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  • Open-source Python framework enabling developers to build contextual AI agents with memory, tool integration, and LLM orchestration.
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    What is Nestor?
    Nestor offers a modular architecture to assemble AI agents that maintain conversation state, invoke external tools, and customize processing pipelines. Key features include session-based memory stores, a registry for tool functions or plugins, flexible prompt templating, and unified LLM client interfaces. Agents can execute sequential tasks, perform decision branching, and integrate with REST APIs or local scripts. Nestor is framework-agnostic, enabling users to work with OpenAI, Azure, or self-hosted LLM providers.
    Nestor Core Features
    • LLM orchestration and prompt templating
    • Session-based memory management
    • Tool and plugin integration
    • Sequential task pipelines
    • Provider-agnostic LLM clients
  • ChainLite lets developers build LLM-driven agent applications via modular chains, tools integration, and live conversation visualization.
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    What is ChainLite?
    ChainLite streamlines creation of AI agents by abstracting the complexities of LLM orchestration into reusable chain modules. Using simple Python decorators and configuration files, developers define agent behaviors, tool interfaces and memory structures. The framework integrates with popular LLM providers (OpenAI, Cohere, Hugging Face) and external data sources (APIs, databases), allowing agents to fetch real-time information. With a built-in browser-based UI powered by Streamlit, users can inspect token-level conversation history, debug prompts, and visualize chain execution graphs. ChainLite supports multiple deployment targets, from local development to production containers, enabling seamless collaboration between data scientists, engineers, and product teams.
  • Rags is a Python framework enabling retrieval-augmented chatbots by combining vector stores with LLMs for knowledge-based QA.
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    What is Rags?
    Rags provides a modular pipeline to build retrieval-augmented generative applications. It integrates with popular vector stores (e.g., FAISS, Pinecone), offers configurable prompt templates, and includes memory modules to maintain conversational context. Developers can switch between LLM providers like Llama-2, GPT-4, and Claude2 through a unified API. Rags supports streaming responses, custom preprocessing, and evaluation hooks. Its extensible design enables seamless integration into production services, allowing automated document ingestion, semantic search, and generation tasks for chatbots, knowledge assistants, and document summarization at scale.
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