AI Prioritization & Portfolio
Random Acts of AI, No Prioritization.
The Problem
The manufacturer had scattered AI experiments with no sequencing logic — automating low-value tasks while
high-impact bottlenecks went untouched. Spend was rising without measurable EBITA impact, the pattern
McKinsey found in 80%+ of adopters. Leadership couldn’t see which initiatives to fund, kill, or sequence first.
The Solution
An evidence-based prioritization engine scoring every candidate by value, feasibility, risk, and readiness, mapped
to staged maturity increments. Prerequisites (data, controls, adoption) were sequenced ahead of
higher-autonomy work, converting scattered experiments into a costed, dependency-aware roadmap tied to
operational KPIs.
Manufacturing — mid-market (~$500M revenue)
~$4.2M
/yr
~$2.4M
Ops Labor & Rework Reduced
~$1.2M
Throughput & Quality Gains
~$600K
Random-AI spend halted
8%
%
no EBITA impactL1→L4
Staged Plan100
%
KPI-linked1
Roadmap