You can not select more than 25 topics Topics must start with a letter or number, can include dashes ('-') and can be up to 35 characters long.
ColossalAI/colossalai/tensor/sharding_spec.py

297 lines
11 KiB

This file contains ambiguous Unicode characters!

This file contains ambiguous Unicode characters that may be confused with others in your current locale. If your use case is intentional and legitimate, you can safely ignore this warning. Use the Escape button to highlight these characters.

import operator
from copy import deepcopy
from functools import reduce
import torch
from colossalai.device.device_mesh import DeviceMesh
from .utils import merge_same_dim_mesh_list
__all__ = ['_DimSpec', 'ShardingException', 'ShardingSpec']
ALLGATHER_COST = 20
SHARD_COST = 5
STEP_PENALTY = 6
NAN = 'nan'
class _DimSpec:
'''
Sharding spec for single dimension of the sharded tensor decribe the sharding dimension of
logical device mesh and give a method to compute the difference between them.
This class is used internally in ShardingSpec.
Argument:
shard_list(List[int]): if shard_list is None, the dim spec will be 'R' type.
Otherwise, the element in shard_list means the data will be sharded in that dimension.
'''
def __init__(self, shard_list):
self.is_replica = len(shard_list) == 0
self.shard_list = shard_list
self.build_difference_2d_dict()
def __eq__(self, other):
return str(self) == str(other)
def __repr__(self):
if self.is_replica:
return 'R'
target = 'S'
for dim in self.shard_list:
target += str(dim)
return target
def _convert_str_to_shard_list(self, str_spec):
'''
Conver str_spec into shard_list.
Argument:
str_spec(str): dim spec in str type.
'''
if str_spec == 'R':
return []
if str_spec == 'S0':
return [0]
if str_spec == 'S1':
return [1]
if str_spec == 'S01':
return [0, 1]
def build_difference_2d_dict(self):
'''
Build a difference maping for 2D device mesh case. It will be used to
compute the difference between DimSpec pairs.
'''
source_spec_list = ['R', 'S0', 'S1', 'S01']
target_spec_list = ['R', 'S0', 'S1', 'S01']
difference_dict = {}
for source_spec in source_spec_list:
for target_spec in target_spec_list:
legal_sharding_dims = []
spec_pair = (deepcopy(source_spec), deepcopy(target_spec))
source_shard_list = self._convert_str_to_shard_list(source_spec)
target_shard_list = self._convert_str_to_shard_list(target_spec)
# source same as target
if source_shard_list == target_shard_list:
difference = 0
# all_gather(source) -> target
elif len(source_shard_list
) == len(target_shard_list) + 1 and source_shard_list[:-1] == target_shard_list:
difference = ALLGATHER_COST
# shard(source) -> target
elif len(source_shard_list) == len(
target_shard_list) - 1 and source_shard_list == target_shard_list[:-1] and target_shard_list[
-1] not in source_shard_list:
difference = SHARD_COST
# S1 -> S0 or S0 -> S1
elif len(source_shard_list) == len(target_shard_list):
# source -> R -> target
difference = ALLGATHER_COST + STEP_PENALTY + SHARD_COST
# R -> S01
elif len(source_shard_list) == len(target_shard_list) - 2:
difference = SHARD_COST + STEP_PENALTY + SHARD_COST
# S01 -> R
elif len(source_shard_list) == len(target_shard_list) + 2:
difference = ALLGATHER_COST + STEP_PENALTY + ALLGATHER_COST
# S1 -> S01
elif len(source_shard_list) == len(target_shard_list) - 1:
difference = ALLGATHER_COST + STEP_PENALTY + SHARD_COST + STEP_PENALTY + SHARD_COST
# S01 -> S1
elif len(source_shard_list) == len(target_shard_list) + 1:
difference = ALLGATHER_COST + STEP_PENALTY + ALLGATHER_COST + STEP_PENALTY + SHARD_COST
else:
difference = NAN
difference_dict[spec_pair] = difference
self.difference_dict = difference_dict
def difference(self, other):
'''
The difference between two _DimSpec.
Argument:
other(_DimSpec): the dim spec to compare with.
Return:
difference(int): the difference between two _DimSpec.
Example:
dim_spec = _DimSpec([0])
other_dim_spec = _DimSpec([0, 1])
print(dim_spec.difference(other_dim_spec))
Output:
5
'''
difference = self.difference_dict[(str(self), str(other))]
return difference
class ShardingSpecException(Exception):
pass
class ShardingOutOfIndexError(ShardingSpecException):
pass
class DuplicatedShardingDimensionError(ShardingSpecException):
pass
class ShardingNotDivisibleError(ShardingSpecException):
pass
class ShardingSpec:
'''
Sharding spec for a tensor, it contains info of the logical device mesh this tensor belong
to, the entire shape of the tensor before sharded, and the sharding sequence looks like
[R, R, S0, S1].
Argument:
device_mesh(DeviceMesh): A logical view of a physical mesh.
entire_shape(torch.Size): The entire shape of tensor before sharded.
dim_partition_dict(Dict[int, List[int]] optional): The key is the dimension of tensor to be sharded,
and the value of the key decribe which logical axis will be sharded in that dimension.
sharding_sequence(List[_DimSpec], optional): A straight view of ShardingSpec looks like [R, R, S0, S1].
'''
def __init__(self,
device_mesh: DeviceMesh,
entire_shape: torch.Size,
dim_partition_dict=None,
sharding_sequence=None):
self.device_mesh = device_mesh
if isinstance(entire_shape, (list, tuple)):
entire_shape = torch.Size(entire_shape)
self.entire_shape = entire_shape
self.dim_partition_dict = dim_partition_dict
self.sharding_sequence = sharding_sequence
if self.sharding_sequence is None:
assert self.dim_partition_dict is not None, f'dim_partition_dict should not be None, if sharding_sequence is NoneType object.'
self.dim_partition_dict = merge_same_dim_mesh_list(dim_size=len(entire_shape),
dim_partition_dict=self.dim_partition_dict)
self.convert_dict_to_shard_sequence()
elif self.dim_partition_dict is None:
assert self.sharding_sequence is not None, f'sharding_sequence should not be None, if dim_partition_dict is NoneType object.'
self.convert_shard_sequence_to_dict()
self._sanity_check()
def __repr__(self):
res_list = ["DistSpec:"]
res_list.append(f"\n\tshard_sequence: " + ",".join(str(dimspec) for dimspec in self.sharding_sequence))
res_list.append(f"\n\tdevice_mesh_shape: {self.device_mesh.mesh_shape}")
return ' '.join(res_list)
def _sanity_check(self):
# make sure all axes in logical device mesh only be used once
dim_check_list = list(range(self.device_mesh.logical_mesh_id.dim()))
for dim, shard_list in self.dim_partition_dict.items():
for element in shard_list:
if element in dim_check_list:
dim_check_list.remove(element)
else:
raise DuplicatedShardingDimensionError(
f"find an invalid sharding axis {element} in dim_partition_dict in tensor dimension {dim}.")
# make sure that the dimension is not out of index
for dim in self.dim_partition_dict.keys():
if dim >= len(self.entire_shape):
raise ShardingOutOfIndexError(
f"The dim_partition_dict specifies to shard dimension {dim} but the entire_shape only has {len(self.entire_shape)} dimensions"
)
# make sure that the sharding for a dimension is divisible by the number of devices
for dim, shard_list in self.dim_partition_dict.items():
tensor_dim_size = self.entire_shape[dim]
num_devices = 1
for element in shard_list:
num_devices *= self.device_mesh.mesh_shape[element]
if tensor_dim_size % num_devices != 0:
raise ShardingNotDivisibleError(
f'The size of dimension at index {dim} is {tensor_dim_size}, it cannot be sharded over {num_devices} devices.'
)
def convert_dict_to_shard_sequence(self):
'''
Convert dim_partition_dict into list of _DimSpec, and assign it to sharding_sequence.
'''
sharding_sequence = [_DimSpec([])] * len(self.entire_shape)
for dim, shard_list in self.dim_partition_dict.items():
sharding_sequence[dim] = _DimSpec(shard_list)
self.sharding_sequence = sharding_sequence
def convert_shard_sequence_to_dict(self):
'''
Convert sharding_sequence into dim_partition_dict.
'''
new_dim_partition_dict = {}
for index, dim_spec in enumerate(self.sharding_sequence):
if not dim_spec.is_replica:
if index not in new_dim_partition_dict:
new_dim_partition_dict[index] = []
new_dim_partition_dict[index].extend(dim_spec.shard_list)
self.dim_partition_dict = new_dim_partition_dict
def sharding_sequence_difference(self, other):
'''
This function is a naive version of difference computation. It just simply accumulates difference every dimension between the
pair of sharding sequence.
Example:
dim_partition_dict = {0: [0, 1]}
# DistSpec:
# shard_sequence: S01,R,R
# device_mesh_shape: (4, 4)
sharding_spec = ShardingSpec(device_mesh, entire_shape, dim_partition_dict)
dim_partition_dict_to_compare = {0: [0], 1: [1]}
# DistSpec:
# shard_sequence: S0,S1,R
# device_mesh_shape: (4, 4)
sharding_spec_to_compare = ShardingSpec(device_mesh, entire_shape, dim_partition_dict_to_compare)
print(sharding_spec.sharding_sequence_difference(sharding_spec_to_compare))
Output:
25
Argument:
other(ShardingSpec): The ShardingSpec to compared with.
Return:
difference(int): Difference between two ShardingSpec.
'''
assert len(self.sharding_sequence) == len(
other.sharding_sequence), f'Cannot compare difference for two sharding specs with different length.'
difference = 0
for orig_dim_spec, other_dim_spec in zip(self.sharding_sequence, other.sharding_sequence):
difference += orig_dim_spec.difference(other_dim_spec)
return difference
def get_sharded_shape_per_device(self):
sharded_shape = list(self.entire_shape)
for dim, shard_list in self.dim_partition_dict.items():
mesh_list = [self.device_mesh.mesh_shape[mesh_dim] for mesh_dim in shard_list]
shard_partitions = reduce(operator.mul, mesh_list, 1)
assert sharded_shape[
dim] % shard_partitions == 0, f'Cannot shard dimension {dim} into {shard_partitions} partitions.'
sharded_shape[dim] //= shard_partitions
return torch.Size(sharded_shape)