An AWS-native metering layer that tracks token usage per AI agent in real time — giving engineering teams the granular cost visibility needed to scale from 1 to 50+ agents without losing financial control.
As organizations scale AI agent fleets, the question shifts from "does it work?" to "what does it cost?" Without per-agent metering, cloud bills become opaque — and scaling becomes a financial gamble.
Organizations running multi-agent AI systems lack visibility into which specific agents or tasks are consuming the most tokens. Token costs aggregate into a single line item — making it impossible to identify waste, optimize performance, or prove ROI to stakeholders.
AgentLedger intercepts every agent invocation through API Gateway, records token usage per agent ID in DynamoDB, and emits real-time cost metrics to CloudWatch — giving teams a live financial dashboard for their entire AI fleet with zero code changes to existing agents.
A fully serverless metering pipeline built on AWS-native services. Every agent call flows through the ledger — tracked, stored, and surfaced as actionable cost intelligence.
Every component is serverless, managed, and scales to zero — meaning the metering layer itself costs nothing at idle and pennies at scale.
AgentLedger transforms AI infrastructure from a cost center into a measurable, optimizable system — enabling confident scaling from 1 to 50+ agents.