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import os
import re
import pathlib
from argparse import ArgumentParser
from typing import List, Dict, Optional
from dataclasses import dataclass, field

import torch
from torch import nn
import torch.nn.functional as F
from torch.optim import AdamW
from torch.utils.data import DataLoader, Dataset
from transformers import get_cosine_schedule_with_warmup, AutoTokenizer

from transformers import (
    AutoTokenizer,
    AutoModelForCausalLM,
    AutoModelForMaskedLM,
    AutoProcessor,
)

from datasets import load_dataset, DatasetDict

from peft import get_peft_model, LoraConfig, prepare_model_for_kbit_training
from transformers import BitsAndBytesConfig

import pytorch_lightning as pl
from pytorch_lightning.callbacks import ModelCheckpoint, LearningRateMonitor
from pytorch_lightning.loggers import WandbLogger

from trl import GRPOConfig, GRPOTrainer, ModelConfig, ScriptArguments, TrlParser, get_peft_config

# Import BLIP2 modules
from model.blip2_stage2 import Blip2Stage2
from blip2_dna_module import Blip2DNAModule
from blip2_grpo_trainer import Blip2GRPOTrainer
from bioreason.trainer import DNALLMGRPOConfig

# Custom TrainerCallback to override the saving mechanism
from transformers import TrainerCallback, TrainerState, TrainerControl
from transformers.trainer_utils import PREFIX_CHECKPOINT_DIR

class SaveWithPyTorchCallback(TrainerCallback):
    """Custom callback to save models with PyTorch's native save mechanism instead of safetensors"""
    def on_save(self, args, state, control, **kwargs):
        # Get the checkpoint folder
        checkpoint_folder = os.path.join(
            args.output_dir, f"{PREFIX_CHECKPOINT_DIR}-{state.global_step}"
        )
        os.makedirs(checkpoint_folder, exist_ok=True)
        
        # Save with PyTorch instead of safetensors
        checkpoint_path = os.path.join(checkpoint_folder, "pytorch_model.bin")
        model = kwargs.get("model")
        
        # Get model unwrapped from accelerator etc.
        unwrapped_model = model.module if hasattr(model, "module") else model
        
        # Save using PyTorch directly
        torch.save(unwrapped_model.state_dict(), checkpoint_path)
        
        # For BLIP2, save the config from the LLM component
        if hasattr(unwrapped_model, "blip2") and hasattr(unwrapped_model.blip2, "llm_model"):
            if hasattr(unwrapped_model.blip2.llm_model, "config"):
                unwrapped_model.blip2.llm_model.config.save_pretrained(checkpoint_folder)
            elif hasattr(unwrapped_model.blip2.llm_model, "base_model") and hasattr(unwrapped_model.blip2.llm_model.base_model, "config"):
                unwrapped_model.blip2.llm_model.base_model.config.save_pretrained(checkpoint_folder)
        
        # Print info about what's being saved
        print(f"Saved model checkpoint to {checkpoint_folder}")
        lora_params = [k for k in unwrapped_model.state_dict().keys() if "lora" in k]
        print(f"Checkpoint contains {len(lora_params)} LoRA parameters")
        
        # Signal that we've saved
        control.should_save = False
        return control

def extract_xml_answer(text: str) -> str:
    answer = text.split("</think>")[-1]
    return answer.strip()

def extract_hash_answer(text: str) -> str | None:
    if "####" not in text:
        return None
    return text.split("####")[1].strip()

def get_kegg_questions() -> Dataset:
    data = load_dataset('wanglab/kegg', 'default') # type: ignore
    example_dna_sequences = ["ATCTACATGCAT", "CAGCAGCTACAG", "CATCACATCGACATCGAC"]
    num_dna_sequences = 2

    data = data.map(lambda x: { # type: ignore
        'prompt': [
            {
                'role': 'user',
                'content': [
                    *({'type': 'dna', 'text': None} for _ in range(num_dna_sequences)),
                    {'type': 'text', 'text': x['question']},
                ],
            },
        ],
        'dna_sequences': [x['reference_sequence'], x['variant_sequence']],
        'answer': x['answer'],
    })  # type: ignore

    return data

def get_gsm8k_questions(question_prompt: str) -> Dataset:
    data = load_dataset('openai/gsm8k', 'main') # type: ignore

    example_dna_sequences = ["ATCTACATGCAT", "CAGCAGCTACAG", "CATCACATCGACATCGAC"]
    data = data.map(lambda x: { # type: ignore
        'prompt': [ 
            {
                'role': 'user',
                'content': [
                    *({'type': 'dna', 'text': None} for _ in range(len(example_dna_sequences))),
                    {'type': 'text', 'text': 'Give me a short introduction to large language model.'}
                ]
            },
        ],
        'dna_sequences': [dna for dna in example_dna_sequences],
        'answer': extract_hash_answer(x['answer']),
    }) # type: ignore
    
    return data # type: ignore

# Reward functions
def format_correct_reward_func(completions, **kwargs) -> list[float]:
    """
    奖励函数:检查格式是否正确
    要求:包含 <think>...</think> 和 <answer>...</answer> 标签
    """
    responses = [completion[0]["content"] for completion in completions]
    rewards = []
    
    for response in responses:
        score = 0.0
        
        # 检查是否有think标签
        if "<think>" in response and "</think>" in response:
            score += 0.5
            
        # 检查是否有answer标签  
        if "<answer>" in response and "</answer>" in response:
            score += 0.5
            
        # 检查标签的顺序是否正确
        think_start = response.find("<think>")
        think_end = response.find("</think>")
        answer_start = response.find("<answer>")
        answer_end = response.find("</answer>")
        
        if (think_start != -1 and think_end != -1 and 
            answer_start != -1 and answer_end != -1 and
            think_start < think_end < answer_start < answer_end):
            score += 0.5  # 格式完全正确的额外奖励
            
        rewards.append(score)
    
    return rewards

def accuracy_reward_func(prompts, completions, answer, **kwargs) -> list[float]:
    """
    奖励函数:检查答案准确率
    """
    responses = [completion[0]['content'] for completion in completions]
    rewards = []
    
    for i, response in enumerate(responses):
        # 提取answer标签中的内容
        answer_match = re.search(r"<answer>(.*?)</answer>", response, re.DOTALL)
        if answer_match:
            extracted_answer = answer_match.group(1).strip()
        else:
            extracted_answer = response.strip()
        
        # 获取正确答案
        if isinstance(answer, list) and len(answer) > i:
            correct_answer = str(answer[i]).strip()
        elif isinstance(answer, list) and len(answer) > 0:
            correct_answer = str(answer[0]).strip()
        else:
            correct_answer = str(answer).strip()
        
        # 计算准确率奖励
        if correct_answer.lower() in extracted_answer.lower():
            rewards.append(1.0)  # 完全匹配
        elif any(word in extracted_answer.lower() for word in correct_answer.lower().split()):
            rewards.append(0.5)  # 部分匹配
        else:
            rewards.append(0.0)  # 不匹配
    
    return rewards

def repetition_penalty_reward_func(completions, **kwargs) -> list[float]:
    """
    奖励函数:检查重复率(越低越好)
    计算文本中重复词汇的比例,重复率越低奖励越高
    """
    responses = [completion[0]["content"] for completion in completions]
    rewards = []
    
    for response in responses:
        # 提取answer部分的文本
        answer_match = re.search(r"<answer>(.*?)</answer>", response, re.DOTALL)
        if answer_match:
            text_to_analyze = answer_match.group(1).strip()
        else:
            text_to_analyze = response.strip()
        
        # 分词并计算重复率
        words = text_to_analyze.lower().split()
        
        if len(words) == 0:
            rewards.append(0.0)
            continue
            
        # 计算词汇重复率
        unique_words = set(words)
        repetition_rate = 1.0 - (len(unique_words) / len(words))
        
        # 计算句子重复率
        sentences = [s.strip() for s in text_to_analyze.split('.') if s.strip()]
        if len(sentences) > 1:
            unique_sentences = set(sentences)
            sentence_repetition_rate = 1.0 - (len(unique_sentences) / len(sentences))
        else:
            sentence_repetition_rate = 0.0
        
        # 综合重复率
        overall_repetition = (repetition_rate + sentence_repetition_rate) / 2
        
        # 重复率越低,奖励越高
        reward = max(0.0, 1.0 - overall_repetition * 2)  # 乘以2让惩罚更明显
        rewards.append(reward)
    
    return rewards

def combined_reward_func(prompts, completions, answer, 
                        format_weight=0.3, accuracy_weight=0.5, repetition_weight=0.2,
                        **kwargs) -> list[float]:
    """
    组合奖励函数:格式+准确率+重复率的加权组合
    """
    format_rewards = format_correct_reward_func(completions, **kwargs)
    accuracy_rewards = accuracy_reward_func(prompts, completions, answer, **kwargs)
    repetition_rewards = repetition_penalty_reward_func(completions, **kwargs)
    
    # 确保权重总和为1
    total_weight = format_weight + accuracy_weight + repetition_weight
    if total_weight != 1.0:
        format_weight /= total_weight
        accuracy_weight /= total_weight  
        repetition_weight /= total_weight
        print(f"Normalized weights - Format: {format_weight:.3f}, Accuracy: {accuracy_weight:.3f}, Repetition: {repetition_weight:.3f}")
    
    combined_rewards = []
    for f_reward, a_reward, r_reward in zip(format_rewards, accuracy_rewards, repetition_rewards):
        combined = (format_weight * f_reward + 
                   accuracy_weight * a_reward + 
                   repetition_weight * r_reward)
        combined_rewards.append(combined)
    
    return combined_rewards

# 保留一些原有的奖励函数作为备选
def less_than_4_reward_func(completions, **kwargs) -> list[float]:
    responses = [completion[0]['content'] for completion in completions]
    extracted_responses = [extract_xml_answer(r) for r in responses]
    return [0.5 if len(r.split(' ')) <= 4 else 0.0 for r in extracted_responses]

def strict_format_reward_func(completions, **kwargs) -> list[float]:
    """Reward function that checks if the completion has a specific format."""
    pattern = r"^<think>\n.*?\n</think>\n.*?\n$"
    responses = [completion[0]["content"] for completion in completions]
    matches = [re.match(pattern, r) for r in responses]
    return [0.5 if match else 0.0 for match in matches]

def xmlcount_reward_func(completions, **kwargs) -> list[float]:
    contents = [completion[0]["content"] for completion in completions]
    return [count_xml(c) for c in contents]

def count_xml(text) -> float:
    count = 0.0
    if text.count("<think>\n") == 1:
        count += 0.125
    if text.count("\n</think>\n") == 1:
        count += 0.125
    return count

@dataclass
class Blip2ModelConfig(ModelConfig):
    # BLIP2 specific configuration
    model_name_or_path: str = field(default="blip2-model", metadata={"help": "Model checkpoint for weights initialization."})
    
    # BLIP2 Architecture parameters
    bert_name: str = field(default="/path/to/bert", metadata={"help": "BERT model for Q-former"})
    num_query_token: int = field(default=32, metadata={"help": "Number of query tokens"})
    cross_attention_freq: int = field(default=2, metadata={"help": "Cross attention frequency"})
    plm_model: str = field(default="facebook/esm2_t30_150M_UR50D", metadata={"help": "Protein language model"})
    plm_tune: str = field(default="freeze", metadata={"help": "PLM tuning strategy"})
    llm_name: str = field(default="facebook/galactica-1.3b", metadata={"help": "Language model name"})
    llm_tune: str = field(default="lora", metadata={"help": "LLM tuning strategy"})
    qformer_tune: str = field(default="train", metadata={"help": "Q-former tuning strategy"})
    peft_dir: str = field(default="", metadata={"help": "PEFT directory"})
    
    # LoRA parameters
    lora_r: int = field(default=8, metadata={"help": "LoRA rank"})
    lora_alpha: int = field(default=16, metadata={"help": "LoRA alpha"})
    lora_dropout: float = field(default=0.1, metadata={"help": "LoRA dropout"})
    
    # Training parameters
    enbale_gradient_checkpointing: bool = field(default=False, metadata={"help": "Enable gradient checkpointing"})
    enable_flash: bool = field(default=False, metadata={"help": "Enable flash attention"})
    
    # Other parameters
    cache_dir: str = field(default=None, metadata={"help": "Path to model cache directory."})
    sft_checkpoint: str = field(default=None, metadata={"help": "Path to the checkpoint for SFT."})
    freeze_dna_modules: bool = field(default=False, metadata={"help": "Freeze DNA/protein modules"})

@dataclass
class GRPOScriptArguments(ScriptArguments):
    """
    Script arguments for the GRPO training script with BLIP2.
    """
    dataset_name: str = field(default="wanglab/kegg", metadata={"help": "Dataset name with default."})
    data_file_paths: str = field(
        default=None,
        metadata={"help": "Paths to data files, separated by ':'"},
    )
    arrow_cache_dir: str = field(
        default=None,
        metadata={"help": "Path to arrow cache directory"},
    )
    val_split_ratio: float = field(
        default=0.0,
        metadata={"help": "Ratio of validation split, default 0.0"},
    )
    reward_funcs: list[str] = field(
        # 选项1:使用组合奖励函数(推荐)
        default_factory=lambda: ["combined"],
        
        # 选项2:使用分离的三个奖励函数
        # default_factory=lambda: ["format_correct", "accuracy", "repetition_penalty"],
        
        # 选项3:自定义组合
        # default_factory=lambda: ["format_correct", "accuracy", "repetition_penalty", "xmlcount"],
        
        metadata={"help": "List of reward functions. Available: 'combined', 'format_correct', 'accuracy', 'repetition_penalty', 'xmlcount', 'strict_format', 'less_than_4'"},
    )
    
    # 奖励函数权重配置
    format_weight: float = field(
        default=0.3,
        metadata={"help": "Weight for format correctness reward (used in combined reward)"}
    )
    accuracy_weight: float = field(
        default=0.5,
        metadata={"help": "Weight for accuracy reward (used in combined reward)"}
    )
    repetition_weight: float = field(
        default=0.2,
        metadata={"help": "Weight for repetition penalty reward (used in combined reward)"}
    )

reward_funcs_registry = {
    # 新的三合一奖励函数
    "combined": combined_reward_func,          # 格式+准确率+重复率组合
    
    # 分离的奖励函数
    "format_correct": format_correct_reward_func,      # 格式正确性
    "accuracy": accuracy_reward_func,                  # 准确率
    "repetition_penalty": repetition_penalty_reward_func,  # 重复率惩罚
    
    # 原有的奖励函数(保留作为备选)
    "xmlcount": xmlcount_reward_func,
    "strict_format": strict_format_reward_func,
    "less_than_4": less_than_4_reward_func,
}

def get_vlm_module(model_name_or_path):
    # Always use BLIP2 module for this implementation
    return Blip2DNAModule

def create_blip2_args_from_config(model_args):
    """Create BLIP2 args from model config"""
    # Convert model config to the format expected by BLIP2
    blip2_args = {
        'bert_name': model_args.bert_name,
        'num_query_token': model_args.num_query_token,
        'cross_attention_freq': model_args.cross_attention_freq,
        'plm_model': model_args.plm_model,
        'plm_tune': model_args.plm_tune,
        'llm_name': model_args.llm_name,
        'llm_tune': model_args.llm_tune,
        'qformer_tune': model_args.qformer_tune,
        'peft_dir': model_args.peft_dir,
        'lora_r': model_args.lora_r,
        'lora_alpha': model_args.lora_alpha,
        'lora_dropout': model_args.lora_dropout,
        'enbale_gradient_checkpointing': model_args.enbale_gradient_checkpointing,
        'enable_flash': model_args.enable_flash,
    }
    return blip2_args

def _prep_for_training(model, training_args):
    """
    Prepare BLIP2 model for training with LoRA.
    """
    # The BLIP2 model should handle its own LoRA setup
    # This is mainly for any additional preparation needed
    
    target_modules = ["q_proj", "k_proj", "v_proj", "out_proj", "fc1", "fc2"]
    
    lora_config = LoraConfig(
        r=training_args.lora_r,
        lora_alpha=training_args.lora_alpha,
        lora_dropout=training_args.lora_dropout,
        target_modules=target_modules,
        init_lora_weights="gaussian",
        bias="none",
        task_type="CAUSAL_LM",
    )
    
    return lora_config

def main(script_args, training_args, model_args):
    print(training_args.output_dir)
    torch.cuda.empty_cache()
    torch.set_float32_matmul_precision("medium")

    # Create BLIP2 model
    blip2_args = create_blip2_args_from_config(model_args)
    model = Blip2Stage2(blip2_args)

    # Load checkpoint if specified
    if model_args.sft_checkpoint is not None:
        print(f"Loading SFT checkpoint from {model_args.sft_checkpoint}")
        
        if os.path.isdir(model_args.sft_checkpoint):
            # Load Lightning checkpoint
            checkpoint = torch.load(os.path.join(model_args.sft_checkpoint, "last.ckpt"), map_location='cpu')
            model.load_state_dict(checkpoint['state_dict'], strict=False)
            print("Loaded Lightning checkpoint")
        else:
            # Load PyTorch state dict
            checkpoint = torch.load(model_args.sft_checkpoint, map_location='cpu')
            
            if "state_dict" in checkpoint:
                state_dict = checkpoint["state_dict"]
            else:
                state_dict = checkpoint
                
            # Remove module prefix if present
            state_dict = {k.replace("module.", ""): v for k, v in state_dict.items()}
            
            result = model.load_state_dict(state_dict, strict=False)
            print(f"Loaded checkpoint with {len(result.missing_keys)} missing keys and {len(result.unexpected_keys)} unexpected keys")

    # Get reward functions with weights
    reward_funcs = []
    for func_name in script_args.reward_funcs:
        if func_name == "combined":
            # 为组合奖励函数传递权重参数
            def weighted_combined_reward(prompts, completions, answer, **kwargs):
                return combined_reward_func(
                    prompts, completions, answer,
                    format_weight=script_args.format_weight,
                    accuracy_weight=script_args.accuracy_weight,
                    repetition_weight=script_args.repetition_weight,
                    **kwargs
                )
            reward_funcs.append(weighted_combined_reward)
        else:
            reward_funcs.append(reward_funcs_registry[func_name])
    
    print("reward_funcs:", [func.__name__ if hasattr(func, '__name__') else 'weighted_combined_reward' for func in reward_funcs])
    print(f"Reward weights - Format: {script_args.format_weight}, Accuracy: {script_args.accuracy_weight}, Repetition: {script_args.repetition_weight}")

    vlm_module_cls = get_vlm_module(model_args.model_name_or_path)
    print("using vlm module:", vlm_module_cls.__name__)
    question_prompt = vlm_module_cls.get_question_template()

    # Load dataset
    dataset = get_kegg_questions()
    print(dataset)

    # Custom callback to handle saving with PyTorch's native mechanism
    custom_save_callback = SaveWithPyTorchCallback()

    # Initialize the BLIP2 GRPO trainer
    trainer = Blip2GRPOTrainer(
        model=model,
        reward_funcs=reward_funcs,
        args=training_args,
        dna_module=vlm_module_cls(),
        train_dataset=dataset['train'],
        eval_dataset=dataset['val'] if training_args.eval_strategy != "no" else None,
        peft_config=get_peft_config(model_args),
        attn_implementation=getattr(model_args, 'attn_implementation', 'flash_attention_2'),
        torch_dtype=getattr(model_args, 'torch_dtype', 'bfloat16'),
        callbacks=[custom_save_callback],
    )

    # Set the trainer to save in PyTorch format instead of safetensors
    training_args.save_safetensors = False

    # Train the model
    trainer.train()

if __name__ == "__main__":
    print(f"CUDA_VISIBLE_DEVICES: {os.environ.get('CUDA_VISIBLE_DEVICES')}")
    parser = TrlParser((GRPOScriptArguments, DNALLMGRPOConfig, Blip2ModelConfig))
    script_args, training_args, model_args = parser.parse_args_and_config()
    
    # Ensure we use PyTorch's save mechanism instead of safetensors
    training_args.save_safetensors = False

    main(script_args, training_args, model_args)