# Copyright 2024 Bytedance Ltd. and/or its affiliates # # Licensed under the Apache License, Version 2.0 (the "License"); # you may not use this file except in compliance with the License. # You may obtain a copy of the License at # # http://www.apache.org/licenses/LICENSE-2.0 # # Unless required by applicable law or agreed to in writing, software # distributed under the License is distributed on an "AS IS" BASIS, # WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied. # See the License for the specific language governing permissions and # limitations under the License. from collections import defaultdict import torch from verl import DataProto from verl.utils.reward_score import _default_compute_score class DAPORewardManager: """The reward manager.""" def __init__( self, tokenizer, num_examine, compute_score=None, reward_fn_key="data_source", max_resp_len=None, overlong_buffer_cfg=None, ) -> None: self.tokenizer = tokenizer self.num_examine = num_examine # the number of batches of decoded responses to print to the console self.compute_score = compute_score or _default_compute_score self.reward_fn_key = reward_fn_key self.overlong_buffer_cfg = overlong_buffer_cfg self.max_resp_len = max_resp_len if self.overlong_buffer_cfg is not None: assert self.max_resp_len is not None, f"max_resp_len must be provided if {overlong_buffer_cfg=}, but got None" def __call__(self, data: DataProto, return_dict: bool = False): """We will expand this function gradually based on the available datasets""" # If there is rm score, we directly return rm score. Otherwise, we compute via rm_score_fn if "rm_scores" in data.batch.keys(): if return_dict: return {"reward_tensor": data.batch["rm_scores"]} else: return data.batch["rm_scores"] reward_tensor = torch.zeros_like(data.batch["responses"], dtype=torch.float32) reward_extra_info = defaultdict(list) already_print_data_sources = {} for i in range(len(data)): data_item = data[i] # DataProtoItem prompt_ids = data_item.batch["prompts"] prompt_length = prompt_ids.shape[-1] valid_prompt_length = data_item.batch["attention_mask"][:prompt_length].sum() valid_prompt_ids = prompt_ids[-valid_prompt_length:] response_ids = data_item.batch["responses"] valid_response_length = data_item.batch["attention_mask"][prompt_length:].sum() valid_response_ids = response_ids[:valid_response_length] # decode prompt_str = self.tokenizer.decode(valid_prompt_ids, skip_special_tokens=True) response_str = self.tokenizer.decode(valid_response_ids, skip_special_tokens=True) eos_token = self.tokenizer.eos_token if response_str.endswith(eos_token): response_str = response_str[: -len(eos_token)] ground_truth = data_item.non_tensor_batch["reward_model"]["ground_truth"] data_source = data_item.non_tensor_batch[self.reward_fn_key] extra_info = data_item.non_tensor_batch.get("extra_info", None) result = self.compute_score( data_source=data_source, solution_str=response_str, ground_truth=ground_truth, extra_info=extra_info, ) score: float if isinstance(result, dict): score = result["score"] # Store the information including original reward for key, value in result.items(): reward_extra_info[key].append(value) else: score = result reward = score if self.overlong_buffer_cfg.enable: overlong_buffer_len = self.overlong_buffer_cfg.len expected_len = self.max_resp_len - overlong_buffer_len exceed_len = valid_response_length - expected_len overlong_penalty_factor = self.overlong_buffer_cfg.penalty_factor overlong_reward = min(-exceed_len / overlong_buffer_len * overlong_penalty_factor, 0) reward += overlong_reward if self.overlong_buffer_cfg.log: reward_extra_info["overlong_reward"].append(overlong_reward) reward_extra_info["overlong"].append(overlong_reward < 0) reward_tensor[i, valid_response_length - 1] = reward if data_source not in already_print_data_sources: already_print_data_sources[data_source] = 0 if already_print_data_sources[data_source] < self.num_examine: already_print_data_sources[data_source] += 1 print("[prompt]", prompt_str) print("[response]", response_str) print("[ground_truth]", ground_truth) if isinstance(result, dict): for key, value in result.items(): print(f"[{key}]", value) else: print("[score]", score) if return_dict: return { "reward_tensor": reward_tensor, "reward_extra_info": reward_extra_info, } else: return reward_tensor