AgentDB Learning Plugins
- Repo stars 54,444
- Author updated Live
- Author repo ruflo
- Domain
- AI
- Compatible agents
-
- Claude Code
- Cursor
- Cline
- Codex
- Windsurf
- Gemini CLI
- +20
- Trust score
- 88 / 100 · community maintained
- Author / version / license
- @ruvnet · no license declared
- Token usage
- Lean
- Setup complexity
- Guided setup
- External API key
- Not required
- Operating systems
- macOS · Linux · Windows
- Runtime requirements
- Node.js
- Permissions
-
- Read-only
- Write / modify
- Shell exec
- Network behavior
- Local-only
- Install commands
- 26 variants
Profile is derived at build time from SKILL.md and install vectors. Subject to drift from author intent.
Heads up: 未限定 allowed-tools,默认拥有全部工具权限。
---
name: AgentDB Learning Plugins
description: Create and train AI learning plugins with AgentDB's 9 reinforcement learning algorithms. Include…
category: ai
runtime: Node.js
---
# AgentDB Learning Plugins output preview
## PART A: Task fit
- Use case: Create and train AI learning plugins with AgentDB's 9 reinforcement learning algorithms. Includes Decision Transformer, Q-Learning, SARSA, Actor-Critic, and more. Use when building self-learning agents, implementing RL, or optimizing agent behavior through experience..
- Inputs: target material, constraints, expected output, and acceptance criteria.
- Evidence boundary: follow “What This Skill Does / Prerequisites / Quick Start with CLI” and do not present inference as author intent.
## PART B: Execution result
- **01** The card summarizes the use case; runtime output centers on “Create and train AI learning plugins with AgentDB's 9 reinforcement learning algorithms. Includes Decision Transformer, Q-Learning, SARSA, Actor-Critic, and more. Use when building self-learning agents, implementing RL, or optimizing agent behavior through experience.”.
- **02** When the source has headings, the agent prioritizes “What This Skill Does / Prerequisites / Quick Start with CLI” so the result follows the author’s structure.
- **03** Typical output includes task judgment, concrete steps, required commands or file edits, validation, and follow-up options.
- **04** Risk context follows the fingerprint: read files, write/modify files, run shell commands; mostly runs locally; usually needs no extra API key.
## Running Rules
- read files, write/modify files, run shell commands; mostly runs locally; usually needs no extra API key.
- Validate with a small sample before expanding scope.
- Return the result, validation criteria, and next iteration options. The source does not require a stable slash command. After installation, invoke the skill by name and describe the task.
Name target files or source material, expected output, forbidden changes, and whether network or shell access is allowed. Permission fingerprint: read files, write/modify files, run shell commands.
Start with a small task and check whether the result follows “What This Skill Does / Prerequisites / Quick Start with CLI”. Inspect diffs, logs, previews, or tests before expanding scope.
Confirm the final output includes a concrete result, evidence, and next action. If it stays generic, tighten inputs, boundaries, and acceptance criteria.
---
name: AgentDB Learning Plugins
description: Create and train AI learning plugins with AgentDB's 9 reinforcement learning algorithms. Include…
category: ai
source: ruvnet/ruflo
---
# AgentDB Learning Plugins
## When to use
- Create and train AI learning plugins with AgentDB's 9 reinforcement learning algorithms. Includes Decision Transformer…
- Use it when the task has clear inputs, repeatable steps, and validation criteria.
## What to provide
- Target material, scope, expected result, and forbidden changes.
- Whether network, commands, file writes, or external services are allowed.
## Execution rules
- Organize steps around “What This Skill Does / Prerequisites / Quick Start with CLI” and keep inference separate from source facts.
- read files, write/modify files, run shell commands; mostly runs locally; usually needs no extra API key.
- Validate with a small sample before expanding the task.
## Output requirements
- Return the deliverable, key evidence, validation method, and next action.
- Mark missing information as unknown; do not invent commands, platforms, or dependencies. The author source anchors workflow facts; repository files anchor sources and commands; Fluxly only adds fit, limitations, and quality judgment.
skill "AgentDB Learning Plugins" {
input -> user goal + target files + boundaries + acceptance criteria
context -> What This Skill Does / Prerequisites / Quick Start with CLI
rules -> SKILL.md triggers / order / output contract
runtime -> Node.js | read files, write/modify files, run shell commands | mostly runs locally
guardrails -> usually needs no extra API key + small-sample validation + diff/log review
output -> copyable result + checklist + next iteration
} AgentDB Learning Plugins
What This Skill Does
Provides access to 9 reinforcement learning algorithms via AgentDB's plugin system. Create, train, and deploy learning plugins for autonomous agents that improve through experience. Includes offline RL (Decision Transformer), value-based learning (Q-Learning), policy gradients (Actor-Critic), and advanced techniques.
Performance: Train models 10-100x faster with WASM-accelerated neural inference.
Prerequisites
- Node.js 18+
- AgentDB v1.0.7+ (via agentic-flow)
- Basic understanding of reinforcement learning (recommended)
Quick Start with CLI
Create Learning Plugin
# Interactive wizard
npx agentdb@latest create-plugin
# Use specific template
npx agentdb@latest create-plugin -t decision-transformer -n my-agent
# Preview without creating
npx agentdb@latest create-plugin -t q-learning --dry-run
# Custom output directory
npx agentdb@latest create-plugin -t actor-critic -o .$plugins
List Available Templates
# Show all plugin templates
npx agentdb@latest list-templates
# Available templates:
# - decision-transformer (sequence modeling RL - recommended)
# - q-learning (value-based learning)
# - sarsa (on-policy TD learning)
# - actor-critic (policy gradient with baseline)
# - curiosity-driven (exploration-based)
Manage Plugins
# List installed plugins
npx agentdb@latest list-plugins
# Get plugin information
npx agentdb@latest plugin-info my-agent
# Shows: algorithm, configuration, training status
Quick Start with API
import { createAgentDBAdapter } from 'agentic-flow$reasoningbank';
// Initialize with learning enabled
const adapter = await createAgentDBAdapter({
dbPath: '.agentdb$learning.db',
enableLearning: true, // Enable learning plugins
enableReasoning: true,
cacheSize: 1000,
});
// Store training experience
await adapter.insertPattern({
id: '',
type: 'experience',
domain: 'game-playing',
pattern_data: JSON.stringify({
embedding: await computeEmbedding('state-action-reward'),
pattern: {
state: [0.1, 0.2, 0.3],
action: 2,
reward: 1.0,
next_state: [0.15, 0.25, 0.35],
done: false
}
}),
confidence: 0.9,
usage_count: 1,
success_count: 1,
created_at: Date.now(),
last_used: Date.now(),
});
// Train learning model
const metrics = await adapter.train({
epochs: 50,
batchSize: 32,
});
console.log('Training Loss:', metrics.loss);
console.log('Duration:', metrics.duration, 'ms');
Available Learning Algorithms (9 Total)
1. Decision Transformer (Recommended)
Type: Offline Reinforcement Learning Best For: Learning from logged experiences, imitation learning Strengths: No online interaction needed, stable training
npx agentdb@latest create-plugin -t decision-transformer -n dt-agent
Use Cases:
- Learn from historical data
- Imitation learning from expert demonstrations
- Safe learning without environment interaction
- Sequence modeling tasks
Configuration:
{
"algorithm": "decision-transformer",
"model_size": "base",
"context_length": 20,
"embed_dim": 128,
"n_heads": 8,
"n_layers": 6
}
2. Q-Learning
Type: Value-Based RL (Off-Policy) Best For: Discrete action spaces, sample efficiency Strengths: Proven, simple, works well for small$medium problems
npx agentdb@latest create-plugin -t q-learning -n q-agent
Use Cases:
- Grid worlds, board games
- Navigation tasks
- Resource allocation
- Discrete decision-making
Configuration:
{
"algorithm": "q-learning",
"learning_rate": 0.001,
"gamma": 0.99,
"epsilon": 0.1,
"epsilon_decay": 0.995
}
3. SARSA
Type: Value-Based RL (On-Policy) Best For: Safe exploration, risk-sensitive tasks Strengths: More conservative than Q-Learning, better for safety
npx agentdb@latest create-plugin -t sarsa -n sarsa-agent
Use Cases:
- Safety-critical applications
- Risk-sensitive decision-making
- Online learning with exploration
Configuration:
{
"algorithm": "sarsa",
"learning_rate": 0.001,
"gamma": 0.99,
"epsilon": 0.1
}
4. Actor-Critic
Type: Policy Gradient with Value Baseline Best For: Continuous actions, variance reduction Strengths: Stable, works for continuous$discrete actions
npx agentdb@latest create-plugin -t actor-critic -n ac-agent
Use Cases:
- Continuous control (robotics, simulations)
- Complex action spaces
- Multi-agent coordination
Configuration:
{
"algorithm": "actor-critic",
"actor_lr": 0.001,
"critic_lr": 0.002,
"gamma": 0.99,
"entropy_coef": 0.01
}
5. Active Learning
Type: Query-Based Learning Best For: Label-efficient learning, human-in-the-loop Strengths: Minimizes labeling cost, focuses on uncertain samples
Use Cases:
- Human feedback incorporation
- Label-efficient training
- Uncertainty sampling
- Annotation cost reduction
6. Adversarial Training
Type: Robustness Enhancement Best For: Safety, robustness to perturbations Strengths: Improves model robustness, adversarial defense
Use Cases:
- Security applications
- Robust decision-making
- Adversarial defense
- Safety testing
7. Curriculum Learning
Type: Progressive Difficulty Training Best For: Complex tasks, faster convergence Strengths: Stable learning, faster convergence on hard tasks
Use Cases:
- Complex multi-stage tasks
- Hard exploration problems
- Skill composition
- Transfer learning
8. Federated Learning
Type: Distributed Learning Best For: Privacy, distributed data Strengths: Privacy-preserving, scalable
Use Cases:
- Multi-agent systems
- Privacy-sensitive data
- Distributed training
- Collaborative learning
9. Multi-Task Learning
Type: Transfer Learning Best For: Related tasks, knowledge sharing Strengths: Faster learning on new tasks, better generalization
Use Cases:
- Task families
- Transfer learning
- Domain adaptation
- Meta-learning
Training Workflow
1. Collect Experiences
// Store experiences during agent execution
for (let i = 0; i < numEpisodes; i++) {
const episode = runEpisode();
for (const step of episode.steps) {
await adapter.insertPattern({
id: '',
type: 'experience',
domain: 'task-domain',
pattern_data: JSON.stringify({
embedding: await computeEmbedding(JSON.stringify(step)),
pattern: {
state: step.state,
action: step.action,
reward: step.reward,
next_state: step.next_state,
done: step.done
}
}),
confidence: step.reward > 0 ? 0.9 : 0.5,
usage_count: 1,
success_count: step.reward > 0 ? 1 : 0,
created_at: Date.now(),
last_used: Date.now(),
});
}
}
2. Train Model
// Train on collected experiences
const trainingMetrics = await adapter.train({
epochs: 100,
batchSize: 64,
learningRate: 0.001,
validationSplit: 0.2,
});
console.log('Training Metrics:', trainingMetrics);
// {
// loss: 0.023,
// valLoss: 0.028,
// duration: 1523,
// epochs: 100
// }
3. Evaluate Performance
// Retrieve similar successful experiences
const testQuery = await computeEmbedding(JSON.stringify(testState));
const result = await adapter.retrieveWithReasoning(testQuery, {
domain: 'task-domain',
k: 10,
synthesizeContext: true,
});
// Evaluate action quality
const suggestedAction = result.memories[0].pattern.action;
const confidence = result.memories[0].similarity;
console.log('Suggested Action:', suggestedAction);
console.log('Confidence:', confidence);
Advanced Training Techniques
Experience Replay
// Store experiences in buffer
const replayBuffer = [];
// Sample random batch for training
const batch = sampleRandomBatch(replayBuffer, batchSize: 32);
// Train on batch
await adapter.train({
data: batch,
epochs: 1,
batchSize: 32,
});
Prioritized Experience Replay
// Store experiences with priority (TD error)
await adapter.insertPattern({
// ... standard fields
confidence: tdError, // Use TD error as confidence$priority
// ...
});
// Retrieve high-priority experiences
const highPriority = await adapter.retrieveWithReasoning(queryEmbedding, {
domain: 'task-domain',
k: 32,
minConfidence: 0.7, // Only high TD-error experiences
});
Multi-Agent Training
// Collect experiences from multiple agents
for (const agent of agents) {
const experience = await agent.step();
await adapter.insertPattern({
// ... store experience with agent ID
domain: `multi-agent/${agent.id}`,
});
}
// Train shared model
await adapter.train({
epochs: 50,
batchSize: 64,
});
Performance Optimization
Batch Training
// Collect batch of experiences
const experiences = collectBatch(size: 1000);
// Batch insert (500x faster)
for (const exp of experiences) {
await adapter.insertPattern({ /* ... */ });
}
// Train on batch
await adapter.train({
epochs: 10,
batchSize: 128, // Larger batch for efficiency
});
Incremental Learning
// Train incrementally as new data arrives
setInterval(async () => {
const newExperiences = getNewExperiences();
if (newExperiences.length > 100) {
await adapter.train({
epochs: 5,
batchSize: 32,
});
}
}, 60000); // Every minute
Integration with Reasoning Agents
Combine learning with reasoning for better performance:
// Train learning model
await adapter.train({ epochs: 50, batchSize: 32 });
// Use reasoning agents for inference
const result = await adapter.retrieveWithReasoning(queryEmbedding, {
domain: 'decision-making',
k: 10,
useMMR: true, // Diverse experiences
synthesizeContext: true, // Rich context
optimizeMemory: true, // Consolidate patterns
});
// Make decision based on learned experiences + reasoning
const decision = result.context.suggestedAction;
const confidence = result.memories[0].similarity;
CLI Operations
# Create plugin
npx agentdb@latest create-plugin -t decision-transformer -n my-plugin
# List plugins
npx agentdb@latest list-plugins
# Get plugin info
npx agentdb@latest plugin-info my-plugin
# List templates
npx agentdb@latest list-templates
Troubleshooting
Issue: Training not converging
// Reduce learning rate
await adapter.train({
epochs: 100,
batchSize: 32,
learningRate: 0.0001, // Lower learning rate
});
Issue: Overfitting
// Use validation split
await adapter.train({
epochs: 50,
batchSize: 64,
validationSplit: 0.2, // 20% validation
});
// Enable memory optimization
await adapter.retrieveWithReasoning(queryEmbedding, {
optimizeMemory: true, // Consolidate, reduce overfitting
});
Issue: Slow training
# Enable quantization for faster inference
# Use binary quantization (32x faster)
Learn More
- Algorithm Papers: See docs$algorithms/ for detailed papers
- GitHub: https:/$github.com$ruvnet$agentic-flow$tree$main$packages$agentdb
- MCP Integration:
npx agentdb@latest mcp - Website: https:/$agentdb.ruv.io
Category: Machine Learning / Reinforcement Learning Difficulty: Intermediate to Advanced Estimated Time: 30-60 minutes
Decide Fit First
Design Intent
How To Use It
Boundaries And Review