__init__.py 83.7 KB
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# SPDX-License-Identifier: Apache-2.0
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# SPDX-FileCopyrightText: Copyright contributors to the vLLM project
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import contextlib
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import datetime
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import enum
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import gc
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import getpass
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import hashlib
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import importlib
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import inspect
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import ipaddress
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import json
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import multiprocessing
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import os
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import pickle
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import signal
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import socket
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import subprocess
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import sys
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import tempfile
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import textwrap
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import threading
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import time
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import traceback
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import uuid
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import warnings
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import weakref
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from argparse import (
    Action,
    ArgumentDefaultsHelpFormatter,
    ArgumentParser,
    ArgumentTypeError,
    RawDescriptionHelpFormatter,
    _ArgumentGroup,
)
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from collections import defaultdict
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from collections.abc import (
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    Callable,
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    Collection,
    Generator,
    Iterator,
    Sequence,
)
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from concurrent.futures.process import ProcessPoolExecutor
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from dataclasses import dataclass, field
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from functools import cache, lru_cache, partial, wraps
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from pathlib import Path
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from typing import TYPE_CHECKING, Any, TextIO, TypeVar
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from urllib.parse import urlparse
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from uuid import uuid4
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import cbor2
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import cloudpickle
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import numpy as np
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import numpy.typing as npt
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import psutil
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import regex as re
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import setproctitle
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import torch
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import torch.types
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import yaml
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import zmq
import zmq.asyncio
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from packaging import version
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from packaging.version import Version
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from torch.library import Library
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import vllm.envs as envs
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from vllm.logger import enable_trace_function_call, init_logger
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from vllm.ray.lazy_utils import is_in_ray_actor
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if TYPE_CHECKING:
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    from argparse import Namespace

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    from vllm.config import ModelConfig, VllmConfig
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    from vllm.sequence import IntermediateTensors
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else:
    Namespace = object

    ModelConfig = object
    VllmConfig = object
    IntermediateTensors = object
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logger = init_logger(__name__)

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# This value is chosen to have a balance between ITL and TTFT. Note it is
# not optimized for throughput.
DEFAULT_MAX_NUM_BATCHED_TOKENS = 2048
POOLING_MODEL_MAX_NUM_BATCHED_TOKENS = 32768
MULTIMODAL_MODEL_MAX_NUM_BATCHED_TOKENS = 5120

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# Constants related to forcing the attention backend selection

# String name of register which may be set in order to
# force auto-selection of attention backend by Attention
# wrapper
STR_BACKEND_ENV_VAR: str = "VLLM_ATTENTION_BACKEND"

# Possible string values of STR_BACKEND_ENV_VAR
# register, corresponding to possible backends
STR_FLASHINFER_ATTN_VAL: str = "FLASHINFER"
STR_TORCH_SDPA_ATTN_VAL: str = "TORCH_SDPA"
STR_XFORMERS_ATTN_VAL: str = "XFORMERS"
STR_FLASH_ATTN_VAL: str = "FLASH_ATTN"
STR_INVALID_VAL: str = "INVALID"

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MB_bytes = 1_000_000
"""The number of bytes in one megabyte (MB)."""

MiB_bytes = 1 << 20
"""The number of bytes in one mebibyte (MiB)."""

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GB_bytes = 1_000_000_000
"""The number of bytes in one gigabyte (GB)."""

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GiB_bytes = 1 << 30
"""The number of bytes in one gibibyte (GiB)."""

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# ANSI color codes
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CYAN = "\033[1;36m"
RESET = "\033[0;0m"
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STR_DTYPE_TO_TORCH_DTYPE = {
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    "float32": torch.float32,
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    "half": torch.half,
    "bfloat16": torch.bfloat16,
    "float": torch.float,
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    "fp8": torch.uint8,
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    "fp8_e4m3": torch.uint8,
    "fp8_e5m2": torch.uint8,
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    "int8": torch.int8,
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    "fp8_inc": torch.float8_e4m3fn,
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    "fp8_ds_mla": torch.uint8,
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}
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TORCH_DTYPE_TO_NUMPY_DTYPE = {
    torch.float16: np.float16,
    torch.float32: np.float32,
    torch.float64: np.float64,
    torch.uint8: np.uint8,
    torch.int32: np.int32,
    torch.int64: np.int64,
}

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@contextlib.contextmanager
def set_default_torch_num_threads(num_threads: int):
    """Sets the default number of threads for PyTorch to the given value."""
    old_num_threads = torch.get_num_threads()
    torch.set_num_threads(num_threads)
    yield
    torch.set_num_threads(old_num_threads)


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T = TypeVar("T")
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U = TypeVar("U")
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class Device(enum.Enum):
    GPU = enum.auto()
    CPU = enum.auto()


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class LayerBlockType(enum.Enum):
    attention = "attention"
    mamba = "mamba"


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class Counter:
    def __init__(self, start: int = 0) -> None:
        self.counter = start

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    def __next__(self) -> int:
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        i = self.counter
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        self.counter += 1
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        return i
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    def reset(self) -> None:
        self.counter = 0
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@cache
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def get_max_shared_memory_bytes(gpu: int = 0) -> int:
    """Returns the maximum shared memory per thread block in bytes."""
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    from vllm import _custom_ops as ops
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    max_shared_mem = ops.get_max_shared_memory_per_block_device_attribute(gpu)
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    # value 0 will cause MAX_SEQ_LEN become negative and test_attention.py
    # will fail
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    assert max_shared_mem > 0, "max_shared_mem can not be zero"
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    return int(max_shared_mem)


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def get_cpu_memory() -> int:
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    """Returns the total CPU memory of the node in bytes."""
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    return psutil.virtual_memory().total
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def random_uuid() -> str:
    return str(uuid.uuid4().hex)
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def close_sockets(sockets: Sequence[zmq.Socket | zmq.asyncio.Socket]):
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    for sock in sockets:
        if sock is not None:
            sock.close(linger=0)


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def get_ip() -> str:
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    host_ip = envs.VLLM_HOST_IP
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    if "HOST_IP" in os.environ and "VLLM_HOST_IP" not in os.environ:
        logger.warning(
            "The environment variable HOST_IP is deprecated and ignored, as"
            " it is often used by Docker and other software to"
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            " interact with the container's network stack. Please "
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            "use VLLM_HOST_IP instead to set the IP address for vLLM processes"
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            " to communicate with each other."
        )
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    if host_ip:
        return host_ip

    # IP is not set, try to get it from the network interface

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    # try ipv4
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    s = socket.socket(socket.AF_INET, socket.SOCK_DGRAM)
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    try:
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        s.connect(("8.8.8.8", 80))  # Doesn't need to be reachable
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        return s.getsockname()[0]
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    except Exception:
        pass

    # try ipv6
    try:
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        s = socket.socket(socket.AF_INET6, socket.SOCK_DGRAM)
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        # Google's public DNS server, see
        # https://developers.google.com/speed/public-dns/docs/using#addresses
        s.connect(("2001:4860:4860::8888", 80))  # Doesn't need to be reachable
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        return s.getsockname()[0]
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    except Exception:
        pass

    warnings.warn(
        "Failed to get the IP address, using 0.0.0.0 by default."
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        "The value can be set by the environment variable"
        " VLLM_HOST_IP or HOST_IP.",
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        stacklevel=2,
    )
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    return "0.0.0.0"
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def test_loopback_bind(address, family):
    try:
        s = socket.socket(family, socket.SOCK_DGRAM)
        s.bind((address, 0))  # Port 0 = auto assign
        s.close()
        return True
    except OSError:
        return False


def get_loopback_ip() -> str:
    loopback_ip = envs.VLLM_LOOPBACK_IP
    if loopback_ip:
        return loopback_ip

    # VLLM_LOOPBACK_IP is not set, try to get it based on network interface

    if test_loopback_bind("127.0.0.1", socket.AF_INET):
        return "127.0.0.1"
    elif test_loopback_bind("::1", socket.AF_INET6):
        return "::1"
    else:
        raise RuntimeError(
            "Neither 127.0.0.1 nor ::1 are bound to a local interface. "
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            "Set the VLLM_LOOPBACK_IP environment variable explicitly."
        )
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def is_valid_ipv6_address(address: str) -> bool:
    try:
        ipaddress.IPv6Address(address)
        return True
    except ValueError:
        return False


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def split_host_port(host_port: str) -> tuple[str, int]:
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    # ipv6
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    if host_port.startswith("["):
        host, port = host_port.rsplit("]", 1)
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        host = host[1:]
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        port = port.split(":")[1]
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        return host, int(port)
    else:
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        host, port = host_port.split(":")
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        return host, int(port)


def join_host_port(host: str, port: int) -> str:
    if is_valid_ipv6_address(host):
        return f"[{host}]:{port}"
    else:
        return f"{host}:{port}"


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def get_distributed_init_method(ip: str, port: int) -> str:
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    return get_tcp_uri(ip, port)


def get_tcp_uri(ip: str, port: int) -> str:
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    if is_valid_ipv6_address(ip):
        return f"tcp://[{ip}]:{port}"
    else:
        return f"tcp://{ip}:{port}"
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def get_open_zmq_ipc_path() -> str:
    base_rpc_path = envs.VLLM_RPC_BASE_PATH
    return f"ipc://{base_rpc_path}/{uuid4()}"


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def get_open_zmq_inproc_path() -> str:
    return f"inproc://{uuid4()}"


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def get_open_port() -> int:
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    """
    Get an open port for the vLLM process to listen on.
    An edge case to handle, is when we run data parallel,
    we need to avoid ports that are potentially used by
    the data parallel master process.
    Right now we reserve 10 ports for the data parallel master
    process. Currently it uses 2 ports.
    """
    if "VLLM_DP_MASTER_PORT" in os.environ:
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        dp_master_port = envs.VLLM_DP_MASTER_PORT
        reserved_port_range = range(dp_master_port, dp_master_port + 10)
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        while True:
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            candidate_port = _get_open_port()
            if candidate_port not in reserved_port_range:
                return candidate_port
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    return _get_open_port()

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def get_open_ports_list(count: int = 5) -> list[int]:
    """Get a list of open ports."""
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    ports = set[int]()
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    while len(ports) < count:
        ports.add(get_open_port())
    return list(ports)


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def _get_open_port() -> int:
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    port = envs.VLLM_PORT
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    if port is not None:
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        while True:
            try:
                with socket.socket(socket.AF_INET, socket.SOCK_STREAM) as s:
                    s.bind(("", port))
                    return port
            except OSError:
                port += 1  # Increment port number if already in use
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                logger.info("Port %d is already in use, trying port %d", port - 1, port)
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    # try ipv4
    try:
        with socket.socket(socket.AF_INET, socket.SOCK_STREAM) as s:
            s.bind(("", 0))
            return s.getsockname()[1]
    except OSError:
        # try ipv6
        with socket.socket(socket.AF_INET6, socket.SOCK_STREAM) as s:
            s.bind(("", 0))
            return s.getsockname()[1]
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def find_process_using_port(port: int) -> psutil.Process | None:
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    # TODO: We can not check for running processes with network
    # port on macOS. Therefore, we can not have a full graceful shutdown
    # of vLLM. For now, let's not look for processes in this case.
    # Ref: https://www.florianreinhard.de/accessdenied-in-psutil/
    if sys.platform.startswith("darwin"):
        return None

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    our_pid = os.getpid()
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    for conn in psutil.net_connections():
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        if conn.laddr.port == port and (conn.pid is not None and conn.pid != our_pid):
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            try:
                return psutil.Process(conn.pid)
            except psutil.NoSuchProcess:
                return None
    return None


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def update_environment_variables(envs: dict[str, str]):
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    for k, v in envs.items():
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        if k in os.environ and os.environ[k] != v:
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            logger.warning(
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                "Overwriting environment variable %s from '%s' to '%s'",
                k,
                os.environ[k],
                v,
            )
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        os.environ[k] = v
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def cdiv(a: int, b: int) -> int:
    """Ceiling division."""
    return -(a // -b)


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def next_power_of_2(n) -> int:
    """The next power of 2 (inclusive)"""
    if n < 1:
        return 1
    return 1 << (n - 1).bit_length()


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def prev_power_of_2(n: int) -> int:
    """The previous power of 2 (inclusive)"""
    if n <= 0:
        return 0
    return 1 << (n.bit_length() - 1)


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def round_up(x: int, y: int) -> int:
    return ((x + y - 1) // y) * y


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def round_down(x: int, y: int) -> int:
    return (x // y) * y


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def _generate_random_fp8(
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    tensor: torch.Tensor,
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    low: float,
    high: float,
) -> None:
    # NOTE(zhaoyang): Due to NaN and Inf representation for fp8 data type,
    # it may occur Inf or NaN if we directly use torch.randint
    # to generate random data for fp8 data.
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    # For example, s.11111.00 in fp8e5m2 format represents Inf.
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    #     | E4M3        | E5M2
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    # -----|-------------|-------------------
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    # Inf | N/A         | s.11111.00
    # NaN | s.1111.111  | s.11111.{01,10,11}
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    from vllm import _custom_ops as ops
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    tensor_tmp = torch.empty_like(tensor, dtype=torch.float16)
    tensor_tmp.uniform_(low, high)
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    ops.convert_fp8(tensor, tensor_tmp)
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    del tensor_tmp


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def get_kv_cache_torch_dtype(
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    cache_dtype: str | torch.dtype | None,
    model_dtype: str | torch.dtype | None = None,
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) -> torch.dtype:
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    if isinstance(cache_dtype, str):
        if cache_dtype == "auto":
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            if isinstance(model_dtype, str) and model_dtype in STR_DTYPE_TO_TORCH_DTYPE:
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                torch_dtype = STR_DTYPE_TO_TORCH_DTYPE[model_dtype]
            elif isinstance(model_dtype, torch.dtype):
                torch_dtype = model_dtype
            else:
                raise ValueError(f"Invalid model dtype: {model_dtype}")
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        elif cache_dtype in STR_DTYPE_TO_TORCH_DTYPE:
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            torch_dtype = STR_DTYPE_TO_TORCH_DTYPE[cache_dtype]
        else:
            raise ValueError(f"Invalid kv cache dtype: {cache_dtype}")
    elif isinstance(cache_dtype, torch.dtype):
        torch_dtype = cache_dtype
    else:
        raise ValueError(f"Invalid kv cache dtype: {cache_dtype}")
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    return torch_dtype


def create_kv_caches_with_random_flash(
    num_blocks: int,
    block_size: int,
    num_layers: int,
    num_heads: int,
    head_size: int,
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    cache_dtype: str | torch.dtype | None,
    model_dtype: str | torch.dtype | None = None,
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    seed: int | None = None,
    device: str | None = "cuda",
    cache_layout: str | None = "NHD",
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) -> tuple[list[torch.Tensor], list[torch.Tensor]]:
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    from vllm.platforms import current_platform
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    current_platform.seed_everything(seed)
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    dtype = get_kv_cache_torch_dtype(cache_dtype, model_dtype)
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    generic_kv_cache_shape = (num_blocks, 2, block_size, num_heads, head_size)
    assert cache_layout in ("NHD", "HND")
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    stride_order = (0, 1, 2, 3, 4) if cache_layout == "NHD" else (0, 1, 3, 2, 4)
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    kv_cache_allocation_shape = tuple(generic_kv_cache_shape[i] for i in stride_order)
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    scale = head_size**-0.5
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    key_caches: list[torch.Tensor] = []
    value_caches: list[torch.Tensor] = []
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    for _ in range(num_layers):
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        key_value_cache = torch.empty(
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            size=kv_cache_allocation_shape, dtype=dtype, device=device
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        ).permute(*stride_order)
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        if cache_dtype in ["auto", "half", "bfloat16", "float"]:
            key_value_cache.uniform_(-scale, scale)
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        elif cache_dtype == "fp8":
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            _generate_random_fp8(key_value_cache, -scale, scale)
        else:
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            raise ValueError(f"Does not support key cache of type {cache_dtype}")
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        key_caches.append(key_value_cache[:, 0])
        value_caches.append(key_value_cache[:, 1])
    return key_caches, value_caches


def create_kv_caches_with_random(
    num_blocks: int,
    block_size: int,
    num_layers: int,
    num_heads: int,
    head_size: int,
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    cache_dtype: str | torch.dtype | None,
    model_dtype: str | torch.dtype | None = None,
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    seed: int | None = None,
    device: str | None = "cuda",
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) -> tuple[list[torch.Tensor], list[torch.Tensor]]:
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    if cache_dtype == "fp8" and head_size % 16:
        raise ValueError(
            f"Does not support key cache of type fp8 with head_size {head_size}"
        )
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    from vllm.platforms import current_platform
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    current_platform.seed_everything(seed)
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    dtype = get_kv_cache_torch_dtype(cache_dtype, model_dtype)
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    scale = head_size**-0.5
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    x = 16 // torch.tensor([], dtype=dtype).element_size()
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    key_cache_shape = (num_blocks, num_heads, head_size // x, block_size, x)
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    key_caches: list[torch.Tensor] = []
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    for _ in range(num_layers):
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        key_cache = torch.empty(size=key_cache_shape, dtype=dtype, device=device)
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        if cache_dtype in ["auto", "half", "bfloat16", "float"]:
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            key_cache.uniform_(-scale, scale)
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        elif cache_dtype == "fp8":
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            _generate_random_fp8(key_cache, -scale, scale)
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        else:
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            raise ValueError(f"Does not support key cache of type {cache_dtype}")
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        key_caches.append(key_cache)

    value_cache_shape = (num_blocks, num_heads, head_size, block_size)
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    value_caches: list[torch.Tensor] = []
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    for _ in range(num_layers):
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        value_cache = torch.empty(size=value_cache_shape, dtype=dtype, device=device)
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        if cache_dtype in ["auto", "half", "bfloat16", "float"]:
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            value_cache.uniform_(-scale, scale)
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        elif cache_dtype == "fp8":
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            _generate_random_fp8(value_cache, -scale, scale)
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        else:
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            raise ValueError(f"Does not support value cache of type {cache_dtype}")
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        value_caches.append(value_cache)
    return key_caches, value_caches
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@cache
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def is_pin_memory_available() -> bool:
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    from vllm.platforms import current_platform
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    return current_platform.is_pin_memory_available()
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@cache
def is_uva_available() -> bool:
    """Check if Unified Virtual Addressing (UVA) is available."""
    # UVA requires pinned memory.
    # TODO: Add more requirements for UVA if needed.
    return is_pin_memory_available()


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class DeviceMemoryProfiler:
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    def __init__(self, device: torch.types.Device | None = None):
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        self.device = device

    def current_memory_usage(self) -> float:
        # Return the memory usage in bytes.
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        from vllm.platforms import current_platform
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        gc.collect()
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        return current_platform.get_current_memory_usage(self.device)
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    def __enter__(self):
        self.initial_memory = self.current_memory_usage()
        # This allows us to call methods of the context manager if needed
        return self

    def __exit__(self, exc_type, exc_val, exc_tb):
        self.final_memory = self.current_memory_usage()
        self.consumed_memory = self.final_memory - self.initial_memory

        # Force garbage collection
        gc.collect()
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def make_ndarray_with_pad(
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    x: list[list[T]],
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    pad: T,
    dtype: npt.DTypeLike,
    *,
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    max_len: int | None = None,
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) -> npt.NDArray:
    """
    Make a padded array from 2D inputs.
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    The padding is applied to the end of each inner list until it reaches
    `max_len`.
    """
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    if max_len is None:
        # Unlike for most functions, map is faster than a genexpr over `len`
        max_len = max(map(len, x), default=0)

    padded_x = np.full((len(x), max_len), pad, dtype=dtype)
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    for ind, blocktb in enumerate(x):
        assert len(blocktb) <= max_len
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        padded_x[ind, : len(blocktb)] = blocktb
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    return padded_x


def make_tensor_with_pad(
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    x: list[list[T]],
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    pad: T,
    dtype: torch.dtype,
    *,
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    max_len: int | None = None,
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    device: str | torch.device | None = None,
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    pin_memory: bool = False,
) -> torch.Tensor:
    """
    Make a padded tensor from 2D inputs.

    The padding is applied to the end of each inner list until it reaches
    `max_len`.
    """
    np_dtype = TORCH_DTYPE_TO_NUMPY_DTYPE[dtype]
    padded_x = make_ndarray_with_pad(x, pad, np_dtype, max_len=max_len)

    tensor = torch.from_numpy(padded_x).to(device)
    if pin_memory:
        tensor = tensor.pin_memory()

    return tensor
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def async_tensor_h2d(
    data: list,
    dtype: torch.dtype,
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    target_device: str | torch.device,
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    pin_memory: bool,
) -> torch.Tensor:
    """Asynchronously create a tensor and copy it from host to device."""
    t = torch.tensor(data, dtype=dtype, pin_memory=pin_memory, device="cpu")
    return t.to(device=target_device, non_blocking=True)


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def get_dtype_size(dtype: torch.dtype) -> int:
    """Get the size of the data type in bytes."""
    return torch.tensor([], dtype=dtype).element_size()


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# bool = 0, int = 1, float = 2, complex = 3
def _get_precision_level(dtype: torch.dtype) -> int:
    # NOTE: Complex dtypes return `is_floating_point=False`
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    return (dtype != torch.bool) + dtype.is_floating_point + dtype.is_complex * 2
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def is_lossless_cast(src_dtype: torch.dtype, tgt_dtype: torch.dtype):
    """
    Test whether it is lossless to cast a tensor from
    `src_dtype` to `tgt_dtype`.
    """
    if src_dtype == tgt_dtype:
        return True

    src_level = _get_precision_level(src_dtype)
    tgt_level = _get_precision_level(tgt_dtype)

    if src_level < tgt_level:
        return True
    if src_level > tgt_level:
        return False

    # Compare integral types
    if not src_dtype.is_floating_point and not src_dtype.is_complex:
        src_info = torch.iinfo(src_dtype)
        tgt_info = torch.iinfo(tgt_dtype)
        return src_info.min >= tgt_info.min and src_info.max <= tgt_info.max

    # Compare floating-point types
    src_info = torch.finfo(src_dtype)
    tgt_info = torch.finfo(tgt_dtype)
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    return (
        src_info.min >= tgt_info.min
        and src_info.max <= tgt_info.max
        and src_info.resolution >= tgt_info.resolution
    )
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def common_broadcastable_dtype(dtypes: Collection[torch.dtype]):
    """
    Get the common `dtype` where all of the other `dtypes` can be
    cast to it without losing any information.
    """
    return max(
        dtypes,
        key=lambda dtype: sum(is_lossless_cast(dt, dtype) for dt in dtypes),
    )


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# TODO: This function can be removed if transformer_modules classes are
# serialized by value when communicating between processes
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def init_cached_hf_modules() -> None:
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    """
    Lazy initialization of the Hugging Face modules.
    """
    from transformers.dynamic_module_utils import init_hf_modules
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    init_hf_modules()
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@cache
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def find_library(lib_name: str) -> str:
    """
    Find the library file in the system.
    `lib_name` is full filename, with both prefix and suffix.
    This function resolves `lib_name` to the full path of the library.
    """
    # Adapted from https://github.com/openai/triton/blob/main/third_party/nvidia/backend/driver.py#L19 # noqa
    # According to https://en.wikipedia.org/wiki/Filesystem_Hierarchy_Standard
    # `/sbin/ldconfig` should exist in all Linux systems.
    # `/sbin/ldconfig` searches the library in the system
    libs = subprocess.check_output(["/sbin/ldconfig", "-p"]).decode()
    # each line looks like the following:
    # libcuda.so.1 (libc6,x86-64) => /lib/x86_64-linux-gnu/libcuda.so.1
    locs = [line.split()[-1] for line in libs.splitlines() if lib_name in line]
    # `LD_LIBRARY_PATH` searches the library in the user-defined paths
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    env_ld_library_path = envs.LD_LIBRARY_PATH
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    if not locs and env_ld_library_path:
        locs = [
            os.path.join(dir, lib_name)
            for dir in env_ld_library_path.split(":")
            if os.path.exists(os.path.join(dir, lib_name))
        ]
    if not locs:
        raise ValueError(f"Cannot find {lib_name} in the system.")
    return locs[0]


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def find_nccl_library() -> str:
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    """
    We either use the library file specified by the `VLLM_NCCL_SO_PATH`
    environment variable, or we find the library file brought by PyTorch.
    After importing `torch`, `libnccl.so.2` or `librccl.so.1` can be
    found by `ctypes` automatically.
    """
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    so_file = envs.VLLM_NCCL_SO_PATH
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    # manually load the nccl library
    if so_file:
        logger.info(
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            "Found nccl from environment variable VLLM_NCCL_SO_PATH=%s", so_file
        )
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    else:
        if torch.version.cuda is not None:
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            so_file = "libnccl.so.2"
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        elif torch.version.hip is not None:
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            so_file = "librccl.so.1"
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        else:
            raise ValueError("NCCL only supports CUDA and ROCm backends.")
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        logger.debug_once("Found nccl from library %s", so_file)
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    return so_file
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def find_nccl_include_paths() -> list[str] | None:
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    """
    We either use the nccl.h specified by the `VLLM_NCCL_INCLUDE_PATH`
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    environment variable, or we find the library file brought by
    nvidia-nccl-cuXX. load_inline by default uses
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    torch.utils.cpp_extension.include_paths
    """
    paths: list[str] = []
    inc = envs.VLLM_NCCL_INCLUDE_PATH
    if inc and os.path.isdir(inc):
        paths.append(inc)

    try:
        spec = importlib.util.find_spec("nvidia.nccl")
        if spec and getattr(spec, "submodule_search_locations", None):
            for loc in spec.submodule_search_locations:
                inc_dir = os.path.join(loc, "include")
                if os.path.exists(os.path.join(inc_dir, "nccl.h")):
                    paths.append(inc_dir)
    except Exception:
        pass

    seen = set()
    out: list[str] = []
    for p in paths:
        if p and p not in seen:
            out.append(p)
            seen.add(p)
    return out or None


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prev_set_stream = torch.cuda.set_stream

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_current_stream_tls = threading.local()
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def _patched_set_stream(stream: torch.cuda.Stream) -> None:
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    _current_stream_tls.value = stream
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    prev_set_stream(stream)


torch.cuda.set_stream = _patched_set_stream


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class _StreamPlaceholder:
    def __init__(self):
        self.synchronize = lambda: None


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def current_stream() -> torch.cuda.Stream:
    """
    replace `torch.cuda.current_stream()` with `vllm.utils.current_stream()`.
    it turns out that `torch.cuda.current_stream()` is quite expensive,
    as it will construct a new stream object at each call.
    here we patch `torch.cuda.set_stream` to keep track of the current stream
    directly, so that we can avoid calling `torch.cuda.current_stream()`.

    the underlying hypothesis is that we do not call `torch._C._cuda_setStream`
    from C/C++ code.
    """
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    from vllm.platforms import current_platform
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    if not hasattr(_current_stream_tls, "value") or _current_stream_tls.value is None:
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        # when this function is called before any stream is set,
        # we return the default stream.
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        # On ROCm using the default 0 stream in combination with RCCL
        # is hurting performance. Therefore creating a dedicated stream
        # per process
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        if current_platform.is_rocm():
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            # torch.cuda.set_stream here is the alias of _pathed_set_stream
            torch.cuda.set_stream(torch.cuda.Stream())
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        elif current_platform.is_cpu():
            _current_stream_tls.value = _StreamPlaceholder()
        else:
            current_stream = current_platform.current_stream
            if current_stream is not None:
                _current_stream_tls.value = current_stream()
            else:
                raise ValueError(
                    "Fail to set current stream, current platform "
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                    "may not support current_stream with torch API"
                )
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    return _current_stream_tls.value
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def enable_trace_function_call_for_thread(vllm_config: VllmConfig) -> None:
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    """Set up function tracing for the current thread,
    if enabled via the VLLM_TRACE_FUNCTION environment variable
    """

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    if envs.VLLM_TRACE_FUNCTION:
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        tmp_dir = tempfile.gettempdir()
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        # add username to tmp_dir to avoid permission issues
        tmp_dir = os.path.join(tmp_dir, getpass.getuser())
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        filename = (
            f"VLLM_TRACE_FUNCTION_for_process_{os.getpid()}"
            f"_thread_{threading.get_ident()}_"
            f"at_{datetime.datetime.now()}.log"
        ).replace(" ", "_")
        log_path = os.path.join(
            tmp_dir, "vllm", f"vllm-instance-{vllm_config.instance_id}", filename
        )
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        os.makedirs(os.path.dirname(log_path), exist_ok=True)
        enable_trace_function_call(log_path)
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@lru_cache(maxsize=8)
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def _cuda_device_count_stateless(cuda_visible_devices: str | None = None) -> int:
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    # Note: cuda_visible_devices is not used, but we keep it as an argument for
    # LRU Cache purposes.

    # Code below is based on
    # https://github.com/pytorch/pytorch/blob/
    # c1cd946818442aca8c7f812b16d187ce1586c3bc/
    # torch/cuda/__init__.py#L831C1-L831C17
    import torch.cuda

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    from vllm.platforms import current_platform
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    if not torch.cuda._is_compiled():
        return 0
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    if current_platform.is_rocm():
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        # ROCm uses amdsmi instead of nvml for stateless device count
        # This requires a sufficiently modern version of Torch 2.4.0
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        raw_count = (
            torch.cuda._device_count_amdsmi()
            if (hasattr(torch.cuda, "_device_count_amdsmi"))
            else -1
        )
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    else:
        raw_count = torch.cuda._device_count_nvml()
    r = torch._C._cuda_getDeviceCount() if raw_count < 0 else raw_count
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    return r


def cuda_device_count_stateless() -> int:
    """Get number of CUDA devices, caching based on the value of
    CUDA_VISIBLE_DEVICES at the time of call.
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    This should be used instead of torch.cuda.device_count()
    unless CUDA_VISIBLE_DEVICES has already been set to the desired
    value."""

    # This can be removed and simply replaced with torch.cuda.get_device_count
    # after https://github.com/pytorch/pytorch/pull/122815 is released.
    return _cuda_device_count_stateless(envs.CUDA_VISIBLE_DEVICES)
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def cuda_is_initialized() -> bool:
    """Check if CUDA is initialized."""
    if not torch.cuda._is_compiled():
        return False
    return torch.cuda.is_initialized()


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def xpu_is_initialized() -> bool:
    """Check if XPU is initialized."""
    if not torch.xpu._is_compiled():
        return False
    return torch.xpu.is_initialized()


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def cuda_get_device_properties(
    device, names: Sequence[str], init_cuda=False
) -> tuple[Any, ...]:
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    """Get specified CUDA device property values without initializing CUDA in
    the current process."""
    if init_cuda or cuda_is_initialized():
        props = torch.cuda.get_device_properties(device)
        return tuple(getattr(props, name) for name in names)

    # Run in subprocess to avoid initializing CUDA as a side effect.
    mp_ctx = multiprocessing.get_context("fork")
    with ProcessPoolExecutor(max_workers=1, mp_context=mp_ctx) as executor:
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        return executor.submit(cuda_get_device_properties, device, names, True).result()
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def weak_bind(
    bound_method: Callable[..., Any],
) -> Callable[..., None]:
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    """Make an instance method that weakly references
    its associated instance and no-ops once that
    instance is collected."""
    ref = weakref.ref(bound_method.__self__)  # type: ignore[attr-defined]
    unbound = bound_method.__func__  # type: ignore[attr-defined]

    def weak_bound(*args, **kwargs) -> None:
        if inst := ref():
            unbound(inst, *args, **kwargs)

    return weak_bound


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class StoreBoolean(Action):
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    def __call__(self, parser, namespace, values, option_string=None):
        if values.lower() == "true":
            setattr(namespace, self.dest, True)
        elif values.lower() == "false":
            setattr(namespace, self.dest, False)
        else:
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            raise ValueError(
                f"Invalid boolean value: {values}. Expected 'true' or 'false'."
            )
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class SortedHelpFormatter(ArgumentDefaultsHelpFormatter, RawDescriptionHelpFormatter):
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    """SortedHelpFormatter that sorts arguments by their option strings."""

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    def _split_lines(self, text, width):
        """
        1. Sentences split across lines have their single newlines removed.
        2. Paragraphs and explicit newlines are split into separate lines.
        3. Each line is wrapped to the specified width (width of terminal).
        """
        # The patterns also include whitespace after the newline
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        single_newline = re.compile(r"(?<!\n)\n(?!\n)\s*")
        multiple_newlines = re.compile(r"\n{2,}\s*")
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        text = single_newline.sub(" ", text)
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        lines = re.split(multiple_newlines, text)
        return sum([textwrap.wrap(line, width) for line in lines], [])

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    def add_arguments(self, actions):
        actions = sorted(actions, key=lambda x: x.option_strings)
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        super().add_arguments(actions)
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class FlexibleArgumentParser(ArgumentParser):
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    """ArgumentParser that allows both underscore and dash in names."""

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    _deprecated: set[Action] = set()
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    _json_tip: str = (
        "When passing JSON CLI arguments, the following sets of arguments "
        "are equivalent:\n"
        '   --json-arg \'{"key1": "value1", "key2": {"key3": "value2"}}\'\n'
        "   --json-arg.key1 value1 --json-arg.key2.key3 value2\n\n"
        "Additionally, list elements can be passed individually using +:\n"
        '   --json-arg \'{"key4": ["value3", "value4", "value5"]}\'\n'
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        "   --json-arg.key4+ value3 --json-arg.key4+='value4,value5'\n\n"
    )
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    _search_keyword: str | None = None
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    def __init__(self, *args, **kwargs):
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        # Set the default "formatter_class" to SortedHelpFormatter
        if "formatter_class" not in kwargs:
            kwargs["formatter_class"] = SortedHelpFormatter
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        # Pop kwarg "add_json_tip" to control whether to add the JSON tip
        self.add_json_tip = kwargs.pop("add_json_tip", True)
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        super().__init__(*args, **kwargs)

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    if sys.version_info < (3, 13):
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        # Enable the deprecated kwarg for Python 3.12 and below
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        def parse_known_args(self, args=None, namespace=None):
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            if args is not None and "--disable-log-requests" in args:
                # Special case warning because the warning below won't trigger
                # if –-disable-log-requests because its value is default.
                logger.warning_once(
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                    "argument '--disable-log-requests' is deprecated and "
                    "replaced with '--enable-log-requests'. This will be "
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                    "removed in v0.12.0."
                )
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            namespace, args = super().parse_known_args(args, namespace)
            for action in FlexibleArgumentParser._deprecated:
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                if (
                    hasattr(namespace, dest := action.dest)
                    and getattr(namespace, dest) != action.default
                ):
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                    logger.warning_once("argument '%s' is deprecated", dest)
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            return namespace, args

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        def add_argument(self, *args, **kwargs):
            deprecated = kwargs.pop("deprecated", False)
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            action = super().add_argument(*args, **kwargs)
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            if deprecated:
                FlexibleArgumentParser._deprecated.add(action)
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            return action

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        class _FlexibleArgumentGroup(_ArgumentGroup):
            def add_argument(self, *args, **kwargs):
                deprecated = kwargs.pop("deprecated", False)
                action = super().add_argument(*args, **kwargs)
                if deprecated:
                    FlexibleArgumentParser._deprecated.add(action)
                return action

        def add_argument_group(self, *args, **kwargs):
            group = self._FlexibleArgumentGroup(self, *args, **kwargs)
            self._action_groups.append(group)
            return group
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    def format_help(self):
        # Only use custom help formatting for bottom level parsers
        if self._subparsers is not None:
            return super().format_help()

        formatter = self._get_formatter()

        # Handle keyword search of the args
        if (search_keyword := self._search_keyword) is not None:
            # Normalise the search keyword
            search_keyword = search_keyword.lower().replace("_", "-")
            # Return full help if searching for 'all'
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            if search_keyword == "all":
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                self.epilog = self._json_tip
                return super().format_help()

            # Return group help if searching for a group title
            for group in self._action_groups:
                if group.title and group.title.lower() == search_keyword:
                    formatter.start_section(group.title)
                    formatter.add_text(group.description)
                    formatter.add_arguments(group._group_actions)
                    formatter.end_section()
                    formatter.add_text(self._json_tip)
                    return formatter.format_help()

            # Return matched args if searching for an arg name
            matched_actions = []
            for group in self._action_groups:
                for action in group._group_actions:
                    # search option name
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                    if any(
                        search_keyword in opt.lower() for opt in action.option_strings
                    ):
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                        matched_actions.append(action)
            if matched_actions:
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                formatter.start_section(f"Arguments matching '{search_keyword}'")
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                formatter.add_arguments(matched_actions)
                formatter.end_section()
                formatter.add_text(self._json_tip)
                return formatter.format_help()

            # No match found
            formatter.add_text(
                f"No group or arguments matching '{search_keyword}'.\n"
                "Use '--help' to see available groups or "
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                "'--help=all' to see all available parameters."
            )
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            return formatter.format_help()

        # usage
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        formatter.add_usage(self.usage, self._actions, self._mutually_exclusive_groups)
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1136
1137
1138
1139
1140
1141
1142
1143
1144
1145
1146
1147
1148
1149

        # description
        formatter.add_text(self.description)

        # positionals, optionals and user-defined groups
        formatter.start_section("Config Groups")
        config_groups = ""
        for group in self._action_groups:
            if not group._group_actions:
                continue
            title = group.title
            description = group.description or ""
            config_groups += f"{title: <24}{description}\n"
        formatter.add_text(config_groups)
        formatter.end_section()

        # epilog
        formatter.add_text(self.epilog)

        # determine help from format above
        return formatter.format_help()
1150

1151
1152
1153
1154
1155
    def parse_args(  # type: ignore[override]
        self,
        args: list[str] | None = None,
        namespace: Namespace | None = None,
    ):
1156
1157
1158
        if args is None:
            args = sys.argv[1:]

1159
1160
        # Check for --model in command line arguments first
        if args and args[0] == "serve":
1161
1162
            try:
                model_idx = next(
1163
1164
1165
1166
                    i
                    for i, arg in enumerate(args)
                    if arg == "--model" or arg.startswith("--model=")
                )
1167
                logger.warning(
1168
1169
                    "With `vllm serve`, you should provide the model as a "
                    "positional argument or in a config file instead of via "
1170
                    "the `--model` option. "
1171
1172
                    "The `--model` option will be removed in v0.13."
                )
1173
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1176
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1179
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1183
1184
1185
1186
1187
1188
1189
1190
1191
1192
1193
1194

                if args[model_idx] == "--model":
                    model_tag = args[model_idx + 1]
                    rest_start_idx = model_idx + 2
                else:
                    model_tag = args[model_idx].removeprefix("--model=")
                    rest_start_idx = model_idx + 1

                # Move <model> to the front, e,g:
                # [Before]
                # vllm serve -tp 2 --model <model> --enforce-eager --port 8001
                # [After]
                # vllm serve <model> -tp 2 --enforce-eager --port 8001
                args = [
                    "serve",
                    model_tag,
                    *args[1:model_idx],
                    *args[rest_start_idx:],
                ]
                print("args", args)
            except StopIteration:
                pass
1195

1196
        if "--config" in args:
1197
            args = self._pull_args_from_config(args)
1198

1199
1200
1201
1202
1203
1204
1205
        def repl(match: re.Match) -> str:
            """Replaces underscores with dashes in the matched string."""
            return match.group(0).replace("_", "-")

        # Everything between the first -- and the first .
        pattern = re.compile(r"(?<=--)[^\.]*")

1206
        # Convert underscores to dashes and vice versa in argument names
1207
        processed_args = list[str]()
1208
        for i, arg in enumerate(args):
1209
            if arg.startswith("--help="):
1210
                FlexibleArgumentParser._search_keyword = arg.split("=", 1)[-1].lower()
1211
                processed_args.append("--help")
1212
1213
1214
            elif arg.startswith("--"):
                if "=" in arg:
                    key, value = arg.split("=", 1)
1215
                    key = pattern.sub(repl, key, count=1)
1216
                    processed_args.append(f"{key}={value}")
1217
                else:
1218
1219
                    key = pattern.sub(repl, arg, count=1)
                    processed_args.append(key)
1220
            elif arg.startswith("-O") and arg != "-O" and arg[2] != ".":
1221
1222
                # allow -O flag to be used without space, e.g. -O3 or -Odecode
                # -O.<...> handled later
1223
1224
1225
                # also handle -O=<mode> here
                mode = arg[3:] if arg[2] == "=" else arg[2:]
                processed_args.append(f"-O.mode={mode}")
1226
1227
1228
1229
1230
            elif (
                arg == "-O"
                and i + 1 < len(args)
                and args[i + 1] in {"0", "1", "2", "3"}
            ):
1231
1232
                # Convert -O <n> to -O.mode <n>
                processed_args.append("-O.mode")
1233
1234
1235
            else:
                processed_args.append(arg)

1236
        def create_nested_dict(keys: list[str], value: str) -> dict[str, Any]:
1237
1238
1239
1240
1241
1242
1243
1244
1245
1246
            """Creates a nested dictionary from a list of keys and a value.

            For example, `keys = ["a", "b", "c"]` and `value = 1` will create:
            `{"a": {"b": {"c": 1}}}`
            """
            nested_dict: Any = value
            for key in reversed(keys):
                nested_dict = {key: nested_dict}
            return nested_dict

1247
1248
1249
        def recursive_dict_update(
            original: dict[str, Any],
            update: dict[str, Any],
1250
1251
1252
1253
1254
        ) -> set[str]:
            """Recursively updates a dictionary with another dictionary.
            Returns a set of duplicate keys that were overwritten.
            """
            duplicates = set[str]()
1255
1256
            for k, v in update.items():
                if isinstance(v, dict) and isinstance(original.get(k), dict):
1257
1258
1259
1260
                    nested_duplicates = recursive_dict_update(original[k], v)
                    duplicates |= {f"{k}.{d}" for d in nested_duplicates}
                elif isinstance(v, list) and isinstance(original.get(k), list):
                    original[k] += v
1261
                else:
1262
1263
                    if k in original:
                        duplicates.add(k)
1264
                    original[k] = v
1265
            return duplicates
1266

1267
1268
        delete = set[int]()
        dict_args = defaultdict[str, dict[str, Any]](dict)
1269
        duplicates = set[str]()
1270
        for i, processed_arg in enumerate(processed_args):
1271
1272
1273
1274
            if i in delete:  # skip if value from previous arg
                continue

            if processed_arg.startswith("-") and "." in processed_arg:
1275
                if "=" in processed_arg:
1276
                    processed_arg, value_str = processed_arg.split("=", 1)
1277
                    if "." not in processed_arg:
1278
                        # False positive, '.' was only in the value
1279
1280
                        continue
                else:
1281
                    value_str = processed_args[i + 1]
1282
                    delete.add(i + 1)
1283

1284
1285
1286
1287
                if processed_arg.endswith("+"):
                    processed_arg = processed_arg[:-1]
                    value_str = json.dumps(list(value_str.split(",")))

1288
                key, *keys = processed_arg.split(".")
1289
1290
1291
1292
1293
                try:
                    value = json.loads(value_str)
                except json.decoder.JSONDecodeError:
                    value = value_str

1294
1295
                # Merge all values with the same key into a single dict
                arg_dict = create_nested_dict(keys, value)
1296
1297
                arg_duplicates = recursive_dict_update(dict_args[key], arg_dict)
                duplicates |= {f"{key}.{d}" for d in arg_duplicates}
1298
1299
                delete.add(i)
        # Filter out the dict args we set to None
1300
        processed_args = [a for i, a in enumerate(processed_args) if i not in delete]
1301
1302
1303
        if duplicates:
            logger.warning("Found duplicate keys %s", ", ".join(duplicates))

1304
1305
1306
1307
1308
        # Add the dict args back as if they were originally passed as JSON
        for dict_arg, dict_value in dict_args.items():
            processed_args.append(dict_arg)
            processed_args.append(json.dumps(dict_value))

1309
        return super().parse_args(processed_args, namespace)
1310

1311
1312
1313
1314
    def check_port(self, value):
        try:
            value = int(value)
        except ValueError:
1315
            msg = "Port must be an integer"
1316
            raise ArgumentTypeError(msg) from None
1317
1318

        if not (1024 <= value <= 65535):
1319
            raise ArgumentTypeError("Port must be between 1024 and 65535")
1320
1321
1322

        return value

1323
    def _pull_args_from_config(self, args: list[str]) -> list[str]:
1324
1325
        """Method to pull arguments specified in the config file
        into the command-line args variable.
1326
1327

        The arguments in config file will be inserted between
1328
        the argument list.
1329

1330
1331
1332
1333
1334
1335
1336
1337
1338
1339
        example:
        ```yaml
            port: 12323
            tensor-parallel-size: 4
        ```
        ```python
        $: vllm {serve,chat,complete} "facebook/opt-12B" \
            --config config.yaml -tp 2
        $: args = [
            "serve,chat,complete",
1340
1341
            "facebook/opt-12B",
            '--config', 'config.yaml',
1342
1343
1344
1345
            '-tp', '2'
        ]
        $: args = [
            "serve,chat,complete",
1346
1347
1348
            "facebook/opt-12B",
            '--port', '12323',
            '--tensor-parallel-size', '4',
1349
1350
1351
1352
1353
            '-tp', '2'
            ]
        ```

        Please note how the config args are inserted after the sub command.
1354
        this way the order of priorities is maintained when these are args
1355
1356
        parsed by super().
        """
1357
        assert args.count("--config") <= 1, "More than one config file specified!"
1358

1359
        index = args.index("--config")
1360
        if index == len(args) - 1:
1361
1362
1363
1364
            raise ValueError(
                "No config file specified! \
                             Please check your command-line arguments."
            )
1365
1366
1367

        file_path = args[index + 1]

1368
        config_args = self.load_config_file(file_path)
1369

1370
        # 0th index might be the sub command {serve,chat,complete,...}
1371
        # optionally followed by model_tag (only for serve)
1372
1373
1374
1375
        # followed by config args
        # followed by rest of cli args.
        # maintaining this order will enforce the precedence
        # of cli > config > defaults
1376
        if args[0].startswith("-"):
1377
            # No sub command (e.g., api_server entry point)
1378
            args = config_args + args[0:index] + args[index + 2 :]
1379
        elif args[0] == "serve":
1380
1381
            model_in_cli = len(args) > 1 and not args[1].startswith("-")
            model_in_config = any(arg == "--model" for arg in config_args)
1382
1383

            if not model_in_cli and not model_in_config:
1384
                raise ValueError(
1385
                    "No model specified! Please specify model either "
1386
1387
                    "as a positional argument or in a config file."
                )
1388
1389
1390

            if model_in_cli:
                # Model specified as positional arg, keep CLI version
1391
1392
1393
1394
1395
1396
1397
                args = (
                    [args[0]]
                    + [args[1]]
                    + config_args
                    + args[2:index]
                    + args[index + 2 :]
                )
1398
1399
            else:
                # No model in CLI, use config if available
1400
                args = [args[0]] + config_args + args[1:index] + args[index + 2 :]
1401
        else:
1402
            args = [args[0]] + config_args + args[1:index] + args[index + 2 :]
1403
1404
1405

        return args

1406
    def load_config_file(self, file_path: str) -> list[str]:
1407
        """Loads a yaml file and returns the key value pairs as a
1408
1409
1410
1411
1412
1413
1414
1415
1416
1417
1418
        flattened list with argparse like pattern
        ```yaml
            port: 12323
            tensor-parallel-size: 4
        ```
        returns:
            processed_args: list[str] = [
                '--port': '12323',
                '--tensor-parallel-size': '4'
            ]
        """
1419
1420
        extension: str = file_path.split(".")[-1]
        if extension not in ("yaml", "yml"):
1421
1422
            raise ValueError(
                "Config file must be of a yaml/yml type.\
1423
1424
1425
                              %s supplied",
                extension,
            )
1426
1427

        # only expecting a flat dictionary of atomic types
1428
        processed_args: list[str] = []
1429

1430
        config: dict[str, int | str] = {}
1431
        try:
1432
            with open(file_path) as config_file:
1433
1434
1435
1436
                config = yaml.safe_load(config_file)
        except Exception as ex:
            logger.error(
                "Unable to read the config file at %s. \
1437
1438
1439
                Make sure path is correct",
                file_path,
            )
1440
1441
            raise ex

1442
        store_boolean_arguments = [
1443
            action.dest for action in self._actions if isinstance(action, StoreBoolean)
1444
1445
        ]

1446
        for key, value in config.items():
1447
1448
            if isinstance(value, bool) and key not in store_boolean_arguments:
                if value:
1449
                    processed_args.append("--" + key)
1450
1451
            elif isinstance(value, list):
                if value:
1452
                    processed_args.append("--" + key)
1453
1454
                    for item in value:
                        processed_args.append(str(item))
1455
            else:
1456
                processed_args.append("--" + key)
1457
                processed_args.append(str(value))
1458
1459
1460

        return processed_args

1461

1462
1463
1464
1465
1466
1467
# Using dynamo with vLLM doesn't really work well with PyTorch versions < 2.4.0.
# In particular, the FakeScalarType is not supported for earlier versions of
# PyTorch which breaks dynamo for any ops registered using ScalarType.
def supports_dynamo() -> bool:
    base_torch_version = Version(Version(torch.__version__).base_version)
    return base_torch_version >= Version("2.4.0")
1468
1469


1470
# Supports xccl with PyTorch versions >= 2.8.0.dev for XPU platform
1471
def supports_xccl() -> bool:
1472
1473
1474
    return (
        is_torch_equal_or_newer("2.8.0.dev") and torch.distributed.is_xccl_available()
    )
1475
1476


1477
1478
1479
1480
1481
1482
# Some backends use pytorch version < 2.4.0 which doesn't
# support `torch.library.custom_op`.
def supports_custom_op() -> bool:
    return hasattr(torch.library, "custom_op")


1483
1484
1485
1486
1487
1488
1489
1490
1491
1492
1493
1494
1495
1496
1497
1498
1499
1500
1501
1502
1503
1504
1505
class AtomicCounter:
    """An atomic, thread-safe counter"""

    def __init__(self, initial=0):
        """Initialize a new atomic counter to given initial value"""
        self._value = initial
        self._lock = threading.Lock()

    def inc(self, num=1):
        """Atomically increment the counter by num and return the new value"""
        with self._lock:
            self._value += num
            return self._value

    def dec(self, num=1):
        """Atomically decrement the counter by num and return the new value"""
        with self._lock:
            self._value -= num
            return self._value

    @property
    def value(self):
        return self._value
1506
1507


1508
def weak_ref_tensor(tensor: Any) -> Any:
1509
1510
1511
1512
1513
    """
    Create a weak reference to a tensor.
    The new tensor will share the same data as the original tensor,
    but will not keep the original tensor alive.
    """
1514
1515
1516
1517
    if isinstance(tensor, torch.Tensor):
        return torch.ops._C.weak_ref_tensor(tensor)
    else:
        return tensor
1518
1519
1520


def weak_ref_tensors(
1521
1522
1523
1524
1525
    tensors: torch.Tensor
    | list[torch.Tensor]
    | tuple[torch.Tensor]
    | IntermediateTensors,
) -> torch.Tensor | list[Any] | tuple[Any] | Any:
1526
1527
1528
1529
1530
1531
1532
1533
1534
1535
    """
    Convenience function to create weak references to tensors,
    for single tensor, list of tensors or tuple of tensors.
    """
    if isinstance(tensors, torch.Tensor):
        return weak_ref_tensor(tensors)
    if isinstance(tensors, list):
        return [weak_ref_tensor(t) for t in tensors]
    if isinstance(tensors, tuple):
        return tuple(weak_ref_tensor(t) for t in tensors)
1536
1537
1538

    # For IntermediateTensors used in pipeline parallelism
    from vllm.sequence import IntermediateTensors
1539

1540
    if isinstance(tensors, IntermediateTensors):
1541
1542
1543
        ret = IntermediateTensors(
            {key: weak_ref_tensor(val) for key, val in tensors.tensors.items()}
        )
1544
        return ret
1545
    raise ValueError("Invalid type for tensors")
1546
1547


1548
1549
1550
1551
1552
1553
1554
1555
def get_cuda_view_from_cpu_tensor(cpu_tensor: torch.Tensor) -> torch.Tensor:
    """
    Get a CUDA view of a CPU tensor using Unified Virtual Addressing (UVA).
    """
    assert cpu_tensor.is_pinned(), "CPU tensor must be pinned"
    return torch.ops._C.get_cuda_view_from_cpu_tensor(cpu_tensor)


1556
1557
1558
1559
1560
# create a library to hold the custom op
vllm_lib = Library("vllm", "FRAGMENT")  # noqa


def direct_register_custom_op(
1561
1562
    op_name: str,
    op_func: Callable,
1563
1564
1565
1566
    mutates_args: list[str] | None = None,
    fake_impl: Callable | None = None,
    target_lib: Library | None = None,
    dispatch_key: str | None = None,
1567
    tags: tuple[torch.Tag, ...] = (),
1568
1569
1570
1571
1572
1573
1574
1575
1576
1577
1578
1579
1580
1581
1582
1583
):
    """
    `torch.library.custom_op` can have significant overhead because it
    needs to consider complicated dispatching logic. This function
    directly registers a custom op and dispatches it to the CUDA backend.
    See https://gist.github.com/youkaichao/ecbea9ec9fc79a45d2adce1784d7a9a5
    for more details.

    By default, the custom op is registered to the vLLM library. If you
    want to register it to a different library, you can pass the library
    object to the `target_lib` argument.

    IMPORTANT: the lifetime of the operator is tied to the lifetime of the
    library object. If you want to bind the operator to a different library,
    make sure the library object is alive when the operator is used.
    """
1584
    if not supports_custom_op():
1585
        from vllm.platforms import current_platform
1586

1587
1588
1589
1590
1591
        assert not current_platform.is_cuda_alike(), (
            "cuda platform needs torch>=2.4 to support custom op, "
            "chances are you are using an old version of pytorch "
            "or a custom build of pytorch. It is recommended to "
            "use vLLM in a fresh new environment and let it install "
1592
1593
            "the required dependencies."
        )
1594
1595
        return

1596
1597
1598
1599
1600
    if mutates_args is None:
        mutates_args = []

    if dispatch_key is None:
        from vllm.platforms import current_platform
1601

1602
1603
        dispatch_key = current_platform.dispatch_key

1604
    import torch.library
1605

1606
    if hasattr(torch.library, "infer_schema"):
1607
        schema_str = torch.library.infer_schema(op_func, mutates_args=mutates_args)
1608
1609
1610
    else:
        # for pytorch 2.4
        import torch._custom_op.impl
1611

1612
        schema_str = torch._custom_op.impl.infer_schema(op_func, mutates_args)
1613
    my_lib = target_lib or vllm_lib
1614
    my_lib.define(op_name + schema_str, tags=tags)
1615
    my_lib.impl(op_name, op_func, dispatch_key=dispatch_key)
1616
1617
    if fake_impl is not None:
        my_lib._register_fake(op_name, fake_impl)
1618
1619


1620
1621
1622
1623
1624
1625
1626
1627
1628
1629
1630
1631
1632
1633
1634
1635
1636
1637
1638
1639
1640
1641
1642
def kill_process_tree(pid: int):
    """
    Kills all descendant processes of the given pid by sending SIGKILL.

    Args:
        pid (int): Process ID of the parent process
    """
    try:
        parent = psutil.Process(pid)
    except psutil.NoSuchProcess:
        return

    # Get all children recursively
    children = parent.children(recursive=True)

    # Send SIGKILL to all children first
    for child in children:
        with contextlib.suppress(ProcessLookupError):
            os.kill(child.pid, signal.SIGKILL)

    # Finally kill the parent
    with contextlib.suppress(ProcessLookupError):
        os.kill(pid, signal.SIGKILL)
1643
1644
1645
1646
1647


@dataclass
class MemorySnapshot:
    """Memory snapshot."""
1648

1649
    torch_peak: int = 0
1650
1651
    free_memory: int = 0
    total_memory: int = 0
1652
1653
1654
    cuda_memory: int = 0
    torch_memory: int = 0
    non_torch_memory: int = 0
1655
    timestamp: float = 0.0
1656
1657
1658
1659
1660
    auto_measure: bool = True

    def __post_init__(self):
        if self.auto_measure:
            self.measure()
1661
1662

    def measure(self):
1663
1664
        from vllm.platforms import current_platform

1665
1666
1667
1668
1669
        # we measure the torch peak memory usage via allocated_bytes,
        # rather than `torch.cuda.memory_reserved()` .
        # After `torch.cuda.reset_peak_memory_stats()`,
        # `torch.cuda.memory_reserved()` will keep growing, and only shrink
        # when we call `torch.cuda.empty_cache()` or OOM happens.
1670
        self.torch_peak = torch.cuda.memory_stats().get("allocated_bytes.all.peak", 0)
1671

1672
        self.free_memory, self.total_memory = torch.cuda.mem_get_info()
1673
1674
1675
1676
1677
        shared_sysmem_device_mem_sms = ((8, 7), (11, 0), (12, 1))  # Orin, Thor, Spark
        if (
            current_platform.is_cuda()
            and current_platform.get_device_capability() in shared_sysmem_device_mem_sms
        ):
1678
1679
1680
1681
1682
1683
1684
1685
1686
1687
1688
1689
1690
            # On UMA (Orin, Thor and Spark) platform,
            # where both CPU and GPU rely on system memory,
            # the cudaMemGetInfo function shows the amount of free system memory
            # rather than what’s actually available.
            # In the case,
            # torch.cuda.mem_get_info() only reports "free" memory,
            # which can be lower than what is actually
            # available due to not including cache memory.
            # There’s also a comprehensive reference page
            # that explains how you can compute the proper value yourself.
            # https://docs.nvidia.com/cuda/cuda-for-tegra-appnote/#estimating-total-allocatable-device-memory-on-an-integrated-gpu-device
            self.free_memory = psutil.virtual_memory().available

1691
        self.cuda_memory = self.total_memory - self.free_memory
1692

1693
1694
        # torch.cuda.memory_reserved() is how many bytes
        # PyTorch gets from cuda (by calling cudaMalloc, etc.)
1695
1696
1697
1698
        # this is used to measure the non-torch memory usage
        self.torch_memory = torch.cuda.memory_reserved()

        self.non_torch_memory = self.cuda_memory - self.torch_memory
1699
1700
        self.timestamp = time.time()

1701
    def __sub__(self, other: "MemorySnapshot") -> "MemorySnapshot":
1702
        return MemorySnapshot(
1703
            torch_peak=self.torch_peak - other.torch_peak,
1704
1705
            free_memory=self.free_memory - other.free_memory,
            total_memory=self.total_memory - other.total_memory,
1706
1707
1708
1709
1710
1711
            cuda_memory=self.cuda_memory - other.cuda_memory,
            torch_memory=self.torch_memory - other.torch_memory,
            non_torch_memory=self.non_torch_memory - other.non_torch_memory,
            timestamp=self.timestamp - other.timestamp,
            auto_measure=False,
        )
1712
1713
1714
1715


@dataclass
class MemoryProfilingResult:
1716
1717
    """Memory profiling result. All numbers are in bytes."""

1718
1719
1720
1721
1722
    non_kv_cache_memory: int = 0
    torch_peak_increase: int = 0
    non_torch_increase: int = 0
    weights_memory: float = 0
    before_create: MemorySnapshot = field(default_factory=MemorySnapshot)
1723
1724
1725
1726
    before_profile: MemorySnapshot = field(default_factory=MemorySnapshot)
    after_profile: MemorySnapshot = field(default_factory=MemorySnapshot)
    profile_time: float = 0.0

1727
    def __repr__(self) -> str:
1728
1729
1730
1731
1732
1733
1734
1735
1736
1737
        return (
            f"Memory profiling takes {self.profile_time:.2f} seconds. "
            f"Total non KV cache memory: "
            f"{(self.non_kv_cache_memory / GiB_bytes):.2f}GiB; "
            f"torch peak memory increase: "
            f"{(self.torch_peak_increase / GiB_bytes):.2f}GiB; "
            f"non-torch forward increase memory: "
            f"{(self.non_torch_increase / GiB_bytes):.2f}GiB; "
            f"weights memory: {(self.weights_memory / GiB_bytes):.2f}GiB."
        )
1738

1739
1740
1741

@contextlib.contextmanager
def memory_profiling(
1742
1743
    baseline_snapshot: MemorySnapshot, weights_memory: int
) -> Generator[MemoryProfilingResult, None, None]:
1744
    """Memory profiling context manager.
1745
1746
    baseline_snapshot: the memory snapshot before the current vLLM instance.
    weights_memory: memory used by PyTorch when loading the model weights.
1747
1748
        Note that, before loading the model weights, we also initialize the device
        and distributed environment, which may consume some memory. This part is not
1749
        included in the weights_memory because PyTorch does not control it.
1750
1751
1752
1753
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1760
1761
1762
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1778
1779
1780
1781
1782
1783

    The memory in one GPU can be classified into 3 categories:
    1. memory used by anything other than the current vLLM instance.
    2. memory used by torch in the current vLLM instance.
    3. memory used in the current vLLM instance, but not by torch.

    A quantitive example:

    Before creating the current vLLM instance:
        category 1: 1 GiB
        category 2: 0 GiB
        category 3: 0 GiB

    After creating the current vLLM instance and loading the model,
    (i.e. before profiling):
        category 1: 1 GiB
        category 2: 2 GiB (model weights take 2 GiB)
        category 3: 0.5 GiB (memory used by NCCL)

    During profiling (peak):
        category 1: 1 GiB
        category 2: 4 GiB (peak activation tensors take 2 GiB)
        category 3: 1 GiB (memory used by NCCL + buffers for some attention backends)

    After profiling:
        category 1: 1 GiB
        category 2: 3 GiB (after garbage-collecting activation tensors)
        category 3: 1 GiB (memory used by NCCL + buffers for some attention backends)

    In this case, non-kv cache takes 5 GiB in total, including:
    a. 2 GiB used by the model weights (category 2)
    b. 2 GiB reserved for the peak activation tensors (category 2)
    c. 1 GiB used by non-torch components (category 3)

1784
    The memory used for loading weights (a.) is directly given from the argument `weights_memory`.
1785

1786
    The increase of `torch.cuda.memory_stats()["allocated_bytes.all.peak"]` during profiling gives (b.).
1787

1788
    The increase of `non_torch_memory` from creating the current vLLM instance until after profiling to get (c.).
1789
    """  # noqa
1790
1791
    gc.collect()
    torch.cuda.empty_cache()
1792
1793
1794
1795
    torch.cuda.reset_peak_memory_stats()

    result = MemoryProfilingResult()

1796
    result.before_create = baseline_snapshot
1797
    # the part of memory used for holding the model weights
1798
    result.weights_memory = weights_memory
1799
1800
1801
1802
1803
1804
1805
1806
1807
1808

    result.before_profile.measure()

    yield result

    gc.collect()
    torch.cuda.empty_cache()

    result.after_profile.measure()

1809
1810
1811
1812
1813
    diff_profile = result.after_profile - result.before_profile
    diff_from_create = result.after_profile - result.before_create
    result.torch_peak_increase = diff_profile.torch_peak
    result.non_torch_increase = diff_from_create.non_torch_memory
    result.profile_time = diff_profile.timestamp
1814
1815
1816

    non_torch_memory = result.non_torch_increase
    peak_activation_memory = result.torch_peak_increase
1817
1818
1819
    result.non_kv_cache_memory = (
        non_torch_memory + peak_activation_memory + result.weights_memory
    )  # noqa
1820
1821


1822
# Adapted from: https://github.com/sgl-project/sglang/blob/v0.4.1/python/sglang/srt/utils.py#L630 # noqa: E501
1823
def set_ulimit(target_soft_limit=65535):
1824
    if sys.platform.startswith("win"):
1825
1826
1827
1828
        logger.info("Windows detected, skipping ulimit adjustment.")
        return

    import resource
1829

1830
1831
1832
1833
1834
    resource_type = resource.RLIMIT_NOFILE
    current_soft, current_hard = resource.getrlimit(resource_type)

    if current_soft < target_soft_limit:
        try:
1835
            resource.setrlimit(resource_type, (target_soft_limit, current_hard))
1836
1837
        except ValueError as e:
            logger.warning(
1838
1839
                "Found ulimit of %s and failed to automatically increase "
                "with error %s. This can cause fd limit errors like "
1840
                "`OSError: [Errno 24] Too many open files`. Consider "
1841
1842
1843
1844
                "increasing with ulimit -n",
                current_soft,
                e,
            )
1845
1846
1847
1848
1849
1850
1851
1852
1853


# Adapted from: https://github.com/sgl-project/sglang/blob/v0.4.1/python/sglang/utils.py#L28 # noqa: E501
def get_exception_traceback():
    etype, value, tb = sys.exc_info()
    err_str = "".join(traceback.format_exception(etype, value, tb))
    return err_str


1854
def split_zmq_path(path: str) -> tuple[str, str, str]:
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1874
    """Split a zmq path into its parts."""
    parsed = urlparse(path)
    if not parsed.scheme:
        raise ValueError(f"Invalid zmq path: {path}")

    scheme = parsed.scheme
    host = parsed.hostname or ""
    port = str(parsed.port or "")

    if scheme == "tcp" and not all((host, port)):
        # The host and port fields are required for tcp
        raise ValueError(f"Invalid zmq path: {path}")

    if scheme != "tcp" and port:
        # port only makes sense with tcp
        raise ValueError(f"Invalid zmq path: {path}")

    return scheme, host, port


1875
def make_zmq_path(scheme: str, host: str, port: int | None = None) -> str:
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1882
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1885
    """Make a ZMQ path from its parts.

    Args:
        scheme: The ZMQ transport scheme (e.g. tcp, ipc, inproc).
        host: The host - can be an IPv4 address, IPv6 address, or hostname.
        port: Optional port number, only used for TCP sockets.

    Returns:
        A properly formatted ZMQ path string.
    """
1886
    if port is None:
1887
1888
1889
1890
1891
1892
        return f"{scheme}://{host}"
    if is_valid_ipv6_address(host):
        return f"{scheme}://[{host}]:{port}"
    return f"{scheme}://{host}:{port}"


1893
1894
# Adapted from: https://github.com/sgl-project/sglang/blob/v0.4.1/python/sglang/srt/utils.py#L783 # noqa: E501
def make_zmq_socket(
1895
    ctx: zmq.asyncio.Context | zmq.Context,  # type: ignore[name-defined]
1896
    path: str,
1897
    socket_type: Any,
1898
1899
1900
    bind: bool | None = None,
    identity: bytes | None = None,
    linger: int | None = None,
1901
) -> zmq.Socket | zmq.asyncio.Socket:  # type: ignore[name-defined]
1902
1903
1904
    """Make a ZMQ socket with the proper bind/connect semantics."""

    mem = psutil.virtual_memory()
1905
    socket = ctx.socket(socket_type)
1906
1907
1908
1909
1910
1911
1912
1913

    # Calculate buffer size based on system memory
    total_mem = mem.total / 1024**3
    available_mem = mem.available / 1024**3
    # For systems with substantial memory (>32GB total, >16GB available):
    # - Set a large 0.5GB buffer to improve throughput
    # For systems with less memory:
    # - Use system default (-1) to avoid excessive memory consumption
1914
    buf_size = int(0.5 * 1024**3) if total_mem > 32 and available_mem > 16 else -1
1915

1916
    if bind is None:
1917
        bind = socket_type not in (zmq.PUSH, zmq.SUB, zmq.XSUB)
1918
1919
1920
1921
1922
1923
1924
1925
1926
1927
1928
1929

    if socket_type in (zmq.PULL, zmq.DEALER, zmq.ROUTER):
        socket.setsockopt(zmq.RCVHWM, 0)
        socket.setsockopt(zmq.RCVBUF, buf_size)

    if socket_type in (zmq.PUSH, zmq.DEALER, zmq.ROUTER):
        socket.setsockopt(zmq.SNDHWM, 0)
        socket.setsockopt(zmq.SNDBUF, buf_size)

    if identity is not None:
        socket.setsockopt(zmq.IDENTITY, identity)

1930
1931
1932
    if linger is not None:
        socket.setsockopt(zmq.LINGER, linger)

1933
1934
1935
    if socket_type == zmq.XPUB:
        socket.setsockopt(zmq.XPUB_VERBOSE, True)

1936
1937
1938
1939
1940
1941
    # Determine if the path is a TCP socket with an IPv6 address.
    # Enable IPv6 on the zmq socket if so.
    scheme, host, _ = split_zmq_path(path)
    if scheme == "tcp" and is_valid_ipv6_address(host):
        socket.setsockopt(zmq.IPV6, 1)

1942
    if bind:
1943
        socket.bind(path)
1944
    else:
1945
        socket.connect(path)
1946
1947
1948
1949
1950

    return socket


@contextlib.contextmanager
1951
1952
1953
def zmq_socket_ctx(
    path: str,
    socket_type: Any,
1954
    bind: bool | None = None,
1955
    linger: int = 0,
1956
    identity: bytes | None = None,
1957
) -> Iterator[zmq.Socket]:
1958
1959
    """Context manager for a ZMQ socket"""

1960
    ctx = zmq.Context()  # type: ignore[attr-defined]
1961
    try:
1962
        yield make_zmq_socket(ctx, path, socket_type, bind=bind, identity=identity)
1963
1964
1965
1966
    except KeyboardInterrupt:
        logger.debug("Got Keyboard Interrupt.")

    finally:
1967
        ctx.destroy(linger=linger)
1968
1969


1970
1971
1972
1973
1974
1975
1976
def _maybe_force_spawn():
    """Check if we need to force the use of the `spawn` multiprocessing start
    method.
    """
    if os.environ.get("VLLM_WORKER_MULTIPROC_METHOD") == "spawn":
        return

1977
1978
    reasons = []
    if is_in_ray_actor():
1979
1980
1981
1982
        # even if we choose to spawn, we need to pass the ray address
        # to the subprocess so that it knows how to connect to the ray cluster.
        # env vars are inherited by subprocesses, even if we use spawn.
        import ray
1983

1984
        os.environ["RAY_ADDRESS"] = ray.get_runtime_context().gcs_address
1985
1986
1987
1988
1989
1990
        reasons.append("In a Ray actor and can only be spawned")

    if cuda_is_initialized():
        reasons.append("CUDA is initialized")
    elif xpu_is_initialized():
        reasons.append("XPU is initialized")
1991

1992
    if reasons:
1993
1994
1995
        logger.warning(
            "We must use the `spawn` multiprocessing start method. "
            "Overriding VLLM_WORKER_MULTIPROC_METHOD to 'spawn'. "
1996
            "See https://docs.vllm.ai/en/latest/usage/"
1997
            "troubleshooting.html#python-multiprocessing "
1998
1999
2000
            "for more information. Reasons: %s",
            "; ".join(reasons),
        )
2001
2002
2003
2004
        os.environ["VLLM_WORKER_MULTIPROC_METHOD"] = "spawn"


def get_mp_context():
2005
2006
2007
2008
2009
2010
2011
    """Get a multiprocessing context with a particular method (spawn or fork).
    By default we follow the value of the VLLM_WORKER_MULTIPROC_METHOD to
    determine the multiprocessing method (default is fork). However, under
    certain conditions, we may enforce spawn and override the value of
    VLLM_WORKER_MULTIPROC_METHOD.
    """
    _maybe_force_spawn()
2012
2013
    mp_method = envs.VLLM_WORKER_MULTIPROC_METHOD
    return multiprocessing.get_context(mp_method)
2014
2015
2016


def bind_kv_cache(
2017
2018
    ctx: dict[str, Any],
    kv_cache: list[list[torch.Tensor]],  # [virtual_engine][layer_index]
2019
    shared_kv_cache_layers: dict[str, str] | None = None,
2020
2021
2022
2023
2024
2025
2026
2027
2028
2029
2030
) -> None:
    # Bind the kv_cache tensor to Attention modules, similar to
    # ctx[layer_name].kv_cache[ve]=kv_cache[ve][extract_layer_index(layer_name)]
    # Special things handled here:
    # 1. Some models have non-attention layers, e.g., Jamba
    # 2. Pipeline parallelism, each rank only has a subset of layers
    # 3. Encoder attention has no kv cache
    # 4. Encoder-decoder models, encoder-decoder attention and decoder-only
    #    attention of the same layer (e.g., bart's decoder.layers.1.self_attn
    #    and decoder.layers.1.encoder_attn) is mapped to the same kv cache
    #    tensor
2031
2032
2033
2034
    # 5. Some models have attention layers that share kv cache with previous
    #    layers, this is specified through shared_kv_cache_layers
    if shared_kv_cache_layers is None:
        shared_kv_cache_layers = {}
2035
2036
    from vllm.attention import AttentionType
    from vllm.model_executor.models.utils import extract_layer_index
2037

2038
    layer_need_kv_cache = [
2039
2040
2041
2042
2043
2044
2045
2046
        layer_name
        for layer_name in ctx
        if (
            hasattr(ctx[layer_name], "attn_type")
            and ctx[layer_name].attn_type
            in (AttentionType.DECODER, AttentionType.ENCODER_DECODER)
        )
        and ctx[layer_name].kv_sharing_target_layer_name is None
2047
2048
    ]
    layer_index_sorted = sorted(
2049
2050
        set(extract_layer_index(layer_name) for layer_name in layer_need_kv_cache)
    )
2051
    for layer_name in layer_need_kv_cache:
2052
        kv_cache_idx = layer_index_sorted.index(extract_layer_index(layer_name))
2053
2054
2055
2056
        forward_ctx = ctx[layer_name]
        assert len(forward_ctx.kv_cache) == len(kv_cache)
        for ve, ve_kv_cache in enumerate(kv_cache):
            forward_ctx.kv_cache[ve] = ve_kv_cache[kv_cache_idx]
2057
2058
    if shared_kv_cache_layers is not None:
        for layer_name, target_layer_name in shared_kv_cache_layers.items():
2059
2060
2061
            assert extract_layer_index(target_layer_name) < extract_layer_index(
                layer_name
            ), "v0 doesn't support interleaving kv sharing"
2062
            ctx[layer_name].kv_cache = ctx[target_layer_name].kv_cache
2063
2064


2065
2066
def run_method(
    obj: Any,
2067
    method: str | bytes | Callable,
2068
2069
2070
    args: tuple[Any],
    kwargs: dict[str, Any],
) -> Any:
2071
2072
2073
2074
2075
2076
2077
2078
2079
2080
2081
2082
2083
    """
    Run a method of an object with the given arguments and keyword arguments.
    If the method is string, it will be converted to a method using getattr.
    If the method is serialized bytes and will be deserialized using
    cloudpickle.
    If the method is a callable, it will be called directly.
    """
    if isinstance(method, bytes):
        func = partial(cloudpickle.loads(method), obj)
    elif isinstance(method, str):
        try:
            func = getattr(obj, method)
        except AttributeError:
2084
2085
2086
            raise NotImplementedError(
                f"Method {method!r} is not implemented."
            ) from None
2087
2088
2089
    else:
        func = partial(method, obj)  # type: ignore
    return func(*args, **kwargs)
2090
2091
2092
2093
2094
2095
2096
2097
2098
2099
2100
2101
2102
2103
2104
2105
2106
2107
2108
2109
2110


def import_pynvml():
    """
    Historical comments:

    libnvml.so is the library behind nvidia-smi, and
    pynvml is a Python wrapper around it. We use it to get GPU
    status without initializing CUDA context in the current process.
    Historically, there are two packages that provide pynvml:
    - `nvidia-ml-py` (https://pypi.org/project/nvidia-ml-py/): The official
        wrapper. It is a dependency of vLLM, and is installed when users
        install vLLM. It provides a Python module named `pynvml`.
    - `pynvml` (https://pypi.org/project/pynvml/): An unofficial wrapper.
        Prior to version 12.0, it also provides a Python module `pynvml`,
        and therefore conflicts with the official one. What's worse,
        the module is a Python package, and has higher priority than
        the official one which is a standalone Python file.
        This causes errors when both of them are installed.
        Starting from version 12.0, it migrates to a new module
        named `pynvml_utils` to avoid the conflict.
2111
2112
2113
2114
2115
2116
2117
    It is so confusing that many packages in the community use the
    unofficial one by mistake, and we have to handle this case.
    For example, `nvcr.io/nvidia/pytorch:24.12-py3` uses the unofficial
    one, and it will cause errors, see the issue
    https://github.com/vllm-project/vllm/issues/12847 for example.
    After all the troubles, we decide to copy the official `pynvml`
    module to our codebase, and use it directly.
2118
    """
2119
    import vllm.third_party.pynvml as pynvml
2120

2121
    return pynvml
2122
2123


2124
def warn_for_unimplemented_methods(cls: type[T]) -> type[T]:
2125
2126
2127
2128
2129
2130
2131
2132
2133
2134
2135
2136
2137
2138
2139
    """
    A replacement for `abc.ABC`.
    When we use `abc.ABC`, subclasses will fail to instantiate
    if they do not implement all abstract methods.
    Here, we only require `raise NotImplementedError` in the
    base class, and log a warning if the method is not implemented
    in the subclass.
    """

    original_init = cls.__init__

    def find_unimplemented_methods(self: object):
        unimplemented_methods = []
        for attr_name in dir(self):
            # bypass inner method
2140
            if attr_name.startswith("_"):
2141
2142
2143
2144
2145
2146
2147
2148
2149
2150
2151
2152
2153
                continue

            try:
                attr = getattr(self, attr_name)
                # get the func of callable method
                if callable(attr):
                    attr_func = attr.__func__
            except AttributeError:
                continue
            src = inspect.getsource(attr_func)
            if "NotImplementedError" in src:
                unimplemented_methods.append(attr_name)
        if unimplemented_methods:
2154
2155
            method_names = ",".join(unimplemented_methods)
            msg = f"Methods {method_names} not implemented in {self}"
2156
            logger.debug(msg)
2157
2158
2159
2160
2161
2162

    @wraps(original_init)
    def wrapped_init(self, *args, **kwargs) -> None:
        original_init(self, *args, **kwargs)
        find_unimplemented_methods(self)

2163
    type.__setattr__(cls, "__init__", wrapped_init)
2164
    return cls
2165
2166


2167
@contextlib.contextmanager
2168
def cprofile_context(save_file: str | None = None):
2169
2170
2171
2172
    """Run a cprofile

    Args:
        save_file: path to save the profile result. "1" or
2173
            None will result in printing to stdout.
2174
2175
2176
2177
2178
2179
2180
2181
2182
2183
2184
2185
2186
2187
2188
2189
    """
    import cProfile

    prof = cProfile.Profile()
    prof.enable()

    try:
        yield
    finally:
        prof.disable()
        if save_file and save_file != "1":
            prof.dump_stats(save_file)
        else:
            prof.print_stats(sort="cumtime")


2190
def cprofile(save_file: str | None = None, enabled: bool = True):
2191
2192
2193
2194
2195
2196
2197
2198
2199
2200
2201
2202
2203
2204
2205
2206
2207
2208
2209
2210
2211
    """Decorator to profile a Python method using cProfile.

    Args:
        save_file: Path to save the profile result.
            If "1", None, or "", results will be printed to stdout.
        enabled: Set to false to turn this into a no-op
    """

    def decorator(func: Callable):
        @wraps(func)
        def wrapper(*args, **kwargs):
            if not enabled:
                # If profiling is disabled, just call the function directly.
                return func(*args, **kwargs)

            with cprofile_context(save_file):
                return func(*args, **kwargs)

        return wrapper

    return decorator
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# Only relevant for models using ALiBi (e.g, MPT)
def check_use_alibi(model_config: ModelConfig) -> bool:
2216
    cfg = model_config.hf_text_config
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    return (
        getattr(cfg, "alibi", False)  # Falcon
        or (
            "BloomForCausalLM" in getattr(model_config.hf_config, "architectures", [])
        )  # Bloom
        or getattr(cfg, "position_encoding_type", "") == "alibi"  # codellm_1b_alibi
        or (
            hasattr(cfg, "attn_config")  # MPT
            and (
                (
                    isinstance(cfg.attn_config, dict)
                    and cfg.attn_config.get("alibi", False)
                )
                or (
                    not isinstance(cfg.attn_config, dict)
                    and getattr(cfg.attn_config, "alibi", False)
                )
            )
        )
    )
2237
2238


2239
def sha256(input: Any) -> bytes:
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    """Hash any picklable Python object using SHA-256.

    The input is serialized using pickle before hashing, which allows
    arbitrary Python objects to be used. Note that this function does
    not use a hash seed—if you need one, prepend it explicitly to the input.

    Args:
        input: Any picklable Python object.

    Returns:
2250
        Bytes representing the SHA-256 hash of the serialized input.
2251
2252
    """
    input_bytes = pickle.dumps(input, protocol=pickle.HIGHEST_PROTOCOL)
2253
    return hashlib.sha256(input_bytes).digest()
2254
2255


2256
def sha256_cbor(input: Any) -> bytes:
2257
    """
2258
    Hash objects using CBOR serialization and SHA-256.
2259
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2265
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2268

    This option is useful for non-Python-dependent serialization and hashing.

    Args:
        input: Object to be serialized and hashed. Supported types include
            basic Python types and complex structures like lists, tuples, and
            dictionaries.
            Custom classes must implement CBOR serialization methods.

    Returns:
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        Bytes representing the SHA-256 hash of the CBOR serialized input.
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    """
    input_bytes = cbor2.dumps(input, canonical=True)
2272
    return hashlib.sha256(input_bytes).digest()
2273
2274


2275
def get_hash_fn_by_name(hash_fn_name: str) -> Callable[[Any], bytes]:
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    """Get a hash function by name, or raise an error if
    the function is not found.
    Args:
        hash_fn_name: Name of the hash function.
    Returns:
        A hash function.
    """
    if hash_fn_name == "sha256":
        return sha256
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    if hash_fn_name == "sha256_cbor":
        return sha256_cbor
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2290

    raise ValueError(f"Unsupported hash function: {hash_fn_name}")


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def is_torch_equal_or_newer(target: str) -> bool:
    """Check if the installed torch version is >= the target version.

    Args:
        target: a version string, like "2.6.0".

    Returns:
        Whether the condition meets.
    """
    try:
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        return _is_torch_equal_or_newer(str(torch.__version__), target)
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    except Exception:
        # Fallback to PKG-INFO to load the package info, needed by the doc gen.
2304
        return Version(importlib.metadata.version("torch")) >= Version(target)
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2310


# Helper function used in testing.
def _is_torch_equal_or_newer(torch_version: str, target: str) -> bool:
    torch_version = version.parse(torch_version)
    return torch_version >= version.parse(target)
2311
2312


2313
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2339
def _is_torch_equal(target: str) -> bool:
    assert target.count(".") == 2
    torch_version = str(torch.__version__)
    torch_version = version.parse(torch_version)
    # torch version is like "2.6.0.dev20240101" or "2.6.0.dev20240101+cpu"
    # or "2.6.0+cu128" but never "2.6.0.1"
    return (
        torch_version >= version.parse(target)
        and version.parse(target + ".1") > torch_version
    )


def is_torch_equal(target: str) -> bool:
    """Check if the installed torch version is == the target version.

    Args:
        target: a version string, like "2.6.0".

    Returns:
        Whether the condition meets.
    """
    try:
        return _is_torch_equal(target)
    except Exception:
        return Version(importlib.metadata.version("torch")) == Version(target)


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@cache
def _has_module(module_name: str) -> bool:
    """Return True if *module_name* can be found in the current environment.

    The result is cached so that subsequent queries for the same module incur
    no additional overhead.
    """
    return importlib.util.find_spec(module_name) is not None


def has_pplx() -> bool:
    """Whether the optional `pplx_kernels` package is available."""

    return _has_module("pplx_kernels")


def has_deep_ep() -> bool:
    """Whether the optional `deep_ep` package is available."""

    return _has_module("deep_ep")


def has_deep_gemm() -> bool:
    """Whether the optional `deep_gemm` package is available."""

2365
    return _has_module("deep_gemm")
2366
2367


2368
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2373
def has_triton_kernels() -> bool:
    """Whether the optional `triton_kernels` package is available."""

    return _has_module("triton_kernels")


2374
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2377
2378
2379
def has_tilelang() -> bool:
    """Whether the optional `tilelang` package is available."""

    return _has_module("tilelang")


2380
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2382
def set_process_title(
    name: str, suffix: str = "", prefix: str = envs.VLLM_PROCESS_NAME_PREFIX
) -> None:
2383
2384
2385
    """
    Set the current process title to a specific name with an
    optional suffix.
2386
2387

    Args:
2388
        name: The title to assign to the current process.
2389
        suffix: An optional suffix to append to the base name.
2390
        prefix: A prefix to prepend to the front separated by `::`.
2391
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2393
    """
    if suffix:
        name = f"{name}_{suffix}"
2394
    setproctitle.setproctitle(f"{prefix}::{name}")
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2404
2405
2406
2407
2408


def _add_prefix(file: TextIO, worker_name: str, pid: int) -> None:
    """Prepend each output line with process-specific prefix"""

    prefix = f"{CYAN}({worker_name} pid={pid}){RESET} "
    file_write = file.write

    def write_with_prefix(s: str):
        if not s:
            return
        if file.start_new_line:  # type: ignore[attr-defined]
            file_write(prefix)
        idx = 0
2409
        while (next_idx := s.find("\n", idx)) != -1:
2410
2411
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2423
            next_idx += 1
            file_write(s[idx:next_idx])
            if next_idx == len(s):
                file.start_new_line = True  # type: ignore[attr-defined]
                return
            file_write(prefix)
            idx = next_idx
        file_write(s[idx:])
        file.start_new_line = False  # type: ignore[attr-defined]

    file.start_new_line = True  # type: ignore[attr-defined]
    file.write = write_with_prefix  # type: ignore[method-assign]


2424
def decorate_logs(process_name: str | None = None) -> None:
2425
2426
2427
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2443
    """
    Adds a process-specific prefix to each line of output written to stdout and
    stderr.

    This function is intended to be called before initializing the api_server,
    engine_core, or worker classes, so that all subsequent output from the
    process is prefixed with the process name and PID. This helps distinguish
    log output from different processes in multi-process environments.

    Args:
        process_name: Optional; the name of the process to use in the prefix.
            If not provided, the current process name from the multiprocessing
            context is used.
    """
    if process_name is None:
        process_name = get_mp_context().current_process().name
    pid = os.getpid()
    _add_prefix(sys.stdout, process_name, pid)
    _add_prefix(sys.stderr, process_name, pid)
2444
2445
2446


def length_from_prompt_token_ids_or_embeds(
2447
2448
    prompt_token_ids: list[int] | None,
    prompt_embeds: torch.Tensor | None,
2449
) -> int:
2450
    """Calculate the request length (in number of tokens) give either
2451
2452
    prompt_token_ids or prompt_embeds.
    """
2453
2454
    prompt_token_len = None if prompt_token_ids is None else len(prompt_token_ids)
    prompt_embeds_len = None if prompt_embeds is None else len(prompt_embeds)
2455
2456
2457

    if prompt_token_len is None:
        if prompt_embeds_len is None:
2458
            raise ValueError("Neither prompt_token_ids nor prompt_embeds were defined.")
2459
2460
        return prompt_embeds_len
    else:
2461
        if prompt_embeds_len is not None and prompt_embeds_len != prompt_token_len:
2462
2463
2464
            raise ValueError(
                "Prompt token ids and prompt embeds had different lengths"
                f" prompt_token_ids={prompt_token_len}"
2465
2466
                f" prompt_embeds={prompt_embeds_len}"
            )
2467
        return prompt_token_len
2468
2469
2470
2471
2472
2473
2474
2475
2476
2477
2478
2479
2480


@contextlib.contextmanager
def set_env_var(key, value):
    old = os.environ.get(key)
    os.environ[key] = value
    try:
        yield
    finally:
        if old is None:
            del os.environ[key]
        else:
            os.environ[key] = old
2481
2482
2483
2484
2485
2486
2487
2488
2489
2490
2491
2492
2493
2494
2495
2496
2497
2498
2499
2500


def unique_filepath(fn: Callable[[int], Path]) -> Path:
    """
    unique_filepath returns a unique path by trying
    to include an integer in increasing order.

    fn should be a callable that returns a path that
    includes the passed int at a fixed location.

    Note: This function has a TOCTOU race condition.
    Caller should use atomic operations (e.g., open with 'x' mode)
    when creating the file to ensure thread safety.
    """
    i = 0
    while True:
        p = fn(i)
        if not p.exists():
            return p
        i += 1