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"""
OpenAI-based User Agent for user simulation with GPT-5.

Drop-in replacement for VLLMUserAgent — same interface, uses OpenAI API.
Supports reasoning models (GPT-5, o-series) that require max_completion_tokens.
"""

import os
from typing import List, Dict, Any, Optional
from copy import deepcopy
from json_repair import repair_json
from openai import OpenAI, RateLimitError, APITimeoutError, APIConnectionError

from agents.vllm_user_agent import (
    USER_SYSTEM_PROMPT_WITH_PREFERENCES,
    USER_SYSTEM_PROMPT_WITHOUT_PREFERENCES,
    TERMINATION_SIGNAL,
)


class OpenAIUserAgent:
    """
    User Agent that uses the OpenAI API (GPT-5) for user simulation.

    Key differences from VLLMUserAgent:
    - Uses openai.OpenAI client
    - GPT-5 is a reasoning model: no temperature, uses max_completion_tokens
    - Higher quality simulation at the cost of API calls
    """

    def __init__(
        self,
        user_task_description: str,
        problem: str,
        user_persona: str = None,
        user_preferences: str = None,
        model: str = "gpt-5",
        api_key: Optional[str] = None,
        base_url: Optional[str] = None,
        num_retries: int = 3,
        max_completion_tokens: int = 4096,  # High for reasoning models
        max_context_length: int = 128000,   # GPT-5 context window
        retry_base_delay: float = 1.0,
    ):
        self.user_task_description = user_task_description
        self.problem = problem
        self.user_persona = user_persona or "A helpful user seeking assistance."
        self.user_preferences = user_preferences
        self.model = model
        self.num_retries = num_retries
        self.max_completion_tokens = max_completion_tokens
        self.max_context_length = max_context_length
        self.retry_base_delay = retry_base_delay

        # Initialize OpenAI client
        self._client = OpenAI(
            api_key=api_key or os.getenv("OPENAI_API_KEY"),
            base_url=base_url,
            timeout=120.0,
        )

        # Build system prompt (same format as VLLMUserAgent)
        if user_preferences:
            self.system_prompt = USER_SYSTEM_PROMPT_WITH_PREFERENCES.format(
                user_task_description=user_task_description,
                problem=problem,
                user_persona=self.user_persona,
                user_preferences=user_preferences,
                termination_signal=TERMINATION_SIGNAL,
            )
        else:
            self.system_prompt = USER_SYSTEM_PROMPT_WITHOUT_PREFERENCES.format(
                user_task_description=user_task_description,
                problem=problem,
                user_persona=self.user_persona,
                termination_signal=TERMINATION_SIGNAL,
            )

    def _estimate_tokens(self, text: str) -> int:
        """Estimate token count (~3.5 chars/token)."""
        return int(len(text) / 3.5)

    def _truncate_messages(self, messages: List[Dict[str, str]]) -> List[Dict[str, str]]:
        """Truncate messages to fit within context, keeping recent messages."""
        if not messages:
            return messages

        system_msg = messages[0] if messages[0]["role"] == "system" else None
        conversation = messages[1:] if system_msg else messages

        system_tokens = self._estimate_tokens(system_msg["content"]) if system_msg else 0
        available_tokens = self.max_context_length - system_tokens - self.max_completion_tokens - 200

        total_conv_tokens = sum(self._estimate_tokens(m["content"]) for m in conversation)
        if total_conv_tokens <= available_tokens:
            return messages

        # Keep recent messages
        truncated = []
        current_tokens = 0
        for msg in reversed(conversation):
            msg_tokens = self._estimate_tokens(msg["content"])
            if current_tokens + msg_tokens <= available_tokens:
                truncated.insert(0, msg)
                current_tokens += msg_tokens
            else:
                break

        if len(truncated) < len(conversation):
            print(f"[OpenAIUserAgent] Truncated: kept {len(truncated)}/{len(conversation)} turns")

        return [system_msg] + truncated if system_msg else truncated

    def _generate(self, messages: List[Dict[str, str]]) -> str:
        """Generate response using OpenAI API with retry."""
        messages = self._truncate_messages(messages)

        import time
        for attempt in range(self.num_retries):
            try:
                # Build API call params
                params = {
                    "model": self.model,
                    "messages": messages,
                    "max_completion_tokens": self.max_completion_tokens,
                }

                # Non-reasoning models support temperature and response_format
                if not self._is_reasoning_model():
                    params["temperature"] = 0.7
                    params["response_format"] = {"type": "json_object"}

                response = self._client.chat.completions.create(**params)

                content = response.choices[0].message.content
                if content:
                    return content.strip()

                # Reasoning model may exhaust tokens
                if response.choices[0].finish_reason == "length":
                    print(f"[OpenAIUserAgent] Response truncated (length), attempt {attempt+1}")
                    continue

                return ""

            except (RateLimitError, APITimeoutError, APIConnectionError) as e:
                if attempt == self.num_retries - 1:
                    raise
                delay = self.retry_base_delay * (2 ** attempt)
                print(f"[OpenAIUserAgent] API error ({type(e).__name__}), retrying in {delay:.1f}s...")
                time.sleep(delay)

        return ""

    def _is_reasoning_model(self) -> bool:
        """Check if the model is a reasoning model (no temperature/response_format support)."""
        reasoning_prefixes = ("o1", "o3", "gpt-5")
        return any(self.model.startswith(p) for p in reasoning_prefixes)

    def get_system_prompt(self) -> str:
        """Get the system prompt."""
        return self.system_prompt

    def reverse_roles(self, conversation: List[Dict[str, str]]) -> List[Dict[str, str]]:
        """Reverse roles for user perspective."""
        conversation = deepcopy(conversation)
        return [
            {"role": "user" if msg["role"] == "assistant" else "assistant", "content": msg["content"]}
            for msg in conversation
        ]

    def generate_user_response(self, conversation: List[Dict[str, str]]) -> Optional[Dict[str, Any]]:
        """
        Generate user response given the conversation history.

        Args:
            conversation: List of {"role": "user"|"assistant", "content": str}

        Returns:
            Dict with keys: reasoning, draft_answer, should_terminate, response
            Or None if all retries failed.
        """
        for attempt in range(self.num_retries):
            try:
                messages = [{"role": "system", "content": self.system_prompt}]
                messages.extend(self.reverse_roles(conversation))

                response_text = self._generate(messages)

                if not response_text:
                    print(f"[OpenAIUserAgent] Empty response, attempt {attempt+1}")
                    continue

                # Parse JSON response
                try:
                    parsed = repair_json(response_text, return_objects=True)

                    required_keys = ["reasoning", "draft_answer", "should_terminate", "response"]
                    missing = [k for k in required_keys if k not in parsed]

                    if missing:
                        print(f"[OpenAIUserAgent] Missing keys: {missing}, attempt {attempt+1}")
                        continue

                    return parsed

                except Exception:
                    # Fallback: raw text as response
                    if TERMINATION_SIGNAL in response_text:
                        return {
                            "reasoning": "Ending conversation",
                            "draft_answer": "",
                            "should_terminate": True,
                            "response": TERMINATION_SIGNAL,
                        }
                    else:
                        return {
                            "reasoning": "",
                            "draft_answer": "",
                            "should_terminate": False,
                            "response": response_text,
                        }

            except Exception as e:
                print(f"[OpenAIUserAgent] Error: {e}, attempt {attempt+1}")
                continue

        print(f"[OpenAIUserAgent] Failed after {self.num_retries} attempts")
        return None