A facilities management company handling 600+ work orders per month had dispatcher bottlenecks adding more than a business day to 28% of all orders. The Aizen Event revealed that 5 of 8 steps were fully automatable with deterministic rules: and that the highest-value step required only RAG, not expensive probabilistic AI.
8 steps spanning intake to closeout, 600+ work orders per month across 12 sites. Dispatcher bottlenecks and manual processes delayed ~28% of orders by >1 day. High billing error rate and parts-ordering inefficiency.
In the Aizen Event, we map each workflow step to an AI type: Deterministic (rules with predictable output), RAG (retrieval-grounded), Probabilistic (learned judgment), or Human Required. Classification drives build vs. defer decisions.
| Step | AI type | Recommendation | New state | Time saved | |
|---|---|---|---|---|---|
| 01 | Work order intake & classification Manual categorization and routing |
Deterministic | Categorize by work type (preventive/corrective/emergency), priority level, and asset class from work order fields. Route to appropriate queue automatically. Emergency orders page on-call technician. | ● Automated | 22 min |
| 02 | Asset history lookup Manual search of prior records |
RAG | Retrieve asset maintenance history, prior work orders, warranty status, and known failure patterns. Present to technician before dispatch as pre-visit brief on mobile app. | ● Augmented | 24 min |
| 03 | Technician assignment Manual supervisor matching |
Probabilistic | Match work order (type, location, required certification) to available technicians. Skills matrix + proximity routing + current workload scoring. Supervisor approves or selects alternatively. | ● Augmented | 14 min |
| 04 | Parts inventory check Manual warehouse searches |
Deterministic | API query to inventory system on work order creation. Check stock across all 3 warehouses, flag shortages, identify substitutes. Pre-populate parts list for technician. | ● Automated | 13 min |
| 05 | On-site diagnosis Field technician assessment |
Human Required | Field technician assessment. Cannot automate. AI provides structured pre-visit brief (asset history, known failure modes, recommended tools) via mobile app to accelerate on-site decision-making. | ○ Unchanged | — |
| 06 | Work documentation Manual form completion by technician |
Probabilistic | Technician answers structured prompts via mobile app (or dictates). AI generates formatted work order completion notes, tags fault codes, recommends follow-up actions. Tech reviews and submits. | ● Augmented | 32 min |
| 07 | Parts ordering Manual PO generation and submission |
Deterministic | Auto-generate PO from work order parts list. Route for approval if >$500. Send to preferred vendor automatically. Update inventory on confirmation. Zero manual PO work. | ● Automated | 18 min |
| 08 | Billing & closeout Manual invoice generation and codes |
Deterministic | Auto-generate invoice from work record (labor hours + parts). Apply correct billing codes by work type and client contract. Close work order in system. Error rate drops from 8% to <1%. | ● Automated | 27 min |
We plot each step by implementation complexity (X) against business impact (Y). Steps in the top-left are Quick Wins: start here. Top-right are Strategic Investments: build after wins are live. Bottom-right: skip entirely.
Rules-based. First build.
API call. Phase 1.
Template automation.
Fully rule-driven.
Probabilistic with mobile prompts. Phase 2.
Corpus indexing. Phase 2.
Field expert judgment. Not touched.
The redesigned workflow after the Aizen Event implementation. Every step with a new state shows the before design, what changed, and who now handles what.
Build cost, deployment timeline, and three-year return: based on 600+ monthly orders across 12 sites, blended field service labor rates, and measured time savings post-deployment.
This case study represents a composite of typical field service and facilities management engagements. Metrics are based on observed industry benchmarks and comparable implementations. All investment figures are illustrative ranges based on the Otonmi service tiers.
Tell us about the process your team is spending the most time on. We'll classify every step and tell you what's worth building: and what isn't.