From perplexity-pack
Optimize Perplexity Sonar API performance with caching, streaming, model routing, and batching. Use when experiencing slow API responses, implementing caching strategies, or optimizing request throughput for Perplexity integrations. Trigger with phrases like "perplexity performance", "optimize perplexity", "perplexity latency", "perplexity caching", "perplexity slow".
npx claudepluginhub flight505/skill-forge --plugin perplexity-packThis skill is limited to using the following tools:
Optimize Perplexity Sonar API for latency, throughput, and cost. Key insight: every Perplexity call performs a live web search, so response times are inherently variable. Typical latencies: sonar 1-3s, sonar-pro 3-8s, sonar-deep-research 10-60s.
Guides Next.js Cache Components and Partial Prerendering (PPR): 'use cache' directives, cacheLife(), cacheTag(), revalidateTag() for caching, invalidation, static/dynamic optimization. Auto-activates on cacheComponents: true.
Guides building MCP servers enabling LLMs to interact with external services via tools. Covers best practices, TypeScript/Node (MCP SDK), Python (FastMCP).
Share bugs, ideas, or general feedback.
Optimize Perplexity Sonar API for latency, throughput, and cost. Key insight: every Perplexity call performs a live web search, so response times are inherently variable. Typical latencies: sonar 1-3s, sonar-pro 3-8s, sonar-deep-research 10-60s.
| Model | Typical Latency | Max Tokens | Best For |
|---|---|---|---|
sonar | 1-3s | 4096 | Quick answers, simple facts |
sonar-pro | 3-8s | 8192 | Deep research, many citations |
sonar-reasoning-pro | 5-15s | 8192 | Multi-step analysis |
sonar-deep-research | 10-60s | 8192 | Comprehensive reports |
import OpenAI from "openai";
const perplexity = new OpenAI({
apiKey: process.env.PERPLEXITY_API_KEY,
baseURL: "https://api.perplexity.ai",
});
type QueryComplexity = "simple" | "standard" | "deep";
function classifyQuery(query: string): QueryComplexity {
const words = query.split(/\s+/).length;
const simplePatterns = [/^what is/i, /^who is/i, /^when did/i, /^define/i, /^how many/i];
const deepPatterns = [/compare.*vs/i, /analysis of/i, /comprehensive/i, /pros and cons/i, /in-depth/i];
if (simplePatterns.some((p) => p.test(query)) && words < 15) return "simple";
if (deepPatterns.some((p) => p.test(query)) || words > 30) return "deep";
return "standard";
}
function selectModel(complexity: QueryComplexity): { model: string; maxTokens: number } {
switch (complexity) {
case "simple": return { model: "sonar", maxTokens: 256 };
case "standard": return { model: "sonar", maxTokens: 1024 };
case "deep": return { model: "sonar-pro", maxTokens: 4096 };
}
}
async function smartSearch(query: string) {
const complexity = classifyQuery(query);
const { model, maxTokens } = selectModel(complexity);
return perplexity.chat.completions.create({
model,
messages: [{ role: "user", content: query }],
max_tokens: maxTokens,
});
}
import { LRUCache } from "lru-cache";
import { createHash } from "crypto";
const CACHE_TTL = {
news: 30 * 60 * 1000, // 30 min for current events
research: 4 * 60 * 60 * 1000, // 4 hours for research
factual: 24 * 60 * 60 * 1000, // 24 hours for stable facts
};
const searchCache = new LRUCache<string, any>({
max: 1000,
ttl: CACHE_TTL.research, // default TTL
});
function cacheKey(query: string, model: string): string {
return createHash("sha256")
.update(`${model}:${query.toLowerCase().trim()}`)
.digest("hex");
}
function detectTTL(query: string): number {
if (/\b(latest|today|breaking|current price|this week)\b/i.test(query))
return CACHE_TTL.news;
if (/\b(what is|define|how does|who is)\b/i.test(query))
return CACHE_TTL.factual;
return CACHE_TTL.research;
}
async function cachedSearch(query: string, model = "sonar") {
const key = cacheKey(query, model);
const cached = searchCache.get(key);
if (cached) return { ...cached, cached: true };
const result = await perplexity.chat.completions.create({
model,
messages: [{ role: "user", content: query }],
});
searchCache.set(key, result, { ttl: detectTTL(query) });
return { ...result, cached: false };
}
async function streamSearch(
query: string,
onChunk: (text: string) => void,
onCitations: (urls: string[]) => void
) {
const stream = await perplexity.chat.completions.create({
model: "sonar-pro",
messages: [{ role: "user", content: query }],
stream: true,
max_tokens: 4096,
});
let fullText = "";
for await (const chunk of stream) {
const text = chunk.choices[0]?.delta?.content || "";
fullText += text;
onChunk(text);
if ((chunk as any).citations) {
onCitations((chunk as any).citations);
}
}
return fullText;
}
import PQueue from "p-queue";
const queue = new PQueue({ concurrency: 3, interval: 1500, intervalCap: 1 });
async function parallelResearch(queries: string[]): Promise<Map<string, any>> {
const results = new Map<string, any>();
await Promise.all(
queries.map((q) =>
queue.add(async () => {
const result = await cachedSearch(q, "sonar");
results.set(q, result);
})
)
);
return results;
}
// Limit tokens to what you actually need
async function optimizedSearch(query: string, detail: "brief" | "full" = "brief") {
return perplexity.chat.completions.create({
model: "sonar",
messages: [
{
role: "system",
content: detail === "brief"
? "Answer in 2-3 sentences maximum."
: "Provide a thorough answer with examples.",
},
{ role: "user", content: query },
],
max_tokens: detail === "brief" ? 150 : 2048,
});
}
| Issue | Cause | Solution |
|---|---|---|
| Latency >10s on sonar | Complex query triggering deep search | Add max_tokens: 512 to limit response |
| Cache hit rate <20% | Queries too unique | Normalize queries (lowercase, trim) |
| Burst 429 errors | Parallel requests too aggressive | Use PQueue with intervalCap |
| Stale cached results | TTL too long for news | Use query-type-aware TTL |
For cost optimization, see perplexity-cost-tuning.