| name | planetscale-query-insights-and-tags |
| description | Use PlanetScale Insights and SQLCommenter-style query tags to attribute database load, identify risky queries, and prepare safe Traffic Control or schema recommendations. |
Query Insights and tags
Purpose
Use PlanetScale Insights to understand query behavior, then recommend SQLCommenter-compatible tags that make future diagnosis and Traffic Control possible. Do not change database settings or repository code without approval.
What to inspect
Query behavior
For the selected database and branch, inspect:
- Top queries by total time.
- Top queries by time per execution.
- Top queries by rows read.
- Top queries by execution count.
- For Postgres, top queries by CPU usage (
sort=cpuTime or
sort=percentCpuTime on the Insights API).
- Queries with errors.
- Notable queries and active anomalies.
- Query patterns affected by recent deploys.
- Query patterns attached to schema recommendations.
- For sharded Vitess databases, vindex usage for each query pattern: the
percentage of traffic using relevant vindexes and the vindex-usage trend
over time. The API exposes per-pattern
index_usages and
routing_index_usages; get the trend from the dashboard Vindexes tab or
by comparing API windows. Treat missing or declining relevant-vindex
usage as an indexing or routing investigation input, not as proof that a
new index is required.
Insights API surface
Query Insights is public API: read-only GET endpoints under
organizations/{org}/databases/{db}/branches/{branch}, authorized by a
service token or OAuth token with read_databases/read_database.
/insights — aggregated statistics per query pattern over the requested
window. Set the window with from/to (ISO 8601) or period (for
example 1h, 24h); search SQL patterns with q; sort server-side with
sort and dir — sort keys include count, errorCount, rowsRead,
totalTime, cpuTime, ioTime, percentTime, percentCpuTime,
p50Latency, p99Latency, maxLatency, egressBytes, and the
trafficControlWarnings/trafficControlThrottled family. Filter with
tablet_type (primary, replica, rdonly) and type (SELECT,
INSERT, UPDATE, DELETE); trim responses with fields; paginate
with page/per_page.
/insights/{fingerprint} — individual collected executions for a
pattern (timestamps, duration, rows, username, client address, error
message). Available regardless of raw query collection; raw collection
adds literal parameter values to these records.
/insights/{fingerprint}/summary returns the single-pattern aggregate;
/insights/queries/{id} fetches one execution.
/insights/errors — error fingerprints with counts and messages (q
searches the error message; sort by count, lastRun, totalTime, or
timePerQuery). /insights/errors/{fingerprint} lists the failing
executions behind one error fingerprint.
/insights/anomalies and /insights/anomalies/{id} — anomaly windows
with per-query correlation coefficients identifying which patterns moved
with the anomaly.
/insights/tags — tag keys with observed values (values_limit,
literal_values_only, and fingerprint/keyspace filters);
/insights/tags/{tag} for a single key. /insights/tags/summaries
groups the full statistics schema by one or more tag keys via the tags
parameter — use it to attribute load to routes, jobs, or features
without client-side aggregation.
/insights/{fingerprint}/traffic/budgets — the Traffic Control budgets
and rules that affect a fingerprint (Postgres).
Aggregates cover the requested window. Duration fields use names like
sum_total_duration_millis, with explicit share-of-window percent fields
(sum_total_duration_percent); both totals and percentages are reliable
for the window requested.
The response schema is shared across engines, but some fields are
engine-specific: CPU/IO durations and block-cache statistics
(sum_cpu_duration_millis, blocks_read, block_cache_hit_ratio, …) are
populated for Postgres; shard queries, keyspaces, tablet_type, and
routing-index (vindex) usage are populated for Vitess.
Tag coverage
For each expensive or anomalous query, determine:
- Is it tagged?
- Which service produced it?
- Which route, job, controller, or action produced it?
- Which deployment SHA produced it?
- Is the tag cardinality safe?
- Are tags consistent across frameworks and languages?
- Use the tags API to answer these questions:
/insights/tags shows which
keys and values are present, and /insights/tags/summaries?tags=...
attributes load per tag value. In the Vitess dashboard, filter the query
table with tag:key:value and drill into query details to see tags on
individual executions. Built-in query metadata and SQLCommenter tags are
both valid attribution sources.
Raw query collection
Check whether raw query / complete query collection is enabled. On
Postgres the effective state is the pginsights.raw_queries cluster
parameter (per branch, dashboard Extensions tab, default false); the
database API object's insights_raw_queries field is a separate surface.
When the two differ, report the cluster parameter as the effective state
and do not describe the difference as an inconsistency. On Vitess there
is no cluster parameter; the database API's insights_raw_queries field
is the effective state.
Report it as a capability state, not a risk posture. Raw query collection
records literal parameter values per execution, which pattern-level Insights
data does not provide. It is the mechanism for isolating which specific
invocation of a pattern is pathological. Execution-level records are
retrievable from /insights/{fingerprint} with or without raw collection;
raw collection adds the literal parameter values to those records.
When it is disabled, the finding is a capability gap: identify the query
patterns in this assessment where pattern-level data is insufficient
(unexplained latency variance within a fingerprint, tenant- or
parameter-dependent behavior) and state that raw collection would resolve
them. State the operational property once, as fact: literal values become
visible to the observability pipeline. Where the customer's data-handling
requirements constrain this, scoped enablement (incident windows, defined
retention) and leaving collection disabled are both valid outcomes —
record the rationale rather than a default judgment in either direction.
Tags and raw collection are complementary instruments: tags attribute a
pattern to a code path; raw collection identifies the specific invocation.
Assessments should evaluate both.
SQLCommenter tag schema
Recommend this baseline tag set:
application: stable app name.
service: service or process name.
environment: production, staging, development.
route: normalized route template, for example /accounts/:id/orders, not /accounts/123/orders.
controller: framework controller name where applicable.
action: framework action name where applicable.
job: background job class or worker name.
queue: background queue.
feature: bounded feature name for traffic classes like export, report, search, billing, checkout.
release_sha: short git SHA or deploy identifier.
source: app, worker, script, agent, mcp, bi, integration.
tenant_tier: free, pro, enterprise, internal, only if bounded.
Do not recommend these tags by default:
user_id
request_id
tenant_id
email
session_id
- raw URL
- unbounded GraphQL operation text
- access token
- secret
If the customer needs tenant-level isolation, recommend a bounded abstraction first, such as tenant tier, cell, shard, or customer class. Tenant ID is only acceptable with explicit approval after cardinality and privacy review.
Cardinality rules
Flag a tag as unsafe when:
- Values are unbounded.
- Values include IDs, UUIDs, emails, slugs, or raw paths.
- The same query pattern emits many unique tag combinations.
- The tag would make Insights or Traffic Control aggregation noisy.
Recommend normalizing at the application boundary.
Analysis output
For each top query pattern, produce:
- Fingerprint or normalized query.
- Current metrics.
- Current tags.
- Missing tags.
- Likely source in application code.
- Whether it is a schema recommendation candidate.
- Whether it is a Traffic Control candidate.
- Whether it is an application optimization candidate.
Recommendation classes
Add tags
Recommend SQLCommenter instrumentation when query attribution is weak.
Improve tag normalization
Recommend replacing high-cardinality tags with bounded values.
Add Traffic Control warning budget
For Postgres only, recommend warn mode budgets for expensive but important routes, jobs, analytics, exports, or third-party integrations.
Add schema recommendation workflow
For Vitess, recommend turning open schema recommendations into branch/deploy-request work. For Postgres, recommend turning them into reviewed migrations against a non-production branch.
Fix code path
Recommend a repository PR when the expensive query is caused by N+1, missing pagination, accidental eager load, unbounded export, broad search, or polling.
Safety rules
Do not:
- Enable raw query collection.
- Add tags to code.
- Change Traffic Control budgets.
- Apply schema recommendations.
- Run production EXPLAIN ANALYZE on expensive queries.
Without explicit approval.
Output
Return:
- Query risk table.
- Tag coverage table.
- Bad/high-cardinality tag table.
- Recommended tag schema for this application.
- Candidate Traffic Control slices.
- Candidate schema and code changes.
- Proposed changes requiring approval.
End with:
“No Insights, tag, repository, or Traffic Control changes have been applied.”