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| title: '💬 chat' |
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| `chat()` method allows you to chat over your data sources using a user-friendly chat API. You can find the signature below: |
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| <ParamField path="input_query" type="str"> |
| Question to ask |
| </ParamField> |
| <ParamField path="config" type="BaseLlmConfig" optional> |
| Configure different llm settings such as prompt, temprature, number_documents etc. |
| </ParamField> |
| <ParamField path="dry_run" type="bool" optional> |
| The purpose is to test the prompt structure without actually running LLM inference. Defaults to `False` |
| </ParamField> |
| <ParamField path="where" type="dict" optional> |
| A dictionary of key-value pairs to filter the chunks from the vector database. Defaults to `None` |
| </ParamField> |
| <ParamField path="session_id" type="str" optional> |
| Session ID of the chat. This can be used to maintain chat history of different user sessions. Default value: `default` |
| </ParamField> |
| <ParamField path="citations" type="bool" optional> |
| Return citations along with the LLM answer. Defaults to `False` |
| </ParamField> |
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| <ResponseField name="answer" type="str | tuple"> |
| If `citations=False`, return a stringified answer to the question asked. <br /> |
| If `citations=True`, returns a tuple with answer and citations respectively. |
| </ResponseField> |
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| If you want to get the answer to question and return both answer and citations, use the following code snippet: |
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| ```python With Citations |
| from embedchain import App |
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| app = App() |
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| app.add("https://www.forbes.com/profile/elon-musk") |
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| answer, sources = app.chat("What is the net worth of Elon?", citations=True) |
| print(answer) |
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| print(sources) |
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| ``` |
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| <Note> |
| When `citations=True`, note that the returned `sources` are a list of tuples where each tuple has two elements (in the following order): |
| 1. source chunk |
| 2. dictionary with metadata about the source chunk |
| - `url`: url of the source |
| - `doc_id`: document id (used for book keeping purposes) |
| - `score`: score of the source chunk with respect to the question |
| - other metadata you might have added at the time of adding the source |
| </Note> |
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| If you just want to return answers and don't want to return citations, you can use the following example: |
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| ```python Without Citations |
| from embedchain import App |
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| # Initialize app |
| app = App() |
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| # Add data source |
| app.add("https://www.forbes.com/profile/elon-musk") |
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| # Chat on your data using `.chat()` |
| answer = app.chat("What is the net worth of Elon?") |
| print(answer) |
| # Answer: The net worth of Elon Musk is $221.9 billion. |
| ``` |
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| ### With session id |
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| If you want to maintain chat sessions for different users, you can simply pass the `session_id` keyword argument. See the example below: |
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| ```python With session id |
| from embedchain import App |
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| app = App() |
| app.add("https://www.forbes.com/profile/elon-musk") |
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| # Chat on your data using `.chat()` |
| app.chat("What is the net worth of Elon Musk?", session_id="user1") |
| # 'The net worth of Elon Musk is $250.8 billion.' |
| app.chat("What is the net worth of Bill Gates?", session_id="user2") |
| # "I don't know the current net worth of Bill Gates." |
| app.chat("What was my last question", session_id="user1") |
| # 'Your last question was "What is the net worth of Elon Musk?"' |
| ``` |
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| ### With custom context window |
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| If you want to customize the context window that you want to use during chat (default context window is 3 document chunks), you can do using the following code snippet: |
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| ```python with custom chunks size |
| from embedchain import App |
| from embedchain.config import BaseLlmConfig |
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| app = App() |
| app.add("https://www.forbes.com/profile/elon-musk") |
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| query_config = BaseLlmConfig(number_documents=5) |
| app.chat("What is the net worth of Elon Musk?", config=query_config) |
| ``` |
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| ### With Mem0 to store chat history |
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| Mem0 is a cutting-edge long-term memory for LLMs to enable personalization for the GenAI stack. It enables LLMs to remember past interactions and provide more personalized responses. |
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| In order to use Mem0 to enable memory for personalization in your apps: |
| - Install the [`mem0`](https://docs.mem0.ai/) package using `pip install mem0ai`. |
| - Prepare config for `memory`, refer [Configurations](docs/api-reference/advanced/configuration.mdx). |
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| ```python with mem0 |
| from embedchain import App |
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| config = { |
| "memory": { |
| "top_k": 5 |
| } |
| } |
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| app = App.from_config(config=config) |
| app.add("https://www.forbes.com/profile/elon-musk") |
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| app.chat("What is the net worth of Elon Musk?") |
| ``` |
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| ## How Mem0 works: |
| - Mem0 saves context derived from each user question into its memory. |
| - When a user poses a new question, Mem0 retrieves relevant previous memories. |
| - The `top_k` parameter in the memory configuration specifies the number of top memories to consider during retrieval. |
| - Mem0 generates the final response by integrating the user's question, context from the data source, and the relevant memories. |
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