test_hybrid.py 25.7 KB
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# SPDX-License-Identifier: Apache-2.0
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# SPDX-FileCopyrightText: Copyright contributors to the vLLM project
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from typing import Callable

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import pytest

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from tests.models.registry import HF_EXAMPLE_MODELS
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from tests.utils import multi_gpu_test
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from vllm.engine.arg_utils import EngineArgs
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from vllm.sampling_params import SamplingParams
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from ...utils import check_logprobs_close, check_outputs_equal
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# Mark all tests as hybrid
pytestmark = pytest.mark.hybrid_model

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# NOTE: The first model in each list is taken as the primary model,
# meaning that it will be used in all tests in this file
# The rest of the models will only be tested by test_models

SSM_MODELS = [
    "state-spaces/mamba-130m-hf",
    "tiiuae/falcon-mamba-tiny-dev",
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    # mamba2-codestral in transformers is broken pending:
    # https://github.com/huggingface/transformers/pull/40861
    #"yujiepan/mamba2-codestral-v0.1-tiny-random",
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]
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HYBRID_MODELS = [
    "ai21labs/Jamba-tiny-dev",
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    "pfnet/plamo-2-1b",
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    "Zyphra/Zamba2-1.2B-instruct",
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    "hmellor/tiny-random-BambaForCausalLM",
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    "ibm-granite/granite-4.0-tiny-preview",
    "tiiuae/Falcon-H1-0.5B-Base",
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    "LiquidAI/LFM2-1.2B",
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    "tiny-random/qwen3-next-moe",
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]

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FULL_CUDA_GRAPH_MODELS = [
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    "ai21labs/Jamba-tiny-dev",
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    "pfnet/plamo-2-1b",
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    "Zyphra/Zamba2-1.2B-instruct",
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]

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FP32_STATE_MODELS = [
    "state-spaces/mamba-130m-hf",
    "Zyphra/Zamba2-1.2B-instruct",
]

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# Avoid OOM
MAX_NUM_SEQS = 4

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@pytest.mark.parametrize("model", SSM_MODELS + HYBRID_MODELS)
@pytest.mark.parametrize("max_tokens", [64])
@pytest.mark.parametrize("num_logprobs", [5])
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def test_models(
    hf_runner,
    vllm_runner,
    example_prompts,
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    monkeypatch,
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    model: str,
    max_tokens: int,
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    num_logprobs: int,
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) -> None:
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    try:
        model_info = HF_EXAMPLE_MODELS.find_hf_info(model)
        model_info.check_available_online(on_fail="skip")
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        model_info.check_transformers_version(on_fail="skip")
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    except ValueError:
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        pass
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    with hf_runner(model) as hf_model:
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        hf_outputs = hf_model.generate_greedy_logprobs_limit(
            example_prompts, max_tokens, num_logprobs)
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    with vllm_runner(model, max_num_seqs=MAX_NUM_SEQS) as vllm_model:
        vllm_outputs = vllm_model.generate_greedy_logprobs(
            example_prompts, max_tokens, num_logprobs)
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    check_logprobs_close(
        outputs_0_lst=hf_outputs,
        outputs_1_lst=vllm_outputs,
        name_0="hf",
        name_1="vllm",
    )
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@pytest.mark.parametrize("model", [SSM_MODELS[0], HYBRID_MODELS[0]])
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@pytest.mark.parametrize("max_tokens", [64])
@pytest.mark.parametrize("num_logprobs", [5])
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def test_batching(
    vllm_runner,
    example_prompts,
    model: str,
    max_tokens: int,
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    num_logprobs: int,
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) -> None:
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    try:
        model_info = HF_EXAMPLE_MODELS.find_hf_info(model)
        model_info.check_available_online(on_fail="skip")
        model_info.check_transformers_version(on_fail="skip")
    except ValueError:
        pass

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    for_loop_outputs = []
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    with vllm_runner(model, max_num_seqs=MAX_NUM_SEQS) as vllm_model:
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        for prompt in example_prompts:
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            single_output, = vllm_model.generate_greedy_logprobs([prompt],
                                                                 max_tokens,
                                                                 num_logprobs)
            for_loop_outputs.append(single_output)
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        batched_outputs = vllm_model.generate_greedy_logprobs(
            example_prompts, max_tokens, num_logprobs)
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    check_logprobs_close(
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        outputs_0_lst=for_loop_outputs,
        outputs_1_lst=batched_outputs,
        name_0="for_loop_vllm",
        name_1="batched_vllm",
    )


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@pytest.mark.parametrize("model", [SSM_MODELS[0], HYBRID_MODELS[0]])
@pytest.mark.parametrize("max_tokens", [10])
def test_chunked_prefill_with_parallel_sampling(
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    vllm_runner,
    example_prompts,
    model: str,
    max_tokens: int,
) -> None:
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    """
    Tests chunked prefill in conjunction with n > 1. 
    
    In this case, prefill is populated with decoding tokens and
    we test that it doesn't fail.

    This test might fail if cache is not allocated correctly for n > 1
    decoding steps inside a chunked prefill forward pass
    (where we have both prefill and decode together)
    """
    sampling_params = SamplingParams(n=3,
                                     temperature=1,
                                     seed=0,
                                     max_tokens=max_tokens)
    with vllm_runner(
            model,
            enable_chunked_prefill=True,
            # forces prefill chunks with decoding
            max_num_batched_tokens=MAX_NUM_SEQS * 3,
            max_num_seqs=MAX_NUM_SEQS,
    ) as vllm_model:
        vllm_model.generate(example_prompts, sampling_params)
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@pytest.mark.parametrize("model", [SSM_MODELS[0], HYBRID_MODELS[0]])
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@pytest.mark.parametrize("max_tokens", [20])
def test_mamba_cache_cg_padding(
    vllm_runner,
    example_prompts,
    model: str,
    max_tokens: int,
) -> None:
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    """
    This test is for verifying that mamba cache is padded to CG captured
    batch size. If it's not, a torch RuntimeError will be raised because
    tensor dimensions aren't compatible.
    """
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    vllm_config = EngineArgs(model=model,
                             trust_remote_code=True).create_engine_config()
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    while len(example_prompts) == vllm_config.pad_for_cudagraph(
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            len(example_prompts)):
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        example_prompts.append(example_prompts[0])

    try:
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        with vllm_runner(model) as vllm_model:
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            vllm_model.generate_greedy(example_prompts, max_tokens)
    except RuntimeError:
        pytest.fail(
            "Couldn't run batch size which is not equal to a Cuda Graph "
            "captured batch size. "
            "Could be related to mamba cache not padded correctly")


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@pytest.mark.parametrize("model", [SSM_MODELS[0], HYBRID_MODELS[0]])
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def test_fail_upon_inc_requests_and_finished_requests_lt_available_blocks(
    vllm_runner,
    example_prompts,
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    model: str,
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) -> None:
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    """
    This test is for verifying that the hybrid inner state management doesn't
    collapse in case where the number of incoming requests and
    finished_requests_ids is larger than the maximum mamba block capacity.

    This could generally happen due to the fact that hybrid does support
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    statelessness mechanism where it can clean up new incoming requests in
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    a single step.
    """
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    try:
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        with vllm_runner(model, max_num_seqs=MAX_NUM_SEQS) as vllm_model:
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            vllm_model.generate_greedy([example_prompts[0]] * 100, 10)
    except ValueError:
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        pytest.fail("Hybrid inner state wasn't cleaned up properly between"
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                    "steps finished requests registered unnecessarily ")


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@pytest.mark.parametrize("model", [SSM_MODELS[0], HYBRID_MODELS[0]])
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def test_state_cleanup(
    vllm_runner,
    example_prompts,
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    model: str,
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) -> None:
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    """ 
    This test is for verifying that the Hybrid state is cleaned up between
    steps.
    
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    If it's not cleaned, an error would be expected.
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    """
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    try:
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        with vllm_runner(model, max_num_seqs=MAX_NUM_SEQS) as vllm_model:
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            for _ in range(10):
                vllm_model.generate_greedy([example_prompts[0]] * 100, 1)
    except ValueError:
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        pytest.fail("Hybrid inner state wasn't cleaned up between states, "
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                    "could be related to finished_requests_ids")


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@multi_gpu_test(num_gpus=2)
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@pytest.mark.parametrize("model", [SSM_MODELS[0], HYBRID_MODELS[0]])
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@pytest.mark.parametrize("max_tokens", [64])
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@pytest.mark.parametrize("num_logprobs", [5])
def test_distributed_correctness(
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    vllm_runner,
    example_prompts,
    model: str,
    max_tokens: int,
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    num_logprobs: int,
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) -> None:
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    with vllm_runner(model, tensor_parallel_size=1,
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                     max_num_seqs=MAX_NUM_SEQS) as vllm_model:
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        vllm_outputs_tp_1 = vllm_model.generate_greedy_logprobs(
            example_prompts, max_tokens, num_logprobs)
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    with vllm_runner(model, tensor_parallel_size=2,
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                     max_num_seqs=MAX_NUM_SEQS) as vllm_model:
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        vllm_outputs_tp_2 = vllm_model.generate_greedy_logprobs(
            example_prompts, max_tokens, num_logprobs)
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    check_logprobs_close(
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        outputs_0_lst=vllm_outputs_tp_1,
        outputs_1_lst=vllm_outputs_tp_2,
        name_0="vllm_tp_1",
        name_1="vllm_tp_2",
    )
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@pytest.mark.parametrize("model", FULL_CUDA_GRAPH_MODELS)
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@pytest.mark.parametrize("max_tokens", [64])
@pytest.mark.parametrize("num_logprobs", [5])
def test_full_cuda_graph(
    hf_runner,
    vllm_runner,
    example_prompts,
    monkeypatch,
    model: str,
    max_tokens: int,
    num_logprobs: int,
) -> None:

    try:
        model_info = HF_EXAMPLE_MODELS.find_hf_info(model)
        model_info.check_available_online(on_fail="skip")
        model_info.check_transformers_version(on_fail="skip")
    except ValueError:
        pass

    with hf_runner(model) as hf_model:
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        hf_outputs = hf_model.generate_greedy_logprobs_limit(
            example_prompts, max_tokens, num_logprobs)
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    with vllm_runner(model, max_num_seqs=MAX_NUM_SEQS) as vllm_model:
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        vllm_outputs = vllm_model.generate_greedy_logprobs(
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            example_prompts, max_tokens, num_logprobs)
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    check_logprobs_close(
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        outputs_0_lst=hf_outputs,
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        outputs_1_lst=vllm_outputs,
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        name_0="hf",
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        name_1="vllm",
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    )
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@pytest.mark.parametrize("model", FP32_STATE_MODELS)
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@pytest.mark.parametrize("max_tokens", [64])
@pytest.mark.parametrize("num_logprobs", [5])
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@pytest.mark.parametrize("cache_dtype_param",
                         ["mamba_ssm_cache_dtype", "mamba_cache_dtype"])
def test_fp32_cache_state(
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    hf_runner,
    vllm_runner,
    example_prompts,
    monkeypatch,
    model: str,
    max_tokens: int,
    num_logprobs: int,
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    cache_dtype_param: str,
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) -> None:

    try:
        model_info = HF_EXAMPLE_MODELS.find_hf_info(model)
        model_info.check_available_online(on_fail="skip")
        model_info.check_transformers_version(on_fail="skip")
    except ValueError:
        pass

    with hf_runner(model) as hf_model:
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        hf_outputs = hf_model.generate_greedy_logprobs_limit(
            example_prompts, max_tokens, num_logprobs)
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    with vllm_runner(model,
                     max_num_seqs=MAX_NUM_SEQS,
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                     **{cache_dtype_param: "float32"}) as vllm_model:
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        vllm_outputs = vllm_model.generate_greedy_logprobs(
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            example_prompts, max_tokens, num_logprobs)

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    check_logprobs_close(
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        outputs_0_lst=hf_outputs,
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        outputs_1_lst=vllm_outputs,
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        name_0="hf",
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        name_1="vllm",
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    )
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# Helper functions for the APC tests
def _get_vllm_runner_params(model, max_model_len, tensor_parallel_size=1):
    return {
        'model_name': model,
        'enable_prefix_caching': False,
        'max_model_len': max_model_len,
        'tensor_parallel_size': tensor_parallel_size,
        'gpu_memory_utilization': 0.4
    }


def _get_vLLM_output(vllm_runner,
                     kwargs,
                     prompts,
                     max_tokens,
                     num_logprobs,
                     num_repetitions=1,
                     vllm_model=None):
    outs = []
    if vllm_model is None:
        vllm_model = vllm_runner(**kwargs)
    for _ in range(num_repetitions):
        if num_logprobs < 0:
            vllm_output = vllm_model.generate_greedy(prompts, max_tokens)
        else:
            vllm_output = vllm_model.generate_greedy_logprobs(
                prompts, max_tokens, num_logprobs)
        outs.append(vllm_output)

    return outs, vllm_model


@pytest.mark.parametrize("model", [HYBRID_MODELS[3]])
@pytest.mark.parametrize("max_tokens", [64])
@pytest.mark.parametrize("n_repetitions", [2])
# If num_logprobs is set to -1, then the stringent version
# of the test is executed using `check_outputs_equal`
# instead of `check_logprobs_close`
@pytest.mark.parametrize("num_logprobs", [5])
@pytest.mark.parametrize("tensor_parallel_size", [1])
def test_apc_single_prompt(
    hf_runner,
    vllm_runner,
    example_prompts,
    monkeypatch,
    model: str,
    max_tokens: int,
    n_repetitions: int,
    num_logprobs: int,
    tensor_parallel_size: int,
) -> None:

    try:
        model_info = HF_EXAMPLE_MODELS.find_hf_info(model)
        model_info.check_available_online(on_fail="skip")
        model_info.check_transformers_version(on_fail="skip")
    except ValueError:
        pass

    compare_operator: Callable = check_logprobs_close \
          if num_logprobs > 0 else check_outputs_equal # type: ignore

    MULTIPLE = 300

    # Sample prompts.
    generated_prompts = [MULTIPLE * example_prompts[0]]

    max_model_len = max(
        len(prompt) + max_tokens for prompt in generated_prompts)
    vllm_runner_kwargs = _get_vllm_runner_params(
        model, max_model_len, tensor_parallel_size=tensor_parallel_size)
    vllm_runner_kwargs['mamba_ssm_cache_dtype'] = "float32"
    vllm_outputs_no_cache, _ = _get_vLLM_output(vllm_runner,
                                                vllm_runner_kwargs,
                                                generated_prompts, max_tokens,
                                                num_logprobs)

    vllm_runner_kwargs['enable_prefix_caching'] = True
    vllm_outputs_cache_rep, _ = _get_vLLM_output(vllm_runner,
                                                 vllm_runner_kwargs,
                                                 generated_prompts, max_tokens,
                                                 num_logprobs, n_repetitions)

    for r_idx, vllm_outputs_cache_itn in enumerate(vllm_outputs_cache_rep):
        # In the first repetition, the caches are filled
        # In the second repetition, these caches are reused

        compare_operator(
            outputs_0_lst=vllm_outputs_no_cache[0],
            outputs_1_lst=vllm_outputs_cache_itn,
            name_0="vllm_no_cache",
            name_1=f"vllm_cache_it_{r_idx + 1}",
        )


@pytest.mark.parametrize("model", [HYBRID_MODELS[3]])
@pytest.mark.parametrize("max_tokens", [64])
@pytest.mark.parametrize("n_repetitions", [2])
# If num_logprobs is set to -1, then the stringent version
# of the test is executed using `check_outputs_equal`
# instead of `check_logprobs_close`
@pytest.mark.parametrize("num_logprobs", [5])
@pytest.mark.parametrize("tensor_parallel_size", [1])
def test_apc_single_prompt_block_align_alignment(
    hf_runner,
    vllm_runner,
    example_prompts,
    monkeypatch,
    model: str,
    max_tokens: int,
    n_repetitions: int,
    num_logprobs: int,
    tensor_parallel_size: int,
) -> None:

    try:
        model_info = HF_EXAMPLE_MODELS.find_hf_info(model)
        model_info.check_available_online(on_fail="skip")
        model_info.check_transformers_version(on_fail="skip")
    except ValueError:
        pass

    compare_operator: Callable = check_logprobs_close \
                    if num_logprobs > 0 else check_outputs_equal # type: ignore

    MULTIPLE = 300

    # Sample prompts. This custom prompt is used, as it causes the most issues
    generated_prompts = ["The president of the United States is " * MULTIPLE]

    max_model_len = max(
        len(prompt) + max_tokens for prompt in generated_prompts)
    vllm_runner_kwargs = _get_vllm_runner_params(
        model, max_model_len, tensor_parallel_size=tensor_parallel_size)
    vllm_runner_kwargs['mamba_ssm_cache_dtype'] = "float32"

    vllm_outputs_no_cache, _ = _get_vLLM_output(vllm_runner,
                                                vllm_runner_kwargs,
                                                generated_prompts, max_tokens,
                                                num_logprobs)

    vllm_runner_kwargs['enable_prefix_caching'] = True
    with vllm_runner(**vllm_runner_kwargs) as vllm_model:
        # Retrieve the default mamba state block size
        mamba_block_size = vllm_model.llm.llm_engine.cache_config. \
            mamba_block_size

    # In case the hybrid model does not have the
    # "mamba_block_size" assume a fixed constant
    if mamba_block_size is None:
        mamba_block_size = 512

    mamba_block_size_multiplier = 10
    for offsets in [
            -3, 3, mamba_block_size // 4 + 3, mamba_block_size // 2 - 3
    ]:

        vllm_runner_kwargs[
            'max_num_batched_tokens'] = mamba_block_size_multiplier * \
                                        mamba_block_size - offsets
        vllm_outputs_cache_rep, _ = _get_vLLM_output(vllm_runner,
                                                     vllm_runner_kwargs,
                                                     generated_prompts,
                                                     max_tokens, num_logprobs,
                                                     n_repetitions)

        # Check alignment of the output logits when using APC
        for r_idx, vllm_outputs_cache_itn in enumerate(vllm_outputs_cache_rep):
            # In the first repetition, the caches are filled
            # In the second repetition, these caches are reused

            compare_operator(
                outputs_0_lst=vllm_outputs_no_cache[0],
                outputs_1_lst=vllm_outputs_cache_itn,
                name_0="vllm_no_cache",
                name_1=f"vllm_cache_it_{r_idx + 1}",
            )


@pytest.mark.parametrize("model", [HYBRID_MODELS[3]])
@pytest.mark.parametrize("max_tokens", [64])
@pytest.mark.parametrize("n_repetitions", [2])
# If num_logprobs is set to -1, then the stringent version
# of the test is executed using `check_outputs_equal`
# instead of `check_logprobs_close`
@pytest.mark.parametrize("num_logprobs", [5])
@pytest.mark.parametrize("tensor_parallel_size", [1])
def test_apc_multiple_prompts_all_cached_outputs(
    hf_runner,
    vllm_runner,
    example_prompts,
    monkeypatch,
    model: str,
    max_tokens: int,
    n_repetitions: int,
    num_logprobs: int,
    tensor_parallel_size: int,
) -> None:

    try:
        model_info = HF_EXAMPLE_MODELS.find_hf_info(model)
        model_info.check_available_online(on_fail="skip")
        model_info.check_transformers_version(on_fail="skip")
    except ValueError:
        pass

    compare_operator: Callable = check_logprobs_close \
        if num_logprobs > 0 else check_outputs_equal # type: ignore

    MULTIPLE = 300

    # Sample prompts.
    generated_prompts = [MULTIPLE * prompt for prompt in example_prompts]

    max_model_len = max(
        len(prompt) + max_tokens for prompt in generated_prompts)
    vllm_runner_kwargs = _get_vllm_runner_params(
        model, max_model_len, tensor_parallel_size=tensor_parallel_size)
    vllm_runner_kwargs['mamba_ssm_cache_dtype'] = "float32"

    vllm_outputs_no_cache, _ = _get_vLLM_output(vllm_runner,
                                                vllm_runner_kwargs,
                                                generated_prompts, max_tokens,
                                                num_logprobs)

    vllm_runner_kwargs['enable_prefix_caching'] = True
    vllm_outputs_cache_rep, _ = _get_vLLM_output(vllm_runner,
                                                 vllm_runner_kwargs,
                                                 generated_prompts, max_tokens,
                                                 num_logprobs, n_repetitions)

    for r_idx, vllm_outputs_cache_itn in enumerate(vllm_outputs_cache_rep):
        # In the first repetition, the caches are filled
        # In the second repetition, these caches are reused

        compare_operator(
            outputs_0_lst=vllm_outputs_no_cache[0],
            outputs_1_lst=vllm_outputs_cache_itn,
            name_0="vllm_no_cache",
            name_1=f"vllm_cache_it_{r_idx + 1}",
        )


@pytest.mark.parametrize("model", [HYBRID_MODELS[3]])
@pytest.mark.parametrize("max_tokens", [64])
@pytest.mark.parametrize("n_repetitions", [2])
# If num_logprobs is set to -1, then the stringent version
# of the test is executed using `check_outputs_equal`
# instead of `check_logprobs_close`
@pytest.mark.parametrize("num_logprobs", [5])
@pytest.mark.parametrize("tensor_parallel_size", [1])
def test_apc_multiple_prompts_block_align_alignment(
    hf_runner,
    vllm_runner,
    example_prompts,
    monkeypatch,
    model: str,
    max_tokens: int,
    n_repetitions: int,
    num_logprobs: int,
    tensor_parallel_size: int,
) -> None:

    try:
        model_info = HF_EXAMPLE_MODELS.find_hf_info(model)
        model_info.check_available_online(on_fail="skip")
        model_info.check_transformers_version(on_fail="skip")
    except ValueError:
        pass

    compare_operator: Callable = check_logprobs_close \
        if num_logprobs > 0 else check_outputs_equal # type: ignore

    MULTIPLE = 300

    # Sample prompts. This custom prompt is used, as it causes the most issues
    prompt_text = "The president of the United States is "
    prompt_offsets = [0, 3, 7, 13, 17, 22, 25, 31]
    generated_prompts = [
        prompt_text[offset:] * MULTIPLE for offset in prompt_offsets
    ]

    max_model_len = max(
        len(prompt) + max_tokens for prompt in generated_prompts)
    vllm_runner_kwargs = _get_vllm_runner_params(model, max_model_len,
                                                 tensor_parallel_size)
    vllm_runner_kwargs['mamba_ssm_cache_dtype'] = "float32"

    vllm_outputs_no_cache, _ = _get_vLLM_output(vllm_runner,
                                                vllm_runner_kwargs,
                                                generated_prompts, max_tokens,
                                                num_logprobs)

    vllm_runner_kwargs['enable_prefix_caching'] = True
    with vllm_runner(**vllm_runner_kwargs) as vllm_model:
        # Retrieve the default mamba state block size
        mamba_block_size = vllm_model.llm.llm_engine.cache_config. \
            mamba_block_size

    # In case the hybrid model does not have the
    # "mamba_block_size" assume a fixed constant
    if mamba_block_size is None:
        mamba_block_size = 512

    mamba_block_size_multiplier = 10
    for offsets in [
            -3, 3, mamba_block_size // 4 + 3, mamba_block_size // 2 - 3
    ]:

        vllm_runner_kwargs[
            'max_num_batched_tokens'] = mamba_block_size_multiplier * \
                                        mamba_block_size - offsets
        vllm_outputs_cache_rep, _ = _get_vLLM_output(vllm_runner,
                                                     vllm_runner_kwargs,
                                                     generated_prompts,
                                                     max_tokens, num_logprobs,
                                                     n_repetitions)

        # Check alignment of the output logits when using APC
        for r_idx, vllm_outputs_cache_itn in enumerate(vllm_outputs_cache_rep):
            # In the first repetition, the caches are filled
            # In the second repetition, these caches are reused

            compare_operator(
                outputs_0_lst=vllm_outputs_no_cache[0],
                outputs_1_lst=vllm_outputs_cache_itn,
                name_0="vllm_no_cache",
                name_1=f"vllm_cache_it_{r_idx + 1}",
            )


@pytest.mark.parametrize("model", [HYBRID_MODELS[3]])
@pytest.mark.parametrize("max_tokens", [64])
@pytest.mark.parametrize("n_repetitions", [2])
# If num_logprobs is set to -1, then the stringent version
# of the test is executed using `check_outputs_equal`
# instead of `check_logprobs_close`
@pytest.mark.parametrize("num_logprobs", [5])
@pytest.mark.parametrize("tensor_parallel_size", [1])
def test_apc_multiple_prompts_partial_cached_outputs(
    hf_runner,
    vllm_runner,
    example_prompts,
    monkeypatch,
    model: str,
    max_tokens: int,
    n_repetitions: int,
    num_logprobs: int,
    tensor_parallel_size: int,
) -> None:

    try:
        model_info = HF_EXAMPLE_MODELS.find_hf_info(model)
        model_info.check_available_online(on_fail="skip")
        model_info.check_transformers_version(on_fail="skip")
    except ValueError:
        pass

    compare_operator: Callable = check_logprobs_close \
        if num_logprobs > 0 else check_outputs_equal # type: ignore

    MULTIPLE = 300

    # Sample prompts.
    generated_prompts = [MULTIPLE * prompt for prompt in example_prompts]

    max_model_len = max(
        len(prompt) + max_tokens for prompt in generated_prompts)
    vllm_runner_kwargs = _get_vllm_runner_params(
        model, max_model_len, tensor_parallel_size=tensor_parallel_size)
    vllm_runner_kwargs['mamba_ssm_cache_dtype'] = "float32"

    vllm_outputs_no_cache, _ = _get_vLLM_output(vllm_runner,
                                                vllm_runner_kwargs,
                                                generated_prompts, max_tokens,
                                                num_logprobs)

    # Cache only part of all the prompts
    vllm_runner_kwargs['enable_prefix_caching'] = True
    vllm_outputs_partial_cache, vllm_model = _get_vLLM_output(
        vllm_runner, vllm_runner_kwargs, generated_prompts[:3], max_tokens,
        num_logprobs)

    compare_operator(
        outputs_0_lst=vllm_outputs_no_cache[0][:3],
        outputs_1_lst=vllm_outputs_partial_cache[0],
        name_0="vllm_no_cache",
        name_1="vllm_partial_cache",
    )

    vllm_outputs_cache_rep, _ = _get_vLLM_output(vllm_runner,
                                                 vllm_runner_kwargs,
                                                 generated_prompts,
                                                 max_tokens,
                                                 num_logprobs,
                                                 n_repetitions,
                                                 vllm_model=vllm_model)

    for r_idx, vllm_outputs_cache_itn in enumerate(vllm_outputs_cache_rep):
        # In the first repetition, the caches are filled
        # In the second repetition, these caches are reused

        compare_operator(
            outputs_0_lst=vllm_outputs_no_cache[0],
            outputs_1_lst=vllm_outputs_cache_itn,
            name_0="vllm_no_cache",
            name_1=f"vllm_cache_it_{r_idx + 1}",
        )