AgentDB Memory Patterns
AgentDB Memory Patterns
What This Skill Does
Provides memory management patterns for AI agents using AgentDB's persistent storage and ReasoningBank integration. Enables agents to remember conversations, learn from interactions, and maintain context across sessions.
Performance: 150x-12,500x faster than traditional solutions with 100% backward compatibility.
Prerequisites
- Node.js 18+
- AgentDB v1.0.7+ (via agentic-flow or standalone)
- Understanding of agent architectures
Quick Start with CLI
Initialize AgentDB
# Initialize vector database
npx agentdb@latest init ./agents.db
# Or with custom dimensions
npx agentdb@latest init ./agents.db --dimension 768
# Use preset configurations
npx agentdb@latest init ./agents.db --preset large
# In-memory database for testing
npx agentdb@latest init ./memory.db --in-memory
Start MCP Server for Claude Code
# Start MCP server (integrates with Claude Code)
npx agentdb@latest mcp
# Add to Claude Code (one-time setup)
claude mcp add agentdb npx agentdb@latest mcp
Create Learning Plugin
# Interactive plugin wizard
npx agentdb@latest create-plugin
# Use template directly
npx agentdb@latest create-plugin -t decision-transformer -n my-agent
# Available templates:
# - decision-transformer (sequence modeling RL)
# - q-learning (value-based learning)
# - sarsa (on-policy TD learning)
# - actor-critic (policy gradient)
# - curiosity-driven (exploration-based)
Quick Start with API
import { createAgentDBAdapter } from 'agentic-flow/reasoningbank';
// Initialize with default configuration
const adapter = await createAgentDBAdapter({
dbPath: '.agentdb/reasoningbank.db',
enableLearning: true, // Enable learning plugins
enableReasoning: true, // Enable reasoning agents
quantizationType: 'scalar', // binary | scalar | product | none
cacheSize: 1000, // In-memory cache
});
// Store interaction memory
const patternId = await adapter.insertPattern({
id: '',
type: 'pattern',
domain: 'conversation',
pattern_data: JSON.stringify({
embedding: await computeEmbedding('What is the capital of France?'),
pattern: {
user: 'What is the capital of France?',
assistant: 'The capital of France is Paris.',
timestamp: Date.now()
}
}),
confidence: 0.95,
usage_count: 1,
success_count: 1,
created_at: Date.now(),
last_used: Date.now(),
});
// Retrieve context with reasoning
const context = await adapter.retrieveWithReasoning(queryEmbedding, {
domain: 'conversation',
k: 10,
useMMR: true, // Maximal Marginal Relevance
synthesizeContext: true, // Generate rich context
});
Memory Patterns
1. Session Memory
class SessionMemory {
async storeMessage(role: string, content: string) {
return await db.storeMemory({
sessionId: this.sessionId,
role,
content,
timestamp: Date.now()
});
}
async getSessionHistory(limit = 20) {
return await db.query({
filters: { sessionId: this.sessionId },
orderBy: 'timestamp',
limit
});
}
}
2. Long-Term Memory
// Store important facts
await db.storeFact({
category: 'user_preference',
key: 'language',
value: 'English',
confidence: 1.0,
source: 'explicit'
});
// Retrieve facts
const prefs = await db.getFacts({
category: 'user_preference'
});
3. Pattern Learning
// Learn from successful interactions
await db.storePattern({
trigger: 'user_asks_time',
response: 'provide_formatted_time',
success: true,
context: { timezone: 'UTC' }
});
// Apply learned patterns
const pattern = await db.matchPattern(currentContext);
Advanced Patterns
Hierarchical Memory
// Organize memory in hierarchy
await memory.organize({
immediate: recentMessages, // Last 10 messages
shortTerm: sessionContext, // Current session
longTerm: importantFacts, // Persistent facts
semantic: embeddedKnowledge // Vector search
});
Memory Consolidation
// Periodically consolidate memories
await memory.consolidate({
strategy: 'importance', // Keep important memories
maxSize: 10000, // Size limit
minScore: 0.5 // Relevance threshold
});
CLI Operations
Query Database
# Query with vector embedding
npx agentdb@latest query ./agents.db "[0.1,0.2,0.3,...]"
# Top-k results
npx agentdb@latest query ./agents.db "[0.1,0.2,0.3]" -k 10
# With similarity threshold
npx agentdb@latest query ./agents.db "0.1 0.2 0.3" -t 0.75
# JSON output
npx agentdb@latest query ./agents.db "[...]" -f json
Import/Export Data
# Export vectors to file
npx agentdb@latest export ./agents.db ./backup.json
# Import vectors from file
npx agentdb@latest import ./backup.json
# Get database statistics
npx agentdb@latest stats ./agents.db
Performance Benchmarks
# Run performance benchmarks
npx agentdb@latest benchmark
# Results show:
# - Pattern Search: 150x faster (100µs vs 15ms)
# - Batch Insert: 500x faster (2ms vs 1s)
# - Large-scale Query: 12,500x faster (8ms vs 100s)
Integration with ReasoningBank
import { createAgentDBAdapter, migrateToAgentDB } from 'agentic-flow/reasoningbank';
// Migrate from legacy ReasoningBank
const result = await migrateToAgentDB(
'.swarm/memory.db', // Source (legacy)
'.agentdb/reasoningbank.db' // Destination (AgentDB)
);
console.log(`✅ Migrated ${result.patternsMigrated} patterns`);
// Train learning model
const adapter = await createAgentDBAdapter({
enableLearning: true,
});
await adapter.train({
epochs: 50,
batchSize: 32,
});
// Get optimal strategy with reasoning
const result = await adapter.retrieveWithReasoning(queryEmbedding, {
domain: 'task-planning',
synthesizeContext: true,
optimizeMemory: true,
});
Learning Plugins
Available Algorithms (9 Total)
- Decision Transformer - Sequence modeling RL (recommended)
- Q-Learning - Value-based learning
- SARSA - On-policy TD learning
- Actor-Critic - Policy gradient with baseline
- Active Learning - Query selection
- Adversarial Training - Robustness
- Curriculum Learning - Progressive difficulty
- Federated Learning - Distributed learning
- Multi-task Learning - Transfer learning
List and Manage Plugins
# List available plugins
npx agentdb@latest list-plugins
# List plugin templates
npx agentdb@latest list-templates
# Get plugin info
npx agentdb@latest plugin-info <name>
Reasoning Agents (4 Modules)
- PatternMatcher - Find similar patterns with HNSW indexing
- ContextSynthesizer - Generate rich context from multiple sources
- MemoryOptimizer - Consolidate similar patterns, prune low-quality
- ExperienceCurator - Quality-based experience filtering
Best Practices
- Enable quantization: Use scalar/binary for 4-32x memory reduction
- Use caching: 1000 pattern cache for <1ms retrieval
- Batch operations: 500x faster than individual inserts
- Train regularly: Update learning models with new experiences
- Enable reasoning: Automatic context synthesis and optimization
- Monitor metrics: Use
statscommand to track performance
Troubleshooting
Issue: Memory growing too large
# Check database size
npx agentdb@latest stats ./agents.db
# Enable quantization
# Use 'binary' (32x smaller) or 'scalar' (4x smaller)
Issue: Slow search performance
# Enable HNSW indexing and caching
# Results: <100µs search time
Issue: Migration from legacy ReasoningBank
# Automatic migration with validation
npx agentdb@latest migrate --source .swarm/memory.db
Performance Characteristics
- Vector Search: <100µs (HNSW indexing)
- Pattern Retrieval: <1ms (with cache)
- Batch Insert: 2ms for 100 patterns
- Memory Efficiency: 4-32x reduction with quantization
- Backward Compatibility: 100% compatible with ReasoningBank API
Learn More
- GitHub: https://github.com/ruvnet/agentic-flow/tree/main/packages/agentdb
- Documentation: node_modules/agentic-flow/docs/AGENTDB_INTEGRATION.md
- MCP Integration:
npx agentdb@latest mcpfor Claude Code - Website: https://agentdb.ruv.io
More from dnyoussef/ai-chrome-extension
agent-creator
Creates specialized AI agents with optimized system prompts using the official 4-phase SOP methodology from Desktop .claude-flow, combined with evidence-based prompting techniques and Claude Agent SDK implementation. Use this skill when creating production-ready agents for specific domains, workflows, or tasks requiring consistent high-quality performance with deeply embedded domain knowledge.
3github-project-management
Comprehensive GitHub project management with swarm-coordinated issue tracking, project board automation, and sprint planning
3prompt-architect
Comprehensive framework for analyzing, creating, and refining prompts for AI systems. Use when creating prompts for Claude, ChatGPT, or other language models, improving existing prompts, or applying evidence-based prompt engineering techniques. Applies structural optimization, self-consistency patterns, and anti-pattern detection to transform prompts into highly effective versions.
3pptx-generation
Enterprise-grade PowerPoint deck generation system using evidence-based prompting techniques, workflow enforcement, and constraint-based design. Use when creating professional presentations (board decks, reports, analyses) requiring consistent visual quality, accessibility compliance, and integration of complex data from multiple sources. Implements html2pptx workflow with spatial layout optimization, validation gates, and multi-chat architecture for 30+ slide decks.
3style-audit
Audits code against CI/CD style rules, quality guidelines, and best practices, then rewrites code to meet standards without breaking functionality. Use this skill after functionality validation to ensure code is not just correct but also maintainable, readable, and production-ready. The skill applies linting rules, enforces naming conventions, improves code organization, and refactors for clarity while preserving all behavioral correctness verified by functionality audits.
3smart-bug-fix
Intelligent bug fixing workflow combining root cause analysis, multi-model reasoning, Codex auto-fix, and comprehensive testing. Uses RCA agent, Codex iteration, and validation to systematically fix bugs.
3