engine.py 156 KB

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  1. # Copyright (c) Microsoft Corporation.
  2. # SPDX-License-Identifier: Apache-2.0
  3. # DeepSpeed Team
  4. import os
  5. import re
  6. import stat
  7. import torch
  8. import hashlib
  9. from collections import defaultdict, OrderedDict, deque
  10. from shutil import copyfile
  11. import gc
  12. from torch.nn.modules import Module
  13. from torch.nn.parameter import Parameter
  14. from torch.optim import Optimizer
  15. from torch.optim.lr_scheduler import _LRScheduler
  16. from torch._utils import _flatten_dense_tensors, _unflatten_dense_tensors
  17. from typing import Callable, Dict, Union, Iterable
  18. import deepspeed
  19. from deepspeed import comm as dist
  20. from deepspeed.runtime.utils import see_memory_usage, DummyOptim
  21. from .zero.offload_config import OffloadDeviceEnum
  22. from deepspeed.runtime.zero.stage_1_and_2 import DeepSpeedZeroOptimizer
  23. from deepspeed.runtime.zero.partition_parameters import ZeroParamStatus
  24. from deepspeed.runtime.zero.utils import is_zero_supported_optimizer, ZeRORuntimeException
  25. from deepspeed.runtime.zero.parameter_offload import DeepSpeedZeRoOffload
  26. from deepspeed.runtime.zero.config import ZERO_OPTIMIZATION
  27. from deepspeed.runtime.fp16.fused_optimizer import FP16_Optimizer
  28. from deepspeed.runtime.fp16.unfused_optimizer import FP16_UnfusedOptimizer
  29. from deepspeed.runtime.bf16_optimizer import BF16_Optimizer
  30. from deepspeed.runtime.config import DEEPSPEED_OPTIMIZERS, \
  31. ADAGRAD_OPTIMIZER, ADAM_OPTIMIZER, ADAMW_OPTIMIZER, LAMB_OPTIMIZER, ONEBIT_ADAM_OPTIMIZER, ONEBIT_LAMB_OPTIMIZER, \
  32. TORCH_ADAM_PARAM, ADAM_W_MODE, ADAM_W_MODE_DEFAULT, ZERO_ONE_ADAM_OPTIMIZER
  33. from deepspeed.runtime.dataloader import DeepSpeedDataLoader
  34. from deepspeed.runtime.constants import \
  35. ROUTE_TRAIN, ROUTE_PREDICT, ROUTE_EVAL, \
  36. PLD_THETA, PLD_GAMMA, BFLOAT16, FP16, AMP, GRADIENT_ACCUMULATION_STEPS, \
  37. DATA_PARALLEL_GROUP, GLOBAL_RANK
  38. from deepspeed.runtime.zero.config import ZeroStageEnum
  39. from deepspeed.compression import compression_scheduler
  40. from deepspeed.compression.constants import \
  41. WEIGHT_QUANTIZE_IN_FORWARD_ENABLED, \
  42. WEIGHT_QUANTIZATION, SHARED_PARAMETERS, \
  43. WEIGHT_QUANTIZE_ENABLED, \
  44. WEIGHT_QUANTIZE_GROUPS, \
  45. WEIGHT_QUANTIZE_FP16_MIXED_QUANTIZE, \
  46. WEIGHT_QUANTIZE_CHANGE_RATIO, \
  47. WEIGHT_QUANTIZE_TYPE, \
  48. WEIGHT_QUANTIZE_ROUNDING, \
  49. WEIGHT_QUANTIZE_VERBOSE, \
  50. WEIGHT_QUANTIZE_KERNEL
  51. from deepspeed.checkpoint.constants import OPTIMIZER_STATE_DICT, FROZEN_PARAM_FRAGMENTS
  52. from deepspeed.runtime.sparse_tensor import SparseTensor
  53. from deepspeed.runtime import lr_schedules
  54. from deepspeed.utils import groups
  55. from deepspeed.utils import logger, log_dist, instrument_w_nvtx
  56. from deepspeed.utils.timer import NoopTimer, ThroughputTimer, SynchronizedWallClockTimer, \
  57. FORWARD_MICRO_TIMER, BACKWARD_MICRO_TIMER, BACKWARD_INNER_MICRO_TIMER, BACKWARD_REDUCE_MICRO_TIMER, \
  58. STEP_MICRO_TIMER, \
  59. FORWARD_GLOBAL_TIMER, BACKWARD_GLOBAL_TIMER, BACKWARD_INNER_GLOBAL_TIMER, BACKWARD_REDUCE_GLOBAL_TIMER, \
  60. STEP_GLOBAL_TIMER
  61. from deepspeed.utils.debug import debug_extract_module_and_param_names
  62. from deepspeed.monitor.monitor import MonitorMaster
  63. from deepspeed.runtime.progressive_layer_drop import ProgressiveLayerDrop
  64. from deepspeed.runtime.utils import clip_grad_norm_
  65. from deepspeed.runtime.eigenvalue import Eigenvalue
  66. from deepspeed.runtime.data_pipeline.constants import DATA_SAMPLING, \
  67. DATA_ROUTING, DATA_SAMPLING_ENABLED, CURRICULUM_LEARNING, \
  68. CURRICULUM_LEARNING_ENABLED, DATA_SAMPLING_NUM_WORKERS, RANDOM_LTD, \
  69. RANDOM_LTD_ENABLED, RANDOM_LTD_LAYER_ID, RANDOM_LTD_LAYER_NUM, \
  70. RANDOM_LTD_LAYER_TOKEN_LR_SCHEDULE, RANDOM_LTD_LAYER_TOKEN_LR_ENABLED, \
  71. RANDOM_LTD_GLOBAL_BATCH_SIZE, RANDOM_LTD_MICRO_BATCH_SIZE, DATA_EFFICIENCY
  72. from deepspeed.runtime.data_pipeline.curriculum_scheduler import CurriculumScheduler
  73. from deepspeed.runtime.data_pipeline.data_routing.scheduler import RandomLTDScheduler
  74. from deepspeed.runtime.data_pipeline.data_routing.helper import remove_random_ltd_state_dict
  75. from deepspeed.runtime.data_pipeline.data_routing.basic_layer import RandomLayerTokenDrop
  76. from deepspeed.runtime.checkpoint_engine.torch_checkpoint_engine import TorchCheckpointEngine
  77. from .pipe.module import PipelineModule
  78. from .utils import get_ma_status
  79. from ..ops.adam import FusedAdam
  80. from ..moe.sharded_moe import TopKGate, MOELayer
  81. from ..moe.layer import MoE
  82. from ..moe.utils import is_moe_param
  83. from ..git_version_info import version
  84. from deepspeed.profiling.flops_profiler.profiler import FlopsProfiler
  85. from deepspeed.utils.logging import print_json_dist, print_configuration
  86. from deepspeed.accelerator import get_accelerator
  87. from deepspeed.runtime.config import DtypeEnum
  88. MEMORY_OPT_ALLREDUCE_SIZE = 500000000
  89. DeepSpeedOptimizerCallable = \
  90. Callable[[Union[Iterable[Parameter], Dict[str, Iterable]]], Optimizer]
  91. DeepSpeedSchedulerCallable = Callable[[Optimizer], _LRScheduler]
  92. try:
  93. import apex
  94. from apex import amp
  95. APEX_INSTALLED = True
  96. except ImportError:
  97. # Fail silently so we don't spam logs unnecessarily if user isn't using amp
  98. APEX_INSTALLED = False
  99. def split_half_float_double_sparse(tensors):
  100. device_type = get_accelerator().device_name()
  101. supported_types = [
  102. "torch.{}.HalfTensor".format(device_type), "torch.{}.FloatTensor".format(device_type),
  103. "torch.{}.DoubleTensor".format(device_type), "torch.{}.BFloat16Tensor".format(device_type),
  104. SparseTensor.type()
  105. ]
  106. for t in tensors:
  107. assert t.type() in supported_types, f"attempting to reduce an unsupported grad type: {t.type()}"
  108. buckets = []
  109. for i, dtype in enumerate(supported_types):
  110. bucket = [t for t in tensors if t.type() == dtype]
  111. if bucket:
  112. buckets.append((dtype, bucket))
  113. return buckets
  114. class EngineTimers(object):
  115. r"""Wallclock timers for DeepSpeedEngine"""
  116. def __init__(self, enable_micro_timers, enable_global_timers):
  117. self.forward_timers = []
  118. self.backward_timers = []
  119. self.backward_inner_timers = []
  120. self.backward_reduce_timers = []
  121. self.step_timers = []
  122. self.global_timers = []
  123. self.micro_timers = []
  124. if enable_micro_timers:
  125. self.forward_timers += [FORWARD_MICRO_TIMER]
  126. self.backward_timers += [BACKWARD_MICRO_TIMER]
  127. self.backward_inner_timers += [BACKWARD_INNER_MICRO_TIMER]
  128. self.backward_reduce_timers += [BACKWARD_REDUCE_MICRO_TIMER]
  129. self.step_timers += [STEP_MICRO_TIMER]
  130. self.micro_timers += [
  131. FORWARD_MICRO_TIMER, BACKWARD_MICRO_TIMER, BACKWARD_INNER_MICRO_TIMER, BACKWARD_REDUCE_MICRO_TIMER,
  132. STEP_MICRO_TIMER
  133. ]
  134. if enable_global_timers:
  135. self.forward_timers += [FORWARD_GLOBAL_TIMER]
  136. self.backward_timers += [BACKWARD_GLOBAL_TIMER]
  137. self.backward_inner_timers += [BACKWARD_INNER_GLOBAL_TIMER]
  138. self.backward_reduce_timers += [BACKWARD_REDUCE_GLOBAL_TIMER]
  139. self.step_timers += [STEP_GLOBAL_TIMER]
  140. self.global_timers += [
  141. FORWARD_GLOBAL_TIMER, BACKWARD_GLOBAL_TIMER, BACKWARD_INNER_GLOBAL_TIMER, BACKWARD_REDUCE_GLOBAL_TIMER,
  142. STEP_GLOBAL_TIMER
  143. ]
  144. class DeepSpeedEngine(Module):
  145. r"""DeepSpeed engine for training."""
  146. def __init__(
  147. self,
  148. args,
  149. model,
  150. optimizer=None,
  151. model_parameters=None,
  152. training_data=None,
  153. lr_scheduler=None,
  154. mpu=None,
  155. dist_init_required=None,
  156. collate_fn=None,
  157. config=None,
  158. config_class=None,
  159. dont_change_device=False,
  160. ):
  161. super(DeepSpeedEngine, self).__init__()
  162. self.dont_change_device = dont_change_device
  163. self.client_optimizer = optimizer
  164. self.client_lr_scheduler = lr_scheduler
  165. self.training_data = training_data
  166. self.collate_fn = collate_fn
  167. self.mpu = mpu
  168. self.all_to_all_group = None
  169. self.data_parallel_group = None
  170. self.global_steps = 0
  171. self.global_samples = 0
  172. self.micro_steps = 0
  173. self.skipped_steps = 0
  174. self.gradient_average = True
  175. self.warn_unscaled_loss = True
  176. self.config = config
  177. self._config = config_class
  178. self.loaded_checkpoint_mp_world_size = None
  179. self.loaded_checkpoint_dp_world_size = None
  180. self.enable_backward_allreduce = True
  181. self.progressive_layer_drop = None
  182. self.eigenvalue = None
  183. self.block_eigenvalue = None
  184. self.gas_boundary_ctr = 0
  185. self.dist_backend = get_accelerator().communication_backend_name()
  186. self.has_moe_layers = False
  187. self.num_experts = []
  188. self.gate_modules = []
  189. self.moe_layers = []
  190. self._step_applied = False
  191. self._global_grad_norm = None
  192. self.use_ds_comm = False # False --> Use torch.dist, True --> Use ds.comm backend.
  193. self.checkpoint_engine = None
  194. self._is_gradient_accumulation_boundary = None
  195. self.scale_wrt_gas = None
  196. self.losses = 0.0
  197. # for debug purposes - can then debug print: debug_get_module_name(module)
  198. debug_extract_module_and_param_names(model)
  199. # needed for zero_to_fp32 weights reconstruction to remap nameless data to state_dict
  200. self.param_names = {param: name for name, param in model.named_parameters()}
  201. self._do_args_sanity_check(args)
  202. self._configure_with_arguments(args, mpu)
  203. self._do_sanity_check()
  204. see_memory_usage(f"DeepSpeed Engine: After args sanity test", force=self.memory_breakdown())
  205. if mpu is not None:
  206. if self.elasticity_enabled():
  207. if not self.is_elastic_model_parallel_supported():
  208. assert not self.elasticity_enabled(), ("Elasticity is not currently supported"
  209. " with model parallelism.")
  210. self._set_distributed_vars(args)
  211. dist.configure(self._config)
  212. self.monitor = MonitorMaster(self._config.monitor_config)
  213. see_memory_usage(
  214. f"DeepSpeed Engine: Before configure distributed model",
  215. force=self.memory_breakdown(),
  216. )
  217. self.pipeline_parallelism = isinstance(model, PipelineModule)
  218. # Configure distributed model
  219. self._configure_distributed_model(model)
  220. self._get_model_parameters()
  221. see_memory_usage(f"DeepSpeed Engine: After configure distributed model")
  222. # Configure wall clock timers
  223. self.timers = SynchronizedWallClockTimer()
  224. # Throughput timer
  225. self.tput_timer = ThroughputTimer(
  226. batch_size=self.train_batch_size(),
  227. steps_per_output=self.steps_per_print(),
  228. monitor_memory=False,
  229. )
  230. log_dist(f"DeepSpeed Flops Profiler Enabled: {self.flops_profiler_enabled()}", ranks=[0])
  231. if self.flops_profiler_enabled():
  232. self.flops_profiler = FlopsProfiler(self.module, self, self.flops_profiler_recompute_fwd_factor())
  233. if training_data:
  234. self.training_dataloader = self.deepspeed_io(training_data)
  235. else:
  236. self.training_dataloader = None
  237. # Configure optimizer and scheduler
  238. self.optimizer = None
  239. self.basic_optimizer = None
  240. self.lr_scheduler = None
  241. has_optimizer = False
  242. if optimizer or self.optimizer_name():
  243. has_optimizer = True
  244. # If no parameters given by init default to module parameters
  245. if model_parameters is None:
  246. model_parameters = self.module.parameters()
  247. # Convert model parameters from generator to list
  248. if not isinstance(model_parameters, list):
  249. model_parameters = list(model_parameters)
  250. if has_optimizer:
  251. self._configure_optimizer(optimizer, model_parameters)
  252. self._configure_lr_scheduler(lr_scheduler)
  253. self._report_progress(0)
  254. elif self.zero_optimization():
  255. # no optim selected but zero is enabled
  256. self.optimizer = self._configure_zero_optimizer(optimizer=None)
  257. elif self.bfloat16_enabled():
  258. self.optimizer = self._configure_bf16_optimizer(optimizer=None)
  259. # Hook optimizer for snip_momentum pruning
  260. if hasattr(model, 'pruners'):
  261. from ..compression.helper import rewrite_optimizer_step
  262. self.optimizer.pruners = model.pruners
  263. rewrite_optimizer_step(self.optimizer)
  264. # Bookkeeping for sparse support
  265. self.sparse_tensor_module_names = set()
  266. # if self.sparse_gradients_enabled():
  267. for name, module in self.module.named_modules():
  268. if isinstance(module, (torch.nn.Embedding, torch.nn.EmbeddingBag)) and self.sparse_gradients_enabled():
  269. self.sparse_tensor_module_names.add(name + ".weight")
  270. logger.info("Will convert {} to sparse tensor during training".format(name))
  271. self.save_non_zero_checkpoint = False
  272. self.save_zero_checkpoint = False
  273. if not isinstance(self.optimizer, DeepSpeedZeRoOffload):
  274. self._configure_checkpointing(dist_init_required)
  275. if self.eigenvalue_enabled():
  276. self.eigenvalue = self._configure_eigenvalue()
  277. if self.pld_enabled():
  278. self.progressive_layer_drop = self._configure_progressive_layer_drop()
  279. if self.curriculum_enabled_legacy():
  280. self.curriculum_scheduler_legacy = self._configure_curriculum_scheduler_legacy()
  281. if self.random_ltd_enabled():
  282. random_ltd_config = self.random_ltd_config()
  283. random_ltd_config[RANDOM_LTD_GLOBAL_BATCH_SIZE] = self.train_batch_size()
  284. random_ltd_config[RANDOM_LTD_MICRO_BATCH_SIZE] = self.train_micro_batch_size_per_gpu()
  285. self.random_ltd_scheduler = self._configure_random_ltd_scheduler(random_ltd_config)
  286. # Engine timers
  287. self.engine_timers = EngineTimers(enable_micro_timers=self.wall_clock_breakdown(),
  288. enable_global_timers=self.wall_clock_breakdown()
  289. or self.flops_profiler_enabled())
  290. if self.global_rank == 0:
  291. self._config.print("DeepSpeedEngine configuration")
  292. if self.dump_state():
  293. print_configuration(self, "DeepSpeedEngine")
  294. # Use torch (un)flatten ops
  295. self.flatten = _flatten_dense_tensors
  296. self.unflatten = _unflatten_dense_tensors
  297. def destroy(self):
  298. if self.optimizer is not None and hasattr(self.optimizer, 'destroy'):
  299. self.optimizer.destroy()
  300. def _get_model_parameters(self):
  301. if self.autotuning_profile_model_info():
  302. self.autotuning_model_info = {}
  303. num_params = 0
  304. trainable_num_params = 0
  305. for p in self.module.parameters():
  306. # since user code might call deepspeed.zero.Init() before deepspeed.initialize(), need to check the attribute to check if the parameter is partitioned in zero 3 already or not
  307. n = 0
  308. if hasattr(p, "ds_tensor"): # if the parameter is partitioned in zero 3
  309. n += p.ds_numel
  310. else: # if the parameter is not partitioned in zero 3 yet
  311. n += p.numel()
  312. num_params += n
  313. if p.requires_grad:
  314. trainable_num_params += n
  315. if self.global_rank == 0:
  316. self.autotuning_model_info["num_params"] = num_params * self.mp_world_size
  317. self.autotuning_model_info["trainable_num_params"] = trainable_num_params * self.mp_world_size
  318. logger.info(f"model parameter = {num_params}")
  319. def get_batch_info(self):
  320. """Get all training batch related settings.
  321. Returns:
  322. train_batch_size (int): The effective training batch size. This is the amount of data
  323. samples that leads to one step of model update.
  324. train_micro_batch_size_per_gpu (int): Batch size to be processed by one GPU in one
  325. step (without gradient accumulation).
  326. gradient_accumulation_steps (int): Number of training steps to accumulate gradients
  327. before averaging and applying them.
  328. """
  329. return (
  330. self.train_batch_size,
  331. self.train_micro_batch_size_per_gpu,
  332. self.gradient_accumulation_steps,
  333. )
  334. def set_train_batch_size(self, train_batch_size):
  335. """Adjust the global batch size by increasing or decreasing the number of
  336. micro-batches (i.e., gradient accumulation steps). The size of each micro-batch
  337. (i.e., ``train_micro_batch_size_per_gpu``) is not changed.
  338. Args:
  339. train_batch_size (int): The new global batch size for training.
  340. Raises:
  341. ValueError: if ``train_batch_size`` is not divisible by the
  342. configured micro-batch size and data parallelism.
  343. """
  344. if train_batch_size % (self.train_micro_batch_size_per_gpu() * self.dp_world_size) != 0:
  345. #print(f'{train_batch_size=} {self.train_micro_batch_size_per_gpu()=} {self.dp_world_size=}')
  346. raise ValueError(f'Train batch size must be divisible by micro-batch data parallelism')
  347. new_gas = train_batch_size // (self.train_micro_batch_size_per_gpu() * self.dp_world_size)
  348. # overwrite config
  349. self._config.train_batch_size = train_batch_size
  350. self._config.gradient_accumulation_steps = new_gas
  351. def set_train_micro_batch_size(self, micro_batch_size):
  352. """Adjust the micro batch size(i.e., the micro batch size in every data parallel group),
  353. while keep the gradient accumulation steps the same.
  354. Args:
  355. micro_batch_size (int): The new micro batch size for training.
  356. """
  357. # overwrite config
  358. new_global_batch_size = micro_batch_size * self._config.gradient_accumulation_steps * self.dp_world_size
  359. self._config.train_batch_size = new_global_batch_size
  360. self._config.train_micro_batch_size_per_gpu = micro_batch_size
  361. def set_data_post_process_func(self, post_process_func):
  362. if self.training_dataloader is not None:
  363. self.training_dataloader.post_process_func = post_process_func
  364. def set_custom_curriculum_learning_schedule(self, schedule_func_dict):
  365. if self.training_dataloader is not None and self.curriculum_learning_enabled():
  366. self.training_dataloader.data_sampler.set_custom_curriculum_learning_schedule(schedule_func_dict)
  367. def get_global_grad_norm(self) -> float:
  368. """Return the 2-norm of all gradients. If there is model parallelism,
  369. the norm will be global.
  370. The computed norm will be cached and reused until the next step() pass.
  371. .. note::
  372. In the presence of model parallelism, this is a collective call
  373. and acts as a barrier among ``mpu.get_model_parallel_group()``.
  374. Returns:
  375. float: norm
  376. """
  377. return self._global_grad_norm
  378. def __getattr__(self, name):
  379. """
  380. Pass through attributes defined in the model if they are not overridden by ds-engine.
  381. """
  382. _module = {}
  383. if "module" in self.__dict__:
  384. _module = self.__dict__['module']
  385. if name in dir(self):
  386. return getattr(self, name)
  387. elif name in dir(_module):
  388. return getattr(_module, name)
  389. else:
  390. raise AttributeError(f"'{type(self).__name__}' object has no attribute '{name}'")
  391. def checkpoint_tag_validation_enabled(self):
  392. return self._config.checkpoint_tag_validation_enabled
  393. def checkpoint_tag_validation_fail(self):
  394. return self._config.checkpoint_tag_validation_fail
  395. def elasticity_enabled(self):
  396. return self._config.elasticity_enabled
  397. def is_elastic_model_parallel_supported(self):
  398. if self.elasticity_enabled():
  399. # Add code for finding number of GPUs per node automatically
  400. if self._config.num_gpus_per_node % self._config.elastic_model_parallel_size == 0:
  401. return True
  402. else:
  403. return False
  404. def pld_enabled(self):
  405. return self._config.pld_enabled
  406. def pld_params(self):
  407. return self._config.pld_params
  408. def pld_theta(self):
  409. return self.pld_params()[PLD_THETA]
  410. def pld_gamma(self):
  411. return self.pld_params()[PLD_GAMMA]
  412. def eigenvalue_enabled(self):
  413. return self._config.eigenvalue_enabled
  414. def eigenvalue_verbose(self):
  415. return self._config.eigenvalue_verbose
  416. def eigenvalue_max_iter(self):
  417. return self._config.eigenvalue_max_iter
  418. def eigenvalue_tol(self):
  419. return self._config.eigenvalue_tol
  420. def eigenvalue_stability(self):
  421. return self._config.eigenvalue_stability
  422. def eigenvalue_gas_boundary_resolution(self):
  423. return self._config.eigenvalue_gas_boundary_resolution
  424. def eigenvalue_layer_name(self):
  425. return self._config.eigenvalue_layer_name
  426. def eigenvalue_layer_num(self):
  427. return self._config.eigenvalue_layer_num
  428. def curriculum_enabled_legacy(self):
  429. return self._config.curriculum_enabled_legacy
  430. def curriculum_params_legacy(self):
  431. return self._config.curriculum_params_legacy
  432. def data_efficiency_enabled(self):
  433. return self._config.data_efficiency_enabled
  434. def data_efficiency_config(self):
  435. return self._config.data_efficiency_config
  436. def data_sampling_enabled(self):
  437. return self._config.data_efficiency_config[DATA_SAMPLING][DATA_SAMPLING_ENABLED]
  438. def data_sampling_config(self):
  439. return self._config.data_efficiency_config[DATA_SAMPLING]
  440. def curriculum_learning_enabled(self):
  441. return self._config.data_efficiency_config[DATA_SAMPLING][CURRICULUM_LEARNING][CURRICULUM_LEARNING_ENABLED]
  442. def curriculum_learning_config(self):
  443. return self._config.data_efficiency_config[DATA_SAMPLING][CURRICULUM_LEARNING]
  444. def random_ltd_enabled(self):
  445. return self._config.data_efficiency_config[DATA_ROUTING][RANDOM_LTD][RANDOM_LTD_ENABLED]
  446. def random_ltd_config(self):
  447. return self._config.data_efficiency_config[DATA_ROUTING][RANDOM_LTD]
  448. def random_ltd_initialize(self):
  449. assert self.random_ltd_enabled()
  450. random_ltd_config = self.random_ltd_config()
  451. random_ltd_queue = deque([x for x in sorted(random_ltd_config[RANDOM_LTD_LAYER_ID])])
  452. count = 0
  453. for name, layer in self.module.named_modules():
  454. if isinstance(layer, RandomLayerTokenDrop):
  455. if len(random_ltd_queue) != 0 and str(random_ltd_queue[0]) in name: ###[1,2,3]
  456. layer.init_config(random_ltd_config, self.random_ltd_scheduler, count)
  457. random_ltd_queue.popleft()
  458. count += 1
  459. if random_ltd_config[RANDOM_LTD_LAYER_NUM] != count:
  460. raise ValueError(f'random_ltd_layer_num {random_ltd_config[RANDOM_LTD_LAYER_NUM]} must be \
  461. equivalent to the len of random_ltd_layer_id {count}')
  462. if random_ltd_config[RANDOM_LTD_LAYER_TOKEN_LR_SCHEDULE][RANDOM_LTD_LAYER_TOKEN_LR_ENABLED]:
  463. assert self.client_lr_scheduler is None
  464. raise ValueError(f'not yet support')
  465. #self.lr_scheduler = lr_schedules.WarmupLayerTokenDecayLR(self.optimizer, self.random_ltd_scheduler)
  466. def wall_clock_breakdown(self):
  467. return self._config.wall_clock_breakdown
  468. def flops_profiler_enabled(self):
  469. return self._config.flops_profiler_config.enabled or self.autotuning_enabled()
  470. def flops_profiler_recompute_fwd_factor(self):
  471. return self._config.flops_profiler_config.recompute_fwd_factor
  472. def flops_profiler_profile_step(self):
  473. step = self._config.flops_profiler_config.profile_step
  474. if self._config.autotuning_config.enabled:
  475. step = self.autotuning_start_profile_step()
  476. return step
  477. def flops_profiler_module_depth(self):
  478. return self._config.flops_profiler_config.module_depth
  479. def flops_profiler_top_modules(self):
  480. return self._config.flops_profiler_config.top_modules
  481. def flops_profiler_detailed(self):
  482. if self._config.autotuning_config.enabled:
  483. return False
  484. return self._config.flops_profiler_config.detailed
  485. def flops_profiler_output_file(self):
  486. return self._config.flops_profiler_config.output_file
  487. def memory_breakdown(self):
  488. return self._config.memory_breakdown
  489. def autotuning_enabled(self):
  490. return self._config.autotuning_config.enabled
  491. def autotuning_start_profile_step(self):
  492. return self._config.autotuning_config.start_profile_step
  493. def autotuning_end_profile_step(self):
  494. return self._config.autotuning_config.end_profile_step
  495. def autotuning_metric_path(self):
  496. path = self._config.autotuning_config.metric_path
  497. if not path:
  498. path = os.path.join(os.getcwd(), "autotuning_metric.json")
  499. return path
  500. def autotuning_model_info_path(self):
  501. path = self._config.autotuning_config.model_info_path
  502. if not path:
  503. path = os.path.join(os.getcwd(), "autotuning_model_info.json")
  504. return path
  505. def autotuning_metric(self):
  506. return self._config.autotuning_config.metric
  507. def autotuning_profile_model_info(self):
  508. return self.autotuning_enabled(
  509. ) and self._config.autotuning_config.model_info and self._config.autotuning_config.model_info.get(
  510. "profile", False)
  511. def sparse_gradients_enabled(self):
  512. return self._config.sparse_gradients_enabled
  513. def train_batch_size(self):
  514. return self._config.train_batch_size
  515. def train_micro_batch_size_per_gpu(self):
  516. return self._config.train_micro_batch_size_per_gpu
  517. def optimizer_name(self):
  518. return (self.client_optimizer.__class__.__name__ if self.client_optimizer else self._config.optimizer_name)
  519. def optimizer_params(self):
  520. return self._config.optimizer_params
  521. def optimizer_legacy_fusion(self):
  522. return self._config.optimizer_legacy_fusion
  523. def scheduler_name(self):
  524. return self._config.scheduler_name
  525. def scheduler_params(self):
  526. return self._config.scheduler_params
  527. def quantize_training(self):
  528. return (
  529. self._config.compression_config[WEIGHT_QUANTIZATION][SHARED_PARAMETERS]
  530. [WEIGHT_QUANTIZE_IN_FORWARD_ENABLED],
  531. self._config.compression_config[WEIGHT_QUANTIZATION][SHARED_PARAMETERS][WEIGHT_QUANTIZE_ENABLED],
  532. self._config.compression_config[WEIGHT_QUANTIZATION][SHARED_PARAMETERS][WEIGHT_QUANTIZE_GROUPS],
  533. self._config.compression_config[WEIGHT_QUANTIZATION][SHARED_PARAMETERS]
  534. [WEIGHT_QUANTIZE_FP16_MIXED_QUANTIZE],
  535. self._config.compression_config[WEIGHT_QUANTIZATION][SHARED_PARAMETERS][WEIGHT_QUANTIZE_CHANGE_RATIO],
  536. self._config.compression_config[WEIGHT_QUANTIZATION][SHARED_PARAMETERS][WEIGHT_QUANTIZE_TYPE],
  537. self._config.compression_config[WEIGHT_QUANTIZATION][SHARED_PARAMETERS][WEIGHT_QUANTIZE_ROUNDING],
  538. self._config.compression_config[WEIGHT_QUANTIZATION][SHARED_PARAMETERS][WEIGHT_QUANTIZE_VERBOSE],
  539. self._config.compression_config[WEIGHT_QUANTIZATION][SHARED_PARAMETERS][WEIGHT_QUANTIZE_KERNEL],
  540. )
  541. def zero_optimization(self):
  542. return self._config.zero_enabled
  543. def zero_allow_untested_optimizer(self):
  544. return self._config.zero_allow_untested_optimizer
  545. def zero_force_ds_cpu_optimizer(self):
  546. return self._config.zero_force_ds_cpu_optimizer
  547. def zero_reduce_scatter(self):
  548. return self._config.zero_config.reduce_scatter
  549. def zero_overlap_comm(self):
  550. return self._config.zero_config.overlap_comm
  551. def zero_offload_optimizer(self):
  552. return self._config.zero_config.offload_optimizer
  553. def zero_offload_param(self):
  554. return self._config.zero_config.offload_param
  555. def zero_use_cpu_optimizer(self):
  556. if self._config.zero_config.offload_optimizer is not None:
  557. return self._config.zero_config.offload_optimizer.device in [OffloadDeviceEnum.cpu, OffloadDeviceEnum.nvme]
  558. return False
  559. def zero_cpu_offload(self):
  560. if self._config.zero_config.offload_optimizer is not None:
  561. return self._config.zero_config.offload_optimizer.device == OffloadDeviceEnum.cpu
  562. return False
  563. def zero_sub_group_size(self):
  564. return self._config.zero_config.sub_group_size
  565. def zero_optimization_stage(self):
  566. return self._config.zero_optimization_stage
  567. def mics_shard_size(self):
  568. return self._config.mics_shard_size
  569. def zero_reduce_bucket_size(self):
  570. return self._config.zero_config.reduce_bucket_size
  571. def zero_allgather_bucket_size(self):
  572. return self._config.zero_config.allgather_bucket_size
  573. def zero_optimization_partition_gradients(self):
  574. return self.zero_optimization_stage() >= ZeroStageEnum.gradients
  575. def zero_optimization_partition_weights(self):
  576. return self.zero_optimization_stage() >= ZeroStageEnum.weights
  577. def is_first_weights_partition_group(self):
  578. ret = True if self.mics_shard_size() < 0 \
  579. and self.zero_optimization_partition_weights() else False
  580. if self.mics_shard_size() > 0 and self.global_rank < self.mics_shard_size():
  581. ret = True
  582. return ret
  583. def zero_contiguous_gradients(self):
  584. return self._config.zero_config.contiguous_gradients
  585. def zero_load_from_fp32_weights(self):
  586. return self._config.zero_config.load_from_fp32_weights
  587. def zero_elastic_checkpoint(self):
  588. return self._config.zero_config.elastic_checkpoint
  589. def zero_max_live_parameters(self):
  590. return self._config.zero_config.max_live_parameters
  591. def zero_max_reuse_distance(self):
  592. return self._config.zero_config.max_reuse_distance
  593. def zero_prefetch_bucket_size(self):
  594. return self._config.zero_config.prefetch_bucket_size
  595. def zero_param_persistence_threshold(self):
  596. return self._config.zero_config.param_persistence_threshold
  597. def zero_model_persistence_threshold(self):
  598. return self._config.zero_config.model_persistence_threshold
  599. def zero_gather_16bit_weights_on_model_save(self):
  600. return self._config.zero_config.gather_16bit_weights_on_model_save
  601. def zero_grad_hooks(self):
  602. return self._config.zero_config.grad_hooks
  603. def zero_legacy_stage1(self):
  604. return self._config.zero_config.legacy_stage1
  605. def zero_ignore_unused_parameters(self):
  606. return self._config.zero_config.ignore_unused_parameters
  607. def fp16_enabled(self):
  608. return self._config.fp16_enabled
  609. def bfloat16_enabled(self):
  610. return self._config.bfloat16_enabled
  611. def fp16_master_weights_and_gradients(self):
  612. return self._config.fp16_master_weights_and_gradients
  613. def amp_enabled(self):
  614. return self._config.amp_enabled
  615. def amp_params(self):
  616. return self._config.amp_params
  617. def fp16_auto_cast(self):
  618. return self._config.fp16_auto_cast
  619. def loss_scale(self):
  620. return self._config.loss_scale
  621. def gradient_accumulation_steps(self):
  622. return self._config.gradient_accumulation_steps
  623. def use_node_local_storage(self):
  624. return self._config.use_node_local_storage
  625. def load_universal_checkpoint(self):
  626. return self._config.load_universal_checkpoint
  627. @property
  628. def communication_data_type(self):
  629. res = self._config.communication_data_type
  630. if res is not None:
  631. return res
  632. if self.fp16_enabled():
  633. return torch.float16
  634. if self.bfloat16_enabled():
  635. return torch.bfloat16
  636. return torch.float32
  637. def postscale_gradients(self):
  638. return not self._config.prescale_gradients
  639. def gradient_predivide_factor(self):
  640. return self._config.gradient_predivide_factor
  641. def steps_per_print(self):
  642. return self._config.steps_per_print
  643. def zero_allgather_partitions(self):
  644. return self._config.zero_config.allgather_partitions
  645. def zero_round_robin_gradients(self):
  646. return self._config.zero_config.round_robin_gradients
  647. def zero_hpz_partition_size(self):
  648. return self._config.zero_config.zero_hpz_partition_size
  649. def zero_quantized_weights(self):
  650. return self._config.zero_config.zero_quantized_weights
  651. def zero_quantized_gradients(self):
  652. return self._config.zero_config.zero_quantized_gradients
  653. def dump_state(self):
  654. return self._config.dump_state
  655. def gradient_clipping(self):
  656. return self._config.gradient_clipping
  657. def dynamic_loss_scale(self):
  658. return self._config.loss_scale == 0
  659. def initial_dynamic_scale(self):
  660. return self._config.initial_dynamic_scale
  661. def dynamic_loss_scale_args(self):
  662. return self._config.dynamic_loss_scale_args
  663. def swap_tensor_config(self):
  664. return self._config.swap_tensor_config
  665. def aio_config(self):
  666. return self._config.aio_config
  667. def get_data_types(self):
  668. model_dtype = torch.float32
  669. if self.fp16_enabled():
  670. model_dtype = torch.float16
  671. elif self.bfloat16_enabled():
  672. model_dtype = torch.bfloat16
  673. if self._config.grad_accum_dtype is None:
  674. if model_dtype == torch.bfloat16 and not self.zero_optimization():
  675. grad_accum_dtype = torch.float32
  676. else:
  677. grad_accum_dtype = model_dtype
  678. else:
  679. grad_accum_dtype = DtypeEnum(self._config.grad_accum_dtype).value
  680. return (model_dtype, grad_accum_dtype)
  681. def _configure_lr_scheduler(self, client_lr_scheduler):
  682. # First check for scheduler in json configuration
  683. lr_scheduler = self._scheduler_from_config(self.optimizer)
  684. if lr_scheduler:
  685. log_dist(f"DeepSpeed using configured LR scheduler = {self.scheduler_name()}", ranks=[0])
  686. self.lr_scheduler = lr_scheduler
  687. else:
  688. if isinstance(client_lr_scheduler, Callable):
  689. log_dist('DeepSpeed using client callable to create LR scheduler', ranks=[0])
  690. self.lr_scheduler = client_lr_scheduler(self.basic_optimizer)
  691. else:
  692. log_dist('DeepSpeed using client LR scheduler', ranks=[0])
  693. self.lr_scheduler = client_lr_scheduler
  694. log_dist(f'DeepSpeed LR Scheduler = {self.lr_scheduler}', ranks=[0])
  695. def _configure_checkpointing(self, dist_init_required):
  696. self.checkpoint_engine = TorchCheckpointEngine()
  697. if self._config is not None and self._config.nebula_config.enabled:
  698. try:
  699. from deepspeed.runtime.checkpoint_engine.nebula_checkpoint_engine import \
  700. NebulaCheckpointEngine
  701. self.checkpoint_engine = NebulaCheckpointEngine(config_params=self._config.nebula_config)
  702. except ImportError as err:
  703. logger.error(f"No torch_nebula was found! Will fall back to torch.save. Details: {err}")
  704. self.checkpoint_engine = TorchCheckpointEngine()
  705. dp_rank = self.global_rank
  706. if self.mpu:
  707. dp_rank = self.mpu.get_data_parallel_rank()
  708. rank = self.local_rank if self.use_node_local_storage() else dp_rank
  709. # only the first data parallel process needs to store the model checkpoint
  710. # if you want to use node local storage this must be done by rank 0 on each
  711. # node
  712. self.save_non_zero_checkpoint = (rank == 0) or (self.zero_optimization_partition_weights()
  713. and self.is_first_weights_partition_group())
  714. if self.zero_optimization() or self.bfloat16_enabled():
  715. param_rank = dist.get_rank(group=self.optimizer.dp_process_group)
  716. # Only the first parameter parallel process needs to store the
  717. # optimizer state checkpoints for zero
  718. self.save_zero_checkpoint = param_rank == dp_rank
  719. def _scheduler_from_config(self, optimizer):
  720. scheduler_name = self.scheduler_name()
  721. if scheduler_name is not None:
  722. if hasattr(lr_schedules, scheduler_name):
  723. scheduler = getattr(lr_schedules, scheduler_name)
  724. else:
  725. assert hasattr(torch.optim.lr_scheduler,
  726. scheduler_name), f"DeepSpeed does not recognize LR scheduler {scheduler_name}"
  727. scheduler = getattr(torch.optim.lr_scheduler, scheduler_name)
  728. scheduler_params = self.scheduler_params()
  729. instantiated_scheduler = scheduler(optimizer, **scheduler_params)
  730. return instantiated_scheduler
  731. else:
  732. return None
  733. def _set_distributed_vars(self, args):
  734. device_rank = args.device_rank if args is not None and hasattr(args, 'device_rank') else self.local_rank
  735. if device_rank >= 0:
  736. get_accelerator().set_device(device_rank)
  737. self.device = torch.device(get_accelerator().device_name(), device_rank)
  738. self.world_size = dist.get_world_size()
  739. self.global_rank = dist.get_rank()
  740. else:
  741. self.world_size = 1
  742. self.global_rank = 0
  743. self.device = torch.device(get_accelerator().device_name())
  744. # Configure based on command line arguments
  745. def _configure_with_arguments(self, args, mpu):
  746. # After the distributed backend is initialized we are guaranteed the LOCAL_RANK
  747. # environment variable is set. We must align args.local_rank to this value for
  748. # backwards compatibility with scripts relying on [args|self].local_rank containing
  749. # the correct local rank info. _do_args_sanity_check will ensure this is the case.
  750. if "OMPI_COMM_WORLD_LOCAL_RANK" in os.environ:
  751. ompi_local_rank = os.environ.get("OMPI_COMM_WORLD_LOCAL_RANK")
  752. local_rank = os.environ.get('LOCAL_RANK', ompi_local_rank)
  753. assert ompi_local_rank == local_rank, f"LOCAL_RANK ({local_rank}) != OMPI_COMM_WORLD_LOCAL_RANK ({ompi_local_rank}), " \
  754. "not sure how to proceed as we're seeing conflicting local rank info."
  755. os.environ['LOCAL_RANK'] = local_rank
  756. self.local_rank = int(os.environ['LOCAL_RANK'])
  757. if hasattr(args, 'local_rank'):
  758. args.local_rank = self.local_rank
  759. # Validate command line arguments
  760. def _do_args_sanity_check(self, args):
  761. assert "LOCAL_RANK" in os.environ or "OMPI_COMM_WORLD_LOCAL_RANK" in os.environ, "DeepSpeed requires the LOCAL_RANK environment " \
  762. "variable, it is set by the deepspeed launcher, deepspeed.init_distributed, or the torch's launcher. If using a " \
  763. "different launcher please ensure LOCAL_RANK is set prior to initializing deepspeed."
  764. if hasattr(args, 'local_rank') and args.local_rank is not None:
  765. assert isinstance(args.local_rank,
  766. int), f"args.local_rank of {args.local_rank} is an unknown type {type(args.local_rank)}"
  767. if args.local_rank >= 0:
  768. env_local_rank = int(os.environ.get("LOCAL_RANK"))
  769. assert (
  770. env_local_rank == args.local_rank
  771. ), f"Mismatch in local rank setting, args.local_rank={args.local_rank} but env['LOCAL_RANK']={env_local_rank}."
  772. def _is_supported_optimizer(self, optimizer_name):
  773. return (optimizer_name in DEEPSPEED_OPTIMIZERS or getattr(torch.optim, optimizer_name, None) is not None)
  774. def _supported_optims(self):
  775. FairseqOptimizer = None
  776. try:
  777. from fairseq.optim.fairseq_optimizer import FairseqOptimizer
  778. except ImportError:
  779. pass
  780. expected_optim_types = [Optimizer]
  781. if FairseqOptimizer:
  782. # fairseq optims are not torch.optim objects
  783. expected_optim_types.append(FairseqOptimizer)
  784. return expected_optim_types
  785. # Validate configuration based on command line arguments
  786. def _do_sanity_check(self):
  787. expected_optim_types = self._supported_optims()
  788. expected_optim_types += [type(None), Callable]
  789. assert isinstance(self.client_optimizer, tuple(expected_optim_types)), \
  790. f'Client Optimizer is of unexpected type {type(self.client_optimizer)}'
  791. if not self.client_optimizer:
  792. if self.optimizer_name() is not None:
  793. assert self._is_supported_optimizer(
  794. self.optimizer_name()), "{} is not a supported DeepSpeed Optimizer".format(self.optimizer_name())
  795. if (self.optimizer_name() == LAMB_OPTIMIZER or self.optimizer_name() == ONEBIT_LAMB_OPTIMIZER):
  796. assert (self.dynamic_loss_scale()), "DeepSpeed {} optimizer requires dynamic loss scaling".format(
  797. self.optimizer_name())
  798. # Detect invalid combinations of client optimizer and client scheduler
  799. if isinstance(self.client_lr_scheduler, _LRScheduler):
  800. assert isinstance(self.client_optimizer, Optimizer), \
  801. f'Client Optimizer (type = {type(self.client_optimizer)} is not instantiated but Client LR Scheduler is instantiated'
  802. def _broadcast_model(self):
  803. def is_replicated(p):
  804. if hasattr(p, "ds_status") and p.ds_status is not ZeroParamStatus.AVAILABLE:
  805. return False
  806. return True
  807. for p in self.module.parameters():
  808. # Broadcast the model for different parameters
  809. if is_moe_param(p):
  810. if torch.is_tensor(p) and is_replicated(p):
  811. dist.broadcast(p,
  812. groups._get_expert_broadcast_src_rank(p.group_name),
  813. group=self.expert_data_parallel_group[p.group_name])
  814. else:
  815. if torch.is_tensor(p) and is_replicated(p):
  816. dist.broadcast(p, groups._get_broadcast_src_rank(), group=self.data_parallel_group)
  817. @staticmethod
  818. def __check_params(model: Module, dtype: torch.dtype) -> None:
  819. return
  820. if not all(param.dtype == dtype for param in model.parameters()) and dist.get_rank() == 0:
  821. raise ValueError(f"{dtype} is enabled but the following parameters have dtype that is "
  822. f"not {dtype}: "
  823. f"{[(n, p.dtype) for n, p in model.named_parameters() if p.dtype != dtype]}")
  824. def _set_client_model(self, model):
  825. # register client model in _modules so that nn.module methods work correctly
  826. modules = self.__dict__.get('_modules')
  827. modules['module'] = model
  828. # register module attribute in engine but avoid getattr
  829. self.__dict__['module'] = model
  830. def _configure_distributed_model(self, model):
  831. self._set_client_model(model)
  832. is_zero_init_model = self.zero_optimization_partition_weights() and any(
  833. [hasattr(param, "ds_id") for param in self.module.parameters()])
  834. if self.fp16_enabled():
  835. if is_zero_init_model:
  836. self.__check_params(self.module, torch.half)
  837. self.module.half()
  838. elif self.bfloat16_enabled():
  839. if is_zero_init_model:
  840. self.__check_params(self.module, torch.bfloat16)
  841. self.module.bfloat16()
  842. else:
  843. self.__check_params(self.module, torch.float)
  844. # zero.Init() handles device placement of model
  845. if not (self.dont_change_device or is_zero_init_model):
  846. self.module.to(self.device)
  847. # MoE related initialization
  848. for _, module in self.module.named_modules():
  849. if isinstance(module, MoE):
  850. self.has_moe_layers = True
  851. self.num_experts.append(module.num_experts)
  852. if self.has_moe_layers:
  853. for _, module in self.module.named_modules():
  854. if isinstance(module, TopKGate):
  855. self.gate_modules.append(module)
  856. if self.wall_clock_breakdown():
  857. module.wall_clock_breakdown = True
  858. if isinstance(module, MOELayer):
  859. self.moe_layers.append(module)
  860. if self.wall_clock_breakdown():
  861. module.wall_clock_breakdown = True
  862. # Pass the mpu from here to groups. For subsequent use, just query groups
  863. if self.mpu is not None:
  864. groups.mpu = self.mpu
  865. # Set deepspeed parallelism spec. for the model including expert parallelism
  866. for _, module in self.module.named_modules():
  867. if hasattr(module, 'set_deepspeed_parallelism'):
  868. module.set_deepspeed_parallelism()
  869. # Query the groups module to get information about various parallel groups
  870. self.local_all_to_all_group = None
  871. if self.zero_quantized_gradients():
  872. log_dist("Using quantized gradients", ranks=[0])
  873. self.local_all_to_all_group = groups._get_local_all_to_all_group()
  874. self.data_parallel_group = groups._get_data_parallel_group()
  875. self.dp_world_size = groups._get_data_parallel_world_size()
  876. self.mp_world_size = groups._get_model_parallel_world_size()
  877. self.expert_parallel_group = groups._get_expert_parallel_group_dict()
  878. self.expert_data_parallel_group = groups._get_expert_data_parallel_group_dict()
  879. if not (self.amp_enabled() or is_zero_init_model):
  880. self._broadcast_model()
  881. # check if parameters are duplicated in optimizer param_groups
  882. def _check_for_duplicates(self, optimizer):
  883. for name, param in self.module.named_parameters():
  884. param_id = id(param)
  885. def ids_list(group):
  886. return [id(param) for param in group]
  887. occurrence = sum([
  888. ids_list(group['params']).count(param_id) if param_id in ids_list(group['params']) else 0
  889. for group in optimizer.param_groups
  890. ])
  891. assert occurrence <= 1, f"Parameter with name: {name} occurs multiple times in optimizer.param_groups. Make sure it only appears once to prevent undefined behavior."
  892. def _do_optimizer_sanity_check(self, basic_optimizer):
  893. model_dtype, grad_accum_dtype = self.get_data_types()
  894. zero_enabled = self.zero_optimization()
  895. amp_enabled = self.amp_enabled()
  896. # config based assertions
  897. assert (
  898. not (amp_enabled and zero_enabled)
  899. ), "Amp and ZeRO are not currently compatible, please use (legacy) fp16 mode which performs similar to amp opt_mode=O2"
  900. if zero_enabled:
  901. if not is_zero_supported_optimizer(basic_optimizer):
  902. assert (
  903. self.zero_allow_untested_optimizer()
  904. ), 'You are using an untested ZeRO Optimizer. Please add <"zero_allow_untested_optimizer": true> in the configuration file to use it.'
  905. if self.global_rank == 0:
  906. logger.warning("**** You are using ZeRO with an untested optimizer, proceed with caution *****")
  907. if model_dtype == torch.bfloat16 and grad_accum_dtype == torch.float32 and self.zero_optimization_stage(
  908. ) == 1 and not self.zero_cpu_offload():
  909. return BFLOAT16
  910. return ZERO_OPTIMIZATION
  911. elif amp_enabled:
  912. if model_dtype != grad_accum_dtype:
  913. raise NotImplementedError(
  914. "Model data type and gradient accumulation data type must be equal to use Amp")
  915. if model_dtype == torch.bfloat16 or model_dtype == torch.float16:
  916. raise NotImplementedError("Cannot enable both amp with (legacy) fp16 or bfloat16 mode")
  917. try:
  918. logger.info("Initializing Apex amp from: {}".format(amp.__path__))
  919. except NameError:
  920. # If apex/amp is available it will be imported above
  921. raise RuntimeError("Unable to import apex/amp, please make sure it is installed")
  922. return AMP
  923. # data type checks
  924. elif model_dtype == grad_accum_dtype:
  925. if model_dtype == torch.bfloat16:
  926. raise NotImplementedError(
  927. "Bfloat16 wrapper must use a gradient accumulation type of fp32, enable ZeRO to use Bfloat16 gradient accumulation"
  928. )
  929. if model_dtype == torch.float16:
  930. return FP16
  931. # else optimizer_wrapper = None
  932. elif model_dtype == torch.bfloat16 and grad_accum_dtype == torch.float32:
  933. return BFLOAT16
  934. else:
  935. raise NotImplementedError("unsupported mix of model dtype and gradient accumulation type")
  936. return None
  937. # Configure optimizer
  938. def _configure_optimizer(self, client_optimizer, model_parameters):
  939. if client_optimizer is not None:
  940. if isinstance(client_optimizer, tuple(self._supported_optims())):
  941. client_optimizer.param_groups[:] = [
  942. pg for pg in client_optimizer.param_groups if len(pg["params"]) != 0
  943. ]
  944. log_dist("Removing param_group that has no 'params' in the client Optimizer", ranks=[0])
  945. basic_optimizer = client_optimizer
  946. log_dist('Using client Optimizer as basic optimizer', ranks=[0])
  947. else:
  948. basic_optimizer = client_optimizer(model_parameters)
  949. log_dist('Using client callable to create basic optimizer', ranks=[0])
  950. if self.zero_use_cpu_optimizer() and not isinstance(basic_optimizer, deepspeed.ops.adam.DeepSpeedCPUAdam):
  951. if self.zero_force_ds_cpu_optimizer():
  952. msg = f'You are using ZeRO-Offload with a client provided optimizer ({type(basic_optimizer)}) which in most cases will yield poor performance. Please either use deepspeed.ops.adam.DeepSpeedCPUAdam or set an optimizer in your ds-config (https://www.deepspeed.ai/docs/config-json/#optimizer-parameters). If you really want to use a custom optimizer w. ZeRO-Offload and understand the performance impacts you can also set <"zero_force_ds_cpu_optimizer": false> in your configuration file.'
  953. raise ZeRORuntimeException(msg)
  954. else:
  955. basic_optimizer = self._configure_basic_optimizer(model_parameters)
  956. log_dist(f"Using DeepSpeed Optimizer param name {self.optimizer_name()} as basic optimizer", ranks=[0])
  957. self._check_for_duplicates(basic_optimizer)
  958. self.basic_optimizer = basic_optimizer
  959. log_dist("DeepSpeed Basic Optimizer = {}".format(basic_optimizer.__class__.__name__), ranks=[0])
  960. optimizer_wrapper = self._do_optimizer_sanity_check(basic_optimizer)
  961. if optimizer_wrapper == ZERO_OPTIMIZATION:
  962. self.optimizer = self._configure_zero_optimizer(basic_optimizer)
  963. elif optimizer_wrapper == AMP:
  964. amp_params = self.amp_params()
  965. log_dist(f"Initializing AMP with these params: {amp_params}", ranks=[0])
  966. model, self.optimizer = amp.initialize(self.module, basic_optimizer, **amp_params)
  967. self._set_client_model(model)
  968. self._broadcast_model()
  969. # TODO: maybe need to broadcast experts differently?
  970. elif optimizer_wrapper == FP16:
  971. self.optimizer = self._configure_fp16_optimizer(basic_optimizer)
  972. elif optimizer_wrapper == BFLOAT16:
  973. self.optimizer = self._configure_bf16_optimizer(basic_optimizer)
  974. else:
  975. self.optimizer = basic_optimizer
  976. log_dist("DeepSpeed Final Optimizer = {}".format(self.optimizer_name()), ranks=[0])
  977. self.compression_scheduler = self._configure_compression_scheduler()
  978. self.quantizer = self._configure_quantization()
  979. def _configure_basic_optimizer(self, model_parameters):
  980. optimizer_parameters = self.optimizer_params()
  981. if optimizer_parameters is None:
  982. optimizer_parameters = {}
  983. # print(optimizer_parameters.keys())
  984. if "max_grad_norm" in optimizer_parameters.keys():
  985. raise ValueError(
  986. "'max_grad_norm' is not supported as an optimizer parameter, please switch to using the deepspeed parameter 'gradient_clipping' see: https://www.deepspeed.ai/docs/config-json/#gradient-clipping for more details"
  987. )
  988. if self.optimizer_name() in [ADAM_OPTIMIZER, ADAMW_OPTIMIZER]:
  989. torch_adam = optimizer_parameters.pop(TORCH_ADAM_PARAM, False)
  990. adam_w_mode = optimizer_parameters.pop(ADAM_W_MODE, ADAM_W_MODE_DEFAULT)
  991. # Optimizer name of Adam forces AdamW logic unless adam_w_mode is explicitly set
  992. effective_adam_w_mode = self.optimizer_name() == ADAMW_OPTIMIZER or adam_w_mode
  993. if torch_adam:
  994. if not effective_adam_w_mode:
  995. optimizer = torch.optim.Adam(model_parameters, **optimizer_parameters)
  996. else:
  997. optimizer = torch.optim.AdamW(model_parameters, **optimizer_parameters)
  998. else:
  999. if self.zero_use_cpu_optimizer():
  1000. from deepspeed.ops.adam import DeepSpeedCPUAdam
  1001. optimizer = DeepSpeedCPUAdam(model_parameters,
  1002. **optimizer_parameters,
  1003. adamw_mode=effective_adam_w_mode)
  1004. else:
  1005. from deepspeed.ops.adam import FusedAdam
  1006. optimizer = FusedAdam(
  1007. model_parameters,
  1008. **optimizer_parameters,
  1009. adam_w_mode=effective_adam_w_mode,
  1010. )
  1011. elif self.optimizer_name() == ADAGRAD_OPTIMIZER:
  1012. if self.zero_use_cpu_optimizer():
  1013. from deepspeed.ops.adagrad import DeepSpeedCPUAdagrad
  1014. optimizer = DeepSpeedCPUAdagrad(model_parameters, **optimizer_parameters)
  1015. else:
  1016. optimizer = torch.optim.Adagrad(model_parameters, **optimizer_parameters)
  1017. elif self.optimizer_name() == LAMB_OPTIMIZER:
  1018. from deepspeed.ops.lamb import FusedLamb
  1019. optimizer = FusedLamb(model_parameters, **optimizer_parameters)
  1020. elif self.optimizer_name() == ONEBIT_ADAM_OPTIMIZER:
  1021. assert not self.zero_optimization(), "1bit-Adam is not compatible with ZeRO"
  1022. from deepspeed.runtime.fp16.onebit.adam import OnebitAdam
  1023. optimizer = OnebitAdam(model_parameters, self, **optimizer_parameters)
  1024. if not self.fp16_enabled():
  1025. logger.warning(f"Currently the convergence of 1-bit Adam is only verified under FP16")
  1026. elif self.optimizer_name() == ZERO_ONE_ADAM_OPTIMIZER:
  1027. assert not self.zero_optimization(), "0/1 Adam is not compatible with ZeRO"
  1028. from deepspeed.runtime.fp16.onebit.zoadam import ZeroOneAdam
  1029. optimizer = ZeroOneAdam(model_parameters, self, **optimizer_parameters)
  1030. if not self.fp16_enabled():
  1031. logger.warning(f'Currently the convergence of 0/1 Adam is only verified under FP16')
  1032. elif self.optimizer_name() == ONEBIT_LAMB_OPTIMIZER:
  1033. assert not self.zero_optimization(), "1bit-Lamb is not compatible with ZeRO"
  1034. from deepspeed.runtime.fp16.onebit.lamb import OnebitLamb
  1035. optimizer = OnebitLamb(model_parameters, self, **optimizer_parameters)
  1036. if not self.fp16_enabled():
  1037. logger.warning(f"Currently the convergence of 1-bit Lamb is only verified under FP16")
  1038. else:
  1039. torch_optimizer = getattr(torch.optim, self.optimizer_name())
  1040. optimizer = torch_optimizer(model_parameters, **optimizer_parameters)
  1041. return optimizer
  1042. def _configure_compression_scheduler(self):
  1043. return compression_scheduler(self.module, self._config.compression_config)
  1044. def _configure_random_ltd_scheduler(self, configs):
  1045. return RandomLTDScheduler(configs)
  1046. def _configure_quantization(self):
  1047. (
  1048. quantize_weight_in_forward,
  1049. quantize_enabled,
  1050. q_groups,
  1051. q_mixed_fp16,
  1052. q_change_ratio,
  1053. q_type,
  1054. q_rounding,
  1055. q_verbose,
  1056. use_quantizer_kernel,
  1057. ) = self.quantize_training()
  1058. if quantize_enabled and not quantize_weight_in_forward:
  1059. assert self.fp16_enabled(
  1060. ), "MoQ (quantize in optimization step) weight quantization is only supported for FP16"
  1061. quantizer = None
  1062. if quantize_enabled and not quantize_weight_in_forward:
  1063. from deepspeed.runtime.quantize import Quantizer
  1064. quantizer = Quantizer(
  1065. q_groups,
  1066. q_mixed_fp16,
  1067. q_change_ratio,
  1068. q_type,
  1069. q_rounding,
  1070. q_verbose,
  1071. self.eigenvalue_enabled(),
  1072. use_quantizer_kernel,
  1073. self.eigenvalue_layer_num() if self.eigenvalue_enabled() else 0,
  1074. )
  1075. return quantizer
  1076. def _configure_fp16_optimizer(self, optimizer):
  1077. initial_dynamic_scale = self.initial_dynamic_scale()
  1078. dynamic_loss_args = self.dynamic_loss_scale_args()
  1079. clip_grad = self.gradient_clipping()
  1080. if APEX_INSTALLED:
  1081. fused_opts = (apex.optimizers.FusedAdam, FusedAdam)
  1082. else:
  1083. fused_opts = FusedAdam
  1084. if isinstance(optimizer, fused_opts) \
  1085. or self.optimizer_name() in [ONEBIT_ADAM_OPTIMIZER, ZERO_ONE_ADAM_OPTIMIZER]:
  1086. if self.dynamic_loss_scale():
  1087. log_dist(f'Creating fp16 optimizer with dynamic loss scale', ranks=[0])
  1088. timers = self.timers if self.wall_clock_breakdown() else NoopTimer()
  1089. optimizer = FP16_Optimizer(
  1090. optimizer,
  1091. deepspeed=self,
  1092. dynamic_loss_scale=True,
  1093. initial_dynamic_scale=initial_dynamic_scale,
  1094. dynamic_loss_args=dynamic_loss_args,
  1095. mpu=self.mpu,
  1096. clip_grad=clip_grad,
  1097. fused_adam_legacy=self.optimizer_legacy_fusion(),
  1098. timers=timers,
  1099. has_moe_layers=self.has_moe_layers,
  1100. )
  1101. else:
  1102. log_dist(f'Creating fp16 optimizer with static loss scale: {self.loss_scale()}', ranks=[0])
  1103. optimizer = FP16_Optimizer(
  1104. optimizer,
  1105. deepspeed=self,
  1106. static_loss_scale=self.loss_scale(),
  1107. mpu=self.mpu,
  1108. clip_grad=clip_grad,
  1109. fused_adam_legacy=self.optimizer_legacy_fusion(),
  1110. has_moe_layers=self.has_moe_layers,
  1111. )
  1112. else:
  1113. log_dist(f'Creating fp16 unfused optimizer with dynamic loss scale', ranks=[0])
  1114. optimizer = FP16_UnfusedOptimizer(
  1115. optimizer,
  1116. deepspeed=self,
  1117. static_loss_scale=self.loss_scale(),
  1118. dynamic_loss_scale=self.dynamic_loss_scale(),
  1119. dynamic_loss_args=dynamic_loss_args,
  1120. mpu=self.mpu,
  1121. clip_grad=clip_grad,
  1122. fused_lamb_legacy=self.optimizer_name() == LAMB_OPTIMIZER,
  1123. )
  1124. return optimizer
  1125. def _configure_bf16_optimizer(self, optimizer):
  1126. clip_grad = self.gradient_clipping()
  1127. if optimizer is None:
  1128. optimizer = DummyOptim(list(self.module.parameters()))
  1129. log_dist('Creating BF16 optimizer', ranks=[0])
  1130. timers = self.timers if self.wall_clock_breakdown() else NoopTimer()
  1131. optimizer = BF16_Optimizer(optimizer,
  1132. self.param_names,
  1133. mpu=self.mpu,
  1134. clip_grad=clip_grad,
  1135. allgather_bucket_size=self.zero_allgather_bucket_size(),
  1136. dp_process_group=self.data_parallel_group,
  1137. timers=timers)
  1138. return optimizer
  1139. def _configure_zero_optimizer(self, optimizer):
  1140. zero_stage = self.zero_optimization_stage()
  1141. mics_shard_size = self.mics_shard_size()
  1142. model_dtype, gradient_accumulation_dtype = self.get_data_types()
  1143. timers = self.timers if self.wall_clock_breakdown() else NoopTimer()
  1144. if optimizer is None:
  1145. optimizer = DummyOptim(list(self.module.parameters()))
  1146. if self.zero_legacy_stage1():
  1147. raise Exception(
  1148. "The deprecated version of ZeRO Stage 1 is not supported in deepspeed >= 0.5.9. Please downgrade to a version less than 0.5.9 if you need to use this deprecated version of ZeRO."
  1149. )
  1150. if zero_stage <= ZeroStageEnum.gradients:
  1151. overlap_comm = self.zero_overlap_comm()
  1152. contiguous_gradients = self.zero_contiguous_gradients()
  1153. round_robin_gradients = self.zero_round_robin_gradients()
  1154. assert not isinstance(optimizer, DummyOptim), "zero stage {} requires an optimizer".format(zero_stage)
  1155. log_dist(f'Creating {model_dtype} ZeRO stage {zero_stage} optimizer', ranks=[0])
  1156. # Overlap and contiguous grads are meaningless in stage 1 and are ignored
  1157. if zero_stage == ZeroStageEnum.optimizer_states:
  1158. overlap_comm = False
  1159. round_robin_gradients = False
  1160. # Non-MoE requires contiguous grads to be disabled w. stage 1
  1161. if not self.has_moe_layers:
  1162. contiguous_gradients = False
  1163. if isinstance(self.module, PipelineModule):
  1164. if overlap_comm:
  1165. logger.warning("Pipeline parallelism does not support overlapped communication, will be disabled.")
  1166. overlap_comm = False
  1167. optimizer = DeepSpeedZeroOptimizer(
  1168. optimizer,
  1169. self.param_names,
  1170. timers=timers,
  1171. static_loss_scale=self.loss_scale(),
  1172. dynamic_loss_scale=self.dynamic_loss_scale(),
  1173. dynamic_loss_args=self.dynamic_loss_scale_args(),
  1174. clip_grad=self.gradient_clipping(),
  1175. contiguous_gradients=contiguous_gradients,
  1176. reduce_bucket_size=self.zero_reduce_bucket_size(),
  1177. allgather_bucket_size=self.zero_allgather_bucket_size(),
  1178. dp_process_group=self.data_parallel_group,
  1179. expert_parallel_group=self.expert_parallel_group if self.has_moe_layers else None,
  1180. expert_data_parallel_group=self.expert_data_parallel_group if self.has_moe_layers else None,
  1181. reduce_scatter=self.zero_reduce_scatter(),
  1182. overlap_comm=overlap_comm,
  1183. offload_optimizer_config=self.zero_offload_optimizer(),
  1184. mpu=self.mpu,
  1185. postscale_gradients=self.postscale_gradients(),
  1186. gradient_predivide_factor=self.gradient_predivide_factor(),
  1187. gradient_accumulation_steps=self.gradient_accumulation_steps(),
  1188. ignore_unused_parameters=self.zero_ignore_unused_parameters(),
  1189. partition_grads=zero_stage == ZeroStageEnum.gradients,
  1190. round_robin_gradients=round_robin_gradients,
  1191. has_moe_layers=self.has_moe_layers,
  1192. fp16_master_weights_and_gradients=self.fp16_master_weights_and_gradients(),
  1193. gradient_accumulation_dtype=gradient_accumulation_dtype,
  1194. communication_data_type=self.communication_data_type,
  1195. elastic_checkpoint=self.zero_elastic_checkpoint())
  1196. elif zero_stage == ZeroStageEnum.weights:
  1197. assert not self.has_moe_layers, "MoE not supported with Stage 3"
  1198. if isinstance(optimizer, DummyOptim):
  1199. log_dist("Creating ZeRO Offload", ranks=[0])
  1200. zpg = groups._get_zero_param_intra_parallel_group()
  1201. if self.zero_hpz_partition_size() > 1 and zpg is None:
  1202. self._set_zero_group_parallelism()
  1203. zpg = groups._get_zero_param_intra_parallel_group()
  1204. optimizer = DeepSpeedZeRoOffload(self.module,
  1205. timers=timers,
  1206. ds_config=self.config,
  1207. overlap_comm=self.zero_overlap_comm(),
  1208. prefetch_bucket_size=self.zero_prefetch_bucket_size(),
  1209. max_reuse_distance=self.zero_max_reuse_distance(),
  1210. max_live_parameters=self.zero_max_live_parameters(),
  1211. param_persistence_threshold=self.zero_param_persistence_threshold(),
  1212. model_persistence_threshold=self.zero_model_persistence_threshold(),
  1213. offload_param_config=self.zero_offload_param(),
  1214. mpu=self.mpu,
  1215. zero_param_parallel_group=zpg,
  1216. zero_quantized_weights=self.zero_quantized_weights())
  1217. else:
  1218. log_dist(
  1219. f'Creating fp16 ZeRO stage {zero_stage} optimizer,'
  1220. f' MiCS is enabled {mics_shard_size>0},'
  1221. f' Hierarchical params gather {self._config.mics_hierarchial_params_gather}',
  1222. ranks=[0])
  1223. if mics_shard_size > 0:
  1224. return self._return_mics_optimizer(optimizer, timers)
  1225. log_dist(f'Creating {model_dtype} ZeRO stage {zero_stage} optimizer', ranks=[0])
  1226. from deepspeed.runtime.zero.stage3 import DeepSpeedZeroOptimizer_Stage3
  1227. optimizer = DeepSpeedZeroOptimizer_Stage3(
  1228. self.module,
  1229. optimizer,
  1230. timers=timers,
  1231. ds_config=self.config,
  1232. static_loss_scale=self.loss_scale(),
  1233. dynamic_loss_scale=self.dynamic_loss_scale(),
  1234. dynamic_loss_args=self.dynamic_loss_scale_args(),
  1235. clip_grad=self.gradient_clipping(),
  1236. contiguous_gradients=self.zero_contiguous_gradients(),
  1237. reduce_bucket_size=self.zero_reduce_bucket_size(),
  1238. prefetch_bucket_size=self.zero_prefetch_bucket_size(),
  1239. max_reuse_distance=self.zero_max_reuse_distance(),
  1240. max_live_parameters=self.zero_max_live_parameters(),
  1241. param_persistence_threshold=self.zero_param_persistence_threshold(),
  1242. model_persistence_threshold=self.zero_model_persistence_threshold(),
  1243. dp_process_group=self.data_parallel_group,
  1244. all2all_process_group=self.local_all_to_all_group,
  1245. reduce_scatter=self.zero_reduce_scatter(),
  1246. overlap_comm=self.zero_overlap_comm(),
  1247. offload_optimizer_config=self.zero_offload_optimizer(),
  1248. offload_param_config=self.zero_offload_param(),
  1249. sub_group_size=self.zero_sub_group_size(),
  1250. mpu=self.mpu,
  1251. postscale_gradients=self.postscale_gradients(),
  1252. gradient_predivide_factor=self.gradient_predivide_factor(),
  1253. gradient_accumulation_steps=self.gradient_accumulation_steps(),
  1254. aio_config=self.aio_config(),
  1255. gradient_accumulation_dtype=gradient_accumulation_dtype,
  1256. communication_data_type=self.communication_data_type,
  1257. zero_hpz_partition_size=self.zero_hpz_partition_size(),
  1258. zero_quantized_weights=self.zero_quantized_weights())
  1259. else:
  1260. raise NotImplementedError("ZeRO stage {} not implemented".format(zero_stage))
  1261. return optimizer
  1262. def _return_mics_optimizer(self, basic_optimizer, timers):
  1263. from deepspeed.runtime.zero.mics import MiCS_Optimizer
  1264. model_dtype, gradient_accumulation_dtype = self.get_data_types()
  1265. optimizer = MiCS_Optimizer(self.module,
  1266. basic_optimizer,
  1267. timers=timers,
  1268. ds_config=self.config,
  1269. static_loss_scale=self.loss_scale(),
  1270. dynamic_loss_scale=self.dynamic_loss_scale(),
  1271. dynamic_loss_args=self.dynamic_loss_scale_args(),
  1272. clip_grad=self.gradient_clipping(),
  1273. contiguous_gradients=self.zero_contiguous_gradients(),
  1274. reduce_bucket_size=self.zero_reduce_bucket_size(),
  1275. prefetch_bucket_size=self.zero_prefetch_bucket_size(),
  1276. max_reuse_distance=self.zero_max_reuse_distance(),
  1277. max_live_parameters=self.zero_max_live_parameters(),
  1278. param_persistence_threshold=self.zero_param_persistence_threshold(),
  1279. model_persistence_threshold=self.zero_model_persistence_threshold(),
  1280. dp_process_group=self.data_parallel_group,
  1281. reduce_scatter=self.zero_reduce_scatter(),
  1282. overlap_comm=self.zero_overlap_comm(),
  1283. offload_optimizer_config=self.zero_offload_optimizer(),
  1284. offload_param_config=self.zero_offload_param(),
  1285. sub_group_size=self.zero_sub_group_size(),
  1286. mpu=self.mpu,
  1287. postscale_gradients=self.postscale_gradients(),
  1288. gradient_predivide_factor=self.gradient_predivide_factor(),
  1289. gradient_accumulation_steps=self.gradient_accumulation_steps(),
  1290. aio_config=self.aio_config(),
  1291. gradient_accumulation_dtype=gradient_accumulation_dtype,
  1292. communication_data_type=self.communication_data_type)
  1293. return optimizer
  1294. def _configure_eigenvalue(self):
  1295. eigenvalue = Eigenvalue(
  1296. verbose=self.eigenvalue_verbose(),
  1297. max_iter=self.eigenvalue_max_iter(),
  1298. tol=self.eigenvalue_tol(),
  1299. stability=self.eigenvalue_stability(),
  1300. gas_boundary_resolution=self.eigenvalue_gas_boundary_resolution(),
  1301. layer_name=self.eigenvalue_layer_name(),
  1302. layer_num=self.eigenvalue_layer_num(),
  1303. )
  1304. return eigenvalue
  1305. def _configure_progressive_layer_drop(self):
  1306. pld = ProgressiveLayerDrop(theta=self.pld_theta(), gamma=self.pld_gamma())
  1307. return pld
  1308. def _configure_curriculum_scheduler_legacy(self):
  1309. scheduler = CurriculumScheduler(self.curriculum_params_legacy())
  1310. return scheduler
  1311. @staticmethod
  1312. def is_map_style_dataset(obj):
  1313. return hasattr(obj, "__getitem__") and hasattr(obj, "__len__")
  1314. @staticmethod
  1315. def is_iterable_style_dataset(obj):
  1316. return isinstance(obj, torch.utils.data.IterableDataset) # hasattr(obj, "__iter__") should work as well
  1317. def dataloader_drop_last(self):
  1318. return self._config.dataloader_drop_last
  1319. def was_step_applied(self) -> bool:
  1320. """Returns True if the latest ``step()`` produced in parameter updates.
  1321. Note that a ``False`` return is not an error condition. Steps are frequently
  1322. no-ops, such as between gradient accumulation boundaries or when overflows
  1323. occur.
  1324. Returns:
  1325. bool: Whether the latest ``step()`` modified model parameters.
  1326. """
  1327. return self._step_applied
  1328. def deepspeed_io(self,
  1329. dataset,
  1330. batch_size=None,
  1331. route=ROUTE_TRAIN,
  1332. pin_memory=True,
  1333. data_sampler=None,
  1334. collate_fn=None,
  1335. num_local_io_workers=None):
  1336. if not (self.is_map_style_dataset(dataset) or self.is_iterable_style_dataset(dataset)):
  1337. raise ValueError("Training data must be a torch Dataset")
  1338. if batch_size is None:
  1339. batch_size = self.train_micro_batch_size_per_gpu()
  1340. if collate_fn is None:
  1341. collate_fn = self.collate_fn
  1342. # Currently we only use timer in train route
  1343. deepspeed_io_timer = None
  1344. if route == ROUTE_TRAIN:
  1345. deepspeed_io_timer = self.tput_timer
  1346. # If mpu is provided, forward world size and parallel rank to sampler.
  1347. data_parallel_world_size = self.dp_world_size
  1348. data_parallel_rank = self.global_rank
  1349. if self.mpu is not None:
  1350. data_parallel_world_size = self.mpu.get_data_parallel_world_size()
  1351. data_parallel_rank = self.mpu.get_data_parallel_rank()
  1352. if data_sampler is None and (route == ROUTE_PREDICT or route == ROUTE_EVAL):
  1353. data_sampler = torch.utils.data.DistributedSampler(
  1354. dataset,
  1355. num_replicas=data_parallel_world_size,
  1356. rank=data_parallel_rank,
  1357. shuffle=False,
  1358. )
  1359. deepspeed_dataloader_config = {}
  1360. if self.curriculum_learning_enabled():
  1361. deepspeed_dataloader_config = {
  1362. CURRICULUM_LEARNING: self.curriculum_learning_enabled(),
  1363. DATA_EFFICIENCY: self.data_efficiency_config(),
  1364. DATA_PARALLEL_GROUP: self.data_parallel_group,
  1365. GRADIENT_ACCUMULATION_STEPS: self.gradient_accumulation_steps(),
  1366. GLOBAL_RANK: self.global_rank,
  1367. DATA_SAMPLING_NUM_WORKERS: self.data_sampling_config()[DATA_SAMPLING_NUM_WORKERS]
  1368. }
  1369. return DeepSpeedDataLoader(dataset=dataset,
  1370. batch_size=batch_size,
  1371. pin_memory=pin_memory,
  1372. collate_fn=collate_fn,
  1373. local_rank=self.local_rank,
  1374. tput_timer=deepspeed_io_timer,
  1375. num_local_io_workers=num_local_io_workers,
  1376. data_sampler=data_sampler,
  1377. data_parallel_world_size=data_parallel_world_size,
  1378. data_parallel_rank=data_parallel_rank,
  1379. dataloader_drop_last=self.dataloader_drop_last(),
  1380. deepspeed_dataloader_config=deepspeed_dataloader_config)
  1381. def train(self, mode=True):
  1382. r""""""
  1383. self.warn_unscaled_loss = True
  1384. self.module.train(mode)
  1385. def eval(self):
  1386. r""""""
  1387. self.warn_unscaled_loss = True
  1388. self.module.train(False)
  1389. def _scale_loss_by_gas(self, prescaled_loss):
  1390. if isinstance(prescaled_loss, torch.Tensor):
  1391. scaled_loss = prescaled_loss / self.gradient_accumulation_steps()
  1392. elif isinstance(prescaled_loss, tuple) or isinstance(prescaled_loss, list):
  1393. scaled_loss = []
  1394. for l in prescaled_loss:
  1395. if isinstance(l, torch.Tensor):
  1396. scaled_loss.append(l / self.gradient_accumulation_steps())
  1397. else:
  1398. scaled_loss.append(l)
  1399. else:
  1400. scaled_loss = prescaled_loss
  1401. if self.warn_unscaled_loss:
  1402. logger.warning(f"DeepSpeed unable to scale loss because of type: {type(prescaled_loss)}")
  1403. self.warn_unscaled_loss = False
  1404. return scaled_loss
  1405. @instrument_w_nvtx
  1406. def forward(self, *inputs, **kwargs):
  1407. r"""Execute forward propagation
  1408. Arguments:
  1409. *inputs: Variable length input list
  1410. **kwargs: variable length keyword arguments
  1411. """
  1412. if self.autotuning_profile_model_info():
  1413. ma = get_ma_status()
  1414. else:
  1415. see_memory_usage("Engine before forward", force=self.memory_breakdown())
  1416. flops_profiler_active = (self.flops_profiler_enabled()
  1417. and self.global_steps == self.flops_profiler_profile_step() and self.global_rank == 0)
  1418. # used to check quantization happens at step 0!
  1419. if self.global_steps == 0 and hasattr(self, "compression_scheduler"):
  1420. self.compression_scheduler.step(step_zero_check=True)
  1421. if self.quantizer:
  1422. tensor_to_quantize = self.optimizer.bit16_groups if self.zero_optimization_stage(
  1423. ) == 2 else self.optimizer.fp16_groups
  1424. if self.compression_scheduler.weight_quantization_enabled:
  1425. self.quantizer.quantize(
  1426. tensor_to_quantize,
  1427. (self.optimizer.overflow if self.fp16_enabled() else False),
  1428. self.eigenvalue_enabled(),
  1429. None,
  1430. )
  1431. if flops_profiler_active:
  1432. self.flops_profiler.start_profile(ignore_list=None)
  1433. if self.module.training:
  1434. if self.progressive_layer_drop:
  1435. kwargs.update(self.progressive_layer_drop.get_state())
  1436. if self.__class__.__name__ != "PipelineEngine":
  1437. # TODO: The above if condition is a HACK since for PipelineEngine
  1438. # it's difficult to inject argument in forward pass.
  1439. if self.module.training and self.curriculum_enabled_legacy():
  1440. self.curriculum_scheduler_legacy.update_difficulty(self.global_steps + 1)
  1441. if self.curriculum_params_legacy()["curriculum_type"] == "seqlen":
  1442. kwargs.update({"curriculum_seqlen": self.curriculum_scheduler_legacy.get_current_difficulty()})
  1443. if self.module.training and self.random_ltd_enabled():
  1444. self.random_ltd_scheduler.update_seq(self.global_steps)
  1445. if self.zero_optimization_partition_weights():
  1446. # Enable automated discovery of external parameters by indicating that
  1447. # we are in a forward pass.
  1448. for module in self.module.modules():
  1449. module._parameters._in_forward = True
  1450. self._start_timers(self.engine_timers.forward_timers)
  1451. if self.training_dataloader is None:
  1452. self.tput_timer.start()
  1453. if self.fp16_auto_cast():
  1454. inputs = self._cast_inputs_half(inputs)
  1455. loss = self.module(*inputs, **kwargs)
  1456. if self.zero_optimization_partition_weights():
  1457. # Disable automated discovery of external parameters
  1458. for module in self.module.modules():
  1459. module._parameters._in_forward = False
  1460. self._stop_timers(self.engine_timers.forward_timers)
  1461. if flops_profiler_active:
  1462. self.flops_profiler.stop_profile()
  1463. if self.autotuning_profile_model_info():
  1464. activation_mem = get_ma_status() - ma
  1465. self.autotuning_model_info["activation_mem_per_gpu"] = activation_mem
  1466. print_json_dist(self.autotuning_model_info, [0], path=self.autotuning_model_info_path())
  1467. exit()
  1468. else:
  1469. see_memory_usage("Engine after forward", force=self.memory_breakdown())
  1470. return loss
  1471. def _cast_inputs_half(self, inputs):
  1472. if isinstance(inputs, (list, tuple)):
  1473. new_inputs = []
  1474. for v in inputs:
  1475. new_inputs.append(self._cast_inputs_half(v))
  1476. return inputs.__class__(new_inputs)
  1477. elif isinstance(inputs, dict):
  1478. new_inputs = {}
  1479. for k, v in inputs.items():
  1480. new_inputs[k] = self._cast_inputs_half(v)
  1481. return new_inputs
  1482. elif hasattr(inputs, 'half'):
  1483. return inputs.half()
  1484. else:
  1485. return inputs
  1486. def print_forward_breakdown(self, fwd_time):
  1487. gate_time = 0.0
  1488. moe_time = 0.0
  1489. falltoall = 0.0
  1490. salltoall = 0.0
  1491. for gate in self.gate_modules:
  1492. #logger.info(f"Individual TopK gate time: {gate.gate_time:.2f} ms")
  1493. gate_time += gate.gate_time
  1494. for l in self.moe_layers:
  1495. #logger.info(f"MoE layer; total: {l.time_moe:.2f} ms, first alltoall: {l.time_falltoall:.2f}, second alltoall: {l.time_salltoall:.2f}")
  1496. moe_time += l.time_moe
  1497. falltoall += l.time_falltoall
  1498. salltoall += l.time_salltoall
  1499. # TODO: Allreduce/average them across ranks for more accurate timing.
  1500. # if deepspeed.comm.get_rank() == 0:
  1501. log_dist(
  1502. f"time (ms) | fwd: {fwd_time:.2f} (fwd_moe: {moe_time:.2f}, 1st_a2a: {falltoall:.2f}, 2nd_a2a: {salltoall:.2f}, top_k: {gate_time:.2f})",
  1503. ranks=[0])
  1504. @instrument_w_nvtx
  1505. def allreduce_gradients(self, bucket_size=MEMORY_OPT_ALLREDUCE_SIZE):
  1506. assert not (self.bfloat16_enabled() and self.pipeline_parallelism), \
  1507. f'allreduce_gradients() is not valid when bfloat+pipeline_parallelism is enabled'
  1508. # Pass (PP) gas boundary flag to optimizer (required for zero)
  1509. self.optimizer.is_gradient_accumulation_boundary = self.is_gradient_accumulation_boundary()
  1510. # ZeRO stage >= 2 communicates during non gradient accumulation boundaries as well
  1511. if self.zero_optimization_partition_gradients():
  1512. self.optimizer.overlapping_partition_gradients_reduce_epilogue()
  1513. # Communicate only at gradient accumulation boundaries
  1514. elif self.is_gradient_accumulation_boundary():
  1515. if self.zero_optimization_stage() == ZeroStageEnum.optimizer_states and hasattr(
  1516. self.optimizer, 'reduce_gradients'):
  1517. self.optimizer.reduce_gradients(pipeline_parallel=self.pipeline_parallelism)
  1518. else:
  1519. self.buffered_allreduce_fallback(elements_per_buffer=bucket_size)
  1520. @instrument_w_nvtx
  1521. def backward(self, loss, allreduce_gradients=True, release_loss=False, retain_graph=False, scale_wrt_gas=True):
  1522. r"""Execute backward pass on the loss
  1523. Arguments:
  1524. loss: Torch tensor on which to execute backward propagation
  1525. allreduce_gradients: is deprecated, ignored, and will soon be removed'
  1526. retain_graph: bool, default: false
  1527. forward on user defined choice of retain_graph
  1528. """
  1529. see_memory_usage("Engine before backward", force=self.memory_breakdown())
  1530. if self.scale_wrt_gas is not None:
  1531. scale_wrt_gas = self.scale_wrt_gas
  1532. if not allreduce_gradients:
  1533. logger.warning(f"Argument `allreduce_gradients` is deprecated, ignored, and will soon be removed")
  1534. # scale loss w.r.t. gradient accumulation if needed
  1535. if self.gradient_accumulation_steps() > 1 and scale_wrt_gas:
  1536. loss = self._scale_loss_by_gas(loss.float())
  1537. # Log training loss
  1538. self.losses += loss.mean().item()
  1539. if self.monitor.enabled:
  1540. if self.is_gradient_accumulation_boundary():
  1541. if self.global_rank == 0:
  1542. self.summary_events = [(
  1543. f"Train/Samples/train_loss",
  1544. self.losses,
  1545. self.global_samples,
  1546. )]
  1547. self.monitor.write_events(self.summary_events)
  1548. self._start_timers(self.engine_timers.backward_timers)
  1549. assert self.optimizer is not None and not isinstance(self.optimizer, DummyOptim), \
  1550. "must provide optimizer during init in order to use backward"
  1551. self._start_timers(self.engine_timers.backward_inner_timers)
  1552. if self.zero_optimization():
  1553. self.optimizer.is_gradient_accumulation_boundary = self.is_gradient_accumulation_boundary()
  1554. self.optimizer.backward(loss, retain_graph=retain_graph)
  1555. elif self.amp_enabled():
  1556. # AMP requires delaying unscale when inside gradient accumulation boundaries
  1557. # https://nvidia.github.io/apex/advanced.html#gradient-accumulation-across-iterations
  1558. delay_unscale = not self.is_gradient_accumulation_boundary()
  1559. with amp.scale_loss(loss, self.optimizer, delay_unscale=delay_unscale) as scaled_loss:
  1560. scaled_loss.backward(retain_graph=retain_graph)
  1561. elif self.fp16_enabled():
  1562. if self.eigenvalue_enabled():
  1563. self.optimizer.backward(loss, create_graph=True, retain_graph=True)
  1564. else:
  1565. self.optimizer.backward(loss, retain_graph=retain_graph)
  1566. elif self.bfloat16_enabled():
  1567. self.optimizer.backward(loss)
  1568. else:
  1569. if self.eigenvalue_enabled():
  1570. loss.backward(create_graph=True, retain_graph=True)
  1571. else:
  1572. loss.backward(retain_graph=retain_graph)
  1573. self._stop_timers(self.engine_timers.backward_inner_timers)
  1574. self._start_timers(self.engine_timers.backward_reduce_timers)
  1575. if allreduce_gradients and self.enable_backward_allreduce:
  1576. # Traditional code path that allreduces the module parameter grads
  1577. self.allreduce_gradients()
  1578. self._stop_timers(self.engine_timers.backward_reduce_timers)
  1579. self._stop_timers(self.engine_timers.backward_timers)
  1580. if release_loss:
  1581. # loss.data = None
  1582. pass
  1583. see_memory_usage("Engine after backward", force=self.memory_breakdown())
  1584. return loss
  1585. def is_gradient_accumulation_boundary(self):
  1586. """
  1587. Query whether the current micro-batch is at the boundary of
  1588. gradient accumulation, and thus will trigger gradient reductions and
  1589. an optimizer step.
  1590. Returns:
  1591. bool: if the current step is a gradient accumulation boundary.
  1592. """
  1593. if self._is_gradient_accumulation_boundary is None:
  1594. return (self.micro_steps + 1) % \
  1595. self.gradient_accumulation_steps() == 0
  1596. else:
  1597. return self._is_gradient_accumulation_boundary
  1598. def set_gradient_accumulation_boundary(self, is_boundary):
  1599. """
  1600. Manually overrides the DeepSpeed engine's gradient accumulation boundary state, this is an optional
  1601. feature and should be used with care. The state should be set before to the intended
  1602. value before each forward/backward. The final forward/backward should have the
  1603. boundary state set to True. This style allows client code to only call engine.step() once after all
  1604. the gradient accumulation passes are complete. See example below:
  1605. .. code-block:: python
  1606. engine.set_gradient_accumulation_boundary(False)
  1607. for _ in range(gradient_accumulation_steps - 1):
  1608. micro_batch = next(data_loader)
  1609. loss = engine(micro_batch)
  1610. engine.backward(loss)
  1611. engine.set_gradient_accumulation_boundary(True)
  1612. micro_batch = next(data_loader)
  1613. loss = engine(micro_batch)
  1614. engine.backward(loss)
  1615. engine.step()
  1616. Arguments:
  1617. is_boundary (bool): are we at a gradient accumulation boundary or not?
  1618. """
  1619. self._is_gradient_accumulation_boundary = is_boundary
  1620. self.optimizer.is_gradient_accumulation_boundary = is_boundary
  1621. def zero_grad(self):
  1622. """
  1623. Zero parameter grads.
  1624. """
  1625. for param_name, param in self.module.named_parameters():
  1626. param.grad = None
  1627. def clip_fp32_gradients(self):
  1628. clip_grad_norm_(parameters=self.module.parameters(), max_norm=self.gradient_clipping(), mpu=self.mpu)
  1629. def _take_model_step(self, lr_kwargs, block_eigenvalue={}):
  1630. if self.gradient_clipping() > 0.0:
  1631. if not (self.fp16_enabled() or self.bfloat16_enabled() or self.amp_enabled() or self.zero_optimization()):
  1632. self.clip_fp32_gradients()
  1633. elif self.amp_enabled():
  1634. # AMP's recommended way of doing clipping
  1635. # https://nvidia.github.io/apex/advanced.html#gradient-clipping
  1636. master_params = amp.master_params(self.optimizer)
  1637. clip_grad_norm_(parameters=master_params, max_norm=self.gradient_clipping(), mpu=self.mpu)
  1638. self.optimizer.step()
  1639. if hasattr(self.optimizer, '_global_grad_norm'):
  1640. self._global_grad_norm = self.optimizer._global_grad_norm
  1641. # Quantize the updated parameter if there is no overflow
  1642. if self.quantizer:
  1643. tensor_to_quantize = self.optimizer.bit16_groups if self.zero_optimization_stage(
  1644. ) == 2 else self.optimizer.fp16_groups
  1645. if self.compression_scheduler.weight_quantization_enabled:
  1646. self.quantizer.quantize(
  1647. tensor_to_quantize,
  1648. (self.optimizer.overflow if self.fp16_enabled() else False),
  1649. self.eigenvalue_enabled(),
  1650. block_eigenvalue,
  1651. )
  1652. # zero grad in basic optimizer could be unreliable and may not exhibit
  1653. # the behavior that we want
  1654. if self.bfloat16_enabled():
  1655. # TODO: Temporary until bf16_optimizer and zero_optimizer are integrated
  1656. if self.zero_optimization() and hasattr(self.optimizer, "zero_grad"):
  1657. self.optimizer.zero_grad()
  1658. else:
  1659. pass
  1660. elif self.zero_optimization() or self.fp16_enabled() or self.amp_enabled():
  1661. self.optimizer.zero_grad()
  1662. else:
  1663. self.zero_grad()
  1664. report_progress = self.global_rank == 0 if self.global_rank else True
  1665. # Check overflow here since in DS fp16 optimizer, the overflow is updated in above step() function.
  1666. overflow = False
  1667. if hasattr(self.optimizer, "overflow"):
  1668. overflow = self.optimizer.overflow
  1669. self._step_applied = not overflow
  1670. if overflow:
  1671. self.skipped_steps += 1
  1672. else:
  1673. self.compression_scheduler.step()
  1674. if self.lr_scheduler is not None:
  1675. try:
  1676. self.lr_scheduler.step(**(lr_kwargs or {}))
  1677. except TypeError:
  1678. # XXX Hack to work with Megatron 2.0 and DeepSpeed pipelines.
  1679. # We don't currently have a way to specify lr_kwargs from
  1680. # pipe_engine.train_batch()
  1681. self.lr_scheduler.step(increment=self.train_batch_size())
  1682. if report_progress and (self.global_steps + 1) % self.steps_per_print() == 0:
  1683. self._report_progress(self.global_steps + 1)
  1684. self.losses = 0.0
  1685. self.global_steps += 1
  1686. self.global_samples += self.train_batch_size()
  1687. def step(self, lr_kwargs=None):
  1688. r"""Execute the weight update step after forward and backward propagation
  1689. on effective_train_batch.
  1690. """
  1691. see_memory_usage("Engine before step", force=self.memory_breakdown())
  1692. # Check early because self.global_steps is incremented at some point here.
  1693. # TODO: Delay self.global_steps increment until very end of this function.
  1694. flops_profiler_active = self.flops_profiler_enabled(
  1695. ) and self.global_steps == self.flops_profiler_profile_step() and self.global_rank == 0
  1696. self._start_timers(self.engine_timers.step_timers)
  1697. assert self.optimizer is not None and not isinstance(self.optimizer, DummyOptim), \
  1698. "must provide optimizer during init in order to use step"
  1699. report_progress = False
  1700. self._step_applied = False # assume False, will flip to True
  1701. # Update the model when we reach gradient accumulation boundaries
  1702. if self.is_gradient_accumulation_boundary():
  1703. self.gas_boundary_ctr += 1
  1704. if (self.eigenvalue_enabled() and (self.gas_boundary_ctr % self.eigenvalue_gas_boundary_resolution() == 0)
  1705. and self.quantizer.any_precision_switch()):
  1706. log_dist(f"computing eigenvalue...", ranks=[0])
  1707. self.block_eigenvalue = self.eigenvalue.compute_eigenvalue(self.module, self.device,
  1708. self.optimizer.cur_scale)
  1709. if self.progressive_layer_drop:
  1710. self.progressive_layer_drop.update_state(self.global_steps)
  1711. if (self.eigenvalue_enabled() and not self.gas_boundary_ctr % self.eigenvalue_gas_boundary_resolution()
  1712. and self.quantizer.any_precision_switch()):
  1713. self._take_model_step(lr_kwargs, self.block_eigenvalue)
  1714. else:
  1715. self._take_model_step(lr_kwargs)
  1716. report_progress = self.global_rank == 0 if self.global_rank else True
  1717. self.tput_timer.stop(global_step=self.is_gradient_accumulation_boundary(), report_speed=report_progress)
  1718. self._stop_timers(self.engine_timers.step_timers)
  1719. # Log learning rate
  1720. if self.monitor.enabled:
  1721. if self.is_gradient_accumulation_boundary():
  1722. if self.global_rank == 0:
  1723. self.summary_events = [(f"Train/Samples/lr", self.get_lr()[0], self.global_samples)]
  1724. if self.fp16_enabled() and hasattr(self.optimizer, "cur_scale"):
  1725. self.summary_events.append((
  1726. f"Train/Samples/loss_scale",
  1727. self.optimizer.cur_scale,
  1728. self.global_samples,
  1729. ))
  1730. if (self.eigenvalue_enabled()
  1731. and not self.gas_boundary_ctr % self.eigenvalue_gas_boundary_resolution()):
  1732. ev_values = self.block_eigenvalue.values()
  1733. for i in range(len(ev_values)):
  1734. self.summary_events.append((
  1735. f"Train/Eigenvalues/ModelBlockParam_{i}",
  1736. self.ev_values[i][0],
  1737. self.global_samples,
  1738. ))
  1739. self.monitor.write_events(self.summary_events)
  1740. # Check flops profiling
  1741. if flops_profiler_active:
  1742. if self.autotuning_enabled():
  1743. self.flops = self.flops_profiler.get_total_flops() * 3
  1744. else:
  1745. self.flops_profiler.print_model_profile(
  1746. profile_step=self.global_steps,
  1747. module_depth=self.flops_profiler_module_depth(),
  1748. top_modules=self.flops_profiler_top_modules(),
  1749. detailed=self.flops_profiler_detailed(),
  1750. output_file=self.flops_profiler_output_file(),
  1751. )
  1752. self.flops_profiler.end_profile()
  1753. if self.autotuning_enabled() and self.global_steps == (self.autotuning_end_profile_step() + 1):
  1754. self._autotuning_exit()
  1755. if self.wall_clock_breakdown():
  1756. # Log micro timing and reset
  1757. self.timers.log(names=self.engine_timers.micro_timers, memory_breakdown=self.memory_breakdown())
  1758. if self.wall_clock_breakdown() or self.flops_profiler_enabled():
  1759. # Log global timing and reset
  1760. if self.is_gradient_accumulation_boundary():
  1761. if self.monitor.enabled:
  1762. self._write_monitor()
  1763. if self.has_moe_layers:
  1764. fwd_time = self.timers(FORWARD_GLOBAL_TIMER).elapsed(reset=False)
  1765. self.print_forward_breakdown(fwd_time=fwd_time)
  1766. self.timers.log(self.engine_timers.global_timers)
  1767. self.micro_steps += 1
  1768. see_memory_usage("Engine after step", force=self.memory_breakdown())
  1769. def _start_timers(self, timer_names):
  1770. for name in timer_names:
  1771. self.timers(name).start()
  1772. def _stop_timers(self, timer_names):
  1773. record = self.is_gradient_accumulation_boundary() and \
  1774. self.flops_profiler_enabled() and \
  1775. (self.global_steps >= self.flops_profiler_profile_step())
  1776. for name in timer_names:
  1777. self.timers(name).stop(record=record)
  1778. def _autotuning_exit(self):
  1779. if self.global_rank == 0:
  1780. msg = self.timers.get_mean([
  1781. FORWARD_GLOBAL_TIMER,
  1782. BACKWARD_GLOBAL_TIMER,
  1783. STEP_GLOBAL_TIMER,
  1784. ], reset=False)
  1785. titer = 0.0
  1786. titer += msg[FORWARD_GLOBAL_TIMER] if FORWARD_GLOBAL_TIMER in msg else 0
  1787. titer += msg[BACKWARD_GLOBAL_TIMER] if BACKWARD_GLOBAL_TIMER in msg else 0
  1788. titer += msg[STEP_GLOBAL_TIMER] if STEP_GLOBAL_TIMER in msg else 0
  1789. msg["latency"] = titer
  1790. msg["FLOPS_per_gpu"] = self.flops * 1_000_000 * self.gradient_accumulation_steps() / titer
  1791. msg["throughput"] = self.train_batch_size() * 1_000_000 / \
  1792. msg["latency"]
  1793. print_json_dist(msg, [0], path=self.autotuning_metric_path())
  1794. log_dist(
  1795. f"Wrote metrics to {self.autotuning_metric_path()}, {os.path.abspath(self.autotuning_metric_path())}",
  1796. ranks=[0])
  1797. import atexit
  1798. atexit.register(print, "Autotuning: done with running current ds config.")
  1799. exit()
  1800. def _write_monitor(self):
  1801. if self.global_rank == 0:
  1802. self.summary_events = [
  1803. (
  1804. f"Train/Samples/elapsed_time_ms_forward",
  1805. self.timers(FORWARD_GLOBAL_TIMER).elapsed(reset=False),
  1806. self.global_samples,
  1807. ),
  1808. (
  1809. f"Train/Samples/elapsed_time_ms_backward",
  1810. self.timers(BACKWARD_GLOBAL_TIMER).elapsed(reset=False),
  1811. self.global_samples,
  1812. ),
  1813. (
  1814. f"Train/Samples/elapsed_time_ms_backward_inner",
  1815. self.timers(BACKWARD_INNER_GLOBAL_TIMER).elapsed(reset=False),
  1816. self.global_samples,
  1817. ),
  1818. (
  1819. f"Train/Samples/elapsed_time_ms_backward_allreduce",
  1820. self.timers(BACKWARD_REDUCE_GLOBAL_TIMER).elapsed(reset=False),
  1821. self.global_samples,
  1822. ),
  1823. (
  1824. f"Train/Samples/elapsed_time_ms_step",
  1825. self.timers(STEP_GLOBAL_TIMER).elapsed(reset=False),
  1826. self.global_samples,
  1827. ),
  1828. ]
  1829. self.monitor.write_events(self.summary_events)
  1830. def _get_optimizer_param(self, param_name):
  1831. result = []
  1832. if not self.optimizer:
  1833. return result
  1834. for group in self.optimizer.param_groups:
  1835. if param_name in group:
  1836. result.append(group[param_name])
  1837. else:
  1838. result.append(0.0)
  1839. return result
  1840. def get_lr(self):
  1841. return self._get_optimizer_param("lr")
  1842. def get_type(self):
  1843. return self._get_optimizer_param("type")
  1844. def get_mom(self):
  1845. if self.optimizer_name() in ["SGD", "RMSprop"]:
  1846. return self._get_optimizer_param("momentum")
  1847. else:
  1848. return self._get_optimizer_param("betas")
  1849. def get_pld_theta(self):
  1850. if self.progressive_layer_drop:
  1851. return self.progressive_layer_drop.get_theta()
  1852. else:
  1853. return None
  1854. def _report_progress(self, step):
  1855. lr = self.get_lr()
  1856. mom = self.get_mom()
  1857. log_dist(f"step={step}, skipped={self.skipped_steps}, lr={lr}, mom={mom}", ranks=[0])
  1858. def allreduce_bucket(self, bucket, dp_group):
  1859. tensor = self.flatten(bucket)
  1860. tensor_to_allreduce = tensor
  1861. if self.communication_data_type != tensor.dtype:
  1862. tensor_to_allreduce = tensor.to(self.communication_data_type)
  1863. if self.postscale_gradients():
  1864. if self.gradient_predivide_factor() != 1.0:
  1865. tensor_to_allreduce.mul_(1.0 / self.gradient_predivide_factor())
  1866. dist.all_reduce(tensor_to_allreduce, group=dp_group)
  1867. if self.gradient_average:
  1868. if self.gradient_predivide_factor() != dist.get_world_size(group=dp_group):
  1869. tensor_to_allreduce.mul_(self.gradient_predivide_factor() / dist.get_world_size(group=dp_group))
  1870. else:
  1871. tensor_to_allreduce.mul_(1. / dist.get_world_size(group=dp_group))
  1872. dist.all_reduce(tensor_to_allreduce, group=dp_group)
  1873. if self.communication_data_type != tensor.dtype and tensor is not tensor_to_allreduce:
  1874. tensor.copy_(tensor_to_allreduce)
  1875. return tensor
  1876. def allreduce_and_copy(self, small_bucket, dp_group):
  1877. allreduced = self.allreduce_bucket(small_bucket, dp_group)
  1878. for buf, synced in zip(small_bucket, self.unflatten(allreduced, small_bucket)):
  1879. buf.copy_(synced)
  1880. def allreduce_no_retain(self, bucket, dp_group, numel_per_bucket=500000000):
  1881. small_bucket = []
  1882. numel = 0
  1883. for tensor in bucket:
  1884. small_bucket.append(tensor)
  1885. numel = numel + tensor.numel()
  1886. if numel > numel_per_bucket:
  1887. self.allreduce_and_copy(small_bucket, dp_group)
  1888. small_bucket = []
  1889. numel = 0
  1890. if len(small_bucket) > 0:
  1891. self.allreduce_and_copy(small_bucket, dp_group)
  1892. def _get_gradients_for_reduction(self):
  1893. non_expert_grads = []
  1894. expert_grads = {}
  1895. if self.has_moe_layers:
  1896. for key in self.expert_data_parallel_group.keys():
  1897. expert_grads[key] = []
  1898. for param_name, param in self.module.named_parameters():
  1899. if not param.requires_grad:
  1900. continue
  1901. if param.grad is None:
  1902. # In cases where there is an imbalance of empty grads across
  1903. # ranks we must create empty grads, this will ensure that every
  1904. # rank is reducing the same size. In some cases it may make
  1905. # sense in the future to support the ability to average not
  1906. # w.r.t. world size but with a different value.
  1907. param.grad = torch.zeros(param.size(), dtype=param.dtype, device=param.device)
  1908. grad_data = param.grad.data
  1909. if param_name in self.sparse_tensor_module_names or grad_data.is_sparse:
  1910. # Call param.grad without data to avoid problem with setting of updated grads
  1911. grad_data = SparseTensor(param.grad)
  1912. if is_moe_param(param):
  1913. expert_grads[param.group_name].append(grad_data)
  1914. else:
  1915. non_expert_grads.append(grad_data)
  1916. return non_expert_grads, expert_grads
  1917. def _reduce_non_expert_gradients(self, grads, elements_per_buffer):
  1918. split_buckets = split_half_float_double_sparse(grads)
  1919. for _, bucket_tuple in enumerate(split_buckets):
  1920. bucket_type, bucket = bucket_tuple
  1921. if self.pipeline_parallelism:
  1922. dp_group = self.mpu.get_data_parallel_group()
  1923. else:
  1924. dp_group = groups._get_data_parallel_group()
  1925. if bucket_type == SparseTensor.type():
  1926. self.sparse_allreduce_no_retain(bucket, dp_group=dp_group)
  1927. else:
  1928. self.allreduce_no_retain(bucket, dp_group=dp_group, numel_per_bucket=elements_per_buffer)
  1929. def _reduce_expert_gradients(self, expert_grads, elements_per_buffer):
  1930. for ep_name, expert_grads_group in expert_grads.items():
  1931. expert_split_buckets = split_half_float_double_sparse(expert_grads_group)
  1932. for i, bucket_tuple in enumerate(expert_split_buckets):
  1933. bucket_type, bucket = bucket_tuple
  1934. if bucket_type == SparseTensor.type():
  1935. self.sparse_allreduce_no_retain(bucket, groups._get_expert_data_parallel_group(ep_name))
  1936. else:
  1937. # Separate between diff groups
  1938. self.allreduce_no_retain(bucket,
  1939. dp_group=groups._get_expert_data_parallel_group(ep_name),
  1940. numel_per_bucket=elements_per_buffer)
  1941. def buffered_allreduce_fallback(self, grads=None, elements_per_buffer=500000000):
  1942. if grads is None:
  1943. non_expert_grads, expert_grads = self._get_gradients_for_reduction()
  1944. else:
  1945. assert not self.has_moe_layers, "attempting to reduce grads in unsupported way w.r.t. MoE"
  1946. non_expert_grads = grads
  1947. self._reduce_non_expert_gradients(non_expert_grads, elements_per_buffer)
  1948. if self.has_moe_layers:
  1949. self._reduce_expert_gradients(expert_grads, elements_per_buffer)
  1950. def sparse_allreduce_no_retain(self, bucket, dp_group):
  1951. allreduced_sparses = self.sparse_allreduce_bucket(bucket, dp_group)
  1952. # Densify sparse tensor and copy back to original location
  1953. for tensor in allreduced_sparses:
  1954. if tensor.is_sparse:
  1955. tensor.orig_dense_tensor.data = tensor.to_coo_tensor()
  1956. else:
  1957. tensor.orig_dense_tensor.copy_(tensor.to_dense())
  1958. def sparse_allreduce_bucket(self, bucket, dp_group):
  1959. sparse_list = []
  1960. for sparse in bucket:
  1961. sparse_list.append(self.sparse_allreduce(sparse, dp_group))
  1962. return sparse_list
  1963. def sparse_allreduce(self, sparse, dp_group):
  1964. original_data_type = sparse.values.dtype
  1965. if self.communication_data_type != sparse.values.dtype:
  1966. if self.communication_data_type in (torch.float16, torch.bfloat16):
  1967. indices = sparse.indices.to(torch.int32)
  1968. else:
  1969. indices = sparse.indices
  1970. values = sparse.values.to(self.communication_data_type)
  1971. else:
  1972. indices = sparse.indices
  1973. values = sparse.values
  1974. if self.postscale_gradients():
  1975. if self.gradient_average:
  1976. values.mul_(self.gradient_predivide_factor() / dist.get_world_size(group=dp_group))
  1977. else:
  1978. values.mul_(1. / dist.get_world_size(group=dp_group))
  1979. indices_device_list = self.sparse_all_gather(indices, dp_group)
  1980. values_device_list = self.sparse_all_gather(values, dp_group)
  1981. sparse.indices = torch.cat(indices_device_list).to(torch.long)
  1982. sparse.values = torch.cat(values_device_list).to(original_data_type)
  1983. return sparse
  1984. def sparse_all_gather(self, value, dp_group):
  1985. my_size = torch.LongTensor([value.size()[0]]).to(self.device)
  1986. all_sizes = self.all_gather_scalar(my_size, dp_group)
  1987. max_size = torch.cat(all_sizes).max()
  1988. fill_size = max_size - my_size
  1989. assert value.dim() in [1, 2]
  1990. if value.dim() == 1:
  1991. if fill_size > 0:
  1992. value = torch.cat([value, value.new_empty(fill_size)])
  1993. tensor_list = [value.new_empty(max_size) for _ in range(dist.get_world_size(group=dp_group))]
  1994. else:
  1995. if fill_size > 0:
  1996. value = torch.cat([value, value.new_empty(fill_size, value.size()[1])])
  1997. tensor_list = [
  1998. value.new_empty(max_size,
  1999. value.size()[1]) for _ in range(dist.get_world_size(group=dp_group))
  2000. ]
  2001. dist.all_gather(tensor_list, value, group=dp_group)
  2002. tensors = []
  2003. for dev_idx, t in enumerate(tensor_list):
  2004. size = all_sizes[dev_idx][0]
  2005. tensors.append(t.index_select(0, torch.arange(size, dtype=torch.long, device=self.device)))
  2006. return tensors
  2007. def all_gather_scalar(self, value, dp_group):
  2008. tensor_list = [value.new_zeros(value.size()) for _ in range(dist.get_world_size(group=dp_group))]
  2009. dist.all_gather(tensor_list, value, group=dp_group)
  2010. return tensor_list
  2011. def module_state_dict(self, destination=None, prefix="", keep_vars=False, exclude_frozen_parameters=False):
  2012. sd = self.module.state_dict(destination, prefix, keep_vars)
  2013. # Remove frozen parameter weights from state_dict if specified
  2014. if exclude_frozen_parameters:
  2015. for n, p in self.module.named_parameters():
  2016. if not p.requires_grad:
  2017. del sd[n]
  2018. if self.random_ltd_enabled():
  2019. sd = remove_random_ltd_state_dict(sd)
  2020. return sd
  2021. @staticmethod
  2022. def load_moe_state_dict(checkpoint_path,
  2023. tag,
  2024. state_dict,
  2025. old_moe_load,
  2026. model=None,
  2027. mpu=None,
  2028. num_experts=1,
  2029. checkpoint_engine=TorchCheckpointEngine()):
  2030. if old_moe_load:
  2031. expp_rank = groups._get_expert_data_parallel_rank(groups._get_max_expert_size_name())
  2032. num_local_experts = max(num_experts) // groups._get_expert_parallel_world_size(
  2033. groups._get_max_expert_size_name())
  2034. for local_expert_id in range(num_local_experts):
  2035. global_expert_id = expp_rank * num_local_experts + local_expert_id
  2036. expert_state_dict = checkpoint_engine.load(
  2037. DeepSpeedEngine._get_expert_ckpt_name(
  2038. checkpoint_path,
  2039. -1, # -1 means ignore layer_id
  2040. global_expert_id,
  2041. tag,
  2042. mpu),
  2043. map_location=torch.device('cpu'))
  2044. # Updating global -> local expert ids
  2045. moe_str_prefix = '.deepspeed_moe.experts.deepspeed_experts.'
  2046. for key in list(expert_state_dict.keys()):
  2047. local_key = key.replace(f'{moe_str_prefix}{global_expert_id}',
  2048. f'{moe_str_prefix}{local_expert_id}')
  2049. expert_state_dict[local_key] = expert_state_dict.pop(key)
  2050. state_dict.update(expert_state_dict)
  2051. else:
  2052. moe_layer_id = 0
  2053. for n_module, module in model.named_modules():
  2054. if isinstance(module, MoE): # and deepspeed.comm.get_rank() == 0:
  2055. group_name = module.expert_group_name
  2056. num_local_experts = module.num_local_experts
  2057. expp_rank = groups._get_expert_parallel_rank(group_name)
  2058. # loop all local_experts
  2059. for local_expert_id in range(num_local_experts):
  2060. global_expert_id = expp_rank * num_local_experts + local_expert_id
  2061. expert_state_dict = checkpoint_engine.load(DeepSpeedEngine._get_expert_ckpt_name(
  2062. checkpoint_path, moe_layer_id, global_expert_id, tag, mpu),
  2063. map_location=torch.device('cpu'))
  2064. # print(expert_state_dict.keys())
  2065. # Updating global -> local expert ids
  2066. moe_str_prefix = '.deepspeed_moe.experts.deepspeed_experts.'
  2067. for key in list(expert_state_dict.keys()):
  2068. local_key = key.replace(f'{moe_str_prefix}{global_expert_id}',
  2069. f'{moe_str_prefix}{local_expert_id}')
  2070. expert_state_dict[local_key] = expert_state_dict.pop(key)
  2071. state_dict.update(expert_state_dict)
  2072. moe_layer_id += 1
  2073. def load_module_state_dict(self, checkpoint, strict=True, custom_load_fn=None):
  2074. module_state_dict = checkpoint['module']
  2075. if custom_load_fn:
  2076. custom_load_fn(src=module_state_dict, dst=self.module)
  2077. else:
  2078. self.module.load_state_dict(
  2079. module_state_dict, # TODO
  2080. strict=strict)
  2081. if checkpoint.get(FROZEN_PARAM_FRAGMENTS, None) is not None:
  2082. saved_frozen_params = checkpoint[FROZEN_PARAM_FRAGMENTS]
  2083. for param in self.module.parameters():
  2084. if param.requires_grad:
  2085. continue
  2086. if param not in self.param_names:
  2087. raise ValueError(f"failed to find frozen {param} in named params")
  2088. name = self.param_names[param]
  2089. if hasattr(param, 'ds_id'):
  2090. param.ds_tensor.data.copy_(saved_frozen_params[name].data)
  2091. else:
  2092. param.data.copy_(saved_frozen_params[name].data)
  2093. def _get_zero_ckpt_prefix(self, dp_rank, bf16_mode):
  2094. return f'{"bf16_" if bf16_mode else ""}zero_pp_rank_{dp_rank}'
  2095. def _get_rank_zero_ckpt_name(self, checkpoints_path, tag, mp_rank, dp_rank, bf16_mode):
  2096. file_prefix = self._get_zero_ckpt_prefix(dp_rank, bf16_mode=bf16_mode)
  2097. zero_ckpt_name = os.path.join(
  2098. checkpoints_path,
  2099. str(tag),
  2100. f"{file_prefix}_mp_rank_{mp_rank:02d}_optim_states.pt",
  2101. )
  2102. return zero_ckpt_name
  2103. def _get_zero_ckpt_name(self, checkpoints_path, tag):
  2104. mp_rank = 0 if self.mpu is None else self.mpu.get_model_parallel_rank()
  2105. pp_rank = dist.get_rank(group=self.optimizer.dp_process_group)
  2106. bf16_mode = self.bfloat16_enabled()
  2107. return self._get_rank_zero_ckpt_name(checkpoints_path, tag, mp_rank, pp_rank, bf16_mode)
  2108. def _get_ckpt_name(self, checkpoints_path, tag, mp_placeholder=None):
  2109. if mp_placeholder is not None:
  2110. mp_rank_str = mp_placeholder
  2111. else:
  2112. mp_rank = 0 if self.mpu is None else self.mpu.get_model_parallel_rank()
  2113. mp_rank_str = f"{mp_rank:02d}"
  2114. if self.zero_optimization_partition_weights():
  2115. filename = "zero_pp_rank_{}".format(dist.get_rank(group=self.optimizer.dp_process_group))
  2116. ckpt_name = os.path.join(
  2117. checkpoints_path,
  2118. str(tag),
  2119. f"{filename}_mp_rank_{mp_rank_str}_model_states.pt",
  2120. )
  2121. else:
  2122. ckpt_name = os.path.join(
  2123. checkpoints_path,
  2124. str(tag),
  2125. "mp_rank_" + mp_rank_str + "_model_states.pt",
  2126. )
  2127. return ckpt_name
  2128. def _get_optimizer_ckpt_name(self, checkpoints_path, tag, expp_rank):
  2129. mp_rank = 0 if self.mpu is None else self.mpu.get_model_parallel_rank()
  2130. ckpt_name = os.path.join(checkpoints_path, str(tag),
  2131. f'expp_rank_{expp_rank}_mp_rank_{mp_rank:02d}_optim_states.pt')
  2132. return ckpt_name
  2133. @staticmethod
  2134. def _get_expert_ckpt_name(checkpoints_path, layer_id, expert_id, tag, mpu=None):
  2135. mp_rank = 0 if mpu is None else mpu.get_model_parallel_rank()
  2136. if layer_id <= -1:
  2137. # Used to support old checkpoint loading
  2138. ckpt_name = os.path.join(checkpoints_path, '' if tag is None else str(tag),
  2139. f'expert_{expert_id}_mp_rank_{mp_rank:02d}_model_states.pt')
  2140. else:
  2141. # Used to support new checkpoint loading
  2142. ckpt_name = os.path.join(checkpoints_path, '' if tag is None else str(tag),
  2143. f'layer_{layer_id}_expert_{expert_id}_mp_rank_{mp_rank:02d}_model_states.pt')
  2144. return ckpt_name
  2145. def _get_all_ckpt_names(self, checkpoints_path, tag):
  2146. # It is required that (checkpoints_path, tag) are consistent among all ranks.
  2147. ckpt_file_pattern = self._get_ckpt_name(checkpoints_path, tag, mp_placeholder="*")
  2148. import glob
  2149. ckpt_files = glob.glob(ckpt_file_pattern)
  2150. ckpt_files.sort()
  2151. return ckpt_files
  2152. def load_checkpoint(self,
  2153. load_dir,
  2154. tag=None,
  2155. load_module_strict=True,
  2156. load_optimizer_states=True,
  2157. load_lr_scheduler_states=True,
  2158. load_module_only=False,
  2159. custom_load_fn=None):
  2160. """
  2161. Load training checkpoint
  2162. Arguments:
  2163. load_dir: Required. Directory to load the checkpoint from
  2164. tag: Checkpoint tag used as a unique identifier for checkpoint, if not provided will attempt to load tag in 'latest' file
  2165. load_module_strict: Optional. Boolean to strictly enforce that the keys in state_dict of module and checkpoint match.
  2166. load_optimizer_states: Optional. Boolean to load the training optimizer states from Checkpoint. Ex. ADAM's momentum and variance
  2167. load_lr_scheduler_states: Optional. Boolean to add the learning rate scheduler states from Checkpoint.
  2168. load_module_only: Optional. Boolean to load only the model weights from the checkpoint. Ex. warmstarting.
  2169. custom_load_fn: Optional. Custom model load function.
  2170. Returns:
  2171. A tuple of ``load_path`` and ``client_state``.
  2172. *``load_path``: Path of the loaded checkpoint. ``None`` if loading the checkpoint failed.
  2173. *``client_state``: State dictionary used for loading required training states in the client code.
  2174. Important: under ZeRO3, one cannot load checkpoint with ``engine.load_checkpoint()`` right
  2175. after ``engine.save_checkpoint()``. It is because ``engine.module`` is partitioned, and
  2176. ``load_checkpoint()`` wants a pristine model. If insisting to do so, please reinitialize engine
  2177. before ``load_checkpoint()``.
  2178. """
  2179. if tag is None:
  2180. latest_tag = "latest_universal" if self.load_universal_checkpoint() else "latest"
  2181. latest_path = os.path.join(load_dir, latest_tag)
  2182. if os.path.isfile(latest_path):
  2183. with open(latest_path, "r") as fd:
  2184. tag = fd.read().strip()
  2185. else:
  2186. if self.load_universal_checkpoint():
  2187. raise ValueError(f'Invalid for universal checkpoint: {latest_path} does not exist')
  2188. else:
  2189. logger.warning(
  2190. f"Unable to find latest file at {latest_path}, if trying to load latest "
  2191. "checkpoint please ensure this file exists or pass an explicit checkpoint tag when loading a checkpoint."
  2192. )
  2193. return None, None
  2194. if self.zero_optimization_partition_weights():
  2195. # Prepare for checkpoint load by ensuring all parameters are partitioned
  2196. self.optimizer.checkpoint_event_prologue()
  2197. load_path, client_states = self._load_checkpoint(load_dir,
  2198. tag,
  2199. load_module_strict=load_module_strict,
  2200. load_optimizer_states=load_optimizer_states,
  2201. load_lr_scheduler_states=load_lr_scheduler_states,
  2202. load_module_only=load_module_only,
  2203. custom_load_fn=custom_load_fn)
  2204. load_zero_checkpoint = self.zero_optimization() or self.bfloat16_enabled()
  2205. if load_zero_checkpoint and load_path is not None:
  2206. success = self._load_zero_checkpoint(load_dir, tag, load_optimizer_states=load_optimizer_states)
  2207. if not success:
  2208. self.optimizer._restore_from_bit16_weights()
  2209. if self.zero_optimization_partition_weights():
  2210. self.optimizer.checkpoint_event_epilogue()
  2211. return load_path, client_states
  2212. def _load_checkpoint(self,
  2213. load_dir,
  2214. tag,
  2215. load_module_strict=True,
  2216. load_optimizer_states=True,
  2217. load_lr_scheduler_states=True,
  2218. load_module_only=False,
  2219. custom_load_fn=None):
  2220. from deepspeed.runtime.state_dict_factory import SDLoaderFactory
  2221. ckpt_list = self._get_all_ckpt_names(load_dir, tag)
  2222. sd_loader = SDLoaderFactory.get_sd_loader(ckpt_list, checkpoint_engine=self.checkpoint_engine)
  2223. is_pipe_parallel = isinstance(self.module, PipelineModule)
  2224. mp_rank = 0 if self.mpu is None else self.mpu.get_model_parallel_rank()
  2225. load_path, checkpoint, _ = sd_loader.load(self.mp_world_size, mp_rank, is_pipe_parallel=is_pipe_parallel)
  2226. if checkpoint is None:
  2227. return None, None
  2228. if is_pipe_parallel:
  2229. # Pipeline parallelism uses this to load its own checkpoint files.
  2230. self._curr_ckpt_path = os.path.join(load_dir, tag)
  2231. if self.has_moe_layers:
  2232. # print(checkpoint.keys())
  2233. old_moe_load = False
  2234. if not isinstance(checkpoint['num_experts'], list):
  2235. old_moe_load = True
  2236. DeepSpeedEngine.load_moe_state_dict(load_dir,
  2237. tag,
  2238. state_dict=checkpoint['module'],
  2239. old_moe_load=old_moe_load,
  2240. model=self.module,
  2241. mpu=self.mpu,
  2242. num_experts=self.num_experts,
  2243. checkpoint_engine=self.checkpoint_engine)
  2244. if not self.load_universal_checkpoint():
  2245. self.load_module_state_dict(checkpoint=checkpoint,
  2246. strict=load_module_strict,
  2247. custom_load_fn=custom_load_fn)
  2248. self.loaded_checkpoint_dp_world_size = checkpoint['dp_world_size']
  2249. if load_module_only:
  2250. deepspeed_states = ['module']
  2251. if self.optimizer is not None and self.fp16_enabled():
  2252. self.optimizer.refresh_fp32_params()
  2253. else:
  2254. if self.has_moe_layers:
  2255. largest_group_name = groups._get_max_expert_size_name()
  2256. expp_rank = groups._get_expert_parallel_rank(largest_group_name)
  2257. optim_load_path = self._get_optimizer_ckpt_name(load_dir, tag, expp_rank)
  2258. optim_checkpoint = self.checkpoint_engine.load(optim_load_path, map_location=torch.device('cpu'))
  2259. else:
  2260. optim_checkpoint = checkpoint
  2261. has_zero_optimizer_state = self.zero_optimization() or self.bfloat16_enabled()
  2262. if load_optimizer_states and self.optimizer is not None and not has_zero_optimizer_state:
  2263. if self.fp16_enabled():
  2264. self.optimizer.load_state_dict(optim_checkpoint['optimizer'],
  2265. load_optimizer_states=load_optimizer_states)
  2266. else:
  2267. self.optimizer.load_state_dict(optim_checkpoint['optimizer'])
  2268. if load_lr_scheduler_states and self.lr_scheduler is not None:
  2269. self.lr_scheduler.load_state_dict(checkpoint['lr_scheduler'])
  2270. if self.random_ltd_enabled() and self.random_ltd_scheduler is not None and 'random_ltd' in checkpoint:
  2271. self.random_ltd_scheduler.load_state_dict(checkpoint['random_ltd'])
  2272. if self.training_dataloader is not None and self.curriculum_learning_enabled(
  2273. ) and 'data_sampler' in checkpoint:
  2274. self.training_dataloader.data_sampler.load_state_dict(checkpoint['data_sampler'])
  2275. def get_sparse_tensor_module_names(original_set, loaded_set, original_parameters, loaded_parameters):
  2276. result = set()
  2277. for name in original_set:
  2278. if name in loaded_parameters and name not in loaded_set:
  2279. continue # parameter existed in previous model and was not sparse
  2280. result.add(name)
  2281. for name in loaded_set:
  2282. if name in original_parameters:
  2283. result.add(name) # parameter exists in both configs and it was sparse
  2284. return result
  2285. if 'sparse_tensor_module_names' in checkpoint:
  2286. sparse_tensor_module_names = checkpoint['sparse_tensor_module_names']
  2287. elif 'csr_tensor_module_names' in checkpoint:
  2288. sparse_tensor_module_names = checkpoint['csr_tensor_module_names']
  2289. else:
  2290. sparse_tensor_module_names = None
  2291. if sparse_tensor_module_names is not None:
  2292. if load_module_strict:
  2293. self.sparse_tensor_module_names = sparse_tensor_module_names
  2294. else:
  2295. self.sparse_tensor_module_names = get_sparse_tensor_module_names(
  2296. self.sparse_tensor_module_names, sparse_tensor_module_names,
  2297. dict(self.module.named_parameters()), checkpoint["module"])
  2298. self.global_steps = checkpoint['global_steps']
  2299. self.global_samples = checkpoint.get('global_samples', self.global_steps * self.train_batch_size())
  2300. self.skipped_steps = checkpoint['skipped_steps']
  2301. self.loaded_checkpoint_mp_world_size = checkpoint['mp_world_size']
  2302. deepspeed_states = [
  2303. 'module', 'sparse_tensor_module_names', 'skipped_steps', 'global_steps', 'dp_world_size',
  2304. 'mp_world_size', 'data_sampler', 'random_ltd'
  2305. ]
  2306. client_state = {}
  2307. if load_lr_scheduler_states:
  2308. deepspeed_states.append('lr_scheduler')
  2309. if load_optimizer_states:
  2310. deepspeed_states.append('optimizer')
  2311. client_state = {key: value for key, value in checkpoint.items() if not key in deepspeed_states}
  2312. if not load_optimizer_states and not load_module_only:
  2313. client_state['optimizer'] = optim_checkpoint['optimizer']
  2314. return load_path, client_state
  2315. def _load_zero_checkpoint(self, load_dir, tag, load_optimizer_states=True):
  2316. load_serial = None
  2317. # When use loading checkpoint serial, checkpoint loading start from local rank 0,
  2318. # all other local rank would be paused, waiting for its rank-1 peer ready and its notification.
  2319. if self._config.zero_config.pipeline_loading_checkpoint:
  2320. assert self.zero_optimization_stage(
  2321. ) == ZeroStageEnum.weights, "Only stage3 support for pipeline checkpoint loading"
  2322. load_serial = torch.zeros(1).to(self.device)
  2323. if dist.get_local_rank() != 0:
  2324. dist.recv(tensor=load_serial, src=dist.get_rank() - 1)
  2325. if self.load_universal_checkpoint():
  2326. zero_sd_list = None
  2327. checkpoint_folder = f'{os.path.join(load_dir, tag)}'
  2328. else:
  2329. if load_optimizer_states and self.dp_world_size != self.loaded_checkpoint_dp_world_size:
  2330. raise ZeRORuntimeException("The checkpoint being loaded used a DP " \
  2331. f"world size of {self.loaded_checkpoint_dp_world_size} but the " \
  2332. f"current world size is {self.dp_world_size}. Automatic adjustment " \
  2333. "of ZeRO's optimizer state partitioning with a new world size is not " \
  2334. "currently supported.")
  2335. checkpoint_folder = None
  2336. zero_sd_list = self._get_all_zero_checkpoints(load_dir, tag)
  2337. if zero_sd_list is None:
  2338. return False
  2339. self.optimizer.load_state_dict(state_dict_list=zero_sd_list,
  2340. load_optimizer_states=load_optimizer_states,
  2341. load_from_fp32_weights=self.zero_load_from_fp32_weights(),
  2342. checkpoint_folder=checkpoint_folder,
  2343. load_serial=load_serial)
  2344. if self.load_universal_checkpoint():
  2345. logger.info(f'loaded universal zero checkpoints from {checkpoint_folder} for rank {self.global_rank}')
  2346. else:
  2347. logger.info(f"loading {len(zero_sd_list)} zero partition checkpoints for rank {self.global_rank}")
  2348. return True
  2349. def _get_mp_rank_zero_checkpoint_names(self, load_dir, tag, mp_rank, dp_world_size, bf16_mode):
  2350. zero_ckpt_names = []
  2351. for dp_rank in range(dp_world_size):
  2352. ckpt_name = self._get_rank_zero_ckpt_name(checkpoints_path=load_dir,
  2353. tag=tag,
  2354. mp_rank=mp_rank,
  2355. dp_rank=dp_rank,
  2356. bf16_mode=bf16_mode)
  2357. zero_ckpt_names.append(ckpt_name)
  2358. return zero_ckpt_names
  2359. def _get_all_zero_checkpoint_names(self, load_dir, tag, bf16_mode):
  2360. mp_rank = 0 if self.mpu is None else self.mpu.get_model_parallel_rank()
  2361. zero_ckpt_names = self._get_mp_rank_zero_checkpoint_names(load_dir=load_dir,
  2362. tag=tag,
  2363. mp_rank=mp_rank,
  2364. dp_world_size=self.loaded_checkpoint_dp_world_size,
  2365. bf16_mode=bf16_mode)
  2366. for i, ckpt_name in enumerate(zero_ckpt_names):
  2367. if not os.path.exists(ckpt_name):
  2368. # transparently handle the old file pattern for optim_states
  2369. if "optim_states.pt" in ckpt_name:
  2370. ckpt_name_try = ckpt_name.replace("_optim_states.pt", "optim_states.pt")
  2371. if os.path.exists(ckpt_name_try):
  2372. zero_ckpt_names[i] = ckpt_name_try
  2373. continue
  2374. return zero_ckpt_names
  2375. def _get_all_zero_checkpoint_state_dicts(self, zero_ckpt_names):
  2376. zero_sd_list = []
  2377. for i, ckpt_name in enumerate(zero_ckpt_names):
  2378. _state = None
  2379. if ckpt_name is None:
  2380. _state = {OPTIMIZER_STATE_DICT: None}
  2381. # Fully load state for current rank
  2382. elif self.zero_elastic_checkpoint() or dist.get_rank(group=self.optimizer.dp_process_group) == i:
  2383. _state = self.checkpoint_engine.load(
  2384. ckpt_name,
  2385. map_location='cpu',
  2386. )
  2387. else:
  2388. _state = {OPTIMIZER_STATE_DICT: None}
  2389. zero_sd_list.append(_state)
  2390. zero_optimizer_sd = [sd[OPTIMIZER_STATE_DICT] for sd in zero_sd_list]
  2391. logger.info(f"successfully read {len(zero_optimizer_sd)} ZeRO state_dicts for rank {self.global_rank}")
  2392. return zero_optimizer_sd
  2393. def _get_all_zero_checkpoints(self, load_dir, tag):
  2394. for bf16_mode in [self.bfloat16_enabled(), not self.bfloat16_enabled()]:
  2395. zero_ckpt_names = self._get_all_zero_checkpoint_names(load_dir, tag, bf16_mode)
  2396. if zero_ckpt_names is not None:
  2397. # Warn if loading checkpoint of different bit16 type
  2398. if bf16_mode is not self.bfloat16_enabled():
  2399. checkpoint_bit16 = BFLOAT16 if bf16_mode else FP16
  2400. engine_bit16 = BFLOAT16 if self.bfloat16_enabled() else FP16
  2401. logger.warn(f'Loading {checkpoint_bit16} zero checkpoints into {engine_bit16} training engine')
  2402. return self._get_all_zero_checkpoint_state_dicts(zero_ckpt_names)
  2403. return None
  2404. def _checkpoint_tag_validation(self, tag):
  2405. if self.checkpoint_tag_validation_enabled():
  2406. s_hash = hashlib.sha1(tag.encode())
  2407. bhash = torch.ByteTensor([s_hash.digest()]).flatten().to(self.device)
  2408. max_bhash = bhash.clone()
  2409. min_bhash = bhash.clone()
  2410. dist.all_reduce(max_bhash, op=dist.ReduceOp.MAX)
  2411. dist.all_reduce(min_bhash, op=dist.ReduceOp.MIN)
  2412. valid = all(min_bhash == bhash) and all(max_bhash == bhash)
  2413. msg = (f"[rank={dist.get_rank()}] The checkpoint tag name '{tag}' is not consistent across "
  2414. "all ranks. Including rank unique information in checkpoint tag could cause issues when "
  2415. "restoring with different world sizes.")
  2416. if self.checkpoint_tag_validation_fail():
  2417. assert valid, msg
  2418. elif not valid:
  2419. logger.warning(msg)
  2420. def save_checkpoint(self, save_dir, tag=None, client_state={}, save_latest=True, exclude_frozen_parameters=False):
  2421. """Save training checkpoint
  2422. Arguments:
  2423. save_dir: Required. Directory for saving the checkpoint
  2424. tag: Optional. Checkpoint tag used as a unique identifier for the checkpoint, global step is
  2425. used if not provided. Tag name must be the same across all ranks.
  2426. client_state: Optional. State dictionary used for saving required training states in the client code.
  2427. save_latest: Optional. Save a file 'latest' pointing to the latest saved checkpoint.
  2428. exclude_frozen_parameters: Optional. Exclude frozen parameters from checkpointed state.
  2429. Important: all processes must call this method and not just the process with rank 0. It is
  2430. because each process needs to save its master weights and scheduler+optimizer states. This
  2431. method will hang waiting to synchronize with other processes if it's called just for the
  2432. process with rank 0.
  2433. """
  2434. if self.zero_optimization_partition_weights():
  2435. # Prepare for checkpoint save by ensuring all parameters are partitioned
  2436. self.optimizer.checkpoint_event_prologue()
  2437. rank = self.local_rank if self.use_node_local_storage() else self.global_rank
  2438. # This is to make sure the checkpoint names are created without collision
  2439. # There seems to be issue creating them in parallel
  2440. # Ensure save_dir directory exists
  2441. self.checkpoint_engine.makedirs(save_dir, exist_ok=True)
  2442. dist.barrier()
  2443. if tag is None:
  2444. tag = f"global_step{self.global_steps}"
  2445. # Ensure tag is a string
  2446. tag = str(tag)
  2447. self.checkpoint_engine.create(tag)
  2448. # Ensure checkpoint tag is consistent across ranks
  2449. self._checkpoint_tag_validation(tag)
  2450. if self.has_moe_layers:
  2451. self.save_non_zero_checkpoint = False
  2452. self._create_checkpoint_file(save_dir, tag, False)
  2453. self._save_moe_checkpoint(save_dir,
  2454. tag,
  2455. client_state=client_state,
  2456. exclude_frozen_parameters=exclude_frozen_parameters)
  2457. # We distribute the task of saving layer checkpoint files among
  2458. # data parallel instances, so all procs should call _save_checkpoint.
  2459. # All procs then call module_state_dict(), but only procs of data
  2460. # parallel rank 0 save the general model params.
  2461. if not self.has_moe_layers:
  2462. self._create_checkpoint_file(save_dir, tag, False)
  2463. self._save_checkpoint(save_dir,
  2464. tag,
  2465. client_state=client_state,
  2466. exclude_frozen_parameters=exclude_frozen_parameters)
  2467. if self.save_zero_checkpoint:
  2468. self._create_zero_checkpoint_files(save_dir, tag)
  2469. self._save_zero_checkpoint(save_dir, tag)
  2470. if self.zero_optimization_partition_weights():
  2471. self.optimizer.checkpoint_event_epilogue()
  2472. # Save latest checkpoint tag
  2473. self.checkpoint_engine.commit(tag)
  2474. if save_latest and rank == 0:
  2475. with open(os.path.join(save_dir, 'latest'), 'w') as fd:
  2476. fd.write(tag)
  2477. dist.barrier()
  2478. return True
  2479. def _get_non_moe_state_dict(self, full_state_dict):
  2480. """
  2481. Get the state dict of the non-moe layers
  2482. """
  2483. for key in list(full_state_dict.keys()):
  2484. if 'expert' in key and 'moe.gate.wg.weight' not in key:
  2485. full_state_dict.pop(key)
  2486. return full_state_dict
  2487. def _save_moe_checkpoint(self, save_dir, tag, client_state={}, exclude_frozen_parameters=False):
  2488. save_path = self._get_ckpt_name(save_dir, tag)
  2489. # A hack to save the checkpointing directory. Pipeline parallelism overrides
  2490. # module_state_dict() and uses this path to save the model. module_state_dict()
  2491. # then instead just returns None.
  2492. # Using layer_#_export_# to save the model's expert state_dict
  2493. moe_layer_id = 0
  2494. for n_module, module in self.module.named_modules():
  2495. if isinstance(module, MoE): # and deepspeed.comm.get_rank() == 0:
  2496. group_name = module.expert_group_name
  2497. num_local_experts = module.num_local_experts
  2498. expp_rank = groups._get_expert_parallel_rank(group_name)
  2499. exp_dp_rank = groups._get_expert_data_parallel_rank(group_name)
  2500. # print(expp_rank, exp_dp_rank)
  2501. if exp_dp_rank != 0:
  2502. moe_layer_id += 1
  2503. continue
  2504. # get all moe parameters
  2505. moe_state_dict = {}
  2506. for n, p in module.state_dict().items():
  2507. if 'expert' in n and 'moe.gate.wg.weight' not in n:
  2508. moe_state_dict[n_module + '.' + n] = p
  2509. moe_str_prefix = '.deepspeed_moe.experts.deepspeed_experts.'
  2510. # print(moe_state_dict.keys()) # until now, everything is fine. So the bug happens at next few lines
  2511. # Reorder the moe name rank, so that each checkpoint only has one expert
  2512. experts_state_dict = defaultdict(dict)
  2513. for key in list(moe_state_dict.keys()):
  2514. m = re.match(f".*{moe_str_prefix}([0-9]+).*", key)
  2515. local_expert_id = None
  2516. if not m:
  2517. logger.warn(f'No expert found in key {key}.')
  2518. else:
  2519. local_expert_id = m.group(1)
  2520. global_expert_id = expp_rank * \
  2521. num_local_experts + int(local_expert_id)
  2522. expert_key = key.replace(f'{moe_str_prefix}{local_expert_id}',
  2523. f'{moe_str_prefix}{global_expert_id}')
  2524. # truncating extra tensor (shared) storage
  2525. truncated = moe_state_dict.pop(key).clone().detach()
  2526. experts_state_dict[str(global_expert_id)][expert_key] = truncated
  2527. # let save the moe parameters
  2528. for global_expert_id, expert_state_dict in experts_state_dict.items():
  2529. # save the moe parameters
  2530. moe_save_path = self._get_expert_ckpt_name(save_dir, moe_layer_id, global_expert_id, tag, self.mpu)
  2531. if self.random_ltd_enabled():
  2532. expert_state_dict = remove_random_ltd_state_dict(expert_state_dict)
  2533. self.checkpoint_engine.save(expert_state_dict, moe_save_path)
  2534. moe_layer_id += 1
  2535. self._curr_ckpt_path = os.path.join(save_dir, tag)
  2536. largest_group_name = groups._get_max_expert_size_name()
  2537. expp_rank = groups._get_expert_parallel_rank(largest_group_name)
  2538. exp_dp_rank = groups._get_expert_data_parallel_rank(largest_group_name)
  2539. # In the case of E + D parallelism, only the
  2540. # first expert parallel group should save the expert weights
  2541. # since each expert parallel group is a copy of the model's experts
  2542. if exp_dp_rank != 0:
  2543. return
  2544. # Save optimizer states. They are different across each exp parallel rank.
  2545. optimizer_state = {
  2546. 'optimizer': self.optimizer.state_dict() if self.optimizer and not self.zero_optimization() else None
  2547. }
  2548. # TODO: why use BufferedWriter not the path
  2549. file_path = self._get_optimizer_ckpt_name(save_dir, tag, expp_rank)
  2550. self.checkpoint_engine.save(optimizer_state, file_path)
  2551. # get non-moe parameters
  2552. model_state_dict = self._get_non_moe_state_dict(
  2553. self.module_state_dict(exclude_frozen_parameters=exclude_frozen_parameters))
  2554. if expp_rank == 0:
  2555. # TODO: update num experts info,.. in checkpoint
  2556. state = {
  2557. 'module':
  2558. model_state_dict,
  2559. 'lr_scheduler':
  2560. self.lr_scheduler.state_dict() if self.lr_scheduler is not None else None,
  2561. 'data_sampler':
  2562. self.training_dataloader.data_sampler.state_dict() if
  2563. (self.training_dataloader is not None and self.curriculum_learning_enabled()) else None,
  2564. 'random_ltd':
  2565. self.random_ltd_scheduler.state_dict() if self.random_ltd_enabled() else None,
  2566. 'sparse_tensor_module_names':
  2567. self.sparse_tensor_module_names,
  2568. 'skipped_steps':
  2569. self.skipped_steps,
  2570. 'global_steps':
  2571. self.global_steps,
  2572. 'global_samples':
  2573. self.global_samples,
  2574. 'dp_world_size':
  2575. self.dp_world_size,
  2576. 'mp_world_size':
  2577. self.mp_world_size,
  2578. 'num_experts':
  2579. self.num_experts
  2580. }
  2581. state.update(client_state)
  2582. logger.info(f'Saving model checkpoint: {save_path}')
  2583. self.checkpoint_engine.save(state, save_path)
  2584. self._curr_save_path = None
  2585. def _create_checkpoint_file(self, save_dir, tag, zero_checkpoint):
  2586. name_function = (self._get_zero_ckpt_name if zero_checkpoint else self._get_ckpt_name)
  2587. try:
  2588. checkpoint_name = name_function(save_dir, tag)
  2589. path = os.path.dirname(checkpoint_name)
  2590. self.checkpoint_engine.makedirs(path, exist_ok=True)
  2591. except:
  2592. logger.error(f"Failed saving model checkpoint to {save_dir} with tag {tag}")
  2593. return False
  2594. return True
  2595. def _create_zero_checkpoint_files(self, save_dir, tag):
  2596. success = True
  2597. # zero checkpoint files are created sequentially
  2598. for rank in range(dist.get_world_size(self.optimizer.dp_process_group)):
  2599. if rank == self.global_rank:
  2600. success = self._create_checkpoint_file(save_dir, tag, True)
  2601. dist.barrier(group=self.optimizer.dp_process_group)
  2602. return success
  2603. def _save_checkpoint(self, save_dir, tag, client_state={}, exclude_frozen_parameters=False):
  2604. save_path = self._get_ckpt_name(save_dir, tag)
  2605. zero_optimizer_state = self.zero_optimization() or self.bfloat16_enabled()
  2606. save_frozen_param = self.zero_optimization_partition_gradients() and not exclude_frozen_parameters
  2607. # A hack to save the checkpointing directory. Pipeline parallelism overrides
  2608. # module_state_dict() and uses this path to save the model. module_state_dict()
  2609. # then instead just returns None. The module_state_dict() implementation in
  2610. # PipelineEngine expects the save path to be set in self._curr_ckpt_path.
  2611. self._curr_ckpt_path = os.path.join(save_dir, tag)
  2612. module = self.module_state_dict(exclude_frozen_parameters=exclude_frozen_parameters)
  2613. self._curr_ckpt_path = None
  2614. state = dict(module=module,
  2615. buffer_names=self._get_buffer_names(),
  2616. optimizer=self.optimizer.state_dict() if self.optimizer and not zero_optimizer_state else None,
  2617. param_shapes=self._get_zero_param_shapes() if self.optimizer and zero_optimizer_state else None,
  2618. frozen_param_shapes=self._get_zero_frozen_param_attributes(self._get_param_shape_func)
  2619. if save_frozen_param else None,
  2620. shared_params=self._get_shared_params() if self.optimizer and zero_optimizer_state else None,
  2621. frozen_param_fragments=self._get_zero_frozen_param_attributes(self._get_param_fragment_func)
  2622. if save_frozen_param else None,
  2623. lr_scheduler=self.lr_scheduler.state_dict() if self.lr_scheduler is not None else None,
  2624. data_sampler=self.training_dataloader.data_sampler.state_dict() if
  2625. (self.training_dataloader is not None and self.curriculum_learning_enabled()) else None,
  2626. random_ltd=self.random_ltd_scheduler.state_dict() if self.random_ltd_enabled() else None,
  2627. sparse_tensor_module_names=self.sparse_tensor_module_names,
  2628. skipped_steps=self.skipped_steps,
  2629. global_steps=self.global_steps,
  2630. global_samples=self.global_samples,
  2631. dp_world_size=self.dp_world_size,
  2632. mp_world_size=self.mp_world_size,
  2633. ds_config=self.config,
  2634. ds_version=version)
  2635. state.update(client_state)
  2636. if self.save_non_zero_checkpoint:
  2637. log_dist(message=f'Saving model checkpoint: {save_path}', ranks=[0, 1])
  2638. self.checkpoint_engine.save(state, save_path)
  2639. def _get_buffer_names(self):
  2640. buffer_names = []
  2641. # we save buffer names so that we could extract later the real buffers from the saved
  2642. # state_dict["module"] in the non-zero checkpoint - the buffers are already there but they
  2643. # are intermixed with param placeholders
  2644. # have to traverse the tree to be able to skip non-persistent buffers
  2645. def get_layer_named_buffers(module, prefix=""):
  2646. for name, buf in module.named_buffers(recurse=False):
  2647. if buf is not None and name not in module._non_persistent_buffers_set:
  2648. buffer_names.append(prefix + name)
  2649. for name, child in module.named_children():
  2650. if child is not None:
  2651. get_layer_named_buffers(child, prefix + name + ".")
  2652. get_layer_named_buffers(self.module, prefix="")
  2653. return buffer_names
  2654. def _get_param_shape_func(self, param):
  2655. return param.ds_shape if hasattr(param, 'ds_id') else param.shape
  2656. def _get_param_fragment_func(self, param):
  2657. return param.ds_tensor.detach().cpu() if hasattr(param, 'ds_id') else param.detach().cpu()
  2658. def _get_zero_frozen_param_attributes(self, attr_func):
  2659. frozen_param_fragments = OrderedDict()
  2660. for param in self.module.parameters():
  2661. if param.requires_grad:
  2662. continue
  2663. if param not in self.param_names:
  2664. raise ValueError(f"failed to find frozen {param} in named params")
  2665. name = self.param_names[param]
  2666. frozen_param_fragments[name] = attr_func(param)
  2667. return frozen_param_fragments
  2668. def _get_zero_param_shapes(self):
  2669. """Returns a dict of name to shape mapping, only for the flattened fp32 weights saved by the
  2670. optimizer. the names are exactly as in state_dict. The order is absolutely important, since
  2671. the saved data is just flattened data with no identifiers and requires reconstruction in the
  2672. same order it was saved.
  2673. We can't rely on self.module.named_parameters() to get the saved tensors, as some params
  2674. will be missing and others unsaved and then it'd be impossible to reconstruct state_dict
  2675. from the flattened weights.
  2676. optimizer.bit16_groups seems to be the easiest to use as it's in all zeroX versions.
  2677. """
  2678. param_group_shapes = []
  2679. cnt = 0
  2680. numel = 0
  2681. # zero2 started using a round_robin_bit16_groups which is a shuffled version of bit16_groups -
  2682. # if we don't use it, we get parameters ordered incorrectly
  2683. if hasattr(self.optimizer, "round_robin_bit16_groups"):
  2684. bit16_groups = self.optimizer.round_robin_bit16_groups
  2685. elif self.bfloat16_enabled() and not self.zero_optimization():
  2686. bit16_groups = self.optimizer.bf16_groups
  2687. else:
  2688. bit16_groups = self.optimizer.bit16_groups if self.zero_optimization_stage(
  2689. ) == 2 else self.optimizer.fp16_groups
  2690. for bit16_group in bit16_groups:
  2691. param_shapes = OrderedDict()
  2692. for param in bit16_group:
  2693. cnt += 1
  2694. numel += param.ds_numel if hasattr(param, "ds_numel") else param.numel()
  2695. shape = param.ds_shape if hasattr(param, "ds_shape") else param.shape
  2696. if param not in self.param_names:
  2697. raise ValueError(f"failed to find optimizer param in named params")
  2698. name = self.param_names[param]
  2699. param_shapes[name] = shape
  2700. # uncomment to debug zero_to_fp32.py problems
  2701. # if self.global_rank == 0: print(f"saving param {name} {shape} (numel={shape.numel()})")
  2702. param_group_shapes.append(param_shapes)
  2703. # if self.global_rank == 0: print(f"Total saved {numel} numels in {cnt} params")
  2704. return param_group_shapes
  2705. def _get_shared_params(self):
  2706. """
  2707. Returns a dict of shared params, which can later be used to reconstruct the original state dict,
  2708. e.g. in `zero_to_fp32`. Each dict entry is a pair of param names, where the key is the name
  2709. of the variable that isn't stored and the value is the actual param holding data.
  2710. """
  2711. shared_index = {}
  2712. shared_params_by_full_name = {}
  2713. is_zero3_model = (self.zero_optimization_partition_weights()
  2714. and any(hasattr(param, "ds_id") for param in self.module.parameters()))
  2715. def get_layer_state_dict(module, prefix=""):
  2716. # handle params
  2717. for name, param in module.named_parameters(recurse=False):
  2718. if param is None or (is_zero3_model and not hasattr(param, "ds_id")):
  2719. continue
  2720. key = prefix + name
  2721. # When weights are manged by stage 3, we can't rely on param.data_ptr() as it will be reused
  2722. # as weights get gathered and reduced, but param.ds_id is unique across all zero weights
  2723. # (and shared params will have the same param.ds_id)
  2724. param_id = param.ds_id if is_zero3_model else param.data_ptr()
  2725. if param_id in shared_index:
  2726. # shared weights
  2727. #print(f"`{key}` is shared with `{shared_index[param_id]}`")
  2728. shared_params_by_full_name[key] = shared_index[param_id]
  2729. else:
  2730. shared_index[param_id] = key
  2731. for name, child in module.named_children():
  2732. if child is not None:
  2733. get_layer_state_dict(child, prefix + name + ".")
  2734. if dist.get_rank() == 0:
  2735. get_layer_state_dict(self.module, prefix="")
  2736. return shared_params_by_full_name
  2737. def _copy_recovery_script(self, save_path):
  2738. base_dir = os.path.dirname(os.path.dirname(__file__))
  2739. script = "zero_to_fp32.py"
  2740. src = os.path.join(base_dir, "utils", script)
  2741. dst = os.path.join(save_path, script)
  2742. #logger.info(f"creating recovery script {dst}")
  2743. copyfile(src, dst)
  2744. # make executable
  2745. os.chmod(dst, os.stat(dst).st_mode | stat.S_IEXEC)
  2746. def _save_zero_checkpoint(self, save_path, tag):
  2747. zero_checkpoint_name = self._get_zero_ckpt_name(save_path, tag)
  2748. zero_sd = dict(optimizer_state_dict=self.optimizer.state_dict(), ds_config=self.config, ds_version=version)
  2749. self.checkpoint_engine.save(zero_sd, zero_checkpoint_name)
  2750. if self.global_rank == 0:
  2751. self._copy_recovery_script(save_path)
  2752. ckpt_type = 'zero' if self.zero_optimization() else 'bf16_zero'
  2753. logger.info(f'{ckpt_type} checkpoint saved {zero_checkpoint_name}')
  2754. def _zero3_consolidated_16bit_state_dict(self):
  2755. """
  2756. Get a full non-partitioned state_dict with fp16 weights on cpu.
  2757. Important: this function must be called on all ranks and not just rank 0.
  2758. This is similar to nn.Module.state_dict (modelled after _save_to_state_dict), but:
  2759. 1. consolidates the weights from different partitions on gpu0
  2760. 2. works on one layer at a time to require as little gpu0 memory as possible, by
  2761. moving the already consolidated weights to cpu
  2762. 3. takes care to keep the shared params shared when gradually copying the params to cpu
  2763. Returns:
  2764. a consolidated fp16 ``state_dict`` on cpu on rank 0, ``None`` on other ranks
  2765. """
  2766. if not self.zero_optimization_partition_weights():
  2767. raise ValueError("this function requires ZeRO-3 mode")
  2768. state_dict = OrderedDict() if dist.get_rank() == 0 else None
  2769. shared_params = {}
  2770. def get_layer_state_dict(module, prefix=""):
  2771. # gather one layer at a time to be memory-efficient
  2772. # must use modifier_rank=0 to release GPU memory after each layer gathered
  2773. #see_memory_usage("before GatheredParameters", force=True)
  2774. with deepspeed.zero.GatheredParameters(list(module.parameters(recurse=False)), modifier_rank=0):
  2775. if dist.get_rank() == 0:
  2776. # handle params
  2777. for name, param in module.named_parameters(recurse=False):
  2778. if param is None:
  2779. continue
  2780. key = prefix + name
  2781. # can't rely on param.data_ptr() as it will be reused as weights gets
  2782. # gathered and reduced, but param.ds_id is unique across all zero weights
  2783. # (and shared params will have the same param.ds_id)
  2784. if param.ds_id in shared_params:
  2785. # shared weights
  2786. #print(f"`{key}` is shared with `{shared_params[param.ds_id]}`")
  2787. state_dict[key] = state_dict[shared_params[param.ds_id]]
  2788. else:
  2789. state_dict[key] = param.detach().cpu()
  2790. shared_params[param.ds_id] = key
  2791. #print(f"param {param.ds_id} {param.shape} {key} ")
  2792. # now buffers - not sure if need to take care of potentially shared weights here
  2793. for name, buf in module.named_buffers(recurse=False):
  2794. if (buf is not None and name not in module._non_persistent_buffers_set):
  2795. state_dict[prefix + name] = buf.detach().cpu()
  2796. #see_memory_usage("after GatheredParameters", force=True)
  2797. for name, child in module.named_children():
  2798. if child is not None:
  2799. get_layer_state_dict(child, prefix + name + ".")
  2800. # Prepare for checkpoint save by ensuring all parameters are partitioned
  2801. self.optimizer.checkpoint_event_prologue()
  2802. see_memory_usage("before get_layer_state_dict", force=False)
  2803. get_layer_state_dict(self.module, prefix="")
  2804. see_memory_usage("after get_layer_state_dict", force=False)
  2805. self.optimizer.checkpoint_event_epilogue()
  2806. return state_dict
  2807. def save_fp16_model(self, save_dir, save_filename="pytorch_model.bin"):
  2808. """has been renamed to save_16bit_model, keeping this around for backwards
  2809. compatibility"""
  2810. return self.save_16bit_model(save_dir, save_filename)
  2811. def save_16bit_model(self, save_dir, save_filename="pytorch_model.bin"):
  2812. """
  2813. Save 16bit model weights
  2814. This method saves the 16bit model weights at the desired destination.
  2815. Arguments:
  2816. save_dir: Required. Directory for saving the model
  2817. save_filename: Optional. Filename to save to. Defaults to ``pytorch_model.bin``
  2818. Returns:
  2819. ``True`` when a model has been saved, ``False`` otherwise. It will not be saved if
  2820. stage3_gather_16bit_weights_on_model_save is ``False``.
  2821. Important: all processes must call this method and not just the process with rank 0. It is
  2822. because the processes need to work in sync to gather the weights. This method will hang
  2823. waiting to synchronize with other processes if it's called just for the process with rank 0.
  2824. """
  2825. path = os.path.join(save_dir, save_filename)
  2826. if self.zero_optimization_partition_weights():
  2827. if self.zero_gather_16bit_weights_on_model_save():
  2828. # consolidation is expensive in time and memory and therefore isn't a default
  2829. state_dict = self._zero3_consolidated_16bit_state_dict()
  2830. else:
  2831. # the model will be bogus if not consolidated so don't confuse the user by saving it
  2832. logger.info(
  2833. f"Did not save the model {path} because `stage3_gather_16bit_weights_on_model_save` is False")
  2834. return False
  2835. else:
  2836. state_dict = self.module.state_dict()
  2837. tag = f"global_step{self.global_steps}"
  2838. tag = str(tag)
  2839. self.checkpoint_engine.create(tag)
  2840. if dist.get_rank() == 0:
  2841. self.checkpoint_engine.makedirs(save_dir, exist_ok=True)
  2842. logger.info(f"Saving model weights to {path}, tag: {tag}")
  2843. self.checkpoint_engine.save(state_dict, path)
  2844. self.checkpoint_engine.commit(tag)
  2845. return True
  2846. def empty_partition_cache(self):
  2847. """
  2848. Release GPU memory consumed by offloaded model parameters.
  2849. """
  2850. if hasattr(self.optimizer, 'empty_partition_cache'):
  2851. self.optimizer.empty_partition_cache()
  2852. gc.collect()
  2853. get_accelerator().empty_cache()