Skills Development Tuning Glean Search Performance

Tuning Glean Search Performance

v20260423
glean-performance-tuning
Provides advanced best practices for optimizing Glean's enterprise search performance and scalability. Covers critical techniques such as implementing effective batch sizing, caching strategies, connection pooling, and robust rate limit management to significantly reduce search latency and maintain high-throughput indexing for massive, diverse datasets.
Get Skill
379 downloads
Overview

Glean Performance Tuning

Overview

Glean's enterprise search API handles search queries across multiple connectors, bulk document indexing, and connector sync throughput. Search latency compounds when querying across dozens of datasources simultaneously. Large indexing jobs (10K+ documents) require careful batching to avoid rate limits and maintain connector sync schedules. Optimizing batch sizes, caching frequent search results, and tuning connector configurations reduces search P95 latency and keeps indexing pipelines within SLA windows.

Caching Strategy

const cache = new Map<string, { data: any; expiry: number }>();
const TTL = { search: 60_000, suggestions: 30_000, datasources: 600_000 };

async function cached(key: string, ttlKey: keyof typeof TTL, fn: () => Promise<any>) {
  const entry = cache.get(key);
  if (entry && entry.expiry > Date.now()) return entry.data;
  const data = await fn();
  cache.set(key, { data, expiry: Date.now() + TTL[ttlKey] });
  return data;
}
// Search results expire fast (1 min). Datasource metadata is stable (10 min).

Batch Operations

import PQueue from 'p-queue';
const BATCH_SIZE = 100;

async function indexDocsBatched(glean: any, dsName: string, docs: any[]) {
  const batches = [];
  for (let i = 0; i < docs.length; i += BATCH_SIZE) batches.push(docs.slice(i, i + BATCH_SIZE));
  const queue = new PQueue({ concurrency: 3, interval: 500 });
  await Promise.all(batches.map(batch =>
    queue.add(() => glean.indexDocuments(dsName, batch))
  ));
}

Connection Pooling

import { Agent } from 'https';
const agent = new Agent({ keepAlive: true, maxSockets: 15, maxFreeSockets: 5, timeout: 30_000 });
// High socket count for parallel indexing across multiple datasources

Rate Limit Management

async function withGleanRateLimit(fn: () => Promise<any>): Promise<any> {
  try { return await fn(); }
  catch (err: any) {
    if (err.status === 429) {
      const retryMs = parseInt(err.headers?.['retry-after'] || '5') * 1000;
      await new Promise(r => setTimeout(r, retryMs));
      return fn();
    }
    throw err;
  }
}

Monitoring

const metrics = { searches: 0, indexOps: 0, cacheHits: 0, p95LatencyMs: 0, errors: 0 };
const latencies: number[] = [];
function trackSearch(startMs: number, cached: boolean) {
  const lat = Date.now() - startMs; latencies.push(lat); metrics.searches++;
  if (cached) metrics.cacheHits++;
  latencies.sort((a, b) => a - b);
  metrics.p95LatencyMs = latencies[Math.floor(latencies.length * 0.95)] || 0;
}

Performance Checklist

  • Batch indexing calls at 100 docs per request with 3 concurrent workers
  • Use incremental indexing for real-time updates (< 100 docs)
  • Switch to bulkindexdocuments for daily full refreshes (> 1K docs)
  • Cache repeated search queries with 1-min TTL
  • Set descriptive document titles and full body text for relevance
  • Keep connector sync schedules staggered to avoid burst load
  • Monitor P95 search latency and indexing throughput
  • Enable keep-alive connections with high socket count for parallel ops

Error Handling

Issue Cause Fix
Slow cross-datasource search Too many connectors queried in parallel Prioritize datasources, set query scope
429 on bulk indexing Batch size or concurrency too high Reduce to 100/batch, 3 concurrent, 500ms interval
Stale search results Index lag after document updates Use incremental indexing with webhooks on change
Connector sync timeout Large datasource with no checkpointing Enable incremental sync with cursor tracking
Missing documents in results Incomplete metadata during indexing Include title, body, author, and updated_at fields

Resources

Next Steps

See glean-reference-architecture.

Info
Category Development
Name glean-performance-tuning
Version v20260423
Size 4.36KB
Updated At 2026-04-26
Language