You keep re-explaining yourself
Every new chat, you paste the same context, the same style guide, the same examples. AI has amnesia. You're the IT support.
Describe what you need. FlowPilot builds the multi-step AI workflow, connects it to your tools, and runs it whenever you want. No prompts to rewrite. No code to debug.
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You know what should be automated. You just don't have a developer to build it.
The bottleneck isn't intelligence. It's orchestration.
Every new chat, you paste the same context, the same style guide, the same examples. AI has amnesia. You're the IT support.
A great summary today. A good draft yesterday. Each one trapped in a conversation—never reused, never improved, never shared with your team.
Your emails, docs, and Slack all live somewhere else. You're still the middleware—copying between the chat tab and everywhere real work happens.
AI got smart. Workflows didn't catch up. FlowPilot fills the gap between one-shot prompts and rigid automation.
AI-native, multi-step, no-code, reusable. All four at once — that's the gap.
Drop blocks on a canvas. Connect them with a line. Run the whole thing with one click. Each block is an AI step, a data source, or an action—arrange them however your work actually happens.
Tell FlowPilot what each step should do. It handles the prompts, the inputs, and the outputs. If it's wrong, fix it with a sentence—not a parameter panel.
FlowPilot plugs into the tools you already use. Pull context from Gmail, Notion, or any API. Push results to Slack, Linear, a spreadsheet, or an email draft. No more AI-in-a-tab.
Click any tab or watch it auto-advance. Hover to pause.
Tell FlowPilot what you want to automate, in the same words you'd use to explain it to a coworker. No prompt engineering. No syntax to learn.
FlowPilot drafts a workflow for you. Visual. Editable. Transparent. See every step. Tweak the prompt. Swap a tool. Add a branch.
Plug in the apps the flow needs. Authorize once, reuse forever. FlowPilot handles the API plumbing so you never touch a docs page.
Trigger manually. Put it on a schedule. Wire it to an event. Your workflow runs, reports back, and gets smarter every time you use it.
Every design choice — model routing, cost ceilings, async execution, graceful failure — exists because production AI doesn't tolerate hand-waving.
Claude Sonnet for reasoning. Haiku for classification. GPT for structured output. The router picks per step — not per workflow.
Hard caps per workspace. Cost preview before every run. No surprise bills when a workflow loops harder than expected.
Workflows run in the background. Get notified when done. The UI never blocks on AI — because users shouldn't wait on a model.
Step fails → retry with fallback model. Still fails → human handoff with full execution log. No silent breakage.
Plausibly they will. Custom GPTs and Claude Skills already point at the workflow direction.
But foundation labs optimize for model capability, not business workflow integration. Building a real workflow product means owning OAuth flows for Slack, Notion, Salesforce, HubSpot, retry logic, audit logs, multi-tenant cost ceilings, role-based permissions — surface area that's orthogonal to model research.
The pattern repeats: AWS could have built Stripe. Google could have built Notion. They didn't, because verticalized integration is a different game than infrastructure.
Zapier connects apps via deterministic if-this-then-that triggers. FlowPilot orchestrates AI reasoning across steps — meaning each step can interpret unstructured input, decide what to do, and adjust the flow's trajectory.
Concretely: a Zapier zap can't "summarize this email and decide if it's a sales lead, then route to the right pipeline based on the topic." Each italicized verb requires reasoning, not branching logic.
Zapier is a graph of triggers. FlowPilot is a graph of decisions.
Three layers of fallback.
First, automatic retry with a fallback model — if Claude Sonnet times out, the step retries with GPT-4o or a smaller model.
Second, if the step still fails, the workflow pauses and surfaces a structured error with full execution log: what step, what input, what the model returned. Not a stack trace.
Third, every workflow has a human-in-the-loop checkpoint option for high-stakes steps — set once, applies forever.
If you have an engineering team, you should. FlowPilot isn't trying to compete with hand-rolled pipelines.
But for the founder running a multi-tool business without a developer — the time to set up an API key, write the script, deploy it somewhere with a cron, debug the prompts, monitor failures, and update it when an API contract changes — that's not "free." That's roughly 8-15 hours of tooling per workflow, then ongoing maintenance.
The right question isn't "could I do this myself" — it's "is the time worth more than $29 a month."
No signup, no setup. Just see the orchestration in action.
Try the interactive demo