sparse_mla_fwd.py 11.1 KB
Newer Older
1
2
3
4
# ruff: noqa
import torch
import tilelang
from tilelang import language as T
5
from utils import assert_tensors_similar
6
7
8
9
10
11
12
13
14
15
16
17
18
19
20
21
22
23
24
25
26
27
28
29
30
31
32
33
34
35
36
37
38
39
40
41
42
43
44
45
46
47
48
49
50
51
52
53
54
55
56
57
58
59
60
61
62
63
64
65
66
67
68
69
70
71
72
73
74
75
76
77
78
79
80
81
82
83
84
85
86
87
88
89
90
91
92
93
94
95
96
97
98
99
100
101
102
103
104
105
106
107
108
109
110
111
112
113
114
115
116
117
118
119
120
121
122
123
124
125
126
127
128
129
130
131
132
133
134
135
136
137
138


@tilelang.jit(
    out_idx=[-2, -1],
    pass_configs={
        tilelang.PassConfigKey.TL_DISABLE_TMA_LOWER: True,
        tilelang.PassConfigKey.TL_DISABLE_WARP_SPECIALIZED: True,
    },
)
def sparse_mla_fwd(
    heads,
    dim,
    tail_dim,
    topk,
    kv_group=1,
    sm_scale=None,
    is_causal=True,
    CP0=True,
    block_I=64,
    num_stages=2,
    threads=256,
):
    assert dim == tilelang.math.next_power_of_2(
        dim), f"haven't check padding correctness yet, dim={dim}"
    assert tail_dim == tilelang.math.next_power_of_2(
        tail_dim), f"haven't check padding correctness yet, dim={tail_dim}"
    assert is_causal == True, "non-casual is not supported"
    assert (topk %
            block_I == 0), "otherwise will load some index=0 thus causing wrong kv to be loaded"
    if sm_scale is None:
        sm_scale = (1.0 / (dim + tail_dim))**0.5 * 1.44269504  # log2(e)
    else:
        sm_scale = sm_scale * 1.44269504  # log2(e)

    batch = T.symbolic("batch")
    seq_len = T.symbolic("seq_len")
    seq_len_kv = T.symbolic("seq_len_kv")

    head_kv = heads // kv_group
    q_shape = [batch, seq_len, heads, dim + tail_dim]
    kv_shape = [batch, seq_len_kv, kv_group, dim + tail_dim]
    o_shape = [batch, seq_len, heads, dim]
    indices_shape = [batch, seq_len, kv_group, topk]
    lse_shape = [batch, seq_len, heads]
    indices_dtype = "int32"
    dtype = "bfloat16"
    accum_dtype = "float"

    G = kv_group
    H = head_kv
    padded_H = max(tilelang.math.next_power_of_2(head_kv), 16)
    if padded_H != H:
        assert (
            kv_group == 1
        ), "here we solve the H padding automatically, other wise you should handle Q copy and Output copy with your mask (when kv_group == 1, use g_i * padded_H:(g_i+1) * padded_H would be handled automatically)"
    BI = block_I
    NI = tilelang.cdiv(topk, block_I)
    D = dim
    D_tail = tail_dim

    if head_kv > 64:
        assert head_kv % 64 == 0, "head_kv should be a multiple of 64"
        REPLICATE_H = head_kv // 64
    else:
        REPLICATE_H = 1

    H_per_block = padded_H if REPLICATE_H == 1 else 64

    @T.prim_func
    def main(
            Q: T.Tensor(q_shape, dtype),  # type: ignore
            KV: T.Tensor(kv_shape, dtype),  # type: ignore
            Indices: T.Tensor(indices_shape, indices_dtype),  # type: ignore
            Output: T.Tensor(o_shape, dtype),  # type: ignore
            Lse: T.Tensor(lse_shape, accum_dtype),  # type: ignore
    ):
        with T.Kernel(
                seq_len * REPLICATE_H, batch, kv_group, threads=threads) as (
                    bx,
                    by,
                    bz,
                ):
            Q_shared = T.alloc_shared([H_per_block, D], dtype)
            Q_tail_shared = T.alloc_shared([H_per_block, D_tail], dtype)
            KV_shared = T.alloc_shared([BI, D], dtype)
            K_tail_shared = T.alloc_shared([BI, D_tail], dtype)
            O_shared = T.alloc_shared([H_per_block, D], dtype)
            Lse_shared = T.alloc_shared([H_per_block], accum_dtype)
            mask = T.alloc_fragment([BI], "bool")

            acc_o = T.alloc_fragment([H_per_block, D], accum_dtype)
            acc_s = T.alloc_fragment([H_per_block, BI], accum_dtype)
            S_shared = T.alloc_shared([H_per_block, BI], dtype)
            sumexp = T.alloc_fragment([H_per_block], accum_dtype)
            sumexp_i = T.alloc_fragment([H_per_block], accum_dtype)
            alpha = T.alloc_fragment([H_per_block], accum_dtype)
            m_i = T.alloc_fragment([H_per_block], accum_dtype)
            m_i_prev = T.alloc_fragment([H_per_block], accum_dtype)

            T.fill(acc_o, 0)
            T.fill(sumexp, 0)
            T.fill(m_i, -(2**30))  # avoid -inf - inf to cause nan

            b_i, g_i = by, bz
            s_i = bx if REPLICATE_H == 1 else (bx // REPLICATE_H)
            q_i = s_i
            max_kv_i = q_i

            H0 = g_i * padded_H + (0 if REPLICATE_H == 1 else (bx % REPLICATE_H) * 64)
            H1 = H0 + H_per_block

            T.copy(Q[b_i, s_i, H0:H1, :D], Q_shared)
            T.copy(Q[b_i, s_i, H0:H1, D:], Q_tail_shared)

            for i_i in T.Pipelined(NI, num_stages=num_stages):

                for bi_i in T.Parallel(BI):
                    mask[bi_i] = Indices[b_i, s_i, g_i, i_i * BI + bi_i] <= max_kv_i

                for bi_i, d_i in T.Parallel(BI, D):
                    KV_shared[bi_i, d_i] = KV[b_i, Indices[b_i, s_i, g_i, i_i * BI + bi_i], g_i,
                                              d_i]
                for bi_i, d_i in T.Parallel(BI, D_tail):
                    K_tail_shared[bi_i, d_i] = KV[b_i, Indices[b_i, s_i, g_i, i_i * BI + bi_i], g_i,
                                                  D + d_i]

                for h_i, bi_i in T.Parallel(H_per_block, BI):
                    acc_s[h_i, bi_i] = T.if_then_else(mask[bi_i], 0, -T.infinity(acc_s.dtype))
                T.gemm(
                    Q_shared,
                    KV_shared,
                    acc_s,
                    transpose_B=True,
139
                    policy=T.GemmWarpPolicy.FullRow,
140
141
142
143
144
145
                )
                T.gemm(
                    Q_tail_shared,
                    K_tail_shared,
                    acc_s,
                    transpose_B=True,
146
                    policy=T.GemmWarpPolicy.FullRow,
147
148
149
150
151
152
153
154
155
156
157
158
159
160
                )
                T.copy(m_i, m_i_prev)
                T.reduce_max(acc_s, m_i, dim=1, clear=False)
                for h_i in T.Parallel(H_per_block):
                    alpha[h_i] = T.exp2((m_i_prev[h_i] - m_i[h_i]) * sm_scale)
                for h_i, bi_i in T.Parallel(H_per_block, BI):
                    acc_s[h_i, bi_i] = T.exp2(acc_s[h_i, bi_i] * sm_scale - m_i[h_i] * sm_scale)
                T.reduce_sum(acc_s, sumexp_i, dim=1)  # is this a accumulate operator?
                for h_i in T.Parallel(H_per_block):
                    sumexp[h_i] = sumexp[h_i] * alpha[h_i] + sumexp_i[h_i]
                for h_i, d_i in T.Parallel(H_per_block, D):
                    acc_o[h_i, d_i] = acc_o[h_i, d_i] * alpha[h_i]

                T.copy(acc_s, S_shared)
161
                T.gemm(S_shared, KV_shared, acc_o, policy=T.GemmWarpPolicy.FullRow)
162
163
164
165
166
167
168
169
170
171
172
173
174
175
176

            # Rescale
            for h_i, d_i in T.Parallel(H_per_block, D):
                acc_o[h_i, d_i] /= sumexp[h_i]
            for h_i in T.Parallel(H_per_block):
                sumexp[h_i] = T.log2(sumexp[h_i]) + m_i[h_i] * sm_scale

            T.copy(acc_o, O_shared)
            T.copy(acc_o, Output[b_i, s_i, H0:H1, :])
            T.copy(sumexp, Lse_shared)
            T.copy(sumexp, Lse[b_i, s_i, H0:H1])

    return main


177
178
179
180
181
182
183
184
185
def sparse_mla_fwd_interface(q,
                             kv,
                             indices,
                             sm_scale=None,
                             return_p_sum: bool = False,
                             d_v=512,
                             block_I=64,
                             num_stages=2,
                             threads=256):
186
187
188
189
190
191
192
193
194
195
196
197
198
199
200
    is_casual = True
    assert return_p_sum == False, "This kernel file is for fwd only"
    assert q.is_contiguous() and kv.is_contiguous() and indices.is_contiguous()
    batch, seq_len, heads, dim_plus_tail_dim = q.shape
    _, seq_len_kv, kv_group, _ = kv.shape

    assert dim_plus_tail_dim == 576, "you should assign dim otherwise"
    dim = d_v

    assert kv.shape[-1] == dim_plus_tail_dim
    tail_dim = dim_plus_tail_dim - dim
    assert kv.shape[0] == batch
    _, _, _, topk = indices.shape
    assert indices.shape == (batch, seq_len, kv_group, topk)

201
202
203
204
205
206
207
208
209
210
211
    kernel = sparse_mla_fwd(
        heads,
        dim,
        tail_dim,
        topk,
        kv_group,
        sm_scale,
        is_casual,
        block_I=block_I,
        num_stages=num_stages,
        threads=threads)
212
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
    out, lse = kernel(q, kv, indices)
    return out, lse


def ref_sparse_mla_fwd_interface(q, kv, indices, sm_scale=None, is_casual=True):
    q = q.float()
    kv = kv.float()
    indices = indices.transpose(1, 2)
    b, sq, h, dim_q = q.shape
    b, sk, g, _ = kv.shape

    assert kv.shape[-1] == 576, "you should assign dim otherwise"
    dim = 512
    k = kv
    v = kv[..., :dim]

    b, _, _, dim_v = v.shape
    g_index = g
    h_index = h // g
    compressed_casual_mask = torch.arange(
        0, sq, dtype=torch.int32, device="cuda").view(-1, 1) >= torch.arange(
            1 - 1, sk * 1, 1, dtype=torch.int32, device="cuda").view(1, -1)

    mask = q.new_zeros(b, g_index, sq, sk + 1, dtype=torch.bool).scatter(3, indices.long(), 1)
    mask = mask[..., :-1]
    mask = mask & compressed_casual_mask.view(1, 1, sq, sk)
    mask[:, :, :1 - 1, 0] = True
    mask = mask.view(b, g_index, 1, sq, sk)

    q = q.view(b, sq, g, -1, dim_q)
    score = torch.einsum("bmghd,bngd->bghmn", q, k)
    sm_scale = dim_q**-0.5 if sm_scale is None else sm_scale
    score = score.masked_fill(~mask, float("-inf")).mul(sm_scale)
    p = score.softmax(dim=-1)
    p = p.view(b, g_index, h_index, -1, sq, sk)
    p = p.view(b, g, -1, sq, sk)
    o = torch.einsum("bghmn,bngd->bmghd", p.type(v.dtype), v)
    o = o.reshape(b, sq, h, dim_v)
    return o.to(torch.bfloat16)


253
254
def test_sparse_mla_fwd(B=1,
                        S=4096,
255
                        SKV=8192,
256
257
258
259
260
                        H=128,
                        HKV=1,
                        DQK=576,
                        DV=512,
                        topk=2048,
261
                        dtype=torch.bfloat16,
262
263
264
265
                        check_correctness=True,
                        block_I=64,
                        num_stages=2,
                        threads=256):
266
267
268
269
270
271
272
273
274
275
276
    torch.random.manual_seed(0)
    q = torch.randn((B, S, H, DQK), dtype=dtype, device="cuda").requires_grad_(True)
    kv = torch.randn((B, SKV, HKV, DQK), dtype=dtype, device="cuda").requires_grad_(True)

    indices = torch.full((B, S, HKV, topk), SKV, dtype=torch.int32, device="cuda")
    for b in range(B):
        for t in range(S):
            for h in range(HKV):
                i_i = torch.randperm(max(1, t))[:topk]
                indices[b, t, h, :len(i_i)] = i_i

277
278
    tl_out, tl_lse = sparse_mla_fwd_interface(
        q, kv, indices, block_I=block_I, num_stages=num_stages, threads=threads)
279

280
    if check_correctness:
281
282
283
284
285
        # otherwise may cause out of memory
        ref_out = ref_sparse_mla_fwd_interface(q, kv, indices)
        assert_tensors_similar(tl_out, ref_out, eps=1e-2, name="out")
        print("assert_tensors_similar passed")

286
    def fn():
287
288
        return sparse_mla_fwd_interface(
            q, kv, indices, block_I=block_I, num_stages=num_stages, threads=threads)
289
290
291
292
293
294
295
296
297
298
299
300
301
302

    from tilelang.profiler import do_bench

    ms = do_bench(
        fn,
        rep=100,
        warmup=250,
    )
    print(f"Average time: {ms:.3f} ms")
    print("fwd io bandwidth = ", (B * S * DQK * topk * 2) / (ms * 1e-3) / 1e12)
    print("fwd tflops = ", (B * S * (DQK + DV) * topk * 2 * H) / (ms * 1e-3) / 1e12)


if __name__ == "__main__":
303
    test_sparse_mla_fwd(
304
305
306
307
308
309
310
311
312
        B=1,
        S=4096,
        SKV=4096,
        H=128,
        HKV=1,
        DQK=576,
        DV=512,
        topk=2048,
        dtype=torch.bfloat16,
313
314
315
316
        check_correctness=True,
        block_I=64,
        num_stages=2,
        threads=256)