| name | performance-optimization |
| description | Optimizes application performance. Use when performance requirements exist, when you suspect performance regressions, or when Core Web Vitals or load times need improvement. Use when profiling reveals bottlenecks that need fixing. |
Performance Optimization
Overview
Measure before optimizing. Performance work without measurement is guessing ā and guessing leads to premature optimization that adds complexity without improving what matters. Profile first, identify the actual bottleneck, fix it, measure again. Optimize only what measurements prove matters.
When to Use
- Performance requirements exist in the spec (load time budgets, response time SLAs)
- Users or monitoring report slow behavior
- Core Web Vitals scores are below thresholds
- You suspect a change introduced a regression
- Building features that handle large datasets or high traffic
When NOT to use: Don't optimize before you have evidence of a problem. Premature optimization adds complexity that costs more than the performance it gains.
Core Web Vitals Targets
| Metric | Good | Needs Improvement | Poor |
|---|
| LCP (Largest Contentful Paint) | ⤠2.5s | ⤠4.0s | > 4.0s |
| INP (Interaction to Next Paint) | ⤠200ms | ⤠500ms | > 500ms |
| CLS (Cumulative Layout Shift) | ⤠0.1 | ⤠0.25 | > 0.25 |
The Optimization Workflow
1. MEASURE ā Establish baseline with real data
2. IDENTIFY ā Find the actual bottleneck (not assumed)
3. FIX ā Address the specific bottleneck
4. VERIFY ā Measure again, confirm improvement
5. GUARD ā Add monitoring or tests to prevent regression
Step 1: Measure
Two complementary approaches ā use both:
- Synthetic (Lighthouse, DevTools Performance tab): Controlled conditions, reproducible. Best for CI regression detection and isolating specific issues.
- RUM (web-vitals library, CrUX): Real user data in real conditions. Required to validate that a fix actually improved user experience.
Frontend:
import { onLCP, onINP, onCLS } from 'web-vitals';
onLCP(console.log);
onINP(console.log);
onCLS(console.log);
Backend:
console.time('db-query');
const result = await db.query(...);
console.timeEnd('db-query');
Where to Start Measuring
Use the symptom to decide what to measure first:
What is slow?
āāā First page load
ā āāā Large bundle? --> Measure bundle size, check code splitting
ā āāā Slow server response? --> Measure TTFB in DevTools Network waterfall
ā ā āāā DNS long? --> Add dns-prefetch / preconnect for known origins
ā ā āāā TCP/TLS long? --> Enable HTTP/2, check edge deployment, keep-alive
ā ā āāā Waiting (server) long? --> Profile backend, check queries and caching
ā āāā Render-blocking resources? --> Check network waterfall for CSS/JS blocking
āāā Interaction feels sluggish
ā āāā UI freezes on click? --> Profile main thread, look for long tasks (>50ms)
ā āāā Form input lag? --> Check re-renders, controlled component overhead
ā āāā Animation jank? --> Check layout thrashing, forced reflows
āāā Page after navigation
ā āāā Data loading? --> Measure API response times, check for waterfalls
ā āāā Client rendering? --> Profile component render time, check for N+1 fetches
āāā Backend / API
āāā Single endpoint slow? --> Profile database queries, check indexes
āāā All endpoints slow? --> Check connection pool, memory, CPU
āāā Intermittent slowness? --> Check for lock contention, GC pauses, external deps
Step 2: Identify the Bottleneck
Common bottlenecks by category:
Frontend:
| Symptom | Likely Cause | Investigation |
|---|
| Slow LCP | Large images, render-blocking resources, slow server | Check network waterfall, image sizes |
| High CLS | Images without dimensions, late-loading content, font shifts | Check layout shift attribution |
| Poor INP | Heavy JavaScript on main thread, large DOM updates | Check long tasks in Performance trace |
| Slow initial load | Large bundle, many network requests | Check bundle size, code splitting |
Backend:
| Symptom | Likely Cause | Investigation |
|---|
| Slow API responses | N+1 queries, missing indexes, unoptimized queries | Check database query log |
| Memory growth | Leaked references, unbounded caches, large payloads | Heap snapshot analysis |
| CPU spikes | Synchronous heavy computation, regex backtracking | CPU profiling |
| High latency | Missing caching, redundant computation, network hops | Trace requests through the stack |
Step 3: Fix Common Anti-Patterns
N+1 Queries (Backend)
const tasks = await db.tasks.findMany()
for (const task of tasks) {
task.owner = await db.users.findUnique({where: {id: task.ownerId}})
}
const tasks = await db.tasks.findMany({
include: {owner: true},
})
Unbounded Data Fetching
const allTasks = await db.tasks.findMany()
const tasks = await db.tasks.findMany({
take: 20,
skip: (page - 1) * 20,
orderBy: {createdAt: 'desc'},
})
Missing Image Optimization (Frontend)
<img src="/hero.jpg" />
<picture>
<source
media="(max-width: 767px)"
srcset="/hero-mobile-400.avif 400w, /hero-mobile-800.avif 800w"
sizes="100vw"
width="800"
height="1000"
type="image/avif"
/>
<source
media="(max-width: 767px)"
srcset="/hero-mobile-400.webp 400w, /hero-mobile-800.webp 800w"
sizes="100vw"
width="800"
height="1000"
type="image/webp"
/>
<source
srcset="/hero-800.avif 800w, /hero-1200.avif 1200w, /hero-1600.avif 1600w"
sizes="(max-width: 1200px) 100vw, 1200px"
width="1200"
height="600"
type="image/avif"
/>
<source
srcset="/hero-800.webp 800w, /hero-1200.webp 1200w, /hero-1600.webp 1600w"
sizes="(max-width: 1200px) 100vw, 1200px"
width="1200"
height="600"
type="image/webp"
/>
<img
src="/hero-desktop.jpg"
width="1200"
height="600"
fetchpriority="high"
alt="Hero image description"
/>
</picture>
<img
src="/content.webp"
width="800"
height="400"
loading="lazy"
decoding="async"
alt="Content image description"
/>
Unnecessary Re-renders (React)
function TaskList() {
return <TaskFilters options={{sortBy: 'date', order: 'desc'}} />
}
const DEFAULT_OPTIONS = {sortBy: 'date', order: 'desc'} as const
function TaskList() {
return <TaskFilters options={DEFAULT_OPTIONS} />
}
const TaskItem = React.memo(function TaskItem({task}: Props) {
return <div>{/* expensive render */}</div>
})
function TaskStats({tasks}: Props) {
const stats = useMemo(() => calculateStats(tasks), [tasks])
return (
<div>
{stats.completed} / {stats.total}
</div>
)
}
Large Bundle Size
const ChartLibrary = lazy(() => import('./ChartLibrary'));
const SettingsPage = lazy(() => import('./pages/Settings'));
function App() {
return (
<Suspense fallback={<Spinner />}>
<SettingsPage />
</Suspense>
);
}
Missing Caching (Backend)
const CACHE_TTL = 5 * 60 * 1000
let cachedConfig: AppConfig | null = null
let cacheExpiry = 0
async function getAppConfig(): Promise<AppConfig> {
if (cachedConfig && Date.now() < cacheExpiry) {
return cachedConfig
}
cachedConfig = await db.config.findFirst()
cacheExpiry = Date.now() + CACHE_TTL
return cachedConfig
}
app.use(
'/static',
express.static('public', {
maxAge: '1y',
immutable: true,
}),
)
res.set('Cache-Control', 'public, max-age=300')
Performance Budget
Set budgets and enforce them:
JavaScript bundle: < 200KB gzipped (initial load)
CSS: < 50KB gzipped
Images: < 200KB per image (above the fold)
Fonts: < 100KB total
API response time: < 200ms (p95)
Time to Interactive: < 3.5s on 4G
Lighthouse Performance score: ā„ 90
Enforce in CI:
npx bundlesize --config bundlesize.config.json
npx lhci autorun
See Also
For detailed performance checklists, optimization commands, and anti-pattern reference, see references/performance-checklist.md.
Common Rationalizations
| Rationalization | Reality |
|---|
| "We'll optimize later" | Performance debt compounds. Fix obvious anti-patterns now, defer micro-optimizations. |
| "It's fast on my machine" | Your machine isn't the user's. Profile on representative hardware and networks. |
| "This optimization is obvious" | If you didn't measure, you don't know. Profile first. |
| "Users won't notice 100ms" | Research shows 100ms delays impact conversion rates. Users notice more than you think. |
| "The framework handles performance" | Frameworks prevent some issues but can't fix N+1 queries or oversized bundles. |
Red Flags
- Optimization without profiling data to justify it
- N+1 query patterns in data fetching
- List endpoints without pagination
- Images without dimensions, lazy loading, or responsive sizes
- Bundle size growing without review
- No performance monitoring in production
React.memo and useMemo everywhere (overusing is as bad as underusing)
Verification
After any performance-related change: