Before you automate — Mesa Point defines who owns every decision your AI systems make.
AI recommends a price, approves an exception, routes a customer. When it gets it wrong, who's accountable? This is the question most organizations are racing to answer.
Some automated decisions commit capital, change contracts, or affect compliance. Clear control boundaries protect the organization from material exposure before a system ever runs.
Most high-stakes decisions cross pricing, legal, operations, and finance before they resolve. Mapping follows the decision wherever it leads — so ownership is clear at every handoff.
We follow decisions across departments: pricing, onboarding, procurement, wherever they lead. Ownership is mapped to natural boundaries, not org charts.
For each decision: who owns it, what limits apply, what triggers escalation, and what happens when something goes wrong. Ownership becomes explicit and documented.
Your executive team gets a summary they can present to the board. Your engineering team gets specs they can build from. Both come from the same source of truth.
As AI takes on more of your operations, some decisions still require human judgment — relationship nuance, regulatory interpretation, strategic tradeoffs. We identify where human oversight adds the most value and build that into the framework explicitly.
The goal is AI that performs well because its boundaries are clear, not because they're assumed.
Mesa Point defines ownership of all critical decisions across the enterprise — so every capability you deploy, today and going forward, increases performance while accountability stays clear.
In one week, we map your decision architecture, identify where automation creates value, and deliver a scoping report with a fixed-fee proposal. The $5K is credited toward any full engagement.
A $28M transit company expanding to a seventh location discovered six hubs operating under six different decision models. No ownership had been defined for eleven core operational decision categories. Escalations had quietly consumed nearly 40% of the COO's week. We mapped authority across the network, assigned ownership, and clarified escalation logic before the seventh hub opened.
A regional retail chain with 22 locations had a 40-point performance gap between its best and worst stores. Technology investments hadn't closed it. The root issue was undefined authority: store managers and corporate leadership had conflicting assumptions about who owned fourteen decision categories affecting the customer experience. We mapped ownership across the network and standardized the decisions that drove variance.
A regional advisory firm managing $40M in assets across twelve practice areas faced tightening regulatory scrutiny. Auditors were flagging inconsistent documentation — not misconduct, but variance. Twelve practice areas had developed twelve different decision cultures. We mapped authority across all twelve, defined ownership for daily decisions without clear assignment, and established the documentation standard required for a defensible audit trail.