Matt and I opened a hard look at SGA's entire data architecture: how we aggregate our disparate sources into one data warehouse, build a semantic layer on top, and activate that layer with AI inside a compliant, PHI-aware framework. This was a scoping conversation. Matt cannot give an exact recommendation until he understands our use cases, user journeys, and data sources, so the immediate next step is ours: write a requirements document. That document is the critical path.
I framed the mandate as the full chain, not a single tool. We need to design and stand up:
Sitting over all of it, we need an enterprise AI strategy that answers four questions: how we leverage our data to create value, how we protect it inside a compliant methodology, where we build the capability and how we expose access to it, and how we handle PHI specifically given the healthcare context.
Matt was direct that the right answer depends on inputs he does not have yet. Without a full picture of our use cases, user journeys, and source systems, any recommendation is a guess. He would rather scope it correctly than name a stack on day one.
He broke the design space into two ends of a spectrum:
On where AI pays off first, Matt's view was practical: build discrete agents that save time and generate insights. Narrow, purpose-built agents are the quickest route to value while the larger platform takes shape, rather than waiting for the full architecture before anyone benefits.
Nothing is locked. What we aligned on:
These are the inputs Matt needs from us. They also form the spine of the requirements document.
| # | Action | Owner | Status |
|---|---|---|---|
| 1 | Write the requirements document covering every data source plus the specific asks, inputs, and guardrails. This is what Matt explicitly asked for and what unblocks his recommendation. | Dakota + team | Critical path |
| 2 | Catalog every data source across the portfolio. | Dakota | To do |
| 3 | Document use cases and user journeys: decision, altitude, and frequency for each consumer. | Dakota | To do |
| 4 | Define the compliance and PHI guardrails: protection, location, access model, and PHI segregation. | Dakota + compliance | To do |
| 5 | Identify candidate quick-win agents to ship in parallel with the platform build. | Dakota + Matt | To do |
| 6 | Reconvene with Matt on the requirements doc; he returns with a concrete recommendation. | Dakota | Pending #1 |
We are not starting from zero. The Marketing Data Warehouse and Reporting/BI work is already live: a Postgres operational store with a ClickHouse analytics layer, Temporal for orchestration, and Power BI for executive reporting, with Google Ads as the first source feeding real spend data into the intranet.
Matt's mandate is the enterprise generalization of that effort: extend past marketing to every source, formalize the semantic layer, and add the AI activation and PHI/compliance framework the marketing build did not need to solve. The requirements document should fold the existing stack and its settled decisions in as the starting point, not relitigate them.