Smangrul/accelerate mp integrate (#23148)
* mixed precision support via accelerate * fix issues * fix for the sharded ddp case * fix flax and tf failing tests * `refactor the place to create `Accelerator` object * address comments by removing debugging print statements
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@@ -212,6 +212,8 @@ if is_accelerate_available():
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if version.parse(accelerate_version) >= version.parse("0.16"):
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from accelerate import skip_first_batches
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from accelerate import Accelerator
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if TYPE_CHECKING:
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import optuna
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@@ -337,6 +339,9 @@ class Trainer:
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self.deepspeed = None
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self.is_in_train = False
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# create accelerator object
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self.accelerator = Accelerator()
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# memory metrics - must set up as early as possible
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self._memory_tracker = TrainerMemoryTracker(self.args.skip_memory_metrics)
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self._memory_tracker.start()
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@@ -607,7 +612,7 @@ class Trainer:
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"but SageMaker Model Parallelism < 1.10 does not support FP16 in trainer."
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)
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if args.fp16 or args.bf16:
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if (args.fp16 or args.bf16) and self.sharded_ddp is not None:
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if args.half_precision_backend == "auto":
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if args.device == torch.device("cpu"):
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if args.fp16:
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@@ -624,6 +629,7 @@ class Trainer:
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self.do_grad_scaling = False
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if (args.fp16 or args.bf16) and not (args.deepspeed or is_sagemaker_mp_enabled()):
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# deepspeed and SageMaker Model Parallel manage their own half precision
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if self.sharded_ddp is not None:
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if args.half_precision_backend == "cuda_amp":
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self.use_cuda_amp = True
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self.amp_dtype = torch.float16 if args.fp16 else torch.bfloat16
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@@ -647,7 +653,7 @@ class Trainer:
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elif args.half_precision_backend == "cpu_amp":
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self.use_cpu_amp = True
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self.amp_dtype = torch.bfloat16
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else:
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elif args.half_precision_backend == "apex":
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if not is_apex_available():
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raise ImportError(
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"Using FP16 with APEX but APEX is not installed, please refer to"
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@@ -1801,6 +1807,11 @@ class Trainer:
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if delay_optimizer_creation:
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self.create_optimizer_and_scheduler(num_training_steps=max_steps)
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# prepare using `accelerator` prepare
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model, self.optimizer, self.lr_scheduler = self.accelerator.prepare(
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self.model, self.optimizer, self.lr_scheduler
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)
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# Check if saved optimizer or scheduler states exist
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self._load_optimizer_and_scheduler(resume_from_checkpoint)
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@@ -2013,10 +2024,15 @@ class Trainer:
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elif hasattr(model, "clip_grad_norm_"):
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# Some models (like FullyShardedDDP) have a specific way to do gradient clipping
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model.clip_grad_norm_(args.max_grad_norm)
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else:
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elif self.use_apex:
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# Revert to normal clipping otherwise, handling Apex or full precision
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nn.utils.clip_grad_norm_(
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amp.master_params(self.optimizer) if self.use_apex else model.parameters(),
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amp.master_params(self.optimizer),
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args.max_grad_norm,
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)
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else:
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self.accelerator.clip_grad_norm_(
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model.parameters(),
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args.max_grad_norm,
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)
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@@ -2802,7 +2818,7 @@ class Trainer:
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# loss gets scaled under gradient_accumulation_steps in deepspeed
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loss = self.deepspeed.backward(loss)
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else:
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loss.backward()
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self.accelerator.backward(loss)
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return loss.detach()
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@@ -1562,6 +1562,15 @@ class TrainingArguments:
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FutureWarning,
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)
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# if training args is specified, it will override the one specified in the accelerate config
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if self.half_precision_backend != "apex" and len(self.sharded_ddp) == 0:
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mixed_precision_dtype = os.environ.get("ACCELERATE_MIXED_PRECISION", "no")
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if self.fp16:
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mixed_precision_dtype = "fp16"
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elif self.bf16:
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mixed_precision_dtype = "bf16"
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os.environ["ACCELERATE_MIXED_PRECISION"] = mixed_precision_dtype
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def __str__(self):
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self_as_dict = asdict(self)
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