davidfearne commited on
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1 Parent(s): 06554f3

Update app.py

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  1. app.py +3 -3
app.py CHANGED
@@ -88,18 +88,18 @@ st.sidebar.caption(f"Session ID: {genuuid()}")
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  # Main chat interface
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- st.markdown("""## Query Translation in RAG Architecture
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  Query translation in a Retrieval-Augmented Generation (RAG) architecture is the process where an LLM acts as a translator between the user's natural language input and the retrieval system.
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- ### Key Functions of Query Translation:
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  1. **Adds Context**
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  The LLM enriches the user's input with relevant context (e.g., expanding vague questions or specifying details) to make it more precise.
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  2. **Converts to Concise Query**
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  The LLM reformulates the input into a succinct and effective query optimized for the retrieval system's semantic search capabilities.
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- ### Purpose
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  This ensures that the retrieval system receives a clear and focused query, increasing the relevance of the information it retrieves. The query translator acts as a bridge between human conversational language and the technical requirements of a semantic retrieval system.""")
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  # User ID Input
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  user_id = st.text_input("Experiment ID:", key="user_id")
 
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  # Main chat interface
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+ st.markdown("""#### Query Translation in RAG Architecture
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  Query translation in a Retrieval-Augmented Generation (RAG) architecture is the process where an LLM acts as a translator between the user's natural language input and the retrieval system.
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+ ##### Key Functions of Query Translation:
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  1. **Adds Context**
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  The LLM enriches the user's input with relevant context (e.g., expanding vague questions or specifying details) to make it more precise.
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  2. **Converts to Concise Query**
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  The LLM reformulates the input into a succinct and effective query optimized for the retrieval system's semantic search capabilities.
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+ ##### Purpose
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  This ensures that the retrieval system receives a clear and focused query, increasing the relevance of the information it retrieves. The query translator acts as a bridge between human conversational language and the technical requirements of a semantic retrieval system.""")
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  # User ID Input
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  user_id = st.text_input("Experiment ID:", key="user_id")