shopify-admin-checkout-abandonment-report

Installation
SKILL.md

Purpose

Aggregates abandoned checkout data broken down by cart value bucket and hour of day (UTC). Helps identify when and at what price point customers are most likely to abandon checkout. Scoped to what the abandonedCheckouts API provides — device type and geographic location are not available in this API and are not reported.

Prerequisites

  • Authenticated Shopify CLI session: shopify auth login --store <domain>
  • API scopes: read_checkouts

Parameters

Parameter Type Required Default Description
store string yes Store domain (e.g., mystore.myshopify.com)
format string no human Output format: human or json
dry_run bool no false Preview operations without executing mutations
date_range_start string yes Start date in ISO 8601 (e.g., 2025-01-01)
date_range_end string yes End date in ISO 8601 (e.g., 2025-01-31)
cart_value_buckets array no [0, 25, 50, 100, 250] Array of thresholds defining cart value bands (e.g., [0,25,50,100,250] creates bands: $0–25, $25–50, $50–100, $100–250, $250+)

Workflow Steps

  1. OPERATION: abandonedCheckouts — query Inputs: first: 250, query: "created_at:>='<date_range_start>' created_at:<='<date_range_end>'", pagination cursor Expected output: All abandoned checkouts in range with totalPrice and createdAt; paginate until hasNextPage: false; then aggregate in-memory: (1) count by cart value bucket, (2) count by hour of day (UTC, 0–23)

GraphQL Operations

# abandonedCheckouts:query — validated against api_version 2025-04
query AbandonedCheckoutsReport($first: Int!, $after: String, $query: String) {
  abandonedCheckouts(first: $first, after: $after, query: $query) {
    edges {
      node {
        id
        createdAt
        totalPriceSet {
          shopMoney {
            amount
            currencyCode
          }
        }
        customer {
          defaultEmailAddress {
            emailAddress
          }
        }
        lineItems {
          edges {
            node {
              title
              quantity
              variant {
                price
              }
            }
          }
        }
      }
    }
    pageInfo {
      hasNextPage
      endCursor
    }
  }
}

Session Tracking

Claude MUST emit the following output at each stage. This is mandatory.

On start, emit:

╔══════════════════════════════════════════════╗
║  SKILL: checkout-abandonment-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):

══════════════════════════════════════════════
OUTCOME SUMMARY
  Total abandoned:   <n>
  Date range:        <start> to <end>
  Errors:            0
  Output:            none
══════════════════════════════════════════════

For format: json, emit:

{
  "skill": "checkout-abandonment-report",
  "store": "<domain>",
  "started_at": "<ISO8601>",
  "completed_at": "<ISO8601>",
  "dry_run": false,
  "steps": [
    { "step": 1, "operation": "AbandonedCheckoutsReport", "type": "query", "params_summary": "<date_range_start> to <date_range_end>", "result_summary": "<n> checkouts", "skipped": false }
  ],
  "outcome": {
    "total_abandoned": 0,
    "date_range_start": "<date_range_start>",
    "date_range_end": "<date_range_end>",
    "by_cart_value": [
      { "range": "$0 – $25", "count": 0, "pct": 0.0 }
    ],
    "by_hour_utc": [
      { "hour": "00:00", "count": 0, "pct": 0.0 }
    ],
    "errors": 0,
    "output_file": null
  }
}

Output Format

Two tables displayed inline (no CSV):

Table 1: Abandonment by Cart Value Bucket

Cart Value Range Abandoned Checkouts % of Total
$0 – $25 ... ...
$25 – $50 ... ...
$50 – $100 ... ...
$100 – $250 ... ...
$250+ ... ...

Table 2: Abandonment by Hour of Day (UTC)

Hour (UTC) Abandoned Checkouts % of Total
00:00 ... ...
01:00 ... ...
02:00 ... ...
...

For format: json, by_cart_value is an array of {range, count, pct} objects; by_hour_utc is an array of {hour, count, pct} objects.

Note: Device type and geographic location are not available in the abandonedCheckouts API and are not reported by this skill.

Error Handling

Error Cause Recovery
No checkouts returned No abandoned checkouts in date range Widen date range or verify read_checkouts scope
Invalid date format Date not in ISO 8601 Use format YYYY-MM-DD
Rate limit (429) Too many paginated requests Narrow date range or reduce first to 100

Best Practices

  1. For high-traffic stores, narrow the date range to 7–14 days for faster results; paginating 90 days of data can produce many API calls.
  2. The default cart_value_buckets of [0,25,50,100,250] works for most stores — adjust thresholds to match your AOV distribution.
  3. Hours are reported in UTC — convert to your store's local timezone before drawing conclusions about peak abandonment times.
  4. Run this report weekly and compare the by-hour pattern to your promotional send times to find timing opportunities.
  5. email is included in the query result — combine with the abandoned-cart-recovery skill to act on the customers most likely to convert based on their cart value tier.
Related skills
Installs
4
GitHub Stars
133
First Seen
Apr 12, 2026
Security Audits