Install
$ agentstack add skill-40rty-ai-shopify-admin-skills-shopify-admin-return-reason-analysis ✓ scanned · ✓ verified — works with Claude Code, Cursor, and more.
Security review
✓ PassedNo issues found. Passed automated security review. · v0.1.0 How review works →
- ✓ Prompt-injection patterns
- ✓ Secret / credential exfiltration
- ✓ Dangerous shell & filesystem operations
- ✓ Untrusted network calls
- ✓ Known-malicious package signatures
About
Purpose
Queries all return requests within a date window and aggregates them by return reason code, product, and SKU. Surfaces which products have the highest return rates and which reasons (wrong size, damaged, not as described, etc.) are most common. Read-only — no mutations.
Prerequisites
- Authenticated Shopify CLI session:
shopify store auth --store --scopes read_orders,read_returns - API scopes:
read_orders,read_returns
Parameters
| Parameter | Type | Required | Default | Description | |-----------|------|----------|---------|-------------| | store | string | yes | — | Store domain (e.g., mystore.myshopify.com) | | daysback | integer | no | 30 | Lookback window for return requests | | minreturns | integer | no | 3 | Minimum returns per product to include in output | | 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:
returns— query
Inputs: query: "created_at:>=''", first: 250, pagination cursor Expected output: Return objects with returnLineItems { returnReason, refundableQuantity, fulfillmentLineItem { lineItem { product { title } variant { sku } } } }; paginate until hasNextPage: false
- Aggregate by: return reason → product → SKU; calculate return count and % of total returns per bucket
- OPERATION:
orders— query (for return rate context)
Inputs: Same date window, first: 250; count total orders as denominator for return rate calculation
GraphQL Operations
# returns:query — validated against api_version 2025-01
query ReturnsAnalysis($query: String!, $after: String) {
returns(first: 250, after: $after, query: $query) {
edges {
node {
id
status
createdAt
order {
id
name
}
returnLineItems(first: 50) {
edges {
node {
id
quantity
returnReason
returnReasonNote
fulfillmentLineItem {
lineItem {
product {
id
title
}
variant {
id
sku
title
}
}
}
}
}
}
}
}
pageInfo {
hasNextPage
endCursor
}
}
}
# orders:query — validated against api_version 2025-01
query OrderCountForPeriod($query: String!) {
orders(first: 1, query: $query) {
pageInfo {
hasNextPage
}
}
ordersCount: orders(first: 250, query: $query) {
edges {
node {
id
}
}
pageInfo {
hasNextPage
endCursor
}
}
}
Session Tracking
Claude MUST emit the following output at each stage. This is mandatory.
On start, emit:
╔══════════════════════════════════════════════╗
║ SKILL: Return Reason Analysis ║
║ Store: ║
║ Started: ║
╚══════════════════════════════════════════════╝
After each step, emit:
[N/TOTAL]
→ Params:
→ Result:
On completion, emit:
For format: human (default):
══════════════════════════════════════════════
RETURN REASON ANALYSIS ( days)
Total returns:
Total orders:
Return rate: %
Top Reasons
─────────────────────────────────────────
Wrong size/fit (%)
Not as described (%)
Damaged/defective (%)
Changed mind (%)
Other (%)
Top Products by Return Volume
─────────────────────────────────────────
returns ()
Output: return_reasons_.csv
══════════════════════════════════════════════
For format: json, emit:
{
"skill": "return-reason-analysis",
"store": "",
"period_days": 30,
"total_returns": 0,
"total_orders": 0,
"return_rate_pct": 0,
"by_reason": [],
"by_product": [],
"output_file": "return_reasons_.csv"
}
Output Format
CSV file return_reasons_.csv with columns: return_id, order_name, product_title, sku, quantity, return_reason, reason_note, created_at
Error Handling
| Error | Cause | Recovery | |-------|-------|----------| | THROTTLED | API rate limit exceeded | Wait 2 seconds, retry up to 3 times | | No returns in window | No return requests in period | Exit with summary: 0 returns | | Missing product/variant on line item | Deleted product | Log as "deleted product", include in reason counts |
Best Practices
- Cross-reference high-return products with their listing descriptions and images — "not as described" returns often indicate a copy or photography issue.
- Use
min_returns: 10for larger stores to focus on statistically significant patterns rather than one-off complaints. - Run monthly and compare period-over-period to track whether merchandising or product quality improvements are reducing specific return reasons.
- Pair with
exchange-vs-refund-ratioto understand whether high-return products are recovering revenue via exchanges.
Source & license
This open-source skill is cataloged on AgentStack and links to its original source — we do not rehost the code.
- Author: 40RTY-ai
- Source: 40RTY-ai/shopify-admin-skills
- License: MIT
- Homepage: http://skills.40rty.ai
Install and usage instructions live in the source repository linked above.
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Versions
- v0.1.0 Imported from the upstream source.