--- name: firecrawl-performance-tuning description: | Optimize FireCrawl API performance with caching, batching, and connection pooling. Use when experiencing slow API responses, implementing caching strategies, or optimizing request throughput for FireCrawl integrations. Trigger with phrases like "firecrawl performance", "optimize firecrawl", "firecrawl latency", "firecrawl caching", "firecrawl slow", "firecrawl batch". allowed-tools: Read, Write, Edit version: 1.0.0 license: MIT author: Jeremy Longshore --- # FireCrawl Performance Tuning ## Overview Optimize FireCrawl API performance with caching, batching, and connection pooling. ## Prerequisites - FireCrawl SDK installed - Understanding of async patterns - Redis or in-memory cache available (optional) - Performance monitoring in place ## Latency Benchmarks | Operation | P50 | P95 | P99 | |-----------|-----|-----|-----| | Read | 50ms | 150ms | 300ms | | Write | 100ms | 250ms | 500ms | | List | 75ms | 200ms | 400ms | ## Caching Strategy ### Response Caching ```typescript import { LRUCache } from 'lru-cache'; const cache = new LRUCache({ max: 1000, ttl: 60000, // 1 minute updateAgeOnGet: true, }); async function cachedFireCrawlRequest( key: string, fetcher: () => Promise, ttl?: number ): Promise { const cached = cache.get(key); if (cached) return cached as T; const result = await fetcher(); cache.set(key, result, { ttl }); return result; } ``` ### Redis Caching (Distributed) ```typescript import Redis from 'ioredis'; const redis = new Redis(process.env.REDIS_URL); async function cachedWithRedis( key: string, fetcher: () => Promise, ttlSeconds = 60 ): Promise { const cached = await redis.get(key); if (cached) return JSON.parse(cached); const result = await fetcher(); await redis.setex(key, ttlSeconds, JSON.stringify(result)); return result; } ``` ## Request Batching ```typescript import DataLoader from 'dataloader'; const firecrawlLoader = new DataLoader( async (ids) => { // Batch fetch from FireCrawl const results = await firecrawlClient.batchGet(ids); return ids.map(id => results.find(r => r.id === id) || null); }, { maxBatchSize: 100, batchScheduleFn: callback => setTimeout(callback, 10), } ); // Usage - automatically batched const [item1, item2, item3] = await Promise.all([ firecrawlLoader.load('id-1'), firecrawlLoader.load('id-2'), firecrawlLoader.load('id-3'), ]); ``` ## Connection Optimization ```typescript import { Agent } from 'https'; // Keep-alive connection pooling const agent = new Agent({ keepAlive: true, maxSockets: 10, maxFreeSockets: 5, timeout: 30000, }); const client = new FireCrawlClient({ apiKey: process.env.FIRECRAWL_API_KEY!, httpAgent: agent, }); ``` ## Pagination Optimization ```typescript async function* paginatedFireCrawlList( fetcher: (cursor?: string) => Promise<{ data: T[]; nextCursor?: string }> ): AsyncGenerator { let cursor: string | undefined; do { const { data, nextCursor } = await fetcher(cursor); for (const item of data) { yield item; } cursor = nextCursor; } while (cursor); } // Usage for await (const item of paginatedFireCrawlList(cursor => firecrawlClient.list({ cursor, limit: 100 }) )) { await process(item); } ``` ## Performance Monitoring ```typescript async function measuredFireCrawlCall( operation: string, fn: () => Promise ): Promise { const start = performance.now(); try { const result = await fn(); const duration = performance.now() - start; console.log({ operation, duration, status: 'success' }); return result; } catch (error) { const duration = performance.now() - start; console.error({ operation, duration, status: 'error', error }); throw error; } } ``` ## Instructions ### Step 1: Establish Baseline Measure current latency for critical FireCrawl operations. ### Step 2: Implement Caching Add response caching for frequently accessed data. ### Step 3: Enable Batching Use DataLoader or similar for automatic request batching. ### Step 4: Optimize Connections Configure connection pooling with keep-alive. ## Output - Reduced API latency - Caching layer implemented - Request batching enabled - Connection pooling configured ## Error Handling | Issue | Cause | Solution | |-------|-------|----------| | Cache miss storm | TTL expired | Use stale-while-revalidate | | Batch timeout | Too many items | Reduce batch size | | Connection exhausted | No pooling | Configure max sockets | | Memory pressure | Cache too large | Set max cache entries | ## Examples ### Quick Performance Wrapper ```typescript const withPerformance = (name: string, fn: () => Promise) => measuredFireCrawlCall(name, () => cachedFireCrawlRequest(`cache:${name}`, fn) ); ``` ## Resources - [FireCrawl Performance Guide](https://docs.firecrawl.com/performance) - [DataLoader Documentation](https://github.com/graphql/dataloader) - [LRU Cache Documentation](https://github.com/isaacs/node-lru-cache) ## Next Steps For cost optimization, see `firecrawl-cost-tuning`.