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Case Study  ·  Healthtech  ·  AI Enablement

Most companies bolt AI onto broken processes.
This client built the ground first.

Company Size 250 employees
Stage Series B
Industry Healthtech
Focus AI Enablement
0

Product Bottlenecks in Sales

Sales and Service Delivery could search, configure, and price features without looping in Product for every deal.

101 HR

Feature-to-Decision Cycle

Cut from a 10-hour manual process to a 1-hour, self-service decision the business could run on its own.

1

Single Source of Truth

The catalog doubled as a queryable input for new feature ideas as customer needs evolved — not just a backward-looking inventory.

There was no organized view of the levers the business already had.

Stepping into the interim Head of Product role, the first problem was visibility: there was no organized view of the product and technology features already available to drive the business's most important outcomes. Features existed across the tech stack, but no one could see them as a coherent set of levers — what was available, what outcome each one drove, or what it would take to turn it on for a given client.

The second problem followed close behind. Even once those features were identified, there was no way for the business to act on that knowledge — no system for understanding which features applied to which opportunity, or for using that feature data to build credible business cases and RFPs. Staffing and pricing decisions were being made without a reliable link back to the product capabilities driving them.

The work addressed both problems in sequence — first making the features visible, then making them usable.

The work addressed both problems in sequence — first making the features visible, then making them usable for decisions that mattered.


A 10-hour scramble became a 1-hour, self-service decision.

What had been a 10-hour scramble became a 1-hour decision — but the bigger shift was structural. Product was no longer a bottleneck in the sales process. Sales and Service Delivery could search, configure, and price features themselves, freeing Product to focus on building rather than answering one-off feature questions for every deal. That self-service shift also meant more features actually got deployed for clients, because the friction of "ask Product, wait, repeat" was gone.

The catalog also became something more than a record of what already existed. As the team learned about new customer problems, the same structure gave Product a scalable place to warehouse and query emerging feature ideas — turning the tool into a forward-looking input for the roadmap, not just a backward-looking inventory.


AI readiness came from better product operations, not model hype.

This engagement succeeded because it solved for decision quality first. Teams got shared definitions, consistent metadata, and role-specific access to the same underlying feature logic. That moved the organization from ad hoc interpretation to aligned execution across Product, Sales, and Service Delivery.

By translating feature data into staffing and pricing implications, the system made operational tradeoffs visible before commitments were made. It reduced downstream rework, improved proposal confidence, and gave leadership clearer signal on where automation would produce measurable business impact.

That foundation is what makes AI adoption durable: structured operating data, explicit assumptions, and cross-functional decision pathways teams can run repeatedly.

"Katie built an amazing AI application to help us complete a structured and detailed analysis of potential automation efficiencies in preparation for a RFP submission for one of our healthcare clients. The level of detail she created enabled me and the operations team to set clear and timebound operating goals and guide our tech strategy for delivering on our goals."

VP, Service Delivery — Series B Healthcare Tech Startup

Product Operations FAQ

What was the primary bottleneck?

The business lacked a usable feature decision layer. Product knowledge existed, but teams could not reliably map features to client outcomes, pricing assumptions, or staffing models.

How did this support AI strategy?

It created structured, queryable feature data and a repeatable decision workflow. That infrastructure is a prerequisite for applying AI in a way that is operationally credible.

Who benefits most from this model?

Growth-stage teams managing complex solution catalogs, rapid GTM cycles, and high coordination cost between Product, Sales, and Delivery functions.