--- sidebar_position: 2 slug: /general_purpose_chatbot --- # Create a general-purpose chatbot Chatbot is one of the most common AI scenarios. However, effectively understanding user queries and responding appropriately remains a challenge. RAGFlow's general-purpose chatbot agent is our attempt to tackle this longstanding issue. This chatbot closely resembles the chatbot introduced in [Start an AI chat](../start_chat.md), but with a key difference - it introduces a reflective mechanism that allows it to improve the retrieval from the target knowledge bases by rewriting the user's query. This document provides guides on creating such a chatbot using our chatbot template. ## Prerequisites 1. Ensure you have properly set the LLM to use. See the guides on [Configure your API key](../llm_api_key_setup.md) or [Deploy a local LLM](../deploy_local_llm.mdx) for more information. 2. Ensure you have a knowledge base configured and the corresponding files properly parsed. See the guide on [Configure a knowledge base](../configure_knowledge_base.md) for more information. 3. Make sure you have read the [Introduction to Agentic RAG](./agent_introduction.md). ## Create a chatbot agent from template To create a general-purpose chatbot agent using our template: 1. Click the **Agent** tab in the middle top of the page to show the **Agent** page. 2. Click **+ Create agent** on the top right of the page to show the **agent template** page. 3. On the **agent template** page, hover over the card on **General-purpose chatbot** and click **Use this template**. *You are now directed to the **no-code workflow editor** page.*  :::tip NOTE RAGFlow's no-code editor spares you the trouble of coding, making agent development effortless. ::: ## Understand each component in the template Here’s a breakdown of each component and its role and requirements in the chatbot template: - **Begin** - Function: Sets the opening greeting for the user. - Purpose: Establishes a welcoming atmosphere and prepares the user for interaction. - **Interact** - Function: Serves as the interface between human and the bot. - Role: Acts as the downstream component of **Begin**. - **Retrieval** - Function: Retrieves information from specified knowledge base(s). - Requirement: Must have `knowledgebases` set up to function. - **Relevant** - Function: Assesses the relevance of the retrieved information from the **Retrieval** component to the user query. - Process: - If relevant, it directs the data to the **Generate** component for final response generation. - Otherwise, it triggers the **Rewrite** component to refine the user query and redo the retrival process. - **Generate** - Function: Prompts the LLM to generate responses based on the retrieved information. - Note: The prompt settings allow you to control the way in which the LLM generates responses. Be sure to review the prompts and make necessary changes. - **Rewrite**: - Function: Refines a user query when no relevant information from the knowledge base is retrieved. - Usage: Often used in conjunction with **Relevant** and **Retrieval** to create a reflective/feedback loop. ## Configure your chatbot agent 1. Click **Begin** to set an opening greeting:  2. Click **Retrieval** to select the right knowledge base(s) and make any necessary adjustments:  3. Click **Generate** to configure the LLM's summarization behavior: 3.1. Confirm the model. 3.2. Review the prompt settings. If there are variables, ensure they match the correct component IDs:  4. Click **Relevant** to review or change its settings: *You may retain the current settings, but feel free to experiment with changes to understand how the agent operates.*  5. Click **Rewrite** to select a different model for query rewriting or update the maximum loop times for query rewriting:   :::danger NOTE Increasing the maximum loop times may significantly extend the time required to receive the final response. ::: 1. Update your workflow where you see necessary. 2. Click to **Save** to apply your changes. *Your agent appears as one of the agent cards on the **Agent** page.* ## Test your chatbot agent 1. Find your chatbot agent on the **Agent** page:  2. Experiment with your questions to verify if this chatbot functions as intended: 