[gpt-oss] Add gpt-oss bf16 support
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341
vllm/distributed/device_communicators/pynccl_wrapper.py
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341
vllm/distributed/device_communicators/pynccl_wrapper.py
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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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# This file is a pure Python wrapper for the NCCL library.
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# The main purpose is to use NCCL combined with CUDA graph.
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# Before writing this script, we tried the following approach:
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# 1. We tried to use `cupy`, it calls NCCL correctly, but `cupy` itself
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# often gets stuck when initializing the NCCL communicator.
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# 2. We tried to use `torch.distributed`, but `torch.distributed.all_reduce`
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# contains many other potential cuda APIs, that are not allowed during
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# capturing the CUDA graph. For further details, please check
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# https://discuss.pytorch.org/t/pytorch-cudagraph-with-nccl-operation-failed/ .
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#
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# Another rejected idea is to write a C/C++ binding for NCCL. It is usually
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# doable, but we often encounter issues related with nccl versions, and need
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# to switch between different versions of NCCL. See
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# https://github.com/NVIDIA/nccl/issues/1234 for more details.
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# A C/C++ binding is not flexible enough to handle this. It requires
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# recompilation of the code every time we want to switch between different
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# versions. This current implementation, with a **pure** Python wrapper, is
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# more flexible. We can easily switch between different versions of NCCL by
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# changing the environment variable `VLLM_NCCL_SO_PATH`, or the `so_file`
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# variable in the code.
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import ctypes
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import platform
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from dataclasses import dataclass
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from typing import Any, Optional
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import torch
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from torch.distributed import ReduceOp
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from vllm.logger import init_logger
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from vllm.utils import find_nccl_library
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logger = init_logger(__name__)
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# === export types and functions from nccl to Python ===
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# for the original nccl definition, please check
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# https://github.com/NVIDIA/nccl/blob/master/src/nccl.h.in
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ncclResult_t = ctypes.c_int
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ncclComm_t = ctypes.c_void_p
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class ncclUniqueId(ctypes.Structure):
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_fields_ = [("internal", ctypes.c_byte * 128)]
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cudaStream_t = ctypes.c_void_p
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buffer_type = ctypes.c_void_p
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ncclDataType_t = ctypes.c_int
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class ncclDataTypeEnum:
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ncclInt8 = 0
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ncclChar = 0
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ncclUint8 = 1
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ncclInt32 = 2
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ncclInt = 2
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ncclUint32 = 3
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ncclInt64 = 4
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ncclUint64 = 5
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ncclFloat16 = 6
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ncclHalf = 6
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ncclFloat32 = 7
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ncclFloat = 7
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ncclFloat64 = 8
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ncclDouble = 8
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ncclBfloat16 = 9
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ncclNumTypes = 10
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@classmethod
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def from_torch(cls, dtype: torch.dtype) -> int:
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if dtype == torch.int8:
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return cls.ncclInt8
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if dtype == torch.uint8:
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return cls.ncclUint8
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if dtype == torch.int32:
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return cls.ncclInt32
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if dtype == torch.int64:
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return cls.ncclInt64
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if dtype == torch.float16:
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return cls.ncclFloat16
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if dtype == torch.float32:
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return cls.ncclFloat32
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if dtype == torch.float64:
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return cls.ncclFloat64
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if dtype == torch.bfloat16:
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return cls.ncclBfloat16
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raise ValueError(f"Unsupported dtype: {dtype}")
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ncclRedOp_t = ctypes.c_int
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class ncclRedOpTypeEnum:
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ncclSum = 0
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ncclProd = 1
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ncclMax = 2
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ncclMin = 3
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ncclAvg = 4
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ncclNumOps = 5
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@classmethod
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def from_torch(cls, op: ReduceOp) -> int:
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if op == ReduceOp.SUM:
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return cls.ncclSum
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if op == ReduceOp.PRODUCT:
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return cls.ncclProd
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if op == ReduceOp.MAX:
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return cls.ncclMax
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if op == ReduceOp.MIN:
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return cls.ncclMin
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if op == ReduceOp.AVG:
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return cls.ncclAvg
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raise ValueError(f"Unsupported op: {op}")
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@dataclass
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class Function:
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name: str
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restype: Any
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argtypes: list[Any]
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class NCCLLibrary:
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exported_functions = [
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# const char* ncclGetErrorString(ncclResult_t result)
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Function("mcclGetErrorString", ctypes.c_char_p, [ncclResult_t]),
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# ncclResult_t ncclGetVersion(int *version);
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Function("mcclGetVersion", ncclResult_t,
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[ctypes.POINTER(ctypes.c_int)]),
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# ncclResult_t ncclGetUniqueId(ncclUniqueId* uniqueId);
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Function("mcclGetUniqueId", ncclResult_t,
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[ctypes.POINTER(ncclUniqueId)]),
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# ncclResult_t ncclCommInitRank(
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# ncclComm_t* comm, int nranks, ncclUniqueId commId, int rank);
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# note that ncclComm_t is a pointer type, so the first argument
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# is a pointer to a pointer
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Function("mcclCommInitRank", ncclResult_t, [
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ctypes.POINTER(ncclComm_t), ctypes.c_int, ncclUniqueId,
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ctypes.c_int
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]),
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# ncclResult_t ncclAllReduce(
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# const void* sendbuff, void* recvbuff, size_t count,
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# ncclDataType_t datatype, ncclRedOp_t op, ncclComm_t comm,
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# cudaStream_t stream);
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# note that cudaStream_t is a pointer type, so the last argument
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# is a pointer
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Function("mcclAllReduce", ncclResult_t, [
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buffer_type, buffer_type, ctypes.c_size_t, ncclDataType_t,
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ncclRedOp_t, ncclComm_t, cudaStream_t
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]),
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# ncclResult_t ncclAllGather(
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# const void* sendbuff, void* recvbuff, size_t count,
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# ncclDataType_t datatype, ncclComm_t comm,
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# cudaStream_t stream);
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# note that cudaStream_t is a pointer type, so the last argument
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# is a pointer
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Function("mcclAllGather", ncclResult_t, [
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buffer_type, buffer_type, ctypes.c_size_t, ncclDataType_t,
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ncclComm_t, cudaStream_t
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]),
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# ncclResult_t ncclReduceScatter(
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# const void* sendbuff, void* recvbuff, size_t count,
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# ncclDataType_t datatype, ncclRedOp_t op, ncclComm_t comm,
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# cudaStream_t stream);
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# note that cudaStream_t is a pointer type, so the last argument
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# is a pointer
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Function("mcclReduceScatter", ncclResult_t, [
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buffer_type, buffer_type, ctypes.c_size_t, ncclDataType_t,
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ncclRedOp_t, ncclComm_t, cudaStream_t
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]),
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# ncclResult_t ncclSend(
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# const void* sendbuff, size_t count, ncclDataType_t datatype,
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# int dest, ncclComm_t comm, cudaStream_t stream);
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Function("mcclSend", ncclResult_t, [
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buffer_type, ctypes.c_size_t, ncclDataType_t, ctypes.c_int,
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ncclComm_t, cudaStream_t
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]),
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# ncclResult_t ncclRecv(
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# void* recvbuff, size_t count, ncclDataType_t datatype,
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# int src, ncclComm_t comm, cudaStream_t stream);
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Function("mcclRecv", ncclResult_t, [
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buffer_type, ctypes.c_size_t, ncclDataType_t, ctypes.c_int,
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ncclComm_t, cudaStream_t
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]),
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# ncclResult_t ncclBroadcast(
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# const void* sendbuff, void* recvbuff, size_t count,
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# ncclDataType_t datatype, int root, ncclComm_t comm,
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# cudaStream_t stream);
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Function("mcclBroadcast", ncclResult_t, [
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buffer_type, buffer_type, ctypes.c_size_t, ncclDataType_t,
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ctypes.c_int, ncclComm_t, cudaStream_t
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]),
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# be cautious! this is a collective call, it will block until all
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# processes in the communicator have called this function.
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# because Python object destruction can happen in random order,
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# it is better not to call it at all.
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# ncclResult_t ncclCommDestroy(ncclComm_t comm);
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Function("mcclCommDestroy", ncclResult_t, [ncclComm_t]),
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]
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# class attribute to store the mapping from the path to the library
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# to avoid loading the same library multiple times
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path_to_library_cache: dict[str, Any] = {}
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# class attribute to store the mapping from library path
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# to the corresponding dictionary
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path_to_dict_mapping: dict[str, dict[str, Any]] = {}
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def __init__(self, so_file: Optional[str] = None):
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so_file = so_file or find_nccl_library()
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try:
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if so_file not in NCCLLibrary.path_to_dict_mapping:
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lib = ctypes.CDLL(so_file)
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NCCLLibrary.path_to_library_cache[so_file] = lib
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self.lib = NCCLLibrary.path_to_library_cache[so_file]
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except Exception as e:
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logger.error(
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"Failed to load NCCL library from %s. "
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"It is expected if you are not running on NVIDIA/AMD GPUs."
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"Otherwise, the nccl library might not exist, be corrupted "
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"or it does not support the current platform %s. "
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"If you already have the library, please set the "
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"environment variable VLLM_NCCL_SO_PATH"
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" to point to the correct nccl library path.", so_file,
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platform.platform())
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raise e
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if so_file not in NCCLLibrary.path_to_dict_mapping:
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_funcs: dict[str, Any] = {}
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for func in NCCLLibrary.exported_functions:
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f = getattr(self.lib, func.name)
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f.restype = func.restype
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f.argtypes = func.argtypes
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_funcs[func.name] = f
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NCCLLibrary.path_to_dict_mapping[so_file] = _funcs
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self._funcs = NCCLLibrary.path_to_dict_mapping[so_file]
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def ncclGetErrorString(self, result: ncclResult_t) -> str:
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return self._funcs["mcclGetErrorString"](result).decode("utf-8")
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def NCCL_CHECK(self, result: ncclResult_t) -> None:
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if result != 0:
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error_str = self.ncclGetErrorString(result)
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raise RuntimeError(f"MCCL error: {error_str}")
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def ncclGetVersion(self) -> str:
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version = ctypes.c_int()
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self.NCCL_CHECK(self._funcs["mcclGetVersion"](ctypes.byref(version)))
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version_str = str(version.value)
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# something like 21903 --> "2.19.3"
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major = version_str[0].lstrip("0")
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minor = version_str[1:3].lstrip("0")
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patch = version_str[3:].lstrip("0")
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return f"{major}.{minor}.{patch}"
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def ncclGetUniqueId(self) -> ncclUniqueId:
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unique_id = ncclUniqueId()
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self.NCCL_CHECK(self._funcs["mcclGetUniqueId"](
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ctypes.byref(unique_id)))
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return unique_id
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def ncclCommInitRank(self, world_size: int, unique_id: ncclUniqueId,
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rank: int) -> ncclComm_t:
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comm = ncclComm_t()
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self.NCCL_CHECK(self._funcs["mcclCommInitRank"](ctypes.byref(comm),
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world_size, unique_id,
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rank))
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return comm
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def ncclAllReduce(self, sendbuff: buffer_type, recvbuff: buffer_type,
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count: int, datatype: int, op: int, comm: ncclComm_t,
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stream: cudaStream_t) -> None:
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# `datatype` actually should be `ncclDataType_t`
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# and `op` should be `ncclRedOp_t`
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# both are aliases of `ctypes.c_int`
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# when we pass int to a function, it will be converted to `ctypes.c_int`
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# by ctypes automatically
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self.NCCL_CHECK(self._funcs["mcclAllReduce"](sendbuff, recvbuff, count,
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datatype, op, comm,
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stream))
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def ncclReduceScatter(self, sendbuff: buffer_type, recvbuff: buffer_type,
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count: int, datatype: int, op: int, comm: ncclComm_t,
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stream: cudaStream_t) -> None:
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# `datatype` actually should be `ncclDataType_t`
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# and `op` should be `ncclRedOp_t`
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# both are aliases of `ctypes.c_int`
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# when we pass int to a function, it will be converted to `ctypes.c_int`
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# by ctypes automatically
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self.NCCL_CHECK(self._funcs["mcclReduceScatter"](sendbuff, recvbuff,
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count, datatype, op,
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comm, stream))
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def ncclAllGather(self, sendbuff: buffer_type, recvbuff: buffer_type,
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count: int, datatype: int, comm: ncclComm_t,
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stream: cudaStream_t) -> None:
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# `datatype` actually should be `ncclDataType_t`
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# which is an aliases of `ctypes.c_int`
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# when we pass int to a function, it will be converted to `ctypes.c_int`
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# by ctypes automatically
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self.NCCL_CHECK(self._funcs["mcclAllGather"](sendbuff, recvbuff, count,
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datatype, comm, stream))
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def ncclSend(self, sendbuff: buffer_type, count: int, datatype: int,
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dest: int, comm: ncclComm_t, stream: cudaStream_t) -> None:
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self.NCCL_CHECK(self._funcs["mcclSend"](sendbuff, count, datatype,
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dest, comm, stream))
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def ncclRecv(self, recvbuff: buffer_type, count: int, datatype: int,
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src: int, comm: ncclComm_t, stream: cudaStream_t) -> None:
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self.NCCL_CHECK(self._funcs["mcclRecv"](recvbuff, count, datatype, src,
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comm, stream))
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def ncclBroadcast(self, sendbuff: buffer_type, recvbuff: buffer_type,
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count: int, datatype: int, root: int, comm: ncclComm_t,
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stream: cudaStream_t) -> None:
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self.NCCL_CHECK(self._funcs["mcclBroadcast"](sendbuff, recvbuff, count,
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datatype, root, comm,
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stream))
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def ncclCommDestroy(self, comm: ncclComm_t) -> None:
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self.NCCL_CHECK(self._funcs["mcclCommDestroy"](comm))
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__all__ = [
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"NCCLLibrary", "ncclDataTypeEnum", "ncclRedOpTypeEnum", "ncclUniqueId",
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"ncclComm_t", "cudaStream_t", "buffer_type"
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]
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