test_llava_next.py 6.83 KB
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from typing import List, Optional, Tuple, Type, overload
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import pytest
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from transformers import AutoConfig, AutoModelForVision2Seq, AutoTokenizer
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from vllm.multimodal.utils import rescale_image_size
from vllm.sequence import SampleLogprobs
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from ..conftest import IMAGE_ASSETS, HfRunner, VllmRunner, _ImageAssets
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from .utils import check_logprobs_close
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pytestmark = pytest.mark.vlm
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_PREFACE = (
    "A chat between a curious human and an artificial intelligence assistant. "
    "The assistant gives helpful, detailed, and polite answers to the human's "
    "questions.")

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HF_IMAGE_PROMPTS = IMAGE_ASSETS.prompts({
    "stop_sign":
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    f"{_PREFACE} USER: <image>\nWhat's the content of the image? ASSISTANT:",
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    "cherry_blossom":
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    f"{_PREFACE} USER: <image>\nWhat is the season? ASSISTANT:",
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})
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models = ["llava-hf/llava-v1.6-vicuna-7b-hf"]

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def vllm_to_hf_output(vllm_output: Tuple[List[int], str,
                                         Optional[SampleLogprobs]],
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                      model: str):
    """Sanitize vllm output to be comparable with hf output."""
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    output_ids, output_str, out_logprobs = vllm_output
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    config = AutoConfig.from_pretrained(model)
    image_token_id = config.image_token_index

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    tokenizer = AutoTokenizer.from_pretrained(model)
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    eos_token_id = tokenizer.eos_token_id
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    hf_output_ids = [
        token_id for idx, token_id in enumerate(output_ids)
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        if token_id != image_token_id or output_ids[idx - 1] != image_token_id
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    ]

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    assert output_str[0] == " "
    hf_output_str = output_str[1:]
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    if hf_output_ids[-1] == eos_token_id:
        hf_output_str = hf_output_str + tokenizer.decode(eos_token_id)

    return hf_output_ids, hf_output_str, out_logprobs
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@overload
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def run_test(
    hf_runner: Type[HfRunner],
    vllm_runner: Type[VllmRunner],
    image_assets: _ImageAssets,
    model: str,
    *,
    size_factors: List[float],
    dtype: str,
    max_tokens: int,
    num_logprobs: int,
    tensor_parallel_size: int,
    distributed_executor_backend: Optional[str] = None,
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):
    ...


@overload
def run_test(
    hf_runner: Type[HfRunner],
    vllm_runner: Type[VllmRunner],
    image_assets: _ImageAssets,
    model: str,
    *,
    sizes: List[Tuple[int, int]],
    dtype: str,
    max_tokens: int,
    num_logprobs: int,
    tensor_parallel_size: int,
    distributed_executor_backend: Optional[str] = None,
):
    ...


def run_test(
    hf_runner: Type[HfRunner],
    vllm_runner: Type[VllmRunner],
    image_assets: _ImageAssets,
    model: str,
    *,
    size_factors: Optional[List[float]] = None,
    sizes: Optional[List[Tuple[int, int]]] = None,
    dtype: str,
    max_tokens: int,
    num_logprobs: int,
    tensor_parallel_size: int,
    distributed_executor_backend: Optional[str] = None,
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):
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    images = [asset.pil_image for asset in image_assets]

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    if size_factors is not None:
        inputs_per_image = [(
            [prompt for _ in size_factors],
            [rescale_image_size(image, factor) for factor in size_factors],
        ) for image, prompt in zip(images, HF_IMAGE_PROMPTS)]
    elif sizes is not None:
        inputs_per_image = [(
            [prompt for _ in sizes],
            [image.resize(size) for size in sizes],
        ) for image, prompt in zip(images, HF_IMAGE_PROMPTS)]
    else:
        raise ValueError("You must provide either `size_factors` or `sizes`")
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    # max_model_len should be greater than image_feature_size
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    with vllm_runner(model,
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                     dtype=dtype,
                     max_model_len=4096,
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                     tensor_parallel_size=tensor_parallel_size,
                     distributed_executor_backend=distributed_executor_backend,
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                     enforce_eager=True) as vllm_model:
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        vllm_outputs_per_image = [
            vllm_model.generate_greedy_logprobs(prompts,
                                                max_tokens,
                                                num_logprobs=num_logprobs,
                                                images=images)
            for prompts, images in inputs_per_image
        ]
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    with hf_runner(model, dtype=dtype,
                   auto_cls=AutoModelForVision2Seq) as hf_model:
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        hf_outputs_per_image = [
            hf_model.generate_greedy_logprobs_limit(prompts,
                                                    max_tokens,
                                                    num_logprobs=num_logprobs,
                                                    images=images)
            for prompts, images in inputs_per_image
        ]

    for hf_outputs, vllm_outputs in zip(hf_outputs_per_image,
                                        vllm_outputs_per_image):
        # TODO: Check whether using original CLIPVisionModel can improve
        # consistency against HF
        check_logprobs_close(
            outputs_0_lst=hf_outputs,
            outputs_1_lst=[
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                vllm_to_hf_output(vllm_output, model)
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                for vllm_output in vllm_outputs
            ],
            name_0="hf",
            name_1="vllm",
        )
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@pytest.mark.parametrize("model", models)
@pytest.mark.parametrize(
    "size_factors",
    [
        # No image
        [],
        # Single-scale
        [1.0],
        # Single-scale, batched
        [1.0, 1.0, 1.0],
        # Multi-scale
        [0.25, 0.5, 1.0],
    ],
)
@pytest.mark.parametrize("dtype", ["half"])
@pytest.mark.parametrize("max_tokens", [128])
@pytest.mark.parametrize("num_logprobs", [5])
def test_models(hf_runner, vllm_runner, image_assets, model, size_factors,
                dtype, max_tokens, num_logprobs) -> None:
    """Inference result should be the same between hf and vllm.

    All the image fixtures for the test is under tests/images.
    For huggingface runner, we provide the PIL images as input.
    For vllm runner, we provide MultiModalDataDict objects 
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    and corresponding MultiModalConfig as input.
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    Note, the text input is also adjusted to abide by vllm contract.
    The text output is sanitized to be able to compare with hf.
    """
    run_test(
        hf_runner,
        vllm_runner,
        image_assets,
        model,
        size_factors=size_factors,
        dtype=dtype,
        max_tokens=max_tokens,
        num_logprobs=num_logprobs,
        tensor_parallel_size=1,
    )


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@pytest.mark.parametrize("model", models)
@pytest.mark.parametrize(
    "sizes",
    [[(1669, 2560), (2560, 1669), (183, 488), (488, 183)]],
)
@pytest.mark.parametrize("dtype", ["half"])
@pytest.mark.parametrize("max_tokens", [128])
@pytest.mark.parametrize("num_logprobs", [5])
def test_models_fixed_sizes(hf_runner, vllm_runner, image_assets, model, sizes,
                            dtype, max_tokens, num_logprobs) -> None:
    run_test(
        hf_runner,
        vllm_runner,
        image_assets,
        model,
        sizes=sizes,
        dtype=dtype,
        max_tokens=max_tokens,
        num_logprobs=num_logprobs,
        tensor_parallel_size=1,
    )