Built for AI products

Track AI usage.
Bill it accurately.
Without rebuilding your stack.

UsageBox meters tokens, GPU minutes, agent runtime, and tool calls per customer. Open-source storage engine. Connects to Stripe or your own invoicing.

Idempotent
Ingestion
Immutable
Audit trail
Open source
Storage engine
POST /v1/events
curl -X POST https://api.usagebox.com/v1/events \
-H "Authorization: Bearer $UBX_KEY" \
-d '{
"event_id": "req_8x42jk",
"account_id": "acme-co",
"meter": "llm_tokens_in",
"model": "claude-4.5-sonnet",
"quantity": 12450,
"timestamp": "2026-05-16T18:42:11Z"
}'
 
# Idempotent. Retries are safe.
# Rolls up hourly. Invoiced via Stripe.

Why generic billing breaks on AI workloads

Stripe Billing, Chargebee, Recurly: built for SaaS subscriptions in the 2010s. AI usage is a different shape of problem.

Volume breaks generic billing

Stripe's metered usage assumes thousands of events per customer per month. AI products send millions per day. Generic tools throttle, fail silently, or charge you per-event.

Attribution needs a graph

An agent run is N tool calls + M LLM calls + K memory ops. Each costs different amounts. Generic billing tools can't roll those into a single billable unit without engineering work you keep redoing.

Attacks show up in the bill

A user can manipulate prompts to trigger expensive generations. Without per-user spend ceilings and real-time anomaly detection, the first sign of an attack is your AWS or OpenAI invoice next month.

Built for the way AI products actually meter

Six primitives. Each one designed for the AI billing patterns generic tools fight you on.

Token Metering

Meter LLM input + output tokens per request, per agent, per tenant. Idempotent ingestion handles retries without double-billing.

GPU Minute Pricing

Bill inference time, fine-tuning runtime, or per-job GPU usage. Catalog-driven pricing rules; no code changes to update rates.

Per-Agent Cost Attribution

Track cost for each agent run across N tool calls + M LLM calls + memory ops. Roll up to tenant invoices automatically.

Real-Time Anomaly Detection

Cost-amplification attacks land in your usage data first. Per-user spend ceilings, alerting on token surges, kill-switches.

Hourly Rollups

Raw events feed hourly aggregates. Invoice generation is O(1) per account, not a scan over millions of rows.

Stripe + Manual Invoicing

Plug into Stripe for self-serve. Or generate finance-ready invoices for enterprise contracts. Same metering pipeline.

The storage engine is open source

usagedb is the Rust storage engine UsageBox runs on. Append-only, idempotent, immutable raw event audit trail, hourly rollups for invoice queries. Apache 2.0 on GitHub.

Read the code that produces every invoice line. Fork it. Self-host the ingestion layer while still using UsageBox for the platform side. The right answer to “is your billing math correct” is “read the code yourself.”

pbudzik/usagedb

Or read the architecture overview in our usagedb article, then go deep with the 10-part engine internals series: ingest, dedupe, columnar segments, rollups, the query engine, and how it is tested.

Notes on AI billing

Practical writing on metering patterns, AI cost attribution, and what we learn from production billing systems.

Cheaper Than Gemini Flash-Lite? DeepSeek, GLM, Qwen and Kimi as Agentic Workhorses

On raw capability-per-dollar, several Chinese models beat Gemini 3.1 Flash-Lite (index 34, $0.25/$1.50): DeepSeek V4 Flash is smarter (Artificial Analysis index 47) at ~5x cheaper output ($0.28), with MiniMax M3 and DeepSeek V4 Pro also dominant. But the production deciders for an agentic/support workhorse are not IQ: tool-call serialization reliability, data residency (open-weight self-hosting as the escape hatch), and API stability. Provider-sourced price + capability table, a cost-vs-capability chart, and why you meter tool-call success rate before switching.

Read →

Gemini 2.5 Pro vs Gemini 3.1 Flash-Lite: Cost, Quality, and Migration Guide

Switching a workload from Gemini 2.5 Pro to 3.1 Flash-Lite cuts the token bill ~80% and is not the quality cliff the names imply: the cheap newer model ties the year-old flagship on GPQA Diamond (86.9% vs 86.4%) and trails only slightly on coding and the hardest reasoning, at one fifth the price. It genuinely loses on Humanity's Last Exam (16.0% vs 21.6%), deep 1M-context recall (MRCR 12.3%), and any task where a high thinking budget spends back the savings. Plus the upgrade path if you want more power instead (3.5 Flash, the stable Flash, or 3.1 Pro), worked dollar math across three workload shapes, a cost-vs-capability chart, and why only metering both on your own traffic settles it. Note: 2.5 Pro is now deprecated.

Read →

Metered AI Billing Is Breaking Developer Trust. That Is an Engineering Failure, Not a Pricing One

The June 2026 revolt against metered AI billing (the GitHub Copilot credit switch, "pay the same, get anxiety for free", Cursor forced usage pricing) is real, but the diagnosis is wrong. Usage-based pricing is not the betrayal. Shipping usage-based pricing without real-time metering, pre-flight cost, and enforcing caps is. The four engineering properties trust actually requires.

Read →

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