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- title: README
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- Edit this `README.md` markdown file to author your organization card.
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
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+ title: Duohub
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+ # Duohub - Ultra-fast Graph RAG for Voice AI
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+ Duohub provides blazing fast graph RAG services specifically designed for voice AI and other low-latency applications, delivering context in under 50ms.
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+ ## Key Features
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+ - **Graph & Vector RAG**: Choose between semantic similarity search with reranking or deep query resolution with graph traversals
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+ - **Custom Ontologies**: Pre-trained ontology models for different domains, with options for custom ontologies
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+ - **Advanced Processing**: Built-in coreference resolution, fact extraction, and entity resolution
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+ - **Global Scale**: Data replicated across multiple regions for consistent low-latency performance
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+ - **Simple Integration**: Start querying your knowledge base with just three lines of code
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+
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+ ## Quick Start
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+ ```python
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+ from duohub import Duohub
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+ client = Duohub(api_key="your_api_key")
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+ response = client.query(query="Your question here", memoryID="your_memory_id")
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+ ## Why Duohub? ⭐
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+ - 🚄 **Lightning-Fast**: Delivers query responses in under 50ms, making it ideal for real-time voice AI applications
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+ - 🎯 **High Precision**: Graph-based memory ensures accurate and contextually relevant responses
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+ - 🔌 **Easy Integration**: Get started with just 3 lines of code - no complex setup or infrastructure needed
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+ - 🌍 **Global Ready**: Data replicated across 3 locations by default for consistent low-latency performance
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+ - 🎛️ **Flexible Options**: Choose between vector or graph RAG based on your needs
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+ - 🛠️ **Built-in Processing**: Includes coreference resolution, fact extraction, and entity resolution out of the box
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+ - 🏢 **Enterprise Grade**: Supports on-premise deployment, custom ontologies, and dedicated support