Why Use This This skill provides specialized capabilities for aiskillstore's codebase.
Use Cases Developing new features in the aiskillstore repository Refactoring existing code to follow aiskillstore standards Understanding and working with aiskillstore's codebase structure
Install Guide 2 steps 1 2 Install inside Ananke
Click Install Skill, paste the link below, then press Install.
https://github.com/aiskillstore/marketplace/tree/main/skills/dnyoussef/agentdb-persistent-memory-patterns Skill Snapshot Auto scan of skill assets. Informational only.
Valid SKILL.md Checks against SKILL.md specification
Source & Community
Updated At Jan 19, 2026, 04:39 AM
Skill Stats
SKILL.md 158 Lines
Total Files 1
Total Size 0 B
License NOASSERTION
---
skill_id: when-implementing-persistent-memory-use-agentdb-memory
name: agentdb-persistent-memory-patterns
description: "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"
version: 1.0.0
category: agentdb
subcategory: memory-management
trigger_pattern: "when-implementing-persistent-memory"
agents:
- memory-coordinator
- swarm-memory-manager
- backend-dev
complexity: intermediate
estimated_duration: 6-8 hours
prerequisites:
- AgentDB basics
- Memory management concepts
- Database schema design
outputs:
- Persistent memory architecture
- Session and long-term storage
- Pattern learning system
- Context management APIs
validation_criteria:
- Memory persists across sessions
- Fast retrieval (< 50ms)
- Pattern recognition working
- Context maintained accurately
evidence_based_techniques:
- Self-consistency validation
- Chain-of-verification
- Multi-agent consensus
metadata:
author: claude-flow
created: 2025-10-30
tags:
- agentdb
- memory
- persistence
- context-management
---
# 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
```typescript
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
```typescript
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
```typescript
await memoryManager.consolidate({
from: 'working-memory',
to: 'long-term-memory',
strategy: 'importance-based'
});
```
### Pattern Learning
```typescript
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