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chore: import upstream snapshot with attribution
2026-07-13 13:23:58 +08:00

242 lines
7.8 KiB
Python

from typing import List # noqa: UP035
from mlc_llm.protocol.generation_config import GenerationConfig
from mlc_llm.serve import EngineConfig, MLCEngine
from mlc_llm.testing import require_test_model
prompts = [
"What is the meaning of life?",
"Introduce the history of Pittsburgh to me. Please elaborate in detail.",
"Write a three-day Seattle travel plan. Please elaborate in detail.",
"What is Alaska famous of? Please elaborate in detail.",
"What is the difference between Lambda calculus and Turing machine? Please elaborate in detail.", # noqa: E501
"What are the necessary components to assemble a desktop computer? Please elaborate in detail.",
"Why is Vitamin D important to human beings? Please elaborate in detail.",
"Where is milk tea originated from? Please elaborate in detail.",
"Where is the southernmost place in United States? Please elaborate in detail.",
"Do you know AlphaGo? What capabilities does it have, and what achievements has it got? Please elaborate in detail.", # noqa: E501
]
@require_test_model("Llama-2-7b-chat-hf-q0f16-MLC")
def test_engine_generate(model: str):
# Create engine
engine = MLCEngine(
model=model,
mode="server",
engine_config=EngineConfig(
max_total_sequence_length=4096,
),
)
num_requests = 10
max_tokens = 256
generation_cfg = GenerationConfig(max_tokens=max_tokens, n=7)
output_texts: List[List[str]] = [ # noqa: UP006
["" for _ in range(generation_cfg.n)] for _ in range(num_requests)
]
for rid in range(num_requests):
print(f"generating for request {rid}")
for delta_outputs in engine._generate(prompts[rid], generation_cfg, request_id=str(rid)):
assert len(delta_outputs) == generation_cfg.n
for i, delta_output in enumerate(delta_outputs):
output_texts[rid][i] += delta_output.delta_text
# Print output.
print("All finished")
for req_id, outputs in enumerate(output_texts):
print(f"Prompt {req_id}: {prompts[req_id]}")
if len(outputs) == 1:
print(f"Output {req_id}:{outputs[0]}\n")
else:
for i, output in enumerate(outputs):
print(f"Output {req_id}({i}):{output}\n")
engine.terminate()
del engine
@require_test_model("Llama-2-7b-chat-hf-q0f16-MLC")
def test_chat_completion(model: str):
# Create engine
engine = MLCEngine(
model=model,
mode="server",
engine_config=EngineConfig(
max_total_sequence_length=4096,
),
)
num_requests = 2
max_tokens = 64
n = 2
output_texts: List[List[str]] = [["" for _ in range(n)] for _ in range(num_requests)] # noqa: UP006
for rid in range(num_requests):
print(f"chat completion for request {rid}")
for response in engine.chat.completions.create(
messages=[{"role": "user", "content": prompts[rid]}],
model=model,
max_tokens=max_tokens,
n=n,
request_id=str(rid),
stream=True,
):
for choice in response.choices:
assert choice.delta.role == "assistant"
assert isinstance(choice.delta.content, str)
output_texts[rid][choice.index] += choice.delta.content
# Print output.
print("Chat completion all finished")
for req_id, outputs in enumerate(output_texts):
print(f"Prompt {req_id}: {prompts[req_id]}")
if len(outputs) == 1:
print(f"Output {req_id}:{outputs[0]}\n")
else:
for i, output in enumerate(outputs):
print(f"Output {req_id}({i}):{output}\n")
engine.terminate()
del engine
@require_test_model("Llama-2-7b-chat-hf-q0f16-MLC")
def test_chat_completion_non_stream(model: str):
# Create engine
engine = MLCEngine(
model=model,
mode="server",
engine_config=EngineConfig(
max_total_sequence_length=4096,
),
)
num_requests = 2
max_tokens = 64
n = 2
output_texts: List[List[str]] = [["" for _ in range(n)] for _ in range(num_requests)] # noqa: UP006
for rid in range(num_requests):
print(f"chat completion for request {rid}")
response = engine.chat.completions.create(
messages=[{"role": "user", "content": prompts[rid]}],
model=model,
max_tokens=max_tokens,
n=n,
request_id=str(rid),
)
for choice in response.choices:
assert choice.message.role == "assistant"
assert isinstance(choice.message.content, str)
output_texts[rid][choice.index] += choice.message.content
# Print output.
print("Chat completion all finished")
for req_id, outputs in enumerate(output_texts):
print(f"Prompt {req_id}: {prompts[req_id]}")
if len(outputs) == 1:
print(f"Output {req_id}:{outputs[0]}\n")
else:
for i, output in enumerate(outputs):
print(f"Output {req_id}({i}):{output}\n")
engine.terminate()
del engine
@require_test_model("Llama-2-7b-chat-hf-q0f16-MLC")
def test_completion(model: str):
# Create engine
engine = MLCEngine(
model=model,
mode="server",
engine_config=EngineConfig(
max_total_sequence_length=4096,
),
)
num_requests = 2
max_tokens = 128
n = 1
output_texts: List[List[str]] = [["" for _ in range(n)] for _ in range(num_requests)] # noqa: UP006
for rid in range(num_requests):
print(f"completion for request {rid}")
for response in engine.completions.create(
prompt=prompts[rid],
model=model,
max_tokens=max_tokens,
n=n,
request_id=str(rid),
stream=True,
extra_body={"debug_config": {"ignore_eos": True}},
):
for choice in response.choices:
output_texts[rid][choice.index] += choice.text
# Print output.
print("Completion all finished")
for req_id, outputs in enumerate(output_texts):
print(f"Prompt {req_id}: {prompts[req_id]}")
if len(outputs) == 1:
print(f"Output {req_id}:{outputs[0]}\n")
else:
for i, output in enumerate(outputs):
print(f"Output {req_id}({i}):{output}\n")
engine.terminate()
del engine
@require_test_model("Llama-2-7b-chat-hf-q0f16-MLC")
def test_completion_non_stream(model: str):
# Create engine
engine = MLCEngine(
model=model,
mode="server",
engine_config=EngineConfig(
max_total_sequence_length=4096,
),
)
num_requests = 2
max_tokens = 128
n = 1
output_texts: List[List[str]] = [["" for _ in range(n)] for _ in range(num_requests)] # noqa: UP006
for rid in range(num_requests):
print(f"completion for request {rid}")
response = engine.completions.create(
prompt=prompts[rid],
model=model,
max_tokens=max_tokens,
n=n,
request_id=str(rid),
extra_body={"debug_config": {"ignore_eos": True}},
)
for choice in response.choices:
output_texts[rid][choice.index] += choice.text
# Print output.
print("Completion all finished")
for req_id, outputs in enumerate(output_texts):
print(f"Prompt {req_id}: {prompts[req_id]}")
if len(outputs) == 1:
print(f"Output {req_id}:{outputs[0]}\n")
else:
for i, output in enumerate(outputs):
print(f"Output {req_id}({i}):{output}\n")
engine.terminate()
del engine
if __name__ == "__main__":
test_engine_generate()
test_chat_completion()
test_chat_completion_non_stream()
test_completion()
test_completion_non_stream()