define-slo-sli-sla
정보
이 Claude Skill은 개발자가 Prometheus와 Sloth 또는 Pyrra 같은 도구를 사용하여 측정 가능한 신뢰성 목표(SLO/SLI/SLA)를 정의하고 구현하도록 돕습니다. 이를 통해 오류 예산 추적, 소진율 알림, 자동화된 보고 기능을 활성화하여 기능 개발과 시스템 신뢰성 사이의 균형을 맞출 수 있습니다. 고객 대면 서비스를 위한 데이터 기반 SRE 관행을 수립하고 임의의 가동 시간 목표를 넘어서고자 할 때 사용하세요.
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문서
Define SLO/SLI/SLA
Establish measurable reliability targets with Service Level Objectives, track them with indicators, and manage error budgets.
When to Use
- Defining reliability targets for customer-facing services or APIs
- Establishing clear expectations between service providers and consumers
- Balancing feature velocity with system reliability through error budgets
- Creating objective criteria for incident severity and response
- Migrating from arbitrary uptime goals to data-driven reliability metrics
- Implementing Site Reliability Engineering (SRE) practices
- Measuring and improving service quality over time
Inputs
- Required: Service description and critical user journeys
- Required: Historical metrics data (request rates, latencies, error rates)
- Optional: Existing SLA commitments to customers
- Optional: Business requirements for service availability and performance
- Optional: Incident history and customer impact data
Procedure
See Extended Examples for complete configuration files and templates.
Step 1: Understand SLI, SLO, and SLA Hierarchy
Learn the relationship and differences between these three concepts.
Definitions:
SLI (Service Level Indicator)
- **What**: A quantitative measure of service behavior
- **Example**: Request success rate, request latency, system throughput
- **Measurement**: `successful_requests / total_requests * 100`
SLO (Service Level Objective)
- **What**: Target value or range for an SLI over a time window
- **Example**: 99.9% of requests succeed in 30-day window
- **Purpose**: Internal reliability target to guide operations
SLA (Service Level Agreement)
- **What**: Contractual commitment with consequences for missing SLO
- **Example**: 99.9% uptime SLA with refunds if breached
- **Purpose**: External promise to customers with penalties
Hierarchy:
SLA (99.9% uptime, customer refunds)
├─ SLO (99.95% success rate, internal target)
│ └─ SLI (actual measured: 99.97% success rate)
└─ Error Budget (0.05% failures allowed per month)
Key principle: SLO should be stricter than SLA to provide buffer before customer impact.
Example:
- SLA: 99.9% availability (customer promise)
- SLO: 99.95% availability (internal target)
- Buffer: 0.05% cushion before SLA breach
Got: Team understands differences, agreement on which metrics become SLIs, alignment on SLO targets.
If fail:
- Review Google SRE book chapters on SLI/SLO/SLA
- Conduct workshop with stakeholders to align on definitions
- Start with simple success-rate SLI before complex latency SLOs
Step 2: Select Appropriate SLIs
Choose SLIs that reflect user experience and business impact.
The Four Golden Signals (Google SRE):
-
Latency: Time to serve a request
# P95 latency histogram_quantile(0.95, sum(rate(http_request_duration_seconds_bucket[5m])) by (le) ) -
Traffic: Demand on the system
# Requests per second sum(rate(http_requests_total[5m])) -
Errors: Rate of failed requests
# Error rate percentage sum(rate(http_requests_total{status=~"5.."}[5m])) / sum(rate(http_requests_total[5m])) * 100 -
Saturation: How "full" the system is
# CPU saturation avg(rate(node_cpu_seconds_total{mode!="idle"}[5m]))
Common SLI patterns:
# Availability SLI
availability:
description: "Percentage of successful requests"
query: |
sum(rate(http_requests_total{status!~"5.."}[5m]))
/ sum(rate(http_requests_total[5m]))
good_threshold: 0.999 # 99.9%
# Latency SLI
latency:
description: "P99 request latency under 500ms"
query: |
histogram_quantile(0.99,
sum(rate(http_request_duration_seconds_bucket[5m])) by (le)
) < 0.5
good_threshold: 0.95 # 95% of windows meet target
# Throughput SLI
throughput:
description: "Requests processed per second"
query: |
sum(rate(http_requests_total[5m]))
good_threshold: 1000 # Minimum 1000 req/s
# Data freshness SLI (for batch jobs)
freshness:
description: "Data updated within last hour"
query: |
(time() - max(data_last_updated_timestamp)) < 3600
good_threshold: 1 # Always fresh
SLI selection criteria:
- User-visible: Reflects actual user experience
- Measurable: Can be quantified from existing metrics
- Actionable: Team can improve it through engineering work
- Meaningful: Correlates with customer satisfaction
- Simple: Easy to understand and explain
Avoid:
- Internal system metrics not visible to users (CPU, memory)
- Vanity metrics that don't predict customer impact
- Overly complex composite scores
Got: 2-4 SLIs selected per service, covering availability and latency at minimum, team agreement on measurement queries.
If fail:
- Map user journey to identify critical failure points
- Analyze incident history: which metrics predicted customer impact?
- Validate SLI with A/B test: degrade metric, measure customer complaints
- Start with simple availability SLI, add complexity iteratively
Step 3: Set SLO Targets and Time Windows
Define realistic and achievable reliability targets.
SLO specification format:
service: user-api
slos:
- name: availability
objective: 99.9
description: |
99.9% of requests return non-5xx status codes
# ... (see EXAMPLES.md for complete configuration)
Time window selection:
Common windows:
- 30 days (monthly): Typical for external SLAs
- 7 days (weekly): Faster feedback for engineering teams
- 1 day (daily): High-frequency services requiring rapid response
Example 30-day window error budget:
SLO: 99.9% availability over 30 days
Allowed failures: 0.1%
Total requests per month: 100M
Error budget: 100,000 failed requests
Daily budget: ~3,333 failed requests
Setting realistic targets:
-
Baseline current performance:
# Check actual availability over past 90 days avg_over_time( (sum(rate(http_requests_total{status!~"5.."}[5m])) / sum(rate(http_requests_total[5m])))[90d:5m] ) # Result: 99.95% → Set SLO at 99.9% (safer than current) -
Calculate cost of nines:
99% → 7.2 hours downtime/month (low reliability) 99.9% → 43 minutes downtime/month (good) 99.95% → 22 minutes downtime/month (very good) 99.99% → 4.3 minutes downtime/month (expensive) 99.999% → 26 seconds downtime/month (very expensive) -
Balance user happiness vs engineering cost:
- Too strict: Expensive, slows feature development
- Too loose: Poor user experience, customer churn
- Sweet spot: Slightly better than user expectations
Got: SLO targets set with business stakeholder buy-in, documented with rationale, error budget calculated.
If fail:
- Start with achievable target (e.g., 99% if current is 98.5%)
- Iterate SLO targets quarterly based on actual performance
- Get executive sponsorship for realistic targets vs "five nines" demands
- Document cost-benefit analysis for each additional nine
Step 4: Implement SLO Monitoring with Sloth
Use Sloth to generate Prometheus recording rules and alerts from SLO specs.
Install Sloth:
# Binary installation
wget https://github.com/slok/sloth/releases/download/v0.11.0/sloth-linux-amd64
chmod +x sloth-linux-amd64
sudo mv sloth-linux-amd64 /usr/local/bin/sloth
# Or Docker
docker pull ghcr.io/slok/sloth:latest
Create Sloth SLO specification (slos/user-api.yml):
version: "prometheus/v1"
service: "user-api"
labels:
team: "platform"
tier: "1"
slos:
# ... (see EXAMPLES.md for complete configuration)
Generate Prometheus rules:
# Generate recording and alerting rules
sloth generate -i slos/user-api.yml -o prometheus/rules/user-api-slo.yml
# Validate generated rules
promtool check rules prometheus/rules/user-api-slo.yml
Generated recording rules (excerpt):
groups:
- name: sloth-slo-sli-recordings-user-api-requests-availability
interval: 30s
rules:
# SLI: Ratio of good events
- record: slo:sli_error:ratio_rate5m
# ... (see EXAMPLES.md for complete configuration)
Generated alerts:
groups:
- name: sloth-slo-alerts-user-api-requests-availability
rules:
# Fast burn: 2% budget consumed in 1 hour
- alert: UserAPIHighErrorRate
expr: |
# ... (see EXAMPLES.md for complete configuration)
Load rules into Prometheus:
# prometheus.yml
rule_files:
- "rules/user-api-slo.yml"
Reload Prometheus:
curl -X POST http://localhost:9090/-/reload
Got: Sloth generates multi-window multi-burn-rate alerts, recording rules evaluate successfully, alerts fire appropriately during incidents.
If fail:
- Validate YAML syntax with
yamllint slos/user-api.yml - Check Sloth version compatibility (v0.11+ recommended)
- Verify Prometheus recording rule evaluation:
curl http://localhost:9090/api/v1/rules - Test with synthetic error injection to trigger alerts
- Check Sloth documentation for SLI event query format
Step 5: Build Error Budget Dashboards
Visualize SLO compliance and error budget consumption in Grafana.
Grafana dashboard JSON (excerpt):
{
"dashboard": {
"title": "SLO Dashboard - User API",
"panels": [
{
"type": "stat",
# ... (see EXAMPLES.md for complete configuration)
Key metrics to visualize:
- SLO target vs current SLI
- Error budget remaining (percentage and absolute)
- Burn rate (how fast budget is depleting)
- Historical SLI trends (30-day rolling window)
- Time to exhaustion (if current burn rate continues)
Error budget policy dashboard (markdown panel):
## Error Budget Policy
**Current Status**: 78% budget remaining
### If Error Budget > 50%
- ✅ Full speed ahead on new features
# ... (see EXAMPLES.md for complete configuration)
Got: Dashboards show real-time SLO compliance, error budget depletion visible, team can make informed decisions about feature velocity.
If fail:
- Verify recording rules exist:
curl http://localhost:9090/api/v1/rules | jq '.data.groups[].rules[] | select(.name | contains("slo:"))' - Check Prometheus datasource in Grafana has correct URL
- Validate query results in Explore view before adding to dashboard
- Ensure time range set to appropriate window (e.g., 30d for monthly SLOs)
Step 6: Establish Error Budget Policy
Define organizational process for managing error budgets.
Error budget policy template:
service: user-api
slo:
availability: 99.9%
latency_p99: 200ms
window: 30 days
# ... (see EXAMPLES.md for complete configuration)
Automate policy enforcement:
# Example: Deployment gate script
import requests
import sys
def check_error_budget(service):
# Query Prometheus for error budget
# ... (see EXAMPLES.md for complete configuration)
Integrate into CI/CD pipeline:
# .github/workflows/deploy.yml
jobs:
check-error-budget:
runs-on: ubuntu-latest
steps:
- name: Check SLO Error Budget
run: |
python scripts/check_error_budget.py user-api
- name: Deploy
if: success()
run: |
kubectl apply -f deploy/
Got: Clear policy documented, automated gates prevent risky deployments during budget depletion, team alignment on reliability priorities.
If fail:
- Start with manual policy enforcement (Slack reminders)
- Gradually automate with soft gates (warnings, not blocks)
- Get executive buy-in before hard gates (blocking deployments)
- Review policy effectiveness quarterly, adjust thresholds as needed
Validation
- SLIs selected reflect user experience and business impact
- SLO targets set with stakeholder agreement and documented rationale
- Prometheus recording rules generate SLI metrics successfully
- Multi-burn-rate alerts configured and tested with synthetic errors
- Grafana dashboards show real-time SLO compliance and error budget
- Error budget policy documented and communicated to team
- Automated gates prevent risky deployments during budget depletion
- Weekly/monthly SLO review meetings scheduled
- Incident retrospectives include SLO impact analysis
- SLO compliance reports shared with stakeholders
Pitfalls
- Overly strict SLOs: Setting "five nines" without cost analysis leads to burnout and slowed feature velocity. Start achievable, iterate up.
- Too many SLIs: Tracking 10+ indicators creates confusion. Focus on 2-4 critical user-facing metrics.
- SLO without SLA buffer: Setting SLO equal to SLA leaves no margin for error before customer impact. Keep 0.05-0.1% buffer.
- Ignoring error budget: Tracking SLOs but not acting on budget depletion defeats the purpose. Enforce error budget policy.
- Vanity metrics as SLIs: Using internal metrics (CPU, memory) instead of user-visible metrics (latency, errors) misaligns priorities.
- No stakeholder buy-in: Engineering-only SLOs without product/business agreement lead to conflicts. Get executive sponsorship.
- Static SLOs: Never reviewing or adjusting targets as system evolves. Revisit quarterly based on actual performance and user feedback.
Related Skills
setup-prometheus-monitoring- Configure Prometheus to collect metrics for SLI calculationconfigure-alerting-rules- Integrate SLO burn rate alerts with Alertmanager for on-call notificationsbuild-grafana-dashboards- Visualize SLO compliance and error budget consumptionwrite-incident-runbook- Include SLO impact in runbooks for prioritizing incident response
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