AI agent platform

Autonomous AI agents that get work done

An AI agent platform that runs tasks on schedule, connects to 70+ apps, and delivers structured output. You stay in control.

Connects to 70+ apps·Runs autonomously on schedule·Human approval built in

Works with

Google AdsGoogle Ads
Google Search ConsoleGoogle Search Console
SlackSlack
Google SheetsGoogle Sheets
GmailGmail
HubSpotHubSpot
NotionNotion
LinearLinear

and 70+ other apps

What an AI agent platform delivers

Scheduled execution, 70+ integrations, human approval, persistent memory.

Runs on autopilot

Set a daily or weekly schedule. Your teammate runs the task, delivers output, and alerts you when something needs attention.

Connects to 70+ apps

Google Ads, Slack, Sheets, Search Console, Gmail, and more. One-click OAuth setup.

You approve the plan

Review what your teammate will do before it does it. Or let it run fully on its own.

Remembers context

Your teammate remembers what happened in previous runs. Each execution builds on the last. No context lost.

Delivers real output

Every run produces reports, spreadsheets, or Slack messages. Same format every time.

Set up your first teammate in under 5 minutes.

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Get started in minutes

One teammate. One task. Real output.

1

Create a teammate

Give it a name, instructions, and connect the apps it needs.

2

Define a task

Tell it what to do. A report, a check, a triage workflow.

3

Set a trigger

Run it on a schedule, from a webhook, or by forwarding an email.

4

Review and scale

Check the output. Adjust. Add more tasks when ready.

Not a chatbot. An autonomous agent.

Chat tools answer when asked. Teammates own recurring work and deliver on schedule.

Runs autonomously

Set a cron schedule and the task runs at the same time every day. No prompting, no manual trigger.

  • Daily, weekly, or custom schedules
  • Trigger from webhooks or events
  • Forward an email and it runs

You stay in control

Approve actions before they happen. Or let it run fully on its own.

  • Three permission modes
  • Apps connected with minimum access
  • Full logs for every run

Delivers real output

Every run produces reports, summaries, or Slack messages. Not just chat.

  • Output files like CSV, PDF, reports
  • Posts to Slack, email, or Sheets
  • Same format every time

What people build

Teams use these today. Copy one and make it yours.

Daily ad spend monitor

Connects to Google Ads. Checks spend, CPA, and conversions daily. Flags anomalies and sends a Slack summary.

Check Google Ads daily. Flag campaigns where spend rises 20%+ while conversions drop. Post summary to #marketing in Slack.

Catch budget problems before they compound.

Monday morning brief

Pulls data from connected tools every Monday 8am. Writes a summary: top wins, risks, three priorities.

Every Monday 8am: compile marketing performance across channels. Top 3 wins, top 3 risks, 3 recommended actions. Post to Slack.

Meetings start with priorities, not dashboards.

Inbound email triage

Forward emails to a teammate. It reads, classifies urgency, creates tasks, and notifies the right owner.

Parse forwarded emails. Classify by urgency. Create a task for each. Notify owner when action needed within 24h.

Nothing gets lost. Requests routed automatically.

Google Ads, SEO, and email workflows ready to deploy.

See marketing workflows

Inside the autonomous AI agent platform

Architecture, permissions, use cases, and getting started.

Teammate, task, run

A teammate is a reusable AI agent with a name, instructions, and connected apps. A task defines what it does: writing a report, monitoring a dashboard, or triaging inbound. A run is a single execution. You configure once, then it runs on its own.

Connect your apps via OAuth

Pick the apps your team already uses: Google Ads, Sheets, Search Console, Slack, Gmail, and 70+ others. Connect via OAuth with scoped permissions. The teammate only accesses what you allow.

Triggers: schedule, webhook, email

Set a cron schedule (daily, weekly, every Monday at 8am) and the task runs automatically. Or trigger it via webhook when an event fires, or by forwarding an email. Every run streams results in real time.

  • Cron schedules for daily, weekly, or custom cadences.
  • Webhook triggers for event-driven workflows.
  • Email triggers: forward a message and the task runs.
  • Three permission modes: autonomous, approval, and plan.

How autonomous execution works

When a run starts, the agent reads data from connected apps, reasons about what it found, takes actions (write a file, send a message, update a sheet), and delivers structured output. No prompting required. It works while you do something else.

Execution is the bottleneck, not ideas

Most teams have the strategy figured out. What they lack is bandwidth to execute recurring work consistently. Reports get delayed, checks get skipped, follow-ups sit in someone's inbox. An AI agent platform fills the gap.

From isolated tools to a connected platform

Your apps already exist: analytics, ad platforms, CRMs, messaging. What is missing is a layer that connects them, interprets signals, and delivers structured output on a schedule. No black boxes, no code required.

What makes a good AI agent platform

Not all platforms are the same. The ones that work in production have these in common.

  • Real integrations via OAuth, not just API wrappers.
  • Scheduling and triggers built in, not bolted on.
  • Permission controls so humans stay in the loop.
  • Persistent memory so each run builds on the last.

Marketing: ads, SEO, and reporting

Connect Google Ads and Search Console. Your teammate monitors spend, rankings, and conversions daily. It flags anomalies, writes summaries, and sends them to Slack or email. You review only what matters.

  • Daily spend and conversion monitoring for paid campaigns.
  • Weekly SEO ranking summaries from Search Console.
  • Automated reporting to Sheets, Slack, or email.
  • Cross-channel briefs that combine paid and organic signals.

Sales ops: pipeline hygiene and crm updates

Stale deals, missing fields, and forgotten follow-ups cost revenue. A teammate connected to your CRM reviews pipeline health on a schedule and flags what needs attention before it slips.

  • Flag deals with no activity in 14+ days.
  • Check for missing fields and incomplete records.
  • Weekly pipeline summary for sales leadership.
  • Route alerts to the deal owner directly.

Customer success: onboarding and renewal tracking

Track adoption signals and usage patterns automatically. Your teammate flags accounts showing churn risk and produces health summaries so CSMs can act before renewal conversations start.

Operations: compliance and vendor management

Recurring operational checks like contract review dates, compliance deadlines, and vendor SLA tracking. Set it up once and let the teammate run the cadence with approval gates for anything that needs a decision.

How AI teammates compare to chatbots and copilots

ChatGPT, Claude chat, and similar tools are reactive. You type a question, they answer. AI teammates are proactive: they run on a cron schedule, pull data from your apps, and deliver output without anyone opening a chat window.

Chat tools answer when asked. Teammates work on schedule.

ChatGPT, Claude chat, and similar tools are reactive. You type a question, they answer. AI teammates are proactive: they run on a cron schedule, pull data from your apps, and deliver output without anyone opening a chat window.

Copilots assist. Agents own the task end to end.

A copilot suggests what to do next while you work. An autonomous AI agent does the work itself: reads data, reasons, takes actions, and delivers a finished result. You review the output, not the process.

Single-use vs persistent memory across runs

Most AI tools start fresh every time. AI teammates remember what happened in previous runs. Each execution builds on context from the last, so the agent gets more useful over time without re-explaining your setup.

Permissions, safety, and human control

Autonomous mode: the agent runs and acts without asking. Approval mode: you review every action before it executes. Plan mode: the agent proposes a plan, you approve, then it runs. Start with approval and promote to autonomous when trust is established.

Three permission modes: autonomous, approval, plan

Autonomous mode: the agent runs and acts without asking. Approval mode: you review every action before it executes. Plan mode: the agent proposes a plan, you approve, then it runs. Start with approval and promote to autonomous when trust is established.

OAuth with minimum permissions

Every app connection uses OAuth with the narrowest scope needed for the task. Read-only access for monitoring. Write access only when the workflow requires it. You control what the agent can touch.

Full execution logs for every run

Every action, tool call, and output is logged. You can see exactly what the agent did, what data it read, and what it produced. Complete audit trail for every run.

Escalation rules and error handling

When the agent encounters something it cannot handle, it escalates instead of guessing. You define what triggers escalation: missing data, confidence thresholds, or unexpected patterns. Errors are logged, not hidden.

Getting started with your first AI agent

Give it a name, write instructions in plain language, and connect the apps it needs via OAuth. Start with one narrow task: a daily check, a weekly report, or an email triage workflow.

Create a teammate in under 5 minutes

Give it a name, write instructions in plain language, and connect the apps it needs via OAuth. Start with one narrow task: a daily check, a weekly report, or an email triage workflow.

Define your first task and trigger

Describe what it should do: which data sources to read, what output format to produce, where to deliver results, and what to escalate. Set a cron schedule, webhook, or email forward as the trigger.

Review output and iterate

Start in approval mode so you review every action before it executes. Check the output after each run. Adjust instructions one variable at a time. Switch to autonomous when the output is consistently good.

Scale to more tasks and teammates

Once one workflow works, add adjacent tasks. Reuse templates and thresholds from your first teammate. Most teams go from one task to five within the first month.

  • Narrow tasks produce more reliable output than broad ones.
  • Every run has full execution logs and output files.
  • Spend 20 minutes weekly tuning instructions. Small adjustments compound.
  • Teammates remember context across runs via persistent memory.
Pricing, ROI, and what it costs

Start free. The free tier gives you enough to test one teammate with real tasks. Paid plans add more runs, more teammates, and priority support. No credit card required to start.

Free tier and paid plans

Start free. The free tier gives you enough to test one teammate with real tasks. Paid plans add more runs, more teammates, and priority support. No credit card required to start.

How to measure ROI from AI agents

Track three things: hours saved on recurring work, time from issue detection to action, and reduction in manual report prep. Teams typically see ROI within two weeks of deploying their first workflow.

Cost per run vs cost of manual work

A daily monitoring run costs a fraction of what a team member spends doing the same check manually. The math is simple: if the task takes 30 minutes by hand and runs every day, automating it pays for itself in days.

Create your first autonomous AI agent and see it run.

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FAQ

Quick answers to common questions.

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Create a teammate. Define one task. See it run.