release-manager

Ship features safely with progressive rollouts, feature flags, and canary deployments. Use when deploying risky features or need gradual rollouts.

Safety Notice

This listing is imported from skills.sh public index metadata. Review upstream SKILL.md and repository scripts before running.

Copy this and send it to your AI assistant to learn

Install skill "release-manager" with this command: npx skills add daffy0208/ai-dev-standards/daffy0208-ai-dev-standards-release-manager

Release Manager

Ship features safely with progressive rollouts.

Progressive Rollout Strategy

Phase 1 - Internal (Day 1):
  - 100% to internal team
  - Test thoroughly
  - Fix critical bugs

Phase 2 - Beta (Day 2-3):
  - 5% to beta users
  - Monitor errors/performance
  - Collect feedback

Phase 3 - Gradual (Day 4-7):
  - 25% of users
  - Watch metrics closely
  - 50% of users if good
  - 100% if still good

Phase 4 - Full Release:
  - 100% of users
  - Remove feature flag
  - Announce publicly

Feature Flags

// Feature flag implementation
const featureFlags = {
  newDashboard: {
    enabled: true,
    rollout: 0.25, // 25% of users
    userGroups: ['beta-testers'], // Always on for beta
  }
}

function isFeatureEnabled(feature, user) {
  const flag = featureFlags[feature]

  // Check user group
  if (user.groups.some(g => flag.userGroups.includes(g))) {
    return true
  }

  // Check rollout percentage
  const hash = hashUserId(user.id)
  return (hash % 100) < (flag.rollout * 100)
}

// Usage
{isFeatureEnabled('newDashboard', user) ? (
  <NewDashboard />
) : (
  <OldDashboard />
)}

Deployment Strategies

Blue-Green Deployment

Process: 1. Deploy to "green" environment
  2. Test green thoroughly
  3. Switch traffic to green
  4. Keep blue as rollback

Pros: Instant rollback
Cons: 2x infrastructure cost

Canary Deployment

Process: 1. Deploy to 5% of servers
  2. Monitor for 1 hour
  3. If good, deploy to 25%
  4. Monitor for 1 hour
  5. If good, deploy to 100%

Pros: Gradual, safe
Cons: Slower rollout

Rollback Plan

Criteria for Rollback:
  - Error rate > 1%
  - Performance degradation > 20%
  - Critical bug discovered
  - Negative user feedback

Rollback Process: 1. Disable feature flag immediately
  2. Notify team
  3. Investigate issue
  4. Fix and redeploy

Release Checklist

Pre-Release

  • Code reviewed
  • Tests passing
  • Staging tested
  • Feature flag configured
  • Rollback plan ready
  • Monitoring alerts set

During Release

  • Deploy to 5% first
  • Watch error rate
  • Monitor performance
  • Check user feedback
  • Gradually increase

Post-Release

  • Monitor for 24 hours
  • Collect feedback
  • Remove feature flag
  • Document learnings

Monitoring

Key Metrics During Release:
  - Error rate
  - Response time p95
  - CPU/memory usage
  - User-reported issues

Alerts:
  - Error rate > 1% → Pause rollout
  - Response time > 2s → Investigate
  - Memory spike > 90% → Rollback

Communication

Internal:
  - Slack announcement
  - Deploy log updated
  - Engineering team notified

External:
  - Changelog updated
  - Email to power users (if major)
  - Blog post (if significant)

Summary

Safe releases:

  • ✅ Start small (5%)
  • ✅ Monitor closely
  • ✅ Rollback readily
  • ✅ Feature flags everywhere
  • ✅ Document process

Source Transparency

This detail page is rendered from real SKILL.md content. Trust labels are metadata-based hints, not a safety guarantee.

Related Skills

Related by shared tags or category signals.

Coding

animation-designer

No summary provided by upstream source.

Repository SourceNeeds Review
Coding

brand-designer

No summary provided by upstream source.

Repository SourceNeeds Review
Coding

data-visualizer

No summary provided by upstream source.

Repository SourceNeeds Review
Coding

3d-visualizer

No summary provided by upstream source.

Repository SourceNeeds Review