Skills Engineering Define SLO and Error Budget Policy

Define SLO and Error Budget Policy

v20260618
slo-error-budget
This skill guides the creation of a comprehensive Service Level Objective (SLO) document. It helps define Service Level Indicators (SLIs) by identifying critical user journeys and measuring key metrics like success rate and latency. It calculates the allowed "error budget" and establishes a burn rate policy to maintain service reliability while enabling feature velocity and principled trade-offs.
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Overview

SLO and Error Budget Skill

Produce a complete, implementable SLO document for a service — covering what to measure, what target to set, how to calculate the error budget, and what to do when it burns.

A good SLO is not a target to hit. It is an agreement about what reliability means for your users — and a framework for making principled trade-offs between reliability and velocity.

Required Inputs

Ask for these if not already provided:

  • Service name and brief description of what it does
  • Primary users — who depends on this service and how
  • User-facing interactions to protect — e.g. API calls, page loads, transactions
  • Current reliability data — error rate, latency, uptime (last 30–90 days if available)
  • Existing on-call setup — who responds to alerts?
  • Deployment frequency — how often does the team ship?
  • Any existing SLAs with customers — these constrain SLO targets

Key Definitions

Always establish these before writing the SLO:

Term Definition
SLI (Service Level Indicator) The metric being measured — e.g. "% of requests completing successfully in <500ms"
SLO (Service Level Objective) The target for that metric — e.g. "99.5% of requests"
SLA (Service Level Agreement) The contractual commitment to customers — must be looser than the SLO
Error budget The allowed headroom below 100% — the budget for planned and unplanned downtime
Burn rate How fast the error budget is being consumed

Output Format


SLO Document: [Service Name]

Service: [Name] | Team: [Team name] Owner: [Name / role] | Approved by: [Name] Effective date: [Date] | Review date: [Date + 3 months] Version: [1.0]


Why This SLO Exists

[2–3 sentences. What reliability problem are we solving? What was happening before this SLO that made us need it? What decision-making does this SLO enable?]


Service Overview

What this service does: [One sentence] Who depends on it: [Internal teams / external customers / both — describe] Critical user journeys protected by this SLO:

  1. [Journey 1 — e.g. "User completes a payment"]
  2. [Journey 2]
  3. [Journey 3]

SLIs — What We Measure

Define one SLI per user journey or reliability dimension. Keep it to 3–5 SLIs maximum.

SLI 1: [Name — e.g. Request Success Rate]

Field Detail
What it measures [e.g. "% of API requests that return a non-5xx response"]
Good event definition [e.g. "HTTP response with status 2xx or 4xx, completed within 500ms"]
Bad event definition [e.g. "HTTP response with status 5xx, or any response taking >500ms"]
Measurement source [e.g. "Application load balancer access logs / Datadog APM / Prometheus"]
Measured over Rolling 28-day window
Exclusions [e.g. "Health check endpoints excluded / Requests during planned maintenance excluded"]

SLI 2: [Name — e.g. Latency]

Field Detail
What it measures [e.g. "P99 response time for the /checkout endpoint"]
Good event definition [e.g. "Request completes in ≤500ms at P99"]
Bad event definition [e.g. "Request takes >500ms at P99"]
Measurement source [Source]
Measured over Rolling 28-day window
Exclusions [Any exclusions]

SLI 3: [Name — e.g. Data Freshness / Queue Depth / etc.]

[Same structure]


SLO Targets

SLI Target Window Error Budget
[SLI 1 name] [X]% 28-day rolling [100 - X]% = [Y minutes/month]
[SLI 2 name] [X]% 28-day rolling [100 - X]% = [Y minutes/month]
[SLI 3 name] [X]% 28-day rolling [100 - X]% = [Y minutes/month]

How targets were set:

  • Historical baseline (last 90 days): [X]%
  • Target is set [above / at] historical baseline to [improve reliability / reflect current reality while formalising the commitment]
  • Rationale: [1–2 sentences]

What 100% is NOT the target: [Brief explanation of why targeting 100% is counterproductive — it discourages feature development and doesn't reflect user reality]


Error Budget Calculation

For SLI 1 ([Name]), at [X]% target:

Error budget = (100% - SLO target) × measurement window
             = (100% - [X]%) × 28 days × 24 hours × 60 minutes
             = [Y]% × [Z total minutes]
             = [N] minutes of allowed failure per 28-day window

In plain terms: We can afford [N] minutes of [bad events] in any rolling 28-day window before we breach the SLO.


Burn Rate Alerts

Burn rate = how fast the error budget is being consumed relative to the budget window. A burn rate of 1 = consuming the budget at exactly the rate that would exhaust it over 28 days.

Alert Burn rate Window Severity Response
Page (critical) >14× 1 hour P1 Page on-call immediately — budget exhausted in <2 hours
Page (high) >6× 6 hours P2 Page on-call — budget exhausted in <5 days
Ticket (warning) >3× 3 days P3 Create ticket — review at next team meeting
Info >1× 28 days Info Log only — budget on track to exhaust by end of window

Alert implementation: [Link to alert config in monitoring tool — e.g. Datadog, Prometheus/Alertmanager, Grafana]


Error Budget Policy

This policy defines what to do with the error budget — both when it's healthy and when it's burning.

When budget is healthy (>50% remaining)

  • Feature development and deployments proceed at normal pace
  • The team may take on riskier experiments
  • Reliability improvements are scheduled but not urgent

When budget is at risk (25–50% remaining)

  • Deployment frequency reduced — team ships only well-tested changes
  • One reliability improvement added to current sprint
  • Weekly error budget review added to team standup

When budget is nearly exhausted (<25% remaining)

  • Feature work paused in favour of reliability improvements
  • No new deployments without explicit on-call approval
  • Daily review of error budget burn rate
  • CSM / support notified to manage customer expectations

When budget is exhausted (0% remaining — SLO breached)

  • All feature work stops
  • On-call engineer and engineering manager notified immediately
  • Post-incident review (PIR) required within 5 business days
  • SLO target may be temporarily relaxed (with stakeholder approval) while root cause is addressed

Dashboard and Reporting

SLO dashboard: [Link to Datadog / Grafana / etc. dashboard]

Metrics exposed:

  • Current SLO compliance (rolling 28-day)
  • Error budget remaining (% and minutes)
  • Burn rate (current and trend)
  • Incident count and MTTR this window

Reporting cadence:

Audience Frequency Format
Engineering team Weekly Slack summary — #[service]-slo
Engineering manager Monthly SLO review meeting
Stakeholders / customers Quarterly SLO compliance summary

Exclusions and Edge Cases

Planned maintenance: Error budget is not consumed during pre-announced maintenance windows. Maintenance must be communicated [X hours] in advance via [channel].

Dependency failures: If SLO breach is caused by an upstream dependency outside our control, document it — but it still counts against our error budget (our users don't distinguish between our failures and our dependencies' failures).

Force majeure: [Policy for cloud provider outages, major infrastructure events]


SLO Review Cadence

Review When Who Output
Error budget review Weekly Team Budget health check — adjust if burning fast
SLO target review Quarterly Team + EM Adjust targets if baseline has shifted significantly
Annual SLO audit Annually Team + Stakeholders Review SLIs — are we measuring the right things?

When to change the SLO target:

  • Historical baseline has improved significantly and target no longer reflects real reliability
  • User feedback indicates the target is misaligned with what users actually experience
  • The SLO is being gamed (metric is healthy but users are unhappy)

Quality Checks

  • SLIs are user-facing — they measure what users experience, not internal system metrics
  • Good and bad events are precisely defined — no ambiguity about what counts
  • Targets are based on historical data, not aspirational round numbers
  • Error budget policy has clear triggers and clear actions — not "discuss as a team"
  • Burn rate alerts have different windows to catch both fast burns and slow burns
  • Exclusions are documented so they don't silently inflate the SLO number

Anti-Patterns

  • Do not set SLO targets at 100% — this discourages feature development and does not reflect how users experience reliability
  • Do not measure internal system metrics as SLIs — SLIs must reflect what users directly experience, not internal CPU or memory
  • Do not write an error budget policy with vague triggers — "discuss as a team" is not an actionable policy; triggers must be specific percentages
  • Do not base targets on aspirational round numbers — always derive from historical baseline data
  • Do not configure only one burn-rate alert window — a single window misses both fast burns and slow burns that exhaust the budget quietly
Info
Category Engineering
Name slo-error-budget
Version v20260618
Size 9.66KB
Updated At 2026-06-19
Language