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  • A modular Python starter template for building and deploying AI agents with LLM integration and plugin support.
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    What is BeeAI Framework Py Starter?
    BeeAI Framework Py Starter is an open-source Python project designed to bootstrap AI agent creation. It includes core modules for agent orchestration, a plugin system to extend functionality, and adapters for connecting to popular LLM APIs. Developers can define tasks, manage conversational memory, and integrate external tools through simple configuration files. The framework emphasizes modularity and ease of use, enabling rapid prototyping of chatbots, automated assistants, and data-processing agents without boilerplate code.
  • Java-Action-Shape offers agents within the LightJason MAS a suite of Java actions to generate, transform, and analyze geometric shapes.
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    What is Java-Action-Shape?
    Java-Action-Shape is a dedicated action library designed to extend the LightJason multi-agent framework with advanced geometric capabilities. It provides agents with out-of-the-box actions to instantiate common shapes (circle, rectangle, polygon), apply transformations (translate, rotate, scale), and perform analytical computations (area, perimeter, centroid). Each action is thread-safe and integrates with LightJason’s asynchronous execution model, ensuring efficient parallel processing. Developers can define custom shapes by specifying vertices and edges, register them within the agent’s action registry, and include them in plan definitions. By centralizing shape-related logic, Java-Action-Shape reduces boilerplate code, enforces consistent APIs, and accelerates the creation of geometry-driven agent applications, from simulations to educational tools.
  • Inngest AgentKit is a Node.js toolkit for creating AI agents with event workflows, templated rendering, and seamless API integrations.
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    What is Inngest AgentKit?
    Inngest AgentKit provides a comprehensive framework for developing AI agents within a Node.js environment. It leverages Inngest’s event-driven architecture to trigger agent workflows based on external events such as HTTP requests, scheduled tasks, or webhook calls. The toolkit includes template rendering utilities for crafting dynamic responses, built-in state management to maintain context over sessions, and seamless integration with external APIs and language models. Agents can stream partial responses in real time, manage complex logic, and orchestrate multi-step processes with error handling and retries. By abstracting infrastructure and workflow concerns, AgentKit enables developers to focus on designing intelligent behaviors, reducing boilerplate code and accelerating deployment of conversational assistants, data-processing pipelines, and task automation bots.
  • ExampleAgent is a template framework for creating customizable AI agents that automate tasks via OpenAI API.
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    What is ExampleAgent?
    ExampleAgent is a developer-focused toolkit designed to accelerate the creation of AI-driven assistants. It integrates directly with OpenAI’s GPT models to handle natural language understanding and generation, and offers a pluggable system for adding custom tools or APIs. The framework manages conversation context, memory, and error handling, enabling agents to perform information retrieval, task automation, and decision-making workflows. With clear code templates, documentation, and examples, teams can rapidly prototype domain-specific agents for chatbots, data extraction, scheduling, and more.
  • A lightweight Python library enabling developers to define, register, and automatically invoke functions through LLM outputs.
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    What is LLM Functions?
    LLM Functions provides a simple framework to bridge large language model responses with real code execution. You define functions via JSON schemas, register them with the library, and the LLM will return structured function calls when appropriate. The library parses those responses, validates the parameters, and invokes the correct handler. It supports synchronous and asynchronous callbacks, custom error handling, and plugin extensions, making it ideal for applications that require dynamic data lookup, external API calls, or complex business logic within AI-driven conversations.
  • A Python framework enabling developers to integrate LLMs with custom tools via modular plugins for building intelligent agents.
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    What is OSU NLP Middleware?
    OSU NLP Middleware is a lightweight framework built in Python that simplifies the development of AI agent systems. It provides a core agent loop that orchestrates interactions between natural language models and external tool functions defined as plugins. The framework supports popular LLM providers (OpenAI, Hugging Face, etc.), and enables developers to register custom tools for tasks like database queries, document retrieval, web search, mathematical computation, and RESTful API calls. Middleware manages conversation history, handles rate limits, and logs all interactions. It also offers configurable caching and retry policies for improved reliability, making it easy to build intelligent assistants, chatbots, and autonomous workflows with minimal boilerplate code.
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