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utils.py 59.4 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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import asyncio
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import contextlib
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import copy
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import functools
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import importlib
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import itertools
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import json
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import os
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import random
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import signal
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import subprocess
import sys
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import tempfile
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import time
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import warnings
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from collections.abc import Callable, Iterable
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from contextlib import ExitStack, contextmanager, suppress
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from multiprocessing import Process
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from pathlib import Path
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from typing import Any, Literal
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from unittest.mock import patch
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import anthropic
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import cloudpickle
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import httpx
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import openai
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import pytest
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import requests
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import torch
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import torch.nn.functional as F
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from openai.types.completion import Completion
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from typing_extensions import ParamSpec
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import vllm.envs as envs
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from tests.models.utils import TextTextLogprobs
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from vllm.distributed import (
    ensure_model_parallel_initialized,
    init_distributed_environment,
)
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from vllm.engine.arg_utils import AsyncEngineArgs
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from vllm.entrypoints.cli.serve import ServeSubcommand
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from vllm.model_executor.kernels.linear import (
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    FP8ScaledMMLinearKernel,
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    init_fp8_linear_kernel,
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)
from vllm.model_executor.layers.quantization.utils.fp8_utils import W8A8BlockFp8LinearOp
from vllm.model_executor.layers.quantization.utils.quant_utils import (
    GroupShape,
    QuantKey,
)
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from vllm.model_executor.model_loader import get_model_loader
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from vllm.platforms import current_platform
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from vllm.tokenizers import get_tokenizer
Cyrus Leung's avatar
Cyrus Leung committed
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from vllm.utils.argparse_utils import FlexibleArgumentParser
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from vllm.utils.mem_constants import GB_bytes
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from vllm.utils.network_utils import get_open_port
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from vllm.utils.torch_utils import (
    cuda_device_count_stateless,
    set_random_seed,  # noqa: F401 - re-exported for use in test files
)
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FP8_DTYPE = current_platform.fp8_dtype()

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if current_platform.is_rocm():
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    import threading

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    from amdsmi import (
        amdsmi_get_gpu_vram_usage,
        amdsmi_get_processor_handles,
        amdsmi_init,
        amdsmi_shut_down,
    )
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    _amdsmi_lock = threading.Lock()

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    @contextmanager
    def _nvml():
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        with _amdsmi_lock:
            try:
                amdsmi_init()
                yield
            finally:
                amdsmi_shut_down()
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elif current_platform.is_cuda():
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    from vllm.third_party.pynvml import (
        nvmlDeviceGetHandleByIndex,
        nvmlDeviceGetMemoryInfo,
        nvmlInit,
        nvmlShutdown,
    )
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    @contextmanager
    def _nvml():
        try:
            nvmlInit()
            yield
        finally:
            nvmlShutdown()
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else:

    @contextmanager
    def _nvml():
        yield
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VLLM_PATH = Path(__file__).parent.parent
"""Path to root of the vLLM repository."""
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# ROCm: disable skinny GEMM to avoid non-deterministic results from
# atomic reductions in wvSplitKrc kernel.
# See: https://github.com/vllm-project/vllm/pull/33493#issuecomment-3906083975
ROCM_ENV_OVERRIDES = (
    {"VLLM_ROCM_USE_SKINNY_GEMM": "0"} if current_platform.is_rocm() else {}
)
# ROCm: disable prefix caching and eliminate batch variance to reduce
# test flakiness.
ROCM_EXTRA_ARGS = (
    ["--no-enable-prefix-caching", "--max-num-seqs", "1"]
    if current_platform.is_rocm()
    else []
)

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class RemoteVLLMServer:
    """Base class for launching vLLM server subprocesses for testing.

    Subclasses must override ``_create_cli_subcommand`` and
    ``_start_server``.
    """

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    DUMMY_API_KEY = "token-abc123"  # vLLM's OpenAI server does not need API key
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    proc: subprocess.Popen

    def _create_cli_subcommand(self):
        """Return a CLISubcommand instance used to parse CLI args."""
        raise NotImplementedError
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    def _start_server(
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        self, model: str, vllm_serve_args: list[str], env_dict: dict[str, str] | None
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    ) -> None:
        """Subclasses override this method to customize server process launch"""
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        raise NotImplementedError
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    def _pre_download_model(self, model: str, args) -> None:
        """Download model weights before starting the server to avoid timeout."""
        is_local = os.path.isdir(model)
        if not is_local:
            engine_args = AsyncEngineArgs.from_cli_args(args)
            model_config = engine_args.create_model_config()
            load_config = engine_args.create_load_config()

            model_loader = get_model_loader(load_config)
            model_loader.download_model(model_config)

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    def __init__(
        self,
        model: str,
        vllm_serve_args: list[str],
        *,
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        env_dict: dict[str, str] | None = None,
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        seed: int = 0,
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        auto_port: bool = True,
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        max_wait_seconds: float | None = None,
        override_hf_configs: dict[str, Any] | None = None,
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    ) -> None:
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        if auto_port:
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            if "-p" in vllm_serve_args or "--port" in vllm_serve_args:
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                raise ValueError(
                    "You have manually specified the port when `auto_port=True`."
                )
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            # No need for a port if using unix sockets
            if "--uds" not in vllm_serve_args:
                # Don't mutate the input args
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                vllm_serve_args = vllm_serve_args + ["--port", str(get_open_port())]
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        if seed is not None:
            if "--seed" in vllm_serve_args:
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                raise ValueError(
                    f"You have manually specified the seed when `seed={seed}`."
                )
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            vllm_serve_args = vllm_serve_args + ["--seed", str(seed)]
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        if override_hf_configs is not None:
            vllm_serve_args = vllm_serve_args + [
                "--hf-overrides",
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                json.dumps(override_hf_configs),
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            ]

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        parser = FlexibleArgumentParser(description="vLLM's remote server.")
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        subparsers = parser.add_subparsers(required=False, dest="subparser")
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        parser = self._create_cli_subcommand().subparser_init(subparsers)
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        args = parser.parse_args(["--model", model, *vllm_serve_args])
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        self.uds = args.uds
        if args.uds:
            self.host = None
            self.port = None
        else:
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            self.host = str(args.host or "127.0.0.1")
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            self.port = int(args.port)
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        self.show_hidden_metrics = (
            getattr(args, "show_hidden_metrics_for_version", None) is not None
        )
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        self._pre_download_model(model, args)
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        # Record GPU memory before server start so we know what
        # "released" looks like.
        self._pre_server_gpu_memory = self._get_gpu_memory_used()
        if self._pre_server_gpu_memory is not None:
            pre_gb = self._pre_server_gpu_memory / 1e9
            print(
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                f"[{type(self).__name__}] GPU memory before server start: "
                f"{pre_gb:.2f} GB"
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            )

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        self._start_server(model, vllm_serve_args, env_dict)
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        max_wait_seconds = max_wait_seconds or 360
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        self._wait_for_server(url=self.url_for("health"), timeout=max_wait_seconds)
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    def __enter__(self):
        return self

    def __exit__(self, exc_type, exc_value, traceback):
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        pid = self.proc.pid
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        # Get the process group ID. Because we used
        # start_new_session=True the pgid equals the server's pid.
        try:
            pgid = os.getpgid(pid)
        except (ProcessLookupError, OSError):
            pgid = None

        # Phase 1: graceful SIGTERM to the entire process group
        if pgid is not None:
            with contextlib.suppress(ProcessLookupError, OSError):
                os.killpg(pgid, signal.SIGTERM)
                print(f"[RemoteOpenAIServer] Sent SIGTERM to process group {pgid}")
        else:
            self.proc.terminate()

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        try:
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            self.proc.wait(timeout=15)
            print(f"[RemoteOpenAIServer] Server {pid} terminated gracefully")
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        except subprocess.TimeoutExpired:
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            # Phase 2: SIGKILL the entire process group
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            print(
                f"[RemoteOpenAIServer] Server {pid} did not respond "
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                "to SIGTERM, sending SIGKILL to process group"
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            )
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            if pgid is not None:
                with contextlib.suppress(ProcessLookupError, OSError):
                    os.killpg(pgid, signal.SIGKILL)
            else:
                self.proc.kill()

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            try:
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                self.proc.wait(timeout=10)
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                print(f"[RemoteOpenAIServer] Server {pid} killed")
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            except subprocess.TimeoutExpired:
                # Phase 3: last resort - find and kill any orphaned children
                self._kill_orphaned_children(pid)

        # Wait for GPU memory to actually be *freed*, not just
        # "stabilized at whatever level it's at".
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        self._wait_for_gpu_memory_release()

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    def _kill_orphaned_children(self, parent_pid: int) -> None:
        """Best-effort cleanup of any lingering child processes."""
        try:
            import psutil

            parent = psutil.Process(parent_pid)
            children = parent.children(recursive=True)
            for child in children:
                print(
                    f"[RemoteOpenAIServer] Killing orphaned child "
                    f"pid={child.pid} name={child.name()}"
                )
                child.kill()
            psutil.wait_procs(children, timeout=5)
        except Exception as e:
            # psutil may not be installed, or processes already gone
            print(f"[RemoteOpenAIServer] Orphan cleanup failed: {e}")
            # Fallback: try to kill by pgid one more time
            with contextlib.suppress(ProcessLookupError, OSError):
                os.killpg(parent_pid, signal.SIGKILL)

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    def _get_gpu_memory_used(self) -> float | None:
        """Get total GPU memory used across all visible devices in bytes."""
        try:
            if current_platform.is_rocm():
                with _nvml():
                    handles = amdsmi_get_processor_handles()
                    total_used = 0
                    for handle in handles:
                        vram_info = amdsmi_get_gpu_vram_usage(handle)
                        total_used += vram_info["vram_used"]
                    return total_used
            elif current_platform.is_cuda():
                with _nvml():
                    total_used = 0
                    device_count = cuda_device_count_stateless()
                    for i in range(device_count):
                        handle = nvmlDeviceGetHandleByIndex(i)
                        mem_info = nvmlDeviceGetMemoryInfo(handle)
                        total_used += mem_info.used
                    return total_used
        except Exception as e:
            print(f"[RemoteOpenAIServer] Could not query GPU memory: {e}")
            return None
        return None

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    def _wait_for_gpu_memory_release(self, timeout: float = 60.0):
        """Wait for GPU memory to drop back toward pre-server levels.

        Two-phase strategy:
          1. Try to wait for memory to return close to pre-server baseline.
          2. If that doesn't happen, fall back to waiting for stabilization
             and log a warning (the next server might still OOM).
        """
        baseline = self._pre_server_gpu_memory
        if baseline is None:
            # Can't query GPU memory - nothing to do
            return

        # Allow up to 2 GiB overhead above baseline for driver/context state
        # that may persist between server instances.
        headroom_bytes = 2 * 1024 * 1024 * 1024
        target = baseline + headroom_bytes

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        start = time.time()
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        last_used: float | None = None
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        stable_count = 0

        while time.time() - start < timeout:
            used = self._get_gpu_memory_used()

            if used is None:
                return  # Can't query, assume ok

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            used_gb = used / 1e9
            target_gb = target / 1e9
            elapsed = time.time() - start
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            # Phase 1: memory dropped to near baseline - we're done.
            if used <= target:
                print(
                    f"[RemoteOpenAIServer] GPU memory released to "
                    f"{used_gb:.2f} GB (target: {target_gb:.2f} GB) "
                    f"in {elapsed:.1f}s"
                )
                return

            # Phase 2 (after 40s): fall back to stabilization check.
            # This handles cases where another process is using GPU memory
            # and we'll never reach baseline.
            if elapsed > 40.0 and last_used is not None:
                delta = abs(used - last_used)
                if delta < 200 * 1024 * 1024:  # 200 MB
                    stable_count += 1
                    if stable_count >= 3:
                        print(
                            f"[RemoteOpenAIServer] WARNING: GPU memory "
                            f"stabilized at {used_gb:.2f} GB "
                            f"(target was {target_gb:.2f} GB). "
                            f"Proceeding - next server may OOM."
                        )
                        return
                else:
                    stable_count = 0

            last_used = used
            time.sleep(1.0)

        # Timeout - log clearly so CI failures are diagnosable
        final_used = self._get_gpu_memory_used()
        final_gb = final_used / 1e9 if final_used else 0.0
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        raise RuntimeError(
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            f"[RemoteOpenAIServer] GPU memory did not release within "
            f"{timeout}s. Current: {final_gb:.2f} GB, "
            f"target: {target / 1e9:.2f} GB, "
            f"baseline: {baseline / 1e9:.2f} GB. "
            f"Child processes may still be holding GPU memory."
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        )
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    def _poll(self) -> int | None:
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        """Subclasses override this method to customize process polling"""
        return self.proc.poll()

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    def _wait_for_server(self, *, url: str, timeout: float):
        # run health check
        start = time.time()
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        client = (
            httpx.Client(transport=httpx.HTTPTransport(uds=self.uds))
            if self.uds
            else requests
        )
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        while True:
            try:
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                if client.get(url).status_code == 200:
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                    break
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            except Exception:
                # this exception can only be raised by requests.get,
                # which means the server is not ready yet.
                # the stack trace is not useful, so we suppress it
                # by using `raise from None`.
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                result = self._poll()
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                if result is not None and result != 0:
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                    raise RuntimeError("Server exited unexpectedly.") from None
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                time.sleep(0.5)
                if time.time() - start > timeout:
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                    raise RuntimeError("Server failed to start in time.") from None
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    @property
    def url_root(self) -> str:
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        return (
            f"http://{self.uds.split('/')[-1]}"
            if self.uds
            else f"http://{self.host}:{self.port}"
        )
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    def url_for(self, *parts: str) -> str:
        return self.url_root + "/" + "/".join(parts)

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    def get_client(self, **kwargs):
        if "timeout" not in kwargs:
            kwargs["timeout"] = 600
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        return openai.OpenAI(
            base_url=self.url_for("v1"),
            api_key=self.DUMMY_API_KEY,
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            max_retries=0,
            **kwargs,
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        )

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    def get_async_client(self, **kwargs):
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        if "timeout" not in kwargs:
            kwargs["timeout"] = 600
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        return openai.AsyncOpenAI(
            base_url=self.url_for("v1"),
            api_key=self.DUMMY_API_KEY,
            max_retries=0,
            **kwargs,
        )
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    def get_client_anthropic(self, **kwargs):
        if "timeout" not in kwargs:
            kwargs["timeout"] = 600
        return anthropic.Anthropic(
            base_url=self.url_for(),
            api_key=self.DUMMY_API_KEY,
            max_retries=0,
            **kwargs,
        )

    def get_async_client_anthropic(self, **kwargs):
        if "timeout" not in kwargs:
            kwargs["timeout"] = 600
        return anthropic.AsyncAnthropic(
            base_url=self.url_for(), api_key=self.DUMMY_API_KEY, max_retries=0, **kwargs
        )

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class RemoteOpenAIServer(RemoteVLLMServer):
    """Launches ``vllm serve`` for testing OpenAI-compatible endpoints."""

    def _create_cli_subcommand(self):
        return ServeSubcommand()

    def _start_server(
        self, model: str, vllm_serve_args: list[str], env_dict: dict[str, str] | None
    ) -> None:
        env = os.environ.copy()
        # the current process might initialize cuda,
        # to be safe, we should use spawn method
        env["VLLM_WORKER_MULTIPROC_METHOD"] = "spawn"
        if env_dict is not None:
            env.update(env_dict)
        serve_cmd = ["vllm", "serve", model, *vllm_serve_args]
        print(f"Launching RemoteOpenAIServer with: {' '.join(serve_cmd)}")
        print(f"Environment variables: {env}")
        self.proc: subprocess.Popen = subprocess.Popen(
            serve_cmd,
            env=env,
            stdout=sys.stdout,
            stderr=sys.stderr,
            # Create a dedicated process group so we can kill
            # the entire tree (parent + EngineCore + workers) at once.
            start_new_session=True,
        )


class RemoteLaunchRenderServer(RemoteVLLMServer):
    """Launches ``vllm launch render`` for GPU-less serving tests."""

    def _create_cli_subcommand(self):
        return ServeSubcommand()

    def _start_server(
        self, model: str, vllm_serve_args: list[str], env_dict: dict[str, str] | None
    ) -> None:
        env = os.environ.copy()
        env["VLLM_WORKER_MULTIPROC_METHOD"] = "spawn"
        if env_dict is not None:
            env.update(env_dict)
        serve_cmd = ["vllm", "launch", "render", model, *vllm_serve_args]
        print(f"Launching RemoteLaunchRenderServer with: {' '.join(serve_cmd)}")
        self.proc: subprocess.Popen = subprocess.Popen(
            serve_cmd,
            env=env,
            stdout=sys.stdout,
            stderr=sys.stderr,
            start_new_session=True,
        )

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    def _pre_download_model(self, model: str, args) -> None:
        """Download only the tokenizer files (no model weights needed)."""
        is_local = os.path.isdir(model)
        if not is_local:
            engine_args = AsyncEngineArgs.from_cli_args(args)
            model_config = engine_args.create_model_config()
            get_tokenizer(
                model_config.tokenizer,
                tokenizer_mode=model_config.tokenizer_mode,
                trust_remote_code=model_config.trust_remote_code,
                revision=model_config.tokenizer_revision,
            )

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    def _wait_for_gpu_memory_release(self, timeout: float = 30.0):
        pass  # No GPU used


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class RemoteOpenAIServerCustom(RemoteOpenAIServer):
    """Launch test server with custom child process"""

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    def _start_server(
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        self, model: str, vllm_serve_args: list[str], env_dict: dict[str, str] | None
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    ) -> None:
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        self.proc: Process = Process(
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            target=self.child_process_fxn, args=(env_dict, model, vllm_serve_args)
        )  # type: ignore[assignment]
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        self.proc.start()

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    def __init__(
        self,
        model: str,
        vllm_serve_args: list[str],
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        child_process_fxn: Callable[[dict[str, str] | None, str, list[str]], None],
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        *,
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        env_dict: dict[str, str] | None = None,
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        seed: int = 0,
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        auto_port: bool = True,
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        max_wait_seconds: float | None = None,
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    ) -> None:
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        """Store custom child process function then invoke superclass
        constructor which will indirectly launch it."""
        self.child_process_fxn = child_process_fxn
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        super().__init__(
            model=model,
            vllm_serve_args=vllm_serve_args,
            env_dict=env_dict,
            seed=seed,
            auto_port=auto_port,
            max_wait_seconds=max_wait_seconds,
        )
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    def _poll(self) -> int | None:
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        return self.proc.exitcode

    def __exit__(self, exc_type, exc_value, traceback):
        self.proc.terminate()
        self.proc.join(8)
        if self.proc.is_alive():
            # force kill if needed
            self.proc.kill()


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def _test_completion(
    client: openai.OpenAI,
    model: str,
    prompt: str,
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    token_ids: list[int],
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):
    results = []

    # test with text prompt
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    completion = client.completions.create(
        model=model, prompt=prompt, max_tokens=5, temperature=0.0
    )

    results.append(
        {
            "test": "single_completion",
            "text": completion.choices[0].text,
            "finish_reason": completion.choices[0].finish_reason,
            "usage": completion.usage,
        }
    )
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    # test using token IDs
    completion = client.completions.create(
        model=model,
        prompt=token_ids,
        max_tokens=5,
        temperature=0.0,
    )

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    results.append(
        {
            "test": "token_ids",
            "text": completion.choices[0].text,
            "finish_reason": completion.choices[0].finish_reason,
            "usage": completion.usage,
        }
    )
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    # test seeded random sampling
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    completion = client.completions.create(
        model=model, prompt=prompt, max_tokens=5, seed=33, temperature=1.0
    )

    results.append(
        {
            "test": "seeded_sampling",
            "text": completion.choices[0].text,
            "finish_reason": completion.choices[0].finish_reason,
            "usage": completion.usage,
        }
    )
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    # test seeded random sampling with multiple prompts
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    completion = client.completions.create(
        model=model, prompt=[prompt, prompt], max_tokens=5, seed=33, temperature=1.0
    )

    results.append(
        {
            "test": "seeded_sampling",
            "text": [choice.text for choice in completion.choices],
            "finish_reason": [choice.finish_reason for choice in completion.choices],
            "usage": completion.usage,
        }
    )
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    # test simple list
    batch = client.completions.create(
        model=model,
        prompt=[prompt, prompt],
        max_tokens=5,
        temperature=0.0,
    )

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    results.append(
        {
            "test": "simple_list",
            "text0": batch.choices[0].text,
            "text1": batch.choices[1].text,
        }
    )
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    # test streaming
    batch = client.completions.create(
        model=model,
        prompt=[prompt, prompt],
        max_tokens=5,
        temperature=0.0,
        stream=True,
    )

    texts = [""] * 2
    for chunk in batch:
        assert len(chunk.choices) == 1
        choice = chunk.choices[0]
        texts[choice.index] += choice.text

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    results.append(
        {
            "test": "streaming",
            "texts": texts,
        }
    )
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    return results


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def _test_completion_close(
    client: openai.OpenAI,
    model: str,
    prompt: str,
):
    results = []

    # test with text prompt
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    completion = client.completions.create(
        model=model, prompt=prompt, max_tokens=1, logprobs=5, temperature=0.0
    )
702

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    logprobs = completion.choices[0].logprobs.top_logprobs[0]
    logprobs = {k: round(v, 2) for k, v in logprobs.items()}
705

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711
    results.append(
        {
            "test": "completion_close",
            "logprobs": logprobs,
        }
    )
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715

    return results


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721
722
def _test_chat(
    client: openai.OpenAI,
    model: str,
    prompt: str,
):
    results = []

723
    messages = [{"role": "user", "content": [{"type": "text", "text": prompt}]}]
724
725

    # test with text prompt
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    chat_response = client.chat.completions.create(
        model=model, messages=messages, max_tokens=5, temperature=0.0
    )

    results.append(
        {
            "test": "completion_close",
            "text": chat_response.choices[0].message.content,
            "finish_reason": chat_response.choices[0].finish_reason,
            "usage": chat_response.usage,
        }
    )
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741

    return results


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def _test_embeddings(
    client: openai.OpenAI,
    model: str,
    text: str,
):
    results = []

    # test with text input
    embeddings = client.embeddings.create(
        model=model,
        input=text,
        encoding_format="float",
    )

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    results.append(
        {
            "test": "single_embedding",
            "embedding": embeddings.data[0].embedding,
            "usage": embeddings.usage,
        }
    )
763
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766

    return results


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774
def _test_image_text(
    client: openai.OpenAI,
    model_name: str,
    image_url: str,
):
    results = []

    # test pure text input
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    messages = [
        {
            "role": "user",
            "content": [
                {"type": "text", "text": "How do you feel today?"},
            ],
        }
    ]

    chat_completion = client.chat.completions.create(
        model=model_name,
        messages=messages,
        temperature=0.0,
        max_tokens=1,
        logprobs=True,
        top_logprobs=5,
    )
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    top_logprobs = chat_completion.choices[0].logprobs.content[0].top_logprobs

    for x in top_logprobs:
        x.logprob = round(x.logprob, 2)

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821
    results.append(
        {
            "test": "pure_text",
            "logprobs": top_logprobs,
        }
    )

    messages = [
        {
            "role": "user",
            "content": [
                {"type": "image_url", "image_url": {"url": image_url}},
                {"type": "text", "text": "What's in this image?"},
            ],
        }
    ]

    chat_completion = client.chat.completions.create(
        model=model_name,
        messages=messages,
        temperature=0.0,
        max_tokens=1,
        logprobs=True,
        top_logprobs=5,
    )
822
823
    top_logprobs = chat_completion.choices[0].logprobs.content[0].top_logprobs

824
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829
    results.append(
        {
            "test": "text_image",
            "logprobs": top_logprobs,
        }
    )
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833

    return results


834
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836
837
def compare_two_settings(
    model: str,
    arg1: list[str],
    arg2: list[str],
838
839
    env1: dict[str, str] | None = None,
    env2: dict[str, str] | None = None,
840
841
    *,
    method: str = "generate",
842
    max_wait_seconds: float | None = None,
843
) -> None:
844
    """
845
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853
    Launch API server with two different sets of arguments/environments
    and compare the results of the API calls.

    Args:
        model: The model to test.
        arg1: The first set of arguments to pass to the API server.
        arg2: The second set of arguments to pass to the API server.
        env1: The first set of environment variables to pass to the API server.
        env2: The second set of environment variables to pass to the API server.
854
855
    """

856
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864
    compare_all_settings(
        model,
        [arg1, arg2],
        [env1, env2],
        method=method,
        max_wait_seconds=max_wait_seconds,
    )


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867
def compare_all_settings(
    model: str,
    all_args: list[list[str]],
868
    all_envs: list[dict[str, str] | None],
869
870
    *,
    method: str = "generate",
871
    max_wait_seconds: float | None = None,
872
) -> None:
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880
881
    """
    Launch API server with several different sets of arguments/environments
    and compare the results of the API calls with the first set of arguments.
    Args:
        model: The model to test.
        all_args: A list of argument lists to pass to the API server.
        all_envs: A list of environment dictionaries to pass to the API server.
    """

882
    trust_remote_code = False
883
    for args in all_args:
884
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888
        if "--trust-remote-code" in args:
            trust_remote_code = True
            break

    tokenizer_mode = "auto"
889
    for args in all_args:
890
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898
        if "--tokenizer-mode" in args:
            tokenizer_mode = args[args.index("--tokenizer-mode") + 1]
            break

    tokenizer = get_tokenizer(
        model,
        trust_remote_code=trust_remote_code,
        tokenizer_mode=tokenizer_mode,
    )
899

900
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904
905
906
    can_force_load_format = True

    for args in all_args:
        if "--load-format" in args:
            can_force_load_format = False
            break

907
    prompt = "Hello, my name is"
908
    token_ids = tokenizer(prompt).input_ids
909
    ref_results: list = []
910
    for i, (args, env) in enumerate(zip(all_args, all_envs)):
911
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913
914
915
916
917
918
919
        if can_force_load_format:
            # we are comparing the results and
            # usually we don't need real weights.
            # we force to use dummy weights by default,
            # and it should work for most of the cases.
            # if not, we can use VLLM_TEST_FORCE_LOAD_FORMAT
            # environment variable to force the load format,
            # e.g. in quantization tests.
            args = args + ["--load-format", envs.VLLM_TEST_FORCE_LOAD_FORMAT]
920
        compare_results: list = []
921
        results = ref_results if i == 0 else compare_results
922
923
924
        with RemoteOpenAIServer(
            model, args, env_dict=env, max_wait_seconds=max_wait_seconds
        ) as server:
925
926
927
928
929
930
            client = server.get_client()

            # test models list
            models = client.models.list()
            models = models.data
            served_model = models[0]
931
932
933
934
935
936
937
            results.append(
                {
                    "test": "models_list",
                    "id": served_model.id,
                    "root": served_model.root,
                }
            )
938

939
940
            if method == "generate":
                results += _test_completion(client, model, prompt, token_ids)
941
942
            elif method == "generate_close":
                results += _test_completion_close(client, model, prompt)
943
944
            elif method == "generate_chat":
                results += _test_chat(client, model, prompt)
945
946
            elif method == "generate_with_image":
                results += _test_image_text(
947
948
                    client,
                    model,
949
                    "https://vllm-public-assets.s3.us-west-2.amazonaws.com/vision_model_images/RGBA_comp.png",
950
                )
951
952
953
            elif method == "encode":
                results += _test_embeddings(client, model, prompt)
            else:
954
                raise ValueError(f"Unknown method: {method}")
955

956
957
958
959
960
961
            if i > 0:
                # if any setting fails, raise an error early
                ref_args = all_args[0]
                ref_envs = all_envs[0]
                compare_args = all_args[i]
                compare_envs = all_envs[i]
962
                for ref_result, compare_result in zip(ref_results, compare_results):
963
964
965
                    ref_result = copy.deepcopy(ref_result)
                    compare_result = copy.deepcopy(compare_result)
                    if "embedding" in ref_result and method == "encode":
966
967
968
969
970
971
                        sim = F.cosine_similarity(
                            torch.tensor(ref_result["embedding"]),
                            torch.tensor(compare_result["embedding"]),
                            dim=0,
                        )
                        assert sim >= 0.999, (
972
                            f"Embedding for {model=} are not the same.\n"
973
974
                            f"cosine_similarity={sim}\n"
                        )
975
976
                        del ref_result["embedding"]
                        del compare_result["embedding"]
977
978
979
980
981
                    assert ref_result == compare_result, (
                        f"Results for {model=} are not the same.\n"
                        f"{ref_args=} {ref_envs=}\n"
                        f"{compare_args=} {compare_envs=}\n"
                        f"{ref_result=}\n"
982
983
                        f"{compare_result=}\n"
                    )
984
985


986
987
988
989
990
991
992
993
994
995
996
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998
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1000
1001
1002
1003
1004
1005
1006
1007
1008
1009
1010
1011
1012
1013
1014
1015
@contextmanager
def ensure_current_vllm_config():
    """Ensures a vllm config is set for the duration of the context.

    If a config is already set, this is a no-op. Otherwise, it creates a default
    VllmConfig and sets it for the duration of the context.

    Used for tests that call functions which require a vllm config but don't
    need a specific config.

    Example:
        with ensure_current_vllm_config():
            init_distributed_environment(...)
            ensure_model_parallel_initialized(...)
    """
    from vllm.config import (
        VllmConfig,
        get_current_vllm_config_or_none,
        set_current_vllm_config,
    )

    if get_current_vllm_config_or_none() is not None:
        # Config already set, just yield
        yield
    else:
        # No config set, create a default one for the duration
        with set_current_vllm_config(VllmConfig()):
            yield


1016
1017
1018
1019
1020
1021
1022
def init_test_distributed_environment(
    tp_size: int,
    pp_size: int,
    rank: int,
    distributed_init_port: str,
    local_rank: int = -1,
) -> None:
1023
1024
1025
1026
1027
1028
1029
    # Note: This function is often called from Ray worker processes, so we
    # can't rely on pytest fixtures to set the config. We check if the config
    # is already set and only create a default one if needed.
    from vllm.config import (
        VllmConfig,
        get_current_vllm_config_or_none,
        set_current_vllm_config,
1030
    )
1031
1032
1033
1034
1035
1036
1037
1038
1039
1040
1041

    distributed_init_method = f"tcp://localhost:{distributed_init_port}"

    if get_current_vllm_config_or_none() is not None:
        # Config already set, use it directly
        init_distributed_environment(
            world_size=pp_size * tp_size,
            rank=rank,
            distributed_init_method=distributed_init_method,
            local_rank=local_rank,
        )
1042
        ensure_model_parallel_initialized(tp_size, pp_size)
1043
1044
1045
1046
1047
1048
1049
1050
1051
    else:
        # No config set, create a default one for the test
        with set_current_vllm_config(VllmConfig()):
            init_distributed_environment(
                world_size=pp_size * tp_size,
                rank=rank,
                distributed_init_method=distributed_init_method,
                local_rank=local_rank,
            )
1052
            ensure_model_parallel_initialized(tp_size, pp_size)
1053
1054


1055
def multi_process_parallel(
1056
    monkeypatch: pytest.MonkeyPatch,
1057
1058
    tp_size: int,
    pp_size: int,
1059
    test_target: Any,
1060
) -> None:
1061
1062
    import ray

1063
1064
    # Using ray helps debugging the error when it failed
    # as compared to multiprocessing.
1065
1066
    # NOTE: We need to set working_dir for distributed tests,
    # otherwise we may get import errors on ray workers
1067
1068
1069
1070
1071
1072
    # NOTE: Force ray not to use gitignore file as excluding, otherwise
    # it will not move .so files to working dir.
    # So we have to manually add some of large directories
    os.environ["RAY_RUNTIME_ENV_IGNORE_GITIGNORE"] = "1"
    ray.init(
        runtime_env={
1073
            "working_dir": VLLM_PATH,
1074
            "excludes": [
1075
1076
1077
1078
1079
1080
1081
1082
1083
                "build",
                ".git",
                "cmake-build-*",
                "shellcheck",
                "dist",
                "ep_kernels_workspace",
            ],
        }
    )
1084
1085
1086
1087
1088

    distributed_init_port = get_open_port()
    refs = []
    for rank in range(tp_size * pp_size):
        refs.append(
1089
1090
1091
1092
1093
1094
            test_target.remote(
                monkeypatch,
                tp_size,
                pp_size,
                rank,
                distributed_init_port,
1095
1096
            ),
        )
1097
1098
1099
    ray.get(refs)

    ray.shutdown()
1100
1101
1102


@contextmanager
1103
def error_on_warning(category: type[Warning] = Warning):
1104
1105
    """
    Within the scope of this context manager, tests will fail if any warning
1106
    of the given category is emitted.
1107
1108
    """
    with warnings.catch_warnings():
1109
        warnings.filterwarnings("error", category=category)
1110
1111

        yield
1112
1113


1114
1115
1116
1117
1118
1119
1120
1121
1122
1123
def get_physical_device_indices(devices):
    visible_devices = os.environ.get("CUDA_VISIBLE_DEVICES")
    if visible_devices is None:
        return devices

    visible_indices = [int(x) for x in visible_devices.split(",")]
    index_mapping = {i: physical for i, physical in enumerate(visible_indices)}
    return [index_mapping[i] for i in devices if i in index_mapping]


1124
@_nvml()
1125
1126
1127
def wait_for_gpu_memory_to_clear(
    *,
    devices: list[int],
1128
1129
    threshold_bytes: int | None = None,
    threshold_ratio: float | None = None,
1130
1131
    timeout_s: float = 120,
) -> None:
1132
    assert threshold_bytes is not None or threshold_ratio is not None
1133
1134
    # Use nvml instead of pytorch to reduce measurement error from torch cuda
    # context.
1135
    devices = get_physical_device_indices(devices)
1136
1137
    start_time = time.time()
    while True:
1138
        output: dict[int, str] = {}
1139
        output_raw: dict[int, tuple[float, float]] = {}
1140
        for device in devices:
1141
            if current_platform.is_rocm():
1142
1143
1144
                dev_handle = amdsmi_get_processor_handles()[device]
                mem_info = amdsmi_get_gpu_vram_usage(dev_handle)
                gb_used = mem_info["vram_used"] / 2**10
1145
                gb_total = mem_info["vram_total"] / 2**10
1146
1147
1148
1149
            else:
                dev_handle = nvmlDeviceGetHandleByIndex(device)
                mem_info = nvmlDeviceGetMemoryInfo(dev_handle)
                gb_used = mem_info.used / 2**30
1150
1151
                gb_total = mem_info.total / 2**30
            output_raw[device] = (gb_used, gb_total)
1152
            output[device] = f"{gb_used:.02f}/{gb_total:.02f}"
1153

1154
        print("gpu memory used/total (GiB): ", end="")
1155
        for k, v in output.items():
1156
1157
            print(f"{k}={v}; ", end="")
        print("")
1158

1159
1160
        if threshold_bytes is not None:
            is_free = lambda used, total: used <= threshold_bytes / 2**30
1161
            threshold = f"{threshold_bytes / 2**30} GiB"
1162
1163
1164
1165
        else:
            is_free = lambda used, total: used / total <= threshold_ratio
            threshold = f"{threshold_ratio:.2f}"

1166
        dur_s = time.time() - start_time
1167
        if all(is_free(used, total) for used, total in output_raw.values()):
1168
1169
1170
1171
            print(
                f"Done waiting for free GPU memory on devices {devices=} "
                f"({threshold=}) {dur_s=:.02f}"
            )
1172
1173
1174
            break

        if dur_s >= timeout_s:
1175
1176
1177
1178
            raise ValueError(
                f"Memory of devices {devices=} not free after "
                f"{dur_s=:.02f} ({threshold=})"
            )
1179
1180

        time.sleep(5)
1181
1182


1183
1184
1185
_P = ParamSpec("_P")


1186
def fork_new_process_for_each_test(func: Callable[_P, None]) -> Callable[_P, None]:
1187
1188
1189
    """Decorator to fork a new process for each test function.
    See https://github.com/vllm-project/vllm/issues/7053 for more details.
    """
1190

1191
    @functools.wraps(func)
1192
    def wrapper(*args: _P.args, **kwargs: _P.kwargs) -> None:
1193
1194
1195
1196
        # Make the process the leader of its own process group
        # to avoid sending SIGTERM to the parent process
        os.setpgrp()
        from _pytest.outcomes import Skipped
1197
1198
1199

        # Create a unique temporary file to store exception info from child
        # process. Use test function name and process ID to avoid collisions.
1200
1201
        with (
            tempfile.NamedTemporaryFile(
1202
                delete=False,
1203
                mode="w+b",
1204
                prefix=f"vllm_test_{func.__name__}_{os.getpid()}_",
1205
1206
1207
1208
                suffix=".exc",
            ) as exc_file,
            ExitStack() as delete_after,
        ):
1209
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1212
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1215
1216
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1218
1219
1220
1221
1222
1223
1224
1225
            exc_file_path = exc_file.name
            delete_after.callback(os.remove, exc_file_path)

            pid = os.fork()
            print(f"Fork a new process to run a test {pid}")
            if pid == 0:
                # Parent process responsible for deleting, don't delete
                # in child.
                delete_after.pop_all()
                try:
                    func(*args, **kwargs)
                except Skipped as e:
                    # convert Skipped to exit code 0
                    print(str(e))
                    os._exit(0)
                except Exception as e:
                    import traceback
1226

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                    tb_string = traceback.format_exc()

                    # Try to serialize the exception object first
                    exc_to_serialize: dict[str, Any]
                    try:
                        # First, try to pickle the actual exception with
                        # its traceback.
1234
                        exc_to_serialize = {"pickled_exception": e}
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                        # Test if it can be pickled
                        cloudpickle.dumps(exc_to_serialize)
                    except (Exception, KeyboardInterrupt):
                        # Fall back to string-based approach.
                        exc_to_serialize = {
1240
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                            "exception_type": type(e).__name__,
                            "exception_msg": str(e),
                            "traceback": tb_string,
1243
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                        }
                    try:
1245
                        with open(exc_file_path, "wb") as f:
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                            cloudpickle.dump(exc_to_serialize, f)
                    except Exception:
                        # Fallback: just print the traceback.
                        print(tb_string)
                    os._exit(1)
                else:
                    os._exit(0)
1253
            else:
1254
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1256
                pgid = os.getpgid(pid)
                _pid, _exitcode = os.waitpid(pid, 0)
                # ignore SIGTERM signal itself
1257
                old_signal_handler = signal.signal(signal.SIGTERM, signal.SIG_IGN)
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                # kill all child processes
                os.killpg(pgid, signal.SIGTERM)
                # restore the signal handler
                signal.signal(signal.SIGTERM, old_signal_handler)
                if _exitcode != 0:
                    # Try to read the exception from the child process
                    exc_info = {}
                    if os.path.exists(exc_file_path):
1266
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1269
                        with (
                            contextlib.suppress(Exception),
                            open(exc_file_path, "rb") as f,
                        ):
1270
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                            exc_info = cloudpickle.load(f)

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                    if (
                        original_exception := exc_info.get("pickled_exception")
                    ) is not None:
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                        # Re-raise the actual exception object if it was
                        # successfully pickled.
                        assert isinstance(original_exception, Exception)
                        raise original_exception

                    if (original_tb := exc_info.get("traceback")) is not None:
                        # Use string-based traceback for fallback case
                        raise AssertionError(
                            f"Test {func.__name__} failed when called with"
                            f" args {args} and kwargs {kwargs}"
                            f" (exit code: {_exitcode}):\n{original_tb}"
                        ) from None

                    # Fallback to the original generic error
                    raise AssertionError(
                        f"function {func.__name__} failed when called with"
                        f" args {args} and kwargs {kwargs}"
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                        f" (exit code: {_exitcode})"
                    ) from None
1294
1295

    return wrapper
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def spawn_new_process_for_each_test(f: Callable[_P, None]) -> Callable[_P, None]:
    """Decorator to spawn a new process for each test function."""
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1303

    @functools.wraps(f)
    def wrapper(*args: _P.args, **kwargs: _P.kwargs) -> None:
        # Check if we're already in a subprocess
1304
        if os.environ.get("RUNNING_IN_SUBPROCESS") == "1":
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            # If we are, just run the function directly
            return f(*args, **kwargs)

        import torch.multiprocessing as mp
1309

1310
        with suppress(RuntimeError):
1311
            mp.set_start_method("spawn")
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1317

        # Get the module
        module_name = f.__module__

        # Create a process with environment variable set
        env = os.environ.copy()
1318
        env["RUNNING_IN_SUBPROCESS"] = "1"
1319
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1324
1325

        with tempfile.TemporaryDirectory() as tempdir:
            output_filepath = os.path.join(tempdir, "new_process.tmp")

            # `cloudpickle` allows pickling complex functions directly
            input_bytes = cloudpickle.dumps((f, output_filepath))

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            repo_root = str(VLLM_PATH.resolve())

            env = dict(env or os.environ)
            env["PYTHONPATH"] = repo_root + os.pathsep + env.get("PYTHONPATH", "")

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            cmd = [sys.executable, "-m", f"{module_name}"]

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            returned = subprocess.run(
                cmd, input=input_bytes, capture_output=True, env=env
            )
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            # check if the subprocess is successful
            try:
                returned.check_returncode()
            except Exception as e:
                # wrap raised exception to provide more information
1342
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                raise RuntimeError(
                    f"Error raised in subprocess:\n{returned.stderr.decode()}"
                ) from e
1345
1346
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1348
1349

    return wrapper


def create_new_process_for_each_test(
1350
    method: Literal["spawn", "fork"] | None = None,
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1353
1354
) -> Callable[[Callable[_P, None]], Callable[_P, None]]:
    """Creates a decorator that runs each test function in a new process.

    Args:
1355
        method: The process creation method. Can be either "spawn" or "fork".
1356
1357
               If not specified, it defaults to "spawn" on ROCm and XPU
               platforms and "fork" otherwise.
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1362

    Returns:
        A decorator to run test functions in separate processes.
    """
    if method is None:
1363
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        use_spawn = current_platform.is_rocm() or current_platform.is_xpu()
        method = "spawn" if use_spawn else "fork"
1365

1366
    assert method in ["spawn", "fork"], "Method must be either 'spawn' or 'fork'"
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1369
1370
1371
1372
1373

    if method == "fork":
        return fork_new_process_for_each_test

    return spawn_new_process_for_each_test


1374
def large_gpu_mark(min_gb: int) -> pytest.MarkDecorator:
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1377
    """
    Get a pytest mark, which skips the test if the GPU doesn't meet
    a minimum memory requirement in GB.
1378

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1380
    This can be leveraged via `@large_gpu_test` to skip tests in environments
    without enough resources, or called when filtering tests to run directly.
1381
1382
    """
    try:
1383
        if current_platform.is_cpu():
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            memory_gb = 0
        else:
            memory_gb = current_platform.get_device_total_memory() / GB_bytes
    except Exception as e:
        warnings.warn(
            f"An error occurred when finding the available memory: {e}",
            stacklevel=2,
        )
        memory_gb = 0

1394
    return pytest.mark.skipif(
1395
        memory_gb < min_gb,
1396
        reason=f"Need at least {min_gb}GB GPU memory to run the test.",
1397
1398
    )

1399

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requires_fp8 = pytest.mark.skipif(
    not current_platform.supports_fp8(),
    reason="FP8 is not supported on this GPU (requires Hopper or "
    "Ada architecture, compute capability 8.9+)",
)


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def large_gpu_test(*, min_gb: int):
    """
    Decorate a test to be skipped if no GPU is available or it does not have
    sufficient memory.

    Currently, the CI machine uses L4 GPU which has 24 GB VRAM.
    """
1414
    mark = large_gpu_mark(min_gb)
1415

1416
    def wrapper(f: Callable[_P, None]) -> Callable[_P, None]:
1417
        return mark(f)
1418
1419
1420
1421

    return wrapper


1422
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1424
def multi_gpu_marks(*, num_gpus: int):
    """Get a collection of pytest marks to apply for `@multi_gpu_test`."""
    test_selector = pytest.mark.distributed(num_gpus=num_gpus)
1425
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1427
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1429
    test_skipif = pytest.mark.skipif(
        cuda_device_count_stateless() < num_gpus,
        reason=f"Need at least {num_gpus} GPUs to run the test.",
    )

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    return [test_selector, test_skipif]


def multi_gpu_test(*, num_gpus: int):
    """
    Decorate a test to be run only when multiple GPUs are available.
    """
    marks = multi_gpu_marks(num_gpus=num_gpus)

1439
    def wrapper(f: Callable[_P, None]) -> Callable[_P, None]:
1440
        func = create_new_process_for_each_test()(f)
1441
1442
1443
1444
        for mark in reversed(marks):
            func = mark(func)

        return func
1445
1446
1447
1448

    return wrapper


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def gpu_tier_mark(*, min_gpus: int = 1, max_gpus: int | None = None):
    """
    Mark a test to only run when the GPU count falls within [min_gpus, max_gpus].

    Examples:
        @gpu_tier_mark(min_gpus=2)          # only on multi-GPU
        @gpu_tier_mark(max_gpus=1)          # only on single-GPU
        @gpu_tier_mark(min_gpus=2, max_gpus=4)  # 2-4 GPUs only
    """
    gpu_count = cuda_device_count_stateless()
    marks = []

    if min_gpus > 1:
        marks.append(pytest.mark.distributed(num_gpus=min_gpus))

    reasons = []
    if gpu_count < min_gpus:
        reasons.append(f"Need at least {min_gpus} GPUs (have {gpu_count})")
    if max_gpus is not None and gpu_count > max_gpus:
        reasons.append(f"Need at most {max_gpus} GPUs (have {gpu_count})")

    if reasons:
        marks.append(pytest.mark.skipif(True, reason="; ".join(reasons)))

    return marks


def single_gpu_only(f=None):
    """Skip this test when running in a multi-GPU environment."""
    marks = gpu_tier_mark(max_gpus=1)

    def wrapper(func):
        for mark in reversed(marks):
            func = mark(func)
        return func

    return wrapper(f) if f is not None else wrapper


def multi_gpu_only(*, num_gpus: int = 2):
    """Skip this test when running on fewer than num_gpus GPUs."""
    marks = gpu_tier_mark(min_gpus=num_gpus)

    def wrapper(f):
        for mark in reversed(marks):
            f = mark(f)
        return f

    return wrapper


1500
async def completions_with_server_args(
1501
    prompts: list[str],
1502
    model_name: str,
1503
    server_cli_args: list[str],
1504
    num_logprobs: int | None,
1505
    max_wait_seconds: int = 240,
1506
    max_tokens: int | list = 5,
1507
) -> list[Completion]:
1508
    """Construct a remote OpenAI server, obtain an async client to the
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1510
1511
1512
1513
1514
1515
1516
1517
    server & invoke the completions API to obtain completions.

    Args:
      prompts: test prompts
      model_name: model to spin up on the vLLM server
      server_cli_args: CLI args for starting the server
      num_logprobs: Number of logprobs to report (or `None`)
      max_wait_seconds: timeout interval for bringing up server.
                        Default: 240sec
1518
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1520
      max_tokens: max_tokens value for each of the given input prompts.
        if only one max_token value is given, the same value is used
        for all the prompts.
1521
1522
1523

    Returns:
      OpenAI Completion instance
1524
    """
1525

1526
1527
1528
1529
1530
    if isinstance(max_tokens, int):
        max_tokens = [max_tokens] * len(prompts)

    assert len(max_tokens) == len(prompts)

1531
    outputs = None
1532
1533
1534
    with RemoteOpenAIServer(
        model_name, server_cli_args, max_wait_seconds=max_wait_seconds
    ) as server:
1535
        client = server.get_async_client()
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1546
        outputs = [
            client.completions.create(
                model=model_name,
                prompt=[p],
                temperature=0,
                stream=False,
                max_tokens=max_tok,
                logprobs=num_logprobs,
            )
            for p, max_tok in zip(prompts, max_tokens)
        ]
1547
1548
        outputs = await asyncio.gather(*outputs)

1549
    assert outputs is not None, "Completion API call failed."
1550
1551
1552
1553

    return outputs


1554
def get_client_text_generations(completions: list[Completion]) -> list[str]:
1555
    """Extract generated tokens from the output of a
1556
    request made to an Open-AI-protocol completions endpoint.
1557
    """
1558
1559
    assert all([len(x.choices) == 1 for x in completions])
    return [x.choices[0].text for x in completions]
1560
1561
1562


def get_client_text_logprob_generations(
1563
1564
1565
    completions: list[Completion],
) -> list[TextTextLogprobs]:
    """Operates on the output of a request made to an Open-AI-protocol
1566
    completions endpoint; obtains top-rank logprobs for each token in
1567
    each {class}`SequenceGroup`
1568
    """
1569
    text_generations = get_client_text_generations(completions)
1570
1571
1572
1573
1574
1575
1576
1577
1578
1579
    text = "".join(text_generations)
    return [
        (
            text_generations,
            text,
            (None if x.logprobs is None else x.logprobs.top_logprobs),
        )
        for completion in completions
        for x in completion.choices
    ]
1580
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1583
1584
1585
1586
1587
1588
1589
1590


def has_module_attribute(module_name, attribute_name):
    """
    Helper function to check if a module has a specific attribute.
    """
    try:
        module = importlib.import_module(module_name)
        return hasattr(module, attribute_name)
    except ImportError:
        return False
1591
1592
1593
1594


def get_attn_backend_list_based_on_platform() -> list[str]:
    if current_platform.is_cuda():
1595
        return ["FLASH_ATTN", "TRITON_ATTN", "TREE_ATTN"]
1596
    elif current_platform.is_rocm():
1597
        attn_backend_list = ["TRITON_ATTN"]
1598
1599
        try:
            import aiter  # noqa: F401
1600

1601
            attn_backend_list.append("ROCM_AITER_FA")
1602
        except Exception:
1603
            print("Skip ROCM_AITER_FA on ROCm as aiter is not installed")
1604
1605

        return attn_backend_list
1606
1607
    elif current_platform.is_xpu():
        return ["FLASH_ATTN", "TRITON_ATTN"]
1608
1609
    else:
        raise ValueError("Unsupported platform")
1610
1611
1612
1613
1614


@contextmanager
def override_cutlass_fp8_supported(value: bool):
    with patch(
1615
1616
1617
        "vllm.model_executor.layers.quantization.utils.w8a8_utils.cutlass_fp8_supported",
        return_value=value,
    ):
1618
        yield
1619
1620


1621
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1653
1654
1655
def disable_aiter_plain_rmsnorm(monkeypatch) -> None:
    """Patch dispatch_rocm_rmsnorm_func so the plain (non-fused) rms_norm path
    always uses the native float32 kernel for the duration of a test.

    The fused path (rms_norm2d_with_add, selected when with_fused_add=True) is
    left on AITER -- only the plain path is redirected to native.

    AITER's plain rms_norm accumulates variance in bfloat16 (~1 ULP/call),
    which drifts the KV cache over many decode steps. This drift is irrelevant
    for a trained model (rank-1/rank-2 gap ~1-3 nats >> 1 ULP), but breaks
    logprob comparison tests with randomly-initialised models like
    TitanML/tiny-mixtral whose rank-1/rank-2 gap is only O(1/sqrt(V)) ~0.006
    nats -- smaller than the accumulated per-step error.
    """
    import torch

    import vllm.model_executor.layers.layernorm as _ln_mod
    from vllm.model_executor.layers.layernorm import rms_norm as _native

    _orig = _ln_mod.dispatch_rocm_rmsnorm_func

    def _native_plain(
        with_fused_add: bool, dtype: torch.dtype, use_aiter: bool = False
    ):
        if (
            use_aiter
            and not with_fused_add
            and dtype in (torch.float16, torch.bfloat16)
        ):
            return _native
        return _orig(with_fused_add, dtype, use_aiter)

    monkeypatch.setattr(_ln_mod, "dispatch_rocm_rmsnorm_func", _native_plain)


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1668
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1672
def prep_prompts(batch_size: int, ln_range: tuple[int, int] = (800, 1100)):
    """
    Generate prompts which a bunch of assignments,
    then asking for the value of one of them.
    The prompt is just under 10k tokens; sliding window is 4k
    so the answer is outside sliding window, but should still be correct.
    Args:
        batch_size: number of prompts to generate
        ln_range: an argument to control the length of the prompt
    """
    prompts: list[str] = []
    answer: list[int] = []
    indices: list[int] = []
    random.seed(1)
    for _ in range(batch_size):
        idx = random.randint(30, 90)
        indices.append(idx)
1673
1674
        prompt = (
            "```python\n# We set a number of variables, "
1675
            f"x{idx} will be important later\n"
1676
        )
1677
1678
1679
1680
1681
1682
1683
1684
1685
1686
1687
1688
        ln = random.randint(*ln_range)
        for k in range(30, ln):
            v = random.randint(10, 99)
            if k == idx:
                answer.append(v)
            prompt += f"x{k} = {v}\n"
        prompt += f"# Now, we check the value of x{idx}:\n"
        prompt += f"assert x{idx} == "
        prompts.append(prompt)
    return prompts, answer, indices


1689
1690
1691
def check_answers(
    indices: list[int], answer: list[int], outputs: list[str], accept_rate: float = 0.7
):
1692
1693
1694
1695
1696
1697
1698
1699
1700
    answer2 = [int(text[0:2].strip()) for text in outputs]
    print(list(zip(indices, zip(answer, answer2))))
    numok = 0
    for a1, a2 in zip(answer, answer2):
        if a1 == a2:
            numok += 1
    frac_ok = numok / len(answer)
    print(f"Num OK: {numok}/{len(answer)} {frac_ok}")
    assert frac_ok >= accept_rate
1701
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1720


def flat_product(*iterables: Iterable[Any]):
    """
    Flatten lists of tuples of the cartesian product.
    Useful when we want to avoid nested tuples to allow
    test params to be unpacked directly from the decorator.

    Example:
    flat_product([(1, 2), (3, 4)], ["a", "b"]) ->
    [
      (1, 2, "a"),
      (1, 2, "b"),
      (3, 4, "a"),
      (3, 4, "b"),
    ]
    """
    for element in itertools.product(*iterables):
        normalized = (e if isinstance(e, tuple) else (e,) for e in element)
        yield tuple(itertools.chain(*normalized))
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class TestFP8Layer(torch.nn.Module):
    """
    Test helper for FP8 linear operations. Creates random weights and scales
    based on quantization configuration.

    Args:
        weight_shape: Shape of the weight tensor (out_features, in_features).
        activation_quant_key: Activation quantization configuration.
        weight_quant_key: Weight quantization configuration.
        out_dtype: Output dtype. Defaults to current default dtype.
        force_kernel: Optional kernel to force use of specific implementation.
    """

    def __init__(
        self,
        weight_shape: tuple[int, int],
        activation_quant_key: QuantKey,
        weight_quant_key: QuantKey,
        out_dtype: torch.dtype | None = None,
        device: torch.device | None = None,
        force_kernel: FP8ScaledMMLinearKernel | None = None,
    ):
        super().__init__()
        per_tensor_weights = weight_quant_key.scale.group_shape.is_per_tensor()
        is_static_activation_scale = activation_quant_key.scale.static
        weight_scale_shape = (1,) if per_tensor_weights else (weight_shape[0], 1)

        self.weight_scale = torch.rand(
            weight_scale_shape, dtype=torch.float32, device=device
        )
        self.input_scale = (
            torch.rand(1, dtype=torch.float32, device=device)
            if is_static_activation_scale
            else None
        )
        self.weight = torch.rand(weight_shape, device=device).to(dtype=FP8_DTYPE).t()
        self.input_scale_ub = None

        out_dtype = torch.get_default_dtype() if out_dtype is None else out_dtype

        self.kernel = init_fp8_linear_kernel(
            activation_quant_key=activation_quant_key,
            weight_quant_key=weight_quant_key,
            out_dtype=out_dtype,
            force_kernel=force_kernel,
        )

    def is_quant_fp8_enabled(self) -> bool:
        return self.kernel.quant_fp8.enabled()

    def forward(
        self, y: torch.Tensor, bias: torch.Tensor | None = None
    ) -> torch.Tensor:
        return self.kernel.apply_weights(self, y, bias)


# TODO: Drop TestBlockFP8Layer in favour of a unified TestFP8Layer
# after refactoring W8A8BlockFp8LinearOp.
# https://github.com/vllm-project/vllm/issues/31818
class TestBlockFP8Layer:
    """
    Test helper for blockwise FP8 linear operations. Creates random weights
    and scales for W8A8BlockFp8LinearOp.

    This is a workaround until W8A8BlockFp8LinearOp implements the kernel
    abstraction (ScaledMMLinearKernel) for blockwise quantization.

    Args:
        weight_shape: Shape of the weight tensor (out_features, in_features).
        group_shape: Blockwise quantization group shape.
        cutlass_block_fp8_supported: Whether CUTLASS blockwise FP8 is available.
        use_aiter_and_is_supported: Whether to use aiter quantization ops.
        transpose_weights: Whether to transpose weights after creation.
    """

    def __init__(
        self,
        weight_shape: tuple[int, int],
        group_shape: GroupShape,
        cutlass_block_fp8_supported: bool = False,
        use_aiter_and_is_supported: bool = False,
        transpose_weights: bool = False,
    ):
        weight_scale_shape = weight_shape[0] // group_shape[1]
        self.weight_scale = torch.rand(
            (weight_scale_shape, weight_scale_shape), dtype=torch.float32
        )
        self.weight = torch.rand(weight_shape).to(dtype=FP8_DTYPE)
        self.input_scale = None
        if transpose_weights:
            self.weight = self.weight.t()

        self.linear_op = W8A8BlockFp8LinearOp(
            weight_group_shape=GroupShape(group_shape[1], group_shape[1]),
            act_quant_group_shape=group_shape,
            cutlass_block_fp8_supported=cutlass_block_fp8_supported,
            use_aiter_and_is_supported=use_aiter_and_is_supported,
        )

    def __call__(
        self, y: torch.Tensor, bias: torch.Tensor | None = None
    ) -> torch.Tensor:
        return self.linear_op.apply(
            input=y,
            weight=self.weight,
            weight_scale=self.weight_scale,
            input_scale=self.input_scale,
            bias=bias,
        )

    def is_quant_fp8_enabled(self) -> bool:
        return self.linear_op.input_quant_op.enabled()