async function webSearch(query, page=1, size=10, safe='medium') // Replace with real search provider call (Bing/Google/SerpAPI) const providerUrl = `https://api.example.com/search?q=$encodeURIComponent(query)&page=$page&size=$size&safe=$safe`; const res = await fetch(providerUrl, headers: 'API-Key': process.env.SEARCH_KEY ); const json = await res.json(); // map to normalized shape return json.items.map(it => ( null, is_explicit: EXPLICIT_RE.test(it.title + ' ' + it.snippet + ' ' + it.link) ));
Node.js (Express) — key parts
const qh = hashQuery(query); const cacheKey = `search:$qh:$page:$size:$safe`; const cached = await redis.get(cacheKey); if(cached) return res.json(JSON.parse(cached)); danni rivers xxx com top
function hashQuery(q) return crypto.createHash('sha256').update(q).digest('hex');
const app = express(); app.use(express.json()); const redis = new Redis(process.env.REDIS_URL); async function webSearch(query
const payload = results: items, summary: total: items.length, top_domains, explicit_count: items.filter(i=>i.is_explicit).length ; await redis.set(cacheKey, JSON.stringify(payload), 'EX', 60*10); // analytics: increment anonymized counter await redis.incr(`analytics:search_count:$qh.slice(0,8)`); res.json(payload); });
Below is a concise, self-contained plan plus example implementation outlines in Node.js and Python for a backend service and a minimal frontend interface. Swap the search-provider API as needed. const res = await fetch(providerUrl
const items = await webSearch(query, page, size, safe); const top_domains = Object.entries(items.reduce((acc,it)=>0)+1; return acc; , {})) .sort((a,b)=>b[1]-a[1]).slice(0,5).map(([domain,count])=>(domain,count));