Comprehensive 분산 훈련 Tools for Every Need

Get access to 분산 훈련 solutions that address multiple requirements. One-stop resources for streamlined workflows.

분산 훈련

  • TensorFlow is a powerful AI framework for building machine learning models.
    0
    0
    What is TensorFlow?
    TensorFlow provides a comprehensive ecosystem for developing machine learning models, supporting tasks such as data processing, model training, and deployment. With its flexibility and scalability, TensorFlow allows for the building of complex architectures like neural networks, facilitating applications in fields such as computer vision, natural language processing, and robotics.
  • An open-source framework enabling training, deployment, and evaluation of multi-agent reinforcement learning models for cooperative and competitive tasks.
    0
    0
    What is NKC Multi-Agent Models?
    NKC Multi-Agent Models provides researchers and developers with a comprehensive toolkit for designing, training, and evaluating multi-agent reinforcement learning systems. It features a modular architecture where users define custom agent policies, environment dynamics, and reward structures. Seamless integration with OpenAI Gym allows for rapid prototyping, while support for TensorFlow and PyTorch enables flexibility in selecting learning backends. The framework includes utilities for experience replay, centralized training with decentralized execution, and distributed training across multiple GPUs. Extensive logging and visualization modules capture performance metrics, facilitating benchmarking and hyperparameter tuning. By simplifying the setup of cooperative, competitive, and mixed-motive scenarios, NKC Multi-Agent Models accelerates experimentation in domains such as autonomous vehicles, robotic swarms, and game AI.
  • End-to-end platform to develop, deploy, and monitor AI models using decentralized computing resources.
    0
    0
    What is AIxBlock?
    AIxBlock is an end-to-end, no-code platform designed to empower AI initiatives with decentralized computing resources. It enables users to seamlessly build, deploy, and monitor AI models, leveraging features like Auto and Distributed Training to enhance efficiency and scalability. The platform offers a collaborative ecosystem for developers and AI enthusiasts to maximize their productivity and innovation potential while reducing infrastructure costs and maintenance efforts.
  • An open-source multi-agent reinforcement learning simulator enabling scalable parallel training, customizable environments, and agent communication protocols.
    0
    0
    What is MARL Simulator?
    The MARL Simulator is designed to facilitate efficient and scalable development of multi-agent reinforcement learning (MARL) algorithms. Leveraging PyTorch's distributed backend, it allows users to run parallel training across multiple GPUs or nodes, significantly reducing experiment runtime. The simulator offers a modular environment interface that supports standard benchmark scenarios—such as cooperative navigation, predator-prey, and grid world—as well as user-defined custom environments. Agents can utilize various communication protocols to coordinate actions, share observations, and synchronize rewards. Configurable reward and observation spaces enable fine-grained control over training dynamics, while built-in logging and visualization tools provide real-time insights into performance metrics.
  • MARTI is an open-source toolkit offering standardized environments and benchmarking tools for multi-agent reinforcement learning experiments.
    0
    0
    What is MARTI?
    MARTI (Multi-Agent Reinforcement learning Toolkit and Interface) is a research-oriented framework that streamlines the development, evaluation, and benchmarking of multi-agent RL algorithms. It offers a plug-and-play architecture where users can configure custom environments, agent policies, reward structures, and communication protocols. MARTI integrates with popular deep learning libraries, supports GPU acceleration and distributed training, and generates detailed logs and visualizations for performance analysis. The toolkit’s modular design allows rapid prototyping of novel approaches and systematic comparison against standard baselines, making it ideal for academic research and pilot projects in autonomous systems, robotics, game AI, and cooperative multi-agent scenarios.
  • Mava is an open-source multi-agent reinforcement learning framework by InstaDeep, offering modular training and distributed support.
    0
    0
    What is Mava?
    Mava is a JAX-based open-source library for developing, training, and evaluating multi-agent reinforcement learning systems. It offers pre-built implementations of cooperative and competitive algorithms such as MAPPO and MADDPG, along with configurable training loops that support single-node and distributed workflows. Researchers can import environments from PettingZoo or define custom environments, then use Mava’s modular components for policy optimization, replay buffer management, and metric logging. The framework’s flexible architecture allows seamless integration of new algorithms, custom observation spaces, and reward structures. By leveraging JAX’s auto-vectorization and hardware acceleration capabilities, Mava ensures efficient large-scale experiments and reproducible benchmarking across various multi-agent scenarios.
Featured