Average Order Value Trends
woo-average-order-value-trends
Read-only: Track average order value over rolling windows and flag statistically significant changes.
- REST Endpoints
GET /ordersGET /reports/sales- Compatibility
- Claude CodeCursorClineCodexGemini CLI
Purpose
Compute average order value (AOV) for WooCommerce over a series of rolling time windows and compare periods to detect significant changes. Segments by order count ranges and payment method to surface insights. Read-only.
Prerequisites
- WooCommerce store with REST API enabled
- Consumer Key with Read scope
- Minimum WooCommerce version: 3.5.0
Parameters
| Parameter | Type | Required | Default | Description |
|---|---|---|---|---|
store_url | string | yes | — | Base URL of the WooCommerce store |
consumer_key | string | yes | — | WooCommerce REST API consumer key (ck_...) |
consumer_secret | string | yes | — | WooCommerce REST API consumer secret (cs_...) |
dry_run | bool | no | false | No effect — read-only skill |
format | string | no | human | Output format: human or json |
date_after | string | yes | — | Start date (YYYY-MM-DD) |
date_before | string | yes | — | End date (YYYY-MM-DD) |
window_days | int | no | 30 | Rolling window size in days |
change_threshold_pct | number | no | 10 | Flag period-over-period AOV change above this % |
Authentication
WooCommerce uses OAuth 1.0a for HTTP and Basic Auth over HTTPS.
For HTTPS stores (recommended):
Authorization: Basic base64(consumer_key:consumer_secret)
For HTTP stores (development only): Use OAuth 1.0a — include oauth_consumer_key, oauth_nonce, oauth_signature, oauth_signature_method=HMAC-SHA1, oauth_timestamp, oauth_version=1.0
Never log or output consumer_key or consumer_secret values.
See docs/AUTHENTICATION.md for full setup instructions.
Safety
Read-only skill — no mutations are executed. Safe to run at any time.
Workflow Steps
Step 1 — Fetch completed orders in range
GET /wp-json/wc/v3/orders
?status=completed&after=<date_after>T00:00:00Z&before=<date_before>T23:59:59Z&per_page=100&page=1
Extract: id, total, date_created
Step 2 — Compute AOV per window
Divide the date range into rolling window_days windows. For each window: aov = sum(total) / count(orders).
Step 3 — Compare periods and flag changes
For each consecutive pair of windows: change_pct = (aov_current - aov_previous) / aov_previous * 100.
Flag if abs(change_pct) > change_threshold_pct.
Step 4 — Export
API Endpoints Used
GET /wp-json/wc/v3/orders — order totals for AOV calculation
GET /wp-json/wc/v3/reports/sales — aggregate check
Pagination Strategy
WooCommerce REST API uses page/per_page pagination (not cursor-based).
Standard pattern:
page = 1
while True:
response = GET /endpoint?per_page=100&page=page
process(response)
if len(response) < 100: break
page += 1
Maximum per_page is 100 for most endpoints. The X-WP-Total and X-WP-TotalPages response headers report totals. Always read X-WP-TotalPages on the first request to estimate job size.
Session Tracking
Claude MUST emit the following output at each stage. This is mandatory.
STARTUP:
╔══════════════════════════════════════════╗
║ SKILL: woo-average-order-value-trends ║
║ STORE: <store_url> ║
║ TIME: <ISO-8601 UTC> ║
║ MODE: READ-ONLY ║
╚══════════════════════════════════════════╝
PER-OPERATION (emit after each API call batch):
[N/TOTAL] <METHOD> <endpoint> → <result_count> records | params: <key>=<val>
COMPLETION (human format):
╔══════════════════════════════════════════╗
║ COMPLETE: woo-average-order-value-trends║
║ RECORDS PROCESSED: <n> ║
║ OUTPUT: <filename> ║
╚══════════════════════════════════════════╝
COMPLETION (json format):
{
"skill": "woo-average-order-value-trends",
"store": "<store_url>",
"completed_at": "<ISO-8601>",
"records_processed": <n>,
"output_file": "<path>",
"dry_run": false
}
Output Format
CSV filename: woo-average-order-value-trends_<YYYY-MM-DD>_<YYYY-MM-DD>.csv
Columns: period_start, period_end, order_count, total_revenue, aov, change_pct_vs_prev, flagged
Error Handling
| Error | Cause | Resolution |
|---|---|---|
401 Unauthorized | Invalid credentials | Verify consumer_key and consumer_secret |
403 Forbidden | Key lacks Read scope | Regenerate with Read scope |
429 Too Many Requests | Rate limit | Wait 2 seconds and retry |
| Too few orders per window | Window too short or low traffic | Increase window_days for meaningful averages |
Best Practices
- AOV spikes often correlate with promotions — check against your marketing calendar.
- AOV drops may signal an influx of new customers with smaller first orders — segment by customer age.
- Compare monthly AOV year-over-year to account for seasonal patterns.