Comprehensive KI-Experimentation Tools for Every Need

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

KI-Experimentation

  • 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.
    RxAgent-Zoo Core Features
    • Reactive RL pipelines with RxPY
    • Pre-implemented agents: DQN, PPO, A2C, DDPG
    • Parallel environment execution
    • Asynchronous data stream management
    • Built-in logging and monitoring
  • 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.
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