Agentic workflow systems
Autonomous AI agents that handle intake, routing, qualification, documentation, follow-up, and reporting, with no manual intervention between steps.
You don't need another proof of concept. You need a system that runs in production: integrated with your tools, handed off to your team, and producing output on day one.
Most AI implementations stall in the middle. The tool works in the demo. The pilot shows promise. Then it hits your actual workflows (the specific handoffs, the edge cases, the data formats, the team habits) and it starts to slip.
Not because AI can't do it. Because the system wasn't built for how your business actually runs. It was built for how a generic business is supposed to run.
Custom builds are different. They start with your operation (your tools, your team structure, your data, your process) and build around it. The system that comes out the other side doesn't ask your team to change how they work. It fits into how they already work, and it does the parts that shouldn't require a person.
That's the difference between a pilot that fades and a system that runs.
Not a list of tools to buy. These are the systems I build for small businesses and startups, usually 5 to 100 employees: working software that runs in your environment and does the operational work your team shouldn't have to.
Autonomous AI agents that handle intake, routing, qualification, documentation, follow-up, and reporting, with no manual intervention between steps.
Lead capture, CRM integration, qualification logic, follow-up sequencing, and pipeline reporting that runs without your sales team manually moving deals through stages.
Real-time operational intelligence that pulls from your existing tools and surfaces what leadership needs to see, without someone rebuilding a report every Monday morning.
GPT-based tools trained on your business: your SOPs, your product knowledge, your customer language. Built for your team, not for a general audience.
Connecting the tools you already use, from CRM to communication to project management to documentation, into one system with AI handling the handoffs between them.
AI-powered documentation workflows for regulated industries that hold their accuracy without the manual drafting time.
We start from your AI Opportunity Map, whether it came from the audit or we define it together. I design the system architecture: what it does, what it integrates with, what the handoffs look like, and the success metrics we track.
The system gets built where it will actually run, integrated with the tools you already use from the start. You're involved at key milestones, not just at the end.
We test the system against real data and real workflows before it goes live. Edge cases get handled. Logic gets tightened.
The system goes live and your team gets trained on it. You get documentation covering what it does, how it works, and how to adjust it. I stay available for a post-launch optimization window.
Delivered as: a working system in your environment, plus documentation and a live handoff to your team.
Every build is different. Pricing starts at $5,000 for single-system builds and scales from there, based on what the system has to do and what it connects to.
Most clients come to Build & Deploy after completing an AI Opportunity Audit. If you don't have an Opportunity Map yet, that's the right place to start: it defines the scope of the build and prevents expensive changes mid-build.
Once the first system is running and proving itself, Scale & Stack is how you build on it, one system at a time.
Timeline: single-system builds run 2–6 weeks. Multi-system builds are scoped up front.
Built an agentic workflow system that handles lead intake, qualification, sales pipeline routing, and handoffs across a utility rebate operation. The systems run in production, and the manual intake process is gone.
A full business audit followed by a custom agentic build: buyer-facing intake systems, a custom comparables engine, sales department automation, and an executive dashboard pulling real-time operational and sales data.
Client names anonymized. The systems described are running in production. Named references available on request.
Not required, but recommended. Clients who come in with a clear, validated opportunity skip the audit. Clients who aren't sure where to start do the audit first. It prevents expensive course corrections mid-build.
Single-system builds run 2–6 weeks. Multi-system builds take longer. The timeline is defined during scoping, before any work starts.
Tool-agnostic. Common stacks include HubSpot, Salesforce, Monday.com, Asana, Notion, Slack, Zapier, Make, the Google Workspace and Microsoft 365 suites, Adobe, and Claude Code, plus custom GPT deployments. I build on what your team already uses wherever I can.
The goal is the opposite. I build around how your team already works, so the system takes the operational drag off their plate instead of adding a new process to learn.
A post-launch optimization window while the system settles into real use, then documentation so your team can operate it independently.
Yes. Scoping takes a little longer because I have to understand what's already there, but it's not a blocker.
One 20-minute call. I'll tell you what's worth building first, what it takes to ship it, and what it looks like running in production. No deck. No pitch.