Files
sglang/test/srt/test_bench_serving.py
2024-12-08 20:55:04 +08:00

167 lines
5.7 KiB
Python

import unittest
from sglang.test.test_utils import (
DEFAULT_FP8_MODEL_NAME_FOR_TEST,
DEFAULT_MODEL_NAME_FOR_TEST,
DEFAULT_MOE_MODEL_NAME_FOR_TEST,
is_in_ci,
run_bench_serving,
write_github_step_summary,
)
class TestBenchServing(unittest.TestCase):
def test_offline_throughput_default(self):
res = run_bench_serving(
model=DEFAULT_MODEL_NAME_FOR_TEST,
num_prompts=500,
request_rate=float("inf"),
other_server_args=[],
)
if is_in_ci():
write_github_step_summary(
f"### test_offline_throughput_default\n"
f'Output throughput: {res["output_throughput"]:.2f} token/s\n'
)
self.assertGreater(res["output_throughput"], 3350)
def test_offline_throughput_non_stream_small_batch_size(self):
res = run_bench_serving(
model=DEFAULT_MODEL_NAME_FOR_TEST,
num_prompts=200,
request_rate=float("inf"),
other_server_args=["--max-running-requests", "10"],
dataset_name="sharegpt",
random_input_len=None,
random_output_len=None,
disable_stream=True,
need_warmup=True,
)
if is_in_ci():
write_github_step_summary(
f"### test_offline_throughput_non_stream_small_batch_size\n"
f'Output throughput: {res["output_throughput"]:.2f} token/s\n'
)
# There is a regression with torch 2.5
# This number was 950 for torch 2.4
self.assertGreater(res["output_throughput"], 800)
def test_offline_throughput_without_radix_cache(self):
res = run_bench_serving(
model=DEFAULT_MODEL_NAME_FOR_TEST,
num_prompts=500,
request_rate=float("inf"),
other_server_args=["--disable-radix-cache"],
)
if is_in_ci():
write_github_step_summary(
f"### test_offline_throughput_without_radix_cache\n"
f'Output throughput: {res["output_throughput"]:.2f} token/s\n'
)
self.assertGreater(res["output_throughput"], 3350)
def test_offline_throughput_without_chunked_prefill(self):
res = run_bench_serving(
model=DEFAULT_MODEL_NAME_FOR_TEST,
num_prompts=500,
request_rate=float("inf"),
other_server_args=["--chunked-prefill-size", "-1"],
)
if is_in_ci():
write_github_step_summary(
f"### test_offline_throughput_without_chunked_prefill\n"
f'Output throughput: {res["output_throughput"]:.2f} token/s\n'
)
self.assertGreater(res["output_throughput"], 2600)
def test_offline_throughput_with_triton_attention_backend(self):
res = run_bench_serving(
model=DEFAULT_MODEL_NAME_FOR_TEST,
num_prompts=500,
request_rate=float("inf"),
other_server_args=[
"--attention-backend",
"triton",
"--context-length",
"8192",
],
)
if is_in_ci():
write_github_step_summary(
f"### test_offline_throughput_with_triton_attention_backend\n"
f'Output throughput: {res["output_throughput"]:.2f} token/s\n'
)
self.assertGreater(res["output_throughput"], 3450)
def test_offline_throughput_default_fp8(self):
res = run_bench_serving(
model=DEFAULT_FP8_MODEL_NAME_FOR_TEST,
num_prompts=500,
request_rate=float("inf"),
other_server_args=[],
)
if is_in_ci():
write_github_step_summary(
f"### test_offline_throughput_default_fp8\n"
f'Output throughput: {res["output_throughput"]:.2f} token/s\n'
)
self.assertGreater(res["output_throughput"], 3850)
def test_online_latency_default(self):
res = run_bench_serving(
model=DEFAULT_MODEL_NAME_FOR_TEST,
num_prompts=100,
request_rate=1,
other_server_args=[],
)
if is_in_ci():
write_github_step_summary(
f"### test_online_latency_default\n"
f'median_e2e_latency_ms : {res["median_e2e_latency_ms"]:.2f} ms\n'
)
self.assertLess(res["median_e2e_latency_ms"], 12000)
self.assertLess(res["median_ttft_ms"], 86)
self.assertLess(res["median_itl_ms"], 10)
def test_moe_offline_throughput_default(self):
res = run_bench_serving(
model=DEFAULT_MOE_MODEL_NAME_FOR_TEST,
num_prompts=300,
request_rate=float("inf"),
other_server_args=["--tp", "2"],
)
if is_in_ci():
write_github_step_summary(
f"### test_moe_offline_throughput_default\n"
f'Output throughput: {res["output_throughput"]:.2f} token/s\n'
)
self.assertGreater(res["output_throughput"], 2150)
def test_moe_offline_throughput_without_radix_cache(self):
res = run_bench_serving(
model=DEFAULT_MOE_MODEL_NAME_FOR_TEST,
num_prompts=300,
request_rate=float("inf"),
other_server_args=["--tp", "2", "--disable-radix-cache"],
)
if is_in_ci():
write_github_step_summary(
f"### test_moe_offline_throughput_without_radix_cache\n"
f'Output throughput: {res["output_throughput"]:.2f} token/s\n'
)
self.assertGreater(res["output_throughput"], 2150)
if __name__ == "__main__":
unittest.main()