首页Home 解决什么Solutions 产品能力Product 智能体编队Agents 技术架构Technology 工程深度Engineering 自我演化Self-evolution 行业场景Scenarios 运营透视Observability 信任与安全Trust
私域运营 AI Agent · 全链路自治 Private-domain AI Agent · Autonomous end to end

私域不再靠人记、靠人扛,而是一个 Agent 替你经营每一个客户

Private domain, no longer carried in someone's head — one Agent runs every customer for you

几千个好友,一个人忙得过来吗?谁买过什么、答应发的资料、上次聊到哪——全靠脑子记、靠翻聊天记录;员工一走,客户和这些记忆一起被带走。WeAgent 用一个自治 Agent 替你经营每一个客户:读懂来意、查知识取证、自己拟回复、独立评审把关、到点主动跟进,全程自治。客户和记忆都沉淀在企业,永远属于公司,不属于某个销售。

Thousands of contacts — can one person keep up? Who bought what, the doc you promised, where the last chat left off — all carried in someone's head and chat history; when an employee leaves, the customers and that memory walk out too. WeAgent runs every customer through one autonomous Agent: reads intent, grounds claims in verified knowledge, drafts the reply, passes an independent review, and follows up on time — autonomous end to end. Customers and memory stay with the company, never with one salesperson.

贝叶斯大脑Bayesian brain 大五画像Big Five profile 关系运维Relationship care 知识沉淀Knowledge curation 判断与依据,运营者都看得到Every judgment & its grounds, visible to operators
一个 Agent,把运营从头包到尾
One Agent, the whole operation end to end
01
自运营
Self-operating
自己判断该不该说、说什么
Decides whether & what to say
02
自运行
Self-running
后台常驻,全天候不打烊
Always-on, around the clock
03
自治理
Self-governing
独立评审,有据才发、守红线
Independent review · grounded
04
自进化
Self-evolving
越用越懂客户,改动留审批闸
Learns customers; changes stay gated
一个人扛私域One person carrying it
  • 几百人就到顶,记不过来Caps at a few hundred
  • 聊过转头就忘,答应的没下文Forgets, drops promises
  • 下班就断联,半夜没人理客户Off the clock, customers wait
  • 销售一离职,客户和记忆全带走Reps quit, customers vanish
交给 WeAgent,一个 Agent 全包Hand it to WeAgent — one Agent, all of it
  • 几千好友同时跟,每人一张记忆卡Thousands at once · a card each
  • 承诺到点自动跟进,不漏不忘Promises auto-followed up
  • 7×24 在岗,醒着的时段都在跟On duty 7×24
  • 资产沉淀在企业,客户属于公司Assets stay in the company
不只是自治,更懂你的客户Not just autonomous — it understands

同样在跟客户,它做得比人更细

Same conversations — handled finer than a person can

一个人记不住几千个客户各自的脾气和分寸,系统可以。这些都是我们在设计时抠到很细的地方——而且始终守一条底线:只观测、只沉淀,绝不替你武断操控。它对每个客户的判断和依据,运营者都看得到,方便随时复盘管理。

One person can't hold the temperament and nuance of thousands of customers — the system can. These are the details we sweated over in design, all under one principle: observe and accumulate, never manipulate on a hunch. Every judgment it makes about a customer, and the grounds for it, stays visible to operators for review.

经验沉淀进系统,不随人走

Experience stays in the system

老员工怎么应对、产品怎么介绍,沉淀成可复用的知识库。AI 开口必须有据可查——没核实过的产品说法,宁可不说也绝不瞎编。

How your best reps respond and pitch becomes a reusable knowledge base. Every product claim must be grounded — if it isn't verified, the AI stays silent rather than make it up.

有据才说 · 未核实即拦截Grounded only · unverified is blocked

每个客户一张长期记忆卡

A long-term memory card per customer

谁怕被打扰、谁喜欢直接报价、上次聊到哪、答应过什么,都记着、还在更新。人维护不了的细致,规模化地维护起来。

Who dislikes being pinged, who wants a price up front, where the last chat ended, what was promised — all remembered and kept current. Nuance no person could hold, maintained at scale.

记得住 · 还在更新Remembered · always current

贝叶斯大脑:不武断,会修正

A Bayesian brain: never jumps, keeps revising

对客户的判断不是一锤定音。每一次新对话都是新证据,系统持续修正认知——越聊越准,而且始终诚实标注「有多确定」。

Its read on a customer is never one-and-done. Each new chat is fresh evidence; the system keeps updating — sharper over time, always honest about how confident it is.

持续修正 · 诚实标注置信Always revising · confidence shown

因人而异,因关系而异

Tuned to the person — and the relationship

它用心理学公认的「大五人格」(OCEAN) 五个维度慢慢摸清每个客户的性格倾向,沉淀成画像供你参考——只观测、不臆断,证据不足就如实标注「还不确定」。真正因人调整的是关系:对客户、同行、朋友区别对待,口吻和跟进节奏各不相同,不是一套说辞对所有人。

It reads each customer's disposition along the psychology-standard Big Five (OCEAN), kept as a profile for your reference — observed, never presumed; thin evidence is honestly marked "not sure yet." What actually adapts is the relationship: customers, peers and friends are treated differently — tone and cadence shift, never one script for everyone.

大五画像供参考 · 关系分化Big Five profile for reference · per-relationship
私域真正的痛The real pain

这些麻烦,是不是天天在发生

These headaches — do they happen daily?

私域运营真正的难,不在发消息,在「人扛不住规模」:记不住、忙不过来、会离职。每一条,WeAgent 都有对应的解法。

The hard part of private-domain ops isn't sending messages — it's that people can't carry the scale: they forget, get overloaded, and leave. WeAgent answers every one.

几千好友记不住谁是谁
Thousands of contacts blur together
FIX
每人一张长期记忆卡
A memory card per person
买过什么卖过什么凭印象
What they bought is guesswork
FIX
购买生命周期结构化
Structured purchase lifecycle
答应发的资料忙起来忘了
Promised docs get forgotten
FIX
承诺到点自动跟进
Promises auto-followed-up
成交之后就再没下文
Silence after the deal closes
FIX
冷客户 AI 主动重激活
AI reactivates cold customers
销售一离职客户全带走
Reps quit, customers vanish
FIX
资产沉淀在企业系统
Assets stay in your system
核心立场Core Stance

「无人工接管」是产品红线,
不是宣传话术

"Never handed off to a human" is a hard line,
not a slogan

很多 AI 客服把人机协作做成「兜不住就转人工」。WeAgent 的红线相反:客户永远只跟 AI 对话、永不直接面对真人。这条红线由代码、CI 静态扫描和发送网关三重守护。

Most AI agents fall back to "escalate to a human." WeAgent does the opposite: the customer only ever talks to the AI. This line is guarded three ways — by code, by a CI lint, and by the send gateway itself.

客户永远面对 AI

Always the AI

对话始终是 AI 在说。即使 AI 需要请示领导,客户看到的也只是 AI 自然的回复,从不被丢给真人或晾在一边。

Every message comes from the AI. Even when it consults a decision-maker, the customer only sees a natural AI reply — never a handoff, never left waiting.

幕后决策源 ≠ 接管

Principal ≠ handoff

遇到超出职权的事,AI 向幕后领导请示、拿回结论,再用自己的口吻向客户转述。领导隐于 AI 之后,客户从不直接对接。

When a decision exceeds its mandate, the AI consults the principal, gets a verdict, and relays it in its own voice. The principal stays behind the AI — invisible to the customer.

辅助模式是受控例外

Assist mode is the exception

账号可显式开启「辅助模式」,让 AI 在高价值时刻引荐真人顾问名片。默认关闭、需审核、发送前二次校验——全自治红线本体一字不动。

An account may opt into "assist mode" to let the AI introduce a human advisor's card at high-value moments. Off by default, review-gated, double-checked before send — the autonomy line stays intact.

能力总览What's inside

一套系统,覆盖私域运营的完整闭环

One system, the full loop of private-domain ops

从一条入站消息,到决策、评审、发送、复盘、记忆、知识沉淀、自我演化——每一环都落地为真实代码与可审计日志。

From a single inbound message to decision, review, send, retrospective, memory, knowledge curation, and self-evolution — every step is real code with auditable logs.

用户运营驾驶舱

User-Ops Cockpit

好友池、单人画像、长期记忆、运营大脑、方法论、模拟验证、会话回放。智能模式与传统模式双视角。

Contact pool, per-person profile, long-term memory, operating brain, playbooks, simulation, conversation replay — smart and classic modes.

运营知识 Wiki

Operations Knowledge Wiki

9 类知识切片,写入即被编织进互联知识仓。渐进式召回(目录→切片→取证),AI 永不自动核验。

9 wiki types woven into a linked knowledge store on write. Progressive recall (catalog → slice → cite); the AI never self-verifies.

AI 总控(Management Agent)

AI Command Center

用自然语言操作整个系统:查询、配置、发消息、建任务。执行计划 + 工具调用状态 + Dry-run 演练 + 高风险确认。

Run the whole system in natural language: query, configure, send, schedule. Execution plans, tool-call states, dry-run, and high-risk confirmations.

自我演化中心

Self-Evolution Center

后台 worker 在影子环境重放历史决策,微调阈值与提示词;显著性达标才可发布,一键回滚。主链路零副作用。

A worker replays past decisions in shadow mode to tune thresholds and prompts; release only on significance, rollback in one click. Zero side effects on the live path.

统一收件箱

Unified Inbox

8 类待办汇于一处:请示裁决、知识核验、标签候选、关系建议、画像发布、进化发布、经验晋升、知识缺口。

8 review streams in one place: escalations, knowledge verification, tag candidates, relationship hints, profile publish, evolution release, lesson promotion, knowledge gaps.

任务、日志与成效

Tasks, Logs & Outcomes

决策日志、MCP 调用、发送账本、任务调度、自治回路监控、发送成效与运营成效全景。

Decision logs, MCP calls, send ledger, task scheduling, autonomy-loop monitoring, plus send and ops outcome analytics.

AI 时代的产品形态An AI-native product

不是会聊天的脚本,
是会自运营、自治理、自运行、自优化的 Agent

Not a chat script,
but an agent that self-operates, self-governs, self-runs and self-improves

传统私域工具是「人发指令、机器执行」。WeAgent 是一个真正的自治体:自己决定何时该说话、说什么、要不要请示、发完怎么复盘——四种自治能力各自落地为真实代码与可审计回路,不是 PPT 上的形容词。

Legacy private-domain tools are "human commands, machine executes." WeAgent is a genuine autonomous system: it decides when to speak, what to say, whether to consult, and how to reflect afterward — four autonomy capabilities, each grounded in real code and auditable loops, not adjectives on a slide.

Self-operation

自运营

Self-operation

后台任务循环自主跟进每一段关系:判断该不该主动开口、查知识、起草、评审、发送,全程无需人盯。一条入站消息自动触发完整决策闭环。

A background task loop nurtures every relationship on its own — deciding whether to reach out, consulting knowledge, drafting, reviewing and sending, with no human watching. One inbound message triggers the full loop.

Self-governance

自治理

Self-governance

自己约束自己:独立评审与认知隔离、事实/压力/知识三道闸门、红线由守门函数与 CI 静态扫描强制。越界的话发不出去,错误也绝不抛给客户。

It governs itself: an independent reviewer with epistemic distance, three gates on fact / pressure / grounding, hard lines enforced by guard functions and a CI lint. Out-of-bounds replies never ship; errors never reach the customer.

Self-running

自运行

Self-running

单进程托管后台、API、微信回调与多个后台 worker。幂等发件箱自动抢占派发、超时回收重试,长期稳定运转,不重发、不漏发。

A single process hosts the admin, API, WeChat callbacks and multiple background workers. An idempotent outbox claims, dispatches, reclaims and retries on its own — running long-term without double- or missed sends.

Self-optimization

自优化

Self-optimization

演化引擎从历史决策中学习,在影子环境重放重判候选阈值与提示词;只有显著变好、且通过零容忍安全回归门,再经管理员确认才发布。

An evolution engine learns from past decisions, replaying and re-grading threshold and prompt candidates in a shadow. Only a significant gain that clears a zero-tolerance safety gate — and an admin's confirmation — ships.

认知内核 · 科学方法论Cognitive core · grounded methods

智能的底子,是被验证过的认知科学

The intelligence rests on established cognitive science

WeAgent 的「聪明」不是靠堆提示词,而是把心理学与认知科学里被反复验证的方法落进工程:长短期记忆、多轮证据置信、人格画像、意图走势。下面每一项都对应真实代码,也如实说明它到底做了什么、没做什么。

WeAgent's "smarts" don't come from piling up prompts but from engineering well-validated methods from psychology and cognitive science: long/short-term memory, multi-round evidence confidence, personality profiling and intent trajectories. Each maps to real code — and we say plainly what it does and doesn't do.

长短期记忆
Long & short-term memory
candidate → consolidate → compact

短期上下文承载眼前对话;长期记忆是一张随时间固化的记忆卡。新观察先进候选池,再由整理 Agent 固化、压缩、判定过时事实——像人脑把经历沉淀成长期记忆。

Short-term context holds the live conversation; long-term memory is a card that consolidates over time. New observations enter a candidate pool, then a consolidator promotes, compacts and deprecates facts — much like the brain settling experience into long-term memory.

三层记忆卡候选固化流水线冲突作废
多轮证据置信(贝叶斯信号)
Evidence-accumulation confidence
multi-round evidence, not one-shot

对每个客户维度持续累积证据:必须跨多轮反复命中、且由代码侧客观统计到足够「强证据」(锚定客户真实发言),才会被确认。不轻信单次表态,像理性的人一样越看越准。

Evidence for each customer dimension accumulates over time: a signal is only confirmed after repeated hits across rounds plus enough "strong evidence" objectively counted in code (anchored to the customer's own words). It distrusts one-off claims — getting surer the more it sees.

跨轮命中代码侧强证据计数置信走势图
大五人格画像
Big Five profiling
OCEAN · with evolution snapshots

用心理学公认的「大五人格」(OCEAN) 五个维度刻画客户,并按记忆周期留存演化快照。关键的克制:人格只作观测参考、永不直接驱动话术——避免基于标签的偏见,证据不足时置信度直接归零。

It profiles customers along the psychology-standard Big Five (OCEAN) and keeps evolution snapshots per memory cycle. A deliberate restraint: personality is observation-only and never directly drives wording — avoiding label-based bias, with confidence forced to zero when evidence is thin.

OCEAN 五维演化快照观测而不臆断
意图轨迹走势
Intent trajectory
a real time series that drives action

把每一轮的推进结果记成时间序列,形成一条意图走势线。这条线真的会改变 AI 的下一步:连续多轮没推进、末轮还转负,就触发换策略或向幕后请示——会复盘、会调整,不一条道走到黑。

Each round's progress outcome is recorded as a time series — an intent trajectory. It genuinely changes the next move: several rounds without progress plus a negative turn triggers a strategy switch or a behind-the-scenes consult. It reflects and adapts rather than pushing blindly.

时间序列连续未推进检测驱动换策略

诚实置信:没有证据,就不假装知道

Honest confidence: no evidence, no pretending to know

这是贯穿所有画像与记忆的一条铁律——任何标签、人格、记忆事实,只要在对话里找不到可锚定的证据,置信度强制归零,绝不让 AI 凭印象给人贴标签。严谨,是智能的前提。

One iron rule runs through all profiling and memory: any tag, trait or remembered fact whose evidence can't be anchored in the conversation has its confidence forced to zero. The AI never labels people on a hunch. Rigor is the precondition for intelligence.

一条消息的旅程The journey of one message

每一次发送,都流经同一个统一网关

Every send flows through one unified gateway

无论是自动回复还是定时跟进,都不能绕过这条链路。绕过网关,就是 bug。

Auto-reply or scheduled follow-up — nothing bypasses this path. Bypassing the gateway is a bug.

01

入站与预检

Inbound & precheck

解析消息,定位账号与联系人。仅「已托管」联系人进入决策;依次检查冷却、最小间隔、每日上限、任务过期、作息时段。

Parse, resolve account & contact. Only "managed" contacts proceed; cooldown, min-interval, daily cap, expiry and quiet-hours are checked in order.

02

知识路由

Knowledge routing

目录 → 列切片 → 打开切片 → 取证。LLM 自主工具规划,不用向量库;无依据时只保守回应。

Catalog → list → open slice → cite. The LLM plans tools itself, no vector DB; ungrounded means a conservative reply.

03

分档决策

Tiered decision

渐进式三档(精简→关系→完整)。Reply Agent 输出回复、运营状态、下一步最优动作与自治模式。

Progressive 3 tiers (lean → relational → full). The Reply Agent emits reply, operation state, next-best-action and autonomy mode.

04

独立评审

Independent review

独立 Review Agent 只看事实面、看不到推理过程,避免自我追认。硬闸拦截、软闸触发一次改写。可选双模并行交叉验证。

A separate reviewer sees only facts, not the reasoning — no self-confirmation. Hard gates block; soft gates trigger one rewrite. Optional dual-model cross-check.

05

幂等出箱

Idempotent outbox

仅「通过」的决策才入出箱,幂等键防重发。发送前二道安全门:再查冷却、用户是否喊停、是否过期。

Only approved decisions enter the outbox, keyed for idempotency. A second safety gate re-checks cooldown, user stop, and staleness before send.

06

复盘与记忆

Retrospect & memory

异步分析用户反应(带抢锁),更新意图轨迹、长期记忆与风格指纹,写入决策复盘与运行日志。

Async reaction analysis (lock-guarded) updates intent trajectory, long-term memory and style fingerprint; decision review and run log are persisted.

真实大模型测试 · 进行中Real-LLM testing · ongoing

不是单元测试跑通就完事,
真大模型跑真实业务

Not just green unit tests —
real LLMs running real business flows

我们正在用真实大模型,对整个项目逐个业务域做端到端测试:真调用、真对话、真评审、真发送决策。AI 时代的产品,必须用 AI 的方式验证——只看断言是否变绿没有意义,要看大模型在真实业务里到底怎么表现。

We are running end-to-end tests with real LLMs across every business domain of the whole system: real calls, real dialogue, real review, real send decisions. An AI-native product must be verified the AI way — green assertions alone mean little; what matters is how the model actually behaves in real business.

覆盖的真实业务域

Business domains under test

每个域都是一段真实运营剧本,由真实大模型从头跑到尾,发现的问题沉淀为可复现的方法论缺陷,而非对单条对话打补丁。

Each domain is a real operating script run end-to-end by a real LLM; findings are distilled into reproducible methodology gaps, never patched against a single conversation.

01文章进库与知识沉淀Article ingest 02报价单五道闸门Quote five-gate 03顾问名片引荐Referral card 04三段式提示词Tiered prompts 05幕后请示通道Decision channel 06用户反应分析Reaction analysis 07长期记忆固化Memory consolidation 08管理 Agent 编排Management agent 09知识库自治Knowledge autonomy 10行业画像切换Industry switch
真调用真对话Real calls & dialogue 反过拟合红线Anti-overfitting line
真大模型
Real LLM
端到端跑真实业务剧本,不用 mock、不用桩——发送决策、评审、知识检索全是真链路。
End-to-end on real scripts, no mocks, no stubs — send decisions, review and retrieval are the real path.
350+
单元测试基线:每次合并必须 ≥350 通过、0 失败,叠加属性测试不变量,绝不让数字回退。
Unit baseline: every merge must pass ≥350 with 0 failures, plus property-based invariants — numbers never regress.
CI 双门
Dual CI gate
基线门 + 红线静态扫描门。任何违背全自治定位的措辞、任何安全闸放松,都会让 CI 直接失败。
Baseline gate + a red-line static scan. Any wording against full autonomy, or a loosened safety gate, fails CI outright.
不止于销售Beyond sales

一份行业画像,即一个行业

One domain profile = one industry

维度、人格、状态机、评审闸门、方法论公式全部可配置。系统对行业零假设,未配置时回落到与销售域字节等价的默认画像。

Dimensions, persona, state machine, review gates and methodology formulas are all configurable. Zero assumptions about industry — it falls back to a sales profile byte-for-byte when unconfigured.

触达轴Outreach axis

同一画像内,经营不同关系

Different relationships, one profile

客户 / 同行 / 朋友三种关系类型,各自切换主动触达范式:客户全开追单,同行朋友关掉销售漏斗。数字分身因人而异。

Customer / peer / friend each switch the proactive-outreach mode: full follow-up for customers, funnel off for peers and friends. The digital twin adapts per person.

👤 客户Customer🤝 同行Peer💬 朋友Friend
口吻轴Voice axis

稳定人格,因人微调口吻

Stable persona, tuned voice

Soul Prompt 表达稳定人格,每个联系人可用自然语言指令微调口吻——更直接、更温和、更技术化。指令置于系统提示末位,优先级最高。

A Soul Prompt holds the stable persona; per-contact natural-language instructions tune the voice — more direct, gentler, more technical. They sit last in the prompt, top priority.

销售Sales教培Education咨询Consulting情感陪伴Companionship

让 AI 真正长期经营你的私域

Let AI truly nurture your private domain

不是话术机器人,而是会记忆、会判断、会克制、会请示的运营官。全程可审计,红线由代码守护。

Not a script bot — an operator that remembers, judges, restrains, and consults. Fully auditable, with hard lines guarded in code.

查看完整产品能力See full product 了解信任与安全Trust & safety