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 - sidebar_position: 1
 - slug: /start_chat
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 - 
 - # Start an AI-powered chat
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 - Initiate a chat with a configured chat assistant.
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 - ---
 - 
 - Knowledge base, hallucination-free chat, and file management are the three pillars of RAGFlow. Chats in RAGFlow are based on a particular knowledge base or multiple knowledge bases. Once you have created your knowledge base and finished file parsing, you can go ahead and start an AI conversation.
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 - ## Start an AI chat
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 - You start an AI conversation by creating an assistant.
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 - 1. Click the **Chat** tab in the middle top of the page **>** **Create an assistant** to show the **Chat Configuration** dialogue *of your next dialogue*.
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 -    > RAGFlow offers you the flexibility of choosing a different chat model for each dialogue, while allowing you to set the default models in **System Model Settings**.
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 - 2. Update **Assistant Setting**:
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 -    - **Assistant name** is the name of your chat assistant. Each assistant corresponds to a dialogue with a unique combination of knowledge bases, prompts, hybrid search configurations, and large model settings.
 -    - **Empty response**:
 -      - If you wish to *confine* RAGFlow's answers to your knowledge bases, leave a response here. Then, when it doesn't retrieve an answer, it *uniformly* responds with what you set here.
 -      - If you wish RAGFlow to *improvise* when it doesn't retrieve an answer from your knowledge bases, leave it blank, which may give rise to hallucinations.
 -    - **Show quote**: This is a key feature of RAGFlow and enabled by default. RAGFlow does not work like a black box. Instead, it clearly shows the sources of information that its responses are based on.
 -    - Select the corresponding knowledge bases. You can select one or multiple knowledge bases, but ensure that they use the same embedding model, otherwise an error would occur.
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 - 3. Update **Prompt Engine**:
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 -    - In **System**, you fill in the prompts for your LLM, you can also leave the default prompt as-is for the beginning.
 -    - **Similarity threshold** sets the similarity "bar" for each chunk of text. The default is 0.2. Text chunks with lower similarity scores are filtered out of the final response.
 -    - **Keyword similarity weight** is set to 0.7 by default. RAGFlow uses a hybrid score system to evaluate the relevance of different text chunks. This value sets the weight assigned to the keyword similarity component in the hybrid score.
 -      - If **Rerank model** is left empty, the hybrid score system uses keyword similarity and vector similarity, and the default weight assigned to the vector similarity component is 1-0.7=0.3.
 -      - If **Rerank model** is selected, the hybrid score system uses keyword similarity and reranker score, and the default weight assigned to the reranker score is 1-0.7=0.3.
 -    - **Top N** determines the *maximum* number of chunks to feed to the LLM. In other words, even if more chunks are retrieved, only the top N chunks are provided as input.
 -    - **Multi-turn optimization** enhances user queries using existing context in a multi-round conversation. It is enabled by default. When enabled, it will consume additional LLM tokens and significantly increase the time to generate answers.
 -    - **Rerank model** sets the reranker model to use. It is left empty by default.
 -      - If **Rerank model** is left empty, the hybrid score system uses keyword similarity and vector similarity, and the default weight assigned to the vector similarity component is 1-0.7=0.3.
 -      - If **Rerank model** is selected, the hybrid score system uses keyword similarity and reranker score, and the default weight assigned to the reranker score is 1-0.7=0.3.
 -    - **Variable** refers to the variables (keys) to be used in the system prompt. `{knowledge}` is a reserved variable. Click **Add** to add more variables for the system prompt.
 -       - If you are uncertain about the logic behind **Variable**, leave it *as-is*.
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 - 4. Update **Model Setting**:
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 -    - In **Model**: you select the chat model. Though you have selected the default chat model in **System Model Settings**, RAGFlow allows you to choose an alternative chat model for your dialogue.
 -    - **Preset configurations** refers to the level that the LLM improvises. From **Improvise**, **Precise**, to **Balance**, each preset configuration corresponds to a unique combination of **Temperature**, **Top P**, **Presence penalty**, and **Frequency penalty**.
 -    - **Temperature**: Level of the prediction randomness of the LLM. The higher the value, the more creative the LLM is.
 -    - **Top P** is also known as "nucleus sampling". See [here](https://en.wikipedia.org/wiki/Top-p_sampling) for more information.
 -    - **Max Tokens**: The maximum length of the LLM's responses. Note that the responses may be curtailed if this value is set too low.
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 - 5. Now, let's start the show:
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 -    
 - 
 - :::tip NOTE
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 - 1. Click the light bulb icon above the answer to view the expanded system prompt:
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 - 
 - 
 -    *The light bulb icon is available only for the current dialogue.*
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 - 2. Scroll down the expanded prompt to view the time consumed for each task:
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 - 
 - :::
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 - ## Update settings of an existing chat assistant
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 - Hover over an intended chat assistant **>** **Edit** to show the chat configuration dialogue:
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 - 
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 - 
 - 
 - ## Integrate chat capabilities into your application or webpage
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 - RAGFlow offers HTTP and Python APIs for you to integrate RAGFlow's capabilities into your applications. Read the following documents for more information:
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 - - [Acquire a RAGFlow API key](https://ragflow.io/docs/dev/acquire_ragflow_api_key)
 - - [HTTP API reference](https://ragflow.io/docs/dev/http_api_reference)
 - - [Python API reference](https://ragflow.io/docs/dev/python_api_reference)
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 - You can use iframe to embed the created chat assistant into a third-party webpage:
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 - 1. Before proceeding, you must [acquire an API key](https://ragflow.io/docs/dev/acquire_ragflow_api_key); otherwise, an error message would appear.
 - 2. Hover over an intended chat assistant **>** **Edit** to show the **iframe** window:
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 -    
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 - 3. Copy the iframe and embed it into a specific location on your webpage.
 
 
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