
auditing-endpoints
โ 49by posthog ยท part of posthog/skills
Audit every endpoint in a PostHog project for staleness, failed materialisations, and unused materialised versions. Use when the user asks "what endpoints can I clean up?", "are any of my endpoints broken?", "which materialised versions are still being called?", or wants a one-shot cleanup pass over the Endpoints product. Produces a prioritised report grouped by issue type, with recommended actions but does not modify anything without explicit confirmation.
This is the playbook your agent receives when the skill activates โ you don't need to read it to use the skill, but it's here to audit before installing.
Auditing endpoints
This skill produces a project-wide audit of the Endpoints product. Use it when the user wants to find what to clean up โ unused endpoints, failing materialisations, materialised versions that nobody calls any more. It does not modify anything; it reports.
The deeper investigation per endpoint is diagnosing-endpoint-performance. The audit's job is to
find candidates and hand off.
When to use this skill
- "Audit my endpoints" / "What endpoints can I clean up?"
- The user is taking over a project and wants to know what they've inherited
- A periodic review (monthly / quarterly) of endpoint sprawl
- The user is over a materialisation cost budget and wants to know what to disable
The dedicated tools give a fast endpoint-level view. For call frequency, recency, and cost over
time, query the query_log table with execute-sql (endpoint-level). Per-version recency comes
from endpoint-versions โ each version carries its own last_executed_at.
Available tools
| Tool | What it's for |
|---|---|
execute-sql (HogQL) | Primary read path. Query system.data_modeling_endpoints for metadata (name, is_active, current_version, derived_from_insight, last_executed_at) and query_log for endpoint-level usage (call counts, recency, duration, bytes) |
endpoint-materialization-status | Per endpoint: is materialisation eligible, current status, last run, last error (not in the system tables โ use this tool) |
endpoint-versions | All versions for one endpoint, latest first, with each version's query, materialisation state, and last_executed_at |
endpoint-update | Write path โ disable (is_active: false) or unmaterialise (is_materialized: false) after the user confirms |
agent-feedback | Tell the PostHog team what's missing or confusing in this flow so the product and skill improve |
Prefer reading from the system tables over the endpoints-get-all / endpoint-get tools โ one
SQL query returns the whole inventory and lets you join metadata to usage in query_log.
What counts as an issue
| Category | Trigger | Typical action |
|---|---|---|
| Never called | No rows in query_log for the endpoint (personal-API-key calls only) | Confirm with the user, then disable |
| Stale | query_log shows the last call more than 30 days ago | Confirm with the user; often safe to disable |
| Inactive | is_active = 0 in system.data_modeling_endpoints | Verify intent; if abandoned, delete |
| Failing materialisation | endpoint-materialization-status returns Failed with an error | Hand off to diagnosing-endpoint-performance |
| Unused materialised version | A materialised version whose last_executed_at (from endpoint-versions) is null or long stale | Unmaterialise that version, or roll to a newer one |
| Drifted versions | Many versions exist (query changed repeatedly) | History noise โ not an issue, but worth noting |
Usage counts only personal-API-key calls โ an endpoint exercised solely from the Playground
tab or the app will look unused. Per-version last_executed_at is recorded only for runs since
that tracking was added, so a version can read null while still being used; always confirm before
removing.
Workflow
1. List endpoints and their metadata
One execute-sql query gets the whole inventory from system.data_modeling_endpoints:
SELECT name, is_active, current_version, derived_from_insight, last_executed_at
FROM system.data_modeling_endpoints
ORDER BY nameNo rows โ the project has no endpoints; say so and stop. Don't invent issues. (The
last_executed_at column here is a convenience endpoint-level timestamp; for call frequency and
cost, use query_log in the next step.)
2. Pull usage from query_log
query_log records every personal-API-key call, tagged with the endpoint name. One query gives
recency and call counts across all endpoints:
SELECT name, count() AS calls, max(query_start_time) AS last_called
FROM query_log
WHERE endpoint LIKE '%/endpoints/%' AND is_personal_api_key_request
GROUP BY name
ORDER BY nameCross-reference with step 1:
- In metadata, absent from
query_logโ never called via API key - Last call more than 30 days ago โ stale
query_log also exposes query_duration_ms, read_rows, and read_bytes per call โ useful to
flag expensive endpoints in the same pass. This is endpoint-level; per-version recency comes from
endpoint-versions (step 3).
3. Check materialisation health and unused versions
For each materialised endpoint, call endpoint-materialization-status (this isn't in the system
tables). Surface any with status: "Failed" separately โ these are active failures, not staleness.
Then call endpoint-versions and read each version's last_executed_at: a materialised
version that's null or long stale is an unused-materialised-version candidate. Treat this as a
lead, not proof โ per-version recency only counts API-key runs since tracking was added, so confirm
with the user before unmaterialising.
4. Present the audit
Render a prioritised report grouped by category. Don't dump raw JSON; use a readable table per section:
## Endpoints audit โ 9 issues
### ๐ด Failing materialisations (1)
- weekly_revenue (v3) โ Failed 2h ago, "Column 'event_date' does not exist"
โ hand off to diagnosing-endpoint-performance
### ๐ Never called via API key (3)
- internal_admin_query โ created 5 months ago
- legacy_signup_funnel โ created 1 year ago, materialised
- experiment_arm_lookup โ created 9 months ago
### ๐ Unused materialised versions (2) [from endpoint-versions]
- monthly_active_users โ v3 materialised, last_executed_at null (currently on v4 โ unmaterialise v3)
- order_summary โ v1 materialised, last_executed_at null
### ๐ก Stale (3)
- holiday_promo_2024 โ last called 4 months ago
- ab_test_phase_1 โ last called 2 months ago
- daily_revenue_cohort โ last called 45 days ago
Recommended order:
1. Investigate the failing materialisation (blocks fresh data)
2. Unmaterialise the unused versions (free storage + compute)
3. Disable the never-called endpoints (if user confirms)
4. Review stale endpoints with the userThe exact format is less important than: prioritised, grouped, actionable, and hand-off clear.
5. Offer the next step
End with a clear question, not a decision:
- "Want me to unmaterialise the unused versions?" โ needs
endpoint-updatewithis_materialized: falseper version - "Want me to disable the never-called endpoints?" โ needs
endpoint-updatewithis_active: false - "Want me to dig into the failing materialisation?" โ hands off to
diagnosing-endpoint-performance
Never act from the audit alone. Disabling or unmaterialising affects external API consumers; always confirm before modifying.
Example interaction
User: "Audit my endpoints"
Agent steps:
- execute-sql on system.data_modeling_endpoints โ 12 endpoints (4 materialised)
- execute-sql on query_log grouped by name โ 8 endpoints have calls
- endpoint-materialization-status on each materialised endpoint โ 1 failing
- endpoint-versions on the materialised ones โ order_summary v2's last_executed_at is null
- Report:
"Found 6 things worth looking at across 12 endpoints:
๐ด Failing materialisations (1)
- monthly_active_users (v2) โ materialisation failed yesterday with
'memory limit exceeded'. The endpoint is still callable inline but
responses will be slower.
๐ Never called via API key (3)
- legacy_funnel_v1 โ created 11 months ago
- test_export โ created 3 months ago
- admin_dump โ created 8 months ago, materialised (wasteful)
๐ Unused materialised versions (1) [from endpoint-versions]
- order_summary v2 โ materialised but its last_executed_at is null
while v3 is current. Likely safe to unmaterialise v2.
๐ก Stale (1)
- holiday_2024 โ last called 5 months ago
Caveat: usage only counts personal-API-key calls; playground and
dashboard runs aren't counted. Per-version recency comes from
endpoint-versions and is sparse. Confirm before disabling.
Want me to start with the failing materialisation, or clean up the
unused version first?"Important notes
- The audit is read-only. Never call destructive tools from this flow. Hand off or confirm before any modification.
- Empty = healthy. Don't pad an empty report with theoretical issues. "Nothing to clean up" is a good answer.
- Read with SQL, drill in with the version tool.
system.data_modeling_endpoints(metadata) andquery_log(endpoint-level call counts, recency, cost) viaexecute-sqlanswer most of the audit. Per-version recency comes fromendpoint-versions(each version'slast_executed_at). - API-key-only scope. Usage only counts personal-API-key calls. An endpoint exercised only from the Playground tab or the app will look unused. Always confirm before acting.
- Materialisation costs storage and compute. When an endpoint no longer needs materialisation,
the cheapest fix is
endpoint-updatewithis_materialized: falseโ not deleting the endpoint. - Inactive โ stale. An endpoint with
is_active: falsewas deliberately turned off. Don't recommend deletion unless the user confirms it's truly abandoned.
npx skills add https://github.com/posthog/skills --skill auditing-endpointsRun this in your project โ your agent picks the skill up automatically.
No common issues documented yet. If you hit a problem, the repository's GitHub Issues page is the best place to look.
Licensed under MITโ you can use, modify, and redistribute it under that license's terms.
View the full license file on GitHub โ