展示HN:Rover – 可嵌入的网页代理
Show HN: Rover – Embeddable web agent

原始链接: https://www.rtrvr.ai/blog/10-billion-proof-point-every-website-needs-ai-agent

## AI购物助手崛起与控制权之争 亚马逊的Rufus购物助手据估计带来了120亿美元的增量收入,证明了对话式AI提升在线销售的强大力量——转化率最高可提高3.5倍。这凸显了一个快速增长的市场,预计到2033年将达到285亿美元,购物者期望获得AI驱动的体验。 然而,复制亚马逊的成功具有挑战性。构建类似的AI助手需要大量投资(每年50万至200万美元以上)和工程资源。现有的聊天机器人解决方案通常是被动的,缺乏主动引导用户完成复杂流程的能力。 谷歌的新WebMCP旨在解决这个问题,但也引发了担忧。它要求网站公开其API,可能将客户体验的控制权让渡给*谷歌在Chrome浏览器中的代理*。 一种新的替代方案,Rover,提供了一行代码的解决方案。Rover采用“DOM原生”方法,直接理解网站结构——无需依赖昂贵的截图或API集成——在行业基准测试中实现了顶级性能。它旨在赋能网站*拥有*自己的AI代理,并直接受益于转化率提高、用户 onboarding 以及支持成本降低。核心问题是:网站将控制其AI交互,还是会成为大型平台的后端?

## Rover:可嵌入式网页智能体 Rover (rtrvr.ai) 是一种旨在彻底改变网站交互的新工具。它被描述为“世界上第一个可嵌入式网页智能体”,是一个聊天小部件,允许用户直接与网站进行交互并*执行操作*——填写表单、完成结账和完成入职流程——而无需 API 或复杂的代码。 由前 Google 工程师构建,Rover 利用独特的仅 DOM 架构,在网页基准测试中实现高性能。其创建者认为,网站需要自己的人工智能界面,以避免用户流失到基于浏览器的智能体,例如 Chrome 或 Comet 提供的智能体。 Rover 提供简单的单脚本标签实现方式,与许多目前用于实现类似功能的成本高昂且维护繁重的 RAG 管道形成对比。它旨在通过允许用户在网站上以对话方式完成任务来提高用户参与度和留存率。目前正在进行 Beta 测试。
相关文章

原文

And Why Google's WebMCP Is the Wrong Answer


Amazon just proved that embeddable AI agents are worth $10 billion in incremental annual revenue.

Rufus—Amazon's shopping assistant—hit 250 million active users in under two years. Customers who engage with it are 60% more likely to complete a purchase. On Black Friday 2024, Rufus-assisted sessions converted at 3.5x the rate of non-assisted sessions.

This isn't a pilot. This isn't a projection. This is $12 billion in actual incremental sales for 2025.

The message is clear: conversational AI on your website isn't a nice-to-have. It's a revenue engine.

But here's what nobody's talking about: Amazon built Rufus over years, with thousands of engineers, trained on decades of catalog data, customer reviews, and behavioral signals. They spent an estimated $285 million just on operating costs in 2024 before it turned profitable.

What about the other 400 million websites that don't have Amazon's resources?


The $28 Billion Question

The AI shopping assistant market is projected to reach $28.54 billion by 2033. Conversational commerce is already valued at $8.8 billion and growing at 14.8% CAGR.

The demand is here. Shoppers now expect AI-first experiences:

  • 95% of customer interactions are expected to be AI-powered by 2025
  • 47% faster purchase completion when AI assists the journey
  • 23-70% conversion improvement across industries using AI chatbots
  • 35% of abandoned carts recovered through conversational re-engagement

But the supply side? It's broken.


The Current Options Are All Wrong

Option 1: Build It Yourself (The Amazon Path)

You need:

  • RAG pipelines that require months of development
  • Constant maintenance as your product catalog, pricing, and features change
  • Vector databases, custom LLMs, and evaluation frameworks
  • An entire ML ops team to prevent hallucinations

Cost: $500K-$2M+ annually. Timeline: 12-18 months to production.

Option 2: Intercom, Drift, or Traditional Chatbots

These tools excel at support ticket deflection. Intercom's Fin boasts 50% ticket reduction—impressive for support.

But they're fundamentally reactive. They wait for questions. They don't guide users through checkout flows. They don't show product demos. They don't click buttons or fill forms.

And the setup? You're still building RAG pipelines, hiring consultants, and paying $0.99 per resolution. Every. Single. Time.

Option 3: Google's WebMCP (The New Trojan Horse)

Two days ago, Google announced WebMCP—a protocol that asks websites to expose their internal APIs as "tools" for Chrome's AI agent.

The pitch sounds helpful: "Make your site agent-ready and we'll make interactions faster!"

Sound familiar?

This is the same playbook as Google AMP, featured snippets, and News aggregation. You do the integration work. You maintain the schemas. You expose your APIs.

And Google's agent becomes the interface your users talk to—inside Chrome, not inside your site.

WebMCP says: Build tools so Google's agent can use your site.

Your checkout flow. Your onboarding. Your conversion funnel. All intermediated by someone else's agent.


The Alternative: Own Your Agent

We built Rover to solve a different problem: What if every website could have an Amazon-quality AI agent, deployed in one line of code?

No RAG pipelines. No API exposure. No schema maintenance. No handing Google the keys.

Rover is a DOM-native AI agent that lives on your website. It reads your actual page structure—buttons, forms, navigation, content—and understands it semantically. No screenshots. No scraping. No vision models guessing at pixel coordinates.

One <script> tag. Your agent. Your site. Your users.

What Rover Actually Does

  • Completes checkout flows — Clicks buttons, fills forms, handles multi-step processes
  • Onboards users in real-time — Interactive product tours that adapt to user behavior
  • Shows live product demos — No more stagnant videos; actual walkthroughs of your product
  • Builds complex workflows — Guides users through sophisticated processes step-by-step
  • Converts conversations into actions — Users ask, Rover does

This isn't a chatbot. It's an agent that understands your website at the DOM level and acts on behalf of your users.


Why DOM-Native Changes Everything

Most AI web agents use one of two approaches:

Screenshot-based agents (OpenAI Operator, Computer Use, etc.) take pictures of your website and use vision models to guess where to click. They're slow, expensive, and fail on dynamic content.

API-dependent solutions (WebMCP, custom integrations) require you to expose every action as a structured tool. You do the work. You maintain it forever.

Rover is different.

We built Smart DOM Trees—a semantic understanding layer that maps your website's actual structure. Rover knows that "Add to Cart" is a purchasing action, that the sidebar is navigation, that the modal is a form.

This is why we're ranked #1 on WebBench with an 81.39% success rate—higher than any screenshot-based approach.

And it's why 21,000+ users have executed 1.5M+ workflows on our platform.


The Math for Websites

Let's be conservative:

MetricWithout AgentWith Agent (Conservative)
Conversion Rate1.65%2.03% (+23%)
Cart Abandonment Recovery0%12% of abandoned
User Onboarding Completion40%58% (+45%)
Support Ticket VolumeBaseline-35%

If Amazon's Rufus drives $12 billion on a $600 billion GMV platform (~2% lift), what could a 23% conversion improvement do for your business?

For a site doing $10M annually, even a 15% lift is $1.5M in incremental revenue.

Rover costs less than a single support hire.


Rover Is Live

We've been building toward this moment for two years. DOM-native architecture. Smart DOM Trees. State-of-the-art web page understanding.

Rover is now live on rtrvr.ai. You can try it yourself.

And on February 25th, we're going live with our first waitlist companies on Product Hunt.

If you want:

  • Your own AI agent that works for your users (not Google's)
  • One-line deployment with zero RAG configuration
  • Conversion rates that match what Amazon sees with Rufus
  • Control over your checkout, onboarding, and user relationships

Subscribe for launch →


The Battle Lines Are Drawn

Websites already lost the content layer to aggregators. Google took search. Social platforms took distribution. AI answer engines are taking queries.

Now the question is: Who owns the interaction layer?

Google's WebMCP is a bid to intermediate every transaction, every onboarding flow, every conversion funnel—through Chrome's agent.

We're building the opposite.

Rover puts the agent on your turf. Your website. Your users. Your data. Your revenue.

The future of the web isn't websites becoming backends for someone else's AI.

The future is every website having its own intelligent agent.

That future is Rover.


rtrvr.ai is the DOM-native AI web agent platform, built by two ex-Google engineers. We're ranked #1 on WebBench, with 21,000+ users and 1.5M+ executed workflows.

Rover launches February 25, 2026 on Product Hunt.

联系我们 contact @ memedata.com