reasoningbank with agentdb

ReasoningBank with AgentDB

Safety Notice

This listing is imported from skills.sh public index metadata. Review upstream SKILL.md and repository scripts before running.

Copy this and send it to your AI assistant to learn

Install skill "reasoningbank with agentdb" with this command: npx skills add natea/fitfinder/natea-fitfinder-reasoningbank-with-agentdb

ReasoningBank with AgentDB

What This Skill Does

Provides ReasoningBank adaptive learning patterns using AgentDB's high-performance backend (150x-12,500x faster). Enables agents to learn from experiences, judge outcomes, distill memories, and improve decision-making over time with 100% backward compatibility.

Performance: 150x faster pattern retrieval, 500x faster batch operations, <1ms memory access.

Prerequisites

  • Node.js 18+

  • AgentDB v1.0.7+ (via agentic-flow)

  • Understanding of reinforcement learning concepts (optional)

Quick Start with CLI

Initialize ReasoningBank Database

Initialize AgentDB for ReasoningBank

npx agentdb@latest init ./.agentdb/reasoningbank.db --dimension 1536

Start MCP server for Claude Code integration

npx agentdb@latest mcp claude mcp add agentdb npx agentdb@latest mcp

Migrate from Legacy ReasoningBank

Automatic migration with validation

npx agentdb@latest migrate --source .swarm/memory.db

Verify migration

npx agentdb@latest stats ./.agentdb/reasoningbank.db

Quick Start with API

import { createAgentDBAdapter, computeEmbedding } from 'agentic-flow/reasoningbank';

// Initialize ReasoningBank with AgentDB const rb = await createAgentDBAdapter({ dbPath: '.agentdb/reasoningbank.db', enableLearning: true, // Enable learning plugins enableReasoning: true, // Enable reasoning agents cacheSize: 1000, // 1000 pattern cache });

// Store successful experience const query = "How to optimize database queries?"; const embedding = await computeEmbedding(query);

await rb.insertPattern({ id: '', type: 'experience', domain: 'database-optimization', pattern_data: JSON.stringify({ embedding, pattern: { query, approach: 'indexing + query optimization', outcome: 'success', metrics: { latency_reduction: 0.85 } } }), confidence: 0.95, usage_count: 1, success_count: 1, created_at: Date.now(), last_used: Date.now(), });

// Retrieve similar experiences with reasoning const result = await rb.retrieveWithReasoning(embedding, { domain: 'database-optimization', k: 5, useMMR: true, // Diverse results synthesizeContext: true, // Rich context synthesis });

console.log('Memories:', result.memories); console.log('Context:', result.context); console.log('Patterns:', result.patterns);

Core ReasoningBank Concepts

  1. Trajectory Tracking

Track agent execution paths and outcomes:

// Record trajectory (sequence of actions) const trajectory = { task: 'optimize-api-endpoint', steps: [ { action: 'analyze-bottleneck', result: 'found N+1 query' }, { action: 'add-eager-loading', result: 'reduced queries' }, { action: 'add-caching', result: 'improved latency' } ], outcome: 'success', metrics: { latency_before: 2500, latency_after: 150 } };

const embedding = await computeEmbedding(JSON.stringify(trajectory));

await rb.insertPattern({ id: '', type: 'trajectory', domain: 'api-optimization', pattern_data: JSON.stringify({ embedding, pattern: trajectory }), confidence: 0.9, usage_count: 1, success_count: 1, created_at: Date.now(), last_used: Date.now(), });

  1. Verdict Judgment

Judge whether a trajectory was successful:

// Retrieve similar past trajectories const similar = await rb.retrieveWithReasoning(queryEmbedding, { domain: 'api-optimization', k: 10, });

// Judge based on similarity to successful patterns const verdict = similar.memories.filter(m => m.pattern.outcome === 'success' && m.similarity > 0.8 ).length > 5 ? 'likely_success' : 'needs_review';

console.log('Verdict:', verdict); console.log('Confidence:', similar.memories[0]?.similarity || 0);

  1. Memory Distillation

Consolidate similar experiences into patterns:

// Get all experiences in domain const experiences = await rb.retrieveWithReasoning(embedding, { domain: 'api-optimization', k: 100, optimizeMemory: true, // Automatic consolidation });

// Distill into high-level pattern const distilledPattern = { domain: 'api-optimization', pattern: 'For N+1 queries: add eager loading, then cache', success_rate: 0.92, sample_size: experiences.memories.length, confidence: 0.95 };

await rb.insertPattern({ id: '', type: 'distilled-pattern', domain: 'api-optimization', pattern_data: JSON.stringify({ embedding: await computeEmbedding(JSON.stringify(distilledPattern)), pattern: distilledPattern }), confidence: 0.95, usage_count: 0, success_count: 0, created_at: Date.now(), last_used: Date.now(), });

Integration with Reasoning Agents

AgentDB provides 4 reasoning modules that enhance ReasoningBank:

  1. PatternMatcher

Find similar successful patterns:

const result = await rb.retrieveWithReasoning(queryEmbedding, { domain: 'problem-solving', k: 10, useMMR: true, // Maximal Marginal Relevance for diversity });

// PatternMatcher returns diverse, relevant memories result.memories.forEach(mem => { console.log(Pattern: ${mem.pattern.approach}); console.log(Similarity: ${mem.similarity}); console.log(Success Rate: ${mem.success_count / mem.usage_count}); });

  1. ContextSynthesizer

Generate rich context from multiple memories:

const result = await rb.retrieveWithReasoning(queryEmbedding, { domain: 'code-optimization', synthesizeContext: true, // Enable context synthesis k: 5, });

// ContextSynthesizer creates coherent narrative console.log('Synthesized Context:', result.context); // "Based on 5 similar optimizations, the most effective approach // involves profiling, identifying bottlenecks, and applying targeted // improvements. Success rate: 87%"

  1. MemoryOptimizer

Automatically consolidate and prune:

const result = await rb.retrieveWithReasoning(queryEmbedding, { domain: 'testing', optimizeMemory: true, // Enable automatic optimization });

// MemoryOptimizer consolidates similar patterns and prunes low-quality console.log('Optimizations:', result.optimizations); // { consolidated: 15, pruned: 3, improved_quality: 0.12 }

  1. ExperienceCurator

Filter by quality and relevance:

const result = await rb.retrieveWithReasoning(queryEmbedding, { domain: 'debugging', k: 20, minConfidence: 0.8, // Only high-confidence experiences });

// ExperienceCurator returns only quality experiences result.memories.forEach(mem => { console.log(Confidence: ${mem.confidence}); console.log(Success Rate: ${mem.success_count / mem.usage_count}); });

Legacy API Compatibility

AgentDB maintains 100% backward compatibility with legacy ReasoningBank:

import { retrieveMemories, judgeTrajectory, distillMemories } from 'agentic-flow/reasoningbank';

// Legacy API works unchanged (uses AgentDB backend automatically) const memories = await retrieveMemories(query, { domain: 'code-generation', agent: 'coder' });

const verdict = await judgeTrajectory(trajectory, query);

const newMemories = await distillMemories( trajectory, verdict, query, { domain: 'code-generation' } );

Performance Characteristics

  • Pattern Search: 150x faster (100µs vs 15ms)

  • Memory Retrieval: <1ms (with cache)

  • Batch Insert: 500x faster (2ms vs 1s for 100 patterns)

  • Trajectory Judgment: <5ms (including retrieval + analysis)

  • Memory Distillation: <50ms (consolidate 100 patterns)

Advanced Patterns

Hierarchical Memory

Organize memories by abstraction level:

// Low-level: Specific implementation await rb.insertPattern({ type: 'concrete', domain: 'debugging/null-pointer', pattern_data: JSON.stringify({ embedding, pattern: { bug: 'NPE in UserService.getUser()', fix: 'Add null check' } }), confidence: 0.9, // ... });

// Mid-level: Pattern across similar cases await rb.insertPattern({ type: 'pattern', domain: 'debugging', pattern_data: JSON.stringify({ embedding, pattern: { category: 'null-pointer', approach: 'defensive-checks' } }), confidence: 0.85, // ... });

// High-level: General principle await rb.insertPattern({ type: 'principle', domain: 'software-engineering', pattern_data: JSON.stringify({ embedding, pattern: { principle: 'fail-fast with clear errors' } }), confidence: 0.95, // ... });

Multi-Domain Learning

Transfer learning across domains:

// Learn from backend optimization const backendExperience = await rb.retrieveWithReasoning(embedding, { domain: 'backend-optimization', k: 10, });

// Apply to frontend optimization const transferredKnowledge = backendExperience.memories.map(mem => ({ ...mem, domain: 'frontend-optimization', adapted: true, }));

CLI Operations

Database Management

Export trajectories and patterns

npx agentdb@latest export ./.agentdb/reasoningbank.db ./backup.json

Import experiences

npx agentdb@latest import ./experiences.json

Get statistics

npx agentdb@latest stats ./.agentdb/reasoningbank.db

Shows: total patterns, domains, confidence distribution

Migration

Migrate from legacy ReasoningBank

npx agentdb@latest migrate --source .swarm/memory.db --target .agentdb/reasoningbank.db

Validate migration

npx agentdb@latest stats .agentdb/reasoningbank.db

Troubleshooting

Issue: Migration fails

Check source database exists

ls -la .swarm/memory.db

Run with verbose logging

DEBUG=agentdb:* npx agentdb@latest migrate --source .swarm/memory.db

Issue: Low confidence scores

// Enable context synthesis for better quality const result = await rb.retrieveWithReasoning(embedding, { synthesizeContext: true, useMMR: true, k: 10, });

Issue: Memory growing too large

// Enable automatic optimization const result = await rb.retrieveWithReasoning(embedding, { optimizeMemory: true, // Consolidates similar patterns });

// Or manually optimize await rb.optimize();

Learn More

Category: Machine Learning / Reinforcement Learning Difficulty: Intermediate Estimated Time: 20-30 minutes

Source Transparency

This detail page is rendered from real SKILL.md content. Trust labels are metadata-based hints, not a safety guarantee.

Related Skills

Related by shared tags or category signals.

Automation

agentdb learning plugins

No summary provided by upstream source.

Repository SourceNeeds Review
Automation

hooks automation

No summary provided by upstream source.

Repository SourceNeeds Review
Automation

agentdb advanced features

No summary provided by upstream source.

Repository SourceNeeds Review
Automation

agentdb performance optimization

No summary provided by upstream source.

Repository SourceNeeds Review