Introducing Full Stack AI Cost Governance

AI spending is growing fast, but cost visibility hasn’t kept up. Most teams can’t clearly answer what they spend on AI, which teams drive it, or what it costs to support a feature or customer. Full Stack AI Cost Governance changes that.

Full stack AI cost governance diagram showing agentic costs layered on top of GenAI models, SaaS and data platforms, and cloud and GPU infrastructure with unified visibility and cost attribution

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AI workloads complicate data center cost governance by spanning multiple environments, using heterogeneous compute, and generating costs that cannot be accurately allocated from infrastructure-level signals alone.

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Mavvrik has signed a distribution agreement with Ingram Micro that allows channel partners to offer cost governance across cloud, AI, SaaS, Kubernetes, and on-premises environments. The announcement is most relevant for MSPs and resellers that need multi-tenant FinOps delivery, Azure Tier 2 billing visibility, and GPU chargeback capabilities for customer environments.

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Universities are investing heavily in shared GPU clusters for AI research, but many still lack clear cost visibility. Transparent GPU chargeback enables research computing teams to track usage, allocate costs across labs and grants, and improve financial accountability across complex infrastructure environments.

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