| name | slo-optimize |
| description | Analyzes Grafana SLO timeline trends via gcx and produces data-backed advisory recommendations:
objective tuning, alerting sensitivity review, label visibility, or window adjustments.
Use when the user wants to analyze SLO performance trends and receive improvement suggestions.
Trigger on phrases like "optimize my SLO", "SLO improvement suggestions", "tune my SLO",
"SLO performance analysis", or "should I change my SLO objective".
For SLO status overview use slo-check-status.
For investigating breaching SLOs use slo-investigate.
For creating or modifying SLO definitions use slo-manage.
|
| allowed-tools | Bash |
SLO Optimizer
Analyze SLO timeline trends, compute statistics over the past 28 days, and generate advisory
recommendations backed by real metric values. Never modify SLO definitions directly — route to
slo-manage when the user wants to apply a recommendation.
Core Principles
- Use gcx commands exclusively — do not call Grafana APIs directly.
- Trust the user's expertise — skip explanations of what SLOs or burn rates are.
- Use
-o json for agent processing of structured output; default format for user display.
- Show graph output for timeline data so the user can see the trend visually.
- Every recommendation MUST include supporting data (current values, projected values, or
historical comparisons). No generic advice without numbers.
- This skill is advisory only. Route to slo-manage for any changes the user wants to apply.
Prerequisites
gcx configured with a context pointing to the target Grafana instance.
If the user does not supply a UUID, list available SLOs first:
gcx slo definitions list
Ask the user which SLO to analyze if the target is ambiguous.
Optimization Workflow
Step 1: Retrieve SLO Definition
gcx slo definitions get <UUID> -o json
Extract and note:
spec.name — display name
spec.objectives[0].value — current objective (e.g., 0.999)
spec.objectives[0].window — compliance window (e.g., 28d)
spec.query.type — ratio | freeform | threshold
spec.query.ratio.groupByLabels — dimensional labels (may be empty)
spec.alerting — fastBurn / slowBurn configuration (may be absent)
spec.destinationDatasource.uid — datasource UID for metric queries
Step 2: Fetch 28-Day Timeline
gcx slo definitions timeline <UUID> --from now-28d --to now
gcx slo definitions timeline <UUID> --from now-28d --to now -o json
Parse the JSON output to extract SLI values across the time series. Compute:
mean_sli — average SLI over the 28-day window
min_sli — lowest observed SLI point
max_sli — highest observed SLI point
std_dev — variability indicator
If timeline returns no data (NODATA), note it and skip to Step 3 for current status.
Step 3: Get Current Status (Wide Format)
gcx slo definitions status <UUID> -o wide
Extract from the wide output:
- Current SLI value
- Error budget remaining (%)
- Burn rate (current)
- SLI_1H and SLI_1D snapshots
- Status: OK | BREACHING | NODATA
Step 4: Query Raw SLI Metrics (When Timeline Is Insufficient)
When timeline data is sparse (< 7 days of points) or all NODATA, query raw metrics directly
using the datasource UID from Step 1:
gcx metrics query -d <datasource-uid> \
'grafana_slo_sli_window{slo_uuid="<UUID>"}' \
--from now-28d --to now --step 6h
gcx metrics query -d <datasource-uid> \
'grafana_slo_success_rate_5m{slo_uuid="<UUID>"}' \
--from now-28d --to now --step 6h
gcx metrics query -d <datasource-uid> \
'grafana_slo_total_rate_5m{slo_uuid="<UUID>"}' \
--from now-28d --to now --step 6h
If the datasource UID is not in the definition, resolve it:
gcx datasources list --type prometheus
Step 5: Analyze Trends
Classify the pattern using the timeline data from Steps 2 and 4:
Sustained decline — SLI trending downward for 7 or more consecutive days. Compute the
slope over the last 7 days vs. the preceding 7 days to confirm direction.
- Recommendation trigger: investigate underlying service degradation; a window adjustment will
not fix a declining service.
Periodic dips — SLI drops recur at regular intervals (e.g., every weekend, every night).
Look for temporal correlation in the min points.
- Recommendation trigger: window adjustment (e.g., 7d → 28d smooths weekend traffic spikes)
or objective reduction if the dips are expected.
Sudden drops — Step-change in SLI at a specific timestamp (deployment, config change).
Identify the onset timestamp and estimate error budget consumed by the event.
- Recommendation trigger: check alerting is configured; if budget consumed > 20% by a single
event, consider tighter fastBurn thresholds.
Budget exhaustion rate — Project when the error budget will reach 0 based on the current
burn rate from Step 3. Formula:
days_until_exhausted = budget_remaining_pct / (burn_rate * 100 / window_days)
- Recommendation trigger: if < 7 days remain, flag as urgent; route to slo-investigate.
Step 6: Generate Advisory Recommendations
Produce numbered recommendations. Each recommendation requires:
- A specific change (what to do)
- Supporting data (why — current value vs. proposed value)
- Expected outcome
Objective tuning
If mean_sli < objective - 0.005 (more than 0.5 pp below the objective):
- Suggest lowering the objective to
floor(mean_sli * 1000) / 1000 (rounded down to 3 dp).
- Include: current objective, observed mean SLI, proposed objective.
- Rationale: the SLO is chronically breaching due to an unrealistic target.
If mean_sli > objective + 0.010 (more than 1 pp above the objective):
- Suggest tightening the objective toward
mean_sli - 0.005.
- Include: current objective, observed mean SLI, proposed objective.
- Rationale: the SLO is trivially satisfied; tighten to reflect achievable performance.
groupByLabels addition (ratio query type only)
If spec.query.ratio.groupByLabels is empty or absent:
- Recommend adding dimensional labels such as
cluster, service, endpoint, or
status_code depending on what labels exist in the underlying metric series.
- Rationale: without groupByLabels, all dimensions are collapsed — the SLO cannot identify
which dimension is causing a breach.
Alerting configuration
If spec.alerting is absent or empty:
- Recommend configuring fastBurn (page) and slowBurn (ticket) alerts.
- Example thresholds: fastBurn
burnRateThreshold: 14.4 over 1h (consumes 2% budget/hour),
slowBurn burnRateThreshold: 1 over 6h.
If alerting is configured and current burn rate (from Step 3) has been above 2x for the past
7 days (compare burn rate from status with recent timeline values):
- Recommend reviewing alerting thresholds — existing alerts may not be firing despite sustained
budget drain.
- Include: current burn rate, alert threshold from definition, observed duration above 2x.
Window adjustment
If the SLO window is 7d and periodic dips are detected (weekend pattern):
- Recommend switching to 28d to smooth the variability.
- Include: current window, dip frequency, estimated improvement in budget consumption.
If the SLO window is 28d or 30d and mean_sli is very stable (std_dev < 0.001):
- Note the window is appropriate; no change needed.
Step 7: Present Recommendations and Route to slo-manage
Present all recommendations as advisory text. Do not apply any changes.
After presenting recommendations, ask:
"Would you like me to apply any of these recommendations? If so, I'll switch to slo-manage
to pull the current definition and implement the changes with a dry-run first."
If the user confirms, invoke the slo-manage skill to handle the update workflow.
Output Format
SLO: <name>
UUID: <uuid>
Objective: <value> over <window>
Analysis period: now-28d to now
SLI Statistics (28d):
Mean: <value> Min: <value> Max: <value>
Std dev: <value>
Current Status:
SLI: <value> Budget remaining: <pct>% Burn rate: <value>x
SLI (1h): <value> SLI (1d): <value>
[28-day timeline graph]
Trend classification: <Sustained decline | Periodic dips | Sudden drops | Stable>
<One sentence describing the dominant pattern with supporting data>
Advisory Recommendations:
1. <Recommendation title>
Current: <value>
Proposed: <value>
Why: <rationale with numbers>
2. <Recommendation title>
...
[If no recommendations apply:]
No objective or alerting changes recommended. The SLO configuration appears well-calibrated
for the observed performance over the past 28 days.
---
To apply a recommendation: slo-manage will pull the definition and apply the change with
a dry-run. Confirm which recommendation(s) you want to apply.
Error Handling
Collect errors; report them at the end of the analysis, not interleaved with findings.
-
gcx slo definitions get fails (not found): Confirm the UUID and context.
Run gcx slo definitions list to show available SLOs.
-
Timeline returns NODATA: Recording rule metrics may not be populating. Check the
destination datasource configuration. Proceed with raw metric queries in Step 4. If raw
metrics also return NODATA, report the data gap and recommend verifying that the SLO
recording rules are evaluating correctly.
-
Datasource UID not in definition: Run gcx datasources list --type prometheus
and present the list to the user. Do not block the analysis — use the remaining timeline
data from Step 2.
-
Timeline data < 7 days of points: The SLO may be newly created. Note the limited
analysis window, proceed with available data, and suppress trend classifications that
require 7+ days of data.
-
Status returns BREACHING: Note the breach in the output. Include budget exhaustion
rate in the recommendations. Route to slo-investigate for deeper root cause analysis if
the user wants to understand why the SLO is breaching (not just optimize it).
-
gcx command not found or auth error: Check gcx config view to verify
the active context and credentials.