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# Copyright (c) 2022, NVIDIA CORPORATION. All rights reserved.
# Copyright (c) 2025 SandAI. All Rights Reserved.
#
# Licensed under the Apache License, Version 2.0 (the "License");
# you may not use this file except in compliance with the License.
# You may obtain a copy of the License at
#
# http://www.apache.org/licenses/LICENSE-2.0
#
# Unless required by applicable law or agreed to in writing, software
# distributed under the License is distributed on an "AS IS" BASIS,
# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
# See the License for the specific language governing permissions and
# limitations under the License.
"""Model and data parallel groups."""
import warnings
from datetime import timedelta
from typing import List, Optional
import torch
# Intra-layer model parallel group that the current rank belongs to.
_TENSOR_MODEL_PARALLEL_GROUP = None
# Tensor parallel group information with context parallel combined.
_TENSOR_MODEL_PARALLEL_GROUP_WITH_CP = None
_TENSOR_MODEL_PARALLEL_GLOBAL_RANKS_WITH_CP = None
# Inter-layer model parallel group that the current rank belongs to.
_PIPELINE_MODEL_PARALLEL_GROUP = None
# Model parallel group (both intra- and pipeline) that the current rank belongs to.
_MODEL_PARALLEL_GROUP = None
# Data parallel group that the current rank belongs to.
_DATA_PARALLEL_GROUP = None
_DATA_PARALLEL_GROUP_GLOO = None
# tensor model parallel group and data parallel group combined
# used for fp8 and moe training
_TENSOR_AND_DATA_PARALLEL_GROUP = None
# A list of global ranks for each pipeline group to ease calculation of the source
# rank when broadcasting from the first or last pipeline stage.
_PIPELINE_GLOBAL_RANKS = None
# A list of global ranks for each data parallel group to ease calculation of the source
# rank when broadcasting weights from src to all other data parallel ranks
_DATA_PARALLEL_GLOBAL_RANKS = None
# A list of global ranks for each tensor model parallel group to ease calculation of
# the first local rank in the tensor model parallel group
_TENSOR_MODEL_PARALLEL_GLOBAL_RANKS = None
# Context parallel group that the current rank belongs to
_CONTEXT_PARALLEL_GROUP = None
# A list of global ranks for each context parallel group to ease calculation of the
# destination rank when exchanging KV/dKV between context parallel_ranks
_CONTEXT_PARALLEL_GLOBAL_RANKS = None
# Data parallel group information with context parallel combined.
_DATA_PARALLEL_GROUP_WITH_CP = None
_DATA_PARALLEL_GROUP_WITH_CP_GLOO = None
_DATA_PARALLEL_GLOBAL_RANKS_WITH_CP = None
# combined parallel group of TP, DP, and CP used for fp8
_TENSOR_AND_DATA_PARALLEL_GROUP_WITH_CP = None
def get_nccl_options(pg_name, nccl_comm_cfgs):
"""Set the NCCL process group options.
Args:
pg_name (str): process group name
nccl_comm_cfgs (dict): nccl communicator configurations
When an option (e.g., max_ctas) is not found in the config, use the NCCL default setting.
"""
if pg_name in nccl_comm_cfgs:
nccl_options = torch.distributed.ProcessGroupNCCL.Options()
nccl_options.config.cga_cluster_size = nccl_comm_cfgs[pg_name].get("cga_cluster_size", 4)
nccl_options.config.max_ctas = nccl_comm_cfgs[pg_name].get("max_ctas", 32)
nccl_options.config.min_ctas = nccl_comm_cfgs[pg_name].get("min_ctas", 1)
return nccl_options
else:
return None
def generate_masked_orthogonal_rank_groups(world_size: int, parallel_size: List[int], mask: List[bool]) -> List[List[int]]:
"""Generate orthogonal parallel groups based on the parallel size and mask.
Arguments:
world_size (int): world size
parallel_size (List[int]):
The parallel size of each orthogonal parallel type. For example, if
tensor_parallel_size = 2, pipeline_model_parallel_group = 3, data_parallel_size = 4,
and the parallel mapping order is tp-pp-dp, then the parallel_size = [2, 3, 4].
mask (List[bool]):
The mask controls which parallel methods the generated groups represent. If mask[i] is
True, it means the generated group contains the i-th parallelism method. For example,
if parallel_size = [tp_size, pp_size, dp_size], and mask = [True, False , True], then
the generated group is the `tp-dp` group, if the mask = [False, True, False], then the
generated group is the `pp` group.
Algorithm:
For orthogonal parallelism, such as tp/dp/pp/cp, the global_rank and
local_rank satisfy the following equation:
global_rank = tp_rank + dp_rank * tp_size + pp_rank * tp_size * dp_size (1)
tp_rank \in [0, tp_size)
dp_rank \in [0, dp_size)
pp_rank \in [0, pp_size)
If we want to get the `dp_group` (tp_size * pp_size groups of dp_size ranks each.
For example, if the gpu size is 8 and order is 'tp-pp-dp', size is '2-2-2', and the
dp_group here is [[0, 4], [1, 5], [2, 6], [3, 7]].)
The tp_rank and pp_rank will be combined to form the `dp_group_index`.
dp_group_index = tp_rank + pp_rank * tp_size (2)
So, Given that tp_rank and pp_rank satisfy equation (2), and dp_rank in
range(0, dp_size), the ranks in dp_group[dp_group_index] satisfies the
equation (1).
This function solve this math problem.
For example, if the parallel_size = [tp_size, dp_size, pp_size] = [2, 3, 4],
and the mask = [False, True, False]. Then,
dp_group_index(0) = tp_rank(0) + pp_rank(0) * 2
dp_group_index(1) = tp_rank(1) + pp_rank(0) * 2
...
dp_group_index(7) = tp_rank(1) + pp_rank(3) * 2
dp_group[0] = 0 + range(0, 3) * 2 + 0 = [0, 2, 4]
dp_group[1] = 1 + range(0, 3) * 2 + 0 = [1, 3, 5]
...
dp_group[7] = 1 + range(0, 3) * 2 + 3 * 2 * 3 = [19, 21, 23]
"""
def prefix_product(a: List[int], init=1) -> List[int]:
r = [init]
for v in a:
init = init * v
r.append(init)
return r
def inner_product(a: List[int], b: List[int]) -> int:
return sum([x * y for x, y in zip(a, b)])
def decompose(index, shape, stride=None):
"""
This function solve the math problem below:
There is an equation:
index = sum(idx[i] * stride[i])
And given the value of index, stride.
Return the idx.
This function will used to get the pp/dp/pp_rank
from group_index and rank_in_group.
"""
if stride is None:
stride = prefix_product(shape)
idx = [(index // d) % s for s, d in zip(shape, stride)]
# stride is a prefix_product result. And the value of stride[-1]
# is not used.
assert (
sum([x * y for x, y in zip(idx, stride[:-1])]) == index
), "idx {} with shape {} mismatch the return idx {}".format(index, shape, idx)
return idx
masked_shape = [s for s, m in zip(parallel_size, mask) if m]
unmasked_shape = [s for s, m in zip(parallel_size, mask) if not m]
global_stride = prefix_product(parallel_size)
masked_stride = [d for d, m in zip(global_stride, mask) if m]
unmasked_stride = [d for d, m in zip(global_stride, mask) if not m]
group_size = prefix_product(masked_shape)[-1]
num_of_group = world_size // group_size
ranks = []
for group_index in range(num_of_group):
# get indices from unmaksed for group_index.
decomposed_group_idx = decompose(group_index, unmasked_shape)
rank = []
for rank_in_group in range(group_size):
# get indices from masked for rank_in_group.
decomposed_rank_idx = decompose(rank_in_group, masked_shape)
rank.append(
inner_product(decomposed_rank_idx, masked_stride) + inner_product(decomposed_group_idx, unmasked_stride)
)
ranks.append(rank)
return ranks
class RankGenerator(object):
def __init__(self, tp: int, dp: int, pp: int, cp: int, order: str) -> None:
self.tp = tp
self.dp = dp
self.pp = pp
self.cp = cp
self.world_size = tp * dp * pp * cp
self.name_to_size = {"tp": self.tp, "pp": self.pp, "dp": self.dp, "cp": self.cp}
order = order.lower()
for name in self.name_to_size.keys():
if name not in order and self.name_to_size[name] != 1:
raise RuntimeError(
f"The size of ({name}) is ({self.name_to_size[name]}), but you haven't specified the order ({self.order})."
)
elif name not in order:
order = order + "-" + name
self.order = order
self.ordered_size = [self.name_to_size[token] for token in order.split("-")]
def get_mask(self, order: str, token: str):
ordered_token = order.split("-")
token = token.split("-")
mask = [False] * len(ordered_token)
for t in token:
mask[ordered_token.index(t)] = True
return mask
def get_ranks(self, token):
"""Get rank group by input token.
Arguments:
token (str):
Specify the ranks type that want to get. If we want
to obtain multiple parallel types, we can use a hyphen
'-' to separate them. For example, if we want to obtain
the TP_DP group, the token should be 'tp-dp'.
"""
mask = self.get_mask(self.order, token)
ranks = generate_masked_orthogonal_rank_groups(self.world_size, self.ordered_size, mask)
return ranks
def initialize_model_parallel(
tp_size: int = 1,
pp_size: int = 1,
cp_size: int = 1,
nccl_communicator_config_path: Optional[str] = None,
distributed_timeout_minutes: int = 30,
order: str = "tp-cp-pp-dp",
) -> None:
"""Initialize model data parallel groups.
Borrow from: https://github.com/NVIDIA/Megatron-LM/blob/main/megatron/core/parallel_state.py
Args:
tp_size (int, default = 1):
The number of GPUs to split individual tensors across.
pp_size (int, default = 1):
The number of tensor parallel GPU groups to split the
Transformer layers across. For example, if tp_size is 4 and
pp_size is 2, the model will be split into 2 groups of 4 GPUs.
cp_size (int, default = 1):
The number of tensor parallel GPU groups to split the
network input sequence length across. Compute of attention
module requires tokens of full sequence length, so GPUs
in a context parallel group need to communicate with each
other to exchange information of other sequence chunks.
Each GPU and its counterparts in other tensor parallel
groups compose a context parallel group.
For example, assume we have 8 GPUs, if tensor model parallel
size is 4 and context parallel size is 2, the network input
will be split into two sequence chunks, which are processed
by 2 different groups of 4 GPUs. One chunk is processed by
GPU0-3, the other chunk is processed by GPU4-7. Four groups
are build to do context parallel communications: [GPU0, GPU4],
[GPU1, GPU5], [GPU2, GPU6], and [GPU3, GPU7].
Context parallelism partitions sequence length, so it has no
impact on weights, which means weights are duplicated among
GPUs in a context parallel group. Hence, weight gradients
all-reduce is required in backward. For simplicity, we piggyback
GPUs of context parallelism on data parallel group for
weight gradient all-reduce.
nccl_communicator_config_path (str, default = None):
Path to the yaml file of NCCL communicator configurations.
`min_ctas`, `max_ctas`, and `cga_cluster_size` can be set
for each communicator.
distributed_timeout_minutes (int, default = 30): Timeout, in
minutes,for operations executed against distributed
process groups. See PyTorch documentation at
https://pytorch.org/docs/stable/distributed.html for
caveats.
order (str, default=tp-dp-pp):
The rank initialization order of parallelism. Now we support
tp-dp-pp and tp-pp-dp orders.
Let's say we have a total of 16 GPUs denoted by g0 ... g15 and we
use 2 GPUs to parallelize the model tensor, and 4 GPUs to parallelize
the model pipeline. The present function will
create 8 tensor model-parallel groups, 4 pipeline model-parallel groups
and 8 data-parallel groups as:
8 data_parallel groups:
[g0, g2], [g1, g3], [g4, g6], [g5, g7], [g8, g10], [g9, g11], [g12, g14], [g13, g15]
8 tensor model-parallel groups:
[g0, g1], [g2, g3], [g4, g5], [g6, g7], [g8, g9], [g10, g11], [g12, g13], [g14, g15]
4 pipeline model-parallel groups:
[g0, g4, g8, g12], [g1, g5, g9, g13], [g2, g6, g10, g14], [g3, g7, g11, g15]
Note that for efficiency, the caller should make sure adjacent ranks
are on the same DGX box. For example if we are using 2 DGX-1 boxes
with a total of 16 GPUs, rank 0 to 7 belong to the first box and
ranks 8 to 15 belong to the second box.
"""
# Get world size and rank. Ensure some consistencies.
assert torch.distributed.is_initialized()
world_size: int = torch.distributed.get_world_size()
if world_size % (tp_size * pp_size * cp_size) != 0:
raise RuntimeError(
f"world_size ({world_size}) is not divisible by tp_size "
f"({tp_size}) x pp_size ({pp_size}) "
f"x cp_size ({cp_size})"
)
nccl_comm_cfgs = {}
if nccl_communicator_config_path is not None:
try:
import yaml
except ImportError:
raise RuntimeError("Cannot import `yaml`. Setting custom nccl communicator configs " "requires the yaml package.")
with open(nccl_communicator_config_path, "r") as stream:
nccl_comm_cfgs = yaml.safe_load(stream)
dp_size: int = world_size // (tp_size * pp_size * cp_size)
rank = torch.distributed.get_rank()
rank_generator = RankGenerator(tp=tp_size, dp=dp_size, pp=pp_size, cp=cp_size, order=order)
timeout = timedelta(minutes=distributed_timeout_minutes)
# Build the data-parallel groups.
global _DATA_PARALLEL_GROUP
global _DATA_PARALLEL_GROUP_GLOO
global _DATA_PARALLEL_GLOBAL_RANKS
global _DATA_PARALLEL_GROUP_WITH_CP
global _DATA_PARALLEL_GROUP_WITH_CP_GLOO
global _DATA_PARALLEL_GLOBAL_RANKS_WITH_CP
assert _DATA_PARALLEL_GROUP is None, "data parallel group is already initialized"
for ranks in rank_generator.get_ranks("dp"):
group = torch.distributed.new_group(ranks, timeout=timeout, pg_options=get_nccl_options("dp", nccl_comm_cfgs))
group_gloo = torch.distributed.new_group(ranks, timeout=timeout, backend="gloo")
if rank in ranks:
_DATA_PARALLEL_GROUP = group
_DATA_PARALLEL_GROUP_GLOO = group_gloo
_DATA_PARALLEL_GLOBAL_RANKS = ranks
for ranks_with_cp in rank_generator.get_ranks("dp-cp"):
group_with_cp = torch.distributed.new_group(
ranks_with_cp, timeout=timeout, pg_options=get_nccl_options("dp_cp", nccl_comm_cfgs)
)
group_with_cp_gloo = torch.distributed.new_group(ranks_with_cp, timeout=timeout, backend="gloo")
if rank in ranks_with_cp:
_DATA_PARALLEL_GROUP_WITH_CP = group_with_cp
_DATA_PARALLEL_GROUP_WITH_CP_GLOO = group_with_cp_gloo
_DATA_PARALLEL_GLOBAL_RANKS_WITH_CP = ranks_with_cp
# Build the context-parallel groups.
global _CONTEXT_PARALLEL_GROUP
global _CONTEXT_PARALLEL_GLOBAL_RANKS
assert _CONTEXT_PARALLEL_GROUP is None, "context parallel group is already initialized"
for ranks in rank_generator.get_ranks("cp"):
group = torch.distributed.new_group(ranks, timeout=timeout, pg_options=get_nccl_options("cp", nccl_comm_cfgs))
if rank in ranks:
_CONTEXT_PARALLEL_GROUP = group
_CONTEXT_PARALLEL_GLOBAL_RANKS = ranks
# Build the model-parallel groups.
global _MODEL_PARALLEL_GROUP
assert _MODEL_PARALLEL_GROUP is None, "model parallel group is already initialized"
for ranks in rank_generator.get_ranks("tp-pp"):
group = torch.distributed.new_group(ranks, timeout=timeout, pg_options=get_nccl_options("mp", nccl_comm_cfgs))
if rank in ranks:
_MODEL_PARALLEL_GROUP = group
# Build the tensor model-parallel groups.
global _TENSOR_MODEL_PARALLEL_GROUP
global _TENSOR_MODEL_PARALLEL_GLOBAL_RANKS
assert _TENSOR_MODEL_PARALLEL_GROUP is None, "tensor model parallel group is already initialized"
for ranks in rank_generator.get_ranks("tp"):
group = torch.distributed.new_group(ranks, timeout=timeout, pg_options=get_nccl_options("tp", nccl_comm_cfgs))
if rank in ranks:
_TENSOR_MODEL_PARALLEL_GROUP = group
_TENSOR_MODEL_PARALLEL_GLOBAL_RANKS = ranks
# Build the tensor + context parallel groups.
global _TENSOR_MODEL_PARALLEL_GROUP_WITH_CP
global _TENSOR_MODEL_PARALLEL_GLOBAL_RANKS_WITH_CP
assert (
_TENSOR_MODEL_PARALLEL_GROUP_WITH_CP is None
), "tensor model parallel group with context parallel is already initialized"
for ranks in rank_generator.get_ranks("tp-cp"):
group = torch.distributed.new_group(ranks, timeout=timeout, pg_options=get_nccl_options("tp_cp", nccl_comm_cfgs))
if rank in ranks:
_TENSOR_MODEL_PARALLEL_GROUP_WITH_CP = group
_TENSOR_MODEL_PARALLEL_GLOBAL_RANKS_WITH_CP = ranks
# Build the pipeline model-parallel groups
global _PIPELINE_MODEL_PARALLEL_GROUP
global _PIPELINE_GLOBAL_RANKS
assert _PIPELINE_MODEL_PARALLEL_GROUP is None, "pipeline model parallel group is already initialized"
for ranks in rank_generator.get_ranks("pp"):
group = torch.distributed.new_group(ranks, timeout=timeout, pg_options=get_nccl_options("pp", nccl_comm_cfgs))
if rank in ranks:
_PIPELINE_MODEL_PARALLEL_GROUP = group
_PIPELINE_GLOBAL_RANKS = ranks
# Build the tensor + data parallel groups.
global _TENSOR_AND_DATA_PARALLEL_GROUP
global _TENSOR_AND_DATA_PARALLEL_GROUP_WITH_CP
assert _TENSOR_AND_DATA_PARALLEL_GROUP is None, "Tensor + data parallel group is already initialized"
for ranks in rank_generator.get_ranks("tp-cp-dp"):
group = torch.distributed.new_group(ranks, timeout=timeout, pg_options=get_nccl_options("tp_cp_dp", nccl_comm_cfgs))
if rank in ranks:
_TENSOR_AND_DATA_PARALLEL_GROUP_WITH_CP = group
for ranks in rank_generator.get_ranks("tp-dp"):
group = torch.distributed.new_group(ranks, timeout=timeout, pg_options=get_nccl_options("tp_dp", nccl_comm_cfgs))
if rank in ranks:
_TENSOR_AND_DATA_PARALLEL_GROUP = group
def is_initialized():
"""Useful for code segments that may be accessed with or without mpu initialization"""
return _DATA_PARALLEL_GROUP is not None
def is_unitialized() -> bool:
"""Check if parallel state has been initialized
Deprecated. Use is_initialized instead.
"""
warnings.warn("is_unitialized is deprecated, use is_initialized instead", DeprecationWarning)
return not is_initialized()
def model_parallel_is_initialized():
"""Check if model and data parallel groups are initialized."""
if _TENSOR_MODEL_PARALLEL_GROUP is None or _PIPELINE_MODEL_PARALLEL_GROUP is None or _DATA_PARALLEL_GROUP is None:
return False
return True
def get_model_parallel_group():
"""Get the model parallel group the caller rank belongs to."""
assert _MODEL_PARALLEL_GROUP is not None, "model parallel group is not initialized"
return _MODEL_PARALLEL_GROUP
def get_tp_group(check_initialized=True, with_context_parallel=False):
"""Get the tensor model parallel group the caller rank belongs to."""
if check_initialized:
assert _TENSOR_MODEL_PARALLEL_GROUP is not None, "tensor model parallel group is not initialized"
if with_context_parallel:
assert (
_TENSOR_MODEL_PARALLEL_GROUP_WITH_CP is not None
), "tensor model parallel group with context parallel combined is not initialized"
return _TENSOR_MODEL_PARALLEL_GROUP_WITH_CP
else:
assert _TENSOR_MODEL_PARALLEL_GROUP is not None, "tensor model parallel group is not initialized"
return _TENSOR_MODEL_PARALLEL_GROUP
def get_pp_group():
"""Get the pipeline model parallel group the caller rank belongs to."""
assert _PIPELINE_MODEL_PARALLEL_GROUP is not None, "pipeline_model parallel group is not initialized"
return _PIPELINE_MODEL_PARALLEL_GROUP
def get_dp_group(with_context_parallel=False):
"""Get the data parallel group the caller rank belongs to."""
if with_context_parallel:
assert (
_DATA_PARALLEL_GROUP_WITH_CP is not None
), "data parallel group with context parallel combined is not initialized"
return _DATA_PARALLEL_GROUP_WITH_CP
else:
assert _DATA_PARALLEL_GROUP is not None, "data parallel group is not initialized"
return _DATA_PARALLEL_GROUP
def get_dp_group_gloo(with_context_parallel=False):
"""Get the data parallel group-gloo the caller rank belongs to."""
if with_context_parallel:
assert (
_DATA_PARALLEL_GROUP_WITH_CP_GLOO is not None
), "data parallel group-gloo with context parallel combined is not initialized"
return _DATA_PARALLEL_GROUP_WITH_CP_GLOO
else:
assert _DATA_PARALLEL_GROUP_GLOO is not None, "data parallel group-gloo is not initialized"
return _DATA_PARALLEL_GROUP_GLOO
def get_cp_group(check_initialized=True):
"""Get the context parallel group the caller rank belongs to."""
if check_initialized:
assert _CONTEXT_PARALLEL_GROUP is not None, "context parallel group is not initialized"
return _CONTEXT_PARALLEL_GROUP
def get_tp_world_size(with_context_parallel=False):
"""Return world size for the tensor model parallel group."""
return torch.distributed.get_world_size(group=get_tp_group(with_context_parallel=with_context_parallel))
def get_pp_world_size():
"""Return world size for the pipeline model parallel group."""
return torch.distributed.get_world_size(group=get_pp_group())
def get_tp_rank(with_context_parallel=False):
"""Return my rank for the tensor model parallel group."""
return torch.distributed.get_rank(group=get_tp_group(with_context_parallel=with_context_parallel))
def get_pp_rank():
"""Return my rank for the pipeline model parallel group."""
return torch.distributed.get_rank(group=get_pp_group())
def is_pipeline_first_stage():
"""Return True if in the first pipeline model-parallel stage, False otherwise."""
return get_pp_rank() == 0
def is_pipeline_last_stage():
"""Return True if in the last pipeline model-parallel stage, False otherwise."""
return get_pp_rank() == (get_pp_world_size() - 1)
def get_tensor_model_parallel_src_rank(with_context_parallel=False):
"""Calculate the global rank corresponding to the first local rank
in the tensor model parallel group."""
assert _TENSOR_MODEL_PARALLEL_GLOBAL_RANKS is not None, "Tensor model parallel group is not initialized"
if with_context_parallel:
assert (
_TENSOR_MODEL_PARALLEL_GLOBAL_RANKS_WITH_CP is not None
), "Tensor model parallel group with context parallel combined is not initialized"
return _TENSOR_MODEL_PARALLEL_GLOBAL_RANKS_WITH_CP[0]
else:
return _TENSOR_MODEL_PARALLEL_GLOBAL_RANKS[0]
def get_tensor_model_parallel_ranks(with_context_parallel=False):
"""Return all global ranks for the tensor model parallel group."""
if with_context_parallel:
assert (
_TENSOR_MODEL_PARALLEL_GLOBAL_RANKS_WITH_CP is not None
), "Tensor model parallel group with context parallel combined is not initialized"
return _TENSOR_MODEL_PARALLEL_GLOBAL_RANKS_WITH_CP
else:
assert _TENSOR_MODEL_PARALLEL_GLOBAL_RANKS is not None, "Tensor model parallel group is not initialized"
return _TENSOR_MODEL_PARALLEL_GLOBAL_RANKS
def get_tensor_model_parallel_last_rank(with_context_parallel=False):
"""Calculate the global rank corresponding to the first local rank
in the tensor model parallel group."""
assert _TENSOR_MODEL_PARALLEL_GLOBAL_RANKS is not None, "Tensor model parallel group is not initialized"
if with_context_parallel:
assert (
_TENSOR_MODEL_PARALLEL_GLOBAL_RANKS_WITH_CP is not None
), "Tensor model parallel group with context parallel combined is not initialized"
return _TENSOR_MODEL_PARALLEL_GLOBAL_RANKS_WITH_CP[-1]
else:
return _TENSOR_MODEL_PARALLEL_GLOBAL_RANKS[-1]
def get_pipeline_model_parallel_first_rank():
"""Return the global rank of the first process in the pipeline for the
current tensor parallel group"""
assert _PIPELINE_GLOBAL_RANKS is not None, "Pipeline parallel group is not initialized"
return _PIPELINE_GLOBAL_RANKS[0]
def get_pipeline_model_parallel_last_rank():
"""Return the global rank of the last process in the pipeline for the
current tensor parallel group"""
assert _PIPELINE_GLOBAL_RANKS is not None, "Pipeline parallel group is not initialized"
last_rank_local = get_pp_world_size() - 1
return _PIPELINE_GLOBAL_RANKS[last_rank_local]
def get_pipeline_model_parallel_next_rank():
"""Return the global rank that follows the caller in the pipeline"""
assert _PIPELINE_GLOBAL_RANKS is not None, "Pipeline parallel group is not initialized"
rank_in_pipeline = get_pp_rank()
world_size = get_pp_world_size()
return _PIPELINE_GLOBAL_RANKS[(rank_in_pipeline + 1) % world_size]
def get_pipeline_model_parallel_prev_rank():
"""Return the global rank that preceeds the caller in the pipeline"""
assert _PIPELINE_GLOBAL_RANKS is not None, "Pipeline parallel group is not initialized"
rank_in_pipeline = get_pp_rank()
world_size = get_pp_world_size()
return _PIPELINE_GLOBAL_RANKS[(rank_in_pipeline - 1) % world_size]
def get_dp_world_size(with_context_parallel=False):
"""Return world size for the data parallel group."""
if torch.distributed.is_available() and torch.distributed.is_initialized():
return torch.distributed.get_world_size(group=get_dp_group(with_context_parallel=with_context_parallel))
else:
return 0
def get_dp_rank(with_context_parallel=False):
"""Return my rank for the data parallel group."""
if torch.distributed.is_available() and torch.distributed.is_initialized():
return torch.distributed.get_rank(group=get_dp_group(with_context_parallel=with_context_parallel))
else:
return 0
def get_cp_world_size():
"""Return world size for the context parallel group."""
if torch.distributed.is_available() and torch.distributed.is_initialized():
return torch.distributed.get_world_size(group=get_cp_group())
else:
return 0
def get_cp_rank():
"""Return my rank for the context parallel group."""
if torch.distributed.is_available() and torch.distributed.is_initialized():
return torch.distributed.get_rank(group=get_cp_group())
else:
return 0
def destroy_model_parallel():
"""Set the groups to none."""
global _MODEL_PARALLEL_GROUP
_MODEL_PARALLEL_GROUP = None
global _TENSOR_MODEL_PARALLEL_GROUP
_TENSOR_MODEL_PARALLEL_GROUP = None
global _TENSOR_MODEL_PARALLEL_GROUP_WITH_CP
_TENSOR_MODEL_PARALLEL_GROUP_WITH_CP = None
global _TENSOR_MODEL_PARALLEL_GLOBAL_RANKS_WITH_CP
_TENSOR_MODEL_PARALLEL_GLOBAL_RANKS_WITH_CP = None
global _PIPELINE_MODEL_PARALLEL_GROUP
_PIPELINE_MODEL_PARALLEL_GROUP = None
global _DATA_PARALLEL_GROUP
_DATA_PARALLEL_GROUP = None
global _DATA_PARALLEL_GROUP_GLOO
_DATA_PARALLEL_GROUP_GLOO = None
global _TENSOR_AND_DATA_PARALLEL_GROUP
_TENSOR_AND_DATA_PARALLEL_GROUP = None
global _PIPELINE_GLOBAL_RANKS
_PIPELINE_GLOBAL_RANKS = None
global _DATA_PARALLEL_GLOBAL_RANKS
_DATA_PARALLEL_GLOBAL_RANKS = None
global _TENSOR_MODEL_PARALLEL_GLOBAL_RANKS
_TENSOR_MODEL_PARALLEL_GLOBAL_RANKS = None
global _CONTEXT_PARALLEL_GROUP
_CONTEXT_PARALLEL_GROUP = None
global _CONTEXT_PARALLEL_GLOBAL_RANKS
_CONTEXT_PARALLEL_GLOBAL_RANKS = None
global _DATA_PARALLEL_GROUP_WITH_CP
_DATA_PARALLEL_GROUP_WITH_CP = None
global _DATA_PARALLEL_GROUP_WITH_CP_GLOO
_DATA_PARALLEL_GROUP_WITH_CP_GLOO = None
global _DATA_PARALLEL_GLOBAL_RANKS_WITH_CP
_DATA_PARALLEL_GLOBAL_RANKS_WITH_CP = None
global _TENSOR_AND_DATA_PARALLEL_GROUP_WITH_CP
_TENSOR_AND_DATA_PARALLEL_GROUP_WITH_CP = None