AutomationFlowsAI & RAG › Entrevista Equipe

Entrevista Equipe

02-entrevista-equipe. Uses executeWorkflowTrigger, agent. Event-driven trigger; 7 nodes.

Event trigger★★★★☆ complexityAI-powered7 nodesExecute Workflow TriggerAgent
AI & RAG Trigger: Event Nodes: 7 Complexity: ★★★★☆ AI nodes: yes Added:

This workflow follows the Agent → Execute Workflow Trigger recipe pattern — see all workflows that pair these two integrations.

The workflow JSON

Copy or download the full n8n JSON below. Paste it into a new n8n workflow, add your credentials, activate. Full import guide →

Download .json
{
  "name": "02-entrevista-equipe",
  "nodes": [
    {
      "parameters": {},
      "id": "1",
      "name": "Execute Workflow Trigger",
      "type": "n8n-nodes-base.executeWorkflowTrigger",
      "typeVersion": 1,
      "position": [
        0,
        0
      ]
    },
    {
      "parameters": {
        "language": "python",
        "pythonCode": "import sys\nimport os\nsys.path.append(os.getenv('PROJECT_ROOT', '/data/agent-smith'))\nfrom tools import db_client\n\ninterviews = db_client.get_all_interviews('fase1')\nnext_person = next((i for i in interviews if not i.get('completed')), None)\nif next_person:\n    return {\"has_next\": True, \"person\": next_person}\nreturn {\"has_next\": False}"
      },
      "id": "2",
      "name": "get-next-interviewee",
      "type": "n8n-nodes-base.code",
      "typeVersion": 2,
      "position": [
        220,
        0
      ]
    },
    {
      "parameters": {
        "language": "python",
        "pythonCode": "import sys\nimport os\nsys.path.append(os.getenv('PROJECT_ROOT', '/data/agent-smith'))\nfrom tools import whatsapp_client\n\nif _input.item.json.get('has_next'):\n    person = _input.item.json['person']\n    num = person.get('phone')\n    msg = f\"Ol\u00e1 {person.get('person_name')}, sou o assistente da iDVL. O Julio pediu que eu conversasse com voc\u00ea sobre o seu trabalho. S\u00e3o 5 perguntas r\u00e1pidas. Pode ser agora?\"\n    whatsapp_client.send_message(num, msg)\nreturn _input.item.json"
      },
      "id": "3",
      "name": "send-intro-message",
      "type": "n8n-nodes-base.code",
      "typeVersion": 2,
      "position": [
        440,
        0
      ]
    },
    {
      "parameters": {
        "httpMethod": "POST",
        "path": "smith/interview-wait",
        "responseMode": "lastNode",
        "options": {}
      },
      "id": "4",
      "name": "wait-for-response",
      "type": "n8n-nodes-base.webhook",
      "typeVersion": 1,
      "position": [
        660,
        0
      ]
    },
    {
      "parameters": {
        "model": "claude-3-haiku-20240307",
        "options": {}
      },
      "id": "5",
      "name": "AI Agent",
      "type": "@n8n/n8n-nodes-langchain.agent",
      "typeVersion": 1,
      "position": [
        880,
        0
      ]
    },
    {
      "parameters": {
        "language": "python",
        "pythonCode": "import sys\nimport os\nsys.path.append(os.getenv('PROJECT_ROOT', '/data/agent-smith'))\nfrom tools import db_client\n\n# Exemplo: AI responde algo processado que a engine salva.\ndb_client.save_interview_answer('Nome','Phone','fase1','Q1','Resp')\nreturn _input.item.json"
      },
      "id": "6",
      "name": "save-interview",
      "type": "n8n-nodes-base.code",
      "typeVersion": 2,
      "position": [
        1100,
        0
      ]
    },
    {
      "parameters": {
        "conditions": {
          "boolean": [
            {
              "value1": "={{ $json.todos_entrevistados }}",
              "value2": true
            }
          ]
        }
      },
      "id": "7",
      "name": "IF: todos-entrevistados",
      "type": "n8n-nodes-base.if",
      "typeVersion": 1,
      "position": [
        1320,
        0
      ]
    }
  ],
  "connections": {
    "Execute Workflow Trigger": {
      "main": [
        [
          {
            "node": "get-next-interviewee",
            "type": "main",
            "index": 0
          }
        ]
      ]
    },
    "get-next-interviewee": {
      "main": [
        [
          {
            "node": "send-intro-message",
            "type": "main",
            "index": 0
          }
        ]
      ]
    },
    "send-intro-message": {
      "main": [
        [
          {
            "node": "wait-for-response",
            "type": "main",
            "index": 0
          }
        ]
      ]
    },
    "wait-for-response": {
      "main": [
        [
          {
            "node": "AI Agent",
            "type": "main",
            "index": 0
          }
        ]
      ]
    },
    "AI Agent": {
      "main": [
        [
          {
            "node": "save-interview",
            "type": "main",
            "index": 0
          }
        ]
      ]
    },
    "save-interview": {
      "main": [
        [
          {
            "node": "IF: todos-entrevistados",
            "type": "main",
            "index": 0
          }
        ]
      ]
    }
  },
  "settings": {}
}
Pro

For the full experience including quality scoring and batch install features for each workflow upgrade to Pro

About this workflow

02-entrevista-equipe. Uses executeWorkflowTrigger, agent. Event-driven trigger; 7 nodes.

Source: https://github.com/Escribaup/agent-smith/blob/b674a017e4dd85e870717a4bd71c18d3620597f0/workflows/02-entrevista-equipe.json — original creator credit. Request a take-down →

More AI & RAG workflows → · Browse all categories →

Related workflows

Workflows that share integrations, category, or trigger type with this one. All free to copy and import.

AI & RAG

The AI-Powered Shopify SEO Content Automation is an enterprise-grade workflow that transforms product content creation for e-commerce stores. This sophisticated multi-agent system integrates GPT-4o, C

Perplexity Tool, Memory Buffer Window, Agent +15
AI & RAG

How it Works

Memory Buffer Window, Agent, Output Parser Structured +9
AI & RAG

Deep Research new (fr). Uses outputParserStructured, formTrigger, chainLlm, form. Event-driven trigger; 82 nodes.

Output Parser Structured, Form Trigger, Chain Llm +8
AI & RAG

The best content automation template in the market is now even better—with “deep research” on time-sensitive topics\! Unlike most n8n content automation templates that are mainly for “demo purposes,”

OpenAI, HTTP Request, XML +11
AI & RAG

Typeform IA - YT. Uses typeformTrigger, agent, lmChatOpenAi, toolWorkflow. Event-driven trigger; 75 nodes.

Typeform Trigger, Agent, OpenAI Chat +7