( ref_model: typing.Union[transformers.modeling_utils.PreTrainedModel, torch.nn.modules.module.Module] accelerator: typing.Optional[accelerate.accelerator.Accelerator] )
A TrainerCallback
that displays the progress of training or evaluation using Rich.
( judge: BasePairwiseJudge trainer: Trainer generation_config: typing.Optional[transformers.generation.configuration_utils.GenerationConfig] = None num_prompts: typing.Optional[int] = None shuffle_order: bool = True )
Parameters
BasePairwiseJudge
) —
The judge to use for comparing completions. Trainer
) —
Trainer to which the callback will be attached. The trainer’s evaluation dataset must include a "prompt"
column containing the prompts for generating completions. If the Trainer
has a reference model (via the
ref_model
attribute), it will use this reference model for generating the reference completions;
otherwise, it defaults to using the initial model. GenerationConfig
, optional) —
The generation config to use for generating completions. int
or None
, optional, defaults to None
) —
The number of prompts to generate completions for. If not provided, defaults to the number of examples
in the evaluation dataset. bool
, optional, defaults to True
) —
Whether to shuffle the order of the completions before judging. A TrainerCallback that computes the win rate of a model based on a reference.
It generates completions using prompts from the evaluation dataset and compares the trained model’s outputs against
a reference. The reference is either the initial version of the model (before training) or the reference model, if
available in the trainer. During each evaluation step, a judge determines how often the trained model’s completions
win against the reference using a judge. The win rate is then logged in the trainer’s logs under the key
"eval_win_rate"
.
( trainer: Trainer generation_config: typing.Optional[transformers.generation.configuration_utils.GenerationConfig] = None num_prompts: typing.Optional[int] = None freq: typing.Optional[int] = None )
Parameters
Trainer
) —
Trainer to which the callback will be attached. The trainer’s evaluation dataset must include a "prompt"
column containing the prompts for generating completions. GenerationConfig
, optional) —
The generation config to use for generating completions. int
or None
, optional) —
The number of prompts to generate completions for. If not provided, defaults to the number of examples in the evaluation dataset. int
or None
, optional) —
The frequency at which to log completions. If not provided, defaults to the trainer’s eval_steps
. A TrainerCallback that logs completions to Weights & Biases.