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import os |
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import warnings |
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from dataclasses import dataclass |
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from typing import TYPE_CHECKING, Literal, Optional, Union |
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from accelerate.utils.dataclasses import ( |
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DeepSpeedSequenceParallelConfig, |
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DistributedType, |
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TorchContextParallelConfig, |
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TorchTensorParallelConfig, |
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) |
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from accelerate.utils.versions import is_torch_version |
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if TYPE_CHECKING: |
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from accelerate import Accelerator |
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@dataclass |
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class ParallelismConfig: |
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""" |
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A dataclass to configure parallelisms applied to the model. Inspired by torchtitan's `ParallelDims` |
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https://github.com/pytorch/torchtitan/blob/main/torchtitan/distributed/parallel_dims.py |
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Args: |
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dp_replicate_size (`int`, defaults to `1`): |
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The size of the data parallel group. If `dp_replicate_size` is set to 1, the data parallel replication |
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group will not be used. |
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dp_shard_size (`int`, defaults to `1`): |
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The size of the model shard group. If `dp_replicate_size > 1` and `tp_size > 1`, `dp_shard_size` must also |
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be greater than 1, as composing DDP + TP is currently not supported. |
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tp_size (`int`, defaults to `1`): |
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The size of the tensor parallel group. If `tp_size` is set to `1`, the tensor parallel group will not be |
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used. |
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tp_handler (`~utils.TorchTensorParallelConfig`, defaults to `None`): |
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The handler for the tensor parallel group. |
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cp_size (`int`, defaults to `1`): |
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The size of the context parallel group. Currently not supported, but reserved for future use and enabled |
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for downstream libraries. |
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cp_backend (`str`, defaults to `torch`): |
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Which CP backend to use: `torch` (FSDP2) |
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sp_size (`int`, defaults to `1`): |
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The size of the sequence parallel group. |
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sp_backend (`str`, defaults to `deepspeed`): |
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Which SP backend to use:`deepspeed` (ALST/Ulysses) |
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You may obtain different distributed data parallel paradigms by configuring `dp_replicate_size` and `dp_shard_size` |
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together: |
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- `dp_replicate_size == 1` and `dp_shard_size > 1`, we obtain Fully Sharded Data Parallel (FSDP). |
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- `dp_replicate_size > 1` and `dp_shard_size > 1`, we obtain Hybrid Sharded Data Parallel (HSDP). |
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- `dp_replicate_size > 1` and `dp_shard_size == 1` is an invalid configuration, to use pure DP, use |
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`DistributedDataParallelKwargs` instead. |
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""" |
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dp_replicate_size: Optional[int] = None |
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dp_shard_size: Optional[int] = None |
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tp_size: Optional[int] = None |
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cp_size: Optional[int] = None |
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cp_backend: Literal["torch"] = None |
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sp_size: Optional[int] = None |
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sp_backend: Literal["deepspeed"] = None |
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tp_handler: Union[None, TorchTensorParallelConfig] = None |
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cp_handler: Union[None, TorchContextParallelConfig] = None |
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sp_handler: Union[None, DeepSpeedSequenceParallelConfig] = None |
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device_mesh = None |
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def __repr__(self): |
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return ( |
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"ParallelismConfig(\n " |
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f"\tdp_replicate_size={self.dp_replicate_size},\n" |
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f"\tdp_shard_size={self.dp_shard_size},\n" |
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f"\ttp_size={self.tp_size},\n" |
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f"\tcp_size={self.cp_size},\n" |
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f"\tcp_backend={self.cp_backend},\n" |
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f"\tsp_size={self.sp_size},\n" |
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f"\tsp_backend={self.sp_backend},\n" |
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f"\ttotal_size={self.total_size}\n" |
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f"\ttp_handler={self.tp_handler},\n" |
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f"\tcp_handler={self.cp_handler})\n" |
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) |
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def to_json(self): |
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import copy |
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_non_serializable_fields = ["device_mesh"] |
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copy.deepcopy( |
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{ |
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k: copy.deepcopy(v.__dict__) if hasattr(v, "__dict__") else v |
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for k, v in self.__dict__.items() |
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if k not in _non_serializable_fields |
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} |
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) |
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@property |
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def dp_dim_names(self): |
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"""Names of enabled dimensions across which data parallelism is applied.""" |
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dims = [] |
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if self.dp_replicate_enabled: |
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dims += ["dp_replicate"] |
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if self.dp_shard_enabled: |
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dims += ["dp_shard"] |
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return dims |
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@property |
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def non_dp_dim_names(self): |
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"""Names of enabled dimensions which will receive the same batch (non-data parallel dimensions).""" |
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dims = [] |
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if self.tp_enabled: |
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dims += ["tp"] |
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if self.cp_enabled: |
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dims += ["cp"] |
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if self.sp_enabled: |
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dims += ["sp"] |
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return dims |
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@property |
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def dp_shard_cp_dim_names(self): |
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"""Names of enabled dimensions which will be flattened into a joint mesh across which is model sharded in FSDP.""" |
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dims = [] |
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if self.dp_shard_enabled: |
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dims += ["dp_shard"] |
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if self.cp_enabled: |
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dims += ["cp"] |
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return dims |
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@property |
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def dp_cp_dim_names(self): |
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"""Names of enabled dimensions across which loss should be averaged""" |
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dims = [] |
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if self.dp_replicate_enabled: |
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dims += ["dp_replicate"] |
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if self.dp_shard_enabled: |
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dims += ["dp_shard"] |
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if self.cp_enabled: |
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dims += ["cp"] |
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return dims |
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@property |
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def fsdp_dim_names(self): |
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"""Names of enabled dimensions across which FSDP is applied, including data parallel replication.""" |
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dims = [] |
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if self.dp_replicate_enabled: |
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dims += ["dp_replicate"] |
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dims += ["dp_shard_cp"] |
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return dims |
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@property |
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def total_size(self): |
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"""The total size of the parallelism configuration, which is the product of all sizes.""" |
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return self.dp_replicate_size * self.dp_shard_size * self.tp_size * self.cp_size * self.sp_size |
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@property |
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def non_data_parallel_size(self): |
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"""The size of the non-data parallel dimensions, which is the product of tensor and context parallel sizes.""" |
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return self.tp_size * self.cp_size * self.sp_size |
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@property |
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def data_parallel_size(self): |
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"""The size of the data parallel dimensions, which is the product of data parallel replication and""" |
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return self.dp_replicate_size * self.dp_shard_size |
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@property |
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def dp_replicate_enabled(self): |
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"""True if data parallel replication is enabled, i.e. `dp_replicate_size > 1`.""" |
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return self.dp_replicate_size > 1 |
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@property |
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def dp_shard_enabled(self): |
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"""True if data parallel sharding is enabled, i.e. `dp_shard_size > 1`.""" |
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return self.dp_shard_size > 1 |
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@property |
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def tp_enabled(self): |
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"""True if tensor parallelism is enabled, i.e. `tp_size > 1`.""" |
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return self.tp_size > 1 |
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@property |
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def cp_enabled(self): |
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"""True if context parallelism is enabled, i.e. `cp_size > 1`.""" |
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return self.cp_size > 1 |
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@property |
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def sp_enabled(self): |
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"""True if context parallelism is enabled, i.e. `sp_size > 1`.""" |
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return self.sp_size > 1 |
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@property |
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def active_mesh_dims(self): |
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"""Names of all active mesh dimensions.""" |
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return self.dp_dim_names + self.non_dp_dim_names |
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def build_device_mesh(self, device_type: str): |
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"""Builds a device mesh for the given device type based on the parallelism configuration. |
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This method will also create required joint meshes (e.g. `dp_shard_cp`, `dp_cp`, `dp`). |
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Args: |
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device_type (`str`): The type of device for which to build the mesh, e |
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""" |
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if is_torch_version(">=", "2.2.0"): |
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from torch.distributed.device_mesh import init_device_mesh |
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else: |
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raise RuntimeError("Building a device_mesh requires to have torch>=2.2.0") |
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mesh = self._get_mesh() |
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if len(mesh) == 0: |
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return None |
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mesh_dim_names, mesh_shape = mesh |
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device_mesh = init_device_mesh( |
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device_type, |
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mesh_shape, |
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mesh_dim_names=mesh_dim_names, |
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) |
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if self.dp_dim_names: |
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device_mesh[self.dp_dim_names]._flatten("dp") |
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if self.dp_shard_cp_dim_names: |
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device_mesh[self.dp_shard_cp_dim_names]._flatten("dp_shard_cp") |
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if self.dp_cp_dim_names: |
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device_mesh[self.dp_cp_dim_names]._flatten("dp_cp") |
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return device_mesh |
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def get_device_mesh(self, device_type: Optional[str] = None): |
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if self.device_mesh is None: |
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if device_type is not None: |
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self.device_mesh = self.build_device_mesh(device_type) |
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else: |
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raise ("You need to pass a device_type e.g cuda to build the device mesh") |
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else: |
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if device_type is not None: |
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if self.device_mesh.device_type != device_type: |
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raise ValueError( |
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f"The device_mesh is already created with device type {self.device_mesh.device_type}. However, you are trying to get a device mesh with device_type {device_type}. Please check if you correctly initialized your device_mesh" |
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) |
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return self.device_mesh |
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def _get_mesh(self) -> tuple[tuple[int, ...], tuple[str, ...]]: |
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"""Generate mesh shape and dimension names for torch.distributed.init_device_mesh().""" |
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mesh_dims = {parallelism: self._sizes[parallelism] for parallelism in self.active_mesh_dims} |
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mesh_order = ["dp_replicate", "dp_shard", "cp", "sp", "tp"] |
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sorted_items = sorted( |
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mesh_dims.items(), |
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key=lambda x: (mesh_order.index(x[0])), |
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) |
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return tuple(zip(*sorted_items)) |
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def __post_init__(self): |
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if self.dp_replicate_size is None: |
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self.dp_replicate_size = int(os.environ.get("PARALLELISM_CONFIG_DP_REPLICATE_SIZE", "1")) |
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if self.dp_shard_size is None: |
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self.dp_shard_size = int(os.environ.get("PARALLELISM_CONFIG_DP_SHARD_SIZE", "1")) |
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if self.tp_size is None: |
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self.tp_size = int(os.environ.get("PARALLELISM_CONFIG_TP_SIZE", "1")) |
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if self.cp_size is None: |
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self.cp_size = int(os.environ.get("PARALLELISM_CONFIG_CP_SIZE", "1")) |
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if self.cp_backend is None: |
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self.cp_backend = os.environ.get("PARALLELISM_CONFIG_CP_BACKEND", "torch") |
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if self.sp_size is None: |
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self.sp_size = int(os.environ.get("PARALLELISM_CONFIG_SP_SIZE", "1")) |
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if self.sp_backend is None: |
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self.sp_backend = os.environ.get("PARALLELISM_CONFIG_SP_BACKEND", "deepspeed") |
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if self.tp_size > 1: |
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if self.tp_handler is None: |
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self.tp_handler = TorchTensorParallelConfig() |
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if self.cp_size > 1: |
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if self.cp_handler is None: |
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self.cp_handler = TorchContextParallelConfig() |
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else: |
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cp_backends_config_map = dict( |
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torch=TorchContextParallelConfig, |
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) |
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if not isinstance(self.cp_handler, cp_backends_config_map[self.cp_backend]): |
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raise ValueError( |
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f"ParallelismConfig's cp_backend={self.cp_backend} requires {cp_backends_config_map[self.cp_backend]}, but cp_handler was set to {type(self.cp_handler)}" |
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) |
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if self.sp_size > 1: |
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if self.sp_handler is None: |
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self.sp_handler = DeepSpeedSequenceParallelConfig() |
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if self.dp_replicate_size < 1: |
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raise ValueError(f"dp_replicate_size must be at least 1, but got {self.dp_replicate_size}") |
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if self.dp_shard_size < 1: |
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raise ValueError(f"dp_shard_size must be at least 1, but got {self.dp_shard_size}") |
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if self.tp_size < 1: |
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raise ValueError(f"tp_size must be at least 1, but got {self.tp_size}") |
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if self.cp_size < 1: |
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raise ValueError(f"cp_size must be at least 1, but got {self.cp_size}") |
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valid_cp_backends = ["torch"] |
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if self.cp_backend not in valid_cp_backends: |
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raise ValueError(f"cp_backend must be one of {valid_cp_backends}, but got {self.cp_backend}") |
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if self.sp_size < 1: |
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raise ValueError(f"sp_size must be at least 1, but got {self.sp_size}") |
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valid_sp_backends = ["deepspeed"] |
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if self.sp_backend not in valid_sp_backends: |
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raise ValueError(f"sp_backend must be one of {valid_sp_backends}, but got {self.sp_backend}") |
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if (self.tp_size > 1 or self.cp_size > 1) and self.dp_replicate_size > 1 and self.dp_shard_size == 1: |
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raise ValueError( |
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"Tensor/Context parallelism (tp/cp_size > 1) cannot be used with pure data parallelism (dp_replicate_size > 1 and dp_shard_size == 1). " |
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"Please set dp_shard_size > 1 and dp_replicate_size == 1 to compose FSDP + TP/CP for 2D parallel, " |
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"or set dp_replicate_size == 1 and dp_shard_size > 1 to compose HSDP + TP/CP for 3D parallel." |
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) |
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self._sizes = { |
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"dp_replicate": self.dp_replicate_size, |
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"dp_shard": self.dp_shard_size, |
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"tp": self.tp_size, |
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"cp": self.cp_size, |
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"sp": self.sp_size, |
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} |
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def _set_size(self, parallelism: str, size: int): |
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assert parallelism in self._sizes.keys(), f"Parallelism must be one of {self._sizes.keys()}" |
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self._sizes[parallelism] = size |
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setattr(self, f"{parallelism}_size", size) |
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def _validate_accelerator(self, accelerator: "Accelerator"): |
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_warnings = set() |
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if not accelerator.multi_device and self.total_size == 1: |
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return |
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if self.total_size == 1: |
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self._set_size("dp_replicate", accelerator.num_processes) |
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if self.total_size != accelerator.num_processes: |
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raise ValueError( |
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f"ParallelismConfig total_size ({self.total_size}) does not match " |
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f"num_processes ({accelerator.num_processes}). Please adjust dp_replicate_size/ " |
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f"dp_shard_size/tp_size/cp_size/sp_size." |
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) |
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if self.total_size > 1 and not ( |
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accelerator.is_fsdp2 |
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or accelerator.multi_device |
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or accelerator.distributed_type == DistributedType.DEEPSPEED |
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): |
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raise ValueError( |
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f"ParallelismConfig is only compatible DistributedType.FSDP (version 2) or DistributedType.Multi{{Device}} or DistributedType.DEEPSPEED, but got {accelerator.distributed_type}." |
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) |
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for parallelism, size in self._sizes.items(): |
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if size == 1 and getattr(self, f"{parallelism}_handler", None) is not None: |
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_warnings.add( |
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f"ParallelismConfig.{parallelism}_handler is set, but {parallelism}_size is set to 1. This handler will be ignored." |
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) |
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if _warnings and accelerator.is_main_process: |
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warnings.warn( |
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"ParallelismConfig has the following warnings:\n" + "\n".join(_warnings), |
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UserWarning, |
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) |
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