__init__.py 14 KB

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  1. # Copyright (c) Microsoft Corporation.
  2. # SPDX-License-Identifier: Apache-2.0
  3. # DeepSpeed Team
  4. import sys
  5. import types
  6. import json
  7. from typing import Optional, Union
  8. import torch
  9. from torch.optim import Optimizer
  10. from torch.optim.lr_scheduler import _LRScheduler
  11. from packaging import version as pkg_version
  12. try:
  13. import triton # noqa: F401 # type: ignore
  14. HAS_TRITON = True
  15. except ImportError:
  16. HAS_TRITON = False
  17. from . import ops
  18. from . import module_inject
  19. from .accelerator import get_accelerator
  20. from .runtime.engine import DeepSpeedEngine, DeepSpeedOptimizerCallable, DeepSpeedSchedulerCallable
  21. from .runtime.engine import ADAM_OPTIMIZER, LAMB_OPTIMIZER
  22. from .runtime.hybrid_engine import DeepSpeedHybridEngine
  23. from .runtime.pipe.engine import PipelineEngine
  24. from .inference.engine import InferenceEngine
  25. from .inference.config import DeepSpeedInferenceConfig
  26. from .runtime.lr_schedules import add_tuning_arguments
  27. from .runtime.config import DeepSpeedConfig, DeepSpeedConfigError
  28. from .runtime.activation_checkpointing import checkpointing
  29. from .ops.transformer import DeepSpeedTransformerLayer, DeepSpeedTransformerConfig
  30. from .module_inject import replace_transformer_layer, revert_transformer_layer
  31. from .utils import log_dist, OnDevice, logger
  32. from .comm.comm import init_distributed
  33. from .runtime import zero
  34. from .runtime import DeepSpeedOptimizer, ZeROOptimizer
  35. from .runtime.compiler import is_compile_supported
  36. from .pipe import PipelineModule
  37. from .git_version_info import version, git_hash, git_branch
  38. def _parse_version(version_str):
  39. '''Parse a version string and extract the major, minor, and patch versions.'''
  40. ver = pkg_version.parse(version_str)
  41. return ver.major, ver.minor, ver.micro
  42. # Export version information
  43. __version__ = version
  44. __version_major__, __version_minor__, __version_patch__ = _parse_version(__version__)
  45. __git_hash__ = git_hash
  46. __git_branch__ = git_branch
  47. # Set to torch's distributed package or deepspeed.comm based inside DeepSpeedEngine init
  48. dist = None
  49. def initialize(args=None,
  50. model: torch.nn.Module = None,
  51. optimizer: Optional[Union[Optimizer, DeepSpeedOptimizerCallable]] = None,
  52. model_parameters: Optional[torch.nn.Module] = None,
  53. training_data: Optional[torch.utils.data.Dataset] = None,
  54. lr_scheduler: Optional[Union[_LRScheduler, DeepSpeedSchedulerCallable]] = None,
  55. mpu=None,
  56. dist_init_required: Optional[bool] = None,
  57. collate_fn=None,
  58. config=None,
  59. config_params=None):
  60. """Initialize the DeepSpeed Engine.
  61. Arguments:
  62. args: an object containing local_rank and deepspeed_config fields.
  63. This is optional if `config` is passed.
  64. model: Required: nn.module class before apply any wrappers
  65. optimizer: Optional: a user defined Optimizer or Callable that returns an Optimizer object.
  66. This overrides any optimizer definition in the DeepSpeed json config.
  67. model_parameters: Optional: An iterable of torch.Tensors or dicts.
  68. Specifies what Tensors should be optimized.
  69. training_data: Optional: Dataset of type torch.utils.data.Dataset
  70. lr_scheduler: Optional: Learning Rate Scheduler Object or a Callable that takes an Optimizer and returns a Scheduler object.
  71. The scheduler object should define a get_lr(), step(), state_dict(), and load_state_dict() methods
  72. mpu: Optional: A model parallelism unit object that implements
  73. get_{model,data}_parallel_{rank,group,world_size}()
  74. dist_init_required: Optional: None will auto-initialize torch distributed if needed,
  75. otherwise the user can force it to be initialized or not via boolean.
  76. collate_fn: Optional: Merges a list of samples to form a
  77. mini-batch of Tensor(s). Used when using batched loading from a
  78. map-style dataset.
  79. config: Optional: Instead of requiring args.deepspeed_config you can pass your deepspeed config
  80. as an argument instead, as a path or a dictionary.
  81. config_params: Optional: Same as `config`, kept for backwards compatibility.
  82. Returns:
  83. A tuple of ``engine``, ``optimizer``, ``training_dataloader``, ``lr_scheduler``
  84. * ``engine``: DeepSpeed runtime engine which wraps the client model for distributed training.
  85. * ``optimizer``: Wrapped optimizer if a user defined ``optimizer`` is supplied, or if
  86. optimizer is specified in json config else ``None``.
  87. * ``training_dataloader``: DeepSpeed dataloader if ``training_data`` was supplied,
  88. otherwise ``None``.
  89. * ``lr_scheduler``: Wrapped lr scheduler if user ``lr_scheduler`` is passed, or
  90. if ``lr_scheduler`` specified in JSON configuration. Otherwise ``None``.
  91. """
  92. log_dist("DeepSpeed info: version={}, git-hash={}, git-branch={}".format(__version__, __git_hash__,
  93. __git_branch__),
  94. ranks=[0])
  95. # Disable zero.Init context if it's currently enabled
  96. zero.partition_parameters.shutdown_init_context()
  97. assert model is not None, "deepspeed.initialize requires a model"
  98. global dist
  99. from deepspeed import comm as dist
  100. dist_backend = get_accelerator().communication_backend_name()
  101. dist.init_distributed(dist_backend=dist_backend, dist_init_required=dist_init_required)
  102. # Set config using config_params for backwards compat
  103. if config is None and config_params is not None:
  104. config = config_params
  105. # Check for deepscale_config for backwards compat
  106. if hasattr(args, "deepscale_config") and args.deepscale_config is not None:
  107. logger.warning("************ --deepscale_config is deprecated, please use --deepspeed_config ************")
  108. if hasattr(args, "deepspeed_config"):
  109. assert (args.deepspeed_config is
  110. None), "Not sure how to proceed, we were given both a deepscale_config and deepspeed_config"
  111. args.deepspeed_config = args.deepscale_config
  112. args.deepscale_config = None
  113. # Check that we have only one config passed
  114. if hasattr(args, "deepspeed_config") and args.deepspeed_config is not None:
  115. assert config is None, "Not sure how to proceed, we were given deepspeed configs in the deepspeed arguments and deepspeed.initialize() function call"
  116. config = args.deepspeed_config
  117. assert config is not None, "DeepSpeed requires --deepspeed_config to specify configuration file"
  118. if not isinstance(model, PipelineModule):
  119. config_class = DeepSpeedConfig(config, mpu)
  120. if config_class.hybrid_engine.enabled:
  121. engine = DeepSpeedHybridEngine(args=args,
  122. model=model,
  123. optimizer=optimizer,
  124. model_parameters=model_parameters,
  125. training_data=training_data,
  126. lr_scheduler=lr_scheduler,
  127. mpu=mpu,
  128. dist_init_required=dist_init_required,
  129. collate_fn=collate_fn,
  130. config=config,
  131. config_class=config_class)
  132. else:
  133. engine = DeepSpeedEngine(args=args,
  134. model=model,
  135. optimizer=optimizer,
  136. model_parameters=model_parameters,
  137. training_data=training_data,
  138. lr_scheduler=lr_scheduler,
  139. mpu=mpu,
  140. dist_init_required=dist_init_required,
  141. collate_fn=collate_fn,
  142. config=config,
  143. config_class=config_class)
  144. else:
  145. assert mpu is None, "mpu must be None with pipeline parallelism"
  146. mpu = model.mpu()
  147. config_class = DeepSpeedConfig(config, mpu)
  148. engine = PipelineEngine(args=args,
  149. model=model,
  150. optimizer=optimizer,
  151. model_parameters=model_parameters,
  152. training_data=training_data,
  153. lr_scheduler=lr_scheduler,
  154. mpu=mpu,
  155. dist_init_required=dist_init_required,
  156. collate_fn=collate_fn,
  157. config=config,
  158. config_class=config_class)
  159. # Restore zero.Init context if necessary
  160. zero.partition_parameters.restore_init_context()
  161. return_items = [engine, engine.optimizer, engine.training_dataloader, engine.lr_scheduler]
  162. return tuple(return_items)
  163. def _add_core_arguments(parser):
  164. r"""Helper (internal) function to update an argument parser with an argument group of the core DeepSpeed arguments.
  165. The core set of DeepSpeed arguments include the following:
  166. 1) --deepspeed: boolean flag to enable DeepSpeed
  167. 2) --deepspeed_config <json file path>: path of a json configuration file to configure DeepSpeed runtime.
  168. This is a helper function to the public add_config_arguments()
  169. Arguments:
  170. parser: argument parser
  171. Return:
  172. parser: Updated Parser
  173. """
  174. group = parser.add_argument_group('DeepSpeed', 'DeepSpeed configurations')
  175. group.add_argument('--deepspeed',
  176. default=False,
  177. action='store_true',
  178. help='Enable DeepSpeed (helper flag for user code, no impact on DeepSpeed backend)')
  179. group.add_argument('--deepspeed_config', default=None, type=str, help='DeepSpeed json configuration file.')
  180. group.add_argument('--deepscale',
  181. default=False,
  182. action='store_true',
  183. help='Deprecated enable DeepSpeed (helper flag for user code, no impact on DeepSpeed backend)')
  184. group.add_argument('--deepscale_config',
  185. default=None,
  186. type=str,
  187. help='Deprecated DeepSpeed json configuration file.')
  188. return parser
  189. def add_config_arguments(parser):
  190. r"""Update the argument parser to enabling parsing of DeepSpeed command line arguments.
  191. The set of DeepSpeed arguments include the following:
  192. 1) --deepspeed: boolean flag to enable DeepSpeed
  193. 2) --deepspeed_config <json file path>: path of a json configuration file to configure DeepSpeed runtime.
  194. Arguments:
  195. parser: argument parser
  196. Return:
  197. parser: Updated Parser
  198. """
  199. parser = _add_core_arguments(parser)
  200. return parser
  201. def default_inference_config():
  202. """
  203. Return a default DeepSpeed inference configuration dictionary.
  204. """
  205. return DeepSpeedInferenceConfig().dict()
  206. def init_inference(model, config=None, **kwargs):
  207. """Initialize the DeepSpeed InferenceEngine.
  208. Description: all four cases are valid and supported in DS init_inference() API.
  209. # Case 1: user provides no config and no kwargs. Default config will be used.
  210. .. code-block:: python
  211. generator.model = deepspeed.init_inference(generator.model)
  212. string = generator("DeepSpeed is")
  213. print(string)
  214. # Case 2: user provides a config and no kwargs. User supplied config will be used.
  215. .. code-block:: python
  216. generator.model = deepspeed.init_inference(generator.model, config=config)
  217. string = generator("DeepSpeed is")
  218. print(string)
  219. # Case 3: user provides no config and uses keyword arguments (kwargs) only.
  220. .. code-block:: python
  221. generator.model = deepspeed.init_inference(generator.model,
  222. tensor_parallel={"tp_size": world_size},
  223. dtype=torch.half,
  224. replace_with_kernel_inject=True)
  225. string = generator("DeepSpeed is")
  226. print(string)
  227. # Case 4: user provides config and keyword arguments (kwargs). Both config and kwargs are merged and kwargs take precedence.
  228. .. code-block:: python
  229. generator.model = deepspeed.init_inference(generator.model, config={"dtype": torch.half}, replace_with_kernel_inject=True)
  230. string = generator("DeepSpeed is")
  231. print(string)
  232. Arguments:
  233. model: Required: original nn.module object without any wrappers
  234. config: Optional: instead of arguments, you can pass in a DS inference config dict or path to JSON file
  235. Returns:
  236. A deepspeed.InferenceEngine wrapped model.
  237. """
  238. log_dist("DeepSpeed info: version={}, git-hash={}, git-branch={}".format(__version__, __git_hash__,
  239. __git_branch__),
  240. ranks=[0])
  241. # Load config_dict from config first
  242. if config is None:
  243. config = {}
  244. if isinstance(config, str):
  245. with open(config, "r") as f:
  246. config_dict = json.load(f)
  247. elif isinstance(config, dict):
  248. config_dict = config
  249. else:
  250. raise ValueError(f"'config' argument expected string or dictionary, got {type(config)}")
  251. # Update with values from kwargs, ensuring no conflicting overlap between config and kwargs
  252. overlap_keys = set(config_dict.keys()).intersection(kwargs.keys())
  253. # If there is overlap, error out if values are different
  254. for key in overlap_keys:
  255. if config_dict[key] != kwargs[key]:
  256. raise ValueError(f"Conflicting argument '{key}' in 'config':{config_dict[key]} and kwargs:{kwargs[key]}")
  257. config_dict.update(kwargs)
  258. ds_inference_config = DeepSpeedInferenceConfig(**config_dict)
  259. engine = InferenceEngine(model, config=ds_inference_config)
  260. return engine