by @chrislemke
Implement ReasoningBank adaptive learning with AgentDB's 150x faster vector database. Includes trajectory tracking, verdict judgment, memory distillation, and pattern recognition. Use when building self-learning agents, optimizing decision-making, or implementing experience replay systems.
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.
# 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
# Automatic migration with validation
npx agentdb@latest migrate --source .swarm/memory.db
# Verify migration
npx agentdb@latest stats ./.agentdb/reasoningbank.db
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.n...