Advanced IA de código aberto Tools for Professionals

Discover cutting-edge IA de código aberto tools built for intricate workflows. Perfect for experienced users and complex projects.

IA de código aberto

  • 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.
  • Odyssey is an open-source multi-agent AI system orchestrating multiple LLM agents with modular tools and memory for complex task automation.
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    What is Odyssey?
    Odyssey provides a flexible architecture for building collaborative multi-agent systems. It includes core components such as the Task Manager for defining and distributing subtasks, Memory Modules for storing context and conversation histories, Agent Controllers for coordinating LLM-powered agents, and Tool Managers for integrating external APIs or custom functions. Developers can configure workflows via YAML files, select prebuilt LLM kernels (e.g., GPT-4, local models), and seamlessly extend the framework with new tools or memory backends. Odyssey logs interactions, supports asynchronous task execution, and enables iterative refinement loops, making it ideal for research, prototyping, and production-ready multi-agent applications.
  • OpenDerisk automatically evaluates AI model risks in fairness, privacy, robustness, and safety through customizable risk assessment pipelines.
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    What is OpenDerisk?
    OpenDerisk provides a modular, extensible platform to evaluate and mitigate risks in AI systems. It includes fairness evaluation metrics, privacy leakage detection, adversarial robustness tests, bias monitoring, and output quality checks. Users can configure pre-built probes or develop custom modules to target specific risk domains. Results are aggregated into interactive reports that highlight vulnerabilities and suggest remediation steps. OpenDerisk runs as a CLI and Python SDK, allowing seamless integration into development workflows, continuous integration pipelines, and automated quality gates to ensure safe, reliable AI deployments.
  • A lightweight Python framework to orchestrate LLM-powered agents with tool integration, memory, and customizable action loops.
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    What is Python AI Agent?
    Python AI Agent provides a developer-friendly toolkit to orchestrate autonomous agents driven by large language models. It offers built-in mechanisms for defining custom tools and actions, maintaining conversation history with memory modules, and streaming responses for interactive experiences. Users can extend its plugin architecture to integrate APIs, databases, and external services, enabling agents to fetch data, perform computations, and automate workflows. The library supports configurable pipelines, error handling, and logging for robust deployments. With minimal boilerplate, developers can build chatbots, virtual assistants, data analyzers, or task automators that leverage LLM reasoning and multi-step decision making. The open-source nature encourages community contributions and adapts to any Python environment.
  • SeeAct is an open-source framework that uses LLM-based planning and visual perception to enable interactive AI agents.
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    What is SeeAct?
    SeeAct is designed to empower vision-language agents with a two-stage pipeline: a planning module powered by large language models generates subgoals based on observed scenes, and an execution module translates subgoals into environment-specific actions. A perception backbone extracts object and scene features from images or simulations. The modular architecture allows easy replacement of planners or perception networks and supports evaluation on AI2-THOR, Habitat, and custom environments. SeeAct accelerates research on interactive embodied AI by providing end-to-end task decomposition, grounding, and execution.
  • ROCKET-1 orchestrates modular AI agent pipelines with semantic memory, dynamic tool integration, and real-time monitoring.
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    What is ROCKET-1?
    ROCKET-1 is an open-source AI agent orchestration platform designed for building advanced multi-agent systems. It lets users define agent pipelines using a modular API, enabling seamless chaining of language models, plugins, and data stores. Core features include semantic memory to maintain context across sessions, dynamic tool integration for external APIs and databases, and built-in monitoring dashboards to track performance metrics. Developers can customize workflows with minimal code, scale horizontally via containerized deployments, and extend functionality through a plugin architecture. ROCKET-1 supports real-time debugging, automated retries, and security controls, making it ideal for customer support bots, research assistants, and enterprise automation tasks.
  • Saga is an open-source Python AI agent framework enabling autonomous multi-step task agents with custom tool integrations.
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    What is Saga?
    Saga provides a flexible architecture for building AI agents that plan and execute multi-step workflows. Core components include a planner module that breaks goals into actions, a memory store for conversational and task context, and a tool registry for integrating external services or scripts. Agents run asynchronously, manage state across sessions, and support custom tool development. Saga enables rapid prototyping of autonomous assistants, automating tasks such as data collection, alerting, and interactive Q&A within your own Python environment.
  • Samantha Voice AI Agent delivers real-time AI-driven conversations with speech recognition and natural text-to-speech synthesis via GPT-4.
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    What is Samantha Voice AI Agent?
    Samantha Voice AI Agent is a fully modular, open-source voice assistant framework built in Python. It leverages OpenAI's GPT-4 model for contextual dialogue management, Whisper for accurate speech-to-text transcription, and ElevenLabs or Microsoft TTS for lifelike text-to-speech output. With built-in support for continuous listening, customizable skill hooks, API integrations, and event-driven triggers, Samantha enables developers to craft personalized voice-driven workflows, automate tasks, and deploy on desktop or server environments without heavy licensing constraints.
  • SARL is an agent-oriented programming language and runtime providing event-driven behaviors and environment simulation for multi-agent systems.
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    What is SARL?
    SARL isms for decision-making and supports the dynamic with the Eclipse IDE, offering editor support, code generation, debugging, and testing tools. The runtime engine can target various platforms, including simulation frameworks (e.g., MadKit, Janus) and real-world systems in robotics and IoT. Developers can structure complex MAS applications by assembling modular skills and protocols, simplifying the development of adaptive, distributed AI systems.
  • Self-hosted AI assistant with memory, plugins, and knowledge base for personalized conversational automation and integration.
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    What is Solace AI?
    Solace AI is a modular AI agent framework enabling you to deploy your own conversational assistant on your infrastructure. It offers context memory management, vector database support for document retrieval, plugin hooks for external integrations, and a web-based chat interface. With customizable system prompts and fine-grained control over knowledge sources, you can create agents for support, tutoring, personal productivity, or internal automation without relying on third-party servers.
  • A blockchain-integrated Eliza chatbot that processes messages on Solana, storing conversational history via Anchor smart contracts.
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    What is Solana AI Agent Eliza?
    Solana AI Agent Eliza is a proof-of-concept AI agent that brings the classic Eliza chatbot onto the Solana blockchain. It comprises an Anchor-based Rust smart contract that implements the Eliza dialogue patterns and a lightweight web frontend. When a user submits a message, the frontend invokes the on-chain program, which generates an Eliza-style response and writes both the prompt and reply into a Solana account. This design demonstrates how to integrate simple AI logic directly on-chain, ensuring immutable, auditable conversation logs, and provides a template for developers to build more advanced AI agents on Solana.
  • TUNiB creates conversational A.I. that emotionally engages people for various applications.
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    What is Spamurai - Spam text detection model?
    TUNiB provides state-of-the-art conversational AI solutions designed to emotionally engage users. Their offerings include the first fully open-source Korean sLLM for commercial use, customizable multi-persona chatbots, and NLP APIs that safeguard platforms from AI-generated hate speech and privacy breaches. These solutions are tailored to provide seamless user experiences and can be integrated swiftly to enhance user engagement and safety.
  • An extensible Python framework for building LLM-based AI agents with symbolic memory, planning and tool integration.
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    What is Symbol-LLM?
    Symbol-LLM offers a modular architecture for constructing AI agents powered by large language models augmented with symbolic memory stores. It features a planner module to break down complex tasks, an executor to invoke tools, and a memory system to maintain context across interactions. With built-in toolkits like web search, calculator and code runner, plus simple APIs for custom tool integration, Symbol-LLM enables developers and researchers to rapidly prototype and deploy sophisticated LLM-based assistants for various domains including research, customer support, and workflow automation.
  • A lightweight JavaScript framework for building AI agents with memory management and tool integration.
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    What is Tongui Agent?
    Tongui Agent provides a modular architecture for creating AI agents that can maintain conversation state, leverage external tools, and coordinate multiple sub-agents. Developers configure LLM backends, define custom actions, and attach memory modules to store context. The framework includes an SDK, CLI, and middleware hooks for observability, making it easy to integrate into web or Node.js applications. Supported LLMs include OpenAI, Azure OpenAI, and open-source models.
  • A Windows desktop AI assistant using natural language to automate system tasks, manage files, and fetch information.
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    What is WinMind?
    WinMind combines speech recognition, natural language understanding, and text-to-speech to create an interactive desktop AI assistant. Users install the Python-based tool, configure their OpenAI API key, and then speak or type commands like “open my documents folder,” “schedule a meeting tomorrow,” or “search for the latest news.” WinMind executes system operations, organizes files, sets reminders, and retrieves online information. A plugin architecture allows developers to extend functionality for specialized workflows or third-party integrations.
  • Open-source framework with multi-agent system modules and distributed AI coordination algorithms for consensus, negotiation, and collaboration.
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    What is AI-Agents-Multi-Agent-Systems-and-Distributed-AI-Coordination?
    This repository aggregates a comprehensive collection of multi-agent system components and distributed AI coordination techniques. It provides implementations of consensus algorithms, contract net negotiation protocols, auction-based task allocation, coalition formation strategies, and inter-agent communication frameworks. Users can leverage built-in simulation environments to model and test agent behaviors under varied network topologies, latency scenarios, and failure modes. The modular design allows developers and researchers to integrate, extend, or customize individual coordination modules for applications in robotics swarms, IoT device collaboration, smart grids, and distributed decision-making systems.
  • AIAgentWorkshop is a Python-based framework enabling developers to build autonomous AI agents that plan and execute tasks via integrated tools.
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    What is AIAgentWorkshop?
    AIAgentWorkshop is an open-source Python project demonstrating how to build autonomous AI agents capable of planning, decision-making, and tool usage. It includes examples of integrating web search, file management, and system commands, along with simple memory and reasoning modules. Developers can follow guided exercises to create agents that interpret user goals, generate multi-step plans, execute tasks across different tools, and maintain context. The modular architecture makes it easy to swap or extend tools and chain agent actions for complex workflows, turning AI research concepts into runnable prototypes.
  • A Python framework to build and orchestrate autonomous AI agents with custom tools, memory, and multi-agent coordination.
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    What is Autonomys Agents?
    Autonomys Agents empowers developers to create autonomous AI agents capable of executing complex tasks without manual intervention. Built on Python, the framework provides tools for defining agent behaviors, integrating external APIs and custom functions, and maintaining conversational memory across interactions. Agents can collaborate in multi-agent setups, sharing knowledge and coordinating actions. Observability modules offer real-time logging, performance tracking, and debugging insights. With its modular architecture, teams can extend core components, incorporate new LLMs, and deploy agents across environments. Whether automating customer support, performing data analysis, or orchestrating research workflows, Autonomys Agents streamlines end-to-end development and management of intelligent autonomous systems.
  • Web interface for BabyAGI, enabling autonomous task generation, prioritization, and execution powered by large language models.
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    What is BabyAGI UI?
    BabyAGI UI provides a streamlined, browser-based front end for the open-source BabyAGI autonomous agent. Users input an overall objective and initial task; the system then leverages large language models to generate subsequent tasks, prioritize them based on relevance to the main goal, and execute each step. Throughout the process, BabyAGI UI maintains a history of completed tasks, shows outputs for each run, and updates the task queue dynamically. Users can adjust parameters like model type, memory retention, and execution limits, offering a balance of automation and control in self-directed workflows.
  • bedrock-agent is an open-source Python framework enabling dynamic AWS Bedrock LLM-based agents with tool chaining and memory support.
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    What is bedrock-agent?
    bedrock-agent is a versatile AI agent framework that integrates with AWS Bedrock’s suite of large language models to orchestrate complex, task-driven workflows. It offers a plugin architecture for registering custom tools, memory modules for context persistence, and a chain-of-thought mechanism for improved reasoning. Through a simple Python API and command-line interface, it enables developers to define agents that can call external services, process documents, generate code, or interact with users via chat. Agents can be configured to automatically select relevant tools based on user prompts and maintain conversational state across sessions. This framework is open-source, extensible, and optimized for rapid prototyping and deployment of AI-powered assistants on local or AWS cloud environments.
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