| name | shopify-admin-discount-roi-calculator |
| role | conversion-optimization |
| description | Read-only: calculates the true ROI of each discount code and automatic discount by comparing incremental revenue against discount cost. |
| toolkit | shopify-admin, shopify-admin-execution |
| api_version | 2025-01 |
| graphql_operations | ["discountNodes:query","orders:query"] |
| status | stable |
| compatibility | Claude Code, Cursor, Codex, Gemini CLI |
Purpose
Evaluates the true return on investment for each discount code and automatic discount by measuring revenue generated, number of orders, average order value with vs. without discount, customer acquisition attributed to discounts, and whether discounted orders cannibalized full-price sales. Goes beyond discount-hygiene-cleanup (which finds broken/unused codes) to answer "was this discount worth it?" Read-only — no mutations.
Prerequisites
- Authenticated Shopify CLI session:
shopify store auth --store <domain> --scopes read_orders,read_discounts
- API scopes:
read_orders, read_discounts
Parameters
| Parameter | Type | Required | Default | Description |
|---|
| store | string | yes | — | Store domain |
| days_back | integer | no | 90 | Lookback window |
| min_uses | integer | no | 3 | Minimum uses for a discount to be analyzed |
| format | string | no | human | Output format: human or json |
Safety
ℹ️ Read-only skill — no mutations are executed. Safe to run at any time.
Workflow Steps
-
OPERATION: discountNodes — query
Inputs: first: 250, select discount details (title, code, type, value, usageCount, startsAt, endsAt), pagination cursor
Expected output: All discount codes and automatic discounts
-
Filter to discounts with usageCount >= min_uses and active within lookback window
-
OPERATION: orders — query
Inputs: query: "created_at:>='<NOW - days_back days>' discount_code:<code>", first: 250 for each active discount code, select totalPriceSet, totalDiscountsSet, subtotalPriceSet, customer { id, numberOfOrders }, pagination cursor
Expected output: All orders using each discount
-
Also query orders WITHOUT any discount in same period for baseline AOV comparison
-
For each discount, calculate:
- Total Discount Cost = Σ(totalDiscountsSet for orders with this code)
- Revenue Generated = Σ(totalPriceSet for orders with this code)
- Discounted AOV = revenue / orders
- Baseline AOV = AOV of non-discounted orders in same period
- AOV Lift/Drop = discounted AOV - baseline AOV
- New Customer % = orders where customer.numberOfOrders == 1 / total
- Gross ROI = (revenue - discount_cost) / discount_cost × 100
- Cannibalization Risk = high if discount AOV < baseline AOV and new customer % < 20%
GraphQL Operations
query AllDiscounts($after: String) {
discountNodes(first: 250, after: $after) {
edges {
node {
id
discount {
... on DiscountCodeBasic {
title
codes(first: 1) { edges { node { code } } }
usageLimit
asyncUsageCount
startsAt
endsAt
customerGets {
value {
... on DiscountPercentage { percentage }
... on DiscountAmount { amount { amount currencyCode } }
}
}
}
... on DiscountCodeFreeShipping {
title
codes(first: 1) { edges { node { code } } }
asyncUsageCount
startsAt
endsAt
}
... on DiscountAutomaticBasic {
title
asyncUsageCount
startsAt
endsAt
customerGets {
value {
... on DiscountPercentage { percentage }
... on DiscountAmount { amount { amount currencyCode } }
}
}
}
}
}
}
pageInfo { hasNextPage endCursor }
}
}
query OrdersByDiscount($query: String!, $after: String) {
orders(first: 250, after: $after, query: $query) {
edges {
node {
id
name
createdAt
totalPriceSet { shopMoney { amount currencyCode } }
totalDiscountsSet { shopMoney { amount currencyCode } }
subtotalPriceSet { shopMoney { amount currencyCode } }
customer {
id
numberOfOrders
}
discountCodes
}
}
pageInfo { hasNextPage endCursor }
}
}
Session Tracking
Claude MUST emit the following output at each stage. This is mandatory.
On start, emit:
╔══════════════════════════════════════════════╗
║ SKILL: Discount ROI Calculator ║
║ Store: <store domain> ║
║ Started: <YYYY-MM-DD HH:MM UTC> ║
╚══════════════════════════════════════════════╝
After each step, emit:
[N/TOTAL] <QUERY|MUTATION> <OperationName>
→ Params: <brief summary of key inputs>
→ Result: <count or outcome>
On completion, emit:
For format: human (default):
══════════════════════════════════════════════
DISCOUNT ROI REPORT (<days_back> days)
Discounts analyzed: <n>
Total discount spend: $<amount>
Total attributed rev: $<amount>
─────────────────────────────
TOP PERFORMERS (by ROI):
"<code>" ROI: <n>% Revenue: $<n> Cost: $<n> New customers: <pct>%
UNDERPERFORMERS:
"<code>" ROI: <n>% Revenue: $<n> Cost: $<n> ⚠️ Cannibalization risk
BASELINE COMPARISON:
Non-discount AOV: $<n> | Avg discount AOV: $<n> | Δ: $<n>
Output: discount_roi_<date>.csv
══════════════════════════════════════════════
Output Format
CSV file discount_roi_<YYYY-MM-DD>.csv with columns:
discount_id, code_or_title, type, uses, revenue, discount_cost, roi_pct, aov, baseline_aov, aov_delta, new_customer_pct, cannibalization_risk
Error Handling
| Error | Cause | Recovery |
|---|
THROTTLED | API rate limit exceeded | Wait 2 seconds, retry up to 3 times |
| Automatic discounts | No code to query by | Match via order discount data |
| Stacked discounts | Multiple codes per order | Attribute proportionally or flag as "multi-discount" |
Best Practices
- Discounts with ROI < 100% cost more than they generate — consider retiring them.
- High new-customer % with positive ROI = great acquisition tool — keep running.
- Low new-customer % with negative AOV lift = cannibalization — customers would have bought anyway.
- Cross-reference with
discount-ab-analysis for split-test insights.
- Use with
discount-hygiene-cleanup to find and remove underperforming codes.