mlx/benchmarks/python/sdpa_bench.py
Nikhil Mehta 0b7d71fd2f
Add softmin, hardshrink, hardtanh (#1180)
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Co-authored-by: Nikhil Mehta <nikmehta@tesla.com>
2024-06-04 15:48:18 -07:00

63 lines
1.7 KiB
Python

import argparse
import math
import mlx.core as mx
from time_utils import time_fn
MAX_SEQ = 300
START_SEQ = 100
SEQ_INCREMENT = 50
def time_self_attention_primitives():
mx.random.seed(3)
B = 2
H = 38
D = 64
for R in range(START_SEQ, MAX_SEQ, SEQ_INCREMENT):
q = mx.random.uniform(shape=(B, H, R, D))
k = mx.random.uniform(shape=(B, H, R, D))
v = mx.random.uniform(shape=(B, H, R, D))
scale = 1.0 / math.sqrt(float(D))
mx.eval(q, k, v)
def sdpa_primitives(qs, ks, vs, alpha):
s = (alpha * qs) @ ks.transpose(0, 1, 3, 2)
p = mx.softmax(s.astype(mx.float32), axis=-1).astype(s.dtype)
o = p @ vs
return o
time_fn(sdpa_primitives, q, k, v, scale)
def time_self_attention_sdpa():
mx.random.seed(3)
B = 2
H = 38
D = 64
for R in range(START_SEQ, MAX_SEQ, SEQ_INCREMENT):
q = mx.random.uniform(shape=(B, H, R, D))
k = mx.random.uniform(shape=(B, H, R, D))
v = mx.random.uniform(shape=(B, H, R, D))
scale = 1.0 / math.sqrt(float(D))
mx.eval(q, k, v)
def sdpa_fused(qs, ks, vs, alpha):
o = mx.fast.scaled_dot_product_attention(qs, ks, vs, scale=alpha)
return o
time_fn(sdpa_fused, q, k, v, scale)
if __name__ == "__main__":
parser = argparse.ArgumentParser("MLX benchmarks.")
parser.add_argument("--gpu", action="store_true", help="Use the Metal back-end.")
args = parser.parse_args()
if args.gpu:
mx.set_default_device(mx.gpu)
else:
mx.set_default_device(mx.cpu)
time_self_attention_sdpa()
time_self_attention_primitives()