AutomationFlowsAI & RAG › Enhance Chat Responses with Real-time Search via Bright Data Mcp & Gemini AI

Enhance Chat Responses with Real-time Search via Bright Data Mcp & Gemini AI

ByRanjan Dailata @ranjancse on n8n.io

This template is only available on n8n self-hosted as it's making use of the community node for MCP Client.

Chat trigger trigger★★★★☆ complexityAI-powered18 nodesChat TriggerAgentGoogle Gemini ChatMemory Buffer WindowN8N Nodes McpTool Http Request
AI & RAG Trigger: Chat trigger Nodes: 18 Complexity: ★★★★☆ AI nodes: yes Added:

This workflow corresponds to n8n.io template #3779 — we link there as the canonical source.

This workflow follows the Agent → Chat 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
{
  "id": "8jdT4wXjV5NljqKa",
  "meta": {
    "templateCredsSetupCompleted": true
  },
  "name": "Enhance Chat Responses with Real-Time Search Data via Bright Data & Gemini AI",
  "tags": [
    {
      "id": "Kujft2FOjmOVQAmJ",
      "name": "Engineering",
      "createdAt": "2025-04-09T01:31:00.558Z",
      "updatedAt": "2025-04-09T01:31:00.558Z"
    },
    {
      "id": "ZOwtAMLepQaGW76t",
      "name": "Building Blocks",
      "createdAt": "2025-04-13T15:23:40.462Z",
      "updatedAt": "2025-04-13T15:23:40.462Z"
    },
    {
      "id": "ddPkw7Hg5dZhQu2w",
      "name": "AI",
      "createdAt": "2025-04-13T05:38:08.053Z",
      "updatedAt": "2025-04-13T05:38:08.053Z"
    }
  ],
  "nodes": [
    {
      "id": "7294b048-5804-4620-a53e-52df293c3df1",
      "name": "When chat message received",
      "type": "@n8n/n8n-nodes-langchain.chatTrigger",
      "position": [
        -460,
        160
      ],
      "parameters": {
        "options": {}
      },
      "typeVersion": 1.1
    },
    {
      "id": "8ff09a26-ffa4-451d-9452-35b8f2936cab",
      "name": "AI Agent",
      "type": "@n8n/n8n-nodes-langchain.agent",
      "position": [
        -140,
        60
      ],
      "parameters": {
        "options": {
          "systemMessage": "You are a helpful assistant.\n\nUse MCP Search Engine assistant tools for Bright Data for Google, Bing or Yandex Search. \n\nImportant: Return the response to Chat and also perform the webhook notification of responses.\n\nUse the relevant tool in the order of execution. "
        }
      },
      "typeVersion": 1.8
    },
    {
      "id": "92352366-7fe5-407d-aa34-96ac19b13284",
      "name": "Google Gemini Chat Model",
      "type": "@n8n/n8n-nodes-langchain.lmChatGoogleGemini",
      "position": [
        -240,
        280
      ],
      "parameters": {
        "options": {},
        "modelName": "models/gemini-2.0-flash-exp"
      },
      "credentials": {
        "googlePalmApi": {
          "name": "<your credential>"
        }
      },
      "typeVersion": 1
    },
    {
      "id": "b6d947d1-9752-4aff-834c-de99ff1ad903",
      "name": "Simple Memory",
      "type": "@n8n/n8n-nodes-langchain.memoryBufferWindow",
      "position": [
        -60,
        280
      ],
      "parameters": {},
      "typeVersion": 1.3
    },
    {
      "id": "73273d82-2a2f-41a2-ad1c-369f7a05ebe1",
      "name": "When clicking \u2018Test workflow\u2019",
      "type": "n8n-nodes-base.manualTrigger",
      "position": [
        -480,
        -200
      ],
      "parameters": {},
      "typeVersion": 1
    },
    {
      "id": "39464933-03e0-46a2-ba3b-ab96aa14461e",
      "name": "MCP Client list all tools for Bright Data",
      "type": "n8n-nodes-mcp.mcpClient",
      "position": [
        -260,
        -200
      ],
      "parameters": {},
      "credentials": {
        "mcpClientApi": {
          "name": "<your credential>"
        }
      },
      "typeVersion": 1
    },
    {
      "id": "9d0d498f-10da-4a66-9e59-1773089d5d7c",
      "name": "MCP Client Bright Data Search Tool",
      "type": "n8n-nodes-mcp.mcpClient",
      "position": [
        160,
        -200
      ],
      "parameters": {
        "toolName": "={{ $('MCP Client list all tools for Bright Data').item.json.tools[0].name }}",
        "operation": "executeTool",
        "toolParameters": "={\n   \"query\": \"{{ $json.search_query }}\",\n   \"engine\": \"google\"\n} "
      },
      "credentials": {
        "mcpClientApi": {
          "name": "<your credential>"
        }
      },
      "typeVersion": 1
    },
    {
      "id": "346fd1f7-be97-47b6-b767-74382dc90979",
      "name": "Set search query",
      "type": "n8n-nodes-base.set",
      "position": [
        -60,
        -200
      ],
      "parameters": {
        "options": {},
        "assignments": {
          "assignments": [
            {
              "id": "214e61a0-3587-453f-baf5-eac013990857",
              "name": "search_query",
              "type": "string",
              "value": "Bright Data"
            }
          ]
        }
      },
      "typeVersion": 3.4
    },
    {
      "id": "1dc4dabe-d651-4b43-b561-4528be14e578",
      "name": "Google Search Engine for Bright Data",
      "type": "n8n-nodes-mcp.mcpClientTool",
      "notes": "Scrape search results from Google, Bing or Yandex. Returns SERP results in markdown (URL, title, description)",
      "position": [
        240,
        540
      ],
      "parameters": {
        "toolName": "search_engine",
        "operation": "executeTool",
        "toolParameters": "={\n   \"query\": \"{{ $json.chatInput }}\",\n   \"engine\": \"google\"\n}"
      },
      "credentials": {
        "mcpClientApi": {
          "name": "<your credential>"
        }
      },
      "notesInFlow": true,
      "typeVersion": 1
    },
    {
      "id": "029f5e0e-070f-47a7-8c77-2b59ca01ada4",
      "name": "Bing Search Engine for Bright Data",
      "type": "n8n-nodes-mcp.mcpClientTool",
      "notes": "Scrape search results from Google, Bing or Yandex. Returns SERP results in markdown (URL, title, description)",
      "position": [
        40,
        540
      ],
      "parameters": {
        "toolName": "search_engine",
        "operation": "executeTool",
        "toolParameters": "={\n   \"query\": \"{{ $json.chatInput }}\",\n   \"engine\": \"bing\"\n} "
      },
      "credentials": {
        "mcpClientApi": {
          "name": "<your credential>"
        }
      },
      "notesInFlow": true,
      "typeVersion": 1
    },
    {
      "id": "580d37de-deb9-49cf-b9b8-4d14edca28f2",
      "name": "Sticky Note",
      "type": "n8n-nodes-base.stickyNote",
      "position": [
        -40,
        460
      ],
      "parameters": {
        "color": 4,
        "width": 640,
        "height": 240,
        "content": "## Bright Data Search Engines"
      },
      "typeVersion": 1
    },
    {
      "id": "bb77ba7c-c70e-4912-96f6-4f63b966c7a9",
      "name": "Sticky Note1",
      "type": "n8n-nodes-base.stickyNote",
      "position": [
        -100,
        -260
      ],
      "parameters": {
        "color": 3,
        "width": 460,
        "height": 260,
        "content": "## Bright Data Google Search"
      },
      "typeVersion": 1
    },
    {
      "id": "ecdd9f42-f56c-4bdb-b778-cd3b7545bb37",
      "name": "MCP Client List all tools",
      "type": "n8n-nodes-mcp.mcpClientTool",
      "position": [
        260,
        280
      ],
      "parameters": {},
      "credentials": {
        "mcpClientApi": {
          "name": "<your credential>"
        }
      },
      "typeVersion": 1
    },
    {
      "id": "a1adfa84-6e1a-4b5c-9148-feddb1e6ab72",
      "name": "HTTP Request for Webhook Notification",
      "type": "@n8n/n8n-nodes-langchain.toolHttpRequest",
      "position": [
        500,
        240
      ],
      "parameters": {
        "url": "https://webhook.site/daf9d591-a130-4010-b1d3-0c66f8fcf467",
        "method": "POST",
        "sendBody": true,
        "parametersBody": {
          "values": [
            {
              "name": "chat_response"
            }
          ]
        },
        "toolDescription": "Webhook notification for search responses"
      },
      "typeVersion": 1.1
    },
    {
      "id": "ae88bb19-170f-443f-b777-561cf2e3be25",
      "name": "Sticky Note2",
      "type": "n8n-nodes-base.stickyNote",
      "position": [
        -100,
        -400
      ],
      "parameters": {
        "width": 440,
        "height": 120,
        "content": "## Disclaimer\nThis template is only available on n8n self-hosted as it's making use of the community node for MCP Client."
      },
      "typeVersion": 1
    },
    {
      "id": "80ac697d-2c4a-4f97-82aa-edcabbf7ef6f",
      "name": "Yandex Search Engine for Bright Data",
      "type": "n8n-nodes-mcp.mcpClientTool",
      "notes": "Scrape search results from Google, Bing or Yandex. Returns SERP results in markdown (URL, title, description)",
      "position": [
        460,
        540
      ],
      "parameters": {
        "toolName": "search_engine",
        "operation": "executeTool",
        "toolParameters": "={\n   \"query\": \"{{ $json.chatInput }}\",\n   \"engine\": \"yandex\"\n}"
      },
      "credentials": {
        "mcpClientApi": {
          "name": "<your credential>"
        }
      },
      "notesInFlow": true,
      "typeVersion": 1
    },
    {
      "id": "dfb2117d-782f-44d9-baca-1ee4b0fef863",
      "name": "Sticky Note3",
      "type": "n8n-nodes-base.stickyNote",
      "position": [
        -940,
        -40
      ],
      "parameters": {
        "color": 5,
        "width": 400,
        "height": 220,
        "content": "## Note\nUse Bright Data MCP Search Engine assistant tools to perform Google, Bing or Yandex Search.\n\nThe AI Agent will make use of suitable search engine-based tools, returns the response to Chat and also performs the Webhook notification call for sending the AI responses via the MCP Client tools.\n\nSource - https://github.com/luminati-io/brightdata-mcp"
      },
      "typeVersion": 1
    },
    {
      "id": "694b3381-8ebe-4afb-be93-019715c0c2cf",
      "name": "Sticky Note4",
      "type": "n8n-nodes-base.stickyNote",
      "position": [
        -440,
        460
      ],
      "parameters": {
        "width": 300,
        "height": 180,
        "content": "## LLM Usage\nGoogle Gemini is employed by the AI agent to understand and interpret user queries. Based on this interpretation, the agent initiates a call to the appropriate MCP client to perform the required web search task."
      },
      "typeVersion": 1
    }
  ],
  "active": false,
  "settings": {
    "executionOrder": "v1"
  },
  "versionId": "2382b23d-fd06-4f10-bcbd-f09a944a1c8d",
  "connections": {
    "Simple Memory": {
      "ai_memory": [
        [
          {
            "node": "AI Agent",
            "type": "ai_memory",
            "index": 0
          }
        ]
      ]
    },
    "Set search query": {
      "main": [
        [
          {
            "node": "MCP Client Bright Data Search Tool",
            "type": "main",
            "index": 0
          }
        ]
      ]
    },
    "Google Gemini Chat Model": {
      "ai_languageModel": [
        [
          {
            "node": "AI Agent",
            "type": "ai_languageModel",
            "index": 0
          }
        ]
      ]
    },
    "MCP Client List all tools": {
      "ai_tool": [
        [
          {
            "node": "AI Agent",
            "type": "ai_tool",
            "index": 0
          }
        ]
      ]
    },
    "When chat message received": {
      "main": [
        [
          {
            "node": "AI Agent",
            "type": "main",
            "index": 0
          }
        ]
      ]
    },
    "When clicking \u2018Test workflow\u2019": {
      "main": [
        [
          {
            "node": "MCP Client list all tools for Bright Data",
            "type": "main",
            "index": 0
          }
        ]
      ]
    },
    "Bing Search Engine for Bright Data": {
      "ai_tool": [
        [
          {
            "node": "AI Agent",
            "type": "ai_tool",
            "index": 0
          }
        ]
      ]
    },
    "Google Search Engine for Bright Data": {
      "ai_tool": [
        [
          {
            "node": "AI Agent",
            "type": "ai_tool",
            "index": 0
          }
        ]
      ]
    },
    "Yandex Search Engine for Bright Data": {
      "ai_tool": [
        [
          {
            "node": "AI Agent",
            "type": "ai_tool",
            "index": 0
          }
        ]
      ]
    },
    "HTTP Request for Webhook Notification": {
      "ai_tool": [
        [
          {
            "node": "AI Agent",
            "type": "ai_tool",
            "index": 0
          }
        ]
      ]
    },
    "MCP Client list all tools for Bright Data": {
      "main": [
        [
          {
            "node": "Set search query",
            "type": "main",
            "index": 0
          }
        ]
      ]
    }
  }
}

Credentials you'll need

Each integration node will prompt for credentials when you import. We strip credential IDs before publishing — you'll add your own.

Pro

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

About this workflow

This template is only available on n8n self-hosted as it's making use of the community node for MCP Client.

Source: https://n8n.io/workflows/3779/ — 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

Enhance Chat Responses with Real-Time Search Data via Bright Data & Gemini AI. Uses chatTrigger, agent, lmChatGoogleGemini, memoryBufferWindow. Chat trigger; 18 nodes.

Chat Trigger, Agent, Google Gemini Chat +3
AI & RAG

ModelRouter. Uses chatTrigger, agent, modelSelector, httpRequest. Chat trigger; 28 nodes.

Chat Trigger, Agent, Model Selector +8
AI & RAG

⚠️ IMPORTANT: This template requires self-hosted n8n hosting due to the use of community nodes (MCP tools). It will not work on n8n Cloud. Make sure you have access to a self-hosted n8n instance befor

Chat Trigger, Memory Buffer Window, Google Gemini Chat +4
AI & RAG

This n8n workflow template uses community nodes and is only compatible with the self-hosted version of n8n.

Chat Trigger, Memory Buffer Window, Google Gemini Chat +2
AI & RAG

An AI-powered chat assistant that analyzes Azure virtual machine activity and generates detailed timeline reports showing VM state changes, performance metrics, and operational events over time.

Agent, Tool Http Request, Chat Trigger +3