Comprehensive エージェントカスタマイズ Tools for Every Need

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エージェントカスタマイズ

  • HMAS is a Python framework for building hierarchical multi-agent systems with communication and policy training features.
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    What is HMAS?
    HMAS is an open-source Python framework that enables development of hierarchical multi-agent systems. It offers abstractions for defining agent hierarchies, inter-agent communication protocols, environment integration, and built-in training loops. Researchers and developers can use HMAS to prototype complex multi-agent interactions, train coordinated policies, and evaluate performance in simulated environments. Its modular design makes it easy to extend and customize agents, environments, and training strategies.
  • Matcha Agent is an open-source AI agent framework enabling developers to build customizable autonomous agents with integrated tools.
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    What is Matcha Agent?
    Matcha Agent provides a flexible foundation for building autonomous agents in Python. Developers can configure agents with custom toolsets (APIs, scripts, databases), manage conversational memory, and orchestrate multi-step workflows across different LLMs (OpenAI, local models, etc.). Its plugin-based architecture allows easy extension, debugging, and monitoring of agent behavior. Whether automating research tasks, data analysis, or customer support, Matcha Agent streamlines end-to-end agent development and deployment.
  • MCP Ollama Agent is an open-source AI agent automating tasks via web search, file operations, and shell commands.
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    What is MCP Ollama Agent?
    MCP Ollama Agent leverages the Ollama local LLM runtime to provide a versatile agent framework for task automation. It integrates multiple tool interfaces, including web search via SERP API, file system operations, shell command execution, and Python environment management. By defining custom prompts and tool configurations, users can orchestrate complex workflows, automate repetitive tasks, and build specialized assistants tailored to various domains. The agent handles tool invocation and context management, maintaining conversation history and tool responses to generate coherent actions. Its CLI-based setup and modular architecture make it easy to extend with new tools and adapt to different use cases, from research and data analysis to development support.
  • MultiLang Status Agents is a multi-language AI agent framework that queries and summarizes service health statuses via APIs.
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    What is MultiLang Status Agents?
    MultiLang Status Agents is an open-source AI agent framework demonstrating how to build and deploy cross-platform status-checking agents using multiple programming languages. It provides code samples in Python, C#, and JavaScript that integrate with Semantic Kernel and OpenAI GPT APIs to query service health or status endpoints. The framework standardizes agent workflows, including prompt construction, API authentication, result parsing, and summarization. Users can extend or customize agents to add new service integrations, modify language prompts, or embed status agents within web applications and admin panels. By abstracting language-specific implementations, the framework accelerates development of consistent, AI-driven monitoring tools across diverse tech stacks.
  • Open-source Python framework to build AI agents with memory management, tool integration, and multi-agent orchestration.
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    What is SonAgent?
    SonAgent is an extensible open-source framework designed for building, organizing, and running AI agents in Python. It provides core modules for memory storage, tool wrappers, planning logic, and asynchronous event handling. Developers can register custom tools, integrate language models, manage long-term agent memory, and orchestrate multiple agents to collaborate on complex tasks. SonAgent’s modular design accelerates the development of conversational bots, workflow automations, and distributed agent systems.
  • Phidata builds intelligent agents using advanced memory and knowledge capabilities.
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    What is Phidata?
    Phidata is an innovative platform designed to build, deploy, and monitor AI agents enriched with memory, knowledge, and reasoning capabilities. This system allows users to create agile, responsive agents that can interact with external systems, utilize various data sources, and improve over time through learning. Phidata supports multiple large language models (LLMs), providing users flexibility in their selection. With built-in memory features, agents can maintain personalized conversations, making them ideal for a range of applications in various industries.
  • Self-hosted AI agent management platform enabling creation, customization, and deployment of GPT-based chatbots with memory and plugin support.
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    What is RainbowGPT?
    RainbowGPT provides a complete framework for designing, customizing, and deploying AI agents powered by OpenAI models. It includes a FastAPI backend, LangChain integration for tool and memory management, and a React-based UI for agent creation and testing. Users can upload documents for vector-based knowledge retrieval, define custom prompts and behaviors, and connect external APIs or functions. The platform logs interactions for analysis and supports multi-agent workflows, enabling complex automation and conversational pipelines.
  • Open-source Python framework enabling autonomous AI agents to set goals, plan actions, and execute tasks iteratively.
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    What is Self-Determining AI Agents?
    Self-Determining AI Agents is a Python-based framework designed to simplify the creation of autonomous AI agents. It features a customizable planning loop where agents generate tasks, plan strategies, and execute actions using integrated tools. The framework includes persistent memory modules for context retention, a flexible task scheduling system, and hooks for custom tool integrations such as web APIs or database queries. Developers define agent goals via configuration files or code, and the library handles the iterative decision-making process. It supports logging, performance monitoring, and can be extended with new planning algorithms. Ideal for research, automating workflows, and prototyping intelligent multi-agent systems.
  • An open-source Python framework enabling dynamic coordination and communication among multiple AI agents to collaboratively solve tasks.
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    What is Team of AI Agents?
    Team of AI Agents provides a modular architecture to build and deploy multi-agent systems. Each agent operates with distinct roles, utilizing a global memory store and local contexts for knowledge retention. The framework supports asynchronous messaging, tool usage via adapters, and dynamic task reassignment based on agent outcomes. Developers configure agents through YAML or Python scripts, enabling topic specialization, goal hierarchy, and priority handling. It includes built-in metrics for performance evaluation and debugging, facilitating rapid iteration. With extensible plugin architecture, users can integrate custom NLP models, databases, or external APIs. Team of AI Agents accelerates complex workflows by leveraging collective intelligence of specialized agents, making it ideal for research, automation, and simulation environments.
  • Thufir is an open-source Python framework for building autonomous AI agents with planning, long-term memory, and tool integration.
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    What is Thufir?
    Thufir is a Python-based open-source agent framework designed to facilitate the creation of autonomous AI agents capable of complex task planning and execution. At its core, Thufir provides a planning engine that decomposes high-level objectives into actionable steps, a memory module for storing and retrieving contextual information across sessions, and a plug-and-play tool interface allowing agents to interact with external APIs, databases, or code execution environments. Developers can leverage Thufir’s modular components to customize agent behaviors, define custom tools, manage agent state, and orchestrate multi-agent workflows. By abstracting away low-level infrastructure concerns, Thufir accelerates the development and deployment of intelligent agents for use cases like virtual assistants, workflow automation, research, and digital workers.
  • 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.
  • An open-source framework enabling modular LLM-powered agents with integrated toolkits and multi-agent coordination.
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    What is Agents with ADK?
    Agents with ADK is an open-source Python framework designed to streamline the creation of intelligent agents powered by large language models. It includes modular agent templates, built-in memory management, tool execution interfaces, and multi-agent coordination capabilities. Developers can quickly plug in custom functions or external APIs, configure planning and reasoning chains, and monitor agent interactions. The framework supports integration with popular LLM providers and provides logging, retry logic, and extensibility for production deployments.
  • 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.
  • AGENTS.inc provides customizable AI agents that assist in various tasks such as scheduling and data management.
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    What is AGENTS.inc?
    AGENTS.inc specializes in creating AI agents that can be customized according to user needs. These agents assist with workflow automation, scheduling, and data management, saving time and increasing efficiency. Users can define the tasks their agents should perform, ensuring that the AI seamlessly integrates into their daily operations. The platform allows for real-time updates and easy adjustments to the agent's functions, making it ideal for both personal and professional use.
  • Automatically scaffold Python-based AI agents using predefined templates, integrating LangChain, OpenAI and custom tools for rapid development.
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    What is AI Agent Code Generator?
    AI Agent Code Generator provides a command-line interface to scaffold Python projects for AI agents. Users select from multiple LangChain-based templates, configure their OpenAI API keys, and specify custom tools or functions. The tool then generates boilerplate code, project structure, and sample scripts to deploy conversational, information-retrieval, or task-automation agents. Developers can extend the generated code with additional plugins, modify prompts, and integrate new toolkits for specialized agent behavior, accelerating prototype and production development.
  • ANAC-agents provides pre-built automated negotiation agents for bilateral multi-issue negotiations under the ANAC competition framework.
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    What is ANAC-agents?
    ANAC-agents is a Python-based framework that centralizes multiple negotiation agent implementations for the Automated Negotiating Agents Competition (ANAC). Each agent within the repository embodies distinct strategies for utility modeling, proposal generation, concession tactics, and acceptance criteria, facilitating comparative studies and rapid prototyping. Users can define negotiation domains with custom issues and preference profiles, then simulate bilateral negotiations or tournament-style competitions across agents. The toolkit includes configuration scripts, evaluation metrics, and logging utilities to analyze negotiation dynamics. Researchers and developers can extend existing agents, test novel algorithms, or integrate external learning modules, accelerating innovation in automated bargaining and strategic decision-making under incomplete information.
  • An experimental low-code studio for designing, orchestrating, and visualizing multi-agent AI workflows with interactive UI and customizable agent templates.
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    What is Autogen Studio Research?
    Autogen Studio Research is a GitHub-hosted research prototype for building, visualizing, and iterating on multi-agent AI applications. It offers a web-based UI that lets you drag and drop agent components, define communication channels, and configure execution pipelines. Under the hood, it uses a Python SDK to connect to various LLM backends (OpenAI, Azure, local models) and provides real-time logging, metrics, and debugging tools. The platform is designed for rapid prototyping of collaborative agent systems, decision-making workflows, and automated task orchestration.
  • Exo is a platform to build, deploy, and manage AI agents with customizable workflows, memory, and seamless integrations.
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    What is Exo?
    Exo provides everything needed to create, deploy, and scale autonomous AI agents. Start from prebuilt agent templates or create custom workflows using a drag-and-drop interface or YAML definitions. Integrate any REST API, database, or third-party service to extend agent capabilities. Agents maintain context via built-in persistent memory and vector stores. A cloud-hosted execution environment, CLI/SDK tools, and dashboard let you monitor performance, inspect logs, and manage versions.
  • GenAI Job Agents is an open-source framework that automates task execution using generative AI-based job agents.
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    What is GenAI Job Agents?
    GenAI Job Agents is a Python-based open-source framework designed to streamline the creation and management of AI-powered job agents. Developers can define customized job types and agent behaviors using simple configuration files or Python classes. The system integrates seamlessly with OpenAI for LLM-powered reasoning and LangChain for chaining calls. Jobs can be queued, executed in parallel, and monitored through built-in logging and error-handling mechanisms. Agents can handle dynamic inputs, retry failures automatically, and produce structured results for downstream processing. With modular architecture, extensible plugins, and clear APIs, GenAI Job Agents empowers teams to automate repetitive tasks, orchestrate complex workflows, and scale AI-driven operations in production environments.
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