AI Prospect Research

Generic Outreach Gets Ignored.
Informed Outreach Gets Replies.

Your sales team spends hours Googling companies, scrolling LinkedIn, and piecing together intel before a single email goes out. We build research systems that do all of that in minutes — and hand you a brief with the data points and outreach angle that actually gets a reply.

10min Research Per Prospect
90% Time Saved
10+ Data Points Per Company
0 Manual Research

Built for B2B service businesses. Not a data scraper.

Manual Research Is Your Most Expensive Bottleneck

Your sales rep spends 20-30 minutes researching each company before sending an email. At 10 prospects per day, that is 3-5 hours just on research — not selling.

Despite all that research, the outreach still sounds generic. "I noticed you are growing fast" is not personalization. It is a template pretending to be personal.

You have no system for tracking trigger events — funding rounds, leadership changes, job postings, expansion signals — that indicate a prospect is ready to buy right now.

By the time you finish researching a company, your competitor who has automated this process already sent a relevant, timely email three days ago.

Every hour your sales team spends on manual research is an hour they are not spending on calls, demos, and closing. At $50/hour fully loaded, that is $250/day in research costs for a single rep.

What Happens When
AI Does the Research for You

We build a research system that takes your prospect list and runs a multi-source analysis on each company. Websites, news, job postings, social profiles, funding data — all synthesized into a brief your team can act on immediately.

Automated Company Research

The system scans websites, press releases, social profiles, and public filings to build a complete picture of each company. Industry, size, tech stack, recent news, competitive positioning — all pulled together in one brief.

Decision-Maker Mapping

Who owns the budget? Who influences the decision? The system identifies key contacts at each company — titles, roles, LinkedIn profiles — so your outreach lands on the right desk, not a gatekeeper's inbox.

Trigger Event Detection

New funding round? Key hire? Office expansion? Job posting for a role you solve? The system flags these signals so your team reaches out at exactly the right moment — when the prospect has a need, not just a budget.

Personalized Outreach Briefs

Each company gets a 2-3 sentence outreach angle that connects their specific situation to your offer. Not "I see you are in the XYZ industry." Instead: "You just posted for a marketing manager, which usually means your current process is maxed out. Here is how we helped a similar company."

Your team gets a stack of research briefs with outreach angles ready to go. They spend their time sending smart messages and having conversations, not Googling company backgrounds.

Upload your list. Get back research briefs with data points, trigger events, and personalized outreach angles. Your team sends better emails in a fraction of the time.

Why AI Research Beats Manual Prospecting

90% Less Research Time what took 30 minutes per company now takes 3
10+ Data Points Per Company industry, size, tech stack, news, trigger events, contacts
3x More Outreach Volume same team, better messages, more conversations started

Questions & Answers

Public sources — company websites, press releases, job postings, LinkedIn profiles, funding databases, news articles, and SEC filings when applicable. We do not scrape anything behind a login or violate terms of service. The system aggregates what is already public and organizes it so your team does not have to.

It is as accurate as the public data available. Company websites, recent news, and job postings are highly reliable. The system flags confidence levels so your team knows which data points are rock-solid and which are inferred. You always review the brief before reaching out.

Yes. We can set up weekly re-scans of your prospect list to catch new signals — funding rounds, leadership changes, job postings, expansion announcements. When a trigger fires, your team gets alerted with an updated brief and a fresh outreach angle.

Most prospect research systems are live in 1-2 weeks. We define your ideal customer profile, configure the data sources and scoring criteria, and run a pilot batch on your real prospect list before going live.

Prospect research systems start at $3,497 for a batch processing setup. Ongoing monitoring with trigger alerts runs $4,997+. Flat fee, no monthly retainer. If your sales team spends 20 hours per week on research, even a 50% time reduction pays for itself in the first month.

Stop Googling Prospects One by One

Book a call and we will run a pilot research batch on your real prospect list so you can see what AI research looks like for your business.

Free consultation • No obligation

Free Resource

AI Automation: The Business Owner's Field Guide

10 key insights, core concepts, real workflow examples, and the right tools for automating your service business. Written for operators, not engineers.

  • What to automate first (and what not to)
  • How lead funnels actually work under the hood
  • The exact tool stack we use for clients
  • Mindset shifts that save you from overbuilding

No spam. We send useful stuff only.

Field Guide

AI Automation
for Business Operators

The technology to build a digital assembly line for your business already exists. This guide explains what it is, how it works, and what you actually need to know to use it.

The core idea: Define your inputs and outputs clearly. Let the machine handle everything in between. You don't need to understand every technical detail -- you need to understand your own operations.

What Business Owners Need to Know

Tap each to expand

The real value isn't saving clicks. It's offloading the mental load of evaluating options, routing information, and following up consistently. Every time you manually run a process, your brain loads every possible path before choosing one. That energy compounds into exhaustion. Automation does the evaluation for you -- because you already did the thinking when you built the system.
Automation doesn't fix a broken or undefined workflow. If you can't explain the steps manually, a system can't run them for you. Start by mapping what you already do. If you can walk through it step by step, with clear branches and decisions, it can be built and offloaded.
You don't need to understand what happens in between -- that's the machine's job. But you need to be specific: What data enters the system? What result do you want on the other end? Don't ask for 30 reports you won't read. AI can process everything; the constraint is knowing what you actually need.
A weekly email summarizing new leads in your CRM. A form submission that automatically adds a contact and sends a personalized follow-up. These aren't flashy, but they run every day without you. Small systems compound into large amounts of reclaimed time and mental energy over a year.
You can collect a few answers from a prospect, have AI research them, and automatically send a response tailored to their specific situation. What used to require a dedicated person can now run on its own. The result feels personal to the recipient -- because it is, based on what they told you.
If you're an expert in your field, you can turn that knowledge into an automated funnel. Prospects answer a few questions, AI matches their answers to your best content or recommendations, and you capture their information in the process. You're using AI to automate the selection -- not replace your expertise.
If something always happens the same way, use a workflow. If it requires interpreting context or choosing between options -- like triaging a new lead or responding to a varied inquiry -- that's where an AI agent adds value. Knowing which tool fits which task saves you from building the wrong thing.
CRMs, email platforms, forms, databases, research tools, image generators -- almost anything can be connected to anything else today. The tools exist. The hard part is knowing what you want connected, why, and being specific enough about it that a system can be built to do it reliably.
Build the system, find the gaps, fix them. The goal is a machine that runs cleanly -- not a perfect machine on day one. Every iteration makes it more reliable. Error handling is part of the build, not a sign that something went wrong. Expect to refine it.
Even when a task only takes one path, your brain loads every possible option before ruling them out. A 100-branch process might only ever use one branch -- but you consider 50 before choosing. Multiply that cognitive load across a full work day and it's significant. Automation doesn't just save time. It preserves focus for things that actually need your judgment.

Core Concepts

The building blocks, in plain language

Data Layer

API

A precise, predefined connection between two software systems. You specify exactly what call you're making -- get this data, post this record. Because they're explicit, they're reliable and predictable.

Think of it as: a specific form you fill out to make a specific request. Same form every time, same result every time.

Intelligence Layer

MCP

Model Context Protocol -- what AI agents use to interact with connected tools natively. Instead of one specific call, it opens a range of possible actions. The agent decides which action fits the situation.

Think of it as: giving an employee full access to a system and trusting them to figure out the right action, rather than scripting every click.

Trigger Layer

Webhook

A push notification between platforms -- when something happens somewhere, data is immediately sent somewhere else as a JSON payload. The entry point for most automations.

Think of it as: a form submission that automatically fires a signal to your systems the moment someone hits submit -- no manual checking required.

Process Layer

Workflow

A defined, repeatable sequence. Trigger, then Action, then Action, then Output. Same path every time. Best for structured, predictable processes that don't require interpretation.

Think of it as: a checklist that runs itself. Every step is predetermined. No judgment needed.

Intelligence Layer

AI Agent

An LLM with access to tools and the ability to make decisions. It can interpret varied inputs, choose the right action from its available options, and execute across connected platforms.

Think of it as: a smart employee who has access to all your systems and can figure out what to do based on what they're given -- without needing step-by-step instructions every time.

Language Layer

LLM

Large Language Model -- the AI brain (like Claude, GPT). Exceptional at processing, interpreting, formatting, and generating text. The reasoning engine behind agents and many workflow steps.

Think of it as: the smartest intern you've ever had -- can process any information, draft anything, research anything, but needs direction on what matters to you.

How It Actually Works

A real example: form submission to personalized outreach

01
Someone fills out your form

A prospect submits a contact or inquiry form on your site. This is the trigger -- the event that starts the whole chain.

02
Webhook fires to your automation platform

The form submission immediately sends a data payload -- name, email, answers -- to a tool like Gumloop or Make. This is your entry point.

JSON payload received: {name: "Sarah Chen", email: "sarah@...", interest: "accounting automation"}
03
Data is parsed and routes split

The platform extracts the relevant fields. From here, you can run parallel tracks -- one route adds them to your CRM, another begins the outreach flow.

04
Option A: Simple personalized email

Name and email go to an email tool (Resend, Gmail). A template pulls in their first name and the specific interest they mentioned. Sent within seconds of their submission.

"Hi Sarah, thanks for your interest in accounting automation. Here's what we do for firms like yours..."
05
Option B: AI-researched, fully tailored outreach

Name, email, and company get passed to an AI agent. Using tools like Perplexity or Exa via MCP, it researches them, then generates a response specific to their situation before sending.

Agent finds Sarah's firm handles 40+ clients, specializes in e-commerce. Email references this specifically.
06
You receive a summary, not the work

A simple report lands in your inbox. New lead added. Outreach sent. Anything that needs your judgment is flagged. Everything else ran without you.

The Tool Stack

What connects to what

Workflow BuilderGumloop

Visual workflow builder and agent platform. Good for connecting systems without deep coding knowledge.

Database / CRMAirtable

Flexible database that works as a CRM. Easy to connect to automations via API.

Email SendingResend

Programmatic email sending via API. Clean, reliable for automated outreach and notifications.

Research ToolPerplexity / Exa

AI-powered search and research. Agents use these via MCP to research leads or gather market data.

Web ScrapingFirecrawl

Scrapes websites at scale. Useful for competitive research, content gap analysis, SEO data.

AI BuilderClaude Code

LLM-powered coding tool for building custom internal software. Good for one-off tools tailored to your exact process.

Landing PagesFramer

Fast, design-quality landing page builder. Quick to spin up funnels and lead capture pages.

Image GenerationGoogle ImageFX

AI image generation for ad creatives, landing page visuals, and content assets.

WorkspaceNotion

Documentation and knowledge base. Can serve as a lightweight internal tool or client-facing resource.

The Knowledge Funnel

Turning expertise into qualified leads -- click each stage

You have expertise. Prospects want specific information they can't easily find elsewhere. The knowledge funnel connects these two things -- and captures what you need to convert them in the process.

Why they do it: They're getting something specific in return. Not a generic newsletter -- information tailored to their answers. The specificity of the promise is what gets them to fill it out.
You've already done the hard work: building the knowledge base from your expertise, defining what good answers look like. The agent just does the matching -- fast and at scale. It's not replacing your expertise. It's automating the selection.
The personalization isn't superficial. It's based on what they actually told you. People know when they're getting something generic. When the response reflects their specific situation, they notice -- and they're more likely to take the next step.
Their answers tell you what matters to them, what stage they're at, and how to position your offer. Your follow-up can reference this directly. Instead of a cold pitch, you're continuing a conversation they already started.

The Right Mindset

How to think about this before building anything

"Ford took every process of manufacturing a car and systematized it so it ran on its own. He couldn't do that with his accounting. Now you can -- digitally, for the back end of your entire business."
Define your assembly line before you build it. Know every step of your process. The clearer your manual process, the better your automated one will be. Vague in, vague out.
Complexity is fine. Ambiguity is not. Your process can have 100 branches. That's okay. What isn't okay is not knowing which branches exist. A complex but clearly defined process can be automated. An undefined one can't.
Start with what you already do manually. Don't try to automate something you haven't done yet. Pick one process you run regularly, map it out, and build that. Get one system running cleanly before adding another.
Build in error handling from the start. Assume things will break. Add notifications when they do. An automation that fails silently is worse than no automation. Know when your system needs your attention.
The goal is to stop thinking about things that should think for themselves. Every time you save a future version of yourself from having to load a process into working memory, you've created real leverage. That's what this is for.