Ultimate 自主代理 Solutions for Everyone

Discover all-in-one 自主代理 tools that adapt to your needs. Reach new heights of productivity with ease.

自主代理

  • OpenNARS is an open-source reasoning engine enabling real-time inference, belief revision, and learning under uncertain and resource-limited conditions.
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    What is OpenNARS?
    OpenNARS is built upon the principles of Non-Axiomatic Logic, enabling the system to perform deduction, induction, and abduction using truth-value pairs that reflect uncertainty. It maintains an experience-based memory of statements and dynamically recruits inference rules based on available resources, ensuring robust performance in real-time environments. The engine’s belief revision mechanism updates confidences as new information arrives, improving decision accuracy. Developers can integrate OpenNARS via provided SDKs in Java, C++, Python, JavaScript, Dart, or Go, and deploy it on desktops, servers, mobile devices, or embedded systems. Typical applications include cognitive robotics, autonomous agents, and complex problem-solving tasks where adaptive learning and efficient knowledge management are essential.
  • OperAgents is an open-source Python framework orchestrating autonomous LLM-based agents to execute tasks, manage memory, and integrate tools.
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    What is OperAgents?
    OperAgents is a developer-oriented toolkit for building and orchestrating autonomous agents using large language models like GPT. It supports defining custom agent classes, integrating external tools (APIs, databases, code execution), and managing agent memory for context retention. Through configurable pipelines, agents can perform multi-step tasks—such as research, summarization, and decision support—while dynamically invoking tools and maintaining state. The framework includes modules for monitoring agent performance, handling errors automatically, and scaling agent executions. By abstracting LLM interactions and tool management, OperAgents accelerates the development of AI-driven workflows in domains like automated customer support, data analysis, and content generation.
  • Owl is a TypeScript-first SDK enabling developers to build and run AI agents with tool-assisted reasoning loops.
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    What is Owl?
    Owl provides a developer-focused toolkit that enables the creation of autonomous AI agents capable of executing complex, multi-step tasks. At its core, Owl leverages LLMs for reasoning, augmented by a plugin system to call external APIs, execute code, and query databases. Developers define agents using a simple TypeScript API, specify toolsets, and configure memory modules to maintain state across interactions. Owl’s runtime orchestrates reasoning loops, handles tool invocation, and manages concurrency. It supports both Node.js and Deno environments, ensuring wide platform compatibility. With built-in logging, error handling, and extensibility hooks, Owl streamlines prototyping and production deployment of AI-driven workflows, chatbots, and automated assistants.
  • Rusty Agent is a Rust-based AI agent framework enabling autonomous task execution with LLM integration, tool orchestration, and memory management.
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    What is Rusty Agent?
    Rusty Agent is a lightweight yet powerful Rust library designed to simplify the creation of autonomous AI agents that leverage large language models. It introduces core abstractions such as Agents, Tools, and Memory modules, allowing developers to define custom tool integrations—e.g., HTTP clients, knowledge bases, calculators—and orchestrate multi-step conversations programmatically. Rusty Agent supports dynamic prompt building, streaming responses, and contextual memory storage across sessions. It integrates seamlessly with OpenAI API (GPT-3.5/4) and can be extended for additional LLM providers. Its strong typing and performance benefits of Rust ensure safe, concurrent execution of agent workflows. Use cases include automated data analysis, interactive chatbots, task automation pipelines, and more—empowering Rust developers to embed intelligent language-driven agents into their applications.
  • Proactive AI Agents is an open-source framework enabling developers to build autonomous multi-agent systems with task planning.
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    What is Proactive AI Agents?
    Proactive AI Agents is a developer-centric framework designed to architect sophisticated autonomous agent ecosystems powered by large language models. It provides out-of-the-box capabilities for agent creation, task decomposition, and inter-agent communication, enabling seamless coordination on complex, multi-step objectives. Each agent can be equipped with custom tools, memory storage, and planning algorithms, empowering them to proactively anticipate user needs, schedule tasks, and adjust strategies dynamically. The framework supports modular integration of new language models, toolkits, and knowledge bases, while offering built-in logging and monitoring features. By abstracting the intricacies of agent orchestration, Proactive AI Agents accelerates the development of AI-driven workflows for research, automation, and enterprise applications.
  • Rolodexter 3 orchestrates modular AI agents that collaborate to automate complex tasks via customizable prompts and integrated memory.
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    What is Rolodexter 3?
    Rolodexter 3 enables you to build, customize, and orchestrate autonomous AI agents that work together to complete multi-step processes. Each agent can be assigned a specific role with tailored prompts, access external tools or APIs, and store or retrieve memory across sessions. The platform features an intuitive web UI for monitoring agent activity, logs, and results in real time. Developers can extend the system with custom plugins or integrate new data sources, making it ideal for rapid prototyping, research automation, and complex task delegation.
  • An AI Agent framework enabling multiple autonomous agents to self-coordinate and collaborate on complex tasks using conversational workflows.
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    What is Self Collab AI?
    Self Collab AI provides a modular framework where developers define autonomous agents, communication channels, and task objectives. Agents use predefined prompts and patterns to negotiate responsibilities, exchange data, and iterate on solutions. Built on Python and easy-to-extend interfaces, it supports integration with LLMs, custom plugins, and external APIs. Teams can rapidly prototype complex workflows—such as research assistants, content generation, or data analysis pipelines—by configuring agent roles and collaboration rules without deep orchestration code.
  • SuperBot is a Python-based AI Agent framework offering CLI interface, plugin support, function calling, and memory management.
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    What is SuperBot?
    SuperBot is a comprehensive AI Agent framework enabling developers to deploy autonomous, context-aware assistants via Python and the command line. It integrates OpenAI’s chat models with a memory system, function-calling features, and plugin architecture. Agents can execute shell commands, run code, interact with files, perform web searches, and maintain conversation state. SuperBot supports multi-agent orchestration for complex workflows, all configurable through simple Python scripts and CLI commands. Its extensible design allows you to add custom tools, automate tasks, and integrate external APIs to build robust AI-driven applications.
  • uAgents provides a modular framework for building decentralized autonomous AI agents capable of peer-to-peer communication, coordination, and learning.
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    What is uAgents?
    uAgents is a modular JavaScript framework that empowers developers to build autonomous, decentralized AI agents which can discover peers, exchange messages, collaborate on tasks, and adapt through learning. Agents communicate over libp2p-based gossip protocols, register capabilities via on-chain registries, and negotiate service-level agreements using smart contracts. The core library handles agent lifecycle events, message routing, and extensible behaviors such as reinforcement learning and market-driven task allocation. Through customizable plugins, uAgents can integrate with Fetch.ai’s ledger, external APIs, and oracle networks, enabling agents to perform real-world actions, data acquisition, and decision-making in distributed environments without centralized orchestration.
  • Open-source Python framework enabling developers to build AI agents with tool integration and multi-LLM support.
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    What is X AI Agent?
    X AI Agent provides a modular architecture for building intelligent agents. It supports seamless integration with external tools and APIs, configurable memory modules, and multi-LLM orchestration. Developers can define custom skills, tool connectors, and workflows in code, then deploy agents that fetch data, generate content, automate processes, and handle complex dialogues autonomously.
  • Cloudflare Agents lets developers build autonomous AI agents at the edge, integrating LLMs with HTTP endpoints and actions.
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    What is Cloudflare Agents?
    Cloudflare Agents is designed to help developers build, deploy, and manage autonomous AI agents at the network edge using Cloudflare Workers. By leveraging a unified SDK, you can define agent behaviors, custom actions, and conversational flows in JavaScript or TypeScript. The framework seamlessly integrates with major LLM providers like OpenAI and Anthropic, and offers built-in support for HTTP requests, environment variables, and streaming responses. Once configured, agents can be deployed globally in seconds, providing ultra-low latency interactions to end-users. Cloudflare Agents also includes tools for local development, testing, and debugging, ensuring a smooth development experience.
  • A standardized protocol enabling AI agents to exchange structured messages for real-time coordinated multi-agent interactions.
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    What is Agent Communication Protocol (ACP)?
    The Agent Communication Protocol (ACP) is a formal framework designed to enable seamless interaction among autonomous AI agents. ACP specifies a set of message types, headers, and payload conventions, along with agent discovery and registry mechanisms. It supports conversation tracking, version negotiation, and standardized error reporting. By providing language-agnostic JSON schemas and transport-agnostic bindings, ACP reduces integration complexity and allows developers to compose scalable, interoperable multi-agent systems for use in customer service bots, robotic swarms, IoT orchestration, and collaborative AI workflows.
  • Open-source Python framework enabling autonomous AI agents to plan, execute, and learn tasks via LLM integration and persistent memory.
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    What is AI-Agents?
    AI-Agents provides a flexible, modular platform for creating autonomous AI-driven agents. Developers can define agent objectives, chain tasks, and incorporate memory modules to store and retrieve contextual information across sessions. The framework supports integration with leading LLMs via API keys, enabling agents to generate, evaluate, and revise outputs. Customizable tool and plugin support allows agents to interact with external services like web scraping, database queries, and reporting tools. Through clear abstractions for planning, execution, and feedback loops, AI-Agents accelerates prototyping and deployment of intelligent automation workflows.
  • A Python framework for building autonomous AI agents that can interact with APIs, manage memory, tools, and complex workflows.
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    What is AI Agents?
    AI Agents offers a structured toolkit for developers to build autonomous agents using large language models. It includes modules for integrating external APIs, managing conversational or long-term memory, orchestrating multi-step workflows, and chaining LLM calls. The framework provides templates for common agent types—data retrieval, question answering, and task automation—while allowing customization of prompts, tool definitions, and memory strategies. With asynchronous support, plugin architecture, and modular design, AI Agents enables scalable, maintainable, and extendable agentic applications.
  • Create and deploy autonomous AI agents that automate web tasks, API integrations, scheduling, and monitoring via simple code or UI.
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    What is Adorable?
    Adorable is a low-code framework that empowers developers and businesses to build autonomous AI agents capable of performing web browsing, data extraction, API calls, and scheduled workflows. Users define objectives, triggers, and actions via a web dashboard or SDK, then test and deploy agents to the cloud or on-premise. Adorable manages authentication, error retries, and logging, while offering templates for common use cases like web scraping, email alerts, and social media monitoring. Its dashboard provides real-time insights and scalability controls, reducing development time and operational overhead for routine automation tasks.
  • Open-source Python framework to build and run autonomous AI agents in customizable multi-agent simulation environments.
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    What is Aeiva?
    Aeiva is a developer-first platform that enables you to create, deploy, and evaluate autonomous AI agents within flexible simulation environments. It features a plugin-based engine for environment definition, intuitive APIs to customize agent decision loops, and built-in metrics collection for performance analysis. The framework supports integration with OpenAI Gym, PyTorch, and TensorFlow, plus real-time web UI for monitoring live simulations. Aeiva’s benchmarking tools let you organize agent tournaments, record results, and visualize agent behaviors to fine-tune strategies and accelerate multi-agent AI research.
  • AgentGateway connects autonomous AI agents to your internal data sources and services for real-time document retrieval and workflow automation.
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    What is AgentGateway?
    AgentGateway provides a developer-focused environment for creating multi-agent AI applications. It supports distributed agent orchestration, plugin integration, and secure access control. With built-in connectors for vector databases, REST/gRPC APIs, and common services like Slack and Notion, agents can query documents, execute business logic, and generate responses autonomously. The platform includes monitoring, logging, and role-based access controls, making it easy to deploy scalable, auditable AI solutions across enterprises.
  • Agentic-Systems is an open-source Python framework for building modular AI agents with tools, memory, and orchestration features.
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    What is Agentic-Systems?
    Agentic-Systems is designed to streamline the development of sophisticated autonomous AI applications by offering a modular architecture composed of agent, tool, and memory components. Developers can define custom tools that encapsulate external APIs or internal functions, while memory modules retain contextual information across agent iterations. The built-in orchestration engine schedules tasks, resolves dependencies, and manages multi-agent interactions for collaborative workflows. By decoupling agent logic from execution details, the framework enables rapid experimentation, easy scaling, and fine-grained control over agent behavior. Whether prototyping research assistants, automating data pipelines, or deploying decision-support agents, Agentic-Systems provides the necessary abstractions and templates to accelerate end-to-end AI solution development.
  • AgentLLM is an open-source AI agent framework enabling customizable autonomous agents to plan, execute tasks, and integrate external tools.
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    What is AgentLLM?
    AgentLLM is a web-based AI agent framework that lets users create, configure, and run autonomous agents through a graphical interface or JSON definitions. Agents can plan multi-step workflows by reasoning over tasks, invoke code via Python tools or external APIs, maintain conversation and memory, and adapt based on results. The platform supports OpenAI, Azure, or self-hosted models, offering built-in tool integrations for web search, file handling, mathematical computation, and custom plugins. Designed for experimentation and rapid prototyping, AgentLLM streamlines building intelligent agents capable of automating complex business processes, data analysis, customer support, and personalized recommendations.
  • AgentRpi runs autonomous AI agents on Raspberry Pi, enabling sensor integration, voice commands, and automated task execution.
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    What is AgentRpi?
    AgentRpi transforms a Raspberry Pi into an edge AI agent hub by orchestrating language models alongside physical hardware interfaces. By combining sensor inputs (temperature, motion), camera feeds, and microphone audio, it processes contextual information through configured LLMs (OpenAI GPT, local Llama variants) to autonomously plan and execute actions. Users define behaviors using YAML configurations or Python scripts, enabling tasks like triggering alerts, adjusting GPIO pins, capturing images, or responding to voice instructions. Its plugin-based architecture allows seamless API integrations, custom skill additions, and support for Docker deployment. Ideal for low-power, privacy-sensitive environments, AgentRpi empowers developers to prototype intelligent automation scenarios without relying solely on cloud services.
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