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example_mla_decode_persistent.py
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import torch
import torch.nn.functional as F
import tilelang
from tilelang.autotuner import *
import tilelang.language as T
from tilelang.carver.arch import driver
from einops import rearrange, einsum
import argparse
@tilelang.jit(
out_idx=[6],
pass_configs={
tilelang.PassConfigKey.TL_ENABLE_FAST_MATH: True,
},
)
def flashattn(batch, heads, kv_head_num, seqlen_kv, dim, pe_dim, block_N, block_H, num_split):
scale = (1.0 / (dim + pe_dim)) ** 0.5 * 1.44269504 # log2(e)
dtype = T.float16
accum_dtype = T.float32
kv_group_num = heads // kv_head_num
VALID_BLOCK_H = min(block_H, kv_group_num)
assert kv_head_num == 1, "kv_head_num must be 1"
sm_num = driver.get_num_sms()
@T.prim_func
def main_split_persistent(
Q: T.Tensor([batch, heads, dim], dtype),
Q_pe: T.Tensor([batch, heads, pe_dim], dtype),
KV: T.Tensor([batch, seqlen_kv, kv_head_num, dim], dtype),
K_pe: T.Tensor([batch, seqlen_kv, kv_head_num, pe_dim], dtype),
glse: T.Tensor([batch, heads, num_split], dtype),
Output_partial: T.Tensor([batch, heads, num_split, dim], dtype),
Output: T.Tensor([batch, heads, dim], dtype),
):
with T.Kernel(sm_num, threads=256) as (block_id):
Q_shared = T.alloc_shared([block_H, dim], dtype)
S_shared = T.alloc_shared([block_H, block_N], dtype)
Q_pe_shared = T.alloc_shared([block_H, pe_dim], dtype)
KV_shared = T.alloc_shared([block_N, dim], dtype)
K_pe_shared = T.alloc_shared([block_N, pe_dim], dtype)
# O_shared = T.alloc_shared([block_H, dim], dtype)
acc_s = T.alloc_fragment([block_H, block_N], accum_dtype)
acc_s_cast = T.alloc_fragment([block_H, block_N], dtype)
acc_o = T.alloc_fragment([block_H, dim], accum_dtype)
scores_max = T.alloc_fragment([block_H], accum_dtype)
scores_max_prev = T.alloc_fragment([block_H], accum_dtype)
scores_scale = T.alloc_fragment([block_H], accum_dtype)
scores_sum = T.alloc_fragment([block_H], accum_dtype)
logsum = T.alloc_fragment([block_H], accum_dtype)
po_local = T.alloc_fragment([dim], dtype)
o_accum_local = T.alloc_fragment([dim], accum_dtype)
lse_local_split = T.alloc_var(accum_dtype)
lse_logsum_local = T.alloc_var(accum_dtype)
lse_max_local = T.alloc_var(accum_dtype)
scale_local = T.alloc_var(accum_dtype)
T.use_swizzle(10)
total_tiles = batch * (heads // min(block_H, kv_group_num)) * num_split
waves = T.ceildiv(total_tiles, sm_num)
for w in T.serial(waves):
tile_id = sm_num * w + block_id
bid = tile_id // ((heads // min(block_H, kv_group_num)) * num_split)
hid = tile_id // num_split % (heads // min(block_H, kv_group_num))
sid = tile_id % num_split
cur_kv_head = hid // (kv_group_num // block_H)
if bid < batch and hid * VALID_BLOCK_H < heads and sid < num_split:
T.copy(Q[bid, hid * VALID_BLOCK_H : (hid + 1) * VALID_BLOCK_H, :], Q_shared)
T.copy(Q_pe[bid, hid * VALID_BLOCK_H : (hid + 1) * VALID_BLOCK_H, :], Q_pe_shared)
T.fill(acc_o, 0)
T.fill(logsum, 0)
T.fill(scores_max, -T.infinity(accum_dtype))
loop_range = T.ceildiv((seqlen_kv // num_split), block_N)
for k in T.Pipelined(loop_range, num_stages=2):
kv_start = (seqlen_kv // num_split) * sid + k * block_N
kv_end = (seqlen_kv // num_split) * sid + (k + 1) * block_N
T.copy(KV[bid, kv_start:kv_end, cur_kv_head, :], KV_shared)
T.copy(K_pe[bid, kv_start:kv_end, cur_kv_head, :], K_pe_shared)
T.clear(acc_s)
T.gemm(Q_shared, KV_shared, acc_s, transpose_B=True, policy=T.GemmWarpPolicy.FullCol)
T.gemm(Q_pe_shared, K_pe_shared, acc_s, transpose_B=True, policy=T.GemmWarpPolicy.FullCol)
T.copy(scores_max, scores_max_prev)
T.fill(scores_max, -T.infinity(accum_dtype))
T.reduce_max(acc_s, scores_max, dim=1, clear=False)
for i in T.Parallel(block_H):
scores_max[i] = T.max(scores_max[i], scores_max_prev[i])
for i in T.Parallel(block_H):
scores_scale[i] = T.exp2(scores_max_prev[i] * scale - scores_max[i] * scale)
for i, j in T.Parallel(block_H, block_N):
acc_s[i, j] = T.exp2(acc_s[i, j] * scale - scores_max[i] * scale)
T.reduce_sum(acc_s, scores_sum, dim=1)
T.copy(acc_s, S_shared)
T.copy(S_shared, acc_s_cast)
for i in T.Parallel(block_H):
logsum[i] = logsum[i] * scores_scale[i] + scores_sum[i]
for i, j in T.Parallel(block_H, dim):
acc_o[i, j] *= scores_scale[i]
T.gemm(acc_s_cast, KV_shared, acc_o, policy=T.GemmWarpPolicy.FullCol)
for i, j in T.Parallel(block_H, dim):
acc_o[i, j] /= logsum[i]
for i in T.Parallel(block_H):
logsum[i] = T.log2(logsum[i]) + scores_max[i] * scale
T.copy(logsum, glse[bid, hid * VALID_BLOCK_H : (hid + 1) * VALID_BLOCK_H, sid])
# T.copy(acc_o, O_shared)
T.copy(acc_o, Output_partial[bid, hid * VALID_BLOCK_H : (hid + 1) * VALID_BLOCK_H, sid, :])
T.sync_grid()
waves = T.ceildiv(heads * batch, sm_num)
for w in T.serial(waves):
tile_id = sm_num * w + block_id
hid = tile_id // batch
bid = tile_id % batch
if bid < batch and hid < heads:
T.clear(lse_logsum_local)
T.clear(o_accum_local)
lse_max_local = -T.infinity(accum_dtype)
for k in T.serial(num_split):
lse_max_local = T.max(lse_max_local, glse[bid, hid, k])
for k in T.Pipelined(num_split, num_stages=1):
lse_local_split = glse[bid, hid, k]
lse_logsum_local += T.exp2(lse_local_split - lse_max_local)
lse_logsum_local = T.log2(lse_logsum_local) + lse_max_local
for k in T.serial(num_split):
for i in T.Parallel(dim):
po_local[i] = Output_partial[bid, hid, k, i]
lse_local_split = glse[bid, hid, k]
scale_local = T.exp2(lse_local_split - lse_logsum_local)
for i in T.Parallel(dim):
o_accum_local[i] += po_local[i] * scale_local
for i in T.Parallel(dim):
Output[bid, hid, i] = o_accum_local[i]
return main_split_persistent
def ref_program(q, q_pe, kv, k_pe, glse, Output_partial):
# """
# Inputs:
# - q (Tensor): [batch, heads, dim]
# - q_pe (Tensor): [batch, heads, pe_dim]
# - kv (Tensor): [batch, seqlen_kv, kv_head_num, dim]
# - k_pe (Tensor): [batch, seqlen_kv, kv_head_num, pe_dim]
# - glse (Tensor): [batch, heads, num_split]
# - Output_partial (Tensor): [batch, heads, num_split, dim]
# Outputs:
# - output (Tensor): [batch, heads, dim]
# """
dim = q.shape[-1]
pe_dim = q_pe.shape[-1]
num_head_groups = q.shape[1] // kv.shape[2]
scale = (dim + pe_dim) ** 0.5
q = rearrange(q, "b (h g) d -> b g h d", g=num_head_groups) # [batch_size, num_head_groups, groups, dim]
q_pe = rearrange(q_pe, "b (h g) d -> b g h d", g=num_head_groups) # [batch_size, num_head_groups, groups, pe_dim]
kv = rearrange(kv, "b n h d -> b h n d") # [batch_size, groups, seqlen_kv, dim]
k_pe = rearrange(k_pe, "b n h d -> b h n d") # [batch_size, num_head_groups, groups, pe_dim]
query = torch.concat([q, q_pe], dim=-1)
key = torch.concat([kv, k_pe], dim=-1)
scores = einsum(query, key, "b g h d, b h s d -> b g h s") # [batch_size, num_head_groups, groups, seqlen_kv]
attention = F.softmax(scores / scale, dim=-1) # [batch_size, num_head_groups, groups, seqlen_kv]
out = einsum(attention, kv, "b g h s, b h s d -> b g h d") # [batch_size, num_head_groups, groups, dim]
out = rearrange(out, "b g h d -> b (h g) d") # [batch_size, heads, dim]
return out
def main():
parser = argparse.ArgumentParser()
parser.add_argument("--batch", type=int, default=128, help="batch size")
parser.add_argument("--heads", type=int, default=128, help="q heads number")
parser.add_argument("--kv_heads", type=int, default=1, help="kv heads number")
parser.add_argument("--kv_ctx", type=int, default=8192, help="kv context length")
parser.add_argument("--dim", type=int, default=512, help="head dim")
parser.add_argument("--pe_dim", type=int, default=64, help="pe head dim")
args = parser.parse_args()
batch, heads, kv_heads, kv_ctx, dim, pe_dim = args.batch, args.heads, args.kv_heads, args.kv_ctx, args.dim, args.pe_dim
qk_flops = 2 * batch * heads * kv_ctx * (dim + pe_dim)
pv_flops = 2 * batch * heads * kv_ctx * dim
total_flops = qk_flops + pv_flops
BLOCK_N = 64
BLOCK_H = 64
num_split = 2
kernel = flashattn(batch, heads, kv_heads, kv_ctx, dim, pe_dim, BLOCK_N, BLOCK_H, num_split)
print(kernel.get_kernel_source())
profiler = kernel.get_profiler(tensor_supply_type=tilelang.TensorSupplyType.Randn)
profiler.assert_allclose(ref_program, rtol=0.01, atol=0.01)
latency = profiler.do_bench(warmup=500)
print(f"Latency: {latency} ms")
print(f"TFlops: {total_flops / latency * 1e-9} TFlops")
if __name__ == "__main__":
main()