Comprehensive Forschungsbeschleunigung Tools for Every Need

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Forschungsbeschleunigung

  • An open-source Python framework enabling design, training, and evaluation of cooperative and competitive multi-agent reinforcement learning systems.
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    What is MultiAgentSystems?
    MultiAgentSystems is designed to simplify the process of building and evaluating multi-agent reinforcement learning (MARL) applications. The platform includes implementations of state-of-the-art algorithms like MADDPG, QMIX, VDN, and centralized training with decentralized execution. It features modular environment wrappers compatible with OpenAI Gym, communication protocols for agent interaction, and logging utilities to track metrics such as reward shaping and convergence rates. Researchers can customize agent architectures, tune hyperparameters, and simulate settings including cooperative navigation, resource allocation, and adversarial games. With built-in support for PyTorch, GPU acceleration, and TensorBoard integration, MultiAgentSystems accelerates experimentation and benchmarking in collaborative and competitive multi-agent domains.
  • RxAgent-Zoo uses reactive programming with RxPY to streamline development and experimentation of modular reinforcement learning agents.
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    What is RxAgent-Zoo?
    At its core, RxAgent-Zoo is a reactive RL framework that treats data events from environments, replay buffers, and training loops as observable streams. Users can chain operators to preprocess observations, update networks, and log metrics asynchronously. The library offers parallel environment support, configurable schedulers, and integration with popular Gym and Atari benchmarks. A plug-and-play API allows seamless swapping of agent components, facilitating reproducible research, rapid experimentation, and scalable training workflows.
  • An AI-powered web browsing extension that summarizes content, answers queries, extracts data, and automates tasks across websites.
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    What is HyperBrowser?
    HyperBrowser transforms standard web browsing by embedding generative AI capabilities throughout every online interaction. Users can select any webpage text and instantly receive concise summaries or detailed explanations, ask natural language questions to extract specific information, and automatically generate reports or content drafts. Built-in table and data extraction tools allow seamless acquisition of structured datasets, while integrated code assistance supports developers by generating snippets and debugging. The extension also enables chatbot conversations, PDF summarization, and customizable workflows to automate repetitive tasks such as form filling or social media monitoring. By unifying multiple AI functions in a single interface, HyperBrowser accelerates research, analysis, and content creation, making web navigation smarter and more productive.
  • 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.
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