finance-billing-ops

$npx mdskill add affaan-m/ECC/finance-billing-ops

Analyzes billing and revenue operations with code and data evidence

  • Solves revenue tracking, pricing analysis, and billing model verification tasks
  • Uses ECC systems, Stripe, GitHub, and internal billing APIs for data
  • Prioritizes code-backed billing logic and real-time revenue evidence
  • Delivers structured billing truth, comparisons, and diagnostic reports

SKILL.md

.github/skills/finance-billing-opsView on GitHub ↗
---
name: finance-billing-ops
description: Evidence-first revenue, pricing, refunds, team-billing, and billing-model truth workflow for ECC. Use when the user wants a sales snapshot, pricing comparison, duplicate-charge diagnosis, or code-backed billing reality instead of generic payments advice.
origin: ECC
---

# Finance Billing Ops

Use this when the user wants to understand money, pricing, refunds, team-seat logic, or whether the product actually behaves the way the website and sales copy imply.

This is broader than `customer-billing-ops`. That skill is for customer remediation. This skill is for operator truth: revenue state, pricing decisions, team billing, and code-backed billing behavior.

## Skill Stack

Pull these ECC-native skills into the workflow when relevant:

- `customer-billing-ops` for customer-specific remediation and follow-up
- `research-ops` when competitor pricing or current market evidence matters
- `market-research` when the answer should end in a pricing recommendation
- `github-ops` when the billing truth depends on code, backlog, or release state in sibling repos
- `verification-loop` when the answer depends on proving checkout, seat handling, or entitlement behavior

## When to Use

- user asks for Stripe sales, refunds, MRR, or recent customer activity
- user asks whether team billing, per-seat billing, or quota stacking is real in code
- user wants competitor pricing comparisons or pricing-model benchmarks
- the question mixes revenue facts with product implementation truth

## Guardrails

- distinguish live data from saved snapshots
- separate:
  - revenue fact
  - customer impact
  - code-backed product truth
  - recommendation
- do not say "per seat" unless the actual entitlement path enforces it
- do not assume duplicate subscriptions imply duplicate value

## Workflow

### 1. Start from the freshest billing evidence

Prefer live billing data. If the data is not live, state the snapshot timestamp explicitly.

Normalize the picture:

- paid sales
- active subscriptions
- failed or incomplete checkouts
- refunds
- disputes
- duplicate subscriptions

### 2. Separate customer incidents from product truth

If the question is customer-specific, classify first:

- duplicate checkout
- real team intent
- broken self-serve controls
- unmet product value
- failed payment or incomplete setup

Then separate that from the broader product question:

- does team billing really exist?
- are seats actually counted?
- does checkout quantity change entitlement?
- does the site overstate current behavior?

### 3. Inspect code-backed billing behavior

If the answer depends on implementation truth, inspect the code path:

- checkout
- pricing page
- entitlement calculation
- seat or quota handling
- installation vs user usage logic
- billing portal or self-serve management support

### 4. End with a decision and product gap

Report:

- sales snapshot
- issue diagnosis
- product truth
- recommended operator action
- product or backlog gap

## Output Format

```text
SNAPSHOT
- timestamp
- revenue / subscriptions / anomalies

CUSTOMER IMPACT
- who is affected
- what happened

PRODUCT TRUTH
- what the code actually does
- what the website or sales copy claims

DECISION
- refund / preserve / convert / no-op

PRODUCT GAP
- exact follow-up item to build or fix
```

## Pitfalls

- do not conflate failed attempts with net revenue
- do not infer team billing from marketing language alone
- do not compare competitor pricing from memory when current evidence is available
- do not jump from diagnosis straight to refund without classifying the issue

## Verification

- the answer includes a live-data statement or snapshot timestamp
- product-truth claims are code-backed
- customer-impact and broader pricing/product conclusions are separated cleanly

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