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experimentos de IA

  • ThreeAgents is a Python framework that orchestrates interactions among system, assistant, and user AI agents via OpenAI.
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    What is ThreeAgents?
    ThreeAgents is built in Python, leveraging OpenAI's chat completions API to instantiate multiple AI agents with distinct roles (system, assistant, user). It provides abstractions for agent prompting, role-based message handling, and context memory management. Developers can define custom prompt templates, configure agent personalities, and chain interactions to simulate realistic dialogues or task-oriented workflows. The framework handles message passing, context window management, and logging, enabling experiments in collaborative decision-making or hierarchical task decomposition. With support for environment variables and modular agents, ThreeAgents allows seamless swapping between OpenAI and local LLM backends, facilitating rapid prototyping of multi-agent AI systems. It ships with example scripts and Docker support for quick setup.
  • Agents-Deep-Research is a framework for developing autonomous AI agents that plan, act, and learn using LLMs.
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    What is Agents-Deep-Research?
    Agents-Deep-Research is designed to streamline the development and testing of autonomous AI agents by offering a modular, extensible codebase. It features a task planning engine that decomposes user-defined goals into sub-tasks, a long-term memory module that stores and retrieves context, and a tool integration layer that allows agents to interact with external APIs and simulated environments. The framework also provides evaluation scripts and benchmarking tools to measure agent performance across diverse scenarios. Built on Python and adaptable to various LLM backends, it enables researchers and developers to rapidly prototype novel agent architectures, conduct reproducible experiments, and compare different planning strategies under controlled conditions.
  • AI Otaku LABO offers expert reviews and guides on AI tools and generators.
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    What is AI OTAKU LABO?
    AI Otaku LABO is a leading media platform specializing in AI tool reviews and guides. Managed by professionals, it rigorously tests over 100 paid and free AI generators to verify their practical usability. The website ensures readers receive accurate and reliable data from proven experiments, making it a go-to source for those seeking in-depth knowledge and the latest updates in AI technology.
  • Open-source framework to build and test customizable AI agents for task automation, conversation flows, and memory management.
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    What is crewAI Playground?
    crewAI Playground is a developer toolkit and sandbox for building and experimenting with AI-driven agents. You define agents via configuration files or code, specifying prompts, tools, and memory modules. The playground runs multiple agents concurrently, handles message routing, and logs conversation history. It supports plugin integrations for external data sources, customizable memory backends (in-memory or persistent), and a web interface for testing. Use it to prototype chatbots, virtual assistants, and automated workflows before production deployment.
  • A versatile platform for experimenting with Large Language Models.
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    What is LLM Playground?
    LLM Playground serves as a comprehensive tool for researchers and developers interested in Large Language Models (LLMs). Users can experiment with different prompts, evaluate model responses, and deploy applications. The platform supports a range of LLMs and includes features for performance comparison, allowing users to see which model suits their needs best. With its accessible interface, LLM Playground aims to simplify the process of engaging with sophisticated machine learning technologies, making it a valuable resource for both education and experimentation.
  • Implements decentralized multi-agent DDPG reinforcement learning using PyTorch and Unity ML-Agents for collaborative agent training.
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    What is Multi-Agent DDPG with PyTorch & Unity ML-Agents?
    This open-source project delivers a complete multi-agent reinforcement learning framework built on PyTorch and Unity ML-Agents. It offers decentralized DDPG algorithms, environment wrappers, and training scripts. Users can configure agent policies, critic networks, replay buffers, and parallel training workers. Logging hooks allow TensorBoard monitoring, while modular code supports custom reward functions and environment parameters. The repository includes sample Unity scenes demonstrating collaborative navigation tasks, making it ideal for extending and benchmarking multi-agent scenarios in simulation.
  • An open-source multi-agent reinforcement learning framework enabling raw-level agent control and coordination in StarCraft II via PySC2.
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    What is MultiAgent-Systems-StarCraft2-PySC2-Raw?
    MultiAgent-Systems-StarCraft2-PySC2-Raw offers a complete toolkit for developing, training, and evaluating multiple AI agents in StarCraft II. It exposes low-level controls for unit movement, targeting, and abilities, while allowing flexible reward design and scenario configuration. Users can easily plug in custom neural network architectures, define team-based coordination strategies, and record metrics. Built on top of PySC2, it supports parallel training, checkpointing, and visualization, making it ideal for advancing research in cooperative and adversarial multi-agent reinforcement learning.
  • Open source playground to test LLMs.
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    What is nat.dev?
    OpenPlayground is an open-source platform that allows users to experiment with and compare different large language models (LLMs). It's designed to help users understand the strengths and weaknesses of various LLMs by providing a user-friendly and interactive environment. The platform can be particularly useful for developers, researchers, and anyone interested in the capabilities of artificial intelligence. Users can sign up easily using their Google account or email.
  • A minimal Python-based AI agent demo showcasing GPT conversational models with memory and tool integration.
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    What is DemoGPT?
    DemoGPT is an open-source Python project designed to demonstrate the core concepts of AI agents using OpenAI's GPT models. It implements a conversational interface with persistent memory saved in JSON files, enabling context-aware interactions across sessions. The framework supports dynamic tool execution, such as web search, calculations, and custom extensions, through a plugin-style architecture. By simply configuring your OpenAI API key and installing dependencies, users can run DemoGPT locally to prototype chatbots, explore multi-turn dialogue flows, and test agent-driven workflows. This comprehensive demo offers developers and researchers a practical foundation for building, customizing, and experimenting with GPT-powered agents in real-world scenarios.
  • An open-source CLI tool that echoes and processes user prompts with Ollama LLMs for local AI agent workflows.
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    What is echoOLlama?
    echoOLlama leverages the Ollama ecosystem to provide a minimal agent framework: it reads user input from the terminal, sends it to a configured local LLM, and streams back responses in real time. Users can script sequences of interactions, chain prompts, and experiment with prompt engineering without modifying underlying model code. This makes echoOLlama ideal for testing conversational patterns, building simple command-driven tools, and handling iterative agent tasks while preserving data privacy.
  • An RL framework offering PPO, DQN training and evaluation tools for developing competitive Pommerman game agents.
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    What is PommerLearn?
    PommerLearn enables researchers and developers to train multi-agent RL bots in the Pommerman game environment. It includes ready-to-use implementations of popular algorithms (PPO, DQN), flexible configuration files for hyperparameters, automatic logging and visualization of training metrics, model checkpointing, and evaluation scripts. Its modular architecture makes it easy to extend with new algorithms, customize environments, and integrate with standard ML libraries such as PyTorch.
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