How a Fintech’s Fact Checker Toolmate slashed CFP review time

The Fact Checker GPT that Hillary built for our marketing team has improved efficiency in our content review process and provided impactful learnings for how we use LLMs in our day-to-day marketing efforts. Would highly recommend Hillary and her team.

A Marketing Lead at a Fintech Company

THE CHALLENGE

A US-based fintech publishes financial education content for goal-oriented investors — tax strategy, retirement planning, investment fundamentals. Every post requires CFP sign-off before it goes live. For them, accuracy isn't a nice-to-have. It's the product.

The problem wasn't the standard. It was the process. CFP reviewers were doing the same repetitive work on every single draft: hunting for outdated contribution limits, chasing missing citations, flagging disclaimer inconsistencies. There was no standard format, no shared source hierarchy, no way to know if a post was ready before it hit the reviewer's desk. Every article started from scratch.

The publishing calendar paid for it. CFP capacity is limited and expensive. When reviews ran long, content backed up. When content backed up, the team scrambled. The fintech didn't need more CFPs. They needed a system that made the CFP's job easier — before they ever opened the doc.

We built from the inside out — starting with how a CFP actually reviews, not with what a generic AI can do. The result is a Fact Checker Toolmate that functions as a structured first-pass reviewer: it flags, formats, and sources. The human decides.

Step 1: Workflow Discovery

We mapped the fintech's existing review process end-to-end: what CFP reviewers always checked, where writers consistently missed the mark, and which claim types carried the most compliance risk. From that, we defined the toolmate's scope — tax limits, contribution caps, APYs, deadlines, statutory definitions — and established a source hierarchy with clear tie-break rules for conflicting data.

Step 2: Context Engineering

We translated the CFP review process into a system the toolmate could execute reliably. That meant custom GPT instructions built around the actual workflow, a compliance disclaimer mapping guide (if X claim type → include Y disclaimer), and a knowledge base trained on the fintech's brand book, CFP playbook, and audience personas. So flagged suggestions aren't just accurate — they're on-brand.

Step 3: Structured Output + Pilot

We designed the output format for CFP speed: claim → recommended revision → source link → as-of date → footnote index → bibliography rollup, with a link count summary. Then we ran a 2-week pilot on real posts to validate accuracy on high-risk claims, citation completeness, and readability of suggested edits. After revisions and hand-off, the toolmate slotted directly into the existing pipeline — activated after draft, before final CFP review.

Step 1: Brand Diagnostic

We started by understanding what reusable brand assets Growth Friday actually had, and what was missing. Through discovery interviews, competitive analysis, market research, and a content audit, we mapped content gaps, strategic opportunities, and existing brand assets that could be repurposed or needed to be rebuilt from scratch.
This phase gave us a complete picture of where the brand stood and what needed to change to support the new positioning.

Step 2: Context Engineering

Next, we translated everything we learned into a system both humans and AI could use reliably. We codified Growth Friday’s new brand voice, audience insights, and best practices into reference documents, style rules, example libraries, and reusable templates.
This became the brand’s single source of truth for copywriting.

Step 3: Custom Brandwriter Toolmate

Only after building that foundation did we configure the toolmate. We drafted custom instructions that tied the AI directly to Growth Friday’s knowledge base—so every output reflected their actual voice, not a generic approximation.
The toolmate became a tool the team could trust because it was trained on their rules, not ours.

The marketing lead at this fintech now has a repeatable compliance review layer that doesn't depend on any one person's memory, availability, or patience. The system runs the same check every time. And because it was built from the CFP's actual process, reviewers trusted it immediately — it didn't add a step, it cleared the runway for theirs.
What changed qualitatively
This was the first AI workflow that improved quality and speed at the same time. Not faster drafts that required heavy rewriting — faster drafts that were genuinely cleaner. Writers got clearer guidance on what needed sourcing. Reviewers stopped starting from zero. The back-and-forth got shorter because everyone was working from the same rules.
What changed operationally
With the Fact Checker Toolmate, the fintech's content team moved from a reactive compliance check to a proactive one. Citation consistency improved across the board. Disclaimer application became standardized. And CFP review time dropped almost in half — freeing up reviewer capacity for judgment calls, not grunt work.

Ready to take the grunt work out of

compliance review?

The fix isn't a better prompt. It's a system: a structured first-pass reviewer trained on your actual standards, so your experts spend time on decisions — not deduplication.