npx skills add https://github.com/wondelai/skills --skill lean-startup一种系统化的创业和推出新产品的方法,可缩短开发周期并快速验证商业模式是否可行。
创业是一种管理形式。 成功不需要完美的计划或卓越的洞察力——它需要一个系统化的流程来测试假设、向客户学习并快速迭代。
基础: 大多数初创公司失败并非因为他们无法构建计划中的产品,而是因为他们构建了错误的东西。精益创业方法论应用科学实验来消除浪费并加速已验证的学习。
目标:10/10。 在评审或制定产品开发计划、实验或指标时,根据其遵循精益创业原则的程度进行 0-10 分评分。10/10 意味着完全应用构建-衡量-学习循环、已验证的学习和基于证据的决策;较低的分数表示瀑布式思维或浪费。始终提供当前分数以及达到 10/10 所需的具体改进措施。
精益创业的基本循环:
IDEAS
↓
BUILD → Product
↓
MEASURE → Data
↓
LEARN → Knowledge
↓
(back to IDEAS)
关键洞察: 这个循环实际上是反向的。从你想要学习的内容开始,确定能够提供该学习信息的指标,然后构建最小化的产品来收集这些指标。
反向规划:
目标: 最小化完成整个循环的总时间。
详见:references/build-measure-learn.md 以获取循环执行的详细说明。
通过已验证的实验了解客户真正想要什么,而不是基于意见或轶事。
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已验证的学习不是:
已验证的学习是:
验证阶梯:
| 等级 | 证据 | 强度 |
|---|---|---|
| 1 | "我认为客户想要这个" | 最弱(意见) |
| 2 | "客户说他们想要这个" | 弱(陈述偏好) |
| 3 | "客户注册了早期访问" | 中等(低承诺) |
| 4 | "客户支付了定金" | 强(真实承诺) |
| 5 | "客户正在积极使用它" | 最强(显示偏好) |
目标: 在大规模构建之前达到第 4-5 级。
定义: 一个新产品的版本,允许团队以最少的努力收集最大量的已验证学习。
MVP 不是:
MVP 是:
MVP 类型:
| 类型 | 是什么 | 何时使用 | 示例 |
|---|---|---|---|
| 人工服务型 | 伪装成自动化的手动服务 | 测试解决方案是否有价值 | Food on the Table(手动膳食计划) |
| 绿野仙踪型 | 假自动化,手动后端 | 测试是否需要自动化 | Zappos(无库存,从零售店购买鞋子) |
| 烟雾测试型 | 着陆页 + 注册,无产品 | 在构建前测试需求 | Dropbox 视频(解释概念,衡量注册量) |
| 单一功能型 | 仅一个核心功能 | 测试哪个功能最有价值 | Twitter(仅状态更新) |
| 拼凑型 | 组合现有工具 | 在定制构建前测试工作流程 | Groupon(WordPress + 电子邮件) |
MVP 设计问题:
常见错误:
详见:references/mvp-design.md 以获取 MVP 类型和设计模式。
定义: 如果错误将导致你的业务失败的假设。
流程:
常见的信念飞跃假设:
| 假设类型 | 问题 | 测试方法 |
|---|---|---|
| 价值假设 | 客户关心这个问题吗? | 烟雾测试、人工服务型 MVP |
| 增长假设 | 客户将如何发现我们? | 渠道测试、推荐实验 |
| 留存假设 | 客户会回来吗? | 队列分析、参与度指标 |
| 盈利假设 | 客户会付费吗? | 预购、定价测试 |
示例:Dropbox
反模式: 按难易程度而非风险顺序测试假设。
详见:references/assumptions.md 以获取假设映射框架。
定义: 在传统会计不适用时衡量进展。
传统指标的问题:
创新核算框架:
问题: 我们今天在哪里?
衡量当前现实,即使是零或令人尴尬的。
需要建立的指标:
目标: 精确了解你的起点。
问题: 我们可以改进什么以朝着目标前进?
运行实验以改进基线指标。
示例:
目标: 通过已验证的学习系统地改进指标。
问题: 我们是否取得了足够的进展,或者我们需要改变策略?
基于数据,决定是继续还是转型。
标准:
目标: 做出基于证据的战略决策。
详见:references/innovation-accounting.md 以获取指标框架和仪表板。
虚荣指标: 让你感觉良好但不改变行为。
可操作指标: 驱动决策并阐明因果关系。
| 虚荣指标 | 为什么不好 | 可操作的替代指标 |
|---|---|---|
| 总注册量 | 总是上升,没有上下文 | 注册 → 活跃百分比(转化率) |
| 页面浏览量 | 不表示价值 | 页面停留时间、跳出率 |
| 总用户数 | 包括不活跃/流失用户 | 活跃用户(日活、周活、月活) |
| 下载量 | 不意味着使用 | 日活/下载量(激活率) |
| 收入 | 没有上下文 | 每队列收入、客户终身价值/客户获取成本 |
可操作指标的三个特征:
示例:
队列分析: 按注册日期对用户进行分组,并跟踪其随时间的行为。揭示产品是否真正在改进。
详见:references/metrics.md 以获取指标选择和跟踪。
转型: 一种结构化的方向修正,旨在测试关于产品、策略或增长引擎的新假设。
何时转型:
何时坚持:
转型类型:
| 转型类型 | 改变什么 | 示例 |
|---|---|---|
| 聚焦转型 | 单一功能成为整个产品 | Instagram(从 Burbn 签到应用变为照片滤镜) |
| 扩展转型 | 产品变为单一功能 | Flickr(从 Game Neverending 变为照片分享) |
| 客户细分转型 | 相同问题,不同客户 | Groupon(从活动平台变为本地交易) |
| 客户需求转型 | 相同客户,不同问题 | Potbelly Sandwich(从古董店变为三明治店) |
| 平台转型 | 应用 → 平台 或 平台 → 应用 | YouTube(从交友网站变为视频平台) |
| 业务架构转型 | 高利润、低销量 ↔ 低利润、高销量 | Salesforce(从软件变为 SaaS) |
| 价值捕获转型 | 盈利模式改变 | Android(从付费变为免费 + 应用收入) |
| 增长引擎转型 | 病毒式、粘性式或付费式增长模式 | Facebook(从大学内病毒式增长变为付费广告) |
| 渠道转型 | 如何触达客户 | Salesforce(从直销变为自助服务) |
| 技术转型 | 不同技术,相同解决方案 | Apple(从 Intel 变为 ARM 芯片) |
转型节奏: 许多成功的初创公司在找到产品市场契合度之前会进行 1-5 次转型。
反模式: 在没有验证新方向能解决核心问题的情况下"转型"。
详见:references/pivots.md 以获取转型决策框架和案例研究。
增长引擎: 你的初创公司如何可持续地获取和留存客户。
选择一个引擎作为重点:
机制: 高留存率,低流失率
公式: 增长率 = 新客户获取率 - 流失率
重点: 让客户不断回来
指标:
示例: SaaS、订阅服务、社交网络
策略: 改进产品,直到流失率足够低,使得自然增长超过流失。
机制: 客户带来其他客户
公式: 病毒系数 = (邀请百分比) × (发送的邀请数) × (加入百分比)
重点: 病毒系数 > 1.0 = 指数增长
指标:
示例: Dropbox、Hotmail、WhatsApp
策略: 将病毒性构建到产品中。必须 > 1.0 才能自我维持。
机制: 花钱获取客户
公式: 客户终身价值 > 客户获取成本
重点: 允许再投资的单位经济效益
指标:
示例: 电子商务、传统企业
策略: 优化直到每个客户产生足够的利润来获取更多客户。
警告: 不要同时使用多个引擎。选择一个,优化它,然后考虑添加其他引擎。
详见:references/growth-engines.md 以获取引擎选择和优化。
目的: 根本原因分析,防止问题再次发生。
流程:
示例:
问题: 网站宕机
相应比例的投资:
反模式: 停留在第 1 级(仅仅修复症状)。
详见:references/five-whys.md 以获取引导指南。
原则: 以小批量工作以加速学习并减少浪费。
为什么小批量会赢:
示例:
| 大批量 | 小批量 |
|---|---|
| 构建整个产品,然后发布 | 发布着陆页,然后构建 |
| 每季度发布 | 每周或每天发布 |
| 规划 12 个月路线图 | 规划 6 周周期 |
| 大爆炸式重写 | 渐进式重构 |
持续部署: 最终的小批量 = 部署每个代码提交。
好处:
详见:references/small-batches.md 以获取实施模式。
针对不同情境:
详见:references/applications.md 以获取特定情境指南。
| 错误 | 为什么失败 | 修复方法 |
|---|---|---|
| 构建过多 | 在验证之前浪费 | 首先用烟雾测试或人工服务型测试 |
| 询问客户 | 人们不知道/错误预测 | 观察行为,而不是意见 |
| 虚荣指标 | 感觉良好的数字,没有决策 | 跟踪队列、转化率、留存率 |
| 没有假设 | 如果你不预测,就无法学习 | 在每个实验前写下假设 |
| 转型太慢 | 浪费资金 | 提前设定清晰的转型标准 |
| 跳过创新核算 | 无法判断是否在改进 | 建立基线,衡量调整努力 |
审计任何产品开发计划:
| 问题 | 如果否 | 行动 |
|---|---|---|
| 风险最高的假设是什么? | 你在不稳固的基础上构建 | 映射信念飞跃假设 |
| 你将如何测试它? | 你在猜测 | 设计 MVP 来测试假设 |
| 什么指标将验证/证伪? | 你不会学到东西 | 定义可操作指标 |
| 你能用比这更少的东西测试吗? | 你过度构建了 | 进一步缩小 MVP |
| 如果实验失败,你会怎么做? | 没有转型标准 | 提前定义转型触发条件 |
阶段 1:问题/解决方案契合度
阶段 2:产品/市场契合度
阶段 3:规模
反模式: 跳过阶段 1-2,直接跳到规模阶段。
此技能基于 Eric Ries 的精益创业方法论。如需完整的框架、研究和案例研究:
Eric Ries 是一位企业家和作家,以发展精益创业方法论而闻名。他是 IMVU 的联合创始人兼首席技术官,在那里他开创了持续部署和客户开发实践,这些后来成为精益创业的基础。《精益创业》已被翻译成 30 多种语言,并影响了全球的创业文化。Ries 还是长期股票交易所的创建者,这是一个为专注于长期价值创造的公司设计的新股票交易所。
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A systematic approach to building startups and launching new products that shortens development cycles and rapidly discovers if a business model is viable.
Entrepreneurship is a form of management. Success doesn't require a perfect plan or brilliant insight—it requires a systematic process for testing assumptions, learning from customers, and iterating rapidly.
The foundation: Most startups fail not because they couldn't build what they planned, but because they built the wrong thing. The Lean Startup methodology applies scientific experimentation to eliminate waste and accelerate validated learning.
Goal: 10/10. When reviewing or creating product development plans, experiments, or metrics, rate them 0-10 based on adherence to Lean Startup principles. A 10/10 means full application of Build-Measure-Learn, validated learning, and evidence-based decisions; lower scores indicate waterfall thinking or waste. Always provide the current score and specific improvements needed to reach 10/10.
The fundamental cycle of Lean Startup:
IDEAS
↓
BUILD → Product
↓
MEASURE → Data
↓
LEARN → Knowledge
↓
(back to IDEAS)
Critical insight: The loop is actually backward. Start with what you want to learn, determine metrics that will inform that learning, then build the minimum product to collect those metrics.
Reverse planning:
Goal: Minimize total time through the loop.
See: references/build-measure-learn.md for detailed loop execution.
Definition: Learning what customers really want through validated experiments, not opinion or anecdotes.
Validated learning is not:
Validated learning is:
The Validation Ladder:
| Level | Evidence | Strength |
|---|---|---|
| 1 | "I think customers want this" | Weakest (opinion) |
| 2 | "Customers said they want this" | Weak (stated preference) |
| 3 | "Customers signed up for early access" | Medium (low commitment) |
| 4 | "Customers paid a deposit" | Strong (real commitment) |
| 5 | "Customers are actively using it" | Strongest (revealed preference) |
Target: Level 4-5 before building at scale.
Definition: The version of a new product that allows a team to collect the maximum amount of validated learning with the least effort.
MVP is not:
MVP is:
MVP Types:
| Type | What It Is | When to Use | Example |
|---|---|---|---|
| Concierge | Manual service pretending to be automated | Test if solution is valuable | Food on the Table (manual meal planning) |
| Wizard of Oz | Fake automation, manual backend | Test if automation is needed | Zappos (no inventory, bought shoes retail) |
| Smoke test | Landing page + signup, no product | Test demand before building | Dropbox video (explained concept, measured signups) |
| Single feature | One core feature only | Test which feature is most valuable | Twitter (just status updates) |
| Piecemeal | Combine existing tools | Test workflow before custom build | Groupon (WordPress + email) |
MVP Design Questions:
Common mistakes:
See: references/mvp-design.md for MVP types and design patterns.
Definition: The assumptions that, if wrong, will cause your business to fail.
Process:
Common leap-of-faith assumptions:
| Assumption Type | Question | Test Method |
|---|---|---|
| Value hypothesis | Do customers care about this problem? | Smoke test, concierge MVP |
| Growth hypothesis | How will customers discover us? | Channel tests, referral experiments |
| Retention hypothesis | Will customers come back? | Cohort analysis, engagement metrics |
| Monetization hypothesis | Will customers pay? | Pre-orders, pricing tests |
Example: Dropbox
Anti-pattern: Testing assumptions in order of ease rather than risk.
See: references/assumptions.md for assumption mapping frameworks.
Definition: Measuring progress when traditional accounting doesn't apply.
The problem with traditional metrics:
Innovation accounting framework:
Question: Where are we today?
Measure current reality, even if it's zero or embarrassing.
Metrics to establish:
Goal: Know your starting point precisely.
Question: What can we improve to move toward our goal?
Run experiments to improve baseline metrics.
Examples:
Goal: Systematically improve metrics through validated learning.
Question: Are we making sufficient progress, or do we need to change strategy?
Based on data, decide whether to continue or pivot.
Criteria:
Goal: Make evidence-based strategic decisions.
See: references/innovation-accounting.md for metric frameworks and dashboards.
Vanity metrics: Make you feel good but don't change behavior.
Actionable metrics: Drive decisions and clarify cause and effect.
| Vanity | Why It's Bad | Actionable Alternative |
|---|---|---|
| Total signups | Always goes up, no context | % signup → active (conversion rate) |
| Page views | Doesn't indicate value | Time on page , bounce rate |
| Total users | Includes inactive/churned | Active users (DAU, WAU, MAU) |
| Downloads | Doesn't mean usage | DAU/downloads (activation rate) |
| Revenue | Without context | Revenue per cohort , LTV/CAC |
Three characteristics of actionable metrics:
Example:
Cohort analysis: Group users by signup date and track behavior over time. Reveals if product is actually improving.
See: references/metrics.md for metric selection and tracking.
Pivot: A structured course correction designed to test a new hypothesis about the product, strategy, or engine of growth.
When to pivot:
When to persevere:
Pivot Types:
| Pivot Type | What Changes | Example |
|---|---|---|
| Zoom-in pivot | Single feature becomes the whole product | Instagram (photo filters from Burbn check-in app) |
| Zoom-out pivot | Product becomes a single feature | Flickr (photo-sharing from Game Neverending) |
| Customer segment | Same problem, different customer | Groupon (activism platform → local deals) |
| Customer need | Same customer, different problem | Potbelly Sandwich (antique store → sandwiches) |
| Platform | App → Platform or Platform → App | YouTube (dating site → video platform) |
| Business architecture | High margin, low volume ↔ Low margin, high volume | Salesforce (software → SaaS) |
| Value capture | Monetization model change |
Pivot cadence: Many successful startups pivot 1-5 times before finding product-market fit.
Anti-pattern: "Pivot" without validating that the new direction solves the core problem.
See: references/pivots.md for pivot decision frameworks and case studies.
Growth engine: How your startup acquires and retains customers sustainably.
Choose one engine to focus on:
Mechanism: High retention, low churn
Formula: Growth rate = New customer acquisition rate - Churn rate
Focus: Keep customers coming back
Metrics:
Examples: SaaS, subscription services, social networks
Strategy: Improve product until churn rate is low enough that natural growth exceeds churn.
Mechanism: Customers bring other customers
Formula: Viral coefficient = (% who invite) × (invites sent) × (% who join)
Focus: Viral coefficient > 1.0 = exponential growth
Metrics:
Examples: Dropbox, Hotmail, WhatsApp
Strategy: Build virality into the product. Must be > 1.0 to be self-sustaining.
Mechanism: Spend money to acquire customers
Formula: LTV (Lifetime Value) > CAC (Customer Acquisition Cost)
Focus: Unit economics that allow reinvestment
Metrics:
Examples: E-commerce, traditional businesses
Strategy: Optimize until each customer generates enough profit to acquire more customers.
Warning: Don't use multiple engines simultaneously. Pick one, optimize it, then consider adding others.
See: references/growth-engines.md for engine selection and optimization.
Purpose: Root cause analysis to prevent problems from recurring.
Process:
Example:
Problem: Website went down
Proportional investments:
Anti-pattern: Stop at level 1 (just fix the symptom).
See: references/five-whys.md for facilitation guides.
Principle: Work in small batches to accelerate learning and reduce waste.
Why small batches win:
Examples:
| Large Batch | Small Batch |
|---|---|
| Build entire product, then launch | Launch landing page, then build |
| Release quarterly | Release weekly or daily |
| Plan 12-month roadmap | Plan 6-week cycles |
| Big bang rewrite | Incremental refactoring |
Continuous deployment: The ultimate small batch = deploy every code commit.
Benefits:
See: references/small-batches.md for implementation patterns.
For different contexts:
See: references/applications.md for context-specific guides.
| Mistake | Why It Fails | Fix |
|---|---|---|
| Building too much | Waste before validation | Test with smoke test or concierge first |
| Asking customers | People don't know/mispredict | Observe behavior, not opinions |
| Vanity metrics | Feel-good numbers, no decisions | Track cohorts, conversion, retention |
| No hypothesis | Can't learn if you don't predict | Write hypothesis before each experiment |
| Pivot too slow | Waste runway | Set clear pivot criteria upfront |
| Skip innovation accounting | Can't tell if you're improving | Establish baseline, measure tuning efforts |
Audit any product development plan:
| Question | If No | Action |
|---|---|---|
| What's the riskiest assumption? | You're building on shaky ground | Map leap-of-faith assumptions |
| How will you test it? | You're guessing | Design MVP to test assumption |
| What metric will validate/invalidate? | You won't learn | Define actionable metrics |
| Can you test with less than this? | You're over-building | Shrink MVP further |
| What will you do if the experiment fails? | No pivot criteria | Define pivot triggers upfront |
Phase 1: Problem/Solution Fit
Phase 2: Product/Market Fit
Phase 3: Scale
Anti-pattern: Skipping Phase 1-2 and jumping straight to scale.
This skill is based on Eric Ries' Lean Startup methodology. For the complete framework, research, and case studies:
Eric Ries is an entrepreneur and author best known for developing the Lean Startup methodology. He was co-founder and CTO of IMVU, where he pioneered continuous deployment and customer development practices that became the foundation of Lean Startup. The Lean Startup has been translated into over 30 languages and has influenced startup culture worldwide. Ries is also the creator of the Long-Term Stock Exchange (LTSE), a new stock exchange designed for companies focused on long-term value creation.
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AI代理协作核心原则:提升开发效率的6大Agentic开发原则指南
7,600 周安装
| Android (paid → free + app revenue) |
| Engine of growth | Viral, sticky, or paid growth model | Facebook (viral within colleges → paid advertising) |
| Channel | How you reach customers | Salesforce (direct sales → self-service) |
| Technology | Different technology, same solution | Apple (Intel → ARM chips) |