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Investigación en IA

  • Epoch AI is a research platform focusing on transformative AI models.
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    What is epochai.org?
    Epoch AI serves as a vital resource for tracking the growth and evolution of machine learning models. Its extensive public databases catalog over 1400 AI models spanning from 1950 to today, including both historical significance and cutting-edge advancements. Researchers, developers, and policymakers can utilize this information to understand both past performance and future trajectories in AI technologies.
  • Grid.ai enables seamless cloud-based machine learning model training.
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    What is Grid.ai?
    Grid.ai is a cloud-based platform designed to democratize state-of-the-art AI research by focusing on machine learning, not infrastructure. It allows researchers and companies to train hundreds of machine learning models on the cloud directly from their laptops without any code modifications. The platform simplifies the deployment and scaling of machine learning workloads, providing robust tools for model building, training, and monitoring, thereby speeding up AI development and reducing overheads associated with managing infrastructure.
  • 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.
  • JustAINews provides the latest updates on AI technologies and companies.
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    What is JustAINews?
    JustAINews is a digital media outlet offering the latest news in Artificial Intelligence. We cover cutting-edge technologies, updates on AI companies, and real-world applications. Our website is organized into various sections including Applications, Technologies, and Industries, making it easy to navigate the full scope of AI developments. From breakthroughs in machine learning to the latest funding news for AI startups, JustAINews ensures you stay informed about the most significant developments in the world of AI.
  • A Python framework to build and simulate multiple intelligent agents with customizable communication, task allocation, and strategic planning.
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    What is Multi-Agents System from Scratch?
    Multi-Agents System from Scratch provides a comprehensive set of Python modules to build, customize, and evaluate multi-agent environments from the ground up. Users can define world models, create agent classes with unique sensory inputs and action capabilities, and establish flexible communication protocols for cooperation or competition. The framework supports dynamic task allocation, strategic planning modules, and real-time performance tracking. Its modular architecture allows easy integration of custom algorithms, reward functions, and learning mechanisms. With built-in visualization tools and logging utilities, developers can monitor agent interactions and diagnose behavior patterns. Designed for extensibility and clarity, the system caters to both researchers exploring distributed AI and educators teaching agent-based modeling.
  • A Python-based framework orchestrating dynamic AI agent interactions with customizable roles, message passing, and task coordination.
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    What is Multi-Agent-AI-Dynamic-Interaction?
    Multi-Agent-AI-Dynamic-Interaction offers a flexible environment to design, configure, and run systems composed of multiple autonomous AI agents. Each agent can be assigned specific roles, objectives, and communication protocols. The framework manages message passing, conversation context, and sequential or parallel interactions. It supports integration with OpenAI GPT, other LLM APIs, and custom modules. Users define scenarios via YAML or Python scripts, specifying agent details, workflow steps, and stopping criteria. The system logs all interactions for debugging and analysis, allowing fine-grained control over agent behaviors for experiments in collaboration, negotiation, decision-making, and complex problem-solving.
  • Discover the latest in AI with Neural Netwrk.
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    What is Neural Netwrk?
    Neural Netwrk provides a comprehensive overview of the latest advancements in artificial intelligence. It serves as a resource for navigating new research, innovative applications, and thought-provoking discourse in AI. Users can access articles, expert opinions, and data-driven insights designed to enhance understanding and encourage discussions around AI technologies. Whether you're a professional, researcher, or just passionate about tech, Neural Netwrk is curated to keep you informed about cutting-edge developments in the field.
  • Neuralhub makes neural network development seamless with its powerful tools and libraries.
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    What is Neuralhub?
    Neuralhub simplifies the process of working with neural networks, offering a comprehensive suite of tools and libraries that aid in the design, build, and experimentation of AI architectures. Whether you are an AI enthusiast, researcher, or engineer, Neuralhub provides an intuitive environment to explore, innovate, and push the boundaries of neural network technology.
  • O.SYSTEMS leads the way in decentralized governance, AI research, and community involvement.
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    What is o.systems?
    O.SYSTEMS is at the forefront of driving decentralized governance, pioneering advanced AI research, and fostering strong community engagement within the O.XYZ ecosystem. Our mission emphasizes the development of Sovereign Super Intelligence, where AI serves the best interests of humanity. Through strategic investment, treasury management, and the unique $OI Coin, we aim to create a collaborative and safe environment for AI innovation.
  • OpenSpiel provides a library of environments and algorithms for research in reinforcement learning and game theoretic planning.
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    What is OpenSpiel?
    OpenSpiel is a research framework that provides a wide range of environments (from simple matrix games to complex board games such as Chess, Go, and Poker) and implements various reinforcement learning and search algorithms (e.g., value iteration, policy gradient methods, MCTS). Its modular C++ core and Python bindings allow users to plug in custom algorithms, define new games, and compare performance across standard benchmarks. Designed for extensibility, it supports single and multi-agent settings, enabling study of cooperative and competitive scenarios. Researchers leverage OpenSpiel to prototype algorithms quickly, run large-scale experiments, and share reproducible code.
  • Pits and Orbs offers a multi-agent grid-world environment where AI agents avoid pitfalls, collect orbs, and compete in turn-based scenarios.
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    What is Pits and Orbs?
    Pits and Orbs is an open-source reinforcement learning environment implemented in Python, offering a turn-based multi-agent grid-world where agents pursue objectives and face environmental hazards. Each agent must navigate a customizable grid, avoid randomly placed pits that penalize or terminate episodes, and collect orbs for positive rewards. The environment supports both competitive and cooperative modes, enabling researchers to explore varied learning scenarios. Its simple API integrates seamlessly with popular RL libraries like Stable Baselines or RLlib. Key features include adjustable grid dimensions, dynamic pit and orb distributions, configurable reward structures, and optional logging for training analysis.
  • A multi-agent reinforcement learning environment simulating vacuum cleaning robots collaboratively navigating and cleaning dynamic grid-based scenarios.
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    What is VacuumWorld?
    VacuumWorld is an open-source simulation platform designed to facilitate the development and evaluation of multi-agent reinforcement learning algorithms. It provides grid-based environments where virtual vacuum cleaner agents operate to detect and remove dirt patches across customizable layouts. Users can adjust parameters such as grid size, dirt distribution, stochastic movement noise, and reward structures to model diverse scenarios. The framework includes built-in support for agent communication protocols, real-time visualization dashboards, and logging utilities for performance tracking. With simple Python APIs, researchers can quickly integrate their RL algorithms, compare cooperative or competitive strategies, and conduct reproducible experiments, making VacuumWorld ideal for academic research and teaching.
  • Discover cutting-edge AI tools and insights at AI World Today.
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    What is AI World Today?
    AI World Today is your go-to source for the latest advancements, news, and insights in the field of artificial intelligence. Whether you're an AI enthusiast, a student, a researcher, or a professional, our platform offers high-quality content designed to keep you abreast of rapid developments in AI. Our comprehensive articles, expert opinions, and timely updates ensure you're always in the know.
  • APLib provides autonomous game testing agents with perception, planning, and action modules to simulate user behaviors in virtual environments.
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    What is APLib?
    APLib is designed to simplify the development of AI-driven autonomous agents within gaming and simulation environments. Utilizing a Belief-Desire-Intention (BDI) inspired architecture, it offers modular components for perception, decision-making, and action execution. Developers define agent beliefs, goals, and behaviors via intuitive APIs and behavior trees. APLib agents can interpret game state through customizable sensors, formulate plans using built-in planners, and interact with the environment via actuators. The library supports integration with Unity, Unreal, and pure Java environments, facilitating automated testing, AI research, and simulations. It promotes reuse of behavior modules, rapid prototyping, and robust QA workflows by automating repetitive test scenarios and simulating complex player behaviors without manual intervention.
  • Compare and explore the capabilities of modern AI models.
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    What is Rival?
    Rival.Tips is a platform designed for exploring and comparing the capabilities of state-of-the-art AI models. Users can engage in AI challenges to evaluate the performance of different models side by side. By selecting models and comparing their responses to specific challenges, users gain insights into each model's strengths and weaknesses. The platform aims to help users better understand the diverse capabilities and unique attributes of modern AI technologies.
  • VMAS is a modular MARL framework that enables GPU-accelerated multi-agent environment simulation and training with built-in algorithms.
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    What is VMAS?
    VMAS is a comprehensive toolkit for building and training multi-agent systems using deep reinforcement learning. It supports GPU-based parallel simulation of hundreds of environment instances, enabling high-throughput data collection and scalable training. VMAS includes implementations of popular MARL algorithms like PPO, MADDPG, QMIX, and COMA, along with modular policy and environment interfaces for rapid prototyping. The framework facilitates centralized training with decentralized execution (CTDE), offers customizable reward shaping, observation spaces, and callback hooks for logging and visualization. With its modular design, VMAS seamlessly integrates with PyTorch models and external environments, making it ideal for research in cooperative, competitive, and mixed-motive tasks across robotics, traffic control, resource allocation, and game AI scenarios.
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