Workflow: Stickynote Create

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{
    "id": "yCIEiv9QUHP8pNfR",
    "meta": {
        "instanceId": "f29695a436689357fd2dcb55d528b0b528d2419f53613c68c6bf909a92493614",
        "templateCredsSetupCompleted": true
    },
    "name": "Build Custom AI Agent with LangChain & Gemini (Self-Hosted)",
    "tags": [
        {
            "id": "7M5ZpGl3oWuorKpL",
            "name": "share",
            "createdAt": "2025-03-26T01:17:15.342Z",
            "updatedAt": "2025-03-26T01:17:15.342Z"
        }
    ],
    "nodes": [
        {
            "id": "8bd5382d-f302-4e58-b377-7fc5a22ef994",
            "name": "When chat message received",
            "type": "@n8n\/n8n-nodes-langchain.chatTrigger",
            "position": [
                -220,
                0
            ],
            "webhookId": "b8a5d72c-4172-40e8-b429-d19c2cd6ce54",
            "parameters": {
                "public": true,
                "options": {
                    "responseMode": "lastNode",
                    "allowedOrigins": "*",
                    "loadPreviousSession": "memory"
                },
                "initialMessages": ""
            },
            "typeVersion": 1.100000000000000088817841970012523233890533447265625
        },
        {
            "id": "6ae8a247-4077-4569-9e2c-bb68bcecd044",
            "name": "Google Gemini Chat Model",
            "type": "@n8n\/n8n-nodes-langchain.lmChatGoogleGemini",
            "position": [
                80,
                240
            ],
            "parameters": {
                "options": {
                    "temperature": 0.6999999999999999555910790149937383830547332763671875,
                    "safetySettings": {
                        "values": [
                            {
                                "category": "HARM_CATEGORY_SEXUALLY_EXPLICIT",
                                "threshold": "BLOCK_NONE"
                            }
                        ]
                    }
                },
                "modelName": "models\/gemini-2.0-flash-exp"
            },
            "credentials": {
                "googlePalmApi": {
                    "id": "UEjKMw0oqBTAdCWJ",
                    "name": "Google Gemini(PaLM) Api account"
                }
            },
            "typeVersion": 1
        },
        {
            "id": "bbe6dcfa-430f-43f9-b0e9-3cf751b98818",
            "name": "Sticky Note",
            "type": "n8n-nodes-base.stickyNote",
            "position": [
                380,
                -240
            ],
            "parameters": {
                "width": 260,
                "height": 220,
                "content": "\ud83d\udc47 **Prompt Engineering**\n   - Define agent personality and conversation structure in the `Construct & Execute LLM Prompt` node's template variable  \n   - \u26a0\ufe0f Template must preserve `{chat_history}` and `{input}` placeholders for proper LangChain operation  "
            },
            "typeVersion": 1
        },
        {
            "id": "892a431a-6ddf-47fc-8517-1928ee99c95b",
            "name": "Store conversation history",
            "type": "@n8n\/n8n-nodes-langchain.memoryBufferWindow",
            "position": [
                280,
                240
            ],
            "parameters": [],
            "notesInFlow": false,
            "typeVersion": 1.3000000000000000444089209850062616169452667236328125
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        {
            "id": "f9a22dbf-cac7-4d70-85b3-50c44a2015d5",
            "name": "Construct & Execute LLM Prompt",
            "type": "@n8n\/n8n-nodes-langchain.code",
            "position": [
                380,
                0
            ],
            "parameters": {
                "code": {
                    "execute": {
                        "code": "const { PromptTemplate } = require('@langchain\/core\/prompts');\nconst { ConversationChain } = require('langchain\/chains');\nconst { BufferMemory } = require('langchain\/memory');\n\nconst template = `\nYou'll be roleplaying as the user's girlfriend. Your character is a woman with a sharp wit, logical mindset, and a charmingly aloof demeanor that hides your playful side. You're passionate about music, maintain a fit and toned physique, and carry yourself with quiet self-assurance. Career-wise, you're established and ambitious, approaching life with positivity while constantly striving to grow as a person.\n\nThe user affectionately calls you \"Bunny,\" and you refer to them as \"Darling.\"\n\nEssential guidelines:\n1. Respond exclusively in Chinese\n2. Never pose questions to the user - eliminate all interrogative forms\n3. Keep responses brief and substantive, avoiding rambling or excessive emojis\n\nContext framework:\n- Conversation history: {chat_history}\n- User's current message: {input}\n\nCraft responses that feel authentic to this persona while adhering strictly to these parameters.\n`;\n\nconst prompt = new PromptTemplate({\n  template: template,\n  inputVariables: [\"input\", \"chat_history\"], \n});\n\nconst items = this.getInputData();\nconst model = await this.getInputConnectionData('ai_languageModel', 0);\nconst memory = await this.getInputConnectionData('ai_memory', 0);\nmemory.returnMessages = false;\n\nconst chain = new ConversationChain({ llm:model, memory:memory, prompt: prompt, inputKey:\"input\", outputKey:\"output\"});\nconst output = await chain.call({ input: items[0].json.chatInput});\n\nreturn output;\n"
                    }
                },
                "inputs": {
                    "input": [
                        {
                            "type": "main",
                            "required": true,
                            "maxConnections": 1
                        },
                        {
                            "type": "ai_languageModel",
                            "required": true,
                            "maxConnections": 1
                        },
                        {
                            "type": "ai_memory",
                            "required": true,
                            "maxConnections": 1
                        }
                    ]
                },
                "outputs": {
                    "output": [
                        {
                            "type": "main"
                        }
                    ]
                }
            },
            "retryOnFail": false,
            "typeVersion": 1
        },
        {
            "id": "fe104d19-a24d-48b3-a0ac-7d3923145373",
            "name": "Sticky Note1",
            "type": "n8n-nodes-base.stickyNote",
            "position": [
                -240,
                -260
            ],
            "parameters": {
                "color": 5,
                "width": 420,
                "height": 240,
                "content": "### Setup Instructions  \n1. **Configure Gemini Credentials**: Set up your Google Gemini API key ([Get API key here](https:\/\/ai.google.dev\/) if needed). Alternatively, you may use other AI provider nodes.  \n2. **Interaction Methods**:  \n   - Test directly in the workflow editor using the \"Chat\" button  \n   - Activate the workflow and access the chat interface via the URL provided by the `When Chat Message Received` node  "
            },
            "typeVersion": 1
        },
        {
            "id": "f166214d-52b7-4118-9b54-0b723a06471a",
            "name": "Sticky Note2",
            "type": "n8n-nodes-base.stickyNote",
            "position": [
                -220,
                160
            ],
            "parameters": {
                "height": 100,
                "content": "\ud83d\udc46 **Interface Settings**\nConfigure chat UI elements (e.g., title) in the `When Chat Message Received` node  "
            },
            "typeVersion": 1
        },
        {
            "id": "da6ca0d6-d2a1-47ff-9ff3-9785d61db9f3",
            "name": "Sticky Note3",
            "type": "n8n-nodes-base.stickyNote",
            "position": [
                20,
                420
            ],
            "parameters": {
                "width": 200,
                "height": 140,
                "content": "\ud83d\udc46 **Model Selection**\nSwap language models through the `language model` input field in `Construct & Execute LLM Prompt`  "
            },
            "typeVersion": 1
        },
        {
            "id": "0b4dd1ac-8767-4590-8c25-36cba73e46b6",
            "name": "Sticky Note4",
            "type": "n8n-nodes-base.stickyNote",
            "position": [
                240,
                420
            ],
            "parameters": {
                "width": 200,
                "height": 140,
                "content": "\ud83d\udc46 **Memory Control**\nAdjust conversation history length in the `Store Conversation History` node  "
            },
            "typeVersion": 1
        }
    ],
    "active": false,
    "pinData": [],
    "settings": {
        "callerPolicy": "workflowsFromSameOwner",
        "executionOrder": "v1",
        "saveManualExecutions": false,
        "saveDataSuccessExecution": "none"
    },
    "versionId": "77cd5f05-f248-442d-86c3-574351179f26",
    "connections": {
        "Google Gemini Chat Model": {
            "ai_languageModel": [
                [
                    {
                        "node": "Construct & Execute LLM Prompt",
                        "type": "ai_languageModel",
                        "index": 0
                    }
                ]
            ]
        },
        "Store conversation history": {
            "ai_memory": [
                [
                    {
                        "node": "Construct & Execute LLM Prompt",
                        "type": "ai_memory",
                        "index": 0
                    },
                    {
                        "node": "When chat message received",
                        "type": "ai_memory",
                        "index": 0
                    }
                ]
            ]
        },
        "When chat message received": {
            "main": [
                [
                    {
                        "node": "Construct & Execute LLM Prompt",
                        "type": "main",
                        "index": 0
                    }
                ]
            ]
        },
        "Construct & Execute LLM Prompt": {
            "main": [
                []
            ],
            "ai_memory": [
                []
            ]
        }
    }
}
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