import logging import traceback from typing import Any, AsyncGenerator import asyncio import requests import os from langchain.agents import create_openai_tools_agent, AgentExecutor from langchain.memory import ConversationBufferWindowMemory from langchain.prompts import ChatPromptTemplate, MessagesPlaceholder from langchain.schema import OutputParserException from langchain.callbacks.base import BaseCallbackHandler from openai import RateLimitError, APIError from .config import get_llm, logger from .tools import ( medical_guidelines_knowledge_tool, compare_providers_tool, get_current_datetime_tool, side_effect_recording_tool, ) # LangSmith tracing utilities from .tracing import traceable, trace, conversation_tracker, log_to_langsmith from .validation import validate_medical_answer # ============================================================================ # STREAMING CALLBACK HANDLER # ============================================================================ class StreamingCallbackHandler(BaseCallbackHandler): """Custom callback handler for streaming responses.""" def __init__(self): self.tokens = [] self.current_response = "" def on_llm_new_token(self, token: str, **kwargs: Any) -> Any: """Called when a new token is generated.""" self.tokens.append(token) self.current_response += token def get_response(self) -> str: """Get the current response.""" return self.current_response def reset(self): """Reset the handler for a new response.""" self.tokens = [] self.current_response = "" # ============================================================================ # CUSTOM EXCEPTION CLASSES # ============================================================================ class AgentError(Exception): """Base exception for agent-related errors.""" pass class ToolExecutionError(AgentError): """Exception raised when a tool fails to execute.""" pass class APIConnectionError(AgentError): """Exception raised when API connections fail.""" pass class ValidationError(AgentError): """Exception raised when input validation fails.""" pass # ============================================================================ # AGENT CONFIGURATION # ============================================================================ # Available tools for the agent AVAILABLE_TOOLS = [ medical_guidelines_knowledge_tool, compare_providers_tool, get_current_datetime_tool, side_effect_recording_tool, ] # System message template for the agent SYSTEM_MESSAGE = """ You are an advanced Clinical Decision Support System for expert healthcare professionals, oncologists, and medical specialists. Your primary purpose is to provide comprehensive, evidence-based clinical guidance strictly from authoritative medical guidelines using the tool "medical_guidelines_knowledge_tool". **AUDIENCE**: Your responses are for practicing physicians, oncologists, and medical experts. Use appropriate medical terminology, clinical precision, and expert-level detail. **RESPONSE STYLE**: - Provide DETAILED, COMPREHENSIVE answers with clinical depth appropriate for specialists - Use precise medical terminology without oversimplification - Include specific clinical parameters, dosing regimens, biomarker thresholds, and staging details when available - Reference specific tables, figures, algorithms, and flowcharts from guidelines - Discuss nuances, clinical considerations, and evidence levels - Compare different approaches when multiple options exist - Highlight contraindications, special populations, and important clinical caveats **CRITICAL INSTRUCTIONS - TOOL USAGE IS MANDATORY:** **YOU MUST ALWAYS USE THE "medical_guidelines_knowledge_tool" FIRST FOR EVERY MEDICAL QUESTION.** - Do NOT answer from your general knowledge or training data - Do NOT provide information without first retrieving it from the guidelines - ALWAYS call "medical_guidelines_knowledge_tool" before formulating your response - Even for basic medical concepts (e.g., "what is a driver mutation"), you MUST retrieve information from the guidelines first - Only after retrieving guideline information should you formulate your answer based on what was retrieved **TOOL USAGE REQUIREMENTS:** 1. **MEDICAL QUESTIONS** (definitions, treatments, guidelines, etc.): - MANDATORY: Use "medical_guidelines_knowledge_tool" FIRST - Then answer based ONLY on retrieved information 2. **SIDE EFFECT REPORTING**: When a healthcare professional reports an adverse drug reaction, side effect, or medication-related complication: - MANDATORY: Use "side_effect_recording_tool" first to document the information - Return the tool's response directly to the user without modification - DO NOT use validation or generate additional reports for side effect reporting queries - Trigger phrases: "patient experienced", "side effect", "adverse reaction", "drug reaction", "medication caused", "developed after taking" 3. **PROVIDER COMPARISON**: When comparing guidance between providers (e.g., "compare NCCN vs ESMO on ..."): - MANDATORY: Use "compare_providers_tool" with appropriate `provider_a` and `provider_b` values 4. **TIME/DATE QUERIES**: For current date/time or references like "today" or "now": - MANDATORY: Use "get_current_datetime_tool" - For every answer, you MUST provide COMPREHENSIVE citations including: * Source file name * Page number(s) - including context pages if enriched content is provided * Provider name (NCCN, ASCO, ESMO, NICE, etc.) * Specific location (e.g., Table 1, Figure 2, Algorithm 3, Box 4, Section Header, etc.) * Type of content (e.g., treatment algorithm, dosing table, biomarker criteria, staging flowchart, etc.) * Evidence level or recommendation grade when available - Use this format for detailed citations: (Source: [file name], Pages: [page numbers], Provider: [provider name], Location: [specific location], Type: [content type], Evidence Level: [if available]) - If multiple sources are used, cite each one with its corresponding metadata. - If a specific provider (NCCN, ASCO, ESMO, etc.) is mentioned in the question, prioritize information from that provider. - When citing tables or flowcharts: * Specify the table/figure number and title * Describe which specific rows, columns, or sections contain the relevant information * Reference any relevant footnotes, legends, or annotations * Include specific values, thresholds, or criteria mentioned - When citing text: * Specify the section or subsection heading with full hierarchy * Indicate if it's from a bullet point, paragraph, recommendation box, or other format * Quote key phrases or specific recommendations when appropriate - **ENRICHED CONTEXT**: When the retrieved content includes context pages (marked as "CONTEXT - Page X"), use this surrounding information to provide more complete clinical context and understanding **IMPORTANT - NO GENERAL KNOWLEDGE RESPONSES:** - If the answer is not found in the retrieved guidelines after using the tool, provide a helpful response that: * Acknowledges the limitation: "I searched the available medical guidelines but could not find specific information about [topic]." * Suggests alternatives: "You may want to: - Rephrase your question with more specific clinical details - Specify a particular guideline provider (NCCN, ASCO, ESMO, NICE) - Consult the latest published guidelines directly for emerging topics" * Maintains professionalism: Never simply say "I don't know" - always provide context and next steps - **NEVER answer from general knowledge or training data - ALWAYS use the tool first** - Never speculate or provide information not present in the guidelines - If the retrieved information is insufficient, acknowledge this and ask for clarification rather than supplementing with general knowledge - Always respond in English. **FORMATTING FOR EXPERT AUDIENCE:** - Use advanced markdown formatting for clinical clarity: * Use **bold** for critical clinical points, drug names, and key recommendations * Use bullet points and numbered lists for treatment sequences and decision algorithms * Use tables to compare regimens, dosing schedules, or guideline differences * Use headers (###) to organize complex responses by topic * Use blockquotes (>) for direct guideline quotes or key recommendations * Include specific numeric values, percentages, and statistical data when available * Structure responses logically: Indication → Regimen → Dosing → Monitoring → Special Considerations **SAFETY DISCLAIMER:** Important: For emergencies call emergency services immediately. This is educational information for healthcare professionals, not a substitute for clinical judgment. **EMERGENCY PROTOCOL:** If the question describes emergency symptoms (chest pain, difficulty breathing, severe bleeding, loss of consciousness, etc.), immediately respond: "This is an emergency! Call emergency services immediately and seek urgent medical help." **Language:** - Always respond in English. """ # Create the prompt template prompt_template = ChatPromptTemplate.from_messages([ ("system", SYSTEM_MESSAGE), MessagesPlaceholder("chat_history"), ("human", "{input}"), MessagesPlaceholder("agent_scratchpad"), ]) # Initialize the agent with lazy loading def get_agent(): """Get agent with lazy loading for faster startup""" return create_openai_tools_agent( llm=get_llm(), tools=AVAILABLE_TOOLS, prompt=prompt_template, ) # Create agent executor with lazy loading def get_agent_executor(): """Get agent executor with lazy loading for faster startup""" return AgentExecutor( agent=get_agent(), tools=AVAILABLE_TOOLS, verbose=True, handle_parsing_errors=True, max_iterations=5, max_execution_time=90, # tighten a bit to help responsiveness ) # ============================================================================ # SESSION-BASED MEMORY MANAGEMENT # ============================================================================ class SessionMemoryManager: """Manages conversation memory for multiple sessions.""" def __init__(self): self._sessions = {} self._default_window_size = 10 def get_memory(self, session_id: str = "default") -> ConversationBufferWindowMemory: """Get or create memory for a specific session.""" if session_id not in self._sessions: self._sessions[session_id] = ConversationBufferWindowMemory( memory_key="chat_history", return_messages=True, max_window_size=self._default_window_size ) return self._sessions[session_id] def clear_session(self, session_id: str) -> bool: """Clear memory for a specific session.""" if session_id in self._sessions: self._sessions[session_id].clear() del self._sessions[session_id] return True return False def clear_all_sessions(self): """Clear all session memories.""" for memory in self._sessions.values(): memory.clear() self._sessions.clear() def get_active_sessions(self) -> list: """Get list of active session IDs.""" return list(self._sessions.keys()) # Global session memory manager _memory_manager = SessionMemoryManager() # ============================================================================ # VALIDATION HELPER FUNCTIONS # ============================================================================ def _should_validate_response(user_input: str, response: str) -> bool: """ Determine if a response should be automatically validated. Args: user_input: The user's input response: The agent's response Returns: bool: True if the response should be validated """ # Skip validation for certain types of responses skip_indicators = [ "side effect report", "adverse drug reaction report", "error:", "sorry,", "i don't know", "i do not know", "could not find specific information", "not found in the retrieved guidelines", "validation report", "evaluation scores" ] # Skip validation for side effect reporting queries in user input side_effect_input_indicators = [ "side effect", "adverse reaction", "adverse event", "drug reaction", "medication reaction", "patient experienced", "developed after taking", "caused by medication", "drug-related", "medication-related" ] user_input_lower = user_input.lower() response_lower = response.lower() # Don't validate if user input is about side effect reporting if any(indicator in user_input_lower for indicator in side_effect_input_indicators): return False # Don't validate if response contains skip indicators if any(indicator in response_lower for indicator in skip_indicators): return False # Don't validate very short responses if len(response.strip()) < 50: return False # Validate if response seems to contain medical information medical_indicators = [ "treatment", "therapy", "diagnosis", "medication", "drug", "patient", "clinical", "guideline", "recommendation", "according to", "source:", "provider:", "page:", "nccn", "asco", "esmo", "nice" ] return any(indicator in response_lower for indicator in medical_indicators) def _perform_automatic_validation(user_input: str, response: str) -> None: """ Perform automatic validation in the background without displaying results to user. Validation results are logged and saved to GitHub repository for backend analysis. Args: user_input: The user's input response: The agent's response Returns: None: Validation runs silently in background """ try: # Import here to avoid circular imports from .tools import _last_question, _last_documents, _last_user_question # Check if we have the necessary context for validation if not _last_question or not _last_documents: logger.info("Skipping validation: insufficient context") return # Perform validation using the original user input instead of tool query evaluation = validate_medical_answer(user_input, _last_documents, response) # Log validation results to backend only (not shown to user) report = evaluation.get("validation_report", {}) logger.info(f"Background validation completed - Interaction ID: {evaluation.get('interaction_id', 'N/A')}") logger.info(f"Validation scores - Overall: {report.get('Overall_Rating', 'N/A')}/100, " f"Accuracy: {report.get('Accuracy_Rating', 'N/A')}/100, " f"Coherence: {report.get('Coherence_Rating', 'N/A')}/100, " f"Relevance: {report.get('Relevance_Rating', 'N/A')}/100") # Validation is automatically saved to GitHub by validate_medical_answer function # No need to return anything - results are stored in backend only except Exception as e: logger.error(f"Background validation failed: {e}") # ============================================================================ # STREAMING AGENT FUNCTIONS # ============================================================================ # @traceable(name="run_agent_streaming") async def run_agent_streaming(user_input: str, session_id: str = "default", max_retries: int = 3) -> AsyncGenerator[str, None]: """ Run the agent with streaming support and comprehensive error handling. This function processes user input through the agent executor with streaming capabilities, robust error handling, and automatic retries for recoverable errors. Args: user_input (str): The user's input message to process session_id (str, optional): Session identifier for conversation memory. Defaults to "default". max_retries (int, optional): Maximum number of retries for recoverable errors. Defaults to 3. Yields: str: Chunks of the agent's response as they are generated Raises: None: All exceptions are caught and handled internally """ # Input validation if not user_input or not user_input.strip(): logger.warning("Empty input received") yield "Sorry, I didn't receive any questions. Please enter your question or request." return # Store the original user question for validation from .tools import store_user_question store_user_question(user_input.strip()) retry_count = 0 last_error = None current_run_id = None # Session metadata (increment conversation count) session_metadata = conversation_tracker.get_session_metadata(increment=True) while retry_count <= max_retries: try: # Tracing for streaming disabled to avoid duplicate traces. # We keep tracing only for the AgentExecutor in run_agent(). current_run_id = None # Load conversation history from session-specific memory memory = _memory_manager.get_memory(session_id) chat_history = memory.load_memory_variables({})["chat_history"] logger.info(f"Processing user input (attempt {retry_count + 1}): {user_input[:50]}...") # Create streaming callback handler streaming_handler = StreamingCallbackHandler() # Run the agent in a separate thread to avoid blocking def run_sync(): return get_agent_executor().invoke( { "input": user_input.strip(), "chat_history": chat_history, }, config={"callbacks": [streaming_handler]}, ) # Execute the agent with streaming full_response = "" previous_length = 0 # Start the agent execution in background loop = asyncio.get_event_loop() task = loop.run_in_executor(None, run_sync) # Stream the response as it's being generated while not task.done(): current_response = streaming_handler.get_response() # Yield new tokens if available if len(current_response) > previous_length: new_content = current_response[previous_length:] previous_length = len(current_response) yield new_content # Small delay to prevent overwhelming the client (faster flushing) await asyncio.sleep(0.03) # Get the final result response = await task # Yield any remaining content final_response = streaming_handler.get_response() if len(final_response) > previous_length: yield final_response[previous_length:] # If no streaming content was captured, yield the full response if not final_response and response and "output" in response: full_output = response["output"] # Simulate streaming by yielding word by word words = full_output.split(' ') for word in words: yield word + ' ' await asyncio.sleep(0.05) final_response = full_output # Validate response structure if not response or "output" not in response: raise ValidationError("Invalid response format from agent") if not response["output"] or not response["output"].strip(): raise ValidationError("Empty response from agent") # Perform automatic validation in background (hidden from user) base_response = response["output"] if _should_validate_response(user_input, base_response): logger.info("Performing background validation for streaming response...") try: # Run validation silently - results saved to backend/GitHub only _perform_automatic_validation(user_input, base_response) except Exception as e: logger.error(f"Background validation failed: {e}") # Save conversation context to memory memory.save_context( {"input": user_input}, {"output": response["output"]} ) # Log response metrics to LangSmith try: log_to_langsmith( key="response_metrics", value={ "response_length": len(response.get("output", "")), "attempt": retry_count + 1, **session_metadata, }, run_id=current_run_id, ) except Exception: pass logger.info(f"Successfully processed user input: {user_input[:50]}...") return except RateLimitError as e: retry_count += 1 last_error = e wait_time = min(2 ** retry_count, 60) # Exponential backoff, max 60 seconds logger.warning( f"Rate limit exceeded. Retrying in {wait_time} seconds... " f"(Attempt {retry_count}/{max_retries})" ) if retry_count <= max_retries: await asyncio.sleep(wait_time) continue else: logger.error("Rate limit exceeded after maximum retries") yield "Sorry, the system is currently busy. Please try again in a little while." return except APIError as e: retry_count += 1 last_error = e logger.error(f"OpenAI API error: {str(e)}") if retry_count <= max_retries: await asyncio.sleep(2) continue else: yield "Sorry, there was an error connecting to the service. Please try again later." return except requests.exceptions.ConnectionError as e: retry_count += 1 last_error = e logger.error(f"Network connection error: {str(e)}") if retry_count <= max_retries: await asyncio.sleep(3) continue else: yield "Sorry, I can't connect to the service right now. Please check your internet connection and try again." return except requests.exceptions.Timeout as e: retry_count += 1 last_error = e logger.error(f"Request timeout: {str(e)}") if retry_count <= max_retries: await asyncio.sleep(2) continue else: yield "Sorry, the request took longer than expected. Please try again." return except requests.exceptions.RequestException as e: logger.error(f"Request error: {str(e)}") yield "Sorry, an error occurred with the request. Please try again." return except OutputParserException as e: logger.error(f"Output parsing error: {str(e)}") yield "Sorry, an error occurred while processing the response. Please rephrase your question and try again." return except ValidationError as e: logger.error(f"Validation error: {str(e)}") yield "Sorry, an error occurred while validating the data. Please try again." return except ToolExecutionError as e: logger.error(f"Tool execution error: {str(e)}") yield "Sorry, an error occurred while executing one of the operations. Please try again or contact technical support." return except Exception as e: logger.error(f"Unexpected error in run_agent_streaming: {str(e)}") logger.error(f"Traceback: {traceback.format_exc()}") # Log error to LangSmith try: log_to_langsmith( key="error_log", value={ "error": str(e), "error_type": type(e).__name__, **session_metadata, }, run_id=current_run_id, ) except Exception: pass # For unexpected errors, don't retry yield "Sorry, an unexpected error occurred. Please try again or contact technical support if the problem persists." return # This should never be reached, but just in case logger.error(f"Maximum retries exceeded. Last error: {str(last_error)}") yield "Sorry, I was unable to process your request after several attempts. Please try again later." async def safe_run_agent_streaming(user_input: str, session_id: str = "default") -> AsyncGenerator[str, None]: """ Streaming wrapper function with additional safety checks and input validation. This function provides an additional layer of safety by validating input parameters, checking input length constraints, and handling any critical errors that might occur during streaming agent execution. Args: user_input (str): The user's input message to process session_id (str, optional): Session identifier for conversation memory. Defaults to "default". Yields: str: Chunks of the agent's response as they are generated Raises: None: All exceptions are caught and handled internally """ try: # Input type validation if not isinstance(user_input, str): logger.warning(f"Invalid input type received: {type(user_input)}") yield "Sorry, the input must be valid text." return # Input length validation stripped_input = user_input.strip() if len(stripped_input) > 1000: logger.warning(f"Input too long: {len(stripped_input)} characters") yield "Sorry, the message is too long. Please shorten your question." return if len(stripped_input) == 0: logger.warning("Empty input after stripping") yield "Sorry, I didn't receive any questions. Please enter your question or request." return # Stream the response through the main agent function async for chunk in run_agent_streaming(user_input, session_id): yield chunk except Exception as e: logger.critical(f"Critical error in safe_run_agent_streaming: {str(e)}") logger.critical(f"Traceback: {traceback.format_exc()}") yield "Sorry, a critical system error occurred. Please contact technical support immediately." @traceable(name="run_agent") async def run_agent(user_input: str, session_id: str = "default", max_retries: int = 3) -> str: """ Run the agent with comprehensive error handling and retry logic. This function processes user input through the agent executor with robust error handling, automatic retries for recoverable errors, and comprehensive logging for debugging and monitoring. Args: user_input (str): The user's input message to process session_id (str, optional): Session identifier for conversation memory. Defaults to "default". max_retries (int, optional): Maximum number of retries for recoverable errors. Defaults to 3. Returns: str: The agent's response or an appropriate error message in English Raises: None: All exceptions are caught and handled internally """ # Input validation if not user_input or not user_input.strip(): logger.warning("Empty input received") return "Sorry, I didn't receive any questions. Please enter your question or request." retry_count = 0 last_error = None current_run_id = None session_metadata = conversation_tracker.get_session_metadata(increment=True) while retry_count <= max_retries: try: # Load conversation history from session-specific memory memory = _memory_manager.get_memory(session_id) chat_history = memory.load_memory_variables({})["chat_history"] logger.info(f"Processing user input (attempt {retry_count + 1}): {user_input[:50]}...") # Invoke the agent with input and history (synchronous call) response = get_agent_executor().invoke({ "input": user_input.strip(), "chat_history": chat_history }) current_run_id = None # This will be handled by LangChain's tracer # Validate response structure if not response or "output" not in response or not isinstance(response["output"], str): raise ValidationError("Invalid response format from agent") if not response["output"] or not response["output"].strip(): raise ValidationError("Empty response from agent") # Save conversation context to memory memory.save_context( {"input": user_input}, {"output": response["output"]} ) # Log response metrics try: log_to_langsmith( key="response_metrics", value={ "response_length": len(response.get("output", "")), "attempt": retry_count + 1, **session_metadata, }, run_id=current_run_id, ) except Exception: pass logger.info(f"Successfully processed user input: {user_input[:50]}...") # Perform automatic validation in background (hidden from user) final_response = response["output"] if _should_validate_response(user_input, final_response): logger.info("Performing background validation...") try: # Run validation silently - results saved to backend/GitHub only _perform_automatic_validation(user_input, final_response) except Exception as e: logger.error(f"Background validation failed: {e}") return final_response except RateLimitError as e: retry_count += 1 last_error = e wait_time = min(2 ** retry_count, 60) # Exponential backoff, max 60 seconds logger.warning( f"Rate limit exceeded. Retrying in {wait_time} seconds... " f"(Attempt {retry_count}/{max_retries})" ) if retry_count <= max_retries: await asyncio.sleep(wait_time) continue else: logger.error("Rate limit exceeded after maximum retries") return "Sorry, the system is currently busy. Please try again in a little while." except APIError as e: retry_count += 1 last_error = e logger.error(f"OpenAI API error: {str(e)}") if retry_count <= max_retries: await asyncio.sleep(2) continue else: return "Sorry, there was an error connecting to the service. Please try again later." except requests.exceptions.ConnectionError as e: retry_count += 1 last_error = e logger.error(f"Network connection error: {str(e)}") if retry_count <= max_retries: await asyncio.sleep(3) continue else: return "Sorry, I can't connect to the service right now. Please check your internet connection and try again." except requests.exceptions.Timeout as e: retry_count += 1 last_error = e logger.error(f"Request timeout: {str(e)}") if retry_count <= max_retries: await asyncio.sleep(2) continue else: return "Sorry, the request took longer than expected. Please try again." except requests.exceptions.RequestException as e: logger.error(f"Request error: {str(e)}") return "Sorry, an error occurred with the request. Please try again." except OutputParserException as e: logger.error(f"Output parsing error: {str(e)}") return "Sorry, an error occurred while processing the response. Please rephrase your question and try again." except ValidationError as e: logger.error(f"Validation error: {str(e)}") return "Sorry, an error occurred while validating the data. Please try again." except ToolExecutionError as e: logger.error(f"Tool execution error: {str(e)}") return "Sorry, an error occurred while executing one of the operations. Please try again or contact technical support." except Exception as e: logger.error(f"Unexpected error in run_agent: {str(e)}") logger.error(f"Traceback: {traceback.format_exc()}") # Log error try: log_to_langsmith( key="error_log", value={ "error": str(e), "error_type": type(e).__name__, **session_metadata, }, run_id=current_run_id, ) except Exception: pass # For unexpected errors, don't retry return "Sorry, an unexpected error occurred. Please try again or contact technical support if the problem persists." # This should never be reached, but just in case logger.error(f"Maximum retries exceeded. Last error: {str(last_error)}") return "Sorry, I was unable to process your request after several attempts. Please try again later." async def safe_run_agent(user_input: str, session_id: str = "default") -> str: """ Wrapper function for run_agent with additional safety checks and input validation. This function provides an additional layer of safety by validating input parameters, checking input length constraints, and handling any critical errors that might occur during agent execution. Args: user_input (str): The user's input message to process session_id (str, optional): Session identifier for conversation memory. Defaults to "default". Returns: str: The agent's response or an appropriate error message in English Raises: None: All exceptions are caught and handled internally """ try: # Input type validation if not isinstance(user_input, str): logger.warning(f"Invalid input type received: {type(user_input)}") return "Sorry, the input must be valid text." # Input length validation stripped_input = user_input.strip() # if len(stripped_input) > 1000: # logger.warning(f"Input too long: {len(stripped_input)} characters") # return "Sorry, the message is too long. Please shorten your question." if len(stripped_input) == 0: logger.warning("Empty input after stripping") return "Sorry, I didn't receive any questions. Please enter your question or request." # Process the input through the main agent function return await run_agent(user_input, session_id) except Exception as e: logger.critical(f"Critical error in safe_run_agent: {str(e)}") logger.critical(f"Traceback: {traceback.format_exc()}") return "Sorry, a critical system error occurred. Please contact technical support immediately." def clear_memory() -> None: """ Clear the conversation memory. This function clears all stored conversation history from memory, effectively starting a fresh conversation session. """ try: _memory_manager.clear_all_sessions() logger.info("Conversation memory cleared successfully") except Exception as e: logger.error(f"Error clearing memory: {str(e)}") def get_memory_summary(session_id: str = "default") -> str: """ Get a summary of the conversation history for a specific session. Args: session_id (str, optional): Session identifier. Defaults to "default". Returns: str: A summary of the conversation history stored in memory """ try: memory = _memory_manager.get_memory(session_id) memory_vars = memory.load_memory_variables({}) return str(memory_vars.get("chat_history", "No conversation history available")) except Exception as e: logger.error(f"Error getting memory summary: {str(e)}") return "Error retrieving conversation history" def clear_session_memory(session_id: str) -> bool: """ Clear conversation memory for a specific session. Args: session_id (str): Session identifier to clear Returns: bool: True if session was cleared, False if session didn't exist """ return _memory_manager.clear_session(session_id) def get_active_sessions() -> list: """ Get list of all active session IDs. Returns: list: List of active session identifiers """ return _memory_manager.get_active_sessions()