TRL documentation

GRPO With Replay Buffer

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GRPO With Replay Buffer

This experimental trainer, trains a model with GRPO but replaces groups (and corresponding completions) that have 0 standard deviation with groups with high rewards and standard deviation that’ve been used to train a model in prior batches.

Usage

import torch
from trl.experimental.grpo_with_replay_buffer import GRPOWithReplayBufferConfig, GRPOWithReplayBufferTrainer
from datasets import load_dataset

dataset = load_dataset("trl-internal-testing/zen", "standard_prompt_only", split="train")

# Guarantee that some rewards have 0 std
def custom_reward_func(completions, **kwargs):
    if torch.rand(1).item() < 0.25:
        return [0] * len(completions)  # simulate some None rewards
    else:
        return torch.rand(len(completions)).tolist()

training_args = GRPOWithReplayBufferConfig(
    output_dir="./tmp",
    learning_rate=1e-4,
    per_device_train_batch_size=4,
    num_generations=4,
    max_completion_length=8,
    replay_buffer_size=8,
    report_to="none",
)

trainer = GRPOWithReplayBufferTrainer(
    model="trl-internal-testing/tiny-Qwen2ForCausalLM-2.5",
    reward_funcs=[custom_reward_func],
    args=training_args,
    train_dataset=dataset,
)

previous_trainable_params = {n: param.clone() for n, param in trainer.model.named_parameters()}

trainer.train()

GRPOWithReplayBufferTrainer

class trl.experimental.grpo_with_replay_buffer.GRPOWithReplayBufferTrainer

< >

( args: trl.experimental.grpo_with_replay_buffer.grpo_with_replay_buffer_config.GRPOWithReplayBufferConfig | None = None **kwargs )

train

< >

( resume_from_checkpoint: typing.Union[str, bool, NoneType] = None trial: typing.Union[ForwardRef('optuna.Trial'), dict[str, typing.Any], NoneType] = None ignore_keys_for_eval: typing.Optional[list[str]] = None **kwargs: typing.Any )

Parameters

  • resume_from_checkpoint (str or bool, optional) — If a str, local path to a saved checkpoint as saved by a previous instance of Trainer. If a bool and equals True, load the last checkpoint in args.output_dir as saved by a previous instance of Trainer. If present, training will resume from the model/optimizer/scheduler states loaded here.
  • trial (optuna.Trial or dict[str, Any], optional) — The trial run or the hyperparameter dictionary for hyperparameter search.
  • ignore_keys_for_eval (list[str], optional) — A list of keys in the output of your model (if it is a dictionary) that should be ignored when gathering predictions for evaluation during the training.
  • kwargs (dict[str, Any], optional) — Additional keyword arguments used to hide deprecated arguments

Main training entry point.

save_model

< >

( output_dir: typing.Optional[str] = None _internal_call: bool = False )

Will save the model, so you can reload it using from_pretrained().

Will only save from the main process.

push_to_hub

< >

( commit_message: typing.Optional[str] = 'End of training' blocking: bool = True token: typing.Optional[str] = None revision: typing.Optional[str] = None **kwargs )

Parameters

  • commit_message (str, optional, defaults to "End of training") — Message to commit while pushing.
  • blocking (bool, optional, defaults to True) — Whether the function should return only when the git push has finished.
  • token (str, optional, defaults to None) — Token with write permission to overwrite Trainer’s original args.
  • revision (str, optional) — The git revision to commit from. Defaults to the head of the “main” branch.
  • kwargs (dict[str, Any], optional) — Additional keyword arguments passed along to ~Trainer.create_model_card.

Upload self.model and self.processing_class to the 🤗 model hub on the repo self.args.hub_model_id.

GRPOWithReplayBufferConfig

class trl.experimental.grpo_with_replay_buffer.GRPOWithReplayBufferConfig

< >

( output_dir: typing.Optional[str] = None overwrite_output_dir: bool = False do_train: bool = False do_eval: bool = False do_predict: bool = False eval_strategy: typing.Union[transformers.trainer_utils.IntervalStrategy, str] = 'no' prediction_loss_only: bool = False per_device_train_batch_size: int = 8 per_device_eval_batch_size: int = 8 per_gpu_train_batch_size: typing.Optional[int] = None per_gpu_eval_batch_size: typing.Optional[int] = None gradient_accumulation_steps: int = 1 eval_accumulation_steps: typing.Optional[int] = None eval_delay: float = 0 torch_empty_cache_steps: typing.Optional[int] = None learning_rate: float = 1e-06 weight_decay: float = 0.0 adam_beta1: float = 0.9 adam_beta2: float = 0.999 adam_epsilon: float = 1e-08 max_grad_norm: float = 1.0 num_train_epochs: float = 3.0 max_steps: int = -1 lr_scheduler_type: typing.Union[transformers.trainer_utils.SchedulerType, str] = 'linear' lr_scheduler_kwargs: dict | str | None = None warmup_ratio: float = 0.0 warmup_steps: int = 0 log_level: str = 'passive' log_level_replica: str = 'warning' log_on_each_node: bool = True logging_dir: typing.Optional[str] = None logging_strategy: typing.Union[transformers.trainer_utils.IntervalStrategy, str] = 'steps' logging_first_step: bool = False logging_steps: float = 10 logging_nan_inf_filter: bool = True save_strategy: typing.Union[transformers.trainer_utils.SaveStrategy, str] = 'steps' save_steps: float = 500 save_total_limit: typing.Optional[int] = None save_safetensors: bool = True save_on_each_node: bool = False save_only_model: bool = False restore_callback_states_from_checkpoint: bool = False no_cuda: bool = False use_cpu: bool = False use_mps_device: bool = False seed: int = 42 data_seed: typing.Optional[int] = None jit_mode_eval: bool = False bf16: bool | None = None fp16: bool = False fp16_opt_level: str = 'O1' half_precision_backend: str = 'auto' bf16_full_eval: bool = False fp16_full_eval: bool = False tf32: typing.Optional[bool] = None local_rank: int = -1 ddp_backend: typing.Optional[str] = None tpu_num_cores: typing.Optional[int] = None tpu_metrics_debug: bool = False debug: typing.Union[str, list[transformers.debug_utils.DebugOption]] = '' dataloader_drop_last: bool = False eval_steps: typing.Optional[float] = None dataloader_num_workers: int = 0 dataloader_prefetch_factor: typing.Optional[int] = None past_index: int = -1 run_name: typing.Optional[str] = None disable_tqdm: typing.Optional[bool] = None remove_unused_columns: bool | None = False label_names: typing.Optional[list[str]] = None load_best_model_at_end: bool = False metric_for_best_model: typing.Optional[str] = None greater_is_better: typing.Optional[bool] = None ignore_data_skip: bool = False fsdp: typing.Union[list[transformers.trainer_utils.FSDPOption], str, NoneType] = None fsdp_min_num_params: int = 0 fsdp_config: typing.Union[dict[str, typing.Any], str, NoneType] = None fsdp_transformer_layer_cls_to_wrap: typing.Optional[str] = None accelerator_config: typing.Union[dict, str, NoneType] = None parallelism_config: typing.Optional[accelerate.parallelism_config.ParallelismConfig] = None deepspeed: typing.Union[dict, str, NoneType] = None label_smoothing_factor: float = 0.0 optim: typing.Union[transformers.training_args.OptimizerNames, str] = 'adamw_torch_fused' optim_args: typing.Optional[str] = None adafactor: bool = False group_by_length: bool = False length_column_name: str = 'length' report_to: typing.Union[NoneType, str, list[str]] = None project: str = 'huggingface' trackio_space_id: typing.Optional[str] = 'trackio' ddp_find_unused_parameters: typing.Optional[bool] = None ddp_bucket_cap_mb: typing.Optional[int] = None ddp_broadcast_buffers: typing.Optional[bool] = None dataloader_pin_memory: bool = True dataloader_persistent_workers: bool = False skip_memory_metrics: bool = True use_legacy_prediction_loop: bool = False push_to_hub: bool = False resume_from_checkpoint: typing.Optional[str] = None hub_model_id: typing.Optional[str] = None hub_strategy: typing.Union[transformers.trainer_utils.HubStrategy, str] = 'every_save' hub_token: typing.Optional[str] = None hub_private_repo: typing.Optional[bool] = None hub_always_push: bool = False hub_revision: typing.Optional[str] = None gradient_checkpointing: bool = True gradient_checkpointing_kwargs: typing.Union[dict[str, typing.Any], str, NoneType] = None include_inputs_for_metrics: bool = False include_for_metrics: list = <factory> eval_do_concat_batches: bool = True fp16_backend: str = 'auto' push_to_hub_model_id: typing.Optional[str] = None push_to_hub_organization: typing.Optional[str] = None push_to_hub_token: typing.Optional[str] = None mp_parameters: str = '' auto_find_batch_size: bool = False full_determinism: bool = False torchdynamo: typing.Optional[str] = None ray_scope: typing.Optional[str] = 'last' ddp_timeout: int = 1800 torch_compile: bool = False torch_compile_backend: typing.Optional[str] = None torch_compile_mode: typing.Optional[str] = None include_tokens_per_second: bool = False include_num_input_tokens_seen: typing.Union[str, bool] = False neftune_noise_alpha: typing.Optional[float] = None optim_target_modules: typing.Union[NoneType, str, list[str]] = None batch_eval_metrics: bool = False eval_on_start: bool = False use_liger_kernel: bool = False liger_kernel_config: typing.Optional[dict[str, bool]] = None eval_use_gather_object: bool = False average_tokens_across_devices: bool = True model_init_kwargs: dict | str | None = None disable_dropout: bool = False cast_lm_head_to_fp32: bool = False max_prompt_length: int | None = 512 num_generations: int | None = 8 num_generations_eval: int | None = None max_completion_length: int | None = 256 ds3_gather_for_generation: bool = True shuffle_dataset: bool | None = True generation_batch_size: int | None = None steps_per_generation: int | None = None temperature: float = 1.0 top_p: float = 1.0 top_k: int | None = None min_p: float | None = None generation_kwargs: dict | None = None chat_template_kwargs: dict | None = None repetition_penalty: float = 1.0 use_transformers_paged: bool = False cache_implementation: str | None = None use_vllm: bool = False vllm_mode: str = 'server' vllm_model_impl: str = 'vllm' vllm_enable_sleep_mode: bool = False vllm_guided_decoding_regex: str | None = None vllm_server_base_url: str | None = None vllm_server_host: str = '0.0.0.0' vllm_server_port: int = 8000 vllm_server_timeout: float = 240.0 vllm_gpu_memory_utilization: float = 0.3 vllm_tensor_parallel_size: int = 1 beta: float = 0.0 num_iterations: int = 1 epsilon: float = 0.2 delta: float | None = None epsilon_high: float | None = None sapo_temperature_neg: float = 1.05 sapo_temperature_pos: float = 1.0 importance_sampling_level: str = 'token' reward_weights: list[float] | None = None scale_rewards: str = 'group' loss_type: str = 'dapo' mask_truncated_completions: bool = False sync_ref_model: bool = False ref_model_mixup_alpha: float = 0.6 ref_model_sync_steps: int = 512 top_entropy_quantile: float = 1.0 use_liger_loss: bool = None vllm_importance_sampling_correction: bool = True vllm_importance_sampling_mode: str = 'sequence_mask' vllm_importance_sampling_cap: float = 3.0 log_completions: bool = False num_completions_to_print: int | None = None log_unique_prompts: bool = False wandb_log_unique_prompts: bool | None = None replay_buffer_size: int = 64 )

New Parameters: replay_buffer_size (int, optional, defaults to 0): A cache that stores the rollouts with the highest advantage scores and variance per group. If a new group has 0 variance, it is replaced with a group sampled from the replay buffer.

ReplayBuffer

class trl.experimental.grpo_with_replay_buffer.ReplayBuffer

< >

( max_size: int )

A simple replay buffer to store and sample previously seen rollouts.

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