# Advanced SQLite sessions `AdvancedSQLiteSession` is an enhanced version of the basic `SQLiteSession` that provides advanced conversation management capabilities including conversation branching, detailed usage analytics, and structured conversation queries. ## Features - **Conversation branching**: Create alternative conversation paths from any user message - **Usage tracking**: Detailed token usage analytics per turn with full JSON breakdowns - **Structured queries**: Get conversations by turns, tool usage statistics, and more - **Branch management**: Independent branch switching and management - **Message structure metadata**: Track message types, tool usage, and conversation flow ## Quick start ```python from agents import Agent, Runner from agents.extensions.memory import AdvancedSQLiteSession # Create agent agent = Agent( name="Assistant", instructions="Reply very concisely.", ) # Create an advanced session session = AdvancedSQLiteSession( session_id="conversation_123", db_path="conversations.db", create_tables=True ) # First conversation turn result = await Runner.run( agent, "What city is the Golden Gate Bridge in?", session=session ) print(result.final_output) # "San Francisco" # IMPORTANT: Store usage data await session.store_run_usage(result) # Continue conversation result = await Runner.run( agent, "What state is it in?", session=session ) print(result.final_output) # "California" await session.store_run_usage(result) ``` ## Initialization ```python from agents.extensions.memory import AdvancedSQLiteSession # Basic initialization session = AdvancedSQLiteSession( session_id="my_conversation", create_tables=True # Auto-create advanced tables ) # With persistent storage session = AdvancedSQLiteSession( session_id="user_123", db_path="path/to/conversations.db", create_tables=True ) # With custom logger import logging logger = logging.getLogger("my_app") session = AdvancedSQLiteSession( session_id="session_456", create_tables=True, logger=logger ) ``` ### Parameters - `session_id` (str): Unique identifier for the conversation session - `db_path` (str | Path): Path to SQLite database file. Defaults to `:memory:` for in-memory storage - `create_tables` (bool): Whether to automatically create the advanced tables. Defaults to `False` - `logger` (logging.Logger | None): Custom logger for the session. Defaults to module logger ## Usage tracking AdvancedSQLiteSession provides detailed usage analytics by storing token usage data per conversation turn. **This is entirely dependent on the `store_run_usage` method being called after each agent run.** ### Storing usage data ```python # After each agent run, store the usage data result = await Runner.run(agent, "Hello", session=session) await session.store_run_usage(result) # This stores: # - Total tokens used # - Input/output token breakdown # - Request count # - Detailed JSON token information (if available) ``` ### Retrieving usage statistics ```python # Get session-level usage (all branches) session_usage = await session.get_session_usage() if session_usage: print(f"Total requests: {session_usage['requests']}") print(f"Total tokens: {session_usage['total_tokens']}") print(f"Input tokens: {session_usage['input_tokens']}") print(f"Output tokens: {session_usage['output_tokens']}") print(f"Total turns: {session_usage['total_turns']}") # Get usage for specific branch branch_usage = await session.get_session_usage(branch_id="main") # Get usage by turn turn_usage = await session.get_turn_usage() for turn_data in turn_usage: print(f"Turn {turn_data['user_turn_number']}: {turn_data['total_tokens']} tokens") if turn_data['input_tokens_details']: print(f" Input details: {turn_data['input_tokens_details']}") if turn_data['output_tokens_details']: print(f" Output details: {turn_data['output_tokens_details']}") # Get usage for specific turn turn_2_usage = await session.get_turn_usage(user_turn_number=2) ``` ## Conversation branching One of the key features of AdvancedSQLiteSession is the ability to create conversation branches from any user message, allowing you to explore alternative conversation paths. ### Creating branches ```python # Get available turns for branching turns = await session.get_conversation_turns() for turn in turns: print(f"Turn {turn['turn']}: {turn['content']}") print(f"Can branch: {turn['can_branch']}") # Create a branch from turn 2 branch_id = await session.create_branch_from_turn(2) print(f"Created branch: {branch_id}") # Create a branch with custom name branch_id = await session.create_branch_from_turn( 2, branch_name="alternative_path" ) # Create branch by searching for content branch_id = await session.create_branch_from_content( "weather", branch_name="weather_focus" ) ``` ### Branch management ```python # List all branches branches = await session.list_branches() for branch in branches: current = " (current)" if branch["is_current"] else "" print(f"{branch['branch_id']}: {branch['user_turns']} turns, {branch['message_count']} messages{current}") # Switch between branches await session.switch_to_branch("main") await session.switch_to_branch(branch_id) # Delete a branch await session.delete_branch(branch_id, force=True) # force=True allows deleting current branch ``` ### Branch workflow example ```python # Original conversation result = await Runner.run(agent, "What's the capital of France?", session=session) await session.store_run_usage(result) result = await Runner.run(agent, "What's the weather like there?", session=session) await session.store_run_usage(result) # Create branch from turn 2 (weather question) branch_id = await session.create_branch_from_turn(2, "weather_focus") # Continue in new branch with different question result = await Runner.run( agent, "What are the main tourist attractions in Paris?", session=session ) await session.store_run_usage(result) # Switch back to main branch await session.switch_to_branch("main") # Continue original conversation result = await Runner.run( agent, "How expensive is it to visit?", session=session ) await session.store_run_usage(result) ``` ## Structured queries AdvancedSQLiteSession provides several methods for analyzing conversation structure and content. ### Conversation analysis ```python # Get conversation organized by turns conversation_by_turns = await session.get_conversation_by_turns() for turn_num, items in conversation_by_turns.items(): print(f"Turn {turn_num}: {len(items)} items") for item in items: if item["tool_name"]: print(f" - {item['type']} (tool: {item['tool_name']})") else: print(f" - {item['type']}") # Get tool usage statistics tool_usage = await session.get_tool_usage() for tool_name, count, turn in tool_usage: print(f"{tool_name}: used {count} times in turn {turn}") # Find turns by content matching_turns = await session.find_turns_by_content("weather") for turn in matching_turns: print(f"Turn {turn['turn']}: {turn['content']}") ``` ### Message structure The session automatically tracks message structure including: - Message types (user, assistant, tool_call, etc.) - Tool names for tool calls - Turn numbers and sequence numbers - Branch associations - Timestamps ## Database schema AdvancedSQLiteSession extends the basic SQLite schema with two additional tables: ### message_structure table ```sql CREATE TABLE message_structure ( id INTEGER PRIMARY KEY AUTOINCREMENT, session_id TEXT NOT NULL, message_id INTEGER NOT NULL, branch_id TEXT NOT NULL DEFAULT 'main', message_type TEXT NOT NULL, sequence_number INTEGER NOT NULL, user_turn_number INTEGER, branch_turn_number INTEGER, tool_name TEXT, created_at TIMESTAMP DEFAULT CURRENT_TIMESTAMP, FOREIGN KEY (session_id) REFERENCES agent_sessions(session_id) ON DELETE CASCADE, FOREIGN KEY (message_id) REFERENCES agent_messages(id) ON DELETE CASCADE ); ``` ### turn_usage table ```sql CREATE TABLE turn_usage ( id INTEGER PRIMARY KEY AUTOINCREMENT, session_id TEXT NOT NULL, branch_id TEXT NOT NULL DEFAULT 'main', user_turn_number INTEGER NOT NULL, requests INTEGER DEFAULT 0, input_tokens INTEGER DEFAULT 0, output_tokens INTEGER DEFAULT 0, total_tokens INTEGER DEFAULT 0, input_tokens_details JSON, output_tokens_details JSON, created_at TIMESTAMP DEFAULT CURRENT_TIMESTAMP, FOREIGN KEY (session_id) REFERENCES agent_sessions(session_id) ON DELETE CASCADE, UNIQUE(session_id, branch_id, user_turn_number) ); ``` ## Complete example Check out the [complete example](https://github.com/openai/openai-agents-python/tree/main/examples/memory/advanced_sqlite_session_example.py) for a comprehensive demonstration of all features. ## API reference - [`AdvancedSQLiteSession`][agents.extensions.memory.advanced_sqlite_session.AdvancedSQLiteSession] - Main class - [`Session`][agents.memory.session.Session] - Base session protocol