from typing import TYPE_CHECKING, Callable, Dict, List from letta.constants import MESSAGE_SUMMARY_REQUEST_ACK from letta.llm_api.llm_api_tools import create from letta.llm_api.llm_client import LLMClient from letta.otel.tracing import trace_method from letta.prompts.gpt_summarize import SYSTEM as SUMMARY_PROMPT_SYSTEM from letta.schemas.agent import AgentState from letta.schemas.enums import MessageRole from letta.schemas.letta_message_content import TextContent from letta.schemas.memory import Memory from letta.schemas.message import Message from letta.settings import summarizer_settings from letta.utils import count_tokens, printd if TYPE_CHECKING: from letta.orm import User def get_memory_functions(cls: Memory) -> Dict[str, Callable]: """Get memory functions for a memory class""" functions = {} # collect base memory functions (should not be included) base_functions = [] for func_name in dir(Memory): funct = getattr(Memory, func_name) if callable(funct): base_functions.append(func_name) for func_name in dir(cls): if func_name.startswith("_") or func_name in ["load", "to_dict"]: # skip base functions continue if func_name in base_functions: # dont use BaseMemory functions continue func = getattr(cls, func_name) if not callable(func): # not a function continue functions[func_name] = func return functions def _format_summary_history(message_history: List[Message]): # TODO use existing prompt formatters for this (eg ChatML) def get_message_text(content): if content and len(content) == 1 and isinstance(content[0], TextContent): return content[0].text return "" return "\n".join([f"{m.role}: {get_message_text(m.content)}" for m in message_history]) @trace_method def summarize_messages( agent_state: AgentState, message_sequence_to_summarize: List[Message], actor: "User", ): """Summarize a message sequence using GPT""" # we need the context_window context_window = agent_state.llm_config.context_window summary_prompt = SUMMARY_PROMPT_SYSTEM summary_input = _format_summary_history(message_sequence_to_summarize) summary_input_tkns = count_tokens(summary_input) if summary_input_tkns > summarizer_settings.memory_warning_threshold * context_window: trunc_ratio = (summarizer_settings.memory_warning_threshold * context_window / summary_input_tkns) * 0.8 # For good measure... cutoff = int(len(message_sequence_to_summarize) * trunc_ratio) summary_input = str( [summarize_messages(agent_state, message_sequence_to_summarize=message_sequence_to_summarize[:cutoff], actor=actor)] + message_sequence_to_summarize[cutoff:] ) dummy_agent_id = agent_state.id message_sequence = [ Message(agent_id=dummy_agent_id, role=MessageRole.system, content=[TextContent(text=summary_prompt)]), Message(agent_id=dummy_agent_id, role=MessageRole.assistant, content=[TextContent(text=MESSAGE_SUMMARY_REQUEST_ACK)]), Message(agent_id=dummy_agent_id, role=MessageRole.user, content=[TextContent(text=summary_input)]), ] # TODO: We need to eventually have a separate LLM config for the summarizer LLM llm_config_no_inner_thoughts = agent_state.llm_config.model_copy(deep=True) llm_config_no_inner_thoughts.put_inner_thoughts_in_kwargs = False llm_client = LLMClient.create( provider_type=agent_state.llm_config.model_endpoint_type, put_inner_thoughts_first=False, actor=actor, ) # try to use new client, otherwise fallback to old flow # TODO: we can just directly call the LLM here? if llm_client: response = llm_client.send_llm_request( agent_type=agent_state.agent_type, messages=message_sequence, llm_config=llm_config_no_inner_thoughts, ) else: response = create( llm_config=llm_config_no_inner_thoughts, user_id=agent_state.created_by_id, messages=message_sequence, stream=False, ) printd(f"summarize_messages gpt reply: {response.choices[0]}") reply = response.choices[0].message.content return reply