agentdb-persistent-memory-patterns
// Implement persistent memory patterns for AI agents using AgentDB - session memory, long-term storage, pattern learning, and context management for stateful agents, chat systems, and intelligent assistants
$ git log --oneline --stat
stars:194
forks:37
updated:March 4, 2026
SKILL.mdreadonly
SKILL.md Frontmatter
skill_idwhen-implementing-persistent-memory-use-agentdb-memory
nameagentdb-persistent-memory-patterns
descriptionImplement persistent memory patterns for AI agents using AgentDB - session memory, long-term storage, pattern learning, and context management for stateful agents, chat systems, and intelligent assistants
version1.0.0
categoryagentdb
subcategorymemory-management
trigger_patternwhen-implementing-persistent-memory
agentsmemory-coordinator,swarm-memory-manager,backend-dev
complexityintermediate
estimated_duration6-8 hours
prerequisitesAgentDB basics,Memory management concepts,Database schema design
outputsPersistent memory architecture,Session and long-term storage,Pattern learning system,Context management APIs
validation_criteriaMemory persists across sessions,Fast retrieval (< 50ms),Pattern recognition working,Context maintained accurately
evidence_based_techniquesSelf-consistency validation,Chain-of-verification,Multi-agent consensus
metadata[object Object]
AgentDB Persistent Memory Patterns
Overview
Implement persistent memory patterns for AI agents using AgentDB - session memory, long-term storage, pattern learning, and context management for stateful agents, chat systems, and intelligent assistants.
SOP Framework: 5-Phase Memory Implementation
Phase 1: Design Memory Architecture (1-2 hours)
- Define memory schemas (episodic, semantic, procedural)
- Plan storage layers (short-term, working, long-term)
- Design retrieval mechanisms
- Configure persistence strategies
Phase 2: Implement Storage Layer (2-3 hours)
- Create memory stores in AgentDB
- Implement session management
- Build long-term memory persistence
- Setup memory indexing
Phase 3: Test Memory Operations (1-2 hours)
- Validate store/retrieve operations
- Test memory consolidation
- Verify pattern recognition
- Benchmark performance
Phase 4: Optimize Performance (1-2 hours)
- Implement caching layers
- Optimize retrieval queries
- Add memory compression
- Performance tuning
Phase 5: Document Patterns (1 hour)
- Create usage documentation
- Document memory patterns
- Write integration examples
- Generate API documentation
Quick Start
import { AgentDB, MemoryManager } from 'agentdb-memory';
// Initialize memory system
const memoryDB = new AgentDB({
name: 'agent-memory',
dimensions: 768,
memory: {
sessionTTL: 3600,
consolidationInterval: 300,
maxSessionSize: 1000
}
});
const memoryManager = new MemoryManager({
database: memoryDB,
layers: ['episodic', 'semantic', 'procedural']
});
// Store memory
await memoryManager.store({
type: 'episodic',
content: 'User preferred dark theme',
context: { userId: '123', timestamp: Date.now() }
});
// Retrieve memory
const memories = await memoryManager.retrieve({
query: 'user preferences',
type: 'episodic',
limit: 10
});
Memory Patterns
Session Memory
const session = await memoryManager.createSession('user-123');
await session.store('conversation', messageHistory);
await session.store('preferences', userPrefs);
const context = await session.getContext();
Long-Term Storage
await memoryManager.consolidate({
from: 'working-memory',
to: 'long-term-memory',
strategy: 'importance-based'
});
Pattern Learning
const patterns = await memoryManager.learnPatterns({
memory: 'episodic',
algorithm: 'clustering',
minSupport: 0.1
});
Success Metrics
- Memory persists across agent restarts
- Retrieval latency < 50ms (p95)
- Pattern recognition accuracy > 85%
- Context maintained with 95% accuracy
- Memory consolidation working
Additional Resources
- Full documentation: SKILL.md
- Process guide: PROCESS.md
- AgentDB Memory Docs: https://agentdb.dev/docs/memory