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PyTorchサポート

  • Open-source Python framework to build and run autonomous AI agents in customizable multi-agent simulation environments.
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    What is Aeiva?
    Aeiva is a developer-first platform that enables you to create, deploy, and evaluate autonomous AI agents within flexible simulation environments. It features a plugin-based engine for environment definition, intuitive APIs to customize agent decision loops, and built-in metrics collection for performance analysis. The framework supports integration with OpenAI Gym, PyTorch, and TensorFlow, plus real-time web UI for monitoring live simulations. Aeiva’s benchmarking tools let you organize agent tournaments, record results, and visualize agent behaviors to fine-tune strategies and accelerate multi-agent AI research.
    Aeiva Core Features
    • Modular environment and agent API
    • Integration with OpenAI Gym, PyTorch, TensorFlow
    • Real-time web dashboard for visualization
    • Built-in tournament benchmarking tools
    • Extensible plugin architecture
    • Automated metrics collection and logging
    Aeiva Pro & Cons

    The Cons

    Some features and capabilities are still marked as 'to be updated', indicating under development
    No direct pricing or commercial offering details available
    Lacks mobile or app store presence

    The Pros

    Supports multimodal input processing (text, image, audio, video)
    Focuses on augmenting human intelligence
    Emphasizes safety, controllability, and interpretability in AI
    Open source under Apache 2.0 license
    Targets acceleration of scientific discovery in specialized domains
    Supports multi-agent AI community and self-evolving AI societies
    Aeiva Pricing
    Has free planNo
    Free trial details
    Pricing model
    Is credit card requiredNo
    Has lifetime planNo
    Billing frequency
    For the latest prices, please visit: https://chatsci.github.io/Aeiva/
  • Shepherding is a Python-based RL framework for training AI agents to herd and guide multiple agents in simulations.
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    What is Shepherding?
    Shepherding is an open-source simulation framework designed for reinforcement learning researchers and developers to study and implement multi-agent herding tasks. It provides a Gym-compatible environment where agents can be trained to perform behaviors such as flanking, collecting, and dispersing target groups across continuous or discrete spaces. The framework includes modular reward shaping functions, environment parameterization, and logging utilities for monitoring training performance. Users can define obstacles, dynamic agent populations, and custom policies using TensorFlow or PyTorch. Visualization scripts generate trajectory plots and video recordings of agent interactions. Shepherding’s modular design allows seamless integration with existing RL libraries, enabling reproducible experiments, benchmarking of novel coordination strategies, and rapid prototyping of AI-driven herding solutions.
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