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标题: RAG替代者?深入浅出分析火热的Mem0个性化AI记忆层 [打印本页]

作者: 链载Ai    时间: 2025-12-2 10:52
标题: RAG替代者?深入浅出分析火热的Mem0个性化AI记忆层

最近Mem0横空出世,官方称之为PA的记忆层,The memory layer for Personalized AI,有好事者还称这个是RAG的替代者,Mem0究竟为何物,背后的原理是什么,我们今天来一探究竟。

Mem0 介绍

开源地址:https://github.com/mem0ai/mem0

官方介绍为:

Mem0 provides a smart, self-improving memory layer for Large Language Models, enabling personalized AI experiences across applications.

关键点,是为LLM提供的智能的,可自我改进的记忆层,从而可以实现在各种应用中提供更加个性化的和连贯一致的用户体验。

主要特点

快速开始

安装:通过pip安装mem0ai。

pipinstallmem0ai

基本用法:

importos
frommem0importMemory

#依赖LLM提取记忆,所以需要openai
os.environ["OPENAI_API_KEY"]="xxx"

#吃石化Mem0
m=Memory()

#通过add方法,存储非结构化的记忆,metadata提供schema定义
result=m.add("Iamworkingonimprovingmytennisskills.Suggestsomeonlinecourses.",user_id="alice",metadata={"category":"hobbies"})
print(result)
#Createdmemory:Improvinghertennisskills.Lookingforonlinesuggestions.

#Retrievememories
all_memories=m.get_all()
print(all_memories)

#搜索记忆Searchmemories
related_memories=m.search(query="WhatareAlice'shobbies?",user_id="alice")
print(related_memories)

#更新记忆Updateamemory
result=m.update(memory_id="m1",data="Likestoplaytennisonweekends")
print(result)

#Getmemoryhistory
history=m.history(memory_id="m1")
print(history)

上述的示例代码展示了如何添加记忆、检索记忆、搜索、更新和获取记忆历史。

注意代码里的metadata, 这里相当于定义了一个schema,让LLM从非结构化数据里提取相关的记忆信息。

原理分析

透过上面的示例代码,我们先来猜测下mem0的原理:

我们下载代码一探究竟。

记忆管理

defadd(
self,
data,
user_id=None,
agent_id=None,
run_id=None,
metadata=None,
filters=None,
prompt=None,
):
"""
Createanewmemory.

Args:
data(str)atatostoreinthememory.
user_id(str,optional):IDoftheusercreatingthememory.DefaultstoNone.
agent_id(str,optional):IDoftheagentcreatingthememory.DefaultstoNone.
run_id(str,optional):IDoftheruncreatingthememory.DefaultstoNone.
metadata(dict,optional):Metadatatostorewiththememory.DefaultstoNone.
filters(dict,optional):Filterstoapplytothesearch.DefaultstoNone.

Returns:
str:IDofthecreatedmemory.
"""
ifmetadataisNone:
metadata={}
embeddings=self.embedding_model.embed(data)

filters=filtersor{}
ifuser_id:
filters["user_id"]=metadata["user_id"]=user_id
ifagent_id:
filters["agent_id"]=metadata["agent_id"]=agent_id
ifrun_id:
filters["run_id"]=metadata["run_id"]=run_id

ifnotprompt:
prompt=MEMORY_DEDUCTION_PROMPT.format(user_input=data,metadata=metadata)
extracted_memories=self.llm.generate_response(
messages=[
{
"role":"system",
"content":"Youareanexpertatdeducingfacts,preferencesandmemoriesfromunstructuredtext.",
},
{"role":"user","content":prompt},
]
)
existing_memories=self.vector_store.search(
name=self.collection_name,
query=embeddings,
limit=5,
filters=filters,
)
existing_memories=[
MemoryItem(
id=mem.id,
score=mem.score,
metadata=mem.payload,
text=mem.payload["data"],
)
formeminexisting_memories
]
serialized_existing_memories=[
item.model_dump(include={"id","text","score"})
foriteminexisting_memories
]
logging.info(f"Totalexistingmemories:{len(existing_memories)}")
messages=get_update_memory_messages(
serialized_existing_memories,extracted_memories
)
#Addtoolsfornoop,add,update,deletememory.
tools=[ADD_MEMORY_TOOL,UPDATE_MEMORY_TOOL,DELETE_MEMORY_TOOL]
response=self.llm.generate_response(messages=messages,tools=tools)
tool_calls=response["tool_calls"]

response=[]
iftool_calls:
#Createanewmemory
available_functions={
"add_memory":self._create_memory_tool,
"update_memory":self._update_memory_tool,
"delete_memory":self._delete_memory_tool,
}
fortool_callintool_calls:
function_name=tool_call["name"]
function_to_call=available_functions[function_name]
function_args=tool_call["arguments"]
logging.info(
f"[openai_func]func:{function_name},args:{function_args}"
)

#Passmetadatatothefunctionifitrequiresit
iffunction_namein["add_memory","update_memory"]:
function_args["metadata"]=metadata

function_result=function_to_call(**function_args)
#Fetchthememory_idfromtheresponse
response.append(
{
"id":function_result,
"event":function_name.replace("_memory",""),
"data":function_args.get("data"),
}
)
capture_event(
"mem0.add.function_call",
self,
{"memory_id":function_result,"function_name":function_name},
)
capture_event("mem0.add",self)
returnresponse

这里的逻辑比较简单

本质上全部委托给大模型,通过prompt做了一定的约束。

相关prompt设计

ps,我们来看下相关度的prompt设计。

MEMORY_DEDUCTION_PROMPT="""
Deducethefacts,preferences,andmemoriesfromtheprovidedtext.
Justreturnthefacts,preferences,andmemoriesinbulletpoints:
Naturallanguagetext:{user_input}
User/Agentdetails:{metadata}

Constraintfordeducingfacts,preferences,andmemories:
-Thefacts,preferences,andmemoriesshouldbeconciseandinformative.
-Don'tstartby"ThepersonlikesPizza".Instead,startwith"LikesPizza".
-Don'tremembertheuser/agentdetailsprovided.Onlyrememberthefacts,preferences,andmemories.

Deducedfacts,preferences,andmemories:


从提供的文本中推断出事实、偏好和记忆。
仅以项目符号形式返回事实、偏好和记忆:
自然语言文本:{用户输入}
用户/代理详细信息:{元数据}

推断事实、偏好和记忆的约束:
-事实、偏好和记忆应简洁且信息丰富。
-不要以“此人喜欢披萨”开头。而是以“喜欢披萨”开头。
-不要记住提供的用户/代理详细信息。只记住事实、偏好和记忆。

推断出的事实、偏好和记忆

再来看更新记忆的prompt:

Youareanexpertatmerging,updating,andorganizingmemories.Whenprovidedwithexistingmemoriesandnewinformation,yourtaskistomergeandupdatethememorylisttoreflectthemostaccurateandcurrentinformation.Youarealsoprovidedwiththematchingscoreforeachexistingmemorytothenewinformation.Makesuretoleveragethisinformationtomakeinformeddecisionsaboutwhichmemoriestoupdateormerge.

Guidelines:
-Eliminateduplicatememoriesandmergerelatedmemoriestoensureaconciseandupdatedlist.
-Ifamemoryisdirectlycontradictedbynewinformation,criticallyevaluatebothpiecesofinformation:
-Ifthenewmemoryprovidesamorerecentoraccurateupdate,replacetheoldmemorywithnewone.
-Ifthenewmemoryseemsinaccurateorlessdetailed,retaintheoriginalanddiscardtheoldone.
-Maintainaconsistentandclearstylethroughoutallmemories,ensuringeachentryisconciseyetinformative.
-Ifthenewmemoryisavariationorextensionofanexistingmemory,updatetheexistingmemorytoreflectthenewinformation.

Herearethedetailsofthetask:
-ExistingMemories:
{existing_memories}

-NewMemory:{memory}


您是合并、更新和组织记忆的专家。当您获得现有记忆和新信息时,您的任务是合并和更新记忆列表,以反映最准确和最新的信息。您还会获得每个现有记忆与新信息的匹配分数。请务必利用这些信息,就更新或合并哪些记忆做出明智的决策。

指南:
-消除重复记忆并合并相关记忆,以确保列表简洁且是最新的。
-如果新信息与某一记忆直接矛盾,请仔细评估这两部分信息:
-如果新记忆提供了更新或更准确的更新内容,用新记忆替换旧记忆。
-如果新记忆似乎不准确或不够详细,则保留原始记忆并丢弃新记忆。
-在所有记忆中保持一致、清晰的风格,确保每个条目都简洁且内容丰富。
-如果新记忆是现有记忆的变体或扩展,请更新现有记忆以反映新信息。

以下是任务的详细信息:
-现有记忆:
{现有记忆}

-新记忆:{记忆}

Mem0 点评

Mem0 是RAG的杀手?

Mem0 有什么用处?

Mem0 有什么不足?

我们也可以看下mem0的roadmap,有规划提供一些自定义规则支持:






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