- Moative
- Posts
- Enterprise Prime Time - The Brass Tacks
Enterprise Prime Time - The Brass Tacks
AI is compounding – inside workflows that look boring from the outside and feel indispensable from the inside.

For the past two years, the AI conversation has sounded like a stadium: deafening hype, highlight-reel demos, and post-game threads arguing over who “won” the week. Meanwhile, inside real organizations, something less theatrical and more consequential is happening. AI is fragmenting, accelerating, and professionalizing – fast. It’s not one market; it’s a federation of sub-markets with different economics, rhythms, and rules. Treat it like a single sport and you’ll pick the wrong playbook.
This essay is a field note for operators who have to choose where value will actually accrue – and how to avoid the wipeouts that come with moving too slow or too loosely. The stakes are higher than in the last software wave; the cycles are shorter; and the penalty for zero-sum thinking is steeper. You’re either on the field with a clear thesis and disciplined execution, or you’re cheering from the stands while other people learn the routes.
What’s actually happening (and why it matters)
Think of the current cycle as a three-act play that keeps looping faster than executives expect:
Intelligence deflates. Competition and scale push model capability up and unit costs down. Inference feels “nearly free” compared to last year.
Workflows consolidate around jobs-to-be-done. Teams stop buying “vibes” and start buying outcomes – ticket deflection, cycle-time reduction, yield uplift, first-call resolution, code-throughput, regulatory completeness.
Moats revert to software fundamentals. After the initial “magic” brings users in, retention depends on the unglamorous stuff: integrations, data gravity, permissions, UX fit, extensibility, brand, and customer success.
Where value is accruing
The bulk of near-term enterprise value is landing in the app layer. Apps that own the last mile – context, permissions, integrations, change-management – turn cheap intelligence into valuable outcomes. Products that make line-of-business leaders look good this quarter and next year – because the metric moves and keeps moving. In some categories we’re already seeing 30–50% productivity lifts and materially better customer outcomes; in a few narrow contexts, even more. Track the unit of progress the customer cares about (cases deflected, hours saved per claim, yield variance reduced, energy use per ton, etc.). If you can improve it reliably, you own budget.
Enterprise value creation checklist
When we evaluate whether an AI product can keep value after the first pop, we run a simple, ruthless test:
Workflow lock: Does the product become the place where work happens, or is it an occasional sidecar?
Integration drag: How many hard integrations would I rip out to switch? The more integrations the product orchestrates, the stickier it is.
Data gravity: Does usage generate proprietary or curated data that improves outcomes for that customer over time?
Governance fit: Are role-based access, audit trails, redaction, and policy enforcement first-class? Enterprises don’t buy toys twice.
Unit economics under stress: Does the product still make sense when usage triples and model prices fluctuate?
Change-management muscle: Can the vendor (or your team) actually land the process changes that make the metric move?
If you can answer “yes” to four or more, you have a winning AI initiative inside your enterprise.
Moative’s lens: “Go fast, then go slow”
At Moative, we work in “boring” places where value is measurable and skepticism is healthy – paper mills, utilities, energy, permitting, life sciences R&D. Our bias is simple: treat AI as a decision twin of the expert. That means we care less about dazzling demos and more about sustained improvements in uptime, yield, cycle time, quality drift, and service metrics.
A few principles we apply in the field:
Start with a stubborn metric. Pick one the operator or CFO already watches. For mills, it might be steam-to-ton or recovery-boiler stability; for support, first-contact resolution; for R&D, cycle-time from hypothesis to decision.
Instrument the work, not just the model. Context windows and prompts are table stakes; the hard part is data admissibility, lineage, and observability. If you can’t explain why a decision changed, you don’t own the decision.
Exploit cheap intelligence; invest in expensive integration. Let model competition do its job on cost and capability. Spend your capital on the unsexy work: controls, safety interlocks, and human-in-the-loop where stakes demand it.
Design for rollback. Every “go fast” needs a graceful “go slow.” We build with kill-switches, shadow modes, A/B harnesses, and clear reversion paths. Trust compounds when failure modes are boring.
Price on outcomes when you’ve earned it. Early on, align to effort and risk; as variance tightens and value is demonstrable, move toward shared-savings or gain-share where appropriate. Incentives matter.
Ship the change-management kit. The limiting reagent is often training, not tokens. Give the frontline a path to win: playbooks, thresholds, escalation, and radio-check rituals that fit how the plant, contact center, or lab already works.
This approach is slower than a growth-hack and faster than a three-year transformation. We call it “go fast, then go slow”: sprint to a controlled, auditable outcome; then harden, document, and scale.
Recommendations for the CIO/COO/P&L owner
Ask, “Which metric moves, by how much, and what breaks when it does?”. Demand a rollback plan before you sign. Favor products that make your operators quietly dangerous – fewer clicks, clearer thresholds, faster root-cause. Separate heat from momentum: Is it a demo you can’t stop watching, or a process you can’t imagine reverting?
What this means for the next 24 months
Expect more of everything – winners, wipeouts, and weirdness.
More fragmentation: New sub-markets will appear where unit economics favor specialization.
More consolidation: Tooling and platforms that shorten “demo → production” will swallow adjacent features.
More pressure on proof: Buyers will insist on concrete ROI, not sentiment. Vendors who can speak in the operator’s metrics will win.
More brand gravity: A few names will keep capturing mindshare; some will deserve it; others won’t. Don’t outsource your judgment to the timeline.
Through it all, the quiet story remains the most important: AI is compounding in production – inside workflows that look boring from the outside and feel indispensable from the inside.
If you’re placing bets, place them where a stubborn metric lives. If you’re building, build the boring parts first. Intelligence will keep getting cheaper; trust will not. The winners won’t be the loudest demos but the systems that teams refuse to turn off.
Enjoy your Sunday!
Pre-sales and marketing is his badge; Sathish Rangarajan’s work also involves analysis, curation of insights, and shaping practical narratives, at Moative.