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shopify-admin-inventory-aging-report
Read-only: categorizes inventory into aging buckets (0-30, 31-60, 61-90, 90+ days) based on time since last sale or receipt.
用 Codex 或 Claude 帮你安装 复制这段 Prompt,粘贴到 Codex、Claude 或其他助手里,让它检查 Skill 页面并帮你完成安装。
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Read-only: categorizes inventory into aging buckets (0-30, 31-60, 61-90, 90+ days) based on time since last sale or receipt.
用 Codex 或 Claude 帮你安装 复制这段 Prompt,粘贴到 Codex、Claude 或其他助手里,让它检查 Skill 页面并帮你完成安装。
基于 SOC 职业分类
| name | shopify-admin-inventory-aging-report |
| role | merchandising |
| description | Read-only: categorizes inventory into aging buckets (0-30, 31-60, 61-90, 90+ days) based on time since last sale or receipt. |
| toolkit | shopify-admin, shopify-admin-execution |
| api_version | 2025-01 |
| graphql_operations | ["productVariants:query","orders:query","inventoryItems:query"] |
| status | stable |
| compatibility | Claude Code, Cursor, Codex, Gemini CLI |
Categorizes all inventory into aging buckets based on how long items have been sitting without selling. Calculates carrying cost exposure by bucket to prioritize markdown or liquidation decisions. Goes deeper than dead-stock identification by providing aging granularity. Read-only — no mutations.
shopify store auth --store <domain> --scopes read_orders,read_products,read_inventoryread_orders, read_products, read_inventory| Parameter | Type | Required | Default | Description |
|---|---|---|---|---|
| store | string | yes | — | Store domain |
| buckets | string | no | 0-30,31-60,61-90,91-180,181+ | Comma-separated aging buckets in days |
| carrying_cost_pct | float | no | 25 | Annual carrying cost as % of inventory value (industry avg 20-30%) |
| vendor_filter | string | no | — | Scope to specific vendor |
| format | string | no | human | Output format: human or json |
ℹ️ Read-only skill — no mutations are executed. Safe to run at any time.
OPERATION: productVariants — query
Inputs: first: 250, select id, sku, inventoryQuantity, inventoryItem { id, unitCost }, product { title, vendor, status }, pagination cursor
Expected output: All variants with stock and cost data
Filter to variants with inventoryQuantity > 0
OPERATION: orders — query
Inputs: query: "created_at:>='<NOW - 365 days>'", first: 250, select createdAt, lineItems { variant { id }, quantity }, pagination cursor
Expected output: Sales history to determine last-sold date per variant
For each stocked variant, determine aging:
OPERATION: inventoryItems — query
Inputs: Inventory item IDs for cost data
Expected output: Unit costs for value calculation
Calculate per bucket:
# productVariants:query — validated against api_version 2025-01
query VariantsWithStock($query: String, $after: String) {
productVariants(first: 250, after: $after, query: $query) {
edges {
node {
id
sku
inventoryQuantity
product { id title vendor status createdAt }
inventoryItem {
id
unitCost { amount currencyCode }
}
}
}
pageInfo { hasNextPage endCursor }
}
}
# orders:query — validated against api_version 2025-01
query RecentSales($query: String!, $after: String) {
orders(first: 250, after: $after, query: $query) {
edges {
node {
createdAt
lineItems(first: 50) {
edges {
node {
quantity
variant { id }
}
}
}
}
}
pageInfo { hasNextPage endCursor }
}
}
# inventoryItems:query — validated against api_version 2025-01
query InventoryItemCosts($ids: [ID!]!) {
nodes(ids: $ids) {
... on InventoryItem {
id
unitCost { amount currencyCode }
}
}
}
Claude MUST emit the following output at each stage. This is mandatory.
On start, emit:
╔══════════════════════════════════════════════╗
║ SKILL: Inventory Aging Report ║
║ 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):
══════════════════════════════════════════════
INVENTORY AGING REPORT
Total SKUs with stock: <n>
Total inventory value: $<amount>
─────────────────────────────
AGING BUCKETS:
0-30 days: <n> SKUs $<value> (<pct>%) ✅ Fresh
31-60 days: <n> SKUs $<value> (<pct>%) ⚠️ Watch
61-90 days: <n> SKUs $<value> (<pct>%) ⚠️ Aging
91-180 days: <n> SKUs $<value> (<pct>%) 🔴 Stale
181+ days: <n> SKUs $<value> (<pct>%) 🔴 Dead
Monthly carrying cost: $<amount>
Annual carrying cost: $<amount>
Top aging items by value:
"<product>" SKU:<sku> Age:<n>d Qty:<n> Value:$<n>
Output: inventory_aging_<date>.csv
══════════════════════════════════════════════
CSV file inventory_aging_<YYYY-MM-DD>.csv with columns:
variant_id, sku, product_title, vendor, quantity, unit_cost, total_value, last_sold_date, age_days, aging_bucket, monthly_carrying_cost
| Error | Cause | Recovery |
|---|---|---|
THROTTLED | API rate limit exceeded | Wait 2 seconds, retry up to 3 times |
| Missing unitCost | No COGS data | Use $0 for value — flag as "cost unknown" |
| No sales history | New product or never sold | Use product creation date as aging start |
carrying_cost_pct: 25 as default (includes storage, insurance, opportunity cost, shrinkage).bulk-price-adjustment.dead-stock-identifier and stock-velocity-report for a complete inventory health picture.Master skill collection for Shopify store operators. Provides access to all merchandising, marketing, support, and operations capabilities.
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