pynccl_wrapper.py 16.6 KB
Newer Older
1
# SPDX-License-Identifier: Apache-2.0
2
# SPDX-FileCopyrightText: Copyright contributors to the vLLM project
3

4
5
6
7
8
9
10
11
12
13
14
15
16
17
18
19
20
21
22
23
24
25
26
27
# This file is a pure Python wrapper for the NCCL library.
# The main purpose is to use NCCL combined with CUDA graph.
# Before writing this script, we tried the following approach:
# 1. We tried to use `cupy`, it calls NCCL correctly, but `cupy` itself
#  often gets stuck when initializing the NCCL communicator.
# 2. We tried to use `torch.distributed`, but `torch.distributed.all_reduce`
#  contains many other potential cuda APIs, that are not allowed during
#  capturing the CUDA graph. For further details, please check
# https://discuss.pytorch.org/t/pytorch-cudagraph-with-nccl-operation-failed/ .
#
# Another rejected idea is to write a C/C++ binding for NCCL. It is usually
# doable, but we often encounter issues related with nccl versions, and need
# to switch between different versions of NCCL. See
# https://github.com/NVIDIA/nccl/issues/1234 for more details.
# A C/C++ binding is not flexible enough to handle this. It requires
# recompilation of the code every time we want to switch between different
# versions. This current implementation, with a **pure** Python wrapper, is
# more flexible. We can easily switch between different versions of NCCL by
# changing the environment variable `VLLM_NCCL_SO_PATH`, or the `so_file`
# variable in the code.

import ctypes
import platform
from dataclasses import dataclass
28
from typing import Any, Optional
29
30
31
32
33

import torch
from torch.distributed import ReduceOp

from vllm.logger import init_logger
34
from vllm.utils import find_nccl_library
35
36
37
38
39
40
41
42
43

logger = init_logger(__name__)

# === export types and functions from nccl to Python ===
# for the original nccl definition, please check
# https://github.com/NVIDIA/nccl/blob/master/src/nccl.h.in

ncclResult_t = ctypes.c_int
ncclComm_t = ctypes.c_void_p
44
ncclWindow_t = ctypes.c_void_p
45
46
47
48
49
50
51
52
53
54
55
56
57
58
59
60
61
62
63
64
65
66
67
68
69
70
71
72
73
74
75
76
77
78
79
80
81
82
83
84
85
86
87
88
89
90
91
92
93
94
95
96
97
98
99
100
101
102
103
104
105
106
107
108
109
110
111
112
113
114
115
116
117
118
119
120
121
122
123
124
125


class ncclUniqueId(ctypes.Structure):
    _fields_ = [("internal", ctypes.c_byte * 128)]


cudaStream_t = ctypes.c_void_p
buffer_type = ctypes.c_void_p

ncclDataType_t = ctypes.c_int


class ncclDataTypeEnum:
    ncclInt8 = 0
    ncclChar = 0
    ncclUint8 = 1
    ncclInt32 = 2
    ncclInt = 2
    ncclUint32 = 3
    ncclInt64 = 4
    ncclUint64 = 5
    ncclFloat16 = 6
    ncclHalf = 6
    ncclFloat32 = 7
    ncclFloat = 7
    ncclFloat64 = 8
    ncclDouble = 8
    ncclBfloat16 = 9
    ncclNumTypes = 10

    @classmethod
    def from_torch(cls, dtype: torch.dtype) -> int:
        if dtype == torch.int8:
            return cls.ncclInt8
        if dtype == torch.uint8:
            return cls.ncclUint8
        if dtype == torch.int32:
            return cls.ncclInt32
        if dtype == torch.int64:
            return cls.ncclInt64
        if dtype == torch.float16:
            return cls.ncclFloat16
        if dtype == torch.float32:
            return cls.ncclFloat32
        if dtype == torch.float64:
            return cls.ncclFloat64
        if dtype == torch.bfloat16:
            return cls.ncclBfloat16
        raise ValueError(f"Unsupported dtype: {dtype}")


ncclRedOp_t = ctypes.c_int


class ncclRedOpTypeEnum:
    ncclSum = 0
    ncclProd = 1
    ncclMax = 2
    ncclMin = 3
    ncclAvg = 4
    ncclNumOps = 5

    @classmethod
    def from_torch(cls, op: ReduceOp) -> int:
        if op == ReduceOp.SUM:
            return cls.ncclSum
        if op == ReduceOp.PRODUCT:
            return cls.ncclProd
        if op == ReduceOp.MAX:
            return cls.ncclMax
        if op == ReduceOp.MIN:
            return cls.ncclMin
        if op == ReduceOp.AVG:
            return cls.ncclAvg
        raise ValueError(f"Unsupported op: {op}")


@dataclass
class Function:
    name: str
    restype: Any
126
    argtypes: list[Any]
127
128
129
130
131
132
133
134
135
136
137
138
139
140
141
142
143
144
145
146
147
148
149
150
151
152
153
154
155
156
157


class NCCLLibrary:
    exported_functions = [
        # const char* ncclGetErrorString(ncclResult_t result)
        Function("ncclGetErrorString", ctypes.c_char_p, [ncclResult_t]),
        # ncclResult_t  ncclGetVersion(int *version);
        Function("ncclGetVersion", ncclResult_t,
                 [ctypes.POINTER(ctypes.c_int)]),
        # ncclResult_t ncclGetUniqueId(ncclUniqueId* uniqueId);
        Function("ncclGetUniqueId", ncclResult_t,
                 [ctypes.POINTER(ncclUniqueId)]),
        # ncclResult_t  ncclCommInitRank(
        #   ncclComm_t* comm, int nranks, ncclUniqueId commId, int rank);
        # note that ncclComm_t is a pointer type, so the first argument
        # is a pointer to a pointer
        Function("ncclCommInitRank", ncclResult_t, [
            ctypes.POINTER(ncclComm_t), ctypes.c_int, ncclUniqueId,
            ctypes.c_int
        ]),
        # ncclResult_t  ncclAllReduce(
        #   const void* sendbuff, void* recvbuff, size_t count,
        #   ncclDataType_t datatype, ncclRedOp_t op, ncclComm_t comm,
        #   cudaStream_t stream);
        # note that cudaStream_t is a pointer type, so the last argument
        # is a pointer
        Function("ncclAllReduce", ncclResult_t, [
            buffer_type, buffer_type, ctypes.c_size_t, ncclDataType_t,
            ncclRedOp_t, ncclComm_t, cudaStream_t
        ]),

158
159
160
161
162
163
164
165
166
167
168
        # ncclResult_t  ncclReduce(
        #   const void* sendbuff, void* recvbuff, size_t count,
        #   ncclDataType_t datatype, ncclRedOp_t op, int root,
        #   ncclComm_t comm,  cudaStream_t stream);
        # note that cudaStream_t is a pointer type, so the last argument
        # is a pointer
        Function("ncclReduce", ncclResult_t, [
            buffer_type, buffer_type, ctypes.c_size_t, ncclDataType_t,
            ncclRedOp_t, ctypes.c_int, ncclComm_t, cudaStream_t
        ]),

169
170
171
172
173
174
175
176
177
178
179
180
181
182
183
184
185
186
187
188
189
190
        # ncclResult_t  ncclAllGather(
        #   const void* sendbuff, void* recvbuff, size_t count,
        #   ncclDataType_t datatype, ncclComm_t comm,
        #   cudaStream_t stream);
        # note that cudaStream_t is a pointer type, so the last argument
        # is a pointer
        Function("ncclAllGather", ncclResult_t, [
            buffer_type, buffer_type, ctypes.c_size_t, ncclDataType_t,
            ncclComm_t, cudaStream_t
        ]),

        # ncclResult_t  ncclReduceScatter(
        #   const void* sendbuff, void* recvbuff, size_t count,
        #   ncclDataType_t datatype, ncclRedOp_t op, ncclComm_t comm,
        #   cudaStream_t stream);
        # note that cudaStream_t is a pointer type, so the last argument
        # is a pointer
        Function("ncclReduceScatter", ncclResult_t, [
            buffer_type, buffer_type, ctypes.c_size_t, ncclDataType_t,
            ncclRedOp_t, ncclComm_t, cudaStream_t
        ]),

191
192
193
194
195
196
197
198
199
200
201
202
203
204
205
206
        # ncclResult_t  ncclSend(
        #   const void* sendbuff, size_t count, ncclDataType_t datatype,
        #   int dest, ncclComm_t comm, cudaStream_t stream);
        Function("ncclSend", ncclResult_t, [
            buffer_type, ctypes.c_size_t, ncclDataType_t, ctypes.c_int,
            ncclComm_t, cudaStream_t
        ]),

        # ncclResult_t  ncclRecv(
        #   void* recvbuff, size_t count, ncclDataType_t datatype,
        #   int src, ncclComm_t comm, cudaStream_t stream);
        Function("ncclRecv", ncclResult_t, [
            buffer_type, ctypes.c_size_t, ncclDataType_t, ctypes.c_int,
            ncclComm_t, cudaStream_t
        ]),

207
208
209
210
211
212
213
214
215
        # ncclResult_t ncclBroadcast(
        #   const void* sendbuff, void* recvbuff, size_t count,
        #   ncclDataType_t datatype, int root, ncclComm_t comm,
        #   cudaStream_t stream);
        Function("ncclBroadcast", ncclResult_t, [
            buffer_type, buffer_type, ctypes.c_size_t, ncclDataType_t,
            ctypes.c_int, ncclComm_t, cudaStream_t
        ]),

216
217
218
219
220
221
        # be cautious! this is a collective call, it will block until all
        # processes in the communicator have called this function.
        # because Python object destruction can happen in random order,
        # it is better not to call it at all.
        # ncclResult_t  ncclCommDestroy(ncclComm_t comm);
        Function("ncclCommDestroy", ncclResult_t, [ncclComm_t]),
222
223
224
225
        # ncclResult_t ncclGroupStart();
        Function("ncclGroupStart", ncclResult_t, []),
        # ncclResult_t ncclGroupEnd();
        Function("ncclGroupEnd", ncclResult_t, []),
226
227
228
        # ncclResult_t ncclCommWindowRegister(
        #   ncclComm_t comm, void* buff, size_t size,
        #   ncclWindow_t* win, int winFlags);
229
230
231
232
233
234
235
236
237
238
239
        #Function(
        #    "ncclCommWindowRegister",
        #    ncclResult_t,
        #    [
        #        ncclComm_t,
        #        buffer_type,
        #        ctypes.c_size_t,
        #        ctypes.POINTER(ncclWindow_t),
        #        ctypes.c_int,
        #    ],
        #),
240
241
        # ncclResult_t ncclCommWindowDeregister(
        #   ncclComm_t comm, ncclWindow_t win);
242
243
        #Function("ncclCommWindowDeregister", ncclResult_t,
        #         [ncclComm_t, ncclWindow_t]),
244
245
246
247
    ]

    # class attribute to store the mapping from the path to the library
    # to avoid loading the same library multiple times
248
    path_to_library_cache: dict[str, Any] = {}
249
250
251

    # class attribute to store the mapping from library path
    #  to the corresponding dictionary
252
    path_to_dict_mapping: dict[str, dict[str, Any]] = {}
253
254
255
256
257
258

    def __init__(self, so_file: Optional[str] = None):

        so_file = so_file or find_nccl_library()

        try:
259
260
261
262
            if so_file not in NCCLLibrary.path_to_dict_mapping:
                lib = ctypes.CDLL(so_file)
                NCCLLibrary.path_to_library_cache[so_file] = lib
            self.lib = NCCLLibrary.path_to_library_cache[so_file]
263
264
        except Exception as e:
            logger.error(
265
                "Failed to load NCCL library from %s. "
zhuwenwen's avatar
zhuwenwen committed
266
                "It is expected if you are not running on NVIDIA/hcus."
267
                "Otherwise, the nccl library might not exist, be corrupted "
268
                "or it does not support the current platform %s. "
269
270
                "If you already have the library, please set the "
                "environment variable VLLM_NCCL_SO_PATH"
271
272
273
274
275
                " to point to the correct nccl library path.", so_file,
                platform.platform())
            raise e

        if so_file not in NCCLLibrary.path_to_dict_mapping:
276
            _funcs: dict[str, Any] = {}
277
278
279
280
281
282
283
284
285
286
287
288
289
290
291
292
            for func in NCCLLibrary.exported_functions:
                f = getattr(self.lib, func.name)
                f.restype = func.restype
                f.argtypes = func.argtypes
                _funcs[func.name] = f
            NCCLLibrary.path_to_dict_mapping[so_file] = _funcs
        self._funcs = NCCLLibrary.path_to_dict_mapping[so_file]

    def ncclGetErrorString(self, result: ncclResult_t) -> str:
        return self._funcs["ncclGetErrorString"](result).decode("utf-8")

    def NCCL_CHECK(self, result: ncclResult_t) -> None:
        if result != 0:
            error_str = self.ncclGetErrorString(result)
            raise RuntimeError(f"NCCL error: {error_str}")

293
    def ncclGetRawVersion(self) -> int:
294
295
        version = ctypes.c_int()
        self.NCCL_CHECK(self._funcs["ncclGetVersion"](ctypes.byref(version)))
296
297
298
299
300
        # something like 21903
        return version.value

    def ncclGetVersion(self) -> str:
        version_str = str(self.ncclGetRawVersion())
301
302
303
304
305
306
307
308
309
310
311
312
        # something like 21903 --> "2.19.3"
        major = version_str[0].lstrip("0")
        minor = version_str[1:3].lstrip("0")
        patch = version_str[3:].lstrip("0")
        return f"{major}.{minor}.{patch}"

    def ncclGetUniqueId(self) -> ncclUniqueId:
        unique_id = ncclUniqueId()
        self.NCCL_CHECK(self._funcs["ncclGetUniqueId"](
            ctypes.byref(unique_id)))
        return unique_id

313
314
315
316
317
318
319
320
    def unique_id_from_bytes(self, data: bytes) -> ncclUniqueId:
        if len(data) != 128:
            raise ValueError(
                f"Expected 128 bytes for ncclUniqueId, got {len(data)} bytes")
        unique_id = ncclUniqueId()
        ctypes.memmove(ctypes.addressof(unique_id.internal), data, 128)
        return unique_id

321
322
323
324
325
326
327
328
329
330
331
332
333
334
335
336
337
338
339
340
    def ncclCommInitRank(self, world_size: int, unique_id: ncclUniqueId,
                         rank: int) -> ncclComm_t:
        comm = ncclComm_t()
        self.NCCL_CHECK(self._funcs["ncclCommInitRank"](ctypes.byref(comm),
                                                        world_size, unique_id,
                                                        rank))
        return comm

    def ncclAllReduce(self, sendbuff: buffer_type, recvbuff: buffer_type,
                      count: int, datatype: int, op: int, comm: ncclComm_t,
                      stream: cudaStream_t) -> None:
        # `datatype` actually should be `ncclDataType_t`
        # and `op` should be `ncclRedOp_t`
        # both are aliases of `ctypes.c_int`
        # when we pass int to a function, it will be converted to `ctypes.c_int`
        # by ctypes automatically
        self.NCCL_CHECK(self._funcs["ncclAllReduce"](sendbuff, recvbuff, count,
                                                     datatype, op, comm,
                                                     stream))

341
342
343
344
345
346
347
348
349
350
351
352
    def ncclReduce(self, sendbuff: buffer_type, recvbuff: buffer_type,
                   count: int, datatype: int, op: int, root: int,
                   comm: ncclComm_t, stream: cudaStream_t) -> None:
        # `datatype` actually should be `ncclDataType_t`
        # and `op` should be `ncclRedOp_t`
        # both are aliases of `ctypes.c_int`
        # when we pass int to a function, it will be converted to `ctypes.c_int`
        # by ctypes automatically
        self.NCCL_CHECK(self._funcs["ncclReduce"](sendbuff, recvbuff, count,
                                                  datatype, op, root, comm,
                                                  stream))

353
354
355
356
357
358
359
360
361
362
363
364
365
366
367
368
369
370
371
372
373
374
    def ncclReduceScatter(self, sendbuff: buffer_type, recvbuff: buffer_type,
                          count: int, datatype: int, op: int, comm: ncclComm_t,
                          stream: cudaStream_t) -> None:
        # `datatype` actually should be `ncclDataType_t`
        # and `op` should be `ncclRedOp_t`
        # both are aliases of `ctypes.c_int`
        # when we pass int to a function, it will be converted to `ctypes.c_int`
        # by ctypes automatically
        self.NCCL_CHECK(self._funcs["ncclReduceScatter"](sendbuff, recvbuff,
                                                         count, datatype, op,
                                                         comm, stream))

    def ncclAllGather(self, sendbuff: buffer_type, recvbuff: buffer_type,
                      count: int, datatype: int, comm: ncclComm_t,
                      stream: cudaStream_t) -> None:
        # `datatype` actually should be `ncclDataType_t`
        # which is an aliases of `ctypes.c_int`
        # when we pass int to a function, it will be converted to `ctypes.c_int`
        # by ctypes automatically
        self.NCCL_CHECK(self._funcs["ncclAllGather"](sendbuff, recvbuff, count,
                                                     datatype, comm, stream))

375
376
377
378
379
380
381
382
383
384
    def ncclSend(self, sendbuff: buffer_type, count: int, datatype: int,
                 dest: int, comm: ncclComm_t, stream: cudaStream_t) -> None:
        self.NCCL_CHECK(self._funcs["ncclSend"](sendbuff, count, datatype,
                                                dest, comm, stream))

    def ncclRecv(self, recvbuff: buffer_type, count: int, datatype: int,
                 src: int, comm: ncclComm_t, stream: cudaStream_t) -> None:
        self.NCCL_CHECK(self._funcs["ncclRecv"](recvbuff, count, datatype, src,
                                                comm, stream))

385
386
387
388
389
390
391
    def ncclBroadcast(self, sendbuff: buffer_type, recvbuff: buffer_type,
                      count: int, datatype: int, root: int, comm: ncclComm_t,
                      stream: cudaStream_t) -> None:
        self.NCCL_CHECK(self._funcs["ncclBroadcast"](sendbuff, recvbuff, count,
                                                     datatype, root, comm,
                                                     stream))

392
393
394
    def ncclCommDestroy(self, comm: ncclComm_t) -> None:
        self.NCCL_CHECK(self._funcs["ncclCommDestroy"](comm))

395
396
397
398
399
400
    def ncclGroupStart(self) -> None:
        self.NCCL_CHECK(self._funcs["ncclGroupStart"]())

    def ncclGroupEnd(self) -> None:
        self.NCCL_CHECK(self._funcs["ncclGroupEnd"]())

401
402
403
404
405
406
407
408
409
410
411
    def ncclCommWindowRegister(self, comm: ncclComm_t, buff: buffer_type,
                               size: int, win_flags: int) -> ncclWindow_t:
        window = ncclWindow_t()
        self.NCCL_CHECK(self._funcs["ncclCommWindowRegister"](
            comm, buff, size, ctypes.byref(window), win_flags))
        return window

    def ncclCommWindowDeregister(self, comm: ncclComm_t,
                                 window: ncclWindow_t) -> None:
        self.NCCL_CHECK(self._funcs["ncclCommWindowDeregister"](comm, window))

412
413
414
415
416

__all__ = [
    "NCCLLibrary", "ncclDataTypeEnum", "ncclRedOpTypeEnum", "ncclUniqueId",
    "ncclComm_t", "cudaStream_t", "buffer_type"
]