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Vercel Open Source Program: Winter 2026 cohort How Notion Workers run untrusted code at scale with Vercel Sandbox How we run Vercel's CDN in front of Discourse From idea to secure checkout in minutes with Stripe Building Slack agents can be easy Scaling redirects to infinity on Vercel Advancing Python typing Gamma builds design-first agents with Vercel How Avalara turns pipe dreams into patent-pending with v0 Keeping community human while scaling with agents How OpenEvidence built a healthcare AI that physicians actually trust Security boundaries in agentic architectures Skills Night: 69,000+ ways agents are getting smarter Video Generation with AI Gateway We Ralph Wiggumed WebStreams to make them 10x faster How Stably ships AI testing agents in hours, not weeks How we built AEO tracking for coding agents Anyone can build agents, but it takes a platform to run them Introducing Geist Pixel The Vercel AI Accelerator is back with $6m in credits Making agent-friendly pages with content negotiation The Vercel OSS Bug Bounty program is now available Introducing the new v0 Run untrusted code with Vercel Sandbox, now generally available How Stripe built a game-changing app in a single flight with v0 How Sensay went from zero to product in six weeks AGENTS.md outperforms skills in our agent evals Agent skills explained: An FAQ Testing if "bash is all you need" AWS databases are now live on the Vercel Marketplace and v0 Use Perplexity Web Search with Vercel AI Gateway Introducing: React Best Practices Nick Bogaty joins Vercel as Chief Revenue Officer How Mux shipped durable video workflows with their @mux/ai SDK How to build agents with filesystems and bash How we made v0 an effective coding agent Stopping the slow death of internal tools Building AI-Generated Pixel Trading Cards with Vercel AI Gateway We removed 80% of our agent’s tools AI SDK 6 Our $1 million hacker challenge for React2Shell Cline now runs on Vercel AI Gateway How to prompt v0 Build smarter workflows with Notion and v0 Vercel launches partner certification Inside Workflow DevKit: How framework integrations work React2Shell Security Bulletin | Vercel Knowledge Base Billions of requests: Black Friday-Cyber Monday 2025 Investing in the Python ecosystem AWS Databases coming to the Vercel Marketplace How we built the v0 iOS app Workflow Builder: Build your own workflow automation platform Vercel Open Source Program: Fall 2025 cohort Self-driving infrastructure Vercel collaborates with Google for Gemini 3 Pro Preview launch Vercel: The anti-vendor-lock-in cloud How Nous Research used BotID to block automated abuse at scale How AI Gateway runs on Fluid compute Build and deploy data applications on Snowflake with v0 BotID Deep Analysis catches a sophisticated bot network in real-time Vercel achieves TISAX AL2 compliance to serve automotive partners Bun runtime on Vercel Functions David Totten Joins Vercel to Lead Global Field Engineering Vercel Ship AI 2025 recap You can just ship agents AI agents and services on the Vercel Marketplace Built-in durability: Introducing Workflow Development Kit Zero-config backends on Vercel AI Cloud Introducing Vercel Agent: Your new Vercel teammate Update regarding Vercel service disruption on October 20, 2025 Agents at work, a partnership with Salesforce and Slack Running Next.js in ChatGPT: How to Build ChatGPT Apps Talha Tariq joins Vercel as CTO of Security Just another (Black) Friday Server rendering benchmarks: Fluid Compute and Cloudflare Workers Towards the AI Cloud: Our Series F Collaborating with Anthropic on Claude Sonnet 4.5 to power intelligent coding agents Preventing the stampede: Request collapsing in the Vercel CDN BotID uncovers hidden SEO poisoning How we made global routing faster with Bloom filters What you need to know about vibe coding Scale to one: How Fluid solves cold starts Addressing security & quality issues with MCP tools - Vercel AI agents at scale: Rox’s Vercel-powered revenue operating system Helly Hansen migrated to Vercel and drove 80% Black Friday growth Agentic Infrastructure Zero Data Retention on AI Gateway Optimizing Vercel Sandbox snapshots How Waldium made a blog platform work for humans and AI alike How FLORA shipped a creative agent on Vercel's AI stack Agent responsibly Making Turborepo 96% faster with agents, sandboxes, and humans Unified reporting for all AI Gateway usage new.website joins forces with v0 SERHANT.'s playbook for rapid AI iteration Two startups at global scale without DevOps Chat SDK brings agents to your users 360 billion tokens, 3 million customers, 6 engineers Meet the 2026 Vercel AI Accelerator Cohort Build knowledge agents without embeddings
What we learned building agents at Vercel
Malte UblCTO, VercelEric DoddsContent Engineer · 2025-11-06 · via Vercel News

Agents present incredible promise for increased productivity and higher quality outcomes in enterprises. Companies are already using them to streamline customer support, code reviews, and sales operations.

When building custom internal agents, the challenge isn't whether AI can create value, it's identifying the problems it's ready to solve today, at a cost that makes sense for the business.

At Vercel, we are going through the same AI transformation as our customers. We use our own products to build agents that help us move faster and spend more time on meaningful work.

After months of experimentation, we’ve turned our learnings into a repeatable methodology for finding and investing in AI projects that have the highest likelihood of creating significant business impact.

Link to headingFinding the agentic sweet spot

Over time AI will touch nearly every workflow, handling complex tasks like our own code review and anomaly investigation agent. Our intuition for what agents can do is skewed towards high expectations because coding agents like these are so amazing.

But most companies don’t have the engineering capacity to productionize that level of internal use case, and today’s models still face limits in reliability and precision in other domains. This is why we need to select problems that fit what today's frontier models are well suited for.

We've learned that the highest likelihood of success for current-generation agentic AI comes from work that requires low cognitive load and high repetition from humans.

These tasks are too dynamic for traditional automation, but predictable enough for AI to handle reliably. They show up across businesses in data entry, research, qualification, and triage, where automation saves time and keeps quality consistent.

This is the low-hanging fruit to tackle today, while models continue to mature toward reliably automating more complex tasks in the future.

Link to headingOur methodology for finding the right projects

As simple as it sounds, we talked to our team about tasks that fit the sweet spot: mindless activities repeated often.

Humans don’t love boring, repetitive work, so you can often find great ideas by asking questions like “what part of your job do you hate doing the most?” or “which tasks would you like to never do again?”

Most use cases we’ve found have been relatively simple to automate and have yielded high-quality, measurable outcomes in productivity. Here are two specific examples:

Link to headingLead processing agent

We used to have a team of 10 people triaging leads that come through our website. When we asked the team’s top performer what they wished they never had to do again, they told us manually researching the information needed to make an initial qualification judgment was mind-numbing.

We shadowed that employee to learn their process, then built an agent to automate initial qualification. Now one person handles the work of 10 and the 9 other employees are focused on higher value, more complex sales work.

Here’s the agent workflow:

  • Deep research - performs comprehensive research on the lead and their company

  • Qualification - uses generateObject to categorize the lead

  • Email composition - automatically generates a personalized follow-up email

  • Human review - sends all of the information to Slack for human approval

  • Approval & email send - catches a Slack webhook event upon human approval

Link to headingAnti-abuse agent

Our security team manages a steady flow of abuse reports, from phishing and spam to copyright violations. We take each case seriously because false positives can lead to wrongful takedowns, while misses risk leaving harmful content online.

Before automation, human reviewers investigated every report manually, running a formulaic process to make an initial judgment call.

We built an abuse platform agent that automatically takes potentially infringing or high-risk URLs, runs visual analysis, understands the page’s intention, and returns recommended actions for human validation.

Even in its first iteration, this workflow led to a 59% reduction in time to ticket closing, freeing the team to focus on edge cases that require more complex human reasoning.

Here’s the agent workflow:

  • URL intake - retrieves new reports from the abuse queue

  • Analysis - runs visual/textual analysis to detect phishing or copyright content

  • Recommendation - compiles findings and proposes an action plan

  • Human review - sends recommendation to a security engineer for final judgment

  • Resolution - records the decision and closes the ticket

Link to headingGet started with our agent templates

Everyone should begin asking their team the questions above, but you can get started immediately by using one of our agent templates.

We’ve open-sourced a range of agent examples meant to be used as the building blocks for custom agents.

  • Lead processing agent: Have AI perform the research grunt-work and do initial qualification, then validate with a human in the loop

  • Data analyst agent: Converts natural language questions into SQL queries and performs data analysis using multi-phase reasoning

  • Flight booking app: A conversational flight booking assistant with built-in retries, resume capabilities, and fault tolerance

  • Storytime Slackbot: An interactive, AI-powered Slack bot that creates collaborative children's stories with members of your Slack organization

If your team want’s more direct support in finding and building high-ROI AI projects, we’re offering a hands-on program that guides you through use case discovery and agent implementation with our team of forward-deployed engineers.