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- 作者仓库星标 54,444
- 作者更新于 实时读取
- 作者仓库 ruflo
- 领域
- AI 智能
- 兼容 Agent
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- Claude Code
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- Cline
- Codex
- Windsurf
- Gemini CLI
- +20
- 信任分
- 88 / 100 · 社区维护
- 作者 / 版本 / 许可
- @ruvnet · 未声明 license
- Token 消耗评级
- 低消耗
- 接入复杂程度
- 需简单配置
- 是否需要外部 API Key
- 不需要
- 兼容的系统
- macOS · Linux · Windows
- 底层运行要求
- Node.js
- 文件与系统权限
-
- 只读
- 允许写入 / 修改
- Shell 执行
- 网络行为
- 仅限本地
- 安装命令数
- 26 条
档案由构建时根据 SKILL.md 与安装命令自动衍生,可能与作者实际意图存在差异。
需要注意: 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 智能
runtime: Node.js
---
# AgentDB Learning Plugins 输出预览
## PART A: 任务判断
- 适用问题:提示词、Agent 工作流、模型评估或自动化推理。
- 输入要求:目标材料、限制条件、期望输出和验收方式。
- 证据边界:围绕“What This Skill Does / Prerequisites / Quick Start with CLI”读取原文规则,不把推断写成作者承诺。
## PART B: 执行结果
- **01** 任务判断:确认你的需求是否属于提示词、Agent 工作流、模型评估或自动化推理,并标出输入、限制和预期结果。
- **02** 执行计划:优先按“What This Skill Does / Prerequisites / Quick Start with CLI”拆成步骤,说明每一步会读取什么、修改什么、产出什么。
- **03** 交付结果:给出可复制的命令、文件改动、检查清单或内容草稿,并说明如何继续迭代。
- **04** 风险边界:结合 读取文件、写入/修改文件、执行终端命令、主要在本地完成、通常不需要额外 API Key 给出执行前确认项。
## Running Rules
- 读取文件、写入/修改文件、执行终端命令;主要在本地完成;通常不需要额外 API Key。
- 先小样例验证,再放大到真实任务。
- 交付时同时给结果、检查口径和下一步迭代建议。 原文没有稳定的斜杠命令要求。安装验证后通常全局生效,直接在对话里点名这个 Skill 并描述任务即可。
告诉 Agent 目标文件或材料、期望结果、不可改范围、是否允许联网或执行命令。本 Skill 的权限画像是:读取文件、写入/修改文件、执行终端命令。
先用一个小任务确认它会围绕“What This Skill Does / Prerequisites / Quick Start with CLI”工作;涉及文件或命令时,先看 diff、日志、预览或测试结果。
检查最终产物是否包含明确结果、必要证据和下一步动作;如果输出泛泛而谈,就补充输入、边界和验收标准后重跑。
---
name: AgentDB Learning Plugins
description: Create and train AI learning plugins with AgentDB's 9 reinforcement learning algorithms. Include…
category: AI 智能
source: ruvnet/ruflo
---
# AgentDB Learning Plugins
## 什么时候使用
- 把 AI / Agent方向的常用动作沉淀成 Agent 可调用的技能 适合处理AI Agent、提示词、模型评估与自动化推理,核心价值是把输入、判断、执行、验证和交付边界固定下来,避免 Agent 泛泛回答。 把任务拆成可执行、可检查…
- 面向提示词、Agent 工作流、模型评估或自动化推理,优先处理能明确输入、步骤和验收标准的工作。
## 需要提供什么
- 目标材料、目录范围、期望结果和不可改动内容。
- 是否允许联网、执行命令、读写文件或调用外部服务。
## 执行规则
- 围绕「What This Skill Does / Prerequisites / Quick Start with CLI」组织步骤,不把推断写成作者事实。
- 读取文件、写入/修改文件、执行终端命令;主要在本地完成;通常不需要额外 API Key。
- 先跑小样例,确认结果可检查后再扩大任务范围。
## 输出要求
- 给出最终产物、关键证据、验证方式和下一步动作。
- 信息不足时标记 unknown,不编造命令、平台或依赖。 作者原文负责流程事实;仓库文件负责来源和命令;流狐只补充适用场景、限制和质量判断。
skill "AgentDB Learning Plugins" {
输入层 -> 用户目标 + 目标文件 + 禁止范围 + 验收标准
上下文层 -> What This Skill Does / Prerequisites / Quick Start with CLI
规则层 -> SKILL.md 触发条件 / 执行顺序 / 输出格式
运行层 -> Node.js | 读取文件、写入/修改文件、执行终端命令 | 主要在本地完成
安全层 -> 通常不需要额外 API Key + 小任务验证 + diff / 日志复核
输出层 -> 可复制结果 + 检查清单 + 下一步迭代
} 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
先判断是否适合
作者设计意图
作者的方法与取舍
边界和复核