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792 lines
29 KiB
792 lines
29 KiB
#!/usr/bin/env python
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# -*- encoding: utf-8 -*-
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import io
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import pickle
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import re
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from collections import namedtuple
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from typing import Any, Callable, List, Optional, Tuple, Union
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import torch
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import torch.distributed as dist
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from packaging.version import Version
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from torch.distributed import ProcessGroup
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from torch.distributed import distributed_c10d as c10d
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from torch.utils._pytree import tree_flatten, tree_unflatten
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from .stage_manager import PipelineStageManager
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def _cuda_safe_tensor_to_object(tensor: torch.Tensor, tensor_size: torch.Size) -> Any:
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"""transform tensor to object with unpickle.
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Info of the device in bytes stream will be modified into current device before unpickling
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Args:
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tensor (:class:`torch.tensor`): tensor to be unpickled
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tensor_size (:class:`torch.Size`): Size of the real info in bytes
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Returns:
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Any: object after unpickled
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"""
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buf = tensor.numpy().tobytes()[:tensor_size]
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if b"cuda" in buf:
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buf_array = bytearray(buf)
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device_index = torch.cuda.current_device()
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# There might be more than one output tensors during forward
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for cuda_str in re.finditer(b"cuda", buf_array):
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pos = cuda_str.start()
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buf_array[pos + 5] = 48 + device_index
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buf = bytes(buf_array)
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io_bytes = io.BytesIO(buf)
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byte_pickler = pickle.Unpickler(io_bytes)
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unpickle = byte_pickler.load()
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return unpickle
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def check_for_nccl_backend(group):
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pg = group or c10d._get_default_group()
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# Gate PG wrapper check on Gloo availability.
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if c10d._GLOO_AVAILABLE:
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# It is not expected for PG to be wrapped many times, but support it just
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# in case
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while isinstance(pg, c10d._ProcessGroupWrapper):
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pg = pg.wrapped_pg
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return c10d.is_nccl_available() and pg.name() == c10d.Backend.NCCL
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# NOTE: FIXME: NPU DOES NOT support isend nor irecv, so broadcast is kept for future use
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def _broadcast_object_list(
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object_list: List[Any], src: int, group: ProcessGroup, device: Optional[Union[torch.device, str, int]] = None
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):
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"""This is a modified version of the broadcast_object_list in torch.distribution
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The only difference is that object will be move to correct device after unpickled.
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If local_rank = src, then object list will be sent to rank src. Otherwise, object list will
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be updated with data sent from rank src.
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Args:
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object_list (List[Any]): list of object to broadcast
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src (int): source rank to broadcast
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dst (int): dst rank to broadcast
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device (:class:`torch.device`): device to do broadcast. current device in default
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"""
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if c10d._rank_not_in_group(group):
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c10d._warn_not_in_group("broadcast_object_list")
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return
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is_nccl_backend = _check_for_nccl_backend(group)
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current_device = None
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if device is not None:
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if is_nccl_backend and device.type != "cuda":
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raise ValueError("device type must be cuda for nccl backend")
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current_device = device
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else:
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current_device = torch.device("cpu")
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if is_nccl_backend:
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current_device = torch.device("cuda", torch.cuda.current_device())
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my_rank = dist.get_rank()
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# Serialize object_list elements to tensors on src rank.
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if my_rank == src:
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if Version(torch.__version__) >= Version("2.3.0"):
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tensor_list, size_list = zip(
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*[c10d._object_to_tensor(obj, device=current_device, group=group) for obj in object_list]
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)
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elif Version(torch.__version__) >= Version("1.13.0"):
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tensor_list, size_list = zip(*[c10d._object_to_tensor(obj, device=current_device) for obj in object_list])
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else:
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tensor_list, size_list = zip(*[c10d._object_to_tensor(obj) for obj in object_list])
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object_sizes_tensor = torch.cat(size_list)
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else:
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object_sizes_tensor = torch.empty(len(object_list), dtype=torch.long)
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if is_nccl_backend:
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object_sizes_tensor = object_sizes_tensor.to(current_device)
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# Broadcast object sizes
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c10d.broadcast(object_sizes_tensor, src=src, group=group, async_op=False)
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# Concatenate and broadcast serialized object tensors
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if my_rank == src:
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object_tensor = torch.cat(tensor_list)
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else:
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object_tensor = torch.empty( # type: ignore[call-overload]
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torch.sum(object_sizes_tensor).item(), # type: ignore[arg-type]
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dtype=torch.uint8,
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)
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if is_nccl_backend:
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object_tensor = object_tensor.to(current_device)
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c10d.broadcast(object_tensor, src=src, group=group, async_op=False)
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# Deserialize objects using their stored sizes.
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offset = 0
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if my_rank != src:
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for i, obj_size in enumerate(object_sizes_tensor):
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obj_view = object_tensor[offset : offset + obj_size]
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obj_view = obj_view.type(torch.uint8)
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if obj_view.device != torch.device("cpu"):
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obj_view = obj_view.cpu()
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offset += obj_size
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# unpickle
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unpickle_object = _cuda_safe_tensor_to_object(obj_view, obj_size)
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# unconsistence in device
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if (
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isinstance(unpickle_object, torch.Tensor)
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and unpickle_object.device.index != torch.cuda.current_device()
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):
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unpickle_object = unpickle_object.cuda()
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object_list[i] = unpickle_object
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def _check_for_nccl_backend(group):
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pg = group or c10d._get_default_group()
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# Gate PG wrapper check on Gloo availability.
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if c10d._GLOO_AVAILABLE:
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# It is not expected for PG to be wrapped many times, but support it just in case
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while isinstance(pg, c10d._ProcessGroupWrapper):
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pg = pg.wrapped_pg
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return c10d.is_nccl_available() and pg.name() == c10d.Backend.NCCL
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def _check_device(group):
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is_nccl_backend = _check_for_nccl_backend(group)
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current_device = torch.device("cpu")
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if is_nccl_backend:
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current_device = torch.device("cuda", torch.cuda.current_device())
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return current_device, is_nccl_backend
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TensorMetadata = namedtuple("TensorMetadata", ["shape", "dtype", "requires_grad"])
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P2PMetadata = namedtuple("P2PMetadata", ["tree_spec", "tensor_metadata", "non_tensor_obj_idx", "non_tensor_objs"])
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def create_send_metadata(
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object: Any, strict: bool = True, return_tensor: bool = False
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) -> Union[P2PMetadata, Tuple[P2PMetadata, List[torch.Tensor]]]:
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"""
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Args:
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object (Any): object needed to be sent
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strict (bool, optional): whether to check if the object is supported for fast send
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return_tensor (bool, optional): whether to return tensor objects
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"""
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objs, tree_spec = tree_flatten(object)
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tensor_metadata, tensor_objs = [], []
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non_tensor_obj_idx, non_tensor_objs = [], []
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for idx, obj in enumerate(objs):
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if isinstance(obj, torch.Tensor):
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tensor_objs.append(obj)
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tensor_metadata.append(TensorMetadata(obj.shape, obj.dtype, obj.requires_grad))
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else:
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non_tensor_obj_idx.append(idx)
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non_tensor_objs.append(obj)
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assert not strict or len(non_tensor_objs) == 0, "Only support tensor for fast send"
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metadata = P2PMetadata(tree_spec, tensor_metadata, non_tensor_obj_idx, non_tensor_objs)
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return metadata if not return_tensor else (metadata, tensor_objs)
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def _filling_ops_queue(
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obj: Union[torch.Tensor, List[torch.Tensor]],
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comm_op: Callable,
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comm_rank: int,
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ops_queue: List,
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group: ProcessGroup,
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):
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if isinstance(obj, torch.Tensor):
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obj = obj.contiguous()
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op_to_add = dist.P2POp(comm_op, obj, comm_rank, group)
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ops_queue.append(op_to_add)
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else:
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for tensor_to_comm in obj:
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assert isinstance(tensor_to_comm, torch.Tensor)
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_filling_ops_queue(tensor_to_comm, comm_op, comm_rank, ops_queue, group)
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def _create_recv_buffer(tensor_metadata: List[TensorMetadata], current_device) -> List[torch.Tensor]:
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buffer_recv = []
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for metadata in tensor_metadata:
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tensor_recv = torch.empty(
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metadata.shape, requires_grad=metadata.requires_grad, device=current_device, dtype=metadata.dtype
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)
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buffer_recv.append(tensor_recv)
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return buffer_recv
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def _batch_send_recv_tensor(
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send_tensor_list: Optional[List[torch.Tensor]],
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recv_tensor_metadata: Optional[List[TensorMetadata]],
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send_dst: Optional[int],
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recv_src: Optional[int],
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send_group: Optional[ProcessGroup],
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recv_group: Optional[ProcessGroup],
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current_device: Any,
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overlap_p2p: bool = True,
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send_first: bool = True,
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) -> Optional[Union[torch.Tensor, List[torch.Tensor]]]:
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buffer_recv = None
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if recv_tensor_metadata is not None:
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buffer_recv = _create_recv_buffer(recv_tensor_metadata, current_device)
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ops = []
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is_send = send_dst is not None and send_tensor_list is not None
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is_recv = recv_src is not None and buffer_recv is not None
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if send_first:
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if is_send:
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assert send_group is not None
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_filling_ops_queue(send_tensor_list, dist.isend, send_dst, ops, send_group)
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if is_recv:
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assert recv_group is not None
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_filling_ops_queue(buffer_recv, dist.irecv, recv_src, ops, recv_group)
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else:
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if is_recv:
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assert recv_group is not None
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_filling_ops_queue(buffer_recv, dist.irecv, recv_src, ops, recv_group)
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if is_send:
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assert send_group is not None
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_filling_ops_queue(send_tensor_list, dist.isend, send_dst, ops, send_group)
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if len(ops) > 0:
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reqs = dist.batch_isend_irecv(ops)
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if not overlap_p2p:
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for req in reqs:
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req.wait()
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return buffer_recv, []
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else:
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return buffer_recv, reqs
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return None, []
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def _send_recv_serialization_object(
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object: Optional[P2PMetadata],
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send_dst: Optional[int],
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recv_src: Optional[int],
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send_group: Optional[ProcessGroup],
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recv_group: Optional[ProcessGroup],
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current_device: Any,
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is_nccl_backend: bool,
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send_first: bool = True,
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) -> Optional[P2PMetadata]:
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ops = []
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send_object_tensor = None
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send_object_size_tensor = None
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if object is not None and send_dst is not None:
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if Version(torch.__version__) >= Version("2.3.0"):
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send_object_tensor, send_object_size_tensor = c10d._object_to_tensor(
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object, device=current_device, group=send_group
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)
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elif Version(torch.__version__) >= Version("1.13.0"):
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send_object_tensor, send_object_size_tensor = c10d._object_to_tensor(object, device=current_device)
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else:
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send_object_tensor, send_object_size_tensor = c10d._object_to_tensor(object)
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if is_nccl_backend:
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send_object_size_tensor = send_object_size_tensor.to(current_device)
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send_object_tensor = send_object_tensor.to(current_device)
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recv_object_size_tensor = None
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if recv_src is not None:
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recv_object_size_tensor = torch.empty(1, dtype=torch.long)
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if is_nccl_backend:
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recv_object_size_tensor = recv_object_size_tensor.to(current_device)
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if send_first:
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if send_object_size_tensor is not None:
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_filling_ops_queue(send_object_size_tensor, dist.isend, send_dst, ops, send_group)
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if recv_src is not None:
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_filling_ops_queue(recv_object_size_tensor, dist.irecv, recv_src, ops, recv_group)
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else:
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if recv_src is not None:
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_filling_ops_queue(recv_object_size_tensor, dist.irecv, recv_src, ops, recv_group)
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if send_object_size_tensor is not None:
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_filling_ops_queue(send_object_size_tensor, dist.isend, send_dst, ops, send_group)
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if len(ops) > 0:
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reqs = dist.batch_isend_irecv(ops)
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for req in reqs:
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req.wait() # This blocks the compute stream in torch
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ops = []
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is_send = send_dst is not None and send_object_tensor is not None
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is_recv = recv_src is not None and recv_object_size_tensor is not None
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recv_object_tensor = None
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if is_recv:
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recv_object_tensor = torch.empty(recv_object_size_tensor.item(), dtype=torch.uint8)
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if is_nccl_backend:
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recv_object_tensor = recv_object_tensor.to(current_device)
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if send_first:
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if is_send:
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_filling_ops_queue(send_object_tensor, dist.isend, send_dst, ops, send_group)
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if is_recv:
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_filling_ops_queue(recv_object_tensor, dist.irecv, recv_src, ops, recv_group)
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else:
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if is_recv:
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_filling_ops_queue(recv_object_tensor, dist.irecv, recv_src, ops, recv_group)
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if is_send:
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_filling_ops_queue(send_object_tensor, dist.isend, send_dst, ops, send_group)
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if len(ops) > 0:
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reqs = dist.batch_isend_irecv(ops)
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for req in reqs:
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req.wait()
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if recv_object_tensor is not None and recv_object_size_tensor is not None:
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recv_object_tensor = recv_object_tensor.type(torch.uint8)
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if recv_object_tensor.device != torch.device("cpu"):
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recv_object_tensor = recv_object_tensor.cpu()
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unpickle_object = _cuda_safe_tensor_to_object(recv_object_tensor, recv_object_size_tensor.item())
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if isinstance(unpickle_object, torch.Tensor) and unpickle_object.device.index != torch.cuda.current_device():
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unpickle_object = unpickle_object.cuda()
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return unpickle_object
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def _communicate(
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object: Any,
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send_dst: Optional[int],
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recv_src: Optional[int],
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overlap_p2p: bool,
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send_group: Optional[ProcessGroup] = None,
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recv_group: Optional[ProcessGroup] = None,
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send_metadata: bool = True,
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metadata_recv: Optional[P2PMetadata] = None,
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send_first: Optional[bool] = None,
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) -> Any:
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"""
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Send and receive object from send_dst and recv_src respectively
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Args:
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object (Any): object needed to be sent
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send_dst (int): rank of the destination
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recv_src (int): rank of the source
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overlap_p2p (bool): whether to overlap p2p communication with computation
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send_group (ProcessGroup, optional): process group of sender
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recv_group (ProcessGroup, optional): process group of receiver
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send_metadata (bool, optional): whether to send metadata
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metadata_recv (P2PMetadata, optional): metadata of the object to be received
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"""
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assert send_dst is not None or recv_src is not None, "send_dst and recv_src cannot be both None"
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assert send_dst is None or send_group is not None, "send_group must be specified when send_dst is not None"
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assert recv_src is None or recv_group is not None, "recv_group must be specified when recv_src is not None"
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assert (
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metadata_recv is None or len(metadata_recv.non_tensor_obj_idx) == 0
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), "metadata_recv should not contain non-tensor objects"
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metadata_send, tensor_objs = None, None
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if object is not None:
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# NOTE: if object contains non-tensor objects, we have to send metadata
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metadata_send, tensor_objs = create_send_metadata(object, strict=False, return_tensor=True)
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send_metadata = send_metadata or len(metadata_send.non_tensor_obj_idx) > 0
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else:
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send_metadata = False
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assert not c10d._rank_not_in_group(send_group) and not c10d._rank_not_in_group(recv_group)
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current_send_device, is_send_nccl_backend = _check_device(send_group)
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current_recv_device, is_recv_nccl_backend = _check_device(recv_group)
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is_nccl_backend = is_send_nccl_backend and is_recv_nccl_backend
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assert current_send_device == current_recv_device
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current_device = current_send_device
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if (send_dst is not None and send_metadata) or (recv_src is not None and metadata_recv is None):
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# Send and receive metadata
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_metadata_recv = _send_recv_serialization_object(
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object=metadata_send,
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send_dst=send_dst if send_metadata else None,
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recv_src=recv_src if metadata_recv is None else None,
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send_group=send_group if send_metadata else None,
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recv_group=recv_group if metadata_recv is None else None,
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current_device=current_device,
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is_nccl_backend=is_nccl_backend,
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send_first=send_first if send_first != None else True,
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)
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assert (
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metadata_recv is None or _metadata_recv is None
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), "You shouldn't receive metadata when using the cached metadata"
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metadata_recv = _metadata_recv if metadata_recv is None else metadata_recv
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# Send and receive data
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recv_tensor_metadata = None if metadata_recv is None else metadata_recv.tensor_metadata
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recv_tensor_objs, wait_handles = _batch_send_recv_tensor(
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tensor_objs,
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recv_tensor_metadata,
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send_dst,
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recv_src,
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send_group,
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recv_group,
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current_device,
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overlap_p2p=overlap_p2p,
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send_first=send_first if send_first != None else True,
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)
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if metadata_recv is not None:
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assert isinstance(metadata_recv, P2PMetadata)
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tree_spec = metadata_recv.tree_spec
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non_tensor_obj_idx = metadata_recv.non_tensor_obj_idx
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non_tensor_objs = metadata_recv.non_tensor_objs
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if recv_tensor_objs is None:
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recv_tensor_objs = []
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for idx in non_tensor_obj_idx:
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recv_tensor_objs.insert(idx, non_tensor_objs.pop(0))
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recv_object = tree_unflatten(recv_tensor_objs, tree_spec)
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return recv_object, wait_handles
|
|
|
|
return None, wait_handles
|
|
|
|
|
|
def _p2p_comm(
|
|
tensor_send_next: torch.Tensor,
|
|
recv_prev: bool,
|
|
peer: int,
|
|
group: ProcessGroup,
|
|
comm_dtype: torch.dtype = torch.float16,
|
|
):
|
|
"""
|
|
Send and recv tensor using P2P communication, used when pipeline size is 2 to solve the race communication.
|
|
|
|
Args:
|
|
tensor_send_next (torch.Tensor): tensor to be sent to next stage
|
|
recv_prev (bool): whether to receive tensor from previous stage
|
|
peer (int): rank of the peer
|
|
group (ProcessGroup): process group
|
|
comm_dtype (torch.dtype): dtype of the tensor to be sent
|
|
|
|
Returns:
|
|
torch.Tensor: tensor received from previous stage
|
|
"""
|
|
# send and recv shape
|
|
send_next_shape = None
|
|
recv_prev_shape = None
|
|
|
|
if tensor_send_next is not None:
|
|
send_next_shape = torch.tensor(tensor_send_next.size(), device=torch.cuda.current_device(), dtype=torch.int64)
|
|
if recv_prev:
|
|
recv_prev_shape = torch.empty((3), device=torch.cuda.current_device(), dtype=torch.int64)
|
|
|
|
ops = []
|
|
if send_next_shape is not None:
|
|
send_next_op = dist.P2POp(dist.isend, send_next_shape, peer=peer, group=group)
|
|
ops.append(send_next_op)
|
|
if recv_prev_shape is not None:
|
|
recv_prev_op = dist.P2POp(
|
|
dist.irecv,
|
|
recv_prev_shape,
|
|
peer=peer,
|
|
group=group,
|
|
)
|
|
ops.append(recv_prev_op)
|
|
if len(ops) > 0:
|
|
reqs = dist.batch_isend_irecv(ops)
|
|
for req in reqs:
|
|
req.wait()
|
|
|
|
if recv_prev_shape is not None:
|
|
recv_prev_shape = recv_prev_shape.tolist()
|
|
|
|
# send and recv data
|
|
tensor_recv_prev = None
|
|
if recv_prev:
|
|
tensor_recv_prev = torch.empty(recv_prev_shape, device=torch.cuda.current_device(), dtype=comm_dtype)
|
|
|
|
ops = []
|
|
if tensor_send_next is not None:
|
|
send_next_op = dist.P2POp(
|
|
dist.isend,
|
|
tensor_send_next,
|
|
peer=peer,
|
|
group=group,
|
|
)
|
|
ops.append(send_next_op)
|
|
if tensor_recv_prev is not None:
|
|
recv_prev_op = dist.P2POp(
|
|
dist.irecv,
|
|
tensor_recv_prev,
|
|
peer=peer,
|
|
group=group,
|
|
)
|
|
ops.append(recv_prev_op)
|
|
if len(ops) > 0:
|
|
reqs = dist.batch_isend_irecv(ops)
|
|
for req in reqs:
|
|
req.wait()
|
|
return tensor_recv_prev
|
|
|
|
|
|
class PipelineP2PCommunication:
|
|
def __init__(self, stage_manager: PipelineStageManager, overlap_p2p: bool = True) -> None:
|
|
self.stage_manager = stage_manager
|
|
self.overlap_p2p = overlap_p2p
|
|
|
|
def recv_forward(
|
|
self, prev_rank: Optional[int] = None, metadata_recv: Optional[P2PMetadata] = None
|
|
) -> Tuple[Any, List]:
|
|
"""Copy the forward output from the previous stage in pipeline as the input tensor of this stage.
|
|
|
|
Args:
|
|
prev_rank (int, optional): The rank of the source of the tensor.
|
|
|
|
Returns:
|
|
Any: The input tensor or input tensor list.
|
|
List: List of handles for the communication requests, if overlap is enabled.
|
|
"""
|
|
if prev_rank is None:
|
|
prev_rank = self.stage_manager.get_prev_rank()
|
|
input_tensor, wait_handles = _communicate(
|
|
object=None,
|
|
recv_src=prev_rank,
|
|
send_dst=None,
|
|
recv_group=self.stage_manager.get_p2p_process_group(),
|
|
metadata_recv=metadata_recv,
|
|
overlap_p2p=self.overlap_p2p,
|
|
)
|
|
|
|
return input_tensor, wait_handles
|
|
|
|
def recv_backward(
|
|
self, next_rank: Optional[int] = None, metadata_recv: Optional[P2PMetadata] = None
|
|
) -> Tuple[Any, List]:
|
|
"""Copy the gradient tensor from the next stage in pipeline as the input gradient of this stage.
|
|
Args:
|
|
next_rank (int, optional): The rank of the source of the tensor.
|
|
|
|
Returns:
|
|
Any: The input tensor or input tensor list.
|
|
List: List of handles for the communication requests, if overlap is enabled.
|
|
"""
|
|
if next_rank is None:
|
|
next_rank = self.stage_manager.get_next_rank()
|
|
|
|
output_tensor_grad, wait_handles = _communicate(
|
|
object=None,
|
|
recv_src=next_rank,
|
|
send_dst=None,
|
|
recv_group=self.stage_manager.get_p2p_process_group(),
|
|
metadata_recv=metadata_recv,
|
|
overlap_p2p=self.overlap_p2p,
|
|
)
|
|
|
|
return output_tensor_grad, wait_handles
|
|
|
|
def send_forward(self, output_object: Any, next_rank: Optional[int] = None, send_metadata: bool = True) -> List:
|
|
"""Sends the input tensor to the next stage in pipeline.
|
|
|
|
Args:
|
|
output_object (Any): Object to be sent.
|
|
next_rank (int, optional): The rank of the recipient of the tensor.
|
|
|
|
Returns:
|
|
List: List of handles for the communication requests, if overlap is enabled.
|
|
"""
|
|
if next_rank is None:
|
|
next_rank = self.stage_manager.get_next_rank()
|
|
_, handles = _communicate(
|
|
output_object,
|
|
recv_src=None,
|
|
send_dst=next_rank,
|
|
send_group=self.stage_manager.get_p2p_process_group(),
|
|
send_metadata=send_metadata,
|
|
overlap_p2p=self.overlap_p2p,
|
|
)
|
|
return handles
|
|
|
|
def send_backward(self, input_object: Any, prev_rank: Optional[int] = None, send_metadata: bool = True) -> List:
|
|
"""Sends the gradient tensor to the previous stage in pipeline.
|
|
|
|
Args:
|
|
input_object (Any): Object to be sent.
|
|
prev_rank (int, optional): The rank of the recipient of the tensor
|
|
|
|
Returns:
|
|
List: List of handles for the communication requests, if overlap is enabled.
|
|
"""
|
|
if prev_rank is None:
|
|
prev_rank = self.stage_manager.get_prev_rank()
|
|
_, handles = _communicate(
|
|
input_object,
|
|
recv_src=None,
|
|
send_dst=prev_rank,
|
|
send_group=self.stage_manager.get_p2p_process_group(),
|
|
send_metadata=send_metadata,
|
|
overlap_p2p=self.overlap_p2p,
|
|
)
|
|
return handles
|
|
|
|
def send_forward_recv_forward(
|
|
self,
|
|
output_object: Any,
|
|
is_send: bool,
|
|
is_recv: bool,
|
|
send_first: bool,
|
|
send_metadata: bool = True,
|
|
metadata_recv: Optional[P2PMetadata] = None,
|
|
) -> Tuple[Any, List]:
|
|
"""Sends the input tensor to the next pipeline stage and copy the output tensor from the next pipeline stage
|
|
|
|
Args:
|
|
output_object (Any): Object to be sent.
|
|
is_send (bool): Whether to send the input tensor to the next pipeline stage.
|
|
is_recv (bool): Whether to copy the output tensor from the next pipeline stage.
|
|
send_first (bool): Whether to send before receive.
|
|
send_metadata (bool, optional): Whether to send metadata.
|
|
metadata_recv (P2PMetadata, optional): The cached metadata(size, type) of the object to be received.
|
|
|
|
Returns:
|
|
Any: The input tensor or input tensor list.
|
|
List: List of handles for the communication requests, if overlap is enabled.
|
|
"""
|
|
next_rank = self.stage_manager.get_next_rank() if is_send else None
|
|
prev_rank = self.stage_manager.get_prev_rank() if is_recv else None
|
|
group = self.stage_manager.get_p2p_process_group()
|
|
return _communicate(
|
|
output_object,
|
|
send_dst=next_rank,
|
|
recv_src=prev_rank,
|
|
send_group=group if is_send else None,
|
|
recv_group=group if is_recv else None,
|
|
send_metadata=send_metadata if is_send else False,
|
|
metadata_recv=metadata_recv if is_recv else None,
|
|
send_first=send_first,
|
|
overlap_p2p=self.overlap_p2p,
|
|
)
|
|
|
|
def send_backward_recv_backward(
|
|
self,
|
|
input_object: Any,
|
|
is_send: bool,
|
|
is_recv: bool,
|
|
send_first: bool,
|
|
send_metadata: bool = True,
|
|
metadata_recv: Optional[P2PMetadata] = None,
|
|
) -> Tuple[Any, List]:
|
|
"""Sends the gradient tensor to the previous pipeline stage and copy the gradient tensor from the previous pipeline stage
|
|
|
|
Args:
|
|
input_object (Any): Object to be sent.
|
|
is_send (bool): Whether to send the gradient tensor to the previous pipeline stage.
|
|
is_recv (bool): Whether to copy the gradient tensor from the previous pipeline stage.
|
|
send_first (bool): Whether to send before receive.
|
|
send_metadata (bool, optional): Whether to send metadata.
|
|
metadata_recv (P2PMetadata, optional): The cached metadata(size, type) of the object to be received.
|
|
|
|
Returns:
|
|
Any: The input tensor or input tensor list.
|
|
List: List of handles for the communication requests, if overlap is enabled.
|
|
"""
|
|
prev_rank = self.stage_manager.get_prev_rank() if is_send else None
|
|
next_rank = self.stage_manager.get_next_rank() if is_recv else None
|
|
|
|
group = self.stage_manager.get_p2p_process_group()
|
|
|
|
return _communicate(
|
|
input_object,
|
|
send_dst=prev_rank,
|
|
recv_src=next_rank,
|
|
send_group=group if is_send else None,
|
|
recv_group=group if is_recv else None,
|
|
send_metadata=send_metadata if is_send else False,
|
|
metadata_recv=metadata_recv if is_recv else None,
|
|
send_first=send_first,
|
|
overlap_p2p=self.overlap_p2p,
|
|
)
|
|
|
|
def send_forward_recv_backward(
|
|
self,
|
|
input_object: Any,
|
|
send_metadata: bool = True,
|
|
metadata_recv: Optional[P2PMetadata] = None,
|
|
send_first: Optional[bool] = None,
|
|
) -> Tuple[Any, List]:
|
|
"""Sends the gradient tensor to and copy the gradient tensor from the next pipeline stage
|
|
|
|
Args:
|
|
input_object (Any): Object to be sent.
|
|
|
|
Returns:
|
|
Any: The input tensor or input tensor list.
|
|
List: List of handles for the communication requests, if overlap is enabled.
|
|
"""
|
|
next_rank = self.stage_manager.get_next_rank()
|
|
group = self.stage_manager.get_p2p_process_group()
|
|
return _communicate(
|
|
input_object,
|
|
next_rank,
|
|
next_rank,
|
|
send_group=group,
|
|
recv_group=group,
|
|
send_metadata=send_metadata,
|
|
metadata_recv=metadata_recv,
|
|
send_first=send_first,
|
|
overlap_p2p=False,
|
|
)
|
|
|
|
def send_backward_recv_forward(
|
|
self,
|
|
input_object: Any,
|
|
send_metadata: bool = True,
|
|
metadata_recv: Optional[P2PMetadata] = None,
|
|
send_first: Optional[bool] = None,
|
|
) -> Tuple[Any, List]:
|
|
"""Sends the gradient tensor to and copy the gradient tensor from the previous stage in pipeline
|
|
|
|
Args:
|
|
input_object (Any): Object to be sent.
|
|
|
|
Returns:
|
|
Any: The input tensor or input tensor list.
|
|
List: List of handles for the communication requests, if overlap is enabled.
|
|
"""
|
|
prev_rank = self.stage_manager.get_prev_rank()
|
|
group = self.stage_manager.get_p2p_process_group()
|
|
return _communicate(
|
|
input_object,
|
|
prev_rank,
|
|
prev_rank,
|
|
send_group=group,
|
|
recv_group=group,
|
|
send_metadata=send_metadata,
|
|
metadata_recv=metadata_recv,
|
|
send_first=send_first,
|
|
overlap_p2p=False,
|
|
)
|
|
|
|
def p2p_communicate(
|
|
self,
|
|
output_object: Any,
|
|
recv_pre: bool,
|
|
next_rank: Optional[int] = None,
|
|
comm_dtype: torch.dtype = torch.float16,
|
|
) -> Any:
|
|
"""
|
|
Sends the input tensor to the next stage in pipeline, using `P2Pop` in torch.
|
|
|
|
Args:
|
|
output_object (Any): Object to be sent.
|
|
next_rank (int, optional): The rank of the recipient of the tensor.
|
|
"""
|
|
if next_rank is None:
|
|
next_rank = self.stage_manager.get_next_rank()
|
|
recv_tensor = _p2p_comm(
|
|
output_object,
|
|
recv_pre,
|
|
next_rank,
|
|
self.stage_manager.get_p2p_process_group(),
|
|
comm_dtype,
|
|
)
|
|
return recv_tensor
|