test_utils.py 4.73 KB
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from unittest.mock import MagicMock
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import pytest
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import torch
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from vllm.model_executor.layers.rejection_sampler import RejectionSampler
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from vllm.model_executor.layers.sampler import _get_ranks
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from vllm.model_executor.layers.typical_acceptance_sampler import (
    TypicalAcceptanceSampler)
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from vllm.sequence import SequenceGroupMetadata, get_all_seq_ids
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from vllm.spec_decode.util import (get_sampled_token_logprobs,
                                   split_batch_by_proposal_len)
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def test_get_all_seq_ids():
    """Verify get_all_seq_ids extracts all seq ids.
    """
    expected_seq_ids = list(range(10)) + list(range(100, 110))

    seq_group_metadata_list = [
        SequenceGroupMetadata(
            request_id=str(seq_id),
            is_prompt=True,
            seq_data={
                seq_id: MagicMock(),
            },
            sampling_params=MagicMock(),
            block_tables={
                seq_id: MagicMock(),
            },
            lora_request=None,
        ) for seq_id in expected_seq_ids
    ]

    actual_seq_ids = get_all_seq_ids(seq_group_metadata_list)
    assert actual_seq_ids == expected_seq_ids


@pytest.fixture
def fake_sequence_group_metadata():
    seq_ids = list(range(3))
    return [
        SequenceGroupMetadata(
            request_id=str(i),
            is_prompt=True,
            seq_data={
                i: MagicMock(),
            },
            sampling_params=MagicMock(),
            block_tables={
                i: MagicMock(),
            },
            lora_request=None,
        ) for i in seq_ids
    ]


def test_filter_zero_length_proposals(fake_sequence_group_metadata):
    proposal_lens = [0, 1, 0]
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    _, (filtered_groups,
        indices) = split_batch_by_proposal_len(fake_sequence_group_metadata,
                                               proposal_lens)
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    expected_groups = [
        fake_sequence_group_metadata[0], fake_sequence_group_metadata[2]
    ]
    expected_indices = [0, 2]

    assert filtered_groups == expected_groups
    assert indices == expected_indices


def test_filter_non_zero_length_proposals(fake_sequence_group_metadata):
    proposal_lens = [0, 1, 2]
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    (filtered_groups,
     indices), _ = split_batch_by_proposal_len(fake_sequence_group_metadata,
                                               proposal_lens)
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    expected_groups = [
        fake_sequence_group_metadata[1], fake_sequence_group_metadata[2]
    ]
    expected_indices = [1, 2]

    assert filtered_groups == expected_groups
    assert indices == expected_indices


def test_empty_inputs():
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    _, (filtered_groups, indices) = split_batch_by_proposal_len([], [])
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    assert filtered_groups == []
    assert indices == []


def test_all_zero_with_non_zero_filter(fake_sequence_group_metadata):
    proposal_lens = [0, 0, 0]
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    (filtered_groups,
     indices), _ = split_batch_by_proposal_len(fake_sequence_group_metadata,
                                               proposal_lens)
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    assert filtered_groups == []
    assert indices == []


def test_all_non_zero_with_zero_filter(fake_sequence_group_metadata):
    proposal_lens = [1, 1, 1]
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    _, (filtered_groups,
        indices) = split_batch_by_proposal_len(fake_sequence_group_metadata,
                                               proposal_lens)
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    assert filtered_groups == []
    assert indices == []
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def mock_spec_decode_sampler(acceptance_sampler_method):
    """
    Returns either a RejectionSampler or TypicalAcceptanceSampler
    object depending on whether acceptance_sampler_method is 
    'rejection_sampler' or 'typical_acceptance_sampler' respectively.
    """
    if acceptance_sampler_method == "rejection_sampler":
        sampler = MagicMock(spec=RejectionSampler)
        sampler.token_id_dtype = torch.int64
        return sampler
    elif acceptance_sampler_method == "typical_acceptance_sampler":
        sampler = MagicMock(spec=TypicalAcceptanceSampler)
        sampler.token_id_dtype = torch.int64
        return sampler
    else:
        raise ValueError(f"Invalid sampler name {acceptance_sampler_method}")
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def test_get_sampled_token_logprobs():
    """Verify get_sampled_token_logprobs returns consistent rankings 
    with regular get_ranks when probabilities match exactly.
    """
    logprob_tensor = torch.tensor(
        [[[-.1, -.1]] * 2])  # shape (num_steps, batch_size, vocab_size)
    sampled_token_tensor = torch.tensor([[1,
                                          0]])  # shape (num_steps, batch_size)
    ranks_spec_dec, _ = get_sampled_token_logprobs(logprob_tensor,
                                                   sampled_token_tensor)

    ranks_regular = _get_ranks(logprob_tensor.reshape((2, -1)),
                               sampled_token_tensor.reshape(-1))

    assert torch.equal(ranks_spec_dec.reshape(-1), ranks_regular)