| name | shopify-admin-churn-risk-scorer |
| role | customer-ops |
| description | Read-only: scores customers by churn probability based on purchase recency, frequency decay, and expected repurchase intervals. |
| toolkit | shopify-admin, shopify-admin-execution |
| api_version | 2025-01 |
| graphql_operations | ["customers:query","orders:query"] |
| status | stable |
| compatibility | Claude Code, Cursor, Codex, Gemini CLI |
Purpose
Predicts which customers are at risk of churning by analyzing their purchase patterns against their historical buying frequency. Calculates an expected next-purchase date for each repeat customer, then scores churn risk based on how overdue they are. Read-only — no mutations.
Prerequisites
- Authenticated Shopify CLI session:
shopify store auth --store <domain> --scopes read_orders,read_customers
- API scopes:
read_orders, read_customers
Parameters
| Parameter | Type | Required | Default | Description |
|---|
| store | string | yes | — | Store domain |
| days_back | integer | no | 365 | Historical window for purchase pattern analysis |
| min_orders | integer | no | 2 | Minimum orders to calculate purchase interval (need 2+ for frequency) |
| risk_threshold | float | no | 1.5 | Multiplier of avg purchase interval before flagging as at-risk |
| format | string | no | human | Output format: human or json |
Safety
ℹ️ Read-only skill — no mutations are executed. Safe to run at any time.
Churn Risk Scoring Model
For each customer with min_orders or more purchases:
- Average Purchase Interval (API) = total days between first and last order / (order_count - 1)
- Days Since Last Order (DSLO) = today - last_order_date
- Overdue Ratio = DSLO / API
- Churn Risk Score (0-100):
- Overdue ratio ≤ 1.0 → Score 0-20 (Active)
- Overdue ratio 1.0–1.5 → Score 20-50 (Cooling)
- Overdue ratio 1.5–2.5 → Score 50-80 (At Risk)
- Overdue ratio > 2.5 → Score 80-100 (Likely Churned)
- Customer Lifetime Value (CLV) = total spend / customer age in years × expected remaining years
Workflow Steps
-
OPERATION: orders — query
Inputs: query: "created_at:>='<NOW - days_back days>'", first: 250, select createdAt, totalPriceSet, customer { id, email, firstName, lastName }, pagination cursor
Expected output: All orders with customer association
-
Group orders by customer, calculate per customer:
- Order dates (sorted chronologically)
- Average purchase interval
- Days since last order
- Total spend
- Order count
-
OPERATION: customers — query (enrichment)
Inputs: Customer IDs for at-risk and likely-churned segments
Expected output: Contact details, tags, total spend
-
Calculate churn risk score and classify into segments
-
Estimate revenue at risk = sum of (annual_spend × churn_probability) for at-risk customers
GraphQL Operations
query OrdersForChurnAnalysis($query: String!, $after: String) {
orders(first: 250, after: $after, query: $query) {
edges {
node {
createdAt
totalPriceSet { shopMoney { amount currencyCode } }
customer {
id
email
firstName
lastName
numberOfOrders
}
}
}
pageInfo { hasNextPage endCursor }
}
}
query AtRiskCustomers($ids: [ID!]!) {
nodes(ids: $ids) {
... on Customer {
id
email
firstName
lastName
totalSpentV2 { amount currencyCode }
numberOfOrders
tags
createdAt
}
}
}
Session Tracking
Claude MUST emit the following output at each stage. This is mandatory.
On start, emit:
╔══════════════════════════════════════════════╗
║ SKILL: Churn Risk Scorer ║
║ 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):
══════════════════════════════════════════════
CHURN RISK REPORT (<days_back> days analyzed)
Repeat customers scored: <n>
─────────────────────────────
Active (score 0-20): <n> (<pct>%)
Cooling (score 20-50): <n> (<pct>%)
At Risk (score 50-80): <n> (<pct>%) ⚠️
Likely Churned (80-100): <n> (<pct>%) 🔴
Revenue at risk: $<amount>/year
Top at-risk by value:
<name> (<email>) Score: <n> Last order: <date> Lifetime: $<n>
Output: churn_risk_<date>.csv
══════════════════════════════════════════════
Output Format
CSV file churn_risk_<YYYY-MM-DD>.csv with columns:
customer_id, email, first_name, last_name, order_count, total_spent, avg_purchase_interval_days, days_since_last_order, overdue_ratio, churn_risk_score, risk_segment, expected_annual_value
Error Handling
| Error | Cause | Recovery |
|---|
THROTTLED | API rate limit exceeded | Wait 2 seconds, retry up to 3 times |
| Single-purchase customers | Can't calculate interval | Exclude from scoring (need 2+ orders) |
| Guest orders | No customer linkage | Skip — cannot build customer profile |
Best Practices
- Pair with
customer-win-back skill to take action on At-Risk and Likely Churned segments.
- Use with
rfm-customer-segmentation for a more holistic view of customer health.
- High-value churning customers (top 20% by spend) should get personalized outreach.
- Export At-Risk segment to email marketing platform for automated win-back sequences.
- Adjust
risk_threshold based on your product type: consumables (1.3), fashion (1.5), furniture (2.0).