mirror of https://github.com/hpcaitech/ColossalAI
169 lines
7.3 KiB
Python
169 lines
7.3 KiB
Python
from abc import ABC, abstractmethod
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from typing import Any, Callable, Dict, List, Optional, Union
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import torch
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from coati.experience_maker import Experience, ExperienceMaker
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from coati.replay_buffer import ReplayBuffer
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from torch import Tensor
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from torch.utils.data import DistributedSampler
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from tqdm import tqdm
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from .callbacks import Callback
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from .strategies import Strategy
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from .utils import is_rank_0
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class Trainer(ABC):
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"""
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Base class for rlhf trainers.
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Args:
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strategy (Strategy):the strategy to use for training
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experience_maker (ExperienceMaker): the experience maker to use for produce experience to fullfill replay buffer
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replay_buffer (ReplayBuffer): the replay buffer to use for training
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experience_batch_size (int, defaults to 8): the batch size to use for experience generation
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max_epochs (int, defaults to 1): the number of epochs of training process
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tokenizer (Callable, optional): the tokenizer to use for tokenizing the input
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sample_replay_buffer (bool, defaults to False): whether to sample from replay buffer
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data_loader_pin_memory (bool, defaults to True): whether to pin memory for data loader
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callbacks (List[Callback], defaults to []): the callbacks to call during training process
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generate_kwargs (dict, optional): the kwargs to use while model generating
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"""
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def __init__(self,
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strategy: Strategy,
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experience_maker: ExperienceMaker,
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replay_buffer: ReplayBuffer,
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experience_batch_size: int = 8,
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max_epochs: int = 1,
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tokenizer: Optional[Callable[[Any], dict]] = None,
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sample_replay_buffer: bool = False,
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dataloader_pin_memory: bool = True,
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callbacks: List[Callback] = [],
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**generate_kwargs) -> None:
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super().__init__()
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self.strategy = strategy
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self.experience_maker = experience_maker
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self.replay_buffer = replay_buffer
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self.experience_batch_size = experience_batch_size
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self.max_epochs = max_epochs
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self.tokenizer = tokenizer
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self.generate_kwargs = generate_kwargs
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self.sample_replay_buffer = sample_replay_buffer
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self.dataloader_pin_memory = dataloader_pin_memory
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self.callbacks = callbacks
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@abstractmethod
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def training_step(self, experience: Experience) -> Dict[str, Any]:
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pass
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def _make_experience(self, inputs: Union[Tensor, Dict[str, Tensor]]) -> Experience:
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if isinstance(inputs, Tensor):
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return self.experience_maker.make_experience(inputs, **self.generate_kwargs)
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elif isinstance(inputs, dict):
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return self.experience_maker.make_experience(**inputs, **self.generate_kwargs)
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else:
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raise ValueError(f'Unsupported input type "{type(inputs)}"')
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def _sample_prompts(self, prompts) -> list:
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indices = list(range(len(prompts)))
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sampled_indices = self.strategy.experience_sampler.choice(indices, self.experience_batch_size, replace=False)
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return [prompts[i] for i in sampled_indices]
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def _learn(self):
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# replay buffer may be empty at first, we should rebuild at each training
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if not self.sample_replay_buffer:
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dataloader = self.strategy.setup_dataloader(self.replay_buffer, self.dataloader_pin_memory)
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device = torch.cuda.current_device()
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if self.sample_replay_buffer:
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pbar = tqdm(range(self.max_epochs), desc='Train epoch', disable=not is_rank_0())
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for _ in pbar:
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experience = self.replay_buffer.sample()
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metrics = self.training_step(experience)
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pbar.set_postfix(metrics)
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else:
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for epoch in range(self.max_epochs):
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self._on_learn_epoch_start(epoch)
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if isinstance(dataloader.sampler, DistributedSampler):
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dataloader.sampler.set_epoch(epoch)
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pbar = tqdm(dataloader, desc=f'Train epoch [{epoch+1}/{self.max_epochs}]', disable=not is_rank_0())
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for experience in pbar:
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self._on_learn_batch_start()
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experience.to_device(device)
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metrics = self.training_step(experience)
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self._on_learn_batch_end(metrics, experience)
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pbar.set_postfix(metrics)
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self._on_learn_epoch_end(epoch)
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def fit(self,
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prompt_dataloader,
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pretrain_dataloader,
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num_episodes: int = 50000,
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max_timesteps: int = 500,
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update_timesteps: int = 5000) -> None:
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time = 0
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self.pretrain_dataloader = pretrain_dataloader
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self.prompt_dataloader = prompt_dataloader
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self._on_fit_start()
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for episode in range(num_episodes):
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self._on_episode_start(episode)
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for timestep in tqdm(range(max_timesteps),
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desc=f'Episode [{episode+1}/{num_episodes}]',
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disable=not is_rank_0()):
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time += 1
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prompts = next(iter(self.prompt_dataloader))
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self._on_make_experience_start()
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self.experience_maker.initial_model.to(torch.cuda.current_device())
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self.experience_maker.reward_model.to(torch.cuda.current_device())
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experience = self._make_experience(prompts)
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self._on_make_experience_end(experience)
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self.replay_buffer.append(experience)
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if time % update_timesteps == 0:
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self.experience_maker.initial_model.to('cpu')
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self.experience_maker.reward_model.to('cpu')
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self._learn()
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self.replay_buffer.clear()
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self._on_episode_end(episode)
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self._on_fit_end()
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# TODO(ver217): maybe simplify these code using context
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def _on_fit_start(self) -> None:
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for callback in self.callbacks:
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callback.on_fit_start()
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def _on_fit_end(self) -> None:
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for callback in self.callbacks:
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callback.on_fit_end()
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def _on_episode_start(self, episode: int) -> None:
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for callback in self.callbacks:
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callback.on_episode_start(episode)
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def _on_episode_end(self, episode: int) -> None:
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for callback in self.callbacks:
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callback.on_episode_end(episode)
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def _on_make_experience_start(self) -> None:
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for callback in self.callbacks:
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callback.on_make_experience_start()
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def _on_make_experience_end(self, experience: Experience) -> None:
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for callback in self.callbacks:
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callback.on_make_experience_end(experience)
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def _on_learn_epoch_start(self, epoch: int) -> None:
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for callback in self.callbacks:
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callback.on_learn_epoch_start(epoch)
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def _on_learn_epoch_end(self, epoch: int) -> None:
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for callback in self.callbacks:
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callback.on_learn_epoch_end(epoch)
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def _on_learn_batch_start(self) -> None:
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for callback in self.callbacks:
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callback.on_learn_batch_start()
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def _on_learn_batch_end(self, metrics: dict, experience: Experience) -> None:
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for callback in self.callbacks:
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callback.on_learn_batch_end(metrics, experience)
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