Where operators learn the layer above orchestration.
Everything OpsATC.AI publishes for operators going deep on AI in operations: our own field reports, the AI-literacy materials we point every design partner at, the integration catalog, and the Trust Center for security teams. Nothing is gated. Read in the open.
Two right decisions can still cost you a customer.
Two buyers at the same contract manufacturer. The same customer build. Different supplier portfolios — and no signal between them. One $14,000 expedite that solves nothing. The story explains why orchestration has to read across portfolios, not just inside them.
It wasn't my portfolio.
— Both buyers, asked separately, after the variance landed.
Monthly transmissions from the design-partner stage.
One transmission a month. Plain text. Three things: a field report from discovery conversations, a pattern we are seeing across the operators we're talking to, and one thing we built into the product that month. No tracking pixels. No marketing automation.
What we recommend operators read.
Curated. Not gated. Not affiliated. We cover the cost of operator time spent reading these as part of our design-partner enablement budget.
Anthropic AI Fluency framework
The four D's — Delegation, Description, Discernment, Diligence — that we adapt for operations contexts. Short, well-produced, and accessible to non-engineers. Every operator who interacts with The Captain should take this.
Visit anthropic.com ↗The Neuron — daily AI newsletter
Plain-English summaries of what shipped, what works, what doesn't. The lowest-effort way to stay current on AI without falling into the hype-cycle. We pay for the time operators spend reading it.
Visit theneurondaily.com ↗Training & Enablement — the four D's, adapted
How OpsATC.AI builds AI fluency into every design-partner engagement. Persona-specific tracks, hands-on workshops with your operational data, ongoing office hours, and a literacy assessment in the Admin Portal so leadership can see fluency progress across the team.
Read the approach →For operators going deep.
Direct routes into the parts of the platform documentation operators ask for most: the integration catalog, the architecture, the process intelligence engine, and how OpsATC.AI compares to alternative categories.
MCP-Native Integrations
All 141 of our Tier-1 connectors are production-built and contract-tested, within an 839-surface catalog. Each is verified in CI to perform a real data read — including SAP S/4HANA, SAP ECC, Oracle Fusion ERP, Blue Yonder WMS, and Rockwell FactoryTalk — and reads run against synthetic replay fixtures, with live-sandbox validation as per-tenant Day-1 onboarding work. The remaining ~700 surfaces are scaffolded across ERP, S&OP, WMS, MES, PLM, Logistics, ITSM, CRM, Procurement, Data, HR, EPM, QMS, EDI, plus 8 generic adapters.
View the catalog →Five-layer architecture
UX portals → Agent layer (The Captain) → Process Intelligence Engine → Operational Knowledge Graph → MCP Connector Fabric. How the platform is built, top to bottom.
See the architecture →Process Intelligence Engine
The closed-loop cycle that makes orchestration compound: Capture → Identify → Quantify → Track → Verify. The layer above orchestration that turns "AI assistant" into a system that compounds quarter over quarter.
Read the deep-dive →vs. Alternatives
13-row side-by-side against ERP-with-AI, supply-chain platforms, logistics control towers, AI ops platforms, and generic AI assistants. We didn't grade ourselves green on every row — every other category does part of the job; none does the whole job.
View the comparison →Trust Center
Certifications, tenant isolation, audit trail, read-only doctrine, data & workforce, residency, and incident response. For your security team.
Visit the Trust Center →The OpsATC.AI Approach
The principle that runs through everything (augment, never replace). Six architectural commitments. The training framework. Why the second decade of enterprise AI has to be built on trust, not hype.
Read the approach →The seven objections we hear most.
Across the discovery conversations we've had, seven sentences keep coming back — six mapped to buyer archetype, one to the stack question every Claude-aware buyer asks. Find your objection. Click to read the architectural answer. Request the full brief or jump straight to the architecture page that backs it.
Distribution & mid-market
"Our data lake isn't ready, so we can't engage yet."
Architectural answer: live ERP/WMS/CRM read on Day 1; your historical data stays where it lives.
No data lake required
The lake isn't on the critical path. We connect to your live ERP, WMS, and CRM on Day 1 — your historical data stays where it already lives. Most of our prospects' previous AI projects took longer than our entire onboarding window.
Contract manufacturers
"Our ERP vendor's AI add-on already does this."
Architectural answer: architected for the grid (multiple customers' ERPs + your MES + WMS + procurement), not the column.
No single-ERP lockin
An ERP-vendor add-on sees the column it lives in. A CM's operating reality is the grid — multiple customers' ERPs, plus your MES, your WMS, your procurement. We're architected for the grid, not the column.
Storage & data-fabric OEMs
"Our ops volume is too small to justify a control tower."
Architectural answer: morning triage across Datadog, PagerDuty, Jira, GitHub, Salesforce Service — smaller team, higher per-engineer leverage.
Not S&OP — exception triage
This isn't S&OP. It's a morning triage of incidents across Datadog, PagerDuty, Jira, GitHub, and Salesforce Service for a small SRE/CSM team. Smaller team, higher per-engineer leverage.
Hybrid distributors + light assembly
"We don't fit either bucket cleanly."
Architectural answer: SalesOrder, WorkOrder, InventoryLevel as first-class objects regardless of lane. One tenant, one canonical model.
Both sides native
SalesOrder, WorkOrder, and InventoryLevel as first-class objects regardless of lane. Two lane-native dashboards plus an exec roll-up — one tenant, one canonical model.
Buyers already on Claude Enterprise
"We already pay for Claude Enterprise. Why pay for both?"
Architectural answer: same inference layer, different operational surface — adapter library, canonical model, write-gates registry, audit pipeline.
Complementary, not redundant
Same inference layer, different operational surface. Claude Enterprise is your team's general-purpose AI; OpsATC.AI is your operations control tower — adapter library, canonical model, role-based dashboards, write-gates registry, audit pipeline. Same pattern as Office plus Salesforce or AWS plus Snowflake.
Pure-play logistics carriers
"We already run on a TMS. What does another platform do?"
Architectural answer: orchestrates above the TMS, the carrier event feed, and the customer's ERP — surfaces SLA penalty before it becomes a chargeback.
Above the TMS, not replacing it
A TMS sees dispatch and freight events; it doesn't read your customer's ERP to know whether a late load kills a build start. OpsATC.AI orchestrates above the TMS, the carrier event feed, and the customer's ERP — surfacing the SLA penalty before it becomes a chargeback, across truck, rail, ocean, air, and parcel.
Hub providers & FSL operators
"Our OEM contracts forbid shared infrastructure between accounts."
Architectural answer: Postgres row-level security + tenant-bound credentials per request — zero cross-tenant data path by design.
Tenant isolation, first principle
Tenant isolation is enforced in the database via row-level security and in The Captain via tenant-bound credentials per request. Each OEM contract sits in its own partition with no cross-tenant data path — by design, not by configuration. Procurement reads the architecture, the audit trail, and the security checklist on trust.html — not the marketing.
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