Organize Benchmark (#381)

This commit is contained in:
Liangsheng Yin
2024-05-05 16:14:17 +08:00
committed by GitHub
parent 183df47282
commit 14522e6a26
36 changed files with 829 additions and 809 deletions

View File

@@ -6,12 +6,7 @@ from functools import partial
from tqdm import tqdm
from sglang.test.test_utils import (
add_common_other_args_and_parse,
call_generate_lightllm,
call_generate_srt_raw,
call_generate_vllm,
)
from sglang.test.test_utils import add_common_other_args_and_parse, get_call_generate
from sglang.utils import dump_state_text, read_jsonl
number = 5
@@ -70,48 +65,43 @@ def main(args):
states = [None] * len(lines)
# Select backend
if args.backend == "lightllm":
url = f"{args.host}:{args.port}/generate"
generate = partial(call_generate_lightllm, url=url, temperature=0)
elif args.backend == "vllm":
url = f"{args.host}:{args.port}/generate"
generate = partial(call_generate_vllm, url=url, temperature=0)
elif args.backend == "srt-raw":
url = f"{args.host}:{args.port}/generate"
generate = partial(call_generate_srt_raw, url=url, temperature=0)
elif args.backend == "guidance":
from guidance import gen, models
model = models.LlamaCpp(
"/home/ubuntu/model_weights/Llama-2-7b-chat.gguf",
n_gpu_layers=-1,
n_ctx=4096,
)
def generate(prompt, max_tokens, stop):
out = (
model
+ prompt
+ gen(name="answer", max_tokens=max_tokens, temperature=0, stop=stop)
)
return out["answer"]
# warmup
generate("Hello!", max_tokens=8, stop=None)
else:
raise ValueError(f"Invalid backend: {args.backend}")
call_generate = partial(get_call_generate(args), temperature=0)
# Run requests
def get_one_answer(i):
states[i] = suggest_tips(lines[i]["topic"], generate)
tic = time.time()
if args.parallel == 1:
for i in tqdm(range(len(lines))):
get_one_answer(i)
if args.backend != "lmql":
def get_one_answer(i):
states[i] = suggest_tips(lines[i]["topic"], call_generate)
if args.parallel == 1:
for i in tqdm(range(len(lines))):
get_one_answer(i)
else:
with ThreadPoolExecutor(args.parallel) as executor:
list(
tqdm(
executor.map(get_one_answer, list(range(len(lines)))),
total=len(lines),
)
)
else:
with ThreadPoolExecutor(args.parallel) as executor:
executor.map(get_one_answer, list(range(len(lines))))
import asyncio
from lmql_funcs import suggest_tips_async
async def get_one_answer_async(i):
states[i] = await suggest_tips_async(lines[i]["topic"], call_generate)
batches = []
for i in range(0, len(lines), args.parallel):
batches.append(list(range(i, min(i + args.parallel, len(lines)))))
loop = asyncio.get_event_loop()
for batch in tqdm(batches):
loop.run_until_complete(
asyncio.gather(*[get_one_answer_async(i) for i in batch])
)
latency = time.time() - tic
# Compute accuracy