#!/usr/bin/env python3 # -*- coding: utf-8 -*- """ Comprehensive Dialogue Logger for Code Implementation Workflow Logs complete conversation rounds with detailed formatting and paper-specific organization """ import json import os from datetime import datetime from pathlib import Path from typing import Dict, Any, List class DialogueLogger: """ Comprehensive dialogue logger for code implementation workflow Captures complete conversation rounds with proper formatting and organization """ def __init__(self, paper_id: str, base_path: str = None): """ Initialize dialogue logger for a specific paper Args: paper_id: Paper identifier (e.g., "1", "2", etc.) base_path: Base path for logs (defaults to agent_folders structure) """ self.paper_id = paper_id self.base_path = ( base_path or "/data2/bjdwhzzh/project-hku/Code-Agent2.0/Code-Agent/deepcode-mcp/agent_folders" ) self.log_directory = os.path.join( self.base_path, "papers", str(paper_id), "logs" ) # Create log directory if it doesn't exist Path(self.log_directory).mkdir(parents=True, exist_ok=True) # Session tracking (initialize before log file creation) self.round_counter = 0 self.session_start_time = datetime.now() self.current_round_data = {} # Generate log filename with timestamp timestamp = self.session_start_time.strftime("%Y%m%d_%H%M%S") self.log_filename = f"dialogue_log_{timestamp}.md" self.log_filepath = os.path.join(self.log_directory, self.log_filename) # Initialize log file with header self._initialize_log_file() print(f"๐Ÿ“ Dialogue Logger initialized for Paper {paper_id}") print(f"๐Ÿ“ Log file: {self.log_filepath}") def _initialize_log_file(self): """Initialize the log file with header information""" header = f"""# Code Implementation Dialogue Log **Paper ID:** {self.paper_id} **Session Start:** {self.session_start_time.strftime('%Y-%m-%d %H:%M:%S')} **Log File:** {self.log_filename} --- ## Session Overview This log contains the complete conversation rounds between the user and assistant during the code implementation workflow. Each round includes: - System prompts and user messages - Assistant responses with tool calls - Tool execution results - Implementation progress markers --- """ try: with open(self.log_filepath, "w", encoding="utf-8") as f: f.write(header) except Exception as e: print(f"โš ๏ธ Failed to initialize log file: {e}") def start_new_round( self, round_type: str = "implementation", context: Dict[str, Any] = None ): """ Start a new dialogue round Args: round_type: Type of round (implementation, summary, error_handling, etc.) context: Additional context information (may include 'iteration' to sync with workflow) """ # Use iteration from context if provided, otherwise increment round_counter if context and "iteration" in context: self.round_counter = context["iteration"] else: self.round_counter += 1 self.current_round_data = { "round_number": self.round_counter, "round_type": round_type, "start_time": datetime.now(), "context": context or {}, "messages": [], "tool_calls": [], "results": [], "metadata": {}, } print(f"๐Ÿ”„ Starting Round {self.round_counter}: {round_type}") def log_system_prompt(self, prompt: str, prompt_type: str = "system"): """ Log system prompt or instructions Args: prompt: System prompt content prompt_type: Type of prompt (system, instruction, etc.) """ if not self.current_round_data: self.start_new_round("system_setup") self.current_round_data["messages"].append( { "role": "system", "type": prompt_type, "content": prompt, "timestamp": datetime.now().isoformat(), } ) def log_user_message(self, message: str, message_type: str = "user_input"): """ Log user message Args: message: User message content message_type: Type of message (user_input, feedback, guidance, etc.) """ if not self.current_round_data: self.start_new_round("user_interaction") self.current_round_data["messages"].append( { "role": "user", "type": message_type, "content": message, "timestamp": datetime.now().isoformat(), } ) def log_assistant_response( self, response: str, response_type: str = "assistant_response" ): """ Log assistant response Args: response: Assistant response content response_type: Type of response (assistant_response, analysis, etc.) """ if not self.current_round_data: self.start_new_round("assistant_interaction") self.current_round_data["messages"].append( { "role": "assistant", "type": response_type, "content": response, "timestamp": datetime.now().isoformat(), } ) def log_tool_calls(self, tool_calls: List[Dict[str, Any]]): """ Log tool calls made by the assistant Args: tool_calls: List of tool calls with id, name, and input """ if not self.current_round_data: self.start_new_round("tool_execution") for tool_call in tool_calls: self.current_round_data["tool_calls"].append( { "id": tool_call.get("id", ""), "name": tool_call.get("name", ""), "input": tool_call.get("input", {}), "timestamp": datetime.now().isoformat(), } ) def log_tool_results(self, tool_results: List[Dict[str, Any]]): """ Log tool execution results Args: tool_results: List of tool results with tool_name and result """ if not self.current_round_data: self.start_new_round("tool_results") for result in tool_results: self.current_round_data["results"].append( { "tool_name": result.get("tool_name", ""), "result": result.get("result", ""), "timestamp": datetime.now().isoformat(), } ) def log_metadata(self, key: str, value: Any): """ Log metadata information Args: key: Metadata key value: Metadata value """ if not self.current_round_data: self.start_new_round("metadata") self.current_round_data["metadata"][key] = value def log_memory_optimization( self, messages_before: List[Dict], messages_after: List[Dict], optimization_stats: Dict[str, Any], approach: str = "memory_optimization", ): """ Log memory optimization details including before/after message content Args: messages_before: Messages before optimization messages_after: Messages after optimization optimization_stats: Statistics about the optimization approach: Optimization approach used """ if not self.current_round_data: self.start_new_round("memory_optimization") # Calculate what was removed/kept removed_count = len(messages_before) - len(messages_after) compression_ratio = ( (removed_count / len(messages_before) * 100) if messages_before else 0 ) # Log the optimization details optimization_data = { "approach": approach, "messages_before_count": len(messages_before), "messages_after_count": len(messages_after), "messages_removed_count": removed_count, "compression_ratio": f"{compression_ratio:.1f}%", "optimization_stats": optimization_stats, "timestamp": datetime.now().isoformat(), } # Store the optimization data if "memory_optimizations" not in self.current_round_data: self.current_round_data["memory_optimizations"] = [] self.current_round_data["memory_optimizations"].append( { "optimization_data": optimization_data, "messages_before": messages_before, "messages_after": messages_after, } ) # Log metadata self.log_metadata("memory_optimization", optimization_data) print( f"๐Ÿงน Memory optimization logged: {len(messages_before)} โ†’ {len(messages_after)} messages ({compression_ratio:.1f}% compression)" ) def complete_round(self, summary: str = "", status: str = "completed"): """ Complete the current round and write to log file Args: summary: Round summary status: Round completion status """ if not self.current_round_data: print("โš ๏ธ No active round to complete") return self.current_round_data["end_time"] = datetime.now() self.current_round_data["duration"] = ( self.current_round_data["end_time"] - self.current_round_data["start_time"] ).total_seconds() self.current_round_data["summary"] = summary self.current_round_data["status"] = status # Write round to log file self._write_round_to_log() print(f"โœ… Round {self.round_counter} completed: {status}") # Clear current round data self.current_round_data = {} def _write_round_to_log(self): """Write the current round data to the log file in markdown format""" try: with open(self.log_filepath, "a", encoding="utf-8") as f: round_data = self.current_round_data # Round header f.write( f"\n## Round {round_data['round_number']}: {round_data['round_type'].title()}\n\n" ) f.write( f"**Start Time:** {round_data['start_time'].strftime('%Y-%m-%d %H:%M:%S')}\n" ) f.write( f"**End Time:** {round_data['end_time'].strftime('%Y-%m-%d %H:%M:%S')}\n" ) f.write(f"**Duration:** {round_data['duration']:.2f} seconds\n") f.write(f"**Status:** {round_data['status']}\n\n") # Context information if round_data.get("context"): f.write("### Context\n\n") for key, value in round_data["context"].items(): f.write(f"- **{key}:** {value}\n") f.write("\n") # Messages if round_data.get("messages"): f.write("### Messages\n\n") for i, msg in enumerate(round_data["messages"], 1): role_emoji = { "system": "๐Ÿ”ง", "user": "๐Ÿ‘ค", "assistant": "๐Ÿค–", }.get(msg["role"], "๐Ÿ“") f.write( f"#### {role_emoji} {msg['role'].title()} Message {i}\n\n" ) f.write(f"**Type:** {msg['type']}\n") f.write(f"**Timestamp:** {msg['timestamp']}\n\n") f.write("```\n") f.write(msg["content"]) f.write("\n```\n\n") # Tool calls if round_data.get("tool_calls"): f.write("### Tool Calls\n\n") for i, tool_call in enumerate(round_data["tool_calls"], 1): f.write(f"#### ๐Ÿ› ๏ธ Tool Call {i}: {tool_call['name']}\n\n") f.write(f"**ID:** {tool_call['id']}\n") f.write(f"**Timestamp:** {tool_call['timestamp']}\n\n") f.write("**Input:**\n") f.write("```json\n") f.write( json.dumps(tool_call["input"], indent=2, ensure_ascii=False) ) f.write("\n```\n\n") # Tool results if round_data.get("results"): f.write("### Tool Results\n\n") for i, result in enumerate(round_data["results"], 1): f.write(f"#### ๐Ÿ“Š Result {i}: {result['tool_name']}\n\n") f.write(f"**Timestamp:** {result['timestamp']}\n\n") f.write("**Result:**\n") f.write("```\n") f.write(str(result["result"])) f.write("\n```\n\n") # Memory Optimizations if round_data.get("memory_optimizations"): f.write("### Memory Optimizations\n\n") for i, opt in enumerate(round_data["memory_optimizations"], 1): opt_data = opt["optimization_data"] messages_before = opt["messages_before"] messages_after = opt["messages_after"] f.write(f"#### ๐Ÿงน Memory Optimization {i}\n\n") f.write(f"**Approach:** {opt_data['approach']}\n") f.write( f"**Messages Before:** {opt_data['messages_before_count']}\n" ) f.write( f"**Messages After:** {opt_data['messages_after_count']}\n" ) f.write( f"**Messages Removed:** {opt_data['messages_removed_count']}\n" ) f.write( f"**Compression Ratio:** {opt_data['compression_ratio']}\n" ) f.write(f"**Timestamp:** {opt_data['timestamp']}\n\n") # Show optimization stats if opt_data.get("optimization_stats"): f.write("**Optimization Statistics:**\n") f.write("```json\n") f.write( json.dumps( opt_data["optimization_stats"], indent=2, ensure_ascii=False, ) ) f.write("\n```\n\n") # Show messages before optimization (limited to last 5 for readability) if messages_before: f.write("**Messages Before Optimization (last 5):**\n\n") for j, msg in enumerate(messages_before[-5:], 1): role = msg.get("role", "unknown") content = msg.get("content", "") # Truncate very long messages if len(content) > 3000: content = content[:3000] + "...[truncated]" f.write( f"- **{role} {j}:** {content[:3000]}{'...' if len(content) > 100 else ''}\n" ) f.write("\n") # Show messages after optimization if messages_after: f.write("**Messages After Optimization:**\n\n") for j, msg in enumerate(messages_after, 1): role = msg.get("role", "unknown") content = msg.get("content", "") # Truncate very long messages if len(content) > 3000: content = content[:3000] + "...[truncated]" f.write( f"- **{role} {j}:** {content[:3000]}{'...' if len(content) > 100 else ''}\n" ) f.write("\n") # Show what was removed if len(messages_before) > len(messages_after): removed_messages = ( messages_before[: -len(messages_after)] if messages_after else messages_before ) f.write( f"**Messages Removed ({len(removed_messages)}):**\n\n" ) for j, msg in enumerate( removed_messages[-3:], 1 ): # Show last 3 removed role = msg.get("role", "unknown") content = msg.get("content", "") if len(content) > 3000: content = content[:3000] + "...[truncated]" f.write(f"- **{role} {j}:** {content}\n") f.write("\n") f.write("\n") # Metadata if round_data.get("metadata"): f.write("### Metadata\n\n") for key, value in round_data["metadata"].items(): if ( key != "memory_optimization" ): # Skip memory optimization metadata as it's shown above f.write(f"- **{key}:** {value}\n") f.write("\n") # Summary if round_data.get("summary"): f.write("### Summary\n\n") f.write(round_data["summary"]) f.write("\n\n") # Separator f.write("---\n\n") except Exception as e: print(f"โš ๏ธ Failed to write round to log: {e}") def log_complete_exchange( self, system_prompt: str = "", user_message: str = "", assistant_response: str = "", tool_calls: List[Dict] = None, tool_results: List[Dict] = None, round_type: str = "exchange", context: Dict = None, summary: str = "", ): """ Log a complete exchange in a single call Args: system_prompt: System prompt (optional) user_message: User message assistant_response: Assistant response tool_calls: Tool calls made tool_results: Tool execution results round_type: Type of round context: Additional context summary: Round summary """ self.start_new_round(round_type, context) if system_prompt: self.log_system_prompt(system_prompt) if user_message: self.log_user_message(user_message) if assistant_response: self.log_assistant_response(assistant_response) if tool_calls: self.log_tool_calls(tool_calls) if tool_results: self.log_tool_results(tool_results) self.complete_round(summary) def get_session_stats(self) -> Dict[str, Any]: """Get session statistics""" return { "paper_id": self.paper_id, "session_start": self.session_start_time.isoformat(), "total_rounds": self.round_counter, "log_file": self.log_filepath, "session_duration": ( datetime.now() - self.session_start_time ).total_seconds(), } def finalize_session(self, final_summary: str = ""): """ Finalize the logging session Args: final_summary: Final session summary """ try: with open(self.log_filepath, "a", encoding="utf-8") as f: f.write("\n## Session Summary\n\n") f.write(f"**Total Rounds:** {self.round_counter}\n") f.write( f"**Session Duration:** {(datetime.now() - self.session_start_time).total_seconds():.2f} seconds\n" ) f.write( f"**End Time:** {datetime.now().strftime('%Y-%m-%d %H:%M:%S')}\n\n" ) if final_summary: f.write("### Final Summary\n\n") f.write(final_summary) f.write("\n\n") f.write("---\n\n") f.write("*End of Session*\n") except Exception as e: print(f"โš ๏ธ Failed to finalize session: {e}") print(f"๐ŸŽฏ Session finalized: {self.round_counter} rounds logged") # Utility functions for easy integration def create_dialogue_logger(paper_id: str, base_path: str = None) -> DialogueLogger: """ Create a dialogue logger for a specific paper Args: paper_id: Paper identifier base_path: Base path for logs Returns: DialogueLogger instance """ return DialogueLogger(paper_id, base_path) def extract_paper_id_from_path(path: str) -> str: """ Extract paper ID from a file path Args: path: File path containing paper information Returns: Paper ID string """ # Extract paper ID from path like "/data2/.../papers/1/initial_plan.txt" parts = path.split("/") for i, part in enumerate(parts): if part == "papers" and i + 1 < len(parts): return parts[i + 1] return "unknown" # Example usage if __name__ == "__main__": # Test the dialogue logger logger = DialogueLogger("1") # Log a complete exchange logger.log_complete_exchange( system_prompt="You are a code implementation assistant.", user_message="Implement the transformer model", assistant_response="I'll implement the transformer model step by step.", tool_calls=[ {"id": "1", "name": "write_file", "input": {"filename": "transformer.py"}} ], tool_results=[ {"tool_name": "write_file", "result": "File created successfully"} ], round_type="implementation", context={"files_implemented": 1}, summary="Successfully implemented transformer model", ) # Test memory optimization logging logger.start_new_round( "memory_optimization", {"trigger_reason": "write_file_detected"} ) # Mock messages before and after optimization messages_before = [ {"role": "user", "content": "Original message 1"}, {"role": "assistant", "content": "Original response 1"}, {"role": "user", "content": "Original message 2"}, {"role": "assistant", "content": "Original response 2"}, {"role": "user", "content": "Original message 3"}, ] messages_after = [ {"role": "user", "content": "Original message 1"}, {"role": "assistant", "content": "Original response 1"}, {"role": "user", "content": "Original message 3"}, ] # Mock optimization stats optimization_stats = { "implemented_files_tracked": 2, "current_round": 5, "concise_mode_active": True, } # Log memory optimization logger.log_memory_optimization( messages_before=messages_before, messages_after=messages_after, optimization_stats=optimization_stats, approach="clear_after_write_file", ) logger.complete_round("Memory optimization test completed") # Finalize session logger.finalize_session( "Test session with memory optimization logging completed successfully" ) print("โœ… Dialogue logger test completed with memory optimization")