTranspose = std::min(kRowsPerLoadLSE, kMaxSplits);
    // To make sure that kMaxSplits is within 1 warp: we decide how many elements within kMaxSplits
    // each thread should hold. If kMaxSplits = 16, then each thread holds 2 elements (128 threads,
1246
    // kBlockM rows, so each time we load we can load 128 / kBlockM rows).
Tri Dao's avatar
Tri Dao committed
1247
1248
1249
1250
1251
1252
1253
1254
1255
1256
1257
1258
1259
1260
1261
1262
1263
1264
    // constexpr int kThreadsPerSplit = kMaxSplits / kRowsPerLoadTranspose;
    // static_assert(kThreadsPerSplit <= 32);
    static_assert(kRowsPerLoadTranspose <= 32);
    static_assert(kNLsePerThread * kRowsPerLoadTranspose <= kMaxSplits);
    #pragma unroll
    for (int l = 0; l < kNLsePerThread; ++l) {
        const int row = l * kRowsPerLoadTranspose + tidx % kRowsPerLoadTranspose;
        const int col = tidx / kRowsPerLoadTranspose;
        lse_accum(l) = (row < kMaxSplits && col < kBlockM) ? sLSE[row][col] : -INFINITY;
        // if (bidx == 0 && tidx < 32) { printf("tidx = %d, row = %d, col = %d, lse = %f\n", tidx, row, col, lse_accum(l)); }
    }

    // Compute the logsumexp of the LSE along the split dimension.
    ElementAccum lse_max = lse_accum(0);
    #pragma unroll
    for (int l = 1; l < kNLsePerThread; ++l) { lse_max = max(lse_max, lse_accum(l)); }
    MaxOp<float> max_op;
    lse_max = Allreduce<kRowsPerLoadTranspose>::run(lse_max, max_op);
Tri Dao's avatar
Tri Dao committed
1265
    lse_max = lse_max == -INFINITY ? 0.0f : lse_max;  // In case all local LSEs are -inf
Tri Dao's avatar
Tri Dao committed
1266
1267
1268
1269
1270
    float lse_sum = expf(lse_accum(0) - lse_max);
    #pragma unroll
    for (int l = 1; l < kNLsePerThread; ++l) { lse_sum += expf(lse_accum(l) - lse_max); }
    SumOp<float> sum_op;
    lse_sum = Allreduce<kRowsPerLoadTranspose>::run(lse_sum, sum_op);
1271
1272
1273
    // For the case where all local lse == -INFINITY, we want to set lse_logsum to INFINITY. Otherwise
    // lse_logsum is log(0.0) = -INFINITY and we get NaN when we do lse_accum(l) - lse_logsum.
    ElementAccum lse_logsum = (lse_sum == 0.f || lse_sum != lse_sum) ? INFINITY : logf(lse_sum) + lse_max;
Tri Dao's avatar
Tri Dao committed
1274
1275
1276
1277
1278
1279
1280
1281
1282
1283
1284
1285
1286
1287
1288
    // if (bidx == 0 && tidx < 32) { printf("tidx = %d, lse = %f, lse_max = %f, lse_logsum = %f\n", tidx, lse_accum(0), lse_max, lse_logsum); }
    if (tidx % kRowsPerLoadTranspose == 0 && tidx / kRowsPerLoadTranspose < kBlockM) { gLSE(tidx / kRowsPerLoadTranspose) = lse_logsum; }
    // Store the scales exp(lse - lse_logsum) in shared memory.
    #pragma unroll
    for (int l = 0; l < kNLsePerThread; ++l) {
        const int row = l * kRowsPerLoadTranspose + tidx % kRowsPerLoadTranspose;
        const int col = tidx / kRowsPerLoadTranspose;
        if (row < params.num_splits && col < kBlockM) { sLSE[row][col] = expf(lse_accum(l) - lse_logsum); }
    }
    __syncthreads();

    const index_t row_offset_oaccum = bidx * kBlockM * params.d_rounded;
    Tensor gOaccum = make_tensor(make_gmem_ptr(reinterpret_cast<ElementAccum *>(params.oaccum_ptr) + row_offset_oaccum),
                                 Shape<Int<kBlockM>, Int<kHeadDim>>{},
                                 Stride<Int<kHeadDim>, _1>{});
1289
1290
1291
1292
1293
1294
1295
    constexpr int kBlockN = kNThreads / kBlockM;
    using GmemLayoutAtomOaccum = Layout<Shape<Int<kBlockM>, Int<kBlockN>>, Stride<Int<kBlockN>, _1>>;
    using GmemTiledCopyOaccum = decltype(
        make_tiled_copy(Copy_Atom<DefaultCopy, ElementAccum>{},
                        GmemLayoutAtomOaccum{},
                        Layout<Shape < _1, _4>>{}));  // Val layout, 4 vals per store
    GmemTiledCopyOaccum gmem_tiled_copy_Oaccum;
Tri Dao's avatar
Tri Dao committed
1296
1297
1298
1299
1300
1301
1302
1303
1304
1305
1306
1307
1308
1309
1310
1311
1312
1313
1314
1315
1316
1317
1318
1319
1320
1321
1322
1323
1324
1325
1326
    auto gmem_thr_copy_Oaccum = gmem_tiled_copy_Oaccum.get_thread_slice(tidx);
    Tensor tOgOaccum = gmem_thr_copy_Oaccum.partition_S(gOaccum);
    Tensor tOrO = make_tensor<ElementAccum>(shape(tOgOaccum));
    Tensor tOrOaccum = make_tensor<ElementAccum>(shape(tOgOaccum));
    clear(tOrO);

    // Predicates
    Tensor cOaccum = make_identity_tensor(Shape<Int<kBlockM>, Int<kHeadDim>>{});
    // Repeat the partitioning with identity layouts
    Tensor tOcOaccum = gmem_thr_copy_Oaccum.partition_S(cOaccum);
    Tensor tOpOaccum = make_tensor<bool>(make_shape(size<2>(tOgOaccum)));
    if (!Is_even_K) {
        #pragma unroll
        for (int k = 0; k < size(tOpOaccum); ++k) { tOpOaccum(k) = get<1>(tOcOaccum(0, 0, k)) < params.d; }
    }
    // Load Oaccum in then scale and accumulate to O
    for (int split = 0; split < params.num_splits; ++split) {
        flash::copy</*Is_even_MN=*/false, Is_even_K>(
            gmem_tiled_copy_Oaccum, tOgOaccum, tOrOaccum, tOcOaccum, tOpOaccum, params.b * params.h * params.seqlen_q - bidx * kBlockM
        );
        #pragma unroll
        for (int m = 0; m < size<1>(tOrOaccum); ++m) {
            int row = get<0>(tOcOaccum(0, m, 0));
            ElementAccum lse_scale = sLSE[split][row];
            #pragma unroll
            for (int k = 0; k < size<2>(tOrOaccum); ++k) {
                #pragma unroll
                for (int i = 0; i < size<0>(tOrOaccum); ++i) {
                    tOrO(i, m, k) += lse_scale * tOrOaccum(i, m, k);
                }
            }
1327
        // if (cute::thread0()) { printf("lse_scale = %f, %f\n", sLSE[split][0], sLSE[split][1]); print(tOrOaccum); }
Tri Dao's avatar
Tri Dao committed
1328
1329
1330
        }
        tOgOaccum.data() = tOgOaccum.data() + params.b * params.h * params.seqlen_q * params.d_rounded;
    }
1331
    // if (cute::thread0()) { print_tensor(tOrO); }
Tri Dao's avatar
Tri Dao committed
1332
1333
1334
1335
1336
1337
1338
1339
1340
1341
1342
1343
1344
1345
1346
1347
1348
1349
1350
1351
1352
1353
1354
1355
1356
1357
1358
1359
1360

    Tensor rO = flash::convert_type<Element>(tOrO);
    // Write to gO
    #pragma unroll
    for (int m = 0; m < size<1>(rO); ++m) {
        const int idx = bidx * kBlockM + get<0>(tOcOaccum(0, m, 0));
        if (idx < params.b * params.h * params.seqlen_q) {
            const int batch_idx = idx / (params.h * params.seqlen_q);
            const int head_idx = (idx - batch_idx * (params.h * params.seqlen_q)) / params.seqlen_q;
            // The index to the rows of Q
            const int row = idx - batch_idx * (params.h * params.seqlen_q) - head_idx * params.seqlen_q;
            auto o_ptr = reinterpret_cast<Element *>(params.o_ptr) + batch_idx * params.o_batch_stride
                + head_idx * params.o_head_stride + row * params.o_row_stride;
            #pragma unroll
            for (int k = 0; k < size<2>(rO); ++k) {
                if (Is_even_K || tOpOaccum(k)) {
                    const int col = get<1>(tOcOaccum(0, m, k));
                    Tensor gO = make_tensor(make_gmem_ptr(o_ptr + col),
                                            Shape<Int<decltype(size<0>(rO))::value>>{}, Stride<_1>{});
                    // TODO: Should check if this is using vectorized store, but it seems pretty fast
                    copy(rO(_, m, k), gO);
                    // if (bidx == 0 && tidx == 0) { printf("tidx = %d, idx = %d, batch_idx = %d, head_idx = %d, row = %d, col = %d\n", tidx, idx, batch_idx, head_idx, row, col); print(rO(_, m, k)); print(gO); }
                    // reinterpret_cast<uint64_t *>(o_ptr)[col / 4] = recast<uint64_t>(rO)(0, m, k);
                }
            }
        }
    }
}

Tri Dao's avatar
Tri Dao committed
1361
} // namespace flash