clerk-rate-limits
Understand and manage Clerk rate limits and quotas. Use when hitting rate limits, optimizing API usage, or planning for high-traffic scenarios. Trigger with phrases like "clerk rate limit", "clerk quota", "clerk API limits", "clerk throttling".
Best use case
clerk-rate-limits is best used when you need a repeatable AI agent workflow instead of a one-off prompt.
Understand and manage Clerk rate limits and quotas. Use when hitting rate limits, optimizing API usage, or planning for high-traffic scenarios. Trigger with phrases like "clerk rate limit", "clerk quota", "clerk API limits", "clerk throttling".
Teams using clerk-rate-limits should expect a more consistent output, faster repeated execution, less prompt rewriting.
When to use this skill
- You want a reusable workflow that can be run more than once with consistent structure.
When not to use this skill
- You only need a quick one-off answer and do not need a reusable workflow.
- You cannot install or maintain the underlying files, dependencies, or repository context.
Installation
Claude Code / Cursor / Codex
Manual Installation
- Download SKILL.md from GitHub
- Place it in
.claude/skills/clerk-rate-limits/SKILL.mdinside your project - Restart your AI agent — it will auto-discover the skill
How clerk-rate-limits Compares
| Feature / Agent | clerk-rate-limits | Standard Approach |
|---|---|---|
| Platform Support | Not specified | Limited / Varies |
| Context Awareness | High | Baseline |
| Installation Complexity | Unknown | N/A |
Frequently Asked Questions
What does this skill do?
Understand and manage Clerk rate limits and quotas. Use when hitting rate limits, optimizing API usage, or planning for high-traffic scenarios. Trigger with phrases like "clerk rate limit", "clerk quota", "clerk API limits", "clerk throttling".
Where can I find the source code?
You can find the source code on GitHub using the link provided at the top of the page.
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SKILL.md Source
# Clerk Rate Limits
## Overview
Understand Clerk's rate limiting system and implement strategies to avoid hitting limits. Covers Backend API rate limits, retry logic, batching, caching, and monitoring.
## Prerequisites
- Clerk account with API access
- Understanding of your application's traffic patterns
- Monitoring/logging infrastructure
## Instructions
### Step 1: Understand Rate Limits
Clerk Backend API enforces rate limits per API key:
| Plan | Rate Limit | Burst |
|------|-----------|-------|
| Free | 20 req/10s | 40 |
| Pro | 100 req/10s | 200 |
| Enterprise | Custom | Custom |
Rate limit headers returned on every response:
- `X-RateLimit-Limit` — max requests per window
- `X-RateLimit-Remaining` — remaining requests
- `X-RateLimit-Reset` — seconds until window resets
### Step 2: Implement Rate Limit Handling with Retry
```typescript
// lib/clerk-api.ts
import { createClerkClient } from '@clerk/backend'
const clerk = createClerkClient({ secretKey: process.env.CLERK_SECRET_KEY! })
async function withRetry<T>(fn: () => Promise<T>, maxRetries = 3): Promise<T> {
for (let attempt = 0; attempt <= maxRetries; attempt++) {
try {
return await fn()
} catch (err: any) {
if (err.status === 429 && attempt < maxRetries) {
// Parse retry-after header or use exponential backoff
const retryAfter = err.headers?.['retry-after']
const waitMs = retryAfter ? parseInt(retryAfter) * 1000 : Math.pow(2, attempt) * 1000
console.warn(`Rate limited. Retrying in ${waitMs}ms (attempt ${attempt + 1}/${maxRetries})`)
await new Promise((resolve) => setTimeout(resolve, waitMs))
continue
}
throw err
}
}
throw new Error('Max retries exceeded')
}
// Usage
export async function getUser(userId: string) {
return withRetry(() => clerk.users.getUser(userId))
}
```
### Step 3: Batch Operations
```typescript
// lib/clerk-batch.ts
import { createClerkClient } from '@clerk/backend'
const clerk = createClerkClient({ secretKey: process.env.CLERK_SECRET_KEY! })
async function batchGetUsers(userIds: string[], batchSize = 10) {
const results = []
for (let i = 0; i < userIds.length; i += batchSize) {
const batch = userIds.slice(i, i + batchSize)
const users = await Promise.all(batch.map((id) => clerk.users.getUser(id)))
results.push(...users)
// Respect rate limits between batches
if (i + batchSize < userIds.length) {
await new Promise((resolve) => setTimeout(resolve, 500))
}
}
return results
}
// For listing: use pagination instead of fetching all
async function getAllUsers() {
const allUsers = []
let offset = 0
const limit = 100
while (true) {
const batch = await clerk.users.getUserList({ limit, offset })
allUsers.push(...batch.data)
if (batch.data.length < limit) break
offset += limit
await new Promise((resolve) => setTimeout(resolve, 200)) // Rate limit pause
}
return allUsers
}
```
### Step 4: Caching Strategy
```typescript
// lib/clerk-cache.ts
const userCache = new Map<string, { user: any; cachedAt: number }>()
const CACHE_TTL = 60_000 // 1 minute
export async function getCachedUser(userId: string) {
const cached = userCache.get(userId)
if (cached && Date.now() - cached.cachedAt < CACHE_TTL) {
return cached.user
}
const { createClerkClient } = await import('@clerk/backend')
const clerk = createClerkClient({ secretKey: process.env.CLERK_SECRET_KEY! })
const user = await clerk.users.getUser(userId)
userCache.set(userId, { user, cachedAt: Date.now() })
return user
}
// Invalidate cache on webhook events
export function invalidateUserCache(userId: string) {
userCache.delete(userId)
}
```
For production, use Redis instead of in-memory cache:
```typescript
import { Redis } from '@upstash/redis'
const redis = Redis.fromEnv()
export async function getCachedUserRedis(userId: string) {
const cached = await redis.get(`clerk:user:${userId}`)
if (cached) return cached
const clerk = createClerkClient({ secretKey: process.env.CLERK_SECRET_KEY! })
const user = await clerk.users.getUser(userId)
await redis.set(`clerk:user:${userId}`, JSON.stringify(user), { ex: 60 })
return user
}
```
### Step 5: Monitor Rate Limit Usage
```typescript
// lib/clerk-monitor.ts
let rateLimitHits = 0
export function trackRateLimit(response: Response) {
const remaining = parseInt(response.headers.get('X-RateLimit-Remaining') || '999')
const limit = parseInt(response.headers.get('X-RateLimit-Limit') || '0')
if (remaining < limit * 0.1) {
console.warn(`[Clerk] Rate limit warning: ${remaining}/${limit} remaining`)
}
if (remaining === 0) {
rateLimitHits++
console.error(`[Clerk] Rate limit hit! Total hits this session: ${rateLimitHits}`)
}
}
```
## Output
- Retry logic with exponential backoff for 429 responses
- Batch operations respecting rate limits
- Multi-level caching (in-memory + Redis)
- Rate limit monitoring with warnings
## Error Handling
| Error | Cause | Solution |
|-------|-------|----------|
| `429 Too Many Requests` | Rate limit exceeded | Implement retry with backoff, add caching |
| `quota_exceeded` | Monthly MAU quota hit | Upgrade plan or reduce active users |
| Concurrent limit hit | Too many parallel requests | Queue requests, reduce `batchSize` |
| Stale cache data | Cache not invalidated | Invalidate on `user.updated` webhook |
## Examples
### Quick Rate Limit Check
```bash
# Check current rate limit status
curl -s -D - -H "Authorization: Bearer $CLERK_SECRET_KEY" \
https://api.clerk.com/v1/users?limit=1 2>&1 | grep -i x-ratelimit
```
## Resources
- [Clerk Rate Limits](https://clerk.com/docs/backend-requests/resources/rate-limits)
- [Backend API Best Practices](https://clerk.com/docs/backend-requests/overview)
- [Clerk Pricing & Quotas](https://clerk.com/pricing)
## Next Steps
Proceed to `clerk-security-basics` for security best practices.Related Skills
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