AI cost control
Make cost owners, budgets, alerts and forecasts visible for AI and cloud workloads.
Secure Azure OpenAI
AI pilots expand, cloud spend spreads and no one consistently owns guardrails, tags, budgets, alerts and scale decisions.
Tirion connects Azure/OpenAI architecture, governance and FinOps logic so AI initiatives do not scale faster than cost and security control.

Concrete use cases
Make cost owners, budgets, alerts and forecasts visible for AI and cloud workloads.
Clarify data classes, network, identity, logging and deployment boundaries before pilot scale.
Finance, IT and owners share one review rhythm for cost, risk and exceptions.
Architecture solution
The architecture shows where Tirion separates sources, orchestration, AI/agent, human review, target systems and monitoring.
Azure, OpenAI/Azure OpenAI, Cost Management, logs, tags, budgets
Guardrails, landing-zone assumptions, policies, FinOps review
Cost analysis, risk notes, owner tasks, governance briefs
Budget approval, risk review, platform owner, security check
Azure, dashboards, tickets, finance reviews, executive memos
Spend, forecast, tag coverage, policy exceptions, AI workload risk
Tirion path
Fits when Azure, OpenAI and cloud governance need to become controllable before scale.
Cloud ConsultingProof
SituationSeveral sites and teams wanted to expand AI and cloud workloads.
InterventionTirion clarified guardrails, operating model and cost ownership before further scale.
Observed resultMore workloads could be evaluated against shared standards instead of isolated decisions.
Measurement points
Other use cases
Knowledge, routines and decisions live across Teams, SharePoint, Outlook, files and people. AI should help, but access, source quality and operation cannot be lost.
Governed AI AgentsGoverned AI Agents & Permission ArchitectureAgents are expected to use tools, prepare data or trigger workflows. That is where prompt rules stop being enough.
Revenue Ops AIRevenue Ops AI AutomationSales and account teams lose time in research, routing, follow-up and proposal preparation. Automation cannot lose tone, context or control.
Start now
The score classifies whether this path is ready or whether governance, owner, data reality and target state need to be clarified first.