AI Skill Hub 强烈推荐:响应式智能代理 是一款优质的MCP工具。AI 综合评分 8.0 分,在同类工具中表现稳健。如果你正在寻找可靠的MCP工具解决方案,这是一个值得深入了解的选择。
响应式智能代理 是一款遵循 MCP(Model Context Protocol)标准协议的 AI 工具扩展。通过 MCP 协议,它可以让 Claude、Cursor 等主流 AI 客户端直接访问和操作外部工具、数据源和服务,实现 AI 能力的无缝扩展。无论是文件操作、数据库查询还是 API 调用,都可以通过自然语言在 AI 对话中直接触发,极大提升生产效率。
响应式智能代理 是一款遵循 MCP(Model Context Protocol)标准协议的 AI 工具扩展。通过 MCP 协议,它可以让 Claude、Cursor 等主流 AI 客户端直接访问和操作外部工具、数据源和服务,实现 AI 能力的无缝扩展。无论是文件操作、数据库查询还是 API 调用,都可以通过自然语言在 AI 对话中直接触发,极大提升生产效率。
# 方式一:通过 Claude Code CLI 一键安装
claude skill install https://github.com/tylerjrbuell/reactive-agents-ts
# 方式二:手动配置 claude_desktop_config.json
{
"mcpServers": {
"-------": {
"command": "npx",
"args": ["-y", "reactive-agents-ts"]
}
}
}
# 配置文件位置
# macOS: ~/Library/Application Support/Claude/claude_desktop_config.json
# Windows: %APPDATA%/Claude/claude_desktop_config.json
# 安装后在 Claude 对话中直接使用 # 示例: 用户: 请帮我用 响应式智能代理 执行以下任务... Claude: [自动调用 响应式智能代理 MCP 工具处理请求] # 查看可用工具列表 # 在 Claude 中输入:"列出所有可用的 MCP 工具"
// claude_desktop_config.json 配置示例
{
"mcpServers": {
"_______": {
"command": "npx",
"args": ["-y", "reactive-agents-ts"],
"env": {
// "API_KEY": "your-api-key-here"
}
}
}
}
// 保存后重启 Claude Desktop 生效
<img src="./apps/docs/src/assets/logo-light.svg" alt="Reactive Agents" width="280" />
Grouped by capability. Every layer is opt-in — call .with*() only for what you need.
Every capability is opt-in. Chain what you need:
const agent = await ReactiveAgents.create()
.withName('research-agent')
.withProvider('anthropic')
.withReasoning() // ReAct reasoning loop
.withTools() // Built-in tools + MCP support
.withMemory() // Persistent memory: tier "standard" (FTS5 search). Use { tier: "enhanced" } for vector embeddings.
.withGuardrails() // Block injection, PII, toxicity
.withKillSwitch() // Per-agent + global emergency halt
.withBehavioralContracts({
// Enforce tool whitelist + iteration cap
deniedTools: ['file-write'],
maxIterations: 10,
})
.withVerification() // Fact-check outputs
.withCostTracking() // Budget enforcement + model routing
.withObservability({ verbosity: 'verbose', live: true }) // Live log streaming + tracing
.withContextProfile({ tier: 'local' }) // Adaptive context for model tier
.withIdentity() // RBAC + agent certificates (Ed25519)
.withInteraction() // 5 autonomy modes
.withOrchestration() // Multi-agent workflows
.withSelfImprovement() // Cross-task strategy outcome learning
.withRequiredTools({
// Ensure critical tools are called
tools: ['web-search'],
maxRetries: 2,
})
.withStrictValidation() // Throw at build time if required config is missing
.withTimeout(60_000) // Execution timeout (ms)
.withRetryPolicy({ maxRetries: 3, backoffMs: 1_000 }) // Retry on transient LLM failures
.withCacheTimeout(3_600_000) // Semantic cache TTL (ms)
.withErrorHandler((err, ctx) => {
// Global error callback
console.error('Agent error:', err.message)
})
.withFallbacks({
// Provider/model fallback chain
providers: ['anthropic', 'openai'],
errorThreshold: 3,
})
.withLogging({ level: 'info', format: 'json', filePath: './agent.log' }) // Structured logging
.withHealthCheck() // Enable agent.health() probe
.withMinIterations(3) // Require at least 3 iterations before exit
.withVerificationStep({ mode: 'reflect' }) // LLM self-review pass after initial answer
.withOutputValidator((output) => ({
// Structural validation with retry
valid: output.includes('COMPLETE'),
feedback: 'Response must include COMPLETE marker',
}))
.withTaskContext({ project: 'acme', env: 'prod' }) // Background data → reasoning context
.withSkills({
// Living Skills System
paths: ['./my-skills/'],
evolution: { mode: 'suggest' },
})
.withGateway({
// Persistent autonomous harness
heartbeat: { intervalMs: 1_800_000, policy: 'adaptive' },
crons: [{ schedule: '0 9 * * MON', instruction: 'Weekly review' }],
policies: { dailyTokenBudget: 50_000 },
})
.build()
withStrictValidation(), withTimeout(), withRetryPolicy(), withCacheTimeout(), withErrorHandler(), withFallbacks(), withLogging(), withHealthCheck(), withMinIterations(), withVerificationStep(), withOutputValidator(), withCustomTermination(), withProgressCheckpoint(), withTaskContext()agent.registerTool() / agent.unregisterTool() at runtimeInstall and run your first TypeScript AI agent in under 60 seconds.
Recommended: Bun ≥1.0.0 — optimal performance with native SQLite, subprocess, and HTTP APIs. Node.js 22.5+ is now also supported via@reactive-agents/runtime-shim— same code, both runtimes. Install Bun:curl -fsSL https://bun.sh/install | bash
```bash
Define agents as JSON-serializable config objects. Save, share, and reconstruct agents without code:
import {
agentConfigToJSON,
agentConfigFromJSON,
ReactiveAgents,
} from 'reactive-agents'
// Builder → Config → JSON
const builder = ReactiveAgents.create()
.withName('researcher')
.withProvider('anthropic')
.withReasoning({ defaultStrategy: 'plan-execute-reflect' })
.withTools({ adaptive: true })
.withMemory({ tier: 'enhanced' })
const config = builder.toConfig()
const json = agentConfigToJSON(config)
// Save to file, database, or send over the wire
// JSON → Builder → Agent
const restored = await ReactiveAgents.fromJSON(json)
const agent = await restored.build()
const result = await agent.run('Research quantum computing advances')
ANTHROPIC_API_KEY=sk-ant-... # Anthropic Claude
OPENAI_API_KEY=sk-... # OpenAI GPT-4o
GOOGLE_API_KEY=... # Google Gemini
EMBEDDING_PROVIDER=openai # For vector memory
EMBEDDING_MODEL=text-embedding-3-small
LLM_DEFAULT_MODEL=claude-sonnet-4-20250514
Build agent pipelines with functional combinators:
import { agentFn, pipe, parallel, race } from 'reactive-agents'
// Create lazy agent functions
const researcher = agentFn({ name: 'researcher', provider: 'anthropic' }, (b) =>
b.withReasoning().withTools()
)
const summarizer = agentFn({ name: 'summarizer', provider: 'anthropic' })
// Sequential pipeline: research → summarize
const pipeline = pipe(researcher, summarizer)
const result = await pipeline('What are the latest AI breakthroughs?')
// Parallel fan-out: run multiple analyses concurrently
const multiAnalysis = parallel(
agentFn({ name: 'sentiment', provider: 'anthropic' }),
agentFn({ name: 'keywords', provider: 'anthropic' }),
agentFn({ name: 'summary', provider: 'anthropic' })
)
const combined = await multiAnalysis('Article text here...')
// combined.output contains labeled results from all 3 agents
// Race: fastest agent wins
const fastest = race(
agentFn({ name: 'claude', provider: 'anthropic' }),
agentFn({ name: 'gpt4', provider: 'openai' })
)
const winner = await fastest('Quick answer needed')
// Clean up
await pipeline.dispose()
await multiAnalysis.dispose()
await fastest.dispose()
rax init my-project --template full # Scaffold a project
rax create agent researcher --recipe researcher # Generate an agent from recipe
rax create agent my-agent --interactive # Interactive scaffolding (readline prompts)
rax run "Explain quantum computing" --provider anthropic # Run an agent
rax cortex # Cortex studio (after: bun add @reactive-agents/cortex)
bun cortex # Cortex API + Vite UI (source-repo contributors)
rax run "Task" --cortex --provider anthropic # Stream events to Cortex (.withCortex())
@reactive-agents/react — useAgentStream, useAgent hooks@reactive-agents/vue — Vue 3 composables with reactive refs@reactive-agents/svelte — Svelte 4/5 writable storesAgentStream.toSSE() from Next.js, SvelteKit, Nuxt, or any SSE-capable server| Package | Description |
|---|---|
[@reactive-agents/core](packages/core) | EventBus pub/sub, AgentService lifecycle, TaskService state machine, canonical types |
[@reactive-agents/runtime](packages/runtime) | 12-phase ExecutionEngine, ReactiveAgentBuilder, createRuntime() layer composer |
[@reactive-agents/llm-provider](packages/llm-provider) | Unified LLM interface for Anthropic, OpenAI, Gemini, Ollama, LiteLLM, and Test providers |
[@reactive-agents/memory](packages/memory) | 4-layer memory (working, semantic, episodic, procedural) on bun:sqlite; ExperienceStore cross-agent learning; background consolidation + decay |
[@reactive-agents/reasoning](packages/reasoning) | 6 strategies (ReAct, Reflexion, Plan-Execute, ToT, Adaptive, Code-Action @experimental) with composable kernel architecture |
[@reactive-agents/tools](packages/tools) | Tool registry with sandboxed execution, MCP client, agent-as-tool adapter, dynamic sub-agent spawning |
[@reactive-agents/guardrails](packages/guardrails) | Pre-LLM safety: injection detection, PII filtering, toxicity blocking |
[@reactive-agents/verification](packages/verification) | Post-LLM quality: semantic entropy, fact decomposition, NLI hallucination detection |
[@reactive-agents/cost](packages/cost) | 27-signal complexity routing, per-execution budget enforcement, semantic cache |
[@reactive-agents/identity](packages/identity) | Ed25519 agent certificates, RBAC policies, delegation chains, audit logging |
[@reactive-agents/observability](packages/observability) | Distributed tracing (OTLP), MetricsCollector, structured logging, console + JSON exporters |
[@reactive-agents/interaction](packages/interaction) | 5 autonomy modes, checkpoint/resume, approval gates, preference learning |
[@reactive-agents/orchestration](packages/orchestration) | Multi-agent workflows: sequential, parallel, pipeline, map-reduce with A2A support |
[@reactive-agents/prompts](packages/prompts) | Version-controlled template engine with variable interpolation and prompt library |
[@reactive-agents/eval](packages/eval) | Evaluation framework: LLM-as-judge scoring, EvalStore persistence, comparison reports |
[@reactive-agents/a2a](packages/a2a) | A2A protocol: Agent Cards, JSON-RPC 2.0 server/client, SSE streaming |
[@reactive-agents/gateway](packages/gateway) | Persistent autonomous harness: adaptive heartbeats, cron scheduling, webhook ingestion, composable policy engine |
[@reactive-agents/testing](packages/testing) | Mock services (LLM, tools, EventBus), assertion helpers, deterministic test fixtures |
[@reactive-agents/benchmarks](packages/benchmarks) | Benchmark suite: 20 tasks x 5 tiers, overhead measurement, report generation |
[@reactive-agents/health](packages/health) | Health checks and readiness probes for production deployments |
[@reactive-agents/reactive-intelligence](packages/reactive-intelligence) | Metacognitive layer: entropy sensor (5 sources), reactive controller (early-stop, compression, strategy switch), learning engine (calibration, bandit, skill synthesis), telemetry client |
[@reactive-agents/react](packages/react) | React 18+ hooks: useAgentStream (token streaming), useAgent (one-shot) — consume AgentStream.toSSE() endpoints |
[@reactive-agents/vue](packages/vue) | Vue 3 composables: useAgentStream, useAgent with reactive refs |
[@reactive-agents/svelte](packages/svelte) | Svelte 4/5 stores: createAgentStream, createAgent writable stores |
[@reactive-agents/observe](packages/observe) | Zero-config OpenTelemetry tracing — maps AgentStarted/Completed, LLMRequest*, and ToolCall* events to OpenInference-compliant OTLP spans |
[@reactive-agents/replay](packages/replay) | Deterministic trace replay — record any run to a snapshot file, re-run with different model/prompt without re-calling the LLM; supports strict/lenient mode and diffTraces |
[@reactive-agents/runtime-shim](packages/runtime-shim) | Cross-runtime adapter — lets the framework run on Node.js 22.5+ in addition to Bun; provides unified Database, spawn, serve, and file I/O primitives |
[create-reactive-agent](packages/create-reactive-agent) | Project scaffolder — bunx create-reactive-agent my-app generates a runnable agent project with template, provider, and package-manager selection |
Branch preview (not on main yet): feat/channels-package adds @reactive-agents/channels, runtime .withChannels(), and renames gateway channels → accessControl for sender policy vs chat mode. Summary: wiki/Research/Debriefs/2026-05-03-channels-phase1-development-debrief.md.
How Reactive Agents compares to other TypeScript agent frameworks on shipped, working features:
| Capability | Reactive Agents | LangChain JS | Vercel AI SDK | Mastra |
|---|---|---|---|---|
| Full type safety (Effect-TS) | Yes | -- | Partial | Partial |
| Composable layer architecture | 13 layers | -- | -- | -- |
| Reasoning strategies | 6 (+ @exp code-action) | 1 (ReAct) | -- | 1 |
| Model-adaptive context | 4 tiers | -- | -- | -- |
| Local model optimization | Yes | -- | -- | -- |
| Execution lifecycle hooks | 12 phases | Callbacks | Middleware | -- |
| Multi-agent orchestration | A2A + workflows | Yes | -- | Yes |
| Token streaming | Yes | Yes | Yes | Yes |
| Production guardrails | Yes | -- | -- | -- |
| Cost tracking + budgets | Yes | -- | -- | -- |
| Persistent gateway | Yes | -- | -- | -- |
| Agent debrief + chat | Yes | -- | -- | -- |
| Metrics dashboard | Yes | LangSmith | -- | -- |
| Agent-as-data config | Yes | -- | -- | -- |
| Functional composition | Yes | Yes | -- | -- |
| Dynamic tool registration | Yes | Yes | -- | -- |
| Test suite | 5,320 tests | -- | -- | -- |
高质量的TypeScript AI代理框架,提供灵活的代理编排和观察
AI Skill Hub 为第三方内容聚合平台,本页面信息基于公开数据整理,不对工具功能和质量作任何法律背书。
建议在沙箱或测试环境中充分验证后,再部署至生产环境,并做好必要的安全评估。
✅ MIT 协议 — 最宽松的开源协议之一,可自由商用、修改、分发,仅需保留版权声明。
总体来看,响应式智能代理 是一款质量优秀的MCP工具,在同类工具中具备一定竞争力。AI Skill Hub 将持续追踪其更新动态,建议收藏备用,结合自身场景选择合适时机引入使用。
| 原始名称 | reactive-agents-ts |
| 原始描述 | 开源MCP工具:Composable TypeScript AI agent framework — Effect-TS type safety, 5 reasoning st。⭐11 · TypeScript |
| Topics | agent-frameworkai-agentstypescript |
| GitHub | https://github.com/tylerjrbuell/reactive-agents-ts |
| License | MIT |
| 语言 | TypeScript |
收录时间:2026-05-25 · 更新时间:2026-05-26 · License:MIT · AI Skill Hub 不对第三方内容的准确性作法律背书。
选择 Agent 类型,复制安装指令后粘贴到对应客户端