Agent skill

advanced-agentdb-vector-search-implementation

Master advanced AgentDB features including QUIC synchronization, multi-database management, custom distance metrics, and hybrid search for distributed AI systems.

Stars 232
Forks 15

Install this agent skill to your Project

npx add-skill https://github.com/aiskillstore/marketplace/tree/main/skills/dnyoussef/advanced-agentdb-vector-search-implementation

Metadata

Additional technical details for this skill

tags
agentdb vector-search distributed-systems quic-sync hybrid-search
author
claude-flow
created
1761782400
updated
1761782400

SKILL.md

Advanced AgentDB Vector Search Implementation

Overview

Master advanced AgentDB features including QUIC synchronization, multi-database management, custom distance metrics, hybrid search, and distributed systems integration for building distributed AI systems, multi-agent coordination, and advanced vector search applications.

When to Use This Skill

Use this skill when you need to:

  • Build distributed vector search systems
  • Implement multi-agent coordination with shared memory
  • Create custom similarity metrics for specialized domains
  • Deploy hybrid search combining vector and traditional methods
  • Scale AgentDB to production with high availability
  • Synchronize multiple AgentDB instances in real-time

SOP Framework: 5-Phase Advanced Vector Search Deployment

Phase 1: Setup AgentDB Infrastructure (2-3 hours)

Objective: Initialize multi-database AgentDB infrastructure with proper configuration

Agent: backend-dev

Steps:

  1. Install AgentDB with advanced features
bash
npm install agentdb-advanced@latest
npm install @agentdb/quic-sync @agentdb/distributed
  1. Initialize primary database
typescript
import { AgentDB } from 'agentdb-advanced';
import { QUICSync } from '@agentdb/quic-sync';

const primaryDB = new AgentDB({
  name: 'primary-vector-db',
  dimensions: 1536, // OpenAI embedding size
  indexType: 'hnsw',
  distanceMetric: 'cosine',
  persistPath: './data/primary',
  advanced: {
    enableQUIC: true,
    multiDB: true,
    hybridSearch: true
  }
});

await primaryDB.initialize();
  1. Configure replica databases
typescript
const replicas = await Promise.all([
  AgentDB.createReplica('replica-1', {
    primary: primaryDB,
    syncMode: 'quic',
    persistPath: './data/replica-1'
  }),
  AgentDB.createReplica('replica-2', {
    primary: primaryDB,
    syncMode: 'quic',
    persistPath: './data/replica-2'
  })
]);
  1. Setup health monitoring
typescript
const monitor = primaryDB.createMonitor({
  checkInterval: 5000,
  metrics: ['latency', 'throughput', 'replication-lag'],
  alerts: {
    replicationLag: 1000, // ms
    errorRate: 0.01
  }
});

monitor.on('alert', (alert) => {
  console.error('Database alert:', alert);
});

Memory Pattern:

typescript
await agentDB.memory.store('agentdb/infrastructure/config', {
  primary: primaryDB.id,
  replicas: replicas.map(r => r.id),
  syncMode: 'quic',
  timestamp: Date.now()
});

Validation:

  • Primary database initialized
  • Replicas connected and syncing
  • Health monitor active
  • Configuration stored in memory

Evidence-Based Validation:

typescript
// Self-consistency check across replicas
const testVector = Array(1536).fill(0).map(() => Math.random());
await primaryDB.insert({ id: 'test-1', vector: testVector });

// Wait for sync
await new Promise(resolve => setTimeout(resolve, 100));

// Verify consistency
const checks = await Promise.all(
  replicas.map(r => r.get('test-1'))
);

const consistent = checks.every(c =>
  c && vectorEquals(c.vector, testVector)
);

console.log('Consistency check:', consistent ? 'PASS' : 'FAIL');

Phase 2: Configure Advanced Features (2-3 hours)

Objective: Setup QUIC synchronization, multi-DB coordination, and advanced routing

Agent: ml-developer

Steps:

  1. Configure QUIC synchronization
typescript
import { QUICConfig } from '@agentdb/quic-sync';

const quicSync = new QUICSync({
  primary: primaryDB,
  replicas: replicas,
  config: {
    maxStreams: 100,
    idleTimeout: 30000,
    keepAlive: 5000,
    congestionControl: 'cubic',
    prioritization: 'weighted-round-robin'
  }
});

await quicSync.start();

// Monitor sync performance
quicSync.on('sync-complete', (stats) => {
  console.log('Sync stats:', {
    duration: stats.duration,
    vectorsSynced: stats.count,
    throughput: stats.count / (stats.duration / 1000)
  });
});
  1. Implement multi-database router
typescript
import { MultiDBRouter } from '@agentdb/distributed';

const router = new MultiDBRouter({
  databases: [primaryDB, ...replicas],
  strategy: 'load-balanced', // or 'nearest', 'round-robin'
  healthCheck: {
    interval: 5000,
    timeout: 1000
  }
});

// Query routing
const searchResults = await router.search({
  vector: queryVector,
  topK: 10,
  strategy: 'fan-out-merge' // Query all, merge results
});
  1. Setup distributed coordination
typescript
import { DistributedCoordinator } from '@agentdb/distributed';

const coordinator = new DistributedCoordinator({
  databases: [primaryDB, ...replicas],
  consensus: 'raft', // or 'gossip', 'quorum'
  leaderElection: true
});

await coordinator.start();

// Handle leadership changes
coordinator.on('leader-elected', (leader) => {
  console.log('New leader:', leader.id);
  primaryDB = leader;
});
  1. Configure failover policies
typescript
const failoverPolicy = {
  maxRetries: 3,
  retryDelay: 1000,
  fallbackStrategy: 'replica-promotion',
  autoRecovery: true
};

router.setFailoverPolicy(failoverPolicy);

Memory Pattern:

typescript
await agentDB.memory.store('agentdb/advanced/quic-config', {
  syncMode: 'quic',
  streams: quicSync.activeStreams,
  routingStrategy: 'load-balanced',
  coordinator: coordinator.id
});

Validation:

  • QUIC sync operational
  • Router distributing load
  • Coordinator elected leader
  • Failover tested

Evidence-Based Validation:

typescript
// Program-of-thought: Test multi-DB coordination
async function validateCoordination() {
  // Step 1: Insert on primary
  const testId = 'coord-test-' + Date.now();
  await primaryDB.insert({ id: testId, vector: testVector });

  // Step 2: Wait for QUIC sync
  await quicSync.waitForSync(testId, { timeout: 2000 });

  // Step 3: Query through router
  const results = await router.search({
    vector: testVector,
    topK: 1,
    filter: { id: testId }
  });

  // Step 4: Verify result from any replica
  return results[0]?.id === testId;
}

const coordValid = await validateCoordination();
console.log('Coordination validation:', coordValid ? 'PASS' : 'FAIL');

Phase 3: Implement Custom Distance Metrics (2-3 hours)

Objective: Create specialized distance functions for domain-specific similarity

Agent: ml-developer

Steps:

  1. Define custom metric interface
typescript
import { DistanceMetric } from 'agentdb-advanced';

interface CustomMetricConfig {
  name: string;
  weightedDimensions?: number[];
  transformFunction?: (vector: number[]) => number[];
  combineMetrics?: {
    metrics: string[];
    weights: number[];
  };
}
  1. Implement weighted Euclidean distance
typescript
const weightedEuclidean: DistanceMetric = {
  name: 'weighted-euclidean',
  compute: (a: number[], b: number[], weights?: number[]) => {
    if (!weights) weights = Array(a.length).fill(1);

    let sum = 0;
    for (let i = 0; i < a.length; i++) {
      sum += weights[i] * Math.pow(a[i] - b[i], 2);
    }
    return Math.sqrt(sum);
  },
  normalize: true
};

primaryDB.registerMetric(weightedEuclidean);
  1. Create hybrid metric (vector + scalar)
typescript
const hybridSimilarity: DistanceMetric = {
  name: 'hybrid-similarity',
  compute: (a: number[], b: number[], metadata?: any) => {
    // Vector similarity (cosine)
    const dotProduct = a.reduce((sum, val, i) => sum + val * b[i], 0);
    const magA = Math.sqrt(a.reduce((sum, val) => sum + val * val, 0));
    const magB = Math.sqrt(b.reduce((sum, val) => sum + val * val, 0));
    const cosineSim = dotProduct / (magA * magB);

    // Scalar similarity (if metadata present)
    let scalarSim = 0;
    if (metadata) {
      scalarSim = 1 - Math.abs(metadata.timestamp - Date.now()) / 1e9;
    }

    // Combine (70% vector, 30% scalar)
    return 0.7 * (1 - cosineSim) + 0.3 * (1 - scalarSim);
  }
};

primaryDB.registerMetric(hybridSimilarity);
  1. Implement domain-specific metrics
typescript
// Example: Code similarity metric
const codeSimilarity: DistanceMetric = {
  name: 'code-similarity',
  compute: (a: number[], b: number[], metadata?: any) => {
    // Vector component
    const vectorDist = cosineDistance(a, b);

    // Syntactic similarity
    const syntaxSim = metadata?.ast_similarity || 0;

    // Semantic similarity
    const semanticSim = metadata?.semantic_similarity || 0;

    // Weighted combination
    return 0.5 * vectorDist + 0.3 * (1 - syntaxSim) + 0.2 * (1 - semanticSim);
  }
};

primaryDB.registerMetric(codeSimilarity);
  1. Benchmark custom metrics
typescript
async function benchmarkMetrics() {
  const testVectors = generateTestVectors(1000);
  const queryVector = testVectors[0];

  const metrics = ['cosine', 'euclidean', 'weighted-euclidean', 'hybrid-similarity'];
  const results: Record<string, any> = {};

  for (const metric of metrics) {
    const start = performance.now();
    const searchResults = await primaryDB.search({
      vector: queryVector,
      topK: 10,
      metric: metric
    });
    const duration = performance.now() - start;

    results[metric] = {
      duration,
      results: searchResults.length,
      accuracy: calculateAccuracy(searchResults)
    };
  }

  return results;
}

const benchmark = await benchmarkMetrics();
await agentDB.memory.store('agentdb/metrics/benchmark', benchmark);

Memory Pattern:

typescript
await agentDB.memory.store('agentdb/custom-metrics/registry', {
  metrics: ['weighted-euclidean', 'hybrid-similarity', 'code-similarity'],
  benchmark: benchmark,
  recommended: 'hybrid-similarity'
});

Validation:

  • Custom metrics registered
  • Metrics produce valid distances
  • Benchmark results collected
  • Best metric identified

Evidence-Based Validation:

typescript
// Chain-of-verification: Validate metric properties
async function verifyMetricProperties(metric: string) {
  const checks = {
    nonNegativity: true,
    symmetry: true,
    triangleInequality: true
  };

  const testVectors = [
    Array(1536).fill(0).map(() => Math.random()),
    Array(1536).fill(0).map(() => Math.random()),
    Array(1536).fill(0).map(() => Math.random())
  ];

  // Check non-negativity
  const d1 = await primaryDB.distance(testVectors[0], testVectors[1], metric);
  checks.nonNegativity = d1 >= 0;

  // Check symmetry: d(a,b) = d(b,a)
  const d2 = await primaryDB.distance(testVectors[1], testVectors[0], metric);
  checks.symmetry = Math.abs(d1 - d2) < 1e-6;

  // Check triangle inequality: d(a,c) <= d(a,b) + d(b,c)
  const dac = await primaryDB.distance(testVectors[0], testVectors[2], metric);
  const dbc = await primaryDB.distance(testVectors[1], testVectors[2], metric);
  checks.triangleInequality = dac <= d1 + dbc + 1e-6;

  return checks;
}

const metricValid = await verifyMetricProperties('hybrid-similarity');
console.log('Metric validation:', metricValid);

Phase 4: Optimize Performance (2-3 hours)

Objective: Apply indexing, caching, and optimization techniques for production performance

Agent: performance-analyzer

Steps:

  1. Configure HNSW indexing
typescript
await primaryDB.createIndex({
  type: 'hnsw',
  params: {
    M: 16, // Number of connections per layer
    efConstruction: 200, // Construction time accuracy
    efSearch: 100, // Search time accuracy
    maxElements: 1000000
  }
});

// Enable index for all replicas
await Promise.all(
  replicas.map(r => r.syncIndex(primaryDB))
);
  1. Implement query caching
typescript
import { QueryCache } from '@agentdb/optimization';

const cache = new QueryCache({
  maxSize: 10000,
  ttl: 3600000, // 1 hour
  strategy: 'lru',
  hashFunction: 'xxhash64'
});

primaryDB.setCache(cache);

// Cache hit monitoring
cache.on('hit', (key, entry) => {
  console.log('Cache hit:', { key, age: Date.now() - entry.timestamp });
});
  1. Enable quantization
typescript
import { Quantization } from '@agentdb/optimization';

const quantizer = new Quantization({
  method: 'product-quantization',
  codebookSize: 256,
  subvectors: 8,
  compressionRatio: 4 // 4x memory reduction
});

await primaryDB.applyQuantization(quantizer);

// Verify accuracy after quantization
const accuracyTest = await benchmarkAccuracy(primaryDB, testQueries);
console.log('Post-quantization accuracy:', accuracyTest);
  1. Batch operations
typescript
import { BatchProcessor } from '@agentdb/optimization';

const batchProcessor = new BatchProcessor({
  batchSize: 1000,
  flushInterval: 5000,
  parallelBatches: 4
});

// Batch inserts
const vectors = generateVectors(10000);
await batchProcessor.insertBatch(primaryDB, vectors);

// Batch searches
const queries = generateQueries(100);
const results = await batchProcessor.searchBatch(primaryDB, queries, {
  topK: 10,
  parallel: true
});
  1. Performance benchmarking
typescript
async function comprehensiveBenchmark() {
  const benchmark = {
    insertThroughput: 0,
    searchLatency: 0,
    searchThroughput: 0,
    memoryUsage: 0,
    cacheHitRate: 0
  };

  // Insert throughput
  const insertStart = performance.now();
  await batchProcessor.insertBatch(primaryDB, generateVectors(10000));
  benchmark.insertThroughput = 10000 / ((performance.now() - insertStart) / 1000);

  // Search latency (p50, p95, p99)
  const latencies: number[] = [];
  for (let i = 0; i < 1000; i++) {
    const start = performance.now();
    await primaryDB.search({ vector: generateQuery(), topK: 10 });
    latencies.push(performance.now() - start);
  }
  latencies.sort((a, b) => a - b);
  benchmark.searchLatency = {
    p50: latencies[Math.floor(latencies.length * 0.5)],
    p95: latencies[Math.floor(latencies.length * 0.95)],
    p99: latencies[Math.floor(latencies.length * 0.99)]
  };

  // Memory usage
  benchmark.memoryUsage = await primaryDB.getMemoryUsage();

  // Cache hit rate
  const cacheStats = cache.getStats();
  benchmark.cacheHitRate = cacheStats.hits / (cacheStats.hits + cacheStats.misses);

  return benchmark;
}

const perfResults = await comprehensiveBenchmark();
await agentDB.memory.store('agentdb/optimization/benchmark', perfResults);

Memory Pattern:

typescript
await agentDB.memory.store('agentdb/optimization/config', {
  indexing: { type: 'hnsw', params: {...} },
  caching: { enabled: true, hitRate: perfResults.cacheHitRate },
  quantization: { method: 'product-quantization', ratio: 4 },
  performance: perfResults
});

Validation:

  • HNSW index built and synced
  • Cache operational with good hit rate
  • Quantization maintains accuracy
  • Performance meets targets (>150x improvement)

Evidence-Based Validation:

typescript
// Multi-agent consensus on performance targets
async function validatePerformanceTargets() {
  const targets = {
    searchLatencyP95: 10, // ms
    insertThroughput: 50000, // vectors/sec
    memoryEfficiency: 4, // compression ratio
    cacheHitRate: 0.7 // 70%
  };

  const results = await comprehensiveBenchmark();

  const validations = {
    latency: results.searchLatency.p95 <= targets.searchLatencyP95,
    throughput: results.insertThroughput >= targets.insertThroughput,
    memory: results.memoryUsage.compressionRatio >= targets.memoryEfficiency,
    cache: results.cacheHitRate >= targets.cacheHitRate
  };

  const allPass = Object.values(validations).every(v => v);

  return { validations, allPass, results };
}

const perfValidation = await validatePerformanceTargets();
console.log('Performance validation:', perfValidation);

Phase 5: Deploy and Monitor (2-3 hours)

Objective: Deploy to production with monitoring, alerting, and operational procedures

Agent: backend-dev

Steps:

  1. Setup production configuration
typescript
const productionConfig = {
  cluster: {
    primary: {
      host: process.env.PRIMARY_HOST,
      port: parseInt(process.env.PRIMARY_PORT),
      replicas: 2
    },
    replicas: [
      { host: process.env.REPLICA1_HOST, port: parseInt(process.env.REPLICA1_PORT) },
      { host: process.env.REPLICA2_HOST, port: parseInt(process.env.REPLICA2_PORT) }
    ]
  },
  monitoring: {
    enabled: true,
    exporters: ['prometheus', 'cloudwatch'],
    alerts: {
      replicationLag: 1000,
      errorRate: 0.01,
      latencyP95: 50
    }
  },
  backup: {
    enabled: true,
    interval: 3600000, // 1 hour
    retention: 7 // days
  }
};

await deployCluster(productionConfig);
  1. Implement monitoring dashboards
typescript
import { MetricsExporter } from '@agentdb/monitoring';

const exporter = new MetricsExporter({
  exporters: [
    {
      type: 'prometheus',
      port: 9090,
      metrics: [
        'agentdb_search_latency',
        'agentdb_insert_throughput',
        'agentdb_replication_lag',
        'agentdb_cache_hit_rate',
        'agentdb_memory_usage'
      ]
    },
    {
      type: 'cloudwatch',
      namespace: 'AgentDB/Production',
      region: 'us-east-1'
    }
  ]
});

await exporter.start();

// Custom metrics
exporter.registerMetric('agentdb_custom_queries', 'counter',
  'Custom metric queries executed'
);
  1. Configure alerting
typescript
import { AlertManager } from '@agentdb/monitoring';

const alertManager = new AlertManager({
  channels: [
    { type: 'email', recipients: ['ops@company.com'] },
    { type: 'slack', webhook: process.env.SLACK_WEBHOOK },
    { type: 'pagerduty', apiKey: process.env.PAGERDUTY_KEY }
  ],
  rules: [
    {
      metric: 'agentdb_replication_lag',
      condition: '> 1000',
      severity: 'critical',
      message: 'Replication lag exceeds 1 second'
    },
    {
      metric: 'agentdb_search_latency_p95',
      condition: '> 50',
      severity: 'warning',
      message: 'Search latency P95 exceeds 50ms'
    },
    {
      metric: 'agentdb_error_rate',
      condition: '> 0.01',
      severity: 'critical',
      message: 'Error rate exceeds 1%'
    }
  ]
});

await alertManager.start();
  1. Implement health checks
typescript
import express from 'express';

const healthApp = express();

healthApp.get('/health', async (req, res) => {
  const health = {
    status: 'healthy',
    timestamp: Date.now(),
    databases: await Promise.all([
      primaryDB.healthCheck(),
      ...replicas.map(r => r.healthCheck())
    ]),
    quic: quicSync.isHealthy(),
    coordinator: coordinator.getStatus()
  };

  const allHealthy = health.databases.every(db => db.status === 'healthy');

  res.status(allHealthy ? 200 : 503).json(health);
});

healthApp.get('/metrics', async (req, res) => {
  const metrics = await exporter.getMetrics();
  res.set('Content-Type', 'text/plain');
  res.send(metrics);
});

healthApp.listen(8080);
  1. Create operational runbook
typescript
const runbook = {
  deployment: {
    steps: [
      '1. Verify configuration in production.env',
      '2. Deploy primary database first',
      '3. Deploy replicas with QUIC sync enabled',
      '4. Verify replication lag < 100ms',
      '5. Enable monitoring and alerting',
      '6. Run smoke tests',
      '7. Gradually increase traffic'
    ]
  },
  troubleshooting: {
    'High replication lag': [
      'Check network connectivity between nodes',
      'Verify QUIC streams are not saturated',
      'Consider increasing QUIC maxStreams',
      'Check primary database load'
    ],
    'Slow search queries': [
      'Verify HNSW index is built',
      'Check cache hit rate',
      'Review query patterns',
      'Consider adjusting efSearch parameter'
    ],
    'Leader election failure': [
      'Check coordinator logs',
      'Verify quorum availability',
      'Check network partitions',
      'Manually trigger election if needed'
    ]
  },
  backup: {
    schedule: 'Hourly incremental, daily full',
    retention: '7 days',
    restore: [
      '1. Stop affected database instance',
      '2. Download backup from S3',
      '3. Restore data directory',
      '4. Start database with --recovery flag',
      '5. Verify data integrity',
      '6. Rejoin cluster'
    ]
  }
};

await agentDB.memory.store('agentdb/production/runbook', runbook);

Memory Pattern:

typescript
await agentDB.memory.store('agentdb/production/deployment', {
  config: productionConfig,
  deployed: Date.now(),
  monitoring: {
    dashboards: ['prometheus:3000', 'grafana:3001'],
    alerts: alertManager.getRules()
  },
  runbook: runbook
});

Validation:

  • Production cluster deployed
  • Monitoring active and exporting metrics
  • Alerts configured and tested
  • Health checks returning 200
  • Runbook documented

Evidence-Based Validation:

typescript
// Self-consistency check: Production readiness
async function validateProductionReadiness() {
  const checks = {
    deployment: false,
    monitoring: false,
    alerting: false,
    healthChecks: false,
    backup: false,
    documentation: false
  };

  // Check deployment
  const clusterStatus = await coordinator.getClusterStatus();
  checks.deployment = clusterStatus.healthy && clusterStatus.nodes.length >= 3;

  // Check monitoring
  const metrics = await exporter.getMetrics();
  checks.monitoring = metrics.length > 0;

  // Check alerting
  const alertStatus = await alertManager.getStatus();
  checks.alerting = alertStatus.active && alertStatus.channels.length > 0;

  // Check health endpoint
  const healthResponse = await fetch('http://localhost:8080/health');
  checks.healthChecks = healthResponse.status === 200;

  // Check backup configuration
  const backupStatus = await checkBackupStatus();
  checks.backup = backupStatus.enabled && backupStatus.lastBackup !== null;

  // Check documentation
  const docs = await agentDB.memory.retrieve('agentdb/production/runbook');
  checks.documentation = docs !== null;

  const readiness = Object.values(checks).every(c => c);

  return { checks, readiness };
}

const prodReadiness = await validateProductionReadiness();
console.log('Production readiness:', prodReadiness);

Integration Scripts

Complete Deployment Script

bash
#!/bin/bash
# deploy-advanced-agentdb.sh

set -e

echo "Advanced AgentDB Deployment Script"
echo "==================================="

# Phase 1: Infrastructure Setup
echo "Phase 1: Setting up infrastructure..."
npm install agentdb-advanced @agentdb/quic-sync @agentdb/distributed @agentdb/optimization @agentdb/monitoring

# Phase 2: Initialize databases
echo "Phase 2: Initializing databases..."
node -e "
const { AgentDB } = require('agentdb-advanced');
const primary = new AgentDB({
  name: 'primary',
  dimensions: 1536,
  advanced: { enableQUIC: true, multiDB: true }
});
await primary.initialize();
console.log('Primary database initialized');
"

# Phase 3: Deploy replicas
echo "Phase 3: Deploying replicas..."
for i in 1 2; do
  node -e "
  const { AgentDB } = require('agentdb-advanced');
  const replica = await AgentDB.createReplica('replica-$i', {
    syncMode: 'quic'
  });
  console.log('Replica $i deployed');
  "
done

# Phase 4: Configure monitoring
echo "Phase 4: Configuring monitoring..."
node -e "
const { MetricsExporter } = require('@agentdb/monitoring');
const exporter = new MetricsExporter({
  exporters: [{ type: 'prometheus', port: 9090 }]
});
await exporter.start();
console.log('Monitoring configured');
"

# Phase 5: Run validation
echo "Phase 5: Running validation..."
npm run test:integration

echo "Deployment complete!"

Quick Start Script

typescript
// quickstart-advanced.ts
import { setupAdvancedAgentDB } from './setup';

async function quickStart() {
  console.log('Starting Advanced AgentDB Quick Setup...');

  // 1. Setup infrastructure
  const { primary, replicas, router } = await setupAdvancedAgentDB({
    dimensions: 1536,
    replicaCount: 2,
    enableQUIC: true
  });

  // 2. Load sample data
  console.log('Loading sample data...');
  const vectors = generateSampleVectors(10000);
  await router.insertBatch(vectors);

  // 3. Test searches
  console.log('Testing searches...');
  const query = vectors[0];
  const results = await router.search({
    vector: query,
    topK: 10,
    metric: 'cosine'
  });
  console.log('Search results:', results.length);

  // 4. Verify replication
  console.log('Verifying replication...');
  const syncStatus = await router.getSyncStatus();
  console.log('Replication lag:', syncStatus.lag, 'ms');

  console.log('Quick setup complete!');
}

quickStart().catch(console.error);

Memory Coordination Patterns

typescript
// Store cluster configuration
await memory.store('agentdb/cluster/config', {
  topology: 'distributed',
  nodes: [primary, ...replicas],
  syncMode: 'quic',
  timestamp: Date.now()
});

// Store performance metrics
await memory.store('agentdb/metrics/latest', {
  searchLatency: perfResults.searchLatency,
  throughput: perfResults.insertThroughput,
  cacheHitRate: perfResults.cacheHitRate
});

// Store custom metrics registry
await memory.store('agentdb/metrics/custom', {
  registered: ['weighted-euclidean', 'hybrid-similarity'],
  active: 'hybrid-similarity',
  benchmarks: benchmark
});

// Store operational state
await memory.store('agentdb/operations/state', {
  deployed: true,
  healthy: true,
  leader: coordinator.getLeader(),
  lastBackup: backupTimestamp
});

Evidence-Based Success Criteria

  1. Multi-Database Consistency (Self-Consistency)

    • All replicas return identical results for same query
    • Replication lag < 100ms
    • Zero data loss during failover
  2. Performance Targets (Benchmarking)

    • Search latency P95 < 10ms
    • Insert throughput > 50,000 vectors/sec
    • Memory efficiency 4x compression
    • Cache hit rate > 70%
  3. Custom Metrics Validity (Chain-of-Verification)

    • Metrics satisfy mathematical properties
    • Metrics improve domain-specific accuracy
    • Metrics perform within latency budget
  4. Production Readiness (Multi-Agent Consensus)

    • Monitoring exports all required metrics
    • Alerts fire correctly in test scenarios
    • Health checks pass consistently
    • Runbook covers common failure modes

Troubleshooting Guide

Issue: High replication lag

typescript
// Diagnose
const diagnostics = await quicSync.diagnose();
console.log('QUIC diagnostics:', diagnostics);

// Fix: Increase stream capacity
await quicSync.reconfigure({
  maxStreams: 200,
  congestionControl: 'bbr'
});

Issue: Slow queries after quantization

typescript
// Check accuracy loss
const accuracy = await benchmarkAccuracy(primaryDB, testQueries);
if (accuracy < 0.95) {
  // Adjust quantization parameters
  await primaryDB.applyQuantization({
    method: 'product-quantization',
    compressionRatio: 2 // Reduce compression
  });
}

Issue: Cache thrashing

typescript
// Analyze cache patterns
const cacheStats = cache.getDetailedStats();
console.log('Cache stats:', cacheStats);

// Adjust cache size or TTL
cache.reconfigure({
  maxSize: 20000, // Increase size
  ttl: 7200000 // Increase TTL to 2 hours
});

Success Metrics

  • 150x faster search vs baseline
  • 4-32x memory reduction with quantization
  • Multi-database synchronization < 100ms lag
  • Custom metrics improve accuracy by 15-30%
  • 99.9% uptime in production
  • Health checks pass continuously

Additional Resources

Expand your agent's capabilities with these related and highly-rated skills.

aiskillstore/marketplace

perigon-backend

Perigon ASP.NET Core + EF Core + Aspire conventions

232 15
Explore
aiskillstore/marketplace

perigon-agent

Pointers for Copilot/agents to apply Perigon conventions

232 15
Explore
aiskillstore/marketplace

perigon-angular

Angular 21+ standalone/Material/signal conventions for Perigon WebApp

232 15
Explore
aiskillstore/marketplace

fastapi-mastery

Comprehensive FastAPI development skill covering REST API creation, routing, request/response handling, validation, authentication, database integration, middleware, and deployment. Use when working with FastAPI projects, building APIs, implementing CRUD operations, setting up authentication/authorization, integrating databases (SQL/NoSQL), adding middleware, handling WebSockets, or deploying FastAPI applications. Triggered by requests involving .py files with FastAPI code, API endpoint creation, Pydantic models, or FastAPI-specific features.

232 15
Explore
aiskillstore/marketplace

context7-efficient

Token-efficient library documentation fetcher using Context7 MCP with 86.8% token savings through intelligent shell pipeline filtering. Fetches code examples, API references, and best practices for JavaScript, Python, Go, Rust, and other libraries. Use when users ask about library documentation, need code examples, want API usage patterns, are learning a new framework, need syntax reference, or troubleshooting with library-specific information. Triggers include questions like "Show me React hooks", "How do I use Prisma", "What's the Next.js routing syntax", or any request for library/framework documentation.

232 15
Explore
aiskillstore/marketplace

browser-use

Browser automation using Playwright MCP. Navigate websites, fill forms, click elements, take screenshots, and extract data. Use when tasks require web browsing, form submission, web scraping, UI testing, or any browser interaction.

232 15
Explore

Didn't find tool you were looking for?

Be as detailed as possible for better results