Mid-2022, we'd cracked the code on giving data a voice. Our algorithms could spot the vampires, identify the canaries, and reveal what your existing customers were really worth. We'd moved beyond dashboards to deliver actual insights that companies could understand.
But we'd overlooked one critical fact: not everyone's a back-of-the-baseball-card nerd.
We were handing over magnifying glasses and expecting businesses to become Sherlock Holmes. Our platform would say: "This customer's buying patterns changed 47% in Q3." And leaders would stare back, waiting for the "so what?"
Picture this scene across dozens of our early client meetings:
"Amazing work! Now, what do I tell my team to do with this information?"
We'd find:
Data was talking. Insights were clear. But the bridge from "what we discovered" to "what you do Tuesday morning" was still our clients' burden to build.
Our answer started with two focused algorithms:
Instead of generic "high-risk customer" reports, these agents delivered action-ready lists:
We'd transformed "here's what's happening" into "here's whom to call." Progress—but we were still assembling a to-do list instead of solving the real problem.
By late 2022, something was stirring in the broader tech world. We could sense it in our client conversations—the way they started asking about AI, the questions about ChatGPT, the raised expectations.
The revolution was coming, and it would fundamentally change how businesses expected to interact with their data...
What happened next forced us to completely rethink not just how we deliver insights, but the very nature of what an insight should be.