Comprehensive développement d'agents Tools for Every Need

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développement d'agents

  • Labs is an AI orchestration framework enabling developers to define and run autonomous LLM agents via a simple DSL.
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    What is Labs?
    Labs is an open-source, embeddable domain-specific language designed for defining and executing AI agents using large language models. It provides constructs to declare prompts, manage context, conditionally branch, and integrate external tools (e.g., databases, APIs). With Labs, developers describe agent workflows as code, orchestrating multi-step tasks like data retrieval, analysis, and generation. The framework compiles DSL scripts into executable pipelines that can be run locally or in production. Labs supports interactive REPL, command-line tooling, and integrates with standard LLM providers. Its modular architecture allows easy extension with custom functions and utilities, promoting rapid prototyping and maintainable agent development. The lightweight runtime ensures low overhead and seamless embedding in existing applications.
  • LionAGI is an open-source Python framework to build autonomous AI agents for complex task orchestration and chain-of-thought management.
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    What is LionAGI?
    At its core, LionAGI provides a modular architecture for defining and executing dependent task stages, breaking complex problems into logical components that can be processed sequentially or in parallel. Each stage can leverage a custom prompt, memory storage, and decision logic to adapt behavior based on previous results. Developers can integrate any supported LLM API or self-hosted model, configure observation spaces, and define action mappings to create agents that plan, reason, and learn over multiple cycles. Built-in logging, error recovery, and analytics tools enable real-time monitoring and iterative refinement. Whether automating research workflows, generating reports, or orchestrating autonomous processes, LionAGI accelerates the delivery of intelligent, adaptable AI agents with minimal boilerplate.
  • A Python framework that builds AI Agents combining LLMs and tool integration for autonomous task execution.
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    What is LLM-Powered AI Agents?
    LLM-Powered AI Agents is designed to streamline the creation of autonomous agents by orchestrating large language models and external tools through a modular architecture. Developers can define custom tools with standardized interfaces, configure memory backends to persist state, and set up multi-step reasoning chains that use LLM prompts to plan and execute tasks. The AgentExecutor module manages tool invocation, error handling, and asynchronous workflows, while built-in templates illustrate real-world scenarios like data extraction, customer support, and scheduling assistants. By abstracting API calls, prompt engineering, and state management, the framework reduces boilerplate code and accelerates experimentation, making it ideal for teams building custom intelligent automation solutions in Python.
  • An open-source Python framework to build LLM-driven agents with memory, tool integration, and multi-step task planning.
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    What is LLM-Agent?
    LLM-Agent is a lightweight, extensible framework for building AI agents powered by large language models. It provides abstractions for conversation memory, dynamic prompt templates, and seamless integration of custom tools or APIs. Developers can orchestrate multi-step reasoning processes, maintain state across interactions, and automate complex tasks such as data retrieval, report generation, and decision support. By combining memory management with tool usage and planning, LLM-Agent streamlines the development of intelligent, task-oriented agents in Python.
  • A framework to run local large language models with function calling support for offline AI agent development.
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    What is Local LLM with Function Calling?
    Local LLM with Function Calling allows developers to create AI agents that run entirely on local hardware, eliminating data privacy concerns and cloud dependencies. The framework includes sample code for integrating local LLMs such as LLaMA, GPT4All, or other open-weight models, and demonstrates how to configure function schemas that the model can invoke to perform tasks like fetching data, executing shell commands, or interacting with APIs. Users can extend the design by defining custom function endpoints, customizing prompts, and handling function responses. This lightweight solution simplifies the process of building offline AI assistants, chatbots, and automation tools for a wide range of applications.
  • Camel is an open-source AI agent orchestration framework enabling multi-agent collaboration, tool integration, and planning with LLMs & knowledge graphs.
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    What is Camel AI?
    Camel AI is an open-source framework designed to simplify the creation and orchestration of intelligent agents. It offers abstractions for chaining large language models, integrating external tools and APIs, managing knowledge graphs, and persisting memory. Developers can define multi-agent workflows, decompose tasks into subplans, and monitor execution through a CLI or web UI. Built on Python and Docker, Camel AI allows seamless swapping of LLM providers, custom tool plugins, and hybrid planning strategies, accelerating development of automated assistants, data pipelines, and autonomous workflows at scale.
  • Notte is an open-source Python framework for building customizable AI agents with memory, tool integration, and multi-step reasoning.
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    What is Notte?
    Notte is a developer-centric Python framework designed for orchestrating AI agents powered by large language models. It provides built-in memory modules to store and retrieve conversational context, flexible tool integration for external APIs or custom functions, and a planning engine that sequences tasks. With Notte, you can rapidly prototype conversational assistants, data analysis bots, or automated workflows, while benefiting from open-source extensibility and cross-platform support.
  • Playbooks AI is an open-source low-code framework to design, deploy, and manage custom AI agents with modular workflows.
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    What is Playbooks AI?
    Playbooks AI is a developer framework for building AI agents through a declarative playbook DSL. It enables integration with various LLMs, custom tools, and memory stores. With a CLI and web UI, users can define agent behavior, orchestrate multi-step workflows, and monitor execution. Features include tool routing, stateful memory, version control, analytics, and multi-agent collaboration, making it easy to prototype and deploy production-ready AI assistants.
  • AgentSea AI Hub enables you to build, configure, and deploy intelligent AI agents with multi-modal interfaces and API integrations.
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    What is AgentSea AI Hub?
    AgentSea AI Hub is a robust AI platform and framework that streamlines end-to-end agent development and management. It features a drag-and-drop visual builder for crafting agent personas, conversation flows, and custom skills without deep coding expertise. Developers can integrate external APIs, knowledge bases, and databases, while the built-in memory management module preserves context across sessions. The platform supports multi-channel deployment including web, mobile, chat, voice, and email, ensuring seamless user interactions. Detailed performance monitoring, A/B testing, and version control enable continuous improvement. With role-based access control and collaborative workspaces, teams can efficiently coordinate on complex agent projects. AgentSea AI Hub accelerates digital worker creation, automates repetitive tasks, and enhances customer engagement through intelligent automation.
  • Dynamic tool plugin for SmolAgents LLM agents enabling on-the-fly invocation of search, calculator, file, and web tools.
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    What is SmolAgents Dynamic Tools?
    SmolAgents Dynamic Tools extends the open-source SmolAgents Python framework to empower LLM-based agents with dynamic tool invocation. Agents can seamlessly call a variety of pre-built tools—such as web search via SerpAPI, mathematical calculators, date and time retrieval, file system operations, and custom HTTP request handlers—based on user intent and chain-of-thought prompts. Developers can register additional tools or customize existing ones, enabling agents to handle data retrieval, content creation, computation, and external API integration within a unified interface. By evaluating tool availability at runtime, SmolAgents Dynamic Tools optimizes agent workflows, reducing hard-coded logic and improving modularity across diverse application scenarios like research assistance, automated reporting, and chatbot augmentation.
  • Taiga is an open-source AI agent framework enabling creation of autonomous LLM agents with plugin extensibility, memory, and tool integration.
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    What is Taiga?
    Taiga is a Python-based open-source AI agent framework designed to streamline the creation, orchestration, and deployment of autonomous large language model (LLM) agents. The framework includes a flexible plugin system for integrating custom tools and external APIs, a configurable memory module for managing long-term and short-term conversational context, and a task chaining mechanism to sequence multi-step workflows. Taiga also offers built-in logging, metrics, and error handling for production readiness. Developers can quickly scaffold agents with templates, extend functionality via SDK, and deploy across platforms. By abstracting complex orchestration logic, Taiga enables teams to focus on building intelligent assistants that can research, plan, and execute actions without manual intervention.
  • A Java-based interpreter for AgentSpeak(L), enabling developers to build, execute, and manage BDI-enabled intelligent agents.
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    What is AgentSpeak?
    AgentSpeak is an open-source Java-based implementation of the AgentSpeak(L) programming language, designed to facilitate the creation and management of BDI (Belief-Desire-Intention) autonomous agents. It features a runtime environment that parses AgentSpeak(L) code, maintains agents’ belief bases, triggers events, and selects and executes plans based on current beliefs and goals. The interpreter supports concurrent agent execution, dynamic plan updates, and customizable semantics. With a modular architecture, programmers can extend core components such as plan selection and belief revision. AgentSpeak enables developers in academia and industry to prototype, simulate, and deploy intelligent agents in simulations, IoT systems, and multi-agent scenarios.
  • 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.
  • LemLab is a Python framework enabling you to build customizable AI agents with memory, tool integrations, and evaluation pipelines.
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    What is LemLab?
    LemLab is a modular framework for developing AI agents powered by large language models. Developers can define custom prompt templates, chain multi-step reasoning pipelines, integrate external tools and APIs, and configure memory backends to store conversation context. It also includes evaluation suites to benchmark agent performance on defined tasks. By providing reusable components and clear abstractions for agents, tools, and memory, LemLab accelerates experimentation, debugging, and deployment of complex LLM applications within research and production environments.
  • MCP Agent orchestrates AI models, tools, and plugins to automate tasks and enable dynamic conversational workflows across applications.
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    What is MCP Agent?
    MCP Agent provides a robust foundation for building intelligent AI-driven assistants by offering modular components for integrating language models, custom tools, and data sources. Its core functionalities include dynamic tool invocation based on user intents, context-aware memory management for long-term conversations, and a flexible plugin system that simplifies extending capabilities. Developers can define pipelines to process inputs, trigger external APIs, and manage asynchronous workflows, all while maintaining transparent logs and metrics. With support for popular LLMs, configurable templates, and role-based access controls, MCP Agent streamlines the deployment of scalable, maintainable AI agents in production environments. Whether for customer support chatbots, RPA bots, or research assistants, MCP Agent accelerates development cycles and ensures consistent performance across use cases.
  • NaturalAgents is a Python framework enabling developers to build AI agents with memory, planning, and tool integration using LLMs.
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    What is NaturalAgents?
    NaturalAgents is an open-source Python library designed to streamline the creation and deployment of LLM-powered agents. It provides modules for memory management, context tracking, and tool integration, allowing agents to store and recall information over long sessions. A hierarchical planner orchestrates multi-step reasoning and actions, while an extension system supports custom plugins and external API calls. Built-in logging and analytics enable developers to monitor agent performance and debug workflow issues. NaturalAgents also supports synchronous and asynchronous execution, making it flexible for both interactive use cases and automated pipelines.
  • Open-source Python framework enabling developers to build customizable AI agents with tool integration and memory management.
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    What is Real-Agents?
    Real-Agents is designed to simplify the creation and orchestration of AI-powered agents that can perform complex tasks autonomously. Built on Python and compatible with major large language models, the framework features a modular design comprising core components for language understanding, reasoning, memory storage, and tool execution. Developers can rapidly integrate external services like web APIs, databases, and custom functions to extend agent capabilities. Real-Agents supports memory mechanisms to retain context across interactions, enabling multi-turn conversations and long-running workflows. The platform also includes utilities for logging, debugging, and scaling agents in production environments. By abstracting low-level details, Real-Agents streamlines the development cycle, allowing teams to focus on task-specific logic and deliver powerful automated solutions.
  • Stella provides modular tools for AI agent workflows, memory management, plugin integrations, and custom LLM orchestration.
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    What is Stella Framework?
    Stella Framework empowers developers to build robust AI agents that can maintain context, perform tool-assisted actions, and deliver dynamic conversational experiences. By abstracting the complexities of LLM integrations, Stella offers provider-agnostic adapters for OpenAI, Hugging Face, and self-hosted models. Agents can leverage customizable memory stores to recall user data and conversation history, and plugins enable interactions with external APIs, databases, or services. The built-in orchestration engine manages decision loops, while a concise DSL allows defining actions, tool calls, and response handling. Whether creating customer support bots, research assistants, or workflow automators, Stella provides a scalable foundation for deploying production-grade AI agents.
  • Wumpus is an open-source framework that enables creation of Socratic LLM agents with integrated tool invocation and reasoning.
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    What is Wumpus LLM Agent?
    Wumpus LLM Agent is designed to simplify development of advanced Socratic AI agents by providing prebuilt orchestration utilities, structured prompting templates, and seamless tool integration. Users define agent personas, tool sets, and conversation flows, then leverage built-in chain-of-thought management for transparent reasoning. The framework handles context switching, error recovery, and memory storage, enabling multi-step decision processes. It includes a plugin interface for APIs, databases, and custom functions, allowing agents to browse the web, query knowledge bases, or execute code. With comprehensive logging and debugging, developers can trace each reasoning step, fine-tune agent behavior, and deploy on any platform that supports Python 3.7+.
  • AI-Agents is an open-source Python framework enabling developers to build autonomous AI agents with custom tools and memory management.
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    What is AI-Agents?
    AI-Agents provides a modular toolkit to create autonomous AI agents capable of task planning, execution, and self-monitoring. It offers built-in support for tool integration—such as web search, data processing, and custom APIs—and features a memory component to retain and recall context across interactions. With a flexible plugin system, agents can dynamically load new capabilities, while asynchronous execution ensures efficient multi-step workflows. The framework leverages LangChain for advanced chain-of-thought reasoning and simplifies deployment in Python environments on macOS, Windows, or Linux.
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