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from collections import namedtuple
from functools import partial
import math
import os
from typing import NamedTuple
import torch
import torch.nn as nn
import torch.nn.functional as F
import time
try:
import cudnn
except ImportError:
cudnn = None
# cudnn = None
Timing = NamedTuple('timing', [('mean', float)])
from einops import rearrange, repeat
# from flash_attn.utils.benchmark import benchmark_forward, benchmark_backward, benchmark_combined, benchmark_all, benchmark_fwd_bwd, pytorch_profiler
from flash_attn.utils.benchmark import benchmark_forward, benchmark_backward, benchmark_combined, benchmark_all, benchmark_fwd_bwd, pytorch_profiler
from flash_attn.flash_attn_interface import flash_attn_func, flash_attn_varlen_func
from flash_attn.cute.interface import flash_attn_func as flash_attn_func_python
from flash_attn.cute.interface import flash_attn_varlen_func as flash_attn_varlen_func_python
try:
from flash_attn_interface import flash_attn_func as flash_attn_func_v3
from flash_attn_interface import flash_attn_varlen_func as flash_attn_varlen_func_v3
except ImportError:
flash_attn_func_v3 = None
flash_attn_varlen_func_v3 = None
if torch.cuda.get_device_capability()[0] != 9:
flash_attn_func_v3 = None
# flash_attn_func_v3 = None
flash_attn_func = None
from triton.testing import do_bench
def time_fwd(func, *args, repeats=30, verbose=True, desc="", **kwargs):
# # Warmup
# for _ in range(5):
# func(*args, **kwargs)
# time.sleep(1)
# return benchmark_forward(func, *args, **kwargs, repeats=repeats, verbose=verbose, desc=desc)[1]
# s = torch.cuda.Stream()
# s.wait_stream(torch.cuda.current_stream())
# with torch.cuda.stream(s):
# for _ in range(2):
# out = func(*args, **kwargs)
# torch.cuda.current_stream().wait_stream(s)
# graph = torch.cuda.CUDAGraph()
# with torch.cuda.graph(graph):
# out = func(*args, **kwargs)
# time_f = benchmark_forward(lambda: graph.replay(), repeats=repeats, verbose=verbose, desc=desc)
# # return time_f[1].mean
# return time_f[1]
return Timing(do_bench(lambda: func(*args, **kwargs), warmup=5, rep=repeats) * 1e-3)
def flops(batch, nheads, seqlen_q, seqlen_k, headdim, headdim_v, causal=False, window_size=(None, None)):
if causal:
avg_seqlen = (max(0, seqlen_k - seqlen_q) + seqlen_k) / 2
else:
if window_size == (None, None):
avg_seqlen = seqlen_k
else:
row_idx = torch.arange(seqlen_q, device='cuda')
col_left = torch.maximum(row_idx + seqlen_k - seqlen_q - window_size[0], torch.tensor(0)) if window_size[0] is not None else torch.zeros_like(row_idx)
col_right = torch.minimum(row_idx + seqlen_k - seqlen_q - window_size[1], torch.tensor(seqlen_k - 1)) if window_size[1] is not None else torch.full_like(row_idx, seqlen_k - 1)
avg_seqlen = (col_right - col_left + 1).float().mean().item()
return batch * nheads * 2 * seqlen_q * avg_seqlen * (headdim + headdim_v)
def convert_to_cudnn_type(torch_type):
if torch_type == torch.float16:
return cudnn.data_type.HALF
elif torch_type == torch.bfloat16:
return cudnn.data_type.BFLOAT16
elif torch_type == torch.float32:
return cudnn.data_type.FLOAT
elif torch_type == torch.int32:
return cudnn.data_type.INT32
elif torch_type == torch.int64:
return cudnn.data_type.INT64
else:
raise ValueError("Unsupported tensor data type.")
def cudnn_spda_setup(q, k, v, causal=False, window_size_left=None):
b, nheads, seqlen_q, headdim = q.shape
_, nheads_k, seqlen_k, _ = k.shape
headdim_v = v.shape[-1]
assert v.shape == (b, nheads_k, seqlen_k, headdim_v)
assert cudnn is not None, 'CUDNN is not available'
q_gpu, k_gpu, v_gpu = q, k, v
o_gpu = torch.empty((b, nheads, seqlen_q, headdim_v), dtype=q.dtype, device=q.device)
stats_gpu = torch.empty(b, nheads, seqlen_q, 1, dtype=torch.float32, device=q.device)
graph = cudnn.pygraph(
io_data_type=convert_to_cudnn_type(q.dtype),
intermediate_data_type=cudnn.data_type.FLOAT,
compute_data_type=cudnn.data_type.FLOAT,
)
q = graph.tensor_like(q_gpu.detach())
k = graph.tensor_like(k_gpu.detach())
v = graph.tensor_like(v_gpu.detach())
o, stats = graph.sdpa(
name="sdpa",
q=q,
k=k,
v=v,
is_inference=False,
attn_scale=1.0 / math.sqrt(headdim),
# use_causal_mask_bottom_right=causal or window_size_left is not None,
use_causal_mask=causal or window_size_left is not None,
sliding_window_length=window_size_left if window_size_left is not None and not causal else None,
)
o.set_output(True).set_dim(o_gpu.shape).set_stride(o_gpu.stride())
stats.set_output(True).set_data_type(cudnn.data_type.FLOAT)
graph.validate()
graph.build_operation_graph()
graph.create_execution_plans([cudnn.heur_mode.A, cudnn.heur_mode.FALLBACK])
graph.check_support()
graph.build_plans()
variant_pack = {
q: q_gpu,
k: k_gpu,
v: v_gpu,
o: o_gpu,
stats: stats_gpu,
}
workspace = torch.empty(graph.get_workspace_size(), device="cuda", dtype=torch.uint8)
def run(*args, **kwargs):
graph.execute(variant_pack, workspace)
return o_gpu
return run
def cudnn_spda_bwd_setup(q, k, v, o, g, lse, causal=False, window_size_left=None):
b, nheads, seqlen_q, headdim = q.shape
_, nheads_k, seqlen_k, _ = k.shape
headdim_v = v.shape[-1]
assert v.shape == (b, nheads_k, seqlen_k, headdim_v)
assert g.shape == (b, nheads, seqlen_q, headdim_v)
assert o.shape == (b, nheads, seqlen_q, headdim_v)
assert lse.shape == (b, nheads, seqlen_q, 1)
assert cudnn is not None, 'CUDNN is not available'
q_gpu, k_gpu, v_gpu, o_gpu, g_gpu = q, k, v, o, g
dq_gpu = torch.empty_like(q_gpu)
dk_gpu = torch.empty_like(k_gpu)
dv_gpu = torch.empty_like(v_gpu)
graph = cudnn.pygraph(
io_data_type=convert_to_cudnn_type(q.dtype),
intermediate_data_type=cudnn.data_type.FLOAT,
compute_data_type=cudnn.data_type.FLOAT,
)
q = graph.tensor_like(q_gpu.detach())
k = graph.tensor_like(k_gpu.detach())
v = graph.tensor_like(v_gpu.detach())
o = graph.tensor_like(o_gpu.detach())
g = graph.tensor_like(g_gpu.detach())
stats = graph.tensor_like(lse.detach())
dq, dk, dv = graph.sdpa_backward(
name="sdpa_backward",
q=q,
k=k,
v=v,
o=o,
dO=g,
stats=stats,
attn_scale=1.0 / math.sqrt(headdim),
# use_causal_mask_bottom_right=causal or window_size_left is not None,
use_causal_mask=causal or window_size_left is not None,
sliding_window_length=window_size_left if window_size_left is not None and not causal else None,
)
dq.set_output(True).set_dim(dq_gpu.shape).set_stride(dq_gpu.stride())
dk.set_output(True).set_dim(dk_gpu.shape).set_stride(dk_gpu.stride())
dv.set_output(True).set_dim(dv_gpu.shape).set_stride(dv_gpu.stride())
graph.validate()
graph.build_operation_graph()
graph.create_execution_plans([cudnn.heur_mode.A, cudnn.heur_mode.FALLBACK])
graph.check_support()
graph.build_plans()
variant_pack = {
q: q_gpu,
k: k_gpu,
v: v_gpu,
o: o_gpu,
g: g_gpu,
stats: lse,
dq: dq_gpu,
dk: dk_gpu,
dv: dv_gpu,
}
workspace = torch.empty(graph.get_workspace_size(), device="cuda", dtype=torch.uint8)
def run(*args, **kwargs):
graph.execute(variant_pack, workspace)
return dq_gpu, dk_gpu, dv_gpu
return run
torch.manual_seed(0)
repeats = 10
dropout_p = 0.0
causal = False
dtype = torch.bfloat16
# dtype = torch.float8_e4m3fn
dtype_gen = torch.bfloat16 if dtype == torch.float8_e4m3fn else dtype
device = 'cuda'
verbose = True
varlen = False
has_backward = False
page_size = None
# page_size = 128
softcap = 0.0
V_colmajor = False
deterministic = False
batch_size = 2
# seqlen = 2048
seqlen = 8192
# seqlen = 4096
# seqlen = 2047
dim = 2048
# headdim = 128
# headdim = 64
headdim = 256
# for headdim in [64, 128, 256]:
# bs_seqlen_vals = [(32, 512), (16, 1024), (8, 2048), (4, 4096), (2, 8192), (1, 16384)]
bs_seqlen_vals = [(32, 1024), (16, 2048), (8, 4096), (4, 8192), (2, 16384), (1, 32768)]
# bs_seqlen_vals = [(32, 512), (16, 1024)]
# bs_seqlen_vals = [(2, 64 * 132)]
# bs_seqlen_vals = [(4, 8192)]
# bs_seqlen_vals = [(1, 16 * 1024)]
time_f = {}
time_b = {}
# for headdim in [64, 128, 256]:
# for headdim in [64, 96, 128, 192]:
# for headdim in [64, 96, 128, 192, 256]:
# for headdim in [64, 96, 128]:
# for headdim in [64, 128, 256]:
# for headdim in [64, 96, 128, 192, 256]:
for headdim in [128]:
# nheads = dim // headdim
nheads = 32 if headdim <= 64 else 16 if headdim <= 192 else 8
# nheads = 128
# headdim = 64
# batch_size = 64
# seqlen = 512
# nheads = 8
# headdim = 128
# nheads_kv = nheads
nheads_kv = nheads // 8
# nheads_kv = 1
# headdim_v = headdim
headdim_v = 128 if headdim == 192 else headdim
# headdim_v = 512
has_qv = headdim == 64 and headdim_v == 512
# has_qv = False
# sinks = torch.randn(nheads, dtype=torch.bfloat16, device=device)
sinks = None
for batch_size, seqlen in bs_seqlen_vals:
num_splits = 0
# window_size = (-1, -1)
window_size = (None, None)
window_size_fa = (-1, -1)
# window_size = (seqlen // 2 - 1, 0)
pack_gqa = None
# seqlen_q = 64
seqlen_q = seqlen
leftpad_k = None
# leftpad_k = torch.full((batch_size,), 0, device=device, dtype=torch.int32)
q = torch.randn(batch_size, seqlen_q, nheads, headdim, device=device, dtype=dtype_gen, requires_grad=has_backward)
k = torch.randn(batch_size, seqlen, nheads_kv, headdim, device=device, dtype=dtype_gen, requires_grad=has_backward)
v = torch.randn(batch_size, seqlen, nheads_kv, headdim_v, device=device, dtype=dtype_gen, requires_grad=has_backward)
q, k, v = [x.detach().to(dtype).requires_grad_(has_backward) for x in [q, k, v]]
v_colmajor = v.detach().transpose(-1, -3).contiguous().transpose(-1, -3).requires_grad_(has_backward)
v_fa3 = v if not V_colmajor else v_colmajor
qv = torch.randn(batch_size, seqlen_q, nheads, headdim_v, device=device, dtype=dtype_gen) if has_qv else None
# q = torch.randint(-2, 3, (batch_size, seqlen, nheads, headdim), device=device, dtype=torch.int32).to(dtype)
# k = torch.randint(-2, 3, (batch_size, seqlen, nheads, headdim), device=device, dtype=torch.int32).to(dtype)
# v = torch.randint(-2, 3, (batch_size, seqlen, nheads, headdim_v), device=device, dtype=torch.int32).to(dtype)
g = torch.randn(batch_size, seqlen_q, nheads, headdim_v, device=device, dtype=dtype_gen)
o = torch.randn(batch_size, seqlen_q, nheads, headdim_v, device=device, dtype=dtype_gen)
stats = torch.randn(batch_size, seqlen_q, nheads, 1, device=device, dtype=torch.float32)
if varlen:
q_unpad, k_unpad, v_unpad = [rearrange(x.detach(), "b s h d -> (b s) h d").requires_grad_(has_backward) for x in [q, k, v]]
cu_seqlens_q = torch.arange(batch_size + 1, device=device, dtype=torch.int32) * seqlen_q
cu_seqlens_k = torch.arange(batch_size + 1, device=device, dtype=torch.int32) * seqlen if page_size is None else None
# cu_seqlens_q = torch.tensor([0, 248, 249, 250, 251, 252, 253, 254, 255, 256], device=device, dtype=torch.int32)
# q_unpad = q_unpad[:256]
# seqlen_q = 256
# cu_seqlens_q = torch.tensor([0, 376, 377, 378, 379, 380, 381, 382, 383, 384], device=device, dtype=torch.int32)
# q_unpad = q_unpad[:384]
# seqlen_q = 384
if page_size is not None:
assert seqlen % page_size == 0
k_paged, v_paged = [rearrange(x, "b (n p) h d -> (b n) p h d", p=page_size) for x in [k, v]]
page_table = rearrange(torch.arange(batch_size * seqlen // page_size, device=device, dtype=torch.int32),
"(b s) -> b s", s=seqlen // page_size)
else:
page_table = None
# for causal in [False, True]:
for causal in [True]:
print(f"\n### {headdim = }, {causal = }, {seqlen = } ###")
nFLOPS = flops(batch_size, nheads, seqlen_q, seqlen, headdim if not has_qv else headdim + headdim_v, headdim_v, causal=causal, window_size=window_size)
if cudnn is not None:
# if False:
if headdim <= 256 and dtype != torch.float8_e4m3fn:
cudnn_spda = cudnn_spda_setup(q.transpose(1, 2), k.transpose(1, 2), v.transpose(1, 2), causal=causal, window_size_left=window_size[0])
if has_backward and headdim == headdim_v:
cudnn_spda_bwd = cudnn_spda_bwd_setup(q.transpose(1, 2), k.transpose(1, 2), v.transpose(1, 2), o.transpose(1, 2), g.transpose(1, 2), stats.transpose(1, 2), causal=causal, window_size_left=window_size[0])
if dtype != torch.float8_e4m3fn and headdim == headdim_v and flash_attn_func is not None:
# if False:
if not varlen:
m0 = time_fwd(flash_attn_func, q, k, v, dropout_p, causal=causal, window_size=window_size, softcap=softcap, repeats=repeats, verbose=verbose, desc='Fav2')
else:
m0 = time_fwd(flash_attn_varlen_func, q_unpad, k_unpad, v_unpad, cu_seqlens_q, cu_seqlens_k, seqlen_q, seqlen, dropout_p, causal=causal, window_size=window_size, softcap=softcap, repeats=repeats, verbose=verbose, desc='Fav2')
time_f[(causal, headdim, batch_size, seqlen), "Flash2"] = m0.mean
if has_backward:
time.sleep(1)
if not varlen:
_, m0b = benchmark_backward(flash_attn_func, q, k, v, dropout_p, causal=causal, window_size=window_size, softcap=softcap, deterministic=deterministic,
repeats=repeats, verbose=False, desc='Fav2')
else:
_, m0b = benchmark_backward(flash_attn_varlen_func, q_unpad, k_unpad, v_unpad, cu_seqlens_q, cu_seqlens_k, seqlen_q, seqlen, dropout_p, causal=causal, window_size=window_size, softcap=softcap, deterministic=deterministic,
repeats=repeats, verbose=False, desc='Fav2')
time_b[(causal, headdim, batch_size, seqlen), "Flash2"] = m0b.mean
# pytorch_profiler(flash_attn_func, q, k, v, dropout_p, causal=causal, backward=True)
if cudnn is not None:
# if False:
if headdim <= 256 and dtype != torch.float8_e4m3fn:
time.sleep(1) # Sleep to avoid residual power throttling from the previous benchmark
m2 = time_fwd(cudnn_spda, repeats=repeats, verbose=verbose, desc='CuDNN')
time_f[(causal, headdim, batch_size, seqlen), "cuDNN"] = m2.mean
if has_backward:
time.sleep(1)
m2b = time_fwd(cudnn_spda_bwd, repeats=repeats, verbose=verbose, desc='CuDNN')
time_b[(causal, headdim, batch_size, seqlen), "cuDNN"] = m2b.mean
# pytorch_profiler(cudnn_spda, backward=False)
# pytorch_profiler(cudnn_spda_bwd, backward=False)
time.sleep(1)
if flash_attn_func_v3 is not None:
if not varlen:
# m1 = time_fwd(flash_attn_func_v3, q, k if page_size is None else k_paged, v_fa3 if page_size is None else v_paged, cache_leftpad = leftpad_k, page_table=page_table, causal=causal, window_size=window_size, softcap=softcap, num_splits=num_splits, pack_gqa=pack_gqa, repeats=repeats, verbose=verbose, desc='Fav3')
m1 = time_fwd(flash_attn_func_v3, q, k if page_size is None else k_paged, v_fa3 if page_size is None else v_paged, causal=causal, window_size=window_size_fa, softcap=softcap, num_splits=num_splits, pack_gqa=pack_gqa, repeats=repeats, verbose=verbose, desc='Fav3')
# pytorch_profiler(flash_attn_func_v3, q, k if page_size is None else k_paged, v_fa3 if page_size is None else v_paged, page_table=page_table, causal=causal, window_size=window_size, softcap=softcap, num_splits=num_splits, pack_gqa=pack_gqa)
else:
m1 = time_fwd(flash_attn_varlen_func_v3, q_unpad, k_unpad, v_unpad, cu_seqlens_q, cu_seqlens_k, seqlen_q, seqlen, causal=causal, window_size=window_size_fa, softcap=softcap, num_splits=num_splits, pack_gqa=pack_gqa, repeats=repeats, verbose=verbose, desc='Fav3')
# pytorch_profiler(flash_attn_varlen_func_v3, q_unpad, k_unpad, v_unpad, cu_seqlens_q, cu_seqlens_k, seqlen_q, seqlen, causal=causal, window_size=window_size, softcap=softcap, num_splits=num_splits)
time_f[(causal, headdim, batch_size, seqlen), "Flash3"] = m1.mean
if flash_attn_func_python is not None:
if not varlen:
m1_py = time_fwd(flash_attn_func_python, q, k if page_size is None else k_paged, v_fa3 if page_size is None else v_paged, causal=causal, window_size=window_size, learnable_sink=sinks, softcap=softcap, pack_gqa=pack_gqa, repeats=repeats, verbose=verbose, desc='Fav3 python')
else:
m1_py = time_fwd(flash_attn_varlen_func_python, q_unpad, k_unpad if page_size is None else k_paged, v_unpad if page_size is None else v_paged, cu_seqlens_q, cu_seqlens_k, page_table=page_table, causal=causal, window_size=window_size, softcap=softcap, pack_gqa=pack_gqa, repeats=repeats, verbose=verbose, desc='Fav3 python')
if dtype != torch.float8_e4m3fn and headdim == headdim_v and flash_attn_func_v3 is not None and has_backward:
time.sleep(1)
if not varlen:
_, m1b = benchmark_backward(flash_attn_func_v3, q, k, v, causal=causal, softcap=softcap, repeats=repeats, verbose=False, desc='Fav3')
else:
_, m1b = benchmark_backward(flash_attn_varlen_func_v3, q_unpad, k_unpad, v_unpad, cu_seqlens_q, cu_seqlens_k, seqlen_q, seqlen, causal=causal, window_size=window_size, softcap=softcap, deterministic=deterministic,
repeats=repeats, verbose=False, desc='Fav3')
time_b[(causal, headdim, batch_size, seqlen), "Flash3"] = m1b.mean
# time.sleep(1)
# if not varlen:
# pytorch_profiler(flash_attn_func_v3, q, k, v, causal=causal, deterministic=deterministic, backward=True)
# else:
# pytorch_profiler(flash_attn_varlen_func_v3, q_unpad, k_unpad, v_unpad, cu_seqlens_q, cu_seqlens_k, seqlen_q, seqlen, causal=causal, deterministic=deterministic, backward=True)
# benchmark_forward(torch.clone, k, repeats=repeats, verbose=verbose, desc='Memcpy')
if dtype != torch.float8_e4m3fn and headdim == headdim_v and flash_attn_func_python is not None and has_backward:
_, m1b_py = benchmark_backward(flash_attn_func_python, q, k, v, causal=causal, softcap=softcap, repeats=repeats, verbose=False, desc='Fav2 python')
if dtype != torch.float8_e4m3fn and headdim == headdim_v and flash_attn_func is not None:
# if False:
print(f'FAv2 fwd: {m0.mean * 1e3:.3f}ms, {(nFLOPS / m0.mean * 1e-12):.1f} TFLOPS')
if has_backward:
print(f'FAv2 bwd: {m0b.mean * 1e3:.3f}ms, {(2.5 * nFLOPS / m0b.mean * 1e-12):.1f} TFLOPS')
if cudnn is not None:
print(f'CuDNN fwd: {m2.mean * 1e3:.3f}ms, {(nFLOPS / m2.mean * 1e-12):.1f} TFLOPS')
if has_backward:
print(f'CuDNN bwd: {m2b.mean * 1e3:.3f}ms, {(2.5 * nFLOPS / m2b.mean * 1e-12):.1f} TFLOPS')
if flash_attn_func_v3 is not None:
print(f'FAv3 fwd: {m1.mean * 1e3:.3f}ms, {(nFLOPS / m1.mean * 1e-12):.1f} TFLOPS')
if dtype != torch.float8_e4m3fn and headdim == headdim_v and has_backward:
print(f'FAv3 bwd: {m1b.mean * 1e3:.3f}ms, {(2.5 * nFLOPS / m1b.mean * 1e-12):.1f} TFLOPS')
if flash_attn_func_python is not None:
print(f'FA Python fwd: {m1_py.mean * 1e3:.3f}ms, {(nFLOPS / m1_py.mean * 1e-12):.1f} TFLOPS')
if dtype != torch.float8_e4m3fn and headdim == headdim_v and has_backward:
print(f'FAv2 Python bwd: {m1b_py.mean * 1e3:.3f}ms, {(2.5 * nFLOPS / m1b_py.mean * 1e-12):.1f} TFLOPS')