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import os |
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import textwrap |
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from typing import Any, Callable, Optional, Union |
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|
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import jinja2 |
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import torch |
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import torch.nn as nn |
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import torch.nn.functional as F |
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from datasets import Dataset, IterableDataset |
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from transformers import ( |
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BaseImageProcessor, |
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FeatureExtractionMixin, |
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PreTrainedModel, |
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PreTrainedTokenizerBase, |
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ProcessorMixin, |
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TrainerCallback, |
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is_wandb_available, |
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) |
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from transformers.trainer_utils import EvalPrediction |
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from transformers.training_args import OptimizerNames |
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from transformers.utils import is_apex_available |
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|
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from ..data_utils import is_conversational, maybe_apply_chat_template |
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from ..models.modeling_base import GeometricMixtureWrapper |
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from ..models.utils import unwrap_model_for_generation |
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from .judges import BasePairwiseJudge |
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from .nash_md_config import NashMDConfig |
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from .online_dpo_trainer import OnlineDPOTrainer |
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from .utils import ( |
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SIMPLE_CHAT_TEMPLATE, |
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empty_cache, |
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generate_model_card, |
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get_comet_experiment_url, |
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get_reward, |
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selective_log_softmax, |
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truncate_right, |
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) |
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|
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if is_apex_available(): |
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from apex import amp |
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|
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if is_wandb_available(): |
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import wandb |
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class NashMDTrainer(OnlineDPOTrainer): |
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r""" |
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Initialize NashMDTrainer as a subclass of [`OnlineDPOConfig`]. |
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Args: |
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model (`transformers.PreTrainedModel`): |
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The model to train, preferably an `AutoModelForCausalLM`. |
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ref_model (`PreTrainedModelWrapper`): |
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Hugging Face transformer model with a casual language modelling head. Used for implicit reward computation and loss. If no |
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reference model is provided, the trainer will create a reference model with the same architecture as the model to be optimized. |
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reward_model (`transformers.PreTrainedModel`): |
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The reward model to score completions with, preferably an `AutoModelForSequenceClassification`. |
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judge (`BasePairwiseJudge`): |
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The judge to use for pairwise comparison of model completions. |
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args (`NashMDConfig`): |
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The NashMD config arguments to use for training. |
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data_collator (`transformers.DataCollator`): |
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The data collator to use for training. If None is specified, the default data collator (`DPODataCollatorWithPadding`) will be used |
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which will pad the sequences to the maximum length of the sequences in the batch, given a dataset of paired sequences. |
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train_dataset (`datasets.Dataset`): |
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The dataset to use for training. |
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eval_dataset (`datasets.Dataset`): |
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The dataset to use for evaluation. |
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processing_class (`PreTrainedTokenizerBase` or `BaseImageProcessor` or `FeatureExtractionMixin` or `ProcessorMixin`, *optional*): |
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Processing class used to process the data. If provided, will be used to automatically process the inputs |
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for the model, and it will be saved along the model to make it easier to rerun an interrupted training or |
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reuse the fine-tuned model. |
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peft_config (`dict`): |
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The peft config to use for training. |
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compute_metrics (`Callable[[EvalPrediction], dict]`, *optional*): |
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The function to use to compute the metrics. Must take a `EvalPrediction` and return |
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a dictionary string to metric values. |
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callbacks (`list[transformers.TrainerCallback]`): |
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The callbacks to use for training. |
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optimizers (`tuple[torch.optim.Optimizer, torch.optim.lr_scheduler.LambdaLR]`): |
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The optimizer and scheduler to use for training. |
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preprocess_logits_for_metrics (`Callable[[torch.Tensor, torch.Tensor], torch.Tensor]`): |
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The function to use to preprocess the logits before computing the metrics. |
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""" |
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|
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_tag_names = ["trl", "nash-md"] |
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|
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def __init__( |
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self, |
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model: Union[PreTrainedModel, nn.Module] = None, |
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ref_model: Union[PreTrainedModel, nn.Module] = None, |
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reward_model: Union[PreTrainedModel, nn.Module, None] = None, |
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judge: Optional[BasePairwiseJudge] = None, |
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args: Optional[NashMDConfig] = None, |
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data_collator: Optional[Callable] = None, |
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train_dataset: Optional[Union[Dataset, IterableDataset]] = None, |
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eval_dataset: Optional[Union[Dataset, dict[str, Dataset]]] = None, |
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processing_class: Optional[ |
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Union[PreTrainedTokenizerBase, BaseImageProcessor, FeatureExtractionMixin, ProcessorMixin] |
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] = None, |
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peft_config: Optional[dict] = None, |
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compute_metrics: Optional[Callable[[EvalPrediction], dict]] = None, |
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callbacks: Optional[list[TrainerCallback]] = None, |
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optimizers: tuple[torch.optim.Optimizer, torch.optim.lr_scheduler.LambdaLR] = (None, None), |
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preprocess_logits_for_metrics: Optional[Callable[[torch.Tensor, torch.Tensor], torch.Tensor]] = None, |
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) -> None: |
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super().__init__( |
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model=model, |
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ref_model=ref_model, |
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reward_model=reward_model, |
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judge=judge, |
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args=args, |
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data_collator=data_collator, |
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train_dataset=train_dataset, |
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eval_dataset=eval_dataset, |
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processing_class=processing_class, |
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reward_processing_class=processing_class, |
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peft_config=peft_config, |
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compute_metrics=compute_metrics, |
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callbacks=callbacks, |
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optimizers=optimizers, |
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preprocess_logits_for_metrics=preprocess_logits_for_metrics, |
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) |
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|
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self._mixture_coef = self.args.mixture_coef |
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self.stats = { |
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"loss/kl": [], |
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"objective/entropy": [], |
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"loss/score": [], |
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"rewards/probabilities": [], |
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"rewards/accuracies": [], |
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"rewards/margins": [], |
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"logps/chosen": [], |
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"logps/rejected": [], |
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"val/model_contain_eos_token": [], |
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"val/ref_contain_eos_token": [], |
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"beta": [], |
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"mixture_coef": [], |
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} |
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if self.reward_model is not None: |
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self.stats["rewards/chosen"] = [] |
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self.stats["rewards/rejected"] = [] |
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|
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@property |
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def mixture_coef(self): |
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if isinstance(self._mixture_coef, list): |
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epoch = self.state.epoch |
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return self._mixture_coef[epoch] if epoch < len(self._mixture_coef) else self._mixture_coef[-1] |
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else: |
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return self._mixture_coef |
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|
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def _generate_completions(self, model, prompts): |
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with unwrap_model_for_generation(model, self.accelerator) as unwrapped_model: |
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model_output = unwrapped_model.generate( |
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input_ids=prompts["input_ids"], |
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attention_mask=prompts["attention_mask"], |
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generation_config=self.generation_config, |
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) |
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ref_model = model if self.ref_model is None else self.ref_model |
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with torch.no_grad(), unwrap_model_for_generation(ref_model, self.accelerator) as unwrapped_ref_model: |
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mixture_model = GeometricMixtureWrapper( |
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model=unwrapped_model, |
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ref_model=unwrapped_ref_model, |
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generation_config=self.generation_config, |
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mixture_coef=self.mixture_coef, |
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device=self.accelerator.device, |
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) |
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mixture_output = mixture_model.generate( |
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input_ids=prompts["input_ids"], |
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attention_mask=prompts["attention_mask"], |
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generation_config=self.generation_config, |
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) |
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return model_output, mixture_output |
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|
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def _process_completions(self, model_output, mixture_output, prompts): |
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context_length = prompts["input_ids"].shape[1] |
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model_completion_ids = model_output[:, context_length:] |
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model_completion_ids, model_completion_mask = truncate_right( |
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model_completion_ids, self.processing_class.eos_token_id, self.processing_class.pad_token_id |
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) |
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model_data = { |
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"input_ids": torch.cat((prompts["input_ids"], model_completion_ids), dim=1), |
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"attention_mask": torch.cat((prompts["attention_mask"], model_completion_mask), dim=1), |
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"raw": prompts["raw"], |
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} |
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mixture_completion_ids = mixture_output[:, context_length:] |
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mixture_completion_ids, mixture_completion_mask = truncate_right( |
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mixture_completion_ids, self.processing_class.eos_token_id, self.processing_class.pad_token_id |
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) |
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mixture_data = { |
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"input_ids": torch.cat((prompts["input_ids"], mixture_completion_ids), dim=1), |
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"attention_mask": torch.cat((prompts["attention_mask"], mixture_completion_mask), dim=1), |
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"raw": prompts["raw"], |
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} |
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return model_data, mixture_data |
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|
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def _compute_rewards(self, model_data, mixture_data, context_length): |
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with torch.no_grad(): |
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_, model_scores, _ = get_reward( |
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self.reward_model, model_data["input_ids"], self.processing_class.pad_token_id, context_length |
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) |
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_, mixture_scores, _ = get_reward( |
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self.reward_model, mixture_data["input_ids"], self.processing_class.pad_token_id, context_length |
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) |
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if self.args.missing_eos_penalty is not None: |
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model_contain_eos = torch.any(model_data["input_ids"] == self.processing_class.eos_token_id, dim=-1) |
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mixture_contain_eos = torch.any(mixture_data["input_ids"] == self.processing_class.eos_token_id, dim=-1) |
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model_scores[~model_contain_eos] -= self.args.missing_eos_penalty |
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mixture_scores[~mixture_contain_eos] -= self.args.missing_eos_penalty |
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return model_scores, mixture_scores |
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|
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def _compute_judge(self, model_data, mixture_data, context_length): |
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prompts = model_data["raw"] |
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model_data_completions = self.processing_class.batch_decode( |
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model_data["input_ids"][:, context_length:], skip_special_tokens=True |
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) |
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model_data_completions = [completion.strip() for completion in model_data_completions] |
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|
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mixture_data_completions = self.processing_class.batch_decode( |
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mixture_data["input_ids"][:, context_length:], skip_special_tokens=True |
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) |
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mixture_data_completions = [completion.strip() for completion in mixture_data_completions] |
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if is_conversational({"prompt": prompts[0]}): |
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model_data_completions = [ |
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[{"role": "assistant", "content": completion}] for completion in model_data_completions |
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] |
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environment = jinja2.Environment() |
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template = environment.from_string(SIMPLE_CHAT_TEMPLATE) |
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prompts = [template.render(messages=message) for message in prompts] |
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model_data_completions = [template.render(messages=completion) for completion in model_data_completions] |
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|
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mixture_data_completions = [ |
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[{"role": "assistant", "content": completion}] for completion in mixture_data_completions |
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] |
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mixture_data_completions = [ |
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template.render(messages=completion) for completion in mixture_data_completions |
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] |
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|
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probability = self.judge.judge( |
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prompts, |
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list(zip(model_data_completions, mixture_data_completions)), |
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return_scores=True, |
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) |
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return torch.tensor(probability, device=model_data["input_ids"].device) |
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|
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def _compute_logprobs(self, model, model_data, context_length): |
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def compute_logprobs_for_data(m, data): |
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output = m(data["input_ids"], attention_mask=data["attention_mask"]) |
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logits = output.logits[:, context_length - 1 : -1] |
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token_logprobs = selective_log_softmax(logits, data["input_ids"][:, context_length:]) |
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return token_logprobs |
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|
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model_logprobs_model_data = compute_logprobs_for_data(model, model_data) |
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|
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with torch.no_grad(): |
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if self.ref_model is None: |
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with model.disable_adapter(): |
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ref_logprobs_model_data = compute_logprobs_for_data(model, model_data) |
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else: |
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ref_logprobs_model_data = compute_logprobs_for_data(self.ref_model, model_data) |
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|
|
|
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model_padding_mask = model_data["attention_mask"][:, context_length:] == 0 |
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model_logprobs_model_data = model_logprobs_model_data.masked_fill(model_padding_mask, 0.0) |
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ref_logprobs_model_data = ref_logprobs_model_data.masked_fill(model_padding_mask, 0.0) |
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|
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return (model_logprobs_model_data, ref_logprobs_model_data) |
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|
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def _compute_losses( |
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self, |
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model_logprobs_model_data, |
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ref_logprobs_model_data, |
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probability, |
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): |
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|
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score = (probability - 0.5) * model_logprobs_model_data.sum(1) |
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|
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with torch.no_grad(): |
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log_ratio = model_logprobs_model_data - ref_logprobs_model_data |
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kl_div_log = log_ratio.sum(1) |
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kl_div_loss = (log_ratio * model_logprobs_model_data).sum(1) |
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|
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loss = self.beta * kl_div_loss - score |
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|
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return loss.mean(), score, kl_div_log |
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|
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def _log_statistics( |
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self, |
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model_data, |
|
mixture_data, |
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model_logprobs_model_data, |
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ref_logprobs_model_data, |
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probability, |
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score, |
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kl_div, |
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context_length, |
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model_scores=None, |
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mixture_scores=None, |
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): |
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|
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def gather_mean(tensor): |
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return self.accelerator.gather_for_metrics(tensor).mean().item() |
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|
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self.stats["loss/score"].append(gather_mean(score)) |
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|
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self.stats["loss/kl"].append(gather_mean(kl_div)) |
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model_logprobs_model_data_sum = model_logprobs_model_data.sum(1) |
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ref_logprobs_model_data_sum = ref_logprobs_model_data.sum(1) |
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|
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self.stats["logps/chosen"].append(gather_mean(model_logprobs_model_data_sum)) |
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self.stats["logps/rejected"].append(gather_mean(ref_logprobs_model_data_sum)) |
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|
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if self.reward_model is not None: |
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self.stats["rewards/chosen"].append(gather_mean(model_scores)) |
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self.stats["rewards/rejected"].append(gather_mean(mixture_scores)) |
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self.stats["rewards/probabilities"].append(gather_mean(probability)) |
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entropy_model_data = -model_logprobs_model_data.sum(1) |
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self.stats["objective/entropy"].append(gather_mean(entropy_model_data)) |
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|
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|
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margin = model_logprobs_model_data_sum - ref_logprobs_model_data_sum |
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self.stats["rewards/margins"].append(gather_mean(margin)) |
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|
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accuracy = (margin > 0).float() |
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self.stats["rewards/accuracies"].append(gather_mean(accuracy)) |
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|
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|
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model_eos = (model_data["input_ids"][:, context_length:] == self.processing_class.eos_token_id).any(dim=1) |
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mixture_eos = (mixture_data["input_ids"][:, context_length:] == self.processing_class.eos_token_id).any(dim=1) |
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self.stats["val/model_contain_eos_token"].append(gather_mean(model_eos.float())) |
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self.stats["val/ref_contain_eos_token"].append(gather_mean(mixture_eos.float())) |
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|
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self.stats["beta"].append(self.beta) |
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self.stats["mixture_coef"].append(self.mixture_coef) |
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|
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def training_step( |
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self, model: nn.Module, inputs: dict[str, Union[torch.Tensor, Any]], num_items_in_batch: Optional[int] = None |
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) -> torch.Tensor: |
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model.train() |
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|
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|
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batch_size = len(next(iter(inputs.values()))) |
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prompts = inputs["prompt"] |
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inputs = [{k: v[i] for k, v in inputs.items()} for i in range(batch_size)] |
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inputs = [maybe_apply_chat_template(x, self.processing_class) for x in inputs] |
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inputs = [self.tokenize_row(x, self.model.config.is_encoder_decoder, self.processing_class) for x in inputs] |
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inputs = self.data_collator(inputs) |
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|
|
|
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inputs = self._prepare_inputs(inputs) |
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context_length = inputs["prompt_input_ids"].shape[1] |
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prompts = { |
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"input_ids": inputs["prompt_input_ids"], |
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"attention_mask": inputs["prompt_attention_mask"], |
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"raw": prompts, |
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} |
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del inputs |
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|
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model_output, mixture_output = self._generate_completions(model, prompts) |
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|
|
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model_data, mixture_data = self._process_completions(model_output, mixture_output, prompts) |
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|
|
|
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if self.reward_model is not None: |
|
model_scores, mixture_scores = self._compute_rewards(model_data, mixture_data, context_length) |
|
|
|
probability = F.sigmoid(model_scores - mixture_scores) |
|
else: |
|
model_scores, mixture_scores = None, None |
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probability = self._compute_judge(model_data, mixture_data, context_length) |
|
|
|
|
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model_logprobs_model_data, ref_logprobs_model_data = self._compute_logprobs(model, model_data, context_length) |
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|
|
|
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loss, score, kl_div = self._compute_losses(model_logprobs_model_data, ref_logprobs_model_data, probability) |
|
|
|
|
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self._log_statistics( |
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model_data, |
|
mixture_data, |
|
model_logprobs_model_data.detach(), |
|
ref_logprobs_model_data, |
|
probability, |
|
score.detach(), |
|
kl_div.detach(), |
|
context_length, |
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model_scores, |
|
mixture_scores, |
|
) |
|
|
|
if ( |
|
self.args.torch_empty_cache_steps is not None |
|
and self.state.global_step % self.args.torch_empty_cache_steps == 0 |
|
): |
|
empty_cache() |
|
|
|
kwargs = {} |
|
|
|
if self.args.optim in [OptimizerNames.LOMO, OptimizerNames.ADALOMO]: |
|
kwargs["learning_rate"] = self._get_learning_rate() |
|
|
|
if self.args.n_gpu > 1: |
|
loss = loss.mean() |
|
|
|
if self.use_apex: |
|
with amp.scale_loss(loss, self.optimizer) as scaled_loss: |
|
scaled_loss.backward() |
|
else: |
|
self.accelerator.backward(loss, **kwargs) |
|
|
|
return loss.detach() / self.args.gradient_accumulation_steps |
|
|
|
def create_model_card( |
|
self, |
|
model_name: Optional[str] = None, |
|
dataset_name: Optional[str] = None, |
|
tags: Union[str, list[str], None] = None, |
|
): |
|
""" |
|
Creates a draft of a model card using the information available to the `Trainer`. |
|
|
|
Args: |
|
model_name (`str` or `None`, *optional*, defaults to `None`): |
|
Name of the model. |
|
dataset_name (`str` or `None`, *optional*, defaults to `None`): |
|
Name of the dataset used for training. |
|
tags (`str`, `list[str]` or `None`, *optional*, defaults to `None`): |
|
Tags to be associated with the model card. |
|
""" |
|
if not self.is_world_process_zero(): |
|
return |
|
|
|
if hasattr(self.model.config, "_name_or_path") and not os.path.isdir(self.model.config._name_or_path): |
|
base_model = self.model.config._name_or_path |
|
else: |
|
base_model = None |
|
|
|
tags = tags or [] |
|
if isinstance(tags, str): |
|
tags = [tags] |
|
|
|
if hasattr(self.model.config, "unsloth_version"): |
|
tags.append("unsloth") |
|
|
|
citation = textwrap.dedent("""\ |
|
@inproceedings{munos2024nash, |
|
title = {{Nash Learning from Human Feedback}}, |
|
author = {R{\'{e}}mi Munos and Michal Valko and Daniele Calandriello and Mohammad Gheshlaghi Azar and Mark Rowland and Zhaohan Daniel Guo and Yunhao Tang and Matthieu Geist and Thomas Mesnard and C{\\^{o}}me Fiegel and Andrea Michi and Marco Selvi and Sertan Girgin and Nikola Momchev and Olivier Bachem and Daniel J. Mankowitz and Doina Precup and Bilal Piot}, |
|
year = 2024, |
|
booktitle = {Forty-first International Conference on Machine Learning, {ICML} 2024, Vienna, Austria, July 21-27, 2024}, |
|
publisher = {OpenReview.net}, |
|
url = {https://openreview.net/forum?id=Y5AmNYiyCQ} |
|
}""") |
|
|
|
model_card = generate_model_card( |
|
base_model=base_model, |
|
model_name=model_name, |
|
hub_model_id=self.hub_model_id, |
|
dataset_name=dataset_name, |
|
tags=tags, |
|
wandb_url=wandb.run.get_url() if is_wandb_available() and wandb.run is not None else None, |
|
comet_url=get_comet_experiment_url(), |
|
trainer_name="Nash-MD", |
|
trainer_citation=citation, |
|
paper_title="Nash Learning from Human Feedback", |
|
paper_id="2312.00886", |
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) |
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model_card.save(os.path.join(self.args.output_dir, "README.md")) |
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