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Amplitude

Meet the Winners of the 2026 Amplitude AI Impact Awards Beyond Last-Touch Attribution: Find Out Which Interactions Really Matter Agents That Act on What Actually Happened How Square Used Amplitude to Enhance the Seller Experience and Power Growth Migrating Analytics Platforms Without The Chaos Wanted Lab Grows Sign-Ups by 150% & Builds Experimentation Culture How to Balance Inference Cost and User Experience for Agents Introducing Zoning Insights: Web Intelligence at a Glance Five best practices for getting started with AI agents 24 Quarters at #1. Here’s What’s Next. How We Built a Product That Tells Us What To Build Next: Inside Amplitude Wave Looking Beyond Campaign Metrics: 7 Marketing Success Stories AI Evals for Product Managers: A Beginner’s Guide to Getting Started The Builder Skills Library Introducing Agent Connectors in Amplitude Understand How AI Thinks, Get Better Results How We Redesigned Amplitude Docs for Agents and Made Everyone an Author AI Broke Your Experimentation Program. Here’s How to Fix It. Every Stuck User Is a Support Ticket Waiting to Happen Tracing the Sale: Connect Behavior to Conversions with Persisted Properties Building CLI Agents: It’s What You Don’t Give Them That Counts Three Tips for Better Prompts in Amplitude Global Agent How AI Took the Data Analyst’s Job, and Created a Better One Default Prompts Are Tanking Your Agent’s Retention Optimizing Core Web Vitals with Amplitude’s Global Agent Don’t Ask Global Agent Anything, Ask These Three Things How We Built a Design Agent at Amplitude with Claude Managed Agents and Cloudflare The Problem with Chasing Churn How Hostinger Achieved a 20%+ Conversion Lift Through Experimentation How STAGE Streams Smarter by Putting Data at the Center Building the Validation Stack for AI Product Development Making AI Analytics Safe for Financial Services Teams Amplitude Heatmaps Update: More Reliable Screenshots and Accurate Placement Most Teams Ship Agent Personalities by Accident. We Didn’t. What I Learned Pointing a Ralph Loop at My Product for a Week How Mercado Libre Scales Decision Making with AI Claude Cowork for PMs: 5 Playbooks to Get Started How ACKO Drove 13% More Conversions & 50% Drop in Calls with GenAI Agents Just Made Your Feature Launch Channel Smarter Homegrown FinOps Tools: How AI “Build” Beat “Buy” for Us in <1 Year Introducing The Amplitude Quickstart Series Rebuilding Session Replay’s Delivery Layer to Be Lighter on Your Page The Eval Signal That Predicts 3x Agent Retention Agents Write Code. Fixing It Is Still On You. Amplitude and Statsig Partnership 5 Agent Skills to Automate Your Weekly Product Review Amplitude Plug and Play: New AI Plugin in Claude and Cursor Marketplaces Introducing Amplitude Wizard CLI: Set Up Amplitude from Your Codebase Making AI Search Count (and Convert) How VEED Evolved Its AI Search Strategy What’s New with Amplitude Agents Effortless Support at Scale: Making Human Support More Human AI Week 2026: Upleveling All Together Amplitude AI Builders: Paul Hultgren Chats about AI Assistant Dashboard Dread to AI-Driven Decisions: How Tira Rebuilt Its Analytics Workflow Your Product Deserves a Better Support Agent How Cisco Systems Accelerated Adoption by 20% Through Data Innovation
Agent Connectors Are Better Together
Michele Morales · 2026-06-24 · via Amplitude

Most people set up an AI agent connector and figure the work is done once data moves from one tool to another. But imagine this very common scenario: you spot a drop-off in a funnel, open your session replay tool to see what users did, switch to GitHub to find the bug, then paste a summary into Slack so the right engineer sees it. Every step is a new tab and another copy-paste, and the finding gets more fragmented each time you move it.

Power users here at Amplitude know agent connectors don’t work that way. They let one agent read from one tool, work through the problem, and act in another tool, all from a single prompt.

With Agent Connectors, you access all your tools from the same chat. In practice, it might look like this: a single agent reads from your session replay data, cross-references the codebase, and posts to Slack without you switching tabs. You ask once, and the agent moves through all three tools while you stay in the same workflow.

Amogh Dikshit, AI Engineer, uses Agent Connectors to run bug investigations. He starts with session replay data to find where users fell off, then has the agent cross-reference the JavaScript error or failed API call against the codebase to find the likely cause. The agent then posts the write-up into the right Slack channel so the engineer who owns that code sees it. He asks once, and never opens session replay, GitHub, or Slack himself.

Send insights to multiple places

Findings like the ones Amogh uses Agent Connectors to surface are typically recorded in a doc and work tracker. That’s why Agent Connectors sends them to every system that needs them, all from a single prompt.

It’s one of Principal Product Designer Jingshu Zhao’s favorite features. She knows she can count on her agent to update Confluence or Notion and file the Jira ticket at the same time, keeping product and engineering on the same page.

Post a finding straight to a Slack channel

The best part? After your agent digs into the data, it drops a summary of its findings in the channel of your choice. AI Engineer Ram Soma runs it this way, knowing the result lands where his team is working.

Run your agent on a schedule

You can go beyond one-off queries too. Schedule your agent to automatically monitor dashboards and act when something moves. Want an example? Your agent can check a metric, post results to Slack, and file a ticket the moment a number regresses.

Stephanie Chu, Software Engineer, has agents monitor dashboards and post results to Slack. When a metric regresses, the agent files a Linear ticket so it becomes tracked work right away. Steven Cheng, Senior Engineering Manager, runs his on tighter cadences, some as often as every 15 minutes. When a number looks off, the agents create tickets automatically, eliminating the manual work of spotting a problem and opening a ticket.

Access data from one place

Agent Connectors open a door to data that lives in many systems. It means that instead of opening four tools to answer one question, you can ask your agent and it pulls the answer from wherever it lives.

Whenever Principal Product Designer, Fayyaz Mukarram has a question, he starts with his agent. When he’s running an experiment, he has the agent list feature flags or where he's assigned as a tester. The agent then pulls that information from across the systems that hold it.

What changes when the agent does the moving

Agent Connectors help remove the bottleneck in the build-ship-analyze-learn loop. Innovations in digital analytics made finding the number or metric that mattered something you could do in minutes. But the tab switching, the copy-and-pasting, and the handing off to the next tool slowed everything down. When the agent does that work—the investigation, the write-up, the ticket, and the message—it means you can learn and iterate as fast as you build and analyze.

Here at Amplitude we’ve seen firsthand the power of Agent Connectors. It’s not merely about how many tools we’ve connected, but what we’ve asked the agent to do with themConnecting your tools is the setup. Putting one agent to work across them is where the real value lives.

Frequently asked questions

What is an agent connector? An agent connector links an AI agent to a tool you already use, like session replay, GitHub, Slack, Jira, Confluence, or Notion. Once connected, the agent can read data from that tool and take actions in it on your behalf, so you can work across several tools from a single prompt instead of switching between them.

Can one agent work across multiple connected tools at once? Yes. A single agent can read from one connected tool, reason over the result, and act in another within the same prompt. For example, it can pull session replay data, cross-reference a code error in GitHub, and post the write-up to Slack.

Can an AI agent run on a schedule without me watching it? Yes. A scheduled agent can monitor a dashboard on a set cadence and act when a metric moves. When a number regresses, it can post to Slack and file a ticket in Linear or Jira automatically.

What's the difference between connecting a tool and using agents across tools? Connecting a tool moves data from one place to another and saves you a single step. Using an agent across tools hands off the whole task: the agent reads, reasons, and acts across several connected tools from one prompt.