Files
xc-llm-ascend/tests/e2e/singlecard/pooling/test_scoring.py
wjunLu 73a3f822c7 [Main2Main] Upgrade vllm commit to releases/v0.14.0 (#5911)
### What this PR does / why we need it?
Upgrade vllm commit to releases/v0.14.0

- Re-open cases in `tests/e2e/singlecard/pooling/test_scoring.py`, since
the errors before have been fixed by
https://github.com/vllm-project/vllm/pull/32243
### Does this PR introduce _any_ user-facing change?

### How was this patch tested?

- vLLM version: v0.13.0
- vLLM main:
11b6af5280

Signed-off-by: wjunLu <wjunlu217@gmail.com>
2026-01-15 23:22:43 +08:00

187 lines
5.7 KiB
Python

# SPDX-License-Identifier: Apache-2.0
# SPDX-FileCopyrightText: Copyright contributors to the vLLM project
import pytest
import torch
import torch.nn.functional as F
from modelscope import snapshot_download # type: ignore[import-untyped]
from tests.e2e.conftest import HfRunner, VllmRunner
CROSS_ENCODER_MODELS = [
"dengcao/ms-marco-MiniLM-L6-v2", # Bert
"BAAI/bge-reranker-v2-m3", # Roberta
]
EMBEDDING_MODELS = [
"sentence-transformers/all-MiniLM-L12-v2",
]
TEXTS_1 = [
"What is the capital of France?",
"What is the capital of Germany?",
]
TEXTS_2 = [
"The capital of France is Paris.",
"The capital of Germany is Berlin.",
]
DTYPE = "half"
@pytest.fixture(scope="module", params=CROSS_ENCODER_MODELS)
def model_name(request):
yield snapshot_download(request.param)
def test_cross_encoder_score_1_to_1(model_name):
text_pair = [TEXTS_1[0], TEXTS_2[0]]
with HfRunner(model_name, dtype=DTYPE, is_cross_encoder=True) as hf_model:
hf_outputs = hf_model.predict([text_pair]).tolist()
with VllmRunner(model_name,
runner="pooling",
dtype=DTYPE,
cudagraph_capture_sizes=[4],
max_model_len=None) as vllm_model:
vllm_outputs = vllm_model.score(text_pair[0], text_pair[1])
assert len(vllm_outputs) == 1
assert len(hf_outputs) == 1
assert hf_outputs[0] == pytest.approx(vllm_outputs[0], rel=0.01)
def test_cross_encoder_score_1_to_N(model_name):
text_pairs = [
[TEXTS_1[0], TEXTS_2[0]],
[TEXTS_1[0], TEXTS_2[1]],
]
with HfRunner(model_name, dtype=DTYPE, is_cross_encoder=True) as hf_model:
hf_outputs = hf_model.predict(text_pairs).tolist()
with VllmRunner(model_name,
runner="pooling",
dtype=DTYPE,
cudagraph_capture_sizes=[4],
max_model_len=None) as vllm_model:
vllm_outputs = vllm_model.score(TEXTS_1[0], TEXTS_2)
assert len(vllm_outputs) == 2
assert len(hf_outputs) == 2
assert hf_outputs[0] == pytest.approx(vllm_outputs[0], rel=0.01)
assert hf_outputs[1] == pytest.approx(vllm_outputs[1], rel=0.01)
def test_cross_encoder_score_N_to_N(model_name):
text_pairs = [
[TEXTS_1[0], TEXTS_2[0]],
[TEXTS_1[1], TEXTS_2[1]],
]
with HfRunner(model_name, dtype=DTYPE, is_cross_encoder=True) as hf_model:
hf_outputs = hf_model.predict(text_pairs).tolist()
with VllmRunner(model_name,
runner="pooling",
dtype=DTYPE,
cudagraph_capture_sizes=[4],
max_model_len=None) as vllm_model:
vllm_outputs = vllm_model.score(TEXTS_1, TEXTS_2)
assert len(vllm_outputs) == 2
assert len(hf_outputs) == 2
assert hf_outputs[0] == pytest.approx(vllm_outputs[0], rel=0.01)
assert hf_outputs[1] == pytest.approx(vllm_outputs[1], rel=0.01)
@pytest.fixture(scope="module", params=EMBEDDING_MODELS)
def emb_model_name(request):
yield snapshot_download(request.param)
def test_embedding_score_1_to_1(emb_model_name):
text_pair = [TEXTS_1[0], TEXTS_2[0]]
with HfRunner(emb_model_name, dtype=DTYPE,
is_sentence_transformer=True) as hf_model:
hf_embeddings = hf_model.encode(text_pair)
hf_outputs = [
F.cosine_similarity(*map(torch.tensor, hf_embeddings), dim=0)
]
with VllmRunner(emb_model_name,
runner="pooling",
dtype=DTYPE,
cudagraph_capture_sizes=[4],
max_model_len=None) as vllm_model:
vllm_outputs = vllm_model.score(text_pair[0], text_pair[1])
assert len(vllm_outputs) == 1
assert len(hf_outputs) == 1
assert hf_outputs[0] == pytest.approx(vllm_outputs[0], rel=0.01)
def test_embedding_score_1_to_N(emb_model_name):
text_pairs = [
[TEXTS_1[0], TEXTS_2[0]],
[TEXTS_1[0], TEXTS_2[1]],
]
with HfRunner(emb_model_name, dtype=DTYPE,
is_sentence_transformer=True) as hf_model:
hf_embeddings = [
hf_model.encode(text_pair) for text_pair in text_pairs
]
hf_outputs = [
F.cosine_similarity(*map(torch.tensor, pair), dim=0)
for pair in hf_embeddings
]
with VllmRunner(emb_model_name,
runner="pooling",
dtype=DTYPE,
cudagraph_capture_sizes=[4],
max_model_len=None) as vllm_model:
vllm_outputs = vllm_model.score(TEXTS_1[0], TEXTS_2)
assert len(vllm_outputs) == 2
assert len(hf_outputs) == 2
assert hf_outputs[0] == pytest.approx(vllm_outputs[0], rel=0.01)
assert hf_outputs[1] == pytest.approx(vllm_outputs[1], rel=0.01)
def test_embedding_score_N_to_N(emb_model_name):
text_pairs = [
[TEXTS_1[0], TEXTS_2[0]],
[TEXTS_1[1], TEXTS_2[1]],
]
with HfRunner(emb_model_name, dtype=DTYPE,
is_sentence_transformer=True) as hf_model:
hf_embeddings = [
hf_model.encode(text_pair) for text_pair in text_pairs
]
hf_outputs = [
F.cosine_similarity(*map(torch.tensor, pair), dim=0)
for pair in hf_embeddings
]
with VllmRunner(emb_model_name,
runner="pooling",
dtype=DTYPE,
cudagraph_capture_sizes=[4],
max_model_len=None) as vllm_model:
vllm_outputs = vllm_model.score(TEXTS_1, TEXTS_2)
assert len(vllm_outputs) == 2
assert len(hf_outputs) == 2
assert hf_outputs[0] == pytest.approx(vllm_outputs[0], rel=0.01)
assert hf_outputs[1] == pytest.approx(vllm_outputs[1], rel=0.01)