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рамки ИИ

  • CAMEL-AI is an open-source LLM multi-agent framework enabling autonomous agents to collaborate using retrieval-augmented generation and tool integration.
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    What is CAMEL-AI?
    CAMEL-AI is a Python-based framework that allows developers and researchers to build, configure, and run multiple autonomous AI agents powered by LLMs. It offers built-in support for retrieval-augmented generation (RAG), external tool usage, agent communication, memory and state management, and scheduling. With modular components and easy integration, teams can prototype complex multi-agent systems, automate workflows, and scale experiments across different LLM backends.
  • Griptape enables swift, secure AI agent development and deployment using your data.
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    What is Griptape?
    Griptape provides a comprehensive AI framework that simplifies the development and deployment of AI agents. It equips developers with tools for data preparation (ETL), retrieval-based services (RAG), and agent workflow management. The platform supports building secure, reliable AI systems without the complexities of traditional AI frameworks, enabling organizations to leverage their data effectively for intelligent applications.
  • An open-source framework enabling creation and orchestration of multiple AI agents that collaborate on complex tasks via JSON messaging.
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    What is Multi AI Agent Systems?
    This framework allows users to design, configure, and deploy multiple AI agents that communicate via JSON messages through a central orchestrator. Each agent can have distinct roles, prompts, and memory modules, and you can plug in any LLM provider by implementing a provider interface. The system supports persistent conversation history, dynamic routing, and modular extensions. Ideal for simulating debates, automating customer support flows, or coordinating multi-step document generation, it runs on Python, with Docker support for containerized deployments.
  • An open-source autonomous AI agent framework executing tasks, integrating tools like browser and terminal, and memory through human feedback.
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    What is SuperPilot?
    SuperPilot is an autonomous AI agent framework that leverages large language models to perform multi-step tasks without manual intervention. By integrating GPT and Anthropic models, it can generate plans, call external tools such as a headless browser for web scraping, a terminal for executing shell commands, and memory modules for context retention. Users define goals, and SuperPilot dynamically orchestrates sub-tasks, maintains a task queue, and adapts to new information. The modular architecture allows adding custom tools, adjusting model settings, and logging interactions. With built-in feedback loops, human input can refine decision-making and improve results. This makes SuperPilot suitable for automating research, coding tasks, testing, and routine data processing workflows.
  • DAGent builds modular AI agents by orchestrating LLM calls and tools as directed acyclic graphs for complex task coordination.
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    What is DAGent?
    At its core, DAGent represents agent workflows as a directed acyclic graph of nodes, where each node can encapsulate an LLM call, custom function, or external tool. Developers define task dependencies explicitly, enabling parallel execution and conditional logic, while the framework manages scheduling, data passing, and error recovery. DAGent also provides built-in visualization tools to inspect the DAG structure and execution flow, improving debugging and auditability. With extensible node types, plugin support, and seamless integration with popular LLM providers, DAGent empowers teams to build complex, multi-step AI applications such as data pipelines, conversational agents, and automated research assistants with minimal boilerplate. The library's focus on modularity and transparency makes it ideal for scalable agent orchestration in both experimental and production environments.
  • LangMem enhances AI capabilities by providing extensive memory management functions.
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    What is LangMem?
    LangMem provides specialized memory management capabilities for AI agents, enabling them to retain and recall vast amounts of information. This tool allows users to add memories, modify existing information, and retrieve memories based on specific queries. By integrating memory into AI processes, LangMem enhances the contextual understanding and relevance of responses, making it invaluable for applications that require continuous learning and adaptation.
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