- All SKILL.md files now <500 lines (avg reduction 69%) - Detailed content extracted to references/ subdirectories - Frontmatter standardised: only name + description (Anthropic standard) - New skills: brand-guidelines, spec-coauthor, report-templates, skill-creator - Design skills: anti-slop guidelines, premium-proposals reference - Removed non-standard frontmatter fields (triggers, version, author, category) Plugins affected: infraestrutura, marketing, dev-tools, crm-ops, gestao, core-tools, negocio, perfex-dev, wordpress, design-media Co-Authored-By: Claude Opus 4.6 <noreply@anthropic.com>
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name, description
| name | description |
|---|---|
| n8n-chatbot | Criação de chatbots e workflows com inteligência artificial usando LangChain no n8n. |
/n8n-chatbot - Chatbots e AI Agents n8n
Criar chatbots e workflows com AI usando LangChain.
Contexto NotebookLM
ANTES de executar, consultar notebooks para contexto especializado:
| Notebook | ID | Consultar quando |
|---|---|---|
| n8n Deep Research | f2c809b8-1cb5-4dd0-aa7e-be2cfb6704d1 | Sempre |
mcp__notebooklm__notebook_query({
notebook_id: "f2c809b8-1cb5-4dd0-aa7e-be2cfb6704d1",
query: "<adaptar ao contexto do pedido do utilizador>"
})
Integrar insights do NotebookLM nas recomendações e decisões.
Uso
/n8n-chatbot create <descrição> # Criar chatbot
/n8n-chatbot agent <tipo> # Criar AI agent
/n8n-chatbot rag <knowledge_base> # Criar sistema RAG
Workflow Obrigatório
1. Health check → mcp__n8n__n8n_health_check()
2. Pesquisar template → mcp__n8n__search_templates({ task: "ai_automation" })
3. Se template OK → mcp__n8n__n8n_deploy_template()
4. Se criar do zero → Seguir fluxo abaixo
Nodes LangChain
Core
| Node | Uso |
|---|---|
@n8n/n8n-nodes-langchain.agent |
AI Agent principal |
@n8n/n8n-nodes-langchain.chainLlm |
Chain LLM simples |
@n8n/n8n-nodes-langchain.chainRetrievalQa |
RAG Q&A |
Modelos
| Node | Provider |
|---|---|
@n8n/n8n-nodes-langchain.lmChatOpenAi |
OpenAI GPT |
@n8n/n8n-nodes-langchain.lmChatAnthropic |
Claude |
@n8n/n8n-nodes-langchain.lmChatOllama |
Ollama local |
Memória
| Node | Tipo |
|---|---|
@n8n/n8n-nodes-langchain.memoryBufferWindow |
Últimas N mensagens |
@n8n/n8n-nodes-langchain.memoryPostgresChat |
PostgreSQL |
@n8n/n8n-nodes-langchain.memoryRedisChat |
Redis |
Tools
| Node | Função |
|---|---|
@n8n/n8n-nodes-langchain.toolCalculator |
Cálculos |
@n8n/n8n-nodes-langchain.toolCode |
Executar código |
@n8n/n8n-nodes-langchain.toolHttpRequest |
Chamar APIs |
@n8n/n8n-nodes-langchain.toolWorkflow |
Chamar workflows |
Vector Stores (RAG)
| Node | Sistema |
|---|---|
@n8n/n8n-nodes-langchain.vectorStoreSupabase |
Supabase |
@n8n/n8n-nodes-langchain.vectorStorePinecone |
Pinecone |
@n8n/n8n-nodes-langchain.vectorStorePgVector |
PostgreSQL |
Chatbot Básico
Estrutura
Webhook/Trigger
↓
LLM Chat Model (OpenAI/Claude)
↓
Memory (Buffer)
↓
Agent
↓
Resposta
Implementação
// 1. Modelo LLM
mcp__n8n__get_node({
nodeType: "@n8n/n8n-nodes-langchain.lmChatOpenAi",
detail: "standard"
})
// 2. Memória
mcp__n8n__get_node({
nodeType: "@n8n/n8n-nodes-langchain.memoryBufferWindow",
detail: "standard"
})
// 3. Agent
mcp__n8n__get_node({
nodeType: "@n8n/n8n-nodes-langchain.agent",
detail: "standard"
})
RAG (Retrieval Augmented Generation)
Estrutura
Documentos
↓
Embeddings
↓
Vector Store
↓
Query (pergunta)
↓
Retriever
↓
LLM (resposta contextualizada)
Configuração Vector Store
mcp__n8n__validate_node({
nodeType: "@n8n/n8n-nodes-langchain.vectorStoreSupabase",
config: {
mode: "insert", // ou "retrieve"
tableName: "documents",
queryName: "match_documents"
},
mode: "minimal"
})
AI Agent com Tools
Estrutura
Input
↓
Agent
├── Tool: Calculator
├── Tool: HTTP Request
├── Tool: Code
└── Tool: Workflow
↓
Output
Configuração Agent
mcp__n8n__validate_node({
nodeType: "@n8n/n8n-nodes-langchain.agent",
config: {
agentType: "conversationalAgent",
systemMessage: "Tu és um assistente prestável...",
options: {
returnIntermediateSteps: true
}
},
mode: "minimal"
})
Exemplos Práticos
Chatbot de Suporte
Webhook (mensagem cliente)
↓
Memory PostgreSQL (histórico)
↓
Vector Store (docs suporte)
↓
Chain Retrieval QA
↓
Webhook Response
Agent CRM
Webhook (comando)
↓
Agent
├── Tool: Pesquisar clientes
├── Tool: Criar lead
└── Tool: Actualizar tarefa
↓
Slack (resultado)
Resumo de Documentos
Webhook (upload PDF)
↓
PDF Extract
↓
Text Splitter
↓
LLM Chain (resumo)
↓
Email (enviar resumo)
Templates Recomendados
// AI templates
mcp__n8n__search_templates({
searchMode: "by_task",
task: "ai_automation"
})
// Por keyword
mcp__n8n__search_templates({
searchMode: "keyword",
query: "chatbot langchain openai"
})
Credenciais Necessárias
| Provider | Credencial | Node |
|---|---|---|
| OpenAI | API Key | lmChatOpenAi |
| Anthropic | API Key | lmChatAnthropic |
| Supabase | URL + Key | vectorStoreSupabase |
| Pinecone | API Key | vectorStorePinecone |
Boas Práticas
| Prática | Razão |
|---|---|
| System prompt claro | Define comportamento |
| Temperatura baixa (0.1-0.3) | Respostas consistentes |
| Memória limitada | Performance |
| Retry on error | Resiliência |
| Logs de conversas | Debug e melhoria |
Troubleshooting
| Problema | Solução |
|---|---|
| Respostas inconsistentes | Baixar temperatura |
| Contexto perdido | Verificar memória |
| RAG não encontra | Verificar embeddings |
| Timeout | Aumentar limite |
| Token limit | Resumir contexto |
Skill v1.0 | Descomplicar®