How to Track AI Costs in 2026: From Usage Logs to Cost-to-Serve

AI cost tracking in 2026 requires more than monitoring token spend or reviewing provider invoices. This guide explains how finance, FinOps, and engineering teams can track AI costs across workflows, customers, and environments using metrics like cost per inference, cost per workflow, and cost-to-serve.

person typing on computer with cost tracking dashboard on screen

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