test_sequence_parallel.py 8.93 KB
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# SPDX-License-Identifier: Apache-2.0
"""
WARNING: This test runs in both single-node (4 GPUs) and multi-node
 (2 node with 2 GPUs each) modes. If the test only uses 2 GPUs, it is
 important to set the distributed backend to "mp" to avoid Ray scheduling
 all workers in a node other than the head node, which can cause the test
 to fail.
"""
import json
import os
from dataclasses import dataclass
from typing import Literal, NamedTuple, Optional

import pytest

from vllm.config import TaskOption
from vllm.logger import init_logger

from ..models.registry import HF_EXAMPLE_MODELS
from ..utils import compare_two_settings, create_new_process_for_each_test

logger = init_logger("test_sequence_parallel")

VLLM_MULTI_NODE = os.getenv("VLLM_MULTI_NODE", "0") == "1"


class ParallelSetup(NamedTuple):
    tp_size: int
    sp_enabled: bool
    eager_mode: bool
    chunked_prefill: bool


class SPTestOptions(NamedTuple):
    multi_node_only: bool
    load_format: Optional[str] = None


@dataclass
class SPTestSettings:
    parallel_setups: list[ParallelSetup]
    # NOTE: the length of distributed_backends and
    # vllm_major_versions should be the same, and they
    # are first zipped together to iterate over all
    # test settings.
    distributed_backends: list[str]
    # vllm major version: "0" for V0, "1" for V1
    vllm_major_versions: list[str]
    task: TaskOption
    test_options: SPTestOptions

    def __post_init__(self):
        if len(self.distributed_backends) != len(self.vllm_major_versions):
            raise ValueError(
                f"Length mismatch: distributed_backends "
                f"({len(self.distributed_backends)}) != "
                f"vllm_major_versions ({len(self.vllm_major_versions)})")

    @staticmethod
    def detailed(
        *,
        tp_base: int = 2,
        multi_node_only: bool = False,
        task: TaskOption = "auto",
        load_format: Optional[str] = None,
    ):
        return SPTestSettings(
            parallel_setups=[
                ParallelSetup(tp_size=tp_base,
                              sp_enabled=True,
                              eager_mode=False,
                              chunked_prefill=False),
                ParallelSetup(tp_size=tp_base,
                              sp_enabled=True,
                              eager_mode=False,
                              chunked_prefill=True),
                ParallelSetup(tp_size=tp_base,
                              sp_enabled=True,
                              eager_mode=True,
                              chunked_prefill=False),
                ParallelSetup(tp_size=tp_base,
                              sp_enabled=True,
                              eager_mode=True,
                              chunked_prefill=True)
            ],
            distributed_backends=["mp", "ray"],
            vllm_major_versions=["1", "1"],
            task=task,
            test_options=SPTestOptions(multi_node_only=multi_node_only,
                                       load_format=load_format),
        )

    @staticmethod
    def fast(
        *,
        tp_base: int = 2,
        task: TaskOption = "auto",
        multi_node_only: bool = False,
        load_format: Optional[str] = None,
    ):
        return SPTestSettings(
            parallel_setups=[
                ParallelSetup(tp_size=tp_base,
                              sp_enabled=True,
                              eager_mode=False,
                              chunked_prefill=False),
            ],
            distributed_backends=["mp", "ray"],
            vllm_major_versions=["1", "1"],
            task=task,
            test_options=SPTestOptions(multi_node_only=multi_node_only,
                                       load_format=load_format),
        )

    def iter_params(self, model_id: str):
        opts = self.test_options

        for parallel_setup in self.parallel_setups:
            for backend, vllm_major_version in zip(self.distributed_backends,
                                                   self.vllm_major_versions):
                yield (model_id, parallel_setup, backend, vllm_major_version,
                       self.task, opts)


def _compare_sp(
    model_id: str,
    parallel_setup: ParallelSetup,
    distributed_backend: str,
    vllm_major_version: str,
    task: TaskOption,
    test_options: SPTestOptions,
    num_gpus_available: int,
    *,
    method: Literal["generate", "encode"],
    is_multimodal: bool,
):
    (
        tp_size,
        sp_enabled,
        eager_mode,
        chunked_prefill,
    ) = parallel_setup

    multi_node_only, load_format = test_options

    model_info = HF_EXAMPLE_MODELS.find_hf_info(model_id)
    model_info.check_transformers_version(on_fail="skip")

    trust_remote_code = model_info.trust_remote_code
    tokenizer_mode = model_info.tokenizer_mode
    hf_overrides = model_info.hf_overrides

    if load_format == "dummy":
        # Avoid OOM
        text_overrides = {
            "num_hidden_layers": 4,
            "hidden_size": 512,
            "intermediate_size": 800,
            "num_attention_heads": 4,
            "num_key_value_heads": 1,
        }

        if is_multimodal:
            hf_overrides.update({"text_config": text_overrides})
        else:
            hf_overrides.update(text_overrides)
    else:
        model_info.check_available_online(on_fail="skip")

    pp_size = 1
    if num_gpus_available < tp_size * pp_size:
        pytest.skip(f"Need at least {tp_size} x {pp_size} GPUs")
    if VLLM_MULTI_NODE and distributed_backend == "mp":
        pytest.skip("Skipping multi-node pipeline parallel test for "
                    "multiprocessing distributed backend")
    if multi_node_only and not VLLM_MULTI_NODE:
        pytest.skip("Not in multi-node setting")

    common_args = [
        # use half precision for speed and memory savings in CI environment
        "--dtype",
        "float16",
        "--max-model-len",
        "2048",
        "--max-num-seqs",
        "8",
    ]
    if chunked_prefill:
        common_args.append("--enable-chunked-prefill")
    if eager_mode:
        common_args.append("--enforce-eager")
    if task != "auto":
        common_args.extend(["--task", task])
    if trust_remote_code:
        common_args.append("--trust-remote-code")
    if tokenizer_mode:
        common_args.extend(["--tokenizer-mode", tokenizer_mode])
    if load_format:
        common_args.extend(["--load-format", load_format])
    if hf_overrides:
        common_args.extend(["--hf-overrides", json.dumps(hf_overrides)])

    compilation_config = {
        'level': 3,
        'custom_ops': ["+rms_norm"],
        'compile_sizes': [4, 8],
        'splitting_ops': [],
        'pass_config': {
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            'enable_sequence_parallelism': sp_enabled,
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            'enable_noop': True,
            'enable_fusion': True,
        },
    }

    tp_sp_env = tp_env = {
        "VLLM_USE_V1": vllm_major_version,
    }

    tp_sp_args = [
        *common_args,
        "--tensor-parallel-size",
        str(tp_size),
        "--distributed-executor-backend",
        distributed_backend,
        "--compilation_config",
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        json.dumps(compilation_config),
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    ]

    tp_env = {
        "VLLM_USE_V1": vllm_major_version,
    }
    tp_args = [
        *common_args,
        "--tensor-parallel-size",
        str(tp_size),
        "--distributed-executor-backend",
        "mp",
    ]

    try:
        compare_two_settings(model_id,
                             tp_sp_args,
                             tp_args,
                             tp_sp_env,
                             tp_env,
                             method=method)
    except Exception:
        testing_ray_compiled_graph = tp_sp_env is not None
        if testing_ray_compiled_graph and vllm_major_version == "0":
            # Ray Compiled Graph tests are flaky for V0,
            # so we don't want to fail the test
            logger.exception("Ray Compiled Graph tests failed")
        else:
            raise


SP_TEXT_GENERATION_MODELS = {
    # [Decoder-only]
    "meta-llama/Llama-3.2-1B-Instruct": SPTestSettings.detailed(),
}

SP_TEST_MODELS = [
    # TODO support other models
    # [LANGUAGE GENERATION]
    "meta-llama/Llama-3.2-1B-Instruct",
]


@pytest.mark.parametrize(
    ("model_id", "parallel_setup", "distributed_backend", "vllm_major_version",
     "task", "test_options"),
    [
        params for model_id, settings in SP_TEXT_GENERATION_MODELS.items()
        for params in settings.iter_params(model_id)
        if model_id in SP_TEST_MODELS
    ],
)
@create_new_process_for_each_test()
def test_tp_sp_generation(
    model_id: str,
    parallel_setup: ParallelSetup,
    distributed_backend: str,
    vllm_major_version: str,
    task: TaskOption,
    test_options: SPTestOptions,
    num_gpus_available,
):
    _compare_sp(model_id,
                parallel_setup,
                distributed_backend,
                vllm_major_version,
                task,
                test_options,
                num_gpus_available,
                method="generate",
                is_multimodal=False)