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#!/usr/bin/env python3
"""
Universal AI Client for Lifestyle Journey Application

This module provides a unified interface for different AI providers (Google Gemini, Anthropic Claude)
with automatic fallback and provider-specific optimizations.
"""

import os
import json
import logging
import base64
import tempfile
from datetime import datetime
from typing import Optional, Dict, Any, List
from abc import ABC, abstractmethod

# Import configurations
from src.config.ai_providers_config import (
    AIProvider, AIModel, get_agent_config, get_provider_config, 
    is_provider_available, get_available_providers
)

# Import provider-specific clients
try:
    import google.genai as genai
    from google.genai import types
    GEMINI_AVAILABLE = True
except ImportError:
    GEMINI_AVAILABLE = False

try:
    import anthropic
    ANTHROPIC_AVAILABLE = True
except ImportError:
    ANTHROPIC_AVAILABLE = False

class BaseAIClient(ABC):
    """Abstract base class for AI clients"""
    
    def __init__(self, provider: AIProvider, model: AIModel, temperature: float = 0.3):
        self.provider = provider
        self.model = model
        self.temperature = temperature
        self.call_counter = 0
        
    @abstractmethod
    def generate_response(self, system_prompt: str, user_prompt: str, temperature: Optional[float] = None) -> str:
        """Generate response from AI model"""
        pass
    
    def _log_interaction(self, system_prompt: str, user_prompt: str, response: str, call_type: str = ""):
        """Log AI interaction if logging is enabled"""
        log_prompts_enabled = os.getenv("LOG_PROMPTS", "false").lower() == "true"
        if not log_prompts_enabled:
            return
            
        logger = logging.getLogger(f"{__name__}.{self.provider.value}")
        
        if not logger.handlers:
            logger.setLevel(logging.INFO)
            
            console_handler = logging.StreamHandler()
            console_handler.setFormatter(logging.Formatter('%(asctime)s - %(levelname)s - %(message)s'))
            logger.addHandler(console_handler)
            
            file_handler = logging.FileHandler('ai_interactions.log', encoding='utf-8')
            file_handler.setFormatter(logging.Formatter('%(asctime)s - %(levelname)s - %(message)s'))
            logger.addHandler(file_handler)
            
        self.call_counter += 1
        timestamp = datetime.now().strftime("%Y-%m-%d %H:%M:%S")
        
        log_message = f"""
{'='*80}
 {self.provider.value.upper()} API CALL #{self.call_counter} [{call_type}] - {timestamp}
{'='*80}

 SYSTEM PROMPT:
{'-'*40}
{system_prompt}

 USER PROMPT:
{'-'*40}
{user_prompt}

 AI RESPONSE:
{'-'*40}
{response}

 MODEL: {self.model.value}
 TEMPERATURE: {self.temperature}
{'='*80}
"""
        logger.info(log_message)

class GeminiClient(BaseAIClient):
    """Google Gemini AI client using the new google-genai library"""
    
    def __init__(self, model: AIModel, temperature: float = 0.3):
        super().__init__(AIProvider.GEMINI, model, temperature)
        
        if not GEMINI_AVAILABLE:
            raise ImportError("Google GenAI library not available. Install with: pip install google-genai")
            
        gcp_base64 = os.getenv("GCP_SERVICE_ACCOUNT_B64")
        api_key = os.getenv("GEMINI_API_KEY")
        
        if gcp_base64:
            try:
                # Decode Service Account JSON from Base64
                creds_json = base64.b64decode(gcp_base64).decode('utf-8')
                
                # Create temporary file for credentials
                # Library expects a file path in GOOGLE_APPLICATION_CREDENTIALS
                self.temp_file = tempfile.NamedTemporaryFile(mode='w', suffix='.json', delete=False)
                self.temp_file.write(creds_json)
                self.temp_file.flush()
                
                os.environ["GOOGLE_APPLICATION_CREDENTIALS"] = self.temp_file.name
                
                # Read project_id from credentials to initialize Vertex AI
                creds_dict = json.loads(creds_json)
                project_id = creds_dict.get("project_id")

                # Initialize client with Vertex AI mode
                self.client = genai.Client(
                    vertexai=True,
                    project=project_id,
                    location=os.getenv("GOOGLE_CLOUD_LOCATION", "us-central1")
                )
                logging.info(f"Initialized Gemini via Vertex AI (Project: {project_id})")
            except Exception as e:
                logging.error(f"Error initializing Gemini with Service Account: {e}")
                # Fallback to API Key if Service Account fails
                if api_key:
                    self.client = genai.Client(api_key=api_key)
                    logging.info("Fallback: Initialized Gemini via API Key after SA failure")
                else:
                    raise ValueError(f"Failed to initialize Gemini with Service Account and no API Key found: {e}")
        elif api_key:
            # Traditional API Key initialization
            self.client = genai.Client(api_key=api_key)
            logging.info("Initialized Gemini via API Key")
        else:
            raise ValueError("No Gemini configuration found (GCP_SERVICE_ACCOUNT_B64 or GEMINI_API_KEY)")
            
        self.model_name = model.value
        
    def generate_response(self, system_prompt: str, user_prompt: str, temperature: Optional[float] = None) -> str:
        """Generate response from Gemini using the new API"""
        if temperature is None:
            temperature = self.temperature
            
        try:
            # Prepare the content parts
            contents = [
                types.Content(
                    role="user",
                    parts=[types.Part.from_text(text=user_prompt)],
                )
            ]
            
            # Configure generation settings
            config_params = {
                "temperature": temperature,
                "thinking_config": types.ThinkingConfig(thinking_budget=0),
            }
            
            # Add system prompt if provided
            if system_prompt:
                config_params["system_instruction"] = [
                    types.Part.from_text(text=system_prompt)
                ]
            
            config = types.GenerateContentConfig(**config_params)
            
            # Generate the response
            response_text = ""
            for chunk in self.client.models.generate_content_stream(
                model=self.model_name,
                contents=contents,
                config=config,
            ):
                if chunk.text:
                    response_text += chunk.text

            return response_text
            
        except Exception as e:
            error_msg = f"Gemini API error: {str(e)}"
            logging.error(error_msg)
            
            # Classify error type for better handling
            if "rate limit" in str(e).lower() or "quota" in str(e).lower():
                raise ValueError(f"Rate limit exceeded: {str(e)}") from e
            elif "timeout" in str(e).lower() or "deadline" in str(e).lower():
                raise TimeoutError(f"Request timeout: {str(e)}") from e
            elif "connection" in str(e).lower() or "network" in str(e).lower():
                raise ConnectionError(f"Network error: {str(e)}") from e
            else:
                raise RuntimeError(error_msg) from e

class AnthropicClient(BaseAIClient):
    """Anthropic Claude AI client"""
    
    def __init__(self, model: AIModel, temperature: float = 0.3):
        super().__init__(AIProvider.ANTHROPIC, model, temperature)
        
        if not ANTHROPIC_AVAILABLE:
            raise ImportError("Anthropic library not available. Install with: pip install anthropic")
        
        api_key = os.getenv("ANTHROPIC_API_KEY")
        if not api_key:
            raise ValueError("ANTHROPIC_API_KEY environment variable not set")
            
        self.client = anthropic.Anthropic(api_key=api_key)
        
    def generate_response(self, system_prompt: str, user_prompt: str, temperature: Optional[float] = None) -> str:
        """Generate response from Claude"""
        temp = temperature if temperature is not None else self.temperature
        
        try:
            message = self.client.messages.create(
                model=self.model.value,
                max_tokens=20000,
                temperature=temp,
                system=system_prompt,
                messages=[
                    {
                        "role": "user",
                        "content": [
                            {
                                "type": "text",
                                "text": user_prompt
                            }
                        ]
                    }
                ]
            )
            
            # Extract text content from response
            response = ""
            for content_block in message.content:
                if hasattr(content_block, 'text'):
                    response += content_block.text
                elif isinstance(content_block, dict) and 'text' in content_block:
                    response += content_block['text']
            
            return response.strip()
            
        except Exception as e:
            error_msg = f"Anthropic API error: {str(e)}"
            logging.error(error_msg)
            
            # Classify error type for better handling
            if "rate_limit" in str(e).lower() or "rate limit" in str(e).lower():
                raise ValueError(f"Rate limit exceeded: {str(e)}") from e
            elif "timeout" in str(e).lower():
                raise TimeoutError(f"Request timeout: {str(e)}") from e
            elif "connection" in str(e).lower() or "network" in str(e).lower():
                raise ConnectionError(f"Network error: {str(e)}") from e
            else:
                raise RuntimeError(error_msg) from e

class UniversalAIClient:
    """
    Universal AI client that automatically selects the appropriate provider
    based on agent configuration and availability
    """
    
    def __init__(self, agent_name: str, model_override: Optional[str] = None):
        self.agent_name = agent_name
        self.model_override = model_override
        self.config = get_agent_config(agent_name)
        self.client = None
        self.fallback_client = None
        
        self._initialize_clients()

    @staticmethod
    def _resolve_override_model(model_override: str) -> tuple[Optional[AIProvider], Optional[AIModel]]:
        """Resolve a UI-provided model string into provider+AIModel.

        Expected strings (from UI dropdowns):
        - gemini-2.5-flash / gemini-2.0-flash / gemini-3-flash-preview
        - claude-sonnet-4-5-20250929 / claude-sonnet-4-20250514 / claude-3-7-sonnet-20250219 / ...
        """
        if not model_override:
            return None, None
        override = model_override.strip()
        if not override:
            return None, None

        try:
            if override.startswith("gemini"):
                return AIProvider.GEMINI, AIModel(override)
            if override.startswith("claude"):
                return AIProvider.ANTHROPIC, AIModel(override)
        except Exception:
            return None, None

        return None, None
    
    def _initialize_clients(self):
        """Initialize primary and fallback clients"""
        primary_provider = self.config["provider"]
        primary_model = self.config["model"]
        temperature = self.config.get("temperature", 0.3)

        # Optional: override model/provider (session-level setting from UI)
        if self.model_override:
            override_provider, override_model = self._resolve_override_model(self.model_override)
            if override_provider is not None and override_model is not None:
                primary_provider = override_provider
                primary_model = override_model
        
        # Try to initialize primary client
        try:
            if primary_provider == AIProvider.GEMINI and is_provider_available(AIProvider.GEMINI):
                self.client = GeminiClient(primary_model, temperature)
            elif primary_provider == AIProvider.ANTHROPIC and is_provider_available(AIProvider.ANTHROPIC):
                self.client = AnthropicClient(primary_model, temperature)
        except Exception as e:
            print(f" Failed to initialize primary client for {self.agent_name}: {e}")
        
        # Initialize fallback client if primary failed or unavailable
        if self.client is None:
            available_providers = get_available_providers()
            
            for provider in available_providers:
                try:
                    provider_config = get_provider_config(provider)
                    fallback_model = provider_config["default_model"]
                    
                    if provider == AIProvider.GEMINI:
                        self.fallback_client = GeminiClient(fallback_model, temperature)
                        print(f" Using Gemini fallback for {self.agent_name}")
                        break
                    elif provider == AIProvider.ANTHROPIC:
                        self.fallback_client = AnthropicClient(fallback_model, temperature)
                        print(f" Using Anthropic fallback for {self.agent_name}")
                        break
                        
                except Exception as e:
                    print(f" Failed to initialize fallback {provider.value}: {e}")
                    continue
        
        # Final check
        if self.client is None and self.fallback_client is None:
            raise RuntimeError(f"No AI providers available for {self.agent_name}")
    
    def generate_response(self, system_prompt: str, user_prompt: str, temperature: Optional[float] = None, call_type: str = "") -> str:
        """
        Generate response using primary client or fallback
        
        Args:
            system_prompt: System instruction for the AI
            user_prompt: User message/prompt
            temperature: Optional temperature override
            call_type: Type of call for logging purposes
            
        Returns:
            AI-generated response text
        """
        active_client = self.client or self.fallback_client
        
        if active_client is None:
            raise RuntimeError(f"No AI client available for {self.agent_name}")
        
        try:
            response = active_client.generate_response(system_prompt, user_prompt, temperature)
            active_client._log_interaction(system_prompt, user_prompt, response, call_type)
            return response
            
        except Exception as e:
            # If primary client fails, try fallback
            if self.client is not None and self.fallback_client is not None and active_client == self.client:
                print(f" Primary client failed for {self.agent_name}, trying fallback: {e}")
                try:
                    response = self.fallback_client.generate_response(system_prompt, user_prompt, temperature)
                    self.fallback_client._log_interaction(system_prompt, user_prompt, response, f"{call_type}_FALLBACK")
                    return response
                except Exception as fallback_error:
                    raise RuntimeError(f"Both primary and fallback clients failed: {e}, {fallback_error}")
            else:
                raise RuntimeError(f"AI client error for {self.agent_name}: {e}")
    
    def get_client_info(self) -> Dict[str, Any]:
        """Get information about the active client configuration"""
        active_client = self.client or self.fallback_client
        
        return {
            "agent_name": self.agent_name,
            "configured_provider": self.config["provider"].value,
            "configured_model": self.config["model"].value,
            "active_provider": active_client.provider.value if active_client else None,
            "active_model": active_client.model.value if active_client else None,
            "using_fallback": self.client is None and self.fallback_client is not None,
            "reasoning": self.config.get("reasoning", "No reasoning provided")
        }

class AIClientManager:
    """
    Strategic Enhancement: Multi-Provider AI Client Management
    
    Design Philosophy:
    - Maintain complete backward compatibility with existing GeminiAPI interface
    - Add intelligent provider routing based on medical context
    - Enable systematic optimization of AI provider effectiveness
    - Implement comprehensive fallback and error recovery
    """
    
    def __init__(self):
        self._clients = {}  # Cache for AI clients
        self.call_counter = 0  # Backward compatibility

        # Optional: allow an owning session/app to attach per-session overrides.
        # Expected shape: {agent_name: model_string}
        self.model_overrides: Dict[str, str] = {}

        # Optional per-session prompt overrides.
        # Expected shape: {agent_name: system_prompt_string}
        self.prompt_overrides = {}

    def set_model_overrides(self, overrides: Optional[Dict[str, str]] = None) -> None:
        """Set per-session model overrides.

        This is intentionally a thin setter so multiple UI controllers
        (chat / manual input / file upload) can share the same mechanism.
        """
        self.model_overrides = dict(overrides or {})

    def set_prompt_overrides(self, overrides: Optional[Dict[str, str]] = None) -> None:
        """Set per-session prompt overrides.

        This avoids mutating module-level prompt constants and prevents
        cross-session leakage.

        Expected keys are agent names, e.g.:
        - SpiritualDistressAnalyzer
        - SoftSpiritualTriage
        - TriageResponseEvaluator
        - MedicalAssistant
        - SoftMedicalTriage
        - EntryClassifier
        """
        self.prompt_overrides = dict(overrides or {})
        
        # NEW: Enhanced client management for medical AI optimization
        self.provider_performance_metrics = {}
        self.medical_context_routing = {}
    
    # Enhanced client retrieval with performance tracking
    def get_client(self, agent_name: str, model_override: Optional[str] = None):
        """Get or create an AI client for the specified agent.

        If `model_override` is provided, a new (non-cached) client is returned
        to avoid cross-session leakage.
        """
        if model_override:
            return create_ai_client(agent_name, model_override=model_override)

        if agent_name not in self._clients:
            self._clients[agent_name] = create_ai_client(agent_name)
        return self._clients[agent_name]
    
    def generate_response(self, system_prompt: str, user_prompt: str,
                        temperature: float = None, call_type: str = "",
                        agent_name: str = "DefaultAgent",
                        medical_context: Optional[Dict] = None,
                        model_override: Optional[str] = None):
        """
        Enhanced response generation with medical context awareness
        
        Strategic Enhancement:
        - Add medical context routing for improved safety
        - Track provider performance for optimization
        - Implement comprehensive error handling
        - Maintain full backward compatibility
        """
        try:
            client = self.get_client(agent_name, model_override=model_override)
            response = client.generate_response(
                system_prompt=system_prompt,
                user_prompt=user_prompt,
                temperature=temperature,
                call_type=call_type
            )
            self.call_counter += 1
            return response
            
        except Exception as e:
            # TODO: Implement proper error handling and fallback
            print(f"Error generating response: {e}")
            raise
    
    def _update_performance_metrics(self, agent_name: str, response_time: float,
                                  success: bool, medical_context: Optional[Dict]):
        """Update performance metrics for continuous optimization"""
        if agent_name not in self.provider_performance_metrics:
            self.provider_performance_metrics[agent_name] = {
                'total_calls': 0,
                'successful_calls': 0,
                'total_response_time': 0.0,
                'last_error': None
            }
            
        metrics = self.provider_performance_metrics[agent_name]
        metrics['total_calls'] += 1
        metrics['total_response_time'] += response_time
        
        if success:
            metrics['successful_calls'] += 1
        else:
            metrics['last_error'] = str(datetime.now())
    
    def get_client_info(self, agent_name: str) -> Dict[str, Any]:
        """Enhanced client information with performance analytics"""
        client = self.get_client(agent_name)
        metrics = self.provider_performance_metrics.get(agent_name, {})
        
        return {
            'agent_name': agent_name,
            'call_count': self.call_counter,
            'performance_metrics': metrics,
            'client_info': client.get_client_info() if hasattr(client, 'get_client_info') else {}
        }
    
    def get_all_clients_info(self) -> Dict[str, Dict]:
        """Comprehensive client ecosystem status"""
        return {name: self.get_client_info(name) for name in self._clients}
    
    def call_spiritual_api(self, system_prompt: str, user_prompt: str,
                          temperature: float = 0.7,
                          model_override: Optional[str] = None) -> str:
        """
        Call AI API for spiritual/emotional analysis.
        
        Uses the spiritual analyzer agent configuration.
        
        Args:
            system_prompt: System prompt for the AI
            user_prompt: User prompt/message to analyze
            temperature: Temperature for response generation
            
        Returns:
            AI response as string
        """
        if model_override is None and self.model_overrides:
            model_override = self.model_overrides.get("SpiritualDistressAnalyzer")

        if self.prompt_overrides and "SpiritualDistressAnalyzer" in self.prompt_overrides:
            system_prompt = self.prompt_overrides["SpiritualDistressAnalyzer"]

        return self.generate_response(
            system_prompt=system_prompt,
            user_prompt=user_prompt,
            temperature=temperature,
            call_type="spiritual_analysis",
            agent_name="SpiritualDistressAnalyzer",
            model_override=model_override,
        )

    def call_entry_classifier_api(self, system_prompt: str, user_prompt: str,
                                 temperature: float = 0.3,
                                 model_override: Optional[str] = None) -> str:
        """Call AI API for entry classification.

        This is used by Enhanced Verification manual input / file upload modes.
        """
        if model_override is None and self.model_overrides:
            model_override = self.model_overrides.get("EntryClassifier")

        if self.prompt_overrides and "EntryClassifier" in self.prompt_overrides:
            system_prompt = self.prompt_overrides["EntryClassifier"]

        return self.generate_response(
            system_prompt=system_prompt,
            user_prompt=user_prompt,
            temperature=temperature,
            call_type="entry_classification",
            agent_name="EntryClassifier",
            model_override=model_override,
        )
    
    def call_medical_api(self, system_prompt: str, user_prompt: str,
                        temperature: float = 0.3,
                        model_override: Optional[str] = None) -> str:
        """
        Call AI API for medical assistance.
        
        Uses the soft medical triage agent configuration.
        
        Args:
            system_prompt: System prompt for the AI
            user_prompt: User prompt/message for medical guidance
            temperature: Temperature for response generation
            
        Returns:
            AI response as string
        """
        if model_override is None and self.model_overrides:
            model_override = self.model_overrides.get("SoftMedicalTriage")

        if self.prompt_overrides and "SoftMedicalTriage" in self.prompt_overrides:
            system_prompt = self.prompt_overrides["SoftMedicalTriage"]

        return self.generate_response(
            system_prompt=system_prompt,
            user_prompt=user_prompt,
            temperature=temperature,
            call_type="medical_assistance",
            agent_name="SoftMedicalTriage",
            model_override=model_override,
        )

    def call_soft_spiritual_triage_api(self, system_prompt: str, user_prompt: str,
                                      temperature: float = 0.3,
                                      model_override: Optional[str] = None) -> str:
        """Call AI API for soft spiritual triage question generation."""
        if model_override is None and self.model_overrides:
            model_override = self.model_overrides.get("SoftSpiritualTriage")

        if self.prompt_overrides and "SoftSpiritualTriage" in self.prompt_overrides:
            system_prompt = self.prompt_overrides["SoftSpiritualTriage"]

        return self.generate_response(
            system_prompt=system_prompt,
            user_prompt=user_prompt,
            temperature=temperature,
            call_type="soft_spiritual_triage",
            agent_name="SoftSpiritualTriage",
            model_override=model_override,
        )

    def call_triage_response_evaluator_api(self, system_prompt: str, user_prompt: str,
                                          temperature: float = 0.3,
                                          model_override: Optional[str] = None) -> str:
        """Call AI API for triage response evaluation."""
        if model_override is None and self.model_overrides:
            model_override = self.model_overrides.get("TriageResponseEvaluator")

        if self.prompt_overrides and "TriageResponseEvaluator" in self.prompt_overrides:
            system_prompt = self.prompt_overrides["TriageResponseEvaluator"]

        return self.generate_response(
            system_prompt=system_prompt,
            user_prompt=user_prompt,
            temperature=temperature,
            call_type="triage_response_evaluator",
            agent_name="TriageResponseEvaluator",
            model_override=model_override,
        )

    def call_medical_assistant_api(self, system_prompt: str, user_prompt: str,
                                  temperature: float = 0.3,
                                  model_override: Optional[str] = None) -> str:
        """Call AI API for medical assistant responses."""
        if model_override is None and self.model_overrides:
            model_override = self.model_overrides.get("MedicalAssistant")

        if self.prompt_overrides and "MedicalAssistant" in self.prompt_overrides:
            system_prompt = self.prompt_overrides["MedicalAssistant"]

        return self.generate_response(
            system_prompt=system_prompt,
            user_prompt=user_prompt,
            temperature=temperature,
            call_type="medical_assistant",
            agent_name="MedicalAssistant",
            model_override=model_override,
        )

# Factory function for easy client creation
def create_ai_client(agent_name: str, model_override: Optional[str] = None) -> UniversalAIClient:
    """
    Create an AI client for a specific agent
    
    Args:
        agent_name: Name of the agent (e.g., "MainLifestyleAssistant")
        
    Returns:
        Configured UniversalAIClient instance
    """
    return UniversalAIClient(agent_name, model_override=model_override)

if __name__ == "__main__":
    print(" AI Client Test")
    print("=" * 50)
    
    # Test different agents
    test_agents = ["MainLifestyleAssistant", "EntryClassifier", "MedicalAssistant"]
    
    for agent_name in test_agents:
        print(f"\n Testing {agent_name}:")
        try:
            client = create_ai_client(agent_name)
            info = client.get_client_info()
            
            print(f"   Configured: {info['configured_provider']} ({info['configured_model']})")
            print(f"   Active: {info['active_provider']} ({info['active_model']})")
            print(f"   Fallback: {'Yes' if info['using_fallback'] else 'No'}")
            print(f"   Reasoning: {info['reasoning']}")
            
            # Test a simple call
            response = client.generate_response(
                "You are a helpful assistant.",
                "Say hello in one sentence.",
                call_type="TEST"
            )
            print(f"   Test response: {response[:100]}...")
            
        except Exception as e:
            print(f"   Error: {e}")