.claude/skills/agentdb/when-implementing-adaptive-learning-use-reasoningbank-agentdb/SKILL.md
--- skill_id: when-implementing-adaptive-learning-use-reasoningbank-agentdb name: ReasoningBank Adaptive Learning with AgentDB version: 1.0.0 category: agentdb subcategory: adaptive-learning trigger_pattern: "when-implementing-adaptive-learning" agents: - ml-developer - safla-neural - performance-analyzer complexity: advanced estimated_duration: 8-10 hours prerequisites: - AgentDB advanced features - Reinforcement learning concepts - Neural network understanding outputs: - Reasonin
npx skillsauth add DNYoussef/ai-chrome-extension ReasoningBank Adaptive Learning with AgentDBInstall this skill globally with one command. Works with Claude Code, Cursor, and Windsurf.
3 of 9 scanners reported clean
Some scanners were skipped, did not run, or reported a non-clean status. Review each row below.
Implement ReasoningBank adaptive learning with AgentDB's 150x faster vector database for trajectory tracking, verdict judgment, memory distillation, and pattern recognition. Build self-learning agents that improve decision-making through experience.
import { AgentDB, ReasoningBank } from 'reasoningbank-agentdb';
// Initialize
const db = new AgentDB({
name: 'reasoning-db',
dimensions: 768,
features: { reasoningBank: true }
});
const reasoningBank = new ReasoningBank({
database: db,
trajectoryWindow: 1000,
verdictThreshold: 0.7
});
// Track trajectory
await reasoningBank.trackTrajectory({
agent: 'agent-1',
decision: 'action-A',
reasoning: 'Because X and Y',
context: { state: currentState },
timestamp: Date.now()
});
// Judge verdict
const verdict = await reasoningBank.judgeVerdict({
trajectory: trajectoryId,
outcome: { success: true, reward: 10 },
criteria: ['efficiency', 'correctness']
});
// Learn patterns
const patterns = await reasoningBank.distillPatterns({
minSupport: 0.1,
confidence: 0.8
});
// Apply learning
const decision = await reasoningBank.makeDecision({
context: currentContext,
useLearned: true
});
const trajectory = {
agent: 'agent-1',
steps: [
{ state: s0, action: a0, reasoning: r0 },
{ state: s1, action: a1, reasoning: r1 }
],
outcome: { success: true, reward: 10 }
};
await reasoningBank.storeTrajectory(trajectory);
const verdict = await reasoningBank.judge({
trajectory: trajectory,
criteria: {
efficiency: 0.8,
correctness: 0.9,
novelty: 0.6
}
});
const distilled = await reasoningBank.distill({
trajectories: recentTrajectories,
method: 'pattern-mining',
compression: 0.1 // Keep top 10%
});
const enhanced = await reasoningBank.enhance({
query: newProblem,
patterns: learnedPatterns,
strategy: 'case-based'
});
development
Comprehensive truth scoring, code quality verification, and automatic rollback system with 0.95 accuracy threshold for ensuring high-quality agent outputs and codebase reliability.
development
Comprehensive framework for analyzing, creating, and refining prompts for AI systems using evidence-based techniques
data-ai
Implement adaptive learning with ReasoningBank for pattern recognition, strategy optimization, and continuous improvement
development
Create new Claude Code Skills with proper YAML frontmatter, progressive disclosure structure, and complete directory organization