215 lines
9.5 KiB
Python
215 lines
9.5 KiB
Python
from typing import List, Union, Dict, Tuple
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import os
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import json
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import importlib
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import copy
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from loguru import logger
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from dev_opsgpt.connector.agents import BaseAgent
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from dev_opsgpt.connector.chains import BaseChain
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from dev_opsgpt.tools.base_tool import BaseTools, Tool
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from dev_opsgpt.connector.shcema.memory import Memory
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from dev_opsgpt.connector.connector_schema import (
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Task, Env, Role, Message, Doc, Docs, AgentConfig, ChainConfig, PhaseConfig, CodeDoc,
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load_chain_configs, load_phase_configs, load_role_configs
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)
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from dev_opsgpt.connector.configs import AGETN_CONFIGS, CHAIN_CONFIGS, PHASE_CONFIGS
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from dev_opsgpt.tools import DDGSTool, DocRetrieval, CodeRetrieval
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role_configs = load_role_configs(AGETN_CONFIGS)
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chain_configs = load_chain_configs(CHAIN_CONFIGS)
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phase_configs = load_phase_configs(PHASE_CONFIGS)
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CUR_DIR = os.path.dirname(os.path.abspath(__file__))
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class BasePhase:
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def __init__(
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self,
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phase_name: str,
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task: Task = None,
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do_summary: bool = False,
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do_search: bool = False,
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do_doc_retrieval: bool = False,
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do_code_retrieval: bool = False,
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do_tool_retrieval: bool = False,
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phase_config: Union[dict, str] = PHASE_CONFIGS,
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chain_config: Union[dict, str] = CHAIN_CONFIGS,
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role_config: Union[dict, str] = AGETN_CONFIGS,
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) -> None:
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self.conv_summary_agent = BaseAgent(role=role_configs["conv_summary"].role,
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task = None,
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memory = None,
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do_search = role_configs["conv_summary"].do_search,
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do_doc_retrieval = role_configs["conv_summary"].do_doc_retrieval,
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do_tool_retrieval = role_configs["conv_summary"].do_tool_retrieval,
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do_filter=False, do_use_self_memory=False)
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self.chains: List[BaseChain] = self.init_chains(
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phase_name,
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task=task,
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memory=None,
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phase_config = phase_config,
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chain_config = chain_config,
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role_config = role_config,
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)
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self.phase_name = phase_name
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self.do_summary = do_summary
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self.do_search = do_search
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self.do_code_retrieval = do_code_retrieval
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self.do_doc_retrieval = do_doc_retrieval
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self.do_tool_retrieval = do_tool_retrieval
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self.global_message = Memory([])
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# self.chain_message = Memory([])
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self.phase_memory: List[Memory] = []
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def step(self, query: Message, history: Memory = None) -> Tuple[Message, Memory]:
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summary_message = None
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chain_message = Memory([])
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local_memory = Memory([])
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# do_search、do_doc_search、do_code_search
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query = self.get_extrainfo_step(query)
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input_message = copy.deepcopy(query)
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self.global_message.append(input_message)
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for chain in self.chains:
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# chain can supply background and query to next chain
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output_message, chain_memory = chain.step(input_message, history, background=chain_message)
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output_message = self.inherit_extrainfo(input_message, output_message)
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input_message = output_message
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logger.info(f"{chain.chainConfig.chain_name} phase_step: {output_message.role_content}")
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self.global_message.append(output_message)
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local_memory.extend(chain_memory)
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# whether use summary_llm
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if self.do_summary:
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logger.info(f"{self.conv_summary_agent.role.role_name} input global memory: {self.global_message.to_str_messages(content_key='step_content')}")
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logger.info(f"{self.conv_summary_agent.role.role_name} input global memory: {self.global_message.to_str_messages(content_key='role_content')}")
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summary_message = self.conv_summary_agent.run(query, background=self.global_message)
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summary_message.role_name = chain.chainConfig.chain_name
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summary_message = self.conv_summary_agent.parser(summary_message)
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summary_message = self.conv_summary_agent.filter(summary_message)
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summary_message = self.inherit_extrainfo(output_message, summary_message)
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chain_message.append(summary_message)
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# 由于不会存在多轮chain执行,所以直接保留memory即可
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for chain in self.chains:
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self.phase_memory.append(chain.global_memory)
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message = summary_message or output_message
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message.role_name = self.phase_name
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# message.db_docs = query.db_docs
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# message.code_docs = query.code_docs
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# message.search_docs = query.search_docs
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return summary_message or output_message, local_memory
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def init_chains(self, phase_name, phase_config, chain_config,
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role_config, task=None, memory=None) -> List[BaseChain]:
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# load config
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role_configs = load_role_configs(role_config)
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chain_configs = load_chain_configs(chain_config)
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phase_configs = load_phase_configs(phase_config)
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chains = []
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self.chain_module = importlib.import_module("dev_opsgpt.connector.chains")
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self.agent_module = importlib.import_module("dev_opsgpt.connector.agents")
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phase = phase_configs.get(phase_name)
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for chain_name in phase.chains:
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logger.info(f"chain_name: {chain_name}")
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# chain_class = getattr(self.chain_module, chain_name)
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logger.debug(f"{chain_configs.keys()}")
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chain_config = chain_configs[chain_name]
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agents = [
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getattr(self.agent_module, role_configs[agent_name].role.agent_type)(
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role_configs[agent_name].role,
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task = task,
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memory = memory,
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chat_turn=role_configs[agent_name].chat_turn,
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do_search = role_configs[agent_name].do_search,
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do_doc_retrieval = role_configs[agent_name].do_doc_retrieval,
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do_tool_retrieval = role_configs[agent_name].do_tool_retrieval,
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)
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for agent_name in chain_config.agents
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]
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chain_instance = BaseChain(
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chain_config, agents, chain_config.chat_turn,
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do_checker=chain_configs[chain_name].do_checker,
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do_code_exec=False,)
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chains.append(chain_instance)
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return chains
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def get_extrainfo_step(self, input_message):
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if self.do_doc_retrieval:
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input_message = self.get_doc_retrieval(input_message)
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logger.debug(F"self.do_code_retrieval: {self.do_code_retrieval}")
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if self.do_code_retrieval:
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input_message = self.get_code_retrieval(input_message)
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if self.do_search:
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input_message = self.get_search_retrieval(input_message)
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return input_message
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def inherit_extrainfo(self, input_message: Message, output_message: Message):
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output_message.db_docs = input_message.db_docs
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output_message.search_docs = input_message.search_docs
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output_message.code_docs = input_message.code_docs
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output_message.figures.update(input_message.figures)
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return output_message
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def get_search_retrieval(self, message: Message,) -> Message:
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SEARCH_ENGINES = {"duckduckgo": DDGSTool}
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search_docs = []
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for idx, doc in enumerate(SEARCH_ENGINES["duckduckgo"].run(message.role_content, 3)):
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doc.update({"index": idx})
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search_docs.append(Doc(**doc))
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message.search_docs = search_docs
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return message
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def get_doc_retrieval(self, message: Message) -> Message:
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query = message.role_content
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knowledge_basename = message.doc_engine_name
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top_k = message.top_k
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score_threshold = message.score_threshold
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if knowledge_basename:
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docs = DocRetrieval.run(query, knowledge_basename, top_k, score_threshold)
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message.db_docs = [Doc(**doc) for doc in docs]
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return message
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def get_code_retrieval(self, message: Message) -> Message:
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# DocRetrieval.run("langchain是什么", "DSADSAD")
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query = message.input_query
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code_engine_name = message.code_engine_name
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history_node_list = message.history_node_list
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code_docs = CodeRetrieval.run(code_engine_name, query, code_limit=message.top_k, history_node_list=history_node_list)
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message.code_docs = [CodeDoc(**doc) for doc in code_docs]
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return message
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def get_tool_retrieval(self, message: Message) -> Message:
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return message
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def update(self) -> Memory:
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pass
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def get_memory(self, ) -> Memory:
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return Memory.from_memory_list(
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[chain.get_memory() for chain in self.chains]
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)
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def get_memory_str(self, do_all_memory=True, content_key="role_content") -> str:
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memory = self.global_message if do_all_memory else self.phase_memory
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return "\n".join([": ".join(i) for i in memory.to_tuple_messages(content_key=content_key)])
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def get_chains_memory(self, content_key="role_content") -> List[Tuple]:
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return [memory.to_tuple_messages(content_key=content_key) for memory in self.phase_memory]
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def get_chains_memory_str(self, content_key="role_content") -> str:
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return "************".join([f"{chain.chainConfig.chain_name}\n" + chain.get_memory_str(content_key=content_key) for chain in self.chains]) |