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自訂行為

  • A lightweight Node.js framework enabling multiple AI agents to collaborate, communicate, and manage task workflows.
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    What is Multi-Agent Framework?
    Multi-Agent is a developer toolkit that helps you build and orchestrate multiple AI agents running in parallel. Each agent maintains its own memory store, prompt configuration, and message queue. You can define custom behaviors, set up inter-agent communication channels, and delegate tasks automatically based on agent roles. It leverages OpenAI's Chat API for language understanding and generation, while providing modular components for workflow orchestration, logging, and error handling. This enables creation of specialized agents—such as research assistants, data processors, or customer support bots—that work together on multifaceted tasks.
  • APLib provides autonomous game testing agents with perception, planning, and action modules to simulate user behaviors in virtual environments.
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    What is APLib?
    APLib is designed to simplify the development of AI-driven autonomous agents within gaming and simulation environments. Utilizing a Belief-Desire-Intention (BDI) inspired architecture, it offers modular components for perception, decision-making, and action execution. Developers define agent beliefs, goals, and behaviors via intuitive APIs and behavior trees. APLib agents can interpret game state through customizable sensors, formulate plans using built-in planners, and interact with the environment via actuators. The library supports integration with Unity, Unreal, and pure Java environments, facilitating automated testing, AI research, and simulations. It promotes reuse of behavior modules, rapid prototyping, and robust QA workflows by automating repetitive test scenarios and simulating complex player behaviors without manual intervention.
  • Java Action Generic is a Java-based agent framework offering flexible, reusable action modules for building autonomous agent behaviors.
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    What is Java Action Generic?
    Java Action Generic is a lightweight, modular library that allows developers to implement autonomous agent behaviors in Java by defining generic actions. Actions are parameterized units of work that agents can execute, schedule, and compose at runtime. The framework offers a consistent action interface, allowing developers to create custom actions, handle action parameters, and integrate with LightJason’s agent lifecycle management. With support for event-driven execution and concurrency, agents can perform tasks such as dynamic decision-making, interaction with external services, and complex behavior orchestration. The library promotes reusability and modular design, making it suitable for research, simulations, IoT, and game AI applications on any JVM-supported platform.
  • A Python-based AI agent framework offering autonomous task planning, plugin extensibility, tool integration, and memory management.
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    What is Nova?
    Nova provides a comprehensive toolkit for creating autonomous AI agents in Python. It offers a planner that decomposes goals into actionable steps, a plugin system to integrate any external tools or APIs, and a memory module to store and recall conversation context. Developers can configure custom behaviors, track agent decisions through logs, and extend functionality with minimal code. Nova streamlines the entire agent lifecycle from design to deployment.
  • AAGPT is an open-source framework to build autonomous AI agents with multi-step planning, memory management, and tool integrations.
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    What is AAGPT?
    AAGPT is an extensible, open-source AI agent framework designed for building autonomous agents. It enables you to define high-level objectives, manage conversational memory, plan multi-step tasks, and integrate external tools or APIs. Using a simple configuration file and Python SDK, you can customize agent behavior, define custom actions, and deploy agents that can interact with data sources, execute commands, and learn from past interactions to improve performance over time.
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